PersA-FL: Personalized Asynchronous Federated Learning

10/03/2022
by   Mohammad Taha Toghani, et al.
9

We study the personalized federated learning problem under asynchronous updates. In this problem, each client seeks to obtain a personalized model that simultaneously outperforms local and global models. We consider two optimization-based frameworks for personalization: (i) Model-Agnostic Meta-Learning (MAML) and (ii) Moreau Envelope (ME). MAML involves learning a joint model adapted for each client through fine-tuning, whereas ME requires a bi-level optimization problem with implicit gradients to enforce personalization via regularized losses. We focus on improving the scalability of personalized federated learning by removing the synchronous communication assumption. Moreover, we extend the studied function class by removing boundedness assumptions on the gradient norm. Our main technical contribution is a unified proof for asynchronous federated learning with bounded staleness that we apply to MAML and ME personalization frameworks. For the smooth and non-convex functions class, we show the convergence of our method to a first-order stationary point. We illustrate the performance of our method and its tolerance to staleness through experiments for classification tasks over heterogeneous datasets.

READ FULL TEXT
research
10/03/2022

Unbounded Gradients in Federated Learning with Buffered Asynchronous Aggregation

Synchronous updates may compromise the efficiency of cross-device federa...
research
03/30/2020

Adaptive Personalized Federated Learning

Investigation of the degree of personalization in federated learning alg...
research
02/12/2021

Stragglers Are Not Disaster: A Hybrid Federated Learning Algorithm with Delayed Gradients

Federated learning (FL) is a new machine learning framework which trains...
research
06/09/2021

Memory-based Optimization Methods for Model-Agnostic Meta-Learning

Recently, model-agnostic meta-learning (MAML) has garnered tremendous at...
research
09/27/2019

Improving Federated Learning Personalization via Model Agnostic Meta Learning

Federated Learning (FL) refers to learning a high quality global model b...
research
02/19/2020

Personalized Federated Learning: A Meta-Learning Approach

The goal of federated learning is to design algorithms in which several ...
research
06/22/2022

: Calibrating Global and Local Models via Federated Learning Beyond Consensus

In federated learning (FL), the objective of collaboratively learning a ...

Please sign up or login with your details

Forgot password? Click here to reset