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FI-WARE User and Programmers Guide WP6 Front Page 1 FI-WARE User and Programmers Guide WP6 Front Page
FI-WARE User and Programmers Guide WP6 front page 1 FI-WARE User and Programmers Guide WP6 front page Large-scale Integrated Project (IP) D.6.4.a: User and Programmers Guide Project acronym: FI-WARE Project full title: Future Internet Core Platform Contract No.: 285248 Strategic Objective: FI.ICT-2011.1.7 Technology foundation: Future Internet Core Platform Project Document Number: ICT-2011-FI-285248-WP6-D6.4a Project Document Date: 30 June 2012 Deliverable Type and Security: Public Author: FI-WARE Consortium Contributors: FI-WARE Consortium Abstract: This deliverable contains the User and Programmers Guide for the Generic Enablers of Data/Context Management chapter, being included in the First FI-WARE release. Keyword list: FI-WARE, Generic Enabler, Bigdata, Context, Events, Semantic Web, Multimedia. Contents BigData Analysis - User and Programmer Guide 2 CEP - User and Programmer Guide 89 Location Platform - User and Programmer Guide 90 Multimedia Analysis - User and Programmer Guide 95 Query Broker - User and Programmer Guide 105 Semantic Annotation - Users and Programmers Guide 110 Semantic Application Support - Users and Programmers Guide 113 BigData Analysis - User and Programmer Guide 2 BigData Analysis - User and Programmer Guide Introduction This guide covers the user and development aspects of the SAMSON platform, version 0.6.1. The SAMSON platform has been designed for the processing of large amounts of data, in continuous mode (streaming), distributing tasks in a medium-size cluster of computers, following the MapReduce paradigm Jeffrey Dean and Sanjay Ghemawat. “MapReduce: Simplified data processing on large clusters” [1]. The platform provides the necessary framework to allow a developer to focus on solving analytical problems without needing to know how distribute jobs and data, and their synchronization. -
INFOCOMP / Datasys 2017 International Expert Panel: Challenges on Web Semantic Mapping and Information Processing
INFOCOMP / DataSys 2017 International Expert Panel: Challenges on Web Semantic Mapping and Information Processing INFOCOMP / DataSys 2017 International Expert Panel: Challenges on Web Semantic Mapping and Information Processing June 28, 2017, Venice, Italy The Seventh International Conference on Advanced Communications and Computation (INFOCOMP 2017) The Seventh International Conference on Advances in Information Mining and Management (IMMM 2017) The Twelfth International Conference on Internet and Web Applications and Services (ICIW 2017) INFOCOMP/IMMM/ICIW (DataSys) June 25{29, 2017 - Venice, Italy INFOCOMP, June 25 { 29, 2017 - Venice, Italy INFOCOMP / DataSys 2017 International Expert Panel: Challenges on Web Semantic Mapping and Information Processing INFOCOMP / DataSys 2017 International Expert Panel: Challenges on Web Semantic Mapping and Information Processing INFOCOMP Expert Panel: Web Semantic Mapping & Information Proc. INFOCOMP Expert Panel: Web Semantic Mapping & Information Proc. Panelists Claus-Peter R¨uckemann (Moderator), Westf¨alischeWilhelms-Universit¨atM¨unster(WWU) / Leibniz Universit¨atHannover / North-German Supercomputing Alliance (HLRN), Germany Marc Jansen, University of Applied Sciences Ruhr West, Deutschland Fahad Muhammad, CSTB, Sophia Antipolis, France Kiyoshi Nagata, Daito Bunka University, Japan Claus-Peter R¨uckemann, WWU M¨unster/ Leibniz Universit¨atHannover / HLRN, Germany INFOCOMP 2017: http://www.iaria.org/conferences2017/INFOCOMP17.html Program: http://www.iaria.org/conferences2017/ProgramINFOCOMP17.html -
Search with Meanings: an Overview of Semantic Search Systems
Search with Meanings: An Overview of Semantic Search Systems Wang Wei, Payam M. Barnaghi, Andrzej Bargiela School of Computer Science, University of Nottingham Malaysia Campus Jalan Broga, 43500 Semenyih, Selangor, Malaysia Email: feyx6ww; payam.barnaghi; [email protected] Abstract: Research on semantic search aims to improve con- information. The paper provides a survey to gain an overall ventional information search and retrieval methods, and facil- view of the current research status. We classify our studied sys- itate information acquisition, processing, storage and retrieval tems into several categories according to their most distinctive on the semantic web. The past ten years have seen a num- features, as discussed in the next section. The categorisation ber of implemented semantic