Title: Python Library: Pandas for Beginners

Title
Python Library: Pandas for Beginners
Package
+MS-Office und Programmierung (Zusatzmodul)
Platform
Your learning platform for SAP software
URL
https://et.training/dashboard/product/video/1129 
Status
Current
Publication Type
Other
Medium
Empty
Language
First Author
Sez IT, Simon
First Editor
Empty
Publisher Name
Empty
Date First in Print
Empty
Date First Online
Empty
Access Start Date
Empty
Access End Date
Empty
Volume Number
Empty
Edition Statement
Empty
Access Type
Empty
Note
"Python Library: Pandas for BeginnersSubheading: Learn the basics of data analysis with Pandas and master one of the most popular open-source Python libraries that is also easy to use.Pandas is one of the most popular Python libraries, used for data analysis and manipulation. It is commonly used in data science, machine learning, and artificial intelligence. If you are going to work in any of these areas, you will want to be familiar with Pandas. It's easy to use, open-source, and will allow you to work with large quantities of data. It enables fast and efficient data manipulation, aggregation, and pivoting, flexible time series functionality, and more.This course will introduce the learner to the basics of data analysis with the Pandas library. First, you'll learn to work with two primary data structures in Pandas, Series and DataFrame. Then you will see how to read data from a file and explore input data using indexing and filtering. At this point, you are ready to start data preprocessing. You will see how to handle missing values and duplicate rows and to transform your data into a more efficient format. Next, you'll discover how to manipulate the data and do some processing. Finally, you'll delve into creating simple plots to visualize your data.This course assumes no previous Pandas experience, but since Pandas is a package built for Python, you need to have a fundamental understanding of basic Python syntax.This course will include:An overview of PandasInstalling Pandas on your computerUsing the two primary Pandas data structures, Series and DataFrameViewing data imported from an external sourceOrganizing input data using indexing and filtering Using Pandas for data preprocessingAddressing missing values and duplicate rowsFormatting your data most efficientlyProcessing different data typesData manipulation using string functionsDate and time formatting"
Last Changed External
Empty

Curated By

Date Created
2023-08-23 11:37:38
Last Updated
2023-08-23 11:37:38
UUID
8d4da2bf-3b4d-421a-b9ae-29877f41e463
Identifier Namespace Name Identifier Namespace Value Identifier
Title_ID title_id 1129
Subject Area
Web Development
Dewey Decimal Classification
Series
Empty
Parent publication title ID
Empty
Superseding publication title ID
Empty
Preceding publication title ID
Empty
Open Access
Empty
Price Type Value Currency


Loading