概述
Keras 是一个用于构建和训练深度学习模型的高阶 API。它可用于快速设计原型、高级研究和生产,具有以下三个主要优势:
- 方便用户使用
Keras 具有针对常见用例做出优化的简单而一致的界面。它可针对用户错误提供切实可行的清晰反馈。- 模块化和可组合
将可配置的构造块连接在一起就可以构建 Keras 模型,并且几乎不受限制。- 易于扩展
可以编写自定义构造块以表达新的研究创意,并且可以创建新层、损失函数并开发先进的模型。
目录
1.导入tf.keras
2.构建简单的模型
- 序列模型
- 配置层
3.训练和评估
- 设置训练流程
- 输入NumPy数据
- 输入tf.data数据集
- 评估和预测
4.构建高级模型
- 函数式API
- 模型子类化
- 自定义层
5.回调
6.保存和恢复
- 仅限权重
- 仅限配置
- 整个模型
7.Eager Execution
8.分布
- Estimator
- 多个GPU
导入 tf.keras
tf.keras
是 TensorFlow 对 Keras API 规范的实现。这是一个用于构建和训练模型的高阶 API,包含对 TensorFlow 特定功能(例如 Eager Execution、tf.data
管道和 Estimator)的顶级支持。 tf.keras
使 TensorFlow 更易于使用,并且不会牺牲灵活性和性能。
首先,导入 tf.keras
以设置 TensorFlow 程序:
import tensorflow as tf
from tensorflow.keras import layers
print(tf.VERSION)
print(tf.keras.__version__)
1.11.0
2.1.6-tf
tf.keras
可以运行任何与 Keras 兼容的代码,但请注意:
- 最新版 TensorFlow 中的
tf.keras
版本可能与 PyPI 中的最新keras
版本不同。请查看tf.keras.version
。 - 保存模型的权重时,
tf.keras
默认采用检查点格式。请传递save_format='h5'
以使用 HDF5。
构建简单的模型
序列模型
在 Keras 中,您可以通过组合层来构建模型。模型(通常)是由层构成的图。最常见的模型类型是层的堆叠:tf.keras.Sequential
模型。
要构建一个简单的全连接网络(即多层感知器),请运行以下代码:
model = tf.keras.Sequential()
# Adds a densely-connected layer with 64 units to the model:
model.add(layers.Dense(64, activation='relu'))
# Add another:
model.add(layers.Dense(64, activation='relu'))
# Add a softmax layer with 10 output units:
model.add(layers.Dense(10, activation='softmax'))
配置层
我们可以使用很多 tf.keras.layers
,它们具有一些相同的构造函数参数:
activation
:设置层的激活函数。此参数由内置函数的名称指定,或指定为可调用对象。默认情况下,系统不会应用任何激活函数。kernel_initializer
和bias_initializer
:创建层权重(核和偏差)的初始化方案。此参数是一个名称或可调用对象,默认为"Glorot uniform"
初始化器。kernel_regularizer
和bias_regularizer
:应用层权重(核和偏差)的正则化方案,例如 L1 或 L2 正则化。默认情况下,系统不会应用正则化函数。
以下代码使用构造函数参数实例化 tf.keras.layers. Dense
层:
# Create a sigmoid layer:
layers.Dense(64, activation='sigmoid')
# Or:
layers.Dense(64, activation=tf.sigmoid)
# A linear layer with L1 regularization of factor 0.01 applied to the kernel matrix:
layers.Dense(64, kernel_regularizer=tf.keras.regularizers.l1(0.01))
# A linear layer with L2 regularization of factor 0.01 applied to the bias vector:
layers.Dense(64, bias_regularizer=tf.keras.regularizers.l2(0.01))
# A linear layer with a kernel initialized to a random orthogonal matrix:
layers.Dense(64, kernel_initializer='orthogonal')
# A linear layer with a bias vector initialized to 2.0s:
layers.Dense(64, bias_initializer=tf.keras.initializers.constant(2.0))
训练和评估
设置训练流程
构建好模型后,通过调用 compile
方法配置该模型的学习流程:
model = tf.keras.Sequential([
# Adds a densely-connected layer with 64 units to the model:
layers.Dense(64, activation='relu'),
# Add another:
layers.Dense(64, activation='relu'),
# Add a softmax layer with 10 output units:
layers.Dense(10, activation='softmax')])
model.compile(optimizer=tf.train.AdamOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
tf.keras.Model.compile
采用三个重要参数:
optimizer
:此对象会指定训练过程。从tf.train
模块向其传递优化器实例,例如tf.train.AdamOptimizer
、tf.train.RMSPropOptimizer
或tf.train.GradientDescentOptimizer
。loss
:要在优化期间最小化的函数。常见选择包括均方误差 (mse
)、categorical_crossentropy
和binary_crossentropy
。损失函数由名称或通过从tf.keras.losses
模块传递可调用对象来指定。metrics
:用于监控训练。它们是tf.keras.metrics
模块中的字符串名称或可调用对象。
以下代码展示了配置模型以进行训练的几个示例:
