This paper illustrates the architecture and training of Unipa-GPT, a Large Language Model based chatbot developed for assisting students in choosing a bachelor/master degree course at the University of Palermo. Unipa-GPT relies on gpt-3.5-turbo, it was presented in the context of the European Researchers' Night SHARPER event. In our experiments we adopted both the Retrieval Augmented Generation (RAG) approach and fine-tuning to develop the system. The whole architecture of Unipa-GPT is presented, both the RAG and the fine-tuned systems are compared, and a brief discussion on their performance is reported.
Siragusa I., Pirrone R. (2023). Conditioning Chat-GPT for Information Retrieval: The Unipa-GPT Case Study. In E. Bassignana, D. Brunato, M. Polignano, A. Ramponi (a cura di), CEUR Workshop Proceedings. CEUR-WS.
Conditioning Chat-GPT for Information Retrieval: The Unipa-GPT Case Study
Siragusa I.
Primo
;Pirrone R.Secondo
2023-11-01
Abstract
This paper illustrates the architecture and training of Unipa-GPT, a Large Language Model based chatbot developed for assisting students in choosing a bachelor/master degree course at the University of Palermo. Unipa-GPT relies on gpt-3.5-turbo, it was presented in the context of the European Researchers' Night SHARPER event. In our experiments we adopted both the Retrieval Augmented Generation (RAG) approach and fine-tuning to develop the system. The whole architecture of Unipa-GPT is presented, both the RAG and the fine-tuned systems are compared, and a brief discussion on their performance is reported.File | Dimensione | Formato | |
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