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Big Linked Data
               Presented by:
   Barry Norton, Ontotext AD
Aims for curriculum

 1.Show realistic solutions
 2.Use real data
 3.Use real tools
 4.Show scalable solutions
 5.Eat the dog’s food
            EUCLID – a Curriculum for Big Linked Data   2
Realistic Solution
Application




                               Analysis &                                                   Visualization
                                                                 RDFa                         Module
                             Mining Module
Access




                                                                                                     SPARQL
                                                                                                    Endpoint
                                                                                                                         Publishing
LD Dataset




                      Vocabulary                                                                                Integrated
                                            Interlinking                   Cleansing
                       Mapping                                                                                    Dataset




                                 Physical Wrapper                      LD Wrapper           R2R Transf.     LD Wrapper
Data acquisition




                                                                                                                             RDF/
                                                                                                                             XML
                     Streaming providers     Downloads
                              Musical Content                                      Metadata                  Other content
                                                EUCLID – a Curriculum for Big Linked Data                                      3
Real Data
• No pizza




             EUCLID - Providing Linked Data   4
Real Data
• No pizza                                    • No wine




             EUCLID - Providing Linked Data               5
Real Data
• No pizza                                      • No wine




• No Protégé

               EUCLID - Providing Linked Data               6
Real Data
• MusicBrainz dataset:


• Music
  Ontology:




                 EUCLID - Providing Linked Data   7
Real Tools
• Admitted simple start                  • Industry-strength
                                           by Module 2




                  EUCLID – a Curriculum for Big Linked Data    8
Real Tools
• All tools explained by screencast




                   EUCLID – a Curriculum for Big Linked Data   9
Real Tools
• All tools explained by screencast

                                                               Explains
                                                               how
                                                               Exercise 1
                                                               was
                                                               created




                   EUCLID – a Curriculum for Big Linked Data         10
Real Tools
• The data of interest may be stored in a wide range or
  formats:



      Spreadsheets
                                     Databases                      Text
      or tabular data


• Several tools support the process of mining data
  from different repositories, for example:


                                      R2RML
                        EUCLID – a Curriculum for Big Linked Data          11
Scalable Solutions
• MusicBrainz RDF derived via R2RML:


                                                                             300M
                                                                             Triples



                                      lb:artist_member a rr:TriplesMap ;
                                        rr:logicalTable [rr:sqlQuery
                                          """SELECT a1.gid, a2.gid AS band
                                             FROM artist a1
                                               INNER JOIN l_artist_artist ON a1.id =
                                      l_artist_artist.entity0
                                               INNER JOIN link ON l_artist_artist.link = link.id
                                               INNER JOIN link_type ON link_type = link_type.id
                                               INNER JOIN artist a2 on l_artist_artist.entity1 = a2.id
                                             WHERE link_type.gid='5be4c609-9afa-4ea0-910b-12ffb71e3821'"""]
                                      ;
                                        rr:subjectMap [rr:template "http://musicbrainz.org/artist/{gid}#_"]
                                      ;
                                        rr:predicateObjectMap
                                          [rr:predicate mo:member_of ;
                                           rr:objectMap [rr:template
                                      "http://musicbrainz.org/artist/{band}#_" ;
                                                         rr:termType rr:IRI]] .
                 EUCLID – a Curriculum for Big Linked Data                                       12
Dog Food
• EUCLID output, topics and engagement monitored

       public-lod
       public-vocabs
       semantic-web




                       EUCLID – a Curriculum for Big Linked Data   13
Dog Food
• EUCLID output, topics and engagement monitored

       public-lod        • Offered as public SPARQL endpoint
       public-vocabs
       semantic-web




                       EUCLID – a Curriculum for Big Linked Data   14
Dog Food
• EUCLID output, topics and engagement monitored

       public-lod        • Offered as public SPARQL endpoint
       public-vocabs
       semantic-web                                          • Will be used as basis
                                                               of analysis examples




                       EUCLID – a Curriculum for Big Linked Data               15
Results
• Achieving ~100
  live viewers:
• Set to exceed
  1000 post hoc
  views /channel
  (Webinar
  platform, Vime
  o, Slideshare):




