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Author SHA1 Message Date
Wing Lian
53ce90d21e add sync_model_states parameter to fix resume from checkpoint with fsdp
Some checks failed
pre-commit / pre-commit (push) Has been cancelled
PyTest / test (3.10) (push) Has been cancelled
PyTest / test (3.9) (push) Has been cancelled
fix formatting for linter
fixes FSDP resume from checkpoint (unpacked only)
chore: fix linter
chore: lint
2023-08-30 21:15:50 -07:00
1003 changed files with 8076 additions and 132442 deletions

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@@ -1,41 +0,0 @@
#!/bin/bash
_axolotl_completions() {
local cur prev
COMPREPLY=()
cur="${COMP_WORDS[COMP_CWORD]}"
prev="${COMP_WORDS[COMP_CWORD-1]}"
# If we're completing the first argument (the command)
if [[ $COMP_CWORD -eq 1 ]]; then
mapfile -t COMPREPLY < <(compgen -W "delinearize-llama4 fetch lm-eval merge-sharded-fsdp-weights quantize vllm-serve evaluate inference merge-lora preprocess train" -- "$cur")
return 0
fi
# Commands that should complete with directories and YAML files
local -a yaml_commands=("merge-sharded-fsdp-weights" "quantize" "vllm-serve" "evaluate" "inference" "merge-lora" "preprocess" "train")
# Check if previous word is in our list
if [[ " ${yaml_commands[*]} " =~ (^|[[:space:]])$prev($|[[:space:]]) ]]; then
# Use filename completion which handles directories properly
compopt -o filenames
mapfile -t COMPREPLY < <(compgen -f -- "$cur")
# Filter to only include directories and YAML files
local -a filtered=()
for item in "${COMPREPLY[@]}"; do
if [[ -d "$item" ]] || [[ "$item" == *.yaml ]] || [[ "$item" == *.yml ]]; then
filtered+=("$item")
fi
done
COMPREPLY=("${filtered[@]}")
return 0
fi
# Default: no completion
return 0
}
# Remove the -o nospace option - let filenames handle it
complete -F _axolotl_completions axolotl

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@@ -1,3 +1,3 @@
[bandit]
exclude = tests
skips = B101,B615,B102,B110
skips = B101

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@@ -1,17 +0,0 @@
# yaml-language-server: $schema=https://coderabbit.ai/integrations/schema.v2.json
language: "en-US"
early_access: false
reviews:
profile: "chill"
request_changes_workflow: false
high_level_summary: true
review_status: true
collapse_walkthrough: true
poem: false
sequence_diagrams: false
auto_review:
enabled: true
drafts: false
auto_incremental_review: false
chat:
auto_reply: true

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@@ -1,14 +0,0 @@
[run]
source = axolotl
omit =
*/tests/*
setup.py
[report]
exclude_lines =
pragma: no cover
def __repr__
raise NotImplementedError
if __name__ == .__main__.:
pass
raise ImportError

5
.flake8 Normal file
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@@ -0,0 +1,5 @@
[flake8]
max-line-length = 88
select = C,E,F,W,B,B950
extend-ignore = E203, E501, W503

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@@ -15,18 +15,18 @@ First of all, thank you for your interest in contributing to axolotl! We appreci
- [Commit Messages](#commit-messages)
- [Additional Resources](#additional-resources)
## Code of Conduct
## Code of Conductcode
All contributors are expected to adhere to our [Code of Conduct](CODE_OF_CONDUCT.md). Please read it before participating in the axolotl community.
## Getting Started
Bugs? Please check for open issue else create a new [Issue](https://github.com/axolotl-ai-cloud/axolotl/issues/new).
Bugs? Please check for open issue else create a new [Issue](https://github.com/OpenAccess-AI-Collective/axolotl/issues/new).
PRs are **greatly welcome**!
1. Fork the repository and clone it to your local machine.
2. Set up the development environment by following the instructions in the [README.md](https://github.com/axolotl-ai-cloud/axolotl/tree/main/README.md) file.
2. Set up the development environment by following the instructions in the [README.md](https://github.com/OpenAccess-AI-Collective/axolotl/tree/main/README.md) file.
3. Explore the codebase, run tests, and verify that everything works as expected.
Please run below to setup env
@@ -42,11 +42,11 @@ pytest tests/
### Reporting Bugs
If you encounter a bug or issue while using axolotl, please open a new issue on the [GitHub Issues](https://github.com/axolotl-ai-cloud/axolotl/issues) page. Provide a clear and concise description of the problem, steps to reproduce it, and any relevant error messages or logs.
If you encounter a bug or issue while using axolotl, please open a new issue on the [GitHub Issues](https://github.com/OpenAccess-AI-Collective/axolotl/issues) page. Provide a clear and concise description of the problem, steps to reproduce it, and any relevant error messages or logs.
### Suggesting Enhancements
We welcome ideas for improvements and new features. To suggest an enhancement, open a new issue on the [GitHub Issues](https://github.com/axolotl-ai-cloud/axolotl/issues) page. Describe the enhancement in detail, explain the use case, and outline the benefits it would bring to the project.
We welcome ideas for improvements and new features. To suggest an enhancement, open a new issue on the [GitHub Issues](https://github.com/OpenAccess-AI-Collective/axolotl/issues) page. Describe the enhancement in detail, explain the use case, and outline the benefits it would bring to the project.
### Submitting Pull Requests
@@ -57,13 +57,6 @@ We welcome ideas for improvements and new features. To suggest an enhancement, o
5. Push your branch to your fork on GitHub.
6. Open a new pull request against the `main` branch of the axolotl repository. Include a clear and concise description of your changes, referencing any related issues.
#### Skipping CI Checks
You can skip certain CI checks by including specific keywords in your commit messages:
- `[skip ci]` or `skip ci` - Skips all CI checks for that commit
- `[skip-e2e]` or `skip-e2e` - Skips only end-to-end tests while running other CI checks. You may also include this in the title of your PR to disable end-to-end tests for the entire PR.
## Style Guidelines
### Code Style

2
.github/FUNDING.yml vendored
View File

@@ -1,6 +1,6 @@
# These are supported funding model platforms
github: # Replace with up to 4 GitHub Sponsors-enabled usernames e.g., [user1, user2]
github: OpenAccess-AI-Collective # Replace with up to 4 GitHub Sponsors-enabled usernames e.g., [user1, user2]
patreon: # Replace with a single Patreon username
open_collective: # Replace with a single Open Collective username
ko_fi: # Replace with a single Ko-fi username

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@@ -15,7 +15,7 @@ body:
label: "Please check that this issue hasn't been reported before."
description: "The **Label filters** may help make your search more focussed."
options:
- label: "I searched previous [Bug Reports](https://github.com/axolotl-ai-cloud/axolotl/labels/bug) didn't find any similar reports."
- label: "I searched previous [Bug Reports](https://github.com/OpenAccess-AI-Collective/axolotl/labels/bug) didn't find any similar reports."
required: true
- type: textarea
@@ -53,14 +53,6 @@ body:
validations:
required: true
- type: textarea
id: config
attributes:
label: Config yaml
description: |
Please attach the config yaml!
render: yaml
- type: textarea
id: possible-solution
attributes:

View File

@@ -1,7 +1,7 @@
blank_issues_enabled: false
contact_links:
- name: Ask a question
url: https://github.com/axolotl-ai-cloud/axolotl/discussions/categories/q-a
url: https://github.com/OpenAccess-AI-Collective/axolotl/discussions/categories/q-a
about: Ask questions and discuss with other community members
- name: Discuss the Project in Discord
url: https://discord.gg/HhrNrHJPRb

View File

@@ -10,7 +10,7 @@ body:
value: |
* Ask questions in [Discord](https://discord.gg/HhrNrHJPRb).
* Before you file an issue read the [Contributing guide](./CONTRIBUTING.md).
* Check to make sure someone hasn't already opened a [similar issue](https://github.com/axolotl-ai-cloud/axolotl/issues).
* Check to make sure someone hasn't already opened a [similar issue](https://github.com/OpenAccess-AI-Collective/axolotl/issues).
- type: textarea
attributes:
label: What piece of documentation is affected?

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@@ -8,9 +8,9 @@ body:
label: "⚠️ Please check that this feature request hasn't been suggested before."
description: "There are two locations for previous feature requests. Please search in both. Thank you. The **Label filters** may help make your search more focussed."
options:
- label: "I searched previous [Ideas in Discussions](https://github.com/axolotl-ai-cloud/axolotl/discussions/categories/ideas) didn't find any similar feature requests."
- label: "I searched previous [Ideas in Discussions](https://github.com/OpenAccess-AI-Collective/axolotl/discussions/categories/ideas) didn't find any similar feature requests."
required: true
- label: "I searched previous [Issues](https://github.com/axolotl-ai-cloud/axolotl/labels/enhancement) didn't find any similar feature requests."
- label: "I searched previous [Issues](https://github.com/OpenAccess-AI-Collective/axolotl/labels/enhancement) didn't find any similar feature requests."
required: true
- type: textarea

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@@ -15,18 +15,8 @@
<!--- Include details of your testing environment, tests ran to see how -->
<!--- your change affects other areas of the code, etc. -->
## AI Usage Disclaimer
<!--- Was AI (e.g., ChatGPT, Claude, Copilot) used to generate or assist with this PR? -->
<!--- Please indicate: No / Yes (specify which tool and to what extent) -->
## Screenshots (if appropriate)
## Types of changes
<!--- What types of changes does your code introduce? Put an `x` in all the boxes that apply: -->
## Social Handles (Optional)
<!-- Thanks for submitting a bugfix or enhancement. -->
<!-- We'd love to show our thanks to you on Twitter & Discord if you provide your handle -->

View File

@@ -3,181 +3,53 @@ name: ci-cd-base
on:
push:
branches:
- "main"
paths:
- 'docker/Dockerfile-base'
- 'docker/Dockerfile-uv-base'
- '.github/workflows/base.yml'
pull_request:
paths:
- 'docker/Dockerfile-base'
- 'docker/Dockerfile-uv-base'
- '.github/workflows/base.yml'
workflow_dispatch:
- "main-base"
- "dev-base"
jobs:
build-base:
if: ${{ github.repository_owner == 'axolotl-ai-cloud' && (github.event_name != 'pull_request' || !github.event.pull_request.draft) }}
timeout-minutes: 480
if: github.repository_owner == 'OpenAccess-AI-Collective'
# this job needs to be run on self-hosted GPU runners...
runs-on: ubuntu-latest-m
env:
HAS_DOCKERHUB_CREDS: ${{ secrets.DOCKERHUB_USERNAME != '' && secrets.DOCKERHUB_TOKEN != '' }}
runs-on: self-hosted
strategy:
fail-fast: false
matrix:
include:
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.8.0
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-base"
platforms: "linux/amd64"
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.0
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-base"
platforms: "linux/amd64,linux/arm64"
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.1
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-base"
platforms: "linux/amd64,linux/arm64"
- cuda: "130"
cuda_version: 13.0.0
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.1
torch_cuda_arch_list: "9.0+PTX"
dockerfile: "Dockerfile-base"
platforms: "linux/amd64,linux/arm64"
# - cuda: "128"
# cuda_version: 12.8.1
# cudnn_version: ""
# python_version: "3.11"
# pytorch: nightly
# torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
# dockerfile: "Dockerfile-base-nightly"
# # "next" is for release candidates of pytorch
# - cuda: "128"
# cuda_version: 12.8.1
# cudnn_version: ""
# python_version: "3.11"
# pytorch: next
# torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
# dockerfile: "Dockerfile-base-next"
- cuda: "118"
cuda_version: 11.8.0
python_version: "3.9"
pytorch: 2.0.1
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 9.0+PTX"
- cuda: "118"
cuda_version: 11.8.0
python_version: "3.10"
pytorch: 2.0.1
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 9.0+PTX"
steps:
- name: Checkout
uses: actions/checkout@v4
uses: actions/checkout@v3
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
uses: docker/metadata-action@v3
with:
images: |
axolotlai/axolotl-base
images: winglian/axolotl-base
- name: Login to Docker Hub
uses: docker/login-action@v2
if: ${{ github.event_name != 'pull_request' && env.HAS_DOCKERHUB_CREDS == 'true' }}
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
uses: docker/setup-buildx-action@v2
- name: Build
uses: docker/build-push-action@v4
with:
context: .
file: ./docker/${{ matrix.dockerfile }}
platforms: ${{ matrix.platforms }}
file: ./docker/Dockerfile-base
push: ${{ github.event_name != 'pull_request' }}
tags: ${{ steps.metadata.outputs.tags }}-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
tags: ${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
labels: ${{ steps.metadata.outputs.labels }}
build-args: |
CUDA_VERSION=${{ matrix.cuda_version }}
CUDNN_VERSION=${{ matrix.cudnn_version }}
CUDA=${{ matrix.cuda }}
PYTHON_VERSION=${{ matrix.python_version }}
PYTORCH_VERSION=${{ matrix.pytorch }}
TORCH_CUDA_ARCH_LIST=${{ matrix.torch_cuda_arch_list }}
build-base-uv:
if: ${{ github.repository_owner == 'axolotl-ai-cloud' && (github.event_name != 'pull_request' || !github.event.pull_request.draft) }}
timeout-minutes: 480
runs-on: ubuntu-latest-m
env:
HAS_DOCKERHUB_CREDS: ${{ secrets.DOCKERHUB_USERNAME != '' && secrets.DOCKERHUB_TOKEN != '' }}
strategy:
fail-fast: false
matrix:
include:
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.8.0
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-uv-base"
platforms: "linux/amd64"
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.1
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-uv-base"
platforms: "linux/amd64,linux/arm64"
- cuda: "128"
cuda_version: 12.8.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.0
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
dockerfile: "Dockerfile-uv-base"
platforms: "linux/amd64,linux/arm64"
- cuda: "130"
cuda_version: 13.0.0
cudnn_version: ""
python_version: "3.11"
pytorch: 2.9.1
torch_cuda_arch_list: "9.0+PTX"
dockerfile: "Dockerfile-uv-base"
platforms: "linux/amd64,linux/arm64"
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
with:
images: |
axolotlai/axolotl-base-uv
- name: Login to Docker Hub
uses: docker/login-action@v2
if: ${{ github.event_name != 'pull_request' && env.HAS_DOCKERHUB_CREDS == 'true' }}
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Build
uses: docker/build-push-action@v4
with:
context: .
file: ./docker/${{ matrix.dockerfile }}
platforms: ${{ matrix.platforms }}
push: ${{ github.event_name != 'pull_request' }}
tags: ${{ steps.metadata.outputs.tags }}-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
labels: ${{ steps.metadata.outputs.labels }}
build-args: |
CUDA_VERSION=${{ matrix.cuda_version }}
CUDNN_VERSION=${{ matrix.cudnn_version }}
CUDA=${{ matrix.cuda }}
PYTHON_VERSION=${{ matrix.python_version }}
PYTORCH_VERSION=${{ matrix.pytorch }}

View File

@@ -1,37 +0,0 @@
name: Publish Docs
on:
push:
branches:
- main
permissions:
contents: write
pages: write
jobs:
build-deploy:
runs-on: ubuntu-latest
steps:
- name: cleanup node
run: |
sudo rm -rf /usr/share/dotnet /usr/local/lib/android /opt/ghc /opt/hostedtoolcache/CodeQL
- name: Check out repository
uses: actions/checkout@v4
- name: Set up Quarto
uses: quarto-dev/quarto-actions/setup@v2
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Install dependencies
run: |
python3 -m pip install jupyter quartodoc
python3 -m pip install -e .
- name: Build autodoc
run: quartodoc build
- name: Publish to GitHub Pages (and render)
uses: quarto-dev/quarto-actions/publish@v2
with:
target: gh-pages
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}

View File

@@ -1,27 +0,0 @@
name: lint
on:
# check on PRs, and manual triggers
merge_group:
pull_request:
types: [opened, synchronize, reopened, ready_for_review]
paths:
- '**.py'
- 'requirements.txt'
- '.github/workflows/*.yml'
- "*.[q]md"
- "examples/**/*.y[a]?ml"
- ".pre-commit-config.yaml"
workflow_dispatch:
jobs:
pre-commit:
name: pre-commit
runs-on: ubuntu-latest
if: ${{ !github.event.pull_request.draft }}
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.11"
cache: 'pip' # caching pip dependencies
- uses: pre-commit/action@v3.0.1

View File

@@ -4,197 +4,104 @@ on:
push:
branches:
- "main"
tags:
- "v*"
workflow_dispatch:
jobs:
build-axolotl:
if: ${{ ! contains(github.event.commits[0].message, '[skip docker]') && github.repository_owner == 'axolotl-ai-cloud' }}
if: github.repository_owner == 'OpenAccess-AI-Collective'
# this job needs to be run on self-hosted GPU runners...
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
- cuda: 118
cuda_version: 11.8.0
python_version: "3.9"
pytorch: 2.0.1
axolotl_extras:
platforms: "linux/amd64"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.0
- cuda: 118
cuda_version: 11.8.0
python_version: "3.10"
pytorch: 2.0.1
axolotl_extras:
platforms: "linux/amd64,linux/arm64"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
platforms: "linux/amd64,linux/arm64"
is_latest: true
- cuda: 130
cuda_version: 13.0.0
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
platforms: "linux/amd64,linux/arm64"
runs-on: axolotl-gpu-runner
- cuda: 118
cuda_version: 11.8.0
python_version: "3.9"
pytorch: 2.0.1
axolotl_extras: gptq
runs-on: self-hosted
steps:
- name: Checkout
uses: actions/checkout@v4
uses: actions/checkout@v3
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
uses: docker/metadata-action@v3
with:
images: |
axolotlai/axolotl
tags: |
type=ref,event=branch
type=pep440,pattern={{version}}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
images: winglian/axolotl
- name: Login to Docker Hub
uses: docker/login-action@v3
uses: docker/login-action@v2
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
# guidance for testing before pushing: https://docs.docker.com/build/ci/github-actions/test-before-push/
- name: Build and export to Docker
uses: docker/build-push-action@v5
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v2
- name: Build
uses: docker/build-push-action@v4
with:
context: .
platforms: ${{ matrix.platforms }}
build-args: |
BASE_TAG=${{ github.ref_type == 'tag' && 'main' || github.ref_name }}-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}
BASE_TAG=${{ github.ref_name }}-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}
CUDA=${{ matrix.cuda }}
PYTORCH_VERSION=${{ matrix.pytorch }}
AXOLOTL_ARGS=${{ matrix.axolotl_args }}
AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}
file: ./docker/Dockerfile
push: ${{ github.event_name != 'pull_request' }}
tags: |
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}
${{ (matrix.is_latest) && format('{0}-latest', steps.metadata.outputs.tags) || '' }}
tags: ${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
labels: ${{ steps.metadata.outputs.labels }}
build-axolotl-cloud:
build-axolotl-runpod:
needs: build-axolotl
if: ${{ ! contains(github.event.commits[0].message, '[skip docker]') && github.repository_owner == 'axolotl-ai-cloud' }}
if: github.repository_owner == 'OpenAccess-AI-Collective'
# this job needs to be run on self-hosted GPU runners...
strategy:
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
- cuda: 118
cuda_version: 11.8.0
python_version: "3.9"
pytorch: 2.0.1
axolotl_extras:
platforms: "linux/amd64"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.0
axolotl_extras:
platforms: "linux/amd64,linux/arm64"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
- cuda: 118
cuda_version: 11.8.0
python_version: "3.10"
pytorch: 2.0.1
axolotl_extras:
is_latest: true
platforms: "linux/amd64,linux/arm64"
- cuda: 130
cuda_version: 13.0.0
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
platforms: "linux/amd64,linux/arm64"
runs-on: axolotl-gpu-runner
- cuda: 118
cuda_version: 11.8.0
python_version: "3.9"
pytorch: 2.0.1
axolotl_extras: gptq
runs-on: self-hosted
steps:
- name: Checkout
uses: actions/checkout@v4
uses: actions/checkout@v3
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
uses: docker/metadata-action@v3
with:
images: |
axolotlai/axolotl-cloud
tags: |
type=ref,event=branch
type=pep440,pattern={{version}}
images: winglian/axolotl-runpod
- name: Login to Docker Hub
uses: docker/login-action@v3
uses: docker/login-action@v2
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
uses: docker/setup-buildx-action@v2
- name: Build
uses: docker/build-push-action@v5
uses: docker/build-push-action@v4
with:
context: .
platforms: ${{ matrix.platforms }}
build-args: |
BASE_TAG=${{ github.ref_type == 'tag' && 'main' || github.ref_name }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
BASE_TAG=${{ github.ref_name }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
CUDA=${{ matrix.cuda }}
file: ./docker/Dockerfile-cloud
push: ${{ github.event_name != 'pull_request' }}
tags: |
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
${{ (matrix.is_latest) && format('{0}-latest', steps.metadata.outputs.tags) || '' }}
labels: ${{ steps.metadata.outputs.labels }}
build-axolotl-cloud-no-tmux:
needs: build-axolotl
if: ${{ ! contains(github.event.commits[0].message, '[skip docker]') && github.repository_owner == 'axolotl-ai-cloud' }}
# this job needs to be run on self-hosted GPU runners...
strategy:
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
is_latest: true
- cuda: 130
cuda_version: 13.0.0
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
is_latest:
runs-on: axolotl-gpu-runner
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
with:
images: |
axolotlai/axolotl-cloud-term
tags: |
type=ref,event=branch
type=pep440,pattern={{version}}
- name: Login to Docker Hub
uses: docker/login-action@v3
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Build
uses: docker/build-push-action@v5
with:
context: .
platforms: linux/amd64,linux/arm64
build-args: |
BASE_TAG=${{ github.ref_type == 'tag' && 'main' || github.ref_name }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
CUDA=${{ matrix.cuda }}
file: ./docker/Dockerfile-cloud-no-tmux
file: ./docker/Dockerfile-runpod
push: ${{ github.event_name != 'pull_request' }}
tags: |
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}

View File

@@ -1,79 +0,0 @@
name: docker-multigpu-tests-biweekly
on:
pull_request:
paths:
- 'tests/e2e/multigpu/**.py'
- 'requirements.txt'
- 'setup.py'
- 'pyproject.toml'
- '.github/workflows/multi-gpu-e2e.yml'
- 'src/axolotl/core/trainers/mixins/sequence_parallel.py'
- 'src/axolotl/utils/distributed.py'
workflow_dispatch:
schedule:
- cron: '0 0 * * 1,4' # Runs at 00:00 UTC every monday & thursday
# Cancel jobs on the same ref if a new one is triggered
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}
cancel-in-progress: ${{ github.ref != 'refs/heads/main' }}
env:
MODAL_IMAGE_BUILDER_VERSION: "2025.06"
jobs:
test-axolotl-multigpu:
if: ${{ ! contains(github.event.commits[0].message, '[skip e2e]') && github.repository_owner == 'axolotl-ai-cloud' && (github.event_name != 'pull_request' || !github.event.pull_request.draft) }}
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
axolotl_extras: fbgemm-gpu
num_gpus: 2
nightly_build: "true"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras: fbgemm-gpu
num_gpus: 2
nightly_build: "true"
- cuda: 130
cuda_version: 13.0.0
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
# axolotl_extras: fbgemm-gpu
num_gpus: 2
nightly_build: "true"
runs-on: [self-hosted, modal]
timeout-minutes: 120
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "NIGHTLY_BUILD=${{ matrix.nightly_build }}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run -m cicd.multigpu

View File

@@ -1,107 +0,0 @@
name: docker-nightlies
on:
workflow_dispatch:
schedule:
- cron: '0 0 * * *' # Runs at 00:00 UTC every day
jobs:
build-axolotl:
if: ${{ ! contains(github.event.commits[0].message, '[skip docker]') && github.repository_owner == 'axolotl-ai-cloud' }}
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
axolotl_extras:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
runs-on: axolotl-gpu-runner
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
with:
images: |
axolotlai/axolotl
tags: |
type=raw,value={{ branch }}-{{ date 'YYYYMMDD' }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Login to Docker Hub
uses: docker/login-action@v3
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
# guidance for testing before pushing: https://docs.docker.com/build/ci/github-actions/test-before-push/
- name: Build and export to Docker
uses: docker/build-push-action@v5
with:
context: .
build-args: |
BASE_TAG=${{ github.ref_name }}-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}
CUDA=${{ matrix.cuda }}
PYTORCH_VERSION=${{ matrix.pytorch }}
AXOLOTL_ARGS=${{ matrix.axolotl_args }}
file: ./docker/Dockerfile
push: ${{ github.event_name != 'pull_request' }}
tags: |
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
labels: ${{ steps.metadata.outputs.labels }}
build-axolotl-cloud:
needs: build-axolotl
if: ${{ ! contains(github.event.commits[0].message, '[skip docker]') && github.repository_owner == 'axolotl-ai-cloud' }}
# this job needs to be run on self-hosted GPU runners...
strategy:
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
axolotl_extras:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
axolotl_extras:
runs-on: axolotl-gpu-runner
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Docker metadata
id: metadata
uses: docker/metadata-action@v5
with:
images: |
axolotlai/axolotl-cloud
tags: |
type=raw,value={{ branch }}-{{ date 'YYYYMMDD' }}
- name: Login to Docker Hub
uses: docker/login-action@v3
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Build
uses: docker/build-push-action@v5
with:
context: .
build-args: |
BASE_TAG=${{ github.ref_name }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
CUDA=${{ matrix.cuda }}
file: ./docker/Dockerfile-cloud
push: ${{ github.event_name != 'pull_request' }}
tags: |
${{ steps.metadata.outputs.tags }}-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}${{ matrix.axolotl_extras != '' && '-' || '' }}${{ matrix.axolotl_extras }}
labels: ${{ steps.metadata.outputs.labels }}

16
.github/workflows/pre-commit.yml vendored Normal file
View File

@@ -0,0 +1,16 @@
name: pre-commit
on:
pull_request:
push:
jobs:
pre-commit:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v3
- uses: actions/setup-python@v4
with:
python-version: "3.9"
cache: 'pip' # caching pip dependencies
- uses: pre-commit/action@v3.0.0

View File

@@ -1,40 +0,0 @@
name: Pre-commit auto-update
on:
schedule:
- cron: '0 0 1 * *' # Run monthly
workflow_dispatch: # Manual kickoff
jobs:
auto-update:
runs-on: ubuntu-latest
permissions:
contents: write
pull-requests: write
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Update pre-commit hooks
id: update
run: |
pip install pre-commit
pre-commit autoupdate
if [[ -n $(git status --porcelain) ]]; then
echo "changes=true" >> $GITHUB_OUTPUT
fi
- name: Create Pull Request
if: steps.update.outputs.changes == 'true'
uses: peter-evans/create-pull-request@v6
with:
token: ${{ secrets.GITHUB_TOKEN }}
branch: update/pre-commit-hooks
delete-branch: true
title: "chore: update pre-commit hooks"
commit-message: "chore: update pre-commit hooks"
body: |
Automated PR to update pre-commit hooks to their latest versions.

View File

@@ -1,83 +0,0 @@
name: Preview
on:
workflow_dispatch:
pull_request:
types: [opened, synchronize, reopened, ready_for_review]
# Run the workflow only when one of these files changes
paths:
- '**/*.md' # any Markdown file
- '**/*.qmd' # any Quarto file
- '_quarto.yml'
- docs/scripts/generate_config_docs.py
- src/axolotl/utils/schemas/**.py
- .github/workflows/preview-docs.yml
permissions:
checks: write
contents: write
deployments: write
issues: write
discussions: write
pages: write
pull-requests: write
statuses: write
jobs:
preview:
runs-on: ubuntu-latest
if: ${{ !github.event.pull_request.draft }}
steps:
- name: cleanup node
run: |
sudo rm -rf /usr/share/dotnet /usr/local/lib/android /opt/ghc /opt/hostedtoolcache/CodeQL
- name: Check out repository
uses: actions/checkout@v4
with:
ref: ${{ github.event.pull_request.head.sha }}
- name: Set up Quarto
uses: quarto-dev/quarto-actions/setup@v2
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Install dependencies
run: |
python3 -m pip install jupyter quartodoc
python3 -m pip install -e .
- name: Build autodoc
run: quartodoc build
- name: Quarto render
run: quarto render
- name: Netlify Publish
uses: nwtgck/actions-netlify@v3.0
if: ${{ github.event.pull_request.head.repo.full_name == github.repository }}
id: netlify
with:
publish-dir: './_site'
enable-pull-request-comment: false
enable-github-deployment: false
github-token: ${{ secrets.GITHUB_TOKEN }}
deploy-message: "Deployed On Netlify"
github-deployment-environment: 'preview'
github-deployment-description: 'Preview Deployment'
env:
NETLIFY_AUTH_TOKEN: ${{ secrets.NETLIFY_AUTH_TOKEN }}
NETLIFY_SITE_ID: ${{ secrets.NETLIFY_SITE_ID }}
- name: Update PR with preview link
if: ${{ steps.netlify.outcome == 'success' }}
uses: marocchino/sticky-pull-request-comment@v2
with:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
message: |
📖 **Documentation Preview**: ${{ steps.netlify.outputs.deploy-url }}
Deployed on Netlify from commit ${{ github.event.pull_request.head.sha }}

View File

@@ -1,60 +0,0 @@
name: publish pypi
on:
push:
tags:
- 'v*'
workflow_dispatch:
jobs:
setup_release:
name: Create Release
runs-on: ubuntu-latest
permissions:
contents: write
steps:
- name: Checkout code
uses: actions/checkout@v4
- name: Create release
env:
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
run: gh release create "$GITHUB_REF_NAME" --generate-notes
pypi-publish:
name: Upload release to PyPI
runs-on: ubuntu-latest
needs: [setup_release]
environment:
name: pypi
url: https://pypi.org/p/axolotl
permissions:
id-token: write # IMPORTANT: this permission is mandatory for trusted publishing
steps:
- name: Check out repository code
uses: actions/checkout@v4
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install dependencies
run: |
pip3 install wheel packaging==23.2
pip3 install --no-build-isolation -e .
pip3 install -r requirements-dev.txt -r requirements-tests.txt
- name: Extract tag name
id: tag
run: echo ::set-output name=TAG_NAME::$(echo $GITHUB_REF | cut -d / -f 3)
- name: Update version in setup.py
run: |
sed -i -E 's/version="([0-9.]+)",/version="${{ steps.tag.outputs.TAG_NAME }}",/g' setup.py
- name: Build a source dist
run: |
python setup.py sdist
- name: Publish package distributions to PyPI
uses: pypa/gh-action-pypi-publish@release/v1

View File

@@ -1,181 +0,0 @@
name: Tests Nightly against upstream main
on:
workflow_dispatch:
schedule:
- cron: '0 0 * * *' # Runs at 00:00 UTC every day
jobs:
pre-commit:
name: pre-commit
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.11"
cache: 'pip' # caching pip dependencies
- uses: pre-commit/action@v3.0.1
env:
SKIP: no-commit-to-branch
pytest:
name: PyTest
runs-on: ubuntu-latest
strategy:
fail-fast: false
max-parallel: 2
matrix:
python_version: ["3.11"]
pytorch_version: ["2.8.0", "2.9.0", "2.9.1"]
timeout-minutes: 20
steps:
- name: Check out repository code
uses: actions/checkout@v4
- name: Restore Cache from S3
id: hf-cache-restore-s3
run: |
mkdir -p /home/runner/.cache/huggingface/hub
curl -L https://d1dttdx32dkk5p.cloudfront.net/hf-cache.tar.zst | tar -xf - -C /home/runner/.cache/huggingface/hub/ --use-compress-program unzstd
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: ${{ matrix.python_version }}
cache: 'pip' # caching pip dependencies
- name: upgrade pip
run: |
pip3 install --upgrade pip
pip3 install --upgrade packaging==23.2 setuptools==75.8.0 wheel
- name: Install PyTorch
run: |
pip3 install torch==${{ matrix.pytorch_version }} torchvision
- name: Update requirements.txt
run: |
sed -i 's#^transformers.*#transformers @ git+https://github.com/huggingface/transformers.git@main#' requirements.txt
sed -i 's#^peft.*#peft @ git+https://github.com/huggingface/peft.git@main#' requirements.txt
sed -i 's#^accelerate.*#accelerate @ git+https://github.com/huggingface/accelerate.git@main#' requirements.txt
sed -i 's#^trl.*#trl @ git+https://github.com/huggingface/trl.git@main#' requirements.txt
sed -i 's#^datasets.*#datasets @ git+https://github.com/huggingface/datasets.git@main#' requirements.txt
- name: Install dependencies
run: |
pip3 show torch
pip3 install --no-build-isolation -U -e .
python scripts/unsloth_install.py | sh
python scripts/cutcrossentropy_install.py | sh
pip3 install -r requirements-dev.txt -r requirements-tests.txt
- name: Make sure PyTorch version wasn't clobbered
run: |
python -c "import torch; assert '${{ matrix.pytorch_version }}' in torch.__version__"
- name: Ensure axolotl CLI was installed
run: |
axolotl --help
- name: Run tests
run: |
pytest -v --durations=10 -n8 --dist loadfile --ignore=tests/e2e/ --ignore=tests/patched/ --ignore=tests/cli/ tests/
pytest -v --durations=10 tests/patched/
pytest -v --durations=10 tests/cli/
- name: cleanup pip cache
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
docker-e2e-tests:
if: github.repository_owner == 'axolotl-ai-cloud'
# this job needs to be run on self-hosted GPU runners...
runs-on: [self-hosted, modal]
timeout-minutes: 120
needs: [pre-commit, pytest]
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
num_gpus: 1
axolotl_extras:
nightly_build: "true"
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
num_gpus: 1
axolotl_extras:
nightly_build: "true"
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "NIGHTLY_BUILD=${{ matrix.nightly_build }}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run cicd.e2e_tests
docker-e2e-multigpu-tests:
if: github.repository_owner == 'axolotl-ai-cloud'
# this job needs to be run on self-hosted GPU runners...
runs-on: [self-hosted, modal]
timeout-minutes: 120
needs: [pre-commit, pytest, docker-e2e-tests]
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
num_gpus: 2
axolotl_extras:
nightly_build: "true"
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "NIGHTLY_BUILD=${{ matrix.nightly_build }}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run cicd.multigpu

