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Zoogent

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AI agent orchestrator with Architect AI. Multi-team, web dashboard, 35+ MCP tools.

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Описание

AI agent orchestrator with Architect AI. Multi-team, web dashboard, 35+ MCP tools.

README

ZooGent

Lightweight AI agent orchestrator with built-in Architect AI. Multi-team support - run isolated agent teams in a single instance. Describe what you want to automate, get working agents.

Quick Start

npx zoogent create my-agents
cd my-agents
npx zoogent start

Open http://localhost:3200. Create account > create team > add Anthropic API key in Team Settings > go to Architect and describe what you want to automate.

What is ZooGent

ZooGent is a process manager for AI agent teams. It spawns agents, routes tasks between them, tracks costs, and captures logs. Each agent is a standalone script that calls its own LLM.

Multi-team isolation - one instance, multiple teams. Each team has its own agents, skills, memory, knowledge, Architect chat, and API keys. Teams don't see each other's data.

Two ways to use it:

  1. Chat UI - open the Architect page in your browser, describe your task in plain language. The Architect AI designs the team, creates skills, writes agent code, and tests everything.

  2. Claude Code + MCP - connect MCP to Claude Code, build agents from the terminal with full control over code and configuration.

Both paths use the same API, same database, same agents. Pick whichever fits your workflow.

Getting Started

Path 1: Web UI + Architect

Local

npx zoogent create my-agents
cd my-agents
npx zoogent start
  1. Open http://localhost:3200
  2. Create your account
  3. Create a team
  4. Go to Team Settings > add your Anthropic API key
  5. Go to Architect > describe what you want to automate

Architect designs agents, writes skills, generates code, and tests everything through conversation.

Server

npx zoogent create my-agents
cd my-agents
npx zoogent start -d

Set BETTER_AUTH_URL to your public URL in .env. Use a reverse proxy (nginx, Caddy) or deploy via Docker (see Deployment section). The web UI is the same - just accessed remotely.

Path 2: Claude Code + MCP

Local

Start the server locally, then connect Claude Code via MCP:

npx zoogent create my-agents
cd my-agents
npx zoogent start -d

Add the MCP server to Claude Code. Run this from inside the project you want to work in — each project typically binds to its own ZooGent instance (its own SQLite, teams, agents, API keys), so the MCP config should live with the project:

claude mcp add zoogent -s project -- npx zoogent mcp

-s project writes the config to .mcp.json in the project root — commit it and teammates who clone the repo get the same MCP setup automatically.

Claude Code auto-discovers the local server. Ask Claude to create a team and design your agents.

Remote server

Deploy ZooGent to a server (see Deployment). Open the web UI, create an account, go to Settings > generate an API key.

Run from inside the project that should connect to this ZooGent instance:

claude mcp add zoogent -s project \
  -e ZOOGENT_URL=https://your-domain.com \
  -e ZOOGENT_API_KEY=zg_your-key-from-settings \
  -- npx zoogent mcp

Each project can point at its own ZooGent (local or remote), with its own URL and API key. Keeping the config in the project's .mcp.json makes that mapping explicit. Use -s user instead only if you have a single shared ZooGent instance across all projects.

Alternative: configure via .mcp.json
{
  "mcpServers": {
    "zoogent": {
      "command": "npx",
      "args": ["zoogent", "mcp"],
      "env": {
        "ZOOGENT_URL": "https://your-domain.com",
        "ZOOGENT_API_KEY": "zg_your-key-from-settings"
      }
    }
  }
}

Claude Code connects to the remote server. Create teams, design agents, write code - all through MCP tools. Agents run on the server.

How It Works

  1. Create a team for your business process
  2. Describe what you want automated in the team's Architect chat
  3. Architect creates agents (with goals, schedules, models) and writes their code
  4. Agents run on schedule or by event, communicate through tasks
  5. Agents learn from experience (Memory) and share knowledge (Team Knowledge)
  6. When something breaks, Architect sees the error logs and suggests fixes

Examples

Social media monitoring. Scout agent scans Reddit and Hacker News every 2 hours for relevant posts. Comment writer drafts responses in the right tone. Feedback collector checks next day - which comments got upvotes, which got ignored. Team learns and adapts.

Invoice processing. Watcher agent polls an email inbox for new invoices. Parser extracts amounts, dates, vendor info. Router creates entries in your accounting system via API. Anomaly detector flags invoices that look unusual for human review.

Customer support automation. Intake agent receives customer requests via webhook. Analyzer classifies urgency and type, creates tasks for human team members in your project tracker. Follow-up agent monitors task completion, notifies customers when their request is resolved.

