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Similaire à Robert LeBlanc - Why Big Data? Why Now?
Similaire à Robert LeBlanc - Why Big Data? Why Now? (20)
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Robert LeBlanc - Why Big Data? Why Now?
- 2. Robert LeBlanc
Senior Vice President, Middleware Software
IBM Software Group
2 © 2011 IBM Corporation
- 3. Information is at the Center … And Organizations
of a New Wave of Opportunity… Need Deeper Insights
44x 2020
35 zettabytes Business leaders frequently
as much Data and Content
Over Coming Decade
1 in 3 make decisions based on
information they don’t trust, or
don’t have
1 in 2 Business leaders say they don’t
have access to the information
they need to do their jobs
of CIOs cited “Business
83% intelligence and analytics” as
2009
800,000 petabytes
80%
Of world’s data
part of their visionary plans
to enhance competitiveness
is unstructured of CEOs need to do a better job
60% capturing and understanding
information rapidly in order to
make swift business decisions
3 3 © 2011 IBM Corporation
- 4. The Challenge: Bring Together a Large Volume and Variety of Data
to Find New Insights
Multi-channel customer
sentiment and experience a
analysis
Detect life-threatening
conditions at hospitals in
time to intervene
Predict weather patterns to plan
optimal wind turbine usage, and
optimize capital expenditure on
asset placement
Make risk decisions based on
real-time transactional data
Identify criminals and threats
from disparate video, audio,
and data feeds
4 © 2011 IBM Corporation
- 5. The Big Data Opportunity
Extracting insight from an immense volume, variety and velocity
of data, in context, beyond what was previously possible.
Variety: Manage the complexity of
multiple relational and non-
relational data types and
schemas
Velocity: Streaming data and large
volume data movement
Volume: Scale from terabytes to
zettabytes
5
5 © 2011 IBM Corporation
- 6. The Traditional Approach: Business Requirements Drive Solution Design
Business Defines Requirements –
What Questions Should we Ask?
New requirements IT Designs a Solution
require redesign with a set structure
and rebuild and functionality
Business executes queries to answer
questions over and over
6 © 2011 IBM Corporation
- 7. The Traditional Approach: Business Requirements Drive Solution Design
Business Defines Requirements –
What Questions Should we Ask?
New requirements IT Designs a Solution
require redesign with a set structure
and rebuild and functionality
Business executes queries to answer
questions over and over
Well-Suited To: Stretched By:
• High value, structured data • Highly variable data and content
• Repeated operations and processes (e.g. • Iterative, exploratory analysis (e.g. scientific
transactions, reports, BI, etc.) research, behavioral modeling, etc.)
• Relatively stable sources • Volatile sources
• Well-understood requirements • Ill-defined questions and changing requirements
7 © 2011 IBM Corporation
- 8. The Big Data Approach: Information Sources Drive Creative Discovery
Business and IT Identify
Information Sources Available
New insights drive IT Delivers a Platform
integration to that enables creative
traditional exploration of all
technology available data and
content
Business determines what questions
to ask by exploring the data and
relationships
8 © 2011 IBM Corporation
- 9. Big Data Shouldn’t Be a Silo
Must be an integrated part of your enterprise information architecture
Data Warehouse Big Data Platform
Enterprise
Integration
Traditional Sources New Sources
9 © 2011 IBM Corporation
- 10. Merging the Traditional and Big Data Approaches
Traditional Approach Big Data Approach
Structured & Repeatable Analysis Iterative & Exploratory Analysis
IT
Business Users
Delivers a platform to
Determine what enable creative
question to ask discovery
IT Business
Structures the Explores what
data to answer questions could be
that question asked
Monthly sales reports Brand sentiment
Profitability analysis Product strategy
Customer surveys Maximum asset utilization
10 © 2011 IBM Corporation
- 11. The Solution – IBM’s Big Data Platform
Bring together any data source, at any velocity, to generate insight
Analyzing a variety of data
at enormous volumes
Insights on streaming data
Large volume structured
data analysis
IBM Big Data Platform
• Variety
• Velocity
• Volume
11 © 2011 IBM Corporation
- 12. Optimize capital investments
based on 6 Petabytes
of information
Model the weather to optimize placement of turbines,
maximizing power generation and longevity
Build models to cover forecasting and real-time operation
of power generation units
Incorporate 6 PB of structured and semi-structured
information flows
12 12 © 2011 IBM Corporation
- 13. A Platform Approach Address Enterprise Client Needs
Enterprise Client Needs Big Data Platform Delivers
Enable creativity and
agility
Focus on outcomes
Platform for V3
Reduce and manage Analytics for V3
complexity
Ease of Use for Developers/Users
Enterprise Class
Lower development
and integration costs Extensive Integration
13 © 2011 IBM Corporation
- 14. IBM Watson
IBM Watson is a breakthrough in analytic innovation, but it is only successful
because of the quality of the information from which it is working.
14 © 2011 IBM Corporation
- 15. Big Data and Watson
Big Data technology is used to build Watson can consume insights from
Watson’s knowledge base Big Data for advanced analysis
Watson uses the Apache Hadoop open
framework to distribute the workload for
loading information into memory. CRM Data
POS Data Social Media
Approx. 200M pages of text
(To compete on Jeopardy!) Distilled Insight
- Spending habits
- Social relationships
- Buying trends
InfoSphere BigInsights
Watson’s
Memory Advanced
search and
analysis
15 © 2011 IBM Corporation
- 16. Imagine the Possibilities
…in a World with No Limits
Information Radical Extreme
from Everywhere Flexibility Scalability
• Data & content • Virtualization at • “Big data” analytics
• Apps, web & sensors every level • Real-time stream
• At rest & in motion • Automated administration processing
• Integrated & federated • Easy-to-use analytics • Efficient parallelism
• Workload-optimized
16 16 © 2011 IBM Corporation