Tag deep learning face attributes in the wild github

Deep learning in structural optimization

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In this article we will outline the possibilities of artificial intelligence in the optimization of structures, in particular, the use of deep learning. Deep learning (DL) is a subset of machine learning (ML), which in turn is a subset of…

full stack deep learning

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Deep learning (full stack deep learning) is a subset of Machine Learning (ML) related to algorithms based on brain structure and functions – artificial Neural Networks (Neural Networks). If you are just starting out in deep learning or have some…