DP-900 Azure Data Fundamentals - The Complete Practice Test

Master Azure Data Fundamentals: Your Ultimate Guide to Acing the DP-900 Exam with Top-Rated Practice Tests.

DP-900 Azure Data Fundamentals - The Complete Practice Test
DP-900 Azure Data Fundamentals - The Complete Practice Test

DP-900 Azure Data Fundamentals - The Complete Practice Test free download

Master Azure Data Fundamentals: Your Ultimate Guide to Acing the DP-900 Exam with Top-Rated Practice Tests.

Welcome to the top-quality DP-900: Microsoft Azure Data Fundamentals practice tests to help you prepare for your DP-900 exam and pave the way for future exams like Azure Data Engineer Associate and Azure Database Administrator.


These tests will help you in preparing for the DP-900 exam in 2023/24. All the latest changes are covered. The latest questions are added for the preparation.


Course Updates:


last updated: 15/01/2024


Total 140 questions were divided into three practice sets.


Updated explanations


The course offers the following features:


DETAILED EXPLANATIONS, REFERENCE LINKS - Every question has a detailed explanation and reference links to Microsoft online documentation.


ALWAYS UP TO DATE - These practice tests are constantly updated with new questions and based on the student's feedback.


HANDPICKED UNIQUE QUESTIONS - We have picked selective questions emphasizing on quality rather than quantity.


5 * * * * * feedback


MOBILE-COMPATIBLE


30-day MONEY BACK GUARANTEE


This exam is an opportunity to demonstrate knowledge of core data concepts and related Microsoft Azure data services. Candidates for this exam should have familiarity with Exam DP-900’s self-paced or instructor-led learning material.


This exam is intended for candidates beginning to work with data in the cloud.


Candidates should be familiar with the concepts of relational and non-relational data, and different types of data workloads such as transactional or analytical.


Azure Data Fundamentals can be used to prepare for other Azure role-based certifications like Azure Database Administrator Associate or Azure Data Engineer Associate, but it is not a prerequisite for any of them.


Skills measured


· Describe core data concepts (25–30%)


· Identify considerations for relational data on Azure (20–25%)


· Describe considerations for working with non-relational data on Azure (15–20%)


· Describe an analytics workload on Azure (25–30%)


Functional groups


Describe core data concepts (25—30%)


Describe ways to represent data


· Describe features of structured data


· Describe features of semi-structured


· Describe features of unstructured data


Identify options for data storage


· Describe common formats for data files


· Describe types of databases


Describe common data workloads


· Describe features of transactional workloads


· Describe features of analytical workloads


Identify roles and responsibilities for data workloads


· Describe responsibilities for database administrators


· Describe responsibilities for data engineers


· Describe responsibilities for data analysts


Identify considerations for relational data on Azure (20—25%)


Describe relational concepts


· Identify features of relational data


· Describe normalization and why it is used


· Identify common structured query language (SQL) statements


· Identify common database objects


Describe relational Azure data services


· Describe the Azure SQL family of products including Azure SQL Database, Azure SQL


· Managed Instance, and SQL Server on Azure Virtual Machines


· Identify Azure database services for open-source database systems


Describe considerations for working with non-relational data on Azure (15—20%)


Describe capabilities of Azure storage


· Describe Azure Blob storage


· Describe Azure File storage


· Describe Azure Table storage


Describe capabilities and features of Azure Cosmos DB


· Identify use cases for Azure Cosmos DB


· Describe Azure Cosmos DB APIs


Describe an analytics workload on Azure (25—30%)


Describe common elements of large-scale analytics


· Describe considerations for data ingestion and processing


· Describe options for analytical data stores


· Describe Azure services for data warehousing, including Azure Synapse Analytics, Azure Databricks, Azure HDInsight, and Azure Data Factory


Describe consideration for real-time data analytics


· Describe the difference between batch and streaming data


· Describe technologies for real-time analytics including Azure Stream Analytics, Azure Synapse Data Explorer, and Spark structured streaming


Describe data visualization in Microsoft Power BI


· Identify capabilities of Power BI


· Describe features of data models in Power BI


· Identify appropriate visualizations for data