Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Datasets | Foundations of Azure Data Factory
Introduction to Data Engineering with Azure
course content

Course Content

Introduction to Data Engineering with Azure

Introduction to Data Engineering with Azure

1. Getting Started with Azure and Core Tools
2. Foundations of Azure Data Factory
3. Data Flows and Transformations in ADF
4. Practical Problem Solving with ADF

bookDatasets

When working with data in Azure Data Factory, datasets play a crucial role. They define the data structures or schema used in pipelines, essentially serving as a pointer to the data you want to move or transform. Datasets work in tandem with Linked Services to help ADF access, process, and manage data efficiently.

While Linked Services define where the data resides, datasets specify what part of the data to work with.

Why Are Datasets Important?

  • Data interaction: datasets provide the schema and parameters that help ADF understand and interact with your data;
  • Reusability: you can define datasets once and reuse them across multiple activities in pipelines;
  • Flexibility: datasets allow dynamic configurations using parameters, enabling pipelines to handle variable data inputs or outputs.
Which of the following could be represented by a dataset in ADF?

Which of the following could be represented by a dataset in ADF?

Select the correct answer

Everything was clear?

How can we improve it?

Thanks for your feedback!

Section 2. Chapter 2
We're sorry to hear that something went wrong. What happened?
some-alt