Poster
in
Workshop: Federated Learning: Recent Advances and New Challenges
FLARE: Federated Learning from Simulation to Real-World
Holger Roth · Yan Cheng · Yuhong Wen · Te-Chung (Isaac) Yang · Ziyue Xu · Yuan-Ting Hsieh · Kristopher Kersten · Ahmed Harouni · Can Zhao · Kevin Lu · Zhihong Zhang · Wenqi Li · Andriy Myronenko · Dong Yang · Sean Yang · Nicola Rieke · Abood Quraini · Chester Chen · Daguang Xu · Nic Ma · Prerna Dogra · Mona Flores · Andrew Feng
Federated learning (FL) enables building robust and generalizable AI models by leveraging diverse datasets from multiple collaborators without centralizing the data. We created FLARE as an open-source software development kit (SDK) to make it easier for data scientists to use FL in their research and real-world applications. The SDK includes solutions for state-of-the-art FL algorithms and federated machine learning approaches, which facilitate building workflows for distributed learning across enterprises and enable platform developers to create a secure, privacy-preserving offering for multiparty collaboration utilizing homomorphic encryption or differential privacy. The SDK is a lightweight, flexible, and scalable Python package, and allows researchers to bring their data science workflows implemented in any training libraries (PyTorch, TensorFlow, XGBoost, or even NumPy) and apply them in real-world FL settings. This paper introduces the key design principles of FLARE and illustrates some use cases (e.g., COVID analysis) with customizable FL workflows that implement different privacy-preserving algorithms.(Code is available at https://anonymous.4open.science/r/anon-flare.)