Official PyTorch implementation of "Rapid Neural Architecture Search by Learning to Generate Graphs from Datasets" (ICLR 2021)

Related tags

Deep LearningMetaD2A
Overview

Rapid Neural Architecture Search by Learning to Generate Graphs from Datasets

This is the official PyTorch implementation for the paper Rapid Neural Architecture Search by Learning to Generate Graphs from Datasets (ICLR 2021) : https://openreview.net/forum?id=rkQuFUmUOg3.

Abstract

Despite the success of recent Neural Architecture Search (NAS) methods on various tasks which have shown to output networks that largely outperform human-designed networks, conventional NAS methods have mostly tackled the optimization of searching for the network architecture for a single task (dataset), which does not generalize well across multiple tasks (datasets). Moreover, since such task-specific methods search for a neural architecture from scratch for every given task, they incur a large computational cost, which is problematic when the time and monetary budget are limited. In this paper, we propose an efficient NAS framework that is trained once on a database consisting of datasets and pretrained networks and can rapidly search a neural architecture for a novel dataset. The proposed MetaD2A (Meta Dataset-to-Architecture) model can stochastically generate graphs (architectures) from a given set (dataset) via a cross-modal latent space learned with amortized meta-learning. Moreover, we also propose a meta-performance predictor to estimate and select the best architecture without direct training on target datasets. The experimental results demonstrate that our model meta-learned on subsets of ImageNet-1K and architectures from NAS-Bench 201 search space successfully generalizes to multiple benchmark datasets including CIFAR-10 and CIFAR-100, with an average search time of 33 GPU seconds. Even under a large search space, MetaD2A is 5.5K times faster than NSGANetV2, a transferable NAS method, with comparable performance. We believe that the MetaD2A proposes a new research direction for rapid NAS as well as ways to utilize the knowledge from rich databases of datasets and architectures accumulated over the past years.

Framework of MetaD2A Model

Prerequisites

  • Python 3.6 (Anaconda)
  • PyTorch 1.6.0
  • CUDA 10.2
  • python-igraph==0.8.2
  • tqdm==4.50.2
  • torchvision==0.7.0
  • python-igraph==0.8.2
  • nas-bench-201==1.3
  • scipy==1.5.2

If you are not familiar with preparing conda environment, please follow the below instructions

$ conda create --name metad2a python=3.6
$ conda activate metad2a
$ conda install pytorch==1.6.0 torchvision cudatoolkit=10.2 -c pytorch
$ pip install nas-bench-201
$ conda install -c conda-forge tqdm
$ conda install -c conda-forge python-igraph
$ pip install scipy

And for data preprocessing,

$ pip install requests

Hardware Spec used for experiments of the paper

  • GPU: A single Nvidia GeForce RTX 2080Ti
  • CPU: Intel(R) Xeon(R) Silver 4114 CPU @ 2.20GHz

NAS-Bench-201

Go to the folder for NAS-Bench-201 experiments (i.e. MetaD2A_nas_bench_201)

$ cd MetaD2A_nas_bench_201

Data Preparation

To download preprocessed data files, run get_files/get_preprocessed_data.py:

$ python get_files/get_preprocessed_data.py

It will take some time to download and preprocess each dataset.

To download MNIST, Pets and Aircraft Datasets, run get_files/get_{DATASET}.py

$ python get_files/get_mnist.py
$ python get_files/get_aircraft.py
$ python get_files/get_pets.py

Other datasets such as Cifar10, Cifar100, SVHN will be automatically downloaded when you load dataloader by torchvision.

If you want to use your own dataset, please first make your own preprocessed data, by modifying process_dataset.py .

