datatrening
Datatrening is a term that refers to the process of preparing and cleaning raw data for analysis or machine learning. This can involve a variety of tasks such as removing duplicate entries, handling missing values, correcting errors, and transforming data into a suitable format. The goal of datatrening is to ensure the data is accurate, consistent, and reliable, which is crucial for obtaining meaningful insights and building effective models.
The specific steps involved in datatrening can vary depending on the nature of the data and the
Effective datatrening is a critical stage in any data-driven project. Poorly trained data can lead to flawed