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Deep Learning on AWS

Organizations are increasingly turning to deep learning because it allows computers to learn independently and undertake tasks with little supervision, promising extraordinary benefits for both science and industry. Unlike traditional machine learning, deep learning attempts to simulate the way our brains learn and process information by creating artificial "neural networks" that can extract complicated concepts and relationships from data. Deep learning models improve through complex pattern recognition in pictures, text, sounds, and other data to produce more accurate insights and predictions.

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