SlideShare uma empresa Scribd logo
1 de 62
Open Data

Clare Somerville
Selena Smeaton
Trish O’Kane
Everyone has
 the right to
information




                2
Everyone has
 the right to
information




      EIS

                3
Everyone has
 the right to
information




                4
What
            is it?


                        Why
Risks?
                        do it?
            Open
            data

    What             Who’s
    about            doing
     NZ?              it?
“Open data is the idea that
 certain data should be available
to everyone to use and republish
as they wish, without restrictions
from copyright, patents or other
     mechanisms of control”

           Wikipedia
7
USA        • data.gov           May 2009

      UK        • data.gov.uk        Sep 2009

    Norway      • data.norge.no      Apr 2010

   Australia    • data.gov.au        Mar 2011

    Kenya       • opendata.go.ke     Jul 2011

  Netherlands   • data.overheid.nl

      NZ        • data.govt.nz       Aug 2011

     Chile      • datos.gob.cl

     Italy      • data.gov.it

    Spain       • datos.gob.es

   Uruguay      • datos.gub.uy       Nov 2011

    France      • data.gouv.fr       Dec 2011

    Brazil      • dados.gov.br       Dec 2011




Who? Where? When?
Move paper documents to the internet
• PDFs, Word documents
• Saves printing or mail
• Not great to extract info

Add metadata
• Documents enhanced
• Raw data, visualisations, sort, filter etc

Programmatic access
• Data can be loaded into programs for big data research



Levels of useability
NZ Declaration on Open and
Transparent Government
“Building on NZ’s democratic tradition, the government
commits to actively releasing high value public data.
The government holds data on behalf of the NZ public.
We release it to enable the private and community sectors to
use it to grow the economy, strengthen our social and
cultural fabric, and sustain our environment. We release it to
encourage business and community involvement in
government decision making”
                                                8 August 2011
Principle                 Description

Open                      For public access

Protected                 Personal info

Readily available         Discoverable, accessible, online

Trusted & authoritative   Accurate, relevant, timely, consistent,
                          authoritative single source
Well managed              Held by government on behalf of public

Reasonably priced         Free

Reusable                  Highest possible granularity; reusable;
                          machine readable; metadata

Data & Information Management
Principles
NZ Priorities
NZ Priorities
 Explore finances
 More transparent
 How government
  spends
 Increase the data’s
  value
 Feedback loop - $ saved; better projects
 Engage citizens in government
 Info to citizens in tough economic times
 Individual salaries; payments to vendors


Massachusetts Open Checkbook
   Transparency
    ◦ Access data used by council in decision
      making; use it for additional social value
   Participation
    ◦ Analyse, propose ideas, gain insights; enrich
      lives of individuals and community
   Collaboration
    ◦ Suggest ideas about additional data; apps that
      could use the data; improving access




Ireland (Fingal)
Build
           Accountability
                             participation




                                              Promote
Transparency                                  economic
                      Open Data              innovation
                          …
                         the
                       reasons
                         why
Consistency         Meaning


            Risks


  Quality           Usage
Public money
                                was used to
            Data belongs to
                               fund the work
               everyone
                                so should be
                              freely available


                                              In science -
                                            more discovery
Facts can’t be
                                              is related to
 copyrighted
                                             better access
                       Arguments                 to data
                        for Open
                          Data
 Intro
 What are other countries doing?
 What is NZ doing?
 Challenges, risks, opportunities
 What do we need to do to prepare?




Agenda
21
22
23
24
   Recently sought input into the US Open
    Government National Action Plan
    ◦   Measures?
    ◦   Minimum standards for participation?
    ◦   How to compare participation?
    ◦   Effective technology and tools?




US National Action Plan
26
 Make data freely available to the public,
  developers and business - and charge where
  appropriate
 Be a centre of excellence and expertise in
  collecting, managing storing and distributing
  data
 Be a vehicle which will attract private
  investment.




                                                  27
http://www.guardian.co.uk/news/datablog/2011/jan/14/public-data-corporation
                                                                              28
€250bn across Europe every year




                                  29
30
 Intro
 What are other countries doing?
 What is NZ doing?
 Challenges, risks, opportunities
 What do we need to do to prepare?




