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© 2013 IBM Corporation
IBM Big Data Platform
Turning big data into smarter decisions
Corinne Fabre - Vincent Jeansoulin
© 2013 IBM Corporation© 2013 IBM Corporation
6,000,000 users on Twitter
pushing out 300,000
tweets per day
500,000,000 users on Twitter
pushing out 400,000,000
tweets per day
83x
1333x
Twitter
generates over
12 TB of tweet
data every
single day
07/06/2013 IBM Confidential2
© 2013 IBM Corporation© 2013 IBM Corporation
“At the World Economic
Forum last month in Davos,
Switzerland, Big Data was a
marquee topic. A report by the
forum, “Big Data, Big Impact,”
declared data a new class of
economic asset, like
currency or gold.
“Companies are being
inundated with data—from
information on customer-buying
habits to supply-chain efficiency.
But many managers struggle to
make sense of the numbers.”
“Increasingly, businesses are
applying analytics to social
media such as Facebook and
Twitter, as well as to product
review websites, to try to
“understand where customers are,
what makes them tick and what
they want”, says Deepak Advani,
who heads IBM’s predictive
analytics group.”
“Big Data has arrived at Seton
Health Care Family, fortunately
accompanied by an
analytics tool that will help
deal with the complexity of
more than two million
patient contacts a year ”
“Data is the new oil.”
Clive Humby
The Oscar Senti-meter — a tool
developed by the L.A. Times, IBM
and the USC Annenberg
Innovation Lab — analyzes
opinions about the Academy
Awards race shared in millions
of public messages on Twitter.”
“Data is the new Oil.”
In its raw form, oil has little value. Once processed & refined, it helps power the world.
“ now Watson is being put to
work digesting millions of
pages of research,
incorporating the best clinical
practices and monitoring the
outcomes to assist physicians in
treating cancer patients.”
© 2013 IBM Corporation© 2013 IBM Corporation
Imagine the Possibilities of Harnessing your Data Resources
Retailer reduces time to
run queries by 80% to
optimize inventory
Stock Exchange cuts
queries from 26 hours to
2 minutes on 2 PB
Government cuts acoustic
analysis from hours to 70
Milliseconds
Utility avoids power
failures by analyzing 10
PB of data in minutes
Telco analyses streaming
network data to reduce
hardware costs by 90%
Hospital analyzes streaming
vitals to intervene 24
hours earlier
Big data challenges exist in every business today
© 2013 IBM Corporation© 2013 IBM Corporation
The characteristics of big data
Collectively
Analyzing the
broadening Variety
Responding to the
increasing Velocity
Cost efficiently
processing the
growing Volume
Establishing the
Veracity of big
data sources
30
Billion
RFID
sensors and
counting
1 in 3 business leaders don’t trust
the information they use to make
decisions
50x 35
ZB
2020
80% of the
worlds data is
unstructured
2010
© 2013 IBM Corporation© 2013 IBM Corporation
Big data is a hot topic because technology makes it
possible to analyze ALL available data
Cost effectively manage and analyze all available data,
in its native form – unstructured, structured, streaming
ERP
CRM RFID
Website
Network Switches
Social Media
Billing
© 2013 IBM Corporation© 2013 IBM Corporation
In order to realize new opportunities, you need to think
beyond traditional sources of data
Transactional &
Application Data
Machine Data Social Data
• Volume
• Structured
• Throughput
• Velocity
• Semi-structured
• Ingestion
• Variety
• Highly unstructured
• Veracity
Enterprise
Content
• Variety
• Highly unstructured
• Volume
© 2013 IBM Corporation© 2013 IBM Corporation
8
Hadoop
Streaming
Data
New
Sources
Unstructured
Exploratory
Iterative
Structured
Repeatable
Linear
Data
Warehouse
Traditional
Sources
Traditional Approach
Structured, analytical, logical
New Approach
Creative, holistic thought, intuition
Enterprise
Wide
Integration
Web logs, URLs
Social data
Text Data: emails, chats
RFID, sensor data
Network data
Internal App Data
Transaction Data
ERP data
Mainframe Data
OLTP System Data
Analysis expanding from enterprise data to big data, creating
new cost-effective opportunities for competitive advantage
© 2013 IBM Corporation© 2013 IBM Corporation
Big Data Exploration
Find, visualize, understand
all big data to improve
business knowledge
Enhanced 360o View
of the Customer
Achieve a true unified view,
incorporating internal and
external sources
Operations Analysis
Analyze a variety of machine
data for improved business results
