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Data Driven Insurance Underwriting

David M Walker
Data Management & Warehousing
http://datamgmt.com

26 November 2013
What happens when you add a little
black box to a car?
•  This small box can be fitted
to a car in about an hour
•  A basic model collects the
following info:
–  Longitude, Latitude &
Altitude
–  X, Y & Z Acceleration
–  Speed
–  Direction of travel
–  Distance travelled since last
report
–  Box Identifier
–  Date & Time
26 November 2013

http://datamgmt.com

2
On device collection of data in a Round
Robin Database

•  A Round Robin Database or Circular Buffer
records the data regularly (e.g. milliseconds)
•  After a time interval or a distance travelled an
aggregate report is sent to the server (Usage
Reports)
–  Usage reports can be separately buffered if there is
no data transmission signal

•  If a crash occurs the entire content of the buffer
is sent to the server (Crash Reports)
26 November 2013

http://datamgmt.com

3
Sending Data Home
1.	
  Black	
  Box	
  sends	
  data	
  to	
  central	
  colla1ng	
  
server(s)	
  over	
  mobile	
  data	
  networks	
  

2.	
  Colla1ng	
  server(s)	
  send	
  data	
  	
  
files	
  to	
  MMP	
  Analy1cal	
  Server	
  

Geo	
  
Info	
  

Under-­‐
wri1ng	
  

Claims	
  

ERP	
  

	
  

CRM

26 November 2013

3.	
  Supplement	
  the	
  data	
  with	
  informa1on	
  
from	
  the	
  opera1onal	
  systems	
  and	
  
external	
  data	
  sources	
  
http://datamgmt.com

4
Usage Reports
•  In town driving typically generates more
time limited reports
–  Short distances driven in slow traffic
–  Typically every 15 seconds

•  Motorway driving typically generates
more distance limited reports
–  Long Distances driven at high speed
–  Typically every 1 km

•  Trips are defined as ignition start to
ignition stop
•  Usage reports describe the driving
behaviour
26 November 2013

http://datamgmt.com

5
Crash Reports
•  How was the driver driving
immediately prior to the crash?
•  Where did the impact come from?
–  X, Y & Z Acceleration determine point of impact
•  negative acceleration on the front – you hit them
•  positive acceleration on the back – they hit you

•  Crash reports are used to help determine
fault
26 November 2013

http://datamgmt.com

6
Basic Data Model
Social	
  Media	
  
Policy	
  Holders	
  

Drivers	
  

Policies	
  
Policy	
  Holder	
  
Underwri1ng	
  
Data	
  

Driver	
  
Underwri1ng	
  
Data	
  
Vehicles	
  

Geographic	
  	
  
Layer	
  
Informa1on	
  

Claims	
  

Data	
  
Points	
  
Crashes	
  
26 November 2013

Trips	
  
http://datamgmt.com

7
Data Volumes
•  88 – 290 Bytes Per Data Point
–  Depends on the type of Black Box

•  124 Data Points per Trip on average
•  81 Trips per Month per Vehicle
•  Retained over 5 years
–  ~ 165 Mb per customer
–  ~ 1 Tb per 7000 customers
–  ~ 15 Tb for 100,000 customers

•  All the rest is insignificant
–  Policies, claims, reference data, etc. becomes
insignificant in comparison to trip data
26 November 2013

http://datamgmt.com

8
Data Collected At Quote Time
•  Vehicle
–  Make, Model, Engine Size, Alarm,
Modifications, #Seats, Where
kept (Day & Night), Use (Social,
Domestic, Commuting, etc.),
Annual Mileage

•  Policy Holder & Other Drivers
–  Address, Age, Gender§,
Marital Status, #Children, Other Vehicles,
Employment Status, Occupation, Industry,
Residency, Previous Claims & Convictions, Licence
Type & Additional Qualifications, Medical Conditions
§Gender	
  prohibited	
  as	
  ra1ng	
  factor	
  by	
  European	
  Court	
  of	
  Jus1ce	
  aTer	
  21st	
  December	
  2012	
  

26 November 2013

http://datamgmt.com

9
Data Collected At Claim Time
• 
• 
• 
• 
• 
• 
• 
• 
• 
• 
• 

Type of Incident
Location of Incident
Weather
Other Parties Involved
Types of Vehicles Involved
Injuries
Damage to vehicles
Damage to third parties and property
Police Involvement
Description of the incident
Photographs and Sketches

26 November 2013

http://datamgmt.com

10
Data Collected about Geography
•  Commercial & Government Sources
–  Road Name, Road Type, Speed Restrictions
–  Average Speed by Road, by Day, by Day of
Week and by Time of Day
–  Points of Interest
•  Supermarkets, Petrol Stations, Car Parks,
Theme Parks, Sports Stadiums, etc.

