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Bayesian Data Analysis in Python

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Course Report - Bayesian Data Analysis in Python

Course Report

Find detailed report of this course which helps you make an informed decision on its relevance to your learning needs. Find out the course's popularity among Careervira users and the job roles that would find the course relevant for their upskilling here. You can also find how this course compares against similar courses and much more in the course report.

Course Features

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Duration

4 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

4 hours

Course Description

This course offers a comprehensive introduction to Bayesian data analysis, a popular technique for statistical inference. Unlike traditional methods, Bayesian data analysis allows you to calculate conditional probabilities without relying on fixed constants such as confidence levels or P values. By taking this course, you will understand how Bayesian data analysis differs from traditional methods and how to incorporate it into your data science toolbox.

The course covers various topics, including decision analysis and A/B testing, which are essential skills for analyzing real-world data such as advertising and sales. You will have the opportunity to work with actual datasets and apply your knowledge to solve practical problems.

One of the highlights of this course is the use of the PyMC3 library, a powerful tool for designing, fitting, and interpreting Bayesian model designs. By learning how to utilize this library effectively, you will be able to apply Bayesian data analysis techniques practically and efficiently.

Whether you are new to Python or already have some experience with it, this course is designed to help you learn Python specifically for data analysis purposes. You will gain a solid foundation in the language used in data science and learn how to leverage Python's capabilities for data analysis.

Overall, this course offers a comprehensive and practical approach to Bayesian data analysis. By taking this course, you will gain valuable skills that can be applied to various real-world data science and analysis scenarios.

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Highlights

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Top 20 Percentile

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Rating & Reviews

Top 30 Percentile

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Hands on training

This course stands out as one of the top 20 percentile options in Statistics & Probability, offering unparalleled hands-on training. Learners gain practical experience and skills through immersive learning, preparing them for real-world challenges. It ensures a well-rounded skill set, catering to a range of learning preferences. With a focus on Hands on training as well as essential Case Based Learning and Virtual Labs, this course is tailored to meet diverse educational needs.

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Rating & Reviews

This highly acclaimed course is among the top-rated in Statistics & Probability, boasting a rating greater than 4 and an overall rating of 5.0. Its exceptional quality sets it apart, making it an excellent choice for individuals seeking top-notch learning experience in Statistics & Probability.

Course Overview

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Virtual Labs

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International Faculty

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Case Based Learning

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Post Course Interactions

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Case Studies,Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

What You Will Learn

Learn all about the advantages of Bayesian data analysis, and apply it to a variety of real-world use cases!

In this course, you’ll learn how Bayesian data analysis works, how it differs from the classical approach, and why it’s an indispensable part of your data science toolbox

You’ll get to grips with A/B testing, decision analysis, and linear regression modeling using a Bayesian approach as you analyze real-world advertising, sales, and bike rental data

Finally, you’ll get hands-on with the PyMC3 library, which will make it easier for you to design, fit, and interpret Bayesian models

Course Instructors

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Michał Oleszak

Machine Learning Engineer

Michał is a Machine Learning Engineer with a background in statistics and econometrics, holding degrees from Erasmus University Rotterdam, The Netherlands and Warsaw School of Economics, Poland. ...

Course Reviews

Average Rating Based on 3 reviews

5.0

100%

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