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Hive Banner

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Apache 2.0 License Y Combinator Discord Twitter Follow LinkedIn MCP

AI Agents Multi-Agent Headless HITL Production

OpenAI Anthropic Gemini

Overview

Build autonomous, reliable, self-improving AI agents without hardcoding workflows. Define your goal through conversation with a coding agent, and the framework generates a node graph with dynamically created connection code. When things break, the framework captures failure data, evolves the agent through the coding agent, and redeploys. Built-in human-in-the-loop nodes, credential management, and real-time monitoring give you control without sacrificing adaptability.

Visit adenhq.com for complete documentation, examples, and guides.

Agent.TUI.mp4

Who Is Hive For?

Hive is designed for developers and teams who want to build production-grade AI agents without manually wiring complex workflows.

Hive is a good fit if you:

  • Want AI agents that execute real business processes, not demos
  • Prefer goal-driven development over hardcoded workflows
  • Need self-healing and adaptive agents that improve over time
  • Require human-in-the-loop control, observability, and cost limits
  • Plan to run agents in production environments

Hive may not be the best fit if you’re only experimenting with simple agent chains or one-off scripts.

When Should You Use Hive?

Use Hive when you need:

  • Long-running, autonomous agents
  • Strong guardrails, process, and controls
  • Continuous improvement based on failures
  • Multi-agent coordination
  • A framework that evolves with your goals

Quick Links

Quick Start

Prerequisites

  • Python 3.11+ for agent development
  • Claude Code, Codex CLI, or Cursor for utilizing agent skills

Note for Windows Users: It is strongly recommended to use WSL (Windows Subsystem for Linux) or Git Bash to run this framework. Some core automation scripts may not execute correctly in standard Command Prompt or PowerShell.

Installation

# Clone the repository
git clone https://github.com/adenhq/hive.git
cd hive
# Run quickstart setup
./quickstart.sh

This sets up:

  • framework - Core agent runtime and graph executor (in core/.venv)
  • aden_tools - MCP tools for agent capabilities (in tools/.venv)
  • credential store - Encrypted API key storage (~/.hive/credentials)
  • LLM provider - Interactive default model configuration
  • All required Python dependencies with uv

Build Your First Agent

# Build an agent using Claude Code
claude> /hive
# Test your agent
claude> /hive-debugger
# (at separate terminal) Launch the interactive dashboard
hive tui
# Or run directly
hive run exports/your_agent_name --input '{"key": "value"}'

Coding Agent Support

Codex CLI

Hive includes native support for OpenAI Codex CLI (v0.101.0+).

  1. Config: .codex/config.toml with agent-builder MCP server (tracked in git)
  2. Skills: .agents/skills/ symlinks to Hive skills (tracked in git)
  3. Launch: Run codex in the repo root, then type use hive

Example:

codex> use hive

Opencode

Hive includes native support for Opencode.

  1. Setup: Run the quickstart script
  2. Launch: Open Opencode in the project root.
  3. Activate: Type /hive in the chat to switch to the Hive Agent.
  4. Verify: Ask the agent "List your tools" to confirm the connection.

The agent has access to all Hive skills and can scaffold agents, add tools, and debug workflows directly from the chat.

📖 Complete Setup Guide - Detailed instructions for agent development

Antigravity IDE Support

Skills and MCP servers are also available in Antigravity IDE (Google's AI-powered IDE). Easiest: open a terminal in the hive repo folder and run (use ./ — the script is inside the repo):

./scripts/setup-antigravity-mcp.sh

Important: Always restart/refresh Antigravity IDE after running the setup script—MCP servers only load on startup. After restart, agent-builder and tools MCP servers should connect. Skills are under .agent/skills/ (symlinks to .claude/skills/). See docs/antigravity-setup.md for manual setup and troubleshooting.

Features

  • Goal-Driven Development - Define objectives in natural language; the coding agent generates the agent graph and connection code to achieve them
  • Adaptiveness - Framework captures failures, calibrates according to the objectives, and evolves the agent graph
  • Dynamic Node Connections - No predefined edges; connection code is generated by any capable LLM based on your goals
  • SDK-Wrapped Nodes - Every node gets shared memory, local RLM memory, monitoring, tools, and LLM access out of the box
  • Human-in-the-Loop - Intervention nodes that pause execution for human input with configurable timeouts and escalation
  • Real-time Observability - WebSocket streaming for live monitoring of agent execution, decisions, and node-to-node communication
  • Interactive TUI Dashboard - Terminal-based dashboard with live graph view, event log, and chat interface for agent interaction
  • Cost & Budget Control - Set spending limits, throttles, and automatic model degradation policies
  • Production-Ready - Self-hostable, built for scale and reliability

Integration

Integration

Hive is built to be model-agnostic and system-agnostic.

  • LLM flexibility - Hive Framework is designed to support various types of LLMs, including hosted and local models through LiteLLM-compatible providers.
  • Business system connectivity - Hive Framework is designed to connect to all kinds of business systems as tools, such as CRM, support, messaging, data, file, and internal APIs via MCP.

