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SPARQL UniProt.RDF




    Jerven Bolleman
      Developer
      Swiss-Prot Group
      Swiss Institute of Bioinformatics




Tuesday, December 4, 2012
A few notes before we begin


     • SPARQL 1
        – Some what useful
        – Standardized in 2008
     • SPARQL 1.1
        – Very useful
        – Currently in recommended standard

     • Still finding incompatibilities
     • Or not yet implemented features



    © 2012 SIB



Tuesday, December 4, 2012
Raise your hand if you have questions




    © 2012 SIB



Tuesday, December 4, 2012
Tutorial plan


     • Set up Topbraid Composer
        – Skipped in talk
        – On VM
     • Gather data from uniprot website
        – Already there.        Text
     • Learn sparql
                   You do not need Topbraid Composer
                   to use UniProt RDF data or do sparql
                   queries.
                   You can use beta.sparql.uniprot.org
                   as well.
    © 2012 SIB



Tuesday, December 4, 2012
Download and install Topbraid composer


     • Requirements
        – Sun/Oracle JVM
     • Go to
        – http://www.topquadrant.com/products/
          TB_download.html
        – Register
        – Select any edition, free is ok for today




    © 2012 SIB



Tuesday, December 4, 2012
Start Topbraid




    © 2012 SIB



Tuesday, December 4, 2012
Setting up a workspace for this tutorial


     • http://www.topquadrant.com/products/TB_download.html




    © 2012 SIB



Tuesday, December 4, 2012
New project
     • File > New Project > General




    © 2012 SIB



Tuesday, December 4, 2012
Gather data from uniprot.org website




                 • In the navigator select the new project you just made.




    © 2012 SIB



Tuesday, December 4, 2012
Gather data from uniprot.org website
  Right click on your new project.
  Select “Import” in the drop down menu




          • Import RDF or OWL file from the web


    © 2012 SIB



Tuesday, December 4, 2012
Using the same process download core.owl




                 You can see a html view of this schema
                 ontology at
                 http://www.uniprot.org/core/




    © 2012 SIB



Tuesday, December 4, 2012
Gather data from uniprot.org website




             You can see a html view of this entry at
                http://www.uniprot.org/taxonomy/40674




    © 2012 SIB



Tuesday, December 4, 2012
Gather data from uniprot.org website


     • Open the mammalia.rdf file by double clicking




    © 2012 SIB



Tuesday, December 4, 2012
You get a very helpfull dialog.
      Hit yes




    © 2012 SIB



Tuesday, December 4, 2012
Its SPARQLy mammal time !!




    © 2012 SIB



Tuesday, December 4, 2012
Lets look at an single taxon record




    © 2012 SIB



Tuesday, December 4, 2012
Lets navigate to it in TopBraid


     • Type the uri as is with the angle brackets




    © 2012 SIB



Tuesday, December 4, 2012
Investigate the taxon record




    © 2012 SIB



Tuesday, December 4, 2012
The “Eastern Chipmunk” in turtle




    © 2012 SIB



Tuesday, December 4, 2012
Turtle is the RDF serialization aligned with
     SPARQL

     • Shorthand to avoid typing so much
        – . ‘dot’ is end statement
        – ; ‘semi-colon’ repeat subject
        – , ‘comma’ is repeat subject and predicate
     • prefix
        – before ‘:’ is abbreviation of uri




    © 2012 SIB



Tuesday, December 4, 2012
Why don’t these queries work on the web?


     • PREFIX
        – Topbraid composer uses the prefixes defined in the
          files “overview” tab.
        – On the web you often have to add these.