$ process_dataset.py

MetaD2A Evaluation (Meta-Test)

You can download trained checkpoint files for generator and predictor

$ python get_files/get_checkpoint.py
$ python get_files/get_predictor_checkpoint.py

1. Evaluation on Cifar10 and Cifar100

By set --data-name as the name of dataset (i.e. cifar10, cifar100), you can evaluate the specific dataset only

# Meta-testing for generator 
$ python main.py --gpu 0 --model generator --hs 56 --nz 56 --test --load-epoch 400 --num-gen-arch 500 --data-name {DATASET_NAME}

After neural architecture generation is completed, meta-performance predictor selects high-performing architectures among the candidates

# Meta-testing for predictor
$ python main.py --gpu 0 --model predictor --hs 512 --nz 56 --test --num-gen-arch 500 --data-name {DATASET_NAME}

2. Evaluation on Other Datasets

By set --data-name as the name of dataset (i.e. mnist, svhn, aircraft, pets), you can evaluate the specific dataset only

# Meta-testing for generator
$ python main.py --gpu 0 --model generator --hs 56 --nz 56 --test --load-epoch 400 --num-gen-arch 50 --data-name {DATASET_NAME}

After neural architecture generation is completed, meta-performance predictor selects high-performing architectures among the candidates

# Meta-testing for predictor
$ python main.py --gpu 0 --model predictor --hs 512 --nz 56 --test --num-gen-arch 50 --data-name {DATASET_NAME}

Meta-Training MetaD2A Model

You can train the generator and predictor as follows

# Meta-training for generator
$ python main.py --gpu 0 --model generator --hs 56 --nz 56 
                 
# Meta-training for predictor
$ python main.py --gpu 0 --model predictor --hs 512 --nz 56 

Results

The results of training architectures which are searched by meta-trained MetaD2A model for each dataset

Accuracy

CIFAR10 CIFAR100 MNIST SVHN Aircraft Oxford-IIT Pets
PC-DARTS 93.66±0.17 66.64±0.04 99.66±0.04 95.40±0.67 46.08±7.00 25.31±1.38
MetaD2A (Ours) 94.37±0.03 73.51±0.00 99.71±0.08 96.34±0.37 58.43±1.18 41.50±4.39

Search Time (GPU Sec)

CIFAR10 CIFAR100 MNIST SVHN Aircraft Oxford-IIT Pets
PC-DARTS 10395 19951 24857 31124 3524 2844
MetaD2A (Ours) 69 96 7 7 10 8

MobileNetV3 Search Space

Go to the folder for MobileNetV3 Search Space experiments (i.e. MetaD2A_mobilenetV3)

$ cd MetaD2A_mobilenetV3

And follow README.md written for experiments of MobileNetV3 Search Space

Citation

If you found the provided code useful, please cite our work.

@inproceedings{
    lee2021rapid,
    title={Rapid Neural Architecture Search by Learning to Generate Graphs from Datasets},
    author={Hayeon Lee and Eunyoung Hyung and Sung Ju Hwang},
    booktitle={ICLR},
    year={2021}
}

Reference

Owner
Ph.D. student @ School of Computing, Korea Advanced Institute of Science and Technology (KAIST)
[CVPR2021] UAV-Human: A Large Benchmark for Human Behavior Understanding with Unmanned Aerial Vehicles

UAV-Human Official repository for CVPR2021: UAV-Human: A Large Benchmark for Human Behavior Understanding with Unmanned Aerial Vehicle Paper arXiv Res

129 Jan 04, 2023
FLSim a flexible, standalone library written in PyTorch that simulates FL settings with a minimal, easy-to-use API

Federated Learning Simulator (FLSim) is a flexible, standalone core library that simulates FL settings with a minimal, easy-to-use API. FLSim is domain-agnostic and accommodates many use cases such a

Meta Research 162 Jan 02, 2023
Non-stationary GP package written from scratch in PyTorch

NSGP-Torch Examples gpytorch model with skgpytorch # Import packages import torch from regdata import NonStat2D from gpytorch.kernels import RBFKernel

Zeel B Patel 1 Mar 06, 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
A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon.

