SlideShare una empresa de Scribd logo
1 de 14
Descargar para leer sin conexión
esimoudis@tridentcap.com	
  
blog.tridentcap.com	
  
@esimoudis	
  

Investing in High Impact
Big Data Solutions
Evangelos	
  Simoudis,	
  Ph.D.	
  
Senior	
  Managing	
  Director	
  
My Journey through the Data World

’80s

’00s

’90s

’10s

2
Big Data is a Big Deal

Log files

Text
Weather,
GPS

By creating actionable insights from big data we can
solve many important problems
3
While industries differ in their ability to obtain value
from big data …

4
… important Big Data Applications can be
developed in many of them
§  Healthcare: Outcomes analysis, cost containment
§  Pharmaceutical: Customized drug treatments
§  Financial Services: Fraud detection
§  Transportation and Logistics: Fleet optimization for fuel efficiency
§  Travel: Channel management
§  Energy: Yield management
§  Automotive: Supply chain optimization
§  CPG: Real-time consumer understanding
§  Retail: Real-time marketing across devices and channels

5
10 Steps for Working with Big Data
Step 1

•  Defining the problem

Step 2

•  Determine the data to use (private and public)

Step 3

•  Identify the data sources

Step 4

•  Integrate the data

Step 5

•  Clean the data

Step 6

•  Create information-rich data sets

Step 7

•  Model/Analyze the data

Step 8

•  Experiment/present results

Step 9

•  Identify actionable insights

Step 10

•  Disseminate the results
6
Solving Big Data problems involves more that data
scientists

Data

Connector/
Translator
Problem
definition

Insights & Actions

Business user

Problem

70% of work
Patterns

Data scientist
30% of work

7
While we are falling behind in training enough data
scientists to meet our projected needs …

… we are falling even further behind in training business
people with deep analytic skills
8
We can ultimately lose the battle with the big data
we are generating and collecting unless we can
better leverage the expertise we are developing

9
We are good at harnessing the basic ingredients

10
Venture investments to date reflect this emphasis
Step 1

•  Defining the problem

Step 2

•  Determine the data to use (private and public)

Step 3

•  Identify the data sources

Step 4

•  Integrate the data

Step 5

•  Clean the data

Step 6

•  Create information-rich data sets

Step 7

•  Model/Analyze the data

Step 8

•  Experiment/present results

Step 9

•  Identify actionable insights

Step 10

•  Disseminate the results
= amount invested

= value derived

11
New investments must be able to provide better
leverage of Connectors and Data Scientists

Connector/
Translator

Insight generation
system

Data scientist

Insights
&
Actions
Business user
20% of work

50% of work

30% of work

12
For this reason Trident Capital has been investing in
big data scalable, vertical applications that
generate actionable insights
§  Healthcare: cost containment
§  Transportation and Logistics: Fleet optimization
§  Energy: Yield management
§  Multi-industry: multi-channel customer lifecycle management

Mobile	


Attract	

Vertical	


Capture	


Analytics	


Nurture	

Convert	


Big	

Data	


Retain	


Advocate	

13
Summary
1.  Big data is a big deal because it can be used to
address many important problems
2.  Current approaches aren’t scalable and take to long
to actionable insights
3.  Venture investments in big data must shift to areas of
higher impact and value
4.  Trident Capital has been investing in big data
applications that provide faster path to value and
high ROI

14

Más contenido relacionado

La actualidad más candente

11.b. valtonen financing and accelerators for hg fs in finland_rev
11.b. valtonen financing and accelerators for hg fs in finland_rev11.b. valtonen financing and accelerators for hg fs in finland_rev
11.b. valtonen financing and accelerators for hg fs in finland_rev
OECD CFE
 
Screening Venture Opportunities 2010
Screening Venture Opportunities 2010Screening Venture Opportunities 2010
Screening Venture Opportunities 2010
Jan Bendtsen
 
