SlideShare une entreprise Scribd logo
1  sur  34
Real Time Semantic
 Warehousing: Sindice.com
technology for the enterprise
 Giovanni Tummarello, Ph.D
 Data Intensive Infrastructure UNIT -
 DERI.ie

 CEO SindiceTech
How we started : Sindice.com




 80 Billions triple, 500,000,000 RDF Graphs, 5 TB of data.
The Sindice Suite powers Sindice.com. Online with 99,9%+
Semantic Sandboxes on: Sindice.com




 Data Sandboxes in Sindice.com – Powered by CloudSpaces
And then we met people asking
      can you do it for us
Example story (Pharmaceutical company0
To stay competitive, Pharmaceutical companies need to leverage all the data available from
inside sources as well as from the increasingly many public HCLS data sources available. Due to
the diversity of this data with respect to nature, formats, quality, there are complex integration
issues. Traditional data warehousing technology require big upfront thinking and is handled
within a company in the “go via the IT department” approach. This does not meet the need of
data scientists who are the only ones that can do the complex cross-use case thinking required.
Via Real Time Semantic Data Warehousing (RETIS) data scientist expect to get:

•   The ability to speed up “In silico” scientific workflows (interrelation of diverse large
    datasets) by orders of magnitude by relying on a data warehousing approach.
•   The ability to create large scale “data maps” or “aggregated views” which would allow
    researchers to see “trends” and gather insights at high level which would not be possible by
    data accessed via single lookups.
•   The ability to receive recommendations and suggestions for new data connections based on
    an ever evolving ecosystem of available experimental datasets.
•   Provide their R&D departments with superior tools for investigating their internal
    knowledge; search engines and data browsing tools which provide unified views of multiple,
    evolving, live datasets without leakage of specific “queries” to the outside world which would
    reveal internal research trends
•   The ability to leverage the ever increasing body of public, crowd curated open data

5 of 16
Linked Data clouds for the Enterprise

  – Strategic knowledge spaces, where new
    databases can be added and “leveraged” with an
    unprecedented ease
  – Integration “Pay as you go” : explore now, fine
    tune later.
  – Its BigData (Cluster+Clouds) meets RDF and
    Semantic Technologies
Sindice.com
Because you need Semantic SandBoxes
A Dataspace Template




Semantic Web
               A typical implementation template.
Data
               Dataspaces own:
               • Resources
               • Services
               • Datasets for others to reuse
Dataspace Composition




   Scalable cascading semantic ‘Dataspaces”
   • Resources allocated in public/private clouds
   • Allow to get Sindice Data and mix it/ process it for private purposes


10 of 16
Cloud powered!
<dataspace id= “iphonedataspace”>

<dependencies>
  http://ecommerce01.dataspace.sindice.net/</dataspace>
  http://price01.dataspace.sindice.net/
</dependencies>

<resources>
   <mysql name=“sql”>
    <hbase size=“10g”>
    <siren name=“index”>
    <triplestore name=“sparql” kind=“virtuoso” />
 </resources>

<retention> (see later)
<update-rate>1D</update-rate>
<timeout>1D</timeout>
</retention>
</dataspace>



    11 of 16
Scale is only 1 dimension




Multiple dimensions of WeD data integration
• RDF tool stack  flexibility
• Cluster scalable processing  scalability
• “Cloud” Pipelines  dynamicity
Full Json Like Search.
         On Solr.
All operators supported.
What is SIREn ?

• Plugin to Solr
• Built for searching and operating on
  semistructured data and relational
  datastructures
SIREn: Semantic IR Engine

• Extension to Enterprise Search Engine Solr
• Semantic, full-text, incremental updates,
  distributed search
                             Semantic
                                              SIREn
                             Databases




                                  Constant time
Limitations of Apache Solr

• Not efficient with highly heterogeneous
  structured data sources
  – Limitation on the number of attributes:
     Dictionary size explosion
Dictionary Size Explosion

