Hi @learning_JSL,
The platform mentioned by @Jed_Campbell is the right place to start.
However, due to the high number of groups (more than 50) involved in this multiple comparison, I would highly recommend to use the "Steel-Dwass" test (instead of Wilcoxon) if you are interested in all comparisons, or "Steel with Control" if you want to compare each group to a Control group (provided these tests are available in JMP 12).
These tests are available in the same menu, but protect against overall error rate :
And with 1431 possible comparisons, your overall confidence level will be close to 0 (1,32.10^-32)...
So the risk of doing type I error (false positive, falsely rejecting the null hypothesis that there is no statistically significant mean difference for pairs of groups, aka detecting falsely a significant difference between means of groups pairs) is quite high if you don't use the right test or adjust your confidence level. Steel-Dwass is a non-parametric test controlling the overall error rate.
If you need more info about these tests, you can look at the help section : Nonparametric Multiple Comparisons Reports (jmp.com)
I hope this answer will help you choose the most appropriate statistical test,
Victor GUILLER
L'Oréal Data & Analytics
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)