Leveraging Large Language Models to Contextualize Network Measurements
Roman Beltiukov, Karthik Bhattaram, Evania Cheng, Vinod Kanigicherla, Akul Singh, Ken Thampiratwong, and Arpit Gupta

TL;DR
This paper explores using large language models to interpret network measurement data, making performance insights more accessible to non-experts by translating complex metrics into understandable explanations.
Contribution
It introduces a novel approach of leveraging large language models and historical data to automate network measurement interpretation for broader audiences.
Findings
Demonstrated potential of LLMs in explaining network metrics
Improved accessibility of network performance insights
Automated translation of technical data into plain language
Abstract
With the worldwide growth of remote communication and telepresence, network measurements form a cornerstone of effective performance assessment and diagnostics for Internet users. Most often, users seek for overall connection performance measurement using publicly available tools (also known as `speed tests') that provide an overview of their connection's throughput and latency. However, extracting meaningful insights from these measurements remains a challenging task for a non-technical audience. Interpreting network measurement data often requires considerable domain expertise to account not only for subtle variations of the connection stability and metrics, but even for simpler concepts such as latency under load or packet loss influence towards connection performance. In the absence of proper expertise, common misconceptions can easily arise. To address these issues, researchers…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling
