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california-housing-price-prediction

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How to train, deploy and monitor a XGBoost regression model in Amazon SageMaker and alert using AWS Lambda and Amazon SNS. SageMaker's Model Monitor will be used to monitor data quality drift using the Data Quality Monitor and regression metrics like MAE, MSE, RMSE and R2 using the Model Quality Monitor.

  • Updated May 21, 2021
  • Jupyter Notebook

How to train a XGBoost regression model on Amazon SageMaker, host inference on a Docker container running on Amazon ECS on AWS Fargate and optionally expose as an API with Amazon API Gateway.

  • Updated Sep 8, 2021
  • Jupyter Notebook

Problem Statement The purpose of the project is to predict median house values in Californian districts, given many features from these districts. The project also aims at building a model of housing prices in California using the California census data. The data has metrics such as the population, median income, median housing price, and so on …

  • Updated Apr 19, 2019
  • Python

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