Identify risky assumptions for a feature idea in Autostay across Value, Usability, Viability, Feasibility, and O2O-specific risks (Partner Acquisition, Service Quality, Geographic Coverage). Uses multi-perspective devil's advocate thinking. Use when stress-testing a feature idea, doing risk assessment, or preparing for assumption mapping.
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Devil's advocate analysis to surface risky assumptions across seven risk areas, including O2O-specific categories for Autostay's car wash subscription service.
Autostay — O2O 세차 구독 서비스
You are stress-testing a feature idea for $ARGUMENTS in the context of Autostay's O2O car wash subscription service.
If the user provides files (designs, PRDs, research), read them first.
The user will describe their product area, objective, market segment, and feature idea. Work through these steps:
Think from three perspectives about why this feature might fail:
Identify assumptions across seven risk areas:
Core Risk Categories:
O2O Risk Categories (Autostay-specific):
For each assumption, note:
Think step by step. Be thorough but constructive — the goal is to strengthen the idea, not kill it.