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Fine-tuning a large language model can be easy as...
https://github.com/user-attachments/assets/7c96b465-9df7-45f4-8053-bf03e58386d3
Choose your path:
- Colab: https://colab.research.google.com/drive/1eRTPn37ltBbYsISy9Aw2NuI2Aq5CQrD9?usp=sharing
- PAI-DSW: Llama3 Example | Qwen2-VL Example
- Local machine: Please refer to usage
- Documentation (WIP): https://llamafactory.readthedocs.io/zh-cn/latest/
Except for the above links, all other websites are unauthorized third-party websites. Please carefully use them.
Table of Contents
- Features
- Benchmark
- Changelog
- Supported Models
- Supported Training Approaches
- Provided Datasets
- Requirement
- Getting Started
- Projects using LLaMA Factory
- License
- Citation
- Acknowledgement
Features
- Various models: LLaMA, LLaVA, Mistral, Mixtral-MoE, Qwen, Qwen2-VL, Yi, Gemma, Baichuan, ChatGLM, Phi, etc.
- Integrated methods: (Continuous) pre-training, (multimodal) supervised fine-tuning, reward modeling, PPO, DPO, KTO, ORPO, etc.
- Scalable resources: 16-bit full-tuning, freeze-tuning, LoRA and 2/3/4/5/6/8-bit QLoRA via AQLM/AWQ/GPTQ/LLM.int8/HQQ/EETQ.
- Advanced algorithms: GaLore, BAdam, Adam-mini, DoRA, LongLoRA, LLaMA Pro, Mixture-of-Depths, LoRA+, LoftQ, PiSSA and Agent tuning.
- Practical tricks: FlashAttention-2, Unsloth, Liger Kernel, RoPE scaling, NEFTune and rsLoRA.
- Experiment monitors: LlamaBoard, TensorBoard, Wandb, MLflow, etc.
- Faster inference: OpenAI-style API, Gradio UI and CLI with vLLM worker.
Benchmark
Compared to ChatGLM's P-Tuning, LLaMA Factory's LoRA tuning offers up to 3.7 times faster training speed with a better Rouge score on the advertising text generation task. By leveraging 4-bit quantization technique, LLaMA Factory's QLoRA further improves the efficiency regarding the GPU memory.
Definitions
- Training Speed: the number of training samples processed per second during the training. (bs=4, cutoff_len=1024)
- Rouge Score: Rouge-2 score on the development set of the advertising text generation task. (bs=4, cutoff_len=1024)
- GPU Memory: Peak GPU memory usage in 4-bit quantized training. (bs=1, cutoff_len=1024)
- We adopt
pre_seq_len=128
for ChatGLM's P-Tuning andlora_rank=32
for LLaMA Factory's LoRA tuning.
Changelog
[24/10/09] We supported downloading pre-trained models and datasets from the Modelers Hub. See this tutorial for usage.
[24/09/19] We support fine-tuning the Qwen2.5 models.
[24/08/30] We support fine-tuning the Qwen2-VL models. Thank @simonJJJ's PR.
[24/08/27] We support Liger Kernel. Try enable_liger_kernel: true
for efficient training.
[24/08/09] We support Adam-mini optimizer. See examples for usage. Thank @relic-yuexi's PR.
Full Changelog
[24/07/04] We support contamination-free packed training. Use neat_packing: true
to activate it. Thank @chuan298's PR.
[24/06/16] We support PiSSA algorithm. See examples for usage.
[24/06/07] We supported fine-tuning the Qwen2 and GLM-4 models.
[24/05/26] We supported SimPO algorithm for preference learning. See examples for usage.
[24/05/20] We supported fine-tuning the PaliGemma series models. Note that the PaliGemma models are pre-trained models, you need to fine-tune them with paligemma
template for chat completion.
[24/05/18] We supported KTO algorithm for preference learning. See examples for usage.
[24/05/14] We supported training and inference on the Ascend NPU devices. Check installation section for details.