                    EUCLID – a Curriculum for Big Linked Data   16
For exercises, quiz and further material visit our website:

                     http://www.euclid-project.eu
      eBook                                                 Course




Other channels:




       @euclid_project              EUCLID project                    EUCLIDproject

                          EUCLID – a Curriculum for Big Linked Data                   17

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EDF2013: Data Science Curriculum: Barry Norton: Big Linked Data

  • 1. Big Linked Data Presented by: Barry Norton, Ontotext AD
  • 2. Aims for curriculum 1.Show realistic solutions 2.Use real data 3.Use real tools 4.Show scalable solutions 5.Eat the dog’s food EUCLID – a Curriculum for Big Linked Data 2
  • 3. Realistic Solution Application Analysis & Visualization RDFa Module Mining Module Access SPARQL Endpoint Publishing LD Dataset Vocabulary Integrated Interlinking Cleansing Mapping Dataset Physical Wrapper LD Wrapper R2R Transf. LD Wrapper Data acquisition RDF/ XML Streaming providers Downloads Musical Content Metadata Other content EUCLID – a Curriculum for Big Linked Data 3
  • 4. Real Data • No pizza EUCLID - Providing Linked Data 4
  • 5. Real Data • No pizza • No wine EUCLID - Providing Linked Data 5
  • 6. Real Data • No pizza • No wine • No Protégé EUCLID - Providing Linked Data 6
  • 7. Real Data • MusicBrainz dataset: • Music Ontology: EUCLID - Providing Linked Data 7
  • 8. Real Tools • Admitted simple start • Industry-strength by Module 2 EUCLID – a Curriculum for Big Linked Data 8
  • 9. Real Tools • All tools explained by screencast EUCLID – a Curriculum for Big Linked Data 9
  • 10. Real Tools • All tools explained by screencast Explains how Exercise 1 was created EUCLID – a Curriculum for Big Linked Data 10
  • 11. Real Tools • The data of interest may be stored in a wide range or formats: Spreadsheets Databases Text or tabular data • Several tools support the process of mining data from different repositories, for example: R2RML EUCLID – a Curriculum for Big Linked Data 11
  • 12. Scalable Solutions • MusicBrainz RDF derived via R2RML: 300M Triples lb:artist_member a rr:TriplesMap ; rr:logicalTable [rr:sqlQuery """SELECT a1.gid, a2.gid AS band FROM artist a1 INNER JOIN l_artist_artist ON a1.id = l_artist_artist.entity0 INNER JOIN link ON l_artist_artist.link = link.id INNER JOIN link_type ON link_type = link_type.id INNER JOIN artist a2 on l_artist_artist.entity1 = a2.id WHERE link_type.gid='5be4c609-9afa-4ea0-910b-12ffb71e3821'"""] ; rr:subjectMap [rr:template "http://musicbrainz.org/artist/{gid}#_"] ; rr:predicateObjectMap [rr:predicate mo:member_of ; rr:objectMap [rr:template "http://musicbrainz.org/artist/{band}#_" ; rr:termType rr:IRI]] . EUCLID – a Curriculum for Big Linked Data 12
  • 13. Dog Food • EUCLID output, topics and engagement monitored public-lod public-vocabs semantic-web EUCLID – a Curriculum for Big Linked Data 13
  • 14. Dog Food • EUCLID output, topics and engagement monitored public-lod • Offered as public SPARQL endpoint public-vocabs semantic-web EUCLID – a Curriculum for Big Linked Data 14
  • 15. Dog Food • EUCLID output, topics and engagement monitored public-lod • Offered as public SPARQL endpoint public-vocabs semantic-web • Will be used as basis of analysis examples EUCLID – a Curriculum for Big Linked Data 15
  • 16. Results • Achieving ~100 live viewers: • Set to exceed 1000 post hoc views /channel (Webinar platform, Vime o, Slideshare): EUCLID – a Curriculum for Big Linked Data 16
  • 17. For exercises, quiz and further material visit our website: http://www.euclid-project.eu eBook Course Other channels: @euclid_project EUCLID project EUCLIDproject EUCLID – a Curriculum for Big Linked Data 17