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  1. aws-samples/aws-fargate-with-rstudio-open-source aws-samples/aws-fargate-with-rstudio-open-source Public

    This project delivers AWS CDK Python code to provision serverless infrastructure in AWS Cloud to run Open Source RStudio Server and Shiny.

    Python 77 14

  2. amazon-sagemaker-examples amazon-sagemaker-examples Public

    Forked from aws/amazon-sagemaker-examples

    Example 📓 Jupyter notebooks that demonstrate how to build, train, and deploy machine learning models using 🧠 Amazon SageMaker.

    Jupyter Notebook

  3. aws-samples/amazon-sagemaker-data-wrangler-hospital-readmission-prediction aws-samples/amazon-sagemaker-data-wrangler-hospital-readmission-prediction Public

    This is an example to demonstrate Amazon SageMaker Data Wrangler capabilities. The workshop showcases entire ML workflow steps for Diabetic Patient Readmission Dataset from UCI.

    Jupyter Notebook 7 7

  4. aws-samples/amazon-sagemaker-statistical-simulation-rstudio aws-samples/amazon-sagemaker-statistical-simulation-rstudio Public

    This is a solution that allows you to offload a resource intensive Monte-Carlo simulation to more powerful machines on Amazon SageMaker, while still being able to develop your scripts in your RStud…

    R 8 6

  5. aws-samples/machine-learning-pipelines-for-multimodal-health-data aws-samples/machine-learning-pipelines-for-multimodal-health-data Public

    Jupyter Notebook 23 13

  6. aws-samples/reinvent2020-aim404-productionize-r-using-amazon-sagemaker aws-samples/reinvent2020-aim404-productionize-r-using-amazon-sagemaker Public

    Customers using R can run simulation and machine learning securely and at scale with Amazon SageMaker while also reducing the cost of development by using the fully elastic resources in the cloud. …

    R 18 7