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Accelerating Distributed Deep Learning using Lossless Homomorphic Compression

Distributed, Parallel, and Cluster Computing 2024-02-13 v1 Data Structures and Algorithms Machine Learning Networking and Internet Architecture

Abstract

As deep neural networks (DNNs) grow in complexity and size, the resultant increase in communication overhead during distributed training has become a significant bottleneck, challenging the scalability of distributed training systems. Existing solutions, while aiming to mitigate this bottleneck through worker-level compression and in-network aggregation, fall short due to their inability to efficiently reconcile the trade-offs between compression effectiveness and computational overhead, hindering overall performance and scalability. In this paper, we introduce a novel compression algorithm that effectively merges worker-level compression with in-network aggregation. Our solution is both homomorphic, allowing for efficient in-network aggregation without CPU/GPU processing, and lossless, ensuring no compromise on training accuracy. Theoretically optimal in compression and computational efficiency, our approach is empirically validated across diverse DNN models such as NCF, LSTM, VGG19, and BERT-base, showing up to a 6.33×\times improvement in aggregation throughput and a 3.74×\times increase in per-iteration training speed.

Keywords

Cite

@article{arxiv.2402.07529,
  title  = {Accelerating Distributed Deep Learning using Lossless Homomorphic Compression},
  author = {Haoyu Li and Yuchen Xu and Jiayi Chen and Rohit Dwivedula and Wenfei Wu and Keqiang He and Aditya Akella and Daehyeok Kim},
  journal= {arXiv preprint arXiv:2402.07529},
  year   = {2024}
}