About this project

EnergyAgent is an LLM-powered conversational assistant developed to enhance household energy monitoring and efficiency. Designed as an intelligent interface for smart-meter data, it enables users to query their energy usage in natural language and receive strictly factual answers based on actual recorded history. The system maintains accuracy by converting user questions into specific calculation steps that are processed by an analytics engine, ensuring that all provided numbers are calculated. Then the agent interprets these numeric results to offer actionable recommendations, bridging the gap between raw energy statistics and understandable, daily insights for the user.

Discover the team behind this project

Turan Tahsin
Turan TahsinComputer Science Student
Computer Science Student with Brain
Published On: 29 January 2026Categories:

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