Compare commits

..

65 Commits

Author SHA1 Message Date
Dan Saunders
103edc7211 refactor build() into smaller fns 2025-05-12 20:36:52 +00:00
Wing Lian
c7b6790614 Various fixes for CI, save_only_model for RL, prevent packing multiprocessing deadlocks (#2661)
* lean mistral ft tests, remove e2e torch 2.4.1 test

* make sure to pass save_only_model for RL

* more tests to make ci leaner, add cleanup to modal ci

* fix module for import in e2e tests

* use mp spawn to prevent deadlocks with packing

* make sure cleanup shell script is executable when cloned out
2025-05-12 10:51:18 -04:00
Dan Saunders
47e0e71bc8 don't sort multipack sampler (#2657)
* don't sort multipack sampler

* increased packing efficiency increases loss

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
2025-05-09 20:28:58 -04:00
Wing Lian
0f3587174d swap tinymodels that have safetensors for some ci tests (#2641) 2025-05-07 15:06:07 -04:00
xzuyn
25e6c5f9bd Add CAME Optimizer (#2385) 2025-05-07 10:31:46 -04:00
NanoCode012
32f51bca35 fix(doc): clarify instruction to delinearize llama4 similar to cli doc (#2644) [skip ci] 2025-05-07 10:29:47 -04:00
NanoCode012
9daa04da90 Fix: improve error message on failed dataset load (#2637) [skip ci]
* fix(log): clarify error on dataset loading failed

* fix: add path for easy tracking of broken config

* fix: improve error message based on pr feedback
2025-05-07 10:29:05 -04:00
Wing Lian
0d71b0aa5f Configurable embeddings upcast (#2621)
* fsdp embeddings should be float32 per comment

* patch peft to not upcast everything

* add tabs back to code check

* fix import

* add configurable option and fix check

* add check for dtypes

* move embeddings test to patch dir

* fix test

* fix comment and logic
2025-05-06 23:40:44 -04:00
Eric Meier
63aaccf85b Fix cut_cross_entropy plugin install (#2642) [skip ci] 2025-05-06 22:56:00 -04:00
Wing Lian
ff0fe767c8 xformers attention with packing (#2619)
* xformers attention with packing

* wire up the patch

* fix xformers + packing validation

* fix warning

* reorder the packing check

* fix fp16 / bf16 reset when using fp16 with bf16 auto

* fix seq lens calc to drop hanging sequences

* handle xformers patch for inference too

* fix batch size setter

* fix xformers inference

* add colab callback to fix inference post train

* PR feedback
2025-05-06 22:49:22 -04:00
Wing Lian
8e4158cc0b Multipack parallel bin packing (#2631)
* improve readability of multipack sampler

* parallel bin packing
fix error with lambda and pickling

make sure things are in float instead of np.float

* annotations and comments update

* support for configurable group and bin size for sample packing

* fix missing map back to original indices
2025-05-06 20:08:08 -04:00
Wing Lian
cd84325253 allow plugins to return their own dataset (#2617) [skip ci]
* allow plugins to return their own dataset

* add post_trainer_create and wire up

* add hook check

* address PR feedback:

* remove annotation causing circular import
2025-05-06 20:05:51 -04:00
NanoCode012
0b140fef83 feat(doc): add split_thinking docs (#2613) [skip ci]
* feat(doc): add split_thinking docs

* fix: link config.qmd to conversation.qmd for split_thinking example

* update thinking => reasoning_content in messages format

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
2025-05-06 20:05:32 -04:00
Wing Lian
e4cfebe995 bump liger dep to 0.5.9 (#2640) [skip ci]
* bump liger dep to 0.5.9

* also upgrade vllm to post1, and datasets to 3.5.1
2025-05-06 20:05:19 -04:00
mhenrichsen
a6cac5dd32 Update lr_scheduler options in config.qmd to include additional scheduling strategies for improved training flexibility. (#2636) [skip ci] 2025-05-06 11:24:07 -04:00
Wing Lian
b71c0e3447 Print axolotl art if train is called outside of cli: (#2627) [skip ci] 2025-05-06 11:18:45 -04:00
Wing Lian
ddaebf8309 fix dpo eval override to call grandparent instead of the broken super (#2628) [skip ci] 2025-05-06 11:18:25 -04:00
Wing Lian
679743087a make sure gc_steps is used for all trainers (#2638) 2025-05-06 11:18:00 -04:00
Wing Lian
f720b6e72d repop cache (#2639)
* repop cache

* pre-cache as a step

* fix the name

* add reason for pytest skipif

* restore pytorch matrix

* remove max-parallel now that we've optimized this a bit
2025-05-06 11:09:07 -04:00
mhenrichsen
a980618fd0 Adds example for training a TTS model on top of a LLM. (#2614)
* Adds example for training a TTS model on top of a LLM.

* Update examples/orpheus/finetune.yml

Co-authored-by: NanoCode012 <nano@axolotl.ai>

* Update examples/orpheus/finetune.yml

Co-authored-by: NanoCode012 <nano@axolotl.ai>

* Update README.md to clarify GPU requirements for finetuning Orpheus TTS model

* Update finetune.yml to use the new base model canopylabs/orpheus-3b-0.1-pretrained

* Update finetune.yml and README.md for consistency and clarity

---------

Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-05-06 10:11:06 +02:00
Emmanuel Ferdman
54960d4de0 Fix logging deprecation warnings (#2623)
Signed-off-by: Emmanuel Ferdman <emmanuelferdman@gmail.com>
2025-05-04 08:22:45 -04:00
Wing Lian
ed922796b7 include multipack support for qwen3 family (#2622) 2025-05-03 12:02:39 -04:00
Wing Lian
3dd9c3bf3f setup hf transfer too and fix auto bf16 when fp16 enabled (#2620) [skip ci] 2025-05-03 12:02:26 -04:00
Wing Lian
0ba7d362fa qwen3 and qwen3_moe support for liger kernels (#2612)
* qwen3 and qwen3_moe support for liger kernels

* fix moe module path

* fix: qwen3 liger input args and mlp

* fix: qwen3 input args and output class

---------

Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-05-02 09:29:55 -04:00
aitechguy
e4f73bc98e remove keys to incoporate changes for the trl update (#2616) 2025-05-02 08:47:42 -04:00
Wing Lian
bcb59c70e2 automatically set pad_to_sequence_len when use packing (#2607)
* automatically set pad_to_sequence_len when use packing

* update tests
2025-05-01 13:24:38 -04:00
NanoCode012
6a3e6f8c53 fix: run preview-docs only when md/qmd changes (#2606)
* fix: run preview-docs only when md/qmd changes

* feat: add quarto yaml based on PR feedback
2025-05-01 13:21:28 -04:00
Wing Lian
fee3c13bb5 Logging config for colab (#2611)
* only configure logging on cli to play nicely with colab

* allow reloading the config on the fly from a dict

* make sure to use dict for yaml

* reuse existing function for load

* make cli args optional

* mps fix and respect max_steps
2025-05-01 12:58:00 -04:00
Rahul Tuli
996fc124e5 Add: Sparse Finetuning Integration with llmcompressor (#2479)
* Add: SFTPlugin with llmcompressor

* Update: review comments!

* Add:llmcompressor instalable

* pre commit hooks

* Use: warning over warn

* Revert: TODO's

* Update llmcompressor version to latest

* Apply suggestions from @markurtz

Co-authored-by: Mark Kurtz <mark.j.kurtz@gmail.com>

* Address review comments from @markurtz

* Add: llcompressor installable

* Rename: sft.yaml to sparse-finetuning.yaml

* Use: absolute import

* Update model config

* Move: LLMCompressorPlugin into it's own submodule

* Add: `llm_compressor` integration documentation

* Rebase and updates!

* Tests, Style, Updates

* Add: .qmd file

* Address Review Comments:
* deleted redundant docs/llm_compressor.qmd
* incorporated feedback in integration README.md
* added llmcompressor integration to docs/custom_integrations.qmd

Signed-off-by: Rahul Tuli <rtuli@redhat.com>

* Add: line about further optimizations using llmcompressor

Signed-off-by: Rahul Tuli <rtuli@redhat.com>

* Apply patch from @winglian

Signed-off-by: Rahul Tuli <rtuli@redhat.com>

* Fix: Test

Signed-off-by: Rahul Tuli <rtuli@redhat.com>

* additional fixes for docker and saving compressed

* split llmcompressor from vllm checks

* Reset session between tests

Signed-off-by: Rahul Tuli <rtuli@redhat.com>

* move decorator to test method instead of class

* make sure to reset the session after each test

* move import of llmcompressor to reset session inside test

---------

Signed-off-by: Rahul Tuli <rtuli@redhat.com>
Co-authored-by: Mark Kurtz <mark.j.kurtz@gmail.com>
Co-authored-by: Wing Lian <wing@axolotl.ai>
2025-05-01 12:25:16 -04:00
Wing Lian
e963990ad7 add missing __init__ for lr monkeypatch fix (#2609) 2025-05-01 09:41:32 -04:00
Dhruv Mullick
c3f2b1c5c2 Add num_completions_to_print for trl and grpo (#2604) 2025-04-30 21:00:30 -04:00
Wing Lian
6ba5c0ed2c use latest hf-xet and don't install vllm for torch 2.7.0 (#2603)
* use latest hf-xet and don't install vllm for torch 2.7.0

* fix runpod hub tests
2025-04-30 18:27:39 -04:00
Wing Lian
24ff5f53f8 additional args for grpo config/trainer (#2598) 2025-04-30 13:11:12 -04:00
Wing Lian
5e949eaa07 replace zero_only with simpler if statement (#2592) 2025-04-30 13:11:03 -04:00
Wing Lian
89ca14d9a0 ensure we pass axolotl extras to the Dockerfile so vllm is included in shipped images (#2599) 2025-04-30 11:35:45 -04:00
Wing Lian
8446b4ad28 don't automatically enable lora kernels for RL training (#2600) 2025-04-30 11:06:50 -04:00
Wing Lian
fc79606b6d only import vllm serve cli if its being called (#2597) [skip ci] 2025-04-30 09:11:25 -04:00
Wing Lian
baeb00231b Handle other reasoning trace dataset formats (#2591)
* Handle other reasoning trace dataset formats

* rename var to improve readability

* chore: refactor with comments

---------

Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-04-30 03:32:55 -04:00
Wing Lian
2413688b08 upload the deepspeed json to wandb (#2593) [skip ci] 2025-04-30 03:32:44 -04:00
NanoCode012
5bb1f3da56 feat: add qwen3 moe block for ds3 (#2596) [skip ci] 2025-04-30 03:32:23 -04:00
Wing Lian
a21b9cc472 patch to convert LR from tensor to float when using DS (#2595) [skip ci] 2025-04-30 03:31:57 -04:00
Aleksandr Dremov
41a1ec0c95 Plugins create_lr_scheduler support (#2584)
* lr_scheduler support

* fix

* Update scheduler.py

* Update scheduler.py

* cfg handling

* black

* remove debug

* remove adding the axolotl cfg to the scheduler mixin

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
2025-04-29 17:08:30 -04:00
Dan Saunders
ecac731922 auto-enable lora kernels where possible (#2589)
* auto-enable lora kernels where possible

* test

* revert change to example yaml

* naming

* remove print

* slight logic change
2025-04-29 16:18:49 -04:00
NanoCode012
742fef4200 fix(doc): key used to point to url in multimodal doc (#2575) [skip ci] 2025-04-29 15:10:59 -04:00
Wing Lian
a39caf8824 bump vllm==0.8.5 for qwen3 support (#2583) [skip ci] 2025-04-29 15:10:40 -04:00
Wing Lian
07e4f2e25b support for qwen3 with lora kernels (#2588)
* support for qwen3 with lora kernels

* fix patch

* typo
2025-04-29 15:02:49 -04:00
Dan Saunders
c7d07de6b4 Fix eval + add smoke test (#2586)
* fix evaluate CLI

* add smoke test

* fix naming

* lint
2025-04-29 12:58:54 -04:00
Wing Lian
6565ae85d8 set config on the PluginManager for callback access (#2587) 2025-04-29 12:05:44 -04:00
Wing Lian
80b4edb4a7 Post release fixes (#2581)
* fix missing kwarg on child

* make the runpod test shorter

* update docs

* rename runpod test json file

* typing fixes and ordering of doc
2025-04-29 10:01:38 -04:00
Wing Lian
fedbcc0254 remove torch 2.4.1 CI as part of support deprecation (#2582) 2025-04-29 08:28:32 -04:00
Wing Lian
8175896ada add dev tag for v0.10.0.dev0 (#2580) 2025-04-28 20:30:14 -04:00
Wing Lian
14d670dbf0 v0.9.0 release (#2578)
Some checks failed
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2025-04-28 18:23:17 -04:00
Wing Lian
2d77165dc0 automatically split out reasoning trace from dataset (#2579)
* automatically split out reasoning trace from dataset

* chore: lint

* fix import
2025-04-28 18:23:03 -04:00
Wing Lian
63b17e3109 chat template and example for qwen3 (#2577) 2025-04-28 15:09:41 -04:00
NanoCode012
1178a15ede Feat: Add qwen3 and CCE for qwen family (#2518) 2025-04-28 12:18:46 -04:00
Wing Lian
c513487d1a support val_set_size for splitting test split from train with DPO (#2572) 2025-04-28 12:12:15 -04:00
Dan Saunders
dda95e6c40 add preview-docs workflow (#2432)
* add preview-docs workflow

* update preview-docs workflow

* use correct publish-dir

* install deps prior to docs build

* use correct publish-dir

* use quarto publish with netlify target

* adding _publish.yml

* fix

* fix

* fix

* remove unused file

* fix naming

---------

Co-authored-by: Dan Saunders <dan@axolotl.ai>
2025-04-28 11:20:46 -04:00
NanoCode012
7099343c56 feat: add eos_tokens and train_on_eot for chat_template EOT parsing (#2364)
* feat: add eos_tokens and train_on_eot for chat_template EOT parsing

* fix: comments

* chore: add some examples of tokens

* feat: add new potential errors for chat_template to faq

* feat: add examples for EOT handling

* fix: change error to warning for missing EOS

* fix: warning typo

* feat: add tests for eot token handling

* fix: remove broken caplog capture in test

* fix: chattemplate strategy with kd missing eot changes
2025-04-28 10:11:20 -04:00
Wing Lian
5000cb3fe7 grab sys prompt too from dataset (#2397) [skip ci]
* grab sys prompt too from dataset

* chore: add field_system to docs

---------

Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-04-28 10:11:06 -04:00
divyanshuaggarwal
170cdb5be9 Add Post_model_load, post_lora_load, post_train, post_train_unload function calls (#2539)
* Update train.py

add post_model_load and post_lora_load model calss.

* Update train.py

add post_train and post_train_unload function calls

* Update train.py

* Update base.py

* Update train.py

* chore: lint

* clarify plugin hooks

* Update src/axolotl/integrations/base.py

Co-authored-by: Dan Saunders <danjsaund@gmail.com>

* Update src/axolotl/utils/models.py

Co-authored-by: Dan Saunders <danjsaund@gmail.com>

* Update src/axolotl/utils/models.py

Co-authored-by: Dan Saunders <danjsaund@gmail.com>

* Update src/axolotl/integrations/base.py

Co-authored-by: Dan Saunders <danjsaund@gmail.com>

* Update models.py

* Update models.py

* remove extra call to post_model_load

* chore: lint

* add test for hooks and gc trainer

* disable duplicated code check for test

* fix the path and add better handling

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: Dan Saunders <danjsaund@gmail.com>
2025-04-28 10:10:28 -04:00
Ezekiel Wotring
5d182a1056 Add runpod sls handler (#2530) [skip ci]
* Add runpod sls handler

* remove LICENSE and fix README

* chore: lint

* use axolotl cloud image as base and various fixes

* fix: trim allowed cuda versions

* restore dockerfile

* chore: update title

* use axolotl cloud image

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-04-28 10:08:32 -04:00
Wing Lian
40f4ea23ab replace references to random 68m model w 135m smollm2 (#2570) [skip ci]
* replace references to random 68m model w 135m smollm2

* use AutoTokenizer for smollm2
2025-04-28 10:08:07 -04:00
NanoCode012
f1df73a798 fix(doc): clarify vllm usage with grpo (#2573) [skip ci]
* fix(doc): clarify vllm usage with grpo

* nit

Co-authored-by: salman <salman.mohammadi@outlook.com>

* Update docs/rlhf.qmd

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: salman <salman.mohammadi@outlook.com>
2025-04-28 10:07:45 -04:00
Dhruv Mullick
8b33ae1c4f Fix bug in grpo reward module import (#2571) 2025-04-28 00:31:56 -04:00
Wing Lian
dc4da4a7e2 update trl to 0.17.0 (#2560)
* update trl to 0.17.0

* grpo + vllm no longer supported with 2.5.1 due to vllm constraints

* disable VLLM_USE_V1 for ci

* imporve handle killing off of multiprocessing vllm service

* debug why this doesn't run in CI

* increase vllm wait time

* increase timeout to 5min

* upgrade to vllm 0.8.4

* dump out the vllm log for debugging

* use debug logging

* increase vllm start timeout

* use NVL instead

* disable torch compile cache

* revert some commented checks now that grpo tests are fixed

* increase vllm timeoout back to 5min
2025-04-27 19:19:53 -04:00
140 changed files with 7479 additions and 1990 deletions

View File

@@ -22,12 +22,6 @@ jobs:
fail-fast: false
matrix:
include:
- cuda: "124"
cuda_version: 12.4.1
cudnn_version: ""
python_version: "3.11"
pytorch: 2.4.1
torch_cuda_arch_list: "7.0 7.5 8.0 8.6 8.7 8.9 9.0+PTX"
- cuda: "124"
cuda_version: 12.4.1
cudnn_version: ""

View File

@@ -15,16 +15,11 @@ jobs:
fail-fast: false
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
axolotl_extras:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.5.1
axolotl_extras: vllm
axolotl_extras:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
@@ -35,7 +30,7 @@ jobs:
cuda_version: 12.6.3
python_version: "3.11"
pytorch: 2.7.0
axolotl_extras: vllm
axolotl_extras:
runs-on: axolotl-gpu-runner
steps:
- name: Checkout
@@ -67,6 +62,7 @@ jobs:
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: |
@@ -82,11 +78,6 @@ jobs:
strategy:
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
axolotl_extras:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"

View File

@@ -9,6 +9,7 @@ on:
- '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
@@ -32,18 +33,11 @@ jobs:
axolotl_extras: vllm
num_gpus: 2
nightly_build: "true"
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
axolotl_extras: # no vllm support for 2.4.1
num_gpus: 2
nightly_build: "true"
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.5.1
axolotl_extras: vllm
axolotl_extras:
num_gpus: 2
nightly_build: "true"
- cuda: 126

View File

@@ -12,11 +12,6 @@ jobs:
fail-fast: false
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
axolotl_extras:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
@@ -70,11 +65,6 @@ jobs:
strategy:
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
axolotl_extras:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"

61
.github/workflows/preview-docs.yml vendored Normal file
View File

@@ -0,0 +1,61 @@
name: Preview
on:
workflow_dispatch:
pull_request:
types: [opened, synchronize, reopened]
# Run the workflow only when one of these files changes
paths:
- '**/*.md' # any Markdown file
- '**/*.qmd' # any Quarto file
- '_quarto.yaml'
permissions:
checks: write
contents: write
deployments: write
issues: write
discussions: write
pages: write
pull-requests: write
statuses: write
jobs:
preview:
runs-on: ubuntu-latest
steps:
- 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 . --no-deps
- name: Build autodoc
run: quartodoc build
- name: Quarto render
run: quarto render
- name: Netlify Publish
uses: nwtgck/actions-netlify@v3.0
with:
publish-dir: './_site'
enable-pull-request-comment: true
enable-github-deployment: true
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 }}

View File

@@ -18,15 +18,102 @@ jobs:
env:
SKIP: no-commit-to-branch
preload-cache:
name: Preload HF cache
runs-on: ubuntu-latest
strategy:
fail-fast: false
matrix:
python_version: ["3.11"]
pytorch_version: ["2.6.0"]
timeout-minutes: 20
env:
AXOLOTL_IS_CI_CACHE_PRELOAD: "1"
steps:
- name: Check out repository code
uses: actions/checkout@v4
- name: Restore HF cache
id: hf-cache-restore
uses: actions/cache/restore@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ runner.os }}-hf-hub-cache-v2
- 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 }}
- 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: Pre-Download dataset fixture
run: |
huggingface-cli download --repo-type=dataset axolotl-ai-internal/axolotl-oss-dataset-fixtures
- name: Run tests
run: |
pytest -v tests/conftest.py
- 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
- name: cleanup pip cache
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Save HF cache
id: hf-cache
uses: actions/cache/save@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ steps.hf-cache-restore.outputs.cache-primary-key }}
pytest:
name: PyTest
runs-on: ubuntu-latest
needs: [preload-cache]
strategy:
fail-fast: false
max-parallel: 2
matrix:
python_version: ["3.11"]
pytorch_version: ["2.4.1", "2.5.1", "2.6.0"]
pytorch_version: ["2.5.1", "2.6.0", "2.7.0"]
timeout-minutes: 20
steps:
@@ -106,13 +193,6 @@ jobs:
fail-fast: false
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
num_gpus: 1
axolotl_extras:
nightly_build: "true"
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"

View File

@@ -27,6 +27,9 @@ 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
@@ -41,15 +44,101 @@ jobs:
env:
SKIP: no-commit-to-branch
pytest:
name: PyTest
preload-cache:
name: Preload HF cache
runs-on: ubuntu-latest
strategy:
fail-fast: false
max-parallel: 2
matrix:
python_version: ["3.11"]
pytorch_version: ["2.4.1", "2.5.1", "2.6.0", "2.7.0"]
pytorch_version: ["2.6.0"]
timeout-minutes: 20
env:
AXOLOTL_IS_CI_CACHE_PRELOAD: "1"
steps:
- name: Check out repository code
uses: actions/checkout@v4
- name: Restore HF cache
id: hf-cache-restore
uses: actions/cache/restore@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ runner.os }}-hf-hub-cache-v2
- 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 }}
- 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: Pre-Download dataset fixture
run: |
huggingface-cli download --repo-type=dataset axolotl-ai-internal/axolotl-oss-dataset-fixtures
- name: Run tests
run: |
pytest -v tests/conftest.py
- 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
- name: cleanup pip cache
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Save HF cache
id: hf-cache
uses: actions/cache/save@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ steps.hf-cache-restore.outputs.cache-primary-key }}
pytest:
name: PyTest
runs-on: ubuntu-latest
needs: [preload-cache]
strategy:
fail-fast: false
matrix:
python_version: ["3.11"]
pytorch_version: ["2.5.1", "2.6.0", "2.7.0"]
timeout-minutes: 20
steps:
@@ -118,24 +207,15 @@ jobs:
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Save HF cache
id: hf-cache
uses: actions/cache/save@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ steps.hf-cache-restore.outputs.cache-primary-key }}
pytest-sdist:
name: PyTest from Source Dist
runs-on: ubuntu-latest
needs: [preload-cache]
strategy:
fail-fast: false
max-parallel: 1
matrix:
python_version: ["3.11"]
pytorch_version: ["2.4.1", "2.5.1", "2.6.0"]
pytorch_version: ["2.5.1", "2.6.0", "2.7.0"]
timeout-minutes: 20
steps:
@@ -196,15 +276,6 @@ jobs:
run: |
find "$(pip cache dir)/http-v2" -type f -mtime +14 -exec rm {} \;
- name: Save HF cache
id: hf-cache
uses: actions/cache/save@v4
with:
path: |
/home/runner/.cache/huggingface/hub/datasets--*
/home/runner/.cache/huggingface/hub/models--*
key: ${{ steps.hf-cache-restore.outputs.cache-primary-key }}
docker-e2e-tests-1st:
if: ${{ ! contains(github.event.commits[0].message, '[skip e2e]') && github.repository_owner == 'axolotl-ai-cloud' }}
# this job needs to be run on self-hosted GPU runners...
@@ -261,15 +332,15 @@ jobs:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.4.1
pytorch: 2.6.0
num_gpus: 1
axolotl_extras:
axolotl_extras: llmcompressor
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.5.1
num_gpus: 1
axolotl_extras: vllm
axolotl_extras:
- cuda: 126
cuda_version: 12.6.3
python_version: "3.11"
@@ -300,3 +371,43 @@ jobs:
- name: Run tests job on Modal
run: |
modal run cicd.e2e_tests
docker-e2e-cleanup:
runs-on: [self-hosted, modal]
timeout-minutes: 90
needs: [docker-e2e-tests]
strategy:
fail-fast: false
matrix:
include:
- cuda: 124
cuda_version: 12.4.1
python_version: "3.11"
pytorch: 2.6.0
num_gpus: 1
axolotl_extras: vllm
steps:
- name: Checkout
uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
with:
python-version: "3.11"
- name: Install Modal
run: |
python -m pip install --upgrade pip
pip install modal==0.71.8 jinja2
- name: Update env vars
run: |
echo "BASE_TAG=main-base-py${{ 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

View File

@@ -1,11 +1,10 @@
FROM runpod/pytorch:3.10-2.0.0-117
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=$BASE_VOLUME
@@ -15,4 +14,5 @@ ENV TRANSFORMERS_CACHE="${BASE_VOLUME}/huggingface-cache/hub"
COPY .runpod/src /src
WORKDIR /src
CMD ["python3", "/src/handler.py"]

View File

@@ -5,11 +5,3 @@
# 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
huggingface_hub
typing-extensions
pydantic
pydantic-settings
hf-transfer
setuptools
numpy==2.0.0
axolotl[flash-attn,deepspeed]

86
.runpod/test-input.json Normal file
View File

@@ -0,0 +1,86 @@
{
"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

@@ -11,43 +11,43 @@
"hf_token": ""
},
"args": {
"base_model": "NousResearch/Meta-Llama-3-8B",
"model_type": "LlamaForCausalLM",
"base_model": "HuggingFaceTB/SmolLM2-135M",
"model_type": "AutoModelForCausalLM",
"tokenizer_type": "AutoTokenizer",
"load_in_8bit": true,
"load_in_4bit": false,
"load_in_4bit": true,
"strict": false,
"datasets": [
{
"path": "mhenrichsen/alpaca_2k_test",
"type": "alpaca"
"type": "alpaca",
"split": "train[:10%]"
}
],
"val_set_size": 0.05,
"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": "lora",
"adapter": "qlora",
"lora_r": 32,
"lora_alpha": 16,
"lora_alpha": 64,
"lora_dropout": 0.05,
"lora_target_linear": true,
"lora_modules_to_save": [
"embed_tokens",
"lm_head"
],
"gradient_accumulation_steps": 4,
"micro_batch_size": 2,
"gradient_accumulation_steps": 2,
"micro_batch_size": 1,
"num_epochs": 1,
"optimizer": "adamw_bnb_8bit",
"optimizer": "adamw_torch_fused",
"lr_scheduler": "cosine",
"learning_rate": 0.0002,
"train_on_inputs": false,
"group_by_length": false,
"bf16": "auto",
"tf32": false,
"tf32": true,
"gradient_checkpointing": true,
"logging_steps": 1,
"flash_attention": true,
@@ -57,8 +57,9 @@
"saves_per_epoch": 1,
"weight_decay": 0.0,
"special_tokens": {
"pad_token": "<|end_of_text|>"
}
"pad_token": "<|endoftext|>"
},
"max_steps": 20
}
},
"timeout": 100000

0
cicd/__init__.py Normal file
View File

View File

@@ -18,7 +18,7 @@ pytest -v --durations=10 \
--cov-append
# Run patched tests excluding lora kernels with coverage append
pytest -v --durations=10 \
pytest --full-trace -vvv --durations=10 \
--ignore=tests/e2e/patched/lora_kernels \
/workspace/axolotl/tests/e2e/patched \
--cov=axolotl \

19
cicd/cleanup.py Normal file
View File

@@ -0,0 +1,19 @@
"""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()

6
cicd/cleanup.sh Executable file
View File

@@ -0,0 +1,6 @@
#!/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

@@ -1,69 +1,6 @@
"""Modal app to run axolotl GPU tests"""
# pylint: disable=duplicate-code
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", "2.4.1"),
"BASE_TAG": os.environ.get("BASE_TAG", "main-base-py3.11-cu121-2.4.1"),
"CUDA": os.environ.get("CUDA", "121"),
"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",
}
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",
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_CONFIG = modal.gpu.L40S(count=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) # pylint: disable=consider-using-sys-exit
from .single_gpu import GPU_CONFIG, VOLUME_CONFIG, app, cicd_image, run_cmd
@app.function(

View File

@@ -20,4 +20,4 @@ pytest -v --durations=10 -n1 /workspace/axolotl/tests/e2e/multigpu/patched/ \
--cov-report=xml:multigpu-coverage.xml
# Upload coverage to Codecov
codecov upload-process -t $CODECOV_TOKEN -f multigpu-coverage.xml -F multigpu,docker-tests,pytorch-${PYTORCH_VERSION}
codecov upload-process -t "${CODECOV_TOKEN}" -f multigpu-coverage.xml -F multigpu,docker-tests,pytorch-${PYTORCH_VERSION} || true

66
cicd/single_gpu.py Normal file
View File

@@ -0,0 +1,66 @@
"""Modal app to run axolotl GPU tests"""
# pylint: disable=duplicate-code
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", "2.4.1"),
"BASE_TAG": os.environ.get("BASE_TAG", "main-base-py3.11-cu121-2.4.1"),
"CUDA": os.environ.get("CUDA", "121"),
"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",
}
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",
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_CONFIG = modal.gpu.L40S(count=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) # pylint: disable=consider-using-sys-exit

View File

@@ -32,6 +32,8 @@ tokenizer_legacy:
resize_token_embeddings_to_32x:
# Optional[bool] Whether to shrink the embeddings to len(tokenizer). By default, we won't shrink.
shrink_embeddings:
# Optional[bool] Don't upcast the embeddings to float32 when using PEFT. Useful for low-VRAM GPUs
embeddings_skip_upcast:
# Whether to load the model with randomly initialized weights. Useful for
# pre-training a model from scratch or debugging purposes.
random_init_weights:
@@ -73,11 +75,12 @@ load_in_8bit: true
load_in_4bit:
# Use CUDA bf16
bf16: true # bool or 'full' for `bf16_full_eval`. require >=ampere
bf16: true # bool or 'full' for `bf16_full_eval`, or 'auto' for automatic detection. require >=ampere
# Use CUDA fp16
fp16: true
# Use CUDA tf32
tf32: true # require >=ampere
# Note: if bf16 is set to 'auto', and fp16 is set to true, we will prefer the explict fp16 setting
# No AMP (automatic mixed precision)
bfloat16: true # require >=ampere
@@ -154,6 +157,10 @@ datasets:
# Key containing the messages (default: "messages")
field_messages: messages
# Key containing the system message (default: "system")
# If the system message is not present in the dataset sample, it will be loaded from the field_system property.
field_system: system
# Mapping of properties from the input dataset to the chat template.
# (default: message_property_mappings={'role':'role', 'content':'content'})
# If a property exists in the template but not in this mapping, the system will attempt
@@ -180,10 +187,14 @@ datasets:
# adding a system turn with empty content.
drop_system_message:
# Optional[bool]. (for Qwen3 template only) Whether to split the assistant content based on a reasoning trace inside delimited tags
# See example at `docs/dataset-formats/conversation.qmd`
split_thinking:
# IMPORTANT: The following fields determine which parts of the conversation to train on.
# Priority order: message_field_training > message_field_training_detail > train_on_inputs or role in roles_to_train
# See examples at `docs/dataset-formats/conversation.qmd`
# Note: If the below 4 fields are set to empty, defaults to training only on the last message.
# Note: If the below 5 fields are empty, defaults to training only on the last message.
# Optional[List[str]]. Roles to train on. The tokens from these roles will be considered for the loss.
roles_to_train: ["assistant"] # default
@@ -192,7 +203,13 @@ datasets:
# - turn (default): train on the EOS token at the end of each trainable turn
# - last: train on the last EOS token in the conversation
# TIP: Please make sure that your `tokenizer.eos_token` is same as EOS/EOT token in template. Otherwise, set `eos_token` under `special_tokens`.
train_on_eos: last
train_on_eos: turn
# Optional[str]. Which EOT (End-of-Turn) tokens to train on in the conversation. Possible values are:
# - all: train on all EOT tokens
# - turn: train on the EOT token at the end of each trainable turn
# - last: train on the last EOT token in the conversation
# If not specified, defaults to the value of train_on_eos for backward compatibility.
train_on_eot:
# The key in the message turn that indicates via boolean whether tokens of a turn should be considered for training. Useful to selectively train on certain turns besides the `roles_to_train`.
message_field_training: training
# The key in the message turn that contains the training details. Useful to selectively train on certain tokens in a turn.
@@ -275,8 +292,17 @@ process_reward_model:
chat_template: tokenizer_default
# custom jinja template for chat template. This will be only used if chat_template is set to `jinja` or `null` (in which case chat_template is automatically set to `jinja`). Default is null.
chat_template_jinja: null
# Changes the default system message. Currently only supports chatml.
default_system_message: You are a helpful assistant. Please give a long and detailed answer.
# Optional[List[str]]. Custom EOT (End-of-Turn) tokens to mask/unmask during training.
# These tokens mark the boundaries between conversation turns.
# For example: ["/INST", "</s>", "[/SYSTEM_PROMPT]"]
# If not specified, defaults to just the model's eos_token.
# This is useful for templates that use multiple delimiter tokens.
eot_tokens:
# - "</s>"
# - "[/INST]"
# - "[/SYSTEM_PROMPT]"
# Changes the default system message
default_system_message: You are a helpful assistant. Please give a long and detailed answer. # Currently only supports chatml.
# 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
@@ -524,7 +550,7 @@ gradient_checkpointing: false
early_stopping_patience: 3
# Specify a scheduler and kwargs to use with the optimizer
lr_scheduler: # 'one_cycle' | 'rex' | 'log_sweep' | empty for cosine
lr_scheduler: # 'one_cycle' | 'rex' | 'log_sweep' | 'linear' | 'cosine_with_restarts' | 'polynomial' | 'constant' | 'constant_with_warmup' | 'inverse_sqrt' | 'reduce_lr_on_plateau' | 'cosine_with_min_lr' | 'warmup_stable_decay' | empty for cosine
lr_scheduler_kwargs:
cosine_min_lr_ratio: # decay lr to some percentage of the peak lr, e.g. cosine_min_lr_ratio=0.1 for 10% of peak lr
cosine_constant_lr_ratio: # freeze lr at some percentage of the step, e.g. cosine_constant_lr_ratio=0.8 means start cosine_min_lr at 80% of training step (https://arxiv.org/pdf/2308.04014.pdf)
@@ -586,6 +612,7 @@ lr_div_factor: # Learning rate div factor
# - optimi_adamw
# - ao_adamw_8bit
# - ao_adamw_fp8
# - came_pytorch
optimizer:
# Dictionary of arguments to pass to the optimizer
optim_args:
@@ -661,8 +688,10 @@ special_tokens:
# unk_token: "<unk>"
# pad_token: "[PAD]"
# Add extra tokens.
# Optional[list[str]]. Add extra tokens to the tokenizer.
tokens:
# - "<|startoftext|>"
# - "<|endoftext|>"
# Mapping token_id to new_token_string to override reserved added_tokens in the tokenizer.
# Only works for tokens that are not part of the base vocab (aka are added_tokens).

