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Install Pytorch on Your Computer

  • Install Anaconda
  • Create a virtual environment in conda
# conda create -n (env-name) python=(version) [packages] 
conda create -n pytorch python=3.7
# add channels
conda config --add channels https://mirrors.tuna.tsinghua.edu.cn/anaconda/pkgs/main
conda config --add channels https://mirrors.tuna.tsinghua.edu.cn/anaconda/pkgs/free
conda config --add channels https://mirrors.tuna.tsinghua.edu.cn/anaconda/cloud/pytorch

# show the channels info
conda config --show channels
  • Choose proper pytorch version by your computer on pytorch page
  • run the command to install pytorch
# Use official pytorch channel
conda install pytorch==1.2.0 torchvision==0.4.0 cudatoolkit=10.0 -c pytorch

# Use Tsinghua channel
conda install pytorch==1.2.0 torchvision==0.4.0 cudatoolkit=10.0

# Also you can choose your the version you want to install
conda install pytorch==(version) torchvision cudatoolkit

Experience Pytorch Through Some Examples

Warm-up: numpy

Before introducing PyTorch, we will first implement the network using numpy.

Numpy provides an n-dimensional array object, and many functions for manipulating
these arrays. Numpy is a generic framework for scientific computing; it does not
know anything about computation graphs, or deep learning, or gradients. However
we can easily use numpy to fit a two-layer network to random data by manually
implementing the forward and backward passes through the network using numpy
operations:

# Code in file tensor/two_layer_net_numpy.py
import numpy as np

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random input and output data
x = np.random.randn(N, D_in)
y = np.random.randn(N, D_out)

# Randomly initialize weights
w1 = np.random.randn(D_in, H)
w2 = np.random.randn(H, D_out)

learning_rate = 1e-6
for t in range(500):
  # Forward pass: compute predicted y
  h = x.dot(w1)
  h_relu = np.maximum(h, 0)
  y_pred = h_relu.dot(w2)
  
  # Compute and print loss
  loss = np.square(y_pred - y).sum()
  print(t, loss)
  
  # Backprop to compute gradients of w1 and w2 with respect to loss
  grad_y_pred = 2.0 * (y_pred - y)
  grad_w2 = h_relu.T.dot(grad_y_pred)
  grad_h_relu = grad_y_pred.dot(w2.T)
  grad_h = grad_h_relu.copy()
  grad_h[h < 0] = 0
  grad_w1 = x.T.dot(grad_h)
 
  # Update weights
  w1 -= learning_rate * grad_w1
  w2 -= learning_rate * grad_w2

PyTorch: Tensors

Numpy is a great framework, but it cannot utilize GPUs to accelerate its
numerical computations. For modern deep neural networks, GPUs often provide
speedups of 50x or greater, so
unfortunately numpy won't be enough for modern deep learning.

Here we introduce the most fundamental PyTorch concept: the Tensor. A PyTorch
Tensor is conceptually identical to a numpy array: a Tensor is an n-dimensional
array, and PyTorch provides many functions for operating on these Tensors.
Any computation you might want to perform with numpy can also be accomplished
with PyTorch Tensors; you should think of them as a generic tool for scientific
computing.

However unlike numpy, PyTorch Tensors can utilize GPUs to accelerate their
numeric computations. To run a PyTorch Tensor on GPU, you use the device
argument when constructing a Tensor to place the Tensor on a GPU.

Here we use PyTorch Tensors to fit a two-layer network to random data. Like the
numpy example above we manually implement the forward and backward
passes through the network, using operations on PyTorch Tensors:

# Code in file tensor/two_layer_net_tensor.py
import torch

device = torch.device('cpu')
# device = torch.device('cuda') # Uncomment this to run on GPU

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random input and output data
x = torch.randn(N, D_in, device=device)
y = torch.randn(N, D_out, device=device)

# Randomly initialize weights
w1 = torch.randn(D_in, H, device=device)
w2 = torch.randn(H, D_out, device=device)

learning_rate = 1e-6
for t in range(500):
  # Forward pass: compute predicted y
  h = x.mm(w1)
  h_relu = h.clamp(min=0)
  y_pred = h_relu.mm(w2)

