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I have two Python dictionaries, and I want to write a single expression that returns these two dictionaries, merged. The update() method would be what I need, if it returned its result instead of modifying a dict in-place.

>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> z = x.update(y)
>>> print z
>>> x
{'a': 1, 'b': 10, 'c': 11}

So I want that final merged dict in z, not x. How can I do this?

(To be extra-clear, the last-one-wins conflict-handling of dict.update() is what I'm looking for as well.)

share|improve this question
Wouldn't a merged dictionary contain {'a': 1, 'b': (2, 10), 'c': 11}? –  martineau Mar 8 '13 at 16:26
@martineau I thought giving an example of the expected output in a conflict case (and specifically referencing dict.update(), whose actual behavior matches the given example) was a pretty clear specification of the desired conflict-handling. And none of the answers were confused on that point, so the evidence suggests it was clear enough. But I can edit the question if you find it ambiguous. –  Carl Meyer Mar 29 '13 at 20:59
This question has been wrongly marked as duplicate. The "duplicate" asks a similar but different question (it assumes all values are integers, and asks for them to be added together if a key is present in both dicts). This may seem minor, but results in a quite different set of solutions than the override behavior requested here. –  Carl Meyer Mar 30 '13 at 23:15
Also, is it usual practice to close two different questions as duplicates of each other? Shouldn't one of them be left open, regardless? –  Carl Meyer Mar 30 '13 at 23:16
Recursive duplicates! That seems rather silly. –  nneonneo Mar 30 '13 at 23:42

27 Answers 27

up vote 933 down vote accepted

In your case, what you can do is:

z = dict(x.items() + y.items())

This will, as you want it, put the final dict in z, and make the value for b be properly overridden by the second (y) dict's value:

>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> z = dict(x.items() + y.items())
>>> z
{'a': 1, 'c': 11, 'b': 10}

If you use Python 3, it is only a little more complicated. To create z:

>>> z = dict(list(x.items()) + list(y.items()))
>>> z
{'a': 1, 'c': 11, 'b': 10}
share|improve this answer
But it's not great if performance is important. –  static_rtti May 19 '11 at 9:10
In case you want to reduce a list of dictionaries into a single dictionary using this method, you can use reduce(lambda x,y: dict(x.items() + y.items()), [{'a': 1}, {'b': 2}]). –  Danilo Bargen May 27 '11 at 11:23
@static_rtti, analogous, less memory consuming: dict(chain(x.iteritems(), y.iteritems())) (from itertools import chain), and in py3k dict(chain(x.items(), y.items())) –  j-a Dec 9 '11 at 18:05
I would prefer z = dict(chain(x.items(), y.items)). –  U2EF1 Aug 12 '12 at 23:43
In Python 3, .items() returns a set-like object, so you can use the union operator: dict(x.items() | y.items()). –  Roberto Bonvallet Nov 25 '13 at 16:11

An alternative:

z = x.copy()
share|improve this answer
definitely the most pythonic answer, and probably quite fast. –  Seun Osewa Dec 2 '08 at 12:18
Perhaps because it clearly fails to meet the criteria provided in the question, without providing any additional information or rationale. –  Carl Meyer Jan 11 '09 at 18:18
This meets the requested criteria and matches the expected result. –  vinyll Jun 6 '12 at 14:16
This is by far the best answer. Guido (python author) suggested this answer while abusing a different answer (the one with ** in it), so I'd go with this one. If you want to use a single expression, PUT THIS IN A FUNCTION!!1 –  Sam Watkins Aug 6 '12 at 9:18
To clarify why this doesn't meet the critera provided by the question: it's not a single expression and it doesn't return z. –  Alex Mar 21 '13 at 13:15

Another, more concise, option:

z = dict(x, **y)

Note: this has become a popular answer, but it is important to point out that if y has any non-string keys, the fact that this works at all is an abuse of a CPython implementation detail, and it does not work in CPython 3.2, or in PyPy, IronPython, or Jython. Also, Guido is not a fan. So I can't recommend this technique for forward-compatible or cross-implementation portable code, which really means it should be avoided entirely.

