muhammad-shahid0749 / RLDependetTaskOffloading-DAG
☆10Updated 10 months ago
Alternatives and similar repositories for RLDependetTaskOffloading-DAG:
Users that are interested in RLDependetTaskOffloading-DAG are comparing it to the libraries listed below
- The source code of algorithms in paper "Incentive-Driven Task Offloading and Collaborative Computing in Device-Assisted MEC Networks".☆11Updated 4 months ago
- ☆15Updated 2 years ago
- ☆12Updated 4 years ago
- ☆34Updated 2 years ago
- Network aware load balancing for edge/cloud computing using deep reinforcement learning☆19Updated 3 years ago
- Related paper: Online Scheduling for Energy Minimization in Wireless Powered Mobile Edge Computing☆9Updated 2 years ago
- ☆12Updated 2 years ago
- This is the MATLAB based simulation of optimized Vehicular Fog Computing framework that minimizes the latency during the computatin tasks…☆11Updated 9 months ago
- Codes for the paper titled Online Joint Task Offloading and Resource Management in Heterogeneous Mobile Edge Environments.☆15Updated 2 years ago
- ☆16Updated 2 years ago
- Dynamic Task Software Caching-Assisted Computation Offloading for Multi-Access Edge Computing☆11Updated 2 years ago
- Research project on Resource-elastic tasks for edge cloud computing☆11Updated 3 years ago
- A Mobile edge computing server placement algorithm, written from scratch for 5g server placement depending upon various KPIs across a ar…☆12Updated 2 years ago
- User allocation in Mobile Edge Computing Environment using Reinforcement Learning☆29Updated 2 years ago
- ☆13Updated last year
- ☆18Updated 3 years ago
- The source code of algorithms in paper "Computation Rate Maximization for Wireless Powered Edge Computing With Multi-User Cooperation"☆11Updated 9 months ago
- This is the code for the paper titleed task merge and scheduling for deep learning applications in mobile edge computing☆8Updated 6 years ago
- Q learning and DQN☆9Updated 3 years ago
- The source code and experimental results of RSDQL.☆26Updated 3 years ago
- ☆35Updated 2 years ago
- Deep Reinforcement Learning Environments for User-Centric Mobile Edge Computing