PyTorch Hub For Researchers

Explore and extend models from the latest cutting edge research.

Discover and publish models to a pre-trained model repository designed for research exploration. Check out the models for Researchers, or learn How It WorksContribute Models.

*This is a beta release – we will be collecting feedback and improving the PyTorch Hub over the coming months.

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PyTorch-Transformers

PyTorch implementations of popular NLP Transformers

155.9k

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YOLOv5

Ultralytics YOLOv5 🚀 for object detection, instance segmentation and image classification.

56.8k

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RoBERTa

A Robustly Optimized BERT Pretraining Approach

32.1k

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Transformer (NMT)

Transformer models for English-French and English-German translation.

32.1k

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Wide ResNet

Wide Residual Networks

17.5k

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vgg-nets

Award winning ConvNets from 2014 ImageNet ILSVRC challenge

17.5k

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SqueezeNet

Alexnet-level accuracy with 50x fewer parameters.

17.5k

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ShuffleNet v2

An efficient ConvNet optimized for speed and memory, pre-trained on ImageNet

17.5k

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ResNext

Next generation ResNets, more efficient and accurate

17.5k

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ResNet

Deep residual networks pre-trained on ImageNet

17.5k

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MobileNet v2

Efficient networks optimized for speed and memory, with residual blocks

17.5k

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Inception_v3

Also called GoogleNetv3, a famous ConvNet trained on ImageNet from 2015

17.5k

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GoogLeNet

GoogLeNet was based on a deep convolutional neural network architecture codenamed “Inception” which won ImageNet 2014.

17.5k

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FCN

Fully-Convolutional Network model with ResNet-50 and ResNet-101 backbones

17.5k

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Densenet

Dense Convolutional Network (DenseNet), connects each layer to every other layer in a feed-forward fashion.

17.5k

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AlexNet

The 2012 ImageNet winner achieved a top-5 error of 15.3%, more than 10.8 percentage points lower than that of the runner up.

17.5k

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Deeplabv3

DeepLabV3 models with ResNet-50, ResNet-101 and MobileNet-V3 backbones

17.5k

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WaveGlow

WaveGlow model for generating speech from mel spectrograms (generated by Tacotron2)

14.7k

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Tacotron 2

The Tacotron 2 model for generating mel spectrograms from text

14.7k

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SSD

Single Shot MultiBox Detector model for object detection

14.7k

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SE-ResNeXt101

ResNeXt with Squeeze-and-Excitation module added, trained with mixed precision using Tensor Cores.

14.7k

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ResNeXt101

ResNet with bottleneck 3×3 Convolutions substituted by 3×3 Grouped Convolutions, trained with mixed precision using Tensor Cores.

14.7k

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ResNet50

ResNet50 model trained with mixed precision using Tensor Cores.

14.7k

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EfficientNet

EfficientNets are a family of image classification models, which achieve state-of-the-art accuracy, being an order-of-magnitude smaller and faster. Trained with mixed precision using Tensor Cores.

14.7k

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HiFi GAN

The HiFi GAN model for generating waveforms from mel spectrograms

14.7k

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GPUNet

GPUNet is a new family of Convolutional Neural Networks designed to max out the performance of NVIDIA GPU and TensorRT.

14.7k

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FastPitch 2

The FastPitch model for generating mel spectrograms from text

14.7k

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Silero Voice Activity Detector

Pre-trained Voice Activity Detector

8.0k

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Silero Text-To-Speech Models

A set of compact enterprise-grade pre-trained TTS Models for multiple languages

5.7k

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Silero Speech-To-Text Models

A set of compact enterprise-grade pre-trained STT Models for multiple languages.

5.7k

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MiDaS

MiDaS models for computing relative depth from a single image.

5.3k

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SNNMLP

Brain-inspired Multilayer Perceptron with Spiking Neurons

4.4k

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GhostNet

Efficient networks by generating more features from cheap operations

4.4k

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X3D

X3D networks pretrained on the Kinetics 400 dataset

3.5k

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SlowFast

SlowFast networks pretrained on the Kinetics 400 dataset

3.5k

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3D ResNet

Resnet Style Video classification networks pretrained on the Kinetics 400 dataset

3.5k

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ResNeSt

A new ResNet variant.

3.3k

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YOLOP

YOLOP pretrained on the BDD100K dataset

2.2k

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Once-for-All

Once-for-all (OFA) decouples training and search, and achieves efficient inference across various edge devices and resource constraints.

1.9k

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Progressive Growing of GANs (PGAN)

High-quality image generation of fashion, celebrity faces

1.6k

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DCGAN on FashionGen

A simple generative image model for 64×64 images

1.6k

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Open-Unmix

Reference implementation for music source separation

1.5k

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ProxylessNAS

Proxylessly specialize CNN architectures for different hardware platforms.

1.5k

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IBN-Net

Networks with domain/appearance invariance

808

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U-Net for brain MRI

U-Net with batch normalization for biomedical image segmentation with pretrained weights for abnormality segmentation in brain MRI

770

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MEAL_V2

Boosting Tiny and Efficient Models using Knowledge Distillation.

701

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HybridNets

HybridNets – End2End Perception Network

664

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ResNext WSL

ResNext models trained with billion scale weakly-supervised data.

603

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HarDNet

Harmonic DenseNet pre-trained on ImageNet

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Semi-supervised and semi-weakly supervised ImageNet Models

ResNet and ResNext models introduced in the “Billion scale semi-supervised learning for image classification” paper

246

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SimpleNet

Lets Keep it simple, Using simple architectures to outperform deeper and more complex architectures

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ntsnet

classify birds using this fine-grained image classifier

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