際際滷

際際滷Share a Scribd company logo
Emergency Response
Using Real-time Semantic
Web Technology.
Bart van Leeuwen
bart@netage.nl
@semanticfire
Basic knowledge
    Linked data
    Triples




#semanticfire
#semanticfire
Incident in RDF
  <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78>
    dcterms:creator <http://bart.netage.nl/foaf#bvl> ;
    dcterms:format "application/rdf+xml" ;
    dcterms:identifier "e523a60e5cda50404bc8f960de0bc39f62daba78" ;
    dcterms:language "nl_NL" ;
    dcterms:modified "2011-09-21T19:12:56" ;
    dcterms:publisher "Brandweer Amsterdam-Amstelland" ;
    dcterms:title "BR 1 BINNENBRAND WONEN ( Inc.net: 1 ) , NIEUWE WILLEMSSTRAAT 10 ASD [ NET01 TBO ALH ASH
  AST ]" ;
    dcterms:type overheid:webpagina ;
    sem:eventType <http://data.brandweeraa.nl/data/classification/BR1> ;
    sem:hasTimeStamp "2011-09-21T19:12:56" ;
    overheid:authority "brandweer" ;
    communication:dispatchedTo <http://data.brandweeraa.nl/data/pager/0100519>,
  <http://data.brandweeraa.nl/data/pager/0100969>, <http://data.brandweeraa.nl/data/pager/0102998> ;
    communication:incidentAddress
  <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78#addr> ;
    communication:incidentLocation
  <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78#location> ;
    communication:network "Inc.net: 1" ;


#semanticfire
My fear
     An accident will take place during an incident,
     and the investigation afterwards reveals that all
     data necessary to prevent the incident was
     available in our own organization.




#semanticfire
The workplace
 of my chief




#semanticfire
6 Devices




#semanticfire
The environment




#semanticfire
Vision Netage.nl
     Linked data
          Standardized terminology
          'open' data
          Meaning to data
          Innovation platform
          Answers to questions asked




#semanticfire
#semanticfire
Explanation by Example
    Anne Frank house
         Automatic Alarm
         1 Engine
         Deployment plan
          available




#semanticfire
Work flow


                                   Attention
      Message   Plan   Procedure
                                     Card




#semanticfire
Alarm message




#semanticfire
Work flow


                                   Attention
      Message   Plan   Procedure
                                     Card




#semanticfire
Deployment plan




#semanticfire
Work flow


                                   Attention
      Message   Plan   Procedure
                                     Card




#semanticfire
Procedure




#semanticfire
Work flow


                                   Attention
      Message   Plan   Procedure
                                     Card




#semanticfire
Attention Cards




#semanticfire
Work flow
                                             Attention
      Message     Plan        Procedure
                                               Card




  Anne Frank house Situated 600m from fire station
    ETA 1 minute !

  Work flow processed by 1 person




#semanticfire
Did you spot the linked data ?




                http://data.brandweeraa.local/plans/1036
#semanticfire
http://data.brandweeraa.local/plans/1036
        http://data.brandweeraa.local/procedure/complexBuilding

#semanticfire
Procedure




  http://data.brandweeraa.local/procedure/complexBuilding
#semanticfire
Attention Cards




                http://data.brandweeraa.local/attentioncards/complexBuilding
#semanticfire
Overview
                                             Plans           Procedures
   Dispatch messages
                                           ( Excel )          ( Excel )


                realtime
                                                                      static


           RDF                                         RDF




                           Station based
                           Monitors                      Enrich with
      ALARM                                              primary hazards


#semanticfire
Current Solution




#semanticfire
Solution
    Transform source data
         Excel Sheets
         Word Documents
    Standardize Terminology
         Http://firebrary.resc.info
    'open' the data to multiple platforms
         In station monitors show primary hazards


#semanticfire
What if
    Semantic web is just another hype
         Discussion over terminology
         Unification of plans and procedures
         Insight in interconnections




#semanticfire
What if
    Electronic blackout
         We will make paper copies !
         Will benefit from
               Unified terminology
               Unification of plans




#semanticfire
What if
    Fire departments organization
         Stubborn
         Traditional
    We already answer the questions asked
         12 stations use linked data everyday




#semanticfire
#semanticfire
They do exist !




#semanticfire
How could that look




#semanticfire
Where do we go




#semanticfire
Questions ?




