Collection of (Little More + Refactored) Advanced TensorFlow Implementations. Try my best to implement algorithms with a single Jupyter Notebook.
- Denoising AutoEncoder
- Convolutional AutoEncoder (using deconvolution)
- Variational AutoEncoder
- AVB on 2-dimensional Toy Example
- Basic Classification (MLP and CNN)
- Custom Dataset Generation
- Classification (MLP and CNN) using Custom Dataset
- OOP Style Implementation of MLP and CNN
- Pretrained Network Usage with TF-SLIM
- Class Activation Map with Pretrained Network
- Preprocess Linux Kernel Sources
- Train and Sample with Char-RNN
- Domain Adversarial Neural Network with Gradient Reversal Layer
- Deep Convolutional Generative Adversarial Network with MNIST
- Mixture Density Network
- Heteroscedastic Mixture Density Network
- Model Based RL (Value Iteration and Policy Iteration)
- MNIST Classification with TF-SLIM
- Super-resolution with Generative Adversarial Network
- Python-2.7
- TensorFlow-1.0.1
- SciPy
- MatplotLib
- Jupyter Notebook