Lightweight Adaptation for LLM-based Technical Service Agent: Latent Logic Augmentation and Robust Noise Reduction
Yi Yu, Junzhuo Ma, Chenghuang Shen, Xingyan Liu, Jing Gu, Hangyi Sun, Guangquan Hu, Jianfeng Liu, Weiting Liu, Mingyue Pu, Yu Wang, Zhengdong Xiao, Rui Xie, Longjiu Luo, Qianrong Wang, Gurong Cui, Honglin Qiao, Wenlian Lu

TL;DR
This paper presents a lightweight adaptation framework for large language models in technical service domains, combining latent logic augmentation, noise reduction, and a hybrid reward mechanism to improve stability, performance, and efficiency.
Contribution
It introduces novel latent logic augmentation techniques, a dual-filtering noise reduction method, and a hybrid reward system for efficient model adaptation in complex tasks.
Findings
Enhanced stability and performance in real-world cloud service tasks.
Reduced training time with comparable alignment quality.
Effective noise reduction capturing semantic diversity.
Abstract
Adapting Large Language Models in complex technical service domains is constrained by the absence of explicit cognitive chains in human demonstrations and the inherent ambiguity arising from the diversity of valid responses. These limitations severely hinder agents from internalizing latent decision dynamics and generalizing effectively. Moreover, practical adaptation is often impeded by the prohibitive resource and time costs associated with standard training paradigms. To overcome these challenges and guarantee computational efficiency, we propose a lightweight adaptation framework comprising three key contributions. (1) Latent Logic Augmentation: We introduce Planning-Aware Trajectory Modeling and Decision Reasoning Augmentation to bridge the gap between surface-level supervision and latent decision logic. These approaches strengthen the stability of Supervised Fine-Tuning alignment.…
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Taxonomy
TopicsTopic Modeling · Explainable Artificial Intelligence (XAI) · Artificial Intelligence in Healthcare and Education
