ModelHub: Towards Unified Data and Lifecycle Management for Deep Learning

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Miao, Hui; Li, Ang; Davis, Larry S.; Deshpande, Amol;
  • Subject: Computer Science - Computer Vision and Pattern Recognition | Computer Science - Databases

Deep learning has improved state-of-the-art results in many important fields, and has been the subject of much research in recent years, leading to the development of several systems for facilitating deep learning. Current systems, however, mainly focus on model buildin... View more
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