#semanticfire

More Related Content

Similar to Semtechbizuk2011 (20)

Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Nathan Bijnens
Gesch辰ftliches Potential f端r System-Integratoren und Berater - Graphdatenban...
Gesch辰ftliches Potential f端r System-Integratoren und Berater -  Graphdatenban...Gesch辰ftliches Potential f端r System-Integratoren und Berater -  Graphdatenban...
Gesch辰ftliches Potential f端r System-Integratoren und Berater - Graphdatenban...
Neo4j
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorial
hadooparchbook
Overview Of Parallel Development - Ericnel
Overview Of Parallel Development -  EricnelOverview Of Parallel Development -  Ericnel
Overview Of Parallel Development - Ericnel
ukdpe
Solving Cybersecurity at Scale
Solving Cybersecurity at ScaleSolving Cybersecurity at Scale
Solving Cybersecurity at Scale
DataWorks Summit
Iygapyisi cause10-slideshare
Iygapyisi cause10-slideshareIygapyisi cause10-slideshare
Iygapyisi cause10-slideshare
dwengincsu
Deep Dive Time Series Anomaly Detection in Azure with dotnet
Deep Dive Time Series Anomaly Detection in Azure with dotnetDeep Dive Time Series Anomaly Detection in Azure with dotnet
Deep Dive Time Series Anomaly Detection in Azure with dotnet
Marco Parenzan
ITWeb Conference June06 Open Source for Local Government
ITWeb Conference June06 Open Source for Local GovernmentITWeb Conference June06 Open Source for Local Government
ITWeb Conference June06 Open Source for Local Government
Nirvesh Sooful
Spark and Hadoop Perfect Togeher by Arun Murthy
Spark and Hadoop Perfect Togeher by Arun MurthySpark and Hadoop Perfect Togeher by Arun Murthy
Spark and Hadoop Perfect Togeher by Arun Murthy
Spark Summit
Spark Summit EMEA - Arun Murthy's Keynote
Spark Summit EMEA - Arun Murthy's KeynoteSpark Summit EMEA - Arun Murthy's Keynote
Spark Summit EMEA - Arun Murthy's Keynote
Hortonworks
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Databricks
Developing high frequency indicators using real time tick data on apache supe...
Developing high frequency indicators using real time tick data on apache supe...Developing high frequency indicators using real time tick data on apache supe...
Developing high frequency indicators using real time tick data on apache supe...
Zekeriya Besiroglu
Apache Storm vs. Spark Streaming two Stream Processing Platforms compared
Apache Storm vs. Spark Streaming  two Stream Processing Platforms comparedApache Storm vs. Spark Streaming  two Stream Processing Platforms compared
Apache Storm vs. Spark Streaming two Stream Processing Platforms compared
Guido Schmutz
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
DataWorks Summit
Paging, Alerting, Chaos Eng Overview
Paging, Alerting, Chaos Eng OverviewPaging, Alerting, Chaos Eng Overview
Paging, Alerting, Chaos Eng Overview
matthewbrahms
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Landon Robinson
Hadoop Application Architectures - Fraud Detection
Hadoop Application Architectures - Fraud  DetectionHadoop Application Architectures - Fraud  Detection
Hadoop Application Architectures - Fraud Detection
hadooparchbook
Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
 Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F... Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
Databricks
WP2 Overview (Technical architecture)
WP2 Overview (Technical architecture)WP2 Overview (Technical architecture)
WP2 Overview (Technical architecture)
vbrant
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDBBuild Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
ScyllaDB
Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Virdata: lessons learned from the Internet of Things and M2M Cloud Services @...
Nathan Bijnens
Gesch辰ftliches Potential f端r System-Integratoren und Berater - Graphdatenban...
