• Stars
    star
    7,402
  • Rank 5,228 (Top 0.2 %)
  • Language
    Jupyter Notebook
  • License
    Other
  • Created over 1 year ago
  • Updated 10 months ago

Reviews

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

Repository Details

Scripts for fine-tuning Llama2 with composable FSDP & PEFT methods to cover single/multi-node GPUs. Supports default & custom datasets for applications such as summarization & question answering. Supporting a number of candid inference solutions such as HF TGI, VLLM for local or cloud deployment.Demo apps to showcase Llama2 for WhatsApp & Messenger

Llama 2 Fine-tuning / Inference Recipes, Examples and Demo Apps

[Update Nov. 3, 2023] We recently released a series of Llama 2 demo apps here. These apps show how to run Llama 2 locally, in the cloud, and on-prem, and how to ask Llama 2 questions in general and about custom data (PDF, DB, or live).

The 'llama-recipes' repository is a companion to the Llama 2 model. The goal of this repository is to provide examples to quickly get started with fine-tuning for domain adaptation and how to run inference for the fine-tuned models. For ease of use, the examples use Hugging Face converted versions of the models. See steps for conversion of the model here.

In addition, we also provide a number of demo apps, to showcase the Llama 2 usage along with other ecosystem solutions to run Llama 2 locally, in the cloud, and on-prem.

Llama 2 is a new technology that carries potential risks with use. Testing conducted to date has not โ€” and could not โ€” cover all scenarios. In order to help developers address these risks, we have created the Responsible Use Guide. More details can be found in our research paper as well. For downloading the models, follow the instructions on Llama 2 repo.

Table of Contents

  1. Quick start
  2. Model Conversion
  3. Fine-tuning
  4. Inference
  5. Demo Apps
  6. Repository Organization
  7. License and Acceptable Use Policy

Quick Start

Llama 2 Jupyter Notebook: This jupyter notebook steps you through how to finetune a Llama 2 model on the text summarization task using the samsum. The notebook uses parameter efficient finetuning (PEFT) and int8 quantization to finetune a 7B on a single GPU like an A10 with 24GB gpu memory.

Installation

Llama-recipes provides a pip distribution for easy install and usage in other projects. Alternatively, it can be installed from source.

Install with pip

pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 llama-recipes

Install from source

To install from source e.g. for development use this command. We're using hatchling as our build backend which requires an up-to-date pip as well as setuptools package.

pip install -U pip setuptools
pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 -e .

For development and contributing to llama-recipes please install all optional dependencies:

pip install -U pip setuptools
pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 -e .[tests,auditnlg,vllm]

Install with optional dependencies

Llama-recipes offers the installation of optional packages. There are three optional dependency groups. To run the unit tests we can install the required dependencies with:

pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 llama-recipes[tests]

For the vLLM example we need additional requirements that can be installed with:

pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 llama-recipes[vllm]

To use the sensitive topics safety checker install with:

pip install --extra-index-url https://download.pytorch.org/whl/test/cu118 llama-recipes[auditnlg]

Optional dependencies can also be combines with [option1,option2].

โš ๏ธ Note โš ๏ธ Some features (especially fine-tuning with FSDP + PEFT) currently require PyTorch nightlies to be installed. Please make sure to install the nightlies if you're using these features following this guide.

Note All the setting defined in config files can be passed as args through CLI when running the script, there is no need to change from config files directly.

Note In case need to run PEFT model with FSDP, please make sure to use the PyTorch Nightlies.

For more in depth information checkout the following:

Where to find the models?

You can find llama v2 models on HuggingFace hub here, where models with hf in the name are already converted to HuggingFace checkpoints so no further conversion is needed. The conversion step below is only for original model weights from Meta that are hosted on HuggingFace model hub as well.

Model conversion to Hugging Face

The recipes and notebooks in this folder are using the Llama 2 model definition provided by Hugging Face's transformers library.

Given that the original checkpoint resides under models/7B you can install all requirements and convert the checkpoint with:

## Install HuggingFace Transformers from source
pip freeze | grep transformers ## verify it is version 4.31.0 or higher

git clone [email protected]:huggingface/transformers.git
cd transformers
pip install protobuf
python src/transformers/models/llama/convert_llama_weights_to_hf.py \
   --input_dir /path/to/downloaded/llama/weights --model_size 7B --output_dir /output/path

Fine-tuning

For fine-tuning Llama 2 models for your domain-specific use cases recipes for PEFT, FSDP, PEFT+FSDP have been included along with a few test datasets. For details see LLM Fine-tuning.

