Using DeepChem with Amazon SageMaker for virtual screening

Favorite Virtual screening is a computational methodology used in drug or materials discovery by searching a vast amount of molecules libraries to identify the structures that are most likely to show the target characteristics. It is becoming a ground-breaking tool for molecular discovery due to the exponential growth of available

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Shared by AWS Machine Learning February 28, 2020

Optimizing application performance with Amazon CodeGuru Profiler

Favorite Amazon CodeGuru (Preview) is a service launched at AWS re:Invent 2019 that analyzes the performance characteristics of your application and provides automatic recommendations on ways to improve. It does this by profiling your application’s runtime (with CodeGuru Profiler) and by automatically reviewing source code changes (with CodeGuru Reviewer). For

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Shared by AWS Machine Learning February 27, 2020

Automating your Amazon Forecast workflow with Lambda, Step Functions, and CloudWatch Events rule

Favorite Amazon Forecast is a fully managed service that uses machine learning (ML) to generate highly accurate forecasts without requiring any prior ML experience. Forecast is applicable in a wide variety of use cases, including estimating product demand, energy demand, workforce planning, computing cloud infrastructure usage, traffic demand, supply chain

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Shared by AWS Machine Learning February 20, 2020

Winners of AWS Machine Learning Research Awards announced

Favorite The AWS Machine Learning Research Awards (MLRA) provides unrestricted cash funds and AWS Promotional Credits to academics to advance the frontiers of machine learning (ML) and its applications. MLRA is pleased to announce winners for its 2019 Q2/Q3 call-for-proposal cycles: Mohit Bansal, University of North Carolina Chapel Hill, Auto-Adversarial

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Shared by AWS Machine Learning February 19, 2020

Lowering total cost of ownership for machine learning and increasing productivity with Amazon SageMaker

Favorite You have many choices for building, training, and deploying machine learning (ML) models. Weighing the financial considerations of different cloud solutions requires detailed analysis. You must consider the infrastructure, operational, and security costs for each step of the ML workflow, as well as the size and expertise of your

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Shared by AWS Machine Learning February 12, 2020

Flagging suspicious healthcare claims with Amazon SageMaker

Favorite The National Health Care Anti-Fraud Association (NHCAA) estimates that healthcare fraud costs the nation approximately $68 billion annually—3% of the nation’s $2.26 trillion in healthcare spending. This is a conservative estimate; other estimates range as high as 10% of annual healthcare expenditure, or $230 billion. Healthcare fraud inevitably results

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Shared by AWS Machine Learning February 11, 2020