IT & Software Pluralsight – Data Cleaning and Quality Assurance in R

Currently reading:
 IT & Software Pluralsight – Data Cleaning and Quality Assurance in R

Covers web development, programming, AI, cloud computing, DevOps, and cybersecurity.

baladia

Member
Amateur
LV
4
Joined
Feb 22, 2024
Threads
1,154
Likes
83
Awards
9
Credits
24,497©
Cash
0$
40b4ea717ae1a6032f9b2c78676b8924.jpeg

Released 12/2024
By Janani Ravi
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English + subtitle | Duration: 52m | Size: 138 MB


Data preparation is a critical step in turning raw information into actionable insights. This course will teach you how to clean, structure, and validate data in R to solve real-world problems efficiently.
Preparing data for analysis can be a daunting task, especially when dealing with missing values, outliers, and inconsistent formats that compromise the integrity of your insights. In this course, Data Cleaning and Quality Assurance in R, you'll gain the ability to handle inconsistent, real-world datasets and transform them into reliable and analyzable formats. First, you'll explore strategies to identify and address missing data, including summarizing missing patterns and imputing values using statistical and conditional techniques. Next, you'll discover how to detect and manage outliers in both numerical and categorical data using visualizations, statistical methods, and targeted replacements. Finally, you'll learn how to ensure data consistency by converting data types, standardizing units, and implementing validation checks to maintain data integrity. When you're finished with this course, you'll have the skills and knowledge of data cleaning and preparation needed to confidently preprocess datasets for analysis.
Link:
 

Create an account or login to comment

You must be a member in order to leave a comment

Create account

Create an account on our community. It's easy!

Log in

Already have an account? Log in here.

Tips

Similar threads

Top Bottom