This project focuses on using the AWS open-source AutoML library, AutoGluon, to predict bike sharing demand using the Kaggle Bike Sharing demand dataset.
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Updated
Jan 24, 2023 - HTML
This project focuses on using the AWS open-source AutoML library, AutoGluon, to predict bike sharing demand using the Kaggle Bike Sharing demand dataset.
This project leverages AutoGluon in AWS SageMaker Studio to predict bike sharing demand, automating model training and tuning for accurate forecasting.
This is the repository for the "Predict Bike Sharing Demand with AutoGluon" task as part of the "2. Introduction to Machine Learning" chapter of the AWS Machine Learning Engineer Nanodegree Program on Udacity
Training different models for Predicting Bike Sharing Demand by using AutoGluon's TabularPredictor.fit() on AWS SageMaker Studio
This project focuses on using the AWS open-source AutoML library, AutoGluon, to predict bike sharing demand using the Kaggle Bike Sharing demand dataset.
This project aims to enhance the mobility and convenience of the public through bike-sharing programs in metropolitan areas. One of the main challenges is maintaining a consistent supply of bikes for rental.
Training a model using AutoGluon to predict bike sharing demand
Create a Kaggle account, download the Bike Sharing Demand dataset, and train a model using AutoGluon
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