MCP HubMCP Hub
スキル一覧に戻る

dag-development

majiayu000
更新日 Today
19 閲覧
58
9
58
GitHubで表示
開発ai

について

このスキルは、開発者が研究コンセプトから因果ダイアグラム(DAG)を作成し、Mermaid、R、またはPythonを使用して論文掲載レベルの図として出力することを支援します。研究課題を視覚的モデルに変換し、分析のための因果関係の前提を明確化するために使用されます。本スキルは、概念設計からSVG/PNG/PDF形式への技術的なエクスポートまでを一貫して扱います。

クイックインストール

Claude Code

推奨
プラグインコマンド推奨
/plugin add https://github.com/majiayu000/claude-skill-registry
Git クローン代替
git clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/dag-development

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

DAG Development

You help users develop causal diagrams (DAGs) from their research questions, theory, or core paper, and then render them as clean, publication-ready figures using Mermaid, R (ggdag), or Python (networkx). This skill spans conceptual translation and technical rendering.

When to Use This Skill

Use this skill when users want to:

  • Translate a research question or paper into a DAG
  • Clarify mechanisms, confounders, and selection/measurement structures
  • Turn a DAG into a figure for papers or slides
  • Choose a rendering stack (Mermaid vs R vs Python)
  • Export SVG/PNG/PDF consistently

Core Principles

  1. Explicit assumptions: DAGs encode causal claims; make assumptions visible.
  2. Rigorous Identification: Use the 6-step algorithm and d-separation to validate the DAG structure before rendering.
  3. Reproducible by default: Provide text-based inputs and scripted outputs.
  4. Exportable assets: Produce SVG/PNG (and PDF where possible).
  5. Tool choice: Offer three rendering paths with tradeoffs.
  6. Minimal styling: Keep figures simple and journal‑friendly.

Workflow Phases

Phase 0: Theory → DAG Translation

Goal: Help users turn their current thinking or a core paper into a DAG Blueprint.

  • Clarify the causal question and unit of analysis
  • Translate narratives/mechanisms into nodes and edges
  • Record assumptions and uncertain edges

Guide: phases/phase0-theory.md Concepts: confounding.md, potential_outcomes.md

Pause: Confirm the DAG blueprint before auditing.


Phase 1: Critique & Identification

Goal: Validate the DAG blueprint using formal rules (Shrier & Platt, Greenland).

  • Run the 6-step algorithm (Check descendants, non-ancestors).
  • Check for Collider-Stratification Bias.
  • Identify the Sufficient Adjustment Set.
  • Detect threats from unobserved variables.

Guide: phases/phase1-identification.md Concepts: six_step_algorithm.md, d_separation.md, colliders.md, selection_bias.md

Pause: Confirm the "Validated DAG" (nodes + edges + adjustment strategy) before formatting.


Phase 2: Inputs & Format

Goal: Turn the Validated DAG into render‑ready inputs.

  • Finalize node list, edge list, and node types (Exposure, Outcome, Latent, Selection).
  • Choose output formats (SVG/PNG/PDF) and layout.

Guide: phases/phase2-inputs.md

Pause: Confirm the DAG inputs and output target before rendering.


Phase 3: Mermaid Rendering

Goal: Render a DAG quickly from Markdown using Mermaid CLI.

Guide: phases/phase3-mermaid.md

Pause: Confirm Mermaid output or move to R/Python.


Phase 4: R Rendering (ggdag)

Goal: Render a DAG using R with ggdag for publication‑quality plots.

Guide: phases/phase4-r.md

Pause: Confirm R output or move to Python.


Phase 5: Python Rendering (networkx)

Goal: Render a DAG using Python with uv inline dependencies.

Guide: phases/phase5-python.md


Output Expectations

Provide:

  • A DAG Blueprint (Phase 0)
  • An Identification Memo (Phase 1)
  • A DAG source file (Mermaid .mmd, R .R, or Python .py)
  • Rendered figure(s) in SVG/PNG (and PDF when available)

Invoking Phase Agents

Use the Task tool for each phase:

Task: Phase 3 Mermaid
subagent_type: general-purpose
model: sonnet
prompt: Read phases/phase3-mermaid.md and render the user’s DAG

GitHub リポジトリ

majiayu000/claude-skill-registry
パス: skills/dag-development

関連スキル

evaluating-llms-harness

テスト

This Claude Skill runs the lm-evaluation-harness to benchmark LLMs across 60+ standardized academic tasks like MMLU and GSM8K. It's designed for developers to compare model quality, track training progress, or report academic results. The tool supports various backends including HuggingFace and vLLM models.

スキルを見る

sglang

メタ

SGLang is a high-performance LLM serving framework that specializes in fast, structured generation for JSON, regex, and agentic workflows using its RadixAttention prefix caching. It delivers significantly faster inference, especially for tasks with repeated prefixes, making it ideal for complex, structured outputs and multi-turn conversations. Choose SGLang over alternatives like vLLM when you need constrained decoding or are building applications with extensive prefix sharing.

スキルを見る

langchain

メタ

LangChain is a framework for building LLM applications using agents, chains, and RAG pipelines. It supports multiple LLM providers, offers 500+ integrations, and includes features like tool calling and memory management. Use it for rapid prototyping and deploying production systems like chatbots, autonomous agents, and question-answering services.

スキルを見る

cloudflare-turnstile

メタ

This skill provides comprehensive guidance for implementing Cloudflare Turnstile as a CAPTCHA-alternative bot protection system. It covers integration for forms, login pages, API endpoints, and frameworks like React/Next.js/Hono, while handling invisible challenges that maintain user experience. Use it when migrating from reCAPTCHA, debugging error codes, or implementing token validation and E2E tests.

スキルを見る