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What is Big Data?

Rajendra Akerkar
rak@vestforsk.no

Presented at Université Jean Monnet – Université de Lyon France, June 10, 2013
www.vestforsk.no

Hype around Big Data 

Today, the difference between success and failure is the ability to monetize a
new class of data. It’s ironic that, despite billions of dollars spent on business
intelligence systems, we are still data‐bankrupt.
– Roman Stanek, Founder and CEO of Good Data
www.vestforsk.no

Source: Bloor Group
www.vestforsk.no

The rise and rise of Big Data
www.vestforsk.no

Share of the digital universe by India and China
www.vestforsk.no
www.vestforsk.no

What is Big Data?
videos & photos

email
mobile GPS

social

Big 
Data
Data that is too big, moves too fast, or doesn’t fit the structures of your 
database architecture
www.vestforsk.no

Fallacy!
 Data does provide information
 Big Data  Big Insight
 Information must be:
 Interpretable
 Relevant
 Novel

 The insight we can derive is a tiny fraction of data, we need 
to collect even more data and use more powerful analytics 
to increase the likelihood of finding it.
www.vestforsk.no

 The amount of information one can extract 
from the data is always much less than the 
data volume
www.vestforsk.no

A  step forward in business intelligence and 
analytics
Can we see additional value in linking and exploiting big data 
for business and societal  benefit?
 If we bring together
numerous data sources
to provide a single
reference point then
 we start to derive new
value.
 Until then, we simply
risk creating new data
silos.
www.vestforsk.no

Detecting Financial & 
Insurance Fraud 
Integrating Information from a 
variety of sources yields significant 
intelligence 
Moving from a single document 
view to a network view significantly 
improves risk scoring effectiveness 
 Benefits 
 Major International Banks detect 
fraud > $50M 
 Reduce costs to end‐users 
 Increased trust 
www.vestforsk.no

Providing a competitive 
advantage in manufacturing 
Volvo – rapidly deriving intelligence from 
vehicle sensor data 
 Reduction in cycle time for fault 
rectification 
 Predictive maintenance 
 Location specific design enhancements 

Proctor and Gamble ‐ using data to 
“digitise” operations 
 Remove inefficiencies from production 
 Reduce inventory across supply chain 
 Analytics and visualisation to aid 
decision making 
www.vestforsk.no

Google predicted the spread of flu in 
real time 
 after analyzing two datasets, 
 50 million most common terms that Americans type, 
 data on the spread of seasonal flu from public health 
agency

 tested a mammoth of 450 million different mathematical 
models to test the search terms, comparing their 
predictions against the actual flu cases
 model was tested when H1N1 crisis struck in 2009 and 
gave more meaningful and valuable real time 
information than any public health official system.
(Reference: http://www.amazon.com/Big-Data-Revolution-Transform-Think/dp/0544002695)
www.vestforsk.no

14
www.vestforsk.no

There has always been Big Data…
Its just that now we can actually capture and mine 
it effectively.

Canadian Tar Fields
www.vestforsk.no

Knowledge is knowing when and how to use certain 
info and insights. 
If someone digests the info+insight, it become his knowledge
www.vestforsk.no

Not all Big Data is created Equal
Planet Google and friends are the outliers

The Norm

Large Telco

.
Google, Facebook, Twitter –are outliers 
that are in a class of their own. And their 
requirements are significantly different 
to large enterprise businesses, let alone 
the normal enterprise business and SME.
www.vestforsk.no

Definition(s) of “big data”
Big Data is a term encompassing the use of
techniques to capture, process, analyse and
visualize potentially large datasets in a
reasonable timeframe not accessible to
standard IT technologies.
By extension, the platform, tools and
software used for this purpose are collectively
called ‘Big Data technologies’
(Networked European Software and Service Initiative, 2012). 
www.vestforsk.no

Or, in other words, 

•
•
•
•
•

Big Data is data
in volumes too large to 
process by
traditional methods.

