SlideShare a Scribd company logo
1 of 23
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
1
This project has received funding from
the European Unionā€™s Horizon 2020
research and innovation programme
under grant agreement No 732064
This project is part
of BDV PPP
PUBLICATION OF INSPIRE-BASED AGRICULTURAL LINKED DATA
Raul Palma1, TomĆ”Å” ŘeznĆ­k2, Karel CharvĆ”t2, Soumya
Brahma1, Dmitrij Kozuch2, Raitis Berzins2
1Poznan Supercomputing and Networking Center, Poland
2WirelessInfo, Czech Republic
Linked Open Data in Agriculture
MACS-G20 Workshop in Berlin (Germany), 27 ā€“
28 September 2017
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
2
Motivation
ā€¢ Farm management context
ā€¢ Multiple activities and stakeholders
ā€¢ Multiple applications, tools and devices
ā€¢ Multiple data sources, data types and
data formats
ā€¢ Challenge
ā€¢ To combine/integrate those different
and heterogeneous data sources in
order to make economically and
environmentally sound decisions
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
3
Data Integration in relevant projects (context)
ā€¢ Data integration challenges have been the focus of relevant projects
EU FP7, ICT CIP, 2014- 2017
EU FP7, ICT CIP, 2014- 2017
FOODIE aimed at building an open
and interoperable cloud-based
platform addressing among others the
integration of data relevant to
farming production including their
geo-spatial dimension, as well as their
publication as Linked data.
SDI4Apps aimed at building a cloud-
based framework with open API for
data integration focusing on the
development of six pilot apps, drawing
along the lines of INSPIRE, Copernicus
and GEOSS
DataBio aims at showcasing the benefits of Big
Data technologies in the raw material production
from agriculture & others for the bioeconomy
industry; deploying an interoperable platform on
top of the existing partnersā€™ infrastructure.
DataBio aims at delivering solutions for big data
mgmt., including i) the storage and querying of
various big data sources; ii)
the harmonization and integration of a large
variety of data from many sources, using linked
data as a federated layer
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
4
Linked data publication in agriculture
ā€¢ LD is increasingly becoming a popular method for publishing data on the Web
ā€¢ Improves data accessibility by both humans and machines, e.g., for finding, reuse and integration
ā€¢ Enables to discover more useful data through the links, and to exploit data with semantic queries
ā€¢ Growing number of datasets in the LOD cloud
ā€¢ > 1100 by 22nd August 2017
ā€¢ Coverage of the LOD cloud
ā€¢ Large cross-domain datasets (dbpedia, freebase, etc.)
ā€¢ Domain coverage varies (e.g., large number of datasets in
Geography, Government, BioInformatics)
ā€¢ What about Agriculture?
ā€¢ Only few examples (AGRIS biblio records,
AGROVOC thesaurus + other thesaurus like NALT)
ā€¢ Farming data?
http://lod-cloud.net/
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
5
Linked data publication process overview
ā€¢ Simple set of principles & technologies
ā€¢ URI, HTTP, RDF, SPARQL
ā€¢ Involves a set of tasks
Datasets identification
Model specification
RDF data generation
Linking
Hyland et al.
Hausenblas et al.
VillazĆ³n-Terrazas et al.
Reference Linked data publication pipelines
Exploiting
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
6
Linked data publication technologies overview
ā€¢ Used technologies:
ā€¢ D2RQ for transforming Relational Databases as
Virtual RDF Graphs
ā€¢ RDF for the representation of data
ā€¢ Farming ontology providing the underlying
vocabulary and relations
ā€¢ Virtuoso for storing the semantic datasets
ā€¢ Silk for discovery of links
ā€¢ Sparql for querying semantic data
ā€¢ Hslayers NG for visualisation of data
ā€¢ Metaphactory for visualisation of data
D2RQ
