What exactly is “IoT”? Internet of Things, yes; but what does that mean?

Internet of Things is a ** structural** definition; it says there are “Things” such as sensors and devices (on machines or people) connected together in a Network. So what? What does a Network of Sensors & Devices allow us to DO? What is the

Being able to connect things together is “table stakes” at the intelligence augmentation game. What…

ContinueAdded by PG Madhavan on October 16, 2016 at 9:30am — No Comments

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In an earlier blog, “**Need for DYNAMICAL Machine Learning: Bayesian exact recursive estimation**”, I introduced the need for Dynamical ML as we now enter the “Walk” stage of “Crawl-Walk-Run” evolution of machine learning. First, I defined Static ML as follows: Given a set of inputs and outputs, find a static map between the two…

Added by PG Madhavan on October 6, 2016 at 10:04am — No Comments

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