Pytorch Implementation of "Desigining Network Design Spaces", Radosavovic et al. CVPR 2020.

Overview

RegNet

Designing Network Design Spaces

Pytorch Implementation of "Desigining Network Design Spaces", Radosavovic et al. CVPR 2020.

Paper | Official Implementation

RegNet offer a very nice design space for neural network architectures. RegNet design space consists of networks with simple structure which authors call "Regular" Networks (RegNet). Models in RegNet design space have higher concentration of models that perform well and generalise well. RegNet models are very efficient and run upto 5 times faster than EfficientNet models on GPUs.

Also RegNet models have been used as a backbone in Tesla FSD Stack.

Overview Of AnyNet

  • Main goal of the paper is to help in better understanding of network design and discover principles that generalize across settings.
  • Explore structure aspeck of network design and arrive at low dimensional design space consisting of simple regualar networks
  • Network width and depth can be explained by a quantized linear function.

AnyNet Design Space

The basic structure of models in AnyNet design space consists of a simple Stem which is then followed by the network body that does majority of the computation and a final network head that predicts the class scores. The stem and head networks are kept as simple as possible. The network body consists of 4 stages that operate at progressively lower resolutions.

AnyNet

Structure of network body is determined by block width w, network depth d_i, bottleneck ratio b_i and group widths g. Degrees of freedom at stage 'i' are number of blocks d in each stage, block width w and other block parameters such as stride, padding and so on.

Other models are obtained by refining the design space by adding more constraints on the above parameters. Design space is refined keeping the following things in mind :

  • Simplify structure of design space.
  • Improve the interpretability of design space.
  • Maintain Design space complexity.
  • Maintain model diversity in design space.

AnyNetX

XBlock

  • Uses XBlocks within each block of the network
  • Degrees of freedom in AnyNetX is 16
  • Each network has 4 stages
  • Each stage has 4 parameters (network depth di, block width wi, bottleneck ratio bi, group width gi)
  • bi ∈ {1,2,4}
  • gi ∈ {1,2,3,...,32}
  • wi <= 1024
  • di <= 16

AnyNetX(A)

AnyNetX(A) is same as the above AnyNetX

AnyNetX(B)

In this design space,

  • bottleneck ratio bi is fixed for all stages.
  • performance of models in AnyNetX(B) space is almost equal to AnyNetX(A) in average and best case senarios
  • bi <= 2 seemes to work best.

AnyNetX(C)

In this design space,

  • Shared group width gi for all stages.
  • AnyNetX(C) has 6 fewer degrees of freedom compared to AnyNetX(A)
  • gi > 1 seems to work best

AnyNetX(D)

In AnyNetX(D) design space, authors observed that good networks have increasing stage widths w(i+1) > wi

AnyNetX(E)

In AnyNetX(E) design space, it was observed that as stage widths wi increases, depth di likewise tend to increase except for the last stage.

RegNet

Please refer to Section 3.3 in paper.

Training

Import any of the following variants of RegNet using

from regnet import regnetx_002 as RegNet002
from regnet import Xblock, Yblock # required if you want to use YBlock instead of Xblock. Refer to paper for more details on YBlock

RegNet variants available are:

  • regnetx_002
  • regnetx_004
  • regnetx_006
  • regnetx_008
  • regnetx_016
  • regnetx_032
  • regnetx_040
  • regnetx_064
  • regnetx_080
  • regnetx_120
  • regnetx_160
  • regnetx_320

Import TrainingConfig and Trainer Classes from regnet and use them to train the model as follows

from regnet import TrainingConfig, Trainer

model = RegNet002(block=Xblock, num_classes=10)

training_config = TrainingConfig(max_epochs=10, batch_size=128, learning_rate=3e-4, weight_decay=5e-4, ckpt_path="./regnet.pt")
trainer = Trainer(model = model, train_dataset=train_dataset, test_dataset=test_dataset, config=training_config)
trainer.train()

Note : you need not use TrainingConfig and Trainer classes if you want to write your own training loops. Just importing the respective models would suffice.

TODO

  • Test if model trains when using YBlocks
  • Implement model checkpointing for every 'x' epochs

References

[1] https://github.com/signatrix/regnet

[2] https://github.com/d-li14/regnet.pytorch

@InProceedings{Radosavovic2020,
  title = {Designing Network Design Spaces},
  author = {Ilija Radosavovic and Raj Prateek Kosaraju and Ross Girshick and Kaiming He and Piotr Doll{\'a}r},
  booktitle = {CVPR},
  year = {2020}
}

LICENSE

MIT

Owner
Vishal R
Computer Science Student at PES University.
Vishal R
Code for NeurIPS 2021 paper: Invariant Causal Imitation Learning for Generalizable Policies

Invariant Causal Imitation Learning for Generalizable Policies Ioana Bica, Daniel Jarrett, Mihaela van der Schaar Neural Information Processing System

Ioana Bica 17 Dec 01, 2022
Automatic Data-Regularized Actor-Critic (Auto-DrAC)

Auto-DrAC: Automatic Data-Regularized Actor-Critic This is a PyTorch implementation of the methods proposed in Automatic Data Augmentation for General

89 Dec 13, 2022
Code for the Higgs Boson Machine Learning Challenge organised by CERN & EPFL

A method to solve the Higgs boson challenge using Least Squares - Novae This project is the Project 1 of EPFL CS-433 Machine Learning. The project is

Giacomo Orsi 1 Nov 09, 2021
Google Recaptcha solver.

byerecaptcha - Google Recaptcha solver. Model and some codes takes from embium's repository -Installation- pip install byerecaptcha -How to use- from

Vladislav Zenkevich 21 Dec 19, 2022
A cross-document event and entity coreference resolution system, trained and evaluated on the ECB+ corpus.

