Big Data
A start
Big Data from a Consulting
perspective
Edzo Botjes
Business Analyst, Sogeti Consulting Services
Amersfoort 2013 05 28
3Titel | Onderwerp | Plaats | Datum |
DATA is the NEW OIL
4Big Data a Start | People Consulted | Amersfoort | 2013 05 28 |
People Consulted
Big Data experts
IT
Data Experts
Business
Information
Architects
Big Data experts
Business
Data Experts
Information
Management
Architects
Business
Big Data experts
VINT
Big Data expert
R20
Desk Research
5Big Data a Start | Content | Amersfoort | 2013 05 28 |
What were the questions from
The management team?
Content
Conclusion / Answers
Actions to take as MT
6Big Data a Start | What were the questions | Amersfoort | 2013 05 28 |
What were the questions
• Question 1
- What is Big Data?
• Question 2
- Big Data in current organization?
• Question 3
- What is the future role of the Information
Management department in the subject
Big Data?
7Big Data a Start | Content | Amersfoort | 2013 05 28 |
Content
Conclusion / Answers
Actions to take as MT
What were the questions from
The management team?
8Big Data a Start | What were the questions | Amersfoort | 2013 05 28 |
Why Big Data is a MT subject
Source: http://www.myforrester.net/big-data-webinar ; http://www.airlineleader.com/pdfs/Airline%20Leader%20Issue%2014.pdf
9Big Data a Start | What were the questions | Amersfoort | 2013 05 28 |
Why Big Data is a MT subject
Source: https://www.bmelv.de/SharedDocs/Downloads/Verbraucherschutz/Internet-Telekommunikation/SaferInternetDay2013Ksker.pdf?__blob=publicationFile page 14
“Big Data, was ist das?", Dr. Holger Kisker, VP and Research Director Forrester. February 2013
10Big Data a Start | What is data | Amersfoort | 2013 05 28 |
What is data / information ?
11Big Data a Start | What is data | Amersfoort | 2013 05 28 |
From data to wisdom
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 6
"Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem. et al. June 2012
12Big Data a Start | What is data | Amersfoort | 2013 05 28 |
Role of insight
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 8
"Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem. et al. June 2012
Source: http://cci.uncc.edu/sites/cci.uncc.edu/files/media/pdf_files/MIT-SMR-IBM-Analytics-The-New-Path-to-Value-Fall-2010.pdf page 4
13Big Data a Start | Definition | Amersfoort | 2013 05 28 |
Definition of Big Data ?
14Big Data a Start | Definition | Amersfoort | 2013 05 28 |
The Attack of the exponentials
Source: http://www.slideshare.net/medriscoll/driscoll-strata-buildingdatastartups25may2011clean slide 4
"Building Data Start-ups: Fast, Big and Focused" by Michael E. Driscoll CTO Metamarkets, May 2011
15Big Data a Start | Definition | Amersfoort | 2013 05 28 |
3 V’s that define Big Data (or 4?)
VALUE
Source: http://www.slideshare.net/multiscope/data-pioneers-sander-duivestein-vint-future-of-data slide 9
“The future of data” by Sander Duivestein , June 2012
16Big Data a Start | Definition | Amersfoort | 2013 05 28 |
Big Data definition at Goldman Sachs et al.
BIG DATA
==
Transaction
+
Interaction
+
Observation
Source: http://hortonworks.com/blog/7-key-drivers-for-the-big-data-market/
"7 Key Drivers for the Big Data Market" by Shaun Connolly at the Goldman Sachs Cloud Conference May 2012
17Big Data a Start | Definition | Amersfoort | 2013 05 28 |
Big Data Definition by Edzo
BIG DATA
==
Real time data
+
Real time analysis
(graph data)
+
Real time reaction
(feedback loop)
Source: Edzo Botjes
18Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Examples of the 3 V's
19Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Examples of Size and Source
Source: http://hortonworks.com/blog/7-key-drivers-for-the-big-data-market/
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf
20Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Examples of Big Data Analytics
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18
"Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al.. June 2012
21Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Examples Big Data
22Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Examples of Big Data in the real life
Source:http://www.computerworld.com/s/article/9233587/Barack_Obama_39_s_Big_Data_won_the_US_election http://www.infoworld.com/d/big-data/the-real-story-of-how-big-data-analytics-helped-obama-win-212862
http://www.forbes.com/sites/kashmirhill/2012/02/16/how-target-figured-out-a-teen-girl-was-pregnant-before-her-father-did/ http://commons.wikimedia.org/wiki/File:Target_logo.svg http://www.rfgen.com/blog/bid/285148/Tesco-Improves-Supply-Chain-with-Big-Data-Automated-Data-
Collection http://www.computerweekly.com/news/2240184482/Tesco-uses-big-data-to-cut-cooling-costs-by-up-to-20m http://img.dooyoo.co.uk/GB_EN/orig/0/7/7/7/3/777389.jpg
23Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Big Data ready?
24Big Data a Start | Examples | Amersfoort | 2013 05 28 |
Your Big Data profile: what does that look like?
Big Data is concerned with exceptionally large, often widespread bundles of
semi structured or unstructured data. In addition, they are often incomplete
and not readily accessible.
“Exceptionally large” means the following, measured against the
extreme boundaries of current standard it and relational databases:
petabytes of data or more, millions of people or more, billions of records or
more, and a complex combination of all these.
With fewer data and greater complexity, you will encounter a serious Big
Data challenge, certainly if your tools, knowledge and expertise are not fully
up to date. Moreover, if this is the case, you are not prepared for future data
developments. Semi-structured or unstructured means that the connections
between data elements are not clear, and probabilities will have to be
determined.
Further to read:
B. Ten Big Data management challenges: what are your issues?
C. Five requirements for your Big Data project: are you ready?
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18
"Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al. June 2012
Are you Big
Data ready?
Or to big a
leap?
“Big”
25Big Data a Start | Tips | Amersfoort | 2013 05 28 |
Most important Tip (s)
26Big Data a Start | Tips | Amersfoort | 2013 05 28 |
Tips
• Never, Ever, start without a Business Case and thus a
business sponsor.
• Added value of Big Data is combination of “External”
Sources. Think outside the box, outside your silo.
• Maturity is key.
- Start with identifying
- then go optimizing, scale to BI, BI++ and
- then to real time added value Big Data
feedback loops
27Big Data a Start | Tips | Amersfoort | 2013 05 28 |
Maturity (Big Data is young and quick)
The notion that opportunities to capitalize on Big Data are simply
lying there, ready to be seized, is echoing everywhere. In 2011, the
McKinsey Global Institute called Big Data “the next frontier for
innovation, competition, and productivity” and the Economist
Intelligence Unit spoke unequivocally of “a game-changing asset.”
These are quotes taken from titles of two directive reports on Big
Data, a topical theme that is developing vigorously, and about
which the last word has certainly not been uttered.
McKinsey states it very explicitly:
This research by no means represents the final word on big data;
instead, we see it as a beginning. We fully anticipate that this is a
story that will continue to evolve as technologies and techniques
using big data develop and data, their uses, and their economic
benefits grow (alongside associated challenges and risks).
•“Innovation”
•“Competition”
•“Productivity”
Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18
"Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al. June 2012
28Big Data a Start | Questions | Amersfoort | 2013 05 28 |
What were the questions
• Question 1
- What is Big Data?
• Question 2
- Big Data in current organization?
• Question 3
- What is the future role of the Information
Management department in the subject
Big Data?
29Big Data a Start | Current Organization | Amersfoort | 2013 05 28 |
Big data in current organization
CRM
Internal R&D
Internal BI
Social Media
Data
Virtualization
30Big Data a Start | Questions | Amersfoort | 2013 05 28 |
What were the questions
• Question 1
- What is Big Data?
• Question 2
- Big Data in current organization?
• Question 3
- What is the future role of the Information
Management department in the subject
Big Data?
31Big Data a Start | Role | Amersfoort | 2013 05 28 |
Vision / Role
32Big Data a Start | Role | Amersfoort | 2013 05 28 |
Information Management Role
be an advising guide
Bring together
Create
innovation environment
Bring
success to production
33Big Data a Start | Role | Amersfoort | 2013 05 28 |
Information Management Role
Facilitate Execute
Be a leader
Bring together
Create
innovation environment
Bring
success to production
Source:
http://www.alfredoartist.com/Optimized%20Images/Rodriguez-InSearchOfGold.jpg
http://resources1.news.com.au/images/2011/07/27/1226102/848013-gold-prospecting.jpg
http://www.refinedinvestments.com/wp-content/uploads/2012/10/gold-mining400x282.jpg
http://en.rockscrusher.com/wp-content/uploads/2011/04/gold-mining-plant.jpg
34Big Data a Start | Role | Amersfoort | 2013 05 28 |
Information Management Role
Not the Information Management Role
1.Employ Data scientists
2.Develop new data analyses technique’s
3.Be a business sponsor
Information Management Role
1.Facilitate the gold finding process (POCs)

