The State-of-art Applications of NLP: Evidence from ChatGPT

Authors

  • Yuming Zhao

DOI:

https://doi.org/10.54097/hset.v49i.8512

Keywords:

Natural Language Processing; OpenAI; ChatGPT; Machine learning.

Abstract

Contemporarily, CharGPT, one of the latest applications of natural language processing (NLP) based on a popular deep learning model developed by OpenAI, has attracted tremendous attention of researchers. On this basis, this study takes NLP as an example to provide a basic introduction to the development history and application of NLP, and lists some models in the development process. These are valuable knowledge that is still used in OpenAI applications. Before in-depth study of the components and models of ChatGPT, this paper also mentioned the basic introduction of chat robots. Accorind to the analysis, it is shown that people are increasingly interested in the use of ChatGPT in various applications, including language translation and question answering. However, it also lists several limitations of ChatGPT, e.g., its tendency to generate biased or inappropriate responses. The future prospects of ChatGPT or similar products are also mentioned later. Moreover, the main findings of the paper and proposes potential avenues for future research are presented. Overall, these results shed light on guiding further exploration of NLP.S.

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Published

21-05-2023

How to Cite

Zhao, Y. (2023). The State-of-art Applications of NLP: Evidence from ChatGPT. Highlights in Science, Engineering and Technology, 49, 237-243. https://doi.org/10.54097/hset.v49i.8512