Data Warehouse Augmentation
Integrate big data and data warehouse
capabilities to increase operational efficiency
Security/Intelligence
Extension
Lower risk, detect fraud
and monitor cyber security
in real-time
The 5 High Value Big Data Use Cases
© 2013 IBM Corporation© 2013 IBM Corporation
Big Data Exploration: Needs
Struggling to manage
and extract value from
the growing 3 V’s of
data in the enterprise;
need to unify
information across
federated sources
Inability to relate “raw” data
collected from system logs,
sensors, clickstreams, etc.,
with customer and line-of-
business data managed in
enterprise systems
Risk of exposing unsecure
personally identifiable
information (PII) and/or
privileged data due to lack
of information awareness
Find, visualize, understand all big data
to improve decision making
© 2013 IBM Corporation© 2013 IBM Corporation
What’s Possible – Integrated Service Solutions
11
© 2013 IBM Corporation© 2013 IBM Corporation
Enhanced 360º View of the Customer: Needs
Need a deeper
understanding of
customer sentiment
from both internal and
external sources
Extend existing customer views (MDM, CRM,
etc.) by incorporating additional internal and
external information sources
Desire to increase
customer loyalty and
satisfaction by
understanding what
meaningful actions
are needed
Challenged getting the
right information to the
right people to provide
customers what they
need to solve problems,
cross-sell & up-sell
© 2013 IBM Corporation© 2013 IBM Corporation
Enhanced 360º View of the Customer: Illustrated
Master
Data
Management
Unified View of Party’s Information
CRM
J Robertson
Pittsburgh, PA 15213
35 West 15th
Name:
Address:
Address:
ERP
Janet Robertson
Pittsburgh, PA 15213
35 West 15th
St.
Name:
Address:
Address:
Legacy
Jan Robertson
Pittsburgh, PA 15213
36 West 15th
St.
Name:
Address:
Address:
SOURCE SYSTEMS
Janet
35 West 15th St
Pittsburgh
Robertson
PA / 15213
F
48
1/4/64
First:
Last:
Address:
City:
State/Zip:
Gender:
Age:
DOB:
360° View of
Party Identity
BigInsights Streams Warehouse
Unified View of Party’s Information
© 2013 IBM Corporation© 2013 IBM Corporation
Security/Intelligence Extension: Needs
Enhanced
Intelligence &
Surveillance Insight
Real-time Cyber
Attack Prediction &
Mitigation
Analyze network traffic to:
• Discover new threats early
• Detect known complex threats
• Take action in real-time
Analyze Telco & social data to:
• Gather criminal evidence
• Prevent criminal activities
• Proactively apprehend criminals
Crime prediction &
protection
Security/Intelligence Extension enhances
traditional security solutions by analyzing all
types and sources of under-leveraged data
Analyze data-in-motion & at rest to:
• Find associations
• Uncover patterns and facts
• Maintain currency of information
© 2013 IBM Corporation© 2013 IBM Corporation
15
TerraEchos Turns to IBM
Big Data for Low Latency
Surveillance Data Analysis
• Deployed security surveillance system to detect,
classify, locate, and track potential threats at
highly sensitive national lab
• Stream computing collects and analyzes acoustic
data from fiber-optic sensor arrays
• Analyzed acoustic data fed into TerraEchos
intelligence platform for threat detection,
classification, prediction & communication
Results
• Enables Terraechos solution to analyze and
classify streaming acoustic data in real-time
• Provides lab & security staff with holistic view of
potential threats & non-issues
• Enables a faster and more intelligent response to
any threat
15
Capabilities Utilized
Stream Computing
Identifies and classifies
potential security threats
miles away
Public & Safety
© 2013 IBM Corporation© 2013 IBM Corporation
Operations Analysis: Needs
• Gain real-time visibility into operations,
customer experience, transactions and
behavior
• Proactively plan to increase operational
efficiency
Analyze a variety of machine
data for improved business results
Because of the complexity and rapid growth of
machine data, many companies make decisions
on a small fraction of the information available to
them
The ability to analyze machine data and combine
it with enterprise data for a full view can enable
organizations to:
• Identify and investigate anomalies
• Monitor end-to-end infrastructure to
proactively avoid service degradation or
outages
© 2013 IBM Corporation© 2013 IBM Corporation
17
KTH Swedish Royal Institute
of Technology Reducing
Traffic Congestion
• Deployed real-time Smarter Traffic system to
predict and improve traffic flow.
