| import torch as t | |
| import torch.nn as nn | |
| x = t.randn(4,3) | |
| y = t.randn(4,2) | |
| linear = nn.Linear(3,2) | |
| print('w: ', linear.weight) | |
| print('b: ', linear.bias) | |
| criterion = nn.MSELoss() | |
| optimizer = t.optim.SGD(linear.parameters(), lr=0.01) | |
| pred = linear(x) | |
| loss = criterion(pred, y) | |
| print('loss: ', loss.item()) | |
| loss.backward() | |
| print('dL/dw: ', linear.weight.grad) | |
| print('dL/db: ', linear.bias.grad) | |
| optimizer.step() | |
| pred = linear(x) | |
| loss = criterion(pred, y) | |
| print('loss after 1 step optimization', loss.item()) |