        Record 1
label      Renaud Delbru

name       Renaud Delbru
Dictionary Size Explosion
                                                          Dictionary
                                                       label:renaud
                  Record 1
    label            Renaud Delbru                     label:delbru

    name             Renaud Delbru                     name:renaud

                                                       name:delbru



    Dictionary construction
           Concatenation of attribute name and term
           N * M complexity (worst case)
    2 attributes * 2 terms = 4 dictionary entries
    100K attributes * 1B terms = 100B entries
Limitations of Apache Solr

• Not efficient with highly heterogeneous
  structured data sources
  – Limitation on the number of attributes:
     Dictionary size explosion
     Query clause explosion when searching across all
      attributes
Limitations of Apache Solr

• Not efficient with highly heterogeneous
  structured data sources
  – Limitation on the number of attributes:
     Dictionary size explosion
     Query clause explosion when searching across all
      attributes
• Limited support for structured query
  – Multi-valued attributes
Multi-valued attributes
  • No support in Solr for "all words must match
    in the same value of a multi-valued field".
  • A field value is a bag of words
        – No distinction between multiple values


              Record 1                         Record 2
label     man's best     pooch    label   man's worst     friend to no one
          friend                          enemy
Multi-valued attributes
  • No support in Solr for "all words must match
    in the same value of a multi-valued field".
  • A field value is a bag of words
        – No distinction between multiple values
  • Query example
        – label : man’s friend
        – Solr returns Record 1 & 2 as results

               Record 1                           Record 2

label      man's best friend pooch   label   man's worst enemy friend to no one
Limitations of Apache Solr

• Not efficient with highly heterogeneous
  structured data sources
  – Limitation on the number of attributes:
     Dictionary size explosion
     Query clause explosion when searching across all
      attributes
• Limited support for structured query
  – Multi-valued attributes
  – No full-text search on attribute names
Full-text search on attribute names
• No support in Solr for “keyword search in
  attribute names".
• Query example
       – (name OR label) = “Renaud Delbru”
       – Solr is unable to find the records without the exact
         attribute name
             Record 1                           Record 2
rdfs:label      Renaud Delbru       foaf:name      Renaud Delbru


             Record 3                           Record 4
sioc:name       Renaud Delbru       full_name      Renaud Delbru
Limitations of Apache Solr
• Not efficient with highly heterogeneous
  structured data sources
  – Limitation on the number of attributes:
     Dictionary size explosion
     Query clause explosion when searching across all
      attributes
• Limited support for structured query
  – Multi-valued attributes
  – No full-text search on attribute names
  – No 1:N relationship materialisation
Relationship materialization

• Its Json like indexing and searching




• Materialize the relationships between your
  entities and others.
Some numbers: Siren on Sindice

         Data Collection                      Settings
 500M web data documents (RDF,    Cluster of 4 nodes
  RDFa, Microformat, etc.)            2 nodes for indexing
 200K datasets                       2 nodes for querying
 50B triples                      Replication


     Indexing Performance                     Services
 Full index construction takes    Keyword and structured queries
  approx 24 hours                  Dataset search
 436K triples / second            >> 99% uptime
Large scale RDF ‘Summaries”
Introducing large scale RDF ‘Summaries”

We do it for:
• Data exploration
  – How to find datasets about movies ?
• Assisted SPARQL Query Editor
  – What is the data structure ?
• Dataset Quality
  – How to differentiate relevant form irrelevant
    dataset ?
Large Scale RDF summaries

Class Level
                             12M relationships




                              10B relationships
Sindice Analytics Widget Demo

• http://test01.sindice.net:9001/sindice-stats-
  webapp/

• http://test01.sindice.net/szydan/dataset-
  view/dataset/default/www.bbc.co.uk
Relational Faceted Browsing. At speed of light




                                   Patent Pending
SparQL is awesome.
And now your guys can actually use it.
Thank you




              Sindice.com team April 2012

With the contribution of

Contenu connexe

Tendances

Contributing to the Smart City Through Linked Library Data
Contributing to the Smart City Through Linked Library DataContributing to the Smart City Through Linked Library Data
Contributing to the Smart City Through Linked Library DataMarcia Zeng
 
AAT LOD Microthesauri
AAT LOD MicrothesauriAAT LOD Microthesauri
AAT LOD MicrothesauriMarcia Zeng
 
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...Piloting Linked Data to Connect Library and Archive Resources to the New Worl...
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...Laura Akerman
 