search systems and various pro- by no means prevents a system from being classified into other posed frameworks. A comprehensive survey is needed to gain categories. Further, we limit the scope of the survey to Web an overall view of current research trends in this field. We and Intranet searching and browsing systems (also including have investigated a number of pilot projects and corresponding some question answering and multimedia presentation gener- practical systems focusing on their objectives, methodologies ation systems). There are also few other survey studies of se- and most distinctive characteristics. In this paper, we report mantic search research, Makel¨ a¨ provides a short survey con- our study and findings based on which a generalised semantic cerning search methodologies [34]; Hildebrand et al discuss search framework is formalised. Further, we describe issues the related research from three perspectives: query construc- with regards to future research in this area. -
May 28, 2016 3:46 WSPC/INSTRUCTION FILE Output
May 28, 2016 3:46 WSPC/INSTRUCTION FILE output International Journal of Semantic Computing c World Scientific Publishing Company Methods and Resources for Computing Semantic Relatedness Yue Feng Ryerson University Toronto, Ontario, Canada [email protected] Ebrahim Bagheri Ryerson University Toronto, Ontario, Canada [email protected] Received (Day Month Year) Revised (Day Month Year) Accepted (Day Month Year) Semantic relatedness (SR) is defined as a measurement that quantitatively identifies some form of lexical or functional association between two words or concepts based on the contextual or semantic similarity of those two words regardless of their syntactical differences. Section 1 of the entry outlines the working definition of semantic related- ness and its applications and challenges. Section 2 identifies the knowledge resources that are popular among semantic relatedness methods. Section 3 reviews the primary measurements used to calculate semantic relatedness. Section 4 reviews the evaluation methodology which includes gold standard dataset and methods. Finally, Section 5 in- troduces further reading. In order to develop appropriate semantic relatedness methods, there are three key aspects that need to be examined: 1) the knowledge resources that are used as the source for extracting semantic relatedness; 2) the methods that are used to quantify semantic relatedness based on the adopted knowledge resource; and 3) the datasets and methods that are used for evaluating semantic relatedness techniques. The first aspect involves the selection of knowledge bases such as WordNet or Wikipedia. Each knowledge base has its merits and downsides which can directly affect the accurarcy and the coverage of the semantic relatedness method. The second aspect relies on different methods for utilizing the beforehand selected knowledge resources, for example, methods that depend on the path between two words, or a vector representation of the word. -
Automated Development of Semantic Data Models Using Scientific Publications Martha O
University of New Mexico UNM Digital Repository Computer Science ETDs Engineering ETDs Spring 5-12-2018 Automated Development of Semantic Data Models Using Scientific Publications Martha O. Perez-Arriaga University of New Mexico Follow this and additional works at: https://digitalrepository.unm.edu/cs_etds Part of the Computer Engineering Commons Recommended Citation Perez-Arriaga, Martha O.. "Automated Development of Semantic Data Models Using Scientific ubP lications." (2018). https://digitalrepository.unm.edu/cs_etds/89 This Dissertation is brought to you for free and open access by the Engineering ETDs at UNM Digital Repository. It has been accepted for inclusion in Computer Science ETDs by an authorized administrator of UNM Digital Repository. For more information, please contact [email protected]. Martha Ofelia Perez Arriaga Candidate Computer Science Department This dissertation is approved, and it is acceptable in quality and form for publication: Approved by the Dissertation Committee: Dr. Trilce Estrada-Piedra, Chairperson Dr. Soraya Abad-Mota, Co-chairperson Dr. Abdullah Mueen Dr. Sarah Stith i AUTOMATED DEVELOPMENT OF SEMANTIC DATA MODELS USING SCIENTIFIC PUBLICATIONS by MARTHA O. PEREZ-ARRIAGA M.S., Computer Science, University of New Mexico, 2008 DISSERTATION Submitted in Partial Fulfillment of the Requirements for the Degree of Doctor of Philosophy Computer Science The University of New Mexico Albuquerque, New Mexico May, 2018 ii Dedication “The highest education is that which does not merely give us information but makes our life in harmony with all existence" Rabindranath Tagore I dedicate this work to the memory of my primary role models: my mother and grandmother, who always gave me a caring environment and stimulated my curiosity. -
