Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Introduction to Azure Data Factory | Getting Started with Azure and Core Tools
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

book
Introduction to Azure Data Factory

Modern data engineering often involves moving and transforming vast amounts of data from various sources to destinations, ensuring it's ready for analytics or business applications. This is where Azure Data Factory (ADF) comes in - a powerful, cloud-based data integration service designed to simplify and automate these tasks.

Azure Data Factory (ADF) is a Platform as a Service (PaaS) offering from Microsoft that enables you to create, manage, and monitor ETL/ELT data pipelines. These pipelines orchestrate workflows to:

  • Extract data from diverse sources like on-premises databases, APIs, and cloud storage;
  • Transform the data by cleansing, aggregating, or enriching it;
  • Load it into destinations such as Azure SQL Database, Data Lakes, or Power BI.

Key Components of Azure Data Factory

  • Pipelines: the core unit in ADF where you define the sequence of tasks (activities) to process your data;
  • Datasets: represent your data structure, such as a file in Blob Storage or a table in a database;
  • Linked Services: define the connection details to your data sources and destinations (e.g., credentials, endpoints).

Why Use Azure Data Factory?

  • Seamless data movement: connects to over 90 data sources, both cloud-based and on-premises;
  • No-Code/Low-Code development: build pipelines visually using a drag-and-drop interface or define workflows in code;
  • Scalability: automatically scales to handle large datasets and high-frequency data transfers;
  • Cost-Effective: pay-as-you-go pricing with no upfront costs.
What type of development approach does Azure Data Factory support?

What type of development approach does Azure Data Factory support?

Select the correct answer

Everything was clear?

How can we improve it?

Thanks for your feedback!

Section 1. Chapter 7
We're sorry to hear that something went wrong. What happened?
some-alt