Introduction to Embedded Machine Learning
Machine learning (ML) allows us to teach computers to make predictions and decisions based on data and learn from experiences. In recent years, incredible...
By Shawn Hymel on Coursera
About This Course
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. This course will give you a broad overview of how machine learning works, how to train neural networks, and how to deploy those networks to microcontrollers, which is known as embedded machine learning or TinyML. You do not need any prior machine learning knowledge to take this course. Familiarity with Arduino and microcontrollers is advised to understand some topics as well as to tackle the projects. Some math (reading plots, arithmetic, algebra) is also required for quizzes and projects. We will cover the concepts and vocabulary necessary to understand the fundamentals of machine learning as well as provide demonstrations and projects to give you hands-on experience.
Topics Covered
Frequently Asked Questions
How much does Introduction to Embedded Machine Learning cost?
Visit the Introduction to Embedded Machine Learning course page for current pricing and available discounts.
Who teaches Introduction to Embedded Machine Learning?
Introduction to Embedded Machine Learning is taught by Shawn Hymel, Edge Impulse.
What skill level is Introduction to Embedded Machine Learning for?
This course is designed for beginner learners.
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