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Module 1: Capturing Business and Technical Requirements
In this module, students will first learn about key design principles that
they should consider when defining the scope of a BI project. They will then
learn how to identify the business and technical requirements to ensure that
their solution meets the needs of its users.
Lessons
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Planning an Analysis Solution |
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Identifying Requirements and Constraints |
Lab 1: Capturing Business and Technical Requirements
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Reviewing Solution Requirements |
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Identifying Further Information Requirements |
After completing this module, students will be able to:
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Plan an analysis solution. |
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Identify requirements and constraints when designing an analysis
solution. |
Module 2: Designing and Implementing a Logical OLAP Solution
Architecture
This module describes considerations and guidelines for designing an OLAP
solution, including a relational data warehouse and an Analysis Services
cube.
Lessons
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Planning an OLAP Solution |
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Designing and Implementing Fact and Dimension Tables |
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Designing and Implementing Cubes |
Lab 2: Designing and Implementing an OLAP Solution
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Designing and Implementing a Relational Database Schema |
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Designing and Implementing a Cube |
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Designing and Implementing Perspectives |
After completing this module, students will be able to:
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Describe design considerations for an OLAP solution. |
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Describe design considerations for the relational schema of an OLAP
solution. |
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Describe considerations for designing and implementing OLAP
cubes. |
Module 3: Designing Physical Storage for a Multidimensional
Solution
In this module, students will learn how to design an effective physical
storage solution for a multidimensional application.
Lessons
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Designing Physical Storage |
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Partitioning Relational Data |
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Partitioning Multidimensional Data |
Lab 3: Designing and Implementing Physical Storage
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Designing and Implementing a Storage Solution |
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Designing and Implementing Relational Partitioning |
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Designing and Implementing Multidimensional Partitioning |
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Testing the Solution |
After completing this module, students will be able to:
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Design an effective physical storage solution for dimensions and
measures. |
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Partition relational data. |
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Partition multidimensional data. |
Module 4: Creating Calculations
In this module, students will learn how to create Multidimensional Expression
(MDX) calculations. The module describes how to create calculated members, named
sets, and scoped assignments.
Lessons
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Implementing Calculated Members |
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Implementing Named Sets |
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Implementing Scoped MDX Scripts |
Lab 4: Implementing Calculations
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Creating Calculated Members |
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Creating Named Sets |
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Creating a Scoped MDX Script |
After completing this module, students will be able to:
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Create calculated members. |
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Create named sets. |
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Create scoped assignments. |
Module 5: Extending Cube Functionality
In this module, students will learn about the benefits of KPIs, actions, and
stored procedures. They will also learn how to implement KPIs, actions, and
stored procedures in an Analysis Services cube.
Lessons
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Key Performance Indicators |
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Actions |
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Stored Procedures |
Lab 5: Implementing Advanced Functionality
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Creating KPIs |
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Creating Actions |
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Creating Stored Procedures |
After completing this module, students will be able to:
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Create KPIs. |
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Create actions. |
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Create stored procedures. |
Module 6: Designing an Analysis Services Infrastructure
In this module, students will learn how to design an appropriate
infrastructure for an OLAP application.
Lessons
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Considerations for Analysis Services Resource Requirements |
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Considerations for Analysis Services Scalability |
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Considerations for Analysis Services
Availability |
Lab 6: Designing and Implementing Analysis Services Infrastructure
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Planning Production System Infrastructure |
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Installing Analysis Services in a Cluster |
After completing this module, students will be able to:
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Specify appropriate hardware and software resources for an Analysis Services
solution. |
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Design an Analysis Services infrastructure that supports high
scalability. |
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Design an Analysis Services infrastructure that supports high
availability. |
Module 7: Deploying a Multidimensional Solution into Production
In this module, students will learn about and compare the different
deployment methods available in SQL Server 2005 Analysis Services. They will
also learn about how security in Analysis Services functions and how to protect
their company's critical business information.
Lessons
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Deploying an Analysis Services Database |
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Managing Analysis Services Security |
Lab 7: Deploying Analysis Services into Production
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Deploying an Analysis Services Database |
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Enabling User Access |
After completing this module, students will be able to:
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Deploy an Analysis Services solution. |
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Secure an Analysis Services solution. |
Module 8: Optimizing an OLAP Solution
In this module, students will learn how to monitor Analysis Services and how
to optimize performance of their Analysis Services solutions.
Lessons
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Monitoring Analysis Services |
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Optimizing Performance |
Lab 8: Optimizing Analysis Services
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Monitoring Analysis Services |
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Optimizing Queries |
After completing this module, students will be able to:
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Monitor Analysis Services. |
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Optimize the performance of Analysis Services. |
Module 9: Implementing Data Mining
In this module, students will learn what a data mining solution is and how to
design and implement data mining functionality with SQL Server Analysis
Services.
Lessons
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Introduction to Data Mining |
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Implementing a Data Mining Solution |
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Using Data Mining in a BI Solution |
Lab 9: Implementing Data Mining
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Creating a Data Mining Structure |
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Validating a Data Mining Structure |
After completing this module, students will be able to:
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Plan a data mining solution. |
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Implement a data mining solution. |
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Use data mining in a BI solution. |
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