Visible to the public Inferring Software Component Interaction Dependencies for Adaptation SupportConflict Detection Enabled

TitleInferring Software Component Interaction Dependencies for Adaptation Support
Publication TypeJournal Article
Year of Publication2016
AuthorsNaeem Esfahani, Eric Yuan, Kyle Canavera, Sam Malek
JournalACM Transactions on Autonomous and Adaptive Systems (TAAS)
Volume10
Issue4
Date Published02/2016
ISBN Number1556-4665
KeywordsCMU, Jan'16
Abstract

A self-managing software system should be able to monitor and analyze its runtime behavior and make adaptation decisions accordingly to meet certain desirable objectives. Traditional software adaptation techniques and recent "models@runtime" approaches usually require an a priori model for a system's dynamic behavior. Oftentimes the model is difficult to define and labor-intensive to maintain, and tends to get out of date due to adaptation and architecture decay. We propose an alternative approach that does not require defining the system's behavior model beforehand, but instead involves mining software component interactions from system execution traces to build a probabilistic usage model, which is in turn used to analyze, plan, and execute adaptations. In this article, we demonstrate how such an approach can be realized and effectively used to address a variety of adaptation concerns. In particular, we describe the details of one application of this approach for safely applying dynamic changes to a running software system without creating inconsistencies. We also provide an overview of two other applications of the approach, identifying potentially malicious (abnormal) behavior for self-protection, and improving deployment of software components in a distributed setting for performance self-optimization. Finally, we report on our experiments with engineering self-management features in an emergency deployment system using the proposed mining approach.

DOI10.1145/2856035
Citation Keynode-25022

Other available formats:

Esfahani_Inferring_Software_Component.pdf
AttachmentTaxonomyKindSize
Esfahani_Inferring_Software_Component.pdfPDF document1.1 MBDownloadPreview
AttachmentSize
bytes