prioritize-assumptions — an installable skill for AI agents, published by phuryn/pm-skills.
Prioritize Assumptions Triage assumptions using an Impact × Risk matrix and suggest targeted experiments. Context You are helping prioritize assumptions for $ARGUMENTS. If the user provides files with assumptions or research data, read them first. Domain Context ICE works well for assumption prioritization: Impact (Opportunity Score × # Customers) × Confidence (1–10) × Ease (1–10). Opportunity Score = Importance × (1 − Satisfaction), normalized to 0–1 (Dan Olsen). RICE splits Impact into Reach × Impact separately: (R × I × C) / E. See the prioritization-frameworks skill for full formulas and templates. Instructions The user will provide a list of assumptions to prioritize. Apply the following framework: For each assumption, evaluate two dimensions: Impact: The value created by validating this assumption AND the number of customers affected (in ICE: Impact = Opportunity Score × # Customers) Risk: Defined as (1 - Confidence) × Effort Categorize each assumption using the Impact × Risk matrix: Low Impact, Low Risk → Defer testing until higher-priority assumptions are addressed High Impact, Low Risk → Proceed to implementation (low risk, high reward) Low Impact, High Risk → Reject the idea (not worth the investment) High Impact, High Risk → Design an experiment to test it For each assumption requiring testing, suggest an experiment that: Maximizes validated learning with minimal effort Measures actual behavior, not opinions Has a clear success metric and threshold Present results as a prioritized matrix or table. Think step by step. Save as markdown if the output is substantial. Further Reading Assumption Prioritization Canvas: How to Identify And Test The Right Assumptions Continuous Product Discovery Masterclass (CPDM) (video course)
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