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README.md
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tags:
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- Deep Reinforcement Learning
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- Combinatorial Optimization
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- Reinforcement Learning
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- Vehicle Routing Problem
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---
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# 🤠GreedRL
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## Overview
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- GreedRL is a Deep Reinforcement Learning(DRL) based solver that can solve various types of problems, such as TSP, VRPs(CVRP, VRPTW, VRPPD etc), Order Batching Problem, Knapsack Problem etc.
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- GreedRL achieves very high performance by
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## 🏆Award
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## Editions
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We
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- **The Community Edition** is
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- **The Enterprise Edition** has a
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## Architecture
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## COPs Modeling examples
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### Realistic Business Scenario
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<details>
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<summary>
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```python
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from greedrl.feature import *
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We are delighted to release 🤠GreedRL Community Edition, as well as example of training and testing scripts for the standard Capacitated VRP (CVRP), you can download it and get started.
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## Test environment
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🤠GreedRL Community Edition has been tested on Ubuntu 18.04 with GCC compiler v7.5.0 and CUDA version 11.4, and a [Miniconda](https://docs.conda.io/en/latest/miniconda.html#system-requirements) distribution with Python 3.8. We recommend using a similar configuration to avoid any possiblem compilation issue.
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## Installation
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First, clone the repository.
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tags:
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- Deep Reinforcement Learning
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- Combinatorial Optimization
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- Vehicle Routing Problem
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---
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![](./images/GREEDRL-Logo-Original-640.png)
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# 🤠GreedRL
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## Overview
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- GreedRL is a Deep Reinforcement Learning (DRL) based solver that can solve various types of problems, such as TSP, VRPs (CVRP, VRPTW, VRPPD etc), Order Batching Problem, Knapsack Problem etc.
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- GreedRL achieves very high performance by running on GPU while generating high quality solutions.
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**1200 times faster** than [Google OR-Tools](https://developers.google.com/optimization) for large-scale (>=1000 nodes) CVRP, and the solution quality is improved by **about 3%**.
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## 🏆Award
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- Entering the finalists of [INFORMS 2021 Franz Edelman Award](https://www.informs.org/Resource-Center/Video-Library/Edelman-Competition-Videos/2021-Edelman-Competition-Videos/2021-Edelman-Finalist-Alibaba)
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- Obtain [The Second Class Prize of Scientific and Technological Progress Award](https://www.ccf.org.cn/Awards/Awards/2022-11-08/776110.shtml).
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## Editions
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We have deliveried the following two editions of GreedRL for users.
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- **The Community Edition** is open source and available to [download](https://huggingface.co/Cainiao-AI/GreedRL).
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- **The Enterprise Edition** has a higher performance implementation than **The Community Edition** (about 50 times faster), especially when solving larg-scale problems. For more informations, please contact <a href="mailto:jiangwen.wjw@alibaba-inc.com">us</a>.
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## Architecture
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![](./images/GREEDRL-Framwork_en.png)
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## COPs Modeling examples
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### Realistic Business Scenario
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<details>
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<summary>Instant Pickup and Delivery Service Problem (PDP)</summary>
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```python
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from greedrl.feature import *
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We are delighted to release 🤠GreedRL Community Edition, as well as example of training and testing scripts for the standard Capacitated VRP (CVRP), you can download it and get started.
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## Test environment
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🤠GreedRL Community Edition has been tested on Ubuntu 18.04 with GCC compiler v7.5.0 and CUDA version 11.4, and a [Miniconda](https://docs.conda.io/en/latest/miniconda.html#system-requirements) distribution with Python 3.8. We recommend using a similar configuration to avoid any possiblem compilation issue.
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## Installation
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First, clone the repository.
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