Statistics with Python Specialization

Start Date: 07/12/2020

Course Type: Specialization Course

Course Link: https://www.coursera.org/specializations/statistics-with-python

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About Course

This specialization is designed to teach learners beginning and intermediate concepts of statistical analysis using the Python programming language. Learners will learn where data come from, what types of data can be collected, study data design, data management, and how to effectively carry out data exploration and visualization. They will be able to utilize data for estimation and assessing theories, construct confidence intervals, interpret inferential results, and apply more advanced statistical modeling procedures. Finally, they will learn the importance of and be able to connect research questions to the statistical and data analysis methods taught to them.

Course Syllabus

Understanding and Visualizing Data with Python
Inferential Statistical Analysis with Python
Fitting Statistical Models to Data with Python

Deep Learning Specialization on Coursera

Course Introduction

Practical and Modern Statistical Thinking For All. Use Python for statistical visualization, inference, and modeling Statistics with Python Specialization This course is for advanced statisticians and data enthusiasts who are looking to “level-up” their careers and enhance their skills in Python programming. This MOOC is the continuation of the Specialization "Introducing Statistics with Python", so you should anticipate some computational challenges and language improvements. This course is intended for advanced statisticians and data enthusiasts who are looking to “level-up” their careers and enhance their skills in Python programming. This MOOC is the continuation of the Specialization "Introducing Statistics with Python", so you should anticipate some computational challenges and language improvements. This course is intended for advanced statisticians and data enthusiasts who are looking to “level-up” their careers and enhance their skills in Python programming. This MOOC is the continuation of the Specialization "Introducing Statistics with Python", so you should expect some computational challenges and language improvements. This course is intended for advanced statisticalians and data enthusiasts who are looking to “level-up” their careers and enhance their skills in Python programming. This MOOC is the continuation of the Specialization "Introducing Statistics with Python", so you should anticipate some computational challenges and language improvements. This course is intended for advanced statisticalians and data enthusiasts who are looking to “level-up” their careers and enhance their skills in Python programming. This MOOC is the continuation of the Specialization "Introducing Statistics with Python", so you should anticipate some computational challenges and language improvements.

Course Tag

Python Programming Data Visualization (DataViz) Statistical Model Statistical inference methods

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