• Analyzes streaming real-time data gathered from
cameras at entry/exit to city, GPS data from taxis
and trucks, and weather information.
• Predicts best time and method to travel such as
when to leave to catch a flight at the airport
Results
• Enables ability to analyze and predict traffic
faster and more accurately than ever before
• Provides new insight into mechanisms that affect
a complex traffic system
• Smarter, more efficient, and more
environmentally friendly traffic
17
Capabilities Utilized
Stream Computing
Public & Transporation
© 2013 IBM Corporation© 2013 IBM Corporation
Integrate big data and data warehouse
capabilities to increase operational efficiency
Data Warehouse Augmentation: Needs
Need to leverage variety of data Extend warehouse infrastructure
• Optimized storage, maintenance and licensing
costs by migrating rarely used data to Hadoop
• Reduced storage costs through smart
processing of streaming data
• Improved warehouse performance by
determining what data to feed into it
• Structured, unstructured, and streaming
data sources required for deep analysis
• Low latency requirements
(hours—not weeks or months)
• Required query access to data
© 2013 IBM Corporation© 2013 IBM Corporation
19
Vestas optimizes capital
investments based on 2.5
Petabytes of information
Results
Model the weather to optimize placement
of turbines, maximizing power generation
and longevity.
Reduce time required to identify placement
of turbine from weeks to hours.
Incorporate 2.5 PB of structured and semi-
structured information flows. Data volume
expected to grow to 6 PB.
19
Capabilities Utilized
Hadoop System
Reduced turbine placement
identification from weeks to
hours
Utility
© 2013 IBM Corporation© 2013 IBM Corporation
An example of the big data platform in practice
Ingest
Landing and Analytics Sandbox Zone
Indexes,
facets
Hive/HBase
Col Stores
Documents
In Variety
of Formats
Analytics
MapReduce
Repository, Workbench
Ingestion and Real-time Analytic Zone
Data
Sinks
Filter, Transform
Ingest
Correlate, Classify
Extract, Annotate
Warehousing Zone
Enterprise
Warehouse
Data Marts
Query
Engines
Cubes
Descriptive,
Predictive
Models
Models
Widgets
Discovery,
Visualizer
Search
Analytics and
Reporting Zone
Metadata and Governance Zone
20
Connectors
© 2013 IBM Corporation© 2013 IBM Corporation
The IBM Big Data Platform
Process any type of data
– Structured, unstructured, in-
motion, at-rest
Built-for-purpose engines
– Designed to handle different
requirements
Analyze data in motion
Manage and govern data in the
ecosystem
Enterprise data integration
Grow and evolve on current
infrastructure
21
Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Accelerators
Information Integration & Governance
Hadoop
System
Stream
Computing
Data
Warehouse
Systems
Management
Application
Development
Visualization
& Discovery
© 2013 IBM Corporation© 2013 IBM Corporation
The IBM Big Data Platform
BI /
Reporting
BI /
Reporting
Exploration /
Visualization
Functional
App
Industry
App
Predictive
Analytics
Content
Analytics
Analytic Applications
Big Data Platform
Systems
Management
Application
Development
Visualization
& Discovery
Accelerators
Information Integration & Governance
Hadoop
System
Stream
Computing
Data
Warehouse
2 – Analyze Raw Rata
InfoSphere BigInsights
5 – Analyze Streaming
Data
InfoSphere Streams
1 – Unlock Big Data
IBM DataExplorer
3 – Simplify your
warehouse
Netezza/PureData
4 – Reduce costs with
Hadoop
InfoSphere BigInsights
22
6 – Analyse your content
IBM CCI/SMA
IBM Content Anayltique7 – Report
IBM Cognos
8 – Predict
IBM SPSS
© 2013 IBM Corporation© 2013 IBM Corporation
Get Started on Your Big Data Journey Today
Get Educated
• IBM Big Data: ibm.com/bigdata
• IBMBigDataHub.com
• BigDataUniversity.com
• IBV study on big data
• Books / analyst papers
Schedule a Big Data Workshop
• Free of charge
• Best practices
• Industry use cases
• Business uses
• Business value assessment
© 2013 IBM Corporation© 2013 IBM Corporation
Disclaimer
• No part of this document may be reproduced or transmitted in any form without written permission from IBM Corporation.
