Java Microbenchmark Harness ( JMH ) is the de facto standard framework for developing Java microbenchmarks-used to assess the performance of small code segments. A central challenge in microbenchmark design is determining the number of warm-up iterations required to reach steady-state execution: too few lead to inaccurate results, while too many introduce unnecessary overhead. This paper extends our previous contribution by providing a more detailed description of AMBER, an AI-enabled JMH extension that utilizes Time Series Classification to detect steady-state behavior at run-time and dynamically terminate warm-up iterations.

AMBER: An AI-enabled Java Microbenchmark Harness Extension to Dynamically Terminate Warm-up Iterations

Trovato A.;Di Nucci D.
2026

Abstract

Java Microbenchmark Harness ( JMH ) is the de facto standard framework for developing Java microbenchmarks-used to assess the performance of small code segments. A central challenge in microbenchmark design is determining the number of warm-up iterations required to reach steady-state execution: too few lead to inaccurate results, while too many introduce unnecessary overhead. This paper extends our previous contribution by providing a more detailed description of AMBER, an AI-enabled JMH extension that utilizes Time Series Classification to detect steady-state behavior at run-time and dynamically terminate warm-up iterations.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11386/4941455
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