Skip to content
No description, website, or topics provided.
Jupyter Notebook Python
Branch: master
Clone or download
Type Name Latest commit message Commit time
Failed to load latest commit information.
implementation-with-step-func external tutorial link Jul 26, 2019
pure-sagemaker-workshop Added Distributed and Dev on Sample Sep 24, 2019 external tutorial link Jul 26, 2019

SageMaker and Step Functions

In this workshop you will explore the development cycle of machine learning model on AWS. In the first part, you will find a sample project fully developed in an ml.m4.4xlarge SageMaker notebook instance. On purpose, the notebooks are divided in different stages

  1. Exploratory analysis
  2. ETL to prepare training data
  3. Training the model with Hyperparameter Optimization
  4. Putting "new data" through a preprocessing pipeline to get it ready for prediction
  5. Batch predictions for new data

In the second part of this workshop we will implement this project in production automatizing it's execution using a combination of CloudWatch, Step Functions, Lambda, Glue and SageMaker.

You can also perform this implementation step by using the following online tutorial

You can’t perform that action at this time.