An Extensible Platform for Semantic Classification and Retrieval of Multimedia Resources
An extensible platform for semantic classification and retrieval of multimedia resources Paolo Pellegrino, Fulvio Corno Politecnico di Torino, C.so Duca degli Abruzzi 24, 10129, Torino, Italy {paolo.pellegrino, fulvio.corno}@polito.it Abstract and seem very promising, but are still mostly exploited for textual resources only. In effect, text is the simplest form This paper introduces a possible solution to the problem of knowledge representation which can be both of semantic indexing, searching and retrieving heterogeneous understood by humans and quickly processed by resources, from textual as in most of modern search engines, machines. So, while text itself is already efficaciously to multimedia. The idea of “anchor” as information unit is used as knowledge representation for machines, digital here introduced to view resources from different perspectives multimedia resources like images and videos cannot in and to access existing resources and metadata archives. general be used as they are for efficient classification and Moreover, the platform uses an ontology as a conceptual retrieval. Some intensive processing or manual metadata representation of a well-defined domain in order to creation is necessary to extract and associate semantic semantically classify and retrieve anchors (and the related information to a given multimedia resource. resources). Specifically, the architecture of the proposed platform aims at being as modular and easily extensible as In this context, the proposed work aims at providing a possible, in order to permit the inclusion of state-of-the-art flexible, lightweight and ready-to-use platform for the techniques for the classification and retrieval of multimedia semantic classification, search and retrieval of resources. -
Semantic Computing
SEMANTIC COMPUTING 10651_9789813227910_TP.indd 1 24/7/17 1:49 PM World Scientific Encyclopedia with Semantic Computing and Robotic Intelligence ISSN: 2529-7686 Published Vol. 1 Semantic Computing edited by Phillip C.-Y. Sheu 10651 - Semantic Computing.indd 1 27-07-17 5:07:03 PM World Scientific Encyclopedia with Semantic Computing and Robotic Intelligence – Vol. 1 SEMANTIC COMPUTING Editor Phillip C-Y Sheu University of California, Irvine World Scientific NEW JERSEY • LONDON • SINGAPORE • BEIJING • SHANGHAI • HONG KONG • TAIPEI • CHENNAI • TOKYO 10651_9789813227910_TP.indd 2 24/7/17 1:49 PM World Scientific Encyclopedia with Semantic Computing and Robotic Intelligence ISSN: 2529-7686 Published Vol. 1 Semantic Computing edited by Phillip C.-Y. Sheu Catherine-D-Ong - 10651 - Semantic Computing.indd 1 22-08-17 1:34:22 PM Published by World Scientific Publishing Co. Pte. Ltd. 5 Toh Tuck Link, Singapore 596224 USA office: 27 Warren Street, Suite 401-402, Hackensack, NJ 07601 UK office: 57 Shelton Street, Covent Garden, London WC2H 9HE Library of Congress Cataloging-in-Publication Data Names: Sheu, Phillip C.-Y., editor. Title: Semantic computing / editor, Phillip C-Y Sheu, University of California, Irvine. Other titles: Semantic computing (World Scientific (Firm)) Description: Hackensack, New Jersey : World Scientific, 2017. | Series: World Scientific encyclopedia with semantic computing and robotic intelligence ; vol. 1 | Includes bibliographical references and index. Identifiers: LCCN 2017032765| ISBN 9789813227910 (hardcover : alk. paper) | ISBN 9813227915 (hardcover : alk. paper) Subjects: LCSH: Semantic computing. Classification: LCC QA76.5913 .S46 2017 | DDC 006--dc23 LC record available at https://lccn.loc.gov/2017032765 British Library Cataloguing-in-Publication Data A catalogue record for this book is available from the British Library. -
Semantic Analytics Visualization
