SlideShare una empresa de Scribd logo
1 de 24
Descargar para leer sin conexión
The Web Observatory Extension: Facilitating Web
Science

Collaboration through Semantic Markup"
Dominic DiFranzo, John S. Erickson, Marie Joan Kristine T. Gloria,
Joanne S. Luciano, Deborah McGuinness, James Hendler
The Tetherless World Constellation &
Institute for Data Exploration and Applications
Rensselaer Polytechnic Institute, Troy, NY
Introduction
6
•  Web Science involves using and producing large amounts of
heterogeneous data about and from the web"
"
•  As we (Web Science researchers) strive to collaborate and work
together, we must find ways to share, link and reuse each other’s
data and tools."
"
•  To do this, we are striving to build “Web Observatories” – a
common infrastructure for enhancing this sharing, and to extend
it to also include tools, research project results(papers &
experiments), etc."
Tiropanis,T., Hall,W., Shadbolt, N., DeRoure, D., Contractor, N. and Hendler, J.,
TheWeb Science Observatory, IEEE Intelligent Systems, March/April, 2013.
Web Observatory Concept
WO Portal
Engaging communities with analytics
Publication of catalogues (schema.org)
Access with/without credentials
Searching and Indexing
Distributed Queries
Plugged in Datastores and App Servers
Harvesting
Dataset enrichment/curation
Dataset management
Provenance
Optimisation
WO Datastores
Hosting of analytic apps
Hosting of visualisation apps
Monitoring dependency on
datasets
Monitoring dependency on tools
Explicit links between
tools & datasets used
WO Apps
WO Portal
WO AppsWO Datastores
WO Portal
WO AppsWO Datastores
Links to resources in other
Web Observatories
Thanassis Tiropanis – University of Southampton
RPI Observatory Themes
Science Data Observatory Health & Life Sciences
Observatory
Open Government Observatory Social Spaces Observatory
Example:
Indian Election Twitter Dataset
Example:
Deep Carbon Obs. Datasets
Example:
Cancer Treatment Datasets
Example:
Int’l Open Govt Metadata
Data use (Social Spaces)
6
Data use (Open Govt Data)
6
Problem: putting these together across
laboratories (and fields)
6
Schema.org
6
•  An initiative launched by the leading search
engine providers to create and support a
common set of schemas for structured data
markup on Web pages.
•  These vocabularies enable the metadata to be
more machine readable, allowing for better
search, discover and display this information
Example RDFA Lite
6
<div http://schema.org/ >
<h1 >Avatar</h1>
<span>Director:
<span ">James Cameron</span>
</span>
<span >Science fiction</span>
<a href="../movies/avatar-theatrical-trailer.html"
>Trailer</a>
</div>
Schema.org in action
6
Schema.org in action
6
http://datasets.schema-labs.appspot.com/
Goals
6
•  Describe Web Observatories
•  Interconnect Web Observatories	

•  Facilitate discovery of tools, datasets,
and projects for researchers
Overview
6
Web
Observatory	

Project	

Dataset	

 Tool
Without Schema.org:	

Search
6
Web
Observatory	

Project	

Dataset	

 Tool	

Web
Observatory	

Project	

Dataset	

 Tool	

Web
Observatory	

Project	

Dataset	

 Tool	

Search	

With Schema.org:
Schema.org vocabulary extension
Web Observatory Class"
Schema.org vocabulary extension
Web Observatory Project"
Schema.org vocabulary extension
Web Observatory Dataset"
Schema.org vocabulary extension
Web Observatory Tool"
Schema.org vocabulary demo
Schema.org vocabulary demo
Social Spaces
WO	

WO
Project:	

Cosmic	

WO
Project:	

First
Responder
Schema.org vocabulary demo
Health/Life
Science WO	

WO
Project:	

Mobile
Health	

WO
Project:	

Health
Data
Challenge	

WO Dataset:	

