Global: model_dir: ./EfficientNetB0_small_infer/ format: 'paddle' model_filename: inference.pdmodel params_filename: inference.pdiparams qat_image_path: ./ImageNet_val_640 ptq_image_path: ./ImageNet_val_640 input_list: ['inputs'] qat_preprocess: cls_image_preprocess ptq_preprocess: cls_image_preprocess qat_batch_size: 32 Distillation: alpha: 1.0 loss: l2 node: - softmax_0.tmp_0 QuantAware: use_pact: true activation_bits: 8 is_full_quantize: false onnx_format: True activation_quantize_type: moving_average_abs_max weight_quantize_type: channel_wise_abs_max not_quant_pattern: - skip_quant quantize_op_types: - conv2d - depthwise_conv2d - matmul - matmul_v2 weight_bits: 8 TrainConfig: epochs: 1 eval_iter: 500 learning_rate: type: CosineAnnealingDecay learning_rate: 0.015 T_max: 8000 optimizer_builder: optimizer: type: Momentum weight_decay: 0.00002 origin_metric: 0.7738 PTQ: calibration_method: 'avg' # option: avg, abs_max, hist, KL, mse skip_tensor_list: None