How can you standardize data that is not properly normalized?
Data normalization is a process of transforming data into a consistent and comparable format, usually by scaling, centering, or transforming the distribution of the values. Normalized data is easier to analyze, compare, and model, as it reduces the influence of outliers, biases, and scales. However, not all data sets are properly normalized, either because of missing values, errors, or different sources. How can you standardize data that is not properly normalized? Here are some steps and techniques you can use to improve the quality and usability of your data.
-
Ashik Radhakrishnan M?? Chartered Accountant | Quantitative Finance Enthusiast | Data Science & AI in Finance | Proficient in Financial…
-
Axel SchwankeSenior Data Engineer | Data Architect | Data Science | Data Mesh | Data Governance | 4x Databricks certified | 2x AWS…
-
Mohammed BahageelArtificial Intelligence Developer |Data Scientist / Data Analyst | Machine Learning | Deep Learning | Data Analytics…