/MTFNN-CO

[IEEE TMC 2020] "Computation Offloading in Multi-Access Edge Computing: A Multi-Task Learning Approach" and [IEEE GlobeCom 2023] "A Multi-Head Ensemble Multi-Task Learning Approach for Dynamical Computation Offloading" by TensorFlow

Primary LanguagePython

MTFNN-CO

This repo contains the official implementations for the papers of [IEEE TMC 2020] Computation Offloading in Multi-Access Edge Computing: A Multi-Task Learning Approach and [IEEE GlobeCom 2023] A Multi-Head Ensemble Multi-Task Learning Approach for Dynamical Computation Offloading.

Dataset introduction

The 6 attributes of each MU:

x1 x2 x3 x4 x5 x6
the amount of input data necessary to be processed total number of CPU cycles required to process local CPU cycle frequency channel power gain alpha beta
~U(0, 5e5) =x1*3e3 ~U(0, 1e9) ~U(0, 1) ~U(0, 1) =1-alpha

Preset experimental parameters:

Name Value Meaning
F_t 2.5e9 total available computing resource on the server
kappa 1e-28 parameter for local energy consumption
Pt 0.3 transmission power
PI 0.1 execution power
theta 1.0 (second) the maximum tolerable delay
B 10e5 the operational frequency band
N0(sigma^2) 7.96159e-13 for SINR calculation