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On this page
  • When To Automate Retraining
  • How Does Automated Model Retraining Work?
  • Supported Retraining Integrations

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  1. Machine Learning
  2. Machine Learning
  3. How To: ML

Automate Model Retraining

Last updated 1 year ago

Was this helpful?

Automated model retraining can be expensive, if you're not sure if this is the right solution for you, reach out to support@arize.com or on Slack for help!

When To Automate Retraining

Retrain your model after you root cause an issue. While some model performance/drift issues may point to underlying data quality issues that require you to fix your model upstream, if your model is constantly outdated or experiencing new data types, retrain your model on a regular cadence with automated retraining.

How Does Automated Model Retraining Work?

Step 1 - Configure A Monitor

Enable a monitor in Arize to get alerted when your model deviates from expected behavior. Follow these steps to configure a monitor.

Arize triggers automatic retraining events through an email service. When configuring your monitor, be sure to select your integration's email address during the monitor setup flow.

Step 2 - Monitor Alert Fires

A monitor's alert is used to trigger the retraining workflow. Based on your model retraining needs, retraining actions can be customized using a lambda function.

Step 3 - Create A New Version For Monitoring

Once your model is retrained, close the ML lifecycle by creating a new version and monitoring your new model!


Supported Retraining Integrations

Learn how to setup automatic retraining with the step-by-step guides below:

Webhooks are coming soon!

Automated retraining is a simple process once you connect your workflows with Arize, learn more about supported platforms .

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here
Example automatic retraining workflow with Airflow
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Airflow Retrain

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Amazon EventBridge