Commit Graph

1864 Commits

Author SHA1 Message Date
Wing Lian
3c743c4bfb v0.7.0 for release (#2341)
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v0.7.0
2025-02-18 04:26:21 -05:00
NJordan72
91bb95685a chore: cleanup deprecated config elements (#2309)
* feat: update metadata fields and refactor config class in axolotlinputconfig

- Replace `metadata` fields with `json_schema_extra` in RayConfig class.
- Replace `Config` class with `ConfigDict` in AxolotlInputConfig.
- Set `populate_by_name` to `True` directly in `ConfigDict` instance.

* feat: update axolotlinputconfig in utils

* Replace `conlist` with `Annotated` for `datasets`, `test_datasets`, and `pretraining_dataset` fields
* Change default values for `lr_scheduler` and `optimizer` fields in `HyperparametersConfig` class
* Remove unnecessary Union from `evals_per_epoch` field in `AxolotlInputConfig` class
* Import `MinLen` from `annotated_types` module
* Remove import of `conlist` from `pydantic` module

* feat: update modelinputconfig and axolotlinputconfig in v0_4_1

- Removed ConfigDict import from pydantic in `src/axolotl/utils/config/models/input/v0_4_1/__init__.py`
- Added `model_config` with `protected_namespaces` to ModelInputConfig
- Replaced `config: ConfigDict` with `model_config` in AxolotlInputConfig
- Set `populate_by_name` to True in `model_config` for AxolotlInputConfig

* chore: get rid of unused import
2025-02-18 15:39:24 +07:00
NJordan72
b194e17c28 feat: add config for optional parameters in a chat message (#2260)
* feat: add config for optional parameters in a chat message

* chore: cleanup

* chore: fix nits and add light docs

* docs: update docs/dataset-formats/conversation.qmd

Co-authored-by: NanoCode012 <kevinvong@rocketmail.com>

* feat: configurable message mappings, jinja template analyzer

* chore: handle bradley terry

* docs: update docs

* refactor: change order of mappings, improve message transform

* refactor: make chat awware of property mappings

* chore: remove .python-version

* chore: revert change

* chore: add dataset validation to tests where appropriate

* chore: add dataset validation to tests where appropriate

* chore: clean up handling of ds_cfg

* chore: recursively serialize config

* make sure to use the return value from validate_config

* DefaultDict pickle/unpickle fix

* fix super call for override

* refactor: message fields

* chore: empty commit

* tests: validate config before using

* chore: add config validation to all e2e tests

* chore: add unneeded logging

* chore: add missed config validation

* chore: pass field_messages to prompter

* test: fix borked test

* chore: remove uninteded file

* chore: add deprecation warning and update chat_datasets script

* chore: lint

* refactor: message fields

* feat: update axolotlinputconfig and test_models

- add configdict import in axolotl/utils/config/models/input/v0_4_1/__init__.py
- remove unnecessary line breaks in sftdataset, dpodataset, ktodataset, stepwisesuperviseddataset classes
- update model_dump method in axolotlinputconfig to exclude none values
- correct typo in test_models.py comment

* feat: simplify dpodataset and ktodataset classes in config models

removed several optional fields from dpodataset and ktodataset classes in axolotl/utils/config/models/input/v0_4_1. this simplifies the configuration subsets for these datasets.

* feat: improve readability and structure in dataset configuration models

this commit enhances the readability and structure of the dataset configuration models in the `axolotl/utils/config/models/input/v0_4_1` module. it removes unused `configdict` import and adds line breaks to separate class definitions for better clarity. additionally, a minor documentation fix is included to ensure a newline at the end of the `stepwise_supervised.qmd` file.

