finombeállítását
Finombeállítását, often translated as fine-tuning, is a crucial process in machine learning, particularly with large pre-trained models. It involves taking a model that has already been trained on a massive dataset for a general task and adapting it to perform a more specific task. This is achieved by continuing the training process, but with a smaller, task-specific dataset and often at a lower learning rate.
The core idea behind finombeállítását is to leverage the knowledge the model has already acquired. Instead
This technique is widely used in natural language processing (NLP) and computer vision. For instance, a language