Bring data scientist in touch with business
2.Be owner of the gold mining process (projects)
3.Have and Execute a vision on data governance and data
virtualization. (reduce future costs on projects, POCs and
changes etc.)
35Big Data a Start | Questions | Amersfoort | 2013 05 28 |
What were the questions
• Question 1
- What is Big Data?
• Question 2
- Big Data in current organization?
• Question 3
- What is the future role of the Information
Management division in the subject
Big Data?
36Big Data a Start | Content | Amersfoort | 2013 05 28 |
Content
Conclusion / Answers
Actions to take as MT
What were the questions from
The management team?
37Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Big Data Actions
Data Board
Data Governance
Data Virtualization
Create a Network
38Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Goals of the Data board
• Role of a Steering Committee / Governance
• Once a month (2 months) meeting
• Advice to POCs, brainstorm for POCs, Assist
breaking silos, create a platform for governance
issues
(Possible KPI.. 3 POCs per year?)
• Great Variety inside Organization and outside (for
example a professor, young people, R&D and
business and more experienced internal employees)
39Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Subjects – Data Governance
• Where is what data ?
• Who owns the data ?
• Who owns the application that stores the data ?
• Who can access the data ?
• Who is responsible of data quality (and how) ?
• What are the legal implications and boundaries ?
40Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Subjects – Data Virtualization
• Future enormous cost reduction
• Improvement of MI
• Faster data centric solution
• Lower cost of projects
Source: http://res.sys-con.com/story/may11/1849158/data%20virt%20image_0.jpg
41Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Subjects – Create a Network
Create connections with and between:
• Universities
• External experts / stakeholders
• (Small) specialized companies
• Internal experts / stakeholders
Source: http://learnthat.com/files/2008/06/people-network1.jpg
42Big Data a Start | Content | Amersfoort | 2013 05 28 |
Content
Conclusion / Answers
Actions to take as MT
What were the questions from
The management team?
43Big Data a Start | Actions | Amersfoort | 2013 05 28 |
Big Data in the Enterprise
Data Board
Data Governance
Data Virtualization
Create a network
Facilitate Execute
This is just
the
beginning

