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Main Authors: Zhang, Shulai, Xu, Ao, Chen, Quan, Zhao, Han, Cui, Weihao, Zheng, Ningxin, Lin, Haibin, Liu, Xin, Guo, Minyi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.09560
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author Zhang, Shulai
Xu, Ao
Chen, Quan
Zhao, Han
Cui, Weihao
Zheng, Ningxin
Lin, Haibin
Liu, Xin
Guo, Minyi
author_facet Zhang, Shulai
Xu, Ao
Chen, Quan
Zhao, Han
Cui, Weihao
Zheng, Ningxin
Lin, Haibin
Liu, Xin
Guo, Minyi
contents Embodied AI systems operate in dynamic environments, requiring seamless integration of perception and generation modules to process high-frequency input and output demands. Traditional sequential computation patterns, while effective in ensuring accuracy, face significant limitations in achieving the necessary "thinking" frequency for real-world applications. In this work, we present Auras, an algorithm-system co-designed inference framework to optimize the inference frequency of embodied AI agents. Auras disaggregates the perception and generation and provides controlled pipeline parallelism for them to achieve high and stable throughput. Faced with the data staleness problem that appears when the parallelism is increased, Auras establishes a public context for perception and generation to share, thereby promising the accuracy of embodied agents. Experimental results show that Auras improves throughput by 2.54x on average while achieving 102.7% of the original accuracy, demonstrating its efficacy in overcoming the constraints of sequential computation and providing high throughput.
format Preprint
id arxiv_https___arxiv_org_abs_2509_09560
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Boosting Embodied AI Agents through Perception-Generation Disaggregation and Asynchronous Pipeline Execution
Zhang, Shulai
Xu, Ao
Chen, Quan
Zhao, Han
Cui, Weihao
Zheng, Ningxin
Lin, Haibin
Liu, Xin
Guo, Minyi
Artificial Intelligence
Machine Learning
Embodied AI systems operate in dynamic environments, requiring seamless integration of perception and generation modules to process high-frequency input and output demands. Traditional sequential computation patterns, while effective in ensuring accuracy, face significant limitations in achieving the necessary "thinking" frequency for real-world applications. In this work, we present Auras, an algorithm-system co-designed inference framework to optimize the inference frequency of embodied AI agents. Auras disaggregates the perception and generation and provides controlled pipeline parallelism for them to achieve high and stable throughput. Faced with the data staleness problem that appears when the parallelism is increased, Auras establishes a public context for perception and generation to share, thereby promising the accuracy of embodied agents. Experimental results show that Auras improves throughput by 2.54x on average while achieving 102.7% of the original accuracy, demonstrating its efficacy in overcoming the constraints of sequential computation and providing high throughput.
title Boosting Embodied AI Agents through Perception-Generation Disaggregation and Asynchronous Pipeline Execution
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2509.09560