Search-based test data generation approaches have come a long way over the past few years, but these approaches still have some limitations when it comes to exercising specific behavior for triggering particular kinds of faults (e.g., crashes or specific types of integration between classes/modules). In this thesis, we are investigating new fitness functions and evolutionary-based algorithms and techniques to tackle these limitations. We have defined multiple novel approaches for crash reproduction and class integration testing. Currently, we are still working on improving both crash reproduction and class integration testing.
Mon 26 OctDisplayed time zone: Lisbon change
Mon 26 Oct
Displayed time zone: Lisbon change
13:45 - 15:15 | Doctoral Symposium 2Doctoral Symposium at São João Chair(s): Ana Paiva Faculty of Engineering of the University of Porto, Shaukat Ali Simula Research Laboratory | ||
13:45 30mTalk | Panel 2: How to get your paper rejected? Doctoral Symposium Jeff Offutt George Mason University | ||
14:15 30mTalk | Well-informed Test Case Generation and Crash Reproduction Doctoral Symposium Pouria Derakhshanfar Delft University of Technology Link to publication DOI | ||
14:45 30mTalk | Anomaly Analyses to Guide Software Testing Activity Doctoral Symposium Allan Mori University of São Paulo - USP Link to publication DOI |