Digital Twin (DT) technology is revolutionizing industry in the Industry 4.0 era by enabling simulating, analyzing, and monitoring physical assets real-time. To reduce downtime for machines, improve maintenance schedules, and maximize equipment lifespan, this research explores the use of digital twins in implementing predictive maintenance (PdM) concepts. An imitation of an actual machine or process that is continuously supplied with information from embedded Internet of Things sensors is referred to as a "digital twin." Condition-driven maintenance, in contrast to reactive or time-based maintenance, is enabled by the system to predict failures before they occur by the integration of AI/ML algorithms. With reference to four key components—data collection, model building, simulation environment, and feedback mechanisms—the research provides a conceptual framework for the application of digital twins in a typical manufacturing environment. It also illustrates a case study of a CNC machine that employs real-time temperature and vibration data to anticipate spindle bearing issues. Compared to standard methods, DT-based predictive maintenance enhances asset availability, cost savings, and accuracy in maintenance significantly. To deliver insights into future directions and scalability of DT in smart factories, the article concludes by considering challenges such as data security, interoperability, and computing complexity. Keywords: Industry 4.0, IoT, Smart Manufacturing, Machine Learning, CNC, Condition Monitoring, Digital Twin, Predictive Maintenance.
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