microsoft partner logo color
8545  Reviews star_rate star_rate star_rate star_rate star_half

Implement a Data Analytics Solution with Azure Databricks

This course explores how to use Databricks and Apache Spark on Azure to take data projects from exploration to production. You’ll learn how to ingest, transform, and analyze large-scale datasets...

Read More
$675 USD
Duration 1 day
Course Code DP-3011
Available Formats Classroom, Virtual

Overview

This course explores how to use Databricks and Apache Spark on Azure to take data projects from exploration to production. You’ll learn how to ingest, transform, and analyze large-scale datasets with Spark DataFrames, Spark SQL, and PySpark, while also building confidence in managing distributed data processing. Along the way, you’ll get hands-on with the Databricks workspace—navigating clusters and creating and optimizing Delta tables.   You’ll also dive into data engineering practices, including designing ETL pipelines, handling schema evolution, and enforcing data quality. The course then moves into orchestration, showing you how to automate and manage workloads with Lakeflow Jobs and pipelines. To round things out, you’ll explore governance and security capabilities such as Unity Catalog and Purview integration, ensuring you can work with data in a secure, well-managed, and production-ready environment.

Audience Profile

​Before taking this course, learners should already be comfortable with the fundamentals of Python and SQL. This includes being able to write simple Python scripts and work with common data structures, as well as writing SQL queries to filter, join, and aggregate data. A basic understanding of common file formats such as CSV, JSON, or Parquet will also help when working with datasets. In addition, familiarity with the Azure portal and core services like Azure Storage is important, along with a general awareness of data concepts such as batch versus streaming processing and structured versus unstructured data. While not mandatory, prior exposure to big data frameworks like Spark, and experience working with Jupyter notebooks, can make the transition to Databricks smoother.

Prerequisites

  • Azure fundamentals (AZ-900, or equivalent knowledge).
  • Basic knowledge of Python and data visualization using matplotlib/seaborn.

Course Details

Outline

  • Explore Azure Databricks
    • Get started with Azure Databricks
    • Identify Azure Databricks workloads
    • Understand key concepts
    • Data governance using Unity Catalog and Microsoft Purview
    • Exercise - Explore Azure Databricks
    • Module assessment
  • Perform data analysis with Azure Databricks
    • Ingest data with Azure Databricks
    • Data exploration tools in Azure Databricks
    • Data analysis using DataFrame APIs
    • Exercise - Explore data with Azure Databricks
    • Module assessment
  • Use Apache Spark in Azure Databricks
    • Get to know Spark
    • Create a Spark cluster
    • Use Spark in notebooks
    • Use Spark to work with data files
    • Visualize data
    • Exercise - Use Spark in Azure Databricks
    • Module assessment
  • Manage data with Delta Lake
    • Get started with Delta Lake
    • Create Delta tables
    • Implement schema enforcement
    • Data versioning and time travel in Delta Lake
    • Data integrity with Delta Lake
    • Exercise - Use Delta Lake in Azure Databricks
    • Module assessment
  • Build Lakeflow Declarative Pipelines
    • Explore Lakeflow Declarative Pipelines
    • Data ingestion and integration
    • Real-time processing
    • Exercise - Create a Lakeflow Declarative Pipeline
    • Module assessment
  • Deploy workloads with Lakeflow Jobs
    • What are Lakeflow Jobs?
    • Understand key components of Lakeflow Jobs
    • Explore the benefits of Lakeflow Jobs
    • Deploy workloads using Lakeflow Jobs
    • Exercise - Create a Lakeflow Job
    • Module assessment
|
View Full Schedule

Schedule

2 options available

  • Feb 16, 2026 - Feb 16, 2026 (1 day)
    Live Virtual | 9:00AM 5:00PM EST
    Language English
    Select from 1 options below
    Live Virtual |9:00AM 5:00PM EST
    Live Virtual | 9:00AM 5:00PM EST
    Enroll
    Enroll Add to quote
  • Jun 18, 2026 - Jun 18, 2026 (1 day)
    Live Virtual | 9:00AM 5:00PM EDT
    Language English
    Select from 1 options below
    Live Virtual |9:00AM 5:00PM EDT
    Live Virtual | 9:00AM 5:00PM EDT
    Enroll
    Enroll Add to quote

FAQ

How do I get a Microsoft exam voucher?

Pearson Vue Exam vouchers can be requested and ordered with your course purchase or can be ordered separately by clicking here.

  • Vouchers are non-refundable and non-returnable. Vouchers expire 12 months from the date they are issued unless otherwise specified in the terms and conditions.
  • Voucher expiration dates cannot be extended. The exam must be taken by the expiration date printed on the voucher.

Do Microsoft courses come with post lab access?

Most Microsoft official courses will include post-lab access ranging from 30 to 180 calendar days after instructor led course delivery. A lab training key in class will be provided that can be leveraged to continue connecting to a remote lab environment for the individual course attendee.

Does the course schedule include a Lunchbreak?

Lunch is normally an hour-long after 3-3.5 hours of the class day.

What languages are used to deliver training?

Microsoft courses are conducted in English unless otherwise specified.

Reviews

The platform is very intuitive and easy to navigate. Great tool for learning

The technical data in the AWS Solutions Architect course was very thorough.

Great training it covered the most importan topics if GitHub copilot with good explanation and good labs.

Course was great and informative. The instructor had a good flow and was very personable.

Exit certified was great as it is very in depth and hands on learning which made it very easy to learn this type of work.