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The Proliferation of Data: Finding 
Meaning Amidst the Noise
2 
Big Data = Transactions + Interactions + Observations 
The Proliferation of Data 
Transactional– Informational – Behavioral - Environmental
So this is “Big”? 
The Proliferation of Data 
• Data availability and accumulation is accelerating in form and content 
3 
Ø Variety: not just text and fax 
q Images, blogs, telemetrics , social media, affiliation cards, etc. 
q Integration of all interactions into “Warehouses” 
Ø Volume: there is a lot of it 
• More sources, more data, and the sources are like waterfalls vs trickles 
• Increased collection of internal transaction and contact information 
Ø Velocity: rate of change is accelerating 
q More sources, more data, more churning 
q Real-time sources like telemetrics and social media 
• Two attributes of “Big Data” describe usefulness 
Ø Veracity: When does “good enough” become “garbage” 
Ø Value: Finally, the real question – what data is adding meaningful value
4 
Big Data Solutions Landscape Crowded and Diverse 
The Proliferation of Data
“Exaponential” Growth in Data 
5 
On the Internet, every 60 Seconds adds… 
Ø 168 million+ emails sent 
Ø 1.2 million+ Facebook posts 
Ø 690,000+ Google searches 
Ø 370,000+ minutes of calls on Skype 
Ø 98,000 tweets on Twitter 
Ø 20,000 new posts on Tumbler 
Ø 13,000 IPhone apps downloaded 
Source: go-globe.com 
Ø 13,000+ hours Pandora music streamed 
Ø 6,600+ pictures uploaded on Flickr 
Ø 1,200+ new Craigslist ads 
Ø 600+ videos are uploaded on YouTube 
Ø 100+ questions asked on Answers.com 
Ø 100 accounts created on LinkedIn 
Ø 30 new domains are registered 
One Exabyte = 
10 to the 18th 
ONE THOUSAND PETABYTES 
ONE MILLION TERABYTES 
ONE BILLION GIGABYTES 
The Proliferation of Data
6 
The Proliferation of Data 
Growth in Data is Personal…Private…Social 
Privacy and security needs 
intensified by personal nature 
of data 
Cyberinsurance huge market 
Data “ownership” untested 
• Data Theft / Loss 
• Legacy Complications 
• Collection Complexity 
• Interpretation Issues 
• Error Exposures 
• Costs (Collect/Scrub)
Social Media Landscape Crowded…Huge Data Source 
7 
The Proliferation of Data
Social Media a Double-Edged Sword 
Key Issues 
• Understand if/when/how your customers & potential customers are using it 
• Messaging and themes should be integrated across media platforms 
• Customers and noncustomers are empowered to say what they want, it is a free-for-all 
• It takes qualified and dedicated staff and time to be effective 
• Senior executive sponsorship and full support is critical 
Risks to be managed 
• Regulatory considerations – what you don’t know can hurt you 
• Uncontrolled risks – agents and employees, at work and at home, impact company 
• Power shift to Consumer – their voice is being heard whether or not you are listening 
Operational Considerations 
• Exposure assessment: where are all the uses, agent practices, reputational damage 
• Competitive scan: what are the Best Practices, how are competitors positioned 
• Strategy development: which, where, when, and how much; staffing & process changes 
• Process integration: marketing, underwriting, claims, customer service 
• Implementation planning: steps, staffing, governance, metrics 
8 
Finding Meaning Amidst the Noise
Telemetrics (like UBI) Another Huge Source of Data 
9 
§ UBI opened door 
§ Health Information rapid source of growth 
§ New Markets like Wearables 
§ Product Differentiation 
§ Pricing Accuracy 
§ Makes Sense, Controllable 
§ Minimize Hard to Understand Factors (credit) 
Inactive 
23% 
Exploring 
17% 
Implemented 
60% 
UBI sales expected to grow from $50M in 
2011 to approximately $2.6B by 2015. 
The Proliferation of Data
UBI is “Big Deal” – Implications? 
Key Issues 
• Too many devices, not enough standards – which to pick and why? Vendor viability? 
• More and more data – how is it scrubbed and integrated into existing data? Supplemented? 
