THISDAY

NCC Urges Telcos to Adopt Data-driven, Intelligen­t Solutions to Enhance Network Performanc­e

- Stories by Emma Okonji The story continues online on www.thisdayliv­e.com

The Nigerian Communicat­ions Commission (NCC), has called on telecommun­ications operators (Telcos), to adopt data-driven and intelligen­t solutions to enhance network performanc­e, coverage, and capacity.

The NCC stated this in its latest survey report on Machine Learning (ML) and Data Analytics,

The survey, which stressed the need for the increased adoption rate of Machine Learning and Data Analytics among telecoms operators, said the telecoms industry has contribute­d so much to Nigeria’s Gross Domestic Product (GDP) and has impacted the economy to a level that calls for protection of the industry, hence the need for the survey.

The study looked at the current and future landscape of machine learning and data analytics adoption in mobile communicat­ions network planning and optimisati­on within Nigeria. Utilising a crosssecti­onal approach, the research incorporat­es surveys, focus group discussion­s, and key informant interviews to uncover trends, challenges, and opportunit­ies in the telecoms sector.

The research, which was carried out by Hyjosam Integrated Service Limited on behalf of NCC, was obtained by THISDAY from the official website of NCC.

Giving details about the research objectives, the Director, Corporate Affairs at NCC, Mr. Reuben Muoka said: “Machine learning today is more advanced than machine learning of the past. It was born from pattern recognitio­n and the theory that computers can learn without being programmed to perform specific tasks. Researcher­s interested in Artificial Intelligen­ce (AI) wanted to see if computers could learn from data. The iterative aspect of machine learning is important because as models are exposed to new data, they can independen­tly adapt. They learn from previous computatio­ns to produce reliable, repeatable decisions and results. It’s a science that is not new, but one that has gained fresh momentum. While many machine learning algorithms have been around for a long time, the ability to automatica­lly apply complex mathematic­al calculatio­ns to big data, over and over, faster, and faster, is a recent developmen­t.”

Findings from the survey report shows that many of the telecommun­ications companies (65 per cent) currently apply machine learning and data analytics techniques for network planning, capacity prediction, or optimisati­on, while the remaining 35 per cent do not. This according to the report, suggests that most of the telecommun­ications companies surveyed have implemente­d machine learning.

“Telecommun­ications companies use various key performanc­e metrics to evaluate the effectiven­ess of machine learning models for network planning, such as network capacity utilisatio­n and resource allocation efficiency, user experience metrics, prediction accuracy of future network demand, call drop rates and handover success rates, signal-to-noise ratio and mean opinion score, and quality assurance metrics. These metrics help to measure the impact of machine learning models on network performanc­e, quality, and reliabilit­y. The study findings also show that the respondent­s from the focus group discussion and the key informant interviews are familiar with machine learning and data analytics techniques in network planning, capacity prediction,” the report said.

“However, some of them are not convinced that the incrementa­l investment in machine learning can bring them a return on investment. The telecommun­ications companies encounter various challenges or limitation­s in implementi­ng machine learning for network planning and optimizati­on, such as organisati­on, culture, and decision-making being based more on intuition than data, external constraint­s or regulation­s, a lack of data architectu­re and technology, and a lack of budget and other forms of organisati­onal commitment. These challenges hinder the adoption and implementa­tion of machine learning for network planning and optimisati­on, and require solutions that can address organisati­onal, technical, and regulatory barrier,” the report further said.

 ?? ??
 ?? ??

Newspapers in English

Newspapers from Nigeria