World News: 19:17 GMT Tuesday 3rd December 2019. [Amazon Web Services, Inc. (AWS) via Businesswire via SPi World News]
Today at AWS re:Invent, Amazon Web Services, Inc. (AWS), an Amazon.com company (NASDAQ: AMZN), announced six new Amazon SageMaker capabilities, including Amazon SageMaker Studio, the first fully integrated development environment for machine learning, that makes it easier for developers to build, debug, train, deploy, monitor, and operate custom machine learning models. Today’s announcements give developers powerful new tools like elastic notebooks, experiment management, automatic model creation, debugging and profiling, and model drift detection, and wraps them in the first fully integrated development environment (IDE) for machine learning, Amazon SageMaker Studio. To get started with Amazon SageMaker, visit:.
Amazon SageMaker is a fully managed service that removes the heavy lifting from each step of the machine learning process. Tens of thousands of customers utilize Amazon SageMaker to help accelerate their machine learning deployments, including ADP, AstraZeneca, Avis, Bayer, British Airways, Cerner, Convoy, Emirates NBD, Gallup, Georgia-Pacific, GoDaddy, Hearst, Intuit, LexisNexis, Los Angeles Clippers, NuData (a Mastercard Company), Panasonic Avionics, The Globe and Mail, and T-Mobile. Since launch, AWS has regularly added new capabilities to Amazon SageMaker, with more than 50 new capabilities delivered in the last year alone, including Amazon SageMaker Ground Truth to build highly accurate annotated training datasets, SageMaker RL to help developers use a powerful training technique called reinforcement learning, and SageMaker Neo which gives developers the ability to train an algorithm once and deploy on any hardware. These capabilities have helped many more developers build custom machine learning models. But just as barriers to machine learning adoption have been removed by Amazon SageMaker, customers’ desire to utilize machine learning at scale has only increased.
Amazon SageMaker makes a lot of the building block steps to developing great machine learning models much easier. But many times, building truly great models that evolve successfully as a business grows takes a lot of optimizations between these building blocks and requires visibility into what’s working or not and why. These challenges are not unique to machine learning, as the same is true of software development, generally. However, over the past few decades, lots of tools like IDEs that help with testing, debugging, deployment, monitoring, and profiling have been built to help with the challenges faced by software developers. But due to its relative immaturity, these same tools simply haven’t existed in machine learning – until now.
Today’s announcements include significant capabilities that make it much easier for customers to build, train, explain, inspect, monitor, debug, and run custom machine learning models:
“As tens of thousands of customers have used Amazon SageMaker to remove barriers to building, training, and deploying custom machine learning models, they’ve also encountered new challenges from operating at scale, and they’ve continued to provide feedback to AWS on their next set of challenges,” said Swami Sivasubramanian, Vice President, Amazon Machine Learning, AWS. “Today, we are announcing a set of tools that make it much easier for developers to build, train, explain, inspect, monitor, debug, and run custom machine learning models. Many of these concepts have been known and used by software developers to build, test, and maintain software for many years; however, they were not available for developers to build machine learning models. Today, with these launches, we are bringing these concepts to machine learning developers for the very first time.”
Autodesk is a global leader in software for customers in the architecture, engineering/construction, product design, and manufacturing industries. Autodesk’s software offerings include AutoCAD (drafting software) and BIM 360 (cloud platform for project delivery and construction document management). “At Autodesk, we leverage machine learning to enhance our design and manufacturing solutions to enable greater degrees of creative freedom for our customers. Generative design technology can produce hundreds of optimized solutions that meet design criteria,” said Alexander Carlson, Machine Learning Engineer, Autodesk. “Using machine learning, we developed a new filter that identifies and groups outcomes with similar visual characteristics to make it easier to find the best options. This Visual Similarity filter will always be adapting to what it is observing, making it easier and more efficient to find that perfect design. Amazon SageMaker Debugger allows us to iterate on this model much more efficiently by helping close the feedback loop, saving valuable data scientist time, and cutting training hours by more than 75%.“
Change Healthcare is a leading independent healthcare technology company that provides data and analytics-driven solutions to improve clinical, financial, and patient engagement outcomes in the U.S. healthcare system. “At Change Healthcare, we are continuously working with our healthcare providers to remove inefficiencies from the processing of healthcare claims. We often receive claim forms from our healthcare providers which have unreadable labels and fixing these forms manually adds time and cost to the claim settlement process. We have developed a multi-layer deep learning model that superimposes labels from a good form into unreadable forms,” said Jayant Thomas, Senior Director, AI Engineering, Change Healthcare. “Amazon SageMaker Debugger helped us improve the accuracy of the model with rapid iterations which helped us achieve our release milestone. Additionally, SageMaker Debugger is helping us gain deeper insights on tensors, achieve resilient model training, assist in detecting inconsistencies in real time using rule hooks, and tune the model parameters for better accuracy.”
