LeanKG
Lightweight Knowledge Graph for AI-Assisted Development
LeanKG is a local-first knowledge graph that gives AI coding tools accurate codebase context. It indexes your code, builds dependency graphs, and exposes an MCP server so tools like Cursor, OpenCode, and Claude Code can query the knowledge graph directly. No cloud services, no external databases.
Visualize your knowledge graph with force-directed layout, WebGL rendering, and community clustering.

See docs/web-ui.md for more features.
Live Demo
Try LeanKG without installing: https://leankg.onrender.com
Installation
One-Line Install (Recommended)
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Supported targets:
| Target | AI Tool | Auto-Installed |
|---|---|---|
opencode |
OpenCode AI | Binary + MCP + Plugin + Skill + AGENTS.md |
cursor |
Cursor AI | Binary + MCP + Skill + AGENTS.md + Session Hook |
claude |
Claude Code | Binary + MCP + Plugin + Skill + CLAUDE.md + Session Hook |
gemini |
Gemini CLI | Binary + MCP + Skill + GEMINI.md |
kilo |
Kilo Code | Binary + MCP + Skill + AGENTS.md |
antigravity |
Google Antigravity | Binary + MCP + Skill + GEMINI.md |
Examples:
|
|
Install via Cargo or Build from Source
&&
&& &&
Quick Start
# Run shell commands with RTK compression
# REST API server with auth
# Process management
# Obsidian vault sync
# Microservice call graph (via Web UI)
# Then visit http://localhost:8080/services
# Multi-repo registry
See docs/cli-reference.md for all commands.
Claude Code Setup
LeanKG auto-triggers in Claude Code sessions via PreToolUse hooks that route search intents to LeanKG tools instead of native tools.
# Install LeanKG with Claude Code hooks and plugin
# Then restart Claude Code or run:
What leankg setup installs:
.claude-plugin/- Plugin manifest for Claude Code validationhooks/- PreToolUse, SessionStart, PostToolUse hooks- Adds
leankg@localtoenabledPluginsin~/.claude/settings.json
Auto-trigger behavior:
SessionStarthook injects tool selection hierarchy into every sessionPreToolUsehook nudges toward LeanKG when you use Grep/Read/Bash for code analysis- LeanKG returns token-optimized context instead of scanning entire files
How LeanKG Helps
graph LR
subgraph "Without LeanKG"
A1[AI Tool] -->|Full codebase context| B1[15,000-45,000 tokens]
B1 --> A1
end
subgraph "With LeanKG"
A2[AI Tool] -->|Targeted subgraph| C[LeanKG Graph]
C -->|Context reduction| A2
end
Without LeanKG: AI processes full context from files found via grep/search. With LeanKG: AI queries knowledge graph for targeted context. Token reduction varies by task complexity (see benchmark results).
Highlights
- Auto-Init -- Install script configures MCP, rules, skills, and hooks automatically
- Auto-Trigger -- Session hooks inject LeanKG context into every AI tool session
- Token Optimized -- Targeted subgraph retrieval vs full file scanning
- Impact Radius -- Compute blast radius before making changes
- Pre-Commit Risk Analysis --
detect_changesclassifies risk as critical/high/medium/low - Dependency Graph -- Build call graphs with
IMPORTS,CALLS,TESTED_BYedges - MCP Server -- Expose graph via MCP protocol for AI tool integration (40 tools)
- Orchestration -- Smart context routing with caching via natural language intent
- Community Detection -- Auto-detect functional clusters in your codebase
- Multi-Language -- Index Go, TypeScript, Python, Rust, Java, Kotlin, Ruby, PHP, Perl, R, Elixir, Bash with tree-sitter
- Android -- Extract XML layouts, resources, manifest relationships, and navigation graphs
- Service Topology -- Microservice call graph visualization
- Annotation Search -- Search code by
@Entity,@HiltViewModel, and other annotations - Graph Export -- Export as JSON, DOT, or Mermaid formats
- REST API -- Full REST API with auth and API key management
- RTK Compression -- Run shell commands with token-saving compression
See docs/architecture.md for system design and data model details.
Supported AI Tools
| Tool | Auto-Setup | Session Hook | Plugin |
|---|---|---|---|
| Cursor | Yes | session-start | - |
| Claude Code | Yes | session-start | Yes |
| OpenCode | Yes | - | Yes |
| Kilo Code | Yes | - | - |
| Gemini CLI | Yes | - | - |
| Google Antigravity | Yes | - | - |
| Codex | Yes | - | - |
Note: Cursor requires per-project installation. The AI features work on a per-workspace basis, so LeanKG should be installed in each project directory where you want AI context injection.
See docs/agentic-instructions.md for detailed setup and auto-trigger behavior.
Context Metrics
Track token savings to understand LeanKG's efficiency.
See docs/metrics.md for schema and examples.
Update
# Check current version
# Update LeanKG binary (kills processes, removes old binary, installs hooks)
# Or via install script
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# Obsidian vault sync
Documentation
| Doc | Description |
|---|---|
| docs/cli-reference.md | All CLI commands |
| docs/mcp-tools.md | MCP tools reference |
| docs/agentic-instructions.md | AI tool setup & auto-trigger |
| docs/architecture.md | System design, data model |
| docs/web-ui.md | Web UI features |
| docs/metrics.md | Metrics schema & examples |
| docs/benchmark.md | Performance benchmarks |
| docs/roadmap.md | Feature planning |
| docs/tech-stack.md | Tech stack & structure |
| docs/android-extraction.md | Android XML & resource extraction |
Troubleshooting
Database Lock Error
If you see database is locked (code 5), another LeanKG process is holding the database:
# Kill all leankg and vite processes
# Or manually
Process Management
Important: Always kill the web server before indexing to avoid database lock conflicts.
Performance Benchmarks
Load Test Results (100K nodes)
| Operation | Throughput |
|---|---|
| Insert elements | ~57,618 elements/sec |
| Insert relationships | ~67,067 relationships/sec |
| Retrieve all elements | ~418,718 elements/sec |
| Cache speedup (cold to warm) | 345-461x |
Run load tests:
A/B Benchmark Results
See tests/benchmark/results/clean-benchmark-2026-04-21.md for detailed A/B testing results comparing LeanKG vs baseline code search.
Requirements
- Rust 1.75+
- macOS or Linux
License
MIT