Oracle Data Warehouse Strategic Update Ray Roccaforte.

Slides:



Advertisements
Similar presentations
The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any.
Advertisements

Extreme Performance with Oracle Data Warehousing
1 Copyright © 2012 Oracle and/or its affiliates. All rights reserved. Convergence of HPC, Databases, and Analytics Tirthankar Lahiri Senior Director, Oracle.
Module 13: Performance Tuning. Overview Performance tuning methodologies Instance level Database level Application level Overview of tools and techniques.
Exadata Distinctives Brown Bag New features for tuning Oracle database applications.
OLAP Tuning. Outline OLAP 101 – Data warehouse architecture – ROLAP, MOLAP and HOLAP Data Cube – Star Schema and operations – The CUBE operator – Tuning.
Oracle Exadata for SAP.
Copyright © 2012, Oracle and/or its affiliates. All rights reserved. 1.
Living with Exadata Presented by: Shaun Dewberry, OS Administrator, RDC Tom de Jongh van Arkel, Database Administrator, RDC Komaran Hansragh, Data Warehouse.
Copyright © 2013, Oracle and/or its affiliates. All rights reserved. 1.
10 REASONS Why it makes a good option for your DB IN-MEMORY DATABASES Presenter #10: Robert Vitolo.
1. Aim High with Oracle Real World Performance Andrew Holdsworth Director Real World Performance Group Server Technologies.
Essbase Reporting Jim Kubik Senior Sales Consultant.
A Fast Growing Market. Interesting New Players Lyzasoft.
Advance Analytics Capabilities
Tableau Visual Intelligence Platform
Database – Part 3 Dr. V.T. Raja Oregon State University External References/Sources: Data Warehousing – Mr. Sakthi Angappamudali.
Workload Management BMO Financial Group Case Study IRMAC, January 2008 Sorina Faur, Database Development Manager.
Unlock Your Data Rich connectivity Robust data integration Enterprise-class manageability Deliver Relevant Information Intuitive design environment.
Data Warehousing - 3 ISYS 650. Snowflake Schema one or more dimension tables do not join directly to the fact table but must join through other dimension.
Chapter 14 The Second Component: The Database.
CON Software-Defined Networking in a Hybrid, Open Data Center Krishna Srinivasan Senior Principal Product Strategy Manager Oracle Virtual Networking.
Extreme Performance Data Warehousing
Tableau Visual Intelligence Platform
LEARN. NETWORK. DISCOVER. | #QADexplore Implementing Business Process Management: Steps to Success WCUG – November 18, 2014.
© 2009 Oracle Corporation. S : Slash Storage Costs with Oracle Automatic Storage Management Ara Vagharshakian ASM Product Manager – Oracle Product.
Copyright © 2013, Oracle and/or its affiliates. All rights reserved. 1 Preview of Oracle Database 12 c In-Memory Option Thomas Kyte
What is Business Intelligence Business Intelligence (BI) encompasses the processes, tools, and technologies required to transform enterprise data into.
Oracle BIWA SIG Basics Worldwide association of 2000 professionals interested in Oracle Database-centric business intelligence, data warehousing, and analytical.
The Sun Oracle Database Machine Barry Hodges Senior Solution Architect Oracle New Zealand.
SharePoint 2010 Business Intelligence Module 6: Analysis Services.
Appliance-based architectures for high performance data intensive applications Session at Silicon India Rajgopal Kishore Vice President and Global Head.
Bob Thome, Senior Director of Product Management, Oracle SIMPLIFYING YOUR HIGH AVAILABILITY DATABASE.
1.
