高效稀疏集体通信及其在分布式深度学习中的应用

Jiawei Fei, Chen-Yu Ho, Atal Narayan Sahu, M. Canini, Amedeo Sapio
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引用次数: 56

摘要

高效的集体通信对于大规模推荐系统和自然语言处理模型的分布式训练等并行计算应用至关重要。现有的集体通信库侧重于优化密集输入的操作,导致在输入稀疏时传输许多零。这与当前在大型模型中看到数据稀疏性增加的趋势相反。我们提出了OmniReduce,一个高效的流聚合系统,利用稀疏性,通过只发送非零数据块来最大化有效的带宽使用。我们证明了这种想法是有益的,并将分布式训练速度提高了8.2倍。即使在100 Gbps的速度下,OmniReduce也能为网络瓶颈dnn提供1.4- 2.9倍的性能提升。
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Efficient sparse collective communication and its application to accelerate distributed deep learning
Efficient collective communication is crucial to parallel-computing applications such as distributed training of large-scale recommendation systems and natural language processing models. Existing collective communication libraries focus on optimizing operations for dense inputs, resulting in transmissions of many zeros when inputs are sparse. This counters current trends that see increasing data sparsity in large models. We propose OmniReduce, an efficient streaming aggregation system that exploits sparsity to maximize effective bandwidth use by sending only non-zero data blocks. We demonstrate that this idea is beneficial and accelerates distributed training by up to 8.2x. Even at 100 Gbps, OmniReduce delivers 1.4--2.9x better performance for network-bottlenecked DNNs.
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