Large-scale Graph Generation and Big Data: An Overview on Recent Results

Ulrich Meyer, Manuel Penschuck, The Algorithmics Column by Gerhard J Woeginger

Abstract


Artificially generated input graphs play an important role in algorithm
engineering for systematic testing and tuning. In big data settings, however,
not only processing huge graphs but also the ecient generation of appropriate
test instances itself becomes challenging. In this context we survey
a number of recent results for large-scale graph generation obtained within
the DFG priority programme SPP 1736 (Algorithms for Big Data).

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