AtomAI is a new software package that applies deep learning to microscopy data at atomic resolutions. It can identify thin objects such as nanofibers or domain walls in microscopy data and reduce errors in image processing. AtomAI is designed to help researchers in condensed matter physics, materials science, and chemistry establish broad connections between microscopy observations and materials behavior.
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