aws-samples/amazon-sagemaker-pipeline-deploy-manage-100x-models-python-cdk
This GitHub repository showcases the implementation of a comprehensive end-to-end MLOps pipeline using Amazon SageMaker pipelines to deploy and manage 100x machine learning models. The pipeline covers data pre-processing, model training/re-training, hyperparameter tuning, data quality check,model quality check, model registry, and model deployment.
No commits in the last 6 months.
Stars
9
Forks
3
Language
Python
License
MIT-0
Category
Last pushed
Jul 14, 2025
Commits (30d)
0
Get this data via API
curl "https://pt-edge.onrender.com/api/v1/quality/mlops/aws-samples/amazon-sagemaker-pipeline-deploy-manage-100x-models-python-cdk"
Open to everyone — 100 requests/day, no key needed. Get a free key for 1,000/day.
Higher-rated alternatives
SuperCowPowers/workbench
Workbench: An easy to use Python API for creating and deploying AWS SageMaker Models
aws-controllers-k8s/sagemaker-controller
ACK service controller for Amazon SageMaker
aws/aws-step-functions-data-science-sdk-python
Step Functions Data Science SDK for building machine learning (ML) workflows and pipelines on AWS
aws-samples/amazon-sagemaker-mlops-workshop
MLOps workshop with Amazon SageMaker
aws/sagemaker-sparkml-serving-container
This code is used to build & run a Docker container for performing predictions against a Spark...