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Streaming analysis is widely used in a variety of environments, from cloud computing infrastructures up to the network’s edge. In these contexts, accurate modeling of streaming operators’ performance enables fine-grained prediction of applications’ behavior without the need of costly monitoring. This is of utmost importance for computationally-expensive operators like stream joins, that observe throughput and latency very sensitive to rate-varying data streams, especially when deterministic processing is required. In this paper, we present a modeling framework for estimating the throughput and the latency of stream join processing. The model is presented in an incremental step-wise manner, starting from a centralized non-deterministic stream join and expanding up to a deterministic parallel stream join. The model describes how the dynamics of throughput and latency are influenced by the number of physical input streams, as well as by the amount of parallelism in the actual processing and the requirement for determinism. We present an experimental validation of the model with respect to the actual implementation. The proposed model can provide insights that are catalytic for understanding the behavior of stream joins against different system deployments, with special emphasis on the influences of determinism and parallelization.

Fri 23 Jun

Displayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change

14:10 - 15:20
Session 6: Models and Analysis for Understanding Distributed and Event-Based SystemsDEBS Research Papers at Sala d'Actes, Vertex Building
Chair(s): Alessandro Margara Politecnico di Milano
14:10
23m
Talk
DCEP-Sim: An Open Simulation Framework for Distributed CEP. (Research Paper)
DEBS Research Papers
Fabrice Starks University of Oslo, Thomas Plagemann University of Oslo, Stein Kristiansen University of Oslo
14:33
23m
Talk
Performance Modeling of Stream Joins. (Research Paper)
DEBS Research Papers
Vincenzo Gulisano Chalmers University of Technology, Alessandro Vittorio Papadopoulos Mälardalen University, Yiannis Nikolakopoulos Chalmers University of Technology, Marina Papatriantafilou Chalmers University of Technology, Philippas Tsigas Chalmers University of Technology
14:56
23m
Talk
One for All and All for One: Simultaneous Approximation of Multiple Functions over Distributed Streams. (Research Paper)
DEBS Research Papers
Arnon Lazerson Technion, Moshe Gabel Technion, Daniel Keren Haifa University, Assaf Schuster Technion