Model
ResNeXt101-32x4d ImageNet pretrained weights
Use the NGC CLI to download:
Copied!
Model Overview
ResNet with bottleneck 3x3 Convolutions substituted by 3x3 Grouped Convolutions.
Model Architecture

Image source: Aggregated Residual Transformations for Deep Neural Networks
Image shows difference between ResNet bottleneck block and ResNeXt bottleneck block.
ResNeXt101-32x4d model's cardinality equals to 32 and bottleneck width equals to 4.
Training
This model was trained using script available on NGC and in GitHub repo.
Dataset
The following datasets were used to train this model:
- ImageNet - Image database organized according to the WordNet hierarchy, in which each noun is depicted by hundreds and thousands of images.
Performance
Performance numbers for this model are available in NGC.
References
License
This model was trained using open-source software available in Deep Learning Examples repository. For terms of use, please refer to the license of the script and the datasets the model was derived from.
Publisher
NVIDIA Deep Learning Examples
Latest Version20.06.0_amp
UpdatedSeptember 22, 2022 UTC
Compressed Size169.15 MB