TensorFlow's eager execution is an imperative programming environment that
evaluates operations immediately, without building graphs: operations return
concrete values instead of constructing a computational graph to run later. This
makes it easy to get started with TensorFlow and debug models, and it
reduces boilerplate as well. To follow along with this guide, run the code
samples below in an interactive python
interpreter.
Eager execution is a flexible machine learning platform for research and experimentation, providing:
- An intuitive interface—Structure your code naturally and use Python data structures. Quickly iterate on small models and small data.
- Easier debugging—Call ops directly to inspect running models and test changes. Use standard Python debugging tools for immediate error reporting.
- Natural control flow—Use Python control flow instead of graph control flow, simplifying the specification of dynamic models.
Eager execution supports most TensorFlow operations and GPU acceleration. For a collection of examples running in eager execution, see: tensorflow/contrib/eager/python/examples.
Note: Some models may experience increased overhead with eager execution enabled. Performance improvements are ongoing, but please file a bug if you find a problem and share your benchmarks.
Upgrade to the latest version of TensorFlow:
$ pip install --upgrade tensorflow
To start eager execution, add tf.enable_eager_execution()
to the beginning of
the program or console session. Do not add this operation to other modules that
the program calls.
from __future__ import absolute_import, division, print_function
import tensorflow as tf
tf.enable_eager_execution()
Now you can run TensorFlow operations and the results will return immediately:
tf.executing_eagerly() # => True
x = [[2.]]
m = tf.matmul(x, x)
print("hello, {}".format(m)) # => "hello, [[4.]]"
Enabling eager execution changes how TensorFlow operations behave—now they
immediately evaluate and return their values to Python. tf.Tensor
objects
reference concrete values instead of symbolic handles to nodes in a computational
graph. Since there isn't a computational graph to build and run later in a
session, it's easy to inspect results using print()
or a debugger. Evaluating,
printing, and checking tensor values does not break the flow for computing
gradients.
Eager execution works nicely with NumPy. NumPy
operations accept tf.Tensor
arguments. TensorFlow
math operations convert
Python objects and NumPy arrays to tf.Tensor
objects. The
tf.Tensor.numpy
method returns the object's value as a NumPy ndarray
.
a = tf.constant([[1, 2],
[3, 4]])
print(a)
# => tf.Tensor([[1 2]
# [3 4]], shape=(2, 2), dtype=int32)
# Broadcasting support
b = tf.add(a, 1)
print(b)
# => tf.Tensor([[2 3]
# [4 5]], shape=(2, 2), dtype=int32)
# Operator overloading is supported
print(a * b)
# => tf.Tensor([[ 2 6]
# [12 20]], shape=(2, 2), dtype=int32)
# Use NumPy values
import numpy as np
c = np.multiply(a, b)
print(c)
# => [[ 2 6]
# [12 20]]
# Obtain numpy value from a tensor:
print(a.numpy())
# => [[1 2]
# [3 4]]
The tf.contrib.eager
module contains symbols available to both eager and graph execution
environments and is useful for writing code to work with graphs:
tfe = tf.contrib.eager
A major benefit of eager execution is that all the functionality of the host language is available while your model is executing. So, for example, it is easy to write fizzbuzz:
def fizzbuzz(max_num):
counter = tf.constant(0)
max_num = tf.convert_to_tensor(max_num)
for num in range(max_num.numpy()):
num = tf.constant(num)
if int(num % 3) == 0 and int(num % 5) == 0:
print('FizzBuzz')
elif int(num % 3) == 0:
print('Fizz')
elif int(num % 5) == 0:
print('Buzz')
else:
print(num)
counter += 1
return counter
This has conditionals that depend on tensor values and it prints these values at runtime.
Many machine learning models are represented by composing layers. When
using TensorFlow with eager execution you can either write your own layers or
use a layer provided in the tf.keras.layers
package.
