Jinsung Choi’s Post

Battle of the Titans: AI Chips Transforming Open vRAN The new era, AI Open vRAN, integrates AI/GenAI to enhance network performance, optimize operations, and provide unprecedented flexibility. As the demand for AI in telecoms grows, a fierce chip war is emerging, with semiconductor companies vying to provide the most advanced and efficient solutions. This shift not only enhances network performance but also reduces operational costs, in particular energy consumption, and improves user experience. ◼ Chip War in AI PCs Recently, the chip war is raging in the AI PC market. For example, Qualcomm's recent announcement of the Snapdragon X Elite SoC highlights their commitment to leading this space. Also, MediaTek has announced a strategic partnership with NVIDIA to develop arm-based AI CPU. These developments indicate that the AI PC market is becoming a new battleground for semiconductor companies, with each striving to outdo the other in terms of performance and efficiency. ◼ Layer 1 Accelerators and CPUs in Open vRAN In the context of AI Open vRAN, two key chip components are essential: - Layer 1 Accelerators: These chips offload specific Layer 1 processing tasks from the CPU, such as Forward Error Correction and channel estimation. They are designed to work with COTS (Commercial Off-the-Shelf) hardware, promoting open interfaces and enhancing flexibility. - CPUs: The CPU remains a critical component, handling higher-level tasks such as MAC, RAN L2/3, RIC, SMO, and other management software and ensuring overall system efficiency. The choice between Arm-based CPUs and traditional x86 CPUs is a significant factor in the chip war. L1 accelerators must balance performance, power consumption, and cost, making them a critical battleground in the AI Open vRAN landscape. Simultaneously, the chip war extends to CPUs in vRAN, with a clear divide between Arm-based and x86 CPUs. Arm-based CPUs, known for their power efficiency and performance, are increasingly being adopted in vRAN deployments. However, x86 CPUs, traditionally dominant in computing, continue to evolve, offering robust performance and compatibility with existing infrastructure. ◼ Edge AI Computing and Open vRAN Synergy Potential The synergy between edge AI computing and open vRAN presents immense potential. Edge AI enables real-time data processing and decision-making closer to the user, reducing latency and improving performance. When combined with open vRAN, this approach can enhance network efficiency and provide a more responsive user experience. Edge AI computing allows for localized data analysis, ensuring that only relevant information is sent to centralized servers, thereby reducing bandwidth requirements and operational costs. This synergy is crucial for the future of telecom networks, as it supports the deployment of more intelligent and adaptive RAN solutions. #ChipWar #L1Accelerator #CPUforvRAN #OpenRAN #CloudRAN #EdgeAI

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Girish Dave

Business Leader, Account Director, CTO, CIO, Strategic Thinker

1w

Well Said Jinsung Choi ! The strategic importance of balancing power consumption and cost in Layer 1 accelerators cannot be overstated, as it directly impacts the feasibility and scalability of AI Open vRAN solutions. And the potential synergy between edge AI computing and open vRAN presents a compelling vision for the future of telecom networks, promising lower latency, reduced operational costs, and improved user experiences. As the industry continues to evolve, the integration of AI at the edge and in the core of the network will drive the next wave of innovation, making telecommunications more adaptive and intelligent. JPL 5G Solutions Jio Platforms Limited (JPL) Jio #JioBrain

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bhoopendra singh

Technology advisory, mentoring, Telecom and defence , AI/ML ,5Gand beyond,IOT

6d

Very informative

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