I think this is in-topic, but I just wanted to double-check in case you think I need to move to the more AI-related groups:

## How to perform hyperparameter tuning and model selection with Optuna and nested cross-validation

I have a list of regression models and a dataset. I want to do two things at the same time:

- find the optimal hyperparameters for each regression model with Optuna
- select the regression model with lowest generalization error E (error on unseen data)
If I use a single cross-validation loop to do both things, I will underestimate E since I'm using the same data to tune hyperparameters, select model and estimate the generalization error. I would thus like to use nested cross-validation, but I'm not sure how to implement it correctly.

etc. etc. I would then add my Python code (struggling to make it reproducible atm without including private data, but I'm on the right track).