View File

@@ -1,391 +1,32 @@
name: Tests
name: PyTest
on:
# check on push/merge to main, PRs, and manual triggers
merge_group:
push:
branches:
- "main"
paths:
- '**.py'
- 'requirements.txt'
- '.github/workflows/*.yml'
- 'requirements-tests.txt'
- 'cicd/cicd.sh'
- 'cicd/Dockerfile.jinja'
pull_request:
types: [opened, synchronize, reopened, ready_for_review]
paths:
- '**.py'
- 'requirements.txt'
- '.github/workflows/*.yml'
- 'requirements-tests.txt'
- 'cicd/cicd.sh'
- 'cicd/Dockerfile.jinja'
workflow_dispatch:
# Cancel jobs on the same ref if a new one is triggered
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}
cancel-in-progress: ${{ github.ref != 'refs/heads/main' }}
env:
TRANSFORMERS_IS_CI: "yes"
jobs:
pre-commit:
name: pre-commit
test:
runs-on: ubuntu-latest
if: ${{ !github.event.pull_request.draft }}
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.11"
cache: 'pip' # caching pip dependencies
- uses: pre-commit/action@v3.0.1
env:
SKIP: no-commit-to-branch
pytest:
name: PyTest
runs-on: ubuntu-latest
if: ${{ !github.event.pull_request.draft }}
# needs: [preload-cache]
strategy:
fail-fast: false
matrix:
python_version: ["3.11"]
pytorch_version: ["2.8.0", "2.9.0", "2.9.1"]
timeout-minutes: 20
python_version: ["3.9", "3.10"]
timeout-minutes: 10
steps:
- name: cleanup node
run: |
sudo rm -rf /usr/share/dotnet /usr/local/lib/android /opt/ghc /opt/hostedtoolcache/CodeQL
- name: Check out repository code
uses: actions/checkout@v4
- name: Restore Cache from S3
id: hf-cache-restore-s3
run: |
mkdir -p ~/.cache/huggingface/hub
curl -L https://d1dttdx32dkk5p.cloudfront.net/hf-cache.tar.zst | tar -xpf - -C ~/.cache/huggingface/hub/ --use-compress-program unzstd --strip-components=1
ls -ltr ~/.cache/huggingface/hub/
uses: actions/checkout@v3
- name: Setup Python
uses: actions/setup-python@v5
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python_version }}
cache: 'pip' # caching pip dependencies
- name: upgrade pip
run: |
pip3 install --upgrade pip
pip3 install --upgrade packaging==23.2 setuptools==75.8.0 wheel
- name: Install PyTorch
run: |
pip3 install --no-cache-dir torch==${{ matrix.pytorch_version }} torchvision
- name: Install dependencies
run: |
pip3 show torch
pip3 install --no-cache-dir --no-build-isolation -U -e .
python scripts/unsloth_install.py | sh
python scripts/cutcrossentropy_install.py | sh
pip3 install -r requirements-dev.txt -r requirements-tests.txt
- name: cleanup pip cache
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Make sure PyTorch version wasn't clobbered
run: |
python -c "import torch; assert '${{ matrix.pytorch_version }}' in torch.__version__"
- name: Ensure axolotl CLI was installed
run: |
axolotl --help
- name: Pre-Download dataset fixture
run: |
huggingface-cli download --repo-type=dataset axolotl-ai-internal/axolotl-oss-dataset-fixtures
- name: Show HF cache
run: hf cache scan
pip install -e .[peft]
pip install -r requirements-tests.txt
- name: Run tests
run: |
df -h
pytest -v --durations=10 -n4 --dist loadfile --ignore=tests/e2e/ --ignore=tests/patched/ --ignore=tests/cli/ --ignore=tests/monkeypatch/ tests/ --cov=axolotl --cov-report=xml
df -h
pytest -v --durations=10 tests/monkeypatch/ --cov=axolotl --cov-append --cov-report=xml
df -h
pytest -v --durations=10 tests/patched/ --cov=axolotl --cov-append --cov-report=xml
df -h
pytest -v --durations=10 tests/cli/ --cov=axolotl --cov-append --cov-report=xml
- name: Show HF cache
run: hf cache scan
- name: Upload coverage to Codecov
uses: codecov/codecov-action@v5
with:
token: ${{ secrets.CODECOV_TOKEN }}
files: ./coverage.xml
flags: unittests,pytorch-${{ matrix.pytorch_version }}
fail_ci_if_error: false
pytest-sdist:
name: PyTest from Source Dist
runs-on: ubuntu-latest
if: ${{ !github.event.pull_request.draft }}
strategy:
fail-fast: false
matrix:
python_version: ["3.11"]
pytorch_version: ["2.8.0", "2.9.0", "2.9.1"]
timeout-minutes: 20
steps:
- name: cleanup node
run: |
sudo rm -rf /usr/share/dotnet /usr/local/lib/android /opt/ghc /opt/hostedtoolcache/CodeQL
- name: Check out repository code
uses: actions/checkout@v4
- name: Restore Cache from S3
id: hf-cache-restore-s3
run: |
mkdir -p ~/.cache/huggingface/hub
curl -L https://d1dttdx32dkk5p.cloudfront.net/hf-cache.tar.zst | tar -xpf - -C ~/.cache/huggingface/hub/ --use-compress-program unzstd --strip-components=1
ls -ltr ~/.cache/huggingface/hub/
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: ${{ matrix.python_version }}
cache: 'pip' # caching pip dependencies
- name: upgrade pip
run: |
pip3 install --upgrade pip
pip3 install --upgrade packaging==23.2 setuptools==75.8.0 setuptools_scm build wheel psutil
- name: Install PyTorch
run: |
pip3 install --no-cache-dir torch==${{ matrix.pytorch_version }} torchvision
- name: Install dependencies
run: |
pip3 show torch
python -m build --no-isolation --sdist
pip3 install --no-cache-dir --no-build-isolation dist/axolotl*.tar.gz
python scripts/unsloth_install.py | sh
python scripts/cutcrossentropy_install.py | sh
pip3 install -r requirements-dev.txt -r requirements-tests.txt
- name: cleanup pip cache
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Make sure PyTorch version wasn't clobbered
run: |
python -c "import torch; assert '${{ matrix.pytorch_version }}' in torch.__version__"
- name: Ensure axolotl CLI was installed
run: |
axolotl --help
- name: Show HF cache
run: hf cache scan
- name: Run tests
run: |
pytest -v --durations=10 -n4 --dist loadfile --ignore=tests/e2e/ --ignore=tests/patched/ --ignore=tests/cli/ --ignore=tests/monkeypatch/ tests/ --cov=axolotl --cov-report=xml
pytest -v --durations=10 tests/monkeypatch/ --cov=axolotl --cov-append --cov-report=xml
pytest -v --durations=10 tests/cli/
- name: Show HF cache
run: hf cache scan
gate-skip-e2e:
needs: [pre-commit, pytest, pytest-sdist]
runs-on: ubuntu-latest
outputs:
skip: ${{ steps.compute.outputs.skip }}
steps:
- uses: actions/github-script@v7
id: compute
with:
script: |
const token = /\[skip-e2e\]/i;
let msg = '';
if (context.eventName === 'push') {
msg = context.payload.head_commit?.message || '';
} else if (context.eventName === 'pull_request') {
const { owner, repo } = context.repo;
const prNumber = context.payload.pull_request.number;
const commits = await github.paginate(
github.rest.pulls.listCommits,
{ owner, repo, pull_number: prNumber, per_page: 100 }
);
msg = commits.at(-1)?.commit?.message || '';
}
const title = context.payload.pull_request?.title || '';
const body = context.payload.pull_request?.body || '';
const skip = token.test(msg) || token.test(title) || token.test(body);
core.setOutput('skip', String(skip));
docker-e2e-tests-1st:
# Run this job first as a gate for running the remainder of the test matrix
if: >
github.repository_owner == 'axolotl-ai-cloud' &&
(github.event_name != 'pull_request' || !github.event.pull_request.draft) &&
needs.gate-skip-e2e.outputs.skip != 'true'
# this job needs to be run on self-hosted GPU runners...
runs-on: [self-hosted, modal]
timeout-minutes: 120
needs: [pre-commit, pytest, pytest-sdist, gate-skip-e2e]
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
num_gpus: 1
axolotl_extras:
dockerfile: "Dockerfile-uv.jinja"
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "MODAL_IMAGE_BUILDER_VERSION=2024.10" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
echo "E2E_DOCKERFILE=${{ matrix.dockerfile || 'Dockerfile.jinja'}}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run cicd.e2e_tests
docker-e2e-tests:
if: >
github.repository_owner == 'axolotl-ai-cloud' &&
(github.event_name != 'pull_request' || !github.event.pull_request.draft) &&
needs.gate-skip-e2e.outputs.skip != 'true'
# this job needs to be run on self-hosted GPU runners...
runs-on: [self-hosted, modal]
timeout-minutes: 120
# Only run the remainder of the matrix if the first e2e check passed;
# this is to save on wasted compute costs for known failures that get caught in the first run
needs: [pre-commit, pytest, gate-skip-e2e, docker-e2e-tests-1st]
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.8.0
num_gpus: 1
gpu_type: "B200"
axolotl_extras: fbgemm-gpu
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
num_gpus: 1
axolotl_extras:
- cuda: 130
cuda_version: 13.0.0
python_version: "3.11"
pytorch: 2.9.1
num_gpus: 1
axolotl_extras:
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "MODAL_IMAGE_BUILDER_VERSION=2024.10" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "GPU_TYPE=${{ matrix.gpu_type || 'L40S'}}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
echo "E2E_DOCKERFILE=${{ matrix.dockerfile || 'Dockerfile.jinja'}}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run cicd.e2e_tests
docker-e2e-cleanup:
runs-on: [self-hosted, modal]
timeout-minutes: 90
needs: [docker-e2e-tests]
if: ${{ !github.event.pull_request.draft }}
strategy:
fail-fast: false
matrix:
include:
- cuda: 128
cuda_version: 12.8.1
python_version: "3.11"
pytorch: 2.9.1
num_gpus: 1
axolotl_extras:
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==1.3.0.post1 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ matrix.python_version }}-cu${{ matrix.cuda }}-${{ matrix.pytorch }}" >> $GITHUB_ENV
echo "PYTORCH_VERSION=${{ matrix.pytorch}}" >> $GITHUB_ENV
echo "AXOLOTL_ARGS=${{ matrix.axolotl_args}}" >> $GITHUB_ENV
echo "AXOLOTL_EXTRAS=${{ matrix.axolotl_extras}}" >> $GITHUB_ENV
echo "CUDA=${{ matrix.cuda }}" >> $GITHUB_ENV
echo "MODAL_IMAGE_BUILDER_VERSION=2024.10" >> $GITHUB_ENV
echo "N_GPUS=${{ matrix.num_gpus }}" >> $GITHUB_ENV
echo "CODECOV_TOKEN=${{ secrets.CODECOV_TOKEN }}" >> $GITHUB_ENV
- name: Run tests job on Modal
run: |
modal run cicd.cleanup
pytest tests/

32
.gitignore vendored
View File

@@ -1,9 +1,5 @@
**/axolotl.egg-info
configs
last_run_prepared/
outputs
.vscode
_site/
# Byte-compiled / optimized / DLL files
__pycache__/
@@ -134,7 +130,6 @@ venv/
ENV/
env.bak/
venv.bak/
venv3.10/
# Spyder project settings
.spyderproject
@@ -166,30 +161,3 @@ cython_debug/
# and can be added to the global gitignore or merged into this file. For a more nuclear
# option (not recommended) you can uncomment the following to ignore the entire idea folder.
.idea/
# WandB
# wandb creates a folder to store logs for training runs
wandb
# Runs
lora-out/*
qlora-out/*
mlruns/*
/.quarto/
prepared-datasets/
submit.sh
*.out*
# Quartodoc generated files
objects.json
site_libs/
typings/
out/
# vim
*.swp
# scm auto-versioning
src/axolotl/_version.py

2
.isort.cfg Normal file
View File

@@ -0,0 +1,2 @@
[settings]
profile=black

View File

@@ -1,5 +1,5 @@
[mypy]
plugins = pydantic.mypy
exclude = venv
[mypy-alpaca_lora_4bit.*]
@@ -8,15 +8,6 @@ ignore_missing_imports = True
[mypy-axolotl.monkeypatch.*]
ignore_errors = True
[mypy-axolotl.models.mixtral.*]
ignore_errors = True
[mypy-axolotl.integrations.liger.models.*]
ignore_errors = True
[mypy-axolotl.models.phi.*]
ignore_errors = True
[mypy-flash_attn.*]
ignore_missing_imports = True
@@ -29,15 +20,9 @@ ignore_missing_imports = True
[mypy-peft]
ignore_missing_imports = True
[mypy-wandb]
ignore_missing_imports = True
[mypy-bitsandbytes]
ignore_missing_imports = True
[mypy-requests]
ignore_missing_imports = True
[mypy-datasets]
ignore_missing_imports = True

View File

@@ -3,30 +3,37 @@ default_language_version:
repos:
- repo: https://github.com/pre-commit/pre-commit-hooks
rev: v6.0.0
rev: v4.4.0
hooks:
- id: check-yaml
- id: end-of-file-fixer
- id: trailing-whitespace
- id: no-commit-to-branch
args: ['--branch', 'main']
- repo: https://github.com/astral-sh/ruff-pre-commit
rev: v0.14.10
- repo: https://github.com/psf/black
rev: 23.3.0
hooks:
- id: ruff
args: [--fix]
- id: ruff-format
- id: black
- repo: https://github.com/pycqa/isort
rev: 5.12.0
hooks:
- id: isort
- repo: https://github.com/PyCQA/flake8
rev: 6.0.0
hooks:
- id: flake8
- repo: https://github.com/PyCQA/pylint
rev: v2.17.4
hooks:
- id: pylint
- repo: https://github.com/pre-commit/mirrors-mypy
rev: v1.19.1
rev: v1.3.0
hooks:
- id: mypy
additional_dependencies:
[
'types-PyYAML',
'pydantic>=2.5.3',
]
- repo: https://github.com/PyCQA/bandit
rev: 1.9.2
rev: 1.7.5
hooks:
- id: bandit
args: [

14
.pylintrc Normal file
View File

@@ -0,0 +1,14 @@
[MASTER]
init-hook="from pylint.config import find_pylintrc; import os, sys; sys.path.append(os.path.dirname(find_pylintrc()))"
[TYPECHECK]
# List of members which are set dynamically and missed by Pylint inference
# system, and so shouldn't trigger E1101 when accessed.
generated-members=numpy.*, torch.*
[pylint.messages_control]
disable=missing-function-docstring, line-too-long, import-error,
too-many-arguments, too-many-locals, too-many-statements, too-many-branches, too-few-public-methods,
too-many-instance-attributes, fixme, import-outside-toplevel, logging-fstring-interpolation,

161
.runpod/.gitignore vendored
View File

@@ -1,161 +0,0 @@
# Byte-compiled / optimized / DLL files
__pycache__/
*.py[cod]
*$py.class
# C extensions
*.so
# Distribution / packaging
.Python
build/
develop-eggs/
dist/
downloads/
eggs/
.eggs/
lib/
lib64/
parts/
sdist/
var/
wheels/
share/python-wheels/
*.egg-info/
.installed.cfg
*.egg
MANIFEST
# PyInstaller
# Usually these files are written by a python script from a template
# before PyInstaller builds the exe, so as to inject date/other infos into it.
*.manifest
*.spec
# Installer logs
pip-log.txt
pip-delete-this-directory.txt
# Unit test / coverage reports
htmlcov/
.tox/
.nox/
.coverage
.coverage.*
.cache
nosetests.xml
coverage.xml
*.cover
*.py,cover
.hypothesis/
.pytest_cache/
cover/
# Translations
*.mo
*.pot
# Django stuff:
*.log
local_settings.py
db.sqlite3
db.sqlite3-journal
# Flask stuff:
instance/
.webassets-cache
# Scrapy stuff:
.scrapy
# Sphinx documentation
docs/_build/
# PyBuilder
.pybuilder/
target/
# Jupyter Notebook
.ipynb_checkpoints
# IPython
profile_default/
ipython_config.py
# pyenv
# For a library or package, you might want to ignore these files since the code is
# intended to run in multiple environments; otherwise, check them in:
# .python-version
# pipenv
# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control.
# However, in case of collaboration, if having platform-specific dependencies or dependencies
# having no cross-platform support, pipenv may install dependencies that don't work, or not
# install all needed dependencies.
#Pipfile.lock
# poetry
# Similar to Pipfile.lock, it is generally recommended to include poetry.lock in version control.
# This is especially recommended for binary packages to ensure reproducibility, and is more
# commonly ignored for libraries.
# https://python-poetry.org/docs/basic-usage/#commit-your-poetrylock-file-to-version-control
#poetry.lock
# pdm
# Similar to Pipfile.lock, it is generally recommended to include pdm.lock in version control.
#pdm.lock
# pdm stores project-wide configurations in .pdm.toml, but it is recommended to not include it
# in version control.
# https://pdm.fming.dev/#use-with-ide
.pdm.toml
# PEP 582; used by e.g. github.com/David-OConnor/pyflow and github.com/pdm-project/pdm
__pypackages__/
# Celery stuff
celerybeat-schedule
celerybeat.pid
# SageMath parsed files
*.sage.py
# Environments
.env
.venv
env/
venv/
ENV/
env.bak/
venv.bak/
# Spyder project settings
.spyderproject
.spyproject
# Rope project settings
.ropeproject
# mkdocs documentation
/site
# mypy
.mypy_cache/
.dmypy.json
dmypy.json
# Pyre type checker
.pyre/
# pytype static type analyzer
.pytype/
# Cython debug symbols
cython_debug/
# PyCharm
# JetBrains specific template is maintained in a separate JetBrains.gitignore that can
# be found at https://github.com/github/gitignore/blob/main/Global/JetBrains.gitignore
# and can be added to the global gitignore or merged into this file. For a more nuclear
# option (not recommended) you can uncomment the following to ignore the entire idea folder.
#.idea/
pod/scripts/config.yaml

View File

@@ -1,19 +0,0 @@
FROM axolotlai/axolotl-cloud:main-py3.11-cu124-2.6.0
COPY .runpod/requirements.txt /requirements.txt
RUN --mount=type=cache,target=/root/.cache/pip \
python3 -m pip install --upgrade pip && \
python3 -m pip install --upgrade -r /requirements.txt
# Environment settings
ARG BASE_VOLUME="/runpod-volume"
ENV BASE_VOLUME=$BASE_VOLUME
ENV HF_DATASETS_CACHE="${BASE_VOLUME}/huggingface-cache/datasets"
ENV HUGGINGFACE_HUB_CACHE="${BASE_VOLUME}/huggingface-cache/hub"
ENV HF_HUB_CACHE="${BASE_VOLUME}/huggingface-cache/hub"
ENV TRANSFORMERS_CACHE="${BASE_VOLUME}/huggingface-cache/hub"
COPY .runpod/src /src
WORKDIR /src
CMD ["python3", "/src/handler.py"]

View File

@@ -1,335 +0,0 @@
<h1>LLM Post Training- Full fine-tune, LoRA, QLoRa etc. Llama/Mistral/Gemma and more</h1>
# Configuration Options
This document outlines all available configuration options for training models. The configuration can be provided as a JSON request.
## Usage
You can use these configuration Options:
1. As a JSON request body:
```json
{
"input": {
"user_id": "user",
"model_id": "model-name",
"run_id": "run-id",
"credentials": {
"wandb_api_key": "", # add your Weights & biases key. TODO: you will be able to set this in Enviornment variables.
"hf_token": "", # add your HF_token. TODO: you will be able to set this in Enviornment variables.
},
"args": {
"base_model": "NousResearch/Llama-3.2-1B",
// ... other options
}
}
}
```
## Configuration Options
### Model Configuration
| Option | Description | Default |
| ------------------- | --------------------------------------------------------------------------------------------- | -------------------- |
| `base_model` | Path to the base model (local or HuggingFace) | Required |
| `base_model_config` | Configuration path for the base model | Same as base_model |
| `revision_of_model` | Specific model revision from HuggingFace hub | Latest |
| `tokenizer_config` | Custom tokenizer configuration path | Optional |
| `model_type` | Type of model to load | AutoModelForCausalLM |
| `tokenizer_type` | Type of tokenizer to use | AutoTokenizer |
| `hub_model_id` | Repository ID where the model will be pushed on Hugging Face Hub (format: username/repo-name) | Optional |
## Model Family Identification
| Option | Default | Description |
| -------------------------- | ------- | ------------------------------ |
| `is_falcon_derived_model` | `false` | Whether model is Falcon-based |
| `is_llama_derived_model` | `false` | Whether model is LLaMA-based |
| `is_qwen_derived_model` | `false` | Whether model is Qwen-based |
| `is_mistral_derived_model` | `false` | Whether model is Mistral-based |
## Model Configuration Overrides
| Option | Default | Description |
| ----------------------------------------------- | ---------- | ---------------------------------- |
| `overrides_of_model_config.rope_scaling.type` | `"linear"` | RoPE scaling type (linear/dynamic) |
| `overrides_of_model_config.rope_scaling.factor` | `1.0` | RoPE scaling factor |
### Model Loading Options
| Option | Description | Default |
| -------------- | ----------------------------- | ------- |
| `load_in_8bit` | Load model in 8-bit precision | false |
| `load_in_4bit` | Load model in 4-bit precision | false |
| `bf16` | Use bfloat16 precision | false |
| `fp16` | Use float16 precision | false |
| `tf32` | Use tensor float 32 precision | false |
## Memory and Device Settings
| Option | Default | Description |
| ------------------ | --------- | ----------------------- |
| `gpu_memory_limit` | `"20GiB"` | GPU memory limit |
| `lora_on_cpu` | `false` | Load LoRA on CPU |
| `device_map` | `"auto"` | Device mapping strategy |
| `max_memory` | `null` | Max memory per device |
## Training Hyperparameters
| Option | Default | Description |
| ----------------------------- | --------- | --------------------------- |
| `gradient_accumulation_steps` | `1` | Gradient accumulation steps |
| `micro_batch_size` | `2` | Batch size per GPU |
| `eval_batch_size` | `null` | Evaluation batch size |
| `num_epochs` | `4` | Number of training epochs |
| `warmup_steps` | `100` | Warmup steps |
| `warmup_ratio` | `0.05` | Warmup ratio |
| `learning_rate` | `0.00003` | Learning rate |
| `lr_quadratic_warmup` | `false` | Quadratic warmup |
| `logging_steps` | `null` | Logging frequency |
| `eval_steps` | `null` | Evaluation frequency |
| `evals_per_epoch` | `null` | Evaluations per epoch |
| `save_strategy` | `"epoch"` | Checkpoint saving strategy |
| `save_steps` | `null` | Saving frequency |
| `saves_per_epoch` | `null` | Saves per epoch |
| `save_total_limit` | `null` | Maximum checkpoints to keep |
| `max_steps` | `null` | Maximum training steps |
### Dataset Configuration
```yaml
datasets:
- path: vicgalle/alpaca-gpt4 # HuggingFace dataset or TODO: You will be able to add the local path.
type: alpaca # Format type (alpaca, gpteacher, oasst, etc.)
ds_type: json # Dataset type
data_files: path/to/data # Source data files
train_on_split: train # Dataset split to use
```
## Chat Template Settings
| Option | Default | Description |
| ------------------------ | -------------------------------- | ---------------------- |
| `chat_template` | `"tokenizer_default"` | Chat template type |
| `chat_template_jinja` | `null` | Custom Jinja template |
| `default_system_message` | `"You are a helpful assistant."` | Default system message |
## Dataset Processing
| Option | Default | Description |
| --------------------------------- | -------------------------- | ----------------------------------- |
| `dataset_prepared_path` | `"data/last_run_prepared"` | Path for prepared dataset |
| `push_dataset_to_hub` | `""` | Push dataset to HF hub |
| `dataset_processes` | `4` | Number of preprocessing processes |
| `dataset_keep_in_memory` | `false` | Keep dataset in memory |
| `shuffle_merged_datasets` | `true` | Shuffle merged datasets |
| `shuffle_before_merging_datasets` | `false` | Shuffle each dataset before merging |
| `dataset_exact_deduplication` | `true` | Deduplicate datasets |
## LoRA Configuration
| Option | Default | Description |
| -------------------------- | ---------------------- | ------------------------------ |
| `adapter` | `"lora"` | Adapter type (lora/qlora) |
| `lora_model_dir` | `""` | Directory with pretrained LoRA |
| `lora_r` | `8` | LoRA attention dimension |
| `lora_alpha` | `16` | LoRA alpha parameter |
| `lora_dropout` | `0.05` | LoRA dropout |
| `lora_target_modules` | `["q_proj", "v_proj"]` | Modules to apply LoRA |
| `lora_target_linear` | `false` | Target all linear modules |
| `peft_layers_to_transform` | `[]` | Layers to transform |
| `lora_modules_to_save` | `[]` | Modules to save |
| `lora_fan_in_fan_out` | `false` | Fan in/out structure |
## Optimization Settings
| Option | Default | Description |
| ------------------------- | ------- | -------------------------- |
| `train_on_inputs` | `false` | Train on input prompts |
| `group_by_length` | `false` | Group by sequence length |
| `gradient_checkpointing` | `false` | Use gradient checkpointing |
| `early_stopping_patience` | `3` | Early stopping patience |
## Learning Rate Scheduling
| Option | Default | Description |
| -------------------------- | ---------- | -------------------- |
| `lr_scheduler` | `"cosine"` | Scheduler type |
| `lr_scheduler_kwargs` | `{}` | Scheduler parameters |
| `cosine_min_lr_ratio` | `null` | Minimum LR ratio |
| `cosine_constant_lr_ratio` | `null` | Constant LR ratio |
| `lr_div_factor` | `null` | LR division factor |
## Optimizer Settings
| Option | Default | Description |
| ---------------------- | ------------ | ------------------- |
| `optimizer` | `"adamw_hf"` | Optimizer choice |
| `optim_args` | `{}` | Optimizer arguments |
| `optim_target_modules` | `[]` | Target modules |
| `weight_decay` | `null` | Weight decay |
| `adam_beta1` | `null` | Adam beta1 |
| `adam_beta2` | `null` | Adam beta2 |
| `adam_epsilon` | `null` | Adam epsilon |
| `max_grad_norm` | `null` | Gradient clipping |
## Attention Implementations
| Option | Default | Description |
| -------------------------- | ------- | ----------------------------- |
| `flash_optimum` | `false` | Use better transformers |
| `xformers_attention` | `false` | Use xformers |
| `flash_attention` | `false` | Use flash attention |
| `flash_attn_cross_entropy` | `false` | Flash attention cross entropy |
| `flash_attn_rms_norm` | `false` | Flash attention RMS norm |
| `flash_attn_fuse_mlp` | `false` | Fuse MLP operations |
| `sdp_attention` | `false` | Use scaled dot product |
| `s2_attention` | `false` | Use shifted sparse attention |
## Tokenizer Modifications
| Option | Default | Description |
| ---------------- | ------- | ---------------------------- |
| `special_tokens` | - | Special tokens to add/modify |
| `tokens` | `[]` | Additional tokens |
## Distributed Training
| Option | Default | Description |
| ----------------------- | ------- | --------------------- |
| `fsdp` | `null` | FSDP configuration |
| `fsdp_config` | `null` | FSDP config options |
| `deepspeed` | `null` | Deepspeed config path |
| `ddp_timeout` | `null` | DDP timeout |
| `ddp_bucket_cap_mb` | `null` | DDP bucket capacity |
| `ddp_broadcast_buffers` | `null` | DDP broadcast buffers |
<details>
<summary><h3>Example Configuration Request:</h3></summary>
Here's a complete example for fine-tuning a LLaMA model using LoRA:
```json
{
"input": {
"user_id": "user",
"model_id": "llama-test",
"run_id": "test-run",
"credentials": {
"wandb_api_key": "",
"hf_token": ""
},
"args": {
"base_model": "NousResearch/Llama-3.2-1B",
"load_in_8bit": false,
"load_in_4bit": false,
"strict": false,
"datasets": [
{
"path": "teknium/GPT4-LLM-Cleaned",
"type": "alpaca"
}
],
"dataset_prepared_path": "last_run_prepared",
"val_set_size": 0.1,
"output_dir": "./outputs/lora-out",
"adapter": "lora",
"sequence_len": 2048,
"sample_packing": true,
"eval_sample_packing": true,
"pad_to_sequence_len": true,
"lora_r": 16,
"lora_alpha": 32,
"lora_dropout": 0.05,
"lora_target_modules": [
"gate_proj",
"down_proj",
"up_proj",
"q_proj",
"v_proj",
"k_proj",
"o_proj"
],
"gradient_accumulation_steps": 2,
"micro_batch_size": 2,
"num_epochs": 1,
"optimizer": "adamw_8bit",
"lr_scheduler": "cosine",
"learning_rate": 0.0002,
"train_on_inputs": false,
"group_by_length": false,
"bf16": "auto",
"tf32": false,
"gradient_checkpointing": true,
"logging_steps": 1,
"flash_attention": true,
"loss_watchdog_threshold": 5,
"loss_watchdog_patience": 3,
"warmup_steps": 10,
"evals_per_epoch": 4,
"saves_per_epoch": 1,
"weight_decay": 0,
"hub_model_id": "runpod/llama-fr-lora",
"wandb_name": "test-run-1",
"wandb_project": "test-run-1",
"wandb_entity": "axo-test",
"special_tokens": {
"pad_token": "<|end_of_text|>"
}
}
}
}
```
</details>
### Advanced Features
#### Wandb Integration
- `wandb_project`: Project name for Weights & Biases
- `wandb_entity`: Team name in W&B
- `wandb_watch`: Monitor model with W&B
- `wandb_name`: Name of the W&B run
- `wandb_run_id`: ID for the W&B run
#### Performance Optimization
- `sample_packing`: Enable efficient sequence packing
- `eval_sample_packing`: Use sequence packing during evaluation
- `torch_compile`: Enable PyTorch 2.0 compilation
- `flash_attention`: Use Flash Attention implementation
- `xformers_attention`: Use xFormers attention implementation
### Available Optimizers
The following optimizers are supported:
- `adamw_hf`: HuggingFace's AdamW implementation
- `adamw_torch`: PyTorch's AdamW
- `adamw_torch_fused`: Fused AdamW implementation
- `adamw_torch_xla`: XLA-optimized AdamW
- `adamw_apex_fused`: NVIDIA Apex fused AdamW
- `adafactor`: Adafactor optimizer
- `adamw_anyprecision`: Anyprecision AdamW
- `adamw_bnb_8bit`: 8-bit AdamW from bitsandbytes
- `lion_8bit`: 8-bit Lion optimizer
- `lion_32bit`: 32-bit Lion optimizer
- `sgd`: Stochastic Gradient Descent
- `adagrad`: Adagrad optimizer
## Notes
- Set `load_in_8bit: true` or `load_in_4bit: true` for memory-efficient training
- Enable `flash_attention: true` for faster training on modern GPUs
- Use `gradient_checkpointing: true` to reduce memory usage
- Adjust `micro_batch_size` and `gradient_accumulation_steps` based on your GPU memory
For more detailed information, please refer to the [documentation](https://axolotl-ai-cloud.github.io/axolotl/docs/config-reference.html).
### Errors:
- if you face any issues with the Flash Attention-2, Delete yoor worker and Re-start.

