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content-repurposer

guia-matthieu
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关于

The content-repurposer skill transforms long-form content like podcasts, blogs, and transcripts into multiple short-form pieces such as social posts and quotes. It enables developers to implement a "create once, publish everywhere" workflow by extracting and reformatting content from a single source. Use it for converting podcasts to social posts, extracting Twitter threads from blogs, or generating content variants.

快速安装

Claude Code

推荐
主要方式
npx skills add guia-matthieu/clawfu-skills -a claude-code
插件命令备选方式
/plugin add https://github.com/guia-matthieu/clawfu-skills
Git 克隆备选方式
git clone https://github.com/guia-matthieu/clawfu-skills.git ~/.claude/skills/content-repurposer

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

Content Repurposer

Turn one piece of content into 10+ pieces using AI-powered extraction and reformatting - the "create once, publish everywhere" workflow.

When to Use This Skill

  • Podcast repurposing - Convert episode transcripts to threads, posts, quotes
  • Blog distribution - Transform articles into LinkedIn posts, Twitter threads
  • Video content recycling - Extract quotable moments and insights
  • Newsletter content - Generate social snippets from weekly newsletters
  • Webinar follow-up - Create post-event content from recordings

What Claude Does vs What You Decide

Claude DoesYou Decide
Structures production workflowFinal creative direction
Suggests technical approachesEquipment and tool choices
Creates templates and checklistsQuality standards
Identifies best practicesBrand/voice decisions
Generates script outlinesFinal script approval

Dependencies

pip install anthropic jinja2 click pyyaml
# Requires ANTHROPIC_API_KEY environment variable

Commands

Multi-Format Repurpose

python scripts/main.py repurpose transcript.txt --formats "twitter,linkedin,instagram"
python scripts/main.py repurpose blog-post.md --formats all

Twitter Thread

python scripts/main.py thread article.md --max-tweets 10
python scripts/main.py thread transcript.txt --style educational

Quote Extraction

python scripts/main.py quotes podcast-transcript.txt --count 5
python scripts/main.py quotes interview.txt --style inspirational

Hook Generation

python scripts/main.py hooks content.txt --count 10
python scripts/main.py hooks product-page.txt --style curiosity

Examples

Example 1: Podcast Episode → Full Content Suite

# Input: 45-minute podcast transcript
python scripts/main.py repurpose episode-42-transcript.txt --formats all

# Output directory: episode-42-transcript_repurposed/
# ├── twitter_thread.md (10-tweet thread)
# ├── linkedin_post.md (long-form post)
# ├── instagram_carousel.md (10 slides)
# ├── quotes.md (5 quotable moments)
# └── hooks.md (5 attention grabbers)

Example 2: Blog Post → Twitter Thread

# Convert 2000-word article to thread
python scripts/main.py thread positioning-strategy.md --max-tweets 12 --style educational

# Output: positioning-strategy_thread.md
# 1/ Here's how the best B2B companies position themselves (thread)
# 2/ First, they identify their competitive alternatives...
# ...
# 12/ TL;DR: Position for differentiation, not features. Link in bio.

Example 3: Extract Quotable Moments

# Pull shareable quotes from interview
python scripts/main.py quotes founder-interview.txt --count 10 --style inspirational

# Output: founder-interview_quotes.md
# 1. "We didn't build a product, we built a belief system."
# 2. "Your first 100 customers should feel like co-founders."
# ...

Output Formats

FormatBest ForTypical Length
twitterThread with numbered tweets8-15 tweets
linkedinLong-form professional post1,200-1,500 chars
instagramCarousel slide content10 slides
quotesShareable quote graphics5-10 quotes
hooksOpening lines for posts10 hooks
summaryExecutive summary200-300 words
newsletterEmail-friendly summary500-800 words

Content Styles

StyleToneUse Case
educationalTeaching, explainingTutorials, how-tos
inspirationalMotivating, upliftingFounder stories
provocativeChallenging assumptionsThought leadership
conversationalCasual, relatablePersonal brand
professionalFormal, authoritativeB2B, enterprise

How It Works

  1. Content Analysis - AI reads full content, identifies key themes
  2. Format Adaptation - Restructures for each platform's constraints
  3. Hook Generation - Creates attention-grabbing openings
  4. Quote Extraction - Pulls most shareable moments
  5. Consistency Check - Ensures message alignment across formats

Best Practices

  1. Start with transcripts - Raw transcripts work better than polished content
  2. Review hooks - AI-generated hooks need human judgment
  3. Edit threads - Check flow between tweets
  4. Add context - AI can't know your audience's inside jokes
  5. Test variations - Generate multiple versions, pick the best

Skill Boundaries

What This Skill Does Well

  • Structuring audio production workflows
  • Providing technical guidance
  • Creating quality checklists
  • Suggesting creative approaches

What This Skill Cannot Do

  • Replace audio engineering expertise
  • Make subjective creative decisions
  • Access or edit audio files directly
  • Guarantee commercial success

Related Skills

Skill Metadata

  • Mode: cyborg
category: automation
subcategory: content-automation
dependencies: [anthropic, jinja2]
difficulty: beginner
time_saved: 8+ hours/week
api_cost: ~$0.02-0.10 per repurpose

GitHub 仓库

guia-matthieu/clawfu-skills
路径: skills/automation/content-repurposer
0
ai-skillsanthropicclaude-codeclaude-skillsmarketingmcp-server

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