Ontology Matching for Big Data Applications in the Smart Dairy Farming Domain
|
|
|
- Kristin Fitzgerald
- 10 years ago
- Views:
Transcription
1 Ontology Matching for Big Data Applications in the Smart Dairy Farming Domain Jack P.C. Verhoosel, Michael van Bekkum and Frits K. van Evert TNO Connected Business, Soesterberg, The Netherlands Wageningen UR, Wageningen, The Netherlands Abstract. This paper addresses the use of ontologies for combining different sensor data sources to enable big data analysis in the dairy farming domain. We have made existing data sources accessible via linked data RDF mechanisms using OWL ontologies on Virtuoso and D2RQ triple stores. In addition, we have created a common ontology for the domain and mapped it to the existing ontologies of the different data sources. Furthermore, we verified this mapping using the ontology matching tools HerTUDA, AML, LogMap and YAM++. Finally, we have enabled the querying of the combined set of data sources using SPARQL on the common ontology. 1 Background and context Dairy farmers are currently in an era of precision livestock farming in which information provisioning for decision support is becoming crucial to maintain a competitive advantage. Therefore, getting access to a variety of data sources on and off the farm that contain static and dynamic individual cow data is necessary in order to provide improved answers on daily questions around feeding, insemination, calving and milk production processes. In our SmartDairyFarming project, we have installed sensor equipment to monitor around 300 cows each at 7 dairy farms in The Netherlands. These cows have been monitored during the year 2014 which has generated a huge amount of sensor data on grazing activity, feed intake, weight, temperature and milk production of individual cows stored in databases at each of the dairy farms. The amount of data recorded per cow is at least 1MB of sensor values per month, which adds up to 3.6GB of data per dairy farm per year. In addition, static cow data is available in a data warehouse at the national milk registration organization, including date of birth, ancestors and current farm. Finally, another existing data source contains satellite information on the amount of biomass in grasslands in the country that is important for measuring the feed intake of cows during grazing. We focused on decision support for the dairy farmer on feed efficiency in relation to milk production. Thus, the big data analysis question is: How much feed did an individual cow consume in a certain time period at a specific grassland parcel and how does this relate to the milk production in that period?. 2 Ontology matching approach We selected one of the dairy farms (DairyCampus) and created with TopBraid composer a small ontology with 12 concepts that covers among others the grasslands adfa, p. 1, Springer-Verlag Berlin Heidelberg 2011
2 of a farm and grazing periods of cows. This ontology contains the concept perceel which is Dutch for parcel. In addition, we selected the data source with satellite information about biomass in grasslands (AkkerWeb, This data source already had an ontology defined with 15 concepts that contains the concept plot which is similar to parcel but with different properties. Furthermore, we created with TopBraid composer a common ontology for the domain with 28 concepts on feed efficiency (see Fig. 1). Fig. 1. Common ontology excerpt for feed efficiency in dairy farming. The challenge was to find a match between the concepts and properties in the common ontology and both specific DairyCampus and Akkerweb ontologies, especially regarding the concepts parcel, perceel and plot. We have initially created manual mappings between classes and properties in TopBraid using rdfs:subclassof and owl:equivalentproperty relations. Based on relatively few and simple matches we created initial alignments between properties and classes (see Fig. 2). Use of a matching tool or system however, provides us with opportunities to verify our current findings and better support our efforts in finding alignments between the other concepts in our ontologies. We used a literature survey of matching techniques and supporting matching systems in [1] to identify both a suitable matching technique and find tools supporting that technique. We consider language-based matching as the appropriate type of matching since it focuses on syntactic element-level natural language processing of words.
3 owl: equivalentproperty owl: equivalentproperty rdfs: subclassof rdfs: subclassof Fig. 2. Mapping of classes and properties based on the matching result. There are numerous tools available that support this specific matching technology, mostly from academic efforts. Some however are no longer in active use, either being outdated or not maintained anymore [2]. We have selected several matching systems that support our requirement of language-based matching: HerTUDA [3,4], AgreementMaker Light (AML) [5], LogMap [6], and YAM++ [7]. We have started to investigate the possibilities of these tools to find alignments of concepts and properties in our ontologies. Initial efforts with the concepts shown in Fig. 2 have not led to successful matches and alignments yet, however. The HerTUDA, LogMap and YAM++ tools were difficult to install and execute. The AML worked fine, but could not entirely find the relation between parcel, perceel and plot. Further analysis is required to find out whether this is due to inappropriate matching techniques or to the specific ontologies that we offered to the tool. 3 SPARQL queries and triple stores In order to show that the mapping of the common ontology to the specific ontologies works properly, we generated in TopBraid a few instances of an Akkerweb plot and a DairyCampus perceel. In addition, we build a simple select query using the common ontology to retrieve all parcels and for each parcel the properties name, biomass, surface and test.
