October 17, 2022
Arxiv

FLamby: Datasets and Benchmarks for Cross-Silo Federated Learning in Realistic Healthcare Settings

ML
FL
Abstract

Federated Learning (FL) is a novel approach enabling several clients holding sensitive data to collaboratively train machine learning models, without centralizing data.

The cross-silo FL setting corresponds to the case of few (2--50) reliable clients, each holding medium to large datasets, and is typically found in applications such as healthcare, finance, or industry. While previous works have proposed representative datasets for cross-device FL, few realistic healthcare cross-silo FL datasets exist, thereby slowing algorithmic research in this critical application. In this work, we propose a novel cross-silo dataset suite focused on healthcare, FLamby (Federated Learning AMple Benchmark of Your cross-silo strategies), to bridge the gap between theory and practice of cross-silo FL.

FLamby encompasses 7 healthcare datasets with natural splits, covering multiple tasks, modalities, and data volumes, each accompanied with baseline training code. As an illustration, we additionally benchmark standard FL algorithms on all datasets. Our flexible and modular suite allows researchers to easily download datasets, reproduce results and re-use the different components for their research. FLamby is available at https://github.com/owkin/flamby.

Authors
Jean du Terrail
Samy-Safwan Ayed
Edwige Cyffers
Felix Grimberg
Régis Loeb
Paul Mangold
Tanguy Marchand
Othmane Marfoq
Erum Mushtaq
Boris Muzellec
Constantin Philippenko
Santiago Silva
Maria Telenczuk
Shadi Albarqouni
Salman Avestimehr
Aurélien Bellet
Aymeric Dieuleveut
Martin Jaggi
Sai Paneeth Karimireddy
Marco Lorenzi
Giovanni Neglia
Marc Tommasi
Mathieu Andreux