Statistics for Data Science with Python
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Statistics for Data Science with Python
This course is part of Data Science Fundamentals with Python and SQL Specialization
Instructors: Murtaza Haider
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463 reviews
463 reviews
What you'll learn
Write Python code to conduct various statistical tests including a T test, an ANOVA, and regression analysis.
Interpret the results of your statistical analysis after conducting hypothesis testing.
Calculate descriptive statistics and visualization by writing Python code.
Create a final project that demonstrates your understanding of various statistical test using Python and evaluate your peer's projects.
Skills you'll gain
- Data Science
- Data Analysis
- Statistics
- Statistical Analysis
- Probability Distribution
- Statistical Methods
- Data Visualization Software
- Correlation Analysis
- Statistical Inference
- Probability & Statistics
- Statistical Hypothesis Testing
- Statistical Modeling
- Regression Analysis
- Data Visualization
- Descriptive Statistics
- Statistical Programming
- Data Presentation
- Descriptive Analytics
- Probability
Tools you'll learn
Details to know
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There are 9 modules in this course
This Statistics for Data Science course is designed to introduce you to the basic principles of statistical methods and procedures used for data analysis. After completing this course you will have practical knowledge of crucial topics in statistics including - data gathering, summarizing data using descriptive statistics, displaying and visualizing data, examining relationships between variables, probability distributions, expected values, hypothesis testing, introduction to ANOVA (analysis of variance), regression and correlation analysis. You will take a hands-on approach to statistical analysis using Python and Jupyter Notebooks – the tools of choice for Data Scientists and Data Analysts.
At the end of the course, you will complete a project to apply various concepts in the course to a Data Science problem involving a real-life inspired scenario and demonstrate an understanding of the foundational statistical thinking and reasoning. The focus is on developing a clear understanding of the different approaches for different data types, developing an intuitive understanding, making appropriate assessments of the proposed methods, using Python to analyze our data, and interpreting the output accurately. This course is suitable for a variety of professionals and students intending to start their journey in data and statistics-driven roles such as Data Scientists, Data Analysts, Business Analysts, Statisticians, and Researchers. It does not require any computer science or statistics background. We strongly recommend taking the Python for Data Science course before starting this course to get familiar with the Python programming language, Jupyter notebooks, and libraries. An optional refresher on Python is also provided. After completing this course, a learner will be able to: ✔Calculate and apply measures of central tendency and measures of dispersion to grouped and ungrouped data. ✔Summarize, present, and visualize data in a way that is clear, concise, and provides a practical insight for non-statisticians needing the results. ✔Identify appropriate hypothesis tests to use for common data sets. ✔Conduct hypothesis tests, correlation tests, and regression analysis. ✔Demonstrate proficiency in statistical analysis using Python and Jupyter Notebooks.
Welcome!
What's included
2 videos2 readings1 app item
2 videos•Total 6 minutes
- Welcome from your Instructors!•3 minutes
- Python Packages for Data Science•3 minutes
2 readings•Total 20 minutes
- Course Overview•10 minutes
- (Optional) Basics of Jupyter Notebooks•10 minutes
1 app item•Total 60 minutes
- (Optional) Python Review•60 minutes
This module will focus on introducing the basics of descriptive statistics - mean, median, mode, variance, and standard deviation. It will explain the usefulness of the measures of central tendency and dispersion for different levels of measurement.
What's included
4 videos2 assignments1 app item
4 videos•Total 19 minutes
- Welcome to Statistics!•4 minutes
- Types of Data•6 minutes
- Measure of Central Tendency•5 minutes
- Measure of Dispersion•4 minutes
2 assignments•Total 30 minutes
- Introduction and Descriptive Statistics•20 minutes
- Practice Quiz - Introduction to Descriptive Statistics•10 minutes
1 app item•Total 30 minutes
- Lab: Descriptive Statistics•30 minutes
This module will focus on different types of visualization depending on the type of data and information we are trying to communicate. You will learn to calculate and interpret these measures and graphs.
