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AI Agents Full Course 59 Minutes (for beginners)

AI Agents Full Course 59 Minutes (for beginners)

Published 7 hours ago
Description

I sit down with Remy Gaskell to break down how anyone can build AI agents to run entire departments of their business. Remy walks through the core concepts: agent loops, context files, memory, MCP tool connections, and skills. We put everything together by building a fully functional executive assistant live on screen. This is a beginner-friendly crash course that covers Claude Code, Codex, Cowork, Antigravity, Manus, and OpenClaw, showing that once you understand how to "drive," you can jump into any agent platform. By the end, listeners know exactly how to set up markdown-based context files, connect their everyday tools, and create reusable skills that compound over weeks and months.

Timestamps

00:00 – Intro

01:35 – Agents vs Chat

03:22 – The Agent Loop

05:46 – How Agents work

06:39 – Demoing Agents (Claude Code, Codex, Antigravity)

08:52 – Security and Agent Permissions

10:43 – Comparing Results Across Three Platforms

13:57 – Startup Idea: Cold Email Website Offer

14:50 – Folder Structure and Department-Based Agents

15:52 – Onboarding an Agent Like a Real Employee

17:05 – Voice-to-Text With Monologue and WhisperFlow

18:04 – Chat Memory vs. Agent Memory

19:34 – Building the agents md

22:20 – Context Engineering Over Prompt Engineering

24:29 – How Memory Compounds and Reduces Errors

30:27 – How Big Can memory md Get?

31:43 – Connecting Tools via MCP (Model Context Protocol)

34:49 – Working in Claude Code for High-Value Tasks

37:09 – Why the Real Value Is in Stacking, Not Summarizing

40:04 – What Are Skills? (SOPs for AI)

43:08 – Creating Skills

48:36 – Real-World Example: Ads Analyst Skill: 4-Hour Process in Minutes

50:37 – Chaining Skills together

52:01 – Real-World Example: Automated Car Search

53:34 – OpenClaw and Migrating Agents to More Autonomous Platforms

55:19 – Which Platform Should Beginners Start With?

56:28 – Global vs. Project-Level Skills, Context, and MCPs

Key Points

  • Agent platforms (Claude Code, Codex, Cowork, Antigravity, Manus, OpenClaw) are all running the same observe-think-act loop under the hood — learning one means you can use any of them.

  • The shift from chat to agents requires moving from prompt engineering to context engineering: load the agent with rich context so simple prompts produce excellent results.

  • A memory md file creates a self-improving loop where the agent learns preferences across sessions and makes fewer errors over time.

  • MCP (Model Context Protocol), built by Anthropic, acts as a universal translator between your agent and every tool it needs — Gmail, Calendar, Stripe, Notion, and more.

  • Skills are reusable SOPs packaged as markdown files; once you explain a process once, you can invoke it repeatedly, and they compound as you add three to five per week.

  • Scheduled tasks turn skills into automated workflows — morning briefs, car searches, ad library analyses — that run on a cron without any

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