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This repository contains code and resources for a project focused on predicting traffic volume using Temporal Convolutional Networks (TCNs). Leveraging the Metro Interstate Traffic Volume dataset from 2012-2018, the project aims to develop an accurate model for short- to medium-term traffic volume forecasting in Minneapolis-St Paul, MN.

License: MIT License

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data-science deep-neural-networks exploratory-data-analysis model-optimization temporal-convolutional-network traffic-forecasting time-series

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