Big Data Era Perspective: An In - depth Exploration of Artificial Intelligence Application in Computer Network Technology
DOI:
https://doi.org/10.53469/ijomsr.2025.08(07).05Keywords:
The era of big data, Artificial Intelligence, Computer network technology, Practical applicationAbstract
As society continues to develop steadily, the development achievements of computer network technology have been remarkably impressive, and its development prospects appear to be extremely broad. Computer network technology has deeply integrated into the production and development processes of modern society, exerting a comprehensive and profound impact on people's daily lives and providing immense convenience in terms of "food, clothing, shelter, and transportation." In daily life, computer network technology has made instant information dissemination and communication possible. With just a few taps on a mobile phone screen or clicks on a keyboard, people can easily access news, cultural knowledge, and other information from around the world and engage in real-time interactions with relatives and friends thousands of miles away. In the realm of shopping, online shopping platforms have broken down the barriers of time and space, enabling people to select their desired products anytime and anywhere and enjoy convenient home delivery services. In the field of transportation, navigation apps, leveraging computer network technology, provide real-time updates on road conditions and plan the optimal travel routes for users, significantly saving travel time and costs. With the emergence of modern big data and artificial intelligence (AI) technologies, a clear path has been paved for the intelligent development of computer network technology. Big data is like a treasure trove filled with a vast amount of diverse information. AI, on the other hand, possesses powerful data processing and analysis capabilities, enabling it to extract valuable information and patterns from this complex data. The application of this modern AI technology in computer network technology can significantly enhance the overall level of computer technology. Through AI algorithms, computer networks can more intelligently identify user needs and offer personalized services, thereby providing high-quality service support for social development.
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