SlideShare a Scribd company logo
Document

March 2012

M20

RESEARCH NOTE

THE BIG RETURNS FROM BIG DATA
THE BOTTOM LINE
Nucleus found organizations can earn an incremental ROI of 241 percent
by using Big Data capabilities to examine large and complex data sets.
One driver of high returns on Big Data was the ability to improve business
processes and decisions by increasing the types of data that can be
analyzed. Another driver of high returns was the ability to monitor the
factors that impact a company, such as customer sentiment, by scouring
large external data sources such as social media sites.

Nucleus has determined that enterprises increased their average ROI on analytics
by 241 percent when they used Big Data to become a more Analytic Enterprise. An
Analytic Enterprise improves its competitiveness and operating results by
continuously expanding its use of analytics (Nucleus Research m17 – The stages of
an Analytic Enterprise, February 2012). There are four stages in the evolution of
an Analytic Enterprise, and Big Data plays an important role in this transformative
path.

1400%

Return on Investment

1200%
1000%
Predictive

800%

Strategic

600%

Tactical

400%

Automated

200%
0%
Automated

Tactical

Strategic

Predictive

Enterprises with strategic deployments earn an average ROI of 968 percent by
deploying analytics across the organization to align daily operations with senior
management’s goals. Predictive deployments achieve higher returns by tapping
into what is commonly referred to as “Big Data,” data sources that are large,
contain a broad variety of data sets, are available on-demand, and change rapidly.

Corporate Headquarters
Nucleus Research Inc.
100 State Street
Boston, MA 02109
Phone: +1 617.720.2000

Nucleus Research Inc.
NucleusResearch.com
March 2012

Document M20

Predictive deployments also reach beyond the traditional limits of internal
enterprise data to the Web, customers, vendors, and partners.

BIG DATA, BIG RETURN S
When Nucleus validated the benefits of Big Data, benefits achieved by end users
included:



Increased productivity. A major metropolitan police department achieved an
863 percent ROI when it combined its criminal records database with a national
crime database created by a major university. The combination of national
trends, local crime-related data, and predictive analytics enabled the police
department to allocate its law enforcement assets more effectively and reduce
crime rates.



Increased margins. An ROI of 942 percent was earned by a major
manufacturer which used Big Data capabilities to examine purchasing and costrelated data in all of its vendors’ databases, leading to vendor consolidation
and reduced cost of goods sold.



Increased revenues. Revenues can be increased when Big Data is used to
rapidly detect changes in consumers’ activities and preferences. For example,
an organization optimizing online campaigns can track click streams and data
gathered from all customer touch points to continuously monitor and fine tune
their programs, resulting in increased revenues.



Reduced labor costs. A major resort earned an ROI of 1,822 percent when it
integrated shift scheduling processes with data from a national weather
service, enabling managers to avoid unnecessary shift assignments and
increase staff utilization.

BENEFITS OF BIG DATA
Nucleus analysts identified four key drivers for high returns on Big Data
investments. First, Big Data enabled organizations to examine large volumes of
structured and unstructured data, such as large data sets captured by customer
loyalty programs and call centers. Second, Big Data improved decision making by
rapidly delivering data and conclusions while the information was still valuable.
Third, companies improved decision making by combining their own data with
acquired large data sets, such as geospatial data. Finally, Big Data capabilities
enable the scouring of Web-based data for tasks such as monitoring and detecting
changes in customer sentiment.
Big Data enables analysis of vast data sets
By dramatically expanding the volume of data that can be examined in an analytics
deployment, Big Data capabilities enable employees to detect conditions that
impact a large number of transactions, but are unobservable without a dedicated
analytics effort. For example, an automobile manufacturer that examines parts
purchases by its servicing subsidiary can detect design flaws or quality problems
before they become a public relations or branding crisis. Another source of onpremise Big Data is information gathered from customer loyalty programs. By
examining the purchasing habits and behaviors or thousands of members in a
loyalty program, retailers can improve their product offerings and price points,
leading to higher revenues and margins. Through standard touch points with
customers, partners, and vendors, many enterprises already have collected Big
Data sets even though they may not know it. Large telecommunications providers

