Visible to the public Interpreting Write Performance of Supercomputer I/O Systems with Regression Models

TitleInterpreting Write Performance of Supercomputer I/O Systems with Regression Models
Publication TypeConference Paper
Year of Publication2021
AuthorsXie, Bing, Tan, Zilong, Carns, Philip, Chase, Jeff, Harms, Kevin, Lofstead, Jay, Oral, Sarp, Vazhkudai, Sudharshan S., Wang, Feiyi
Conference Name2021 IEEE International Parallel and Distributed Processing Symposium (IPDPS)
Date Publishedmay
KeywordsAdaptation models, Collaboration, composability, Computational modeling, High performance computing, i-o systems security, I/O performance, machine learning, machine learning algorithms, middleware security, policy-based governance, Predictive models, Production, pubcrawl, Systems architecture, Training
Abstract

This work seeks to advance the state of the art in HPC I/O performance analysis and interpretation. In particular, we demonstrate effective techniques to: (1) model output performance in the presence of I/O interference from production loads; (2) build features from write patterns and key parameters of the system architecture and configurations; (3) employ suitable machine learning algorithms to improve model accuracy. We train models with five popular regression algorithms and conduct experiments on two distinct production HPC platforms. We find that the lasso and random forest models predict output performance with high accuracy on both of the target systems. We also explore use of the models to guide adaptation in I/O middleware systems, and show potential for improvements of at least 15% from model-guided adaptation on 70% of samples, and improvements up to 10 x on some samples for both of the target systems.

DOI10.1109/IPDPS49936.2021.00064
Citation Keyxie_interpreting_2021