K. Kloeckner, Constantin Adam, et al.
IBM J. Res. Dev
This paper introduces a scalable process event analysis approach, including parallel algorithms, to support efficient event correlation for big process data. It proposes a two-stages approach for finding potential event relationships, and their verification over big event datasets using MapReduce framework. We report on the experimental results, which show the scalability of the proposed methods, and also on the comparative analysis of the approach with traditional non-parallel approaches in terms of time and cost complexity.
K. Kloeckner, Constantin Adam, et al.
IBM J. Res. Dev
Mohammad Allahbakhsh, Saeed Arbabi, et al.
SOCA 2015
Mohammad Allahbakhsh, Samira Samimi, et al.
SOCA 2014
Hamid Reza Motahari Nezhad, Larisa Shwartz
HICSS 2017