  # Compute and print loss; loss is a scalar, and is stored in a PyTorch Tensor
  # of shape (); we can get its value as a Python number with loss.item().
  loss = (y_pred - y).pow(2).sum()
  print(t, loss.item())

  # Backprop to compute gradients of w1 and w2 with respect to loss
  grad_y_pred = 2.0 * (y_pred - y)
  grad_w2 = h_relu.t().mm(grad_y_pred)
  grad_h_relu = grad_y_pred.mm(w2.t())
  grad_h = grad_h_relu.clone()
  grad_h[h < 0] = 0
  grad_w1 = x.t().mm(grad_h)

  # Update weights using gradient descent
  w1 -= learning_rate * grad_w1
  w2 -= learning_rate * grad_w2

PyTorch: Autograd

In the above examples, we had to manually implement both the forward and
backward passes of our neural network. Manually implementing the backward pass
is not a big deal for a small two-layer network, but can quickly get very hairy
for large complex networks.

Thankfully, we can use
automatic differentiation
to automate the computation of backward passes in neural networks.
The autograd package in PyTorch provides exactly this functionality.
When using autograd, the forward pass of your network will define a
computational graph; nodes in the graph will be Tensors, and edges will be
functions that produce output Tensors from input Tensors. Backpropagating through
this graph then allows you to easily compute gradients.

This sounds complicated, it's pretty simple to use in practice. If we want to
compute gradients with respect to some Tensor, then we set requires_grad=True
when constructing that Tensor. Any PyTorch operations on that Tensor will cause
a computational graph to be constructed, allowing us to later perform backpropagation
through the graph. If x is a Tensor with requires_grad=True, then after
backpropagation x.grad will be another Tensor holding the gradient of x with
respect to some scalar value.

Sometimes you may wish to prevent PyTorch from building computational graphs when
performing certain operations on Tensors with requires_grad=True; for example
we usually don't want to backpropagate through the weight update steps when
training a neural network. In such scenarios we can use the torch.no_grad()
context manager to prevent the construction of a computational graph.

Here we use PyTorch Tensors and autograd to implement our two-layer network;
now we no longer need to manually implement the backward pass through the
network:

# Code in file autograd/two_layer_net_autograd.py
import torch

device = torch.device('cpu')
# device = torch.device('cuda') # Uncomment this to run on GPU

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold input and outputs
x = torch.randn(N, D_in, device=device)
y = torch.randn(N, D_out, device=device)

# Create random Tensors for weights; setting requires_grad=True means that we
# want to compute gradients for these Tensors during the backward pass.
w1 = torch.randn(D_in, H, device=device, requires_grad=True)
w2 = torch.randn(H, D_out, device=device, requires_grad=True)

learning_rate = 1e-6
for t in range(500):
  # Forward pass: compute predicted y using operations on Tensors. Since w1 and
  # w2 have requires_grad=True, operations involving these Tensors will cause
  # PyTorch to build a computational graph, allowing automatic computation of
  # gradients. Since we are no longer implementing the backward pass by hand we
  # don't need to keep references to intermediate values.
  y_pred = x.mm(w1).clamp(min=0).mm(w2)
  
  # Compute and print loss. Loss is a Tensor of shape (), and loss.item()
  # is a Python number giving its value.
  loss = (y_pred - y).pow(2).sum()
  print(t, loss.item())

  # Use autograd to compute the backward pass. This call will compute the
  # gradient of loss with respect to all Tensors with requires_grad=True.
  # After this call w1.grad and w2.grad will be Tensors holding the gradient
  # of the loss with respect to w1 and w2 respectively.
  loss.backward()

  # Update weights using gradient descent. For this step we just want to mutate
  # the values of w1 and w2 in-place; we don't want to build up a computational
  # graph for the update steps, so we use the torch.no_grad() context manager
  # to prevent PyTorch from building a computational graph for the updates
  with torch.no_grad():
    w1 -= learning_rate * w1.grad
    w2 -= learning_rate * w2.grad

    # Manually zero the gradients after running the backward pass
    w1.grad.zero_()
    w2.grad.zero_()

PyTorch: Defining new autograd functions

Under the hood, each primitive autograd operator is really two functions that
operate on Tensors. The forward function computes output Tensors from input
Tensors. The backward function receives the gradient of the output Tensors
with respect to some scalar value, and computes the gradient of the input Tensors
with respect to that same scalar value.

