SlideShare uma empresa Scribd logo
1 de 30
Baixar para ler offline
Australian CIO Summit 2014
28 – 30 July 2014
Bigger and Better: Employing a Holistic Strategy for
Big Data toward a Strong Value-Adding Proposition
Patrick Hadley
Chief Information Officer
Australian Bureau of Statistics
Not Another ‘Big Data’ Presentation
(‘V’ is not the only letter in the alphabet!)
Or, to put it another way………
The promise
Big data is at the foundation of all the megatrends that are happening today,
from social to mobile to the cloud to gaming. - Chris Lynch, ex Vertica CEO
“Big Data is a tidal wave, which in the next decade will create consumer –
and producer – value in almost every major sector of the economy” Philip
Evans
“….a tremendous wave of innovation, productivity and growth… all driven by
big data” McKinsey
“Big Data: A Revolution that Will Transform how We Live, Work, and Think”
Viktor Mayer-Schönberger and Kenneth Cukier. 2013.
Big data is like teenage sex: everyone talks about it, nobody really
knows how to do it, everyone thinks everyone else is doing it, so
everyone claims they are doing it...
Dan Ariely, 2013
In God we trust; all others must bring data.
W.E. Deming
Or, the reality…….
Agenda
• What is Big Data (3/4/5/6 v’s)
• Sources of Data
• Data as an asset
• Open Data
• Opportunities…..applications…..benefits
• Data Management
• Data Analytics; technologies
• Security
• Privacy
• Skills and capabilities
• …… and on
Agenda
• What is Big Data (3/4/5/6 v’s)
• Sources od Data
• Data as an asset
• Open Data
• Opportunities…..applications…..benefits
• Data Management
• Data Analytics; technologies
• Security
• Privacy
• Skills and capabilities
• …… and on
Today ………
• The use of Big Data in official statistics
• ABS initiatives, experiences and capabilities
• Learnings: Towards a strong value- adding proposition
Big Data in Official Statistics
The vision…..
A richer, more dynamic statistical picture of Australia;
Opportunity: reduce costs; improve quality
Sources of Data
• digital descriptions of the physical environment
• sensors and other devices
• communications networks
• individual behaviour and information
• digitisation of commerce and supply chains
High potential data sources
• Telecom
• Utilities
• Retailers
• Financial sector
• Satellite
• Other
Example: Telecom data applications
• small area population estimates
• service populations
• travel patterns
• seasonal population movements
• event populations
• internet use……
How do we ?
o identify characteristics of handset owners?
o turn handset counts into people
Initiate exploratory R&D
Targeted streams of investigation
 Use of satellite imagery to determine land utilisation
 Use of integrated demographic data for small area
modelling of unemployment
 Use of mobile device messaging records for real time
estimation of service populations
Progress the methodological framework and trial new
technology approaches
 Machine learning
 Multidimensional data visualisation
 Distributed computing
 Open linked data
Big Data challenges
• Data quality
• Data volatility and stability
• Data representativeness
• Data dimensionality
• Statistical modelling and inference
Data quality
Big Data sets/streams are generally noisy and often
unstructured – they need to undergo non-trivial filtering and
cleaning process before they can be used
Balancing the complexity of the cleaning process with the
information value of the obtained results is significant issue
What methods can be used for noise reduction?
How do we deal with missing data?
Data volatility and stability
Streaming data may fluctuate over short time frames
Data sources themselves may change or disappear
What becomes of time series in a world where data streams
and sources are transient?
Data representativeness
How representative are the data from emerging Big Data
sources of the phenomena we are trying to measure?
How do we determine whether there are hidden biases?
What methods can be used to reduce the volume of data while
retaining the information value of the data and statistical
validity of the analysis?
Data dimensionality
Dimensionality is a significant and challenging aspect of
“bigness”
Dimension has an impact on
