NeuroLKH: Combining Deep Learning Model with Lin-Kernighan-Helsgaun Heuristic for Solving the Traveling Salesman Problem

Related tags

Deep LearningNeuroLKH
Overview

NeuroLKH: Combining Deep Learning Model with Lin-Kernighan-Helsgaun Heuristic for Solving the Traveling Salesman Problem

Liang Xin, Wen Song, Zhiguang Cao, Jie Zhang. NeuroLKH: Combining Deep Learning Model with Lin-Kernighan-Helsgaun Heuristic for Solving the Traveling Salesman Problem, 35th Conference on Neural Information Processing Systems (NeurIPS), 2021. [pdf]

Please cite our paper if this code is useful for your work.

@inproceedings{xin2021neurolkh,
    author = {Xin, Liang and Song, Wen and Cao, Zhiguang and Zhang, Jie},
    booktitle = {Advances in Neural Information Processing Systems},
    title = {NeuroLKH: Combining Deep Learning Model with Lin-Kernighan-Helsgaun Heuristic for Solving the Traveling Salesman Problem},
    volume = {34},
    year = {2021}
}

Quick start

To connect the deep learning model Sparse Graph Network (Python) and the Lin-Kernighan-Helsgaun Heuristic (C Programming), we implement two versions.

  • subprocess version. This version requires writting and reading data files to connect the two programming languages. To compile and test with our pretrained models for TSP instances with 100 nodes:
make
python data_generate.py -test
python test.py --dataset test/100.pkl --model_path pretrained/neurolkh.pt --n_samples 1000 --lkh_trials 1000 --neurolkh_trials 1000
  • Swig (http://www.swig.org) version. The C code is wrapped for Python. To compile and test with our pretained models for TSP instances with 100 nodes:
bash setup.sh
python data_generate.py -test
python swig_test.py --dataset test/100.pkl --model_path pretrained/neurolkh.pt --n_samples 1000 --lkh_trials 1000 --neurolkh_trials 1000

Usage

Generate the training dataset

As the training for edge scores requires the edge labels, generating the training dataset will take a relatively long time (a couple of days).

python data_generate.py -train

Train the NeuroLKH Model

To train for the node penalties in the Sparse Graph Network, swig is required and the subprocess version is currently not supported. With one RTX 2080Ti GPU, the model converges in approximately 4 days.

CUDA_VISIBLE_DEVICES="0" python train.py --file_path train --eval_file_path val --eval_batch_size=100 --save_dir=saved/tsp_neurolkh --learning_rate=0.0001

Finetune the node decoder for large sizes

The finetuning process takes less than 1 minute for each size.

CUDA_VISIBLE_DEVICES="0" python finetune_node.py

Testing

Test with the pretrained model on TSP with 500 nodes:

python test.py --dataset test/500.pkl --model_path pretrained/neurolkh.pt --n_samples 1000 --lkh_trials 1000 --neurolkh_trials 1000

We test on the TSPLIB instances with two NeuroLKH Models, NeuroLKH trained with uniformly distributed TSP instances and NeuroLKH_M trained with uniform, clustered and uniform-clustered instances (please refer to the paper for details).

python tsplib_test.py

Other Routing Problems (CVRP, PDP, CVRPTW)

Testing with pretrained models

test for CVRP with 100 customers, PDP and CVRPTW with 40 customers

# Capacitated Vehicle Routing Problem (CVRP)
python CVRPdata_generate.py -test
python CVRP_test.py --dataset CVRP_test/cvrp_100.pkl --model_path pretrained/cvrp_neurolkh.pt --n_samples 1000 --lkh_trials 10000 --neurolkh_trials 10000
# Pickup and Delivery Problem (PDP)
python PDPdata_generate.py -test
python PDP_test.py --dataset PDP_test/pdp_40.pkl --model_path pretrained/pdp_neurolkh.pt --n_samples 1000 --lkh_trials 10000 --neurolkh_trials 10000
# CVRP with Time Windows (CVRPTW)
python CVRPTWdata_generate.py -test
python CVRPTw_test.py --dataset CVRPTW_test/cvrptw_40.pkl --model_path pretrained/cvrptw_neurolkh.pt --n_samples 1000 --lkh_trials 10000 --neurolkh_trials 10000

Training

train for CVRP with 100-500 customers, PDP and CVRPTW with 40-200 customers

# Capacitated Vehicle Routing Problem (CVRP)
python CVRPdata_generate.py -train
CUDA_VISIBLE_DEVICES="0" python CVRP_train.py --save_dir=saved/cvrp_neurolkh
# Pickup and Delivery Problem (PDP)
python PDPdata_generate.py -train
CUDA_VISIBLE_DEVICES="0" python PDP_train.py --save_dir=saved/pdp_neurolkh
# CVRP with Time Windows (CVRPTW)
python CVRPTWdata_generate.py -train
CUDA_VISIBLE_DEVICES="0" python CVRPTW_train.py --save_dir=saved/cvrptw_neurolkh

Dependencies

  • Python >= 3.6
  • Pytorch
  • sklearn
  • Numpy
  • tqdm
  • (Swig, optional)

Acknowledgements

Owner
xinliangedu
xinliangedu
[ICCV2021] Official Pytorch implementation for SDGZSL (Semantics Disentangling for Generalized Zero-Shot Learning)

