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azure-functions-feedback
Turn session findings into previewed issues or pull requests for the Azure Functions skills repository
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Turn session findings into previewed issues or pull requests for the Azure Functions skills repository
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
| name | azure-functions-feedback |
| description | Turn session findings into previewed issues or pull requests for the Azure Functions skills repository |
Language: Always respond in the same language the user is using.
Use this skill after an Azure Functions skill workflow when the session reveals an improvement opportunity for the azure-functions-* skills, their references, tests, README, or generated plugin payload.
Use this skill when:
azure-functions-* skill.Do not use it for ordinary app bugs unless the finding is about the skill suite itself.
Review the available conversation/session history, files changed, test output, and command results. Identify only actionable feedback related to this repository:
azure-functions-create, azure-functions-deploy, README, routing, references, tests, etc.)Redact secrets, tenant-specific sensitive data, function keys, publish profiles, tokens, connection strings, and customer data. Keep only resource names or URLs that the user explicitly allows to share.
If feedback is likely useful, ask the user whether they want to provide it. Keep the prompt concise:
I found feedback that could improve Azure Functions Skills. Would you like to preview it as an Issue or a Pull Request?
Options:
Do not create external GitHub artifacts without explicit user confirmation.
Before creating anything, show a preview with this structure:
Title:
Summary:
Affected area:
Evidence:
Repro / scenario:
Expected behavior:
Proposed change:
Validation plan:
Redactions applied:
Ask the user to approve or edit the preview.
After approval, search existing issues in Azure/azure-functions-skills before creating a new issue. Look for the preview title, affected area, and key symptom terms. Include both open and recently closed issues when the GitHub CLI or web UI supports it.
If an existing issue is the same topic, or is not identical but clearly similar enough to continue the conversation there, do not create a duplicate issue. Add a short comment with the new evidence or scenario instead. Report the existing issue URL to the user and explain that the feedback was added there.
If no similar issue exists, create a new issue in Azure/azure-functions-skills using the preview content.
Prefer the GitHub CLI when available. If it is unavailable, provide the prepared issue or comment body and ask the user to create or post it manually.
After creating an issue or adding a comment, report the issue URL and any follow-up action.
After approval, implement the smallest safe change in this repository:
templates/, README, tests, or docs as appropriate.npm run check when practical; otherwise explain the narrower validation used).Azure/azure-functions-skills.Do not include unrelated local docs, PLAN files, secrets, generated temp files, or user-specific logs.
End with:
Scaffold a new Azure Functions project, or add a new function/trigger to an existing project without re-initializing it
Scaffold a new Azure Functions project, or add a new function/trigger to an existing project without re-initializing it
Build, scaffold, extend, deploy, and troubleshoot Azure Functions serverless agents and event-driven AI agents using the Azure Functions serverless agents runtime. Use when the user says serverless agent, serverless agents, Azure Functions agent, scheduled agent, morning briefing, daily digest, timer agent, inbox summary, email or Teams briefing, background AI workflow, connector-triggered agent, event-driven AI automation, HTTP/chat agent, webhook-style agent, or Azure Functions hosted agent.
Build, scaffold, extend, deploy, and troubleshoot Azure Functions serverless agents and event-driven AI agents using the Azure Functions serverless agents runtime. Use when the user says serverless agent, serverless agents, Azure Functions agent, scheduled agent, morning briefing, daily digest, timer agent, inbox summary, email or Teams briefing, background AI workflow, connector-triggered agent, event-driven AI automation, HTTP/chat agent, webhook-style agent, or Azure Functions hosted agent.
Use in Agent mode when designing, running, or reporting real end-to-end tests for Azure Functions Skills across GitHub Copilot, Claude Code, and Codex plugin/setup/chat flows.
Verify prerequisites and set up your environment for Azure Functions development