Our existing monitors allow users to set static thresholds to alert them when resource spend exceeds a predefined amount. However, determining the right threshold can be challenging—especially when spending follows seasonal patterns. For example, if a workload is expected to spike every Monday but not on other days, a threshold set to accommodate that pattern might miss anomalies on other days.
To solve this, we’ve integrated built-in anomaly detection into monitors. This new feature uses an algorithm that automatically accounts for seasonality in your spend data, ensuring you’re alerted only to genuine spending anomalies while filtering out regular, predictable fluctuations.
Additionally, you can fine-tune the algorithm’s sensitivity, allowing you to strike the perfect balance between rapid detection and minimizing false positives according to your own needs.
Other Things We shipped
Morgan is VP of engineering at SELECT based out of Kent, United Kingdom.
Fernando is a software engineer based out of Sweden.
Get up and running with SELECT in 15 minutes.
Gain visibility into Snowflake usage, optimize performance and automate savings with the click of a button.