🤖 AutoGPT
🏗️ (Recommended) |
🐋 | 🐋 |
|---|---|---|
cargo install autogpt --all-features |
docker pull kevinrsdev/autogpt:0.1.1 |
docker pull kevinrsdev/orchgpt:0.1.1 |
autogpt -h orchgpt -h |
docker run autogpt -h |
docker run orchgpt -h |
AutoGPT is a pure rust framework that simplifies AI agent creation and management for various tasks. Its remarkable speed and versatility are complemented by a mesh of built-in interconnected GPTs, ensuring exceptional performance and adaptability.
🚀 Features
- Agent Creation: Easily create different types of agents tailored to specific tasks.
- Task Management: Efficiently manage tasks and distribute them among agents.
- Extensible: Extend functionality by adding new agent types and task handling capabilities.
- CLI Interface: Command-line interface for seamless interaction with the framework.
- SDK Integration: Software development kit for integrating AutoGPT into existing projects.
📦 Installation
Please refer to our tutorial for guidance on installing, running, and/or building the CLI from source using either Cargo or Docker.
[!NOTE] For optimal performance and compatibility, we strongly advise utilizing a Linux operating system to install this CLI.
🔄 Workflow
AutoGPT supports two modes of operation, enabling both standalone and distributed use cases:
1. 🧠 Agentic Networkless Mode (Standalone)
In this mode, the user runs an individual autogpt agent directly via a subcommand (e.g., autogpt arch). Each agent operates independently without needing a networked orchestrator.
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- ✍️ User Input: Provide a project's goal (e.g. "Develop a full stack app that fetches today's weather. Use the axum web framework for the backend and the Yew rust framework for the frontend.").
- 🚀 Initialization: AutoGPT initializes based on the user's input, creating essential components such as the
ManagerGPTand individual agent instances (ArchitectGPT, BackendGPT, FrontendGPT). - 🛠️ Agent Configuration: Each agent is configured with its unique objectives and capabilities, aligning them with the project's defined goals. This configuration ensures that agents contribute effectively to the project's objectives.
- 📋 Task Allocation: ManagerGPT distributes tasks among agents considering their capabilities and project requirements.
- ⚙️ Task Execution: Agents execute tasks asynchronously, leveraging their specialized functionalities.
- 🔄 Feedback Loop: Continuous feedback updates users on project progress and addresses issues.
2. 🌐 Agentic Networking Mode (Orchestrated)
In networking mode, autogpt connects to an external orchestrator (orchgpt) over a secure TLS-encrypted TCP channel. This orchestrator manages agent lifecycles, routes commands, and enables rich inter-agent collaboration using a unified protocol.
AutoGPT introduces a novel and scalable communication protocol called IAC (Inter/Intra-Agent Communication), enabling seamless and secure interactions between agents and orchestrators, inspired by operating system IPC mechanisms.
In networking mode, AutoGPT utilizes a layered architecture:
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All communication happens securely over TLS + TCP, with messages encoded in Protocol Buffers (protobuf) for efficiency and structure.
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User Input: The user provides a project prompt like:
|This is securely sent to the Orchestrator over TLS.
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Initialization: The Orchestrator parses the command and initializes the appropriate agent (e.g.,
ArchitectGPT). -
Agent Configuration: Each agent is instantiated with its specialized goals:
- ArchitectGPT: Plans system structure
- BackendGPT: Generates backend logic
- FrontendGPT: Builds frontend UI
- DesignerGPT: Handles design
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Task Allocation:
ManagerGPTdynamically assigns subtasks to agents using the IAC protocol. It determines which agent should perform what based on capabilities and the original user goal. -
Task Execution: Agents execute their tasks, communicate with their subprocesses or other agents via IAC (inter/intra communication), and push updates or results back to the orchestrator.
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Feedback Loop: Throughout execution, agents return status reports. The
ManagerGPTcollects all output, and the Orchestrator sends it back to the user.
🤖 Available Agents
At the current release, Autogpt consists of 8 built-in specialized autonomous AI agents ready to assist you in bringing your ideas to life! Refer to our guide to learn more about how the built-in agents work.
📌 Examples
Your can refer to our examples for guidance on how to use the cli in a jupyter environment.
📚 Documentation
For detailed usage instructions and API documentation, refer to the AutoGPT Documentation.
🤝 Contributing
Contributions are welcome! See the Contribution Guidelines for more information on how to get started.
📝 License
This project is licensed under the MIT License - see the LICENSE file for details.