discovery-interview-prep

Solid

Plan customer discovery interviews with the right goal, segment, constraints, and method. Use when preparing interviews for problem validation, churn research, or new product ideas.

AI & Automation 328 stars 19 forks Updated yesterday MIT

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Quality Score: 95/100

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Frontmatter 20%
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Issue Health 10%
80
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100
Description 5%
100

Skill Content

## Purpose Guide product managers through preparing for customer discovery interviews by asking adaptive questions about research goals, customer segments, constraints, and methodologies. Use this to design effective interview plans, craft targeted questions, avoid common biases, and maximize learning from limited customer access—ensuring discovery interviews yield actionable insights rather than confirmation bias or surface-level feedback. This is not a script generator—it's a strategic prep process that outputs a tailored interview plan with methodology, question framework, and success criteria. ## Key Concepts ### The Discovery Interview Prep Flow An interactive process that: 1. Gathers product/problem context (marketing materials, assumptions) 2. Defines research goals (what you're trying to learn) 3. Identifies target customer segment and access constraints 4. Recommends interview methodology (Jobs-to-be-Done, problem validation, switch interviews, etc.) 5. Generates interview framework with questions, biases to avoid, and success metrics ### Why This Works - **Goal-driven:** Aligns interview approach to what you need to learn - **Adaptive:** Adjusts methodology based on product stage (idea vs. existing product) and access constraints - **Bias-aware:** Highlights common pitfalls (leading questions, confirmation bias, solution-first thinking) - **Actionable:** Outputs interview guide ready to use ### Anti-Patterns (What This Is NOT) - **Not a user testing script:** D...

Details

Author
getcrew44
Repository
getcrew44/crew44
Created
4 weeks ago
Last Updated
yesterday
Language
Go
License
MIT

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