Compare outputs between layers written in Tensorflow and layers written in Pytorch

Overview

Compare outputs of Wasserstein GANs between TensorFlow vs Pytorch

This is our testing module for the implementation of improved WGAN in Pytorch

Prerequisites

How to run

Go to test directory and run python test_compare_tf_to.py

How we do it

We inject the same weights init and inputs into layers of TensorFlow and Pytorch that we want to compare. For example, we set 5e-2 for the weights of Conv2d layer in both TensorFlow and Pytorch. Then we passed the same random input to those 2 layers and finally we compared 2 outputs from TensorFlow tensor and Pytorch tensor.

We use cosine to calculate the distance between 2 outputs. Reference: scipy.spatial.distance.cosine

What were compared between TensorFlow and Pytorch

We've compared the implementation of several layers in WGAN model. They are:

  • Depth to space
  • Conv2d
  • ConvMeanPool
  • MeanPoolConv
  • UpsampleConv
  • ResidualBlock (up)
  • ResidualBlock (down)
  • GoodGenerator
  • Discriminator
  • LayerNorm
  • BatchNorm
  • Gradient of Discriminator
  • Gradient of LayerNorm
  • Gradient of BatchNorm

Result

There are some weird results (cosine < 0 or the distance is bigger than defined threshold - 1 degree) and we look forward to your comments. Here are the outputs of the comparison.

b, c, h, w, in, out: 512, 12, 32, 32, 12, 4

-----------gen_data------------
True
tf.abs.mean: 0.500134
to.abs.mean: 0.500134
diff.mean: 0.0
cosine distance of gen_data: 0.0

-----------depth to space------------
True
tf.abs.mean: 0.500047
to.abs.mean: 0.500047
diff.mean: 0.0 cosine distance of depth to space: 0.0

-----------conv2d------------
True
tf.abs.mean: 2.5888
to.abs.mean: 2.5888
diff.mean: 3.56939e-07
cosine distance of conv2d: 5.96046447754e-08

-----------ConvMeanPool------------
True
tf.abs.mean: 2.58869
to.abs.mean: 2.58869
diff.mean: 2.93676e-07
cosine distance of ConvMeanPool: 0.0

-----------MeanPoolConv------------
True
tf.abs.mean: 2.48026
to.abs.mean: 2.48026
diff.mean: 3.42314e-07
cosine distance of MeanPoolConv: 0.0

-----------UpsampleConv------------
True
tf.abs.mean: 2.64478
to.abs.mean: 2.64478
diff.mean: 5.50668e-07
cosine distance of UpsampleConv: 0.0

-----------ResidualBlock_Up------------
True
tf.abs.mean: 1.01438
to.abs.mean: 1.01438
diff.mean: 5.99736e-07
cosine distance of ResidualBlock_Up: 0.0

-----------ResidualBlock_Down------------
False
tf.abs.mean: 2.38841
to.abs.mean: 2.38782
diff.mean: 0.192403
cosine distance of ResidualBlock_Down: 0.00430130958557

-----------Generator------------
True
tf.abs.mean: 0.183751
to.abs.mean: 0.183751
diff.mean: 9.97704e-07
cosine distance of Generator: 0.0

-----------D_input------------
True
tf.abs.mean: 0.500013
to.abs.mean: 0.500013
diff.mean: 0.0
cosine distance of D_input: 0.0

-----------Discriminator------------
True
tf.abs.mean: 295.795
to.abs.mean: 295.745
diff.mean: 0.0496472
cosine distance of Discriminator: 0.0

-----------GradOfDisc------------
GradOfDisc
tf: 315944.9375
to: 315801.09375
True
tf.abs.mean: 315945.0
to.abs.mean: 315801.0
diff.mean: 143.844
cosine distance of GradOfDisc: 0.0

-----------LayerNorm-Forward------------
True
tf.abs.mean: 0.865959
to.abs.mean: 0.865946
diff.mean: 1.3031e-05
cosine distance of LayerNorm-Forward: -2.38418579102e-07

-----------LayerNorm-Backward------------
False
tf.abs.mean: 8.67237e-10
to.abs.mean: 2.49221e-10
diff.mean: 6.18019e-10
cosine distance of LayerNorm-Backward: 0.000218987464905

-----------BatchNorm------------
True
tf.abs.mean: 0.865698
to.abs.mean: 0.865698
diff.mean: 1.13394e-07
cosine distance of BatchNorm: 0.0

-----------BatchNorm-Backward------------
True
tf.abs.mean: 8.66102e-10
to.abs.mean: 8.62539e-10
diff.mean: 3.56342e-12
cosine distance of BatchNorm-Backward: 4.17232513428e-07

Acknowledge

Owner
Hung Nguyen
Hung Nguyen
Real life contra a deep learning project built using mediapipe and openc

real-life-contra Description A python script that translates the body movement into in game control. Welcome to all new real life contra a deep learni

Programminghut 7 Jan 26, 2022
phylotorch-bito is a package providing an interface to BITO for phylotorch

phylotorch-bito phylotorch-bito is a package providing an interface to BITO for phylotorch Dependencies phylotorch BITO Installation Get the source co

Mathieu Fourment 2 Sep 01, 2022
[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

BCMI 49 Jul 27, 2022
[ICCV 2021 (oral)] Planar Surface Reconstruction from Sparse Views

Planar Surface Reconstruction From Sparse Views Linyi Jin, Shengyi Qian, Andrew Owens, David F. Fouhey University of Michigan ICCV 2021 (Oral) This re

Linyi Jin 89 Jan 05, 2023
Official repository for the paper, MidiBERT-Piano: Large-scale Pre-training for Symbolic Music Understanding.

