Transforming the GUI Landscape: Harnessing the Power of MPNet base v2 Sentence Transformers
Shaik Arsh Hussain, Ravishta Kohli, Saniya Zahoor, Shabir Ahmad Sofi
Abstract
Reducing the workload associated with GUI development has been made possible through the utilization of sentence transformers. However, integrating sentence transformers into the process of GUI creation presents a notable challenge. This paper investigates the use of Graphical User Interfaces (GUIs) with the Sentence Transformers paradigm, specifically focusing on the MPNet base v2 architecture. By processing input sentences and multiple corpus files, the model generates the two most similar sentences from the associated corpora, along with their similarity scores. Furthermore, a comprehensive comparison of different sentence transformer models is conducted, accompanied by rigorous performance assessments. The empirical values obtained from these assessments are presented, providing insights into the effectiveness and efficiency of each model. The results contribute to a better understanding of the strengths and limitations of sentence transformers in GUI development.