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Data Wrangling and Visualization with Python

SynopsisData Wrangling and Visualization with Python, available at $1...
Data Wrangling and Visualization with Python  No.1

Data Wrangling and Visualization with Python, available at $19.99, has an average rating of 3.25, with 105 lectures, based on 2 reviews, and has 13 subscribers.

You will learn about Learn key analytical skills (data cleaning, analysis, & visualization) Understand how to clean and organize data for analysis, and complete analysis and calculations using Python programming Learn how to visualize and present data findings in visualization platforms (Pandas, Seaborn, Plotly express) Understand and practice the use of Pandas DataFrames Visualize data with Seaborn and Plotly Use matplotlib to plot basic graphs and charts Create common visualization charts using open source tools Learn how to create geographic plots using plotly express and geopandas Learn how to use pandas to sort, filter, import and clean data students will learn how to import xcell, CSV and custom data to Jupyter notebooks Understand key data analysis terms and definitions This course is ideal for individuals who are Beginners interested in Data analysis and Visualisation using Python or Intermdiate users who want to learn how to create graphs and charts with python or users interested in learning how to create grographic plots using plotly express and geopandas or students interested in learning how to import, clean, sort, filter and manipulate data using pandas It is particularly useful for Beginners interested in Data analysis and Visualisation using Python or Intermdiate users who want to learn how to create graphs and charts with python or users interested in learning how to create grographic plots using plotly express and geopandas or students interested in learning how to import, clean, sort, filter and manipulate data using pandas.

Enroll now: Data Wrangling and Visualization with Python

Summary

Title: Data Wrangling and Visualization with Python

Price: $19.99

Average Rating: 3.25

Number of Lectures: 105

Number of Published Lectures: 105

Number of Curriculum Items: 105

Number of Published Curriculum Objects: 105

Original Price: $119.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn key analytical skills (data cleaning, analysis, & visualization)
  • Understand how to clean and organize data for analysis, and complete analysis and calculations using Python programming
  • Learn how to visualize and present data findings in visualization platforms (Pandas, Seaborn, Plotly express)
  • Understand and practice the use of Pandas DataFrames
  • Visualize data with Seaborn and Plotly
  • Use matplotlib to plot basic graphs and charts
  • Create common visualization charts using open source tools
  • Learn how to create geographic plots using plotly express and geopandas
  • Learn how to use pandas to sort, filter, import and clean data
  • students will learn how to import xcell, CSV and custom data to Jupyter notebooks
  • Understand key data analysis terms and definitions
  • Who Should Attend

  • Beginners interested in Data analysis and Visualisation using Python
  • Intermdiate users who want to learn how to create graphs and charts with python
  • users interested in learning how to create grographic plots using plotly express and geopandas
  • students interested in learning how to import, clean, sort, filter and manipulate data using pandas
  • Target Audiences

  • Beginners interested in Data analysis and Visualisation using Python
  • Intermdiate users who want to learn how to create graphs and charts with python
  • users interested in learning how to create grographic plots using plotly express and geopandas
  • students interested in learning how to import, clean, sort, filter and manipulate data using pandas
  • Welcome to the Data wrangling and visualization course with Python. This course is intended for beginners who are interested in the wonderful world of data wrangling and visualization. This course assumes you don’t have experience with python and it attempts to demystify and make it as clear as possible using basic and concise examples. The course begins with an introduction to the python programming. Next, we move on and learn about common visualization tools and some popular python Data Visualization plugins (pandas, seaborn, plotly express) libraries with some practical examples. In this course we chosen to use python because is a powerful language that, is free, beginner friendly. We will use open-source data manipulation libraries such as pandas, geopandas, plotly, plotly express, sci-py, matplotlib. We would also learn about popular data manipulation libraries such as Pandas, NumPy, and matplotlib. These libraries will be used to understand the basics of data wrangling with numerous practical examples. Furthermore, we will investigate using python for Geographic Plots , using JSON files and the popular geopandas library for creating map plots. To wrap things up, we look at some practical projects and solutions to enforce, solidify and strengthen the concepts we have learnt throughout the course.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Welcome and Thank You

    Lecture 2: Course Materials and Exercise Files

    Chapter 2: Introduction to Data Science

    Lecture 1: What is Data Science, Machine Learning, Data Analys and AI?

