Navigating HR 4.0: Harnessing AI for Ethical and Inclusive HR Transformation †
1. Objectives
2. Methodology
3. Results
4. Implications
5. Originality Value
6. Contribution
- Bridging the AI–HR gap for ethical integration: This point clearly states the study’s role in connecting AI technologies with HR practices in a way that emphasizes ethical considerations.
- Promoting ethical AI in HR through practical tactics: This suggests that the study not only discusses ethical AI but also provides actionable tactics for its implementation in HR settings.
- Fostering inclusive workplaces via user-centric design: Indicates the study’s focus on designing AI tools that are inclusive and centered around the user’s needs, contributing to more equitable workplace environments.
- Providing practical advice for implementation: Highlights the study’s aim to offer direct, actionable guidance for integrating AI into HR operations.
- Providing empirical evidence for practical applicability: Affirms that the study includes real-world evidence supporting the practical use of ethical AI in HR.
- Advocating for cross-disciplinary collaboration: The study encourages collaboration across different fields to enhance AI integration in HR, indicating a holistic approach.
- Encouraging stakeholder engagement: Emphasizes the importance of involving various stakeholders in the AI integration process, ensuring diverse inputs and buy-in.
- Equipping HR for future tech advancements: Prepares HR professionals for future technological developments, ensuring they remain at the forefront of innovation in their field.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Danach, K.; El Dirani, A.; Fayyad-Kazan, H. Navigating HR 4.0: Harnessing AI for Ethical and Inclusive HR Transformation. Proceedings 2024, 101, 18. https://doi.org/10.3390/proceedings2024101018
Danach K, El Dirani A, Fayyad-Kazan H. Navigating HR 4.0: Harnessing AI for Ethical and Inclusive HR Transformation. Proceedings. 2024; 101(1):18. https://doi.org/10.3390/proceedings2024101018
Chicago/Turabian StyleDanach, Kassem, Ali El Dirani, and Hasan Fayyad-Kazan. 2024. "Navigating HR 4.0: Harnessing AI for Ethical and Inclusive HR Transformation" Proceedings 101, no. 1: 18. https://doi.org/10.3390/proceedings2024101018
APA StyleDanach, K., El Dirani, A., & Fayyad-Kazan, H. (2024). Navigating HR 4.0: Harnessing AI for Ethical and Inclusive HR Transformation. Proceedings, 101(1), 18. https://doi.org/10.3390/proceedings2024101018