# Configure a model for mean-squared error regression.
model.compile(optimizer=tf.train.AdamOptimizer(0.01),
loss='mse',
# mean squared error
metrics=['mae'])
# mean absolute error
# Configure a model for categorical classification.
model.compile(optimizer=tf.train.RMSPropOptimizer(0.01),
loss=tf.keras.losses.categorical_crossentropy,
metrics=[tf.keras.metrics.categorical_accuracy])
输入 NumPy 数据
对于小型数据集,请使用内存中的 NumPy 数组训练和评估模型。使用 fit
方法使模型与训练数据“拟合”:
import numpy as np
data = np.random.random((1000, 32))
labels = np.random.random((1000, 10))
model.fit(data, labels, epochs=10, batch_size=32)
Epoch 1/10
1000/1000 [==============================] - 0s 253us/step - loss: 11.5766 - categorical_accuracy: 0.1110
Epoch 2/10
1000/1000 [==============================] - 0s 64us/step - loss: 11.5205 - categorical_accuracy: 0.1070
Epoch 3/10
1000/1000 [==============================] - 0s 70us/step - loss: 11.5146 - categorical_accuracy: 0.1100
Epoch 4/10
1000/1000 [==============================] - 0s 69us/step - loss: 11.5070 - categorical_accuracy: 0.0940
Epoch 5/10
1000/1000 [==============================] - 0s 71us/step - loss: 11.5020 - categorical_accuracy: 0.1150
Epoch 6/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5019 - categorical_accuracy: 0.1350
Epoch 7/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5012 - categorical_accuracy: 0.0970
Epoch 8/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.4993 - categorical_accuracy: 0.1180
Epoch 9/10
1000/1000 [==============================] - 0s 69us/step - loss: 11.4905 - categorical_accuracy: 0.1320
Epoch 10/10
1000/1000 [==============================] - 0s 66us/step - loss: 11.4909 - categorical_accuracy: 0.1410
tf.keras.Model.fit
采用三个重要参数:
epochs
:以周期为单位进行训练。一个周期是对整个输入数据的一次迭代(以较小的批次完成迭代)。batch_size
:当传递 NumPy 数据时,模型将数据分成较小的批次,并在训练期间迭代这些批次。此整数指定每个批次的大小。请注意,如果样本总数不能被批次大小整除,则最后一个批次可能更小。validation_data
:在对模型进行原型设计时,您需要轻松监控该模型在某些验证数据上达到的效果。传递此参数(输入和标签元组)可以让该模型在每个周期结束时以推理模式显示所传递数据的损失和指标。
下面是使用 validation_data
的示例:
import numpy as np
data = np.random.random((1000, 32))
labels = np.random.random((1000, 10))
val_data = np.random.random((100, 32))
val_labels = np.random.random((100, 10))
model.fit(data, labels, epochs=10, batch_size=32,
validation_data=(val_data, val_labels))
Train on 1000 samples, validate on 100 samples
Epoch 1/10
1000/1000 [==============================] - 0s 124us/step - loss: 11.5267 - categorical_accuracy: 0.1070 - val_loss: 11.0015 - val_categorical_accuracy: 0.0500
Epoch 2/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5243 - categorical_accuracy: 0.0840 - val_loss: 10.9809 - val_categorical_accuracy: 0.1200
Epoch 3/10
1000/1000 [==============================] - 0s 73us/step - loss: 11.5213 - categorical_accuracy: 0.1000 - val_loss: 10.9945 - val_categorical_accuracy: 0.0800
Epoch 4/10
1000/1000 [==============================] - 0s 73us/step - loss: 11.5213 - categorical_accuracy: 0.1080 - val_loss: 10.9967 - val_categorical_accuracy: 0.0700
Epoch 5/10
1000/1000 [==============================] - 0s 73us/step - loss: 11.5181 - categorical_accuracy: 0.1150 - val_loss: 11.0184 - val_categorical_accuracy: 0.0500
Epoch 6/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5177 - categorical_accuracy: 0.1150 - val_loss: 10.9892 - val_categorical_accuracy: 0.0200
Epoch 7/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5130 - categorical_accuracy: 0.1320 - val_loss: 11.0038 - val_categorical_accuracy: 0.0500
Epoch 8/10
1000/1000 [==============================] - 0s 74us/step - loss: 11.5123 - categorical_accuracy: 0.1130 - val_loss: 11.0065 - val_categorical_accuracy: 0.0100
Epoch 9/10
1000/1000 [==============================] - 0s 72us/step - loss: 11.5076 - categorical_accuracy: 0.1150 - val_loss: 11.0062 - val_categorical_accuracy: 0.0800
Epoch 10/10
1000/1000 [==============================] - 0s 67us/step - loss: 11.5035 - categorical_accuracy: 0.1390 - val_loss: 11.0241 - val_categorical_accuracy: 0.1100
输入 tf.data 数据集
使用 Datasets API 可扩展为大型数据集或多设备训练。将 tf.data.Dataset
实例传递到 fit
方法:
# Instantiates a toy dataset instance:
dataset = tf.data.Dataset.from_tensor_slices((data, labels))
dataset = dataset.batch(32)
dataset = dataset.repeat()
