JSPM

  • ESM via JSPM
  • ES Module Entrypoint
  • Export Map
  • Keywords
  • License
  • Repository URL
  • TypeScript Types
  • README
  • Created
  • Published
  • Downloads 3
  • Score
    100M100P100Q41060F
  • License MIT

MeshOS - A memory system for AI agents

Package Exports

  • @props-labs/mesh-os
  • @props-labs/mesh-os/dist/index.js

This package does not declare an exports field, so the exports above have been automatically detected and optimized by JSPM instead. If any package subpath is missing, it is recommended to post an issue to the original package (@props-labs/mesh-os) to support the "exports" field. If that is not possible, create a JSPM override to customize the exports field for this package.

Readme

MeshOS Banner

[!WARNING] This is the experimental TypeScript version of MeshOS. For the stable Python implementation, please visit Props-Labs/mesh-os.

The TypeScript version is under active development and APIs may change frequently. For production use, we recommend using the Python version.

MeshOS

The Memory & Knowledge Engine for Multi-Agent Systems

MeshOS is a developer-first framework for building multi-agent AI-driven operations with structured memory, knowledge retrieval, and real-time collaboration. Unlike generic memory stores, MeshOS is purpose-built for:

  • Autonomous Agents & Teams – Agents and humans evolve a shared memory over time.
  • Graph-Based Memory – Track relationships, dependencies, and evolving knowledge.
  • Fast Semantic Search – Vector-based retrieval with pgvector.
  • Event-Driven Execution – Automate workflows based on evolving context.
  • Versioned Knowledge – Track updates, past decisions, and historical context.
  • Open & Portable – Runs on PostgreSQL + Hasura with no vendor lock-in.

Why MeshOS?

Most frameworks give you a blob of memories—MeshOS gives you structured, evolving intelligence with deep relationships and versioning.

Feature MeshOS Mem0 / Letta / Zep
Multi-Agent Memory ✅ Yes ❌ No
Structured Taxonomy ✅ Yes ❌ No
Versioned Knowledge ✅ Yes ❌ No
Graph-Based Relationships ✅ Yes ❌ No
Semantic & Vector Search ✅ Yes ✅ Partial
Event-Driven Execution ✅ Yes ❌ No
Open-Source & Portable ✅ Yes ✅ Partial

Who is MeshOS for?

Builders of AI-powered operations – Structured memory and decision-making for AI-driven systems.
Multi-agent system developers – AI agents that need to store, process, and evolve shared knowledge.
Developers & engineers – Wanting an open-source, PostgreSQL-powered framework with no lock-in.


flowchart LR
    %% Main System
    subgraph MeshOS[MeshOS System]
        direction LR

        %% Taxonomy Details
        subgraph Taxonomy[Memory Classification]
            direction TB
            
            subgraph DataTypes[Data Types]
                direction LR
                knowledge[Knowledge Type]
                activity[Activity Type]
                decision[Decision Type]
                media[Media Type]
            end

            subgraph Subtypes[Example Subtypes]
                direction LR
                k_types[Research/Mission/Vision]
                a_types[Conversations/Logs/Events]
                d_types[Policies/Strategies]
                m_types[Documents/Images]

                knowledge --> k_types
                activity --> a_types
                decision --> d_types
                media --> m_types
            end

            subgraph Relations[Edge Types]
                direction LR
                basic[related_to/version_of]
                semantic[influences/depends_on]
                temporal[follows_up/precedes]
            end
        end

        %% Memory Operations
        subgraph MemoryEngine[Memory Operations]
            direction LR
            rememberAction[Store/Remember]
            recallAction[Search/Recall]
            linkAction[Link Memories]
            versioning[Version Control]

            rememberAction --> recallAction
            recallAction --> linkAction
            linkAction --> versioning
        end
    end

    %% Organization & Agents
    subgraph Organization[Organization & Agents]
        direction TB

