SlideShare una empresa de Scribd logo
1 de 17
1
Data mining goes mainstream
- The truth is out there
Mike Davis
Principal Analyst
UKKDD March 2013
© All images acknowledged
© msmd advisors Ltd 2013
responsive, credible, flexible
2
© msmd advisors Ltd 2013
(c)20thCenturyFox
3
© msmd advisors Ltd 2012
Running order
Why all the fuss about big data?
So who uses big data? (and why)
How has it helped business to date?
How do you convey the importance?
What is a data scientist?
Will data science ever be
'sexy'?
4
5 Terabytes of electronic data under
management
© msmd advisors Ltd 2012
5
Big data and the challenge of decision
making
Size
Scope
Speed
© msmd advisors Ltd 2012
6
Decision making requires effective
information
…That’s delivered:
At the right place
– and in context
At the right time
– and complete / credible / trusted
To the right person(s)
– who have authority to
make decisions
© msmd advisors Ltd 2012
7
There's simply too much data to deal
with
The petabyte is the new data norm
Tsunami of human and machine generated data
Multiple formats
Democratisation of data
800 Tweets per second (12 gigabytes)
Facebook generates 100 TB of data…per day
Organisations are struggling to store, access and
process data efficiently
Structured and unstructured information is
processed in separate systems
Some formats are difficult to process
© msmd advisors Ltd 2013
8
So where's the value in big data?
© msmd advisors Ltd 2013
9
Big data in marketing -
Social network analysis
World’s biggest marketing focus
group
Who’s talking about you? What are they
saying? Why?
Who are the opinion leaders?
Highly contextual text analytics
Classic many-to-many relationship problem
Map & measure relationships & flows
between people, groups, computers,
URLs, etc.
Facebook adds 10 – 15 TB/day to DW
© msmd advisors Ltd 2012
10
The need for precision
© msmd advisors Ltd 2012
11
Understanding data
© msmd advisors Ltd 2013
12
Understanding data
© msmd advisors Ltd 2013
13
Understanding data
© msmd advisors Ltd 2013
14
Understanding data
© msmd advisors Ltd 2013
15
The emergence of in memory
databases
© msmd advisors Ltd 2013
16
Who or what is a data scientist?
© msmd advisors Ltd 2013
17
Thank you
miked@msmd-advisors.com
www.msmd-advisors.com
@mikemasseydavis
responsive, credible, flexible
© msmd advisors Ltd 2013

Más contenido relacionado

La actualidad más candente

Embracing Analytics for the Future
Embracing Analytics for the FutureEmbracing Analytics for the Future
Embracing Analytics for the Future
Sharala Axryd
 
The Top 7 Reasons You Should Go To Big Data Congress 2
The Top 7 Reasons You Should Go To Big Data Congress 2The Top 7 Reasons You Should Go To Big Data Congress 2
The Top 7 Reasons You Should Go To Big Data Congress 2
T4G Limited
 
Data Science, Analytics and AI: Gamechangers for the Future of Work
Data Science, Analytics and AI: Gamechangers for the Future of WorkData Science, Analytics and AI: Gamechangers for the Future of Work
Data Science, Analytics and AI: Gamechangers for the Future of Work
Sharala Axryd
 

La actualidad más candente (19)

What will be the relevance and benefit of a NSDI in 2027?
What will be the relevance and benefit of a NSDI in 2027?What will be the relevance and benefit of a NSDI in 2027?
What will be the relevance and benefit of a NSDI in 2027?
 
Information as Galaxy
Information as GalaxyInformation as Galaxy
Information as Galaxy
 
Embracing Analytics for the Future
Embracing Analytics for the FutureEmbracing Analytics for the Future
Embracing Analytics for the Future
 
Kevin Röder, Mick van Galen and Suzanna Nieuwenkamp - The conflict between da...
Kevin Röder, Mick van Galen and Suzanna Nieuwenkamp - The conflict between da...Kevin Röder, Mick van Galen and Suzanna Nieuwenkamp - The conflict between da...
Kevin Röder, Mick van Galen and Suzanna Nieuwenkamp - The conflict between da...
 
