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edX

Bayesian Algorithms for Self-Driving Cars

Campus - the Israeli National Project for Digital Learning via edX

Overview

“Bayesian Algorithms for Self-Driving Cars ” is a MOOC that will boost your skills and will prepare you for a career in the industry.

The course was designed to help students bridge the gap between "classic" algorithms and the concept of Bayesian localization algorithms.

We will explore topics such as the Markov assumption and which is utilized in the Kalman filter, the concept of Histogram filter and multi-modal distributions, the particle filter and how to efficiently program it, and many more.

In addition to many questions and exercises, we've included also 4 programing assignments so you will be able to actually program these algorithms for yourself.

Taught by

Roi Yozevitch

Reviews

3.0 rating, based on 1 Class Central review

Start your review of Bayesian Algorithms for Self-Driving Cars

  • Anonymous
    The video lecture had excellent content, covering a wide range of topics. However, it fell short in providing sufficient explanations for the answers to questions. Overall, a valuable resource, but could use improvement in that aspect.

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