Gesch辰ftliches Potential f端r System-Integratoren und Berater -  Graphdatenban...Gesch辰ftliches Potential f端r System-Integratoren und Berater -  Graphdatenban...
Gesch辰ftliches Potential f端r System-Integratoren und Berater - Graphdatenban...
Neo4j
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorial
hadooparchbook
Overview Of Parallel Development - Ericnel
Overview Of Parallel Development -  EricnelOverview Of Parallel Development -  Ericnel
Overview Of Parallel Development - Ericnel
ukdpe
Solving Cybersecurity at Scale
Solving Cybersecurity at ScaleSolving Cybersecurity at Scale
Solving Cybersecurity at Scale
DataWorks Summit
Iygapyisi cause10-slideshare
Iygapyisi cause10-slideshareIygapyisi cause10-slideshare
Iygapyisi cause10-slideshare
dwengincsu
Deep Dive Time Series Anomaly Detection in Azure with dotnet
Deep Dive Time Series Anomaly Detection in Azure with dotnetDeep Dive Time Series Anomaly Detection in Azure with dotnet
Deep Dive Time Series Anomaly Detection in Azure with dotnet
Marco Parenzan
ITWeb Conference June06 Open Source for Local Government
ITWeb Conference June06 Open Source for Local GovernmentITWeb Conference June06 Open Source for Local Government
ITWeb Conference June06 Open Source for Local Government
Nirvesh Sooful
Spark and Hadoop Perfect Togeher by Arun Murthy
Spark and Hadoop Perfect Togeher by Arun MurthySpark and Hadoop Perfect Togeher by Arun Murthy
Spark and Hadoop Perfect Togeher by Arun Murthy
Spark Summit
Spark Summit EMEA - Arun Murthy's Keynote
Spark Summit EMEA - Arun Murthy's KeynoteSpark Summit EMEA - Arun Murthy's Keynote
Spark Summit EMEA - Arun Murthy's Keynote
Hortonworks
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Deploying Python Machine Learning Models with Apache Spark with Brandon Hamri...
Databricks
Developing high frequency indicators using real time tick data on apache supe...
Developing high frequency indicators using real time tick data on apache supe...Developing high frequency indicators using real time tick data on apache supe...
Developing high frequency indicators using real time tick data on apache supe...
Zekeriya Besiroglu
Apache Storm vs. Spark Streaming two Stream Processing Platforms compared
Apache Storm vs. Spark Streaming  two Stream Processing Platforms comparedApache Storm vs. Spark Streaming  two Stream Processing Platforms compared
Apache Storm vs. Spark Streaming two Stream Processing Platforms compared
Guido Schmutz
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
Observing Intraday Indicators Using Real-Time Tick Data on Apache Superset an...
DataWorks Summit
Paging, Alerting, Chaos Eng Overview
Paging, Alerting, Chaos Eng OverviewPaging, Alerting, Chaos Eng Overview
Paging, Alerting, Chaos Eng Overview
matthewbrahms
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Spark + AI Summit 2019: Apache Spark Listeners: A Crash Course in Fast, Easy ...
Landon Robinson
Hadoop Application Architectures - Fraud Detection
Hadoop Application Architectures - Fraud  DetectionHadoop Application Architectures - Fraud  Detection
Hadoop Application Architectures - Fraud Detection
hadooparchbook
Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
 Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F... Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
Scalable Monitoring Using Prometheus with Apache Spark Clusters with Diane F...
Databricks
WP2 Overview (Technical architecture)
WP2 Overview (Technical architecture)WP2 Overview (Technical architecture)
WP2 Overview (Technical architecture)
vbrant
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDBBuild Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
Build Low Latency, Windowless Event Processing Pipelines with Quine and ScyllaDB
ScyllaDB

