Deep Multimodal Neural Architecture Search

Related tags

Deep Learningmmnas
Overview

MMNas: Deep Multimodal Neural Architecture Search

This repository corresponds to the PyTorch implementation of the MMnas for visual question answering (VQA), visual grounding (VGD), and image-text matching (ITM) tasks.

example-image

Prerequisites

Software and Hardware Requirements

You may need a machine with at least 4 GPU (>= 8GB), 50GB memory for VQA and VGD and 150GB for ITM and 50GB free disk space. We strongly recommend to use a SSD drive to guarantee high-speed I/O.

You should first install some necessary packages.

  1. Install Python >= 3.6

  2. Install Cuda >= 9.0 and cuDNN

  3. Install PyTorch >= 0.4.1 with CUDA (Pytorch 1.x is also supported).

  4. Install SpaCy and initialize the GloVe as follows:

    $ pip install -r requirements.txt
    $ wget https://github.com/explosion/spacy-models/releases/download/en_vectors_web_lg-2.1.0/en_vectors_web_lg-2.1.0.tar.gz -O en_vectors_web_lg-2.1.0.tar.gz
    $ pip install en_vectors_web_lg-2.1.0.tar.gz

Dataset Preparations

Please follow the instructions in dataset_setup.md to download the datasets and features.

Search

To search an optimal architecture for a specific task, run

$ python3 search_[vqa|vgd|vqa].py

At the end of each searching epoch, we will output the optimal architecture (choosing operators with largest architecture weight for every block) accroding to current architecture weights. When the optimal architecture doesn't change for several continuous epochs, you can kill the searching process manually.

Training

The following script will start training network with the optimal architecture that we've searched by MMNas:

$ python3 train_[vqa|vgd|itm].py --RUN='train' --ARCH_PATH='./arch/train_vqa.json'

To add:

  1. --VERSION=str, e.g.--VERSION='mmnas_vqa' to assign a name for your this model.

  2. --GPU=str, e.g.--GPU='0, 1, 2, 3' to train the model on specified GPU device.

  3. --NW=int, e.g.--NW=8 to accelerate I/O speed.

  1. --RESUME to start training with saved checkpoint parameters.

  2. --ARCH_PATH can use the different searched architectures.

If you want to evaluate an architecture that you got from seaching stage, for example, it's the output architecture at the 50-th searching epoch for vqa model, you can run

$ python3 train_vqa.py --RUN='train' --ARCH_PATH='[PATH_TO_YOUR_SEARCHING_LOG]' --ARCH_EPOCH=50

Validation and Testing

Offline Evaluation

It's convenient to modify follows args: --RUN={'val', 'test'} --CKPT_PATH=[Your Model Path] to Run val or test Split.

Example:

$ python3 train_vqa.py --RUN='test' --CKPT_PATH=[Your Model Path] --ARCH_PATH=[Searched Architecture Path]

Online Evaluation (ONLY FOR VQA)

Test Result files will stored in ./logs/ckpts/result_test/result_train_[Your Version].json

You can upload the obtained result file to Eval AI to evaluate the scores on test-dev and test-std splits.

Pretrained Models

We provide the pretrained models in pretrained_models.md to reproduce the experimental results in our paper.

Citation

If this repository is helpful for your research, we'd really appreciate it if you could cite the following paper:

@article{yu2020mmnas,
  title={Deep Multimodal Neural Architecture Search},
  author={Yu, Zhou and Cui, Yuhao and Yu, Jun and Wang, Meng and Tao, Dacheng and Tian, Qi},
  journal={Proceedings of the 28th ACM International Conference on Multimedia},
  pages = {3743--3752},
  year={2020}
}
Owner
Vision and Language Group@ MIL
Hangzhou Dianzi University
Vision and Language Group@ MIL
Model Quantization Benchmark

Introduction MQBench is an open-source model quantization toolkit based on PyTorch fx. The envision of MQBench is to provide: SOTA Algorithms. With MQ

500 Jan 06, 2023
In this project I played with mlflow, streamlit and fastapi to create a training and prediction app on digits

Fastapi + MLflow + streamlit Setup env. I hope I covered all. pip install -r requirements.txt Start app Go in the root dir and run these Streamlit str

76 Nov 23, 2022
a project for 3D multi-object tracking

a project for 3D multi-object tracking

155 Jan 04, 2023
Official implementation of the ICCV 2021 paper "Conditional DETR for Fast Training Convergence".

The DETR approach applies the transformer encoder and decoder architecture to object detection and achieves promising performance. In this paper, we handle the critical issue, slow training convergen

