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© 2015 IBM Corporation
Breakthrough experiments in data science:
Practical lessons for success
November 2015
© 2015 IBM Corporation2
© 2015 IBM Corporation3 © 2015 IBM Corporation
We asked data scientists and their executive colleagues…
© 2015 IBM Corporation
In their own words…
4
“When you ask me what the
value of data science is, it's
almost, like explaining the
value of water to a fish.”
– Chief Data Scientist, Media
“We have an asset: it’s the
data. And what you do with
that data dictates whether
you’ll be differentiated in
the future.”
– SVP of Digital & Direct
Business, Retail
“We're going to help the
business go to new
places that it hasn’t yet
even thought of going.”
– Chief Data Scientist,
Biotechnology
“If we didn’t have a data
science capability we would
lose money.”
– Global Director of Data &
Analytics, Manufacturing
“The business realized that,
nowadays, we cannot be
competitive if we are not
data-savvy enough.”
– Senior VP, Banking
© 2015 IBM Corporation
Leading organizations are using data science to drive up revenue…
5
Increased business
year over year
Grew top line and
saved on bottom line
Reached expanded
group of customers
Developed a new predictive
analytics platform to offer
preapprovals in real time
Employed modeling
techniques to improve online
promotion targeting and spend
allocation
Assembled location-based
analytics models to better
allocate resources across sites
“With our preapprovals, we
increased our business
40% year over year. And
the losses are about a third
to a quarter of what the
industry is seeing.”
– VP of Credit Risk Analysis &
Econometrics, Banking
“These are opportunities
in the millions, either in
terms of driving the top line,
or just getting smarter in the
online marketing space and
spend allocation.”
– Chief Analytic Officer, Travel
“We’re able to increase
revenue because we were
now reaching people that we
wouldn’t have otherwise
gotten to. And we were able
to minimize the drain from
other competing agents.”
– Lead Data Scientist, Insurance
© 2015 IBM Corporation
…and are using data science to improve efficiency and effectiveness
6
Saved millions by
reducing churn
Found new patterns in
holiday shopping
Forecast effects of
weather on sales
Built an online predictive
analytics tool that helped
reduce churn and better direct
resources
Combined trends from
different data sources to
enhance inventory
management
Created a new predictive
model to improve supply chain
management of stores
“Well, certainly the churn
model is a big success –
between $11 and $16 million
dollars in savings per year
has been a lot of proof that
what we do works.”
– Chief Data Scientist, Telecom
“We were able to see that
people were shopping
earlier than ever before. We
needed to have more toys on
the shelf by October;
November was not good
enough.”
– Director Customer Service Systems,
Retail
“I'm able to model the effect
of a hailstorm on a set of
stores that may sell out of
shingles. We’re getting into
other data in order to enhance
some of this bottom line
functionality.”
– Data Scientist & Advanced Analytics
Architect, Retail
© 2015 IBM Corporation
What can we learn from how forward-thinking enterprises use data
science capabilities to extract value from data?
7 © 2015 IBM Corporation
© 2015 IBM Corporation
Those already seeing the benefits can offer practical advice to
their peers around how to:
© 2015 IBM Corporation8
© 2015 IBM Corporation9 © 2015 IBM Corporation
Infuse data science into culture: Smarter, faster decision making
© 2015 IBM Corporation10 © 2015 IBM Corporation
© 2015 IBM Corporation11
Set expectations
“We had to change the culture and say if you don’t bring data, don’t bother bringing a
topic up. We established very firm criteria up front: show me the research you did
and the data that supports why you believe this to be true.”
– Global Director of Data & Analytics, Manufacturing
Automate decision making
“We’ve tried to integrate some of the business rules into the database and made
some of the decisions for them so they don’t have to do the heavy lifting on it.
Analytics decision management is definitely a key tool.”
– Chief Data Scientist, Telecom
Offer easily consumed data
“Not only have a product but have a product that is easily viewable and consumable
by the business. I think that that’s an absolutely essential thing.”
– Lead Data Scientist, Insurance
Infuse data science into culture
© 2015 IBM Corporation12 © 2015 IBM Corporation
Design a data science capability: Structure, skills and support
© 2015 IBM Corporation13 © 2015 IBM Corporation
© 2015 IBM Corporation14
Centralize the core with distributed support
“We have different verticals assigned to different areas of the business within one
central data organization. This works pretty well because then all of the data
scientists are together sharing one kind of core research philosophy and then using
that in their specific areas.”
– Lead Data Scientist, Insurance
Pay based on partner’s success
“We succeed when our business partners succeed so I even remunerate my people
based on their partner's successes, not just their contribution.”
– Chief Data Scientist, Media
Collaborate with IT
“Setting up data scientists alone will get you part of the way there but getting the
software engineers and technical people to help you implement is absolutely
essential.”
