aws / sagemaker-inference-toolkitLinks
Serve machine learning models within a π³ Docker container using π§ Amazon SageMaker.
β407Updated last year
Alternatives and similar repositories for sagemaker-inference-toolkit
Users that are interested in sagemaker-inference-toolkit are comparing it to the libraries listed below
Sorting:
- Train machine learning models within a π³ Docker container using π§ Amazon SageMaker.β515Updated last month
- Support code for building and running Amazon SageMaker compatible Docker containers based on the open source framework Scikit-learn (httpβ¦β180Updated 2 months ago
- Toolkit for allowing inference and serving with PyTorch on SageMaker. Dockerfiles used for building SageMaker Pytorch Containers are at hβ¦β141Updated 9 months ago
- A TensorFlow Serving solution for use in SageMaker. This repo is now deprecated.β173Updated last year
- Amazon SageMaker Local Mode Examplesβ257Updated 2 months ago
- This is the Docker container based on open source framework XGBoost (https://xgboost.readthedocs.io/en/latest/) to allow customers use thβ¦β138Updated 2 weeks ago
- A collection of sample scripts to customize Amazon SageMaker Notebook Instances using Lifecycle Configurationsβ429Updated last year
- Experiment tracking and metric logging for Amazon SageMaker notebooks and model training.β127Updated last year
- WARNING: This package has been deprecated. Please use the SageMaker Training Toolkit for model training and the SageMaker Inference Toolkβ¦β186Updated 5 years ago
- This repository contains examples of Docker images that can be used as custom images for KernelGateway Apps in SageMaker Studioβ131Updated 2 years ago
- Toolkit for running PyTorch training scripts on SageMaker. Dockerfiles used for building SageMaker Pytorch Containers are at https://githβ¦β203Updated last month
- Step Functions Data Science SDK for building machine learning (ML) workflows and pipelines on AWSβ291Updated 2 months ago
- A helper library to connect into Amazon SageMaker with AWS Systems Manager and SSH (Secure Shell)β247Updated this week
- AWS Deep Learning Containers are pre-built Docker images that make it easier to run popular deep learning frameworks and tools on AWS.β1,083Updated this week
- Managing your machine learning lifecycle with MLflow and Amazon SageMakerβ152Updated 2 weeks ago
- β228Updated 11 months ago
- Workshop content for applying DevOps practices to Machine Learning workloads using Amazon SageMakerβ318Updated last year
- β85Updated last year
- β145Updated 2 years ago
- β135Updated last year
- Tools to run Jupyter notebooks as jobs in Amazon SageMaker - ad hoc, on a schedule, or in response to eventsβ143Updated last year
- Toolkit for running TensorFlow training scripts on SageMaker. Dockerfiles used for building SageMaker TensorFlow Containers are at https:β¦β271Updated last month
- Amazon SageMaker examples for prebuilt framework mode containers, a.k.a. Script Mode, and more (BYO containers and models etc.)β172Updated last year
- CLI for building Docker images in SageMaker Studio using AWS CodeBuild.β56Updated 3 years ago
- The open source version of the Amazon SageMaker docsβ251Updated 2 years ago
- LLMs and Machine Learning done easilyβ439Updated 3 weeks ago
- Machine Learning Ops Workshop with SageMaker: lab guides and materials.β330Updated 4 years ago
- Safe blue/green deployment of Amazon SageMaker endpoints using AWS CodePipeline, CodeBuild and CodeDeploy.β106Updated 2 years ago
- The MLOps Workload Orchestrator solution helps you streamline and enforce architecture best practices for machine learning (ML) model proβ¦β154Updated last month
- MLOps workshop with Amazon SageMakerβ103Updated 3 months ago