SlideShare a Scribd company logo
Rapid Assembly of Geo-Centred Linked Data
Applications
    Rapid Assembly of Geo-Centred Linked Data
                  Applications
   Lucy Diamond, Research Scientist, Ordnance Survey

   18/04/2012
About RAGLD

• A collaborative project between Ordnance Survey, the University of
  Southampton and Seme4


• Part-funded by the Technology Strategy Board‘s “Harnessing Large
  and Diverse Sources of Data” programme


• 18 month long project. Started Oct 2011. Due to complete March
  2013


• Building tools to enable developers to make greater use of linked
  data
RAGLD builds on
  See UK (http://apps.seme4.com/see-uk/ )
(and the sameAs service (www.sameas.org ))
Feedback wanted!


•   The designs of RAGLD components and services make use of the
    user requirements that we gathered from our questionnaire
    responses. User requirement summaries from the questionnaire
    responses can be seen on www.ragld.com


•   The purpose of this presentation is to run through the basic
    descriptions for the components and services that will be built for
    RAGLD, and to get feedback on their potential usefulness or
    applicability for linked data projects and activities
Project Milestones
  Text in pink for Work Packages completed or well under way (08/05/2012)


• WP 1 -      User requirements survey, development of
              design principles, identification of data
              sources, high-level architecture designs
• WP 2 –      Data integration components and services
• WP 3 –      Data-enabled components and services
• WP 4 –      Development of a technical demonstrator
              based on UK crime data analysis
• WP 5 –      Engagement (stakeholder interviews and
              design feedback), dissemination and
              exploitation
RAGLD High Level Component Architecture


                                      Accessing Data
             SPARQL Endpoint                                            Normalisation                Identity Management
                                                                        Tools/Services                  Tools/Services
Resolvable URIs                  Linked Data API


                                                                                                                                                       Infrastructure Services
                                                         Data Enhancement                 Visualisation                     Relationship
                                                           Tools/Services                Tools/Services                    Tools/Services
                  Data Sources



                                                   Aggregation        Interpolation                        Spatial Operations               Orchestration    Mediation       Metrics




    All of the components are able to interface with each other through a common interface
         specification, and can therefore be orchestrated by the infrastructure service to create
         workflows to fulfil the use cases identified from the user requirements analysis.
Work Package 2
Data Integration components and services
Reconciliation Service


• Reconciliation service for spreadsheets/Google Refine to recognise
  common codes/identifiers and translate to appropriate Linked Data
  URIs


• In order to get into the Linked Data world, it is necessary to get from
  strings that identify things roughly to URIs that identify things
  properly.
48M URIs
               17M Distinct




The Web of Data has many
   equivalent URIs. This
   sameAs service helps you
   manage co-refs between
   different data sets.
Relationship management services
•   sameAs - Enter a known URI, get back list of equivalent URIs


•   differentFrom - This is a partner service to sameAs - when
    anything is retracted from the sameAs service, it should be asserted
    into the differentFrom service. Before asserting into the sameAs
    service, the differentFrom should be consulted, and a warning or
    rejection given.


•   Co-reference identification services - Link-finding and co-
    reference, discovering relationships between datasets


•   More Generic Relationships - Generalisation of sameAs type
    service to store other kinds of relationship. Examples may include
    Contains, Within, Touches, Part Of, Overlaps, Near
Work Package 3
Data-Enabled Components and Services
Spatial Query Services
•   Bounding box containment - An index service which will allow
    efficient queries to be made identifying coordinate points that reside
    within a given Bounding box. More sophisticated version potentially
    understands types of entities, e.g. “Find me the postcodes in this area, or the
    wards in this area”, etc.
•   Geometric queries - E.g. Coordinates to wards. Queries involving
    one type of geometry (e.g. point) to another (e.g. polygon), nearest
    services, co-ordinate data points that lies within given polygon
    intersection of two polygons, transect line
    “Which areas are contained within / touch / overlap with another given area?”
    “Is this point within any other spatial area?”
    “What is within this area of interest that I have defined?”
    “Can I generalise a larger area from these smaller?”
•   Free text search - This provides an auxiliary service, that indexes the
    store, and then enables pure text searches to be done over the
    external service.
Dataset transformation services
•   Co-ordinate transformation - E.g. convert lat long to National Grid

