PersianLLaMA: Towards Building First Persian Large Language Model (2312.15713v1)
Abstract: Despite the widespread use of the Persian language by millions globally, limited efforts have been made in natural language processing for this language. The use of LLMs as effective tools in various natural language processing tasks typically requires extensive textual data and robust hardware resources. Consequently, the scarcity of Persian textual data and the unavailability of powerful hardware resources have hindered the development of LLMs for Persian. This paper introduces the first large Persian LLM, named PersianLLaMA, trained on a collection of Persian texts and datasets. This foundational model comes in two versions, with 7 and 13 billion parameters, trained on formal and colloquial Persian texts using two different approaches. PersianLLaMA has been evaluated for natural language generation tasks based on the latest evaluation methods, namely using larger LLMs, and for natural language understanding tasks based on automated machine metrics. The results indicate that PersianLLaMA significantly outperforms its competitors in both understanding and generating Persian text. PersianLLaMA marks an important step in the development of Persian natural language processing and can be a valuable resource for the Persian-speaking community. This LLM can be used for various natural language processing tasks, especially text generation like chatbots, question-answering, machine translation, and text summarization
- Mohammad Amin Abbasi (4 papers)
- Arash Ghafouri (4 papers)
- Mahdi Firouzmandi (3 papers)
- Hassan Naderi (4 papers)
- Behrouz Minaei Bidgoli (7 papers)