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Detect signatures on documents or images using the signatures feature in Amazon Textract Maran Chandrasekaran AWS Machine Learning Blog

​ Amazon Textract is a machine learning (ML) service that automatically extracts text, handwriting, and data from any document or image. AnalyzeDocument Signatures is a feature within Amazon Textract that offers the ability to automatically detect signatures on any document. This can reduce the need… Read More »Detect signatures on documents or images using the signatures feature in Amazon Textract Maran Chandrasekaran AWS Machine Learning Blog

Monitoring Lake Mead drought using the new Amazon SageMaker geospatial capabilities Xiong Zhou AWS Machine Learning Blog

​ Earth’s changing climate poses an increased risk of drought due to global warming. Since 1880, the global temperature has increased 1.01 °C. Since 1993, sea levels have risen 102.5 millimeters. Since 2002, the land ice sheets in Antarctica have been losing mass at a… Read More »Monitoring Lake Mead drought using the new Amazon SageMaker geospatial capabilities Xiong Zhou AWS Machine Learning Blog

Optimize your machine learning deployments with auto scaling on Amazon SageMaker Mohan Gandhi AWS Machine Learning Blog

​ Machine learning (ML) has become ubiquitous. Our customers are employing ML in every aspect of their business, including the products and services they build, and for drawing insights about their customers. To build an ML-based application, you have to first build the ML model… Read More »Optimize your machine learning deployments with auto scaling on Amazon SageMaker Mohan Gandhi AWS Machine Learning Blog

Unsupervised and semi-supervised anomaly detection with data-centric ML Google AI Google AI Blog

​Posted by Jinsung Yoon and Sercan O. Arik, Research Scientists, Google Research, Cloud AI Team Anomaly detection (AD), the task of distinguishing anomalies from normal data, plays a vital role in many real-world applications, such as detecting faulty products from vision sensors in manufacturing, fraudulent… Read More »Unsupervised and semi-supervised anomaly detection with data-centric ML Google AI Google AI Blog

Share medical image research on Amazon SageMaker Studio Lab for free Stephen Aylward AWS Machine Learning Blog

​ This post is co-written with Stephen Aylward, Matt McCormick, Brianna Major from Kitware and Justin Kirby from the Frederick National Laboratory for Cancer Research (FNLCR). Amazon SageMaker Studio Lab provides no-cost access to a machine learning (ML) development environment to everyone with an email… Read More »Share medical image research on Amazon SageMaker Studio Lab for free Stephen Aylward AWS Machine Learning Blog

Extend your TFX pipeline with TFX-Addons noreply@blogger.com (TensorFlow Blog) The TensorFlow Blog

​ Posted by Hannes Hapke and Robert Crowe To produce production-level machine learning models, TensorFlow provides a portfolio of libraries under the umbrella of TensorFlow Extended (TFX). With just a pip install, TFX already includes a number of versatile pipeline components – referred to as… Read More »Extend your TFX pipeline with TFX-Addons noreply@blogger.com (TensorFlow Blog) The TensorFlow Blog

Amazon SageMaker Automatic Model Tuning now supports three new completion criteria for hyperparameter optimization Doug Mbaya AWS Machine Learning Blog

​ Amazon SageMaker has announced the support of three new completion criteria for Amazon SageMaker automatic model tuning, providing you with an additional set of levers to control the stopping criteria of the tuning job when finding the best hyperparameter configuration for your model. In this post,… Read More »Amazon SageMaker Automatic Model Tuning now supports three new completion criteria for hyperparameter optimization Doug Mbaya AWS Machine Learning Blog