Search Results for author: Erum Mushtaq

Found 5 papers, 1 papers with code

SPIDER: Searching Personalized Neural Architecture for Federated Learning

no code implementations27 Dec 2021 Erum Mushtaq, Chaoyang He, Jie Ding, Salman Avestimehr

However, given that clients' data are invisible to the server and data distributions are non-identical across clients, a predefined architecture discovered in a centralized setting may not be an optimal solution for all the clients in FL.

Federated Learning Neural Architecture Search

SSFL: Tackling Label Deficiency in Federated Learning via Personalized Self-Supervision

no code implementations6 Oct 2021 Chaoyang He, Zhengyu Yang, Erum Mushtaq, Sunwoo Lee, Mahdi Soltanolkotabi, Salman Avestimehr

In this paper we propose self-supervised federated learning (SSFL), a unified self-supervised and personalized federated learning framework, and a series of algorithms under this framework which work towards addressing these challenges.

Personalized Federated Learning Self-Supervised Learning

FedNAS: Federated Deep Learning via Neural Architecture Search

no code implementations29 Sep 2021 Chaoyang He, Erum Mushtaq, Jie Ding, Salman Avestimehr

Federated Learning (FL) is an effective learning framework used when data cannotbe centralized due to privacy, communication costs, and regulatory restrictions. While there have been many algorithmic advances in FL, significantly less effort hasbeen made on model development, and most works in FL employ predefined modelarchitectures discovered in the centralized environment.

Federated Learning Meta-Learning +1

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