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AcademicGPT: Empowering Academic Research

21 November 2023
Shufa Wei
Xiaolong Xu
Xianbiao Qi
Xi Yin
Jun Xia
Jingyi Ren
Peijun Tang
Yuxiang Zhong
Yihao Chen
Xiaoqin Ren
Yuxin Liang
Liankai Huang
Kai Xie
Weikang Gui
Wei Tan
Shuanglong Sun
Yongquan Hu
Qinxian Liu
Nanjin Li
Chihao Dai
Lihua Wang
Xiaohui Liu
Lei Zhang
Yutao Xie
    LM&MA
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Abstract

Large Language Models (LLMs) have demonstrated exceptional capabilities across various natural language processing tasks. Yet, many of these advanced LLMs are tailored for broad, general-purpose applications. In this technical report, we introduce AcademicGPT, designed specifically to empower academic research. AcademicGPT is a continual training model derived from LLaMA2-70B. Our training corpus mainly consists of academic papers, thesis, content from some academic domain, high-quality Chinese data and others. While it may not be extensive in data scale, AcademicGPT marks our initial venture into a domain-specific GPT tailored for research area. We evaluate AcademicGPT on several established public benchmarks such as MMLU and CEval, as well as on some specialized academic benchmarks like PubMedQA, SCIEval, and our newly-created ComputerScienceQA, to demonstrate its ability from general knowledge ability, to Chinese ability, and to academic ability. Building upon AcademicGPT's foundation model, we also developed several applications catered to the academic area, including General Academic Question Answering, AI-assisted Paper Reading, Paper Review, and AI-assisted Title and Abstract Generation.

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