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TU Dresden
- Berlin
- fritschek.github.io
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Fritschek.github.io Public
Forked from academicpages/academicpages.github.ioGithub Pages template for academic personal websites, forked from mmistakes/minimal-mistakes
JavaScript MIT License UpdatedJan 31, 2025 -
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DiffusionForWirelessChannels Public
Forked from richzhang/webpage-templateProject Page for a Collection of Diffusion for Wireless Papers at the TU Dresden.
HTML UpdatedJan 7, 2025 -
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Hamming74-MLD Public
Code for simulating Hamming Code with MLD
Jupyter Notebook UpdatedMay 16, 2024 -
arxiv-renamer Public
Renames xxxx.xxxx arxiv files in the directory to author-title
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ProductAE Public
Implementation of the Product Autoencoder
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wireless-binary-AE Public
Some implementations of NN-based medium blocklength channel codes
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learning-E2E-channel-coding-with-diffusion-models Public
Forked from muahkim/learning-E2E-channel-coding-with-diffusion-modelsThis repository contains the simulations used in the paper whose title is the same as the repository name.
Jupyter Notebook UpdatedSep 21, 2023 -
turboae Public
Forked from yihanjiang/turboaeCode for "Turbo Autoencoder: Deep learning based channel code for point-to-point communication channels" NeurIPS 2019
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Some simulations for wireless RL
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NN_GWTC Public
Simulations for the paper "Deep Learning for the Gaussian Wiretap Channel" with Tensorflow 2
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diffusion_models Public
Forked from acids-ircam/diffusion_modelsA series of tutorial notebooks on denoising diffusion probabilistic models in PyTorch
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Reverse-Jensen_MI_estimation Public
Estimation of Mutual Information based on a reverse Jensen inequality approach
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Implementation of an approach for wireless encoding via MI estimation
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MINE estimation implemented with Tensorflow 2
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A simple implementation of the autoencoder for wireless communication using Tensorflow 2
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quantizedfeedback Public
Forked from henkwymeersch/quantizedfeedbackLearning of a communication system over a binary feedback channel
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AutoencoderFiber Public
Forked from henkwymeersch/AutoencoderFiberThis shows how to use Autoencoders for learning constellations and receivers in fiber optical communications
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tensorflow_spsa Public
Forked from fraunhofer-iais/tensorflow_spsaTensorflow Optimizer using the SPSA method