Data cleaning and preprocessing are essential steps in the data analysis pipeline, aimed at improving the quality and reliability of the data before it is used for analytical purposes. Here are the key components of data cleaning and preprocessing:
Effective data cleaning and preprocessing lay the foundation for accurate and reliable analyses, ensuring that the insights drawn from the data are meaningful and trustworthy. These steps contribute to the overall data quality and facilitate the success of downstream analytical processes, such as machine learning model training and business intelligence reporting.
You cannot copy content of this page