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@@ -1,93 +0,0 @@
{
"title": "Axolotl Fine-Tuning",
"description": "Serverless fine-tuning of open-source LLMs with Axolotl. Supports LoRA, QLoRA, DPO, and more using Hugging Face models and datasets.",
"type": "serverless",
"category": "language",
"iconUrl": "https://avatars.githubusercontent.com/u/167502477",
"config": {
"runsOn": "GPU",
"containerDiskInGb": 200,
"gpuCount": 1,
"allowedCudaVersions": [
"12.8",
"12.7",
"12.6",
"12.5",
"12.4"
],
"presets": [],
"env": [
{
"key": "TOKENIZER",
"input": {
"name": "Tokenizer",
"type": "string",
"description": "Name or path of the Hugging Face tokenizer to use.",
"default": "",
"advanced": true
}
},
{
"key": "MAX_NUM_SEQS",
"input": {
"name": "Max Num Seqs",
"type": "number",
"description": "Maximum number of sequences per iteration.",
"default": 256,
"advanced": true
}
},
{
"key": "DISABLE_LOG_STATS",
"input": {
"name": "Disable Log Stats",
"type": "boolean",
"description": "Disable logging statistics.",
"default": false,
"trueValue": "true",
"falseValue": "false"
}
},
{
"key": "LOAD_FORMAT",
"input": {
"name": "Load Format",
"type": "string",
"description": "The format of the model weights to load.",
"default": "auto",
"options": [
{
"label": "auto",
"value": "auto"
},
{
"label": "pt",
"value": "pt"
},
{
"label": "safetensors",
"value": "safetensors"
},
{
"label": "npcache",
"value": "npcache"
},
{
"label": "dummy",
"value": "dummy"
},
{
"label": "tensorizer",
"value": "tensorizer"
},
{
"label": "bitsandbytes",
"value": "bitsandbytes"
}
],
"advanced": true
}
}
]
}
}

View File

@@ -1,7 +0,0 @@
# Required Python packages get listed here, one per line.
# Reccomended to lock the version number to avoid unexpected changes.
# You can also install packages from a git repository, e.g.:
# git+https://github.com/runpod/runpod-python.git
# To learn more, see https://pip.pypa.io/en/stable/reference/requirements-file-format/
runpod~=1.7.0

View File

@@ -1,571 +0,0 @@
# # This is the huggingface model that contains *.pt, *.safetensors, or *.bin files
# # This can also be a relative path to a model on disk
# base_model: ./llama-7b-hf
# # You can specify an ignore pattern if the model repo contains more than 1 model type (*.pt, etc)
# base_model_ignore_patterns:
# # If the base_model repo on hf hub doesn't include configuration .json files,
# # You can set that here, or leave this empty to default to base_model
# base_model_config: ./llama-7b-hf
# # You can specify to choose a specific model revision from huggingface hub
# model_revision:
# # Optional tokenizer configuration override in case you want to use a different tokenizer
# # than the one defined in the base model
# tokenizer_config:
# # If you want to specify the type of model to load, AutoModelForCausalLM is a good choice too
# model_type: AutoModelForCausalLM
# # Corresponding tokenizer for the model AutoTokenizer is a good choice
# tokenizer_type: AutoTokenizer
# # Trust remote code for untrusted source
# trust_remote_code:
# # use_fast option for tokenizer loading from_pretrained, default to True
# tokenizer_use_fast:
# # Whether to use the legacy tokenizer setting, defaults to True
# tokenizer_legacy:
# # Resize the model embeddings when new tokens are added to multiples of 32
# # This is reported to improve training speed on some models
# resize_token_embeddings_to_32x:
# # Used to identify which the model is based on
# is_falcon_derived_model:
# is_llama_derived_model:
# # Please note that if you set this to true, `padding_side` will be set to "left" by default
# is_mistral_derived_model:
# is_qwen_derived_model:
# # optional overrides to the base model configuration
# model_config:
# # RoPE Scaling https://github.com/huggingface/transformers/pull/24653
# rope_scaling:
# type: # linear | dynamic
# factor: # float
# # Whether you are training a 4-bit GPTQ quantized model
# gptq: true
# gptq_groupsize: 128 # group size
# gptq_model_v1: false # v1 or v2
# # This will attempt to quantize the model down to 8 bits and use adam 8 bit optimizer
# load_in_8bit: true
# # Use bitsandbytes 4 bit
# load_in_4bit:
# # Use CUDA bf16
# bf16: true # bool or 'full' for `bf16_full_eval`. require >=ampere
# # Use CUDA fp16
# fp16: true
# # Use CUDA tf32
# tf32: true # require >=ampere
# # No AMP (automatic mixed precision)
# bfloat16: true # require >=ampere
# float16: true
# # A list of one or more datasets to finetune the model with
# datasets:
# # HuggingFace dataset repo | s3://,gs:// path | "json" for local dataset, make sure to fill data_files
# - path: vicgalle/alpaca-gpt4
# # The type of prompt to use for training. [alpaca, sharegpt, gpteacher, oasst, reflection]
# type: alpaca # format | format:<prompt_style> (chat/instruct) | <prompt_strategies>.load_<load_fn>
# ds_type: # Optional[str] (json|arrow|parquet|text|csv) defines the datatype when path is a file
# data_files: # Optional[str] path to source data files
# shards: # Optional[int] number of shards to split data into
# name: # Optional[str] name of dataset configuration to load
# train_on_split: train # Optional[str] name of dataset split to load from
# # Optional[str] fastchat conversation type, only used with type: sharegpt
# conversation: # Options (see Conversation 'name'): https://github.com/lm-sys/FastChat/blob/main/fastchat/conversation.py
# field_human: # Optional[str]. Human key to use for conversation.
# field_model: # Optional[str]. Assistant key to use for conversation.
# # Custom user prompt
# - path: repo
# type:
# # The below are defaults. only set what's needed.
# system_prompt: ""
# system_format: "{system}"
# field_system: system
# field_instruction: instruction
# field_input: input
# field_output: output
# # Customizable to be single line or multi-line
# # 'format' can include {input}
# format: |-
# User: {instruction} {input}
# Assistant:
# # 'no_input_format' cannot include {input}
# no_input_format: "{instruction} "
# # For `completion` datasets only, uses the provided field instead of `text` column
# field:
# # Axolotl attempts to save the dataset as an arrow after packing the data together so
# # subsequent training attempts load faster, relative path
# dataset_prepared_path: data/last_run_prepared
# # Push prepared dataset to hub
# push_dataset_to_hub: # repo path
# # The maximum number of processes to use while preprocessing your input dataset. This defaults to `os.cpu_count()`
# # if not set.
# dataset_processes: # defaults to os.cpu_count() if not set
# # push checkpoints to hub
# hub_model_id: # repo path to push finetuned model
# # how to push checkpoints to hub
# # https://huggingface.co/docs/transformers/v4.31.0/en/main_classes/trainer#transformers.TrainingArguments.hub_strategy
# hub_strategy:
# # Whether to use hf `use_auth_token` for loading datasets. Useful for fetching private datasets
# # Required to be true when used in combination with `push_dataset_to_hub`
# hf_use_auth_token: # boolean
# # How much of the dataset to set aside as evaluation. 1 = 100%, 0.50 = 50%, etc. 0 for no eval.
# val_set_size: 0.04
# # Num shards for whole dataset
# dataset_shard_num:
# # Index of shard to use for whole dataset
# dataset_shard_idx:
# # The maximum length of an input to train with, this should typically be less than 2048
# # as most models have a token/context limit of 2048
# sequence_len: 2048
# # Pad inputs so each step uses constant sized buffers
# # This will reduce memory fragmentation and may prevent OOMs, by re-using memory more efficiently
# pad_to_sequence_len:
# # Max sequence length to concatenate training samples together up to
# # Inspired by StackLLaMA. see https://huggingface.co/blog/stackllama#supervised-fine-tuning
# # FutureWarning: This will soon be DEPRECATED
# max_packed_sequence_len: 1024
# # Use efficient multi-packing with block diagonal attention and per sequence position_ids. Recommend set to 'true'
# sample_packing:
# # Set to 'false' if getting errors during eval with sample_packing on.
# eval_sample_packing:
# # You can set these packing optimizations AFTER starting a training at least once.
# # The trainer will provide recommended values for these values.
# sample_packing_eff_est:
# total_num_tokens:
# # If you want to use 'lora' or 'qlora' or leave blank to train all parameters in original model
# adapter: lora
# # If you already have a lora model trained that you want to load, put that here.
# # This means after training, if you want to test the model, you should set this to the value of `lora_out_dir`.
# lora_model_dir:
# # LoRA hyperparameters
# # For more details about the following options, see:
# # https://www.anyscale.com/blog/fine-tuning-llms-lora-or-full-parameter-an-in-depth-analysis-with-llama-2
# lora_r: 8
# lora_alpha: 16
# lora_dropout: 0.05
# lora_target_modules:
# - q_proj
# - v_proj
# # - k_proj
# # - o_proj
# # - gate_proj
# # - down_proj
# # - up_proj
# lora_target_linear: # If true, will target all linear layers
# # If you added new tokens to the tokenizer, you may need to save some LoRA modules because they need to know the new tokens.
# # For LLaMA and Mistral, you need to save `embed_tokens` and `lm_head`. It may vary for other models.
# # `embed_tokens` converts tokens to embeddings, and `lm_head` converts embeddings to token probabilities.
# # https://github.com/huggingface/peft/issues/334#issuecomment-1561727994
# lora_modules_to_save:
# # - embed_tokens
# # - lm_head
# # Once you complete training, the model will be saved to the following directory.
# # If you merge the adapter to the base model, a subdirectory `merged` will be created under this directory.
# # Make sure `lora_model_dir` points to this directory if you want to use the trained model.
# lora_out_dir:
# lora_fan_in_fan_out: false
# # ReLoRA configuration
# # Must use either 'lora' or 'qlora' adapter, and does not support fsdp or deepspeed
# relora_steps: # Number of steps per ReLoRA restart
# relora_warmup_steps: # Number of per-restart warmup steps
# relora_cpu_offload: # True to perform lora weight merges on cpu during restarts, for modest gpu memory savings
# # wandb configuration if you're using it
# wandb_mode: # "offline" to save run metadata locally and not sync to the server, "disabled" to turn off wandb
# wandb_project: # Your wandb project name
# wandb_entity: # A wandb Team name if using a Team
# wandb_watch:
# wandb_run_id: # Set the name of your wandb run
# wandb_log_model: # "checkpoint" to log model to wandb Artifacts every `save_steps` or "end" to log only at the end of training
# # Where to save the full-finetuned model to
# output_dir: ./completed-model
# # Whether to use torch.compile and which backend to use
# torch_compile: # bool
# torch_compile_backend: # Optional[str]
# # Training hyperparameters
# # If greater than 1, backpropagation will be skipped and the gradients will be accumulated for the given number of steps.
# gradient_accumulation_steps: 1
# # The number of samples to include in each batch. This is the number of samples sent to each GPU.
# micro_batch_size: 2
# eval_batch_size:
# num_epochs: 4
# warmup_steps: 100 # cannot use with warmup_ratio
# warmup_ratio: 0.05 # cannot use with warmup_steps
# learning_rate: 0.00003
# lr_quadratic_warmup:
# logging_steps:
# save_strategy: # Set to `no` to skip checkpoint saves
# save_steps: # Leave empty to save at each epoch
# eval_steps: # Leave empty to eval at each epoch, integers for every N steps. decimal for fraction of total steps
# save_total_limit: # Checkpoints saved at a time
# # Maximum number of iterations to train for. It precedes num_epochs which means that
# # if both are set, num_epochs will not be guaranteed.
# # e.g., when 1 epoch is 1000 steps => `num_epochs: 2` and `max_steps: 100` will train for 100 steps
# max_steps:
# eval_table_size: # Approximate number of predictions sent to wandb depending on batch size. Enabled above 0. Default is 0
# eval_table_max_new_tokens: # Total number of tokens generated for predictions sent to wandb. Default is 128
# # Save model as safetensors (require safetensors package)
# save_safetensors:
# # Whether to mask out or include the human's prompt from the training labels
# train_on_inputs: false
# # Group similarly sized data to minimize padding.
# # May be slower to start, as it must download and sort the entire dataset.
# # Note that training loss may have an oscillating pattern with this enabled.
# group_by_length: false
# # Whether to use gradient checkpointing https://huggingface.co/docs/transformers/v4.18.0/en/performance#gradient-checkpointing
# gradient_checkpointing: false
# # Stop training after this many evaluation losses have increased in a row
# # https://huggingface.co/transformers/v4.2.2/_modules/transformers/trainer_callback.html#EarlyStoppingCallback
# early_stopping_patience: 3
# # Specify a scheduler and kwargs to use with the optimizer
# lr_scheduler: # 'one_cycle' | empty for cosine
# lr_scheduler_kwargs:
# # For one_cycle optim
# lr_div_factor: # Learning rate div factor
# # Specify optimizer
# # Valid values are driven by the Transformers OptimizerNames class, see:
# # https://github.com/huggingface/transformers/blob/95b374952dc27d8511541d6f5a4e22c9ec11fb24/src/transformers/training_args.py#L134
# #
# # Note that not all optimizers may be available in your environment, ex: 'adamw_anyprecision' is part of
# # torchdistx, 'adamw_bnb_8bit' is part of bnb.optim.Adam8bit, etc. When in doubt, it is recommended to start with the optimizer used
# # in the examples/ for your model and fine-tuning use case.
# #
# # Valid values for 'optimizer' include:
# # - adamw_hf
# # - adamw_torch
# # - adamw_torch_fused
# # - adamw_torch_xla
# # - adamw_apex_fused
# # - adafactor
# # - adamw_anyprecision
# # - sgd
# # - adagrad
# # - adamw_bnb_8bit
# # - lion_8bit
# # - lion_32bit
# # - paged_adamw_32bit
# # - paged_adamw_8bit
# # - paged_lion_32bit
# # - paged_lion_8bit
# optimizer:
# # Specify weight decay
# weight_decay:
# # adamw hyperparams
# adam_beta1:
# adam_beta2:
# adam_epsilon:
# # Gradient clipping max norm
# max_grad_norm:
# # Augmentation techniques
# # NEFT https://arxiv.org/abs/2310.05914, set this to a number (paper default is 5) to add noise to embeddings
# # currently only supported on Llama and Mistral
# noisy_embedding_alpha:
# # Whether to bettertransformers
# flash_optimum:
# # Whether to use xformers attention patch https://github.com/facebookresearch/xformers:
# xformers_attention:
# # Whether to use flash attention patch https://github.com/Dao-AILab/flash-attention:
# flash_attention:
# flash_attn_cross_entropy: # Whether to use flash-attention cross entropy implementation - advanced use only
# flash_attn_rms_norm: # Whether to use flash-attention rms norm implementation - advanced use only
# flash_attn_fuse_mlp: # Whether to fuse part of the MLP into a single operation
# # Whether to use scaled-dot-product attention
# # https://pytorch.org/docs/stable/generated/torch.nn.functional.scaled_dot_product_attention.html
# sdp_attention:
# # Landmark attention (only llama)
# landmark_attention:
# # xpos RoPE see https://github.com/kaiokendev/cutoff-len-is-context-len/blob/main/util/xpos_rope_llama_monkey_patch.py
# # LLaMA only
# xpos_rope:
# # Resume from a specific checkpoint dir
# resume_from_checkpoint:
# # If resume_from_checkpoint isn't set and you simply want it to start where it left off.
# # Be careful with this being turned on between different models.
# auto_resume_from_checkpoints: false
# # Don't mess with this, it's here for accelerate and torchrun
# local_rank:
# # Add or change special tokens.
# # If you add tokens here, you don't need to add them to the `tokens` list.
# special_tokens:
# # bos_token: "<s>"
# # eos_token: "</s>"
# # unk_token: "<unk>"
# # Add extra tokens.
# tokens:
# # FSDP
# fsdp:
# fsdp_config:
# # Deepspeed config path. e.g., deepspeed/zero3.json
# deepspeed:
# # Advanced DDP Arguments
# ddp_timeout:
# ddp_bucket_cap_mb:
# ddp_broadcast_buffers:
# # Path to torch distx for optim 'adamw_anyprecision'
# torchdistx_path:
# # Set to HF dataset for type: 'completion' for streaming instead of pre-tokenize
# pretraining_dataset:
# # Debug mode
# debug:
# # Seed
# seed:
# # Allow overwrite yml config using from cli
# strict:
base_model: ${BASE_MODEL}
base_model_ignore_patterns: ${BASE_MODEL_IGNORE_PATTERNS}
base_model_config: ${BASE_MODEL_CONFIG}
revision_of_model: ${REVISION_OF_MODEL}
tokenizer_config: ${TOKENIZER_CONFIG}
model_type: ${MODEL_TYPE}
tokenizer_type: ${TOKENIZER_TYPE}
trust_remote_code: ${TRUST_REMOTE_CODE}
tokenizer_use_fast: ${TOKENIZER_USE_FAST}
tokenizer_legacy: ${TOKENIZER_LEGACY}
resize_token_embeddings_to_32x: ${RESIZE_TOKEN_EMBEDDINGS_TO_32X}
is_falcon_derived_model: ${IS_FALCON_DERIVED_MODEL}
is_llama_derived_model: ${IS_LLAMA_DERIVED_MODEL}
is_qwen_derived_model: ${IS_QWEN_DERIVED_MODEL}
is_mistral_derived_model: ${IS_MISTRAL_DERIVED_MODEL}
overrides_of_model_config:
rope_scaling:
type: ${ROPE_SCALING_TYPE}
factor: ${ROPE_SCALING_FACTOR}
bnb_config_kwargs:
llm_int8_has_fp16_weight: ${BNB_LLM_INT8_HAS_FP16_WEIGHT}
bnb_4bit_quant_type: ${BNB_4BIT_QUANT_TYPE}
bnb_4bit_use_double_quant: ${BNB_4BIT_USE_DOUBLE_QUANT}
gptq: ${GPTQ}
load_in_8bit: ${LOAD_IN_8BIT}
load_in_4bit: ${LOAD_IN_4BIT}
bf16: ${BF16}
fp16: ${FP16}
tf32: ${TF32}
bfloat16: ${BFLOAT16}
float16: ${FLOAT16}
gpu_memory_limit: ${GPU_MEMORY_LIMIT}
lora_on_cpu: ${LORA_ON_CPU}
datasets:
- path: ${DATASET_PATH}
type: ${DATASET_TYPE}
ds_type: ${DATASET_DS_TYPE}
data_files: ${DATASET_DATA_FILES}
shards: ${DATASET_SHARDS}
name: ${DATASET_NAME}
train_on_split: ${DATASET_TRAIN_ON_SPLIT}
revision: ${DATASET_REVISION}
trust_remote_code: ${DATASET_TRUST_REMOTE_CODE}
rl: ${RL}
dpo_use_weighting: ${DPO_USE_WEIGHTING}
chat_template: ${CHAT_TEMPLATE}
chat_template_jinja: ${CHAT_TEMPLATE_JINJA}
default_system_message: ${DEFAULT_SYSTEM_MESSAGE}
dataset_prepared_path: ${DATASET_PREPARED_PATH}
push_dataset_to_hub: ${PUSH_DATASET_TO_HUB}
dataset_processes: ${DATASET_PROCESSES}
dataset_keep_in_memory: ${DATASET_KEEP_IN_MEMORY}
hub_model_id: ${HUB_MODEL_ID}
hub_strategy: ${HUB_STRATEGY}
hf_use_auth_token: ${HF_USE_AUTH_TOKEN}
val_set_size: ${VAL_SET_SIZE}
dataset_shard_num: ${DATASET_SHARD_NUM}
dataset_shard_idx: ${DATASET_SHARD_IDX}
sequence_len: ${SEQUENCE_LEN}
pad_to_sequence_len: ${PAD_TO_SEQUENCE_LEN}
sample_packing: ${SAMPLE_PACKING}
eval_sample_packing: ${EVAL_SAMPLE_PACKING}
sample_packing_eff_est: ${SAMPLE_PACKING_EFF_EST}
total_num_tokens: ${TOTAL_NUM_TOKENS}
sample_packing_group_size: ${SAMPLE_PACKING_GROUP_SIZE}
sample_packing_bin_size: ${SAMPLE_PACKING_BIN_SIZE}
batch_flattening: ${BATCH_FLATTENING}
device_map: ${DEVICE_MAP}
max_memory: ${MAX_MEMORY}
adapter: ${ADAPTER}
lora_model_dir: ${LORA_MODEL_DIR}
lora_r: ${LORA_R}
lora_alpha: ${LORA_ALPHA}
lora_dropout: ${LORA_DROPOUT}
lora_target_modules:
- ${LORA_TARGET_MODULES}
lora_target_linear: ${LORA_TARGET_LINEAR}
peft_layers_to_transform: ${PEFT_LAYERS_TO_TRANSFORM}
lora_modules_to_save: ${LORA_MODULES_TO_SAVE}
lora_fan_in_fan_out: ${LORA_FAN_IN_FAN_OUT}
loraplus_lr_ratio: ${LORAPLUS_LR_RATIO}
loraplus_lr_embedding: ${LORAPLUS_LR_EMBEDDING}
peft:
loftq_config:
loftq_bits: ${LOFTQ_BITS}
relora_steps: ${RELORA_STEPS}
relora_warmup_steps: ${RELORA_WARMUP_STEPS}
relora_anneal_steps: ${RELORA_ANNEAL_STEPS}
relora_prune_ratio: ${RELORA_PRUNE_RATIO}
relora_cpu_offload: ${RELORA_CPU_OFFLOAD}
wandb_mode: ${WANDB_MODE}
wandb_project: ${WANDB_PROJECT}
wandb_entity: ${WANDB_ENTITY}
wandb_watch: ${WANDB_WATCH}
wandb_name: ${WANDB_NAME}
wandb_run_id: ${WANDB_RUN_ID}
wandb_log_model: ${WANDB_LOG_MODEL}
mlflow_tracking_uri: ${MLFLOW_TRACKING_URI}
mlflow_experiment_name: ${MLFLOW_EXPERIMENT_NAME}
mlflow_run_name: ${MLFLOW_RUN_NAME}
hf_mlflow_log_artifacts: ${HF_MLFLOW_LOG_ARTIFACTS}
use_comet: ${USE_COMET}
comet_api_key: ${COMET_API_KEY}
comet_workspace: ${COMET_WORKSPACE}
comet_project_name: ${COMET_PROJECT_NAME}
comet_experiment_key: ${COMET_EXPERIMENT_KEY}
comet_mode: ${COMET_MODE}
comet_online: ${COMET_ONLINE}
comet_experiment_config: ${COMET_EXPERIMENT_CONFIG}
output_dir: ${OUTPUT_DIR}
torch_compile: ${TORCH_COMPILE}
torch_compile_backend: ${TORCH_COMPILE_BACKEND}
gradient_accumulation_steps: ${GRADIENT_ACCUMULATION_STEPS}
micro_batch_size: ${MICRO_BATCH_SIZE}
eval_batch_size: ${EVAL_BATCH_SIZE}
num_epochs: ${NUM_EPOCHS}
warmup_steps: ${WARMUP_STEPS}
warmup_ratio: ${WARMUP_RATIO}
learning_rate: ${LEARNING_RATE}
lr_quadratic_warmup: ${LR_QUADRATIC_WARMUP}
logging_steps: ${LOGGING_STEPS}
eval_steps: ${EVAL_STEPS}
evals_per_epoch: ${EVALS_PER_EPOCH}
save_strategy: ${SAVE_STRATEGY}
save_steps: ${SAVE_STEPS}
saves_per_epoch: ${SAVES_PER_EPOCH}
save_total_limit: ${SAVE_TOTAL_LIMIT}
max_steps: ${MAX_STEPS}
eval_table_size: ${EVAL_TABLE_SIZE}
eval_max_new_tokens: ${EVAL_MAX_NEW_TOKENS}
eval_causal_lm_metrics: ${EVAL_CAUSAL_LM_METRICS}
profiler_steps: ${PROFILER_STEPS}
loss_watchdog_threshold: ${LOSS_WATCHDOG_THRESHOLD}
loss_watchdog_patience: ${LOSS_WATCHDOG_PATIENCE}
save_safetensors: ${SAVE_SAFETENSORS}
train_on_inputs: ${TRAIN_ON_INPUTS}
group_by_length: ${GROUP_BY_LENGTH}
gradient_checkpointing: ${GRADIENT_CHECKPOINTING}
early_stopping_patience: ${EARLY_STOPPING_PATIENCE}
lr_scheduler: ${LR_SCHEDULER}
lr_scheduler_kwargs: ${LR_SCHEDULER_KWARGS}
cosine_min_lr_ratio: ${COSINE_MIN_LR_RATIO}
cosine_constant_lr_ratio: ${COSINE_CONSTANT_LR_RATIO}
lr_div_factor: ${LR_DIV_FACTOR}
optimizer: ${OPTIMIZER}
optim_args: ${OPTIM_ARGS}
optim_target_modules: ${OPTIM_TARGET_MODULES}
weight_decay: ${WEIGHT_DECAY}
adam_beta1: ${ADAM_BETA1}
adam_beta2: ${ADAM_BETA2}
adam_epsilon: ${ADAM_EPSILON}
max_grad_norm: ${MAX_GRAD_NORM}
neftune_noise_alpha: ${NEFTUNE_NOISE_ALPHA}
flash_optimum: ${FLASH_OPTIMUM}
xformers_attention: ${XFORMERS_ATTENTION}
flash_attention: ${FLASH_ATTENTION}
flash_attn_cross_entropy: ${FLASH_ATTN_CROSS_ENTROPY}
flash_attn_rms_norm: ${FLASH_ATTN_RMS_NORM}
flash_attn_fuse_mlp: ${FLASH_ATTN_FUSE_MLP}
sdp_attention: ${SDP_ATTENTION}
s2_attention: ${S2_ATTENTION}
resume_from_checkpoint: ${RESUME_FROM_CHECKPOINT}
auto_resume_from_checkpoints: ${AUTO_RESUME_FROM_CHECKPOINTS}
local_rank: ${LOCAL_RANK}
special_tokens:
bos_token: ${SPECIAL_TOKEN_BOS}
eos_token: ${SPECIAL_TOKEN_EOS}
unk_token: ${SPECIAL_TOKEN_UNK}
pad_token: ${SPECIAL_TOKEN_PAD}
tokens: ${TOKENS}
fsdp: ${FSDP}
fsdp_config: ${FSDP_CONFIG}
deepspeed: ${DEEPSPEED}
ddp_timeout: ${DDP_TIMEOUT}
ddp_bucket_cap_mb: ${DDP_BUCKET_CAP_MB}
ddp_broadcast_buffers: ${DDP_BROADCAST_BUFFERS}
torchdistx_path: ${TORCHDISTX_PATH}
pretraining_dataset: ${PRETRAINING_DATASET}
debug: ${DEBUG}
seed: ${SEED}
strict: ${STRICT}

View File

@@ -1,66 +0,0 @@
"""
Runpod serverless entrypoint handler
"""
import os
import runpod
import yaml
from huggingface_hub._login import login
from train import train
from utils import get_output_dir
BASE_VOLUME = os.environ.get("BASE_VOLUME", "/runpod-volume")
if not os.path.exists(BASE_VOLUME):
os.makedirs(BASE_VOLUME)
logger = runpod.RunPodLogger()
async def handler(job):
runpod_job_id = job["id"]
inputs = job["input"]
run_id = inputs.get("run_id", "default_run_id")
args = inputs.get("args", {})
# Set output directory
output_dir = os.path.join(BASE_VOLUME, get_output_dir(run_id))
args["output_dir"] = output_dir
# First save args to a temporary config file
config_path = "/workspace/test_config.yaml"
# Add run_name and job_id to args before saving
args["run_name"] = run_id
args["runpod_job_id"] = runpod_job_id
yaml_data = yaml.dump(args, default_flow_style=False)
with open(config_path, "w", encoding="utf-8") as file:
file.write(yaml_data)
# Handle credentials
credentials = inputs.get("credentials", {})
if "wandb_api_key" in credentials:
os.environ["WANDB_API_KEY"] = credentials["wandb_api_key"]
if "hf_token" in credentials:
os.environ["HF_TOKEN"] = credentials["hf_token"]
if os.environ.get("HF_TOKEN"):
login(token=os.environ["HF_TOKEN"])
else:
logger.info("No HF_TOKEN provided. Skipping login.")
logger.info("Starting Training.")
async for result in train(config_path): # Pass the config path instead of args
logger.info(result)
logger.info("Training Complete.")
# Cleanup
if "WANDB_API_KEY" in os.environ:
del os.environ["WANDB_API_KEY"]
if "HF_TOKEN" in os.environ:
del os.environ["HF_TOKEN"]
runpod.serverless.start({"handler": handler, "return_aggregate_stream": True})

View File

@@ -1,61 +0,0 @@
{
"input": {
"user_id": "user",
"model_id": "llama-test",
"run_id": "llama-test",
"credentials": {
"wandb_api_key": "",
"hf_token": ""
},
"args": {
"base_model": "NousResearch/Meta-Llama-3-8B",
"model_type": "LlamaForCausalLM",
"tokenizer_type": "AutoTokenizer",
"load_in_8bit": true,
"load_in_4bit": false,
"strict": false,
"datasets": [
{
"path": "mhenrichsen/alpaca_2k_test",
"type": "alpaca"
}
],
"val_set_size": 0.05,
"output_dir": "./outputs/lora-out",
"sequence_len": 4096,
"sample_packing": true,
"eval_sample_packing": false,
"pad_to_sequence_len": true,
"adapter": "lora",
"lora_r": 32,
"lora_alpha": 16,
"lora_dropout": 0.05,
"lora_target_linear": true,
"lora_modules_to_save": [
"embed_tokens",
"lm_head"
],
"gradient_accumulation_steps": 4,
"micro_batch_size": 2,
"num_epochs": 1,
"optimizer": "adamw_bnb_8bit",
"lr_scheduler": "cosine",
"learning_rate": 0.0002,
"train_on_inputs": false,
"group_by_length": false,
"bf16": "auto",
"tf32": false,
"gradient_checkpointing": true,
"logging_steps": 1,
"flash_attention": true,
"warmup_steps": 1,
"evals_per_epoch": 1,
"eval_max_new_tokens": 128,
"saves_per_epoch": 1,
"weight_decay": 0.0,
"special_tokens": {
"pad_token": "<|end_of_text|>"
}
}
}
}

View File

@@ -1,45 +0,0 @@
"""
Runpod train entrypoint
"""
import asyncio
async def train(config_path: str, gpu_id: str = "0", preprocess: bool = True):
"""
Run preprocessing (if enabled) and training with the given config file
:param config_path: Path to the YAML config file
:param gpu_id: GPU ID to use (default: "0")
:param preprocess: Whether to run preprocessing (default: True)
"""
# First check if preprocessing is needed
if preprocess:
# Preprocess command
preprocess_cmd = (
f"CUDA_VISIBLE_DEVICES={gpu_id} axolotl preprocess {config_path}"
)
process = await asyncio.create_subprocess_shell(
preprocess_cmd,
stdout=asyncio.subprocess.PIPE,
stderr=asyncio.subprocess.STDOUT,
)
if process.stdout is not None:
async for line in process.stdout:
yield f"Preprocessing: {line.decode().strip()}"
await process.wait()
yield "Preprocessing completed."
else:
yield "Skipping preprocessing step."
# Training command
train_cmd = f"axolotl train {config_path}"
process = await asyncio.create_subprocess_shell(
train_cmd, stdout=asyncio.subprocess.PIPE, stderr=asyncio.subprocess.STDOUT
)
if process.stdout is not None:
async for line in process.stdout:
yield f"Training: {line.decode().strip()}"
await process.wait()

View File

@@ -1,89 +0,0 @@
"""
Runpod launcher utils
"""
import os
import yaml
def get_output_dir(run_id):
path = f"fine-tuning/{run_id}"
return path
def make_valid_config(input_args):
"""
Creates and saves updated config file, returns the path to the new config
:param input_args: dict of input args
:return: str, path to the updated config file
"""
# Load default config
with open("config/config.yaml", "r", encoding="utf-8") as fin:
all_args = yaml.safe_load(fin)
if not input_args:
print("No args provided, using defaults")
else:
all_args.update(input_args)
# Create updated config path
updated_config_path = "config/updated_config.yaml"
# Save updated config to new file
with open(updated_config_path, "w", encoding="utf-8") as f:
yaml.dump(all_args, f)
return updated_config_path
def set_config_env_vars(args: dict):
"""
Convert API arguments into environment variables.
Handles nested dictionaries, lists, and special values.
Args:
args (dict): The arguments dictionary from the API request
"""
def process_value(value):
"""Convert Python values to string format for environment variables"""
if value is None:
return ""
if isinstance(value, bool):
return str(value).lower()
if isinstance(value, (list, dict)):
return str(value)
return str(value)
def set_env_vars(data, prefix=""):
"""Recursively set environment variables from nested dictionary"""
for key, value in data.items():
env_key = prefix + key.upper()
# Handle special cases
if isinstance(value, dict):
# For nested dictionaries (like special_tokens)
set_env_vars(value, f"{env_key}_")
elif isinstance(value, list):
# Handle list of dictionaries (like datasets)
if value and isinstance(value[0], dict):
for i, item in enumerate(value):
set_env_vars(item, f"{env_key}_{i}_")
else:
# For simple lists (like lora_target_modules)
os.environ[env_key] = process_value(value)
else:
# Handle all other cases
os.environ[env_key] = process_value(value)
# Clear any existing related environment variables
# This prevents old values from persisting
for key in list(os.environ.keys()):
if key.startswith(
("BASE_MODEL", "MODEL_TYPE", "TOKENIZER_TYPE", "DATASET", "LORA_", "WANDB_")
):
del os.environ[key]
# Set new environment variables
set_env_vars(args)

View File

@@ -1,86 +0,0 @@
{
"input": {
"name": "quick_smoke_test_sft",
"user_id": "user",
"model_id": "llama-test",
"run_id": "llama-test",
"credentials": {
"wandb_api_key": "",
"hf_token": ""
},
"args": {
"base_model": "HuggingFaceTB/SmolLM2-135M",
"model_type": "AutoModelForCausalLM",
"tokenizer_type": "AutoTokenizer",
"load_in_4bit": true,
"strict": false,
"datasets": [
{
"path": "mhenrichsen/alpaca_2k_test",
"type": "alpaca",
"split": "train[:10%]"
}
],
"val_set_size": 0.02,
"output_dir": "./outputs/lora-out",
"sequence_len": 4096,
"sample_packing": true,
"eval_sample_packing": false,
"pad_to_sequence_len": true,
"adapter": "qlora",
"lora_r": 32,
"lora_alpha": 64,
"lora_dropout": 0.05,
"lora_target_linear": true,
"lora_modules_to_save": [
"embed_tokens",
"lm_head"
],
"gradient_accumulation_steps": 2,
"micro_batch_size": 1,
"num_epochs": 1,
"optimizer": "adamw_torch_fused",
"lr_scheduler": "cosine",
"learning_rate": 0.0002,
"train_on_inputs": false,
"group_by_length": false,
"bf16": "auto",
"tf32": true,
"gradient_checkpointing": true,
"logging_steps": 1,
"flash_attention": true,
"warmup_steps": 1,
"evals_per_epoch": 1,
"eval_max_new_tokens": 128,
"saves_per_epoch": 1,
"weight_decay": 0.0,
"special_tokens": {
"pad_token": "<|endoftext|>"
},
"max_steps": 20
},
"timeout": 100000
},
"config": {
"gpuTypeId": "NVIDIA GeForce RTX 4090",
"gpuCount": 1,
"containerDiskInGb": 200,
"env": [
{
"key": "TOKENIZER",
"value": ""
},
{
"key": "DISABLE_LOG_STATS",
"value": "true"
}
],
"allowedCudaVersions": [
"12.8",
"12.7",
"12.6",
"12.5",
"12.4"
]
}
}

View File

@@ -1,90 +0,0 @@
{
"tests": [
{
"name": "quick_smoke_test_sft",
"input": {
"user_id": "user",
"model_id": "llama-test",
"run_id": "llama-test",
"credentials": {
"wandb_api_key": "",
"hf_token": ""
},
"args": {
"base_model": "HuggingFaceTB/SmolLM2-135M",
"model_type": "AutoModelForCausalLM",
"tokenizer_type": "AutoTokenizer",
"load_in_4bit": true,
"strict": false,
"datasets": [
{
"path": "mhenrichsen/alpaca_2k_test",
"type": "alpaca",
"split": "train[:10%]"
}
],
"val_set_size": 0.02,
"output_dir": "./outputs/lora-out",
"sequence_len": 4096,
"sample_packing": true,
"eval_sample_packing": false,
"pad_to_sequence_len": true,
"adapter": "qlora",
"lora_r": 32,
"lora_alpha": 64,
"lora_dropout": 0.05,
"lora_target_linear": true,
"lora_modules_to_save": [
"embed_tokens",
"lm_head"
],
"gradient_accumulation_steps": 2,
"micro_batch_size": 1,
"num_epochs": 1,
"optimizer": "adamw_torch_fused",
"lr_scheduler": "cosine",
"learning_rate": 0.0002,
"train_on_inputs": false,
"group_by_length": false,
"bf16": "auto",
"tf32": true,
"gradient_checkpointing": true,
"logging_steps": 1,
"flash_attention": true,
"warmup_steps": 1,
"evals_per_epoch": 1,
"eval_max_new_tokens": 128,
"saves_per_epoch": 1,
"weight_decay": 0.0,
"special_tokens": {
"pad_token": "<|endoftext|>"
},
"max_steps": 20
}
},
"timeout": 100000
}
],
"config": {
"gpuTypeId": "NVIDIA GeForce RTX 4090",
"gpuCount": 1,
"containerDiskInGb": 200,
"env": [
{
"key": "TOKENIZER",
"value": ""
},
{
"key": "DISABLE_LOG_STATS",
"value": "true"
}
],
"allowedCudaVersions": [
"12.8",
"12.7",
"12.6",
"12.5",
"12.4"
]
}
}

1
.vscode/README.md vendored
View File

@@ -1 +0,0 @@
See [docs/debugging.md](../docs/debugging.md) for guidance on how to modify these files to debug axolotl with VSCode.