In PyTorch we can easily define our own autograd operator by defining a subclass
of torch.autograd.Function and implementing the forward and backward functions.
We can then use our new autograd operator by constructing an instance and calling it
like a function, passing Tensors containing input data.

In this example we define our own custom autograd function for performing the ReLU
nonlinearity, and use it to implement our two-layer network:

# Code in file autograd/two_layer_net_custom_function.py
import torch

class MyReLU(torch.autograd.Function):
  """
  We can implement our own custom autograd Functions by subclassing
  torch.autograd.Function and implementing the forward and backward passes
  which operate on Tensors.
  """
  @staticmethod
  def forward(ctx, x):
    """
    In the forward pass we receive a context object and a Tensor containing the
    input; we must return a Tensor containing the output, and we can use the
    context object to cache objects for use in the backward pass.
    """
    ctx.save_for_backward(x)
    return x.clamp(min=0)

  @staticmethod
  def backward(ctx, grad_output):
    """
    In the backward pass we receive the context object and a Tensor containing
    the gradient of the loss with respect to the output produced during the
    forward pass. We can retrieve cached data from the context object, and must
    compute and return the gradient of the loss with respect to the input to the
    forward function.
    """
    x, = ctx.saved_tensors
    grad_x = grad_output.clone()
    grad_x[x < 0] = 0
    return grad_x


device = torch.device('cpu')
# device = torch.device('cuda') # Uncomment this to run on GPU

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold input and output
x = torch.randn(N, D_in, device=device)
y = torch.randn(N, D_out, device=device)

# Create random Tensors for weights.
w1 = torch.randn(D_in, H, device=device, requires_grad=True)
w2 = torch.randn(H, D_out, device=device, requires_grad=True)

learning_rate = 1e-6
for t in range(500):
  # Forward pass: compute predicted y using operations on Tensors; we call our
  # custom ReLU implementation using the MyReLU.apply function
  y_pred = MyReLU.apply(x.mm(w1)).mm(w2)
 
  # Compute and print loss
  loss = (y_pred - y).pow(2).sum()
  print(t, loss.item())

  # Use autograd to compute the backward pass.
  loss.backward()

  with torch.no_grad():
    # Update weights using gradient descent
    w1 -= learning_rate * w1.grad
    w2 -= learning_rate * w2.grad

    # Manually zero the gradients after running the backward pass
    w1.grad.zero_()
    w2.grad.zero_()

TensorFlow: Static Graphs

PyTorch autograd looks a lot like TensorFlow: in both frameworks we define
a computational graph, and use automatic differentiation to compute gradients.
The biggest difference between the two is that TensorFlow's computational graphs
are static and PyTorch uses dynamic computational graphs.

In TensorFlow, we define the computational graph once and then execute the same
graph over and over again, possibly feeding different input data to the graph.
In PyTorch, each forward pass defines a new computational graph.

Static graphs are nice because you can optimize the graph up front; for example
a framework might decide to fuse some graph operations for efficiency, or to
come up with a strategy for distributing the graph across many GPUs or many

  1. If you are reusing the same graph over and over, then this potentially
  2. up-front optimization can be amortized as the same graph is rerun over

and over.

One aspect where static and dynamic graphs differ is control flow. For some models
we may wish to perform different computation for each data point; for example a
recurrent network might be unrolled for different numbers of time steps for each
data point; this unrolling can be implemented as a loop. With a static graph the
loop construct needs to be a part of the graph; for this reason TensorFlow
provides operators such as tf.scan for embedding loops into the graph. With
dynamic graphs the situation is simpler: since we build graphs on-the-fly for
each example, we can use normal imperative flow control to perform computation
that differs for each input.

