Real-time data labeling pipeline for ML workflows using Amazon SageMaker Ground Truth

Favorite High-quality machine learning (ML) models depend on accurately labeled, high-quality training, validation, and test data. As ML and deep learning models are increasingly integrated into production environments, it’s becoming more important than ever to have customizable, real-time data labeling pipelines that can continuously receive and process unlabeled data. For

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Shared by AWS Machine Learning November 3, 2020

Training and serving H2O models using Amazon SageMaker

Favorite Model training and serving steps are two essential pieces of a successful end-to-end machine learning (ML) pipeline. These two steps often require different software and hardware setups to provide the best mix for a production environment. Model training is optimized for a low-cost, feasible total run duration, scientific flexibility,

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Shared by AWS Machine Learning October 31, 2020

Building a real-time conversational analytics platform for Amazon Lex bots

Favorite Conversational interfaces like chatbots have become an important channel for brands to communicate with their customers, partners, and employees. They offer faster service, 24/7 availability, and lower service costs. By analyzing your bot’s customer conversations, you can discover challenges in user experience, trending topics, and missed utterances. These additional

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Shared by AWS Machine Learning October 30, 2020