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A Machine Learning Framework to Improve Storage System Performance

Ibrahim Umit Akgun, Ali Selman Aydin, Aadil Shaikh, Lukas Velikov, Erez Zadok

202116 citationsDOI

Abstract

Storage systems and their OS components are designed to accommodate a wide variety of applications and dynamic workloads. Storage components inside the OS contain various heuristic algorithms to provide high performance and adaptability for different workloads. These heuristics may be tunable via parameters, and some system calls allow users to optimize their system performance. These parameters are often predetermined based on experiments with limited applications and hardware. Thus, storage systems often run with these predetermined and possibly suboptimal values. Tuning these parameters manually is impractical: one needs an adaptive, intelligent system to handle dynamic and complex workloads. Machine learning (ML) techniques are capable of recognizing patterns, abstracting them, and making predictions on new data. ML can be a key component to optimize and adapt storage systems. In this position paper, we propose KML, an ML framework for storage systems. We implemented a prototype and demonstrated its capabilities on the well-known problem of tuning optimal readahead values. Our results show that KML has a small memory footprint, introduces negligible overhead, and yet enhances throughput by as much as 2.3x.

Topics & Concepts

Computer scienceHeuristicsAdaptabilityOverhead (engineering)Component (thermodynamics)ThroughputKey (lock)Distributed computingHeuristicComputer data storageVariety (cybernetics)Embedded systemReal-time computingOperating systemArtificial intelligencePhysicsWirelessThermodynamicsBiologyEcologyAdvanced Data Storage TechnologiesParallel Computing and Optimization TechniquesCloud Computing and Resource Management
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