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The Data Science MicroDegree- Data Analysis Visualization_1

  • Development
  • Apr 29, 2025
SynopsisThe Data Science MicroDegree: Data Analysis & Visualizati...
The Data Science MicroDegree- Analysis Visualization_1  No.1

The Data Science MicroDegree: Data Analysis & Visualization, available at $69.99, has an average rating of 4.55, with 70 lectures, 2 quizzes, based on 495 reviews, and has 30242 subscribers.

You will learn about Learn Intermediate Python Programming Skills Using the Jupyter Notebook Environment Using the NumPy Library To Create & Manipulate Arrays Using The Pandas Module To Create & Structure Data Create Data Visualizations Using Matplotlib & Seaborn Modules With Python Learn To Work With Various Data Formats Within Python, Including: JSON,HTML, & MS Excel Worksheets. This course is ideal for individuals who are Students With A Keen Interest In Data Science or Job Seekers Who Want To Leverage Their Data Skills or Python & Data Science Beginners Who Dont Know Where To Start It is particularly useful for Students With A Keen Interest In Data Science or Job Seekers Who Want To Leverage Their Data Skills or Python & Data Science Beginners Who Dont Know Where To Start.

Enroll now: The Data Science MicroDegree: Data Analysis & Visualization

Summary

Title: The Data Science MicroDegree: Data Analysis & Visualization

Price: $69.99

Average Rating: 4.55

Number of Lectures: 70

Number of Quizzes: 2

Number of Published Lectures: 70

Number of Published Quizzes: 2

Number of Curriculum Items: 72

Number of Published Curriculum Objects: 72

Number of Practice Tests: 1

Number of Published Practice Tests: 1

Original Price: $129.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn Intermediate Python Programming Skills
  • Using the Jupyter Notebook Environment
  • Using the NumPy Library To Create & Manipulate Arrays
  • Using The Pandas Module To Create & Structure Data
  • Create Data Visualizations Using Matplotlib & Seaborn Modules With Python
  • Learn To Work With Various Data Formats Within Python, Including: JSON,HTML, & MS Excel Worksheets.
  • Who Should Attend

  • Students With A Keen Interest In Data Science
  • Job Seekers Who Want To Leverage Their Data Skills
  • Python & Data Science Beginners Who Dont Know Where To Start
  • Target Audiences

  • Students With A Keen Interest In Data Science
  • Job Seekers Who Want To Leverage Their Data Skills
  • Python & Data Science Beginners Who Dont Know Where To Start
  • There are lots of Python courses and lectures out there. However, Python has a very steep learning curve and students often get overwhelmed. This course is different! This course is truly step-by-step. In every new tutorial, we build on what had already learned and move one extra step forward. After every video, you learn a new valuable concept that you can apply right away. And the best part is that you learn through live examples.

    This comprehensive course will be your guide to learning how to use the power of Python to analyze data and create beautiful visualizations. This course is designed for both beginners with some programming experience or experienced developers looking to make the jump to Data Science!

    “Data Scientist” has been ranked the Number #1 Job on Glassdoor and the average salary of a data scientist is over $120,000 in the United States according to Indeed! Data Science is a rewarding career that allows you to solve some of the world’s most interesting problems!

    In summary, this course has been designed for all skill levels and even if you have no programming or statistical background you will still be successful in this course! I can’t wait to see you in class.

    In This Course You’ll Learn:

  • Programming with Python

  • NumPy with Python

  • Using pandas Data Frames to solve complex tasks

  • Use pandas to handle Excel Files

  • Use matplotlib and seaborn for data visualizations

  • Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Lecture 2: What Will You Learn?

    Chapter 2: Environment Setup

    Lecture 1: Setting Up Your PC

    Lecture 2: Anaconda Installation

    Lecture 3: Launching Jupyter Notebook

    Lecture 4: Navigating Jupyter NoteBook

    Lecture 5: Markdown Cells

    Chapter 3: Basics Of Python (Refresher Course)

    Lecture 1: Data Types & Arithmetic Operations

    Lecture 2: What Should You Do With The Attached Resource?

    Lecture 3: Variables

    Lecture 4: Strings & Print Function

    Lecture 5: String Splicing

    Lecture 6: Lists

    Lecture 7: Dictionaries

    Lecture 8: Tuples & Sets

    Lecture 9: Relational & Logical Operators

    Lecture 10: If Else

    Lecture 11: For Loops

    Lecture 12: While Loops

    Lecture 13: In-Built Functions

    Lecture 14: Creating A Function

    Lecture 15: Feeling Stuck?

    Chapter 4: NumPy – Data Analysis

    Lecture 1: Introduction To NumPy

    Lecture 2: NumPy Arrays

    Lecture 3: Generating NumPy Arrays

    Lecture 4: NumPy Linspace

    Lecture 5: Identity Matrix

    Lecture 6: Generating Arrays With Random Values

    Lecture 7: Reshape, Min and Max

    Lecture 8: Shape and Dtype

    Lecture 9: NumPy Indexing

    Lecture 10: Index Broadcasting I

    Lecture 11: Index Broadcasting II

    Lecture 12: 2D Indexing

    Lecture 13: Extracting Submatrices

    Lecture 14: Conditional Indexing

    Lecture 15: NumPy Operations

    Lecture 16: Universal Functions

    Lecture 17: Reference – Universal Functions

    Chapter 5: Pandas – Data Analysis

    Lecture 1: Pandas Series I

    Lecture 2: Pandas Series II

    Lecture 3: Pandas Dataframes

    Lecture 4: Dataframes – Adding & Dropping columns

    Lecture 5: Loc and iLoc

    Lecture 6: Conditional Selection

    Lecture 7: Multiple Conditions

    Lecture 8: Reset Index & Set Index

    Lecture 9: dropna & fillna

    Lecture 10: Group By

    Lecture 11: Join, Merge & Concatenate

    Lecture 12: Pandas Operations

    Lecture 13: File Processing

    Chapter 6: MatPlotLib – Data Visualization

    Lecture 1: Introduction To Matplotlib

    Lecture 2: Plotting A Simple Graph

    Lecture 3: Multiple Plots Inside Same Canvas

    Lecture 4: Object Oriented Plots

    Lecture 5: Subplots Using OOP

    Lecture 6: Modifying Figure Size & DPI

    Lecture 7: Saving The Plot

    Lecture 8: Creating A Legend

    Lecture 9: Customization

    Lecture 10: Plot Range

    Chapter 7: Seaborn – Data Visualization

    Lecture 1: Introduction To Seaborn

    Lecture 2: Distribution Plots – Part 1

    Lecture 3: Distribution Plots – Part 2

    Lecture 4: Categorical Plots – Part 1

    Lecture 5: Categorical Plots – Part 2

    Lecture 6: Matrix Plots

    Lecture 7: Grids

    Lecture 8: Size & Color

    Instructors

  • The Data Science MicroDegree- Analysis Visualization_1  No.2
    Abhishek Pughazh
    Im a Python Freelancer, creating cool stuff.
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 5 votes
  • 3 stars: 45 votes
  • 4 stars: 178 votes
  • 5 stars: 266 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!