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
Quantopian
 
FoHF Liquidity - Nov 2008
FoHF Liquidity - Nov 2008FoHF Liquidity - Nov 2008
FoHF Liquidity - Nov 2008
Drago Indjic
 
English Adkit Banking 2010
English     Adkit Banking 2010English     Adkit Banking 2010
English Adkit Banking 2010
morkad8
 
Investing Principles For Mutual Fund And Stock Investors
Investing Principles For Mutual Fund And Stock InvestorsInvesting Principles For Mutual Fund And Stock Investors
Investing Principles For Mutual Fund And Stock Investors
wbbissett
 

La actualidad más candente (20)

Sharing by the Asia’s First Accelerator for AI Startups
Sharing by the Asia’s First Accelerator for AI StartupsSharing by the Asia’s First Accelerator for AI Startups
Sharing by the Asia’s First Accelerator for AI Startups
 
Crowd-sourced Alpha: The Search for the Holy Grail of Investing
 Crowd-sourced Alpha: The Search for the Holy Grail of Investing Crowd-sourced Alpha: The Search for the Holy Grail of Investing
Crowd-sourced Alpha: The Search for the Holy Grail of Investing
 
The Fundable Startup | Fred M. Haney | Lunch & Learn
The Fundable Startup | Fred M. Haney | Lunch & LearnThe Fundable Startup | Fred M. Haney | Lunch & Learn
The Fundable Startup | Fred M. Haney | Lunch & Learn
 
How do HK-based Startup Succeed in Foreign Market
How do HK-based Startup Succeed in Foreign MarketHow do HK-based Startup Succeed in Foreign Market
How do HK-based Startup Succeed in Foreign Market
 
11.b. valtonen financing and accelerators for hg fs in finland_rev
11.b. valtonen financing and accelerators for hg fs in finland_rev11.b. valtonen financing and accelerators for hg fs in finland_rev
11.b. valtonen financing and accelerators for hg fs in finland_rev
 
Investment management
Investment managementInvestment management
Investment management
 
Screening Venture Opportunities 2010
Screening Venture Opportunities 2010Screening Venture Opportunities 2010
Screening Venture Opportunities 2010
 
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
Self-Directed Investing by Akhil Lodha, Co-founder of Sliced Investing, and M...
 
FoHF Liquidity - Nov 2008
FoHF Liquidity - Nov 2008FoHF Liquidity - Nov 2008
FoHF Liquidity - Nov 2008
 
Introduction to Hedge Funds - Data
Introduction to Hedge Funds - DataIntroduction to Hedge Funds - Data
Introduction to Hedge Funds - Data
 
English Adkit Banking 2010
English     Adkit Banking 2010English     Adkit Banking 2010
English Adkit Banking 2010
 
Spotcap hiring at TechStartupJobs Fair Berlin Spring 2015
Spotcap hiring at TechStartupJobs Fair Berlin Spring 2015Spotcap hiring at TechStartupJobs Fair Berlin Spring 2015
Spotcap hiring at TechStartupJobs Fair Berlin Spring 2015
 
Class 2 digital ecosystems and ecosystem actors
Class 2   digital ecosystems and ecosystem actorsClass 2   digital ecosystems and ecosystem actors
Class 2 digital ecosystems and ecosystem actors
 
Presentation to SVIC june 26th
Presentation to SVIC june 26thPresentation to SVIC june 26th
Presentation to SVIC june 26th
 
Doing Less with Less
Doing Less with LessDoing Less with Less
Doing Less with Less
 
Is Canada on the path to innovation success
Is Canada on the path to innovation successIs Canada on the path to innovation success
Is Canada on the path to innovation success
 
Behavioural economics and digital marketing
Behavioural economics and digital marketingBehavioural economics and digital marketing
Behavioural economics and digital marketing
 
