The semantic WEB Roles of XML & RDF

Size: px
Start display at page:

Download "The semantic WEB Roles of XML & RDF"

Transcription

1 Th smantic WEB Rols of XML & RDF STEFAN DECKER AND SERGEY MELNIK FRANK VAN HARMELEN, DIETER FENSEL, AND MICHEL KLEIN JEEN BROEKSTRA MICHAEL ERDMANN IAN HORROCKS Prsntd by: Iniyai Thiruvalluvan CSCI586 Databas Introprability 1

2 Smantic Wb What & Why Wb commonly for dirct human procssing Smantic Wb nabl intllignt srvics Syntactic & Smantic ingstion Common Standards XML & RDF Rol of Ontologis XML Positivs & Ngativs RDF/ RDF schma CSCI586 Databas Introprability 2

3 Ontologis Shard formal concptualizati ons of particular domains. Us cas buyrs & sllrs. Sports databass CSCI586 Databas Introprability 3

4 Ontology Intrchang Languag To rprsnt an ontology: Slot Dfinition Class Dfinition It can furthr hav 1. Dfinition typ 2. Slot constraint 3. Sub-class of Componnts of slot constraint 4. Nam 5. Valu typ 6. Has-valu CSCI586 Databas Introprability 4

5 Oil Ontology - xampl CSCI586 Databas Introprability 5

6 XML Nstd Tags Documnt Typ Dfinition: Documnt structur. XML schma= also usd for th sam purpos <class-df> <class-nam = branch /> <slot-constraint> <slot nam="is-partof"/> <has-valu> <class nam="tr"/> </has-valu> </slot-constraint> </class-df> <class-df> <nam>branch</nam> <slot-constraint> <nam>is-part-of</nam> <has-valu>tr</hasvalu> </slot-constraint> </class-df> CSCI586 Databas Introprability 6

7 XML - contd DTD hlps facilitat a common undrstanding of th maning of XML lmnts and th structur of th XML. But nw usd cannot b addd. Why?? Purchas Ordr Company Principal CSCI586 Databas Introprability 7

8 RDF Objct Attribut Valu triplt. Objcts and valus can b intrchangd. Exampl : Book is both a valu in author-of rlationship and an objct in th haspric rlationship. Jim Lnnrs s:hasnam Employ id-132 s: author of ISBN5 23 s:haspric $ 62 CSCI586 Databas Introprability 8

9 Knowldg Rprsntation 1. Univrsal xprssiv powr. 2. Syntactic Introprability: Structur 3. Smantic Introprability: Maning CSCI586 Databas Introprability 9

10 XML or RDF? Any thoughts on which would b a bttr choic for Knowldg rprsntation? Why is th othr on still bing usd? CSCI586 Databas Introprability 10

11 XML for Knowldg Rprsntation Th maning might b diffrnt vn if th DTD s ar xactly th sam. Limitd Rusability. Stps to add partnrs to a XML communication: R-nginr concptual modls Match domain modl ruls to XML translation ruls. Translat documnt from DTD A to DTD B. Using RDF: Natural smantic units bcaus of Objct Attribut structur. CSCI586 Databas Introprability 11

12 Lvls of KR systms. Implmntation Lvl: Data structurs, low lvl dtails. Logic Lvl: Infrncs prformd by th systm. Epistmological Lvl: Rprsntation primitivs for xprssing knowldg in a convnint way. This itslf is an ontology which dfins th trms of th rprsntation languag. Sound familiar? CSCI586 Databas Introprability 12

13 Ontology Languag to RDF schma 1. Dscrib languag L s modling primitivs using RDF schma (ffctivly writing th mtaontology of L in RDF schma). 2. Dscrib a spcific ontology in L using th rsulting RDF schma documnt. 3. Us th RDF schma documnts to dscrib instancs of th spcific L ontology modld in stp 2. NOTE: Trms from diffrnt ontologis can b mixd in on RDF documnt without confusion CSCI586 Databas Introprability 13

14 Rlationship btwn RDF and OIL rdf:typ rdf: Proprty rdf:subcla ssof rdf:typ Rdfs:ran g oil: hasopra nd Rdfs:rang Rdfs:dom ain rdf: subclass of oil: AND oil: ClassExprs sion rdf:typ rdf: subclass of oil: NOT class-df hrbivor subclass-of animal AND NOT carnivor Rdfs: doma in rdf:typ rdfs: Class CSCI586 Databas Introprability 14 rdf:typ

15 Using an Ontology Languag to Extnd RDF St p Exprssion Typ Exampl Encoding 1 Modling primitivs of ontology languag L 2 Spcific ontology xprssd in L 3 Instancs of th spcific ontology oil: AND, oil: NOT Class-df giraff, Subclass of hrbivor Animal-12- ats-laf34 RDF: mtaontology in RDF schma RDF: Ontology (using mtaontology and schma) RDF (using RDF schma and mtaontology) CSCI586 Databas Introprability 15

16 An xampl oil: NOT Rdf: Class rdf:typ hrbivor rdf:typ rdf: subclass of oil: AND rdf:typ oil: hasoprand oil: hasoprand carnivor oil: hasoprand class-df dfind hrbivor subclass-of animal, NOT carnivor animal CSCI586 Databas Introprability 16

17 Som mor nots on OIL -> RDF RDF vrything is an objct. Hnc nw concpts in OIL hasoprand, hasproprty. OIL has slot constraints, which ar unavailabl in RDF: introduc oil:slotconstraint to allow rstrictions in slot dfinitions. But to maintain maximal compatibility, us RDF schma vocabulary whrvr possibl. CSCI586 Databas Introprability 17

18 Oil Vocabulary Mapping to RDF schma OIL Original Vocabulary Class-df Subclass-of Slot constraint AND NOT Has-valu RDF vocabulary Rdfs: Class Rdfs: subclass of Oil: hasslotconstraint Oil:SlotConstraint Oil-AND Oil-NOT Oil-hasvalu CSCI586 Databas Introprability

19 CONCLUSION XML is an important stp towards smantic intgration. But not in th long run. RDF data modl bing sound, is a good altrnativ. Approachs from Knowldg nginring ar dirctly applicabl to xtnding it with ontology languags. Nxt Stp : Wb and AI communitis xpand this gnric mthod for crating wb-nabld spcial purpos knowldg rprsntation languags. CSCI586 Databas Introprability 19

