God of Prompt Profile picture
Feb 17 12 tweets 4 min read Read on X
After chatting with 8 engineers from OpenAI and Meta, I discovered they all swear by the same 7 "edge-case" prompts.

Not the viral ones from Reddit.

These are what power cutting-edge prototypes and debug complex models.

Steal them here ↓ Image
First thing I noticed: every one of them writes prompts that assume the model will fail.

Not optimistic prompts.

Adversarial ones.

They're not trying to get a good answer. They're trying to catch where the model breaks.

That changes everything about how you write prompts.
1. The Chain-of-Doubt

"Walk me through your reasoning step by step. After each step, ask yourself: could this be wrong? If yes, say why."

Kills hallucination confidence.

The model second-guesses itself mid-answer instead of committing to a wrong path.

Two Meta engineers independently named this their most-used debug prompt.
2. The Failure Audit

"Complete this task, then list every assumption you made that could be wrong. Rate each assumption 1–10 on confidence."

Forces the model to surface its own blind spots.

These engineers use it before shipping any AI-generated output to production.
3. The Anti-Expert

"Explain this as if the most skeptical engineer on the team is trying to poke holes in it. What would they say?"

Gets the model to argue against itself.

One xAI engineer told me this single prompt saved his team 3 code review cycles on a recent prototype.
4. The Edge Case Stress Test

"Give me 10 inputs that would break this function. For each one, show exactly how and why it fails."

Not "write test cases."

Force it to hunt for failure modes.

It finds edge cases in 40 seconds that take junior devs 2 hours to spot manually.
5. The Constraint Flip

"Solve this with the constraint that you cannot use the obvious solution. What's the second-best approach?"

Forces the model off its first-instinct pattern.

Especially powerful for architecture decisions where the "easy" answer is usually the one that breaks at scale.
6. The Role Collision

"Answer this as a senior systems engineer AND a skeptical product manager at the same time. Show where they'd disagree."

Gets two opposing mental models in one response.

Every time I've run this, the disagreement section contains the actual insight.
7. The Silent Assumption Extractor

"Before answering, list every implicit assumption baked into my question. Then answer."

The engineers at xAI use this before any architecture review prompt.

What comes out in the assumption list is almost always more useful than the answer itself.
Here's what all 7 have in common:

They treat the model as an adversary to outsource thinking to not a tool to get quick answers from.

The top engineers aren't writing better prompts.

They're writing prompts that make the model work against itself until the truth comes out.

Save this thread. You'll use at least 3 of these this week.
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More from @godofprompt

Feb 19
🚨 R.I.P Harvard MBA.

I built a personal MBA using 12 prompts across Claude and Gemini.

It teaches business strategy, growth tactics, and pricing psychology better than any $200K degree.

Here's every prompt you can copy & paste: Image
1. Business Strategy (Claude)

Prompt:

"Act as a strategy consultant. Analyze my business idea using
Porter's Five Forces. Be brutal. Tell me where I'll die,
not where I'll win. Business idea: [YOURS]" Image
2. Financial Modeling (Gemini)

Prompt:

"Build me a 3-year P&L projection for this business model: [YOURS].
Assume conservative, base, and aggressive scenarios.
Show me which assumptions matter most." Image
Read 17 tweets
Feb 18
Perplexity is terrifyingly good at competitive intelligence.

If you use these 10 prompts, you’ll see why:

(Bookmark this thread for later) Image
1/ Map your entire competitive landscape in 60 seconds.

Prompt:

"Act as a competitive intelligence analyst. Give me a full breakdown of [Company X]'s market position right now — pricing strategy, target customers, key differentiators, and recent strategic moves. Cite sources."

Most people Google this for hours.

Perplexity does it in one shot with live data.
2/ Find exactly where your competitor is losing customers.

Prompt:

"Search recent reviews, Reddit threads, and forums from the last 6 months where users complain about [Competitor]. Summarize the top 5 recurring pain points and frustrations."

This is like reading your competitor's support tickets.
Read 14 tweets
Feb 17
Are call centers cooked?

This tool builds a voice agent in <10 mins for any website.

Just give it the link → it will scrape your entire website and your agent is ready to deploy.
The tool is called Agent Wizard by PolyAI. And they just opened a waitlist for Agent Wizard.

You give it a URL. It reads your entire site.

FAQs, product catalog, store hours, contact info, policies. Everything.

Then it builds a voice agent that can actually answer customer calls.

No code. No sales call. No 6-month implementation.
The voice agent it generated isn't a glorified FAQ bot.

It takes reservations. Modifies them. Handles special requests.

"Party of 6, Saturday at 7, one guest has a shellfish allergy"

Done. Synced with OpenTable.
Read 6 tweets
Feb 16
I built a “shadow advisory board” of AI personas to critique my business ideas.

