--- library_name: keras tags: - image-classification - computer-vision - convmixer - cifar10 --- ## Model description ### Image classification with ConvMixer [Keras Example Link](https://keras.io/examples/vision/convmixer/) In the [Patches Are All You Need paper](https://arxiv.org/abs/2201.09792), the authors extend the idea of using patches to train an all-convolutional network and demonstrate competitive results. Their architecture namely ConvMixer uses recipes from the recent isotrophic architectures like ViT, MLP-Mixer (Tolstikhin et al.), such as using the same depth and resolution across different layers in the network, residual connections, and so on. ConvMixer is very similar to the MLP-Mixer, model with the following key differences: Instead of using fully-connected layers, it uses standard convolution layers. Instead of LayerNorm (which is typical for ViTs and MLP-Mixers), it uses BatchNorm. Full Credits to Sayak Paul for this work. ## Intended uses & limitations More information needed ## Training and evaluation data Trained and evaluated on [CIFAR-10](https://keras.io/api/datasets/cifar10/) dataset. ## Training procedure ### Training hyperparameters The following hyperparameters were used during training: | name | learning_rate | decay | beta_1 | beta_2 | epsilon | amsgrad | weight_decay | exclude_from_weight_decay | training_precision | |----|-------------|-----|------|------|-------|-------|------------|-------------------------|------------------| |AdamW|0.0010000000474974513|0.0|0.8999999761581421|0.9990000128746033|1e-07|False|9.999999747378752e-05|None|float32| ## Training Metrics Model history needed ## Model Plot
View Model Plot ![Model Image](./model.png)