MidiBERT-Piano Authors: Yi-Hui (Sophia) Chou, I-Chun (Bronwin) Chen Introduction This is the official repository for the paper, MidiBERT-Piano: Large-

137 Dec 15, 2022
A highly efficient and modular implementation of Gaussian Processes in PyTorch

GPyTorch GPyTorch is a Gaussian process library implemented using PyTorch. GPyTorch is designed for creating scalable, flexible, and modular Gaussian

3k Jan 02, 2023
Official PyTorch implementation of "Proxy Synthesis: Learning with Synthetic Classes for Deep Metric Learning" (AAAI 2021)

Proxy Synthesis: Learning with Synthetic Classes for Deep Metric Learning Official PyTorch implementation of "Proxy Synthesis: Learning with Synthetic

NAVER/LINE Vision 30 Dec 06, 2022
TC-GNN with Pytorch integration

TC-GNN (Running Sparse GNN on Dense Tensor Core on Ampere GPU) Cite this project and paper. @inproceedings{TC-GNN, title={TC-GNN: Accelerating Spars

YUKE WANG 19 Dec 01, 2022
pix2pix in tensorflow.js

pix2pix in tensorflow.js This repo is moved to https://github.com/yining1023/pix2pix_tensorflowjs_lite See a live demo here: https://yining1023.github

Yining Shi 47 Oct 04, 2022
Tensorflow implementation of "BEGAN: Boundary Equilibrium Generative Adversarial Networks"

BEGAN in Tensorflow Tensorflow implementation of BEGAN: Boundary Equilibrium Generative Adversarial Networks. Requirements Python 2.7 or 3.x Pillow tq

Taehoon Kim 922 Dec 21, 2022
A multi-entity Transformer for multi-agent spatiotemporal modeling.

baller2vec This is the repository for the paper: Michael A. Alcorn and Anh Nguyen. baller2vec: A Multi-Entity Transformer For Multi-Agent Spatiotempor

Michael A. Alcorn 56 Nov 15, 2022
LSUN Dataset Documentation and Demo Code

LSUN Please check LSUN webpage for more information about the dataset. Data Release All the images in one category are stored in one lmdb database fil

Fisher Yu 426 Jan 02, 2023
Neural Architecture Search Powered by Swarm Intelligence 🐜

Neural Architecture Search Powered by Swarm Intelligence 🐜 DeepSwarm DeepSwarm is an open-source library which uses Ant Colony Optimization to tackle

288 Oct 28, 2022
Machine learning evaluation metrics, implemented in Python, R, Haskell, and MATLAB / Octave

Note: the current releases of this toolbox are a beta release, to test working with Haskell's, Python's, and R's code repositories. Metrics provides i

Ben Hamner 1.6k Dec 26, 2022
✔️ Visual, reactive testing library for Julia. Time machine included.

PlutoTest.jl (alpha release) Visual, reactive testing library for Julia A macro @test that you can use to verify your code's correctness. But instead

Pluto 68 Dec 20, 2022
[ICCV'21] Learning Conditional Knowledge Distillation for Degraded-Reference Image Quality Assessment

CKDN The official implementation of the ICCV2021 paper "Learning Conditional Knowledge Distillation for Degraded-Reference Image Quality Assessment" O

Multimedia Research 50 Dec 13, 2022
Deep Convolutional Generative Adversarial Networks

Unsupervised Representation Learning with Deep Convolutional Generative Adversarial Networks Alec Radford, Luke Metz, Soumith Chintala All images in t

Alec Radford 3.4k Dec 29, 2022
LSTM Neural Networks for Spectroscopic Studies of Type Ia Supernovae

Package Description The difficulties in acquiring spectroscopic data have been a major challenge for supernova surveys. snlstm is developed to provide

7 Oct 11, 2022
DeepFaceEditing: Deep Face Generation and Editing with Disentangled Geometry and Appearance Control

DeepFaceEditing: Deep Face Generation and Editing with Disentangled Geometry and Appearance Control One version of our system is implemented using the

260 Nov 28, 2022
DeLag: Detecting Latency Degradation Patterns in Service-based Systems

DeLag: Detecting Latency Degradation Patterns in Service-based Systems Replication package of the work "DeLag: Detecting Latency Degradation Patterns

SEALABQualityGroup @ University of L'Aquila 2 Mar 24, 2022