A Comprehensive Comparison of Word Embeddings in Event & Entity Coreference Resolution. Introduction This repo contains experimental code derived from

2 May 09, 2022
Simple keras FCN Encoder/Decoder model for MS-COCO (food subset) segmentation

FCN_MSCOCO_Food_Segmentation Simple keras FCN Encoder/Decoder model for MS-COCO (food subset) segmentation Input data: [http://mscoco.org/dataset/#ove

Alexander Kalinovsky 11 Jan 08, 2019
Gesture-controlled Video Game. Just swing your finger and play the game without touching your PC

Gesture Controlled Video Game Detailed Blog : https://www.analyticsvidhya.com/blog/2021/06/gesture-controlled-video-game/ Introduction This project is

Devbrat Anuragi 35 Jan 06, 2023
Official PyTorch implementation of paper: Standardized Max Logits: A Simple yet Effective Approach for Identifying Unexpected Road Obstacles in Urban-Scene Segmentation (ICCV 2021 Oral Presentation)

SML (ICCV 2021, Oral) : Official Pytorch Implementation This repository provides the official PyTorch implementation of the following paper: Standardi

SangHun 61 Dec 27, 2022
Semi-supervised Video Deraining with Dynamical Rain Generator (CVPR, 2021, Pytorch)

S2VD Semi-supervised Video Deraining with Dynamical Rain Generator (CVPR, 2021) Requirements and Dependencies Ubuntu 16.04, cuda 10.0 Python 3.6.10, P

Zongsheng Yue 53 Nov 23, 2022
Re-TACRED: Addressing Shortcomings of the TACRED Dataset

Re-TACRED Re-TACRED: Addressing Shortcomings of the TACRED Dataset

George Stoica 40 Dec 10, 2022
Code for "Localization with Sampling-Argmax", NeurIPS 2021

Localization with Sampling-Argmax [Paper] [arXiv] [Project Page] Localization with Sampling-Argmax Jiefeng Li, Tong Chen, Ruiqi Shi, Yujing Lou, Yong-

JeffLi 71 Dec 17, 2022
Super Pix Adv - Offical implemention of Robust Superpixel-Guided Attentional Adversarial Attack (CVPR2020)

Super_Pix_Adv Offical implemention of Robust Superpixel-Guided Attentional Adver

DLight 8 Oct 26, 2022
Fast algorithms to compute an approximation of the minimal volume oriented bounding box of a point cloud in 3D.

ApproxMVBB Status Build UnitTests Homepage Fast algorithms to compute an approximation of the minimal volume oriented bounding box of a point cloud in

Gabriel Nützi 390 Dec 31, 2022
This code provides various models combining dilated convolutions with residual networks

Overview This code provides various models combining dilated convolutions with residual networks. Our models can achieve better performance with less

Fisher Yu 1.1k Dec 30, 2022
Code for the Paper: Alexandra Lindt and Emiel Hoogeboom.

Discrete Denoising Flows This repository contains the code for the experiments presented in the paper Discrete Denoising Flows [1]. To give a short ov

Alexandra Lindt 3 Oct 09, 2022
Blender add-on: Add to Cameras menu: View → Camera, View → Add Camera, Camera → View, Previous Camera, Next Camera

Blender add-on: Camera additions In 3D view, it adds these actions to the View|Cameras menu: View → Camera : set the current camera to the 3D view Vie

German Bauer 11 Feb 08, 2022
LTR_CrossEncoder: Legal Text Retrieval Zalo AI Challenge 2021

LTR_CrossEncoder: Legal Text Retrieval Zalo AI Challenge 2021 We propose a cross encoder model (LTR_CrossEncoder) for information retrieval, re-retrie

Xuan Hieu Duong 7 Jan 12, 2022
[CVPR 2016] Unsupervised Feature Learning by Image Inpainting using GANs

Context Encoders: Feature Learning by Inpainting CVPR 2016 [Project Website] [Imagenet Results] Sample results on held-out images: This is the trainin

Deepak Pathak 829 Dec 31, 2022
DL course co-developed by YSDA, HSE and Skoltech

Deep learning course This repo supplements Deep Learning course taught at YSDA and HSE @fall'21. For previous iteration visit the spring21 branch. Lec

Yandex School of Data Analysis 1.3k Dec 30, 2022
Learning from Synthetic Humans, CVPR 2017

Learning from Synthetic Humans (SURREAL) Gül Varol, Javier Romero, Xavier Martin, Naureen Mahmood, Michael J. Black, Ivan Laptev and Cordelia Schmid,

Gul Varol 538 Dec 18, 2022