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Tehran
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"name": "Milad Badeleh",
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"description": "👋I like to train Deep Neural Nets on large datasets. Always learning, constantly curious. Building ML/AI systems, watching loss curves.🚀",
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"name": "Concrete-Crack-Detection-Using-VGG11",
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