Rapid Transit Systems: Smarter Urban Planning Using Big Data, In-Memory Computing, Deep Learning, and GPUs
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Keywords
rapid transit systems; metro; London underground; tube; big data; deep learning; TensorFlow; Convolution Neural Networks (CNNs); in-memory computing; Graphics Processing Units (GPUs); transport planning; transport prediction; smart cities; smart transportation;All these keywords.
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