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We introduce HyperCLOVA X, a family of large language models (LLMs) tailored to the Korean language and culture, along with competitive capabilities in English, math, and coding. HyperCLOVA X was trained on a balanced mix of Korean,…

Computation and Language · Computer Science 2024-04-16 Kang Min Yoo , Jaegeun Han , Sookyo In , Heewon Jeon , Jisu Jeong , Jaewook Kang , Hyunwook Kim , Kyung-Min Kim , Munhyong Kim , Sungju Kim , Donghyun Kwak , Hanock Kwak , Se Jung Kwon , Bado Lee , Dongsoo Lee , Gichang Lee , Jooho Lee , Baeseong Park , Seongjin Shin , Joonsang Yu , Seolki Baek , Sumin Byeon , Eungsup Cho , Dooseok Choe , Jeesung Han , Youngkyun Jin , Hyein Jun , Jaeseung Jung , Chanwoong Kim , Jinhong Kim , Jinuk Kim , Dokyeong Lee , Dongwook Park , Jeong Min Sohn , Sujung Han , Jiae Heo , Sungju Hong , Mina Jeon , Hyunhoon Jung , Jungeun Jung , Wangkyo Jung , Chungjoon Kim , Hyeri Kim , Jonghyun Kim , Min Young Kim , Soeun Lee , Joonhee Park , Jieun Shin , Sojin Yang , Jungsoon Yoon , Hwaran Lee , Sanghwan Bae , Jeehwan Cha , Karl Gylleus , Donghoon Ham , Mihak Hong , Youngki Hong , Yunki Hong , Dahyun Jang , Hyojun Jeon , Yujin Jeon , Yeji Jeong , Myunggeun Ji , Yeguk Jin , Chansong Jo , Shinyoung Joo , Seunghwan Jung , Adrian Jungmyung Kim , Byoung Hoon Kim , Hyomin Kim , Jungwhan Kim , Minkyoung Kim , Minseung Kim , Sungdong Kim , Yonghee Kim , Youngjun Kim , Youngkwan Kim , Donghyeon Ko , Dughyun Lee , Ha Young Lee , Jaehong Lee , Jieun Lee , Jonghyun Lee , Jongjin Lee , Min Young Lee , Yehbin Lee , Taehong Min , Yuri Min , Kiyoon Moon , Hyangnam Oh , Jaesun Park , Kyuyon Park , Younghun Park , Hanbae Seo , Seunghyun Seo , Mihyun Sim , Gyubin Son , Matt Yeo , Kyung Hoon Yeom , Wonjoon Yoo , Myungin You , Doheon Ahn , Homin Ahn , Joohee Ahn , Seongmin Ahn , Chanwoo An , Hyeryun An , Junho An , Sang-Min An , Boram Byun , Eunbin Byun , Jongho Cha , Minji Chang , Seunggyu Chang , Haesong Cho , Youngdo Cho , Dalnim Choi , Daseul Choi , Hyoseok Choi , Minseong Choi , Sangho Choi , Seongjae Choi , Wooyong Choi , Sewhan Chun , Dong Young Go , Chiheon Ham , Danbi Han , Jaemin Han , Moonyoung Hong , Sung Bum Hong , Dong-Hyun Hwang , Seongchan Hwang , Jinbae Im , Hyuk Jin Jang , Jaehyung Jang , Jaeni Jang , Sihyeon Jang , Sungwon Jang , Joonha Jeon , Daun Jeong , Joonhyun Jeong , Kyeongseok Jeong , Mini Jeong , Sol Jin , Hanbyeol Jo , Hanju Jo , Minjung Jo , Chaeyoon Jung , Hyungsik Jung , Jaeuk Jung , Ju Hwan Jung , Kwangsun Jung , Seungjae Jung , Soonwon Ka , Donghan Kang , Soyoung Kang , Taeho Kil , Areum Kim , Beomyoung Kim , Byeongwook Kim , Daehee Kim , Dong-Gyun Kim , Donggook Kim , Donghyun Kim , Euna Kim , Eunchul Kim , Geewook Kim , Gyu Ri Kim , Hanbyul Kim , Heesu Kim , Isaac Kim , Jeonghoon Kim , Jihye Kim , Joonghoon Kim , Minjae Kim , Minsub Kim , Pil Hwan Kim , Sammy Kim , Seokhun Kim , Seonghyeon Kim , Soojin Kim , Soong Kim , Soyoon Kim , Sunyoung Kim , Taeho Kim , Wonho