While you can use any Python object to represent a layer,
TensorFlow has tf.keras.layers.Layer
as a convenient base class. Inherit from
it to implement your own layer:
class MySimpleLayer(tf.keras.layers.Layer):
def __init__(self, output_units):
super(MySimpleLayer, self).__init__()
self.output_units = output_units
def build(self, input_shape):
# The build method gets called the first time your layer is used.
# Creating variables on build() allows you to make their shape depend
# on the input shape and hence removes the need for the user to specify
# full shapes. It is possible to create variables during __init__() if
# you already know their full shapes.
self.kernel = self.add_variable(
"kernel", [input_shape[-1], self.output_units])
def call(self, input):
# Override call() instead of __call__ so we can perform some bookkeeping.
return tf.matmul(input, self.kernel)
Use tf.keras.layers.Dense
layer instead of MySimpleLayer
above as it has
a superset of its functionality (it can also add a bias).
When composing layers into models you can use tf.keras.Sequential
to represent
models which are a linear stack of layers. It is easy to use for basic models:
model = tf.keras.Sequential([
tf.keras.layers.Dense(10, input_shape=(784,)), # must declare input shape
tf.keras.layers.Dense(10)
])
Alternatively, organize models in classes by inheriting from tf.keras.Model
.
This is a container for layers that is a layer itself, allowing tf.keras.Model
objects to contain other tf.keras.Model
objects.
class MNISTModel(tf.keras.Model):
def __init__(self):
super(MNISTModel, self).__init__()
self.dense1 = tf.keras.layers.Dense(units=10)
self.dense2 = tf.keras.layers.Dense(units=10)
def call(self, input):
"""Run the model."""
result = self.dense1(input)
result = self.dense2(result)
result = self.dense2(result) # reuse variables from dense2 layer
return result
model = MNISTModel()
It's not required to set an input shape for the tf.keras.Model
class since
the parameters are set the first time input is passed to the layer.
tf.keras.layers
classes create and contain their own model variables that
are tied to the lifetime of their layer objects. To share layer variables, share
their objects.
Automatic differentiation
is useful for implementing machine learning algorithms such as
backpropagation for training
neural networks. During eager execution, use tf.GradientTape
to trace
operations for computing gradients later.
tf.GradientTape
is an opt-in feature to provide maximal performance when
not tracing. Since different operations can occur during each call, all
forward-pass operations get recorded to a "tape". To compute the gradient, play
the tape backwards and then discard. A particular tf.GradientTape
can only
compute one gradient; subsequent calls throw a runtime error.
w = tfe.Variable([[1.0]])
with tf.GradientTape() as tape:
loss = w * w
grad = tape.gradient(loss, w)
print(grad) # => tf.Tensor([[ 2.]], shape=(1, 1), dtype=float32)
Here's an example of tf.GradientTape
that records forward-pass operations
to train a simple model:
# A toy dataset of points around 3 * x + 2
NUM_EXAMPLES = 1000
training_inputs = tf.random_normal([NUM_EXAMPLES])
noise = tf.random_normal([NUM_EXAMPLES])
training_outputs = training_inputs * 3 + 2 + noise
def prediction(input, weight, bias):
return input * weight + bias
# A loss function using mean-squared error
def loss(weights, biases):
error = prediction(training_inputs, weights, biases) - training_outputs
return tf.reduce_mean(tf.square(error))
# Return the derivative of loss with respect to weight and bias
def grad(weights, biases):
with tf.GradientTape() as tape:
loss_value = loss(weights, biases)
return tape.gradient(loss_value, [weights, biases])
train_steps = 200
learning_rate = 0.01
# Start with arbitrary values for W and B on the same batch of data
W = tfe.Variable(5.)
B = tfe.Variable(10.)
print("Initial loss: {:.3f}".format(loss(W, B)))
for i in range(train_steps):
dW, dB = grad(W, B)
W.assign_sub(dW * learning_rate)
B.assign_sub(dB * learning_rate)
if i % 20 == 0:
print("Loss at step {:03d}: {:.3f}".format(i, loss(W, B)))
print("Final loss: {:.3f}".format(loss(W, B)))
print("W = {}, B = {}".format(W.numpy(), B.numpy()))
Output (exact numbers may vary):
Initial loss: 71.204
Loss at step 000: 68.333
Loss at step 020: 30.222
Loss at step 040: 13.691
Loss at step 060: 6.508
Loss at step 080: 3.382
Loss at step 100: 2.018
Loss at step 120: 1.422
Loss at step 140: 1.161
Loss at step 160: 1.046
Loss at step 180: 0.996
Final loss: 0.974
W = 3.01582956314, B = 2.1191945076
Replay the tf.GradientTape
to compute the gradients and apply them in a
training loop. This is demonstrated in an excerpt from the
mnist_eager.py
example:
dataset = tf.data.Dataset.from_tensor_slices((data.train.images,
data.train.labels))
...