4 Fig. 3. Select query on common ontology to retrieve all parcels. The query and its results are shown in Fig. 3. As can be seen, the query retrieves both Akkerweb plots and DairyCampus percelen. In addition, Akkerweb contains data about a plot with name L188 and DairyCampus contains data on a perceel with an identifier L188. This means that both databases contain the same parcel and the properties can be combined. The specific ontologies for DairyCampus and Akkerweb formed the basis to generate triples from the relational data sources of DairyCampus and Akkerweb. The triples have been made available via Virtuoso as well as directly from the D2RQ tool ( A system that is based on the common ontology can take the big data question to create federated SPARQL queries on the DairyCampus and Akkerweb triple stores using the matched ontologies. As a result, farmers can pose questions in terms of the concepts in the common ontology instead of the detailed and specific concepts of the DairyCampus and Akkerweb data sources. The farmer can use such a system for decision support purposes on various daily operations, such as which amount of feed to provide to which cow in which period, when to inseminate a specific cow and how to deal with the transition of a cow towards calving. 4 Future work The approach that is describe in this paper is currently in an experimental phase. We have reached a set-up by filling the triple stores for 3 farms with cow-data of 1 month which adds up to a total of 7 million triples. This needs to be upgraded to all farms with all data from Thereby, we can test the scalability of our system. In addition, we need to do more detailed analysis of the matching tools that we used and the reasons for not adequately solving the simple matching problem that we proposed. References 1. Otero-Cerdeira, L., Rodriguez-Martinez, F.J., Gomez-Rodriguez, A.: Ontology matching: A literature review. Journal on Expert Systems with Applications, (2015) 2. Ontology matchings tool overview:
5 3. Hertling, S.: Hertuda results for OAEI In Ontology Matching 2012 workshop proceedings, (2012) 4. HerTUDA download: 5. AgreementMakerLight website: somer.fc.ul.pt/aml.php 6. LogMap website: 7. YAM++ website:
MINISTRY OF LIVESTOCK DEVELOPMENT SMALLHOLDER DAIRY COMMERCIALIZATION PROGRAMME. Artificial Insemination (AI) Service
MINISTRY OF LIVESTOCK DEVELOPMENT SMALLHOLDER DAIRY COMMERCIALIZATION PROGRAMME Artificial Insemination (AI) Service 1 1.0 Introduction The fertility of a dairy cattle is very important for a dairy farmer
Ontology-Based Discovery of Workflow Activity Patterns
Ontology-Based Discovery of Workflow Activity Patterns Diogo R. Ferreira 1, Susana Alves 1, Lucinéia H. Thom 2 1 IST Technical University of Lisbon, Portugal {diogo.ferreira,susana.alves}@ist.utl.pt 2
City Data Pipeline. A System for Making Open Data Useful for Cities. [email protected]
City Data Pipeline A System for Making Open Data Useful for Cities Stefan Bischof 1,2, Axel Polleres 1, and Simon Sperl 1 1 Siemens AG Österreich, Siemensstraße 90, 1211 Vienna, Austria {bischof.stefan,axel.polleres,simon.sperl}@siemens.com
Organic SOP-Grazing describes the procedures that ensure the organic requirements are met with regard to cattle grazing.