34
.vscode/launch.json vendored
View File

@@ -1,34 +0,0 @@
{
// Use IntelliSense to learn about possible attributes.
// Hover to view descriptions of existing attributes.
// For more information, visit: https://go.microsoft.com/fwlink/?linkid=830387
"version": "0.2.0",
"configurations": [
{
"name": "Debug axolotl prompt - sharegpt",
"type": "python",
"module": "accelerate.commands.launch",
"request": "launch",
"args": [
"-m", "axolotl.cli.train", "dev_sharegpt.yml",
// The flags below simplify debugging by overriding the axolotl config
// with the debugging tips above. Modify as needed.
"--dataset_processes=1", // limits data preprocessing to one process
"--max_steps=1", // limits training to just one step
"--batch_size=1", // minimizes batch size
"--micro_batch_size=1", // minimizes batch size
"--val_set_size=0", // disables validation
"--sample_packing=False", // disables sample packing which is necessary for small datasets
"--eval_sample_packing=False",// disables sample packing on eval set
"--dataset_prepared_path=temp_debug/axolotl_outputs/data", // send data outputs to a temp folder
"--output_dir=temp_debug/axolotl_outputs/model" // send model outputs to a temp folder
],
"console": "integratedTerminal", // show output in the integrated terminal
"cwd": "${workspaceFolder}/devtools", // set working directory to devtools from the root of the project
"justMyCode": true, // step through only axolotl code
"env": {"CUDA_VISIBLE_DEVICES": "0", // Since we aren't doing distributed training, we need to limit to one GPU
"HF_HOME": "${workspaceFolder}/devtools/temp_debug/.hf-cache"}, // send HF cache to a temp folder
"preLaunchTask": "cleanup-for-dataprep", // delete temp folders (see below)
}
]
}

27
.vscode/tasks.json vendored
View File

@@ -1,27 +0,0 @@
//this file is used by launch.json
{
"version": "2.0.0",
"tasks": [
// this task changes into the devtools directory and deletes the temp_debug/axolotl_outputs folder
{
"label": "delete-outputs",
"type": "shell",
"command": "rm -rf temp_debug/axolotl_outputs",
"options":{ "cwd": "${workspaceFolder}/devtools"},
"problemMatcher": []
},
// this task changes into the devtools directory and deletes the `temp_debug/.hf-cache/datasets` folder
{
"label": "delete-temp-hf-dataset-cache",
"type": "shell",
"command": "rm -rf temp_debug/.hf-cache/datasets",
"options":{ "cwd": "${workspaceFolder}/devtools"},
"problemMatcher": []
},
// this task combines the two tasks above
{
"label": "cleanup-for-dataprep",
"dependsOn": ["delete-outputs", "delete-temp-hf-dataset-cache"],
}
]
}

View File

@@ -1,10 +0,0 @@
cff-version: 1.2.0
type: software
title: "Axolotl: Open Source LLM Post-Training"
message: "If you use this software, please cite it as below."
authors:
- name: "Axolotl maintainers and contributors"
repository-code: "https://github.com/axolotl-ai-cloud/axolotl"
url: "https://axolotl.ai/"
license: Apache-2.0
date-released: "2023-05-30"

1
CNAME
View File

@@ -1 +0,0 @@
docs.axolotl.ai

View File

@@ -1,6 +0,0 @@
include requirements.txt
include README.md
include LICENSE
include src/setuptools_axolotl_dynamic_dependencies.py
include src/axolotl/utils/chat_templates/templates/*.jinja
recursive-include axolotl *.py

916
README.md
View File

@@ -1,188 +1,790 @@
<p align="center">
<picture>
<source media="(prefers-color-scheme: dark)" srcset="https://raw.githubusercontent.com/axolotl-ai-cloud/axolotl/887513285d98132142bf5db2a74eb5e0928787f1/image/axolotl_logo_digital_white.svg">
<source media="(prefers-color-scheme: light)" srcset="https://raw.githubusercontent.com/axolotl-ai-cloud/axolotl/887513285d98132142bf5db2a74eb5e0928787f1/image/axolotl_logo_digital_black.svg">
<img alt="Axolotl" src="https://raw.githubusercontent.com/axolotl-ai-cloud/axolotl/887513285d98132142bf5db2a74eb5e0928787f1/image/axolotl_logo_digital_black.svg" width="400" height="104" style="max-width: 100%;">
</picture>
</p>
<p align="center">
<strong>A Free and Open Source LLM Fine-tuning Framework</strong><br>
</p>
# Axolotl
<p align="center">
<img src="https://img.shields.io/github/license/axolotl-ai-cloud/axolotl.svg?color=blue" alt="GitHub License">
<img src="https://github.com/axolotl-ai-cloud/axolotl/actions/workflows/tests.yml/badge.svg" alt="tests">
<a href="https://codecov.io/gh/axolotl-ai-cloud/axolotl"><img src="https://codecov.io/gh/axolotl-ai-cloud/axolotl/branch/main/graph/badge.svg" alt="codecov"></a>
<a href="https://github.com/axolotl-ai-cloud/axolotl/releases"><img src="https://img.shields.io/github/release/axolotl-ai-cloud/axolotl.svg" alt="Releases"></a>
<br/>
<a href="https://github.com/axolotl-ai-cloud/axolotl/graphs/contributors"><img src="https://img.shields.io/github/contributors-anon/axolotl-ai-cloud/axolotl?color=yellow&style=flat-square" alt="contributors" style="height: 20px;"></a>
<img src="https://img.shields.io/github/stars/axolotl-ai-cloud/axolotl" alt="GitHub Repo stars">
<br/>
<a href="https://discord.com/invite/HhrNrHJPRb"><img src="https://img.shields.io/badge/discord-7289da.svg?style=flat-square&logo=discord" alt="discord" style="height: 20px;"></a>
<a href="https://twitter.com/axolotl_ai"><img src="https://img.shields.io/twitter/follow/axolotl_ai?style=social" alt="twitter" style="height: 20px;"></a>
<a href="https://colab.research.google.com/github/axolotl-ai-cloud/axolotl/blob/main/examples/colab-notebooks/colab-axolotl-example.ipynb"><img src="https://colab.research.google.com/assets/colab-badge.svg" alt="google-colab" style="height: 20px;"></a>
<br/>
<img src="https://github.com/axolotl-ai-cloud/axolotl/actions/workflows/tests-nightly.yml/badge.svg" alt="tests-nightly">
<img src="https://github.com/axolotl-ai-cloud/axolotl/actions/workflows/multi-gpu-e2e.yml/badge.svg" alt="multigpu-semi-weekly tests">
</p>
Axolotl is a tool designed to streamline the fine-tuning of various AI models, offering support for multiple configurations and architectures.
<table>
<tr>
<td>
## Table of Contents
- [Introduction](#axolotl)
- [Supported Features](#axolotl-supports)
- [Quickstart](#quickstart-)
- [Installation](#installation)
- [Docker Installation](#environment)
- [Conda/Pip venv Installation](#condapip-venv)
- [LambdaLabs Installation](#lambdalabs)
- [Dataset](#dataset)
- [How to Add Custom Prompts](#how-to-add-custom-prompts)
- [How to Use Custom Pretokenized Dataset](#how-to-use-your-custom-pretokenized-dataset)
- [Config](#config)
- [Train](#train)
- [Inference](#inference)
- [Merge LORA to Base](#merge-lora-to-base)
- [Common Errors](#common-errors-)
- [Need Help?](#need-help-)
- [Badge](#badge-)
- [Community Showcase](#community-showcase)
- [Contributing](#contributing-)
</td>
<td>
<div align="center">
<img src="image/axolotl.png" alt="axolotl" width="160">
<div>
<p>
<b>Axolotl provides a unified repository for fine-tuning <br />a variety of AI models with ease</b>
</p>
<p>
Go ahead and axolotl questions!!
</p>
<img src="https://github.com/OpenAccess-AI-Collective/axolotl/actions/workflows/pre-commit.yml/badge.svg?branch=main" alt="pre-commit">
<img alt="PyTest Status" src="https://github.com/OpenAccess-AI-Collective/axolotl/actions/workflows/tests.yml/badge.svg?branch=main">
</div>
</div>
</td>
</tr>
</table>
## Axolotl supports
| | fp16/fp32 | lora | qlora | gptq | gptq w/flash attn | flash attn | xformers attn |
|----------|:----------|:-----|-------|------|-------------------|------------|---------------|
| llama | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ | ✅ |
| Pythia | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❓ |
| cerebras | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❓ |
| mpt | ✅ | ❌ | ❓ | ❌ | ❌ | ❌ | ❓ |
| falcon | ✅ | ✅ | ✅ | ❌ | ❌ | ❌ | ❓ |
| gpt-j | ✅ | ✅ | ✅ | ❌ | ❌ | ❓ | ❓ |
| XGen | ✅ | ❓ | ✅ | ❓ | ❓ | ❓ | ✅ |
## 🎉 Latest Updates
## Quickstart ⚡
- 2025/12: Axolotl now includes support for [Kimi-Linear](https://docs.axolotl.ai/docs/models/kimi-linear.html), [Plano-Orchestrator](https://docs.axolotl.ai/docs/models/plano.html), [MiMo](https://docs.axolotl.ai/docs/models/mimo.html), [InternVL 3.5](https://docs.axolotl.ai/docs/models/internvl3_5.html), [Olmo3](https://docs.axolotl.ai/docs/models/olmo3.html), [Trinity](https://docs.axolotl.ai/docs/models/trinity.html), and [Ministral3](https://docs.axolotl.ai/docs/models/ministral3.html).
- 2025/10: New model support has been added in Axolotl for: [Qwen3 Next](https://docs.axolotl.ai/docs/models/qwen3-next.html), [Qwen2.5-vl, Qwen3-vl](https://github.com/axolotl-ai-cloud/axolotl/tree/main/examples/qwen2_5-vl), [Qwen3, Qwen3MoE](https://docs.axolotl.ai/docs/models/qwen3.html), [Granite 4](https://docs.axolotl.ai/docs/models/granite4.html), [HunYuan](https://docs.axolotl.ai/docs/models/hunyuan.html), [Magistral 2509](https://docs.axolotl.ai/docs/models/magistral/vision.html), [Apertus](https://docs.axolotl.ai/docs/models/apertus.html), and [Seed-OSS](https://docs.axolotl.ai/docs/models/seed-oss.html).
- 2025/09: Axolotl now has text diffusion training. Read more [here](https://github.com/axolotl-ai-cloud/axolotl/tree/main/src/axolotl/integrations/diffusion).
- 2025/08: QAT has been updated to include NVFP4 support. See [PR](https://github.com/axolotl-ai-cloud/axolotl/pull/3107).
- 2025/07:
- ND Parallelism support has been added into Axolotl. Compose Context Parallelism (CP), Tensor Parallelism (TP), and Fully Sharded Data Parallelism (FSDP) within a single node and across multiple nodes. Check out the [blog post](https://huggingface.co/blog/accelerate-nd-parallel) for more info.
- Axolotl adds more models: [GPT-OSS](https://docs.axolotl.ai/docs/models/gpt-oss.html), [Gemma 3n](https://docs.axolotl.ai/docs/models/gemma3n.html), [Liquid Foundation Model 2 (LFM2)](https://docs.axolotl.ai/docs/models/LiquidAI.html), and [Arcee Foundation Models (AFM)](https://docs.axolotl.ai/docs/models/arcee.html).
- FP8 finetuning with fp8 gather op is now possible in Axolotl via `torchao`. Get started [here](https://docs.axolotl.ai/docs/mixed_precision.html#sec-fp8)!
- [Voxtral](https://docs.axolotl.ai/docs/models/voxtral.html), [Magistral 1.1](https://docs.axolotl.ai/docs/models/magistral.html), and [Devstral](https://docs.axolotl.ai/docs/models/devstral.html) with mistral-common tokenizer support has been integrated in Axolotl!
- TiledMLP support for single-GPU to multi-GPU training with DDP, DeepSpeed and FSDP support has been added to support Arctic Long Sequence Training. (ALST). See [examples](https://github.com/axolotl-ai-cloud/axolotl/tree/main/examples/alst) for using ALST with Axolotl!
- 2025/05: Quantization Aware Training (QAT) support has been added to Axolotl. Explore the [docs](https://docs.axolotl.ai/docs/qat.html) to learn more!
Get started with Axolotl in just a few steps! This quickstart guide will walk you through setting up and running a basic fine-tuning task.
**Requirements**: Python >=3.9 and Pytorch >=2.0.
```bash
git clone https://github.com/OpenAccess-AI-Collective/axolotl
cd axolotl
pip3 install -e .[flash-attn]
pip3 install -U git+https://github.com/huggingface/peft.git
# finetune lora
accelerate launch scripts/finetune.py examples/openllama-3b/lora.yml
# inference
accelerate launch scripts/finetune.py examples/openllama-3b/lora.yml \
--inference --lora_model_dir="./lora-out"
```
## Installation
### Environment
- Docker
```bash
docker run --gpus '"all"' --rm -it winglian/axolotl:main-py3.10-cu118-2.0.1
```
- `winglian/axolotl-runpod:main-py3.10-cu118-2.0.1`: for runpod
- `winglian/axolotl-runpod:main-py3.9-cu118-2.0.1-gptq`: for gptq
Or run on the current files for development:
```sh
docker compose up -d
```
- Conda/Pip venv
1. Install python >=**3.9**
2. Install pytorch stable https://pytorch.org/get-started/locally/
3. Install python dependencies with ONE of the following:
- Recommended, supports QLoRA, NO gptq/int4 support
```bash
pip3 install -e .
pip3 install -U git+https://github.com/huggingface/peft.git
```
- gptq/int4 support, NO QLoRA
```bash
pip3 install -e .[gptq]
```
- same as above but not recommended
```bash
pip3 install -e .[gptq_triton]
```
- LambdaLabs
<details>
<summary>Click to Expand</summary>
1. Install python
```bash
sudo apt update
sudo apt install -y python3.9
sudo update-alternatives --install /usr/bin/python python /usr/bin/python3.9 1
sudo update-alternatives --config python # pick 3.9 if given option
python -V # should be 3.9
```
2. Install pip
```bash
wget https://bootstrap.pypa.io/get-pip.py
python get-pip.py
```
3. Install torch
```bash
pip3 install -U torch --index-url https://download.pytorch.org/whl/cu118
```
4. Axolotl
```bash
git clone https://github.com/OpenAccess-AI-Collective/axolotl
cd axolotl
pip3 install -e . # change depend on needs
pip3 install protobuf==3.20.3
pip3 install -U --ignore-installed requests Pillow psutil scipy
pip3 install git+https://github.com/huggingface/peft.git # not for gptq
```
5. Set path
```bash
export LD_LIBRARY_PATH=/usr/lib/x86_64-linux-gnu:$LD_LIBRARY_PATH
```
</details>
### Dataset
Axolotl supports a variety of dataset formats. Below are some of the formats you can use.
Have dataset(s) in one of the following format (JSONL recommended):
- `alpaca`: instruction; input(optional)
```json
{"instruction": "...", "input": "...", "output": "..."}
```
- `sharegpt:chat`: conversations where `from` is `human`/`gpt`
```json
{"conversations": [{"from": "...", "value": "..."}]}
```
- `completion`: raw corpus
```json
{"text": "..."}
```
<details>
<summary>Expand older updates</summary>
<summary>See other formats</summary>
- 2025/03: Axolotl has implemented Sequence Parallelism (SP) support. Read the [blog](https://huggingface.co/blog/axolotl-ai-co/long-context-with-sequence-parallelism-in-axolotl) and [docs](https://docs.axolotl.ai/docs/sequence_parallelism.html) to learn how to scale your context length when fine-tuning.
- 2025/06: Magistral with mistral-common tokenizer support has been added to Axolotl. See [docs](https://docs.axolotl.ai/docs/models/magistral.html) to start training your own Magistral models with Axolotl!
- 2025/04: Llama 4 support has been added in Axolotl. See [docs](https://docs.axolotl.ai/docs/models/llama-4.html) to start training your own Llama 4 models with Axolotl's linearized version!
- 2025/03: (Beta) Fine-tuning Multimodal models is now supported in Axolotl. Check out the [docs](https://docs.axolotl.ai/docs/multimodal.html) to fine-tune your own!
- 2025/02: Axolotl has added LoRA optimizations to reduce memory usage and improve training speed for LoRA and QLoRA in single GPU and multi-GPU training (DDP and DeepSpeed). Jump into the [docs](https://docs.axolotl.ai/docs/lora_optims.html) to give it a try.
- 2025/02: Axolotl has added GRPO support. Dive into our [blog](https://huggingface.co/blog/axolotl-ai-co/training-llms-w-interpreter-feedback-wasm) and [GRPO example](https://github.com/axolotl-ai-cloud/grpo_code) and have some fun!
- 2025/01: Axolotl has added Reward Modelling / Process Reward Modelling fine-tuning support. See [docs](https://docs.axolotl.ai/docs/reward_modelling.html).
- `jeopardy`: question and answer
```json
{"question": "...", "category": "...", "answer": "..."}
```
- `oasst`: instruction
```json
{"INSTRUCTION": "...", "RESPONSE": "..."}
```
- `gpteacher`: instruction; input(optional)
```json
{"instruction": "...", "input": "...", "response": "..."}
```
- `reflection`: instruction with reflect; input(optional)
```json
{"instruction": "...", "input": "...", "output": "...", "reflection": "...", "corrected": "..."}
```
- `explainchoice`: question, choices, (solution OR explanation)
```json
{"question": "...", "choices": ["..."], "solution": "...", "explanation": "..."}
```
- `concisechoice`: question, choices, (solution OR explanation)
```json
{"question": "...", "choices": ["..."], "solution": "...", "explanation": "..."}
```
- `summarizetldr`: article and summary
```json
{"article": "...", "summary": "..."}
```
- `alpaca_chat`: basic instruct for alpaca chat
```json
{"instruction": "...", "input": "...", "response": "..."}
```
- `alpaca_chat.load_qa`: question and answer for alpaca chat
```json
{"question": "...", "answer": "..."}
```
- `alpaca_chat.load_concise`: question and answer for alpaca chat, for concise answers
```json
{"instruction": "...", "input": "...", "response": "..."}
```
- `alpaca_chat.load_camel_ai`: question and answer for alpaca chat, for load_camel_ai
```json
{"message_1": "...", "message_2": "..."}
```
- `alpaca_w_system.load_open_orca`: support for open orca datasets with included system prompts, instruct
```json
{"system_prompt": "...", "question": "...", "response": "..."}
```
- `context_qa`: in context question answering from an article
```json
{"article": "...", "question": "...", "answer": "..."}
```
- `context_qa.load_404`: in context question answering from an article, with default response for no answer from context
```json
{"article": "...", "unanswerable_question": "..."}
```
- `creative_acr.load_answer`: instruction and revision
```json
{"instruction": "...", "revision": "..."}
```
- `creative_acr.load_critique`: critique
```json
{"scores": "...", "critiques": "...", "instruction": "...", "answer": "..."}
```
- `creative_acr.load_revise`: critique and revise
```json
{"scores": "...", "critiques": "...", "instruction": "...", "answer": "...", "revision": "..."}
```
- `pygmalion`: pygmalion
```json
{"conversations": [{"role": "...", "value": "..."}]}
```
- `metharme`: instruction, adds additional eos tokens
```json
{"prompt": "...", "generation": "..."}
```
- `sharegpt_simple.load_role`: conversations where `role` is used instead of `from`
```json
{"conversations": [{"role": "...", "value": "..."}]}
```
- `sharegpt_simple.load_guanaco`: conversations where `from` is `prompter`/`assistant` instead of default sharegpt
```json
{"conversations": [{"from": "...", "value": "..."}]}
```
- `sharegpt_jokes`: creates a chat where bot is asked to tell a joke, then explain why the joke is funny
```json
{"conversations": [{"title": "...", "text": "...", "explanation": "..."}]}
```
</details>
## ✨ Overview
#### How to add custom prompts
Axolotl is a free and open-source tool designed to streamline post-training and fine-tuning for the latest large language models (LLMs).
Features:
- **Multiple Model Support**: Train various models like GPT-OSS, LLaMA, Mistral, Mixtral, Pythia, and many more models available on the Hugging Face Hub.
- **Multimodal Training**: Fine-tune vision-language models (VLMs) including LLaMA-Vision, Qwen2-VL, Pixtral, LLaVA, SmolVLM2, and audio models like Voxtral with image, video, and audio support.
- **Training Methods**: Full fine-tuning, LoRA, QLoRA, GPTQ, QAT, Preference Tuning (DPO, IPO, KTO, ORPO), RL (GRPO), and Reward Modelling (RM) / Process Reward Modelling (PRM).
- **Easy Configuration**: Re-use a single YAML configuration file across the full fine-tuning pipeline: dataset preprocessing, training, evaluation, quantization, and inference.
- **Performance Optimizations**: [Multipacking](https://docs.axolotl.ai/docs/multipack.html), [Flash Attention](https://github.com/Dao-AILab/flash-attention), [Xformers](https://github.com/facebookresearch/xformers), [Flex Attention](https://pytorch.org/blog/flexattention/), [Liger Kernel](https://github.com/linkedin/Liger-Kernel), [Cut Cross Entropy](https://github.com/apple/ml-cross-entropy/tree/main), [Sequence Parallelism (SP)](https://docs.axolotl.ai/docs/sequence_parallelism.html), [LoRA optimizations](https://docs.axolotl.ai/docs/lora_optims.html), [Multi-GPU training (FSDP1, FSDP2, DeepSpeed)](https://docs.axolotl.ai/docs/multi-gpu.html), [Multi-node training (Torchrun, Ray)](https://docs.axolotl.ai/docs/multi-node.html), and many more!
- **Flexible Dataset Handling**: Load from local, HuggingFace, and cloud (S3, Azure, GCP, OCI) datasets.
- **Cloud Ready**: We ship [Docker images](https://hub.docker.com/u/axolotlai) and also [PyPI packages](https://pypi.org/project/axolotl/) for use on cloud platforms and local hardware.
## 🚀 Quick Start - LLM Fine-tuning in Minutes
**Requirements**:
- NVIDIA GPU (Ampere or newer for `bf16` and Flash Attention) or AMD GPU
- Python 3.11
- PyTorch ≥2.8.0
### Google Colab
[![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/axolotl-ai-cloud/axolotl/blob/main/examples/colab-notebooks/colab-axolotl-example.ipynb#scrollTo=msOCO4NRmRLa)
### Installation
#### Using pip
```bash
pip3 install -U packaging==23.2 setuptools==75.8.0 wheel ninja
pip3 install --no-build-isolation axolotl[flash-attn,deepspeed]
# Download example axolotl configs, deepspeed configs
axolotl fetch examples
axolotl fetch deepspeed_configs # OPTIONAL
Using yaml. Example:
```yaml
datasets:
- path: repo
type:
system_prompt: ""
no_input_format: |-
User: {instruction}<|end_of_turn|>
Assistant:
format: |-
User: {instruction}
{input}<|end_of_turn|>
Assistant:
```
#### Using Docker
Using file:
1. Add your method to a file in [prompt_strategies](src/axolotl/prompt_strategies). Please see other files as example.
2. Use your custom file name as the dataset type `<prompt_strategies_file>.load_<load_fn>`.
Installing with Docker can be less error prone than installing in your own environment.
```bash
docker run --gpus '"all"' --rm -it axolotlai/axolotl:main-latest
```
#### How to use your custom pretokenized dataset
Other installation approaches are described [here](https://docs.axolotl.ai/docs/installation.html).
- Do not pass a `type:`
- Dataset must contain `input_ids`, `attention_mask`, `labels` in columns
#### Cloud Providers
### Config
See [examples](examples) for quick start. It is recommended to duplicate and modify to your needs. The most important options are:
- model
```yaml
base_model: ./llama-7b-hf # local or huggingface repo
```
Note: The code will load the right architecture.
- dataset
```yaml
sequence_len: 2048 # max token length for prompt
# huggingface repo
datasets:
- path: vicgalle/alpaca-gpt4
type: alpaca # format from earlier
# huggingface repo with specific configuration/subset
datasets:
- path: EleutherAI/pile
name: enron_emails
type: completion # format from earlier
# huggingface repo with multiple named configurations/subsets
datasets:
- path: bigcode/commitpackft
name:
- ruby
- python
- typescript
type: ... # unimplemented custom format
# local
datasets:
- path: data.jsonl # or json
ds_type: json # see other options below
type: alpaca
```
- loading
```yaml
load_in_4bit: true
load_in_8bit: true
bf16: true # require >=ampere
fp16: true
tf32: true # require >=ampere
bfloat16: true # require >=ampere, use instead of bf16 when you don't want AMP (automatic mixed precision)
float16: true # use instead of fp16 when you don't want AMP
```
Note: Repo does not do 4-bit quantization.
- lora
```yaml
adapter: lora # qlora or leave blank for full finetune
lora_r: 8
lora_alpha: 16
lora_dropout: 0.05
lora_target_modules:
- q_proj
- v_proj
```
<details>
- [RunPod](https://runpod.io/gsc?template=v2ickqhz9s&ref=6i7fkpdz)
- [Vast.ai](https://cloud.vast.ai?ref_id=62897&template_id=bdd4a49fa8bce926defc99471864cace&utm_source=github&utm_medium=developer_community&utm_campaign=template_launch_axolotl&utm_content=readme)
- [PRIME Intellect](https://app.primeintellect.ai/dashboard/create-cluster?image=axolotl&location=Cheapest&security=Cheapest&show_spot=true)
- [Modal](https://www.modal.com?utm_source=github&utm_medium=github&utm_campaign=axolotl)
- [Novita](https://novita.ai/gpus-console?templateId=311)
- [JarvisLabs.ai](https://jarvislabs.ai/templates/axolotl)
- [Latitude.sh](https://latitude.sh/blueprint/989e0e79-3bf6-41ea-a46b-1f246e309d5c)
<summary>All yaml options</summary>
```yaml
# this is the huggingface model that contains *.pt, *.safetensors, or *.bin files
# this can also be a relative path to a model on disk
base_model: ./llama-7b-hf
# you can specify an ignore pattern if the model repo contains more than 1 model type (*.pt, etc)
base_model_ignore_patterns:
# if the base_model repo on hf hub doesn't include configuration .json files,
# you can set that here, or leave this empty to default to base_model
base_model_config: ./llama-7b-hf
# you can specify to choose a specific model revision from huggingface hub
model_revision:
# Optional tokenizer configuration override in case you want to use a different tokenizer
# than the one defined in the base model
tokenizer_config:
# If you want to specify the type of model to load, AutoModelForCausalLM is a good choice too
model_type: AutoModelForCausalLM
# Corresponding tokenizer for the model AutoTokenizer is a good choice
tokenizer_type: AutoTokenizer
# Trust remote code for untrusted source
trust_remote_code:
# use_fast option for tokenizer loading from_pretrained, default to True
tokenizer_use_fast:
# Whether to use the legacy tokenizer setting, defaults to True
tokenizer_legacy:
# resize the model embeddings when new tokens are added to multiples of 32
# this is reported to improve training speed on some models
resize_token_embeddings_to_32x:
# whether you are training a 4-bit GPTQ quantized model
gptq: true
gptq_groupsize: 128 # group size
gptq_model_v1: false # v1 or v2
# this will attempt to quantize the model down to 8 bits and use adam 8 bit optimizer
load_in_8bit: true
# use bitsandbytes 4 bit
load_in_4bit:
# Use CUDA bf16
bf16: true # bool or 'full' for `bf16_full_eval`. require >=ampere
# Use CUDA fp16
fp16: true
# Use CUDA tf32
tf32: true # require >=ampere
# No AMP (automatic mixed precision)
bfloat16: true # require >=ampere
float16: true
# a list of one or more datasets to finetune the model with
datasets:
# hf dataset repo | "json" for local dataset, make sure to fill data_files
- path: vicgalle/alpaca-gpt4
# The type of prompt to use for training. [alpaca, sharegpt, gpteacher, oasst, reflection]
type: alpaca # format | format:<prompt_style> (chat/instruct) | <prompt_strategies>.load_<load_fn>
ds_type: # Optional[str] (json|arrow|parquet) defines the datatype when path is a file
data_files: # path to source data files
shards: # number of shards to split data into
name: # name of dataset configuration to load
# custom user prompt
- path: repo
type:
# the below are defaults. only set what's needed.
system_prompt: ""
field_system: system
field_instruction: instruction
field_output: input
# customizable to be single line or multi-line
system_format: "{system}"
# 'format' can include {input}
format: |-
User: {instruction} {input}
Assistant:
# 'no_input_format' cannot include {input}
no_input_format: "{instruction} "
# axolotl attempts to save the dataset as an arrow after packing the data together so
# subsequent training attempts load faster, relative path
dataset_prepared_path: data/last_run_prepared
# push prepared dataset to hub
push_dataset_to_hub: # repo path
# push checkpoints to hub
hub_model_id: # repo path to push finetuned model
# how to push checkpoints to hub
# https://huggingface.co/docs/transformers/v4.31.0/en/main_classes/trainer#transformers.TrainingArguments.hub_strategy
hub_strategy:
# whether to use hf `use_auth_token` for loading datasets. Useful for fetching private datasets
# required to be true when used in combination with `push_dataset_to_hub`
hf_use_auth_token: # boolean
# How much of the dataset to set aside as evaluation. 1 = 100%, 0.50 = 50%, etc. 0 for no eval.
val_set_size: 0.04
# Num shards for whole dataset
dataset_shard_num:
# Index of shard to use for whole dataset
dataset_shard_idx:
# the maximum length of an input to train with, this should typically be less than 2048
# as most models have a token/context limit of 2048
sequence_len: 2048
# pad inputs so each step uses constant sized buffers
# this will reduce memory fragmentation and may prevent OOMs, by re-using memory more efficiently
pad_to_sequence_len:
# max sequence length to concatenate training samples together up to
# inspired by StackLLaMA. see https://huggingface.co/blog/stackllama#supervised-fine-tuning
# FutureWarning: This will soon be DEPRECATED
max_packed_sequence_len: 1024
# use efficient multi-packing with block diagonal attention and per sequence position_ids. Recommend set to 'true'
sample_packing:
# you can set these packing optimizations AFTER starting a training at least once.
# The trainer will provide recommended values for these values.
sample_packing_eff_est:
total_num_tokens:
# if you want to use 'lora' or 'qlora' or leave blank to train all parameters in original model
adapter: lora
# if you already have a lora model trained that you want to load, put that here
# lora hyperparameters
lora_model_dir:
lora_r: 8
lora_alpha: 16
lora_dropout: 0.05
lora_target_modules:
- q_proj
- v_proj
# - k_proj
# - o_proj
# - gate_proj
# - down_proj
# - up_proj
lora_target_linear: # if true, will target all linear layers
lora_modules_to_save:
# - embed_tokens
# - lm_head
lora_out_dir:
lora_fan_in_fan_out: false
# ReLoRA configuration
# must use either 'lora' or 'qlora' adapter, and does not support fsdp or deepspeed
relora_steps: # number of steps per ReLoRA restart
relora_warmup_steps: # number of per-restart warmup steps
relora_cpu_offload: # true to perform lora weight merges on cpu during restarts, for modest gpu memory savings
# wandb configuration if you're using it
wandb_mode: # "offline" to save run metadata locally and not sync to the server, "disabled" to turn off wandb
wandb_project: # your wandb project name
wandb_entity: # a wandb Team name if using a Team
wandb_watch:
wandb_run_id: # set the name of your wandb run
wandb_log_model: # "checkpoint" to log model to wandb Artifacts every `save_steps` or "end" to log only at the end of training
# where to save the finished model to
output_dir: ./completed-model
# training hyperparameters
gradient_accumulation_steps: 1
micro_batch_size: 2
eval_batch_size: 2
num_epochs: 3
warmup_steps: 100
learning_rate: 0.00003
lr_quadratic_warmup:
logging_steps:
save_strategy: # set to `no` to skip checkpoint saves
save_steps: # leave empty to save at each epoch
eval_steps: # leave empty to eval at each epoch
save_total_limit: # checkpoints saved at a time
max_steps:
# save model as safetensors (require safetensors package)
save_safetensors:
# whether to mask out or include the human's prompt from the training labels
train_on_inputs: false
# group similarly sized data to minimize padding
# may be slower to start, as it must download and sort the entire dataset
# note that training loss may have an oscillating pattern with this enabled
group_by_length: false
# Whether to use gradient checkpointing https://huggingface.co/docs/transformers/v4.18.0/en/performance#gradient-checkpointing
gradient_checkpointing: false
# stop training after this many evaluation losses have increased in a row
# https://huggingface.co/transformers/v4.2.2/_modules/transformers/trainer_callback.html#EarlyStoppingCallback
early_stopping_patience: 3
# specify a scheduler and kwargs to use with the optimizer
lr_scheduler: # 'one_cycle' | 'log_sweep' | empty for cosine
lr_scheduler_kwargs:
# for one_cycle optim
lr_div_factor: # learning rate div factor
# for log_sweep optim
log_sweep_min_lr:
log_sweep_max_lr:
# specify optimizer
optimizer:
# specify weight decay
weight_decay:
# adamw hyperparams
adam_beta1:
adam_beta2:
adam_epsilon:
# Gradient clipping max norm
max_grad_norm:
# whether to bettertransformers
flash_optimum:
# whether to use xformers attention patch https://github.com/facebookresearch/xformers:
xformers_attention:
# whether to use flash attention patch https://github.com/Dao-AILab/flash-attention:
flash_attention:
# whether to use scaled-dot-product attention
# https://pytorch.org/docs/stable/generated/torch.nn.functional.scaled_dot_product_attention.html
sdp_attention:
# Landmark attention (only llama)
landmark_attention:
# xpos RoPE see https://github.com/kaiokendev/cutoff-len-is-context-len/blob/main/util/xpos_rope_llama_monkey_patch.py
# llama only
xpos_rope:
# RoPE Scaling https://github.com/huggingface/transformers/pull/24653
rope_scaling:
type: # linear | dynamic
factor: # float
# resume from a specific checkpoint dir
resume_from_checkpoint:
# if resume_from_checkpoint isn't set and you simply want it to start where it left off
# be careful with this being turned on between different models
auto_resume_from_checkpoints: false
# don't mess with this, it's here for accelerate and torchrun
local_rank:
# add or change special tokens
special_tokens:
# bos_token: "<s>"
# eos_token: "</s>"
# unk_token: "<unk>"
# add extra tokens
tokens:
# FSDP
fsdp:
fsdp_config:
# Deepspeed config path
deepspeed:
# Path to torch distx for optim 'adamw_anyprecision'
torchdistx_path:
# Set to HF dataset for type: 'completion' for streaming instead of pre-tokenize
pretraining_dataset:
# Debug mode
debug:
# Seed
seed:
# Allow overwrite yml config using from cli
strict:
```
</details>
### Your First Fine-tune
### Train
Run
```bash
accelerate launch scripts/finetune.py your_config.yml
```
#### Multi-GPU
You can optionally pre-tokenize dataset with the following before finetuning:
```bash
CUDA_VISIBLE_DEVICES="" accelerate ... --prepare_ds_only
```
##### Config
- llama FSDP
```yaml
fsdp:
- full_shard
- auto_wrap
fsdp_config:
fsdp_offload_params: true
fsdp_state_dict_type: FULL_STATE_DICT
fsdp_sync_module_states: true
fsdp_transformer_layer_cls_to_wrap: LlamaDecoderLayer
```
- llama Deepspeed
```yaml
deepspeed: deepspeed/zero3.json
```
##### Weights & Biases Logging
- wandb options
```yaml
wandb_mode:
wandb_project:
wandb_entity:
wandb_watch:
wandb_run_id:
wandb_log_model:
```
### Inference
Pass the appropriate flag to the train command:
- Pretrained LORA:
```bash
--inference --lora_model_dir="./lora-output-dir"
```
- Full weights finetune:
```bash
--inference --base_model="./completed-model"
```
- Full weights finetune w/ a prompt from a text file:
```bash
cat /tmp/prompt.txt | python scripts/finetune.py configs/your_config.yml \
--base_model="./completed-model" --inference --prompter=None --load_in_8bit=True
```
### Merge LORA to base
Add below flag to train command above
```bash
# Fetch axolotl examples
axolotl fetch examples
# Or, specify a custom path
axolotl fetch examples --dest path/to/folder
# Train a model using LoRA
axolotl train examples/llama-3/lora-1b.yml
--merge_lora --lora_model_dir="./completed-model" --load_in_8bit=False --load_in_4bit=False
```
That's it! Check out our [Getting Started Guide](https://docs.axolotl.ai/docs/getting-started.html) for a more detailed walkthrough.
If you run out of CUDA memory, you can try to merge in system RAM with
## 📚 Documentation
- [Installation Options](https://docs.axolotl.ai/docs/installation.html) - Detailed setup instructions for different environments
- [Configuration Guide](https://docs.axolotl.ai/docs/config-reference.html) - Full configuration options and examples
- [Dataset Loading](https://docs.axolotl.ai/docs/dataset_loading.html) - Loading datasets from various sources
- [Dataset Guide](https://docs.axolotl.ai/docs/dataset-formats/) - Supported formats and how to use them
- [Multi-GPU Training](https://docs.axolotl.ai/docs/multi-gpu.html)
- [Multi-Node Training](https://docs.axolotl.ai/docs/multi-node.html)
- [Multipacking](https://docs.axolotl.ai/docs/multipack.html)
- [API Reference](https://docs.axolotl.ai/docs/api/) - Auto-generated code documentation
- [FAQ](https://docs.axolotl.ai/docs/faq.html) - Frequently asked questions
## 🤝 Getting Help
- Join our [Discord community](https://discord.gg/HhrNrHJPRb) for support
- Check out our [Examples](https://github.com/axolotl-ai-cloud/axolotl/tree/main/examples/) directory
- Read our [Debugging Guide](https://docs.axolotl.ai/docs/debugging.html)
- Need dedicated support? Please contact [wing@axolotl.ai](mailto:wing@axolotl.ai) for options
## 🌟 Contributing
Contributions are welcome! Please see our [Contributing Guide](https://github.com/axolotl-ai-cloud/axolotl/blob/main/.github/CONTRIBUTING.md) for details.
## 📈 Telemetry
Axolotl has opt-out telemetry that helps us understand how the project is being used
and prioritize improvements. We collect basic system information, model types, and
error rates—never personal data or file paths. Telemetry is enabled by default. To
disable it, set AXOLOTL_DO_NOT_TRACK=1. For more details, see our [telemetry documentation](https://docs.axolotl.ai/docs/telemetry.html).
## ❤️ Sponsors
Interested in sponsoring? Contact us at [wing@axolotl.ai](mailto:wing@axolotl.ai)
## 📝 Citing Axolotl
If you use Axolotl in your research or projects, please cite it as follows:
```bibtex
@software{axolotl,
title = {Axolotl: Open Source LLM Post-Training},
author = {{Axolotl maintainers and contributors}},
url = {https://github.com/axolotl-ai-cloud/axolotl},
license = {Apache-2.0},
year = {2023}
}
```bash
CUDA_VISIBLE_DEVICES="" python3 scripts/finetune.py ...
```
## 📜 License
## Common Errors 🧰
This project is licensed under the Apache 2.0 License - see the [LICENSE](LICENSE) file for details.
> If you encounter a 'Cuda out of memory' error, it means your GPU ran out of memory during the training process. Here's how to resolve it:
Please reduce any below
- `micro_batch_size`
- `eval_batch_size`
- `gradient_accumulation_steps`
- `sequence_len`
> `failed (exitcode: -9)`
Usually means your system has run out of system memory.
Similarly, you should consider reducing the same settings as when you run out of VRAM.
Additionally, look into upgrading your system RAM which should be simpler than GPU upgrades.
> RuntimeError: expected scalar type Float but found Half
Try set `fp16: true`
> NotImplementedError: No operator found for `memory_efficient_attention_forward` ...
Try to turn off xformers.
> accelerate config missing
It's safe to ignore it.
## Need help? 🙋♂️
Join our [Discord server](https://discord.gg/HhrNrHJPRb) where we can help you
## Badge ❤🏷️
Building something cool with Axolotl? Consider adding a badge to your model card.
```markdown
[<img src="https://raw.githubusercontent.com/OpenAccess-AI-Collective/axolotl/main/image/axolotl-badge-web.png" alt="Built with Axolotl" width="200" height="32"/>](https://github.com/OpenAccess-AI-Collective/axolotl)
```
[<img src="https://raw.githubusercontent.com/OpenAccess-AI-Collective/axolotl/main/image/axolotl-badge-web.png" alt="Built with Axolotl" width="200" height="32"/>](https://github.com/OpenAccess-AI-Collective/axolotl)
## Community Showcase
Check out some of the projects and models that have been built using Axolotl! Have a model you'd like to add to our Community Showcase? Open a PR with your model.
Open Access AI Collective
- [Minotaur 13b](https://huggingface.co/openaccess-ai-collective/minotaur-13b)
- [Manticore 13b](https://huggingface.co/openaccess-ai-collective/manticore-13b)
- [Hippogriff 30b](https://huggingface.co/openaccess-ai-collective/hippogriff-30b-chat)
PocketDoc Labs
- [Dan's PersonalityEngine 13b LoRA](https://huggingface.co/PocketDoc/Dans-PersonalityEngine-13b-LoRA)
## Contributing 🤝
Please read the [contributing guide](./.github/CONTRIBUTING.md)
Bugs? Please check the [open issues](https://github.com/OpenAccess-AI-Collective/axolotl/issues/bug) else create a new Issue.
PRs are **greatly welcome**!
Please run below to setup env
```bash
pip3 install -r requirements-dev.txt -r requirements-tests.txt
pre-commit install
# test
pytest tests/
```

