WAGMA-SGD is a decentralized asynchronous SGD for distributed deep learning training based on model averaging.

Overview

WAGMA-SGD

WAGMA-SGD is a decentralized asynchronous SGD for distributed deep learning training based on model averaging. The key idea of WAGMA-SGD is to use a novel wait-avoiding group allreduce to average the models among processes. The synchronization is relaxed by making the collectives externally-triggerable, namely, a collective can be initiated without requiring that all the processes enter it. Thus, it can better handle the deep learning training with load imbalance. Since WAGMA-SGD only reduces the data within non-overlapping groups of process, it significantly improves the parallel scalability. WAGMA-SGD may bring staleness to the weights. However, the staleness is bounded. WAGMA-SGD is based on model averaging, rather than gradient averaging. Therefore, after the periodic synchronization is conducted, it guarantees a consistent model view amoung processes.

Demo

The wait-avoiding group allreduce operation is implemented in ./WAGMA-SGD-modules/fflib3/. To use it, simply configure and compile fflib3 as to an .so library by conducting cmake .. and make in the directory ./WAGMA-SGD-modules/fflib3/lib/. A script to run WAGMA-SGD on ResNet-50/ImageNet with SLURM job scheduler can be found here. Generally, to evaluate other neural network models with the customized optimizers (e.g., wait-avoiding group allreduce), one can simply wrap the default optimizer using the customized optimizers. See the example for ResNet-50 here.

For the deep learning tasks implemented in TensorFlow, we implemented custom C++ operators, in which we may call the wait-avoiding group allreduce operation or other communication operations (according to the specific parallel SGD algorithm) to average the models. Next, we register the C++ operators to TensorFlow, which can then be used to build the TensorFlow computational graph to implement the SGD algorithms. Similarly, for the deep learning tasks implemented in PyTorch, one can utilize pybind11 to call C++ operators in Python.

Publication

The work of WAGMA-SGD is pulished in TPDS'21. See the paper for details. To cite our work:

@ARTICLE{9271898,
  author={Li, Shigang and Ben-Nun, Tal and Nadiradze, Giorgi and Girolamo, Salvatore Di and Dryden, Nikoli and Alistarh, Dan and Hoefler, Torsten},
  journal={IEEE Transactions on Parallel and Distributed Systems},
  title={Breaking (Global) Barriers in Parallel Stochastic Optimization With Wait-Avoiding Group Averaging},
  year={2021},
  volume={32},
  number={7},
  pages={1725-1739},
  doi={10.1109/TPDS.2020.3040606}}

License

See LICENSE.

Owner
Shigang Li
Shigang Li
50% faster, 50% less RAM Machine Learning. Numba rewritten Sklearn. SVD, NNMF, PCA, LinearReg, RidgeReg, Randomized, Truncated SVD/PCA, CSR Matrices all 50+% faster

[Due to the time taken @ uni, work + hell breaking loose in my life, since things have calmed down a bit, will continue commiting!!!] [By the way, I'm

Daniel Han-Chen 1.4k Jan 01, 2023
Credit Card Fraud Detection, used the credit card fraud dataset from Kaggle

Credit Card Fraud Detection, used the credit card fraud dataset from Kaggle

Sean Zahller 1 Feb 04, 2022
CD) in machine learning projectsImplementing continuous integration & delivery (CI/CD) in machine learning projects

CML with cloud compute This repository contains a sample project using CML with Terraform (via the cml-runner function) to launch an AWS EC2 instance

Iterative 19 Oct 03, 2022
Regularization and Feature Selection in Least Squares Temporal Difference Learning

Regularization and Feature Selection in Least Squares Temporal Difference Learning Description This is Python implementations of Least Angle Regressio

Mina Parham 0 Jan 18, 2022
Tool for producing high quality forecasts for time series data that has multiple seasonality with linear or non-linear growth.

Prophet: Automatic Forecasting Procedure Prophet is a procedure for forecasting time series data based on an additive model where non-linear trends ar

Facebook 15.4k Jan 07, 2023
Decision Weights in Prospect Theory

Decision Weights in Prospect Theory It's clear that humans are irrational, but how irrational are they? After some research into behavourial economics

Cameron Davidson-Pilon 32 Nov 08, 2021
Pragmatic AI Labs 421 Dec 31, 2022
Price forecasting of SGB and IRFC Bonds and comparing there returns

Project_Bonds Project Title : Price forecasting of SGB and IRFC Bonds and comparing there returns. Introduction of the Project The 2008-09 global fina

Tishya S 1 Oct 28, 2021
QuickAI is a Python library that makes it extremely easy to experiment with state-of-the-art Machine Learning models.

QuickAI is a Python library that makes it extremely easy to experiment with state-of-the-art Machine Learning models.

152 Jan 02, 2023
A Powerful Serverless Analysis Toolkit That Takes Trial And Error Out of Machine Learning Projects

KXY: A Seemless API to 10x The Productivity of Machine Learning Engineers Documentation https://www.kxy.ai/reference/ Installation From PyPi: pip inst

KXY Technologies, Inc. 35 Jan 02, 2023
CinnaMon is a Python library which offers a number of tools to detect, explain, and correct data drift in a machine learning system

CinnaMon is a Python library which offers a number of tools to detect, explain, and correct data drift in a machine learning system

Zelros 67 Dec 28, 2022
Bayesian Additive Regression Trees For Python

BartPy Introduction BartPy is a pure python implementation of the Bayesian additive regressions trees model of Chipman et al [1]. Reasons to use BART

187 Dec 16, 2022
Book Item Based Collaborative Filtering

Book-Item-Based-Collaborative-Filtering Collaborative filtering methods are used

Şebnem 3 Jan 06, 2022
moDel Agnostic Language for Exploration and eXplanation

moDel Agnostic Language for Exploration and eXplanation Overview Unverified black box model is the path to the failure. Opaqueness leads to distrust.

Model Oriented 1.2k Jan 04, 2023
Python/Sage Tool for deriving Scattering Matrices for WDF R-Adaptors

R-Solver A Python tools for deriving R-Type adaptors for Wave Digital Filters. This code is not quite production-ready. If you are interested in contr

8 Sep 19, 2022
Transform ML models into a native code with zero dependencies

m2cgen (Model 2 Code Generator) - is a lightweight library which provides an easy way to transpile trained statistical models into a native code

Bayes' Witnesses 2.3k Jan 03, 2023
Banpei is a Python package of the anomaly detection.

Banpei Banpei is a Python package of the anomaly detection. Anomaly detection is a technique used to identify unusual patterns that do not conform to

Hirofumi Tsuruta 282 Jan 03, 2023
#30DaysOfStreamlit is a 30-day social challenge for you to build and deploy Streamlit apps.

30 Days Of Streamlit 🎈 This is the official repo of #30DaysOfStreamlit — a 30-day social challenge for you to learn, build and deploy Streamlit apps.

Streamlit 53 Jan 02, 2023
A machine learning toolkit dedicated to time-series data

tslearn The machine learning toolkit for time series analysis in Python Section Description Installation Installing the dependencies and tslearn Getti

2.3k Dec 29, 2022
机器学习检测webshell

ai-webshell-detect 机器学习检测webshell,利用textcnn+简单二分类网络,基于keras,花了七天 检测原理: 从文件熵 文件长度 文件语句提取出特征,然后文件熵与长度送入二分类网络,文件语句送入textcnn 项目原理,介绍,怎么做出来的

Huoji's 56 Dec 14, 2022