        %% Company Memory
        subgraph CompanyMemory[Company-Wide Memory]
            direction LR
            corpVision[Company Vision]
            corpMission[Company Mission]
            corpData[Knowledge Base]
        end

        %% Agents
        subgraph Agent1[Research Agent]
            a1Mem[Research Memories]
        end

        subgraph Agent2[Service Agent]
            a2Mem[Service Memories]
        end
    end

    %% System Connections
    Taxonomy --> MemoryEngine
    MemoryEngine --> Organization

    %% Memory Connections
    corpVision -.->|influences| a1Mem
    corpMission -.->|guides| a2Mem
    a1Mem -.->|shares| a2Mem
    a2Mem -.->|feedback| corpData
    a1Mem -.->|versions| corpData

    %% Styling
    classDef system fill:#dfeff9,stroke:#333,stroke-width:1.5px
    classDef engine fill:#fcf8e3,stroke:#333
    classDef taxonomy fill:#e7f5e9,stroke:#333
    classDef types fill:#f8f4ff,stroke:#333
    classDef org fill:#f4f4f4,stroke:#333

    class MeshOS system
    class MemoryEngine engine
    class Taxonomy,DataTypes,Subtypes,Relations taxonomy
    class Organization org

Getting Started

Install & Create a New Instance

# Install the CLI tool
npm install -g @props-labs/mesh-os

# Create and start a new project
mesh-os init my-project && cd my-project
mesh-os up

Usage

import { MeshOS } from '@props-labs/mesh-os';
import dotenv from 'dotenv';

// Load environment variables
dotenv.config();

// Initialize MeshOS
const client = new MeshOS({
  url: process.env.HASURA_URL || 'http://localhost:8080',
  apiKey: process.env.HASURA_ADMIN_SECRET || 'meshos',
  openaiApiKey: process.env.OPENAI_API_KEY
});

// Register an agent with a slug
const agent = await client.registerAgent(
  'AI_Explorer',
  'An agent for exploring data',
  { role: 'explorer' },
  'ai-explorer'
);

// Store structured knowledge
const memory = await client.remember(
  'The Moon has water ice.',
  agent.id,
  {
    type: 'knowledge',
    subtype: 'fact',
    tags: ['astronomy', 'moon'],
    version: 1
  }
);

// Retrieve similar knowledge
const results = await client.recall('Tell me about the Moon.', {
  agentId: agent.id,
  limit: 5,
  threshold: 0.7
});

🏗️ Core Features

Memory for Multi-Agent Systems – Let agents store, retrieve, and link structured knowledge.
Fast Semantic Search – pgvector-powered similarity matching across all memories.
Graph-Based Knowledge – Build evolving relationships between facts, ideas, and actions.
Versioning Built-In – Track updates, past decisions, and context shifts.
Event-Driven Execution – Automate workflows based on new knowledge.
Open & Portable – Runs anywhere PostgreSQL does. No black-box infrastructure.


🔗 Structured Taxonomy & Memory Graph

MeshOS enforces structured knowledge with memory classification and versioning:

Memory Type Examples
Knowledge Research reports, datasets, concepts
Activity Agent workflows, logs, system events
Decision Policy updates, business strategy
Media Documents, images, AI-generated content

Memories evolve over time, with full versioning and relationship tracking.


🛠️ Development & Configuration

Configuration

# Required
OPENAI_API_KEY=your_api_key_here

# Optional (defaults shown)
POSTGRES_PASSWORD=mysecretpassword
HASURA_ADMIN_SECRET=meshos
POSTGRES_PORT=5432
HASURA_PORT=8080
HASURA_ENABLE_CONSOLE=true

Development

git clone https://github.com/props-labs/mesh-os.git
cd mesh-os
pnpm install
pnpm build
pnpm test

Contributing

Contributions are welcome! Please submit a Pull Request.


⚖️ License

This project is licensed under the MIT License – see LICENSE for details.