6G Infrastructures for Edge AI: An Analytical Perspective
By: Kurt Horvath , Shpresa Tuda , Blerta Idrizi and more
Potential Business Impact:
Makes future internet faster for smart apps.
The convergence of Artificial Intelligence (AI) and the Internet of Things has accelerated the development of distributed, network-sensitive applications, necessitating ultra-low latency, high throughput, and real-time processing capabilities. While 5G networks represent a significant technological milestone, their ability to support AI-driven edge applications remains constrained by performance gaps observed in real-world deployments. This paper addresses these limitations and highlights critical advancements needed to realize a robust and scalable 6G ecosystem optimized for AI applications. Furthermore, we conduct an empirical evaluation of 5G network infrastructure in central Europe, with latency measurements ranging from 61 ms to 110 ms across different close geographical areas. These values exceed the requirements of latency-critical AI applications by approximately 270%, revealing significant shortcomings in current deployments. Building on these findings, we propose a set of recommendations to bridge the gap between existing 5G performance and the requirements of next-generation AI applications.
Similar Papers
Toward hyper-adaptive AI-enabled 6G networks for energy efficiency: techniques, classifications and tradeoffs
Networking and Internet Architecture
AI helps future phones use less power.
A Real-time Data Collection Approach for 6G AI-native Networks
Networking and Internet Architecture
Makes future phones learn from network use.
Advanced Architectures Integrated with Agentic AI for Next-Generation Wireless Networks
Networking and Internet Architecture
Makes internet faster and use less power.