SlideShare una empresa de Scribd logo
1 de 24
Linked Data Notifications for
RDF Streams
Jean-Paul Calbimonte
Institute of Information Systems
University of Applied Sciences and Arts Western Switzerland (HES-SO Valais-Wallis)
International Semantic Web Conference ISWC
Vienna, October 2017
@jpcik
2
HES-SO:
University of Applied Sciences and Arts Western Switzerland
We are here,
surrounded by mountains!
3
Linked Data Notifications for RDF Streams
1
4
RDF Streams
triplesRDF graph:
graph Triple Store
store
post query
triples
graph+ timestampRDF stream graph:
(graph, t)
feed
register query
triplesRDF Stream
Processor
5
RSP Data Model
https://github.com/streamreasoning/RSP-QL/blob/master/Semantics.md
Timestamped Graph
:g1 {:axel :isIn :RedRoom. :darko :isIn :RedRoom}
{:g1 prov:generatedAtTime "2001-10-26T21:32:52"}
 Many/One-triple graphs
 Multiple time predicates
 Implicit timestamp
 Different timestamp representations
 Contemporaneity
Allows:
A RDF stream S consists of a sequence of timestamped graphs (with a partial order)
RDF Stream
:g1 {:axel :isIn :RedRoom. :darko :isIn :RedRoom} {:g1,prov:generatedAtTime,t1}
:g2 {:axel :isIn :BlueRoom. } {:g2,prov:generatedAtTime,t2}
:g3 {:minh :isIn :RedRoom. } {:g3,prov:generatedAtTime,t3} ...
https://www.w3.org/community/rsp/
http://w3id.org/rsp/abstract-syntax
6
RDF Stream Processors
Triple
Wave
CSPARQL
Etalis
TrOWL
CQELS
Morph
streams
RDF stream
RDF stream
RDF stream
RDF stream
RDF stream
7
Linked Data Notifications for RDF Streams
2
8
9
LDN: Basics
Sender
Target
Receiver
Consumer
Resource which notifications
is to/about
sends notifications consumes notifications
exposes notifications through inbox
creates notifications in inbox
inbox
10
LDN: Discovery
Sender Consumer
Target
GET/HEAD GET/HEAD
inbox inbox
11
LDN Interactions
Sender Consumer
ReceiverPOST GET
notifications
Inbox
Consumer
Receiver
GET
ldp:contains
Inbox
notifications
12
LDN for RDF Streams
3
13
We think LDN can help to get here:
Triple
Wave
CSPARQL
Etalis
TrOWL
CQELS
Morph
streams
RDF stream
RDF stream
RDF stream
RDF stream
RDF stream
14
Streams and IRIs
• An RDF stream is uniquely identified by an IRI
• Stream IRI: obtain information about the stream
• endpoints
• RDF stream is a read/write Web resource detached
from potentially multiple endpoints used to interact with
its contents.
15
Endpoint discovery
The endpoints of an RDF stream:
GET http://example.org/streams/my-stream
Response should include metadata about the stream:
{
"@context": "http://www.w3.org/ns/ldp",
"@id": "http://example.org/streams/my-stream",
"inbox": "http://example.org/streams/my-stream/inbox"
}
RSP Sender RSP Consumer
RDF StreamGET/HEAD GET/HEAD
inbox inbox
16
Input/output stream
• Specialize it in two distinct types: an input inbox and an output
inbox.
• Input stream: receiving notifications (i.e. to be fed) by senders.
• Output stream: only meant to be consumed, as they are produced
by an RSP engine.
{
"@context": "http://w3id.org/rsp/ldn-s",
"@id": "http://example.org/streams/my-stream",
"input": "http://example.org/streams/my-stream/input"
}
17
Sending stream notification
• POST stream elements
• body should contain the stream element that will be fed to the stream
POST /streams/my-stream/input HTTP/1.1
Host: example.org
Content-Type: application/ld+json
{
"prov:generatedAtTime": "2017-07-22T05:00:00.000Z",
"@id": "ex:Graph1",
"@graph": [
{ "@id": "ex:humidityObservation",
"ex:hasValue": 34.5}],
"@context": {
"prov": "http://www.w3.org/ns/prov#",
"ex": "http://example.org#"} }
RSP
ReceiverPOST
stream
inputRSP Sender
18
• GET stream elements from an RDF stream endpoint
• return the notification URIs listed as objects to the LDP
ldp:contains predicate.
• stream elements "fade" with time
• listed stream contents may progressively change.
{
"@context": "http://www.w3.org/ns/ldp",
"@id": "http://example.org/streams/my-stream/output",
"contains": [
"http://example.org/streams/my-stream/output/graph1",
"http://example.org/streams/my-stream/output/graph2" ]
}
Publicizing stream elements
RSP
ReceiverPOST GET
stream
input
stream
outputRSP Sender RSP Consumer
19
Pulling stream elements
• Consumer explicitly requests for stream sub-sequences
• Practical to limit through size, time, filter parameters
{
"@context": {
"prov": "http://www.w3.org/ns/prov#",
"ex": "http://example.org#"},
"@graph": [
{ "prov:generatedAtTime": "2017-07-22T05:00:00.000Z",
"@id": "ex:Graph1",
"@graph": [
{ "@id": "ex:humidityObservation","ex:hasValue": 34.5 }]
},
{ "prov:generatedAtTime": "2017-07-22T06:00:00.000Z",
"@id": "ex:Graph2",
"@graph": [
{ "@id": "ex:humidityObservation","ex:hasValue": 44.5 }]
}
]
}
20
Pushing stream elements
Proactively send stream elements to the consumer
Example: Server-Sent Events protocol (HTTP-based).
• Continuously push RDF stream elements,
• One-directional (vs. bidirectional in WebSocket)
• Each data item is prefixed by the data: annotation.
Provide additional push protocols (different endpoints)
diverges from LDN  can only advertise one inbox
21
Register a query
• An actor may POST a query to an RSP endpoint
• Query must reference a valid registered RDF stream.
• RSP endpoint should return the URI of the resulting output stream, so that its
results can be retrieved (pulling or pushing).
RDF stream:
http://example.org/streams/my-stream
Query:
SELECT ?s ?p ?o
WHERE {
STREAM <http://example.org/streams/my-stream> [RANGE 2s]
{?s ?p ?o}
}
22
LDN for RDF streams
• Simple, generic, extensible protocol
• Encapsulate behavior or heterogeneous implementations
• Use of existing Standards/recommendations
• Decentralized communication
• Potential for interoperability
23
http://w3id.org/wesp/web-of-data-streams
gracias! ¿tienes preguntas?
Jean-Paul Calbimonte
University of Applied Sciences and Arts Western Switzerland
HES-SO Valais-Wallis
@jpcik