More Related Content

PDF
Big Data Trends - WorldFuture 2015 Conference
PPT
Big Data from idea to service provider from a Consulting perspective - a quic...
PDF
Introduction to big data
PPTX
Big Data Analytics Proposal #1
PDF
How does big data impact you
PPTX
Big data analytics
PDF
Big Data analytics best practices
PDF
Trends in Big Data & Business Challenges
Big Data Trends - WorldFuture 2015 Conference
Big Data from idea to service provider from a Consulting perspective - a quic...
Introduction to big data
Big Data Analytics Proposal #1
How does big data impact you
Big data analytics
Big Data analytics best practices
Trends in Big Data & Business Challenges

What's hot (20)

PPTX
What is big data ? | Big Data Applications
PPTX
An Introduction to Big Data
PPTX
Presentation on Big Data
PPTX
Big Data and The Future of Insight - Future Foundation
PPTX
The Business of Big Data - IA Ventures
PPTX
Big Data Analytics
PDF
Data-Ed Webinar: Demystifying Big Data
PPTX
Big Data Applications | Big Data Application Examples | Big Data Use Cases | ...
PDF
Big data and value creation
PDF
Big Data : Risks and Opportunities
PDF
Big data course | big data training | big data classes
PPTX
Business analytics
PDF
Impact of big data on analytics
PDF
White paper "From Big Data to Big Busine$$"
PDF
What is AI without Data?
PDF
Future of Power: Big Data - Søren Ravn
PDF
Big Data Tutorial For Beginners | What Is Big Data | Big Data Tutorial | Hado...
PDF
Big Data Characteristics And Process PowerPoint Presentation Slides
PDF
Issues on Big Data & Cloud Computing
What is big data ? | Big Data Applications
An Introduction to Big Data
Presentation on Big Data
Big Data and The Future of Insight - Future Foundation
The Business of Big Data - IA Ventures
Big Data Analytics
Data-Ed Webinar: Demystifying Big Data
Big Data Applications | Big Data Application Examples | Big Data Use Cases | ...
Big data and value creation
Big Data : Risks and Opportunities
Big data course | big data training | big data classes
Business analytics
Impact of big data on analytics
White paper "From Big Data to Big Busine$$"
What is AI without Data?
Future of Power: Big Data - Søren Ravn
Big Data Tutorial For Beginners | What Is Big Data | Big Data Tutorial | Hado...
Big Data Characteristics And Process PowerPoint Presentation Slides
Issues on Big Data & Cloud Computing
Ad