Agenda
2005 India and Germany
                                        2002 Japan and Mexico
                                       2000 United Kingdom
                          1998 South Korea
                         1997 Ireland and Thailand
                      1992 Hungary
            1982 Australia, Canada, New Zealand
          1978 France, Netherlands
         1970 Denmark, Norway
        1966 United States
       1917,1951 Finland
18th Century Sweden




 Freedom of information legislation
OIA vs
Open Data
Data.govt.nz
NZ Open Government will be
asking public service agencies:
   What do you                          And has
                      Not personal
    hold on behalf    Not confidential
                                         high
    of the public                        value
                      Not classified
                                         impact
    that is

         Economic and social
        Transparency and democratic
                                   Efficiency
     “If you get away from people and
     businesses then it’s easier”
And also asking:
 What information have you released?
 What have you not released because of
  insurmountable barriers?
 Quality issues are not a barrier to release

    “If it’s good enough
    for business use
    then it’s good enough to release”

                       Archives NZ are also investigating
                                 high-value information
 Intro
 What are other countries doing?
 What is NZ doing?
 Challenges, risks, opportunities
 What do we need to do to prepare?




Agenda
Third parties and mashups




                        Third
                       parties
Opengovt.org.nz
Classic mash-up
No census? Use other sources
   Caveat for data supplied.
    ◦ The data supplied is an extract from the SMS
      fire incident reporting system maintained by
      the New Zealand Fire Service. It is not
      complete statistical data and should not
      be relied on for statistical analysis.
    ◦ A full incident report can be provided on
      request under the Official Information Act.




Fire Incident Summary Data
Bob
                     Inc




Example: Motor Vehicle registration
   1998
    Privacy Commissioner:
    “We would like to see a closer relationship
    between the purposes of the register and
    the release of information from it, such as
    when information is needed to enforce the
    law, to gather statistics, and to develop
    transport policy.
8 years later…
2010
Bob
    Inc


Since May 2011
MVR Information about individuals
post May 2011
Gazetted
Access
Authorisations

“access to names & addresses of persons:
 - who are currently registered in respect of a motor
 vehicle(s); and
 - who have not instructed the Registrar of
 Motor Vehicles to withhold their details.
 Speer, Speer & Associates Limited
“… address information associated with
specific registration plate numbers to assist
with research on customer distribution
patterns around shopping centres.”
Until 30 Nov 2016
 Intro
 What are other countries doing?
 What is NZ doing?
 Challenges, risks, opportunities
 What do we need to do to prepare?




Agenda
What to do to prepare?
                         Accreted
                           over
                          time…
   Know your legislation
   Establish principles and defend them
   Know what you have released before and
    why you released it
   What would you restrict and why?
   Be prepared for Open Government
    questions
    ◦ Before you are asked
    ◦ Before you publish



Mandate and principles
Know what you’ve got
Know what you shouldn’t have

   Data collected but not needed
    ◦ Data sets legitimately shared but…
    ◦ Application forms that ask for …
    ◦ Do you really need to?
 Legacy datasets
  without owners?
 Duplicates of data
    ◦ Your own
    ◦ From other agencies
Triage and isolate
   Which data or information
                    seems fine
                  seems dodgy
              must not be shared



   Identify, isolate or filter
    information
    that shouldn’t be shared
Manage your data & information
    Principle: Reusable
     ◦ Highest possible granularity; reusable; machine
       readable; metadata


    4 reasons we keep data…
    Governance
    Standards, policies
    Metadata
    Structure
     the unstructured
    Data lifecycle management
    Disposal
   We’re just getting started
   Plenty of opportunities…
   …many challenges
   We don’t know exactly what lies ahead…
   ..but we can prepare.
   1.5+ million vacancies…apply soon!