• Product data has been reviewed for accuracy as of the date of initial publication. Product data is subject to change without notice.
• This information could include technical inaccuracies or typographical errors. IBM may make improvements and/or changes in the
• product(s) and/or program(s) at any time without notice. Any statements regarding IBM's future direction and intent are subject to
• change or withdrawal without notice, and represent goals and objectives only.
• The performance data contained herein was obtained in a controlled, isolated environment. Actual results that may be obtained in
• other operating environments may vary significantly. While IBM has reviewed each item for accuracy in a specific situation, there is no
• guarantee that the same or similar results will be obtained elsewhere. Customer experiences described herein are based upon
• information and opinions provided by the customer. The same results may not be obtained by every user.
• Reference in this document to IBM products, programs, or services does not imply that IBM intends to make such products, programs
• or services available in all countries in which IBM operates or does business. Any reference to an IBM Program Product in this
• document is not intended to state or imply that only that program product may be used. Any functionally equivalent program, that does
• not infringe IBM's intellectual property rights, may be used instead. It is the user's responsibility to evaluate and verify the operation on
• any non-IBM product, program or service.
• THE INFORMATION PROVIDED IN THIS DOCUMENT IS DISTRIBUTED "AS IS" WITHOUT ANY WARRANTY, EITHER EXPRESS OR
• IMPLIED. IBM EXPRESSLY DISCLAIMS ANY WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE OR
• INFRINGEMENT. IBM shall have no responsibility to update this information. IBM products are warranted according to the terms and
• conditions of the agreements (e.g. IBM Customer Agreement, Statement of Limited Warranty, International Program License Agreement,
• etc.) under which they are provided. IBM is not responsible for the performance or interoperability of any non-IBM products discussed
• herein.
• Information concerning non-IBM products was obtained from the suppliers of those products, their published announcements or other
• publicly available sources. IBM has not tested those products in connection with this publication and cannot confirm the accuracy of
• performance, compatibility or any other claims related to non-IBM products. Questions on the capabilities of non-IBM products should
• be addressed to the suppliers of those products.

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IBM Technology Day 2013 BigData Salle Rome

  • 1. © 2013 IBM Corporation IBM Big Data Platform Turning big data into smarter decisions Corinne Fabre - Vincent Jeansoulin
  • 2. © 2013 IBM Corporation© 2013 IBM Corporation 6,000,000 users on Twitter pushing out 300,000 tweets per day 500,000,000 users on Twitter pushing out 400,000,000 tweets per day 83x 1333x Twitter generates over 12 TB of tweet data every single day 07/06/2013 IBM Confidential2
  • 3. © 2013 IBM Corporation© 2013 IBM Corporation “At the World Economic Forum last month in Davos, Switzerland, Big Data was a marquee topic. A report by the forum, “Big Data, Big Impact,” declared data a new class of economic asset, like currency or gold. “Companies are being inundated with data—from information on customer-buying habits to supply-chain efficiency. But many managers struggle to make sense of the numbers.” “Increasingly, businesses are applying analytics to social media such as Facebook and Twitter, as well as to product review websites, to try to “understand where customers are, what makes them tick and what they want”, says Deepak Advani, who heads IBM’s predictive analytics group.” “Big Data has arrived at Seton Health Care Family, fortunately accompanied by an analytics tool that will help deal with the complexity of more than two million patient contacts a year ” “Data is the new oil.” Clive Humby The Oscar Senti-meter — a tool developed by the L.A. Times, IBM and the USC Annenberg Innovation Lab — analyzes opinions about the Academy Awards race shared in millions of public messages on Twitter.” “Data is the new Oil.” In its raw form, oil has little value. Once processed & refined, it helps power the world. “ now Watson is being put to work digesting millions of pages of research, incorporating the best clinical practices and monitoring the outcomes to assist physicians in treating cancer patients.”
