torch.Tensor.requires_grad_¶
- Tensor.requires_grad_(requires_grad=True) Tensor¶
- Change if autograd should record operations on this tensor: sets this tensor’s - requires_gradattribute in-place. Returns this tensor.- requires_grad_()’s main use case is to tell autograd to begin recording operations on a Tensor- tensor. If- tensorhas- requires_grad=False(because it was obtained through a DataLoader, or required preprocessing or initialization),- tensor.requires_grad_()makes it so that autograd will begin to record operations on- tensor.- Parameters
- requires_grad (bool) – If autograd should record operations on this tensor. Default: - True.
 - Example: - >>> # Let's say we want to preprocess some saved weights and use >>> # the result as new weights. >>> saved_weights = [0.1, 0.2, 0.3, 0.25] >>> loaded_weights = torch.tensor(saved_weights) >>> weights = preprocess(loaded_weights) # some function >>> weights tensor([-0.5503, 0.4926, -2.1158, -0.8303]) >>> # Now, start to record operations done to weights >>> weights.requires_grad_() >>> out = weights.pow(2).sum() >>> out.backward() >>> weights.grad tensor([-1.1007, 0.9853, -4.2316, -1.6606])