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Sentiment Analysis, an un-abat-ing research area in text mining, requires a computational method for extracting useful information from text. In recent days, social media has become a really rich source to get information about the behavioral state of peo-ple (opinion) through reviews and comments. Numerous techniques have been aimed to an-alyze the sentiment of the text, however, they were unable to come up to the complexity of the sentiments. The complexity requires novel approach for deep analysis of sentiments for more accurate prediction. This research pres-ents a three-step Sentiment Analysis and Pre-diction (SAP) solution of Text Trend through K-Nearest Neighbor (KNN). At first, sentenc-es are transformed into tokens and stop words are removed. Secondly, polarity of the sen-tence, paragraph and text is calculated through contributing weighted words, intensity clauses and sentiment shifters. The resulting features extracted in this step played significant role to improve the results. Finally, the trend of the input text has been predicted using KNN clas-sifier based on extracted features. The training and testing of the model has been performed on publically available datasets of twitter and movie reviews. Experiments results illustrated the satisfactory improvement as compared to existing solutions. In addition, GUI (Hello World) based text analysis framework has been designed to perform the text analytics.