Fault-Tolerant Training at Scale: Making Hardware Failures a Non-Event
Official Schedule Context
- Date/time: 2026-06-30 · 11:40am-12:00pm
- Track/room: track TBD · Expo Stage 1 NE
- Speaker(s): TBA
- Session type/status: session · confirmed
Official Description
Hardware failures in large-scale distributed training are inevitable — when you're running thousands
of GPUs, they happen multiple times a day. The standard response is manual intervention: an engineer
gets paged, SSHs into the cluster, and spends an hour fixing something the infrastructure should
have handled automatically. That lost time compounds directly into wasted compute and delayed
research. This session walks through the self-healing platform Crusoe built to eliminate that
manual loop entirely — a managed Slurm environment running on Kubernetes, with automated node
failure remediation and real-time cluster observability — and how these components work together so
hardware failures become a non-event. We'll cover this architecture end-to-end: how running Slurm
on Kubernetes unlocks infrastructure resilience that traditional GPU clusters don't have, how
automated hardware monitoring and node remediation can eliminate manual intervention entirely, and
how full observability into every remediation event keeps engineering teams informed without keeping
them on-call. For teams that want deeper control, we'll also discuss open-loop remediation, which
gives teams full control over the node replacement process for application-specific workflows.
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