–  Meteorological Information
•  Rainfall, Temperature, Sunrise/Sunset Times

•  Open Sources
–  Wikipedia
–  Google/Bing/Apple Maps
26 November 2013

http://datamgmt.com

11
Data Collected from Social Media
•  Customer ‘Likes’ the insurance company on
Facebook
–  “Wow - just got a great
deal on my car insurance”

•  Customer chats to their friends
–  “Just had a bump in my car, going to try and get
them for whiplash too!”

•  Yes – people really are
that stupid!
26 November 2013

http://datamgmt.com

12
Advanced Data Collection
•  More sensors in the little black box
•  Vehicle Interface Modules (VIMs)
–  Provide an interface between a vehicle's on-board
diagnostics link (e.g. OBD II) and the black box
–  Depending on the vehicle this provides access to
data such as oil/water/tyre pressures, time since
last service, car dashboard warning
lights that are on, ABS usage,
airbag deployment, was the
Bluetooth active, lights on/off,
windscreen wipers on/off etc.
26 November 2013

http://datamgmt.com

13
A Note On Data Privacy
•  Data Protection & Privacy Laws
–  These vary by country so just how
much you can use of what you could
collect will also vary

•  You can’t use all the data anyway
–  European Court of Justice banned
insurance companies from using
gender as a rating factor after 21st
December 2012

•  Opt-in/Opt-out data usages
–  It is also possible, with permission, to
resell individual and aggregate
information to third parties
26 November 2013

http://datamgmt.com

14
Creating an Insurance Offering
•  Offerings are typically designed a lot like
‘Pay As You Go’ Mobile contracts
–  Fixed element – covers the device cost,
administrative aspects, etc.
–  Usage (Risk) element – price per km driven,
with different rates for different levels of
service
•  e.g. driving in the rush hour or the dark carries a
higher price than driving off-peak in daylight

–  Usage bundles – First 500 km included
per month
•  Requires top-up once they are all used up
otherwise you are not insured to drive
– normally auto debited from a credit card
26 November 2013

http://datamgmt.com

15
Unexpected Consequences
•  Driver behaviour is modified but this may not
deliver the expected results

hVp://www.dailymail.co.uk/news/ar1cle-­‐2359150/Teenage-­‐driver-­‐passenger-­‐died-­‐broke-­‐limit-­‐beat-­‐11pm-­‐insurance-­‐curfew.html	
  
26 November 2013

http://datamgmt.com

16
New Business & Renewal Quotations
•  Year 1 Underwriting
–  New policy prices based on traditional (nontelematics) underwriting scores
–  No renewals

•  Year 2+ Underwriting
–  New policy prices based on data about existing
customers and vehicles with similar profiles
–  Renewals based on the individual risk profile
26 November 2013

http://datamgmt.com

17
(Dis)-Incentivising
•  Carrots
–  Bonus miles for driving within speed limits, in
daylight, off-peak, good weather, parking offroad, etc.

•  Sticks
–  Increased cost per km for persistent
speeding, regular hard braking (detected from
accelerometer), etc.
–  Note: Penalising customers too hard will force
them to move away and have a reputational
impact
26 November 2013

http://datamgmt.com

18
So what does the data show?
• 
• 
• 
• 
• 
• 
• 

Driving Behaviours
Policy Compliance
Claim Assessment
First Responder
Theft & Fraud
Risk Profiling
Customer Behaviours

26 November 2013

http://datamgmt.com

19
Driving Behaviours
•  Does a person driving follow speed limits?
–  Average speed as a percentage of the speed
limit by roadtype, user and between dates

•  Does the person regularly brake hard?
–  # of negative X-Accerations by 1000 miles driven
by roadtype, user and between dates

