Machine learning (ML) allows us to teach computers to make predictions and decisions based on data and learn from experiences. In recent years, incredible optimizations have been made to machine learning algorithms, software frameworks, and embedded hardware. Thanks to this, running deep neural networks and other complex machine learning algorithms is possible on low-power devices like microcontrollers.

Introduction to Embedded Machine Learning

Introduction to Embedded Machine Learning
This course is part of Edge AI for Microcontrollers Specialization


Instructors: Shawn Hymel
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752 reviews
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What you'll learn
The basics of a machine learning system
How to deploy a machine learning model to a microcontroller
How to use machine learning to make decisions and predictions in an embedded system
Skills you'll gain
Tools you'll learn
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Reviewed on Apr 8, 2021
This is a perfect and practical introduction to embedded machine learning. Learned a lot! Thank you.
Reviewed on Mar 3, 2021
Very good arrange of topics and explain complex topics as simply as possible. Recommended course for anyone who needs to start in embedded machine learning.
Reviewed on Jul 20, 2021
Best courser, as we are not just learning about the Embedded ML, as we also learn the fundamentals of ML.