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
7
Datasets identification
ā€¢ Goal: to publish linked data from pilots in FOODIE project (available in
PostgreSQL database):
ā€¢ Precision viticulture (Spain)
ā€¢ Delivered a web-based solution providing advisory services in different aspects related to
winegrowing, like disease prevention, production estimation or harvesting schedule
ā€¢ Open Data for Strategic and Tactical planning (Czech Republic)
ā€¢ Delivered two main applications, one for farm telemetry and other for estimation of yield potential
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
8
Data model for farming data
ā€¢ Goal: (i) to define the application vocabulary covering the different
categories of information dealt by the farm mgmt. tools/apps (in
FOODIE) (ii) in line with existing standards and best practices
ā€¢ INSPIRE directive is an EU initiative that aims at building a Pan-
European spatial data infrastructure (SDI) requiring
ā€¢ EU Member States to make available spatial data, from multiple
thematic areas, according to established implementing rules using
appropriate services.
ā€¢ Based on ISO/OGC standards for geographical information, i.e., ISO
19100 series standards
ā€¢ Hence, FOODIE data model builds on
ā€¢ the INSPIRE specification for agricultural
and aquaculture facilities theme - AF (for
agricultural data), and
ā€¢ the INSPIRE data specification for themes
in annex I for for geospatial data
*consulted with experts from various institutions, e.g., EU DG JRC, EU Global
Navigation Satellite Systems Agency (GSA), Czech Ministry of Agriculture,
Global Earth Observation System of Systems (GEOSS), German Kuratorium fĆ¼r
Technik und Bauwesen in der Landwirtschaft (KTBL).
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
9
Data model for farming data
ā€¢ INSPIRE data specifications are defined as UML models
and are available in different XML-based formats
ā€¢ FOODIE extensions on the UML model developed by
domain experts*
ā€¢ Challenge: Transform model into OWL ontology
*consulted with experts from various institutions, e.g., EU DG JRC, EU Global
Navigation Satellite Systems Agency (GSA), Czech Ministry of Agriculture, Global Earth
Observation System of Systems (GEOSS), German Kuratorium fĆ¼r Technik und
Bauwesen in der Landwirtschaft (KTBL).
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
10
Transformation from UML model to OWL ontology
ā€¢ Followed a semi-automatic approach
ā€¢ ShapeChange tool that implements ISO 19150-2 standard
rules for mapping ISO geographic information UML models to
OWL ontologies.
ā€¢ Required different processing tasks:
ā€¢ Pre-processing
ā€¢ Source model preparation
ā€¢ ShapeChange tool configuration: encoding rules; mappings UML classes - OWL elements;
namespaces definition
ā€¢ Base ontologies fixes (INPSIRE common, ISO 19100 series standards)
ā€¢ Post-processing tasks
ā€¢ Manual fixes in the ontology
ā€¢ Manual creation of ontology elements of the base INSPIRE schemas (AF)
XML schemas,
feature catalogs,
and RDF/OWL
Palma R., Reznik T., Esbri M., Charvat K., Mazurek C., An INSPIRE-based vocabulary for the publication of Agricultural Linked Data. Proceedings of the OWLED
Workshop: OWL Experiences and Directions, collocated with the 14th International Semantic Web Conference (ISWC-2015), Bethlehem PA, USA, October 11-15, 2015
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
11
Ontology for farming data - overview
ā€¢ ShapeChange output
ā€¢ UML featureTypes and dataTypes modelled as classes, and
their attributes as datatype or object properties
ā€¢ UML codeLists modelled as classes/concepts, and their
attributes as concept members
ā€¢ Cardinalities restrictions defined on properties (exactly,
min, max)
ā€¢ DataType properties ranges defined according to
model/mappings
ā€¢ Object properties ranges defined according to
