Sciweavers

COR
2008

Observations in using parallel and sequential evolutionary algorithms for automatic software testing

13 years 4 months ago
Observations in using parallel and sequential evolutionary algorithms for automatic software testing
In this paper we analyze the application of parallel and sequential evolutionary algorithms (EAs) to the automatic test data generation problem. The problem consists of automatically creating a set of input data to test a program. This is a fundamental step in software development and a time consuming task in existing software companies. Canonical sequential EAs have been used in the past for this task. We explore here the use of parallel EAs. Evidence of greater efficiency, larger diversity maintenance, additional availability of memory/CPU, and multi-solution capabilities of the parallel approach, reinforce the importance of the advances in research with these algorithms. We describe in this work how canonical genetic algorithms (GAs) and evolutionary strategies (ESs) can help in software testing, and what the advantages are (if any) of using decentralized populations in these techniques. In addition, we study the influence of some parameters of the proposed test data generator in t...
Enrique Alba, J. Francisco Chicano
Added 09 Dec 2010
Updated 09 Dec 2010
Type Journal
Year 2008
Where COR
Authors Enrique Alba, J. Francisco Chicano
Comments (0)