aws-samples / sagemaker-model-monitor-bring-your-own-containerLinks
In this repository, we will present techniques to detect covariate drift, and demonstrate how to incorporate your own custom drift detection algorithms and visualizations with SageMaker model monitor.
☆13Updated 4 years ago
Alternatives and similar repositories for sagemaker-model-monitor-bring-your-own-container
Users that are interested in sagemaker-model-monitor-bring-your-own-container are comparing it to the libraries listed below
Sorting:
- ☆135Updated last year
- Amazon SageMaker MLOps deployment pipeline for A/B Testing of machine learning models.☆44Updated 4 years ago
- This sample demonstrates how to setup an Amazon SageMaker MLOps end-to-end pipeline for Drift detection☆62Updated last year
- This is the Docker container based on open source framework XGBoost (https://xgboost.readthedocs.io/en/latest/) to allow customers use th…☆138Updated last month
- Support code for building and running Amazon SageMaker compatible Docker containers based on the open source framework Scikit-learn (http…☆180Updated 2 months ago
- WARNING: This package has been deprecated. Please use the SageMaker Training Toolkit for model training and the SageMaker Inference Toolk…☆186Updated 5 years ago
- Managing your machine learning lifecycle with MLflow and Amazon SageMaker☆153Updated last month
- SageMaker specific extensions to TensorFlow.☆54Updated last year
- Amazon SageMaker Local Mode Examples☆259Updated 2 months ago
- A high performance data access library for machine learning tasks☆74Updated last year
- Example templates for the delivery of custom ML solutions to production so you can get started quickly without having to make too many de…☆74Updated last year
- This repo provides an end-to-end example of using streaming feature aggregation with the Amazon SageMaker Feature Store.☆46Updated 4 years ago
- A TensorFlow Serving solution for use in SageMaker. This repo is now deprecated.☆173Updated last year
- This sample show you how to train BERT on Amazon Sagemaker using Spot instances☆31Updated last year
- CLI for building Docker images in SageMaker Studio using AWS CodeBuild.☆56Updated 3 years ago
- The MLOps Workload Orchestrator solution helps you streamline and enforce architecture best practices for machine learning (ML) model pro…☆154Updated last month
- Experiment tracking and metric logging for Amazon SageMaker notebooks and model training.☆127Updated last year
- This repository shows a sample example to build, manage and orchestrate Machine Learning workflows using Amazon Sagemaker and Apache Airf…☆137Updated 3 years ago
- ☆11Updated last year
- MLOps workshop with Amazon SageMaker☆104Updated 3 months ago
- Implementations of Amazon SageMaker-compatible custom containers for training.☆25Updated 4 years ago
- End to end Machine Learning with Amazon SageMaker☆42Updated last year
- A wrapper around SageMaker ML Lineage Tracking extending ML Lineage to end-to-end ML lifecycles, including additional capabilities around…☆16Updated 3 years ago
- Tools to run Jupyter notebooks as jobs in Amazon SageMaker - ad hoc, on a schedule, or in response to events☆143Updated last year
- MLOps End-to-End Example using Amazon SageMaker Pipeline, AWS CodePipeline and AWS CDK☆148Updated 2 months ago
- Custom docker container for Catboost on Amazon SageMaker☆13Updated 2 years ago
- Amazon SageMaker Debugger provides functionality to save tensors during training of machine learning jobs and analyze those tensors☆162Updated last year
- SageMaker custom deployments made easy☆62Updated 3 months ago
- Hosting code-server on Amazon SageMaker☆57Updated last year
- Serve machine learning models within a 🐳 Docker container using 🧠 Amazon SageMaker.☆406Updated last year