View File

@@ -49,7 +49,8 @@ sections = [
("Knowledge Distillation (KD)", "kd"),
("Liger Kernels", "liger"),
("Language Model Evaluation Harness (LM Eval)", "lm_eval"),
("Spectrum", "spectrum")
("Spectrum", "spectrum"),
("LLMCompressor", "llm_compressor")
]
for section_name, folder_name in sections:

View File

@@ -4,18 +4,6 @@ description: Conversation format for supervised fine-tuning.
order: 3
---
## sharegpt
::: {.callout-important}
ShareGPT is deprecated!. Please see [chat_template](#chat_template) section below.
:::
## pygmalion
```{.json filename="data.jsonl"}
{"conversations": [{"role": "...", "value": "..."}]}
```
## 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.
@@ -64,7 +52,7 @@ We recommend checking the below examples for other usecases.
### Examples
1. Using the default chat template in the tokenizer_config.json on OpenAI messages format, training on only last message.
1. (Legacy) Using the default chat template in the tokenizer_config.json on OpenAI messages format, training on only last message.
```yaml
datasets:
@@ -109,10 +97,55 @@ datasets:
```
::: {.callout-important}
Please make sure that your `tokenizer.eos_token` is same as EOS/EOT token in template. Otherwise, set `eos_token` under `special_tokens`.
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: `.
:::
5. (Advanced) Using fine-grained control over tokens and turns to train in a conversation
5. 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.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.qmd) for more details.
:::
6. 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.
:::
7. (Advanced) Using fine-grained control over tokens and turns to train in a conversation
For a data sample that looks like:
@@ -162,3 +195,43 @@ datasets:
::: {.callout-tip}
It is not necessary to set both `message_field_training` and `message_field_training_detail` at once.
:::
8. (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

@@ -73,10 +73,40 @@ description: Frequently asked questions
> A: This is likely an empty turn.
**Q: The EOS/EOT token is incorrectly being masked or not being masked.**
**Q: The EOS token is incorrectly being masked or not being masked / `EOS token __ not found in chat template`.**
> A: This is because of the mismatch between `tokenizer.eos_token` and EOS/EOT token in template. Please make sure to set `eos_token` under `special_tokens` to the same EOS/EOT token as in template.
> A: There can be two reasons:
> 1. This is because of the mismatch between `tokenizer.eos_token` and EOS token in template. Please make sure to set `eos_token: ` under `special_tokens: ` to the same EOS token as in template.
> 2. The EOS token is not in the template. Please check if your template is correct. As an example, `phi_35` template does not use its dedicated EOS token `<|endoftext|>` at the end.
**Q: "`chat_template` choice is `tokenizer_default` but tokenizer's `chat_template` is null. Please add a `chat_template` in tokenizer config"**
> A: This is because the tokenizer does not have a chat template. Please add a chat template in the tokenizer config. See [chat_template](dataset-formats/conversation.qmd#chat-template) for more details.
**Q: The EOT token(s) are incorrectly being masked or not being masked / `EOT token __ not found in chat template`.**
> A: There can be two reasons:
> 1. The EOT token is different from the EOS token and was not specified under `eot_tokens: `. Please set `eot_tokens: ` to the same EOT token(s) as in template.
> 2. There is more than one EOT token per turn in the template. Please raise an issue with examples as we recognize this as an edge case.
**Q: `EOT token encoding failed. Please check if the token is valid and can be encoded.`**
> A: There could be some issue with the tokenizer or unicode encoding. Please raise an issue with examples with the EOT token & tokenizer causing the issue.
**Q: `EOT token __ is encoded as multiple tokens.`**
> A: This is because the EOT token is encoded as multiple tokens which can cause unexpected behavior. Please add it under `tokens: ` or (recommended) override unused added_tokens via `added_tokens_overrides: `.
**Q: `Conflict between train_on_eos and train_on_eot. eos_token is in eot_tokens and train_on_eos != train_on_eot`**
> A: This is because the EOS token is in the `eot_tokens: ` while mismatch between `train_on_eos: ` and `train_on_eot: `. This will cause one to override the other. Please ensure that `train_on_eos: ` and `train_on_eot: ` are the same or remove the EOS token from `eot_tokens: `.
**Q: If `eot_tokens: ` is not provided, what happens?**
> A: If `eot_tokens: ` is not provided, the default behavior is the same as before. EOS tokens used to delimit turns are masked/unmasked depending on whether the turn is trainable.
> Internally, `eot_tokens: tokenizer.eos_token` and `train_on_eot: train_on_eos` (which defaults to `turn`). This transition helps clarify the naming and behavior of EOT/EOS tokens.

View File

@@ -164,7 +164,7 @@ Here is an example of a multi-modal dataset:
{
"role": "user",
"content": [
{"type": "image", "image": "https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/bee.jpg"},
{"type": "image", "url": "https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/bee.jpg"},
{"type": "text", "text": "Describe this image in detail."}
]
},