for (batch, (images, labels)) in enumerate(dataset):
...
with tf.GradientTape() as tape:
logits = model(images, training=True)
loss_value = loss(logits, labels)
...
grads = tape.gradient(loss_value, model.variables)
optimizer.apply_gradients(zip(grads, model.variables),
global_step=tf.train.get_or_create_global_step())
The following example creates a multi-layer model that classifies the standard MNIST handwritten digits. It demonstrates the optimizer and layer APIs to build trainable graphs in an eager execution environment.
Even without training, call the model and inspect the output in eager execution:
# Create a tensor representing a blank image
batch = tf.zeros([1, 1, 784])
print(batch.shape) # => (1, 1, 784)
result = model(batch)
# => tf.Tensor([[[ 0. 0., ..., 0.]]], shape=(1, 1, 10), dtype=float32)
This example uses the
dataset.py module
from the
TensorFlow MNIST example;
download this file to your local directory. Run the following to download the
MNIST data files to your working directory and prepare a tf.data.Dataset
for training:
import dataset # download dataset.py file
dataset_train = dataset.train('./datasets').shuffle(60000).repeat(4).batch(32)
To train a model, define a loss function to optimize and then calculate gradients. Use an optimizer to update the variables:
def loss(model, x, y):
prediction = model(x)
return tf.losses.sparse_softmax_cross_entropy(labels=y, logits=prediction)
def grad(model, inputs, targets):
with tf.GradientTape() as tape:
loss_value = loss(model, inputs, targets)
return tape.gradient(loss_value, model.variables)
optimizer = tf.train.GradientDescentOptimizer(learning_rate=0.001)
x, y = iter(dataset_train).next()
print("Initial loss: {:.3f}".format(loss(model, x, y)))
# Training loop
for (i, (x, y)) in enumerate(dataset_train):
# Calculate derivatives of the input function with respect to its parameters.
grads = grad(model, x, y)
# Apply the gradient to the model
optimizer.apply_gradients(zip(grads, model.variables),
global_step=tf.train.get_or_create_global_step())
if i % 200 == 0:
print("Loss at step {:04d}: {:.3f}".format(i, loss(model, x, y)))
print("Final loss: {:.3f}".format(loss(model, x, y)))
Output (exact numbers may vary):
Initial loss: 2.674
Loss at step 0000: 2.593
Loss at step 0200: 2.143
Loss at step 0400: 2.009
Loss at step 0600: 2.103
Loss at step 0800: 1.621
Loss at step 1000: 1.695
...
Loss at step 6600: 0.602
Loss at step 6800: 0.557
Loss at step 7000: 0.499
Loss at step 7200: 0.744
Loss at step 7400: 0.681
Final loss: 0.670
And for faster training, move the computation to a GPU:
with tf.device("/gpu:0"):
for (i, (x, y)) in enumerate(dataset_train):
# minimize() is equivalent to the grad() and apply_gradients() calls.
optimizer.minimize(lambda: loss(model, x, y),
global_step=tf.train.get_or_create_global_step())
tfe.Variable
objects store mutable tf.Tensor
values accessed during
training to make automatic differentiation easier. The parameters of a model can
be encapsulated in classes as variables.
