Overview of how to use Arize for insurance models
In just a few clicks, Arize automatically configures monitors that are best suited to your data to proactively detect drift, data quality, and performance issues.
Training Version 1.0
- 2.Default Metric:
Mean Error, Trigger Alert When:
Mean Error is below -0.01
- 3.Turn On Monitoring: Drift ✅, Data Quality ✅, Performance ✅
Visualize feature and model drift between various model environments and versions to identify loan defaulting patterns and anomalous distribution behavior. Arize provides drift over time widgets overlaid with your metric of choice (in our case, Mean Error) to clearly determine if drift is contributing to our performance degradation.
Data drift causing model degradation
With the insights provided on Arize, you can deep dive into root causes and quickly gain intuitions, allowing for ML teams to quickly iterate, experiment, and ship new models in production.