•   Statistical Transformations - Transformations such as changing
    units, and normalisations e.g. by population or area for regions.
    Aggregation and interpolation of region-based statistics
    “I have dataset expressed as X per Y but want it as X per Z”
    “I have population for wards but want to find population by school
    catchment area “

•   Geography to Geography (one set of abstract areas into
    another)
    - Convert between different levels of geography e.g. “Give me all the
    deaths in Hampshire if I know the deaths in all of the settlement
    regions”.
    - An enactment of statistical transformation operations.
Visualisation

• Map showing regions of a specific type (e.g. Ward, LSOA)
• Map showing coordinate points from a dataset as pins
• Map showing region-based statistics with appropriate colouring
• Area selection widget (in conjunction with geometric query)
• Graph-based visualisations of dataset features
• Pop-up “Info box” - give generic information about a point/area
• Display custom regions / boundaries on map
Workflow management
•   Enactment engine

    Workflow style activity, using scripts that are manageable, editable and run-able at
    will. Means to extract data for the RAGLD services from other services

•   Dashboard
    (display components and services available, invocating sequence of services)

    This component gives the user a web view that enables them to observe and manage
    the RAGLD installation, configuring components, where does the data come from, go
    to, what services should be used, trouble spots...

•   File/resource management
    (interacts with the Dashboard)

    RAGLD will move data between services, stores and files, transforming it as it goes.
    Therefore, the user of a RAGLD installation needs the system to keep track of where
    the data is, data versions, and data relationships.
RAGLD contact for further information

Mark Pendlington,
Project Leader, RAGLD
mark.pendlington@ordnancesurvey.co.uk

Research
Ordnance Survey
Adanac Drive
SOUTHAMPTON
United Kingdom
SO16 0AS

Phone: +44 (0)2380055771

More Related Content

What's hot

Jenny Harding: Usable geographic information – what does it mean to users?
Jenny Harding: Usable geographic information – what does it mean to users?Jenny Harding: Usable geographic information – what does it mean to users?
Jenny Harding: Usable geographic information – what does it mean to users?AGI Geocommunity
 
(More) Transparency Transformation
(More) Transparency Transformation(More) Transparency Transformation
(More) Transparency TransformationGeorge Thomas
 
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE DataRudolf Husar
 
JPJ1423 Keyword Query Routing
JPJ1423   Keyword Query RoutingJPJ1423   Keyword Query Routing
JPJ1423 Keyword Query Routingchennaijp
 
Industry@RuleML2015 DataGraft
Industry@RuleML2015 DataGraftIndustry@RuleML2015 DataGraft
Industry@RuleML2015 DataGraftRuleML
 
050317 Ws Telecon Husar
050317 Ws Telecon Husar050317 Ws Telecon Husar
050317 Ws Telecon HusarRudolf Husar
 
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routing
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routingIEEE 2014 JAVA DATA MINING PROJECTS Keyword query routing
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routingIEEEFINALYEARSTUDENTPROJECTS
 
The Information Workbench as a Self-Service Platform for Linked Data Applicat...
The Information Workbench as a Self-Service Platform for Linked Data Applicat...The Information Workbench as a Self-Service Platform for Linked Data Applicat...
The Information Workbench as a Self-Service Platform for Linked Data Applicat...Peter Haase
 
SLA information management through dependency digraphs: the case of cloud dat...
SLA information management through dependency digraphs: the case of cloud dat...SLA information management through dependency digraphs: the case of cloud dat...
SLA information management through dependency digraphs: the case of cloud dat...Katerina Stamou
 
SLA data management criteria presentation
SLA data management criteria presentationSLA data management criteria presentation
SLA data management criteria presentationKaterina Stamou
 
Meeting today’s dissemination challenges – Implementing International Standar...
Meeting today’s dissemination challenges – Implementing International Standar...Meeting today’s dissemination challenges – Implementing International Standar...
Meeting today’s dissemination challenges – Implementing International Standar...Jonathan Challener
 

What's hot (18)

Jenny Harding: Usable geographic information – what does it mean to users?
Jenny Harding: Usable geographic information – what does it mean to users?Jenny Harding: Usable geographic information – what does it mean to users?
Jenny Harding: Usable geographic information – what does it mean to users?
 
