HOME > Development > NumPy, SciPy, and Matplotlib Recipes

NumPy, SciPy, and Matplotlib Recipes

  • Development
  • Apr 14, 2025
SynopsisNumPy, SciPy, and Matplotlib Recipes, available at $69.99, ha...
NumPy, SciPy, and Matplotlib Recipes  No.1

NumPy, SciPy, and Matplotlib Recipes, available at $69.99, has an average rating of 4.1, with 100 lectures, based on 34 reviews, and has 239 subscribers.

You will learn about Understand and explain the Scientific Ecosystem Work with Ndarrays in NumPy Mathematical and Statistical Functions Image Processing with NumPy and Matplotlib Basic and Advanced Visualizations using Matplotlib SciPy, NumPy, and Matplotlib Recipes K-Means Clustering This course is ideal for individuals who are Data Science and Machine Learning Professionals or Computer Vision Professionals or Raspberry Pi Enthusiasts or Anyone with zeal and enthusiasm to learn It is particularly useful for Data Science and Machine Learning Professionals or Computer Vision Professionals or Raspberry Pi Enthusiasts or Anyone with zeal and enthusiasm to learn.

Enroll now: NumPy, SciPy, and Matplotlib Recipes

Summary

Title: NumPy, SciPy, and Matplotlib Recipes

Price: $69.99

Average Rating: 4.1

Number of Lectures: 100

Number of Published Lectures: 100

Number of Curriculum Items: 100

Number of Published Curriculum Objects: 100

Original Price: $19.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand and explain the Scientific Ecosystem
  • Work with Ndarrays in NumPy
  • Mathematical and Statistical Functions
  • Image Processing with NumPy and Matplotlib
  • Basic and Advanced Visualizations using Matplotlib
  • SciPy, NumPy, and Matplotlib Recipes
  • K-Means Clustering
  • Who Should Attend

  • Data Science and Machine Learning Professionals
  • Computer Vision Professionals
  • Raspberry Pi Enthusiasts
  • Anyone with zeal and enthusiasm to learn
  • Target Audiences

  • Data Science and Machine Learning Professionals
  • Computer Vision Professionals
  • Raspberry Pi Enthusiasts
  • Anyone with zeal and enthusiasm to learn
  • Become a Master in Scientific Python and acquire employers’ one of the most requested skills of 21st Century! A great Scientific Python programmer earns more than $150000 per year.

    This is the most comprehensive, yet straight-forward course for the Scientific Python on Udemy! Whether you have never used SciPy before, already know basics of Python, or want to learn the advanced features of NumPy with Python 3, this course is for you! In this course we will teach you NumPy, SciPy, Matplotlib, and Jupyter Notebook. 

    With over 100 lectures and more than 10 hours of video this comprehensive course leaves no stone unturned in teaching you Scientific Python!

    This course will teach you Scientific Python in a very practical manner, with every lecture comes a full Python 3 programming video and a corresponding Jupyter notebook that has Python 3 code! Learn in whatever manner is the best for you!

    We will start by helping you get Python3, NumPy, Matplotlib, Jupyter, and SciPy installed on your Windows computer and Raspberry Pi.

    We cover a wide variety of topics, including:

  • Basics of Scientific Python Ecosystem

  • Basics of SciPy, NumPy, and Matplotlib

  • Installation of Python 3 on Windows

  • Setting up Raspberry Pi

  • Tour of Python 3 environment on Raspberry Pi

  • Jupyter installation and basics

  • Ndarrays

  • Array Creation Routines

  • Basic Visualization with Matplotlib

  • Ndarray Manipulation

  • Installation of SciPy

  • Image Processing with NumPy and Matplotlib

  • NumPy and SciPy

  • Scientific and Business Visualizations

  • K-Means clustering with SciPy

  • You will get lifetime access to over 100 lectures plus corresponding PDFs and the Jupyter notebooks for the lectures! 

    So what are you waiting for? Learn SciPy, NumPy, and Matplotlib in a way that will advance your career and increase your knowledge, all in a fun and practical way!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Objectives, Prerequisites, and Audiences

    Lecture 2: Contents and Topics Overview

    Lecture 3: Please leave your feedback

    Lecture 4: Scientific Python Ecosystem

    Lecture 5: Introduction to NumPy

    Lecture 6: Important Projects in scientific Python Ecosystem

    Chapter 2: Python 3 on Windows

    Lecture 1: Installation

    Lecture 2: Verification

    Chapter 3: Raspberry Pi and Python

    Lecture 1: Single Board Computers and Raspberry Pi

    Lecture 2: Installing Raspberry Pi OS

    Lecture 3: Remote connection with VNC

    Lecture 4: Install IDLE3 on Raspberry Pi Raspbian

    Lecture 5: Python on Raspberry Pi

    Lecture 6: Additional software for remote connection

    Lecture 7: Turn your Raspberry Pi 4 into a portable Tablet with Sunfounder Raspad 3

    Chapter 4: Python 3 Basics

    Lecture 1: Hello World on Windows!