Investing Principles For Mutual Fund And Stock Investors
Investing Principles For Mutual Fund And Stock InvestorsInvesting Principles For Mutual Fund And Stock Investors
Investing Principles For Mutual Fund And Stock Investors
 
Funding your ideas
Funding your ideasFunding your ideas
Funding your ideas
 
IE Application Question H
IE Application   Question HIE Application   Question H
IE Application Question H
 

Similar a Investing in High Impact Big Data Solutions

Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015
Ian Oppermann
 
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
Denodo
 
Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1
Jenawahl
 
big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...
johnmutiso245
 
big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...
johnmutiso245
 
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
Denodo
 
How to get started in extracting business value from big data 1 of 2 oct 2013
How to get started in extracting business value from big data 1 of 2 oct 2013How to get started in extracting business value from big data 1 of 2 oct 2013
How to get started in extracting business value from big data 1 of 2 oct 2013
Jaime Nistal
 
Big Data Analytics in light of Financial Industry
Big Data Analytics in light of Financial Industry Big Data Analytics in light of Financial Industry
Big Data Analytics in light of Financial Industry
Capgemini
 
Pactera Big Data Solutions for Retail
Pactera Big Data Solutions for Retail Pactera Big Data Solutions for Retail
Pactera Big Data Solutions for Retail
Pactera_US
 
Improving the Business of Healthcare through Better Analytics
Improving the Business of Healthcare through Better Analytics Improving the Business of Healthcare through Better Analytics
Improving the Business of Healthcare through Better Analytics
Pentaho
 

Similar a Investing in High Impact Big Data Solutions (20)

Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015
 
Carlo Colicchio: Big Data for business
Carlo Colicchio: Big Data for businessCarlo Colicchio: Big Data for business
Carlo Colicchio: Big Data for business
 
Module 1 the power of data
Module 1 the power of dataModule 1 the power of data
Module 1 the power of data
 
Why Everything You Know About bigdata Is A Lie
Why Everything You Know About bigdata Is A LieWhy Everything You Know About bigdata Is A Lie
Why Everything You Know About bigdata Is A Lie
 
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
Implementar una estrategia eficiente de gobierno y seguridad del dato con la ...
 
PPT1-Buss Intel Analytics.pptx
PPT1-Buss Intel  Analytics.pptxPPT1-Buss Intel  Analytics.pptx
PPT1-Buss Intel Analytics.pptx
 
From Customer Insights to Action
From Customer Insights to ActionFrom Customer Insights to Action
From Customer Insights to Action
 
Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1Smarter analytics101 v2.0.1
Smarter analytics101 v2.0.1
 
big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...
 
big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...big data on science of analytics and innovativeness among udergraduate studen...
big data on science of analytics and innovativeness among udergraduate studen...
 
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
 
How to get started in extracting business value from big data 1 of 2 oct 2013
How to get started in extracting business value from big data 1 of 2 oct 2013How to get started in extracting business value from big data 1 of 2 oct 2013
How to get started in extracting business value from big data 1 of 2 oct 2013
 
Big Data Analytics in light of Financial Industry
Big Data Analytics in light of Financial Industry Big Data Analytics in light of Financial Industry
Big Data Analytics in light of Financial Industry
 
Big data - The next best thing
Big data - The next best thingBig data - The next best thing
Big data - The next best thing
 
Big Data Analytics: Challenge or Opportunity?
Big Data Analytics: Challenge or Opportunity?Big Data Analytics: Challenge or Opportunity?
Big Data Analytics: Challenge or Opportunity?
 
Pactera Big Data Solutions for Retail
Pactera Big Data Solutions for Retail Pactera Big Data Solutions for Retail
Pactera Big Data Solutions for Retail
 
Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?Analytics: What is it really and how can it help my organization?
Analytics: What is it really and how can it help my organization?
 
