NETL researchers have harnessed the power of artificial intelligence (AI) to develop a tool that can ingest enormous amounts of unstructured geological data such as publications, maps, websites and presentations and then accurately label the visual data — work that could lead to a better understanding of the subsurface for safer energy production and carbon dioxide storage.
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