A Techno-Economic Framework for Cost Modeling and Revenue Opportunities in Open and Programmable AI-RAN
Gabriele Gemmi, Michele Polese, Tommaso Melodia

TL;DR
This paper presents a techno-economic analysis demonstrating that GPU-based AI-RAN architectures can yield up to 8x ROI by sharing idle GPU capacity with AI workloads, supporting future 6G deployments.
Contribution
It introduces a joint cost-revenue model for AI-RAN, combining benchmarks, traffic models, and AI demand profiles to evaluate economic viability.
Findings
GPU-heavy deployments can generate significant revenue from AI workloads.
The economic benefits offset additional costs across various demand scenarios.
Supports the long-term viability of accelerator-based RAN architectures for 6G.
Abstract
The large-scale deployment of 5G networks has not delivered the expected return on investment for mobile network operators, raising concerns about the economic viability of future 6G rollouts. At the same time, surging demand for Artificial Intelligence (AI) inference and training workloads is straining global compute capacity. AI-RAN architectures, in which Radio Access Network (RAN) platforms accelerated on Graphics Processing Unit (GPU) share idle capacity with AI workloads during off-peak periods, offer a potential path to improved capital efficiency. However, the economic case for such systems remains unsubstantiated. In this paper, we present a techno-economic analysis of AI-RAN deployments by combining publicly available benchmarks of 5G Layer-1 processing on heterogeneous platforms -- from x86 servers with accelerators for channel coding to modern GPUs -- with realistic traffic…
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