What is Edge Impulse?

Edge Impulse is the leading edge AI platform for collecting data, training models, and deploying them to your edge computing devices. It provides an end-to-end framework that easily plugs into your edge MLOps workflow.

Previously, we looked at edge MLOps and how it can be used to standardized your edge AI lifecycle. This time, we introduce Edge Impulse as a platform for building edge AI solutions and edge MLOps pipelines.

Click here to watch the video

Edge AI lifecycle

Edge Impulse helps with every step along the edge AI lifecycle, from collecting data, extracting features, designing machine learning (ML) models, training and testing those models, and deploying the models to end devices.

Edge Impulse for the edge AI lifecycle

Edge Impulse easily plugs into other machine learning frameworks so that you can scale and customize your model or pipeline as needed.

Note that while we have some pre-compiled software for supported boards to help you get started, we offer a variety of ways to collect data. In many cases, data collection requires customized software (and sometimes custom hardware). This data can easily be stored in a third-party location, such as an AWS S3 bucket. From there, data can be fetched and transformed using custom blocks.

Deployment can also be tricky, as edge devices can vary in their processing power, operating system (or lack thereof), and supported languages. As a result, Edge Impulse offers a number of deployment options that you can build your application around. In most cases, these deployed options come as open-source libraries that make interacting with the models easy.

Finally, all aspects of Edge Impulse can be scripted using a web API. This allows you complete the MLOps loop by monitoring models and triggering new data collection, model training, and redeployment as needed.

Edge Impulse Studio

Edge Impulse Studio is a web-based tool with a graphical interface to help you collect data, build an impulse, and deploy it to an end device.

Data can be stored, sorted, and labeled using the data acquisition tool.

Edge Impulse data acquisition

From there, an impulse can be created that includes one or more feature extraction methods along with a machine learning model.

Edge Impulse impulse design

A number of off-the-shelf feature extraction methods can be used and modified to suit the needs of your particular project. You can also design your own feature extraction method using a custom processing block.

Edge Impulse processing block configuration

Next, you can train a machine learning model (including classification, regression, or anomaly detection) using a learning block. A number of pre-made learning blocks can be used, but you can also create your own custom learning block or use the expert mode to modify the ML training code.

Edge Impulse learning block configuration

Once trained, the models can be tested using a holdout set or by connecting your device to ingest live data.

Edge Impulse testing

Finally, your full impulse can be deployed in a variety of formats, including a C++ library, Linux process (controlled via Python, Node.js, Go, C++, and others), Docker container, WebAssembly executable, or a pre-built firmware for supported hardware.

Edge Impulse deployment options

Edge Impulse includes advanced features like the autoML tool known as EON Tuner to try various impulse configurations to determine the best combination of blocks.

Edge Impulse EON Tuner

As mentioned previously, you can script all aspects of Studio using the web API, which allows you to construct full MLOps pipelines.

Enterprise features

Edge Impulse has a number of enterprise features to help you build full edge ML pipelines and scale your deployments. First, you have access to faster performance and more training time to create larger and more complex models.

You also gain access to an organization hub to easily monitor and maintain projects along with automated data pipelines, which allow you to configure and run transformation blocks in sequence to extract, transform, and load (ETL) data from a variety of sources.

Edge Impulse automated data pipelines

You can look through this health machine learning example design to see how data is captured, stored, loaded, and transformed from production servers using Edge Impulse tools.

Try our Professional Plan or FREE Enterprise Trial today.

Getting started

One of the fastest ways to try Edge Impulse is to follow this guided tour of creating your own keyword spotting model in 5 minutes. No programming experience is required!

Even though Edge Impulse works well for beginners and students, it is highly extensible for experts and engineers alike. The following guides can help you get started depending on your background:

Quiz

Test your knowledge on Edge Impulse with the following quiz:

Last updated

Revision created

push