Proactive SFC Provisioning with Forecast-Driven DRL in Data Centers
Parisa Fard Moshiri, Poonam Lohan, Burak Kantarci, Emil Janulewicz

TL;DR
This paper introduces a forecast-driven DRL framework for proactive SFC provisioning in data centers, improving resource utilization, acceptance ratios, and reducing latency for various services.
Contribution
It combines ensemble deep learning forecasts with DRL for proactive resource placement, enhancing efficiency and service quality in data center networks.
Findings
Acceptance ratios for latency-critical services increased significantly.
End-to-end latencies were reduced by up to 34.8%.
Proactive placement improved resource utilization and reduced contention.
Abstract
Service Function Chaining (SFC) requires efficient placement of Virtual Network Functions (VNFs) to satisfy diverse service requirements while maintaining high resource utilization in Data Centers (DCs). Conventional static resource allocation often leads to overprovisioning or underprovisioning due to the dynamic nature of traffic loads and application demands. To address this challenge, we propose a hybrid forecast-driven Deep reinforcement learning (DRL) framework that combines predictive intelligence with SFC provisioning. Specifically, we leverage DRL to generate datasets capturing DC resource utilization and service demands, which are then used to train deep learning forecasting models. Using Optuna-based hyperparameter optimization, the best-performing models, Spatio-Temporal Graph Neural Network, Temporal Graph Neural Network, and Long Short-Term Memory, are combined into an…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Cloud Computing and Resource Management · Advanced Optical Network Technologies
