Data Cleaning Case Studies

Algorithm

Data cleaning within cryptocurrency, options, and derivatives necessitates algorithmic approaches due to the high velocity and volume of market data. These algorithms address inconsistencies arising from disparate data sources, including exchange APIs, market data feeds, and blockchain explorers. Effective algorithms incorporate outlier detection, employing statistical methods like z-score analysis and interquartile range (IQR) to identify and handle erroneous price points or trading volumes. Implementation requires careful consideration of computational efficiency and real-time processing capabilities, particularly for high-frequency trading strategies.