• Large and complex investment, works across silo’s and requires extensive collaboration 
• It takes qualified and dedicated staff and time to be effective 
• Legacy systems and redundant dirty data remain an issue 
Risks to be managed 
• Regulatory considerations? Mandated restrictions that create complexity, data risks 
• What about privacy? Discoverability for nonrelated trials, consumer opinions over time 
§ Diminished risk pooling? As use grows, disparity between risk classes will grow 
§ Competitiveness? If more poor drivers, will non-UBI be able to pool risks to larger market 
Operational Considerations 
§ System selection process: vendor evaluation and assessment require discipline 
§ Enterprise wide project management: PMO style oversight and coordination 
§ Introduction impacts processes in operations: redesign and optimization efforts to integrate 
10 
The Proliferation of Data
Add Demographic Shifts 
11 
Finding Meaning Amidst the Noise 
Five Generations of Consumers, Large New Wave Coming 
(% of Total Population) 
Increasing Ethnic Diversity 
The Digital Generations 
- powerful consumers 
High Tech Low Tech 
• Pricing Differentiation 
• Total Value 
• Risk Identification 
• Service Insights 
• Immediate Response 
• Retention / Loyalty 
• Market Sentiment 
• Fraud Detection
Finding Meaning Amidst the Noise 
Understand Changes in Service Expectations and Strategies 
Increasing Customer Expectations 
Company’s Areas of Focus 
12 
• Immediacy / 24x7 access 
• Transparency 
• Personal service relationships 
• Language differences 
• Benchmarking performance within and outside the industry 
Expanding Accessibility 100% 
Accelerating Service Delivery 96% 
Increasing Hours and Days of Service Availability 82% 
Creating Different Levels of Customer Service 63% 
Aligning Operations with Customer Markets 63%
“Big Data” + Analytics = Customer Awareness 
Getting to Information from Big Data Requires: 
• A “Value” filter has got to start being applied against volume and variety 
• “Veracity”, or quality, is going to have to improve: TMI + GIGO = FAIL 
• Data is meaningless without people who understand what it means (same with analytics) 
• This is going to be an area filled with lessons learned, probably more so than any other 
The Personal Nature of the Data Brings New Risks 
• Regulatory issues – collection methods can become illegal overnight 
• Privacy issues and exposure risk are all dynamic unknowns 
• Sources can change their technologies, accessibility, fees, structure 
• Externally gained date from vendor controlled domains create dependencies 
• GIGO + TMI = FAIL 
Operational Considerations – Key Factors in Getting Value from Big Data 
• Value analysis of what data contributes to the business 
• Governance and process design and monitoring 
• Quality control practices and measures 
• Typical implementation in an extremely high risk area 
• Bringing ability to ensure business understanding is incorporated into “Big Data” projects 
13 
Finding Meaning Amidst the Noise
Leads to Evolving Service Delivery Model 
14 
One Size Fits All 
§ Same service for all segments 
§ Over invest in some, under invest in 
others 
§ One model to manage across lines 
and customers 
§ Differentiation at company level 
based on brand or channel 
§ Easier to match capabilities, one 
target to work with 
Finding Meaning Amidst the Noise 
Individualized Service 
§ Segmented customer needs and 
economic value 
§ Investment in service aligned with 
need/value tradeoff 
§ Service differentiation varies by 
segment based on value 
§ More models to manage, more 
challenging 
§ Delivery is people based, harder to 
replicate
Technology Initiatives Continue to Face Challenges 
- 5 of top 6 challenges are people issues (availability, expertise) 
- The other one is budget, the place where people needs solved 
15 
$ 
Finding Meaning Amidst the Noise
Finding Meaning Amidst the Noise 
Operationalizing New Data and Tools Requires Solid Foundation 
1. Best Practice Driven Transaction Processing Systems 
16 
‒ Modular replacement if necessary; stepwise, wrap, LOB, or Bang 
‒ Integrated and adaptable business rules, distributable (n-tier) 
‒ Data adaptability, integrity/quality and accessibility 
2. Multi-faceted Analytics 
Ø Straddle pricing + marketing + underwriting + servicing + claims + external data 
Ø Integrated across functions 
Ø From workflow to predictive modeling, key to loss management 
3. Empowered Accessibility 
Ø Customer and agents apps for self-service, data capture, personalization 
Ø Enterprise-wide standardized views and definitions
Execution Excellence Based on Three Guiding Principles 
1. Have an executive sponsored roadmap that clearly outlines. 
§ What resources will be needed for how long, 
§ Where, when, and how will analytics enhance process and awareness, 
§ Which tools will be used, and 
§ How will success be measured. 
2. Use data that is comprehensive, accurate, and current. 
§ Not necessarily 100%, some have used only 70% 
§ Must be representative. 
3. Staff with talented and engaged people. 
§ Completely understand business problem and are proficient with data. 
