adatcímkézésben
Adatcímkézésben is a Hungarian term that translates to "in data labeling" or "with data labeling." It refers to the process of annotating or tagging raw data to make it understandable and usable for machine learning algorithms. This process is crucial for training supervised learning models, where the accuracy of the model heavily depends on the quality of the labeled data.
The purpose of data labeling is to provide context and meaning to unstructured or semi-structured data. For
Data labeling can be performed manually by human annotators or through semi-automated methods that leverage machine