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Codex Test Plan Chat

Create a focused test plan for a code change, including unit, integration, content, and manual page checks.

Test planRegressionQA
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Chat Prompt

Recommended model

GPT-5.2 Codex

Output format

Test plan

Preview

Chat Prompt

chat thread

Create a test plan for adding new chat and audio Prompt templates.

Risk areas: duplicate slugs, wrong recommended model category, missing locale fields, invalid audio files, and list page density. Automated checks: prompts check, i18n generate/check, media example audit, and typecheck. Manual checks: sample one chat detail page and one audio detail page in en and zh. Negative cases: missing audioUrl, missing conversation example, and model/category mismatch. Stop condition: any published template fails schema or audio cannot be read.

Output

Risk areas / Automated checks / Manual checks / Test data / Negative cases / Commands / Stop conditions

Best for regression planning, content checks, and release readiness.

Full prompt

Codex Test Plan Chat

Test plan prompt for focused regression and page checks.

Recommended model: GPT-5.2 CodexOutput format: Test plan
Full prompt
Chat Prompt
You are writing a test plan for a code change. Return: Risk areas, Automated checks, Manual checks, Test data, Negative cases, Commands to run, and Stop conditions. Keep the plan proportional to the blast radius. Do not add unrelated test work.

Usage notes

Paste the changed files and risk areas. Keep checks focused on the surfaces that changed.

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 Test Plan Chat?

Paste the changed files and risk areas. Keep checks focused on the surfaces that changed.

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

Create a test plan for adding new chat and audio Prompt templates.
Risk areas: duplicate slugs, wrong recommended model category, missing locale fields, invalid audio files, and list page density. Automated checks: prompts check, i18n generate/check, media example audit, and typecheck. Manual checks: sample one chat detail page and one audio detail page in en and zh. Negative cases: missing audioUrl, missing conversation example, and model/category mismatch. Stop condition: any published template fails schema or audio cannot be read.

Output

Risk areas / Automated checks / Manual checks / Test data / Negative cases / Commands / Stop conditions

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