The Research Group is Moving!
During winter term 2021/22, we move to University of Bamberg. From Oct. 15, 2021, Fabian Beck holds a full professor position on Information Visualization.
New webpage of the research group: https://www.uni-bamberg.de/vis
Publications
Publications of the research group since 2016. For earlier publications, please visit Fabian Beck's Google Scholar or DBLP profile.
Type of Publication: Article in Collected Edition
Concern-driven Reporting of Software Performance Analysis Results
- Author(s):
- Okanović, Dušan; van Hoorn, André; Zorn, Christoph; Beck, Fabian; Ferme, Vincenzo; Walter, Jürgen
- Title of Anthology:
- Companion of the 2019 ACM/SPEC International Conference on Performance Engineering
- pages:
- 1-4
- Publisher:
- ACM
- Publication Date:
- 2019
- Digital Object Identifier (DOI):
- doi:10.1145/3302541.3313103
- Fulltext:
- Concern-driven Reporting of Software Performance Analysis Results (568 KB)
- Citation:
- Download BibTeX
Abstract
State-of-the-art approaches for reporting performance analysis results rely on charts providing insights on the performance of the system, often organized in dashboards. The insights are usually data-driven, i.e., not directly connected to the performance concern leading the users to execute the performance engineering activity, thus limiting the understandability of the provided result. A cause is that the data is presented without further explanations.
To solve this problem, we propose a concern-driven approach for reporting of performance evaluation results, shaped around a performance concern stated by a stakeholder and captured by state-of-the-art declarative performance engineering specifications. Starting from the available performance analysis, the approach automatically generates a customized performance report providing a chart- and natural-language-based answer to the concern. In this paper, we introduce the general concept of concern-driven performance analysis reporting and present a first prototype implementation of the approach. We envision that, by applying our approach, reports tailored to user concerns reduce the effort to analyze performance evaluation results.