# Don't forget to specify `steps_per_epoch` when calling `fit` on a dataset.
model.fit(dataset, epochs=10, steps_per_epoch=30)
Epoch 1/10
30/30 [==============================] - 0s 6ms/step - loss: 11.4973 - categorical_accuracy: 0.1406
Epoch 2/10
30/30 [==============================] - 0s 2ms/step - loss: 11.5182 - categorical_accuracy: 0.1344
Epoch 3/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4953 - categorical_accuracy: 0.1344
Epoch 4/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4842 - categorical_accuracy: 0.1542
Epoch 5/10
30/30 [==============================] - 0s 2ms/step - loss: 11.5081 - categorical_accuracy: 0.1510
Epoch 6/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4939 - categorical_accuracy: 0.1615
Epoch 7/10
30/30 [==============================] - 0s 2ms/step - loss: 11.5049 - categorical_accuracy: 0.1823
Epoch 8/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4617 - categorical_accuracy: 0.1760
Epoch 9/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4863 - categorical_accuracy: 0.1688
Epoch 10/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4946 - categorical_accuracy: 0.1885
在上方代码中,fit
方法使用了 steps_per_epoch
参数(表示模型在进入下一个周期之前运行的训练步数)。由于 Dataset
会生成批次数据,因此该代码段不需要 batch_size
。
数据集也可用于验证:
dataset = tf.data.Dataset.from_tensor_slices((data, labels))
dataset = dataset.batch(32).repeat()
val_dataset = tf.data.Dataset.from_tensor_slices((val_data, val_labels))
val_dataset = val_dataset.batch(32).repeat()
model.fit(dataset, epochs=10, steps_per_epoch=30,
validation_data=val_dataset,
validation_steps=3)
Epoch 1/10
30/30 [==============================] - 0s 8ms/step - loss: 11.4649 - categorical_accuracy: 0.1740 - val_loss: 11.0269 - val_categorical_accuracy: 0.0521
Epoch 2/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4794 - categorical_accuracy: 0.1865 - val_loss: 11.4233 - val_categorical_accuracy: 0.0521
Epoch 3/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4604 - categorical_accuracy: 0.1760 - val_loss: 11.4040 - val_categorical_accuracy: 0.0208
Epoch 4/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4475 - categorical_accuracy: 0.1771 - val_loss: 11.3095 - val_categorical_accuracy: 0.2396
Epoch 5/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4727 - categorical_accuracy: 0.1750 - val_loss: 11.0481 - val_categorical_accuracy: 0.0938
Epoch 6/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4569 - categorical_accuracy: 0.1833 - val_loss: 11.3550 - val_categorical_accuracy: 0.1562
Epoch 7/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4653 - categorical_accuracy: 0.1958 - val_loss: 11.4325 - val_categorical_accuracy: 0.0417
Epoch 8/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4246 - categorical_accuracy: 0.1823 - val_loss: 11.3625 - val_categorical_accuracy: 0.0417
Epoch 9/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4542 - categorical_accuracy: 0.1729 - val_loss: 11.0326 - val_categorical_accuracy: 0.0521
Epoch 10/10
30/30 [==============================] - 0s 2ms/step - loss: 11.4600 - categorical_accuracy: 0.1979 - val_loss: 11.3494 - val_categorical_accuracy: 0.1042
评估和预测
tf.keras.Model.evaluate
和 tf.keras.Model.predict
方法可以使用 NumPy 数据和 tf.data.Dataset
。
要评估所提供数据的推理模式损失和指标,请运行以下代码:
data = np.random.random((1000, 32))
labels = np.random.random((1000, 10))
model.evaluate(data, labels, batch_size=32)
model.evaluate(dataset, steps=30)
1000/1000 [==============================] - 0s 83us/step
30/30 [==============================] - 0s 3ms/step
[11.43181880315145, 0.18333333333333332]
要在所提供数据(采用 NumPy 数组形式)的推理中预测最后一层的输出,请运行以下代码:
result = model.predict(data, batch_size=32)
print(result.shape)
(1000, 10)
构建高级模型
函数式 API
tf.keras.Sequential
模型是层的简单堆叠,无法表示任意模型。使用 Keras 函数式 API 可以构建复杂的模型拓扑,例如:
- 多输入模型,
- 多输出模型,
- 具有共享层的模型(同一层被调用多次),
- 具有非序列数据流的模型(例如,剩余连接)。
使用函数式 API 构建的模型具有以下特征:
- 层实例可调用并返回张量。
- 输入张量和输出张量用于定义
tf.keras.Model
实例。 - 此模型的训练方式和
Sequential
模型一样。
以下示例使用函数式 API 构建一个简单的全连接网络:
inputs = tf.keras.Input(shape=(32,))
