FCO-ICML21

Federated Optimization Library

This code repository provides an implementation of Federated Composite Optimization for decentralized machine learning

Code repository is for "Federated Composite Optimization", to appear in ICML 2021

GitHub

11 stars
1 watching
3 forks
Language: Python
last commit: over 2 years ago

Related projects:

Repository Description Stars
optimization-ai/icml2023_fedxl An implementation of a federated learning algorithm for optimization problems with compositional pairwise risk optimization. 2
hongliny/fedac-neurips20 Provides code for a federated learning algorithm to optimize machine learning models in a distributed setting. 14
xidongwu/federated-minimax-and-conditional-stochastic-optimization This project presents optimization techniques for federated learning and minimax games in the context of machine learning 0
jinheonbaek/fed-pub Personalized Subgraph Federated Learning framework for distributed machine learning 44
mingruiliu-ml-lab/episode An algorithm for Federated Learning with heterogeneous data, designed to optimize deep neural networks and improve performance 2
lipingyi/qsfl An optimization framework for federated learning 11
harliwu/fedamd This project presents an approach to federated learning with partial client participation by optimizing anchor selection for improving model accuracy and convergence. 2
yuetan031/fedproto An implementation of federated learning with prototype-based methods across heterogeneous clients 133
ibm/reprogrammble-fl Improves utility-privacy tradeoff in federated learning by reprogramming models to balance data utility and user privacy. 5
conditionwang/fcil Implementation of Federated Class-Incremental Learning for Continual Learning in Computer Vision 101
hui-po-wang/progfed An approach to efficient federated learning by progressively training models on client devices with reduced communication and computation requirements. 20
cuis15/fcfl An implementation of Fair and Consistent Federated Learning using Python. 20
litian96/fedprox An optimization framework designed to address heterogeneity in federated learning across distributed networks 643
diaoenmao/heterofl-computation-and-communication-efficient-federated-learning-for-heterogeneous-clients An implementation of efficient federated learning algorithms for heterogeneous clients 152
illidanlab/splitmix An algorithm for distributed learning with flexible model customization during training and testing 40