Health Data
Challenge
Conclusions
Science Data Observatory
Social Spaces Observatory
•  Integrating data on the Web, in general, is
growing
•  Schema.org is a data embedding model
showing great success
•  Schema.org/Dataset became official April
2013
•  Search Engine tools are increasingly making
used of embedded markup
•  Web Observatory extension aimed at use in
(Web) scientific community
•  Also being used by AGU and DCO scientific
Future Work
Science Data Observatory
Social Spaces Observatory
•  Further extend the vocabulary to fit more web
observatories
•  Subcommunities can extend terminologies
•  Build better tools to use and embed
schema.org vocabulary into web observatories
•  Integrate into “telescope” toolbox
•  Build tools to make use of schema.org WO
metadata (search engines, crawlers, etc)
•  Google Domain Search underway

Más contenido relacionado

La actualidad más candente

Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.
Alexandru Iosup
 
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
Alexandru Iosup
 

La actualidad más candente (20)

The Science of Data Science
The Science of Data Science The Science of Data Science
The Science of Data Science
 
Social Machines: The coming collision of Artificial Intelligence, Social Netw...
Social Machines: The coming collision of Artificial Intelligence, Social Netw...Social Machines: The coming collision of Artificial Intelligence, Social Netw...
Social Machines: The coming collision of Artificial Intelligence, Social Netw...
 
KR in the age of Deep Learning
KR in the age of Deep LearningKR in the age of Deep Learning
KR in the age of Deep Learning
 
Digital Archiving, The Semantic Web, and Modern AI
Digital Archiving, The Semantic Web, and Modern AIDigital Archiving, The Semantic Web, and Modern AI
Digital Archiving, The Semantic Web, and Modern AI
 
SSSW2015 Data Workflow Tutorial
SSSW2015 Data Workflow TutorialSSSW2015 Data Workflow Tutorial
SSSW2015 Data Workflow Tutorial
 
Big Data Talent in Academic and Industry R&D
Big Data Talent in Academic and Industry R&DBig Data Talent in Academic and Industry R&D
Big Data Talent in Academic and Industry R&D
 
MMDS 2014: Myria (and Scalable Graph Clustering with RelaxMap)
MMDS 2014: Myria (and Scalable Graph Clustering with RelaxMap)MMDS 2014: Myria (and Scalable Graph Clustering with RelaxMap)
MMDS 2014: Myria (and Scalable Graph Clustering with RelaxMap)
 
The Other HPC: High Productivity Computing
The Other HPC: High Productivity ComputingThe Other HPC: High Productivity Computing
The Other HPC: High Productivity Computing
 
The Web of Data: do we actually understand what we built?
The Web of Data: do we actually understand what we built?The Web of Data: do we actually understand what we built?
The Web of Data: do we actually understand what we built?
 
HyperMembrane Structures for Open Source Cognitive Computing
HyperMembrane Structures for Open Source Cognitive ComputingHyperMembrane Structures for Open Source Cognitive Computing
HyperMembrane Structures for Open Source Cognitive Computing
 
Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.
 
Knowledge discoverylaurahollink
Knowledge discoverylaurahollinkKnowledge discoverylaurahollink
Knowledge discoverylaurahollink
 
DATA CENTRIC EDUCATION & LEARNING
 DATA CENTRIC EDUCATION & LEARNING DATA CENTRIC EDUCATION & LEARNING
DATA CENTRIC EDUCATION & LEARNING
 
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
Big Data in the Cloud: Enabling the Fourth Paradigm by Matching SMEs with Dat...
 
Data Culture Series - Keynote & Panel - Birmingham - 8th April 2015
Data Culture Series  - Keynote & Panel - Birmingham - 8th April 2015Data Culture Series  - Keynote & Panel - Birmingham - 8th April 2015
Data Culture Series - Keynote & Panel - Birmingham - 8th April 2015
 
An Ecosystem for Linked Humanities Data
An Ecosystem for Linked Humanities DataAn Ecosystem for Linked Humanities Data
An Ecosystem for Linked Humanities Data
 
