Safe Harbor Statement



Similar documents
Introducing Oracle Exalytics In-Memory Machine

Intelligent Government From Data to Decision. Robert Lindsley Oracle, Public Sector Technology Group

News and trends in Data Warehouse Automation, Big Data and BI. Johan Hendrickx & Dirk Vermeiren

An Integrated Analytics & Big Data Infrastructure September 21, 2012 Robert Stackowiak, Vice President Data Systems Architecture Oracle Enterprise

Oracle Exalytics Briefing

Oracle Database 12c. Andy Mendelsohn. Senior Vice President, Oracle Database Server Technologies

Cloud Computing: IaaS & PaaS

BI FUTURES: BI Like You ve not Seen Before! Babar Jan-Haleem APAC Director Specialist Architecture Team

Ken Bond Vice President Investor Relations

Preview of Oracle Database 12c In-Memory Option. Copyright 2013, Oracle and/or its affiliates. All rights reserved.

In-Memory Analytics: A comparison between Oracle TimesTen and Oracle Essbase

ORACLE EXALYTICS IN-MEMORY MACHINE: A BRIEF INTRODUCTION

How To Create A Business Intelligence (Bi)

ORACLE BUSINESS INTELLIGENCE FOUNDATION SUITE 11g WHAT S NEW

Super-Charged Oracle Business Intelligence with Essbase and SmartView

<Insert Picture Here> Extending Hyperion BI with the Oracle BI Server

Well packaged sets of preinstalled, integrated, and optimized software on select hardware in the form of engineered systems and appliances

Safe Harbor Statement

<Insert Picture Here> Analytic World and Oracle s Approach

Inge Os Sales Consulting Manager Oracle Norway

Oracle Cloud: Line of Business PaaS Services. Balaji Yelamanchili Senior Vice President Product Development

Getting Value from Big Data with Analytics

ORACLE EXALYTICS IN-MEMORY MACHINE: A BRIEF INTRODUCTION

Oracle Business Intelligence 11g Business Dashboard Management

"The performance driven Enterprise" Emerging trends in Enterprise BI Platforms

Štandardizácia BI na platforme Oracle. Gabriela Heč ková, Oracle Slovensko

Application-Tier In-Memory Analytics Best Practices and Use Cases

Optimize Oracle Business Intelligence Analytics with Oracle 12c In-Memory Database Option

SAP HANA SAP s In-Memory Database. Dr. Martin Kittel, SAP HANA Development January 16, 2013

Understanding the Value of In-Memory in the IT Landscape

Dell Microsoft Business Intelligence and Data Warehousing Reference Configuration Performance Results Phase III

Oracle Cloud: Oracle s Platform and Infrastructure Services. Amit Zavery Group Vice President Product Development

2011 Annual Stockholder Meeting October 12, 2011

Drivers to support the growing business data demand for Performance Management solutions and BI Analytics

Oracle Business Intelligence Suite Enterprise Edition

Oracle Database In-Memory The Next Big Thing

ORACLE EXALYTICS IN-MEMORY MACHINE X3-4

HROUG. The future of Business Intelligence & Enterprise Performance Management. Rovinj October 18, 2007

An Architectural Review Of Integrating MicroStrategy With SAP BW

Integrating SAP and non-sap data for comprehensive Business Intelligence

Data Warehouse: Introduction

Using OBIEE for Location-Aware Predictive Analytics

QlikView Business Discovery Platform. Algol Consulting Srl

SQL Server 2012 Performance White Paper

Endeca Introduction to Big Data Analytics

Trends, Strategy, Roadmaps and Product Direction for SAP BI tools in SAP HANA environment

Oracle Cloud: Enterprise Resource Planning

Driving Peak Performance IBM Corporation

2009 Oracle Corporation 1

Oracle Big Data Building A Big Data Management System

Big Data Are You Ready? Thomas Kyte

ORACLE BUSINESS INTELLIGENCE, ORACLE DATABASE, AND EXADATA INTEGRATION

An Oracle White Paper April Management Reporting on Oracle Exalytics In- Memory Machine

General Session Oracle Business Analytics Executive Briefing

Architecting for the Internet of Things & Big Data

Database Performance with In-Memory Solutions

System Architecture. In-Memory Database

An Accenture Point of View. Oracle Exalytics brings speed and unparalleled flexibility to business analytics

