# MiniCPM Fine-tuning (Part of the doc inside these demo code is automatically generated by [RepoAgent](https://github.com/OpenBMB/RepoAgent)) [中文版](https://github.com/OpenBMB/MiniCPM/blob/main/finetune/README.md) This directory provides examples of fine-tuning the MiniCPM-2B model, including full model fine-tuning and PEFT. In terms of format, we offer examples for multi-turn dialogue fine-tuning and input-output format fine-tuning. If you have downloaded the model to your local system, the `OpenBMB/MiniCPM-2B` field mentioned in this document and in the code should be replaced with the corresponding address to load the model from your local system. Running the example requires `python>=3.10`. Besides the basic `torch` dependency, additional dependencies are needed to run the example code. **We have provided an [example notebook](lora_finetune.ipynb) to demonstrate how to process data and use the fine-tuning script with AdvertiseGen as an example.** ```bash pip install -r requirements.txt ``` ## Testing Hardware Standard We only provide examples for single-node multi-GPU/multi-node multi-GPU setups, so you will need at least one machine with multiple GPUs. In the **default configuration file** in this repository, we have documented the memory usage: + SFT full parameters fine-tuning: Evenly distributed across 4 GPUs, each GPU consumes `30245MiB` of memory. + LORA fine-tuning: One GPU, consuming `10619MiB` of memory.。 > Please note that these results are for reference only, and memory consumption may vary with different parameters. Please adjust according to your hardware situation. ## Multi-Turn Dialogue Format The multi-turn dialogue fine-tuning example adopts the ChatGLM3 dialogue format convention, adding different `loss_mask` for different roles, thus calculating `loss` for multiple replies in one computation. For the data file, the example uses the following format ```json [ { "messages": [ { "role": "system", "content": "" }, { "role": "user", "content": "" }, { "role": "assistant", "content": "" }, // ... Muti Turn { "role": "user", "content": "" }, { "role": "assistant", "content": "" } ] } // ... ] ``` ## Dataset Format Example Here, taking the AdvertiseGen dataset as an example, you can download the AdvertiseGen dataset from [Google Drive](https://drive.google.com/file/d/13_vf0xRTQsyneRKdD1bZIr93vBGOczrk/view?usp=sharing) or [Tsinghua Cloud](https://cloud.tsinghua.edu.cn/f/b3f119a008264b1cabd1/?dl=1) . After extracting the AdvertiseGen directory, place it in the `data` directory and convert it into the following format dataset. > Please note, the fine-tuning code now includes a validation set, so for a complete set of fine-tuning datasets, it must contain training and validation datasets, while the test dataset is optional. Or, you can use the validation dataset in place of it. ``` {"messages": [{"role": "user", "content": "类型#裙*裙长#半身裙"}, {"role": "assistant", "content": "这款百搭时尚的仙女半身裙,整体设计非常的飘逸随性,穿上之后每个女孩子都能瞬间变成小仙女啦。料子非常的轻盈,透气性也很好,穿到夏天也很舒适。"}]} ``` ## Start Fine-tuning Execute **single-node multi-GPU/multi-node multi-GPU** runs with the following code. ```bash cd finetune bash sft_finetune.sh ``` Execute **single-node single-GPU** runs with the following code. ```angular2html cd finetune bash lora_finetune.sh ```