Features

Teams

Multiple isolated teams in one instance. Each team has its own agents, skills, memory, knowledge, Architect chat, and Anthropic API key. Header nav: Teams / Members / Settings. Team sub-nav: Architect / Agents / Tasks / Costs / Skills / Memory / Knowledge / Settings.

Architect AI

Built-in Claude-powered chat that designs and manages your agent team. Creates agents, writes skills, generates TypeScript code, assigns skills, triggers runs, reads logs - all through conversation. SSE streaming with real-time tool execution display. Each team has its own Architect with separate chat history.

Agent Runtimes

Runtime Source of code When to use
typescript (default) Stored in zoogent DB, uploaded via MCP/chat, bundled with esbuild ~95% of agents — write/iterate from Claude Code, remote deploy just works
exec Lives outside zoogent; you provide command + args + cwd Wrapping binaries, Python/Go scripts, existing tooling

For typescript, agents can import from a curated blessed set: @anthropic-ai/sdk, openai, @google/generative-ai, axios, cheerio, googleapis, zod, p-limit/p-retry/p-map/p-queue, date-fns, yaml, csv-parse/csv-stringify, cheerio, fast-xml-parser, marked, turndown, slugify, tiktoken, nodemailer, imapflow, mailparser, jsonwebtoken, plus all Node built-ins. Unknown imports fail at upload with a readable error. The full list lives in the code-generation system skill — call get_agent_guide("code-generation") from MCP.

Agent Types

Type How it runs Example
cron On schedule News scanner every 2 hours
manual On demand or via task Content writer triggered by scanner
long-running Persistent process Telegram bot, webhook listener

5 Communication Channels

Channel What Who sees it
Tasks Messages between agents Sender + receiver
Team Knowledge Shared facts (moderated) All agents in team
Memory Personal learnings Only the agent
Store Persistent working data (URLs, IDs, state) Only the agent
Skills Instructions from humans Assigned agents

Skills

Markdown documents with instructions and knowledge, stored in the database per team. Assigned to agents - injected into their context at startup. Create via Architect chat, MCP, or API. System skills (team-design, agent-patterns, code-generation, etc.) are global and used by Architect AI.

Agent Store

Key-value storage for agent working data that persists between runs. Track URLs, save processed IDs, cache state. Optional TTL for auto-expiry.

await storeSet('seen_urls', ['https://...'], 604800); // expires in 7 days
const urls = await storeGet('seen_urls');

Cost Tracking

Per-agent and per-team spending. Monthly budgets with hard stops - agent won't run if over budget. Set team budget in Team Settings, per-agent budget in agent config.

Self-Healing

When an agent fails, the error with stderr excerpt appears in the team's Architect chat. Open Architect, see what went wrong, ask it to fix the code.

Web Dashboard

Light and dark themes. Global pages: Teams, Members, Settings. Team pages: Architect (chat), Agents, Tasks, Costs, Skills, Memory, Knowledge.

CLI Commands

zoogent create <name>  # Create new project (recommended)
zoogent init           # Initialize in current directory
zoogent start          # Start server (foreground)
zoogent start -d       # Start server (daemon)
zoogent stop           # Stop daemon
zoogent status         # Check if running
zoogent logs           # View server logs (-f to follow)
zoogent mcp            # Start MCP server (stdio)

Deployment

Server (no Docker)

npx zoogent create my-agents
cd my-agents
npx zoogent start -d

Docker / Dokploy / Railway

No repository needed. Paste this compose into your hosting platform (Dokploy, Railway, etc.) and deploy.

services:
  app:
    image: node:24-slim
    working_dir: /app
    command: sh -c "npm install [email protected] @anthropic-ai/sdk && npx zoogent init && npx zoogent start"
    expose:
      - "3200"
    environment:
      - DATABASE_URL=./data/zoogent.db
      - PORT=3200
      - BETTER_AUTH_SECRET=${BETTER_AUTH_SECRET}
      - BETTER_AUTH_URL=${BETTER_AUTH_URL}
    volumes:
      - zoogent-data:/app/data
    restart: unless-stopped

volumes:
  zoogent-data:

Set BETTER_AUTH_SECRET (generate: openssl rand -hex 32) and BETTER_AUTH_URL (your public URL) in the platform's environment settings.

To upgrade ZooGent: change [email protected] to the new version and redeploy.