model/mappings
ā€¢ Object properties inverseOf defined
Top hierarchy
FeatureType hierarchy
Codelist hierarchy
Datatype hierarchy
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
12
Ontology for farming data ā€“ main classes overview
ā€¢ For the purposes of FOODIE, we found the lack of a feature on a more
detailed level than Site that is already part of the INSPIRE AF data model.
ā€¢ Main concept: Plot
ā€¢ Represents a continuous area of agricultural
land with one type of crop species, cultivated
by one user in one farming mode
ā€¢ Two kinds of data associated:
ā€¢ metadata information
ā€¢ agro-related information
ļ‚§ Next concept: Management Zone
ā€¢ Enables a more precise description of the land
characteristics in fine-grained area
foodie:Plot
INSPIRE-AF:Site
foodie:Alert Foodie:InterventionFoodie:CropSpecies
Foodie:ManagementZone
containsPlot
containsManagementZone
interventionPlotspeciesPlot
alertPlot
plotAlert
Foodie:ProductionType
production
Foodie:SoilNutrients
zoneNutrients
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
13
Ontology for farming data ā€“ main classes overview
ā€¢ The Intervention is the basic feature type for any kind of (farming)
application with explicitly defined geometry, e.g., tillage or pruning.
ā€¢ Has multiple indirect associations with different concepts
Foodie:Intervention
Foodie:Treatment
Foodie:TreatmentPlan
Foodie:Product Foodie:ProductPreparation
Foodie:ActiveIngredients
is-a
plan
productPlan
planProduct
preparationProduct preparation
productTreatment
treatmentProduct
preparationPlan
ingredientProduct
Foodie:FormOfT
reatmentValue
Foodie:Treatme
ntPurposeValue
formOfTreatmenttreatmentPurpose
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
14
RDF data generation
ā€¢ D2RQ requires a mapping file (in RDF)
specifying how to map the content of a
relational database to RDF
https://github.com/FOODIE-cloud/ontology/tree/master/mappings
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
15
RDF data generation
ā€¢ The mapping file also specifies the connection details for the source
dataset
ā€¢ Based on the mapping file, the database content was dumped to an RDF
file
ā€¢ The RDF file was then loaded into Virtuoso triplestore
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
16
Linking the generated RDF dataset
ā€¢ In order to link the resulting RDF
dataset with other datasets, we
used Silk, but also had to do some
manual entries
ā€¢ We found issues in handling large
datasets in Silk, specially those
accessed via SPARQL endpoint that
we cannot control
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
17
Exploiting the Linked Data - querying
ā€¢ Sparql endpoint: https://www.foodie-cloud.org/sparql
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
18
Exploiting the Linked Data ā€“ search & navigate
ā€¢ Faceted search endpoint: https://www.foodie-cloud.org/fct
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
19
Exploiting the Linked Data ā€“ visualisation
ā€¢ Map visualisation: http://ng.hslayers.org/examples/foodie-zones/
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
20
Exploiting the Linked Data ā€“ visualisation
ā€¢ Map visualisation: http://ng.hslayers.org/examples/foodie-zones/
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
21
Exploiting the Linked Data ā€“ visualisation
ā€¢ Metaphactory: https://foodie.grapphs.com/resource/Start
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
22
Exploiting the Linked Data ā€“ visualisation
ā€¢ Metaphactory: https://foodie.grapphs.com/resource/Start
This document is part of a project that has received funding
from the European Unionā€™s Horizon 2020 research and innovation programme
under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or
reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu.
23
Thank you for your attention!
Contact details

