Designing and Implementing OLAP Solutions with Microsoft SQL Server 2000
Course
Inhouse
Description
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Type
Course
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Methodology
Inhouse
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Duration
5 Days
This course provides students with the knowledge andskills necessary to design, implement, and deploy OLAP solutions by usingAnalysis Services.
About this course
Basic understanding of database design, administration, and implementation concepts. Satisfactory level of comfort within the Microsoft Windows® 2000 environment.
Reviews
Course programme
At Course Completion
At the end of the course, students will be able to:
- Define the term OLAP and its role within data warehousing.
- Design multidimensional data marts by using star and snowflake schemas.
- Recognize the fundamental components of a cube.
- Understand the architecture of Analysis Services.
- Create dimensions from relational dimension tables.
- Understand the many types of dimensions.
- Utilize various dimension properties and settings.
- Design OLAP dimensions based upon underlying source data.
- Create cubes by using the Cube Wizard and Cube Editor.
- Create and manipulate measures.
- Develop and understand virtual cubes.
- Design cube storage and aggregations.
- Update dimensions and cubes when source data changes.
- Optimize the processing of dimensions and cubes.
- Create partitions within cubes.
- Implement simple calculations by using MDX and calculated members.
- Use Microsoft Excel 2000 as an OLAP front-end application.
- Understand how data mining fits within OLAP and the Microsoft data warehousing framework.
- Employ actions, drill-through, and write-back for data analysis.
- Design and implement cube and dimension security.
- Automate the processing of dimensions and cubes through Data Transformation Services (DTS).
- Create cubes and virtual cubes based upon end-user requirements.
Prerequisites
- Basic understanding of database design, administration, and implementation concepts.
- Satisfactory level of comfort within the Microsoft Windows® 2000 environment.
Microsoft Certified Professional Exams
This course will help the student prepare for the following Microsoft Certified Professional exam:
To be determined
Course Materials
The course materials are yours to keep.
The student kit includes a comprehensive workbook and other necessary materials for this class.
The following software is provided for use in the classroom:
Microsoft SQL Server 2000
Course Outline
Module 1: Introduction to OLAP and Data Warehousing
Topics
· Why Data Warehousing
· Data Marts and Data Warehouses
· Introduction to OLAP
· Understanding Multidimensionality
· The Microsoft Data Warehouse Solution
Skills
Students will be able to:
· Understand OLAP (online analytical processing) and data warehousing concepts and applications.
· Describe characteristics, goals, and applications of a data warehouse.
· Explain the relationship between data marts and data warehouses.
· Describe reasons for implementing relational and/or multidimensional data marts to meet decision support needs.
· Describe tools to manage data warehouse implementations.
· Describe components of OLAP databases.
Module 2: Designing Multidimensional Data Marts
Topics
· Designing a Data Warehouse Strategy
· Introducing the Data Warehouse
· The Relational Schema Behind the OLAP Database
· OLAP and Relational Dimensions
· Cubes and Fact Tables
Labs
· Identifying OLAP Dimension Elements
· Identifying OLAP Cube Elements
Skills
Students will be able to:
· Design multidimensional data marts by using star and snowflake schemas.
· Describe a process for designing data warehouse systems.
· Understand how relational dimensions and fact tables relate to OLAP dimensions and cubes.
· Determine OLAP dimension elements.
· Determine OLAP cube elements.
Module 3: Previewing OLAP Using Analysis Services
Topics
· Analysis Server Basics
· Using OLAP Manager
· Understanding the Star Schema Source
· Creating the Sales Cube
· Building the Sales Cube
· Building the Dimensions
· Finalizing the Cube
· Designing Storage and Processing
· Viewing the Results
Skills
Students will be able to:
· Verify that Analysis Server is started.
· Create an ODBC data source for the database.
· Start Analysis Manager.
· Understand the underlying star schema source.
· Create a database by using Analysis Manager.
· Build dimensions by using the Dimension Wizard.
· Design a cube by using the Cube Wizard.
· Design storage and process a cube using the Storage Design Wizard.
· Browse the cube results.
Module 4: Understanding Analysis Services Architecture
Topics
· Microsoft Data Warehousing Overview
· Analysis Services Architecture
· Storage Modes
· Partitioning
· Dimension Alternatives
· Large Dimension Support
· Caching and Write-Back
· How Databases Are Organized
· Other Server Side Elements
· Client Architecture
· Office 2000 OLAP Components
· Data Mining
Skills
Students will be able to:
· Understand the Analysis Server architecture.
· Understand the metadata repository.
· Know the difference between MOLAP, ROLAP, and HOLAP storage modes.
· Understand how Analysis Manager interfaces with the server by using DSO.
· Appreciate the benefits of partitioning.
· Understand how cubes and databases are organized.
· Understand client architecture and the role of PivotTable Services.
· Recognize Microsoft Office 2000 OLAP capabilities.