[24/04/26] We supported fine-tuning the LLaVA-1.5 multimodal LLMs. See examples for usage.
[24/04/22] We provided a Colab notebook for fine-tuning the Llama-3 model on a free T4 GPU. Two Llama-3-derived models fine-tuned using LLaMA Factory are available at Hugging Face, check Llama3-8B-Chinese-Chat and Llama3-Chinese for details.
[24/04/21] We supported Mixture-of-Depths according to AstraMindAI's implementation. See examples for usage.
[24/04/16] We supported BAdam optimizer. See examples for usage.
[24/04/16] We supported unsloth's long-sequence training (Llama-2-7B-56k within 24GB). It achieves 117% speed and 50% memory compared with FlashAttention-2, more benchmarks can be found in this page.
[24/03/31] We supported ORPO. See examples for usage.
[24/03/21] Our paper "LlamaFactory: Unified Efficient Fine-Tuning of 100+ Language Models" is available at arXiv!
[24/03/20] We supported FSDP+QLoRA that fine-tunes a 70B model on 2x24GB GPUs. See examples for usage.
[24/03/13] We supported LoRA+. See examples for usage.
[24/03/07] We supported GaLore optimizer. See examples for usage.
[24/03/07] We integrated vLLM for faster and concurrent inference. Try infer_backend: vllm
to enjoy 270% inference speed.
[24/02/28] We supported weight-decomposed LoRA (DoRA). Try use_dora: true
to activate DoRA training.
[24/02/15] We supported block expansion proposed by LLaMA Pro. See examples for usage.
[24/02/05] Qwen1.5 (Qwen2 beta version) series models are supported in LLaMA-Factory. Check this blog post for details.
[24/01/18] We supported agent tuning for most models, equipping model with tool using abilities by fine-tuning with dataset: glaive_toolcall_en
.
[23/12/23] We supported unsloth's implementation to boost LoRA tuning for the LLaMA, Mistral and Yi models. Try use_unsloth: true
argument to activate unsloth patch. It achieves 170% speed in our benchmark, check this page for details.
[23/12/12] We supported fine-tuning the latest MoE model Mixtral 8x7B in our framework. See hardware requirement here.
[23/12/01] We supported downloading pre-trained models and datasets from the ModelScope Hub. See this tutorial for usage.
[23/10/21] We supported NEFTune trick for fine-tuning. Try neftune_noise_alpha: 5
argument to activate NEFTune.
[23/09/27] We supported $S^2$-Attn proposed by LongLoRA for the LLaMA models. Try shift_attn: true
argument to enable shift short attention.
[23/09/23] We integrated MMLU, C-Eval and CMMLU benchmarks in this repo. See examples for usage.
[23/09/10] We supported FlashAttention-2. Try flash_attn: fa2
argument to enable FlashAttention-2 if you are using RTX4090, A100 or H100 GPUs.
[23/08/12] We supported RoPE scaling to extend the context length of the LLaMA models. Try rope_scaling: linear
argument in training and rope_scaling: dynamic
argument at inference to extrapolate the position embeddings.
[23/08/11] We supported DPO training for instruction-tuned models. See examples for usage.
[23/07/31] We supported dataset streaming. Try streaming: true
and max_steps: 10000
arguments to load your dataset in streaming mode.
[23/07/29] We released two instruction-tuned 13B models at Hugging Face. See these Hugging Face Repos (LLaMA-2 / Baichuan) for details.
[23/07/18] We developed an all-in-one Web UI for training, evaluation and inference. Try train_web.py
to fine-tune models in your Web browser. Thank @KanadeSiina and @codemayq for their efforts in the development.
[23/07/09] We released FastEdit ⚡🩹, an easy-to-use package for editing the factual knowledge of large language models efficiently. Please follow FastEdit if you are interested.
[23/06/29] We provided a reproducible example of training a chat model using instruction-following datasets, see Baichuan-7B-sft for details.
[23/06/22] We aligned the demo API with the OpenAI's format where you can insert the fine-tuned model in arbitrary ChatGPT-based applications.