•  Does the person drive unduly long hours?
–  Number of trips longer than X hours
–  Number of minutes break between trips
26 November 2013

http://datamgmt.com

20
Policy Compliance
•  Total number of miles driven
•  Is a vehicle registered for Social, Domestic &
Pleasure being used for commuting or business
–  Regularly driving between A and B in the morning
and between B and A in the evening

•  Location where the car is parked over night
–  Usually at a point near the policy holders address or
somewhere completely different

•  Taxi & Delivery Drivers
–  Don’t buy a commercial policy but can be spotted by
their driving patters
26 November 2013

http://datamgmt.com

21
Claim Assessment
•  When a claim is made the details can be
verified
–  Location of accident – even have a look at it on
Google Maps
–  Point of collision and who hit whom
–  Weather, Amount of Light
–  Speed and G Forces at time of impact
–  Did the vehicle roll?
26 November 2013

http://datamgmt.com

22
First Responder
•  When an accident occurs:
–  If it is severe enough try and contact the
customer
–  Contact emergency services if required
–  Arrange for your preferred recovery/repairers to
deal with the incident reducing the claim costs
–  Perception bonus – My insurance company
really cares for me!

26 November 2013

http://datamgmt.com

23
Theft & Fraud
•  Theft
–  Device is always tracking so if a vehicle is
reported stolen it can traced and recovery action

•  Fraud
–  Fraud rings may fake traffic accidents or stage
collisions to make false insurance or
exaggerated claims
–  Many of the details can now be validated
(location, weather, speed, collision, etc.)
26 November 2013

http://datamgmt.com

24
Risk Profiling
•  What combination of attributes for both a
driver and a vehicle have the lowest total
claim value per 100,000 miles driven?
•  Are a larger number of small claims more
expensive than a smaller number of large
claims?
•  Statistical Cluster Analysis techniques to
determine high and low risk proposals
26 November 2013

http://datamgmt.com

25
Customer Behaviour
•  Football Supporter
–  Regularly goes to home ground
–  Do they go to away matches too?

•  Business Traveller
–  Regularly leaves car at airport parking

•  School Run
–  To and from home to local school twice a day

•  Change of job
–  Changes location of daily commute parking

•  This information can (with permission) be sold to third parties
–  Marketing companies, Football clubs, etc.
–  These techniques are already being used by some mobile
companies
26 November 2013

http://datamgmt.com

26
Security Services
•  Fact Of Life
•  Courts will order access to data if someone
is under suspicion
–  Anti-Terrorism, Organised Crime, etc.

•  Data will be used after an event to track
–  Where did they travel from
–  Who did they visit before the act
–  etc.
26 November 2013

http://datamgmt.com

27
The Future
•  Pay As You Go Road Usage Pricing
–  Governments requiring cars to be fitted with
telematics and road usage data sent to them

•  Reduced Premiums & Higher Profits
–  If all cars have telematics then low risk
customers will not be used to subsidise high risk
customers – some of this benefit is passed on to
the consumer by way of lower premium and
some is retained by the insurance company
26 November 2013

http://datamgmt.com

28
An Observation
•  Some of the evidence from telematics is
either counter-intuitive or goes against what
the underwriters ‘know’ is right
•  Getting business users to use the data and
adjust the way they rate risk is difficult
•  If you make changes to how risk is rated you
have to track the effect of the changes
26 November 2013

http://datamgmt.com

29
Who’s doing this in the UK ?

26 November 2013

http://datamgmt.com

30
Have a play …
•  InstaMapper GPS Tracker
–  http://www.insta-mapper.com
–  iPhone & Android App
–  Gives GPS but not accelerometer data

•  Other applications are available but this is
the one I used for the Proof of Concept work

26 November 2013

http://datamgmt.com

31
David M Walker
Data Management & Warehousing

THANK YOU

26 November 2013

http://datamgmt.com

32
Contact Us
•  Data Management & Warehousing
–  Website: http://www.datamgmt.com
–  Telephone: +44 (0) 118 321 5930

•  David Walker
–  E-Mail: davidw@datamgmt.com
–  Telephone: +44 (0) 7990 594 372
–  Skype: datamgmt
–  White Papers: http://scribd.com/davidmwalker
26 November 2013

http://datamgmt.com

33
About Us
Data Management & Warehousing is a UK based consultancy that
has been delivering successful business intelligence and data
warehousing solutions since 1995.
Our consultants have worked with major corporations around the
world including the US, Europe, Africa and the Middle East.
We have worked in many industry sectors such as telcos,
manufacturing, retail, financial and transport. We provide
governance and project management as well as expertise in the
leading technologies.
In The Netherlands Data Management & Warehousing works in
partnership with DeltIQ Group.