Recently uploaded (20)

Digital twins as key enabler for innovation in IoT systems
Digital twins as key enabler for innovation in IoT systemsDigital twins as key enabler for innovation in IoT systems
Digital twins as key enabler for innovation in IoT systems
Daniel Lehner
AI and developer obsolescence - BCS 2025.pdf
AI and developer obsolescence - BCS 2025.pdfAI and developer obsolescence - BCS 2025.pdf
AI and developer obsolescence - BCS 2025.pdf
Seb Rose
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
ScyllaDB
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPathUiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
DianaGray10
Webinar - Zilliz Cloud Monthly Demo - March 2025
Webinar - Zilliz Cloud Monthly Demo - March 2025Webinar - Zilliz Cloud Monthly Demo - March 2025
Webinar - Zilliz Cloud Monthly Demo - March 2025
Zilliz
Cleveland Salesforce Developer Group March 2025
Cleveland Salesforce Developer Group March 2025Cleveland Salesforce Developer Group March 2025
Cleveland Salesforce Developer Group March 2025
Lynda Kane
ScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB: 10 Years and Beyond by Dor LaorScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB
High Availability: Lessons Learned by Paul Preuveneers
High Availability: Lessons Learned by Paul PreuveneersHigh Availability: Lessons Learned by Paul Preuveneers
High Availability: Lessons Learned by Paul Preuveneers
ScyllaDB
UiPath Automation Developer Associate Training Series 2025 - Session 5
UiPath Automation Developer Associate Training Series 2025 - Session 5UiPath Automation Developer Associate Training Series 2025 - Session 5
UiPath Automation Developer Associate Training Series 2025 - Session 5
DianaGray10
Automated Minutes - Redefining Capturing & Creating Minutes
Automated Minutes - Redefining Capturing & Creating MinutesAutomated Minutes - Redefining Capturing & Creating Minutes
Automated Minutes - Redefining Capturing & Creating Minutes
OnBoard
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest..."Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
Fwdays
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem..."Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
Fwdays
Reduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
Reduce Your Cloud Spend with ScyllaDB by Tzach LivyatanReduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
Reduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
ScyllaDB
Lessons Learned from Building a Serverless Notifications System by Srushith R...
Lessons Learned from Building a Serverless Notifications System by Srushith R...Lessons Learned from Building a Serverless Notifications System by Srushith R...
Lessons Learned from Building a Serverless Notifications System by Srushith R...
ScyllaDB
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
Fwdays
March Patch Tuesday
March Patch TuesdayMarch Patch Tuesday
March Patch Tuesday
Ivanti
Verbose AI: The Accessibility Challenge - CSUN 2025
Verbose AI: The Accessibility Challenge - CSUN 2025Verbose AI: The Accessibility Challenge - CSUN 2025
Verbose AI: The Accessibility Challenge - CSUN 2025
Ted Drake
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Zilliz
The Most Important Tech Innovations of 2024
The Most Important Tech Innovations of 2024The Most Important Tech Innovations of 2024
The Most Important Tech Innovations of 2024
Arif Efendi
People, Process, Technology, Business...
People, Process, Technology, Business...People, Process, Technology, Business...
People, Process, Technology, Business...
annashipman
Digital twins as key enabler for innovation in IoT systems
Digital twins as key enabler for innovation in IoT systemsDigital twins as key enabler for innovation in IoT systems
Digital twins as key enabler for innovation in IoT systems
Daniel Lehner
AI and developer obsolescence - BCS 2025.pdf
AI and developer obsolescence - BCS 2025.pdfAI and developer obsolescence - BCS 2025.pdf
AI and developer obsolescence - BCS 2025.pdf
Seb Rose
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
How Natura Uses ScyllaDB and ScyllaDB Connector to Create a Real-time Data Pi...
ScyllaDB
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPathUiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
UiPath NY AI Series: Session 1: Introduction to Agentic AI with UiPath
DianaGray10
Webinar - Zilliz Cloud Monthly Demo - March 2025
Webinar - Zilliz Cloud Monthly Demo - March 2025Webinar - Zilliz Cloud Monthly Demo - March 2025
Webinar - Zilliz Cloud Monthly Demo - March 2025
Zilliz
Cleveland Salesforce Developer Group March 2025
Cleveland Salesforce Developer Group March 2025Cleveland Salesforce Developer Group March 2025
Cleveland Salesforce Developer Group March 2025
Lynda Kane
ScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB: 10 Years and Beyond by Dor LaorScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB: 10 Years and Beyond by Dor Laor
ScyllaDB
High Availability: Lessons Learned by Paul Preuveneers
High Availability: Lessons Learned by Paul PreuveneersHigh Availability: Lessons Learned by Paul Preuveneers
High Availability: Lessons Learned by Paul Preuveneers
ScyllaDB
UiPath Automation Developer Associate Training Series 2025 - Session 5
UiPath Automation Developer Associate Training Series 2025 - Session 5UiPath Automation Developer Associate Training Series 2025 - Session 5
UiPath Automation Developer Associate Training Series 2025 - Session 5
DianaGray10
Automated Minutes - Redefining Capturing & Creating Minutes
Automated Minutes - Redefining Capturing & Creating MinutesAutomated Minutes - Redefining Capturing & Creating Minutes
Automated Minutes - Redefining Capturing & Creating Minutes
OnBoard
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest..."Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
"Conflicts within a Team: Not an Enemy, But an Opportunity for Growth", Orest...
Fwdays
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem..."Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
"Surfing the IT Waves: How Not to Drown in the Information Ocean", Serhii Nem...
Fwdays
Reduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
Reduce Your Cloud Spend with ScyllaDB by Tzach LivyatanReduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
Reduce Your Cloud Spend with ScyllaDB by Tzach Livyatan
ScyllaDB
Lessons Learned from Building a Serverless Notifications System by Srushith R...
Lessons Learned from Building a Serverless Notifications System by Srushith R...Lessons Learned from Building a Serverless Notifications System by Srushith R...
Lessons Learned from Building a Serverless Notifications System by Srushith R...
ScyllaDB
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
[QUICK TALK] "Why Some Teams Grow Better Under Pressure", Oleksandr Marchenko...
Fwdays
March Patch Tuesday
March Patch TuesdayMarch Patch Tuesday
March Patch Tuesday
Ivanti
Verbose AI: The Accessibility Challenge - CSUN 2025
Verbose AI: The Accessibility Challenge - CSUN 2025Verbose AI: The Accessibility Challenge - CSUN 2025
Verbose AI: The Accessibility Challenge - CSUN 2025
Ted Drake
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Agentic AI in Action: Real-Time Vision, Memory & Autonomy with Browser Use & ...
Zilliz
The Most Important Tech Innovations of 2024
The Most Important Tech Innovations of 2024The Most Important Tech Innovations of 2024
The Most Important Tech Innovations of 2024
Arif Efendi
People, Process, Technology, Business...
People, Process, Technology, Business...People, Process, Technology, Business...
People, Process, Technology, Business...
annashipman

