Download presentation
Presentation is loading. Please wait.
Published byPatience Jefferson Modified over 9 years ago
1
Deliver Rich Analytics with Analysis Services SQL Server Donald Farmer Group Program Manager Microsoft Corporation
2
Agenda Analysis Services Overview and What’s new Demo Data Mining Demo Managing and Deploying Analysis Services Scalability, Availability, Serviceability, Manageability Summary
3
Analysis Services Why OLAP and Data Mining Matter Powerful business information modeling Cross platform data integration Integrated Relational & OLAP views The best of MOLAP to ROLAP Data enrichment and advanced analytics Key Performance Indicators and Perspectives Real-time, high performance Real-time data in OLAP Cubes Very fast and flexible analytics XML standards for Data Access and Web Services integration Cost and time savings for customers integrating with other systems
4
What Is SQL Server 2005 Analysis Services? Dashboards Rich Reports BI Front Ends Spreadsheets Ad Hoc Reports SQLServer Teradata OracleDB2 LOB DW Datamart Analysis Services Data enrichment and advanced analytics Real-time and high performance Mission critical
5
Dashboards Rich Reports BI Front Ends Spreadsheets Ad Hoc Reports Analysis Services Cache XML/A or ODBO UDM SQLServer Teradata OracleDB2 LOB DW Datamart Analysis Services High-level Architecture
6
SQLServer Teradata OracleDB2 LOB DW Datamart Analysis Services Cache UDM XML/A or ODBO
7
Business Intelligence Enhancements Auto generation of time and other dimensions based on type KPIs, MDX scripts, translations, currency… Data Mining 10 Mining Algorithms Smart applications XML standards for Data Access & Web services integration $$ saving for customers integrating our solution with other systems Unified Dimensional Model Powerful business information modeling Cross platform data integration Integrated Relational & OLAP views KPIs & Perspectives Proactive caching Real-time data in OLAP Cubes Very fast and flexible analytics SQL Server Analysis Services New Paradigm for the Analytics Platform
8
The Unified Dimensional Model
9
Value of Data Mining 8 new algorithms, 10 in total Graphical tools/wizards 12 embeddable viewers SQL Server 2005 makes it easier Tightly integrated with AS, DTS, Reporting Integration with Web/Office apps SQL Server 2005 OLAP Reports (Ad Hoc) Reports (Static) Data Mining Business Knowledge Easy Difficult Usability Relative New Business Insight
10
Complete Set of Algorithms Decision Trees Clustering Time Series Sequence Clustering Association Naïve Bayes Neural Net Introduced in SQL Server 2000 LogisticRegression Linear Regression Text Mining
11
Putting Data Mining to Work Task Microsoft Algorithms Predicting a discrete attribute. For example, to predict whether the recipient of a targeted mailing campaign will buy a product. Decision Trees Naive Bayes Clustering Neural Network Logistic Regression Linear Regression Predicting a continuous attribute. For example, to forecast next year's sales. Decision Trees Time Series Predicting a sequence. For example, to perform a clickstream analysis of a company's Web site. Sequence Clustering Finding groups of common items in transactions. For example, to use market basket analysis to suggest additional products to a customer for purchase. Association Rules Decision Trees Finding groups of similar items. For example, to segment demographic data into groups to better understand the relationships between attributes. Clustering Sequence Clustering
12
Mining for Meaning
13
BI App lifecycle Dev Server Test Server BI Dev Studio Management Studio Dev/TestProductionDeployInspectAutomate: data updates data updates permission updates permission updatesMonitorVersion DesignDevelop Debug Build DeployVersion Prod Server
14
Scalability Fully centralized calculations on the server No calculations done on client No excess data transported to the client Cached calculation Ability to cache calculation on disk Disk based dimension storage Dimension size is not constrained by memory limits 150 million members already tested Role playing dimensions remove need for duplicating dimension storage Attribute-based hierarchies Remove need for duplicate info among hierarchies sharing common attributes
15
Availability Failover Clustering Multi-Instances Very easy deployment – no registry entries needed Server Synching Designed for dual machines configurations – number cruncher machine and end-user facing machine Allow: Processing the calculations isolated from user interactions Isolated verification of the results Incremental and transactional synching of the query machine with the new results Enhanced backup and restore Unlimited partition sizes
16
Serviceability Trace events (with Profiler Integration) Flight recorder (repro-less diagnostics) Records server activity and metrics at all times Provides diagnostics in the event of system failure Allows replay of a failure condition ON by default Capture and Replay Customers use to diagnose performance Provides PSS a simple means to repro problems Test exploit in Labs Dr Watson
17
Manageability Integrated management experience with SQL Server Single management shell SQL profiler support Query analyzer support Strong integration with IS (DTS) for management tasks automation Deployment packages to manage system life cycle Dev → Test → Production Source control integration for system versioning Team development facilities Fine grain administration roles Database level administration Permissions: Creation, R/O, Processing XML-based DDL for easy scripting Auto referential integrity handling for dealing with dirty input data
18
Summary Large investment in abilities in SSAS: Manageability Supportability Security Availability Unified tools with SQL Server SQL DBAs skill set can be applied to administering Analysis Server BI platform for 24/7 operations
19
© 2005 Microsoft Corporation. All rights reserved. This presentation is for informational purposes only. Microsoft makes no warranties, express or implied, in this summary.
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.