-
Recent Posts
Categories
- ALOE
- Announcements
- AutoSPARQL
- best practices in the Web of Data
- BigDataEurope
- BorderFlow
- Call for Paper
- Call for Students
- Cofundos
- Colloquium
- conTEXT
- Data Quality
- Dataset Release
- dbpedia
- DIESEL
- DL-Learner
- DSSN
- Erfurt
- Events
- FOX
- GEISER
- HOBBIT
- invited talk
- Kickoff
- Language Identification
- LATC
- LDAP 2 SPARQL
- LEDS
- LESS
- LIMES
- Linked Geo Data
- LinkingLOD
- LOD2
- LUCID
- major tool release
- Mobile Social Semantic Web
- NLP2RDF
- OntoWiki
- OntoWiki Mobile
- ORE
- paper presentation
- Papers
- PHD progress report
- PHD thesis defense practise
- PhD topic
- Powl
- Press Release
- project kick-off
- Projects
- RDFaCE
- Research
- SAKE
- SANSA
- SCMS
- SlideWiki
- SLIPO
- SMLBench
- Software Releases
- SoftWiki
- SPARQL2NL
- Triplify
- tutorial
- Uncategorized
- workshop
- workshop or tutorial
- xOperator
- Xturtle
Meta
Category Archives: major tool release
OntoWiki 1.0.0 released
Dear Semantic Web and Linked Data Community, we are proud to finally announce the releases of OntoWiki 1.0.0 and the underlying Erfurt Framework in version 1.8.0. After 10 years of development we’ve decided to release the teenager OntoWiki from the … Continue reading
Posted in Announcements, LEDS, major tool release, OntoWiki, Software Releases
Tagged 1.0.0, OntoWiki, PHP, release
Comments Off on OntoWiki 1.0.0 released
AKSW Colloquium, 18.04.2016, DISPONTE, Workbench for Big Data Dev
In this week’s Colloquium, today 18th of April at 3 PM, Patrick Westphal will present the paper ‘Probabilistic Description Logics under the Distribution Semantics‘ by Riguzzi et. al. Abstract Representing uncertain information is crucial for modeling real world domains. In … Continue reading
Posted in Colloquium, major tool release, paper presentation
Comments Off on AKSW Colloquium, 18.04.2016, DISPONTE, Workbench for Big Data Dev
DL-Learner 1.0 (Supervised Structured Machine Learning Framework) Released
Dear all, we are happy to announce DL-Learner 1.0. DL-Learner is a framework containing algorithms for supervised machine learning in RDF and OWL. DL-Learner can use various RDF and OWL serialization formats as well as SPARQL endpoints as input, can … Continue reading