English

Checkmate: Zero-Overhead Model Checkpointing via Network Gradient Replication

Distributed, Parallel, and Cluster Computing 2025-07-21 v1

Abstract

This paper presents Checkmate, a system that enables per-iteration checkpointing in DNN training without any training slowdown. The traditional approach to checkpointing requires a pause in training to copy model states to a separate location, allowing the state to be restored in the event of failure. This approach fundamentally has a tradeoff between the frequency of checkpoints and the cost of a failure. We avoid this tradeoff; our key insight is that in data-parallel training, all information necessary to create a checkpoint already exists in the network as gradients. Our core contribution is a new multicast abstraction that simultaneously delivers gradients to a separate CPU-based shadow cluster. The shadow maintains a checkpoint by applying those gradients to a copy of the model. Our evaluation shows that Checkmate performs per-iteration checkpointing with training throughput comparable to an ideal no-checkpoint baseline. Checkmate achieves 5 to 34.5x more frequent checkpointing compared to state-of-the-art checkpointing systems, resulting in 80% to 97.1% reduction in repeated work per failure. At the same checkpointing frequency, Checkmate delivers 1.3x to 6.5x throughput compared to other systems.

Keywords

Cite

@article{arxiv.2507.13522,
  title  = {Checkmate: Zero-Overhead Model Checkpointing via Network Gradient Replication},
  author = {Ankit Bhardwaj and Weiyang Wang and Jeremy Carin and Adam Belay and Manya Ghobadi},
  journal= {arXiv preprint arXiv:2507.13522},
  year   = {2025}
}

Comments

18 pages, 11 figures

R2 v1 2026-07-01T04:06:59.495Z