  • 4. © 2013 IBM Corporation© 2013 IBM Corporation Imagine the Possibilities of Harnessing your Data Resources Retailer reduces time to run queries by 80% to optimize inventory Stock Exchange cuts queries from 26 hours to 2 minutes on 2 PB Government cuts acoustic analysis from hours to 70 Milliseconds Utility avoids power failures by analyzing 10 PB of data in minutes Telco analyses streaming network data to reduce hardware costs by 90% Hospital analyzes streaming vitals to intervene 24 hours earlier Big data challenges exist in every business today
  • 5. © 2013 IBM Corporation© 2013 IBM Corporation The characteristics of big data Collectively Analyzing the broadening Variety Responding to the increasing Velocity Cost efficiently processing the growing Volume Establishing the Veracity of big data sources 30 Billion RFID sensors and counting 1 in 3 business leaders don’t trust the information they use to make decisions 50x 35 ZB 2020 80% of the worlds data is unstructured 2010
  • 6. © 2013 IBM Corporation© 2013 IBM Corporation Big data is a hot topic because technology makes it possible to analyze ALL available data Cost effectively manage and analyze all available data, in its native form – unstructured, structured, streaming ERP CRM RFID Website Network Switches Social Media Billing
  • 7. © 2013 IBM Corporation© 2013 IBM Corporation In order to realize new opportunities, you need to think beyond traditional sources of data Transactional & Application Data Machine Data Social Data • Volume • Structured • Throughput • Velocity • Semi-structured • Ingestion • Variety • Highly unstructured • Veracity Enterprise Content • Variety • Highly unstructured • Volume
  • 8. © 2013 IBM Corporation© 2013 IBM Corporation 8 Hadoop Streaming Data New Sources Unstructured Exploratory Iterative Structured Repeatable Linear Data Warehouse Traditional Sources Traditional Approach Structured, analytical, logical New Approach Creative, holistic thought, intuition Enterprise Wide Integration Web logs, URLs Social data Text Data: emails, chats RFID, sensor data Network data Internal App Data Transaction Data ERP data Mainframe Data OLTP System Data Analysis expanding from enterprise data to big data, creating new cost-effective opportunities for competitive advantage
  • 9. © 2013 IBM Corporation© 2013 IBM Corporation Big Data Exploration Find, visualize, understand all big data to improve business knowledge Enhanced 360o View of the Customer Achieve a true unified view, incorporating internal and external sources Operations Analysis Analyze a variety of machine data for improved business results Data Warehouse Augmentation Integrate big data and data warehouse capabilities to increase operational efficiency Security/Intelligence Extension Lower risk, detect fraud and monitor cyber security in real-time The 5 High Value Big Data Use Cases
  • 10. © 2013 IBM Corporation© 2013 IBM Corporation Big Data Exploration: Needs Struggling to manage and extract value from the growing 3 V’s of data in the enterprise; need to unify information across federated sources Inability to relate “raw” data collected from system logs, sensors, clickstreams, etc., with customer and line-of- business data managed in enterprise systems Risk of exposing unsecure personally identifiable information (PII) and/or privileged data due to lack of information awareness Find, visualize, understand all big data to improve decision making
  • 11. © 2013 IBM Corporation© 2013 IBM Corporation What’s Possible – Integrated Service Solutions 11
  • 12. © 2013 IBM Corporation© 2013 IBM Corporation Enhanced 360º View of the Customer: Needs Need a deeper understanding of customer sentiment from both internal and external sources Extend existing customer views (MDM, CRM, etc.) by incorporating additional internal and external information sources Desire to increase customer loyalty and satisfaction by understanding what meaningful actions are needed Challenged getting the right information to the right people to provide customers what they need to solve problems, cross-sell & up-sell
  • 13. © 2013 IBM Corporation© 2013 IBM Corporation Enhanced 360º View of the Customer: Illustrated Master Data Management Unified View of Party’s Information CRM J Robertson Pittsburgh, PA 15213 35 West 15th Name: Address: Address: ERP Janet Robertson Pittsburgh, PA 15213 35 West 15th St. Name: Address: Address: Legacy Jan Robertson Pittsburgh, PA 15213 36 West 15th St. Name: Address: Address: SOURCE SYSTEMS Janet 35 West 15th St Pittsburgh Robertson PA / 15213 F 48 1/4/64 First: Last: Address: City: State/Zip: Gender: Age: DOB: 360° View of Party Identity BigInsights Streams Warehouse Unified View of Party’s Information
