It's not that simple, as the behaviour of the two GP-based platforms are different regarding confidence intervals calculation.
You always have some error in the OB confidence intervals calculations, whereas in classical GP platform, error is set at 0 for the locations where points are measured (hence my initial response regarding the difference in error/interval calculation and display).
Depending on the acquisition function used and the calculation of confidence intervals, you can have different "optimal" next sampling point recommendation :
Maximize Bayesian Desirability :

Maximize Expected Improvement Desirability (Optimize predicted response regarding target):

Maximize Bayesian StDev Desirability (focus on where the uncertainty is highest):

Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)