Building Agentic AI Workloads - Crash Course

Building Agentic AI Workloads - Crash Course

freeCodeCamp.org via freeCodeCamp Direct link

- A Brief History of Artificial Intelligence 1940s–Present

2 of 34

2 of 34

- A Brief History of Artificial Intelligence 1940s–Present

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Classroom Contents

Building Agentic AI Workloads - Crash Course

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  1. 1 - Introduction and Speaker Background
  2. 2 - A Brief History of Artificial Intelligence 1940s–Present
  3. 3 - Traditional Machine Learning vs. Generative AI
  4. 4 - The Three Pillars of AI: Algorithms, Data, and Compute
  5. 5 - Specific Tasks vs. General Task Execution
  6. 6 - Defining Agency and the Spectrum of Autonomy
  7. 7 - Agentic Milestone Timeline 2017–2026
  8. 8 - What is a Generative AI Agent?
  9. 9 - Agents vs. Workflows: Dynamic Flow vs. Static Paths
  10. 10 - Pros and Cons of Agentic Systems
  11. 11 - Patterns and Anti-patterns: When to Use Agents
  12. 12 - The Core Components of an Agent
  13. 13 - Choosing the Right LLM for Your Agent
  14. 14 - Crafting Identity with System Prompts
  15. 15 - Understanding Memory: Intrinsic, Short-term, and Long-term
  16. 16 - Enhancing Capabilities with Tools and Actions
  17. 17 - Hands-on Implementation: From Single LLM Call to Python Agent
  18. 18 - Adding Memory and History to Your Custom Agent
  19. 19 - Building Agents with Frameworks LangChain
  20. 20 - The Evolving Landscape of Models and Frameworks
  21. 21 - Agentic Architectural Patterns: Supervisor vs. Swarm
  22. 22 - Case Study: Single Agent vs. Supervisor Architecture
  23. 23 - Deep Dive: Swarm Architecture Performance
  24. 24 - When to Choose Multi-agent Systems
  25. 25 - Interface Protocols: MCP, A2A, and AGUI
  26. 26 - How to Evaluate Agentic Systems LLM vs. System vs. App
  27. 27 - Evaluation Methods: Code-based, LLM-as-a-Judge, and Human
  28. 28 - Current Challenges: Hallucinations, Cost, and Debugging
  29. 29 - Real-world Incidents and the AI Incident Database
  30. 30 - Career Impact: Which Jobs are Most at Risk?
  31. 31 - Software 3.0: The Evolution of Development Paradigms
  32. 32 - Weathering the Storm: Strategies for the Future
  33. 33 - Beyond LLMs: World Models and the Future of AMI
  34. 34 - Recommended Resources and Closing Thoughts

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