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Probabilistic Machine Learning: An Introduction

Description

In this book, we will cover the most common types of ML, but from a probabilistic perspective.

Roughly speaking, this means that we treat all unknown quantities (e.g., predictions about the
future value of some quantity of interest, such as tomorrow’s temperature, or the parameters of some
model) as random variables, that are endowed with probability distributions which describe a
weighted set of possible values the variable may have.Read more.

Career Relevance by Data Role

The techniques and tools covered in Probabilistic Machine Learning: An Introduction are most similar to the requirements found in Data Scientist job advertisements.

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