Title :
A Novel Industry Grade Dataset for Fault Prediction Based on Model-Driven Developed Automotive Embedded Software
Author :
Altinger, Harald ; Siegl, Sebastian ; Dajsuren, Yanja ; Wotawa, Franz
Author_Institution :
Audi Electron. Venture GmbH, Gaimersheim, Germany
Abstract :
In this paper, we present a novel industry dataset on static software and change metrics for Matlab/Simulink models and their corresponding auto-generated C source code. The data set comprises data of three automotive projects developed and tested accordingly to industry standards and restrictive software development guidelines. We present some background information of the projects, the development process and the issue tracking as well as the creation steps of the dataset and the used tools during development. A specific highlight of the dataset is a low measurement error on change metrics because of the used issue tracking and commit policies.
Keywords :
C language; automobile industry; automotive engineering; embedded systems; fault diagnosis; software metrics; source code (software); Matlab model; Simulink model; autogenerated C source code; automotive projects; change metrics; commit policies; development process; fault prediction; industry grade dataset; industry standards; issue tracking; measurement error; model-driven developed automotive embedded software; restrictive software development guidelines; static software; Automotive engineering; Computer bugs; Industries; Measurement; Software packages; Testing; automotive; fault prediction; industry dataset; model metrics; source metrics;
Conference_Titel :
Mining Software Repositories (MSR), 2015 IEEE/ACM 12th Working Conference on
Conference_Location :
Florence
DOI :
10.1109/MSR.2015.72