GeoAI Agency Primitives
AI 摘要
论文提出一套GeoAI智能助手的机构基元,旨在弥合模型能力与GIS实际应用之间的差距。
主要贡献
- 提出GeoAI智能助手的9个核心机构基元
- 设计用于衡量人类生产力的基准测试
- 强调了迭代协作的重要性
方法论
定义机构基元词汇表,并通过基准测试评估其在GIS中的应用潜力,关注人机协作。
原文摘要
We present ongoing research on agency primitives for GeoAI assistants -- core capabilities that connect Foundation models to the artifact-centric, human-in-the-loop workflows where GIS practitioners actually work. Despite advances in satellite image captioning, visual question answering, and promptable segmentation, these capabilities have not translated into productivity gains for practitioners who spend most of their time producing vector layers, raster maps, and cartographic products. The gap is not model capability alone but the absence of an agency layer that supports iterative collaboration. We propose a vocabulary of $9$ primitives for such a layer -- including navigation, perception, geo-referenced memory, and dual modeling -- along with a benchmark that measures human productivity. Our goal is a vocabulary that makes agentic assistance in GIS implementable, testable, and comparable.