AgentClick: A Skill-Based Human-in-the-Loop Review Layer for Terminal AI Agents
Haomin Zhuang, Hanwen Xing, Xiangliang Zhang

TL;DR
AgentClick provides a web-based review layer for terminal AI agents, enhancing user interaction, supervision, and collaboration through a structured UI to improve efficiency and accessibility.
Contribution
It introduces a browser-based interface for terminal AI agents, enabling structured review, intervention, and persistent preferences, especially aiding non-expert users.
Findings
Supports diverse workflows like email revision and plan review.
Enables inspection and intervention in code generation before execution.
Allows remote access and persistent preferences for user convenience.
Abstract
Recent autonomous AI agents such as Codex, and Claude Code have made it increasingly practical for users to delegate complex tasks, including writing emails, executing code, issuing shell commands, and carrying out multi-step plans. However, despite these capabilities, human-agent interaction still largely happens through terminal interfaces or remote text-based channels such as Discord. These interaction modes are often inefficient and unfriendly: long text outputs are difficult to read and review, proposed actions lack clear structure and visual context, and users must express feedback by typing detailed corrections, which is cumbersome and often discourages effective collaboration. As a result, non-expert users in particular face a high barrier to working productively with agents. To address this gap, we present AgentClick, an interactive review layer for terminal-based agents.…
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