GPU accelerated Deep Belief Network
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Updated
May 22, 2015 - Python
GPU accelerated Deep Belief Network
A web app for training and analysing Deep Belief Networks
Interface between a DBN model and CNN models to learn from demonstrations
A version of the learnergy package to deal with video datasets
A repository for generating synthetic data (images) using various DL/ML models.
Tia's implementation of Neural Network Architectures from scratch
Simple Keras-inspired DeepLearning Framework implemented in Python with Numpy backend: MLP, CNN, RNN, RBF, SOM, DBN...
📄 Official implementation regarding the chapter "Fine-Tuning Deep Belief Networks with Harmony-Based Optimization".
An pytorch implementation of Deep Belief Network with sklearn compatibility for classification. The training process consists the pretraining of DBN, fine-tuning as an unrolled autoencoder-decoder, and supervised fine-tuning as a classifier.
Simple framework for image and video deblurring, implemented by PyTorch
The aim of this repository is to create RBMs, EBMs and DBNs in generalized manner, so as to allow modification and variation in model types.
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