PyTorch implementation of the TTC algorithm

Overview

Trust-the-Critics

This repository is a PyTorch implementation of the TTC algorithm and the WGAN misalignment experiments presented in Trust the Critics: Generatorless and Multipurpose WGANs with Initial Convergence Guarantees.

How to run this code

  • Create a Python virtual environment with Python 3.8 installed.
  • Install the necessary Python packages listed in the requirements.txt file (this can be done through pip install -r /path/to/requirements.txt).

In the example_shell_scripts folder, we include samples of shell scripts we used to run our experiments. We note that training generative models is computationally demanding, and thus requires adequate computational resources (i.e. running this on your laptop is not recommended).

TTC algorithm

The various experiments we run with TTC are described in Section 5 and Addendix B of the paper. Illustrating the flexibility of the TTC algorithm, the image generation, denoising and translation experiments can all be run using the ttc.py script; the only necessary changes are the source and target datasets. Running TTC with a given source and a given target will train and save several critic neural networks that can subsequently be used to push the source distribution towards the target distribution by applying the 'steptaker' function found in TTC_utils/steptaker.py once for each critic.

Necessary arguments for ttc.py are:

  • 'source' : The name of the distribution or dataset that is to be pushed towards the target (options are listed in ttc.py).
  • 'target' : The name of the target dataset (options are listed in ttc.py).
  • 'data' : The path of a directory where the necessary data is located. This includes the target dataset, in a format that can be accessed by a dataloader object obtained from the corresponding function in dataloader.py. Such a dataloader always belongs to the torch.utils.data.DataLoader class (e.g. if target=='mnist', then the corresponding dataloader will be an instance of torchvision.datasets.MNIST, and the MNIST dataset should be placed in 'data' in a way that reflects this). If the source is a dataset, it needs to be placed in 'data' as well. If source=='untrained_gen', then the untrained generator used to create the source distribution needs to be saved under 'data/ugen.pth'.
  • 'temp_dir' : The path of a directory where the trained critics will be saved, along with a few other files (including the log.pkl file that contains the step sizes). Despite the name, this folder isn't necessarily temporary.

Other optional arguments are described in a commented section at the top of the ttc.py script. Note that running ttc.py will only train the critics that the TTC algorithm uses to push the source distribution towards the target distribution, it will not actually push any samples from the source towards the target (as mentioned above, this is done using the steptaker function).

TTC image generation
For a generative experiment, run ttc.py with the source argument set to either 'noise' or 'untrained_gen' and the target of your choice. Then, run ttc_eval.py, which will use the saved critics and step sizes to push noise inputs towards the target distribution according to the TTC algorithm (using the steptaker function), and which will optionally evaluate generative performance with FID and/or MMD (FID is used in the paper). The arguments 'source', 'target', 'data', 'temp_dir' and 'model' for ttc_eval.py should be set to the same values as when running ttc.py. If evaluating FID, the folder specified by 'temp_dir' should contain a subdirectory named 'temp_dir/{target}test' (e.g. 'temp_dir/mnisttest' if target=='mnist') containing the test data from the target dataset saved as individual files. For instance, this folder could contain files of the form '00001.jpg', '00002.jpg', etc. (although extensions other than .jpg can be used).

TTC denoising
For a denoising experiment, run ttc.py with source=='noisybsds500' and target=='bsds500' (specifying a noise level with the 'sigma' argument). Then, run denoise_eval.py (with the same 'temp_dir', 'data' and 'model' arguments), which will add noise to images, denoise them using the TTC algorithm and the saved critics, and evaluate PSNR's.

TTC Monet translation
For a denoising experiment, run ttc.py with source=='photo' and target=='monet'. Then run ttc_eval.py (with the same 'source', 'target', 'temp_dir', 'data' and 'model' arguments, and presumably with no FID or MMD evaluation), which will sample realistic images from the source and make them look like Monet paintings.

WGAN misalignment

The WGAN misalignment experiments are described in Section 3 and Appendix B.1 of the paper, and are run using misalignments.py. This script trains a WGAN while, at some iterations, measuring how misaligned the movement of generated samples caused by updating the generator is from the critic's gradient. The generator's FID is also measured at the same iterations.