# Returns a placeholder tensor
# A layer instance is callable on a tensor, and returns a tensor.
x = layers.Dense(64, activation='relu')(inputs)
x = layers.Dense(64, activation='relu')(x)
predictions = layers.Dense(10, activation='softmax')(x)
在给定输入和输出的情况下实例化模型。
model = tf.keras.Model(inputs=inputs, outputs=predictions)
# The compile step specifies the training configuration.
model.compile(optimizer=tf.train.RMSPropOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
# Trains for 5 epochs
model.fit(data, labels, batch_size=32, epochs=5)
Epoch 1/5
1000/1000 [==============================] - 0s 260us/step - loss: 11.7190 - acc: 0.1080
Epoch 2/5
1000/1000 [==============================] - 0s 75us/step - loss: 11.5347 - acc: 0.1010
Epoch 3/5
1000/1000 [==============================] - 0s 74us/step - loss: 11.5020 - acc: 0.1100
Epoch 4/5
1000/1000 [==============================] - 0s 75us/step - loss: 11.4908 - acc: 0.1090
Epoch 5/5
1000/1000 [==============================] - 0s 74us/step - loss: 11.4809 - acc: 0.1330
模型子类化
通过对 tf.keras.Model
进行子类化并定义您自己的前向传播来构建完全可自定义的模型。在 __init__
方法中创建层并将它们设置为类实例的属性。在 call
方法中定义前向传播。
在启用 Eager Execution 时,模型子类化特别有用,因为可以命令式地编写前向传播。
要点:针对作业使用正确的 API。虽然模型子类化较为灵活,但代价是复杂性更高且用户出错率更高。如果可能,请首选函数式 API。
以下示例展示了使用自定义前向传播进行子类化的 tf.keras.Model
:
class MyModel(tf.keras.Model):
def __init__(self, num_classes=10):
super(MyModel, self).__init__(name='my_model')
self.num_classes = num_classes
# Define your layers here.
self.dense_1 = layers.Dense(32, activation='relu')
self.dense_2 = layers.Dense(num_classes, activation='sigmoid')
def call(self, inputs):
# Define your forward pass here,
# using layers you previously defined (in `__init__`).
x = self.dense_1(inputs)
return self.dense_2(x)
def compute_output_shape(self, input_shape):
# You need to override this function if you want to use the subclassed model
# as part of a functional-style model.
# Otherwise, this method is optional.
shape = tf.TensorShape(input_shape).as_list()
shape[-1] = self.num_classes
return tf.TensorShape(shape)
实例化新模型类:
model = MyModel(num_classes=10)
# The compile step specifies the training configuration.
model.compile(optimizer=tf.train.RMSPropOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
# Trains for 5 epochs.
model.fit(data, labels, batch_size=32, epochs=5)
Epoch 1/5
1000/1000 [==============================] - 0s 224us/step - loss: 11.5206 - acc: 0.0990
Epoch 2/5
1000/1000 [==============================] - 0s 62us/step - loss: 11.5128 - acc: 0.1070
Epoch 3/5
1000/1000 [==============================] - 0s 64us/step - loss: 11.5023 - acc: 0.0980
Epoch 4/5
1000/1000 [==============================] - 0s 65us/step - loss: 11.4941 - acc: 0.0980
Epoch 5/5
1000/1000 [==============================] - 0s 66us/step - loss: 11.4879 - acc: 0.0990
自定义层
通过对 tf.keras.layers.Layer
进行子类化并实现以下方法来创建自定义层:
build
:创建层的权重。使用add_weight
方法添加权重。call
:定义前向传播。compute_output_shape
:指定在给定输入形状的情况下如何计算层的输出形状。- 或者,可以通过实现
get_config
方法和from_config
类方法序列化层。
下面是一个使用核矩阵实现输入 matmul
的自定义层示例:
class MyLayer(layers.Layer):
def __init__(self, output_dim, **kwargs):
self.output_dim = output_dim
super(MyLayer, self).__init__(**kwargs)
def build(self, input_shape):
shape = tf.TensorShape((input_shape[1], self.output_dim))
