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  1. Concepts
  2. Edge AI

Test and certification

PreviousCase study: Izoelektro smart grid monitoringNextWhat is embedded ML, anyway?

Last updated 6 months ago

You have made it to the end of the edge AI course! In the previous section, we looked at . The following video and written sections provide guidance on how to continue your journey in edge and embedded machine learning (ML). Scroll to the bottom of this page to take the comprehensive test and earn your digital certificate.

Going further

The following sections offer opportunities to continue your learning journey.

AI at the Edge book

If you would like to dive deeper into many of the topics presented in this course, we highly recommend checking out Dan and Jenny's AI at the Edge book.

Hands-on experience with Edge Impulse

Case studies

Embedded ML course

University program

Contact

Test

The following test covers material from all sections in the edge AI course. When you submit your answers, you will receive an email in a few minutes with your score. To pass, you must receive an 80% or more. You can take the test as many times as you would like. If you pass, you will receive a digital certificate via email.

You can .

If you would like to try Edge Impulse, this will walk you through the process of creating your own keyword spotting system. When you finish, you will be able to load the program onto your phone to watch the ML identify your keyword in real time.

While we just looked at case studies from Izoelektro and Tunstall in this course, Edge Impulse has worked with companies all over the world to solve complex problems in healthcare, agriculture, manufacturing, conservation, and more. You can read more of these case studies .

Edge Impulse created a . If you would like to learn the details behind neural networks, how to collect data, train models, and deploy them to embedded systems, we recommend taking this course. Accessing the materials on Coursera is free, and you can choose to pay for an official certificate.

If you are looking to teach edge AI in your school, we recommend taking a look at the . We offer a variety of free and open source content and example projects for you to use in your classroom.

If you have questions about Edge Impulse (or edge AI in general), you can reach out to us using one of the .

download a free digital copy of the ebook here
5 minute tutorial
here
full technical course on Coursera
Edge Impulse university program
links here
Izoelektro's RAM-1 device for monitoring power grid anomalies
Click here to watch the video
AI at the Edge book
Edge Impulse keyword spotting demo