Analysis of Computer Technology Application in Electronic Engineering
Keywords:
Electronic engineering, Computer technology, ApplicationAbstract
This article provides an in-depth analysis of the widespread application and profound impact of computer technology in the field of electronic engineering. By exploring the integration of cutting-edge technologies such as auxiliary design and simulation, signal processing and analysis, communication and networking, control systems and automation, as well as big data and artificial intelligence, the Internet of Things, etc., the key role of computer technology in improving electronic engineering design efficiency, optimizing product performance, and achieving intelligent control is demonstrated. This article aims to reveal how computer technology has become an important driving force for sustained innovation and development in the field of electronic engineering.
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