Learn Statistical Data Analysis with Python
- Development
- May 12, 2025

Learn Statistical Data Analysis with Python, available at Free, has an average rating of 4.15, with 17 lectures, based on 77 reviews, and has 4523 subscribers.
Free Enroll NowYou will learn about I can explain and calculate the importance of measures of central tendency. I can explain and calculate the importance of measures of dispersion. I can identify the relative strengths and weaknesses of the measures of tendency. I can identify the relative strengths and weaknesses of the measures of dispersion. I can create and interpret a histogram, a bar chart, a box plot, and a frequency table. I can identify and describe scatter plots and line graphs to determine the relationships between two variables. I can calculate and interpret the Pearson correlation coefficient to determine the relationships between two variables. This course is ideal for individuals who are This course is designed for professionals with an interest in getting hands-on experience with the respective data science techniques and tools. It is particularly useful for This course is designed for professionals with an interest in getting hands-on experience with the respective data science techniques and tools.
Enroll now: Learn Statistical Data Analysis with Python
Summary
Title: Learn Statistical Data Analysis with Python
Price: Free
Average Rating: 4.15
Number of Lectures: 17
Number of Published Lectures: 17
Number of Curriculum Items: 17
Number of Published Curriculum Objects: 17
Original Price: Free
Quality Status: approved
Status: Live
What You Will Learn
Who Should Attend
Target Audiences
By the end of this course, you will have achieved the following learning outcomes:
I can explain and calculate the importance of measures of central tendency.
I can explain and calculate the importance of measures of dispersion.
I can identify the relative strengths and weaknesses of the measures of tendency.
I can identify the relative strengths and weaknesses of the measures of dispersion.
I can create and interpret a histogram, a bar chart, a box plot, and a frequency table.
I can identify and describe scatter plots and line graphs to determine the relationships between two variables.
I can calculate and interpret the Pearson correlation coefficient to determine the relationships between two variables.
These are some of the basics statistical data analysis techniques that you will get to use while working on data science projects. For example, in order to check for model assumptions while working on a predictive solution, you will need to apply the above techniques i.e. to test for normality of variables in a dataset, you can plot a histogram or a pair plot, to check for correlation, you can calculate the Pearson correlation coefficient etc.
In addition, these techniques will also be important while also working on data analysis projects where the creation of a descriptive analysis report will be a necessity.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Chapter 2: About the Resources
Lecture 1: About the Resources
Chapter 3: Statistical Data Analysis: Overview
Lecture 1: Statistical Data Analysis: Overview
Chapter 4: Overview: Univariate Analysis
Lecture 1: Overview: Univariate Analysis
Chapter 5: Bar Chart
Lecture 1: Bar Chart
Chapter 6: Histogram
Lecture 1: Histogram
Chapter 7: Frequency Table
Lecture 1: Frequency Table
Chapter 8: Pie Chart
Lecture 1: Pie Chart
Chapter 9: Box Plot
Lecture 1: Box Plot
Chapter 10: Measures of Central Tendency
Lecture 1: Measures of Central Tendency
Chapter 11: Measures of Dispersion
Lecture 1: Measures of Dispersion
Chapter 12: Overview: Bivariate Analysis
Lecture 1: Overview: Bivariate Analysis
Chapter 13: Scatterplot
Lecture 1: Scatterplot
Chapter 14: Pearson Correlation Coefficient
Lecture 1: Pearson Correlation Coefficient
Chapter 15: Pearson Correlation Coefficient – Visualisation
Lecture 1: Pearson Correlation Coefficient – Visualisation
Chapter 16: Line Graphs
Lecture 1: Line Graphs
Chapter 17: Whats Next
Lecture 1: Whats Next
Instructors

Valentine Mwangi
Data Science Curriculum Designer
Rating Distribution
Frequently Asked Questions
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You can view and review the lecture materials indefinitely, like an on-demand channel.
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Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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