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Most Influential SIGCOMM 2023 Paper · 2026-03 edition

Lightwave Fabrics: At-Scale Optical Circuit Switching for Datacenter and Machine Learning Systems

Hong Liu, Ryohei Urata, Kevin Yasumura, Xiang Zhou, Roy Bannon, Jill Berger, Pedram Dashti, Norm Jouppi, Cedric Lam, Sheng Li, Erji Mao, Daniel Nelson, George Papen, Mukarram Tariq, Amin Vahdat

Venue
ACM SIGCOMM Conference (SIGCOMM) 2023
Recognition
Most Influential SIGCOMM 2023 Paper (Rank No. 6)
Edition
2026-03
Impact factor
3
Certificate ID
a838dd005f02d73d

Abstract

We describe our experience developing what we believe to be the world's first large-scale production deployments of lightwave fabrics used for both datacenter networking and machine-learning (ML) applications. Using optical circuit switches (OCSes) and optical transceivers developed in-house, we employ hardware and software codesign to integrate the fabrics into our network and computing infrastructure. Key to our design is a high degree of multiplexing enabled by new kinds of wavelength-division-multiplexing (WDM) and optical circulators that support high-bandwidth bidirectional traffic on a single strand of optical fiber. The development of the requisite OCS and optical transceiver technologies leads to a synchronous lightwave fabric that is reconfigurable, low latency, rate agnostic, and highly available. These fabrics have provided substantial benefits for long-lived traffic patterns in our datacenter networks and predictable traffic patterns in tightly-coupled machine learning clusters. We report results for a large-scale ML superpod with 4096 tensor processing unit (TPU) V4 chips that has more than one ExaFLOP of computing power. For this use case, the deployment of a lightwave fabric provides up to 3× better system availability and model-dependent performance improvements of up to 3.3× compared to a static fabric, despite constituting less than 6% of the total system cost.

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