 Storage of data
 Processing and analysis of data
Existing storage and computational paradigms fail badly
Statistical modelling and inference
How can population characteristics be determined?
 What is the population? In many cases this is not known (e.g.
Twitter)
 Can we draw a sample and calculate descriptive statistics?
How do we avoid apophenia?
 Seeing meaningful patterns and connections where none exist
 The number of fake correlations grows with the number of
variables
“To understand is to perceive patterns.” – Isaiah Berlin
From ‘V’ (what) to ‘C’ (how)
‘What’ has changed about data?
Vs: Volume, Velocity, Variety, Veracity,
Volatility
‘How’ will we change?
Cs: Creating, Computing,
Comprehending, Competing,
Collaboration
Big Data ‘C’s and the ABS - CREATING
The world is CREATING data like never before and every
individual, household and business we interact with will change in
data creation:
• The Internet of Things (M2M) becomes the ‘Internet of
Everything’
• Sometimes called the 4 internets: people, things, information,
places are all network addressable, most have data
producing/collecting/transmitting capability
Big Data ‘C’s and the ABS - COMPUTING
COMPUTING data like never before. Some examples:
• emerged from Web-scale problems such as search engines with
new solutions such as key-value databases (Hadoop, NOSQL DBs
• advanced computation algorithms and approaches become
‘popularised’ e.g. machine learning approaches, automated
visualisation and explanations systems, data mining/discovery,
semantic (knowledge) representation and reasoning systems
requiring ‘search’
• statistical analysis-as-a-service e.g. auto-coding, confidentiality,
time series analysis, etc
• distributed/parallel computation for low-cost multi-core, multi-
socket, multi-computers, in-memory computation technologies
• embedded processors, sensors/RFIDs/GPS/SIM
• the ‘logical data warehouse’
Big Data ‘C’s and the ABS - COMPREHENDING
COMPREHENDING/CONSUMING data requiring new tools in the ABS kit bag:
• tables – static and data consumer dynamically defined (ABS.stat, REEM Table
Builder) in standard XML formats like SDMX
• visualisation – for internal ABS insight, for our ‘retail’ dissemination, ‘smart’ insight
where software suggests the best way to see data: ‘telling the story’
• narrative – table to text production (auto produce media release & part of main
features):
• voice – text to speech to read narrative & data for Accessibility speech to text for
NIRS analysis
• semantic data outputs in OWL/RDF
• hybrid of above – to add value to information, for ABS data consumers to enhance
comprehension
• data streams – data-as-a-service for M2M (the ABS public Web services library) ,
could be called ‘the embedded ABS’
and all this with adaptive/responsive design for multiple end-points devices types!!!
Big Data ‘C’s and the ABS - COMPETING
COMPETING with data, to obtain it and use it for competitive
advantage
• In some subject-matter areas there is more competition. Who
can make a statistical index ? Anyone with a spreadsheet;
• Who else wants to be influential in and/or monetarise statistics?
• Everyone else starts to understand INFONOMICS
• More ‘agent’ data sources for ABS as we may not have a the
capability to collect (full) unit record ‘big data’?
Big Data ‘C’s and the ABS : COLLABORATING
In ABS
In Government
In Academia
Across the international statistical community
ABS Capabilities, expertise
• collect and process large quantities of data
• data ‘cleansing’
• data standards and framework
• data integration
• methodological techniques
• strong analytical capability
• sophisticated web based dissemination system
• data quality framework
ABS Big Data Challenges
Business Benefit
Validity of Statistical Inference
Privacy and Public Trust
Data Integrity
Data Ownership and Access
Computational Efficacy
Technology Infrastructure
(Source: “Big data and the ABS – from ideas to action”, ABS MM paper, Oct 2013)
Value explained?
Summary - considerations
• Value :
• what’s the proposition
• what’s the question
• Strategy; plan, investments
• Data sources & acquisition
• Eyes open – data challenges
• Build capabilities: V’s to C’s
Questions?