– Lead Data Scientist, Insurance
Design a data science function
© 2015 IBM Corporation15 © 2015 IBM Corporation
Equip with the right technology: Tools, accessibility and efficiency
© 2015 IBM Corporation16 © 2015 IBM Corporation
© 2015 IBM Corporation17
Consolidate data sources
“It’s much simpler because we have a single data source instead of having it spread
out over multiple data sources all over the company. Instead of having to go out and
request access from 16 different people, you can now get all the access you need.”
– Senior Director of Data Sciences, Insurance
Build data cleansing into tools
“Our warehouse team put together anomaly detection in the warehouse to actually
watch the data. We would find date columns with six different date formats, or there
would be six months worth of missing data. It's really a hygiene issue.”
– Principal Data Scientist, Media & Entertainment
Invest in cloud-based solutions
“I'm a big believer in moving a lot of this stuff to the cloud, and then in house, let the
people focus on their core competencies, which is data analytics, not the
maintaining and junk that goes along with the infrastructure.”
– Director Customer Service Systems, Retail
Equip with the right technology
© 2015 IBM Corporation18 © 2015 IBM Corporation
Showcase your results: Targets, metrics and awareness
© 2015 IBM Corporation19 © 2015 IBM Corporation
© 2015 IBM Corporation20
Focus on high ROI problems first
“Senior management is looking for dollar savings or revenue acquisition improvement,
those types of things. So, you have to pick the projects with the best ROI first.”
– Chief Data Scientist, Telecommunications
Establish control groups to measure value
“We're running experiments. We've got control stores, and we've got test stores.
We're looking at the difference between the two across the variety of different things
we're trying in the world of data science.”
– Data Scientist & Advanced Analytics Architect, Retail
Drive awareness through internal campaigns
“We set up kiosks and roadshows to market what we do. We'll set up a couple of
tables in the cafeteria of core buildings and have videos of the types of projects
we've worked on, especially ones that have some jazzy output.”
– Chief Data Scientist, Biotechnology
Showcase your results
© 2015 IBM Corporation21
As you establish your own capability…
 How committed are your senior
leaders to basing decisions on data,
not intuition?
 Can the business easily understand
and act on your data science
insights?
 Do you have one centralized
capability? with all the skills you
need?
 How well do you collaborate with
the business? with IT?
 Have you enabled your
capability with the right tools?
 How accessible and trusted
is your data?
 How effectively are you driving
awareness and adoption?
 Do you have metrics in place
to prove value?
© 2015 IBM Corporation
Backup
22
© 2015 IBM Corporation
For participant companies, big data and
analytics are a significant area of focus
and investment relative to other
business imperatives
Industries include banking, education,
retail, wholesale, telecommunications,
manufacturing, insurance, healthcare,
pharmaceuticals, travel, finance,
biotechnology and media &
entertainment
Our research highlights practical advice from data leaders for
integrating data science capabilities within your organization
23
Qualitative study
22 in-depth phone interviews with US-
based business leaders and data
scientists of companies that have been
successful at integrating a data science
capability within their firms
© 2015 IBM Corporation
Learn more about leading data and analytics
24
Data Leaders: Re-imagining the business of data
The transformative power of data and
analytics is being harnessed by
organizations to make smarter, quicker
and more analytically-informed
decisions. At the helm of this
transformation is the Chief Data Officer
– a strategic leader who employs data
and analytics to create tangible
business value.
The IBM Center for Applied Insights
spoke in-depth with executives to learn
how CDOs are making a difference
within organizations.
www.ibm.com/ibmcai/cdostudy
Download the study
(403KB)
 IBMCAI Blog – CDO
THINKLEADERS
CDO strategies for success
in a new era of big data and
advanced analytics
 Big Data & Analytics
Hub for CDOs
Discover more:
© 2015 IBM Corporation25
© Copyright IBM Corporation 2015
IBM Corporation
New Orchard Road
Armonk, NY 10504
Produced in the United States of America
December 2014
IBM, the IBM logo and ibm.com are trademarks of International Business Machines
Corporation in the United States, other countries or both. If these and other IBM
trademarked terms are marked on their first occurrence in this information with a trademark
symbol (® or TM), these symbols indicate U.S. registered or common law trademarks owned
by IBM at the time this information was published. Such trademarks may also be registered
or common law trademarks in other countries. Other product, company or service names
may be trademarks or service marks of others. A current list of IBM trademarks is available
on the web at “Copyright and trademark information” at ibm.com/legal/copytrade.shtml
This document is current as of the initial date of publication and may be changed by IBM at
any time. Not all offerings are available in every country in which IBM operates.
THE INFORMATION IN THIS DOCUMENT IS PROVIDED “AS IS” WITHOUT ANY
WARRANTY, EXPRESS OR IMPLIED, INCLUDING WITHOUT ANY WARRANTIES OF
MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND ANY WARRANTY
OR CONDITION OF NON-INFRINGEMENT. IBM products are warranted according to the
terms and conditions of the agreements under which they are provided.