§ Strength depends on team not individual – business and tool experts 
§ Inquisitive and constantly challenging assumptions and perceived “givens” 
17 
Finding Meaning Amidst the Noise
Steve Callahan 
Practice Director 
Steve_Callahan@renolan.com 
Chad Hersh 
Senior Vice President 
chersh@renolan.com 
512.491.7560

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20140826 I&T Webinar_The Proliferation of Data - Finding Meaning Amidst the Noise

  • 1. The Proliferation of Data: Finding Meaning Amidst the Noise
  • 2. 2 Big Data = Transactions + Interactions + Observations The Proliferation of Data Transactional– Informational – Behavioral - Environmental
  • 3. So this is “Big”? The Proliferation of Data • Data availability and accumulation is accelerating in form and content 3 Ø Variety: not just text and fax q Images, blogs, telemetrics , social media, affiliation cards, etc. q Integration of all interactions into “Warehouses” Ø Volume: there is a lot of it • More sources, more data, and the sources are like waterfalls vs trickles • Increased collection of internal transaction and contact information Ø Velocity: rate of change is accelerating q More sources, more data, more churning q Real-time sources like telemetrics and social media • Two attributes of “Big Data” describe usefulness Ø Veracity: When does “good enough” become “garbage” Ø Value: Finally, the real question – what data is adding meaningful value
  • 4. 4 Big Data Solutions Landscape Crowded and Diverse The Proliferation of Data
  • 5. “Exaponential” Growth in Data 5 On the Internet, every 60 Seconds adds… Ø 168 million+ emails sent Ø 1.2 million+ Facebook posts Ø 690,000+ Google searches Ø 370,000+ minutes of calls on Skype Ø 98,000 tweets on Twitter Ø 20,000 new posts on Tumbler Ø 13,000 IPhone apps downloaded Source: go-globe.com Ø 13,000+ hours Pandora music streamed Ø 6,600+ pictures uploaded on Flickr Ø 1,200+ new Craigslist ads Ø 600+ videos are uploaded on YouTube Ø 100+ questions asked on Answers.com Ø 100 accounts created on LinkedIn Ø 30 new domains are registered One Exabyte = 10 to the 18th ONE THOUSAND PETABYTES ONE MILLION TERABYTES ONE BILLION GIGABYTES The Proliferation of Data
  • 6. 6 The Proliferation of Data Growth in Data is Personal…Private…Social Privacy and security needs intensified by personal nature of data Cyberinsurance huge market Data “ownership” untested • Data Theft / Loss • Legacy Complications • Collection Complexity • Interpretation Issues • Error Exposures • Costs (Collect/Scrub)
  • 7. Social Media Landscape Crowded…Huge Data Source 7 The Proliferation of Data
  • 8. Social Media a Double-Edged Sword Key Issues • Understand if/when/how your customers & potential customers are using it • Messaging and themes should be integrated across media platforms • Customers and noncustomers are empowered to say what they want, it is a free-for-all • It takes qualified and dedicated staff and time to be effective • Senior executive sponsorship and full support is critical Risks to be managed • Regulatory considerations – what you don’t know can hurt you • Uncontrolled risks – agents and employees, at work and at home, impact company • Power shift to Consumer – their voice is being heard whether or not you are listening Operational Considerations • Exposure assessment: where are all the uses, agent practices, reputational damage • Competitive scan: what are the Best Practices, how are competitors positioned • Strategy development: which, where, when, and how much; staffing & process changes • Process integration: marketing, underwriting, claims, customer service • Implementation planning: steps, staffing, governance, metrics 8 Finding Meaning Amidst the Noise
  • 9. Telemetrics (like UBI) Another Huge Source of Data 9 § UBI opened door § Health Information rapid source of growth § New Markets like Wearables § Product Differentiation § Pricing Accuracy § Makes Sense, Controllable § Minimize Hard to Understand Factors (credit) Inactive 23% Exploring 17% Implemented 60% UBI sales expected to grow from $50M in 2011 to approximately $2.6B by 2015. The Proliferation of Data
  • 10. UBI is “Big Deal” – Implications? Key Issues • Too many devices, not enough standards – which to pick and why? Vendor viability? • More and more data – how is it scrubbed and integrated into existing data? Supplemented? • Large and complex investment, works across silo’s and requires extensive collaboration • It takes qualified and dedicated staff and time to be effective • Legacy systems and redundant dirty data remain an issue Risks to be managed • Regulatory considerations? Mandated restrictions that create complexity, data risks • What about privacy? Discoverability for nonrelated trials, consumer opinions over time § Diminished risk pooling? As use grows, disparity between risk classes will grow § Competitiveness? If more poor drivers, will non-UBI be able to pool risks to larger market Operational Considerations § System selection process: vendor evaluation and assessment require discipline § Enterprise wide project management: PMO style oversight and coordination § Introduction impacts processes in operations: redesign and optimization efforts to integrate 10 The Proliferation of Data
