Building AI Agents that actually work (Full Course)

Uploaded: 2026-03-17
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Professional description
This episode is a beginner-friendly crash course on AI agents. Remy Gasill explains the difference between chat models and autonomous agents, the agent loop (observe, think, act), and the four core components: LLM, loop, tools (MCP), and context. The video demonstrates building an executive assistant using local markdown files, connecting Gmail/Notion/Stripe via MCPs, creating memory and skills, and scheduling workflows to automate business tasks safely and iteratively.

Agent fundamentals: Defines chat vs agent (question→answer vs goal→result) and illustrates the agent loop in real demos.

Architecture & harnesses: Covers LLMs, agent loops, tool connections via MCP, and the role of agent harness platforms (Claude Code, Codeex, OpenClaw, etc.).

Onboarding & memory: Shows agents.md (system context), memory.md (persistent preferences), security scoping, and local markdown as the canonical workspace.

Skills & automation: Describes skills as SOPs for AI, how to create/package them, chain and schedule tasks, and examples like daily briefs and ad analysis.

Quotes:

Chat is question to answer; agent is goal to result.

Skills are SOPs for AI: explain once, never explain again.

Everyone’s going to have an AI operating system.

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Upload date:2026-03-17
Likes:6361
Comments:262
Statistics updated:2026-04-16

Specification: Building AI Agents that actually work (Full Course)

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Building AI Agents that actually work (Full Course)
Building AI Agents that actually work (Full Course)