deep-learning-papers
Deep learning is an AI function and a subset of machine learning, used for processing large amounts of complex data. Deep learning can automatically create algorithms based on data patterns.
Here are 13 public repositories matching this topic...
Recent Deep Learning papers in NLU and RL
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Oct 5, 2019 - Python
Always sparse. Never dense. But never say never. A Sparse Training repository for the Adaptive Sparse Connectivity concept and its algorithmic instantiation, i.e. Sparse Evolutionary Training, to boost Deep Learning scalability on various aspects (e.g. memory and computational time efficiency, representation and generalization power).
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Jul 21, 2021 - Python
A Pytorch implementation of the 2017 Huang et. al. paper "Arbitrary Style Transfer in Real-time with Adaptive Instance Normalization"
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Jul 13, 2020 - Python
Fast and Accurate User constrained Thumbnail Generation using Adaptive Convolutions. | ICASSP 2019 [ORAL]
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Feb 2, 2019 - Python
Repository collecting resources and best practices to improve experimental rigour in deep learning research.
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Mar 30, 2023 - Python
Deep Learning Paper Implementations in PyTorch
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Nov 11, 2020 - Python
Code for "Five Hundred Deep Learning Papers, Graphviz and Python" (http://goo.gl/l1PIoi)
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Dec 9, 2015 - Python
Sharpness Aware Minimization for Fastai
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Feb 26, 2021 - Python
Deep Learning papers reading roadmap for anyone who is eager to learn this amazing tech!
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May 8, 2022 - Python
objected oriented implementation of InfoGAN using PyTorch
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Aug 5, 2018 - Python
My implementation of "Distilling the Knowledge in a Neural Network" on the CIFAR10 data set using Pytorch.
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Feb 6, 2020 - Python
tubular structure segmentation in histopathological images
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Dec 9, 2024 - Python
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