review-renovate
About
This skill reviews Renovate bot PRs that update GitHub Actions dependencies. It verifies supply chain integrity by checking commit SHAs against upstream releases, reviews changelogs for breaking changes, and confirms workflow compatibility. Use it when Renovate opens a PR modifying files in `.github/workflows/`.
Quick Install
Claude Code
Recommendednpx skills add backnotprop/plannotator -a claude-code/plugin add https://github.com/backnotprop/plannotatorgit clone https://github.com/backnotprop/plannotator.git ~/.claude/skills/review-renovateCopy and paste this command in Claude Code to install this skill
Documentation
Review Renovate GitHub Actions PRs
You are reviewing a Renovate bot PR that updates GitHub Actions dependencies. Your job is to verify supply chain integrity and ensure the upgrades won't break CI/CD workflows.
Inputs
You will be given a PR number or URL. Use gh CLI to fetch PR details and diff.
Steps
1. Fetch PR metadata and diff
gh pr view <PR> --json title,body,files,commits,author,headRefName
gh pr diff <PR>
Confirm the PR author is app/renovate. If not, flag this immediately — it may not be an automated dependency update.
2. Identify all action version changes
From the diff, extract each changed action:
- Full action name (e.g.,
oven-sh/setup-bun) - Old version tag and pinned SHA
- New version tag and pinned SHA
- Update type (patch, minor, major)
3. Verify pinned SHAs against upstream tags
For every action being updated, verify both old and new SHAs match the claimed version tags:
gh api repos/{owner}/{repo}/git/ref/tags/{version} --jq '.object.sha'
Compare each result against the SHA in the workflow file. If any SHA does not match, stop and report a supply chain integrity failure. Do not approve the PR.
4. Review changelogs for breaking changes
From the PR body (Renovate includes release notes), check each updated action for:
- Removed inputs or outputs that the workflows currently use
- Changed default behavior for inputs the workflows rely on
- New required inputs
- Major version bumps (these almost always have breaking changes)
5. Check workflow compatibility
Read the affected workflow files and verify:
- No removed or renamed inputs are being used
- No changed defaults affect current behavior
- The action's runtime requirements are still met (e.g., Node.js version compatibility)
6. Report findings
Present a summary table:
| Action | Old | New | Type | SHA verified |
|---|---|---|---|---|
| ... | ... | ... | patch/minor/major | yes/NO |
Then state:
- Whether all SHAs are verified
- Whether any breaking changes were found
- Whether the workflows remain compatible
- A clear safe to merge or do not merge recommendation
GitHub Repository
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