Generation of Realistic Cloud Access Times for Mobile Application Testing using Transfer Learning
Manoj R. Rege, Vlado Handziski, Adam Wolisz

TL;DR
This paper introduces a transfer learning approach using LSTM neural networks to generate realistic cloud access time traces for mobile network testing, enabling better prediction of application QoE across diverse environments.
Contribution
It presents a novel transfer learning methodology with LSTM to adapt synthetic trace generation models to new environments using minimal data.
Findings
Synthetic traces accurately reproduce QoE metric distributions.
Models adapt to diverse environments with only 6000 samples.
Generated traces include realistic outlier values.
Abstract
The network Quality of Service (QoS) metrics such as the access time, the bandwidth, and the packet loss play an important role in determining the Quality of Experience (QoE) of mobile applications. Various factors like the Radio Resource Control (RRC) states, the Mobile Network Operator (MNO) specific retransmission configurations, handovers triggered by the user mobility, the network load, etc. can cause high variability in these QoS metrics on 4G/LTE, and WiFi networks, which can be detrimental to the application QoE. Therefore, exposing the mobile application to realistic network QoS metrics is critical for a tester attempting to predict its QoE. A viable approach is testing using synthetic traces. The main challenge in the generation of realistic synthetic traces is the diversity of environments and the lack of wide scope of real traces to calibrate the generators. In this paper,…
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Taxonomy
Methodstravel james
