Implementing a Data Warehouse with Microsoft SQL Server
Overview
This course describes how to implement a data warehouse platform to support a BI solution. Students will learn how to create a data warehouse with Microsoft SQL Server 2014, implement ETL with SQL Server Integration Services, and validate and cleanse data with SQL Server Data Quality Services and SQL Server Master Data Services.
Note: This course is designed for customers who are interested in learning SQL Server 2012 or SQL Server 2014. It covers the new features in SQL Server 2014, but also the important capabilities across the SQL Server data platform.
Duration
40 hours
Objectives
After completing this course, students will be able to:
-
Describe data warehouse concepts and architecture considerations.
-
Select an appropriate hardware platform for a data warehouse.
-
Design and implement a data warehouse.
-
Implement Data Flow in an SSIS Package.
-
Implement Control Flow in an SSIS Package.
-
Debug and Troubleshoot SSIS packages.
-
Implement an ETL solution that supports incremental data extraction.
-
Implement an ETL solution that supports incremental data loading.
-
Implement data cleansing by using Microsoft Data Quality Services.
-
Implement Master Data Services to enforce data integrity.
-
Extend SSIS with custom scripts and components.
-
Deploy and Configure SSIS packages.
-
Describe how BI solutions can consume data from the data warehouse.
Intended Audience
This course is intended for database professionals who need to create and support a data warehousing solution. Primary responsibilities include:
-
Implementing a data warehouse.
-
Developing SSIS packages for data extraction, transformation, and loading.
-
Enforcing data integrity by using Master Data Services.
-
Cleansing data by using Data Quality Services.
Prerequisites
This course requires that you meet the following prerequisites:
-
At least 2 years’ experience of working with relational databases, including:
-
Designing a normalized database.
-
Creating tables and relationships.
-
Querying with Transact-SQL.
-
Some exposure to basic programming constructs (such as looping and branching).
-
An awareness of key business priorities such as revenue, profitability, and financial accounting is desirable.
Course Outline
Module 1: Introduction to Data Warehousing
This module provides an introduction to the key components of a data warehousing solution and the high-level considerations you must take into account when you embark on a data warehousing project.
Lessons
- Overview of Data Warehousing
- Considerations for a Data Warehouse Solution
Lab : Exploring a Data Warehousing Solution
- Exploring Data Sources
- Exploring and ETL Process
- Exploring a Data Warehouse
- Describe the key elements of a data warehousing solution
- Describe the key considerations for a data warehousing project
Module 2: Planning Data Warehouse Infrastructure
Lessons
- Considerations for Data Warehouse Infrastructure
- Planning Data Warehouse Hardware
Lab : Planning Data Warehouse Infrastructure
- Planning Data Warehouse Hardware
- Describe key considerations for BI infrastructure.
- Plan data warehouse infrastructure.
Module 3: Designing and Implementing a Data Warehouse
Lessons
- Data Warehouse Design Overview
- Designing Dimension Tables
- Designing Fact Tables
- Physical Design for a Data Warehouse
Lab : Implementing a Data Warehouse
- Implement a Star Schema
- Implement a Snowflake Schema
- Implement a Time Dimension
- Describe a process for designing a dimensional model for a data warehouse
- Design dimension tables for a data warehouse
- Design fact tables for a data warehouse
- Design and implement effective physical data structures for a data warehouse
Module 4: Creating an ETL Solution with SSIS
Lessons
- Introduction to ETL with SSIS
- Exploring Data Sources
- Implementing Data Flow
Lab : Implementing Data Flow in an SSIS Package
- Exploring Data Sources
- Transferring Data by Using a Data Flow Task
- Using Transformations in a Data Flow
- Describe the key features of SSIS.
- Explore source data for an ETL solution.