# Create a trainable weight variable for this layer.
self.kernel = self.add_weight(name='kernel',
shape=shape,
initializer='uniform',
trainable=True)
# Be sure to call this at the end
super(MyLayer, self).build(input_shape)
def call(self, inputs):
return tf.matmul(inputs, self.kernel)
def compute_output_shape(self, input_shape):
shape = tf.TensorShape(input_shape).as_list()
shape[-1] = self.output_dim
return tf.TensorShape(shape)
def get_config(self):
base_config = super(MyLayer, self).get_config()
base_config['output_dim'] = self.output_dim
return base_config
@classmethod
def from_config(cls, config):
return cls(**config)
model = tf.keras.Sequential([
MyLayer(10),
layers.Activation('softmax')])
# The compile step specifies the training configuration
model.compile(optimizer=tf.train.RMSPropOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
# Trains for 5 epochs.
model.fit(data, labels, batch_size=32, epochs=5)
Epoch 1/5
1000/1000 [==============================] - 0s 170us/step - loss: 11.4872 - acc: 0.0990
Epoch 2/5
1000/1000 [==============================] - 0s 52us/step - loss: 11.4817 - acc: 0.0910
Epoch 3/5
1000/1000 [==============================] - 0s 52us/step - loss: 11.4800 - acc: 0.0960
Epoch 4/5
1000/1000 [==============================] - 0s 57us/step - loss: 11.4778 - acc: 0.0960
Epoch 5/5
1000/1000 [==============================] - 0s 60us/step - loss: 11.4764 - acc: 0.0930
回调
回调是传递给模型的对象,用于在训练期间自定义该模型并扩展其行为。您可以编写自定义回调,也可以使用包含以下方法的内置 tf.keras.callbacks
:
tf.keras.callbacks.ModelCheckpoint
:定期保存模型的检查点。tf.keras.callbacks.LearningRateScheduler
:动态更改学习速率。tf.keras.callbacks.EarlyStopping
:在验证效果不再改进时中断训练。tf.keras.callbacks.TensorBoard
:使用 TensorBoard 监控模型的行为。
要使用 tf.keras.callbacks.Callback
,请将其传递给模型的 fit
方法:
callbacks = [
# Interrupt training if `val_loss` stops improving for over 2 epochs
tf.keras.callbacks.EarlyStopping(patience=2, monitor='val_loss'),
# Write TensorBoard logs to `./logs` directory
tf.keras.callbacks.TensorBoard(log_dir='./logs')
]
model.fit(data, labels, batch_size=32, epochs=5, callbacks=callbacks,
validation_data=(val_data, val_labels))
Train on 1000 samples, validate on 100 samples
Epoch 1/5
1000/1000 [==============================] - 0s 150us/step - loss: 11.4748 - acc: 0.1230 - val_loss: 10.9787 - val_acc: 0.1000
Epoch 2/5
1000/1000 [==============================] - 0s 78us/step - loss: 11.4730 - acc: 0.1060 - val_loss: 10.9783 - val_acc: 0.1300
Epoch 3/5
1000/1000 [==============================] - 0s 82us/step - loss: 11.4711 - acc: 0.1130 - val_loss: 10.9756 - val_acc: 0.1500
Epoch 4/5
1000/1000 [==============================] - 0s 82us/step - loss: 11.4704 - acc: 0.1050 - val_loss: 10.9772 - val_acc: 0.0900
Epoch 5/5
1000/1000 [==============================] - 0s 83us/step - loss: 11.4689 - acc: 0.1140 - val_loss: 10.9781 - val_acc: 0.1300
保存和恢复
仅限权重
使用 tf.keras.Model.save_weights
保存并加载模型的权重:
model = tf.keras.Sequential([
layers.Dense(64, activation='relu'),
layers.Dense(10, activation='softmax')])
model.compile(optimizer=tf.train.AdamOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
# Save weights to a TensorFlow Checkpoint file
model.save_weights('./weights/my_model')
