Learn to build deterministic AI agents using the Model Context Protocol (MCP) and structured quality metrics for repeatable, verifiable outputs. You will explore PMAT as a quality assessment tool for software projects, applying lean manufacturing principles from the Toyota Way including continuous improvement and waste elimination to software quality engineering. The course covers the certainty-scope tradeoff for balancing test coverage and confidence, finite state machine models for deterministic agent behavior, and MCP protocol architecture for structured agent-tool communication. You will analyze survivorship bias in programming language popularity rankings and apply six essential quality metrics for comprehensive project assessment and automated scoring. The testing module covers six essential test types for agent validation, property-based testing for verifying behavioral invariants, and fuzz testing for discovering edge cases using agentic AI. You will use Claude Code as an MCP client integrated with PMAT for automated quality analysis and walk through real-world project examples demonstrating quality scoring across multiple codebases. By completing this course, you will be able to design deterministic agent systems using MCP, apply comprehensive quality metrics with PMAT, and implement property and fuzz testing strategies for robust agent validation.

Building deterministic MCP Agents
本课程是 AI Tooling 专项课程 的一部分


位教师:Alfredo Deza
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您将学到什么
Apply lean manufacturing principles and PMAT quality assessment to software projects, analyzing the certainty-scope tradeoff
Implement comprehensive testing strategies using six essential test types, property-based testing for behavioral invariants
Evaluate real-world project quality using Claude Code as an MCP client integrated with PMAT for automated scoring across multiple quality dimensions
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3 项作业
授课语言:英语(English)
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April 2026
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