(More) Transparency Transformation
(More) Transparency Transformation(More) Transparency Transformation
(More) Transparency Transformation
 
Seeds Poster
Seeds PosterSeeds Poster
Seeds Poster
 
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data
2004-10-15 SHAirED: Services for Helping the Air-quality Community use ESE Data
 
Seeds Poster2
Seeds Poster2Seeds Poster2
Seeds Poster2
 
JPJ1423 Keyword Query Routing
JPJ1423   Keyword Query RoutingJPJ1423   Keyword Query Routing
JPJ1423 Keyword Query Routing
 
Industry@RuleML2015 DataGraft
Industry@RuleML2015 DataGraftIndustry@RuleML2015 DataGraft
Industry@RuleML2015 DataGraft
 
The Social Data Web
The Social Data WebThe Social Data Web
The Social Data Web
 
050317 Ws Telecon Husar
050317 Ws Telecon Husar050317 Ws Telecon Husar
050317 Ws Telecon Husar
 
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routing
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routingIEEE 2014 JAVA DATA MINING PROJECTS Keyword query routing
IEEE 2014 JAVA DATA MINING PROJECTS Keyword query routing
 
The Information Workbench as a Self-Service Platform for Linked Data Applicat...
The Information Workbench as a Self-Service Platform for Linked Data Applicat...The Information Workbench as a Self-Service Platform for Linked Data Applicat...
The Information Workbench as a Self-Service Platform for Linked Data Applicat...
 
Ws Stuff
Ws StuffWs Stuff
Ws Stuff
 
SLA information management through dependency digraphs: the case of cloud dat...
SLA information management through dependency digraphs: the case of cloud dat...SLA information management through dependency digraphs: the case of cloud dat...
SLA information management through dependency digraphs: the case of cloud dat...
 
SLA data management criteria presentation
SLA data management criteria presentationSLA data management criteria presentation
SLA data management criteria presentation
 
cametrics-report-final
cametrics-report-finalcametrics-report-final
cametrics-report-final
 
Meeting today’s dissemination challenges – Implementing International Standar...
Meeting today’s dissemination challenges – Implementing International Standar...Meeting today’s dissemination challenges – Implementing International Standar...
Meeting today’s dissemination challenges – Implementing International Standar...
 
14a Conferenza Nazionale di Statistica
14a Conferenza Nazionale di Statistica14a Conferenza Nazionale di Statistica
14a Conferenza Nazionale di Statistica
 
Ws For Aqm
Ws For AqmWs For Aqm
Ws For Aqm
 

Viewers also liked

20120302191014 babsc3
20120302191014 babsc320120302191014 babsc3
20120302191014 babsc3sonujagga
 
How to share my Comenius experience through Social Networks
How to share my Comenius experience through Social NetworksHow to share my Comenius experience through Social Networks
How to share my Comenius experience through Social NetworksLorenzo Mentuccia
 
정보통신기술과 기업경영 피피티
정보통신기술과 기업경영 피피티정보통신기술과 기업경영 피피티
정보통신기술과 기업경영 피피티seoHJ
 
eTwinning scuole fiorentine gennaio 2013
eTwinning scuole fiorentine gennaio 2013eTwinning scuole fiorentine gennaio 2013
eTwinning scuole fiorentine gennaio 2013Lorenzo Mentuccia
 
How to manage a nss Facebook page lorenzo mentuccia
How to manage a nss Facebook page  lorenzo mentucciaHow to manage a nss Facebook page  lorenzo mentuccia
How to manage a nss Facebook page lorenzo mentucciaLorenzo Mentuccia
 
Social network per i progetti europei di mobilità
Social network per i progetti europei di mobilitàSocial network per i progetti europei di mobilità
Social network per i progetti europei di mobilitàLorenzo Mentuccia
 
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...Lorenzo Mentuccia
 
Cambiar ip en windows
Cambiar ip en windowsCambiar ip en windows
Cambiar ip en windowsKleber Rojas
 

Viewers also liked (13)

20120302191014 babsc3
20120302191014 babsc320120302191014 babsc3
20120302191014 babsc3
 
eTwinning in Erasmus+ 2013
eTwinning in Erasmus+ 2013eTwinning in Erasmus+ 2013
eTwinning in Erasmus+ 2013
 
How to share my Comenius experience through Social Networks
How to share my Comenius experience through Social NetworksHow to share my Comenius experience through Social Networks
How to share my Comenius experience through Social Networks
 
