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Link various classes and functions of the `optim.swa.util` to make doc content accessible from the `torch.optim` doc. Currently, if you click the link, https://pytorch.org/docs/stable/optim.html#module-torch.optim.swa_utils it goes to a blank, bottom of the page section of `torch.optim`. Also, `torch.optim.swa_utils.AveragedModel` and `torch.optim.swa_utils.SWALR` classes as well as `torch.optim.swa_utils.update_bn()` and `optim.swa_utils.get_ema_multi_avg_fn` are not linked to doc. Pull Request resolved: https://github.com/pytorch/pytorch/pull/133393 Approved by: https://github.com/janeyx99
491 lines
18 KiB
ReStructuredText
491 lines
18 KiB
ReStructuredText
torch.optim
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===================================
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.. automodule:: torch.optim
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How to use an optimizer
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-----------------------
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To use :mod:`torch.optim` you have to construct an optimizer object that will hold
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the current state and will update the parameters based on the computed gradients.
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Constructing it
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^^^^^^^^^^^^^^^
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To construct an :class:`Optimizer` you have to give it an iterable containing the
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parameters (all should be :class:`~torch.autograd.Variable` s) to optimize. Then,
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you can specify optimizer-specific options such as the learning rate, weight decay, etc.
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Example::
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optimizer = optim.SGD(model.parameters(), lr=0.01, momentum=0.9)
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optimizer = optim.Adam([var1, var2], lr=0.0001)
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Per-parameter options
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^^^^^^^^^^^^^^^^^^^^^
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:class:`Optimizer` s also support specifying per-parameter options. To do this, instead
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of passing an iterable of :class:`~torch.autograd.Variable` s, pass in an iterable of
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:class:`dict` s. Each of them will define a separate parameter group, and should contain
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a ``params`` key, containing a list of parameters belonging to it. Other keys
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should match the keyword arguments accepted by the optimizers, and will be used
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as optimization options for this group.
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For example, this is very useful when one wants to specify per-layer learning rates::
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optim.SGD([
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{'params': model.base.parameters(), 'lr': 1e-2},
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{'params': model.classifier.parameters()}
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], lr=1e-3, momentum=0.9)
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This means that ``model.base``'s parameters will use a learning rate of ``1e-2``, whereas
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``model.classifier``'s parameters will stick to the default learning rate of ``1e-3``.
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Finally a momentum of ``0.9`` will be used for all parameters.
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.. note::
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You can still pass options as keyword arguments. They will be used as
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defaults, in the groups that didn't override them. This is useful when you
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only want to vary a single option, while keeping all others consistent
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between parameter groups.
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Also consider the following example related to the distinct penalization of parameters.
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Remember that :func:`~torch.nn.Module.parameters` returns an iterable that
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contains all learnable parameters, including biases and other
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parameters that may prefer distinct penalization. To address this, one can specify
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individual penalization weights for each parameter group::
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bias_params = [p for name, p in self.named_parameters() if 'bias' in name]
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others = [p for name, p in self.named_parameters() if 'bias' not in name]
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optim.SGD([
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{'params': others},
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{'params': bias_params, 'weight_decay': 0}
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], weight_decay=1e-2, lr=1e-2)
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In this manner, bias terms are isolated from non-bias terms, and a ``weight_decay``
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of ``0`` is set specifically for the bias terms, as to avoid any penalization for
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this group.
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Taking an optimization step
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^^^^^^^^^^^^^^^^^^^^^^^^^^^
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All optimizers implement a :func:`~Optimizer.step` method, that updates the
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parameters. It can be used in two ways:
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``optimizer.step()``
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~~~~~~~~~~~~~~~~~~~~
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This is a simplified version supported by most optimizers. The function can be
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called once the gradients are computed using e.g.
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:func:`~torch.autograd.Variable.backward`.
