作者
Pooyan Jamshidi, Norbert Siegmund, Miguel Velez, Christian Kästner, Akshay Patel, Yuvraj Agarwal
发表日期
2017/10/30
研讨会论文
2017 32nd IEEE/ACM International Conference on Automated Software Engineering (ASE)
页码范围
497-508
出版商
IEEE
简介
Modern software systems provide many configuration options which significantly influence their non-functional properties. To understand and predict the effect of configuration options, several sampling and learning strategies have been proposed, albeit often with significant cost to cover the highly dimensional configuration space. Recently, transfer learning has been applied to reduce the effort of constructing performance models by transferring knowledge about performance behavior across environments. While this line of research is promising to learn more accurate models at a lower cost, it is unclear why and when transfer learning works for performance modeling. To shed light on when it is beneficial to apply transfer learning, we conducted an empirical study on four popular software systems, varying software configurations and environmental conditions, such as hardware, workload, and software versions, to …
引用总数
20172018201920202021202220232024110232320182415
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P Jamshidi, N Siegmund, M Velez, C Kästner, A Patel… - 2017 32nd IEEE/ACM International Conference on …, 2017