26 November 2013

http://datamgmt.com

34
Data Driven Insurance Underwriting

David M Walker
Data Management & Warehousing
http://datamgmt.com

THANK YOU

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Data Driven Insurance Underwriting

  • 1. Data Driven Insurance Underwriting David M Walker Data Management & Warehousing http://datamgmt.com 26 November 2013
  • 2. What happens when you add a little black box to a car? •  This small box can be fitted to a car in about an hour •  A basic model collects the following info: –  Longitude, Latitude & Altitude –  X, Y & Z Acceleration –  Speed –  Direction of travel –  Distance travelled since last report –  Box Identifier –  Date & Time 26 November 2013 http://datamgmt.com 2
  • 3. On device collection of data in a Round Robin Database •  A Round Robin Database or Circular Buffer records the data regularly (e.g. milliseconds) •  After a time interval or a distance travelled an aggregate report is sent to the server (Usage Reports) –  Usage reports can be separately buffered if there is no data transmission signal •  If a crash occurs the entire content of the buffer is sent to the server (Crash Reports) 26 November 2013 http://datamgmt.com 3
  • 4. Sending Data Home 1.  Black  Box  sends  data  to  central  colla1ng   server(s)  over  mobile  data  networks   2.  Colla1ng  server(s)  send  data     files  to  MMP  Analy1cal  Server   Geo   Info   Under-­‐ wri1ng   Claims   ERP     CRM 26 November 2013 3.  Supplement  the  data  with  informa1on   from  the  opera1onal  systems  and   external  data  sources   http://datamgmt.com 4
  • 5. Usage Reports •  In town driving typically generates more time limited reports –  Short distances driven in slow traffic –  Typically every 15 seconds •  Motorway driving typically generates more distance limited reports –  Long Distances driven at high speed –  Typically every 1 km •  Trips are defined as ignition start to ignition stop •  Usage reports describe the driving behaviour 26 November 2013 http://datamgmt.com 5
  • 6. Crash Reports •  How was the driver driving immediately prior to the crash? •  Where did the impact come from? –  X, Y & Z Acceleration determine point of impact •  negative acceleration on the front – you hit them •  positive acceleration on the back – they hit you •  Crash reports are used to help determine fault 26 November 2013 http://datamgmt.com 6
  • 7. Basic Data Model Social  Media   Policy  Holders   Drivers   Policies   Policy  Holder   Underwri1ng   Data   Driver   Underwri1ng   Data   Vehicles   Geographic     Layer   Informa1on   Claims   Data   Points   Crashes   26 November 2013 Trips   http://datamgmt.com 7
  • 8. Data Volumes •  88 – 290 Bytes Per Data Point –  Depends on the type of Black Box •  124 Data Points per Trip on average •  81 Trips per Month per Vehicle •  Retained over 5 years –  ~ 165 Mb per customer –  ~ 1 Tb per 7000 customers –  ~ 15 Tb for 100,000 customers •  All the rest is insignificant –  Policies, claims, reference data, etc. becomes insignificant in comparison to trip data 26 November 2013 http://datamgmt.com 8
  • 9. Data Collected At Quote Time •  Vehicle –  Make, Model, Engine Size, Alarm, Modifications, #Seats, Where kept (Day & Night), Use (Social, Domestic, Commuting, etc.), Annual Mileage •  Policy Holder & Other Drivers –  Address, Age, Gender§, Marital Status, #Children, Other Vehicles, Employment Status, Occupation, Industry, Residency, Previous Claims & Convictions, Licence Type & Additional Qualifications, Medical Conditions §Gender  prohibited  as  ra1ng  factor  by  European  Court  of  Jus1ce  aTer  21st  December  2012   26 November 2013 http://datamgmt.com 9
  • 10. Data Collected At Claim Time •  •  •  •  •  •  •  •  •  •  •  Type of Incident Location of Incident Weather Other Parties Involved Types of Vehicles Involved Injuries Damage to vehicles Damage to third parties and property Police Involvement Description of the incident Photographs and Sketches 26 November 2013 http://datamgmt.com 10
  • 11. Data Collected about Geography •  Commercial & Government Sources –  Road Name, Road Type, Speed Restrictions –  Average Speed by Road, by Day, by Day of Week and by Time of Day –  Points of Interest •  Supermarkets, Petrol Stations, Car Parks, Theme Parks, Sports Stadiums, etc. –  Meteorological Information •  Rainfall, Temperature, Sunrise/Sunset Times •  Open Sources –  Wikipedia –  Google/Bing/Apple Maps 26 November 2013 http://datamgmt.com 11