# Restore the model's state,
# this requires a model with the same architecture.
model.load_weights('./weights/my_model')
默认情况下,会以 TensorFlow 检查点文件格式保存模型的权重。权重也可以另存为 Keras HDF5 格式(Keras 多后端实现的默认格式):
# Save weights to a HDF5 file
model.save_weights('my_model.h5', save_format='h5')
# Restore the model's state
model.load_weights('my_model.h5')
仅限配置
可以保存模型的配置,此操作会对模型架构(不含任何权重)进行序列化。即使没有定义原始模型的代码,保存的配置也可以重新创建并初始化相同的模型。Keras 支持 JSON 和 YAML 序列化格式:
# Serialize a model to JSON format
json_string = model.to_json()
json_string
'{"backend": "tensorflow", "keras_version": "2.1.6-tf", "config": {"name": "sequential_3", "layers": [{"config": {"units": 64, "kernel_regularizer": null, "activation": "relu", "bias_constraint": null, "trainable": true, "use_bias": true, "bias_initializer": {"config": {"dtype": "float32"}, "class_name": "Zeros"}, "activity_regularizer": null, "dtype": null, "kernel_constraint": null, "kernel_initializer": {"config": {"mode": "fan_avg", "seed": null, "distribution": "uniform", "scale": 1.0, "dtype": "float32"}, "class_name": "VarianceScaling"}, "name": "dense_17", "bias_regularizer": null}, "class_name": "Dense"}, {"config": {"units": 10, "kernel_regularizer": null, "activation": "softmax", "bias_constraint": null, "trainable": true, "use_bias": true, "bias_initializer": {"config": {"dtype": "float32"}, "class_name": "Zeros"}, "activity_regularizer": null, "dtype": null, "kernel_constraint": null, "kernel_initializer": {"config": {"mode": "fan_avg", "seed": null, "distribution": "uniform", "scale": 1.0, "dtype": "float32"}, "class_name": "VarianceScaling"}, "name": "dense_18", "bias_regularizer": null}, "class_name": "Dense"}]}, "class_name": "Sequential"}'
import json
import pprint
pprint.pprint(json.loads(json_string))
{'backend': 'tensorflow',
'class_name': 'Sequential',
'config': {'layers': [{'class_name': 'Dense',
'config': {'activation': 'relu',
'activity_regularizer': None,
'bias_constraint': None,
'bias_initializer': {'class_name': 'Zeros',
'config': {'dtype': 'float32'}},
'bias_regularizer': None,
'dtype': None,
'kernel_constraint': None,
'kernel_initializer': {'class_name': 'VarianceScaling',
'config': {'distribution': 'uniform',
'dtype': 'float32',
'mode': 'fan_avg',
'scale': 1.0,
'seed': None}},
'kernel_regularizer': None,
'name': 'dense_17',
'trainable': True,
'units': 64,
'use_bias': True}},
{'class_name': 'Dense',
'config': {'activation': 'softmax',
'activity_regularizer': None,
'bias_constraint': None,
'bias_initializer': {'class_name': 'Zeros',
'config': {'dtype': 'float32'}},
'bias_regularizer': None,
'dtype': None,
'kernel_constraint': None,
'kernel_initializer': {'class_name': 'VarianceScaling',
'config': {'distribution': 'uniform',
'dtype': 'float32',
'mode': 'fan_avg',
'scale': 1.0,
'seed': None}},
'kernel_regularizer': None,
'name': 'dense_18',
'trainable': True,
'units': 10,
'use_bias': True}}],
'name': 'sequential_3'},
'keras_version': '2.1.6-tf'}
从 json 重新创建模型(刚刚初始化)。
fresh_model = tf.keras.models.model_from_json(json_string)
将模型序列化为 YAML 格式
yaml_string = model.to_yaml()
print(yaml_string)
backend: tensorflow
class_name: Sequential
config:
layers:
- class_name: Dense
config:
activation: relu
activity_regularizer: null
bias_constraint: null
bias_initializer:
class_name: Zeros
config: {dtype: float32}
bias_regularizer: null
dtype: null
kernel_constraint: null
kernel_initializer:
class_name: VarianceScaling
config: {distribution: uniform, dtype: float32, mode: fan_avg, scale: 1.0,
seed: null}
kernel_regularizer: null
name: dense_17
trainable: true
units: 64
use_bias: true
- class_name: Dense
config:
activation: softmax
activity_regularizer: null
bias_constraint: null
bias_initializer:
class_name: Zeros
config: {dtype: float32}
bias_regularizer: null
dtype: null
kernel_constraint: null
kernel_initializer:
class_name: VarianceScaling
config: {distribution: uniform, dtype: float32, mode: fan_avg, scale: 1.0,
seed: null}
kernel_regularizer: null
name: dense_18
trainable: true
units: 10
use_bias: true
name: sequential_3
keras_version: 2.1.6-tf
从 yaml 重新创建模型
fresh_model = tf.keras.models.model_from_yaml(yaml_string)
注意:子类化模型不可序列化,因为它们的架构由
call
方法正文中的 Python 代码定义。
整个模型
整个模型可以保存到一个文件中,其中包含权重值、模型配置乃至优化器配置。这样,您就可以对模型设置检查点并稍后从完全相同的状态继续训练,而无需访问原始代码。
# Create a trivial model
model = tf.keras.Sequential([
layers.Dense(10, activation='softmax', input_shape=(32,)),
layers.Dense(10, activation='softmax')
])
model.compile(optimizer='rmsprop',
loss='categorical_crossentropy',
metrics=['accuracy'])
model.fit(data, labels, batch_size=32, epochs=5)
# Save entire model to a HDF5 file
model.save('my_model.h5')
