GGUF and interaction with Transformers
The GGUF file format is used to store models for inference with GGML and other libraries that depend on it, like the very popular llama.cpp or whisper.cpp.
It is a file format supported by the Hugging Face Hub with features allowing for quick inspection of tensors and metadata within the file.
This file format is designed as a “single-file-format” where a single file usually contains both the configuration attributes, the tokenizer vocabulary and other attributes, as well as all tensors to be loaded in the model. These files come in different formats according to the quantization type of the file. We briefly go over some of them here.
Support within Transformers
We have added the ability to load gguf
files within transformers
in order to offer further training/fine-tuning
capabilities to gguf models, before converting back those models to gguf
to use within the ggml
ecosystem. When
loading a model, we first dequantize it to fp32, before loading the weights to be used in PyTorch.
[!NOTE] The support is still very exploratory and we welcome contributions in order to solidify it across quantization types and model architectures.
For now, here are the supported model architectures and quantization types:
Supported quantization types
The initial supported quantization types are decided according to the popular quantized files that have been shared on the Hub.
- F32
- F16
- BF16
- Q4_0
- Q4_1
- Q5_0
- Q5_1
- Q8_0
- Q2_K
- Q3_K
- Q4_K
- Q5_K
- Q6_K
- IQ1_S
- IQ1_M
- IQ2_XXS
- IQ2_XS
- IQ2_S
- IQ3_XXS
- IQ3_S
- IQ4_XS
- IQ4_NL
[!NOTE] To support gguf dequantization,
gguf>=0.10.0
installation is required.
Supported model architectures
For now the supported model architectures are the architectures that have been very popular on the Hub, namely:
- LLaMa
- Mistral
- Qwen2
- Qwen2Moe
- Phi3
- Bloom
- Falcon
- StableLM
- GPT2
- Starcoder2
Example usage
In order to load gguf
files in transformers
, you should specify the gguf_file
argument to the from_pretrained
methods of both tokenizers and models. Here is how one would load a tokenizer and a model, which can be loaded
from the exact same file:
from transformers import AutoTokenizer, AutoModelForCausalLM
model_id = "TheBloke/TinyLlama-1.1B-Chat-v1.0-GGUF"
filename = "tinyllama-1.1b-chat-v1.0.Q6_K.gguf"
tokenizer = AutoTokenizer.from_pretrained(model_id, gguf_file=filename)
model = AutoModelForCausalLM.from_pretrained(model_id, gguf_file=filename)
Now you have access to the full, unquantized version of the model in the PyTorch ecosystem, where you can combine it with a plethora of other tools.
In order to convert back to a gguf
file, we recommend using the
convert-hf-to-gguf.py
file from llama.cpp.
Here’s how you would complete the script above to save the model and export it back to gguf
:
tokenizer.save_pretrained('directory')
model.save_pretrained('directory')
!python ${path_to_llama_cpp}/convert-hf-to-gguf.py ${directory}