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Data science capabilities

  • 1. © 2015 IBM Corporation Breakthrough experiments in data science: Practical lessons for success November 2015
  • 2. © 2015 IBM Corporation2
  • 3. © 2015 IBM Corporation3 © 2015 IBM Corporation We asked data scientists and their executive colleagues…
  • 4. © 2015 IBM Corporation In their own words… 4 “When you ask me what the value of data science is, it's almost, like explaining the value of water to a fish.” – Chief Data Scientist, Media “We have an asset: it’s the data. And what you do with that data dictates whether you’ll be differentiated in the future.” – SVP of Digital & Direct Business, Retail “We're going to help the business go to new places that it hasn’t yet even thought of going.” – Chief Data Scientist, Biotechnology “If we didn’t have a data science capability we would lose money.” – Global Director of Data & Analytics, Manufacturing “The business realized that, nowadays, we cannot be competitive if we are not data-savvy enough.” – Senior VP, Banking
  • 5. © 2015 IBM Corporation Leading organizations are using data science to drive up revenue… 5 Increased business year over year Grew top line and saved on bottom line Reached expanded group of customers Developed a new predictive analytics platform to offer preapprovals in real time Employed modeling techniques to improve online promotion targeting and spend allocation Assembled location-based analytics models to better allocate resources across sites “With our preapprovals, we increased our business 40% year over year. And the losses are about a third to a quarter of what the industry is seeing.” – VP of Credit Risk Analysis & Econometrics, Banking “These are opportunities in the millions, either in terms of driving the top line, or just getting smarter in the online marketing space and spend allocation.” – Chief Analytic Officer, Travel “We’re able to increase revenue because we were now reaching people that we wouldn’t have otherwise gotten to. And we were able to minimize the drain from other competing agents.” – Lead Data Scientist, Insurance
  • 6. © 2015 IBM Corporation …and are using data science to improve efficiency and effectiveness 6 Saved millions by reducing churn Found new patterns in holiday shopping Forecast effects of weather on sales Built an online predictive analytics tool that helped reduce churn and better direct resources Combined trends from different data sources to enhance inventory management Created a new predictive model to improve supply chain management of stores “Well, certainly the churn model is a big success – between $11 and $16 million dollars in savings per year has been a lot of proof that what we do works.” – Chief Data Scientist, Telecom “We were able to see that people were shopping earlier than ever before. We needed to have more toys on the shelf by October; November was not good enough.” – Director Customer Service Systems, Retail “I'm able to model the effect of a hailstorm on a set of stores that may sell out of shingles. We’re getting into other data in order to enhance some of this bottom line functionality.” – Data Scientist & Advanced Analytics Architect, Retail
  • 7. © 2015 IBM Corporation What can we learn from how forward-thinking enterprises use data science capabilities to extract value from data? 7 © 2015 IBM Corporation
  • 8. © 2015 IBM Corporation Those already seeing the benefits can offer practical advice to their peers around how to: © 2015 IBM Corporation8
  • 9. © 2015 IBM Corporation9 © 2015 IBM Corporation Infuse data science into culture: Smarter, faster decision making
  • 10. © 2015 IBM Corporation10 © 2015 IBM Corporation
  • 11. © 2015 IBM Corporation11 Set expectations “We had to change the culture and say if you don’t bring data, don’t bother bringing a topic up. We established very firm criteria up front: show me the research you did and the data that supports why you believe this to be true.” – Global Director of Data & Analytics, Manufacturing Automate decision making “We’ve tried to integrate some of the business rules into the database and made some of the decisions for them so they don’t have to do the heavy lifting on it. Analytics decision management is definitely a key tool.” – Chief Data Scientist, Telecom Offer easily consumed data “Not only have a product but have a product that is easily viewable and consumable by the business. I think that that’s an absolutely essential thing.” – Lead Data Scientist, Insurance Infuse data science into culture
  • 12. © 2015 IBM Corporation12 © 2015 IBM Corporation Design a data science capability: Structure, skills and support
  • 13. © 2015 IBM Corporation13 © 2015 IBM Corporation
  • 14. © 2015 IBM Corporation14 Centralize the core with distributed support “We have different verticals assigned to different areas of the business within one central data organization. This works pretty well because then all of the data scientists are together sharing one kind of core research philosophy and then using that in their specific areas.” – Lead Data Scientist, Insurance Pay based on partner’s success “We succeed when our business partners succeed so I even remunerate my people based on their partner's successes, not just their contribution.” – Chief Data Scientist, Media Collaborate with IT “Setting up data scientists alone will get you part of the way there but getting the software engineers and technical people to help you implement is absolutely essential.” – Lead Data Scientist, Insurance Design a data science function
