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I'm referring to the OrderedDict from the collections module.

If it has the added functionality of being orderable, which I realize may often not be necessary but even so, are there any downsides? Is it slower? Is it missing any functionality? I didn't see any missing methods.

In short, why shouldn't I always use this instead of a normal dictionary?

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In addition, many packages return dicts and using them alongside OrderedDict will likely mess up the order anyway. – sashkello Sep 23 '13 at 2:59
My question is, why use an OrderedDict? Why would you need an ordered dictionary? – TerryA Sep 23 '13 at 2:59
I'd use OrderedDict ONLY for output formatting. Are there any other uses I'm missing? – sashkello Sep 23 '13 at 3:01
@Haidro, an example from the standard library. – fjarri Sep 23 '13 at 3:16
If your only purpose for OrderedDict is for formatting output (presumably sorting keys), just use for key in sorted(dictvar): print (key, dictvar[key]). OrderedDict preserves order of insertion, not order of keys. – Paul McGuire Sep 23 '13 at 7:04
up vote 67 down vote accepted

OrderedDict is a subclass of dict, and needs more memory to keep track of the order in which keys are added. This isn't trivial. The implementation adds a second dict under the covers, and a doubly-linked list of all the keys (that's the part that remembers the order), and a bunch of weakref proxies. It's not a lot slower, but at least doubles the memory over using a plain dict.

But if it's appropriate, use it! That's why it's there :-)

How it works

The base dict is just an ordinary dict mapping keys to values - it's not "ordered" at all. When a <key, value> pair is added, the key is appended to a list. The list is the part that remembers the order.

But if this were a Python list, deleting a key would take O(n) time twice over: O(n) time to find the key in the list, and O(n) time to remove the key from the list.

So it's a doubly-linked list instead. That makes deleting a key constant (O(1)) time. But we still need to find the doubly-linked list node belonging to the key. To make that operation O(1) time too, a second - hidden - dict maps keys to nodes in the doubly-linked list.

So adding a new <key, value> pair requires adding the pair to the base dict, creating a new doubly-linked list node to hold the key, appending that new node to the doubly-linked list, and mapping the key to that new node in the hidden dict. A bit over twice as much work, but still O(1) (expected case) time overall.

Similarly, deleting a key that's present is also a bit over twice as much work but O(1) expected time overall: use the hidden dict to find the key's doubly-linked list node, delete that node from the list, and remove the key from both dicts.

Etc. It's quite efficient.

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@GrijeshChauhan, I read the source code - I'm a core Python developer, so that's how I answer most questions I have - LOL ;-) You can find the code in Lib/collections/ in your Python source tree. – Tim Peters Sep 23 '13 at 3:09
Wait...YOU'RE THE GUY WHO WROTE TIMSORT!!! Unexpected descent from python heaven to answer my lowly question. THANKS! – Aerovistae Sep 23 '13 at 3:21
LOL! You're very welcome, @Aerovistae - it was a worthy question ;-) – Tim Peters Sep 23 '13 at 3:23
I find when I tell people "you can find the code in your Python source tree" they never look, but when I link to the hg repo they sometimes do. (Usually only when reading the source leads them to a question that's over my head.) – abarnert Sep 26 '13 at 0:17
@GrijeshChauhan Go to your python interpreter, type import this then press enter, the guy who wrote it, is the guy who answered this question. – Games Brainiac May 17 '14 at 19:01


if your dictionary is accessed from multiple threads without a lock, especially as a synchronisation point.

vanilla dict operations are atomic, and any type extended in Python is not.

In fact, I'm not even certain OrderedDict is thread-safe (without a lock), although I cannot discount the possibility that it was very carefully coded and satisfies definition of reentrancy.

lesser devils

memory usage if you create tons of these dictionaries

cpu usage if all your code does is munge these dictionaries

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