Nov 23, 2025
AI-Safety–Driven System for Predicting Cross-Pollination Risk and Optimizing GMO Testing in Soybean Fields
Benjamín López, Juan Diego Cordoba, Liting Zhang, Roberto Nuñez, Małgorzata Komorowska
This project introduces BioSecure AI, an AI-safety–aligned system designed to predict GMO–non-GMO cross-pollination risk and optimize genetic testing in agricultural fields. The system models pollen drift using a biologically grounded risk map that incorporates distance decay, wind influence, and structural noise to simulate realistic contamination patterns. A hybrid inspection agent—combining a Deep Q-Network (DQN) with heuristic cluster-skipping—selects testing locations based on expected return on investment, prioritizing high-risk zones while avoiding redundant sampling. The platform autonomously determines when further testing becomes economically unjustified, reducing monitoring costs while preserving regulatory compliance. By framing cross-pollination as a cyber-biosecurity challenge, BioSecure AI demonstrates how AI safety, threat mapping, and autonomous decision-making can be applied to protect agricultural supply chains and support precision farming.
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Cite this work
@misc {
title={
(HckPrj) AI-Safety–Driven System for Predicting Cross-Pollination Risk and Optimizing GMO Testing in Soybean Fields
},
author={
Benjamín López, Juan Diego Cordoba, Liting Zhang, Roberto Nuñez, Małgorzata Komorowska
},
date={
11/23/25
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


