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From Data to Nutrition: the Impact of Computing Infrastructure and Artificial Intelligence

Exploration of Foods and Foodomics(2024)

Department of Soil | National Institute of Nuclear Physics | National Institute of Metrological Research (INRIM)

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Abstract
This article explores the significant impact that artificial intelligence (AI) could have on food safety and nutrition, with a specific focus on the use of machine learning and neural networks for disease risk prediction, diet personalization, and food product development. Specific AI techniques and explainable AI (XAI) are highlighted for their potential in personalizing diet recommendations, predicting models for disease prevention, and enhancing data-driven approaches to food production. The article also underlines the importance of high-performance computing infrastructures and data management strategies, including data operations (DataOps) for efficient data pipelines and findable, accessible, interoperable, and reusable (FAIR) principles for open and standardized data sharing. Additionally, it explores the concept of open data sharing and the integration of machine learning algorithms in the food industry to enhance food safety and product development. It highlights the METROFOOD-IT project as a best practice example of implementing advancements in the agri-food sector, demonstrating successful interdisciplinary collaboration. The project fosters both data security and transparency within a decentralized data space model, ensuring reliable and efficient data sharing. However, challenges such as data privacy, model interoperability, and ethical considerations remain key obstacles. The article also discusses the need for ongoing interdisciplinary collaboration between data scientists, nutritionists, and food technologists to effectively address these challenges. Future research should focus on refining AI models to improve their reliability and exploring how to integrate these technologies into everyday nutritional practices for better health outcomes.
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Key words
food,food contaminants,computing infrastructure,data analysis,machine learning,artificial intelligence,microbiome,health risks
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要点】:本文探讨了人工智能在食品安全与营养学领域的重要作用,特别是在疾病风险预测、饮食个性化及食品产品开发中的应用,并强调了高性能计算基础设施和数据管理策略的重要性。

方法】:文章采用了案例分析的方法,以METROFOOD-IT项目为例,说明了人工智能技术在农业食品领域的实际应用。

实验】:文中未具体描述实验过程,但提及了METROFOOD-IT项目作为实施农业食品领域进步的典范,展示了跨学科合作的成功,并使用了FAIR原则来确保数据的开放性和标准化共享。项目促进了数据安全和透明度,确保了可靠和高效的数据共享,但未明确提及具体的数据集名称及实验结果。