Pi-NAS: Improving Neural Architecture Search by Reducing Supernet Training Consistency Shift (ICCV 2021)

Related tags

Deep LearningPi-NAS
Overview

Π-NAS

This repository provides the evaluation code of our submitted paper: Pi-NAS: Improving Neural Architecture Search by Reducing Supernet Training Consistency Shift.

Our Trained Models

  • Here is a summary of our searched models:

    ImageNet FLOPs Params [email protected] [email protected]
    Π-NAS-cls 5.38G 27.1M 81.6% 95.7%
    Mask-RCNN on COCO 2017 APbb APmk
    Π-NAS-trans 44.07 39.50
    DeeplabV3 on ADE20K pixAcc mIoU
    Π-NAS-trans 81.27 45.47
    DeeplabV3 on Cityscapes mIoU
    Π-NAS-trans 80.70

Usage

1. Requirements

  • Install third-party requirements with command pip install -e .
  • Prepare ImageNet, COCO 2017, ADE20K and Cityscapes datasets
    • Our data paths are at /data/ImageNet, /data/coco, /data/ADEChallengeData2016 and /data/citys, respectively.
    • You can specify COCO's data path through environment variable DETECTRON2_DATASETS and others in experiments/recognition/verify.py, encoding/datasets/ade20k.py and encoding/datasets/cityscapes.py.
  • Download our checkpoint files

2. Evaluate our models

  • You can evaluate our models with the following command:

    ImageNet FLOPs Params [email protected] [email protected]
    Π-NAS-cls 5.38G 27.1M 81.6% 95.7%
    python experiments/recognition/verify.py --dataset imagenet --model alone_resnest50 --choice-indices 3 0 1 3 2 3 1 2 0 3 2 1 3 0 3 2 --resume /path/to/PiNAS_cls.pth.tar
    Mask-RCNN on COCO 2017 APbb APmk
    Π-NAS-trans 44.07 39.50
    DETECTRON2_DATASETS=/data python experiments/detection/plain_train_net.py --config-file experiments/detection/configs/mask_rcnn_ResNeSt_50_FPN_syncBN_1x.yaml --num-gpus 8 --eval-only MODEL.WEIGHTS /path/to/PiNAS_trans_COCO.pth MODEL.RESNETS.CHOICE_INDICES [3,3,3,3,1,1,3,3,3,0,0,1,1,0,2,1]
    DeeplabV3 on ADE20K pixAcc mIoU
    Π-NAS-trans 81.27 45.47
    python experiments/segmentation/test.py --dataset ADE20K --model deeplab --backbone alone_resnest50 --choice-indices 3 3 3 3 1 1 3 3 3 0 0 1 1 0 2 1 --aux --se-loss --resume /path/to/PiNAS_trans_ade.pth.tar --eval
    DeeplabV3 on Cityscapes mIoU
    Π-NAS-trans 80.70
    python experiments/segmentation/test.py --dataset citys --base-size 2048 --crop-size 768 --model deeplab --backbone alone_resnest50 --choice-indices 3 3 3 3 1 1 3 3 3 0 0 1 1 0 2 1 --aux --se-loss --resume /path/to/PiNAS_trans_citys.pth.tar --eval

Training and Searching

This reimplementation is based on OpenSelfSup and MoCo. Please acknowledge their contribution.

cd OpenSelfSup && pip install -v -e .

1. Π-NAS Learning

bash tools/dist_train.sh configs/pinas_learning.py 8 --work_dir /path/to/save/logs/and/models

2. Extract supernet backbone weights

python tools/extract_backbone_weights.py /checkpoint/of/1. /extracted/weight/of/1.

3. Linear Training

bash tools/dist_train.sh configs/pinas_linear_training.py 8 --pretrained /extracted/weight/of/1. --work_dir /path/to/save/logs/and/models

4. Linear Evaluation

bash tools/dist_train.sh configs/pinas_linear_evaluation.py 8 --resume_from /checkpoint/of/3. --work_dir /path/to/save/logs/and/models
Owner
Jiqi Zhang
Jiqi Zhang
GE2340 project source code without credentials.

