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The contribution of HRM with AI for customer relationships management during the COVID-19 pandemic in the corporate sector

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  • V. Mahalakshmi

Abstract

As COVID-19 cases increase, many countries have enforced a lockdown. It worsens the global economic situation. International trade, supply networks, and the services industry have high unemployment. AI and technology assist their company restructure. AI builds a smart, innovative economy. AI decreases personal and professional worries. This study will examine HRM's role in minimising COVID-19's worker consequences. AI investment risks will also be examined. The literature review examines employee retention motivator ideas and the company's intelligence prediction system. Firm strategy includes research to limit COVID-19's influence. One hundred fifty non-probability respondents participated in correlation and descriptive statistics. The paper shows how HR can boost employee satisfaction. Profits and values can be boosted via workplace instructions, help, and information. AI can help small and medium-sized enterprises with COVID-19 manufacturing contact customers online, predict cash flow, and streamline HR. AI helps SMBs raise their dynamic capacities by employing technology to match creative demand methods, pivot quickly, increase efficiency, and reduce investment risk. Intelligence helps with data management. These strategies boost responsiveness, adaptability, and efficiency. Hybrid systems will grow.

Suggested Citation

  • V. Mahalakshmi, 2024. "The contribution of HRM with AI for customer relationships management during the COVID-19 pandemic in the corporate sector," International Journal of Indian Culture and Business Management, Inderscience Enterprises Ltd, vol. 31(4), pages 501-515.
  • Handle: RePEc:ids:ijicbm:v:31:y:2024:i:4:p:501-515
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