tesorflow模型保存代码

from __future__ import absolute_import, division, print_function, unicode_literals

import os

import tensorflow as tf
from tensorflow import keras

print(tf.version.VERSION)
(train_images, train_labels), (test_images, test_labels) = tf.keras.datasets.mnist.load_data()
train_labels = train_labels[:1000]
test_labels = test_labels[:1000]
train_images = train_images[:1000].reshape(-1, 28 * 28) / 255.0
test_images = test_images[:1000].reshape(-1, 28 * 28) / 255.0
# 定义一个简单的序列模型
def create_model():
  model = tf.keras.models.Sequential([
    keras.layers.Dense(512, activation='relu', input_shape=(784,)),
    keras.layers.Dropout(0.2),
    keras.layers.Dense(10, activation='softmax')
  ])

  model.compile(optimizer='adam',
                loss='sparse_categorical_crossentropy',
                metrics=['accuracy'])

  return model

# 创建一个基本的模型实例
model = create_model()

# 显示模型的结构
model.summary()# 定义一个简单的序列模型
def create_model():
  model = tf.keras.models.Sequential([
    keras.layers.Dense(512, activation='relu', input_shape=(784,)),
    keras.layers.Dropout(0.2),
    keras.layers.Dense(10, activation='softmax')
  ])

  model.compile(optimizer='adam',#这个是模型编译的过程
                loss='sparse_categorical_crossentropy',
                metrics=['accuracy'])

  return model
"""
# 创建一个基本的模型实例
model = create_model()

# 显示模型的结构
model.summary()
#model.fit(test_images,test_labels)#这个就是训练
checkpoint_path = "training_1/cp.ckpt"#这个是保存模型的路径
checkpoint_dir = os.path.dirname(checkpoint_path)

# 创建一个保存模型权重的回调
cp_callback = tf.keras.callbacks.ModelCheckpoint(filepath=checkpoint_path,
                                                 save_weights_only=True,
                                                 verbose=1)

# 使用新的回调训练模型
model.fit(train_images,
          train_labels,
          epochs=10,
          validation_data=(test_images,test_labels),
          callbacks=[cp_callback])  # 通过回调训练

# 这可能会生成与保存优化程序状态相关的警告。
# 这些警告(以及整个笔记本中的类似警告)是防止过时使用,可以忽略。
"""
'''
checkpoint_path = "training_1/cp.ckpt"#这个是保存模型的路径
model=create_model()
# 加载权重
model.load_weights(checkpoint_path)#这个是加上了模型

# 重新评估模型
loss,acc = model.evaluate(test_images,  test_labels, verbose=2)
print("Restored model, accuracy: {:5.2f}%".format(100*acc))
# 在文件名中包含 epoch (使用 `str.format`)
'''
checkpoint_path = "training_2/cp-{epoch:04d}.ckpt"
checkpoint_dir = os.path.dirname(checkpoint_path)

# 创建一个回调,每 5 个 epochs 保存模型的权重
cp_callback = tf.keras.callbacks.ModelCheckpoint(
    filepath=checkpoint_path,
    verbose=1,
    save_weights_only=True,
    period=5)

# 创建一个新的模型实例
#model = create_model()
"""
# 使用 `checkpoint_path` 格式保存权重
model.save_weights(checkpoint_path.format(epoch=0))

# 使用新的回调*训练*模型
model.fit(train_images,
              train_labels,
              epochs=50,
              callbacks=[cp_callback],
              validation_data=(test_images,test_labels),
              verbose=0)
"""
"""
latest = tf.train.latest_checkpoint(checkpoint_dir)
print(latest)

# 加载以前保存的权重
model.load_weights(latest)

# 重新评估模型
loss, acc = model.evaluate(test_images,  test_labels, verbose=2)
print("Restored model, accuracy: {:5.2f}%".format(100*acc))
"""
"""
# 创建一个新的模型实例
model = create_model()

# 训练模型
#model.fit(train_images, train_labels, epochs=5)#预测的时候需要关掉

# 将整个模型保存为HDF5文件
#model.save('my_model.h5')
# 重新创建完全相同的模型,包括其权重和优化程序
new_model = keras.models.load_model('my_model.h5')

# 显示网络结构
new_model.summary()
loss, acc = new_model.evaluate(test_images,  test_labels, verbose=2)
print("Restored model, accuracy: {:5.2f}%".format(100*acc))
"""
# #这个demo是保存整个结构框架和模型
# model = create_model()
#
# model.fit(train_images, train_labels, epochs=5)
# import time
# saved_model_path = "./saved_models/{}".format(int(time.time()))
#
# tf.keras.experimental.export_saved_model(model, saved_model_path)
# #print(saved_model_path)
saved_model_path="./saved_models/1592991564"
new_model = tf.keras.experimental.load_from_saved_model(saved_model_path)

# 显示网络结构
new_model.summary()
# 必须在评估之前编译模型。
# 如果仅部署已保存的模型,则不需要此步骤。

new_model.compile(optimizer=model.optimizer,  # 保留已加载的优化程序
                  loss='sparse_categorical_crossentropy',
                  metrics=['accuracy'])
# 评估已恢复的模型
loss, acc = new_model.evaluate(test_images,  test_labels, verbose=2)
print("Restored model, accuracy: {:5.2f}%".format(100*acc))

猜你喜欢

转载自blog.csdn.net/zhuiyunzhugang/article/details/106948919
今日推荐