SWIFT
Federated Learning Framework
An open-source framework for decentralized federated learning with wait-free model communication
SWIFT: Shared WaIt Free Transmission
8 stars
0 watching
1 forks
Language: Jupyter Notebook
last commit: over 1 year ago Related projects:
Repository | Description | Stars |
---|---|---|
ibm/federated-learning-lib | A framework for collaborative distributed machine learning in enterprise environments. | 499 |
hongyouc/fed-rod | Develops a framework to balance competing goals in federated learning by decoupling generic and personalized prediction tasks. | 14 |
smilelab-fl/fedlab | A flexible framework for distributed machine learning where participants train local models and collaboratively optimize them without sharing data | 738 |
gingsmith/fmtl | A framework for collaborative learning across multiple tasks and datasets in a distributed manner | 129 |
omarfoq/fedem | Develops and evaluates federated learning algorithms for personalizing machine learning models across heterogeneous client data distributions. | 154 |
zlz0414/feddar | A framework for federated representation learning with domain awareness in multi-model scenarios. | 2 |
yutong-dai/fednh | An implementation of a federated learning framework for handling data heterogeneity in decentralized settings | 38 |
scaleoutsystems/fedn | An open source federated learning framework designed to be secure, scalable and easy-to-use for enterprise environments | 143 |
securefederatedai/openfl | A framework for enabling collaboration on machine learning projects without sharing sensitive data | 728 |
haozzh/fedcr | Evaluates various methods for federated learning on different models and tasks. | 17 |
jinheonbaek/fed-pub | Personalized Subgraph Federated Learning framework for distributed machine learning | 44 |
litian96/ditto | A framework for personalized federated learning to balance fairness and robustness in decentralized machine learning systems. | 137 |
jiayunz/fedalign | Develops an alignment framework for federated learning with non-identical client class sets | 4 |
diogenes0319/fedmd_clean | An implementation of a heterogenous federated learning framework using model distillation. | 149 |
hmgxr128/mifa_code | An implementation of Fast Federated Learning under device unavailability for minimizing latency and achieving optimal convergence rates | 9 |