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Parallel algorithms for geometric graph problems. (English) Zbl 1315.05133

Proceedings of the 46th annual ACM symposium on theory of computing, STOC ’14, New York, NY, USA, May 31 – June 3, 2014. New York, NY: Association for Computing Machinery (ACM) (ISBN 978-1-4503-2710-7). 574-583 (2014).

MSC:

05C85 Graph algorithms (graph-theoretic aspects)
05C10 Planar graphs; geometric and topological aspects of graph theory
68U05 Computer graphics; computational geometry (digital and algorithmic aspects)
68W10 Parallel algorithms in computer science
68W25 Approximation algorithms

Citations:

Zbl 1286.05140

Software:

SuLQ
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Full Text: DOI arXiv

References:

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