Required Environment Variables

Variable Required Description
BETTER_AUTH_SECRET Yes Session secret. openssl rand -hex 32
BETTER_AUTH_URL Remote only Public URL (e.g., https://your-domain.com)

Agent SDK

Typescript agents use zoogent/client for context + task flow:

import {
  // Tasks
  createTask, getMyTasks, checkoutTask, completeTask, failTask,
  // Reporting
  reportCost, reportMemory, reportTeamKnowledge,
  // Context
  getGoal, getSkills, getMemories, getTeamKnowledge,
  // Store
  storeGet, storeSet, storeDelete, storeKeys,
  // Skills
  loadSkill, loadSkills,
  // Consensus
  submitEvaluation,
  // Health
  heartbeat,
} from 'zoogent/client';

For runtime="typescript" agents, zoogent hosts these deps — your code just imports them. For runtime="exec" in any language, call the HTTP API directly: see the /llms-agent-guide.txt endpoint for the reporting contract.

All SDK calls are fail-open (errors caught silently). All functions read ZOOGENT_* env vars automatically.

Workflow

1. MCP: create_agent with source=<boilerplate> → zoogent bundles with esbuild, agent is ready
2. MCP: trigger_agent + get_logs → test
3. MCP: write_agent_code with new source → re-bundle, iterate

No local agents/ directory to keep in sync. Source of truth is zoogent's DB. On remote deploys, the same MCP calls work against ZOOGENT_URL without any deployment step for the agent code itself.

Environment Variables

Server

Variable Description Default
DATABASE_URL SQLite file path ./data/zoogent.db
PORT Server port 3200
BETTER_AUTH_SECRET Session encryption key Auto-generated
BETTER_AUTH_URL Public URL for auth http://localhost:3200

Injected into Agents

Variable Description
ZOOGENT_API_URL Server URL
ZOOGENT_AGENT_ID Agent ID
ZOOGENT_AGENT_GOAL Agent's mission
ZOOGENT_AGENT_MODEL AI model
ZOOGENT_RUN_ID Current run ID
ZOOGENT_TEAM_ID Team ID
ZOOGENT_API_KEY API key (from Settings)
ZOOGENT_AGENT_SKILLS Required skills content
ZOOGENT_INTEGRATIONS Agent integrations (JSON)
INTEGRATION_{NAME}_{FIELD} Individual integration credentials
ZOOGENT_MEMORIES Past learnings (JSON, scored)
ZOOGENT_TEAM_KNOWLEDGE Shared knowledge (JSON)
ANTHROPIC_API_KEY From team settings (auto-injected)

Tech Stack

  • Runtime: Node.js 24, TypeScript
  • HTTP: Hono (JSX SSR)
  • Database: SQLite (better-sqlite3, WAL, FTS5) + Drizzle ORM
  • Auth: Better Auth (email + password, sessions)
  • AI: Anthropic SDK (Claude for Architect)
  • UI: htmx + Tailwind CDN (server-rendered)
  • MCP: @modelcontextprotocol/sdk (stdio)
  • Cron: node-cron

Security

  • Agent env vars encrypted at rest (AES-256-GCM)
  • Per-team settings (API keys) encrypted in database
  • API keys managed in Settings UI (multiple named keys, stored in DB)
  • Unified auth: localhost bypass + API key (from DB) + session cookie
  • Path traversal protection on skill paths
  • Log sanitization (strips API keys from stdout/stderr)
  • First user = owner, registration closed after setup
  • Team isolation: agents, skills, memory, knowledge scoped per team
  • Agent sandbox: TypeScript agents always run with Node.js 24 --permission. Write access restricted to the team shared folder (ZOOGENT_SHARED_DIR = data/teams/{id}/shared/). No child_process spawning, no native addons. --max-old-space-size=512 applied.
  • Shared team folder: data/teams/{id}/shared/ — agents in the same team can exchange files (images, video, CSVs) without cloud storage. Persists across restarts if data/ is mounted as a Docker volume.

License

MIT

from github.com/bepunk/zoogent

Установить Zoogent в Claude Desktop, Claude Code, Cursor

Рекомендуется · одна команда, все IDE
unyly install zoogent

Ставит в Claude Desktop, Claude Code, Cursor и VS Code — сам разбирается с npx, uvx и сборкой из исходников.

Впервые? Поставь CLI: curl -fsSL https://unyly.org/install | sh

Или настроить вручную

Выполни в терминале:

claude mcp add zoogent -- npx -y zoogent

FAQ

Zoogent MCP бесплатный?

Да, Zoogent MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Zoogent?

Нет, Zoogent работает без API-ключей и переменных окружения.

Zoogent — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Zoogent в Claude Desktop, Claude Code или Cursor?

Открой Zoogent на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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