摘要
本文主要介绍了利用python的 threading和queue库实现多线程编程,并封装为一个类,方便读者嵌入自己的业务逻辑。最后以机器学习的一个超参数选择为例进行演示。
多线程实现逻辑封装
实例化该类后,在.object_func函数中加入自己的业务逻辑,再调用.run方法即可。
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# -*- coding: utf-8 -*-
# @Time : 2021/2/4 14:36
# @Author : CyrusMay WJ
# @FileName: run.py
# @Software: PyCharm
# @Blog :https://blog.csdn.net/Cyrus_May
import queue
import threading
class CyrusThread( object ):
def __init__( self ,num_thread = 10 ,logger = None ):
"""
:param num_thread: 线程数
:param logger: 日志对象
"""
self .num_thread = num_thread
self .logger = logger
def object_func( self ,args_queue,max_q):
while 1 :
try :
arg = args_queue.get_nowait()
step = args_queue.qsize()
self .logger.info( "progress:{}\{}" . format (max_q,step))
except :
self .logger.info( "no more arg for args_queue!" )
break
"""
此处加入自己的业务逻辑代码
"""
def run( self ,args):
args_queue = queue.Queue()
for value in args:
args_queue.put(value)
threads = []
for i in range ( self .num_thread):
threads.append(threading.Thread(target = self .object_func,args = args_queue))
for t in threads:
t.start()
for t in threads:
t.join()
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模型参数选择实例
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# -*- coding: utf-8 -*-
# @Time : 2021/2/4 14:36
# @Author : CyrusMay WJ
# @FileName: run.py
# @Software: PyCharm
# @Blog :https://blog.csdn.net/Cyrus_May
import queue
import threading
import numpy as np
from sklearn.datasets import load_boston
from sklearn.svm import SVR
import logging
import sys
class CyrusThread( object ):
def __init__( self ,num_thread = 10 ,logger = None ):
"""
:param num_thread: 线程数
:param logger: 日志对象
"""
self .num_thread = num_thread
self .logger = logger
def object_func( self ,args_queue,max_q):
while 1 :
try :
arg = args_queue.get_nowait()
step = args_queue.qsize()
self .logger.info( "progress:{}\{}" . format (max_q,max_q - step))
except :
self .logger.info( "no more arg for args_queue!" )
break
# 业务代码
C, epsilon, gamma = arg[ 0 ], arg[ 1 ], arg[ 2 ]
svr_model = SVR(C = C, epsilon = epsilon, gamma = gamma)
x, y = load_boston()[ "data" ], load_boston()[ "target" ]
svr_model.fit(x, y)
self .logger.info( "score:{}" . format (svr_model.score(x,y)))
def run( self ,args):
args_queue = queue.Queue()
max_q = 0
for value in args:
args_queue.put(value)
max_q + = 1
threads = []
for i in range ( self .num_thread):
threads.append(threading.Thread(target = self .object_func,args = (args_queue,max_q)))
for t in threads:
t.start()
for t in threads:
t.join()
# 创建日志对象
logger = logging.getLogger()
logger.setLevel(logging.INFO)
screen_handler = logging.StreamHandler(sys.stdout)
screen_handler.setLevel(logging.INFO)
formatter = logging.Formatter( '%(asctime)s - %(module)s.%(funcName)s:%(lineno)d - %(levelname)s - %(message)s' )
screen_handler.setFormatter(formatter)
logger.addHandler(screen_handler)
# 创建需要调整参数的集合
args = []
for C in [i for i in np.arange( 0.01 , 1 , 0.01 )]:
for epsilon in [i for i in np.arange( 0.001 , 1 , 0.01 )] + [i for i in range ( 1 , 10 , 1 )]:
for gamma in [i for i in np.arange( 0.001 , 1 , 0.01 )] + [i for i in range ( 1 , 10 , 1 )]:
args.append([C,epsilon,gamma])
# 创建多线程工具
threading_tool = CyrusThread(num_thread = 20 ,logger = logger)
threading_tool.run(args)
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运行结果
2021-02-04 20:52:22,824 - run.object_func:31 - INFO - progress:1176219\1
2021-02-04 20:52:22,824 - run.object_func:31 - INFO - progress:1176219\2
2021-02-04 20:52:22,826 - run.object_func:31 - INFO - progress:1176219\3
2021-02-04 20:52:22,833 - run.object_func:31 - INFO - progress:1176219\4
2021-02-04 20:52:22,837 - run.object_func:31 - INFO - progress:1176219\5
2021-02-04 20:52:22,838 - run.object_func:31 - INFO - progress:1176219\6
2021-02-04 20:52:22,841 - run.object_func:31 - INFO - progress:1176219\7
2021-02-04 20:52:22,862 - run.object_func:31 - INFO - progress:1176219\8
2021-02-04 20:52:22,873 - run.object_func:31 - INFO - progress:1176219\9
2021-02-04 20:52:22,884 - run.object_func:31 - INFO - progress:1176219\10
2021-02-04 20:52:22,885 - run.object_func:31 - INFO - progress:1176219\11
2021-02-04 20:52:22,897 - run.object_func:31 - INFO - progress:1176219\12
2021-02-04 20:52:22,900 - run.object_func:31 - INFO - progress:1176219\13
2021-02-04 20:52:22,904 - run.object_func:31 - INFO - progress:1176219\14
2021-02-04 20:52:22,912 - run.object_func:31 - INFO - progress:1176219\15
2021-02-04 20:52:22,920 - run.object_func:31 - INFO - progress:1176219\16
2021-02-04 20:52:22,920 - run.object_func:39 - INFO - score:-0.01674283914287855
2021-02-04 20:52:22,929 - run.object_func:31 - INFO - progress:1176219\17
2021-02-04 20:52:22,932 - run.object_func:39 - INFO - score:-0.007992354170952565
2021-02-04 20:52:22,932 - run.object_func:31 - INFO - progress:1176219\18
2021-02-04 20:52:22,945 - run.object_func:31 - INFO - progress:1176219\19
2021-02-04 20:52:22,954 - run.object_func:31 - INFO - progress:1176219\20
2021-02-04 20:52:22,978 - run.object_func:31 - INFO - progress:1176219\21
2021-02-04 20:52:22,984 - run.object_func:39 - INFO - score:-0.018769934807246536
2021-02-04 20:52:22,985 - run.object_func:31 - INFO - progress:1176219\22
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原文链接:https://blog.csdn.net/Cyrus_May/article/details/113663802