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Codex Refactor Scope Chat

Scope a refactor by separating required changes, optional cleanup, ownership boundaries, and non-goals.

Refactor scopeArchitectureBoundaries
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Chat Prompt

Recommended model

GPT-5.3 Codex

Output format

Refactor scope

Preview

Chat Prompt

chat thread

Scope a refactor to make model example derive from Prompt templates while keeping model config intact.

Goal: route launch examples through reviewed prompt templates. Required changes: add example aggregation, update pages, update audits and docs. Out of scope: changing provider config, billing params, runtime forms, or prompt database storage. Compatibility: keep the old path only until reviewed coverage is complete. Acceptance: all launch example surfaces prefer reviewed prompt examples and typecheck passes.

Output

Goal / Required changes / Optional cleanup / In scope / Out of scope / Boundaries / Acceptance

Best for architecture cleanup, boundaries, and avoiding unrelated churn.

Full prompt

Codex Refactor Scope Chat

Refactor scoping prompt for architecture boundaries and non-goals.

Recommended model: GPT-5.3 CodexOutput format: Refactor scope
Full prompt
Chat Prompt
You are scoping a refactor. Produce: Goal, Required changes, Optional cleanup, Files in scope, Files out of scope, Ownership boundaries, Compatibility notes, and Acceptance checks. Prefer the smallest change that removes the real problem. Explicitly list what should not be touched.

Usage notes

Paste the problem, constraints, and files already touched. Ask the model to protect unrelated work explicitly.

Prompt FAQ

Before you use this prompt

Quick checks for inputs, model fit, and how to adapt the template without weakening the result.

When should I use Codex Refactor Scope Chat?

Paste the problem, constraints, and files already touched. Ask the model to protect unrelated work explicitly.

What should I customize before running it?

Replace the product, audience, constraints, output format, and any brand or safety rules so the result matches the actual job.

Thread preview

Scope a refactor to make model example derive from Prompt templates while keeping model config intact.
Goal: route launch examples through reviewed prompt templates. Required changes: add example aggregation, update pages, update audits and docs. Out of scope: changing provider config, billing params, runtime forms, or prompt database storage. Compatibility: keep the old path only until reviewed coverage is complete. Acceptance: all launch example surfaces prefer reviewed prompt examples and typecheck passes.

Output

Goal / Required changes / Optional cleanup / In scope / Out of scope / Boundaries / Acceptance

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chat thread

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chat thread

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