20 QUESTIONS? CSCI586 Databas Introprability 20

Comment (justification for change) by the MB

Comment (justification for change) by the MB Editor's disposition s CD2 19763-12 as at 2013-11-03 Srial Annx (.g. 3.1) Figur/ Tabl/t (.g. Tabl 1) 001 CA 00 All All - G Canada disapprovs th draft for th rasons blow. 002 GB 01 Gnral d numbring has

More information

8.3 INTEGRATION BY PARTS

8.3 INTEGRATION BY PARTS 8.3 Intgration By Parts Contmporary Calculus 8.3 INTEGRATION BY PARTS Intgration by parts is an intgration mthod which nabls us to find antidrivativs of som nw functions such as ln(x) and arctan(x) as

More information

Ontology and Context. Isabel Cafezeiro Departamento de Ciência da Computação Universidade Federal Fluminense Niterói - RJ, Brazil

Ontology and Context. Isabel Cafezeiro Departamento de Ciência da Computação Universidade Federal Fluminense Niterói - RJ, Brazil Ontology and Contxt Isabl Cafziro Dpartamnto d Ciência da Computação Univrsidad Fdral Fluminns Nitrói - RJ, Brazil isabl@dcc.ic.uff.br dward Hrmann Hauslr, Alxandr Radmakr Dpartamnto d Informática Pontifícia

More information

Linked Data meet Sensor Networks

Linked Data meet Sensor Networks Digital Entrpris Rsarch Institut www.dri.i Linkd Data mt Snsor Ntworks Myriam Lggiri DERI NUI Galway, Irland Copyright 2008 Digital Entrpris Rsarch Institut. All rights rsrvd. Linkd Data mt Snsor Ntworks

More information

Summary: Semantic Analysis

Summary: Semantic Analysis Summary: Smantic Analysis Chck rrors not dtctd by lxical or syntax analysis Intrmdiat Cod Scop rrors: Variabls not dfind Multipl dclarations Typ rrors: Assignmnt of valus of diffrnt typs Invocation of

More information

EDI Specifications Guide. 850 Supplier Purchase Order Last Updated February 2017

EDI Specifications Guide. 850 Supplier Purchase Order Last Updated February 2017 EDI Spcifications Guid 850 Supplir Purchas Ordr Last Updatd Fbruary 2017 EDI Spcifications Guid 850 Purchas Ordr - Functional Group=PO VER. 4010 FISHER SCIENTIFIC This Standard contains th format and stablishs

More information

Formal Foundation, Approach, and Smart Tool for Software Models Comparison

Formal Foundation, Approach, and Smart Tool for Software Models Comparison Formal Foundation, Approach, and Smart Tool for Softwar Modls Comparison Olna V. Chbanyuk, Abdl-Badh M. Salm Softwar Enginring Dpartmnt, National Aviation Univrsity, Kyiv, Ukrain Computr Scinc, Faculty

More information

Fuzzy Intersection and Difference Model for Topological Relations

Fuzzy Intersection and Difference Model for Topological Relations IFS-EUSFLT 009 Fuzzy Intrsction and Diffrnc Modl for Topological Rlations hd LOODY Flornc SEDES Jordi INGLD 3 Univrsité Paul Sabatir (UPS) Toulous, 8 Rout d Narbonn, F-306-CEDEX 9, Franc Institut d Rchrchn

More information

Usage of Ontology-Based Semantic Analysis of Complex Information Objects in Virtual Research Environments

Usage of Ontology-Based Semantic Analysis of Complex Information Objects in Virtual Research Environments Usag of Ontology-Basd Smantic Analysis of Complx Information Objcts in Virtual Rsarch Environmnts Julia Rogushina 1, Anatoly Gladun 2, Abdl-Badh M. Salm 3 1 Institut of Softwar Systms of National Acadmy

More information

Lesson Focus: Finding Equivalent Fractions

Lesson Focus: Finding Equivalent Fractions Lsson Plans: Wk of 1-26-15 M o n Bindrs: /Math;; complt on own, thn chck togthr Basic Fact Practic Topic #10 Lsson #5 Lsson Focus: Finding Equivalnt Fractions *Intractiv Larning/Guidd Practic-togthr in

More information

Systems in Three Variables. No solution No point lies in all three planes. One solution The planes intersect at one point.

Systems in Three Variables. No solution No point lies in all three planes. One solution The planes intersect at one point. 3-5 Systms in Thr Variabls TEKS FOCUS VOCABULARY TEKS (3)(B) Solv systms of thr linar quations in thr variabls by using Gaussian limination, tchnology with matrics, and substitution. Rprsntation a way

More information

Descriptors story. talented developers flexible teams agile experts. Adrian Dziubek - EuroPython

Descriptors story. talented developers flexible teams agile experts. Adrian Dziubek - EuroPython Dscriptors story talntd dvloprs flxibl tams agil xprts Adrian Dziubk - EuroPython - 2016-07-18 m t u o b A Adrian Dziubk Snior Python dvlopr at STX Nxt in Wrocław, Crating wb applications using Python

More information

Land restrictions/easements

Land restrictions/easements Land rstrictions/asmnts rwgian Mapping Authority grd.mardal@statkart.no rwgian Mapping Authority Jun 2009 Pag 1 of 9 Tabl of contnts 1.1 Application schma...3 1.2...5 1.2.1... 5 1.2.2 Boundary... 5 1.2.3

More information

XML Publisher with connected query: A Primer. Session #30459 March 19, 2012

XML Publisher with connected query: A Primer. Session #30459 March 19, 2012 XML Publishr with connctd qury: A Primr Sssion #30459 March 19, 2012 Agnda/ Contnts Introduction Ovrviw of XMLP Gtting Startd Bst practics for building a basic XMLP rport Connctd Qury Basics Building a

More information

The Roles of XML and RDF

The Roles of XML and RDF KNOWLEDGE NETWORKING THE SEMANTIC WEB: The Roles of XML and RDF STEFAN DECKER AND SERGEY MELNIK Stanford University FRANK VAN HARMELEN, DIETER FENSEL, AND MICHEL KLEIN Vrije Universiteit Amsterdam JEEN