Why Aden

Hive focuses on generating agents that run real business processes rather than generic agents. Instead of requiring you to manually design workflows, define agent interactions, and handle failures reactively, Hive flips the paradigm: you describe outcomes, and the system builds itself—delivering an outcome-driven, adaptive experience with an easy-to-use set of tools and integrations.

flowchart LR
 GOAL["Define Goal"] --> GEN["Auto-Generate Graph"]
 GEN --> EXEC["Execute Agents"]
 EXEC --> MON["Monitor & Observe"]
 MON --> CHECK{{"Pass?"}}
 CHECK -- "Yes" --> DONE["Deliver Result"]
 CHECK -- "No" --> EVOLVE["Evolve Graph"]
 EVOLVE --> EXEC
 GOAL -.- V1["Natural Language"]
 GEN -.- V2["Instant Architecture"]
 EXEC -.- V3["Easy Integrations"]
 MON -.- V4["Full visibility"]
 EVOLVE -.- V5["Adaptability"]
 DONE -.- V6["Reliable outcomes"]
 style GOAL fill:#ffbe42,stroke:#cc5d00,stroke-width:2px,color:#333
 style GEN fill:#ffb100,stroke:#cc5d00,stroke-width:2px,color:#333
 style EXEC fill:#ff9800,stroke:#cc5d00,stroke-width:2px,color:#fff
 style MON fill:#ff9800,stroke:#cc5d00,stroke-width:2px,color:#fff
 style CHECK fill:#fff59d,stroke:#ed8c00,stroke-width:2px,color:#333
 style DONE fill:#4caf50,stroke:#2e7d32,stroke-width:2px,color:#fff
 style EVOLVE fill:#e8763d,stroke:#cc5d00,stroke-width:2px,color:#fff
 style V1 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
 style V2 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
 style V3 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
 style V4 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
 style V5 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
 style V6 fill:#fff,stroke:#ed8c00,stroke-width:1px,color:#cc5d00
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The Hive Advantage

Traditional Frameworks Hive
Hardcode agent workflows Describe goals in natural language
Manual graph definition Auto-generated agent graphs
Reactive error handling Outcome-evaluation and adaptiveness
Static tool configurations Dynamic SDK-wrapped nodes
Separate monitoring setup Built-in real-time observability
DIY budget management Integrated cost controls & degradation

How It Works

  1. Define Your Goal → Describe what you want to achieve in plain English
  2. Coding Agent Generates → Creates the agent graph, connection code, and test cases
  3. Workers Execute → SDK-wrapped nodes run with full observability and tool access
  4. Control Plane Monitors → Real-time metrics, budget enforcement, policy management
  5. Adaptiveness → On failure, the system evolves the graph and redeploys automatically

Run Agents

The hive CLI is the primary interface for running agents.

# Browse and run agents interactively (Recommended)
hive tui
# Run a specific agent directly
hive run exports/my_agent --input '{"task": "Your input here"}'
# Run a specific agent with the TUI dashboard
hive run exports/my_agent --tui
# Interactive REPL
hive shell

The TUI scans both exports/ and examples/templates/ for available agents.

Using Python directly (alternative): You can also run agents with PYTHONPATH=exports uv run python -m agent_name run --input '{...}'

See environment-setup.md for complete setup instructions.

Documentation

Roadmap

Aden Hive Agent Framework aims to help developers build outcome-oriented, self-adaptive agents. See roadmap.md for details.

flowchart TD
subgraph Foundation
 direction LR
 subgraph arch["Architecture"]
 a1["Node-Based Architecture"]:::done
 a2["Python SDK"]:::done
 a3["LLM Integration"]:::done
 a4["Communication Protocol"]:::done
 end
 subgraph ca["Coding Agent"]
 b1["Goal Creation Session"]:::done
 b2["Worker Agent Creation"]
 b3["MCP Tools"]:::done
 end
 subgraph wa["Worker Agent"]
 c1["Human-in-the-Loop"]:::done
 c2["Callback Handlers"]:::done
 c3["Intervention Points"]:::done
 c4["Streaming Interface"]
 end
 subgraph cred["Credentials"]
 d1["Setup Process"]:::done
 d2["Pluggable Sources"]:::done
 d3["Enterprise Secrets"]
 d4["Integration Tools"]:::done
 end
 subgraph tools["Tools"]
 e1["File Use"]:::done
 e2["Memory STM/LTM"]:::done
 e3["Web Search/Scraper"]:::done
 e4["CSV/PDF"]:::done
 e5["Excel/Email"]
 end
 subgraph core["Core"]
 f1["Eval System"]
 f2["Pydantic Validation"]:::done
 f3["Documentation"]:::done
 f4["Adaptiveness"]
 f5["Sample Agents"]
 end
end
subgraph Expansion
 direction LR
 subgraph intel["Intelligence"]
 g1["Guardrails"]
 g2["Streaming Mode"]
 g3["Image Generation"]
 g4["Semantic Search"]
 end
 subgraph mem["Memory Iteration"]
 h1["Message Model & Sessions"]
 h2["Storage Migration"]
 h3["Context Building"]
 h4["Proactive Compaction"]
 h5["Token Tracking"]
 end
 subgraph evt["Event System"]
 i1["Event Bus for Nodes"]
 end
 subgraph cas["Coding Agent Support"]
 j1["Claude Code"]
 j2["Cursor"]
 j3["Opencode"]
 j4["Antigravity"]
 j5["Codex CLI"]
 end
 subgraph plat["Platform"]
 k1["JavaScript/TypeScript SDK"]
 k2["Custom Tool Integrator"]
 k3["Windows Support"]
 end
 subgraph dep["Deployment"]
 l1["Self-Hosted"]
 l2["Cloud Services"]
 l3["CI/CD Pipeline"]
 end
 subgraph tmpl["Templates"]
 m1["Sales Agent"]
 m2["Marketing Agent"]
 m3["Analytics Agent"]
 m4["Training Agent"]
 m5["Smart Form Agent"]
 end
end
classDef done fill:#9e9e9e,color:#fff,stroke:#757575
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Contributing