More Related Content

What's hot

What's hot (20)

06 WP3 Fishery pilots
06 WP3 Fishery pilots06 WP3 Fishery pilots
06 WP3 Fishery pilots
Ā 
04 WP1 Agriculture Pilots
04 WP1 Agriculture Pilots04 WP1 Agriculture Pilots
04 WP1 Agriculture Pilots
Ā 
BDE SC2 Workshop 3: DataBio
BDE SC2 Workshop 3: DataBioBDE SC2 Workshop 3: DataBio
BDE SC2 Workshop 3: DataBio
Ā 
Data bio big data worksop Brussels
Data bio big data worksop BrusselsData bio big data worksop Brussels
Data bio big data worksop Brussels
Ā 
01 DataBio Workshop in Rome
01 DataBio Workshop in Rome01 DataBio Workshop in Rome
01 DataBio Workshop in Rome
Ā 
Linked Data Publication Pipelines for Agri-Related use cases
Linked Data Publication Pipelines for Agri-Related use casesLinked Data Publication Pipelines for Agri-Related use cases
Linked Data Publication Pipelines for Agri-Related use cases
Ā 
EDF2013: Selected Talk, Ghislain Atemezing: Towards Interoperable Visualizati...
EDF2013: Selected Talk, Ghislain Atemezing: Towards Interoperable Visualizati...EDF2013: Selected Talk, Ghislain Atemezing: Towards Interoperable Visualizati...
EDF2013: Selected Talk, Ghislain Atemezing: Towards Interoperable Visualizati...
Ā 
Barbato leit ict 15-16-17
Barbato leit ict 15-16-17Barbato leit ict 15-16-17
Barbato leit ict 15-16-17
Ā 
eROSA Stakeholder WS1: Introduction
eROSA Stakeholder WS1: IntroductioneROSA Stakeholder WS1: Introduction
eROSA Stakeholder WS1: Introduction
Ā 
BDE-BDVA Webinar: Arne Berre and Ana Garcia slides for BDVA/BDE Webinar
BDE-BDVA Webinar: Arne Berre and Ana Garcia slides for BDVA/BDE WebinarBDE-BDVA Webinar: Arne Berre and Ana Garcia slides for BDVA/BDE Webinar
BDE-BDVA Webinar: Arne Berre and Ana Garcia slides for BDVA/BDE Webinar
Ā 
EDF2014: Piek Vossen, Professor Computational Lexicology, VU University Amste...
EDF2014: Piek Vossen, Professor Computational Lexicology, VU University Amste...EDF2014: Piek Vossen, Professor Computational Lexicology, VU University Amste...
EDF2014: Piek Vossen, Professor Computational Lexicology, VU University Amste...
Ā 
Linked Data with hybrid services in Agriculture
Linked Data with hybrid services in AgricultureLinked Data with hybrid services in Agriculture
Linked Data with hybrid services in Agriculture
Ā 
Towards Open Science in Agriculture & Food
Towards Open Science in Agriculture & FoodTowards Open Science in Agriculture & Food
Towards Open Science in Agriculture & Food
Ā 
E. Baldacci, Enabling Data-Driven Services
E. Baldacci,  Enabling Data-Driven ServicesE. Baldacci,  Enabling Data-Driven Services
E. Baldacci, Enabling Data-Driven Services
Ā 
DMP exercise: linking data management activities to services - EUDAT Summer ...
DMP exercise: linking data management activities to services  - EUDAT Summer ...DMP exercise: linking data management activities to services  - EUDAT Summer ...
DMP exercise: linking data management activities to services - EUDAT Summer ...
Ā 
Data management plans ā€“ EUDAT Best practices and case study | www.eudat.eu
Data management plans ā€“ EUDAT Best practices and case study | www.eudat.euData management plans ā€“ EUDAT Best practices and case study | www.eudat.eu
Data management plans ā€“ EUDAT Best practices and case study | www.eudat.eu
Ā 
BDE-SC1 Webinar: OpenPHACTS Re-engineered with Big Data Europe
BDE-SC1 Webinar: OpenPHACTS Re-engineered with Big Data EuropeBDE-SC1 Webinar: OpenPHACTS Re-engineered with Big Data Europe
BDE-SC1 Webinar: OpenPHACTS Re-engineered with Big Data Europe
Ā 
LOD2 Plenary Vienna 2012: WP9A - LOD for a Distributed Marketplace for Public...
LOD2 Plenary Vienna 2012: WP9A - LOD for a Distributed Marketplace for Public...LOD2 Plenary Vienna 2012: WP9A - LOD for a Distributed Marketplace for Public...
LOD2 Plenary Vienna 2012: WP9A - LOD for a Distributed Marketplace for Public...
Ā 
InfoWeek Digitization Day - The e-ROSA project
InfoWeek Digitization Day - The e-ROSA projectInfoWeek Digitization Day - The e-ROSA project
InfoWeek Digitization Day - The e-ROSA project
Ā 
Presentation of Hans-Jƶrg Lieder, BnF Information Day
Presentation of Hans-Jƶrg Lieder, BnF Information DayPresentation of Hans-Jƶrg Lieder, BnF Information Day
Presentation of Hans-Jƶrg Lieder, BnF Information Day
Ā 

