Agent skill

content-repurposing

Content atomization — turn one piece of content into many formats. Covers blog-to-thread, blog-to-carousel, podcast-to-blog, video-to-quotes, and more. Use for: content marketing, social media, multi-platform distribution, content strategy. Triggers: content repurposing, repurpose content, content atomization, content recycling, one to many content, multi platform content, cross post, adapt content, reformat content, blog to thread, blog to video, podcast to blog, content multiplication

Stars 247
Forks 46

Install this agent skill to your Project

npx add-skill https://github.com/inference-sh/skills/tree/main/guides/content/content-repurposing

SKILL.md

Content Repurposing

Turn one piece of content into many formats via inference.sh CLI.

Quick Start

Requires inference.sh CLI (infsh). Install instructions

bash
infsh login

# Generate a quote card from a blog pull-quote
infsh app run falai/flux-dev-lora --input '{
  "prompt": "minimal quote card design, dark navy background, large white quotation marks, clean sans-serif typography space, modern professional design, social media post format",
  "width": 1024,
  "height": 1024
}'

The Content Pyramid

One source piece can generate 10+ derivative assets:

            ┌──────────┐
            │ LONG-FORM │  Blog post, podcast, video, whitepaper
            │  SOURCE   │
            └─────┬─────┘
                  │
        ┌─────────┼─────────┐
        ▼         ▼         ▼
   ┌─────────┐ ┌──────┐ ┌──────────┐
   │ MEDIUM  │ │MEDIUM│ │  MEDIUM  │  Newsletter, LinkedIn, email
   │ FORMAT  │ │FORMAT│ │  FORMAT  │
   └────┬────┘ └──┬───┘ └────┬─────┘
        │         │          │
   ┌────┼────┐    │     ┌────┼────┐
   ▼    ▼    ▼    ▼     ▼    ▼    ▼
 ┌───┐┌───┐┌───┐┌───┐┌───┐┌───┐┌───┐  Tweets, quotes, audiograms,
 │   ││   ││   ││   ││   ││   ││   │  short clips, infographic tiles
 └───┘└───┘└───┘└───┘└───┘└───┘└───┘

Conversion Recipes

Blog Post -> Twitter/X Thread

Extract 5-8 key insights. One per tweet. Add hook.

Element Rule
Hook tweet Listicle, contrarian, or promise format
Body tweets One insight per tweet, 280 chars max
Visual breaks Add image every 3-4 tweets
Final tweet CTA + "RT the first tweet if useful"

Adaptation:

  • Remove nuance and caveats (threads are punchy)
  • Add numbers and specifics (threads need skimmability)
  • Cut academic language (threads are conversational)
bash
# Generate a visual for the thread
infsh app run falai/flux-dev-lora --input '{
  "prompt": "clean infographic tile, single statistic 60% highlighted in large bold text, minimal dark background, data visualization style, professional",
  "width": 1024,
  "height": 1024
}'

# Post the thread
infsh app run x/post-create --input '{
  "text": "I analyzed 500 landing pages.\n\nHere are 7 patterns the top converters all share:\n\n🧵 Thread:"
}'

Blog Post -> LinkedIn Carousel

1 slide per section. 8-12 slides total.

Slide Content
1 (Hook) Bold claim or question from headline
2-9 (Content) One key point per slide, large text, supporting visual
10 (Summary) Recap the key takeaways
11 (CTA) "Follow for more" / "Save this" / "Comment your thoughts"

Specs: 1080x1080 (square) or 1080x1350 (4:5 for more space)

bash
# Generate carousel slides
for i in {1..10}; do
  infsh app run falai/flux-dev-lora --input "{
    \"prompt\": \"clean minimal presentation slide, dark gradient background, large text area, professional business design, slide $i of 10, consistent style\",
    \"width\": 1024,
    \"height\": 1024
  }" --no-wait
done

Blog Post -> Newsletter Section

3-line summary + "why it matters" + link.

## This Week's Feature: [Title]

[1-2 sentence summary of the key insight]

**Why it matters:** [1 sentence connecting to reader's work/life]

→ [Read the full post](link)

Blog Post -> Short-Form Video Script

Problem + key insight + CTA. Under 60 seconds.

Section Duration Content
Hook 3s "Most people get [topic] wrong."
Problem 10s State the common mistake
Insight 25s Your key finding/advice
Proof 10s One stat or example
CTA 5s "Follow for more" / "Link in bio"
bash
# Generate voiceover
infsh app run falai/dia-tts --input '{
  "prompt": "[S1] Most landing pages make this mistake. They put the features above the fold instead of the outcome. Top converting pages show what life looks like AFTER using the product. Try it and watch your conversion rate climb."
}'

# Generate video
infsh app run google/veo-3-1-fast --input '{
  "prompt": "Screen recording style, scrolling through a well-designed landing page, clean modern UI, smooth scroll, professional website"
}'

Blog Post -> Audiogram

Pull best quote. Generate audio. Add waveform visual.

bash
# Generate audio of the key quote
infsh app run falai/dia-tts --input '{
  "prompt": "[S1] The number one mistake I see on landing pages... is putting features above the fold. The best pages show the outcome. Not what your product does, but what life looks like after."
}'

Podcast Episode -> Blog Post

bash
# 1. Transcribe the episode
infsh app run <stt-app> --input '{
  "audio": "episode-42.mp3"
}'

# 2. Edit transcript into blog format:
# - Remove filler words (um, uh, like, you know)
# - Add headers at topic changes
# - Break into paragraphs
# - Add intro and conclusion
# - Add links mentioned in the episode

Podcast Episode -> Quote Cards

3-5 best quotes with speaker attribution.

bash
# Generate quote card backgrounds
infsh app run falai/flux-dev-lora --input '{
  "prompt": "minimal quote card background, subtle gradient from dark blue to black, large quotation mark watermark, clean modern design, social media square format",
  "width": 1080,
  "height": 1080
}'

Video -> GIF

Key moment, 3-5 seconds, under 5MB.

