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OWL: A Large Language Model for IT Operations

Authors :
Guo, Hongcheng
Yang, Jian
Liu, Jiaheng
Yang, Liqun
Chai, Linzheng
Bai, Jiaqi
Peng, Junran
Hu, Xiaorong
Chen, Chao
Zhang, Dongfeng
Shi, Xu
Zheng, Tieqiao
Zheng, Liangfan
Zhang, Bo
Xu, Ke
Li, Zhoujun
Publication Year :
2023

Abstract

With the rapid development of IT operations, it has become increasingly crucial to efficiently manage and analyze large volumes of data for practical applications. The techniques of Natural Language Processing (NLP) have shown remarkable capabilities for various tasks, including named entity recognition, machine translation and dialogue systems. Recently, Large Language Models (LLMs) have achieved significant improvements across various NLP downstream tasks. However, there is a lack of specialized LLMs for IT operations. In this paper, we introduce the OWL, a large language model trained on our collected OWL-Instruct dataset with a wide range of IT-related information, where the mixture-of-adapter strategy is proposed to improve the parameter-efficient tuning across different domains or tasks. Furthermore, we evaluate the performance of our OWL on the OWL-Bench established by us and open IT-related benchmarks. OWL demonstrates superior performance results on IT tasks, which outperforms existing models by significant margins. Moreover, we hope that the findings of our work will provide more insights to revolutionize the techniques of IT operations with specialized LLMs.<br />Comment: 31 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.09298
Document Type :
Working Paper