Flaxformer: transformer architectures in JAX/Flax

Overview

Flaxformer: transformer architectures in JAX/Flax

Flaxformer is a transformer library for primarily NLP and multimodal research at Google. It is used for many NLP research use cases, providing both off-the-shelf BERT and T5 models, and several research projects built on shared components.

General library goals

The Flaxformer library aims to provide transformer models that are:

  • High performance: Models are annotated for use with the PJIT API, enabling them to be used for training the largest models.
  • Reusable: Components have self-contained configuration, and high-level modules like encoders, decoders, etc. don't make too many assumptions about what their sub-modules look like.
  • Tested: We aim to employ a reasonable amount of unit testing, and write tests whenever bugs are encountered. However no guarantees are provided.
  • Maintainble: We have created a versioning strategy for our modules so code refactors can take place which alter the module structure. This is tricky in Flax, because Flax generates a tree of parameters based on the exact module structure. Our approach lets us maintain compatibility with previously trained model checkpoints.

Code locations

Modeling components such as dense attention, layer norms, and MLP blocks can be found in the components/ directory.

Higher-level classes which combine these components can be found in the architectures/ directory. The current architecture file for the T5 family of models is architectures/t5/t5_architecture.py; this is a mid-level API requiring sub-components to be configured. A high-level starting point, exposing fewer parameters, is architectures/t5/t5_1_1.py.

Relationship to other codebases

Flaxformer is primarily used by other research projects, in particular T5X. We hope to release examples demonstrating the integration of these codebases soon.

If you would like to use Flaxformer independently of T5X, please see the unit tests for examples instantiating the models. In the medium-term future, we hope to provide more stand-alone examples of Flaxformer use.

Contributions

Unfortunately, we cannot accept contributions to the Flaxformer repo at this time, so any pull requests will be automatically closed - but please file issues as needed!

Installing dependencies and running tests

After checking out this repository, in its root directory, you can install it along with test dependencies by running,

pip3 install '.[testing]'

If you like, you can run the tests from pytest with the following invocation,

python3 -m pytest

Uninstalling

If you need to uninstall Flaxformer, please run,

pip3 uninstall flaxformer

Troubleshooting

Flax deps

Flaxformer is developed in close collaboration with the Flax team. There may be bugs if your Flax version is not up to date. To install the latest version from GitHub, please run,

pip3 uninstall flax
pip3 install git+https://github.com/google/flax

Note

Flaxformer is a project maintained by a team in Google Research. It is not an official Google product.

Owner
Google
Google ❤️ Open Source
Google
Rule Extraction Methods for Interactive eXplainability

REMIX: Rule Extraction Methods for Interactive eXplainability This repository contains a variety of tools and methods for extracting interpretable rul

Mateo Espinosa Zarlenga 21 Jan 03, 2023
Curvlearn, a Tensorflow based non-Euclidean deep learning framework.

English | 简体中文 Why Non-Euclidean Geometry Considering these simple graph structures shown below. Nodes with same color has 2-hop distance whereas 1-ho

Alibaba 123 Dec 12, 2022
working repo for my xumx-sliCQ submissions to the ISMIR 2021 MDX

Music Demixing Challenge - xumx-sliCQ This repository is the GitHub mirror of my working submission repository for the AICrowd ISMIR 2021 Music Demixi

4 Aug 25, 2021
Self-training for Few-shot Transfer Across Extreme Task Differences

Self-training for Few-shot Transfer Across Extreme Task Differences (STARTUP) Introduction This repo contains the official implementation of the follo

Cheng Perng Phoo 33 Oct 31, 2022
Reproducing code of hair style replacement method from Barbershorp.

Barbershorp Reproducing code of hair style replacement method from Barbershorp. Also reproduces II2S, an improved version of Image2StyleGAN. Requireme

1 Dec 24, 2021
A library for researching neural networks compression and acceleration methods.

A library for researching neural networks compression and acceleration methods.

Intel Labs 100 Dec 29, 2022
Unsupervised Feature Ranking via Attribute Networks.

FRANe Unsupervised Feature Ranking via Attribute Networks (FRANe) converts a dataset into a network (graph) with nodes that correspond to the features

7 Sep 29, 2022
Colab notebook and additional materials for Python-driven analysis of redlining data in Philadelphia

RedliningExploration The Google Colaboratory file contained in this repository contains work inspired by a project on educational inequality in the Ph

Benjamin Warren 1 Jan 20, 2022
Code for KDD'20 "Generative Pre-Training of Graph Neural Networks"

GPT-GNN: Generative Pre-Training of Graph Neural Networks GPT-GNN is a pre-training framework to initialize GNNs by generative pre-training. It can be

Ziniu Hu 346 Dec 19, 2022
UNAVOIDS: Unsupervised and Nonparametric Approach for Visualizing Outliers and Invariant Detection Scoring

UNAVOIDS: Unsupervised and Nonparametric Approach for Visualizing Outliers and Invariant Detection Scoring Code Summary aggregate.py: this script aggr

1 Dec 28, 2021
A unified 3D Transformer Pipeline for visual synthesis

Overview This is the official repo for the paper: NÜWA: Visual Synthesis Pre-training for Neural visUal World creAtion. NÜWA is a unified multimodal p

Microsoft 2.6k Jan 06, 2023
Code & Data for Enhancing Photorealism Enhancement

Enhancing Photorealism Enhancement Stephan R. Richter, Hassan Abu AlHaija, Vladlen Koltun Paper | Website (with side-by-side comparisons) | Video (Pap

Intelligent Systems Lab Org 1.1k Dec 31, 2022
Code for our paper Domain Adaptive Semantic Segmentation with Self-Supervised Depth Estimation

CorDA Code for our paper Domain Adaptive Semantic Segmentation with Self-Supervised Depth Estimation Prerequisite Please create and activate the follo

Qin Wang 60 Nov 30, 2022
Realtime_Multi-Person_Pose_Estimation

Introduction Multi Person PoseEstimation By PyTorch Results Require Pytorch Installation git submodule init && git submodule update Demo Download conv

tensorboy 1.3k Jan 05, 2023
An implementation of the WHATWG URL Standard in JavaScript

whatwg-url whatwg-url is a full implementation of the WHATWG URL Standard. It can be used standalone, but it also exposes a lot of the internal algori

314 Dec 28, 2022
Collection of machine learning related notebooks to share.

ML_Notebooks Collection of machine learning related notebooks to share. Notebooks GAN_distributed_training.ipynb In this Notebook, TensorFlow's tutori

Sascha Kirch 14 Dec 22, 2022
Topic Modelling for Humans

gensim – Topic Modelling in Python Gensim is a Python library for topic modelling, document indexing and similarity retrieval with large corpora. Targ

RARE Technologies 13.8k Jan 03, 2023
PyTorch implementations of Top-N recommendation, collaborative filtering recommenders.

PyTorch implementations of Top-N recommendation, collaborative filtering recommenders.

Yoonki Jeong 129 Dec 22, 2022
Streamlit App For Product Analysis - Streamlit App For Product Analysis

Streamlit_App_For_Product_Analysis Здравствуйте! Перед вами дашборд, позволяющий

Grigory Sirotkin 1 Jan 10, 2022
Bridging Vision and Language Model

BriVL BriVL (Bridging Vision and Language Model) 是首个中文通用图文多模态大规模预训练模型。BriVL模型在图文检索任务上有着优异的效果,超过了同期其他常见的多模态预训练模型(例如UNITER、CLIP)。 BriVL论文:WenLan: Bridgi

235 Dec 27, 2022