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Local code knowledge graph — SQLite + sqlite-vec, AST-driven, no RAG framework needed

Project description

LoomGraph

PyPI Python License: MIT Tests

Local code knowledge graph for AI agents. SQLite + sqlite-vec, AST-driven, no RAG framework needed. Designed as a Claude Code plugin and a CLI for any agent that needs precise structural code queries.

v0.11.0 ships fully local by default. pipx install loomgraph and go — no remote services, no API keys, no Docker. Semantic vector search is opt-in.


Why LoomGraph

LLM agents are good at fuzzy natural-language code Q&A. They are bad at deterministic structural queries — "every caller of authenticate() across this 200k-LoC codebase, including indirect callers two hops deep." LoomGraph fills exactly that gap.

  • Deterministic graph queriesfind / graph / topology / impact walk SQLite, not an LLM. Same input, same output, every time.
  • AST is the source of truth — call/inherit/import edges come from tree-sitter via codeindex, not LLM inference.
  • Single-file storage~/.loomgraph/<workspace>.db. No Postgres, no Docker, no fork of someone else's RAG framework.
  • Vector KNN where it matters — sqlite-vec virtual tables, caller-provided embeddings, OpenAI-compatible provider config (Ollama default).
  • AI-Agent-shaped CLI — every command emits JSON; designed to be called by Claude Code or any agent harness.

Install

pipx install loomgraph

That's it. codeindex is pulled in automatically as the parser engine — no separate install, no direct operation. No additional services required for the structural commands.

Quick start

# Index a repo (uses codeindex under the hood for parsing)
loomgraph index .

# Structural search — fuzzy match on entity names
loomgraph find "UserService"

# Walk the call graph
loomgraph graph "UserService.login" --depth 2

# Topology smells (orphans, hubs, god functions)
loomgraph topology

# Change-impact analysis from a git diff
loomgraph impact HEAD --depth 2

# Cross-module dependency map
loomgraph deps

Every command outputs JSON to stdout (logs go to stderr) — pipe-friendly for agents.

Configuration

LoomGraph reads .loomgraph.yaml from the current dir, then ~/.config/loomgraph/config.yaml. Env vars (LOOMGRAPH_<SECTION>__<KEY>) override file values.

Minimal (fully local, no remote services)

storage:
  backend: sqlite
  db_path: "~/.loomgraph/{workspace}.db"
embedding:
  enabled: false   # turn on later for vec0 semantic search

Semantic search with local Ollama

# Install once: https://ollama.com
ollama pull nomic-embed-text
embedding:
  enabled: true
  provider: ollama
  api_url: http://localhost:11434/v1
  model: nomic-embed-text
  dimension: 768

With OpenAI / Voyage / GLM (any OpenAI-compatible /v1/embeddings)

embedding:
  enabled: true
  provider: openai
  api_url: https://api.openai.com/v1
  api_key: sk-...
  model: text-embedding-3-small
  dimension: 1536

LLM provider (for overview summaries)

llm:
  provider: glm        # glm | openrouter | vllm
  api_url: http://localhost:8000/v1
  model: glm-4-flash

Most commands work without an LLM. Only loomgraph overview (module summary mode) calls the LLM; --no-summary skips it entirely.

What's in the box

Command Purpose Network calls
loomgraph index <path> Index a repo codeindex (local) + optional embedding
loomgraph update Incremental from git diff same
loomgraph find "<query>" Fuzzy entity search none
loomgraph graph "<entity>" Walk callers/callees none
loomgraph topology Orphans / hubs / god functions none
loomgraph debt --with-git Tech debt scoring none (reads git log)
loomgraph deps Module dependency graph none
loomgraph impact <ref> Deterministic change-impact none
loomgraph trends --entity X Code-rot trend prediction none
loomgraph overview Module summaries LLM (or --no-summary)
loomgraph workspace ... Multi-workspace management none
loomgraph compare / similar Cross-workspace diff none

Claude Code integration

LoomGraph speaks MCP (Model Context Protocol) natively as of v0.12.0. After pipx install loomgraph and one-time indexing (loomgraph index .):

loomgraph mcp install-config --path ~/.claude/mcp.json

Restart Claude Code. loomgraph_find / loomgraph_graph / loomgraph_topology / loomgraph_impact / loomgraph_deps / loomgraph_overview / loomgraph_workspace_* appear as native tools — no subprocess overhead, no /skill-name invocation. Full reference: docs/api/MCP_DESIGN.md.

Legacy skill commands (debt audit, sync advisor, evolution) still ship via loomgraph install-skills for users who prefer the explicit-invoke model.

Architecture (v0.11.0+)

codeindex (AST parse)
    ↓
loomgraph (map + persist)
    ↓
~/.loomgraph/<workspace>.db (SQLite + sqlite-vec, single file)
    ├── entities       (functions / classes / modules)
    ├── relations      (CALLS / INHERITS / IMPORTS / ...)
    ├── vec_node_descriptions  (vec0, optional)
    └── vec_code_snippets      (vec0, optional)
         ↑
Claude Code / Codex / Cursor — read via CLI (JSON) or upcoming MCP

The full architecture rationale is in ADR-013.

Status

  • v0.10.0 — LightRAG and PostgreSQL removed; local SQLite backend
  • v0.11.0 — Embedding provider decoupled; OpenAI-compatible by default, off by default

495 unit tests passing, ruff clean. Dogfood-benchmarked on loomgraph (10.9k LoC, indexed in 0.88s) and codeindex (22.0k LoC, indexed in 0.93s) with sub-0.4s wall on every query — see docs/benchmarks/dogfood.md for the full numbers, including round-trip preservation of codeindex graph-export artifacts (81-85% relation coverage vs direct index). Larger fixture benchmarks (Django/FastAPI-scale) are still pending and are an honest gap in the README's earlier claims. See CHANGELOG.md.

License

MIT

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