CLCVMar 13

Adaptive Vision-Language Model Routing for Computer Use Agents

arXiv:2603.1282393.13 citationsHas Code
Predicted impact top 19% in CL · last 90 daysOriginality Incremental advance
AI Analysis

This addresses efficiency and cost issues for developers and users of CUAs by optimizing model routing, though it is incremental as it builds on existing VLM and CUA frameworks.

The paper tackles the problem of inefficient model selection in Computer Use Agents (CUAs) by proposing Adaptive VLM Routing (AVR), which routes actions to the cheapest Vision-Language Model that meets a reliability threshold, resulting in up to 78% cost reduction while maintaining within 2 percentage points of a large-model baseline.

Computer Use Agents (CUAs) translate natural-language instructions into Graphical User Interface (GUI) actions such as clicks, keystrokes, and scrolls by relying on a Vision-Language Model (VLM) to interpret screenshots and predict grounded tool calls. However, grounding accuracy varies dramatically across VLMs, while current CUA systems typically route every action to a single fixed model regardless of difficulty. We propose \textbf{Adaptive VLM Routing} (AVR), a framework that inserts a lightweight semantic routing layer between the CUA orchestrator and a pool of VLMs. For each tool call, AVR estimates action difficulty from multimodal embeddings, probes a small VLM to measure confidence, and routes the action to the cheapest model whose predicted accuracy satisfies a target reliability threshold. For \textit{warm} agents with memory of prior UI interactions, retrieved context further narrows the capability gap between small and large models, allowing many actions to be handled without escalation. We formalize routing as a cost--accuracy trade-off, derive a threshold-based policy for model selection, and evaluate AVR using ScreenSpot-Pro grounding data together with the OpenClaw agent routing benchmark. Across these settings, AVR projects inference cost reductions of up to 78\% while staying within 2 percentage points of an all-large-model baseline. When combined with the Visual Confused Deputy guardrail, AVR also escalates high-risk actions directly to the strongest available model, unifying efficiency and safety within a single routing framework. Materials are also provided Model, benchmark, and code: https://github.com/vllm-project/semantic-router.

Foundations

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