    Lecture 2: Hello World on Raspberry Pi!

    Lecture 3: Interpreter vs Script Mode

    Lecture 4: IDLE

    Lecture 5: RPi vs PC

    Chapter 5: Python Package Index and pip

    Lecture 1: Python Package Index

    Lecture 2: pip on Windows

    Lecture 3: pip3 on Raspberry Pi

    Chapter 6: Install NumPy and Matplotlib

    Lecture 1: Install NumPy and Matplotlib on Windows

    Lecture 2: Install NumPy and Matplotlib on Raspberry Pi

    Chapter 7: IPython and Jupyter Basics

    Lecture 1: IPython and Jupyter

    Lecture 2: Install Jupyter on Windows

    Lecture 3: Install Jupyter on Raspberry Pi

    Lecture 4: PuTTY

    Lecture 5: Connect to a remote Jupyter Notebook

    Lecture 6: A brief Tour of Jupyter

    Lecture 7: Commands used in this Section

    Chapter 8: Getting Started with NumPy

    Lecture 1: Ndarray, Indexing, and Slicing

    Lecture 2: Ndarray Properties

    Lecture 3: NumPy constants

    Lecture 4: NumPy Datatypes

    Chapter 9: Creation of arrays and Matplotlib

    Lecture 1: Ones and Zeros

    Lecture 2: Matrices

    Lecture 3: Introduction to Matplotlib

    Lecture 4: Visualize Numerical Ranges

    Chapter 10: NumPy and Random

    Lecture 1: NumPy and Random

    Chapter 11: Array manipulation

    Lecture 1: Array manipulation

    Chapter 12: Bitwise Operations

    Lecture 1: Bitwise Operations

    Chapter 13: Statistical Routines

    Lecture 1: Statistical Routines

    Chapter 14: FFTs

    Lecture 1: FFTs

    Lecture 2: Advanced FFTs

    Chapter 15: Linear Algebra

    Lecture 1: Dot Products

    Lecture 2: Vector Dot product

    Lecture 3: Inner Product

    Lecture 4: QR Decomposition

    Lecture 5: Determinants and Solving Linear Equations

    Chapter 16: Mathematical and Trigonometric Function

    Lecture 1: Trigonometric Functions

    Lecture 2: Hyperbolic Functions

    Lecture 3: Exponential Functions

    Lecture 4: Logarithmic Functions

    Lecture 5: Convolution

    Chapter 17: Image Processing and Matplotlib

    Lecture 1: What is Digital Image Processing?

    Lecture 2: Image Datasets

    Lecture 3: Pillow Installation

    Lecture 4: Read, display, and save images with Matplotlib

    Lecture 5: NumPy for Images

    Lecture 6: Image Statistics

    Lecture 7: Image Masks

    Lecture 8: Image Channels

    Lecture 9: Arithmetic Operations

    Lecture 10: Logical Operations

    Lecture 11: Histogram with NumPy and Matplotlib

    Chapter 18: File Operations with NumPy

    Lecture 1: NumPy File Format

    Lecture 2: Reading CSV File

    Chapter 19: Set Operations

    Lecture 1: Set Operations

    Chapter 20: Sorting and Counting

    Lecture 1: Sorting Routines

    Lecture 2: Counting Non Zero Elements

    Chapter 21: Plotting in detail

    Lecture 1: Single Line Plot

    Lecture 2: Multiline Plot

    Lecture 3: Grid, Axes, and Labels

    Lecture 4: Colors, Lines, and Markers

    Chapter 22: Introduction to SciPy

    Lecture 1: Introduction to SciPy

    Lecture 2: Install SciPy on Windows

    Instructors

  • NumPy, SciPy, and Matplotlib Recipes  No.2
    Ashwin Pajankar ? 85,000+ Students Worldwide
    Instructor | Programmer | Maker | Author | Youtuber
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 2 votes
  • 3 stars: 6 votes
  • 4 stars: 9 votes
  • 5 stars: 17 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    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!