Wright State University CORE Scholar The Ohio Center of Excellence in Knowledge- Kno.e.sis Publications Enabled Computing (Kno.e.sis) 5-2006 Semantic Analytics Visualization Leonidas Deligiannidis Amit P. Sheth Wright State University - Main Campus, [email protected] Boanerges Aleman-Meza Follow this and additional works at: https://corescholar.libraries.wright.edu/knoesis Part of the Bioinformatics Commons, Communication Technology and New Media Commons, Databases and Information Systems Commons, OS and Networks Commons, and the Science and Technology Studies Commons Repository Citation Deligiannidis, L., Sheth, A. P., & Aleman-Meza, B. (2006). Semantic Analytics Visualization. Lecture Notes in Computer Science, 3975, 48-59. https://corescholar.libraries.wright.edu/knoesis/718 This Conference Proceeding is brought to you for free and open access by the The Ohio Center of Excellence in Knowledge-Enabled Computing (Kno.e.sis) at CORE Scholar. It has been accepted for inclusion in Kno.e.sis Publications by an authorized administrator of CORE Scholar. For more information, please contact library- [email protected]. Semantic Analytics Visualization. (To Appear in) Intelligence and Security Informatics, Proceedings of ISI-2006, LNCS #3975 Semantic Analytics Visualization Leonidas Deligiannidis1,2, Amit P. Sheth2 and Boanerges Aleman-Meza2 1Virtual Reality Lab and 2LSDIS Lab, Computer Science, The University of Georgia, Athens, GA 30602, USA {ldeligia,amit,boanerg}@cs.uga.edu Abstract. In this paper we present a new tool for semantic analytics through 3D visualization called “Semantic Analytics Visualization” (SAV). It has the capability for visualizing ontologies and meta-data including annotated web- documents, images, and digital media such as audio and video clips in a syn- thetic three-dimensional semi-immersive environment. -
1 Geospatial and Temporal Semantic Analytics 1. Introduction
Geospatial and Temporal Semantic Analytics Matthew Perry, Amit Sheth, Ismailcem Budak Arpinar, Farshad Hakimpour Large Scale Distributed Information Systems Lab, The University of Georgia, Athens, GA 1. Introduction The amount of digital data available to researchers and knowledge workers has grown tremendously in recent years. This is especially true in the geography domain. As the amount of data grows, problems of data relevance and information overload become more severe. The use of semantics has been proposed to combat these problems (Berners-Lee et al., 2001; Egenhofer, 2002). Semantics refers to the meaning of data rather than its syntax or structure. Systems which can understand and process data at a semantic level can achieve a higher level of automation, integration, and interoperability. Applications using semantic technologies fall into three basic categories: 1) semantic integration, 2) semantic search and contextual browsing, and 3) semantic analytics and knowledge discovery (Sheth & Ramakrishnan, 2003). This article concentrates on semantic analytics and knowledge discovery. Applications in this category provide tools and techniques for analyzing entities and relationships in semantic metadata. So far, research in this area has mainly focused on the thematic dimension of information and has largely ignored its spatial and temporal dimensions. At the same time, the Geographic Information Systems community has yet to integrate thematic knowledge of entities and their relationships with geospatial knowledge for purposes of semantic analysis and discovery. Next generation geoinformatics applications that can successfully combine knowledge of real world entities and relationships with knowledge of their interactions in space and time will have huge potential in areas such as national security and emergency response. -
The NIDDK Information Network: a Community Portal for Finding Data, Materials, and Tools for Researchers Studying Diabetes, Digestive, and Kidney Diseases
RESEARCH ARTICLE The NIDDK Information Network: A Community Portal for Finding Data, Materials, and Tools for Researchers Studying Diabetes, Digestive, and Kidney Diseases Patricia L. Whetzel1, Jeffrey S. Grethe1, Davis E. Banks1, Maryann E. Martone1,2* 1 Center for Research in Biological Systems, University of California, San Diego, San Diego, California, a11111 United States of America, 2 Dept of Neurosciences, University of California, San Diego, San Diego, California, United States of America * [email protected] Abstract OPEN ACCESS The NIDDK Information Network (dkNET; http://dknet.org) was launched to serve the needs Citation: Whetzel PL, Grethe JS, Banks DE, Martone of basic and clinical investigators in metabolic, digestive and kidney disease by facilitating ME (2015) The NIDDK Information Network: A access to research resources that advance the mission of the National Institute of Diabe- Community Portal for Finding Data, Materials, and Tools for Researchers Studying Diabetes, Digestive, tes and Digestive and Kidney