The required arguments for misalignments.py are:

  • 'target' : The dataset used to train the WGAN - can be either 'mnist' or 'fashion' (for Fashion-MNIST).
  • 'data' : The path of a folder where the MNIST (or Fashion-MNIST) dataset is located, in a format that can be accessed by an instance of the torchvision.datasets.MNIST class (resp torchvision.datasets.FashionMNIST).
  • 'fid_data' : The path of a folder containing the test data from the MNIST dataset saved as individual files. For instance, this folder could contain files of the form '00001.jpg', '00002.jpg', etc. (although extensions other than .jpg can be used).
  • 'checkpoints' : A string of integers separated by underscores. The integers specify the iterations at which misalignments and FID are computed, and training will continue until the largest iteration is reached.

Other optional arguments (including 'results_path' and 'temp_dir') are described in a commented section at the top of the misalignments.py. The misalignment results reported in the paper (Tables 1 and 5, and Figure 3), correspond to using the default hyperparameters and to setting the 'checkpoints' argument roughly equal to '10_25000_40000', with '10' corresponding the early stage in training, '25000' to the mid stage, and '40000' to the late stage.

WGAN generation

For completeness we include the code that was used to obtain the WGAN FID statistics in Table 3 of the paper, which includes the wgan_gp.py and wgan_gp_eval.py scripts. The former trains a WGAN with the InfoGAN architecture on the dataset specified by the 'target' argument, saving generator model dictionaries in the folder specified by 'temp_dir' at ten equally spaced stages in training. The wgan_gp_eval.py script evaluates the performance of the generator with the different model dictionaries in 'temp_dir'.

The necessary arguments to run wgan_gp.py are:

  • 'target' : The name of the dataset to generate (can be either 'mnist', 'fashion' or 'cifar10').
  • 'data' : Folder where the dataset is located.
  • 'temp_dir' : Folder where the model dictionaries are saved.

Once wgan_gp.py has run, wgan_gp_eval.py should be called with the same arguments for 'target', 'data' and 'temp_dir', and setting the 'model' argument to 'infogan'. If evaluating FID, the 'temp_dir' folder needs to contain the test data from the target dataset saved as individual files. For instance, this folder could contain files of the form '00001.jpg', '00002.jpg', etc. (although extensions other than .jpg can be used).

Reproducibility

This repository contains two branches: 'main' and 'reproducible'. You are currectly viewing the 'main' branch, which contains a clean version of the code meant to be easy to read and interpret and to run more efficiently than the version on the 'reproducible' branch. The results obtained by running the code on this branch should be nearly (but not perfectly) identical to the results stated in the papers, the differences stemming from the randomness inherent to the experiments. The 'reproducible' branch allows one to replicate exactly the results stated in the paper (random seeds are specified) for the TTC experiments.

Computing architecture and running times

We ran different versions of the code presented here on Compute Canada (https://www.computecanada.ca/) clusters, always using a single NVIDIA V100 Volta or NVIDIA A100 Ampere GPU. Here are rough estimations of the running times for our experiments.

  • MNIST/Fashion MNIST generation training run (TTC): 60-90 minutes.
  • MNIST/Fashion MNIST generation training run (WGAN): 45-90 minutes (this includes misalignments computations).
  • CIFAR10 generation training run: 3-4 hours (TTC), 90 minutes (WGAN-GP).
  • Image translation training run: up to 20 hours.
  • Image denoising training run: 8-10 hours.

Assets

Portions of this code, as well as the datasets used to produce our experimental results, make use of existing assets. We provide here a list of all assets used, along with the licenses under which they are distributed, if specified by the originator:

Code for Greedy Gradient Ensemble for Visual Question Answering (ICCV 2021, Oral)

Greedy Gradient Ensemble for De-biased VQA Code release for "Greedy Gradient Ensemble for Robust Visual Question Answering" (ICCV 2021, Oral). GGE can

21 Jun 29, 2022
This repository contains an overview of important follow-up works based on the original Vision Transformer (ViT) by Google.

This repository contains an overview of important follow-up works based on the original Vision Transformer (ViT) by Google.

75 Dec 02, 2022
Official PyTorch Implementation of Mask-aware IoU and maYOLACT Detector [BMVC2021]

The official implementation of Mask-aware IoU and maYOLACT detector. Our implementation is based on mmdetection. Mask-aware IoU for Anchor Assignment

Kemal Oksuz 46 Sep 29, 2022
Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt)

Deep Learning for Natural Language Processing SS 2021 (TU Darmstadt) Task Training huge unsupervised deep neural networks yields to strong progress in

Oliver Hahn 1 Jan 26, 2022
Explainable Zero-Shot Topic Extraction

Zero-Shot Topic Extraction with Common-Sense Knowledge Graph This repository contains the code for reproducing the results reported in the paper "Expl

D2K Lab 56 Dec 14, 2022
Learning recognition/segmentation models without end-to-end training. 40%-60% less GPU memory footprint. Same training time. Better performance.

