NILGOct 20, 2024

Slicing for AI: An Online Learning Framework for Network Slicing Supporting AI Services

arXiv:2411.02412v18 citationsh-index: 41IEEE Trans Netw Serv Manag
Originality Incremental advance
AI Analysis

This addresses the problem of resource allocation for AI-driven services in mobile networks, offering an incremental improvement through online learning adaptations.

The paper tackles the challenge of optimizing network slicing for AI services in dynamic 6G networks by proposing an online learning framework to allocate computational and communication resources, achieving efficient convergence to optimal decisions with reduced decision space and improved time complexity.

The forthcoming 6G networks will embrace a new realm of AI-driven services that requires innovative network slicing strategies, namely slicing for AI, which involves the creation of customized network slices to meet Quality of service (QoS) requirements of diverse AI services. This poses challenges due to time-varying dynamics of users' behavior and mobile networks. Thus, this paper proposes an online learning framework to optimize the allocation of computational and communication resources to AI services, while considering their unique key performance indicators (KPIs), such as accuracy, latency, and cost. We define a problem of optimizing the total accuracy while balancing conflicting KPIs, prove its NP-hardness, and propose an online learning framework for solving it in dynamic environments. We present a basic online solution and two variations employing a pre-learning elimination method for reducing the decision space to expedite the learning. Furthermore, we propose a biased decision space subset selection by incorporating prior knowledge to enhance the learning speed without compromising performance and present two alternatives of handling the selected subset. Our results depict the efficiency of the proposed solutions in converging to the optimal decisions, while reducing decision space and improving time complexity.

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