  • 12. Data Collected from Social Media •  Customer ‘Likes’ the insurance company on Facebook –  “Wow - just got a great deal on my car insurance” •  Customer chats to their friends –  “Just had a bump in my car, going to try and get them for whiplash too!” •  Yes – people really are that stupid! 26 November 2013 http://datamgmt.com 12
  • 13. Advanced Data Collection •  More sensors in the little black box •  Vehicle Interface Modules (VIMs) –  Provide an interface between a vehicle's on-board diagnostics link (e.g. OBD II) and the black box –  Depending on the vehicle this provides access to data such as oil/water/tyre pressures, time since last service, car dashboard warning lights that are on, ABS usage, airbag deployment, was the Bluetooth active, lights on/off, windscreen wipers on/off etc. 26 November 2013 http://datamgmt.com 13
  • 14. A Note On Data Privacy •  Data Protection & Privacy Laws –  These vary by country so just how much you can use of what you could collect will also vary •  You can’t use all the data anyway –  European Court of Justice banned insurance companies from using gender as a rating factor after 21st December 2012 •  Opt-in/Opt-out data usages –  It is also possible, with permission, to resell individual and aggregate information to third parties 26 November 2013 http://datamgmt.com 14
  • 15. Creating an Insurance Offering •  Offerings are typically designed a lot like ‘Pay As You Go’ Mobile contracts –  Fixed element – covers the device cost, administrative aspects, etc. –  Usage (Risk) element – price per km driven, with different rates for different levels of service •  e.g. driving in the rush hour or the dark carries a higher price than driving off-peak in daylight –  Usage bundles – First 500 km included per month •  Requires top-up once they are all used up otherwise you are not insured to drive – normally auto debited from a credit card 26 November 2013 http://datamgmt.com 15
  • 16. Unexpected Consequences •  Driver behaviour is modified but this may not deliver the expected results hVp://www.dailymail.co.uk/news/ar1cle-­‐2359150/Teenage-­‐driver-­‐passenger-­‐died-­‐broke-­‐limit-­‐beat-­‐11pm-­‐insurance-­‐curfew.html   26 November 2013 http://datamgmt.com 16
  • 17. New Business & Renewal Quotations •  Year 1 Underwriting –  New policy prices based on traditional (nontelematics) underwriting scores –  No renewals •  Year 2+ Underwriting –  New policy prices based on data about existing customers and vehicles with similar profiles –  Renewals based on the individual risk profile 26 November 2013 http://datamgmt.com 17
  • 18. (Dis)-Incentivising •  Carrots –  Bonus miles for driving within speed limits, in daylight, off-peak, good weather, parking offroad, etc. •  Sticks –  Increased cost per km for persistent speeding, regular hard braking (detected from accelerometer), etc. –  Note: Penalising customers too hard will force them to move away and have a reputational impact 26 November 2013 http://datamgmt.com 18
  • 19. So what does the data show? •  •  •  •  •  •  •  Driving Behaviours Policy Compliance Claim Assessment First Responder Theft & Fraud Risk Profiling Customer Behaviours 26 November 2013 http://datamgmt.com 19
  • 20. Driving Behaviours •  Does a person driving follow speed limits? –  Average speed as a percentage of the speed limit by roadtype, user and between dates •  Does the person regularly brake hard? –  # of negative X-Accerations by 1000 miles driven by roadtype, user and between dates •  Does the person drive unduly long hours? –  Number of trips longer than X hours –  Number of minutes break between trips 26 November 2013 http://datamgmt.com 20
  • 21. Policy Compliance •  Total number of miles driven •  Is a vehicle registered for Social, Domestic & Pleasure being used for commuting or business –  Regularly driving between A and B in the morning and between B and A in the evening •  Location where the car is parked over night –  Usually at a point near the policy holders address or somewhere completely different •  Taxi & Delivery Drivers –  Don’t buy a commercial policy but can be spotted by their driving patters 26 November 2013 http://datamgmt.com 21
