Invention Grant
- Patent Title: Communication efficient federated learning
-
Application No.: US16850053Application Date: 2020-04-16
-
Publication No.: US11763197B2Publication Date: 2023-09-19
- Inventor: Hugh Brendan McMahan , Dave Morris Bacon , Jakub Konecny , Xinnan Yu
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Dority & Manning, P.A.
- Main IPC: G06N20/00
- IPC: G06N20/00 ; G06F17/16 ; G06F17/18 ; H04L67/01 ; G06N7/01 ; G06F7/58

Abstract:
The present disclosure provides efficient communication techniques for transmission of model updates within a machine learning framework, such as, for example, a federated learning framework in which a high-quality centralized model is trained on training data distributed overt a large number of clients each with unreliable network connections and low computational power. In an example federated learning setting, in each of a plurality of rounds, each client independently updates the model based on its local data and communicates the updated model back to the server, where all the client-side updates are used to update a global model. The present disclosure provides systems and methods that reduce communication costs. In particular, the present disclosure provides at least: structured update approaches in which the model update is restricted to be small and sketched update approaches in which the model update is compressed before sending to the server.
Public/Granted literature
- US20200242514A1 Communication Efficient Federated Learning Public/Granted day:2020-07-30
Information query