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Harness Engineering Masterclass: AI Coding Agents
DevelopmentData Science

Harness Engineering Masterclass: AI Coding Agents

AI Agents & Agentic AI
✅ What You'll Learn
  • Build and manage AI coding agents using Claude Code, OpenAI Codex CLI, Gemini CLI, and other modern AI development tools.
  • Master Harness Engineering principles, including agent architecture, execution environments, context management, and production workflows.
  • Apply Context Engineering and Prompt Engineering techniques to improve the accuracy, reliability, and efficiency of AI coding agents.
  • Understand the complete agentic execution loop, including planning, tool calling, execution, verification, reflection, and retry strategies.
  • Configure and optimize AI coding environments using project rules, memory, permissions, hooks, skills, and reusable workflows.
  • Build integrations with the Model Context Protocol (MCP) to connect AI agents with external tools, databases, browsers, Git repositories, and enterprise service
  • Design and orchestrate multi-agent systems where specialized AI agents collaborate on planning, development, testing, documentation, and security tasks.
  • Implement secure AI development workflows using permissions, sandboxing, approval systems, and operational guardrails.
  • Build production-ready AI harnesses with logging, observability, tracing, debugging, metrics, and automation best practices.
✅ Requirements
  • No prior experience with Harness Engineering or AI coding agents is required. Everything is explained step by step.
  • A basic understanding of software development or programming concepts is helpful but not mandatory.
  • A computer running Windows, macOS, or Linux with internet access.
  • Willingness to install and experiment with AI development tools such as Claude Code, OpenAI Codex CLI, and Gemini CLI.
  • A code editor or IDE, such as Visual Studio Code, is recommended for the hands-on exercises.
👥 Who This Course Is For
  • Software engineers who want to accelerate development using modern AI coding agents and production-ready AI workflows.
  • AI engineers and machine learning practitioners looking to understand how harnesses, context engineering, MCP, and multi-agent systems work in real-world applications.
  • Backend, frontend, and full-stack developers who want to integrate AI assistants into their daily development process.
  • DevOps, platform, and infrastructure engineers interested in building secure, automated, and observable AI-powered engineering workflows.
  • Technical leads, engineering managers, and architects who want to evaluate, adopt, and scale AI coding agents across engineering teams.
  • Developers using Claude Code, OpenAI Codex CLI, Gemini CLI, Cursor, Cline, Aider, Windsurf, or similar AI coding tools who want to unlock their full capabilities.
  • Computer science students and aspiring AI engineers who want to build practical, in-demand skills in AI-assisted software development.
📚 Course Description

“This course contains the use of artificial intelligence”

Welcome to Harness Engineering Masterclass: AI Coding Agents, a comprehensive, hands-on course designed to teach you how modern AI coding agents actually work and how to build reliable, production-ready development workflows around them. While many courses focus on prompting, this course goes much deeper by exploring the architecture, execution model, and engineering principles behind autonomous coding systems. You'll learn how Claude Code, OpenAI Codex CLI, Gemini CLI, and other modern AI development tools reason about problems, manage context, execute tools, edit repositories, and collaborate to solve complex software engineering tasks.

We begin by exploring the evolution of software development, from traditional programming to today's agentic AI era. You'll understand the differences between large language models (LLMs) and AI agents, discover the agentic execution loop, and learn why Harness Engineering has become one of the most important skills for AI-powered software development. You'll also compare leading AI coding tools including Claude Code, Codex CLI, Gemini CLI, Cursor, Cline, Aider, Windsurf, and OpenCode, learning where each excels and how to select the right tool for different engineering challenges.

As the course progresses, you'll build a strong foundation in Harness Engineering Fundamentals, including execution environments, context management, runtime architecture, control planes, data planes, and the complete AI agent lifecycle. You'll gain a deep understanding of how coding agents collect repository context, plan tasks, select tools, execute commands, verify results, recover from failures, and continuously improve their outputs through reflection and iterative reasoning.

The course includes extensive deep dives into Claude Code, OpenAI Codex CLI, and Gemini CLI. You'll learn how to install and configure each platform, understand their internal architecture, and establish effective project rules, coding standards, reusable workflows, and engineering best practices that improve consistency across individual and team development environments.

A major focus of the course is Context Engineering, one of the most critical disciplines in modern AI software development. You'll learn how to optimize context windows, prioritize relevant information, compress large repositories, manage project memory, retrieve important files, and provide agents with exactly the information they need to produce accurate, efficient, and maintainable code. You'll also explore persistent memory, repository memory, session memory, and team-wide knowledge sharing strategies.

You'll master Prompt Engineering for Coding Agents, learning how to write clear objectives, define acceptance criteria, establish constraints, decompose large engineering tasks, and create reusable prompt templates that consistently generate higher-quality code. Rather than relying on trial and error, you'll learn structured techniques for guiding AI agents through complex engineering problems with predictable and reliable results.

Beyond prompting, you'll explore tool calling, command execution, Git integration, file editing, web access, search tools, IDE integration, and secure automation workflows. You'll understand how permission systems, approval workflows, sandboxing, validation, and human oversight enable AI agents to safely interact with production codebases while minimizing operational risk.

One of the highlights of the course is an in-depth exploration of the Model Context Protocol (MCP). You'll learn why MCP was created, how MCP clients, MCP servers, resources, tools, and prompts work together, and how to integrate AI agents with external systems such as GitHub, Jira, databases, Slack, browser automation, and custom enterprise services. By the end of this section, you'll understand how MCP enables standardized communication between AI agents and real-world software ecosystems.

You'll also build practical automation systems using Hooks, Skills, slash commands, reusable workflows, project templates, validation pipelines, Git automation, and team productivity techniques. These concepts help transform AI assistants into repeatable engineering systems capable of handling complex development workflows with minimal manual intervention.

The course then expands into Multi-Agent Engineering, where you'll learn how specialized AI agents collaborate to solve larger software projects. You'll design systems using Planner Agents, Developer Agents, Reviewer Agents, Tester Agents, Documentation Agents, and Security Agents, while learning techniques for delegation, shared context, communication, parallel execution, workflow orchestration, conflict resolution, and coordinated software delivery.

Finally, you'll bring everything together by learning Production Harness Engineering. You'll explore repository organization, engineering standards, automation pipelines, guardrails, logging, observability, tracing, debugging, replay systems, metrics, error handling, and operational best practices required to deploy reliable AI-assisted development workflows in professional environments.

Throughout the course, you'll complete practical demonstrations, real-world examples, and hands-on exercises that reinforce every major concept. By the end, you'll possess a deep understanding of Harness Engineering, AI Coding Agents, Claude Code, OpenAI Codex CLI, Gemini CLI, MCP, Context Engineering, Prompt Engineering, Multi-Agent Systems, and Production AI Development. Whether you're a software engineer, AI engineer, DevOps professional, technical lead, or technology enthusiast, this course will provide the knowledge and practical skills needed to build, customize, and deploy modern AI-powered software engineering systems with confidence.

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