10
TODO.md Normal file
View File

@@ -0,0 +1,10 @@
# todo list
- [] Validation of parameters for combinations that won't work
## things that are known not to work
- FSDP offload and gradient_checkpointing - https://github.com/pytorch/pytorch/issues/82203
- adamw_bnb_8bit doesn't play well with FSDP offload

View File

@@ -1,363 +0,0 @@
project:
type: website
pre-render:
- docs/scripts/generate_config_docs.py
- docs/scripts/generate_examples_docs.py
quartodoc:
dir: docs/api
package: axolotl
title: API Reference
parser: google
sections:
- title: Core
desc: Core functionality for training
contents:
- train
- evaluate
- datasets
- convert
- prompt_tokenizers
- logging_config
- core.builders.base
- core.builders.causal
- core.builders.rl
- core.training_args
- core.chat.messages
- core.chat.format.chatml
- core.chat.format.llama3x
- core.chat.format.shared
- core.datasets.chat
- core.datasets.transforms.chat_builder
- title: CLI
desc: Command-line interface
contents:
- cli.main
- cli.train
- cli.evaluate
- cli.args
- cli.art
- cli.checks
- cli.config
- cli.delinearize_llama4
- cli.inference
- cli.merge_lora
- cli.merge_sharded_fsdp_weights
- cli.preprocess
- cli.quantize
- cli.vllm_serve
- cli.cloud.base
- cli.cloud.modal_
- cli.utils
- cli.utils.args
- cli.utils.fetch
- cli.utils.load
- cli.utils.sweeps
- cli.utils.train
- title: Trainers
desc: Training implementations
contents:
- core.trainers.base
- core.trainers.trl
- core.trainers.mamba
- core.trainers.dpo.trainer
- core.trainers.grpo.trainer
- core.trainers.grpo.sampler
- core.trainers.utils
- title: Model Loading
desc: Functionality for loading and patching models, tokenizers, etc.
contents:
- loaders.model
- loaders.tokenizer
- loaders.processor
- loaders.adapter
- loaders.patch_manager
- loaders.constants
- title: Mixins
desc: Mixin classes for augmenting trainers
contents:
- core.trainers.mixins.optimizer
- core.trainers.mixins.rng_state_loader
- core.trainers.mixins.scheduler
- title: Context Managers
desc: Context managers for altering trainer behaviors
contents:
- utils.ctx_managers.sequence_parallel
- title: Prompt Strategies
desc: Prompt formatting strategies
contents:
- prompt_strategies.base
- prompt_strategies.chat_template
- prompt_strategies.alpaca_chat
- prompt_strategies.alpaca_instruct
- prompt_strategies.alpaca_w_system
- prompt_strategies.user_defined
- prompt_strategies.llama2_chat
- prompt_strategies.completion
- prompt_strategies.input_output
- prompt_strategies.stepwise_supervised
- prompt_strategies.metharme
- prompt_strategies.orcamini
- prompt_strategies.pygmalion
- prompt_strategies.messages.chat
- prompt_strategies.dpo.chat_template
- prompt_strategies.dpo.llama3
- prompt_strategies.dpo.chatml
- prompt_strategies.dpo.zephyr
- prompt_strategies.dpo.user_defined
- prompt_strategies.dpo.passthrough
- prompt_strategies.kto.llama3
- prompt_strategies.kto.chatml
- prompt_strategies.kto.user_defined
- prompt_strategies.orpo.chat_template
- prompt_strategies.bradley_terry.llama3
- title: Kernels
desc: Low-level performance optimizations
contents:
- kernels.lora
- kernels.geglu
- kernels.swiglu
- kernels.quantize
- kernels.utils
- title: Monkey Patches
desc: Runtime patches for model optimizations
contents:
- monkeypatch.llama_attn_hijack_flash
- monkeypatch.llama_attn_hijack_xformers
- monkeypatch.mistral_attn_hijack_flash
- monkeypatch.multipack
- monkeypatch.relora
- monkeypatch.llama_expand_mask
- monkeypatch.lora_kernels
- monkeypatch.utils
- monkeypatch.btlm_attn_hijack_flash
- monkeypatch.llama_patch_multipack
- monkeypatch.stablelm_attn_hijack_flash
- monkeypatch.trainer_fsdp_optim
- monkeypatch.transformers_fa_utils
- monkeypatch.unsloth_
- monkeypatch.data.batch_dataset_fetcher
- monkeypatch.mixtral
- monkeypatch.gradient_checkpointing.offload_cpu
- monkeypatch.gradient_checkpointing.offload_disk
- title: Utils
desc: Utility functions
contents:
- utils.tokenization
- utils.chat_templates
- utils.lora
- utils.model_shard_quant
- utils.bench
- utils.freeze
- utils.trainer
- utils.schedulers
- utils.distributed
- utils.dict
- utils.optimizers.adopt
- utils.data.streaming
- utils.data.sft
- utils.quantization
- title: Schemas
desc: Pydantic data models for Axolotl config
contents:
- utils.schemas.config
- utils.schemas.model
- utils.schemas.training
- utils.schemas.datasets
- utils.schemas.peft
- utils.schemas.trl
- utils.schemas.multimodal
- utils.schemas.integrations
- utils.schemas.enums
- utils.schemas.utils
- title: Integrations
desc: Third-party integrations and extensions
contents:
- integrations.base
- integrations.cut_cross_entropy.args
- integrations.grokfast.optimizer
- integrations.kd.trainer
- integrations.liger.args
- integrations.lm_eval.args
- integrations.spectrum.args
- title: Common
desc: Common utilities and shared functionality
contents:
- common.architectures
- common.const
- common.datasets
- title: Models
desc: Custom model implementations
contents:
- models.mamba.modeling_mamba
- title: Data Processing
desc: Data processing utilities
contents:
- utils.collators.core
- utils.collators.batching
- utils.collators.mamba
- utils.collators.mm_chat
- utils.samplers.multipack
- title: Callbacks
desc: Training callbacks
contents:
- utils.callbacks.perplexity
- utils.callbacks.profiler
- utils.callbacks.lisa
- utils.callbacks.mlflow_
- utils.callbacks.comet_
- utils.callbacks.qat
website:
title: "Axolotl"
description: "We make fine-tuning accessible, scalable, and fun"
favicon: favicon.jpg
google-analytics: "G-9KYCVJBNMQ"
navbar:
logo: image/axolotl_logo_digital_white.svg
title: false
background: dark
pinned: false
collapse: false
tools:
- icon: twitter
href: https://twitter.com/axolotl_ai
- icon: github
href: https://github.com/axolotl-ai-cloud/axolotl/
- icon: discord
href: https://discord.gg/7m9sfhzaf3
sidebar:
pinned: true
collapse-level: 2
style: docked
contents:
- text: Home
href: index.qmd
- section: "Getting Started"
contents:
- docs/getting-started.qmd
- docs/installation.qmd
- docs/inference.qmd
- section: "Model Guides"
contents:
- docs/models/kimi-linear.qmd
- docs/models/plano.qmd
- docs/models/mimo.qmd
- docs/models/internvl3_5.qmd
- docs/models/olmo3.qmd
- docs/models/trinity.qmd
- docs/models/arcee.qmd
- docs/models/mistral.qmd
- section: "Ministral3"
contents:
- docs/models/ministral3.qmd
- docs/models/ministral3/think.qmd
- docs/models/ministral3/vision.qmd
- section: "Magistral"
contents:
- docs/models/magistral.qmd
- docs/models/magistral/think.qmd
- docs/models/magistral/vision.qmd
- docs/models/ministral.qmd
- docs/models/mistral-small.qmd
- docs/models/voxtral.qmd
- docs/models/devstral.qmd
- docs/models/llama-4.qmd
- docs/models/llama-2.qmd
- docs/models/qwen3-next.qmd
- docs/models/qwen3.qmd
- docs/models/gemma3n.qmd
- docs/models/apertus.qmd
- docs/models/gpt-oss.qmd
- docs/models/seed-oss.qmd
- docs/models/phi.qmd
- docs/models/smolvlm2.qmd
- docs/models/granite4.qmd
- docs/models/LiquidAI.qmd
- docs/models/hunyuan.qmd
- docs/models/jamba.qmd
- docs/models/orpheus.qmd
- docs/cli.qmd
- docs/telemetry.qmd
- docs/config-reference.qmd
- text: "API Reference"
href: docs/api
- section: "Dataset Formats"
contents: docs/dataset-formats/*
- section: "Deployments"
contents:
- docs/docker.qmd
- docs/multi-gpu.qmd
- docs/multi-node.qmd
- docs/ray-integration.qmd
- docs/amd_hpc.qmd
- docs/mac.qmd
- section: "How To Guides"
contents:
- docs/multimodal.qmd
- docs/rlhf.qmd
- docs/reward_modelling.qmd
- docs/lr_groups.qmd
- docs/lora_optims.qmd
- docs/dataset_loading.qmd
- docs/qat.qmd
- docs/quantize.qmd
- docs/optimizations.qmd
- section: "Core Concepts"
contents:
- docs/batch_vs_grad.qmd
- docs/dataset_preprocessing.qmd
- docs/streaming.qmd
- docs/multipack.qmd
- docs/mixed_precision.qmd
- docs/optimizers.qmd
- section: "Advanced Features"
contents:
- docs/fsdp_qlora.qmd
- docs/unsloth.qmd
- docs/torchao.qmd
- docs/custom_integrations.qmd
- docs/sequence_parallelism.qmd
- docs/gradient_checkpointing.qmd
- docs/nd_parallelism.qmd
- section: "Troubleshooting"
contents:
- docs/faq.qmd
- docs/debugging.qmd
- docs/nccl.qmd
format:
html:
theme: darkly
css: styles.css
toc: true
# Enable better handling of line breaks in markdown
preserve-tabs: true
html-math-method: mathjax
# Improved markdown processing options
md-extensions:
- markdown_it
- def_list
- attr_list
- fenced_divs
- tables
- html_admonition
- lineblocks
- fancy_lists
# Control whitespace handling
whitespace: preserve
# Process newlines in paragraphs
wrap: preserve
# Better line break handling
preserve-linebreaks: true

View File

@@ -1,53 +0,0 @@
FROM axolotlai/axolotl-base-uv:{{ BASE_TAG }}
ENV TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ENV AXOLOTL_EXTRAS="{{ AXOLOTL_EXTRAS }}"
ENV AXOLOTL_ARGS="{{ AXOLOTL_ARGS }}"
ENV CUDA="{{ CUDA }}"
ENV PYTORCH_VERSION="{{ PYTORCH_VERSION }}"
ENV GITHUB_REF="{{ GITHUB_REF }}"
ENV GITHUB_SHA="{{ GITHUB_SHA }}"
ENV NIGHTLY_BUILD="{{ NIGHTLY_BUILD }}"
ENV HF_HOME="{{ HF_HOME }}"
RUN apt-get update && \
apt-get install -y --allow-change-held-packages vim curl nano libnccl2 libnccl-dev ibverbs-providers ibverbs-utils infiniband-diags librdmacm-dev librdmacm1 rdmacm-utils slurm-wlm
WORKDIR /workspace
RUN git clone --depth=1 https://github.com/axolotl-ai-cloud/axolotl.git
WORKDIR /workspace/axolotl
RUN git fetch origin +$GITHUB_REF && \
git checkout FETCH_HEAD
# If AXOLOTL_EXTRAS is set, append it in brackets
RUN if [ "$NIGHTLY_BUILD" = "true" ] ; then \
sed -i 's#^transformers.*#transformers @ git+https://github.com/huggingface/transformers.git@main#' requirements.txt; \
sed -i 's#^peft.*#peft @ git+https://github.com/huggingface/peft.git@main#' requirements.txt; \
sed -i 's#^accelerate.*#accelerate @ git+https://github.com/huggingface/accelerate.git@main#' requirements.txt; \
sed -i 's#^trl.*#trl @ git+https://github.com/huggingface/trl.git@main#' requirements.txt; \
sed -i 's#^datasets.*#datasets @ git+https://github.com/huggingface/datasets.git@main#' requirements.txt; \
fi
RUN uv pip install packaging==23.2 setuptools==75.8.0
RUN uv pip install torchvision
RUN if [ "$AXOLOTL_EXTRAS" != "" ] ; then \
uv pip install --no-build-isolation -e .[deepspeed,flash-attn,ring-flash-attn,optimizers,ray,$AXOLOTL_EXTRAS] $AXOLOTL_ARGS; \
else \
uv pip install --no-build-isolation -e .[deepspeed,flash-attn,ring-flash-attn,optimizers,ray] $AXOLOTL_ARGS; \
fi
RUN python scripts/unsloth_install.py --uv | sh
RUN python scripts/cutcrossentropy_install.py --uv | sh
# So we can test the Docker image
RUN uv pip install -r requirements-dev.txt -r requirements-tests.txt
# fix so that git fetch/pull from remote works
RUN git config remote.origin.fetch "+refs/heads/*:refs/remotes/origin/*" && \
git config --get remote.origin.fetch
# helper for huggingface-login cli
RUN git config --global credential.helper store

View File

@@ -1,53 +0,0 @@
FROM axolotlai/axolotl-base:{{ BASE_TAG }}
ENV TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
ENV AXOLOTL_EXTRAS="{{ AXOLOTL_EXTRAS }}"
ENV AXOLOTL_ARGS="{{ AXOLOTL_ARGS }}"
ENV CUDA="{{ CUDA }}"
ENV PYTORCH_VERSION="{{ PYTORCH_VERSION }}"
ENV GITHUB_REF="{{ GITHUB_REF }}"
ENV GITHUB_SHA="{{ GITHUB_SHA }}"
ENV NIGHTLY_BUILD="{{ NIGHTLY_BUILD }}"
ENV HF_HOME="{{ HF_HOME }}"
ENV AXOLOTL_DATASET_NUM_PROC="8"
RUN apt-get update && \
apt-get install -y --allow-change-held-packages vim curl nano libnccl2 libnccl-dev ibverbs-providers ibverbs-utils infiniband-diags librdmacm-dev librdmacm1 rdmacm-utils slurm-wlm
WORKDIR /workspace
RUN git clone --depth=1 https://github.com/axolotl-ai-cloud/axolotl.git
WORKDIR /workspace/axolotl
RUN git fetch origin +$GITHUB_REF && \
git checkout FETCH_HEAD
# If AXOLOTL_EXTRAS is set, append it in brackets
RUN if [ "$NIGHTLY_BUILD" = "true" ] ; then \
sed -i 's#^transformers.*#transformers @ git+https://github.com/huggingface/transformers.git@main#' requirements.txt; \
sed -i 's#^peft.*#peft @ git+https://github.com/huggingface/peft.git@main#' requirements.txt; \
sed -i 's#^accelerate.*#accelerate @ git+https://github.com/huggingface/accelerate.git@main#' requirements.txt; \
sed -i 's#^trl.*#trl @ git+https://github.com/huggingface/trl.git@main#' requirements.txt; \
sed -i 's#^datasets.*#datasets @ git+https://github.com/huggingface/datasets.git@main#' requirements.txt; \
fi
RUN pip install packaging==23.2 setuptools==75.8.0 psutil
RUN if [ "$AXOLOTL_EXTRAS" != "" ] ; then \
pip install --no-build-isolation -e .[deepspeed,flash-attn,ring-flash-attn,optimizers,ray,$AXOLOTL_EXTRAS] $AXOLOTL_ARGS; \
else \
pip install --no-build-isolation -e .[deepspeed,flash-attn,ring-flash-attn,optimizers,ray] $AXOLOTL_ARGS; \
fi
RUN python scripts/unsloth_install.py | sh
RUN python scripts/cutcrossentropy_install.py | sh
# So we can test the Docker image
RUN pip install -r requirements-dev.txt -r requirements-tests.txt
# fix so that git fetch/pull from remote works
RUN git config remote.origin.fetch "+refs/heads/*:refs/remotes/origin/*" && \
git config --get remote.origin.fetch
# helper for huggingface-login cli
RUN git config --global credential.helper store

View File

View File

@@ -1,55 +0,0 @@
#!/bin/bash
set -e
python -c "import torch; assert '$PYTORCH_VERSION' in torch.__version__"
# Run unit tests with initial coverage report
pytest -v --durations=10 -n8 \
--ignore=tests/e2e/ \
--ignore=tests/patched/ \
--ignore=tests/cli \
/workspace/axolotl/tests/ \
--cov=axolotl
# Run lora kernels tests with coverage append
pytest -v --durations=10 \
/workspace/axolotl/tests/e2e/patched/lora_kernels \
--cov=axolotl \
--cov-append
# Run patched tests excluding lora kernels with coverage append
pytest --full-trace -vvv --durations=10 \
--ignore=tests/e2e/patched/lora_kernels \
/workspace/axolotl/tests/e2e/patched \
--cov=axolotl \
--cov-append
# Run solo tests with coverage append
pytest -v --durations=10 -n1 \
/workspace/axolotl/tests/e2e/solo/ \
--cov=axolotl \
--cov-append
# Run integration tests with coverage append
pytest -v --durations=10 \
/workspace/axolotl/tests/e2e/integrations/ \
--cov=axolotl \
--cov-append
pytest -v --durations=10 /workspace/axolotl/tests/cli \
--cov=axolotl \
--cov-append
# Run remaining e2e tests with coverage append and final report
pytest -v --durations=10 \
--ignore=tests/e2e/solo/ \
--ignore=tests/e2e/patched/ \
--ignore=tests/e2e/multigpu/ \
--ignore=tests/e2e/integrations/ \
--ignore=tests/cli \
/workspace/axolotl/tests/e2e/ \
--cov=axolotl \
--cov-append \
--cov-report=xml:e2e-coverage.xml
codecov upload-process -t $CODECOV_TOKEN -f e2e-coverage.xml -F e2e,pytorch-${PYTORCH_VERSION} || true

View File

@@ -1,19 +0,0 @@
"""Modal app to run axolotl GPU cleanup"""
from .single_gpu import VOLUME_CONFIG, app, cicd_image, run_cmd
@app.function(
image=cicd_image,
timeout=60 * 60,
cpu=8.0,
memory=131072,
volumes=VOLUME_CONFIG,
)
def cleanup():
run_cmd("./cicd/cleanup.sh", "/workspace/axolotl")
@app.local_entrypoint()
def main():
cleanup.remote()

View File

@@ -1,6 +0,0 @@
#!/bin/bash
set -e
# cleanup old cache files for datasets processing and intermediate mappings
find /workspace/data/huggingface-cache/hub/datasets -name "cache-*" -type f -mtime +1 -exec rm {} \;
find /workspace/data/huggingface-cache/hub/datasets -name "*.lock" -type f -mtime +1 -exec rm {} \;

View File

@@ -1,20 +0,0 @@
"""Modal app to run axolotl GPU tests"""
from .single_gpu import GPU_CONFIG, VOLUME_CONFIG, app, cicd_image, run_cmd
@app.function(
image=cicd_image,
gpu=GPU_CONFIG,
timeout=120 * 60, # 90 min
cpu=8.0,
memory=131072,
volumes=VOLUME_CONFIG,
)
def cicd_pytest():
run_cmd("./cicd/cicd.sh", "/workspace/axolotl")
@app.local_entrypoint()
def main():
cicd_pytest.remote()

View File

@@ -1,81 +0,0 @@
"""
modal application to run axolotl gpu tests in Modal
"""
import os
import pathlib
import tempfile
import jinja2
import modal
from jinja2 import select_autoescape
from modal import App, Image
cicd_path = pathlib.Path(__file__).parent.resolve()
template_loader = jinja2.FileSystemLoader(searchpath=cicd_path)
template_env = jinja2.Environment(
loader=template_loader, autoescape=select_autoescape()
)
df_template = template_env.get_template("Dockerfile.jinja")
df_args = {
"AXOLOTL_EXTRAS": os.environ.get("AXOLOTL_EXTRAS", ""),
"AXOLOTL_ARGS": os.environ.get("AXOLOTL_ARGS", ""),
"PYTORCH_VERSION": os.environ.get("PYTORCH_VERSION", "2.6.0"),
"BASE_TAG": os.environ.get("BASE_TAG", "main-base-py3.11-cu126-2.6.0"),
"CUDA": os.environ.get("CUDA", "126"),
"GITHUB_REF": os.environ.get("GITHUB_REF", "refs/heads/main"),
"GITHUB_SHA": os.environ.get("GITHUB_SHA", ""),
"CODECOV_TOKEN": os.environ.get("CODECOV_TOKEN", ""),
"HF_HOME": "/workspace/data/huggingface-cache/hub",
}
dockerfile_contents = df_template.render(**df_args)
temp_dir = tempfile.mkdtemp()
with open(pathlib.Path(temp_dir) / "Dockerfile", "w", encoding="utf-8") as f:
f.write(dockerfile_contents)
cicd_image = Image.from_dockerfile(
pathlib.Path(temp_dir) / "Dockerfile",
force_build=True,
gpu="A10G",
).env(df_args)
app = App("Axolotl CI/CD", secrets=[])
hf_cache_volume = modal.Volume.from_name(
"axolotl-ci-hf-hub-cache", create_if_missing=True
)
VOLUME_CONFIG = {
"/workspace/data/huggingface-cache/hub": hf_cache_volume,
}
N_GPUS = int(os.environ.get("N_GPUS", 2))
GPU_CONFIG = f"H100:{N_GPUS}"
def run_cmd(cmd: str, run_folder: str):
import subprocess # nosec
# Propagate errors from subprocess.
if exit_code := subprocess.call(cmd.split(), cwd=run_folder): # nosec
exit(exit_code)
@app.function(
image=cicd_image,
gpu=GPU_CONFIG,
timeout=120 * 60,
cpu=16.0,
memory=131072 * N_GPUS,
volumes=VOLUME_CONFIG,
)
def cicd_pytest():
run_cmd("./cicd/multigpu.sh", "/workspace/axolotl")
@app.local_entrypoint()
def main():
cicd_pytest.remote()

View File

@@ -1,25 +0,0 @@
#!/bin/bash
set -e
# Only run two tests at a time to avoid OOM on GPU (with coverage collection)
pytest -v --durations=10 -n2 --maxfail=4 \
--ignore=/workspace/axolotl/tests/e2e/multigpu/solo/ \
--ignore=/workspace/axolotl/tests/e2e/multigpu/patched/ \
/workspace/axolotl/tests/e2e/multigpu/ \
--cov=axolotl
# Run solo tests with coverage append
pytest -v --durations=10 -n1 \
/workspace/axolotl/tests/e2e/multigpu/solo/ \
--cov=axolotl \
--cov-append
pytest -v --durations=10 -n1 /workspace/axolotl/tests/e2e/multigpu/patched/ \
--cov=axolotl \
--cov-append \
--cov-report=xml:multigpu-coverage.xml
# Upload coverage to Codecov if CODECOV_TOKEN is available
if [ -n "$CODECOV_TOKEN" ]; then
codecov upload-process -t "${CODECOV_TOKEN}" -f multigpu-coverage.xml -F multigpu,docker-tests,pytorch-${PYTORCH_VERSION} || true
fi

View File

@@ -1,77 +0,0 @@
"""Modal app to run axolotl GPU tests"""
import os
import pathlib
import tempfile
import jinja2
import modal
import modal.experimental
from jinja2 import select_autoescape
from modal import App
cicd_path = pathlib.Path(__file__).parent.resolve()
template_loader = jinja2.FileSystemLoader(searchpath=cicd_path)
template_env = jinja2.Environment(
loader=template_loader, autoescape=select_autoescape()
)
dockerfile = os.environ.get("E2E_DOCKERFILE", "Dockerfile.jinja")
df_template = template_env.get_template(dockerfile)
df_args = {
"AXOLOTL_EXTRAS": os.environ.get("AXOLOTL_EXTRAS", ""),
"AXOLOTL_ARGS": os.environ.get("AXOLOTL_ARGS", ""),
"PYTORCH_VERSION": os.environ.get("PYTORCH_VERSION", "2.6.0"),
"BASE_TAG": os.environ.get("BASE_TAG", "main-base-py3.11-cu126-2.6.0"),
"CUDA": os.environ.get("CUDA", "126"),
"GITHUB_REF": os.environ.get("GITHUB_REF", "refs/heads/main"),
"GITHUB_SHA": os.environ.get("GITHUB_SHA", ""),
"NIGHTLY_BUILD": os.environ.get("NIGHTLY_BUILD", ""),
"CODECOV_TOKEN": os.environ.get("CODECOV_TOKEN", ""),
"HF_HOME": "/workspace/data/huggingface-cache/hub",
"PYTHONUNBUFFERED": os.environ.get("PYTHONUNBUFFERED", "1"),
"DEEPSPEED_LOG_LEVEL": os.environ.get("DEEPSPEED_LOG_LEVEL", "WARNING"),
}
dockerfile_contents = df_template.render(**df_args)
temp_dir = tempfile.mkdtemp()
with open(pathlib.Path(temp_dir) / "Dockerfile", "w", encoding="utf-8") as f:
f.write(dockerfile_contents)
cicd_image = modal.experimental.raw_dockerfile_image(
pathlib.Path(temp_dir) / "Dockerfile",
# context_mount=None,
force_build=True,
# gpu="A10G",
).env(df_args)
app = App("Axolotl CI/CD", secrets=[])
hf_cache_volume = modal.Volume.from_name(
"axolotl-ci-hf-hub-cache", create_if_missing=True
)
VOLUME_CONFIG = {
"/workspace/data/huggingface-cache/hub": hf_cache_volume,
}
N_GPUS = int(os.environ.get("N_GPUS", 1))
GPU_TYPE = os.environ.get("GPU_TYPE", "L40S")
GPU_CONFIG = f"{GPU_TYPE}:{N_GPUS}"
def run_cmd(cmd: str, run_folder: str):
import subprocess # nosec
sp_env = os.environ.copy()
sp_env["AXOLOTL_DATASET_NUM_PROC"] = "8"
# Propagate errors from subprocess.
try:
exit_code = subprocess.call(cmd.split(), cwd=run_folder, env=sp_env) # nosec
if exit_code:
print(f"Command '{cmd}' failed with exit code {exit_code}")
return exit_code
except Exception as e: # pylint: disable=broad-except
print(f"Command '{cmd}' failed with exception {e}")

View File

@@ -1,57 +0,0 @@
codecov:
require_ci_to_pass: yes
notify:
wait_for_ci: true
coverage:
precision: 2
round: down
range: "70...100"
status:
project:
default:
# basic
target: auto
threshold: 1%
base: auto
# advanced
branches: null
if_no_uploads: error
if_not_found: success
if_ci_failed: error
only_pulls: true
flags: null
paths: null
informational: true
patch:
default:
# basic
target: auto
threshold: 1%
base: auto
# advanced
branches: null
if_no_uploads: error
if_not_found: success
if_ci_failed: error
only_pulls: false
flags: null
paths: null
parsers:
gcov:
branch_detection:
conditional: yes
loop: yes
method: no
macro: no
comment:
layout: "reach,diff,flags,files,footer"
behavior: default
require_changes: no
require_base: no
require_head: yes
github_checks:
annotations: false

46
deepspeed/zero2.json Normal file
View File

@@ -0,0 +1,46 @@
{
"zero_optimization": {
"stage": 2,
"offload_optimizer": {
"device": "cpu"
},
"contiguous_gradients": true,
"overlap_comm": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"optimizer": {
"type": "AdamW",
"params": {
"lr": "auto",
"betas": [
0.9,
0.999
],
"eps": 1e-8,
"weight_decay": "auto"
}
},
"scheduler": {
"type": "WarmupDecayLR",
"params": {
"warmup_min_lr": "auto",
"warmup_max_lr": "auto",
"warmup_num_steps": "auto",
"total_num_steps": "auto"
}
},
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

57
deepspeed/zero3.json Normal file
View File

@@ -0,0 +1,57 @@
{
"zero_optimization": {
"stage": 3,
"offload_optimizer": {
"device": "cpu",
"pin_memory": true
},
"offload_param": {
"device": "cpu",
"pin_memory": true
},
"overlap_comm": true,
"contiguous_gradients": true,
"sub_group_size": 0,
"reduce_bucket_size": "auto",
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"stage3_max_live_parameters": 0,
"stage3_max_reuse_distance": 0,
"stage3_gather_16bit_weights_on_model_save": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"optimizer": {
"type": "AdamW",
"params": {
"lr": "auto",
"betas": [
0.9,
0.95
],
"eps": 1e-8,
"weight_decay": "auto"
}
},
"scheduler": {
"type": "WarmupLR",
"params": {
"warmup_min_lr": "auto",
"warmup_max_lr": "auto",
"warmup_num_steps": "auto"
}
},
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,23 +0,0 @@
{
"zero_optimization": {
"stage": 1,
"overlap_comm": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,27 +0,0 @@
{
"zero_optimization": {
"stage": 1,
"overlap_comm": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"compile": {
"disable": false,
"backend": "inductor"
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,27 +0,0 @@
{
"zero_optimization": {
"stage": 2,
"offload_optimizer": {
"device": "cpu"
},
"contiguous_gradients": true,
"overlap_comm": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,31 +0,0 @@
{
"compile": {
"disable": false,
"backend": "inductor"
},
"zero_optimization": {
"stage": 2,
"offload_optimizer": {
"device": "cpu"
},
"contiguous_gradients": true,
"overlap_comm": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,31 +0,0 @@
{
"zero_optimization": {
"stage": 3,
"overlap_comm": true,
"contiguous_gradients": true,
"sub_group_size": 0,
"reduce_bucket_size": "auto",
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"max_live_parameters": 0,
"max_reuse_distance": 0,
"gather_16bit_weights_on_model_save": true
},
"bf16": {
"enabled": "auto"
},
"fp16": {
"enabled": "auto",
"auto_cast": false,
"loss_scale": 0,
"initial_scale_power": 32,
"loss_scale_window": 1000,
"hysteresis": 2,
"min_loss_scale": 1
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,22 +0,0 @@
{
"zero_optimization": {
"stage": 3,
"overlap_comm": true,
"contiguous_gradients": true,
"sub_group_size": 0,
"reduce_bucket_size": "auto",
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"max_live_parameters": 0,
"max_reuse_distance": 0,
"gather_16bit_weights_on_model_save": true
},
"bf16": {
"enabled": true
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,32 +0,0 @@
{
"zero_force_ds_cpu_optimizer": false,
"zero_allow_untested_optimizer": true,
"zero_optimization": {
"stage": 3,
"offload_optimizer": {
"device": "cpu",
"pin_memory": true
},
"offload_param": {
"device": "cpu",
"pin_memory": true
},
"overlap_comm": true,
"contiguous_gradients": true,
"sub_group_size": 0,
"reduce_bucket_size": "auto",
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"max_live_parameters": 0,
"max_reuse_distance": 0,
"gather_16bit_weights_on_model_save": true
},
"bf16": {
"enabled": true
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1,28 +0,0 @@
{
"zero_force_ds_cpu_optimizer": false,
"zero_allow_untested_optimizer": true,
"zero_optimization": {
"stage": 3,
"offload_param": {
"device": "cpu",
"pin_memory": true
},
"overlap_comm": true,
"contiguous_gradients": true,
"sub_group_size": 0,
"reduce_bucket_size": "auto",
"stage3_prefetch_bucket_size": "auto",
"stage3_param_persistence_threshold": "auto",
"max_live_parameters": 0,
"max_reuse_distance": 0,
"gather_16bit_weights_on_model_save": true
},
"bf16": {
"enabled": true
},
"gradient_accumulation_steps": "auto",
"gradient_clipping": "auto",
"train_batch_size": "auto",
"train_micro_batch_size_per_gpu": "auto",
"wall_clock_breakdown": false
}

View File

@@ -1 +0,0 @@
This directory contains example config files that might be useful for debugging. Please see [docs/debugging.qmd](../docs/debugging.qmd) for more information.

