SlideShare uma empresa Scribd logo
1 de 19
Towards a computable standard for
Knowledge Graph Metadata
Michel Dumontier
WG1 Lead
COST Action Distributed Knowledge Graphs
W3C CG Knowledge Graph Construction
June 20, 2022
Metadata are information about data. They often provide a
description, context, provenance, and meaning to the data.
Informative metadata
Technical and administrative details
Descriptive metadata
Information to understand and interpret the data
Relational metadata
Captures the relationship between the data item and other
entities
Data: jpg image file
Informative metadata:
● Size: 155kb
● Date created: 2015-05-25
● Filetype: jpg
Descriptive metadata
● Title: MRI of the head
● Generated by: Ingenia 3.0T
Relational metadata
● About: EHR092376573
● Clinical Study: CT7812356
Image source: https://pixabay.com/photo-782457/
Metadata are information about data. They often provide a
description, context, provenance, and meaning to the data.
Metadata play a key role in finding, understanding, and reusing
digital (and non-digital) assets.
6
Poor quality (meta)data impedes reuse
which data elements are in the data, and what is the range of their values?
7
http://www.nature.com/articles/sdata201618
● What is the name of the KG?
● Who made the KG?
● When was it created or released?
● How was it created?
● What is the KG about?
● What language(s) are used in the KG?
● What kinds of types, relations, and
attributes are in the KG?
● How is the KG accessible? What data
standards does it use?
● What license it is released under?
A guide to describing data with RDF
vocabularies
● Identifiers
● Descriptors
● Versioning
● Attribution
● Provenance
● Content summarization
Mandatory, recommended, optional descriptors
Reference editor and validation
http://www.w3.org/TR/hcls-dataset/
Metagraph
COST ACTION Distributed Knowledge Graphs
WG1 is concerned with how knowledge graphs can be made
available from various sources, systems and formats, in a scalable,
serviceable, distributed, and FAIR (Findable, Accessible, Interoperable,
and Reusable) manner.
The WG will define requirements and explore ideas, methods, and
tools to make FAIR distributed knowledge graphs, with special
attention as to whether the data are offline or online, and what to do
when the data are privacy-sensitive.
https://cost-dkg.eu
KG Metadata Specification
Purpose: To provide a concrete guidance on
which metadata to be included in the
description of a KG.
People involved:
● María del Mar Roldán, University of Malaga, Spain.
● Manuel Paneque, University of Malaga, Spain.
● Matthijs Sloep, Maastricht University, The Netherlands
● Ilan Kernerman, K Dictionaries - Lexicala, Israel
● Jinzhou Yang, Maastricht University, The Netherlands
● Maxime Lefrançois, MINES Saint-Étienne, France
● Michel Dumontier, Maastricht University
● Katja Hose, Aalborg University, Denmark
● Flavio De Paoli, University of Milan-Bicocca, Italy
● Chang Sun, Maastricht University
● Maryam Mohammadi, Maastricht University, The
Netherlands
● Remzi Celebi, Maastricht University, The Netherlands
● Erkan Yasar, Ege University, Turkey
DKG Workshop on Metadata4KG
May 18-20, 2022. Lyon
Approach:
1. Examined relevant schemas
2. Brainstormed KG specific metadata
3. Discussed candidate metadata elements
4. Identified pertinent schema.org and RDF
vocabularies
5. Defined datatype ranges
6. Discussed their cardinality
7. Voted on their inclusion
8. Defined a minimal set of metadata elements
9. Rexamined cardinality constraints and added
few more candidates
10. Included wikidata metadata as example
KG specific metadata?
Meta-graph
Graph statistics
Vocabularies used
query API (SPARQL, graphQL, etc)
example queries
KG schema
KG Metadata Specification: Results - 33 elements
Future Work
Ensure relevance, completeness, and correctness of proposed schema, and
to potentially uncover other unmet needs
Define key attributes for the metadata document (e.g. creator, license, date,
schema)
Formalize the metadata specification into a computable standard (e.g. SHACL,
ShEX, JSON-Schema, etc).
nanobench SHAPE Publisher
https://collaboratory.semanticscience.org/shape-publisher
FAIRnotator (based on CEDAR workbench)
Future Work
Ensure relevance, completeness, and correctness of proposed schema, and
to potentially uncover other unmet needs
Define key attributes for the metadata document (e.g. creator, license, date,
schema)
Formalize the metadata specification into a computable standard (e.g. SHACL,
ShEX, JSON-Schema, etc).
Build a repository of distributed knowledge graphs that relies on the
metadata specification, along with other representations.
Can we do this in the W3C Community Group on Knowledge Graph Construction
?
Notes from meeting
positive indication to join forces.
The Profiles Vocabulary - https://www.w3.org/TR/dx-prof/
Automated metadata generation for linked dat agneeration and publishing workflows
https://events.linkeddata.org/ldow2016/papers/LDOW2016_paper_04.pdf
agree to biweekly calls 3-5pm until mid-july, then later in fall.