[23/06/03] We supported quantized training and inference (aka QLoRA). See examples for usage.
Supported Models
Model | Model size | Template |
---|---|---|
Baichuan 2 | 7B/13B | baichuan2 |
BLOOM/BLOOMZ | 560M/1.1B/1.7B/3B/7.1B/176B | - |
ChatGLM3 | 6B | chatglm3 |
Command R | 35B/104B | cohere |
DeepSeek (Code/MoE) | 7B/16B/67B/236B | deepseek |
Falcon | 7B/11B/40B/180B | falcon |
Gemma/Gemma 2/CodeGemma | 2B/7B/9B/27B | gemma |
GLM-4 | 9B | glm4 |
InternLM2/InternLM2.5 | 7B/20B | intern2 |
Llama | 7B/13B/33B/65B | - |
Llama 2 | 7B/13B/70B | llama2 |
Llama 3-3.2 | 1B/3B/8B/70B | llama3 |
LLaVA-1.5 | 7B/13B | llava |
LLaVA-NeXT | 7B/8B/13B/34B/72B/110B | llava_next |
LLaVA-NeXT-Video | 7B/34B | llava_next_video |
MiniCPM | 1B/2B/4B | cpm/cpm3 |
Mistral/Mixtral | 7B/8x7B/8x22B | mistral |
OLMo | 1B/7B | - |
PaliGemma | 3B | paligemma |
Phi-1.5/Phi-2 | 1.3B/2.7B | - |
Phi-3 | 4B/7B/14B | phi |
Qwen (1-2.5) (Code/Math/MoE) | 0.5B/1.5B/3B/7B/14B/32B/72B/110B | qwen |
Qwen2-VL | 2B/7B/72B | qwen2_vl |
StarCoder 2 | 3B/7B/15B | - |
XVERSE | 7B/13B/65B | xverse |
Yi/Yi-1.5 (Code) | 1.5B/6B/9B/34B | yi |
Yi-VL | 6B/34B | yi_vl |
Yuan 2 | 2B/51B/102B | yuan |
For the "base" models, the
template
argument can be chosen fromdefault
,alpaca
,vicuna
etc. But make sure to use the corresponding template for the "instruct/chat" models.Remember to use the SAME template in training and inference.
Please refer to constants.py for a full list of models we supported.
You also can add a custom chat template to template.py.
Supported Training Approaches
Approach | Full-tuning | Freeze-tuning | LoRA | QLoRA |
---|---|---|---|---|
Pre-Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
Supervised Fine-Tuning | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
Reward Modeling | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
PPO Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
DPO Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
KTO Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
ORPO Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
SimPO Training | :white_check_mark: | :white_check_mark: | :white_check_mark: | :white_check_mark: |
The implementation details of PPO can be found in this blog.
Provided Datasets
Pre-training datasets
Supervised fine-tuning datasets
- Identity (en&zh)
- Stanford Alpaca (en)
- Stanford Alpaca (zh)
- Alpaca GPT4 (en&zh)
- Glaive Function Calling V2 (en&zh)
- LIMA (en)
- Guanaco Dataset (multilingual)
- BELLE 2M (zh)
- BELLE 1M (zh)
- BELLE 0.5M (zh)
- BELLE Dialogue 0.4M (zh)
- BELLE School Math 0.25M (zh)
- BELLE Multiturn Chat 0.8M (zh)
- UltraChat (en)
- OpenPlatypus (en)
- CodeAlpaca 20k (en)
- Alpaca CoT (multilingual)
- OpenOrca (en)
- SlimOrca (en)
- MathInstruct (en)
- Firefly 1.1M (zh)
- Wiki QA (en)
- Web QA (zh)
- WebNovel (zh)
- Nectar (en)
- deepctrl (en&zh)
- Advertise Generating (zh)
- ShareGPT Hyperfiltered (en)
- ShareGPT4 (en&zh)
- UltraChat 200k (en)
- AgentInstruct (en)
- LMSYS Chat 1M (en)
- Evol Instruct V2 (en)
- Cosmopedia (en)
- STEM (zh)
- Ruozhiba (zh)
- Neo-sft (zh)
- WebInstructSub (en)
- Magpie-Pro-300K-Filtered (en)
- Magpie-ultra-v0.1 (en)
- LLaVA mixed (en&zh)
- Pokemon-gpt4o-captions (en&zh)
- Open Assistant (de)
- Dolly 15k (de)
- Alpaca GPT4 (de)
- OpenSchnabeltier (de)
- Evol Instruct (de)
- Dolphin (de)
- Booksum (de)
- Airoboros (de)
- Ultrachat (de)
Preference datasets
Some datasets require confirmation before using them, so we recommend logging in with your Hugging Face account using these commands.
