ChatGPT in the context of precision agriculture data analytics
Ilyas Potamitis

TL;DR
This paper explores integrating ChatGPT into precision agriculture data analytics to enable natural language interaction with complex datasets, improving decision-making and stakeholder engagement in farming practices.
Contribution
It introduces a novel approach using ChatGPT's speech recognition and language capabilities to facilitate real-time, intuitive data querying and interpretation in precision agriculture.
Findings
ChatGPT can interpret verbal queries about agricultural data.
The system enables visualization and analysis through natural language commands.
Real-time insights can be provided to stakeholders via speech synthesis.
Abstract
In this study we argue that integrating ChatGPT into the data processing pipeline of automated sensors in precision agriculture has the potential to bring several benefits and enhance various aspects of modern farming practices. Policy makers often face a barrier when they need to get informed about the situation in vast agricultural fields to reach to decisions. They depend on the close collaboration between agricultural experts in the field, data analysts, and technology providers to create interdisciplinary teams that cannot always be secured on demand or establish effective communication across these diverse domains to respond in real-time. In this work we argue that the speech recognition input modality of ChatGPT provides a more intuitive and natural way for policy makers to interact with the database of the server of an agricultural data processing system to which a large,…
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Taxonomy
TopicsSmart Agriculture and AI