In conclusion
Open Data

Clare.Somerville@knoware.co.nz
Selena Smeaton@knoware.co.nz
Trish O’Kane@knoware.co.nz
© The Knowledge Warehouse Ltd, 2012

Mais conteúdo relacionado

Mais procurados

Big data security the perfect storm
Big data security   the perfect stormBig data security   the perfect storm
Big data security the perfect storm
Ulf Mattsson
 
Dwyer "Privacy by Design: Can It Work?"
Dwyer "Privacy by Design: Can It Work?"Dwyer "Privacy by Design: Can It Work?"
Dwyer "Privacy by Design: Can It Work?"
Cathy Dwyer
 

Mais procurados (20)

Big data security the perfect storm
Big data security   the perfect stormBig data security   the perfect storm
Big data security the perfect storm
 
iLive2014 Presentation | Casper Blicher Olsen - Internal barriers from taking...
iLive2014 Presentation | Casper Blicher Olsen - Internal barriers from taking...iLive2014 Presentation | Casper Blicher Olsen - Internal barriers from taking...
iLive2014 Presentation | Casper Blicher Olsen - Internal barriers from taking...
 
The REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on PrivacyThe REAL Impact of Big Data on Privacy
The REAL Impact of Big Data on Privacy
 
Privacy and Big Data Overload!
Privacy and Big Data Overload!Privacy and Big Data Overload!
Privacy and Big Data Overload!
 
Privacy by Design Seminar - Jan 22, 2015
Privacy by Design Seminar - Jan 22, 2015Privacy by Design Seminar - Jan 22, 2015
Privacy by Design Seminar - Jan 22, 2015
 
EDF2013: Invited Talk Daragh O'Brien: The Story of Maturity – How data in Bus...
EDF2013: Invited Talk Daragh O'Brien: The Story of Maturity – How data in Bus...EDF2013: Invited Talk Daragh O'Brien: The Story of Maturity – How data in Bus...
EDF2013: Invited Talk Daragh O'Brien: The Story of Maturity – How data in Bus...
 
Ethics of Big Data
Ethics of Big DataEthics of Big Data
Ethics of Big Data
 
SNW Fall 2009
SNW Fall 2009SNW Fall 2009
SNW Fall 2009
 
PKM and Corporate Memory - a dichotomy?
PKM and Corporate Memory - a dichotomy?PKM and Corporate Memory - a dichotomy?
PKM and Corporate Memory - a dichotomy?
 
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data-Ed Online: Data Operations Management: Turning Your Challenges Into SuccessData-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
 
The Transformation of Innovation Ecosystems in Global Metropolitan Areas A...
The Transformation of Innovation Ecosystems in Global Metropolitan Areas A...The Transformation of Innovation Ecosystems in Global Metropolitan Areas A...
The Transformation of Innovation Ecosystems in Global Metropolitan Areas A...
 
Data set Legislation
Data set LegislationData set Legislation
Data set Legislation
 
Data set Legislation
Data set LegislationData set Legislation
Data set Legislation
 
The secret art of building online communities through connections (pun intend...
The secret art of building online communities through connections (pun intend...The secret art of building online communities through connections (pun intend...
The secret art of building online communities through connections (pun intend...
 
Data set module 4
Data set   module 4Data set   module 4
Data set module 4
 
Demystifying Big Data for Associations
Demystifying Big Data for AssociationsDemystifying Big Data for Associations
Demystifying Big Data for Associations
 
Dwyer "Privacy by Design: Can It Work?"
Dwyer "Privacy by Design: Can It Work?"Dwyer "Privacy by Design: Can It Work?"
Dwyer "Privacy by Design: Can It Work?"
 
Social Media in Law - "Flash in the Pan" or Competitive Advantage?
Social Media in Law - "Flash in the Pan" or Competitive Advantage?Social Media in Law - "Flash in the Pan" or Competitive Advantage?
Social Media in Law - "Flash in the Pan" or Competitive Advantage?
 
Future of Privacy - The Emerging View 11 06 15
Future of Privacy - The Emerging View 11 06 15 Future of Privacy - The Emerging View 11 06 15
Future of Privacy - The Emerging View 11 06 15
 
The Myth of Zero-Risk Solutions; The Benefits of Privacy by Design
The Myth of Zero-Risk Solutions; The Benefits of Privacy by DesignThe Myth of Zero-Risk Solutions; The Benefits of Privacy by Design
The Myth of Zero-Risk Solutions; The Benefits of Privacy by Design
 

Destaque

Destaque (6)

Pwp Actors
Pwp ActorsPwp Actors
Pwp Actors
 
A Bears Den
A Bears DenA Bears Den
A Bears Den
 
Inaugural Addresses
Inaugural AddressesInaugural Addresses
Inaugural Addresses
 
Teaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & TextspeakTeaching Students with Emojis, Emoticons, & Textspeak
Teaching Students with Emojis, Emoticons, & Textspeak
 