Evaluation 3
Evaluation 3Evaluation 3
Evaluation 3
 
정보통신기술과 기업경영 피피티
정보통신기술과 기업경영 피피티정보통신기술과 기업경영 피피티
정보통신기술과 기업경영 피피티
 
Quran
QuranQuran
Quran
 
eTwinning scuole fiorentine gennaio 2013
eTwinning scuole fiorentine gennaio 2013eTwinning scuole fiorentine gennaio 2013
eTwinning scuole fiorentine gennaio 2013
 
How to manage a nss Facebook page lorenzo mentuccia
How to manage a nss Facebook page  lorenzo mentucciaHow to manage a nss Facebook page  lorenzo mentuccia
How to manage a nss Facebook page lorenzo mentuccia
 
Social network per i progetti europei di mobilità
Social network per i progetti europei di mobilitàSocial network per i progetti europei di mobilità
Social network per i progetti europei di mobilità
 
Bahasa melayu UPSR bahagian C
Bahasa melayu UPSR bahagian CBahasa melayu UPSR bahagian C
Bahasa melayu UPSR bahagian C
 
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...
Social network e progetti di mobilità in Europa. La dimensione 2.0 del fare s...
 
Cambiar ip en windows
Cambiar ip en windowsCambiar ip en windows
Cambiar ip en windows
 
Evaluation 3
Evaluation 3Evaluation 3
Evaluation 3
 

Similar to Introduction to RAGLD

Geospatial Ontologies and GeoSPARQL Services
Geospatial Ontologies and GeoSPARQL ServicesGeospatial Ontologies and GeoSPARQL Services
Geospatial Ontologies and GeoSPARQL ServicesStephane Fellah
 
Ontologies for Emergency & Disaster Management
Ontologies for Emergency & Disaster Management Ontologies for Emergency & Disaster Management
Ontologies for Emergency & Disaster Management Stephane Fellah
 
Components of gis
Components of gisComponents of gis
Components of gisPramoda Raj
 
Spark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit
 
Towards Semantic APIs for Research Data Services (Invited Talk)
Towards Semantic APIs for Research Data Services (Invited Talk)Towards Semantic APIs for Research Data Services (Invited Talk)
Towards Semantic APIs for Research Data Services (Invited Talk)Anna Fensel
 
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...Yogesh Santhan
 
Dublinked tech workshop_15_dec2011
Dublinked tech workshop_15_dec2011Dublinked tech workshop_15_dec2011
Dublinked tech workshop_15_dec2011Dublinked .
 
High-Performance Interoperable Architecture for Information Dominance
High-Performance Interoperable Architecture for Information DominanceHigh-Performance Interoperable Architecture for Information Dominance
High-Performance Interoperable Architecture for Information DominanceReal-Time Innovations (RTI)
 
Unit 2 - Grid and Cloud Computing
Unit 2 - Grid and Cloud ComputingUnit 2 - Grid and Cloud Computing
Unit 2 - Grid and Cloud Computingvimalraman
 
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...AGI Geocommunity
 
A unified approach for spatial data query
A unified approach for spatial data queryA unified approach for spatial data query
A unified approach for spatial data queryIJDKP
 
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...Syntactic and semantic based approaches for Geoinformation Management - Dr. S...
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...NeGD Capacity Building
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationDenodo
 
spatial data infrastructure : issues and concepts
spatial data infrastructure : issues and conceptsspatial data infrastructure : issues and concepts
spatial data infrastructure : issues and conceptsDesconnets Jean-Christophe
 
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)Rinke Hoekstra
 
2005-03-29 Web Services: ES Rationale and Assertions
2005-03-29 Web Services: ES Rationale and Assertions2005-03-29 Web Services: ES Rationale and Assertions
2005-03-29 Web Services: ES Rationale and AssertionsRudolf Husar
 
Digital intelligence satish bhatia
Digital intelligence satish bhatiaDigital intelligence satish bhatia
Digital intelligence satish bhatiaSatish Bhatia
 

Similar to Introduction to RAGLD (20)

Geospatial Ontologies and GeoSPARQL Services
Geospatial Ontologies and GeoSPARQL ServicesGeospatial Ontologies and GeoSPARQL Services
Geospatial Ontologies and GeoSPARQL Services
 
Ontologies for Emergency & Disaster Management
Ontologies for Emergency & Disaster Management Ontologies for Emergency & Disaster Management
Ontologies for Emergency & Disaster Management
 
Components of gis
Components of gisComponents of gis
Components of gis
 
Spark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren Nathan
 
Towards Semantic APIs for Research Data Services (Invited Talk)
Towards Semantic APIs for Research Data Services (Invited Talk)Towards Semantic APIs for Research Data Services (Invited Talk)
Towards Semantic APIs for Research Data Services (Invited Talk)
 
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...
Project - UG - BTech IT - Cluster based Approach for Service Discovery using ...
 
