English

An End-to-End Framework for Building Large Language Models for Software Operations

Machine Learning 2026-05-13 v2

Abstract

In the field of software operations, Large Language Models (LLMs) have attracted increasing attention. However, existing research has not yet achieved efficient and effective end-to-end intelligent operations due to low-quality data, fragmented knowledge and insufficient learning. To explore the potential of LLMs in software operations, we propose OpsLLM, a domain-specific LLM that supports both knowledge-based question answering (QA) and root cause analysis (RCA). Moreover, we disclose the detailed workflow for building LLMs specifically in the software operations domain. First, a Human-in-the-Loop mechanism is introduced to curate highquality data from a large collection of operational raw data and construct a fine-tuning dataset. Then, based on the data, supervised fine-tuning is conducted to achieve a base model. Furthermore, we introduce a domain process reward model (DPRM) during the reinforcement learning stage to optimize the accuracy and reliability of the fine-tuned model on RCA tasks. Experimental results on the tasks with diverse difficulties demonstrate that OpsLLMs effectively learns and aligns with the operational domain knowledge infused, outperforming existing open-source and closed-source LLMs in accuracy with improvements of 0.2%~5.7% on QA tasks and 2.7% ~70.3% on RCA tasks, while exhibiting strong transferability. Moreover, we will open-source three versions of OpsLLM with 7B, 14B and 32B parameters, along with a 15K fine-tuning dataset.

Keywords

Cite

@article{arxiv.2605.02906,
  title  = {An End-to-End Framework for Building Large Language Models for Software Operations},
  author = {Jingkai He and Pengfei Chen and Chenghui Wu and Shuang Liang and Ye Li and Gou Tan and Xiadao Wen and Chuanfu Zhang},
  journal= {arXiv preprint arXiv:2605.02906},
  year   = {2026}
}
R2 v1 2026-07-01T12:49:03.553Z