Federating Cultures: Human Knowledge, Teachers, Students
Federating Cultures: Human Knowledge, Teachers, StudentsFederating Cultures: Human Knowledge, Teachers, Students
Federating Cultures: Human Knowledge, Teachers, Students
 
Keynote - An overview on Big Data & Data Science - Dr Gregory Piatetsky-Shapiro
Keynote -  An overview on Big Data & Data Science - Dr Gregory Piatetsky-ShapiroKeynote -  An overview on Big Data & Data Science - Dr Gregory Piatetsky-Shapiro
Keynote - An overview on Big Data & Data Science - Dr Gregory Piatetsky-Shapiro
 
Linked data presentation for libraries (COMO)
Linked data presentation for libraries (COMO)Linked data presentation for libraries (COMO)
Linked data presentation for libraries (COMO)
 
GrenchMark at CCGrid, May 2006.
GrenchMark at CCGrid, May 2006.GrenchMark at CCGrid, May 2006.
GrenchMark at CCGrid, May 2006.
 

Destacado (7)

Workshop SEO Avanzado
Workshop SEO AvanzadoWorkshop SEO Avanzado
Workshop SEO Avanzado
 
The Semantic Web: RPI ITWS Capstone (Fall 2012)
The Semantic Web: RPI ITWS Capstone (Fall 2012)The Semantic Web: RPI ITWS Capstone (Fall 2012)
The Semantic Web: RPI ITWS Capstone (Fall 2012)
 
ITWS Capstone (RPI, Fall 2013)
ITWS Capstone (RPI, Fall 2013)ITWS Capstone (RPI, Fall 2013)
ITWS Capstone (RPI, Fall 2013)
 
ITWS 4310: Building and Consuming the Web of Data (Fall 2013)
ITWS 4310: Building and Consuming the Web of Data (Fall 2013)ITWS 4310: Building and Consuming the Web of Data (Fall 2013)
ITWS 4310: Building and Consuming the Web of Data (Fall 2013)
 
First they have to find it: Getting Open Government Data Discovered and Used
First they have to find it: Getting Open Government Data Discovered and UsedFirst they have to find it: Getting Open Government Data Discovered and Used
First they have to find it: Getting Open Government Data Discovered and Used
 
ITWS Capstone Lecture (Spring 2013)
ITWS Capstone Lecture (Spring 2013)ITWS Capstone Lecture (Spring 2013)
ITWS Capstone Lecture (Spring 2013)
 
Engineering a Semantic Web: ITWS Capstone Lecture (Spring 2014)
Engineering a Semantic Web: ITWS Capstone Lecture (Spring 2014)Engineering a Semantic Web: ITWS Capstone Lecture (Spring 2014)
Engineering a Semantic Web: ITWS Capstone Lecture (Spring 2014)
 

Similar a Facilitating Web Science Collaboration through Semantic Markup

Mendeley Open Repositories 2011 Paper
Mendeley Open Repositories 2011 PaperMendeley Open Repositories 2011 Paper
Mendeley Open Repositories 2011 Paper
William Gunn
 
DataViz & Future of Research - LDirks SXSWiMar12
DataViz & Future of Research - LDirks SXSWiMar12DataViz & Future of Research - LDirks SXSWiMar12
DataViz & Future of Research - LDirks SXSWiMar12
Lee Dirks
 
Being FAIR: FAIR data and model management SSBSS 2017 Summer School
Being FAIR:  FAIR data and model management SSBSS 2017 Summer SchoolBeing FAIR:  FAIR data and model management SSBSS 2017 Summer School
Being FAIR: FAIR data and model management SSBSS 2017 Summer School
Carole Goble
 
Semantic.edu, an introduction
Semantic.edu, an introductionSemantic.edu, an introduction
Semantic.edu, an introduction
Bryan Alexander
 

Similar a Facilitating Web Science Collaboration through Semantic Markup (20)

Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...
 