Dublinked tech workshop_15_dec2011
Dublinked tech workshop_15_dec2011Dublinked tech workshop_15_dec2011
Dublinked tech workshop_15_dec2011
 
High-Performance Interoperable Architecture for Information Dominance
High-Performance Interoperable Architecture for Information DominanceHigh-Performance Interoperable Architecture for Information Dominance
High-Performance Interoperable Architecture for Information Dominance
 
Unit 2 - Grid and Cloud Computing
Unit 2 - Grid and Cloud ComputingUnit 2 - Grid and Cloud Computing
Unit 2 - Grid and Cloud Computing
 
SDI.ppt
SDI.pptSDI.ppt
SDI.ppt
 
MECBOT
MECBOTMECBOT
MECBOT
 
Wisconsin SCO Virtual Data Integration
Wisconsin SCO Virtual Data IntegrationWisconsin SCO Virtual Data Integration
Wisconsin SCO Virtual Data Integration
 
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...
Debbie Wilson: Deliver More Efficient, Joined-Up Services through Improved Ma...
 
A unified approach for spatial data query
A unified approach for spatial data queryA unified approach for spatial data query
A unified approach for spatial data query
 
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...Syntactic and semantic based approaches for Geoinformation Management - Dr. S...
Syntactic and semantic based approaches for Geoinformation Management - Dr. S...
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal Modernization
 
spatial data infrastructure : issues and concepts
spatial data infrastructure : issues and conceptsspatial data infrastructure : issues and concepts
spatial data infrastructure : issues and concepts
 
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
Provenance and Reuse of Open Data (PILOD 2.0 June 2014)
 
2005-03-29 Web Services: ES Rationale and Assertions
2005-03-29 Web Services: ES Rationale and Assertions2005-03-29 Web Services: ES Rationale and Assertions
2005-03-29 Web Services: ES Rationale and Assertions
 
Digital intelligence satish bhatia
Digital intelligence satish bhatiaDigital intelligence satish bhatia
Digital intelligence satish bhatia
 

Recently uploaded

How world-class product teams are winning in the AI era by CEO and Founder, P...
How world-class product teams are winning in the AI era by CEO and Founder, P...How world-class product teams are winning in the AI era by CEO and Founder, P...
How world-class product teams are winning in the AI era by CEO and Founder, P...Product School
 
Quantum Computing: Current Landscape and the Future Role of APIs
Quantum Computing: Current Landscape and the Future Role of APIsQuantum Computing: Current Landscape and the Future Role of APIs
Quantum Computing: Current Landscape and the Future Role of APIsVlad Stirbu
 
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo DiehlFuture Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo DiehlPeter Udo Diehl
 
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™UiPathCommunity
 
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Tobias Schneck
 
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...Thierry Lestable
 
Transcript: Selling digital books in 2024: Insights from industry leaders - T...
Transcript: Selling digital books in 2024: Insights from industry leaders - T...Transcript: Selling digital books in 2024: Insights from industry leaders - T...
Transcript: Selling digital books in 2024: Insights from industry leaders - T...BookNet Canada
 
ODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User GroupODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User GroupCatarinaPereira64715
 
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Jeffrey Haguewood
 
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...Product School
 
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdf
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdfFIDO Alliance Osaka Seminar: FIDO Security Aspects.pdf
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdfFIDO Alliance
 
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...Product School
 
UiPath New York Community Day in-person event
UiPath New York Community Day in-person eventUiPath New York Community Day in-person event
UiPath New York Community Day in-person eventDianaGray10
 
Search and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical FuturesSearch and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical FuturesBhaskar Mitra
 
Key Trends Shaping the Future of Infrastructure.pdf
Key Trends Shaping the Future of Infrastructure.pdfKey Trends Shaping the Future of Infrastructure.pdf
Key Trends Shaping the Future of Infrastructure.pdfCheryl Hung
 
Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...Product School
 
To Graph or Not to Graph Knowledge Graph Architectures and LLMs
To Graph or Not to Graph Knowledge Graph Architectures and LLMsTo Graph or Not to Graph Knowledge Graph Architectures and LLMs
To Graph or Not to Graph Knowledge Graph Architectures and LLMsPaul Groth
 
