QoS Monitoring Data Set

From Scube-casestudies
Revision as of 14:29, 2 April 2012 by Leitner (talk | contribs) (Created page with "This page serves as an appendix to the short paper '''A Monitoring Data Set for Evaluating QoS-Aware Service-Based Systems''', to appear at the 4th International Workshop on P...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to: navigation, search

This page serves as an appendix to the short paper A Monitoring Data Set for Evaluating QoS-Aware Service-Based Systems, to appear at the 4th International Workshop on Principles of Engineering Service-Oriented Systems (http://www.s-cube-network.eu/pesos-2012). The paper describes a data set of monitoring data, which we envision to be used to evaluate upcoming work in the area of QoS and SLA prediction for composed services and service-based applications.

The data set has originally been used in the evaluation of a contribution to IEEE Transactions on Services Computing:

Leitner, P.; Hummer, W.; Dustdar, S.; , Cost-Based Optimization of Service Compositions IEEE Transactions on Services Computing , forthcoming. doi: 10.1109/TSC.2011.53 URL: http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=6072201&isnumber=4629387

Description

This artifact is an extensive set of monitoring data, measured from a running sample service composition. The example application has been implemented using .NET Windows Communication Foundation (WCF) technology, and was deployed on a server running Windows 2007 SP2 (64 bit). The server machine was equipped with 2 2.99GHz Xeon X5450 processors and 32 GByte RAM. A graphical screen shot (in Windows Workflow Foundation notation) of the monitored service composition can be found here: http://www.infosys.tuwien.ac.at/prototypes/VRESCo/workflow.jpg.

Basic technology

The data set has been generated using Windows Workflow Foundation, Windows Communication Foundation and the VRESCo research prototype (see here: https://www.infosys.tuwien.ac.at/prototypes/VRESCo/). The data itself is formatted in the ARFF format of the WEKA machine learning toolkit (http://www.cs.waikato.ac.nz/ml/weka/arff.html), to ease analyzing the data with WEKA.

How to install

N/A

How to use

Download

URL where to download the package

Additional info

Link to papers or technical reports that could be useful to understand and use the artifact

Related case study

In case your artifact is directly related to one or more the case studies included in this repository, please put here a link to these case studies. For instance, if the artifact implements the scenario described in the "Automotive Case Study" then add a link to the page http://scube-casestudies.ws.dei.polimi.it/index.php/Automotive_Case_Study