Network Diffuser for Placing-Scheduling Service Function Chains with Inverse Demonstration
Zuyuan Zhang, Vaneet Aggarwal, Tian Lan

TL;DR
This paper introduces a novel network diffuser leveraging conditional generative modeling and inverse demonstration to optimize the placement and scheduling of Service Function Chains, significantly improving performance over existing methods.
Contribution
It proposes a new diffusion-based approach for SFC placement-scheduling and introduces inverse demonstration to generate expert data for training.
Findings
20% improvement in SFC reward
50% reduction in waiting time
50% reduction in blocking rate
Abstract
Network services are increasingly managed by considering chained-up virtual network functions and relevant traffic flows, known as the Service Function Chains (SFCs). To deal with sequential arrivals of SFCs in an online fashion, we must consider two closely-coupled problems - an SFC placement problem that maps SFCs to servers/links in the network and an SFC scheduling problem that determines when each SFC is executed. Solving the whole SFC problem targeting these two optimizations jointly is extremely challenging. In this paper, we propose a novel network diffuser using conditional generative modeling for this SFC placing-scheduling optimization. Recent advances in generative AI and diffusion models have made it possible to generate high-quality images/videos and decision trajectories from language description. We formulate the SFC optimization as a problem of generating a state…
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Taxonomy
TopicsAdvanced Queuing Theory Analysis · Optimization and Search Problems · Scheduling and Optimization Algorithms
Methodstravel james · Diffusion
