Fabric RTI 101: KQL Aggregations
When you’re dealing with real-time or high-volume event data, one of the first challenges is scale — there’s simply too much information to interpret at the individual event level. That’s where aggregations come in. Aggregations are the process of summarizing large numbers of rows into meaningful metrics that humans can easily interpret.

For example, if you’re collecting IoT sensor readings from thousands of devices, it doesn’t make sense to inspect each data point individually. Instead, you might calculate the average temperature per minute, the total number of readings received, or the maximum pressure recorded in the last hour. Those aggregated values turn a flood of raw data into something you can analyze and act on.
2026-06-16

