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presentation-outline

christopheryeo
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Metawordpowerpointai

About

This skill converts a Google Doc into a structured 10-slide presentation outline with titles, subtitles, and bullet points. It's ideal for developers needing to quickly draft a presentation from existing technical documentation. The output is provided directly in chat for immediate review and further editing.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/christopheryeo/claude-skills
Git CloneAlternative
git clone https://github.com/christopheryeo/claude-skills.git ~/.claude/skills/presentation-outline

Copy and paste this command in Claude Code to install this skill

Documentation

Presentation Outline

Generate a structured presentation outline from a Google Doc to quickly transform topic documentation into a presentation-ready format.

How It Works

This skill takes a Google Doc containing information about a topic and transforms it into a presentation outline with the following structure per slide:

  • Slide Title - The main topic or concept
  • Slide Subtitle - Context or focus area (can be optional)
  • Bullet Points - Supporting details (one subject per slide, 3-5 bullets)

The output is limited to a maximum of 10 slides for an optimal presentation length.

Process

  • Provide a Google Doc - Share the URL or ID of a Google Doc containing the topic information
  • Outline Generation - Claude extracts key concepts and organizes them into distinct slides
  • Chat Display - The outline is displayed in the chat window for you to review and edit
  • Refinement - Adjust titles, subtitles, or bullets as needed

Guidelines for Best Results

For detailed best practices on what makes an effective presentation outline, see references/guide.md. Key principles include:

  • One topic per slide - Each slide focuses on a single main concept
  • Concise titles - 3-8 words that clearly identify the slide topic
  • Supporting bullets - 3-5 bullet points per slide that support the main topic
  • Optimal length - 8-10 slides provides balanced pacing for a 20-30 minute presentation
  • Logical flow - Clear progression from opening to conclusion

Output Format

The outline is displayed in markdown format in the chat with clear delineation between slides:

# Slide 1: [Title]
**Subtitle**: [Subtitle if applicable]
- Bullet point 1
- Bullet point 2
- Bullet point 3

# Slide 2: [Title]
**Subtitle**: [Subtitle if applicable]
- Bullet point 1
- Bullet point 2
- Bullet point 3

Tips

  • Longer, more detailed source documents produce better outlines
  • Ensure your Google Doc clearly separates different topics and concepts
  • Review the generated outline and edit slide titles/bullets for your specific audience
  • If the outline exceeds 10 slides, consider combining related slides or removing less critical content

GitHub Repository

christopheryeo/claude-skills
Path: presentation-outline

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