Viewers also liked (20)

PDF
Big Data: an introduction
PPTX
Introduction to Big Data
PDF
Big data Introduction by Mohan
PPT
Big Data
PPTX
Big data ppt
PPTX
Big Data Processing in the Cloud: A Hydra/Sufia Experience
PPT
Sept 24 NISO Virtual Conference: Library Data in the Cloud
PDF
Big Data introduction - Café Numérique Bruxelles
PDF
Open Data Science Conference Big Data Infrastructure – Introduction to Hadoop...
PDF
Taming Big Data with NoSQL
PDF
Hadoop-2.6.0 Slides
PPTX
Introduction to Big Data
PPTX
Taming Big Data!
PDF
20170126 big data processing
PDF
Spark: Taming Big Data
PPTX
Hbase hive pig
PDF
Introduction to Big Data
PPTX
What is big data?
PDF
Hadoop basics
PPTX
Big Data for Beginners
Big Data: an introduction
Introduction to Big Data
Big data Introduction by Mohan
Big Data
Big data ppt
Big Data Processing in the Cloud: A Hydra/Sufia Experience
Sept 24 NISO Virtual Conference: Library Data in the Cloud
Big Data introduction - Café Numérique Bruxelles
Open Data Science Conference Big Data Infrastructure – Introduction to Hadoop...
Taming Big Data with NoSQL
Hadoop-2.6.0 Slides
Introduction to Big Data
Taming Big Data!
20170126 big data processing
Spark: Taming Big Data
Hbase hive pig
Introduction to Big Data
What is big data?
Hadoop basics
Big Data for Beginners
Ad

Similar to Big data introduction - Big Data from a Consulting perspective - Sogeti (20)

PDF
How to get started in extracting business value from big data 1 of 2 oct 2013
PDF
Big data 2 4 - big-social-predicting-behavior-with-big-data
PDF
Big Data - Introduction and Research Topics - for Dutch Kadaster
PPT
BIg data dan data mining
PPTX
big data analytics pgpmx2015
PDF
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
PPTX
How to be Social with My Sites in SharePoint 2013
PDF
VU Amsterdam - Big data en datagedreven waardecreatie: valt er nog iets te ki...
PPTX
Lean Startup Meetup 28.02.2013
PDF
DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?
PDF
Big Data – Is it a hype or for real?
PDF
Big Data - Bridging Technology and Humans
PPT
Big Data Framework - How to get started!
PDF
Enabling a Bimodal IT Framework for Advanced Analytics with Data Virtualization
PDF
Operationalizing the Buzz: Big Data 2013
PDF
Present european sdg summit template sdg roundtables_sitra_fibs
PDF
DAS Slides: Self-Service Reporting and Data Prep – Benefits & Risks
PDF
Why big data_for_bd_sid_strategy_workshop_7_sep_2013_fz_v1.5
PDF
Application of Big Data in Enterprise Management
PDF
The road to connected architecture
How to get started in extracting business value from big data 1 of 2 oct 2013
Big data 2 4 - big-social-predicting-behavior-with-big-data
Big Data - Introduction and Research Topics - for Dutch Kadaster
BIg data dan data mining
big data analytics pgpmx2015
Data Strategy Design: An Open Source Toolbox & Method for Data Thinking.
How to be Social with My Sites in SharePoint 2013
VU Amsterdam - Big data en datagedreven waardecreatie: valt er nog iets te ki...
Lean Startup Meetup 28.02.2013
DAS Webinar: Emerging Trends in Data Architecture – What’s the Next Big Thing?
Big Data – Is it a hype or for real?
Big Data - Bridging Technology and Humans
Big Data Framework - How to get started!
Enabling a Bimodal IT Framework for Advanced Analytics with Data Virtualization
Operationalizing the Buzz: Big Data 2013
Present european sdg summit template sdg roundtables_sitra_fibs
DAS Slides: Self-Service Reporting and Data Prep – Benefits & Risks
Why big data_for_bd_sid_strategy_workshop_7_sep_2013_fz_v1.5
Application of Big Data in Enterprise Management
The road to connected architecture

