Ashok Murugesan, K. Ramasamy, Umadevi Ashok, R. Pandian
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A Deep Learning Model to predict the Industry Readiness of Engineering Students Community
Industry readiness of Engineering students community is a big challenge in the recent campus recruitments. 21st century skills are completely mapped with the technical and non – technical knowledge background of the engineering graduates. In this paper the work narrated the process of identifying the parameters for skill assessment of the candidates and derived a learner model using deep learning framework. Further the model can be used to predict the employability readiness of candidates.