Efficient, Flexible and Compressing LLM in less than 2bits
- TL;DR
- News
- Installation
- Evaluation
- Tech Report
- Road Map
- Project main members:
- Acknowledgement
- Publication
- Star History
- Limitation of VPTQ
- Contributing
- Trademarks
Vector Post-Training Quantization (VPTQ) is a novel Post-Training Quantization method that leverages Vector Quantization to high accuracy on LLMs at an extremely low bit-width (<2-bit). VPTQ can compress 70B, even the 405B model, to 1-2 bits without retraining and maintain high accuracy.
- Better Accuracy on 1-2 bits, (405B @ <2bit, 70B @ 2bit)
- Lightweight Quantization Algorithm: only cost ~17 hours to quantize 405B Llama-3.1
- Agile Quantization Inference: low decode overhead, best throughput, and TTFT
- [2024-12-15] 🌐 Open source community contributes Meta Llama 3.3 70B @ 1-4 bits models
- [2024-11-01] 📦 VPTQ is now available on PyPI! You can install it easily using the command:
pip install vptq
. - [2024-10-28] ✨ VPTQ algorithm early-released at algorithm branch, and checkout the tutorial.
- [2024-10-22] 🌐 Open source community contributes Meta Llama 3.1 Nemotron 70B models, check how VPTQ counts 'r' on local GPU. We are continuing to work on quantizing the 4-6 bit versions. Please stay tuned!
- [2024-10-21] 🌐 Open source community contributes Meta Llama 3.1 405B @ 3/4 bits models
- [2024-10-18] 🌐 Open source community contributes Mistral Large Instruct 2407 (123B) models
- [2024-10-14] 🚀 Add early ROCm support.
- [2024-10-06] 🚀 Try VPTQ on Google Colab.
- [2024-10-05] 🚀 Add free Huggingface Demo: Huggingface Demo
- [2024-10-04] ✏️ Updated the VPTQ tech report and fixed typos.
- [2024-09-20] 🌐 Inference code is now open-sourced on GitHub—join us and contribute!
- [2024-09-20] 🎉 VPTQ paper has been accepted for the main track at EMNLP 2024.
- python 3.10+
- torch >= 2.2.0
- transformers >= 4.44.0
- Accelerate >= 0.33.0
- flash_attn >= 2.5.0
- latest datasets
recommend For saving your time to build the package, Please install VPTQ from the latest Release directly
pip install vptq
or from
https://github.com/microsoft/VPTQ/releases
[Not Aavailbe if Release package]
Preparation steps that might be needed: Set up CUDA_HOME and PATH.
Set cuda-12
to your own CUDA version and environment. Run nvcc --version
to find out your version, and which nvcc
to check your CUDA PATH.
# example
export CUDA_HOME=/usr/local/cuda-12
export PATH=/usr/local/cuda-12/bin/:$PATH # set dependent on your environment
Will Take several minutes to compile CUDA kernels, please be patient. Current compilation builds on SM 7.0, 7.5, 8.0, 8,6, 9.0 to reduce the compilation time. You can set TORCH_CUDA_ARCH_LIST
to your specific architecture.
pip install git+https://github.com/microsoft/VPTQ.git --no-build-isolation
You can configure the required CUDA architectures and the number of nvcc compile threads by setting
TORCH_CUDA_ARCH_LIST=8.0,9.0 NVCC_THREADS=16 pip install -e . --no-build-isolation
to reduce compilation time.
Example: Run Llama 3.1 70b on RTX4090 (24G @ ~2bits) in real time
VPTQ is an ongoing project. If the open-source community is interested in optimizing and expanding VPTQ, please feel free to submit an issue or DM.
Quick Estimation of Model Bitwidth (Excluding Codebook Overhead):
-
Model Naming Convention: The model's name includes the vector length
$v$ , codebook (lookup table) size, and residual codebook size. For example, "Meta-Llama-3.1-70B-Instruct-v8-k65536-256-woft" is "Meta-Llama-3.1-70B-Instruct", where:- Vector Length: 8
- Number of Centroids: 65536 (2^16)
- Number of Residual Centroids: 256 (2^8)
-
Equivalent Bitwidth Calculation:
- Index: log2(65536) = 16 / 8 = 2 bits
- Residual Index: log2(256) = 8 / 8 = 1 bit
- Total Bitwidth: 2 + 1 = 3 bits
-
Model Size Estimation: 70B * 3 bits / 8 bits per Byte = 26.25 GB
-
Note: This estimate does not include the size of the codebook (lookup table), other parameter overheads, and the padding overhead for storing indices. For the detailed calculation method, please refer to Tech Report Appendix C.2.
