Research on the Application of Artificial Intelligence in Computer Network Technology in the Era of Big Data
DOI:
https://doi.org/10.53469/ijomsr.2025.08(04).08Keywords:
Big data era, Artificial intelligence, Computer network technology, Practical applicationAbstract
With the steady development of society, the development effect of computer network technology has been extremely good, and its prospects for development are also relatively broad. The integration of computer network technology into the production and development process of modern society has already had an impact on people's daily lives, providing convenient conditions for their clothing, food, housing, and transportation. With the emergence of modern big data and artificial intelligence technology, the direction for the intelligence of computer network technology has been pointed out. Applying this modern technology to computer network technology can better improve the overall level of computer technology and provide high-quality services for the development of society. This article briefly analyzes the relevant concepts of big data era and artificial intelligence, introduces the advantages and necessity of applying artificial intelligence in computer network technology in the big data era, and elaborates on the practical application of artificial intelligence in computer network technology in the big data era.
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