Enhancing Food Safety in Supply Chains: The Potential Role of Large Language Models in Preventing Campylobacter Contamination
Asaf Tzachor

TL;DR
This paper investigates how large language models like GPTs can enhance food safety by supporting HACCP implementation and preventing Campylobacter contamination across the entire food supply chain.
Contribution
It introduces a customized GPT trained on HACCP guidelines and explores its potential applications and barriers in improving food safety practices.
Findings
Customized GPT can assist in HACCP implementation stages.
Potential to reduce Campylobacter contamination in food supply chains.
Identifies barriers and proposes measures for GPT integration.
Abstract
Foodborne diseases pose a significant global public health challenge, primarily driven by bacterial infections. Among these, Campylobacter spp. is notable, causing over 95 million cases annually. In response, the Hazard Analysis and Critical Control Points (HACCP) system, a food safety management framework, has been developed and is considered the most effective approach for systematically managing foodborne safety risks, including the prevention of bacterial contaminations, throughout the supply chain. Despite its efficacy, the adoption of HACCP is often incomplete across different sectors of the food industry. This limited implementation can be attributed to factors such as a lack of awareness, complex guidelines, confusing terminology, and insufficient training on the HACCP system's implementation. This study explores the potential of large language models (LLMs), specifically…
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Taxonomy
TopicsFood Safety and Hygiene · Supply Chain Resilience and Risk Management · Food Supply Chain Traceability
