Most businesses are far more interested in accurate forecasting and fraud detection using their existing structured datasets than identifying cats in YouTube videos. Powerful deep learning techniques can efficiently extract insight from the kind of structured data collected by most businesses and organisations. Deep learning demands less feature tuning than other machine learning methods, takes less code to maintain, and can be automated to crawl your business’s databases in order to detect unanticipated patterns a human would never even notice. Thanks to the availability of cloud environments adapted to deep learning and to recent improvements in deep learning frameworks, deep learning is now a viable approach to solving problems with structured data.
About the book
Deep Learning with Structured Data shows you how to bring powerful deep learning techniques to your business’s structured data to predict trends and unlock hidden insights. In it, deep learning advocate Mark Ryan takes you through cleaning and preparing structured data for deep learning. You’ll learn the architecture of a Keras deep learning model, along with techniques for training, deploying, and maintaining your model. You’ll discover ways to get quick wins that can rapidly show whether your models are working, and techniques for monitoring your model’s ongoing functionality. Throughout, an end-to-end example using an open source transit delay dataset illustrates deep learning’s potential for unraveling problems and making predictions from large volumes of structured data.
What's inside
The benefits and drawbacks of deep learning
Organizing data for your deep learning model
The deep learning stack
Measuring performance of your models
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