coreset-vfl-codes
Vertical Fed Learning Framework
Provides code for Coresets in Vertical Federated Learning
9 stars
1 watching
1 forks
Language: Jupyter Notebook
last commit: about 2 years ago Related projects:
Repository | Description | Stars |
---|---|---|
haoyuzhao123/soteriafl | Numerical experiments for private federated learning with communication compression algorithms | 7 |
jinheonbaek/fed-pub | Personalized Subgraph Federated Learning framework for distributed machine learning | 44 |
hongyouc/fed-rod | Develops a framework to balance competing goals in federated learning by decoupling generic and personalized prediction tasks. | 14 |
jiayunz/fedalign | Develops an alignment framework for federated learning with non-identical client class sets | 4 |
haozzh/fedcr | Evaluates various methods for federated learning on different models and tasks. | 17 |
wizard1203/vhl | A toolkit for federated learning with a focus on defending against data heterogeneity | 40 |
yuetan031/fedproto | An implementation of federated learning with prototype-based methods across heterogeneous clients | 133 |
shenzebang/federated-learning-pytorch | A PyTorch-based framework for Federated Learning experiments | 40 |
ganyuwang/vfl-czofo | A unified framework for improving privacy and reducing communication overhead in distributed machine learning models. | 11 |
wenkehuang/fccl | A framework for tackling heterogeneity and catastrophic forgetting in federated learning by leveraging cross-correlation and similarity learning | 97 |
wyjeong/fedweit | An implementation of Federated Continual Learning with Weighted Inter-client Transfer using TensorFlow 2. | 98 |
yutong-dai/fednh | An implementation of a federated learning framework for handling data heterogeneity in decentralized settings | 38 |
xtra-computing/fedov | Develops a framework to address label skews in one-shot federated learning by partitioning data and adapting models. | 14 |
sarapieri/fed_het | This project investigates how to design architectures that enable better performance in federated learning systems, particularly for visual recognition tasks. | 10 |
umd-huang-lab/swift | An open-source framework for decentralized federated learning with wait-free model communication | 8 |