Group aggregation functions
Learn about group aggregation functions, or pinned measures.
What if you want to aggregate a value by a specific attribute (for example, show revenue by product)? This is known as a grouped aggregation, but some people call it a pinned measure or level-based measure. You can do this for any aggregation using the grouping functions.
Each of the grouping functions accepts a measure and one or more optional attributes:
formula (measure, [attribute, attribute, ...])
Only the measure value is required. If you supply both a measure and an attribute, the function returns the aggregate of the measure grouped by the attribute(s). You should experiment with only a measure and then with an attribute to see which output best meets your use case.
group_*
functions are like their own sub-queries which can be used to aggregate a column at groupings specified in the formula which can be different from the groupings in the search query.
For example:
-
group_max(balance date)
: this formula has no groupings specified, so its like doing a sub-querymax balance date
. Hence you get lastbalance date
across all the balance dates. -
group_max(balance date, balance date)
: this formula hasbalance date
as a grouping specified, so its like doing a sub-query[max balance date] [by balance date]
. The bucketing to be used for grouping balance data in the sub-query is inherited from the search. Hence you get the last balance date within every segment.
List of group functions
Group aggregation functions have names with formats like group_<aggregation>
.
The group aggregation functions are the following:
group_average
-
Takes a measure and one or more attributes. Returns the average of the measure grouped by the attribute(s).
group_average (revenue, customer region)
group_count
-
Takes a measure and one or more attributes. Returns the count of the measure grouped by the attribute(s).
group_count (revenue, customer region)
group_max
-
Takes a measure and one or more attributes. Returns the maximum of the measure grouped by the attribute(s).
group_max (revenue, customer region)
group_min
-
Takes a measure and one or more attributes. Returns the minimum of the measure grouped by the attribute(s).
group_min (revenue, customer region)
group_stddev
-
Takes a measure and one or more attributes. Returns the standard deviation of the measure grouped by the attribute(s).
group_stddev (revenue, customer region)
group_sum
-
Takes a measure and one or more attributes. Returns the sum of the measure grouped by the attribute(s).
group_sum (revenue, customer region)
group_unique_count
-
Takes a column name and one or more attributes. Returns the number of unique values in a column, grouped by the attribute(s).
group_unique_count ( product, supplier)
group_variance
-
Takes a measure and one or more attributes. Returns the variance of the measure grouped by the attribute(s).
group_variance (revenue, customer region)
Flexible aggregation
The group_aggregate
function gives you more control over aggregation and filtering.
See Flexible aggregation to learn more about specifying query_groups
with this formula.
Limitations of group aggregation functions
Group aggregation functions have the following limitations:
-
You can’t run SpotIQ analysis on a visualization that contains a group aggregation function.
-
You can’t create a KPI chart with a group aggregation function.
-
ThoughtSpot doesn’t support table aggregate headlines for formulas that have group aggregates and are conditional.
-
You can’t run a
vs
query that also contains a group aggregation function. -
You can’t run a group aggregation function on a group aggregation function. If you would like to create a nested group aggregation function, you can do so by first saving the answer with the first level of the group function as a View, then using the View as the data source for a second answer with the second level of the group function.