  • 22. Claim Assessment •  When a claim is made the details can be verified –  Location of accident – even have a look at it on Google Maps –  Point of collision and who hit whom –  Weather, Amount of Light –  Speed and G Forces at time of impact –  Did the vehicle roll? 26 November 2013 http://datamgmt.com 22
  • 23. First Responder •  When an accident occurs: –  If it is severe enough try and contact the customer –  Contact emergency services if required –  Arrange for your preferred recovery/repairers to deal with the incident reducing the claim costs –  Perception bonus – My insurance company really cares for me! 26 November 2013 http://datamgmt.com 23
  • 24. Theft & Fraud •  Theft –  Device is always tracking so if a vehicle is reported stolen it can traced and recovery action •  Fraud –  Fraud rings may fake traffic accidents or stage collisions to make false insurance or exaggerated claims –  Many of the details can now be validated (location, weather, speed, collision, etc.) 26 November 2013 http://datamgmt.com 24
  • 25. Risk Profiling •  What combination of attributes for both a driver and a vehicle have the lowest total claim value per 100,000 miles driven? •  Are a larger number of small claims more expensive than a smaller number of large claims? •  Statistical Cluster Analysis techniques to determine high and low risk proposals 26 November 2013 http://datamgmt.com 25
  • 26. Customer Behaviour •  Football Supporter –  Regularly goes to home ground –  Do they go to away matches too? •  Business Traveller –  Regularly leaves car at airport parking •  School Run –  To and from home to local school twice a day •  Change of job –  Changes location of daily commute parking •  This information can (with permission) be sold to third parties –  Marketing companies, Football clubs, etc. –  These techniques are already being used by some mobile companies 26 November 2013 http://datamgmt.com 26
  • 27. Security Services •  Fact Of Life •  Courts will order access to data if someone is under suspicion –  Anti-Terrorism, Organised Crime, etc. •  Data will be used after an event to track –  Where did they travel from –  Who did they visit before the act –  etc. 26 November 2013 http://datamgmt.com 27
  • 28. The Future •  Pay As You Go Road Usage Pricing –  Governments requiring cars to be fitted with telematics and road usage data sent to them •  Reduced Premiums & Higher Profits –  If all cars have telematics then low risk customers will not be used to subsidise high risk customers – some of this benefit is passed on to the consumer by way of lower premium and some is retained by the insurance company 26 November 2013 http://datamgmt.com 28
  • 29. An Observation •  Some of the evidence from telematics is either counter-intuitive or goes against what the underwriters ‘know’ is right •  Getting business users to use the data and adjust the way they rate risk is difficult •  If you make changes to how risk is rated you have to track the effect of the changes 26 November 2013 http://datamgmt.com 29
  • 30. Who’s doing this in the UK ? 26 November 2013 http://datamgmt.com 30
  • 31. Have a play … •  InstaMapper GPS Tracker –  http://www.insta-mapper.com –  iPhone & Android App –  Gives GPS but not accelerometer data •  Other applications are available but this is the one I used for the Proof of Concept work 26 November 2013 http://datamgmt.com 31
  • 32. David M Walker Data Management & Warehousing THANK YOU 26 November 2013 http://datamgmt.com 32
  • 33. Contact Us •  Data Management & Warehousing –  Website: http://www.datamgmt.com –  Telephone: +44 (0) 118 321 5930 •  David Walker –  E-Mail: davidw@datamgmt.com –  Telephone: +44 (0) 7990 594 372 –  Skype: datamgmt –  White Papers: http://scribd.com/davidmwalker 26 November 2013 http://datamgmt.com 33
  • 34. About Us Data Management & Warehousing is a UK based consultancy that has been delivering successful business intelligence and data warehousing solutions since 1995. Our consultants have worked with major corporations around the world including the US, Europe, Africa and the Middle East. We have worked in many industry sectors such as telcos, manufacturing, retail, financial and transport. We provide governance and project management as well as expertise in the leading technologies. In The Netherlands Data Management & Warehousing works in partnership with DeltIQ Group. 26 November 2013 http://datamgmt.com 34
  • 35. Data Driven Insurance Underwriting David M Walker Data Management & Warehousing http://datamgmt.com THANK YOU