cross-pollination-engine
Systematically borrow ideas from unrelated industries to solve problems. Innovation often comes from adjacent fields. Use when user says "cross-pollination", "how would X solve this", "borrow ideas from", "what can we learn from", "think outside the box", "how would Disney/Apple/Amazon do this", "different industry", "steal ideas".
Best use case
cross-pollination-engine is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Systematically borrow ideas from unrelated industries to solve problems. Innovation often comes from adjacent fields. Use when user says "cross-pollination", "how would X solve this", "borrow ideas from", "what can we learn from", "think outside the box", "how would Disney/Apple/Amazon do this", "different industry", "steal ideas".
Teams using cross-pollination-engine should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/cross-pollination-engine/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How cross-pollination-engine Compares
| Feature / Agent | cross-pollination-engine | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Systematically borrow ideas from unrelated industries to solve problems. Innovation often comes from adjacent fields. Use when user says "cross-pollination", "how would X solve this", "borrow ideas from", "what can we learn from", "think outside the box", "how would Disney/Apple/Amazon do this", "different industry", "steal ideas".
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Cross-Pollination Engine ## The Core Insight Most "innovation" is applying proven solutions from one domain to another. - Resistance wheels → Rollerblades - Gaming XP systems → Duolingo - Hotel concierge → Software onboarding ## The Process 1. **Define the core job** (strip away industry context) 2. **Find who else solves it** (often surprising industries) 3. **Extract principles** (not surface features) 4. **Translate to your context** (adapt, don't copy) ## Industry Inspiration Library | Need | Look At | Why | |------|---------|-----| | **Trust** | Banking, Healthcare, Aviation | Verification, credentials, checklists | | **Engagement** | Gaming, Fitness apps, Streaming | XP, streaks, personalization, progress | | **Onboarding** | Hotels, Theme parks, Luxury retail | Concierge, anticipation, personal touch | | **Simplicity** | Apple, IKEA, Google | Feature cutting, hidden complexity | | **Urgency** | E-commerce, Airlines, Fast food | Scarcity, anchoring, speed promises | | **Community** | CrossFit, Harley-Davidson, Peloton | Tribal identity, shared experience | ## Output Format ``` PROBLEM: [What you're solving] CORE JOB: [Stripped to fundamentals] FROM [Industry 1]: How they solve it: [x] Key principle: [y] Applied to us: [z] FROM [Industry 2]: How they solve it: [x] Key principle: [y] Applied to us: [z] SYNTHESIS: [Combined approach] NEXT STEP: [Concrete action] ``` ## Prompt Starters - "How would Disney solve our onboarding?" - "What would Amazon do with our data?" - "If this were a game, how would it work?" - "How do luxury hotels make people feel special?" ## Integration Compounds with: - **jtbd-analyzer** → Understand job first, then find who else solves it - **first-principles-decomposer** → Strip context to find fundamental need - **six-thinking-hats** → Green Hat pairs naturally with cross-pollination - **app-planning-skill** → Apply borrowed patterns to new apps --- See references/examples.md for Artem-specific cross-pollinations
Related Skills
seo-content-engine
End-to-end SEO content creation workflow.
policy-engine
Deterministic governance layer for OpenClaw tool execution.
game-engine
Expert skill for building web-based game engines and games using HTML5, Canvas, WebGL, and JavaScript.
pollinations
Pollinations.ai API for AI generation - text, images, videos, audio, and analysis. Use when user requests AI-powered generation (text completion, images, videos, audio, vision/analysis, transcription) or mentions Pollinations. Supports 25+ models (OpenAI, Claude, Gemini, Flux, Veo, etc.) with OpenAI-compatible chat endpoint and specialized generation endpoints.
clickbait-engine
Generate sensational, engagement-maximizing titles, hooks, and clip captions for social media posts, YouTube.
the-2026-guide-to-prompt-engineering-ibm-4a7e73bd
s GPT, DALL-E, Stable Diffusion, Anthropic
r-promptengineering-on-reddit-ai-prompting-tips-fr-cad7c366
write a framework first, then use that framework to generate the content
r-promptengineering-on-reddit-ai-prompting-tips-fr-6be40b35
Assignment: Write an analysis of how automation is changing the job market
r-promptengineering-on-reddit-after-1000-hours-of--e2cf1489
ve got me and my Unicode keyboard. I think I need to get hired because phew if that
prompt-engineering-openai-api-f7c24501
Log in [Sign up](https://platform.openai.com/signup)
examples-of-prompts-prompt-engineering-guide-647441e3
create a conversational system that's able to generate more technical and scientific responses to questions
examples-of-prompts-prompt-engineering-guide-61f443e2
s create a conversational system that