Single and Multi GPU Finetune

If you want to dive right into single or multi GPU fine-tuning, run the examples below on a single GPU like A10, T4, V100, A100 etc. All the parameters in the examples and recipes below need to be further tuned to have desired results based on the model, method, data and task at hand.

Note:

  • To change the dataset in the commands below pass the dataset arg. Current options for integrated dataset are grammar_dataset, alpaca_datasetand samsum_dataset. Additionally, we integrate the OpenAssistant/oasst1 dataset as an example for a custom dataset. A description of how to use your own dataset and how to add custom datasets can be found in Dataset.md. For grammar_dataset, alpaca_dataset please make sure you use the suggested instructions from here to set them up.

  • Default dataset and other LORA config has been set to samsum_dataset.

  • Make sure to set the right path to the model in the training config.

Single GPU:

#if running on multi-gpu machine
export CUDA_VISIBLE_DEVICES=0

python -m llama_recipes.finetuning  --use_peft --peft_method lora --quantization --model_name /patht_of_model_folder/7B --output_dir Path/to/save/PEFT/model

Here we make use of Parameter Efficient Methods (PEFT) as described in the next section. To run the command above make sure to pass the peft_method arg which can be set to lora, llama_adapter or prefix.

Note if you are running on a machine with multiple GPUs please make sure to only make one of them visible using export CUDA_VISIBLE_DEVICES=GPU:id

Make sure you set save_model parameter to save the model. Be sure to check the other training parameter in train config as well as others in the config folder as needed. All parameter can be passed as args to the training script. No need to alter the config files.

Multiple GPUs One Node:

NOTE please make sure to use PyTorch Nightlies for using PEFT+FSDP. Also, note that int8 quantization from bit&bytes currently is not supported in FSDP.

torchrun --nnodes 1 --nproc_per_node 4  examples/finetuning.py --enable_fsdp --use_peft --peft_method lora --model_name /patht_of_model_folder/7B --fsdp_config.pure_bf16 --output_dir Path/to/save/PEFT/model

Here we use FSDP as discussed in the next section which can be used along with PEFT methods. To make use of PEFT methods with FSDP make sure to pass use_peft and peft_method args along with enable_fsdp. Here we are using BF16 for training.

Flash Attention and Xformer Memory Efficient Kernels

Setting use_fast_kernels will enable using of Flash Attention or Xformer memory-efficient kernels based on the hardware being used. This would speed up the fine-tuning job. This has been enabled in optimum library from HuggingFace as a one-liner API, please read more here.

torchrun --nnodes 1 --nproc_per_node 4  examples/finetuning.py --enable_fsdp --use_peft --peft_method lora --model_name /patht_of_model_folder/7B --fsdp_config.pure_bf16 --output_dir Path/to/save/PEFT/model --use_fast_kernels

Fine-tuning using FSDP Only

If you are interested in running full parameter fine-tuning without making use of PEFT methods, please use the following command. Make sure to change the nproc_per_node to your available GPUs. This has been tested with BF16 on 8xA100, 40GB GPUs.

torchrun --nnodes 1 --nproc_per_node 8  examples/finetuning.py --enable_fsdp --model_name /patht_of_model_folder/7B --dist_checkpoint_root_folder model_checkpoints --dist_checkpoint_folder fine-tuned --use_fast_kernels

Fine-tuning using FSDP on 70B Model

If you are interested in running full parameter fine-tuning on the 70B model, you can enable low_cpu_fsdp mode as the following command. This option will load model on rank0 only before moving model to devices to construct FSDP. This can dramatically save cpu memory when loading large models like 70B (on a 8-gpu node, this reduces cpu memory from 2+T to 280G for 70B model). This has been tested with BF16 on 16xA100, 80GB GPUs.

torchrun --nnodes 1 --nproc_per_node 8 examples/finetuning.py --enable_fsdp --low_cpu_fsdp --fsdp_config.pure_bf16 --model_name /patht_of_model_folder/70B --batch_size_training 1 --dist_checkpoint_root_folder model_checkpoints --dist_checkpoint_folder fine-tuned

Multi GPU Multi Node:

sbatch multi_node.slurm
# Change the num nodes and GPU per nodes in the script before running.

You can read more about our fine-tuning strategies here.

