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Main Authors: Li, Xihan, Han, Xiongwei, Zhou, Zhishuo, Yuan, Mingxuan, Zeng, Jia, Wang, Jun
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2108.04586
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author Li, Xihan
Han, Xiongwei
Zhou, Zhishuo
Yuan, Mingxuan
Zeng, Jia
Wang, Jun
author_facet Li, Xihan
Han, Xiongwei
Zhou, Zhishuo
Yuan, Mingxuan
Zeng, Jia
Wang, Jun
contents An algebraic modeling system (AMS) is a type of mathematical software for optimization problems, which allows users to define symbolic mathematical models in a specific language, instantiate them with given source of data, and solve them with the aid of external solver engines. With the bursting scale of business models and increasing need for timeliness, traditional AMSs are not sufficient to meet the following industry needs: 1) million-variable models need to be instantiated from raw data very efficiently; 2) Strictly feasible solution of million-variable models need to be delivered in a rapid manner to make up-to-date decisions against highly dynamic environments. Grassland is a rapid AMS that provides an end-to-end solution to tackle these emerged new challenges. It integrates a parallelized instantiation scheme for large-scale linear constraints, and a sequential decomposition method that accelerates model solving exponentially with an acceptable loss of optimality. Extensive benchmarks on both classical models and real enterprise scenario demonstrate 6 ~ 10x speedup of Grassland over state-of-the-art solutions on model instantiation. Our proposed system has been deployed in the large-scale real production planning scenario of Huawei. With the aid of our decomposition method, Grassland successfully accelerated Huawei's million-variable production planning simulation pipeline from hours to 3 ~ 5 minutes, supporting near-real-time production plan decision making against highly dynamic supply-demand environment.
format Preprint
id arxiv_https___arxiv_org_abs_2108_04586
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Grassland: A Rapid Algebraic Modeling System for Million-variable Optimization
Li, Xihan
Han, Xiongwei
Zhou, Zhishuo
Yuan, Mingxuan
Zeng, Jia
Wang, Jun
Mathematical Software
An algebraic modeling system (AMS) is a type of mathematical software for optimization problems, which allows users to define symbolic mathematical models in a specific language, instantiate them with given source of data, and solve them with the aid of external solver engines. With the bursting scale of business models and increasing need for timeliness, traditional AMSs are not sufficient to meet the following industry needs: 1) million-variable models need to be instantiated from raw data very efficiently; 2) Strictly feasible solution of million-variable models need to be delivered in a rapid manner to make up-to-date decisions against highly dynamic environments. Grassland is a rapid AMS that provides an end-to-end solution to tackle these emerged new challenges. It integrates a parallelized instantiation scheme for large-scale linear constraints, and a sequential decomposition method that accelerates model solving exponentially with an acceptable loss of optimality. Extensive benchmarks on both classical models and real enterprise scenario demonstrate 6 ~ 10x speedup of Grassland over state-of-the-art solutions on model instantiation. Our proposed system has been deployed in the large-scale real production planning scenario of Huawei. With the aid of our decomposition method, Grassland successfully accelerated Huawei's million-variable production planning simulation pipeline from hours to 3 ~ 5 minutes, supporting near-real-time production plan decision making against highly dynamic supply-demand environment.
title Grassland: A Rapid Algebraic Modeling System for Million-variable Optimization
topic Mathematical Software
url https://arxiv.org/abs/2108.04586