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Photonic Rails in ML Datacenters

Photonic Rails in ML Datacenters

来源:Arxiv_logoArxiv
英文摘要

Rail-optimized network fabrics have become the de facto datacenter scale-out fabric for large-scale ML training. However, the use of high-radix electrical switches to provide all-to-all connectivity in rails imposes massive power, cost, and complexity overheads. We propose a rethinking of the rail abstraction by retaining its communication semantics, but realizing it using optical circuit switches. The key challenge is that optical switches support only one-to-one connectivity at a time, limiting the fan-out of traffic in ML workloads using hybrid parallelisms. We introduce parallelism-driven rail reconfiguration as a solution that leverages the sequential ordering between traffic from different parallelisms. We design a control plane, Opus, to enable time-multiplexed emulation of electrical rail switches using optical switches. More broadly, our work discusses a new research agenda: datacenter fabrics that co-evolve with the model parallelism dimensions within each job, as opposed to the prevailing mindset of reconfiguring networks before a job begins.

Eric Ding、Chuhan Ouyang、Rachee Singh

光电子技术通信

Eric Ding,Chuhan Ouyang,Rachee Singh.Photonic Rails in ML Datacenters[EB/OL].(2025-07-10)[2025-07-25].https://arxiv.org/abs/2507.08119.点此复制

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