Lightweight Latency Prediction Scheme for Edge Applications: A Rational Modelling Approach
By: Mohan Liyanage , Eldiyar Zhantileuov , Ali Kadhum Idrees and more
Potential Business Impact:
Predicts internet speed for faster apps.
Accurately predicting end-to-end network latency is essential for enabling reliable task offloading in real-time edge computing applications. This paper introduces a lightweight latency prediction scheme based on rational modelling that uses features such as frame size, arrival rate, and link utilization, eliminating the need for intrusive active probing. The model achieves state-of-the-art prediction accuracy through extensive experiments and 5-fold cross-validation (MAE = 0.0115, R$^2$ = 0.9847) with competitive inference time, offering a substantial trade-off between precision and efficiency compared to traditional regressors and neural networks.
Similar Papers
Morpheus: Lightweight RTT Prediction for Performance-Aware Load Balancing
Distributed, Parallel, and Cluster Computing
Predicts computer delays to make apps run faster.
Dynamic Quality-Latency Aware Routing for LLM Inference in Wireless Edge-Device Networks
Information Theory
Makes smart assistants answer faster and better.
Probabilistic Delay Forecasting in 5G Using Recurrent and Attention-Based Architectures
Networking and Internet Architecture
Predicts internet delays for smoother online games.