PokeGAN A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon. Dataset The model has been trained on dataset that includes 8

19 Jul 26, 2022
An experiment on the performance of homemade Q-learning AIs in Agar.io depending on their state representation and available actions

Agar.io_Q-Learning_AI An experiment on the performance of homemade Q-learning AIs in Agar.io depending on their state representation and available act

1 Jun 09, 2022
Official PyTorch implementation of StyleGAN3

Modified StyleGAN3 Repo Changes Made tied to python 3.7 syntax .jpgs instead of .pngs for training sample seeds to recreate the 1024 training grid wit

Derrick Schultz (he/him) 83 Dec 15, 2022
Python scripts for performing stereo depth estimation using the MobileStereoNet model in Tensorflow Lite.

TFLite-MobileStereoNet Python scripts for performing stereo depth estimation using the MobileStereoNet model in Tensorflow Lite. Stereo depth estimati

Ibai Gorordo 4 Feb 14, 2022
Chainer Implementation of Fully Convolutional Networks. (Training code to reproduce the original result is available.)

fcn - Fully Convolutional Networks Chainer implementation of Fully Convolutional Networks. Installation pip install fcn Inference Inference is done as

Kentaro Wada 218 Oct 27, 2022
Given a 2D triangle mesh, we could randomly generate cloud points that fill in the triangle mesh

generate_cloud_points Given a 2D triangle mesh, we could randomly generate cloud points that fill in the triangle mesh. Run python disp_mesh.py Or you

Peng Yu 2 Dec 24, 2021
Shared Attention for Multi-label Zero-shot Learning

Shared Attention for Multi-label Zero-shot Learning Overview This repository contains the implementation of Shared Attention for Multi-label Zero-shot

dathuynh 26 Dec 14, 2022
A3C LSTM Atari with Pytorch plus A3G design

NEWLY ADDED A3G A NEW GPU/CPU ARCHITECTURE OF A3C FOR SUBSTANTIALLY ACCELERATED TRAINING!! RL A3C Pytorch NEWLY ADDED A3G!! New implementation of A3C

David Griffis 532 Jan 02, 2023
Gray Zone Assessment

Gray Zone Assessment Get started Clone github repository git clone https://github.com/andreanne-lemay/gray_zone_assessment.git Build docker image dock

1 Jan 08, 2022
License Plate Detection Application

LicensePlate_Project 🚗 🚙 [Project] 2021.02 ~ 2021.09 License Plate Detection Application Overview 1. 데이터 수집 및 라벨링 차량 번호판 이미지를 직접 수집하여 각 이미지에 대해 '번호판

4 Oct 10, 2022
An official repository for Paper "Uformer: A General U-Shaped Transformer for Image Restoration".

Uformer: A General U-Shaped Transformer for Image Restoration Zhendong Wang, Xiaodong Cun, Jianmin Bao and Jianzhuang Liu Paper: https://arxiv.org/abs

Zhendong Wang 497 Dec 22, 2022
Bounding Wasserstein distance with couplings

BoundWasserstein These scripts reproduce the results of the article Bounding Wasserstein distance with couplings by Niloy Biswas and Lester Mackey. ar

Niloy Biswas 1 Jan 11, 2022
Keras documentation, hosted live at keras.io

Keras.io documentation generator This repository hosts the code used to generate the keras.io website. Generating a local copy of the website pip inst

Keras 2k Jan 08, 2023
Adversarial examples to the new ConvNeXt architecture

Adversarial examples to the new ConvNeXt architecture To get adversarial examples to the ConvNeXt architecture, run the Colab: https://github.com/stan

Stanislav Fort 19 Sep 18, 2022
Deep Learning Interviews book: Hundreds of fully solved job interview questions from a wide range of key topics in AI.

This book was written for you: an aspiring data scientist with a quantitative background, facing down the gauntlet of the interview process in an increasingly competitive field. For most of you, the

4.1k Dec 28, 2022
Annealed Flow Transport Monte Carlo

Annealed Flow Transport Monte Carlo Open source implementation accompanying ICML 2021 paper by Michael Arbel*, Alexander G. D. G. Matthews* and Arnaud

DeepMind 30 Nov 21, 2022