This document presents a study on sentiment analysis of GSM services in Indonesia using a multinomial naïve bayes tree classification method applied to Twitter data. The research identifies customer sentiments as positive, negative, or neutral, with the highest accuracy of classification achieving 73.15% using a dataset of 1665 features. The findings aim to assist Indonesian telecommunications providers in improving their services based on customer feedback and sentiment evaluation.