- [2024/02] Support Gemma models!
- [2024/02] Support Qwen1.5 models!
- [2024/01] Support InternLM2 models! The latest VLM LLaVA-Internlm2-7B / 20B models are released, with impressive performance!
- [2024/01] Support DeepSeek-MoE models! 20GB GPU memory is enough for QLoRA fine-tuning, and 4x80GB for full-parameter fine-tuning. Click here for details!
- [2023/12] ๐ฅ Support multi-modal VLM pretraining and fine-tuning with LLaVA-v1.5 architecture! Click here for details!
- [2023/12] ๐ฅ Support Mixtral 8x7B models! Click here for details!
- [2023/11] Support ChatGLM3-6B model!
- [2023/10] Support MSAgent-Bench dataset, and the fine-tuned LLMs can be applied by Lagent!
- [2023/10] Optimize the data processing to accommodate
system
context. More information can be found on Docs! - [2023/09] Support InternLM-20B models!
- [2023/09] Support Baichuan2 models!
- [2023/08] XTuner is released, with multiple fine-tuned adapters on HuggingFace.
XTuner is an efficient, flexible and full-featured toolkit for fine-tuning large models.
Efficient
- Support LLM, VLM pre-training / fine-tuning on almost all GPUs. XTuner is capable of fine-tuning 7B LLM on a single 8GB GPU, as well as multi-node fine-tuning of models exceeding 70B.
- Automatically dispatch high-performance operators such as FlashAttention and Triton kernels to increase training throughput.
- Compatible with DeepSpeed ๐, easily utilizing a variety of ZeRO optimization techniques.
Flexible
- Support various LLMs (InternLM, Mixtral-8x7B, Llama2, ChatGLM, Qwen, Baichuan, ...).
- Support VLM (LLaVA). The performance of LLaVA-InternLM2-20B is outstanding.
- Well-designed data pipeline, accommodating datasets in any format, including but not limited to open-source and custom formats.
- Support various training algorithms (QLoRA, LoRA, full-parameter fune-tune), allowing users to choose the most suitable solution for their requirements.
Full-featured
- Support continuous pre-training, instruction fine-tuning, and agent fine-tuning.
- Support chatting with large models with pre-defined templates.
- The output models can seamlessly integrate with deployment and server toolkit (LMDeploy), and large-scale evaluation toolkit (OpenCompass, VLMEvalKit).
Models | SFT Datasets | Data Pipelines | Algorithms |
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It is recommended to build a Python-3.10 virtual environment using conda
conda create --name xtuner-env python=3.10 -y conda activate xtuner-env
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Install XTuner via pip
pip install -U xtuner
or with DeepSpeed integration
pip install -U 'xtuner[deepspeed]'
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Install XTuner from source
git clone https://github.com/InternLM/xtuner.git cd xtuner pip install -e '.[all]'
XTuner supports the efficient fine-tune (e.g., QLoRA) for LLMs. Dataset prepare guides can be found on dataset_prepare.md.
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Step 0, prepare the config. XTuner provides many ready-to-use configs and we can view all configs by
xtuner list-cfg
Or, if the provided configs cannot meet the requirements, please copy the provided config to the specified directory and make specific modifications by
xtuner copy-cfg ${CONFIG_NAME} ${SAVE_PATH} vi ${SAVE_PATH}/${CONFIG_NAME}_copy.py
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Step 1, start fine-tuning.
xtuner train ${CONFIG_NAME_OR_PATH}
For example, we can start the QLoRA fine-tuning of InternLM2-Chat-7B with oasst1 dataset by
# On a single GPU xtuner train internlm2_chat_7b_qlora_oasst1_e3 --deepspeed deepspeed_zero2 # On multiple GPUs (DIST) NPROC_PER_NODE=${GPU_NUM} xtuner train internlm2_chat_7b_qlora_oasst1_e3 --deepspeed deepspeed_zero2 (SLURM) srun ${SRUN_ARGS} xtuner train internlm2_chat_7b_qlora_oasst1_e3 --launcher slurm --deepspeed deepspeed_zero2
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--deepspeed
means using DeepSpeed ๐ to optimize the training. XTuner comes with several integrated strategies including ZeRO-1, ZeRO-2, and ZeRO-3. If you wish to disable this feature, simply remove this argument. -
For more examples, please see finetune.md.
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Step 2, convert the saved PTH model (if using DeepSpeed, it will be a directory) to HuggingFace model, by
xtuner convert pth_to_hf ${CONFIG_NAME_OR_PATH} ${PTH} ${SAVE_PATH}
XTuner provides tools to chat with pretrained / fine-tuned LLMs.
xtuner chat ${NAME_OR_PATH_TO_LLM} --adapter {NAME_OR_PATH_TO_ADAPTER} [optional arguments]
For example, we can start the chat with
InternLM2-Chat-7B with adapter trained from oasst1 dataset:
xtuner chat internlm/internlm2-chat-7b --adapter xtuner/internlm2-chat-7b-qlora-oasst1 --prompt-template internlm2_chat
LLaVA-InternLM2-7B:
xtuner chat internlm/internlm2-chat-7b --visual-encoder openai/clip-vit-large-patch14-336 --llava xtuner/llava-internlm2-7b --prompt-template internlm2_chat --image $IMAGE_PATH
For more examples, please see chat.md.
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Step 0, merge the HuggingFace adapter to pretrained LLM, by
xtuner convert merge \ ${NAME_OR_PATH_TO_LLM} \ ${NAME_OR_PATH_TO_ADAPTER} \ ${SAVE_PATH} \ --max-shard-size 2GB
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Step 1, deploy fine-tuned LLM with any other framework, such as LMDeploy ๐.
pip install lmdeploy python -m lmdeploy.pytorch.chat ${NAME_OR_PATH_TO_LLM} \ --max_new_tokens 256 \ --temperture 0.8 \ --top_p 0.95 \ --seed 0
๐ฅ Seeking efficient inference with less GPU memory? Try 4-bit quantization from LMDeploy! For more details, see here.
- We recommend using OpenCompass, a comprehensive and systematic LLM evaluation library, which currently supports 50+ datasets with about 300,000 questions.
We appreciate all contributions to XTuner. Please refer to CONTRIBUTING.md for the contributing guideline.
@misc{2023xtuner,
title={XTuner: A Toolkit for Efficiently Fine-tuning LLM},
author={XTuner Contributors},
howpublished = {\url{https://github.com/InternLM/xtuner}},
year={2023}
}
This project is released under the Apache License 2.0. Please also adhere to the Licenses of models and datasets being used.