Best moments for GIFs:

  • Reaction shots
  • Before/after reveals
  • Key demonstration steps
  • Funny or surprising moments

Long Video -> Short Clips

bash
# Extract the best 15-60 second segments for Reels/TikTok/Shorts
# Focus on self-contained moments that make sense without context:
# - A single tip or insight
# - A surprising stat reveal
# - A demonstration of one feature
# - A strong opinion or hot take

The Golden Rule

Never copy-paste across formats. Each platform has different:

Platform Attention Span Tone Format
Blog 5-10 min Thorough, detailed Long paragraphs OK
Twitter/X 5-30 sec per tweet Punchy, declarative 280 chars, fragmented
LinkedIn 1-3 min Professional, insightful Short paragraphs, line breaks
Newsletter 5-7 min Curated, personal Sections with headers
TikTok/Reels 15-60 sec Energetic, direct Hook in 1 second
Podcast 20-60 min Conversational, deep Stories and tangents OK

Content Repurposing Checklist

For each piece of long-form content, create:

  • Twitter/X thread (5-8 tweets)
  • LinkedIn post or carousel
  • Newsletter section (3-line summary)
  • 2-3 quote cards for social
  • Short-form video script (30-60s)
  • Email snippet for nurture sequence
  • Slide for internal presentation

Common Mistakes

Mistake Problem Fix
Copy-pasting between platforms Feels lazy, wrong format Rewrite for each platform's style
Repurposing weak content Amplifies mediocrity Only repurpose your best pieces
Same day posting everywhere Audience overlap sees duplicates Stagger across days/weeks
Losing the core message Derivative misses the point Identify the ONE key insight first
No visual adaptation Text-only on visual platforms Create platform-specific graphics
Forgetting attribution Plagiarizes yourself Link back to the original

Related Skills

bash
npx skills add inference-sh/skills@ai-social-media-content
npx skills add inference-sh/skills@ai-image-generation
npx skills add inference-sh/skills@text-to-speech
npx skills add inference-sh/skills@twitter-automation

Browse all apps: infsh app list

Expand your agent's capabilities with these related and highly-rated skills.

inference-sh/skills

agent-ui

Batteries-included agent component for React/Next.js from ui.inference.sh. One component with runtime, tools, streaming, approvals, and widgets built in. Capabilities: drop-in agent, human-in-the-loop, client-side tools, form filling. Use for: building AI chat interfaces, agentic UIs, SaaS copilots, assistants. Triggers: agent component, agent ui, chat agent, shadcn agent, react agent, agentic ui, ai assistant ui, copilot ui, inference ui, human in the loop

247 46
Explore
inference-sh/skills

chat-ui

Chat UI building blocks for React/Next.js from ui.inference.sh. Components: container, messages, input, typing indicators, avatars. Capabilities: chat interfaces, message lists, input handling, streaming. Use for: building custom chat UIs, messaging interfaces, AI assistants. Triggers: chat ui, chat component, message list, chat input, shadcn chat, react chat, chat interface, messaging ui, conversation ui, chat building blocks

247 46
Explore
inference-sh/skills

tools-ui

Tool lifecycle UI components for React/Next.js from ui.inference.sh. Display tool calls: pending, progress, approval required, results. Capabilities: tool status, progress indicators, approval flows, results display. Use for: showing agent tool calls, human-in-the-loop approvals, tool output. Triggers: tool ui, tool calls, tool status, tool approval, tool results, agent tools, mcp tools ui, function calling ui, tool lifecycle, tool pending

247 46
Explore
inference-sh/skills

widgets-ui

Declarative UI widgets from JSON for React/Next.js from ui.inference.sh. Render rich interactive UIs from structured agent responses. Capabilities: forms, buttons, cards, layouts, inputs, selects, checkboxes. Use for: agent-generated UIs, dynamic forms, data display, interactive cards. Triggers: widgets, declarative ui, json ui, widget renderer, agent widgets, dynamic ui, form widgets, card widgets, shadcn widgets, structured output ui

247 46
Explore
inference-sh/skills

web-search

Web search and content extraction with Tavily and Exa via inference.sh CLI. Apps: Tavily Search, Tavily Extract, Exa Search, Exa Answer, Exa Extract. Capabilities: AI-powered search, content extraction, direct answers, research. Use for: research, RAG pipelines, fact-checking, content aggregation, agents. Triggers: web search, tavily, exa, search api, content extraction, research, internet search, ai search, search assistant, web scraping, rag, perplexity alternative

247 46
Explore
inference-sh/skills

ai-rag-pipeline

Build RAG (Retrieval Augmented Generation) pipelines with web search and LLMs. Tools: Tavily Search, Exa Search, Exa Answer, Claude, GPT-4, Gemini via OpenRouter. Capabilities: research, fact-checking, grounded responses, knowledge retrieval. Use for: AI agents, research assistants, fact-checkers, knowledge bases. Triggers: rag, retrieval augmented generation, grounded ai, search and answer, research agent, fact checking, knowledge retrieval, ai research, search + llm, web grounded, perplexity alternative, ai with sources, citation, research pipeline

247 46
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results