Theodolite: Scalability Benchmarking of Distributed Stream Processing Engines in Microservice Architectures.

Henning, Sören and Hasselbring, Wilhelm (2020) Theodolite: Scalability Benchmarking of Distributed Stream Processing Engines in Microservice Architectures. Open Access . arXiv, 2009.00304 . Cornell University, 24 pp. DOI https://arxiv.org/abs/2009.00304.

[thumbnail of 2009.00304.pdf]
Preview
Text
2009.00304.pdf - Published Version

Download (1MB) | Preview

Supplementary data:

Abstract

Distributed stream processing engines are designed with a focus on scalability to process big data volumes in a continuous manner. We present the Theodolite method for benchmarking the scalability of distributed stream processing engines. Core of this method is the definition of use cases that microservices implementing stream processing have to fulfill. For each use case, our method identifies relevant workload dimensions that might affect the scalability of a use case. We propose to design one benchmark per use case and relevant workload dimension.
We present a general benchmarking framework, which can be applied to execute the individual benchmarks for a given use case and workload dimension. Our framework executes an implementation of the use case's dataflow architecture for different workloads of the given dimension and various numbers of processing instances. This way, it identifies how resources demand evolves with increasing workloads.
Within the scope of this paper, we present 4 identified use cases, derived from processing Industrial Internet of Things data, and 7 corresponding workload dimensions. We provide implementations of 4 benchmarks with Kafka Streams and Apache Flink as well as an implementation of our benchmarking framework to execute scalability benchmarks in cloud environments. We use both for evaluating the Theodolite method and for benchmarking Kafka Streams' and Flink's scalability for different deployment options.

Document Type: Report (Research Report)
Keywords: Benchmarking
Research affiliation: Kiel University > Software Engineering
Open Access Journal?: Yes
Publisher: Cornell University
Related URLs:
Projects: TITAN
Date Deposited: 02 Sep 2020 13:34
Last Modified: 12 Feb 2021 16:53
URI: https://oceanrep.geomar.de/id/eprint/50425

Actions (login required)

View Item View Item