# Recreate the exact same model, including weights and optimizer.
model = tf.keras.models.load_model('my_model.h5')
Epoch 1/5
1000/1000 [==============================] - 0s 297us/step - loss: 11.5009 - acc: 0.0980
Epoch 2/5
1000/1000 [==============================] - 0s 76us/step - loss: 11.4844 - acc: 0.0960
Epoch 3/5
1000/1000 [==============================] - 0s 77us/step - loss: 11.4791 - acc: 0.0850
Epoch 4/5
1000/1000 [==============================] - 0s 78us/step - loss: 11.4771 - acc: 0.1020
Epoch 5/5
1000/1000 [==============================] - 0s 79us/step - loss: 11.4763 - acc: 0.0900
Eager Execution
Eager Execution 是一种命令式编程环境,可立即评估操作。此环境对于 Keras 并不是必需的,但是受 tf.keras
的支持,并且可用于检查程序和调试。
所有 tf.keras
模型构建 API 都与 Eager Execution 兼容。虽然可以使用 Sequential
和函数式 API,但 Eager Execution 对模型子类化和构建自定义层特别有用。与通过组合现有层来创建模型的 API 不同,函数式 API 要求您编写前向传播代码。
请参阅 Eager Execution 指南,了解将 Keras 模型与自定义训练循环和 tf.GradientTape
搭配使用的示例。
分布
Estimator
Estimator API 用于针对分布式环境训练模型。它适用于一些行业使用场景,例如用大型数据集进行分布式训练并导出模型以用于生产。
tf.keras.Model
可以通过 tf.estimator
API 进行训练,方法是将该模型转换为 tf.estimator.Estimator
对象(通过 tf.keras.estimator.model_to_estimator
)。请参阅用 Keras 模型创建 Estimator。
model = tf.keras.Sequential([layers.Dense(10,activation='softmax'),
layers.Dense(10,activation='softmax')])
model.compile(optimizer=tf.train.RMSPropOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
estimator = tf.keras.estimator.model_to_estimator(model)
INFO:tensorflow:Using the Keras model provided.
INFO:tensorflow:Using default config.
WARNING:tensorflow:Using temporary folder as model directory: /tmp/tmpm0ljzq8s
INFO:tensorflow:Using config: {'_experimental_distribute': None, '_master': '', '_eval_distribute': None, '_num_ps_replicas': 0, '_protocol': None, '_global_id_in_cluster': 0, '_save_summary_steps': 100, '_tf_random_seed': None, '_model_dir': '/tmp/tmpm0ljzq8s', '_evaluation_master': '', '_task_id': 0, '_keep_checkpoint_max': 5, '_save_checkpoints_steps': None, '_service': None, '_num_worker_replicas': 1, '_save_checkpoints_secs': 600, '_is_chief': True, '_cluster_spec': <tensorflow.python.training.server_lib.ClusterSpec object at 0x7fad8c5d3e10>, '_keep_checkpoint_every_n_hours': 10000, '_log_step_count_steps': 100, '_session_config': allow_soft_placement: true
graph_options {
rewrite_options {
meta_optimizer_iterations: ONE
}
}
, '_train_distribute': None, '_task_type': 'worker', '_device_fn': None}
注意:请启用 Eager Execution 以调试 Estimator 输入函数并检查数据。
多个 GPU
tf.keras
模型可以使用 tf.contrib.distribute.DistributionStrategy
在多个 GPU 上运行。此 API 在多个 GPU 上提供分布式训练,几乎不需要更改现有代码。
目前,tf.contrib.distribute.MirroredStrategy
是唯一受支持的分布策略。MirroredStrategy
通过在一台机器上使用规约在同步训练中进行图内复制。要将 DistributionStrategy
与 Keras 搭配使用,请将 tf.keras.Model
转换为 tf.estimator.Estimator
(通过 tf.keras.estimator.model_to_estimator
),然后训练该 Estimator
以下示例在一台机器上的多个 GPU 间分布了 tf.keras.Model
。
首先,定义一个简单的模型:
model = tf.keras.Sequential()
model.add(layers.Dense(16, activation='relu', input_shape=(10,)))
model.add(layers.Dense(1, activation='sigmoid'))
optimizer = tf.train.GradientDescentOptimizer(0.2)
model.compile(loss='binary_crossentropy', optimizer=optimizer)
model.summary()
_________________________________________________________________
Layer (type)
Output Shape
Param #
=================================================================
dense_23 (Dense)
(None, 16)
176
_________________________________________________________________
dense_24 (Dense)
(None, 1)
17
=================================================================
Total params: 193
Trainable params: 193
Non-trainable params: 0
_________________________________________________________________
定义输入管道。input_fn
会返回 tf.data.Dataset
对象,此对象用于将数据分布在多台设备上,每台设备处理输入批次数据的一部分。
def input_fn():
x = np.random.random((1024, 10))
y = np.random.randint(2, size=(1024, 1))
x = tf.cast(x, tf.float32)
dataset = tf.data.Dataset.from_tensor_slices((x, y))
dataset = dataset.repeat(10)
dataset = dataset.batch(32)
return dataset
接下来,创建 tf.estimator.RunConfig
并将 train_distribute
参数设置为 tf.contrib.distribute.MirroredStrategy
实例。创建 MirroredStrategy
时,您可以指定设备列表或设置 num_gpus
参数。默认使用所有可用的 GPU,如下所示:
strategy = tf.contrib.distribute.MirroredStrategy()
config = tf.estimator.RunConfig(train_distribute=strategy)
INFO:tensorflow:Initializing RunConfig with distribution strategies.