Mais conteúdo relacionado

Mais procurados

Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph DatabasesDataStax
 
SHACL in Apache jena - ApacheCon2020
SHACL in Apache jena - ApacheCon2020SHACL in Apache jena - ApacheCon2020
SHACL in Apache jena - ApacheCon2020andyseaborne
 
How to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the CloudHow to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the CloudDenodo
 
Introduction To RDF and RDFS
Introduction To RDF and RDFSIntroduction To RDF and RDFS
Introduction To RDF and RDFSNilesh Wagmare
 
Linked Open Data Principles, Technologies and Examples
Linked Open Data Principles, Technologies and ExamplesLinked Open Data Principles, Technologies and Examples
Linked Open Data Principles, Technologies and ExamplesOpen Data Support
 
Apache Spark Introduction
Apache Spark IntroductionApache Spark Introduction
Apache Spark Introductionsudhakara st
 
FIWARE Global Summit - NGSI-LD - NGSI with Linked Data
FIWARE Global Summit - NGSI-LD - NGSI with Linked DataFIWARE Global Summit - NGSI-LD - NGSI with Linked Data
FIWARE Global Summit - NGSI-LD - NGSI with Linked DataFIWARE
 
Introduction to metadata management
Introduction to metadata managementIntroduction to metadata management
Introduction to metadata managementOpen Data Support
 
The columnar roadmap: Apache Parquet and Apache Arrow
The columnar roadmap: Apache Parquet and Apache ArrowThe columnar roadmap: Apache Parquet and Apache Arrow
The columnar roadmap: Apache Parquet and Apache ArrowJulien Le Dem
 
SPARQL in a nutshell
SPARQL in a nutshellSPARQL in a nutshell
SPARQL in a nutshellFabien Gandon
 
Introduction to Azure Databricks
Introduction to Azure DatabricksIntroduction to Azure Databricks
Introduction to Azure DatabricksJames Serra
 
Building Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerBuilding Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerDatabricks
 
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3Databricks
 
Introduction to Knowledge Graphs and Semantic AI
Introduction to Knowledge Graphs and Semantic AIIntroduction to Knowledge Graphs and Semantic AI
Introduction to Knowledge Graphs and Semantic AISemantic Web Company
 
Getting Started with Knowledge Graphs
Getting Started with Knowledge GraphsGetting Started with Knowledge Graphs
Getting Started with Knowledge GraphsPeter Haase
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiDatabricks
 

Mais procurados (20)

Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph Databases
 
SHACL in Apache jena - ApacheCon2020
SHACL in Apache jena - ApacheCon2020SHACL in Apache jena - ApacheCon2020
SHACL in Apache jena - ApacheCon2020
 
How to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the CloudHow to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the Cloud
 
Introduction To RDF and RDFS
Introduction To RDF and RDFSIntroduction To RDF and RDFS
Introduction To RDF and RDFS
 
Linked Open Data Principles, Technologies and Examples
Linked Open Data Principles, Technologies and ExamplesLinked Open Data Principles, Technologies and Examples
Linked Open Data Principles, Technologies and Examples
 
Azure Synapse Analytics
Azure Synapse AnalyticsAzure Synapse Analytics
Azure Synapse Analytics
 
Apache Spark Introduction
Apache Spark IntroductionApache Spark Introduction
Apache Spark Introduction
 
Enterprise Knowledge Graph
Enterprise Knowledge GraphEnterprise Knowledge Graph
Enterprise Knowledge Graph
 
FIWARE Global Summit - NGSI-LD - NGSI with Linked Data
FIWARE Global Summit - NGSI-LD - NGSI with Linked DataFIWARE Global Summit - NGSI-LD - NGSI with Linked Data
FIWARE Global Summit - NGSI-LD - NGSI with Linked Data
 
ShEx vs SHACL
ShEx vs SHACLShEx vs SHACL
ShEx vs SHACL
 
Introduction to metadata management
Introduction to metadata managementIntroduction to metadata management
Introduction to metadata management
 
