Complete Python Data Analysis & Visualization Bootcamp 2025
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.41 GB | Duration: 2h 31m
Published 5/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.41 GB | Duration: 2h 31m
Learn data analysis and visualization from scratch using Pandas and Matplotlib – no prior experience needed!
What you'll learn
Master the essentials of Pandas to clean, filter, and analyze real-world datasets effectively for meaningful insights
Perform powerful, practical data analysis tasks for business analytics and intelligence
Visualize data using Matplotlib to clearly communicate patterns and trends in your data
Build hands-on projects that combine analysis and visualization to solve real problems with data
Requirements
Basic knowledge and experience with Python Fundamentals - Enroll my free Udemy course to build a foundation
Description
Are you curious about data analysis but not sure where to begin? This beginner-friendly course is designed just for you!Check out what students have said about my courses:I’ve been taking this Python course and I genuinely love it! The content is super well-structured, making even complex topics easy to understand. The instructor explains everything clearly and gives tons of real-world examples that help solidify what you're learning. The hands-on projects are one of my favorite parts—they’re fun, practical, and really boost your confidence as you go. Whether you’re totally new to coding or just want to sharpen your Python skills, this course hits the sweet spot. Highly recommend it to anyone looking to learn Python the right way!The Python programming course provides an exceptionally comprehensive learning experience, offering detailed insights into best practices and potential pitfalls. The curriculum is thoughtfully designed to be accessible to beginners, effectively introducing programming concepts without requiring prior coding expertise.The tutor made great explanations of each aspect of the course throughout. Courses like this will undoubtedly give beginners a solid foundation.The best course for beginners, very quick and easy to learn.The Complete Python Data Analysis & Visualization Bootcamp 2025 is your step-by-step guide to turning raw data into powerful insights using Python – one of the most in-demand programming languages today. In this course, you'll:Explore essential tools like Numpy, Pandas, and MatplotlibCreate meaningful visualizations using Matplotlib to tell stories with dataBuild confidence with hands-on exercises and projectsComplete a project to apply what you've learned and get a taste of solving real-world data problemsYou don’t need any prior experience in data science. We’ll walk you through everything at a gentle pace, making sure you build a strong foundation.If you are new to Python, no worries! I’ve got you covered. I recommend starting with my free Python Fundamentals course on Udemy, which is perfect for absolute beginners. Go to my homepage and find the fundamental course there.Whether you're a student, a working professional, or simply curious about data – this course is a great starting point to unlock new skills.Enroll today and start your journey into data analysis – one line of code at a time! Happy Coding!
Overview
Section 1: Introduction
Lecture 1 Introduction to Google Colab
Lecture 2 Google Colab AI Features
Lecture 3 Python Fundamental Refresher - Part 1
Lecture 4 Python Fundamental Refresher - Part 2
Lecture 5 Overall Workflow of Data Analysis
Section 2: Data Structure
Lecture 6 Numpy Array
Lecture 7 Pandas Series and DataFrame
Section 3: Pandas: Load and Access Data
Lecture 8 Load Data from Files
Lecture 9 Access Columns in a DataFrame
Lecture 10 Access Data in a DataFrame Using loc
Lecture 11 Access Data in a DataFrame Using iloc
Lecture 12 Access Data in a DataFrame Using at & iat
Section 4: Project [Part 1] : Online Retail Data - Load and Access Data
Lecture 13 Project Requirement
Lecture 14 Project Solution
Section 5: Pandas: Clean and Prepare Data for Analysis
Lecture 15 dropna to Drop Rows based on Missing Values
Lecture 16 dropna to Drop Columns based on Missing Values
Lecture 17 fillna to Replace Missing Values
Lecture 18 Identify Missing Values in a DataFrame
Lecture 19 Commonly Used Steps in Handling Missing Values
Lecture 20 Drop Invalid Records
Lecture 21 Update Column Values
Lecture 22 Add Columns
Lecture 23 Drop Duplicates
Lecture 24 Drop Columns
Lecture 25 Rename Columns
Lecture 26 Change Column Types
Lecture 27 Apply & Map Functions
Lecture 28 Save Clean Data to Files
Section 6: Project [Part 2] : Online Retail Data - Clean and Prepare Data
Lecture 29 Project Requirement
Lecture 30 Project Solution
Section 7: Pandas: Reshape and Transform Data for Analysis
Lecture 31 Sort Data
Lecture 32 Rank Data
Lecture 33 Filter Data
Lecture 34 Find Unique Values
Lecture 35 Groupby
Lecture 36 Pivot Table and Pivot
Lecture 37 Concatenate Multiple Files
Section 8: Project [Part 3] : Online Retail Data - Analyze Data
Lecture 38 Project Requirement
Lecture 39 Project Solution
Section 9: MatPlotLib: Visualize Data
Lecture 40 Approach 1 - Bar Chart
Lecture 41 Approach 1 - Line Chart
Lecture 42 Approach 1 - Pie Chart
Lecture 43 Approach 1 - Limitation
Lecture 44 Approach 2 - Line Chart
Lecture 45 Approach 2 - Bar Chart
Lecture 46 Approach 2 - Pie Chart
Lecture 47 Approach 2 - Scatter Chart
Lecture 48 Draw Multiple Charts in One Figure
Lecture 49 Save Chart as Images or Pdf
Section 10: Project [Part 4] : Online Retail Data - Visualize Data
Lecture 50 Project Requirement
Lecture 51 Project Solution - Part 1
Lecture 52 Project Solution - Part 2
Section 11: Next Step: Continue Your Journey
Lecture 53 More Resources
Aspiring data analysts looking to build a comprehensive skill set from scratch,Individuals looking to start a career in data analysis and gain a comprehensive skill set from the ground up,Students and recent graduates aiming to enhance their job prospects in the data science industry,Anyone with an interest in data, who wants to learn how to analyze, visualize, and make data-driven decisions, whether for professional development or personal projects