Study: The Future of VR, AR and Self-Driving Cars
Study: The Future of VR, AR and Self-Driving CarsStudy: The Future of VR, AR and Self-Driving Cars
Study: The Future of VR, AR and Self-Driving Cars
 
Hype vs. Reality: The AI Explainer
Hype vs. Reality: The AI ExplainerHype vs. Reality: The AI Explainer
Hype vs. Reality: The AI Explainer
 

Semelhante a Knoware-Open Data-SUNZ12: Clare Somerville and Trish O'Kane

ODI at Future Everything 2013 #futr
ODI at Future Everything 2013 #futrODI at Future Everything 2013 #futr
ODI at Future Everything 2013 #futr
theODI
 
EDF2012 Nigel Shadbolt - Transparency and Open Data
EDF2012   Nigel Shadbolt - Transparency and Open DataEDF2012   Nigel Shadbolt - Transparency and Open Data
EDF2012 Nigel Shadbolt - Transparency and Open Data
European Data Forum
 
Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015
Ian Oppermann
 
Edi presentation 2013 03-01
Edi presentation 2013 03-01Edi presentation 2013 03-01
Edi presentation 2013 03-01
ianjkalin
 

Semelhante a Knoware-Open Data-SUNZ12: Clare Somerville and Trish O'Kane (20)

Open Data Institute // オープンデータ研究所 // 开放式数据研究所
Open Data Institute // オープンデータ研究所 // 开放式数据研究所Open Data Institute // オープンデータ研究所 // 开放式数据研究所
Open Data Institute // オープンデータ研究所 // 开放式数据研究所
 
ODI at Future Everything 2013 #futr
ODI at Future Everything 2013 #futrODI at Future Everything 2013 #futr
ODI at Future Everything 2013 #futr
 
EDF2012 Nigel Shadbolt - Transparency and Open Data
EDF2012   Nigel Shadbolt - Transparency and Open DataEDF2012   Nigel Shadbolt - Transparency and Open Data
EDF2012 Nigel Shadbolt - Transparency and Open Data
 
ODI Node Vienna: Best Practise Beispiele für: Open Innovation mittels Open Data
ODI Node Vienna: Best Practise Beispiele für: Open Innovation mittels Open DataODI Node Vienna: Best Practise Beispiele für: Open Innovation mittels Open Data
ODI Node Vienna: Best Practise Beispiele für: Open Innovation mittels Open Data
 
Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015Funding Australias Future - Oppermann_2015
Funding Australias Future - Oppermann_2015
 
Edi presentation 2013 03-01
Edi presentation 2013 03-01Edi presentation 2013 03-01
Edi presentation 2013 03-01
 
Data driven innovation for education
Data driven innovation for education Data driven innovation for education
Data driven innovation for education
 
Open Data - What and Why
Open Data - What and WhyOpen Data - What and Why
Open Data - What and Why
 
IATI in Ireland
IATI in IrelandIATI in Ireland
IATI in Ireland
 
ODI Overview 2013-03-05
ODI Overview 2013-03-05ODI Overview 2013-03-05
ODI Overview 2013-03-05
 
Open data
Open dataOpen data
Open data
 
Open data: Where do we go from here
Open data: Where do we go from hereOpen data: Where do we go from here
Open data: Where do we go from here
 
Aligning stakeholders' perspectives in Open Government Data Community
Aligning stakeholders' perspectives in Open Government Data CommunityAligning stakeholders' perspectives in Open Government Data Community
Aligning stakeholders' perspectives in Open Government Data Community
 
Using linked data and the semantic web - "powered by INSPIRE" conference pres...
Using linked data and the semantic web - "powered by INSPIRE" conference pres...Using linked data and the semantic web - "powered by INSPIRE" conference pres...
Using linked data and the semantic web - "powered by INSPIRE" conference pres...
 
US National Archives & Open Government Data
US National Archives & Open Government DataUS National Archives & Open Government Data
US National Archives & Open Government Data
 
Hawaii Pacific GIS Conference 2012: Plenary Session Keynote - Next Generation...
Hawaii Pacific GIS Conference 2012: Plenary Session Keynote - Next Generation...Hawaii Pacific GIS Conference 2012: Plenary Session Keynote - Next Generation...
Hawaii Pacific GIS Conference 2012: Plenary Session Keynote - Next Generation...
 
