council-codereview
Use for code review and quality feedback from both Codex and Gemini. Triggers on "council review code", "council code review", "have council review this", "get council feedback on code".
What this skill does
# Council Code Review Skill Comprehensive code review with both Codex (GPT-5.2) and Gemini for quality, security, and best practices. ## When to Use - Before committing or creating PRs - Reviewing new code implementations - Checking for security vulnerabilities - Getting quality feedback - When user asks for code review from the council ## Reasoning Level **high** (default for code review) ## Execution 1. Identify the code to review: - Specific files mentioned by user - Staged git changes (`git diff --staged`) - Recent modifications 2. Gather the code content and context 3. Formulate a review prompt: ``` Review this code for quality, security, and best practices: File: <filename> ``` <code> ``` Please analyze: 1. Potential bugs or logic errors 2. Security vulnerabilities 3. Performance issues 4. Code style and readability 5. Suggestions for improvement ``` 4. Run **BOTH** commands in parallel: **Codex:** ```bash codex exec --sandbox read-only -c model_reasoning_effort="high" "<prompt>" ``` **Gemini:** ```bash gemini -s -y -o json "<prompt>" ``` 5. Synthesize review findings ## Response Format ```markdown ## AI Council Code Review ### Codex (GPT-5.2) Review: **Issues Found:** - [Severity: High/Medium/Low] [Issue description] **Security Concerns:** - [Any security issues] **Suggestions:** - [Improvement suggestions] --- ### Gemini Review: **Issues Found:** - [Severity: High/Medium/Low] [Issue description] **Security Concerns:** - [Any security issues] **Suggestions:** - [Improvement suggestions] --- ### Council Synthesis: **Critical Issues (Both Agree):** - [Issues identified by both - highest priority] **Additional Concerns:** - [Issues only one model caught] **Agreed Best Practices:** - [Suggestions both models recommend] **Final Verdict:** [LGTM / Needs Changes / Blocking Issues] --- *Session IDs: Codex=[id], Gemini=[id]* ```
Related in AI Agents
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reprompter
IncludedTransform messy prompts into well-structured, effective prompts — single or multi-agent. Use when: "reprompt", "reprompt this", "clean up this prompt", "structure my prompt", rough text needing XML tags and best practices, "reprompter teams", "repromptception", "run with quality", "smart run", "smart agents", multi-agent tasks, audits, parallel work, anything going to agent teams. Don't use when: simple Q&A, pure chat, immediate execution-only tasks. See "Don't Use When" section for details. Outputs: Structured XML/Markdown prompt, quality score (before/after), optional team brief + per-agent sub-prompts, agent team output files. Success criteria: Single mode quality score ≥ 7/10; Repromptception per-agent prompt quality score 8+/10; all required sections present, actionable and specific.
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llm-wiki
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skill-master
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