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- import numpy as np
- import matplotlib
- from matplotlib import pyplot as plt
- # Default parameters for plots
- matplotlib.rcParams['font.size'] = 20
- matplotlib.rcParams['figure.titlesize'] = 20
- matplotlib.rcParams['figure.figsize'] = [9, 7]
- matplotlib.rcParams['font.family'] = ['STKaiti']
- matplotlib.rcParams['axes.unicode_minus']=False
- import tensorflow as tf
- import timeit
- cpu_data = []
- gpu_data = []
- for n in range(9):
- n = 10**n
- # 创建在CPU上运算的2个矩阵
- with tf.device('/cpu:0'):
- cpu_a = tf.random.normal([1, n])
- cpu_b = tf.random.normal([n, 1])
- print(cpu_a.device, cpu_b.device)
- # 创建使用GPU运算的2个矩阵
- with tf.device('/gpu:0'):
- gpu_a = tf.random.normal([1, n])
- gpu_b = tf.random.normal([n, 1])
- print(gpu_a.device, gpu_b.device)
- def cpu_run():
- with tf.device('/cpu:0'):
- c = tf.matmul(cpu_a, cpu_b)
- return c
- def gpu_run():
- with tf.device('/gpu:0'):
- c = tf.matmul(gpu_a, gpu_b)
- return c
- # 第一次计算需要热身,避免将初始化阶段时间结算在内
- cpu_time = timeit.timeit(cpu_run, number=10)
- gpu_time = timeit.timeit(gpu_run, number=10)
- print('warmup:', cpu_time, gpu_time)
- # 正式计算10次,取平均时间
- cpu_time = timeit.timeit(cpu_run, number=10)
- gpu_time = timeit.timeit(gpu_run, number=10)
- print('run time:', cpu_time, gpu_time)
- cpu_data.append(cpu_time/10)
- gpu_data.append(gpu_time/10)
- del cpu_a,cpu_b,gpu_a,gpu_b
- x = [10**i for i in range(9)]
- cpu_data = [1000*i for i in cpu_data]
- gpu_data = [1000*i for i in gpu_data]
- plt.plot(x, cpu_data, 'C1')
- plt.plot(x, cpu_data, color='C1', marker='s', label='CPU')
- plt.plot(x, gpu_data,'C0')
- plt.plot(x, gpu_data, color='C0', marker='^', label='GPU')
- plt.gca().set_xscale('log')
- plt.gca().set_yscale('log')
- plt.ylim([0,100])
- plt.xlabel('矩阵大小n:(1xn)@(nx1)')
- plt.ylabel('运算时间(ms)')
- plt.legend()
- plt.savefig('gpu-time.svg')
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