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Library to read data from the BMW Connected Drive portal

Project description

bimmer_connected

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This is a simple library to query and control the status of your BMW or Mini vehicle from the ConnectedDrive portal.

Installation

bimmer_connected requires Python 3.6 or above but should also run with Python 3.5. Just install the latest release from PyPI using pip3 install --upgrade bimmer_connected.

Alteratively, clone the project and execute pip install -e . to install the current master branch.

Usage

After installation, execute bimmerconnected from command line for usage instruction or see the full CLI documentation.

The description of the modules can be found in the module documentation.

This library is written to be included in Home Assistant.

Compatibility

This works with BMW (and Mini) vehicles with a ConnectedDrive account. So far it is tested on vehicles with a ‘MGU’, ‘NBTEvo’, ‘EntryEvo’, ‘NBT’, or ‘EntryNav’ navigation system. If you have any trouble with other navigation systems, please create an issue with your server responses (see next section).

To use this library, your BMW (or Mini) must have the remote services enabled for your vehicle. You might need to book this in the ConnectedDrive/Mini Connected portal and this might cost some money. In addition to that you need to enable the Remote Services in your infotainment system in the vehicle.

Different models of vehicles and infotainment systems result in different types of attributes provided by the server. So the experience with the library will certaily vary across the different vehicle models.

Data Contributions

If some features do not work for your vehicle, we would need the data returned form the server to analyse this and potentially extend the code. Different models and head unit generations lead to different responses from the server.

If you want to contribute your data, perform the following steps:

# get the latest version of the library
pip3 install --upgrade bimmer_connected

# run the fingerprint function
bimmerconnected fingerprint <username> <password> <region>

This will create a set of log files in the “vehicle_fingerprint” folder. Before sending the data to anyone please check for any personal data such as dealer name or country.

The following attributes are by default replaced with anonymized values:

  • vin (Vehicle Identification Number)

  • lat and lon (GPS position)

  • licensePlate

  • information of dealer

Create a new fingerprint data contribution and add the files as attachment to the discussion.

Please add your model and year to the title of the issue, to make it easier to organize. If you know the “chassis code” of your car, you can include that too. (For example, googling “2017 BMW X5” will show a Wikipedia article entitled “BMW X5 (F15)”. F15 is therefore the chassis code of the car.)

Note: We will then use this data as additional test cases. So we will publish (parts of) it (after checking for personal information again) and use this as test cases for our library. If you do not want this, please let us know in advance.

Code Contributions

Contributions are welcome! Please make sure that your code passes the checks in .github/workflows/test.yml. We currently test against flake8, pylint and our own pytest suite. And please add tests where it makes sense. The more the better.

See the contributing guidelines for more details.

Thank you

Thank you to all contributors for your research and contributions! And thanks to everyone who shares the fingerprint data of their vehicles which we use to test the code.

This library is basically a best-of of other similar solutions, yet none of them provided a ready to use library with a matching interface to be used in Home Assistant and is available on pypi.

Thank you for your great software!

License

The bimmer_connected library is licensed under the Apache License 2.0.

Disclaimer

This library is not affiliated with or endorsed by BMW Group.

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