Demo Apps

This folder contains a series of Llama2-powered apps:

  • Quickstart Llama deployments and basic interactions with Llama
  1. Llama on your Mac and ask Llama general questions
  2. Llama on Google Colab
  3. Llama on Cloud and ask Llama questions about unstructured data in a PDF
  4. Llama on-prem with vLLM and TGI
  • Specialized Llama use cases:
  1. Ask Llama to summarize a video content
  2. Ask Llama questions about structured data in a DB
  3. Ask Llama questions about live data on the web

Repository Organization

This repository is organized in the following way:

configs: Contains the configuration files for PEFT methods, FSDP, Datasets.

docs: Example recipes for single and multi-gpu fine-tuning recipes.

datasets: Contains individual scripts for each dataset to download and process. Note: Use of any of the datasets should be in compliance with the dataset's underlying licenses (including but not limited to non-commercial uses)

demo_apps contains a series of Llama2-powered apps, from quickstart deployments to how to ask Llama questions about unstructured data, structured data, live data, and video summary.

examples: Contains examples script for finetuning and inference of the Llama 2 model as well as how to use them safely.

inference: Includes modules for inference for the fine-tuned models.

model_checkpointing: Contains FSDP checkpoint handlers.

policies: Contains FSDP scripts to provide different policies, such as mixed precision, transformer wrapping policy and activation checkpointing along with any precision optimizer (used for running FSDP with pure bf16 mode).

utils: Utility files for:

  • train_utils.py provides training/eval loop and more train utils.

  • dataset_utils.py to get preprocessed datasets.

  • config_utils.py to override the configs received from CLI.

  • fsdp_utils.py provides FSDP wrapping policy for PEFT methods.

  • memory_utils.py context manager to track different memory stats in train loop.

License

See the License file here and Acceptable Use Policy here

More Repositories

1

llama

Inference code for LLaMA models
Python
44,989
star
2

segment-anything

The repository provides code for running inference with the SegmentAnything Model (SAM), links for downloading the trained model checkpoints, and example notebooks that show how to use the model.
Jupyter Notebook
42,134
star
3

Detectron

FAIR's research platform for object detection research, implementing popular algorithms like Mask R-CNN and RetinaNet.
Python
25,771
star
4

fairseq

Facebook AI Research Sequence-to-Sequence Toolkit written in Python.
Python
25,718
star
5

detectron2

Detectron2 is a platform for object detection, segmentation and other visual recognition tasks.
Python
25,567
star
6

fastText

Library for fast text representation and classification.
HTML
24,973
star
7

faiss

A library for efficient similarity search and clustering of dense vectors.
C++
24,035
star
8

audiocraft

Audiocraft is a library for audio processing and generation with deep learning. It features the state-of-the-art EnCodec audio compressor / tokenizer, along with MusicGen, a simple and controllable music generation LM with textual and melodic conditioning.
Python
19,691
star
9

codellama

Inference code for CodeLlama models
Python
13,303
star
10

sam2

The repository provides code for running inference with the Meta Segment Anything Model 2 (SAM 2), links for downloading the trained model checkpoints, and example notebooks that show how to use the model.
Jupyter Notebook
11,906
star
11

detr

End-to-End Object Detection with Transformers
Python
11,076
star
12

seamless_communication

Foundational Models for State-of-the-Art Speech and Text Translation
Jupyter Notebook
10,584
star
13

ParlAI

A framework for training and evaluating AI models on a variety of openly available dialogue datasets.
Python
10,085
star
14

maskrcnn-benchmark

Fast, modular reference implementation of Instance Segmentation and Object Detection algorithms in PyTorch.
Python
9,104
star
15

pifuhd

High-Resolution 3D Human Digitization from A Single Image.
Python
8,923
star
16

hydra

Hydra is a framework for elegantly configuring complex applications
Python
8,550
star
17

nougat

Implementation of Nougat Neural Optical Understanding for Academic Documents
Python
8,088
star
18

AnimatedDrawings

Code to accompany "A Method for Animating Children's Drawings of the Human Figure"
Python
8,032
star
19

ImageBind

ImageBind One Embedding Space to Bind Them All
Python
7,630
star
20

pytorch3d

PyTorch3D is FAIR's library of reusable components for deep learning with 3D data
Python
7,322
star
21

dinov2

PyTorch code and models for the DINOv2 self-supervised learning method.
Jupyter Notebook
7,278
star
22

DensePose

A real-time approach for mapping all human pixels of 2D RGB images to a 3D surface-based model of the body
Jupyter Notebook
6,547
star
23

pytext

A natural language modeling framework based on PyTorch
Python
6,357
star
24

DiT

Official PyTorch Implementation of "Scalable Diffusion Models with Transformers"
Python
5,995
star
25

metaseq

Repo for external large-scale work
Python
5,947
star
26

demucs

Code for the paper Hybrid Spectrogram and Waveform Source Separation
Python
5,886
star
27

