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Awesome GitHub RepositoriesSample Containers

Dataclasses that hold input images, ground truth, masks, and prediction outputs for a single anomaly detection sample.

Distinct from Anomaly Detection: Distinct from Anomaly Detection: focuses on the data container for a single sample, not the detection algorithms.

Explore 1 awesome GitHub repository matching data & databases · Sample Containers. Refine with filters or upvote what's useful.

Awesome Sample Containers GitHub Repositories

Encuentra los mejores repositorios con IA.Buscaremos los repositorios que mejor coincidan usando IA.
  • open-edge-platform/anomalibAvatar de open-edge-platform

    open-edge-platform/anomalib

    5,871Ver en GitHub↗

    Anomalib is a PyTorch-based library for visual anomaly detection, offering a modular framework, a comprehensive model zoo, and a benchmarking suite designed for industrial defect detection. It provides a wide range of algorithms—including generative, discriminative, teacher-student, and vision-language approaches—that support unsupervised, few-shot, and zero-shot settings. The library enables deployment through model export to ONNX and OpenVINO for edge devices, and includes a no-code web application for training and inference. It also features a command-line interface for orchestrating multi

    Defines dataclasses holding input images, ground truth, masks, and predictions for each sample.

    Pythonanomaly-detectionanomaly-localizationanomaly-segmentation
    Ver en GitHub↗5,871
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