Python for Data Analysis: A Beginners Guide to Master the Fundamentals of Data Science and Data Analysis by Using Pandas, Numpy and Ipython

Ready to learn Data Science through Python language? Python for Data Analysis is a step-by-step guide for beginners and

153 45 804KB

English Pages 166 Year 2021

Report DMCA / Copyright

DOWNLOAD EPUB FILE

Table of contents :
Introduction
What You Should Keep in Mind
All Tech Work Has A Creative Element
Some Things Will Be Harder at First
You Don’t Know Everything
You Won’t Work Alone
Some Rules
To Python Beginners
Chapter 1: What is Data Science/Analysis?
Data Science vs. Data Analysis
An Example
Data Life Cycle
Data Collection
Data Cleaning
Data Wrangling
Analysis
Application
Why Python?
Chapter 2: Setting Up Your Environment
Anaconda
Windows Anaconda Installation
macOS Anaconda Installation
Using the Installer
Using the Command-line
Linux Anaconda Installation
Chapter 3: iPython & Jupyter
iPython
iPython Installation & Getting Started
iPython Special Features
Getting Information About the Object
Magic Functions
List of Magic Functions
Running and Editing a Python Script
Running System Commands
Jupyter
What Does it Do?
A Quick Overview
Understanding Modality
Jupyter Cell Magic Functions
IPyWidgets
Interactives
Types of Widgets
Numeric Widgets
Boolean Widgets
Selection Widgets
Chapter 4: Pandas
Setting Up Your Environment
Pandas Data Structures
DataFrames & Series
Labelling Indexes In A Series
Converting Tuples & Dictionaries Into A Series
Accessing Data In A DataFrame
Deleting Columns
How to Read and Write Data in Pandas
Learning More About the Data
Writing A DataFrame to A File
Selecting Data
Creating Plots
Creating New Columns
Adding and Removing Columns
Doing Statistics
Combining Tables
Dealing With Textual Data
Find length
Resources
Table A : Reading and Writing data table
Table B:2019 Weekly Data
Table C: The second set of 2019 data for DataFrame combining exercises and others
Chapter 5: NumPy
Installation
The Importance of NumPy Arrays
What is a NumPy Array?
Creating Arrays
Learning About An Array
Basic Array Operations
Accessing Elements, Slicing and Iterating Arrays
Manipulating Shapes
Stacking Arrays
Splitting An Array
Final Words & FAQ
When Do I Know I Have Enough Projects in My Portfolio?
What Type of PC Do I Need for Data Science?
What Are Some of the Skills I Will Need?
Is There a Future in Data Science/Analytics?
What Will it Take for Me to Become a Data Analyst?
Other Books from the Author
References

Python for Data Analysis: A Beginners Guide to Master the Fundamentals of Data Science and Data Analysis by Using Pandas, Numpy and Ipython

  • 0 0 0
  • Like this paper and download? You can publish your own PDF file online for free in a few minutes! Sign Up
Recommend Papers