The Council Code Review skill leverages a multi-model 'LLM Council' to provide objective, high-confidence evaluations of your source code. By aggregating perspectives from multiple AI models, it analyzes code changes against a weighted rubric covering accuracy, completeness, clarity, conciseness, and relevance. This skill is ideal for teams looking to automate the first pass of PR reviews, enforce coding standards, and catch blocking logic errors before they reach human reviewers, providing detailed JSON reports with line-specific issue tracking.
Características Principales
01Identification of line-specific blocking issues and improvement suggestions
02Weighted scoring system based on ADR-016 standards
03Structured JSON output including pass/fail verdicts and confidence levels
04Multi-model peer evaluation via LLM Council integration
051 GitHub stars
06Support for both full-file analysis and focused git diff reviews