INVISTA is a world leading integrated fiber, resin, and intermediates company. "The new services within Amazon SageMaker are reaping powerful benefits for us at INVISTA. With Amazon SageMaker Studio, we’re now able to co-locate data science tasks. Instead of having to manage many separate resources, our team can easily continue to work in a path with little friction. This allows us to save time managing infrastructure and repositories and helps us reduce the time to deploy algorithms and analytics projects into production,” said Tanner Gonzalez, Analytics and Cloud Leader, INVISTA. “Amazon SageMaker Experiments helps us with model tracking. Before, we would track and save model artifacts in various places, but we wouldn’t have visibility across experiments and we’d often loose information. With SageMaker Experiments, we now have any easy interface to manage experiments, get a broader scope of projects, and add new models, metrics, and performance in a structured way. All of this allows us to accelerate data science value for INVISTA.”
SyntheticGestalt is an applied machine learning company that develops models, software, and intelligent agents for research automation in the pharmaceutical and other life-sciences industries. “We train our drug discovery models and synthetic biology simulation models with Amazon SageMaker, and the new features help us systematically manage and evaluate our experiment results. In order to gain insight into the performance of experiments, our researchers must maintain consistent experiment settings and model results,” Kotaro Kamiya, CTO, SyntheticGestalt Ltd. “With the latest launches within Amazon SageMaker, including features like Amazon SageMaker Studio and Amazon SageMaker Experiments, we can determine the best experiment settings 2x faster, which ultimately accelerates our ability to produce life-changing candidate molecules. SageMaker helps our researchers easily compare thousands of experiment settings; they are able to do with a single step what previously consumed hours of our researchers’ time. Whereas previously, we could only compare 100 experiment settings to one another, Amazon SageMaker Experiments takes away that constraint entirely, so we can focus on experiment design without limitations."
About Amazon Web Services
For 13 years, Amazon Web Services has been the world’s most comprehensive and broadly adopted cloud platform. AWS offers over 165 fully featured services for compute, storage, databases, networking, analytics, robotics, machine learning and artificial intelligence (AI), Internet of Things (IoT), mobile, security, hybrid, virtual and augmented reality (VR and AR), media, and application development, deployment, and management from 69 Availability Zones (AZs) within 22 geographic regions, with announced plans for 13 more Availability Zones and four more AWS Regions in Indonesia, Italy, South Africa, and Spain. Millions of customers—including the fastest-growing startups, largest enterprises, and leading government agencies—trust AWS to power their infrastructure, become more agile, and lower costs. To learn more about AWS, visit.
Amazon is guided by four principles: customer obsession rather than competitor focus, passion for invention, commitment to operational excellence, and long-term thinking. Customer reviews, 1-Click shopping, personalized recommendations, Prime, Fulfillment by Amazon, AWS, Kindle Direct Publishing, Kindle, Fire tablets, Fire TV, Amazon Echo, and Alexa are some of the products and services pioneered by Amazon. For more information, visitand follow .
Business Wire: 19:17 GMT Tuesday 3rd December 2019
SPi News is published by Sector Publishing Intelligence Ltd.
© Sector Publishing Intelligence Ltd 2019. [Admin Only]
Sector Publishing Intelligence Ltd.
Agriculture House, Acland Road, DORCHESTER, Dorset DT1 1EF United Kingdom
Registered in England and Wales number 07519380.