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Distributed Processing System, 2020, 1(4); doi: 10.38007/DPS.2020.010404.

Distributed System Simulation Application Considering Data Distribution Service

Author(s)

Pushpiita Ijanz

Corresponding Author:
Pushpiita Ijanz
Affiliation(s)

Prince Sattam Bin Abdul Aziz University, Saudi Arabia

Abstract

Data distribution service (DDS) is a distributed real-time communication middleware specification published by object management group (OMG). This paper mainly studies the application analysis of distributed system simulation considering data distribution service. This paper first introduces the concept and composition of data distribution service, and then puts forward a distributed system data distribution model, and constructs a "bus type" data distribution model. And the performance of the data distribution model is tested. Through the performance test results, we can know that the data distribution model built in this paper can use DDS to achieve efficient remote procedure call development and operation.

Keywords

Data Distribution, Distributed System, Publish / Subscribe, Performance Test

Cite This Paper

Pushpiita Ijanz. Distributed System Simulation Application Considering Data Distribution Service. Distributed Processing System (2020), Vol. 1, Issue 4: 25-32. https://doi.org/10.38007/DPS.2020.010404.

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