Kim , Yoonsik Kim , You Jin Kim , Yuri Kim , Beomseok Kwon , Ohsung Kwon , Yoo-Hwan Kwon , Anna Lee , Byungwook Lee , Changho Lee , Daun Lee , Dongjae Lee , Ha-Ram Lee , Hodong Lee , Hwiyeong Lee , Hyunmi Lee , Injae Lee , Jaeung Lee , Jeongsang Lee , Jisoo Lee , Jongsoo Lee , Joongjae Lee , Juhan Lee , Jung Hyun Lee , Junghoon Lee , Junwoo Lee , Se Yun Lee , Sujin Lee , Sungjae Lee , Sungwoo Lee , Wonjae Lee , Zoo Hyun Lee , Jong Kun Lim , Kun Lim , Taemin Lim , Nuri Na , Jeongyeon Nam , Kyeong-Min Nam , Yeonseog Noh , Biro Oh , Jung-Sik Oh , Solgil Oh , Yeontaek Oh , Boyoun Park , Cheonbok Park , Dongju Park , Hyeonjin Park , Hyun Tae Park , Hyunjung Park , Jihye Park , Jooseok Park , Junghwan Park , Jungsoo Park , Miru Park , Sang Hee Park , Seunghyun Park , Soyoung Park , Taerim Park , Wonkyeong Park , Hyunjoon Ryu , Jeonghun Ryu , Nahyeon Ryu , Soonshin Seo , Suk Min Seo , Yoonjeong Shim , Kyuyong Shin , Wonkwang Shin , Hyun Sim , Woongseob Sim , Hyejin Soh , Bokyong Son , Hyunjun Son , Seulah Son , Chi-Yun Song , Chiyoung Song , Ka Yeon Song , Minchul Song , Seungmin Song , Jisung Wang , Yonggoo Yeo , Myeong Yeon Yi , Moon Bin Yim , Taehwan Yoo , Youngjoon Yoo , Sungmin Yoon , Young Jin Yoon , Hangyeol Yu , Ui Seon Yu , Xingdong Zuo , Jeongin Bae , Joungeun Bae , Hyunsoo Cho , Seonghyun Cho , Yongjin Cho , Taekyoon Choi , Yera Choi , Jiwan Chung , Zhenghui Han , Byeongho Heo , Euisuk Hong , Taebaek Hwang , Seonyeol Im , Sumin Jegal , Sumin Jeon , Yelim Jeong , Yonghyun Jeong , Can Jiang , Juyong Jiang , Jiho Jin , Ara Jo , Younghyun Jo , Hoyoun Jung , Juyoung Jung , Seunghyeong Kang , Dae Hee Kim , Ginam Kim , Hangyeol Kim , Heeseung Kim , Hyojin Kim , Hyojun Kim , Hyun-Ah Kim , Jeehye Kim , Jin-Hwa Kim , Jiseon Kim , Jonghak Kim , Jung Yoon Kim , Rak Yeong Kim , Seongjin Kim , Seoyoon Kim , Sewon Kim , Sooyoung Kim , Sukyoung Kim , Taeyong Kim , Naeun Ko , Bonseung Koo , Heeyoung Kwak , Haena Kwon , Youngjin Kwon , Boram Lee , Bruce W. Lee , Dagyeong Lee , Erin Lee , Euijin Lee , Ha Gyeong Lee , Hyojin Lee , Hyunjeong Lee , Jeeyoon Lee , Jeonghyun Lee , Jongheok Lee , Joonhyung Lee , Junhyuk Lee , Mingu Lee , Nayeon Lee , Sangkyu Lee , Se Young Lee , Seulgi Lee , Seung Jin Lee , Suhyeon Lee , Yeonjae Lee , Yesol Lee , Youngbeom Lee , Yujin Lee , Shaodong Li , Tianyu Liu , Seong-Eun Moon , Taehong Moon , Max-Lasse Nihlenramstroem , Wonseok Oh , Yuri Oh , Hongbeen Park , Hyekyung Park , Jaeho Park , Nohil Park , Sangjin Park , Jiwon Ryu , Miru Ryu , Simo Ryu , Ahreum Seo , Hee Seo , Kangdeok Seo , Jamin Shin , Seungyoun Shin , Heetae Sin , Jiangping Wang , Lei Wang , Ning Xiang , Longxiang Xiao , Jing Xu , Seonyeong Yi , Haanju Yoo , Haneul Yoo , Hwanhee Yoo , Liang Yu , Youngjae Yu , Weijie Yuan , Bo Zeng , Qian Zhou , Kyunghyun Cho , Jung-Woo Ha , Joonsuk Park , Jihyun Hwang , Hyoung Jo Kwon , Soonyong Kwon , Jungyeon Lee , Seungho Lee , Seonghyeon Lim , Hyunkyung Noh , Seungho Choi , Sang-Woo Lee , Jung Hwa Lim , Nako Sung

