E-Collaboration for Management Information Systems Using Deep Learning Technique

Author:

V. Rajalakshmi1,V. Muthukumaran1ORCID,S. Satheesh Kumar1ORCID,Koti Manjula Sanjay2,V. Vinothkumar3,N. Thillaiarasu1ORCID

Affiliation:

1. REVA University, India

2. Dayananda Sagar Academy of Technology and Management, India

3. Jain University, India

Abstract

Universities are currently confronted with changing student needs, a competitive labour market, and a fast-paced environment. The advancement of communication technology has enabled us to address these issues. Collaboration advances are critical to the current learning process because they train students to work in groups on tasks. In this chapter, the authors present a thorough foundation for an e-collaboration platform that was established during the successful implementation of an e-collaboration solution at the management information systems. The solution makes use of cutting-edge web portal technology and a digital asset management system to create a uniform, centralised platform for system users to collaborate, communicate, and exchange information.

Publisher

IGI Global

Reference24 articles.

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