This project presents the design and development of a data-driven system for monitoring daily energy patterns and enhancing personal productivity. Unlike traditional time-based productivity tools, which primarily focus on task duration and completion, this system emphasizes the analysis of individual energy fluctuations and their direct impact on performance.The system enables users to continuously track their energy levels and store this data in a structured database. Using data analytics and machine learning techniques, it identifies patterns and correlations between daily activities, energy levels, and productivity outcomes. Based on these insights, the system generates personalized recommendations that help users schedule tasks according to their peak energy periods.The system is built using multiple technologies, including Python for data processing, SQLite for data storage, and libraries such as Pandas and Scikit-learn for pattern recognition and analysis. In addition, interactive visualization tools are used to present energy trends and analytical results in a clear and intuitive manner.The main contribution of this work lies in introducing an energy-based productivity model as an alternative to traditional time-based approaches, providing a deeper understanding of the relationship between biological, behavioral, and performance factors, and paving the way for more intelligent and personalized productivity management systems. This work was conducted at Arab International University(AIU),Syria. The official website of the university is :https://www.aiu.edu.sy
Mourtada et al. (Sun,) studied this question.