How to use the Desirability Functions in JMP
One of JMP's most powerful tools is hidden inside the Prediction Profiler: Desirability Functions! With this function it is possible to find the most optimized solution possible for the multiple response variables, regardless of whether the objective is specific or just maximize or minimize. It doesn't matter how many Y's are under analysis, JMP will look for the best solution according to your objectives, which can be fully configurable! If you, or your company, need customized training, please contact us for quotes. We work with real case studies or we can work with your company's own cases during personalized training for your work teams.

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