This example ports Alpaca-LoRA to IPEX-LLM (using LoRA algorithm) on Intel GPU.
To run this example with IPEX-LLM on Intel GPUs, we have some recommended requirements for your machine, please refer to here for more information.
conda create -n llm python=3.11
conda activate llm
# below command will install intel_extension_for_pytorch==2.1.10+xpu as default
pip install --pre --upgrade ipex-llm[xpu] --extra-index-url https://pytorch-extension.intel.com/release-whl/stable/xpu/us/
pip install transformers==4.36.0 datasets
pip install fire peft==0.10.0
pip install oneccl_bind_pt==2.1.100 --extra-index-url https://pytorch-extension.intel.com/release-whl/stable/xpu/us/ # necessary to run distributed finetuning
pip install bitsandbytes scipy
source /opt/intel/oneapi/setvars.sh
Here, we provide example usages on different hardware. Please refer to the appropriate script based on your device:
bash lora_finetune_llama2_7b_arc_1_card.sh
# install deepspeed dependencies
source /opt/intel/oneapi/setvars.sh # necessary to run before installing deepspeed
pip install git+https://github.com/microsoft/DeepSpeed.git@78c518e
pip install git+https://github.com/intel/intel-extension-for-deepspeed.git@ec33277
#start finetuning
bash lora_deepspeed_zero3_finetune_chatglm3_6b_arc_2_card.sh
bash lora_finetune_llama2_7b_pvc_1100_1_card.sh
bash lora_finetune_llama2_7b_pvc_1550_1_tile.sh
bash lora_finetune_llama2_7b_pvc_1550_4_card.sh
If you fail to complete the whole finetuning process, it is suggested to resume training from a previously saved checkpoint by specifying resume_from_checkpoint
to the local checkpoint folder as following:
python ./alpaca_lora_finetuning.py \
--base_model "meta-llama/Llama-2-7b-hf" \
--data_path "yahma/alpaca-cleaned" \
--output_dir "./ipex-llm-qlora-alpaca" \
--resume_from_checkpoint "./ipex-llm-qlora-alpaca/checkpoint-1100"
{'loss': 1.9231, 'learning_rate': 2.9999945367033285e-05, 'epoch': 0.0}
{'loss': 1.8622, 'learning_rate': 2.9999781468531096e-05, 'epoch': 0.01}
{'loss': 1.9043, 'learning_rate': 2.9999508305687345e-05, 'epoch': 0.01}
{'loss': 1.8967, 'learning_rate': 2.999912588049185e-05, 'epoch': 0.01}
{'loss': 1.9658, 'learning_rate': 2.9998634195730358e-05, 'epoch': 0.01}
{'loss': 1.8386, 'learning_rate': 2.9998033254984483e-05, 'epoch': 0.02}
{'loss': 1.809, 'learning_rate': 2.999732306263172e-05, 'epoch': 0.02}
{'loss': 1.8552, 'learning_rate': 2.9996503623845395e-05, 'epoch': 0.02}
1%|█ | 8/1164 [xx:xx<xx:xx:xx, xx s/it]
python ./export_merged_model.py --repo-id-or-model-path REPO_ID_OR_MODEL_PATH --adapter_path ./outputs/checkpoint-200 --output_path ./outputs/checkpoint-200-merged
Then you can use ./outputs/checkpoint-200-merged
as a normal huggingface transformer model to do inference.
Please refer to here for solutions of common issues during finetuning.