Skip to content
This repository has been archived by the owner on Jun 17, 2024. It is now read-only.

Latest commit

 

History

History
62 lines (40 loc) · 1.57 KB

README.md

File metadata and controls

62 lines (40 loc) · 1.57 KB

SageCDKops

Please note that this is a work in progress and meant for use with a ML specialist SA in a workshop setting.

Prerequisites

First install CDK

npm install -g aws-cdk

Install/Upgrade python SDK

pip install --upgrade aws-cdk.cdk

Also see

https://docs.aws.amazon.com/cdk/latest/guide/getting_started.html#getting_started_update https://docs.aws.amazon.com/cdk/api/latest/python/index.html

SageCDKops

To use, install requirements.txt in each project using

pip install -r requirements.txt

Or do

pip install -r all_requirements.txt

These projects have been tested with CDK version 1.0.0

Use cases implemented so far:

  1. Set up calls of SM endpoint on cron schedule for inference
  2. Set up API gateway -> Lambda -> Sagemaker
  3. Set up Step functions for batch inference
  4. Notebook instanes for teams; multiple notebook instances with a common EFS volume, all in the same VPC
  5. Set up retraining of model on cron schedule
  6. Real time inference using Kinesis topics as inputs
  7. Deploy model tagged as "production" based on config file
  8. Set up dask on Fargate with Sagemaker notebooks for distributed preprocessing

Work in progress

  1. Dataset/ experiment/ model versioning
  2. PLEASE SUBMIT IDEA AS AN ISSUE

Note on bootstrapping

If you get this error "This stack uses assets, so the toolkit stack must be deployed to the environment (Run "cdk bootstrap aws://unknown-account/unknown-region")"

Run the cdk bootstrap command as seen above. This is true so far for the dask-fargate project