The columnar roadmap: Apache Parquet and Apache Arrow
The columnar roadmap: Apache Parquet and Apache ArrowThe columnar roadmap: Apache Parquet and Apache Arrow
The columnar roadmap: Apache Parquet and Apache Arrow
 
SPARQL in a nutshell
SPARQL in a nutshellSPARQL in a nutshell
SPARQL in a nutshell
 
Introduction to Azure Databricks
Introduction to Azure DatabricksIntroduction to Azure Databricks
Introduction to Azure Databricks
 
Building Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerBuilding Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics Primer
 
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3
Spark Saturday: Spark SQL & DataFrame Workshop with Apache Spark 2.3
 
Introduction to Knowledge Graphs and Semantic AI
Introduction to Knowledge Graphs and Semantic AIIntroduction to Knowledge Graphs and Semantic AI
Introduction to Knowledge Graphs and Semantic AI
 
Getting Started with Knowledge Graphs
Getting Started with Knowledge GraphsGetting Started with Knowledge Graphs
Getting Started with Knowledge Graphs
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and Hudi
 
Linked Data Tutorial
Linked Data TutorialLinked Data Tutorial
Linked Data Tutorial
 

Semelhante a A metadata standard for Knowledge Graphs

Metadata Quality Assurance Part II. The implementation begins
Metadata Quality Assurance Part II. The implementation beginsMetadata Quality Assurance Part II. The implementation begins
Metadata Quality Assurance Part II. The implementation beginsPéter Király
 
How to clean data less through Linked (Open Data) approach?
How to clean data less through Linked (Open Data) approach?How to clean data less through Linked (Open Data) approach?
How to clean data less through Linked (Open Data) approach?andrea huang
 
Dublin Core In Practice
Dublin Core In PracticeDublin Core In Practice
Dublin Core In PracticeMarcia Zeng
 
A Generic Scientific Data Model and Ontology for Representation of Chemical Data
A Generic Scientific Data Model and Ontology for Representation of Chemical DataA Generic Scientific Data Model and Ontology for Representation of Chemical Data
A Generic Scientific Data Model and Ontology for Representation of Chemical DataStuart Chalk
 
FAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsFAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsTom Plasterer
 
FAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeFAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeTom Plasterer
 
Urm concept for sharing information inside of communities
Urm concept for sharing information inside of communitiesUrm concept for sharing information inside of communities
Urm concept for sharing information inside of communitiesKarel Charvat
 
Metadata Quality Assurance
Metadata Quality AssuranceMetadata Quality Assurance
Metadata Quality AssurancePéter Király
 
DataONE Education Module 07: Metadata
DataONE Education Module 07: MetadataDataONE Education Module 07: Metadata
DataONE Education Module 07: MetadataDataONE
 
Machine learning with Spark
Machine learning with SparkMachine learning with Spark
Machine learning with SparkKhalid Salama
 
Metadata 2020 Vivo Conference 2018
Metadata 2020 Vivo Conference 2018 Metadata 2020 Vivo Conference 2018
Metadata 2020 Vivo Conference 2018 Clare Dean
 
Metadata and Tagging
Metadata and TaggingMetadata and Tagging
Metadata and Taggingpauloshea
 
Metadata quality Assurance Framework at QQML2016 - short
Metadata quality Assurance Framework at QQML2016 - shortMetadata quality Assurance Framework at QQML2016 - short
Metadata quality Assurance Framework at QQML2016 - shortPéter Király
 
New Directions in Metadata
New Directions in MetadataNew Directions in Metadata
New Directions in Metadatasuyu22
 

Semelhante a A metadata standard for Knowledge Graphs (20)

Metadata Quality Assurance Part II. The implementation begins
Metadata Quality Assurance Part II. The implementation beginsMetadata Quality Assurance Part II. The implementation begins
Metadata Quality Assurance Part II. The implementation begins
 
How to clean data less through Linked (Open Data) approach?
How to clean data less through Linked (Open Data) approach?How to clean data less through Linked (Open Data) approach?
How to clean data less through Linked (Open Data) approach?
 