More information

AN EVALUATION MODEL FOR THE CHAINS OF DISTRIBUTED MULTIMEDIA INDEXING TOOLS RESPECTING USER PREFERENCES

AN EVALUATION MODEL FOR THE CHAINS OF DISTRIBUTED MULTIMEDIA INDEXING TOOLS RESPECTING USER PREFERENCES AN EVALUATION MODEL FOR THE CHAINS OF DISTRIBUTED MULTIMEDIA INDEXING TOOLS RESPECTING USER PREFERENCES 1 Bassm HAIDAR, 2 Bilal CHEBARO, 3 Hassan WEHBI 1 Asstt Prof., Dpartmnt of Computr Scincs, Faculty

More information

IN the early seventies, the IEEE recommended a Common

IN the early seventies, the IEEE recommended a Common PAPER SUBMITTED TO 2009 IEEE PES GENERAL MEETING. 1 Opn Modl For Exchanging Powr Systm Data F. Milano, Mmbr, IEEE, M. Zhou, Mmbr, IEEE, and GuanJi Hou Abstract This papr prsnts an XML-basd opn data modl

More information

Reliability Coordinator Base Schedule Aggregation Portal (RC BSAP) Interface Specification for RC BSAP Services

Reliability Coordinator Base Schedule Aggregation Portal (RC BSAP) Interface Specification for RC BSAP Services Rliability Coordinator Bas Schdul Aggrgation Portal (RC BSAP) Intrfac Spcification for RC BSAP Srvics (Businss Ruls v 10.x(Spring 2019) or latr) Vrsion: 1.1 vmbr 6, 2018 Rvision History Dat Vrsion By Dscription

More information

Adding formal semantics to the Web

Adding formal semantics to the Web Adding formal semantics to the Web building on top of RDF Schema Jeen Broekstra On-To-Knowledge project Context On-To-Knowledge IST project about content-driven knowledge management through evolving ontologies

More information

EXTENSION OF RCC TOPOLOGICAL RELATIONS FOR 3D COMPLEX OBJECTS COMPONENTS EXTRACTED FROM 3D LIDAR POINT CLOUDS

EXTENSION OF RCC TOPOLOGICAL RELATIONS FOR 3D COMPLEX OBJECTS COMPONENTS EXTRACTED FROM 3D LIDAR POINT CLOUDS Th Intrnational rchivs of th Photogrammtry, mot Snsing and Spatial Information Scincs, Volum XLI-, 016 XXIII ISPS Congrss, 1 19 July 016, Pragu, Czch public EXTENSION OF CC TOPOLOGICL ELTIONS FO D COMPLEX

More information

Base Schedule Aggregation Portal (BSAP) Interface Specification for BSAP Services

Base Schedule Aggregation Portal (BSAP) Interface Specification for BSAP Services Bas Schdul Aggrgation Portal (BSAP) Intrfac Spcification for BSAP Srvics (Businss Ruls v 9.x(Fall 2017) or latr) Vrsion: 1.3 Dcmbr 19, 2017 Rvision History Dat Vrsion By Dscription 12/19/2017 1.3 WT Additional

More information

2018 How to Apply. Application Guide. BrandAdvantage

2018 How to Apply. Application Guide. BrandAdvantage 2018 How to Apply Application Guid BrandAdvantag Contnts Accssing th Grant Sit... 3 Wlcom pag... 3 Logging in To Pub Charity... 4 Rgistration for Nw Applicants ( rgistr now )... 5 Organisation Rgistration...

More information

D11.2 Service concepts, models and method: Model Driven Service Engineering M12 issue

D11.2 Service concepts, models and method: Model Driven Service Engineering M12 issue D11.2 Srvic concpts, modls and mthod: Modl Drivn Srvic Enginring M12 issu Documnt Ownr: Y. Ducq (UB1), G. Doumingts (I-VLab), C. Liu (I-VLab), D. Chn (UB1), T. Alix (UB1), G. Zacharwicz (UB1) Contributors:

More information

DO NOW Geometry Regents Lomac Date. due. Similar by Transformation 6.1 J'' J''' J'''

DO NOW Geometry Regents Lomac Date. due. Similar by Transformation 6.1 J'' J''' J''' DO NOW Gomtry Rgnts Lomac 2014-2015 Dat. du. Similar by Transformation 6.1 (DN) Nam th thr rigid transformations and sktch an xampl that illustrats ach on. Nam Pr LO: I can dscrib a similarity transformation,

More information

Towards a knowledge exchange infrastructure for Agricultural Research and Technology. The Role of the Agricultural Ontology Service

Towards a knowledge exchange infrastructure for Agricultural Research and Technology. The Role of the Agricultural Ontology Service Towards a knowldg xchang infrastructur for Agricultural Rsarch and Tchnology Th Rol of th Agricultural Ontology Srvic Dr.rr.nat. Johanns Kizr Knowldg Exchang and Capacity Building Division Intrnational

More information

Building a Scanner, Part I

Building a Scanner, Part I COMP 506 Ric Univrsity Spring 2018 Building a Scannr, Part I sourc cod IR Front End Optimizr Back End IR targt cod Copyright 2018, Kith D. Coopr & Linda Torczon, all rights rsrvd. Studnts nrolld in Comp

More information

The Semantic Web: A Vision or a Dream?