Includes:

• Peter Thiel
• Naval
• Buffett
• YC partner
• skeptical VC

Here’s how I structured it ↓ Image
Copy-paste this into Claude/ChatGPT:

---

You are my Shadow Advisory Board - a panel of 5 distinct investor personas who will critique my business idea from different angles.

BOARD MEMBERS:

1. PETER THIEL (Contrarian Technologist)
- Focus: Is this a monopoly or commodity? What's the 0→1 insight?
- Questions: "What do you believe that nobody else does?" "Can this scale to $1B+ without competition?"
- Style: Philosophical, first-principles, anti-consensus

2. NAVAL RAVIKANT (Leverage Maximalist)
- Focus: Can this scale without trading time for money? Where's the leverage?
- Questions: "Does this have code, media, or capital leverage?" "Will this make you rich or just busy?"
- Style: Wisdom-dense, product-market fit obsessed, long-term thinking

3. WARREN BUFFETT (Economics Fundamentalist)
- Focus: What's the moat? Can a 12-year-old understand the business model?
- Questions: "Would you buy this entire business tomorrow?" "What's the durable competitive advantage?"
- Style: Simple, margin-of-safety focused, customer-centric

4. Y COMBINATOR PARTNER (Startup Operator)
- Focus: Can you build an MVP in 2 weeks? Will users literally cry if this disappears?
- Questions: "How are you getting your first 10 customers?" "What's your weekly growth rate?"
- Style: Tactical, execution-focused, speed-obsessed

5. SKEPTICAL VC (Devil's Advocate)
- Focus: What kills this company? Why has nobody done this already?
- Questions: "What's your unfair advantage?" "Why won't Google/Amazon crush you in 6 months?"
- Style: Brutal, risk-focused, pattern-matching

---

CRITIQUE STRUCTURE:

For each board member:
1. Opening reaction (1 sentence - enthusiastic or skeptical)
2. Key insight from their lens (2-3 sentences)
3. Critical question they'd ask (1 question)
4. Red flag or opportunity they see (1 sentence)

End with:
- CONSENSUS: What all 5 agree on
- SPLIT DECISION: Where they disagree most
- VOTE: Fund (Yes/No) + confidence level (1-10)

---

MY BUSINESS IDEA:
[Paste your idea here]

---

Give me the full board critique.Image
Used this to validate a SaaS idea last week.

Thiel killed it: "You're solving a vitamin, not a painkiller"
Naval killed it: "No leverage - you're building a consulting firm with software"
Skeptical VC killed it: "Bubble. com will have this feature in 3 months"

Saved me 6 months building the wrong thing.
Read 6 tweets
Feb 14
Claude is insane for product management.

I reverse-engineered how top PMs at Google, Meta, and Anthropic use it.

The difference is night and day.

Here are 10 prompts they don't want you to know (but I'm sharing anyway): Image
1. PRD Generation from Customer Calls

I used to spend 6 hours turning messy customer interviews into structured PRDs.

Now I just dump the transcript into Claude with this:

Prompt:

---

You are a senior PM at [COMPANY]. Analyze this customer interview transcript and create a PRD with:

1. Problem statement (what pain points did the customer express in their own words?)
2. User stories (3-5 stories in "As a [user], I want [goal] so that [benefit]" format)
3. Success metrics (what would make this customer renew/upgrade?)
4. Edge cases the customer implied but didn't directly state

Be ruthlessly specific. Quote the customer directly when identifying problems.

---Image
2. Competitive Analysis with Actual Strategy

Most PMs just list competitor features in a spreadsheet like it's 2015 haha.

Here's how I get Claude to actually think like a competitive analyst:

Prompt:

---

You are a competitive intelligence analyst

Analyze [COMPETITOR] and answer:
- What job are customers hiring them to do? (not what features they have)
- Where are they vulnerable? (what complaints appear in G2/Reddit/Twitter?)
- What would you build to win their customers in the next 6 months?



- No generic "they have good UX" observations
- Only insights backed by public data you can cite
- Recommend 2-3 specific features we should build, with reasoning


---Image
Read 14 tweets
Feb 13
How to use LLMs for competitive intelligence (scraping, analysis, reporting): Image
Step 1 - Data Collection (Gemini)

Prompt:

Analyze [COMPETITOR]'s last 90 days of activity:

1. Product launches or updates
2. Pricing changes
3. New hires (executive level)
4. Customer complaints (Reddit, Twitter, G2)
5. Website changes (new pages, messaging shifts)

Format as structured data:
{date, category, description, source_url, impact_score_1-10}Image
Step 2 - Pattern Recognition (ChatGPT)

Feed it Gemini's output, then:

Prompt:

You are a competitive intelligence analyst with 15 years experience.

Analyze this 90-day activity data for [COMPETITOR].

Find patterns most analysts miss:
- Timing of announcements (seasonal? reactive?)
- Hiring → product launch lag time
- Pricing changes → customer sentiment correlation
- Website messaging evolution

Output: 5 strategic insights with evidence.Image
Read 13 tweets

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