Litcius/Paper detail

Feature subset selection for learning huge configuration spaces

Mathieu Acher, Hugo Martin, Luc Lesoil, Arnaud Blouin, Jean‐Marc Jezéquél, Djamel Eddine Khelladi, Olivier Barais, Juliana Alves Pereira

202213 citationsDOIOpen Access PDF

Abstract

Linux kernels are used in a wide variety of appliances, many of them having strong requirements on the kernel size due to constraints such as limited memory or instant boot. With more than nine thousands of configuration options to choose from, developers and users of Linux actually spend significant effort to document, understand, and eventually tune (combinations of) options for meeting a kernel size. In this paper, we describe a large-scale endeavour automating this task and predicting a given Linux kernel binary size out of unmeasured configurations. We first experiment that state-of-the-art solutions specifically made for configurable systems such as performance-influence models cannot cope with that number of options, suggesting that software product line techniques may need to be adapted to such huge configuration spaces. We then show that tree-based feature selection can learn a model achieving low prediction errors over a reduced set of options. The resulting model, trained on 95 854 kernel configurations, is fast to compute, simple to interpret and even outperforms the accuracy of learning without feature selection.

Topics & Concepts

Computer scienceKernel (algebra)Linux kernelMachine learningSelection (genetic algorithm)Tree kernelFeature (linguistics)Feature selectionVariety (cybernetics)Task (project management)Tree (set theory)Set (abstract data type)Software product lineSoftwareArtificial intelligenceKernel methodRadial basis function kernelOperating systemSupport vector machineSoftware developmentProgramming languageEngineeringLinguisticsMathematicsCombinatoricsPhilosophySystems engineeringMathematical analysisSoftware System Performance and ReliabilityAdvanced Software Engineering MethodologiesSoftware Engineering Research