Skip to main content

Lightweight memory system for AI agents with vector search and graph storage

Project description

💾 memg-core

PyPI Python Version Docs License Tests

The foundation of structured memory for AI agents.

memg-core is the deterministic, schema-driven memory engine at the heart of the larger MEMG system. It gives AI developers a fast, reliable, testable memory layer powered by:

  • YAML-based schema definition (for custom memory types)
  • Dual-store backend (Qdrant for vectors, Kuzu for graph queries)
  • Public Python API for all memory operations
  • Built-in support for auditability, structured workflows, and self-managed memory loops

It's designed for AI agents that build, debug, and improve themselves — and for humans who demand clean, explainable, memory-driven systems.

🧩 This is just the core. The full memg system builds on this to add multi-agent coordination, long-term memory policies, and deeper retrieval pipelines — currently in progress.

Features

  • Vector Search: Fast semantic search with Qdrant
  • Graph Storage: Optional relationship analysis with Kuzu
  • Offline-First: 100% local embeddings with FastEmbed - no API keys needed
  • Type-Agnostic: Configurable memory types via YAML schemas
  • See Also Discovery: Knowledge graph-style associative memory retrieval
  • Lightweight: Minimal dependencies, optimized for performance
  • Production Ready: Robust error handling, deterministic ID management, comprehensive testing

Quick Start

Python Package

pip install memg-core

# Set up environment variables for storage paths
export QDRANT_STORAGE_PATH="/path/to/qdrant"
export KUZU_DB_PATH="/path/to/kuzu/database"
export YAML_PATH="config/core.memo.yaml"

# Use the core library in your app
# Example usage shown below in the Usage section

Development setup

# 1) Create virtualenv and install slim runtime deps for library usage
python3 -m venv .venv && source .venv/bin/activate
pip install -r requirements.txt

# 2) For running tests and linters locally, install dev deps
pip install -r requirements-dev.txt

# 3) Run tests
export YAML_PATH="config/core.test.yaml"
export QDRANT_STORAGE_PATH="$HOME/.local/share/qdrant"
export KUZU_DB_PATH="$HOME/.local/share/kuzu/memg"
mkdir -p "$QDRANT_STORAGE_PATH" "$HOME/.local/share/kuzu"
PYTHONPATH=$(pwd)/src pytest -q

Usage

from memg_core.api.public import add_memory, search, delete_memory

# Add a note
note_hrid = add_memory(
    memory_type="note",
    payload={
        "statement": "Set up Postgres with Docker for local development",
        "project": "backend-setup"
    },
    user_id="demo_user"
)
print(f"Created note: {note_hrid}")  # Returns HRID like "NOTE_AAA001"

# Add a document with more details
doc_hrid = add_memory(
    memory_type="document",
    payload={
        "statement": "Docker Postgres Configuration Guide",
        "details": "Complete setup guide for running PostgreSQL in Docker containers for local development",
        "project": "backend-setup"
    },
    user_id="demo_user"
)

# Search for memories
results = search(
    query="postgres docker setup",
    user_id="demo_user",
    limit=5
)
for r in results:
    print(f"[{r.memory.memory_type}] {r.memory.hrid}: {r.memory.payload['statement']} - Score: {r.score:.2f}")

# Search with memory type filtering
note_results = search(
    query="postgres",
    user_id="demo_user",
    memory_type="note",
    limit=10
)

# Delete a memory using HRID
success = delete_memory(hrid=note_hrid, user_id="demo_user")
print(f"Deletion successful: {success}")

YAML Schema Examples

Core ships with example schemas under config/:

  • core.memo.yaml: Basic memory types (memo, note, document, task)
  • software_dev.yaml: Enhanced schema with bug and solution types for development workflows
  • core.test.yaml: Test configuration for development

Configure the schema:

export YAML_PATH="config/core.memo.yaml"  # Basic schema
# or
export YAML_PATH="config/software_dev.yaml"  # Enhanced with bug/solution types
# or
export YAML_PATH="config/core.test.yaml"  # For testing

Embedding Configuration

MEMG Core uses FastEmbed for 100% offline, local embeddings. By default, it uses the highly efficient Snowflake Arctic model:

# Optional: Configure a different FastEmbed model
export EMBEDDER_MODEL="Snowflake/snowflake-arctic-embed-xs"  # Default
# Other options: intfloat/e5-small, BAAI/bge-small-en-v1.5, etc.

Configuration

Configure via environment variables:

# Required: Storage paths
export QDRANT_STORAGE_PATH="$HOME/.local/share/qdrant"
export KUZU_DB_PATH="$HOME/.local/share/kuzu/memg"
export YAML_PATH="config/core.memo.yaml"

# Optional: Embeddings
export EMBEDDER_MODEL="Snowflake/snowflake-arctic-embed-xs"  # Default

# Optional: For MCP server (if using)
export MEMORY_SYSTEM_MCP_PORT=8787

Requirements

  • Python 3.11+
  • No API keys required!

Architecture

memg-core provides a deterministic, YAML-driven memory layer with dual storage:

  • YAML-driven schema engine - Define custom memory types with zero hardcoded fields
  • Qdrant/Kuzu dual-store - Vector similarity + graph relationships
  • Public Python API - Clean interface for all memory operations
  • Configurable schemas - Examples in config/ for different use cases

In Scope

  • ✅ YAML schema definition and validation
  • ✅ Memory CRUD operations with dual storage
  • ✅ Semantic search with memory type filtering
  • ✅ Public Python API with HRID-based interface
  • ✅ User isolation with per-user HRID scoping

Coming in Full MEMG System

  • 🔄 Schema contracts and multi-agent coordination
  • 🔄 Async job processing and bulk operations
  • 🔄 Advanced memory policies and retention
  • 🔄 Multi-agent memory orchestration

Links

License

MIT License - see LICENSE file for details.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

memg_core-0.7.3.tar.gz (97.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

memg_core-0.7.3-py3-none-any.whl (59.4 kB view details)

Uploaded Python 3

File details

Details for the file memg_core-0.7.3.tar.gz.

File metadata

  • Download URL: memg_core-0.7.3.tar.gz
  • Upload date:
  • Size: 97.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.7

File hashes

Hashes for memg_core-0.7.3.tar.gz
Algorithm Hash digest
SHA256 e5da721bbe3eef1c0a8a64170aa75b3407068c71454eddc1d8a10797f9c2929a
MD5 58c962d1c22f2d0bb7322c63981423ea
BLAKE2b-256 d22baf7085c2f2a25a72538fc5739852237d07293983023a838639e3fed623ec

See more details on using hashes here.

Provenance

The following attestation bundles were made for memg_core-0.7.3.tar.gz:

Publisher: workflow.yml on genovo-ai/memg-core

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file memg_core-0.7.3-py3-none-any.whl.

File metadata

  • Download URL: memg_core-0.7.3-py3-none-any.whl
  • Upload date:
  • Size: 59.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.7

File hashes

Hashes for memg_core-0.7.3-py3-none-any.whl
Algorithm Hash digest
SHA256 46538d1ff78032692b75a217d95f99240c9b3b3c1ea72e9d2466de8a61166310
MD5 29293e2c3350c4f1c35af5cdd0628cf6
BLAKE2b-256 da3ff2b32a2bd2c094f74bacbcb69701d452b8eec0b11c034cbd7807c903c503

See more details on using hashes here.

Provenance

The following attestation bundles were made for memg_core-0.7.3-py3-none-any.whl:

Publisher: workflow.yml on genovo-ai/memg-core

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page