Description: Process standardization involves creating uniform processes for data handling within a data warehouse. This approach aims to ensure consistency, quality, and efficiency in information management, which is crucial in environments dealing with large volumes of data. In the context of digital transformation, process standardization becomes a fundamental pillar, as it enables the integration of advanced technologies such as IoT, artificial intelligence, and automation. Automation, in turn, benefits from these standardized processes by facilitating the implementation of systems that operate in a coherent and predictable manner. In the realm of robotic process automation (RPA), standardization is essential for robots to efficiently and error-free execute repetitive tasks. Regarding Data Warehousing, process standardization ensures that data is collected, stored, and processed uniformly, improving the quality of analyses and reports generated. Finally, in the context of MLOps, standardization allows machine learning models to be developed, deployed, and maintained consistently, facilitating collaboration among teams and the scalability of solutions. In summary, process standardization is key to optimizing data management and enhancing operational efficiency across various technological areas.