Litcius/Paper detail

Decentralized gradient tracking with local steps

Yue Liu, Tao Lin, Anastasia Koloskova, Sebastian U. Stich

2024Optimization methods & software24 citationsDOIOpen Access PDF

Abstract

Gradient tracking (GT) is an algorithm designed for solving decentralized optimization problems over a network (such as training a machine learning model). A key feature of GT is a tracking mechanism that allows us to overcome data heterogeneity between nodes. We develop a novel decentralized tracking mechanism, K-GT, which enables communication-efficient local updates in GT while inheriting the data-independence property of GT. We prove a convergence rate for K-GT on smooth non-convex functions and prove that it reduces the communication overhead asymptotically by a linear factor K, where K denotes the number of local steps. We illustrate the robustness and effectiveness of this heterogeneity correction on convex and non-convex benchmark problems and a non-convex neural network training task with the MNIST dataset.

Topics & Concepts

Tracking (education)Computer sciencePsychologyPedagogyRobotics and Sensor-Based LocalizationStochastic Gradient Optimization TechniquesDistributed Control Multi-Agent Systems