Dublin Core In Practice
Dublin Core In PracticeDublin Core In Practice
Dublin Core In Practice
 
A Generic Scientific Data Model and Ontology for Representation of Chemical Data
A Generic Scientific Data Model and Ontology for Representation of Chemical DataA Generic Scientific Data Model and Ontology for Representation of Chemical Data
A Generic Scientific Data Model and Ontology for Representation of Chemical Data
 
FAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsFAIR Data Knowledge Graphs
FAIR Data Knowledge Graphs
 
FAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeFAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to Practice
 
Urm concept for sharing information inside of communities
Urm concept for sharing information inside of communitiesUrm concept for sharing information inside of communities
Urm concept for sharing information inside of communities
 
Metadata
MetadataMetadata
Metadata
 
20230525_mmc_seminar.pdf
20230525_mmc_seminar.pdf20230525_mmc_seminar.pdf
20230525_mmc_seminar.pdf
 
Metadata Quality Assurance
Metadata Quality AssuranceMetadata Quality Assurance
Metadata Quality Assurance
 
Full Erdmann Ruttenberg Community Approaches to Open Data at Scale
Full Erdmann Ruttenberg Community Approaches to Open Data at ScaleFull Erdmann Ruttenberg Community Approaches to Open Data at Scale
Full Erdmann Ruttenberg Community Approaches to Open Data at Scale
 
Metadata: A concept
Metadata: A conceptMetadata: A concept
Metadata: A concept
 
NIH BD2K DataMed model, DATS
NIH BD2K DataMed model, DATSNIH BD2K DataMed model, DATS
NIH BD2K DataMed model, DATS
 
DataONE Education Module 07: Metadata
DataONE Education Module 07: MetadataDataONE Education Module 07: Metadata
DataONE Education Module 07: Metadata
 
Machine learning with Spark
Machine learning with SparkMachine learning with Spark
Machine learning with Spark
 
Metadata 2020 Vivo Conference 2018
Metadata 2020 Vivo Conference 2018 Metadata 2020 Vivo Conference 2018
Metadata 2020 Vivo Conference 2018
 
Metadata and Tagging
Metadata and TaggingMetadata and Tagging
Metadata and Tagging
 
Metadata quality Assurance Framework at QQML2016 - short
Metadata quality Assurance Framework at QQML2016 - shortMetadata quality Assurance Framework at QQML2016 - short
Metadata quality Assurance Framework at QQML2016 - short
 
New Directions in Metadata
New Directions in MetadataNew Directions in Metadata
New Directions in Metadata
 
Metadata : Concentrating on the data, not on the scheme
Metadata : Concentrating on the data, not on the schemeMetadata : Concentrating on the data, not on the scheme
Metadata : Concentrating on the data, not on the scheme
 

Mais de Michel Dumontier

Data-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsData-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsMichel Dumontier
 
The Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemThe Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemMichel Dumontier
 
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...Michel Dumontier
 
The role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemThe role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemMichel Dumontier
 
Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Michel Dumontier
 
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Michel Dumontier
 
Are we FAIR yet? And will it be worth it?
Are we FAIR yet? And will it be worth it?Are we FAIR yet? And will it be worth it?
Are we FAIR yet? And will it be worth it?Michel Dumontier
 
The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...Michel Dumontier
 
Keynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerKeynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerMichel Dumontier
 
The future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureThe future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureMichel Dumontier
 
Developing and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesDeveloping and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesMichel Dumontier
 
Advancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRAdvancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRMichel Dumontier
 
A Framework to develop the FAIR Metrics
A Framework to develop the FAIR MetricsA Framework to develop the FAIR Metrics
A Framework to develop the FAIR MetricsMichel Dumontier
 
FAIR principles and metrics for evaluation
FAIR principles and metrics for evaluationFAIR principles and metrics for evaluation
FAIR principles and metrics for evaluationMichel Dumontier
 
Towards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessTowards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessMichel Dumontier
 

Mais de Michel Dumontier (20)

Data-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsData-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge Graphs
 
Evaluating FAIRness
Evaluating FAIRnessEvaluating FAIRness
Evaluating FAIRness
 
The Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemThe Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health System
 
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
 
The role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemThe role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health System
 
Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...
 
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
 
Are we FAIR yet? And will it be worth it?
Are we FAIR yet? And will it be worth it?Are we FAIR yet? And will it be worth it?
Are we FAIR yet? And will it be worth it?
 
The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...
 
Keynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerKeynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University Dinner
 
The future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureThe future of science and business - a UM Star Lecture
The future of science and business - a UM Star Lecture
 
Are we FAIR yet?
Are we FAIR yet?Are we FAIR yet?
Are we FAIR yet?
 
