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On this page
  • SSO (Single Sign On)
  • Create and build a machine learning project
  • Deployment
  • Share your project
  • Use the Edge Impulse CLI
  1. Integrations

Arduino Machine Learning Tools

PreviousPorting GuideNextNVIDIA Omniverse

Last updated 6 months ago

Arduino and Edge Impulse have partnered to bring machine learning tools to all Arduino Cloud users with a branded and integrated experience.

The video below contains an example of the full workflow to train a keyword spotting and to run the model on the Arduino Nano 33 BLE Sense using Arduino ML Tools solution:

SSO (Single Sign On)

Arduino Pro users

Arduino Pro users will benefit a 60-min per job limit instead of the default 20-min per job limit.

Create and build a machine learning project

To create a new project, click on your profile picture in the upper right corner and select + Create new project.

Once you create a project, select the project type you want to build using the helper. You will then arrive on your project's Dashboard:

You can also select which board you are using on the Project Info card, in the bottom-right corner.

The following boards are currently supported in Arduino ML Tools:

*(only using the ingestion sketch and arduino library deployment, latency calculations may not be available)

With everything set up you can now build your first machine learning model with these tutorials:

Deployment

Share your project

Once you are happy with the results, please share your project publicly and let everyone knows about it:

Use the Edge Impulse CLI

You can log in the ML Tools platform using your Arduino Cloud credentials. To access the Arduino Machine Learning Tools platform, either go to or .

*

.

Looking to connect different sensors? The lets you easily send data from any sensor into Edge Impulse.

Once your project is ready, you can either download an or a

Here is an example of the public project made after from the video at the top of this page: .

By default, no password is set for your user profile as you have logged using Arduino Cloud SSO. If you want to use , you need to set a password. To do so, click on Your profile from the upper-right corner menu:

cloud.arduino.cc
mltools.arduino.cc
Arduino Nano 33 BLE Sense
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Responding to your voice
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Arduino ML Tools - Set user password