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A FastAPI interface for loading, managing and running Droneleaf Petal applications

Project description

Petal App Manager

A modular application framework for building and deploying "Petals" - pluggable components that can interact with various systems through a unified proxy architecture. Built on FastAPI, Petal App Manager provides a structured way to develop applications that need to interact with external systems like MAVLink devices, Redis, local databases, and more.

Overview

Petal App Manager serves as a backbone for developing modular applications. It:

  • Provides a proxy system to interact with different backends (MAVLink, Redis, DynamoDB)
  • Offers a plugin architecture for developing and loading "Petals"
  • Handles HTTP, WebSocket, and MQTT (planned) endpoints automatically
  • Manages the lifecycle of connections and resources

Dependencies

  • Python 3.10+ and python3-dev package (for building some dependencies)

    sudo add-apt-repository ppa:deadsnakes/ppa --yes
    sudo apt update; apt-get update;
    sudo apt-get install python3.10 -y
    sudo apt-get install python3.10-dev
    

[!NOTE] You can change python3.10 to whatever version you like >=3.10

  • Redis server (for caching and message passing)

    # Install Redis on Ubuntu/Debian
    sudo apt-get install redis-server
    
    # Start Redis service
    sudo systemctl start redis-server
    sudo systemctl enable redis-server  # Auto-start on boot
    
  • Controller-dashboard setup

    The controller dashboard can be installed using

    hear-cli local_machine run_program --p controller_dashboard_prepare
    
  • Additional dependencies based on specific petals

Installation

Dependencies Setup

  • For building pymavlink from source, ensure GCC is used (see above)
export CC=gcc
pdm install -G prod

Installation From PyPI (recommended for users)

pip install petal-app-manager

You may run the server using

# Install and run with uvicorn
uvicorn petal_app_manager.main:app --port 9000

[!TIP] If you would like to run the server with logging to a file enabled: create a .env file and place it in the project root directory Below is a list of some other useful parameters

PETAL_LOG_LEVEL=INFO
PETAL_LOG_TO_FILE=true
MAVLINK_ENDPOINT=udp:127.0.0.1:14551
MAVLINK_BAUD=115200
MAVLINK_MAXLEN=200
MAVLINK_WORKER_SLEEP_MS=None
MAVLINK_HEARTBEAT_SEND_FREQUENCY=5.0

Development Installation (recommended for developers)

For development of petal-app-manager concurrently with your petal, it's recommended to use an editable installation.

  1. First clone the petal-app-manager

[!NOTE] Please see the petal development guide first

```bash
git clone https://github.com/DroneLeaf/petal-app-manager.git
git clone https://github.com/DroneLeaf/petal-flight-log.git
git clone --recurse-submodules https://github.com/DroneLeaf/mavlink.git
cd petal-app-manager
```
  1. Define your dev dependancies (i.e., your petal) in pyproject.toml as

    dev = [
        # your existing dependancies
        "-e file:///${PROJECT_ROOT}/../petal-flight-log/#egg=petal-flight-log",
        "-e file:///${PROJECT_ROOT}/../mavlink/pymavlink/#egg=leaf-pymavlink",
        # ...
        "-e file:///path/to/your/my-petal/#egg=my-petal"
    ]
    

[!NOTE] If you would like to develop mavlink or add user-defined mavlink messages, you may do so under your local clone of mavlink https://github.com/DroneLeaf/mavlink.git pymavlink will be available at /path/to/mavlink/pymavlink under the mavlink directory. You can then add it to pyproject.toml

dev = [
    "-e file:///path/to/pymavlink/#egg=leaf-pymavlink",
]

[!TIP] You may use relative paths intead of absolute paths like so (assuming your directories are one level higher than petal-app-manager)

cd .. # if in the petal-app-manager directory
git clone --recurse-submodules https://github.com/DroneLeaf/mavlink.git

and then add them to your dependancies under pyproject.toml

dev = [
    # existing petals
    "-e file:///${PROJECT_ROOT}/../mavlink/pymavlink/#egg=leaf-pymavlink",
    "-e file:///${PROJECT_ROOT}/../my-petal/#egg=my-petal",
]
  1. Finally, you may install your dependancies in editable mode

    pdm install -G dev
    
  2. You may now run the petal-app-manager server

    source .venv/bin/activate # to activate the pdm virtual environment in which everythign is installed
    uvicorn petal_app_manager.main:app --reload --port 9000
    
  3. Test your endpoints:

    • Access your petal at: http://localhost:9000/petals/my-petal/hello
    • Check the API documentation: http://localhost:9000/docs

[!TIP] For debugging, you can use VSCode's launch configuration:

  1. Add this to .vscode/launch.json:
    {
        "version": "0.2.0",
        "configurations": [
            {
                "name": "Petal App Manager",
                "type": "python",
                "request": "launch",
                "module": "uvicorn",
                "args": [
                    "petal_app_manager.main:app",
                    "--reload",
                    "--port", "9000"
                ],
                "jinja": true,
                "justMyCode": false
            }
        ]
    }
    
  2. Start debugging with F5 or the Run and Debug panel

Project Structure

petal_app_manager/
├── __init__.py
├── main.py            # FastAPI application setup
├── api/               # Core API endpoints
├── plugins/           # Plugin architecture   ├── base.py        # Base Petal class   ├── decorators.py  # HTTP/WebSocket decorators   └── loader.py      # Dynamic petal loading
├── proxies/           # Backend communication   ├── base.py        # BaseProxy abstract class   ├── external.py    # MAVLink/ROS communication   ├── localdb.py     # Local DynamoDB interaction   └── redis.py       # Redis interaction
└── utils/             # Utility functions

How It Works

Proxy System

The framework uses proxies to interact with different backends:

  • MavLinkExternalProxy: Communicates with PX4/MAVLink devices
  • RedisProxy: Interfaces with Redis for caching and pub/sub
  • LocalDBProxy: Provides access to a local DynamoDB instance

Proxies are initialized at application startup and are accessible to all petals.

Accessing the API

Once running, access:

Troubleshooting

Common Issues

  • Redis Connection Errors:

    • Ensure Redis server is running: sudo systemctl status redis-server
    • Check default connection settings in main.py
  • MAVLink Connection Issues:

    • Verify the connection string

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