Skip to content

mfarooq33/TaskOffload

Repository files navigation

DROO

Deep Reinforcement Learning for Online Computation Offloading in Wireless Powered Mobile-Edge Computing Networks

Python code to reproduce our DROO algorithm for Wireless-powered Mobile-Edge Computing [1], which uses the time-varying wireless channel gains as the input and generates the binary offloading decisions. It includes:

Cite this work

  1. L. Huang, S. Bi, and Y. J. Zhang, “Deep reinforcement learning for online computation offloading in wireless powered mobile-edge computing networks,” IEEE Trans. Mobile Compt., vol. 19, no. 11, pp. 2581-2593, November 2020.
@ARTICLE{huang2020DROO,  
author={Huang, Liang and Bi, Suzhi and Zhang, Ying-Jun Angela},  
journal={IEEE Transactions on Mobile Computing},   
title={Deep Reinforcement Learning for Online Computation Offloading in Wireless Powered Mobile-Edge Computing Networks},   
year={2020},
month={November},
volume={19},  
number={11},  
pages={2581-2593},  
doi={10.1109/TMC.2019.2928811}
}

About authors

Required packages

  • Tensorflow

  • numpy

  • scipy

How the code works

  • For DROO algorithm, run the file, main.py. If you code with Tenforflow 2 or PyTorch, run mainTF2.py or mainPyTorch.py, respectively. The original DROO algorithm is coded based on Tensorflow 1.x. If you are fresh to deep learning, please start with Tensorflow 2 or PyTorch, whose codes are much cleaner and easier to follow.

  • For more DROO demos:

    • Laternating-weight WDs, run the file, [demo_alternate_weights.py](demo_alternate_weights.
    • ON-OFF WDs, run the file, demo_on_off.py
    • Remember to respectively edit the import MemoryDNN code from
        from memory import MemoryDNN
      
      to
        from memoryTF2 import MemoryDNN
      
      or
        from memoryPyTorch import MemoryDNN
      
      if you are using Tensorflow 2 or PyTorch.

DROO is illustrated here for single-slot optimization. If you tend to apply DROO for multiple-slot continuous control problems, please refer to our LyDROO project.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages