GeoPandas-AI: A Smart Class Bringing LLM as Stateful AI Code Assistant
- URL: http://arxiv.org/abs/2506.11781v1
- Date: Fri, 13 Jun 2025 13:42:17 GMT
- Title: GeoPandas-AI: A Smart Class Bringing LLM as Stateful AI Code Assistant
- Authors: Gaspard Merten, Gilles Dejaegere, Mahmoud Sakr,
- Abstract summary: This paper formalizes the design of such a smart class and provides an open-source implementation of GeoPandas-AI in PyPI package manager.<n>Through its innovative combination of conversational interfaces and stateful exploitation of LLMs for code generation and data analysis, GeoPandas-AI introduces a new paradigm for code-copilots and instantiates it for geospatial development.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Geospatial data analysis plays a crucial role in tackling intricate societal challenges such as urban planning and climate modeling. However, employing tools like GeoPandas, a prominent Python library for geospatial data manipulation, necessitates expertise in complex domain-specific syntax and workflows. GeoPandas-AI addresses this gap by integrating LLMs directly into the GeoPandas workflow, transforming the GeoDataFrame class into an intelligent, stateful class for both data analysis and geospatial code development. This paper formalizes the design of such a smart class and provides an open-source implementation of GeoPandas-AI in PyPI package manager. Through its innovative combination of conversational interfaces and stateful exploitation of LLMs for code generation and data analysis, GeoPandas-AI introduces a new paradigm for code-copilots and instantiates it for geospatial development.
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