Does it call
nn.Module? I thought when we call the model,
forward method is being used.
Why do we need to specify train()?
model.train() tells your model that you are training the model. This helps inform layers such as Dropout and BatchNorm, which are designed to behave differently during training and evaluation. For instance, in training mode, BatchNorm updates a moving average on each new batch; whereas, for evaluation mode, these updates are frozen.
model.train() sets the mode to train
(see source code). You can call either
model.train(mode=False) to tell that you are testing.
It is somewhat intuitive to expect
train function to train model but it does not do that. It just sets the mode.
4is there a flag to detect if the model is in eval mode? e.g.
mdl.is_eval()? May 12, 2021 at 17:43
model.trainingflag. It is
False, when in
evalmode. May 12, 2021 at 18:16
In the current documentation, I find this "model.train()" is no longer being used: pytorch.org/tutorials/beginner/basics/quickstart_tutorial.html I did a small test with a small 3 layer neural network model with batch norm and dropout and trained it on tabular dataset. I found adding model.train() actually prevented my model accuracy going above 70%. When I removed the line, the accuracy was 87%!– IndrajitAug 7, 2021 at 12:43
@Indrajit Did you check that was not in train model, i.e.,
False? I think by default it is true and that is why they omit
model.train()call. As for your result, I cannot say much without knowing what the data was and if you measure test or train accuracy etc. Aug 16, 2021 at 21:47
1@UmangGupta- actually I figured out just now what was happening. My model.train() was actually impacting batchnorm and dropout layers - which in turn was impacting the model performance.– IndrajitAug 19, 2021 at 11:49
Here is the code for
def train(self, mode=True): r"""Sets the module in training mode.""" self.training = mode for module in self.children(): module.train(mode) return self
Here is the code for
def eval(self): r"""Sets the module in evaluation mode.""" return self.train(False)
By default, the
self.training flag is set to
True, i.e., modules are in train mode by default. When
False, the module is in the opposite state, eval mode.
Of the most commonly used layers, only
BatchNorm care about that flag.
Are there any other layers that support
self.trainingflag now ?– MelikeMar 5, 2021 at 18:13
I wonder how
model.eval()affects backward pass?– mrgloomDec 6, 2021 at 18:32
model.eval()is is just a switch not to take dropout and batch norms. I have a nice intro to PyTorch training where you can check the forward and backward pass, and deep intro to PyTorch AD where you can confidently understand the details of PyTorch AD.– prostiDec 6, 2021 at 18:45
1@Melike stackoverflow.com/questions/66534762/…– iacobJul 29, 2022 at 11:24
|Sets model in training mode i.e.
|Sets model in evaluation (inference) mode i.e.
Note: neither of these function calls run forward / backward passes. They tell the model how to act when run.
This is important as some modules (layers) (e.g.
BatchNorm) are designed to behave differently during training vs inference, and hence the model will produce unexpected results if run in the wrong mode.
There are two ways of letting the model know your intention i.e do you want to train the model or do you want to use the model to evaluate.
In case of
model.train() the model knows it has to learn the layers and when we use
model.eval() it indicates the model that nothing new is to be learnt and the model is used for testing.
model.eval() is also necessary because in pytorch if we are using batchnorm and during test if we want to just pass a single image, pytorch throws an error if
model.eval() is not specified.
Consider the following model
import torch import torch.nn.functional as F from torch_geometric.nn import GCNConv class GraphNet(torch.nn.Module): def __init__(self, num_node_features, num_classes): super(GraphNet, self).__init__() self.conv1 = GCNConv(num_node_features, 16) self.conv2 = GCNConv(16, num_classes) def forward(self, data): x, edge_index = data.x, data.edge_index x = self.conv1(x, edge_index) x = F.dropout(x, training=self.training) #Look here x = self.conv2(x, edge_index) return F.log_softmax(x, dim=1)
Here, the functioning of
dropout differ in different modes of operation. As you can see, it works only when
self.training==True. So, when you type
model.train(), the model's forward function will perform dropout otherwise it will not (say when
The current official documentation states the following:
This has any [sic] effect only on certain modules. See documentations of particular modules for details of their behaviors in training/evaluation mode, if they are affected, e.g. Dropout, BatchNorm, etc.
self.training = trainingrecursively for all modules by doing
self.train(False). In fact that is what
self.traindoes, changes the flag to true recursively for all modules. see code: github.com/pytorch/pytorch/blob/…