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Auteurs principaux: Ran, Chen, Xueqi, Yao, Xuhui, Jiang, Zhengqi, Han, Jingze, Guo, Xianyue, Zhang, Chunyu, Lin, Chumin, Liu, Jing, Zhao, Zeke, Lian, Jingjing, Zhang, Keke, Li
Format: Preprint
Publié: 2023
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Accès en ligne:https://arxiv.org/abs/2401.00504
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author Ran, Chen
Xueqi, Yao
Xuhui, Jiang
Zhengqi, Han
Jingze, Guo
Xianyue, Zhang
Chunyu, Lin
Chumin, Liu
Jing, Zhao
Zeke, Lian
Jingjing, Zhang
Keke, Li
author_facet Ran, Chen
Xueqi, Yao
Xuhui, Jiang
Zhengqi, Han
Jingze, Guo
Xianyue, Zhang
Chunyu, Lin
Chumin, Liu
Jing, Zhao
Zeke, Lian
Jingjing, Zhang
Keke, Li
contents The field of human settlement construction encompasses a range of spatial designs and management tasks, including urban planning and landscape architecture design. These tasks involve a plethora of instructions and descriptions presented in natural language, which are essential for understanding design requirements and producing effective design solutions. Recent research has sought to integrate natural language processing (NLP) and generative artificial intelligence (AI) into human settlement construction tasks. Due to the efficient processing and analysis capabilities of AI with data, significant successes have been achieved in design within this domain. However, this task still faces several fundamental challenges. The semantic information involved includes complex spatial details, diverse data source formats, high sensitivity to regional culture, and demanding requirements for innovation and rigor in work scenarios. These factors lead to limitations when applying general generative AI in this field, further exacerbated by a lack of high-quality data for model training. To address these challenges, this paper first proposes HSC-GPT, a large-scale language model framework specifically designed for tasks in human settlement construction, considering the unique characteristics of this domain.
format Preprint
id arxiv_https___arxiv_org_abs_2401_00504
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle HSC-GPT: A Large Language Model for Human Settlements Construction
Ran, Chen
Xueqi, Yao
Xuhui, Jiang
Zhengqi, Han
Jingze, Guo
Xianyue, Zhang
Chunyu, Lin
Chumin, Liu
Jing, Zhao
Zeke, Lian
Jingjing, Zhang
Keke, Li
Computation and Language
The field of human settlement construction encompasses a range of spatial designs and management tasks, including urban planning and landscape architecture design. These tasks involve a plethora of instructions and descriptions presented in natural language, which are essential for understanding design requirements and producing effective design solutions. Recent research has sought to integrate natural language processing (NLP) and generative artificial intelligence (AI) into human settlement construction tasks. Due to the efficient processing and analysis capabilities of AI with data, significant successes have been achieved in design within this domain. However, this task still faces several fundamental challenges. The semantic information involved includes complex spatial details, diverse data source formats, high sensitivity to regional culture, and demanding requirements for innovation and rigor in work scenarios. These factors lead to limitations when applying general generative AI in this field, further exacerbated by a lack of high-quality data for model training. To address these challenges, this paper first proposes HSC-GPT, a large-scale language model framework specifically designed for tasks in human settlement construction, considering the unique characteristics of this domain.
title HSC-GPT: A Large Language Model for Human Settlements Construction
topic Computation and Language
url https://arxiv.org/abs/2401.00504