Litcius/Paper detail

SOMA: Observability, monitoring, and in situ analytics for exascale applications

Dewi Yokelson, Oskar Lappi, Ramesh Srinivasan, Miikka S. Väisälä, Kevin Huck, Touko Puro, Boyana Norris, Maarit Korpi‐Lagg, Keijo Heljanko, Allen D. Malony

2024Concurrency and Computation Practice and Experience12 citationsDOIOpen Access PDF

Abstract

Summary With the rise of exascale systems and large, data‐centric workflows, the need to observe and analyze high performance computing (HPC) applications during their execution is becoming increasingly important. HPC applications are typically not designed with online monitoring in mind, therefore, the observability challenge lies in being able to access and analyze interesting events with low overhead while seamlessly integrating such capabilities into existing and new applications. We explore how our service‐based observation, monitoring, and analytics (SOMA) approach to collecting and aggregating both application‐specific diagnostic data and performance data addresses these needs. We present our SOMA framework and demonstrate its viability with LULESH, a hydrodynamics proxy application. Then we focus on Astaroth, a multi‐GPU library for stencil computations, highlighting the integration of the TAU and APEX performance tools and SOMA for application and performance data monitoring.

Topics & Concepts

Computer scienceAnalyticsWorkflowExascale computingBig dataObservabilityOverhead (engineering)Distributed computingSupercomputerSomaStencilData scienceDatabaseParallel computingData miningOperating systemComputational scienceNeuroscienceApplied mathematicsMathematicsBiologyAdvanced Data Storage TechnologiesParallel Computing and Optimization TechniquesCloud Computing and Resource Management