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Does anyone know how the built in dictionary type for python is implemented? My understanding is that it is some sort of hash table, but I haven't been able to find any sort of definitive answer.

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I don't think this question should have been closed. It can be answered with facts and references to source code. – unutbu Jan 8 '13 at 22:22
The talk at PyCon2010 by Brandon Craig Rhodes named 'The Mighty Dictionary' does a brilliant job of explaining this in under 30 minutes. Definitely worth the time! – keithxm23 Oct 1 '13 at 5:03
The blip link in the comment from @keithxm23 appears to be dead (removed from blip). The YouTube link provided in the answer from jason-r-combs is still good however and is apparently the same video. – Mark Streatfield Mar 5 '15 at 0:34

Here is everything about Python dicts that I was able to put together (probably more than anyone would like to know; but the answer is comprehensive).

  • Python dictionaries are implemented as hash tables.
  • Hash tables must allow for hash collisions i.e. even if two distinct keys have the same hash value, the table's implementation must have a strategy to insert and retrieve the key and value pairs unambiguously.
  • Python dict uses open addressing to resolve hash collisions (explained below) (see dictobject.c:296-297).
  • Python hash table is just a contiguous block of memory (sort of like an array, so you can do an O(1) lookup by index).
  • Each slot in the table can store one and only one entry. This is important.
  • Each entry in the table actually a combination of the three values: < hash, key, value >. This is implemented as a C struct (see dictobject.h:51-56).
  • The figure below is a logical representation of a Python hash table. In the figure below, 0, 1, ..., i, ... on the left are indices of the slots in the hash table (they are just for illustrative purposes and are not stored along with the table obviously!).

    # Logical model of Python Hash table
    0| <hash|key|value>|
    1|      ...        |
    .|      ...        |
    i|      ...        |
    .|      ...        |
    n|      ...        |
  • When a new dict is initialized it starts with 8 slots. (see dictobject.h:49)

  • When adding entries to the table, we start with some slot, i, that is based on the hash of the key. CPython initially uses i = hash(key) & mask (where mask = PyDictMINSIZE - 1, but that's not really important). Just note that the initial slot, i, that is checked depends on the hash of the key.
  • If that slot is empty, the entry is added to the slot (by entry, I mean, <hash|key|value>). But what if that slot is occupied!? Most likely because another entry has the same hash (hash collision!)
  • If the slot is occupied, CPython (and even PyPy) compares the the hash AND the key (by compare I mean == comparison not the is comparison) of the entry in the slot against the key of the current entry to be inserted (dictobject.c:337,344-345). If both match, then it thinks the entry already exists, gives up and moves on to the next entry to be inserted. If either hash or the key don't match, it starts probing.
  • Probing just means it searches the slots by slot to find an empty slot. Technically we could just go one by one, i+1, i+2, ... and use the first available one (that's linear probing). But for reasons explained beautifully in the comments (see dictobject.c:33-126), CPython uses random probing. In random probing, the next slot is picked in a pseudo random order. The entry is added to the first empty slot. For this discussion, the actual algorithm used to pick the next slot is not really important (see dictobject.c:33-126 for the algorithm for probing). What is important is that the slots are probed until first empty slot is found.
  • The same thing happens for lookups, just starts with the initial slot i (where i depends on the hash of the key). If the hash and the key both don't match the entry in the slot, it starts probing, until it finds a slot with a match. If all slots are exhausted, it reports a fail.
  • BTW, the dict will be resized if it is two-thirds full. This avoids slowing down lookups. (see dictobject.h:64-65)

NOTE: I did the research on Python Dict implementation in response to my own question about how multiple entries in a dict can have same hash values. I posted a slightly edited version of the response here because all the research is very relevant for this question as well.

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I don't quite understand the probing part. If slots are tried in pseudo random order when adding, how do lookup reproduce this order of searching? – satoru Jul 23 '13 at 2:58
@satoru: the probing is not linear but it is deterministic – J.F. Sebastian Apr 24 '14 at 17:21
And upon deletion there must be some sort of repositioning that takes place? – kalu Sep 19 '14 at 21:30
About the comparing step. The first thing it does is to make a python is comparison on key (…) Then it does a c == comparison on hash values (which are casted to c int) (…) then only does a python == on (…) – Xavier Combelle May 29 '15 at 12:39
About the comparing step, I haven't read the source code, but my intuitive is that it should first compare the hash values of the two objects, if their hash values are not equal, then it doesn't need to compare the objects using __equal__() method. And only when both hash values and the objects themselves are compared to be equal, then it can decide the same object has already existed in the dict. – David Jul 26 '15 at 16:42

Python Dictionaries use Open addressing (reference inside Beautiful code)

NB! Open addressing, a.k.a closed hashing should, as noted in Wikipedia, not be confused with its opposite open hashing! (which we see in the accepted answer).

Open addressing means that the dict uses array slots, and when an object's primary position is taken in the dict, the object's spot is sought at a different index in the same array, using a "perturbation" scheme, where the object's hash value plays part.

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"not be confused with its opposite open hashing! (which we see in the accepted answer)." - I'm not sure which answer was accepted when you wrote that, or what that answer said at the time - but this parenthesised comment is not currently true of the accepted answer and would best be removed. – Tony D Aug 5 '15 at 4:50

At PyCon 2010, Brandon Craig Rhodes gave an excellent talk about the Python dictionary. It provides a great overview of the dictionary implementation with examples and visuals. If you have 45 minutes (or even just 15), I would recommend watching the talk before proceeding to the actual implementation.

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Pure Python Dictionary Implementation

For those curious about how CPython's dict implementation works, I've written a Python implementation using the same algorithms.

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Here's a link to the actual implementation in the python SVN repository. That should be the most definite answer.

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It's probably worthwhile updating this answer to include a link to the latest code, now authoritatively hosted on Mercurial. – Jason R. Coombs Dec 30 '11 at 17:17

It is a hash table. You can read about it some in the python wiki. Otherwise, the code is well-written and should be easy to understand.

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You should probably understand how hash tables work before declaring everyone's explanations incorrect: – Dustin Nov 29 '08 at 7:56
The "Basic Operation" section at the top describes how that works. The locality of reference problem is addressed in the open addressing section. I'd recommend trying to write a hash table. They're pretty easy to write, and that's the easiest way to understand them. – Dustin Nov 29 '08 at 8:19
What a bizarre assertion. Can you show me what line of code you're looking at? – Dustin Nov 29 '08 at 8:34
I don't understand why that concerns you. Are you looking at the latest python source? Do you see line 515 of dictobject.c? These guys have put a lot of thought into it and they've written it down in a few places that are ready for you to read them. – Dustin Nov 29 '08 at 9:12
@sharpsy: Yes it'll be resized, if the insert detects the dict is sufficiently (66%) full. At that point, the array is resized, all existing keys get re-inserted to new positions, and the new key gets inserted into the position for the new size. At the time of insertion, the size is a known value. – Brian Nov 29 '08 at 11:34

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