Más contenido relacionado

La actualidad más candente

Flink Gelly - Karlsruhe - June 2015
Flink Gelly - Karlsruhe - June 2015Flink Gelly - Karlsruhe - June 2015
Flink Gelly - Karlsruhe - June 2015Andra Lungu
 
Continuous Processing with Apache Flink - Strata London 2016
Continuous Processing with Apache Flink - Strata London 2016Continuous Processing with Apache Flink - Strata London 2016
Continuous Processing with Apache Flink - Strata London 2016Stephan Ewen
 
LarKC Tutorial at ISWC 2009 - Data Model
LarKC Tutorial at ISWC 2009 - Data ModelLarKC Tutorial at ISWC 2009 - Data Model
LarKC Tutorial at ISWC 2009 - Data ModelLarKC
 
Analysis of Air Pollution in Nova Scotia Presentation
Analysis of Air Pollution in Nova Scotia PresentationAnalysis of Air Pollution in Nova Scotia Presentation
Analysis of Air Pollution in Nova Scotia PresentationCarlo Carandang
 
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...Paolo Corti
 
Stateful Distributed Stream Processing
Stateful Distributed Stream ProcessingStateful Distributed Stream Processing
Stateful Distributed Stream ProcessingGyula Fóra
 
First Flink Bay Area meetup
First Flink Bay Area meetupFirst Flink Bay Area meetup
First Flink Bay Area meetupKostas Tzoumas
 
Apache Flink@ Strata & Hadoop World London
Apache Flink@ Strata & Hadoop World LondonApache Flink@ Strata & Hadoop World London
Apache Flink@ Strata & Hadoop World LondonStephan Ewen
 
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...Spark Summit
 
Stream Analytics with SQL on Apache Flink
Stream Analytics with SQL on Apache FlinkStream Analytics with SQL on Apache Flink
Stream Analytics with SQL on Apache FlinkFabian Hueske
 
Air Pollution in Nova Scotia: Analysis and Predictions
Air Pollution in Nova Scotia: Analysis and PredictionsAir Pollution in Nova Scotia: Analysis and Predictions
Air Pollution in Nova Scotia: Analysis and PredictionsCarlo Carandang
 
Machine Learning with Apache Flink at Stockholm Machine Learning Group
Machine Learning with Apache Flink at Stockholm Machine Learning GroupMachine Learning with Apache Flink at Stockholm Machine Learning Group
Machine Learning with Apache Flink at Stockholm Machine Learning GroupTill Rohrmann
 
SRAdb Bioconductor Package Overview
SRAdb Bioconductor Package OverviewSRAdb Bioconductor Package Overview
SRAdb Bioconductor Package OverviewSean Davis
 
Big Data, Mob Scale.
Big Data, Mob Scale.Big Data, Mob Scale.
Big Data, Mob Scale.darach
 
Flink Streaming Berlin Meetup
Flink Streaming Berlin MeetupFlink Streaming Berlin Meetup
Flink Streaming Berlin MeetupMárton Balassi
 
