Amazon cover image
Image from Amazon.com

Reimagining data visualization using python

By: Acharya, SeemaMaterial type: TextTextPublication details: New Delhi Wiley India Pvt. Ltd. 2022 Description: xxiii, 348 pISBN: 9789354641336Subject(s): Python (Computer program language) | Machine learning | Electronic data processing | Information visualizationDDC classification: 005.133 Summary: Reimagining Data Visualization Using Python is an extensive discourse on data visualization. It details how to perform data visualization on a variety of datasets using various data visualization libraries written in Python programming language. Understanding, visualizing, and presenting data is slowly and gradually becoming a must have skills for professionals in all disciplines. This book is designed for learners who are beginners in visualization using python. It is a guide with detailed out steps to write and execute command/code.
List(s) this item appears in: Non Fiction
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Copy number Status Date due Barcode
Book Book Indian Institute of Management LRC
General Stacks
IT & Decisions Sciences 005.133 ACH (Browse shelf(Opens below)) 1 Available 004876

Table of content
Chapter 1 Introduction to Data Visualization

1.1 What is Data Visualization?

1.2 Evolution of Data Visualization

1.3 Why do We Need Data Visualization?

1.4 Difference between Data Visualization and Infographics

1.5 Principles of Gestalt’s Theory of Visual Perception

1.6 Advantages of Data Visualization

1.7 Benefits of Data Visualization



Chapter 2 Types of Digital Data

2.1 What is in Store?

2.2 Classification of Digital Data

2.3 Structured versus Unstructured Data



Chapter 3 Reading Data from Varied Data Sources into Python DataFrame

3.1 Read from Excel Data Source

3.2 Read Data from .csv

3.3 Load a Python Dictionary into a DataFrame

3.4 Reading JSON data into a Pandas DataFrame

3.5 Reading Data from Microsoft Access Database

3.6 Reading Data from .txt File

3.7 Reading Data from XML File



Chapter 4 Pros and Cons of Charts

4.1 Pie Chart

4.2 Tree Map

4.3 Heat Map

4.4 Scatter Plot

4.5 Histogram

4.6 Word Cloud

4.7 Box Plot



Chapter 5 Good Chart Designs

5.1 Mistakes That Can Be Avoided

5.2 Less Is More

5.3 Tables versus Charts



Chapter 6 Data Wrangling in Python

6.1 Pandas Data Manipulation

6.2 Dealing with Missing Values

6.3 Date Reshaping

6.4 Filtering Data

6.5 Merging Data

6.6 Subsetting DataFrames in Pandas

6.7 Reshaping the Data and Pivot Tables

6.8 Backfill

6.9 Forward Fill



Chapter 7 Functions in Python Pandas

7.1 Pandas DataFrame Functions



Chapter 8 Matplotlib for Data Visualization

8.1 Exploratory Data Analysis using Python

8.2 Matplotlib



Chapter 9 Plotly for Data Visualization

9.1 Plotly Python Package



Chapter 10 Seaborn for Data Visualization

10.1 Seaborn Plots Using “iris” Dataset

10.2 Seaborn Plots Using “Superstore” Dataset

10.3 Seaborn Plots Using “OLYMPIC” Dataset

10.4 Seaborn Plots Using “Passengers Flights” Dataset



Chapter 11 Cases

11.1 Case Study 1

11.2 Case Study 2

Reimagining Data Visualization Using Python is an extensive discourse on data visualization. It details how to perform data visualization on a variety of datasets using various data visualization libraries written in Python programming language. Understanding, visualizing, and presenting data is slowly and gradually becoming a must have skills for professionals in all disciplines. This book is designed for learners who are beginners in visualization using python. It is a guide with detailed out steps to write and execute command/code.

There are no comments on this title.

to post a comment.

©2019-2020 Learning Resource Centre, Indian Institute of Management Bodhgaya

Powered by Koha