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Automatic/Black-box variational inference replication vs Autograd - Machine Learning - Julia Programming Language
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GitHub - jamesvuc/BBVI: A collection of Black Box Variational Inference algorithms implemented in an object-oriented Python framework using Autograd.
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Evaluating probabilistic programming and fast variational Bayesian inference in phylogenetics [PeerJ]
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The equivalence between Stein variational gradient descent and black-box variational inference - YouTube
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