DP-203T00-A: Data Engineering on Microsoft Azure

Live Online (VILT) & Classroom Corporate Training Course

Reasons to Choose

The Azure Data Engineering Course will prepare you to pass the Microsoft Azure Data Engineering Exam DP-203.

  • You will master creating data processing pipelines, ensuring data security, and using tools such as Data Factory, Databricks, and more.
  • Gain hands-on experience through real-time use cases and project work.
  • Learn from Microsoft-certified Azure Data Engineers.
How can we help you?

Cloud Workshops

Projects

Assignments

Round-the-Clock Support

Course Overview:

In this course, the student will learn how to implement and manage data engineering workloads on Microsoft Azure, using Azure services such as Azure Synapse Analytics, Azure Data Lake Storage Gen2, Azure Stream Analytics, Azure Databricks, and others. The course focuses on common data engineering tasks such as orchestrating data transfer and transformation pipelines, working with data files in a data lake, creating and loading relational data warehouses, capturing and aggregating streams of real-time data, and tracking data assets and lineage.

Course Prerequisites

To have a successful learning experience in the DP-203T00: Data Engineering on Microsoft Azure course, it is recommended that you meet the following prerequisites:

 

– Basic understanding of data processing concepts and languages, such as SQL.

– Familiarity with cloud computing concepts, especially Microsoft Azure services.

– Some experience with data solutions, including both relational and non-relational data stores.

Course Objective

  • Grasp the fundamentals of data engineering on Azure, including data storage, streaming, and analytics.

DP: 203 Microsoft Azure Data engineer course outline

Module 1: Introduction to data engineering on Azure 

  • Identify common data engineering tasks 
  • Describe common data engineering concepts 
  • Identify Azure services for data engineering 

Module 2: Data Storage in Microsoft Azure

  • You will learn the basics of storage management in Azure, how to create a Storage Account, and how to choose the right model for your data.
  • Design and implement data storage and data security
  • Design and develop data processing
  • Monitor and optimize data storage and data processing

Module 3: Introduction to Azure Synapse Apache Spark Pools

  • How to use Azure Synapse Analytics to build Data Warehouses using modern architecture patterns
  • How to describe the features and components of Azure Synapse Analytics
  • How to use Azure Synapse Analytics to build your analytical solutions in one place
  • How to use Azure Synapse Studio application to interact with the various components of Azure Synapse Analytics
  • Use Delta Lake in Azure Synapse Analytics

Module 4: Data warehousing using Azure Synapse Analytics

  • Analyze data in a relational data warehouse
  • Load data into a relational data warehouse
  • How to query Azure Cosmos DB with SQL Serverless/Apache Spark for Azure Synapse Analytics
  • How to configure and enable Azure Synapse Link to interact with Azure Cosmos DB


Module 5: ETL with Azure Synapse Analytics Pipelines

  • Build a data pipeline in Azure Synapse Analytics
  • Use Spark Notebooks in an Azure Synapse Pipeline

Module 6: Working with hybrid transactional and analytical processing (HTAP) Solutions using Azure Synapse Analytics

  • Plan hybrid transactional and analytical processing
  • How to query Azure Cosmos DB with SQL Serverless/Apache Spark for Azure Synapse Analytics
  • How to configure and enable Azure Synapse Link to interact with Azure Cosmos DB
  • How to use hybrid transactional and analytical processing to perform operational analytics with Azure Synapse Analytics
  • Implement Azure Synapse Link for SQL

Module 7: Implement a data streaming solution with Azure Stream Analytics

  • How to describe the concepts of event processing and streaming data and how this applies to Azure Stream Analytics
  • Ingest streaming data using Azure Stream Analytics and Azure Synapse Analytics
  • Visualize real-time data with Azure Stream Analytics and Power BI

Module 8: Data Governance

  • Introduction to Microsoft Purview
  • How to use Advanced Threat Protection to proactively monitor your system and describe the various ways to upload data to Data Lake Storage Gen 2
  • Integrate Microsoft Purview and Azure Synapse Analytics

Module 9: Microsoft Azure Databricks for Data Engineering

  • Explore Azure Databricks
  • Use Apache Spark in Azure Databricks

Run Azure Databricks notebooks in Azure Data Factory

The primary audience for this course is data professionals, data architects, and business intelligence professionals who want to learn about data engineering and building analytical solutions using data platform technologies that exist on Microsoft Azure. The secondary audience for this course includes data analysts and data scientists who work with analytical solutions built on Microsoft Azure.

 

  • Data Engineers
  • Data Architects
  • Data Scientists
  • Database Administrators
  • IT Professionals with a focus on data solutions
  • Business Intelligence Professionals
  • Cloud Solution Architects

DP: 203 exam is part of the Microsoft Certified: Azure Data Engineer Associate Certification. It evaluates a candidate’s ability to design and implement data storage, processing, and security solutions on the Azure platform, as well as perform data integration and copying using Hive and Spark. Through real projects, students learn to design Azure data solutions, process data, and ensure data security.

The Azure Data Engineer Course will take up to 40 hours of instructor-led training.

 

Accelerate your workforce upskilling with us.

Quick Links

Edureva © 2025 | Website Design by PlutoWebs