* feat: change log level from info to debug in chattemplatestrategy

* feat(prompt_strategies): refactor chattemplateprompter and chattemplatestrategy

- Make `chat_template` a required parameter in `ChatTemplatePrompter` constructor
- Add default value for `message_property_mappings` in `ChatTemplatePrompter` constructor
- Add `messages_array_name` property to `ChatTemplatePrompter`
- Change `processor` type to Optional in `ChatTemplatePrompter`
- Add TypeError check for `processor` in `ChatTemplatePrompter.build_prompt`
- Remove `_messages` property from `ChatTemplateStrategy`
- Make `prompter` a required parameter and add type hint in `ChatTemplateStrategy` constructor
- Remove `messages` getter and setter from `ChatTemplateStrategy`
- Use `prompter.messages_array_name` in `ChatTemplateStrategy.get_conversation_thread`
- Remove condition to set `messages` field in `load` function

* feat(tests/utils): ignore type check in load_model call in test_models.py

* feat: improve type handling and test structure in chat templates

- Add return type hint for `get_chat_template` function in `chat_templates.py`
- Remove unnecessary assignment of `strategy.messages` in several test cases
- Add `messages_array_name` parameter to various test configurations in `test_chat_templates.py` and `test_chat_templates_advanced.py`
- Remove redundant `strategy.messages` assignment in `test_chat_templates_advanced.py`

* feat(axolotl): enhance chat strategy with datasetconfig support

This commit introduces support for DatasetConfig in the ChatTemplateStrategy. It also refines the strategy loader to handle different types of ds_cfg inputs and improves the clarity of the code by formatting and reordering. The key changes include:

- Importing Union from typing and BaseModel from pydantic.
- Adding DatasetConfig as an optional type for ds_cfg in StrategyLoader.
- Adjusting the handling of ds_cfg in StrategyLoader to account for BaseModel instances.
- Refactoring the prompter_params and strategy_params for better readability.
- Changing the reference from prompt[self.messages] to prompt[self.prompter.messages_array_name] in the is_prompt_batched method.

* feat: update message handling in btchattemplatestrategy

* Replace `self.messages` with direct string references to "chosen_messages" and "rejected_messages"
* Append system, user, and assistant content directly to "chosen_messages" and "rejected_messages"
* Add a new attribute "messages_array_name" to the `load` function parameters
* Remove the conditional attribute assignment for "field_messages" in the `load` function

* feat: add config validation in test_kd.py

- Import `validate_config` from `axolotl.utils.config`
- Validate the configuration in `test_llama_kd` and another function in `TestKnowledgeDistillation` class

* feat: enhance config validation and capabilities handling

* Import `EnvCapabilities` and `GPUCapabilities` from `axolotl.utils.config.models.internals`
* Update `validate_config` function to create `KTODataset` and `SFTDataset` instances using `dict(ds_cfg)`
* Replace `capabilities` and `env_capabilities` with instances of `GPUCapabilities` and `EnvCapabilities` respectively in `AxolotlConfigWCapabilities` model dump

* feat: update config validation in axolotl utils

- Remove import of `EnvCapabilities` and `GPUCapabilities` from `axolotl.utils.config.models.internals`
- Update `validate_config` function to use `capabilities` and `env_capabilities` directly instead of creating new instances of `GPUCapabilities` and `EnvCapabilities`

* feat: refactor strategyloader in chat_template.py

- Extracted the creation of strategy parameters into a separate function, `_get_strategy_params(cfg, dataset_config)`
- Created a new function, `_get_strategy_cls()`, to obtain the strategy class
- Replaced `ChatTemplateStrategy` with `strategy_cls` for strategy instantiation

* trigger CI

* chore: revert dataset config changes for kto/dpo

* subject: refactor: rename 'messages_array_name' to 'field_messages'

Body:
- Renamed 'messages_array_name' to 'field_messages' in 'ChatTemplatePrompter' class and its usages in 'chat_template.py'
- Updated 'load' function in 'bradley_terry/chat_template.py' to reflect the change
- Adjusted 'get_chat_template_msg_variables' and 'get_message_vars' methods in 'jinja_template_analyzer.py' to use the new variable name
- Modified 'StrategyLoader' in 'chat_template.py' to use 'field_messages'
- Updated tests in 'test_chat_templates.py' and 'test_chat_templates_advanced.py' to use 'field_messages' instead of 'messages_array_name'

