Getting started with pytorch to learn MSE

"PyTorch Deep Learning Practice" Complete Combination Set-Linear Model
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import  numpy as np
import matplotlib.pyplot as plt

x_data = [1.0,2.0,3.0]
y_data = [2.0,4.0,6.0]

def forward(x):
    return x*w

def loss(x,y):
    y_pred = forward(x)
    return (y_pred - y) * (y_pred - y)

w_list = []
mse_list = []
for w in np.arange(0.0,4.1,0.1):
    print('w=',w)
    l_sum = 0
    for x_val , y_val in zip(x_data,y_data):
        y_pred_val = forward(x_val)
        loss_val = loss(x_val,y_val)
        l_sum += loss_val
        print('\t',x_val,y_val,y_pred_val,loss_val)
    print('MSE=',l_sum/3)
    w_list.append(w)
    mse_list.append(l_sum/3)

plt.plot(w_list,mse_list)
plt.ylabel('Loss')
plt.xlabel('w')
plt.show()

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Origin blog.csdn.net/weixin_41281151/article/details/108202220