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