Goto

Collaborating Authors

 nutritional value


NutriGen: Personalized Meal Plan Generator Leveraging Large Language Models to Enhance Dietary and Nutritional Adherence

arXiv.org Artificial Intelligence

Maintaining a balanced diet is essential for overall health, yet many individuals struggle with meal planning due to nutritional complexity, time constraints, and lack of dietary knowledge. Personalized food recommendations can help address these challenges by tailoring meal plans to individual preferences, habits, and dietary restrictions. However, existing dietary recommendation systems often lack adaptability, fail to consider real-world constraints such as food ingredient availability, and require extensive user input, making them impractical for sustainable and scalable daily use. To address these limitations, we introduce NutriGen, a framework based on large language models (LLM) designed to generate personalized meal plans that align with user-defined dietary preferences and constraints. By building a personalized nutrition database and leveraging prompt engineering, our approach enables LLMs to incorporate reliable nutritional references like the USDA nutrition database while maintaining flexibility and ease-of-use. We demonstrate that LLMs have strong potential in generating accurate and user-friendly food recommendations, addressing key limitations in existing dietary recommendation systems by providing structured, practical, and scalable meal plans. Our evaluation shows that Llama 3.1 8B and GPT-3.5 Turbo achieve the lowest percentage errors of 1.55\% and 3.68\%, respectively, producing meal plans that closely align with user-defined caloric targets while minimizing deviation and improving precision. Additionally, we compared the performance of DeepSeek V3 against several established models to evaluate its potential in personalized nutrition planning.


NutriTransform: Estimating Nutritional Information From Online Food Posts

arXiv.org Artificial Intelligence

Deriving nutritional information from online food posts is challenging, particularly when users do not explicitly log the macro-nutrients of a shared meal. In this work, we present an efficient and straightforward approach to approximating macro-nutrients based solely on the titles of food posts. Our method combines a public food database from the U.S. Department of Agriculture with advanced text embedding techniques. We evaluate the approach on a labeled food dataset, demonstrating its effectiveness, and apply it to over 500,000 real-world posts from Reddit's popular /r/food subreddit to uncover trends in food-sharing behavior based on the estimated macro-nutrient content. Altogether, this work lays a foundation for researchers and practitioners aiming to estimate caloric and nutritional content using only text data.


A Framework for Evaluating the Impact of Food Security Scenarios

arXiv.org Artificial Intelligence

This study proposes an approach for predicting the impacts of scenarios on food security and demonstrates its application in a case study. The approach involves two main steps: (1) scenario definition, in which the end user specifies the assumptions and impacts of the scenario using a scenario template, and (2) scenario evaluation, in which a Vector Autoregression (VAR) model is used in combination with Monte Carlo simulation to generate predictions for the impacts of the scenario based on the defined assumptions and impacts. The case study is based on a proprietary time series food security database created using data from the Food and Agriculture Organization of the United Nations (FAOSTAT), the World Bank, and the United States Department of Agriculture (USDA). The database contains a wide range of data on various indicators of food security, such as production, trade, consumption, prices, availability, access, and nutritional value. The results show that the proposed approach can be used to predict the potential impacts of scenarios on food security and that the proprietary time series food security database can be used to support this approach. The study provides specific insights on how this approach can inform decision-making processes related to food security such as food prices and availability in the case study region.


Data Scientist Job Description: What to Expect in 2023

#artificialintelligence

It's been said that you can't improve something that you can't measure. And so, in today's digital landscape, where every interaction becomes a measurable data point, data scientists are increasingly in high demand. The job of a data scientist now ranks sixth on U.S. News' "100 Best Jobs" list. And it's easy to see why. Data scientists solve real-world problems, which is why many data scientists (even entry-level ones) make more than a hundred thousand dollars a year.


Top Artificial Intelligence (AI) Powered Health Apps in 2022

#artificialintelligence

In the context of healthcare, artificial intelligence (AI) refers to the use of sophisticated algorithms and software to simulate human cognition in the analysis, interpretation, and comprehension of complex medical and healthcare data. The top 10 AI healthcare companies are likely to dominate the global market for AI in healthcare, which is anticipated to reach US$ 28 billion in 2025. Around 100 different AI development tools were approved for medical usage in 2020. The most common specializations are hematology, cardiology, and radiology. Over US$4.6 billion will be spent on medical surgical robot use in 2020.