Reg-GPT : A Conversational AI Model for Enhanced Decision-Making in Regenerative Medicine

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Abstract

Background

As artificial intelligence (AI) continues to transform various aspects of our lives, conversational AI models have become increasingly sophisticated. The development of more accurate and informative language processing assistants has significant implications for numerous fields, including health care, medical service, and research assistance.

Materials and Methods

Reg-GPT™ was developed by the Maharaj Institute of Immune Regenerative Medicine (MIIRM) using a combination of supervised and unsupervised learning techniques. The LLaMa 3.1 model’s parameters were fine-tuned using vast amounts of text data, enabling Reg-GPT™ to learn from its interactions with users.

Results

Our evaluation shows that Reg-GPT™ model performs well in several key areas, including response accuracy, fluency, and engagement. The results highlight the potential benefits of integrating Reg-GPT™ into regenerative medicine (RM) applications.

Conclusion

This article provides a comprehensive introduction to Reg-GPT™, showcasing its capabilities, performance, and potential uses. We believe that Reg-GPT™ has the potential to provide significant value in the RM and Medicare fields.

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