Mais conteúdo relacionado

Mais procurados

Team 2 Big Data Presentation
Team 2 Big Data PresentationTeam 2 Big Data Presentation
Team 2 Big Data PresentationMatthew Urdan
 
Ppt for Application of big data
Ppt for Application of big dataPpt for Application of big data
Ppt for Application of big dataPrashant Sharma
 
Big Data & Analytics (Conceptual and Practical Introduction)
Big Data & Analytics (Conceptual and Practical Introduction)Big Data & Analytics (Conceptual and Practical Introduction)
Big Data & Analytics (Conceptual and Practical Introduction)Yaman Hajja, Ph.D.
 
Everis big data_wilson_v1.4
Everis big data_wilson_v1.4Everis big data_wilson_v1.4
Everis big data_wilson_v1.4wilson_lucas
 
Big data in transport an international transport forum overview oct 2013
Big data in transport    an international transport forum overview oct 2013Big data in transport    an international transport forum overview oct 2013
Big data in transport an international transport forum overview oct 2013OpenSkyData
 
Tools and techniques adopted for big data analytics
Tools and techniques adopted for big data analyticsTools and techniques adopted for big data analytics
Tools and techniques adopted for big data analyticsJOSEPH FRANCIS
 
Big data analytic market opportunity
Big data analytic market opportunityBig data analytic market opportunity
Big data analytic market opportunityStanley Wang
 
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of things
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of thingsBig Data & Future - Big Data, Analytics, Cloud, SDN, Internet of things
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of thingsRamakant Gawande
 
A Short History of Big Data
A Short History of Big DataA Short History of Big Data
A Short History of Big DataGadi Eichhorn
 
Big Data and The Future of Insight - Future Foundation
Big Data and The Future of Insight - Future FoundationBig Data and The Future of Insight - Future Foundation
Big Data and The Future of Insight - Future FoundationForesight Factory
 

Mais procurados (20)

Data Mining With Big Data
Data Mining With Big DataData Mining With Big Data
Data Mining With Big Data
 
Dr Ohad Barzilay
Dr Ohad BarzilayDr Ohad Barzilay
Dr Ohad Barzilay
 
Team 2 Big Data Presentation
Team 2 Big Data PresentationTeam 2 Big Data Presentation
Team 2 Big Data Presentation
 
Ppt for Application of big data
Ppt for Application of big dataPpt for Application of big data
Ppt for Application of big data
 
Big Data & Analytics (Conceptual and Practical Introduction)
Big Data & Analytics (Conceptual and Practical Introduction)Big Data & Analytics (Conceptual and Practical Introduction)
Big Data & Analytics (Conceptual and Practical Introduction)
 
Big data unit i
Big data unit iBig data unit i
Big data unit i
 
Everis big data_wilson_v1.4
Everis big data_wilson_v1.4Everis big data_wilson_v1.4
Everis big data_wilson_v1.4
 
What is Big Data?
What is Big Data?What is Big Data?
What is Big Data?
 
Big data
Big dataBig data
Big data
 
Big data in transport an international transport forum overview oct 2013
Big data in transport    an international transport forum overview oct 2013Big data in transport    an international transport forum overview oct 2013
Big data in transport an international transport forum overview oct 2013
 
What is Data Science
What is Data ScienceWhat is Data Science
What is Data Science
 
Big data-ppt-
Big data-ppt-Big data-ppt-
Big data-ppt-
 
Tools and techniques adopted for big data analytics
Tools and techniques adopted for big data analyticsTools and techniques adopted for big data analytics
Tools and techniques adopted for big data analytics
 
Big data analytic market opportunity
Big data analytic market opportunityBig data analytic market opportunity
Big data analytic market opportunity
 
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of things
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of thingsBig Data & Future - Big Data, Analytics, Cloud, SDN, Internet of things
Big Data & Future - Big Data, Analytics, Cloud, SDN, Internet of things
 
A Short History of Big Data
A Short History of Big DataA Short History of Big Data
A Short History of Big Data
 
Data Storytelling
Data StorytellingData Storytelling
Data Storytelling
 
Big Data and The Future of Insight - Future Foundation
Big Data and The Future of Insight - Future FoundationBig Data and The Future of Insight - Future Foundation
Big Data and The Future of Insight - Future Foundation
 
Fraud and Risk in Big Data
Fraud and Risk in Big DataFraud and Risk in Big Data
Fraud and Risk in Big Data
 
Big Data Trends
Big Data TrendsBig Data Trends
Big Data Trends
 

Destaque

Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip Nesci
Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip NesciAustralian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip Nesci
Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip NesciIT Network marcus evans
 
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartney
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartneyAustralian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartney
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartneyIT Network marcus evans
 
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...IT Network marcus evans
 
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...IT Network marcus evans
 
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...IT Network marcus evans
 
A New Approach to the CIO role by Redefining the IT Department’s Contribution...
A New Approach to the CIO role by Redefining the IT Department’s Contribution...A New Approach to the CIO role by Redefining the IT Department’s Contribution...
A New Approach to the CIO role by Redefining the IT Department’s Contribution...IT Network marcus evans
 
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...IT Network marcus evans
 

Destaque (8)

Home Hunter
Home Hunter Home Hunter
Home Hunter
 
Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip Nesci
Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip NesciAustralian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip Nesci
Australian CIO Summit 2012: Mobility @ Southern Health by Dr. Philip Nesci
 
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartney
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartneyAustralian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartney
Australian CIO Summit 2012: DEFINING THE CURVE by Dr Gerry McCartney
 
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...
Australian CIO Summit 2012: Architecting a Secure Castle in the Clouds by Dr ...
 