InfoPro-Pytorch The Information Propagation algorithm for training deep networks with local supervision. (ICLR 2021) Revisiting Locally Supervised Lea

78 Dec 27, 2022
EqGAN - Improving GAN Equilibrium by Raising Spatial Awareness

EqGAN - Improving GAN Equilibrium by Raising Spatial Awareness Improving GAN Equilibrium by Raising Spatial Awareness Jianyuan Wang, Ceyuan Yang, Ying

GenForce: May Generative Force Be with You 149 Dec 19, 2022
Deep learning image registration library for PyTorch

TorchIR: Pytorch Image Registration TorchIR is a image registration library for deep learning image registration (DLIR). I have integrated several ide

Bob de Vos 40 Dec 16, 2022
Codes accompanying the paper "Believe What You See: Implicit Constraint Approach for Offline Multi-Agent Reinforcement Learning" (NeurIPS 2021 Spotlight

Implicit Constraint Q-Learning This is a pytorch implementation of ICQ on Datasets for Deep Data-Driven Reinforcement Learning (D4RL) and ICQ-MA on SM

42 Dec 23, 2022
Predict multi paths to a moving person depending on his trajectory history.

Multi-future Trajectory Prediction The project is about using the Multiverse model to make possible multible-future trajectory prediction for a seen p

Said Gamal 1 Jan 18, 2022
QAHOI: Query-Based Anchors for Human-Object Interaction Detection (paper)

QAHOI QAHOI: Query-Based Anchors for Human-Object Interaction Detection (paper) Requirements PyTorch = 1.5.1 torchvision = 0.6.1 pip install -r requ

38 Dec 29, 2022
[AI6101] Introduction to AI & AI Ethics is a core course of MSAI, SCSE, NTU, Singapore

[AI6101] Introduction to AI & AI Ethics is a core course of MSAI, SCSE, NTU, Singapore. The repository corresponds to the AI6101 of Semester 1, AY2021-2022, starting from 08/2021. The instructors of

AccSrd 1 Sep 22, 2022
This is the repository for the paper "Have I done enough planning or should I plan more?"

Metacognitive Learning Tool box https://re.is.mpg.de What Is This? This repository contains two modules used to analyse metacognitive learning in huma

0 Dec 01, 2021
The King is Naked: on the Notion of Robustness for Natural Language Processing

the-king-is-naked: on the notion of robustness for natural language processing AAAI2022 DISCLAIMER:This repo will be updated soon with instructions on

Iperboreo_ 1 Nov 24, 2022
converts nominal survey data into a numerical value based on a dictionary lookup.

SWAP RATE Converts nominal survey data into a numerical values based on a dictionary lookup. It allows the user to switch nominal scale data from text

Jake Rhodes 1 Jan 18, 2022
Deep Residual Learning for Image Recognition

Deep Residual Learning for Image Recognition This is a Torch implementation of "Deep Residual Learning for Image Recognition",Kaiming He, Xiangyu Zhan

Kimmy 561 Dec 01, 2022
Codes for SIGIR'22 Paper 'On-Device Next-Item Recommendation with Self-Supervised Knowledge Distillation'

OD-Rec Codes for SIGIR'22 Paper 'On-Device Next-Item Recommendation with Self-Supervised Knowledge Distillation' Paper, saved teacher models and Andro

Xin Xia 11 Nov 22, 2022
Implementation of the state-of-the-art vision transformers with tensorflow

ViT Tensorflow This repository contains the tensorflow implementation of the state-of-the-art vision transformers (a category of computer vision model

Mohammadmahdi NouriBorji 2 Mar 16, 2022
Source code of the paper "Deep Learning of Latent Variable Models for Industrial Process Monitoring".

Source code of the paper "Deep Learning of Latent Variable Models for Industrial Process Monitoring".

Xiangyin Kong 7 Nov 08, 2022
A pytorch implementation of Paper "Improved Training of Wasserstein GANs"

WGAN-GP An pytorch implementation of Paper "Improved Training of Wasserstein GANs". Prerequisites Python, NumPy, SciPy, Matplotlib A recent NVIDIA GPU

Marvin Cao 1.4k Dec 14, 2022