Skip to main content

AI-powered multi-agent system that automates real Android and iOS devices through low-level control using LangGraph.

Project description

mobile-use: automate your phone with natural language

mobile-use in Action

Mobile-use is a powerful, open-source AI agent that controls your Android or IOS device using natural language. It understands your commands and interacts with the UI to perform tasks, from sending messages to navigating complex apps.

Mobile-use is quickly evolving. Your suggestions, ideas, and reported bugs will shape this project. Do not hesitate to join in the conversation on Discord or contribute directly, we will reply to everyone! ❤️

✨ Features

  • 🗣️ Natural Language Control: Interact with your phone using your native language.
  • 📱 UI-Aware Automation: Intelligently navigates through app interfaces (note: currently has limited effectiveness with games as they don't provide accessibility tree data).
  • 📊 Data Scraping: Extract information from any app and structure it into your desired format (e.g., JSON) using a natural language description.
  • 🔧 Extensible & Customizable: Easily configure different LLMs to power the agents that power mobile-use.

Benchmarks

Project banner

We are global number 1 Opensource pass@1 on the AndroidWorld benchmark.

More info here: https://minitap.ai/research/mobile-ai-agents-benchmark

The official leaderboard is available here

🚀 Getting Started

Ready to automate your mobile experience? Follow these steps to get mobile-use up and running.

  1. Set up Environment Variables: Copy the example .env.example file to .env and add your API keys.

    cp .env.example .env
    
  2. (Optional) Customize LLM Configuration: To use different models or providers, create your own LLM configuration file.

    cp llm-config.override.template.jsonc llm-config.override.jsonc
    

    Then, edit llm-config.override.jsonc to fit your needs.

    You can also use local LLMs or any other openai-api compatible providers :

    1. Set OPENAI_BASE_URL and OPENAI_API_KEY in your .env
    2. In your llm-config.override.jsonc, set openai as the provider for the agent nodes you want, and choose a model supported by your provider.

    [!NOTE]
    If you want to use Google Vertex AI, you must either:

    • Have credentials configured for your environment (gcloud, workload identity, etc…)
    • Store the path to a service account JSON file as the GOOGLE_APPLICATION_CREDENTIALS environment variable

    More information: - Credential types - google.auth API reference

Quick Launch (Docker)

[!NOTE]
This quickstart, is only available for Android devices/emulators as of now, and you must have Docker installed.

First:

  • Either plug your Android device and enable USB-debugging via the Developer Options
  • Or launch an Android emulator

[!IMPORTANT]
At some point, the terminal will HANG, and Maestro will ask you Maestro CLI would like to collect anonymous usage data to improve the product. It's up to you whether you accept (i.e enter 'Y') or not (i.e. enter 'n').

Then run in your terminal:

  1. For Linux/macOS:
chmod +x mobile-use.sh
bash ./mobile-use.sh \
  "Open Gmail, find first 3 unread emails, and list their sender and subject line" \
  --output-description "A JSON list of objects, each with 'sender' and 'subject' keys"
  1. For Windows (inside a Powershell terminal):
powershell.exe -ExecutionPolicy Bypass -File mobile-use.ps1 `
  "Open Gmail, find first 3 unread emails, and list their sender and subject line" `
  --output-description "A JSON list of objects, each with 'sender' and 'subject' keys"

[!NOTE]
If using your own device, make sure to accept the ADB-related connection requests that will pop up on your device. Similarly, Maestro will need to install its APK on your device, which will also require you to accept the installation request.

🧰 Troubleshooting

The script will try to connect to your device via IP.
Therefore, your device must be connected to the same Wi-Fi network as your computer.

1. No device IP found

If the script fails with the following message:

Could not get device IP. Is a device connected via USB and on the same Wi-Fi network?

Then it couldn't find one of the common Wi-Fi interfaces on your device.
Therefore, you must determine what WLAN interface your phone is using via adb shell ip addr show up. Then add the --interface <YOUR_INTERFACE_NAME> option to the script.

