technical-skill-finder

📁 vincentkoc/dotskills 📅 12 days ago
46
总安装量
46
周安装量
#8539
全站排名
安装命令
npx skills add https://github.com/vincentkoc/dotskills --skill technical-skill-finder

Agent 安装分布

codex 46
github-copilot 43
cursor 43
openclaw 41
claude-code 35
opencode 13

Skill 文档

Technical Skill Finder

Purpose

Find recurring pain points from local agent logs and convert them into actionable skill candidates, reuse opportunities, or existing skill updates.

When to use

  • You want to discover missing technical skills from historical agent activity.
  • You want reproducible criteria before creating a new skill.
  • You want to validate whether an existing skill already covers the pattern.
  • You want to include optional personal-signal sources (when authorized).

Inputs

  • SCOPE (required): repository paths, workspace, or tool domains to inspect.
  • SOURCES (required): ordered source list to mine.
  • TIMEFRAME (optional): default all unless constrained by user.
  • PRIVACY_POLICY (required): explicit user direction for personal logs.
  • TOP_N (optional): number of highest-priority candidates to return.

Workflow

  1. Initialize source set
    • ~/.codex/history.jsonl
    • ~/.codex/archived_sessions/*.jsonl
    • ~/.codex/sessions/*.jsonl and ~/.codex/log/* if present
    • Repository-specific telemetry in AGENTS.md/local docs when available
    • Cursor / Codex agent logs detected under known dotfiles directories
  2. Normalize extraction signals
    • Parse stack traces and classify failure type (auth, type-check, llm-error, git/ci, runtime, refactor-merge, test)
    • Parse recurring command phrases (rg, mypy, pytest, gh, git, package-manager failures)
    • Record frequency, recency, and affected project context
  3. Cluster signals
    • Group by: domain (python/js/rust/docs/tooling), command lineage, and error signature.
    • Deprioritize one-off sessions with low recurrence.
  4. Map to existing skills
    • Compare candidate clusters with available skills by name and description.
    • If overlap is high, propose skill update path.
    • If no overlap, propose new skill.
  5. Emit ranking output
    • Provide impact, frequency, confidence, skill-fit, and first-apply command set.
  6. Produce minimal first-iteration artifacts for high-priority candidates
    • Candidate title + scope
    • Trigger phrase examples
    • Required inputs
    • Suggested workflow summary
    • Evidence snippets (line/file-level)
    • Suggested dependencies/tools (e.g., jq, rg, shell utilities, MCP resources)
  7. Optional extension to personal-signal sources
    • Only after explicit approval to read personal channels.
    • If MCP is available and user has granted access, run MCP resource discovery and include message-signal-derived patterns.
    • Keep this opt-in and isolated from coding-signal output unless user requests a merged plan.

Guardrails

  • Never infer or emit private content from message logs unless explicitly permitted.
  • Skip binary/corrupt files and summarize only parseable text sources.
  • Prefer deterministic commands and small scripts over ad-hoc manual parsing.
  • Always avoid proposing skills with unresolved operational context (credentials, environment, private URLs).
  • If evidence is ambiguous, return confidence: low and request one more session sample.

Outputs

  • skill_candidates.md-style report in chat:
    • reuse candidates (existing skill can be extended)
    • new skill candidates (not yet covered)
    • top source anchors with references
    • recommended next action (create/update)

Read references/sources.md for source precedence. Read references/scorecard.md for prioritization rules.