ORACLE BUSINESS INTELLIGENCE SUITE ENTERPRISE EDITION PLUS

ORACLE OLAP. Oracle OLAP is embedded in the Oracle Database kernel and runs in the same database process

Big Data and Its Impact on the Data Warehousing Architecture

Oracle BI Suite Enterprise Edition

TRENDS IN THE DEVELOPMENT OF BUSINESS INTELLIGENCE SYSTEMS

IST722 Data Warehousing

Oracle BI New Features Dan Vlamis Vlamis Software Solutions

<Insert Picture Here> Best Practices for Extreme Performance with Data Warehousing on Oracle Database

Toronto 26 th SAP BI. Leap Forward with SAP

Tips and Tricks for Using Oracle TimesTen In-Memory Database in the Application Tier

Fact Sheet In-Memory Analysis

SAP Analytics Roadmap for Small and Midsize Companies. Kevin Chan, Director, Solutions SAP

Moving Large Data at a Blinding Speed for Critical Business Intelligence. A competitive advantage

[Analysts: Dr. Carsten Bange, Larissa Seidler, September 2013]

MDM and Data Warehousing Complement Each Other

Speed of Thought Analytics Graz, June 17 th 2015

ORACLE BUSINESS INTELLIGENCE SUITE ENTERPRISE EDITION PLUS

Oracle BI Application: Demonstrating the Functionality & Ease of use. Geoffrey Francis Naailah Gora

Exploring Oracle BI Apps: How it Works and What I Get NZOUG. March 2013

Oracle OLAP 11g and Oracle Essbase

Emerging Technologies Shaping the Future of Data Warehouses & Business Intelligence

Introduction to Oracle Business Intelligence Standard Edition One. Mike Donohue Senior Manager, Product Management Oracle Business Intelligence

Oracle Business Intelligence Foundation Suite 11g Essentials Exam Study Guide

Deploying Microsoft SQL Server 2005 Business Intelligence and Data Warehousing Solutions on Dell PowerEdge Servers and Dell PowerVault Storage

Birds of a Feather Session: Best Practices for TimesTen on Exalytics

HANA Platform Real Time Data Transformations

Whitepaper. Innovations in Business Intelligence Database Technology.

Oracle Exadata: The World s Fastest Database Machine Exadata Database Machine Architecture

Migrating a Discoverer System to Oracle Business Intelligence Enterprise Edition

The IBM Cognos Platform

SAS and Oracle: Big Data and Cloud Partnering Innovation Targets the Third Platform

Exploring the Synergistic Relationships Between BPC, BW and HANA

W H I T E P A P E R B u s i n e s s I n t e l l i g e n c e S o lutions from the Microsoft and Teradata Partnership

Contact: Ken Bond Karen Tillman Oracle Investor Relations Oracle Corporate Communications

Business Intelligence in SharePoint 2013

An Overview of SAP BW Powered by HANA. Al Weedman

Big Data Are You Ready? Jorge Plascencia Solution Architect Manager

The IBM Cognos Platform for Enterprise Business Intelligence

Oracle Database 12c Plug In. Switch On. Get SMART.

Overview: X5 Generation Database Machines

Baader Investment Conference. Dr. Werner Brandt, CFO, SAP AG Munich, September 24, 2013

Transcription:

