19
Exploration of a Data Landscape using a Collaborative Linked Data Framework Laurent Alquier, Project Lead, Informatics CoE

Exploration of a Data Landscape using a Collaborative Linked Data Framework

Embed Size (px)

DESCRIPTION

In Proceedings of the The Future of the Web for Collaborative Science, WWW2010 (Raleigh, North Carolina, April 26, 2010)

Citation preview

Page 1: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Exploration of a Data Landscape using a Collaborative Linked Data Framework

Laurent Alquier, Project Lead, Informatics CoE

Page 2: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Scientists are looking for answers to translational questions

Background images from Flickr - CC Share Alike 2.0

Basic Research

Prototype Design or Discovery

PreclinicalDevelopment

Clinical DevelopmentFDA Filing,

Approval & Launch Prep

Translational Research

Critical Path Research

Page 3: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Instead they research how to find and access data.

Which data source should I choose ? Can I access it ?Who should I talk to ?

Scientists want to do Science, not Data Management.

Which interfaces are available ?

Page 4: Exploration of a Data Landscape using a Collaborative Linked Data Framework

knowIT helps scientists and IT manage what they know about Information Systems.

Page 5: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Collaborative cataloging of data sources

Page 6: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Structured data inside wiki pages

Page 7: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Advantages of Semantic MediaWiki (SMW)

Wiki pages are subjects for Semantic annotations (triples : page – property – value)

MediaWiki knowledge management tools

Many ways to input and output content.

Page 8: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Provide a flexible integrative data layer

•Linked Data concepts can be used for flexible data integration of internal and external sources of disparate data

Enable scientists to answer novel translational questions

•Linked Data queries support diverse translational scientific questions

Linked Data Pilot for Neuroscience

Page 9: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Overview of the Linked Data Framework

RDFRDF CSVCSV XMLXML RDBMS

RDBMS DocsDocs

RDB2RDF mappingRDB2RDF mapping TMTM

J&JOntol.J&J

Ontol.Data

catalogData

catalog

Data browser &Visualization

OntologyCuration

J&JRDFJ&JRDF

SemanticWiki

SPARQLSPARQL

Page 10: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Reviewing W3C’s Translational Medicine Ontology (TMO) as a base for J&J Ontology

Page 11: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Data Source discovery•Provides framework with provenance information

Resource discovery•Extracts relationships between concepts across data sources

SPARQL Querying•Constructs and captures queries, parses results

Inferencing•Pulls pre-constructed rule sets hosted in server directory

C# API allows programmatic abstraction of….

Page 12: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Ask questions using federated queries

Page 13: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Integration with analytical tools

Page 14: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Improved enterprise search

Page 15: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Analysis of data sources content

Relfinder

Page 16: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Visualization of relationships between data sources

Page 17: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Next steps

Automation and integration with existing ontologies

Enable self-describing data sources

Dynamic, layered map of data landscape

Incorporate additional data sources

Drive broader awareness and adoption of the tool

Page 18: Exploration of a Data Landscape using a Collaborative Linked Data Framework

We would like to thank current and past contributors for their patience, ideas and support :

– Tim Schultz– Susie Stephens – Dimitris Agrafiotis– Rudi Verbeek– John Stong– Joe Ciervo– Keith McCormick

Acknowledgements

Page 19: Exploration of a Data Landscape using a Collaborative Linked Data Framework

Laurent Alquier

Software engineer, Project lead

Informatics CoE

[email protected]