Developing and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesDeveloping and assessing FAIR digital resources
Developing and assessing FAIR digital resources
 
Advancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRAdvancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIR
 
A Framework to develop the FAIR Metrics
A Framework to develop the FAIR MetricsA Framework to develop the FAIR Metrics
A Framework to develop the FAIR Metrics
 
FAIR principles and metrics for evaluation
FAIR principles and metrics for evaluationFAIR principles and metrics for evaluation
FAIR principles and metrics for evaluation
 
Towards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessTowards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRness
 
Data Science for the Win
Data Science for the WinData Science for the Win
Data Science for the Win
 
2016 bmdid-mappings
2016 bmdid-mappings2016 bmdid-mappings
2016 bmdid-mappings
 
Ontologies
OntologiesOntologies
Ontologies
 

Último

Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPirithiRaju
 
Biopesticide (2).pptx .This slides helps to know the different types of biop...
Biopesticide (2).pptx  .This slides helps to know the different types of biop...Biopesticide (2).pptx  .This slides helps to know the different types of biop...
Biopesticide (2).pptx .This slides helps to know the different types of biop...RohitNehra6
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfSumit Kumar yadav
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxAleenaTreesaSaji
 
Boyles law module in the grade 10 science
Boyles law module in the grade 10 scienceBoyles law module in the grade 10 science
Boyles law module in the grade 10 sciencefloriejanemacaya1
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡anilsa9823
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfSumit Kumar yadav
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptMAESTRELLAMesa2
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfnehabiju2046
 
Is RISC-V ready for HPC workload? Maybe?
Is RISC-V ready for HPC workload? Maybe?Is RISC-V ready for HPC workload? Maybe?
Is RISC-V ready for HPC workload? Maybe?Patrick Diehl
 
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxBroad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxjana861314
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Sérgio Sacani
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)PraveenaKalaiselvan1
 
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...Sérgio Sacani
 
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...jana861314
 
Nanoparticles synthesis and characterization​ ​
Nanoparticles synthesis and characterization​  ​Nanoparticles synthesis and characterization​  ​
Nanoparticles synthesis and characterization​ ​kaibalyasahoo82800
 
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCESTERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCEPRINCE C P
 
Botany krishna series 2nd semester Only Mcq type questions
Botany krishna series 2nd semester Only Mcq type questionsBotany krishna series 2nd semester Only Mcq type questions
Botany krishna series 2nd semester Only Mcq type questionsSumit Kumar yadav
 
Animal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxAnimal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxUmerFayaz5
 

Último (20)

Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
 
Biopesticide (2).pptx .This slides helps to know the different types of biop...
Biopesticide (2).pptx  .This slides helps to know the different types of biop...Biopesticide (2).pptx  .This slides helps to know the different types of biop...
Biopesticide (2).pptx .This slides helps to know the different types of biop...
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdf
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptx
 
Boyles law module in the grade 10 science
Boyles law module in the grade 10 scienceBoyles law module in the grade 10 science
Boyles law module in the grade 10 science
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdf
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.ppt
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdf
 
Is RISC-V ready for HPC workload? Maybe?
Is RISC-V ready for HPC workload? Maybe?Is RISC-V ready for HPC workload? Maybe?
Is RISC-V ready for HPC workload? Maybe?
 
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptxBroad bean, Lima Bean, Jack bean, Ullucus.pptx
Broad bean, Lima Bean, Jack bean, Ullucus.pptx
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)
 
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
PossibleEoarcheanRecordsoftheGeomagneticFieldPreservedintheIsuaSupracrustalBe...
 
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...
Traditional Agroforestry System in India- Shifting Cultivation, Taungya, Home...
 
The Philosophy of Science
The Philosophy of ScienceThe Philosophy of Science
The Philosophy of Science
 
Nanoparticles synthesis and characterization​ ​
Nanoparticles synthesis and characterization​  ​Nanoparticles synthesis and characterization​  ​
Nanoparticles synthesis and characterization​ ​
 
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCESTERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
 
Botany krishna series 2nd semester Only Mcq type questions
Botany krishna series 2nd semester Only Mcq type questionsBotany krishna series 2nd semester Only Mcq type questions
Botany krishna series 2nd semester Only Mcq type questions
 
Animal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptxAnimal Communication- Auditory and Visual.pptx
Animal Communication- Auditory and Visual.pptx
 

