Maintaining optimal fineness in cement production is paramount for ensuring product quality and meeting production targets. However, conventional lab testing methods often entail significant time delays, impacting the timely control of Blaine size and potentially leading to compromised quality, missed production targets, and revenue loss. This initiative focuses on leveraging predictive modeling techniques to streamline the process of cement fineness prediction. By harnessing real-time data and advanced analytics, organizations can make proactive adjustments to the production process, ensuring consistent quality, meeting targets, and maximizing revenue.