GE2340-Project-Public GE2340 project source code without credentials. Run the bot.py to start the bot Telegram: @jasperwong_ge2340_bot If the bot does

0 Feb 10, 2022
ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプル

ByteTrack-ONNX-Sample ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプルです。 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ByteT

KazuhitoTakahashi 16 Oct 26, 2022
Repository accompanying the "Sign Pose-based Transformer for Word-level Sign Language Recognition" paper

by Matyáš Boháček and Marek Hrúz, University of West Bohemia Should you have any questions or inquiries, feel free to contact us here. Repository acco

Matyáš Boháček 30 Dec 30, 2022
Sequential GCN for Active Learning

Sequential GCN for Active Learning Please cite if using the code: Link to paper. Requirements: python 3.6+ torch 1.0+ pip libraries: tqdm, sklearn, sc

45 Dec 26, 2022
Leibniz is a python package which provide facilities to express learnable partial differential equations with PyTorch

Leibniz is a python package which provide facilities to express learnable partial differential equations with PyTorch

Beijing ColorfulClouds Technology Co.,Ltd. 16 Aug 07, 2022
This repository contains the code for the paper "Hierarchical Motion Understanding via Motion Programs"

Hierarchical Motion Understanding via Motion Programs (CVPR 2021) This repository contains the official implementation of: Hierarchical Motion Underst

Sumith Kulal 40 Dec 05, 2022
Official Pytorch Implementation of: "Semantic Diversity Learning for Zero-Shot Multi-label Classification"(2021) paper

Semantic Diversity Learning for Zero-Shot Multi-label Classification Paper Official PyTorch Implementation Avi Ben-Cohen, Nadav Zamir, Emanuel Ben Bar

28 Aug 29, 2022
Code base of object detection

rmdet code base of object detection. 环境安装: 1. 安装conda python环境 - `conda create -n xxx python=3.7/3.8` - `conda activate xxx` 2. 运行脚本,自动安装pytorch1

3 Mar 08, 2022
PyTorch-centric library for evaluating and enhancing the robustness of AI technologies

Responsible AI Toolbox A library that provides high-quality, PyTorch-centric tools for evaluating and enhancing both the robustness and the explainabi

24 Dec 22, 2022
Robustness via Cross-Domain Ensembles

Robustness via Cross-Domain Ensembles [ICCV 2021, Oral] This repository contains tools for training and evaluating: Pretrained models Demo code Traini

Visual Intelligence & Learning Lab, Swiss Federal Institute of Technology (EPFL) 27 Dec 23, 2022
Augmentation for Single-Image-Super-Resolution

SRAugmentation Augmentation for Single-Image-Super-Resolution Implimentation CutBlur Cutout CutMix Cutup CutMixup Blend RGBPermutation Identity OneOf

Yubo 6 Jun 27, 2022
A simple code to perform canny edge contrast detection on images.

CECED-Canny-Edge-Contrast-Enhanced-Detection A simple code to perform canny edge contrast detection on images. A simple code to process images using c

Happy N. Monday 3 Feb 15, 2022
Reference code for the paper CAMS: Color-Aware Multi-Style Transfer.

CAMS: Color-Aware Multi-Style Transfer Mahmoud Afifi1, Abdullah Abuolaim*1, Mostafa Hussien*2, Marcus A. Brubaker1, Michael S. Brown1 1York University

Mahmoud Afifi 36 Dec 04, 2022
An index of algorithms for learning causality with data

awesome-causality-algorithms An index of algorithms for learning causality with data. Please cite our survey paper if this index is helpful. @article{

Ruocheng Guo 2.3k Jan 08, 2023
A curated list of Machine Learning and Deep Learning tutorials in Jupyter Notebook format ready to run in Google Colaboratory

Awesome Machine Learning Jupyter Notebooks for Google Colaboratory A curated list of Machine Learning and Deep Learning tutorials in Jupyter Notebook

Carlos Toxtli 245 Jan 01, 2023
Implementation of C-RNN-GAN.

Implementation of C-RNN-GAN. Publication: Title: C-RNN-GAN: Continuous recurrent neural networks with adversarial training Information: http://mogren.

Olof Mogren 427 Dec 25, 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
A PyTorch implementation of " EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks."

EfficientNet A PyTorch implementation of EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks. [arxiv] [Official TF Repo] Implemen

AhnDW 298 Dec 10, 2022
Audio-Visual Generalized Few-Shot Learning with Prototype-Based Co-Adaptation

Audio-Visual Generalized Few-Shot Learning with Prototype-Based Co-Adaptation The code repository for "Audio-Visual Generalized Few-Shot Learning with

Kaiaicy 3 Jun 27, 2022
Churn-Prediction-Project - In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class.

Churn-Prediction-Project In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class. Project in

1 Jan 03, 2022