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...
Australian CIO Summit 2012: Driving High Value, Low Cost Business Intelligenc...
 
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...
Australian CIO Summit 2012: Modernising New Zealand’s Border Clearance by Cha...
 
A New Approach to the CIO role by Redefining the IT Department’s Contribution...
A New Approach to the CIO role by Redefining the IT Department’s Contribution...A New Approach to the CIO role by Redefining the IT Department’s Contribution...
A New Approach to the CIO role by Redefining the IT Department’s Contribution...
 
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...
Australian CIO Summit 2012: Implementing change in The Westpac Group by Jim B...
 

Semelhante a Bigger and Better: Employing a Holistic Strategy for Big Data toward a Strong Value-Adding Proposition

Bigdata and Hadoop with applications
Bigdata and Hadoop with applicationsBigdata and Hadoop with applications
Bigdata and Hadoop with applicationsPadma Metta
 
Data science and business analytics
Data  science and business analyticsData  science and business analytics
Data science and business analyticsInbavalli Valli
 
Data Governance in the Big Data Era
Data Governance in the Big Data EraData Governance in the Big Data Era
Data Governance in the Big Data EraPieter De Leenheer
 
Data Science - An emerging Stream of Science with its Spreading Reach & Impact
Data Science - An emerging Stream of Science with its Spreading Reach & ImpactData Science - An emerging Stream of Science with its Spreading Reach & Impact
Data Science - An emerging Stream of Science with its Spreading Reach & ImpactDr. Sunil Kr. Pandey
 
Data science and its potential to change business as we know it. The Roadmap ...
Data science and its potential to change business as we know it. The Roadmap ...Data science and its potential to change business as we know it. The Roadmap ...
Data science and its potential to change business as we know it. The Roadmap ...InnoTech
 
An Introduction to Data Science.pptx learn
An Introduction to Data Science.pptx learnAn Introduction to Data Science.pptx learn
An Introduction to Data Science.pptx learnPavankalayankusetty
 
Digitalization: A Challenge and An Opportunity for Banks
Digitalization: A Challenge and An Opportunity for BanksDigitalization: A Challenge and An Opportunity for Banks
Digitalization: A Challenge and An Opportunity for BanksJérôme Kehrli
 
The New Convergence of Data; The Next Strategic Business Advantage
The New Convergence of Data; The Next Strategic Business AdvantageThe New Convergence of Data; The Next Strategic Business Advantage
The New Convergence of Data; The Next Strategic Business AdvantageJoAnna Cheshire
 
Getting started in Data Science (April 2017, Los Angeles)
Getting started in Data Science (April 2017, Los Angeles)Getting started in Data Science (April 2017, Los Angeles)
Getting started in Data Science (April 2017, Los Angeles)Thinkful
 
Data Governance in a big data era
Data Governance in a big data eraData Governance in a big data era
Data Governance in a big data eraPieter De Leenheer
 
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...Pieter De Leenheer
 
The Bigger They Are The Harder They Fall
The Bigger They Are The Harder They FallThe Bigger They Are The Harder They Fall
The Bigger They Are The Harder They FallTrillium Software
 
Transformando la vida cotidiana a través de Big Data
Transformando la vida cotidiana a través de Big DataTransformando la vida cotidiana a través de Big Data
Transformando la vida cotidiana a través de Big DataUX Nights
 
02 a holistic approach to big data
02 a holistic approach to big data02 a holistic approach to big data
02 a holistic approach to big dataRaul Chong
 
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupCrowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupEdward Curry
 
Big Data, NoSQL, NewSQL & The Future of Data Management
Big Data, NoSQL, NewSQL & The Future of Data ManagementBig Data, NoSQL, NewSQL & The Future of Data Management
Big Data, NoSQL, NewSQL & The Future of Data ManagementTony Bain
 