pip install --upgrade huggingface_hub
huggingface-cli login
Requirement
Mandatory | Minimum | Recommend |
---|---|---|
python | 3.8 | 3.11 |
torch | 1.13.1 | 2.4.0 |
transformers | 4.41.2 | 4.43.4 |
datasets | 2.16.0 | 2.20.0 |
accelerate | 0.30.1 | 0.32.0 |
peft | 0.11.1 | 0.12.0 |
trl | 0.8.6 | 0.9.6 |
Optional | Minimum | Recommend |
---|---|---|
CUDA | 11.6 | 12.2 |
deepspeed | 0.10.0 | 0.14.0 |
bitsandbytes | 0.39.0 | 0.43.1 |
vllm | 0.4.3 | 0.5.0 |
flash-attn | 2.3.0 | 2.6.3 |
Hardware Requirement
* estimated
Method | Bits | 7B | 13B | 30B | 70B | 110B | 8x7B | 8x22B |
---|---|---|---|---|---|---|---|---|
Full | AMP | 120GB | 240GB | 600GB | 1200GB | 2000GB | 900GB | 2400GB |
Full | 16 | 60GB | 120GB | 300GB | 600GB | 900GB | 400GB | 1200GB |
Freeze | 16 | 20GB | 40GB | 80GB | 200GB | 360GB | 160GB | 400GB |
LoRA/GaLore/BAdam | 16 | 16GB | 32GB | 64GB | 160GB | 240GB | 120GB | 320GB |
QLoRA | 8 | 10GB | 20GB | 40GB | 80GB | 140GB | 60GB | 160GB |
QLoRA | 4 | 6GB | 12GB | 24GB | 48GB | 72GB | 30GB | 96GB |
QLoRA | 2 | 4GB | 8GB | 16GB | 24GB | 48GB | 18GB | 48GB |
Getting Started
Installation
Installation is mandatory.
git clone --depth 1 https://github.com/hiyouga/LLaMA-Factory.git
cd LLaMA-Factory
pip install -e ".[torch,metrics]"
Extra dependencies available: torch, torch-npu, metrics, deepspeed, liger-kernel, bitsandbytes, hqq, eetq, gptq, awq, aqlm, vllm, galore, badam, adam-mini, qwen, modelscope, openmind, quality
Use
pip install --no-deps -e .
to resolve package conflicts.
For Windows users
If you want to enable the quantized LoRA (QLoRA) on the Windows platform, you need to install a pre-built version of bitsandbytes
library, which supports CUDA 11.1 to 12.2, please select the appropriate release version based on your CUDA version.
pip install https://github.com/jllllll/bitsandbytes-windows-webui/releases/download/wheels/bitsandbytes-0.41.2.post2-py3-none-win_amd64.whl
To enable FlashAttention-2 on the Windows platform, you need to install the precompiled flash-attn
library, which supports CUDA 12.1 to 12.2. Please download the corresponding version from flash-attention based on your requirements.
