• Stars
    star
    46
  • Rank 613,923 (Top 13 %)
  • Language
    MATLAB
  • License
    GNU General Publi...
  • Created over 3 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

This repository contains the code needed to reproduce results in the paper by M. Belgiovine, et al. “Deep Learning at the Edge for Channel Estimation in Beyond-5G Massive MIMO,” accepted at IEEE Wireless Communications Magazine (WCM), April 2021.

More Repositories

1

impro-leach

Improved Leach is a project in Omnet++ aiming to simulate a version of Leach with an improved Cluster Head (CH) selection scheme.
C++
12
star
2

cpu-get-stat

Functions to get stat information about cpu and/or processes reading from /proc/stat and /proc/<pid>/stat files. Based on a concept explained in answer from: http://stackoverflow.com/questions/1420426/calculating-cpu-usage-of-a-process-in-linux/1424556#1424556. See test.c for explanations.
C
7
star
3

hough-transform

Different implementations of Hough Transform
Cuda
6
star
4

euroshield-vague-source

Vague Source is a mix of pseudo-random techniques and utilities that I often use in my Eurorack explorations, condensed together in a single module.
C++
6
star
5

OSC-to-MIDI

A simple script to receive notes and gates messages over Open Sound Control (OSC) and send MIDI commands to external hardware.
Python
4
star
6

DDoS_simulator

Omnetpp project to simulate a DDoS attack and a basic defense mechanism
C++
4
star
7

fly_and_recharge

Omnet++ simulation of a swarm-intelligence inspired algorithm to schedule recharge tasks in a (fixed) UAV mesh network.
C++
4
star
8

indie_lstm

This is a neural network (LSTM) used to generate song lyrics inspired to the infamous italian "indie" movement. (WIP)
Jupyter Notebook
1
star
9

DRL-beamrefinement-improve-your-aim

[WIP] This repository provides a code to reproduce results in IEEE ICC 2023 paper "Improve your aim: a Deep Reinforcement Learning approach for 5G NR mmWave beam refinement".
1
star
10

belgiovi-clmagma

This is a personal development branch of OpenCL library clmagma-1.0.0 (University of Tennessee). It is intended for practicing with OpenCL development framework and trying to add some new features to the library (as multi-device support). This branch is intended to run on different OpenCL platforms and test portability of both computation and performance through heterogeneous devices (CPUs, GPUs, MICs), not just (ATI) GPUs.
Fortran
1
star