Improving the Business of Healthcare through Better Analytics
Improving the Business of Healthcare through Better Analytics Improving the Business of Healthcare through Better Analytics
Improving the Business of Healthcare through Better Analytics
 
Big Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationBig Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning association
 
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit UnionsWebinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
 

Último

Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
UXDXConf
 

Último (20)

10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
 
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
 
IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024IoT Analytics Company Presentation May 2024
IoT Analytics Company Presentation May 2024
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
 
Demystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John StaveleyDemystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John Staveley
 
Free and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi IbrahimzadeFree and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
Free and Effective: Making Flows Publicly Accessible, Yumi Ibrahimzade
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through Observability
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdfHow Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
How Red Hat Uses FDO in Device Lifecycle _ Costin and Vitaliy at Red Hat.pdf
 
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftOauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
 
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptxWSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
 
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCustom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
 

Investing in High Impact Big Data Solutions

  • 1. esimoudis@tridentcap.com   blog.tridentcap.com   @esimoudis   Investing in High Impact Big Data Solutions Evangelos  Simoudis,  Ph.D.   Senior  Managing  Director  
  • 2. My Journey through the Data World ’80s ’00s ’90s ’10s 2
  • 3. Big Data is a Big Deal Log files Text Weather, GPS By creating actionable insights from big data we can solve many important problems 3
  • 4. While industries differ in their ability to obtain value from big data … 4
  • 5. … important Big Data Applications can be developed in many of them §  Healthcare: Outcomes analysis, cost containment §  Pharmaceutical: Customized drug treatments §  Financial Services: Fraud detection §  Transportation and Logistics: Fleet optimization for fuel efficiency §  Travel: Channel management §  Energy: Yield management §  Automotive: Supply chain optimization §  CPG: Real-time consumer understanding §  Retail: Real-time marketing across devices and channels 5
  • 6. 10 Steps for Working with Big Data Step 1 •  Defining the problem Step 2 •  Determine the data to use (private and public) Step 3 •  Identify the data sources Step 4 •  Integrate the data Step 5 •  Clean the data Step 6 •  Create information-rich data sets Step 7 •  Model/Analyze the data Step 8 •  Experiment/present results Step 9 •  Identify actionable insights Step 10 •  Disseminate the results 6
  • 7. Solving Big Data problems involves more that data scientists Data Connector/ Translator Problem definition Insights & Actions Business user Problem 70% of work Patterns Data scientist 30% of work 7
  • 8. While we are falling behind in training enough data scientists to meet our projected needs … … we are falling even further behind in training business people with deep analytic skills 8
  • 9. We can ultimately lose the battle with the big data we are generating and collecting unless we can better leverage the expertise we are developing 9
  • 10. We are good at harnessing the basic ingredients 10
  • 11. Venture investments to date reflect this emphasis Step 1 •  Defining the problem Step 2 •  Determine the data to use (private and public) Step 3 •  Identify the data sources Step 4 •  Integrate the data Step 5 •  Clean the data Step 6 •  Create information-rich data sets Step 7 •  Model/Analyze the data Step 8 •  Experiment/present results Step 9 •  Identify actionable insights Step 10 •  Disseminate the results = amount invested = value derived 11
  • 12. New investments must be able to provide better leverage of Connectors and Data Scientists Connector/ Translator Insight generation system Data scientist Insights & Actions Business user 20% of work 50% of work 30% of work 12
  • 13. For this reason Trident Capital has been investing in big data scalable, vertical applications that generate actionable insights §  Healthcare: cost containment §  Transportation and Logistics: Fleet optimization §  Energy: Yield management §  Multi-industry: multi-channel customer lifecycle management Mobile Attract Vertical Capture Analytics Nurture Convert Big Data Retain Advocate 13
  • 14. Summary 1.  Big data is a big deal because it can be used to address many important problems 2.  Current approaches aren’t scalable and take to long to actionable insights 3.  Venture investments in big data must shift to areas of higher impact and value 4.  Trident Capital has been investing in big data applications that provide faster path to value and high ROI 14