Curt-Park / cs231n_assignments

[Assignments] CS231N: Convolutional Neural Networks for Visual Recognition (2016 & 2017)

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Repository for programming assignments of CS231n: Convolutional Neural Networks for Visual Recognition (2016 & 2017).

2017

  • Q1: k-Nearest Neighbor classifier (20 points)
  • Q2: Training a Support Vector Machine (25 points)
  • Q3: Implement a Softmax classifier (20 points)
  • Q4: Two-Layer Neural Network (25 points)
  • Q5: Higher Level Representations: Image Features (10 points)
  • Q6: Cool Bonus: Do something extra! (+10 points) - Not done
  • Q1: Fully-connected Neural Network (25 points)
  • Q2: Batch Normalization (25 points)
  • Q3: Dropout (10 points)
  • Q4: Convolutional Networks (30 points)
  • Q5: PyTorch / TensorFlow on CIFAR-10 (10 points) - Done both in Pytorch and Tensorflow
  • Q6: Do something extra! (up to +10 points) - Done both in Pytorch and Tensorflow
    • Extra Credit: VGG-like networks which acheive 79.4% and 78.4% on CIFAR-10 test set in Pytorch and Tensorflow respectively
  • Q1: Image Captioning with Vanilla RNNs (25 points)
  • Q2: Image Captioning with LSTMs (30 points)
  • Q3: Network Visualization: Saliency maps, Class Visualization, and Fooling Images (15 points) - Done both in Pytorch and Tensorflow
  • Q4: Style Transfer (15 points) - Done both in Pytorch and Tensorflow
  • Q5: Generative Adversarial Networks (15 points) - Done both in Pytorch and Tensorflow
    • Extra Credit: InfoGAN (TF), WGAN-GP (TF), WGAN-GP (Pytorch)

2016

  • Q1: k-Nearest Neighbor classifier (20 points)
  • Q2: Training a Support Vector Machine (25 points)
  • Q3: Implement a Softmax classifier (20 points)
  • Q4: Two-Layer Neural Network (25 points)
  • Q5: Higher Level Representations: Image Features (10 points)
  • Q6: Cool Bonus: Do something extra! (+10 points) - Not done
  • Q1: Fully-connected Neural Network (30 points)
  • Q2: Batch Normalization (30 points)
  • Q3: Dropout (10 points)
  • Q4: ConvNet on CIFAR-10 (30 points)
  • Q5: Do something extra! (up to +10 points) - Built a CNN network which acheives 73.5% on CIFAR-10 test set
  • Q1: Image Captioning with Vanilla RNNs (40 points)
  • Q2: Image Captioning with LSTMs (35 points)
  • Q3: Image Gradients: Saliency maps and Fooling Images (10 points)
  • Q4: Image Generation: Classes, Inversion, DeepDream (15 points)
  • Q5: Do something extra! (up to +10 points) - Not done

Useful Links

About

[Assignments] CS231N: Convolutional Neural Networks for Visual Recognition (2016 & 2017)


Languages

Language:Jupyter Notebook 94.7%Language:Python 4.7%Language:Tcl 0.6%Language:Cython 0.0%Language:Shell 0.0%