RANalyzer: Automated Continuous RAN Software Evaluation and Regression Analysis - 深度解析 论文来源:ArXiv (oai:arXi) 作者:Ravis Shirkhani, Reshma Prasad, Leonardo Bonati, Tommaso Melodia, Michele Polese 分类:cs.NI, cs.
论文来源:ArXiv (oai:arXi)
作者:Ravis Shirkhani, Reshma Prasad, Leonardo Bonati, Tommaso Melodia, Michele Polese
分类:cs.NI, cs.SE
发布时间:Tue, 28 Apr 2026 00:00:00 -0400
解读时间:2026年04月29日 09:03:21
标题:RANalyzer: Automated Continuous RAN Software Evaluation and Regression Analysis
作者:Ravis Shirkhani, Reshma Prasad, Leonardo Bonati, Tommaso Melodia, Michele Polese
ArXiv ID:oai:arXi
链接:https://arxiv.org/abs/2604.23153
分类:cs.NI, cs.SE
研究领域:无线定位
本论文研究了 无线定位 领域的重要问题。
arXiv:2604.23153v1 Announce Type: new Abstract: Software-driven O-RAN architectures enable rapid innovation through frequent, independent updates to virtualized components. However, attributing performance variations to specific software changes is challenging due to the stochastic nature of wireless systems, where channel conditions, interference, and hardware variability confound analysis. Traditional threshold-based monitoring and manual troubleshooting do not scale with modern software evolution. This paper presents RANalyzer, an automated test analysis framework that quantifies the performance impact of software updates beyond what can be explained by wireless channel conditions. RANalyzer combines LLM-assisted semantic extraction with residuals analysis. The first categorizes code
该研究对于解决当前领域面临的挑战具有重要意义。
论文提出了一种新颖的方法来解决相关问题。
论文通过大量实验验证了所提方法的有效性。
本论文的主要创新点包括:
该方法在 无线定位 领域具有广阔的应用前景。
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