View File

@@ -1,48 +0,0 @@
# Example config for debugging the chat_template prompt format
base_model: TinyLlama/TinyLlama-1.1B-Chat-v1.0
model_type: LlamaForCausalLM
tokenizer_type: LlamaTokenizer
load_in_8bit: true
load_in_4bit: false
datasets:
- path: fozziethebeat/alpaca_messages_2k_test
type: chat_template
shards: 10
val_set_size: 0
output_dir: temp_debug/axolotl_outputs/model
dataset_prepared_path: temp_debug/axolotl_outputs/data
dataset_num_proc: 1
sequence_len: 4096
sample_packing: false
pad_to_sequence_len: true
adapter: lora
lora_model_dir:
lora_r: 32
lora_alpha: 16
lora_dropout: 0.05
lora_target_linear: true
lora_fan_in_fan_out:
micro_batch_size: 1
num_epochs: 1
max_steps: 10
optimizer: adamw_bnb_8bit
lr_scheduler: cosine
learning_rate: 0.0002
train_on_inputs: false
group_by_length: false
bf16: false
fp16: true
tf32: false
gradient_checkpointing: true
logging_steps: 1
flash_attention: true
warmup_steps: 10
weight_decay: 0.0

View File

@@ -9,11 +9,6 @@ services:
- ~/.cache/huggingface/:/root/.cache/huggingface/
# set environment variables
environment:
# Set environment variables
- GIT_AUTHOR_NAME=${GIT_AUTHOR_NAME}
- GIT_AUTHOR_EMAIL=${GIT_AUTHOR_EMAIL}
- GIT_COMMITTER_NAME=${GIT_COMMITTER_NAME}
- GIT_COMMITTER_EMAIL=${GIT_COMMITTER_EMAIL}
- WANDB_API_KEY=${WANDB_API_KEY}
deploy:
resources:

View File

@@ -1,46 +1,30 @@
ARG BASE_TAG=main-base
FROM axolotlai/axolotl-base:$BASE_TAG
FROM winglian/axolotl-base:$BASE_TAG
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6+PTX"
ARG AXOLOTL_EXTRAS=""
ARG AXOLOTL_ARGS=""
ARG CUDA="118"
ARG PYTORCH_VERSION="2.1.2"
ARG TARGETARCH
ENV PYTORCH_VERSION=$PYTORCH_VERSION
ENV BNB_CUDA_VERSION=$CUDA
RUN apt-get update && \
apt-get install -y --allow-change-held-packages vim curl nano libnccl2 libnccl-dev rsync s3fs && \
rm -rf /var/cache/apt/archives && \
rm -rf /var/lib/apt/lists/*
apt-get install -y vim curl
WORKDIR /workspace
RUN git clone --depth=1 https://github.com/axolotl-ai-cloud/axolotl.git
WORKDIR /workspace/axolotl
# If AXOLOTL_EXTRAS is set, append it in brackets; don't install deepspeed with arm64
RUN if [ "$TARGETARCH" = "arm64" ]; then \
BASE_EXTRAS="flash-attn,ring-flash-attn,optimizers,ray"; \
RUN pip3 install "peft @ git+https://github.com/huggingface/peft.git@main"
RUN git clone --depth=1 https://github.com/OpenAccess-AI-Collective/axolotl.git
# If AXOLOTL_EXTRAS is set, append it in brackets
RUN cd axolotl && \
if [ "$AXOLOTL_EXTRAS" != "" ] ; then \
pip install -e .[flash-attn,$AXOLOTL_EXTRAS]; \
else \
BASE_EXTRAS="deepspeed,flash-attn,ring-flash-attn,optimizers,ray"; \
fi && \
if [ "$AXOLOTL_EXTRAS" != "" ]; then \
pip install --no-build-isolation -e .[$BASE_EXTRAS,$AXOLOTL_EXTRAS] $AXOLOTL_ARGS; \
else \
pip install --no-build-isolation -e .[$BASE_EXTRAS] $AXOLOTL_ARGS; \
fi && \ python scripts/unsloth_install.py | sh && \
python scripts/cutcrossentropy_install.py | sh && \
pip install pytest && \
pip cache purge
pip install -e .[flash-attn]; \
fi
# fix so that git fetch/pull from remote works with shallow clone
RUN git config remote.origin.fetch "+refs/heads/*:refs/remotes/origin/*" && \
git config --get remote.origin.fetch && \
git config --global credential.helper store
# fix so that git fetch/pull from remote works
RUN cd axolotl && \
git config remote.origin.fetch "+refs/heads/*:refs/remotes/origin/*" && \
git config --get remote.origin.fetch
COPY .axolotl-complete.bash /root/.axolotl-complete.bash
RUN chmod +x /root/.axolotl-complete.bash && \
echo 'source /root/.axolotl-complete.bash' >> ~/.bashrc
# helper for huggingface-login cli
RUN git config --global credential.helper store

View File

@@ -2,91 +2,78 @@ ARG CUDA_VERSION="11.8.0"
ARG CUDNN_VERSION="8"
ARG UBUNTU_VERSION="22.04"
ARG MAX_JOBS=4
ARG TARGETARCH
FROM nvidia/cuda:$CUDA_VERSION-cudnn$CUDNN_VERSION-devel-ubuntu$UBUNTU_VERSION AS base-builder
FROM nvidia/cuda:$CUDA_VERSION-cudnn$CUDNN_VERSION-devel-ubuntu$UBUNTU_VERSION as base-builder
ENV PATH="/root/miniconda3/bin:${PATH}"
ARG TARGETARCH
ARG PYTHON_VERSION="3.11"
ARG PYTORCH_VERSION="2.1.2"
ARG CUDA="128"
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ARG PYTHON_VERSION="3.9"
ARG PYTORCH_VERSION="2.0.1"
ARG CUDA="118"
ENV PYTHON_VERSION=$PYTHON_VERSION
ENV TORCH_CUDA_ARCH_LIST=$TORCH_CUDA_ARCH_LIST
RUN apt-get update \
&& apt-get install -y --no-install-recommends \
wget git build-essential ninja-build git-lfs libaio-dev pkg-config \
ibverbs-providers ibverbs-utils infiniband-diags \
librdmacm-dev librdmacm1 rdmacm-utils slurm-wlm \
&& rm -rf /var/cache/apt/archives \
&& rm -rf /var/lib/apt/lists/* \
&& if [ "$TARGETARCH" = "amd64" ]; then \
MINICONDA_ARCH="x86_64"; \
elif [ "$TARGETARCH" = "arm64" ]; then \
MINICONDA_ARCH="aarch64"; \
else \
echo "Unsupported architecture: $TARGETARCH"; exit 1; \
fi \
&& wget https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-${MINICONDA_ARCH}.sh \
RUN apt-get update
RUN apt-get install -y wget git build-essential ninja-build git-lfs libaio-dev && rm -rf /var/lib/apt/lists/*
RUN wget \
https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh \
&& mkdir /root/.conda \
&& bash Miniconda3-latest-Linux-${MINICONDA_ARCH}.sh -b \
&& rm -f Miniconda3-latest-Linux-${MINICONDA_ARCH}.sh \
&& conda tos accept --override-channels --channel https://repo.anaconda.com/pkgs/main \
&& conda tos accept --override-channels --channel https://repo.anaconda.com/pkgs/r \
&& conda create -n "py${PYTHON_VERSION}" python="${PYTHON_VERSION}"
&& bash Miniconda3-latest-Linux-x86_64.sh -b \
&& rm -f Miniconda3-latest-Linux-x86_64.sh
RUN conda create -n "py${PYTHON_VERSION}" python="${PYTHON_VERSION}"
ENV PATH="/root/miniconda3/envs/py${PYTHON_VERSION}/bin:${PATH}"
WORKDIR /workspace
RUN python3 -m pip install --upgrade pip && pip3 install -U packaging==23.2 setuptools==75.8.0 wheel psutil && \
python3 -m pip install --no-cache-dir -U torch==${PYTORCH_VERSION}+cu${CUDA} torchvision --extra-index-url https://download.pytorch.org/whl/cu$CUDA && \
python3 -m pip cache purge
RUN python3 -m pip install --upgrade pip && pip3 install packaging && \
python3 -m pip install --no-cache-dir -U torch==${PYTORCH_VERSION}+cu${CUDA} --extra-index-url https://download.pytorch.org/whl/cu$CUDA
RUN if [ "$CUDA" != "130" ] ; then \
CAUSAL_CONV1D_FORCE_CXX11_ABI=TRUE CAUSAL_CONV1D_FORCE_BUILD=TRUE python3 -m pip install --no-cache-dir "causal_conv1d @ git+https://github.com/Dao-AILab/causal-conv1d.git@v1.5.4"; \
python3 -m pip install --no-cache-dir "mamba_ssm @ git+https://github.com/state-spaces/mamba.git@main"; \
python3 -m pip cache purge; \
fi
FROM base-builder AS deepspeed-builder
RUN git lfs install --skip-repo && \
pip3 install awscli && \
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
WORKDIR /workspace
RUN git clone https://github.com/microsoft/DeepSpeed.git && \
cd DeepSpeed && \
MAX_CONCURRENCY=8 DS_BUILD_SPARSE_ATTN=0 DS_BUILD_OPS=1 python3 setup.py bdist_wheel
FROM base-builder AS bnb-builder
WORKDIR /workspace
ARG CUDA="118"
ENV CUDA=$CUDA
RUN git clone https://github.com/TimDettmers/bitsandbytes.git && \
cd bitsandbytes && \
CUDA_VERSION=$CUDA make cuda11x && \
python setup.py bdist_wheel
FROM base-builder
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ENV TORCH_CUDA_ARCH_LIST=$TORCH_CUDA_ARCH_LIST
# recompile apex
RUN python3 -m pip uninstall -y apex
RUN git clone https://github.com/NVIDIA/apex
# `MAX_JOBS=1` disables parallel building to avoid cpu memory OOM when building image on GitHub Action (standard) runners
RUN cd apex && MAX_JOBS=1 python3 -m pip install -v --disable-pip-version-check --no-cache-dir --no-build-isolation --config-settings "--build-option=--cpp_ext" --config-settings "--build-option=--cuda_ext" ./
RUN mkdir -p /workspace/builds
COPY --from=bnb-builder /workspace/bitsandbytes /workspace/builds/bitsandbytes
RUN mkdir -p /workspace/wheels/bitsandbytes
COPY --from=deepspeed-builder /workspace/DeepSpeed/dist/deepspeed-*.whl wheels
COPY --from=bnb-builder /workspace/bitsandbytes/dist/bitsandbytes-*.whl wheels
COPY --from=bnb-builder /workspace/bitsandbytes/bitsandbytes/libbitsandbytes*.so wheels/bitsandbytes
RUN pip3 install wheels/deepspeed-*.whl
RUN cd /workspace/builds/bitsandbytes && python3 setup.py install
RUN git lfs install --skip-repo
RUN pip3 install awscli && \
# The base image ships with `pydantic==1.8.2` which is not working
pip3 install -U --no-cache-dir pydantic==1.10.10 && \
pip3 cache purge
RUN case "$PYTORCH_VERSION" in \
2.9.[0-9]*) \
if [ "$CUDA" = "128" ]; then \
if [ "$TARGETARCH" = "amd64" ]; then \
WHL_FILE="flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_x86_64.whl"; \
WHL_VERSION="v0.5.4"; \
elif [ "$TARGETARCH" = "arm64" ]; then \
WHL_FILE="flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_aarch64.whl"; \
WHL_VERSION="v0.6.4"; \
else \
echo "Unsupported architecture: $TARGETARCH"; exit 1; \
fi; \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/${WHL_VERSION}/${WHL_FILE}; \
pip3 install --no-cache-dir ${WHL_FILE}; \
rm ${WHL_FILE}; \
elif [ "$CUDA" = "130" ]; then \
if [ "$TARGETARCH" = "amd64" ]; then \
WHL_FILE="flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_x86_64.whl"; \
WHL_VERSION="v0.5.4"; \
elif [ "$TARGETARCH" = "arm64" ]; then \
WHL_FILE="flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_aarch64.whl"; \
WHL_VERSION="v0.6.4"; \
else \
echo "Unsupported architecture: $TARGETARCH"; exit 1; \
fi; \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/${WHL_VERSION}/${WHL_FILE}; \
pip3 install --no-cache-dir ${WHL_FILE}; \
rm ${WHL_FILE}; \
fi \
;; \
esac
pip3 install -U --no-cache-dir pydantic==1.10.10

View File

@@ -1,38 +0,0 @@
ARG CUDA_VERSION="12.8.1"
ARG CUDNN_VERSION="8"
ARG UBUNTU_VERSION="22.04"
ARG MAX_JOBS=4
FROM nvidia/cuda:$CUDA_VERSION-cudnn$CUDNN_VERSION-devel-ubuntu$UBUNTU_VERSION AS base-builder
ENV PATH="/root/miniconda3/bin:${PATH}"
ARG PYTHON_VERSION="3.11"
ARG PYTORCH_VERSION="next"
ARG CUDA="128"
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ENV PYTHON_VERSION=$PYTHON_VERSION
ENV TORCH_CUDA_ARCH_LIST=$TORCH_CUDA_ARCH_LIST
RUN apt-get update \
&& apt-get install -y wget git build-essential ninja-build git-lfs libaio-dev pkg-config && rm -rf /var/lib/apt/lists/* \
&& wget \
https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh \
&& mkdir /root/.conda \
&& bash Miniconda3-latest-Linux-x86_64.sh -b \
&& rm -f Miniconda3-latest-Linux-x86_64.sh \
&& conda create -n "py${PYTHON_VERSION}" python="${PYTHON_VERSION}"
ENV PATH="/root/miniconda3/envs/py${PYTHON_VERSION}/bin:${PATH}"
WORKDIR /workspace
RUN python3 -m pip install --upgrade pip && pip3 install packaging && \
python3 -m pip install --no-cache-dir -U torch==2.7.1 --extra-index-url https://download.pytorch.org/whl/test/cu$CUDA && \
python3 -m pip install --no-cache-dir "causal_conv1d @ git+https://github.com/Dao-AILab/causal-conv1d.git@main" && \
python3 -m pip install --no-cache-dir "mamba_ssm @ git+https://github.com/state-spaces/mamba.git@main"
RUN git lfs install --skip-repo && \
pip3 install awscli && \
pip3 install -U --no-cache-dir pydantic==2.10.6

View File

@@ -1,43 +0,0 @@
ARG CUDA_VERSION="12.8.1"
ARG CUDNN_VERSION="8"
ARG UBUNTU_VERSION="22.04"
ARG MAX_JOBS=4
FROM nvidia/cuda:$CUDA_VERSION-cudnn$CUDNN_VERSION-devel-ubuntu$UBUNTU_VERSION AS base-builder
ENV PATH="/root/miniconda3/bin:${PATH}"
ARG PYTHON_VERSION="3.11"
ARG PYTORCH_VERSION="nightly"
ARG CUDA="128"
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ENV PYTHON_VERSION=$PYTHON_VERSION
ENV TORCH_CUDA_ARCH_LIST=$TORCH_CUDA_ARCH_LIST
RUN apt-get update \
&& apt-get install -y wget git build-essential ninja-build git-lfs libaio-dev pkg-config && rm -rf /var/lib/apt/lists/* \
&& wget \
https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh \
&& mkdir /root/.conda \
&& bash Miniconda3-latest-Linux-x86_64.sh -b \
&& rm -f Miniconda3-latest-Linux-x86_64.sh \
&& conda tos accept --override-channels --channel https://repo.anaconda.com/pkgs/main \
&& conda tos accept --override-channels --channel https://repo.anaconda.com/pkgs/r \
&& conda create -n "py${PYTHON_VERSION}" python="${PYTHON_VERSION}"
ENV PATH="/root/miniconda3/envs/py${PYTHON_VERSION}/bin:${PATH}"
WORKDIR /workspace
RUN python3 -m pip install --upgrade pip && pip3 install -U packaging==23.2 setuptools==75.8.0 wheel && \
python3 -m pip install --no-cache-dir -U torch --extra-index-url https://download.pytorch.org/whl/nightly/cu$CUDA && \
python3 -m pip install --no-cache-dir "causal_conv1d @ git+https://github.com/Dao-AILab/causal-conv1d.git@main" && \
python3 -m pip install --no-cache-dir "mamba_ssm @ git+https://github.com/state-spaces/mamba.git@main" && \
python3 -m pip cache purge
RUN git lfs install --skip-repo && \
pip3 install awscli && \
# The base image ships with `pydantic==1.8.2` which is not working
pip3 install -U --no-cache-dir pydantic==1.10.10 && \
pip3 cache purge

View File

@@ -1,30 +0,0 @@
ARG BASE_TAG=main
FROM axolotlai/axolotl:$BASE_TAG
ENV HF_DATASETS_CACHE="/workspace/data/huggingface-cache/datasets"
ENV HF_HUB_CACHE="/workspace/data/huggingface-cache/hub"
ENV HF_HOME="/workspace/data/huggingface-cache/hub"
ENV HF_HUB_ENABLE_HF_TRANSFER="1"
EXPOSE 8888
EXPOSE 22
COPY scripts/cloud-entrypoint.sh /root/cloud-entrypoint.sh
COPY scripts/motd /etc/motd
RUN pip install jupyterlab notebook ipywidgets && \
jupyter lab clean
RUN apt update && \
apt install --yes --no-install-recommends openssh-server tmux iproute2 nvtop && \
rm -rf /var/cache/apt/archives && \
rm -rf /var/lib/apt/lists/* && \
mkdir -p ~/.ssh && \
chmod 700 ~/.ssh && \
printf "\n[[ -z \"\$TMUX\" ]] && { tmux attach-session -t ssh_tmux || tmux new-session -s ssh_tmux; exit; }\n" >> ~/.bashrc && \
printf "[ ! -z \"\$TERM\" -a -r /etc/motd ] && cat /etc/motd\n" >> ~/.bashrc && \
chmod +x /workspace/axolotl/scripts/cloud-entrypoint.sh && \
chmod +x /root/cloud-entrypoint.sh && \
echo 'set-option -g history-limit 5000' >> ~/.tmux.conf
ENTRYPOINT ["/root/cloud-entrypoint.sh"]
CMD ["sleep", "infinity"]

View File

@@ -1,28 +0,0 @@
ARG BASE_TAG=main
FROM axolotlai/axolotl:$BASE_TAG
ENV HF_DATASETS_CACHE="/workspace/data/huggingface-cache/datasets"
ENV HF_HUB_CACHE="/workspace/data/huggingface-cache/hub"
ENV HF_HOME="/workspace/data/huggingface-cache/hub"
ENV HF_HUB_ENABLE_HF_TRANSFER="1"
EXPOSE 8888
EXPOSE 22
COPY scripts/cloud-entrypoint.sh /root/cloud-entrypoint.sh
COPY scripts/motd /etc/motd
RUN pip install jupyterlab notebook ipywidgets && \
jupyter lab clean
RUN apt update && \
apt install --yes --no-install-recommends openssh-server tmux iproute2 nvtop ibverbs-providers ibverbs-utils infiniband-diags librdmacm-dev librdmacm1 rdmacm-utils slurm-wlm && \
rm -rf /var/cache/apt/archives && \
rm -rf /var/lib/apt/lists/* && \
mkdir -p ~/.ssh && \
chmod 700 ~/.ssh && \
printf "[ ! -z \"\$TERM\" -a -r /etc/motd ] && cat /etc/motd\n" >> ~/.bashrc && \
chmod +x /workspace/axolotl/scripts/cloud-entrypoint.sh && \
chmod +x /root/cloud-entrypoint.sh
ENTRYPOINT ["/root/cloud-entrypoint.sh"]
CMD ["sleep", "infinity"]

18
docker/Dockerfile-runpod Normal file
View File

@@ -0,0 +1,18 @@
ARG BASE_TAG=main
FROM winglian/axolotl:$BASE_TAG
ENV HF_DATASETS_CACHE="/workspace/data/huggingface-cache/datasets"
ENV HUGGINGFACE_HUB_CACHE="/workspace/data/huggingface-cache/hub"
ENV TRANSFORMERS_CACHE="/workspace/data/huggingface-cache/hub"
COPY scripts/runpod-entrypoint.sh /root/runpod-entrypoint.sh
RUN apt install --yes --no-install-recommends openssh-server tmux && \
mkdir -p ~/.ssh && \
chmod 700 ~/.ssh && \
printf "\n[[ -z \"\$TMUX\" ]] && { tmux attach-session -t ssh_tmux || tmux new-session -s ssh_tmux; exit; }\n" >> ~/.bashrc && \
chmod +x /workspace/axolotl/scripts/runpod-entrypoint.sh && \
chmod +x /root/runpod-entrypoint.sh
ENTRYPOINT ["/root/runpod-entrypoint.sh"]
CMD ["sleep", "infinity"]

View File

@@ -1,40 +0,0 @@
ARG BASE_TAG=main-base
FROM axolotlai/axolotl-base:$BASE_TAG
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6+PTX"
ARG AXOLOTL_EXTRAS=""
ARG AXOLOTL_ARGS=""
ARG CUDA="118"
ARG PYTORCH_VERSION="2.1.2"
ARG GITHUB_REF="main"
ENV PYTORCH_VERSION=$PYTORCH_VERSION
RUN apt-get update && \
apt-get install -y --allow-change-held-packages vim curl nano libnccl2 libnccl-dev
WORKDIR /workspace
RUN git clone --depth=1 https://github.com/axolotl-ai-cloud/axolotl.git
WORKDIR /workspace/axolotl
RUN git fetch origin +$GITHUB_REF && \
git checkout FETCH_HEAD
# If AXOLOTL_EXTRAS is set, append it in brackets
RUN if [ "$AXOLOTL_EXTRAS" != "" ] ; then \
pip install --no-build-isolation -e .[deepspeed,flash-attn,mamba-ssm,$AXOLOTL_EXTRAS] $AXOLOTL_ARGS; \
else \
pip install --no-build-isolation -e .[deepspeed,flash-attn,mamba-ssm] $AXOLOTL_ARGS; \
fi
# So we can test the Docker image
RUN pip install pytest
# fix so that git fetch/pull from remote works
RUN git config remote.origin.fetch "+refs/heads/*:refs/remotes/origin/*" && \
git config --get remote.origin.fetch
# helper for huggingface-login cli
RUN git config --global credential.helper store

View File

@@ -1,66 +0,0 @@
ARG CUDA_VERSION="12.6.3"
ARG CUDNN_VERSION=""
ARG UBUNTU_VERSION="22.04"
ARG MAX_JOBS=4
ARG TARGETARCH
FROM nvidia/cuda:$CUDA_VERSION-cudnn$CUDNN_VERSION-devel-ubuntu$UBUNTU_VERSION AS base-builder
ARG PYTHON_VERSION="3.11"
ARG PYTORCH_VERSION="2.6.0"
ARG CUDA="126"
ARG TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 9.0+PTX"
ENV PYTHON_VERSION=$PYTHON_VERSION
ENV TORCH_CUDA_ARCH_LIST=$TORCH_CUDA_ARCH_LIST
ENV UV_TORCH_BACKEND="cu${CUDA}"
RUN apt-get update \
&& apt-get install -y wget git build-essential ninja-build git-lfs libaio-dev pkg-config curl && rm -rf /var/lib/apt/lists/* \
&& git lfs install --skip-repo \
&& curl -LsSf https://astral.sh/uv/install.sh | sh
ENV PATH="/root/.local/bin:${PATH}"
RUN uv python install ${PYTHON_VERSION}
WORKDIR /workspace
RUN uv venv --no-project --relocatable axolotl-venv
ENV PATH="/workspace/axolotl-venv/bin:${PATH}"
RUN uv pip install packaging setuptools wheel psutil \
&& uv pip install torch==${PYTORCH_VERSION} torchvision \
&& uv pip install awscli pydantic
RUN if [ "$TARGETARCH" = "amd64" ]; then \
uv pip install --no-build-isolation "causal_conv1d @ git+https://github.com/Dao-AILab/causal-conv1d.git@main"; \
uv pip install "mamba_ssm @ git+https://github.com/state-spaces/mamba.git@main"; \
fi
RUN case "$PYTORCH_VERSION" in \
2.9.[0-9]*) \
if [ "$TARGETARCH" = "amd64" ]; then \
if [ "$CUDA" = "128" ]; then \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/v0.5.4/flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_x86_64.whl; \
uv pip install --no-cache-dir flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_x86_64.whl; \
rm flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_x86_64.whl; \
elif [ "$CUDA" = "130" ]; then \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/v0.5.4/flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_x86_64.whl; \
uv pip install --no-cache-dir flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_x86_64.whl; \
rm flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_x86_64.whl; \
fi \
elif [ "$TARGETARCH" = "arm64" ]; then \
if [ "$CUDA" = "128" ]; then \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/v0.6.4/flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_aarch64.whl; \
uv pip install --no-cache-dir flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_aarch64.whl; \
rm flash_attn-2.8.3+cu128torch2.9-cp311-cp311-linux_aarch64.whl; \
elif [ "$CUDA" = "130" ]; then \
wget -nv https://github.com/mjun0812/flash-attention-prebuild-wheels/releases/download/v0.6.4/flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_aarch64.whl; \
uv pip install --no-cache-dir flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_aarch64.whl; \
rm flash_attn-2.8.3+cu130torch2.9-cp311-cp311-linux_aarch64.whl; \
fi \
fi \
;; \
esac

7
docs/.gitignore vendored
View File

@@ -1,7 +0,0 @@
/.quarto/
_site/
/api/*.qmd
/api/*.html
config-reference.qmd
models/**/*.qmd
models/**/*.html

View File

@@ -1,108 +0,0 @@
---
title: AMD GPUs on HPC Systems
description: A comprehensive guide for using Axolotl on distributed systems with AMD GPUs
---
This guide provides step-by-step instructions for installing and configuring Axolotl on a High-Performance Computing (HPC) environment equipped with AMD GPUs.
## Setup
### 1. Install Python
We recommend using Miniforge, a minimal conda-based Python distribution:
```bash
curl -L -O "https://github.com/conda-forge/miniforge/releases/latest/download/Miniforge3-$(uname)-$(uname -m).sh"
bash Miniforge3-$(uname)-$(uname -m).sh
```
### 2. Configure Python Environment
Add Python to your PATH and ensure it's available at login:
```bash
echo 'export PATH=~/miniforge3/bin:$PATH' >> ~/.bashrc
echo 'if [ -f ~/.bashrc ]; then . ~/.bashrc; fi' >> ~/.bash_profile
```
### 3. Load AMD GPU Software
Load the ROCm module:
```bash
module load rocm/5.7.1
```
Note: The specific module name and version may vary depending on your HPC system. Consult your system documentation for the correct module name.
### 4. Install PyTorch
Install PyTorch with ROCm support:
```bash
pip install -U torch torchvision torchaudio --index-url https://download.pytorch.org/whl/rocm5.7 --force-reinstall
```
### 5. Install Flash Attention
Clone and install the Flash Attention repository:
```bash
git clone --recursive https://github.com/ROCmSoftwarePlatform/flash-attention.git
export GPU_ARCHS="gfx90a"
cd flash-attention
export PYTHON_SITE_PACKAGES=$(python -c 'import site; print(site.getsitepackages()[0])')
patch "${PYTHON_SITE_PACKAGES}/torch/utils/hipify/hipify_python.py" hipify_patch.patch
pip install --no-build-isolation .
```
### 6. Install Axolotl
Clone and install Axolotl:
```bash
git clone https://github.com/axolotl-ai-cloud/axolotl
cd axolotl
pip install packaging ninja
pip install --no-build-isolation -e .
```
### 7. Apply xformers Workaround
xformers appears to be incompatible with ROCm. Apply the following workarounds:
- Edit $HOME/packages/axolotl/src/axolotl/monkeypatch/llama_attn_hijack_flash.py modifying the code to always return `False` for SwiGLU availability from xformers.
- Edit $HOME/miniforge3/lib/python3.10/site-packages/xformers/ops/swiglu_op.py replacing the "SwiGLU" function with a pass statement.
### 8. Prepare Job Submission Script
Create a script for job submission using your HPC's particular software (e.g. Slurm, PBS). Include necessary environment setup and the command to run Axolotl training. If the compute node(s) do(es) not have internet access, it is recommended to include
```bash
export TRANSFORMERS_OFFLINE=1
export HF_DATASETS_OFFLINE=1
```
### 9. Download Base Model
Download a base model using the Hugging Face CLI:
```bash
huggingface-cli download meta-llama/Meta-Llama-3.1-8B --local-dir ~/hfdata/llama3.1-8B
```
### 10. Create Axolotl Configuration
Create an Axolotl configuration file (YAML format) tailored to your specific training requirements and dataset. Use FSDP for multi-node training.
Note: Deepspeed did not work at the time of testing. However, if anyone managed to get it working, please let us know.
### 11. Preprocess Data
Run preprocessing on the login node:
```bash
CUDA_VISIBLE_DEVICES="" python -m axolotl.cli.preprocess /path/to/your/config.yaml
```
### 12. Train
You are now ready to submit your previously prepared job script. 🚂

View File

@@ -1,59 +0,0 @@
---
title: Batch size vs Gradient accumulation
description: Understanding of batch size and gradient accumulation steps
---
Gradient accumulation means accumulating gradients over several mini-batches and updating the model weights afterward. When the samples in each batch are diverse, this technique doesn't significantly impact learning.
This method allows for effective training with larger effective batch sizes without needing proportionally larger memory. Here's why:
1. **Memory Consumption with Batch Size**: The primary reason increasing the batch size impacts memory is due to the storage requirements for intermediate activations. When you forward propagate a batch through a network, you have to store the activations at each layer for each sample in the batch, because these activations are used during backpropagation to compute gradients. Therefore, larger batches mean more activations, leading to greater GPU memory consumption.
2. **Gradient Accumulation**: With gradient accumulation, you're effectively simulating a larger batch size by accumulating gradients over several smaller batches (or micro-batches). However, at any given time, you're only forward and backward propagating a micro-batch. This means you only store activations for the micro-batch, not the full accumulated batch. As a result, you can simulate the effect of a larger batch size without the memory cost of storing activations for a large batch.
**Example 1:**
Micro batch size: 3
Gradient accumulation steps: 2
Number of GPUs: 3
Total batch size = 3 * 2 * 3 = 18
```
| GPU 1 | GPU 2 | GPU 3 |
|----------------|----------------|----------------|
| S1, S2, S3 | S4, S5, S6 | S7, S8, S9 |
| e1, e2, e3 | e4, e5, e6 | e7, e8, e9 |
|----------------|----------------|----------------|
| → (accumulate) | → (accumulate) | → (accumulate) |
|----------------|----------------|----------------|
| S10, S11, S12 | S13, S14, S15 | S16, S17, S18 |
| e10, e11, e12 | e13, e14, e15 | e16, e17, e18 |
|----------------|----------------|----------------|
| → (apply) | → (apply) | → (apply) |
Accumulated gradient for the weight w1 after the second iteration (considering all GPUs):
Total gradient for w1 = e1 + e2 + e3 + e4 + e5 + e6 + e7 + e8 + e9 + e10 + e11 + e12 + e13 + e14 + e15 + e16 + e17 + e18
Weight update for w1:
w1_new = w1_old - learning rate x (Total gradient for w1 / 18)
```
**Example 2:**
Micro batch size: 2
Gradient accumulation steps: 1
Number of GPUs: 3
Total batch size = 2 * 1 * 3 = 6
```
| GPU 1 | GPU 2 | GPU 3 |
|-----------|-----------|-----------|
| S1, S2 | S3, S4 | S5, S6 |
| e1, e2 | e3, e4 | e5, e6 |
|-----------|-----------|-----------|
| → (apply) | → (apply) | → (apply) |
Accumulated gradient for the weight w1 (considering all GPUs):
Total gradient for w1 = e1 + e2 + e3 + e4 + e5 + e6
Weight update for w1:
w1_new = w1_old - learning rate × (Total gradient for w1 / 6)
```

View File

@@ -1,86 +0,0 @@
---
title: "Checkpoint Saving"
format:
html:
toc: true
toc-depth: 2
number-sections: true
execute:
enabled: false
---
## Overview
Axolotl supports on-demand checkpoint saving during training. You can trigger checkpoints via file-based triggers (for programmatic control) or Control+C (for interactive use).
## File-Based Checkpoint Trigger
### Configuration
Enable in your config:
```yaml
dynamic_checkpoint:
enabled: true
check_interval: 100 # Optional: check every N steps (default: 100)
trigger_file_path: "axolotl_checkpoint.save" # Optional: custom filename
```
**Options:**
- `enabled`: `true` to enable (required)
- `check_interval`: Steps between file checks. Default: 100. Lower = faster response, higher I/O overhead.
- `trigger_file_path`: Custom trigger filename. Default: `axolotl_checkpoint.save`
### How It Works
1. Rank 0 checks for trigger file every `check_interval` steps in `output_dir`
2. When detected, file is deleted and checkpoint is saved
3. In distributed training, rank 0 broadcasts to synchronize all ranks
### Usage
**Command line:**
```bash
touch /path/to/output_dir/axolotl_checkpoint.save
```
**Programmatic:**
```python
from pathlib import Path
Path("/path/to/output_dir/axolotl_checkpoint.save").touch()
```
Checkpoint saves within the next `check_interval` steps. The trigger file is auto-deleted after detection, so you can create it multiple times.
**Custom filename:**
```yaml
dynamic_checkpoint:
enabled: true
trigger_file_path: "my_trigger.save"
```
```bash
touch /path/to/output_dir/my_trigger.save
```
## Control+C (SIGINT) Checkpoint
Pressing `Ctrl+C` during training saves the model state and exits gracefully. **Note:** This saves only the model weights, not optimizer state. For resumable checkpoints, use the file-based trigger.
## Best Practices
- **Check interval**: Lower values (10-50) for fast training, default 100 for slower training
- **Distributed training**: Create trigger file once; rank 0 handles synchronization
- **Resume**: Dynamic checkpoints can be resumed like regular checkpoints via `resume_from_checkpoint`
## Example
```yaml
output_dir: ./outputs/lora-out
save_steps: 500 # Scheduled checkpoints
dynamic_checkpoint:
enabled: true
check_interval: 50
```
This enables scheduled checkpoints every 500 steps plus on-demand saves via file trigger (checked every 50 steps).

