The objective of this project is to create a user interface using Shiny to enable users to evaluate the sentiments of the tweets based on either a given twitter username or a trending Twitter hashtag. The interface also allows the user to give the number of tweets that they would like to analyze along with the radius of the area in the United States that they would like to cover. Our code extracts data from Twitter, performs text mining to build word clouds for positive and negative sentiments and understand the overall sentiments for the given search criteria. The purpose is to investigate whether removing stopwords helps or hampers the effectiveness of twitter sentiment classification methods. To this end, we applied two different stopword identification methods to Twitter data. We then compared and contrasted the various approaches to perform text mining and evaluate them on different criteria such as reduction in feature space, data sparsity and the classification performance. One of our major understanding from this project was to identify the advantages of dynamic stopword lists against traditional lists. Traditional lists such as Van’s and Brown’s stoplists are outdated and not domain specific. In order to create dynamic stoplists, we used Zipf’s Law using Inverse Document Frequency to eliminate High Frequency terms and then compared the results obtained by traditional stoplists. This report briefly explains the features of the user interface built by the team and how it integrates with the code to make it more interactive and easy to use. Some of the challenges we faced were difficulty to analyze the Twitter data since it is limited to 140 characters and contains lot of noisy data and excessive use of abbreviations, irregular expressions, and infrequent words. We have also identified areas of future work that can be done to include more enhancements and improve the performance of the user interface.