脚本专栏 发布日期:2025/10/28 浏览次数:1
1. 函数求一阶导
import tensorflow as tf tf.enable_eager_execution() tfe=tf.contrib.eager from math import pi def f(x): return tf.square(tf.sin(x)) assert f(pi/2).numpy()==1.0 sess=tf.Session() grad_f=tfe.gradients_function(f) print(grad_f(np.zeros(1))[0].numpy())
2. 高阶函数求导
import numpy as np
def f(x):
return tf.square(tf.sin(x))
def grad(f):
return lambda x:tfe.gradients_function(f)(x)[0]
x=tf.lin_space(-2*pi,2*pi,100)
# print(grad(f)(x).numpy())
x=x.numpy()
import matplotlib.pyplot as plt
plt.plot(x,f(x).numpy(),label="f")
plt.plot(x,grad(f)(x).numpy(),label="first derivative")#一阶导
plt.plot(x,grad(grad(f))(x).numpy(),label="second derivative")#二阶导
plt.plot(x,grad(grad(grad(f)))(x).numpy(),label="third derivative")#三阶导
plt.legend()
plt.show()
def f(x,y):
output=1
for i in range(int(y)):
output=tf.multiply(output,x)
return output
def g(x,y):
return tfe.gradients_function(f)(x,y)[0]
print(f(3.0,2).numpy()) #f(x)=x^2
print(g(3.0,2).numpy()) #f'(x)=2*x
print(f(4.0,3).numpy())#f(x)=x^3
print(g(4.0,3).numpy())#f(x)=3x^2
3. 函数求一阶偏导
x=tf.ones((2,2)) with tf.GradientTape(persistent=True) as t: t.watch(x) y=tf.reduce_sum(x) z=tf.multiply(y,y) dz_dy=t.gradient(z,y) print(dz_dy.numpy()) dz_dx=t.gradient(z,x) print(dz_dx.numpy()) for i in [0, 1]: for j in [0, 1]: print(dz_dx[i][j].numpy() )
4. 函数求二阶偏导
x=tf.constant(2.0)
with tf.GradientTape() as t:
with tf.GradientTape() as t2:
t2.watch(x)
y=x*x*x
dy_dx=t2.gradient(y,x)
d2y_dx2=t.gradient(dy_dx,x)
print(dy_dx.numpy())
print(d2y_dx2.numpy())
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