Orchestrating Big Data with Azure Data Factory

Learn how to use Microsoft Azure Data Factory to orchestrate big data workflows in the cloud.

Created by: Graeme Malcolm

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Course Description

Need to schedule and manage big data workflows?
This data analysis course teaches you how to use Azure Data Factory to coordinate data movement and transformation using technologies such as Hadoop, SQL, and Azure Data Lake Analytics. You will learn how to create data pipelines that will allow you to group activities to perform a certain task.
Note: To complete this course, you will need a Microsoft Azure subscription. You can sign up for a free trial subscription at https://azure.microsoft.com, or you can use your existing subscription. The labs have been designed to minimize the resource costs required to complete the hands-on activities.
Module 1: Getting Started with Azure Data Factory
Module 2: Scheduling Pipelines
Module 3: Transforming Data in Pipelines

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Instructor Details

Graeme Malcolm

Graeme has been a trainer, consultant, and author for longer than he cares to remember, specializing in SQL Server and the Microsoft data platform. He is a Microsoft Certified Solutions Expert for the SQL Server Data Platform and Business Intelligence. After years of working with Microsoft as a partner and vendor, he now works in the Microsoft Learning Experiences team as a senior content developer, where he plans and creates content for developers and data professionals who want to get the best out of Microsoft technologies.

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