LGDCMay 24, 2024

Achieving Dimension-Free Communication in Federated Learning via Zeroth-Order Optimization

arXiv:2405.15861v520 citationsh-index: 11Has CodeICLR
Originality Highly original
AI Analysis

This addresses a major bottleneck in FL for distributed and privacy-preserving machine learning, enabling efficient large-scale model training with minimal communication overhead.

The paper tackles the high communication costs in Federated Learning (FL) by proposing DeComFL, a dimension-free communication algorithm that reduces costs from O(d) to O(1) using zeroth-order optimization, achieving state-of-the-art convergence rates and transmitting only about 1MB of data to fine-tune models with billions of parameters.

Federated Learning (FL) offers a promising framework for collaborative and privacy-preserving machine learning across distributed data sources. However, the substantial communication costs associated with FL significantly challenge its efficiency. Specifically, in each communication round, the communication costs scale linearly with the model's dimension, which presents a formidable obstacle, especially in large model scenarios. Despite various communication-efficient strategies, the intrinsic dimension-dependent communication cost remains a major bottleneck for current FL implementations. This paper proposes a novel dimension-free communication algorithm - DeComFL, which leverages the zeroth-order optimization techniques and reduces the communication cost from $\mathscr{O}(d)$ to $\mathscr{O}(1)$ by transmitting only a constant number of scalar values between clients and the server in each round, regardless of the dimension $d$ of the model parameters. Theoretically, in non-convex functions, we prove that our algorithm achieves state-of-the-art rates, which show a linear speedup of the number of clients and local steps under standard assumptions. With additional low effective rank assumption, we can further show the convergence rate is independent of the model dimension $d$ as well. Empirical evaluations, encompassing both classic deep learning training and large language model fine-tuning, demonstrate significant reductions in communication overhead. Notably, DeComFL achieves this by transmitting only around 1MB of data in total between the server and a client to fine-tune a model with billions of parameters. Our code is available at https://github.com/ZidongLiu/DeComFL.

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