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Agenda
• Big Data
• Making Sense of it all
• A Framework of Understanding
• Topical information
• Non Topical Information
• Analytics
• Examples
• Getting there
• Q&A
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Social Network Diagram
• Contextual analytics is one of the hottest areas of interest pertaining to big
data today
• Smart companies know there is tremendous value in contextual analytics.
But aggregating, categorizing, summarizing, exploring and contextualizing
unstructured data is a big undertaking.
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What is the Big Data market?
Source: “Big Data Market Size and Vendor Revenues”, Wikibon, Jeff Kelly, David Valante, David Elgyer, Feb 2013 – actual data through 2011
Acronyms: TBD = to be determined; SI = systems integrator; BPO = business process outsourcing
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Sample Industry Applications of Big Data
Telco
Call Detail Record
(CDR) analytics for:
• Customer service
• Network planning
• Regulatory
compliance
Financial Services
Transaction analytics
for:
• Fraud detection
• Customer retention
• Distribution network
planning (Branch,
ATM, Call Center)
• Regulatory
compliance
• Consumer card /
Merchant activity
Utilities
Network / Process
analytics for:
• Grid monitoring /
reliability studies
• Preventive
Maintenance
• Power production
monitoring /
planning
Retail
Product analytics for:
• Market Basket analytics
• SKU trending
• Competitive analyses
• Context-aware buying
• Social indicators of
brand
Healthcare
Patient analytics for:
• Cost of care
reduction
• Quality of care
improvement
• Claims optimization
• Service provider
consistency
• Outcome
diagnostics
• Regulatory
compliance
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Why Big Data? Insights from Analysis
• Time college football products to win customers
– WalmartLabs: social media buzz indicates when customers are
getting excited about the upcoming season and their team(s).
Combined with ShopyCat app provides targeted promos on team
items.
• Detecting nosocomial infections before they kill
infants
– Toronto hospital – Nosocomial infections can be life-threatening
to premature infants if not treated quickly. Neonatal monitoring
with real-time analytics can detect heart beat patterns that
identify an infection before symptoms appear.
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Wal-Mart handles more
than 1 million customer
transactions every hour
which import into
databases containing
more than 2.5 petabytes
Volume Velocity Variety
1M/hour
In addition to all procedure,
claims and payment
systems’ structured data
add unstructured data in
EMRs, patient monitoring
devices, publications, drug
structures, social network
comments, carrier health
sites, post-treatment care
records…
80%
Exist in the digital
universe as of early 2013
1 zettabyte =
1,000 exabytes
1,000,000 petabytes
10^9 terabytes
10^12 gigabytes
2.7zettabytes
What Drives Big Data Analytics
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EngineeringSocial/Mobile
The Big Data Ecosystem
Enterprise Systems
Customer Loyalty &
Service Systems
Customer
Case Files
E-MailsAudioImagesProvisioning
Systems
Variety Veracity
Velocity Volume
Analysis
Business Outcomes
Predictive Analytics
CEP
Operational Control
Simulation
Social Analytics
Digital Marketing
WEB Analytics
Blogs,
Communities
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Hadoop and other options
• A strategy for bringing together
hardware and software
• What choices are available and
how do you choose the best
option?
• How do I govern it?
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There are Many Use Cases for a Big Data Platform
Social Media - Product/brand Sentiment
analysis
Brand strategy
Market analysis
RFID tracking & analysis
Transaction analysis to create insight-
based product/service offerings
Multimodal surveillance
Cyber security
Fraud modeling & detection
Risk modeling & management
Regulatory reporting
Innovate New Products
at Speed and Scale
Know Everything about your Customer
Social media customer sentiment
analysis
Promotion optimization
Segmentation
Customer profitability
Click-stream analysis
CDR processing
Multi-channel interaction analysis
Loyalty program analytics
Churn prediction
Run Zero Latency Operations
Smart Grid/meter management
Distribution load forecasting
Sales reporting
Inventory & merchandising optimization
Options trading
ICU patient monitoring
Disease surveillance
Transportation network optimization
Store performance
Environmental analysis
Experimental research
Instant Awareness of
Risk and Fraud
Exploit Instrumented Assets
Network analytics
Asset management and predictive issue resolution
Website analytics
IT log analysis
Back
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Processing and Archiving Strategies
• Store forever
• Selective storage
• Throw away after processing
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Making sense of it all
• Clarity of purpose
• Definition of scope
• Allocation of resources
• Concrete result expectations
• Comparative Analytical Measures (e.g.
KPIs)
– Rationalization of measures into actionable
items and hierarchical groups
– Defining predictive analytics workspaces
!
!
!
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Role of the Data Scientist
• Creating Intelligent Tagging
• Selecting tools for analysis
• Defining algorithms and data mining
techniques
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What is Contextualization ?
• Context is the interrelated conditions in which
something exists or occurs . Helping define context
is Environment, Setting, Timeline, Genre
• Why is context important?
– Consistency needed in returned result sets
– The context describes the internal or external “framework”
– Internal contextual information is crucial
– External contextual information is knowledge that which
cannot be gotten from the text of the item itself
– Time and resources are wasted in searching irrelevant
and non-material information
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Problems in searching data
• Voluminous
• Ambiguous meanings
• Inconsistent tagging
• Multiple item types – text, formatted, PDF, TIFF,
graphical, blogs, mashups
• Knowledge of what is wanted is required to
understand and return the proper result sets
• Differentiation is necessary between
– Real-time needs (e.g. fraud detection, medical Emergency
room procedures)
– Near-time needs (sometime in the near timeline)
– Relaxed-time (some clearly defined future period)
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Topical information
• Topical information is generally
visible in the data stream
–Keywords, data ranges, etc.
