Active learning workflow for Amazon Comprehend custom classification models – Part 1

Favorite Amazon Comprehend  Custom Classification API enables you to easily build custom text classification models using your business-specific labels without learning ML. For example, your customer support organization can use Custom Classification to automatically categorize inbound requests by problem type based on how the customer has described the issue.  You can

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Shared by AWS Machine Learning September 26, 2020

Expanding Amazon Lex conversational experiences with US Spanish and British English

Favorite Amazon Lex provides the power of automatic speech recognition (ASR) for converting speech to text, along with natural language understanding (NLU) for recognizing user intents. This combination allows you to develop sophisticated conversational interfaces using both voice and text for chatbots, IVR bots, and voicebots. This week, we’re announcing

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Shared by AWS Machine Learning September 25, 2020

Streamline modeling with Amazon SageMaker Studio and the Amazon Experiments SDK

Favorite The modeling phase is a highly iterative process in machine learning (ML) projects, where data scientists experiment with various data preprocessing and feature engineering strategies, intertwined with different model architectures, which are then trained with disparate sets of hyperparameter values. This highly iterative process with many moving parts can,

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Shared by AWS Machine Learning September 25, 2020

Activity detection on a live video stream with Amazon SageMaker

Favorite Live video streams are continuously generated across industries including media and entertainment, retail, and many more. Live events like sports, music, news, and other special events are broadcast for viewers on TV and other online streaming platforms. AWS customers increasingly rely on machine learning (ML) to generate actionable insights

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Shared by AWS Machine Learning September 17, 2020