Back to Search Start Over

AutoCheck: Automatically Identifying Variables for Checkpointing by Data Dependency Analysis

Authors :
Fu, Xiang
Zhang, Weiping
Huang, Xin
Meng, Shiman
Xu, Wubiao
Guo, Luanzheng
Sato, Kento
Publication Year :
2024

Abstract

Checkpoint/Restart (C/R) has been widely deployed in numerous HPC systems, Clouds, and industrial data centers, which are typically operated by system engineers. Nevertheless, there is no existing approach that helps system engineers without domain expertise, and domain scientists without system fault tolerance knowledge identify those critical variables accounted for correct application execution restoration in a failure for C/R. To address this problem, we propose an analytical model and a tool (AutoCheck) that can automatically identify critical variables to checkpoint for C/R. AutoCheck relies on first, analytically tracking and optimizing data dependency between variables and other application execution state, and second, a set of heuristics that identify critical variables for checkpointing from the refined data dependency graph (DDG). AutoCheck allows programmers to pinpoint critical variables to checkpoint quickly within a few minutes. We evaluate AutoCheck on 14 representative HPC benchmarks, demonstrating that AutoCheck can efficiently identify correct critical variables to checkpoint.<br />Comment: 11 pages, 7 figures, 4 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.06082
Document Type :
Working Paper