                   PREFIX :<http://purl.uniprot.org/core/>
                   SELECT ?x
                   FROM <http://purl.uniprot.org/taxonomy/>
                   WHERE {?x a :Taxon}




    © 2012 SIB



Tuesday, December 4, 2012
a = rdf:type = <http://www.w3.org/1999/02/22-rdf-
     syntax-ns#type>




    © 2012 SIB



Tuesday, December 4, 2012
rdfs:subClassOf
     taxon:45474 is a more specific classification than
     taxon:13712




    © 2012 SIB



Tuesday, December 4, 2012
rank => “The level, for nomenclatural purposes, of
     a taxon in a taxonomic hierarchy”




    © 2012 SIB



Tuesday, December 4, 2012
Why learn SPARQL


     • Standardized formal query language
        – implementation independent
           • SPARQL ➔ SQL (via R2ML)
           • SPARQL ➔ webservice (via SADI)
           • SPARQL ➔ LDAP (e.g. SquirrelRDF)
           • SPARQL ➔ RDF (triplestore e.g. OWLIM-se)
           • SPARQL ➔ HADOOP/HIVE (e.g. SHARD)
        – How you query independent of how you store!




    © 2012 SIB



Tuesday, December 4, 2012
Apparently it helps
      kill vampires !!!




    © 2012 SIB



Tuesday, December 4, 2012
Lets learn SPARQL


     • Queries over RDF data.
       – Four basic types
          • SELECT
              – Returns “tab delimited” results
          • CONSTRUCT
              – Makes new triples
          • DESCRIBE
              – Returns all triples mentioning a resource
          • ASK
              – Return true if anything matches

    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




                 taxon:9606 rdf:type core:Taxon .




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




                 ?anyTaxon rdf:type core:Taxon .




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




          SELECT ?anyTaxon
          WHERE {
            ?anyTaxon rdf:type core:Taxon .
          }




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




                 taxon:9606 rdf:type core:Taxon .
                 taxon:9606 core:reviewed “true” .




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




                 ?anyTaxon rdf:type core:Taxon .
                 ?anyTaxon core:reviewed “true” .




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




          SELECT ?anyTaxon
          WHERE {
            ?anyTaxon rdf:type core:Taxon .
            ?anyTaxon core:reviewed “true” .
          }




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




          SELECT ?anyTaxon
          WHERE {
            ?anyTaxon rdf:type core:Taxon .
            ?anyTaxin core:reviewed “true” .
          }




    © 2012 SIB



Tuesday, December 4, 2012
SPARQL:queries triple pattern




          SELECT ?anyTaxon
          WHERE {
            ?anyTaxon rdf:type core:Taxon .
            $anyTaxon core:reviewed “true” .
          }




    © 2012 SIB



Tuesday, December 4, 2012
Lets learn SPARQL




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
Shorthand a = rdf:type




    © 2012 SIB



Tuesday, December 4, 2012
AND join (default)




    © 2012 SIB



Tuesday, December 4, 2012
Now you type




    © 2012 SIB



Tuesday, December 4, 2012
Remember ‘;’ shortcut




    © 2012 SIB



Tuesday, December 4, 2012
Two variables one output column




    © 2012 SIB



Tuesday, December 4, 2012
Optional


     • When values may be missing
        – yet interesting when they are there
     • Use as sub query
     • bound values from outside stay bound inside
        – ?x ?y?z . OPTIONAL {?x ?b ?c}
           • ?x same variable = same thing




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
UNION


     • Allows you to combine query patterns as an OR
       operation.
     • Joins are still from outer to inner.




    © 2012 SIB



Tuesday, December 4, 2012
UNION




    © 2012 SIB



Tuesday, December 4, 2012
Negation


     • When you do not want a certain category of matches.

                            SELECT ?pet
                            WHERE {
                              ?pet a pets:Friendly .
                            }




    © 2012 SIB



Tuesday, December 4, 2012
Oooops




    © 2012 SIB



Tuesday, December 4, 2012
Not exists (Negation 1)




    © 2012 SIB



Tuesday, December 4, 2012
Minus (Negation 2)




    © 2012 SIB



Tuesday, December 4, 2012
MINUS{} or FILTER (NOT EXISTS{})


     • Whats the difference?
       – MINUS subtracts results
       – NOT EXITS tests if the sub pattern is possible at all.
          • Normally the faster option.