Safe Harbor Statement "Safe Harbor" Statement: Statements in this presentation relating to Oracle's future plans, expectations, beliefs, intentions and prospects are "forward-looking statements" and are subject to material risks and uncertainties. Many factors could affect our current expectations and our actual results, and could cause actual results to differ materially. We presently consider the following to be among the important factors that could cause actual results to differ materially from expectations: (1) Economic, political and market conditions, including the recent recession and current European debt crisis, can adversely affect our business, results of operations and financial condition, including our revenue growth and profitability, which in turn could adversely affect our stock price. (2) We may fail to achieve our financial forecasts due to such factors as delays or size reductions in transactions, fewer large transactions in a particular quarter, unanticipated fluctuations in currency exchange rates, delays in delivery of new products or releases or a decline in our renewal rates for software license updates and product support. (3) Our hardware systems business may not be successful, and we may fail to achieve our financial forecasts with respect to this business. (4) We have an active acquisition program and our acquisitions may not be successful, may involve unanticipated costs or other integration issues or may disrupt our existing operations. (5) Our international sales and operations subject us to additional risks that can adversely affect our operating results, including risks relating to foreign currency gains and losses and risks relating to compliance with international and U.S. laws that apply to our international operations. (6) Intense competitive forces demand rapid technological advances and frequent new product introductions and could require us to reduce prices or cause us to lose customers. (7) If we are unable to develop new or sufficiently differentiated products and services, or to enhance and improve our products and support services in a timely manner or to position and/or price our products and services to meet market demand, customers may not buy new software licenses or hardware systems products or purchase or renew support contracts. A detailed discussion of these factors and other risks that affect our business is contained in our SEC filings, including our most recent reports on Form 10-K and Form 10-Q, particularly under the heading "Risk Factors." Copies of these filings are available online from the SEC or by contacting Oracle Corporation's Investor Relations Department at (650) 506-4073 or by clicking on SEC Filings on Oracle s Investor Relations website at http://www.oracle.com/investor. All information set forth in this presentation is current as of April 27, 2012. Oracle undertakes no duty to update any statement in light of new information or future events.

Any information regarding future product releases that is shared in this meeting 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.

Oracle Exalytics Thomas Kurian Executive Vice President

Oracle Exalytics Summary In-Memory Analytics has made rapid advances Memory is Faster, Cheaper, and has More Capacity Today Oracle has the most mature & best In-Memory Technology For Transaction Processing, Business Analytics, and Unstructured Information Processing Oracle Exalytics is a complete In-Memory Analytics System Operational Reporting, R-OLAP, M-OLAP, Planning & Budgeting, Unstructured Information Discovery Oracle Exalytics is being adopted rapidly by customers Most Complete Solution, Analytics Speed, Better Business Intelligence, Lower Cost Oracle Exalytics solves these problems better than competitors More complete & mature solution, solves analytics problems better, & much cheaper than competitors In-Memory DBMS will not replace many or all relational DBMS Competitor s DBMS in particular has many architectural & functional limitations

Understanding In-Memory Computing

Why In-Memory? Memory is Faster, Cheaper, & has more Capacity Today In-Memory Capacity Increased In-Memory Cost Decreased In-Memory Significantly Faster 2002 256MB/DIMM 2002 $0.2/MB HDD 5ms response 2012 16GB/DIMM 2012 $0.009/MB D-RAM 100ns response 64X More Capacity 25X Cheaper 50,000X Faster Faster Analysis, Faster Reporting, Faster Planning Better Interactivity, Better Visualizations, Better Intelligence More Users, More Data, More Calculations

In-Memory Database Requirements for Transaction Processing & Business Analytics Requirement For Business Analytics In-Memory Data Caching In-Memory Columnar Storage In-Memory Row & Column Compression In-Memory Indexes In-Memory Query Optimizer (Predictability) In-Memory NUMA Support (Scale Up) In-Memory Parallel Query (Scale Out) In-Memory Aggregates & Result Sets In-Memory Analytic Functions In-Memory Unstructured Data High Performance Writes/Updates Data Persistence on Disk Transactional Integrity/Correctness Multi-Version Concurrency For Transaction Processing

In-Memory Business Analytics 5 Types of Analytics Problems Operational Reporting: Report on information in real time Which customer orders will be affected by delays in my NYC warehouse today? Relational Query & Analysis: Analyze information in real time How many of these customers had late deliveries this year & what is their current sales pipeline? Online Analytic Processing: Across many dimensions in real time Summarize # of orders, key customers, & revenue impact in each sales VP, SVP, EVP s territory? Planning: Compare information to their financial plans and budgets How does revenue shortfall affect operational budgets & what happens if I expedite the top 5? Information Discovery: Identify patterns in unstructured information Have the customers who are affected by delays complained on social media about my delays?