Diseases (NIDDK). By research resources, we mean the and Kidney Diseases. PLoS ONE 10(9): e0136206. multitude of data, software tools, materials, services, projects and organizations available to doi:10.1371/journal.pone.0136206 researchers in the public domain. Most of these are accessed via web-accessible data- Editor: Chun-Hsi Huang, University of Connecticut, bases or web portals, each developed, designed and maintained by numerous different UNITED STATES projects, organizations and individuals. While many of the large government funded data- Received: February 17, 2015 bases, maintained by agencies such as European Bioinformatics Institute and the National Accepted: July 30, 2015 Center for Biotechnology Information, are well known to researchers, many more that have been developed by and for the biomedical research community are unknown or underuti- Published: September 22, 2015 lized. -
D2.9 Dissemination Plan Version C
Ref. Ares(2019)2902574 - 30/04/2019 C3-Cloud “A Federated Collaborative Care Cure Cloud Architecture for Addressing the Needs of Multi-morbidity and Managing Poly-pharmacy” PRIORITY Objective H2020-PHC-25-2015 - Advanced ICT systems and services for integrated care D2.9 Dissemination Plan version c Work Package: WP2 Dissemination, Exploitation and Innovation Related Activities” Due Date: 30 April 2019 Actual Submission Date: 30 April 2019 Project Dates: Project Start Date: 01 May 2016 Project End Date: 30 April 2020 Project Duration: 48 months Deliverable Leader: EuroRec Project funded by the European Commission within the Horizon 2020 Programme (2014-2020) Dissemination Level PU Public CO Confidential, only for members of the consortium (including the Commission Services) X EU-RES Classified Information: RESTREINT UE (Commission Decision 2005/444/EC) EU-CON Classified Information: CONFIDENTIEL UE (Commission Decision 2005/444/EC) EU-SEC Classified Information: SECRET UE (Commission Decision 2005/444/EC) Document History: Version Date Changes From Review V0.1 20-04-2019 Initial document, most of content EuroRec - V0.2 27-04-2019 Further partner inputs plus web site EuroRec All screenshots V0.3 29-04-2019 Further review and addition of new WARWICK - material V1.0 30-04-2019 Final checks and editing by the WARWICK Coordinating team Contributors Geert Thienpont (EuroRec), Sarah N. Lim Choi Keung (WARWICK), (Beneficiary) Theodoros N. Arvanitis (WARWICK), George Despotou (WARWICK), Marie Sherman (RJH), Marie Beach (SWFT), Veli Stroetmann (empirica), Malte von Tottleben (empirica), Gokce Banu Laleci Erturkmen (SRDC), Mustafa Yuksel (SRDC), Göran Ekestubbe (CAMBIO), Mattias Fendukly (CAMBIO), Pontus Lindman (MEDIXINE), Dolores Verdoy (KG/OSAKI), Esteban de Manuel Keenoy (KG/OSAKI), Lamine Traore (INSERM), Marie- Christine Jaulent (INSERM) Responsible Author Dipak Kalra Email [email protected] Beneficiary EuroRec D2.9 Version 1.0, dated 30 April 2019 Page 2 of 71 TABLE OF CONTENTS 1. -
FI-WARE Product Vision Front Page Ref
FI-WARE Product Vision front page Ref. Ares(2011)1227415 - 17/11/20111 FI-WARE Product Vision front page Large-scale Integrated Project (IP) D2.2: FI-WARE High-level Description. Project acronym: FI-WARE Project full title: Future Internet Core Platform Contract No.: 285248 Strategic Objective: FI.ICT-2011.1.7 Technology foundation: Future Internet Core Platform Project Document Number: ICT-2011-FI-285248-WP2-D2.2b Project Document Date: 15 Nov. 2011 Deliverable Type and Security: Public Author: FI-WARE Consortium Contributors: FI-WARE Consortium. Abstract: This deliverable provides a high-level description of FI-WARE which can help to understand its functional scope and approach towards materialization until a first release of the FI-WARE Architecture is officially released. Keyword list: FI-WARE, PPP, Future Internet Core Platform/Technology Foundation, Cloud, Service Delivery, Future Networks, Internet of Things, Internet of Services, Open APIs Contents Articles FI-WARE Product Vision front page 1 FI-WARE Product Vision 2 Overall FI-WARE Vision 3 FI-WARE Cloud Hosting 13 FI-WARE Data/Context Management 43 FI-WARE Internet of Things (IoT) Services Enablement 94 FI-WARE Applications/Services Ecosystem and Delivery Framework 117 FI-WARE Security 161 FI-WARE Interface to Networks and Devices (I2ND) 186 Materializing Cloud Hosting in FI-WARE 217 Crowbar 224 XCAT 225 OpenStack Nova 226 System Pools 227 ISAAC 228 RESERVOIR 229 Trusted Compute Pools 230 Open Cloud Computing Interface (OCCI) 231 OpenStack Glance 232 OpenStack Quantum 233 Open