A Toolset for Predicting Performance of Legacy Real-Time Software Based on the RAST ApproachOpen Access

Tomak, Juri; Gorlatch, Sergei

Research article in journal (conference) | Peer reviewed

Abstract

Simulating and predicting the performance of a distributed software system that works under stringent real-time constraints poses significant challenges, particularly when dealing with legacy systems being in production use, where any disruption is intolerable. This challenge is exacerbated in the context of a System Under Evaluation (SUE) that operates within a resource-sharing environment, running concurrently with numerous other software components. In this article, we introduce an innovative toolset designed for predicting the performance of such complex and time-critical software systems. Our toolset builds upon the RAST (Regression Analysis, Simulation, and load Testing) approach, significantly enhanced in this article compared with its initial version. While current state-of-the-art methods for performance prediction often rely on data collected by Application Performance Monitoring (APM), the unavailability of APM tools for existing systems and the complexities associated with integrating them into legacy software necessitate alternative approaches. Our toolset, therefore, utilizes readily accessible system request logs as a substitute for APM data. We describe the enhancements made to the original RAST approach, we outline the design and implementation of our RAST-based toolset, and we showcase its simulation accuracy and effectiveness using the publicly available TeaStore benchmarking system. To ensure the reproducibility of our experiments, we provide open access to our toolset’s implementation and the utilized TeaStore model.

Details about the publication

JournalACM Transactions on Modeling and Computer Simulation
Volume35
Issue3
Page range1-19
Article number20
StatusPublished
Release year2025
Language in which the publication is writtenEnglish
ConferenceACM SIGSIM-PADS Principles of Advanced Discrete Simulation, 24-26 Juni 2024, Atlanta, Georgia, United States
DOI10.1145/3673897
KeywordsPerformance prediction; regression analysis; simulation; load testing; real-time requirements; legacy systems; distributed systems

Authors from the University of Münster

Gorlatch, Sergei
Professorship of Practical Comupter Science (Prof. Gorlatch)
Institute of Computer Science
Liebig, Juri
Professorship of Practical Comupter Science (Prof. Gorlatch)
Institute of Computer Science