Talk about the use of Artificial Intelligence and Machine Learning in Smart Cities
DOI:
https://doi.org/10.53469/ijomsr.2025.08(06).07Keywords:
Artificial intelligence, Machine learning techniques, Smart cities, ApplicationAbstract
With the rapid development of science and technology in China and the advancement of urbanization, people's attention to smart cities has also increased to a certain extent. In the rapid development of smart cities, artificial intelligence is a very important element, In the field of artificial intelligence, machine learning is one of the most important content, and strengthening the application of artificial technologies such as artificial intelligence and machine learning in smart cities can effectively promote the further development of cities and better ensure people's lives in cities. Based on this, this paper analyzes and studies the application of artificial intelligence and machine learning technologies in smart cities.
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