share|improve this answer
This is great. But searching for "**" does not get me to any documentation to explain how this works. Does anyone know where I can look up this method? --thanks –  BenjaminGolder Apr 8 '11 at 18:32
@BenjaminGolder: try this SO. Generally you can google for things like this with their full name, ie. "double star python". Ooh, this SO question is good too. –  jjt Apr 9 '11 at 2:02
@jjt thank you! –  BenjaminGolder Apr 10 '11 at 7:00
I was sure this would break on non-string keys in y until I tried it. Didn't realize built-ins get to bend the rules on keyword args. –  dhaffey Apr 20 '11 at 5:44
Despite the arguments against it, I don't agree that it's necessary to avoid it entirely. It works for me in both CPython 2.7.3 and 3.3.0 with the string-key dictionaries in your question -- which represent a significant subset of dict usage cases. Notably, for them, it's about 4X faster and 7X faster respectively than the accepted "politically correct" answer (with a suitably modified version of it for Py 3). FWIW, this technique was also what Alex Martelli recommended in his answer to a similar question + most Python code will never be ported. –  martineau Mar 30 '13 at 2:28

This probably won't be a popular answer, but you almost certainly do not want to do this. If you want a copy that's a merge, then use copy (or deepcopy, depending on what you want) and then update. The two lines of code are much more readable - more Pythonic - than the single line creation with .items() + .items(). Explicit is better than implicit.

In addition, when you use .items() (pre Python 3.0), you're creating a new list that contains the items from the dict. If your dictionaries are large, then that is quite a lot of overhead (two large lists that will be thrown away as soon as the merged dict is created). update() can work more efficiently, because it can run through the second dict item-by-item.

In terms of time:

>>> timeit.Timer("dict(x, **y)", "x = dict(zip(range(1000), range(1000)))\ny=dict(zip(range(1000,2000), range(1000,2000)))").timeit(100000)
>>> timeit.Timer("temp = x.copy()\ntemp.update(y)", "x = dict(zip(range(1000), range(1000)))\ny=dict(zip(range(1000,2000), range(1000,2000)))").timeit(100000)
>>> timeit.Timer("dict(x.items() + y.items())", "x = dict(zip(range(1000), range(1000)))\ny=dict(zip(range(1000,2000), range(1000,2000)))").timeit(100000)

IMO the tiny slowdown between the first two is worth it for the readability. In addition, keyword arguments for dictionary creation was only added in Python 2.3, whereas copy() and update() will work in older versions.

share|improve this answer
Helpful performance data. There are specific cases where merging in a single expression greatly enhances readability over copy/update; for instance, if you have a sizable "base" dictionary which you want to use as kwargs for a number of consecutive function calls, with minor additions each time. –  Carl Meyer Jan 11 '09 at 18:26
All this variants dict(x, **y), z=x.copy();z.update(y), and z=dict(x);z.update(y) are essentially the same. –  J.F. Sebastian Jan 11 '09 at 23:24
With the slight difference that dict(x) creates a plain dictionary from x's keys (with x being any dictionary-like or sequence-of-pairs-like) while x.copy() creates another object of the same type as x (provided copy() is implemented correctly in the respective class). So one may be preferable over the other, depending on circumstances. –  blubberdiblub Aug 11 '13 at 17:16
I did the fourth test dict(x.viewitems() | y.viewitems()) and it is much worse than x.items() (almost twice bad) –  balki Oct 11 '13 at 22:04

Carl, in a follow-up answer, you asked about the relative performance of these two alternatives:

z1 = dict(x.items() + y.items())
z2 = dict(x, **y)

On my machine, at least (a fairly ordinary x86_64 running Python 2.5.2), alternative z2 is not only shorter and simpler but also significantly faster. You can verify this for yourself using the timeit module that comes with Python.

