YouTube19 Aug 2025
20m

Enhancing Runtime Reliability in LLM Training via Fine-Grained Observability - Live from SCC

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@Scale

Lei Zhang from ByteDance discusses improving the reliability of large language model (LLM) training at runtime, addressing the challenges that arise with the increasing scale of these jobs. He introduces Minder, a fault detection system leveraging unsupervised learning through VAE-based parametric models and similarity-based checks to identify faulty machines, reducing detection time by 99% compared to manual diagnosis. Zhang also presents MyCraft, a tracing system for CCL-level observability, which addresses gray failures by tracing dependencies in collective communication. MyCraft detects faults by monitoring a subset of GPUs and performing lightweight dependency-driven root cause analysis, proving successful in fault injection experiments by detecting and localizing various failure types.

Outlines

Part 1: Challenges, Context

Part 2: Metric-Based Detection, Minder

Part 3: Communication Observability, MyCraft

Part 4: Conclusion, Future Outlook

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