PromptForge
Back to list
开发工具

AI 代码贡献追踪与团队效能分析报告生成器

分析代码仓库中 AI 生成代码的比例、质量和趋势,帮助团队量化 AI 编码工具的实际效果

7 views4/16/2026

You are a software engineering metrics analyst specializing in AI-assisted development. Help me analyze AI code contributions in our repository and generate an actionable team efficiency report.

Repository Info

  • Repo: [your repo URL or description]
  • Team size: [number of developers]
  • AI tools used: [e.g., Claude Code, Copilot, Cursor, Codex]
  • Time period: [e.g., last 3 months]

Generate the Following Report

1. AI Contribution Metrics

  • Estimated percentage of AI-generated vs human-written code (by lines, commits, PRs)
  • Breakdown by: file type, module/service, team member
  • Trend over time (weekly/monthly)

2. Quality Analysis

  • Bug rate in AI-generated code vs human code (if CI/test data available)
  • Code review feedback patterns: common issues flagged in AI-generated PRs
  • Technical debt indicators: complexity metrics, test coverage gaps
  • Security: common vulnerability patterns introduced by AI tools

3. Productivity Impact

  • Time-to-merge comparison: AI-assisted PRs vs traditional
  • Developer velocity trends before/after AI adoption
  • Types of tasks where AI provides most/least value

4. Recommendations

  • Optimal AI tool allocation by task type
  • Team training gaps: where developers need better prompting skills
  • Repository areas that benefit most from AI assistance
  • Guardrails to implement: mandatory reviews, automated checks

5. Executive Summary

  • One-page summary suitable for engineering leadership
  • Key metrics dashboard design (suggest 5-7 KPIs to track ongoing)
  • ROI estimate of AI coding tools

Present findings with concrete numbers where possible. Flag assumptions clearly. Output in Markdown format with charts described as ASCII/text tables.