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arxiv: 2309.06126 · v1 · pith:L42VFWM4 · submitted 2023-09-12 · astro-ph.IM · astro-ph.CO· astro-ph.GA· astro-ph.HE· cs.CL· cs.LG

AstroLLaMA: Towards Specialized Foundation Models in Astronomy

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classification astro-ph.IM astro-ph.COastro-ph.GAastro-ph.HEcs.CLcs.LG
keywords astrollamaastronomymodelmodelsfoundationlanguagellama-2specialized
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Large language models excel in many human-language tasks but often falter in highly specialized domains like scholarly astronomy. To bridge this gap, we introduce AstroLLaMA, a 7-billion-parameter model fine-tuned from LLaMA-2 using over 300,000 astronomy abstracts from arXiv. Optimized for traditional causal language modeling, AstroLLaMA achieves a 30% lower perplexity than Llama-2, showing marked domain adaptation. Our model generates more insightful and scientifically relevant text completions and embedding extraction than state-of-the-arts foundation models despite having significantly fewer parameters. AstroLLaMA serves as a robust, domain-specific model with broad fine-tuning potential. Its public release aims to spur astronomy-focused research, including automatic paper summarization and conversational agent development.

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