2022-07-18
What’s New
Alerting Integrations: PagerDuty & OpsGenie
Our native integrations with your alerting tools streamline your monitoring workflows. Use integrations to:- Tailor alerts to specific model dimensions and metrics that matter the most
- Send comprehensive metadata via your incident management flow to catch and debug your model issues faster
- Store integration keys at the organizational level for easy setup and system organization

Comparison Dataset in the Drift Tab and Dimension Details
Compare your current drift against your model baseline and **custom baseline **even before creating monitors. Find this new addition in the ‘Drift’ Tab, or in the Feature Details page in your ‘Model Breakdown’ card on the ‘Performance Tracing’ page.Learn more about model baselines here.
Automatic Thresholds on Data Quality Monitors
You can now enable auto thresholds on custom and managed data quality monitors. Enable or disable automatic thresholds for data quality monitors in the UI or programmatically with our public API.Learn more about automatic thresholds and how to customize thresholds here.Learn more about our public API here and how to programmatically edit monitors here.
Bulk Monitor Creation
Use the new bulk monitor creation flow to automatically set up performance, drift, and data quality monitors at a click of a button. Choose from various performance metrics, set your positive class, and add an alerting integration all in the same workflow.
Enhancements
UMAP Enhancements
Select Group of Embeddings with Lasso ToolEasily grab a group of embeddings on the UMAP to see more info and troubleshoot by selecting the lasso tool.
Lasso tool used to grab group of embeddings
- Dataset
- Prediction Label
- Actual Label
- Correctness (whether or not the prediction label matches the actual label)

Select "Color By" dropdown on the UMAP for embeddings analysis
In the News
Visualizing Your Embeddings: An Evolutionary Guide from SNE to t-SNE to UMAPA digestible guide to understanding the underlying logic and evolution from SNE to t-SNE to UMAP presented by Arize Data Scientist, Kiko Castillo.
- Monitoring of Unstructured Data Has Arrived!
- What Works In Training May Not Work In Production When Deciding What To Label Next
- The Rise of the Single, Unified Model Will Change MLOps
- Cutting-Edge Machine Learning Is Becoming More Accessible

- How to version your project
- How to monitor your embedding once it goes live, and
- How to get an intuitive sense for the quality of your embeddings.

