Back to Search Start Over

NVILA: Efficient Frontier Visual Language Models

Authors :
Liu, Zhijian
Zhu, Ligeng
Shi, Baifeng
Zhang, Zhuoyang
Lou, Yuming
Yang, Shang
Xi, Haocheng
Cao, Shiyi
Gu, Yuxian
Li, Dacheng
Li, Xiuyu
Fang, Yunhao
Chen, Yukang
Hsieh, Cheng-Yu
Huang, De-An
Cheng, An-Chieh
Nath, Vishwesh
Hu, Jinyi
Liu, Sifei
Krishna, Ranjay
Xu, Daguang
Wang, Xiaolong
Molchanov, Pavlo
Kautz, Jan
Yin, Hongxu
Han, Song
Lu, Yao
Publication Year :
2024

Abstract

Visual language models (VLMs) have made significant advances in accuracy in recent years. However, their efficiency has received much less attention. This paper introduces NVILA, a family of open VLMs designed to optimize both efficiency and accuracy. Building on top of VILA, we improve its model architecture by first scaling up the spatial and temporal resolutions, and then compressing visual tokens. This "scale-then-compress" approach enables NVILA to efficiently process high-resolution images and long videos. We also conduct a systematic investigation to enhance the efficiency of NVILA throughout its entire lifecycle, from training and fine-tuning to deployment. NVILA matches or surpasses the accuracy of many leading open and proprietary VLMs across a wide range of image and video benchmarks. At the same time, it reduces training costs by 4.5X, fine-tuning memory usage by 3.4X, pre-filling latency by 1.6-2.2X, and decoding latency by 1.2-2.8X. We will soon make our code and models available to facilitate reproducibility.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.04468
Document Type :
Working Paper