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Author: Avinash

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  • Avinash

    September 7, 2023
    Machine Learning

    Pre-Trained Machine Learning Models vs Models Trained from Scratch

    From the Abstract: We report competitive results on object detection and instance segmentation on the COCO dataset using standard models…

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