Resilient AI Supercomputer Networking using MRC and SRv6

📅 2026-05-05
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📝 Abstract
Tail latency dominates the performance of synchronous pretraining jobs when running at very large scales. We describe a three-pronged approach: (1) a new RDMA-based transport protocol, MRC, sprays across many paths and actively load-balances between them, eliminating the issue of flow collisions (2) the use of multi-plane Clos topologies to get the benefits of high switch radix and redundancy, allowing training clusters well over 100K GPUs to be built as two-tier topologies while increasing physical redundancy, and (3) the use of static source-routing using SRv6 to allow MRC the freedom to bypass failures by itself. We describe our experiences running MRC and static SRv6 routing in production in OpenAI and Microsoft's largest training clusters, where it has been used to train the latest frontier models. We demonstrate how MRC allows AI training jobs to ride out many network failures that previously would have interrupted training.
Problem

Research questions and friction points this paper is trying to address.

tail latency
synchronous pretraining
network failures
AI training
large-scale
Innovation

Methods, ideas, or system contributions that make the work stand out.

MRC
SRv6
multi-plane Clos topology
RDMA
resilient AI networking
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