SlowFast

PySlowFast: video understanding codebase from FAIR for reproducing state-of-the-art video models.
Python
5,678
star
28

mae

PyTorch implementation of MAE https//arxiv.org/abs/2111.06377
Python
5,495
star
29

mmf

A modular framework for vision & language multimodal research from Facebook AI Research (FAIR)
Python
5,235
star
30

ConvNeXt

Code release for ConvNeXt model
Python
4,971
star
31

dino

PyTorch code for Vision Transformers training with the Self-Supervised learning method DINO
Python
4,830
star
32

AugLy

A data augmentations library for audio, image, text, and video.
Python
4,739
star
33

Kats

Kats, a kit to analyze time series data, a lightweight, easy-to-use, generalizable, and extendable framework to perform time series analysis, from understanding the key statistics and characteristics, detecting change points and anomalies, to forecasting future trends.
Python
4,387
star
34

DrQA

Reading Wikipedia to Answer Open-Domain Questions
Python
4,374
star
35

sapiens

High-resolution models for human tasks.
Python
4,340
star
36

xformers

Hackable and optimized Transformers building blocks, supporting a composable construction.
Python
4,191
star
37

moco

PyTorch implementation of MoCo: https://arxiv.org/abs/1911.05722
Python
4,035
star
38

StarSpace

Learning embeddings for classification, retrieval and ranking.
C++
3,856
star
39

lingua

Meta Lingua: a lean, efficient, and easy-to-hack codebase to research LLMs.
Python
3,829
star
40

fairseq-lua

Facebook AI Research Sequence-to-Sequence Toolkit
Lua
3,765
star
41

nevergrad

A Python toolbox for performing gradient-free optimization
Python
3,446
star
42

deit

Official DeiT repository
Python
3,425
star
43

dlrm

An implementation of a deep learning recommendation model (DLRM)
Python
3,417
star
44

ReAgent

A platform for Reasoning systems (Reinforcement Learning, Contextual Bandits, etc.)
Python
3,395
star
45

LASER

Language-Agnostic SEntence Representations
Python
3,308
star
46

VideoPose3D

Efficient 3D human pose estimation in video using 2D keypoint trajectories
Python
3,294
star
47

PyTorch-BigGraph

Generate embeddings from large-scale graph-structured data.
Python
3,238
star
48

deepmask

Torch implementation of DeepMask and SharpMask
Lua
3,113
star
49

MUSE

A library for Multilingual Unsupervised or Supervised word Embeddings
Python
3,094
star
50

vissl

VISSL is FAIR's library of extensible, modular and scalable components for SOTA Self-Supervised Learning with images.
Jupyter Notebook
3,038
star
51

pytorchvideo

A deep learning library for video understanding research.
Python
2,885
star
52

XLM

PyTorch original implementation of Cross-lingual Language Model Pretraining.
Python
2,763
star
53

audio2photoreal

Code and dataset for photorealistic Codec Avatars driven from audio
Python
2,696
star
54

ijepa

Official codebase for I-JEPA, the Image-based Joint-Embedding Predictive Architecture. First outlined in the CVPR paper, "Self-supervised learning from images with a joint-embedding predictive architecture."
Python
2,670
star
55

jepa

PyTorch code and models for V-JEPA self-supervised learning from video.
Python
2,646
star
56

habitat-sim

A flexible, high-performance 3D simulator for Embodied AI research.
C++
2,621
star
57

co-tracker

CoTracker is a model for tracking any point (pixel) on a video.
Jupyter Notebook
2,564
star
58

hiplot

HiPlot makes understanding high dimensional data easy
TypeScript
2,481
star
59

fairscale

PyTorch extensions for high performance and large scale training.
Python
2,319
star
60

encodec

State-of-the-art deep learning based audio codec supporting both mono 24 kHz audio and stereo 48 kHz audio.
Python
2,313
star
61

