Hi @Sankaramuthu,
Sorry, but I don't understand exactly what you would like to do :
- Do you want to use Bayesian Optimization through Python libraries for optimization ? If yes, there are several libraries available, or you can use in the meantime the Bayesian Optimization add-in developped by @yuichi_katsumur. Bayesian Optimization should be integrated in JMP 19 : DoE Bayesian optimisation
- If you want to use Deep Learning for the analysis and prediction of complex/rich data formats (text/image data), you can use Torch Deep Learning for JMP® Pro add-in developped by @russ_wolfinger. Some additional videos and tutorials are available on the Torch add-in page.
If you can be more specific about your project, type of data, objectives, context, ... it can greatly improve the quality and relevance of responses you will receive. If possible, you can also join some data with the explanations, so that people may try and recommend different approaches.
Hope this first discussion starter might help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)