* feat: refactor prompt strategies and update config models

* Remove redundant 'return None' in `axolotl/prompt_strategies/__init__.py`
* Simplify message handling in `axolotl/prompt_strategies/bradley_terry/chat_template.py` by using a single 'messages' list instead of separate 'chosen_messages' and 'rejected_messages' lists
* Update default 'message_property_mappings' in `axolotl/prompt_strategies/bradley_terry/chat_template.py`
* Add 'field_messages' field to `axolotl/utils/config/models/input/v0_4_1/__init__.py` configuration model

* chore: remove unused input

* chore: remove redundant type ignore

* fix: remove old configs and update examples

* fix: type check

* fix: remove loading old config in ChatMessage

* fix: update faq with potential new undefinederror

* fix: add debug if property mapped is not found

* chore: improve explanation for unmapped properties

* fix: update docs with new config

* chore: add note for deprecation config and del old config from dict

---------

Co-authored-by: NanoCode012 <kevinvong@rocketmail.com>
Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-02-18 09:59:27 +07:00
Dan Saunders
3aac3b1da9 Move sweeps code to another module (#2338) 2025-02-17 15:46:04 -05:00
Dan Saunders
3d8425fa91 Activation function Triton kernels, LoRA custom autograd functions (#2324)
* LoRA + activation fn Triton kernels: initial commit

* implementing optims

* finalizing MLP LoRA kernels and progress on QKV / W kernels

* updates

* O projection optim

* adding monkey patching logic

* doc strings, typing, pre-commit fixes

* updates

* adding lora 8b kernels example

* working on fsdp support

* tests and fixes

* small fixes, getting tests to pass, adding doc strings

* integration tests for LoRA patching

* config.qmd

* remove unneeded pytest fixture

* fix

* review comments first pass

* improving tests, attention class agnostic patching

* adding support for more archs

* wip SiLU / GELU impls

* improved testing, small updates, etc.

* slightly updating docs

* rebase

* fixing test_attention_patching_integration

* additional review comments, fixing test in CI (hopefully)

* isolating problematic patching test

* relaxing allclose threshold to reduce flakiness

* fixing accidental change

* adding model arch agnostic attention class fetching

* removing unused activations
2025-02-17 14:23:15 -05:00
Seungduk Kim
97a2fa2781 Select input_ids explicitly after panda conversion (#2335)
Without selecting the column, applying `len` counts the whole row as 1 which resulting the total number of the samples instead of the token counts.
2025-02-17 00:07:27 -05:00
Wing Lian
a98526ef78 add support for include_tokens_per_second in training args (#2269)
* add support for include_tokens_per_second in training args

* Update docs/config.qmd

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

* Update src/axolotl/core/trainer_builder.py

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

---------

Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-02-13 17:39:19 -05:00
NanoCode012
2e57391bf8 fix: add missing shards_idx, preprocess_shards to docs and validator (#2331) 2025-02-13 17:28:21 -05:00
minpeter
aa45fed451 Add bos_token and add_generation_prompt to the alpaca chat template (#2322)
* fix alpaca add_generation_prompt

* Alpaca template considering multi-turn

Co-authored-by: xzuyn <xzuyn@users.noreply.github.com>

---------

Co-authored-by: xzuyn <xzuyn@users.noreply.github.com>
2025-02-13 17:27:55 -05:00
NanoCode012
a09a5cfd1c feat(doc): add tensorboard config to docs (#2329) 2025-02-13 16:02:16 -05:00
NanoCode012
40362d60e0 feat(doc): Improve guide to dataset types with better examples (#2286) 2025-02-13 16:01:41 -05:00
Wing Lian
ffae8d6a95 GRPO (#2307) 2025-02-13 16:01:01 -05:00
Lee Park
fdbb1a207c [Fixing #2149] load_from_disk for RL-type training (#2193)
* Update rl.py

* Update rl.py

* Update rl.py

* refactor pref dataset loading to reuse load_dataset_w_config

* refactor again after rebase from main

* chore: add docstring and types

---------

Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: NanoCode012 <nano@axolotl.ai>
2025-02-13 08:31:07 -05:00
Wing Lian
30046315d9 disable ray tests for latest torch release (#2328)
* disable ray tests for latest torch release