The Semantic Web: A Vision or a Dream? The Semantic Web: A Vision or a Dream? Ben Weber Department of Computer Science California Polytechnic State University May 15, 2005 Abstract The Semantic Web strives to be a machine readable version of

More information

RFC Java Class Library (BC-FES-AIT)

RFC Java Class Library (BC-FES-AIT) RFC Java Class Library (BC-FES-AIT) HELP.BCFESDEG Rlas 4.6C SAP AG Copyright Copyright 2001 SAP AG. All Rcht vorbhaltn. Witrgab und Vrvilfältigung disr Publikation odr von Tiln daraus sind, zu wlchm Zwck

More information

An Ontology-based Product Development Framework Considering Eco-design

An Ontology-based Product Development Framework Considering Eco-design rocdings of th ntrnational MultiConfrnc of Enginrs and Computr Scintists 2013 ol, MECS 2013, March 13-15, 2013, Hong Kong An Ontology-basd roduct vlopmnt Framwork Considring Eco-dsign Jiun-Shiung Lin,

More information

A New Algorithm for Solving Shortest Path Problem on a Network with Imprecise Edge Weight

A New Algorithm for Solving Shortest Path Problem on a Network with Imprecise Edge Weight Availabl at http://pvamudu/aam Appl Appl Math ISSN: 193-9466 Vol 6, Issu (Dcmbr 011), pp 60 619 Applications and Applid Mathmatics: An Intrnational Journal (AAM) A Nw Algorithm for Solving Shortst Path

More information

Extending z/tpf using IBM API Management (APIM)

Extending z/tpf using IBM API Management (APIM) Extnding using API Managmnt (APIM) Mark Gambino, TPF Dvlopmnt Lab March 23, 2015 TPFUG Dallas, TX Th Big Pictur Goal Mobil Applications Cloud APIs Cloud-basd Srvics On-Prmis Entrpris APIs E n t r p r I

More information

Objectives. Two Ways to Implement Lists. Lists. Chapter 24 Implementing Lists, Stacks, Queues, and Priority Queues

Objectives. Two Ways to Implement Lists. Lists. Chapter 24 Implementing Lists, Stacks, Queues, and Priority Queues Chaptr 24 Implmnting Lists, Stacks, Quus, and Priority Quus CS2: Data Structurs and Algorithms Colorado Stat Univrsity Original slids by Danil Liang Modifid slids by Chris Wilcox Objctivs q To dsign common

More information

i e ai E ig e v / gh E la ES h E A X h ES va / A SX il E A X a S

i e ai E ig e v / gh E la ES h E A X h ES va / A SX il E A X a S isto C o C or Co r op ra p a py ag yr g ri g g gh ht S S S V V K r V K r M K v M r v M rn v MW n W S r W Sa r W K af r: W K f : a H a M r T H r M rn w T H r Mo ns w T i o S ww c ig on a w c g nd af ww

More information

A Brief Summary of Draw Tools in MS Word with Examples! ( Page 1 )

A Brief Summary of Draw Tools in MS Word with Examples! ( Page 1 ) A Brif Summary of Draw Tools in MS Word with Exampls! ( Pag 1 ) Click Viw command at top of pag thn Click Toolbars thn Click Drawing! A chckmark appars in front of Drawing! A toolbar appars at bottom of

More information

Knowledge Representation on the Web

Knowledge Representation on the Web Knowledge Representation on the Web Stefan Decker 1, Dieter Fensel 2, Frank van Harmelen 2,3, Ian Horrocks 4, Sergey Melnik 1, Michel Klein 2 and Jeen Broekstra 3 1 AIFB, University of Karlsruhe, Germany

More information

Reimbursement Requests in WORKS

Reimbursement Requests in WORKS Rimbursmnt Rqusts in WORKS Important points about Rimbursmnts in Works Rimbursmnt Rqust is th procss by which UD mploys will b rimbursd for businss xpnss paid using prsonal funds. Rimbursmnt Rqust can

More information

Evolutionary Clustering and Analysis of Bibliographic Networks

Evolutionary Clustering and Analysis of Bibliographic Networks Evolutionary Clustring and Analysis of Bibliographic Ntworks Manish Gupta Univrsity of Illinois at Urbana-Champaign gupta58@illinois.du Charu C. Aggarwal IBM T. J. Watson Rsarch Cntr charu@us.ibm.com Jiawi

More information

Probabilistic inference

Probabilistic inference robabilistic infrnc Suppos th agnt has to mak a dcision about th valu of an unobsrvd qury variabl X givn som obsrvd vidnc E = artially obsrvabl, stochastic, pisodic nvironmnt Eampls: X = {spam, not spam},

More information

" dx v(x) $ % You may also have seen this written in shorthand form as. & ' v(x) + u(x) '# % ! d

 dx v(x) $ % You may also have seen this written in shorthand form as. & ' v(x) + u(x) '# % ! d Calculus II MAT 146 Mthods of Intgration: Intgration by Parts Just as th mthod of substitution is an intgration tchniqu that rvrss th drivativ procss calld th chain rul, Intgration by parts is a mthod

More information

Spectral sensitivity and color formats

Spectral sensitivity and color formats FirWir camras Spctral snsitivity and color formats At th "input" of a camra, w hav a CCD chip. It transforms photons into lctrons. Th spctral snsitivity of this transformation is an important charactristic

More information

Shift. Reduce. Review: Shift-Reduce Parsing. Bottom-up parsing uses two actions: Bottom-Up Parsing II. ABC xyz ABCx yz. Lecture 8.

Shift. Reduce. Review: Shift-Reduce Parsing. Bottom-up parsing uses two actions: Bottom-Up Parsing II. ABC xyz ABCx yz. Lecture 8. Rviw: Shift-Rduc Parsing Bottom-up parsing uss two actions: Bottom-Up Parsing II Lctur 8 Shift ABC xyz ABCx yz Rduc Cbxy ijk CbA ijk Prof. Aikn CS 13 Lctur 8 1 Prof. Aikn CS 13 Lctur 8 2 Rcall: h Stack

More information

Principles of Programming Languages Topic: Formal Languages II

Principles of Programming Languages Topic: Formal Languages II Principls of Programming Languags Topic: Formal Languags II CS 34,LS, LTM, BR: Formal Languags II Rviw A grammar can b ambiguous i.. mor than on pars tr for sam string of trminals in a PL w want to bas

More information

Semantic web and application in ERP

Semantic web and application in ERP Semantic web and application in ERP Rashmi Singh 1, Samvidha Sharma 2 1, 2 NRI Institute of Science and Technology Bhopal, M.P. India Abstract- The increasing volume of data available on the Web as well

More information

2 Mega Pixel. HD-SDI Bullet Camera. User Manual

2 Mega Pixel. HD-SDI Bullet Camera. User Manual 2 Mga Pixl HD-SDI Bullt Camra Usr Manual Thank you for purchasing our product. This manual is only applicabl to SDI bullt camras. Thr may b svral tchnically incorrct placs or printing rrors in this manual.

