i-Pulse: A NLP based novel approach for employee engagement in logistics
organization
- URL: http://arxiv.org/abs/2106.07341v1
- Date: Mon, 24 May 2021 07:20:40 GMT
- Title: i-Pulse: A NLP based novel approach for employee engagement in logistics
organization
- Authors: Rachit Garg, Arvind W Kiwelekar, Laxman D Netak, Akshay Ghodake
- Abstract summary: The engagement of employees is a vast structure that affects almost every part of the company's core environmental values.
This paper aims to provide a novel approach for insight around employee engagement in a logistics organization by implementing deep natural language processing concepts.
The artificial intelligence-enabled solution named Intelligent Pulse (I-Pulse) can evaluate hundreds and thousands of pulse survey comments.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Although most logistics and freight forwarding organizations, in one way or
another, claim to have core values. The engagement of employees is a vast
structure that affects almost every part of the company's core environmental
values. There is little theoretical knowledge about the relationship between
firms and the engagement of employees. Based on research literature, this paper
aims to provide a novel approach for insight around employee engagement in a
logistics organization by implementing deep natural language processing
concepts. The artificial intelligence-enabled solution named Intelligent Pulse
(I-Pulse) can evaluate hundreds and thousands of pulse survey comments and
provides the actionable insights and gist of employee feedback. I-Pulse allows
the stakeholders to think in new ways in their organization, helping them to
have a powerful influence on employee engagement, retention, and efficiency.
This study is of corresponding interest to researchers and practitioners.
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