Caffe
Entrenamiento y guardado de un modelo
archivo lenet_train_test.prototxt
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name: "LeNet" layer { name: "mnist" type: "Data" top: "data" top: "label" include { phase: TRAIN } transform_param { scale: 0.00390625 } data_param { source: "examples/mnist/mnist_train_lmdb" batch_size: 64 backend: LMDB } } layer { name: "mnist" type: "Data" top: "data" top: "label" include { phase: TEST } transform_param { scale: 0.00390625 } data_param { source: "examples/mnist/mnist_test_lmdb" batch_size: 100 backend: LMDB } } layer { name: "conv1" type: "Convolution" bottom: "data" top: "conv1" param { lr_mult: 1 } param { lr_mult: 2 } convolution_param { num_output: 20 kernel_size: 5 stride: 1 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "pool1" type: "Pooling" bottom: "conv1" top: "pool1" pooling_param { pool: MAX kernel_size: 2 stride: 2 } } layer { name: "conv2" type: "Convolution" bottom: "pool1" top: "conv2" param { lr_mult: 1 } param { lr_mult: 2 } convolution_param { num_output: 50 kernel_size: 5 stride: 1 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "pool2" type: "Pooling" bottom: "conv2" top: "pool2" pooling_param { pool: MAX kernel_size: 2 stride: 2 } } layer { name: "ip1" type: "InnerProduct" bottom: "pool2" top: "ip1" param { lr_mult: 1 } param { lr_mult: 2 } inner_product_param { num_output: 500 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "relu1" type: "ReLU" bottom: "ip1" top: "ip1" } layer { name: "ip2" type: "InnerProduct" bottom: "ip1" top: "ip2" param { lr_mult: 1 } param { lr_mult: 2 } inner_product_param { num_output: 10 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "accuracy" type: "Accuracy" bottom: "ip2" bottom: "label" top: "accuracy" include { phase: TEST } } layer { name: "loss" type: "SoftmaxWithLoss" bottom: "ip2" bottom: "label" top: "loss" } |
archivo lenet_solver.prototxt
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# The train/test net protocol buffer definition net: "examples/mnist/lenet_train_test.prototxt" # test_iter specifies how many forward passes the test should carry out. # In the case of MNIST, we have test batch size 100 and 100 test iterations, # covering the full 10,000 testing images. test_iter: 100 # Carry out testing every 500 training iterations. test_interval: 500 # The base learning rate, momentum and the weight decay of the network. base_lr: 0.01 momentum: 0.9 weight_decay: 0.0005 # The learning rate policy lr_policy: "inv" gamma: 0.0001 power: 0.75 # Display every 100 iterations display: 100 # The maximum number of iterations max_iter: 1000 # snapshot intermediate results snapshot: 5000 snapshot_prefix: "examples/mnist/lenet" # solver mode: CPU or GPU solver_mode: CPU |
Entrena el modelo.
./build/tools/caffe train --solver=examples/mnist/lenet_solver.prototxt
El archivo caffemodel se genera después del entrenamiento del modelo. Vuelva a escribir el archivo lenet_train_test.prototxt en el archivo lenet_deploy.prototxt usado para la implementación modificando las capas de entrada y salida.
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name: "LeNet" layer { name: "data" type: "Input" top: "data" input_param { shape: { dim: 1 dim: 1 dim: 28 dim: 28 } } } layer { name: "conv1" type: "Convolution" bottom: "data" top: "conv1" param { lr_mult: 1 } param { lr_mult: 2 } convolution_param { num_output: 20 kernel_size: 5 stride: 1 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "pool1" type: "Pooling" bottom: "conv1" top: "pool1" pooling_param { pool: MAX kernel_size: 2 stride: 2 } } layer { name: "conv2" type: "Convolution" bottom: "pool1" top: "conv2" param { lr_mult: 1 } param { lr_mult: 2 } convolution_param { num_output: 50 kernel_size: 5 stride: 1 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "pool2" type: "Pooling" bottom: "conv2" top: "pool2" pooling_param { pool: MAX kernel_size: 2 stride: 2 } } layer { name: "ip1" type: "InnerProduct" bottom: "pool2" top: "ip1" param { lr_mult: 1 } param { lr_mult: 2 } inner_product_param { num_output: 500 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "relu1" type: "ReLU" bottom: "ip1" top: "ip1" } layer { name: "ip2" type: "InnerProduct" bottom: "ip1" top: "ip2" param { lr_mult: 1 } param { lr_mult: 2 } inner_product_param { num_output: 10 weight_filler { type: "xavier" } bias_filler { type: "constant" } } } layer { name: "prob" type: "Softmax" bottom: "ip2" top: "prob" } |
Código de inferencia
En el archivo de código de inferencia de modelo customize_service.py, agregue una clase de modelo secundaria. Esta clase de modelo secundaria hereda las propiedades de su clase de modelo principal. Para obtener más información sobre las instrucciones de importación de diferentes tipos de clases de modelo padre, consulte Tabla 1.
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from model_service.caffe_model_service import CaffeBaseService import numpy as np import os, json import caffe from PIL import Image class LenetService(CaffeBaseService): def __init__(self, model_name, model_path): # Call the inference method of the parent class. super(LenetService, self).__init__(model_name, model_path) # Configure preprocessing information. transformer = caffe.io.Transformer({'data': self.net.blobs['data'].data.shape}) # Transform to NCHW. transformer.set_transpose('data', (2, 0, 1)) # Perform normalization. transformer.set_raw_scale('data', 255.0) # If the batch size is set to 1, inference is supported for only one image. self.net.blobs['data'].reshape(1, 1, 28, 28) self.transformer = transformer # Define the class labels. self.label = [0,1,2,3,4,5,6,7,8,9] def _preprocess(self, data): for k, v in data.items(): for file_name, file_content in v.items(): im = caffe.io.load_image(file_content, color=False) # Pre-process the images. self.net.blobs['data'].data[...] = self.transformer.preprocess('data', im) return def _postprocess(self, data): data = data['prob'][0, :] predicted = np.argmax(data) predicted = {"predicted" : str(predicted) } return predicted |