Similar to Publication of INSPIRE-based agricultural linked data

DataBio Architecture for Big Data and Big Data Visualisation
DataBio Architecture for Big Data and Big Data VisualisationDataBio Architecture for Big Data and Big Data Visualisation
DataBio Architecture for Big Data and Big Data Visualisation
plan4all
Ā 

Similar to Publication of INSPIRE-based agricultural linked data (20)

Linked data publication pipelines for agri-related use cases
Linked data publication pipelines for agri-related use casesLinked data publication pipelines for agri-related use cases
Linked data publication pipelines for agri-related use cases
Ā 
Exposing EO Linked (meta-)Data from OpenSearch Catalogue
Exposing EO Linked (meta-)Data from OpenSearch CatalogueExposing EO Linked (meta-)Data from OpenSearch Catalogue
Exposing EO Linked (meta-)Data from OpenSearch Catalogue
Ā 
H2020 big data and fiware an d iot
H2020 big data and fiware an d iotH2020 big data and fiware an d iot
H2020 big data and fiware an d iot
Ā 
eROSA Policy WS1: Databio Project Overview
eROSA Policy WS1: Databio Project OvervieweROSA Policy WS1: Databio Project Overview
eROSA Policy WS1: Databio Project Overview
Ā 
Iot and big data technologies for bio industry data bio
Iot and big data technologies for bio industry   data bioIot and big data technologies for bio industry   data bio
Iot and big data technologies for bio industry data bio
Ā 
DataBio Architecture for Big Data and Big Data Visualisation
DataBio Architecture for Big Data and Big Data VisualisationDataBio Architecture for Big Data and Big Data Visualisation
DataBio Architecture for Big Data and Big Data Visualisation
Ā 
E-infrastructure for open agri-food sciences: Vision & Roadmap
E-infrastructure for open agri-food sciences: Vision & RoadmapE-infrastructure for open agri-food sciences: Vision & Roadmap
E-infrastructure for open agri-food sciences: Vision & Roadmap
Ā 
02 agriculture challenges, existing standardisation efforts and data bio agri...
02 agriculture challenges, existing standardisation efforts and data bio agri...02 agriculture challenges, existing standardisation efforts and data bio agri...
02 agriculture challenges, existing standardisation efforts and data bio agri...
Ā 
Overview of data bio project results
Overview of data bio project resultsOverview of data bio project results
Overview of data bio project results
Ā 
D3.1.2 heterogeneous data repositories and related services
D3.1.2 heterogeneous data repositories and related servicesD3.1.2 heterogeneous data repositories and related services
D3.1.2 heterogeneous data repositories and related services
Ā 
BDV Webinar Series - Thanasis - Big Data Breakthroughs for Global Bio-economy...
BDV Webinar Series - Thanasis - Big Data Breakthroughs for Global Bio-economy...BDV Webinar Series - Thanasis - Big Data Breakthroughs for Global Bio-economy...
BDV Webinar Series - Thanasis - Big Data Breakthroughs for Global Bio-economy...
Ā 
fiware_event_13_06_2023_fragkou_pavlina.pptx
fiware_event_13_06_2023_fragkou_pavlina.pptxfiware_event_13_06_2023_fragkou_pavlina.pptx
fiware_event_13_06_2023_fragkou_pavlina.pptx
Ā 
MEASURE H2020 project presented at OW2con'19, June 12-13, 2019, Paris.
 MEASURE H2020 project presented at OW2con'19, June 12-13, 2019, Paris.  MEASURE H2020 project presented at OW2con'19, June 12-13, 2019, Paris.
MEASURE H2020 project presented at OW2con'19, June 12-13, 2019, Paris.
Ā 
Data bio d6.2-data-management-plan_v1.0_2017-06-30_crea
Data bio d6.2-data-management-plan_v1.0_2017-06-30_creaData bio d6.2-data-management-plan_v1.0_2017-06-30_crea
Data bio d6.2-data-management-plan_v1.0_2017-06-30_crea
Ā 
Pampel & Kindling: Repositorien fĆ¼r Forschungsdaten - Infrastrukturen fĆ¼r die...
Pampel & Kindling: Repositorien fĆ¼r Forschungsdaten - Infrastrukturen fĆ¼r die...Pampel & Kindling: Repositorien fĆ¼r Forschungsdaten - Infrastrukturen fĆ¼r die...
Pampel & Kindling: Repositorien fĆ¼r Forschungsdaten - Infrastrukturen fĆ¼r die...
Ā 
EUDAT CDI Architecture
EUDAT CDI ArchitectureEUDAT CDI Architecture
EUDAT CDI Architecture
Ā 
D3.1.1 Heterogeneous data repositories and related-services
D3.1.1 Heterogeneous data repositories and related-servicesD3.1.1 Heterogeneous data repositories and related-services
D3.1.1 Heterogeneous data repositories and related-services
Ā 
PaNOSC and Research Data Management / Battery2030+ Initiative Workshop / 12 M...
PaNOSC and Research Data Management / Battery2030+ Initiative Workshop / 12 M...PaNOSC and Research Data Management / Battery2030+ Initiative Workshop / 12 M...
PaNOSC and Research Data Management / Battery2030+ Initiative Workshop / 12 M...
Ā 
2019 04-08 hopu-aj
2019 04-08 hopu-aj2019 04-08 hopu-aj
2019 04-08 hopu-aj
Ā 
BDV Webinar Series - Ephrem - Big Data Breakthroughs for Global Bio-economy B...
BDV Webinar Series - Ephrem - Big Data Breakthroughs for Global Bio-economy B...BDV Webinar Series - Ephrem - Big Data Breakthroughs for Global Bio-economy B...
BDV Webinar Series - Ephrem - Big Data Breakthroughs for Global Bio-economy B...
Ā 

More from Raul Palma

An INSPIRE-based vocabulary for the publication of Agricultural Linked Data
An INSPIRE-based vocabulary for the publication of Agricultural Linked DataAn INSPIRE-based vocabulary for the publication of Agricultural Linked Data
An INSPIRE-based vocabulary for the publication of Agricultural Linked Data
Raul Palma
Ā 

More from Raul Palma (15)

