Picture of Does AI/ML/ Neural Network have enough business use cases in industry/Nokia or is it in exploration phase?

Does AI/ML/ Neural Network have enough business use cases in industry/Nokia or is it in exploration phase?

Best discussions & stories
Picture of Dharmendra
Picture of RAJAT
2 responses
157 views
Start new discussionBrowse other categories

Ahmad F. asked a question to Dharmendra S.

Category: About us

Date asked: Friday, December 15, 2023

Last reviewed: Sunday, January 21, 2024

Picture of Dharmendra S.

Dharmendra S.

Head of Business Group and Shared Services - Global Sales Support

In the telecom industry, AI, ML and Neural Networks have some substantial business use cases, and their adoption continues to grow. These technologies have proven to be transformative in optimizing network performance, enhancing customer experience, and driving operational efficiency for Nokia and its customers. Below are some examples: Network Optimization: AI and ML are going to be extensively used for optimizing network performance. These technologies enable fault detection, and automated resolution, leading to increased network reliability and reduced downtime thereby enhancing the overall quality of service and Customer Experience. Predictive Analytics: AI and ML are instrumental in predictive analytics for anticipating network congestion, equipment failures, and other issues. Nokia plans to use these technologies to forecast demand, plan network upgrades, and prevent potential disruptions, contributing to a more proactive and resilient network infrastructure. While AI, ML, and Neural Networks have made considerable strides in the telecom industry, it's important to note that innovation is an ongoing process. The industry is continually exploring new applications and refining existing use cases. I hope this is useful.

Friday, January 19, 2024

Picture of RAJAT R.

RAJAT R.

Correct sir, as business cases are evolving around 5G an ORAN. AL/ML will help in increasing the radio network performance across all layers of the network by embedding intelligence directly on the hardware or as applications on top of the network. In today's scenario as energy efficiency is the top agenda for CSPs. Artificial Intelligence can help optimize the sustainability of 5G networks by reducing energy wastage, and thus their carbon footprint. o AI systems can learn the usage patterns of networks and automatically turn off power for components when not needed. o AI algorithms can help optimize RF propagation and its associated power levels.

Sunday, January 21, 2024

Did you find this discussion helpful?