More from Edzo Botjes (15)

PPTX
Defining antifragility and the application on organisation design @ DADD 2011...
PPTX
Cloud Security - I ain’t rocket science @ Club.cloud 20211103
PPTX
Attributes relevant to antifragile organizations - Paper - IEEE CBI 2021 2021...
PPTX
Weerbaarheid in je organisatieontwerp
PPTX
Ai hack covid - aimed 2021 - pitch workshop (2)
PPTX
Value from resilience xebia webinar
PDF
Viable Systems Model
PPTX
Security Awareness & Weerbaarheid - Het zal mij toch niet overkomen
ODP
Meetup OpenShift 2017 04 RedHat & LinkIT
PDF
Open source an origin story to freedom
PPTX
Graph databases are awesome
PPT
Why o why v8
PPTX
Top class open up - sept 2010
PPT
Software Ownership
PPT
What the analyst can learn from spaghetti saus
Defining antifragility and the application on organisation design @ DADD 2011...
Cloud Security - I ain’t rocket science @ Club.cloud 20211103
Attributes relevant to antifragile organizations - Paper - IEEE CBI 2021 2021...
Weerbaarheid in je organisatieontwerp
Ai hack covid - aimed 2021 - pitch workshop (2)
Value from resilience xebia webinar
Viable Systems Model
Security Awareness & Weerbaarheid - Het zal mij toch niet overkomen
Meetup OpenShift 2017 04 RedHat & LinkIT
Open source an origin story to freedom
Graph databases are awesome
Why o why v8
Top class open up - sept 2010
Software Ownership
What the analyst can learn from spaghetti saus

Recently uploaded (20)

PPTX
Build Your First AI Agent with UiPath.pptx
PPTX
2018-HIPAA-Renewal-Training for executives
PDF
Architecture types and enterprise applications.pdf
PPTX
GROUP4NURSINGINFORMATICSREPORT-2 PRESENTATION
PPTX
The various Industrial Revolutions .pptx
PPT
Galois Field Theory of Risk: A Perspective, Protocol, and Mathematical Backgr...
PDF
Hybrid horned lizard optimization algorithm-aquila optimizer for DC motor
PPTX
Chapter 5: Probability Theory and Statistics
PDF
CloudStack 4.21: First Look Webinar slides
PDF
ENT215_Completing-a-large-scale-migration-and-modernization-with-AWS.pdf
PDF
Zenith AI: Advanced Artificial Intelligence
PPTX
Modernising the Digital Integration Hub
PDF
How ambidextrous entrepreneurial leaders react to the artificial intelligence...
PDF
Produktkatalog für HOBO Datenlogger, Wetterstationen, Sensoren, Software und ...
PPT
Geologic Time for studying geology for geologist
PPT
Module 1.ppt Iot fundamentals and Architecture
PDF
Consumable AI The What, Why & How for Small Teams.pdf
PDF
1 - Historical Antecedents, Social Consideration.pdf
PPTX
AI IN MARKETING- PRESENTED BY ANWAR KABIR 1st June 2025.pptx
PDF
Taming the Chaos: How to Turn Unstructured Data into Decisions
Build Your First AI Agent with UiPath.pptx
2018-HIPAA-Renewal-Training for executives
Architecture types and enterprise applications.pdf
GROUP4NURSINGINFORMATICSREPORT-2 PRESENTATION
The various Industrial Revolutions .pptx
Galois Field Theory of Risk: A Perspective, Protocol, and Mathematical Backgr...
Hybrid horned lizard optimization algorithm-aquila optimizer for DC motor
Chapter 5: Probability Theory and Statistics
CloudStack 4.21: First Look Webinar slides
ENT215_Completing-a-large-scale-migration-and-modernization-with-AWS.pdf
Zenith AI: Advanced Artificial Intelligence
Modernising the Digital Integration Hub
How ambidextrous entrepreneurial leaders react to the artificial intelligence...
Produktkatalog für HOBO Datenlogger, Wetterstationen, Sensoren, Software und ...
Geologic Time for studying geology for geologist
Module 1.ppt Iot fundamentals and Architecture
Consumable AI The What, Why & How for Small Teams.pdf
1 - Historical Antecedents, Social Consideration.pdf
AI IN MARKETING- PRESENTED BY ANWAR KABIR 1st June 2025.pptx
Taming the Chaos: How to Turn Unstructured Data into Decisions

