• Stars
    star
    9,145
  • Rank 3,941 (Top 0.08 %)
  • Language
    Python
  • License
    MIT License
  • Created over 3 years ago
  • Updated 7 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Code for loralib, an implementation of "LoRA: Low-Rank Adaptation of Large Language Models"

LoRA: Low-Rank Adaptation of Large Language Models

(For the radio communication technique, see LoRa.)

This repo contains the source code of the Python package loralib and several examples of how to integrate it with PyTorch models, such as those in Hugging Face. We only support PyTorch for now. See our paper for a detailed description of LoRA.

LoRA: Low-Rank Adaptation of Large Language Models
Edward J. Hu*, Yelong Shen*, Phillip Wallis, Zeyuan Allen-Zhu, Yuanzhi Li, Shean Wang, Lu Wang, Weizhu Chen
Paper: https://arxiv.org/abs/2106.09685

Update 2/2023: LoRA is now supported by the State-of-the-art Parameter-Efficient Fine-Tuning (PEFT) library by Hugging Face.

LoRA reduces the number of trainable parameters by learning pairs of rank-decompostion matrices while freezing the original weights. This vastly reduces the storage requirement for large language models adapted to specific tasks and enables efficient task-switching during deployment all without introducing inference latency. LoRA also outperforms several other adaptation methods including adapter, prefix-tuning, and fine-tuning.

We obtain result comparable or superior to full finetuning on the GLUE benchmark using RoBERTa (Liu et al., 2019) base and large and DeBERTa (He et al., 2020) XXL 1.5B, while only training and storing a fraction of the parameters. Click the numbers below to download the RoBERTa and DeBERTa LoRA checkpoints.

RoBERTa base
Fine-tune
RoBERTa base
LoRA
DeBERTa XXL
Fine-tune
DeBERTa XXL
LoRA
# of Trainable Params. 125M 0.8M 1.5B 4.7M
MNLI (m-Acc/mm-Acc) 87.6 87.5±.3/86.9±.3 91.7/91.9 91.9±.1/91.9±.2
SST2 (Acc) 94.8 95.1±.2 97.2 96.9±.2
MRPC (Acc) 90.2 89.7±.7 92.0 92.6±.6
CoLA (Matthew's Corr) 63.6 63.4±1.2 72.0 72.4±1.1
QNLI (Acc) 92.8 93.3±.3 96.0 96.0±.1
QQP (Acc) 91.9 90.8±.1 92.7 92.9±.1
RTE (Acc) 78.7 86.6±.7 93.9 94.9±.4
STSB (Pearson/Spearman Corr) 91.2 91.5±.2/91.3±.2 92.9/92.6 93.0±.2/92.9±.3
Average 86.40 87.24 91.06 91.32

Note: You still need the original pre-trained checkpoint from Hugging Face to use the LoRA checkpoints.

Fine-tuning numbers are taken from Liu et al. (2019) and He et al. (2020). We include confidence intervals on results from our experiments. Please follow the instructions in examples/NLU/ to reproduce our results.

On GPT-2, LoRA compares favorably to both full finetuning and other efficient tuning methods, such as adapter (Houlsby et al., 2019) and prefix tuning (Li and Liang, 2021). We evaluated on E2E NLG Challenge, DART, and WebNLG:

Method # of Trainable Params E2E (BLEU) DART (BLEU) WebNLG (BLEU-U/S/A)
GPT-2 M (Fine-Tune) 354.92M 68.2 46.0 30.4/63.2/47.6
GPT-2 M (Adapter) 0.37M 66.3 42.4 45.1/54.5/50.2
GPT-2 M (Prefix) 0.35M 69.7 45.7 44.1/63.1/54.4
GPT-2 M (LoRA) 0.35M 70.4±.1 47.1±.2 46.7±.4/62.1±.2/55.3±.2
GPT-2 L (Fine-Tune) 774.03M 68.5 46.5 41.7/64.6/54.2
GPT-2 L (Adapter) 0.88M 69.1±.1 45.7±.1 49.8±.0/61.1±.0/56.0±.0
GPT-2 L (Prefix) 0.77M 70.3 46.5 47.0/64.2/56.4
GPT-2 L (LoRA) 0.77M 70.4±.1 47.5±.1 48.4±.3/64.0±.3/57.0±.1

Non-LoRA baselines, except for adapter on GPT-2 large, are taken from Li and Liang (2021). We include confidence intervals on results from our experiments.