View File

@@ -1,341 +0,0 @@
---
title: "Command Line Interface (CLI)"
format:
html:
toc: true
toc-expand: 2
toc-depth: 3
execute:
enabled: false
---
The Axolotl CLI provides a streamlined interface for training and fine-tuning large language models. This guide covers
the CLI commands, their usage, and common examples.
## Basic Commands
All Axolotl commands follow this general structure:
```bash
axolotl <command> [config.yml] [options]
```
The config file can be local or a URL to a raw YAML file.
### Launcher Arguments
For commands that support multi-GPU (`train`, `evaluate`, ...), you can pass launcher-specific arguments using the `--` separator:
```bash
# Pass torchrun arguments
axolotl train config.yml --launcher torchrun -- --nproc_per_node=2 --nnodes=1
# Pass accelerate arguments
axolotl train config.yml --launcher accelerate -- --config_file=accelerate_config.yml --num_processes=4
```
Arguments after `--` are passed directly to the launcher (torchrun, accelerate launch, etc.).
## Command Reference
### fetch
Downloads example configurations and deepspeed configs to your local machine.
```bash
# Get example YAML files
axolotl fetch examples
# Get deepspeed config files
axolotl fetch deepspeed_configs
# Specify custom destination
axolotl fetch examples --dest path/to/folder
```
### preprocess
Preprocesses and tokenizes your dataset before training. This is recommended for large datasets.
```bash
# Basic preprocessing
axolotl preprocess config.yml
# Preprocessing with one GPU
CUDA_VISIBLE_DEVICES="0" axolotl preprocess config.yml
# Debug mode to see processed examples
axolotl preprocess config.yml --debug
# Debug with limited examples
axolotl preprocess config.yml --debug --debug-num-examples 5
```
Configuration options:
```yaml
dataset_prepared_path: Local folder for saving preprocessed data
push_dataset_to_hub: HuggingFace repo to push preprocessed data (optional)
```
### train
Trains or fine-tunes a model using the configuration specified in your YAML file.
```bash
# Basic training
axolotl train config.yml
# Train and set/override specific options
axolotl train config.yml \
--learning-rate 1e-4 \
--micro-batch-size 2 \
--num-epochs 3
# Training without accelerate
axolotl train config.yml --launcher python
# Pass launcher-specific arguments using -- separator
axolotl train config.yml --launcher torchrun -- --nproc_per_node=2 --nnodes=1
axolotl train config.yml --launcher accelerate -- --config_file=accelerate_config.yml
# Resume training from checkpoint
axolotl train config.yml --resume-from-checkpoint path/to/checkpoint
```
It is possible to run sweeps over multiple hyperparameters by passing in a sweeps config.
```bash
# Basic training with sweeps
axolotl train config.yml --sweep path/to/sweep.yaml
```
Example sweep config:
```yaml
_:
# This section is for dependent variables we need to fix
- load_in_8bit: false
load_in_4bit: false
adapter: lora
- load_in_8bit: true
load_in_4bit: false
adapter: lora
# These are independent variables
learning_rate: [0.0003, 0.0006]
lora_r:
- 16
- 32
lora_alpha:
- 16
- 32
- 64
```
### inference
Runs inference using your trained model in either CLI or Gradio interface mode.
```bash
# CLI inference with LoRA
axolotl inference config.yml --lora-model-dir="./outputs/lora-out"
# CLI inference with full model
axolotl inference config.yml --base-model="./completed-model"
# Gradio web interface
axolotl inference config.yml --gradio \
--lora-model-dir="./outputs/lora-out"
# Inference with input from file
cat prompt.txt | axolotl inference config.yml \
--base-model="./completed-model"
```
### merge-lora
Merges trained LoRA adapters into the base model.
```bash
# Basic merge
axolotl merge-lora config.yml
# Specify LoRA directory (usually used with checkpoints)
axolotl merge-lora config.yml --lora-model-dir="./lora-output/checkpoint-100"
# Merge using CPU (if out of GPU memory)
CUDA_VISIBLE_DEVICES="" axolotl merge-lora config.yml
```
Configuration options:
```yaml
gpu_memory_limit: Limit GPU memory usage
lora_on_cpu: Load LoRA weights on CPU
```
### merge-sharded-fsdp-weights
Merges sharded FSDP model checkpoints into a single combined checkpoint.
```bash
# Basic merge
axolotl merge-sharded-fsdp-weights config.yml
```
### evaluate
Evaluates a model's performance (loss etc) on the train and eval datasets.
```bash
# Basic evaluation
axolotl evaluate config.yml
# Evaluation with launcher arguments
axolotl evaluate config.yml --launcher torchrun -- --nproc_per_node=2
```
### lm-eval
Runs LM Evaluation Harness on your model.
```bash
# Basic evaluation
axolotl lm-eval config.yml
```
Configuration options:
```yaml
# List of tasks to evaluate
lm_eval_tasks:
- arc_challenge
- hellaswag
lm_eval_batch_size: # Batch size for evaluation
output_dir: # Directory to save evaluation results
```
See [LM Eval Harness](https://github.com/EleutherAI/lm-evaluation-harness) for more details.
### delinearize-llama4
Delinearizes a Llama 4 linearized model into a regular HuggingFace Llama 4 model. This only works with the non-quantized linearized model.
```bash
axolotl delinearize-llama4 --model path/to/model_dir --output path/to/output_dir
```
This would be necessary to use with other frameworks. If you have an adapter, merge it with the non-quantized linearized model before delinearizing.
### quantize
Quantizes a model using the quantization configuration specified in your YAML file.
```bash
axolotl quantize config.yml
```
See [Quantization](./quantize.qmd) for more details.
## Legacy CLI Usage
While the new Click-based CLI is preferred, Axolotl still supports the legacy module-based CLI:
```bash
# Preprocess
python -m axolotl.cli.preprocess config.yml
# Train
accelerate launch -m axolotl.cli.train config.yml
# Inference
accelerate launch -m axolotl.cli.inference config.yml \
--lora_model_dir="./outputs/lora-out"
# Gradio interface
accelerate launch -m axolotl.cli.inference config.yml \
--lora_model_dir="./outputs/lora-out" --gradio
```
::: {.callout-important}
When overriding CLI parameters in the legacy CLI, use same notation as in yaml file (e.g., `--lora_model_dir`).
**Note:** This differs from the new Click-based CLI, which uses dash notation (e.g., `--lora-model-dir`). Keep this in mind if you're referencing newer documentation or switching between CLI versions.
:::
## Remote Compute with Modal Cloud
Axolotl supports running training and inference workloads on Modal cloud infrastructure. This is configured using a
cloud YAML file alongside your regular Axolotl config.
### Cloud Configuration
Create a cloud config YAML with your Modal settings:
```yaml
# cloud_config.yml
provider: modal
gpu: a100 # Supported: l40s, a100-40gb, a100-80gb, a10g, h100, t4, l4
gpu_count: 1 # Number of GPUs to use
timeout: 86400 # Maximum runtime in seconds (24 hours)
branch: main # Git branch to use (optional)
volumes: # Persistent storage volumes
- name: axolotl-cache
mount: /workspace/cache
- name: axolotl-data
mount: /workspace/data
- name: axolotl-artifacts
mount: /workspace/artifacts
secrets: # Secrets to inject
- WANDB_API_KEY
- HF_TOKEN
```
### Running on Modal Cloud
Commands that support the --cloud flag:
```bash
# Preprocess on cloud
axolotl preprocess config.yml --cloud cloud_config.yml
# Train on cloud
axolotl train config.yml --cloud cloud_config.yml
# Run lm-eval on cloud
axolotl lm-eval config.yml --cloud cloud_config.yml
```
### Cloud Configuration Options
```yaml
provider: # compute provider, currently only `modal` is supported
gpu: # GPU type to use
gpu_count: # Number of GPUs (default: 1)
memory: # RAM in GB (default: 128)
timeout: # Maximum runtime in seconds
timeout_preprocess: # Preprocessing timeout
branch: # Git branch to use
docker_tag: # Custom Docker image tag
volumes: # List of persistent storage volumes
# Environment variables to pass. Can be specified in two ways:
# 1. As a string: Will load the value from the host computer's environment variables
# 2. As a key-value pair: Will use the specified value directly
# Example:
# env:
# - CUSTOM_VAR # Loads from host's $CUSTOM_VAR
# - {CUSTOM_VAR: "value"} # Uses "value" directly
env:
# Secrets to inject. Same input format as `env` but for sensitive data.
secrets:
# - HF_TOKEN
# - WANDB_API_KEY
```

View File

@@ -1,121 +0,0 @@
---
title: Custom Integrations
toc: true
toc-depth: 3
---
```{python}
#| echo: false
import os
import re
def process_readme(integration_name):
try:
path = f'../src/axolotl/integrations/{integration_name}/README.md'
with open(path, 'r') as f:
txt = f.read()
# Remove h1 headings
txt = re.sub(r'^# .*\n?', '', txt, flags=re.MULTILINE)
# Convert h2 to h3
txt = re.sub(r'^## ', '### ', txt, flags=re.MULTILINE)
return txt
except FileNotFoundError:
return None
def print_section(name, folder_name):
output = f"\n## {name}\n"
content = process_readme(folder_name)
if content:
output += content
output += f"\nPlease see reference [here](https://github.com/axolotl-ai-cloud/axolotl/tree/main/src/axolotl/integrations/{folder_name})\n"
return output
```
```{python}
#| output: asis
#| echo: false
# Introduction text
print("""
Axolotl adds custom features through `integrations`. They are located within the `src/axolotl/integrations` directory.
To enable them, please check the respective documentations.
""")
# Sections
sections = [
("Cut Cross Entropy", "cut_cross_entropy"),
("Grokfast", "grokfast"),
("Knowledge Distillation (KD)", "kd"),
("Liger Kernels", "liger"),
("Language Model Evaluation Harness (LM Eval)", "lm_eval"),
("Spectrum", "spectrum"),
("LLMCompressor", "llm_compressor")
]
for folder_name in os.listdir("../src/axolotl/integrations/"):
if folder_name in [path for name, path in sections]:
# skip if already in sections
continue
if os.path.exists(f"../src/axolotl/integrations/{folder_name}/README.md"):
# grab the first heading in README.md as the section name
with open(f"../src/axolotl/integrations/{folder_name}/README.md", "r") as f:
txt = f.read()
matches = re.search(r'^# (.*)\n?', txt, flags=re.MULTILINE)
if matches:
name = matches.group(1)
else:
continue
sections.append((name, folder_name))
# sort sections by name
sections = sorted(sections, key=lambda x: x[0])
for section_name, folder_name in sections:
print(print_section(section_name, folder_name))
```
## Adding a new integration
Plugins can be used to customize the behavior of the training pipeline through [hooks](https://en.wikipedia.org/wiki/Hooking). See [`axolotl.integrations.BasePlugin`](https://github.com/axolotl-ai-cloud/axolotl/blob/main/src/axolotl/integrations/base.py) for the possible hooks.
To add a new integration, please follow these steps:
1. Create a new folder in the `src/axolotl/integrations` directory.
2. Add any relevant files (`LICENSE`, `README.md`, `ACKNOWLEDGEMENTS.md`, etc.) to the new folder.
3. Add `__init__.py` and `args.py` files to the new folder.
- `__init__.py` should import the integration and hook into the appropriate functions.
- `args.py` should define the arguments for the integration.
4. (If applicable) Add CPU tests under `tests/integrations` or GPU tests under `tests/e2e/integrations`.
::: {.callout-tip}
See [src/axolotl/integrations/cut_cross_entropy](https://github.com/axolotl-ai-cloud/axolotl/tree/main/src/axolotl/integrations/cut_cross_entropy) for a minimal integration example.
:::
::: {.callout-warning}
If you could not load your integration, please ensure you are pip installing in editable mode.
```bash
pip install -e .
```
and correctly spelled the integration name in the config file.
```yaml
plugins:
- axolotl.integrations.your_integration_name.YourIntegrationPlugin
```
:::
::: {.callout-note}
It is not necessary to place your integration in the `integrations` folder. It can be in any location, so long as it's installed in a package in your python env.
See this repo for an example: [https://github.com/axolotl-ai-cloud/diff-transformer](https://github.com/axolotl-ai-cloud/diff-transformer)
:::

View File

@@ -1,337 +0,0 @@
---
title: Conversation
description: Conversation format for supervised fine-tuning.
order: 3
---
## chat_template
Chat Template strategy uses a jinja2 template that converts a list of messages into a prompt. Support using tokenizer's template, a supported template, or custom jinja2.
```{.json filename="data.jsonl"}
{"messages": [{"role": "...", "content": "..."}, {"role": "...", "content": "..."}, ...]}
```
See [configs](../config-reference.qmd) for full configs and supported templates.
### Migrating from sharegpt
Most configs can be adapted as follows:
```yaml
# old
chat_template: chatml
datasets:
- path: ...
type: sharegpt
conversation: chatml
# new (if using tokenizer's chat_template)
datasets:
- path: ...
type: chat_template
field_messages: conversations
message_property_mappings:
role: from
content: value
# new (if setting a new chat_template like chatml, gemma, etc)
chat_template: chatml
datasets:
- path: ...
type: chat_template
field_messages: conversations
message_property_mappings:
role: from
content: value
```
We recommend checking the below examples for other usecases.
### Examples
#### Training on last message
(Legacy) Using the default chat template in the tokenizer_config.json on OpenAI messages format, training on only last message.
```yaml
datasets:
- path: ...
type: chat_template
roles_to_train:
train_on_eos:
```
::: {.callout-tip}
If you receive an error like "`chat_template` choice is `tokenizer_default` but tokenizer's `chat_template` is null.", it means the tokenizer does not have a default `chat_template`. Follow the examples below instead to set a custom `chat_template`.
:::
#### Overriding default chat template
Using the `gemma` chat template to override the tokenizer_config.json's chat template on OpenAI messages format, training on all assistant messages.
```yaml
chat_template: gemma # this overwrites the tokenizer's chat_template
datasets:
- path: ...
type: chat_template
roles_to_train: ["assistant"] # default value
```
::: {.callout-note}
If you want to use built-in chat_template, use `chat_template: tokenizer_default` (this is set by default).
:::
#### Using default chat template with fallback
Using the tokenizer_config.json's chat template or `chatml` as fallback if the former's chat template does not exist, on OpenAI messages format, training on all assistant messages.
```yaml
chat_template: tokenizer_default_fallback_chatml # this overwrites the tokenizer's chat_template
datasets:
- path: ...
type: chat_template
```
#### Custom Jinja template
Using a custom jinja template on OpenAI messages format, training on all assistant messages.
```yaml
# chat_template: jinja # `jinja` will be implied if the `chat_template_jinja` is set and this field is empty
chat_template_jinja: "{{ bos_token }}{% for message in messages %}{% if (message['role'] == 'system') %}{{'<|system|>' + '\n' + message['content'] + '<|end|>' + '\n'}}{% elif (message['role'] == 'user') %}{{'<|user|>' + '\n' + message['content'] + '<|end|>' + '\n' + '<|assistant|>' + '\n'}}{% elif message['role'] == 'assistant' %}{{message['content'] + '<|end|>' + '\n'}}{% endif %}{% endfor %}"
datasets:
- path: ...
type: chat_template
```
::: {.callout-important}
Please make sure that your `tokenizer.eos_token` is same as EOS (End-of-Sequence) token in template. Otherwise, set `eos_token` under `special_tokens: `.
:::
#### Using template with different token for EOT and EOS
- If you are using a template that has a different EOT (End-of-Turn) token from EOS token or multiple EOT tokens (like Mistral V7 Tekken), set the `eot_tokens: ` config. The handling of EOT tokens follows `train_on_eos: ` which defaults to turn.
```yaml
eot_tokens:
- "[/INST]"
# - "[/SYSTEM_PROMPT]"
datasets:
- path: ...
type: chat_template
# optional
train_on_eot: turn # defaults read from train_on_eos (which defaults to turn)
```
::: {.callout-tip}
See [config documentation](../config-reference.qmd) for detailed explanations of "turn", "last", and "all" options for training on tokens.
:::
::: {.callout-note}
Using `eot_tokens` requires each token that exists in `chat_template` to be a single token in the tokenizer. Otherwise, the tokenizer will split the token and cause unexpected behavior.
You can add those tokens as new tokens under `tokens: ` or (recommended) override unused added_tokens via `added_tokens_overrides: `. See [config](../config-reference.qmd) for more details.
:::
- Continuing from the previous example, if you want to train on all EOT token trainable turns but only last EOS token, set `train_on_eos: last`.
```yaml
eot_tokens:
- "[/INST]"
# ...
datasets:
- path: ...
type: chat_template
train_on_eos: last
train_on_eot: turn
```
::: {.callout-tip}
If EOS token only appears at the end of a prompt, `train_on_eos: last` is equivalent to `train_on_eos: turn`. Therefore, generally, you can leave them to their defaults and omit them.
:::
#### Using tool use
Instead of passing `tools` via the system prompt, an alternative method would be to have the `tools` in a separate column and loaded via `chat_template` to let the template dynamically build it.
```json
{
"tools": [
{
"type": "...",
"function": {
"name": "...",
"description": "...",
"parameters": {
"type": "...",
"properties": {
// ...
},
"required": ["..."],
},
},
},
],
"messages": [
// ...
{
"role": "assistant", // call the function via assistant
"tool_calls": [
{
"id": "...", // required only for mistral
"type": "function",
"function": {
"name": "...",
"arguments": {
"...": "...",
}
}
}
]
},
{
"role": "tool",
"tool_call_id": "...", // required only for mistral
"name": "...",
"content": "..."
},
],
}
```
::: {.callout-note}
Tools need to follow [JSON schema](https://json-schema.org/learn/getting-started-step-by-step).
:::
::: {.callout-warning}
If you have tool arguments with same name but different dtypes (like `"time": string` and `"time": number`), please save `arguments: ` as JSON string to prevent `datasets` from having casting issues.
```
"arguments": "{\"...\": \"...\"}"
```
The same is applicable for tool parameters.
```
"parameters": "{\"...\": \"...\"}"
```
:::
Example config for Llama4:
```yaml
chat_template: llama4
datasets:
- path: Nanobit/text-tools-2k-test
type: chat_template
# field_tools: tools # default is `tools`
```
::: {.callout-tip}
Look into the `chat_template` you are using to see if it supports `tools` and what the expected role is for the tool answer. In the example above, the tool answer is expected to be in the `tool` or `ipython` role for `llama4` template.
:::
#### Using fine-grained control over token masking
(Advanced) Using fine-grained control over tokens and turns to train in a conversation
For a data sample that looks like:
```{.json filename="data.jsonl"}
{
"conversations": [
{"from": "system", "value": "You are an AI assistant.", "train": false},
{"from": "human", "value": "Hello", "train": false},
{"from": "assistant", "value": "Hello", "train": true},
{"from": "human", "value": "How are you?", "train": true},
{
"from": "assistant",
"value": "I'm doing very well, thank you!",
"train_detail": [
{"begin_offset": 0, "end_offset": 8, "train": false},
{"begin_offset": 9, "end_offset": 18, "train": true},
{"begin_offset": 19, "end_offset": 30, "train": false},
],
},
{
"from": "human",
"value": "I'm doing very well, thank you!",
"train": true,
},
{"from": "assistant", "value": "Hi there!", "train": true}
]
}
```
The configuration would look like:
```yaml
datasets:
- path: ...
type: chat_template
chat_template: tokenizer_default
field_messages: conversations
message_property_mappings:
role: from
content: value
roles_to_train: []
train_on_eos: turn
message_field_training: train
message_field_training_detail: train_detail
```
::: {.callout-tip}
It is not necessary to set both `message_field_training` and `message_field_training_detail` at once.
:::
#### Reasoning split
(For Qwen3 template only) Enable reasoning split, where the reasoning is split from the content and passed as a separate field into the template.
```yaml
datasets:
- path: ...
type: chat_template
chat_template: qwen3
split_thinking: true
```
For example, a content can look like:
```json
{
"content": "<think>Some thinking outputs</think>Output after thinking."
}
```
After split, it will look like:
```json
{
"reasoning_content": "Some thinking outputs",
"content": "Output after thinking..."
}
```
## sharegpt
::: {.callout-important}
ShareGPT is deprecated!. Please see [chat_template](#chat_template) section.
:::
## pygmalion
```{.json filename="data.jsonl"}
{"conversations": [{"role": "...", "value": "..."}]}
```

View File

@@ -1,495 +0,0 @@
---
title: Dataset Formats
description: Guide to Dataset Formats in Axolotl
back-to-top-navigation: true
toc: true
toc-depth: 5
---
Axolotl is a training framework that aims to make the process convenient yet flexible to users by simply passing a config yaml file.
As there are a lot of available options in Axolotl, this guide aims to provide an simplify the user experience to choosing the proper choice.
Axolotl supports 3 kinds of training methods: pre-training, supervised fine-tuning, and preference-based post-training (e.g. DPO, ORPO, PRMs). Each method has their own dataset format which are described below.
::: {.callout-tip}
This guide will mainly use JSONL as an introduction. Please refer to the [dataset loading docs](../dataset_loading.qmd) to understand how to load datasets from other sources.
For `pretraining_dataset:` specifically, please refer to the [Pre-training section](#pre-training).
:::
## Pre-training
When aiming to train on large corpora of text datasets, pre-training is your go-to choice. Due to the size of these datasets, downloading the entire-datasets before beginning training would be prohibitively time-consuming. Axolotl supports [streaming](https://huggingface.co/docs/datasets/en/stream) to only load batches into memory at a time.
A sample format for a pre-training dataset is as follows:
```json
{"text": "first row"}
{"text": "second row"}
...
```
It is typically recommended to save your dataset as `.jsonl` due to its flexibility and simplicity.
Axolotl supports loading from a Hugging Face hub repo or from local files.
### Pre-training from Hugging Face hub datasets
As an example, to train using a Hugging Face dataset `hf_org/name`, you can pass the following config:
```yaml
pretraining_dataset: hf_org/name
```
### Pre-training from local dataset files
Given a few corpus files: `A.jsonl`, `B.jsonl`, and `C.jsonl`, your config will look like the below:
```yaml
pretraining_dataset:
- path: json
data_files:
- A.jsonl
- B.jsonl
- C.jsonl
```
While we recommend `.jsonl`, you can also use the other formats (`csv`, `parquet`, `arrow`, `SQL`, `Webdataset`) that are supported by [`Dataset.load_dataset`](https://huggingface.co/docs/datasets/loading#local-and-remote-files)
### Pre-training without streaming
In the case that the dataset is small and can be loaded entirely into memory, another approach to running pre-training is to use the `completion` format. This would mean that the entire dataset is pre-tokenized instead of on-demand in streaming.
One benefit of this is that the tokenization can be performed separately on a CPU-only machine, and then transferred to a GPU machine for training to save costs.
From Hugging Face:
```yaml
datasets:
- path: hf_org/name
type: completion
```
From local files:
```yaml
datasets:
- path: A.jsonl
type: completion
- path: B.jsonl
type: completion
```
::: {.callout-important}
For `completion` only, Axolotl would split texts if it exceeds the context length into multiple smaller prompts. If you are interested in having this for `pretraining_dataset` too, please let us know or help make a PR!
:::
### Pre-training dataset configuration tips
#### Setting max_steps
When using streaming for large datasets, Axolotl does not know in advance how large the dataset is and does not know when to stop.
Therefore, it is necessary to set `max_steps: int` in your config for pre-training to run, so that Axolotl knows when to stop training.
One step is equal to `sequence_len * micro_batch_size * gradient_accumulation_steps * total_num_gpus` tokens.
#### Group_by_length
It is recommended to leave this off if downloading from Hugging Face hub as it would download the entire dataset which can be very large.
### Reference
Please see docs [here](pretraining.qmd).
## Supervised fine-tuning (SFT)
Supervised fine-tuning is the process of training models to respond to an instruction or chat input.
As there are a wide variety of dataset formats, Axolotl tries to support a majority of the formats available in public datasets.
Axolotl provides four approaches for loading datasets, however, it's easier to work backwards from the dataset you have available to figure out which approach to use.
A flow chart is as follows:
1. Do you already have the dataset tokenized? If yes, check [Pre-Tokenized Dataset](#pre-tokenized-dataset).
2. Do you want to format the dataset yourself and manually choose each section to mask? If yes, check [Template Free Dataset](#template-free-dataset)
3. Is your dataset in a "conversation" format, containing a `list[messages]`? If yes, check [Conversation Dataset](#conversation-dataset)
4. Is your dataset in an "instruct" format, containing `{ instruction, response }`? If yes, check [Instruction Dataset](#instruction-dataset)
If you went through the flow chart and did not find one that matches, it is recommended to preprocess your dataset into one of the above or create a thread on Github Discussion.
::: {.callout-tip}
You can mix and match within each approach or across approaches to train a model on a variety of datasets.
:::
### Pre-Tokenized Dataset
We suggest this approach when you want to bring your own tokenized dataset.
Axolotl expects the dataset to have three keys:
- `input_ids`: from tokenizing formatted prompt
- `attention_mask`: for masking padding. If you don't add padding, it would be equal to `len(input_ids) * [1]`
- `labels`: this is the same as `input_ids`, however, if you want to mask certain tokens, you would set those indices to `-100`.
::: {.callout-tip}
Make sure to add BOS/EOS tokens to your prompt and mask it appropriately.
:::
A config for this would look like:
```yaml
datasets:
- path: A.jsonl
type:
```
::: {.callout-note}
`type: ` is empty!
:::
Reference: [Pre-Tokenized Dataset Documentation](tokenized.qmd).
### Template Free Dataset
We reccomend this approach when you want granular control over the prompt formatting, special tokens, and masking, whilst letting Axolotl handle the tokenization. This is very useful if your dataset has unique prompts that differ across samples and where one single general template wouldn't suffice.
In the example below, you could see that there is no proper structure. At the same time, it's very flexible as there are no constraints on how your prompt can look.
```json
{
"segments": [
{
"label": true,
"text": "<s>Hello\n"
},
{
"label": true,
"text": "hi there!. "
},
{
"label": false,
"text": "goodbye "
},
{
"label": true,
"text": "farewell</s>"
}
]
}
```
Each prompt must be have a key called `segments` which is a list of `{ text, label }`.
```yaml
datasets:
- path: A.jsonl
type: input_output
```
Reference: [Template Free Documentation](template_free.qmd).
### Conversation Dataset
`conversation` messages are a list of messages which usually contain a `role` and `content` key.
::: {.callout-tip}
Fun fact: Axolotl synonymously refers to "chat" messages as `conversation` messages due to how FastChat initially used this term to build a widely used [fastchat conversation](https://github.com/lm-sys/FastChat/blob/main/fastchat/conversation.py) method for formatting chat messages prior to the creation of `chat_templates`.
:::
#### What are `chat_templates`?
The current most popular and convenient method for inference is to use `chat_templates` for formatting prompts. Axolotl supports using `chat_templates` for training to ensure that the model performs in the same environment as in inference.
Here's a quick rundown on `chat_template`: A `chat_template` is a Jinja2 template which formats a list of messages into a prompt.
An example of a prompt formatted into a popular template called ChatML can be seen below:
Single prompt (pretty-printed):
```json
{
"messages": [
{
"role": "user",
"content": "Hi"
},
{
"role": "assistant",
"content": "How can I help you?"
},
{
"role": "user",
"content": "Can you add 3+5?"
},
{
"role": "assistant",
"content": "The answer is 8."
}
]
}
```
The ChatML template is as follows:
```jinja2
{% if not add_generation_prompt is defined %}{% set add_generation_prompt = false %}{% endif %}{% for message in messages %}{{'<|im_start|>' + message['role'] + '\n' + message['content'] + '<|im_end|>' + '\n'}}{% endfor %}{% if add_generation_prompt %}{{ '<|im_start|>assistant\n' }}{% endif %}
```
The above prompt formatted into this template will result in:
```
<|im_start|>user
Hi<|im_end|>
<|im_start|>assistant
How can I help you?<|im_end|>
<|im_start|>user
Can you add 3+5?<|im_end|>
<|im_start|>assistant
The answer is 8.<|im_end|>
```
By using delimiters (`<|im_start|>` and `<|im_end|>`), a prompt separates different speakers which helps the model identify which portion belongs to whom.
#### Common Conversation Dataset formats
Older conversation datasets with the following format are colloquially called `sharegpt` datasets.
```json
{"conversations": [{"from": "...", "value": "..."}]}
```
Newer conversation datasets usually follow the OpenAI format.
```json
{"messages": [{"role": "...", "content": "..."}]}
```
Axolotl supports both as well as allowing customization of any kind of key.
#### Chat Template Usage
To properly use this method, it is important to identify three things:
1. Which `chat_template` would you use?
2. What are the keys in your dataset, and what are the possible roles? For example, in OpenAI format, the keys would be `messages`, `role`, and `content`, respectively, whereas the possible roles are `system`, `user`, and `assistant`.
3. What do you want to mask? For instance, only assistant messages, only last message, or nothing.
##### Choosing a `chat_template`
There are a lot of `chat_templates` out there. Axolotl supports the common ones: [supported chat templates](https://github.com/axolotl-ai-cloud/axolotl/blob/860609392184cf62a7e0ca676658b170e059ce6c/src/axolotl/utils/chat_templates.py#L17). For example, to use ChatML, it would be `chat_template: chatml`.
However, it is also possible to use the already configured template within the tokenizer by specifying `chat_template: tokenizer_default`. If you want a fallback (in case some tokenizer does not have it pre-configured), you can do `chat_template: tokenizer_default_fallback_chatml` to fallback to the ChatML template if a tokenizer template was not found.
One last but powerful approach is to bring your own template. This can be set via:
```yaml
chat_template_jinja: # your template
```
##### Setting `chat_template` dataset keys
We currently default to OpenAI format for dataset keys, so if that's your current dataset format, there's nothing to do here.
If your dataset format is different, here are the keys you should check (with their defaults):
```yaml
datasets:
...
field_messages: messages # this should point to the key containing the list of conversations
message_property_mappings: # this is a mapping from keys in your dataset to keys in chat_template
role: role
content: content
```
In some `chat_templates` (e.g. [Gemma](https://huggingface.co/google/gemma-2b-it/blob/main/tokenizer_config.json#L1507)), the roles are hardcoded to `user` and `assistant`. Consequently, you may find it necessary to map the roles in your dataset to these above. We currently have some defaults that should work for common datasets, but if you get a `KeyError`, it would be necessary to add mapping for your roles. Here is an example of how it would look like:
```yaml
datasets:
...
roles:
assistant:
- gpt
- model
user:
- human
```
In the example above, all `gpt` and `model` values are converted to `assistant`. All `human` values are converted to `user.`
##### Handling masking
The common use case for `chat_template` is for chat messages, therefore, it is common to mask all non-assistant messages. Assistant messages refer to the bot messages that you want the model to learn on.
To train on all `assistant` messages, you would set the following configs.
```yaml
datasets:
...
roles_to_train: ["assistant"]
train_on_eos: "turn"
```
The `train_on_eos` config means that it would mask all EOS tokens for turns that aren't assistant-turns. The other options are: `all` and `last` to choose which EOS to train on.
Perhaps, you want to train on `assistant` and `narrator` roles, you can simply add `narrator` to the list of `roles_to_train`. You would also need to add it to the mapping of `roles` above.
```yaml
datasets:
...
roles_to_train: ["assistant", "narrator"]
roles:
assistant:
- gpt
- model
user:
- human
narrator: ["narrator"]
```
::: {.callout-tip}
As chat_templates may use hardcoded EOS/EOT tokens that are different from the tokenizer's EOS, it is highly recommended to set them. For example, `ChatML` uses `<|im_end|>` to end turns.
```yaml
special_tokens:
eos_token: <|im_end|>
```
:::
##### Applying `chat_template`
Once all the above steps are completed, you could combine all these configs together to form a bespoke configuration for your custom dataset.
```yaml
datasets:
- path: A.jsonl
type: chat_template
# step 1
chat_template: chatml
# step 2
field_messages: messages
message_property_mappings:
role: role
content: content
roles:
assistant:
- gpt
- model
- assistant
user:
- human
- user
# step 3
roles_to_train: ["assistant"]
train_on_eos: "turn"
special_tokens:
eos_token: <|im_end|>
```
If this config were to be applied to the sample dataset above, the output would look as such (which can be retrieved via `axolotl preprocess config.yaml --debug`):
```
<|im_start|>(-100, 128256) user(-100, 882)
(-100, 198) Hi(-100, 13347) <|im_end|>(-100, 128257)
(-100, 198) <|im_start|>(-100, 128256) assistant(-100, 78191)
(-100, 198) How(4438, 4438) can(649, 649) I(358, 358) help(1520, 1520) you(499, 499) ?(30, 30) <|im_end|>(128257, 128257)
(-100, 198) <|im_start|>(-100, 128256) user(-100, 882)
(-100, 198) Can(-100, 6854) you(-100, 499) add(-100, 923) (-100, 220) 3(-100, 18) +(-100, 10) 5(-100, 20) ?(-100, 30) <|im_end|>(-100, 128257)
(-100, 198) <|im_start|>(-100, 128256) assistant(-100, 78191)
(-100, 198) The(791, 791) answer(4320, 4320) is(374, 374) (220, 220) 8(23, 23) .(13, 13) <|im_end|>(128257, 128257)
(-100, 198)
```
The first number refers to the label, the second refers to the `token_id`. For example, `-100` labels appear on non-assistant portions, meaning that they are masked during. For assistant portions, the label is the same as the `token_id`.
::: {.callout-note}
If during `preprocess`, there are a lot of warnings of `Could not find content __ boundary`, please check the FAQ section for [chat_templates](../faq.qmd#chat-templates).
:::
#### Reference
Please see docs [here](conversation.qmd).
### Instruction Dataset
Instruction datasets are used to train instruction-following models and comprise a prompt, containing an instruction, and a single response. In contrast to chat datasets which may be multi-turn, instruct datasets are typically single-turn.
An example is of a common format called Alpaca:
```json
{"instruction": "...", "input": "...", "output": "..."}
```
Using those keys, a prompt can be built based on it.
```
Below is an instruction that describes a task, paired with an input that provides further context. Write a response that appropriately completes the request.
### Instruction:
{instruction}
### Input:
{input}
### Response:
{output}
```
This can be configured as such:
```yaml
datasets:
- path: A.jsonl
type: alpaca
```
Axolotl supports many kinds of instruction dataset. All of them can be found in the [Instruction Dataset Documentation](inst_tune.qmd) with their respective type and sample row format.
#### Custom Instruct Prompt Format
Due to the myriad possibilities of instruction formats, Axolotl allows customizing your own instruction format without having to dive into the code directly.
In the example below, a sample row is used to output in `mistral_v1` format.
```json
{"input": "...", "output": "..."}
```
```yaml
datasets:
- path: repo
type:
system_prompt: ""
field_system:
field_instruction: input
field_input:
field_output: output
# multi-line example with input
format: |-
[INST] {instruction} {input} [/INST]
# single-line example without input
no_input_format: "[INST] {instruction} [/INST]"
```
The config sets that the `field_instruction` is actually named `input`, and the `field_input` is empty as we don't have an `input` in this sample. Generally, `instruction` can be thought as the question to the model, and `input` as the additional information with `output` being the response. It is not necessary to have an `input` nor `system`. In the end, the most important part is to understand what format you want it to look like and how you can customize this to your use case.
Reference: [Custom Instruct Prompt Format Documentation](inst_tune.qmd#how-to-add-custom-prompt-format).
## Reinforcement Learning from Human Feedback (RLHF)
As there are multiple RLHF methods with their own dataset requirements. Please see [RLHF documentation](../rlhf.qmd) for more detail.

