Using artificial intelligence to find anomalies hiding in massive datasets, MIT News

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Researchers at the MIT-IBM Watson AI lab have developed a computationally efficient method that could be used to identify anomalies in the U.S. power grid in real time. The novel technique augments a special type of machine-learning model with a powerful graph structure, and does not require any labeled data to train.

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Using artificial intelligence to find anomalies hiding in massive datasets, MIT News

Using artificial intelligence to find anomalies hiding in massive datasets, MIT News

Algorithms, Free Full-Text

Using artificial intelligence to find anomalies hiding in massive datasets, MIT News

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