How does the CEILING function work in tableau

This recipe explains how does the CEILING function work in tableau

Recipe Objective - How does the CEILING function work in tableau?

The CEILING function in tableau takes the number input and rounds the number to the nearest number of equal or greater value.

Syntax of the CEILING function:

CEILING(number)

Example: CEILING(45.6845) = 46

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