Enhancing Business Efficiency with SAAS Solutions for Person Tracking and Inter Communication

Volume: 10 | Issue: 01 | Year 2024 | Subscription
International Journal of Distributed Computing and Technology
Received Date: 02/22/2024
Acceptance Date: 05/11/2024
Published On: 2024-05-29
First Page: 15
Last Page: 21

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By: Somesh Jha, Nikhil Bhilare, Niyush Dhule, Bhupendra Bachhav, and Prajakta Jadhav

Abstract

This abstract explores the versatile applications of software as a service (SAAS) products across several key business domains, including person tracking, communication (chatting), order and billing systems, customer management, and outstanding management. SAAS solutions have revolutionized person tracking by providing comprehensive tools for monitoring and managing personnel activities in real time, from attendance tracking to performance evaluation, thereby fostering a productive and accountable workforce. Similarly, SAAS-based communication platforms have transformed intra-organizational and client interactions through features like instant messaging, file sharing, and video conferencing, promoting seamless collaboration and improved decision-making processes. Moreover, SAAS-driven order and billing systems automate and optimize the entire order-to-cash process, enhancing accuracy, speed, and transparency, which in turn leads to enhanced customer satisfaction and revenue growth.

Keywords: Communication, order and billing system, customer management, outstanding management

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Citation:

How to cite this article: Somesh Jha, Nikhil Bhilare, Niyush Dhule, Bhupendra Bachhav, and Prajakta Jadhav, Enhancing Business Efficiency with SAAS Solutions for Person Tracking and Inter Communication. International Journal of Distributed Computing and Technology. 2024; 10(01): 15-21p.

How to cite this URL: Somesh Jha, Nikhil Bhilare, Niyush Dhule, Bhupendra Bachhav, and Prajakta Jadhav, Enhancing Business Efficiency with SAAS Solutions for Person Tracking and Inter Communication. International Journal of Distributed Computing and Technology. 2024; 10(01): 15-21p. Available from:https://journalspub.com/publication/ijdct-v10i01-6697/

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