This paper presents Fedlearn-Algo, an open-source privacy preserving machine learning platform, and releases vertical federated kernel binary classification model and vertical Federated random forest model, the first batch of novel FL algorithm examples.
In this paper, we present Fedlearn-Algo, an open-source privacy preserving machine learning platform. We use this platform to demonstrate our research and development results on privacy preserving machine learning algorithms. As the first batch of novel FL algorithm examples, we release vertical federated kernel binary classification model and vertical federated random forest model. They have been tested to be more efficient than existing vertical federated learning models in our practice. Besides the novel FL algorithm examples, we also release a machine communication module. The uniform data transfer interface supports transferring widely used data formats between machines. We will maintain this platform by adding more functional modules and algorithm examples. The code is available at https://github.com/fedlearnAI/fedlearn-algo.
Bo Liu
1 papers
Chaowei Tan
1 papers
Jiazhou Wang
1 papers
Huasong Shan
1 papers
Houpu Yao
1 papers
Heng Huang
1 papers
Yanqing Chen
1 papers