Skip to main content
SHARE
Publication

Server-side Log Data Analytics for I/O Workload Characterization and Coordination on Large Shared Storage Systems...

by Y. Liu, Raghul Gunasekaran, Xiaosong Ma, Sudharshan S Vazhkudai
Publication Type
Conference Paper
Publication Date
Conference Name
SC16: International Conference for High Performance Computing, Networking, Storage and Analysis
Conference Location
Salt Lake City, Utah, United States of America
Conference Date

Inter-application I/O contention and performance interference have been recognized as severe problems. In this work, we demonstrate, through measurement from Titan (world’s No. 3 supercomputer), that high I/O variance co-exists with the fact that individual storage units remain under-utilized for the majority of the time. This motivates us to propose AID, a system that performs automatic application I/O characterization and I/O-aware job scheduling. AID analyzes existing I/O traffic and batch job history logs, without any prior knowledge on applications or user/developer involvement. It identifies the small set of I/O-intensive candidates among all applications running on a supercomputer and subsequently mines their I/O patterns, using more detailed per-I/O-node traffic logs. Based on such auto- extracted information, AID provides online I/O-aware scheduling recommendations to steer I/O-intensive applications away from heavy ongoing I/O activities.
We evaluate AID on Titan, using both real applications (with extracted I/O patterns validated by contacting users) and our own pseudo-applications. Our results confirm that AID is able to (1) identify I/O-intensive applications and their detailed I/O characteristics, and (2) significantly reduce these applications’ I/O performance degradation/variance by jointly evaluating out- standing applications’ I/O pattern and real-time system l/O load.