The Top 7 Reasons You Should Go To Big Data Congress 2
The Top 7 Reasons You Should Go To Big Data Congress 2The Top 7 Reasons You Should Go To Big Data Congress 2
The Top 7 Reasons You Should Go To Big Data Congress 2
 
"Customer Leadership"
"Customer Leadership""Customer Leadership"
"Customer Leadership"
 
Week3 day6slide
Week3 day6slideWeek3 day6slide
Week3 day6slide
 
Data Science, Analytics and AI: Gamechangers for the Future of Work
Data Science, Analytics and AI: Gamechangers for the Future of WorkData Science, Analytics and AI: Gamechangers for the Future of Work
Data Science, Analytics and AI: Gamechangers for the Future of Work
 
Building a Data Savvy Social Sector v1
Building a Data Savvy Social Sector v1Building a Data Savvy Social Sector v1
Building a Data Savvy Social Sector v1
 
Big data
Big dataBig data
Big data
 
Business intelligence
Business intelligence Business intelligence
Business intelligence
 
The Ideas Boom
The Ideas BoomThe Ideas Boom
The Ideas Boom
 
A Comprehensive Guide to Data Management for Businesses by Infinit Datum
A Comprehensive Guide to Data Management for Businesses by Infinit DatumA Comprehensive Guide to Data Management for Businesses by Infinit Datum
A Comprehensive Guide to Data Management for Businesses by Infinit Datum
 
Whitepaper: Thriving in the Big Data era Manage Data before Data Manages you
Whitepaper: Thriving in the Big Data era Manage Data before Data Manages you Whitepaper: Thriving in the Big Data era Manage Data before Data Manages you
Whitepaper: Thriving in the Big Data era Manage Data before Data Manages you
 
Laura Madsen Healthcare Business Intelligence & Big Data Analytics
Laura Madsen Healthcare Business Intelligence & Big Data AnalyticsLaura Madsen Healthcare Business Intelligence & Big Data Analytics
Laura Madsen Healthcare Business Intelligence & Big Data Analytics
 
Data Alchemy, Mythology and the Quest for the Perpetual Data Machine.
Data Alchemy, Mythology and the Quest for the Perpetual Data Machine. Data Alchemy, Mythology and the Quest for the Perpetual Data Machine.
Data Alchemy, Mythology and the Quest for the Perpetual Data Machine.
 
How CIOs are grappling with big data analytics in Canada
How CIOs are grappling with big data analytics in CanadaHow CIOs are grappling with big data analytics in Canada
How CIOs are grappling with big data analytics in Canada
 
Data credibility and quality
Data credibility and qualityData credibility and quality
Data credibility and quality
 
Smart IT Operations Management on a Budget
Smart IT Operations Management on a BudgetSmart IT Operations Management on a Budget
Smart IT Operations Management on a Budget
 

Similar a The truth is out there

Big Data and Fast Data – Big and Fast Combined, is it Possible?
Big Data and Fast Data – Big and Fast Combined, is it Possible?Big Data and Fast Data – Big and Fast Combined, is it Possible?
Big Data and Fast Data – Big and Fast Combined, is it Possible?
Guido Schmutz
 
Enterprise Search, more relevant now than ever
Enterprise Search, more relevant now than everEnterprise Search, more relevant now than ever
Enterprise Search, more relevant now than ever
Mike Davis
 
Master Data Management
Master Data ManagementMaster Data Management
Master Data Management
Sabir Akhtar
 
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
DATAVERSITY
 
Big Data - Bridging Technology and Humans
Big Data - Bridging Technology and HumansBig Data - Bridging Technology and Humans
Big Data - Bridging Technology and Humans
Mark Laurance
 
Oc cio roundtable mooney management imperatives for realizing value from clou...
Oc cio roundtable mooney management imperatives for realizing value from clou...Oc cio roundtable mooney management imperatives for realizing value from clou...
Oc cio roundtable mooney management imperatives for realizing value from clou...
James Sutter
 
Big data and the data quality imperative
Big data and the data quality imperativeBig data and the data quality imperative
Big data and the data quality imperative
Trillium Software
 

Similar a The truth is out there (20)

Big data and analytics
Big data and analyticsBig data and analytics
Big data and analytics
 
Big Data and Fast Data – Big and Fast Combined, is it Possible?
Big Data and Fast Data – Big and Fast Combined, is it Possible?Big Data and Fast Data – Big and Fast Combined, is it Possible?
Big Data and Fast Data – Big and Fast Combined, is it Possible?
 