Module 5: Setting Up Dimensions
Topics
· Understanding Dimension Basics
· Private Versus Shared Dimensions
· Working with Star Schema Dimensions
· Working with Snowflake Dimensions
· Working with Time Dimensions
· Working with Parent-Child Dimensions
· Creating Time Dimensions
Labs
· Creating a Snowflake Dimension
· Creating a Time Dimension
· Creating a Parent-Child Dimension
Skills
Students will be able to:
· Understand when to use shared and private dimensions.
· Open and work with the dimension editor.
· Add levels to dimensions.
· Create dimensions from star and snowflake schemas.
· Define member properties at dimension levels.
· Implement time hierarchies and dimensions.
· Organize levels within dimensions for drill up and drill down.
· Develop parent-child dimensions.
Module 6: Advanced Dimension Settings
Topics
· Creating Custom Hierarchies
· Nuances of Levels
· Hierarchies and Dimensions
· Understanding Virtual Dimensions
· Creating Cube with Financial Accounts
· Creating Cube with Large Dimensions
· Creating Cube with Forecasting Data
· Validating and Optimizing the Cube Structure
Labs
· Creating a Virtual Dimension
· Creating Members within Accounts Dimension
· Creating New Product Dimension
· Creating Scenario Dimension
Skills
Students will be able to:
· Use the Dimension Editor and Dimension Wizard to build and fine-tune dimensions.
· Make use of various dimension properties.
· Work with dimension levels and hierarchies.
· Create virtual dimensions from member properties.
· Create custom member and rollup formulas.
· Manage very large, flat dimensions.
· Disable levels of a shared dimension.
Module 7: Advanced Data Mart Design Techniques
Topics
· Sharing Dimensions Among Cubes With Different Granularity
· Handling Nulls In the Source Data
· Managing Slowly Changing Dimensions
· Implementing Summary Fact Tables
· Managing Various Dimension Scenarios
· Optimization Tuning
Skills
Students will be able to:
· Apply advanced OLAP dimension and cube design techniques.
· Share dimensions across cubes with different granularity using relational and multidimensional design techniques.
· Handle nulls in the source data using relational and multidimensional design techniques.
· Manage slowly changing dimensions using relational and multidimensional design techniques.
· Implement summary fact tables.
Module 8: Cubes and Measures
Topics
· Understanding Cube Basics
· Working with Cubes
· Working with Measures
· Defining Measure Properties
· Creating Calculations
· Defining Dimension Properties
Labs
· Adding New Measure and Dimension
· Creating Average Selling Price
· Building the Promotion Cube
Skills
Students will be able to:
· Create cubes by using the Cube Editor.
· Add and delete measures from a cube.
· Add and delete dimensions from a cube.
· Set up a measure by using each of the five aggregation functions.
· Format measures.
· Define an internal measure.
· Create simple calculated members.
· Administer dimension properties within the Cube Editor.
Module 9: Creating the Sales Reporting Cube
Topics
· Building the Sales Reporting Cube
· Modifying the Sales Reporting Cube
Labs
· Building the Sales Reporting Cube
· Modifying the Sales Reporting Cube
Skills
Students will be able to:
· Create a cube based upon end-user requirements.
· Build dimensions given the dimension tables and expected levels.
· Use various dimension types.
· Use expressions to create dimension member names.
· Create measures.
· Build simple calculated members.
· Design aggregations and process the cube.
· Verify cube results by using the Cube Browser.
Module 10: Virtual Cubes
Topics
· Understanding Virtual Cubes
· Obtaining Logical Results
· Building a Virtual Cube
· Creating Calculated Members
Labs
· Creating Virtual Cubes
· Importing Calculated Member from Cube
Skills
Students will be able to:
· Understand when to use virtual cubes and know their benefits.
· Understand the limitations of using virtual cubes.
· Know the rules for constructing meaningful virtual cubes.
· Build virtual cubes by using the Virtual Cube Wizard.
· Define calculated members in virtual cubes by using the Calculated Member Builder.
Module 11: Storage Optimization
Topics
· Analysis Server Storage
· Analysis Server Aggregations
· The Storage Design Wizard
· Aggregation Details
· Usage-Based Optimization
· Optimization Tuning
Lab
Designing Storage for the Promotion Cube
Skills
Students will be able to:
· Explain the pros and cons of the three data storage modes.
· Describe how aggregations work.
· Use the Storage Design Wizard to set storage design.
· Design aggregations for cubes.
· Describe the contents of a single aggregation.
· Describe the concepts and mechanics of usage-based optimization.
· Override aggregation settings per dimension.
Module 12: Processing Dimensions and Cubes
Topics
· Overview of Schema and Data
· Processing Dimensions
· Rebuilding Dimensions
· Incrementally Updating a Dimension
· Processing Cubes
· The Full Process
· Refreshing a Cube
· Incrementally Updating a Cube
· Troubleshooting Cube Problems
· Optimizing Cube Processing
Labs
· Rebuilding the Promotion Dimension
· Processing the Promotion Cube
· Updating Dimension Data
Skills
Students will be able to:
· Rebuild shared dimensions.