More information

XML security in certificate management

XML security in certificate management XML scurity in crtificat managmnt Joan Lu, Nathan Cripps and Chn Hua* School of Computing and Enginring, Univrsity of Huddrsfild, UK J.lu@hud.ac.uk *Institut of Tchnology, Xi'an, Shaanxi, P. R. China Abstract

More information

Non Fourier Encoding For Accelerated MRI. Arjun Arunachalam Assistant Professor Electrical engineering dept IIT-Bombay

Non Fourier Encoding For Accelerated MRI. Arjun Arunachalam Assistant Professor Electrical engineering dept IIT-Bombay Non Fourir Encoding For Acclratd MRI Arjun Arunachalam Assistant Profssor Elctrical nginring dpt IIT-Bombay Outlin of th Prsntation An introduction to Magntic Rsonanc Imaging (MRI Th nd for spd in MRI

More information

IJREAS Volume 2, Issue 2 (February 2012) ISSN: WEB SCRAPING AND IMPLEMENTATION USING PROLOG SERVER PAGES IN SEMANTIC WEB ABSTRACT

IJREAS Volume 2, Issue 2 (February 2012) ISSN: WEB SCRAPING AND IMPLEMENTATION USING PROLOG SERVER PAGES IN SEMANTIC WEB ABSTRACT WEB SCRAPING AND IMPLEMENTATION USING PROLOG SERVER PAGES IN SEMANTIC WEB Parminder Pal Singh Bedi * Sumit Kumar ** ABSTRACT Web scraping is a process of extracting useful information from HTML pages.

More information

Motivation. Synthetic OOD concepts and reuse Lecture 4: Separation of concerns. Problem. Solution. Deleting composites that share parts. Or is it?

Motivation. Synthetic OOD concepts and reuse Lecture 4: Separation of concerns. Problem. Solution. Deleting composites that share parts. Or is it? Synthtic OOD concpts and rus Lctur 4: Sparation of concrns Topics: Complx concrn: Mmory managmnt Exampl: Complx oprations on composit structurs Problm: Mmory laks Solution: Rfrnc counting Motivation Suppos

More information

Modelling CoCoME with DisCComp

Modelling CoCoME with DisCComp Modlling CoCoME with DiCComp Dagtuhl Workhop, Sbatian Hrold Clauthal Univrity of Tchnology Dpartmnt of Informatic Softwar Sytm Enginring Chair of Prof. Dr. Andra Rauch Ovrviw Introduction Introduction

More information

Lightweight Polymorphic Effects

Lightweight Polymorphic Effects Lightwight Polymorphic Effcts Lukas Rytz, Martin Odrsky, and Philipp Hallr EPFL, Switzrland, {first.last}@pfl.ch Abstract. Typ-and-ffct systms ar a wll-studid approach for rasoning about th computational

More information

The Network Layer: Routing Algorithms. The Network Layer: Routing & Addressing Outline

The Network Layer: Routing Algorithms. The Network Layer: Routing & Addressing Outline PS 6 Ntwork Programming Th Ntwork Layr: Routing lgorithms Michl Wigl partmnt of omputr Scinc lmson Univrsity mwigl@cs.clmson.du http://www.cs.clmson.du/~mwigl/courss/cpsc6 Th Ntwork Layr: Routing & ddrssing

More information

Oracle Data Relationship Management Suite User's Guide. Release

Oracle Data Relationship Management Suite User's Guide. Release Oracl Data Rlationship Managmnt Suit Usr's Guid Rlas 11.1.2.4.346 E75912-02 Jun 2018 Oracl Data Rlationship Managmnt Suit Usr's Guid, Rlas 11.1.2.4.346 E75912-02 Copyright 1999, 2018, Oracl and/or its

More information

CPSC 826 Internetworking. The Network Layer: Routing & Addressing Outline. The Network Layer: Routing Algorithms. Routing Algorithms Taxonomy

CPSC 826 Internetworking. The Network Layer: Routing & Addressing Outline. The Network Layer: Routing Algorithms. Routing Algorithms Taxonomy PS Intrntworking Th Ntwork Layr: Routing & ddrssing Outlin Th Ntwork Layr: Routing lgorithms Michl Wigl partmnt of omputr Scinc lmson Univrsity mwigl@cs.clmson.du Novmbr, Ntwork layr functions Routr architctur

More information

Workbook for Designing Distributed Control Applications using Rockwell Automation s HOLOBLOC Prototyping Software John Fischer and Thomas O.

Workbook for Designing Distributed Control Applications using Rockwell Automation s HOLOBLOC Prototyping Software John Fischer and Thomas O. Workbook for Dsigning Distributd Control Applications using Rockwll Automation s HOLOBLOC Prototyping Softwar John Fischr and Thomas O. Bouchr Working Papr No. 05-017 Introduction A nw paradigm for crating

More information

Dell PowerEdge C6400 Technical Specifications

Dell PowerEdge C6400 Technical Specifications Dll PowrEdg C6400 Tchnical Spcifications Ownr's Manual Rgulatory Modl: E43S Sris Rgulatory Typ: E43S001 Nots, cautions, and warnings NOTE: A NOTE indicats important information that hlps you mak bttr us

More information

Polygonal Models. Overview. Simple Data Structures. David Carr Fundamentals of Computer Graphics Spring 2004 Based on Slides by E.

Polygonal Models. Overview. Simple Data Structures. David Carr Fundamentals of Computer Graphics Spring 2004 Based on Slides by E. INSTITUTIONEN FÖR SYSTEMTEKNIK LULEÅ TEKNISKA UNIVERSITET Polygonal Modls David Carr Fundamntals of Computr Graphics Spring 200 Basd on Slids by E. Angl Fb-3-0 SMD159, Polygonal Modls 1 L Ovrviw Simpl

More information

Recorder Variables. Defining Variables

Recorder Variables. Defining Variables Rcordr Variabls Dfining Variabls Simpl Typs Complx Typs List of Rsrvd Words Using Variabls Stting Action Paramtrs Parsing Lists and Tabls Gtting Valu from Lists and Tabls Using Indxs with Lists Using Indxs

More information

Semistructured Data Management Part 3 (Towards the) Semantic Web

Semistructured Data Management Part 3 (Towards the) Semantic Web Semistructured Data Management Part 3 (Towards the) Semantic Web Semantic Web - 1 1 Today's Question 1. What is the "Semantic Web"? 2. Semantic Annotation using RDF 3. Ontology Languages Semantic Web -

