DP-900 Cheat Sheet 2026

The 30 highest-yield DP-900 facts, distilled from real exam questions. Print it, save it as a PDF, or study it here — free, no sign-up.

50 questions
60 min time limit
70.00% to pass
  1. Which metric best measures Azure Stream Analytics effectiveness? Domain-specific KPIs aligned with defined objectives
  2. What reporting is needed for Non-Relational Data on Azure? Regular reports to relevant stakeholders with actionable insights and metrics
  3. What vendor considerations apply to Azure Synapse Analytics? Evaluating vendors, managing SLAs, and monitoring ongoing performance
  4. What is the Azure Databricks workspace? An environment that organizes notebooks, clusters, jobs, and data into a unified interface
  5. What risk does poor implementation of Azure Synapse Analytics create? Increased vulnerability to failures and compliance issues
  6. What documentation is essential for Non-Relational Data on Azure? Policies, procedures, guidelines, and records of decisions
  7. What training is recommended for Azure SQL Database? Structured training combining theory and practical application
  8. What is the governance framework for Azure Stream Analytics? Defined roles, responsibilities, policies, and accountability structures
  9. How does Non-Relational Data on Azure contribute to continuous improvement? Through regular assessment, feedback loops, and iterative enhancement
  10. What common mistake is made when implementing Non-Relational Data on Azure? Skipping proper planning and rushing to implementation
  11. What is the primary purpose of Azure Data Factory in the context of DP-900 - Microsoft Azure Data Fundamentals? To provide a structured framework for azure data factory management and implementation
  12. How should Azure Cosmos DB be prioritized against competing organizational needs? Based on risk assessment and business impact analysis
  13. What documentation is essential for Relational Data on Azure? Policies, procedures, guidelines, and records of decisions
  14. How should Non-Relational Data on Azure be communicated to stakeholders? Regular updates with clear, actionable information and metrics
  15. What scalability considerations apply to Non-Relational Data on Azure? Maintaining quality and consistency as scope and complexity grow
  16. What training is recommended for Data Governance and Compliance? Structured training combining theory and practical application
  17. How should Azure SQL Database be prioritized against competing organizational needs? Based on risk assessment and business impact analysis
  18. What is the governance framework for Data Governance and Compliance? Defined roles, responsibilities, policies, and accountability structures
  19. What reporting is needed for Relational Data on Azure? Regular reports to relevant stakeholders with actionable insights and metrics
  20. How does Non-Relational Data on Azure support organizational goals? By reducing risk and improving operational efficiency
  21. How does Azure Synapse Analytics handle change management? Through controlled processes that assess impact before changes
  22. Which Azure service can Azure Databricks use for storing and sharing machine learning models in a governed registry? Azure Machine Learning model registry
  23. What prerequisite knowledge is needed for Azure SQL Database? Understanding of foundational concepts and organizational context
  24. What risk does poor implementation of Non-Relational Data on Azure create? Increased vulnerability to failures and compliance issues
  25. What vendor considerations apply to Azure Data Factory? Evaluating vendors, managing SLAs, and monitoring ongoing performance
  26. What scalability considerations apply to Power BI Fundamentals? Maintaining quality and consistency as scope and complexity grow
  27. What tools and platforms support Azure Stream Analytics implementation? Purpose-built tools and platforms specific to this domain
  28. What reporting is needed for Power BI Fundamentals? Regular reports to relevant stakeholders with actionable insights and metrics
  29. What emerging trends are affecting Azure Data Factory? Technology advances, increased automation, and evolving industry practices
  30. What vendor considerations apply to Non-Relational Data on Azure? Evaluating vendors, managing SLAs, and monitoring ongoing performance
Turn these facts into recall: