Stay updated daily with trending AI research
7 days free trialPick your own topicsAutomated AI summaries

AI Agents for Web Testing: A Case Study in the Wild

arXiv:2509.05197 - [arXivPDF]
13
Abstract
Automated web testing plays a critical role in ensuring high-quality user experiences and delivering business value. Traditional approaches primarily focus on code coverage and load testing, but often fall short of capturing complex user behaviors, leaving many usability issues undetected. The emergence of large language models (LLM) and AI agents opens new possibilities for web testing by enabling human-like interaction with websites and a general awareness of common usability problems. In this work, we present WebProber, a prototype AI agent-based web testing framework. Given a URL, WebProber autonomously explores the website, simulating real user interactions, identifying bugs and usability issues, and producing a human-readable report. We evaluate WebProber through a case study of 120 academic personal websites, where it uncovered 29 usability issues--many of which were missed by traditional tools. Our findings highlight agent-based testing as a promising direction while outlining directions for developing next-generation, user-centered testing frameworks.
13
Sign up to continue reading AI summary
Stay updated on the latest trending research with our newsletter. Never miss a release date!
Sign Up
© 2025 Adaptive Plus Inc.1216 Broadway, Suite 213,575 Market Str, San Francisco, CA