Big data introduction - Big Data from a Consulting perspective - Sogeti

  • 2. Big Data from a Consulting perspective Edzo Botjes Business Analyst, Sogeti Consulting Services Amersfoort 2013 05 28
  • 3. 3Titel | Onderwerp | Plaats | Datum | DATA is the NEW OIL
  • 4. 4Big Data a Start | People Consulted | Amersfoort | 2013 05 28 | People Consulted Big Data experts IT Data Experts Business Information Architects Big Data experts Business Data Experts Information Management Architects Business Big Data experts VINT Big Data expert R20 Desk Research
  • 5. 5Big Data a Start | Content | Amersfoort | 2013 05 28 | What were the questions from The management team? Content Conclusion / Answers Actions to take as MT
  • 6. 6Big Data a Start | What were the questions | Amersfoort | 2013 05 28 | What were the questions • Question 1 - What is Big Data? • Question 2 - Big Data in current organization? • Question 3 - What is the future role of the Information Management department in the subject Big Data?
  • 7. 7Big Data a Start | Content | Amersfoort | 2013 05 28 | Content Conclusion / Answers Actions to take as MT What were the questions from The management team?
  • 8. 8Big Data a Start | What were the questions | Amersfoort | 2013 05 28 | Why Big Data is a MT subject Source: http://www.myforrester.net/big-data-webinar ; http://www.airlineleader.com/pdfs/Airline%20Leader%20Issue%2014.pdf
  • 9. 9Big Data a Start | What were the questions | Amersfoort | 2013 05 28 | Why Big Data is a MT subject Source: https://www.bmelv.de/SharedDocs/Downloads/Verbraucherschutz/Internet-Telekommunikation/SaferInternetDay2013Ksker.pdf?__blob=publicationFile page 14 “Big Data, was ist das?", Dr. Holger Kisker, VP and Research Director Forrester. February 2013
  • 10. 10Big Data a Start | What is data | Amersfoort | 2013 05 28 | What is data / information ?
  • 11. 11Big Data a Start | What is data | Amersfoort | 2013 05 28 | From data to wisdom Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 6 "Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem. et al. June 2012
  • 12. 12Big Data a Start | What is data | Amersfoort | 2013 05 28 | Role of insight Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 8 "Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem. et al. June 2012 Source: http://cci.uncc.edu/sites/cci.uncc.edu/files/media/pdf_files/MIT-SMR-IBM-Analytics-The-New-Path-to-Value-Fall-2010.pdf page 4
  • 13. 13Big Data a Start | Definition | Amersfoort | 2013 05 28 | Definition of Big Data ?
  • 14. 14Big Data a Start | Definition | Amersfoort | 2013 05 28 | The Attack of the exponentials Source: http://www.slideshare.net/medriscoll/driscoll-strata-buildingdatastartups25may2011clean slide 4 "Building Data Start-ups: Fast, Big and Focused" by Michael E. Driscoll CTO Metamarkets, May 2011
  • 15. 15Big Data a Start | Definition | Amersfoort | 2013 05 28 | 3 V’s that define Big Data (or 4?) VALUE Source: http://www.slideshare.net/multiscope/data-pioneers-sander-duivestein-vint-future-of-data slide 9 “The future of data” by Sander Duivestein , June 2012
  • 16. 16Big Data a Start | Definition | Amersfoort | 2013 05 28 | Big Data definition at Goldman Sachs et al. BIG DATA == Transaction + Interaction + Observation Source: http://hortonworks.com/blog/7-key-drivers-for-the-big-data-market/ "7 Key Drivers for the Big Data Market" by Shaun Connolly at the Goldman Sachs Cloud Conference May 2012
  • 17. 17Big Data a Start | Definition | Amersfoort | 2013 05 28 | Big Data Definition by Edzo BIG DATA == Real time data + Real time analysis (graph data) + Real time reaction (feedback loop) Source: Edzo Botjes
  • 18. 18Big Data a Start | Examples | Amersfoort | 2013 05 28 | Examples of the 3 V's
  • 19. 19Big Data a Start | Examples | Amersfoort | 2013 05 28 | Examples of Size and Source Source: http://hortonworks.com/blog/7-key-drivers-for-the-big-data-market/ Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf
  • 20. 20Big Data a Start | Examples | Amersfoort | 2013 05 28 | Examples of Big Data Analytics Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18 "Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al.. June 2012
  • 21. 21Big Data a Start | Examples | Amersfoort | 2013 05 28 | Examples Big Data
  • 22. 22Big Data a Start | Examples | Amersfoort | 2013 05 28 | Examples of Big Data in the real life Source:http://www.computerworld.com/s/article/9233587/Barack_Obama_39_s_Big_Data_won_the_US_election http://www.infoworld.com/d/big-data/the-real-story-of-how-big-data-analytics-helped-obama-win-212862 http://www.forbes.com/sites/kashmirhill/2012/02/16/how-target-figured-out-a-teen-girl-was-pregnant-before-her-father-did/ http://commons.wikimedia.org/wiki/File:Target_logo.svg http://www.rfgen.com/blog/bid/285148/Tesco-Improves-Supply-Chain-with-Big-Data-Automated-Data- Collection http://www.computerweekly.com/news/2240184482/Tesco-uses-big-data-to-cut-cooling-costs-by-up-to-20m http://img.dooyoo.co.uk/GB_EN/orig/0/7/7/7/3/777389.jpg
  • 23. 23Big Data a Start | Examples | Amersfoort | 2013 05 28 | Big Data ready?
  • 24. 24Big Data a Start | Examples | Amersfoort | 2013 05 28 | Your Big Data profile: what does that look like? Big Data is concerned with exceptionally large, often widespread bundles of semi structured or unstructured data. In addition, they are often incomplete and not readily accessible. “Exceptionally large” means the following, measured against the extreme boundaries of current standard it and relational databases: petabytes of data or more, millions of people or more, billions of records or more, and a complex combination of all these. With fewer data and greater complexity, you will encounter a serious Big Data challenge, certainly if your tools, knowledge and expertise are not fully up to date. Moreover, if this is the case, you are not prepared for future data developments. Semi-structured or unstructured means that the connections between data elements are not clear, and probabilities will have to be determined. Further to read: B. Ten Big Data management challenges: what are your issues? C. Five requirements for your Big Data project: are you ready? Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18 "Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al. June 2012 Are you Big Data ready? Or to big a leap? “Big”
