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Single-file graph memory for local AI, agents, and Python applications

Project description

liel

License: MIT CI PyPI version

Git-compatible memory for AI agents.

One local file you can merge, diff, trace, and inspect.

Parallel merge preview: two agent memories merged with liel merge --dry-run

pip install liel
liel-demo

Runs fully local. No API keys required (LLM optional).

liel is a single-file graph memory layer for people using local AI agents while coding. One .liel file stores decisions, tasks, sources, files, facts, and the relationships between them, so tools can recall why decisions were made, not just what was said.

The core is a small Rust property graph engine with Python (PyO3) bindings and optional MCP tools. No server, no cloud, no daemon.

Why decisions disappear

Chat turns roll off the context window, but the graph still holds how a choice was reached. liel trace walks a shortest path so that reasoning stays visible—not just the final answer.

liel trace narrative output (shortest path through decision nodes)

The name liel comes from the French lier — to connect, to bind.

Three quick demos (~30 seconds each)

Use the fixed SaaS-style memory generator (two agents diverge on the same bug/decision graph). From a checkout with liel on your PATH and Python 3.9+:

python examples/demo_memory/make_demo_files.py --force

Default output: target/demo-memory/ (base.liel, agent-a.liel, agent-b.liel, identity-rules.json).

  1. Parallel merge preview (two agents, one reviewable report) — the story behind “Git-compatible working memory”:

    liel merge target/demo-memory/agent-a.liel target/demo-memory/agent-b.liel \
      --dry-run --identity-rules target/demo-memory/identity-rules.json \
      --edge-strategy idempotent --format json
    
  2. Diff with stable identity (what drifted between branches of memory):

    liel diff target/demo-memory/base.liel target/demo-memory/agent-a.liel \
      --identity-rules target/demo-memory/identity-rules.json
    
  3. One-file inspect (portable artifact):

    liel stats target/demo-memory/base.liel --format json
    

For VHS tapes and GIF outputs, see demos/README.md (English) or demos/README.ja.md (Japanese catalog). KPI and posting cadence for these stories live in the maintainer Phase 4 Marketing Playbook (Japanese; clone the repo to read it).

Coding memory helpers (experimental)

Optional thin wrappers in python/liel/coding_memory.py for File / Decision / bug-shaped Task nodes — see examples/coding_memory/README.md and the Python guide § Coding memory helpers. Maintainer design (Japanese): docs/internal/design/coding-memory.ja.md.

Why Local-First

  • Your code stays on your machine. No API keys, no telemetry, no cloud round-trips.
  • Works with any LLM. Local (Ollama, LM Studio) or cloud (Claude, GPT) — only memory stays local.
  • Offline-friendly. Memory persists across sessions without network access.
  • One file, no lock-in. Copy, commit, archive, and open with any tool that speaks .liel.

LLM Setup

Use liel as project memory through MCP:

pip install "liel[mcp]"

Configure your LLM client to start the liel MCP server. In Claude Code, edit .mcp.json in the project root like this:

{
  "mcpServers": {
    "liel": {
      "type": "stdio",
      "command": "/absolute/path/to/liel-mcp",
      "args": ["--path", "/absolute/path/to/agent-memory.liel"]
    }
  }
}

Use the installed liel-mcp executable for command, and set --path to the .liel file the AI should use as durable memory. For other LLM/MCP clients, use the equivalent MCP server setting with the same command and args.

Do not put mcpServers in .claude/settings.json; that file is for Claude Code settings such as permissions and environment variables.

For first-time setup, --path is the clearest option. If the file does not exist yet, liel creates it on first open. Without --path, the server checks only the startup directory: if no *.liel file exists there, it uses ./memory.liel; if one exists, it uses that file; if multiple files exist, it prints the candidates and asks you to register the intended file with --path instead of choosing one silently.

Then add a memory policy to the agent's project instructions. Start with the AI memory playbook, or use the sample CLAUDE.md as a longer Claude template.

Recommended LLM Memory Pattern

When using liel as project memory:

  • Always check existing memory before asking the user to repeat context.
  • Save only durable, high-signal information: decisions, preferences, tasks, sources, and important project facts.
  • Do not store temporary reasoning, speculative notes, noisy logs, or every tool result.
  • Write at meaningful checkpoints, not every turn.
  • Use nodes for entities and edges for relationships.

Try It

import liel

with liel.open("agent-memory.liel") as db:
    task = db.add_node(
        ["Task"],
        description="Migrate auth from JWT to server-side sessions",
    )
    question = db.add_node(
        ["OpenQuestion"],
        content="Use Redis or PostgreSQL for the session store?",
    )
    rejected = db.add_node(
        ["RejectedOption"],
        option="Redis",
        reason="Adds another infrastructure dependency",
    )
    decision = db.add_node(
        ["Decision"],
        content="Use a PostgreSQL session table",
    )
    source = db.add_node(["Source"], title="Auth migration notes")

    db.add_edge(task, "RAISED", question)
    db.add_edge(question, "REJECTED", rejected)
    db.add_edge(question, "RESOLVED_BY", decision)
    db.add_edge(decision, "SUPPORTED_BY", source)
    db.commit()

    for node in db.neighbors(question, edge_label="RESOLVED_BY"):
        print(node["content"])

Compared To Mem0 / Letta / Zep

liel is intentionally lower-level and local-first. It ships as a single .liel file with no server, no API keys, and no required vector index. Relationships are explicit edges you write and traverse, not only facts inferred from chat history.

Mem0, Letta, and Zep may be a better fit when you want a hosted service, a full agent runtime, automatic memory extraction, temporal graph intelligence, dashboards, or production-scale context assembly. liel is the smaller substrate: local coding agents and project-adjacent tools that need durable, inspectable graph memory they can copy, commit, archive, and open from Python or MCP.

The Zen of Liel

  • One file, any place.
  • No server, no waiting.
  • Minimal dependencies, simple environments.
  • Start small, stay local.

Documentation

Status

liel is currently a Beta package. The supported contract is the Python-first API plus the single-writer, single-file reliability model. There is no semantic/vector search in core, and commit() defines crash-safe boundaries. Breaking changes before 1.0 are tracked in the changelog.

Contributing

Pull requests and issues are welcome. A good first step is to run liel-demo and note anything confusing about the output, memory model, or docs.

See CONTRIBUTING.md.

Author

Built by Hayato under hy-token, a personal namespace for small local-first tools and AI infrastructure experiments.

License

MIT

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