Data Science Foundations: Data Engineering

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LinkedIn Learning Review

Location

Online(Course Link)

Dates

On Demand

Course Categories

IT, Technology and Software

Certficate

Yes()

Language

English

Course Fees

US Dollar 15.94 (Check Course Page for Last Price)

No. of Attendant

Unlimited

Acquired Skills/Covered Subjects

  • Working with systems and schemas,Managing of a good data pipeline,Setting up an environment,Loading and profiling data,Testing quality
Provider Name LinkedIn Learning
Training Areas
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Website https://www.linkedin.com/learning/
About The Provider

LinkedIn Learning is an American website offering video courses taught by industry experts in software, creative, and business skills. It is a subsidiary of LinkedIn.

It was founded in 1995 by Lynda Weinman as Lynda.com before being acquired by LinkedIn in 2015.Microsoft acquired LinkedIn in December 2016.

Approach big data with confidence by mastering the core skills needed to put data to work for your business. This course covers the basics of data engineering, system design, analytics, and business intelligence. Data science expert Ben Sullins explains how to collect and organize your data so you can deliver results that your organization can leverage. Ben starts by examining the modern data ecosystem and how it relates to running a smart and efficient data hub. Then, he shows you how to perform the principle tasks involved in managing, loading, extracting, and transforming data. He also takes you through staging, profiling, cleansing, and migrating data. Along the way, he provides actionable recommendations that applicable to data experts throughout an organization—analysts, engineers, scientists, modelers, and more

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