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Marketing + AI = $$$ πŸ”‘ @godofprompt (co-founder)

Apr 9, 8 tweets

🚨BREAKING: Andrej Karpathy doesn't trust his memory.

He built a Claude-powered second brain that gets smarter every day.

Here are 6 insane Claude prompts that turn everything you consume into a
compounding intelligence system.

(Save for later)

1/ BUILD YOUR KNOWLEDGE BASE

Prompt:

Act as a personal knowledge architect applying Andrej Karpathy's LLM wiki system β€” every article, thread, podcast, and video you consume should be compiled into a structured knowledge base that compounds over time instead of disappearing from your memory the moment you close the tab.

Build a complete personal knowledge base from every source of information I consume β€” structured as a wiki that grows automatically, connects ideas across sources, and makes everything I've learned instantly searchable and usable.


1. Ask for my primary research topics, the sources I consume most, and what I currently do with information after consuming it before starting
2. Design the raw data intake system β€” exactly how to capture articles, threads, videos, and podcasts into a structured format
3. Build the wiki compilation structure β€” the folder hierarchy, file naming, and linking system that organizes everything
4. Create the categorization framework β€” how concepts are identified, named, and connected across sources
5. Deliver the complete setup protocol β€” the exact tools, folders, and naming conventions ready to implement today



- Raw data must be captured in a format the LLM can read β€” markdown preferred over PDFs
- Wiki structure must be flat enough to navigate but deep enough to organize β€” never more than 3 folder levels
- Every article must link to related concepts β€” isolated information is lost information
- Setup must be completable in one day β€” never a system so complex it never gets started
- Test: if I stopped consuming new information today would my existing knowledge base still be usable in 6 months


Raw Data Intake System β†’ Wiki Structure β†’ Categorization Framework β†’ Tool Setup β†’ Implement Today

2/ COMPILE YOUR COMPETITOR INTELLIGENCE

Prompt:

Act as a competitive intelligence compiler applying Karpathy's wiki system to business threat detection β€” every competitor move, market signal, and industry shift you track should be compiled into a structured intelligence base that surfaces patterns, connections, and threats you would never see by reading one source at a time.

Build a complete competitor intelligence wiki that compiles every signal your competitors send β€” content moves, pricing changes, product updates, and audience shifts β€” into a structured system that automatically surfaces threats before they affect your business.


1. Ask for my main competitors, the signals I currently track, and how I currently store competitive intelligence before starting
2. Design the signal capture system β€” exactly how to collect competitor content, pricing pages, job listings, and social posts into a structured format
3. Build the intelligence wiki structure β€” folders for each competitor, each market signal type, and each threat category
4. Create the pattern detection framework β€” how the LLM identifies connections between signals across competitors
5. Deliver the weekly intelligence compilation protocol β€” the exact process for updating the wiki and surfacing new threats



- Every competitor must have their own wiki section β€” never mix competitor data into one undifferentiated file
- Signal capture must be systematic β€” same data points tracked for every competitor every week
- Pattern detection must look across competitors β€” the most dangerous threats appear in multiple signals simultaneously
- Weekly update must take under 30 minutes β€” never elaborate enough to skip
- Test: if a competitor made a major move today would my intelligence wiki surface it before it affected my business


Signal Capture System β†’ Intelligence Wiki Structure β†’ Pattern Detection Framework β†’ Weekly Protocol β†’ Threats Surfaced Automatically

3/ BUILD YOUR CLIENT INTELLIGENCE BASE

Prompt:

Act as a client intelligence architect applying Karpathy's wiki system to client relationship management β€” every client conversation, feedback signal, objection pattern, and buying trigger should be compiled into a structured knowledge base that makes every future client interaction smarter than the last.

Build a complete client intelligence wiki that compiles every signal your clients send β€” objections, questions, buying triggers, and churn indicators β€” into a structured system that makes every sales conversation, retention move, and upsell perfectly timed.


1. Ask for my client types, the signals I currently track, and how I currently store client intelligence before starting
2. Design the client signal capture system β€” exactly how to log every conversation, objection, question, and buying trigger
3. Build the client intelligence wiki β€” folders for objection patterns, buying triggers, churn indicators, and upsell opportunities
4. Create the pattern recognition framework β€” how the LLM identifies which signals predict which client decisions
5. Deliver the client intelligence compilation protocol β€” the exact process for updating the wiki after every client interaction



- Every client interaction must add to the wiki β€” never let a conversation disappear without capturing the signal
- Objection patterns must be separated from buying triggers β€” they require opposite responses
- Churn indicators must be flagged immediately β€” never buried in general client notes
- Protocol must be completable in under 5 minutes per interaction β€” never elaborate enough to skip
- Test: if I queried my client wiki right now would it tell me which clients are about to churn


Client Signal Capture β†’ Intelligence Wiki Structure β†’ Pattern Recognition Framework β†’ Interaction Protocol β†’ Every Client Decision Predictable

4/ BUILD YOUR MARKET INTELLIGENCE BASE

Prompt:

Act as a market intelligence architect applying Karpathy's wiki system to market shift detection β€” every industry article, emerging trend, new tool, and audience behavior change should be compiled into a structured intelligence base that surfaces market shifts before the majority of your competitors notice them.