  • 14. © 2013 IBM Corporation© 2013 IBM Corporation Security/Intelligence Extension: Needs Enhanced Intelligence & Surveillance Insight Real-time Cyber Attack Prediction & Mitigation Analyze network traffic to: • Discover new threats early • Detect known complex threats • Take action in real-time Analyze Telco & social data to: • Gather criminal evidence • Prevent criminal activities • Proactively apprehend criminals Crime prediction & protection Security/Intelligence Extension enhances traditional security solutions by analyzing all types and sources of under-leveraged data Analyze data-in-motion & at rest to: • Find associations • Uncover patterns and facts • Maintain currency of information
  • 15. © 2013 IBM Corporation© 2013 IBM Corporation 15 TerraEchos Turns to IBM Big Data for Low Latency Surveillance Data Analysis • Deployed security surveillance system to detect, classify, locate, and track potential threats at highly sensitive national lab • Stream computing collects and analyzes acoustic data from fiber-optic sensor arrays • Analyzed acoustic data fed into TerraEchos intelligence platform for threat detection, classification, prediction & communication Results • Enables Terraechos solution to analyze and classify streaming acoustic data in real-time • Provides lab & security staff with holistic view of potential threats & non-issues • Enables a faster and more intelligent response to any threat 15 Capabilities Utilized Stream Computing Identifies and classifies potential security threats miles away Public & Safety
  • 16. © 2013 IBM Corporation© 2013 IBM Corporation Operations Analysis: Needs • Gain real-time visibility into operations, customer experience, transactions and behavior • Proactively plan to increase operational efficiency Analyze a variety of machine data for improved business results Because of the complexity and rapid growth of machine data, many companies make decisions on a small fraction of the information available to them The ability to analyze machine data and combine it with enterprise data for a full view can enable organizations to: • Identify and investigate anomalies • Monitor end-to-end infrastructure to proactively avoid service degradation or outages
  • 17. © 2013 IBM Corporation© 2013 IBM Corporation 17 KTH Swedish Royal Institute of Technology Reducing Traffic Congestion • Deployed real-time Smarter Traffic system to predict and improve traffic flow. • Analyzes streaming real-time data gathered from cameras at entry/exit to city, GPS data from taxis and trucks, and weather information. • Predicts best time and method to travel such as when to leave to catch a flight at the airport Results • Enables ability to analyze and predict traffic faster and more accurately than ever before • Provides new insight into mechanisms that affect a complex traffic system • Smarter, more efficient, and more environmentally friendly traffic 17 Capabilities Utilized Stream Computing Public & Transporation
  • 18. © 2013 IBM Corporation© 2013 IBM Corporation Integrate big data and data warehouse capabilities to increase operational efficiency Data Warehouse Augmentation: Needs Need to leverage variety of data Extend warehouse infrastructure • Optimized storage, maintenance and licensing costs by migrating rarely used data to Hadoop • Reduced storage costs through smart processing of streaming data • Improved warehouse performance by determining what data to feed into it • Structured, unstructured, and streaming data sources required for deep analysis • Low latency requirements (hours—not weeks or months) • Required query access to data
  • 19. © 2013 IBM Corporation© 2013 IBM Corporation 19 Vestas optimizes capital investments based on 2.5 Petabytes of information Results Model the weather to optimize placement of turbines, maximizing power generation and longevity. Reduce time required to identify placement of turbine from weeks to hours. Incorporate 2.5 PB of structured and semi- structured information flows. Data volume expected to grow to 6 PB. 19 Capabilities Utilized Hadoop System Reduced turbine placement identification from weeks to hours Utility
  • 20. © 2013 IBM Corporation© 2013 IBM Corporation An example of the big data platform in practice Ingest Landing and Analytics Sandbox Zone Indexes, facets Hive/HBase Col Stores Documents In Variety of Formats Analytics MapReduce Repository, Workbench Ingestion and Real-time Analytic Zone Data Sinks Filter, Transform Ingest Correlate, Classify Extract, Annotate Warehousing Zone Enterprise Warehouse Data Marts Query Engines Cubes Descriptive, Predictive Models Models Widgets Discovery, Visualizer Search Analytics and Reporting Zone Metadata and Governance Zone 20 Connectors