View File

@@ -502,9 +502,7 @@ The input format is a simple JSON input with customizable fields based on the ab
Check out our [GRPO cookbook](https://github.com/axolotl-ai-cloud/axolotl-cookbook/tree/main/grpo#training-an-r1-style-large-language-model-using-grpo).
:::
If you have multiple GPUs available, we reccomend using `vLLM` with the `GRPOTrainer` to significantly speedup trajectory generation during training.
First, launch a `vLLM` server using `trl vllm-serve` - you may use a config file or CLI overrides to configure your vLLM server. In this example, we're
using 4 GPUs - 2 for training, and 2 for vLLM:
In the latest GRPO implementation, `vLLM` is used to significantly speedup trajectory generation during training. In this example, we're using 4 GPUs - 2 for training, and 2 for vLLM:
::: {.callout-important}
Make sure you've installed the correct version of vLLM by including it as an extra when installing axolotl, e.g. `pip install axolotl[vllm]`.
@@ -539,6 +537,10 @@ Your `vLLM` instance will now attempt to spin up, and it's time to kick off trai
CUDA_VISIBLE_DEVICES=0,1 axolotl train grpo.yaml --num-processes 2
```
::: {.callout-note}
Due to TRL's implementation with vLLM, the vLLM instance must use the last N GPUs instead of the first N GPUs. This is why in the example above, we use `CUDA_VISIBLE_DEVICES=2,3` for the vLLM instance.
:::
#### Reward functions
GRPO uses custom reward functions and transformations. Please have them ready locally.

View File

@@ -0,0 +1,77 @@
base_model: neuralmagic/Sparse-Llama-3.1-8B-2of4
plugins:
- axolotl.integrations.llm_compressor.LLMCompressorPlugin
load_in_8bit: false
load_in_4bit: false
strict: false
datasets:
- path: tatsu-lab/alpaca
type: alpaca
dataset_prepared_path: last_run_prepared
val_set_size: 0.05
output_dir: ./outputs/out
sequence_len: 4096
sample_packing: true
pad_to_sequence_len: true
eval_sample_packing: false
wandb_project:
wandb_entity:
wandb_watch:
wandb_name:
wandb_log_model:
gradient_accumulation_steps: 8
micro_batch_size: 1
num_epochs: 1
optimizer: paged_adamw_8bit
lr_scheduler: cosine
learning_rate: 2e-5
train_on_inputs: false
group_by_length: false
bf16: auto
fp16:
tf32: false
gradient_checkpointing: true
gradient_checkpointing_kwargs:
use_reentrant: false
early_stopping_patience:
resume_from_checkpoint:
logging_steps: 1
xformers_attention:
flash_attention: true
warmup_steps: 100
evals_per_epoch: 2
eval_table_size:
saves_per_epoch: 1
debug:
deepspeed:
weight_decay: 0.0
fsdp:
fsdp_config:
special_tokens:
pad_token: <|end_of_text|>
llmcompressor:
recipe:
finetuning_stage:
finetuning_modifiers:
ConstantPruningModifier:
targets: [
're:.*q_proj.weight',
're:.*k_proj.weight',
're:.*v_proj.weight',
're:.*o_proj.weight',
're:.*gate_proj.weight',
're:.*up_proj.weight',
're:.*down_proj.weight',
]
start: 0
save_compressed: true

View File

@@ -34,3 +34,5 @@ We provide a script to delinearize Llama 4 linearized models into regular Huggin
```bash
axolotl delinearize-llama4 --model path/to/model_dir --output path/to/output_dir
```
Note: This only works with the non-quantized linearized model. If you have an adapter, merge it with the *non-quantized linearized* model before delinearizing.

341
examples/orpheus/README.md Normal file
View File

@@ -0,0 +1,341 @@
# Finetuning LLMs to output audio
In this example, we finetune Orpcanopylabs/orpheus-tts-0.1-pretrained (a LLaMA 3.2 3b model) to output audio.
The `finetune.yml` withe current settings will run on any Nvidia GPU with 45GB VRAM or more. If you adjust the batch size it can easily run on any GPU under 24GB.
## Dataset pre-processing for pre-training
If you are adding another voice in English, please jump ahead to finetuning pre-processing.
For this to work, we need to preprocess our dataset. Since we are expecting to output audio, we will need to add tokens to the tokenizer.
Using this code, it will download the SNAC model and add the correct tokens and upload the final dataset.
```python
import torch
from snac import SNAC
from datasets import load_dataset
from huggingface_hub import snapshot_download
from datasets import load_dataset
import random
import torchaudio.transforms as T
from transformers import AutoTokenizer
import os
my_original_dataset_name = "<huggingface-id-of-dataset-that-we-want-to-preprocess>"
name_to_push_dataset_to = "<huggingface-id-of-where-to-save-dataset>"
dsn = my_original_dataset_name
snapshot_download(
repo_id=dsn,
repo_type="dataset",
revision="main",
max_workers=64,
)
ds = load_dataset(dsn, split="train")
ds_sample_rate = ds[0]["audio"]["sampling_rate"]
model = SNAC.from_pretrained("hubertsiuzdak/snac_24khz")
model = model.to("mps")
def tokenise_audio(waveform):
waveform = torch.from_numpy(waveform).unsqueeze(0)
waveform = waveform.to(dtype=torch.float32)
resample_transform = T.Resample(orig_freq=ds_sample_rate, new_freq=24000)
waveform = resample_transform(waveform)
waveform = waveform.unsqueeze(0).to("cuda")
#generate the codes from snac
with torch.inference_mode():
codes = model.encode(waveform)
all_codes = []
for i in range(codes[0].shape[1]):
all_codes.append(codes[0][0][i].item()+128266)
all_codes.append(codes[1][0][2*i].item()+128266+4096)
all_codes.append(codes[2][0][4*i].item()+128266+(2*4096))
all_codes.append(codes[2][0][(4*i)+1].item()+128266+(3*4096))
all_codes.append(codes[1][0][(2*i)+1].item()+128266+(4*4096))
all_codes.append(codes[2][0][(4*i)+2].item()+128266+(5*4096))
all_codes.append(codes[2][0][(4*i)+3].item()+128266+(6*4096))
return all_codes
def add_codes(example):
# Always initialize codes_list to None
codes_list = None
try:
answer_audio = example.get("audio")
# If there's a valid audio array, tokenise it
if answer_audio and "array" in answer_audio:
audio_array = answer_audio["array"]
codes_list = tokenise_audio(audio_array)
except Exception as e:
print(f"Skipping row due to error: {e}")
# Keep codes_list as None if we fail
example["codes_list"] = codes_list
return example
ds = ds.map(add_codes, remove_columns=["audio"])
#@title Load Tokenizer
tokeniser_length = 128256
start_of_text = 128000
end_of_text = 128009
start_of_speech = tokeniser_length + 1
end_of_speech = tokeniser_length + 2
start_of_human = tokeniser_length + 3
end_of_human = tokeniser_length + 4
start_of_ai = tokeniser_length + 5
end_of_ai = tokeniser_length + 6
pad_token = tokeniser_length + 7
audio_tokens_start = tokeniser_length + 10
tokenizer_name = "canopylabs/orpheus-3b-0.1-pretrained"
tokenizer = AutoTokenizer.from_pretrained(tokenizer_name)
num_proc = os.cpu_count() - 2
ds = ds.filter(lambda x: x["codes_list"] is not None)
ds = ds.filter(lambda x: len(x["codes_list"]) > 0)
#@title Create Input Ids
def remove_duplicate_frames(example):
vals = example["codes_list"]
if len(vals) % 7 != 0:
raise ValueError("Input list length must be divisible by 7")
result = vals[:7]
removed_frames = 0
for i in range(7, len(vals), 7):
current_first = vals[i]
previous_first = result[-7]
if current_first != previous_first:
result.extend(vals[i:i+7])
else:
removed_frames += 1
example["codes_list"] = result
return example
ds = ds.map(remove_duplicate_frames, num_proc=num_proc)
def create_input_ids(example):
text_ids = tokenizer.encode({example['text']}, add_special_tokens=True)
text_ids.append(end_of_text)
example["text_tokens"] = text_ids
input_ids = (
[start_of_human]
+ example["text_tokens"]
+ [end_of_human]
+ [start_of_ai]
+ [start_of_speech]
+ example["codes_list"]
+ [end_of_speech]
+ [end_of_ai]
)
example["input_ids"] = input_ids
example["labels"] = input_ids
example["attention_mask"] = [1] * len(input_ids)
return example
ds = ds.map(create_input_ids, num_proc=num_proc, remove_columns=["text", "codes_list"])
#@title Remove unnecessary columns
columns_to_keep = ["input_ids", "labels", "attention_mask"]
columns_to_remove = [col for col in ds.column_names if col not in columns_to_keep]
ds = ds.remove_columns(columns_to_remove)
ds.push_to_hub(name_to_push_dataset_to)
```
## Finetune pre-processing
Use this code to add a new voice.
```python
import torch
from snac import SNAC
from datasets import load_dataset
from huggingface_hub import snapshot_download
from datasets import load_dataset
import random
import torchaudio.transforms as T
from transformers import AutoTokenizer
import os
my_original_dataset_name = "<huggingface-id-of-dataset-that-we-want-to-preprocess>"
name_to_push_dataset_to = "<huggingface-id-of-where-to-save-dataset>"
dsn = my_original_dataset_name
snapshot_download(
repo_id=dsn,
repo_type="dataset",
revision="main",
max_workers=64,
)
ds = load_dataset(dsn, split="train")
ds_sample_rate = ds[0]["audio"]["sampling_rate"]
model = SNAC.from_pretrained("hubertsiuzdak/snac_24khz")
model = model.to("mps")
def tokenise_audio(waveform):
waveform = torch.from_numpy(waveform).unsqueeze(0)
waveform = waveform.to(dtype=torch.float32)
resample_transform = T.Resample(orig_freq=ds_sample_rate, new_freq=24000)
waveform = resample_transform(waveform)
waveform = waveform.unsqueeze(0).to("cuda")
#generate the codes from snac
with torch.inference_mode():
codes = model.encode(waveform)
all_codes = []
for i in range(codes[0].shape[1]):
all_codes.append(codes[0][0][i].item()+128266)
all_codes.append(codes[1][0][2*i].item()+128266+4096)
all_codes.append(codes[2][0][4*i].item()+128266+(2*4096))
all_codes.append(codes[2][0][(4*i)+1].item()+128266+(3*4096))
all_codes.append(codes[1][0][(2*i)+1].item()+128266+(4*4096))
all_codes.append(codes[2][0][(4*i)+2].item()+128266+(5*4096))
all_codes.append(codes[2][0][(4*i)+3].item()+128266+(6*4096))
return all_codes
def add_codes(example):
# Always initialize codes_list to None
codes_list = None
try:
answer_audio = example.get("audio")
# If there's a valid audio array, tokenise it
if answer_audio and "array" in answer_audio:
audio_array = answer_audio["array"]
codes_list = tokenise_audio(audio_array)
except Exception as e:
print(f"Skipping row due to error: {e}")
# Keep codes_list as None if we fail
example["codes_list"] = codes_list
return example
ds = ds.map(add_codes, remove_columns=["audio"])
#@title Load Tokenizer
tokeniser_length = 128256
start_of_text = 128000
end_of_text = 128009
start_of_speech = tokeniser_length + 1
end_of_speech = tokeniser_length + 2
start_of_human = tokeniser_length + 3
end_of_human = tokeniser_length + 4
start_of_ai = tokeniser_length + 5
end_of_ai = tokeniser_length + 6
pad_token = tokeniser_length + 7
audio_tokens_start = tokeniser_length + 10
tokenizer_name = "canopylabs/orpheus-3b-0.1-pretrained"
tokenizer = AutoTokenizer.from_pretrained(tokenizer_name)
num_proc = os.cpu_count() - 2
ds = ds.filter(lambda x: x["codes_list"] is not None)
ds = ds.filter(lambda x: len(x["codes_list"]) > 0)
#@title Create Input Ids
def remove_duplicate_frames(example):
vals = example["codes_list"]
if len(vals) % 7 != 0:
raise ValueError("Input list length must be divisible by 7")
result = vals[:7]
removed_frames = 0
for i in range(7, len(vals), 7):
current_first = vals[i]
previous_first = result[-7]
if current_first != previous_first:
result.extend(vals[i:i+7])
else:
removed_frames += 1
example["codes_list"] = result
return example
ds = ds.map(remove_duplicate_frames, num_proc=num_proc)
tok_info = '''*** HERE you can modify the text prompt
i.e. if you wanted a multispeaker model like canopylabs/orpheus-3b-0.1-ft, you can pass:
f"{example["source"]}: {example["text"]}", as is passed.
'''
print(tok_info)
def create_input_ids(example):
text_ids = tokenizer.encode(f"{example['speaker_id']}: {example['text']}", add_special_tokens=True)
text_ids.append(end_of_text)
example["text_tokens"] = text_ids
input_ids = (
[start_of_human]
+ example["text_tokens"]
+ [end_of_human]
+ [start_of_ai]
+ [start_of_speech]
+ example["codes_list"]
+ [end_of_speech]
+ [end_of_ai]
)
example["input_ids"] = input_ids
example["labels"] = input_ids
example["attention_mask"] = [1] * len(input_ids)
return example
ds = ds.map(create_input_ids, num_proc=num_proc, remove_columns=["text", "codes_list"])
#@title Remove unnecessary columns
columns_to_keep = ["input_ids", "labels", "attention_mask"]
columns_to_remove = [col for col in ds.column_names if col not in columns_to_keep]
ds = ds.remove_columns(columns_to_remove)
ds.push_to_hub(name_to_push_dataset_to)
```
## Training
After preprocessing is done, fill out the blanks in finetune.yml and simply run `axolotl train finetune.yml`
## Inference
For inference, please refer to the original [orpheus github](https://github.com/canopyai/Orpheus-TTS/tree/main).

View File

@@ -0,0 +1,52 @@
base_model: canopylabs/orpheus-3b-0.1-pretrained
hub_model_id: <your-hub-model-id>
plugins:
- axolotl.integrations.liger.LigerPlugin
liger_rope: true
liger_rms_norm: true
liger_glu_activation: true
liger_fused_linear_cross_entropy: true
datasets:
- path: <your-hf-dataset-id>
type: # leave empty to load pre-tokenized
dataset_prepared_path: last_run_prepared
val_set_size: 0.01
output_dir: ./outputs/out
sequence_len: 8192
sample_packing: true
pad_to_sequence_len: true
wandb_project:
wandb_entity:
wandb_watch:
wandb_name:
wandb_log_model:
gradient_accumulation_steps: 8
micro_batch_size: 4
num_epochs: 3
optimizer: adamw_torch_fused
lr_scheduler: cosine
learning_rate: 2e-5
bf16: auto
tf32: false
gradient_checkpointing: true
gradient_checkpointing_kwargs:
use_reentrant: false
resume_from_checkpoint:
logging_steps: 1
flash_attention: true
warmup_steps: 20
evals_per_epoch: 5
saves_per_epoch: 5
weight_decay: 0.05
special_tokens:
pad_token: <custom_token_7>

View File

@@ -0,0 +1,69 @@
base_model: Qwen/Qwen3-32B
# Automatically upload checkpoint and final model to HF
# hub_model_id: username/custom_model_name
plugins:
- axolotl.integrations.cut_cross_entropy.CutCrossEntropyPlugin
strict: false
chat_template: qwen3
datasets:
- path: mlabonne/FineTome-100k
type: chat_template
split: train[:20%]
field_messages: conversations
message_property_mappings:
role: from
content: value
val_set_size: 0.0
output_dir: ./outputs/out
dataset_prepared_path: last_run_prepared
sequence_len: 2048
sample_packing: true
eval_sample_packing: true
pad_to_sequence_len: true
load_in_4bit: true
adapter: qlora
lora_r: 16
lora_alpha: 32
lora_target_modules:
- q_proj
- k_proj
- v_proj
- o_proj
- down_proj
- up_proj
lora_mlp_kernel: true
lora_qkv_kernel: true
lora_o_kernel: true
wandb_project:
wandb_entity:
wandb_watch:
wandb_name:
wandb_log_model:
gradient_accumulation_steps: 2
micro_batch_size: 1
num_epochs: 1
optimizer: adamw_torch_4bit
lr_scheduler: cosine
learning_rate: 0.0002
bf16: auto
tf32: true
gradient_checkpointing: offload
gradient_checkpointing_kwargs:
use_reentrant: false
resume_from_checkpoint:
logging_steps: 1
flash_attention: true
warmup_steps: 10
evals_per_epoch: 4
saves_per_epoch: 1
weight_decay: 0.0
special_tokens:

View File

@@ -0,0 +1,68 @@
base_model: Qwen/Qwen3-8B
# Automatically upload checkpoint and final model to HF
# hub_model_id: username/custom_model_name
load_in_8bit: false
load_in_4bit: true
strict: false
datasets:
- path: tatsu-lab/alpaca
type: alpaca
dataset_prepared_path:
val_set_size: 0.05
output_dir: ./outputs/out
sequence_len: 2048
sample_packing: true
eval_sample_packing: true
pad_to_sequence_len: true
adapter: qlora
lora_model_dir:
lora_r: 32
lora_alpha: 64
lora_dropout: 0.05
lora_target_linear: true
wandb_project:
wandb_entity:
wandb_watch:
wandb_name:
wandb_log_model:
gradient_accumulation_steps: 4
micro_batch_size: 1
num_epochs: 1
optimizer: adamw_torch_fused
lr_scheduler: cosine
learning_rate: 0.0002
bf16: auto
tf32: true
gradient_checkpointing: true
gradient_checkpointing_kwargs:
use_reentrant: false
resume_from_checkpoint:
logging_steps: 1
flash_attention: true
warmup_steps: 10
evals_per_epoch: 4
saves_per_epoch: 1
weight_decay: 0.0
fsdp:
- full_shard
- auto_wrap
fsdp_config:
fsdp_limit_all_gathers: true
fsdp_sync_module_states: true
fsdp_offload_params: true
fsdp_use_orig_params: false
fsdp_cpu_ram_efficient_loading: true
fsdp_auto_wrap_policy: TRANSFORMER_BASED_WRAP
fsdp_transformer_layer_cls_to_wrap: Qwen3DecoderLayer
fsdp_state_dict_type: FULL_STATE_DICT
fsdp_sharding_strategy: FULL_SHARD
special_tokens:

View File

@@ -6,19 +6,20 @@ triton>=3.0.0
mamba-ssm==1.2.0.post1
xformers>=0.0.23.post1
autoawq==0.2.7.post3
liger-kernel==0.5.8
liger-kernel==0.5.9
# END section
packaging==23.2
peft==0.15.1
huggingface_hub==0.31.0
peft==0.15.2
transformers==4.51.3
tokenizers>=0.21.1
accelerate==1.6.0
datasets==3.5.0
datasets==3.5.1
deepspeed>=0.15.4
trl==0.16.1
hf_xet==1.0.0
trl==0.17.0
hf_xet==1.1.0
hqq==0.2.5
optimum==1.16.2

View File

@@ -67,13 +67,13 @@ def parse_requirements(extras_require_map):
if (major, minor) >= (2, 7):
_install_requires.pop(_install_requires.index(xformers_version))
# _install_requires.append("xformers==0.0.29.post3") # xformers seems to be hard pinned to 2.6.0
extras_require_map["vllm"] = ["vllm==0.8.3"]
extras_require_map["vllm"] = ["vllm==0.8.5.post1"]
elif (major, minor) >= (2, 6):
_install_requires.pop(_install_requires.index(xformers_version))
_install_requires.append(
"xformers==0.0.29.post2"
) # vllm needs post2 w torch 2.6
extras_require_map["vllm"] = ["vllm==0.8.3"]
extras_require_map["vllm"] = ["vllm==0.8.5.post1"]
elif (major, minor) >= (2, 5):
_install_requires.pop(_install_requires.index(xformers_version))
if patch == 0:
@@ -142,6 +142,7 @@ extras_require = {
"apollo-torch",
"lomo-optim==0.1.1",
"torch-optimi==0.2.1",
"came_pytorch==0.1.3",
],
"ray": [
"ray[train]",
@@ -149,6 +150,9 @@ extras_require = {
"vllm": [
"vllm==0.7.2",
],
"llmcompressor": [
"llmcompressor==0.5.1",
],
}
install_requires, dependency_links, extras_require_build = parse_requirements(

View File

@@ -4,4 +4,4 @@ import pkgutil
__path__ = pkgutil.extend_path(__path__, __name__) # Make this a namespace package
__version__ = "0.8.0"
__version__ = "0.10.0.dev0"

View File

@@ -2,4 +2,7 @@
import os
from axolotl.logging_config import configure_logging
os.environ["HF_HUB_ENABLE_HF_TRANSFER"] = "1"
configure_logging()

View File

@@ -16,8 +16,15 @@ AXOLOTL_LOGO = """
@@@@ @@@@@@@@@@@@@@@@
"""
HAS_PRINTED_LOGO = False
def print_axolotl_text_art():
"""Prints axolotl ASCII art."""
global HAS_PRINTED_LOGO # pylint: disable=global-statement
if HAS_PRINTED_LOGO:
return
if is_main_process():
HAS_PRINTED_LOGO = True
print(AXOLOTL_LOGO)

View File

@@ -8,9 +8,6 @@ from accelerate.commands.config import config_args
from huggingface_hub import HfApi
from huggingface_hub.utils import LocalTokenNotFoundError
from axolotl.logging_config import configure_logging
configure_logging()
LOG = logging.getLogger(__name__)

View File

@@ -5,6 +5,7 @@ import logging
import os
import tempfile
from pathlib import Path
from tempfile import NamedTemporaryFile
from typing import Union
from urllib.parse import urlparse
@@ -152,7 +153,15 @@ def prepare_plugins(cfg: DictDefault):
plugin_manager.register(plugin_name)
def load_cfg(config: Union[str, Path] = Path("examples/"), **kwargs) -> DictDefault:
def plugin_set_cfg(cfg: DictDefault):
if cfg.get("plugins"):
plugin_manager = PluginManager.get_instance()
plugin_manager.cfg = cfg
def load_cfg(
config: str | Path | DictDefault = Path("examples/"), **kwargs
) -> DictDefault:
"""
Loads the `axolotl` configuration stored at `config`, validates it, and performs
various setup.
@@ -164,13 +173,24 @@ def load_cfg(config: Union[str, Path] = Path("examples/"), **kwargs) -> DictDefa
Returns:
`DictDefault` mapping configuration keys to values.
"""
config = check_remote_config(config)
if Path(config).is_dir():
config = choose_config(Path(config))
if isinstance(config, (str, Path)):
config = check_remote_config(config)
if Path(config).is_dir():
config = choose_config(Path(config))
# Load the config from the yaml file
with open(config, encoding="utf-8") as file:
cfg: DictDefault = DictDefault(yaml.safe_load(file))
# Load the config from the yaml file
with open(config, encoding="utf-8") as file:
cfg: DictDefault = DictDefault(yaml.safe_load(file))
cfg.axolotl_config_path = config
else:
cfg = config
with NamedTemporaryFile(
mode="w", delete=False, suffix=".yml", prefix="axolotl_config_"
) as temp_file:
temp_file.write(yaml.dump(config.to_dict()))
temp_file.close()
cfg.axolotl_config_path = temp_file.name
# If there are any options passed in the cli, if it is something that seems valid
# from the yaml, then overwrite the value
@@ -184,8 +204,6 @@ def load_cfg(config: Union[str, Path] = Path("examples/"), **kwargs) -> DictDefa
else:
cfg[k] = kwargs[k]
cfg.axolotl_config_path = config
try:
device_props = torch.cuda.get_device_properties("cuda")
gpu_version = "sm_" + str(device_props.major) + str(device_props.minor)
@@ -213,5 +231,6 @@ def load_cfg(config: Union[str, Path] = Path("examples/"), **kwargs) -> DictDefa
setup_wandb_env_vars(cfg)
setup_mlflow_env_vars(cfg)
setup_comet_env_vars(cfg)
plugin_set_cfg(cfg)
return cfg

View File

@@ -1,6 +1,7 @@
"""CLI to run evaluation on a model."""
import logging
import os
from pathlib import Path
from typing import Union
@@ -14,6 +15,7 @@ from axolotl.cli.checks import check_accelerate_default_config, check_user_token
from axolotl.cli.config import load_cfg
from axolotl.common.datasets import load_datasets, load_preference_datasets
from axolotl.evaluate import evaluate
from axolotl.utils import patch_optimized_env
from axolotl.utils.dict import DictDefault
LOG = logging.getLogger(__name__)
@@ -29,10 +31,14 @@ def do_evaluate(cfg: DictDefault, cli_args: TrainerCliArgs) -> None:
cfg: Dictionary mapping `axolotl` config keys to values.
cli_args: CLI arguments.
"""
# Enable expandable segments for cuda allocation to improve VRAM usage
patch_optimized_env()
# pylint: disable=duplicate-code
print_axolotl_text_art()
check_accelerate_default_config()
check_user_token()
if int(os.getenv("LOCAL_RANK", "0")) == 0:
check_user_token()
if cfg.rl:
dataset_meta = load_preference_datasets(cfg=cfg, cli_args=cli_args)

View File

@@ -28,9 +28,8 @@ from axolotl.cli.utils import (
fetch_from_github,
filter_none_kwargs,
)
from axolotl.cli.vllm_serve import do_vllm_serve
from axolotl.integrations.lm_eval.cli import lm_eval
from axolotl.utils import set_pytorch_cuda_alloc_conf
from axolotl.utils import patch_optimized_env
from axolotl.utils.schemas.config import AxolotlInputConfig
@@ -56,6 +55,8 @@ def preprocess(config: str, cloud: Optional[str] = None, **kwargs) -> None:
kwargs: Additional keyword arguments which correspond to CLI args or `axolotl`
config options.
"""
patch_optimized_env()
if cloud:
from axolotl.cli.cloud import do_cli_preprocess
@@ -101,7 +102,7 @@ def train(
config options.
"""
# Enable expandable segments for cuda allocation to improve VRAM usage
set_pytorch_cuda_alloc_conf()
patch_optimized_env()
if "use_ray" in kwargs and kwargs["use_ray"]:
accelerate = False
@@ -327,6 +328,8 @@ def fetch(directory: str, dest: Optional[str]) -> None:
@add_options_from_dataclass(VllmServeCliArgs)
@filter_none_kwargs
def vllm_serve(config: str, **cli_args: VllmServeCliArgs):
from axolotl.cli.vllm_serve import do_vllm_serve
do_vllm_serve(config, cli_args)

View File

@@ -18,6 +18,7 @@ from axolotl.cli.checks import check_accelerate_default_config, check_user_token
from axolotl.cli.config import load_cfg
from axolotl.common.const import DEFAULT_DATASET_PREPARED_PATH
from axolotl.common.datasets import load_datasets, load_preference_datasets
from axolotl.integrations.base import PluginManager
from axolotl.utils.dict import DictDefault
from axolotl.utils.trainer import disable_datasets_caching
@@ -47,7 +48,10 @@ def do_preprocess(cfg: DictDefault, cli_args: PreprocessCliArgs) -> None:
cfg.dataset_prepared_path = DEFAULT_DATASET_PREPARED_PATH
with disable_datasets_caching():
if cfg.rl:
plugin_manager = PluginManager.get_instance()
if plugin_manager.load_datasets(cfg, preprocess=True):
pass
elif cfg.rl:
load_preference_datasets(cfg=cfg, cli_args=cli_args)
else:
load_datasets(cfg=cfg, cli_args=cli_args)

View File

@@ -1,5 +1,6 @@
"""CLI to run training on a model."""
import gc
import logging
import os
from pathlib import Path
@@ -17,7 +18,7 @@ from axolotl.cli.config import load_cfg
from axolotl.common.datasets import load_datasets, load_preference_datasets
from axolotl.integrations.base import PluginManager
from axolotl.train import train
from axolotl.utils import set_pytorch_cuda_alloc_conf
from axolotl.utils import patch_optimized_env
from axolotl.utils.config import normalize_config, resolve_dtype
from axolotl.utils.dict import DictDefault
@@ -35,21 +36,27 @@ def do_train(cfg: DictDefault, cli_args: TrainerCliArgs):
cli_args: Training-specific CLI arguments.
"""
# Enable expandable segments for cuda allocation to improve VRAM usage
set_pytorch_cuda_alloc_conf()
patch_optimized_env()
print_axolotl_text_art()
check_accelerate_default_config()
if int(os.getenv("LOCAL_RANK", "0")) == 0:
check_user_token()
if cfg.rl:
dataset_meta = load_preference_datasets(cfg=cfg, cli_args=cli_args)
else:
dataset_meta = load_datasets(cfg=cfg, cli_args=cli_args)
plugin_manager = PluginManager.get_instance()
dataset_meta = plugin_manager.load_datasets(cfg, preprocess=False)
if not dataset_meta:
if cfg.rl:
dataset_meta = load_preference_datasets(cfg=cfg, cli_args=cli_args)
else:
dataset_meta = load_datasets(cfg=cfg, cli_args=cli_args)
model, tokenizer, trainer = train(cfg=cfg, dataset_meta=dataset_meta)
del model, tokenizer, trainer
gc.collect()
plugin_manager = PluginManager.get_instance()
plugin_manager.post_train_unload(cfg)

View File

@@ -20,11 +20,9 @@ from transformers import (
ProcessorMixin,
)
from axolotl.logging_config import configure_logging
from axolotl.utils.dict import DictDefault
from axolotl.utils.models import load_model, load_processor, load_tokenizer
configure_logging()
LOG = logging.getLogger(__name__)

View File

@@ -11,5 +11,6 @@ MOE_ARCH_BLOCK = {
],
"mixtral": "MixtralSparseMoeBlock",
"qwen2_moe": "Qwen2MoeSparseMoeBlock",
"qwen3_moe": "Qwen3MoeSparseMoeBlock",
"deepseek_v2": "DeepseekV2MoE",
}

View File

@@ -47,7 +47,8 @@ def sample_dataset(dataset: Dataset, num_samples: int) -> Dataset:
def load_datasets(
*,
cfg: DictDefault,
cli_args: Union[PreprocessCliArgs, TrainerCliArgs],
cli_args: PreprocessCliArgs | TrainerCliArgs | None = None,
debug: bool = False,
) -> TrainDatasetMeta:
"""
Loads one or more training or evaluation datasets, calling
@@ -56,6 +57,7 @@ def load_datasets(
Args:
cfg: Dictionary mapping `axolotl` config keys to values.
cli_args: Command-specific CLI arguments.
debug: Whether to print out tokenization of sample
Returns:
Dataclass with fields for training and evaluation datasets and the computed
@@ -64,7 +66,8 @@ def load_datasets(
tokenizer = load_tokenizer(cfg)
processor = load_processor(cfg, tokenizer=tokenizer) if cfg.processor_type else None
preprocess_iterable = (
hasattr(cli_args, "iterable")
cli_args
and hasattr(cli_args, "iterable")
and cli_args.iterable is not None
and cli_args.iterable
)
@@ -76,20 +79,25 @@ def load_datasets(
preprocess_iterable=preprocess_iterable,
)
if (
cli_args.debug
or cfg.debug
or cli_args.debug_text_only
or int(cli_args.debug_num_examples) > 0
):
if ( # pylint: disable=too-many-boolean-expressions
cli_args
and (
cli_args.debug
or cfg.debug
or cli_args.debug_text_only
or int(cli_args.debug_num_examples) > 0
)
) or debug:
LOG.info("check_dataset_labels...")
train_samples = sample_dataset(train_dataset, cli_args.debug_num_examples)
num_examples = cli_args.debug_num_examples if cli_args else 1
text_only = cli_args.debug_text_only if cli_args else False
train_samples = sample_dataset(train_dataset, num_examples)
check_dataset_labels(
train_samples,
tokenizer,
num_examples=cli_args.debug_num_examples,
text_only=cli_args.debug_text_only,
num_examples=num_examples,
text_only=text_only,
)
LOG.info("printing prompters...")

File diff suppressed because it is too large Load Diff

View File

@@ -114,6 +114,8 @@ class AxolotlTrainer(
packing_efficiency_estimate=self.args.sample_packing_efficiency,
batch_max_len=batch_max_len,
batch_size=batch_size,
group_size=self.args.sample_packing_group_size,
bin_size=self.args.sample_packing_bin_size,
sequential=self.args.sample_packing_sequentially,
drop_last=True,
)

View File

@@ -0,0 +1,21 @@
# Copyright 2024 Axolotl AI. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Init for axolotl.core.trainers.builders"""
# pylint: disable=unused-import
# flake8: noqa
from .causal import HFCausalTrainerBuilder
from .rl import HFRLTrainerBuilder

View File

@@ -0,0 +1,331 @@
"""Base class trainer / training args builder implementation"""
import abc
from typing import Any
from torch import Type
from transformers import TrainerCallback
from transformers.training_args import TrainingArguments
from axolotl.integrations.base import PluginManager
from axolotl.monkeypatch.trainer.lr import patch_trainer_get_lr
from axolotl.utils import is_comet_available, is_mlflow_available
from axolotl.utils.callbacks import GCCallback, SaveAxolotlConfigtoWandBCallback
from axolotl.utils.callbacks.profiler import PytorchProfilerCallback
PLUGIN_MANAGER = PluginManager.get_instance()
class TrainerBuilderBase(abc.ABC):
"""Base class for trainer builder."""
_train_dataset = None
_eval_dataset = None
_model_ref = None
_peft_config = None
def __init__(self, cfg, model, tokenizer, processor=None):
self.cfg = cfg
self.model = model
self.tokenizer = tokenizer
self.processor = processor
# If the model supports tagging, add the axolotl tag.
# This makes sure the tag is correctly pushed even if a user calls
# model.push_to_hub instead of trainer.push_to_hub.
if hasattr(model, "add_model_tags"):
model.add_model_tags(["axolotl"])
patch_trainer_get_lr()
@property
def model_ref(self):
return self._model_ref
@model_ref.setter
def model_ref(self, model):
self._model_ref = model
@property
def train_dataset(self):
return self._train_dataset
@train_dataset.setter
def train_dataset(self, dataset):
self._train_dataset = dataset
@property
def eval_dataset(self):
return self._eval_dataset
@eval_dataset.setter
def eval_dataset(self, dataset):
self._eval_dataset = dataset
@property
def peft_config(self):
return self._peft_config
@peft_config.setter
def peft_config(self, peft_config):
self._peft_config = peft_config
@abc.abstractmethod
def build(self, total_num_steps):
pass
def get_common_training_args_kwargs(
self, total_num_steps: int | None = None
) -> dict[str, Any]:
"""Get common training arguments kwargs used across different trainer types."""
training_args_kwargs = {}
# Common parameters
for arg in [
"adam_beta1",
"adam_beta2",
"adam_epsilon",
"max_grad_norm",
"dataloader_num_workers",
"dataloader_pin_memory",
"dataloader_prefetch_factor",
"dataloader_drop_last",
"remove_unused_columns",
]:
if hasattr(self.cfg, arg) and getattr(self.cfg, arg) is not None:
training_args_kwargs[arg] = getattr(self.cfg, arg)
# Add Hub integration arguments if needed
if self.cfg.hub_model_id:
training_args_kwargs["hub_model_id"] = self.cfg.hub_model_id
training_args_kwargs["push_to_hub"] = True
training_args_kwargs["hub_private_repo"] = True
training_args_kwargs["hub_always_push"] = True
if self.cfg.hub_strategy:
training_args_kwargs["hub_strategy"] = self.cfg.hub_strategy
# BF16/FP16 settings
if hasattr(self.cfg, "bf16") and self.cfg.bf16:
if self.cfg.bf16 == "full":
training_args_kwargs["bf16_full_eval"] = True
else:
training_args_kwargs["bf16"] = self.cfg.bf16
elif hasattr(self.cfg, "bfloat16") and self.cfg.bfloat16:
training_args_kwargs["bf16"] = True
if hasattr(self.cfg, "fp16"):
training_args_kwargs["fp16"] = (
getattr(self.cfg, "fp16", False)
and not getattr(self.cfg, "bf16", False)
) or False
# Set save_strategy and save_steps
if self.cfg.save_steps:
training_args_kwargs["save_strategy"] = "steps"
training_args_kwargs["save_steps"] = self.cfg.save_steps
elif self.cfg.save_strategy:
training_args_kwargs["save_strategy"] = self.cfg.save_strategy
else:
# default to saving each epoch if not defined
training_args_kwargs["save_strategy"] = "epoch"
# Handle safetensors
if self.cfg.save_safetensors is not None:
training_args_kwargs["save_safetensors"] = self.cfg.save_safetensors
# Handle gradient checkpointing
if self.cfg.gradient_checkpointing:
training_args_kwargs["gradient_checkpointing"] = (
self.cfg.gradient_checkpointing
)
if self.cfg.gradient_checkpointing_kwargs is not None:
training_args_kwargs["gradient_checkpointing_kwargs"] = (
self.cfg.gradient_checkpointing_kwargs
)
# Common optimizer and LR scheduler settings
training_args_kwargs["optim"] = self.cfg.optimizer
if hasattr(self.cfg, "lr_scheduler") and self.cfg.lr_scheduler:
training_args_kwargs["lr_scheduler_type"] = self.cfg.lr_scheduler
else:
training_args_kwargs["lr_scheduler_type"] = "cosine"
if hasattr(self.cfg, "lr_scheduler_kwargs") and self.cfg.lr_scheduler_kwargs:
training_args_kwargs["lr_scheduler_kwargs"] = self.cfg.lr_scheduler_kwargs
else:
training_args_kwargs["lr_scheduler_kwargs"] = {}
# LoRA+ specific settings
if hasattr(self.cfg, "loraplus_lr_ratio"):
training_args_kwargs["loraplus_lr_ratio"] = self.cfg.loraplus_lr_ratio
if hasattr(self.cfg, "loraplus_lr_embedding"):
training_args_kwargs["loraplus_lr_embedding"] = (
self.cfg.loraplus_lr_embedding
)
# Reporting tools
report_to = []
if self.cfg.use_wandb:
report_to.append("wandb")
if self.cfg.wandb_name:
training_args_kwargs["run_name"] = self.cfg.wandb_name
if self.cfg.use_mlflow:
report_to.append("mlflow")
if self.cfg.use_tensorboard:
report_to.append("tensorboard")
if self.cfg.use_comet:
report_to.append("comet_ml")
if report_to:
training_args_kwargs["report_to"] = report_to
# Basic training settings
if hasattr(self.cfg, "sequence_len"):
training_args_kwargs["max_length"] = self.cfg.sequence_len
training_args_kwargs["save_only_model"] = getattr(
self.cfg, "save_only_model", False
)
training_args_kwargs["save_total_limit"] = getattr(
self.cfg, "save_total_limit", 5
)
# Compute warmup steps
if hasattr(self.cfg, "warmup_steps") and self.cfg.warmup_steps is not None:
training_args_kwargs["warmup_steps"] = self.cfg.warmup_steps
elif (
total_num_steps
and hasattr(self.cfg, "warmup_ratio")
and self.cfg.warmup_ratio is not None
):
training_args_kwargs["warmup_steps"] = max(
int(self.cfg.warmup_ratio * total_num_steps), 0
)
elif total_num_steps:
training_args_kwargs["warmup_steps"] = min(int(0.03 * total_num_steps), 100)
return training_args_kwargs
def create_training_args(
self,
args_cls: Type[TrainingArguments],
total_num_steps: int | None = None,
**additional_kwargs,
) -> TrainingArguments:
"""Create training arguments with common logic."""
# Get common trainings args and update with trainer-specific args
training_args_kwargs = self.get_common_training_args_kwargs(total_num_steps)
training_args_kwargs.update(additional_kwargs)
# Create training args with pre- and post-creation hooks
training_args_kwargs = self.hook_pre_create_training_args(training_args_kwargs)