Build a complete market intelligence wiki that compiles every signal your market sends β€” emerging tools, shifting audience questions, new competitor entries, and changing platform algorithms β€” into a structured system that keeps you positioned on the right side of every shift.


1. Ask for my market niche, the sources I monitor for market signals, and how I currently track market changes before starting
2. Design the market signal capture system β€” exactly which sources to monitor and how to capture signals into a structured format
3. Build the market intelligence wiki β€” folders for emerging trends, platform changes, new competitors, and audience behavior shifts
4. Create the early warning framework β€” how the LLM identifies weak signals that precede major market shifts
5. Deliver the market intelligence review protocol β€” the exact weekly process for updating the wiki and identifying positioning opportunities



- Weak signals must be captured as aggressively as strong signals β€” major shifts always start small
- Sources must be diverse β€” monitoring only obvious sources produces obvious intelligence
- Early warning framework must distinguish noise from signal β€” not every market movement requires a response
- Weekly review must produce one specific positioning insight β€” never just a summary of what changed
- Test: if a major market shift happened today would my intelligence wiki have captured its early signals 30 days ago


Market Signal Capture β†’ Intelligence Wiki Structure β†’ Early Warning Framework β†’ Weekly Review Protocol β†’ Always Positioned Before The Shift

5/ BUILD YOUR CONTENT INTELLIGENCE BASE

Prompt:

Act as a content intelligence architect applying Karpathy's wiki system to content strategy β€” every viral post, successful thread, high-performing hook, and audience reaction should be compiled into a structured knowledge base that makes every piece of content smarter than the last and compounds your content intelligence over time.

Build a complete content intelligence wiki that compiles every signal your content sends β€” what performs, what fails, what hooks stop the scroll, and what topics your audience engages with most β€” into a structured system that makes every content decision data-driven rather than instinct-driven.


1. Ask for my content platforms, my top performing content, and how I currently track content performance before starting
2. Design the content signal capture system β€” exactly how to log every post's hook, format, topic, and performance metrics
3. Build the content intelligence wiki β€” folders for hooks that work, formats that perform, topics that resonate, and patterns that predict virality
4. Create the content pattern framework β€” how the LLM identifies the specific elements that make content perform across different topics
5. Deliver the content intelligence compilation protocol β€” the exact process for updating the wiki after every piece of content is published



- Every piece of content must be logged with its hook, format, topic, and performance β€” never track performance without context
- Hook patterns must be separated from topic patterns β€” they are different variables that require different analysis
- Virality patterns must be identified across multiple posts β€” never draw conclusions from a single data point
- Protocol must be completable in under 3 minutes per post β€” never elaborate enough to skip
- Test: if I queried my content wiki right now would it tell me exactly what my next viral post should look like


Content Signal Capture β†’ Intelligence Wiki Structure β†’ Content Pattern Framework β†’ Post Protocol β†’ Every Content Decision Data-Driven

6/ BUILD YOUR COMPLETE INTELLIGENCE SYSTEM

Prompt:

Act as a complete personal intelligence system architect applying Karpathy's full LLM wiki framework to every dimension of a solopreneur's business β€” competitors, clients, markets, content, and financial signals β€” compiled into one unified intelligence base that surfaces threats, opportunities, and decisions automatically.

Build a complete personal intelligence system that compiles every signal from every dimension of my business into one unified wiki β€” so I am never surprised by a competitor move, client churn, market shift, content failure, or financial threat again.


1. Ask for every dimension of my business I want to monitor β€” competitors, clients, market, content, and financial signals before starting
2. Design the unified signal capture system β€” exactly how signals from every dimension flow into the same wiki without creating chaos
3. Build the master wiki architecture β€” the complete folder structure that organizes all five intelligence dimensions without overlap
4. Create the cross-dimensional pattern framework β€” how the LLM finds connections between competitor moves, market shifts, and client behavior simultaneously
5. Deliver the weekly intelligence review protocol β€” the 30-minute process that updates every dimension and surfaces the three most important insights of the week



- Every dimension must have its own folder structure β€” never mix competitor intelligence with client intelligence
- Cross-dimensional patterns are the most valuable output β€” surface them explicitly every week
- Weekly review must produce exactly three actionable insights β€” never a list of 20 observations
- System must be maintainable by one person in under 1 hour per week β€” never elaborate enough to abandon
- Test: if I ran this system every week for 90 days would I ever be surprised by any major business threat again


Unified Signal Capture β†’ Master Wiki Architecture β†’ Cross-Dimensional Pattern Framework β†’ Weekly Review Protocol β†’ Never Surprised Again

This site literally has thousands of prompts for Claude, ChatGPT, Gemini, & Nano Banana.

Explore for free πŸ‘‡
godofprompt.ai/prompt-library

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