Exam DP-600: Implementing Analytics Solutions Using Microsoft Fabric

Exam Number: DP-600 Length of test: 120 mins
Exam Name: Implementing Analytics Solutions Using Microsoft Fabric Number of questions in the actual exam: 40-60
Format: PDF, VPLUS Passing Score: 700/1000

Total Questions: 118

$30

Premium PDF file 2 months updates

Last updated: March-2025

Total Questions: 118

FREE

Premium VPLUS file

Last updated: March-2025

Download practice test questions

Study guide for Exam DP-600: Implementing Analytics Solutions Using Microsoft Fabric

Audience profile

As a candidate for this exam, you should have subject matter expertise in designing, creating, and deploying enterprise-scale data analytics solutions.

Your responsibilities for this role include transforming data into reusable analytics assets by using Microsoft Fabric components, such as:

  • Lakehouses
  • Data warehouses
  • Notebooks
  • Dataflows
  • Data pipelines
  • Semantic models
  • Reports

You implement analytics best practices in Fabric, including version control and deployment.

To implement solutions as a Fabric analytics engineer, you partner with other roles, such as:

  • Solution architects
  • Data engineers
  • Data scientists
  • AI engineers
  • Database administrators
  • Power BI data analysts

In addition to in-depth work with the Fabric platform, you need experience with:

  • Data modeling
  • Data transformation
  • Git-based source control
  • Exploratory analytics
  • Programming languages (including Structured Query Language (SQL), Data Analysis Expressions (DAX), and PySpark)

Skills at a glance

  • Plan, implement, and manage a solution for data analytics (10–15%)
  • Prepare and serve data (40–45%)
  • Implement and manage semantic models (20–25%)
  • Explore and analyze data (20–25%)

Plan, implement, and manage a solution for data analytics (10–15%)

  • Plan a data analytics environment
  • Implement and manage a data analytics environment
  • Manage the analytics development lifecycle

Prepare and serve data (40–45%)

  • Create objects in a lakehouse or warehouse
  • Copy data
  • Transform data
  • Optimize performance

Implement and manage semantic models (20–25%)

  • Design and build semantic models
  • Optimize enterprise-scale semantic models

Explore and analyze data (20–25%)

  • Perform exploratory analytics
  • Query data by using SQL
5 1 vote
Article Rating
Subscribe
Notify of
guest

2 Comments
Inline Feedbacks
View all comments
\r\n <\/div>\r\n<\/div>\r\n","isUserRated":"0","version":"7.6.29","wc_post_id":"5591","isCookiesEnabled":"1","loadLastCommentId":"0","dataFilterCallbacks":[],"phraseFilters":[],"scrollSize":"32","is_email_field_required":"1","url":"https:\/\/vdumps.com\/wp-admin\/admin-ajax.php","customAjaxUrl":"https:\/\/vdumps.com\/wp-content\/plugins\/wpdiscuz\/utils\/ajax\/wpdiscuz-ajax.php","bubbleUpdateUrl":"https:\/\/vdumps.com\/wp-json\/wpdiscuz\/v1\/update","restNonce":"141e5dd5bb","is_rate_editable":"0","menu_icon":"https:\/\/vdumps.com\/wp-content\/plugins\/wpdiscuz\/assets\/img\/plugin-icon\/wpdiscuz-svg.svg","menu_icon_hover":"https:\/\/vdumps.com\/wp-content\/plugins\/wpdiscuz\/assets\/img\/plugin-icon\/wpdiscuz-svg_hover.svg"}; var wpdiscuzUCObj = {"msgConfirmDeleteComment":"Are you sure you want to delete this comment?","msgConfirmCancelSubscription":"Are you sure you want to cancel this subscription?","msgConfirmCancelFollow":"Are you sure you want to cancel this follow?","additionalTab":"0"}; -->