Semelhante a Bigger and Better: Employing a Holistic Strategy for Big Data toward a Strong Value-Adding Proposition (20)

Bigdata and Hadoop with applications
Bigdata and Hadoop with applicationsBigdata and Hadoop with applications
Bigdata and Hadoop with applications
 
Data science and business analytics
Data  science and business analyticsData  science and business analytics
Data science and business analytics
 
Monetize Big Data
Monetize Big DataMonetize Big Data
Monetize Big Data
 
Data Governance in the Big Data Era
Data Governance in the Big Data EraData Governance in the Big Data Era
Data Governance in the Big Data Era
 
Data Science - An emerging Stream of Science with its Spreading Reach & Impact
Data Science - An emerging Stream of Science with its Spreading Reach & ImpactData Science - An emerging Stream of Science with its Spreading Reach & Impact
Data Science - An emerging Stream of Science with its Spreading Reach & Impact
 
Data science and its potential to change business as we know it. The Roadmap ...
Data science and its potential to change business as we know it. The Roadmap ...Data science and its potential to change business as we know it. The Roadmap ...
Data science and its potential to change business as we know it. The Roadmap ...
 
An Introduction to Data Science.pptx learn
An Introduction to Data Science.pptx learnAn Introduction to Data Science.pptx learn
An Introduction to Data Science.pptx learn
 
Digitalization: A Challenge and An Opportunity for Banks
Digitalization: A Challenge and An Opportunity for BanksDigitalization: A Challenge and An Opportunity for Banks
Digitalization: A Challenge and An Opportunity for Banks
 
Big Data for Library Services (2017)
Big Data for Library Services (2017)Big Data for Library Services (2017)
Big Data for Library Services (2017)
 
The New Convergence of Data; The Next Strategic Business Advantage
The New Convergence of Data; The Next Strategic Business AdvantageThe New Convergence of Data; The Next Strategic Business Advantage
The New Convergence of Data; The Next Strategic Business Advantage
 
Getting started in Data Science (April 2017, Los Angeles)
Getting started in Data Science (April 2017, Los Angeles)Getting started in Data Science (April 2017, Los Angeles)
Getting started in Data Science (April 2017, Los Angeles)
 
Data Governance in a big data era
Data Governance in a big data eraData Governance in a big data era
Data Governance in a big data era
 
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...
MIT ICIQ 2017 Keynote: Data Governance and Data Capitalization in the Big Dat...
 
The Bigger They Are The Harder They Fall
The Bigger They Are The Harder They FallThe Bigger They Are The Harder They Fall
The Bigger They Are The Harder They Fall
 
Transformando la vida cotidiana a través de Big Data
Transformando la vida cotidiana a través de Big DataTransformando la vida cotidiana a través de Big Data
Transformando la vida cotidiana a través de Big Data
 
02 a holistic approach to big data
02 a holistic approach to big data02 a holistic approach to big data
02 a holistic approach to big data
 
M.Florence Dayana
M.Florence DayanaM.Florence Dayana
M.Florence Dayana
 
Big Data et eGovernment
Big Data et eGovernmentBig Data et eGovernment
Big Data et eGovernment
 
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupCrowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
 
Big Data, NoSQL, NewSQL & The Future of Data Management
Big Data, NoSQL, NewSQL & The Future of Data ManagementBig Data, NoSQL, NewSQL & The Future of Data Management
Big Data, NoSQL, NewSQL & The Future of Data Management
 

Mais de IT Network marcus evans

How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...
How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...
How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...IT Network marcus evans
 
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...IT Network marcus evans
 
What CIOs Need to Know about the Future of Technology - Steve Sammartino, Fu...
What CIOs Need to Know about the Future of Technology  - Steve Sammartino, Fu...What CIOs Need to Know about the Future of Technology  - Steve Sammartino, Fu...
What CIOs Need to Know about the Future of Technology - Steve Sammartino, Fu...IT Network marcus evans
 
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...IT Network marcus evans
 
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...IT Network marcus evans
 
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...IT Network marcus evans
 
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...IT Network marcus evans
 
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...IT Network marcus evans
 
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news release
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news releaseHow CIOs Can Execute Change Programmes Successfully - Melissa Bell news release
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news releaseIT Network marcus evans
 
