Your browser is out of date

Update your browser to view this website correctly. Update my browser now


Watch Now

Anomaly detection is a powerful application of machine learning that identifies outliers in data, or patterns that don’t adhere to expected norms given previous observations.  It can be applied in a multitude of business use-cases to drive transformational efficiencies and cost savings, from IT security to preventive maintenance, quality assurance and more.  For instance, machine learning to detect anomalies in payment card transaction data is a powerful tool for stopping financial loss due to fraud.  

In this live demo you’ll learn:
  • About new Applied ML Prototypes for Cloudera Machine Learning (CML), which are adaptable sample workflows for enterprise ML applications

  • How to use CML’s Applied ML Prototype for Anomaly Detection to build and deploy a sample payment card fraud detection model and fraud insights application 

  • Instructions for using the Applied ML Prototype to deliver business value with CDP Public Cloud


Cloud Machine Learning Specialist

Jeff Fletcher


Jeff is the field specialist for Cloudera Machine Learning and other cloud ML products. He holds a degree in electrical engineering from Witwatersrand University and has been involved in Internet technology for most of his professional life with a strong commercial focus. Before Cloudera, Jeff started his professional journey at Telkom in 1994, working on the initial Internet infrastructure in South Africa, then later founded Antfarm Networking Technologies, South Africa’s first streaming, and webcasting company.

Your form submission has failed.

This may have been caused by one of the following:

  • Your request timed out
  • A plugin/browser extension blocked the submission. If you have an ad blocking plugin please disable it and close this message to reload the page.