operation_mode: quantization general: workers: 4 no_prefetcher: true display_figures: False model: framework: 'torch' model_name: 'mobilenetv2_w035_pt' pretrained: True pretrained_dataset: "imagenet" input_shape: [3, 224, 224] quantization: quantizer: Onnx_quantizer quantization_type: PTQ quantization_input_type: uint8 quantization_output_type: float export_dir: quantized_models dataset: dataset_name: "imagenet" # options "flowers102", "food101", "imagenet" class_names: '' classes_file_path: ./datasets/deployment_labels_imagenet.txt #data_dir: "/local/datasets/" # there shud be imagenet folder inside this directory # can also be used for quantization num_classes: 1000 # change according to your dataset #train_split: "train" #val_split: "val" quantization_split: 0.01 quantization_path: "/local/datasets/ic_imagenet_2012/val/" preprocessing: rescaling: scale: 1/255.0 # TODO scale node is already present under data_augmentation offset: 0 resizing: interpolation: nearest # nearest 'Image resize interpolation type (overrides model)' aspect_ratio: fit color_mode: rgb # mean: [0.485, 0.456, 0.406] # 'Override mean pixel value of dataset' # std: [0.229, 0.224, 0.225] # 'Override std deviation of dataset' mlflow: uri: ./pt/src/experiments_outputs/mlruns hydra: run: dir: ./pt/src/experiments_outputs/${now:%Y_%m_%d_%H_%M_%S}