Transitioning to a Digital Enterprise - Dan Hushon News Release
Transitioning to a Digital Enterprise -  Dan Hushon News ReleaseTransitioning to a Digital Enterprise -  Dan Hushon News Release
Transitioning to a Digital Enterprise - Dan Hushon News ReleaseIT Network marcus evans
 
The one-on-one meetings with potential customers is what matters most
The one-on-one meetings with potential customers is what matters mostThe one-on-one meetings with potential customers is what matters most
The one-on-one meetings with potential customers is what matters mostIT Network marcus evans
 
Where marcus evans fits in our business development mix
Where marcus evans fits in our business development mixWhere marcus evans fits in our business development mix
Where marcus evans fits in our business development mixIT Network marcus evans
 
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...IT Network marcus evans
 
Adaptive Transformation: Transitioning from Resource to Flow Efficiency
Adaptive Transformation: Transitioning from Resource to Flow Efficiency Adaptive Transformation: Transitioning from Resource to Flow Efficiency
Adaptive Transformation: Transitioning from Resource to Flow Efficiency IT Network marcus evans
 
The Shifting Role of the CIO as a Strategic Innovator
The Shifting Role of the CIO as a Strategic InnovatorThe Shifting Role of the CIO as a Strategic Innovator
The Shifting Role of the CIO as a Strategic InnovatorIT Network marcus evans
 
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...IT Network marcus evans
 
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...IT Network marcus evans
 
Building IT Infrastructures to Interact with Big Data - Doug Roberts, Associ...
Building IT Infrastructures to Interact with Big Data  - Doug Roberts, Associ...Building IT Infrastructures to Interact with Big Data  - Doug Roberts, Associ...
Building IT Infrastructures to Interact with Big Data - Doug Roberts, Associ...IT Network marcus evans
 
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...IT Network marcus evans
 

Mais de IT Network marcus evans (20)

How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...
How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...
How CIOs Can Bridge the Gap Between Executive Leadership and IT Teams - Greg ...
 
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...
How the IT Function Can Enable the Organisation to Achieve its Goals - Anupam...
 
What CIOs Need to Know about the Future of Technology - Steve Sammartino, Fu...
What CIOs Need to Know about the Future of Technology  - Steve Sammartino, Fu...What CIOs Need to Know about the Future of Technology  - Steve Sammartino, Fu...
What CIOs Need to Know about the Future of Technology - Steve Sammartino, Fu...
 
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...
The Low Risk Way to Expanding a Business into South East Asia Joe Fussell & D...
 
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...
Why IT Systems Need to Conduct IT System Penetration Tests - Chris Gatford, N...
 
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...
Gestión, Ejecución, y Eficiencia a Escala Panregional. Desafíos a Superar-Ant...
 
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...
Time Machines: The Evolution and Application of Predictive Analytics-Dr Steve...
 
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...
Data Breaches and Security: Ditching Data Disasters-Michael McNeil, Philips H...
 
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news release
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news releaseHow CIOs Can Execute Change Programmes Successfully - Melissa Bell news release
How CIOs Can Execute Change Programmes Successfully - Melissa Bell news release
 
Transitioning to a Digital Enterprise - Dan Hushon News Release
Transitioning to a Digital Enterprise -  Dan Hushon News ReleaseTransitioning to a Digital Enterprise -  Dan Hushon News Release
Transitioning to a Digital Enterprise - Dan Hushon News Release
 
Grow Your Business
Grow Your Business Grow Your Business
Grow Your Business
 
The one-on-one meetings with potential customers is what matters most
The one-on-one meetings with potential customers is what matters mostThe one-on-one meetings with potential customers is what matters most
The one-on-one meetings with potential customers is what matters most
 
Where marcus evans fits in our business development mix
Where marcus evans fits in our business development mixWhere marcus evans fits in our business development mix
Where marcus evans fits in our business development mix
 
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...
Crafting the Right Mobile Device Management Framework to Mitigate Risks and M...
 
Adaptive Transformation: Transitioning from Resource to Flow Efficiency
Adaptive Transformation: Transitioning from Resource to Flow Efficiency Adaptive Transformation: Transitioning from Resource to Flow Efficiency
Adaptive Transformation: Transitioning from Resource to Flow Efficiency
 
The Shifting Role of the CIO as a Strategic Innovator
The Shifting Role of the CIO as a Strategic InnovatorThe Shifting Role of the CIO as a Strategic Innovator
The Shifting Role of the CIO as a Strategic Innovator
 
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...
Active Defence: Safeguarding Crucial Capability while Boosting Functionality ...
 
