Transforming Human Resources Leveraging AI Across the Associate Lifecycle for Strategic Success

Year : 2025 | Volume : 12 | Issue : 01 | Page : 30 36
    By

    Vibhu Verma,

  1. MS Business Analytics, George Washington School of Business, George Washington University, Washington, DC, United States of America

Abstract

AI is taking the lead in changing the game in human resources by mitigating challenges and optimizing processes throughout the entire associate lifecycle. From pre-hire, AI helps with interview bias, enhances hire projections, and supports talent acquisition with predictive analytics. Once onboarded, AI helps with compensation benchmarking, automates performance feedback with the mitigation of bias, and analyzes associate sentiment through NLP and LLMs. In the middle of the life cycle, AI is allowed to create associate success modeling, identify the drivers for strategic decisions, and apply organizational network analysis for better workplace design and collaboration. AI does an outstanding job in predicting and forecasting attrition toward the later stages of the associate lifecycle, helping HR take proactive measures for talent retention. Coupled with insights from all phases, AI forms the basis of workforce planning, aligns talent management to organizational objectives, and helps leaders make informed decisions. Given the complexity of human behavior, black-box AI models are critical in providing accurate and actionable insights that redefine HR practices to improve associate well-being and organizational success.

Keywords: AI in HR, pre-hire, associate lifecycle, bias mitigation, attrition prediction, NLP, LLMs, workforce planning, organizational network analysis, succession planning, strategic decision-making

[This article belongs to Recent Trends in Programming languages ]

How to cite this article:
Vibhu Verma. Transforming Human Resources Leveraging AI Across the Associate Lifecycle for Strategic Success. Recent Trends in Programming languages. 2025; 12(01):30-36.
How to cite this URL:
Vibhu Verma. Transforming Human Resources Leveraging AI Across the Associate Lifecycle for Strategic Success. Recent Trends in Programming languages. 2025; 12(01):30-36. Available from: https://journals.stmjournals.com/rtpl/article=2025/view=193079


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Regular Issue Subscription Review Article
Volume 12
Issue 01
Received 28/12/2024
Accepted 07/01/2025
Published 21/02/2025
Publication Time 55 Days


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