Example 1: identical dictionaries mapping 20 consecutive integers to themselves

% python -m timeit -s 'x=y=dict((i,i) for i in range(20))' 'z1=dict(x.items() + y.items())'
100000 loops, best of 3: 5.67 usec per loop
% python -m timeit -s 'x=y=dict((i,i) for i in range(20))' 'z2=dict(x, **y)' 
100000 loops, best of 3: 1.53 usec per loop

z2 wins by a factor of 3.5 or so. Different dictionaries seem to yield quite different results, but z2 always seems to come out ahead. (If you get inconsistent results for the same test, try passing in -r with a number larger than the default 3.)

Example 2: non-overlapping dictionaries mapping 252 short strings to integers and vice versa

% python -m timeit -s 'from htmlentitydefs import codepoint2name as x, name2codepoint as y' 'z1=dict(x.items() + y.items())'
1000 loops, best of 3: 260 usec per loop
% python -m timeit -s 'from htmlentitydefs import codepoint2name as x, name2codepoint as y' 'z2=dict(x, **y)'               
10000 loops, best of 3: 26.9 usec per loop

z2 wins by about a factor of 10. That's a pretty big win in my book!

After comparing those two, I wondered if z1's poor performance could be attributed to the overhead of constructing the two item lists, which in turn led me to wonder if this variation might work better:

from itertools import chain
z3 = dict(chain(x.iteritems(), y.iteritems()))

A few quick tests, e.g.

% python -m timeit -s 'from itertools import chain; from htmlentitydefs import codepoint2name as x, name2codepoint as y' 'z3=dict(chain(x.iteritems(), y.iteritems()))'
10000 loops, best of 3: 66 usec per loop

lead me to conclude that z3 is somewhat faster than z1, but not nearly as fast as z2. Definitely not worth all the extra typing.

This discussion is still missing something important, which is a performance comparison of these alternatives with the "obvious" way of merging two lists: using the update method. To try to keep things on an equal footing with the expressions, none of which modify x or y, I'm going to make a copy of x instead of modifying it in-place, as follows:

z0 = dict(x)

A typical result:

% python -m timeit -s 'from htmlentitydefs import codepoint2name as x, name2codepoint as y' 'z0=dict(x); z0.update(y)'
10000 loops, best of 3: 26.9 usec per loop

In other words, z0 and z2 seem to have essentially identical performance. Do you think this might be a coincidence? I don't....

In fact, I'd go so far as to claim that it's impossible for pure Python code to do any better than this. And if you can do significantly better in a C extension module, I imagine the Python folks might well be interested in incorporating your code (or a variation on your approach) into the Python core. Python uses dict in lots of places; optimizing its operations is a big deal.

[UPDATE: You could also write this as

z0 = x.copy()

as Tony does, but (not surprisingly) the difference in notation turns out not to have any measurable effect on performance. Use whichever looks right to you. Of course, he's absolutely correct to point out that the two-statement version is much easier to understand.]

share|improve this answer
Because dict(x) creates a copy of x internally (if x is a dict), the operations in z0, z2 and the version with x.copy() are very close to identical computationally. –  joeln Apr 10 '13 at 6:25
Best answer, consolidates everything. –  crunkchitis Sep 18 '13 at 20:36
If the performance of z0 and z2 are identical, z0 should win the tie, since z2 only works when all keys are strings. –  bukzor Dec 14 '13 at 0:16

I wanted something similar, but with the ability to specify how the values on duplicate keys were merged, so I hacked this out (not heavily tested!). Obviously this is not a single expression, but it is a single fn. call.

def merge(d1, d2, merge_fn=lambda x,y:y):
    Merges two dictionaries, non-destructively, combining 
    values on duplicate keys as defined by the optional merge
    function.  The default behavior replaces the values in d1
    with corresponding values in d2.  (There is no other generally
    applicable merge strategy, but often you'll have homogeneous 
    types in your dicts, so specifying a merge technique can be 


