EF_HC

Decentralized Learning System

A decentralized learning system that enables distributed data sharing and model updates among devices with varying network communication capabilities.

Decentralized Event-Triggered Federated Learning with Heterogeneous Communication Thresholds

GitHub

2 stars
2 watching
1 forks
Language: Python
last commit: over 2 years ago
decentralizedevent-triggeredfederated-learning

Related projects:

Repository Description Stars
yutong-dai/fednh An implementation of a federated learning framework for handling data heterogeneity in decentralized settings 38
ibm/federated-learning-lib A framework for collaborative distributed machine learning in enterprise environments. 499
haozzh/fedcr Evaluates various methods for federated learning on different models and tasks. 17
diaoenmao/heterofl-computation-and-communication-efficient-federated-learning-for-heterogeneous-clients An implementation of efficient federated learning algorithms for heterogeneous clients 152
rong-dai/dispfl An implementation of a personalized federated learning framework with decentralized sparse training and peer-to-peer communication protocol. 68
litian96/ditto A framework for personalized federated learning to balance fairness and robustness in decentralized machine learning systems. 137
omarfoq/fedem Develops and evaluates federated learning algorithms for personalizing machine learning models across heterogeneous client data distributions. 154
wenkehuang/fccl A framework for tackling heterogeneity and catastrophic forgetting in federated learning by leveraging cross-correlation and similarity learning 97
idanachituve/pfedgp An implementation of Personalized Federated Learning with Gaussian Processes using Python. 32
galaxylearning/gfl A decentralized federated learning framework based on blockchain and PyTorch. 242
xjiajiahao/federated-minimax A framework for developing and testing decentralized machine learning algorithms 2
xtra-computing/fedov Develops a framework to address label skews in one-shot federated learning by partitioning data and adapting models. 14
diaoenmao/semifl-semi-supervised-federated-learning-for-unlabeled-clients-with-alternate-training An implementation of semi-supervised federated learning for improving the performance of a server using distributed clients with unlabeled data 34
umd-huang-lab/swift An open-source framework for decentralized federated learning with wait-free model communication 8
bytedance/feddecorr Provides an implementation of various heterogeneous federated learning methods and datasets to mitigate dimensional collapse in distributed machine learning 63