Projects per year
Abstract
The prediction of failures and other mission-critical
events plays an important role in operating today’s
software systems and has drawn the attention of many
researchers. Event prediction is particularly challenging if multiple systems are involved. In this paper, we
thus present an event prediction model which utilizes
time series monitoring data from multiple software
systems to predict performance events. Our approach
incorporates a comprehensive, multi-system data preprocessing framework for creating various feature vector sets, which we then use to train a random forest
classifier to evaluate our multi-system event prediction. Our preliminary evaluation based on data from
monitoring 250 systems over a period of 20 days shows
promising results.
| Original language | English |
|---|---|
| Title of host publication | Proceedings 9th Symposium on Software Performance (SSP 2018) |
| Pages | 1-3 |
| Number of pages | 3 |
| Publication status | Published - 2018 |
Fields of science
- 102 Computer Sciences
- 102022 Software development
- 102025 Distributed systems
JKU Focus areas
- Computation in Informatics and Mathematics
- Engineering and Natural Sciences (in general)
Projects
- 2 Finished
-
Application Performance Management (M03)
Bitto, V. (Researcher), Chalupar, P. (Researcher), Gnedt, D. (Researcher), Hofer, P. (Researcher), Kahlhofer, M. (Researcher), Lengauer, P. (Researcher), Makor, L. (Researcher), Schörgenhumer, A. (Researcher), Weninger, M. (Researcher) & Grünbacher, P. (PI)
01.02.2013 → 31.08.2020
Project: Funded research › Other sponsors
-
Christian Doppler Labor für Monitoring and Evolution of Very-Large-Scale Software Systems
Grünbacher, P. (PI)
01.02.2013 → 31.08.2020
Project: Funded research › Other mainly public funds