/install graphify
Graphify Skill
Graphify turns a folder of code, docs, images, and videos into a queryable knowledge graph. After running graphify ., the generated GRAPH_REPORT.md is referenced by the assistant when you ask it to explore the codebase. Use it to navigate unfamiliar codebases, trace architectural intent, and share context efficiently.
Credential note: Semantic extraction (docs, PDFs, images) calls an external LLM using your own API key (ANTHROPIC_API_KEY or OPENAI_API_KEY). AST code extraction and Whisper transcription run fully locally with no API key required.
Token efficiency: Reading
GRAPH_REPORT.mdis ~71.5× cheaper than reading raw source files. Always check it first.
Installation
Minimum install
pip install graphify
Recommended install with all extras
pip install "graphify[pdf,video,watch,svg]"
| Extra | Adds support for |
|---|---|
pdf |
PDF papers and documents |
video |
Video/audio transcription via faster-whisper |
watch |
--watch file monitoring |
svg |
--svg export |
mcp |
Model Context Protocol server |
neo4j |
Neo4j graph database integration |
office |
Word/Excel/PowerPoint documents |
Register with OpenClaw
graphify claw install
This copies the skill into OpenClaw's global skill directory and writes an AGENTS.md to the project root so the graph is consulted on every tool call.
Register with other platforms
graphify claude install # Claude Code (CLAUDE.md + PreToolUse hook)
graphify cursor install # Cursor (.cursorrules)
graphify codex install # Codex (AGENTS.md)
graphify copilot install # GitHub Copilot CLI
graphify gemini install # Gemini CLI
graphify aider install # Aider
Git post-commit hook (optional, local project only)
Installs a hook in the current project's .git/hooks/ — no global changes.
graphify hook install
Building a Knowledge Graph
First run
graphify .
Graphify runs a three-pass pipeline:
- AST extraction — deterministic tree-sitter parsing of all code files (no LLM calls)
- Transcription — local Whisper processing of any video/audio
- Semantic extraction — parallel LLM calls (using your configured API key) analyze docs, papers, and images
Incremental update (changed files only)
graphify . --update
Uses a SHA-256 cache in graphify-out/cache/ — safe to run after every save.
Watch mode (auto-sync as files change)
graphify . --watch
Deep mode (aggressive inferred-edge extraction)
graphify . --mode deep
Adds INFERRED edges with confidence scores (0.0–1.0) and AMBIGUOUS edges flagged for review.
Preserve edge directionality
graphify . --directed
Re-cluster without re-extracting
graphify . --cluster-only
Skip HTML visualization (faster CI runs)
graphify . --no-viz
Output Artifacts
All artifacts land in graphify-out/:
| File | Purpose |
|---|---|
GRAPH_REPORT.md |
Read this first. God nodes, community structure, surprising connections, suggested questions. |
graph.html |
Interactive browser visualization — open for human review. |
graph.json |
Raw graph data for programmatic querying via CLI or script. |
cache/ |
SHA-256 incremental cache — commit everything except this directory. |
Additional export formats
graphify . --svg # SVG visualization
graphify . --graphml # Gephi / yEd compatible export
graphify . --wiki # Wikipedia-style article per node
Querying the Graph
# Natural-language semantic search
graphify query "where is authentication handled?"
# Trace a specific path (DFS traversal)
graphify query "how does the request reach the database?" --dfs
# Shortest path between two nodes
graphify path "AuthMiddleware" "PostgresAdapter"
# Plain-language explanation of a node
graphify explain "UserSessionManager"
Adding External Content
graphify add \x3Carxiv-url> # Fetch and index a research paper
graphify add \x3Cx.com-url> # Fetch and index a tweet
graphify add \x3Cvideo-url> # Download and transcribe video/audio
After adding, run graphify . --update to integrate the new nodes into the graph.
Ignoring Files
Create .graphifyignore in the project root (same syntax as .gitignore):
node_modules/
dist/
build/
.next/
vendor/
*.generated.*
*.min.js
*.lock
graphify-out/cache/
See templates/graphifyignore.txt in this skill for a comprehensive starter.
Relationship Types
| Tag | Meaning |
|---|---|
EXTRACTED |
Found directly in source (AST, explicit reference) |
INFERRED |
Reasonable inference; includes confidence score 0.0–1.0 |
AMBIGUOUS |
Low-confidence; flagged for manual review |
Use --mode deep to maximize INFERRED coverage. Filter AMBIGUOUS edges when precision matters.
Best Practices for OpenClaw / Claude Code
1. Always read the report before exploring
Read graphify-out/GRAPH_REPORT.md
The report identifies "god nodes" (highest-degree concepts), community clusters, and suggested entry-point questions. Use these to focus subsequent searches.
2. Map communities to features
Each community in the report corresponds to a functional area of the codebase. When fixing a bug or adding a feature, identify the relevant community first, then limit file reads to that cluster.
3. Use graphify query before grep
For open-ended questions ("where is X handled?"), prefer graphify query — it searches the semantic graph and returns ranked node paths rather than raw text matches.
4. Use graphify path for impact analysis
Before editing a node, run graphify path "NodeA" "NodeB" to find coupling chains and assess blast radius.
5. Use --update aggressively
After any significant edit, run graphify . --update to keep the graph current. The cache makes this cheap.
6. Team workflows
- Commit
graphify-out/(excludinggraphify-out/cache/) so teammates get graph context immediately on checkout. - One team member builds the initial graph; all others benefit without LLM cost.
- Install
graphify hook installto auto-rebuild on every commit.
7. Multimodal context
Place architecture diagrams, whiteboard photos, or design mockups in the project directory before running graphify .. Claude vision will link visual concepts to code nodes.
Supported Languages
Python, JavaScript, TypeScript, Go, Rust, Java, C, C++, Ruby, C#, Kotlin, Scala, PHP, Swift, Lua, Zig, PowerShell, Elixir, Objective-C, Julia, Verilog, SystemVerilog, Vue, Svelte, Dart
Plus: Markdown, MDX, HTML, plain text, RST, PDF, PNG/JPG/WebP/GIF images, MP4/MOV/MKV/WebM/MP3/WAV/M4A/OGG media.
Troubleshooting
| Symptom | Fix |
|---|---|
graphify: command not found |
Run pip install graphify and ensure pip's bin directory is on PATH |
| Graph is stale after edits | Run graphify . --update |
| Missing nodes for a language | Confirm tree-sitter grammar is installed; run graphify . --update |
| Video transcription slow | Expected — Whisper runs locally. Add GPU acceleration or use --no-viz to skip unrelated steps |
AMBIGUOUS edges dominating |
Switch from --mode deep to default mode, or filter by confidence > 0.7 in graph.json |
AGENTS.md not picked up |
Re-run graphify claw install from the project root |
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install graphify - After installation, invoke the skill by name or use
/graphify - Provide required inputs per the skill's parameter spec and get structured output
What is graphify?
AI coding assistant skill for building and querying knowledge graphs from codebases, docs, and media. Use for: understanding complex codebases, architectural... It is an AI Agent Skill for Claude Code / OpenClaw, with 235 downloads so far.
How do I install graphify?
Run "/install graphify" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is graphify free?
Yes, graphify is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does graphify support?
graphify is cross-platform and runs anywhere OpenClaw / Claude Code is available (linux, macos, windows).
Who created graphify?
It is built and maintained by FantoX (@fantox); the current version is v2.1.0.