© 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited.
NucleusResearch.com

2
March 2012

Document M20

can use Big Data to reduce customer churn by continuously examining their
customers’ interactions related to billing, purchases, and call center activity to
anticipate which customers are considering switching.
Big Data also improves decision making by aggregating and analyzing large
volumes of unstructured data. Although many organizations accumulate large
quantities of data in the form of handwritten notes, e-mails, and voice recordings,
this data is typically unavailable for analysis because most analytical tools are
designed for highly structured data such as financial information. Big Data
analysis tools enable organizations to collect and examine this unstructured
information to detect desired operational trends or conditions. For example, an
airline could examine recordings of call-center interactions in order to identify the
best practices that lead to higher customer retention rates when standard service
capabilities are disrupted.
Big Data accelerates decision making
By rapidly sifting through such large volumes of information, Big Data enables
organizations to identify problems or opportunities while something can still be
done. For example, many consumers are likely to tweet or blog about a product
long before they share their opinions with a call center representative. With
sentiment tracking tools, organizations can get a read on customer sentiment far
faster than relying on call centers or focus groups. Customer churn prevention also
requires timely reactions based on the accurate view of leading metrics. Many
large telecommunications providers examine churn statistics on a weekly or
monthly basis. Although such reporting may successfully identify customers at risk
for churn, this information only becomes available after the customer has already
switched. Big Data assets can reduce churn costs by continuously monitoring
billing databases to identify at-risk customers and sending them offers designed to
retain them.
External Big Data sources make proprietary data more valuable
Nucleus found that organizations were able to improve decision making when Big
Data sets were created by combining proprietary data sets with externally available
Big Data sets, such as geospatial data or meteorological information. For example,
a car manufacturer could identify local customer preferences or climate-specific
quality problems by adding geospatial data to the information gathered by onboard
sensors. Lending institutions that purchase publicly available credit data and
integrate it with their customer lists can improve the effectiveness of their
marketing campaigns and improve the quality of their loan portfolios.
Big Data enables Web-based sentiment monitoring
Social media is a common source of Big Data used to improve decision making,
mainly through sentiment tracking of brands, products, and other events
representing the company’s public face. Nucleus found many organizations
monitored customer sentiment by tracking the results of specific key word
searches, such as “our brand, need to return phone.” Tracking was also performed
by identifying individual user profiles on social networking sites capable of wielding
influence on sites such as Twitter or Facebook. By tracking such individuals, two
core benefits were achieved. First, those individuals were closely observed to
detect shifts in customer sentiment. Second, by proactively providing superior

© 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited.
NucleusResearch.com

3
March 2012

Document M20

service to such individuals, companies could ensure that such influencers had a
good opinion of their company.

CONCLUSION
Although Big Data may seem overhyped, technology buyers should set aside their
skepticism and consider making investments that enable the analysis of large and
complex data sets. When analytics capabilities are applied to large data sets,
whether they are associated with the enterprise, social media, the customer
audience, or the partner ecosystem, employees become capable of insights they
can’t make by examining traditional data sources. The scouring of the Web for
important shifts in customer sentiment, the use of acquired credit-ratings data for
loan portfolio improvement, and the analysis of warranty databases for the
detection of potential product failures are all examples of benefits from Big Data
that have significant bottom-line impact, yet are unavailable from less mature
analytics deployments.

© 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited.
NucleusResearch.com

4

More Related Content

PDF
The big returns from Big Data
PDF
The Big Returns from Big Data
 
PDF
Buyer's guide to strategic analytics
PDF
The dawn of Big Data
PDF
Reaping the benefits of Big Data and real time analytics
PDF
The ABCs of Big Data
PDF
INFOGRAPHIC: Making #BigData Work
PDF
CGT Research May 2013: Analytics & Insights
The big returns from Big Data
The Big Returns from Big Data
 
Buyer's guide to strategic analytics
The dawn of Big Data
Reaping the benefits of Big Data and real time analytics
The ABCs of Big Data
INFOGRAPHIC: Making #BigData Work
CGT Research May 2013: Analytics & Insights

What's hot (20)