Semantics Disentangling for Generalized Zero-shot Learning This is the official implementation for paper Zhi Chen, Yadan Luo, Ruihong Qiu, Zi Huang, J

25 Dec 06, 2022
quantize aware training package for NCNN on pytorch

ncnnqat ncnnqat is a quantize aware training package for NCNN on pytorch. Table of Contents ncnnqat Table of Contents Installation Usage Code Examples

62 Nov 23, 2022
Hyperopt for solving CIFAR-100 with a convolutional neural network (CNN) built with Keras and TensorFlow, GPU backend

Hyperopt for solving CIFAR-100 with a convolutional neural network (CNN) built with Keras and TensorFlow, GPU backend This project acts as both a tuto

Guillaume Chevalier 103 Jul 22, 2022
Experiments for Fake News explainability project

fake-news-explainability Experiments for fake news explainability project This repository only contains the notebooks used to train the models and eva

Lorenzo Flores (Lj) 1 Dec 03, 2022
Efficient Speech Processing Tookit for Automatic Speaker Recognition

Sugar Efficient Speech Processing Tookit for Automatic Speaker Recognition | HuggingFace | What's New EfficientTDNN: Efficient Architecture Search for

WangRui 14 Sep 14, 2022
ROS support for Velodyne 3D LIDARs

Overview Velodyne1 is a collection of ROS2 packages supporting Velodyne high definition 3D LIDARs3. Warning: The master branch normally contains code

ROS device drivers 543 Dec 30, 2022
Piotr - IoT firmware emulation instrumentation for training and research

Piotr: Pythonic IoT exploitation and Research Introduction to Piotr Piotr is an emulation helper for Qemu that provides a convenient way to create, sh

Damien Cauquil 51 Nov 09, 2022
The code from the paper Character Transformations for Non-Autoregressive GEC Tagging

Character Transformations for Non-Autoregressive GEC Tagging Milan Straka, Jakub Náplava, Jana Straková Charles University Faculty of Mathematics and

ÚFAL 5 Dec 10, 2022
Code release for The Devil is in the Channels: Mutual-Channel Loss for Fine-Grained Image Classification (TIP 2020)

The Devil is in the Channels: Mutual-Channel Loss for Fine-Grained Image Classification Code release for The Devil is in the Channels: Mutual-Channel

PRIS-CV: Computer Vision Group 230 Dec 31, 2022
PyTorch Implementation of CvT: Introducing Convolutions to Vision Transformers

CvT: Introducing Convolutions to Vision Transformers Pytorch implementation of CvT: Introducing Convolutions to Vision Transformers Usage: img = torch

Rishikesh (ऋषिकेश) 193 Jan 03, 2023
An unofficial styleguide and best practices summary for PyTorch

A PyTorch Tools, best practices & Styleguide This is not an official style guide for PyTorch. This document summarizes best practices from more than a

IgorSusmelj 1.5k Jan 05, 2023
Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection

Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection Main requirements torch = 1.0 torchvision = 0.2.0 Python 3 Environm

15 Apr 04, 2022
Code for "Layered Neural Rendering for Retiming People in Video."

Layered Neural Rendering in PyTorch This repository contains training code for the examples in the SIGGRAPH Asia 2020 paper "Layered Neural Rendering

Google 154 Dec 16, 2022
An efficient toolkit for Face Stylization based on the paper "AgileGAN: Stylizing Portraits by Inversion-Consistent Transfer Learning"

MMGEN-FaceStylor English | 简体中文 Introduction This repo is an efficient toolkit for Face Stylization based on the paper "AgileGAN: Stylizing Portraits

OpenMMLab 182 Dec 27, 2022
Miscellaneous and lightweight network tools

Network Tools Collection of miscellaneous and lightweight network tools to simplify daily operations, administration, and troubleshooting of networks.

Nicholas Russo 22 Mar 22, 2022
Official implementation of "SegFormer: Simple and Efficient Design for Semantic Segmentation with Transformers"

SegFormer: Simple and Efficient Design for Semantic Segmentation with Transformers Figure 1: Performance of SegFormer-B0 to SegFormer-B5. Project page

NVIDIA Research Projects 1.4k Dec 31, 2022
This repository contains the source codes for the paper AtlasNet V2 - Learning Elementary Structures.

AtlasNet V2 - Learning Elementary Structures This work was build upon Thibault Groueix's AtlasNet and 3D-CODED projects. (you might want to have a loo

Théo Deprelle 123 Nov 11, 2022
PyTorch implementation of SimSiam: Exploring Simple Siamese Representation Learning

SimSiam: Exploring Simple Siamese Representation Learning This is a PyTorch implementation of the SimSiam paper: @Article{chen2020simsiam, author =

Facebook Research 834 Dec 30, 2022
ConE: Cone Embeddings for Multi-Hop Reasoning over Knowledge Graphs

ConE: Cone Embeddings for Multi-Hop Reasoning over Knowledge Graphs This is the code of paper ConE: Cone Embeddings for Multi-Hop Reasoning over Knowl

MIRA Lab 33 Dec 07, 2022
DetCo: Unsupervised Contrastive Learning for Object Detection

DetCo: Unsupervised Contrastive Learning for Object Detection arxiv link News Sparse RCNN+DetCo improves from 45.0 AP to 46.5 AP(+1.5) with 3x+ms trai

Enze Xie 234 Dec 18, 2022