# Quantization ## `bitsandbytes` Integration πŸ€— Accelerate brings `bitsandbytes` quantization to your model. You can now load any pytorch model in 8-bit or 4-bit with a few lines of code. If you want to use πŸ€— Transformers models with `bitsandbytes`, you should follow this [documentation](https://huggingface.co/docs/transformers/main_classes/quantization). To learn more about how the `bitsandbytes` quantization works, check out the blog posts on [8-bit quantization](https://huggingface.co/blog/hf-bitsandbytes-integration) and [4-bit quantization](https://huggingface.co/blog/4bit-transformers-bitsandbytes). ### Pre-Requisites You will need to install the following requirements: - Install `bitsandbytes` library ```bash pip install bitsandbytes ``` - Install latest `accelerate` from source ```bash pip install git+https://github.com/huggingface/accelerate.git ``` - Install `minGPT` and `huggingface_hub` to run examples ```bash git clone https://github.com/karpathy/minGPT.git pip install minGPT/ pip install huggingface_hub ``` ### How it works First, we need to initialize our model. To save memory, we can initialize an empty model using the context manager [`init_empty_weights`]. Let's take the GPT2 model from minGPT library. ```py from accelerate import init_empty_weights from mingpt.model import GPT model_config = GPT.get_default_config() model_config.model_type = 'gpt2-xl' model_config.vocab_size = 50257 model_config.block_size = 1024 with init_empty_weights(): empty_model = GPT(model_config) ``` Then, we need to get the path to the weights of your model. The path can be the state_dict file (e.g. "pytorch_model.bin") or a folder containing the sharded checkpoints. ```py from huggingface_hub import snapshot_download weights_location = snapshot_download(repo_id="marcsun13/gpt2-xl-linear-sharded") ``` Finally, you need to set your quantization configuration with [`~utils.BnbQuantizationConfig`]. Here's an example for 8-bit quantization: ```py from accelerate.utils import BnbQuantizationConfig bnb_quantization_config = BnbQuantizationConfig(load_in_8bit=True, llm_int8_threshold = 6) ``` Here's an example for 4-bit quantization: ```py from accelerate.utils import BnbQuantizationConfig bnb_quantization_config = BnbQuantizationConfig(load_in_4bit=True, bnb_4bit_compute_dtype=torch.bfloat16, bnb_4bit_use_double_quant=True, bnb_4bit_quant_type="nf4") ``` To quantize your empty model with the selected configuration, you need to use [`~utils.load_and_quantize_model`]. ```py from accelerate.utils import load_and_quantize_model quantized_model = load_and_quantize_model(empty_model, weights_location=weights_location, bnb_quantization_config=bnb_quantization_config, device_map = "auto") ``` ### Saving and loading 8-bit model You can save your 8-bit model with accelerate using [`~Accelerator.save_model`]. ```py from accelerate import Accelerator accelerate = Accelerator() new_weights_location = "path/to/save_directory" accelerate.save_model(quantized_model, new_weights_location) quantized_model_from_saved = load_and_quantize_model(empty_model, weights_location=new_weights_location, bnb_quantization_config=bnb_quantization_config, device_map = "auto") ``` Note that 4-bit model serialization is currently not supported. ### Offload modules to cpu and disk You can offload some modules to cpu/disk if you don't have enough space on the GPU to store the entire model on your GPUs. This uses big model inference under the hood. Check this [documentation](https://huggingface.co/docs/accelerate/usage_guides/big_modeling) for more details. For 8-bit quantization, the selected modules will be converted to 8-bit precision. For 4-bit quantization, the selected modules will be kept in `torch_dtype` that the user passed in `BnbQuantizationConfig`. We will add support to convert these offloaded modules in 4-bit when 4-bit serialization will be possible. You just need to pass a custom `device_map` in order to offload modules on cpu/disk. The offload modules will be dispatched on the GPU when needed. Here's an example : ```py device_map = { "transformer.wte": 0, "transformer.wpe": 0, "transformer.drop": 0, "transformer.h": "cpu", "transformer.ln_f": "disk", "lm_head": "disk", } ``` ### Fine-tune a quantized model It is not possible to perform pure 8bit or 4bit training on these models. However, you can train these models by leveraging parameter efficient fine tuning methods (PEFT) and train for example adapters on top of them. Please have a look at [peft](https://github.com/huggingface/peft) library for more details. Currently, you can't add adapters on top of any quantized model. However, with the official support of adapters with πŸ€— Transformers models, you can fine-tune quantized models. If you want to finetune a πŸ€— Transformers model , follow this [documentation](https://huggingface.co/docs/transformers/main_classes/quantization) instead. Check out this [demo](https://colab.research.google.com/drive/1VoYNfYDKcKRQRor98Zbf2-9VQTtGJ24k?usp=sharing) on how to fine-tune a 4-bit πŸ€— Transformers model. Note that you don’t need to pass `device_map` when loading the model for training. It will automatically load your model on your GPU. Please note that `device_map=auto` should be used for inference only. ### Example demo - running GPT2 1.5b on a Google Colab Check out the Google Colab [demo](https://colab.research.google.com/drive/1T1pOgewAWVpR9gKpaEWw4orOrzPFb3yM?usp=sharing) for running quantized models on a GTP2 model. The GPT2-1.5B model checkpoint is in FP32 which uses 6GB of memory. After quantization, it uses 1.6GB with 8-bit modules and 1.2GB with 4-bit modules.