Download the GPT-2 LoRA checkpoints:

Please follow the instructions in examples/NLG/ to reproduce our result.

Repository Overview

(The initial release of this repo has been archived in the branch "snapshot-9-15-2021")

There are several directories in this repo:

  • loralib/ contains the source code for the package loralib, which needs to be installed to run the examples we provide;
  • examples/NLG/ contains an example implementation of LoRA in GPT-2 using our package, which can be used to reproduce the result in our paper;
  • examples/NLU/ contains an example implementation of LoRA in RoBERTa and DeBERTa using our package, which produces competitive results on the GLUE benchmark;
  • See how we use loralib in GPT-2, RoBERTa, and DeBERTa v2

Quickstart

  1. Installing loralib is simply
pip install loralib
# Alternatively
# pip install git+https://github.com/microsoft/LoRA
  1. You can choose to adapt some layers by replacing them with counterparts implemented in loralib. We only support nn.Linear, nn.Embedding, and nn.Conv2d for now. We also support a MergedLinear for cases where a single nn.Linear represents more than one layers, such as in some implementations of the attention qkv projection (see Additional Notes for more).
# ===== Before =====
# layer = nn.Linear(in_features, out_features)

# ===== After ======
import loralib as lora
# Add a pair of low-rank adaptation matrices with rank r=16
layer = lora.Linear(in_features, out_features, r=16)
  1. Before the training loop begins, mark only LoRA parameters as trainable.
import loralib as lora
model = BigModel()
# This sets requires_grad to False for all parameters without the string "lora_" in their names
lora.mark_only_lora_as_trainable(model)
# Training loop
for batch in dataloader:
   ...
  1. When saving a checkpoint, generate a state_dict that only contains LoRA parameters.
# ===== Before =====
# torch.save(model.state_dict(), checkpoint_path)
# ===== After =====
torch.save(lora.lora_state_dict(model), checkpoint_path)
  1. When loading a checkpoint using load_state_dict, be sure to set strict=False.
# Load the pretrained checkpoint first
model.load_state_dict(torch.load('ckpt_pretrained.pt'), strict=False)
# Then load the LoRA checkpoint
model.load_state_dict(torch.load('ckpt_lora.pt'), strict=False)

Now training can proceed as usual.

Additional Notes

  1. While we focus on a simple yet effect setup, namely adapting only the q and v projection in a Transformer, in our examples, LoRA can be apply to any subsets of pre-trained weights. We encourage you to explore different configurations, such as adapting the embedding layer by replacing nn.Embedding with lora.Embedding and/or adapting the MLP layers. It's very likely that the optimal configuration varies for different model architectures and tasks.

  2. Some Transformer implementation uses a single nn.Linear for the projection matrices for query, key, and value. If one wishes to constrain the rank of the updates to the individual matrices, one has to either break it up into three separate matrices or use lora.MergedLinear. Make sure to modify the checkpoint accordingly if you choose to break up the layer.

# ===== Before =====
# qkv_proj = nn.Linear(d_model, 3*d_model)
# ===== After =====
# Break it up (remember to modify the pretrained checkpoint accordingly)
q_proj = lora.Linear(d_model, d_model, r=8)
k_proj = nn.Linear(d_model, d_model)
v_proj = lora.Linear(d_model, d_model, r=8)
# Alternatively, use lora.MergedLinear (recommended)
qkv_proj = lora.MergedLinear(d_model, 3*d_model, r=8, enable_lora=[True, False, True])
  1. Training bias vectors in tandem with LoRA might be a cost-efficient way to squeeze out extra task performance (if you tune the learning rate carefully). While we did not study its effect thoroughly in our paper, we make it easy to try in lora. You can mark some biases as trainable by passing "all" or "lora_only" to bias= when calling mark_only_lora_as_trainable. Remember to pass the corresponding bias= argument to lora_state_dict when saving a checkpoint.
# ===== Before =====
# lora.mark_only_lora_as_trainable(model) # Not training any bias vectors
# ===== After =====
# Training all bias vectors associated with modules we apply LoRA to 
lora.mark_only_lora_as_trainable(model, bias='lora_only')
# Alternatively, we can train *all* bias vectors in the model, including LayerNorm biases
lora.mark_only_lora_as_trainable(model, bias='all')
# When saving a checkpoint, use the same bias= ('all' or 'lora_only')
torch.save(lora.lora_state_dict(model, bias='all'), checkpoint_path)
  1. Calling model.eval() will trigger the merging of LoRA parameters with the corresponding pretrained ones, which eliminates additional latency for subsequent forward passes. Calling model.train() again will undo the merge. This can be disabled by passing merge_weights=False to LoRA layers.

