jin521-qing's repositories

DEAT

Achieving Fast Environment Adaptation of DRL-Based Computation Offloading in Mobile Edge Computing

Stargazers:1Issues:0Issues:0
License:MITStargazers:2Issues:0Issues:0
License:MITStargazers:1Issues:0Issues:0

TinyWebServer

:fire: Linux下C++轻量级Web服务器学习

License:Apache-2.0Stargazers:1Issues:0Issues:0

heating-RL-agent

A Pytorch DQN and DDPG implementation for a smart home energy management system under varying electricity price.

Stargazers:0Issues:0Issues:0

MyTinySTL

Achieve a tiny STL in C++11

License:NOASSERTIONStargazers:0Issues:0Issues:0

ML-RL-simulations

A multi-layer guided reinforcement learning-based tasks offloading in edge computing - Simulations

Stargazers:0Issues:0Issues:0

Skiplist-CPP

A tiny KV storage based on skiplist written in C++ language| 使用C++开发,基于跳表实现的轻量级键值数据库🔥🔥 🚀

License:GPL-3.0Stargazers:0Issues:0Issues:0

Game-Theoretic-Deep-Reinforcement-Learning

Code of Paper "Joint Task Offloading and Resource Optimization in NOMA-based Vehicular Edge Computing: A Game-Theoretic DRL Approach", JSA 2022.

License:GPL-3.0Stargazers:0Issues:0Issues:0

Multi-Agent-Mec_Offloading-Use_DRL

使用Drl来解决多智能体卸载问题

Stargazers:1Issues:0Issues:0

mec_drl

Deep reinforcement learning for mobile edge computing

Stargazers:0Issues:0Issues:0

VN-MADDPG

Code for paper "基于多智能体深度强化学习的车联网通信资源分配优化" 有环境搭建

Stargazers:1Issues:0Issues:0

baselines

OpenAI Baselines: high-quality implementations of reinforcement learning algorithms

License:MITStargazers:0Issues:0Issues:0

Partial-Computation-Offloading-For-MEC

基于深度强化学习的部分计算任务卸载延迟优化

License:MITStargazers:0Issues:0Issues:0

jin521-qing

Config files for my GitHub profile.

Stargazers:0Issues:0Issues:0

edge-offloading

computation offloading in mobile edge computing using Reinforcement Learning

Stargazers:1Issues:0Issues:0

Awesome-Meta-Learning

A curated list of Meta Learning papers, code, books, blogs, videos, datasets and other resources.

Stargazers:0Issues:0Issues:0

The-Scientist-and-Engineer-s-Guide-to-Digital-Signal-Processing-master

《科学家和工程师的数字信号处理指南》,阅读每一章节后,用中英混合的方式对章节内容进行一些简单总结,以加深对章节内容的理解。

Stargazers:0Issues:0Issues:0

DataSet

用户移动性数据集

Stargazers:0Issues:0Issues:0
Stargazers:0Issues:0Issues:0

HER

PyTorch Implementation of Hindsight Experience Replay

License:MITStargazers:0Issues:0Issues:0