training_args = args_cls(**training_args_kwargs)
training_args = self.hook_post_create_training_args(training_args)
# Unset run_name so wandb sets up experiment names properly
if self.cfg.use_wandb and training_args.run_name == training_args.output_dir:
training_args.run_name = None
return training_args
def create_trainer(
self, trainer_cls, training_args, trainer_args=None, trainer_kwargs=None
):
"""Create trainer with common logic."""
if trainer_args is None:
trainer_args = []
if trainer_kwargs is None:
trainer_kwargs = {}
# Create trainer with pre- and post- creation hooks
trainer_kwargs, trainer_cls = self.hook_pre_create_trainer(
trainer_kwargs, trainer_cls
)
trainer = trainer_cls(
*trainer_args,
args=training_args,
train_dataset=self.train_dataset,
eval_dataset=self.eval_dataset,
callbacks=self.get_callbacks(),
**trainer_kwargs,
)
trainer = self.hook_post_create_trainer(trainer)
# Add post-creation callbacks
for callback in self.get_post_trainer_create_callbacks(trainer):
trainer.add_callback(callback)
return trainer
def get_callbacks(self) -> list[TrainerCallback]:
callbacks = []
callbacks.extend(
PLUGIN_MANAGER.add_callbacks_pre_trainer(cfg=self.cfg, model=self.model)
)
if self.cfg.profiler_steps:
callbacks.append(
PytorchProfilerCallback(
steps_to_profile=self.cfg.profiler_steps,
)
)
if self.cfg.gc_steps:
callbacks.append(GCCallback(gc_steps=self.cfg.gc_steps))
if self.cfg.use_wandb:
callbacks.append(
SaveAxolotlConfigtoWandBCallback(self.cfg.axolotl_config_path)
)
if self.cfg.use_mlflow and is_mlflow_available():
from axolotl.utils.callbacks.mlflow_ import (
SaveAxolotlConfigtoMlflowCallback,
)
callbacks.extend(
[
SaveAxolotlConfigtoMlflowCallback(self.cfg.axolotl_config_path),
]
)
if self.cfg.use_comet and is_comet_available():
from axolotl.utils.callbacks.comet_ import SaveAxolotlConfigtoCometCallback
callbacks.append(
SaveAxolotlConfigtoCometCallback(self.cfg.axolotl_config_path)
)
return callbacks
def get_post_trainer_create_callbacks(self, trainer):
"""Callbacks added after the trainer is created, usually because these need
access to the trainer.
"""
callbacks = []
if self.cfg.plugins:
callbacks.extend(
[
cb
for cb in PLUGIN_MANAGER.add_callbacks_post_trainer(
self.cfg, trainer
)
if cb
]
)
return callbacks
def hook_pre_create_training_args(self, training_arguments_kwargs):
# TODO
return training_arguments_kwargs
def hook_post_create_training_args(self, training_arguments):
# TODO
return training_arguments
def hook_pre_create_trainer(self, trainer_kwargs, trainer_cls):
# TODO
return trainer_kwargs, trainer_cls
def hook_post_create_trainer(self, trainer):
# TODO
return trainer

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@@ -0,0 +1,619 @@
"""Causal trainer / training args builder implementation"""
import importlib
import inspect
import logging
import math
import os
import sys
from pathlib import Path
from typing import Type
import transformers
from transformers import (
DataCollatorWithFlattening,
EarlyStoppingCallback,
)
from transformers.training_args import OptimizerNames
from trl.trainer.utils import RewardDataCollatorWithPadding
from axolotl.core.trainers.base import AxolotlTrainer
from axolotl.core.trainers.builders.base import TrainerBuilderBase
from axolotl.core.trainers.mamba import AxolotlMambaTrainer
from axolotl.core.trainers.relora import ReLoRATrainer
from axolotl.core.trainers.trl import AxolotlPRMTrainer, AxolotlRewardTrainer
from axolotl.core.training_args import (
AxolotlPRMConfig,
AxolotlRewardConfig,
AxolotlTrainingArguments,
)
from axolotl.integrations.base import PluginManager
from axolotl.monkeypatch.multipack import SUPPORTED_MULTIPACK_MODEL_TYPES
from axolotl.monkeypatch.relora import ReLoRACallback
from axolotl.processing_strategies import get_processing_strategy
from axolotl.utils import is_comet_available, is_mlflow_available
from axolotl.utils.callbacks import (
EvalFirstStepCallback,
GPUStatsCallback,
LossWatchDogCallback,
SaveBetterTransformerModelCallback,
bench_eval_callback_factory,
causal_lm_bench_eval_callback_factory,
colab_inference_post_train_callback,
log_prediction_callback_factory,
)
from axolotl.utils.callbacks.lisa import lisa_callback_factory
from axolotl.utils.chat_templates import get_chat_template_from_config
from axolotl.utils.collators.batching import (
BatchSamplerDataCollatorForSeq2Seq,
DataCollatorForSeq2Seq,
V2BatchSamplerDataCollatorForSeq2Seq,
)
from axolotl.utils.collators.mamba import MambaDataCollator
from axolotl.utils.collators.mm_chat import MultiModalChatDataCollator
from axolotl.utils.schemas.enums import CustomSupportedOptimizers
LOG = logging.getLogger(__name__)
PLUGIN_MANAGER = PluginManager.get_instance()
class HFCausalTrainerBuilder(TrainerBuilderBase):
"""Build the HuggingFace training args / trainer for causal models and reward
modeling using TRL.
"""
def get_callbacks(self):
callbacks = super().get_callbacks()
callbacks.append(GPUStatsCallback(self.cfg))
callbacks.append(EvalFirstStepCallback())
if self.cfg.relora_steps:
callbacks.append(ReLoRACallback(self.cfg))
if (
hasattr(self.model, "use_bettertransformer")
and self.model.use_bettertransformer is True
):
callbacks.append(SaveBetterTransformerModelCallback())
if self.cfg.loss_watchdog_threshold is not None:
callbacks.append(LossWatchDogCallback(self.cfg))
return callbacks
def get_post_trainer_create_callbacks(self, trainer):
callbacks = []
if self.cfg.use_wandb and self.cfg.eval_table_size > 0:
LogPredictionCallback = log_prediction_callback_factory(
trainer, self.tokenizer, "wandb"
)
callbacks.append(LogPredictionCallback(self.cfg))
if (
self.cfg.use_mlflow
and is_mlflow_available()
and self.cfg.eval_table_size > 0
):
LogPredictionCallback = log_prediction_callback_factory(
trainer, self.tokenizer, "mlflow"
)
callbacks.append(LogPredictionCallback(self.cfg))
if self.cfg.use_comet and is_comet_available() and self.cfg.eval_table_size > 0:
LogPredictionCallback = log_prediction_callback_factory(
trainer, self.tokenizer, "comet_ml"
)
callbacks.append(LogPredictionCallback(self.cfg))
if self.cfg.do_bench_eval:
callbacks.append(bench_eval_callback_factory(trainer, self.tokenizer))
if self.cfg.do_causal_lm_eval:
CausalLMBenchEvalCallback = causal_lm_bench_eval_callback_factory(
trainer, self.tokenizer
)
callbacks.append(CausalLMBenchEvalCallback(self.cfg))
if self.cfg.early_stopping_patience:
early_stop_cb = EarlyStoppingCallback(
self.cfg.early_stopping_patience,
)
callbacks.append(early_stop_cb)
if self.cfg.lisa_step_interval and self.cfg.lisa_n_layers:
callbacks.append(lisa_callback_factory(trainer))
if any("COLAB_" in key for key in os.environ):
ColabCallback = colab_inference_post_train_callback(trainer)
callbacks.append(ColabCallback(self.cfg))
callbacks.extend(super().get_post_trainer_create_callbacks(trainer=trainer))
return callbacks
def _get_trainer_cls(self):
if self.cfg.plugins:
trainer_cls = PLUGIN_MANAGER.get_trainer_cls(self.cfg)
if trainer_cls:
return trainer_cls
if self.cfg.relora_steps:
return ReLoRATrainer
if self.cfg.model_config_type == "mamba":
return AxolotlMambaTrainer
if self.cfg.reward_model:
return AxolotlRewardTrainer
if self.cfg.process_reward_model:
return AxolotlPRMTrainer
return AxolotlTrainer
def build(self, total_num_steps):
"""Build and return a causal trainer instance using the refactored base class."""
# Get trainer class
trainer_cls = self._get_trainer_cls()
# Prepare training arguments
training_args = self._prepare_training_args(total_num_steps)
# Prepare data collators
data_collator_kwargs = self._prepare_data_collator_kwargs()
# Prepare trainer kwargs
trainer_kwargs = self._prepare_trainer_kwargs(
trainer_cls=trainer_cls,
data_collator_kwargs=data_collator_kwargs,
training_args=training_args,
)
# Create the trainer
trainer = self.create_trainer(
trainer_cls=trainer_cls,
training_args=training_args,
trainer_kwargs={
"model": self.model,
"data_collator": self.build_collator(
training_args, **data_collator_kwargs
),
**trainer_kwargs,
},
)
# Handle DeepSpeed config for sample packing if needed
if self.cfg.deepspeed and self.cfg.sample_packing:
trainer.accelerator.state.deepspeed_plugin.deepspeed_config[
"train_micro_batch_size_per_gpu"
] = self.cfg.micro_batch_size
return trainer
def _prepare_training_args(self, total_num_steps):
"""Prepare and return training arguments."""
# Base training arguments
training_args_kwargs = self._get_base_training_args()
# Add feature configurations
self._add_feature_configs(training_args_kwargs)
# Handle optimizer configuration
self._configure_optimizer(training_args_kwargs)
# Create training args using the base class method
training_args_cls = self._get_training_args_cls()
return self.create_training_args(
args_cls=training_args_cls,
total_num_steps=total_num_steps,
**training_args_kwargs,
)
def _get_base_training_args(self):
"""Return the base training arguments."""
return {
"max_steps": self.cfg.max_steps if self.cfg.max_steps else -1,
"max_seq_length": self.cfg.sequence_len,
"per_device_train_batch_size": self.cfg.micro_batch_size,
"gradient_accumulation_steps": self.cfg.gradient_accumulation_steps,
"eval_accumulation_steps": self.cfg.gradient_accumulation_steps,
"num_train_epochs": self.cfg.num_epochs,
"learning_rate": self.cfg.learning_rate,
"output_dir": self.cfg.output_dir,
"weight_decay": (
self.cfg.weight_decay if self.cfg.weight_decay is not None else 0.0
),
"model_type": self.cfg.model_config_type,
"pretraining": bool(self.cfg.pretraining_dataset),
"sequence_parallel_degree": self.cfg.sequence_parallel_degree,
"ring_attn_func": self.cfg.ring_attn_func,
"embedding_lr": self.cfg.embedding_lr,
"embedding_lr_scale": self.cfg.embedding_lr_scale,
"loraplus_lr_ratio": self.cfg.loraplus_lr_ratio,
"loraplus_lr_embedding": self.cfg.loraplus_lr_embedding,
"lr_groups": self.cfg.lr_groups,
}
def _add_feature_configs(self, training_args_kwargs):
"""Add various feature configurations."""
# Sample packing configurations
self._add_sample_packing_configs(training_args_kwargs)
# Batch size configurations
if self.cfg.eval_batch_size:
training_args_kwargs["per_device_eval_batch_size"] = (
self.cfg.eval_batch_size
)
if self.cfg.auto_find_batch_size is not None:
training_args_kwargs["auto_find_batch_size"] = self.cfg.auto_find_batch_size
# Advanced training techniques (ReLoRA & Lisa)
self._add_advanced_training_configs(training_args_kwargs)
# Model-specific configurations
self._add_model_specific_configs(training_args_kwargs)
def _add_sample_packing_configs(self, training_args_kwargs):
"""Add sample packing configurations if applicable."""
if hasattr(self.cfg, "sample_packing") and self.cfg.sample_packing:
training_args_kwargs.update(
{
"sample_packing": bool(self.cfg.sample_packing),
"multipack_real_batches": not self.cfg.flash_attention
or self.cfg.multipack_real_batches,
"eval_sample_packing": bool(self.cfg.eval_sample_packing),
}
)
if self.cfg.sample_packing_bin_size is not None:
training_args_kwargs["sample_packing_bin_size"] = (
self.cfg.sample_packing_bin_size
)
if self.cfg.sample_packing_group_size is not None:
training_args_kwargs["sample_packing_group_size"] = (
self.cfg.sample_packing_group_size
)
if self.cfg.sample_packing_eff_est:
training_args_kwargs["sample_packing_efficiency"] = (
self.cfg.sample_packing_eff_est
)
def _add_advanced_training_configs(self, training_args_kwargs):
"""Add advanced training techniques configurations (ReLoRA & Lisa)."""
# ReLoRA configurations
if self.cfg.relora_steps:
training_args_kwargs.update(
{
"relora_steps": self.cfg.relora_steps,
"relora_warmup_steps": self.cfg.relora_warmup_steps,
}
)
if self.cfg.relora_anneal_steps:
training_args_kwargs["relora_anneal_steps"] = (
self.cfg.relora_anneal_steps
)
if self.cfg.relora_prune_ratio:
training_args_kwargs["relora_prune_ratio"] = self.cfg.relora_prune_ratio
# Lisa configurations
if self.cfg.lisa_step_interval and self.cfg.lisa_n_layers:
training_args_kwargs.update(
{
"lisa_n_layers": self.cfg.lisa_n_layers,
"lisa_step_interval": self.cfg.lisa_step_interval,
"lisa_layers_attribute": self.cfg.lisa_layers_attribute,
}
)
def _add_model_specific_configs(self, training_args_kwargs):
"""Add model-specific configurations."""
# Chat template
if self.cfg.chat_template:
training_args_kwargs["chat_template"] = get_chat_template_from_config(
cfg=self.cfg,
tokenizer=self.tokenizer,
)
# NEFTune
if self.cfg.neftune_noise_alpha is not None:
training_args_kwargs["neftune_noise_alpha"] = self.cfg.neftune_noise_alpha
# Knowledge distillation configurations
if self.cfg.kd_ce_alpha is not None:
training_args_kwargs["kd_ce_alpha"] = self.cfg.kd_ce_alpha
if self.cfg.kd_alpha is not None:
training_args_kwargs["kd_alpha"] = self.cfg.kd_alpha
if self.cfg.kd_temperature is not None:
training_args_kwargs["kd_temperature"] = self.cfg.kd_temperature
if self.cfg.kd_zscore_base_temp is not None:
training_args_kwargs["kd_zscore_base_temp"] = self.cfg.kd_zscore_base_temp
if self.cfg.kd_top_k_before_softmax is not None:
training_args_kwargs["kd_top_k_before_softmax"] = (
self.cfg.kd_top_k_before_softmax
)
# Image configurations
if self.cfg.image_size:
training_args_kwargs["image_size"] = self.cfg.image_size
if self.cfg.image_resize_algorithm:
training_args_kwargs["image_resize_algorithm"] = (
self.cfg.image_resize_algorithm
)
# Accelerator configuration
if self.cfg.accelerator_config:
training_args_kwargs["accelerator_config"] = self.cfg.accelerator_config
def _configure_optimizer(self, training_args_kwargs):
"""Configure optimizer settings."""
custom_supported_optimizers = [opt.value for opt in CustomSupportedOptimizers]
if self.cfg.optimizer in custom_supported_optimizers:
# Use custom optimizer implementation
self._configure_custom_optimizer(training_args_kwargs)
else:
# Use transformers' optimizer
training_args_kwargs["optim"] = self.cfg.optimizer
self._add_optimizer_args(training_args_kwargs)
# Handle optimizer targeting specific modules
if self.cfg.optim_target_modules:
training_args_kwargs["optim_target_modules"] = self.cfg.optim_target_modules
# Special case for anyprecision optimizer
if self.cfg.optimizer == "adamw_anyprecision":
if Path(self.cfg.torchdistx_path).exists():
sys.path.append(self.cfg.torchdistx_path)
importlib.import_module("torchdistx")
def _configure_custom_optimizer(self, training_args_kwargs):
"""Configure custom optimizer settings."""
# Common optimizer kwargs
optimizer_kwargs = {
"lr": training_args_kwargs.get("learning_rate"),
"weight_decay": training_args_kwargs.get("weight_decay"),
}
# Add Adam-specific kwargs if available
adam_kwargs = self._get_adam_kwargs(training_args_kwargs)
# Get optimizer class and update kwargs based on optimizer type
optimizer_cls = self._get_optimizer_class(
training_args_kwargs, optimizer_kwargs, adam_kwargs
)
# Add any additional optimizer args from config
self._update_optimizer_kwargs_from_config(optimizer_kwargs)
training_args_kwargs["optimizer_cls_and_kwargs"] = (
optimizer_cls,
optimizer_kwargs,
)
def _get_adam_kwargs(self, training_args_kwargs):
"""Get Adam-specific kwargs if available."""
adam_kwargs = {}
if training_args_kwargs.get("adam_beta1") and training_args_kwargs.get(
"adam_beta2"
):
adam_kwargs["betas"] = (
training_args_kwargs.get("adam_beta1"),
training_args_kwargs.get("adam_beta2"),
)
if training_args_kwargs.get("adam_epsilon"):
adam_kwargs["eps"] = training_args_kwargs.get("adam_epsilon")
return adam_kwargs
def _get_optimizer_class(self, training_args_kwargs, optimizer_kwargs, adam_kwargs):
"""Get optimizer class based on configuration."""
if self.cfg.optimizer == "muon":
from axolotl.contribs.mit.muon import MuonOptimizerFactory # pylint: disable=no-name-in-module
optimizer_cls = MuonOptimizerFactory
optimizer_kwargs.update(adam_kwargs)
elif self.cfg.optimizer == "optimi_adamw":
from optimi import AdamW
optimizer_kwargs["foreach"] = False
optimizer_cls = AdamW
optimizer_kwargs.update(adam_kwargs)
elif self.cfg.optimizer == "ao_adamw_4bit":
from torchao.prototype.low_bit_optim import AdamW4bit
optimizer_cls = AdamW4bit
optimizer_kwargs.update(adam_kwargs)
LOG.warning(
f"`ao_adamw_4bit` will be deprecated soon. Please use `{OptimizerNames.ADAMW_TORCH_4BIT}` instead."
)
elif self.cfg.optimizer == "ao_adamw_8bit":
from torchao.prototype.low_bit_optim import AdamW8bit
optimizer_cls = AdamW8bit
optimizer_kwargs.update(adam_kwargs)
elif self.cfg.optimizer == "ao_adamw_fp8":
from torchao.prototype.low_bit_optim import AdamWFp8
optimizer_cls = AdamWFp8
optimizer_kwargs.update(adam_kwargs)
elif self.cfg.optimizer == "adopt_adamw":
from axolotl.utils.optimizers.adopt import ADOPT
optimizer_cls = ADOPT
adam_kwargs["decouple"] = True
optimizer_kwargs.update(adam_kwargs)
elif self.cfg.optimizer == "came_pytorch":
from came_pytorch import CAME
optimizer_cls = CAME
beta1 = training_args_kwargs.get("adam_beta1", 0.9)
beta2 = training_args_kwargs.get("adam_beta2", 0.999)
beta3 = training_args_kwargs.get("adam_beta2", 0.9999)
eps1 = training_args_kwargs.get("adam_epsilon", 1e-30)
eps2 = training_args_kwargs.get("adam_epsilon2", 1e-16)
adam_kwargs["betas"] = (beta1, beta2, beta3)
adam_kwargs["eps"] = (eps1, eps2)
optimizer_kwargs.update(adam_kwargs)
else:
# Default case or unsupported optimizer
optimizer_cls = None
return optimizer_cls
def _update_optimizer_kwargs_from_config(self, optimizer_kwargs):
"""Update optimizer kwargs from config."""
if self.cfg.optim_args:
if isinstance(self.cfg.optim_args, dict):
optimizer_kwargs.update(self.cfg.optim_args)
else:
# Parse string format "key1=value1,key2=value2"
for mapping in self.cfg.optim_args.replace(" ", "").split(","):
key, value = mapping.split("=")
optimizer_kwargs[key] = value
def _add_optimizer_args(self, training_args_kwargs):
"""Add optimizer arguments if available."""
if self.cfg.optim_args:
if isinstance(self.cfg.optim_args, dict):
optim_args = ",".join(
[f"{key}={value}" for key, value in self.cfg.optim_args.items()]
)
else:
optim_args = self.cfg.optim_args
training_args_kwargs["optim_args"] = optim_args
def _get_training_args_cls(self):
"""Get the appropriate training arguments class."""
if self.cfg.reward_model:
return AxolotlRewardConfig
if self.cfg.process_reward_model:
return AxolotlPRMConfig
return AxolotlTrainingArguments
def _prepare_data_collator_kwargs(self):
"""Prepare data collator kwargs."""
data_collator_kwargs = {"padding": True} # True/"longest" is the default
if self.cfg.pad_to_sequence_len:
data_collator_kwargs["pad_to_multiple_of"] = 64 * math.ceil(
self.cfg.sequence_len / 64
)
else:
data_collator_kwargs["pad_to_multiple_of"] = 64
if self.cfg.reward_model:
data_collator_kwargs["max_length"] = self.cfg.sequence_len
return data_collator_kwargs
def _prepare_trainer_kwargs(self, trainer_cls, data_collator_kwargs, training_args):
"""Prepare trainer kwargs."""
trainer_kwargs = {}
# Handle special data collators for evaluation
if eval_data_collator := self.build_collator(
training_args, is_eval=True, **data_collator_kwargs
):
if not (self.cfg.reward_model or self.cfg.process_reward_model):
trainer_kwargs["eval_data_collator"] = eval_data_collator
# Add bench data collator if needed
if not (self.cfg.reward_model or self.cfg.process_reward_model):
trainer_kwargs["bench_data_collator"] = transformers.DataCollatorForSeq2Seq(
self.tokenizer,
return_tensors="pt",
**data_collator_kwargs,
)
# Add tokenizer or processing class
sig = inspect.signature(trainer_cls)
if "processing_class" in sig.parameters.keys():
trainer_kwargs["processing_class"] = self.tokenizer
else:
trainer_kwargs["tokenizer"] = self.tokenizer
# Add dataset tags if available
if (
not (trainer_cls in [AxolotlRewardTrainer, AxolotlPRMTrainer])
and self.cfg.datasets is not None
):
trainer_kwargs["dataset_tags"] = [
d["path"] for d in self.cfg.datasets if not Path(d["path"]).is_dir()
]
return trainer_kwargs
def build_collator(
self, training_args: AxolotlTrainingArguments, is_eval=False, **kwargs
):
if training_args.pretraining:
if (
self.cfg.pretraining_sample_concatenation is False
or self.cfg.micro_batch_size > 1
):
return DataCollatorForSeq2Seq(self.tokenizer, **kwargs)
return None
if self.cfg.model_config_type == "mamba":
return MambaDataCollator(tokenizer=self.tokenizer)
use_batch_sampler_collator = False
if is_eval is False and training_args.sample_packing:
use_batch_sampler_collator = True
if is_eval and training_args.eval_sample_packing:
use_batch_sampler_collator = True
collator: Type[
V2BatchSamplerDataCollatorForSeq2Seq
| BatchSamplerDataCollatorForSeq2Seq
| DataCollatorForSeq2Seq
| DataCollatorWithFlattening
| RewardDataCollatorWithPadding
]
collator_args = [self.tokenizer]
if self.cfg.reward_model:
collator = RewardDataCollatorWithPadding
if "max_length" in kwargs:
kwargs.pop("max_length")
elif use_batch_sampler_collator:
if self.cfg.flex_attention:
collator = V2BatchSamplerDataCollatorForSeq2Seq
elif self.cfg.model_config_type in SUPPORTED_MULTIPACK_MODEL_TYPES:
collator = V2BatchSamplerDataCollatorForSeq2Seq
elif (
self.cfg.model_config_type in ["llama"]
and self.cfg.flash_attention is not True
):
collator = V2BatchSamplerDataCollatorForSeq2Seq
else:
collator = BatchSamplerDataCollatorForSeq2Seq
else:
if self.cfg.processor_type and self.processor:
collator = MultiModalChatDataCollator
kwargs["processing_strategy"] = get_processing_strategy(
self.processor,
training_args.chat_template,
self.cfg.chat_template,
image_size=training_args.image_size,
image_resize_algorithm=training_args.image_resize_algorithm,
)
elif self.cfg.batch_flattening:
collator = DataCollatorWithFlattening
collator_args.pop(0)
kwargs.pop("pad_to_multiple_of", None)
kwargs.pop("padding", None)
elif self.cfg.kd_trainer:
from axolotl.integrations.kd.collator import (
DataCollatorForKD,
KDBatchSamplerDataCollatorForSeq2Seq,
)
if self.cfg.sample_packing:
collator = KDBatchSamplerDataCollatorForSeq2Seq
else:
collator = DataCollatorForKD
else:
collator = DataCollatorForSeq2Seq
kwargs["return_tensors"] = "pt"
return collator(
*collator_args,
**kwargs,
)

View File

@@ -0,0 +1,367 @@
"""RL trainer / training args builder implementation"""
import inspect
from pathlib import Path
from axolotl.core.trainers.builders.base import TrainerBuilderBase
from axolotl.core.trainers.dpo import DPOStrategy
from axolotl.core.trainers.dpo.args import AxolotlDPOConfig
from axolotl.core.trainers.grpo import GRPOStrategy
from axolotl.core.trainers.trl import (
AxolotlCPOTrainer,
AxolotlKTOTrainer,
AxolotlORPOTrainer,
)
from axolotl.core.training_args import (
AxolotlCPOConfig,
AxolotlKTOConfig,
AxolotlORPOConfig,
)
from axolotl.utils.models import ensure_dtype
class HFRLTrainerBuilder(TrainerBuilderBase):
"""Trainer factory class for TRL-based RLHF trainers (e.g. DPO)"""
def get_callbacks(self):
callbacks = super().get_callbacks()
return callbacks
def get_post_trainer_create_callbacks(self, trainer):
callbacks = super().get_post_trainer_create_callbacks(trainer=trainer)
return callbacks
def build_training_arguments(self, total_num_steps):
training_args_kwargs = {}
for arg in [
"adam_beta1",
"adam_beta2",
"adam_epsilon",
"dataloader_num_workers",
"dataloader_pin_memory",
]:
if hasattr(self.cfg, arg) and getattr(self.cfg, arg) is not None:
training_args_kwargs[arg] = getattr(self.cfg, arg)
if self.cfg.hub_model_id:
training_args_kwargs["hub_model_id"] = self.cfg.hub_model_id
training_args_kwargs["push_to_hub"] = True
training_args_kwargs["hub_private_repo"] = True
training_args_kwargs["hub_always_push"] = True
if self.cfg.hub_strategy:
training_args_kwargs["hub_strategy"] = self.cfg.hub_strategy
if self.cfg.save_safetensors is not None:
training_args_kwargs["save_safetensors"] = self.cfg.save_safetensors
if self.eval_dataset:
training_args_kwargs["eval_strategy"] = "steps"
training_args_kwargs["eval_steps"] = self.cfg.eval_steps
else:
training_args_kwargs["eval_strategy"] = "no"
if self.cfg.bf16 or self.cfg.bfloat16:
training_args_kwargs["bf16"] = True
training_args_kwargs["loraplus_lr_ratio"] = self.cfg.loraplus_lr_ratio
training_args_kwargs["loraplus_lr_embedding"] = self.cfg.loraplus_lr_embedding
training_args_kwargs["lr_scheduler_type"] = (
self.cfg.lr_scheduler if self.cfg.lr_scheduler else "cosine"
)
training_args_kwargs["lr_scheduler_kwargs"] = (
self.cfg.lr_scheduler_kwargs if self.cfg.lr_scheduler_kwargs else {}
)
if self.cfg.remove_unused_columns is not None:
training_args_kwargs["remove_unused_columns"] = (
self.cfg.remove_unused_columns
)
else:
training_args_kwargs["remove_unused_columns"] = False
if self.cfg.dataloader_pin_memory is not None:
training_args_kwargs["dataloader_pin_memory"] = (
self.cfg.dataloader_pin_memory
)
if self.cfg.dataloader_num_workers is not None:
training_args_kwargs["dataloader_num_workers"] = (
self.cfg.dataloader_num_workers
)
if self.cfg.dataloader_prefetch_factor is not None:
training_args_kwargs["dataloader_prefetch_factor"] = (
self.cfg.dataloader_prefetch_factor
)
if self.cfg.gradient_checkpointing:
training_args_kwargs["gradient_checkpointing"] = (
self.cfg.gradient_checkpointing
)
if self.cfg.gradient_checkpointing_kwargs is not None:
training_args_kwargs["gradient_checkpointing_kwargs"] = (
self.cfg.gradient_checkpointing_kwargs
)
else:
training_args_kwargs["gradient_checkpointing_kwargs"] = {
"use_reentrant": False
}
# set save_strategy and save_steps
if self.cfg.save_steps:
training_args_kwargs["save_strategy"] = "steps"
training_args_kwargs["save_steps"] = self.cfg.save_steps
elif self.cfg.save_strategy:
training_args_kwargs["save_strategy"] = self.cfg.save_strategy
else:
# default to saving each epoch if not defined
training_args_kwargs["save_strategy"] = "epoch"
training_args_kwargs["save_only_model"] = self.cfg.save_only_model
if self.cfg.dataset_processes:
training_args_kwargs["dataset_num_proc"] = self.cfg.dataset_processes
if self.cfg.trl and self.cfg.trl.beta is not None:
training_args_kwargs["beta"] = self.cfg.trl.beta
elif self.cfg.rl_beta is not None:
training_args_kwargs["beta"] = self.cfg.rl_beta
elif self.cfg.orpo_alpha is not None:
# trl does some odd mapping of alpha to beta to reuse the beta parameter ???
training_args_kwargs["beta"] = self.cfg.orpo_alpha
if self.cfg.rpo_alpha is not None:
training_args_kwargs["rpo_alpha"] = self.cfg.rpo_alpha
if self.cfg.use_wandb:
training_args_kwargs["run_name"] = self.cfg.wandb_name
training_args_cls = None
blocklist_args_kwargs = []
if self.cfg.rl == "simpo":
training_args_cls = AxolotlCPOConfig
training_args_kwargs["loss_type"] = "simpo"
training_args_kwargs["max_length"] = self.cfg.sequence_len
training_args_kwargs["simpo_gamma"] = self.cfg.simpo_gamma
if self.cfg.cpo_alpha is not None:
training_args_kwargs["cpo_alpha"] = self.cfg.cpo_alpha
elif self.cfg.rl == "orpo":
training_args_cls = AxolotlORPOConfig
training_args_kwargs["max_length"] = self.cfg.sequence_len
if self.cfg.max_prompt_len:
training_args_kwargs["max_prompt_length"] = self.cfg.max_prompt_len
elif self.cfg.rl == "kto":
training_args_cls = AxolotlKTOConfig
training_args_kwargs["desirable_weight"] = (
self.cfg.kto_desirable_weight or 1.0
)
training_args_kwargs["undesirable_weight"] = (
self.cfg.kto_undesirable_weight or 1.0
)
training_args_kwargs["max_length"] = self.cfg.sequence_len
if self.cfg.max_prompt_len:
training_args_kwargs["max_prompt_length"] = self.cfg.max_prompt_len
elif self.cfg.rl == "grpo":
training_args_cls = GRPOStrategy.get_training_args_class()
training_args_kwargs.update(GRPOStrategy.set_training_args_kwargs(self.cfg))
blocklist_args_kwargs = GRPOStrategy.get_blocklist_args_kwargs()
else:
training_args_cls = AxolotlDPOConfig
if self.cfg.rl == "ipo":
training_args_kwargs["loss_type"] = "ipo"
training_args_kwargs["max_length"] = self.cfg.sequence_len
training_args_kwargs["max_completion_length"] = None
training_args_kwargs["max_prompt_length"] = self.cfg.sequence_len
training_args_kwargs["generate_during_eval"] = self.cfg.use_wandb
if self.cfg.dpo_use_weighting is not None:
training_args_kwargs["use_weighting"] = self.cfg.dpo_use_weighting
if self.cfg.dpo_use_logits_to_keep is not None:
training_args_kwargs["use_logits_to_keep"] = (
self.cfg.dpo_use_logits_to_keep
)
for blocklist_key in blocklist_args_kwargs:
if blocklist_key in training_args_kwargs:
del training_args_kwargs[blocklist_key]
max_steps = self.cfg.max_steps or total_num_steps or -1
training_args_kwargs["num_train_epochs"] = self.cfg.num_epochs
training_args = training_args_cls( # pylint: disable=unexpected-keyword-arg
self.cfg.output_dir,
per_device_train_batch_size=self.cfg.micro_batch_size,
max_steps=max_steps,
gradient_accumulation_steps=self.cfg.gradient_accumulation_steps,
learning_rate=self.cfg.learning_rate,
warmup_steps=self.cfg.warmup_steps,
logging_first_step=True,
logging_steps=1,
optim=self.cfg.optimizer,
save_total_limit=self.cfg.save_total_limit or 5,
**training_args_kwargs,
)
# unset run_name so wandb sets up experiment names
if self.cfg.use_wandb and training_args.run_name == training_args.output_dir:
training_args.run_name = ( # pylint: disable=attribute-defined-outside-init
None
)
return training_args
def build(self, total_num_steps):
"""Build and return an RL trainer instance"""
# Prepare RL-specific training args kwargs
training_args_kwargs = {
"per_device_train_batch_size": self.cfg.micro_batch_size,
"max_steps": self.cfg.max_steps or total_num_steps or -1,
"gradient_accumulation_steps": self.cfg.gradient_accumulation_steps,
"learning_rate": self.cfg.learning_rate,
"warmup_steps": self.cfg.warmup_steps,
"logging_first_step": True,
"logging_steps": 1,
"output_dir": self.cfg.output_dir,
"num_train_epochs": self.cfg.num_epochs,
}
# Handle dataset processes
if self.cfg.dataset_processes:
training_args_kwargs["dataset_num_proc"] = self.cfg.dataset_processes
# Handle beta/alpha parameters for different RL algorithms
if self.cfg.trl and self.cfg.trl.beta is not None:
training_args_kwargs["beta"] = self.cfg.trl.beta
elif self.cfg.rl_beta is not None:
training_args_kwargs["beta"] = self.cfg.rl_beta
elif self.cfg.orpo_alpha is not None:
# trl does some odd mapping of alpha to beta to reuse the beta parameter
training_args_kwargs["beta"] = self.cfg.orpo_alpha
if self.cfg.rpo_alpha is not None:
training_args_kwargs["rpo_alpha"] = self.cfg.rpo_alpha
# Determine training args class and add RL-specific parameters
training_args_cls = None
blocklist_args_kwargs = []
if self.cfg.rl == "simpo":
training_args_cls = AxolotlCPOConfig
training_args_kwargs["loss_type"] = "simpo"
training_args_kwargs["simpo_gamma"] = self.cfg.simpo_gamma
if self.cfg.cpo_alpha is not None:
training_args_kwargs["cpo_alpha"] = self.cfg.cpo_alpha
elif self.cfg.rl == "orpo":
training_args_cls = AxolotlORPOConfig
if self.cfg.max_prompt_len:
training_args_kwargs["max_prompt_length"] = self.cfg.max_prompt_len
elif self.cfg.rl == "kto":
training_args_cls = AxolotlKTOConfig
training_args_kwargs["desirable_weight"] = (
self.cfg.kto_desirable_weight or 1.0
)
training_args_kwargs["undesirable_weight"] = (
self.cfg.kto_undesirable_weight or 1.0
)
if self.cfg.max_prompt_len:
training_args_kwargs["max_prompt_length"] = self.cfg.max_prompt_len
elif self.cfg.rl == "grpo":
training_args_cls = GRPOStrategy.get_training_args_class()
training_args_kwargs.update(GRPOStrategy.set_training_args_kwargs(self.cfg))
blocklist_args_kwargs = GRPOStrategy.get_blocklist_args_kwargs()
else: # Default to DPO
training_args_cls = AxolotlDPOConfig
if self.cfg.rl == "ipo":
training_args_kwargs["loss_type"] = "ipo"
training_args_kwargs["max_prompt_length"] = self.cfg.sequence_len
training_args_kwargs["max_completion_length"] = None
training_args_kwargs["generate_during_eval"] = self.cfg.use_wandb
if self.cfg.dpo_use_weighting is not None:
training_args_kwargs["use_weighting"] = self.cfg.dpo_use_weighting
if self.cfg.dpo_use_logits_to_keep is not None:
training_args_kwargs["use_logits_to_keep"] = (
self.cfg.dpo_use_logits_to_keep
)
# Remove any blocklisted arguments
for blocklist_key in blocklist_args_kwargs:
if blocklist_key in training_args_kwargs:
del training_args_kwargs[blocklist_key]
# Create training args using the base class method
training_args = self.create_training_args(
args_cls=training_args_cls,
total_num_steps=total_num_steps,
**training_args_kwargs,
)
# Prepare trainer kwargs
trainer_kwargs = {}
if self.cfg.rl == "ipo" and self.cfg.dpo_label_smoothing:
trainer_kwargs["label_smoothing"] = self.cfg.dpo_label_smoothing
if self.eval_dataset:
trainer_kwargs["eval_dataset"] = self.eval_dataset
if self.cfg.adapter and self.peft_config:
trainer_kwargs["peft_config"] = self.peft_config
if self.cfg.precompute_ref_log_probs is not None:
trainer_kwargs["precompute_ref_log_probs"] = (
self.cfg.precompute_ref_log_probs
)
# Determine trainer class and arguments
if self.cfg.rl == "grpo":
trainer_cls = GRPOStrategy.get_trainer_class()
trainer_args = [self.model]
trainer_args.extend(GRPOStrategy.set_trainer_args(self.cfg))
trainer_kwargs.update(GRPOStrategy.set_trainer_kwargs(self.cfg))
elif self.cfg.rl in ["dpo", "ipo"]:
trainer_cls = DPOStrategy.get_trainer_class()
trainer_args = [self.model, self.model_ref]
elif self.cfg.rl == "orpo":
trainer_cls = AxolotlORPOTrainer
trainer_args = [self.model]
elif self.cfg.rl in ["kto"]:
trainer_cls = AxolotlKTOTrainer
trainer_args = [self.model]
elif self.cfg.rl in ["simpo"]:
trainer_cls = AxolotlCPOTrainer
trainer_args = [self.model]
else:
raise ValueError(f"Unsupported RL: {self.cfg.rl}")
# Add tokenizer or processing class
sig = inspect.signature(trainer_cls)
if "tokenizer" in sig.parameters.keys():
trainer_kwargs["tokenizer"] = self.tokenizer
else:
trainer_kwargs["processing_class"] = self.tokenizer
# Add dataset tags if available
if self.cfg.datasets is not None and (
trainer_cls is DPOStrategy.get_trainer_class()
):
trainer_kwargs["dataset_tags"] = [
d["path"] for d in self.cfg.datasets if not Path(d["path"]).is_dir()
]
# Create the trainer
trainer = self.create_trainer(
trainer_cls=trainer_cls,
training_args=training_args,
trainer_args=trainer_args,
trainer_kwargs=trainer_kwargs,
)
# Handle FSDP specific settings
if self.cfg.fsdp:
ensure_dtype(trainer.model, dtype=self.cfg.torch_dtype)
if (
self.cfg.rl in ["dpo", "ipo"]
and hasattr(trainer, "ref_model")
and trainer.ref_model
):
ensure_dtype(trainer.ref_model, dtype=self.cfg.torch_dtype)
return trainer

View File

@@ -3,15 +3,29 @@ DPO trainer for axolotl
"""
import gc
import random
from functools import wraps
from typing import Any, Dict, Union
from typing import Any, Dict, Optional, Union
import pandas as pd
import torch
import wandb
from accelerate import PartialState
from datasets import Dataset, IterableDataset
from peft.optimizers import create_loraplus_optimizer
from torch import nn
from transformers import Trainer
from torch.utils.data import DataLoader
from transformers import (
BaseImageProcessor,
FeatureExtractionMixin,
PreTrainedTokenizerBase,
ProcessorMixin,
Trainer,
)
from transformers.trainer_utils import EvalLoopOutput
