AdaShare: Learning What To Share For Efficient Deep Multi-Task Learning

Related tags

Deep LearningAdaShare
Overview

AdaShare: Learning What To Share For Efficient Deep Multi-Task Learning (NeurIPS 2020)

Introduction

alt text

AdaShare is a novel and differentiable approach for efficient multi-task learning that learns the feature sharing pattern to achieve the best recognition accuracy, while restricting the memory footprint as much as possible. Our main idea is to learn the sharing pattern through a task-specific policy that selectively chooses which layers to execute for a given task in the multi-task network. In other words, we aim to obtain a single network for multi-task learning that supports separate execution paths for different tasks.

Here is the link for our arxiv version.

Welcome to cite our work if you find it is helpful to your research.

@article{sun2020adashare,
  title={Adashare: Learning what to share for efficient deep multi-task learning},
  author={Sun, Ximeng and Panda, Rameswar and Feris, Rogerio and Saenko, Kate},
  journal={Advances in Neural Information Processing Systems},
  volume={33},
  year={2020}
}

Experiment Environment

Our implementation is in Pytorch. We train and test our model on 1 Tesla V100 GPU for NYU v2 2-task, CityScapes 2-task and use 2 Tesla V100 GPUs for NYU v2 3-task and Tiny-Taskonomy 5-task.

We use python3.6 and please refer to this link to create a python3.6 conda environment.

Install the listed packages in the virual environment:

conda install pytorch torchvision cudatoolkit=10.2 -c pytorch
conda install matplotlib
conda install -c menpo opencv
conda install pillow
conda install -c conda-forge tqdm
conda install -c anaconda pyyaml
conda install scikit-learn
conda install -c anaconda scipy
pip install tensorboardX

Datasets

Please download the formatted datasets for NYU v2 here

The formatted CityScapes can be found here.

Download Tiny-Taskonomy as instructed by its GitHub.

The formatted DomainNet can be found here.

Remember to change the dataroot to your local dataset path in all yaml files in the ./yamls/.

Training

Policy Learning Phase

Please execute train.py for policy learning, using the command

python train.py --config <yaml_file_name> --gpus <gpu ids>

For example, python train.py --config yamls/adashare/nyu_v2_2task.yml --gpus 0.

Sample yaml files are under yamls/adashare

Note: use domainnet branch for experiments on DomainNet, i.e. python train_domainnet.py --config <yaml_file_name> --gpus <gpu ids>

Retrain Phase

After Policy Learning Phase, we sample 8 different architectures and execute re-train.py for retraining.

python re-train.py --config <yaml_file_name> --gpus <gpu ids> --exp_ids <random seed id>

where we use different --exp_ids to specify different random seeds and generate different architectures. The best performance of all 8 runs is reported in the paper.

For example, python re-train.py --config yamls/adashare/nyu_v2_2task.yml --gpus 0 --exp_ids 0.

Note: use domainnet branch for experiments on DomainNet, i.e. python re-train_domainnet.py --config <yaml_file_name> --gpus <gpu ids>

Test/Inference

After Retraining Phase, execute test.py for get the quantitative results on the test set.

python test.py --config <yaml_file_name> --gpus <gpu ids> --exp_ids <random seed id>

For example, python test.py --config yamls/adashare/nyu_v2_2task.yml --gpus 0 --exp_ids 0.

We provide our trained checkpoints as follows:

  1. Please download our model in NYU v2 2-Task Learning
  2. Please donwload our model in CityScapes 2-Task Learning
  3. Please download our model in NYU v2 3-Task Learning

To use these provided checkpoints, please download them to ../experiments/checkpoints/ and uncompress there. Use the following command to test

python test.py --config yamls/adashare/nyu_v2_2task_test.yml --gpus 0 --exp_ids 0
python test.py --config yamls/adashare/cityscapes_2task_test.yml --gpus 0 --exp_ids 0
python test.py --config yamls/adashare/nyu_v2_3task_test.yml --gpus 0 --exp_ids 0

Test with our pre-trained checkpoints

We also provide some sample images to easily test our model for nyu v2 3 tasks.

Please download our model in NYU v2 3-Task Learning

Execute test_sample.py to test on sample images in ./nyu_v2_samples, using the command

python test_sample.py --config  yamls/adashare/nyu_v2_3task_test.yml --gpus 0

It will print the average quantitative results of sample images.