IBM Start Now Business Intelligence Solutions. Agenda Overview of BI Who will buy and why Start Now BI solution Benefit to customer.
CIS 9002 Kannan Mohan Department of CIS Zicklin School of Business, Baruch College.
PO320: Reporting with the EPM Solution Keshav Puttaswamy Program Manager Lead Project Business Unit Microsoft Corporation.
5 Database Features Every DBA Needs to Know About THT11267 Doug Chamberlain - Principal Product Manger, Oracle Copyright © 2014, Oracle and/or its affiliates.
September 2011Copyright 2011 Teradata Corporation1 Teradata Columnar.
Information Explosion. Reality: New Machine-Generated Data Non-relational and relational data outside of the EDW † Source: Analytics Platforms – Beyond.
Business Intelligence Appliance Powerful pay as you grow BI solutions with Engineered Systems.
Faster and Smarter Data Warehouses with Oracle OLAP 11g.
Oracle Advanced Compression – Reduce Storage, Reduce Costs, Increase Performance Session: S Gregg Christman -- Senior Product Manager Vineet Marwah.
Succeeding with Technology Database Systems Basic Data Management Concepts Organizing Data in a Database Database Management Systems Using Database Systems.
CON Software-Defined Networking in a Hybrid, Open Data Center Krishna Srinivasan Senior Principal Product Strategy Manager Oracle Virtual Networking.
C6 Databases. 2 Traditional file environment Data Redundancy and Inconsistency: –Data redundancy: The presence of duplicate data in multiple data files.
Introduction – Addressing Business Challenges Microsoft® Business Intelligence Solutions.
© 2007 IBM Corporation IBM Information Management Accelerate information on demand with dynamic warehousing April 2007.
© 2010 IBM Corporation Business Analytics software Business Analytics Editable Text Editable Text Editable Text.
Building Dashboards SharePoint and Business Intelligence.
Workforce Scheduling Release 5.0 for Windows Implementation Overview OWS Development Team.
Infrastructure for Data Warehouses. Basics Of Data Access Data Store Machine Memory Buffer Memory Cache Data Store Buffer Bus Structure.
SAM for SQL Workloads Presenter Name.
Rajesh Bhat Director, PLM Analytics Applications
WHAT EXACTLY IS ORACLE EXALYTICS?. 2 What Exactly Is Exalytics? AGENDA Exalytics At A Glance The Exa Family Do We Need Exalytics? Hardware & Software.
Introduction to Exadata X5 and X6 New Features
Peter Idoine Managing Director Oracle New Zealand Limited.
IBM Systems and Technology Group © 2008 IBM Corporation Oracle Exadata Storage and the HP Oracle Database Machine Competitive Seller Podcast Mark Wulf.
FusionCube At-a-Glance. 1 Application Scenarios Enterprise Cloud Data Centers Desktop Cloud Database Application Acceleration Midrange Computer Substitution.
Oracle Exalytics Business Intelligence Machine Eshaanan Gounden – Core Technology Team.
© 2009 Oracle Corporation – Proprietary and Confidential Agenda Reporting Overview Performance Workspace Dashboards Reports Drill thru Smartview Excel.
Univa Grid Engine Makes Work Management Automatic and Efficient, Accelerates Deployment of Cloud Services with Power of Microsoft Azure MICROSOFT AZURE.
Data Platform Modernization
Discovering Computers 2010: Living in a Digital World Chapter 14
JD Edwards EnterpriseOne In-Memory Sales Advisor
Business Critical Application Platform
Introduction.
Business Critical Application Platform
Data Platform Modernization
DeFacto Planning on the Powerful Microsoft Azure Platform Puts the Power of Intelligent and Timely Planning at Any Business Manager’s Fingertips Partner.
Presentation transcript:

