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AUTHOR(S):

Maikel Leon

 

TITLE

Artificial Intelligence: Evolution, Challenges, Future and Governance

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ABSTRACT

Artificial Intelligence (AI) has advanced far beyond its early days of symbolic reasoning into an era driven by deep neural networks and generative models. These techniques now power medical diagnostics, financial risk assessment, autonomous vehicles, and mass-scale content generation. Alongside these breakthroughs, concerns regarding data privacy, algorithmic bias, misinformation, and environmental sustainability have grown more urgent. This paper traces the evolution of AI from hand-crafted rule systems to large language models and generative architectures, examining ethical and societal implications, including biases in training data and deepfake disinformation. We explain how the Massive Multitask Language Understanding benchmark highlights the increasing depth of AI language capabilities. The discussion then pivots to governance frameworks, focusing on audit mechanisms, embedded ethical considerations, and international policy efforts to ensure fairness, transparency, and equitable access. We also explore ecological solutions, such as energy-efficient hardware and carbon-neutral data centers. Future trends like neuromorphic computing, hybrid AI, and quantum-based approaches are opportunities and challenges for responsible AI development. This paper underscores the critical need for proactive, inclusive governance to align AI progress with societal well-being and global sustainability.

KEYWORDS

AI bias and ethics, ML transparency, Massive Multitask Language Understanding benchmark

 

Cite this paper

Maikel Leon. (2025) Artificial Intelligence: Evolution, Challenges, Future and Governance. International Journal of Computers, 10, 81-93

 

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