To contrast with the PyTorch autograd example above, here we use TensorFlow to
fit a simple two-layer net:

# Code in file autograd/tf_two_layer_net.py
import tensorflow as tf
import numpy as np

# First we set up the computational graph:

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create placeholders for the input and target data; these will be filled
# with real data when we execute the graph.
x = tf.placeholder(tf.float32, shape=(None, D_in))
y = tf.placeholder(tf.float32, shape=(None, D_out))

# Create Variables for the weights and initialize them with random data.
# A TensorFlow Variable persists its value across executions of the graph.
w1 = tf.Variable(tf.random_normal((D_in, H)))
w2 = tf.Variable(tf.random_normal((H, D_out)))

# Forward pass: Compute the predicted y using operations on TensorFlow Tensors.
# Note that this code does not actually perform any numeric operations; it
# merely sets up the computational graph that we will later execute.
h = tf.matmul(x, w1)
h_relu = tf.maximum(h, tf.zeros(1))
y_pred = tf.matmul(h_relu, w2)

# Compute loss using operations on TensorFlow Tensors
loss = tf.reduce_sum((y - y_pred) ** 2.0)

# Compute gradient of the loss with respect to w1 and w2.
grad_w1, grad_w2 = tf.gradients(loss, [w1, w2])

# Update the weights using gradient descent. To actually update the weights
# we need to evaluate new_w1 and new_w2 when executing the graph. Note that
# in TensorFlow the the act of updating the value of the weights is part of
# the computational graph; in PyTorch this happens outside the computational
# graph.
learning_rate = 1e-6
new_w1 = w1.assign(w1 - learning_rate * grad_w1)
new_w2 = w2.assign(w2 - learning_rate * grad_w2)

# Now we have built our computational graph, so we enter a TensorFlow session to
# actually execute the graph.
with tf.Session() as sess:
  # Run the graph once to initialize the Variables w1 and w2.
  sess.run(tf.global_variables_initializer())

  # Create numpy arrays holding the actual data for the inputs x and targets y
  x_value = np.random.randn(N, D_in)
  y_value = np.random.randn(N, D_out)
  for _ in range(500):
    # Execute the graph many times. Each time it executes we want to bind
    # x_value to x and y_value to y, specified with the feed_dict argument.
    # Each time we execute the graph we want to compute the values for loss,
    # new_w1, and new_w2; the values of these Tensors are returned as numpy
    # arrays.
    loss_value, _, _ = sess.run([loss, new_w1, new_w2],
                                feed_dict={x: x_value, y: y_value})
    print(loss_value)

PyTorch: nn

Computational graphs and autograd are a very powerful paradigm for defining
complex operators and automatically taking derivatives; however for large
neural networks raw autograd can be a bit too low-level.

When building neural networks we frequently think of arranging the computation
into layers, some of which have learnable parameters which will be
optimized during learning.

In TensorFlow, packages like Keras,
TensorFlow-Slim,
and TFLearn provide higher-level abstractions over
raw computational graphs that are useful for building neural networks.

In PyTorch, the nn package serves this same purpose. The nn package defines a set of
Modules, which are roughly equivalent to neural network layers. A Module receives
input Tensors and computes output Tensors, but may also hold internal state such as
Tensors containing learnable parameters. The nn package also defines a set of useful
loss functions that are commonly used when training neural networks.

In this example we use the nn package to implement our two-layer network:

# Code in file nn/two_layer_net_nn.py
import torch

device = torch.device('cpu')
# device = torch.device('cuda') # Uncomment this to run on GPU

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold inputs and outputs
x = torch.randn(N, D_in, device=device)
y = torch.randn(N, D_out, device=device)

# Use the nn package to define our model as a sequence of layers. nn.Sequential
# is a Module which contains other Modules, and applies them in sequence to
# produce its output. Each Linear Module computes output from input using a
# linear function, and holds internal Tensors for its weight and bias.
# After constructing the model we use the .to() method to move it to the
# desired device.
model = torch.nn.Sequential(
          torch.nn.Linear(D_in, H),
          torch.nn.ReLU(),
          torch.nn.Linear(H, D_out),
        ).to(device)

