The rise of Large Language Models (LLMs) has transformed how Natural Language Processing (NLP) and its subdomains are approached. Recent technological advancements have driven this transformation. This study offers researchers a detailed overview of LLMs, comparing them with traditional rule-based systems, statistical techniques, machine learning, neural networks, and the rise of transformer-based architectures. From a wider perspective, language models such as GPT, BERT, T5, PaLM, and LLaMA have facilitated the transformation of entire sectors, including healthcare and business, due to their highly scalable nature. Despite their wide range of applications, LLMs face numerous challenges, such as output biases, limited interpretability, high computational requirements, low granularity, and, most importantly, limited accessibility. This paper highlights modern adaptive learning processes, domain-specific applications, and multimodal learning, along with critical issues such as fairness, ethical deployment, and sustainability. There is a growing need for more effective regulation, the development of multilingual capabilities, and, above all, the creation of general-purpose AI systems to enhance inclusion. This research emphasizes ethical accountability by examining the social implications of advanced AI systems. It further promotes interdisciplinary collaboration to develop AI systems that are ethical, effective, and socially responsible within a clearly defined decision-making framework for research and application.
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Haseeb Javed
Babar Shah
Farman Ali
Journal Of Big Data
Sungkyunkwan University
Zayed University
Kean University
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Javed et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69e9b71b85696592c86eb273 — DOI: https://doi.org/10.1186/s40537-026-01429-1
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