US EPA OSWER Linked Data Workshop 1-Feb-2013
US EPA OSWER Linked Data Workshop 1-Feb-2013US EPA OSWER Linked Data Workshop 1-Feb-2013
US EPA OSWER Linked Data Workshop 1-Feb-2013
 
Auckland meetup nov 19
Auckland meetup nov 19Auckland meetup nov 19
Auckland meetup nov 19
 
R A Longhorn Presentation at Taiwan Open Data Forum, Taipei, 9 July 2014
R A Longhorn Presentation at Taiwan Open Data Forum, Taipei, 9 July 2014R A Longhorn Presentation at Taiwan Open Data Forum, Taipei, 9 July 2014
R A Longhorn Presentation at Taiwan Open Data Forum, Taipei, 9 July 2014
 
How Open Data can help business
How Open Data can help businessHow Open Data can help business
How Open Data can help business
 

Último

Último (20)

AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 

Knoware-Open Data-SUNZ12: Clare Somerville and Trish O'Kane

  • 1. Open Data Clare Somerville Selena Smeaton Trish O’Kane
  • 2. Everyone has the right to information 2
  • 3. Everyone has the right to information EIS 3
  • 4. Everyone has the right to information 4
  • 5. What is it? Why Risks? do it? Open data What Who’s about doing NZ? it?
  • 6. “Open data is the idea that certain data should be available to everyone to use and republish as they wish, without restrictions from copyright, patents or other mechanisms of control” Wikipedia
  • 7. 7
  • 8. USA • data.gov May 2009 UK • data.gov.uk Sep 2009 Norway • data.norge.no Apr 2010 Australia • data.gov.au Mar 2011 Kenya • opendata.go.ke Jul 2011 Netherlands • data.overheid.nl NZ • data.govt.nz Aug 2011 Chile • datos.gob.cl Italy • data.gov.it Spain • datos.gob.es Uruguay • datos.gub.uy Nov 2011 France • data.gouv.fr Dec 2011 Brazil • dados.gov.br Dec 2011 Who? Where? When?
  • 9. Move paper documents to the internet • PDFs, Word documents • Saves printing or mail • Not great to extract info Add metadata • Documents enhanced • Raw data, visualisations, sort, filter etc Programmatic access • Data can be loaded into programs for big data research Levels of useability
  • 10.
  • 11. NZ Declaration on Open and Transparent Government “Building on NZ’s democratic tradition, the government commits to actively releasing high value public data. The government holds data on behalf of the NZ public. We release it to enable the private and community sectors to use it to grow the economy, strengthen our social and cultural fabric, and sustain our environment. We release it to encourage business and community involvement in government decision making” 8 August 2011
  • 12. Principle Description Open For public access Protected Personal info Readily available Discoverable, accessible, online Trusted & authoritative Accurate, relevant, timely, consistent, authoritative single source Well managed Held by government on behalf of public Reasonably priced Free Reusable Highest possible granularity; reusable; machine readable; metadata Data & Information Management Principles
  • 15.  Explore finances  More transparent  How government spends  Increase the data’s value  Feedback loop - $ saved; better projects  Engage citizens in government  Info to citizens in tough economic times  Individual salaries; payments to vendors Massachusetts Open Checkbook
  • 16. Transparency ◦ Access data used by council in decision making; use it for additional social value  Participation ◦ Analyse, propose ideas, gain insights; enrich lives of individuals and community  Collaboration ◦ Suggest ideas about additional data; apps that could use the data; improving access Ireland (Fingal)
  • 17. Build Accountability participation Promote Transparency economic Open Data innovation … the reasons why
  • 18. Consistency Meaning Risks Quality Usage
  • 19. Public money was used to Data belongs to fund the work everyone so should be freely available In science - more discovery Facts can’t be is related to copyrighted better access Arguments to data for Open Data
  • 20.  Intro  What are other countries doing?  What is NZ doing?  Challenges, risks, opportunities  What do we need to do to prepare? Agenda
  • 21. 21
  • 22. 22
  • 23. 23
  • 24. 24
  • 25. Recently sought input into the US Open Government National Action Plan ◦ Measures? ◦ Minimum standards for participation? ◦ How to compare participation? ◦ Effective technology and tools? US National Action Plan
  • 26. 26