Organic SOP-Grazing Organic SOP-Grazing describes the procedures that ensure the organic requirements are met with regard to cattle grazing. The description includes: Specific requirements for grazing
Towards a Sales Assistant using a Product Knowledge Graph
Towards a Sales Assistant using a Product Knowledge Graph Haklae Kim, Jungyeon Yang, and Jeongsoon Lee Samsung Electronics Co., Ltd. Maetan dong 129, Samsung-ro, Yeongtong-gu, Suwon-si, Gyeonggi-do 443-742,
Ampersand and the Semantic Web
Ampersand and the Semantic Web The Ampersand Conference 2015 Lloyd Rutledge The Semantic Web Billions and billions of data units Triples (subject-predicate-object) of URI s Your data readily integrated
Evaluating SPARQL-to-SQL translation in ontop
Evaluating SPARQL-to-SQL translation in ontop Mariano Rodriguez-Muro, Martin Rezk, Josef Hardi, Mindaugas Slusnys Timea Bagosi and Diego Calvanese KRDB Research Centre, Free University of Bozen-Bolzano
The role of new on-farm technologies in sustainable farm management and dairy herd improvement (DHI)
The role of new on-farm technologies in sustainable farm management and dairy herd improvement (DHI) October 16, 2011 Kees de Koning, Pieter Hogewerf New on-farm technologies & farm management Use of
Big Data, Fast Data, Complex Data. Jans Aasman Franz Inc
Big Data, Fast Data, Complex Data Jans Aasman Franz Inc Private, founded 1984 AI, Semantic Technology, professional services Now in Oakland Franz Inc Who We Are (1 (2 3) (4 5) (6 7) (8 9) (10 11) (12
IT NETWORK SOLUTION FOR 2 MILLION COWS IN AUSTRIA AND GERMANY (RINDERDATENVERBUND, RDV)
IT NETWORK SOLUTION FOR 2 MILLION COWS IN AUSTRIA AND GERMANY (RINDERDATENVERBUND, RDV) F. Gollé Leidreiter & K. Drössler Landesverband Baden Württemberg für Leistungs und Qualitätsprüfungen in der Tierzucht
An Efficient and Scalable Management of Ontology
An Efficient and Scalable Management of Ontology Myung-Jae Park 1, Jihyun Lee 1, Chun-Hee Lee 1, Jiexi Lin 1, Olivier Serres 2, and Chin-Wan Chung 1 1 Korea Advanced Institute of Science and Technology,
Databases in Organizations
The following is an excerpt from a draft chapter of a new enterprise architecture text book that is currently under development entitled Enterprise Architecture: Principles and Practice by Brian Cameron
Advanced Technology Use in
Advanced Technology Use in PUTDairy TITLE HERE Farming Presented by Michael Ryan DAIRYMASTER GLOBAL HEADQUARTERS Head office in Causeway, Co. Kerry, Ireland. We export > 75% of production. 95% of products
Supporting Change-Aware Semantic Web Services
Supporting Change-Aware Semantic Web Services Annika Hinze Department of Computer Science, University of Waikato, New Zealand [email protected] Abstract. The Semantic Web is not only evolving into
Developing Web 3.0. Nova Spivak & Lew Tucker http://radarnetworks.com/ Tim Boudreau http://weblogs.java.net/blog/timboudreau/
Developing Web 3.0 Nova Spivak & Lew Tucker http://radarnetworks.com/ Tim Boudreau http://weblogs.java.net/blog/timboudreau/ Henry Story http://blogs.sun.com/bblfish 2007 JavaOne SM Conference Session
Genetic improvement: a major component of increased dairy farm profitability
Genetic improvement: a major component of increased dairy farm profitability Filippo Miglior 1,2, Jacques Chesnais 3 & Brian Van Doormaal 2 1 2 Canadian Dairy Network 3 Semex Alliance Agri-Food Canada
Linked Open Data Infrastructure for Public Sector Information: Example from Serbia
Proceedings of the I-SEMANTICS 2012 Posters & Demonstrations Track, pp. 26-30, 2012. Copyright 2012 for the individual papers by the papers' authors. Copying permitted only for private and academic purposes.
Semantic Modeling with RDF. DBTech ExtWorkshop on Database Modeling and Semantic Modeling Lili Aunimo
DBTech ExtWorkshop on Database Modeling and Semantic Modeling Lili Aunimo Expected Outcomes You will learn: Basic concepts related to ontologies Semantic model Semantic web Basic features of RDF and RDF
Application of ontologies for the integration of network monitoring platforms
Application of ontologies for the integration of network monitoring platforms Jorge E. López de Vergara, Javier Aracil, Jesús Martínez, Alfredo Salvador, José Alberto Hernández Networking Research Group,
Industry 4.0 and Big Data
Industry 4.0 and Big Data Marek Obitko, [email protected] Senior Research Engineer 03/25/2015 PUBLIC PUBLIC - 5058-CO900H 2 Background Joint work with Czech Institute of Informatics, Robotics and
Benchmarking the Performance of Storage Systems that expose SPARQL Endpoints
Benchmarking the Performance of Storage Systems that expose SPARQL Endpoints Christian Bizer 1 and Andreas Schultz 1 1 Freie Universität Berlin, Web-based Systems Group, Garystr. 21, 14195 Berlin, Germany
ENHANCED AUTONOMIC NETWORKING MANAGEMENT ARCHITECTURE (ENAMA) Asif Ali Laghari*, Intesab Hussain Sadhayo**, Muhammad Ibrahim Channa*
ENHANCED AUTONOMIC NETWORKING MANAGEMENT ARCHITECTURE (ENAMA) Asif Ali Laghari*, Intesab Hussain Sadhayo**, Muhammad Ibrahim Channa* ABSTRACT A Computer Network which automatically configures itself and
LINKED DATA EXPERIENCE AT MACMILLAN Building discovery services for scientific and scholarly content on top of a semantic data model
LINKED DATA EXPERIENCE AT MACMILLAN Building discovery services for scientific and scholarly content on top of a semantic data model 22 October 2014 Tony Hammond Michele Pasin Background About Macmillan
MINAS the Dutch MINeral Accounting System
MINAS the Dutch MINeral Accounting System For the California Department of Food and Agriculture August 2013, Krijn J. Poppe LEI Wageningen UR Content of the presentation A short introduction to Dutch agriculture
ONTOLOGIES A short tutorial with references to YAGO Cosmina CROITORU
ONTOLOGIES p. 1/40 ONTOLOGIES A short tutorial with references to YAGO Cosmina CROITORU Unlocking the Secrets of the Past: Text Mining for Historical Documents Blockseminar, 21.2.-11.3.2011 ONTOLOGIES
Enabling Self Organising Logistics on the Web of Things
Enabling Self Organising Logistics on the Web of Things Monika Solanki, Laura Daniele, Christopher Brewster Aston Business School, Aston University, Birmingham, UK TNO Netherlands Organization for Applied
SPARQL UniProt.RDF. Get these slides! Tutorial plan. Everyone has had some introduction slash knowledge of RDF.
SPARQL UniProt.RDF Everyone has had some introduction slash knowledge of RDF. Jerven Bolleman Developer Swiss-Prot Group Swiss Institute of Bioinformatics Get these slides! https://sites.google.com/a/jerven.eu/jerven/home/
MSc Animal Sciences. Is this the right programme for me? www.mas.wur.nl. René Kwakkel, Programme Director MSc Animal Sciences
MSc Animal Sciences Is this the right programme for me? René Kwakkel, Programme Director MSc Animal Sciences Anet van den Biggelaar, Student Coach MSc Animal Sciences www.mas.wur.nl Why MSc Animal Sciences?