    >>> d1
    {'a': 1, 'c': 3, 'b': 2}
    >>> merge(d1, d1)
    {'a': 1, 'c': 3, 'b': 2}
    >>> merge(d1, d1, lambda x,y: x+y)
    {'a': 2, 'c': 6, 'b': 4}

    result = dict(d1)
    for k,v in d2.iteritems():
        if k in result:
            result[k] = merge_fn(result[k], v)
            result[k] = v
    return result
share|improve this answer
This is very nice, though I think it would be more clear if you changed the name of the optional merge function to be different than the name of the function it's a keyword argument to... –  Kevin Horn Dec 8 '09 at 0:49
Thanks! this is exactly what I came looking for. This should be in a PEP –  Nathan Apr 16 '11 at 4:00
A lot like Clojure's merge and merge-with. I found this comment looking for Python equivalents of those. –  Lucian Aug 10 '12 at 10:49
This also provides for a recursive merge if the merge argument provided is recursive: rec_merge = lambda x, y: merge(x, y, rec_merge) then rec_merge({'a': {'b': 1}}, {'a': {'c': 2}}) == {'a': {'b': 1, 'c': 2}}. –  joeln Apr 10 '13 at 6:39
Regarding "this should be in a PEP", there is history: gossamer-threads.com/lists/python/python/67982 –  joeln Apr 10 '13 at 6:48

The best version I could think while not using copy would be:

from itertools import chain
x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}
dict(chain(x.iteritems(), y.iteritems()))

It's faster than dict(x.items() + y.items()) but not as fast as n = copy(a); n.update(b), at least on CPython. This version also works in Python 3 if you change iteritems() to items(), which is automatically done by the 2to3 tool.

Personally I like this version best because it describes fairly good what I want in a single functional syntax. The only minor problem is that it doesn't make completely obvious that values from y takes precedence over values from x, but I don't believe it's difficult to figure that out.

share|improve this answer
x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}
z = dict(x.items() + y.items())
print z

For items with keys in both dictionaries ('b'), you can control which one ends up in the output by putting that one last.

share|improve this answer

While the question has already been answered several times, this simple solution to the problem has not been listed yet.

x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}
z4 = {}

It is as fast as z0 and the evil z2 mentioned above, but easy to understand and change.

share|improve this answer
but it's three statements rather than one expression –  fortran Oct 18 '11 at 15:44
Yes! The mentioned one-expression-solutions are either slow or evil. Good code is readable and maintainable. So the problem is the question not the answer. We should ask for the best solution of a problem not for a one-line-solution. –  phobie Oct 28 '11 at 3:36
Lose the z4 = {} and change the next line to z4 = x.copy() -- better than just good code doesn't do unnecessary things (which makes it even more readable and maintainable). –  martineau Mar 8 '13 at 15:10
Your suggestion would change this to Matthews answer. While his answer is fine, I think mine is more readable and better maintainable. The extra line would only be bad if it would cost execution time. –  phobie May 6 '13 at 11:50
You changed the intent of the question IMHO. –  javadba Oct 3 '13 at 6:05

In Python 3, you can use collections.ChainMap which groups multiple dicts or other mappings together to create a single, updateable view:

>>> from collections import ChainMap
>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> z = ChainMap(y, x)
>>> for k, v in z.items():
        print(k, '-->', v)

a --> 1
b --> 10
c --> 11
share|improve this answer
Nice to know about, but this creates quite a different animal, one which has changes to z affect both x and y. OP was looking for a z which whose changes affected neither x nor y. (Note reversed order of y and x in ChainMap initialization to give desired precedence.) –  mgkrebbs Feb 11 at 22:55
def dict_merge(a, b):
  c = a.copy()
  return c

new = dict_merge(old, extras)

Among such shady and dubious answers, this shining example is the one and only good way to merge dicts in Python, endorsed by dictator for life Guido van Rossum himself! Someone else suggested half of this, but did not put it in a function.

print dict_merge(
      {'color':'red', 'model':'Mini'},
      {'model':'Ferrari', 'owner':'Carl'})


