Strategic Framework for Human-Centric AI Governance: Navigating Ethical, Educational, and Societal Challenges
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Keywords

Artificial Intelligence
Human-Centered Design
Transparency
Explainability
Ethical Governance
Accountability
Inclusivity
Diversity
Lifelong Learning, Adaptability
Environmental Sustainability
Digital Divide
Technological Revolution
Machine Learning
Automation

How to Cite

Strategic Framework for Human-Centric AI Governance: Navigating Ethical, Educational, and Societal Challenges. (2024). International Journal of Latest Technology in Engineering Management & Applied Science, 13(8), 132-141. https://doi.org/10.51583/IJLTEMAS.2024.130816

Abstract

Abstract: Humanity is at the precipice of a profound transformation, propelled by the rapid evolution of artificial intelligence (AI). Once confined to the realm of science fiction, AI now permeates every aspect of daily life, promising significant changes to our social, economic, and personal spheres. As AI systems continue to advance and surpass human capabilities in various domains, they present unparalleled opportunities as well as formidable challenges. This composition explores the dualistic nature of AI, acknowledging its capacity to either augment or disrupt our existence. By examining AI's current state, potential risks, and ethical considerations, we emphasize the pressing need for a comprehensive framework to govern its development and integration. We propose a multifaceted framework built on five fundamental principles: human centered design, transparency and interpretability, accountability and governance, education and upskilling, and inclusive and equitable access. These principles are designed to ensure that AI systems enhance human capabilities, promote transparency, uphold ethical standards, and provide equitable access to the benefits of technology. Through in-depth case studies, we illustrate the practical application of this framework, showcasing AI's impact across various industries while emphasizing the importance of addressing ethical and societal challenges. This composition calls for a collective effort among governments, corporations, and individuals to navigate the rapid expansion of AI responsibly, fostering a future where AI and humanity coexist harmoniously. The ultimate goal is to harness the potential of AI to revitalize society, ensuring that technological progress elevates human dignity and collective well-being instead of rendering us obsolete.

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