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Context Window: An AI Agent’s Working Memory & the Lost-in-the-Middle Problem

Lesson 12

Context Window: An AI Agent’s Working Memory & the Lost-in-the-Middle Problem

The context window is the amount of information an AI agent can remember and process at one time. When too much information is added, important details in the middle can get ignored or forgotten — a limitation known as the “lost-in-the-middle” problem.

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Curriculum

21 lessons · 1h 24m

0/21 lessons done1h 24m left
  1. 0104:15

    Why an AI Agent Is More Than a Chatbot

    04:15

  2. 0203:57

    LLM Brain vs Agent Body

    03:57

  3. 0304:14

    AI Autonomy Levels: Copilot to Fully Autonomous Agent

    04:14

  4. 0404:27

    The AI Agent Loop: Observe, Think, Act, Reflect

    04:27

  5. 0503:38

    When to Use AI Agents vs When They’re Overkill

    03:38

  6. 0603:53

    ReAct: The Reason-and-Act Framework Behind Modern AI Agents

    03:53

  7. 0704:14

    Tool Calling: How an LLM Chooses the Right Action

    04:14

  8. 0804:01

    Function Schemas: Teaching AI Models What Tools They Can Use

    04:01

  9. 0904:00

    AI Planning: Breaking Big Goals Into Actionable Steps

    04:00

  10. 1003:53

    AI Reflection: Self-Checking Before Responding

    03:53

  11. 1103:47

    Chain-of-Thought vs Scratchpad Reasoning in AI Agents

    03:47

  12. 03:40

    Context Window: An AI Agent’s Working Memory & the Lost-in-the-Middle Problem

    03:40

  13. 1303:54

    Short-Term vs Long-Term Memory in AI Agents

    03:54

  14. 1403:45

    RAG: Giving AI Agents Knowledge Without Retraining the Model

    03:45

  15. 1503:33

    Agentic RAG: AI Agents That Decide What to Retrieve and When

    03:33

  16. 1603:46

    Agent State: The Memory Layer Behind Production-Ready AI Agents

    03:46

  17. 1704:04

    MCP: The Universal Connector for AI Tools and Agents

    04:04

  18. 1803:30

    Why MCP at the Linux Foundation Reshaped AI Frameworks in 2026

    03:30

  19. 1903:49

    Structured Outputs: When AI Must Return JSON Instead of Text

    03:49

  20. 2004:40

    AI Sandboxes: Safe Environments for Agents to Run Code and Tasks

    04:40

  21. 2104:47

    Computer-Use Agents: AI That Operates Software Like a Human

    04:47