What if you could optimize your prompts the way you optimize model weights — with a loss function, an optimizer, and an iterative loop?
This talk presents a practical methodology for agentic prompt optimization: using an LLM as an optimizer to iteratively improve system prompts against a test suite, treating prompt text as a tunable parameter rather than a static artifact.