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Example::
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for input, target in dataset:
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optimizer.zero_grad()
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output = model(input)
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loss = loss_fn(output, target)
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loss.backward()
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optimizer.step()
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``optimizer.step(closure)``
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~~~~~~~~~~~~~~~~~~~~~~~~~~~
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Some optimization algorithms such as Conjugate Gradient and LBFGS need to
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reevaluate the function multiple times, so you have to pass in a closure that
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allows them to recompute your model. The closure should clear the gradients,
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compute the loss, and return it.
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Example::
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for input, target in dataset:
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def closure():
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optimizer.zero_grad()
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output = model(input)
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loss = loss_fn(output, target)
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loss.backward()
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return loss
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optimizer.step(closure)
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.. _optimizer-algorithms:
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Base class
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----------
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.. autoclass:: Optimizer
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.. autosummary::
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:toctree: generated
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:nosignatures:
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Optimizer.add_param_group
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Optimizer.load_state_dict
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Optimizer.register_load_state_dict_pre_hook
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Optimizer.register_load_state_dict_post_hook
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Optimizer.state_dict
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Optimizer.register_state_dict_pre_hook
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Optimizer.register_state_dict_post_hook
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Optimizer.step
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Optimizer.register_step_pre_hook
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Optimizer.register_step_post_hook
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Optimizer.zero_grad
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Algorithms
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----------
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.. autosummary::
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:toctree: generated
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:nosignatures:
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Adadelta
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Adafactor
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Adagrad
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Adam
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AdamW
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SparseAdam
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Adamax
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ASGD
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LBFGS
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NAdam
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RAdam
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RMSprop
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Rprop
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SGD
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Many of our algorithms have various implementations optimized for performance,
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readability and/or generality, so we attempt to default to the generally fastest
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implementation for the current device if no particular implementation has been
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specified by the user.
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We have 3 major categories of implementations: for-loop, foreach (multi-tensor), and
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fused. The most straightforward implementations are for-loops over the parameters with
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big chunks of computation. For-looping is usually slower than our foreach
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implementations, which combine parameters into a multi-tensor and run the big chunks
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of computation all at once, thereby saving many sequential kernel calls. A few of our
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optimizers have even faster fused implementations, which fuse the big chunks of
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computation into one kernel. We can think of foreach implementations as fusing
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horizontally and fused implementations as fusing vertically on top of that.
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In general, the performance ordering of the 3 implementations is fused > foreach > for-loop.
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So when applicable, we default to foreach over for-loop. Applicable means the foreach
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implementation is available, the user has not specified any implementation-specific kwargs
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(e.g., fused, foreach, differentiable), and all tensors are native. Note that while fused
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should be even faster than foreach, the implementations are newer and we would like to give
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them more bake-in time before flipping the switch everywhere. We summarize the stability status
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for each implementation on the second table below, you are welcome to try them out though!
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Below is a table showing the available and default implementations of each algorithm:
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.. csv-table::
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:header: "Algorithm", "Default", "Has foreach?", "Has fused?"
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:widths: 25, 25, 25, 25
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:delim: ;
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:class:`Adadelta`;foreach;yes;no
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:class:`Adafactor`;for-loop;no;no
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:class:`Adagrad`;foreach;yes;yes (cpu only)
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:class:`Adam`;foreach;yes;yes
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:class:`AdamW`;foreach;yes;yes
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:class:`SparseAdam`;for-loop;no;no
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:class:`Adamax`;foreach;yes;no
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:class:`ASGD`;foreach;yes;no
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:class:`LBFGS`;for-loop;no;no
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:class:`NAdam`;foreach;yes;no
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:class:`RAdam`;foreach;yes;no
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:class:`RMSprop`;foreach;yes;no
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:class:`Rprop`;foreach;yes;no
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:class:`SGD`;foreach;yes;yes
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Below table is showing the stability status for fused implementations:
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.. csv-table::
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:header: "Algorithm", "CPU", "CUDA", "MPS"
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:widths: 25, 25, 25, 25
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:delim: ;
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:class:`Adadelta`;unsupported;unsupported;unsupported
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:class:`Adafactor`;unsupported;unsupported;unsupported
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:class:`Adagrad`;beta;unsupported;unsupported
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:class:`Adam`;beta;stable;beta
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:class:`AdamW`;beta;stable;beta
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:class:`SparseAdam`;unsupported;unsupported;unsupported
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:class:`Adamax`;unsupported;unsupported;unsupported
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:class:`ASGD`;unsupported;unsupported;unsupported
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:class:`LBFGS`;unsupported;unsupported;unsupported
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:class:`NAdam`;unsupported;unsupported;unsupported
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:class:`RAdam`;unsupported;unsupported;unsupported
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:class:`RMSprop`;unsupported;unsupported;unsupported
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:class:`Rprop`;unsupported;unsupported;unsupported
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:class:`SGD`;beta;beta;beta
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How to adjust learning rate
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---------------------------
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:class:`torch.optim.lr_scheduler.LRScheduler` provides several methods to adjust the learning
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rate based on the number of epochs. :class:`torch.optim.lr_scheduler.ReduceLROnPlateau`
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allows dynamic learning rate reducing based on some validation measurements.
