with one click
实现前的信心评估:检查理解和准备的充分程度
npx skills add https://github.com/debug-zhuweijian/ai-research-toolkit --skill confidence-checkCopy and paste this command into Claude Code to install the skill
实现前的信心评估:检查理解和准备的充分程度
npx skills add https://github.com/debug-zhuweijian/ai-research-toolkit --skill confidence-checkCopy and paste this command into Claude Code to install the skill
Coordinate multi-agent academic research workflows with sanitized Paperclip-style handoffs, verification gates, and release-safe outputs.
任意输入(代码、文档、论文、图片)→ 知识图谱 → 聚类社区 → HTML + JSON + 审计报告
知识库维护 — 扫描新资料、入库、健康检查、统计查询
生成 draw.io 图表(.drawio),可选导出 PNG/SVG/PDF
编排端到端自主 AI 研究项目,双循环架构:内循环快速实验迭代,外循环综合分析引导方向
学术研究全流程编排器:10 阶段从选题到投稿,完整性校验门,两阶段审稿
| name | Confidence Check |
| description | 实现前的信心评估:检查理解和准备的充分程度 |
Prevents wrong-direction execution by assessing confidence BEFORE starting implementation.
Requirement: ≥90% confidence to proceed with implementation.
Use this skill BEFORE implementing any task to ensure:
Calculate confidence score (0.0 - 1.0) based on 5 checks:
Check: Search codebase for existing functionality
# Use Grep to search for similar functions
# Use Glob to find related modules
✅ Pass if no duplicates found ❌ Fail if similar implementation exists
Check: Verify tech stack alignment
CLAUDE.md, PLANNING.md✅ Pass if uses existing tech stack (e.g., Supabase, UV, pytest) ❌ Fail if introduces new dependencies unnecessarily
Check: Review official docs before implementation
✅ Pass if official docs reviewed ❌ Fail if relying on assumptions
Check: Find proven implementations
✅ Pass if OSS reference found ❌ Fail if no working examples
Check: Understand the actual problem
✅ Pass if root cause clear ❌ Fail if symptoms unclear
Total = Check1 (25%) + Check2 (25%) + Check3 (20%) + Check4 (15%) + Check5 (15%)
If Total >= 0.90: ✅ Proceed with implementation
If Total >= 0.70: ⚠️ Present alternatives, ask questions
If Total < 0.70: ❌ STOP - Request more context
📋 Confidence Checks:
✅ No duplicate implementations found
✅ Uses existing tech stack
✅ Official documentation verified
✅ Working OSS implementation found
✅ Root cause identified
📊 Confidence: 1.00 (100%)
✅ High confidence - Proceeding to implementation
Token Savings: Spend 100-200 tokens on confidence check to save 5,000-50,000 tokens on wrong-direction work.