Data Sanitization

Procedure

Data sanitization refers to the deliberate process of scrubbing sensitive, erroneous, or redundant information from datasets used in quantitative trading and crypto derivatives analysis. Financial institutions apply these cleansing protocols to remove outliers or erroneous ticks that could distort pricing models and automated execution strategies. By ensuring the input data remains pristine, analysts mitigate the risk of GIGO errors where flawed information leads to catastrophic algorithmic outcomes.