2. Failed to connect to <DEVICE_IP>:5555 inside Docker

This is most probably an issue with your firewall blocking the connection. Therefore there is no clear fix for this.

3. Failed to pull GHCR docker images (unauthorized)

Since UV docker images rely on a ghcr.io public repositories, you may have an expired token if you used ghcr.io before for private repositories.
Try running docker logout ghcr.io and then run the script again.

Manual Launch (Development Mode)

For developers who want to set up the environment manually:

1. Device Support

Mobile-use currently supports the following devices:

  • Physical Android Phones: Connect via USB with USB debugging enabled.
  • Android Simulators: Set up through Android Studio.
  • iOS Simulators: Supported for macOS users.

[!NOTE]
Physical iOS devices are not yet supported.

2. Prerequisites

For Android:

For iOS:

  • Xcode: Apple's IDE for iOS development.

Before you begin, ensure you have the following installed:

  • uv: A lightning-fast Python package manager.
  • Maestro: The framework we use to interact with your device.

3. Installation

  1. Clone the repository:

    git clone https://github.com/minitap-ai/mobile-use.git && cd mobile-use
    
  2. Setup environment variables

  3. Create & activate the virtual environment:

    # This will create a .venv directory using the Python version in .python-version
    uv venv
    
    # Activate the environment
    # On macOS/Linux:
    source .venv/bin/activate
    # On Windows:
    .venv\Scripts\activate
    
  4. Install dependencies:

    # Sync with the locked dependencies for a consistent setup
    uv sync
    

👨‍💻 Usage

To run mobile-use, simply pass your command as an argument.

Example 1: Basic Command

python ./src/mobile_use/main.py "Go to settings and tell me my current battery level"

Example 2: Data Scraping

Extract specific information and get it back in a structured format. For instance, to get a list of your unread emails:

python ./src/mobile_use/main.py \
  "Open Gmail, find all unread emails, and list their sender and subject line" \
  --output-description "A JSON list of objects, each with 'sender' and 'subject' keys"

[!NOTE]
If you haven't configured a specific model, mobile-use will prompt you to choose one from the available options.

🔎 Agentic System Overview

Graph Visualization

This diagram is automatically updated from the codebase. This is our current agentic system architecture.

❤️ Contributing

We love contributions! Whether you're fixing a bug, adding a feature, or improving documentation, your help is welcome. Please read our Contributing Guidelines to get started.

⭐ Star History

Star History Chart

📜 License

This project is licensed under the MIT License - see the 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

minitap_mobile_use-2.6.0.tar.gz (92.7 kB view details)

Uploaded Source

Built Distribution

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

minitap_mobile_use-2.6.0-py3-none-any.whl (139.8 kB view details)

Uploaded Python 3

File details

Details for the file minitap_mobile_use-2.6.0.tar.gz.

File metadata

  • Download URL: minitap_mobile_use-2.6.0.tar.gz
  • Upload date:
  • Size: 92.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: uv/0.9.4

File hashes

Hashes for minitap_mobile_use-2.6.0.tar.gz
Algorithm Hash digest
SHA256 dc849c04ca8260dbdeeb45d2312c310abd0e164ee517272e081ff1c4e810ca0c
MD5 45ea38f7fbae642acf24c1d733e9af43
BLAKE2b-256 6f13322478d02a50b899979a7eb839a5296ab302b7caacbd307ea52d58cb5c1b

See more details on using hashes here.

File details

Details for the file minitap_mobile_use-2.6.0-py3-none-any.whl.

File metadata

File hashes

Hashes for minitap_mobile_use-2.6.0-py3-none-any.whl
Algorithm Hash digest
SHA256 5a56421f851480aa785b03d683fc3177f263db66df7577810f0e22ca8347de0b
MD5 2b08baa08f2b9a7be14a6ef35c7df383
BLAKE2b-256 84e97a00d5f945f1d11a14d394e75de3545f7c278761375f093950393ccc217d

See more details on using hashes here.

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