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Automated Machine Learning: Past, Present and Future
Giulio Alessandrini
Machine learning superfunctions like Predict and Classify have tried to bridge the gap between beginner and specialist Wolfram Language users by offering a fully automated yet customizable pipeline. Over time, new tools like feature extraction, distribution fitting and anomaly detection have been added. This talk reviews the current set of machine learning capabilities and looks at what might come in the future.
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Channels: Technology Conference
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