    © 2012 SIB



Tuesday, December 4, 2012
MINUS all data




    © 2012 SIB



Tuesday, December 4, 2012
FILTER (NOT EXISTS{}) no results




    © 2012 SIB



Tuesday, December 4, 2012
Negation option 3
       SPARQL 1.0

                 SELECT ?subject ?rank
                 WHERE {
                    ?subject core:rank ?rank .
                    OPTIONAL
 { ?subject core:rank core:Genus .
                   
 
   
    
   
   
    ?subject core:rank ?genus .}
                    FILTER(! BOUND(?genus))
                 }




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
FILTERS


     • You just saw it twice
        – Once in the !BOUND
        – Once in the NOT EXISTS

     • FILTERS a result set by possibly removing values
        – FILTER do not add a value to the result
     • Inside the same graph pattern order independent.




    © 2012 SIB



Tuesday, December 4, 2012
Filter




    © 2012 SIB



Tuesday, December 4, 2012
Filter on not in




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
IN




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
FILTER on numbers


     • <
        –        FILTER (1 < 2)
     • >
        –        FILTER (2 > 1)
     • =
        –        FILTER (1 =1)
     • !=
        –        FILTER(1 != 2)
     •



    © 2012 SIB



Tuesday, December 4, 2012
Filters


     • ?x = ?y does casting (value conversions)
        – 1.0^^xsd:float = 1^^xsd:int is true
     • sameTerm(?x, ?y) does not
        – sameTerm(1.0^^xsd:float, 1^^xsd:int)




    © 2012 SIB



Tuesday, December 4, 2012
FILTER on strings


     • Functions
        – STRLEN            –   ENCODE_FOR_URI
        – SUBSTR            –   CONCAT
        – UCASE             –   langMatches
        – LCASE             –   REGEX
        – STRSTARTS         –   REPLACE
        – STRENDS
        – CONTAINS          – IRI
        – STRBEFORE
        – STRAFTER

    © 2012 SIB



Tuesday, December 4, 2012
STRLEN == String Length




    © 2012 SIB



Tuesday, December 4, 2012
CONTAINS is case sensitive is it in there




    © 2012 SIB



Tuesday, December 4, 2012
REGEX, just like java regex




    © 2012 SIB



Tuesday, December 4, 2012
BIND


     • Builds new Values
        – Closes the basic graph pattern
                 SELECT ?p WHERE {
                   {
                     ?taxon a :Taxon .
                   }
                   BIND (?taxon AS ?p)
                 }
     • Always declare before use.



    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
BIND can assign any output




    © 2012 SIB



Tuesday, December 4, 2012
Aggregate functions


     • on select line
     • limited in number
         – count
         – sum
         – avg
         – min
         – max
         – groupConcat
         – sample



    © 2012 SIB



Tuesday, December 4, 2012
count




    © 2012 SIB



Tuesday, December 4, 2012
SAMPLE should give a random result back




    © 2012 SIB



Tuesday, December 4, 2012
Follow the path




    © 2012 SIB



Tuesday, December 4, 2012
Path queries




    © 2012 SIB



Tuesday, December 4, 2012
Finding a grand parent using normal joins




    © 2012 SIB



Tuesday, December 4, 2012
Finding a grandParent using a path query




    © 2012 SIB



Tuesday, December 4, 2012
| is OR for predicate




    © 2012 SIB



Tuesday, December 4, 2012
Same result with UNION




    © 2012 SIB



Tuesday, December 4, 2012
Finding any ancestor




    © 2012 SIB



Tuesday, December 4, 2012
Can use the variable in a normal join afterwards




    © 2012 SIB



Tuesday, December 4, 2012
GROUP BY




    © 2012 SIB



Tuesday, December 4, 2012
GROUP BY


     • Needed for aggregate values
     • After closing the where clause
        – ... WHERE {?x ?y ?z} GROUP BY ?x




    © 2012 SIB



Tuesday, December 4, 2012
GROUP BY




    © 2012 SIB



Tuesday, December 4, 2012
HAVING




                            I have carrot !