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Non-topical information
• Has to be retrieved outside the item
– Although topic is crucial to the relevance of an
item, non-topical criteria plays an important
role in the determination of relevance and
significance
– The identification and use of non-content (or
“context”) descriptors is necessary
– How widely agreed upon are the values of a
given criterion among users (or user groups)?
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Non-topical information cont’d
–What is the degree to which an attribute-
value is “public” or “private”?
• How useful is each criterion for the search
tasks to be addressed by the specific query
system?
• How easily can a criterion be identified and
assigned to an item?
• What methods can be applied for refining
and speeding retrievals?
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Descriptors - The defining of disambiguity
• Do the content descriptors correspond
or relate to non-topical relevance
criteria of the system’s users?
• Will users see a relationship between
their relevance criteria and these
descriptors, and use these descriptors
in their search queries?
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Content descriptors
• Content descriptors (topical relevance
criteria)
– “Public” knowledge:
• People of similar cultural backgrounds would
(more or less) agree on the meanings.
However, context descriptors (which can
function as non-topical relevance criteria) can
vary widely in the degree to which their
attribute-values are considered public or
private.
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Public Knowledge Examples
• “Has pictures” is a criterion that could be
considered “public” as most people could agree
on whether or not a document “has pictures”, if
given a specific document to evaluate.
• On the other hand, the criterion of “Regency
Era” is highly situationally dependent - i.e. a
limited subset of the public has knowledge of it -
(specifically the period between 1811 and 1820,
when King George III was deemed unfit to rule
and his son - the Prince of Wales - ruled as his
proxy as Prince Regent)
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Genres refine taxonomy
• Genre is a “folk typology”
• Item categories must enjoy widespread recognition by their
intended user groups to qualify as genres.
– Examples: Resumes, Ballet, Music, Chemical formulae, statistical
results
• Groups of people agree on and define Genres by mutual
consent (Explicitly and Implicitly)
– E.g. Taxonomies (plants, accounting, medical), laws, voting, polls
• Genres give rise to sub-genres with increasing granularity
– E.g. Music, classical, romantic, new age, atonal
– Genres and sub-genres may contain common elements
• E.g. classical music and romantic music may have an intersection of data
points
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Genre knowledge
• Genre is a type based on purpose, form and
content.
– E.g. The “resume” genre is for soliciting employment,
divided into sections with contextual descriptors
• Knowing a particular item’s genre also infers
significant things about an item, sometimes enough
to a make a judgment regarding the Item’s
relevance to an information need
– E.g. The phrase “Classically Trained Musician” infers
knowledge to read music and understand musical
terminology along with additional shades of musical
knowledge
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Historical Analytics
• Presentation of historical data
– Dashboards, Drill-downs, interactive reports, static reports
– New methods and devices
– Identifying the metrics that affect key objectives
– Synchronizing those metrics through an organization
– Creating user tools to show effects of good (and bad)
choices
– Tying the financial, operational, and sales worlds together
– Analyzing to predict the future
– Refining models for accuracy
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Predictive Analytics
• Manipulation of data
– Dashboards, Drill-downs, interactive reports
– New methods and devices
– Varying the metrics that affect key objectives
– Synchronizing the impact of metrics through an
organization
– Creating user tools to show effects of good (and bad)
choices
– Tying the financial, operational, and sales worlds together
– Creating models that show potential future scenarios
– Refining models for accuracy using advanced tools and
statistics
- 32. 9/10/2013 | 32 | ©2013 Ciber, Inc.
Examples of Harnessing 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 analyses streaming
vitals to detect illness
24 hours earlier
Big data challenges exist in every organization today
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In Order to Realize New Opportunities, You Need to
Think Beyond Traditional Sources of Data
Transactional and
Application Data
Machine Data Social Data
Volume
Structured
Throughput
Velocity
Semi-structured
Ingestion
Variety
Highly unstructured
Veracity
Enterprise
Content
Variety
Highly unstructured
Volume
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• Data at rest – oceans
• Collection of what has streamed
• Web logs, emails, social media
• Unstructured documents: forms, claims
• Structured data from disparate systems
• Data in movement - streams
• Twitter / Facebook comments
• Stock market data
• Sensors: Vital signs of a newly-born
Two Sample Types of Big Data
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Leveraging Big Data Requires Multiple Platform
Capabilities
Manage & store huge
volume of any data
Hadoop File System
MapReduce
Manage streaming data Stream Computing
Analyze unstructured data Text Analytics Engine
Data WarehousingStructure and control data
Integrate and govern all
data sources
Integration, Data Quality, Security,
Lifecycle Management, MDM
Understand and navigate
federated big data sources
Federated Discovery and Navigation
- 37. 9/10/2013 | 37 | ©2013 Ciber, Inc.
Outcomes Utilizing Big Data Capabilities
To Analyze Any Big
Data Type
With Unique CapabilitiesAchieve Breakthrough
Outcomes
Content
Transactional
/ Application
Data
Machine Data
Social Media
Data
Visualization
and Discovery
Know Everything
About Your
Customers
Run Zero-latency
Operations
Innovate new
products at Speed
and Scale
Instant Awareness
of Fraud and Risk
Exploit
Instrumented
Assets
Hadoop
Data
Warehousing
Stream
Computing
Integration and
Governance
Text Analytics
- 38. 9/10/2013 | 38 | ©2013 Ciber, Inc.
Big Data Platform and Entry Points
2 – Analyze Raw Rata
5 – Analyze Streaming
Data
1 – Unlock Big Data
3 – Simplify your
warehouse
4 – Reduce costs with
Hadoop
- 39. 9/10/2013 | 39 | ©2013 Ciber, Inc.
Q & A
Contact
Richard Gristak, Senior Director of Business Intelligence – rgristak@ciber.com