A genetic programming approach to distributed execution of data-intensive web service compositions

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@InProceedings{conf/acsc/YuMZ16,
  author =       "Yang Yu and Hui Ma and Mengjie Zhang",
  title =        "A genetic programming approach to distributed
                 execution of data-intensive web service compositions",
  publisher =    "ACM",
  year =         "2016",
  booktitle =    "Proceedings of the Australasian Computer Science Week
                 Multiconference, ACSW '16",
  address =      "Canberra, Australia",
  pages =        "29:1--29:9",
  keywords =     "genetic algorithms, genetic programming, Distributed,
                 Data-Intensive, Service Composition",
  isbn13 =       "978-1-4503-4042-7",
  bibdate =      "2016-02-11",
  bibsource =    "DBLP,
                 http://dblp.uni-trier.de/db/conf/acsc/acsw2016.html#YuMZ16",
  URL =          "http://dl.acm.org/citation.cfm?id=2843043",
  DOI =          "doi:10.1145/2843043.2843046",
  acmid =        "2843046",
  size =         "9 pages",
  abstract =     "The executions of composite web services are typically
                 co-ordinated by a centralized workflow engine. As a
                 result, the centralized execution paradigm suffers from
                 inefficient communication and a single point of
                 failure. This is particularly problematic in the
                 context of data-intensive processes. To that end, more
                 distributed and flexible execution paradigms are
                 required. In this paper, we present a genetic
                 programming approach to partitioning a BPEL
                 data-intensive process into a set of sub-processes
                 which can be executed in a fully distributed manner.
                 Meanwhile, the approach takes into account the
                 communication latency and costs inside and across the
                 partitions. The experimental results show that our
                 proposed approach outperforms two existing methods for
                 complex data-intensive processes.",
  notes =        "ACE/ACSC/AISC/APCMM/AUIC/AWC",
}

Genetic Programming entries for Yang Yu Hui Ma Mengjie Zhang

Citations