Publishing Linked Data Requires More than Just Using a Tool
Publishing Linked Data Requires More than Just Using a Tool G. Atemezing 1, F. Gandon 2, G. Kepeklian 3, F. Scharffe 4, R. Troncy 1, B. Vatant 5, S. Villata 2 1 EURECOM, 2 Inria, 3 Atos Origin, 4 LIRMM,
Third International Scientific Symposium "Agrosym Jahorina 2012"
10.7251/AGSY1203499B UDK 636.39.087.7(496.5) PRELIMINARY DATA ON COMPARISON OF SMALL AND MEDIUM DAIRY FARMS IN ALBANIA Ylli BIÇOKU 1, Enkelejda SALLAKU 1, Kujtim GJONI 2, Agron KALO 3 1 Agricultural University
Workshop 1. The potential to exploit and use ICT based advisory Tools. Dr. Tom Kelly, Director of Knowledge Transfer
Workshop 1. The potential to exploit and use ICT based advisory Tools Dr. Tom Kelly, Director of Knowledge Transfer Outline Background Farmers use of ICT for business Developments in ICT The evolving use
Taming Big Data Variety with Semantic Graph Databases. Evren Sirin CTO Complexible
Taming Big Data Variety with Semantic Graph Databases Evren Sirin CTO Complexible About Complexible Semantic Tech leader since 2006 (née Clark & Parsia) software, consulting W3C leadership Offices in DC
Good Practices. Use of Antibiotics
Good Practices Use of Antibiotics Nico Bondt and Harry Kortstee The increase of antimicrobial resistance is considered to be a major worldwide threat to both human and animal health. Inappropriate and
JOURNAL OF COMPUTER SCIENCE AND ENGINEERING
Exploration on Service Matching Methodology Based On Description Logic using Similarity Performance Parameters K.Jayasri Final Year Student IFET College of engineering [email protected] R.Rajmohan
Mag. Vikash Kumar, Dr. Anna Fensel [email protected], [email protected] SEMANTIC DATA ANALYTICS AS A BASIS FOR ENERGY EFFICIENCY SERVICES
Mag. Vikash Kumar, Dr. Anna Fensel [email protected], [email protected] SEMANTIC DATA ANALYTICS AS A BASIS FOR ENERGY EFFICIENCY SERVICES Outline Big data trends changing the ways energy infrastructures operate
EU Milk Margin Estimate up to 2014
Ref. Ares(215)2882499-9/7/215 EU Agricultural and Farm Economics Briefs No 7 June 215 EU Milk Margin Estimate up to 214 An overview of estimates of of production and gross margins of milk production in
Smart Cities require Geospatial Data Providing services to citizens, enterprises, visitors...
Cloud-based Spatial Data Infrastructures for Smart Cities Geospatial World Forum 2015 Hans Viehmann Product Manager EMEA ORACLE Corporation Smart Cities require Geospatial Data Providing services to citizens,
Semantic Interoperability
Ivan Herman Semantic Interoperability Olle Olsson Swedish W3C Office Swedish Institute of Computer Science (SICS) Stockholm Apr 27 2011 (2) Background Stockholm Apr 27, 2011 (2) Trends: from
Linked Statistical Data Analysis
Linked Statistical Data Analysis Sarven Capadisli 1, Sören Auer 2, Reinhard Riedl 3 1 Universität Leipzig, Institut für Informatik, AKSW, Leipzig, Germany, 2 University of Bonn and Fraunhofer IAIS, Bonn,
TopBraid Insight for Life Sciences
TopBraid Insight for Life Sciences In the Life Sciences industries, making critical business decisions depends on having relevant information. However, queries often have to span multiple sources of information.
Semantic Exploration of Archived Product Lifecycle Metadata under Schema and Instance Evolution
Semantic Exploration of Archived Lifecycle Metadata under Schema and Instance Evolution Jörg Brunsmann Faculty of Mathematics and Computer Science, University of Hagen, D-58097 Hagen, Germany [email protected]
Yet Another Triple Store Benchmark? Practical Experiences with Real-World Data
Yet Another Triple Store Benchmark? Practical Experiences with Real-World Data Martin Voigt, Annett Mitschick, and Jonas Schulz Dresden University of Technology, Institute for Software and Multimedia Technology,
National Certificate in Dairy Farming (Artificial Insemination) with strands in Site Technician, and Industry Technician
NZQF NQ Ref 0967 Version 6 Page 1 of 6 National Certificate in Dairy Farming (Artificial Insemination) with strands in Site Technician, and Industry Technician Level 2 or 4 Credits 43 or 53 This qualification