from transformers.utils import is_sagemaker_mp_enabled
from trl import DPOTrainer
from trl import DPOConfig, DPOTrainer, maybe_apply_chat_template, maybe_extract_prompt
from trl.trainer.utils import log_table_to_comet_experiment
from axolotl.core.trainers.mixins import RngLoaderMixin, SchedulerMixin
from axolotl.core.trainers.utils import (
@@ -81,6 +95,64 @@ class AxolotlDPOTrainer(RngLoaderMixin, SchedulerMixin, DPOTrainer):
return super().push_to_hub(*args, **kwargs)
# TODO: remove this once https://github.com/huggingface/trl/pull/3377 is in a release
def _prepare_dataset(
self,
dataset: Union[Dataset, IterableDataset],
processing_class: Union[
PreTrainedTokenizerBase,
BaseImageProcessor,
FeatureExtractionMixin,
ProcessorMixin,
],
args: DPOConfig,
dataset_name: str,
) -> Union[Dataset, IterableDataset]:
# Build the kwargs for the `map` function
map_kwargs: Dict[str, Any] = {"writer_batch_size": 10}
if isinstance(dataset, Dataset): # IterableDataset does not support num_proc
map_kwargs["num_proc"] = args.dataset_num_proc
with PartialState().main_process_first():
# Extract prompt if needed
if isinstance(
dataset, Dataset
): # `IterableDataset.map` does not support `desc`
map_kwargs["desc"] = f"Extracting prompt in {dataset_name} dataset"
dataset = dataset.map(maybe_extract_prompt, **map_kwargs)
# Apply the chat template if needed
if isinstance(
dataset, Dataset
): # `IterableDataset.map` does not support `desc`
map_kwargs["desc"] = f"Applying chat template to {dataset_name} dataset"
dataset = dataset.map(
maybe_apply_chat_template,
fn_kwargs={"tokenizer": processing_class, "tools": args.tools},
**map_kwargs,
)
# Tokenize the dataset
if isinstance(
dataset, Dataset
): # `IterableDataset.map` does not support `desc`
map_kwargs["desc"] = f"Tokenizing {dataset_name} dataset"
dataset = dataset.map(
self.tokenize_row if not self.is_vision_model else self.process_row,
remove_columns=["chosen", "rejected"],
fn_kwargs={
"processing_class": processing_class,
"max_prompt_length": args.max_prompt_length,
"max_completion_length": args.max_completion_length,
# for enc-dec, we add the special tokens ([bos_token] + prompt + [eos_token]; completion + [eos_token])
"add_special_tokens": False,
},
**map_kwargs,
)
return dataset
@staticmethod
def tokenize_row(
features,
@@ -105,12 +177,8 @@ class AxolotlDPOTrainer(RngLoaderMixin, SchedulerMixin, DPOTrainer):
# dpo trainer may incorrectly prepend the bos_token_id to the dpo outputs
if res["chosen_input_ids"][0] == processing_class.bos_token_id:
res["chosen_input_ids"] = res["chosen_input_ids"][1:]
res["chosen_labels"] = res["chosen_labels"][1:]
res["chosen_attention_mask"] = res["chosen_attention_mask"][1:]
if res["rejected_input_ids"][0] == processing_class.bos_token_id:
res["rejected_input_ids"] = res["rejected_input_ids"][1:]
res["rejected_labels"] = res["rejected_labels"][1:]
res["rejected_attention_mask"] = res["rejected_attention_mask"][1:]
return res
@@ -124,3 +192,69 @@ class AxolotlDPOTrainer(RngLoaderMixin, SchedulerMixin, DPOTrainer):
gc.collect()
torch.cuda.empty_cache()
return loss
# TODO: remove this once https://github.com/huggingface/trl/pull/3377 is in a release
def evaluation_loop(
self,
dataloader: DataLoader,
description: str,
prediction_loss_only: Optional[bool] = None,
ignore_keys: Optional[list[str]] = None,
metric_key_prefix: str = "eval",
) -> EvalLoopOutput:
"""
Overriding built-in evaluation loop to store metrics for each batch.
Prediction/evaluation loop, shared by `Trainer.evaluate()` and `Trainer.predict()`.
Works both with or without labels.
"""
# Sample and save to game log if requested (for one batch to save time)
if self.generate_during_eval:
# Generate random indices within the range of the total number of samples
num_samples = len(dataloader.dataset)
random_indices = random.sample(
range(num_samples), k=self.args.eval_batch_size
)
# Use dataloader.dataset.select to get the random batch without iterating over the DataLoader
random_batch_dataset = dataloader.dataset.select(random_indices)
random_batch = self.data_collator(random_batch_dataset)
random_batch = self._prepare_inputs(random_batch)
policy_output_decoded, ref_output_decoded = (
self.generate_from_model_and_ref(self.model, random_batch)
)
table = pd.DataFrame(
columns=["Prompt", "Policy", "Ref Model"],
data=[
[prompt, pol[len(prompt) :], ref[len(prompt) :]]
for prompt, pol, ref in zip(
random_batch_dataset["prompt"],
policy_output_decoded,
ref_output_decoded,
)
],
)
if "wandb" in self.args.report_to and self.accelerator.is_main_process:
wandb.log({"game_log": wandb.Table(data=table)})
if "comet_ml" in self.args.report_to:
log_table_to_comet_experiment(
name="game_log.csv",
table=table,
)
# Base evaluation
initial_output = super( # pylint: disable=bad-super-call
DPOTrainer, self
).evaluation_loop(
dataloader,
description,
prediction_loss_only,
ignore_keys,
metric_key_prefix,
)
return initial_output

View File

@@ -63,6 +63,7 @@ class GRPOStrategy:
grpo_args_kwargs["max_completion_length"] = trl.max_completion_length
grpo_args_kwargs["log_completions"] = trl.log_completions
grpo_args_kwargs["num_completions_to_print"] = trl.num_completions_to_print
if trl.reward_weights:
grpo_args_kwargs["reward_weights"] = trl.reward_weights
@@ -70,6 +71,13 @@ class GRPOStrategy:
if trl.scale_rewards is not None:
grpo_args_kwargs["scale_rewards"] = trl.scale_rewards
if trl.loss_type is not None:
grpo_args_kwargs["loss_type"] = trl.loss_type
if trl.mask_truncated_completions is not None:
grpo_args_kwargs["mask_truncated_completions"] = (
trl.mask_truncated_completions
)
if trl.temperature is not None:
grpo_args_kwargs["temperature"] = trl.temperature
if trl.top_p is not None:
@@ -85,6 +93,11 @@ class GRPOStrategy:
grpo_args_kwargs["num_iterations"] = trl.num_iterations
if trl.epsilon is not None:
grpo_args_kwargs["epsilon"] = trl.epsilon
if trl.epsilon_high is not None:
grpo_args_kwargs["epsilon_high"] = trl.epsilon_high
if trl.use_liger_loss is not None:
grpo_args_kwargs["use_liger_loss"] = trl.use_liger_loss
return grpo_args_kwargs
@@ -135,7 +148,9 @@ class GRPOStrategy:
try:
# use importlib to dynamically load the reward function from the module
reward_func_module_name = reward_func_fqn.split(".")[-1]
reward_func_module = importlib.import_module(reward_func_fqn.split(".")[-2])
reward_func_module = importlib.import_module(
".".join(reward_func_fqn.split(".")[:-1])
)
reward_func = getattr(reward_func_module, reward_func_module_name)
if not len(inspect.signature(reward_func).parameters) >= 2:
raise ValueError(

View File

@@ -3,9 +3,10 @@
import logging
import torch
from torch.optim.lr_scheduler import OneCycleLR
from torch.optim.lr_scheduler import LRScheduler, OneCycleLR
from transformers.trainer import Trainer
from axolotl.integrations.base import PluginManager
from axolotl.utils.schedulers import (
RexLR,
get_cosine_schedule_with_min_lr,
@@ -25,9 +26,9 @@ class SchedulerMixin(Trainer):
def create_scheduler(
self, num_training_steps: int, optimizer: torch.optim.Optimizer = None
):
) -> LRScheduler:
"""
Setup the scheduler. The optimizer of the trainer must have been set up either before this method is called or
Set up the scheduler. The optimizer of the trainer must have been set up either before this method is called or
passed as an argument.
Args:
@@ -47,7 +48,16 @@ class SchedulerMixin(Trainer):
# fmt: off
if self.lr_scheduler is None: # type: ignore # pylint: disable=access-member-before-definition
# fmt: on
if self.args.alternate_lr_scheduler_type == "one_cycle":
plugin_manager = PluginManager.get_instance()
lr_scheduler: LRScheduler | None = plugin_manager.create_lr_scheduler(
trainer=self,
optimizer=optimizer,
num_training_steps=num_training_steps
)
if lr_scheduler is not None:
LOG.info(f"Using plugin-created lr_scheduler: {lr_scheduler}")
self.lr_scheduler = lr_scheduler
elif self.args.alternate_lr_scheduler_type == "one_cycle":
num_warmup_steps = self.args.get_warmup_steps(num_training_steps)
pct_start = num_warmup_steps / num_training_steps
extra_lr_kwargs = {}
@@ -110,4 +120,4 @@ class SchedulerMixin(Trainer):
if use_cosine_min_lr:
LOG.warning("axolotl's cosine scheduler with min lr not used (e.g., because of deepspeed).")
return self.lr_scheduler
return self.lr_scheduler # type: ignore

View File

@@ -1,6 +1,7 @@
"""Module for ReLoRA trainer"""
import torch
from torch.optim.lr_scheduler import LRScheduler
from axolotl.core.trainers.base import AxolotlTrainer
from axolotl.monkeypatch.relora import ReLoRAScheduler
@@ -19,9 +20,11 @@ class ReLoRATrainer(AxolotlTrainer):
self,
num_training_steps: int,
optimizer: torch.optim.Optimizer | None = None,
):
) -> LRScheduler:
optimizer = self.optimizer if optimizer is None else optimizer
lr_scheduler = super().create_scheduler(num_training_steps, optimizer)
lr_scheduler: LRScheduler = super().create_scheduler(
num_training_steps, optimizer
)
if self.args.relora_steps:
warmup_steps = (
@@ -30,7 +33,7 @@ class ReLoRATrainer(AxolotlTrainer):
anneal_steps = (
self.args.relora_anneal_steps if self.args.relora_anneal_steps else 1
)
self.lr_scheduler = ReLoRAScheduler(
self.lr_scheduler = ReLoRAScheduler( # type: ignore
optimizer,
lr_scheduler,
self.args.relora_steps,
@@ -38,6 +41,6 @@ class ReLoRATrainer(AxolotlTrainer):
warmup_steps,
)
else:
self.lr_scheduler = lr_scheduler
self.lr_scheduler = lr_scheduler # type: ignore
return self.lr_scheduler
return self.lr_scheduler # type: ignore

View File

@@ -11,20 +11,19 @@ from accelerate.logging import get_logger
from datasets import Dataset
from transformers.trainer import Trainer
from axolotl.logging_config import configure_logging
from axolotl.train import TrainDatasetMeta
from axolotl.utils import set_pytorch_cuda_alloc_conf
from axolotl.train import (
TrainDatasetMeta,
setup_model_and_tokenizer,
)
from axolotl.utils.dict import DictDefault
from axolotl.utils.distributed import cleanup_distributed
from axolotl.utils.models import load_model, load_processor, load_tokenizer
from axolotl.utils.trainer import setup_trainer
project_root = os.path.abspath(os.path.join(os.path.dirname(__file__), ".."))
src_dir = os.path.join(project_root, "src")
sys.path.insert(0, src_dir)
configure_logging()
LOG = get_logger("axolotl.evaluate")
LOG = get_logger(__name__)
def evaluate_dataset(
@@ -75,37 +74,22 @@ def evaluate(*, cfg: DictDefault, dataset_meta: TrainDatasetMeta) -> Dict[str, f
Returns:
Dictionary mapping metric names to their values.
"""
# pylint: disable=duplicate-code
# Enable expandable segments for cuda allocation to improve VRAM usage
set_pytorch_cuda_alloc_conf()
# Load tokenizer
LOG.debug(
f"loading tokenizer... {cfg.tokenizer_config or cfg.base_model_config}",
main_process_only=True,
)
tokenizer = load_tokenizer(cfg)
# Load processor for multimodal models if needed
processor = None
if cfg.is_multimodal:
processor = load_processor(cfg, tokenizer)
# Load tokenizer, processor and model
LOG.debug("loading model for evaluation...")
model, tokenizer, _, processor = setup_model_and_tokenizer(cfg)
# Get datasets
# pylint: disable=duplicate-code
train_dataset = dataset_meta.train_dataset
eval_dataset = dataset_meta.eval_dataset
total_num_steps = dataset_meta.total_num_steps
# Load model
LOG.debug("loading model for evaluation...")
model, _ = load_model(cfg, tokenizer, processor=processor)
# Set up trainer
trainer = setup_trainer(
cfg,
cfg=cfg,
train_dataset=train_dataset,
eval_dataset=eval_dataset,
model=(model, None, None), # No need for model_ref or peft_config
model=model,
tokenizer=tokenizer,
processor=processor,
total_num_steps=total_num_steps,

View File

@@ -24,6 +24,9 @@ import logging
from typing import OrderedDict
import torch
from torch.optim.lr_scheduler import LRScheduler
from axolotl.utils.dict import DictDefault
class BasePlugin:
@@ -35,12 +38,15 @@ class BasePlugin:
Methods:
register(cfg): Registers the plugin with the given configuration.
load_datasets(cfg): Loads and preprocesses the dataset for training.
pre_model_load(cfg): Performs actions before the model is loaded.
post_model_load(cfg, model): Performs actions after the model is loaded.
post_model_build(cfg, model): Performs actions after the model is loaded, but before LoRA adapters are applied.
pre_lora_load(cfg, model): Performs actions before LoRA weights are loaded.
post_lora_load(cfg, model): Performs actions after LoRA weights are loaded.
post_model_load(cfg, model): Performs actions after the model is loaded, inclusive of any adapters.
post_trainer_create(cfg, trainer): Performs actions after the trainer is created.
create_optimizer(cfg, trainer): Creates and returns an optimizer for training.
create_lr_scheduler(cfg, trainer, optimizer): Creates and returns a learning rate scheduler.
create_lr_scheduler(cfg, trainer, optimizer, num_training_steps): Creates and returns a learning rate scheduler.
add_callbacks_pre_trainer(cfg, model): Adds callbacks to the trainer before training.
add_callbacks_post_trainer(cfg, trainer): Adds callbacks to the trainer after training.
"""
@@ -61,106 +67,139 @@ class BasePlugin:
None
"""
def get_input_args(self):
def get_input_args(self) -> str | None:
"""
Returns a pydantic model for the plugin's input arguments.
"""
def load_datasets(self, cfg: DictDefault, preprocess: bool = False):
"""
Loads and preprocesses the dataset for training.
Args:
cfg: The configuration for the plugin.
preprocess: Whether this is the preprocess step of the datasets.
Returns:
dataset_meta: The metadata for the training dataset.
"""
def pre_model_load(self, cfg): # pylint: disable=unused-argument
"""
Performs actions before the model is loaded.
Parameters:
cfg (dict): The configuration for the plugin.
Args:
cfg (dict): The configuration for the plugin.
Returns:
None
None
"""
def post_model_build(self, cfg, model): # pylint: disable=unused-argument
"""
Performs actions after the model is built/loaded, but before any adapters are applied.
Args:
cfg (dict): The configuration for the plugin.
"""
def post_model_load(self, cfg, model): # pylint: disable=unused-argument
"""
Performs actions after the model is loaded.
Parameters:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Args:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Returns:
None
None
"""
def pre_lora_load(self, cfg, model): # pylint: disable=unused-argument
"""
Performs actions before LoRA weights are loaded.
Parameters:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Args:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Returns:
None
None
"""
def post_lora_load(self, cfg, model): # pylint: disable=unused-argument
"""
Performs actions after LoRA weights are loaded.
Parameters:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Args:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Returns:
None
None
"""
def get_trainer_cls(self, cfg): # pylint: disable=unused-argument):
"""
Returns a custom class for the trainer.
Parameters:
cfg (dict): The global axolotl configuration.
Args:
cfg (dict): The global axolotl configuration.
Returns:
class: The class for the trainer.
class: The class for the trainer.
"""
def post_trainer_create(self, cfg, trainer): # pylint: disable=unused-argument
"""
Performs actions after the trainer is created.
Args:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
Returns:
None
"""
def create_optimizer(self, cfg, trainer): # pylint: disable=unused-argument
"""
Creates and returns an optimizer for training.
Parameters:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
Args:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
Returns:
object: The created optimizer.
object: The created optimizer.
"""
def create_lr_scheduler(
self, cfg, trainer, optimizer
): # pylint: disable=unused-argument
self, cfg, trainer, optimizer, num_training_steps
) -> LRScheduler | None: # pylint: disable=unused-argument
"""
Creates and returns a learning rate scheduler.
Parameters:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
optimizer (object): The optimizer for training.
Args:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
optimizer (object): The optimizer for training.
num_training_steps (int): Total number of training steps
Returns:
object: The created learning rate scheduler.
object (LRScheduler): The created learning rate scheduler.
"""
def add_callbacks_pre_trainer(self, cfg, model): # pylint: disable=unused-argument
"""
setup callbacks before creating the trainer.
Parameters:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Args:
cfg (dict): The configuration for the plugin.
model (object): The loaded model.
Returns:
List[callable]: A list of callback functions to be added to the TrainingArgs
List[callable]: A list of callback functions to be added to the TrainingArgs
"""
return []
@@ -171,12 +210,12 @@ class BasePlugin:
Adds callbacks to the trainer after creating the trainer.
This is useful for callbacks that require access to the model or trainer.
Parameters:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
Args:
cfg (dict): The configuration for the plugin.
trainer (object): The trainer object for training.
Returns:
List[callable]: A list of callback functions to be added
List[callable]: A list of callback functions to be added
"""
return []
@@ -184,23 +223,23 @@ class BasePlugin:
"""
Performs actions after training is complete.
Parameters:
cfg (dict): The axolotl configuration
model (object): The loaded model.
Args:
cfg (dict): The axolotl configuration
model (object): The loaded model.
Returns:
None
None
"""
def post_train_unload(self, cfg): # pylint: disable=unused-argument
"""
Performs actions after training is complete and the model is unloaded.
Parameters:
cfg (dict): The configuration for the plugin.
Args:
cfg (dict): The configuration for the plugin.
Returns:
None
None
"""
@@ -261,6 +300,7 @@ class PluginManager:
plugins: OrderedDict[str, BasePlugin] = collections.OrderedDict()
_instance = None
_cfg = None
def __new__(cls):
"""
@@ -268,7 +308,9 @@ class PluginManager:
"""
if cls._instance is None:
cls._instance = super(PluginManager, cls).__new__(cls)
cls._instance.plugins = collections.OrderedDict()
cls._instance.plugins: OrderedDict[str, BasePlugin] = (
collections.OrderedDict()
)
return cls._instance
@staticmethod
@@ -281,6 +323,14 @@ class PluginManager:
PluginManager()
return PluginManager._instance # type: ignore
@property
def cfg(self):
return self._cfg
@cfg.setter
def cfg(self, cfg):
self._cfg = cfg
def register(self, plugin_name: str):
"""
Registers a new plugin by its name.
@@ -316,6 +366,27 @@ class PluginManager:
input_args.append(input_args_from_plugin)
return input_args
def load_datasets(self, cfg, preprocess: bool = False):
"""
Calls the load_datasets method of each registered plugin.
Args:
cfg: The configuration for the plugins.
preprocess : Whether this is preprocess step of the datasets.
Returns:
dataset_meta: The dataset metadata loaded from all registered plugins.
"""
return_ds_meta = None
for plugin in self.plugins.values():
dataset_meta = plugin.load_datasets(cfg, preprocess)
if dataset_meta is not None:
if return_ds_meta is None:
return_ds_meta = dataset_meta
else:
raise RuntimeError("Multiple plugins loaded datasets")
return return_ds_meta
def pre_model_load(self, cfg):
"""
Calls the pre_model_load method of all registered plugins.
@@ -329,9 +400,22 @@ class PluginManager:
for plugin in self.plugins.values():
plugin.pre_model_load(cfg)
def post_model_build(self, cfg, model):
"""
Calls the post_model_build method of all registered plugins after the model has been built/loaded,
but before any adapters have been applied.
Args:
cfg (dict): The configuration for the plugins.
model (object): The loaded model.
"""
for plugin in self.plugins.values():
plugin.post_model_build(cfg, model)
def post_model_load(self, cfg, model):
"""
Calls the post_model_load method of all registered plugins.
Calls the post_model_load method of all registered plugins after the model has been loaded
inclusive of any adapters
Parameters:
cfg (dict): The configuration for the plugins.
@@ -387,29 +471,43 @@ class PluginManager:
return trainer_cls
return None
def create_optimizer(self, cfg, trainer):
def post_trainer_create(self, cfg, trainer):
"""
Calls the create_optimizer method of all registered plugins and returns the first non-None optimizer.
Calls the post_trainer_create method of all registered plugins.
Parameters:
cfg (dict): The configuration for the plugins.
trainer (object): The trainer object for training.
Returns:
None
"""
for plugin in self.plugins.values():
plugin.post_trainer_create(cfg, trainer)
def create_optimizer(self, trainer):
"""
Calls the create_optimizer method of all registered plugins and returns the first non-None optimizer.
Parameters:
trainer (object): The trainer object for training.
Returns:
object: The created optimizer, or None if none was found.
"""
for plugin in self.plugins.values():
optimizer = plugin.create_optimizer(cfg, trainer)
optimizer = plugin.create_optimizer(self.cfg, trainer)
if optimizer is not None:
return optimizer
return None
def create_lr_scheduler(self, cfg, trainer, optimizer):
def create_lr_scheduler(
self, trainer, optimizer, num_training_steps
) -> LRScheduler | None:
"""
Calls the create_lr_scheduler method of all registered plugins and returns the first non-None scheduler.
Parameters:
cfg (dict): The configuration for the plugins.
trainer (object): The trainer object for training.
optimizer (object): The optimizer for training.
@@ -417,7 +515,12 @@ class PluginManager:
object: The created learning rate scheduler, or None if none was found.
"""
for plugin in self.plugins.values():
scheduler = plugin.create_lr_scheduler(cfg, trainer, optimizer)
scheduler: LRScheduler | None = plugin.create_lr_scheduler(
self.cfg,
trainer=trainer,
optimizer=optimizer,
num_training_steps=num_training_steps,
)
if scheduler is not None:
return scheduler
return None
@@ -458,6 +561,20 @@ class PluginManager:
callbacks.extend(plugin_callbacks)
return callbacks
def post_train(self, cfg, model):
"""
Calls the post_train method of all registered plugins.
Parameters:
cfg (dict): The configuration for the plugins.
model (object): The loaded model.
Returns:
None
"""
for plugin in self.plugins.values():
plugin.post_train(cfg, model)
def post_train_unload(self, cfg):
"""
Calls the post_train_unload method of all registered plugins.

View File

@@ -32,8 +32,8 @@ plugins:
## Supported Models
- llama
- llama4_text
- llama4
- llama4_text
- mllama
- phi3
- gemma
@@ -43,6 +43,11 @@ plugins:
- mistral
- mistral3
- qwen2
- qwen2_moe
- qwen2_vl
- qwen2_5_vl
- qwen3
- qwen3_moe
- cohere
- cohere2
- glm

View File

@@ -25,7 +25,7 @@ import torch
from axolotl.integrations.base import BasePlugin
from axolotl.utils import get_pytorch_version
from axolotl.utils.distributed import zero_only
from axolotl.utils.distributed import is_main_process
from .args import CutCrossEntropyArgs # pylint: disable=unused-import. # noqa: F401
@@ -76,7 +76,7 @@ class CutCrossEntropyPlugin(BasePlugin):
cce_patch,
)
with zero_only():
if is_main_process(use_environ=True):
LOG.info(
f"Applying Cut Cross Entropy to model type: {cfg.model_config_type}"
)

View File

@@ -0,0 +1,174 @@
"""Llama CCE patch. Adapted from transformers v4.51.2"""
# pylint: disable=duplicate-code
from types import MethodType
from typing import Optional, Union
import torch
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
apply_lce,
)
from transformers.cache_utils import Cache
from transformers.modeling_outputs import (
BaseModelOutputWithPast,
CausalLMOutputWithPast,
)
from transformers.models.llama.modeling_llama import (
_CONFIG_FOR_DOC,
LLAMA_INPUTS_DOCSTRING,
KwargsForCausalLM,
)
from transformers.processing_utils import Unpack
from transformers.utils import (
add_start_docstrings_to_model_forward,
replace_return_docstrings,
)
from transformers.utils.deprecation import deprecate_kwarg
from transformers.utils.generic import can_return_tuple
_PATCH_OPTS: PatchOptions | None = None
@can_return_tuple
@deprecate_kwarg("num_logits_to_keep", version="4.50", new_name="logits_to_keep")
@add_start_docstrings_to_model_forward(LLAMA_INPUTS_DOCSTRING)
@replace_return_docstrings(
output_type=CausalLMOutputWithPast, config_class=_CONFIG_FOR_DOC
)
def cce_forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[Cache] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**kwargs: Unpack[KwargsForCausalLM],
) -> CausalLMOutputWithPast:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
logits_to_keep (`int` or `torch.Tensor`, *optional*):
If an `int`, compute logits for the last `logits_to_keep` tokens. If `0`, calculate logits for all
`input_ids` (special case). Only last token logits are needed for generation, and calculating them only for that
token can save memory, which becomes pretty significant for long sequences or large vocabulary size.
If a `torch.Tensor`, must be 1D corresponding to the indices to keep in the sequence length dimension.
This is useful when using packed tensor format (single dimension for batch and sequence length).
Returns:
Example:
```python
>>> from transformers import AutoTokenizer, LlamaForCausalLM
>>> model = LlamaForCausalLM.from_pretrained("meta-llama/Llama-2-7b-hf")
>>> tokenizer = AutoTokenizer.from_pretrained("meta-llama/Llama-2-7b-hf")
>>> prompt = "Hey, are you conscious? Can you talk to me?"
>>> inputs = tokenizer(prompt, return_tensors="pt")
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
"Hey, are you conscious? Can you talk to me?\nI'm not conscious, but I can talk to you."
```"""
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs: BaseModelOutputWithPast = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
cache_position=cache_position,
**kwargs,
)
hidden_states = outputs.last_hidden_state
if hidden_states is None:
raise ValueError("hidden_states is None")
loss = None
logits = None
# Only compute necessary logits, and do not upcast them to float if we are not computing the loss
slice_indices = (
slice(-logits_to_keep, None)
if isinstance(logits_to_keep, int)
else logits_to_keep
)
if _PATCH_OPTS is not None and _PATCH_OPTS.use_lce(labels, self.training):
assert labels is not None
loss = apply_lce(
hidden_states[:, slice_indices, :],
self.lm_head.weight,
labels,
_PATCH_OPTS,
**kwargs,
)
else:
logits = self.lm_head(hidden_states[:, slice_indices, :])
if labels is not None:
loss = self.loss_function(
logits=logits,
labels=labels,
vocab_size=self.config.vocab_size,
**kwargs,
)
return CausalLMOutputWithPast(
loss=loss,
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
def patch_llama(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
"""Patch Llama for CCE."""
global _PATCH_OPTS # pylint: disable=global-statement
from transformers.models.llama import modeling_llama
_PATCH_OPTS = patch_options
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_llama.LlamaForCausalLM
), f"Expected a LlamaForCausalLM model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(cce_forward, maybe_model)
return maybe_model
modeling_llama.LlamaForCausalLM.forward = cce_forward
return None

View File

@@ -5,9 +5,7 @@
import transformers
from cut_cross_entropy.cce_utils import LinearCrossEntropyImpl
from cut_cross_entropy.linear_cross_entropy import LCE_IMPL_DEFAULT
from cut_cross_entropy.transformers.llama import patch_llama
from cut_cross_entropy.transformers.phi3 import patch_phi3
from cut_cross_entropy.transformers.qwen2 import patch_qwen2
from cut_cross_entropy.transformers.utils import PatchOptions, TransformersModelT
from axolotl.integrations.cut_cross_entropy.monkeypatch.cohere import (
@@ -24,6 +22,9 @@ from axolotl.integrations.cut_cross_entropy.monkeypatch.glm4 import (
patch_glm,
patch_glm4,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.llama import (
patch_llama,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.llama4 import (
patch_llama4,
patch_llama4_text,
@@ -33,6 +34,22 @@ from axolotl.integrations.cut_cross_entropy.monkeypatch.mistral3 import (
patch_mistral3,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.mllama import patch_mllama
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen2 import (
patch_qwen2,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen2_5_vl import (
patch_qwen2_5_vl,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen2_moe import (
patch_qwen2_moe,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen2_vl import (
patch_qwen2_vl,
)
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen3 import patch_qwen3
from axolotl.integrations.cut_cross_entropy.monkeypatch.qwen3_moe import (
patch_qwen3_moe,
)
CUT_CROSS_ENTROPY_MODEL_MAPPING = {
"llama": patch_llama,
@@ -47,6 +64,11 @@ CUT_CROSS_ENTROPY_MODEL_MAPPING = {
"mistral": patch_mistral,
"mistral3": patch_mistral3,
"qwen2": patch_qwen2,
"qwen2_moe": patch_qwen2_moe,
"qwen2_vl": patch_qwen2_vl,
"qwen2_5_vl": patch_qwen2_5_vl,
"qwen3": patch_qwen3,
"qwen3_moe": patch_qwen3_moe,
"cohere": patch_cohere,
"cohere2": patch_cohere2,
"glm": patch_glm,

View File

@@ -0,0 +1,37 @@
"""Qwen2 CCE patch. The model inherits Llama's modeling code and uses the same forward method."""
# pylint: disable=duplicate-code
from types import MethodType
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
)
def patch_qwen2(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
from transformers.models.qwen2 import modeling_qwen2
# Set the _PATCH_OPTS in the llama patch file
import axolotl.integrations.cut_cross_entropy.monkeypatch.llama as llama_patch
llama_patch._PATCH_OPTS = patch_options # pylint: disable=protected-access
from axolotl.integrations.cut_cross_entropy.monkeypatch.llama import (
cce_forward,
)
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen2.Qwen2ForCausalLM
), f"Expected a Qwen2ForCausalLM model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(cce_forward, maybe_model)
return maybe_model
modeling_qwen2.Qwen2ForCausalLM.forward = cce_forward
return None

View File

@@ -0,0 +1,246 @@
"""Qwen2.5 VL CCE patch. Adapted from transformers v4.51.2"""
# pylint: disable=duplicate-code
from types import MethodType
from typing import Optional, Tuple, Union
import torch
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
apply_lce,
)
from torch.nn import CrossEntropyLoss
from transformers.models.qwen2_5_vl.modeling_qwen2_5_vl import (
Qwen2_5_VLCausalLMOutputWithPast,
)
_PATCH_OPTS: PatchOptions | None = None
def cce_forward_multimodal(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[list[torch.FloatTensor]] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
pixel_values: Optional[torch.Tensor] = None,
pixel_values_videos: Optional[torch.FloatTensor] = None,
image_grid_thw: Optional[torch.LongTensor] = None,
video_grid_thw: Optional[torch.LongTensor] = None,
rope_deltas: Optional[torch.LongTensor] = None,
cache_position: Optional[torch.LongTensor] = None,
second_per_grid_ts: Optional[torch.Tensor] = None,
) -> Union[Tuple, Qwen2_5_VLCausalLMOutputWithPast]:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
Returns:
Example:
```python
>>> from PIL import Image
>>> import requests
>>> from transformers import AutoProcessor, Qwen2_5_VLForConditionalGeneration
>>> model = Qwen2_5_VLForConditionalGeneration.from_pretrained("Qwen/Qwen2.5-VL-7B-Instruct")
>>> processor = AutoProcessor.from_pretrained("Qwen/Qwen2.5-VL-7B-Instruct")
>>> messages = [
{
"role": "user",
"content": [
{"type": "image"},
{"type": "text", "text": "What is shown in this image?"},
],
},
]
>>> url = "https://www.ilankelman.org/stopsigns/australia.jpg"
>>> image = Image.open(requests.get(url, stream=True).raw)
>>> text = processor.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
>>> inputs = processor(text=[text], images=[image], vision_infos=[vision_infos])
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
"The image shows a street scene with a red stop sign in the foreground. In the background, there is a large red gate with Chinese characters ..."
```"""
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
return_dict = (
return_dict if return_dict is not None else self.config.use_return_dict
)
if inputs_embeds is None:
inputs_embeds = self.model.embed_tokens(input_ids)
if pixel_values is not None:
pixel_values = pixel_values.type(self.visual.dtype)
image_embeds = self.visual(pixel_values, grid_thw=image_grid_thw)
n_image_tokens = (input_ids == self.config.image_token_id).sum().item()
n_image_features = image_embeds.shape[0]
if n_image_tokens != n_image_features:
raise ValueError(
f"Image features and image tokens do not match: tokens: {n_image_tokens}, features {n_image_features}"
)
mask = input_ids == self.config.image_token_id
mask_unsqueezed = mask.unsqueeze(-1)
mask_expanded = mask_unsqueezed.expand_as(inputs_embeds)
image_mask = mask_expanded.to(inputs_embeds.device)
image_embeds = image_embeds.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(image_mask, image_embeds) # type: ignore
if pixel_values_videos is not None:
pixel_values_videos = pixel_values_videos.type(self.visual.dtype)
video_embeds = self.visual(pixel_values_videos, grid_thw=video_grid_thw)
n_video_tokens = (input_ids == self.config.video_token_id).sum().item()
n_video_features = video_embeds.shape[0]
if n_video_tokens != n_video_features:
raise ValueError(
f"Video features and video tokens do not match: tokens: {n_video_tokens}, features {n_video_features}"
)
mask = input_ids == self.config.video_token_id
mask_unsqueezed = mask.unsqueeze(-1)
mask_expanded = mask_unsqueezed.expand_as(inputs_embeds)
video_mask = mask_expanded.to(inputs_embeds.device)
video_embeds = video_embeds.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(video_mask, video_embeds) # type: ignore
if attention_mask is not None:
attention_mask = attention_mask.to(inputs_embeds.device)
# if we get 4D attention mask we cannot calculate rope deltas anymore. TODO @raushan fixme
if position_ids is None and (attention_mask is None or attention_mask.ndim == 2):
# calculate RoPE index once per generation in the pre-fill stage only
if (
(cache_position is not None and cache_position[0] == 0)
or self.rope_deltas is None
or (past_key_values is None or past_key_values.get_seq_length() == 0) # type: ignore
):
position_ids, rope_deltas = self.get_rope_index(
input_ids,
image_grid_thw,
video_grid_thw,
second_per_grid_ts,
attention_mask,
)
self.rope_deltas = rope_deltas
# then use the prev pre-calculated rope-deltas to get the correct position ids
else:
batch_size, seq_length, _ = inputs_embeds.shape
delta = (
(cache_position[0] + self.rope_deltas).to(inputs_embeds.device)
if cache_position is not None
else 0
)
position_ids = torch.arange(seq_length, device=inputs_embeds.device) # type: ignore
position_ids = position_ids.view(1, -1).expand(batch_size, -1) # type: ignore
if cache_position is not None: # otherwise `deltas` is an int `0`