More information

An efficient and decision making semantic web for Educational ERP

An efficient and decision making semantic web for Educational ERP An efficient and decision making semantic web for Educational ERP Rashmi Singh 1, Samvidha Sharma 2 1,2 NRI Institute of Science and Technology Bhopal, M.P. India ABSTRACT The increasing volume of data

More information

Dell EMC PowerEdge C6420

Dell EMC PowerEdge C6420 Dll EMC PowrEdg C6420 Rgulatory Modl: E43S Sris Rgulatory Typ: E43S001 Nots, cautions, and warnings NOTE: A NOTE indicats important information that hlps you mak bttr us of your product. CAUTION: A CAUTION

More information

To Do. Advanced Computer Graphics. Motivation. Mesh Data Structures. Outline. Mesh Data Structures. Desirable Characteristics 1

To Do. Advanced Computer Graphics. Motivation. Mesh Data Structures. Outline. Mesh Data Structures. Desirable Characteristics 1 Advancd Computr Graphics CSE 63 [Spring 207], Lctur 7 Ravi Ramamoorthi http://www.cs.ucsd.du/~ravir To Do Assignmnt, Du Apr 28 Any last minut issus or difficultis? Starting Gomtry Procssing Assignmnt 2

More information

I - Pre Board Examination

I - Pre Board Examination Cod No: S-080 () Total Pags: 06 KENDRIYA VIDYALAYA SANGATHAN,GUWHATI REGION I - Pr Board Examination - 04-5 Subjct Informatics Practics (Thory) Class - XII Tim: 3 hours Maximum Marks : 70 Instruction :

More information

Gernot Hoffmann Sphere Tessellation by Icosahedron Subdivision. Contents

Gernot Hoffmann Sphere Tessellation by Icosahedron Subdivision. Contents Grnot Hoffmann Sphr Tssllation by Icosahdron Subdivision Contnts 1. Vrtx Coordinats. Edg Subdivision 3 3. Triangl Subdivision 4 4. Edg lngths 5 5. Normal Vctors 6 6. Subdividd Icosahdrons 7 7. Txtur Mapping

More information

TypeCastor: Demystify Dynamic Typing of JavaScript Applications

TypeCastor: Demystify Dynamic Typing of JavaScript Applications TypCastor: Dmystify Dynamic Typing of JavaScript Applications Shishng Li China Runtim Tch Cntr Intl China Rsarch Cntr Bijing, China shishng.li@intl.com Buqi Chng China Runtim Tch Cntr Intl China Rsarch

More information

: Mesh Processing. Chapter 6

: Mesh Processing. Chapter 6 600.657: Msh Procssing Chaptr 6 Quad-Dominant Rmshing Goal: Gnrat a rmshing of th surfac that consists mostly of quads whos dgs align with th principal curvatur dirctions. [Marinov t al. 04] [Alliz t al.

More information

Vignette to package samplingdatacrt

Vignette to package samplingdatacrt Vigntt to packag samplingdatacrt Diana Trutschl Contnts 1 Introduction 1 11 Objctiv 1 1 Diffrnt study typs 1 Multivariat normal distributd data for multilvl data 1 Fixd ffcts part Random part 9 3 Manual

More information

SPECIFIC CRITERIA FOR THE GENERAL MOTORS GLOBAL TRADING PARTNER LABEL TEMPLATE:

SPECIFIC CRITERIA FOR THE GENERAL MOTORS GLOBAL TRADING PARTNER LABEL TEMPLATE: SPCIFIC CRITRIA FOR TH GNRAL MOTORS GLOBAL TRADING PARTNR LABL TMPLAT: TH TMPLAT IDNTIFIS HOW AND WHR DATA IS TO B PLACD ON TH LABL WHN IT IS RQUIRD AS PART OF A GM BUSINSS RQUIRMNT FONT SIZS AR SPCIFID

More information

[MS-OXRTFEX]: Rich Text Format (RTF) Extensions Algorithm. Intellectual Property Rights Notice for Open Specifications Documentation

[MS-OXRTFEX]: Rich Text Format (RTF) Extensions Algorithm. Intellectual Property Rights Notice for Open Specifications Documentation [MS-OXRTFEX]: Intllctual Proprty Rights Notic for Opn Spcifications Documntation Tchnical Documntation. Microsoft publishs Opn Spcifications documntation ( this documntation ) for protocols, fil formats,

More information

Towards Fractal Approach in Healthcare Information Systems: A Review

Towards Fractal Approach in Healthcare Information Systems: A Review t 2 L E P U T PER J O R TI D I OCI IC 2011 O E I UIV UDET E T R I TI I K E E B DO G I M L Y I l a n o i t a rn In c i n tif i c C o n IC 2011 f r n c 0 1 Procding of th Intrnational Confrnc on dvancd cinc,

More information

KENDRIYA VIDYALAYA SANGATHAN, CHENNAI REGION CLASS XII COMMON PRE-BOARD EXAMINATION

KENDRIYA VIDYALAYA SANGATHAN, CHENNAI REGION CLASS XII COMMON PRE-BOARD EXAMINATION KENDRIYA VIDYALAYA SANGATHAN, CHENNAI REGION CLASS XII COMMON PRE-BOARD EXAMINATION 03-4 Sub : Informatics Practics (065) Tim allowd : 3 hours Maximum Marks : 70 Instruction : (i) All qustions ar compulsory

More information

To Do. Mesh Data Structures. Mesh Data Structures. Motivation. Outline. Advanced Computer Graphics (Fall 2010) Desirable Characteristics 1

To Do. Mesh Data Structures. Mesh Data Structures. Motivation. Outline. Advanced Computer Graphics (Fall 2010) Desirable Characteristics 1 Advancd Computr Graphics (Fall 200) CS 283, Lctur 5: Msh Data Structurs Ravi Ramamoorthi http://inst.cs.brkly.du/~cs283/fa0 To Do Assignmnt, Du Oct 7. Start rading and working on it now. Som parts you

More information

Maxwell s unification: From Last Time. Energy of light. Modern Physics. Unusual experimental results. The photoelectric effect

Maxwell s unification: From Last Time. Energy of light. Modern Physics. Unusual experimental results. The photoelectric effect From Last Tim Enrgy and powr in an EM wav Maxwll s unification: 1873 Intimat connction btwn lctricity and magntism Exprimntally vrifid by Hlmholtz and othrs, 1888 Polarization of an EM wav: oscillation

More information

From Last Time. Origin of Malus law. Circular and elliptical polarization. Energy of light. The photoelectric effect. Exam 3 is Tuesday Nov.