Flink Streaming @BudapestData
Flink Streaming @BudapestDataFlink Streaming @BudapestData
Flink Streaming @BudapestDataGyula Fóra
 
Managing and Consuming Completeness Information for Wikidata Using COOL-WD
Managing and Consuming Completeness Information for Wikidata Using COOL-WDManaging and Consuming Completeness Information for Wikidata Using COOL-WD
Managing and Consuming Completeness Information for Wikidata Using COOL-WDFariz Darari
 
Flink Forward SF 2017: Timo Walther - Table & SQL API – unified APIs for bat...
Flink Forward SF 2017: Timo Walther -  Table & SQL API – unified APIs for bat...Flink Forward SF 2017: Timo Walther -  Table & SQL API – unified APIs for bat...
Flink Forward SF 2017: Timo Walther - Table & SQL API – unified APIs for bat...Flink Forward
 
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...Flink Forward
 

La actualidad más candente (20)

Flink Gelly - Karlsruhe - June 2015
Flink Gelly - Karlsruhe - June 2015Flink Gelly - Karlsruhe - June 2015
Flink Gelly - Karlsruhe - June 2015
 
Continuous Processing with Apache Flink - Strata London 2016
Continuous Processing with Apache Flink - Strata London 2016Continuous Processing with Apache Flink - Strata London 2016
Continuous Processing with Apache Flink - Strata London 2016
 
LarKC Tutorial at ISWC 2009 - Data Model
LarKC Tutorial at ISWC 2009 - Data ModelLarKC Tutorial at ISWC 2009 - Data Model
LarKC Tutorial at ISWC 2009 - Data Model
 
Analysis of Air Pollution in Nova Scotia Presentation
Analysis of Air Pollution in Nova Scotia PresentationAnalysis of Air Pollution in Nova Scotia Presentation
Analysis of Air Pollution in Nova Scotia Presentation
 
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...
Harvard Hypermap: An Open Source Framework for Making the World’s Geospatial ...
 
Stateful Distributed Stream Processing
Stateful Distributed Stream ProcessingStateful Distributed Stream Processing
Stateful Distributed Stream Processing
 
First Flink Bay Area meetup
First Flink Bay Area meetupFirst Flink Bay Area meetup
First Flink Bay Area meetup
 
Apache Flink@ Strata & Hadoop World London
Apache Flink@ Strata & Hadoop World LondonApache Flink@ Strata & Hadoop World London
Apache Flink@ Strata & Hadoop World London
 
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...
Dynamic Community Detection for Large-scale e-Commerce data with Spark Stream...
 
Stream Analytics with SQL on Apache Flink
Stream Analytics with SQL on Apache FlinkStream Analytics with SQL on Apache Flink
Stream Analytics with SQL on Apache Flink
 
Air Pollution in Nova Scotia: Analysis and Predictions
Air Pollution in Nova Scotia: Analysis and PredictionsAir Pollution in Nova Scotia: Analysis and Predictions
Air Pollution in Nova Scotia: Analysis and Predictions
 
Machine Learning with Apache Flink at Stockholm Machine Learning Group
Machine Learning with Apache Flink at Stockholm Machine Learning GroupMachine Learning with Apache Flink at Stockholm Machine Learning Group
Machine Learning with Apache Flink at Stockholm Machine Learning Group
 
SRAdb Bioconductor Package Overview
SRAdb Bioconductor Package OverviewSRAdb Bioconductor Package Overview
SRAdb Bioconductor Package Overview
 
Big Data, Mob Scale.
Big Data, Mob Scale.Big Data, Mob Scale.
Big Data, Mob Scale.
 
Flink Streaming Berlin Meetup
Flink Streaming Berlin MeetupFlink Streaming Berlin Meetup
Flink Streaming Berlin Meetup
 
Flink Streaming @BudapestData
Flink Streaming @BudapestDataFlink Streaming @BudapestData
Flink Streaming @BudapestData
 
Managing and Consuming Completeness Information for Wikidata Using COOL-WD
Managing and Consuming Completeness Information for Wikidata Using COOL-WDManaging and Consuming Completeness Information for Wikidata Using COOL-WD
Managing and Consuming Completeness Information for Wikidata Using COOL-WD
 
Flink Forward SF 2017: Timo Walther - Table & SQL API – unified APIs for bat...
Flink Forward SF 2017: Timo Walther -  Table & SQL API – unified APIs for bat...Flink Forward SF 2017: Timo Walther -  Table & SQL API – unified APIs for bat...
Flink Forward SF 2017: Timo Walther - Table & SQL API – unified APIs for bat...
 
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...
Flink forward SF 2017: Ufuk Celebi - The Stream Processor as a Database: Buil...
 
Flink internals web
Flink internals web Flink internals web
Flink internals web
 

Similar a Linked Data Notifications for RDF Streams

RSP-QL*: Querying Data-Level Annotations in RDF Streams
RSP-QL*: Querying Data-Level Annotations in RDF StreamsRSP-QL*: Querying Data-Level Annotations in RDF Streams
RSP-QL*: Querying Data-Level Annotations in RDF Streamskeski
 
RDF Stream Processing: Let's React
RDF Stream Processing: Let's ReactRDF Stream Processing: Let's React
RDF Stream Processing: Let's ReactJean-Paul Calbimonte
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingPlanetData Network of Excellence
 
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...Oscar Corcho
 
RDF Stream Processing Models (SR4LD2013)
RDF Stream Processing Models (SR4LD2013)RDF Stream Processing Models (SR4LD2013)
RDF Stream Processing Models (SR4LD2013)Daniele Dell'Aglio
 
Spark Community Update - Spark Summit San Francisco 2015
Spark Community Update - Spark Summit San Francisco 2015Spark Community Update - Spark Summit San Francisco 2015
Spark Community Update - Spark Summit San Francisco 2015Databricks
 
Maria Patterson - Building a community fountain around your data stream
Maria Patterson - Building a community fountain around your data streamMaria Patterson - Building a community fountain around your data stream
Maria Patterson - Building a community fountain around your data streamPyData
 
Towards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsTowards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsAlejandro Llaves
 
Towards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsTowards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsAlejandro Llaves
 
Free Code Friday - Spark Streaming with HBase
Free Code Friday - Spark Streaming with HBaseFree Code Friday - Spark Streaming with HBase
Free Code Friday - Spark Streaming with HBaseMapR Technologies
 
GraphX: Graph analytics for insights about developer communities
GraphX: Graph analytics for insights about developer communitiesGraphX: Graph analytics for insights about developer communities
GraphX: Graph analytics for insights about developer communitiesPaco Nathan
 
Graph Analytics in Spark
Graph Analytics in SparkGraph Analytics in Spark
Graph Analytics in SparkPaco Nathan
 
2014 sept 26_thug_lambda_part1
2014 sept 26_thug_lambda_part12014 sept 26_thug_lambda_part1
2014 sept 26_thug_lambda_part1Adam Muise
 
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...Debraj GuhaThakurta
 
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...Debraj GuhaThakurta
 
Spark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsSpark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsGuido Schmutz
 
Building Scalable Data Pipelines - 2016 DataPalooza Seattle
Building Scalable Data Pipelines - 2016 DataPalooza SeattleBuilding Scalable Data Pipelines - 2016 DataPalooza Seattle
Building Scalable Data Pipelines - 2016 DataPalooza SeattleEvan Chan
 
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...Guido Schmutz
 
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Web
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic WebESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Web
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Webeswcsummerschool
 
Staab programming thesemanticweb
Staab programming thesemanticwebStaab programming thesemanticweb
Staab programming thesemanticwebAneta Tu
 

Similar a Linked Data Notifications for RDF Streams (20)

RSP-QL*: Querying Data-Level Annotations in RDF Streams
RSP-QL*: Querying Data-Level Annotations in RDF StreamsRSP-QL*: Querying Data-Level Annotations in RDF Streams
RSP-QL*: Querying Data-Level Annotations in RDF Streams
 
RDF Stream Processing: Let's React
RDF Stream Processing: Let's ReactRDF Stream Processing: Let's React
RDF Stream Processing: Let's React
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream Processing
 
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
OrdRing 2013 keynote - On the need for a W3C community group on RDF Stream Pr...
 
RDF Stream Processing Models (SR4LD2013)
RDF Stream Processing Models (SR4LD2013)RDF Stream Processing Models (SR4LD2013)
RDF Stream Processing Models (SR4LD2013)
 
Spark Community Update - Spark Summit San Francisco 2015
Spark Community Update - Spark Summit San Francisco 2015Spark Community Update - Spark Summit San Francisco 2015
Spark Community Update - Spark Summit San Francisco 2015
 
Maria Patterson - Building a community fountain around your data stream
Maria Patterson - Building a community fountain around your data streamMaria Patterson - Building a community fountain around your data stream
Maria Patterson - Building a community fountain around your data stream
 
Towards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsTowards efficient processing of RDF data streams
Towards efficient processing of RDF data streams
 
Towards efficient processing of RDF data streams
Towards efficient processing of RDF data streamsTowards efficient processing of RDF data streams
Towards efficient processing of RDF data streams
 
Free Code Friday - Spark Streaming with HBase
Free Code Friday - Spark Streaming with HBaseFree Code Friday - Spark Streaming with HBase
Free Code Friday - Spark Streaming with HBase
 
GraphX: Graph analytics for insights about developer communities
GraphX: Graph analytics for insights about developer communitiesGraphX: Graph analytics for insights about developer communities
GraphX: Graph analytics for insights about developer communities
 
Graph Analytics in Spark
Graph Analytics in SparkGraph Analytics in Spark
Graph Analytics in Spark
 
2014 sept 26_thug_lambda_part1
2014 sept 26_thug_lambda_part12014 sept 26_thug_lambda_part1
2014 sept 26_thug_lambda_part1
 
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
 
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
 
Spark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsSpark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka Streams
 
Building Scalable Data Pipelines - 2016 DataPalooza Seattle
Building Scalable Data Pipelines - 2016 DataPalooza SeattleBuilding Scalable Data Pipelines - 2016 DataPalooza Seattle
Building Scalable Data Pipelines - 2016 DataPalooza Seattle
 
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...
Spark (Structured) Streaming vs. Kafka Streams - two stream processing platfo...
 
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Web
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic WebESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Web
ESWC SS 2013 - Tuesday Keynote Steffen Staab: Programming the Semantic Web
 
Staab programming thesemanticweb
Staab programming thesemanticwebStaab programming thesemanticweb
Staab programming thesemanticweb
 

Más de Jean-Paul Calbimonte

Towards Collaborative Creativity in Persuasive Multi-agent Systems
Towards Collaborative Creativity in Persuasive Multi-agent SystemsTowards Collaborative Creativity in Persuasive Multi-agent Systems
Towards Collaborative Creativity in Persuasive Multi-agent SystemsJean-Paul Calbimonte
 
A Platform for Difficulty Assessment and Recommendation of Hiking Trails
A Platform for Difficulty Assessment andRecommendation of Hiking TrailsA Platform for Difficulty Assessment andRecommendation of Hiking Trails
A Platform for Difficulty Assessment and Recommendation of Hiking TrailsJean-Paul Calbimonte
 
Decentralized Management of Patient Profiles and Trajectories through Semanti...
Decentralized Management of Patient Profiles and Trajectories through Semanti...Decentralized Management of Patient Profiles and Trajectories through Semanti...
Decentralized Management of Patient Profiles and Trajectories through Semanti...Jean-Paul Calbimonte
 
Personal Data Privacy Semantics in Multi-Agent Systems Interactions
Personal Data Privacy Semantics in Multi-Agent Systems InteractionsPersonal Data Privacy Semantics in Multi-Agent Systems Interactions
Personal Data Privacy Semantics in Multi-Agent Systems InteractionsJean-Paul Calbimonte
 
SanTour: Personalized Recommendation of Hiking Trails to Health Pro files
SanTour: Personalized Recommendation of Hiking Trails to Health ProfilesSanTour: Personalized Recommendation of Hiking Trails to Health Profiles
SanTour: Personalized Recommendation of Hiking Trails to Health Pro filesJean-Paul Calbimonte
 
Multi-agent interactions on the Web through Linked Data Notifications
Multi-agent interactions on the Web through Linked Data NotificationsMulti-agent interactions on the Web through Linked Data Notifications
Multi-agent interactions on the Web through Linked Data NotificationsJean-Paul Calbimonte
 
The MedRed Ontology for Representing Clinical Data Acquisition Metadata
The MedRed Ontology for Representing Clinical Data Acquisition MetadataThe MedRed Ontology for Representing Clinical Data Acquisition Metadata
The MedRed Ontology for Representing Clinical Data Acquisition MetadataJean-Paul Calbimonte
 
Fundamentos de Scala (Scala Basics) (español) Catecbol
Fundamentos de Scala (Scala Basics) (español) CatecbolFundamentos de Scala (Scala Basics) (español) Catecbol
Fundamentos de Scala (Scala Basics) (español) CatecbolJean-Paul Calbimonte
 
Toward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebToward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebJean-Paul Calbimonte
 
Detection of hypoglycemic events through wearable sensors
Detection of hypoglycemic events through wearable sensorsDetection of hypoglycemic events through wearable sensors
Detection of hypoglycemic events through wearable sensorsJean-Paul Calbimonte
 
The Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksThe Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksJean-Paul Calbimonte
 
Scala Programming for Semantic Web Developers ESWC Semdev2015
Scala Programming for Semantic Web Developers ESWC Semdev2015Scala Programming for Semantic Web Developers ESWC Semdev2015
Scala Programming for Semantic Web Developers ESWC Semdev2015Jean-Paul Calbimonte
 
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsXGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsJean-Paul Calbimonte
 
GSN Global Sensor Networks for Environmental Data Management
GSN Global Sensor Networks for Environmental Data ManagementGSN Global Sensor Networks for Environmental Data Management
GSN Global Sensor Networks for Environmental Data ManagementJean-Paul Calbimonte
 
SSN2013 Demo: tablet based visualization of transport data with SPARQLStream
SSN2013 Demo: tablet based visualization of transport data with SPARQLStreamSSN2013 Demo: tablet based visualization of transport data with SPARQLStream
SSN2013 Demo: tablet based visualization of transport data with SPARQLStreamJean-Paul Calbimonte
 
Tutorial Stream Reasoning SPARQLstream and Morph-streams
Tutorial Stream Reasoning SPARQLstream and Morph-streamsTutorial Stream Reasoning SPARQLstream and Morph-streams
Tutorial Stream Reasoning SPARQLstream and Morph-streamsJean-Paul Calbimonte
 

