Outlier and Anomaly Detection

(3 customer reviews)

86.05

Flags unexpected or suspicious data values.

Category:

Description

Sudden spikes, invalid ranges, or duplicate entries may indicate data corruption or external issues. Use anomaly detection techniques or rules (e.g., z-scores, min/max range filters) to flag and investigate outliers in datasets.

3 reviews for Outlier and Anomaly Detection

  1. Zubairu

    Before using their solution, our reports were often skewed by unnoticed data outliers. Now, with accurate detection and filtering in place, our analytics are more reliable and decision-making has improved.

  2. Udeme

    The outlier detection tools they implemented gave us real-time visibility into system behavior. We now catch performance dips and data anomalies instantly, improving response time and system uptime.

  3. Hawawu

    Their anomaly detection system flagged irregular patterns in our transaction data that we would’ve missed entirely. It helped us prevent potential fraud and improve operational oversight.

Add a review

Your email address will not be published. Required fields are marked *