Oracle Data Warehouse Strategic Update Ray Roccaforte

Oracle World 2010 Oracle Data Warehouse Strategic Update Ray Roccaforte Vice President, Data Warehouse and Analytic Technology

The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions. The development, release, and timing of any features or functionality described for Oracle’s products remains at the sole discretion of Oracle.

Four Pillars of Oracle’s DW Strategy Oracle as a Systems Provider: Database Machine Maximum Leverage of Massive Hardware Capabilities Embedded Analytics Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries

Four Pillars of Oracle’s DW Strategy  Oracle as a Systems Provider: Database Machine Maximum Leverage of Massive Hardware Capabilities Embedded Analytics Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries

6 Sun Oracle Database Machine Database Machine eliminates the complexity of deploying database systems Balanced configuration Extreme performance and integrated analytics out of the box Deploys in days rather than months Pre-built, tested, standard, supportable configuration Includes Hardware Installation & Site Planning Software Configuration

Exadata Hardware Architecture Database Grid 8 compute servers (1U) Storage Grid 14 storage servers (2U) 100 TB High Speed disk, or 336 TB High Capacity disk 5 TB PCI Flash Data mirrored across storage servers Scaleable Grid of industry standard servers for Compute and Storage InfiniBand Network Redundant 40Gb/s switches Unified server & storage net © 2010 Oracle Corporation 7

New Exadata X2-8 Full Rack Database Machine for large deployments Consolidation, or Large OLTP and DW workloads Complements existing X socket Intel EX servers (Sun Fire X4800) Doubles Database CPU cores to 128 Quadruples Database Memory to 2TB Oracle Solaris or Oracle Enterprise Linux 10GB Ethernet connectivity to Data Center Same 14 storage servers, and InfiniBand Network N ew Intel 6-core CPUs in Storage Servers 8 © 2010 Oracle Corporation

Four Pillars of Oracle’s DW Strategy Oracle as a Systems Provider: Database Machine  Maximum Leverage of Massive Hardware Capabilities Embedded Analytics Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries

10 Exadata Hybrid Columnar Compression Data is grouped by column and then compressed Query Mode for data warehousing Optimized for speed 10X compression typical Scans improve proportionally Archival Mode for infrequently accessed data Optimized to reduce space 15X compression is typical Up to 50X for some data

11 Sun Oracle Database Machine provides semiconductor cache hierarchy Sun Oracle Database Machine: Faster raw scans Exadata disks 100TB raw disk capacity 21 GB/sec Exadata Smart Flash Cache 5TB raw capacity – up to 50TB user data 50 GB/sec Database DRAM Cache 400GB raw capacity – up to 4TB user data 100 GB/sec

12 In-Memory Parallel Execution Parallel query processing across tables which are cached in memory How it works: Oracle determines appropriate tables for caching Tables are distributed across the buffer cache in all nodes During queries, each node reads its local portion of the table Full parallel bandwidth accessing data in memory Not every database objects in a query must be in memory to leverage in-memory access 12

Exadata Flash Cache Exadata has 5 TB of Flash: 56 Flash Cards avoid disk controller bottlenecks Automatically caches frequently-accessed ‘hot’ data in flash storage Intelligently manages Flash: Gives speed of Flash at cost of disk Exadata Flash Cache achieves: Over 1 million IO/sec from SQL (8K), Sub- millisecond response times with 50 GB/sec query throughput Infrequently Used Data Frequently Used Data

14 Scanning from Disk: Exadata Smart Scan Exadata storage servers implement data intensive processing in storage Row filtering based on “where” predicate Column filtering Join filtering Incremental backup filtering Scans on Hybrid Columnar Compressed data Scans on encrypted data Data Mining model scoring 10x reduction in data sent to DB servers is common No application changes needed Processing is automatic and transparent Even if cell or disk fails during a query

Four Pillars of Oracle’s DW Strategy Oracle as a Systems Provider: Database Machine Maximum Leverage of Massive Hardware Capabilities  Embedded Analytics Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries

Oracle In-Database Analytics Analytics evaluated “close” to the data Integrated Secure Oracle Data Mining: Uncover & Predict Advanced Predictive Analytics Advanced Algorithms Embedded and Integrated Oracle OLAP: Analyze & Summarize Smarter, Faster BI Improved Developer Productivity Embedded and Integrated

