Automated Soap Opera Testing Directed by LLMs and Scenario Knowledge: Feasibility, Challenges, and Road Ahead
Exploratory testing (ET) harnesses tester’s knowledge, creativity, and experience to create varying tests that uncover unexpected bugs from the end-user’s perspective. Although ET has proven effective in system-level testing of interactive systems, the need for manual execution, has hindered large-scale adoption. In this work, we explore the feasibility, challenges and road ahead of automated scenario-based ET (a.k.a soap opera testing). We conduct a formative study, identifying key insights for effective manual soap opera testing and challenges in automating the process. We then develop a multi-agent system leveraging LLMs and a Scenario Knowledge Graph (SKG) to automate soap opera testing. The system consists of three multi-modal agents, Planner, Player, and Detector that collaborate to execute tests and identify potential bugs. Experimental results demonstrate the potential of automated soap opera testing, but there remains a significant gap compared to manual execution, especially under-explored scenario boundaries and incorrectly identified bugs. Based on the observation, we envision road ahead for the future of automated soap opera testing, focusing on three key aspects: the synergy of neural and symbolic approaches, human-AI co-learning, and the integration of soap opera testing with broader software engineering practices. These insights aim to guide and inspire the future research.
Mon 23 JunDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
14:00 - 15:20 | Testing 1Journal First / Industry Papers / Research Papers at Aurora B Chair(s): Jialun Cao Hong Kong University of Science and Technology | ||
14:00 20mTalk | Automated Soap Opera Testing Directed by LLMs and Scenario Knowledge: Feasibility, Challenges, and Road Ahead Research Papers Yanqi Su Australian National University, Zhenchang Xing CSIRO's Data61, Chong Wang Nanyang Technological University, Chunyang Chen TU Munich, Xiwei (Sherry) Xu Data61, CSIRO, Qinghua Lu Data61, CSIRO, Liming Zhu CSIRO’s Data61 DOI | ||
14:20 20mTalk | Automated Test Case Repair Using Language Models Journal First Ahmadreza Saboor Yaraghi University of Ottawa, Darren Holden Carleton University, Nafiseh Kahani Carleton University, Lionel Briand University of Ottawa, Canada; Lero centre, University of Limerick, Ireland | ||
14:40 20mTalk | TestGPT-Server: Automatically Testing Microservices with Large Language Models at ByteDance Industry Papers Jue Wang ByteDance, Shuxiang Chen ByteDance, Yu Liu ByteDance, Yuan Deng ByteDance, Lei Zhang ByteDance, Yuanchang Fu ByteDance, Bo Liu ByteDance | ||
15:00 20mTalk | LTM: Scalable and Black-Box Similarity-Based Test Suite Minimization Based on Language Models Journal First RONGQI PAN University of Ottawa, Taher A Ghaleb Trent University, Lionel Briand University of Ottawa, Canada; Lero centre, University of Limerick, Ireland |
Aurora B is the second room in the Aurora wing.
When facing the main Cosmos Hall, access to the Aurora wing is on the right, close to the side entrance of the hotel.