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@@ -1,189 +0,0 @@
---
title: Instruction Tuning
description: Instruction tuning formats for supervised fine-tuning.
order: 2
---
## alpaca
instruction; input(optional)
```{.json filename="data.jsonl"}
{"instruction": "...", "input": "...", "output": "..."}
```
## jeopardy
question and answer
```{.json filename="data.jsonl"}
{"question": "...", "category": "...", "answer": "..."}
```
## oasst
instruction
```{.json filename="data.jsonl"}
{"INSTRUCTION": "...", "RESPONSE": "..."}
```
## gpteacher
instruction; input(optional)
```{.json filename="data.jsonl"}
{"instruction": "...", "input": "...", "response": "..."}
```
## reflection
instruction with reflect; input(optional)
```{.json filename="data.jsonl"}
{"instruction": "...", "input": "...", "output": "...", "reflection": "...", "corrected": "..."}
```
## explainchoice
question, choices, (solution OR explanation)
```{.json filename="data.jsonl"}
{"question": "...", "choices": ["..."], "solution": "...", "explanation": "..."}
```
## concisechoice
question, choices, (solution OR explanation)
```{.json filename="data.jsonl"}
{"question": "...", "choices": ["..."], "solution": "...", "explanation": "..."}
```
## summarizetldr
article and summary
```{.json filename="data.jsonl"}
{"article": "...", "summary": "..."}
```
## alpaca_chat
basic instruct for alpaca chat
```{.json filename="data.jsonl"}
{"instruction": "...", "input": "...", "response": "..."}
```
## alpaca_chat.load_qa
question and answer for alpaca chat
```{.json filename="data.jsonl"}
{"question": "...", "answer": "..."}
```
## alpaca_chat.load_concise
question and answer for alpaca chat, for concise answers
```{.json filename="data.jsonl"}
{"instruction": "...", "input": "...", "response": "..."}
```
## alpaca_chat.load_camel_ai
question and answer for alpaca chat, for load_camel_ai
```{.json filename="data.jsonl"}
{"message_1": "...", "message_2": "..."}
```
## alpaca_w_system.load_open_orca
support for open orca datasets with included system prompts, instruct
```{.json filename="data.jsonl"}
{"system_prompt": "...", "question": "...", "response": "..."}
```
## context_qa
in context question answering from an article
```{.json filename="data.jsonl"}
{"article": "...", "question": "...", "answer": "..."}
```
## context_qa.load_v2
in context question answering (alternate)
```{.json filename="data.jsonl"}
{"context": "...", "question": "...", "answer": "..."}
```
## context_qa.load_404
in context question answering from an article, with default response for no answer from context
```{.json filename="data.jsonl"}
{"article": "...", "unanswerable_question": "..."}
```
## creative_acr.load_answer
instruction and revision
```{.json filename="data.jsonl"}
{"instruction": "...", "revision": "..."}
```
## creative_acr.load_critique
critique
```{.json filename="data.jsonl"}
{"scores": "...", "critiques": "...", "instruction": "...", "answer": "..."}
```
## creative_acr.load_revise
critique and revise
```{.json filename="data.jsonl"}
{"scores": "...", "critiques": "...", "instruction": "...", "answer": "...", "revision": "..."}
```
## metharme
instruction, adds additional eos tokens
```{.json filename="data.jsonl"}
{"prompt": "...", "generation": "..."}
```
## How to add custom prompt format
For a dataset that is preprocessed for instruction purposes:
```{.json filename="data.jsonl"}
{"input": "...", "output": "..."}
```
You can use this example in your YAML config:
```{.yaml filename="config.yaml"}
datasets:
- path: repo
type:
system_prompt: ""
field_system: system
field_instruction: input
field_output: output
format: "[INST] {instruction} [/INST]"
no_input_format: "[INST] {instruction} [/INST]"
```
See full config options under [here](../config-reference.qmd).

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@@ -1,32 +0,0 @@
---
title: Pre-training
description: Data format for a pre-training completion task.
order: 1
---
For pretraining, there is no prompt template or roles. The only required field is `text`:
```{.json filename="data.jsonl"}
{"text": "first row"}
{"text": "second row"}
...
```
:::{.callout-note}
### Streaming is recommended for large datasets
Axolotl usually loads the entire dataset into memory. This will be challenging for large datasets. Use the following config to enable streaming:
```{.yaml filename="config.yaml"}
pretraining_dataset:
- name:
path:
split:
text_column: # column in dataset with the data, usually `text`
type: pretrain
trust_remote_code:
skip: # number of rows of data to skip over from the beginning
```
:::

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@@ -1,26 +0,0 @@
---
title: Stepwise Supervised Format
description: Format for datasets with stepwise completions and labels
order: 3
---
## Stepwise Supervised
The stepwise supervised format is designed for chain-of-thought (COT) reasoning
datasets where each example contains multiple completion steps and a preference label
for each step.
### Example
Here's a simple example of a stepwise supervised dataset entry:
```json
{
"prompt": "Which number is larger, 9.8 or 9.11?",
"completions": [
"The fractional part of 9.8 is 0.8, while the fractional part of 9.11 is 0.11.",
"Since 0.11 is greater than 0.8, the number 9.11 is larger than 9.8."
],
"labels": [true, false]
}
```

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@@ -1,239 +0,0 @@
---
title: Template-Free
description: Construct prompts without a template.
toc: true
toc-depth: 3
order: 4
---
## Background {#sec-background}
### Masking Inputs {#masking-inputs}
One of the most popular features of
[axolotl](https://github.com/axolotl-ai-cloud/axolotl) is
setting the following configuration value:
```yaml
train_on_inputs: false
```
If you declare a [dataset formats](https://github.com/axolotl-ai-cloud/axolotl?tab=readme-ov-file#dataset)
such as `alpaca` or `chatml`, axolotl knows what is an input
(i.e. human) vs. an output (i.e. the assistant) and masks the input
labels so that your model can focus on predicting the outputs only.
### You may not want prompt templates {#sec-you-may-not-want-prompt-templates}
However, there are many situations where you don't want to use one of
these formats or templates. This is because they can:
- Add unnecessary boilerplate to your prompts.
- Create artifacts like special delimiters `<|im_start|>` that can
quickly become footguns if you don't include them correctly at
inference time.
- Enforce a *chat* interface when you do not want one. Sometimes you
just want to fine-tune a model to a very specific task and do NOT
want multi-turn conversations, roles, etc.
- Limit you to only certain roles that the template allows.
### The `input_output` format {#sec-the-inputoutput-format}
You can construct your prompts without a template by using the
`input_output` format, by setting `type: input_output` in your
configuration file like this:
**config.yml**
```yaml
train_on_inputs: false # Mask segments of your data
datasets:
- path: output.jsonl
type: input_output # use template free prompt construction
```
Unlike `type: completion`, which is also template-free,
`type: input_output` allows you to mask segments of your text. More
details on how this works are described below.
## Usage {#sec-usage}
This is how you can use the `input_output` format:
### 1. Prepare Data {#sec-1-prepare-data}
To use the `input_output` format, collect your data in the following
format into a jsonl file (below is the first row from the file
`output`.jsonl` pretty printed):
```bash
$ head -n1 output.jsonl | python -m json.tool
```
:::{.cell-output .cell-output-stdout}
{
"segments": [
{
"label": true,
"text": "<s>Hello\n"
},
{
"label": true,
"text": "hi there!. "
},
{
"label": false,
"text": "goodbye "
},
{
"label": true,
"text": "farewell</s>"
}
]
}
:::
Set `label:false` when you want to mask a segment of text so that the
model isn't trained on it. Some things to keep in mind:
> [!IMPORTANT]
> 1. **EOS, BOS, spaces, newlines etc. are entirely up to you. Axolotl
concatenates all the segments as-is.** The tokenizer doesn't add
anything additional. Notice how I added spaces, newlines, `<s>`
(BOS), and `</s>` (EOS) myself.
> 2. Make sure you check the materialized output to validate that the
prompt is getting assembled how you like.
### 2. Use `type: input_output` {#sec-2-use-type-inputoutput}
Let's materialize data with our `output.jsonl` file by setting
`type: input_output` in our axolotl config:
```yaml
# training_config.yaml
base_model: mistralai/Mistral-7B-v0.1
data_seed: 49
seed: 49
datasets:
- path: output.jsonl
type: input_output
val_set_size: 0.1
sequence_len: 896
sample_packing: false
micro_batch_size: 2
gradient_accumulation_steps: 3
eval_batch_size: 2
num_epochs: 1
learning_rate: 0.0002
train_on_inputs: false
special_tokens:
bos_token: "<s>"
eos_token: "</s>"
unk_token: "<unk>"
```
You can use the following command to materialize your data. The
`--debug` flag will print the tokens, along with the labels so you can
verify that the correct items are being ignored:
```bash
axolotl preprocess training_config.yaml --debug
...
[2024-03-05 23:36:46,969] [INFO] [axolotl.check_example_labels:35] [PID:607731] [RANK:0] <s>(1, 1) Hello(22557, 22557)
(13, 13) hi(12014, 12014) there(736, 736) !(28808, 28808) .(28723, 28723) (28705, 28705) good(-100, 1179) bye(-100, 17664) (-100, 28705) fare(19111, 19111) well(5458, 5458) </s>(2, 2)
```
The format is `decoded_token`(`label`, `token_id`), for example,
`<s>(1, 1)` means that the token is `<s>`, the label is `1` and the
token_id is `1`. When the label is `-100` then that token is ignored for
training.
### 3. Check the prompts {#sec-3-check-the-prompts}
Here is another way to check the materialized output:
```python
from transformers import AutoTokenizer
from datasets import load_from_disk
import yaml
directory = !ls last_run_prepared/
with open('training_config.yaml', 'r') as f:
cfg = yaml.safe_load(f)
model_id = cfg['base_model']
tok = AutoTokenizer.from_pretrained(model_id)
ds = load_from_disk(f'last_run_prepared/{directory[0]}/')
```
```python
>>> row = ds[0]
>>> print(tok.decode(row['input_ids']))
<s> Hello
hi there!. goodbye farewell</s>
```
We can check that the right tokens are ignored by comparing the labels
to each token:
```python
import pandas as pd
pd.DataFrame([{'token': tok.decode(i), 'label': l, 'id':i} for i,l in
zip(row['input_ids'], row['labels'])])
```
| token | label | id |
|-------|-------|-------|
| 0 | \<s\> | 1 |
| 1 | Hello | 22557 |
| 2 | \\n | 13 |
| 3 | hi | 12014 |
| 4 | there | 736 |
| 5 | ! | 28808 |
| 6 | . | 28723 |
| 7 | | 28705 |
| 8 | good | -100 |
| 9 | bye | -100 |
| 10 | | -100 |
| 11 | fare | 19111 |
| 12 | well | 5458 |
| 13 | \</s\>| 2 |
If we look at the input data, the above table seems correct! (The jsonl
version is repeated below for reference):
```bash
$ head -n1 output.jsonl | python -m json.tool
```
:::{.cell-output .cell-output-stdout}
{
"segments": [
{
"label": true,
"text": "<s>Hello\n"
},
{
"label": true,
"text": "hi there!. "
},
{
"label": false,
"text": "goodbye "
},
{
"label": true,
"text": "farewell</s>"
}
]
}
:::

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@@ -1,28 +0,0 @@
---
title: Custom Pre-Tokenized Dataset
description: How to use a custom pre-tokenized dataset.
order: 5
---
- Pass an empty `type:` in your axolotl config.
- Columns in Dataset must be exactly `input_ids`, `attention_mask`, `labels`
- To indicate that a token should be ignored during training, set its corresponding label to `-100`.
- You must add BOS and EOS, and make sure that you are training on EOS by not setting its label to -100.
- For pretraining, do not truncate/pad documents to the context window length.
- For instruction training, documents must be truncated/padded as desired.
Sample config:
```{.yaml filename="config.yml"}
datasets:
- path: /path/to/your/file.jsonl
ds_type: json
type:
```
Sample jsonl:
```jsonl
{"input_ids":[271,299,99],"attention_mask":[1,1,1],"labels":[271,-100,99]}
{"input_ids":[87,227,8383,12],"attention_mask":[1,1,1,1],"labels":[87,227,8383,12]}
```

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@@ -1,268 +0,0 @@
---
title: Dataset Loading
description: Understanding how to load datasets from different sources
back-to-top-navigation: true
toc: true
toc-depth: 5
---
## Overview
Datasets can be loaded in a number of different ways depending on the how it is saved (the extension of the file) and where it is stored.
## Loading Datasets
We use the `datasets` library to load datasets and a mix of `load_dataset` and `load_from_disk` to load them.
You may recognize the similar named configs between `load_dataset` and the `datasets` section of the config file.
```yaml
datasets:
- path:
name:
data_files:
split:
revision:
trust_remote_code:
```
::: {.callout-tip}
Do not feel overwhelmed by the number of options here. A lot of them are optional. In fact, the most common config to use would be `path` and sometimes `data_files`.
:::
This matches the API of [`datasets.load_dataset`](https://github.com/huggingface/datasets/blob/0b5998ac62f08e358f8dcc17ec6e2f2a5e9450b6/src/datasets/load.py#L1838-L1858), so if you're familiar with that, you will feel right at home.
For HuggingFace's guide to load different dataset types, see [here](https://huggingface.co/docs/datasets/loading).
For full details on the config, see [config-reference.qmd](config-reference.qmd).
::: {.callout-note}
You can set multiple datasets in the config file by more than one entry under `datasets`.
```yaml
datasets:
- path: /path/to/your/dataset
- path: /path/to/your/other/dataset
```
:::
### Local dataset
#### Files
To load a JSON file, you would do something like this:
```python
from datasets import load_dataset
dataset = load_dataset("json", data_files="data.json")
```
Which translates to the following config:
```yaml
datasets:
- path: data.json
ds_type: json
```
In the example above, it can be seen that we can just point the `path` to the file or directory along with the `ds_type` to load the dataset.
This works for CSV, JSON, Parquet, and Arrow files.
::: {.callout-tip}
If `path` points to a file and `ds_type` is not specified, we will automatically infer the dataset type from the file extension, so you could omit `ds_type` if you'd like.
:::
#### Directory
If you're loading a directory, you can point the `path` to the directory.
Then, you have two options:
##### Loading entire directory
You do not need any additional configs.
We will attempt to load in the following order:
- datasets saved with `datasets.save_to_disk`
- loading entire directory of files (such as with parquet/arrow files)
```yaml
datasets:
- path: /path/to/your/directory
```
##### Loading specific files in directory
Provide `data_files` with a list of files to load.
```yaml
datasets:
# single file
- path: /path/to/your/directory
ds_type: csv
data_files: file1.csv
# multiple files
- path: /path/to/your/directory
ds_type: json
data_files:
- file1.jsonl
- file2.jsonl
# multiple files for parquet
- path: /path/to/your/directory
ds_type: parquet
data_files:
- file1.parquet
- file2.parquet
```
### HuggingFace Hub
The method you use to load the dataset depends on how the dataset was created, whether a folder was uploaded directly or a HuggingFace Dataset was pushed.
::: {.callout-note}
If you're using a private dataset, you will need to enable the `hf_use_auth_token` flag in the root-level of the config file.
:::
#### Folder uploaded
This would mean that the dataset is a single file or file(s) uploaded to the Hub.
```yaml
datasets:
- path: org/dataset-name
data_files:
- file1.jsonl
- file2.jsonl
```
#### HuggingFace Dataset
This means that the dataset is created as a HuggingFace Dataset and pushed to the Hub via `datasets.push_to_hub`.
```yaml
datasets:
- path: org/dataset-name
```
::: {.callout-note}
There are some other configs which may be required like `name`, `split`, `revision`, `trust_remote_code`, etc depending on the dataset.
:::
### Remote Filesystems
Via the `storage_options` config under `load_dataset`, you can load datasets from remote filesystems like S3, GCS, Azure, and OCI.
::: {.callout-warning}
This is currently experimental. Please let us know if you run into any issues!
:::
The only difference between the providers is that you need to prepend the path with the respective protocols.
```yaml
datasets:
# Single file
- path: s3://bucket-name/path/to/your/file.jsonl
# Directory
- path: s3://bucket-name/path/to/your/directory
```
For directory, we load via `load_from_disk`.
#### S3
Prepend the path with `s3://`.
The credentials are pulled in the following order:
- `AWS_ACCESS_KEY_ID`, `AWS_SECRET_ACCESS_KEY`, and `AWS_SESSION_TOKEN` environment variables
- from the `~/.aws/credentials` file
- for nodes on EC2, the IAM metadata provider
::: {.callout-note}
We assume you have credentials setup and not using anonymous access. If you want to use anonymous access, let us know! We may have to open a config option for this.
:::
Other environment variables that can be set can be found in [boto3 docs](https://boto3.amazonaws.com/v1/documentation/api/latest/guide/configuration.html#using-environment-variables)
#### GCS
Prepend the path with `gs://` or `gcs://`.
The credentials are loaded in the following order:
- gcloud credentials
- for nodes on GCP, the google metadata service
- anonymous access
#### Azure
##### Gen 1
Prepend the path with `adl://`.
Ensure you have the following environment variables set:
- `AZURE_STORAGE_TENANT_ID`
- `AZURE_STORAGE_CLIENT_ID`
- `AZURE_STORAGE_CLIENT_SECRET`
##### Gen 2
Prepend the path with `abfs://` or `az://`.
Ensure you have the following environment variables set:
- `AZURE_STORAGE_ACCOUNT_NAME`
- `AZURE_STORAGE_ACCOUNT_KEY`
Other environment variables that can be set can be found in [adlfs docs](https://github.com/fsspec/adlfs?tab=readme-ov-file#setting-credentials)
#### OCI
Prepend the path with `oci://`.
It would attempt to read in the following order:
- `OCIFS_IAM_TYPE`, `OCIFS_CONFIG_LOCATION`, and `OCIFS_CONFIG_PROFILE` environment variables
- when on OCI resource, resource principal
Other environment variables:
- `OCI_REGION_METADATA`
Please see the [ocifs docs](https://ocifs.readthedocs.io/en/latest/getting-connected.html#Using-Environment-Variables).
### HTTPS
The path should start with `https://`.
```yaml
datasets:
- path: https://path/to/your/dataset/file.jsonl
```
This must be publically accessible.
## Next steps
Now that you know how to load datasets, you can learn more on how to load your specific dataset format into your target output format [dataset formats docs](dataset-formats).

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@@ -1,44 +0,0 @@
---
title: Dataset Preprocessing
description: How datasets are processed
---
## Overview
Dataset pre-processing is the step where Axolotl takes each dataset you've configured alongside
the [dataset format](dataset-formats) and prompt strategies to:
- parse the dataset based on the *dataset format*
- transform the dataset to how you would interact with the model based on the *prompt strategy*
- tokenize the dataset based on the configured model & tokenizer
- shuffle and merge multiple datasets together if using more than one
The processing of the datasets can happen one of two ways:
1. Before kicking off training by calling `axolotl preprocess config.yaml --debug`
2. When training is started
### What are the benefits of pre-processing?
When training interactively or for sweeps
(e.g. you are restarting the trainer often), processing the datasets can oftentimes be frustratingly
slow. Pre-processing will cache the tokenized/formatted datasets according to a hash of dependent
training parameters so that it will intelligently pull from its cache when possible.
The path of the cache is controlled by `dataset_prepared_path:` and is often left blank in example
YAMLs as this leads to a more robust solution that prevents unexpectedly reusing cached data.
If `dataset_prepared_path:` is left empty, when training, the processed dataset will be cached in a
default path of `./last_run_prepared/`, but will ignore anything already cached there. By explicitly
setting `dataset_prepared_path: ./last_run_prepared`, the trainer will use whatever pre-processed
data is in the cache.
### What are the edge cases?
Let's say you are writing a custom prompt strategy or using a user-defined
prompt template. Because the trainer cannot readily detect these changes, we cannot change the
calculated hash value for the pre-processed dataset.
If you have `dataset_prepared_path: ...` set
and change your prompt templating logic, it may not pick up the changes you made and you will be
training over the old prompt.

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@@ -1,247 +0,0 @@
---
title: Debugging
description: How to debug Axolotl
---
This document provides some tips and tricks for debugging Axolotl. It also provides an example configuration for debugging with VSCode. A good debugging setup is essential to understanding how Axolotl code works behind the scenes.
## Table of Contents
- [General Tips](#general-tips)
- [Debugging with VSCode](#debugging-with-vscode)
- [Background](#background)
- [Configuration](#configuration)
- [Customizing your debugger](#customizing-your-debugger)
- [Video Tutorial](#video-tutorial)
- [Debugging With Docker](#debugging-with-docker)
- [Setup](#setup)
- [Attach To Container](#attach-to-container)
- [Video - Attaching To Docker On Remote Host](#video---attaching-to-docker-on-remote-host)
## General Tips
While debugging it's helpful to simplify your test scenario as much as possible. Here are some tips for doing so:
> [!Important]
> All of these tips are incorporated into the [example configuration](#configuration) for debugging with VSCode below.
1. **Make sure you are using the latest version of axolotl**: This project changes often and bugs get fixed fast. Check your git branch and make sure you have pulled the latest changes from `main`.
1. **Eliminate concurrency**: Restrict the number of processes to 1 for both training and data preprocessing:
- Set `CUDA_VISIBLE_DEVICES` to a single GPU, ex: `export CUDA_VISIBLE_DEVICES=0`.
- Set `dataset_num_proc: 1` in your axolotl config or run the training command with `--dataset_num_proc=1`.
2. **Use a small dataset**: Construct or use a small dataset from HF Hub. When using a small dataset, you will often have to make sure `sample_packing: False` and `eval_sample_packing: False` to avoid errors. If you are in a pinch and don't have time to construct a small dataset but want to use from the HF Hub, you can shard the data (this will still tokenize the entire dataset, but will only use a fraction of the data for training. For example, to shard the dataset into 20 pieces, add the following to your axolotl config):
```yaml
datasets:
...
shards: 20
```
3. **Use a small model**: A good example of a small model is [TinyLlama/TinyLlama-1.1B-Chat-v1.0](https://huggingface.co/TinyLlama/TinyLlama-1.1B-Chat-v1.0).
4. **Minimize iteration time**: Make sure the training loop finishes as fast as possible, with these settings.
- `micro_batch_size: 1`
- `max_steps: 1`
- `val_set_size: 0`
5. **Clear Caches:** Axolotl caches certain steps and so does the underlying HuggingFace trainer. You may want to clear some of these caches when debugging.
- Data preprocessing: When debugging data preprocessing, which includes prompt template formation, you may want to delete the directory set in `dataset_prepared_path:` in your axolotl config. If you didn't set this value, the default is `last_run_prepared`.
- HF Hub: If you are debugging data preprocessing, you should clear the relevant HF cache [HuggingFace cache](https://huggingface.co/docs/datasets/cache), by deleting the appropriate `~/.cache/huggingface/datasets/...` folder(s).
- **The recommended approach is to redirect all outputs and caches to a temporary folder and delete selected subfolders before each run. This is demonstrated in the example configuration below.**
## Debugging with VSCode
### Background
The below example shows how to configure VSCode to debug data preprocessing of the `chat_template` format. This is the format used when you have the following in your axolotl config:
```yaml
datasets:
- path: <path to your chat_template formatted dataset> # example on HF Hub: fozziethebeat/alpaca_messages_2k_test
type: chat_template
```
>[!Important]
> If you are already familiar with advanced VSCode debugging, you can skip the below explanation and look at the files [.vscode/launch.json](../.vscode/launch.json) and [.vscode/tasks.json](../.vscode/tasks.json) for an example configuration.
>[!Tip]
> If you prefer to watch a video, rather than read, you can skip to the [video tutorial](#video-tutorial) below (but doing both is recommended).
### Setup
Make sure you have an [editable install](https://setuptools.pypa.io/en/latest/userguide/development_mode.html) of Axolotl, which ensures that changes you make to the code are reflected at runtime. Run the following commands from the root of this project:
```bash
pip3 install packaging
pip3 install --no-build-isolation -e '.[flash-attn,deepspeed]'
```
#### Remote Hosts
If you developing on a remote host, you can easily use VSCode to debug remotely. To do so, you will need to follow this [remote - SSH guide](https://code.visualstudio.com/docs/remote/ssh). You can also see the video below on [Docker and Remote SSH debugging](#video---attaching-to-docker-on-remote-host).
### Configuration
The easiest way to get started is to modify the [.vscode/launch.json](../.vscode/launch.json) file in this project. This is just an example configuration, so you may need to modify or copy it to suit your needs.
For example, to mimic the command `cd devtools && CUDA_VISIBLE_DEVICES=0 accelerate launch -m axolotl.cli.train dev_chat_template.yml`, you would use the below configuration[^1]. Note that we add additional flags that override the axolotl config and incorporate the tips above (see the comments). We also set the working directory to `devtools` and set the `env` variable `HF_HOME` to a temporary folder that is later partially deleted. This is because we want to delete the HF dataset cache before each run in order to ensure that the data preprocessing code is run from scratch.
```json
// .vscode/launch.json
{
"version": "0.2.0",
"configurations": [
{
"name": "Debug axolotl prompt - chat_template",
"type": "python",
"module": "accelerate.commands.launch",
"request": "launch",
"args": [
"-m", "axolotl.cli.train", "dev_chat_template.yml",
// The flags below simplify debugging by overriding the axolotl config
// with the debugging tips above. Modify as needed.
"--dataset_num_proc=1", // limits data preprocessing to one process
"--max_steps=1", // limits training to just one step
"--batch_size=1", // minimizes batch size
"--micro_batch_size=1", // minimizes batch size
"--val_set_size=0", // disables validation
"--sample_packing=False", // disables sample packing which is necessary for small datasets
"--eval_sample_packing=False",// disables sample packing on eval set
"--dataset_prepared_path=temp_debug/axolotl_outputs/data", // send data outputs to a temp folder
"--output_dir=temp_debug/axolotl_outputs/model" // send model outputs to a temp folder
],
"console": "integratedTerminal", // show output in the integrated terminal
"cwd": "${workspaceFolder}/devtools", // set working directory to devtools from the root of the project
"justMyCode": true, // step through only axolotl code
"env": {"CUDA_VISIBLE_DEVICES": "0", // Since we aren't doing distributed training, we need to limit to one GPU
"HF_HOME": "${workspaceFolder}/devtools/temp_debug/.hf-cache"}, // send HF cache to a temp folder
"preLaunchTask": "cleanup-for-dataprep", // delete temp folders (see below)
}
]
}
```
**Additional notes about this configuration:**
- The argument `justMyCode` is set to `true` such that you step through only the axolotl code. If you want to step into dependencies, set this to `false`.
- The `preLaunchTask`: `cleanup-for-dataprep` is defined in [.vscode/tasks.json](../.vscode/tasks.json) and is used to delete the following folders before debugging, which is essential to ensure that the data pre-processing code is run from scratch:
- `./devtools/temp_debug/axolotl_outputs`
- `./devtools/temp_debug/.hf-cache/datasets`
>[!Tip]
> You may not want to delete these folders. For example, if you are debugging model training instead of data pre-processing, you may NOT want to delete the cache or output folders. You may also need to add additional tasks to the `tasks.json` file depending on your use case.
Below is the [./vscode/tasks.json](../.vscode/tasks.json) file that defines the `cleanup-for-dataprep` task. This task is run before each debugging session when you use the above configuration. Note how there are two tasks that delete the two folders mentioned above. The third task `cleanup-for-dataprep` is a composite task that combines the two tasks. A composite task is necessary because VSCode does not allow you to specify multiple tasks in the `preLaunchTask` argument of the `launch.json` file.
```json
// .vscode/tasks.json
// this file is used by launch.json
{
"version": "2.0.0",
"tasks": [
// this task changes into the devtools directory and deletes the temp_debug/axolotl_outputs folder
{
"label": "delete-outputs",
"type": "shell",
"command": "rm -rf temp_debug/axolotl_outputs",
"options":{ "cwd": "${workspaceFolder}/devtools"},
"problemMatcher": []
},
// this task changes into the devtools directory and deletes the `temp_debug/.hf-cache/datasets` folder
{
"label": "delete-temp-hf-dataset-cache",
"type": "shell",
"command": "rm -rf temp_debug/.hf-cache/datasets",
"options":{ "cwd": "${workspaceFolder}/devtools"},
"problemMatcher": []
},
// this task combines the two tasks above
{
"label": "cleanup-for-dataprep",
"dependsOn": ["delete-outputs", "delete-temp-hf-dataset-cache"],
}
]
}
```
### Customizing your debugger
Your debugging use case may differ from the example above. The easiest thing to do is to put your own axolotl config in the `devtools` folder and modify the `launch.json` file to use your config. You may also want to modify the `preLaunchTask` to delete different folders or not delete anything at all.
### Video Tutorial
The following video tutorial walks through the above configuration and demonstrates how to debug with VSCode, (click the image below to watch):
<div style="text-align: center; line-height: 0;">
<a href="https://youtu.be/xUUB11yeMmc" target="_blank"
title="How to debug Axolotl (for fine tuning LLMs)"><img
src="https://i.ytimg.com/vi/xUUB11yeMmc/maxresdefault.jpg"
style="border-radius: 10px; display: block; margin: auto;" width="560" height="315" /></a>
<figcaption style="font-size: smaller;"><a href="https://hamel.dev">Hamel Husain's</a> tutorial: <a href="https://www.youtube.com/watch?v=xUUB11yeMmc">Debugging Axolotl w/VSCode</a></figcaption>
</div>
<br>
## Debugging With Docker
Using [official Axolotl Docker images](https://hub.docker.com/r/axolotlai/axolotl/tags) is a great way to debug your code, and is a very popular way to use Axolotl. Attaching VSCode to Docker takes a few more steps.
### Setup
On the host that is running axolotl (ex: if you are using a remote host), clone the axolotl repo and change your current directory to the root:
```bash
git clone https://github.com/axolotl-ai-cloud/axolotl
cd axolotl
```
>[!Tip]
> If you already have axolotl cloned on your host, make sure you have the latest changes and change into the root of the project.
Next, run the desired docker image and mount the current directory. Below is a docker command you can run to do this:[^2]
```bash
docker run --privileged --gpus '"all"' --shm-size 10g --rm -it --name axolotl --ipc=host --ulimit memlock=-1 --ulimit stack=67108864 --mount type=bind,src="${PWD}",target=/workspace/axolotl -v ${HOME}/.cache/huggingface:/root/.cache/huggingface axolotlai/axolotl:main-py3.10-cu118-2.0.1
```
>[!Tip]
> To understand which containers are available, see the [Docker section of the README](../README.md#docker) and the [DockerHub repo](https://hub.docker.com/r/axolotlai/axolotl/tags). For details of how the Docker containers are built, see axolotl's [Docker CI builds](../.github/workflows/main.yml).
You will now be in the container. Next, perform an editable install of Axolotl:
```bash
pip3 install packaging
pip3 install --no-build-isolation -e '.[flash-attn,deepspeed]'
```
### Attach To Container
Next, if you are using a remote host, [Remote into this host with VSCode](https://code.visualstudio.com/docs/remote/ssh). If you are using a local host, you can skip this step.
Next, select `Dev Containers: Attach to Running Container...` using the command palette (`CMD + SHIFT + P`) in VSCode. You will be prompted to select a container to attach to. Select the container you just created. You will now be in the container with a working directory that is at the root of the project. Any changes you make to the code will be reflected both in the container and on the host.
Now you are ready to debug as described above (see [Debugging with VSCode](#debugging-with-vscode)).
### Video - Attaching To Docker On Remote Host
Here is a short video that demonstrates how to attach to a Docker container on a remote host:
<div style="text-align: center; line-height: 0;">
<a href="https://youtu.be/0AuoR7QnHR0" target="_blank"
title="Debugging Axolotl Part 2: Attaching to Docker on a Remote Host"><img
src="https://i.ytimg.com/vi/0AuoR7QnHR0/hqdefault.jpg"
style="border-radius: 10px; display: block; margin: auto;" width="560" height="315" /></a>
<figcaption style="font-size: smaller;"><a href="https://hamel.dev">Hamel Husain's</a> tutorial: <a href="https://youtu.be/0AuoR7QnHR0">Debugging Axolotl Part 2: Attaching to Docker on a Remote Host
</a></figcaption>
</div>
<br>
[^1]: The config actually mimics the command `CUDA_VISIBLE_DEVICES=0 python -m accelerate.commands.launch -m axolotl.cli.train devtools/chat_template.yml`, but this is the same thing.
[^2]: Many of the below flags are recommended best practices by Nvidia when using nvidia-container-toolkit. You can read more about these flags [here](https://docs.nvidia.com/deeplearning/frameworks/user-guide/index.html).

View File

@@ -1,140 +0,0 @@
---
title: "Docker"
format:
html:
toc: true
toc-depth: 4
---
This section describes the different Docker images that are released by AxolotlAI at [Docker Hub](https://hub.docker.com/u/axolotlai).
::: {.callout-important}
For Blackwell GPUs, please use the tags with PyTorch 2.7.1 and CUDA 12.8.
:::
## Base
The base image is the most minimal image that can install Axolotl. It is based on the `nvidia/cuda` image. It includes python, torch, git, git-lfs, awscli, pydantic, and more.
#### Image
```
axolotlai/axolotl-base
```
Link: [Docker Hub](https://hub.docker.com/r/axolotlai/axolotl-base)
#### Tags format
```bash
main-base-py{python_version}-cu{cuda_version}-{pytorch_version}
```
Tags examples:
- `main-base-py3.11-cu128-2.8.0`
- `main-base-py3.11-cu128-2.9.1`
## Main
The main image is the image that is used to run Axolotl. It is based on the `axolotlai/axolotl-base` image and includes the Axolotl codebase, dependencies, and more.
#### Image
```
axolotlai/axolotl
```
Link: [Docker Hub](https://hub.docker.com/r/axolotlai/axolotl)
#### Tags format {#sec-main-tags}
```bash
# on push to main
main-py{python_version}-cu{cuda_version}-{pytorch_version}
# latest main (currently torch 2.6.0, python 3.11, cuda 12.4)
main-latest
# nightly build
{branch}-{date_in_YYYYMMDD}-py{python_version}-cu{cuda_version}-{pytorch_version}
# tagged release
{version}
```
:::{.callout-tip}
There may be some extra tags appended to the image, like `-vllm` which installs those packages.
:::
Tags examples:
- `main-py3.11-cu128-2.8.0`
- `main-py3.11-cu128-2.9.1`
- `main-latest`
- `main-20250303-py3.11-cu124-2.6.0`
- `main-20250303-py3.11-cu126-2.6.0`
- `0.12.0`
## Cloud
The cloud image is the image that is used to run Axolotl in the cloud. It is based on the `axolotlai/axolotl` image and sets ENV variables like HuggingFace cache directories for volume mounts, tmux, and more for different cloud providers.
:::{.callout-tip}
Jupyter lab is run by default. Set `JUPYTER_DISABLE=1` in the environment variables to disable it.
:::
#### Image
```
axolotlai/axolotl-cloud
```
Link: [Docker Hub](https://hub.docker.com/r/axolotlai/axolotl-cloud)
#### Tags format
This uses the same tags as the [`main` image](#sec-main-tags).
#### Environment variables
- `JUPYTER_DISABLE`: Disable Jupyter lab.
- `JUPYTER_PASSWORD`: Set a password for the Jupyter lab.
- `PUBLIC_KEY` / `SSH_KEY`: Add a public key for the SSH service.
#### Volume mounts
:::{.callout-tip}
We recommend mounting volumes to `/workspace/data` for data persistence. `/workspace/axolotl` contains the source code and is ephemeral.
:::
- `/workspace/data/axolotl-artifacts`: Directory to store Axolotl artifacts.
- `/workspace/data/huggingface-cache`: Directory to store HuggingFace cache.
## Cloud-no-tmux
This is the same as the [`cloud` image](#sec-cloud) but without tmux.
#### Image
```
axolotlai/axolotl-cloud-term
```
Link: [Docker Hub](https://hub.docker.com/r/axolotlai/axolotl-cloud-term)
:::{.callout-note}
The naming may be a bit confusing as it has `-term` appended to the end.
:::
#### Tags format
This uses the same tags as the [`cloud` image](#sec-cloud-tags).

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