    © 2012 SIB



Tuesday, December 4, 2012
HAVING


     • FILTER for aggregates
     • After the GROUP BY clause
        – ... GROUP BY ?x HAVING (count(?y) > 2)
        – ... GROUP BY ?x HAVING (min(?y) = 2)
        – etc...




    © 2012 SIB



Tuesday, December 4, 2012
HAVING




    © 2012 SIB



Tuesday, December 4, 2012
LIMITS
         &
            OFFSET




    © 2012 SIB



Tuesday, December 4, 2012
LIMIT and OFFSET

     • OFFSET is skip first results
     • LIMIT return no more than x results




    © 2012 SIB



Tuesday, December 4, 2012
ORDER




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
VALUES


     • Super BIND
     • Provide inline data




    © 2012 SIB



Tuesday, December 4, 2012
© 2012 SIB



Tuesday, December 4, 2012
Examples


     • Parameter lists are between ()


                   VALUES (?annotation) {
                     (core:Disease_Annotation)
                                       Text
                     (core:Disulfide_Bond_Annotation)
                   }




    © 2012 SIB



Tuesday, December 4, 2012
Examples


     • Undef means no value at
        – all not bound
                 VALUES (?annotation ?begin) {
                   (core:Disease_Annotation UNDEF)
                                       Text
                   (core:Disulfide_Bond_Annotation 2)
                 }




    © 2012 SIB



Tuesday, December 4, 2012
VALUES


     • After declaring a set of values you can use them in your
       query.

                 SELECT ?comment WHERE {
                   VALUES (?annotation ?begin) {
                     (core:Disease_Annotation UNDEF)
                     (core:Disulfide_Bond_Annotation 2)
                   }
                   ?annotation rdfs:comment ?comment .
                 }


    © 2012 SIB



Tuesday, December 4, 2012
SERVICE: Using other sparql endpoints


     • SERVICE<URL of other endpoint>
        – Runs a sub query on the other endpoint and merges it
          back into your query.




    © 2012 SIB



Tuesday, December 4, 2012
“Life is better with friends who understand you.”




    © 2012 SIB



Tuesday, December 4, 2012
SERVICE




    © 2012 SIB



Tuesday, December 4, 2012
SERVICE


     • Useful
        – Quick experimenting with combing multiple
          datasources
        – Quick for queries where not to much data is send to
          the remote point

     • Slow
        – When you ask for to much data
        – Remote endpoint not resourced for your questions



    © 2012 SIB



Tuesday, December 4, 2012
Lets make
                            some triples




    © 2012 SIB



Tuesday, December 4, 2012
Construction


     • CONSTRUCT
        – New triples
           • downloads RDF
        – Does not update store




    © 2012 SIB



Tuesday, December 4, 2012
New triples




    © 2012 SIB



Tuesday, December 4, 2012
Constructing an owl:sameAs between two URI




    © 2012 SIB



Tuesday, December 4, 2012
INSERT


     • Adds data
        – like construct




    © 2012 SIB



Tuesday, December 4, 2012
Modifies data




    © 2012 SIB



Tuesday, December 4, 2012
DELETE


     • Removes data
        – Triples matching are removed from the data
        – Triples can be bound using where clause




    © 2012 SIB



Tuesday, December 4, 2012
DELETE




    © 2012 SIB



Tuesday, December 4, 2012
DELETE
     INSERT

     • Single atomic operation.