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Learning rate scheduling should be applied after optimizer's update; e.g., you
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should write your code this way:
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Example::
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optimizer = optim.SGD(model.parameters(), lr=0.01, momentum=0.9)
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scheduler = ExponentialLR(optimizer, gamma=0.9)
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for epoch in range(20):
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for input, target in dataset:
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optimizer.zero_grad()
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output = model(input)
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loss = loss_fn(output, target)
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loss.backward()
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optimizer.step()
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scheduler.step()
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Most learning rate schedulers can be called back-to-back (also referred to as
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chaining schedulers). The result is that each scheduler is applied one after the
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other on the learning rate obtained by the one preceding it.
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Example::
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optimizer = optim.SGD(model.parameters(), lr=0.01, momentum=0.9)
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scheduler1 = ExponentialLR(optimizer, gamma=0.9)
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scheduler2 = MultiStepLR(optimizer, milestones=[30,80], gamma=0.1)
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for epoch in range(20):
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for input, target in dataset:
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optimizer.zero_grad()
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output = model(input)
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loss = loss_fn(output, target)
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loss.backward()
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optimizer.step()
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scheduler1.step()
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scheduler2.step()
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In many places in the documentation, we will use the following template to refer to schedulers
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algorithms.
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>>> scheduler = ...
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>>> for epoch in range(100):
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>>> train(...)
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>>> validate(...)
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>>> scheduler.step()
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.. warning::
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Prior to PyTorch 1.1.0, the learning rate scheduler was expected to be called before
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the optimizer's update; 1.1.0 changed this behavior in a BC-breaking way. If you use
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the learning rate scheduler (calling ``scheduler.step()``) before the optimizer's update
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(calling ``optimizer.step()``), this will skip the first value of the learning rate schedule.
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If you are unable to reproduce results after upgrading to PyTorch 1.1.0, please check
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if you are calling ``scheduler.step()`` at the wrong time.
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.. autosummary::
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:toctree: generated
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:nosignatures:
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lr_scheduler.LRScheduler
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lr_scheduler.LambdaLR
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lr_scheduler.MultiplicativeLR
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lr_scheduler.StepLR
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lr_scheduler.MultiStepLR
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lr_scheduler.ConstantLR
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lr_scheduler.LinearLR
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lr_scheduler.ExponentialLR
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lr_scheduler.PolynomialLR
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lr_scheduler.CosineAnnealingLR
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lr_scheduler.ChainedScheduler
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lr_scheduler.SequentialLR
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lr_scheduler.ReduceLROnPlateau
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lr_scheduler.CyclicLR
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lr_scheduler.OneCycleLR
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lr_scheduler.CosineAnnealingWarmRestarts
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Weight Averaging (SWA and EMA)
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------------------------------
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:class:`torch.optim.swa_utils.AveragedModel` implements Stochastic Weight Averaging (SWA) and Exponential Moving Average (EMA),
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:class:`torch.optim.swa_utils.SWALR` implements the SWA learning rate scheduler and
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:func:`torch.optim.swa_utils.update_bn` is a utility function used to update SWA/EMA batch
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normalization statistics at the end of training.
