International audienceWe consider a set of learning agents in a col-laborative peer-to-peer network, where each agent learns a personalized model according to its own learning objective. The question addressed in this paper is: how can agents improve upon their locally trained model by communicating with other agents that have similar objectives? We introduce and analyze two asynchronous gossip algorithms running in a fully decentralized manner. Our first approach , inspired from label propagation, aims to smooth pre-trained local models over the network while accounting for the confidence that each agent has in its initial model. In our second approach, agents jointly learn and propagate their model by making iterative updates based on bot...
International audienceIn decentralized networks (of sensors, connected objects, etc.), there is an i...
Decentralized machine learning over peer-to-peer networks is very appealing for it enables to learn ...
This paper considers the problem of decentralized, personalized federated learning. For centralized ...
We consider a set of learning agents in a col-laborative peer-to-peer network, where each agent lear...
We consider the fully decentralized machine learning scenario where many users with personal dataset...
Consider a set of agents in a peer-to-peer communication network, where each agent has a personal da...
International audienceThe rise of connected personal devices together with privacy concerns call for...
We consider a collaborative learning setting where the goal of each agent is to improve their own mo...
This PhD thesis focuses on cooperative multi-task networks. Cooperative networks consist of a col...
We study the personalized federated learning problem under asynchronous updates. In this problem, ea...
Machine learning models are often trained on data stored across multiple computers connected by a ne...
This work proposes a decentralized architecture, where individual agents aim at solving a classifica...
A recent emphasis of distributed learning research has been on federated learning (FL), in which mod...
International audienceWe study the problem of model personalization in Federated Learning (FL) with ...
A traditional machine learning pipeline involves collecting massive amounts of data centrally on a s...
International audienceIn decentralized networks (of sensors, connected objects, etc.), there is an i...
Decentralized machine learning over peer-to-peer networks is very appealing for it enables to learn ...
This paper considers the problem of decentralized, personalized federated learning. For centralized ...
We consider a set of learning agents in a col-laborative peer-to-peer network, where each agent lear...
We consider the fully decentralized machine learning scenario where many users with personal dataset...
Consider a set of agents in a peer-to-peer communication network, where each agent has a personal da...
International audienceThe rise of connected personal devices together with privacy concerns call for...
We consider a collaborative learning setting where the goal of each agent is to improve their own mo...
This PhD thesis focuses on cooperative multi-task networks. Cooperative networks consist of a col...
We study the personalized federated learning problem under asynchronous updates. In this problem, ea...
Machine learning models are often trained on data stored across multiple computers connected by a ne...
This work proposes a decentralized architecture, where individual agents aim at solving a classifica...
A recent emphasis of distributed learning research has been on federated learning (FL), in which mod...
International audienceWe study the problem of model personalization in Federated Learning (FL) with ...
A traditional machine learning pipeline involves collecting massive amounts of data centrally on a s...
International audienceIn decentralized networks (of sensors, connected objects, etc.), there is an i...
Decentralized machine learning over peer-to-peer networks is very appealing for it enables to learn ...
This paper considers the problem of decentralized, personalized federated learning. For centralized ...