INFO:tensorflow:Not using Distribute Coordinator.
将 Keras 模型转换为 tf.estimator.Estimator
实例:
keras_estimator = tf.keras.estimator.model_to_estimator(
keras_model=model,
config=config,
model_dir='/tmp/model_dir')
INFO:tensorflow:Using the Keras model provided.
INFO:tensorflow:Using config: {'_experimental_distribute': None, '_master': '', '_eval_distribute': None, '_num_ps_replicas': 0, '_protocol': None, '_global_id_in_cluster': 0, '_save_summary_steps': 100, '_tf_random_seed': None, '_model_dir': '/tmp/model_dir', '_evaluation_master': '', '_task_id': 0, '_keep_checkpoint_max': 5, '_save_checkpoints_steps': None, '_service': None, '_num_worker_replicas': 1, '_save_checkpoints_secs': 600, '_is_chief': True, '_cluster_spec': <tensorflow.python.training.server_lib.ClusterSpec object at 0x7faed9e1c550>, '_keep_checkpoint_every_n_hours': 10000, '_log_step_count_steps': 100, '_distribute_coordinator_mode': None, '_session_config': allow_soft_placement: true
graph_options {
rewrite_options {
meta_optimizer_iterations: ONE
}
}
, '_train_distribute': <tensorflow.contrib.distribute.python.mirrored_strategy.MirroredStrategy object at 0x7faed9e1c588>, '_task_type': 'worker', '_device_fn': None}
最后,通过提供 input_fn
和 steps
参数训练 Estimator
实例:
keras_estimator.train(input_fn=input_fn, steps=10)
WARNING:tensorflow:Not all devices in DistributionStrategy are visible to TensorFlow session.
INFO:tensorflow:Calling model_fn.
INFO:tensorflow:Done calling model_fn.
INFO:tensorflow:Warm-starting with WarmStartSettings: WarmStartSettings(ckpt_to_initialize_from='/tmp/model_dir/keras/keras_model.ckpt', vars_to_warm_start='.*', var_name_to_vocab_info={}, var_name_to_prev_var_name={})
INFO:tensorflow:Warm-starting from: ('/tmp/model_dir/keras/keras_model.ckpt',)
INFO:tensorflow:Warm-starting variable: dense_24/kernel; prev_var_name: Unchanged
INFO:tensorflow:Warm-starting variable: dense_23/bias; prev_var_name: Unchanged
INFO:tensorflow:Warm-starting variable: dense_24/bias; prev_var_name: Unchanged
INFO:tensorflow:Warm-starting variable: dense_23/kernel; prev_var_name: Unchanged
INFO:tensorflow:Create CheckpointSaverHook.
INFO:tensorflow:Graph was finalized.
INFO:tensorflow:Running local_init_op.
INFO:tensorflow:Done running local_init_op.
INFO:tensorflow:Saving checkpoints for 0 into /tmp/model_dir/model.ckpt.
INFO:tensorflow:Initialize system
INFO:tensorflow:loss = 0.7582453, step = 0
INFO:tensorflow:Saving checkpoints for 10 into /tmp/model_dir/model.ckpt.
INFO:tensorflow:Finalize system.
INFO:tensorflow:Loss for final step: 0.6743419.
本节重点回顾:
1、在Keras中构建模型
tf.keras.Sequential( )
tf.keras.layers( )
- activation
- kernel_initializer和bias_initializer
- kernel_regularizer和bias_regularizer
tf.keras.layers.Dense( )
2、训练
tf.keras.model.compile( )
- optimizer
- loss
- metrics
tf.keras.model.fit( )
- epochs
- batch_size
- validation_data
3、评估和预测
tf.keras.model.evaluate( )
tf.keras.model.predict( )
4、模型子类化
在
__init__
方法中创建层并将它们设置为类实例的属性。在call
方法中定义前向传播。5、回调
tf.keras.callbacks( )
- tf.keras.callbacks.ModelCheckpoint
- tf.keras.callbacks.LearningRateScheduler
- tf.keras.callbacks.EarlyStopping
- tf.keras.callbacks.TensorBoard
6、保存和恢复
- 仅限权重
- 仅限配置
- 整个模型
7、Eager Execution
Estimator
- tf.keras.estimator.model_to_estimator( )
多个GPU
- tf.contrib.distribute.MirroredStrategy( )
- tf.estimator.RunConfig( )
最后
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