Skip to content

Latest commit

History

History

Folders and files

NameName
Last commit message
Last commit date

parent directory

..

Amazon Forecast with SageMaker Pipelines

This SageMaker example showcases how you can create a dataset, dataset group and predictor with Amazon Forecast and SageMaker Pipelines.

Contents

sm_pipeline_with_amazon_forecast.ipynb: Notebook explaining the pipeline step-by-step.

preprocess.py: Script used in the ForecastPreProcess step in pipeline for data preparation used for training and evaluation.

train.py: Script used in ForecastTrainAndEvaluate step in pipeline to train and evaluate the Amazon Forecast model.

conditional_delete.py: Script used in ForecastCondtionalDelete step in pipeline to delete all Forecast resources if the score achieved on a particular metric is not satisfactory.

data: data folder containing the train.csv.