Building AI agents that truly work in practice is no small feat. In this session, we’ll explore both sides of the challenge: how to design and develop agents that are effective and reliable, and how to secure them from the very beginning of the development process.
We’ll break down the core difficulties of building agentic systems - compound errors, business context, and performance trade-offs - and present a framework for structuring, planning, and evaluating agents. At the same time, we’ll examine the unique risks that surface during design and development, from architectural vulnerabilities to manipulation strategies, and demonstrate how to weave security directly into the lifecycle of agent creation.
Together, we’ll show how to move beyond theory to practice - building AI agents that are powerful, dependable, and resilient by design.