Announcing RStudio on Amazon SageMaker

By Lou Bajuk, RStudio

November 5, 2021

Data Science in the Cloud

As more organizations migrate their data science work to the cloud, they naturally want to bring along their favorite data science tools, including RStudio, R, and Python. These organizations are embracing the cloud to achieve various goals, including to:

  • Simplify and reduce startup costs.
  • Promote collaboration between organizations or groups.
  • Mitigate the high costs of maintaining their own computing infrastructure.
  • Scale to meet variable demand.
  • Minimize data movement.

While RStudio provides many different ways to support an organizationís cloud strategyOpens a new window, weíve heard from many customers who also use Amazon SageMaker. They wanted an easier way to combine RStudioís professional products with SageMakerís rich machine learning and deep learning capabilities, and to incorporate RStudio into their data science infrastructure on SageMaker.

RStudio on Amazon SageMaker

Based on this feedback, we are excited to announce RStudio on Amazon SageMaker, developed in collaboration with the SageMaker team.

Amazon SageMakerOpens a new window helps data scientists and developers to prepare, build, train, and deploy high-quality machine learning models quickly by bringing together a broad set of capabilities purpose-built for machine learning.

RStudio is excited to collaborate with the Amazon SageMaker team on this release as they make it easier for organizations to move their open-source data science workloads to the cloud. We are committed to helping our joint customers use our commercial offerings to bring their production workloads to Amazonís SageMaker, and to further collaborations with the Amazon SageMaker team.

ó Tareef Kawaf, President, RStudio PBC

RStudio IDE showing output using Amazon SageMaker capabilities

Easy Access to SageMaker for Data Scientists

Data scientists can quickly get to work, spinning up their favorite development environment on SageMaker. They can:

  • Launch RStudio Workbench with a simple click.
  • Start a new session with a fully-configured environment.
  • Choose an instance type with the desired compute and memory for the job at hand, from a wide array of ML instances available.

RStudio Workbench options to choose different instance types

Within that environment, they can get access to their organizationís data stored on AWS. They also have access to all of SageMakerís deep learning capabilities, accessed via Python libraries using the reticulateOpens a new window package. This preconfigured environment includes all the necessary SageMaker libraries to get started.

This offering complements Amazon SageMaker Studio Notebooks, which provide access to Python coding in a Jupyter Notebook environment. This means that data scientists proficient with both R and Python can freely switch between RStudio and SageMaker Studio Notebooks. All of their work, including code, datasets, repositories, and other artifacts are synchronized between the two environments through the default Amazon Elastic File System (Amazon EFS) storage.

For more information from the data scientist perspective, see Announcing Fully Managed RStudio on Amazon SageMaker for Data ScientistsOpens a new window.

Familiar Management Tools for DevOps Teams

As a fully managed offering on Amazon SageMaker, this release makes it easy for DevOps teams and IT Admins to administer, secure and scale their organizationís centralized data science infrastructure. They can:

  • Quickly create a multi-user RStudio Workbench environment in AWS SageMaker for their teamís data science work, without the need to install and configure RStudio Workbench.
  • Administer this environment using familiar AWS tools and frameworks, including managing licenses, security, and domains.

Arrow pointing to RStudio option to launch app in SageMaker Domain

For more information from the DevOps perspective, see Getting Started with RStudio on Amazon SageMakerOpens a new window.

Data-driven Insights for Organizations

For data-driven organizations already using AWS, this provides a way to migrate their self-managed RStudio environments to AWS SageMaker, using their existing RStudio Workbench licenses without an incremental cost.

When RStudio for SageMaker is configured for use with RStudio Connect, data scientists using both RStudio for SageMaker and SageMaker Studio can easily share their R and Python insights with their decision-makers.

RStudio ConnectOpens a new window makes it easy to deliver key insights to decision-makers, at the right time, in the right format. Connect supports a spectrum of data products, static or dynamic, developed in R and Python: Dashboards, applications, APIs, reports, and more.

For more information, see Host RStudio Connect and Package Manager for ML Development in RStudio on Amazon SageMakerOpens a new window.

Getting Started with RStudio on Amazon SageMaker

RStudio for Amazon SageMaker enables RStudio Workbench customers to bring their existing licenses to SageMaker. If you are an existing customer, or would like to learn more, please reach out to your customer success manager or schedule

Terms of Use | Copyright © 2002 - 2021 CONSTITUENTWORKS SM  CORPORATION. All rights reserved. | Privacy Statement