探索人工智能与美食的融合:通过人工智能驱动的技术提升美食与美酒的搭配、生产和消费者偏好

Deepak Thakur, Tarun Sharma, S.No
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摘要

人工智能(AI)与烹饪界的融合是一个充满活力、不断发展的交叉点,它为提升美食的各个方面提供了创新解决方案。本摘要概括了一项综合研究的主要发现和见解,该研究调查了人工智能与美食融合的影响,重点关注美食与美酒的搭配、生产优化和消费者偏好。通过对行业专家、厨师和消费者的访谈,以及在美食环境中的观察研究,收集了定性数据。这些方法提供了有关美食业中人工智能驱动技术的经验、观点和行为的丰富见解。此外,还通过向美食爱好者、餐厅顾客和餐饮业专业人士发放调查问卷获得了定量数据,从而分析了他们对人工智能集成的态度、偏好和行为。研究结果表明,人工智能在美食与美酒的搭配、生产效率和消费者互动方面推动了重大进步。人工智能驱动的算法可以分析口味特征、配料成分和消费者偏好的大量数据集,从而推荐适合个人口味和偏好的最佳食品和葡萄酒搭配。在食品生产方面,人工智能可优化供应链管理,预测需求波动,并通过预测分析和物联网传感器减少食品浪费。此外,人工智能驱动的推荐系统还能为消费者提供个性化推荐,提升他们的餐饮和购物体验。本摘要重点介绍了人工智能与美食融合的相关性和影响,强调了其彻底改变烹饪实践和满足不断变化的消费者需求的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Convergence of Artificial Intelligence in Gastronomy: Enhancements in Food and Wine Pairing, Production, and Consumer Preferences Through AI-driven Technologies
The convergence of artificial intelligence (AI) with the culinary world represents a dynamic and evolving intersection, offering innovative solutions to enhance various aspects of gastronomy. This abstract encapsulates the key findings and insights from a comprehensive study investigating the implications of AI integration in gastronomy, focusing on food and wine pairing, production optimization, and consumer preferences. Qualitative data is collected through interviews with industry experts, chefs, and consumers, as well as observational research in gastronomic settings. These methods provide rich insights into the experiences, perspectives, and behaviors related to AI-driven technologies in gastronomy. Additionally, quantitative data is obtained through surveys distributed to food enthusiasts, restaurant-goers, and professionals in the food and beverage industry, enabling the analysis of attitudes, preferences, and behaviors towards AI integration. The findings reveal significant advancements facilitated by AI in food and wine pairing, production efficiency, and consumer interactions. AI-driven algorithms analyze vast datasets of flavor profiles, ingredient compositions, and consumer preferences to recommend optimal food and wine pairings tailored to individual tastes and preferences. In food production, AI optimizes supply chain management, predicts demand fluctuations, and reduces food wastage through predictive analytics and IoT sensors. Furthermore, AI-driven recommender systems personalize recommendations for consumers, enhancing their dining and shopping experiences. This abstract highlights the relevance and implications of AI convergence in gastronomy, emphasizing its potential to revolutionize culinary practices and cater to evolving consumer demands.
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