Contact

Please contact us or post an issue if you have any questions.

For questions related to the package loralib:

The GPT-2 example:

The RoBERTa/DeBERTa example:

Acknowledgements

We thank in alphabetical order Jianfeng Gao, Jade Huang, Jiayuan Huang, Lisa Xiang Li, Xiaodong Liu, Yabin Liu, Benjamin Van Durme, Luis Vargas, Haoran Wei, Peter Welinder, and Greg Yang for providing valuable feedback.

Citation

@inproceedings{
hu2022lora,
title={Lo{RA}: Low-Rank Adaptation of Large Language Models},
author={Edward J Hu and Yelong Shen and Phillip Wallis and Zeyuan Allen-Zhu and Yuanzhi Li and Shean Wang and Lu Wang and Weizhu Chen},
booktitle={International Conference on Learning Representations},
year={2022},
url={https://openreview.net/forum?id=nZeVKeeFYf9}
}

Contributing

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.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

More Repositories

1

vscode

Visual Studio Code
TypeScript
163,565
star
2

PowerToys

Windows system utilities to maximize productivity
C#
110,602
star
3

TypeScript

TypeScript is a superset of JavaScript that compiles to clean JavaScript output.
TypeScript
100,730
star
4

terminal

The new Windows Terminal and the original Windows console host, all in the same place!
C++
94,835
star
5

Web-Dev-For-Beginners

24 Lessons, 12 Weeks, Get Started as a Web Developer
JavaScript
83,418
star
6

ML-For-Beginners

12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
HTML
69,631
star
7

generative-ai-for-beginners

21 Lessons, Get Started Building with Generative AI 🔗 https://microsoft.github.io/generative-ai-for-beginners/
Jupyter Notebook
64,519
star
8

playwright

Playwright is a framework for Web Testing and Automation. It allows testing Chromium, Firefox and WebKit with a single API.
TypeScript
64,013
star
9

monaco-editor

A browser based code editor
JavaScript
35,437
star
10

DeepSpeed

DeepSpeed is a deep learning optimization library that makes distributed training and inference easy, efficient, and effective.
Python
35,130
star
11

AI-For-Beginners

12 Weeks, 24 Lessons, AI for All!
Jupyter Notebook
34,704
star
12

autogen

A programming framework for agentic AI 🤖
Jupyter Notebook
32,470
star
13

MS-DOS

The original sources of MS-DOS 1.25, 2.0, and 4.0 for reference purposes
Assembly
30,714
star
14

Data-Science-For-Beginners

10 Weeks, 20 Lessons, Data Science for All!
Jupyter Notebook
28,136
star
15

calculator

Windows Calculator: A simple yet powerful calculator that ships with Windows
C++
27,371
star
16

cascadia-code

This is a fun, new monospaced font that includes programming ligatures and is designed to enhance the modern look and feel of the Windows Terminal.
Python
25,726
star
17

JARVIS

JARVIS, a system to connect LLMs with ML community. Paper: https://arxiv.org/pdf/2303.17580.pdf
Python
23,519
star
18

api-guidelines

Microsoft REST API Guidelines
22,661
star
19

winget-cli

WinGet is the Windows Package Manager. This project includes a CLI (Command Line Interface), PowerShell modules, and a COM (Component Object Model) API (Application Programming Interface).
C++
20,495
star
20

unilm

Large-scale Self-supervised Pre-training Across Tasks, Languages, and Modalities
Python
19,889
star
21

vcpkg

C++ Library Manager for Windows, Linux, and MacOS
CMake
19,600
star
22

fluentui

Fluent UI web represents a collection of utilities, React components, and web components for building web applications.
TypeScript
18,419
star
23

semantic-kernel

Integrate cutting-edge LLM technology quickly and easily into your apps
C#
17,792
star
24

graphrag

A modular graph-based Retrieval-Augmented Generation (RAG) system
Python
17,750
star
25

CNTK

Microsoft Cognitive Toolkit (CNTK), an open source deep-learning toolkit
C++
17,412
star
26

WSL

Issues found on WSL
PowerShell
17,372
star
27

LightGBM

A fast, distributed, high performance gradient boosting (GBT, GBDT, GBRT, GBM or MART) framework based on decision tree algorithms, used for ranking, classification and many other machine learning tasks.
C++
16,470
star
28

AirSim

Open source simulator for autonomous vehicles built on Unreal Engine / Unity, from Microsoft AI & Research
C++
16,327
star
29

react-native-windows

A framework for building native Windows apps with React.
C++
16,310
star
30

recommenders

Best Practices on Recommendation Systems
Python
16,075
star
31

IoT-For-Beginners

12 Weeks, 24 Lessons, IoT for All!
C++
15,360
star
32

qlib

Qlib is an AI-oriented quantitative investment platform that aims to realize the potential, empower research, and create value using AI technologies in quantitative investment, from exploring ideas to implementing productions. Qlib supports diverse machine learning modeling paradigms. including supervised learning, market dynamics modeling, and RL.
Python
15,308
star
33

dotnet

This repo is the official home of .NET on GitHub. It's a great starting point to find many .NET OSS projects from Microsoft and the community, including many that are part of the .NET Foundation.
HTML
14,370
star
34

Bringing-Old-Photos-Back-to-Life

Bringing Old Photo Back to Life (CVPR 2020 oral)
Python
14,132
star
35

ai-edu

AI education materials for Chinese students, teachers and IT professionals.
HTML
13,485
star
36

pyright

Static Type Checker for Python
Python
13,195
star
37

nni

An open source AutoML toolkit for automate machine learning lifecycle, including feature engineering, neural architecture search, model compression and hyper-parameter tuning.
Python
13,084
star
38

guidance

A guidance language for controlling large language models.
Jupyter Notebook
11,777
star
39

TypeScript-Node-Starter

A reference example for TypeScript and Node with a detailed README describing how to use the two together.
SCSS
11,314
star
40

Swin-Transformer

This is an official implementation for "Swin Transformer: Hierarchical Vision Transformer using Shifted Windows".
Python
11,187
star
41

TypeScript-React-Starter

A starter template for TypeScript and React with a detailed README describing how to use the two together.
TypeScript
11,081
star
42

frontend-bootcamp

Frontend Workshop from HTML/CSS/JS to TypeScript/React/Redux
TypeScript
10,807
star
43

mimalloc

mimalloc is a compact general purpose allocator with excellent performance.
C
10,532
star
44

windows-rs

Rust for Windows
Rust
10,411
star
45

wslg

Enabling the Windows Subsystem for Linux to include support for Wayland and X server related scenarios
C++
10,165
star
46

language-server-protocol

Defines a common protocol for language servers.
HTML
10,093
star
47

sql-server-samples

Azure Data SQL Samples - Official Microsoft GitHub Repository containing code samples for SQL Server, Azure SQL, Azure Synapse, and Azure SQL Edge
9,950
star
48

onnxruntime

ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator
C++
9,837
star
49

fast

The adaptive interface system for modern web experiences.
TypeScript
9,271
star
50

computervision-recipes

Best Practices, code samples, and documentation for Computer Vision.
Jupyter Notebook
9,264
star
51

napajs

Napa.js: a multi-threaded JavaScript runtime
C++
9,256
star
52

Windows-universal-samples

API samples for the Universal Windows Platform.
JavaScript
9,253
star
53

fluentui-emoji

A collection of familiar, friendly, and modern emoji from Microsoft
Python
9,068
star
54

vscode-tips-and-tricks

Collection of helpful tips and tricks for VS Code.
9,038
star
55

playwright-python

Python version of the Playwright testing and automation library.
Python
8,990
star
56

STL

MSVC's implementation of the C++ Standard Library.
C++
8,978
star
57

react-native-code-push

React Native module for CodePush
C
8,643
star
58

vscode-extension-samples

Sample code illustrating the VS Code extension API.
TypeScript
8,628
star
59

inshellisense

IDE style command line auto complete
TypeScript
8,402
star
60

reverse-proxy

A toolkit for developing high-performance HTTP reverse proxy applications.
C#
8,398
star
61

reactxp

Library for cross-platform app development.
TypeScript
8,289
star
62

WSL2-Linux-Kernel

The source for the Linux kernel used in Windows Subsystem for Linux 2 (WSL2)
C
8,037
star
63

ailab

Experience, Learn and Code the latest breakthrough innovations with Microsoft AI
C#
7,699
star
64

c9-python-getting-started

Sample code for Channel 9 Python for Beginners course
Jupyter Notebook
7,642
star
65

