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    eMaint is an award-winning Computerized Maintenance Management Software (CMMS) for managing work orders, PM schedules, and parts inventory.

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    CycleGAN

    CycleGAN

    Software that can generate photos from paintings

    CycleGAN — in its original form — is a landmark in deep learning for image-to-image translation without paired data. Rather than requiring matching image pairs between source and target domains (which are often hard or impossible to obtain), CycleGAN learns two mappings — one from domain A to B, and another back from B to A — along with a cycle-consistency loss that encourages the round-trip to reconstruct the original image. This innovation lets the model learn domain-to-domain translations like turning horses into zebras, changing seasons, or transforming photos into paintings, using only collections of images from each domain. ...
    Downloads: 0 This Week
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