Networked Science, And Integrating with Dataverse
Networked Science, And Integrating with DataverseNetworked Science, And Integrating with Dataverse
Networked Science, And Integrating with Dataverse
 
Improving Data Management Capacity in the Mekong Basin Using SEAD
Improving Data Management Capacity in the Mekong Basin Using SEADImproving Data Management Capacity in the Mekong Basin Using SEAD
Improving Data Management Capacity in the Mekong Basin Using SEAD
 
Optimising Scientific Knowledge Transfer: How Collective Sensemaking Can Ena...
Optimising Scientific Knowledge Transfer: How Collective Sensemaking Can Ena...Optimising Scientific Knowledge Transfer: How Collective Sensemaking Can Ena...
Optimising Scientific Knowledge Transfer: How Collective Sensemaking Can Ena...
 
Linked Open Data_mlanet13
Linked Open Data_mlanet13Linked Open Data_mlanet13
Linked Open Data_mlanet13
 
Big Data and the Future of Publishing
Big Data and the Future of PublishingBig Data and the Future of Publishing
Big Data and the Future of Publishing
 
Mendeley Open Repositories 2011 Paper
Mendeley Open Repositories 2011 PaperMendeley Open Repositories 2011 Paper
Mendeley Open Repositories 2011 Paper
 
MUDROD - Mining and Utilizing Dataset Relevancy from Oceanographic Dataset Me...
MUDROD - Mining and Utilizing Dataset Relevancy from Oceanographic Dataset Me...MUDROD - Mining and Utilizing Dataset Relevancy from Oceanographic Dataset Me...
MUDROD - Mining and Utilizing Dataset Relevancy from Oceanographic Dataset Me...
 
from local/regional OER Silos towards an OER Global Dataspace
from local/regional OER Silos towards an OER Global Dataspacefrom local/regional OER Silos towards an OER Global Dataspace
from local/regional OER Silos towards an OER Global Dataspace
 
A Clean Slate?
A Clean Slate?A Clean Slate?
A Clean Slate?
 
DataViz & Future of Research - LDirks SXSWiMar12
DataViz & Future of Research - LDirks SXSWiMar12DataViz & Future of Research - LDirks SXSWiMar12
DataViz & Future of Research - LDirks SXSWiMar12
 
Being FAIR: FAIR data and model management SSBSS 2017 Summer School
Being FAIR:  FAIR data and model management SSBSS 2017 Summer SchoolBeing FAIR:  FAIR data and model management SSBSS 2017 Summer School
Being FAIR: FAIR data and model management SSBSS 2017 Summer School
 
Breed data scientists_ A Presentation.pptx
Breed data scientists_ A Presentation.pptxBreed data scientists_ A Presentation.pptx
Breed data scientists_ A Presentation.pptx
 
Benefits and practice of open science
Benefits and practice of open scienceBenefits and practice of open science
Benefits and practice of open science
 
Zudilova-Seinstra-Elsevier-data and the article of the future-nfdp13
Zudilova-Seinstra-Elsevier-data and the article of the future-nfdp13Zudilova-Seinstra-Elsevier-data and the article of the future-nfdp13
Zudilova-Seinstra-Elsevier-data and the article of the future-nfdp13
 
Linked dataresearch
Linked dataresearchLinked dataresearch
Linked dataresearch
 
E research attachment survey
E research attachment surveyE research attachment survey
E research attachment survey
 
Semantic.edu, an introduction
Semantic.edu, an introductionSemantic.edu, an introduction
Semantic.edu, an introduction
 
The Web of data and web data commons
The Web of data and web data commonsThe Web of data and web data commons
The Web of data and web data commons
 
Introduction to APIs and Linked Data
Introduction to APIs and Linked DataIntroduction to APIs and Linked Data
Introduction to APIs and Linked Data
 

Más de James Hendler

Más de James Hendler (20)

Knowing what AI Systems Don't know and Why it matters
Knowing what AI  Systems Don't know and Why it mattersKnowing what AI  Systems Don't know and Why it matters
Knowing what AI Systems Don't know and Why it matters
 
Exploring the Boundaries of Artificial Intelligence (or "Modern AI")
Exploring the Boundaries of Artificial Intelligence (or "Modern AI")Exploring the Boundaries of Artificial Intelligence (or "Modern AI")
Exploring the Boundaries of Artificial Intelligence (or "Modern AI")
 
Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)Tragedy of the Data Commons (ODSC-East, 2021)
Tragedy of the Data Commons (ODSC-East, 2021)
 
Tragedy of the (Data) Commons
Tragedy of the (Data) CommonsTragedy of the (Data) Commons
Tragedy of the (Data) Commons
 
Knowledge Graph Semantics/Interoperability
Knowledge Graph Semantics/InteroperabilityKnowledge Graph Semantics/Interoperability
Knowledge Graph Semantics/Interoperability
 
The Future(s) of the World Wide Web
The Future(s) of the World Wide WebThe Future(s) of the World Wide Web
The Future(s) of the World Wide Web
 
Enhancing Precision Wellness with Personal Health Knowledge Graphs
Enhancing Precision Wellness with Personal Health Knowledge Graphs Enhancing Precision Wellness with Personal Health Knowledge Graphs
Enhancing Precision Wellness with Personal Health Knowledge Graphs
 
The Future of AI: Going Beyond Deep Learning, Watson, and the Semantic Web
The Future of AI: Going BeyondDeep Learning, Watson, and the Semantic WebThe Future of AI: Going BeyondDeep Learning, Watson, and the Semantic Web
The Future of AI: Going Beyond Deep Learning, Watson, and the Semantic Web
 
Capacity Building: Data Science in the University At Rensselaer Polytechnic ...
Capacity Building: Data Science in the University  At Rensselaer Polytechnic ...Capacity Building: Data Science in the University  At Rensselaer Polytechnic ...
Capacity Building: Data Science in the University At Rensselaer Polytechnic ...
 
Enhancing Precision Wellness with Knowledge Graphs and Semantic Analytics: O...
Enhancing Precision Wellness with  Knowledge Graphs and Semantic Analytics: O...Enhancing Precision Wellness with  Knowledge Graphs and Semantic Analytics: O...
Enhancing Precision Wellness with Knowledge Graphs and Semantic Analytics: O...
 
Social Machines - 2017 Update (University of Iowa)
Social Machines - 2017 Update (University of Iowa)Social Machines - 2017 Update (University of Iowa)
Social Machines - 2017 Update (University of Iowa)
 
Knowledge Representation in the Age of Deep Learning, Watson, and the Semanti...
Knowledge Representation in the Age of Deep Learning, Watson, and the Semanti...Knowledge Representation in the Age of Deep Learning, Watson, and the Semanti...
Knowledge Representation in the Age of Deep Learning, Watson, and the Semanti...
 
Artificial Intelligence: Existential Threat or Our Best Hope for the Future?
Artificial Intelligence: Existential Threat or Our Best Hope for the Future?Artificial Intelligence: Existential Threat or Our Best Hope for the Future?
Artificial Intelligence: Existential Threat or Our Best Hope for the Future?
 
Watson: An Academic's Perspective
Watson: An Academic's PerspectiveWatson: An Academic's Perspective
Watson: An Academic's Perspective
 
Big Data and Computer Science Education
Big Data and Computer Science EducationBig Data and Computer Science Education
Big Data and Computer Science Education
 
Why Watson Won: A cognitive perspective
Why Watson Won: A cognitive perspectiveWhy Watson Won: A cognitive perspective
Why Watson Won: A cognitive perspective
 
The Rensselaer IDEA: Data Exploration
The Rensselaer IDEA: Data Exploration The Rensselaer IDEA: Data Exploration
The Rensselaer IDEA: Data Exploration
 
Watson at RPI - Summer 2013
Watson at RPI - Summer 2013Watson at RPI - Summer 2013
Watson at RPI - Summer 2013
 
The Semantic Web: It's for Real
The Semantic Web: It's for RealThe Semantic Web: It's for Real
The Semantic Web: It's for Real
 
Future of the World WIde Web (India)
Future of the World WIde Web (India)Future of the World WIde Web (India)
Future of the World WIde Web (India)
 

Último

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 

Último (20)

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
 
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
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
[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
 
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
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
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...
 
