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  • Installation guide
  • Collecting data
  • Classifying data
  1. Tools
  2. Edge Impulse for Linux

Linux Go SDK

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Last updated 6 months ago

This library lets you run machine learning models and collect sensor data on machines using Go. The SDK is open source and hosted on GitHub: .

See our to learn more about the .eim file format.

Installation guide

  1. Install or higher.

  2. Clone this repository:

    $ git clone https://github.com/edgeimpulse/linux-sdk-go
  3. Find the example that you want to build and run go build:

    $ cd cmd/eimclassify
    $ go build
  4. Run the example:

    $ ./eimclassify

    And follow instructions.

  5. This SDK is also published to pkg.go.dev, so you can pull the package from there too.

Collecting data

Before you can classify data you'll first need to collect it. If you want to collect data from the camera or microphone on your system you can use the Edge Impulse CLI, and if you want to collect data from different sensors (like accelerometers or proprietary control systems) you can do so in a few lines of code.

Collecting data from the camera or microphone

Collecting data from other sensors

Classifying data

To classify data (whether this is from the camera, the microphone, or a custom sensor) you'll need a model file. This model file contains all signal processing code, classical ML algorithms and neural networks - and typically contains hardware optimizations to run as fast as possible. To grab a model file:

  1. Train your model in Edge Impulse.

  2. Download the model file via:

    $ edge-impulse-linux-runner --download modelfile.eim

    This downloads the file into modelfile.eim. (Want to switch projects? Add --clean)

Then you can start classifying realtime sensor data. We have examples for:

To collect data from the camera or microphone, follow the for your development board.

To collect data from other sensors you'll need to write some code to collect the data from an external sensor, wrap it in the Edge Impulse Data Acquisition format, and upload the data to the Ingestion service. .

.

- grabs data from the microphone and classifies it in realtime.

- grabs data from a webcam and classifies it in realtime.

- classifies custom sensor data.

Linux
edgeimpulse/linux-sdk-go
Linux EIM executable guide
Go 1.15
getting started guide
Here's an end-to-end example
Install the Edge Impulse for Linux CLI
Audio
Camera
Custom data