# The nn package also contains definitions of popular loss functions; in this
# case we will use Mean Squared Error (MSE) as our loss function. Setting
# reduction='sum' means that we are computing the *sum* of squared errors rather
# than the mean; this is for consistency with the examples above where we
# manually compute the loss, but in practice it is more common to use mean
# squared error as a loss by setting reduction='elementwise_mean'.
loss_fn = torch.nn.MSELoss(reduction='sum')

learning_rate = 1e-4
for t in range(500):
  # Forward pass: compute predicted y by passing x to the model. Module objects
  # override the __call__ operator so you can call them like functions. When
  # doing so you pass a Tensor of input data to the Module and it produces
  # a Tensor of output data.
  y_pred = model(x)

  # Compute and print loss. We pass Tensors containing the predicted and true
  # values of y, and the loss function returns a Tensor containing the loss.
  loss = loss_fn(y_pred, y)
  print(t, loss.item())
  
  # Zero the gradients before running the backward pass.
  model.zero_grad()

  # Backward pass: compute gradient of the loss with respect to all the learnable
  # parameters of the model. Internally, the parameters of each Module are stored
  # in Tensors with requires_grad=True, so this call will compute gradients for
  # all learnable parameters in the model.
  loss.backward()

  # Update the weights using gradient descent. Each parameter is a Tensor, so
  # we can access its data and gradients like we did before.
  with torch.no_grad():
    for param in model.parameters():
      param.data -= learning_rate * param.grad

PyTorch: optim

Up to this point we have updated the weights of our models by manually mutating
Tensors holding learnable parameters. This is not a huge burden
for simple optimization algorithms like stochastic gradient descent, but in practice
we often train neural networks using more sophisiticated optimizers like AdaGrad,
RMSProp, Adam, etc.

The optim package in PyTorch abstracts the idea of an optimization algorithm and
provides implementations of commonly used optimization algorithms.

In this example we will use the nn package to define our model as before, but we
will optimize the model using the Adam algorithm provided by the optim package:

# Code in file nn/two_layer_net_optim.py
import torch

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold inputs and outputs.
x = torch.randn(N, D_in)
y = torch.randn(N, D_out)

# Use the nn package to define our model and loss function.
model = torch.nn.Sequential(
          torch.nn.Linear(D_in, H),
          torch.nn.ReLU(),
          torch.nn.Linear(H, D_out),
        )
loss_fn = torch.nn.MSELoss(reduction='sum')

# Use the optim package to define an Optimizer that will update the weights of
# the model for us. Here we will use Adam; the optim package contains many other
# optimization algorithms. The first argument to the Adam constructor tells the
# optimizer which Tensors it should update.
learning_rate = 1e-4
optimizer = torch.optim.Adam(model.parameters(), lr=learning_rate)
for t in range(500):
  # Forward pass: compute predicted y by passing x to the model.
  y_pred = model(x)

  # Compute and print loss.
  loss = loss_fn(y_pred, y)
  print(t, loss.item())
  
  # Before the backward pass, use the optimizer object to zero all of the
  # gradients for the Tensors it will update (which are the learnable weights
  # of the model)
  optimizer.zero_grad()

  # Backward pass: compute gradient of the loss with respect to model parameters
  loss.backward()

  # Calling the step function on an Optimizer makes an update to its parameters
  optimizer.step()

PyTorch: Custom nn Modules

Sometimes you will want to specify models that are more complex than a sequence of
existing Modules; for these cases you can define your own Modules by subclassing
nn.Module and defining a forward which receives input Tensors and produces
output Tensors using other modules or other autograd operations on Tensors.

