Analyzing extended property graphs with Apache Flink

@inproceedings{Junghanns2016AnalyzingEP,
  title={Analyzing extended property graphs with Apache Flink},
  author={Martin Junghanns and Andr{\'e} Petermann and Niklas Teichmann and Kevin G{\'o}mez and Erhard Rahm},
  booktitle={NDA@SIGMOD},
  year={2016}
}
Graphs are an intuitive way to model complex relationships between real-world data objects. Thus, graph analytics plays an important role in research and industry. As graphs often reflect heterogeneous domain data, their representation requires an expressive data model including the abstraction of graph collections, for example, to analyze communities inside a social network. Further on, answering complex analytical questions about such graphs entails combining multiple analytical operations… CONTINUE READING
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