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Test Apple M1 Pytorch
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import torch | |
import math | |
# this ensures that the current MacOS version is at least 12.3+ | |
print(torch.backends.mps.is_available()) | |
# this ensures that the current current PyTorch installation was built with MPS activated. | |
print(torch.backends.mps.is_built()) | |
dtype = torch.float | |
device = torch.device("mps") | |
# Create random input and output data | |
x = torch.linspace(-math.pi, math.pi, 2000, device=device, dtype=dtype) | |
y = torch.sin(x) | |
# Randomly initialize weights | |
a = torch.randn((), device=device, dtype=dtype) | |
b = torch.randn((), device=device, dtype=dtype) | |
c = torch.randn((), device=device, dtype=dtype) | |
d = torch.randn((), device=device, dtype=dtype) | |
learning_rate = 1e-6 | |
for t in range(2000): | |
# Forward pass: compute predicted y | |
y_pred = a + b * x + c * x ** 2 + d * x ** 3 | |
# Compute and print loss | |
loss = (y_pred - y).pow(2).sum().item() | |
if t % 100 == 99: | |
print(t, loss) | |
# Backprop to compute gradients of a, b, c, d with respect to loss | |
grad_y_pred = 2.0 * (y_pred - y) | |
grad_a = grad_y_pred.sum() | |
grad_b = (grad_y_pred * x).sum() | |
grad_c = (grad_y_pred * x ** 2).sum() | |
grad_d = (grad_y_pred * x ** 3).sum() | |
# Update weights using gradient descent | |
a -= learning_rate * grad_a | |
b -= learning_rate * grad_b | |
c -= learning_rate * grad_c | |
d -= learning_rate * grad_d | |
print(f'Result: y = {a.item()} + {b.item()} x + {c.item()} x^2 + {d.item()} x^3') |
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