Data Cleaning in Excel: Techniques to Clean Messy Data
Rarely do analysts begin working with a dataset without cleansing it first. Having clean data will allow for the highest quality of information for strategic...
By Dr. Chao Mbogho on Coursera
About This Course
Rarely do analysts begin working with a dataset without cleansing it first. Having clean data will allow for the highest quality of information for strategic decision-making. Data cleaning is also a vital part of the data analytics process. Data Cleaning in Excel: Techniques to Clean Messy Data, is for a beginner audience with basic computing skills, typing, and using Excel web. In this 90-minute Guided Project, you will explore the principles of tidy data, apply built-in Excel features to clean data, and use Excel functions to perform text manipulation. To achieve this, we will clean up untidy data set of student data containing names, registration numbers, addresses, marks for three courses, averages, total, and grades. This project is unique because you will learn by doing through step-by-step instruction using a real-world scenario to equip you with foundational data analysis skills that are useful for reporting data. In order to be successful in this project, prerequisites include basic computing skills, familiarity with Windows, files and folders, and basic typing.
Topics Covered
Frequently Asked Questions
How much does Data Cleaning in Excel: Techniques to Clean Messy Data cost?
Visit the Data Cleaning in Excel: Techniques to Clean Messy Data course page for current pricing and available discounts.
Who teaches Data Cleaning in Excel: Techniques to Clean Messy Data?
Data Cleaning in Excel: Techniques to Clean Messy Data is taught by Dr. Chao Mbogho, Coursera.
What skill level is Data Cleaning in Excel: Techniques to Clean Messy Data for?
This course is designed for beginner learners.
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