delta = delta.repeat_interleave(batch_size // delta.shape[0], dim=0) # type: ignore
position_ids = position_ids.add(delta) # type: ignore
position_ids = position_ids.unsqueeze(0).expand(3, -1, -1) # type: ignore
outputs = self.model(
input_ids=None,
position_ids=position_ids,
attention_mask=attention_mask,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
cache_position=cache_position,
)
hidden_states = outputs[0]
logits = None
loss = None
if _PATCH_OPTS is not None and _PATCH_OPTS.use_lce(labels, self.training):
assert labels is not None
loss = apply_lce(
hidden_states,
self.lm_head.weight,
labels,
_PATCH_OPTS,
)
else:
logits = self.lm_head(hidden_states)
if labels is not None:
# Upcast to float if we need to compute the loss to avoid potential precision issues
logits = logits.float()
# Shift so that tokens < n predict n
shift_logits = logits[..., :-1, :].contiguous()
shift_labels = labels[..., 1:].contiguous()
# Flatten the tokens
loss_fct = CrossEntropyLoss()
shift_logits = shift_logits.view(-1, self.config.vocab_size)
shift_labels = shift_labels.view(-1)
# Enable model parallelism
shift_labels = shift_labels.to(shift_logits.device)
loss = loss_fct(shift_logits, shift_labels)
if not return_dict:
output = (logits,) + outputs[1:]
return (loss,) + output if loss is not None else output
return Qwen2_5_VLCausalLMOutputWithPast(
loss=loss,
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
rope_deltas=self.rope_deltas,
)
def patch_qwen2_5_vl(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
global _PATCH_OPTS # pylint: disable=global-statement
from transformers.models.qwen2_5_vl import modeling_qwen2_5_vl
_PATCH_OPTS = patch_options
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen2_5_vl.Qwen2_5_VLForConditionalGeneration
), f"Expected a Qwen2_5_VLForConditionalGeneration model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(cce_forward_multimodal, maybe_model)
return maybe_model
modeling_qwen2_5_vl.Qwen2_5_VLForConditionalGeneration.forward = (
cce_forward_multimodal
)
return None

View File

@@ -0,0 +1,188 @@
"""Qwen2 MoE CCE patch. Adapted from transformers v4.51.2"""
# pylint: disable=duplicate-code
from types import MethodType
from typing import Optional, Union
import torch
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
apply_lce,
)
from transformers.models.qwen2_moe.modeling_qwen2_moe import (
_CONFIG_FOR_DOC,
QWEN2MOE_INPUTS_DOCSTRING,
MoeCausalLMOutputWithPast,
MoeModelOutputWithPast,
load_balancing_loss_func,
)
from transformers.utils import (
add_start_docstrings_to_model_forward,
replace_return_docstrings,
)
from transformers.utils.deprecation import deprecate_kwarg
from transformers.utils.generic import can_return_tuple
_PATCH_OPTS: PatchOptions | None = None
@can_return_tuple
@deprecate_kwarg("num_logits_to_keep", version="4.50", new_name="logits_to_keep")
@add_start_docstrings_to_model_forward(QWEN2MOE_INPUTS_DOCSTRING)
@replace_return_docstrings(
output_type=MoeCausalLMOutputWithPast, config_class=_CONFIG_FOR_DOC
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[list[torch.FloatTensor]] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
output_router_logits: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**loss_kwargs,
) -> MoeCausalLMOutputWithPast:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
logits_to_keep (`int` or `torch.Tensor`, *optional*):
If an `int`, compute logits for the last `logits_to_keep` tokens. If `0`, calculate logits for all
`input_ids` (special case). Only last token logits are needed for generation, and calculating them only for that
token can save memory, which becomes pretty significant for long sequences or large vocabulary size.
If a `torch.Tensor`, must be 1D corresponding to the indices to keep in the sequence length dimension.
This is useful when using packed tensor format (single dimension for batch and sequence length).
Returns:
Example:
```python
>>> from transformers import AutoTokenizer, Qwen2MoeForCausalLM
>>> model = Qwen2MoeForCausalLM.from_pretrained(PATH_TO_CONVERTED_WEIGHTS)
>>> tokenizer = AutoTokenizer.from_pretrained(PATH_TO_CONVERTED_TOKENIZER)
>>> prompt = "Hey, are you conscious? Can you talk to me?"
>>> inputs = tokenizer(prompt, return_tensors="pt")
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
"Hey, are you conscious? Can you talk to me?\nI'm not conscious, but I can talk to you."
```"""
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_router_logits = (
output_router_logits
if output_router_logits is not None
else self.config.output_router_logits
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs: MoeModelOutputWithPast = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
output_router_logits=output_router_logits,
cache_position=cache_position,
)
hidden_states = outputs.last_hidden_state
loss = None
logits = None
if hidden_states is None:
raise ValueError("hidden_states is None")
# Only compute necessary logits, and do not upcast them to float if we are not computing the loss
slice_indices = (
slice(-logits_to_keep, None)
if isinstance(logits_to_keep, int)
else logits_to_keep
)
if _PATCH_OPTS is not None and _PATCH_OPTS.use_lce(labels, self.training):
assert labels is not None
loss = apply_lce(
hidden_states[:, slice_indices, :],
self.lm_head.weight,
labels,
_PATCH_OPTS,
**loss_kwargs,
)
else:
logits = self.lm_head(hidden_states[:, slice_indices, :])
if labels is not None:
loss = self.loss_function(logits, labels, self.vocab_size, **loss_kwargs)
aux_loss = None
if output_router_logits:
aux_loss = load_balancing_loss_func(
outputs.router_logits,
self.num_experts,
self.num_experts_per_tok,
attention_mask,
)
if labels is not None:
loss += self.router_aux_loss_coef * aux_loss.to( # type: ignore
loss.device # type: ignore
) # make sure to reside in the same device
return MoeCausalLMOutputWithPast(
loss=loss,
aux_loss=aux_loss, # type: ignore
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
router_logits=outputs.router_logits,
)
def patch_qwen2_moe(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
global _PATCH_OPTS # pylint: disable=global-statement
from transformers.models.qwen2_moe import modeling_qwen2_moe
_PATCH_OPTS = patch_options
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen2_moe.Qwen2MoeForCausalLM
), f"Expected a Qwen3MoeForCausalLM model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(forward, maybe_model)
return maybe_model
modeling_qwen2_moe.Qwen2MoeForCausalLM.forward = forward
return None

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@@ -0,0 +1,249 @@
"""Qwen2 VL CCE patch. Adapted from transformers v4.51.2"""
# pylint: disable=duplicate-code
from types import MethodType
from typing import Optional, Tuple, Union
import torch
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
apply_lce,
)
from torch.nn import CrossEntropyLoss
from transformers.models.qwen2_vl.modeling_qwen2_vl import (
_CONFIG_FOR_DOC,
QWEN2_VL_INPUTS_DOCSTRING,
Qwen2VLCausalLMOutputWithPast,
)
from transformers.utils import (
add_start_docstrings_to_model_forward,
replace_return_docstrings,
)
_PATCH_OPTS: PatchOptions | None = None
@add_start_docstrings_to_model_forward(QWEN2_VL_INPUTS_DOCSTRING)
@replace_return_docstrings(
output_type=Qwen2VLCausalLMOutputWithPast, config_class=_CONFIG_FOR_DOC
)
def cce_forward_multimodal(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[list[torch.FloatTensor]] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
return_dict: Optional[bool] = None,
pixel_values: Optional[torch.Tensor] = None,
pixel_values_videos: Optional[torch.FloatTensor] = None,
image_grid_thw: Optional[torch.LongTensor] = None,
video_grid_thw: Optional[torch.LongTensor] = None,
rope_deltas: Optional[torch.LongTensor] = None,
cache_position: Optional[torch.LongTensor] = None,
) -> Union[Tuple, Qwen2VLCausalLMOutputWithPast]:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
Returns:
Example:
```python
>>> from PIL import Image
>>> import requests
>>> from transformers import AutoProcessor, Qwen2VLForConditionalGeneration
>>> model = Qwen2VLForConditionalGeneration.from_pretrained("Qwen/Qwen2-VL-7B-Instruct")
>>> processor = AutoProcessor.from_pretrained("Qwen/Qwen2-VL-7B-Instruct")
>>> messages = [
{
"role": "user",
"content": [
{"type": "image"},
{"type": "text", "text": "What is shown in this image?"},
],
},
]
>>> url = "https://www.ilankelman.org/stopsigns/australia.jpg"
>>> image = Image.open(requests.get(url, stream=True).raw)
>>> text = processor.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
>>> inputs = processor(text=[text], images=[image], vision_infos=[vision_infos])
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
"The image shows a street scene with a red stop sign in the foreground. In the background, there is a large red gate with Chinese characters ..."
```"""
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
return_dict = (
return_dict if return_dict is not None else self.config.use_return_dict
)
if inputs_embeds is None:
inputs_embeds = self.model.embed_tokens(input_ids)
if pixel_values is not None:
pixel_values = pixel_values.type(self.visual.get_dtype())
image_embeds = self.visual(pixel_values, grid_thw=image_grid_thw)
n_image_tokens = (input_ids == self.config.image_token_id).sum().item()
n_image_features = image_embeds.shape[0]
if n_image_tokens != n_image_features:
raise ValueError(
f"Image features and image tokens do not match: tokens: {n_image_tokens}, features {n_image_features}"
)
image_mask = (
(input_ids == self.config.image_token_id)
.unsqueeze(-1)
.expand_as(inputs_embeds)
.to(inputs_embeds.device)
)
image_embeds = image_embeds.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(image_mask, image_embeds) # type: ignore
if pixel_values_videos is not None:
pixel_values_videos = pixel_values_videos.type(self.visual.get_dtype())
video_embeds = self.visual(pixel_values_videos, grid_thw=video_grid_thw)
n_video_tokens = (input_ids == self.config.video_token_id).sum().item()
n_video_features = video_embeds.shape[0]
if n_video_tokens != n_video_features:
raise ValueError(
f"Video features and video tokens do not match: tokens: {n_video_tokens}, features {n_video_features}"
)
video_mask = (
(input_ids == self.config.video_token_id)
.unsqueeze(-1)
.expand_as(inputs_embeds)
.to(inputs_embeds.device)
)
video_embeds = video_embeds.to(inputs_embeds.device, inputs_embeds.dtype)
inputs_embeds = inputs_embeds.masked_scatter(video_mask, video_embeds) # type: ignore
if attention_mask is not None:
attention_mask = attention_mask.to(inputs_embeds.device)
# if we get 4D attention mask we cannot calculate rope deltas anymore. TODO @raushan fixme
if position_ids is None and (attention_mask is None or attention_mask.ndim == 2):
# calculate RoPE index once per generation in the pre-fill stage only
if (
(cache_position is not None and cache_position[0] == 0)
or self.rope_deltas is None
or (past_key_values is None or past_key_values.get_seq_length() == 0) # type: ignore
):
position_ids, rope_deltas = self.get_rope_index(
input_ids, image_grid_thw, video_grid_thw, attention_mask
)
self.rope_deltas = rope_deltas
# then use the prev pre-calculated rope-deltas to get the correct position ids
else:
batch_size, seq_length, _ = inputs_embeds.shape
delta = (
cache_position[0] + self.rope_deltas
if cache_position is not None
else 0
)
position_ids = torch.arange(seq_length, device=inputs_embeds.device) # type: ignore
position_ids = position_ids.view(1, -1).expand(batch_size, -1) # type: ignore
if cache_position is not None: # otherwise `deltas` is an int `0`
delta = delta.repeat_interleave(batch_size // delta.shape[0], dim=0) # type: ignore
delta = delta.to(position_ids.device) # type: ignore
position_ids = position_ids.add(delta) # type: ignore
position_ids = position_ids.unsqueeze(0).expand(3, -1, -1) # type: ignore
outputs = self.model(
input_ids=None,
position_ids=position_ids,
attention_mask=attention_mask,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
return_dict=return_dict,
cache_position=cache_position,
)
hidden_states = outputs[0]
logits = None
loss = None
if _PATCH_OPTS is not None and _PATCH_OPTS.use_lce(labels, self.training):
assert labels is not None
loss = apply_lce(
hidden_states,
self.lm_head.weight,
labels,
_PATCH_OPTS,
)
else:
logits = self.lm_head(hidden_states)
if labels is not None:
# Upcast to float if we need to compute the loss to avoid potential precision issues
logits = logits.float()
# Shift so that tokens < n predict n
shift_logits = logits[..., :-1, :].contiguous()
shift_labels = labels[..., 1:].contiguous()
# Flatten the tokens
loss_fct = CrossEntropyLoss()
shift_logits = shift_logits.view(-1, self.config.vocab_size)
shift_labels = shift_labels.view(-1)
# Enable model parallelism
shift_labels = shift_labels.to(shift_logits.device)
loss = loss_fct(shift_logits, shift_labels)
if not return_dict:
output = (logits,) + outputs[1:]
return (loss,) + output if loss is not None else output
return Qwen2VLCausalLMOutputWithPast(
loss=loss,
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
rope_deltas=self.rope_deltas,
)
def patch_qwen2_vl(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
global _PATCH_OPTS # pylint: disable=global-statement
from transformers.models.qwen2_vl import modeling_qwen2_vl
_PATCH_OPTS = patch_options
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen2_vl.Qwen2VLForConditionalGeneration
), f"Expected a Qwen2VLForConditionalGeneration model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(cce_forward_multimodal, maybe_model)
return maybe_model
modeling_qwen2_vl.Qwen2VLForConditionalGeneration.forward = cce_forward_multimodal
return None

View File

@@ -0,0 +1,35 @@
"""Qwen3 CCE patch. The model inherits Llama's modeling code and uses the same forward method."""
# pylint: disable=duplicate-code
from types import MethodType
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
)
def patch_qwen3(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
from transformers.models.qwen3 import modeling_qwen3
# Set the _PATCH_OPTS in the llama patch file
import axolotl.integrations.cut_cross_entropy.monkeypatch.llama as llama_patch
llama_patch._PATCH_OPTS = patch_options # pylint: disable=protected-access
from axolotl.integrations.cut_cross_entropy.monkeypatch.llama import cce_forward
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen3.Qwen3ForCausalLM
), f"Expected a Qwen3ForCausalLM model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(cce_forward, maybe_model)
return maybe_model
modeling_qwen3.Qwen3ForCausalLM.forward = cce_forward
return None

View File

@@ -0,0 +1,194 @@
"""Qwen3 MoE CCE patch. Adapted from transformers v4.51.2"""
# pylint: disable=duplicate-code
from types import MethodType
from typing import Optional, Union
import torch
import transformers
from cut_cross_entropy.transformers.utils import (
PatchOptions,
TransformersModelT,
apply_lce,
)
from transformers.modeling_outputs import CausalLMOutputWithPast
from transformers.models.qwen3_moe.modeling_qwen3_moe import (
_CONFIG_FOR_DOC,
QWEN3_MOE_INPUTS_DOCSTRING,
KwargsForCausalLM,
MoeCausalLMOutputWithPast,
MoeModelOutputWithPast,
load_balancing_loss_func,
)
from transformers.processing_utils import Unpack
from transformers.utils import (
add_start_docstrings_to_model_forward,
replace_return_docstrings,
)
from transformers.utils.deprecation import deprecate_kwarg
from transformers.utils.generic import can_return_tuple
_PATCH_OPTS: PatchOptions | None = None
@can_return_tuple
@deprecate_kwarg("num_logits_to_keep", version="4.50", new_name="logits_to_keep")
@add_start_docstrings_to_model_forward(QWEN3_MOE_INPUTS_DOCSTRING)
@replace_return_docstrings(
output_type=CausalLMOutputWithPast, config_class=_CONFIG_FOR_DOC
)
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[list[torch.FloatTensor]] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
output_router_logits: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**kwargs: Unpack[KwargsForCausalLM],
) -> MoeCausalLMOutputWithPast:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
logits_to_keep (`int` or `torch.Tensor`, *optional*):
If an `int`, compute logits for the last `logits_to_keep` tokens. If `0`, calculate logits for all
`input_ids` (special case). Only last token logits are needed for generation, and calculating them only for that
token can save memory, which becomes pretty significant for long sequences or large vocabulary size.
If a `torch.Tensor`, must be 1D corresponding to the indices to keep in the sequence length dimension.
This is useful when using packed tensor format (single dimension for batch and sequence length).
Returns:
Example:
```python
>>> from transformers import AutoTokenizer, Qwen3MoeForCausalLM
>>> model = Qwen3MoeForCausalLM.from_pretrained("Qwen/Qwen3-MoE-15B-A2B")
>>> tokenizer = AutoTokenizer.from_pretrained("Qwen/Qwen3-MoE-15B-A2B")
>>> prompt = "Hey, are you conscious? Can you talk to me?"
>>> inputs = tokenizer(prompt, return_tensors="pt")
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
"Hey, are you conscious? Can you talk to me?\nI'm not conscious, but I can talk to you."
```"""
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_router_logits = (
output_router_logits
if output_router_logits is not None
else self.config.output_router_logits
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs: MoeModelOutputWithPast = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
output_router_logits=output_router_logits,
cache_position=cache_position,
**kwargs,
)
hidden_states = outputs.last_hidden_state
if hidden_states is None:
raise ValueError("hidden_states is None")
loss = None
logits = None
# Only compute necessary logits, and do not upcast them to float if we are not computing the loss
slice_indices = (
slice(-logits_to_keep, None)
if isinstance(logits_to_keep, int)
else logits_to_keep
)
if _PATCH_OPTS is not None and _PATCH_OPTS.use_lce(labels, self.training):
assert labels is not None
loss = apply_lce(
hidden_states[:, slice_indices, :],
self.lm_head.weight,
labels,
_PATCH_OPTS,
**kwargs,
)
else:
logits = self.lm_head(hidden_states[:, slice_indices, :])
if labels is not None:
loss = self.loss_function(logits, labels, self.vocab_size, **kwargs)
aux_loss = None
if output_router_logits:
aux_loss = load_balancing_loss_func(
outputs.router_logits,
self.num_experts,
self.num_experts_per_tok,
attention_mask,
)
if labels is not None:
loss += self.router_aux_loss_coef * aux_loss.to( # type: ignore
loss.device # type: ignore
) # make sure to reside in the same device
return MoeCausalLMOutputWithPast(
loss=loss,
aux_loss=aux_loss, # type: ignore
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
router_logits=outputs.router_logits,
)
def patch_qwen3_moe(
maybe_model: TransformersModelT | str | transformers.PretrainedConfig,
patch_options: PatchOptions,
) -> TransformersModelT | None:
global _PATCH_OPTS # pylint: disable=global-statement
from transformers.models.qwen3_moe import modeling_qwen3_moe
_PATCH_OPTS = patch_options
if isinstance(maybe_model, transformers.PreTrainedModel):
assert isinstance(
maybe_model, modeling_qwen3_moe.Qwen3MoeForCausalLM
), f"Expected a Qwen3MoeForCausalLM model. Got {type(maybe_model)}."
maybe_model.forward = MethodType(forward, maybe_model)
return maybe_model
modeling_qwen3_moe.Qwen3MoeForCausalLM.forward = forward
return None

View File

@@ -35,6 +35,9 @@ class ChatTemplateStrategyWithKD(ChatTemplateStrategy):
sequence_len,
roles_to_train=None,
train_on_eos=None,
train_on_eot=None,
eot_tokens=None,
split_thinking: bool | None = False,
logprobs_field="logprobs",
gen_temperature=1.0,
kd_temperature=1.0,
@@ -50,6 +53,9 @@ class ChatTemplateStrategyWithKD(ChatTemplateStrategy):
sequence_len,
roles_to_train=roles_to_train,
train_on_eos=train_on_eos,
train_on_eot=train_on_eot,
eot_tokens=eot_tokens,
split_thinking=split_thinking,
)
@property

View File

@@ -23,8 +23,8 @@ import logging
import sys
from axolotl.integrations.base import BasePlugin
from axolotl.utils.distributed import is_main_process
from ...utils.distributed import zero_only
from .args import LigerArgs # pylint: disable=unused-import. # noqa: F401
from .utils import patch_with_compile_disable
@@ -85,7 +85,7 @@ class LigerPlugin(BasePlugin):
kwargs["geglu"] = cfg.liger_glu_activation
elif "swiglu" in liger_fn_sig.parameters:
kwargs["swiglu"] = cfg.liger_glu_activation
with zero_only():
if is_main_process(use_environ=True):
LOG.info(
f"Applying LIGER to {cfg.model_config_type} with kwargs: {kwargs}"
)
@@ -151,6 +151,30 @@ class LigerPlugin(BasePlugin):
rms_norm=cfg.liger_rms_norm,
layer_norm=cfg.liger_layer_norm,
)
elif cfg.model_config_type == "qwen3":
from axolotl.integrations.liger.models.qwen3 import (
apply_liger_kernel_to_qwen3,
)
apply_liger_kernel_to_qwen3(
cross_entropy=cfg.liger_cross_entropy,
fused_linear_cross_entropy=cfg.liger_fused_linear_cross_entropy,
glu_activation=cfg.liger_glu_activation,
rms_norm=cfg.liger_rms_norm,
layer_norm=cfg.liger_layer_norm,
)
elif cfg.model_config_type == "qwen3_moe":
from axolotl.integrations.liger.models.qwen3_moe import (
apply_liger_kernel_to_qwen3_moe,
)
apply_liger_kernel_to_qwen3_moe(
cross_entropy=cfg.liger_cross_entropy,
fused_linear_cross_entropy=cfg.liger_fused_linear_cross_entropy,
glu_activation=cfg.liger_glu_activation,
rms_norm=cfg.liger_rms_norm,
layer_norm=cfg.liger_layer_norm,
)
else:
logging.warning(
f"Unsupported model config type: {cfg.model_config_type}. Liger not applied."

View File

@@ -0,0 +1,160 @@
"""
Liger FLCE for Qwen3. Based on transformers v4.51.3.
"""
import sys
from typing import Optional, Tuple, Union
import torch
from liger_kernel.transformers.model.loss_utils import LigerForCausalLMLoss
from transformers.cache_utils import Cache
from transformers.modeling_outputs import CausalLMOutputWithPast
def lce_forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[Cache] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**kwargs,
) -> Union[Tuple, CausalLMOutputWithPast]:
r"""
Args:
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
logits_to_keep (`int` or `torch.Tensor`, *optional*):
If an `int`, compute logits for the last `logits_to_keep` tokens. If `0`, calculate logits for all
`input_ids` (special case). Only last token logits are needed for generation, and calculating them only for that
token can save memory, which becomes pretty significant for long sequences or large vocabulary size.
If a `torch.Tensor`, must be 1D corresponding to the indices to keep in the sequence length dimension.
This is useful when using packed tensor format (single dimension for batch and sequence length).
Returns:
"""
# pylint: disable=duplicate-code
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
cache_position=cache_position,
**kwargs,
)
hidden_states = outputs[0]
logits = None
loss = None
# if in training mode, don't materialize logits
if self.training and (labels is not None):
loss = LigerForCausalLMLoss(
hidden_states=hidden_states,
lm_head_weight=self.lm_head.weight,
labels=labels,
hidden_size=self.config.hidden_size,
**kwargs,
)
else: # if in inference mode materialize logits
slice_indices = (
slice(-logits_to_keep, None)
if isinstance(logits_to_keep, int)
else logits_to_keep
)
logits = self.lm_head(hidden_states[:, slice_indices, :])
if labels is not None:
loss = self.loss_function(
logits=logits,
labels=labels,
vocab_size=self.config.vocab_size,
**kwargs,
)
return CausalLMOutputWithPast(
loss=loss,
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
def apply_liger_kernel_to_qwen3(
cross_entropy: bool = False,
fused_linear_cross_entropy: bool = False,
rms_norm: bool = False,
glu_activation: bool = False,
layer_norm: bool = False,
**kwargs, # pylint: disable=unused-argument
) -> None:
# pylint: disable=duplicate-code
"""
Apply Liger kernels to replace original implementation in HuggingFace Llama models (2 and 3)
Args:
cross_entropy (bool): Whether to apply Liger's cross entropy loss. Default is False.
fused_linear_cross_entropy (bool):
Whether to apply Liger's fused linear cross entropy loss. Default is False.
`cross_entropy` and `fused_linear_cross_entropy` cannot both be False.
If `fused_linear_cross_entropy` is True, the logits will not be materialized but more memory efficient.
rms_norm (bool): Whether to apply Liger's RMSNorm. Default is False.
glu_activation (bool): Whether to apply Liger's SwiGLU MLP. Default is False.
layer_norm (bool): Whether to apply Liger's LayerNorm. Default is False.
"""
import transformers.models.qwen3.modeling_qwen3 # noqa: F401 # pylint: disable=unused-import
from liger_kernel.transformers.functional import liger_cross_entropy
from liger_kernel.transformers.layer_norm import LigerLayerNorm
from liger_kernel.transformers.rms_norm import LigerRMSNorm
from liger_kernel.transformers.swiglu import LigerSwiGLUMLP
assert not (
cross_entropy and fused_linear_cross_entropy
), "cross_entropy and fused_linear_cross_entropy cannot both be True."
modeling_qwen3 = sys.modules["transformers.models.qwen3.modeling_qwen3"]
if rms_norm:
modeling_qwen3.Qwen3RMSNorm = LigerRMSNorm
if glu_activation:
modeling_qwen3.Qwen3MLP = LigerSwiGLUMLP
if layer_norm:
modeling_qwen3.nn.LayerNorm = LigerLayerNorm
if cross_entropy:
from transformers.loss.loss_utils import nn
nn.functional.cross_entropy = liger_cross_entropy
if fused_linear_cross_entropy:
modeling_qwen3.Qwen3ForCausalLM.forward = lce_forward

View File

@@ -0,0 +1,191 @@
"""
Liger FLCE for Qwen3 MoE. Based on transformers v4.51.3.
"""
import sys
from copy import deepcopy
from typing import List, Optional, Union
import torch
from liger_kernel.transformers.model.loss_utils import LigerForCausalLMLoss
from transformers.modeling_outputs import MoeCausalLMOutputWithPast
from transformers.models.qwen3_moe.modeling_qwen3_moe import load_balancing_loss_func
def lce_forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[List[torch.FloatTensor]] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
output_router_logits: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**kwargs,
) -> MoeCausalLMOutputWithPast:
r"""
Args:
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
logits_to_keep (`int` or `torch.Tensor`, *optional*):
If an `int`, compute logits for the last `logits_to_keep` tokens. If `0`, calculate logits for all
`input_ids` (special case). Only last token logits are needed for generation, and calculating them only for that
token can save memory, which becomes pretty significant for long sequences or large vocabulary size.
If a `torch.Tensor`, must be 1D corresponding to the indices to keep in the sequence length dimension.
This is useful when using packed tensor format (single dimension for batch and sequence length).
Returns:
"""
# pylint: disable=duplicate-code
output_attentions = (
output_attentions
if output_attentions is not None
else self.config.output_attentions
)
output_router_logits = (
output_router_logits
if output_router_logits is not None
else self.config.output_router_logits
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
output_router_logits=output_router_logits,
cache_position=cache_position,
**kwargs,
)
hidden_states = outputs[0]
logits = None
loss = None
# if in training mode, don't materialize logits
if self.training and (labels is not None):
loss = LigerForCausalLMLoss(
hidden_states=hidden_states,
lm_head_weight=self.lm_head.weight,
labels=labels,
hidden_size=self.config.hidden_size,
**kwargs,
)
else: # if in inference mode materialize logits
slice_indices = (
slice(-logits_to_keep, None)
if isinstance(logits_to_keep, int)
else logits_to_keep
)
logits = self.lm_head(hidden_states[:, slice_indices, :])
if labels is not None:
loss = self.loss_function(
logits=logits,
labels=labels,
vocab_size=self.config.vocab_size,
**kwargs,
)
aux_loss = None
if output_router_logits:
aux_loss = load_balancing_loss_func(
outputs.router_logits,
self.num_experts,
self.num_experts_per_tok,
attention_mask,
)
if labels is not None:
loss += self.router_aux_loss_coef * aux_loss.to(
loss.device
) # make sure to reside in the same device
return MoeCausalLMOutputWithPast(
loss=loss,
aux_loss=aux_loss,
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
)
def apply_liger_kernel_to_qwen3_moe(
cross_entropy: bool = False,
fused_linear_cross_entropy: bool = False,
rms_norm: bool = False,
glu_activation: bool = False,
layer_norm: bool = False,
**kwargs, # pylint: disable=unused-argument
) -> None:
# pylint: disable=duplicate-code
"""
Apply Liger kernels to replace original implementation in HuggingFace Llama models (2 and 3)
Args:
cross_entropy (bool): Whether to apply Liger's cross entropy loss. Default is False.
fused_linear_cross_entropy (bool):
Whether to apply Liger's fused linear cross entropy loss. Default is False.
`cross_entropy` and `fused_linear_cross_entropy` cannot both be False.
If `fused_linear_cross_entropy` is True, the logits will not be materialized but more memory efficient.
rms_norm (bool): Whether to apply Liger's RMSNorm. Default is False.
glu_activation (bool): Whether to apply Liger's SwiGLU MLP. Default is False.
layer_norm (bool): Whether to apply Liger's LayerNorm. Default is False.
"""
import transformers.models.qwen3_moe.modeling_qwen3_moe # noqa: F401 # pylint: disable=unused-import
from liger_kernel.transformers.functional import liger_cross_entropy
from liger_kernel.transformers.layer_norm import LigerLayerNorm
from liger_kernel.transformers.rms_norm import LigerRMSNorm
from liger_kernel.transformers.swiglu import LigerSwiGLUMLP
assert not (
cross_entropy and fused_linear_cross_entropy
), "cross_entropy and fused_linear_cross_entropy cannot both be True."
modeling_qwen3_moe = sys.modules["transformers.models.qwen3_moe.modeling_qwen3_moe"]
if rms_norm:
modeling_qwen3_moe.Qwen3MoeRMSNorm = LigerRMSNorm
if glu_activation:
def _liger_swiglu_mlp_wrapper(config, intermediate_size=None, **kwargs):
"Accepts intermediate_size to pass to LigerSwiGLUMLP"
# clone config to avoid modifying the original
config = deepcopy(config)
if intermediate_size:
setattr(config, "intermediate_size", intermediate_size)
return LigerSwiGLUMLP(config, **kwargs)
modeling_qwen3_moe.Qwen3MoeMLP = _liger_swiglu_mlp_wrapper
if layer_norm:
modeling_qwen3_moe.nn.LayerNorm = LigerLayerNorm
if cross_entropy:
from transformers.loss.loss_utils import nn
nn.functional.cross_entropy = liger_cross_entropy
if fused_linear_cross_entropy:
modeling_qwen3_moe.Qwen3MoeForCausalLM.forward = lce_forward

View File

@@ -0,0 +1,108 @@
# LLMCompressor Integration
Fine-tune sparsified models in Axolotl using Neural Magic's [LLMCompressor](https://github.com/vllm-project/llm-compressor).
This integration enables fine-tuning of models sparsified using LLMCompressor within the Axolotl training framework. By combining LLMCompressor's model compression capabilities with Axolotl's distributed training pipelines, users can efficiently fine-tune sparse models at scale.
It uses Axolotls plugin system to hook into the fine-tuning flows while maintaining sparsity throughout training.
---
## Requirements
- Axolotl with `llmcompressor` extras:
```bash
pip install "axolotl[llmcompressor]"
```
- Requires `llmcompressor >= 0.5.1`
This will install all necessary dependencies to fine-tune sparsified models using the integration.
---
## Usage
To enable sparse fine-tuning with this integration, include the plugin in your Axolotl config:
```yaml
plugins:
- axolotl.integrations.llm_compressor.LLMCompressorPlugin
llmcompressor:
recipe:
finetuning_stage:
finetuning_modifiers:
ConstantPruningModifier:
targets: [
're:.*q_proj.weight',
're:.*k_proj.weight',
're:.*v_proj.weight',
're:.*o_proj.weight',
're:.*gate_proj.weight',
're:.*up_proj.weight',
're:.*down_proj.weight',
]
start: 0
save_compressed: true
# ... (other training arguments)
```
This plugin **does not apply pruning or sparsification itself** — it is intended for **fine-tuning models that have already been sparsified**.
Pre-sparsified checkpoints can be:
- Generated using [LLMCompressor](https://github.com/vllm-project/llm-compressor)
- Downloaded from [Neural Magic's Hugging Face page](https://huggingface.co/neuralmagic)
- Any custom LLM with compatible sparsity patterns that you've created yourself
To learn more about writing and customizing LLMCompressor recipes, refer to the official documentation:
[https://github.com/vllm-project/llm-compressor/blob/main/README.md](https://github.com/vllm-project/llm-compressor/blob/main/README.md)
### Storage Optimization with save_compressed
Setting `save_compressed: true` in your configuration enables saving models in a compressed format, which:
- Reduces disk space usage by approximately 40%
- Maintains compatibility with vLLM for accelerated inference
- Maintains compatibility with llmcompressor for further optimization (example: quantization)
This option is highly recommended when working with sparse models to maximize the benefits of model compression.
### Example Config
See [`examples/llama-3/sparse-finetuning.yaml`](examples/llama-3/sparse-finetuning.yaml) for a complete example.
---
## Inference with vLLM
After fine-tuning your sparse model, you can leverage vLLM for efficient inference.
You can also use LLMCompressor to apply additional quantization to your fine-tuned
sparse model before inference for even greater performance benefits.:
```python
from vllm import LLM, SamplingParams
prompts = [
"Hello, my name is",
"The president of the United States is",
"The capital of France is",
"The future of AI is",
]
sampling_params = SamplingParams(temperature=0.8, top_p=0.95)
llm = LLM("path/to/your/sparse/model")
outputs = llm.generate(prompts, sampling_params)
for output in outputs:
prompt = output.prompt
generated_text = output.outputs[0].text
print(f"Prompt: {prompt!r}, Generated text: {generated_text!r}")
```
For more details on vLLM's capabilities and advanced configuration options, see the [official vLLM documentation](https://docs.vllm.ai/).
## Learn More
For details on available sparsity and quantization schemes, fine-tuning recipes, and usage examples, visit the official LLMCompressor repository:
[https://github.com/vllm-project/llm-compressor](https://github.com/vllm-project/llm-compressor)

View File

@@ -0,0 +1,5 @@
"""Integration entry point for the LLMCompressor plugin."""
from .plugin import LLMCompressorPlugin
__all__ = ["LLMCompressorPlugin"]

View File

@@ -0,0 +1,40 @@
"""
LLMCompressor and Sparse Finetuning config models.
"""
from typing import Any
from pydantic import BaseModel, Field
from typing_extensions import Annotated
class CompressionArgs(BaseModel):
"""Sparse Finetuning config for LLMCompressor."""
# Typing for recipe is set to Any due to:
# https://github.com/vllm-project/llm-compressor/issues/1319
recipe: Annotated[
Any,
Field(
description="The recipe containing the compression algorithms and hyperparameters to apply."