ROHub - Research Object Management Platform Introduction
ROHub - Research Object Management Platform IntroductionROHub - Research Object Management Platform Introduction
ROHub - Research Object Management Platform Introduction
Ā 
FDO as building block for digitization technology stacks
FDO as building block for digitization technology stacksFDO as building block for digitization technology stacks
FDO as building block for digitization technology stacks
Ā 
RO-crate-FDO-ROHub
RO-crate-FDO-ROHubRO-crate-FDO-ROHub
RO-crate-FDO-ROHub
Ā 
RELIANCE-reproducible-OS.pptx
RELIANCE-reproducible-OS.pptxRELIANCE-reproducible-OS.pptx
RELIANCE-reproducible-OS.pptx
Ā 
RELIANCE-services-final.pptx
RELIANCE-services-final.pptxRELIANCE-services-final.pptx
RELIANCE-services-final.pptx
Ā 
ROHub-Argos integration
ROHub-Argos integrationROHub-Argos integration
ROHub-Argos integration
Ā 
RELIANCE ROHub hackathon
RELIANCE ROHub hackathonRELIANCE ROHub hackathon
RELIANCE ROHub hackathon
Ā 
Fostering the Smart Agriculture Development in North East Europe
Fostering the Smart Agriculture Development in North East EuropeFostering the Smart Agriculture Development in North East Europe
Fostering the Smart Agriculture Development in North East Europe
Ā 
Reliance project introduction
Reliance project introductionReliance project introduction
Reliance project introduction
Ā 
Inspire hack 2017-linked-data
Inspire hack 2017-linked-dataInspire hack 2017-linked-data
Inspire hack 2017-linked-data
Ā 
Wielkopolska activities with potential to cluster to cluster collaboration EU...
Wielkopolska activities with potential to cluster to cluster collaboration EU...Wielkopolska activities with potential to cluster to cluster collaboration EU...
Wielkopolska activities with potential to cluster to cluster collaboration EU...
Ā 
Towards the development of smart agriculture infrastructure in Wielkopolska r...
Towards the development of smart agriculture infrastructure in Wielkopolska r...Towards the development of smart agriculture infrastructure in Wielkopolska r...
Towards the development of smart agriculture infrastructure in Wielkopolska r...
Ā 
An INSPIRE-based vocabulary for the publication of Agricultural Linked Data
An INSPIRE-based vocabulary for the publication of Agricultural Linked DataAn INSPIRE-based vocabulary for the publication of Agricultural Linked Data
An INSPIRE-based vocabulary for the publication of Agricultural Linked Data
Ā 
ROHub
ROHubROHub
ROHub
Ā 
Aspects of Reproducibility in Earth Science
Aspects of Reproducibility in Earth ScienceAspects of Reproducibility in Earth Science
Aspects of Reproducibility in Earth Science
Ā 

Recently uploaded

+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(ā˜Žļø+971_581248768%)**%*]'#abortion pills for sale in dubai@
Ā 

Recently uploaded (20)

Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Ā 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
Ā 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
Ā 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Ā 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
Ā 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
Ā 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
Ā 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
Ā 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
Ā 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
Ā 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
Ā 
Mcleodganj Call Girls šŸ„° 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls šŸ„° 8617370543 Service Offer VIP Hot ModelMcleodganj Call Girls šŸ„° 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls šŸ„° 8617370543 Service Offer VIP Hot Model
Ā 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Ā 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
Ā 
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
Ā 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
Ā 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Ā 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Ā 
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
Ā 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
Ā 