In-Memory Business Analytics 5 Types of Analytics Problems Operational Reporting Query & Analysis Multi-dimensional OLAP OLTP Operational Data Store OLTP Warehouse or Data Mart OLTP OLAP Planning & Budgeting Unstructured Information Discovery OLTP Planning System Warehouse Unstructured Analytics

In-Memory Business Analytics Each Type of Problem has different Performance Requirements Operational Reporting Query & Analysis Multi-dimensional OLAP 1. How fresh is the data in my ODS? 2. How fast is my response time to queries? Planning & Budgeting 1. How fresh is the data in my warehouse or mart? 2. How fast is my response time to user queries? 3. How does it scale as I add users & data? Unstructured Information Discovery 1. How fresh is the data in my OLAP Cubes? 2. How quickly can I re-build aggregates? 3. How fast is query response time & how does it scale? 1. How quickly can I re-calculate budgets up my hierarchy? 2. How quickly can I model what-if scenarios? 3. How fast can I generate management reports? 1. How quickly do I add structure to unstructured data? 2. How fast do I refresh the search index? 3. How quickly & effectively do I guide users to specific patterns in the information?

In-Memory Business Analytics Each Problem has different Performance Requirements Operational Reporting Query & Analysis Multi-dimensional OLAP Fast Data Movement Fast Query Response Time Fast Data Movement Fast Query Response Fast Aggregates & View Refresh User & Data Scalability Fast, On-Line Cube Builds Fast Query & Aggregate Calculation Fast Scenario Modeling (Updates) User & Data Scalability Planning & Budgeting Unstructured Information Discovery Fast Plan Re-computation Fast Forecasting (Updates) Fast Aggregation & Reporting User & Data Scalability Fast Search Index Re-computation Fast Query & Guided Navigation

Oracle Exalytics Product Overview

Oracle Exalytics In-Memory Machine Endeca Information Discovery Hyperion Planning & Budgeting OBI In-Memory Analytics Endeca In-Memory MDEX Server Essbase In-Memory OLAP Times Ten In-Memory DBMS 1 TB DRAM, 40 Intel Cores Unique Features In-Memory Query & Analysis In-Memory Multi-Dimensional OLAP In-Memory Reporting In-Memory Planning & Budgeting Runs Packaged Applications without modification Works with ANY Oracle & Non-Oracle Data Source Superfast optimizations with Oracle Exadata Benefits Superfast, Interactive Visual Analysis Faster Planning & Budgeting with Richer Models Quick to Deploy, Supports More Users Faster, Cheaper, Better Analytics

Oracle Exalytics Hardware Memory 1 TB D-RAM Compute 4 Intel Xeon E7-4870, 40 cores total Networking 40 Gbps InfiniBand 2 ports 10 Gbps Ethernet 2 ports 8 Gbps FibreChannel 2 ports 1 Gbps Ethernet 4 ports Storage 3.6 TB HDD Capacity Operating System Linux

Oracle BI Foundation Powerful In-Memory Query & Analysis Scorecards Query & Analysis Dashboards Reporting Mobile Office & Outlook In-Memory Optimizations In-Memory R-OLAP, In-Memory Reporting Latency Reduction: 8-10X faster response time Scalability Improvements: 2-4X more users Data Federation Capabilities Consistent calculations across data from many sources Supports 100s of Sources including SAP BW (MOLAP + ROLAP) Summary Advisor Heuristic Adaptive In-Memory Cache Automatically identify hot data and caches it Maintain and tune cache as usage changes Super Fast Parallel Query Execution Query, Metadata, Dashboard Caching Multi-Pass Calculations

TimesTen In-Memory Database Powerful In-Memory Transactional & Analytics DBMS The Leading In-memory Database Fully Persistent (Updates) & Highly Available Proven in mission critical deployments Used by 1000s of Companies TODAY New Analytical Functions Grouping Operators: CUBE, ROLLUP, GROUPING SETS WITH Clause Analytic Functions: RANK, DENSE_RANK, SUM, AVG, ORDER BY NULLS FIRST LAST New In-Memory Enhancements Enhanced Data & Result Set Caching Fast Refresh of Aggregates & Views New Columnar Storage New Columnar Compression: 5-10X capacity increase Standard SQL/ODBC/JDBC Interfaces

Essbase In-Memory M-OLAP Powerful In-Memory M-OLAP & Planning Engine The Leading Multi-Dimensional OLAP Server Fully Persistent (Updates) & Highly Available Proven in mission critical deployments Used by 1000s of Companies TODAY Fast Data Feed Online Trickle Feed of Data Online Cube Merge New In-Memory Optimizations Interactive and batch calculations (128 threads/calc) Parallel Data Load & Data Export Fast/Parallel Cube Re-build Fast/Aggregate Computation Super Fast OLAP query execution Standard MDX Interface Runs hundreds of packaged applications with no change

