Probabilistic Programming with Python and Julia




Probabilistic Programming with Python and Julia

You want to know and to learn one of the top 10 most influencial algorithms of the 20th century? Then you are right in this course. We will cover many powerful techniques from the field of probabilistic programming. This field is fast-growing, because these technique are getting more and more famous and proof to be efficient and reliable.

We will cover all major fields of Probabilistic Programming: Distributions, Markov Chain Monte Carlo, Gaussian Mixture Models, Bayesian Linear Regression, Bayesian Logistic Regression, and hidden Markov models.

For each field, the algorithms are shown in detail: Their core concepts are presented in 101 lectures. Here, you will learn how the algorithm works. Then we implement it together in coding lectures. These are available for Python and Julia. With this knowledge you can clearly identify a problem at hand and develop a plan of attack to solve it.

Mastering this course will enable you to understand the concepts of probabilistic programming and you will be able to apply this in your private and professional projects.

Introduction and simple examples to start into probabilistic programming

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What you will learn
  • Introduction to probabilistic programming
  • Bayesian statistics
  • Markov Chain Monte Carlo

Rating: 3.4

Level: All Levels

Duration: 2.5 hours

Instructor: Bert Gollnick


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