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Main Authors: Zeng, Guancheng, Chen, Xueyi, Hu, Jiawang, Qi, Shaohua, Mao, Yaxuan, Wang, Zhantao, Nie, Yifan, Li, Shuang, Feng, Qiuyang, Qiu, Pengxu, Wang, Yujia, Han, Wenqiang, Huang, Linyan, Li, Gang, Mo, Jingjing, Hu, Haowen
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.14447
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author Zeng, Guancheng
Chen, Xueyi
Hu, Jiawang
Qi, Shaohua
Mao, Yaxuan
Wang, Zhantao
Nie, Yifan
Li, Shuang
Feng, Qiuyang
Qiu, Pengxu
Wang, Yujia
Han, Wenqiang
Huang, Linyan
Li, Gang
Mo, Jingjing
Hu, Haowen
author_facet Zeng, Guancheng
Chen, Xueyi
Hu, Jiawang
Qi, Shaohua
Mao, Yaxuan
Wang, Zhantao
Nie, Yifan
Li, Shuang
Feng, Qiuyang
Qiu, Pengxu
Wang, Yujia
Han, Wenqiang
Huang, Linyan
Li, Gang
Mo, Jingjing
Hu, Haowen
contents The deployment of agent systems in an enterprise environment is often hindered by several challenges: common models lack domain-specific process knowledge, leading to disorganized plans, missing key tools, and poor execution stability. To address this, this paper introduces Routine, a multi-step agent planning framework designed with a clear structure, explicit instructions, and seamless parameter passing to guide the agent's execution module in performing multi-step tool-calling tasks with high stability. In evaluations conducted within a real-world enterprise scenario, Routine significantly increases the execution accuracy in model tool calls, increasing the performance of GPT-4o from 41.1% to 96.3%, and Qwen3-14B from 32.6% to 83.3%. We further constructed a Routine-following training dataset and fine-tuned Qwen3-14B, resulting in an accuracy increase to 88.2% on scenario-specific evaluations, indicating improved adherence to execution plans. In addition, we employed Routine-based distillation to create a scenario-specific, multi-step tool-calling dataset. Fine-tuning on this distilled dataset raised the model's accuracy to 95.5%, approaching GPT-4o's performance. These results highlight Routine's effectiveness in distilling domain-specific tool-usage patterns and enhancing model adaptability to new scenarios. Our experimental results demonstrate that Routine provides a practical and accessible approach to building stable agent workflows, accelerating the deployment and adoption of agent systems in enterprise environments, and advancing the technical vision of AI for Process.
format Preprint
id arxiv_https___arxiv_org_abs_2507_14447
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Routine: A Structural Planning Framework for LLM Agent System in Enterprise
Zeng, Guancheng
Chen, Xueyi
Hu, Jiawang
Qi, Shaohua
Mao, Yaxuan
Wang, Zhantao
Nie, Yifan
Li, Shuang
Feng, Qiuyang
Qiu, Pengxu
Wang, Yujia
Han, Wenqiang
Huang, Linyan
Li, Gang
Mo, Jingjing
Hu, Haowen
Artificial Intelligence
Computation and Language
The deployment of agent systems in an enterprise environment is often hindered by several challenges: common models lack domain-specific process knowledge, leading to disorganized plans, missing key tools, and poor execution stability. To address this, this paper introduces Routine, a multi-step agent planning framework designed with a clear structure, explicit instructions, and seamless parameter passing to guide the agent's execution module in performing multi-step tool-calling tasks with high stability. In evaluations conducted within a real-world enterprise scenario, Routine significantly increases the execution accuracy in model tool calls, increasing the performance of GPT-4o from 41.1% to 96.3%, and Qwen3-14B from 32.6% to 83.3%. We further constructed a Routine-following training dataset and fine-tuned Qwen3-14B, resulting in an accuracy increase to 88.2% on scenario-specific evaluations, indicating improved adherence to execution plans. In addition, we employed Routine-based distillation to create a scenario-specific, multi-step tool-calling dataset. Fine-tuning on this distilled dataset raised the model's accuracy to 95.5%, approaching GPT-4o's performance. These results highlight Routine's effectiveness in distilling domain-specific tool-usage patterns and enhancing model adaptability to new scenarios. Our experimental results demonstrate that Routine provides a practical and accessible approach to building stable agent workflows, accelerating the deployment and adoption of agent systems in enterprise environments, and advancing the technical vision of AI for Process.
title Routine: A Structural Planning Framework for LLM Agent System in Enterprise
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2507.14447