Measure and optimize your product-market fit using the Superhuman framework from First Round Review.
- Collect survey responses with the 4 proven PMF questions
- Calculate your PMF Score (benchmark: 40%)
- AI analyzes responses to detect personas and themes (optional)
- Generate actionable insights:
- High-Expectation Customer (HXC) profile
- What users love (from "very disappointed" responses)
- What holds users back (from "somewhat disappointed" responses)
- Roadmap recommendations (50% double down / 50% address gaps)
- Click Remix
- Customize
PRODUCT_NAMEinmain.tsline 9 - Customize
PROMPT.txtwith your product context - Share
/surveywith your users - Watch your PMF score update at
/dashboard
Optional: Add OPENAI_API_KEY for AI-powered persona detection and HXC profile generation. The survey works without it — AI just enhances the insights.
The Superhuman PMF engine uses Sean Ellis's leading indicator: % of users who would be "very disappointed" without your product.
Benchmark: Companies with strong traction exceed 40%. Companies struggling to grow are below 40%.
-
How would you feel if you could no longer use [product]?
- Very disappointed
- Somewhat disappointed
- Not disappointed
-
What type of people do you think would most benefit from [product]?
-
What is the main benefit you receive from [product]?
-
How can we improve [product] for you?
- Survey collection
- PMF Score calculation
- Response breakdown (very/somewhat/not)
- Basic persona detection (keyword-based)
- Basic theme extraction
- Rich persona detection
- Detailed HXC profile generation
- Smart roadmap recommendations
- Nuanced sentiment analysis
After adding your API key, POST to /reprocess to analyze existing responses.
Survey
- Users complete the 4-question survey
- Responses are stored immediately
Analysis
- Basic persona/theme extraction runs automatically
- If
OPENAI_API_KEYis set, AI enhances the analysis
Dashboard
- PMF Score: % of "very disappointed" responses
- Segmented PMF: Score filtered to ideal personas
- Response breakdown with visual bars
- HXC Profile (AI-enhanced)
- Top benefits and improvements
- 50/50 roadmap recommendations
"If you only double down on what users love, your product-market fit score won't increase. If you only address what holds users back, your competition will likely overtake you."
The framework teaches you to:
- Ignore "not disappointed" users — they won't convert
- Focus on "very disappointed" users to understand what to double down on
- Convert "somewhat disappointed" users who already value your main benefit