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Telecom Radio Mobility Outage Forecast analysis

Nitesh Sharma, Mayank sharma, Saurabh Agrawal

Abstract


Telecom industry is playing significant role for develop any other industry especially when digital paradigm has been started. In this new era telecom mobility is life line of routine work, academics, entertainment, banking services etc. For maintain such services telecom operators monitor on daily basis couple of Kpi, accessibility as well as retain ability & both Kpi dependent on network availability. The aim of this paper to develop a hypothesis to build robust method for forecast non availability of network / Outage & prevention before any incidence or minimize the impact on end users with machine learning.


Keywords: Forecast, Outage, Network availability Telecom industry, Scientific analysis,Telecom industry.


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DOI: https://doi.org/10.37591/.v10i3.4440

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