Creating an RDF Graph from a Relational Database Using SPARQL
Creating an RDF Graph from a Relational Database Using SPARQL Ayoub Oudani, Mohamed Bahaj*, Ilias Cherti Department of Mathematics and Informatics, University Hassan I, FSTS, Settat, Morocco. * Corresponding
OWL: Path to Massive Deployment. Dean Allemang Chief Scien0st, TopQuadrant Inc. [email protected]
OWL: Path to Massive Deployment Dean Allemang Chief Scien0st, TopQuadrant Inc. [email protected] Number of pages Web-Scale Deployment Amount of Data Awareness I m a Web Developer Have you heard
DC Proposal: Automation of Service Lifecycle on the Cloud by Using Semantic Technologies
DC Proposal: Automation of Service Lifecycle on the Cloud by Using Semantic Technologies Karuna P. Joshi* Computer Science and Electrical Engineering University of Maryland, Baltimore County, Baltimore,
Integrating XML Data Sources using RDF/S Schemas: The ICS-FORTH Semantic Web Integration Middleware (SWIM)
Integrating XML Data Sources using RDF/S Schemas: The ICS-FORTH Semantic Web Integration Middleware (SWIM) Extended Abstract Ioanna Koffina 1, Giorgos Serfiotis 1, Vassilis Christophides 1, Val Tannen
Models and Architecture for Smart Data Management
1 Models and Architecture for Smart Data Management Pierre De Vettor, Michaël Mrissa and Djamal Benslimane Université de Lyon, CNRS LIRIS, UMR5205, F-69622, France E-mail: [email protected]
GROSS MARGINS : HILL SHEEP 2004/2005
GROSS MARGINS GROSS MARGINS : HILL SHEEP 2004/2005 All flocks Top third Number of flocks in sample 242 81 Average size of flock (ewes and ewe lambs) 849 684 Lambs reared per ewe 1.10 1.25 ENTERPRISE OUTPUT
Food Production (Dairy Food Safety Scheme) Amendment (Goat and Sheep Dairy Products) Regulation 2003
New South Wales Food Production (Dairy Food Safety Scheme) Amendment (Goat and Sheep Dairy Products) Regulation 2003 under the Food Production (Safety) Act 1998 Her Excellency the Governor, with the advice
The Semantic Web for Application Developers. Oracle New England Development Center Zhe Wu, Ph.D. [email protected] 1
The Semantic Web for Application Developers Oracle New England Development Center Zhe Wu, Ph.D. [email protected] 1 Agenda Background 10gR2 RDF 11g RDF/OWL New 11g features Bulk loader Semantic operators
A generic approach for data integration using RDF, OWL and XML
A generic approach for data integration using RDF, OWL and XML Miguel A. Macias-Garcia, Victor J. Sosa-Sosa, and Ivan Lopez-Arevalo Laboratory of Information Technology (LTI) CINVESTAV-TAMAULIPAS Km 6
Semantically Enhanced Web Personalization Approaches and Techniques
Semantically Enhanced Web Personalization Approaches and Techniques Dario Vuljani, Lidia Rovan, Mirta Baranovi Faculty of Electrical Engineering and Computing, University of Zagreb Unska 3, HR-10000 Zagreb,
Semantic Web Technologies and Data Management
Semantic Web Technologies and Data Management Li Ma, Jing Mei, Yue Pan Krishna Kulkarni Achille Fokoue, Anand Ranganathan IBM China Research Laboratory IBM Software Group IBM Watson Research Center Bei
A Job Recruitment System Using Semantic Web Technology
A Job Recruitment System Using Semantic Web Technology P. Niaphruek Department of Computer Science, Faculty of Science, Rajamangala University of Technology Thanyaburi, Klong 6, Thanyaburi, Pathumthani
K@ A collaborative platform for knowledge management
White Paper K@ A collaborative platform for knowledge management Quinary SpA www.quinary.com via Pietrasanta 14 20141 Milano Italia t +39 02 3090 1500 f +39 02 3090 1501 Copyright 2004 Quinary SpA Index
Scalable End-User Access to Big Data http://www.optique-project.eu/ HELLENIC REPUBLIC National and Kapodistrian University of Athens
Scalable End-User Access to Big Data http://www.optique-project.eu/ HELLENIC REPUBLIC National and Kapodistrian University of Athens 1 Optique: Improving the competitiveness of European industry For many
LOVER: Support for Modeling Data Using Linked Open Vocabularies
LOVER: Support for Modeling Data Using Linked Open Vocabularies Thomas Gottron Johann Schaible Stefan Scheglmann Ansgar Scherp Nr. 2/2013 Arbeitsberichte aus dem Fachbereich Informatik Die Arbeitsberichte
