370 likes | 669 Views
Carey Probst Technical Director Technology Business Unit - OLAP Oracle Corporation. 3 Days: Raw Data to OLAP Session: 40206 A Practical Approach for Rapidly Delivering Successful OLAP Solutions. Challenge. Deliver fully-functional OLAP solution in 3 days Keys to Success:
E N D
Carey ProbstTechnical Director Technology Business Unit - OLAP Oracle Corporation
3 Days: Raw Data to OLAPSession: 40206 A Practical Approach for Rapidly Delivering Successful OLAP Solutions
Challenge • Deliver fully-functional OLAP solution in 3 days • Keys to Success: • Existing, populated data source • Well-defined scope of data destined for OLAP • A little knowledge of Oracle Warehouse Builder • A preference for a reporting interface
How Is This Possible? Key points: • Oracle moved the OLAP engine into the database • No need to extract & reload data • Leverage existing designs for OLAP • Automation of complex OLAP design tasks with Oracle Warehouse Builder • Build, Deploy, Load & Query data • Provide several methods of access • SQL access to OLAP • Allowing mix-and-match of OLAP and Relational • Support for multiple access tools & technologies
OLAP Architecture & Terminology Oracle Database OLAP API Oracle Call Interface JDBC Relational Technology Object Technology OLAP Technology SQL Engine Table Functions Multidimensional Engine Relational Cubes Multidimensional Cubes
Step 1: Populated Data Store • Constructing OLAP solutions from warehouses is simple if • Dimensions have been identified • Hierarchies have been identified • Measures are known • Mapping to star schema is simplified • Mapping to OLAP structures streamlined • Many traditionally difficult queries can be easily solved by OLAP
Step 2: Defined Scope of Data • Know what data should logically be summarized for queries • Know types of queries users will want to ask • Known level of aggregation • Known data transformations required
Step 3: Oracle Warehouse Builder • Oracle Warehouse Builder streamlines many complex tasks of building OLAP solution • Design & Metadata population • Deployment of OLAP Cubes • Loading of Data
OLAP Design – Best Practices • Best Practice Guidelines • Long and Short Descriptions Dimension Attributes: • Level Attribute mapped to column with name suffixed by ‘_LONG_NAME’ or ‘_SHORT_NAME’ • Time Dimension Descriptors: • Table name suffixed with ‘_TIME’ • Level Attribute with column suffix ‘_END_DATE’ • Level Attribute with column suffix ‘_TIME_SPAN’ • Level names suffixed with _DAY, _MONTH etc..
OLAP Deployment • Deploy scripts using the Deployment Manager • Deploy OLAP metadata via OLAP bridge: • Creates all skeleton objects (empty) • Registered the objects in the OLAP catalog • Binds the OLAP objects to the relational objects • BI Beans enabled environment • Creates a ROLAP environment
OWB Generate Scripts OLAP metadata DDL PL/SQL Bridge Register Register Relational Views Tables, Dimensions, PLSQL etc.. Publish Deploy Analytic Workspace Create OLAP Deployment Oracle Database OLAP catalog metadata
OLAP Data Loading • Load relational objects via a normal mapping • Load the OLAP Analytic Workspace • Methods: • Mapping – post mapping process • Process Flow activity • Refresh or Insert into Dimensions • Refresh or Insert into Cubes • Using an OWB wrapper procedure on top of the RDBMS PL/SQL
Sources Publish Insert/Update Load/Refresh OLAP Data Loading Oracle Database OLAP catalog metadata Registered Relational Views Cubes, Dimensions, Tables Analytic Workspace
Step 4: Reporting Choices Currently OLAP access is provided through: • BI Beans • The Java query components to enable OLAP • Enables custom application development with several deployment options • Discoverer • The Ad-Hoc query tool now utilizing OLAP • OWB capable of generating Business Areas for Discoverer • SQL • Analytic Workspaces can be queried through SQL • OLAP Worksheet in OWB • Provides visualization during design & build iterations
Ongoing – Maintenance • Add new measures • Add new dimensions or hierarchies • Modify existing hierarchies • Add self calculating measures (formulas)
Add new stored measures • Use Analytic Workspace Manager to define the stored measure • Run add_stored_measure utility to add to an existing Standard Format (SF) cube • Modify SQL views if using SQL queries • Re-run AW enablement for BI Beans if using CWM2 metadata
Add new dimensions or hierarchies • Create new hierarchy • Add descriptions of hierarcy • Populate parent relationship. • Run groupingid to set new hierarchy details • Run hierheight to set new level details • Re-run AW enablement for BI Beans if using CWM2 metadata
Modify existing hierarchies • Make changes to parents, levels, etc. as required. • Run groupingid to set new hierarchy details • Run hierheight to set new level details • Re-run AW enablement for BI Beans if using CWM2 metadata
Add self calculating measures (formulas) • Use Analytic Workspace Manager to define the formula • Run add_cube utility to add to create a new Standard Format (SF) cube • Run set_measure_formula_properties utility to add to the new cube • Modify SQL views if using SQL queries • Re-run AW enablement for BI Beans if using CWM2 metadata
Viewing Data - Samples • BI Beans - Crosstab • Drill to Relational Detail (adhoc jtable) • Ad Hoc query tool • Beanie – Drill to Relational coming • Excel • Discoverer • SQL views – any query tool (olap_table)
Summary • Existing Star schema not required but knowledge of data is • Basic understanding of OWB necessary • OLAP design understanding is critical • Knowledge of OLAP structures and functionality mandatory • Can use Oracle Workflow to automate updates
Next Steps…. • Interested in leveraging Oracle OLAP • Joseph Rayman – joseph.rayman@oracle.com • 443-253-2440 • Carey Probst – carey.probst@oracle.com • 518-584-4388 • Larry Anderson – larry.anderson@oracle.com • 973-895-6113
Q & Q U E S T I O N S A N S W E R S A
Reminder – please complete the OracleWorld online session surveyThank you.