Tutorialspoint

Celebrating 11 Years of Learning Excellence! Use: TP11

Statistics And Regression Course for Machine Learning In Python

person icon Packt Publishing

4.5

Statistics And Regression Course for Machine Learning In Python

By the end of this course, you’ll gain a solid foundation in machine learning and statistical regression using Python

updated on icon Updated on Jun, 2025

language icon Language - English

person icon Packt Publishing

English [CC]

category icon Development ,Data Science,Python

Lectures -63

Duration -5 hours

Lifetime Access

4.5

price-loader

Lifetime Access

30-days Money-Back Guarantee

Training 5 or more people ?

Get your team access to 10000+ top Tutorials Point courses anytime, anywhere.

Course Description

This course is for ML enthusiasts who want to understand basic statistics and regression for machine learning. The course starts with setting up the environment and understanding the basics of Python language and different libraries. Next, you’ll see the basics of machine learning and different types of data. After that, you’ll learn a statistics technique called Central Tendency Analysis.

Post this, you’ll focus on statistical techniques such as variance and standard deviation. Several techniques and mathematical concepts such as percentile, normal distribution, uniform distribution, finding z-score, linear regression, polynomial linear regression, and multiple regression with the help of manual calculation and Python functions are introduced as the course progresses.

The dataset will get more complex as you proceed ahead; you’ll use a CSV file to save the dataset. You’ll see the traditional and complex method of finding the coefficient of regression and then explore ways to solve it easily with some Python functions.

Finally, you’ll learn a technique called data normalization or standardization, which will improve the performance of the algorithms very much compared to a non-scaled dataset. By the end of this course, you’ll gain a solid foundation in machine learning and statistical regression using Python.

All the code files and related files are available on the GitHub repository at:

https://github.com/PacktPublishing/Basic-Statistics-and-Regression-for-Machine-Learning-in-Python

Who is this course for?

  • This course is for beginners and individuals who want to learn mathematics for machine learning. You need not have any prior experience or knowledge in coding; just be ready with your learning mindset at the highest level.
  • Individuals interested in learning what’s actually happening behind the scenes of Python functions and algorithms (at least in a shallow layman’s way) will be highly benefitted.

Goals

  • Set up the environment.
  • Learn central tendency analysis.
  • Learn statistical models and analysis.
  • Learn regression models and analysis.
  • Use NumPy, matplotlib, and scikit-learn libraries.
  • Learn the data normalization or standardization technique.

Prerequisites

  • Basic computer knowledge and an interest in learning mathematics for machine learning are the only prerequisites for this course.
Statistics And Regression Course for Machine Learning In Python

Curriculum

Check out the detailed breakdown of what’s inside the course

Introduction to the Course

1 Lectures
  • play icon Course Introduction and Table of Contents 10:16 10:16

Environment Setup – Preparing your Computer

2 Lectures
Tutorialspoint

Essential Components Included in Anaconda

1 Lectures
Tutorialspoint

Python Basics - Assignment

1 Lectures
Tutorialspoint

Python Basics - Flow Control

2 Lectures
Tutorialspoint

Python Basics - List and Tuples

1 Lectures
Tutorialspoint

Python Basics - Dictionary and Functions

2 Lectures
Tutorialspoint

NumPy Basics

2 Lectures
Tutorialspoint

Matplotlib Basics

2 Lectures
Tutorialspoint

Basics of Data for Machine Learning

1 Lectures
Tutorialspoint

Central Data Tendency - Mean

1 Lectures
Tutorialspoint

Central Data Tendency - Median and Mode

2 Lectures
Tutorialspoint

Variance and Standard Deviation Manual Calculation

2 Lectures
Tutorialspoint

Variance and Standard Deviation using Python

1 Lectures
Tutorialspoint

Percentile Manual Calculation

1 Lectures
Tutorialspoint

Percentile using Python

1 Lectures
Tutorialspoint

Uniform Distribution

1 Lectures
Tutorialspoint

Normal Distribution

2 Lectures
Tutorialspoint

Manual Z-Score calculation

1 Lectures
Tutorialspoint

Z-Score calculation using Python

1 Lectures
Tutorialspoint

Multi Variable Dataset Scatter Plot

1 Lectures
Tutorialspoint

Introduction to Linear Regression

1 Lectures
Tutorialspoint

Manually Finding Linear Regression Correlation Coefficient

2 Lectures
Tutorialspoint

Manually Finding Linear Regression Slope Equation

2 Lectures
Tutorialspoint

Manually Predicting the Future Value Using Equation

1 Lectures
Tutorialspoint

Linear Regression Using Python Introduction

1 Lectures
Tutorialspoint

Linear Regression Using Python

2 Lectures
Tutorialspoint

Strong and Weak Linear Regression

1 Lectures
Tutorialspoint

Predicting Future Value Using Linear Regression in Python

1 Lectures
Tutorialspoint

Polynomial Regression Introduction

1 Lectures
Tutorialspoint

Polynomial Regression Visualization

1 Lectures
Tutorialspoint

Polynomial Regression Prediction and R2 Value

1 Lectures
Tutorialspoint

Polynomial Regression Finding SD Components

1 Lectures
Tutorialspoint

Polynomial Regression Manual Method Equations

1 Lectures
Tutorialspoint

Finding SD Components for abc

1 Lectures
Tutorialspoint

Finding abc

1 Lectures
Tutorialspoint

Polynomial Regression Equation and Prediction

1 Lectures
Tutorialspoint

Polynomial Regression coefficient

1 Lectures
Tutorialspoint

Multiple Regression Introduction

1 Lectures
Tutorialspoint

Multiple Regression Using Python - Data Import as CSV

1 Lectures
Tutorialspoint

Multiple Regression Using Python - Data Visualization

1 Lectures
Tutorialspoint

Creating Multiple Regression Object and Prediction Using Python

1 Lectures
Tutorialspoint

Manual Multiple Regression - Intro and Finding Means

1 Lectures
Tutorialspoint

Manual Multiple Regression - Finding Components

2 Lectures
Tutorialspoint

Manual Multiple Regression - Finding abc

1 Lectures
Tutorialspoint

Manual Multiple Regression Equation Prediction and Coefficients

1 Lectures
Tutorialspoint

Feature Scaling Introduction

1 Lectures
Tutorialspoint

Standardization Scaling Using Python

2 Lectures
Tutorialspoint

Standardization Scaling Using Manual Calculation

2 Lectures
Tutorialspoint

Instructor Details

Packt Publishing

Packt Publishing

Packt are an established, trusted, and innovative global technical learning publisher, founded in Birmingham, UK with over eighteen years experience delivering rich premium content from ground-breaking authors and lecturers on a wide range of emerging and established technologies for professional development.

Packt’s purpose is to help technology professionals advance their knowledge and support the growth of new technologies by publishing vital user focused knowledge-based content faster than any other tech publisher, with a growing library of over 9,000 titles, in book, e-book, audio and video learning formats, our multimedia content is valued as a vital learning tool and offers exceptional support for the development of technology knowledge.

We publish on topics that are at the very cutting edge of technology, helping IT professionals learn about the newest tools and frameworks in a way that suits them.

Course Certificate

Use your certificate to make a career change or to advance in your current career.

sample Tutorialspoint certificate

Our students work
with the Best

Related Video Courses

View More

Annual Membership

Become a valued member of Tutorials Point and enjoy unlimited access to our vast library of top-rated Video Courses

Subscribe now
Annual Membership

Online Certifications

Master prominent technologies at full length and become a valued certified professional.

Explore Now
Online Certifications

Talk to us

1800-202-0515