Unable to handle large data volumes & diversity of data
Iterative, brute‐force and slow process
Lack of ad‐hoc data navigation across events and time
Focused on structured data that is warehoused
Web analytics solutions force real‐time events into rigid 
schemas in DBs
www.vestforsk.no

What is a Big Data problem?
www.vestforsk.no

3 Vs
 For Volume
 How  to convert massive amounts of data into information, 
meaning, and insight useful for human decision‐making. 

 For dealing with Variety 
 Use experience in using ontologies, domain models, or 
vocabularies, to support semantic interoperability and 
integration

 For Velocity
 How  to use dynamically created models of new objects, 
concepts, and relationships and uses them to better 
understand new clues in the data that capture rapidly 
evolving events and situations.
www.vestforsk.no

What happens if the raw data you are 
injecting into your system is 
incomplete or formatted incorrectly 
from the get‐go?

Additional attributes 

Venue

Vocabulary

Veracity
www.vestforsk.no

 People will be interested in value
‐ extracting value from Big Data
www.vestforsk.no

Is it actionable ?
 The first three Vs are just measures of data
— how much, how fast, and how diverse?

 NOT an actionable, complete definition
 Definition of big data must concede that:
 Exponential data growth makes it continuously difficult to 
manage — store, process, and access.
 Data contains non‐obvious information that companies can 
discover to enhance business outcomes.
 Measures of data are relative; one company’s big data is 
another company’s peanut.
www.vestforsk.no

So, the pragmatic definition

store

process

access

Big Data is the frontier of a 
company’s ability to store, 
process, and access  all the 
data it needs to operate 
effectively, make decisions, 
reduce risks, and serve 
customers.
www.vestforsk.no

Big Data for Everyone
• Big data is not just for data scientists and special 
projects
• Its for decision makers and data consumers
• It needs to be anchored in the real world

Analyst
Consumers
www.vestforsk.no

Who is benefitting from Big Data?
www.vestforsk.no
www.vestforsk.no

Correlation versus causation versus “what’s good 
enough for the job”

Source: Columbia University

Oncologists might benefit from seeing the similarities among cells in a 
biopsy, but targeting certain markers doesn’t guarantee you can cure 
someone’s cancer.
www.vestforsk.no
www.vestforsk.no

Big Data analytics – the need for new approach 

Scalablility

No

Yes

Ingest high
Volumes of data
(all available data) no

Yes

Sampling of data Yes

NO

Variety of data
(structured, semistructured,
unstructured)
No
Simultaneous data
and query
processing
No
Faster access to
all relevant
information
No
Analyze data at
high rates(GB/sec No
Accuracy in
anlytical models

Competitive Advantage

Challenges

Traditional New
approach approach

The questions that are answered
What’s the best that can happen?
Optimization

What will happen next?

What if these trends continue?

Why is this happening?

Alerts

Predictive
Analysis

Forecasting

Statistical
Analysis

What actions are needed?

Yes
Query
Drilldown
Adhoc
reports

Yes
Std
reports

Yes

Do You have opportunity or a problem?

How many, how often,, where?

What happened?

Degree of Intelligence

Yes

Taking unstructured data into account
No

Yes
www.vestforsk.no

BIG DATA Research Focus
www.vestforsk.no

VALUE from harnessing the challenges
 Present‐day focus devoted to business intelligence and targeted 
analytics needs, not to serve complex personal and collective 
human requirements
 e.g., empower human in health, fitness and well‐being; better 
emergency management that is highly personalized.

 Integrate real‐world complexity: multi‐modal and multi‐sensory 
nature of real‐world and human perception
 Need deeper understanding of data and its role to information 
 e.g., skew, coverage

 Human involvement and guidance
 Heading to actionable information, understanding and insight right in 
the context of human activities

 Bottom‐up & Top‐down processing
 Infusion of models and background knowledge (data + knowledge + 
reasoning)
www.vestforsk.no

Data should provide VALUE from 
harnessing the challenges posed by 
volume, velocity, variety and veracity  
of big data, to provide actionable 
information and improve decision making
www.vestforsk.no

Read this book!

Publisher: Taylor & Francis Group/CRC Press
http://www.taylorandfrancis.com/books/details/9781466578371/ 
www.vestforsk.no

Thank you !

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