Lecture

Machine Learning in IoT Era

Description

This lecture explores the opportunities arising from the convergence of Internet of Things and machine learning, focusing on the vast amount of data generated by IoT technologies and its personalized applications. It provides an introduction to machine learning, its philosophy, and practical usage, addressing challenges in implementing machine learning in the IoT domain.

In MOOC
IoT Systems and Industrial Applications with Design Thinking
The first MOOC to provide a comprehensive introduction to Internet of Things (IoT) including the fundamental business aspects needed to define IoT related products.
Instructors (2)
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