Challenge

FedMalin

Federated MAchine Learning over the INternet (FedMalin)
Federated MAchine Learning over the INternet (FedMalin)

In many use-cases of Machine Learning (ML), data is naturally decentralized: medical data is collected and stored by different hospitals, crowdsensed data is generated by personal devices, etc. Federated Learning (FL) has recently emerged as a novel paradigm where a set of entities with local datasets collaboratively train ML models while keeping their data decentralized. FedMalin aims to push FL research and concrete use-cases through a multidisciplinary consortium involving expertise in ML, distributed systems, privacy and security, networks, and medicine. We propose to address a number of challenges that arise when FL is deployed over the Internet, including privacy & fairness, energy consumption, personalization, and location/time dependencies. FedMalin will also contribute to the development of open-source tools for FL experimentation and real-world deployments, and use them for concrete applications in medicine and crowdsensing.

Inria teams involved
COATI, COMETE, DYOGENE, EPIONE, MAGNET, MARACAS, NEO, PREMEDICAL, SPIRALS, TRIBE, WIDE

Contacts

Aurélien Bellet

Scientific leader

Giovanni Neglia

Scientific co-leader