Audit-ready decision artifacts for LLM outputs — assumptions, risks, recommendation, and review gating (schema-valid JSON).
数据来源:ClawHub。 在 ClawSkills 查看
选择你使用的 Agent
方法一:命令行安装(推荐)
推荐(无需提前安装 clawhub)
npx clawhub@latest --dir ~/.claude/skills install dgr或使用 clawhub CLI(需提前安装)
clawhub --dir ~/.claude/skills install dgr⚠️ 需要 Node.js 18+,没有 Node?请使用下方方法二直接下载 ZIP。 安装 Node.js →
方法二:手动下载安装(无需 Node)
下载 ZIP,解压后将文件夹放到以下路径,重启 Agent 即可:
安装路径
~/.claude/skills/dgr/💡解压后将文件夹放到上方路径,重启 Agent 即可生效
--- name: dgr description: Audit-ready decision artifacts for LLM outputs — assumptions, risks, recommendation, and review gating (schema-valid JSON). homepage: https://www.clawhub.ai/sapenov/dgr metadata: clawdbot: emoji: "🧭" category: "reasoning" ---
Purpose: produce an auditable, machine‑validated decision record for review and storage.
Slug: dgr · Version: 1.0.4 · Modes: dgr_min / dgr_full / dgr_strict · Output: schema-valid JSON
DGR is a reasoning governance protocol that produces a machine‑validated, auditable artifact describing:
This skill is designed for high‑stakes or review‑required decisions where you want traceability and structured review.
dgr_min | dgr_full | dgr_strictThis skill does NOT guarantee:
DGR improves process quality (clarity, traceability, reviewability) — not outcome certainty.
Use when you need:
dgr_min, dgr_full, or dgr_strict.| Mode | Speed | Detail Level | Clarifications | Review Required | Use Case | |------|-------|--------------|---------------|----------------|----------| | dgr_min | Fastest | Minimal compliant output | Only critical gaps | Risk-based | Quick decisions, low stakes | | dgr_full | Moderate | Fuller decomposition + alternatives | More proactive | Balanced | Standard decision support | | dgr_strict | Slower | Conservative analysis | More questioning | Default on ambiguity | High-stakes, uncertain contexts |
A single JSON artifact matching schema.json.
Minimum acceptance criteria (see schema.json):
recommendation presentconsistency_check presentrecommendation.review_required = true.prompt.md — operational instructionsschema.json — output schema (stub aligned to DGR spec)examples/*.md — example inputs and outputsfield_guide.md — how to interpret DGR artifact fields1) Provide a decision request. 2) Choose a mode (dgr_min default). 3) The skill returns a JSON artifact suitable for review and storage.
1.0.4 — Remove redundant CLAWHUB_SUMMARY.md; summary now sourced from SKILL.md front-matter.
1.0.3 — Tighten front-matter description for better conversion, add reasoning category, compress identity block for faster scanning.
1.0.2 — Add ClawHub front-matter metadata with emoji and homepage for improved discovery and presentation.
1.0.0 — Initial public release of DGR skill bundle with auditable decision reasoning framework, governance protocols, and structured output format.
> Note: This is an opt‑in reasoning mode. It is meant to be used alongside human decision‑making, not as a replacement.
安装 Decision-Grade Reasoning (DGR) 后,可以对 AI 说这些话来触发它
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将技能文件夹放到 ~/.claude/skills/dgr/ 目录(个人级,所有项目可用),或 .claude/skills/dgr/(项目级)。重启 AI 客户端后,用 /dgr 主动调用,或让 AI 根据上下文自动发现并使用。
Decision-Grade Reasoning (DGR) 支持 Claude、Cursor、OpenClaw,可与这些 AI 平台无缝集成,扩展其能力。
Decision-Grade Reasoning (DGR) 可免费安装使用。请查阅仓库了解许可证信息。
Audit-ready decision artifacts for LLM outputs — assumptions, risks, recommendation, and review gating (schema-valid JSON).
Decision-Grade Reasoning (DGR) 属于「Marketing & Growth」分类,该分类的技能帮助 AI 智能体在此领域执行专业任务。
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Identifies repetitive steps in your workflow and sets up Decision-Grade Reasoning (DGR) to handle them automatically