281 Dec 30, 2022
[peer review] An Arbitrary Scale Super-Resolution Approach for 3D MR Images using Implicit Neural Representation

ArSSR This repository is the pytorch implementation of our manuscript "An Arbitrary Scale Super-Resolution Approach for 3-Dimensional Magnetic Resonan

Qing Wu 19 Dec 12, 2022
A python package for generating, analyzing and visualizing building shadows

pybdshadow Introduction pybdshadow is a python package for generating, analyzing and visualizing building shadows from large scale building geographic

Qing Yu 13 Nov 30, 2022
PyTorch wrapper for Taichi data-oriented class

Stannum PyTorch wrapper for Taichi data-oriented class PRs are welcomed, please see TODOs. Usage from stannum import Tin import torch data_oriented =

86 Dec 23, 2022
Learning Synthetic Environments and Reward Networks for Reinforcement Learning

Learning Synthetic Environments and Reward Networks for Reinforcement Learning We explore meta-learning agent-agnostic neural Synthetic Environments (

AutoML-Freiburg-Hannover 16 Sep 02, 2022
A Kernel fuzzer focusing on race bugs

Razzer: Finding kernel race bugs through fuzzing Environment setup $ source scripts/envsetup.sh scripts/envsetup.sh sets up necessary environment var

Systems and Software Security Lab at Seoul National University (SNU) 328 Dec 26, 2022
Vertex AI: Serverless framework for MLOPs (ESP / ENG)

Vertex AI: Serverless framework for MLOPs (ESP / ENG) Español Qué es esto? Este repo contiene un pipeline end to end diseñado usando el SDK de Kubeflo

Hernán Escudero 2 Apr 28, 2022
This is the official pytorch implementation of Student Helping Teacher: Teacher Evolution via Self-Knowledge Distillation(TESKD)

Student Helping Teacher: Teacher Evolution via Self-Knowledge Distillation (TESKD) By Zheng Li[1,4], Xiang Li[2], Lingfeng Yang[2,4], Jian Yang[2], Zh

Zheng Li 9 Sep 26, 2022
Distributing Deep Learning Hyperparameter Tuning for 3D Medical Image Segmentation

DistMIS Distributing Deep Learning Hyperparameter Tuning for 3D Medical Image Segmentation. DistriMIS Distributing Deep Learning Hyperparameter Tuning

HiEST 2 Sep 09, 2022
v objective diffusion inference code for JAX.

v-diffusion-jax v objective diffusion inference code for JAX, by Katherine Crowson (@RiversHaveWings) and Chainbreakers AI (@jd_pressman). The models

Katherine Crowson 186 Dec 21, 2022
Implementation of Hire-MLP: Vision MLP via Hierarchical Rearrangement and An Image Patch is a Wave: Phase-Aware Vision MLP.

Hire-Wave-MLP.pytorch Implementation of Hire-MLP: Vision MLP via Hierarchical Rearrangement and An Image Patch is a Wave: Phase-Aware Vision MLP Resul

Nevermore 29 Oct 28, 2022
Code for our paper 'Generalized Category Discovery'

Generalized Category Discovery This repo is a placeholder for code for our paper: Generalized Category Discovery Abstract: In this paper, we consider

107 Dec 28, 2022
Mapping Conditional Distributions for Domain Adaptation Under Generalized Target Shift

This repository contains the official code of OSTAR in "Mapping Conditional Distributions for Domain Adaptation Under Generalized Target Shift" (ICLR 2022).

Matthieu Kirchmeyer 5 Dec 06, 2022
[ICLR 2021] HW-NAS-Bench: Hardware-Aware Neural Architecture Search Benchmark

HW-NAS-Bench: Hardware-Aware Neural Architecture Search Benchmark Accepted as a spotlight paper at ICLR 2021. Table of content File structure Prerequi

72 Jan 03, 2023
Text completion with Hugging Face and TensorFlow.js running on Node.js

Katana ML Text Completion 🤗 Description Runs with with Hugging Face DistilBERT and TensorFlow.js on Node.js distilbert-model - converter from Hugging

Katana ML 2 Nov 04, 2022
Place holder for HOPE: a human-centric and task-oriented MT evaluation framework using professional post-editing

HOPE: A Task-Oriented and Human-Centric Evaluation Framework Using Professional Post-Editing Towards More Effective MT Evaluation Place holder for dat

Lifeng Han 1 Apr 25, 2022
Pocsploit is a lightweight, flexible and novel open source poc verification framework

Pocsploit is a lightweight, flexible and novel open source poc verification framework

cckuailong 208 Dec 24, 2022