Semantic Web Austin Yahoo
Semantic Web Austin YahooSemantic Web Austin Yahoo
Semantic Web Austin YahooPeter Mika
 
Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Kai Eckert
 
It's 2017, and I still want to sell you a graph database
It's 2017, and I still want to sell you a graph databaseIt's 2017, and I still want to sell you a graph database
It's 2017, and I still want to sell you a graph databaseSwanand Pagnis
 
2011 and still bruteforcing - OWASP Spain
2011 and still bruteforcing - OWASP Spain2011 and still bruteforcing - OWASP Spain
2011 and still bruteforcing - OWASP SpainChristian Martorella
 
An introduction to Semantic Web and Linked Data
An introduction to Semantic Web and Linked DataAn introduction to Semantic Web and Linked Data
An introduction to Semantic Web and Linked DataFabien Gandon
 
Usage of Linked Data: Introduction and Application Scenarios
Usage of Linked Data: Introduction and Application ScenariosUsage of Linked Data: Introduction and Application Scenarios
Usage of Linked Data: Introduction and Application ScenariosEUCLID project
 
SDA2013 Pundit: Creating, Exploring and Consuming Annotations
SDA2013 Pundit: Creating, Exploring and Consuming AnnotationsSDA2013 Pundit: Creating, Exploring and Consuming Annotations
SDA2013 Pundit: Creating, Exploring and Consuming AnnotationsMarco Grassi
 
Linked data HHS 2015
Linked data HHS 2015Linked data HHS 2015
Linked data HHS 2015Cason Snow
 
Introduction To RDF and RDFS
Introduction To RDF and RDFSIntroduction To RDF and RDFS
Introduction To RDF and RDFSNilesh Wagmare
 
An introduction to Semantic Web and Linked Data
An introduction to Semantic  Web and Linked DataAn introduction to Semantic  Web and Linked Data
An introduction to Semantic Web and Linked DataGabriela Agustini
 
Linked Data Usecases
Linked Data UsecasesLinked Data Usecases
Linked Data UsecasesMyungjin Lee
 
Challenges and opportunities in library discovery services gen
Challenges and opportunities in library discovery services genChallenges and opportunities in library discovery services gen
Challenges and opportunities in library discovery services genrobin fay
 

Tendances (19)

Contributing to the Smart City Through Linked Library Data
Contributing to the Smart City Through Linked Library DataContributing to the Smart City Through Linked Library Data
Contributing to the Smart City Through Linked Library Data
 
AAT LOD Microthesauri
AAT LOD MicrothesauriAAT LOD Microthesauri
AAT LOD Microthesauri
 
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...Piloting Linked Data to Connect Library and Archive Resources to the New Worl...
Piloting Linked Data to Connect Library and Archive Resources to the New Worl...
 
Semantic Web Austin Yahoo
Semantic Web Austin YahooSemantic Web Austin Yahoo
Semantic Web Austin Yahoo
 
ITWS Capstone Lecture (Spring 2013)
ITWS Capstone Lecture (Spring 2013)ITWS Capstone Lecture (Spring 2013)
ITWS Capstone Lecture (Spring 2013)
 
Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1Metadata Provenance Tutorial at SWIB 13, Part 1
Metadata Provenance Tutorial at SWIB 13, Part 1
 
It's 2017, and I still want to sell you a graph database
It's 2017, and I still want to sell you a graph databaseIt's 2017, and I still want to sell you a graph database
It's 2017, and I still want to sell you a graph database
 
2011 and still bruteforcing - OWASP Spain
2011 and still bruteforcing - OWASP Spain2011 and still bruteforcing - OWASP Spain
2011 and still bruteforcing - OWASP Spain
 
An introduction to Semantic Web and Linked Data
An introduction to Semantic Web and Linked DataAn introduction to Semantic Web and Linked Data
An introduction to Semantic Web and Linked Data
 
Usage of Linked Data: Introduction and Application Scenarios
Usage of Linked Data: Introduction and Application ScenariosUsage of Linked Data: Introduction and Application Scenarios
Usage of Linked Data: Introduction and Application Scenarios
 
