We introduce Kanana, a series of bilingual language models that demonstrate exceeding performance in Korean and competitive performance in English. The computational cost of Kanana is significantly lower than that of state-of-the-art models of similar size. The report details the techniques employed during pre-training to achieve compute-efficient yet competitive models, including high quality data filtering, staged pre-training, depth up-scaling, and pruning and distillation. Furthermore, the report outlines the methodologies utilized during the post-training of the Kanana models, encompassing supervised fine-tuning and preference optimization, aimed at enhancing their capability for seamless interaction with users. Lastly, the report elaborates on plausible approaches used for language model adaptation to specific scenarios, such as embedding, retrieval augmented generation, and function calling. The Kanana model series spans from 2.1B to 32.5B parameters with 2.1B models (base, instruct, embedding) publicly released to promote research on Korean language models.
Kanana: Compute-efficient Bilingual Language Models
We introduce Kanana, a series of bilingual language models that demonstrate exceeding performance in Korean and competitive performance in English.
- Year
- 2025
- Venue
- arXiv 2025
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- 29
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- arxiv.org/abs/2502.18934v2ARXIV-DEFAULT
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29Nayeon KimKanana LLM TeamYunju BakHojin LeeMinho RyuJiyeon HamSeungjae JungDaniel Wontae NamTaegyeong EoDonghun LeeDoohae JungBoseop KimJaesun ParkHyunHo KimHyunwoong KoChangmin LeeKyoung-Woon OnSeulye BaegJunrae ChoSunghee JungJieun KangEungGyun KimEunhwa KimByeongil KoDaniel LeeMinchul LeeMiok LeeShinbok LeeGaeun Seo