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Udacity's Self-Driving Car Engineer Nanodegree

Udacity in perfect sync with the latest industry advancements, finds itself once more at the forefront of  cutting edge technology, by launching a brand new Nanodegree on the Engineering of Self-Driving cars.

This Nanodegree seems the perfect addition to the list of offerings from Udacity, the technology training organisation founded by Sebastian Thrum, who at the same time as being a Stanford professor was at the helm of Google's driverless car team and those who enrolled in Thrun's record breaking AI Class that stimulated the creation of Udacity and the MOOC phenomenon will remember his passion for the idea of using artificial intelligence to engineer safer cars that would eliminate human error


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