Better encapsulate model parameters by using tfe.Variable
with
tf.GradientTape
. For example, the automatic differentiation example above
can be rewritten:
class Model(tf.keras.Model):
def __init__(self):
super(Model, self).__init__()
self.W = tfe.Variable(5., name='weight')
self.B = tfe.Variable(10., name='bias')
def predict(self, inputs):
return inputs * self.W + self.B
# A toy dataset of points around 3 * x + 2
NUM_EXAMPLES = 2000
training_inputs = tf.random_normal([NUM_EXAMPLES])
noise = tf.random_normal([NUM_EXAMPLES])
training_outputs = training_inputs * 3 + 2 + noise
# The loss function to be optimized
def loss(model, inputs, targets):
error = model.predict(inputs) - targets
return tf.reduce_mean(tf.square(error))
def grad(model, inputs, targets):
with tf.GradientTape() as tape:
loss_value = loss(model, inputs, targets)
return tape.gradient(loss_value, [model.W, model.B])
# Define:
# 1. A model.
# 2. Derivatives of a loss function with respect to model parameters.
# 3. A strategy for updating the variables based on the derivatives.
model = Model()
optimizer = tf.train.GradientDescentOptimizer(learning_rate=0.01)
print("Initial loss: {:.3f}".format(loss(model, training_inputs, training_outputs)))
# Training loop
for i in range(300):
grads = grad(model, training_inputs, training_outputs)
optimizer.apply_gradients(zip(grads, [model.W, model.B]),
global_step=tf.train.get_or_create_global_step())
if i % 20 == 0:
print("Loss at step {:03d}: {:.3f}".format(i, loss(model, training_inputs, training_outputs)))
print("Final loss: {:.3f}".format(loss(model, training_inputs, training_outputs)))
print("W = {}, B = {}".format(model.W.numpy(), model.B.numpy()))
Output (exact numbers may vary):
Initial loss: 69.066
Loss at step 000: 66.368
Loss at step 020: 30.107
Loss at step 040: 13.959
Loss at step 060: 6.769
Loss at step 080: 3.567
Loss at step 100: 2.141
Loss at step 120: 1.506
Loss at step 140: 1.223
Loss at step 160: 1.097
Loss at step 180: 1.041
Loss at step 200: 1.016
Loss at step 220: 1.005
Loss at step 240: 1.000
Loss at step 260: 0.998
Loss at step 280: 0.997
Final loss: 0.996
W = 2.99431324005, B = 2.02129220963
With graph execution, program state (such as the variables) is stored in global
collections and their lifetime is managed by the tf.Session
object. In
contrast, during eager execution the lifetime of state objects is determined by
the lifetime of their corresponding Python object.
During eager execution, variables persist until the last reference to the object is removed, and is then deleted.
with tf.device("gpu:0"):
v = tfe.Variable(tf.random_normal([1000, 1000]))
v = None # v no longer takes up GPU memory
tfe.Checkpoint
can save and restore tfe.Variable
s to and from
checkpoints:
x = tfe.Variable(10.)
checkpoint = tfe.Checkpoint(x=x) # save as "x"
x.assign(2.) # Assign a new value to the variables and save.
save_path = checkpoint.save('./ckpt/')
x.assign(11.) # Change the variable after saving.
# Restore values from the checkpoint
checkpoint.restore(save_path)
print(x) # => 2.0
To save and load models, tfe.Checkpoint
stores the internal state of objects,
without requiring hidden variables. To record the state of a model
,
an optimizer
, and a global step, pass them to a tfe.Checkpoint
:
model = MyModel()
optimizer = tf.train.AdamOptimizer(learning_rate=0.001)
checkpoint_dir = ‘/path/to/model_dir’
checkpoint_prefix = os.path.join(checkpoint_dir, "ckpt")
root = tfe.Checkpoint(optimizer=optimizer,
model=model,
optimizer_step=tf.train.get_or_create_global_step())
root.save(file_prefix=checkpoint_prefix)
# or
root.restore(tf.train.latest_checkpoint(checkpoint_dir))
tfe.metrics
are stored as objects. Update a metric by passing the new data to
the callable, and retrieve the result using the tfe.metrics.result
method,
for example:
m = tfe.metrics.Mean("loss")
m(0)
m(5)
m.result() # => 2.5
m([8, 9])
m.result() # => 5.5
@{$summaries_and_tensorboard$TensorBoard} is a visualization tool for understanding, debugging and optimizing the model training process. It uses summary events that are written while executing the program.
