Loading...

verticapy.sql.functions.std#

verticapy.sql.functions.std(expr: str | list[str] | StringSQL | list[StringSQL]) StringSQL#

Evaluates the statistical sample standard deviation for each member of the group.

Parameters#

expr: SQLExpression

Expression.

Returns#

StringSQL

SQL string.

Examples#

First, let’s import the vDataFrame in order to create a dummy dataset.

from verticapy import vDataFrame

Now, let’s import the VerticaPy SQL functions.

import verticapy.sql.functions as vpf

We can now build a dummy dataset.

df = vDataFrame({"x": [2, -11, 7, 12]})

Now, let’s go ahead and apply the function.

df.select([str(vpf.std(df["x"]))])
123
STDDEV
Float(22)
100%
19.88264472024906

Note

It’s crucial to utilize VerticaPy SQL functions in coding, as they can be updated over time with new syntax. While SQL functions typically remain stable, they may vary across platforms or versions. VerticaPy effectively manages these changes, a task not achievable with pure SQL.

See also

vDataFrame.eval() : Evaluates the expression.