Jan. 10, 2024, 8:16 p.m. |

News on Artificial Intelligence and Machine Learning techxplore.com

In the ever-changing landscape of smart city innovation, researchers have introduced the Residual Spatial-Temporal Graph Convolutional Neural Network (RST-GCNN), which could help users find an on-street parking space more efficiently. The work is published in the International Journal of Sensor Networks.

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