TypeError: can't convert cuda:0 device type tensor to numpy. Use Tensor.cpu() to copy the tensor to host memory first.
代码
# -*- coding: utf-8 -*-
"""
Created on Sat Feb 19 13:19:30 2022
@author: koneko
"""
from matplotlib import pyplot as plt
import torch
import math
dtype = torch.float
device = torch.device("cuda:0")
# 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)
lr = 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 -= lr * grad_a
b -= lr * grad_b
c -= lr * grad_c
d -= lr * grad_d
print(f'Result: y = {a.item()} + {b.item()} x + {c.item()} x^2 + {d.item()} x^3')
x = x.numpy()
y_pred = y_pred.numpy()
plt.plot(x,y_pred)
报错信息
TypeError: can't convert cuda:0 device type tensor to numpy. Use Tensor.cpu() to copy the tensor to host memory first.
原因
看信息应该是说数据在显存里plt不能直接调用?所以要先复制到宿主内存里面
解决方法
倒数第二三行修改为:
x = x.cpu().numpy()
y_pred = y_pred.cpu().numpy()
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