A minimalist tool to display a network graph.

Overview

A tool to get a minimalist view of any architecture

This tool has only be tested with the models included in this repo. Therefore, I can't guarantee that it will work with other architectures, maybe you will have to adapt it a bit if your architecture is too complex or unusual.

The code to get the graph edges and nodes is a modified version of this repo. It does it by using the torch.jit._get_trace_graph functions of Pytorch.

The code to draw the graph is my own code, and I used Turtle graphics. I didn't use an existing library as my objective was to have something minimalist (i.e. no need to install anything, and the drawn graph only contains the essential info).

Quick start

python3 main.py --arch arch_name --input input_size

By default, --arch is resnet_50 and --input is 224.

Options for --arch (feel free to add more in models):

input 224:

  • mixnet_s, mixnet_m, mixnet_l
  • atomnas_a
  • resnet_50
  • mobilenet_v1
  • mobilenet_v2
  • shufflenetv2plus_small

input 32:

  • vgg_16_bn
  • googlenet
  • densenet_40

Explanation of the view

The info printed at the top left corner appears when the mouse is over an operation. It indicates the node id, the operation type, the parents and children nodes (and the position of the node in the screen, in debug mode).

The legend isn't printed (since we can get the info by hovering the mouse over the nodes), but the most important things to know are: yellow with a dot is conv (different shades for different kernel size), purple-ish is ReLU, green is BN, pink with a dot is Linear.

ResNet 50 (resnet_50): resnet_50

MixNet large (mixnet_l): mixnet_l

Mouse commands

Left click will draw a big dot. Right click will erase all the dots. Mouse scroll will change the color (the selected color will be shown at the top left of the screen: by default, 5 different colors are available).

Modify the code

The list of available operations being really long, I didn't implement a specific drawing for all of them. If you feel like one of them should be added, this can be done easily in op.py. The one that are not implemented will be displayed in dark grey by default.

If you want to add a model, put the architecture file in models, import it in main.py, and you are good to go.

If there is a specific operation that you don't want to see, you can add it in the REMOVED_NODES list in graph.py.

Also, if you have improvement ideas or if you want to contribute, you can send me a message :)

Known issues

  • If you use a model that contains slices with step>1, then you will get the following error:
RuntimeError: step!=1 is currently not supported

This is due too the torch.onnx._optimize_trace function that doesn't support step>1 slices (so for instance, you can't do x[::2]).

  • For complex connections (such as in atomnas model), some connections are drawn on top of each other, so it may be hard to understand. In this situation, you can use the text info (top left) to know the children and parents of each nodes.

Requirements 🔧

  • pytorch
Owner
Thibault Castells
I do research in NN compression, and I like it :)
Thibault Castells
2nd solution of ICDAR 2021 Competition on Scientific Literature Parsing, Task B.

TableMASTER-mmocr Contents About The Project Method Description Dependency Getting Started Prerequisites Installation Usage Data preprocess Train Infe

Jianquan Ye 298 Dec 21, 2022
ESGD-M - A stochastic non-convex second order optimizer, suitable for training deep learning models, for PyTorch

ESGD-M - A stochastic non-convex second order optimizer, suitable for training deep learning models, for PyTorch

Katherine Crowson 53 Dec 29, 2022
Predict and time series avocado hass

RECOMMENDER SYSTEM MARKETING TỔNG QUAN VỀ HỆ THỐNG DỮ LIỆU 1. Giới thiệu - Tiki là một hệ sinh thái thương mại "all in one", trong đó có tiki.vn, là

hieulmsc 3 Jan 10, 2022
The official code repo of "HTS-AT: A Hierarchical Token-Semantic Audio Transformer for Sound Classification and Detection"

Hierarchical Token Semantic Audio Transformer Introduction The Code Repository for "HTS-AT: A Hierarchical Token-Semantic Audio Transformer for Sound

Knut(Ke) Chen 134 Jan 01, 2023
Mining-the-Social-Web-3rd-Edition - The official online compendium for Mining the Social Web, 3rd Edition (O'Reilly, 2018)

Mining the Social Web, 3rd Edition The official code repository for Mining the Social Web, 3rd Edition (O'Reilly, 2019). The book is available from Am

Mikhail Klassen 838 Jan 01, 2023
Dewarping Document Image By Displacement Flow Estimation with Fully Convolutional Network.