{'color': 'red', 'owner': 'Carl', 'model': 'Ferrari'}
share|improve this answer

Recursively/deep update a dict

def deepupdate(original, update):
    Recursively update a dict.
    Subdict's won't be overwritten but also updated.
    for key, value in original.iteritems(): 
        if not key in update:
            update[key] = value
        elif isinstance(value, dict):
            deepupdate(value, update[key]) 
    return update


pluto_original = {
    'name': 'Pluto',
    'details': {
        'tail': True,
        'color': 'orange'

pluto_update = {
    'name': 'Pluutoo',
    'details': {
        'color': 'blue'

print deepupdate(pluto_original, pluto_update)


    'name': 'Pluutoo',
    'details': {
        'color': 'blue',
        'tail': True

Thanks rednaw for edits.

share|improve this answer
Handles nested dictionaries !!! –  okigan Mar 28 '13 at 17:41
Maybe mention in the answer itself that it is a deep/recursive merge. I actually just wrote a similar function before I finally noticed this one already did the work! –  rednaw Oct 7 '13 at 10:01

If you think lambdas are evil then read no further. As requested, you can write the fast and memory-efficient solution with one expression:

x = {'a':1, 'b':2}
y = {'b':10, 'c':11}
z = (lambda a, b: (lambda a_copy: a_copy.update(b) or a_copy)(a.copy()))(x, y)
print z
{'a': 1, 'c': 11, 'b': 10}
print x
{'a': 1, 'b': 2}

As suggested above, using two lines or writing a function is probably a better way to go.

share|improve this answer

In python3, the items method no longer returns a list, but rather a view, which acts like a set. In this case you'll need to take the set union since concatenating with + won't work:

dict(x.items() | y.items())

For python3-like behavior in version 2.7, the viewitems method should work in place of items:

dict(x.viewitems() | y.viewitems())

I prefer this notation anyways since it seems more natural to think of it as a set union operation rather than concatenation (as the title shows).


A couple more points for python 3. First, note that the dict(x, **y) trick won't work in python 3 unless the keys in y are strings.

Also, Raymond Hettinger's Chainmap answer is pretty elegant, since it can take an arbitrary number of dicts as arguments, but from the docs it looks like it sequentially looks through a list of all the dicts for each lookup:

Lookups search the underlying mappings successively until a key is found.

This can slow you down if you have a lot of lookups in your application:

In [1]: from collections import ChainMap
In [2]: from string import ascii_uppercase as up, ascii_lowercase as lo; x = dict(zip(lo, up)); y = dict(zip(up, lo))
In [3]: chainmap_dict = ChainMap(y, x)
In [4]: union_dict = dict(x.items() | y.items())
In [5]: timeit for k in union_dict: union_dict[k]
100000 loops, best of 3: 2.15 µs per loop
In [6]: timeit for k in chainmap_dict: chainmap_dict[k]
10000 loops, best of 3: 27.1 µs per loop

So about an order of magnitude slower for lookups. I'm a fan of Chainmap, but looks less practical where there may be many lookups.

share|improve this answer

Two dictionaries

def union2(dict1, dict2):
    return dict(list(dict1.items()) + list(dict2.items()))

n dictionaries

def union(*dicts):
    return dict(sum(map(lambda dct: list(dct.items()), dicts), []))


import itertools

def union(*dicts):
    return dict(itertools.chain(*map(lambda dct: list(dct.items()), dicts)))
share|improve this answer

Even though the answers were good for this shallow dictionary, none of the methods defined here actually do a deep dictionary merge.

Examples follow:

a = { 'one': { 'depth_2': True }, 'two': True }
b = { 'one': { 'extra': False } }
print dict(a.items() + b.items())

One would expect a result of something like this:

{ 'one': { 'extra': False', 'depth_2': True }, 'two': True }

Instead, we get this:

{'two': True, 'one': {'extra': False}}

The 'one' entry should have had 'depth_2' and 'extra' as items inside its dictionary if it truly was a merge.