For Ascend NPU users
To install LLaMA Factory on Ascend NPU devices, please specify extra dependencies: pip install -e ".[torch-npu,metrics]"
. Additionally, you need to install the Ascend CANN Toolkit and Kernels. Please follow the installation tutorial or use the following commands:
# replace the url according to your CANN version and devices
# install CANN Toolkit
wget https://ascend-repo.obs.cn-east-2.myhuaweicloud.com/Milan-ASL/Milan-ASL%20V100R001C17SPC701/Ascend-cann-toolkit_8.0.RC1.alpha001_linux-"$(uname -i)".run
bash Ascend-cann-toolkit_8.0.RC1.alpha001_linux-"$(uname -i)".run --install
# install CANN Kernels
wget https://ascend-repo.obs.cn-east-2.myhuaweicloud.com/Milan-ASL/Milan-ASL%20V100R001C17SPC701/Ascend-cann-kernels-910b_8.0.RC1.alpha001_linux.run
bash Ascend-cann-kernels-910b_8.0.RC1.alpha001_linux.run --install
# set env variables
source /usr/local/Ascend/ascend-toolkit/set_env.sh
Requirement | Minimum | Recommend |
---|---|---|
CANN | 8.0.RC1 | 8.0.RC1 |
torch | 2.1.0 | 2.1.0 |
torch-npu | 2.1.0 | 2.1.0.post3 |
deepspeed | 0.13.2 | 0.13.2 |
Remember to use ASCEND_RT_VISIBLE_DEVICES
instead of CUDA_VISIBLE_DEVICES
to specify the device to use.
If you cannot infer model on NPU devices, try setting do_sample: false
in the configurations.
Data Preparation
Please refer to data/README.md for checking the details about the format of dataset files. You can either use datasets on HuggingFace / ModelScope / Modelers hub or load the dataset in local disk.
Please update
data/dataset_info.json
to use your custom dataset.
Quickstart
Use the following 3 commands to run LoRA fine-tuning, inference and merging of the Llama3-8B-Instruct model, respectively.
llamafactory-cli train examples/train_lora/llama3_lora_sft.yaml
llamafactory-cli chat examples/inference/llama3_lora_sft.yaml
llamafactory-cli export examples/merge_lora/llama3_lora_sft.yaml
See examples/README.md for advanced usage (including distributed training).
Use
llamafactory-cli help
to show help information.
Fine-Tuning with LLaMA Board GUI (powered by Gradio)
llamafactory-cli webui
Build Docker
For CUDA users:
cd docker/docker-cuda/
docker compose up -d
docker compose exec llamafactory bash
For Ascend NPU users:
cd docker/docker-npu/
docker compose up -d
docker compose exec llamafactory bash
For AMD ROCm users:
cd docker/docker-rocm/
docker compose up -d
docker compose exec llamafactory bash
Build without Docker Compose
For CUDA users:
docker build -f ./docker/docker-cuda/Dockerfile \
--build-arg INSTALL_BNB=false \
--build-arg INSTALL_VLLM=false \
--build-arg INSTALL_DEEPSPEED=false \
--build-arg INSTALL_FLASHATTN=false \
--build-arg PIP_INDEX=https://pypi.org/simple \
-t llamafactory:latest .
docker run -dit --gpus=all \
-v ./hf_cache:/root/.cache/huggingface \
-v ./ms_cache:/root/.cache/modelscope \
-v ./om_cache:/root/.cache/openmind \
-v ./data:/app/data \
-v ./output:/app/output \
-p 7860:7860 \
-p 8000:8000 \
--shm-size 16G \
--name llamafactory \
llamafactory:latest
docker exec -it llamafactory bash
For Ascend NPU users:
# Choose docker image upon your environment
docker build -f ./docker/docker-npu/Dockerfile \
--build-arg INSTALL_DEEPSPEED=false \
--build-arg PIP_INDEX=https://pypi.org/simple \
-t llamafactory:latest .
