PyTorch implementation of SimCLR: A Simple Framework for Contrastive Learning of Visual Representations
 
 
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README.md

PyTorch implementation of SimCLR: A Simple Framework for Contrastive Learning of Visual Representations

Blog post with full documentation: Exploring SimCLR: A Simple Framework for Contrastive Learning of Visual Representations

Image of SimCLR Arch

Dependencies

  • pytorch
  • opencv

Config file

Before runing SimCLR, make sure you choose the correct running configurations on the config.yaml file.

batch_size: 256 # A batch size of N, produces 2 * (N-1) negative samples. Original implementation uses a batch size of 8192
out_dim: 64 # Output dimensionality of the embedding vector z. Original implementation uses 2048
s: 1
temperature: 0.5 # Temperature parameter for the contrastive objective
base_convnet: "resnet18" # The ConvNet base model. Choose one of: "resnet18 or resnet50". Original implementation uses resnet50
use_cosine_similarity: True # Distance metric for contrastive loss. If False, uses dot product
epochs: 40 # Number of epochs to train
num_workers: 4 # Number of workers for the data loader

Feature Evaluation

Feature evaluation is done using a linear model protocol. Feature are learnt using the STL10 unsupervised set and evaluated in the train/test splits;

Check the feature_eval/FeatureEvaluation.ipynb notebook for reproducebility.

Feature Extractor Method Architecture Top 1
Logistic Regression PCA Features - 36.0%
KNN PCA Features - 31.8
Logistic Regression SimCLR ResNet-18 71.8%
KNN SimCLR ResNet-18 66.7%

Download pre-trained model

  • ResNet-18 Trained using STl10 unsupervised set.