Back to Search Start Over

PROV-IO+: A Cross-Platform Provenance Framework for Scientific Data on HPC Systems

Authors :
Han, Runzhou
Zheng, Mai
Byna, Suren
Tang, Houjun
Dong, Bin
Dai, Dong
Chen, Yong
Kim, Dongkyun
Hassoun, Joseph
Thorsley, David
Wolf, Matthew
Publication Year :
2023

Abstract

Data provenance, or data lineage, describes the life cycle of data. In scientific workflows on HPC systems, scientists often seek diverse provenance (e.g., origins of data products, usage patterns of datasets). Unfortunately, existing provenance solutions cannot address the challenges due to their incompatible provenance models and/or system implementations. In this paper, we analyze four representative scientific workflows in collaboration with the domain scientists to identify concrete provenance needs. Based on the first-hand analysis, we propose a provenance framework called PROV-IO+, which includes an I/O-centric provenance model for describing scientific data and the associated I/O operations and environments precisely. Moreover, we build a prototype of PROV-IO+ to enable end-to-end provenance support on real HPC systems with little manual effort. The PROV-IO+ framework can support both containerized and non-containerized workflows on different HPC platforms with flexibility in selecting various classes of provenance. Our experiments with realistic workflows show that PROV-IO+ can address the provenance needs of the domain scientists effectively with reasonable performance (e.g., less than 3.5% tracking overhead for most experiments). Moreover, PROV-IO+ outperforms a state-of-the-art system (i.e., ProvLake) in our experiments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.00891
Document Type :
Working Paper