Semantic Web
Semantic WebSemantic Web
Semantic Web
 
SDA2013 Pundit: Creating, Exploring and Consuming Annotations
SDA2013 Pundit: Creating, Exploring and Consuming AnnotationsSDA2013 Pundit: Creating, Exploring and Consuming Annotations
SDA2013 Pundit: Creating, Exploring and Consuming Annotations
 
Linked data HHS 2015
Linked data HHS 2015Linked data HHS 2015
Linked data HHS 2015
 
NISO/DCMI Webinar: International Bibliographic Standards, Linked Data, and th...
NISO/DCMI Webinar: International Bibliographic Standards, Linked Data, and th...NISO/DCMI Webinar: International Bibliographic Standards, Linked Data, and th...
NISO/DCMI Webinar: International Bibliographic Standards, Linked Data, and th...
 
Introduction To RDF and RDFS
Introduction To RDF and RDFSIntroduction To RDF and RDFS
Introduction To RDF and RDFS
 
XML Bible
XML BibleXML Bible
XML Bible
 
An introduction to Semantic Web and Linked Data
An introduction to Semantic  Web and Linked DataAn introduction to Semantic  Web and Linked Data
An introduction to Semantic Web and Linked Data
 
Linked Data Usecases
Linked Data UsecasesLinked Data Usecases
Linked Data Usecases
 
Challenges and opportunities in library discovery services gen
Challenges and opportunities in library discovery services genChallenges and opportunities in library discovery services gen
Challenges and opportunities in library discovery services gen
 

Similaire à Sindice warehousing meetup

ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2Martin Hepp
 
GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2guestecacad2
 
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...DuraSpace
 
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudOntotext
 
RDF Graph Data Management in Oracle Database and NoSQL Platforms
RDF Graph Data Management in Oracle Database and NoSQL PlatformsRDF Graph Data Management in Oracle Database and NoSQL Platforms
RDF Graph Data Management in Oracle Database and NoSQL PlatformsGraph-TA
 
Redis - Your Magical superfast database
Redis - Your Magical superfast databaseRedis - Your Magical superfast database
Redis - Your Magical superfast databasethe100rabh
 
Knowledge Representation, Semantic Web
Knowledge Representation, Semantic WebKnowledge Representation, Semantic Web
Knowledge Representation, Semantic WebSerendipity Seraph
 
RDFa: introduction, comparison with microdata and microformats and how to use it
RDFa: introduction, comparison with microdata and microformats and how to use itRDFa: introduction, comparison with microdata and microformats and how to use it
RDFa: introduction, comparison with microdata and microformats and how to use itJose Luis Lopez Pino
 
Introduction to Lucene & Solr and Usecases
Introduction to Lucene & Solr and UsecasesIntroduction to Lucene & Solr and Usecases
Introduction to Lucene & Solr and UsecasesRahul Jain
 
New Persistence Features in Spring Roo 1.1
New Persistence Features in Spring Roo 1.1New Persistence Features in Spring Roo 1.1
New Persistence Features in Spring Roo 1.1Stefan Schmidt
 
Finding Love with MongoDB
Finding Love with MongoDBFinding Love with MongoDB
Finding Love with MongoDBMongoDB
 
Case study of Rujhaan.com (A social news app )
Case study of Rujhaan.com (A social news app )Case study of Rujhaan.com (A social news app )
Case study of Rujhaan.com (A social news app )Rahul Jain
 
A review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebA review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebSimon Price
 
Duraspace Hot Topics Series 6: Metadata and Repository Services
Duraspace Hot Topics Series 6: Metadata and Repository ServicesDuraspace Hot Topics Series 6: Metadata and Repository Services
Duraspace Hot Topics Series 6: Metadata and Repository ServicesMatthew Critchlow
 
Exploring the Semantic Web
Exploring the Semantic WebExploring the Semantic Web
Exploring the Semantic WebRoberto García
 
SPARQL in the Semantic Web
SPARQL in the Semantic WebSPARQL in the Semantic Web
SPARQL in the Semantic WebJan Beeck
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jDebanjan Mahata
 

Similaire à Sindice warehousing meetup (20)

ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2ISWC GoodRelations Tutorial Part 2
ISWC GoodRelations Tutorial Part 2
 
GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2GoodRelations Tutorial Part 2
GoodRelations Tutorial Part 2
 
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...
10-15-13 “Metadata and Repository Services for Research Data Curation” Presen...
 
