[[Hyperparameter]] tuning consists of finding a set of optimal hyperparameter values for a [[learning algorithm]] while applying this optimized algorithm to any data set. That combination of hyperparameters maximizes the model's performance, minimizing a predefined loss function to produce better results with fewer errors