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SWA has been proposed in `Averaging Weights Leads to Wider Optima and Better Generalization`_.
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EMA is a widely known technique to reduce the training time by reducing the number of weight updates needed. It is a variation of `Polyak averaging`_, but using exponential weights instead of equal weights across iterations.
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.. _`Averaging Weights Leads to Wider Optima and Better Generalization`: https://arxiv.org/abs/1803.05407
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.. _`Polyak averaging`: https://paperswithcode.com/method/polyak-averaging
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Constructing averaged models
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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The `AveragedModel` class serves to compute the weights of the SWA or EMA model.
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You can create an SWA averaged model by running:
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>>> averaged_model = AveragedModel(model)
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EMA models are constructed by specifying the ``multi_avg_fn`` argument as follows:
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>>> decay = 0.999
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>>> averaged_model = AveragedModel(model, multi_avg_fn=get_ema_multi_avg_fn(decay))
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Decay is a parameter between 0 and 1 that controls how fast the averaged parameters are decayed. If not provided to :func:`torch.optim.swa_utils.get_ema_multi_avg_fn`, the default is 0.999.
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:func:`torch.optim.swa_utils.get_ema_multi_avg_fn` returns a function that applies the following EMA equation to the weights:
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.. math:: W^\textrm{EMA}_{t+1} = \alpha W^\textrm{EMA}_{t} + (1 - \alpha) W^\textrm{model}_t
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where alpha is the EMA decay.
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Here the model ``model`` can be an arbitrary :class:`torch.nn.Module` object. ``averaged_model``
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will keep track of the running averages of the parameters of the ``model``. To update these
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averages, you should use the :func:`update_parameters` function after the `optimizer.step()`:
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>>> averaged_model.update_parameters(model)
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For SWA and EMA, this call is usually done right after the optimizer ``step()``. In the case of SWA, this is usually skipped for some numbers of steps at the beginning of the training.
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Custom averaging strategies
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^^^^^^^^^^^^^^^^^^^^^^^^^^^
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By default, :class:`torch.optim.swa_utils.AveragedModel` computes a running equal average of
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the parameters that you provide, but you can also use custom averaging functions with the
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``avg_fn`` or ``multi_avg_fn`` parameters:
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- ``avg_fn`` allows defining a function operating on each parameter tuple (averaged parameter, model parameter) and should return the new averaged parameter.
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- ``multi_avg_fn`` allows defining more efficient operations acting on a tuple of parameter lists, (averaged parameter list, model parameter list), at the same time, for example using the ``torch._foreach*`` functions. This function must update the averaged parameters in-place.
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In the following example ``ema_model`` computes an exponential moving average using the ``avg_fn`` parameter:
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>>> ema_avg = lambda averaged_model_parameter, model_parameter, num_averaged:\
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>>> 0.9 * averaged_model_parameter + 0.1 * model_parameter
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>>> ema_model = torch.optim.swa_utils.AveragedModel(model, avg_fn=ema_avg)
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In the following example ``ema_model`` computes an exponential moving average using the more efficient ``multi_avg_fn`` parameter:
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>>> ema_model = AveragedModel(model, multi_avg_fn=get_ema_multi_avg_fn(0.9))
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SWA learning rate schedules
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^^^^^^^^^^^^^^^^^^^^^^^^^^^
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Typically, in SWA the learning rate is set to a high constant value. :class:`SWALR` is a
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learning rate scheduler that anneals the learning rate to a fixed value, and then keeps it
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constant. For example, the following code creates a scheduler that linearly anneals the
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learning rate from its initial value to 0.05 in 5 epochs within each parameter group:
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>>> swa_scheduler = torch.optim.swa_utils.SWALR(optimizer, \
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>>> anneal_strategy="linear", anneal_epochs=5, swa_lr=0.05)
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You can also use cosine annealing to a fixed value instead of linear annealing by setting
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``anneal_strategy="cos"``.
