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Distributed Processing System, 2022, 3(1); doi: 10.38007/DPS.2022.030106.

Distributed Computing Collaborative CAD System Based on COM / DCOM

Author(s)

Pushppita Ijazan

Corresponding Author:
Pushppita Ijazan
Affiliation(s)

Tech University of Korea, Republic of Korea

Abstract

With the rapid development of China's economy, there are more and more distributed computing systems, which are also widely used in actual production. The main research direction of this paper is the distributed computing collaborative CAD system based on COM / NASD system. The software is based on COM / DCOM, and studies the system through collaborative design, simulation and testing. In this process, we first need to build the model. Then, according to the actual situation, the corresponding algorithm program is established to simulate the running environment of the whole module and set the parameter variables. Secondly, the components are assembled and connected with the system according to the requirements. Finally, the system is tested as a whole. The test results show that the system has high data processing efficiency, fast system response time and low delay, which indicates that the system has good comprehensive performance.

Keywords

Distributed Computing, Collaborative CAD, COM Technology, DCOM Technology

Cite This Paper

Pushppita Ijazan. Distributed Computing Collaborative CAD System Based on COM / DCOM. Distributed Processing System (2022), Vol. 3, Issue 1: 46-53. https://doi.org/10.38007/DPS.2022.030106.

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