    Lecture 2: Significance of Data Science

    Lecture 3: Understanding Data

    Lecture 4: The Future of Data

    Chapter 3: Tools

    Lecture 1: Installing Anaconda

    Lecture 2: Jupyter Notebook Overview

    Lecture 3: Installing Jupyter Notebook

    Lecture 4: Jupyter Notebook Interface

    Lecture 5: Saving and Loading Jupyter Notebook files

    Lecture 6: Jupyter notebook comments and Markdown cells

    Lecture 7: Jupyter notebook markdown

    Lecture 8: Converting Jupyter files to other formats

    Lecture 9: Getting Help

    Chapter 4: Python Quick Course

    Lecture 1: Section Introduction

    Lecture 2: Pythons Variables and Datatypes

    Lecture 3: Variables and Datatypes part 2

    Lecture 4: Variable Naming Rules

    Lecture 5: Using Python as a calculator

    Lecture 6: Converting between different Datatypes using Python

    Lecture 7: Output Formatting

    Lecture 8: Output Formatting part 2

    Chapter 5: Numpy and Python for Data Analysis

    Lecture 1: Numpy Introduction

    Lecture 2: Installing NumPy

    Lecture 3: Creating nd-Arrays with numpy

    Lecture 4: Creating Arrays with numPy Part 2

    Lecture 5: Basic Array Operations with NumPy

    Lecture 6: Basic Statistics with NumPy

    Lecture 7: NumPy Array Slicing and Indexing

    Lecture 8: Generating Random nd Arrays

    Lecture 9: Solving Basic Equations with numPy

    Lecture 10: Numpy Exercise Section

    Lecture 11: Numpy Exercise Solutions

    Chapter 6: Pandas and Python for Data Analysis

    Lecture 1: Pandas Introduction

    Lecture 2: Data Sources

    Lecture 3: Reading CSV files with Pandas

    Lecture 4: Reading Excel files with Pandas

    Lecture 5: Pandas Series

    Lecture 6: Pandas DataFrame

    Lecture 7: Pandas DataFrame 2

    Lecture 8: Descriptive Statistics with Pandas

    Lecture 9: Handling Missing Data with Pandas

    Lecture 10: Using Indexers (loc & iloc)

    Lecture 11: Sorting and Using Expressions

    Lecture 12: Using Conditions

    Lecture 13: Combining DataFrames

    Lecture 14: Using Merged to intersect DataFrames

    Lecture 15: Converting DataFrames to csv, excel, txt

    Lecture 16: Pandas Reference Guide

    Lecture 17: Pandas time series

    Lecture 18: Slicing strings in columns

    Lecture 19: Pandas Exercise

    Lecture 20: Pandas Exercise Solution

    Chapter 7: Data Visualisation-matplotlib

    Lecture 1: Introduction to matlotlib

    Lecture 2: matplotlib first run

    Lecture 3: matplotlib figure object

    Lecture 4: matplotlib histogram and scatter plot

    Lecture 5: matplotlib vertical bar graph

    Lecture 6: Matplotlib Horizontal Bar Graph

    Lecture 7: Line Plot Styles

    Lecture 8: basic vs object oriented approach in matplotlib

    Lecture 9: adding legends and saving files

    Lecture 10: Stacked Bar Graph

    Lecture 11: Grouped Bar Graph

    Lecture 12: matplotlib bar chart

    Lecture 13: Matplotlib pie chart

    Lecture 14: Matplotlib pie chart from csv file

    Lecture 15: Matplotlib Exercise

    Lecture 16: matplotlib Exercise Solutions

    Chapter 8: Data Visualization- Seaborn

    Lecture 1: Section Introduction

    Lecture 2: installing seaborn and statsmodels with pip

    Lecture 3: working with csv files using seaborn and pandas

    Lecture 4: Relational Plot

    Lecture 5: categorical plots introduction

    Lecture 6: Seaborn Categorical Plots

    Lecture 7: Seaborn Categorical Plots Part 2

    Lecture 8: Distribution Plots Introduction

    Lecture 9: Environments and Packages Introduction

    Lecture 10: Environments and Packages Setup

    Lecture 11: Distribution plots(Hist, ecdf, kde )

    Lecture 12: Seaborn Jointplot

    Lecture 13: Seaborn pairplot

    Lecture 14: Seaborn Array Plots (Heatmap, Annotated Heatmap, Clustermap)

    Lecture 15: Seaborn Facet Grid

    Lecture 16: Regression Plots

    Lecture 17: seaborn colors

    Lecture 18: seaborn themes and styles

    Chapter 9: Data Visualisation with plotly

    Lecture 1: Introduction to plotly

    Lecture 2: installing plotly

    Lecture 3: plotly first run

    Instructors

  • Data Wrangling and Visualization with Python  No.2
    Mahmud Shuaib
    Digital/Traditional Artist/Programmer
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