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
 
RDF Graph Data Management in Oracle Database and NoSQL Platforms
RDF Graph Data Management in Oracle Database and NoSQL PlatformsRDF Graph Data Management in Oracle Database and NoSQL Platforms
RDF Graph Data Management in Oracle Database and NoSQL Platforms
 
Redis - Your Magical superfast database
Redis - Your Magical superfast databaseRedis - Your Magical superfast database
Redis - Your Magical superfast database
 
Knowledge Representation, Semantic Web
Knowledge Representation, Semantic WebKnowledge Representation, Semantic Web
Knowledge Representation, Semantic Web
 
RDFa: introduction, comparison with microdata and microformats and how to use it
RDFa: introduction, comparison with microdata and microformats and how to use itRDFa: introduction, comparison with microdata and microformats and how to use it
RDFa: introduction, comparison with microdata and microformats and how to use it
 
Introduction to Lucene & Solr and Usecases
Introduction to Lucene & Solr and UsecasesIntroduction to Lucene & Solr and Usecases
Introduction to Lucene & Solr and Usecases
 
New Persistence Features in Spring Roo 1.1
New Persistence Features in Spring Roo 1.1New Persistence Features in Spring Roo 1.1
New Persistence Features in Spring Roo 1.1
 
Finding Love with MongoDB
Finding Love with MongoDBFinding Love with MongoDB
Finding Love with MongoDB
 
Case study of Rujhaan.com (A social news app )
Case study of Rujhaan.com (A social news app )Case study of Rujhaan.com (A social news app )
Case study of Rujhaan.com (A social news app )
 
Knowledge mangement
Knowledge mangementKnowledge mangement
Knowledge mangement
 
A review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic WebA review of the state of the art in Machine Learning on the Semantic Web
A review of the state of the art in Machine Learning on the Semantic Web
 
Introduction to RDF
Introduction to RDFIntroduction to RDF
Introduction to RDF
 
Duraspace Hot Topics Series 6: Metadata and Repository Services
Duraspace Hot Topics Series 6: Metadata and Repository ServicesDuraspace Hot Topics Series 6: Metadata and Repository Services
Duraspace Hot Topics Series 6: Metadata and Repository Services
 
Exploring the Semantic Web
Exploring the Semantic WebExploring the Semantic Web
Exploring the Semantic Web
 
Solr 8 interview
Solr 8 interview Solr 8 interview
Solr 8 interview
 
SPARQL in the Semantic Web
SPARQL in the Semantic WebSPARQL in the Semantic Web
SPARQL in the Semantic Web
 
An Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4jAn Introduction to NOSQL, Graph Databases and Neo4j
An Introduction to NOSQL, Graph Databases and Neo4j
 

Plus de Semantic Web San Diego

Plus de Semantic Web San Diego (8)

2013 april gruff webinar san diego copy
2013 april  gruff webinar   san diego copy2013 april  gruff webinar   san diego copy
2013 april gruff webinar san diego copy
 
The RDFa, seo wave
The RDFa, seo waveThe RDFa, seo wave
The RDFa, seo wave
 
Rdfa semtech2011
Rdfa semtech2011Rdfa semtech2011
Rdfa semtech2011
 
Semantic Web and the Web Of Commerce - pdf version
Semantic Web and the Web Of Commerce - pdf versionSemantic Web and the Web Of Commerce - pdf version
Semantic Web and the Web Of Commerce - pdf version
 
Simplifying semantics for biomedical applications
Simplifying semantics for biomedical applicationsSimplifying semantics for biomedical applications
Simplifying semantics for biomedical applications
 
Sd sem weboct252010
Sd sem weboct252010Sd sem weboct252010
Sd sem weboct252010
 
Bio Seminar 2010
Bio Seminar 2010Bio Seminar 2010
Bio Seminar 2010
 
San Diego 2010
San Diego 2010San Diego 2010
San Diego 2010
 

Dernier

IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationRadu Cotescu
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdfhans926745
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptxHampshireHUG
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...Neo4j
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CVKhem
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Scriptwesley chun
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUK Journal
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)wesley chun
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)Gabriella Davis
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024The Digital Insurer
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsJoaquim Jorge
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 