  • 21. © 2013 IBM Corporation© 2013 IBM Corporation The IBM Big Data Platform Process any type of data – Structured, unstructured, in- motion, at-rest Built-for-purpose engines – Designed to handle different requirements Analyze data in motion Manage and govern data in the ecosystem Enterprise data integration Grow and evolve on current infrastructure 21 Solutions IBM Big Data Platform Analytics and Decision Management Big Data Infrastructure Accelerators Information Integration & Governance Hadoop System Stream Computing Data Warehouse Systems Management Application Development Visualization & Discovery
  • 22. © 2013 IBM Corporation© 2013 IBM Corporation The IBM Big Data Platform BI / Reporting BI / Reporting Exploration / Visualization Functional App Industry App Predictive Analytics Content Analytics Analytic Applications Big Data Platform Systems Management Application Development Visualization & Discovery Accelerators Information Integration & Governance Hadoop System Stream Computing Data Warehouse 2 – Analyze Raw Rata InfoSphere BigInsights 5 – Analyze Streaming Data InfoSphere Streams 1 – Unlock Big Data IBM DataExplorer 3 – Simplify your warehouse Netezza/PureData 4 – Reduce costs with Hadoop InfoSphere BigInsights 22 6 – Analyse your content IBM CCI/SMA IBM Content Anayltique7 – Report IBM Cognos 8 – Predict IBM SPSS
  • 23. © 2013 IBM Corporation© 2013 IBM Corporation Get Started on Your Big Data Journey Today Get Educated • IBM Big Data: ibm.com/bigdata • IBMBigDataHub.com • BigDataUniversity.com • IBV study on big data • Books / analyst papers Schedule a Big Data Workshop • Free of charge • Best practices • Industry use cases • Business uses • Business value assessment
  • 24. © 2013 IBM Corporation© 2013 IBM Corporation Disclaimer • No part of this document may be reproduced or transmitted in any form without written permission from IBM Corporation. • Product data has been reviewed for accuracy as of the date of initial publication. Product data is subject to change without notice. • This information could include technical inaccuracies or typographical errors. IBM may make improvements and/or changes in the • product(s) and/or program(s) at any time without notice. Any statements regarding IBM's future direction and intent are subject to • change or withdrawal without notice, and represent goals and objectives only. • The performance data contained herein was obtained in a controlled, isolated environment. Actual results that may be obtained in • other operating environments may vary significantly. While IBM has reviewed each item for accuracy in a specific situation, there is no • guarantee that the same or similar results will be obtained elsewhere. Customer experiences described herein are based upon • information and opinions provided by the customer. The same results may not be obtained by every user. • Reference in this document to IBM products, programs, or services does not imply that IBM intends to make such products, programs • or services available in all countries in which IBM operates or does business. Any reference to an IBM Program Product in this • document is not intended to state or imply that only that program product may be used. Any functionally equivalent program, that does • not infringe IBM's intellectual property rights, may be used instead. It is the user's responsibility to evaluate and verify the operation on • any non-IBM product, program or service. • THE INFORMATION PROVIDED IN THIS DOCUMENT IS DISTRIBUTED "AS IS" WITHOUT ANY WARRANTY, EITHER EXPRESS OR • IMPLIED. IBM EXPRESSLY DISCLAIMS ANY WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE OR • INFRINGEMENT. IBM shall have no responsibility to update this information. IBM products are warranted according to the terms and • conditions of the agreements (e.g. IBM Customer Agreement, Statement of Limited Warranty, International Program License Agreement, • etc.) under which they are provided. IBM is not responsible for the performance or interoperability of any non-IBM products discussed • herein. • Information concerning non-IBM products was obtained from the suppliers of those products, their published announcements or other • publicly available sources. IBM has not tested those products in connection with this publication and cannot confirm the accuracy of • performance, compatibility or any other claims related to non-IBM products. Questions on the capabilities of non-IBM products should • be addressed to the suppliers of those products.