Oracle Data Mining Sift through large amounts data to find hidden patterns, discover new insights, and make predictions Data Mining can provide valuable results: Predict customer behavior (Classification) Predict or estimate a value (Regression) Segment a population (Clustering) Identify factors more associated with a business problem (Attribute Importance) Find profiles of targeted people or items (Decision Trees) Determine important relationships and “market baskets” within the population (Associations) Find fraudulent or “rare events” (Anomaly Detection)

In-Database Data Mining Exadata Smart Scan Model scoring performed in the Exadata Storage Server Dramatic (2-5X) performance improvements SELECT cust_id from customers WHERE region = ‘US’ AND prediction_probability(churnmod, ‘Y’, using *) > 0.8;

Exadata Integration with SAS Score SAS Models in Exadata Import SAS models (via PMML) to Oracle Data Mining Logistic and Multiple Regression models available today High-performance scoring in Exadata Score directly against database tables Model scoring is executed in storage tier using native Oracle DM capabilities +

Oracle OLAP Rapid Development of rich dimensional analytics Enhances the analytic content of Business intelligence application Excellent query performance for ad-hoc / unpredictable query Fast, incremental updates of data sets Embedded in the Oracle database instance and storage. Safe, secure and manageable Benefits from and enhances Exadata architecture Automatically gets full benefit of Database Machine Flash Cache OLAP query I/O tends to be high volume, random reads

Oracle OLAP 11g Rich Calculations Delivered to SQL-Based BI Tools

OLAP MDX driver from Simba for MS Excel © 2009 Oracle Corporation MDX Parser MDX Provider Engine SQL Generator SQL Query of Cube Excel MDX Query MDX Provider for Oracle OLAP Excel 2010 Excel 2003

Four Pillars of Oracle’s DW Strategy Oracle as a Systems Provider: Database Machine Maximum Leverage of Massive Hardware Capabilities Embedded Analytics  Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries

Intelligence –Industry-specific data models –Packaged advanced analytics... with Extreme Performance –Improve query performance x with Exadata … at a Lower Cost –Simplify your infrastructure … for Fast Results –Jumpstart development - deliver value quickly –Automatically exploit Oracle performance and analytic capabilities Exadata Intelligent Warehouse for Industries A Complete Data Warehouse Solution for Industries

Exadata Intelligent Warehouse Solution for Industries Packaged Experience and Technology Leverage enterprise-wide data model for industries Gain insights using prepackaged advanced analytics Leverage enterprise-wide data model for industries Gain insights using prepackaged advanced analytics Business Insight Improve query performance x Grow solution to virtually any scale Improve query performance x Grow solution to virtually any scale Extreme Performance Jumpstart development and deliver value quickly Lower risks Jumpstart development and deliver value quickly Lower risks Fast Time-to-Value

Exadata Intelligent Warehouse for Retail Packaged Experience and Technology Copyright © 2010, Oracle and / or its affiliates. All rights reserved. Improve query performance x Grow solution to virtually any scale Improve query performance x Grow solution to virtually any scale Extreme Performance Jumpstart development and deliver value quickly Lower risks Jumpstart development and deliver value quickly Lower risks Fast Results Leverage enterprise data model for retail Gain insights using prepackaged advanced analytics Leverage enterprise data model for retail Gain insights using prepackaged advanced analytics Business Insight Leverage enterprise data model for retail Gain insights using prepackaged advanced analytics Leverage enterprise data model for retail Gain insights using prepackaged advanced analytics Business Insight

Challenges We’re Hearing from Retailers Forecast demand and inventory levels for better in-stock positions Apply business intelligence behind every planning decision Reduce Stock-outs Differentiate store assortments by customer profile of store locations Unlock trends hidden in transaction data Provide the right products all the time Improve Margins With Localized Assortments Determine customer segments Perform Market Basket analysis Target promotions to enhance loyalty Increase Share of Wallet Track key metrics for efficient store management Optimize store staffing levels Monitor shelf availability Improve In-store Execution