Semtechbizuk2011

  • 1. Emergency Response Using Real-time Semantic Web Technology. Bart van Leeuwen bart@netage.nl @semanticfire
  • 2. Basic knowledge Linked data Triples #semanticfire
  • 4. Incident in RDF <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78> dcterms:creator <http://bart.netage.nl/foaf#bvl> ; dcterms:format "application/rdf+xml" ; dcterms:identifier "e523a60e5cda50404bc8f960de0bc39f62daba78" ; dcterms:language "nl_NL" ; dcterms:modified "2011-09-21T19:12:56" ; dcterms:publisher "Brandweer Amsterdam-Amstelland" ; dcterms:title "BR 1 BINNENBRAND WONEN ( Inc.net: 1 ) , NIEUWE WILLEMSSTRAAT 10 ASD [ NET01 TBO ALH ASH AST ]" ; dcterms:type overheid:webpagina ; sem:eventType <http://data.brandweeraa.nl/data/classification/BR1> ; sem:hasTimeStamp "2011-09-21T19:12:56" ; overheid:authority "brandweer" ; communication:dispatchedTo <http://data.brandweeraa.nl/data/pager/0100519>, <http://data.brandweeraa.nl/data/pager/0100969>, <http://data.brandweeraa.nl/data/pager/0102998> ; communication:incidentAddress <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78#addr> ; communication:incidentLocation <http://data.brandweeraa.nl/data/messages/e523a60e5cda50404bc8f960de0bc39f62daba78#location> ; communication:network "Inc.net: 1" ; #semanticfire
  • 5. My fear An accident will take place during an incident, and the investigation afterwards reveals that all data necessary to prevent the incident was available in our own organization. #semanticfire
  • 6. The workplace of my chief #semanticfire
  • 9. Vision Netage.nl Linked data Standardized terminology 'open' data Meaning to data Innovation platform Answers to questions asked #semanticfire
  • 11. Explanation by Example Anne Frank house Automatic Alarm 1 Engine Deployment plan available #semanticfire
  • 12. Work flow Attention Message Plan Procedure Card #semanticfire
  • 14. Work flow Attention Message Plan Procedure Card #semanticfire
  • 16. Work flow Attention Message Plan Procedure Card #semanticfire
  • 18. Work flow Attention Message Plan Procedure Card #semanticfire
  • 20. Work flow Attention Message Plan Procedure Card Anne Frank house Situated 600m from fire station ETA 1 minute ! Work flow processed by 1 person #semanticfire
  • 21. Did you spot the linked data ? http://data.brandweeraa.local/plans/1036 #semanticfire
  • 22. http://data.brandweeraa.local/plans/1036 http://data.brandweeraa.local/procedure/complexBuilding #semanticfire
  • 24. Attention Cards http://data.brandweeraa.local/attentioncards/complexBuilding #semanticfire
  • 25. Overview Plans Procedures Dispatch messages ( Excel ) ( Excel ) realtime static RDF RDF Station based Monitors Enrich with ALARM primary hazards #semanticfire
  • 27. Solution Transform source data Excel Sheets Word Documents Standardize Terminology Http://firebrary.resc.info 'open' the data to multiple platforms In station monitors show primary hazards #semanticfire
  • 28. What if Semantic web is just another hype Discussion over terminology Unification of plans and procedures Insight in interconnections #semanticfire
  • 29. What if Electronic blackout We will make paper copies ! Will benefit from Unified terminology Unification of plans #semanticfire
  • 30. What if Fire departments organization Stubborn Traditional We already answer the questions asked 12 stations use linked data everyday #semanticfire
  • 32. They do exist ! #semanticfire
  • 33. How could that look #semanticfire
  • 34. Where do we go #semanticfire