jsuarez5341 / Efficient-Dynamic-Batching
Solves AI, transcends reality, infiltrates your mind
☆36Updated 7 years ago
Related projects ⓘ
Alternatives and complementary repositories for Efficient-Dynamic-Batching
- Tensorflow Implementation of Programmable Agents☆36Updated 7 years ago
- Deterministic Policy Gradient using torch7☆44Updated 8 years ago
- Torch implementation reproducing MNIST experiments from DeepMind's DNI paper.☆44Updated 7 years ago
- Implementation of Adversarial Variational Optimization in PyTorch☆43Updated 6 years ago
- ☆53Updated 7 years ago
- Cluttered MNIST Dataset☆50Updated 9 years ago
- ☆38Updated 7 years ago
- Topics on theoretical, mathematical aspects of DL☆71Updated 8 years ago
- A very simple variant of adversarial training that yields excellent results on MNIST☆12Updated 8 years ago
- TargetProp for RNNs☆28Updated 5 years ago
- Torch implementation of Wasserstein GAN https://arxiv.org/abs/1701.07875☆47Updated 7 years ago
- Implementation of a simple example of Q learning in Torch.☆50Updated 7 years ago
- RNNprop☆36Updated 7 years ago
- ☆29Updated 7 years ago
- Code for Attentive Recurrent Comparators☆57Updated 7 years ago
- easy embeddable Torch7 networks☆35Updated 8 years ago
- Distributed A3C☆34Updated 6 years ago
- Simple PuddleWorld DQN example using torch7☆29Updated 8 years ago
- Pytorch implementation of DeepMind's differentiable neural computer paper.☆94Updated 6 years ago
- [adversarial] examples and training cost☆19Updated 8 years ago
- ☆14Updated 7 years ago
- Pytorch implementation of "Forward Thinking: Building and Training Neural Networks One Layer at a Time"☆65Updated 7 years ago
- Translating neuralese☆43Updated 7 years ago
- torch TH/THC c++11 wrapper☆14Updated 7 years ago
- Efficient layer normalization GPU kernel for Tensorflow☆111Updated 7 years ago
- Tensorflow implementation of SGD with Coupled Adaptive Batch Size (CABS)☆43Updated 7 years ago
- Reference implementation for Structured Prediction with Deep Value Networks☆55Updated 7 years ago
- ☆32Updated 8 years ago