# Python: Queue.Queue vs. collections.deque

I need a queue which multiple threads can put stuff into, and multiple threads may read from.

Python has at least two queue classes, Queue.Queue and collections.deque, with the former seemingly using the latter internally. Both claim to be thread-safe in the documentation.

However, the Queue docs also state:

collections.deque is an alternative implementation of unbounded queues with fast atomic append() and popleft() operations that do not require locking.

Which I guess I don't quite unterstand: Does this mean deque isn't fully thread-safe after all?

If it is, I may not fully understand the difference between the two classes. I can see that Queue adds blocking functionality. On the other hand, it loses some deque features like support for the in-operator.

Accessing the internal deque object directly, is

x in Queue().deque

Also, why does Queue employ a mutex for it's operations when deque is thread-safe already?

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Queue.Queue and collections.deque serve different purposes. Queue.Queue is intended for allowing different threads to communicate using queued messages/data, whereas collections.deque is simply intended as a datastructure. That's why Queue.Queue has methods like put_nowait(), get_nowait(), and join(), whereas collections.deque doesn't. Queue.Queue isn't intended to be used as a collection, which is why it lacks the likes of the in operator.

It boils down to this: if you have multiple threads and you want them to be able to communicate without the need for locks, you're looking for Queue.Queue; if you just want a queue or a double-ended queue as a datastructure, use collections.deque.

Finally, accessing and manipulating the internal deque of a Queue.Queue is playing with fire - you really don't want to be doing that.

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Excellent answer. –  Dustin Oprea Aug 9 '12 at 4:09
I'm glad you like it! Thank you! –  Keith Gaughan Aug 10 '12 at 11:20

If all you're looking for is a thread-safe way to transfer objects between threads, then both would work (both for FIFO and LIFO). For FIFO:

Note:

• Other operations on deque might not be thread safe, I'm not sure.
• deque does not block on pop() or popleft() so you can't base your consumer thread flow on blocking till a new item arrives.

However, it seems that deque has a significant efficiency advantage. Here are some benchmark results in seconds using CPython 2.7.3 for inserting and removing 100k items

deque 0.0747888759791
Queue 1.60079066852


Here's the benchmark code:

import time
import Queue
import collections

q = collections.deque()
t0 = time.clock()
for i in xrange(100000):
q.append(1)
for i in xrange(100000):
q.popleft()
print 'deque', time.clock() - t0

q = Queue.Queue(200000)
t0 = time.clock()
for i in xrange(100000):
q.put(1)
for i in xrange(100000):
q.get()
print 'Queue', time.clock() - t0

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You claim that "Other operations on deque may not be thread safe". Where do you get that from? –  Matt Apr 23 '14 at 18:28
@Matt - rephrased to better convey my meaning –  Jonathan Apr 28 '14 at 21:36
Ok, thanks. That was stopping me from using deque because I thought you knew something I didn't. I guess I'll just assume it's thread safe until I discover otherwise. –  Matt Apr 29 '14 at 13:17

Deque is thread-safe. "operations that do not require locking" means that you don't have to do the locking yourself, the deque takes care of it.

Taking a look at the Queue source the internal deque is called self.queue and uses a mutex for accessors and mutations, so Queue().queue is not thread-safe to use.

If you're looking for an "in" operator, then a deque or queue is possibly not the most appropriate data structure for your problem.

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Well, what I want to do is make sure that no duplicates are added to the queue. Is this not something a queue could potentially support? –  miracle2k Apr 4 '09 at 15:06
It'd probably be best to have a separate set, and update that when you add/remove something from the queue. That'll be O(log n) rather than O(n), but you'll have to be careful to keep the set and queue in sync (i.e. locking). –  user83591 Apr 4 '09 at 15:41
A Python set is a hash table, so it would be O(1). But yes, you would still have to do locking. –  AFoglia Jan 18 '12 at 15:27