Revolutionizing Cryptocurrency Operations: The Role of Domain-Specific Large Language Models (LLMs)

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© 2024 by IJCTT Journal
Volume-72 Issue-6
Year of Publication : 2024
Authors : Hao Qin
DOI :  10.14445/22312803/IJCTT-V72I6P114

How to Cite?

Hao Qin, "Revolutionizing Cryptocurrency Operations: The Role of Domain-Specific Large Language Models (LLMs) ," International Journal of Computer Trends and Technology, vol. 72, no. 6, pp. 101-113, 2024. Crossref, https://doi.org/10.14445/22312803/IJCTT-V72I6P114

Abstract
The rapid dynamics of cryptocurrency markets and the specific convolution of blockchain technology involve both challenges and opportunities of implementing Large Language Models in this area. In the present research, we consider the process of fine-tuning and applying LLMs in the cryptocurrency sector to meet its specific needs. Through the comprehensive analysis of the dataset rationale and model’s preparation, as well as multiple practical implications in cryptocurrency workflows, it is possible to demonstrate that LLMs significantly contribute to cryptocurrency analytics, fraud identification, smart contract processing, and customer interaction potential. The paper also addresses the issues of the cryptocurrency sector, such as security, privacy, and regulation, and proposes recommendations for further research and practical implementation.

Keywords
Artificial Intelligence, Computer science and engineering, Data and information systems, Data and web mining, Scientific and engineering computing.

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