Score: 0

Optimal Meal Schedule for a Local Nonprofit Using LLM-Aided Data Extraction

Published: November 23, 2025 | arXiv ID: 2511.18483v1

By: Sergio Marin , Nhu Nguyen , Max and more

Potential Business Impact:

Creates cheap, healthy meal plans from food data.

Business Areas:
Recipes Food and Beverage

We present a data-driven pipeline developed in collaboration with the Power Packs Project, a nonprofit addressing food insecurity in local communities. The system integrates data extraction from PDFs, large language models for ingredient standardization, and binary integer programming to generate a 15-week recipe schedule that minimizes projected wholesale costs while meeting nutritional constraints. All 157 recipes were mapped to a nutritional database and assigned estimated and predicted costs using historical invoice data and category-specific inflation adjustments. The model effectively handles real-world price volatility and is structured for easy updates as new recipes or cost data become available. Optimization results show that constraint-based selection yields nutritionally balanced and cost-efficient plans under uncertainty. To facilitate real-time decision-making, we deployed a searchable web platform that integrates analytical models into daily operations by enabling staff to explore recipes by ingredient, category, or through an optimized meal plan.

Page Count
12 pages

Category
Computer Science:
Computers and Society