Computer Vision Meetup: Bridging Real-World Applications with Anomalib at the CVPR VAND Challenge

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  • Опубликовано: 27 окт 2024
  • This talk highlights the role of Anomalib, an open-source deep learning framework, in advancing anomaly detection within AI systems, particularly showcased at the upcoming CVPR Visual Anomaly and Novelty Detection (VAND) workshop. Anomalib integrates advanced algorithms and tools to facilitate both academic research and practical applications in sectors like manufacturing, healthcare, and security. It features capabilities such as experiment tracking, model optimization, and scalable deployment solutions. Additionally, the discussion will include Anomalib’s participation in the VAND challenge, focusing on robust real-world applications and few-shot learning for anomaly detection.
    About the Speaker
    Samet Akcay, an AI research engineer and a tech lead, specializes in semi/self-supervised, zero/few-shot anomaly detection, and multi-modality. He is recently known for his open-source contributions to the ML/DL community. He is the lead author of anomalib, a major open-source anomaly detection library. He also maintains the OpenVINO Training Extensions, a low-code transfer learning framework for building computer vision models.
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    Recorded on May 8, 2024 at the AI, Machine Learning and Data Science Meetup.
    #computervision #machinelearning #datascience #ai #artificialintelligence

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