Exadata Intelligent Warehouse for Retail Consolidated View of the Entire Business Oracle Retail Data Model POS Order Mgmt Workforce Scheduling Sell Side PO Mgmt Warehouse Pricing Costing Buy Side HR Finance Sales Forecasting Inside Partners Suppliers Distributors Outside Industry-specific Measures & KPIs

Interactive Dashboards and Reports Empowering End Users Anticipate out-of-stock using statistical forecasts Example Analytics: Retail Associate products using a market basket analysis Analyze store traffic and shopper conversion rates by time of day Understand effectiveness of promotions by store Analyze comparative store performance over time 29 Copyright © 2010, Oracle and / or its affiliates. All rights reserved.

Exadata Intelligent Warehouse for Communications Same idea, but specific to Communications industry

Interactive Dashboards and Reports Empowering End Users Identify customers that are likely to churn Example Analyses: Communications Monitor dropped call rate over time to detect failing network elements Compare billed and actual CDRs to identify billing errors Analyze sales growth over time by product and organization 31 Copyright © 2010, Oracle and / or its affiliates. All rights reserved.

Exadata Intelligent Warehouse Packaged Experience and Technology Copyright © 2010, Oracle and / or its affiliates. All rights reserved. Improve query performance x Grow solution to virtually any scale Improve query performance x Grow solution to virtually any scale Extreme Performance Jumpstart development and deliver value quickly Lower risks Jumpstart development and deliver value quickly Lower risks Fast Results Leverage enterprise data model for Industries Gain insights using prepackaged advanced analytics Leverage enterprise data model for Industries Gain insights using prepackaged advanced analytics Business Insight

Exadata Intelligent Warehouse Packaged Experience and Technology Copyright © 2010, Oracle and / or its affiliates. All rights reserved. Improve query performance x Grow solution to virtually any scale Improve query performance x Grow solution to virtually any scale Extreme Performance Jumpstart development and deliver value quickly Lower risks Jumpstart development and deliver value quickly Lower risks Fast Results Leverage enterprise data model for Industries Gain insights using prepackaged advanced analytics Leverage enterprise data model for Industries Gain insights using prepackaged advanced analytics Business Insight

Custom Solutions Key Implementation Tasks Assemble Hardware Install Specialized Software Assemble & Configure System Requirements Collection ERD Specification Design Data Model Define tables, views, cubes, analytics Implement indexes, partitions Implement Data Model Ensure system is balanced Modify performance structures (MVs, indexes, etc.) Tune Performance Create BI metadata Implement reports and dashboards Define Metrics & Reports Challenges: Design a data model that satisfies existing and future requirements Employ a diverse skill set Integrate, implement, administer and tune disparate technologies

Exadata Intelligent Warehouse Best Practice Implementation ASSEMBLED Sun Oracle Database Machine DESIGNED Oracle Retail Data Model IMPLEMENTED Oracle Best Practice DW Methodology FAST Sun Oracle Database Machine READY Oracle OBIEE Complete. Fast Results. Lower Risk. Benefits: Utilize an enterprise data model for retail Leverage your existing Oracle expertise Implemented using Oracle data warehousing best practices

Fast Results Retail Performance Metrics and Insight out of the box Speed to Value, Simplified Deployment with predictable cost Build from Scratch with Best of Breed Approach Oracle Exadata Intelligent Warehouse weeks or monthsmonths or years Sizing and Configuration Define Metrics & Dashboards Training & Roll-out Data Integration Sizing and Configuration Analysis and Design Define Metrics & Dashboards Analysis and Design Training & Roll-out

Exadata Intelligent Warehouse Solution for Industries Packaged Experience and Technology Business Insight Extreme Performance Fast Time-to-Value

Summary: Oracle’s DW Strategy Oracle as a Systems Provider: Database Machine Maximum Leverage of Massive Hardware Capabilities Embedded Analytics Oracle as a DW Solutions Provider: Exadata Intelligent Warehouse for Industries