
Mavenir and Intel Partner To Offer Optimised Performance For vRAN Solution
CIOTechOutlook Team | Monday, 26 February 2024, 05:04 IST

The firm has developed an Open vRAN solution powered by 4th Gen Intel Xeon Scalable processors. Intel vRAN Boost enhances this solution and offers exceptional performance, functionality, and integrated AI and ML applications for the next generation of 4G and 5G networks. Mavenir and Intel have a long-standing technology collaboration, and by adopting Intel's processors, they can develop more cost-effective and efficient RANs.
Mavenir's Open vRAN solution includes a virtualized distributed Unit (vDU) and a centralized unit (vCU). It supports all mobile network generations, including 2G, 4G, and 5G, providing a complete baseband unit (BBU) functionality. The solution is designed to be cloud-native and can be easily deployed on private, hybrid, or public clouds based on Intel architecture.
BG Kumar, President, Access Networks, Platforms and Digital Enablement for Mavenir commented: "Mavenir values our ongoing collaboration with Intel, which is leading the industry in driving forward high-performance and sustainable Open vRAN solutions for 4G and 5G networks. Mavenir’s integrated solution powered by 4th Gen Intel Xeon Scalable processors with Intel vRAN Boost optimises the Open vRAN solution offerings even further– giving CSPs worldwide the ability to deploy cloud-native, energy-efficient, and cost-effective AI/ML powered RAN infrastructure built on world-class technology."
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