We welcome contributions from the community! We’re especially looking for help building tools, integrations, and example agents for the framework (check #2805). If you’re interested in extending its functionality, this is the perfect place to start. Please see CONTRIBUTING.md for guidelines.

Important: Please get assigned to an issue before submitting a PR. Comment on an issue to claim it, and a maintainer will assign you. Issues with reproducible steps and proposals are prioritized. This helps prevent duplicate work.

  1. Find or create an issue and get assigned
  2. Fork the repository
  3. Create your feature branch (git checkout -b feature/amazing-feature)
  4. Commit your changes (git commit -m 'Add amazing feature')
  5. Push to the branch (git push origin feature/amazing-feature)
  6. Open a Pull Request

Community & Support

We use Discord for support, feature requests, and community discussions.

Join Our Team

We're hiring! Join us in engineering, research, and go-to-market roles.

View Open Positions

Security

For security concerns, please see SECURITY.md.

License

This project is licensed under the Apache License 2.0 - see the LICENSE file for details.

Frequently Asked Questions (FAQ)

Q: What LLM providers does Hive support?

Hive supports 100+ LLM providers through LiteLLM integration, including OpenAI (GPT-4, GPT-4o), Anthropic (Claude models), Google Gemini, DeepSeek, Mistral, Groq, and many more. Simply set the appropriate API key environment variable and specify the model name.

Q: Can I use Hive with local AI models like Ollama?

Yes! Hive supports local models through LiteLLM. Simply use the model name format ollama/model-name (e.g., ollama/llama3, ollama/mistral) and ensure Ollama is running locally.

Q: What makes Hive different from other agent frameworks?

Hive generates your entire agent system from natural language goals using a coding agent—you don't hardcode workflows or manually define graphs. When agents fail, the framework automatically captures failure data, evolves the agent graph, and redeploys. This self-improving loop is unique to Aden.

Q: Is Hive open-source?

Yes, Hive is fully open-source under the Apache License 2.0. We actively encourage community contributions and collaboration.

Q: Can Hive handle complex, production-scale use cases?

Yes. Hive is explicitly designed for production environments with features like automatic failure recovery, real-time observability, cost controls, and horizontal scaling support. The framework handles both simple automations and complex multi-agent workflows.

Q: Does Hive support human-in-the-loop workflows?

Yes, Hive fully supports human-in-the-loop workflows through intervention nodes that pause execution for human input. These include configurable timeouts and escalation policies, allowing seamless collaboration between human experts and AI agents.

Q: What programming languages does Hive support?

The Hive framework is built in Python. A JavaScript/TypeScript SDK is on the roadmap.

Q: Can Hive agents interact with external tools and APIs?

Yes. Aden's SDK-wrapped nodes provide built-in tool access, and the framework supports flexible tool ecosystems. Agents can integrate with external APIs, databases, and services through the node architecture.

Q: How does cost control work in Hive?

Hive provides granular budget controls including spending limits, throttles, and automatic model degradation policies. You can set budgets at the team, agent, or workflow level, with real-time cost tracking and alerts.

Q: Where can I find examples and documentation?

Visit docs.adenhq.com for complete guides, API reference, and getting started tutorials. The repository also includes documentation in the docs/ folder and a comprehensive developer guide.

Q: How can I contribute to Aden?

Contributions are welcome! Fork the repository, create your feature branch, implement your changes, and submit a pull request. See CONTRIBUTING.md for detailed guidelines.

Q: When will my team start seeing results from Aden's adaptive agents?

Aden's adaptation loop begins working from the first execution. When an agent fails, the framework captures the failure data, helping developers evolve the agent graph through the coding agent. How quickly this translates to measurable results depends on the complexity of your use case, the quality of your goal definitions, and the volume of executions generating feedback.

Q: How does Hive compare to other agent frameworks?

Hive focuses on generating agents that run real business processes, rather than generic agents. This vision emphasizes outcome-driven design, adaptability, and an easy-to-use set of tools and integrations.


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