Source code for CsiNet and CRNet using Fully Connected Layer-Shared feedback architecture.

Overview

FCS-applications

Source code for CsiNet and CRNet using the Fully Connected Layer-Shared feedback architecture.

Introduction

This repository contains the program of the training and testing procedures of FCS-CsiNet and FCS-CRNet proposed in Boyuan Zhang, Haozhen Li, Xin Liang, Xinyu Gu, and Lin Zhang, "Fully Connected Layer-Shared Network Architecture for Massive MIMO CSI Feedback" (submitted to IET Electronics Letters).

Requirements

  • Python 3.5 (or 3.6)
  • Keras (>=2.1.1)
  • Tensorflow (>=1.4)
  • Numpy

Instructions

The following instructions are necessary before the network training:

  • The repository only provide the programs used for the training and testing of the FCS-CsiNet and FCS-CRNet in the form of python files. The network models in the form of h5 files are not included.
  • The part "settings of GPU" in each python file should be adjusted in advance according to the device setting of the user.
  • The experiments of different Compression Rates can be performed by adjusting the "encoded_dim" in the programs.
  • The folds named "result" and "data" should be established in advance in the folds "FCS-CsiNet" and "FCS-CRNet" to store the models obtained during the training procedure and to store the dataset used for training and testing.
  • The dataset used in the network training can be downloaded from https://drive.google.com/drive/folders/1_lAMLk_5k1Z8zJQlTr5NRnSD6ACaNRtj?usp=sharing, which is first provided in https://github.com/sydney222/Python_CsiNet). The dataset should be put in the folds "data". Therefore, the structure of the folds "FCS-CsiNet" and "FCS-CRNet" should be:
*.py
result/
data/
  *.mat

Training Procedure

The training and testing procedures are demonstrated as follows:

Step.1 Main training process

Run Step1_main_training_1.py and Step1_main_training_12.py to obtain the parameters of the shared FC layer and the pre-trained models of the other parts of the network.

Step.2 Assistant review processes

Run Step2_assistant_review.py to obtain the model used in Scenario_1. The feedback accuracy of the model in Scenario_1 will be also be calculated in Step.2.

Step.3 Assistant compensation process

Run Step3_assistant_compensation.py to obtain the model used in Scenario_2. The feedback accuracy of the model in Scenario_2 will be also be calculated in Step.3.

The results are given in the submitted manuscript "Fully Connected Layer-Shared Network Architecture for Massive MIMO CSI Feedback".

Owner
Boyuan Zhang
Boyuan Zhang
Sequence modeling benchmarks and temporal convolutional networks

Sequence Modeling Benchmarks and Temporal Convolutional Networks (TCN) This repository contains the experiments done in the work An Empirical Evaluati

CMU Locus Lab 3.5k Jan 03, 2023
🕹 An esoteric language designed so that the program looks like the transcript of a Pokémon battle

PokéBattle is an esoteric language designed so that the program looks like the transcript of a Pokémon battle. Original inspiration and specification

Eduardo Correia 9 Jan 11, 2022
Finally decent dictionaries based on Wiktionary for your beloved eBook reader.

eBook Reader Dictionaries Finally, decent dictionaries based on Wiktionary for your beloved eBook reader. Dictionaries Catalan 🚧 Ελληνικά (help welco

Mickaël Schoentgen 163 Dec 31, 2022
Fast topic modeling platform

The state-of-the-art platform for topic modeling. Full Documentation User Mailing List Download Releases User survey What is BigARTM? BigARTM is a pow

BigARTM 633 Dec 21, 2022
Applied Natural Language Processing in the Enterprise - An O'Reilly Media Publication

Applied Natural Language Processing in the Enterprise This is the companion repo for Applied Natural Language Processing in the Enterprise, an O'Reill

Applied Natural Language Processing in the Enterprise 95 Jan 05, 2023
MASS: Masked Sequence to Sequence Pre-training for Language Generation

MASS: Masked Sequence to Sequence Pre-training for Language Generation

Microsoft 1.1k Dec 17, 2022
A paper list for aspect based sentiment analysis.

