Gemini Capstone Project
This course provides an in-depth exploration of advanced AI agent development, focusing on function calling, tool integration, and orchestrating complex tasks. You will learn to define custom functions to extend the capabilities of large language models, architecting autonomous systems that combine built-in tools and structured output. The curriculum covers the entire lifecycle of a sophisticated AI application, from designing robust conversation flows with error handling to analyzing the economics of token usage. By the end of this course, you will be able to:
- Build multi-capability systems that combine custom functions, built-in tools, and intelligent model selection.
- Define and integrate custom function schemas to allow your AI to interact with external data and services.
- Create reliable, multi-step agent behaviors with proper asynchronous handling and security best practices.
- Monitor token usage and project costs to ensure sustainable and cost-effective application scaling.
- Launch your final AI application rapidly using Google Cloud Run integration for professional-grade hosting.
Watch on External: Coursera ↗
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