Description: The optimization process is a systematic approach to improving the efficiency of a process, aiming to maximize or minimize certain parameters within a system. This process involves identifying key variables, formulating a model that represents the system, and applying mathematical and computational techniques to find the best possible solution. In the context of artificial intelligence and machine learning, optimization becomes an essential component, as it allows models to be adjusted to better fit the data and make more accurate predictions. Tools and frameworks facilitate this process by providing algorithms and computational resources that enable complex optimizations to be performed efficiently. Optimization is not limited to improving machine learning models; it also applies to resource management, process automation, and the implementation of DataOps strategies, where the continuous improvement of data quality and flow is sought through a more agile and effective data lifecycle.