脚本专栏 
首页 > 脚本专栏 > 浏览文章

keras tensorflow 实现在python下多进程运行

(编辑:jimmy 日期: 2025/1/18 浏览:3 次 )

如下所示:

 
from multiprocessing import Process
import os
 
 
def training_function(...):
 import keras # 此处需要在子进程中
 ...
 
if __name__ == '__main__':
 p = Process(target=training_function, args=(...,))
 p.start()

原文地址:https://stackoverflow.com/questions/42504669/keras-tensorflow-and-multiprocessing-in-python

1、DO NOT LOAD KERAS TO YOUR MAIN ENVIRONMENT. If you want to load Keras / Theano / TensorFlow do it only in the function environment. E.g. don't do this:

import keras
 
def training_function(...):
 ...

but do the following:

def training_function(...):
 import keras
 ...

Run work connected with each model in a separate process: I'm usually creating workers which are making the job (like e.g. training, tuning, scoring) and I'm running them in separate processes. What is nice about it that whole memory used by this process is completely freedwhen your process is done. This helps you with loads of memory problems which you usually come across when you are using multiprocessing or even running multiple models in one process. So this looks e.g. like this:

def _training_worker(train_params):
 import keras
 model = obtain_model(train_params)
 model.fit(train_params)
 send_message_to_main_process(...)
 
def train_new_model(train_params):
 training_process = multiprocessing.Process(target=_training_worker, args = train_params)
 training_process.start()
 get_message_from_training_process(...)
 training_process.join()

Different approach is simply preparing different scripts for different model actions. But this may cause memory errors especially when your models are memory consuming. NOTE that due to this reason it's better to make your execution strictly sequential.

以上这篇keras tensorflow 实现在python下多进程运行就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持。

上一篇:tensorflow 初始化未初始化的变量实例
下一篇:python中count函数简单的实例讲解
一句话新闻
微软与英特尔等合作伙伴联合定义“AI PC”:键盘需配有Copilot物理按键
几个月来,英特尔、微软、AMD和其它厂商都在共同推动“AI PC”的想法,朝着更多的AI功能迈进。在近日,英特尔在台北举行的开发者活动中,也宣布了关于AI PC加速计划、新的PC开发者计划和独立硬件供应商计划。
在此次发布会上,英特尔还发布了全新的全新的酷睿Ultra Meteor Lake NUC开发套件,以及联合微软等合作伙伴联合定义“AI PC”的定义标准。