FLuID

Straggler mitigation algorithm

Federated learning algorithm to mitigate stragglers in distributed machine learning

GitHub

5 stars
1 watching
2 forks
Language: Python
last commit: about 1 year ago

Related projects:

Repository Description Stars
gaoliang13/feddc Federated learning algorithm that adapts to non-IID data by decoupling and correcting for local drift 79
sungwon-han/fedx An unsupervised federated learning algorithm that uses cross knowledge distillation to learn meaningful data representations from local and global levels. 68
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
hongliny/fedac-neurips20 Provides code for a federated learning algorithm to optimize machine learning models in a distributed setting. 14
lyn1874/fedpvr An implementation of a federated learning algorithm for handling heterogeneous data 6
mediabrain-sjtu/pfedgraph This project enables personalized federated learning with inferred collaboration graphs to improve the performance of machine learning models on non-IID (non-independent and identically distributed) datasets. 26
ignavierng/notears-admm An implementation of Bayesian network structure learning with continuous optimization for federated learning. 10
thupchnsky/mufc An efficient method for federated clustering and its corresponding unlearning procedure to provably achieve accurate results 18
lx10077/fedavgpy The purpose of this project is to investigate the convergence of a federated learning algorithm on non-IID (non-identically and independently distributed) data. 250
mingruiliu-ml-lab/episode An algorithm for Federated Learning with heterogeneous data, designed to optimize deep neural networks and improve performance 2
lins-lab/fedbr An implementation of federated learning algorithm to reduce local learning bias and improve convergence on heterogeneous data 25
mingruiliu-ml-lab/episode_plusplus An algorithm for Federated Learning that handles client subsampling and data heterogeneity with unbounded smoothness 0
wyjeong/fedmatch A project implementing Federated Semi-Supervised Learning with Inter-Client Consistency & Disjoint Learning 79
mediabrain-sjtu/fedgela Federated learning algorithm designed to handle partially class-disjoint data by utilizing bilateral curation and Dirichlet partitioning. 10
diaoenmao/heterofl-computation-and-communication-efficient-federated-learning-for-heterogeneous-clients An implementation of efficient federated learning algorithms for heterogeneous clients 152