Uncertainty-Aware Event Analytics over Distributed Settings
Authors/Creators
- 1. Athena Research Center, Technical University of Crete
- 2. University of Piraeus, NCSR Demokritos
Description
In complex event processing (CEP), simple derived event (SDE) tuples are combined in pattern matching procedures to derive complex events (CEs) of interest. Big Data applications analyze event streams online and extract CEs to support decision making procedures. At massive scale, such applications operate over distributed networks of sites where efficient CEP requires reducing communication as much as possible. Besides, events often encompass various types of uncertainty assigned on event attribute values, occurrence or detection rules. Therefore, massively distributed Big event Data applications in a world of uncertain events call for communicationefficient, uncertainty-aware CEP solutions, which is the focus of this work. As a proof-of-concept, we show how we bridge the gap between two recent CEP prototypes which utilize IBM PROactive Technology ONline as their CEP engine and each extend it towards only one of the dimensions of distribution and uncertainty.
Files
debs2019.pdf
Files
(1.4 MB)
| Name | Size | Download all |
|---|---|---|
|
md5:53be6a67d296dee4adb31b9b8df0feee
|
1.4 MB | Preview Download |