  • 27.  Make data freely available to the public, developers and business - and charge where appropriate  Be a centre of excellence and expertise in collecting, managing storing and distributing data  Be a vehicle which will attract private investment. 27
  • 29. €250bn across Europe every year 29
  • 30. 30
  • 31.  Intro  What are other countries doing?  What is NZ doing?  Challenges, risks, opportunities  What do we need to do to prepare? Agenda
  • 32. 2005 India and Germany 2002 Japan and Mexico 2000 United Kingdom 1998 South Korea 1997 Ireland and Thailand 1992 Hungary 1982 Australia, Canada, New Zealand 1978 France, Netherlands 1970 Denmark, Norway 1966 United States 1917,1951 Finland 18th Century Sweden Freedom of information legislation
  • 35. NZ Open Government will be asking public service agencies:  What do you And has Not personal hold on behalf Not confidential high of the public value Not classified impact that is Economic and social Transparency and democratic Efficiency “If you get away from people and businesses then it’s easier”
  • 36. And also asking:  What information have you released?  What have you not released because of insurmountable barriers?  Quality issues are not a barrier to release “If it’s good enough for business use then it’s good enough to release” Archives NZ are also investigating high-value information
  • 37.
  • 38.  Intro  What are other countries doing?  What is NZ doing?  Challenges, risks, opportunities  What do we need to do to prepare? Agenda
  • 39. Third parties and mashups Third parties
  • 42. No census? Use other sources
  • 43.
  • 44. Caveat for data supplied. ◦ The data supplied is an extract from the SMS fire incident reporting system maintained by the New Zealand Fire Service. It is not complete statistical data and should not be relied on for statistical analysis. ◦ A full incident report can be provided on request under the Official Information Act. Fire Incident Summary Data
  • 45. Bob Inc Example: Motor Vehicle registration
  • 46. 1998 Privacy Commissioner: “We would like to see a closer relationship between the purposes of the register and the release of information from it, such as when information is needed to enforce the law, to gather statistics, and to develop transport policy.
  • 48. 2010
  • 49. Bob Inc Since May 2011
  • 50. MVR Information about individuals post May 2011
  • 51. Gazetted Access Authorisations “access to names & addresses of persons: - who are currently registered in respect of a motor vehicle(s); and - who have not instructed the Registrar of Motor Vehicles to withhold their details. Speer, Speer & Associates Limited “… address information associated with specific registration plate numbers to assist with research on customer distribution patterns around shopping centres.” Until 30 Nov 2016
  • 52.
  • 53.
  • 54.  Intro  What are other countries doing?  What is NZ doing?  Challenges, risks, opportunities  What do we need to do to prepare? Agenda
  • 55. What to do to prepare? Accreted over time…
  • 56. Know your legislation  Establish principles and defend them  Know what you have released before and why you released it  What would you restrict and why?  Be prepared for Open Government questions ◦ Before you are asked ◦ Before you publish Mandate and principles
  • 58. Know what you shouldn’t have  Data collected but not needed ◦ Data sets legitimately shared but… ◦ Application forms that ask for … ◦ Do you really need to?  Legacy datasets without owners?  Duplicates of data ◦ Your own ◦ From other agencies
  • 59. Triage and isolate  Which data or information  seems fine  seems dodgy  must not be shared  Identify, isolate or filter information that shouldn’t be shared
  • 60. Manage your data & information  Principle: Reusable ◦ Highest possible granularity; reusable; machine readable; metadata  4 reasons we keep data…  Governance  Standards, policies  Metadata  Structure the unstructured  Data lifecycle management  Disposal
  • 61. We’re just getting started  Plenty of opportunities…  …many challenges  We don’t know exactly what lies ahead…  ..but we can prepare.  1.5+ million vacancies…apply soon! In conclusion
  • 62. Open Data Clare.Somerville@knoware.co.nz Selena Smeaton@knoware.co.nz Trish O’Kane@knoware.co.nz © The Knowledge Warehouse Ltd, 2012