tf.contrib.summary
is compatible with both eager and graph execution
environments. Summary operations, such as tf.contrib.summary.scalar
, are
inserted during model construction. For example, to record summaries once every
100 global steps:
writer = tf.contrib.summary.create_file_writer(logdir)
global_step=tf.train.get_or_create_global_step() # return global step var
writer.set_as_default()
for _ in range(iterations):
global_step.assign_add(1)
# Must include a record_summaries method
with tf.contrib.summary.record_summaries_every_n_global_steps(100):
# your model code goes here
tf.contrib.summary.scalar('loss', loss)
...
tf.GradientTape
can also be used in dynamic models. This example for a
backtracking line search
algorithm looks like normal NumPy code, except there are gradients and is
differentiable, despite the complex control flow:
def line_search_step(fn, init_x, rate=1.0):
with tf.GradientTape() as tape:
# Variables are automatically recorded, but manually watch a tensor
tape.watch(init_x)
value = fn(init_x)
grad = tape.gradient(value, init_x)
grad_norm = tf.reduce_sum(grad * grad)
init_value = value
while value > init_value - rate * grad_norm:
x = init_x - rate * grad
value = fn(x)
rate /= 2.0
return x, value
tf.GradientTape
is a powerful interface for computing gradients, but there
is another Autograd-style API available for
automatic differentiation. These functions are useful if writing math code with
only tensors and gradient functions, and without tfe.Variables
:
tfe.gradients_function
—Returns a function that computes the derivatives of its input function parameter with respect to its arguments. The input function parameter must return a scalar value. When the returned function is invoked, it returns a list oftf.Tensor
objects: one element for each argument of the input function. Since anything of interest must be passed as a function parameter, this becomes unwieldy if there's a dependency on many trainable parameters.tfe.value_and_gradients_function
—Similar totfe.gradients_function
, but when the returned function is invoked, it returns the value from the input function in addition to the list of derivatives of the input function with respect to its arguments.
In the following example, tfe.gradients_function
takes the square
function as an argument and returns a function that computes the partial
derivatives of square
with respect to its inputs. To calculate the derivative
of square
at 3
, grad(3.0)
returns 6
.
def square(x):
return tf.multiply(x, x)
grad = tfe.gradients_function(square)
square(3.) # => 9.0
grad(3.) # => [6.0]
# The second-order derivative of square:
gradgrad = tfe.gradients_function(lambda x: grad(x)[0])
gradgrad(3.) # => [2.0]
# The third-order derivative is None:
gradgradgrad = tfe.gradients_function(lambda x: gradgrad(x)[0])
gradgradgrad(3.) # => [None]
# With flow control:
def abs(x):
return x if x > 0. else -x
grad = tfe.gradients_function(abs)
grad(3.) # => [1.0]
grad(-3.) # => [-1.0]
Custom gradients are an easy way to override gradients in eager and graph execution. Within the forward function, define the gradient with respect to the inputs, outputs, or intermediate results. For example, here's an easy way to clip the norm of the gradients in the backward pass:
@tf.custom_gradient
def clip_gradient_by_norm(x, norm):
y = tf.identity(x)
def grad_fn(dresult):
return [tf.clip_by_norm(dresult, norm), None]
return y, grad_fn
Custom gradients are commonly used to provide a numerically stable gradient for a sequence of operations:
def log1pexp(x):
return tf.log(1 + tf.exp(x))
grad_log1pexp = tfe.gradients_function(log1pexp)
# The gradient computation works fine at x = 0.
grad_log1pexp(0.) # => [0.5]
# However, x = 100 fails because of numerical instability.
grad_log1pexp(100.) # => [nan]
Here, the log1pexp
function can be analytically simplified with a custom
gradient. The implementation below reuses the value for tf.exp(x)
that is
computed during the forward pass—making it more efficient by eliminating
redundant calculations:
@tf.custom_gradient
def log1pexp(x):
e = tf.exp(x)
def grad(dy):
return dy * (1 - 1 / (1 + e))
return tf.log(1 + e), grad
grad_log1pexp = tfe.gradients_function(log1pexp)
# As before, the gradient computation works fine at x = 0.
grad_log1pexp(0.) # => [0.5]
