LoCoDL: Communication-Efficient Distributed Learning with Local Training and Compression

10citations
arXiv:2403.04348
10
citations
#1512
in ICLR 2025
of 3827 papers
3
Top Authors
4
Data Points

Abstract

In $D$istributed optimization and $L$earning, and even more in the modern framework of federated learning, communication, which is slow and costly, is critical. We introduce LoCoDL, a communication-efficient algorithm that leverages the two popular and effective techniques of $Lo$cal training, which reduces the communication frequency, and $Co$mpression, in which short bitstreams are sent instead of full-dimensional vectors of floats. LoCoDL works with a large class of unbiased compressors that includes widely-used sparsification and quantization methods. LoCoDL provably benefits from local training and compression and enjoys a doubly-accelerated communication complexity, with respect to the condition number of the functions and the model dimension, in the general heterogeneous regime with strongly convex functions. This is confirmed in practice, with LoCoDL outperforming existing algorithms.

Citation History

Jan 25, 2026
8
Feb 13, 2026
10+2
Feb 13, 2026
10
Feb 13, 2026
10