Testing Updated Apps by Adapting Learned Models

Author:

Ngo Chanh Duc1ORCID,Pastore Fabrizio2ORCID,Briand Lionel3ORCID

Affiliation:

1. SnT Centre for Security, Reliability and Trust, University of Luxembourg, Luxembourg, Luxembourg

2. Interdisciplinary Centre for Security, Reliability and Trust, University of Luxembourg, Luxembourg Luxembourg

3. School of EECS, University of Ottawa, Ottawa Canada and Lero SFI Centre for Software Research, University of Limerick, Limerick Ireland

Abstract

Although App updates are frequent and software engineers would like to verify updated features only, automated testing techniques verify entire Apps and are thus wasting resources. We present Continuous Adaptation of Learned Models (CALM) , an automated App testing approach that efficiently test App updates by adapting App models learned when automatically testing previous App versions. CALM focuses on functional testing. Since functional correctness can be mainly verified through the visual inspection of App screens, CALM minimizes the number of App screens to be visualized by software testers while maximizing the percentage of updated methods and instructions exercised. Our empirical evaluation shows that CALM exercises a significantly higher proportion of updated methods and instructions than six state-of-the-art approaches, for the same maximum number of App screens to be visually inspected. Further, in common update scenarios, where only a small fraction of methods are updated, CALM is even quicker to outperform all competing approaches in a more significant way.

Funder

Huawei Technologies Co., Ltd, China

NSERC Discovery and Canada Research Chair programs

Publisher

Association for Computing Machinery (ACM)

Reference54 articles.

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