Aspect-Based-Sentiment-Analysis A paper list for aspect based sentiment analysis. Survey [IEEE-TAC-20]: Issues and Challenges of Aspect-based Sentimen

jiangqn 419 Dec 20, 2022
Python package to easily retrain OpenAI's GPT-2 text-generating model on new texts

gpt-2-simple A simple Python package that wraps existing model fine-tuning and generation scripts for OpenAI's GPT-2 text generation model (specifical

Max Woolf 3.1k Jan 07, 2023
ChessCoach is a neural network-based chess engine capable of natural-language commentary.

ChessCoach is a neural network-based chess engine capable of natural-language commentary.

Chris Butner 380 Dec 03, 2022
Nystromformer: A Nystrom-based Algorithm for Approximating Self-Attention

Nystromformer: A Nystrom-based Algorithm for Approximating Self-Attention April 6, 2021 We extended segment-means to compute landmarks without requiri

Zhanpeng Zeng 322 Jan 01, 2023
Automatic privilege escalation for misconfigured capabilities, sudo and suid binaries

GTFONow Automatic privilege escalation for misconfigured capabilities, sudo and suid binaries. Features Automatically escalate privileges using miscon

101 Jan 03, 2023
Large-scale Self-supervised Pre-training Across Tasks, Languages, and Modalities

Hiring We are hiring at all levels (including FTE researchers and interns)! If you are interested in working with us on NLP and large-scale pre-traine

Microsoft 7.8k Jan 09, 2023
Contains the code and data for our #ICSE2022 paper titled as "CodeFill: Multi-token Code Completion by Jointly Learning from Structure and Naming Sequences"

CodeFill This repository contains the code for our paper titled as "CodeFill: Multi-token Code Completion by Jointly Learning from Structure and Namin

Software Analytics Lab 11 Oct 31, 2022
Machine Psychology: Python Generated Art

Machine Psychology: Python Generated Art A limited collection of 64 algorithmically generated artwork. Each unique piece is then given a title by the

Pixegami Team 67 Dec 13, 2022
Official PyTorch code for ClipBERT, an efficient framework for end-to-end learning on image-text and video-text tasks

Official PyTorch code for ClipBERT, an efficient framework for end-to-end learning on image-text and video-text tasks. It takes raw videos/images + text as inputs, and outputs task predictions. ClipB

Jie Lei 雷杰 612 Jan 04, 2023
Web Scraping, Document Deduplication & GPT-2 Fine-tuning with a newly created scam dataset.

Web Scraping, Document Deduplication & GPT-2 Fine-tuning with a newly created scam dataset.

18 Nov 28, 2022
A model library for exploring state-of-the-art deep learning topologies and techniques for optimizing Natural Language Processing neural networks

A Deep Learning NLP/NLU library by Intel® AI Lab Overview | Models | Installation | Examples | Documentation | Tutorials | Contributing NLP Architect

Intel Labs 2.9k Dec 31, 2022
Model parallel transformers in JAX and Haiku

Table of contents Mesh Transformer JAX Updates Pretrained Models GPT-J-6B Links Acknowledgments License Model Details Zero-Shot Evaluations Architectu

Ben Wang 4.9k Jan 04, 2023
Nateve compiler developed with python.

Adam Adam is a Nateve Programming Language compiler developed using Python. Nateve Nateve is a new general domain programming language open source ins

Nateve 7 Jan 15, 2022
A linter to manage all your python exceptions and try/except blocks (limited only for those who like dinosaurs).

Manage your exceptions in Python like a PRO Currently in BETA. Inspired by this blog post. I shared the building process of this tool here. “For those

Guilherme Latrova 353 Dec 31, 2022