Oracle Exalytics Operational Reporting Golden Gate & ETL Data Load Oracle BI OLTP DBMS TimesTen (ODS) Oracle Exalytics High Performance Operational Reporting Super Fast Data Refresh: Golden Gate for Transaction Replication Super Fast Query Performance: In-Memory Pre-Cached Queries, Results, Views Fast Aggregates & View Refresh: In-Memory Optimizations in Times Ten Excellent User Scalability: Highly Scalable Parallel Query in Oracle BI & Times Ten

Oracle Exalytics Query & Analysis: In-Memory Data Marts ETL Data Load Oracle BI OLTP DBMS Times Ten (In-Memory Data Mart) Oracle Exalytics High Performance Query and Analysis for Data Marts Identifying Hot Data to Cache in Mart: Oracle BI Summary Advisory High Capacity In-Memory Storage: Columnar Compression & Storage Fast Aggregates & View Refresh: In-Memory Optimizations in Times Ten Fast Query Response & Excellent Scalability: Oracle BI In-Memory

Oracle Exalytics Query & Analysis: Enterprise Warehouse with Oracle Exadata Superfast Infiniband Oracle BI Data Warehouse (Oracle Exadata) Times Ten (Hot Data Cache) Oracle Exalytics High Performance Query and Analysis for Data Warehouses Fast Query and Analysis: Automatically move Hot Data into Times Ten Cache Fast Aggregates & View Refresh: In-Memory Optimizations in Times Ten Better User Scalability: Parallel Processing in Oracle BI, Times Ten, and Exadata Data Scalability: Hot Data in Times Ten, All Data in Exadata, Columnar Compression

Oracle Exalytics Multi-Dimensional OLAP ETL Data Load Oracle BI 1 or More Data Sources Essbase Oracle Exalytics High Performance Multi-Dimensional OLAP On-line, Rapid Cube Building: Essbase In-Memory Fast Cube Rebuild and Aggregation: Fast Writes/Updates Scalable Forecasting and What-if Analysis: Essbase Scenario Modeling Fast, Scalable User Experience: Essbase In-Memory Query Acceleration

Oracle Exalytics Planning & Budgeting ETL Data Load Hyperion EPM Applications ERP & Operational Applications Essbase Oracle Exalytics High Performance Planning & Budgeting Fast Plan Updates & Incremental Aggregation: Fast Block Writes Broader Scenario Modeling and Better Forecasting: Non-Layered Aggregates Highly Interactive Planning User Experience: Essbase In-Memory Acceleration Fast and Scalable Management Reporting: High Speed In-Memory Aggregates

Oracle Exalytics Unstructured Information Discovery Unstructured Information + Structured & Semi-Structured Add Structure to Unstructured Data Oracle Endeca Information Discovery Oracle Endeca Server Oracle Exalytics Interactive Discovery on Unstructured Information Rapid Ingestion of Unstructured Data: Oracle Endeca Server Rapidly Adding Structure to Unstructured Data: Oracle Endeca Server Fast Query Response: Oracle Endeca In-Memory Parallel Query Fast Changing Information: Rapid In-Memory Search Index Re-build

Oracle Exalytics Packaged Applications Support Packaged Business Intelligence Applications Auto Comms & Media Complex Mfg Consumer Sector Energy Financial Services High Tech Insurance & Health Life Sciences Public Sector Travel & Trans Sales Service & Contact Center Marketing Order Management Supply Chain Financials Human Resources Packaged Performance Management Applications Financial Modeling Financial Planning & Budgeting Operational Planning Statutory Reporting Metrics & Scorecards

Oracle Exalytics Customer Results Largest mortgage provider in Denmark, major private bond issuer in Europe 1700 Power Analytics Users; 50 Terabytes Data; Superfast Adhoc Query Performance 35X to 70X faster with Exadata + Exalytics Supplies automotive industry with market intelligence PolkInsight Need highly interactive dashboards and visualizations for global analyst community > 10X faster on average and up to 100X faster in specific cases Large oilfield services company with about ~860 rigs deployed around the world 1500 Power Users using Packaged Analytic Applications across the organization 5X faster to develop; 5X faster performance; 50X faster than custom reports Large cloud infrastructure services company Need highly interactive visualizations for large numbers of individual analyst data sets 30X faster response time on par with desktop tools Global CPG Company Global consumer pre-packaged foods company 2000+ users needing Daily Planning & Budgeting Cycles and Management Reporting 6X faster cycle time - 4 hours down from more than 24 hours