* move decorator from class to method
2025-02-12 18:29:02 -05:00
Wing Lian
e37a4a536a lint docs (#2327) 2025-02-12 10:04:26 -05:00
Sung Ching Liu
44f64ab627 Update faq.qmd (#2319)
* Update faq.qmd

Added Q&A for being stuck on saving preprocessed datasets

* Update faq.qmd

added details on preprocessing on cpu

* Update faq.qmd

* Update faq.qmd
2025-02-11 13:18:31 -05:00
NanoCode012
826f1b1494 feat(doc): Add multi-node torchrun info (#2304) 2025-02-08 06:02:02 -05:00
NanoCode012
526e5ee8b8 fix(config): missing config not being documented and fix model_ override (#2317)
* fix(config): missing config not being documented and fix model_ space override

* fix: delete redundant field
2025-02-08 06:01:48 -05:00
NanoCode012
fd8cb32547 chore: remove redundant py310 from tests (#2316) 2025-02-07 21:34:16 -05:00
NanoCode012
e48e2df4dd feat: update FA to 2.7.4.post1 which includes torch2.6 binary (#2315) 2025-02-07 21:34:01 -05:00
Wing Lian
b7616022ab bump transformers to 4.48.3 (#2318) 2025-02-07 21:33:44 -05:00
Wing Lian
1faf1a5c5a batch add of spectrum snr results (#2320) 2025-02-07 21:33:14 -05:00
NanoCode012
5bbad5ef93 feat: add torch2.6 to ci (#2311) 2025-02-07 07:28:54 -05:00
Wing Lian
a971eb4ce6 Torch 2.6 support for base docker image (#2312) 2025-02-05 09:24:02 -05:00
NanoCode012
a620d481e2 fix: drop long seq even if not sample packing (#2211)
* fix: drop long seq even if not sample packing

* fix: logging import

* fix: cfg passed being none

* fix: try to fix logging

* fix: refactor call to not use accelerate log

* fix: try to fix circular import issue

* fix: don't drop when skip prepare

* chore: remove duplicate line

* fix: update warning to mention that sequences will be trimmed

* fix: do not drop seq if input_ids don't exist

* fix: increase RM unittest sequence length to reduce trim warnings

* fix: solve conflicts

* fix: default min_seq_len in case of None
2025-02-04 09:43:35 -05:00
Wing Lian
158330ab60 [feature] sweeps (#2171) 2025-02-01 21:11:18 -05:00
Wing Lian
80e1468b8d better handling of multipack dataset length (#2296) 2025-02-01 21:10:34 -05:00
Wing Lian
a20f17689b set MODAL_IMAGE_BUILDER_VERSION=2024.10 to 2024.10 to test latest builder (#2302)
* set MODAL_IMAGE_BUILDER_VERSION=2024.10 to 2024.10 to test latest builder

* chore: lint

* remove fastapi and pydantic extras
2025-01-31 20:19:20 -05:00
Wing Lian
78ce268848 KD Trainer w logprobs (#2303)
* refactor trainer to prevent circular dependencies later

fix loader default
KD dataset loading and KD with logprobs
filter bad rows
make batch smaller
handle padding/collation for KD datasets
make it work
flipped the slice
cross entropy loss coefficient during KD
make sure to multiply against the correct loss
chore: lint
triton wip
no where support
v2 trial
no torch.exp inside triton kernel
no log etc
no torch.tensor
v3
fix kwarg
don't use triton for now
better rescaling for temperatures
hash for temperature too
use kd_alpha in the correct loss method
fix kd loss so it's causal (fixes repeating tokens)
var naming and add todo
chore: lint
refactor so we can easily add new loss functions
add license block
remove references to triton kd for now
handle token/logprob shifting
support for custom trainer classes from plugins
refactor kd chat template loader
move more things to kd plugin
remove moved class from import
make plugin setup concise
increase logging around loading plugins
add copyrights
remove duplicate code
more info on preprocess for kd and fix import
be a bit pickier about loading dynamic prompt strategies
kd sample packing
make loss torch script compat
support streaming for processing sft datasts?
improve iterable support
ensure that batch vs single is done properly
tweak check for batched prompt data
reward can use same batch check
fix reward trainer calls for tokenization
improve check for batched
reward model doesn't work well with batched
add kd trainer e2e test
linting
rename test files so it gets picked up
make the kd e2e fit in vram for ci and add lora version
set lora_dropout explicitly
lower lr
make sure to set tokenizer from l3 70b and save safetensors
make sure to use the correct tokenizer
fix adapter model check
make sure to use tensorboard to capture loss for checks
chore: lint
chore: lint
improve logprob masking and shift in trainer
more fixes
try tests for kd on l40s
don't shift student logits for kd
no batching for kd chat templates
make sure to truncate logprobs if there are more than top_k
change up logic so we always truncate to top_k
use iter instead of tuple
fix finding the top-k rather than assuming first position has the correct val
apply z-score scaling to kd
kd loss needs to be calculated in full precision
Always re-normalize teacher distribution
various fixes