InferSent

InferSent sentence embeddings
Jupyter Notebook
2,264
star
62

Pearl

A Production-ready Reinforcement Learning AI Agent Library brought by the Applied Reinforcement Learning team at Meta.
Python
2,193
star
63

pyrobot

PyRobot: An Open Source Robotics Research Platform
Python
2,109
star
64

darkforestGo

DarkForest, the Facebook Go engine.
C
2,108
star
65

ELF

An End-To-End, Lightweight and Flexible Platform for Game Research
C++
2,089
star
66

pycls

Codebase for Image Classification Research, written in PyTorch.
Python
2,053
star
67

esm

Evolutionary Scale Modeling (esm): Pretrained language models for proteins
Python
2,026
star
68

frankmocap

A Strong and Easy-to-use Single View 3D Hand+Body Pose Estimator
Python
1,972
star
69

video-nonlocal-net

Non-local Neural Networks for Video Classification
Python
1,931
star
70

SentEval

A python tool for evaluating the quality of sentence embeddings.
Python
1,930
star
71

habitat-lab

A modular high-level library to train embodied AI agents across a variety of tasks and environments.
Python
1,867
star
72

ResNeXt

Implementation of a classification framework from the paper Aggregated Residual Transformations for Deep Neural Networks
Lua
1,863
star
73

SparseConvNet

Submanifold sparse convolutional networks
C++
1,847
star
74

schedule_free

Schedule-Free Optimization in PyTorch
Python
1,842
star
75

chameleon

Repository for Meta Chameleon, a mixed-modal early-fusion foundation model from FAIR.
Python
1,811
star
76

swav

PyTorch implementation of SwAV https//arxiv.org/abs/2006.09882
Python
1,790
star
77

TensorComprehensions

A domain specific language to express machine learning workloads.
C++
1,747
star
78

Mask2Former

Code release for "Masked-attention Mask Transformer for Universal Image Segmentation"
Python
1,638
star
79

fvcore

Collection of common code that's shared among different research projects in FAIR computer vision team.
Python
1,623
star
80

TransCoder

Public release of the TransCoder research project https://arxiv.org/pdf/2006.03511.pdf
Python
1,611
star
81

poincare-embeddings

PyTorch implementation of the NIPS-17 paper "Poincarรฉ Embeddings for Learning Hierarchical Representations"
Python
1,587
star
82

votenet

Deep Hough Voting for 3D Object Detection in Point Clouds
Python
1,563
star
83

pytorch_GAN_zoo

A mix of GAN implementations including progressive growing
Python
1,554
star
84

ClassyVision

An end-to-end PyTorch framework for image and video classification
Python
1,552
star
85

deepcluster

Deep Clustering for Unsupervised Learning of Visual Features
Python
1,544
star
86

higher

higher is a pytorch library allowing users to obtain higher order gradients over losses spanning training loops rather than individual training steps.
Python
1,524
star
87

UnsupervisedMT

Phrase-Based & Neural Unsupervised Machine Translation
Python
1,496
star
88

consistent_depth

We estimate dense, flicker-free, geometrically consistent depth from monocular video, for example hand-held cell phone video.
Python
1,479
star
89

ConvNeXt-V2

Code release for ConvNeXt V2 model
Python
1,454
star
90

Detic

Code release for "Detecting Twenty-thousand Classes using Image-level Supervision".
Python
1,446
star
91

end-to-end-negotiator

Deal or No Deal? End-to-End Learning for Negotiation Dialogues
Python
1,368
star
92

DomainBed

DomainBed is a suite to test domain generalization algorithms
Python
1,355
star
93

multipathnet

A Torch implementation of the object detection network from "A MultiPath Network for Object Detection" (https://arxiv.org/abs/1604.02135)
Lua
1,349
star
94

CommAI-env

A platform for developing AI systems as described in A Roadmap towards Machine Intelligence - http://arxiv.org/abs/1511.08130
1,324
star
95

theseus

A library for differentiable nonlinear optimization
Python
1,306
star
96

DPR

Dense Passage Retriever - is a set of tools and models for open domain Q&A task.
Python
1,292
star
97

CrypTen

A framework for Privacy Preserving Machine Learning
Python
1,283
star
98

denoiser

Real Time Speech Enhancement in the Waveform Domain (Interspeech 2020)We provide a PyTorch implementation of the paper Real Time Speech Enhancement in the Waveform Domain. In which, we present a causal speech enhancement model working on the raw waveform that runs in real-time on a laptop CPU. The proposed model is based on an encoder-decoder architecture with skip-connections. It is optimized on both time and frequency domains, using multiple loss functions. Empirical evidence shows that it is capable of removing various kinds of background noise including stationary and non-stationary noises, as well as room reverb. Additionally, we suggest a set of data augmentation techniques applied directly on the raw waveform which further improve model performance and its generalization abilities.
Python
1,272
star
99

DeepSDF

Learning Continuous Signed Distance Functions for Shape Representation
Python
1,191
star
100

TimeSformer

The official pytorch implementation of our paper "Is Space-Time Attention All You Need for Video Understanding?"
Python
1,172
star