Data Cleaning Guidelines

Data

Cryptocurrency, options, and financial derivative data requires meticulous cleaning to mitigate systematic risk and ensure model validity. Raw datasets frequently contain errors stemming from exchange APIs, trade reporting discrepancies, and inherent market noise, necessitating robust preprocessing techniques. Effective data cleaning establishes a foundation for reliable backtesting, accurate risk assessment, and informed trading decisions, particularly within the volatile crypto asset class.