finomhangolják
Finomhangolják is a Hungarian term that translates to "fine-tuning" in English. It is most commonly used in the context of machine learning and artificial intelligence. In this field, fine-tuning refers to the process of taking a pre-trained model, which has already been trained on a large dataset, and further training it on a smaller, more specific dataset. This allows the model to adapt its parameters to better perform on a particular task or domain.
The purpose of fine-tuning is to leverage the knowledge gained from the initial training on a broad
The process typically involves unfreezing some or all of the layers of the pre-trained model and continuing