About this video
Bayesian methods have grown recently because of their success in solving hard data analytics problems. They are rapidly becoming a must-have in every data scientists toolkit. The course uses a hands-on method to teach you how to use Bayesian methods to solve data analytics problems in the real world. You will understand the principles of estimation, inference, and hypothesis testing using the Bayesian framework. You will also learn to use them to solve problems such as A/B testing, understanding consumer habits, risk evaluation, adjusting machine learning predictions, reliability analysis, detecting the influence of one variable over an outcome, and many others.
By taking this course, you will be able to apply and use Bayesian methods as part of your data analytics toolbox, thus helping you use Python to solve a majority of common statistical problems in data science.
The code bundle for this course is available at - https://github.com/PacktPublishing/-Hands-On-Bayesian-Methods-with-Python
Style and Approach
The course follows a hands-on approach; explanations of core concepts are intuitive and always related to applications. Interesting real-world examples are presented and solved using computational methods, especially the PyMC3 library. Mathematics are used only when necessary.
- Publication date:
- May 2019
- 2 hours 3 minutes
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