In this report, we present HyperCLOVA X 32B Think, a vision-language model designed with particular emphasis on reasoning within the Korean linguistic and cultural context, as well as agentic ability. HyperCLOVA X 32B Think is pre-trained…

Computer Vision and Pattern Recognition · Computer Science 2026-01-08 NAVER Cloud HyperCLOVA X Team

GPT-3 shows remarkable in-context learning ability of large-scale language models (LMs) trained on hundreds of billion scale data. Here we address some remaining issues less reported by the GPT-3 paper, such as a non-English LM, the…

Recent frontier models employ long chain-of-thought reasoning to explore solution spaces in context and achieve stonger performance. While many works study distillation to build smaller yet capable models, most focus on English and little…

We introduce A.X K1, a 519B-parameter Mixture-of-Experts (MoE) language model trained from scratch. Our design leverages scaling laws to optimize training configurations and vocabulary size under fixed computational budgets. A.X K1 is…

This work presents the first large-scale investigation into constructing a fully open bilingual large language model (LLM) for a non-English language, specifically Korean, trained predominantly on synthetic data. We introduce KORMo-10B, a…

Computation and Language · Computer Science 2025-10-13 Minjun Kim , Hyeonseok Lim , Hangyeol Yoo , Inho Won , Seungwoo Song , Minkyung Cho , Junhun Yuk , Changsu Choi , Dongjae Shin , Huige Lee , Hoyun Song , Alice Oh , Kyungtae Lim

In this report, we introduce Qwen2.5, a comprehensive series of large language models (LLMs) designed to meet diverse needs. Compared to previous iterations, Qwen 2.5 has been significantly improved during both the pre-training and…

We introduce Xmodel-LM, a compact and efficient 1.1B language model pre-trained on around 2 trillion tokens. Trained on our self-built dataset (Xdata), which balances Chinese and English corpora based on downstream task optimization,…

Computation and Language · Computer Science 2024-11-20 Yichuan Wang , Yang Liu , Yu Yan , Qun Wang , Xucheng Huang , Ling Jiang

We present a two-stage fine-tuning approach to make the large language model Qwen3 14B "think" natively in Korean. In the first stage, supervised fine-tuning (SFT) on a high-quality Korean reasoning dataset establishes a strong foundation…

Computation and Language · Computer Science 2025-08-15 Jungyup Lee , Jemin Kim , Sang Park , SeungJae Lee

We introduce Trillion-7B, the most token-efficient Korean-centric multilingual LLM available. Our novel Cross-lingual Document Attention (XLDA) mechanism enables highly efficient and effective knowledge transfer from English to target…

Computation and Language · Computer Science 2025-04-23 Sungjun Han , Juyoung Suk , Suyeong An , Hyungguk Kim , Kyuseok Kim , Wonsuk Yang , Seungtaek Choi , Jamin Shin

This technical report introduces EXAONE 4.5, the first open-weight vision language model released by LG AI Research. EXAONE 4.5 is architected by integrating a dedicated visual encoder into the existing EXAONE 4.0 framework, enabling native…

The field of Natural Language Processing (NLP) has seen significant advancements with the development of Large Language Models (LLMs). However, much of this research remains focused on English, often overlooking low-resource languages like…

Computation and Language · Computer Science 2024-08-22 Anh-Dung Vo , Minseong Jung , Wonbeen Lee , Daewoo Choi

The impressive development of large language models (LLMs) is expanding into the realm of large multimodal models (LMMs), which incorporate multiple types of data beyond text. However, the nature of multimodal models leads to significant…

Computation and Language · Computer Science 2024-08-05 Dongjae Shin , Hyeonseok Lim , Inho Won , Changsu Choi , Minjun Kim , Seungwoo Song , Hangyeol Yoo , Sangmin Kim , Kyungtae Lim

We introduce QwenLong-L1.5, a model that achieves superior long-context reasoning capabilities through systematic post-training innovations. The key technical breakthroughs of QwenLong-L1.5 are as follows: (1) Long-Context Data Synthesis…

Large language models (LLMs) use pretraining to predict the subsequent word; however, their expansion requires significant computing resources. Numerous big tech companies and research institutes have developed multilingual LLMs (MLLMs) to…

Large language models (LLMs) demonstrate exceptional performance on complex reasoning tasks. However, despite their strong reasoning capabilities in high-resource languages (e.g., English and Chinese), a significant performance gap persists…

Computation and Language · Computer Science 2025-02-03 Hyunwoo Ko , Guijin Son , Dasol Choi

Xmodel-2 is a 1.2-billion-parameter large language model designed specifically for reasoning tasks. Its architecture enables different model scales to share a unified set of hyperparameters, allowing for extensive experimentation on smaller…

Artificial Intelligence · Computer Science 2024-12-30 Wang Qun , Liu Yang , Lin Qingquan , Qu Zhijiu , Jiang Ling

Large language models (LLMs) have recently achieved significant advances in reasoning and demonstrated their advantages in solving challenging problems. Yet, their effectiveness in the semiconductor display industry remains limited due to a…

This study systematically evaluated the mathematical reasoning capabilities of Large Language Models (LLMs) using the 2026 Korean College Scholastic Ability Test (CSAT) Mathematics section, ensuring a completely contamination-free…

Computation and Language · Computer Science 2025-12-02 Goun Pyeon , Inbum Heo , Jeesu Jung , Taewook Hwang , Hyuk Namgoong , Hyein Seo , Yerim Han , Eunbin Kim , Hyeonseok Kang , Sangkeun Jung
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