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I would like to apply a function to values of a dict inplace in the dict (like map in a functional programming setting).

Let's say I have this dict:

d = { 'a':2, 'b':3 }

I want to apply the function divide by 2.0 to all values of the dict, leading to:

d = { 'a':1., 'b':1.5 }

What is the simplest way to do that?

I use Python 3.

Edit: A one-liner would be nice. The divide by 2 is just an example, I need the function to be a parameter.

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4 Answers 4

up vote 7 down vote accepted

You can loop through the keys and update them:

for key, value in d.items():
    d[key] = value / 2
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This could be a 1-liner as well (if you cheat a little) -- for key,value in d.items(): d[key] = value/2 –  mgilson Mar 20 '13 at 23:50
1  
I don't think explicitly using items and value in this case is saving anything in readability (or performance, if that matters); Ishpeck's answer looks simpler (except for your better variable name). –  abarnert Mar 20 '13 at 23:51
    
@mgilson: If Guido suggests it, it doesn't count as cheating, right? (Of course he suggests it as "If you must have it on one line…") –  abarnert Mar 20 '13 at 23:52
1  
@mgilson: Of course not. But when he agrees with you, he's always right! That's the beauty of authority. :) –  abarnert Mar 21 '13 at 0:29
1  
@Mic: That's really kind of misleading, if you understand what dict.update does. You have to figure out that the generator expression is effectively generating a lazy dictionary with the exact same keys as the original before you realize that it's changing each value in-place, while with for key in d: d[key] /= 2 it's immediately apparent what you're doing. –  abarnert Mar 21 '13 at 0:32

Should work for you:

>>> d = {'a':2.0, 'b':3.0}
>>> for x in d:
...     d[x]/=2
... 
>>> d
{'a': 1.0, 'b': 1.5}
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>>> d = { 'a': 2, 'b': 3 }
>>> {k: v / 2.0 for k, v in d.items()}
{'a': 1.0, 'b': 1.5}
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3  
This creates a new dictionary right? So with a huge dict, it would be resource intensive. Is there a way to just modify the values without losing the advantage of having the already built dict? (hence the inplace in my question) –  Mic Mar 20 '13 at 23:21
    
@Mic Don't worry about performance unless there is a performance problem (and I'm not saying there isn't, but justify the assertion) - or keeping the same object is required for other semantic reasons. That being said, I entirely agree with jamylak - "inplace" (mutating) and "functional" (immutable) are fairly orthogonal, depending on where the line is drawn. –  user166390 Mar 20 '13 at 23:22
    
@Mic True but when I heard the word 'functional' I didn't think you would tell me this. –  jamylak Mar 20 '13 at 23:22
4  
Note that you could also do d.update((k,v/2.) for k,v in d.items()) if you wanted it in-place. –  mgilson Mar 20 '13 at 23:26
1  
@Mic: Are you sure that's really a problem? And, if so, why did you tag this "functional-programming"? –  abarnert Mar 21 '13 at 0:29

You may find multiply is still faster than dividing

d2 = {k: v * 0.5 for k, v in d.items()}

For an inplace version

d.update((k, v * 0.5) for k,v in d.items())

For the general case

def f(x)
    """Divide the parameter by 2"""
    return x / 2.0

d2 = {k: f(v) for k, v in d.items()}
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1  
You really think multiplying will be significantly faster than dividing? Maybe in PyPy, where all of the costs but the arithmetic are shrunk down to the point where it makes a difference, but in CPython, I'll bet you can't even detect the difference… –  abarnert Mar 20 '13 at 23:33
    
Also, I think passing the dict comprehension to d2 instead of a generator expression generating tuples may be more readable in this case (even if it does "wastefully" create a new dictionary). –  abarnert Mar 20 '13 at 23:34
    
As a side note, I don't actually like dict comprehensions in python3.x code for a two main reasons -- 1) Your code isn't backward compatible with python2.6, 2) dict comprehensions look just a little bit too similar to set comprehensions. (I also don't really like set literals for the same reason) –  mgilson Mar 20 '13 at 23:37
    
%timeit results. CPython 2.7.2: 1.11us vs. 1.12us, or 222us vs. 223us for a large (1000-item random) dictionary. CPython 3.3.0: 785ns vs. 778ns, or 160us vs. 158us. So, multiplying is not faster than dividing, as I suspected. (I haven't tested PyPy yet because I broke my ipython-pypy…) –  abarnert Mar 20 '13 at 23:38
    
OK, fixed… PyPy 1.9.0: 309ns vs. 329ns, or 94.4us vs. 94.8us. So, with PyPy, with tiny dictionaries, multiplying is slightly faster. With CPython, or with non-tiny dictionaries, they're equivalent. –  abarnert Mar 20 '13 at 23:46

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