КАТЕРИНА АБЗЯТОВА «Ефективне планування тестування ключові аспекти та практ...
КАТЕРИНА АБЗЯТОВА  «Ефективне планування тестування  ключові аспекти та практ...КАТЕРИНА АБЗЯТОВА  «Ефективне планування тестування  ключові аспекти та практ...
КАТЕРИНА АБЗЯТОВА «Ефективне планування тестування ключові аспекти та практ...QADay
 
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...Product School
 
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdfSmart TV Buyer Insights Survey 2024 by 91mobiles.pdf
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf91mobiles
 

Recently uploaded (20)

How world-class product teams are winning in the AI era by CEO and Founder, P...
How world-class product teams are winning in the AI era by CEO and Founder, P...How world-class product teams are winning in the AI era by CEO and Founder, P...
How world-class product teams are winning in the AI era by CEO and Founder, P...
 
Quantum Computing: Current Landscape and the Future Role of APIs
Quantum Computing: Current Landscape and the Future Role of APIsQuantum Computing: Current Landscape and the Future Role of APIs
Quantum Computing: Current Landscape and the Future Role of APIs
 
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo DiehlFuture Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
 
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™
 
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
 
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...
Empowering NextGen Mobility via Large Action Model Infrastructure (LAMI): pav...
 
Transcript: Selling digital books in 2024: Insights from industry leaders - T...
Transcript: Selling digital books in 2024: Insights from industry leaders - T...Transcript: Selling digital books in 2024: Insights from industry leaders - T...
Transcript: Selling digital books in 2024: Insights from industry leaders - T...
 
ODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User GroupODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User Group
 
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
 
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
 
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdf
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdfFIDO Alliance Osaka Seminar: FIDO Security Aspects.pdf
FIDO Alliance Osaka Seminar: FIDO Security Aspects.pdf
 
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
 
UiPath New York Community Day in-person event
UiPath New York Community Day in-person eventUiPath New York Community Day in-person event
UiPath New York Community Day in-person event
 
Search and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical FuturesSearch and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical Futures
 
Key Trends Shaping the Future of Infrastructure.pdf
Key Trends Shaping the Future of Infrastructure.pdfKey Trends Shaping the Future of Infrastructure.pdf
Key Trends Shaping the Future of Infrastructure.pdf
 
Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...
 
To Graph or Not to Graph Knowledge Graph Architectures and LLMs
To Graph or Not to Graph Knowledge Graph Architectures and LLMsTo Graph or Not to Graph Knowledge Graph Architectures and LLMs
To Graph or Not to Graph Knowledge Graph Architectures and LLMs
 
КАТЕРИНА АБЗЯТОВА «Ефективне планування тестування ключові аспекти та практ...
КАТЕРИНА АБЗЯТОВА  «Ефективне планування тестування  ключові аспекти та практ...КАТЕРИНА АБЗЯТОВА  «Ефективне планування тестування  ключові аспекти та практ...
КАТЕРИНА АБЗЯТОВА «Ефективне планування тестування ключові аспекти та практ...
 
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
 
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdfSmart TV Buyer Insights Survey 2024 by 91mobiles.pdf
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf
 

