Complete Data Analysis And Visualization In Python
Published 9/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.14 GB | Duration: 3h 34m
Published 9/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.14 GB | Duration: 3h 34m
Learn Python libraries: NumPy, Pandas, Matplotlib and Seaborn for data analysis and visualization
What you'll learn
Data analysis and visualization skill using Python and its different libraries: NumPy, Pandas, Matplotlib, Seaborn
Different formatting methods for charts
Data processing
Statistical methods for visualization
Requirements
No programming experience needed. You will learn everything you need to know.
Description
In this course, you will learn Python libraries from scratch. So, if you don’t have coding experience, that is very fine.NumPy and Pandas are necessary libraries to do data analysis and preprocessing. In these course, most important concepts will be covered and after completing Pandas lectures, you will do Data Analysis exercise using Pandas for test score dataset. This is important step and aims to polish up your data preprocessing skill.Then, we will learn Matplotlib which is fundamental package for data visualization. In these lectures, we will learn all necessary concepts for data visualization.After, we will dive into Seaborn, statistical package with beautiful charts. First we will explore most important and used charts using Seaborn’s built-in dataset - tips. After completing these lectures, we will dive into full data analysis and visualization exercise using complex datasets.Our first full data analysis exercise will be done using Netflix dataset where you will see how to do complex data preprocessing and applying Matplotlib functions to draw charts on progression and history.For second data analysis, dataset about diamond was used where you will explore Seaborn’s full possibility.After completing this course, you will learn not only how to do everything correct statistically, but also common mistakes people often do during their analysis work.
Overview
Section 1: NumPy and Pandas
Lecture 1 Introduction
Lecture 2 Installation of Anaconda
Lecture 3 NumPy_Lecture_1
Lecture 4 NumPy_Lecture_2
Lecture 5 NumPy_Lecture_3
Lecture 6 NumPy_Lecture_4
Lecture 7 NumPy_Lecture_5
Lecture 8 Pandas_Lecture_1
Lecture 9 Pandas_Lecture_2
Lecture 10 Pandas_Lecture_3
Lecture 11 Pandas_Lecture_4
Lecture 12 Pandas_Lecture_5
Lecture 13 Pandas_Lecture_6
Lecture 14 Pandas_Exercise_1
Lecture 15 Pandas_Exercise_1_Answer
Lecture 16 Pandas_Exercise_2_1
Lecture 17 Pandas_Exercise_2_2
Section 2: Matplotlib
Lecture 18 Matplotlib_Lecture_1
Lecture 19 Matplotlib_Lecture_2
Lecture 20 Matplotlib_Lecture_3
Lecture 21 Matplotlib_Lecture_4
Section 3: Seaborn
Lecture 22 Seaborn_Lecture_1
Lecture 23 Seaborn_Lecture_2
Lecture 24 Seaborn_Lecture_3
Lecture 25 Seaborn_Lecture_4
Lecture 26 Seaborn_Lecture_5
Lecture 27 Seaborn_Lecture_6
Lecture 28 Seaborn_Lecture_7
Lecture 29 Seaborn_Lecture_8
Lecture 30 Seaborn_Lecture_9
Section 4: Data_Analysis_Visualization_1
Lecture 31 Data_Analysis_1
Lecture 32 Data_Analysis_2
Lecture 33 Data_Analysis_3
Section 5: Data_Analysis_Visualization_2
Lecture 34 Data_Analysis_2_1
Lecture 35 Data_Analysis_2_2
Lecture 36 Data_Analysis_2_3
Lecture 37 Data_Analysis_2_4
Lecture 38 Data_Analysis_2_5
Lecture 39 Data_Analysis_2_6
Everyone interested in data analytics and data science,Business Professional interested in data visualization,Data analysis in Python,Data visualization in Python