Dewarping Document Image By Displacement Flow Estimation with Fully Convolutional Network

111 Dec 27, 2022
you can add any codes in any language by creating its respective folder (if already not available).

HACKTOBERFEST-2021-WEB-DEV Beginner-Hacktoberfest Need Your first pr for hacktoberfest 2k21 ? come on in About This is repository of Responsive Portfo

Suman Sharma 8 Oct 17, 2022
PyTorch implementation of NeurIPS 2021 paper: "CoFiNet: Reliable Coarse-to-fine Correspondences for Robust Point Cloud Registration"

CoFiNet: Reliable Coarse-to-fine Correspondences for Robust Point Cloud Registration (NeurIPS 2021) PyTorch implementation of the paper: CoFiNet: Reli

76 Jan 03, 2023
CIFAR-10_train-test - training and testing codes for dataset CIFAR-10

CIFAR-10_train-test - training and testing codes for dataset CIFAR-10

Frederick Wang 3 Apr 26, 2022
Tool for installing and updating MiSTer cores and other files

MiSTer Downloader This tool installs and updates all the cores and other extra files for your MiSTer. It also updates the menu core, the MiSTer firmwa

72 Dec 24, 2022
Defocus Map Estimation and Deblurring from a Single Dual-Pixel Image

Defocus Map Estimation and Deblurring from a Single Dual-Pixel Image This repository is an implementation of the method described in the following pap

21 Dec 15, 2022
Constrained Logistic Regression - How to apply specific constraints to logistic regression's coefficients

Constrained Logistic Regression Sample implementation of constructing a logistic regression with given ranges on each of the feature's coefficients (v

1 Dec 29, 2021
Consensus Learning from Heterogeneous Objectives for One-Class Collaborative Filtering

Consensus Learning from Heterogeneous Objectives for One-Class Collaborative Filtering This repository provides the source code of "Consensus Learning

SeongKu-Kang 6 Apr 29, 2022
Convolutional 2D Knowledge Graph Embeddings resources

ConvE Convolutional 2D Knowledge Graph Embeddings resources. Paper: Convolutional 2D Knowledge Graph Embeddings Used in the paper, but do not use thes

Tim Dettmers 586 Dec 24, 2022
ComputerVision - This repository aims at realized easy network architecture

ComputerVision This repository aims at realized easy network architecture Colori

DongDong 4 Dec 14, 2022
BBScan py3 - BBScan py3 With Python

BBScan_py3 This repository is forked from lijiejie/BBScan 1.5. I migrated the fo

baiyunfei 12 Dec 30, 2022
Out-of-Town Recommendation with Travel Intention Modeling (AAAI2021)

TrainOR_AAAI21 This is the official implementation of our AAAI'21 paper: Haoran Xin, Xinjiang Lu, Tong Xu, Hao Liu, Jingjing Gu, Dejing Dou, Hui Xiong

Jack Xin 13 Oct 19, 2022
基于Flask开发后端、VUE开发前端框架,在WEB端部署YOLOv5目标检测模型

基于Flask开发后端、VUE开发前端框架,在WEB端部署YOLOv5目标检测模型

37 Jan 01, 2023
Augmented Traffic Control: A tool to simulate network conditions

Augmented Traffic Control Full documentation for the project is available at http://facebook.github.io/augmented-traffic-control/. Overview Augmented

Meta Archive 4.3k Jan 08, 2023
Repo for the Tutorials of Day1-Day3 of the Nordic Probabilistic AI School 2021 (https://probabilistic.ai/)

ProbAI 2021 - Probabilistic Programming and Variational Inference Tutorial with Pryo Day 1 (June 14) Slides Notebook: students_PPLs_Intro Notebook: so

PGM-Lab 46 Nov 01, 2022