Litcius/Paper detail

Global Experiences with HPC Operational Data Measurement, Collection and Analysis

Michael Ott, Woong Shin, Norman Bourassa, Torsten Wilde, Stefan Ceballos, Melissa Romanus, Natalie Bates

202023 citationsDOIOpen Access PDF

Abstract

As we move into the exascale era, supercomputers grow larger, denser, more heterogeneous, and ever more complex. Operating such machines reliably and efficiently requires deep insight into the operational parameters of the machine itself as well as its supporting infrastructure. To fulfill this need, early adopter sites have started the development and deployment of Operational Data Analytics (ODA) frameworks allowing the continuous monitoring, archiving, and analysis of near realtime performance data from the machine and infrastructure levels, providing immediately actionable information for multiple operational uses. To understand their ODA goals, requirements, and use cases, we have conducted a survey among eight early adopter sites from the US, Europe, and Japan that operate top 50 high-performance computing systems. We have assessed the technologies leveraged to build their ODA frameworks, identified use cases and other push and pull factors that drive the sites' ODA activities, and report on their operational lessons.

Topics & Concepts

Software deploymentComputer scienceEarly adopterAnalyticsData scienceData analysisBig dataSystems engineeringSoftware engineeringOperating systemEngineeringData miningCloud Computing and Resource ManagementDistributed and Parallel Computing SystemsAdvanced Data Storage Technologies