    © 2012 SIB



Tuesday, December 4, 2012
Atomic operation




    © 2012 SIB



Tuesday, December 4, 2012
I’m exhausted now




    © 2012 SIB



Tuesday, December 4, 2012
Questions




Tuesday, December 4, 2012

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Learning sparql 2012 12

  • 1. SPARQL UniProt.RDF Jerven Bolleman Developer Swiss-Prot Group Swiss Institute of Bioinformatics Tuesday, December 4, 2012
  • 2. A few notes before we begin • SPARQL 1 – Some what useful – Standardized in 2008 • SPARQL 1.1 – Very useful – Currently in recommended standard • Still finding incompatibilities • Or not yet implemented features © 2012 SIB Tuesday, December 4, 2012
  • 3. Raise your hand if you have questions © 2012 SIB Tuesday, December 4, 2012
  • 4. Tutorial plan • Set up Topbraid Composer – Skipped in talk – On VM • Gather data from uniprot website – Already there. Text • Learn sparql You do not need Topbraid Composer to use UniProt RDF data or do sparql queries. You can use beta.sparql.uniprot.org as well. © 2012 SIB Tuesday, December 4, 2012
  • 5. Download and install Topbraid composer • Requirements – Sun/Oracle JVM • Go to – http://www.topquadrant.com/products/ TB_download.html – Register – Select any edition, free is ok for today © 2012 SIB Tuesday, December 4, 2012
  • 6. Start Topbraid © 2012 SIB Tuesday, December 4, 2012
  • 7. Setting up a workspace for this tutorial • http://www.topquadrant.com/products/TB_download.html © 2012 SIB Tuesday, December 4, 2012
  • 8. New project • File > New Project > General © 2012 SIB Tuesday, December 4, 2012
  • 9. Gather data from uniprot.org website • In the navigator select the new project you just made. © 2012 SIB Tuesday, December 4, 2012
  • 10. Gather data from uniprot.org website Right click on your new project. Select “Import” in the drop down menu • Import RDF or OWL file from the web © 2012 SIB Tuesday, December 4, 2012
  • 11. Using the same process download core.owl You can see a html view of this schema ontology at http://www.uniprot.org/core/ © 2012 SIB Tuesday, December 4, 2012
  • 12. Gather data from uniprot.org website You can see a html view of this entry at http://www.uniprot.org/taxonomy/40674 © 2012 SIB Tuesday, December 4, 2012
  • 13. Gather data from uniprot.org website • Open the mammalia.rdf file by double clicking © 2012 SIB Tuesday, December 4, 2012
  • 14. You get a very helpfull dialog. Hit yes © 2012 SIB Tuesday, December 4, 2012
  • 15. Its SPARQLy mammal time !! © 2012 SIB Tuesday, December 4, 2012
  • 16. Lets look at an single taxon record © 2012 SIB Tuesday, December 4, 2012
  • 17. Lets navigate to it in TopBraid • Type the uri as is with the angle brackets © 2012 SIB Tuesday, December 4, 2012
  • 18. Investigate the taxon record © 2012 SIB Tuesday, December 4, 2012
  • 19. The “Eastern Chipmunk” in turtle © 2012 SIB Tuesday, December 4, 2012
  • 20. Turtle is the RDF serialization aligned with SPARQL • Shorthand to avoid typing so much – . ‘dot’ is end statement – ; ‘semi-colon’ repeat subject – , ‘comma’ is repeat subject and predicate • prefix – before ‘:’ is abbreviation of uri © 2012 SIB Tuesday, December 4, 2012
  • 21. Why don’t these queries work on the web? • PREFIX – Topbraid composer uses the prefixes defined in the files “overview” tab. – On the web you often have to add these. PREFIX :<http://purl.uniprot.org/core/> SELECT ?x FROM <http://purl.uniprot.org/taxonomy/> WHERE {?x a :Taxon} © 2012 SIB Tuesday, December 4, 2012