Dernier (20)

IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 

Sindice warehousing meetup

  • 1. Real Time Semantic Warehousing: Sindice.com technology for the enterprise Giovanni Tummarello, Ph.D Data Intensive Infrastructure UNIT - DERI.ie CEO SindiceTech
  • 2. How we started : Sindice.com 80 Billions triple, 500,000,000 RDF Graphs, 5 TB of data. The Sindice Suite powers Sindice.com. Online with 99,9%+
  • 3. Semantic Sandboxes on: Sindice.com Data Sandboxes in Sindice.com – Powered by CloudSpaces
  • 4. And then we met people asking can you do it for us
  • 5. Example story (Pharmaceutical company0 To stay competitive, Pharmaceutical companies need to leverage all the data available from inside sources as well as from the increasingly many public HCLS data sources available. Due to the diversity of this data with respect to nature, formats, quality, there are complex integration issues. Traditional data warehousing technology require big upfront thinking and is handled within a company in the “go via the IT department” approach. This does not meet the need of data scientists who are the only ones that can do the complex cross-use case thinking required. Via Real Time Semantic Data Warehousing (RETIS) data scientist expect to get: • The ability to speed up “In silico” scientific workflows (interrelation of diverse large datasets) by orders of magnitude by relying on a data warehousing approach. • The ability to create large scale “data maps” or “aggregated views” which would allow researchers to see “trends” and gather insights at high level which would not be possible by data accessed via single lookups. • The ability to receive recommendations and suggestions for new data connections based on an ever evolving ecosystem of available experimental datasets. • Provide their R&D departments with superior tools for investigating their internal knowledge; search engines and data browsing tools which provide unified views of multiple, evolving, live datasets without leakage of specific “queries” to the outside world which would reveal internal research trends • The ability to leverage the ever increasing body of public, crowd curated open data 5 of 16
  • 6. Linked Data clouds for the Enterprise – Strategic knowledge spaces, where new databases can be added and “leveraged” with an unprecedented ease – Integration “Pay as you go” : explore now, fine tune later. – Its BigData (Cluster+Clouds) meets RDF and Semantic Technologies
  • 8. Because you need Semantic SandBoxes
  • 9. A Dataspace Template Semantic Web A typical implementation template. Data Dataspaces own: • Resources • Services • Datasets for others to reuse
  • 10. Dataspace Composition Scalable cascading semantic ‘Dataspaces” • Resources allocated in public/private clouds • Allow to get Sindice Data and mix it/ process it for private purposes 10 of 16
  • 11. Cloud powered! <dataspace id= “iphonedataspace”> <dependencies> http://ecommerce01.dataspace.sindice.net/</dataspace> http://price01.dataspace.sindice.net/ </dependencies> <resources> <mysql name=“sql”> <hbase size=“10g”> <siren name=“index”> <triplestore name=“sparql” kind=“virtuoso” /> </resources> <retention> (see later) <update-rate>1D</update-rate> <timeout>1D</timeout> </retention> </dataspace> 11 of 16
  • 12. Scale is only 1 dimension Multiple dimensions of WeD data integration • RDF tool stack  flexibility • Cluster scalable processing  scalability • “Cloud” Pipelines  dynamicity
  • 13. Full Json Like Search. On Solr. All operators supported.
  • 14. What is SIREn ? • Plugin to Solr • Built for searching and operating on semistructured data and relational datastructures
  • 15. SIREn: Semantic IR Engine • Extension to Enterprise Search Engine Solr • Semantic, full-text, incremental updates, distributed search Semantic SIREn Databases Constant time
  • 16. Limitations of Apache Solr • Not efficient with highly heterogeneous structured data sources – Limitation on the number of attributes: Dictionary size explosion
  • 17. Dictionary Size Explosion Record 1 label Renaud Delbru name Renaud Delbru
  • 18. Dictionary Size Explosion Dictionary label:renaud Record 1 label Renaud Delbru label:delbru name Renaud Delbru name:renaud name:delbru  Dictionary construction  Concatenation of attribute name and term  N * M complexity (worst case)  2 attributes * 2 terms = 4 dictionary entries  100K attributes * 1B terms = 100B entries
