Advances in LLMs with Focus on Reasoning, Adaptability, Efficiency and Ethics
Asifullah Khan, Muhammad Zaeem Khan, Aleesha Zainab, Saleha Jamshed, Sadia Ahmad, Kaynat Khatib, Faria Bibi, and Abdul Rehman

TL;DR
This survey reviews recent advances in Large Language Models, emphasizing improvements in reasoning, adaptability, efficiency, and ethics, while highlighting challenges like bias and high computational costs.
Contribution
It provides a comprehensive overview of key developments, techniques, and future directions in LLM research, integrating multiple aspects such as multimodal learning and ethical considerations.
Findings
Chain-of-Thought prompting enhances reasoning capabilities.
Mixture-of-Experts architecture improves efficiency and accuracy.
Challenges include high computational costs and biases.
Abstract
This survey paper outlines the key developments in the field of Large Language Models (LLMs), including enhancements to their reasoning skills, adaptability to various tasks, increased computational efficiency, and the ability to make ethical decisions. The techniques that have been most effective in bridging the gap between human and machine communications include the Chain-of-Thought prompting, Instruction Tuning, and Reinforcement Learning from Human Feedback. The improvements in multimodal learning and few-shot or zero-shot techniques have further empowered LLMs to handle complex jobs with minor input. A significant focus is placed on efficiency, detailing scaling strategies, optimization techniques, and the influential Mixture-of-Experts (MoE) architecture, which strategically routes inputs to specialized subnetworks to boost predictive accuracy, while optimizing resource…
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Taxonomy
TopicsOpen Source Software Innovations · Collaboration in agile enterprises
MethodsFocus