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...
Outsourcing to Save IT Costs: Interview with: George Bower, President and Chi...
 
Building IT Infrastructures to Interact with Big Data - Doug Roberts, Associ...
Building IT Infrastructures to Interact with Big Data  - Doug Roberts, Associ...Building IT Infrastructures to Interact with Big Data  - Doug Roberts, Associ...
Building IT Infrastructures to Interact with Big Data - Doug Roberts, Associ...
 
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...
How Infosec Can Become a Business Enabler: Interview with: Dr Tim Redhead, Di...
 

Último

Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii SoldatenkoFwdays
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxNavinnSomaal
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostZilliz
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024Stephanie Beckett
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesZilliz
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embeddingZilliz
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 

Último (20)

Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptx
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector Databases
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embedding
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 

Bigger and Better: Employing a Holistic Strategy for Big Data toward a Strong Value-Adding Proposition

  • 1. Australian CIO Summit 2014 28 – 30 July 2014 Bigger and Better: Employing a Holistic Strategy for Big Data toward a Strong Value-Adding Proposition Patrick Hadley Chief Information Officer Australian Bureau of Statistics
  • 2. Not Another ‘Big Data’ Presentation (‘V’ is not the only letter in the alphabet!)
  • 3. Or, to put it another way………
  • 4. The promise Big data is at the foundation of all the megatrends that are happening today, from social to mobile to the cloud to gaming. - Chris Lynch, ex Vertica CEO “Big Data is a tidal wave, which in the next decade will create consumer – and producer – value in almost every major sector of the economy” Philip Evans “….a tremendous wave of innovation, productivity and growth… all driven by big data” McKinsey “Big Data: A Revolution that Will Transform how We Live, Work, and Think” Viktor Mayer-Schönberger and Kenneth Cukier. 2013.
  • 5. Big data is like teenage sex: everyone talks about it, nobody really knows how to do it, everyone thinks everyone else is doing it, so everyone claims they are doing it... Dan Ariely, 2013 In God we trust; all others must bring data. W.E. Deming Or, the reality…….
  • 6. Agenda • What is Big Data (3/4/5/6 v’s) • Sources of Data • Data as an asset • Open Data • Opportunities…..applications…..benefits • Data Management • Data Analytics; technologies • Security • Privacy • Skills and capabilities • …… and on
  • 7. Agenda • What is Big Data (3/4/5/6 v’s) • Sources od Data • Data as an asset • Open Data • Opportunities…..applications…..benefits • Data Management • Data Analytics; technologies • Security • Privacy • Skills and capabilities • …… and on
  • 8. Today ……… • The use of Big Data in official statistics • ABS initiatives, experiences and capabilities • Learnings: Towards a strong value- adding proposition
  • 9. Big Data in Official Statistics The vision….. A richer, more dynamic statistical picture of Australia; Opportunity: reduce costs; improve quality
  • 10. Sources of Data • digital descriptions of the physical environment • sensors and other devices • communications networks • individual behaviour and information • digitisation of commerce and supply chains
  • 11. High potential data sources • Telecom • Utilities • Retailers • Financial sector • Satellite • Other
  • 12. Example: Telecom data applications • small area population estimates • service populations • travel patterns • seasonal population movements • event populations • internet use…… How do we ? o identify characteristics of handset owners? o turn handset counts into people
  • 13. Initiate exploratory R&D Targeted streams of investigation  Use of satellite imagery to determine land utilisation  Use of integrated demographic data for small area modelling of unemployment  Use of mobile device messaging records for real time estimation of service populations Progress the methodological framework and trial new technology approaches  Machine learning  Multidimensional data visualisation  Distributed computing  Open linked data
  • 14. Big Data challenges • Data quality • Data volatility and stability • Data representativeness • Data dimensionality • Statistical modelling and inference
  • 15. Data quality Big Data sets/streams are generally noisy and often unstructured – they need to undergo non-trivial filtering and cleaning process before they can be used Balancing the complexity of the cleaning process with the information value of the obtained results is significant issue What methods can be used for noise reduction? How do we deal with missing data?