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Taking care of batch normalization
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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:func:`update_bn` is a utility function that allows to compute the batchnorm statistics for the SWA model
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on a given dataloader ``loader`` at the end of training:
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>>> torch.optim.swa_utils.update_bn(loader, swa_model)
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:func:`update_bn` applies the ``swa_model`` to every element in the dataloader and computes the activation
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statistics for each batch normalization layer in the model.
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.. warning::
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:func:`update_bn` assumes that each batch in the dataloader ``loader`` is either a tensors or a list of
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tensors where the first element is the tensor that the network ``swa_model`` should be applied to.
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If your dataloader has a different structure, you can update the batch normalization statistics of the
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``swa_model`` by doing a forward pass with the ``swa_model`` on each element of the dataset.
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Putting it all together: SWA
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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In the example below, ``swa_model`` is the SWA model that accumulates the averages of the weights.
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We train the model for a total of 300 epochs and we switch to the SWA learning rate schedule
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and start to collect SWA averages of the parameters at epoch 160:
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>>> loader, optimizer, model, loss_fn = ...
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>>> swa_model = torch.optim.swa_utils.AveragedModel(model)
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>>> scheduler = torch.optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=300)
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>>> swa_start = 160
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>>> swa_scheduler = SWALR(optimizer, swa_lr=0.05)
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>>>
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>>> for epoch in range(300):
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>>> for input, target in loader:
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>>> optimizer.zero_grad()
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>>> loss_fn(model(input), target).backward()
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>>> optimizer.step()
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>>> if epoch > swa_start:
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>>> swa_model.update_parameters(model)
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>>> swa_scheduler.step()
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>>> else:
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>>> scheduler.step()
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>>>
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>>> # Update bn statistics for the swa_model at the end
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>>> torch.optim.swa_utils.update_bn(loader, swa_model)
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>>> # Use swa_model to make predictions on test data
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>>> preds = swa_model(test_input)
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Putting it all together: EMA
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^^^^^^^^^^^^^^^^^^^^^^^^^^^^
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In the example below, ``ema_model`` is the EMA model that accumulates the exponentially-decayed averages of the weights with a decay rate of 0.999.
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We train the model for a total of 300 epochs and start to collect EMA averages immediately.
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>>> loader, optimizer, model, loss_fn = ...
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>>> ema_model = torch.optim.swa_utils.AveragedModel(model, \
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>>> multi_avg_fn=torch.optim.swa_utils.get_ema_multi_avg_fn(0.999))
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>>>
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>>> for epoch in range(300):
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>>> for input, target in loader:
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>>> optimizer.zero_grad()
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>>> loss_fn(model(input), target).backward()
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>>> optimizer.step()
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>>> ema_model.update_parameters(model)
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>>>
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>>> # Update bn statistics for the ema_model at the end
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>>> torch.optim.swa_utils.update_bn(loader, ema_model)
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>>> # Use ema_model to make predictions on test data
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>>> preds = ema_model(test_input)
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.. autosummary::
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:toctree: generated
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:nosignatures:
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swa_utils.AveragedModel
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swa_utils.SWALR
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.. autofunction:: torch.optim.swa_utils.get_ema_multi_avg_fn
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.. autofunction:: torch.optim.swa_utils.update_bn
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.. This module needs to be documented. Adding here in the meantime
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.. for tracking purposes
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.. py:module:: torch.optim.adadelta
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.. py:module:: torch.optim.adagrad
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.. py:module:: torch.optim.adam
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.. py:module:: torch.optim.adamax
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.. py:module:: torch.optim.adamw
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.. py:module:: torch.optim.asgd
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.. py:module:: torch.optim.lbfgs
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.. py:module:: torch.optim.lr_scheduler
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.. py:module:: torch.optim.nadam
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.. py:module:: torch.optim.optimizer
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.. py:module:: torch.optim.radam
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.. py:module:: torch.optim.rmsprop
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.. py:module:: torch.optim.rprop
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.. py:module:: torch.optim.sgd
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.. py:module:: torch.optim.sparse_adam
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.. py:module:: torch.optim.swa_utils
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