Adagrad#
- classtorch.optim.Adagrad(params,lr=0.01,lr_decay=0,weight_decay=0,initial_accumulator_value=0,eps=1e-10,foreach=None,*,maximize=False,differentiable=False,fused=None)[source]#
Implements Adagrad algorithm.
For further details regarding the algorithm we refer toAdaptive Subgradient Methods for Online Learningand Stochastic Optimization.
- Parameters
params (iterable) – iterable of parameters or named_parameters to optimizeor iterable of dicts defining parameter groups. When using named_parameters,all parameters in all groups should be named
lr_decay (float,optional) – learning rate decay (default: 0)
weight_decay (float,optional) – weight decay (L2 penalty) (default: 0)
initial_accumulator_value (float,optional) – initial value of thesum of squares of gradients (default: 0)
eps (float,optional) – term added to the denominator to improvenumerical stability (default: 1e-10)
foreach (bool,optional) – whether foreach implementation of optimizeris used. If unspecified by the user (so foreach is None), we will try to useforeach over the for-loop implementation on CUDA, since it is usuallysignificantly more performant. Note that the foreach implementation uses~ sizeof(params) more peak memory than the for-loop version due to the intermediatesbeing a tensorlist vs just one tensor. If memory is prohibitive, batch fewerparameters through the optimizer at a time or switch this flag to False (default: None)
maximize (bool,optional) – maximize the objective with respect to theparams, instead of minimizing (default: False)
differentiable (bool,optional) – whether autograd shouldoccur through the optimizer step in training. Otherwise, the step()function runs in a torch.no_grad() context. Setting to True can impairperformance, so leave it False if you don’t intend to run autogradthrough this instance (default: False)
fused (bool,optional) – whether the fused implementation (CPU only) is used.Currently,torch.float64,torch.float32,torch.float16, andtorch.bfloat16are supported. (default: None). Please note that the fused implementations does notsupport sparse or complex gradients.
- add_param_group(param_group)[source]#
Add a param group to the
Optimizersparam_groups.This can be useful when fine tuning a pre-trained network as frozen layers can be madetrainable and added to the
Optimizeras training progresses.- Parameters
param_group (dict) – Specifies what Tensors should be optimized along with groupspecific optimization options.
- load_state_dict(state_dict)[source]#
Load the optimizer state.
- Parameters
state_dict (dict) – optimizer state. Should be an object returnedfrom a call to
state_dict().
Warning
Make sure this method is called after initializing
torch.optim.lr_scheduler.LRScheduler,as calling it beforehand will overwrite the loaded learning rates.Note
The names of the parameters (if they exist under the “param_names” key of each param groupin
state_dict()) will not affect the loading process.To use the parameters’ names for custom cases (such as when the parameters in the loaded state dictdiffer from those initialized in the optimizer),a customregister_load_state_dict_pre_hookshould be implemented to adapt the loaded dictaccordingly.Ifparam_namesexist in loaded state dictparam_groupsthey will be saved and overridethe current names, if present, in the optimizer state. If they do not exist in loaded state dict,the optimizerparam_nameswill remain unchanged.Example
>>>model=torch.nn.Linear(10,10)>>>optim=torch.optim.SGD(model.parameters(),lr=3e-4)>>>scheduler1=torch.optim.lr_scheduler.LinearLR(...optim,...start_factor=0.1,...end_factor=1,...total_iters=20,...)>>>scheduler2=torch.optim.lr_scheduler.CosineAnnealingLR(...optim,...T_max=80,...eta_min=3e-5,...)>>>lr=torch.optim.lr_scheduler.SequentialLR(...optim,...schedulers=[scheduler1,scheduler2],...milestones=[20],...)>>>lr.load_state_dict(torch.load("./save_seq.pt"))>>># now load the optimizer checkpoint after loading the LRScheduler>>>optim.load_state_dict(torch.load("./save_optim.pt"))
- register_load_state_dict_post_hook(hook,prepend=False)[source]#
Register a load_state_dict post-hook which will be called after
load_state_dict()is called. It should have thefollowing signature:hook(optimizer)->None
The
optimizerargument is the optimizer instance being used.The hook will be called with argument
selfafter callingload_state_dictonself. The registered hook can be used toperform post-processing afterload_state_dicthas loaded thestate_dict.- Parameters
hook (Callable) – The user defined hook to be registered.
prepend (bool) – If True, the provided post
hookwill be fired beforeall the already registered post-hooks onload_state_dict. Otherwise,the providedhookwill be fired after all the already registeredpost-hooks. (default: False)
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemoveableHandle
- register_load_state_dict_pre_hook(hook,prepend=False)[source]#
Register a load_state_dict pre-hook which will be called before
load_state_dict()is called. It should have thefollowing signature:hook(optimizer,state_dict)->state_dictorNone
The
optimizerargument is the optimizer instance being used and thestate_dictargument is a shallow copy of thestate_dictthe userpassed in toload_state_dict. The hook may modify the state_dict inplaceor optionally return a new one. If a state_dict is returned, it will be usedto be loaded into the optimizer.The hook will be called with argument
selfandstate_dictbeforecallingload_state_dictonself. The registered hook can be used toperform pre-processing before theload_state_dictcall is made.- Parameters
hook (Callable) – The user defined hook to be registered.