  • 16. Data volatility and stability Streaming data may fluctuate over short time frames Data sources themselves may change or disappear What becomes of time series in a world where data streams and sources are transient?
  • 17. Data representativeness How representative are the data from emerging Big Data sources of the phenomena we are trying to measure? How do we determine whether there are hidden biases? What methods can be used to reduce the volume of data while retaining the information value of the data and statistical validity of the analysis?
  • 18. Data dimensionality Dimensionality is a significant and challenging aspect of “bigness” Dimension has an impact on  Storage of data  Processing and analysis of data Existing storage and computational paradigms fail badly
  • 19. Statistical modelling and inference How can population characteristics be determined?  What is the population? In many cases this is not known (e.g. Twitter)  Can we draw a sample and calculate descriptive statistics? How do we avoid apophenia?  Seeing meaningful patterns and connections where none exist  The number of fake correlations grows with the number of variables “To understand is to perceive patterns.” – Isaiah Berlin
  • 20. From ‘V’ (what) to ‘C’ (how) ‘What’ has changed about data? Vs: Volume, Velocity, Variety, Veracity, Volatility ‘How’ will we change? Cs: Creating, Computing, Comprehending, Competing, Collaboration
  • 21. Big Data ‘C’s and the ABS - CREATING The world is CREATING data like never before and every individual, household and business we interact with will change in data creation: • The Internet of Things (M2M) becomes the ‘Internet of Everything’ • Sometimes called the 4 internets: people, things, information, places are all network addressable, most have data producing/collecting/transmitting capability
  • 22. Big Data ‘C’s and the ABS - COMPUTING COMPUTING data like never before. Some examples: • emerged from Web-scale problems such as search engines with new solutions such as key-value databases (Hadoop, NOSQL DBs • advanced computation algorithms and approaches become ‘popularised’ e.g. machine learning approaches, automated visualisation and explanations systems, data mining/discovery, semantic (knowledge) representation and reasoning systems requiring ‘search’ • statistical analysis-as-a-service e.g. auto-coding, confidentiality, time series analysis, etc • distributed/parallel computation for low-cost multi-core, multi- socket, multi-computers, in-memory computation technologies • embedded processors, sensors/RFIDs/GPS/SIM • the ‘logical data warehouse’
  • 23. Big Data ‘C’s and the ABS - COMPREHENDING COMPREHENDING/CONSUMING data requiring new tools in the ABS kit bag: • tables – static and data consumer dynamically defined (ABS.stat, REEM Table Builder) in standard XML formats like SDMX • visualisation – for internal ABS insight, for our ‘retail’ dissemination, ‘smart’ insight where software suggests the best way to see data: ‘telling the story’ • narrative – table to text production (auto produce media release & part of main features): • voice – text to speech to read narrative & data for Accessibility speech to text for NIRS analysis • semantic data outputs in OWL/RDF • hybrid of above – to add value to information, for ABS data consumers to enhance comprehension • data streams – data-as-a-service for M2M (the ABS public Web services library) , could be called ‘the embedded ABS’ and all this with adaptive/responsive design for multiple end-points devices types!!!
  • 24. Big Data ‘C’s and the ABS - COMPETING COMPETING with data, to obtain it and use it for competitive advantage • In some subject-matter areas there is more competition. Who can make a statistical index ? Anyone with a spreadsheet; • Who else wants to be influential in and/or monetarise statistics? • Everyone else starts to understand INFONOMICS • More ‘agent’ data sources for ABS as we may not have a the capability to collect (full) unit record ‘big data’?
  • 25. Big Data ‘C’s and the ABS : COLLABORATING In ABS In Government In Academia Across the international statistical community
  • 26. ABS Capabilities, expertise • collect and process large quantities of data • data ‘cleansing’ • data standards and framework • data integration • methodological techniques • strong analytical capability • sophisticated web based dissemination system • data quality framework
  • 27. ABS Big Data Challenges Business Benefit Validity of Statistical Inference Privacy and Public Trust Data Integrity Data Ownership and Access Computational Efficacy Technology Infrastructure (Source: “Big data and the ABS – from ideas to action”, ABS MM paper, Oct 2013)
  • 29. Summary - considerations • Value : • what’s the proposition • what’s the question • Strategy; plan, investments • Data sources & acquisition • Eyes open – data challenges • Build capabilities: V’s to C’s