prompt-pro

mcp
Guvenlik Denetimi
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  • License — License: MIT
  • Description — Repository has a description
  • Active repo — Last push 0 days ago
  • Community trust — 36 GitHub stars
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  • Code scan — Scanned 12 files during light audit, no dangerous patterns found
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Purpose
This project is an educational O'Reilly Live Learning course repository designed to teach business professionals how to effectively use and engineer prompts for various AI tools. It includes course materials, segments, and MCP implementation examples.

Security Assessment
The overall risk is rated as Low. A light code audit scanned 12 files and found no dangerous patterns, hardcoded secrets, or requests for dangerous permissions. Based on the educational nature of the repository, it does not appear to access sensitive data, execute shell commands, or make suspicious network requests.

Quality Assessment
The project is in excellent health and actively maintained, with its most recent push occurring today. It benefits from solid community trust as evidenced by 36 GitHub stars, includes a clear description, and is properly licensed under the permissive MIT license. The repository is well-organized with comprehensive instructional content.

Verdict
Safe to use.
SUMMARY

Master AI prompting for business innovation. O'Reilly Live Learning course by Tim Warner covering ChatGPT, Claude, Copilot, and enterprise prompt engineering with MCP implementation.

README.md

How to Prompt Like a Pro: Master AI for Business Innovation

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How to Prompt Like a Pro Course Cover

An O'Reilly Live Learning course teaching business professionals how to extract maximum value from AI tools like Microsoft 365 Copilot, ChatGPT, Claude, and Google Gemini.

Last updated: April 2026


Course Segments

# Segment Duration Key Topics
1 Identity, Mindset & Context Foundations 50 min Pilot/copilot, anchor trap, prompt smell, context disclosure, inference
2 Context Sculpting & Prompting Technique 50 min Role-play, task decomposition, few-shot, chain-of-thought, meta-prompting
3 Workflow, Multimodal & Security 50 min Custom instructions, prompt versioning, voice, cross-referencing, privacy
4 Agentic Orchestration & Resilience 50 min LLM matching, subagents, checkpoints, MCP, Copilot Studio, breaking changes

Warner's Laws of Generative AI Prompting

  1. You are the pilot; the AI is your co-pilot. You're responsible for its actions.
  2. Always know who you're signed in as and who you're chatting with.
  3. Beware the anchor trap — draft before you prompt.
  4. Trust your gut — never hesitate to second-guess the AI.
  5. Every AI chat has its own lifecycle; develop your "prompt smell."
  6. The more you disclose in trust, the more the AI can help you.
  7. Anything you leave out of your prompt will be inferred by the AI.
  8. Surgically sculpt your context. Just because you can doesn't mean you should.
  9. Role play like you're a director.
  10. Don't swallow the elephant — break down complex tasks with the AI.
  11. Show, don't tell — lead with examples.
  12. Make the AI show its work.
  13. Think meta: prompt about prompting and custom instructions.
  14. Strike while the iron's hot.
  15. If you need to remind the AI of something, add it to custom instructions.
  16. Periodically refactor your custom instructions and memories.
  17. Treat prompts as assets — version-control them.
  18. Use your voice if using words is difficult.
  19. Pick up a good book on technical writing.
  20. Always have a trusted LLM to cross-reference responses.
  21. Protect your LLM against abuse by integrating test prompts.
  22. Protect privacy ruthlessly. Know your chat storage, licensing, and data retention.
  23. Each LLM has its own personality. Match the tool to the task.
  24. Orchestrate subagents as force multipliers. Use git worktrees for parallelism.
  25. Checkpoint before consequence — autonomous does not mean unsupervised.
  26. Expect breaking changes. Stay agile, adaptable, and be an eternal learner.

Context Engineering vs Prompt Engineering

Prompt Engineering Context Engineering
Focus on what to say Focus on what the model knows
One-off interactions System-wide reliability
Phrasing and examples Everything in the context window

Key Insight: Most AI failures aren't model failures—they're context failures.


Tools Covered

Primary Platforms

  • Microsoft 365 Copilot — Notebooks, Agents, enterprise integration
  • ChatGPT — Projects, Custom GPTs, DALL-E 3, Vision
  • Google Gemini — Gems, Imagen 3, 1M+ token context
  • Claude — Projects, long-form analysis, Claude Code

Agentic AI

  • Claude Code — Terminal-based autonomous coding with checkpoints
  • GitHub Copilot Coding Agent — Issue-to-PR cloud automation
  • M365 Copilot Studio — Enterprise multi-agent orchestration
  • Azure AI Foundry — Azure-hosted model deployment and orchestration

Prerequisites

Required

  • Internet connection
  • ChatGPT free account
  • Google account

Recommended

  • Microsoft 365 Copilot license
  • Claude Pro
  • GitHub Copilot subscription
  • VS Code

Quick Start

CRAFT Framework

Context: [situation]
Role: You are a [role]
Action: [task]
Format: [output format]
Tone: [voice/style]

Example Prompt

Context: I'm preparing a quarterly business review for my VP.
Role: You are a senior business analyst.
Action: Analyze this sales data and identify the top 3 trends.
Format: Executive summary with bullet points, max 200 words.
Tone: Professional and data-driven.

Repository Structure

docs/                               # Reference guides + slide deck
images/                             # Cover art, social preview assets
segments/
├─ segment-1-identity-mindset-context/      # Laws 1-7, anchor trap, context foundations
├─ segment-2-context-sculpting-technique/   # Laws 8-14, few-shot, chain-of-thought
├─ segment-3-workflow-multimodal-security/  # Laws 15-22, versioning, privacy
└─ segment-4-agentic-orchestration/         # Laws 23-26, subagents, MCP demos
.github/                            # Issue templates, workflows, AI instructions
COURSE-PLAN-APRIL-2026.md          # April 2026 delivery plan

For instructors: See INSTRUCTOR-MANIFEST.md for delivery guide.
For agents: Review AGENTS.md and CLAUDE.md before editing lessons.


Resources


License & Contributing

Licensed under MIT. See CONTRIBUTING.md for guidelines and AGENTS.md for the agent-focused repository playbook.

Code of Conduct

Participation in this project is governed by the Code of Conduct.

Security

Found a vulnerability or risky prompt scenario? Follow the disclosure steps in SECURITY.md or email Tim directly at [email protected].


Repo Guides & Automation


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