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The FeatureCloud AI Store for Federated Learning in Biomedicine and Beyond

Authors :
Matschinske, Julian
Späth, Julian
Nasirigerdeh, Reza
Torkzadehmahani, Reihaneh
Hartebrodt, Anne
Orbán, Balázs
Fejér, Sándor
Zolotareva, Olga
Bakhtiari, Mohammad
Bihari, Béla
Bloice, Marcus
Donner, Nina C
Fdhila, Walid
Frisch, Tobias
Hauschild, Anne-Christin
Heider, Dominik
Holzinger, Andreas
Hötzendorfer, Walter
Hospes, Jan
Kacprowski, Tim
Kastelitz, Markus
List, Markus
Mayer, Rudolf
Moga, Mónika
Müller, Heimo
Pustozerova, Anastasia
Röttger, Richard
Saranti, Anna
Schmidt, Harald HHW
Tschohl, Christof
Wenke, Nina K
Baumbach, Jan
Publication Year :
2021

Abstract

Machine Learning (ML) and Artificial Intelligence (AI) have shown promising results in many areas and are driven by the increasing amount of available data. However, this data is often distributed across different institutions and cannot be shared due to privacy concerns. Privacy-preserving methods, such as Federated Learning (FL), allow for training ML models without sharing sensitive data, but their implementation is time-consuming and requires advanced programming skills. Here, we present the FeatureCloud AI Store for FL as an all-in-one platform for biomedical research and other applications. It removes large parts of this complexity for developers and end-users by providing an extensible AI Store with a collection of ready-to-use apps. We show that the federated apps produce similar results to centralized ML, scale well for a typical number of collaborators and can be combined with Secure Multiparty Computation (SMPC), thereby making FL algorithms safely and easily applicable in biomedical and clinical environments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2105.05734
Document Type :
Working Paper