Please use this identifier to cite or link to this item: https://repository.hneu.edu.ua/handle/123456789/40269
Title: Integration of large language models and sensor data in recommendation systems for personalized physiological and dietary monitoring
Authors: Minukhin S. V.
Khaustov D. A.
Keywords: artificial intelligence
sensor data
LLM
GPT-4
Text -to-SQL
PHIA agent
Issue Date: 2026
Citation: Minukhin S. V. Integration of large language models and sensor data in recommendation systems for personalized physiological and dietary monitoring / S. V. Minukhin, D. A. Khaustov // Інформаційні технології: наука, техніка, технологія, освіта, здоров’я: тези доповідей ХXХІV міжнародної науково-практичної конференції MicroCAD-2026, 13-16 травня 2026 р. – Харків: НТУ «ХПІ», 2026. – С. 1490.
Abstract: This study proposes the «Formal -of-Thought» (FoT)—an architecture that shifts artificial intelligence from passive generation to active formal reasoning. This approach uses the Health-LLM principle to convert numerical sensor data in the form of time series into textual descriptions based on an individual user profile. It combines this with the PHIA agent, which utilizes multi-step ReAct reasoning, Python code generation (Pandas), few-shot learning via embedded sentence-T5 and K-means clustering, as well as the GPT-4 Text -to-SQL method with few-shot learning and RAG for heterogeneous data.
URI: https://repository.hneu.edu.ua/handle/123456789/40269
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