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Main Authors: Jiang, Linxi, Xi, Rui, Liu, Zhijie, Chen, Shuo, Lin, Zhiqiang, Nath, Suman
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.17245
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author Jiang, Linxi
Xi, Rui
Liu, Zhijie
Chen, Shuo
Lin, Zhiqiang
Nath, Suman
author_facet Jiang, Linxi
Xi, Rui
Liu, Zhijie
Chen, Shuo
Lin, Zhiqiang
Nath, Suman
contents The Web is evolving from a medium that humans browse to an environment where software agents act on behalf of users. Advances in large language models (LLMs) make natural language a practical interface for goal-directed tasks, yet most current web agents operate on low-level primitives such as clicks and keystrokes. These operations are brittle, inefficient, and difficult to verify. Complementing content-oriented efforts such as NLWeb's semantic layer for retrieval, we argue that the agentic web also requires a semantic layer for web actions. We propose \textbf{Web Verbs}, a web-scale set of typed, semantically documented functions that expose site capabilities through a uniform interface, whether implemented through APIs or robust client-side workflows. These verbs serve as stable and composable units that agents can discover, select, and synthesize into concise programs. This abstraction unifies API-based and browser-based paradigms, enabling LLMs to synthesize reliable and auditable workflows with explicit control and data flow. Verbs can carry preconditions, postconditions, policy tags, and logging support, which improves \textbf{reliability} by providing stable interfaces, \textbf{efficiency} by reducing dozens of steps into a few function calls, and \textbf{verifiability} through typed contracts and checkable traces. We present our vision, a proof-of-concept implementation, and representative case studies that demonstrate concise and robust execution compared to existing agents. Finally, we outline a roadmap for standardization to make verbs deployable and trustworthy at web scale.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17245
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Web Verbs: Typed Abstractions for Reliable Task Composition on the Agentic Web
Jiang, Linxi
Xi, Rui
Liu, Zhijie
Chen, Shuo
Lin, Zhiqiang
Nath, Suman
Artificial Intelligence
The Web is evolving from a medium that humans browse to an environment where software agents act on behalf of users. Advances in large language models (LLMs) make natural language a practical interface for goal-directed tasks, yet most current web agents operate on low-level primitives such as clicks and keystrokes. These operations are brittle, inefficient, and difficult to verify. Complementing content-oriented efforts such as NLWeb's semantic layer for retrieval, we argue that the agentic web also requires a semantic layer for web actions. We propose \textbf{Web Verbs}, a web-scale set of typed, semantically documented functions that expose site capabilities through a uniform interface, whether implemented through APIs or robust client-side workflows. These verbs serve as stable and composable units that agents can discover, select, and synthesize into concise programs. This abstraction unifies API-based and browser-based paradigms, enabling LLMs to synthesize reliable and auditable workflows with explicit control and data flow. Verbs can carry preconditions, postconditions, policy tags, and logging support, which improves \textbf{reliability} by providing stable interfaces, \textbf{efficiency} by reducing dozens of steps into a few function calls, and \textbf{verifiability} through typed contracts and checkable traces. We present our vision, a proof-of-concept implementation, and representative case studies that demonstrate concise and robust execution compared to existing agents. Finally, we outline a roadmap for standardization to make verbs deployable and trustworthy at web scale.
title Web Verbs: Typed Abstractions for Reliable Task Composition on the Agentic Web
topic Artificial Intelligence
url https://arxiv.org/abs/2602.17245