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
Time Delayed NN implemented in pytorch

Pytorch Time Delayed NN Time Delayed NN implemented in PyTorch. Usage kernels = [(1, 25), (2, 50), (3, 75), (4, 100), (5, 125), (6, 150)] tdnn = TDNN

Daniil Gavrilov 79 Aug 04, 2022
MoveNetを用いたPythonでの姿勢推定のデモ

MoveNet-Python-Example MoveNetのPythonでの動作サンプルです。 ONNXに変換したモデルも同梱しています。変換自体を試したい方はMoveNet_tf2onnx.ipynbを使用ください。 2021/08/24時点でTensorFlow Hubで提供されている以下モデ

KazuhitoTakahashi 38 Dec 17, 2022
Code release for "Self-Tuning for Data-Efficient Deep Learning" (ICML 2021)

Self-Tuning for Data-Efficient Deep Learning This repository contains the implementation code for paper: Self-Tuning for Data-Efficient Deep Learning

THUML @ Tsinghua University 101 Dec 11, 2022
Pytorch Implementations of large number classical backbone CNNs, data enhancement, torch loss, attention, visualization and some common algorithms.

Torch-template-for-deep-learning Pytorch implementations of some **classical backbone CNNs, data enhancement, torch loss, attention, visualization and

Li Shengyan 270 Dec 31, 2022
Black-Box-Tuning - Black-Box Tuning for Language-Model-as-a-Service

Black-Box-Tuning Source code for paper "Black-Box Tuning for Language-Model-as-a

Tianxiang Sun 149 Jan 04, 2023
Raster Vision is an open source Python framework for building computer vision models on satellite, aerial, and other large imagery sets

Raster Vision is an open source Python framework for building computer vision models on satellite, aerial, and other large imagery sets (including obl

Azavea 1.7k Dec 22, 2022
Adversarial Adaptation with Distillation for BERT Unsupervised Domain Adaptation

Knowledge Distillation for BERT Unsupervised Domain Adaptation Official PyTorch implementation | Paper Abstract A pre-trained language model, BERT, ha

Minho Ryu 29 Nov 30, 2022
Locally cache assets that are normally streamed in POPULATION: ONE

Population One Localizer This is no longer needed as of the build shipped on 03/03/22, thank you bigbox :) Locally cache assets that are normally stre

Ahman Woods 2 Mar 04, 2022
A large-scale video dataset for the training and evaluation of 3D human pose estimation models

ASPset-510 ASPset-510 (Australian Sports Pose Dataset) is a large-scale video dataset for the training and evaluation of 3D human pose estimation mode

Aiden Nibali 36 Oct 30, 2022
GPT, but made only out of gMLPs

GPT - gMLP This repository will attempt to crack long context autoregressive language modeling (GPT) using variations of gMLPs. Specifically, it will

Phil Wang 80 Dec 01, 2022
Self-describing JSON-RPC services made easy

ReflectRPC Self-describing JSON-RPC services made easy Contents What is ReflectRPC? Installation Features Datatypes Custom Datatypes Returning Errors

Andreas Heck 31 Jul 16, 2022
Pytorch implementation of MaskFlownet

MaskFlownet-Pytorch Unofficial PyTorch implementation of MaskFlownet (https://github.com/microsoft/MaskFlownet). Tested with: PyTorch 1.5.0 CUDA 10.1

Daniele Cattaneo 84 Nov 02, 2022
Neural style transfer as a class in PyTorch

pt-styletransfer Neural style transfer as a class in PyTorch Based on: https://github.com/alexis-jacq/Pytorch-Tutorials Adds: StyleTransferNet as a cl

Tyler Kvochick 31 Jun 27, 2022
Active window border replacement for window managers.

xborder Active window border replacement for window managers. Usage git clone https://github.com/deter0/xborder cd xborder chmod +x xborders ./xborder

deter 250 Dec 30, 2022
This project aims to segment 4 common retinal lesions from Fundus Images.

This project aims to segment 4 common retinal lesions from Fundus Images.

Husam Nujaim 1 Oct 10, 2021
Learned Token Pruning for Transformers

LTP: Learned Token Pruning for Transformers Check our paper for more details. Installation We follow the same installation procedure as the original H

Sehoon Kim 52 Dec 29, 2022
COIN the currently largest dataset for comprehensive instruction video analysis.

COIN Dataset COIN is the currently largest dataset for comprehensive instruction video analysis. It contains 11,827 videos of 180 different tasks (i.e

86 Dec 28, 2022
Using knowledge-informed machine learning on the PRONOSTIA (FEMTO) and IMS bearing data sets. Predict remaining-useful-life (RUL).

Knowledge Informed Machine Learning using a Weibull-based Loss Function Exploring the concept of knowledge-informed machine learning with the use of a

Tim 43 Dec 14, 2022
Official code for our EMNLP2021 Outstanding Paper MindCraft: Theory of Mind Modeling for Situated Dialogue in Collaborative Tasks

MindCraft Authors: Cristian-Paul Bara*, Sky CH-Wang*, Joyce Chai This is the official code repository for the paper (arXiv link): Cristian-Paul Bara,

Situated Language and Embodied Dialogue (SLED) Research Group 14 Dec 29, 2022
"Graph Neural Controlled Differential Equations for Traffic Forecasting", AAAI 2022

Graph Neural Controlled Differential Equations for Traffic Forecasting Setup Python environment for STG-NCDE Install python environment $ conda env cr

Jeongwhan Choi 55 Dec 28, 2022