+++ disableToc = false title = "Fine-tuning LLMs for text generation" weight = 3 +++ {{% notice note %}} Section under construction {{% /notice %}} This section covers how to fine-tune a language model for text generation and consume it in LocalAI. [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/mudler/LocalAI/blob/master/examples/e2e-fine-tuning/notebook.ipynb) ## Requirements For this example you will need at least a 12GB VRAM of GPU and a Linux box. ## Fine-tuning Fine-tuning a language model is a process that requires a lot of computational power and time. Currently LocalAI doesn't support the fine-tuning endpoint as LocalAI but there are are [plans](https://github.com/mudler/LocalAI/issues/596) to support that. For the time being a guide is proposed here to give a simple starting point on how to fine-tune a model and use it with LocalAI (but also with llama.cpp). There is an e2e example of fine-tuning a LLM model to use with [LocalAI](https://github/mudler/LocalAI) written by [@mudler](https://github.com/mudler) available [here](https://github.com/mudler/LocalAI/tree/master/examples/e2e-fine-tuning/). The steps involved are: - Preparing a dataset - Prepare the environment and install dependencies - Fine-tune the model - Merge the Lora base with the model - Convert the model to gguf - Use the model with LocalAI ## Dataset preparation We are going to need a dataset or a set of datasets. Axolotl supports a variety of formats, in the notebook and in this example we are aiming for a very simple dataset and build that manually, so we are going to use the `completion` format which requires the full text to be used for fine-tuning. A dataset for an instructor model (like Alpaca) can look like the following: ```json [ { "text": "As an AI language model you are trained to reply to an instruction. Try to be as much polite as possible\n\n## Instruction\n\nWrite a poem about a tree.\n\n## Response\n\nTrees are beautiful, ...", }, { "text": "As an AI language model you are trained to reply to an instruction. Try to be as much polite as possible\n\n## Instruction\n\nWrite a poem about a tree.\n\n## Response\n\nTrees are beautiful, ...", } ] ``` Every block in the text is the whole text that is used to fine-tune. For example, for an instructor model it follows the following format (more or less): ``` ## Instruction ## Response ``` The instruction format works such as when we are going to inference with the model, we are going to feed it only the first part up to the `## Instruction` block, and the model is going to complete the text with the `## Response` block. Prepare a dataset, and upload it to your Google Drive in case you are using the Google colab. Otherwise place it next the `axolotl.yaml` file as `dataset.json`. ### Install dependencies ```bash # Install axolotl and dependencies git clone https://github.com/OpenAccess-AI-Collective/axolotl && pushd axolotl && git checkout 797f3dd1de8fd8c0eafbd1c9fdb172abd9ff840a && popd #0.3.0 pip install packaging pushd axolotl && pip install -e '.[flash-attn,deepspeed]' && popd # https://github.com/oobabooga/text-generation-webui/issues/4238 pip install https://github.com/Dao-AILab/flash-attention/releases/download/v2.3.0/flash_attn-2.3.0+cu117torch2.0cxx11abiFALSE-cp310-cp310-linux_x86_64.whl ``` Configure accelerate: ```bash accelerate config default ``` ## Fine-tuning We will need to configure axolotl. In this example is provided a file to use `axolotl.yaml` that uses openllama-3b for fine-tuning. Copy the `axolotl.yaml` file and edit it to your needs. The dataset needs to be next to it as `dataset.json`. You can find the axolotl.yaml file [here](https://github.com/mudler/LocalAI/tree/master/examples/e2e-fine-tuning/). If you have a big dataset, you can pre-tokenize it to speedup the fine-tuning process: ```bash # Optional pre-tokenize (run only if big dataset) python -m axolotl.cli.preprocess axolotl.yaml ``` Now we are ready to start the fine-tuning process: ```bash # Fine-tune accelerate launch -m axolotl.cli.train axolotl.yaml ``` After we have finished the fine-tuning, we merge the Lora base with the model: ```bash # Merge lora python3 -m axolotl.cli.merge_lora axolotl.yaml --lora_model_dir="./qlora-out" --load_in_8bit=False --load_in_4bit=False ``` And we convert it to the gguf format that LocalAI can consume: ```bash # Convert to gguf git clone https://github.com/ggerganov/llama.cpp.git pushd llama.cpp && make LLAMA_CUBLAS=1 && popd # We need to convert the pytorch model into ggml for quantization # It crates 'ggml-model-f16.bin' in the 'merged' directory. pushd llama.cpp && python convert.py --outtype f16 \ ../qlora-out/merged/pytorch_model-00001-of-00002.bin && popd # Start off by making a basic q4_0 4-bit quantization. # It's important to have 'ggml' in the name of the quant for some # software to recognize it's file format. pushd llama.cpp && ./quantize ../qlora-out/merged/ggml-model-f16.gguf \ ../custom-model-q4_0.bin q4_0 ``` Now you should have ended up with a `custom-model-q4_0.bin` file that you can copy in the LocalAI models directory and use it with LocalAI.