Charles H. Bennett, Aram W. Harrow, et al.
IEEE Trans. Inf. Theory
Business event processing requires efficiently processing live events, computing business performance metrics, detecting business situations, and providing real-time visibility of key performance indicators. Given the high volume of events and significant complexity of computation, system performance - event throughput - is critical. In this paper, we advocate model-analysis techniques to improve event throughput. In the build time, a series of model analyses of the application logic are conducted to understand such factors as runtime data-access path, data flow, and control flow. Such analyses can be used to improve throughput three ways: at build time it can be used to facilitate the generation of customized code to optimize I/O and CPU usage; information about the control flow and data flow can be used to ensure that CPU resources are used effectively by distributing event-processing computation logic evenly over time; and at runtime, knowledge gained from the model can be used to plan multithreaded parallel event-processing execution to reduce wait states by maximizing parallelization and reducing the planning overhead. This paper presents a series of model-analysis techniques and the results of experiments that demonstrate their effectiveness. © Copyright 2007 by International Business Machines Corporation.
Charles H. Bennett, Aram W. Harrow, et al.
IEEE Trans. Inf. Theory
Khaled A.S. Abdel-Ghaffar
IEEE Trans. Inf. Theory
Leo Liberti, James Ostrowski
Journal of Global Optimization
Yigal Hoffner, Simon Field, et al.
EDOC 2004