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On this page
  • Getting started with Weights & Biases
  • Preliminary steps
  • Next steps: building a machine learning model
  • Using Weights & Biases
  1. Integrations

Weights & Biases

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Last updated 6 months ago

Edge Impulse has partnered with to help users build better models faster with experiment tracking, dataset versioning, and model management.

makes it easy to track your experiments, manage & version your data, and collaborate with your team so you can focus on building the best models. Use W&B's lightweight, interoperable tools to quickly track experiments, version and iterate on datasets, evaluate model performance, reproduce models, visualize results and spot regressions, and share findings with colleagues. Set up W&B in 5 minutes, then quickly iterate on your machine learning pipeline with the confidence that your datasets and models are tracked and versioned in a reliable system of record.

This tutorial describes how to integrate your Edge Impulse model with Weights & Biases and get started with tracking metrics within Weights & Biases.

Getting started with Weights & Biases

Preliminary steps

Next steps: building a machine learning model

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

Using Weights & Biases

Check out for information on getting started as a first-time user with the platform.

Now continue with the .

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

Follow the Weights & Biases tutorial on . This tutorial also includes information on the W&B Edge Impulse custom block integration, training sweeps, validation metrics, and training metrics of your dataset.

Weights & Biases's documentation
Install Edge Impulse CLI
Create a Weights & Biases account
Create an Edge Impulse account
tutorial provided by Weights & Biases
Responding to your voice
Recognize sounds from audio
Adding sight to your sensors
Detect objects with bounding boxes
Detect objects with centroids (FOMO)
Data forwarder
running and training Sweeps
Weights & Biases
Weights & Biases