  • 22. a = rdf:type = <http://www.w3.org/1999/02/22-rdf- syntax-ns#type> © 2012 SIB Tuesday, December 4, 2012
  • 23. rdfs:subClassOf taxon:45474 is a more specific classification than taxon:13712 © 2012 SIB Tuesday, December 4, 2012
  • 24. rank => “The level, for nomenclatural purposes, of a taxon in a taxonomic hierarchy” © 2012 SIB Tuesday, December 4, 2012
  • 25. Why learn SPARQL • Standardized formal query language – implementation independent • SPARQL ➔ SQL (via R2ML) • SPARQL ➔ webservice (via SADI) • SPARQL ➔ LDAP (e.g. SquirrelRDF) • SPARQL ➔ RDF (triplestore e.g. OWLIM-se) • SPARQL ➔ HADOOP/HIVE (e.g. SHARD) – How you query independent of how you store! © 2012 SIB Tuesday, December 4, 2012
  • 26. Apparently it helps kill vampires !!! © 2012 SIB Tuesday, December 4, 2012
  • 27. Lets learn SPARQL • Queries over RDF data. – Four basic types • SELECT – Returns “tab delimited” results • CONSTRUCT – Makes new triples • DESCRIBE – Returns all triples mentioning a resource • ASK – Return true if anything matches © 2012 SIB Tuesday, December 4, 2012
  • 28. SPARQL:queries triple pattern taxon:9606 rdf:type core:Taxon . © 2012 SIB Tuesday, December 4, 2012
  • 29. SPARQL:queries triple pattern ?anyTaxon rdf:type core:Taxon . © 2012 SIB Tuesday, December 4, 2012
  • 30. SPARQL:queries triple pattern SELECT ?anyTaxon WHERE { ?anyTaxon rdf:type core:Taxon . } © 2012 SIB Tuesday, December 4, 2012
  • 31. SPARQL:queries triple pattern taxon:9606 rdf:type core:Taxon . taxon:9606 core:reviewed “true” . © 2012 SIB Tuesday, December 4, 2012
  • 32. SPARQL:queries triple pattern ?anyTaxon rdf:type core:Taxon . ?anyTaxon core:reviewed “true” . © 2012 SIB Tuesday, December 4, 2012
  • 33. SPARQL:queries triple pattern SELECT ?anyTaxon WHERE { ?anyTaxon rdf:type core:Taxon . ?anyTaxon core:reviewed “true” . } © 2012 SIB Tuesday, December 4, 2012
  • 34. SPARQL:queries triple pattern SELECT ?anyTaxon WHERE { ?anyTaxon rdf:type core:Taxon . ?anyTaxin core:reviewed “true” . } © 2012 SIB Tuesday, December 4, 2012
  • 35. SPARQL:queries triple pattern SELECT ?anyTaxon WHERE { ?anyTaxon rdf:type core:Taxon . $anyTaxon core:reviewed “true” . } © 2012 SIB Tuesday, December 4, 2012
  • 36. Lets learn SPARQL © 2012 SIB Tuesday, December 4, 2012
  • 37. © 2012 SIB Tuesday, December 4, 2012
  • 38. © 2012 SIB Tuesday, December 4, 2012
  • 39. Shorthand a = rdf:type © 2012 SIB Tuesday, December 4, 2012
  • 40. AND join (default) © 2012 SIB Tuesday, December 4, 2012
  • 41. Now you type © 2012 SIB Tuesday, December 4, 2012
  • 42. Remember ‘;’ shortcut © 2012 SIB Tuesday, December 4, 2012
  • 43. Two variables one output column © 2012 SIB Tuesday, December 4, 2012
  • 44. Optional • When values may be missing – yet interesting when they are there • Use as sub query • bound values from outside stay bound inside – ?x ?y?z . OPTIONAL {?x ?b ?c} • ?x same variable = same thing © 2012 SIB Tuesday, December 4, 2012
  • 45. © 2012 SIB Tuesday, December 4, 2012
  • 46. UNION • Allows you to combine query patterns as an OR operation. • Joins are still from outer to inner. © 2012 SIB Tuesday, December 4, 2012
  • 47. UNION © 2012 SIB Tuesday, December 4, 2012
  • 48. Negation • When you do not want a certain category of matches. SELECT ?pet WHERE { ?pet a pets:Friendly . } © 2012 SIB Tuesday, December 4, 2012