Using chain also, does not work:

from itertools import chain
print dict(chain(a.iteritems(), b.iteritems()))

Results in:

{'two': True, 'one': {'extra': False}}

The deep merge that rcwesick gave also creates the same result.

Yes, it will work to merge the sample dictionaries, but none of them are a generic mechanism to merge. I'll update this later once I write a method that does a true merge.

share|improve this answer
Use @rcreswick's merge function (stackoverflow.com/a/44512/1017546) with the recursive helper rec_merge = lambda x, y: merge(x, y, rec_merge). –  joeln Apr 10 '13 at 6:37
Check @Stanislav's answer: stackoverflow.com/a/8310229/1248175 –  rednaw Oct 7 '13 at 10:02

Drawing on ideas here and elsewhere I've comprehended a function:

def merge(*dicts, **kv): 
      return { k:v for d in list(dicts) + [kv] for k,v in d.items() }

Usage (tested in python 3):

assert (merge({1:11,'a':'aaa'},{1:99, 'b':'bbb'},foo='bar')==\
    {1: 99, 'foo': 'bar', 'b': 'bbb', 'a': 'aaa'})

assert (merge(foo='bar')=={'foo': 'bar'})

assert (merge({1:11},{1:99},foo='bar',baz='quux')==\
    {1: 99, 'foo': 'bar', 'baz':'quux'})

assert (merge({1:11},{1:99})=={1: 99})

You could use a lambda instead.

share|improve this answer

Abuse leading to a one-expression solution for Matthew's answer:

>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> z = (lambda f=x.copy(): (f.update(y), f)[1])()
>>> z
{'a': 1, 'c': 11, 'b': 10}

You said you wanted one expression... so I abused lambda to bind a name, and tuples to override lambda's one-expression limit... feel free to cringe =).

You could also do this of course if you don't care about copying it:

>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> z = (x.update(y), x)[1]
>>> z
{'a': 1, 'b': 10, 'c': 11}
share|improve this answer
Good to see how to stretch python. –  javadba Oct 3 '13 at 6:01
z = (lambda f=x.copy(): f.update(y) or f)() –  gnibbler Nov 13 '13 at 9:51
@gnibbler: clever –  Claudiu Nov 13 '13 at 17:32

The problem I have with solutions listed to date is that, in the merged dictionary, the value for key "b" is 10 but, to my way of thinking, it should be 12. In that light, I present the following:

import timeit

su = """
x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}

def timeMerge(f,su,niter):
    print "{:4f} sec for: {:30s}".format(timeit.Timer(f,setup=su).timeit(n),f)

timeMerge("dict(x, **y)",su,n)
timeMerge("dict(x.items() + y.items())",su,n)
timeMerge("for k in y.keys(): x[k] = k in x and x[k]+y[k] or y[k] ",su,n)

#confirm for loop adds b entries together
x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}
for k in y.keys(): x[k] = k in x and x[k]+y[k] or y[k]
print "confirm b elements are added:",x


0.049465 sec for: dict(x, **y)
0.033729 sec for: x.update(y)                   
0.150380 sec for: dict(x.items() + y.items())   
0.083120 sec for: for k in y.keys(): x[k] = k in x and x[k]+y[k] or y[k]

confirm b elements are added: {'a': 1, 'c': 11, 'b': 12}
share|improve this answer
>>> x = {'a':1, 'b': 2}
>>> y = {'b':10, 'c': 11}
>>> x, z = dict(x), x.update(y) or x
>>> x
{'a': 1, 'b': 2}
>>> y
{'c': 11, 'b': 10}
>>> z
{'a': 1, 'c': 11, 'b': 10}
share|improve this answer
hacky but cool! –  wim Feb 18 at 20:20

This is all way too complicated.


x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}
z = dict(x,**y)
share|improve this answer
I already posted this answer above, along with an important caveat: if you want your code to work on PyPy or Python 3, all of the keys in y must be strings or this will break. –  Carl Meyer Apr 18 '13 at 17:25