# And the gradient computation also works at x = 100.
grad_log1pexp(100.) # => [1.0]
Computation is automatically offloaded to GPUs during eager execution. If you
want control over where a computation runs you can enclose it in a
tf.device('/gpu:0')
block (or the CPU equivalent):
import time
def measure(x, steps):
# TensorFlow initializes a GPU the first time it's used, exclude from timing.
tf.matmul(x, x)
start = time.time()
for i in range(steps):
x = tf.matmul(x, x)
_ = x.numpy() # Make sure to execute op and not just enqueue it
end = time.time()
return end - start
shape = (1000, 1000)
steps = 200
print("Time to multiply a {} matrix by itself {} times:".format(shape, steps))
# Run on CPU:
with tf.device("/cpu:0"):
print("CPU: {} secs".format(measure(tf.random_normal(shape), steps)))
# Run on GPU, if available:
if tfe.num_gpus() > 0:
with tf.device("/gpu:0"):
print("GPU: {} secs".format(measure(tf.random_normal(shape), steps)))
else:
print("GPU: not found")
Output (exact numbers depend on hardware):
Time to multiply a (1000, 1000) matrix by itself 200 times:
CPU: 4.614904403686523 secs
GPU: 0.5581181049346924 secs
A tf.Tensor
object can be copied to a different device to execute its
operations:
x = tf.random_normal([10, 10])
x_gpu0 = x.gpu()
x_cpu = x.cpu()
_ = tf.matmul(x_cpu, x_cpu) # Runs on CPU
_ = tf.matmul(x_gpu0, x_gpu0) # Runs on GPU:0
if tfe.num_gpus() > 1:
x_gpu1 = x.gpu(1)
_ = tf.matmul(x_gpu1, x_gpu1) # Runs on GPU:1
For compute-heavy models, such as ResNet50 training on a GPU, eager execution performance is comparable to graph execution. But this gap grows larger for models with less computation and there is work to be done for optimizing hot code paths for models with lots of small operations.
While eager execution makes development and debugging more interactive, TensorFlow graph execution has advantages for distributed training, performance optimizations, and production deployment. However, writing graph code can feel different than writing regular Python code and more difficult to debug.
For building and training graph-constructed models, the Python program first
builds a graph representing the computation, then invokes Session.run
to send
the graph for execution on the C++-based runtime. This provides:
- Automatic differentiation using static autodiff.
- Simple deployment to a platform independent server.
- Graph-based optimizations (common subexpression elimination, constant-folding, etc.).
- Compilation and kernel fusion.
- Automatic distribution and replication (placing nodes on the distributed system).
Deploying code written for eager execution is more difficult: either generate a graph from the model, or run the Python runtime and code directly on the server.
The same code written for eager execution will also build a graph during graph execution. Do this by simply running the same code in a new Python session where eager execution is not enabled.
Most TensorFlow operations work during eager execution, but there are some things to keep in mind:
- Use
tf.data
for input processing instead of queues. It's faster and easier. - Use object-oriented layer APIs—like
tf.keras.layers
andtf.keras.Model
—since they have explicit storage for variables. - Most model code works the same during eager and graph execution, but there are exceptions. (For example, dynamic models using Python control flow to change the computation based on inputs.)
- Once eager execution is enabled with
tf.enable_eager_execution
, it cannot be turned off. Start a new Python session to return to graph execution.
It's best to write code for both eager execution and graph execution. This gives you eager's interactive experimentation and debuggability with the distributed performance benefits of graph execution.
Write, debug, and iterate in eager execution, then import the model graph for
production deployment. Use tfe.Checkpoint
to save and restore model
variables, this allows movement between eager and graph execution environments.
See the examples in:
tensorflow/contrib/eager/python/examples.
Selectively enable eager execution in a TensorFlow graph environment using
tfe.py_func
. This is used when tf.enable_eager_execution()
has not
been called.
def my_py_func(x):
x = tf.matmul(x, x) # You can use tf ops
print(x) # but it's eager!
return x
with tf.Session() as sess:
x = tf.placeholder(dtype=tf.float32)
# Call eager function in graph!
pf = tfe.py_func(my_py_func, [x], tf.float32)
sess.run(pf, feed_dict={x: [[2.0]]}) # [[4.0]]