* support for configurable top-k/softmax ordering

* add attribute check for filter rows and lint

* fix logic

* handle none case for conversion to int

* fix student logit off by one

* set kd_temp to 1.0 for test loss

* address PR feedback
2025-01-31 20:18:52 -05:00
NanoCode012
d425d5d3c3 fix: add warning for invalid eval_steps or save_steps (#2298) 2025-01-31 08:58:25 -05:00
Wing Lian
cf17649ef3 Misc fixes 20250130 (#2301)
* misc fixes for garbage collection and L40S w NCCL P2P

* patch bnb fix for triton check

* chore: lint

* change up import

* try patching differently

* remove patch for bnb fix for now

* more verbose checks and tweak train loss threshold
2025-01-31 08:58:04 -05:00
Dan Saunders
6f294c3d8d refactor README; hardcode links to quarto docs; add additional quarto doc pages (#2295)
* refactor README; hardcode links to quarto docs; add additional quarto doc pages

* updates

* review comments

* update

---------

Co-authored-by: Dan Saunders <dan@axolotl.ai>
2025-01-30 12:49:21 -05:00
Wing Lian
6f713226dd make save_safetensors: true the default (#2292)
* make save_safetensors: true the default

* revert change to model output check
2025-01-30 11:48:48 -05:00
Wing Lian
1063d82b51 match the cuda version for 2.4.1 build w/o tmux (#2299) 2025-01-30 11:46:09 -05:00
salman
ac471a697a updating to fused (#2293) 2025-01-30 11:45:56 -05:00
Wing Lian
8779997ba5 native support for modal cloud from CLI (#2237)
* native support for modal cloud from CLI

* do lm_eval in cloud too

* Fix the sub call to lm-eval

* lm_eval option to not post eval, and append not extend

* cache bust when using branch, grab sha of latest image tag, update lm-eval dep

* allow minimal yaml for lm eval

* include modal in requirements

* update link in README to include utm

* pr feedback

* use chat template

* revision support

* apply chat template as arg

* add wandb name support, allow explicit a100-40gb

* cloud is optional

* handle accidental setting of tasks with a single task str

* document the modal cloud yaml for clarity [skip ci]

* cli docs

* support spawn vs remote for lm-eval

* Add support for additional docker commands in modal image build

* cloud config shouldn't be a dir

* Update README.md

Co-authored-by: Charles Frye <cfrye59@gmail.com>

* fix annotation args

---------

Co-authored-by: Charles Frye <cfrye59@gmail.com>
2025-01-30 11:34:02 -05:00
Eric Tang
268543a3be Ray Train Axolotl Integration (#2251)
* current

not clean working version
move torch trainer to do_cli
update code with config changes and clean up
edit config
cleanup
add run name to trainer

* address comments

* use axolotl train in multigpu tests and add ray tests for multi-gpu

* accelerate uses underscores for main_process_port arg

* chore: lint

* fix order of accelerate args

* include ray train in docker images

* current

not clean working version
move torch trainer to do_cli
update code with config changes and clean up
edit config
cleanup
add run name to trainer