What's included
4 videos2 assignments1 app item
4 videos•Total 19 minutes
- Visualization Fundamentals •3 minutes
- Statistics by Groups•7 minutes
- Statistical Charts•4 minutes
- Introducing the teacher's rating data•5 minutes
2 assignments•Total 30 minutes
- Data Visualization•20 minutes
- Practice Quiz - Data Visualization•10 minutes
1 app item•Total 30 minutes
- Lab: Visualizing Data•30 minutes
This module will introduce the basic concepts and application of probability and probability distributions.
What's included
5 videos2 readings2 assignments1 app item
5 videos•Total 21 minutes
- Random Numbers and Probability Distributions•5 minutes
- State your hypothesis•4 minutes
- Normal Distribution•4 minutes
- T distribution•5 minutes
- Probability of Getting a High or Low Teaching Evaluation•4 minutes
2 readings•Total 20 minutes
- Alpha (α) and P-value•10 minutes
- Standard Normal Table•10 minutes
2 assignments•Total 30 minutes
- Introduction to Probability Distribution•20 minutes
- Practice Quiz - Introduction to Probability Distribution•10 minutes
1 app item•Total 30 minutes
- Lab: Introduction to Probability Distributions•30 minutes
This module will focus on teaching the appropriate test to use when dealing with data and relationships between them. It will explain the assumptions of each test and the appropriate language when interpreting the results of a hypothesis test.
What's included
5 videos2 assignments1 app item
5 videos•Total 23 minutes
- z-test or t-test•4 minutes
- Dealing with tails and rejections•5 minutes
- Equal vs unequal variances•3 minutes
- ANOVA•5 minutes
- Correlation tests•7 minutes
2 assignments•Total 30 minutes
- Hypothesis Testing•20 minutes
- Practice Quiz - Hypothesis Testing•10 minutes
1 app item•Total 30 minutes
- Lab: Hypothesis Testing•30 minutes
This module will dive straight into using python to run regression analysis for testing relationships and differences in sample and population means rather than the classical hypothesis testing and how to interpret them.
What's included
4 videos2 assignments1 app item
4 videos•Total 11 minutes
- Regression - the workhorse of statistical analysis•4 minutes
- Regression in place of t - test•2 minutes
- Regression in place of ANOVA•3 minutes
- Regression in place of Correlation•2 minutes
2 assignments•Total 30 minutes
- Regression Analysis•20 minutes
- Practice Quiz - Regression analysis•10 minutes
1 app item•Total 30 minutes
- Lab: Regression Analysis•30 minutes
In the final week of the course, you will be given a dataset and a scenario where you will use descriptive statistics and hypothesis testing to give some insights about the data you were provided. You will make a submission of the final project notebook for evaluation.
What's included
1 reading1 peer review2 app items1 plugin
1 reading•Total 10 minutes
- Project Case Scenario•10 minutes
1 peer review•Total 60 minutes
- Option 2: Peer-graded Assignment - Final Project Submission and Evaluation•60 minutes
2 app items•Total 120 minutes
- Final Project: Boston Housing•60 minutes
- Option 1: AI-Graded - Final Project Submission and Evaluation•60 minutes
1 plugin•Total 15 minutes
- Reading: Final Project Submission Guidelines and Deliverables•15 minutes
What's included
1 assignment
1 assignment•Total 50 minutes
- Final Exam •50 minutes
Cheat sheet for Statistics in Python
What's included
1 reading1 assignment1 plugin
1 reading•Total 10 minutes
- IBM Digital Badge•10 minutes
1 assignment•Total 30 minutes
- Opt-in to receive your badge!•30 minutes
1 plugin•Total 15 minutes
- Cheat sheet for Statistical Analysis in Python•15 minutes
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- 4 stars
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- 3 stars
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- 2 stars
2.59%
- 1 star
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Showing 3 of 463
Reviewed on Mar 9, 2023
The course is super useful, but I'm not a fan of the peer-reviewed portion for the project.
Reviewed on Apr 4, 2021
I highly recommend this course for anyone that is having problems with basic statisitcs.
Reviewed on Apr 6, 2021
The videos, readings, and labs were not sufficient for me to feel prepared for the assessments. I ended up using outside resources just to understand what was being presented here.
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When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
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