소개
The Data Anomaly Detector skill provides a suite of production-ready functions for identifying outliers across various data structures, from simple numeric columns to complex time-series and high-dimensional datasets. By integrating industry-standard algorithms like Isolation Forest, Z-score, and STL decomposition, it enables data engineers and analysts to automate data quality checks, identify fraudulent activity, and monitor system health. The skill includes a robust ensemble approach that minimizes false positives by requiring consensus across multiple detection methods, making it ideal for critical production monitoring and data cleaning workflows.