  • 19. Limitations of Apache Solr • Not efficient with highly heterogeneous structured data sources – Limitation on the number of attributes: Dictionary size explosion Query clause explosion when searching across all attributes
  • 20. Limitations of Apache Solr • Not efficient with highly heterogeneous structured data sources – Limitation on the number of attributes: Dictionary size explosion Query clause explosion when searching across all attributes • Limited support for structured query – Multi-valued attributes
  • 21. Multi-valued attributes • No support in Solr for "all words must match in the same value of a multi-valued field". • A field value is a bag of words – No distinction between multiple values Record 1 Record 2 label man's best pooch label man's worst friend to no one friend enemy
  • 22. Multi-valued attributes • No support in Solr for "all words must match in the same value of a multi-valued field". • A field value is a bag of words – No distinction between multiple values • Query example – label : man’s friend – Solr returns Record 1 & 2 as results Record 1 Record 2 label man's best friend pooch label man's worst enemy friend to no one
  • 23. Limitations of Apache Solr • Not efficient with highly heterogeneous structured data sources – Limitation on the number of attributes: Dictionary size explosion Query clause explosion when searching across all attributes • Limited support for structured query – Multi-valued attributes – No full-text search on attribute names
  • 24. Full-text search on attribute names • No support in Solr for “keyword search in attribute names". • Query example – (name OR label) = “Renaud Delbru” – Solr is unable to find the records without the exact attribute name Record 1 Record 2 rdfs:label Renaud Delbru foaf:name Renaud Delbru Record 3 Record 4 sioc:name Renaud Delbru full_name Renaud Delbru
  • 25. Limitations of Apache Solr • Not efficient with highly heterogeneous structured data sources – Limitation on the number of attributes: Dictionary size explosion Query clause explosion when searching across all attributes • Limited support for structured query – Multi-valued attributes – No full-text search on attribute names – No 1:N relationship materialisation
  • 26. Relationship materialization • Its Json like indexing and searching • Materialize the relationships between your entities and others.
  • 27. Some numbers: Siren on Sindice Data Collection Settings  500M web data documents (RDF,  Cluster of 4 nodes RDFa, Microformat, etc.)  2 nodes for indexing  200K datasets  2 nodes for querying  50B triples  Replication Indexing Performance Services  Full index construction takes  Keyword and structured queries approx 24 hours  Dataset search  436K triples / second  >> 99% uptime
  • 28. Large scale RDF ‘Summaries”
  • 29. Introducing large scale RDF ‘Summaries” We do it for: • Data exploration – How to find datasets about movies ? • Assisted SPARQL Query Editor – What is the data structure ? • Dataset Quality – How to differentiate relevant form irrelevant dataset ?
  • 30. Large Scale RDF summaries Class Level 12M relationships 10B relationships
  • 31. Sindice Analytics Widget Demo • http://test01.sindice.net:9001/sindice-stats- webapp/ • http://test01.sindice.net/szydan/dataset- view/dataset/default/www.bbc.co.uk
  • 32. Relational Faceted Browsing. At speed of light Patent Pending
  • 33. SparQL is awesome. And now your guys can actually use it.
  • 34. Thank you Sindice.com team April 2012 With the contribution of

Notes de l'éditeur

  1. Search record (instead of entity)Record-centric indexing model
  2. Use Case: Let’s index the entire web of dataDoc/s, lucene in action, uptime, etc.
  3. How important a dataset is to my information need ?How to help users to browse and filter irrelevant datasets ?How can I measure the quality of a dataset ? Data quality, objective measuresTwo datasets can overlap, provide similar information, but one dataset is providing more fresh information, is updated more frequently.Concrete scenarios to test such assumptionsData Quality can be also useful for improving data acquisition, optimising resources to retrieve only top quality data
  4. - Define “relationships” when introducing the graph, BEFORE talking about the numbers
  5. Number of entities per classNumber of relations of a certain predicateOther metadata can be added to a class, e.g., other predicates used with the entities of that class