Identification of Skype traffic using machine learning is an area of current research interest. Previous Skype classifiers have usually been reliant on version specific features. Consequently, a classifier that works for a specific version of Skype is unlikely to work for successive versions. Classification of Skype has been successful with previous research showing 98% precision for Skype version 3. But classification using Skype version 3 attributes were not successful in identifying Skype version 4. In our experiments, we use machine learning to classify Skype version 3 and 4 for a subflow size of 100 with characteristics common to both versions. We discuss attributes that are generic to Skype and show that Skype can be identified with 97% precision and 86% recall.