Publication of INSPIRE-based agricultural linked data

  • 1. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 1 This project has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under grant agreement No 732064 This project is part of BDV PPP PUBLICATION OF INSPIRE-BASED AGRICULTURAL LINKED DATA Raul Palma1, TomĆ”Å” ŘeznĆ­k2, Karel CharvĆ”t2, Soumya Brahma1, Dmitrij Kozuch2, Raitis Berzins2 1Poznan Supercomputing and Networking Center, Poland 2WirelessInfo, Czech Republic Linked Open Data in Agriculture MACS-G20 Workshop in Berlin (Germany), 27 ā€“ 28 September 2017
  • 2. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 2 Motivation ā€¢ Farm management context ā€¢ Multiple activities and stakeholders ā€¢ Multiple applications, tools and devices ā€¢ Multiple data sources, data types and data formats ā€¢ Challenge ā€¢ To combine/integrate those different and heterogeneous data sources in order to make economically and environmentally sound decisions
  • 3. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 3 Data Integration in relevant projects (context) ā€¢ Data integration challenges have been the focus of relevant projects EU FP7, ICT CIP, 2014- 2017 EU FP7, ICT CIP, 2014- 2017 FOODIE aimed at building an open and interoperable cloud-based platform addressing among others the integration of data relevant to farming production including their geo-spatial dimension, as well as their publication as Linked data. SDI4Apps aimed at building a cloud- based framework with open API for data integration focusing on the development of six pilot apps, drawing along the lines of INSPIRE, Copernicus and GEOSS DataBio aims at showcasing the benefits of Big Data technologies in the raw material production from agriculture & others for the bioeconomy industry; deploying an interoperable platform on top of the existing partnersā€™ infrastructure. DataBio aims at delivering solutions for big data mgmt., including i) the storage and querying of various big data sources; ii) the harmonization and integration of a large variety of data from many sources, using linked data as a federated layer
  • 4. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 4 Linked data publication in agriculture ā€¢ LD is increasingly becoming a popular method for publishing data on the Web ā€¢ Improves data accessibility by both humans and machines, e.g., for finding, reuse and integration ā€¢ Enables to discover more useful data through the links, and to exploit data with semantic queries ā€¢ Growing number of datasets in the LOD cloud ā€¢ > 1100 by 22nd August 2017 ā€¢ Coverage of the LOD cloud ā€¢ Large cross-domain datasets (dbpedia, freebase, etc.) ā€¢ Domain coverage varies (e.g., large number of datasets in Geography, Government, BioInformatics) ā€¢ What about Agriculture? ā€¢ Only few examples (AGRIS biblio records, AGROVOC thesaurus + other thesaurus like NALT) ā€¢ Farming data? http://lod-cloud.net/
  • 5. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 5 Linked data publication process overview ā€¢ Simple set of principles & technologies ā€¢ URI, HTTP, RDF, SPARQL ā€¢ Involves a set of tasks Datasets identification Model specification RDF data generation Linking Hyland et al. Hausenblas et al. VillazĆ³n-Terrazas et al. Reference Linked data publication pipelines Exploiting
  • 6. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 6 Linked data publication technologies overview ā€¢ Used technologies: ā€¢ D2RQ for transforming Relational Databases as Virtual RDF Graphs ā€¢ RDF for the representation of data ā€¢ Farming ontology providing the underlying vocabulary and relations ā€¢ Virtuoso for storing the semantic datasets ā€¢ Silk for discovery of links ā€¢ Sparql for querying semantic data ā€¢ Hslayers NG for visualisation of data ā€¢ Metaphactory for visualisation of data D2RQ
  • 7. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 7 Datasets identification ā€¢ Goal: to publish linked data from pilots in FOODIE project (available in PostgreSQL database): ā€¢ Precision viticulture (Spain) ā€¢ Delivered a web-based solution providing advisory services in different aspects related to winegrowing, like disease prevention, production estimation or harvesting schedule ā€¢ Open Data for Strategic and Tactical planning (Czech Republic) ā€¢ Delivered two main applications, one for farm telemetry and other for estimation of yield potential
  • 8. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 8 Data model for farming data ā€¢ Goal: (i) to define the application vocabulary covering the different categories of information dealt by the farm mgmt. tools/apps (in FOODIE) (ii) in line with existing standards and best practices ā€¢ INSPIRE directive is an EU initiative that aims at building a Pan- European spatial data infrastructure (SDI) requiring ā€¢ EU Member States to make available spatial data, from multiple thematic areas, according to established implementing rules using appropriate services. ā€¢ Based on ISO/OGC standards for geographical information, i.e., ISO 19100 series standards ā€¢ Hence, FOODIE data model builds on ā€¢ the INSPIRE specification for agricultural and aquaculture facilities theme - AF (for agricultural data), and ā€¢ the INSPIRE data specification for themes in annex I for for geospatial data *consulted with experts from various institutions, e.g., EU DG JRC, EU Global Navigation Satellite Systems Agency (GSA), Czech Ministry of Agriculture, Global Earth Observation System of Systems (GEOSS), German Kuratorium fĆ¼r Technik und Bauwesen in der Landwirtschaft (KTBL).
  • 9. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 9 Data model for farming data ā€¢ INSPIRE data specifications are defined as UML models and are available in different XML-based formats ā€¢ FOODIE extensions on the UML model developed by domain experts* ā€¢ Challenge: Transform model into OWL ontology *consulted with experts from various institutions, e.g., EU DG JRC, EU Global Navigation Satellite Systems Agency (GSA), Czech Ministry of Agriculture, Global Earth Observation System of Systems (GEOSS), German Kuratorium fĆ¼r Technik und Bauwesen in der Landwirtschaft (KTBL).
