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review-pull-request

pjt222
Actualizado Yesterday
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Esta Skill de Claude realiza revisiones exhaustivas de pull requests de GitHub utilizando GitHub CLI, analizando diffs, historial de commits y estado de CI/CD. Proporciona retroalimentación con niveles de severidad (bloqueante/sugerencia/detalle/elogio) y envía las revisiones directamente mediante `gh pr review`. Úsela cuando sea asignado para revisar un PR, para autoevaluación antes de buscar opiniones, o para auditorías de calidad posteriores a la fusión.

Instalación rápida

Claude Code

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Principal
npx skills add pjt222/agent-almanac -a claude-code
Comando PluginAlternativo
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternativo
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/review-pull-request

Copia y pega este comando en Claude Code para instalar esta habilidad

Documentación

Review Pull Request

Review a GitHub pull request end-to-end — from understanding the change through submitting structured feedback. Uses gh CLI for all GitHub interactions and produces severity-leveled review comments.

When to Use

  • A pull request is ready for review and assigned to you
  • Performing a second review after the author addresses feedback
  • Reviewing your own PR before requesting others' review (self-review)
  • Auditing a merged PR for post-merge quality assessment
  • When you want a structured review process rather than ad-hoc scanning

Inputs

  • Required: PR identifier (number, URL, or owner/repo#number)
  • Optional: Review focus (security, performance, correctness, style)
  • Optional: Codebase familiarity level (familiar, somewhat, unfamiliar)
  • Optional: Time budget for the review (quick scan, standard, thorough)

Procedure

Step 1: Understand the Context

Read the PR description and understand what the change is trying to accomplish.

  1. Fetch PR metadata:
    gh pr view <number> --json title,body,author,baseRefName,headRefName,labels,additions,deletions,changedFiles,reviewDecision
    
  2. Read the PR title and description:
    • What problem does this PR solve?
    • What approach did the author take?
    • Are there any specific areas the author wants reviewed?
  3. Check the PR size and assess time required:
PR Size Guide:
+--------+-----------+---------+-------------------------------------+
| Size   | Files     | Lines   | Review Approach                     |
+--------+-----------+---------+-------------------------------------+
| Small  | 1-5       | <100    | Read every line, quick review       |
| Medium | 5-15      | 100-500 | Focus on logic changes, skim config |
| Large  | 15-30     | 500-    | Review by commit, focus on critical  |
|        |           | 1000    | files, flag if should be split       |
| XL     | 30+       | 1000+   | Flag for splitting. Review only the  |
|        |           |         | most critical files.                 |
+--------+-----------+---------+-------------------------------------+
  1. Review the commit history:
    gh pr view <number> --json commits --jq '.commits[].messageHeadline'
    
    • Are commits logical and well-structured?
    • Does the history tell a story (each commit a coherent step)?
  2. Check CI/CD status:
    gh pr checks <number>
    
    • Are all checks passing?
    • If checks are failing, note which ones — this affects the review

Got: A clear understanding of what the PR does, why it exists, how big it is, and whether CI is green. This context shapes the review approach.

If fail: If the PR description is empty or unclear, note this as the first piece of feedback. A PR without context is a review antipattern. If gh commands fail, verify you're authenticated (gh auth status) and have access to the repository.

Step 2: Analyze the Diff

Read the actual code changes systematically.

  1. Fetch the full diff:
    gh pr diff <number>
    
  2. For small/medium PRs, read the entire diff sequentially
  3. For large PRs, review by commit:
    gh pr diff <number> --patch  # full patch format
    
  4. For each changed file, evaluate:
    • Correctness: Does the code do what the PR says it does?
    • Edge cases: Are boundary conditions handled?
    • Error handling: Are errors caught and handled appropriately?
    • Security: Any injection, auth, or data exposure risks?
    • Performance: Any obvious O(n^2) loops, missing indexes, or memory issues?
    • Naming: Are new variables/functions/classes named clearly?
    • Tests: Are new behaviors covered by tests?
  5. Take notes as you read, classifying each observation by severity

Got: A set of observations covering correctness, security, performance, and quality for every meaningful change in the diff. Each observation has a severity level.

If fail: If the diff is too large to review effectively, flag it: "This PR changes {N} files and {M} lines. I recommend splitting it into smaller PRs for more effective review." Still review the highest-risk files.

Step 3: Classify Feedback

Organize observations into severity levels.