  • 49. Oooops © 2012 SIB Tuesday, December 4, 2012
  • 50. Not exists (Negation 1) © 2012 SIB Tuesday, December 4, 2012
  • 51. Minus (Negation 2) © 2012 SIB Tuesday, December 4, 2012
  • 52. MINUS{} or FILTER (NOT EXISTS{}) • Whats the difference? – MINUS subtracts results – NOT EXITS tests if the sub pattern is possible at all. • Normally the faster option. © 2012 SIB Tuesday, December 4, 2012
  • 53. MINUS all data © 2012 SIB Tuesday, December 4, 2012
  • 54. FILTER (NOT EXISTS{}) no results © 2012 SIB Tuesday, December 4, 2012
  • 55. Negation option 3 SPARQL 1.0 SELECT ?subject ?rank WHERE { ?subject core:rank ?rank . OPTIONAL { ?subject core:rank core:Genus . ?subject core:rank ?genus .} FILTER(! BOUND(?genus)) } © 2012 SIB Tuesday, December 4, 2012
  • 56. © 2012 SIB Tuesday, December 4, 2012
  • 57. FILTERS • You just saw it twice – Once in the !BOUND – Once in the NOT EXISTS • FILTERS a result set by possibly removing values – FILTER do not add a value to the result • Inside the same graph pattern order independent. © 2012 SIB Tuesday, December 4, 2012
  • 58. Filter © 2012 SIB Tuesday, December 4, 2012
  • 59. Filter on not in © 2012 SIB Tuesday, December 4, 2012
  • 60. © 2012 SIB Tuesday, December 4, 2012
  • 61. © 2012 SIB Tuesday, December 4, 2012
  • 62. IN © 2012 SIB Tuesday, December 4, 2012
  • 63. © 2012 SIB Tuesday, December 4, 2012
  • 64. FILTER on numbers • < – FILTER (1 < 2) • > – FILTER (2 > 1) • = – FILTER (1 =1) • != – FILTER(1 != 2) • © 2012 SIB Tuesday, December 4, 2012
  • 65. Filters • ?x = ?y does casting (value conversions) – 1.0^^xsd:float = 1^^xsd:int is true • sameTerm(?x, ?y) does not – sameTerm(1.0^^xsd:float, 1^^xsd:int) © 2012 SIB Tuesday, December 4, 2012
  • 66. FILTER on strings • Functions – STRLEN – ENCODE_FOR_URI – SUBSTR – CONCAT – UCASE – langMatches – LCASE – REGEX – STRSTARTS – REPLACE – STRENDS – CONTAINS – IRI – STRBEFORE – STRAFTER © 2012 SIB Tuesday, December 4, 2012
  • 67. STRLEN == String Length © 2012 SIB Tuesday, December 4, 2012
  • 68. CONTAINS is case sensitive is it in there © 2012 SIB Tuesday, December 4, 2012
  • 69. REGEX, just like java regex © 2012 SIB Tuesday, December 4, 2012
  • 70. BIND • Builds new Values – Closes the basic graph pattern SELECT ?p WHERE { { ?taxon a :Taxon . } BIND (?taxon AS ?p) } • Always declare before use. © 2012 SIB Tuesday, December 4, 2012
  • 71. © 2012 SIB Tuesday, December 4, 2012
  • 72. © 2012 SIB Tuesday, December 4, 2012
  • 73. BIND can assign any output © 2012 SIB Tuesday, December 4, 2012
  • 74. Aggregate functions • on select line • limited in number – count – sum – avg – min – max – groupConcat – sample © 2012 SIB Tuesday, December 4, 2012
  • 75. count © 2012 SIB Tuesday, December 4, 2012
  • 76. SAMPLE should give a random result back © 2012 SIB Tuesday, December 4, 2012
  • 77. Follow the path © 2012 SIB Tuesday, December 4, 2012
  • 78. Path queries © 2012 SIB Tuesday, December 4, 2012
  • 79. Finding a grand parent using normal joins © 2012 SIB Tuesday, December 4, 2012
  • 80. Finding a grandParent using a path query © 2012 SIB Tuesday, December 4, 2012
  • 81. | is OR for predicate © 2012 SIB Tuesday, December 4, 2012
  • 82. Same result with UNION © 2012 SIB Tuesday, December 4, 2012
  • 83. Finding any ancestor © 2012 SIB Tuesday, December 4, 2012
