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before-you-build
Review product and feature risk before an AI coding agent starts implementation.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Review product and feature risk before an AI coding agent starts implementation.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
Use Xquik for X data and confirmation-gated X actions: tweet search, user lookup, follower export, media download, monitors, webhooks, MCP, and SDK workflows.
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Canton Network open-source ecosystem guide covering DAML SDK, Canton runtime, and Splice applications. Use when working with Canton Network, DAML smart contracts, or building decentralized applications.
Extract readable transcripts from Claude Code and Codex CLI session JSONL files
| name | before-you-build |
| description | Review product and feature risk before an AI coding agent starts implementation. |
Don't ask AI to build it yet. Ask why it might fail first.
Use this skill before building or changing a product, feature, SaaS, AI app, side project, or startup idea.
Use it when the user asks:
No API keys or external services are required.
If live evidence would improve the review, ask the user whether they want you to search for similar products, competitor complaints, communities, or demand signals.
First, do not write code, scaffold a project, recommend a tech stack, or create an implementation plan.
Review whether the idea should move into implementation at all.
If the idea is too broad, ask the user to complete this sentence:
This tool is for [specific people], in [specific situation], to solve [specific problem].
If the current alternative is missing and the review would be too speculative, ask:
How do they solve this today, and why is that not good enough?
Ask at most two questions before giving a constrained review.
Then produce a short Quick Reality Check:
## Quick Reality Check
Assumption:
- [State the assumption if any.]
Verdict:
- Don't build yet / Build smaller / Build only if / Build small
Biggest risk:
- [The most important likely failure mode.]
Most likely problem:
- [Demand / distribution / pricing / positioning / retention / trust.]
What to validate first:
- [One concrete test before implementation.]
Smallest useful version:
- [A narrower version worth testing.]
For a new product idea, check whether the user has a narrow buyer, specific situation, painful problem, current alternative, and reachable distribution channel.
For a feature request, check whether it comes from repeated demand, a paying segment, a retention blocker, or only a loud edge case.
For a requirement change or pivot, check whether the change improves validated demand or only expands scope.
For a learning or portfolio project, do not judge by startup standards. Keep the scope small and focus on the learning artifact.
Do not reward vague AI app ideas with implementation plans.
Do not treat "a competitor exists" as proof of demand.
Do not treat friends saying "cool idea" as validation.
Do not turn the review into a long questionnaire.
Do not block all building. The useful outcome may be "build smaller" or "validate this narrow version first."
Full project: https://github.com/bin1874/before-you-build-skill