• Corpus ID: 42435741

Towards Persistent Storage and Retrieval of Domain Models using Graph Database Technology

@article{Hochgeschwender2016TowardsPS,
  title={Towards Persistent Storage and Retrieval of Domain Models using Graph Database Technology},
  author={Nico Hochgeschwender and Holger Voos and Gerhard K. Kraetzschmar},
  journal={ArXiv},
  year={2016},
  volume={abs/1607.04138}
}
We employ graph database technology to persistently store and retrieve robot domain models. 

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