Skip to content

Latest commit

 

History

History
executable file
·
45 lines (29 loc) · 2.33 KB

README.md

File metadata and controls

executable file
·
45 lines (29 loc) · 2.33 KB

NLIWOD - Natural Language Interfaces for the Web of Data

Collection of tools, utilities, datasets and approaches towards realizing natural language interfaces for the Web of Data. Currently, we are focusing on Question Answering (QA) utilities.

Especially, this repository contains

  • QA Systems: A set of existing online webservices of QA systems all executable via a simple Java interface.
  • QA Datasets: A collection of existing Question Answering datasets
  • QA Machine Learning: This projects aims at learning a ML-based algorithm to combine multiple QA systems into one
  • QA Commons: A collection to ease handling of QA datasets. It allows to load, store and evaluate datasets and systems.

We aim at providing a fast entrance to the field of natural language interfaces (search, question answering, ranking). Thus, we will offer here Maven dependencies and source code for using many available datasets, systems and techniques.

More interesting Question Answering and Natural Language Generation projects can be found here:

Foreseen modules:

  • QA Features: Features calculated on a NL question to train ML algorithms.

If you are interested in standardization efforts join or W3C Commmunity Group https://www.w3.org/community/nli/ !

For developers

To deploy a new version increase the according versions in the pom.xml and execute mvn clean deploy after setting your ~.m2/settings.xml in accordance to https://wiki.aksw.org/private/infrastructure/aksw-responsibilities/maven .

Maven Dependency

This library is available as snapshot here: http://maven.aksw.org/archiva/#artifact~snapshots/org.aksw.qa/datasets

Add the following repository to your project:

Artifacts are described in the sub-modules.

Look for more interesting libraries here: http://maven.aksw.org/archiva/#browse/org.aksw.qa

Docker

work in progress

hawk

docker build -t hawk -f Dockerfile-hawk .
docker run -t hawk

hawk-fuseki

run cd qa.hawk/deploy-scripts && ./index_fuseki.sh to create index

docker build -t hawk-fuseki -f Dockerfile-fuseki .
docker run --name hawk-fuseki -v /path/to/deploy-scripts/:/staging hawk-fuseki