  • 25. 25Big Data a Start | Tips | Amersfoort | 2013 05 28 | Most important Tip (s)
  • 26. 26Big Data a Start | Tips | Amersfoort | 2013 05 28 | Tips • Never, Ever, start without a Business Case and thus a business sponsor. • Added value of Big Data is combination of “External” Sources. Think outside the box, outside your silo. • Maturity is key. - Start with identifying - then go optimizing, scale to BI, BI++ and - then to real time added value Big Data feedback loops
  • 27. 27Big Data a Start | Tips | Amersfoort | 2013 05 28 | Maturity (Big Data is young and quick) The notion that opportunities to capitalize on Big Data are simply lying there, ready to be seized, is echoing everywhere. In 2011, the McKinsey Global Institute called Big Data “the next frontier for innovation, competition, and productivity” and the Economist Intelligence Unit spoke unequivocally of “a game-changing asset.” These are quotes taken from titles of two directive reports on Big Data, a topical theme that is developing vigorously, and about which the last word has certainly not been uttered. McKinsey states it very explicitly: This research by no means represents the final word on big data; instead, we see it as a beginning. We fully anticipate that this is a story that will continue to evolve as technologies and techniques using big data develop and data, their uses, and their economic benefits grow (alongside associated challenges and risks). •“Innovation” •“Competition” •“Productivity” Source: http://blog.vint.sogeti.com/wp-content/uploads/2012/07/VINT-Sogeti-on-Big-Data-1-of-4-Creating-Clarity.pdf page 18 "Creating clarity with Big Data", ViNT research report 1 of 4 by Jaap Bloem et al. June 2012
  • 28. 28Big Data a Start | Questions | Amersfoort | 2013 05 28 | What were the questions • Question 1 - What is Big Data? • Question 2 - Big Data in current organization? • Question 3 - What is the future role of the Information Management department in the subject Big Data?
  • 29. 29Big Data a Start | Current Organization | Amersfoort | 2013 05 28 | Big data in current organization CRM Internal R&D Internal BI Social Media Data Virtualization
  • 30. 30Big Data a Start | Questions | Amersfoort | 2013 05 28 | What were the questions • Question 1 - What is Big Data? • Question 2 - Big Data in current organization? • Question 3 - What is the future role of the Information Management department in the subject Big Data?
  • 31. 31Big Data a Start | Role | Amersfoort | 2013 05 28 | Vision / Role
  • 32. 32Big Data a Start | Role | Amersfoort | 2013 05 28 | Information Management Role be an advising guide Bring together Create innovation environment Bring success to production
  • 33. 33Big Data a Start | Role | Amersfoort | 2013 05 28 | Information Management Role Facilitate Execute Be a leader Bring together Create innovation environment Bring success to production Source: http://www.alfredoartist.com/Optimized%20Images/Rodriguez-InSearchOfGold.jpg http://resources1.news.com.au/images/2011/07/27/1226102/848013-gold-prospecting.jpg http://www.refinedinvestments.com/wp-content/uploads/2012/10/gold-mining400x282.jpg http://en.rockscrusher.com/wp-content/uploads/2011/04/gold-mining-plant.jpg
  • 34. 34Big Data a Start | Role | Amersfoort | 2013 05 28 | Information Management Role Not the Information Management Role 1.Employ Data scientists 2.Develop new data analyses technique’s 3.Be a business sponsor Information Management Role 1.Facilitate the gold finding process (POCs)  Bring data scientist in touch with business 2.Be owner of the gold mining process (projects) 3.Have and Execute a vision on data governance and data virtualization. (reduce future costs on projects, POCs and changes etc.)
  • 35. 35Big Data a Start | Questions | Amersfoort | 2013 05 28 | What were the questions • Question 1 - What is Big Data? • Question 2 - Big Data in current organization? • Question 3 - What is the future role of the Information Management division in the subject Big Data?
  • 36. 36Big Data a Start | Content | Amersfoort | 2013 05 28 | Content Conclusion / Answers Actions to take as MT What were the questions from The management team?
  • 37. 37Big Data a Start | Actions | Amersfoort | 2013 05 28 | Big Data Actions Data Board Data Governance Data Virtualization Create a Network
  • 38. 38Big Data a Start | Actions | Amersfoort | 2013 05 28 | Goals of the Data board • Role of a Steering Committee / Governance • Once a month (2 months) meeting • Advice to POCs, brainstorm for POCs, Assist breaking silos, create a platform for governance issues (Possible KPI.. 3 POCs per year?) • Great Variety inside Organization and outside (for example a professor, young people, R&D and business and more experienced internal employees)
  • 39. 39Big Data a Start | Actions | Amersfoort | 2013 05 28 | Subjects – Data Governance • Where is what data ? • Who owns the data ? • Who owns the application that stores the data ? • Who can access the data ? • Who is responsible of data quality (and how) ? • What are the legal implications and boundaries ?
  • 40. 40Big Data a Start | Actions | Amersfoort | 2013 05 28 | Subjects – Data Virtualization • Future enormous cost reduction • Improvement of MI • Faster data centric solution • Lower cost of projects Source: http://res.sys-con.com/story/may11/1849158/data%20virt%20image_0.jpg
  • 41. 41Big Data a Start | Actions | Amersfoort | 2013 05 28 | Subjects – Create a Network Create connections with and between: • Universities • External experts / stakeholders • (Small) specialized companies • Internal experts / stakeholders Source: http://learnthat.com/files/2008/06/people-network1.jpg
  • 42. 42Big Data a Start | Content | Amersfoort | 2013 05 28 | Content Conclusion / Answers Actions to take as MT What were the questions from The management team?
  • 43. 43Big Data a Start | Actions | Amersfoort | 2013 05 28 | Big Data in the Enterprise Data Board Data Governance Data Virtualization Create a network Facilitate Execute

Editor's Notes

  • #2: Kopieer onderstaande regel in de adresregel van je browser voor de gebruikershandleiding van deze template: https://einstein.sogeti.nl/sites/einstein.sogeti.nl/files/page_attachments/PP%20handleiding%20130318.pdf