Ainutrify: Ai-Driven Personalized Nutrition Planning Using the Crewai Framework
DOI:
https://doi.org/10.47392/IRJAEH.2025.0588Keywords:
Artificial Intelligence, Dietary Management, Multi-Agent Systems, Multi-Modal Learning, Nutritional AnalysisAbstract
The increasing complexity of meal planning and limited access to instant nutritional information creates significant barriers to healthy eating. This paper presents AiNutrify, an innovative AI-driven platform that leverages multi-agent systems and multi-modal large language models to automate dietary assistance. The system employs the CrewAI framework to orchestrate specialized agents for two core workflows: recipe generation from ingredient images and comprehensive nutritional analysis of prepared dishes. Using Google's Gemini model via LiteLLM for multi-modal understanding and Gradio for user interface, the system processes food images to generate personalized recipes compliant with dietary restrictions or provide detailed nutritional breakdowns. Initial validation demonstrates 92% ingredient recognition accuracy, 100% dietary compliance filtering, and 88% recipe quality approval. The modular architecture ensures scalability and transparency, while Pydantic models enforce structured outputs. This Phase 1 implementation establishes a robust foundation for intelligent dietary management systems, demonstrating the viability of agentic AI approaches in nutritional healthcare applications.
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