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AI-driven Natural Language Processing: ChatGPT's Potential and Future Advancements in Generative AI

2024·0 Zitationen
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2024

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Abstract

This research paper delves into the operational mechanisms, strengths, and future potential of ChatGPT, an intelligent chatbot developed by OpenAI. ChatGPT's architecture, rooted in the transformer model, enables it to generate contextually relevant text using attention mechanisms and tokenisation. While excelling in generative capability and versatility, the paper highlights challenges, including context understanding and sensitivity to phrasing, sparking discussions on refinement strategies. The study explores opportunities for efficient, prompt engineering, emphasising tokenization strategies to optimise interactions within ChatGPT's token limits. Future advancements envision enhanced context understanding, reduced sensitivity to phrasing, and ethical considerations, addressing verbosity and response diversity concerns. A comparative analysis with competing models like Google's Bard and Meta's LLaMA provides insights into their architectures, parameters, strengths, weaknesses, and target use cases. The paper concludes by emphasising ChatGPT's transformative impact on AI, shaping a future marked by interdisciplinary applications, ethical considerations, and user-centric design.

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