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Solve problems, and share tips and tricks with other JMP users.
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hogi
Level XIII

How often do you use Nonlinear Fit?

Nonlinear is  a great platform to fit curves in JMP. But unfortunately, it's lacking some functions - how can I steal them from the other platforms and use them in Nonlinear?

- axis transforms - like in Graph Builder or Degradation: Custom scales in Graph Builder? 

- local data filter - like in other platforms 

- easy way to define the fit function - like in Degradation

- the Group option in Fit Curve is great, there is a nice overview of the fit parameters:

hogi_0-1764887164949.png

and all fits can be compared within the same plot:

hogi_1-1764887196326.png

3 REPLIES 3
hogi
Level XIII

Re: How often do you use Nonlinear Fit?

Degradation is  a great platform to fit curves. But unfortunately, it's lacking some functions - how can I steal them from the other platforms and use them in Degradation?

- constraints - like in Nonlinear
-
the Group option in Fit Curve is great, there is a nice 2D  overview of the fit parameters

hogi
Level XIII

Re: How often do you use Nonlinear Fit?

Fit Curves is a great platform to fit curves. But unfortunately, it's lacking some functions - how can I steal them from the other platforms and use them in Fit Curves?

- axis transforms - like in Graph Builder or Degradation

- a way to define a custom fit function - like in Nonlinear and Degradation

- constraints, like in Nonlinear

- a data filter (one that filters the data and doesn't destroy the report)

hogi
Level XIII

Re: How often do you use Nonlinear Fit?

Graph Builder  is an amazing plotting tool, but it's also a great platform to fit curves. But unfortunately, it's lacking some functions - how can I steal them from the other platforms and use them in Fit Curves?

- a way to define a custom fit function - like in Nonlinear and Degradation

- constraints, like in Nonlinear

- and perhaps: a nice way to get the fit parameters

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