ASAS-NANP symposium: mathematical modeling in animal nutrition: limitations and potential next steps for modeling and modelers in the animal sciences
2022
Jacobs, Marc | Remus, Aline | Gaillard, Charlotte | Menendez, Hector, M. | Tedeschi, Luis O. | Neethirajan, Suresh | Ellis, Jennifer, L. | FR analytics B.V. | Sherbrooke Research and Development Centre ; Agriculture and Agri-Food (AAFC) | Physiologie, Environnement et Génétique pour l'Animal et les Systèmes d'Elevage [Rennes] (PEGASE) ; Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE)-Institut Agro Rennes Angers ; Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)-Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro) | South Dakota State University (SDSTATE) | Texas A&M University [College Station] | Wageningen University and Research [Wageningen] (WUR) | University of Guelph [Guelf, Ontario, Canada] | This work was partially support-ed by the Data Science for Food and Agricultural Systems (DSFAS) program (2021-67021-33776) from the United States Department of Agriculture (USDA), National Institute of Food and Agriculture (NIFA), the National Research Support Project #9 from the National Animal Nutrition Program (https://animalnutrition.org/), and the Next Level Animal Sciences (NLAS) program of the Wageningen University & Research, The Netherlands.
Based on multiple presentations given at the ASAS-NANP Symposium: “Mathematical Modeling in Animal Nutrition: Training the Future Generation in Data and Predictive Analytics for a Sustainable Development—Basic Training” at the 2021 Annual Meeting of the American Society of Animal Science held in Louisville, KY, July 14–17, with publications sponsored by the Journal of Animal Science and the American Society of Animal Science.
Mostrar más [+] Menos [-]International audience
Mostrar más [+] Menos [-]Inglés. The field of animal science, and especially animal nutrition, relies heavily on modeling to accomplish its day-to-day objectives. New data streams (“big data”) and the exponential increase in computing power have allowed the appearance of “new” modeling methodologies, under the umbrella of artificial intelligence (AI). However, many of these modeling methodologies have been around for decades. According to Gartner, technological innovation follows five distinct phases: technology trigger, peak of inflated expectations, trough of disillusionment, slope of enlightenment, and plateau of productivity. The appearance of AI certainly elicited much hype within agriculture leading to overpromised plug-and-play solutions in a field heavily dependent on custom solutions. The threat of failure can become real when advertising a disruptive innovation as sustainable. This does not mean that we need to abandon AI models. What is most necessary is to demystify the field and place a lesser emphasis on the technology and more on business application. As AI becomes increasingly more powerful and applications start to diverge, new research fields are introduced, and opportunities arise to combine “old” and “new” modeling technologies into hybrids. However, sustainable application is still many years away, and companies and universities alike do well to remain at the forefront. This requires investment in hardware, software, and analytical talent. It also requires a strong connection to the outside world to test, that which does, and does not work in practice and a close view of when the field of agriculture is ready to take its next big steps. Other research fields, such as engineering and automotive, have shown that the application power of AI can be far reaching but only if a realistic view of models as whole is maintained. In this review, we share our view on the current and future limitations of modeling and potential next steps for modelers in the animal sciences. First, we discuss the inherent dependencies and limitations of modeling as a human process. Then, we highlight how models, fueled by AI, can play an enhanced sustainable role in the animal sciences ecosystem. Lastly, we provide recommendations for future animal scientists on how to support themselves, the farmers, and their field, considering the opportunities and challenges the technological innovation brings.
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Información bibliográfica
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