PDF
INFOGRAPHIC: Big Data Alchemy
PDF
Big-Data-The-Case-for-Customer-Experience
PDF
WP_011_Analytics_DRAFT_v3_FINAL
PDF
Governing Big Data : Principles and practices
PDF
How can data analytics boost your business growth
PDF
3 Steps for Measuring ROI of Data Quality for Data-Driven Marketers
PDF
Whitepaper - Simplifying Analytics Adoption in Enterprise
PPTX
How data analytics will drive the future of banking
PPTX
General Insurance Conference 2014: Big Data for Insurance Companies
PDF
Data Mining: The Top 3 Things You Need to Know to Achieve Business Improvemen...
PDF
Big data baddata-gooddata
PDF
Emergence of Big Data in Digital Marketing
PDF
Consumer Insights: Finding and Guarding the Treasure Trove
PPTX
Lauren Moores Keynote
PDF
Your Digital Journey is Being Mapped by Your Customers
PDF
2012 iia-predictions-brief-final
PDF
Big data analytics for life insurers
PDF
Big Data is Here for Financial Services White Paper
PDF
How Pharma Can Fully Digitize Interactions with Healthcare Professionals
PDF
Innovating with analytics
INFOGRAPHIC: Big Data Alchemy
Big-Data-The-Case-for-Customer-Experience
WP_011_Analytics_DRAFT_v3_FINAL
Governing Big Data : Principles and practices
How can data analytics boost your business growth
3 Steps for Measuring ROI of Data Quality for Data-Driven Marketers
Whitepaper - Simplifying Analytics Adoption in Enterprise
How data analytics will drive the future of banking
General Insurance Conference 2014: Big Data for Insurance Companies
Data Mining: The Top 3 Things You Need to Know to Achieve Business Improvemen...
Big data baddata-gooddata
Emergence of Big Data in Digital Marketing
Consumer Insights: Finding and Guarding the Treasure Trove
Lauren Moores Keynote
Your Digital Journey is Being Mapped by Your Customers
2012 iia-predictions-brief-final
Big data analytics for life insurers
Big Data is Here for Financial Services White Paper
How Pharma Can Fully Digitize Interactions with Healthcare Professionals
Innovating with analytics
Ad

Similar to The big-returns-from-big-data (20)

DOCX
Rising Significance of Big Data Analytics for Exponential Growth.docx
PDF
6 Reasons to Use Data Analytics
PDF
What are Big Data, Data Science, and Data Analytics
PDF
Data Derived Growth
PDF
The big data strategy using social media
PDF
Delivering customer value faster with Big Data analytics
PDF
Social-Media-Analytics-Enabling-Intelligent-Real-Time-Decision-Making
PDF
DATAFICATION - Datafication refers to the transformation of various aspects
PDF
The Quantified Self Goes Corporate
PDF
BigData_WhitePaper
PDF
Making sense of consumer data
DOC
BIG DATA & BUSINESS ANALYTICS
PDF
Operationalizing the Buzz: Big Data 2013
PDF
Thebigdatastrategyusingsocialmedia 140126142538-phpapp01
PDF
Analytics solution
PDF
Data Analytics And Business Decision.pdf
PDF
Data Analytics And Business Decision.pdf
PDF
Thinking Small: Bringing the Power of Big Data to the Masses
Rising Significance of Big Data Analytics for Exponential Growth.docx
6 Reasons to Use Data Analytics
What are Big Data, Data Science, and Data Analytics
Data Derived Growth
The big data strategy using social media
Delivering customer value faster with Big Data analytics
Social-Media-Analytics-Enabling-Intelligent-Real-Time-Decision-Making
DATAFICATION - Datafication refers to the transformation of various aspects
The Quantified Self Goes Corporate
BigData_WhitePaper
Making sense of consumer data
BIG DATA & BUSINESS ANALYTICS
Operationalizing the Buzz: Big Data 2013
Thebigdatastrategyusingsocialmedia 140126142538-phpapp01
Analytics solution
Data Analytics And Business Decision.pdf
Data Analytics And Business Decision.pdf
Thinking Small: Bringing the Power of Big Data to the Masses
Ad

Recently uploaded (20)