  • 15. © 2015 IBM Corporation15 © 2015 IBM Corporation Equip with the right technology: Tools, accessibility and efficiency
  • 16. © 2015 IBM Corporation16 © 2015 IBM Corporation
  • 17. © 2015 IBM Corporation17 Consolidate data sources “It’s much simpler because we have a single data source instead of having it spread out over multiple data sources all over the company. Instead of having to go out and request access from 16 different people, you can now get all the access you need.” – Senior Director of Data Sciences, Insurance Build data cleansing into tools “Our warehouse team put together anomaly detection in the warehouse to actually watch the data. We would find date columns with six different date formats, or there would be six months worth of missing data. It's really a hygiene issue.” – Principal Data Scientist, Media & Entertainment Invest in cloud-based solutions “I'm a big believer in moving a lot of this stuff to the cloud, and then in house, let the people focus on their core competencies, which is data analytics, not the maintaining and junk that goes along with the infrastructure.” – Director Customer Service Systems, Retail Equip with the right technology
  • 18. © 2015 IBM Corporation18 © 2015 IBM Corporation Showcase your results: Targets, metrics and awareness
  • 19. © 2015 IBM Corporation19 © 2015 IBM Corporation
  • 20. © 2015 IBM Corporation20 Focus on high ROI problems first “Senior management is looking for dollar savings or revenue acquisition improvement, those types of things. So, you have to pick the projects with the best ROI first.” – Chief Data Scientist, Telecommunications Establish control groups to measure value “We're running experiments. We've got control stores, and we've got test stores. We're looking at the difference between the two across the variety of different things we're trying in the world of data science.” – Data Scientist & Advanced Analytics Architect, Retail Drive awareness through internal campaigns “We set up kiosks and roadshows to market what we do. We'll set up a couple of tables in the cafeteria of core buildings and have videos of the types of projects we've worked on, especially ones that have some jazzy output.” – Chief Data Scientist, Biotechnology Showcase your results
  • 21. © 2015 IBM Corporation21 As you establish your own capability…  How committed are your senior leaders to basing decisions on data, not intuition?  Can the business easily understand and act on your data science insights?  Do you have one centralized capability? with all the skills you need?  How well do you collaborate with the business? with IT?  Have you enabled your capability with the right tools?  How accessible and trusted is your data?  How effectively are you driving awareness and adoption?  Do you have metrics in place to prove value?
  • 22. © 2015 IBM Corporation Backup 22
  • 23. © 2015 IBM Corporation For participant companies, big data and analytics are a significant area of focus and investment relative to other business imperatives Industries include banking, education, retail, wholesale, telecommunications, manufacturing, insurance, healthcare, pharmaceuticals, travel, finance, biotechnology and media & entertainment Our research highlights practical advice from data leaders for integrating data science capabilities within your organization 23 Qualitative study 22 in-depth phone interviews with US- based business leaders and data scientists of companies that have been successful at integrating a data science capability within their firms
  • 24. © 2015 IBM Corporation Learn more about leading data and analytics 24 Data Leaders: Re-imagining the business of data The transformative power of data and analytics is being harnessed by organizations to make smarter, quicker and more analytically-informed decisions. At the helm of this transformation is the Chief Data Officer – a strategic leader who employs data and analytics to create tangible business value. The IBM Center for Applied Insights spoke in-depth with executives to learn how CDOs are making a difference within organizations. www.ibm.com/ibmcai/cdostudy Download the study (403KB)  IBMCAI Blog – CDO THINKLEADERS CDO strategies for success in a new era of big data and advanced analytics  Big Data & Analytics Hub for CDOs Discover more:
  • 25. © 2015 IBM Corporation25 © Copyright IBM Corporation 2015 IBM Corporation New Orchard Road Armonk, NY 10504 Produced in the United States of America December 2014 IBM, the IBM logo and ibm.com are trademarks of International Business Machines Corporation in the United States, other countries or both. If these and other IBM trademarked terms are marked on their first occurrence in this information with a trademark symbol (® or TM), these symbols indicate U.S. registered or common law trademarks owned by IBM at the time this information was published. Such trademarks may also be registered or common law trademarks in other countries. Other product, company or service names may be trademarks or service marks of others. A current list of IBM trademarks is available on the web at “Copyright and trademark information” at ibm.com/legal/copytrade.shtml This document is current as of the initial date of publication and may be changed by IBM at any time. Not all offerings are available in every country in which IBM operates. THE INFORMATION IN THIS DOCUMENT IS PROVIDED “AS IS” WITHOUT ANY WARRANTY, EXPRESS OR IMPLIED, INCLUDING WITHOUT ANY WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND ANY WARRANTY OR CONDITION OF NON-INFRINGEMENT. IBM products are warranted according to the terms and conditions of the agreements under which they are provided.