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
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
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
 

Facilitating Web Science Collaboration through Semantic Markup

  • 1. The Web Observatory Extension: Facilitating Web Science
 Collaboration through Semantic Markup" Dominic DiFranzo, John S. Erickson, Marie Joan Kristine T. Gloria, Joanne S. Luciano, Deborah McGuinness, James Hendler The Tetherless World Constellation & Institute for Data Exploration and Applications Rensselaer Polytechnic Institute, Troy, NY
  • 2. Introduction 6 •  Web Science involves using and producing large amounts of heterogeneous data about and from the web" " •  As we (Web Science researchers) strive to collaborate and work together, we must find ways to share, link and reuse each other’s data and tools." " •  To do this, we are striving to build “Web Observatories” – a common infrastructure for enhancing this sharing, and to extend it to also include tools, research project results(papers & experiments), etc." Tiropanis,T., Hall,W., Shadbolt, N., DeRoure, D., Contractor, N. and Hendler, J., TheWeb Science Observatory, IEEE Intelligent Systems, March/April, 2013.
  • 3. Web Observatory Concept WO Portal Engaging communities with analytics Publication of catalogues (schema.org) Access with/without credentials Searching and Indexing Distributed Queries Plugged in Datastores and App Servers Harvesting Dataset enrichment/curation Dataset management Provenance Optimisation WO Datastores Hosting of analytic apps Hosting of visualisation apps Monitoring dependency on datasets Monitoring dependency on tools Explicit links between tools & datasets used WO Apps WO Portal WO AppsWO Datastores WO Portal WO AppsWO Datastores Links to resources in other Web Observatories Thanassis Tiropanis – University of Southampton
  • 4. RPI Observatory Themes Science Data Observatory Health & Life Sciences Observatory Open Government Observatory Social Spaces Observatory Example: Indian Election Twitter Dataset Example: Deep Carbon Obs. Datasets Example: Cancer Treatment Datasets Example: Int’l Open Govt Metadata
  • 5. Data use (Social Spaces) 6
  • 6. Data use (Open Govt Data) 6
  • 7. Problem: putting these together across laboratories (and fields) 6
  • 8. Schema.org 6 •  An initiative launched by the leading search engine providers to create and support a common set of schemas for structured data markup on Web pages. •  These vocabularies enable the metadata to be more machine readable, allowing for better search, discover and display this information
  • 9. Example RDFA Lite 6 <div http://schema.org/ > <h1 >Avatar</h1> <span>Director: <span ">James Cameron</span> </span> <span >Science fiction</span> <a href="../movies/avatar-theatrical-trailer.html" >Trailer</a> </div>
  • 12. Goals 6 •  Describe Web Observatories •  Interconnect Web Observatories •  Facilitate discovery of tools, datasets, and projects for researchers
  • 17. Schema.org vocabulary extension Web Observatory Project"
  • 18. Schema.org vocabulary extension Web Observatory Dataset"
  • 21. Schema.org vocabulary demo Social Spaces WO WO Project: Cosmic WO Project: First Responder
  • 22. Schema.org vocabulary demo Health/Life Science WO WO Project: Mobile Health WO Project: Health Data Challenge WO Dataset: Health Data Challenge
  • 23. Conclusions Science Data Observatory Social Spaces Observatory •  Integrating data on the Web, in general, is growing •  Schema.org is a data embedding model showing great success •  Schema.org/Dataset became official April 2013 •  Search Engine tools are increasingly making used of embedded markup •  Web Observatory extension aimed at use in (Web) scientific community •  Also being used by AGU and DCO scientific
  • 24. Future Work Science Data Observatory Social Spaces Observatory •  Further extend the vocabulary to fit more web observatories •  Subcommunities can extend terminologies •  Build better tools to use and embed schema.org vocabulary into web observatories •  Integrate into “telescope” toolbox •  Build tools to make use of schema.org WO metadata (search engines, crawlers, etc) •  Google Domain Search underway