Agentic property-based testing: finding bugs across the Python ecosystem
Details
Registration Instructions
This is a paid event ($5 general admission, free for students & job seekers) with limited tickets - you must RSVP on Luma to secure your spot.
Event Description
Testing software for bugs and vulnerabilities is typically difficult as it requires the developer to think through edge cases.
In this talk, Muhammad Maaz will present work on using LLM-based agents and Hypothesis, a property-based testing framework, to automatically generate and test general properties of code.
Event Schedule
6:00 to 6:30 - Food & introductions
6:30 to 7:30 - Presentation & Q&A
7:30 to 9:00 - Open discussion
If you can't attend in person, join our live stream starting at 6:30 pm via this link.
This is part of our weekly AI Safety Thursdays series. Join us in examining questions like:
- How do we ensure AI systems are aligned with human interests?
- How do we measure and mitigate potential risks from advanced AI systems?
- What does safer AI development look like?