* address comments

* use axolotl train in multigpu tests and add ray tests for multi-gpu

* accelerate uses underscores for main_process_port arg

* chore: lint

* fix order of accelerate args

* include ray train in docker images

* fix bf16 resolution behavior

* move dtype logic

* x

Signed-off-by: SumanthRH <sumanthrh@anyscale.com>

* rename

Signed-off-by: SumanthRH <sumanthrh@anyscale.com>

* add to sidebar

Signed-off-by: SumanthRH <sumanthrh@anyscale.com>

* Apply suggestions from code review

Co-authored-by: Eric Tang <46737979+erictang000@users.noreply.github.com>

* Update docs/ray-integration.qmd

Co-authored-by: Eric Tang <46737979+erictang000@users.noreply.github.com>

* pre-commit fixes

Signed-off-by: SumanthRH <sumanthrh@anyscale.com>

* use output_dir instead of hardcoded saves path

Co-authored-by: NanoCode012 <kevinvong@rocketmail.com>

* bugfix storage dir

* change type\ for resources_per_worker

---------

Signed-off-by: SumanthRH <sumanthrh@anyscale.com>
Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: SumanthRH <sumanthrh@anyscale.com>
Co-authored-by: Sumanth R Hegde <39546518+SumanthRH@users.noreply.github.com>
Co-authored-by: Wing Lian <wing.lian@gmail.com>
Co-authored-by: NanoCode012 <kevinvong@rocketmail.com>
2025-01-29 00:10:19 -05:00
salman
54dd7abfc1 Process reward models (#2241)
* adding model_cfg to set num_labels

* using a num_labels field instead

* linting

* WIP stepwise prompt tokenizer

* this should work?

* trainer working?

* pushing to runpod

* fixing saving

* updating conf

* updating config, adding docs

* adding stepwise supervision docpage

* updating tests

* adding test for dataset

* fixing tests

* linting

* addressing some comments

* adding additional cfg fields support

* updating tests, fixing cfg

* fixing tests

* updating loss

* Update test_process_reward_model_smollm2.py

* updating loss values and seed

* dumb pre-commit
2025-01-29 00:08:33 -05:00
salman
c071a530f7 removing 2.3.1 (#2294) 2025-01-28 23:23:44 -05:00
mashdragon
c015a76a23 Num epochs float (#2282) [skip ci]
* Change num_epochs type to float

* Handle float value for num_epochs in trainer.py
2025-01-28 23:23:26 -05:00
NanoCode012
067b442596 chore: refactor SaveModelCallback to stop handle fractional save_steps (#2291) [skip ci] 2025-01-28 23:22:10 -05:00
Wing Lian
0b52f06227 bump bnb to 0.45.1 (#2289) [skip ci] 2025-01-28 23:21:25 -05:00
Wing Lian
887513285d support for custom lr groups for non-embedding modules (#2213)
* support for custom lr groups for non-embedding modules

invert name check for group modules
include lr_groups in training args
additional conditional for creating optimizer
fix regular params as w weight decay
fix lookup and add docs

* address pr feedback
2025-01-24 12:56:28 -05:00
Wing Lian
20620771f1 Pretrain multipack (#2278)
* fix for pretrain with packing

* fix model name and loss expected

* make sure to check with micro batch size for pretraining

* change loss threshholds based on parametrization

* make tests smaller for CI

* fix pretrain packing

* fix pretrain packing test

* address pr feedback
2025-01-24 12:55:20 -05:00
NanoCode012
6086162488 chore(doc): improve explanation for *_steps and *_strategy (#2270) 2025-01-24 10:07:02 -05:00
mashdragon
b2774af66c Take split param from config in all load_dataset instances (#2281) 2025-01-24 10:06:50 -05:00
NanoCode012
74f9782fc3 chore(doc): fix explanation on gcs creds retrieval (#2272) 2025-01-24 10:05:58 -05:00
Wing Lian
8a7a0b07dc support for latest transformers release 4.48.1 (#2256) 2025-01-23 21:17:57 -05:00
Wing Lian
8fb72cbc0b use the extracted field_messages to parse the role fields (#2265) 2025-01-21 15:39:30 -05:00
Adithya Kamath
bb9d4102c4 Add 5000 line history limit to tmux for docker cloud (#2268) 2025-01-21 15:39:17 -05:00