Decoding future-ready talent strategies in the age of AI – ETHRWorldSEA

In a collaborative effort between ETHRWorld Southeast Asia and Darwinbox, an exclusive roundtable discussion titled “Decoding Future-Ready Talent Strategies in the Age of AI” was held in Malaysia on July 13th, 2023. This event aimed to uncover the essential steps for crafting effective talent strategies that would remain relevant in Malaysia’s ever-evolving job landscape of 2023 and beyond. Industry leaders convened to exchange insights on how employers can reshape their talent approaches to attract, retain, and nurture top talent in the era of Artificial Intelligence (AI).

The transformative influence of digitization, the quest for meaningful work, and the demand for flexibility and growth have fundamentally transformed the way jobs are structured in today’s world. The rapid evolution of roles and functions due to AI’s emergence has compelled employees to adapt to the changing job landscape by acquiring the necessary skills. This trend is particularly pronounced in fast-growing economies like Malaysia, where digital transformation is progressing rapidly. As international investors explore business prospects within the country, HR leaders are faced with the challenge of enhancing their talent strategies to safeguard their talent pools for the future.

The discussion, skillfully moderated by Vikrant Khanna from Darwinbox, featured valuable insights from prominent leaders, including Esther Loo from Malaysia Airlines, Rajeswary Tamil Arasu from Pos Malaysia Berhad, Wong Eng Su from Preferred Logistics Solutions, Sharon Dorairaj from Alliance Bank Malaysia Berhad, Sharon Chiew from LexisNexis, and others. The focus of the conversation was on how organizations can reshape their talent functions to adapt to the demands of AI integration and capitalize on its potential.

Key takeaways from the discussion included:

  1. Relevance of Skills: In today’s competitive market, an organization’s success is determined by its ability to innovate rather than its speed of operation. This emphasizes the importance of having the right capabilities in the workforce. HR leaders must focus on retaining talents with the right skills and fostering a strong connection between employees and the organization. As technology skills evolve rapidly, it’s crucial to build competency and identify necessary skill sets to incorporate global digital knowledge.
  2. Effective Hiring Strategy: Micro policies can provide operational efficiency by helping HR teams identify necessary capabilities within the workforce. Future-proofing the workforce involves challenges like reskilling existing talents and choosing the right talent acquisition approach. Tech-savvy HR professionals are essential to grasp the growth in HR technology, including AI screening mechanisms that streamline the hiring process.
  3. Empowerment and Productivity: Employee empowerment entails providing the right support, transparency, trust, and empathy. This approach encourages employees to explore new opportunities, projects, and personal growth. Empowerment is key to fostering an empathetic culture and promoting career development.

In summary, a resilient talent strategy in the AI age revolves around nurturing skills, seamless hiring, and empowering employees. The roundtable leaders emphasized that a dynamic approach to talent strategies is crucial for organizations to thrive in the AI-driven future.

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