Competitive Comparisons

What are limitations of pure In-Memory DBMS? In-Memory is NOT a panacea for all DBMS Transaction Processing Updates/Writes need to be stored on disk for High Availability or Durability If Writes done to Disk, Sophisticated Clustering required to share data across Nodes Data Warehousing (Scale-Up) For DBMS > 2-4 TB, need more than 1 TB of D-RAM which requires 8 Socket NUMA X86 Very few DBMS implement NUMA with high performance & scalability Very expensive to buy many servers to fit large DBMS 100% in-memory Data Mart (Scale-Out) Parallel Query critical to get User & Query Scalability across multi-cores Sophisticated Query Optimizer required to provide Predictable Query Performance M-OLAP & Planning/Budgeting Write Performance critical to update aggregates and calculations In-Memory Columnar Compression & Storage can impact write performance

Oracle Exalytics Oracle TimesTen is significantly better than SAP HANA Requirement Oracle Times Ten SAP HANA In-Memory Data Caching In-Memory Columnar Storage In-Memory Row & Column Compression Column Only In-Memory Indexes In-Memory Query Optimizer (Predictability) In-Memory NUMA Support (Scale Up) In-Memory Parallel Query (Scale Out) In-Memory Aggregates & Result Sets In-Memory Analytic Functions In-Memory Unstructured Data High Performance Writes/Updates Data Persistence on Disk Transactional Integrity/Correctness? Multi-Version Concurrency?

Oracle Exalytics Oracle Exalytics is significantly better than SAP HANA Exalytics SAP HANA Hana s Limitations Operational Reporting Data Mart Data Warehouse Multi-dimensional OLAP Planning & Budgeting Unstructured Discovery Packaged Apps & BI Tools Limited Data Sources with Sybase Replication Server Limited support of 3 rd normal form within Business Objects No Parallel Query (Scale-Out) or NUMA (Scale-Up) Support Limited & Non-Standard SQL Theoretically Possible but Practically far too expensive above 2-4 TB to put all data in memory; no graceful mechanism for disk storage Limited Write Performance to update aggregates due to compressed, inmemory columnar storage Layers of aggregates in SAP BW impact planning on BW on Hana Limited write performance with columnar storage; No unstructured data support in Hana No discovery capabilities across unstructured & structured All Packaged Oracle Analytic Applications, Packaged EPM Applications, and any BI Tool works with Exalytics; Hana only works with SAP Tools

Oracle Exalytics Oracle Exalytics is significantly cheaper than SAP HANA In-Memory Data Mart 512GB compressed data 1TB memory In-Memory Analytics for Enterprise DW 20 TB compressed data 40TB memory Oracle Exalytics SAP HANA + IBM Hardware $825,000 $4,112,474 $2,499,000 1 Exalytics + 1 Exadata. $126,548,960 40 Size L servers required to hold all data in-memory Comparison Hana is 5X more expensive Hana is 50X more expensive Pricing Oracle Exalytics SAP HANA + IBM Hardware Hardware: 1TB RAM $135,000 $362,474* In-Memory Database Software for 1TB RAM $690,000 $3,750,000** * IBM 7143-H2x + 7143-H3x Upgrade Option ** HANA Enterprise Edition

Summary

Oracle Exalytics Summary In-Memory Analytics has made rapid advances Memory is Faster, Cheaper, and has More Capacity Today Oracle has the most mature & best In-Memory Technology For Transaction Processing, Business Analytics, and Unstructured Information Processing Oracle Exalytics is a complete In-Memory Analytics System Operational Reporting, R-OLAP, M-OLAP, Planning & Budgeting, Unstructured Information Discovery Oracle Exalytics is being adopted rapidly by customers Most Complete Solution, Analytics Speed, Better Business Intelligence, Lower Cost Oracle Exalytics solves these problems better than competitors More complete & mature solution, solves analytics problems better, & much cheaper than competitors In-Memory DBMS will not replace many or all relational DBMS Competitor s DBMS in particular has many architectural & functional limitations