Design of a large language model for improving customer service in
telecom operators
Abstract
For telecom operators, customer service is integral to their business.
Traditional service systems, responsible for managing large amounts of
data and complex knowledge bases, need more time retrieval processes and
a lack of precision, hindering their ability to respond quickly to
customer requests. To address these issues, this paper uses the
LangChain programming framework to create a customized Large Language
Model (LLM) specifically for the customer service context of telecom
operators. It also uses reinforcement learning to improve the
performance of the models and reduce the production of incorrect
information. Experimental results show that the acceptance of our
model’s recommended knowledge has increased from 15% to 70%,
confirming its reliable operation in resource-constrained environments.