- Implement a data flow by using SSIS
Module 5: Implementing Control Flow in an SSIS Package
Lessons
- Introduction to Control Flow
- Creating Dynamic Packages
- Using Containers
- Managing Consistency
Lab : Implementing Control Flow in an SSIS Package
- Using Tasks and Precedence in a Control Flow
- Using Variables and Parameters
- Using Containers
Lab : Using Transactions and Checkpoints
- Using Transactions
- Using Checkpoints
- Implement control flow with tasks and precedence constraints
- Create dynamic packages that include variables and parameters
- Use containers in a package control flow
- Enforce consistency with transactions and checkpoints
Module 6: Debugging and Troubleshooting SSIS Packages
Lessons
- Debugging an SSIS Package
- Logging SSIS Package Events
- Handling Errors in an SSIS Package
Lab : Debugging and Troubleshooting an SSIS Package
- Debugging an SSIS Package
- Logging SSIS Package Execution
- Implementing an Event Handler
- Handling Errors in a Data Flow
- Debug an SSIS package
- Implement logging for an SSIS package
- Handle errors in an SSIS package
Module 7: Implementing a Data Extraction Solution
Lessons
- Planning Data Extraction
- Extracting Modified Data
Lab : Extracting Modified Data
- Using a Datetime Column
- Using Change Data Capture
- Using the CDC Control Task
- Using Change Tracking
- Plan data extraction
- Extract modified data
Module 8: Loading Data into a Data Warehouse
Lessons
- Planning Data Loads
- Using SSIS for Incremental Loads
- Using Transact-SQL Loading Techniques
Lab : Loading a Data Warehouse
- Loading Data from CDC Output Tables
- Using a Lookup Transformation to Insert or Update Dimension Data
- Implementing a Slowly Changing Dimension
- Using the MERGE Statement
- Describe the considerations for planning data loads
- Use SQL Server Integration Services (SSIS) to load new and modified data into a data warehouse
- Use Transact-SQL techniques to load data into a data warehouse
Module 9: Enforcing Data Quality
Lessons
- Introduction to Data Quality
- Using Data Quality Services to Cleanse Data
- Using Data Quality Services to Cleanse Data
Lab : Cleansing Data
- Creating a DQS Knowledge Base
- Using a DQS Project to Cleanse Data
- Using DQS in an SSIS Package
- Describe how Data Quality Services can help you manage data quality
- Use Data Quality Services to cleanse your data
- Use Data Quality Services to match data
Module 10: Master Data Services
Lessons
- Introduction to Master Data Services
- Implementing a Master Data Services Model
- Managing Master Data
- Creating a Master Data Hub
Lab : Implementing Master Data Services
- Creating a Master Data Services Model
- Using the Master Data Services Add-in for Excel
- Enforcing Business Rules
- Loading Data Into a Model
- Consuming Master Data Services Data
- Describe key Master Data Services concepts
- Implement a Master Data Services model
- Use Master Data Services tools to manage master data
- Use Master Data Services tools to create a master data hub
Module 11: Extending SQL Server Integration Services
Lessons
- Using Scripts in SSIS
- Using Custom Components in SSIS
Lab : Using Custom Scripts
- Using a Script Task
- Include custom scripts in an SSIS package
- Describe how custom components can be used to extend SSIS
Module 12: Deploying and Configuring SSIS Packages
Lessons
- Overview of SSIS Deployment
- Deploying SSIS Projects
- Planning SSIS Package Execution
Lab : Deploying and Configuring SSIS Packages
- Creating an SSIS Catalog
- Deploying an SSIS Project
- Running an SSIS Package in SQL Server Management Studio
- Scheduling SSIS Packages with SQL Server Agent
- Describe considerations for SSIS deployment.
- Deploy SSIS projects.
- Plan SSIS package execution.
Module 13: Consuming Data in a Data Warehouse
Lessons
- Introduction to Business Intelligence
- Enterprise Business Intelligence
- Self-Service BI and Big Data
Lab : Using a Data Warehouse
- Exploring an Enterprise BI Solution
- Exploring a Self-Service BI Solution
- Describe BI and common BI scenarios
- Describe how a data warehouse can be used in enterprise BI scenarios
- Describe how a data warehouse can be used in self-service BI scenarios
Học trực tuyến
Học tại Hồ Chí Minh
Học tại Hà Nội