· Handle new and deleted members.
· Understand the difference between rebuilding and incrementally updating dimensions.
· Process a cube using the three methods.
· Explain the implications of the three cube processing types.
· Perform an incremental data load using a database filter.
· See how changes are reflected in OLAP cubes after changing data within the source RDBMS.
Module 13: Creating Partitions
Topics
· Partitioning Overview
· Creating Partitions
· Fact Table Considerations
· Working with Partitions
· Merging Partitions
Labs
· Creating a Partition within Sales
· Merging Sales with Sales 98
Skills
Students will be able to:
· Explain the benefits of partitioning.
· Describe the pros and cons of portioning source fact tables.
· Describe the mechanics of the Partition Wizard.
· Explain when to define slices and when to define filters.
· Describe the purpose and mechanics of merging partitions.
Module 14: Implementing Calculations Using MDX
Topics
· Understanding Calculated Members
· Defining Calculated Members
· Members, Tuples , and Sets
· Calculated Members in Non-Measure Dimensions
· Using Functions Within Calculated Members
· Understanding Solve Order
Labs
· Creating Variance Calculations
· Creating a Time Variance
· Creating a Rollup Using the SUM Function
Skills
Students will be able to:
· Describe how calculated members work.
· Describe the impact of calculated members on cube size and performance.
· Explain the mechanics of the Calculated Member Builder.
· Build simple calculated members.
· Understand the importance of calculation solve order.
Module 15: Using Excel as an OLAP Client
Topics
· Overview of Office 2000 OLAP
· Creating an Excel PivotTable
· Fine Tuning PivotTables
· Working with PivotCharts
· Working with Local Cubes
· Creating OLAP Enabled Web Pages
Skills
Students will be able to:
· Create a PivotTable from an OLAP cube.
· Interact with a PivotTable through pivots, drill-downs, and filters.
· Perform PivotTable formatting.
· Create PivotCharts .
· Create local cube files.
· Create Web pages containing Pivot web components.
Module 16: Introduction to Data Mining
Topics
· Understanding Data Mining
· Creating A Decision Tree Model Using OLAP Data
· Creating a Decision Tree Model Using Relational Data
· Editing an Existing Model
· Creating a Clustering Model Using OLAP Data
· Creating a Clustering Model Using Relational Data
Skills
Students will be able to:
· Define data mining.
· Understand how data mining fits within OLAP and the Microsoft data warehousing framework.
· Describe the decision tree and clustering algorithms.
· Use data mining to discover data patterns.
· Segment data by using data mining.
· Create a data mining model using the decision tree algorithm.
· Edit an existing model.
· Explore the decision tree and look for predictable indicators in the results.
Module 17: Analyzing Data with Actions, Drill-Through, and Write-Back
Topics
· Understanding Actions
· Creating Actions
· Drill-Through Fundamentals
· Enabling Drill-Through
· Cube Write-Back
Labs
· Creating an Action within the Sales Cube
· Setting up Drill-Through for the Sales Cube
Skills
Students will be able to:
· Create and manage actions.
· Invoke an action that was already created.
· Enable cube drill-through.
· Understand the mechanics of cube drill-through.
· Set up a cube for write-back.
Module 18: Implementing OLAP Security
Topics
· Analysis Services Security Overview
· Using Windows 2000 Security
· Managing Roles
· Using Virtual Cubes for Security
· Defining Dimension Security
· Administering Cell Level Security
Labs
· Adding Finance Users to Sales Cube
· Defining Dimension Level Security
· Defining Cell Level Security for Sales
Skills
Students will be able to:
· Understand how Analysis Services security is linked to Windows 2000 security.
· Add a security role to a database via the Analysis Manager.
· Assign roles to a cube.
· Implement dimension security.
· Develop cell-level security by using simple MDX.
Module 19: Deploying an OLAP Application
Topics
· DTS Overview
· Executing and Scheduling Packages
· Analysis Services Processing Task
· Database Migration and Disaster Recovery
Lab
Creating a Package to Process the Sales Cube
Skills
Students will be able to:
· Describe the role of Data Transformation Services (DTS) within OLAP applications.
· Create a DTS Package.
· Define an Analysis Services processing task.
· Schedule the processing of an OLAP dimension or cube.
· Move from testing to production environments.
· Perform disaster recovery on OLAP databases.
Module 20: Creating the Warehouse Database
Topics
· Building the Warehouse Cube
· Building the Sales Cube
· Building the Warehouse and Sales Virtual Cube
· Deploying the Warehouse and Sales Cubes
Labs
· Building the Warehouse Cube
· Building the Sales Cube
· Building the Warehouse and Sales Virtual Cube
· Deploying the Warehouse and Sales Cubes
Skills
Students will be able to:
· Create cubes and virtual cubes based upon end-user requirements.
· Build dimensions given the dimension tables and expected levels.
· Create partitions by using different fact tables.
· Use various dimension types.
· Build calculated members.
Designing and Implementing OLAP Solutions with Microsoft SQL Server 2000