* When training of function calls, "tools" elements of a dataset can contain same parameter name but with different types. Datasets fails to load such training set. This fix allows "parameters" element of function call to be string( by running "json.dumps" in preparation of training data set). The _get_tools function will iterate over tool definitions, if "parameters" element is dict, it will keep that way, if it is a string, it will be converted to dict by invoking "json.loads" on string value.
* feat: add doc on tool parameters json loading
* feat: add tests for parameters json string
---------
Co-authored-by: ezlotnik <eduard_zlotnik@intuit.com>
Co-authored-by: NanoCode012 <nano@axolotl.ai>
* upgrade numpy to 2.3.4
* bump contribs for numpy
* fix vllm versions
* bump numba
* make sure psutil is installed
* add psutil to cicd dockerfile jinja
* lower dep versions of numba + numpy for vllm
* bump datasets version
* resolve pydantic conflict too
* build cuda 13.0.0 base image with 2.9.0
* upgrade causal-conv1d
* 1.5.4 not in pypi yet
* pin to 1.3.0
* use github release instead of pypi
* split the logic for incompatible packages
* fix bash in dockerfile
* fix: force train split for json,csv,txt for test_datasets
* feat(doc): add info on mixing datasets for VLM
* feat(doc): max memory
* fix(doc): clarify lr groups
* fix: add info on vision not being dropped
* feat: add qwen3-vl to multimodal docs
* fix: add moe blocks to arch list
* feat(doc): improve mistral docs
* chore: add helpful link [skip-e2e]
* fix: add vram usage for mistral small
* Update link in docs/faq.qmd
Co-authored-by: salman <salman.mohammadi@outlook.com>
---------
Co-authored-by: Wing Lian <wing@axolotl.ai>
Co-authored-by: salman <salman.mohammadi@outlook.com>
* Fix trainer dataloader handling in src/axolotl/core/trainers/base.py
* update comment to reflect torch version
---------
Co-authored-by: Wing Lian <wing.lian@gmail.com>
* Add chat_template.argilla_chat support for DPO datasets
Creates a new chat_template.argilla_chat prompt strategy for handling
DPO datasets where chosen/rejected fields contain full conversations
(messages + final response), following the pattern of chatml.argilla_chat
and llama3.argilla_chat.
- Add argilla_chat() function to chat_template.py
- Add chat_template.argilla_chat to RLHF documentation
- Add test coverage for argilla_chat with multiple tokenizers
Dataset format:
{
"chosen": [
{"role": "user", "content": "..."},
{"role": "assistant", "content": "..."}
],
"rejected": [
{"role": "user", "content": "..."},
{"role": "assistant", "content": "..."}
]
}
* Fix chat_template.argilla_chat return value contract and add docstring
- Return (transform_fn, dataset_kwargs) tuple instead of bare transform_fn
- Add remove_columns specification for field_chosen and field_rejected
- Add comprehensive docstring with Args/Returns sections
- Update tests to unpack tuple return value
Addresses PR feedback to maintain consistency with chat_template.default()
and properly specify columns to remove after dataset transformation.
* Update tests/prompt_strategies/test_dpo_chat_templates.py
Co-authored-by: Wing Lian <wing.lian@gmail.com>
---------
Co-authored-by: Wing Lian <wing.lian@gmail.com>
* fix: transformers deprecate load_in_Xbit in model_kwargs
* fix: test to read from quantization_config kwarg
* fix: test
* fix: access
* fix: test weirdly entering incorrect config
- Fix _loss_function attribute not found on base model with PEFT
- Fix mismatched attribute name (loss_function vs _loss_function)
- Set _loss_function on unwrapped base model for PEFT
- Enable previously skipped test_llama_lora_kd test
- Add test config fixes for LoRA kernel compatibility
Fixes https://github.com/axolotl-ai-cloud/axolotl/issues/3206
* make sure to use ray prepare for dataloader fixes
* ray tests use 2.7.0+
* don't call init_distributed w ray and deepspeed
* handle dict deepspeed config
* better handling of dict deepspeed config
* use json.dumps
* guard to_dict
* wrap import for optional ray
* upgrade transformers to 4.57.0
* remove deprecated autoawq and use latest peft
* remove autoawq from setuptools script
* fix imports
* make sure torchvision is installed
* remove support for BetterTransformer
* skip fsdp_qlora_prequant test
* more robust error reporting