  1. Classify each observation:
Feedback Severity Levels:
+-----------+------+----------------------------------------------------+
| Level     | Icon | Description                                        |
+-----------+------+----------------------------------------------------+
| Blocking  | [B]  | Must fix before merge. Bugs, security issues,      |
|           |      | data loss risks, broken functionality.             |
| Suggest   | [S]  | Should fix, but won't block merge. Better           |
|           |      | approaches, missing edge cases, style issues that   |
|           |      | affect maintainability.                            |
| Nit       | [N]  | Optional improvement. Style preferences, minor      |
|           |      | naming suggestions, formatting.                    |
| Praise    | [P]  | Good work worth calling out. Clever solutions,      |
|           |      | thorough testing, clean abstractions.              |
+-----------+------+----------------------------------------------------+
  1. For each Blocking item, explain:
    • What's wrong (the specific issue)
    • Why it matters (the impact)
    • How to fix it (a concrete suggestion)
  2. For each Suggest item, explain the alternative and why it's better
  3. Keep Nits brief — one sentence is enough
  4. Include at least one Praise if anything positive stands out

Got: A sorted list of feedback items with clear severity levels. Blocking items have fix suggestions. The ratio should generally be: few Blocking, some Suggest, minimal Nit, at least one Praise.

If fail: If everything seems blocking, the PR may need to be reworked rather than patched. Consider requesting changes at the PR level rather than line-by-line comments. If nothing seems wrong, say so — "LGTM" is valid feedback when the code is good.

Step 4: Write Review Comments

Compose the review with structured, actionable feedback.

  1. Write the review summary (top-level comment):
    • One sentence: what the PR does (confirm understanding)
    • Overall assessment: approve, request changes, or comment
    • Key items: list Blocking issues (if any) and top Suggest items
    • Praise: call out good work
  2. Write inline comments for specific code locations:
    # Post inline comments via gh API
    gh api repos/{owner}/{repo}/pulls/{number}/comments \
      -f body="[B] This SQL query is vulnerable to injection. Use parameterized queries instead.\n\n\`\`\`suggestion\ndb.query('SELECT * FROM users WHERE id = $1', [userId])\n\`\`\`" \
      -f commit_id="<sha>" \
      -f path="src/users.js" \
      -F line=42 \
      -f side="RIGHT"
    
  3. Format feedback consistently:
    • Start each comment with the severity tag: [B], [S], [N], or [P]
    • Use GitHub suggestion blocks for concrete fixes
    • Link to documentation for style/pattern suggestions
  4. Submit the review:
    # Approve
    gh pr review <number> --approve --body "Review summary here"
    
    # Request changes (when blocking issues exist)
    gh pr review <number> --request-changes --body "Review summary here"
    
    # Comment only (when unsure or providing FYI feedback)
    gh pr review <number> --comment --body "Review summary here"
    

Got: A submitted review with clear, actionable feedback. The author knows exactly what to fix (Blocking), what to consider (Suggest), and what went well (Praise).

If fail: If gh pr review fails, check permissions. You need write access to the repo or to be a requested reviewer. If inline comments fail, fall back to putting all feedback in the review body with file:line references.

Step 5: Follow Up

Track the review resolution.

  1. After the author responds or pushes updates:
    gh pr view <number> --json reviewDecision,reviews
    
  2. Re-review only the changes that address your feedback:
    gh pr diff <number>  # check new commits
    
  3. Verify Blocking items are resolved before approving
  4. Resolve comment threads as issues are addressed
  5. Approve when all Blocking items are fixed:
    gh pr review <number> --approve --body "All blocking issues resolved. LGTM."
    

Got: Blocking issues verified as fixed. Review conversation resolved. PR approved or further changes requested with specific remaining items.

If fail: If the author disagrees with feedback, discuss in the PR thread. Focus on impact (why it matters) rather than authority. If disagreement persists on non-blocking items, yield gracefully — the author owns the code.

Validation Checklist

  • PR context understood (purpose, size, CI status)
  • All changed files reviewed (or highest-risk files for XL PRs)
  • Feedback classified by severity (Blocking/Suggest/Nit/Praise)
  • Blocking items have specific fix suggestions
  • At least one Praise included for positive aspects
  • Review decision matches feedback (approve only if no Blocking items)
  • Inline comments reference specific lines with severity tags
  • CI/CD checks verified (green before approval)
  • Follow-up completed after author's revisions

Pitfalls

  • Rubber-stamping: Approving without actually reading the diff. Every approval is an assertion of quality
  • Nit avalanche: Drowning the author in style preferences. Save nits for mentoring situations; skip them in time-sensitive reviews
  • Missing the forest: Reviewing line-by-line without understanding the overall design. Read the PR description and commit history first
  • Blocking on style: Formatting and naming are almost never blocking. Reserve Blocking for bugs, security, and data integrity
  • No praise: Only pointing out problems is demoralizing. Good code deserves recognition
  • Review scope creep: Commenting on code that wasn't changed in the PR. If pre-existing issues bother you, file a separate issue

Related Skills

  • review-software-architecture — System-level architecture review (complementary to PR-level review)
  • security-audit-codebase — Deep security analysis for PRs with security-sensitive changes
  • create-pull-request — The other side of the process: creating PRs that are easy to review
  • commit-changes — Clean commit history makes PR review significantly easier

Repositorio GitHub

pjt222/agent-almanac
Ruta: i18n/caveman-lite/skills/review-pull-request
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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