),
]
save_compressed: Annotated[
bool,
Field(
default=False,
description="Whether to save the compressed model after training.",
),
]
class LLMCompressorArgs(BaseModel):
"""LLMCompressor configuration BaseModel."""
llmcompressor: Annotated[
CompressionArgs,
Field(
description="Arguments enabling compression pathways through the LLM Compressor plugins"
),
]

View File

@@ -0,0 +1,171 @@
"""
Sparse Finetuning plugin for Axolotl — enables handling of sparse neural networks
by maintaining masks for zero weights during training.
"""
import logging
from functools import wraps
from typing import Any, Callable, Concatenate, ParamSpec, TypeVar
from llmcompressor import active_session, create_session
from llmcompressor.core import callbacks as session_callbacks
from llmcompressor.recipe import Recipe
from torch.nn import Module
from transformers.trainer import Trainer
from transformers.trainer_callback import TrainerCallback, TrainerControl, TrainerState
from transformers.training_args import TrainingArguments
from axolotl.integrations.base import BasePlugin
P = ParamSpec("P") # Params for generic function signatures
R = TypeVar("R") # Return type for generic function signatures
LOG = logging.getLogger("axolotl.integrations.llm_compressor")
class LLMCompressorCallbackHandler(TrainerCallback):
"""
Trainer callback for Sparse Finetuning.
Maintains sparsity patterns during training by applying masks after optimization steps,
ensuring zero-weight updates are canceled out.
"""
def __init__(self, trainer: Trainer, recipe: Any):
"""
Initialize the Sparse Finetuning callback handler.
Args:
trainer (Trainer): Huggingface Trainer instance.
recipe (Recipe | dict): Sparse finetuning recipe to apply.
"""
super().__init__()
self.trainer = trainer
self.recipe = (
Recipe.model_validate(recipe) if not isinstance(recipe, Recipe) else recipe
)
self.original_compute_loss = trainer.compute_loss
self.trainer.compute_loss = compute_loss_wrapper(self.trainer.compute_loss)
create_session()
def on_train_begin(
self,
args: TrainingArguments,
state: TrainerState,
control: TrainerControl,
**kwargs,
) -> None:
"""
Called at the beginning of training. Initializes the compression session.
Args:
args (TrainingArguments): Training arguments.
state (TrainerState): Trainer state.
control (TrainerControl): Trainer control.
"""
super().on_train_begin(args, state, control, **kwargs)
self.trainer.accelerator.wait_for_everyone()
active_session().initialize(
model=self.trainer.model,
optimizer=self.trainer.optimizer,
start=state.epoch,
recipe=self.recipe,
)
self.trainer.accelerator.wait_for_everyone()
def on_step_begin(
self,
args: TrainingArguments,
state: TrainerState,
control: TrainerControl,
**kwargs,
) -> None:
"""
Called at the beginning of a training step. Triggers batch_start callback.
"""
super().on_step_begin(args, state, control, **kwargs)
session_callbacks.batch_start()
def on_step_end(
self,
args: TrainingArguments,
state: TrainerState,
control: TrainerControl,
**kwargs,
) -> None:
"""
Called at the end of a training step. Triggers optimizer and batch_end callbacks.
"""
super().on_step_end(args, state, control, **kwargs)
session_callbacks.optim_pre_step()
session_callbacks.optim_post_step()
session_callbacks.batch_end()
def on_train_end(
self,
args: TrainingArguments,
state: TrainerState,
control: TrainerControl,
**kwargs,
) -> None:
"""
Called at the end of training. Finalizes the compression session.
"""
super().on_train_end(args, state, control, **kwargs)
active_session().finalize()
self.trainer.compute_loss_func = self.original_compute_loss
class LLMCompressorPlugin(BasePlugin):
"""
Sparse Finetuning plugin for Axolotl integration.
"""
def get_input_args(self) -> str:
"""
Returns the path to the plugin's argument definition.
Returns:
str: Dotted path to the LLMCompressorArgs class.
"""
return "axolotl.integrations.llm_compressor.args.LLMCompressorArgs"
def add_callbacks_post_trainer(self, cfg: Any, trainer: Trainer) -> list:
"""
Adds Sparse Finetuning callback to the Trainer instance.
Args:
cfg (Any): Configuration object containing the sparse recipe.
trainer (Trainer): Huggingface Trainer instance.
Returns:
list: List containing the configured callback instances.
"""
LOG.info("Adding Sparse Finetuning callback to the trainer")
callback = LLMCompressorCallbackHandler(
trainer=trainer,
recipe=cfg.llmcompressor.recipe,
)
return [callback]
def compute_loss_wrapper(
compute_loss_func: Callable[Concatenate[Module, P], R],
) -> Callable[Concatenate[Module, P], R]:
"""
Wraps the loss computation function to trigger the loss_calculated callback.
Args:
compute_loss_func (Callable): Original loss computation function.
Returns:
Callable: Wrapped function that also invokes the loss_calculated callback.
"""
@wraps(compute_loss_func)
def compute_and_notify(model: Module, *args: P.args, **kwargs: P.kwargs) -> R:
loss = compute_loss_func(model, *args, **kwargs)
if active_session().lifecycle.initialized_ and model.training:
session_callbacks.loss_calculated(loss=loss)
return loss
return compute_and_notify

View File

@@ -0,0 +1,40 @@
"""Utilities for llmcompressor integration with axolotl."""
from typing import Union
from llmcompressor.transformers.sparsification.compressed_tensors_utils import (
modify_save_pretrained,
)
from transformers import PreTrainedModel, Trainer
def save_compressed_model(
model: PreTrainedModel,
output_dir: Union[str, bytes],
trainer: Trainer,
safe_serialization: bool = False,
save_compressed: bool = False,
) -> None:
"""
Synchronize processes, apply compression hooks, and save the model.
Args:
model (PreTrainedModel): The model to be saved.
output_dir (str or bytes): Path where the model files will be written.
trainer (Trainer): Hugging Face Trainer for process synchronization.
safe_serialization (bool): Use safe serialization if True.
save_compressed (bool): Write compressed tensors if True.
"""
trainer.accelerator.wait_for_everyone()
# Only the main process writes the files
if not trainer.accelerator.is_main_process:
return
modify_save_pretrained(model)
model.save_pretrained(
output_dir,
safe_serialization=safe_serialization,
save_compressed=save_compressed,
skip_sparsity_compression_stats=not save_compressed,
)

View File

@@ -0,0 +1,19 @@
"""
attention module for attention monkeypatches
"""
from transformers.integrations.flash_attention import flash_attention_forward
def patch_xformers_attn_over_fa2():
from transformers.modeling_utils import ALL_ATTENTION_FUNCTIONS
from .xformers import xformers_attention_forward
ALL_ATTENTION_FUNCTIONS["flash_attention_2"] = xformers_attention_forward
def unpatch_xformers_attn_over_fa2():
from transformers.modeling_utils import ALL_ATTENTION_FUNCTIONS
ALL_ATTENTION_FUNCTIONS["flash_attention_2"] = flash_attention_forward()

View File

@@ -12,10 +12,8 @@ import torch
import torch.distributed as dist
from accelerate.logging import get_logger
from axolotl.logging_config import configure_logging
from axolotl.monkeypatch.utils import get_cu_seqlens_from_pos_ids
configure_logging()
LOG = get_logger(__name__)

View File

@@ -0,0 +1,160 @@
"""
xformers attention implementation for packing
"""
from typing import Optional
import torch
import xformers
import xformers.ops.fmha
from transformers.modeling_flash_attention_utils import (
_upad_input,
)
from axolotl.monkeypatch.utils import get_cu_seqlens_from_pos_ids
xformers_attention = xformers.ops.fmha.memory_efficient_attention
def xformers_attention_forward(
module: torch.nn.Module,
query: torch.Tensor,
key: torch.Tensor,
value: torch.Tensor,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
dropout: float = 0.0, # pylint: disable=unused-argument
scaling: Optional[float] = None, # pylint: disable=unused-argument
sliding_window: Optional[int] = None, # pylint: disable=unused-argument
softcap: Optional[float] = None, # pylint: disable=unused-argument
cu_seq_lens_q: Optional[torch.LongTensor] = None,
cu_seq_lens_k: Optional[torch.LongTensor] = None,
max_length_q: Optional[int] = None,
max_length_k: Optional[int] = None, # pylint: disable=unused-argument
**kwargs, # pylint: disable=unused-argument
):
# Get dimensions
# query: [batch, heads, seq_len, hidden_dim]
batch_size = query.size(0)
query_length = query.shape[2]
key_length = key.shape[2]
# Default causal mask
attn_bias = xformers.ops.LowerTriangularMask()
# Check if we have sliding window attention
has_sliding_window = sliding_window is not None and sliding_window < query_length
# Transpose dimensions for xformers (Q: [b, h, s, d] -> [b, s, h, d])
query = query.transpose(1, 2)
key = key.transpose(1, 2)
value = value.transpose(1, 2)
# Get GQA parameters
num_attention_heads = module.config.num_attention_heads
num_key_value_heads = module.config.num_key_value_heads
head_dim = query.size(-1)
is_gqa = num_attention_heads != num_key_value_heads
n_groups = num_attention_heads // num_key_value_heads if is_gqa else 1
# If position_ids is provided and check all examples do not contain only 1 sequence, If tensor in increasing
# then we probably have one sequence, otherwise it is packed. Additionally check we are in pre-fill/training stage.
# Use `flash_attn_varlen_func` to prevent cross-example attention and also allow padding free approach
if position_ids is not None and (
max_length_q is not None
or (query_length != 1 and not (torch.diff(position_ids, dim=-1) >= 0).all())
):
if cu_seq_lens_q is None or cu_seq_lens_k is None:
cu_seq_lens_q = get_cu_seqlens_from_pos_ids(position_ids)[0]
cu_seq_lens_q = cu_seq_lens_q.squeeze()
seq_lengths = cu_seq_lens_q[1:] - cu_seq_lens_q[:-1]
attn_bias = (
xformers.ops.fmha.attn_bias.BlockDiagonalCausalMask.from_seqlens(
q_seqlen=seq_lengths.tolist(),
)
)
else:
query = query.reshape(-1, query.size(-2), query.size(-1))
key = key.reshape(-1, key.size(-2), key.size(-1))
value = value.reshape(-1, value.size(-2), value.size(-1))
# Handle GQA
if is_gqa:
key = key.repeat_interleave(n_groups, dim=2)
value = value.repeat_interleave(n_groups, dim=2)
elif attention_mask is not None:
query, key, value, _, cu_seq_lens, _ = _upad_input(
query, key, value, attention_mask, query_length
)
cu_seq_lens_q, cu_seq_lens_k = cu_seq_lens
seq_lengths = []
for i in range(len(cu_seq_lens_q) - 1):
seq_lengths.append(cu_seq_lens_q[i + 1] - cu_seq_lens_q[i])
attn_bias = xformers.ops.fmha.attn_bias.BlockDiagonalCausalMask.from_seqlens(
q_seqlen=seq_lengths,
kv_seqlen=seq_lengths,
)
# Handle GQA
if is_gqa:
key = key.repeat_interleave(n_groups, dim=2)
value = value.repeat_interleave(n_groups, dim=2)
else:
# Handle Group Query Attention (GQA) using view/expand approach from reference
key = key.view(batch_size, key_length, num_key_value_heads, 1, head_dim)
value = value.view(batch_size, key_length, num_key_value_heads, 1, head_dim)
key = key.expand(
batch_size, key_length, num_key_value_heads, n_groups, head_dim
)
value = value.expand(
batch_size, key_length, num_key_value_heads, n_groups, head_dim
)
if module.training:
key = key.reshape(batch_size, key_length, num_attention_heads, head_dim)
value = value.reshape(batch_size, key_length, num_attention_heads, head_dim)
if has_sliding_window:
query = query.view(
1, batch_size * query_length, num_attention_heads, head_dim
)
key = key.view(
1, batch_size * key_length, num_attention_heads, head_dim
)
value = value.view(
1, batch_size * key_length, num_attention_heads, head_dim
)
else:
query = query.view(
batch_size, query_length, num_key_value_heads, n_groups, head_dim
)
# If we need a sliding window attention
if has_sliding_window:
query = query.view(
1,
batch_size * query_length,
num_key_value_heads,
n_groups,
head_dim,
)
key = key.view(
1, batch_size * key_length, num_key_value_heads, n_groups, head_dim
)
value = value.view(
1, batch_size * key_length, num_key_value_heads, n_groups, head_dim
)
# Run the xformers attention
attn_output = xformers_attention(
query,
key,
value,
attn_bias=attn_bias,
)
attn_output = attn_output.view(
batch_size, -1, attn_output.size(-2), attn_output.size(-1)
)
return attn_output, None

View File

@@ -23,22 +23,42 @@ from axolotl.utils.dict import DictDefault
LOG = get_logger(__name__)
ORIGINAL_QKV_CODE = """
QKV_PATCHES = [
(
"""
query_states = self.q_proj(hidden_states).view(hidden_shape).transpose(1, 2)
key_states = self.k_proj(hidden_states).view(hidden_shape).transpose(1, 2)
value_states = self.v_proj(hidden_states).view(hidden_shape).transpose(1, 2)
""".lstrip(
"\n"
)
PATCHED_QKV_CODE = """
"\n"
),
"""
query_states, key_states, value_states = self.apply_qkv(hidden_states)
query_states = query_states.view(hidden_shape).transpose(1, 2)
key_states = key_states.view(hidden_shape).transpose(1, 2)
value_states = value_states.view(hidden_shape).transpose(1, 2)
""".lstrip(
"\n"
)
"\n"
),
),
(
"""
query_states = self.q_norm(self.q_proj(hidden_states).view(hidden_shape)).transpose(1, 2)
key_states = self.k_norm(self.k_proj(hidden_states).view(hidden_shape)).transpose(1, 2)
value_states = self.v_proj(hidden_states).view(hidden_shape).transpose(1, 2)
""".lstrip(
"\n"
),
"""
query_states, key_states, value_states = self.apply_qkv(hidden_states)
query_states = self.q_norm(query_states.view(hidden_shape)).transpose(1, 2)
key_states = self.k_norm(key_states.view(hidden_shape)).transpose(1, 2)
value_states = value_states.view(hidden_shape).transpose(1, 2)
""".lstrip(
"\n"
),
),
]
ORIGINAL_O_CODE = """
attn_output = self.o_proj(attn_output)
@@ -128,10 +148,11 @@ def get_attention_cls_from_config(cfg: DictDefault) -> Type[nn.Module]:
try:
# Dynamically import the module and attention class
module_path = f"transformers.models.{model_type}.modeling_{model_type}"
module = __import__(
module_path, fromlist=[f"{model_type.capitalize()}Attention"]
model_cls_prefix = "".join(
[part.capitalize() for part in model_type.split("_")]
)
attention_cls = getattr(module, f"{model_type.capitalize()}Attention")
module = __import__(module_path, fromlist=[f"{model_cls_prefix}Attention"])
attention_cls = getattr(module, f"{model_cls_prefix}Attention")
return attention_cls
except (ImportError, AttributeError) as e:
@@ -168,10 +189,18 @@ def patch_self_attn_lora(cfg: DictDefault):
attention_cls._original_forward = self_attn_forward
self_attn_forward, _ = detab_code(self_attn_forward)
assert ORIGINAL_QKV_CODE in self_attn_forward, "Original QKV code not found"
assert any(
qkv_options[0] in self_attn_forward for qkv_options in QKV_PATCHES
), "Original QKV code not found"
assert ORIGINAL_O_CODE in self_attn_forward, "Original O code not found"
self_attn_forward = self_attn_forward.replace(ORIGINAL_QKV_CODE, PATCHED_QKV_CODE)
for qkv_orig, qkv_patched in QKV_PATCHES:
if qkv_orig in self_attn_forward:
self_attn_forward = self_attn_forward.replace(
qkv_orig,
qkv_patched,
)
break
self_attn_forward = self_attn_forward.replace(ORIGINAL_O_CODE, PATCHED_O_CODE)
self_attn_forward = self_attn_forward.replace(
"def forward(",

View File

@@ -18,6 +18,8 @@ SUPPORTED_MULTIPACK_MODEL_TYPES = [
"mixtral",
"qwen2",
"qwen2_moe",
"qwen3",
"qwen3_moe",
"falcon",
"phi",
"phi3",

View File

View File

@@ -0,0 +1,78 @@
"""
Patch prepare_model_for_kbit_training to not upcast everything
"""
import inspect
import logging
import peft
import axolotl
from axolotl.monkeypatch.utils import detab_code
LOG = logging.getLogger(__name__)
ORIGINAL_PREPARE_CODE = """
for param in model.parameters():
if (
(param.dtype == torch.float16) or (param.dtype == torch.bfloat16)
) and param.__class__.__name__ != "Params4bit":
param.data = param.data.to(torch.float32)
"""
PATCHED_PREPARE_CODE = """
for name, param in model.named_parameters():
if (
(param.dtype == torch.float16) or (param.dtype == torch.bfloat16)
) and param.__class__.__name__ != "Params4bit" and all(embed_name not in name for embed_name in ["embed_tokens", "lm_head"]):
param.data = param.data.to(torch.float32)
"""
def get_peft_prep_code() -> str:
prepare = inspect.getsource(peft.utils.other.prepare_model_for_kbit_training)
return prepare
def check_peft_prep_code_is_patchable() -> bool:
prep_code = get_peft_prep_code()
prep_code, _ = detab_code(prep_code)
return ORIGINAL_PREPARE_CODE in prep_code
def patch_peft_prep_code():
"""
monkeypatch create_accelerator_and_postprocess so it checks for additional kwargs
"""
try:
prep_code = get_peft_prep_code()
except OSError:
return
peft.utils.other._original_create_accelerator_and_postprocess = ( # pylint: disable=protected-access
prep_code
)
prep_code, _ = detab_code(prep_code)
if ORIGINAL_PREPARE_CODE not in prep_code:
return
prep_code = prep_code.replace(ORIGINAL_PREPARE_CODE, PATCHED_PREPARE_CODE)
prep_code = prep_code.replace(
"def prepare_model_for_kbit_training(",
"def fixed_prepare_model_for_kbit_training(",
1,
)
items_to_import = []
for item in dir(peft.utils.other):
if item in prep_code:
items_to_import.append(item)
exec( # pylint: disable=exec-used # nosec B102
"from peft.utils.other import (" + ", ".join(x for x in items_to_import) + ")",
globals(),
)
exec(prep_code, globals()) # pylint: disable=exec-used # nosec B102
LOG.info("patching prepare_model_for_kbit_training to allow for overrides")
peft.utils.other.prepare_model_for_kbit_training = fixed_prepare_model_for_kbit_training # pylint: disable=protected-access # pylint: disable=undefined-variable # noqa: F821
axolotl.utils.models.prepare_model_for_kbit_training = fixed_prepare_model_for_kbit_training # pylint: disable=protected-access # pylint: disable=undefined-variable # noqa: F821

View File

@@ -0,0 +1,42 @@
"""
monkeypatch for Trainer _get_learning_rate method
"""
import logging
import torch
LOG = logging.getLogger(__name__)
# TODO remove this patch once https://github.com/huggingface/transformers/pull/37881 is included in a release
def _get_learning_rate(self):
if self.is_deepspeed_enabled:
# with deepspeed's fp16 and dynamic loss scale enabled the optimizer/scheduler steps may
# not run for the first few dozen steps while loss scale is too large, and thus during
# that time `get_last_lr` will fail if called during that warm up stage, so work around it:
try:
last_lr = self.lr_scheduler.get_last_lr()[0]
except AssertionError as e:
if "need to call step" in str(e):
LOG.warning(
"tried to get lr value before scheduler/optimizer started stepping, returning lr=0"
)
last_lr = 0
else:
raise
else:
if isinstance(self.lr_scheduler, torch.optim.lr_scheduler.ReduceLROnPlateau):
last_lr = self.optimizer.param_groups[0]["lr"]
else:
last_lr = self.lr_scheduler.get_last_lr()[0]
if torch.is_tensor(last_lr):
last_lr = last_lr.item()
return last_lr
def patch_trainer_get_lr():
from transformers.trainer import Trainer
Trainer._get_learning_rate = _get_learning_rate # pylint: disable=protected-access

View File

@@ -4,7 +4,7 @@ HF Chat Templates prompt strategy
import logging
from collections import defaultdict
from typing import Any, Dict, List, Optional, Set, Union
from typing import Any, Dict, List, Set, Union
from pydantic import BaseModel
from transformers import ProcessorMixin
@@ -29,11 +29,12 @@ class ChatTemplatePrompter(Prompter):
chat_template: str,
processor=None,
max_length=2048,
message_property_mappings: Optional[Dict[str, str]] = None,
message_field_training: Optional[str] = None,
message_field_training_detail: Optional[str] = None,
message_property_mappings: Dict[str, str] | None = None,
message_field_training: str | None = None,
message_field_training_detail: str | None = None,
field_messages: str = "messages",
roles: Optional[Dict[str, List[str]]] = None,
field_system: str = "system",
roles: Dict[str, List[str]] | None = None,
drop_system_message: bool = False,
):
# check if message_property_mappings is None or empty dict
@@ -41,6 +42,7 @@ class ChatTemplatePrompter(Prompter):
message_property_mappings = {
"role": "role",
"content": "content",
"reasoning_content": "reasoning_content",
}
if roles:
@@ -62,8 +64,9 @@ class ChatTemplatePrompter(Prompter):
self.message_field_training = message_field_training
self.message_field_training_detail = message_field_training_detail
self.field_messages = field_messages
self.field_system = field_system
self.tokenizer = tokenizer
self.processor: Optional[ProcessorMixin] = processor
self.processor: ProcessorMixin | None = processor
self.chat_template = chat_template
self.max_length = max_length
self.drop_system_message = drop_system_message
@@ -220,10 +223,13 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
self,
prompter: "ChatTemplatePrompter",
tokenizer,
train_on_inputs,
sequence_len,
roles_to_train=None,
train_on_eos=None,
train_on_inputs: bool,
sequence_len: int,
roles_to_train: list[str] | None = None,
train_on_eos: str | None = None,
train_on_eot: str | None = None,
eot_tokens: list[str] | None = None,
split_thinking: bool | None = False,
):
super().__init__(prompter, tokenizer, train_on_inputs, sequence_len)
self.prompter: ChatTemplatePrompter = prompter
@@ -236,12 +242,88 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
]
self.train_on_eos = train_on_eos
# Backward compatibility, load from train_on_eos
self.train_on_eot = train_on_eot if train_on_eot is not None else train_on_eos
# Default to eos_token if eot_tokens not provided
self.eot_tokens = (
eot_tokens if eot_tokens is not None else [self.tokenizer.eos_token]
)
self.split_thinking = split_thinking
self.images = "images"
LOG.debug(
f"The chat template uses the following properites on the message: {self.prompter.chat_template_msg_variables}"
)
self._validate_eot_and_eos_tokens()
def _validate_eot_and_eos_tokens(self):
"""
- Validates that EOT tokens (or eos_token) are in the chat_template
- Checks if EOT tokens are encoded as multiple tokens in the tokenizer.
- Checks for potential conflicts between train_on_eos and train_on_eot.
"""
if self.prompter.chat_template is None:
# Usually this should not happen
LOG.warning(
"No chat template provided, skipping EOT and EOS token validation"
)
return
# If the EOT token is the same as the EOS token, we need to check differently
if len(self.eot_tokens) == 1 and self.eot_tokens[0] == self.tokenizer.eos_token:
# Check if the eos_token is in the chat_template or as a variable `eos_token`
# Note: we check for `eos_token` in the string, but it could possibly not be a variable
if (
self.tokenizer.eos_token not in self.prompter.chat_template
and "eos_token" not in self.prompter.chat_template
):
LOG.warning(
f"EOS token '{self.tokenizer.eos_token}' not found in chat_template. Please check if your template/EOS token is correct."
)
return
# Create a new list to store tokens that should be kept
valid_eot_tokens = []
for token in self.eot_tokens:
# Check if EOT token is in the chat_template
if token not in self.prompter.chat_template:
LOG.warning(f"EOT token '{token}' not found in chat_template.")
# Don't add to the valid tokens list
continue
valid_eot_tokens.append(token)
# Replace the original list with the filtered one
self.eot_tokens = valid_eot_tokens
for token in self.eot_tokens:
# If token in template, check if EOT token is in tokenizer and not encoded as multiple tokens
token_ids = self.tokenizer.encode(token, add_special_tokens=False)
if not token_ids:
raise ValueError(
"EOT token encoding failed. Please check if the token is valid and can be encoded."
)
if token_ids and len(token_ids) > 1:
raise ValueError(
f"EOT token '{token}' is encoded as multiple tokens: {token_ids}. Please add it under `tokens: ` in the config "
"or (recommended) override unused added_tokens via `added_tokens_overrides: `."
)
# If eos_token is in eot_tokens and conflict between train_on_eos and train_on_eot, raise an error
if (
self.tokenizer.eos_token in self.eot_tokens
and self.train_on_eos != self.train_on_eot
):
raise ValueError(
"Conflict between train_on_eos and train_on_eot. eos_token is in eot_tokens and train_on_eos != train_on_eot"
f"train_on_eos: {self.train_on_eos}, train_on_eot: {self.train_on_eot}"
f"eot_tokens: {self.eot_tokens}"
f"eos_token: {self.tokenizer.eos_token}"
)
@property
def supports_batched(self) -> bool:
# Let calling code know we can handle lists of examples
@@ -285,6 +367,7 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
if (
not self.roles_to_train
and not self.train_on_eos
and not self.train_on_eot
and not self.prompter.message_field_training # type: ignore
and not self.prompter.message_field_training_detail # type: ignore
):
@@ -320,6 +403,7 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
labels = [IGNORE_TOKEN_ID] * len(input_ids)
last_eos_idx = -1
last_eot_idx = -1
for index, turn in enumerate(turns):
role = turn.get("role")
content = turn.get("content")
@@ -368,24 +452,45 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
LOG.debug(f"Labels after processing turn {index}: {labels}")
# Handle EOS token
eos_idx = self.find_first_eos_token(input_ids, start_idx=turn_end_idx)
if abs(eos_idx - turn_end_idx) <= 3: # Allow for some template padding
last_eos_idx = eos_idx
if self.train_on_eos == "all" or (
self.train_on_eos == "turn" and should_train
):
labels[eos_idx] = input_ids[eos_idx]
LOG.debug(f"EOS token set for training at index {eos_idx}")
else:
LOG.debug(
f"EOS token missing after turn {turn}. eos_idx: {eos_idx}, turn_end_idx: {turn_end_idx}"
)
# Handle special tokens (EOT and EOS)
for token_type, find_func, train_option in [
("EOT", self.find_first_eot_token, self.train_on_eot),
("EOS", self.find_first_eos_token, self.train_on_eos),
]:
token_idx = find_func(input_ids, start_idx=turn_end_idx)
# Handle 'last' option for train_on_eos
if self.train_on_eos == "last" and last_eos_idx != -1:
labels[last_eos_idx] = input_ids[last_eos_idx]
LOG.debug(f"Last EOS token set for training at index {last_eos_idx}")
if (
token_idx != -1 and abs(token_idx - turn_end_idx) <= 3
): # Allow for some template padding
# Update the last token index
if token_type == "EOT": # nosec B105
last_eot_idx = token_idx
else:
last_eos_idx = token_idx
# Set labels if needed for this turn
if train_option == "all" or (
train_option == "turn" and should_train
):
labels[token_idx] = input_ids[token_idx]
LOG.debug(
f"{token_type} token set for training at index {token_idx}"
)
else:
LOG.debug(
f"{token_type} token missing after turn {turn}. {token_type.lower()}_idx: {token_idx}, turn_end_idx: {turn_end_idx}"
)
# Handle 'last' option for special tokens
for token_type, last_idx, train_option in [
("EOT", last_eot_idx, self.train_on_eot),
("EOS", last_eos_idx, self.train_on_eos),
]:
if train_option == "last" and last_idx != -1:
labels[last_idx] = input_ids[last_idx]
LOG.debug(
f"Last {token_type} token set for training at index {last_idx}"
)
LOG.debug(f"Final labels: {labels}")
@@ -402,6 +507,25 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
return i
return -1
def find_first_eot_token(self, input_ids, start_idx):
"""Find the first EOT token in the input_ids starting from start_idx."""
# Get token IDs for all EOT tokens
eot_token_ids = []
for token in self.eot_tokens:
token_ids = self.tokenizer.encode(token, add_special_tokens=False)
if len(token_ids) != 1:
raise ValueError(
f"EOT token '{token}' is encoded as multiple tokens: {token_ids}. Please add it under `tokens: ` in the config."
)
eot_token_ids.append(token_ids[0]) # Use the last token ID if multiple
# Search for any of the EOT token IDs
for i in range(start_idx, len(input_ids)):
if input_ids[i] in eot_token_ids:
return i
return -1
def find_turn(self, turns: list[dict], turn_idx: int):
"""
Locate the starting and ending indices of the specified turn in a conversation.
@@ -488,6 +612,17 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
def get_conversation_thread(self, prompt):
turns = []
possible_sys_turn = self.transform_message(
prompt[self.prompter.field_messages][0]
)
if (
possible_sys_turn["role"] != "system"
and self.prompter.field_system in prompt
):
turn = {"role": "system", "content": prompt[self.prompter.field_system]}
turns.append(turn)
for message in prompt[self.prompter.field_messages]:
transformed_message = self.transform_message(message)
@@ -523,6 +658,52 @@ class ChatTemplateStrategy(PromptTokenizingStrategy):
transformed_message["role"], transformed_message["role"]
)
# TODO handle reasoning_content with split_thinking
# if the role is assistant that we want to use reasoning_content
if self.split_thinking and transformed_message["role"] == "assistant":
content = transformed_message["content"]
thinking_pairs = [
("<think>", "</think>"),
("<reasoning>", "</reasoning>"),
("<|begin_of_thought|>", "<|end_of_thought|>"),
]
content_pairs = [("<|begin_of_solution|>", "<|end_of_solution|>")]
for tpair in thinking_pairs:
# check if the thinking pair is in the content
if tpair[0] in content and tpair[1] in content:
# find the start and end index of the thinking pair
t_start_idx = content.find(tpair[0])
t_end_idx = content.find(tpair[1])
# get the thinking content
thinking_content = content[t_start_idx + len(tpair[0]) : t_end_idx]
transformed_message["reasoning_content"] = thinking_content.strip()
# take remainder of the content
# strip whitespace from beginning of the remainder (thinking tokens)
remainder = content[t_end_idx + len(tpair[1]) :].lstrip()
# check if the content pair is in the remainder
cpair_found = False
for cpair in content_pairs:
if cpair[0] in remainder and cpair[1] in remainder:
# find the start and end index of the content pair
c_start_idx = remainder.find(cpair[0])
c_end_idx = remainder.find(cpair[1])
# get the content content
content_content = remainder[
c_start_idx + len(cpair[0]) : c_end_idx
]
transformed_message["content"] = content_content.strip()
cpair_found = True
break
# else, the content is the remainder
if not cpair_found:
transformed_message["content"] = remainder
break
# Determine which keys in the original message were not mapped
mapped_values = set(self.prompter.message_property_mappings.values())
remaining_keys = set(message) - mapped_values
@@ -555,13 +736,16 @@ class StrategyLoader:
"sequence_len": cfg.sequence_len,
"roles_to_train": ds_cfg.get("roles_to_train", ["assistant"]),
"train_on_eos": ds_cfg.get("train_on_eos", "turn"),
"train_on_eot": ds_cfg.get("train_on_eot", None),
"eot_tokens": cfg.get("eot_tokens", None), # loads from cfg, not ds_cfg
"split_thinking": ds_cfg.get("split_thinking", False),
}
def __call__(
self,
tokenizer,
cfg,
ds_cfg: Optional[Union[Dict[str, Any], DatasetConfig]] = None,
ds_cfg: Union[Dict[str, Any], DatasetConfig] | None = None,
processor=None,
):
if ds_cfg is None:

View File

@@ -2,6 +2,7 @@
import importlib
import inspect
import logging
import os
import signal
import sys
@@ -12,7 +13,6 @@ from typing import Any, Dict
import torch
import transformers.modelcard
from accelerate.logging import get_logger
from accelerate.utils import save_fsdp_model
from datasets import Dataset
from huggingface_hub.errors import OfflineModeIsEnabled
@@ -21,15 +21,16 @@ from transformers import PreTrainedModel, PreTrainedTokenizer, ProcessorMixin
from transformers.integrations.deepspeed import is_deepspeed_zero3_enabled
from transformers.trainer import Trainer
from axolotl.cli.art import print_axolotl_text_art
from axolotl.common.datasets import TrainDatasetMeta
from axolotl.contribs.lgpl import ( # pylint: disable = no-name-in-module
fix_untrained_tokens,
)
from axolotl.core.trainer_builder import HFCausalTrainerBuilder, HFRLTrainerBuilder
from axolotl.core.trainers.builders import HFCausalTrainerBuilder, HFRLTrainerBuilder
from axolotl.core.trainers.mixins.sequence_parallel import (
SequenceParallelContextManager,
)
from axolotl.logging_config import configure_logging
from axolotl.integrations.base import PluginManager
from axolotl.utils.dict import DictDefault
from axolotl.utils.distributed import cleanup_distributed
from axolotl.utils.freeze import freeze_layers_except
@@ -41,8 +42,7 @@ try:
except ImportError:
BetterTransformer = None
configure_logging()
LOG = get_logger(__name__)
LOG = logging.getLogger(__name__)
def setup_model_and_tokenizer(
@@ -63,7 +63,6 @@ def setup_model_and_tokenizer(
# Load tokenizer
LOG.debug(
f"loading tokenizer... {cfg.tokenizer_config or cfg.base_model_config}",
main_process_only=True,
)
tokenizer = load_tokenizer(cfg)
@@ -295,8 +294,23 @@ def save_trained_model(
trainer.model.save_pretrained(
cfg.output_dir, safe_serialization=safe_serialization
)
model.save_pretrained(cfg.output_dir, safe_serialization=safe_serialization)
if hasattr(cfg, "llmcompressor") and cfg.llmcompressor:
# TODO: add integration support so this can be implemented completely within the plugin
from axolotl.integrations.llm_compressor.utils import (
save_compressed_model,
)
save_compressed_model(
model=model,
output_dir=cfg.output_dir,
trainer=trainer,
safe_serialization=safe_serialization,
save_compressed=cfg.llmcompressor.save_compressed,
)
def create_model_card(cfg: DictDefault, trainer: Trainer):
"""
@@ -502,6 +516,8 @@ def train(
Returns:
Tuple of (model, tokenizer) after training
"""
print_axolotl_text_art()
# Setup model, tokenizer, (causal or RLHF) trainer, etc.
(
trainer,
@@ -511,6 +527,9 @@ def train(
processor,
) = setup_model_and_trainer(cfg, dataset_meta)
plugin_manager = PluginManager.get_instance()
plugin_manager.post_trainer_create(cfg, trainer)
# Handle untrained tokens if configured
safe_serialization = cfg.save_safetensors is True
train_dataset = dataset_meta.train_dataset
@@ -533,4 +552,6 @@ def train(
if not cfg.use_ray:
cleanup_distributed()
plugin_manager.post_train(cfg, model)
return model, tokenizer, trainer

View File

@@ -43,3 +43,12 @@ def set_pytorch_cuda_alloc_conf():
os.environ["PYTORCH_CUDA_ALLOC_CONF"] = (
"expandable_segments:True,roundup_power2_divisions:16"
)
def patch_optimized_env():
"""
Patch environment variables to improve VRAM usage and increase download speed
"""
if os.getenv("HF_HUB_ENABLE_HF_TRANSFER") is None:
os.environ["HF_HUB_ENABLE_HF_TRANSFER"] = "1"
set_pytorch_cuda_alloc_conf()

View File

@@ -3,6 +3,7 @@
from __future__ import annotations
import gc
import json
import logging
import os
import traceback
@@ -45,11 +46,11 @@ from axolotl.utils.distributed import (
from axolotl.utils.schemas.config import AxolotlInputConfig
if TYPE_CHECKING:
from axolotl.core.trainer_builder import AxolotlTrainingArguments
from axolotl.core.training_args import AxolotlTrainingArguments
IGNORE_INDEX = -100
LOG = logging.getLogger("axolotl.callbacks")
LOG = logging.getLogger(__name__)
class EvalFirstStepCallback(
@@ -808,11 +809,44 @@ class SaveAxolotlConfigtoWandBCallback(TrainerCallback):
artifact.add_file(temp_file.name)
wandb.log_artifact(artifact)
wandb.save(temp_file.name)
LOG.info(
"The Axolotl config has been saved to the WandB run under files."
)
LOG.info(
"The Axolotl config has been saved to the WandB run under files."
)
except (FileNotFoundError, ConnectionError) as err:
LOG.warning(f"Error while saving Axolotl config to WandB: {err}")
if args.deepspeed:
try:
