Implementing a Data Warehouse SQL Server 2019

  • 2-3 hours worth of material
  • LinkedIn Learning
  • English
Implementing a Data Warehouse SQL Server 2019

Course Overview

Create a long-term data storage solution using SQL Server 2019 and Azure SQL Data Warehouse.

Course Circullum

Introduction
  • Store information in a data warehouse
  • What you should know
  • Set up the example databases
1. Data Warehouse Foundations
  • Data warehouse core concepts
  • Transactional databases vs. data warehouses
  • Dimensions and facts
  • Star and snowflake schemas
  • Hardware and infrastructure
2. Create a Data Warehouse
  • Create a data warehouse in SQL Server
  • Design dimension tables
  • Design fact tables
  • Create an indexed view
3. Columnstore Indexes
  • Advantages of columnstore indexes
  • Memory-optimized columnstore table
  • Rebuild columnstore indexes
4. Implement an Azure SQL Data Warehouse
  • Hosting a data warehouse in the cloud
  • Create an Azure SQL Data Warehouse project
  • Develop tables in Azure SQL Data Warehouse
  • The Data Warehouse Migration Utility
  • Migrate a data warehouse to Azure
  • Pause and remove an Azure data warehouse
5. Extract, Transform, and Load (ETL)
  • What is ETL and SQL Server Integration Services (SSIS)?
  • Understand data flow
  • Establish control flow
6. Enforce Data Quality
  • SQL Server Data Quality Services (DQS)
  • Cleanse data with DQS
  • Create a custom knowledge base
7. Master Data Services
  • Introduction to Master Data Services (MDS)
  • Install MDS and IIS
  • Configure Master Data Services
  • Deploy a sample MDS model
  • Install the MDS Excel add-in
  • Update master data in Excel
8. Consume Data from the Warehouse
  • Business intelligence applications
Conclusion
  • Next steps
out of 5.0
5 Star 85%
4 Star 75%
3 Star 53%
1 Star 20%

Item Reviews - 3

Submit Reviews

Free Trial Available

This Course Include:
Introduction
  • Store information in a data warehouse
  • What you should know
  • Set up the example databases
1. Data Warehouse Foundations
  • Data warehouse core concepts
  • Transactional databases vs. data warehouses
  • Dimensions and facts
  • Star and snowflake schemas
  • Hardware and infrastructure
2. Create a Data Warehouse
  • Create a data warehouse in SQL Server
  • Design dimension tables
  • Design fact tables
  • Create an indexed view
3. Columnstore Indexes
  • Advantages of columnstore indexes
  • Memory-optimized columnstore table
  • Rebuild columnstore indexes
4. Implement an Azure SQL Data Warehouse
  • Hosting a data warehouse in the cloud
  • Create an Azure SQL Data Warehouse project
  • Develop tables in Azure SQL Data Warehouse
  • The Data Warehouse Migration Utility
  • Migrate a data warehouse to Azure
  • Pause and remove an Azure data warehouse
5. Extract, Transform, and Load (ETL)
  • What is ETL and SQL Server Integration Services (SSIS)?
  • Understand data flow
  • Establish control flow
6. Enforce Data Quality
  • SQL Server Data Quality Services (DQS)
  • Cleanse data with DQS
  • Create a custom knowledge base
7. Master Data Services
  • Introduction to Master Data Services (MDS)
  • Install MDS and IIS
  • Configure Master Data Services
  • Deploy a sample MDS model
  • Install the MDS Excel add-in
  • Update master data in Excel
8. Consume Data from the Warehouse
  • Business intelligence applications
Conclusion
  • Next steps
  • Provider:LinkedIn Learning
  • Certificate:Certificate Available
  • Language:English
  • Duration:2-3 hours worth of material
  • Language CC:

Do You Have Questions ?

We'll help you to grow your career and growth.
Contact Us Today