Agile Knowledge Engineering and Semantic Web (AKSW)
The Research Group Agile Knowledge Engineering and Semantic Web (AKSW) is hosted by the Chair of Business Information Systems (BIS) of the Institute of Computer Science (IfI) / University of Leipzig as well as the Institute for Applied Informatics (InfAI).
Goals
- Development of methods, tools and applications for adaptive Knowledge Engineering in the context of the Semantic Web
- Research of underlying Semantic Web technologies and development of fundamental Semantic Web tools and applications
- Maturation of strategies for fruitfully combining the Social Web paradigms with semantic knowledge representation techniques
AKSW is committed to the free software, open source, open access and open knowledge movements.
Projects
AKSW has launched a number of high-impact R&D projects. Please look at the projects page for a comprehensive description of AKSW's funded as well as community, open source and past projects.
Demos
Please have a look at our demos:
-
AutoSPARQL allows you to create queries for over RDF knowledge bases with low effort
-
Boa is a tool for pattern-based knowledge extraction.
-
CubeViz The RDF DataCube Visualization Tool
-
DeFacto is an algorithm for validating statements by finding confirming sources for it on the web.
-
Fox is a Federated Knowledge Extraction Framework
-
HANNE Holistic Application for Navigational Knowledge Engineering
-
LGD Browser / Editor is a javascript-based fullscreen browser and editor for geo-spatial data.
-
LIMES is a tool for discovering links in the Web of data
-
LOD2 Stack is an integrated demonstrator application for the tools of the LOD2 project.
-
LODStats collected statistics from all LOD datasets registered on the OKFN datahub.
-
OntoWiki is a semantic data wiki for publishing and consuming Linked Data in agile, distributed knowledge engineering scenarios.
-
RDFaCE is an RDFa Content Editor based on TinyMCE
-
SlideWiki is a collaboration platform which enables communities to build, share and play online presentations
-
Stanford Core NIF implementation.