AWS Machine Learning Blog

Category: SageMaker

AWS KMS-based Encryption Is Now Available for Training and Hosting in Amazon SageMaker

by Kumar Venkateswar | on | in SageMaker | Permalink | Comments |  Share

Amazon SageMaker uses throwaway keys, also called transient keys, to encrypt the ML General Purpose storage volumes attached to training and hosting EC2 instances. Because these keys are used only to encrypt the ML storage volumes and are then immediately discarded, the volumes can safely be used to store confidential data. Volumes can be accessed […]

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Making neural nets uncool again – AWS style

by Jeremy Howard and Joseph Spisak | on | in SageMaker | Permalink | Comments |  Share

Just as the goal of Amazon AI is to democratize machine learning with the development of platforms such as Amazon SageMaker, the goal of fast.ai is to level the educational playing field so that anyone can pick up machine learning and be productive. The fast.ai tagline is “Making neural nets uncool again.” This is not a play to decrease the popularity of deep neural networks, but instead to broaden their appeal and accessibility beyond the academic elites who have dominated the research in this area.

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AWS CloudTrail integration is now available in Amazon SageMaker

AWS customers have been requesting a way to log activity in Amazon SageMaker, to help you meet your governance and compliance needs. I’m happy to announce that Amazon SageMaker is now integrated with AWS CloudTrail, a service that enables you to log, continuously monitor, and retain account information related to Amazon SageMaker API activity. Amazon […]

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Now available in Amazon SageMaker: DeepAR algorithm for more accurate time series forecasting

by Tim Januschowski, David Arpin, David Salinas, Valentin Flunkert, Jan Gasthaus, Lorenzo Stella, and Paul Vazquez | on | in SageMaker | Permalink | Comments |  Share

Today we are launching Amazon SageMaker DeepAR as the latest built-in algorithm for Amazon SageMaker. DeepAR is a supervised learning algorithm for time series forecasting that uses recurrent neural networks (RNN) to produce both point and probabilistic forecasts. We’re excited to give developers access to this scalable, highly accurate forecasting algorithm that drives mission-critical decisions within Amazon. Just as […]

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Build Amazon SageMaker notebooks backed by Spark in Amazon EMR

Introduced at AWS re:Invent in 2017, Amazon SageMaker provides a fully managed service for data science and machine learning workflows. One of the important parts of Amazon SageMaker is the powerful Jupyter notebook interface, which can be used to build models. You can enhance the Amazon SageMaker capabilities by connecting the notebook instance to an […]

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AWS DeepLens Extensions: Build Your Own Project

AWS DeepLens provides a great opportunity to learn new technologies, such as deep learning and Internet of Things (IoT), as well as to build innovative systems that can solve real-world problems. The device and service comes with a set of predefined projects that make it easy to hit the ground running. It is designed as […]

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