# Change `device` upon your resources
docker run -dit \
-v ./hf_cache:/root/.cache/huggingface \
-v ./ms_cache:/root/.cache/modelscope \
-v ./om_cache:/root/.cache/openmind \
-v ./data:/app/data \
-v ./output:/app/output \
-v /usr/local/dcmi:/usr/local/dcmi \
-v /usr/local/bin/npu-smi:/usr/local/bin/npu-smi \
-v /usr/local/Ascend/driver:/usr/local/Ascend/driver \
-v /etc/ascend_install.info:/etc/ascend_install.info \
-p 7860:7860 \
-p 8000:8000 \
--device /dev/davinci0 \
--device /dev/davinci_manager \
--device /dev/devmm_svm \
--device /dev/hisi_hdc \
--shm-size 16G \
--name llamafactory \
llamafactory:latest
docker exec -it llamafactory bash
For AMD ROCm users:
docker build -f ./docker/docker-rocm/Dockerfile \
--build-arg INSTALL_BNB=false \
--build-arg INSTALL_VLLM=false \
--build-arg INSTALL_DEEPSPEED=false \
--build-arg INSTALL_FLASHATTN=false \
--build-arg PIP_INDEX=https://pypi.org/simple \
-t llamafactory:latest .
docker run -dit \
-v ./hf_cache:/root/.cache/huggingface \
-v ./ms_cache:/root/.cache/modelscope \
-v ./om_cache:/root/.cache/openmind \
-v ./data:/app/data \
-v ./output:/app/output \
-v ./saves:/app/saves \
-p 7860:7860 \
-p 8000:8000 \
--device /dev/kfd \
--device /dev/dri \
--shm-size 16G \
--name llamafactory \
llamafactory:latest
docker exec -it llamafactory bash
Details about volume
hf_cache
: Utilize Hugging Face cache on the host machine. Reassignable if a cache already exists in a different directory.ms_cache
: Similar to Hugging Face cache but for ModelScope users.om_cache
: Similar to Hugging Face cache but for Modelers users.data
: Place datasets on this dir of the host machine so that they can be selected on LLaMA Board GUI.output
: Set export dir to this location so that the merged result can be accessed directly on the host machine.
Deploy with OpenAI-style API and vLLM
API_PORT=8000 llamafactory-cli api examples/inference/llama3_vllm.yaml
Visit this page for API document.
Download from ModelScope Hub
If you have trouble with downloading models and datasets from Hugging Face, you can use ModelScope.
export USE_MODELSCOPE_HUB=1 # `set USE_MODELSCOPE_HUB=1` for Windows
Train the model by specifying a model ID of the ModelScope Hub as the model_name_or_path
. You can find a full list of model IDs at ModelScope Hub, e.g., LLM-Research/Meta-Llama-3-8B-Instruct
.
Download from Modelers Hub
You can also use Modelers Hub to download models and datasets.
export USE_OPENMIND_HUB=1 # `set USE_OPENMIND_HUB=1` for Windows
Train the model by specifying a model ID of the Modelers Hub as the model_name_or_path
. You can find a full list of model IDs at Modelers Hub, e.g., TeleAI/TeleChat-7B-pt
.
Use W&B Logger
To use Weights & Biases for logging experimental results, you need to add the following arguments to yaml files.
report_to: wandb
run_name: test_run # optional
Set WANDB_API_KEY
to your key when launching training tasks to log in with your W&B account.
Projects using LLaMA Factory
If you have a project that should be incorporated, please contact via email or create a pull request.