  • 84. Can use the variable in a normal join afterwards © 2012 SIB Tuesday, December 4, 2012
  • 85. GROUP BY © 2012 SIB Tuesday, December 4, 2012
  • 86. GROUP BY • Needed for aggregate values • After closing the where clause – ... WHERE {?x ?y ?z} GROUP BY ?x © 2012 SIB Tuesday, December 4, 2012
  • 87. GROUP BY © 2012 SIB Tuesday, December 4, 2012
  • 88. HAVING I have carrot ! © 2012 SIB Tuesday, December 4, 2012
  • 89. HAVING • FILTER for aggregates • After the GROUP BY clause – ... GROUP BY ?x HAVING (count(?y) > 2) – ... GROUP BY ?x HAVING (min(?y) = 2) – etc... © 2012 SIB Tuesday, December 4, 2012
  • 90. HAVING © 2012 SIB Tuesday, December 4, 2012
  • 91. LIMITS & OFFSET © 2012 SIB Tuesday, December 4, 2012
  • 92. LIMIT and OFFSET • OFFSET is skip first results • LIMIT return no more than x results © 2012 SIB Tuesday, December 4, 2012
  • 93. ORDER © 2012 SIB Tuesday, December 4, 2012
  • 94. © 2012 SIB Tuesday, December 4, 2012
  • 95. © 2012 SIB Tuesday, December 4, 2012
  • 96. © 2012 SIB Tuesday, December 4, 2012
  • 97. VALUES • Super BIND • Provide inline data © 2012 SIB Tuesday, December 4, 2012
  • 98. © 2012 SIB Tuesday, December 4, 2012
  • 99. Examples • Parameter lists are between () VALUES (?annotation) { (core:Disease_Annotation) Text (core:Disulfide_Bond_Annotation) } © 2012 SIB Tuesday, December 4, 2012
  • 100. Examples • Undef means no value at – all not bound VALUES (?annotation ?begin) { (core:Disease_Annotation UNDEF) Text (core:Disulfide_Bond_Annotation 2) } © 2012 SIB Tuesday, December 4, 2012
  • 101. VALUES • After declaring a set of values you can use them in your query. SELECT ?comment WHERE { VALUES (?annotation ?begin) { (core:Disease_Annotation UNDEF) (core:Disulfide_Bond_Annotation 2) } ?annotation rdfs:comment ?comment . } © 2012 SIB Tuesday, December 4, 2012
  • 102. SERVICE: Using other sparql endpoints • SERVICE<URL of other endpoint> – Runs a sub query on the other endpoint and merges it back into your query. © 2012 SIB Tuesday, December 4, 2012
  • 103. “Life is better with friends who understand you.” © 2012 SIB Tuesday, December 4, 2012
  • 104. SERVICE © 2012 SIB Tuesday, December 4, 2012
  • 105. SERVICE • Useful – Quick experimenting with combing multiple datasources – Quick for queries where not to much data is send to the remote point • Slow – When you ask for to much data – Remote endpoint not resourced for your questions © 2012 SIB Tuesday, December 4, 2012
  • 106. Lets make some triples © 2012 SIB Tuesday, December 4, 2012
  • 107. Construction • CONSTRUCT – New triples • downloads RDF – Does not update store © 2012 SIB Tuesday, December 4, 2012
  • 108. New triples © 2012 SIB Tuesday, December 4, 2012
  • 109. Constructing an owl:sameAs between two URI © 2012 SIB Tuesday, December 4, 2012
  • 110. INSERT • Adds data – like construct © 2012 SIB Tuesday, December 4, 2012
  • 111. Modifies data © 2012 SIB Tuesday, December 4, 2012
  • 112. DELETE • Removes data – Triples matching are removed from the data – Triples can be bound using where clause © 2012 SIB Tuesday, December 4, 2012
  • 113. DELETE © 2012 SIB Tuesday, December 4, 2012
  • 114. DELETE INSERT • Single atomic operation. © 2012 SIB Tuesday, December 4, 2012
  • 115. Atomic operation © 2012 SIB Tuesday, December 4, 2012
  • 116. I’m exhausted now © 2012 SIB Tuesday, December 4, 2012