{"data":{"full_name":"aws-samples/amazon-sagemaker-pipeline-deploy-manage-100x-models-python-cdk","name":"amazon-sagemaker-pipeline-deploy-manage-100x-models-python-cdk","description":"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.","stars":9.0,"forks":3.0,"language":"Python","license":"MIT-0","archived":0.0,"subcategory":"sagemaker-ml-platforms","last_pushed_at":"2025-07-14T13:30:17+00:00","pypi_package":null,"npm_package":null,"downloads_monthly":0.0,"dependency_count":0.0,"commits_30d":null,"reverse_dep_count":0.0,"maintenance_score":2.0,"adoption_score":5.0,"maturity_score":16.0,"community_score":14.0,"quality_score":37.0,"quality_tier":"emerging","risk_flags":"['stale_6m', 'no_package', 'no_dependents']"},"meta":{"timestamp":"2026-04-13T06:27:28.171986+00:00"}}