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jmdns from group javax.jmdns (version 3.4.1)

JmDNS is a Java implementation of multi-cast DNS and can be used for service registration and discovery in local area networks. JmDNS is fully compatible with Apple's Bonjour. The project was originally started in December 2002 by Arthur van Hoff at Strangeberry. In November 2003 the project was moved to SourceForge, and the name was changed from JRendezvous to JmDNS for legal reasons. Many thanks to Stuart Cheshire for help and moral support.

Group: javax.jmdns Artifact: jmdns
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6 downloads
Artifact jmdns
Group javax.jmdns
Version 3.4.1
Last update 25. August 2011
Organization JmDNS
URL http://sourceforge.net/projects/jmdns/
License Apache License, Version 2.0
Dependencies amount 0
Dependencies No dependencies
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luzzu-webapp from group io.github.luzzu (version 4.0.0)

Group: io.github.luzzu Artifact: luzzu-webapp
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0 downloads
Artifact luzzu-webapp
Group io.github.luzzu
Version 4.0.0
Last update 26. October 2018
Organization not specified
URL Not specified
License not specified
Dependencies amount 6
Dependencies luzzu-semantics, commons-codec, luzzu-highlevel-operations, guava, jackson-mapper-asl, jackson-core-asl,
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luzzu-annotations from group io.github.luzzu (version 4.0.0)

Group: io.github.luzzu Artifact: luzzu-annotations
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0 downloads
Artifact luzzu-annotations
Group io.github.luzzu
Version 4.0.0
Last update 26. October 2018
Organization not specified
URL Not specified
License not specified
Dependencies amount 3
Dependencies luzzu-semantics, luzzu-assessment, luzzu-lowlevel-operations,
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luzzu-assessment from group io.github.luzzu (version 4.0.0)

Group: io.github.luzzu Artifact: luzzu-assessment
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0 downloads
Artifact luzzu-assessment
Group io.github.luzzu
Version 4.0.0
Last update 26. October 2018
Organization not specified
URL Not specified
License not specified
Dependencies amount 3
Dependencies luzzu-semantics, luzzu-lowlevel-operations, luzzu-ld-qualitymetrics-commons,
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luzzu from group io.github.luzzu (version 4.0.0)

Luzzu is a Quality Assessment Framework for Linked Open Datasets. It is a generic framework based on the Dataset Quality Ontology (daQ), allowing users to define their own quality metrics. Luzzu is an integrated platform that: - assesses Linked Data quality using a library of generic and user-provided domain specific quality metrics in a scalable manner; - provides queryable quality metadata on the assessed datasets; - assembles detailed quality reports on assessed datasets. Furthermore, the infrastructure: - scales for the assessment of big datasets; - can be easily extended by the users by creating their custom and domain-specific pluggable metrics, either by employing a novel declarative quality metric specification language or conventional imperative plugins; - employs a comprehensive ontology framework for representing and exchanging all quality related information in the assessment workflow; - implements quality-driven dataset ranking algorithms facilitating use-case driven discovery and retrieval.

Group: io.github.luzzu Artifact: luzzu
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0 downloads
Artifact luzzu
Group io.github.luzzu
Version 4.0.0
Last update 26. October 2018
Organization ADAPT Centre, Trinity College Dublin, Ireland
URL https://luzzu.github.io/Framework/
License GNU GENERAL PUBLIC LICENSE, Version 2.0
Dependencies amount 15
Dependencies hamcrest-all, apache-jena-libs, jena-core, log4j, slf4j-api, jcl-over-slf4j, slf4j-log4j12, slf4j-jdk14, commons-collections4, jackson-core, httpclient, httpcore, httpcore-nio, httpasyncclient, httpasyncclient-cache,
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luzzu-webapp from group de.unibonn.iai.eis (version 2.0.1)

Group: de.unibonn.iai.eis Artifact: luzzu-webapp
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0 downloads
Artifact luzzu-webapp
Group de.unibonn.iai.eis
Version 2.0.1
Last update 09. June 2017
Organization not specified
URL Not specified
License not specified
Dependencies amount 6
Dependencies luzzu-semantics, commons-codec, luzzu-operations, guava, jackson-mapper-asl, jackson-core-asl,
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luzzu-annotations from group de.unibonn.iai.eis (version 2.0.1)

Group: de.unibonn.iai.eis Artifact: luzzu-annotations
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0 downloads
Artifact luzzu-annotations
Group de.unibonn.iai.eis
Version 2.0.1
Last update 09. June 2017
Organization not specified
URL Not specified
License not specified
Dependencies amount 3
Dependencies luzzu-semantics, luzzu-assessment, luzzu-operations,
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luzzu-assessment from group de.unibonn.iai.eis (version 2.0.1)

Group: de.unibonn.iai.eis Artifact: luzzu-assessment
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0 downloads
Artifact luzzu-assessment
Group de.unibonn.iai.eis
Version 2.0.1
Last update 09. June 2017
Organization not specified
URL Not specified
License not specified
Dependencies amount 1
Dependencies luzzu-semantics,
There are maybe transitive dependencies!

luzzu from group de.unibonn.iai.eis (version 2.0.1)

Luzzu is a Quality Assessment Framework for Linked Open Datasets. It is a generic framework based on the Dataset Quality Ontology (daQ), allowing users to define their own quality metrics. Luzzu is an integrated platform that: - assesses Linked Data quality using a library of generic and user-provided domain specific quality metrics in a scalable manner; - provides queryable quality metadata on the assessed datasets; - assembles detailed quality reports on assessed datasets. Furthermore, the infrastructure: - scales for the assessment of big datasets; - can be easily extended by the users by creating their custom and domain-specific pluggable metrics, either by employing a novel declarative quality metric specification language or conventional imperative plugins; - employs a comprehensive ontology framework for representing and exchanging all quality related information in the assessment workflow; - implements quality-driven dataset ranking algorithms facilitating use-case driven discovery and retrieval.

Group: de.unibonn.iai.eis Artifact: luzzu
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0 downloads
Artifact luzzu
Group de.unibonn.iai.eis
Version 2.0.1
Last update 09. June 2017
Organization Enterprise Information Systems - University of Bonn
URL http://eis-bonn.github.io/Luzzu/
License GNU GENERAL PUBLIC LICENSE, Version 2.0
Dependencies amount 10
Dependencies mockito-core, hamcrest-all, apache-jena-libs, log4j, slf4j-api, jcl-over-slf4j, slf4j-log4j12, slf4j-jdk14, commons-collections4, jackson-core-asl,
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oneClassClassifier from group nz.ac.waikato.cms.weka (version 1.0.4)

Performs one-class classification on a dataset. Classifier reduces the class being classified to just a single class, and learns the datawithout using any information from other classes. The testing stage will classify as 'target'or 'outlier' - so in order to calculate the outlier pass rate the dataset must contain informationfrom more than one class. Also, the output varies depending on whether the label 'outlier' exists in the instances usedto build the classifier. If so, then 'outlier' will be predicted, if not, then the label willbe considered missing when the prediction does not favour the target class. The 'outlier' classwill not be used to build the model if there are instances of this class in the dataset. It cansimply be used as a flag, you do not need to relabel any classes. For more information, see: Kathryn Hempstalk, Eibe Frank, Ian H. Witten: One-Class Classification by Combining Density and Class Probability Estimation. In: Proceedings of the 12th European Conference on Principles and Practice of Knowledge Discovery in Databases and 19th European Conference on Machine Learning, ECMLPKDD2008, Berlin, 505--519, 2008.

Group: nz.ac.waikato.cms.weka Artifact: oneClassClassifier
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3 downloads
Artifact oneClassClassifier
Group nz.ac.waikato.cms.weka
Version 1.0.4
Last update 14. May 2013
Organization University of Waikato, Hamilton, NZ
URL http://weka.sourceforge.net/doc.packages/oneClassClassifier
License GNU General Public License 3
Dependencies amount 1
Dependencies weka-dev,
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