Enterprise Search, more relevant now than ever
Enterprise Search, more relevant now than everEnterprise Search, more relevant now than ever
Enterprise Search, more relevant now than ever
 
Big data it’s impact on the finance function
Big data it’s impact on the finance functionBig data it’s impact on the finance function
Big data it’s impact on the finance function
 
An Overview of BigData
An Overview of BigDataAn Overview of BigData
An Overview of BigData
 
BDA 2012 Big data why the big fuss?
BDA 2012 Big data why the big fuss?BDA 2012 Big data why the big fuss?
BDA 2012 Big data why the big fuss?
 
Magenta advisory: Data Driven Decision Making –Is Your Organization Ready Fo...
Magenta advisory: Data Driven Decision Making  –Is Your Organization Ready Fo...Magenta advisory: Data Driven Decision Making  –Is Your Organization Ready Fo...
Magenta advisory: Data Driven Decision Making –Is Your Organization Ready Fo...
 
Master Data Management
Master Data ManagementMaster Data Management
Master Data Management
 
Data Management: Case Study Presented @ Enterprise Data World 2010
Data Management:  Case Study Presented @ Enterprise Data World 2010Data Management:  Case Study Presented @ Enterprise Data World 2010
Data Management: Case Study Presented @ Enterprise Data World 2010
 
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
Real-World Data Governance: The Data Governance Road Show from DGIQ – Intervi...
 
DISRUPT YOUR MINDSET TO WORK WITH BIG DATA
DISRUPT YOUR MINDSET TO WORK WITH BIG DATADISRUPT YOUR MINDSET TO WORK WITH BIG DATA
DISRUPT YOUR MINDSET TO WORK WITH BIG DATA
 
Big Data 101, What It Means for Business - BDI 12/4/13 The Future of Financia...
Big Data 101, What It Means for Business - BDI 12/4/13 The Future of Financia...Big Data 101, What It Means for Business - BDI 12/4/13 The Future of Financia...
Big Data 101, What It Means for Business - BDI 12/4/13 The Future of Financia...
 
Presentation on Big Data
Presentation on Big DataPresentation on Big Data
Presentation on Big Data
 
Big Data - Bridging Technology and Humans
Big Data - Bridging Technology and HumansBig Data - Bridging Technology and Humans
Big Data - Bridging Technology and Humans
 
MDG & RDM field reports Aaron Zornes - 2012 Singapore- print v1
MDG & RDM field reports   Aaron Zornes - 2012 Singapore- print v1MDG & RDM field reports   Aaron Zornes - 2012 Singapore- print v1
MDG & RDM field reports Aaron Zornes - 2012 Singapore- print v1
 
Oc cio roundtable mooney management imperatives for realizing value from clou...
Oc cio roundtable mooney management imperatives for realizing value from clou...Oc cio roundtable mooney management imperatives for realizing value from clou...
Oc cio roundtable mooney management imperatives for realizing value from clou...
 
Organising the Data Lake - Information Management in a Big Data World
Organising the Data Lake - Information Management in a Big Data WorldOrganising the Data Lake - Information Management in a Big Data World
Organising the Data Lake - Information Management in a Big Data World
 
Implementing Big Data, NoSQL, & Hadoop - Bigger Is (Usually) Better
Implementing Big Data, NoSQL, & Hadoop - Bigger Is (Usually) BetterImplementing Big Data, NoSQL, & Hadoop - Bigger Is (Usually) Better
Implementing Big Data, NoSQL, & Hadoop - Bigger Is (Usually) Better
 
Smart Data Webinar: Advances in Natural Language Processing II - NL Generation
Smart Data Webinar: Advances in Natural Language Processing II - NL GenerationSmart Data Webinar: Advances in Natural Language Processing II - NL Generation
Smart Data Webinar: Advances in Natural Language Processing II - NL Generation
 
Big data and the data quality imperative
Big data and the data quality imperativeBig data and the data quality imperative
Big data and the data quality imperative
 

Último

Último (20)

Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
 
Syngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdf
 
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
 
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...
 
