Back to Search Start Over

Federated Evaluation and Tuning for On-Device Personalization: System Design & Applications

Authors :
Paulik, Matthias
Seigel, Matt
Mason, Henry
Telaar, Dominic
Kluivers, Joris
van Dalen, Rogier
Lau, Chi Wai
Carlson, Luke
Granqvist, Filip
Vandevelde, Chris
Agarwal, Sudeep
Freudiger, Julien
Byde, Andrew
Bhowmick, Abhishek
Kapoor, Gaurav
Beaumont, Si
Cahill, Áine
Hughes, Dominic
Javidbakht, Omid
Dong, Fei
Rishi, Rehan
Hung, Stanley
Paulik, Matthias
Seigel, Matt
Mason, Henry
Telaar, Dominic
Kluivers, Joris
van Dalen, Rogier
Lau, Chi Wai
Carlson, Luke
Granqvist, Filip
Vandevelde, Chris
Agarwal, Sudeep
Freudiger, Julien
Byde, Andrew
Bhowmick, Abhishek
Kapoor, Gaurav
Beaumont, Si
Cahill, Áine
Hughes, Dominic
Javidbakht, Omid
Dong, Fei
Rishi, Rehan
Hung, Stanley
Publication Year :
2021

Abstract

We describe the design of our federated task processing system. Originally, the system was created to support two specific federated tasks: evaluation and tuning of on-device ML systems, primarily for the purpose of personalizing these systems. In recent years, support for an additional federated task has been added: federated learning (FL) of deep neural networks. To our knowledge, only one other system has been described in literature that supports FL at scale. We include comparisons to that system to help discuss design decisions and attached trade-offs. Finally, we describe two specific large scale personalization use cases in detail to showcase the applicability of federated tuning to on-device personalization and to highlight application specific solutions.<br />Comment: 11 pages, 1 figure

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269530230
Document Type :
Electronic Resource