A metadata standard for Knowledge Graphs

  • 1. Towards a computable standard for Knowledge Graph Metadata Michel Dumontier WG1 Lead COST Action Distributed Knowledge Graphs W3C CG Knowledge Graph Construction June 20, 2022
  • 2. Metadata are information about data. They often provide a description, context, provenance, and meaning to the data.
  • 3. Informative metadata Technical and administrative details Descriptive metadata Information to understand and interpret the data Relational metadata Captures the relationship between the data item and other entities
  • 4. Data: jpg image file Informative metadata: ● Size: 155kb ● Date created: 2015-05-25 ● Filetype: jpg Descriptive metadata ● Title: MRI of the head ● Generated by: Ingenia 3.0T Relational metadata ● About: EHR092376573 ● Clinical Study: CT7812356 Image source: https://pixabay.com/photo-782457/
  • 5. Metadata are information about data. They often provide a description, context, provenance, and meaning to the data. Metadata play a key role in finding, understanding, and reusing digital (and non-digital) assets.
  • 6. 6 Poor quality (meta)data impedes reuse which data elements are in the data, and what is the range of their values?
  • 8. ● What is the name of the KG? ● Who made the KG? ● When was it created or released? ● How was it created? ● What is the KG about? ● What language(s) are used in the KG? ● What kinds of types, relations, and attributes are in the KG? ● How is the KG accessible? What data standards does it use? ● What license it is released under?
  • 9. A guide to describing data with RDF vocabularies ● Identifiers ● Descriptors ● Versioning ● Attribution ● Provenance ● Content summarization Mandatory, recommended, optional descriptors Reference editor and validation http://www.w3.org/TR/hcls-dataset/
  • 11.
  • 12. COST ACTION Distributed Knowledge Graphs WG1 is concerned with how knowledge graphs can be made available from various sources, systems and formats, in a scalable, serviceable, distributed, and FAIR (Findable, Accessible, Interoperable, and Reusable) manner. The WG will define requirements and explore ideas, methods, and tools to make FAIR distributed knowledge graphs, with special attention as to whether the data are offline or online, and what to do when the data are privacy-sensitive. https://cost-dkg.eu
  • 13. KG Metadata Specification Purpose: To provide a concrete guidance on which metadata to be included in the description of a KG. People involved: ● María del Mar Roldán, University of Malaga, Spain. ● Manuel Paneque, University of Malaga, Spain. ● Matthijs Sloep, Maastricht University, The Netherlands ● Ilan Kernerman, K Dictionaries - Lexicala, Israel ● Jinzhou Yang, Maastricht University, The Netherlands ● Maxime Lefrançois, MINES Saint-Étienne, France ● Michel Dumontier, Maastricht University ● Katja Hose, Aalborg University, Denmark ● Flavio De Paoli, University of Milan-Bicocca, Italy ● Chang Sun, Maastricht University ● Maryam Mohammadi, Maastricht University, The Netherlands ● Remzi Celebi, Maastricht University, The Netherlands ● Erkan Yasar, Ege University, Turkey DKG Workshop on Metadata4KG May 18-20, 2022. Lyon Approach: 1. Examined relevant schemas 2. Brainstormed KG specific metadata 3. Discussed candidate metadata elements 4. Identified pertinent schema.org and RDF vocabularies 5. Defined datatype ranges 6. Discussed their cardinality 7. Voted on their inclusion 8. Defined a minimal set of metadata elements 9. Rexamined cardinality constraints and added few more candidates 10. Included wikidata metadata as example
  • 14. KG specific metadata? Meta-graph Graph statistics Vocabularies used query API (SPARQL, graphQL, etc) example queries KG schema
  • 15. KG Metadata Specification: Results - 33 elements
  • 16. Future Work Ensure relevance, completeness, and correctness of proposed schema, and to potentially uncover other unmet needs Define key attributes for the metadata document (e.g. creator, license, date, schema) Formalize the metadata specification into a computable standard (e.g. SHACL, ShEX, JSON-Schema, etc).
  • 18. Future Work Ensure relevance, completeness, and correctness of proposed schema, and to potentially uncover other unmet needs Define key attributes for the metadata document (e.g. creator, license, date, schema) Formalize the metadata specification into a computable standard (e.g. SHACL, ShEX, JSON-Schema, etc). Build a repository of distributed knowledge graphs that relies on the metadata specification, along with other representations. Can we do this in the W3C Community Group on Knowledge Graph Construction ?
  • 19. Notes from meeting positive indication to join forces. The Profiles Vocabulary - https://www.w3.org/TR/dx-prof/ Automated metadata generation for linked dat agneeration and publishing workflows https://events.linkeddata.org/ldow2016/papers/LDOW2016_paper_04.pdf agree to biweekly calls 3-5pm until mid-july, then later in fall.