sisua
Autoencoder library
A software framework for semi-supervised generative Autoencoder models applied to single-cell data analysis.
SemI-SUpervised generative Autoencoder models for single cell data
18 stars
6 watching
4 forks
Language: Jupyter Notebook
last commit: over 3 years ago
Linked from 1 awesome list
bayesian-inferencedeep-learningsemi-supervised-learningsingle-cellvariational-autoencoder
Related projects:
Repository | Description | Stars |
---|---|---|
shobrook/sequitur | A library of autoencoders for sequential data | 429 |
jakezhaojb/arae | An implementation of Adversarially Regularized Autoencoders for language generation and discrete structure modeling. | 400 |
bimsbbioinfo/maui | An autoencoder-based toolkit for multi-omics data analysis using Bayesian latent factor models and deep learning | 48 |
madebyollin/taesd | A Tiny AutoEncoder implementation for Stable Diffusion's image generation model | 581 |
fducau/aae_pytorch | An implementation of Adversarial Autoencoders using PyTorch for training neural networks on structured data. | 198 |
zheng-yuwei/stacked_autoencoder | This software enables the creation of deep learning networks with stacked auto-encoders and fine-tunes them using backpropagation for image classification tasks. | 41 |
jbloomaus/saelens | A tool for training and analyzing sparse autoencoders to improve the understanding of neural networks and create safer AI systems. | 461 |
vuptran/graph-representation-learning | A deep learning framework for graph autoencoder-based link prediction and node classification tasks | 253 |
dlr-rm/augmentedautoencoder | A system for real-time RGB-based object detection and 6D pose estimation using a novel autoencoder-based approach. | 344 |
bin123apple/autocoder | An AI model designed to generate and execute code automatically | 814 |
bowang-lab/scgpt | A Jupyter Notebook-based framework for training and applying generative AI models to single-cell multi-omics data | 1,039 |
minimaxir/automl-gs | Automates machine learning model creation and optimization for complex datasets | 1,853 |
gudovskiy/autodo | Develops an automated machine learning framework to improve deep learning model performance on biased and noisy data | 24 |
aboev/arae-tf | Automates generation of discrete sequence text using adversarially regularized autoencoders | 20 |
zhegan27/convsent | Trains an autoencoder to learn generic sentence representations using convolutional neural networks | 34 |