PPTX
Spectroscopy.pptx food analysis technology
PPTX
OMC Textile Division Presentation 2021.pptx
PDF
Assigned Numbers - 2025 - Bluetooth® Document
PPTX
A Presentation on Artificial Intelligence
PDF
Reach Out and Touch Someone: Haptics and Empathic Computing
PDF
NewMind AI Weekly Chronicles - August'25-Week II
PDF
Approach and Philosophy of On baking technology
PPTX
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
PDF
August Patch Tuesday
PDF
Agricultural_Statistics_at_a_Glance_2022_0.pdf
PDF
Per capita expenditure prediction using model stacking based on satellite ima...
PDF
Video forgery: An extensive analysis of inter-and intra-frame manipulation al...
PDF
Mushroom cultivation and it's methods.pdf
PDF
Encapsulation theory and applications.pdf
PDF
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
PDF
Diabetes mellitus diagnosis method based random forest with bat algorithm
PDF
TokAI - TikTok AI Agent : The First AI Application That Analyzes 10,000+ Vira...
PDF
Profit Center Accounting in SAP S/4HANA, S4F28 Col11
PDF
A comparative analysis of optical character recognition models for extracting...
PPT
Teaching material agriculture food technology
Spectroscopy.pptx food analysis technology
OMC Textile Division Presentation 2021.pptx
Assigned Numbers - 2025 - Bluetooth® Document
A Presentation on Artificial Intelligence
Reach Out and Touch Someone: Haptics and Empathic Computing
NewMind AI Weekly Chronicles - August'25-Week II
Approach and Philosophy of On baking technology
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
August Patch Tuesday
Agricultural_Statistics_at_a_Glance_2022_0.pdf
Per capita expenditure prediction using model stacking based on satellite ima...
Video forgery: An extensive analysis of inter-and intra-frame manipulation al...
Mushroom cultivation and it's methods.pdf
Encapsulation theory and applications.pdf
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
Diabetes mellitus diagnosis method based random forest with bat algorithm
TokAI - TikTok AI Agent : The First AI Application That Analyzes 10,000+ Vira...
Profit Center Accounting in SAP S/4HANA, S4F28 Col11
A comparative analysis of optical character recognition models for extracting...
Teaching material agriculture food technology

