Skip to content 🎉 Announcing our Unstructured Data Monitoring Product and Series B Extension
Blog

Enhancing Data Quality Management with Anomalo’s Machine Learning

Data quality control is a requirement for being able to trust the various reports and machine learning models that are relying on the information that you curate. Rules based systems are useful for validating known requirements, but with the scale and complexity of data in modern organizations it is impractical, and often impossible, to manually create rules for all potential errors. The team at Anomalo are building a machine learning powered platform for identifying and alerting on anomalous and invalid changes in your data so that you aren’t flying blind. In this episode founders Elliot Shmukler and Jeremy Stanley explain how they have architected the system to work with your data warehouse and let you know about the critical issues hiding in your data without overwhelming you with alerts.

‍

Categories

  • Product Updates

Get Started

Meet with our expert team and learn how Anomalo can help you achieve high data quality with less effort.

Request a Demo