karginb/TUBITAK_Predictive_Maintenance_with_AI
This project aims to optimize maintenance processes by predicting machine failures in an industrial setting. The dataset includes parameters such as air and process temperatures, torque, rotational speed, and tool wear — all of which contribute to anticipating equipment failures.
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May 15, 2025
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