Core Insights - The current limitations of LLM agents stem from the traditional command-based GUI, which creates inefficiencies and low success rates in task execution [1][3][4] Group 1: Issues with Current GUI - The command-based GUI requires users to navigate through multiple menus and options, making it difficult for LLMs to access application functionalities directly [3][4] - LLMs face challenges in visual recognition and slow response times, which are incompatible with the command-based design of GUIs [4][5] - The cognitive load on LLMs is high as they must manage both strategic planning and detailed operational tasks, leading to increased error rates [4][9] Group 2: Introduction of Declarative Interfaces - The research proposes a shift from command-based to declarative interfaces (GOI), allowing LLMs to focus on high-level task planning while automating the underlying navigation and interaction [4][9][10] - GOI separates strategy from mechanism, enabling LLMs to issue high-level commands without needing to manage the intricate details of GUI navigation [7][9] Group 3: Implementation and Results - GOI operates in two phases: offline modeling to create a UI navigation graph and online execution using simplified declarative commands [12][13] - Experimental results show a significant increase in success rates, with LLMs achieving a success rate of 74% compared to 44% previously, and over 61% of tasks completed in a single call [15][16] - The introduction of GOI shifted the failure rate from mechanism-related errors to strategy-related errors, indicating a successful reduction in low-level operational mistakes [18][20] Group 4: Future Implications - The development of GOI suggests a need for future operating systems and applications to incorporate LLM-friendly declarative interfaces, paving the way for more powerful AI agents [20]
拜拜了GUI,中科院团队“LLM友好”计算机使用接口来了
3 6 Ke·2025-10-27 07:31