UFO

A UI-Focused Agent for Windows OS Interaction.
Python
7,633
star
66

cpprestsdk

The C++ REST SDK is a Microsoft project for cloud-based client-server communication in native code using a modern asynchronous C++ API design. This project aims to help C++ developers connect to and interact with services.
C++
7,573
star
67

botframework-sdk

Bot Framework provides the most comprehensive experience for building conversation applications.
JavaScript
7,484
star
68

azuredatastudio

Azure Data Studio is a data management and development tool with connectivity to popular cloud and on-premises databases. Azure Data Studio supports Windows, macOS, and Linux, with immediate capability to connect to Azure SQL and SQL Server. Browse the extension library for more database support options including MySQL, PostreSQL, and MongoDB.
TypeScript
7,182
star
69

winget-pkgs

The Microsoft community Windows Package Manager manifest repository
6,981
star
70

Windows-driver-samples

This repo contains driver samples prepared for use with Microsoft Visual Studio and the Windows Driver Kit (WDK). It contains both Universal Windows Driver and desktop-only driver samples.
C
6,924
star
71

winfile

Original Windows File Manager (winfile) with enhancements
C
6,437
star
72

nlp-recipes

Natural Language Processing Best Practices & Examples
Python
6,379
star
73

WinObjC

Objective-C for Windows
C
6,241
star
74

SandDance

Visually explore, understand, and present your data.
TypeScript
6,091
star
75

VFSForGit

Virtual File System for Git: Enable Git at Enterprise Scale
C#
5,979
star
76

GSL

Guidelines Support Library
C++
5,957
star
77

MixedRealityToolkit-Unity

This repository is for the legacy Mixed Reality Toolkit (MRTK) v2. For the latest version of the MRTK please visit https://github.com/MixedRealityToolkit/MixedRealityToolkit-Unity
C#
5,943
star
78

fluentui-system-icons

Fluent System Icons are a collection of familiar, friendly and modern icons from Microsoft.
HTML
5,934
star
79

vscode-go

An extension for VS Code which provides support for the Go language. We have moved to https://github.com/golang/vscode-go
TypeScript
5,932
star
80

microsoft-ui-xaml

Windows UI Library: the latest Windows 10 native controls and Fluent styles for your applications
5,861
star
81

vscode-recipes

JavaScript
5,859
star
82

rushstack

Monorepo for tools developed by the Rush Stack community
TypeScript
5,840
star
83

MMdnn

MMdnn is a set of tools to help users inter-operate among different deep learning frameworks. E.g. model conversion and visualization. Convert models between Caffe, Keras, MXNet, Tensorflow, CNTK, PyTorch Onnx and CoreML.
Python
5,782
star
84

vscode-docs

Public documentation for Visual Studio Code
Markdown
5,650
star
85

ethr

Ethr is a Comprehensive Network Measurement Tool for TCP, UDP & ICMP.
Go
5,642
star
86

FASTER

Fast persistent recoverable log and key-value store + cache, in C# and C++.
C#
5,630
star
87

vscode-cpptools

Official repository for the Microsoft C/C++ extension for VS Code.
TypeScript
5,501
star
88

DirectX-Graphics-Samples

This repo contains the DirectX Graphics samples that demonstrate how to build graphics intensive applications on Windows.
C++
5,440
star
89

promptbase

All things prompt engineering
Python
5,367
star
90

BosqueLanguage

The Bosque programming language is an experiment in regularized design for a machine assisted rapid and reliable software development lifecycle.
TypeScript
5,282
star
91

TaskWeaver

A code-first agent framework for seamlessly planning and executing data analytics tasks.
Python
5,258
star
92

Detours

Detours is a software package for monitoring and instrumenting API calls on Windows. It is distributed in source code form.
C++
5,139
star
93

tsyringe

Lightweight dependency injection container for JavaScript/TypeScript
TypeScript
5,104
star
94

DeepSpeedExamples

Example models using DeepSpeed
Python
5,092
star
95

SynapseML

Simple and Distributed Machine Learning
Scala
5,041
star
96

Windows-classic-samples

This repo contains samples that demonstrate the API used in Windows classic desktop applications.
5,040
star
97

sudo

It's sudo, for Windows
Rust
4,998
star
98

TypeScript-Handbook

Deprecated, please use the TypeScript-Website repo instead
JavaScript
4,883
star
99

vscode-dev-containers

NOTE: Most of the contents of this repository have been migrated to the new devcontainers GitHub org (https://github.com/devcontainers). See https://github.com/devcontainers/template-starter and https://github.com/devcontainers/feature-starter for information on creating your own!
Shell
4,713
star
100

tsdoc

A doc comment standard for TypeScript
TypeScript
4,705
star