  • 11. Add Demographic Shifts 11 Finding Meaning Amidst the Noise Five Generations of Consumers, Large New Wave Coming (% of Total Population) Increasing Ethnic Diversity The Digital Generations - powerful consumers High Tech Low Tech • Pricing Differentiation • Total Value • Risk Identification • Service Insights • Immediate Response • Retention / Loyalty • Market Sentiment • Fraud Detection
  • 12. Finding Meaning Amidst the Noise Understand Changes in Service Expectations and Strategies Increasing Customer Expectations Company’s Areas of Focus 12 • Immediacy / 24x7 access • Transparency • Personal service relationships • Language differences • Benchmarking performance within and outside the industry Expanding Accessibility 100% Accelerating Service Delivery 96% Increasing Hours and Days of Service Availability 82% Creating Different Levels of Customer Service 63% Aligning Operations with Customer Markets 63%
  • 13. “Big Data” + Analytics = Customer Awareness Getting to Information from Big Data Requires: • A “Value” filter has got to start being applied against volume and variety • “Veracity”, or quality, is going to have to improve: TMI + GIGO = FAIL • Data is meaningless without people who understand what it means (same with analytics) • This is going to be an area filled with lessons learned, probably more so than any other The Personal Nature of the Data Brings New Risks • Regulatory issues – collection methods can become illegal overnight • Privacy issues and exposure risk are all dynamic unknowns • Sources can change their technologies, accessibility, fees, structure • Externally gained date from vendor controlled domains create dependencies • GIGO + TMI = FAIL Operational Considerations – Key Factors in Getting Value from Big Data • Value analysis of what data contributes to the business • Governance and process design and monitoring • Quality control practices and measures • Typical implementation in an extremely high risk area • Bringing ability to ensure business understanding is incorporated into “Big Data” projects 13 Finding Meaning Amidst the Noise
  • 14. Leads to Evolving Service Delivery Model 14 One Size Fits All § Same service for all segments § Over invest in some, under invest in others § One model to manage across lines and customers § Differentiation at company level based on brand or channel § Easier to match capabilities, one target to work with Finding Meaning Amidst the Noise Individualized Service § Segmented customer needs and economic value § Investment in service aligned with need/value tradeoff § Service differentiation varies by segment based on value § More models to manage, more challenging § Delivery is people based, harder to replicate
  • 15. Technology Initiatives Continue to Face Challenges - 5 of top 6 challenges are people issues (availability, expertise) - The other one is budget, the place where people needs solved 15 $ Finding Meaning Amidst the Noise
  • 16. Finding Meaning Amidst the Noise Operationalizing New Data and Tools Requires Solid Foundation 1. Best Practice Driven Transaction Processing Systems 16 ‒ Modular replacement if necessary; stepwise, wrap, LOB, or Bang ‒ Integrated and adaptable business rules, distributable (n-tier) ‒ Data adaptability, integrity/quality and accessibility 2. Multi-faceted Analytics Ø Straddle pricing + marketing + underwriting + servicing + claims + external data Ø Integrated across functions Ø From workflow to predictive modeling, key to loss management 3. Empowered Accessibility Ø Customer and agents apps for self-service, data capture, personalization Ø Enterprise-wide standardized views and definitions
  • 17. Execution Excellence Based on Three Guiding Principles 1. Have an executive sponsored roadmap that clearly outlines. § What resources will be needed for how long, § Where, when, and how will analytics enhance process and awareness, § Which tools will be used, and § How will success be measured. 2. Use data that is comprehensive, accurate, and current. § Not necessarily 100%, some have used only 70% § Must be representative. 3. Staff with talented and engaged people. § Completely understand business problem and are proficient with data. § Strength depends on team not individual – business and tool experts § Inquisitive and constantly challenging assumptions and perceived “givens” 17 Finding Meaning Amidst the Noise
  • 18. Steve Callahan Practice Director Steve_Callahan@renolan.com Chad Hersh Senior Vice President chersh@renolan.com 512.491.7560