Learn from the Testing Experts
21st November, 2025
MANILA
Featured Speaker
Agentic AI for Testing: From Static Scripts to Autonomous Quality Engineers
As software systems grow in complexity and release cycles accelerate, traditional testing approaches struggle to keep up.
Enter Agentic AI — a new frontier where autonomous, goal-driven agents perform testing tasks with minimal human intervention.
In this talk, we’ll explore how Agentic AI is reshaping the software testing landscape, allowing for dynamic, intelligent, and context-aware testing strategies that are adaptive, continuous, and strategically aligned with business outcomes.
Takeaways from this talk
- What is Agentic AI (in the context of testing)?
We’ll define Agentic AI and differentiate it from conventional AI/ML testing tools. You’ll learn how agentic systems:
- Types of Testing Agents in Practice Today
Explore real-world agentic testing agents including:
Exploratory Testing Agents – autonomously explore UI/UX paths using LLMs
Test Case Generation Agents – generate and prioritize test cases from specs, user stories, or code
Bug Reproduction & Triage Agents – read logs, understand failure patterns, and recreate issues
Security Agents – mimic adversarial behavior for penetration testing and vulnerability exploration
Self-healing Test Agents – maintain flaky tests or repair broken test scripts automatically
- State of the Art: Tools & Platforms
We’ll review key tools and platforms driving agentic testing forward, such as:
Diffblue (for code-level test generation with AI)
AutonomIQ (now Sauce Labs) – for autonomous test generation and maintenance
TestGPT / ChatGPT Code Interpreters – leveraged for LLM-assisted bug diagnosis
ReTest, Cerberus Testing, and OpenAgents – open-source projects advancing multi-agent testing environments
Google’s internal agentic prototypes that assist SREs with automated incident triage and rollback decisions
- How Are Organizations Using Agentic AI for Testing?
We’ll walk through real use cases from early adopters:
- When and When Not to Use Agentic AI in Testing
Data sensitivity and hallucination risks with LLM agents
Scalability and observability challenges for long-running agents
Situations where deterministic automation still outperforms agents (e.g., compliance audit trails)
Best practices to pair agents with human testers in hybrid testing strategies
- The Future: From Testers to Test Orchestrators
We’ll close by discussing where this is headed — including agent orchestration platforms, continuous learning from production, and integration with DevOps observability tools — and how testers will evolve into supervisors and strategists in an agent-powered ecosystem.