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Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models

Publication ,  Conference
Wei, C; Guo, C; Zhang, J; Shan, H; Xu, Y; Zhang, Z; Liu, Y; Wang, Q; Zhou, C; Li, HH; Chen, Y
Published in: Proceedings International Symposium on High Performance Computer Architecture
January 1, 2026

Vision-Language Models (VLMs) have demonstrated strong performance on tasks such as video captioning and visual question answering. However, their growing scale and video-level inputs lead to significant computational and memory overhead, posing challenges for real-time deployment on hardware accelerators. While prior work attempts to reduce redundancy via token pruning or merging, these methods typically operate at coarse granularity and incur high runtime overhead due to global token-level operations. In this study, we propose Focus, a Streaming Concentration Architecture that efficiently accelerates VLM inference through progressive, fine-grained redundancy elimination. Focus introduces a multilevel concentration paradigm that hierarchically compresses vision-language inputs at three levels: (1) semantic-guided token pruning based on textual prompts, (2) spatial-temporal blocklevel concentration using localized comparisons, and (3) vectorlevel redundancy removal via motion-aware matching. All concentration steps are tightly co-designed with the architecture to support streaming-friendly, on-chip execution. Focus leverages GEMM tiling, convolution-style layout, and cross-modal attention to minimize off-chip access while enabling high throughput. Implemented as a modular unit within a systolic-array accelerator, Focus achieves 2.4 × speedup and 3.3 × reduction in energy, significantly outperforming state-of-the-art accelerator in both performance and energy efficiency. Full-stack implementation of Focus is open-sourced at https://github.com/dubcyfor3/Focus.

Duke Scholars

Published In

Proceedings International Symposium on High Performance Computer Architecture

DOI

ISSN

1530-0897

Publication Date

January 1, 2026
 

Citation

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Wei, C., Guo, C., Zhang, J., Shan, H., Xu, Y., Zhang, Z., … Chen, Y. (2026). Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models. In Proceedings International Symposium on High Performance Computer Architecture. https://doi.org/10.1109/HPCA68181.2026.11408525
Wei, C., C. Guo, J. Zhang, H. Shan, Y. Xu, Z. Zhang, Y. Liu, et al. “Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models.” In Proceedings International Symposium on High Performance Computer Architecture, 2026. https://doi.org/10.1109/HPCA68181.2026.11408525.
Wei C, Guo C, Zhang J, Shan H, Xu Y, Zhang Z, et al. Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models. In: Proceedings International Symposium on High Performance Computer Architecture. 2026.
Wei, C., et al. “Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models.” Proceedings International Symposium on High Performance Computer Architecture, 2026. Scopus, doi:10.1109/HPCA68181.2026.11408525.
Wei C, Guo C, Zhang J, Shan H, Xu Y, Zhang Z, Liu Y, Wang Q, Zhou C, Li HH, Chen Y. Focus: A Streaming Concentration Architecture for Efficient Vision-Language Models. Proceedings International Symposium on High Performance Computer Architecture. 2026.

Published In

Proceedings International Symposium on High Performance Computer Architecture

DOI

ISSN

1530-0897

Publication Date

January 1, 2026