Characterizing Vision-Language-Action Models across XPUs: Constraints and Acceleration for On-Robot Deployment
Kaijun Zhou, Qiwei Chen, Da Peng, Zhiyang Li, Xijun Li + 1 more
TLDR
This paper optimizes Vision-Language-Action (VLA) models for efficient on-robot deployment by characterizing performance across diverse edge hardware.
Key contributions
- Systematic analysis of VLA models on heterogeneous edge accelerators (XPUs) for cost, energy, and time.
- Identified a two-phase VLA inference pattern: compute-bound VLM backbone and memory-bound Action Expert.
- Introduced DP-Cache and V-AEFusion, achieving up to 6x speedup on edge NPUs for VLA deployment.
Why it matters
This paper solves the bottleneck of deploying VLA models on resource-constrained robots. It systematically analyzes hardware and proposes optimizations, enabling efficient, cost-time-energy control vital for practical generalist robotics.
Original Abstract
Vision-Language-Action (VLA) models are promising for generalist robot control, but on-robot deployment is bottlenecked by real-time inference under tight cost and energy budgets. Most prior evaluations rely on desktop-grade GPUs, obscuring the trade-offs and opportunities offered by heterogeneous edge accelerators (GPUs/XPUs/NPUs). We present a systematic analysis for low-cost VLA deployment via model-hardware co-characterization. First, we build a cross-accelerator leaderboard and evaluate model-hardware pairs under CET (Cost, Energy, Time), showing that right-sized edge devices can be more cost-/energy-efficient than flagship GPUs while meeting control-rate constraints. Second, using in-depth profiling, we uncover a consistent two-phase inference pattern: a compute-bound VLM backbone followed by a memory-bound Action Expert, which induces phase-dependent underutilization and hardware inefficiency. Finally, guided by these insights, we propose DP-Cache and V-AEFusion to reduce diffusion redundancy and enable asynchronous pipeline parallelism, achieving up to 2.9x speedup on GPUs and 6x on edge NPUs with only marginal success degradation. The example leaderboard website is available at: https://vla-leaderboard-01.vercel.app/.
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