This repository contains some of the Torch examples discussed in the following articles:
- Examples for Getting Started with Torch for Deep Learning
- More Examples for Working with Torch
- Implementing Torch Modules in C/CUDA
- PointNet Auto-Encoder in Torch
- Variational Auto-Encoder in Torch
- Denoising Variational Auto-Encoder in Torch
- Bernoulli Variational Auto-Encoder in Torch
Copyright (c) 2017-2019, David Stutz All rights reserved.
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