andersbll / cudarray
CUDA-based NumPy
☆234Updated 8 years ago
Related projects ⓘ
Alternatives and complementary repositories for cudarray
- Scikit-learn compatible tools using theano☆364Updated 7 years ago
- MultiGPU enabled image generative models (GAN and DCGAN)☆209Updated 4 years ago
- Generative Adversarial Networks with Keras☆156Updated 4 years ago
- Implementation of the DRAW network in lasagne☆199Updated 9 years ago
- Lightweight version of mxnet neural art implementation☆265Updated 8 years ago
- Library to manipulate tensors on the GPU.☆189Updated last year
- Rethinking the Inception Architecture for Computer Vision☆131Updated 7 years ago
- ☆207Updated 2 years ago
- Torch interface to HDF5 library☆237Updated 5 years ago
- Theano-based Alexnet☆229Updated 7 years ago
- ☆88Updated 9 years ago
- Code for my Kaggle Facial Keypoints Detection tutorial☆115Updated 8 years ago
- OptNet - Reducing memory usage in torch neural nets☆282Updated 7 years ago
- Automatic Caffe parameter search via Spearmint Bayesian optimisation☆96Updated 8 years ago
- THE Deep Learning Benchmarks☆352Updated 8 years ago
- Deep Learning Package base on Theano☆103Updated 8 years ago
- Deep Unsupervised Perceptual Grouping☆131Updated 4 years ago
- Reimplementation of DRAW☆347Updated 8 years ago
- Demonstration of recurrent neural network implemented with Theano☆377Updated 7 years ago
- Code for Kaggle-CIFAR10 competition. 5th place.☆246Updated 8 years ago
- Modular & extensible deep learning framework built on Theano.☆210Updated last year
- A numeric optimization package for Torch.☆197Updated 6 years ago
- Theano reimplementation of pixelCNN architecture☆167Updated 8 years ago
- "Real-Time Style Transfer" with Keras☆156Updated 3 months ago
- Recreating the Deep Residual Network in Lasagne☆118Updated 8 years ago
- Multi-GPU mini-framework for Theano☆195Updated 7 years ago
- Adversarial networks in TensorFlow☆170Updated 8 years ago
- Recurrent Neural Network for modeling sequential data implemented using Python and Theano.☆92Updated 9 years ago