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מתחיל 4 June 2026 09:25

נגמר 4 June 2026

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Prompting for Effective LLM Reasoning and Planning

Master advanced prompting techniques to build sophisticated AI agents that reason, plan, and solve complex problems through Chain-of-Thought, ReAct, and feedback loops.
via Udacity

139 קורסים


13 hours

שדרוג אופציונלי זמין

Not Specified

התקדמות בקצב שלך

Paid Course

שדרוג אופציונלי זמין

סקירה כללית

Go beyond basic chatbots and learn to engineer sophisticated AI agents. Learn advanced prompting techniques that power modern AI.

You'll master Chain-of-Thought, ReAct, and feedback loops to build systems that can reason, plan, and solve complex problems. Through hands-on exercises, you will transform generic AI into specialized, reliable tools, culminating in building a multi-agent travel planner from scratch.

סילבוס

  • Introduction to Prompting for Effective LLM Reasoning and Planning
  • Introduces the core concepts of Agentic AI, the course structure, prerequisites, and learning environment.
  • The Role of Prompting in Agentic AI with Python and OpenAI
  • Learn what AI Agents are and how they work. Understand the critical role prompting plays in guiding them to reason, plan, and act to achieve goals.
  • Role-Based Prompting
  • Explains the theory of using roles or personas to control the tone, style, and expertise of an LLM's output.
  • Implementing Role-Based Prompting with Python
  • Provides hands-on practice in iteratively developing a role-based prompt to create a believable historical figure persona.
  • Chain-of-Thought and ReACT Prompting
  • Explains the conceptual frameworks for Chain-of-Thought (CoT) for guided reasoning and ReAct (Reason+Act) for enabling agents to plan and take actions.
  • Applying COT and ReACT Prompting with Python
  • Provides hands-on practice implementing both CoT and ReAct prompts to solve a retail analytics problem.
  • Prompt Instruction Refinement
  • Explains the theory of systematically refining prompt instructions by modifying components like Role, Task, Context, Examples, and Output Format.
  • Applying Prompt Instruction Refinement with Python
  • Provides hands-on practice iteratively refining a prompt to transform a generic recipe analyzer into a precise dietary consultant that produces structured JSON.
  • Chaining Prompts for Agentic Reasoning
  • Explains the conceptual framework for building multi-step AI workflows by linking the output of one prompt to the input of the next, and the importance of validation.
  • Chaining Prompts with Python
  • Provides hands-on practice implementing a three-stage prompt chain with Pydantic-based gate checks to automate an insurance claim triage process.
  • LLM Feedback Loops
  • Explains the conceptual framework for building self-improving systems where an agent uses feedback from its own actions to iteratively refine its output.
  • Implementing LLM Feedback Loops with Python
  • Provides hands-on practice building an automated feedback loop where an AI generates Python code, has it tested against a unit test suite, and uses the test results as feedback to debug itself.
  • Congratulations!
  • Course review
  • Project: AgentsVille Trip Planner: A Multi-Agent Travel Assistant System
  • In this project, you'll build an agentic travel assistant system, the "AgentsVille Trip Planner"

נלמד על ידי

Brian Cruz


נושאים

Computer Science