Note

If any link is invalid or any question, please email [email protected]

Lightweight Cuda Renderer with Python Wrapper.

pyRender Lightweight Cuda Renderer with Python Wrapper. Compile Change compile.sh line 5 to the glm library include path. This library can be download

Jingwei Huang 53 Dec 02, 2022
The authors' implementation of Unsupervised Adversarial Learning of 3D Human Pose from 2D Joint Locations

Unsupervised Adversarial Learning of 3D Human Pose from 2D Joint Locations This is the authors' implementation of Unsupervised Adversarial Learning of

Dwango Media Village 140 Dec 07, 2022
GoodNews Everyone! Context driven entity aware captioning for news images

This is the code for a CVPR 2019 paper, called GoodNews Everyone! Context driven entity aware captioning for news images. Enjoy! Model preview: Huge T

117 Dec 19, 2022
[ICCV 2021] Code release for "Sub-bit Neural Networks: Learning to Compress and Accelerate Binary Neural Networks"

Sub-bit Neural Networks: Learning to Compress and Accelerate Binary Neural Networks By Yikai Wang, Yi Yang, Fuchun Sun, Anbang Yao. This is the pytorc

Yikai Wang 26 Nov 20, 2022
Source code for paper "Document-Level Relation Extraction with Adaptive Thresholding and Localized Context Pooling", AAAI 2021

ATLOP Code for AAAI 2021 paper Document-Level Relation Extraction with Adaptive Thresholding and Localized Context Pooling. If you make use of this co

Wenxuan Zhou 146 Nov 29, 2022
This is a collection of our NAS and Vision Transformer work.

AutoML - Neural Architecture Search This is a collection of our AutoML-NAS work iRPE (NEW): Rethinking and Improving Relative Position Encoding for Vi

Microsoft 828 Dec 28, 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
Anomaly Detection Based on Hierarchical Clustering of Mobile Robot Data

We proposed a new approach to detect anomalies of mobile robot data. We investigate each data seperately with two clustering method hierarchical and k-means. There are two sub-method that we used for

Zekeriyya Demirci 1 Jan 09, 2022
Data-Uncertainty Guided Multi-Phase Learning for Semi-supervised Object Detection

An official implementation of paper Data-Uncertainty Guided Multi-Phase Learning for Semi-supervised Object Detection

11 Nov 23, 2022
a reimplementation of Holistically-Nested Edge Detection in PyTorch

pytorch-hed This is a personal reimplementation of Holistically-Nested Edge Detection [1] using PyTorch. Should you be making use of this work, please

Simon Niklaus 375 Dec 06, 2022
Einshape: DSL-based reshaping library for JAX and other frameworks.

Einshape: DSL-based reshaping library for JAX and other frameworks. The jnp.einsum op provides a DSL-based unified interface to matmul and tensordot o

DeepMind 62 Nov 30, 2022
Nightmare-Writeup - Writeup for the Nightmare CTF Challenge from 2022 DiceCTF

Nightmare: One Byte to ROP // Alternate Solution TLDR: One byte write, no leak.

1 Feb 17, 2022
Imitating Deep Learning Dynamics via Locally Elastic Stochastic Differential Equations

Imitating Deep Learning Dynamics via Locally Elastic Stochastic Differential Equations This repo contains official code for the NeurIPS 2021 paper Imi

Jiayao Zhang 2 Oct 18, 2021
disentanglement_lib is an open-source library for research on learning disentangled representations.

disentanglement_lib disentanglement_lib is an open-source library for research on learning disentangled representation. It supports a variety of diffe

Google Research 1.3k Dec 28, 2022
A pure PyTorch batched computation implementation of "CIF: Continuous Integrate-and-Fire for End-to-End Speech Recognition"

A pure PyTorch batched computation implementation of "CIF: Continuous Integrate-and-Fire for End-to-End Speech Recognition"

張致強 14 Dec 02, 2022
CLIPImageClassifier wraps clip image model from transformers

CLIPImageClassifier CLIPImageClassifier wraps clip image model from transformers. CLIPImageClassifier is initialized with the argument classes, these

Jina AI 6 Sep 12, 2022
This repository contains a PyTorch implementation of the paper Learning to Assimilate in Chaotic Dynamical Systems.

Amortized Assimilation This repository contains a PyTorch implementation of the paper Learning to Assimilate in Chaotic Dynamical Systems. Abstract: T

4 Aug 16, 2022
Exploration & Research into cross-domain MEV. Initial focus on ETH/POLYGON.

xMEV, an apt exploration This is a small exploration on the xMEV opportunities between Polygon and Ethereum. It's a data analysis exercise on a few pa

odyslam.eth 7 Oct 18, 2022
Sematic-Segmantation - Semantic Segmentation on MIT ADE20K dataset in PyTorch

Semantic Segmentation on MIT ADE20K dataset in PyTorch This is a PyTorch impleme

Berat Eren Terzioğlu 4 Mar 22, 2022
Speech-Emotion-Analyzer - The neural network model is capable of detecting five different male/female emotions from audio speeches. (Deep Learning, NLP, Python)

Speech Emotion Analyzer The idea behind creating this project was to build a machine learning model that could detect emotions from the speech we have

Mitesh Puthran 965 Dec 24, 2022