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Autori principali: Zhao, Pu, Akbari, Arash, Shen, Xuan, Kong, Zhenglun, Shen, Yixin, Chang, Sung-En, Rupprecht, Timothy, Lu, Lei, Nan, Enfu, Yang, Changdi, He, Yumei, Shi, Weiyan, Xu, Xingchen, Huang, Yu, Jiang, Wei, Wang, Wei, Chen, Yue, He, Yong, Wang, Yanzhi
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.22208
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author Zhao, Pu
Akbari, Arash
Shen, Xuan
Kong, Zhenglun
Shen, Yixin
Chang, Sung-En
Rupprecht, Timothy
Lu, Lei
Nan, Enfu
Yang, Changdi
He, Yumei
Shi, Weiyan
Xu, Xingchen
Huang, Yu
Jiang, Wei
Wang, Wei
Chen, Yue
He, Yong
Wang, Yanzhi
author_facet Zhao, Pu
Akbari, Arash
Shen, Xuan
Kong, Zhenglun
Shen, Yixin
Chang, Sung-En
Rupprecht, Timothy
Lu, Lei
Nan, Enfu
Yang, Changdi
He, Yumei
Shi, Weiyan
Xu, Xingchen
Huang, Yu
Jiang, Wei
Wang, Wei
Chen, Yue
He, Yong
Wang, Yanzhi
contents Recently, Large Language Models (LLMs) have undergone a significant transformation, marked by a rapid rise in both their popularity and capabilities. Leading this evolution are proprietary LLMs like GPT-4 and GPT-o1, which have captured widespread attention in the AI community due to their remarkable performance and versatility. Simultaneously, open-source LLMs, such as LLaMA and Mistral, have made great contributions to the ever-increasing popularity of LLMs due to the ease to customize and deploy the models across diverse applications. Moxin 7B is introduced as a fully open-source LLM developed in accordance with the Model Openness Framework, which moves beyond the simple sharing of model weights to embrace complete transparency in training, datasets, and implementation detail, thus fostering a more inclusive and collaborative research environment that can sustain a healthy open-source ecosystem. To further equip Moxin with various capabilities in different tasks, we develop three variants based on Moxin, including Moxin-VLM, Moxin-VLA, and Moxin-Chinese, which target the vision-language, vision-language-action, and Chinese capabilities, respectively. Experiments show that our models achieve superior performance in various evaluations. We adopt open-source framework and open data for the training. We release our models, along with the available data and code to derive these models.
format Preprint
id arxiv_https___arxiv_org_abs_2512_22208
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Open-Source Multimodal Moxin Models with Moxin-VLM and Moxin-VLA
Zhao, Pu
Akbari, Arash
Shen, Xuan
Kong, Zhenglun
Shen, Yixin
Chang, Sung-En
Rupprecht, Timothy
Lu, Lei
Nan, Enfu
Yang, Changdi
He, Yumei
Shi, Weiyan
Xu, Xingchen
Huang, Yu
Jiang, Wei
Wang, Wei
Chen, Yue
He, Yong
Wang, Yanzhi
Computation and Language
Computer Vision and Pattern Recognition
Machine Learning
Recently, Large Language Models (LLMs) have undergone a significant transformation, marked by a rapid rise in both their popularity and capabilities. Leading this evolution are proprietary LLMs like GPT-4 and GPT-o1, which have captured widespread attention in the AI community due to their remarkable performance and versatility. Simultaneously, open-source LLMs, such as LLaMA and Mistral, have made great contributions to the ever-increasing popularity of LLMs due to the ease to customize and deploy the models across diverse applications. Moxin 7B is introduced as a fully open-source LLM developed in accordance with the Model Openness Framework, which moves beyond the simple sharing of model weights to embrace complete transparency in training, datasets, and implementation detail, thus fostering a more inclusive and collaborative research environment that can sustain a healthy open-source ecosystem. To further equip Moxin with various capabilities in different tasks, we develop three variants based on Moxin, including Moxin-VLM, Moxin-VLA, and Moxin-Chinese, which target the vision-language, vision-language-action, and Chinese capabilities, respectively. Experiments show that our models achieve superior performance in various evaluations. We adopt open-source framework and open data for the training. We release our models, along with the available data and code to derive these models.
title Open-Source Multimodal Moxin Models with Moxin-VLM and Moxin-VLA
topic Computation and Language
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2512.22208