Más de Jean-Paul Calbimonte (20)

Towards Collaborative Creativity in Persuasive Multi-agent Systems
Towards Collaborative Creativity in Persuasive Multi-agent SystemsTowards Collaborative Creativity in Persuasive Multi-agent Systems
Towards Collaborative Creativity in Persuasive Multi-agent Systems
 
A Platform for Difficulty Assessment and Recommendation of Hiking Trails
A Platform for Difficulty Assessment andRecommendation of Hiking TrailsA Platform for Difficulty Assessment andRecommendation of Hiking Trails
A Platform for Difficulty Assessment and Recommendation of Hiking Trails
 
Stream reasoning agents
Stream reasoning agentsStream reasoning agents
Stream reasoning agents
 
Decentralized Management of Patient Profiles and Trajectories through Semanti...
Decentralized Management of Patient Profiles and Trajectories through Semanti...Decentralized Management of Patient Profiles and Trajectories through Semanti...
Decentralized Management of Patient Profiles and Trajectories through Semanti...
 
Personal Data Privacy Semantics in Multi-Agent Systems Interactions
Personal Data Privacy Semantics in Multi-Agent Systems InteractionsPersonal Data Privacy Semantics in Multi-Agent Systems Interactions
Personal Data Privacy Semantics in Multi-Agent Systems Interactions
 
RDF data validation 2017 SHACL
RDF data validation 2017 SHACLRDF data validation 2017 SHACL
RDF data validation 2017 SHACL
 
SanTour: Personalized Recommendation of Hiking Trails to Health Pro files
SanTour: Personalized Recommendation of Hiking Trails to Health ProfilesSanTour: Personalized Recommendation of Hiking Trails to Health Profiles
SanTour: Personalized Recommendation of Hiking Trails to Health Pro files
 
Multi-agent interactions on the Web through Linked Data Notifications
Multi-agent interactions on the Web through Linked Data NotificationsMulti-agent interactions on the Web through Linked Data Notifications
Multi-agent interactions on the Web through Linked Data Notifications
 
The MedRed Ontology for Representing Clinical Data Acquisition Metadata
The MedRed Ontology for Representing Clinical Data Acquisition MetadataThe MedRed Ontology for Representing Clinical Data Acquisition Metadata
The MedRed Ontology for Representing Clinical Data Acquisition Metadata
 
Fundamentos de Scala (Scala Basics) (español) Catecbol
Fundamentos de Scala (Scala Basics) (español) CatecbolFundamentos de Scala (Scala Basics) (español) Catecbol
Fundamentos de Scala (Scala Basics) (español) Catecbol
 
Toward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebToward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the Web
 
Detection of hypoglycemic events through wearable sensors
Detection of hypoglycemic events through wearable sensorsDetection of hypoglycemic events through wearable sensors
Detection of hypoglycemic events through wearable sensors
 
The Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksThe Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor Networks
 
Scala Programming for Semantic Web Developers ESWC Semdev2015
Scala Programming for Semantic Web Developers ESWC Semdev2015Scala Programming for Semantic Web Developers ESWC Semdev2015
Scala Programming for Semantic Web Developers ESWC Semdev2015
 
Streams of RDF Events Derive2015
Streams of RDF Events Derive2015Streams of RDF Events Derive2015
Streams of RDF Events Derive2015
 
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsXGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
 
X-GSN in OpenIoT SummerSchool
X-GSN in OpenIoT SummerSchoolX-GSN in OpenIoT SummerSchool
X-GSN in OpenIoT SummerSchool
 
GSN Global Sensor Networks for Environmental Data Management
GSN Global Sensor Networks for Environmental Data ManagementGSN Global Sensor Networks for Environmental Data Management
GSN Global Sensor Networks for Environmental Data Management
 
SSN2013 Demo: tablet based visualization of transport data with SPARQLStream
SSN2013 Demo: tablet based visualization of transport data with SPARQLStreamSSN2013 Demo: tablet based visualization of transport data with SPARQLStream
SSN2013 Demo: tablet based visualization of transport data with SPARQLStream
 
Tutorial Stream Reasoning SPARQLstream and Morph-streams
Tutorial Stream Reasoning SPARQLstream and Morph-streamsTutorial Stream Reasoning SPARQLstream and Morph-streams
Tutorial Stream Reasoning SPARQLstream and Morph-streams
 

Último

Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableSeo
 
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...SUHANI PANDEY
 
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort Service
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort ServiceBusty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort Service
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort ServiceDelhi Call girls
 
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...tanu pandey
 
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...SUHANI PANDEY
 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...singhpriety023
 
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...SUHANI PANDEY
 
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdfMatthew Sinclair
 
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...Neha Pandey
 
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men 🔝mehsana🔝 Escorts...
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men  🔝mehsana🔝   Escorts...➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men  🔝mehsana🔝   Escorts...
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men 🔝mehsana🔝 Escorts...nirzagarg
 
Russian Call Girls Pune (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...
Russian Call Girls Pune  (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...Russian Call Girls Pune  (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...
Russian Call Girls Pune (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...SUHANI PANDEY
 
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Delhi Call girls
 
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Bookingdharasingh5698
 
Al Barsha Night Partner +0567686026 Call Girls Dubai
Al Barsha Night Partner +0567686026 Call Girls  DubaiAl Barsha Night Partner +0567686026 Call Girls  Dubai
Al Barsha Night Partner +0567686026 Call Girls DubaiEscorts Call Girls
 
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...Escorts Call Girls
 
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubai
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls DubaiDubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubai
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubaikojalkojal131
 
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.soniya singh
 

Último (20)

📱Dehradun Call Girls Service 📱☎️ +91'905,3900,678 ☎️📱 Call Girls In Dehradun 📱
📱Dehradun Call Girls Service 📱☎️ +91'905,3900,678 ☎️📱 Call Girls In Dehradun 📱📱Dehradun Call Girls Service 📱☎️ +91'905,3900,678 ☎️📱 Call Girls In Dehradun 📱
📱Dehradun Call Girls Service 📱☎️ +91'905,3900,678 ☎️📱 Call Girls In Dehradun 📱
 
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
 
6.High Profile Call Girls In Punjab +919053900678 Punjab Call GirlHigh Profil...
6.High Profile Call Girls In Punjab +919053900678 Punjab Call GirlHigh Profil...6.High Profile Call Girls In Punjab +919053900678 Punjab Call GirlHigh Profil...
6.High Profile Call Girls In Punjab +919053900678 Punjab Call GirlHigh Profil...
 
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...
Pirangut | Call Girls Pune Phone No 8005736733 Elite Escort Service Available...
 
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort Service
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort ServiceBusty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort Service
Busty Desi⚡Call Girls in Vasundhara Ghaziabad >༒8448380779 Escort Service
 
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...
 
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
 
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...
Yerawada ] Independent Escorts in Pune - Book 8005736733 Call Girls Available...
 
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
 
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...
𓀤Call On 7877925207 𓀤 Ahmedguda Call Girls Hot Model With Sexy Bhabi Ready Fo...
 
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men 🔝mehsana🔝 Escorts...
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men  🔝mehsana🔝   Escorts...➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men  🔝mehsana🔝   Escorts...
➥🔝 7737669865 🔝▻ mehsana Call-girls in Women Seeking Men 🔝mehsana🔝 Escorts...
 
Russian Call Girls Pune (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...
Russian Call Girls Pune  (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...Russian Call Girls Pune  (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...
Russian Call Girls Pune (Adult Only) 8005736733 Escort Service 24x7 Cash Pay...
 
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
 
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Himatnagar 7001035870 Whatsapp Number, 24/07 Booking
 
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
 
Al Barsha Night Partner +0567686026 Call Girls Dubai
Al Barsha Night Partner +0567686026 Call Girls  DubaiAl Barsha Night Partner +0567686026 Call Girls  Dubai
Al Barsha Night Partner +0567686026 Call Girls Dubai
 
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
 
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubai
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls DubaiDubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubai
Dubai=Desi Dubai Call Girls O525547819 Outdoor Call Girls Dubai
 
