Bayesian Algorithms for Self-Driving Cars

via edX

edX

302 Courses


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Overview

"Bayesian Algorithms for Self-Driving Cars" is a comprehensive online course available on edX, designed to elevate your expertise and prepare you for a successful career in the groundbreaking field of autonomous vehicles. This course meticulously bridges the gap between traditional algorithms and the sophisticated realm of Bayesian localization algorithms, crucial for the development of self-driving cars.

Participants will delve into a variety of key topics including the Markov assumption, foundational to the Kalman filter, understanding and application of the Histogram filter and multi-modal distributions, along with mastering the particle filter and its efficient programming techniques. The curriculum is enriched with a multitude of questions and exercises, complemented by four hands-on programming assignments, enabling you to practically implement and program these advanced algorithms.

This MOOC is ideal for individuals looking to deepen their knowledge in a series of interconnected domains, namely Computer Vision, Algorithms and Data Structures, Autonomous Vehicles, and Bayesian Statistics. Whether you're seeking to enhance your skill set or pivot towards a career in a related field, this course lays down a solid foundation and pathway towards achieving those objectives.

Syllabus


Taught by

Roi Yozevitch


Tags

provider edX

edX

302 Courses


edX

pricing Free Online Course (Audit)
language English
duration 13 weeks, 2-3 hours a week
sessions On-Demand
level Beginner