Chip-to-chip photonic connectivity in multi-accelerator servers for ML
Chip-to-chip photonic connectivity in multi-accelerator servers for ML
We present a rack-scale compute architecture for ML using multi-accelerator servers connected via chip-to-chip silicon photonic components. Our architecture achieves (1) multi-tenanted resource slicing without fragmentation, (2) 74% faster rack-scale collective communication, and (3) 1.7X speedup in end-to-end ML training throughput.
Darius Bunandar、Arjun Devraj、Abhishek Vijaya Kumar、Rachee Singh
光电子技术计算技术、计算机技术
Darius Bunandar,Arjun Devraj,Abhishek Vijaya Kumar,Rachee Singh.Chip-to-chip photonic connectivity in multi-accelerator servers for ML[EB/OL].(2025-01-30)[2025-08-30].https://arxiv.org/abs/2501.18169.点此复制
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