Essential Guide to Python Pandas
Essential Guide to Python Pandas
This Pandas crash course is designed to be a practical guide with real-life examples about the most common data manipulation tasks. The materials are presented with reusable code examples to allow you to quickly apply what you learn to your data analysis projects.
By the end of this course, you should be able to:
Describe the Anatomy of Pandas Data Structures. This includes Pandas DataFrames, Series, and Indices.
Implement several methods to get data into and from Pandas DataFrames. These methods include Python Native Data Structures, Tabular data files, API queries and JSON format, web scraping, and more.
Describe any information within a Pandas DataFrame. This will help you to identify data problems such as having missing values or using incorrect data types.
Understand Pandas Data Types and the correct use case for each type.
Perform Data manipulation and cleaning. This part includes fixing data types, handling missing values, removing duplicate records, and many more.
Merge & Join multiple datasets into Pandas DataFrames
Perform Data Summarization & Aggregation within any DataFrame
Create different types of Data Visualization
Update Pandas Styling Settings
Conduct a Data Analysis Project using Pandas library to collect and investigate COVID-19 infection, and the consequent lockdown in different countries.
In addition to the course materials, you will also have free access to the following:- A Jupyter Notebook with all the code examples covered in this course- A free e-book in PDF format
A Python Pandas crash course to teach you all the essentials to get started with data analytics
Url: View Details
What you will learn
- Describe the Anatomy and main components of Pandas Data Structures. Understand Pandas Data Types and the correct use case for each type.
- Implement several methods to get data into and from Pandas DataFrames. These methods include Python Native Data Structures, Tabular data files, API queries etc
- Describe any information within a Pandas DataFrame. This will help you to identify data problems such as having missing values or using incorrect data types
Rating: 4.83333
Level: Intermediate Level
Duration: 1.5 hours
Instructor: Dr. Ali Gazala
Courses By: 0-9 A B C D E F G H I J K L M N O P Q R S T U V W X Y Z
About US
The display of third-party trademarks and trade names on this site does not necessarily indicate any affiliation or endorsement of hugecourses.com.
View Sitemap