From Last Time. Origin of Malus law. Circular and elliptical polarization. Energy of light. The photoelectric effect. Exam 3 is Tuesday Nov. From Last Tim Enrgy and powr in an EM wav Exam 3 is Tusday Nov. 25 5:30-7 pm, 2103 Ch (hr) Studnts w / schduld acadmic conflict plas stay aftr class Tus. Nov. 18 to arrang altrnat tim. Covrs: all matrial

More information

LAB1: DMVPN Theory. DMVPN Theory. Disclaimer. Pag e

LAB1: DMVPN Theory. DMVPN Theory. Disclaimer. Pag e LAB1: DMVPN Thory Disclaimr This Configuration Guid is dsignd to assist mmbrs to nhanc thir skills in rspctiv tchnology ara. Whil vry ffort has bn mad to nsur that all matrial is as complt and accurat

More information

SPECKLE NOISE REDUCTION IN SAR IMAGING USING 2-D LATTICE FILTERS BASED SUBBAND DECOMPOSITION

SPECKLE NOISE REDUCTION IN SAR IMAGING USING 2-D LATTICE FILTERS BASED SUBBAND DECOMPOSITION 7th Europan Signal Procssing Confrnc EUSIPCO 9 Glasgow Scotland August 4-8 9 SPECKLE REDUCTION IN SAR IMAGING USING -D LATTICE FILTERS ASED SUAND DECOMPOSITION Göhan Karasaal N.. Kaplan I. Err Informatics

More information

1. Trace the array for Bubble sort 34, 8, 64, 51, 32, 21. And fill in the following table

1. Trace the array for Bubble sort 34, 8, 64, 51, 32, 21. And fill in the following table 1. Trac th array for Bubbl sort 34, 8, 64, 51, 3, 1. And fill in th following tabl bubbl(intgr Array x, Intgr n) Stp 1: Intgr hold, j, pass; Stp : Boolan switchd = TRUE; Stp 3: for pass = 0 to (n - 1 &&

More information

Managing Trust Relationships in Peer 2 Peer Systems

Managing Trust Relationships in Peer 2 Peer Systems Managing Trust Rlationships in Pr 2 Pr Systms R.S.SINJU PG STUDENT, DEPARTMENT OF COMPUTER SCIENCE, PONJESLY COLLEGE OF ENGINEERING NAGERCOIL, TAMILNADU, INDIA C.FELSY ASST.PROF, DEPARTMENT OF COMPUTER

More information

Forward and Inverse Kinematic Analysis of Robotic Manipulators

Forward and Inverse Kinematic Analysis of Robotic Manipulators Forward and Invrs Kinmatic Analysis of Robotic Manipulators Tarun Pratap Singh 1, Dr. P. Sursh 2, Dr. Swt Chandan 3 1 M.TECH Scholar, School Of Mchanical Enginring, GALGOTIAS UNIVERSITY, GREATER NOIDA,

More information

Transaction-level Modeling of MPEG-2 Video Decode Application in SystemC 2.0.1

Transaction-level Modeling of MPEG-2 Video Decode Application in SystemC 2.0.1 Transaction-lvl Modling of MPEG-2 Vido Dcod Application in SystmC 2.0.1 Samvit Kaul, Srkanth M, Junhyung Um, Eui-young Chung, Kyu-Myung Choi, Jong-Tak Kong, Soo-Kwan Eo CAE Cntr, Systm LSI Dvision, Dvic

More information

This module calculates the motor speed based on a rotor position measurement when the direction information is available.

This module calculates the motor speed based on a rotor position measurement when the direction information is available. SPEED_FRQ Spd Calulator Basd on Rotor Angl With Dirtion Information Dsription This modul alulats th motor spd basd on a rotor position masurmnt whn th dirtion information is availabl. thta_l dir_qep SPEED_FRQ

More information

Interpreting XML via an RDF Schema

Interpreting XML via an RDF Schema Interpreting XML via an RDF Schema Michel Klein 1 Abstract. One of the major problems in the realization of the vision of the Semantic Web is the transformation of existing web data into sources that can

More information

Section II. PCB Layout Guidelines

Section II. PCB Layout Guidelines Sction II. PCB Layout Guidlins This sction provids information for board layout dsignrs to succssfully layout thir boards for MAX II dvics. It contains th rquird printd circuit board (PCB) layout guidlins,

More information

Clustering Algorithms

Clustering Algorithms Clustring Algoritms Applications Hirarcical Clustring k -Mans Algoritms CURE Algoritm 1 T Problm of Clustring Givn a st of points, wit a notion of distanc btwn points, group t points into som numbr of

More information

Tillförlitlig dimensionering mot utmattning UTMIS Vårmöte 2018 på Högskolan i Skövde

Tillförlitlig dimensionering mot utmattning UTMIS Vårmöte 2018 på Högskolan i Skövde Tillförlitlig dimnsionring mot utmattning UTMIS Vårmöt 2018 på Högskolan i Skövd Rami Mansour & Mårtn Olsson KTH Hållfasthtslära mart@kth.s ramimans@kth.s Introduction Ovrviw of rliabl dsign Traditional

More information

Revit Architecture ctu

Revit Architecture ctu h pt r2: Chaptr 2 Rvit Architctur ctu BasicsChaptr2: Bfor you bgin to us Rvit Architctur, you nd to bcom rc familiar with th intrfac, th typs of objcts you will b using to crat your dsigns, P sa and basic

More information

Seman+c Web Mo+va+ng Example

Seman+c Web Mo+va+ng Example 1/30/13 A Mo+va+ng xampl Sman+c Wb Mo+va+ng Exampl W stat with a book... H s a mo+va+ng xampl, adaptd fom a psnta+on by Ivan Hman It intoducs sman+c wb concpts And illustats th bnfits of psn+ng you data