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
 

Linked Data Notifications for RDF Streams

  • 1. Linked Data Notifications for RDF Streams Jean-Paul Calbimonte Institute of Information Systems University of Applied Sciences and Arts Western Switzerland (HES-SO Valais-Wallis) International Semantic Web Conference ISWC Vienna, October 2017 @jpcik
  • 2. 2 HES-SO: University of Applied Sciences and Arts Western Switzerland We are here, surrounded by mountains!
  • 3. 3 Linked Data Notifications for RDF Streams 1
  • 4. 4 RDF Streams triplesRDF graph: graph Triple Store store post query triples graph+ timestampRDF stream graph: (graph, t) feed register query triplesRDF Stream Processor
  • 5. 5 RSP Data Model https://github.com/streamreasoning/RSP-QL/blob/master/Semantics.md Timestamped Graph :g1 {:axel :isIn :RedRoom. :darko :isIn :RedRoom} {:g1 prov:generatedAtTime "2001-10-26T21:32:52"}  Many/One-triple graphs  Multiple time predicates  Implicit timestamp  Different timestamp representations  Contemporaneity Allows: A RDF stream S consists of a sequence of timestamped graphs (with a partial order) RDF Stream :g1 {:axel :isIn :RedRoom. :darko :isIn :RedRoom} {:g1,prov:generatedAtTime,t1} :g2 {:axel :isIn :BlueRoom. } {:g2,prov:generatedAtTime,t2} :g3 {:minh :isIn :RedRoom. } {:g3,prov:generatedAtTime,t3} ... https://www.w3.org/community/rsp/ http://w3id.org/rsp/abstract-syntax
  • 6. 6 RDF Stream Processors Triple Wave CSPARQL Etalis TrOWL CQELS Morph streams RDF stream RDF stream RDF stream RDF stream RDF stream
  • 7. 7 Linked Data Notifications for RDF Streams 2
  • 8. 8
  • 9. 9 LDN: Basics Sender Target Receiver Consumer Resource which notifications is to/about sends notifications consumes notifications exposes notifications through inbox creates notifications in inbox inbox
  • 11. 11 LDN Interactions Sender Consumer ReceiverPOST GET notifications Inbox Consumer Receiver GET ldp:contains Inbox notifications
  • 12. 12 LDN for RDF Streams 3
  • 13. 13 We think LDN can help to get here: Triple Wave CSPARQL Etalis TrOWL CQELS Morph streams RDF stream RDF stream RDF stream RDF stream RDF stream
  • 14. 14 Streams and IRIs • An RDF stream is uniquely identified by an IRI • Stream IRI: obtain information about the stream • endpoints • RDF stream is a read/write Web resource detached from potentially multiple endpoints used to interact with its contents.
  • 15. 15 Endpoint discovery The endpoints of an RDF stream: GET http://example.org/streams/my-stream Response should include metadata about the stream: { "@context": "http://www.w3.org/ns/ldp", "@id": "http://example.org/streams/my-stream", "inbox": "http://example.org/streams/my-stream/inbox" } RSP Sender RSP Consumer RDF StreamGET/HEAD GET/HEAD inbox inbox
  • 16. 16 Input/output stream • Specialize it in two distinct types: an input inbox and an output inbox. • Input stream: receiving notifications (i.e. to be fed) by senders. • Output stream: only meant to be consumed, as they are produced by an RSP engine. { "@context": "http://w3id.org/rsp/ldn-s", "@id": "http://example.org/streams/my-stream", "input": "http://example.org/streams/my-stream/input" }
  • 17. 17 Sending stream notification • POST stream elements • body should contain the stream element that will be fed to the stream POST /streams/my-stream/input HTTP/1.1 Host: example.org Content-Type: application/ld+json { "prov:generatedAtTime": "2017-07-22T05:00:00.000Z", "@id": "ex:Graph1", "@graph": [ { "@id": "ex:humidityObservation", "ex:hasValue": 34.5}], "@context": { "prov": "http://www.w3.org/ns/prov#", "ex": "http://example.org#"} } RSP ReceiverPOST stream inputRSP Sender
  • 18. 18 • GET stream elements from an RDF stream endpoint • return the notification URIs listed as objects to the LDP ldp:contains predicate. • stream elements "fade" with time • listed stream contents may progressively change. { "@context": "http://www.w3.org/ns/ldp", "@id": "http://example.org/streams/my-stream/output", "contains": [ "http://example.org/streams/my-stream/output/graph1", "http://example.org/streams/my-stream/output/graph2" ] } Publicizing stream elements RSP ReceiverPOST GET stream input stream outputRSP Sender RSP Consumer
  • 19. 19 Pulling stream elements • Consumer explicitly requests for stream sub-sequences • Practical to limit through size, time, filter parameters { "@context": { "prov": "http://www.w3.org/ns/prov#", "ex": "http://example.org#"}, "@graph": [ { "prov:generatedAtTime": "2017-07-22T05:00:00.000Z", "@id": "ex:Graph1", "@graph": [ { "@id": "ex:humidityObservation","ex:hasValue": 34.5 }] }, { "prov:generatedAtTime": "2017-07-22T06:00:00.000Z", "@id": "ex:Graph2", "@graph": [ { "@id": "ex:humidityObservation","ex:hasValue": 44.5 }] } ] }
  • 20. 20 Pushing stream elements Proactively send stream elements to the consumer Example: Server-Sent Events protocol (HTTP-based). • Continuously push RDF stream elements, • One-directional (vs. bidirectional in WebSocket) • Each data item is prefixed by the data: annotation. Provide additional push protocols (different endpoints) diverges from LDN  can only advertise one inbox
  • 21. 21 Register a query • An actor may POST a query to an RSP endpoint • Query must reference a valid registered RDF stream. • RSP endpoint should return the URI of the resulting output stream, so that its results can be retrieved (pulling or pushing). RDF stream: http://example.org/streams/my-stream Query: SELECT ?s ?p ?o WHERE { STREAM <http://example.org/streams/my-stream> [RANGE 2s] {?s ?p ?o} }
  • 22. 22 LDN for RDF streams • Simple, generic, extensible protocol • Encapsulate behavior or heterogeneous implementations • Use of existing Standards/recommendations • Decentralized communication • Potential for interoperability
  • 24. gracias! ¿tienes preguntas? Jean-Paul Calbimonte University of Applied Sciences and Arts Western Switzerland HES-SO Valais-Wallis @jpcik