prepend (bool) – If True, the provided pre
hookwill be fired beforeall the already registered pre-hooks onload_state_dict. Otherwise,the providedhookwill be fired after all the already registeredpre-hooks. (default: False)
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemoveableHandle
- register_state_dict_post_hook(hook,prepend=False)[source]#
Register a state dict post-hook which will be called after
state_dict()is called.It should have the following signature:
hook(optimizer,state_dict)->state_dictorNone
The hook will be called with arguments
selfandstate_dictafter generatingastate_dictonself. The hook may modify the state_dict inplace or optionallyreturn a new one. The registered hook can be used to perform post-processingon thestate_dictbefore it is returned.- Parameters
hook (Callable) – The user defined hook to be registered.
prepend (bool) – If True, the provided post
hookwill be fired beforeall the already registered post-hooks onstate_dict. Otherwise,the providedhookwill be fired after all the already registeredpost-hooks. (default: False)
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemoveableHandle
- register_state_dict_pre_hook(hook,prepend=False)[source]#
Register a state dict pre-hook which will be called before
state_dict()is called.It should have the following signature:
hook(optimizer)->None
The
optimizerargument is the optimizer instance being used.The hook will be called with argumentselfbefore callingstate_dictonself.The registered hook can be used to perform pre-processing before thestate_dictcall is made.- Parameters
hook (Callable) – The user defined hook to be registered.
prepend (bool) – If True, the provided pre
hookwill be fired beforeall the already registered pre-hooks onstate_dict. Otherwise,the providedhookwill be fired after all the already registeredpre-hooks. (default: False)
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemoveableHandle
- register_step_post_hook(hook)[source]#
Register an optimizer step post hook which will be called after optimizer step.
It should have the following signature:
hook(optimizer,args,kwargs)->None
The
optimizerargument is the optimizer instance being used.- Parameters
hook (Callable) – The user defined hook to be registered.
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemovableHandle
- register_step_pre_hook(hook)[source]#
Register an optimizer step pre hook which will be called before optimizer step.
It should have the following signature:
hook(optimizer,args,kwargs)->Noneormodifiedargsandkwargs
The
optimizerargument is the optimizer instance being used. Ifargs and kwargs are modified by the pre-hook, then the transformedvalues are returned as a tuple containing the new_args and new_kwargs.- Parameters
hook (Callable) – The user defined hook to be registered.
- Returns
a handle that can be used to remove the added hook by calling
handle.remove()- Return type
torch.utils.hooks.RemovableHandle
- state_dict()[source]#
Return the state of the optimizer as a
dict.It contains two entries:
state: a Dict holding current optimization state. Its contentdiffers between optimizer classes, but some common characteristicshold. For example, state is saved per parameter, and the parameteritself is NOT saved.
stateis a Dictionary mapping parameter idsto a Dict with state corresponding to each parameter.
param_groups: a List containing all parameter groups where eachparameter group is a Dict. Each parameter group contains metadataspecific to the optimizer, such as learning rate and weight decay,as well as a List of parameter IDs of the parameters in the group.If a param group was initialized with
named_parameters()the namescontent will also be saved in the state dict.
NOTE: The parameter IDs may look like indices but they are just IDsassociating state with param_group. When loading from a state_dict,the optimizer will zip the param_group
params(int IDs) and theoptimizerparam_groups(actualnn.Parameters) in order tomatch state WITHOUT additional verification.A returned state dict might look something like:
{ 'state': { 0: {'momentum_buffer': tensor(...), ...}, 1: {'momentum_buffer': tensor(...), ...}, 2: {'momentum_buffer': tensor(...), ...}, 3: {'momentum_buffer': tensor(...), ...} }, 'param_groups': [ { 'lr': 0.01, 'weight_decay': 0, ... 'params': [0] 'param_names' ['param0'] (optional) }, { 'lr': 0.001, 'weight_decay': 0.5, ... 'params': [1, 2, 3] 'param_names': ['param1', 'layer.weight', 'layer.bias'] (optional) } ]}
- step(closure=None)[source]#
Perform a single optimization step.
- Parameters
closure (Callable,optional) – A closure that reevaluates the modeland returns the loss.
- zero_grad(set_to_none=True)[source]#
Reset the gradients of all optimized
torch.Tensors.- Parameters
set_to_none (bool,optional) –
Instead of setting to zero, set the grads to None. Default:
TrueThis will in general have lower memory footprint, and can modestly improve performance.However, it changes certain behaviors. For example:
When the user tries to access a gradient and perform manual ops on it,a None attribute or a Tensor full of 0s will behave differently.
If the user requests
zero_grad(set_to_none=True)followed by a backward pass,.gradsare guaranteed to be None for params that did not receive a gradient.torch.optimoptimizers have a different behavior if the gradient is 0 or None(in one case it does the step with a gradient of 0 and in the other it skipsthe step altogether).