Click to show
- Wang et al. ESRL: Efficient Sampling-based Reinforcement Learning for Sequence Generation. 2023. [arxiv]
- Yu et al. Open, Closed, or Small Language Models for Text Classification? 2023. [arxiv]
- Wang et al. UbiPhysio: Support Daily Functioning, Fitness, and Rehabilitation with Action Understanding and Feedback in Natural Language. 2023. [arxiv]
- Luceri et al. Leveraging Large Language Models to Detect Influence Campaigns in Social Media. 2023. [arxiv]
- Zhang et al. Alleviating Hallucinations of Large Language Models through Induced Hallucinations. 2023. [arxiv]
- Wang et al. Know Your Needs Better: Towards Structured Understanding of Marketer Demands with Analogical Reasoning Augmented LLMs. KDD 2024. [arxiv]
- Wang et al. CANDLE: Iterative Conceptualization and Instantiation Distillation from Large Language Models for Commonsense Reasoning. ACL 2024. [arxiv]
- Choi et al. FACT-GPT: Fact-Checking Augmentation via Claim Matching with LLMs. 2024. [arxiv]
- Zhang et al. AutoMathText: Autonomous Data Selection with Language Models for Mathematical Texts. 2024. [arxiv]
- Lyu et al. KnowTuning: Knowledge-aware Fine-tuning for Large Language Models. 2024. [arxiv]
- Yang et al. LaCo: Large Language Model Pruning via Layer Collaps. 2024. [arxiv]
- Bhardwaj et al. Language Models are Homer Simpson! Safety Re-Alignment of Fine-tuned Language Models through Task Arithmetic. 2024. [arxiv]
- Yang et al. Enhancing Empathetic Response Generation by Augmenting LLMs with Small-scale Empathetic Models. 2024. [arxiv]
- Yi et al. Generation Meets Verification: Accelerating Large Language Model Inference with Smart Parallel Auto-Correct Decoding. ACL 2024 Findings. [arxiv]
- Cao et al. Head-wise Shareable Attention for Large Language Models. 2024. [arxiv]
- Zhang et al. Enhancing Multilingual Capabilities of Large Language Models through Self-Distillation from Resource-Rich Languages. 2024. [arxiv]
- Kim et al. Efficient and Effective Vocabulary Expansion Towards Multilingual Large Language Models. 2024. [arxiv]
- Yu et al. KIEval: A Knowledge-grounded Interactive Evaluation Framework for Large Language Models. ACL 2024. [arxiv]
- Huang et al. Key-Point-Driven Data Synthesis with its Enhancement on Mathematical Reasoning. 2024. [arxiv]
- Duan et al. Negating Negatives: Alignment without Human Positive Samples via Distributional Dispreference Optimization. 2024. [arxiv]
- Xie and Schwertfeger. Empowering Robotics with Large Language Models: osmAG Map Comprehension with LLMs. 2024. [arxiv]
- Wu et al. Large Language Models are Parallel Multilingual Learners. 2024. [arxiv]
- Zhang et al. EDT: Improving Large Language Models' Generation by Entropy-based Dynamic Temperature Sampling. 2024. [arxiv]
- Weller et al. FollowIR: Evaluating and Teaching Information Retrieval Models to Follow Instructions. 2024. [arxiv]
- Hongbin Na. CBT-LLM: A Chinese Large Language Model for Cognitive Behavioral Therapy-based Mental Health Question Answering. COLING 2024. [arxiv]
- Zan et al. CodeS: Natural Language to Code Repository via Multi-Layer Sketch. 2024. [arxiv]
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License
This repository is licensed under the Apache-2.0 License.
Please follow the model licenses to use the corresponding model weights: Baichuan 2 / BLOOM / ChatGLM3 / Command R / DeepSeek / Falcon / Gemma / GLM-4 / InternLM2 / Llama / Llama 2 (LLaVA-1.5) / Llama 3 / MiniCPM / Mistral / OLMo / Phi-1.5/Phi-2 / Phi-3 / Qwen / StarCoder 2 / XVERSE / Yi / Yi-1.5 / Yuan 2
Citation
If this work is helpful, please kindly cite as:
@inproceedings{zheng2024llamafactory,
title={LlamaFactory: Unified Efficient Fine-Tuning of 100+ Language Models},
author={Yaowei Zheng and Richong Zhang and Junhao Zhang and Yanhan Ye and Zheyan Luo and Zhangchi Feng and Yongqiang Ma},
booktitle={Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)},
address={Bangkok, Thailand},
publisher={Association for Computational Linguistics},
year={2024},
url={http://arxiv.org/abs/2403.13372}
}
Acknowledgement
This repo benefits from PEFT, TRL, QLoRA and FastChat. Thanks for their wonderful works.