To generate text using the pre-trained model, you can use the following code snippet:
The model VPTQ-community/Meta-Llama-3.1-70B-Instruct-v8-k65536-0-woft (~2 bit) is provided by open source community. The repository cannot guarantee the performance of those models.
python -m vptq --model=VPTQ-community/Meta-Llama-3.1-70B-Instruct-v8-k65536-0-woft --prompt="Explain: Do Not Go Gentle into That Good Night"
Launching a chatbot: Note that you must use a chat model for this to work
python -m vptq --model=VPTQ-community/Meta-Llama-3.1-70B-Instruct-v8-k65536-0-woft --chat
Using the Python API:
import vptq
import transformers
tokenizer = transformers.AutoTokenizer.from_pretrained("VPTQ-community/Meta-Llama-3.1-70B-Instruct-v8-k65536-0-woft")
m = vptq.AutoModelForCausalLM.from_pretrained("VPTQ-community/Meta-Llama-3.1-70B-Instruct-v8-k65536-0-woft", device_map='auto')
inputs = tokenizer("Explain: Do Not Go Gentle into That Good Night", return_tensors="pt").to("cuda")
out = m.generate(**inputs, max_new_tokens=100, pad_token_id=2)
print(tokenizer.decode(out[0], skip_special_tokens=True))
An environment variable is available to control share link or not.
export SHARE_LINK=1
python -m vptq.app
Scaling model size significantly challenges the deployment and inference of Large Language Models (LLMs). Due to the redundancy in LLM weights, recent research has focused on pushing weight-only quantization to extremely low-bit (even down to 2 bits). It reduces memory requirements, optimizes storage costs, and decreases memory bandwidth needs during inference. However, due to numerical representation limitations, traditional scalar-based weight quantization struggles to achieve such extreme low-bit. Recent research on Vector Quantization (VQ) for LLMs has demonstrated the potential for extremely low-bit model quantization by compressing vectors into indices using lookup tables.
Read tech report at Tech Report and arXiv Paper
VPTQ achieves better accuracy and higher throughput with lower quantization overhead across models of different sizes. The following experimental results are for reference only; VPTQ can achieve better outcomes under reasonable parameters, especially in terms of model accuracy and inference speed.
Model | bitwidth | W2↓ | C4↓ | AvgQA↑ | tok/s↑ | mem(GB) | cost/h↓ |
---|---|---|---|---|---|---|---|
LLaMA-2 7B | 2.02 | 6.13 | 8.07 | 58.2 | 39.9 | 2.28 | 2 |
2.26 | 5.95 | 7.87 | 59.4 | 35.7 | 2.48 | 3.1 | |
LLaMA-2 13B | 2.02 | 5.32 | 7.15 | 62.4 | 26.9 | 4.03 | 3.2 |
2.18 | 5.28 | 7.04 | 63.1 | 18.5 | 4.31 | 3.6 | |
LLaMA-2 70B | 2.07 | 3.93 | 5.72 | 68.6 | 9.7 | 19.54 | 19 |
2.11 | 3.92 | 5.71 | 68.7 | 9.7 | 20.01 | 19 |
- Merge the quantization algorithm into the public repository.
- Release on Pypi
- Improve the implementation of the inference kernel (e.g., CUDA, ROCm, Triton) and apply kernel fusion by combining dequantization (lookup) and Linear (GEMM) to enhance inference performance.
- Support VLM models @YangWang92
- Contribute VPTQ to Huggingface Transformers
- Contribute VPTQ to vLLM, LLM Compressor
- Contribute VPTQ to llama.cpp/exllama.
- Contribute VPTQ to Edge devices deployment.
- TBC
- Yifei Liu (@lyf-00)
- Jicheng Wen (@wejoncy)
- Yang Wang (@YangWang92)
- We thank for James Hensman for his crucial insights into the error analysis related to Vector Quantization (VQ), and his comments on LLMs evaluation are invaluable to this research.
- We are deeply grateful for the inspiration provided by the papers QUIP, QUIP#, GPTVQ, AQLM, WoodFisher, GPTQ, and OBC.
EMNLP 2024 Main
@inproceedings{
vptq,
title={VPTQ: Extreme Low-bit Vector Post-Training Quantization for Large Language Models},
author={Yifei Liu and
Jicheng Wen and
Yang Wang and
Shengyu Ye and
Li Lyna Zhang and
Ting Cao and
Cheng Li and
Mao Yang},
booktitle={The 2024 Conference on Empirical Methods in Natural Language Processing},
year={2024},
}
⚠️ VPTQ should only be used for research and experimental purposes. Further testing and validation are needed before you use it.⚠️ The repository only provides a method of model quantization algorithm. The open-source community may provide models based on the technical report and quantization algorithm by themselves, but the repository cannot guarantee the performance of those models.⚠️ VPTQ is not capable of testing all potential applications and domains, and VPTQ cannot guarantee the accuracy and effectiveness of VPTQ across other tasks or scenarios.⚠️ Our tests are all based on English texts; other languages are not included in the current testing.
This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.
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