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Automatic Differentiation with torch.autograd
¶
When training neural networks, the most frequently used algorithm is back propagation. In this algorithm, parameters (model weights) are adjusted according to the gradient of the loss function with respect to the given parameter.
To compute those gradients, PyTorch has a built-in differentiation engine
called torch.autograd
. It supports automatic computation of gradient for any
computational graph.
Consider the simplest one-layer neural network, with input x
,
parameters w
and b
, and some loss function. It can be defined in
PyTorch in the following manner:
import torch
x = torch.ones(5) # input tensor
y = torch.zeros(3) # expected output
w = torch.randn(5, 3, requires_grad=True)
b = torch.randn(3, requires_grad=True)
z = torch.matmul(x, w)+b
loss = torch.nn.functional.binary_cross_entropy_with_logits(z, y)
Tensors, Functions and Computational graph¶
This code defines the following computational graph:
In this network, w
and b
are parameters, which we need to
optimize. Thus, we need to be able to compute the gradients of loss
function with respect to those variables. In order to do that, we set
the requires_grad
property of those tensors.
Note
You can set the value of requires_grad
when creating a
tensor, or later by using x.requires_grad_(True)
method.
A function that we apply to tensors to construct computational graph is
in fact an object of class Function
. This object knows how to
compute the function in the forward direction, and also how to compute
its derivative during the backward propagation step. A reference to
the backward propagation function is stored in grad_fn
property of a
tensor. You can find more information of Function
in the
documentation.
print(f"Gradient function for z = {z.grad_fn}")
print(f"Gradient function for loss = {loss.grad_fn}")
Computing Gradients¶
To optimize weights of parameters in the neural network, we need to
compute the derivatives of our loss function with respect to parameters,
namely, we need \(\frac{\partial loss}{\partial w}\) and
\(\frac{\partial loss}{\partial b}\) under some fixed values of
x
and y
. To compute those derivatives, we call
loss.backward()
, and then retrieve the values from w.grad
and
b.grad
:
loss.backward()
print(w.grad)
print(b.grad)
Note
We can only obtain the
grad
properties for the leaf nodes of the computational graph, which haverequires_grad
property set toTrue
. For all other nodes in our graph, gradients will not be available.We can only perform gradient calculations using
backward
once on a given graph, for performance reasons. If we need to do severalbackward
calls on the same graph, we need to passretain_graph=True
to thebackward
call.
Disabling Gradient Tracking¶
By default, all tensors with requires_grad=True
are tracking their
computational history and support gradient computation. However, there
are some cases when we do not need to do that, for example, when we have
trained the model and just want to apply it to some input data, i.e. we
only want to do forward computations through the network. We can stop
tracking computations by surrounding our computation code with
torch.no_grad()
block:
z = torch.matmul(x, w)+b
print(z.requires_grad)
with torch.no_grad():
z = torch.matmul(x, w)+b
print(z.requires_grad)
Another way to achieve the same result is to use the detach()
method
on the tensor:
z = torch.matmul(x, w)+b
z_det = z.detach()
print(z_det.requires_grad)
- There are reasons you might want to disable gradient tracking:
To mark some parameters in your neural network as frozen parameters.
To speed up computations when you are only doing forward pass, because computations on tensors that do not track gradients would be more efficient.
More on Computational Graphs¶
Conceptually, autograd keeps a record of data (tensors) and all executed operations (along with the resulting new tensors) in a directed acyclic graph (DAG) consisting of Function objects. In this DAG, leaves are the input tensors, roots are the output tensors. By tracing this graph from roots to leaves, you can automatically compute the gradients using the chain rule.
In a forward pass, autograd does two things simultaneously:
run the requested operation to compute a resulting tensor
maintain the operation’s gradient function in the DAG.
The backward pass kicks off when .backward()
is called on the DAG
root. autograd
then:
computes the gradients from each
.grad_fn
,accumulates them in the respective tensor’s
.grad
attributeusing the chain rule, propagates all the way to the leaf tensors.
Note
DAGs are dynamic in PyTorch
An important thing to note is that the graph is recreated from scratch; after each
.backward()
call, autograd starts populating a new graph. This is
exactly what allows you to use control flow statements in your model;
you can change the shape, size and operations at every iteration if
needed.
Optional Reading: Tensor Gradients and Jacobian Products¶
In many cases, we have a scalar loss function, and we need to compute the gradient with respect to some parameters. However, there are cases when the output function is an arbitrary tensor. In this case, PyTorch allows you to compute so-called Jacobian product, and not the actual gradient.
For a vector function \(\vec{y}=f(\vec{x})\), where \(\vec{x}=\langle x_1,\dots,x_n\rangle\) and \(\vec{y}=\langle y_1,\dots,y_m\rangle\), a gradient of \(\vec{y}\) with respect to \(\vec{x}\) is given by Jacobian matrix:
Instead of computing the Jacobian matrix itself, PyTorch allows you to
compute Jacobian Product \(v^T\cdot J\) for a given input vector
\(v=(v_1 \dots v_m)\). This is achieved by calling backward
with
\(v\) as an argument. The size of \(v\) should be the same as
the size of the original tensor, with respect to which we want to
compute the product:
inp = torch.eye(4, 5, requires_grad=True)
out = (inp+1).pow(2).t()
out.backward(torch.ones_like(out), retain_graph=True)
print(f"First call\n{inp.grad}")
out.backward(torch.ones_like(out), retain_graph=True)
print(f"\nSecond call\n{inp.grad}")
inp.grad.zero_()
out.backward(torch.ones_like(out), retain_graph=True)
print(f"\nCall after zeroing gradients\n{inp.grad}")
Notice that when we call backward
for the second time with the same
argument, the value of the gradient is different. This happens because
when doing backward
propagation, PyTorch accumulates the
gradients, i.e. the value of computed gradients is added to the
grad
property of all leaf nodes of computational graph. If you want
to compute the proper gradients, you need to zero out the grad
property before. In real-life training an optimizer helps us to do
this.
Note
Previously we were calling backward()
function without
parameters. This is essentially equivalent to calling
backward(torch.tensor(1.0))
, which is a useful way to compute the
gradients in case of a scalar-valued function, such as loss during
neural network training.
Further Reading¶
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