  • 10. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 10 Transformation from UML model to OWL ontology ā€¢ Followed a semi-automatic approach ā€¢ ShapeChange tool that implements ISO 19150-2 standard rules for mapping ISO geographic information UML models to OWL ontologies. ā€¢ Required different processing tasks: ā€¢ Pre-processing ā€¢ Source model preparation ā€¢ ShapeChange tool configuration: encoding rules; mappings UML classes - OWL elements; namespaces definition ā€¢ Base ontologies fixes (INPSIRE common, ISO 19100 series standards) ā€¢ Post-processing tasks ā€¢ Manual fixes in the ontology ā€¢ Manual creation of ontology elements of the base INSPIRE schemas (AF) XML schemas, feature catalogs, and RDF/OWL Palma R., Reznik T., Esbri M., Charvat K., Mazurek C., An INSPIRE-based vocabulary for the publication of Agricultural Linked Data. Proceedings of the OWLED Workshop: OWL Experiences and Directions, collocated with the 14th International Semantic Web Conference (ISWC-2015), Bethlehem PA, USA, October 11-15, 2015
  • 11. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 11 Ontology for farming data - overview ā€¢ ShapeChange output ā€¢ UML featureTypes and dataTypes modelled as classes, and their attributes as datatype or object properties ā€¢ UML codeLists modelled as classes/concepts, and their attributes as concept members ā€¢ Cardinalities restrictions defined on properties (exactly, min, max) ā€¢ DataType properties ranges defined according to model/mappings ā€¢ Object properties ranges defined according to model/mappings ā€¢ Object properties inverseOf defined Top hierarchy FeatureType hierarchy Codelist hierarchy Datatype hierarchy
  • 12. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 12 Ontology for farming data ā€“ main classes overview ā€¢ For the purposes of FOODIE, we found the lack of a feature on a more detailed level than Site that is already part of the INSPIRE AF data model. ā€¢ Main concept: Plot ā€¢ Represents a continuous area of agricultural land with one type of crop species, cultivated by one user in one farming mode ā€¢ Two kinds of data associated: ā€¢ metadata information ā€¢ agro-related information ļ‚§ Next concept: Management Zone ā€¢ Enables a more precise description of the land characteristics in fine-grained area foodie:Plot INSPIRE-AF:Site foodie:Alert Foodie:InterventionFoodie:CropSpecies Foodie:ManagementZone containsPlot containsManagementZone interventionPlotspeciesPlot alertPlot plotAlert Foodie:ProductionType production Foodie:SoilNutrients zoneNutrients
  • 13. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 13 Ontology for farming data ā€“ main classes overview ā€¢ The Intervention is the basic feature type for any kind of (farming) application with explicitly defined geometry, e.g., tillage or pruning. ā€¢ Has multiple indirect associations with different concepts Foodie:Intervention Foodie:Treatment Foodie:TreatmentPlan Foodie:Product Foodie:ProductPreparation Foodie:ActiveIngredients is-a plan productPlan planProduct preparationProduct preparation productTreatment treatmentProduct preparationPlan ingredientProduct Foodie:FormOfT reatmentValue Foodie:Treatme ntPurposeValue formOfTreatmenttreatmentPurpose
  • 14. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 14 RDF data generation ā€¢ D2RQ requires a mapping file (in RDF) specifying how to map the content of a relational database to RDF https://github.com/FOODIE-cloud/ontology/tree/master/mappings
  • 15. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 15 RDF data generation ā€¢ The mapping file also specifies the connection details for the source dataset ā€¢ Based on the mapping file, the database content was dumped to an RDF file ā€¢ The RDF file was then loaded into Virtuoso triplestore
  • 16. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 16 Linking the generated RDF dataset ā€¢ In order to link the resulting RDF dataset with other datasets, we used Silk, but also had to do some manual entries ā€¢ We found issues in handling large datasets in Silk, specially those accessed via SPARQL endpoint that we cannot control
  • 17. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 17 Exploiting the Linked Data - querying ā€¢ Sparql endpoint: https://www.foodie-cloud.org/sparql
  • 18. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 18 Exploiting the Linked Data ā€“ search & navigate ā€¢ Faceted search endpoint: https://www.foodie-cloud.org/fct
  • 19. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 19 Exploiting the Linked Data ā€“ visualisation ā€¢ Map visualisation: http://ng.hslayers.org/examples/foodie-zones/
  • 20. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 20 Exploiting the Linked Data ā€“ visualisation ā€¢ Map visualisation: http://ng.hslayers.org/examples/foodie-zones/
  • 21. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 21 Exploiting the Linked Data ā€“ visualisation ā€¢ Metaphactory: https://foodie.grapphs.com/resource/Start
  • 22. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 22 Exploiting the Linked Data ā€“ visualisation ā€¢ Metaphactory: https://foodie.grapphs.com/resource/Start
  • 23. This document is part of a project that has received funding from the European Unionā€™s Horizon 2020 research and innovation programme under agreement No 732064. It is the property of the DataBio consortium and shall not be distributed or reproduced without the formal approval of the DataBio Management Committee. Find us at www.databio.eu. 23 Thank you for your attention! Contact details

Editor's Notes

  1. from agriculture, forestry and fishery to produce food, energy and biomaterials responsibly and sustainably. , to enable users with different profiles to benefit from the underlying HPC capabilities.