The big-returns-from-big-data

  • 1. Document March 2012 M20 RESEARCH NOTE THE BIG RETURNS FROM BIG DATA THE BOTTOM LINE Nucleus found organizations can earn an incremental ROI of 241 percent by using Big Data capabilities to examine large and complex data sets. One driver of high returns on Big Data was the ability to improve business processes and decisions by increasing the types of data that can be analyzed. Another driver of high returns was the ability to monitor the factors that impact a company, such as customer sentiment, by scouring large external data sources such as social media sites. Nucleus has determined that enterprises increased their average ROI on analytics by 241 percent when they used Big Data to become a more Analytic Enterprise. An Analytic Enterprise improves its competitiveness and operating results by continuously expanding its use of analytics (Nucleus Research m17 – The stages of an Analytic Enterprise, February 2012). There are four stages in the evolution of an Analytic Enterprise, and Big Data plays an important role in this transformative path. 1400% Return on Investment 1200% 1000% Predictive 800% Strategic 600% Tactical 400% Automated 200% 0% Automated Tactical Strategic Predictive Enterprises with strategic deployments earn an average ROI of 968 percent by deploying analytics across the organization to align daily operations with senior management’s goals. Predictive deployments achieve higher returns by tapping into what is commonly referred to as “Big Data,” data sources that are large, contain a broad variety of data sets, are available on-demand, and change rapidly. Corporate Headquarters Nucleus Research Inc. 100 State Street Boston, MA 02109 Phone: +1 617.720.2000 Nucleus Research Inc. NucleusResearch.com
  • 2. March 2012 Document M20 Predictive deployments also reach beyond the traditional limits of internal enterprise data to the Web, customers, vendors, and partners. BIG DATA, BIG RETURN S When Nucleus validated the benefits of Big Data, benefits achieved by end users included:  Increased productivity. A major metropolitan police department achieved an 863 percent ROI when it combined its criminal records database with a national crime database created by a major university. The combination of national trends, local crime-related data, and predictive analytics enabled the police department to allocate its law enforcement assets more effectively and reduce crime rates.  Increased margins. An ROI of 942 percent was earned by a major manufacturer which used Big Data capabilities to examine purchasing and costrelated data in all of its vendors’ databases, leading to vendor consolidation and reduced cost of goods sold.  Increased revenues. Revenues can be increased when Big Data is used to rapidly detect changes in consumers’ activities and preferences. For example, an organization optimizing online campaigns can track click streams and data gathered from all customer touch points to continuously monitor and fine tune their programs, resulting in increased revenues.  Reduced labor costs. A major resort earned an ROI of 1,822 percent when it integrated shift scheduling processes with data from a national weather service, enabling managers to avoid unnecessary shift assignments and increase staff utilization. BENEFITS OF BIG DATA Nucleus analysts identified four key drivers for high returns on Big Data investments. First, Big Data enabled organizations to examine large volumes of structured and unstructured data, such as large data sets captured by customer loyalty programs and call centers. Second, Big Data improved decision making by rapidly delivering data and conclusions while the information was still valuable. Third, companies improved decision making by combining their own data with acquired large data sets, such as geospatial data. Finally, Big Data capabilities enable the scouring of Web-based data for tasks such as monitoring and detecting changes in customer sentiment. Big Data enables analysis of vast data sets By dramatically expanding the volume of data that can be examined in an analytics deployment, Big Data capabilities enable employees to detect conditions that impact a large number of transactions, but are unobservable without a dedicated analytics effort. For example, an automobile manufacturer that examines parts purchases by its servicing subsidiary can detect design flaws or quality problems before they become a public relations or branding crisis. Another source of onpremise Big Data is information gathered from customer loyalty programs. By examining the purchasing habits and behaviors or thousands of members in a loyalty program, retailers can improve their product offerings and price points, leading to higher revenues and margins. Through standard touch points with customers, partners, and vendors, many enterprises already have collected Big Data sets even though they may not know it. Large telecommunications providers © 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited. NucleusResearch.com 2
  • 3. March 2012 Document M20 can use Big Data to reduce customer churn by continuously examining their customers’ interactions related to billing, purchases, and call center activity to anticipate which customers are considering switching. Big Data also improves decision making by aggregating and analyzing large volumes of unstructured data. Although many organizations accumulate large quantities of data in the form of handwritten notes, e-mails, and voice recordings, this data is typically unavailable for analysis because most analytical tools are designed for highly structured data such as financial information. Big Data analysis tools enable organizations to collect and examine this unstructured information to detect desired operational trends or conditions. For example, an airline could examine recordings of call-center interactions in order to identify the best practices that lead to higher customer retention rates when standard service capabilities are disrupted. Big Data accelerates decision making By rapidly sifting through such large volumes of information, Big Data enables organizations to identify problems or opportunities while something can still be done. For example, many consumers are likely to tweet or blog about a product long before they share their opinions with a call center representative. With sentiment tracking tools, organizations can get a read on customer sentiment far faster than relying on call centers or focus groups. Customer churn prevention also requires timely reactions based on the accurate view of leading metrics. Many large telecommunications providers examine churn statistics on a weekly or monthly basis. Although such reporting may successfully identify customers at risk for churn, this information only becomes available after the customer has already switched. Big Data assets can reduce churn costs by continuously monitoring billing databases to identify at-risk customers and sending them offers designed to retain them. External Big Data sources make proprietary data more valuable Nucleus found that organizations were able to improve decision making when Big Data sets were created by combining proprietary data sets with externally available Big Data sets, such as geospatial data or meteorological information. For example, a car manufacturer could identify local customer preferences or climate-specific quality problems by adding geospatial data to the information gathered by onboard sensors. Lending institutions that purchase publicly available credit data and integrate it with their customer lists can improve the effectiveness of their marketing campaigns and improve the quality of their loan portfolios. Big Data enables Web-based sentiment monitoring Social media is a common source of Big Data used to improve decision making, mainly through sentiment tracking of brands, products, and other events representing the company’s public face. Nucleus found many organizations monitored customer sentiment by tracking the results of specific key word searches, such as “our brand, need to return phone.” Tracking was also performed by identifying individual user profiles on social networking sites capable of wielding influence on sites such as Twitter or Facebook. By tracking such individuals, two core benefits were achieved. First, those individuals were closely observed to detect shifts in customer sentiment. Second, by proactively providing superior © 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited. NucleusResearch.com 3
  • 4. March 2012 Document M20 service to such individuals, companies could ensure that such influencers had a good opinion of their company. CONCLUSION Although Big Data may seem overhyped, technology buyers should set aside their skepticism and consider making investments that enable the analysis of large and complex data sets. When analytics capabilities are applied to large data sets, whether they are associated with the enterprise, social media, the customer audience, or the partner ecosystem, employees become capable of insights they can’t make by examining traditional data sources. The scouring of the Web for important shifts in customer sentiment, the use of acquired credit-ratings data for loan portfolio improvement, and the analysis of warranty databases for the detection of potential product failures are all examples of benefits from Big Data that have significant bottom-line impact, yet are unavailable from less mature analytics deployments. © 2012 Nucleus Research, Inc. Reproduction in whole or part without written permission is prohibited. NucleusResearch.com 4