# sync config to top level in run, cannot delete file right away because wandb schedules it to be synced even w/policy = 'now', so let OS delete it later.
with NamedTemporaryFile(
mode="w",
delete=False,
suffix=".json",
prefix="deepspeed_config_",
) as temp_file:
skip_upload = False
if isinstance(args.deepspeed, dict):
json.dump(args.deepspeed, temp_file, indent=4)
elif isinstance(args.deepspeed, str) and os.path.exists(
args.deepspeed
):
copyfile(args.deepspeed, temp_file.name)
else:
skip_upload = True
if not skip_upload:
artifact = wandb.Artifact(
f"deepspeed-config-{wandb.run.id}",
type="deepspeed-config",
)
artifact.add_file(temp_file.name)
wandb.log_artifact(artifact)
wandb.save(temp_file.name)
LOG.info(
"The DeepSpeed config has been saved to the WandB run under files."
)
except (FileNotFoundError, ConnectionError) as err:
LOG.warning(f"Error while saving DeepSpeed config to WandB: {err}")
return control
@@ -834,3 +868,28 @@ class GCCallback(TrainerCallback):
):
torch.cuda.empty_cache()
gc.collect()
def colab_inference_post_train_callback(trainer: Trainer):
class ColabCallback(TrainerCallback):
"""Callback to prep model for inference on Google Colab"""
def __init__(self, cfg):
self.gpu_name = torch.cuda.get_device_name(0)
self.cfg = cfg
def on_train_end(
self, args, state, control, **kwargs
): # pylint: disable=unused-argument
"""
handle T4 gpu, we need to convert attention to eager for inference
"""
if "Tesla T4" in self.gpu_name and self.cfg.xformers_attention:
trainer.model.config._attn_implementation = ( # pylint: disable=protected-access
"eager"
)
trainer.model.gradient_checkpointing_disable()
trainer.model.config.use_cache = True
trainer.model.eval()
return ColabCallback

File diff suppressed because one or more lines are too long

View File

@@ -59,7 +59,7 @@ def choose_device(cfg):
def resolve_dtype(cfg):
if (
cfg.bf16 == "auto" and not cfg.use_ray
not cfg.fp16 and cfg.bf16 == "auto" and not cfg.use_ray
): # if we use ray we want to defer this check to the worker node
if is_torch_bf16_gpu_available():
LOG.debug("bf16 support detected, enabling for this configuration.")
@@ -67,9 +67,12 @@ def resolve_dtype(cfg):
else:
LOG.debug("bf16 support not detected, disabling for this configuration.")
cfg.bf16 = False
if cfg.fp16 is None:
if cfg.fp16 is None and not cfg.float16:
cfg.fp16 = True
if cfg.fp16 and cfg.bf16 == "auto":
cfg.bf16 = False
if cfg.device == "mps":
cfg.load_in_8bit = False
cfg.tf32 = False

View File

@@ -204,7 +204,37 @@ def load_prepare_preference_datasets(cfg):
else:
eval_dataset = load_split(cfg.test_datasets, cfg)
if not eval_dataset:
eval_dataset = None
if cfg.val_set_size:
# ensure we end up with the same fingerprint by doing rank0 first and being able to cache
to_hash_train = (
train_dataset._fingerprint # pylint: disable=protected-access
+ "|"
+ str(cfg.val_set_size)
+ "|"
+ "train"
+ "|"
+ str(cfg.seed or 42)
)
to_hash_test = (
train_dataset._fingerprint # pylint: disable=protected-access
+ "|"
+ str(cfg.val_set_size)
+ "|"
+ "test"
+ "|"
+ str(cfg.seed or 42)
)
train_fingerprint = md5(to_hash_train)
test_fingerprint = md5(to_hash_test)
ds_w_test_split = train_dataset.train_test_split(
test_size=cfg.val_set_size,
seed=cfg.seed,
shuffle=False,
train_new_fingerprint=train_fingerprint,
test_new_fingerprint=test_fingerprint,
)
eval_dataset = ds_w_test_split["test"]
train_dataset = ds_w_test_split["train"]
if not train_is_preprocessed:
_save_preprocessed_ds(cfg, cfg.datasets, train_dataset)

View File

@@ -281,6 +281,10 @@ def load_dataset_w_config(
**load_ds_kwargs,
)
if not ds:
raise ValueError("unhandled dataset load")
raise ValueError(
"The dataset could not be loaded. This could be due to a misconfigured dataset path "
f"({config_dataset.path}). Try double-check your path / name / data_files. "
"This is not caused by the dataset type."
)
return ds

View File

@@ -69,17 +69,27 @@ def barrier():
dist.barrier()
def is_main_process():
def is_main_process(use_environ=False):
"""
Check if the current process is the main process. If not in distributed mode,
always return `True`.
Args:
- use_environ (bool, optional): Use environment variable to determine main process.
Returns:
- bool: `True` if the current process is the main process, `False` otherwise.
"""
if use_environ:
return os.environ.get("LOCAL_RANK", "0") == "0"
if not is_distributed():
return True
return dist.get_rank() == 0
def is_local_main_process():
def is_local_main_process(use_environ=False):
if use_environ:
return os.environ.get("LOCAL_RANK", "0") == "0"
return PartialState().is_local_main_process
@@ -99,17 +109,6 @@ def cleanup_distributed():
torch.distributed.destroy_process_group()
@contextmanager
def zero_only():
"""
Context manager that only runs the enclosed block on the main rank.
"""
if is_main_process():
yield
else:
yield None
@contextmanager
def zero_first(is_main):
"""

View File

@@ -1,15 +1,36 @@
"""custom checkpointing utils"""
import importlib
from functools import partial
from packaging import version
from axolotl.utils.gradient_checkpointing.unsloth import (
Unsloth_Offloaded_Gradient_Checkpointer,
)
transformers_version = version.parse(importlib.metadata.version("transformers"))
if transformers_version > version.parse("4.51.3"):
from transformers.modeling_layers import GradientCheckpointingLayer
def uses_gc_layers(decoder_layer):
return isinstance(decoder_layer.func.__self__, GradientCheckpointingLayer)
else:
def uses_gc_layers(_):
return False
def hf_grad_checkpoint_offload_wrapper(
decoder_layer, *args, use_reentrant=None
): # pylint: disable=unused-argument
if uses_gc_layers(decoder_layer):
return Unsloth_Offloaded_Gradient_Checkpointer.apply(
decoder_layer,
*args,
)
return Unsloth_Offloaded_Gradient_Checkpointer.apply(
(
decoder_layer.func.__self__

View File

@@ -53,6 +53,7 @@ from transformers.integrations.deepspeed import (
)
from axolotl.common.architectures import MOE_ARCH_BLOCK
from axolotl.integrations.base import PluginManager
from axolotl.models.mamba import fix_mamba_attn_for_loss
from axolotl.monkeypatch.multipack import (
SUPPORTED_MULTIPACK_MODEL_TYPES,
@@ -67,13 +68,14 @@ from axolotl.utils.distributed import (
get_device_count,
get_device_type,
is_local_main_process,
zero_only,
is_main_process,
)
from axolotl.utils.gradient_checkpointing import hf_grad_checkpoint_offload_wrapper
from axolotl.utils.lora_embeddings import get_linear_embedding_layers
from axolotl.utils.model_shard_quant import load_sharded_model, load_sharded_model_quant
LOG = logging.getLogger(__name__)
PLUGIN_MANAGER = PluginManager.get_instance()
MULTIMODAL_AUTO_MODEL_MAPPING = {
"mllama": MllamaForConditionalGeneration,
@@ -139,6 +141,22 @@ def check_model_config(cfg: DictDefault, model_config: PretrainedConfig):
hasattr(model_config, "quantization_config")
and model_config.quantization_config
)
# Detect compressed-tensors config
is_compressed_tensors_config = (
quant_config_exists
and model_config.quantization_config.get("quant_method") == "compressed-tensors"
)
if is_compressed_tensors_config:
if model_config.quantization_config.get("config_groups"):
LOG.warning(
"Found `config_groups` in a compressed-tensors config. "
"QAT integration with llmcompressor is not tested."
)
# Skip further quant checks for compressed-tensors
return
quant_config_method_is_gptq = (
quant_config_exists
and "quant_method" in model_config.quantization_config
@@ -435,7 +453,7 @@ def load_tokenizer(cfg):
{"additional_special_tokens": additional_special_tokens}
)
with zero_only():
if is_main_process(use_environ=True):
LOG.debug(f"EOS: {tokenizer.eos_token_id} / {tokenizer.eos_token}")
LOG.debug(f"BOS: {tokenizer.bos_token_id} / {tokenizer.bos_token}")
LOG.debug(f"PAD: {tokenizer.pad_token_id} / {tokenizer.pad_token}")
@@ -538,11 +556,21 @@ class ModelLoader:
self.auto_model_loader = AutoModelForCausalLM # pylint: disable=invalid-name
def apply_patches(self) -> None:
if self.cfg.xformers_attention and self.cfg.sample_packing:
from axolotl.monkeypatch.attention import patch_xformers_attn_over_fa2
patch_xformers_attn_over_fa2()
self.cfg.flash_attention = True
if self.cfg.fsdp_config and str(self.cfg.fsdp_config.fsdp_version) == "2":
from axolotl.monkeypatch.accelerate.fsdp2 import patch_accelerate_fsdp_utils
patch_accelerate_fsdp_utils()
if self.cfg.adapter and self.cfg.embeddings_skip_upcast:
from axolotl.monkeypatch.peft.utils import patch_peft_prep_code
patch_peft_prep_code()
if self.cfg.flex_attention:
from axolotl.monkeypatch.attention.flex_attn import (
patch_flex_make_mask,
@@ -571,10 +599,8 @@ class ModelLoader:
patch_gemma3conditionalgeneration_forward()
# load any patches from plugins
from axolotl.integrations.base import PluginManager
plugin_manager = PluginManager.get_instance()
plugin_manager.pre_model_load(self.cfg)
PLUGIN_MANAGER.pre_model_load(self.cfg)
# monkey patch to allow additional Accelerator init kwargs
if self.cfg.fp8:
@@ -1164,7 +1190,7 @@ class ModelLoader:
],
)
def prepare_model(self, qlora_fsdp) -> None:
def prepare_model(self, qlora_fsdp: bool) -> None:
skip_prepare_model_for_kbit_training = False
if self.cfg.model_config_type == "qwen" and self.cfg.adapter == "lora":
# Qwen doesn't play nicely with LoRA if this is enabled
@@ -1252,6 +1278,7 @@ class ModelLoader:
try:
skip_move_to_device = self.build_model(qlora_fsdp)
PLUGIN_MANAGER.post_model_build(self.cfg, self.model)
except Exception as err: # pylint: disable=broad-exception-caught
LOG.exception(err)
raise err
@@ -1293,7 +1320,10 @@ class ModelLoader:
# make sure these are fp32 per Ramesh et al. (2021)
embedding_modules = get_linear_embedding_layers(self.cfg.model_config_type)
if not self.cfg.fsdp:
# FSDP doesn't like mixed Float and BFloat16
# we don't run this during FSDP because this will leave mixed
# float and bfloat16 dtypes in the model which FSDP doesn't like
if self.cfg.load_in_4bit and self.cfg.embeddings_skip_upcast:
embedding_modules = []
self.convert_embedding_modules_dtype(
embedding_modules,
dist_dtype=torch.float32,
@@ -1331,6 +1361,8 @@ class ModelLoader:
before_kbit_train_or_finetune=False,
)
PLUGIN_MANAGER.pre_lora_load(self.cfg, self.model)
# ---------------------------------------------------------
# load lora or adapter
# ---------------------------------------------------------
@@ -1392,7 +1424,7 @@ class ModelLoader:
gc.collect()
torch.cuda.empty_cache()
# TODO resume_from_checkpoint handling
PLUGIN_MANAGER.post_model_load(self.cfg, self.model)
return self.model, lora_config
@@ -1427,9 +1459,13 @@ def load_adapter(model, cfg, adapter, inference=False):
if hasattr(model, "enable_input_require_grads"):
model.enable_input_require_grads()
if adapter in ["lora", "qlora"]:
return load_lora(model, cfg, inference=inference)
model, lora_config = load_lora(model, cfg, inference=inference)
PLUGIN_MANAGER.post_lora_load(cfg, model)
return model, lora_config
if adapter == "llama-adapter":
return load_llama_adapter(model, cfg)
model, lora_config = load_llama_adapter(model, cfg)
PLUGIN_MANAGER.post_lora_load(cfg, model)
return model, lora_config
raise NotImplementedError(f"{adapter} peft adapter not available")

View File

@@ -1,10 +1,13 @@
# pylint: skip-file
"""
Multipack Batch Sampler
Multipack Batch Sampler - An efficient batch sampler for packing variable-length sequences
into fixed-capacity batches to optimize memory usage and training throughput.
"""
import logging
import math
from typing import Any, Iterable, List, Union
from concurrent.futures import ProcessPoolExecutor
from multiprocessing import cpu_count, get_context
from typing import Iterable, Union
import numba
import numpy as np
@@ -13,26 +16,39 @@ from torch.utils.data import BatchSampler, Sampler, SequentialSampler
from axolotl.utils.distributed import reduce_and_broadcast
LOG = logging.getLogger(__name__)
LOG.setLevel(logging.INFO)
@numba.njit
def ffd_check(a: np.ndarray, c: int, n: int):
# First-fit-decreasing bin packing
# Check if a[] could fit in n bins with capacity c
# https://en.wikipedia.org/wiki/First-fit-decreasing_bin_packing
def ffd_check(sequence_lengths: np.ndarray, bin_capacity: int, num_bins: int):
"""
First-fit-decreasing bin packing algorithm check
a = np.sort(a)[::-1]
bins = np.full((n,), c, dtype=a.dtype)
for size in a:
Checks if sequences with the given lengths could fit in the specified number of bins
Args:
sequence_lengths: Array of sequence lengths
bin_capacity: Maximum capacity of each bin
num_bins: Number of bins available
Returns:
True if all sequences can be packed, False otherwise
"""
# Sort sequence lengths in descending order for optimal packing
sequence_lengths = np.sort(sequence_lengths)[::-1]
# Initialize all bins with full capacity
bins = np.full((num_bins,), bin_capacity, dtype=sequence_lengths.dtype)
# Try to place each sequence in the first bin it fits
for size in sequence_lengths:
not_found = True
for idx in range(n):
for idx in range(num_bins):
if bins[idx] >= size:
bins[idx] -= size
not_found = False
break
# If no bin could fit this sequence, packing failed
if not_found:
return False
@@ -40,86 +56,155 @@ def ffd_check(a: np.ndarray, c: int, n: int):
@numba.njit
def ffd_with_result(a: np.ndarray, c: int, start_index: int):
# First-fit-decreasing bin packing (with result return)
def pack_group(
sequence_lengths: np.ndarray,
group_offset: int,
bin_capacity: int,
max_bins: int,
bin_size: int,
safe_mode: bool = True,
):
"""
Pack a group of sequences into bins using First-Fit Decreasing algorithm
indices = np.argsort(a)[::-1]
a = a[indices]
Args:
sequence_lengths: Array of sequence lengths
group_offset: Offset to apply to indices when returning results
bin_capacity: Maximum capacity of each bin
max_bins: Maximum number of bins to use
bin_size: Maximum number of sequences per bin
safe_mode: If True, use a more conservative packing approach
bins: List[Any] = []
bins_result: List[Any] = []
for a_id, size in enumerate(a):
add_new = True
for idx in range(len(bins)):
if bins[idx] >= size:
bins[idx] -= size
bins_result[idx].append(indices[a_id] + start_index)
add_new = False
Returns:
List of bins, where each bin contains indices of sequences assigned to it
"""
bins_remaining_space: list = [] # Tracks remaining capacity in each bin
bins_assigned_sequences: list = [] # Tracks sequence indices assigned to each bin
for seq_id, size in enumerate(sequence_lengths):
global_idx = seq_id + group_offset
# Try to place sequence in existing bins
add_new_bin = True
for bin_idx, _ in enumerate(bins_remaining_space):
if (
bins_remaining_space[bin_idx] >= size
and len(bins_assigned_sequences[bin_idx]) < bin_size
):
bins_remaining_space[bin_idx] -= size
bins_assigned_sequences[bin_idx].append(global_idx)
add_new_bin = False
break
if add_new:
bins.append(c - size)
bins_result.append([indices[a_id] + start_index])
# Create a new bin if needed and if we haven't reached the limit
if add_new_bin:
if len(bins_remaining_space) >= max_bins and safe_mode:
# In safe mode, skip items that would exceed max_bins
continue
bins_remaining_space.append(bin_capacity - size)
bins_assigned_sequences.append([global_idx])
return bins_result
# Safety check to avoid infinite bins
if len(bins_remaining_space) > len(sequence_lengths):
break
return bins_assigned_sequences
@numba.njit
def allocate(
lengths: np.ndarray, lengths_cumsum: np.ndarray, rank: int, c: int, n: int
# Define a standalone function for multiprocessing
def _process_group(args):
group_lengths, start_idx, bin_capacity, max_bins, bin_size, safe_mode = args
return pack_group(
group_lengths, start_idx, bin_capacity, max_bins, bin_size, safe_mode
)
def pack_parallel(
sequence_lengths: np.ndarray,
bin_capacity: int,
group_size: int,
bin_size: int,
num_processes: int | None = None,
safe_mode: bool = True,
mp_start_method: str | None = "spawn",
):
# Dynamic batch allocator, similar to Multifit
# https://en.wikipedia.org/wiki/Multifit_algorithm
# ~99.5% efficiency on OpenChat training set (12 * 2048 ctx len)
"""
Pack sequences into bins using parallel processing
s = 0
start_index = 0
result = []
Args:
sequence_lengths: Array of sequence lengths
bin_capacity: Maximum capacity of each bin as total number of tokens
group_size: Number of sequences to process in each group
bin_size: Maximum number of bins to use
num_processes: Number of parallel processes to use
safe_mode: If True, use a more conservative packing approach
mp_start_method: Multiprocessing start method ('fork', 'spawn', 'forkserver').
'spawn' is often safer with Numba/PyTorch.
Set to None to use system default.
Returns:
List of bins, where each bin contains indices of sequences assigned to it
"""
num_items = len(sequence_lengths)
if num_processes is None:
num_processes = max(1, min(num_items // group_size, cpu_count()))
while True:
# binary search [l, r)
left = 1
right = 1 + np.searchsorted(lengths_cumsum[start_index:], s + c * n, "right")
# Create tasks for parallel processing
tasks = []
for i in range(0, num_items, group_size):
group_lengths = sequence_lengths[i : i + group_size]
max_bins = len(group_lengths) # Allow as many bins as items in the group
tasks.append((group_lengths, i, bin_capacity, max_bins, bin_size, safe_mode))
while right - left > 1:
mid = (left + right) // 2
if ffd_check(lengths[start_index : start_index + mid], c, n):
left = mid
else:
right = mid
# Process groups in parallel
all_bins = []
# use length l
batch = ffd_with_result(
lengths[start_index : start_index + left], c, start_index
)
assert len(batch) <= n
if len(batch) < n:
break
mp_ctx = None
if mp_start_method:
try:
mp_ctx = get_context(mp_start_method)
except ValueError:
LOG.warning(
f"Failed to get multiprocessing context '{mp_start_method}'. "
f"Falling back to default. Available: {get_context().get_all_start_methods()}"
)
mp_ctx = (
None # Fallback to default context if specified one is not available
)
start_index += left
s = lengths_cumsum[start_index - 1]
if num_processes == 1:
LOG.debug("Using single process for pack_parallel, running sequentially.")
for task_args in tasks:
group_bins = _process_group(task_args)
all_bins.extend(group_bins)
else:
# Use ProcessPoolExecutor only if num_processes > 1
# Pass mp_context if available
with ProcessPoolExecutor(
max_workers=num_processes, mp_context=mp_ctx
) as executor:
for group_bins in executor.map(_process_group, tasks):
all_bins.extend(group_bins)
# add local rank
result.append(batch[rank])
return result, s, len(result) * c * n
return all_bins
@numba.njit
def allocate_sequentially(lengths: np.ndarray, rank: int, c: int, n: int):
def allocate_sequentially(
sequence_lengths: np.ndarray, rank: int, bin_capacity: int, num_ranks: int
):
"""
Sequential allocator that preserves example order
Parameters:
- lengths: The lengths of all examples
- rank: The current rank (for distributed training)
- c: The capacity of each bin (maximum sequence length)
- n: Number of ranks
Args:
sequence_lengths: The lengths of all examples
rank: The current rank (for distributed training)
bin_capacity: The capacity of each bin (maximum sequence length)
num_ranks: Number of ranks (processes/GPUs)
Returns:
- result: List of batches for the current rank
- total_used: Number of actual example tokens
- total_slots: Maximum theoretical number of example tokens (number of bins * bin capacity)
rank_batches: List of batches for the current rank
total_tokens_used: Number of actual example tokens
total_token_slots: Maximum theoretical number of example tokens (number of bins * bin capacity)
"""
result = []
total_used = 0
@@ -127,9 +212,9 @@ def allocate_sequentially(lengths: np.ndarray, rank: int, c: int, n: int):
# First, do sequential packing into bins
all_bins = []
current_bin = [0 for i in range(0)] # numba hint
remaining_capacity = c
remaining_capacity = bin_capacity
for idx, size in enumerate(lengths):
for idx, size in enumerate(sequence_lengths):
if size <= remaining_capacity:
# Example fits in current bin
current_bin.append(idx)
@@ -140,7 +225,7 @@ def allocate_sequentially(lengths: np.ndarray, rank: int, c: int, n: int):
if current_bin: # Add non-empty bin to all_bins
all_bins.append(current_bin)
current_bin = [idx]
remaining_capacity = c - size
remaining_capacity = bin_capacity - size
total_used += size
# Add the last bin if not empty
@@ -148,132 +233,227 @@ def allocate_sequentially(lengths: np.ndarray, rank: int, c: int, n: int):
all_bins.append(current_bin)
# Assign bins to ranks - each rank gets every n-th bin
for bin_idx in range(rank, len(all_bins), n):
for bin_idx in range(rank, len(all_bins), num_ranks):
result.append(all_bins[bin_idx])
return result, total_used, len(all_bins) * c
return result, total_used, len(all_bins) * bin_capacity
class MultipackBatchSampler(BatchSampler):
"""Batch sampler class for multipack"""
"""
Batch sampler class for efficient packing of variable-length sequences
This sampler packs sequences into fixed-capacity bins (batches) to maximize
GPU memory utilization and training throughput by reducing padding.
It supports both parallel packing (using FFD algorithm) and
sequential packing (preserving original sequence order).
"""
def __init__(
self,
sampler: Union[Sampler[int], Iterable[int]],
batch_size: int,
batch_max_len: int,
lengths: np.ndarray,
packing_efficiency_estimate: float = 1.0,
drop_last: bool = False,
num_count_samples: int = 16,
sequential: bool = False,
**kwargs,
batch_size: int, # Number of bins per batch
batch_max_len: int, # Maximum sequence length (bin capacity)
lengths: np.ndarray, # Sequence lengths
packing_efficiency_estimate: float = 1.0, # Initial efficiency estimate
drop_last: bool = False, # Whether to drop final batches (might be incomplete)
num_count_samples: int = 16, # Number of times to estimate batch count
sequential: bool = False, # Whether to use sequential packing
group_size: int = 100_000, # Size of groups for parallel packing
bin_size: int = 200, # The max number of samples that can be packed in a single bin
num_processes: int | None = None, # Number of processes for parallel packing
safe_mode: bool = True, # Conservative packing to prevent training instability
**kwargs, # pylint: disable=unused-argument
):
super().__init__(sampler, batch_size, drop_last)
self.batch_size = batch_size
self.batch_max_len = batch_max_len
self.lengths: np.ndarray = lengths
self.lengths = np.array(lengths, dtype=np.int32)
self.packing_efficiency_estimate = packing_efficiency_estimate or 1.0
self.sequential = sequential
self.group_size = group_size
self.bin_size = bin_size
self.num_processes = num_processes
self.safe_mode = safe_mode
assert isinstance(self.lengths, np.ndarray)
self.epoch = 0
# statistics
self.eff_total_used = 0
self.eff_total_slots = 0
# Efficiency statistics tracking
self.total_tokens_used = 0
self.total_token_slots = 0
# The number of times to calculate the batches to determine the minimum packed dataset length for the local rank
# The number of times to calculate batches to determine minimum packed dataset length
self.num_count_samples = num_count_samples
# the minimum packed dataset length across all ranks determined by a gather/broadcast
# Minimum packed dataset length across all ranks (determined by gather/broadcast)
self.len_across_ranks = None
# Cache for batches
self._batches = None
if self.sequential and not isinstance(sampler, SequentialSampler):
LOG.warn(
LOG.warning(
"using sequential sample packing with non-sequential sampler, did you want to also enable curriculum_sampling?"
)
def set_epoch(self, epoch: int):
"""Set the epoch number, used for reproducible shuffling across epochs"""
self.epoch = epoch
self._batches = None # Invalidate batch cache
def generate_batches(self, set_stats=False):
indices = [idx for idx in self.sampler]
"""
Generate packed batches for training
lengths = self.lengths[indices]
lengths_cumsum = np.cumsum(lengths)
Args:
set_stats: Whether to update efficiency statistics
if self.sequential:
batches, total_used, total_slots = allocate_sequentially(
lengths=lengths,
rank=0,
c=self.batch_max_len,
n=1,
)
else:
batches, total_used, total_slots = allocate(
lengths=lengths,
lengths_cumsum=lengths_cumsum,
rank=0,
c=self.batch_max_len,
n=1,
)
Returns:
List of batches, where each batch contains multiple bins,
and each bin contains multiple sequence indices
"""
if self._batches is not None:
return self._batches
batches = [
[
[indices[b_idx] for b_idx in batch]
for batch in batches[i : i + self.batch_size]
]
for i in range(0, len(batches), self.batch_size)
# Get indices from the sampler
indices = [ # pylint: disable=unnecessary-comprehension
idx for idx in self.sampler
]
# statistics
if set_stats:
self.eff_total_used += total_used
self.eff_total_slots += total_slots
# Get lengths of the selected sequences
lengths = self.lengths[indices]
# Pack sequences into bins using either sequential or parallel packing
if self.sequential:
bins, total_used, total_slots = allocate_sequentially(
lengths,
rank=0,
bin_capacity=self.batch_max_len,
num_ranks=1,
)
# Map bin indices back to original indices
bins = [[indices[b_idx] for b_idx in bin_indices] for bin_indices in bins]
else:
# Use parallel packing
all_bins = pack_parallel(
lengths,
bin_capacity=self.batch_max_len,
group_size=self.group_size,
bin_size=self.bin_size,
num_processes=self.num_processes,
safe_mode=self.safe_mode,
)
# Map bin indices back to original indices
bins = [
[indices[b_idx] for b_idx in bin_indices] for bin_indices in all_bins
]
# Calculate efficiency statistics
total_used = lengths.sum()
total_slots = len(all_bins) * self.batch_max_len
# Group bins into batches (each batch contains batch_size bins)
batches = [
bins[i : i + self.batch_size] for i in range(0, len(bins), self.batch_size)
]
# Drop last batch if requested and it's incomplete
if self.drop_last and len(batches[-1]) < self.batch_size:
batches = batches[:-1]
# Adjust total_slots if we dropped a batch
if not self.sequential:
total_slots -= (self.batch_size - len(batches[-1])) * self.batch_max_len
# Update statistics if requested
if set_stats:
self.total_tokens_used += total_used
self.total_token_slots += total_slots
self._batches = batches
return batches
def __iter__(self):
"""
Return an iterator over batches
The batches are truncated to match the minimum number of batches across all ranks
to ensure distributed training balance
"""
batches = self.generate_batches(set_stats=True)
if self.len_across_ranks:
# make sure the batches we iterate over is truncated to the same min length across all ranks
# Truncate batches to ensure all ranks have the same number of batches
batches = batches[: self.len_across_ranks]
return iter(batches)
def num_batches(self):
batches = self.generate_batches(set_stats=True)
return len(batches)
def efficiency(self):
return self.eff_total_used / self.eff_total_slots
"""
Calculate the packing efficiency (ratio of tokens used to total token slots)
Higher is better - 1.0 would mean perfect packing with no wasted space
"""
if self.total_token_slots == 0:
self.generate_batches(set_stats=True)
if self.total_token_slots == 0:
return 0.0
# Return a Python float instead of potentially a numpy float
return float(self.total_tokens_used / self.total_token_slots)
def gather_efficiency(self):
def calc_sample_packing_eff_est(estimates: List[float]):
LOG.debug(f"sample_packing_eff_est across ranks: {repr(estimates)}")
return math.floor(0.997 * max(estimates))
"""
Gather and synchronize packing efficiency estimates across all distributed ranks
Returns a conservative efficiency estimate based on the measurements
"""
def calc_sample_packing_eff_est(estimates: list[float]):
LOG.debug(f"sample_packing_eff_est across ranks: {repr(estimates)}")
# Use 99.7% of max observed efficiency as a safe estimate
max_eff = max(float(eff) for eff in estimates)
return math.floor(0.997 * max_eff)
# Gather efficiency from all ranks and apply the calculation function
sample_packing_actual_eff_all = reduce_and_broadcast(
lambda: self.efficiency(), # pylint: disable=unnecessary-lambda
lambda: float(self.efficiency()), # pylint: disable=unnecessary-lambda
calc_sample_packing_eff_est,
)
# Quantize to 0.5% intervals for stability
sample_packing_eff_est = (
math.ceil(sample_packing_actual_eff_all * 200.0) / 200.0
)
return sample_packing_eff_est
def gather_len_batches(self, num):
"""
Gather and synchronize batch counts across all distributed ranks
Returns the minimum number of batches available on any rank
"""
def calc_min_len(estimates: list[(int, float)]):
LOG.info(f"gather_len_batches: {repr(estimates)}")
return math.floor(min(estimates))
# Find minimum batch count across ranks to ensure balance
min_len_batches = reduce_and_broadcast(lambda: num, calc_min_len)
return min_len_batches
def __len__(self):
if not self.len_across_ranks:
len_batches = min(
[self.num_batches() for _ in range(self.num_count_samples)]
"""
Return the total number of batches that will be yielded by this sampler
This is calculated as the minimum number of batches available on any rank
to ensure balanced distributed training
"""
if self._batches is None:
self._batches = self.generate_batches(set_stats=True)
if self.len_across_ranks is None:
# Sample multiple times to get stable estimate
len_batches = min( # pylint: disable=consider-using-generator
[len(self._batches) for _ in range(self.num_count_samples)]
)
# Gather minimum across all ranks
self.len_across_ranks = self.gather_len_batches(len_batches)
return self.len_across_ranks

View File

@@ -82,6 +82,7 @@ class AxolotlInputConfig(
mean_resizing_embeddings: bool | None = False
# optionally shrink the embeddings when the tokenizer vocab size is smaller
shrink_embeddings: bool | None = None
embeddings_skip_upcast: bool | None = None
rl: RLType | None = None
trl: TRLConfig | None = Field(
@@ -309,6 +310,7 @@ class AxolotlInputConfig(
| Annotated[str, StringConstraints(pattern="^tokenizer_default_fallback_")]
) | None = None
chat_template_jinja: str | None = None
eot_tokens: list[str] | None = None
default_system_message: str | None = None
fix_untrained_tokens: int | list[int] | None = None
@@ -434,16 +436,6 @@ class AxolotlInputConfig(
)
return data
@model_validator(mode="before")
@classmethod
def check_sample_packing_w_xformers(cls, data):
if data.get("sample_packing") and data.get("xformers_attention"):
raise ValueError(
"sample_packing not compatible with xformers_attention. Use flash_attention"
)
return data
@model_validator(mode="before")
@classmethod
# pylint: disable=duplicate-code
@@ -470,9 +462,10 @@ class AxolotlInputConfig(
and not data.get("flash_attention")
and not data.get("sdp_attention")
and not data.get("flex_attention")
and not data.get("xformers_attention")
):
LOG.warning(
"sample_packing without flash, sdp or flex attention does not handle cross sample decontamination."
"sample_packing without flash, sdp, xformers or flex attention does not handle cross sample decontamination."
)
return data
@@ -511,10 +504,17 @@ class AxolotlInputConfig(
@model_validator(mode="before")
@classmethod
def hint_sample_packing_padding(cls, data):
if data.get("sample_packing") and not data.get("pad_to_sequence_len"):
LOG.warning(
"`pad_to_sequence_len: true` is recommended when using sample_packing"
)
if data.get("sample_packing"):
pad_to_sequence_len = data.get("pad_to_sequence_len")
if pad_to_sequence_len is False:
LOG.warning(
"`pad_to_sequence_len: true` is recommended when using sample_packing"
)
elif pad_to_sequence_len is None:
LOG.info(
"Setting `pad_to_sequence_len: true` to prevent memory leaks when sample_packing"
)
data["pad_to_sequence_len"] = True
return data
@model_validator(mode="before")
@@ -1149,6 +1149,18 @@ class AxolotlInputConfig(
return data
@model_validator(mode="before")
@classmethod
def check_grpo_peft_liger(cls, data):
if (
data.get("rl") == "grpo"
and data.get("trl", {})
and data.get("trl").get("use_liger_loss")
and data.get("adapter")
):
raise ValueError("PEFT + GRPO + Liger is not yet supported")
return data
@model_validator(mode="after")
def check_sequence_parallel_degree(self):
if not self.sequence_parallel_degree:
@@ -1314,6 +1326,57 @@ class AxolotlConfigWCapabilities(AxolotlInputConfig):
)
return data
@model_validator(mode="before")
@classmethod
def check_auto_enable_lora_kernels(cls, data):
# Only proceed if using LoRA or QLoRA adapter
if data.get("rl"):
# RL trainers not tested so don't enable kernels by default
return data
if data.get("adapter") in ["lora", "qlora"]:
# Skip if already set, using unsloth optimizations, or using 8-bit
unsloth_fields = ["unsloth_lora_mlp", "unsloth_lora_qkv", "unsloth_lora_o"]
kernel_fields = ["lora_mlp_kernel", "lora_qkv_kernel", "lora_o_kernel"]
if (
any(data.get(k) is not None for k in kernel_fields)
or any(data.get(k) for k in unsloth_fields)
or data.get("adapter") == "lora"
and data.get("load_in_8bit")
):
return data
# Check multi-GPU compatibility
capabilities = data.get("capabilities")
is_multi_gpu = capabilities and capabilities.get("n_gpu", 0) > 1
is_fsdp = data.get("fsdp") is not None
is_fsdp2 = (
data.get("fsdp_config") is not None
and str(data.get("fsdp_config").get("fsdp_version")) == "2"
)
if (
not is_multi_gpu
or (is_multi_gpu and not is_fsdp)
or (is_multi_gpu and is_fsdp2)
):
# Auto-enable kernels if not explicitly set by user
if data.get("lora_mlp_kernel") is None:
data["lora_mlp_kernel"] = True
if data.get("lora_qkv_kernel") is None:
data["lora_qkv_kernel"] = True
if data.get("lora_o_kernel") is None:
data["lora_o_kernel"] = True
LOG.warning(
"Auto-enabling LoRA kernel optimizations for faster training. "
+ "Please explicitly set `lora_*_kernel` config values to `false` to disable. "
+ "See https://docs.axolotl.ai/docs/lora_optims.html for more info."
)
return data
@model_validator(mode="before")
@classmethod
def check_adopt_torch_version(cls, data):

View File

@@ -50,6 +50,7 @@ class SFTDataset(BaseModel):
message_property_mappings: dict[str, str] | None = None
message_field_training: str | None = None
message_field_training_detail: str | None = None
split_thinking: bool | None = None
logprobs_field: str | None = None
temperature: float | None = None
roles_to_train: list[str] | None = None

View File

@@ -35,6 +35,7 @@ class ChatTemplate(str, Enum):
jamba = "jamba" # pylint: disable=invalid-name
jinja = "jinja" # pylint: disable=invalid-name
qwen_25 = "qwen_25" # pylint: disable=invalid-name
qwen3 = "qwen3" # pylint: disable=invalid-name
tokenizer_default = "tokenizer_default" # pylint: disable=invalid-name
exaone = "exaone" # pylint: disable=invalid-name
metharme = "metharme" # pylint: disable=invalid-name
@@ -52,4 +53,5 @@ class CustomSupportedOptimizers(str, Enum):
ao_adamw_8bit = "ao_adamw_8bit" # pylint: disable=invalid-name
ao_adamw_fp8 = "ao_adamw_fp8" # pylint: disable=invalid-name
adopt_adamw = "adopt_adamw" # pylint: disable=invalid-name
came_pytorch = "came_pytorch" # pylint: disable=invalid-name
muon = "muon" # pylint: disable=invalid-name

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