Mapping between Relational Databases and OWL Ontologies: an Example
Scientific Papers, University of Latvia, 2010. Vol. 756 Computer Science and Information Technologies 99 117 P. Mapping between Relational Databases and OWL Ontologies: an Example Guntars Bumans Department
OWL based XML Data Integration
OWL based XML Data Integration Manjula Shenoy K Manipal University CSE MIT Manipal, India K.C.Shet, PhD. N.I.T.K. CSE, Suratkal Karnataka, India U. Dinesh Acharya, PhD. ManipalUniversity CSE MIT, Manipal,
RDF Dataset Management Framework for Data.go.th
RDF Dataset Management Framework for Data.go.th Pattama Krataithong 1,2, Marut Buranarach 1, and Thepchai Supnithi 1 1 Language and Semantic Technology Laboratory National Electronics and Computer Technology
technische universiteit eindhoven WIS & Engineering Geert-Jan Houben
WIS & Engineering Geert-Jan Houben Contents Web Information System (WIS) Evolution in Web data WIS Engineering Languages for Web data XML (context only!) RDF XML Querying: XQuery (context only!) RDFS SPARQL
SmartLink: a Web-based editor and search environment for Linked Services
SmartLink: a Web-based editor and search environment for Linked Services Stefan Dietze, Hong Qing Yu, Carlos Pedrinaci, Dong Liu, John Domingue Knowledge Media Institute, The Open University, MK7 6AA,
Perspectives of Semantic Web in E- Commerce
Perspectives of Semantic Web in E- Commerce B. VijayaLakshmi M.Tech (CSE), KIET, A.GauthamiLatha Dept. of CSE, VIIT, Dr. Y. Srinivas Dept. of IT, GITAM University, Mr. K.Rajesh Dept. of MCA, KIET, ABSTRACT
Open Data Integration Using SPARQL and SPIN
Open Data Integration Using SPARQL and SPIN A Case Study for the Tourism Domain Antonino Lo Bue, Alberto Machi ICAR-CNR Sezione di Palermo, Italy Research funded by Italian PON SmartCities Dicet-InMoto-Orchestra
Big Data and Semantic Web in Manufacturing. Nitesh Khilwani, PhD Chief Engineer, Samsung Research Institute Noida, India
Big Data and Semantic Web in Manufacturing Nitesh Khilwani, PhD Chief Engineer, Samsung Research Institute Noida, India Outline Big data in Manufacturing Big data Analytics Semantic web technologies Case
Storage and Retrieval of Large RDF Graph Using Hadoop and MapReduce
Storage and Retrieval of Large RDF Graph Using Hadoop and MapReduce Mohammad Farhan Husain, Pankil Doshi, Latifur Khan, and Bhavani Thuraisingham University of Texas at Dallas, Dallas TX 75080, USA Abstract.
jeti: A Tool for Remote Tool Integration
jeti: A Tool for Remote Tool Integration Tiziana Margaria 1, Ralf Nagel 2, and Bernhard Steffen 2 1 Service Engineering for Distributed Systems, Institute for Informatics, University of Göttingen, Germany
GMP+ FRA certification - Responsible Compound Feed
GMP+ FRA certification - Responsible Compound Feed Sandra de Bruin Project Coordinator GMP+ International Theme Meeting Purchasing of Responsible Soy, June 27th 2014 Introduction Table of Contents GMP+
A comparison of greenhouse gas emissions from the New Zealand dairy sector calculated using either a national or a regional approach.
A comparison of greenhouse gas emissions from the New Zealand dairy sector calculated using either a national or a regional approach December 2008 A comparison of greenhouse gas emissions from the New
D5.3.2b Automatic Rigorous Testing Components
ICT Seventh Framework Programme (ICT FP7) Grant Agreement No: 318497 Data Intensive Techniques to Boost the Real Time Performance of Global Agricultural Data Infrastructures D5.3.2b Automatic Rigorous
Performance Analysis, Data Sharing, Tools Integration: New Approach based on Ontology
Performance Analysis, Data Sharing, Tools Integration: New Approach based on Ontology Hong-Linh Truong Institute for Software Science, University of Vienna, Austria [email protected] Thomas Fahringer
http://www.guido.be/intranet/enqueteoverview/tabid/152/ctl/eresults...
1 van 70 20/03/2014 11:55 EnqueteDescription 2 van 70 20/03/2014 11:55 3 van 70 20/03/2014 11:55 4 van 70 20/03/2014 11:55 5 van 70 20/03/2014 11:55 6 van 70 20/03/2014 11:55 7 van 70 20/03/2014 11:55
