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}
}
Jul 28, 2025
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By solving systems of ODEs describing the systems with physics-informed neural networks (PINNs), we analyze stable and unstable equilibria, bifurcation points, and the effectiveness of interventions.
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As AI systems scale into decentralized, multi-agent deployments, emergent vulnerabilities challenge our ability to evaluate and manage systemic risks.
In this work, we adapt classical epidemiological modeling (specifically SEIR compartment models) to model adversarial behavior propagation in AI agents.
By solving systems of ODEs describing the systems with physics-informed neural networks (PINNs), we analyze stable and unstable equilibria, bifurcation points, and the effectiveness of interventions.
We estimate parameters from real-world data (e.g., adversarial success rates, detection latency, patching delays) and simulate attack propagation scenarios across 8 sectors (enterprise, retail, trading, development, customer service, academia, medical, and critical infrastructure AI tools).
Our results demonstrate how agent population dynamics interact with architectural and policy design interventions to stabilize the system.
This framework bridges concepts from dynamical systems and cybersecurity to offer a proactive, quantitative toolbox on AI safety.
We argue that epidemic-style monitoring and tools grounded in interpretable, physics-aligned dynamics can serve as early warning systems for cascading AI agentic failures.
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Read More
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As AI systems scale into decentralized, multi-agent deployments, emergent vulnerabilities challenge our ability to evaluate and manage systemic risks.
In this work, we adapt classical epidemiological modeling (specifically SEIR compartment models) to model adversarial behavior propagation in AI agents.
By solving systems of ODEs describing the systems with physics-informed neural networks (PINNs), we analyze stable and unstable equilibria, bifurcation points, and the effectiveness of interventions.
We estimate parameters from real-world data (e.g., adversarial success rates, detection latency, patching delays) and simulate attack propagation scenarios across 8 sectors (enterprise, retail, trading, development, customer service, academia, medical, and critical infrastructure AI tools).
Our results demonstrate how agent population dynamics interact with architectural and policy design interventions to stabilize the system.
This framework bridges concepts from dynamical systems and cybersecurity to offer a proactive, quantitative toolbox on AI safety.
We argue that epidemic-style monitoring and tools grounded in interpretable, physics-aligned dynamics can serve as early warning systems for cascading AI agentic failures.
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