Feder
Feder is a highly dynamic and customizable framework that can accommodate many use cases with flexibility by implementing several functionalities over different federated learning algorithms, and essentially creating a plug-and-play architecture to accommodate different use cases.
Check out the Overview of Feder section for further information, including how to Installation the project.
Note
This project is under active development.
Contents
Citation
Please cite FedLab in your publications if it helps your research:
@article{
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Contacts
Contact the Feder development team through Github issues or email:
efgh: efgh@gmail.com
abcd: abcd@gmail.com