In this example we implement our two-layer network as a custom Module subclass:

# Code in file nn/two_layer_net_module.py
import torch

class TwoLayerNet(torch.nn.Module):
  def __init__(self, D_in, H, D_out):
    """
    In the constructor we instantiate two nn.Linear modules and assign them as
    member variables.
    """
    super(TwoLayerNet, self).__init__()
    self.linear1 = torch.nn.Linear(D_in, H)
    self.linear2 = torch.nn.Linear(H, D_out)

  def forward(self, x):
    """
    In the forward function we accept a Tensor of input data and we must return
    a Tensor of output data. We can use Modules defined in the constructor as
    well as arbitrary (differentiable) operations on Tensors.
    """
    h_relu = self.linear1(x).clamp(min=0)
    y_pred = self.linear2(h_relu)
    return y_pred

# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold inputs and outputs
x = torch.randn(N, D_in)
y = torch.randn(N, D_out)

# Construct our model by instantiating the class defined above.
model = TwoLayerNet(D_in, H, D_out)

# Construct our loss function and an Optimizer. The call to model.parameters()
# in the SGD constructor will contain the learnable parameters of the two
# nn.Linear modules which are members of the model.
loss_fn = torch.nn.MSELoss(reduction='sum')
optimizer = torch.optim.SGD(model.parameters(), lr=1e-4)
for t in range(500):
  # Forward pass: Compute predicted y by passing x to the model
  y_pred = model(x)

  # Compute and print loss
  loss = loss_fn(y_pred, y)
  print(t, loss.item())

  # Zero gradients, perform a backward pass, and update the weights.
  optimizer.zero_grad()
  loss.backward()
  optimizer.step()

PyTorch: Control Flow + Weight Sharing

As an example of dynamic graphs and weight sharing, we implement a very strange
model: a fully-connected ReLU network that on each forward pass chooses a random
number between 1 and 4 and uses that many hidden layers, reusing the same weights
multiple times to compute the innermost hidden layers.

For this model can use normal Python flow control to implement the loop, and we
can implement weight sharing among the innermost layers by simply reusing the
same Module multiple times when defining the forward pass.

We can easily implement this model as a Module subclass:

# Code in file nn/dynamic_net.py
import random
import torch

class DynamicNet(torch.nn.Module):
  def __init__(self, D_in, H, D_out):
    """
    In the constructor we construct three nn.Linear instances that we will use
    in the forward pass.
    """
    super(DynamicNet, self).__init__()
    self.input_linear = torch.nn.Linear(D_in, H)
    self.middle_linear = torch.nn.Linear(H, H)
    self.output_linear = torch.nn.Linear(H, D_out)

  def forward(self, x):
    """
    For the forward pass of the model, we randomly choose either 0, 1, 2, or 3
    and reuse the middle_linear Module that many times to compute hidden layer
    representations.

    Since each forward pass builds a dynamic computation graph, we can use normal
    Python control-flow operators like loops or conditional statements when
    defining the forward pass of the model.

    Here we also see that it is perfectly safe to reuse the same Module many
    times when defining a computational graph. This is a big improvement from Lua
    Torch, where each Module could be used only once.
    """
    h_relu = self.input_linear(x).clamp(min=0)
    for _ in range(random.randint(0, 3)):
      h_relu = self.middle_linear(h_relu).clamp(min=0)
    y_pred = self.output_linear(h_relu)
    return y_pred


# N is batch size; D_in is input dimension;
# H is hidden dimension; D_out is output dimension.
N, D_in, H, D_out = 64, 1000, 100, 10

# Create random Tensors to hold inputs and outputs.
x = torch.randn(N, D_in)
y = torch.randn(N, D_out)

# Construct our model by instantiating the class defined above
model = DynamicNet(D_in, H, D_out)

# Construct our loss function and an Optimizer. Training this strange model with
# vanilla stochastic gradient descent is tough, so we use momentum
criterion = torch.nn.MSELoss(reduction='sum')
optimizer = torch.optim.SGD(model.parameters(), lr=1e-4, momentum=0.9)
for t in range(500):
  # Forward pass: Compute predicted y by passing x to the model
  y_pred = model(x)

  # Compute and print loss
  loss = criterion(y_pred, y)
  print(t, loss.item())

  # Zero gradients, perform a backward pass, and update the weights.
  optimizer.zero_grad()
  loss.backward()
  optimizer.step()



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