Info Image

SoftBank Verifies GPU-based vRAN on Actual Machines with NVIDIA & Mavenir

SoftBank Verifies GPU-based vRAN on Actual Machines with NVIDIA & Mavenir Image Credit: Softbank

SoftBank announced, in collaboration with NVIDIA and Mavenir Systems, it succeeded in End-to-End (E2E) communication from user equipment to image processing multi-access edge computing (MEC) applications via virtualized radio access network (vRAN) components using Graphic Processing Units (GPUs) in actual machines. 

The announcement follows SoftBank's opening of its research facility called “AI-on-5G Lab.” in 2022, where various solutions, including AI technology, can be demonstrated and applied to the business domain in an environment where vRAN and MEC are integrated. SoftBank, NVIDIA and Mavenir also achieved person detection using the AI real-time solution on a server that adopts the same architecture with vRAN.

“AI-on-5G Lab.” is a research facility built in collaboration with NVIDIA that consists of NVIDIA's hardware, vRAN and AI processing middleware, virtualized radio signal processing software from network software provider Mavenir, core network software, AI image processing application software on MEC, and physical Radio Units (RU) provided by Foxconn Technology Group. Distributed Units (DU) of the Radio Access Network (RAN) and MEC AI application work on the same architecture server. SoftBank successfully achieved real-time person detection by communicating wirelessly connected 5G-compatible camera images through its 5G network to an AI application.

SoftBank has been working on ways to share resources with several applications using GPUs, even though many vRAN accelerators are specialized for vRAN software. This achievement proves GPU are usable with both RAN and AI applications. In the future, SoftBank will utilize the GPU platform for AI application as a vRAN platform when adding RU and vRAN software, and enable the vRAN site as a MEC location that uses GPUs.

SoftBank plans to realize dynamic resource allocation depending on RAN and MEC demand, and lower power consumption of vRAN in the future.

NEW REPORT:
Next-Gen DPI for ZTNA: Advanced Traffic Detection for Real-Time Identity and Context Awareness
Author

Ray is a news editor at The Fast Mode, bringing with him more than 10 years of experience in the wireless industry.

For tips and feedback, email Ray at ray.sharma(at)thefastmode.com, or reach him on LinkedIn @raysharma10, Facebook @1RaySharma

PREVIOUS POST

A1 Telekom Austria Partners with Amdocs to Modernize its Digital Business Systems in Bulgaria

NEXT POST

SKT Selects Pindrop’s Leading Voice Authentication Solution to Improve Security