Introduction to RAGLD

  • 1. Rapid Assembly of Geo-Centred Linked Data Applications Rapid Assembly of Geo-Centred Linked Data Applications Lucy Diamond, Research Scientist, Ordnance Survey 18/04/2012
  • 2. About RAGLD • A collaborative project between Ordnance Survey, the University of Southampton and Seme4 • Part-funded by the Technology Strategy Board‘s “Harnessing Large and Diverse Sources of Data” programme • 18 month long project. Started Oct 2011. Due to complete March 2013 • Building tools to enable developers to make greater use of linked data
  • 3. RAGLD builds on See UK (http://apps.seme4.com/see-uk/ ) (and the sameAs service (www.sameas.org ))
  • 4. Feedback wanted! • The designs of RAGLD components and services make use of the user requirements that we gathered from our questionnaire responses. User requirement summaries from the questionnaire responses can be seen on www.ragld.com • The purpose of this presentation is to run through the basic descriptions for the components and services that will be built for RAGLD, and to get feedback on their potential usefulness or applicability for linked data projects and activities
  • 5. Project Milestones Text in pink for Work Packages completed or well under way (08/05/2012) • WP 1 - User requirements survey, development of design principles, identification of data sources, high-level architecture designs • WP 2 – Data integration components and services • WP 3 – Data-enabled components and services • WP 4 – Development of a technical demonstrator based on UK crime data analysis • WP 5 – Engagement (stakeholder interviews and design feedback), dissemination and exploitation
  • 6. RAGLD High Level Component Architecture Accessing Data SPARQL Endpoint Normalisation Identity Management Tools/Services Tools/Services Resolvable URIs Linked Data API Infrastructure Services Data Enhancement Visualisation Relationship Tools/Services Tools/Services Tools/Services Data Sources Aggregation Interpolation Spatial Operations Orchestration Mediation Metrics All of the components are able to interface with each other through a common interface specification, and can therefore be orchestrated by the infrastructure service to create workflows to fulfil the use cases identified from the user requirements analysis.
  • 7. Work Package 2 Data Integration components and services
  • 8. Reconciliation Service • Reconciliation service for spreadsheets/Google Refine to recognise common codes/identifiers and translate to appropriate Linked Data URIs • In order to get into the Linked Data world, it is necessary to get from strings that identify things roughly to URIs that identify things properly.
  • 9. 48M URIs 17M Distinct The Web of Data has many equivalent URIs. This sameAs service helps you manage co-refs between different data sets.
  • 10. Relationship management services • sameAs - Enter a known URI, get back list of equivalent URIs • differentFrom - This is a partner service to sameAs - when anything is retracted from the sameAs service, it should be asserted into the differentFrom service. Before asserting into the sameAs service, the differentFrom should be consulted, and a warning or rejection given. • Co-reference identification services - Link-finding and co- reference, discovering relationships between datasets • More Generic Relationships - Generalisation of sameAs type service to store other kinds of relationship. Examples may include Contains, Within, Touches, Part Of, Overlaps, Near
  • 11. Work Package 3 Data-Enabled Components and Services
  • 12. Spatial Query Services • Bounding box containment - An index service which will allow efficient queries to be made identifying coordinate points that reside within a given Bounding box. More sophisticated version potentially understands types of entities, e.g. “Find me the postcodes in this area, or the wards in this area”, etc. • Geometric queries - E.g. Coordinates to wards. Queries involving one type of geometry (e.g. point) to another (e.g. polygon), nearest services, co-ordinate data points that lies within given polygon intersection of two polygons, transect line “Which areas are contained within / touch / overlap with another given area?” “Is this point within any other spatial area?” “What is within this area of interest that I have defined?” “Can I generalise a larger area from these smaller?” • Free text search - This provides an auxiliary service, that indexes the store, and then enables pure text searches to be done over the external service.
  • 13. Dataset transformation services • Co-ordinate transformation - E.g. convert lat long to National Grid • Statistical Transformations - Transformations such as changing units, and normalisations e.g. by population or area for regions. Aggregation and interpolation of region-based statistics “I have dataset expressed as X per Y but want it as X per Z” “I have population for wards but want to find population by school catchment area “ • Geography to Geography (one set of abstract areas into another) - Convert between different levels of geography e.g. “Give me all the deaths in Hampshire if I know the deaths in all of the settlement regions”. - An enactment of statistical transformation operations.
  • 14. Visualisation • Map showing regions of a specific type (e.g. Ward, LSOA) • Map showing coordinate points from a dataset as pins • Map showing region-based statistics with appropriate colouring • Area selection widget (in conjunction with geometric query) • Graph-based visualisations of dataset features • Pop-up “Info box” - give generic information about a point/area • Display custom regions / boundaries on map
  • 15. Workflow management • Enactment engine Workflow style activity, using scripts that are manageable, editable and run-able at will. Means to extract data for the RAGLD services from other services • Dashboard (display components and services available, invocating sequence of services) This component gives the user a web view that enables them to observe and manage the RAGLD installation, configuring components, where does the data come from, go to, what services should be used, trouble spots... • File/resource management (interacts with the Dashboard) RAGLD will move data between services, stores and files, transforming it as it goes. Therefore, the user of a RAGLD installation needs the system to keep track of where the data is, data versions, and data relationships.
  • 16. RAGLD contact for further information Mark Pendlington, Project Leader, RAGLD mark.pendlington@ordnancesurvey.co.uk Research Ordnance Survey Adanac Drive SOUTHAMPTON United Kingdom SO16 0AS Phone: +44 (0)2380055771