More information

Enabling knowledge representation on the Web by extending RDF Schema

Enabling knowledge representation on the Web by extending RDF Schema Linköping Electronic Articles in Computer and Information Science Vol. 6(2001): nr 1 Enabling knowledge representation on the Web by extending RDF Schema Jeen Broekstra Michel Klein Stefan Decker Dieter

More information

CASE Tool for SOA Development. István Ráth

CASE Tool for SOA Development. István Ráth Th SENSORIA Dvlopmnt Environmnt CASE Tool for SOA Dvlopmnt SENSORIA EU FP6 projct 19 partnrs from 7 countris 4 yars, 4 M EUR Coordinator: Prof. Dr. Martin Wirsing, Ludwig Maximilians Univrsität Münchn,

More information

Clustering Belief Functions using Extended Agglomerative Algorithm

Clustering Belief Functions using Extended Agglomerative Algorithm IJ Imag Graphics and Signal Procssing 0 - Publishd Onlin Fbruary 0 in MECS (http://wwwmcs-prssorg/ ing Blif Functions using Extndd Agglomrativ Algorithm Ying Png Postgraduat Collg Acadmy of Equipmnt Command

More information

An Agent-Based Architecture for Service Discovery and Negotiation in Wireless Networks

An Agent-Based Architecture for Service Discovery and Negotiation in Wireless Networks An Agnt-Basd Architctur for Srvic Discovry and Ngotiation in Wirlss Ntworks Abstract Erich Birchr and Torstn Braun Univrsity of Brn, Nubrückstrass 10, 3012 Brn, Switzrland Email: braun@iam.unib.ch This

More information

CS246: Mining Massive Datasets Jure Leskovec, Stanford University.

CS246: Mining Massive Datasets Jure Leskovec, Stanford University. CS246: Mining Massiv Datasts Jur Lskovc, Stanford Univrsity ttp://cs246.stanford.du 11/26/2010 Jur Lskovc, Stanford C246: Mining Massiv Datasts 2 Givn a st of points, wit a notion of distanc btwn points,

More information

RDF Based Architecture for Semantic Integration of Heterogeneous Information Sources

RDF Based Architecture for Semantic Integration of Heterogeneous Information Sources RDF Based Architecture for Semantic Integration of Heterogeneous Information Sources Richard Vdovjak, Geert-Jan Houben Eindhoven University of Technology Eindhoven, The Netherlands r.vdovjak, g.j.houben

More information

Compositional specification of commercial contracts

Compositional specification of commercial contracts Int J Softw Tools Tchnol Transfr DOI 10.1007/s10009-006-0010-1 SPECIAL SECTION ON LEVERAGING APPLICATIONS OF FORMAL METHODS Compositional spcification of commrcial contracts Jspr Andrsn Ebb Elsborg Fritz

More information

Nimsoft Monitor. ldap_response Guide. v1.3 series

Nimsoft Monitor. ldap_response Guide. v1.3 series Nimsoft Monitor ldap_rspons Guid v1.3 sris Lgal Notics Copyright 2012, Nimsoft Corporation Warranty Th matrial containd in this documnt is providd "as is," and is subjct to bing changd, without notic,

More information

Heading-determination using the sensor-fusion based maritime PNT Unit

Heading-determination using the sensor-fusion based maritime PNT Unit Hading-dtrmination using th snsor-fusion basd maritim PN Unit Zhn Dai, Ralf Zibold, Alxandr Born, Evlin Englr Grman Arospac Cntr (DLR) Nustrlitz, Grmany Abstract his papr prsnts th hading dtrmination tchniqu

More information

SPECIFIC CRITERIA FOR THE GENERAL MOTORS GLOBAL TRADING PARTNER LABEL TEMPLATE:

SPECIFIC CRITERIA FOR THE GENERAL MOTORS GLOBAL TRADING PARTNER LABEL TEMPLATE: SPCIFIC CRITRIA FOR TH GNRAL MOTORS GLOBAL TRADING PARTNR LABL TMPLAT: TH TMPLAT IDNTIFIS HOW AND WHR DATA IS TO B PLACD ON TH LABL WHN IT IS RQUIRD AS PART OF A GM BUSINSS RQUIRMNT FONT SIZS AR SPCIFID

More information

PROPOSED APPROACH TO EVALUATE EFFECT OF E-CRM ON CUSTOMERS SATISFACTION OF E-COMMERCE WEBSITES

PROPOSED APPROACH TO EVALUATE EFFECT OF E-CRM ON CUSTOMERS SATISFACTION OF E-COMMERCE WEBSITES IJICIS, Vol10, No 2, JULY 2010 PROPOSED APPROACH TO EVALUATE EFFECT OF E-CRM ON CUSTOMERS SATISFACTION OF E-COMMERCE WEBSITES M M Abd - Ellatif N R Darwish Information Systms Dpartmnt, Faculty of Computrs

More information

To Do. Advanced Computer Graphics. Motivation. Mesh Data Structures. Outline. Mesh Data Structures. Desirable Characteristics 1

To Do. Advanced Computer Graphics. Motivation. Mesh Data Structures. Outline. Mesh Data Structures. Desirable Characteristics 1 Advancd Computr Graphics CSE 63 [Spring 208], Lctur 7 Ravi Ramamoorthi http://www.cs.ucsd.du/~ravir To Do Assignmnt, Du Apr 27 Any last minut issus or difficultis? Starting Gomtry Procssing Assignmnt 2

More information

Ontology Services between Agents and OWL Based Web Services

Ontology Services between Agents and OWL Based Web Services Third Intrnational Confrnc on Smantic, Knowldg and Grid Ontology Srvic btwn and OWL Bad Wb Srvic Nam Khalid, Maruf Paha, Sabih Ur Rhman NUST Intitut of Information Tchnology, 166-A, Strt 9, Chaklala Schm

More information

calctab package version 0.6.1

calctab package version 0.6.1 calctab packag vrsion 0.6.1 Robrto Giacomlli -mail: giacont dot mailbox at gmail dot com 2009/07/12 Th tabl computs th sum not bcaus is usful, but bcaus th rsult is not an usr ssntial data Contnts 1 Introduction

More information