


Analysis of misunderstandings about the use of blocking (join) and lock (Lock) in Python multi-threading
This article mainly provides details for everyone This article introduces the misunderstandings about blocking join and lock in Python multi-threading, which has certain reference value. Interested friends can refer to
About blocking the main thread
Incorrect usage of join
Thread.join() The function is to block the main thread, that is, when the child thread does not return, the main thread waits for its return and then continues execution.
join cannot be used with start in a loop
The following is the error code. The code creates 5 threads, and then uses a loop to activate the threads. After activation, it blocks the main thread.
threads = [Thread() for i in range(5)] for thread in threads: thread.start() thread.join()
Execution process:
1. In the first loop, the main thread activates thread 1 through the start function, and thread 1 performs calculations.
2. Since the start function does not block the main thread, while thread 1 is performing operations, the main thread executes the join function downwards.
3. After executing join, the main thread is blocked by thread 1. Before thread 1 returns the result, the main thread cannot Execute the next cycle.
4. After thread 1 completes the calculation, unblock the main thread.
5. The main thread enters the next cycle, activates thread 2 and is blocked by it...
In this way, it can be seen that the five threads that were supposed to be concurrent have become sequential queues here, and the efficiency is the same as that of a single thread.
Correct usage of join
Use two loops to process the start and join functions respectively. Concurrency can be achieved.
threads = [Thread() for i in range(5)] for thread in threads: thread.start() for thread in threads: thread.join()
time.sleep instead of join for debugging
I have seen such code in some projects before, use time.sleep instead of join to manually block the main thread.
Before all child threads return, the main thread falls into wireless Loop and cannot exit.
for thread in threads: thread.start() while 1: if thread_num == 0: break time.sleep(0.01)
About thread lock (threading.Lock)
Is the single-core CPU PIL still available? Need a lock?
Non-atomic operationcount = count 1 Theoretically, it is thread-unsafe.
Use 3 threads to perform the above operation at the same time to change the value of the global variable count, and check Program execution result.
If the result is correct, it means that no thread conflict has occurred.
Use the following code to test
# -*- coding: utf-8 -*- import threading import time count = 0 class Counter(threading.Thread): def __init__(self, name): self.thread_name = name super(Counter, self).__init__(name=name) def run(self): global count for i in xrange(100000): count = count + 1 counters = [Counter('thread:%s' % i) for i in range(5)] for counter in counters: counter.start() time.sleep(5) print 'count=%s' % count
Running result:
count=275552
In fact, the results of each run are different and incorrect, which proves that single-core CPU PIL still cannot guarantee thread safety and needs to be locked.
Correct code after locking:
# -*- coding: utf-8 -*- import threading import time count = 0 lock = threading.Lock() class Counter(threading.Thread): def __init__(self, name): self.thread_name = name self.lock = threading.Lock() super(Counter, self).__init__(name=name) def run(self): global count global lock for i in xrange(100000): lock.acquire() count = count + 1 lock.release() counters = [Counter('thread:%s' % i) for i in range(5)] for counter in counters: counter.start() time.sleep(5) print 'count=%s' % count
Result:
count=500000
Pay attention to the global nature of the lock
This is a simple Python syntax issue, but it may be ignored when the logic is complex.
Ensure that the lock is suitable for multiple sub- It is shared by threads, that is, do not create locks inside subclasses of Thread.
The following is the error code
# -*- coding: utf-8 -*- import threading import time count = 0 # lock = threading.Lock() # 正确的声明位置 class Counter(threading.Thread): def __init__(self, name): self.thread_name = name self.lock = threading.Lock() # 错误的声明位置 super(Counter, self).__init__(name=name) def run(self): global count for i in xrange(100000): self.lock.acquire() count = count + 1 self.lock.release() counters = [Counter('thread:%s' % i) for i in range(5)] for counter in counters: print counter.thread_name counter.start() time.sleep(5) print 'count=%s' % count
Related recommendations:
Detailed explanation of synchronization locks in python threads
The use of events in python multi-threading Detailed explanation
implementation of python thread pool threadpool
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