Using a dict comprehension, you may

x = {'a':1, 'b': 2}
y = {'b':10, 'c': 11}

dc = {xi:(x[xi] if xi not in list(y.keys()) 
           else y[xi]) for xi in list(x.keys())+(list(y.keys()))}


>>> dc
{'a': 1, 'c': 11, 'b': 10}

Note the syntax for if else in comprehension

{ (some_key if condition else default_key):(something_if_true if condition 
          else something_if_false) for key, value in dict_.items() }
share|improve this answer
I like the idea of using a dict comprehension, but your implementation is weak. It is insane to use ... in list(y.keys()) instead of just ... in y. –  wim Feb 18 at 20:18

** creates an intermediary dict, which means that the total number of copies is actually higher doing the dict(one, **two) form, but all that happens in C so it's still generally faster than going to itertools, unless there are a huge number of copies (or, probably, if the copies are very expensive). As always if you actually care about speed you should time your use case.

Timing on Python 2.7.3 with an empty dict:

$ python -m timeit "dict({}, **{})"
1000000 loops, best of 3: 0.405 usec per loop

$ python -m timeit -s "from itertools import chain" \
    "dict(chain({}.iteritems(), {}.iteritems()))"
1000000 loops, best of 3: 1.18 usec per loop

With 10,000 (tiny) items:

$ python -m timeit -s 'd = {i: str(i) for i in xrange(10000)}' \
    "dict(d, **d)"
1000 loops, best of 3: 550 usec per loop

$ python -m timeit -s "from itertools import chain" -s 'd = {i: str(i) for i in xrange(10000)}' \
    "dict(chain(d.iteritems(), d.iteritems()))"
1000 loops, best of 3: 1.11 msec per loop

With 100,000 items:

$ python -m timeit -s 'd = {i: str(i) for i in xrange(100000)}' \
    "dict(d, **d)"
10 loops, best of 3: 19.6 msec per loop

$ python -m timeit -s "from itertools import chain" -s 'd = {i: str(i) for i in xrange(100000)}' \
    "dict(chain(d.iteritems(), d.iteritems()))"
10 loops, best of 3: 20.1 msec per loop

With 1,000,000 items:

$ python -m timeit -s 'd = {i: str(i) for i in xrange(1000000)}' \
    "dict(d, **d)"
10 loops, best of 3: 273 msec per loop

$ python -m timeit -s "from itertools import chain" -s 'd = {i: str(i) for i in xrange(1000000)}' \
    "dict(chain(d.iteritems(), d.iteritems()))"
10 loops, best of 3: 233 msec per loop
share|improve this answer

I have a solution which is not specified here(Man I LOVE python) :-)

z = {}
z.update(x) or z.update(y)

This will not update x as well as y. Performance? I don't think it will be terribly slow :-)

NOTE: It is supposed to be 'or' operation and not 'and' operation. Edited to correct the code.

share|improve this answer
Noooo, it's still 2 lines and also longer than z = x.copy(); z.update(y) –  Navin Dec 11 '13 at 9:50

I'm a new guy for python, here is some code, it seems work ok, :)

def merge(d1, d2, mode=0):
    if not type(d2) is dict:
        raise Exception("d2 is not a dict")

    if not type(d1) is dict:
        if mode == 0:
            raise Exception("d1 is not a dict")
        return d2

    result = dict(d1)

    for k, v in d2.iteritems():
        if k in result and type(v) is dict:
            result[k] = merge(result[k], v, 1)
            if mode == 1:
                result[k] = v
    return result
share|improve this answer

It's so silly that .update returns nothing.
I just use a simple helper function to solve the problem:

def merge(dict1,*dicts):
    for dict2 in dicts:
    return dict1


merge({},dict1,dict2)  # this one returns a new copy
share|improve this answer
def magic_add(*dictionaries):
 #Getting one dictionary from *dictionaries
    return reduce(lambda dict1, dict2: dict(dict1.items() + dict2.items()), dictionaries)
share|improve this answer

protected by undefined is not a function Feb 11 at 14:03

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