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System Strategy
 
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
 
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)
 
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
 
How we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdfHow we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdf
 
Connecting the Dots in Product Design at KAYAK
Connecting the Dots in Product Design at KAYAKConnecting the Dots in Product Design at KAYAK
Connecting the Dots in Product Design at KAYAK
 
Strategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering TeamsStrategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering Teams
 
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
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
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
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through Observability
 
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
 
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
 

The truth is out there

  • 1. 1 Data mining goes mainstream - The truth is out there Mike Davis Principal Analyst UKKDD March 2013 © All images acknowledged © msmd advisors Ltd 2013 responsive, credible, flexible
  • 2. 2 © msmd advisors Ltd 2013 (c)20thCenturyFox
  • 3. 3 © msmd advisors Ltd 2012 Running order Why all the fuss about big data? So who uses big data? (and why) How has it helped business to date? How do you convey the importance? What is a data scientist? Will data science ever be 'sexy'?
  • 4. 4 5 Terabytes of electronic data under management © msmd advisors Ltd 2012
  • 5. 5 Big data and the challenge of decision making Size Scope Speed © msmd advisors Ltd 2012
  • 6. 6 Decision making requires effective information …That’s delivered: At the right place – and in context At the right time – and complete / credible / trusted To the right person(s) – who have authority to make decisions © msmd advisors Ltd 2012
  • 7. 7 There's simply too much data to deal with The petabyte is the new data norm Tsunami of human and machine generated data Multiple formats Democratisation of data 800 Tweets per second (12 gigabytes) Facebook generates 100 TB of data…per day Organisations are struggling to store, access and process data efficiently Structured and unstructured information is processed in separate systems Some formats are difficult to process © msmd advisors Ltd 2013
  • 8. 8 So where's the value in big data? © msmd advisors Ltd 2013
  • 9. 9 Big data in marketing - Social network analysis World’s biggest marketing focus group Who’s talking about you? What are they saying? Why? Who are the opinion leaders? Highly contextual text analytics Classic many-to-many relationship problem Map & measure relationships & flows between people, groups, computers, URLs, etc. Facebook adds 10 – 15 TB/day to DW © msmd advisors Ltd 2012
  • 10. 10 The need for precision © msmd advisors Ltd 2012
  • 11. 11 Understanding data © msmd advisors Ltd 2013
  • 12. 12 Understanding data © msmd advisors Ltd 2013
  • 13. 13 Understanding data © msmd advisors Ltd 2013
  • 14. 14 Understanding data © msmd advisors Ltd 2013
  • 15. 15 The emergence of in memory databases © msmd advisors Ltd 2013
  • 16. 16 Who or what is a data scientist? © msmd advisors Ltd 2013

Notas del editor

  1. .
  2. Going mobile requires more than reformatting a few pages and putting ‘m.’ in front of a URL. The mobile killer apps in 2015 will be different from today, both based on the rapid pace of technology as well as the increased adoption and familiarity with using fingers and small screens. However despite of the wide spread adoption of 4G/LTE, there will still be significant areas working on GSM (or even GPRS) in 2015. Inside the enterprise, current intranet security policies still start from the assumption that the user is at a desk, with mains power, and a 100MPS ethernet connection. Thus an organisation has two classes of user: ‘on-premise’, and ‘mobile’, with all the polices, procedures and overheads that this separation requires. By 2015 this needs to be ‘turned on its head’ with a single policy – ‘everyone is mobile’. With the mainstream adoption of bring your own device (BYOD), the organisation will not be able to prescribe the device.