Data for: Scalable and Live Trace Processing with Kieker Utilizing Cloud Computing

Fittkau, Florian, Waller, Jan, Brauer, Peer Christoph and Hasselbring, Wilhelm (2013) Data for: Scalable and Live Trace Processing with Kieker Utilizing Cloud Computing ZENODO.

Full text not available from this repository. (Contact)

Supplementary data:

Abstract

Knowledge of the internal behavior of applications often gets lost over the years. This circumstance can arise, for example, from missing documentation. Application-level monitoring, e.g., provided by Kieker, can help with the comprehension of such internal behavior. However, it can have large impact on the performance of the monitored system. High-throughput processing of traces is required by projects where millions of events per second must be processed live. In the cloud, such processing requires scaling by the number of instances.

In this paper, we present our performance tunings conducted on the basis of the Kieker monitoring framework to support high-throughput and live analysis of application-level traces. Furthermore, we illustrate how our tuned version of Kieker can be used to provide scalable trace processing in the cloud.

This is the dataset containing the results of our conducted benchmarks.

Document Type: Other
Keywords: ExplorViz, Kieker, Trace Processing
Research affiliation: Kiel University > Faculty of Engineering > Department of Computer Science > Software Engineering
Kiel University > Kiel Marine Science
DOI etc.: 10.5281/zenodo.7622
Related URLs:
Projects: ExplorViz, Kieker
Date Deposited: 11 Dec 2013 13:27
Last Modified: 16 Jun 2014 10:39
URI: http://eprints.uni-kiel.de/id/eprint/22646

Actions (login required)

View Item View Item