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I have a DataFrame df, and a dict d, like so:

>>> df
   a   b
0  5  10
1  6  11
2  7  12
3  8  13
4  9  14
>>> d = {6: 22, 8: 26}

For every (key, val) in the dictionary, I'd like to find the row where column a matches the key, and override its b column with the value. For example, in this particular case, the value of b in row 1 will change to 22, and its value on row 3 will change to 26.

How should I do that?

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1 Answer 1

Assuming it would be OK to propagate the new values to all rows where column a matches (in the event there were duplicates in column a) then:

for a_val, b_val in d.iteritems():
    df['b'][df.a==a_val] = b_val

or to avoid chaining assignment operations:

for a_val, b_val in d.iteritems():
    df.loc[df.a==a_val, 'b'] = b_val

Note that to use loc you must be working with Pandas 0.11 or newer. For older versions, you may be able to use .ix to prevent the chained assignment.

@Jeff pointed to this link which discusses a phenomenon that I had already mentioned in this comment. Note that this is not an issue of correctness, since reversing the order of access has a predictable effect. You can see this easily, e.g. below:

In [102]: id(df[df.a==5]['b'])
Out[102]: 113795992

In [103]: id(df['b'][df.a==5])
Out[103]: 113725760

If you get the column first and then assign based on indexes into that column, the changes effect that column. And since the column is part of the DataFrame, the changes effect the DataFrame. If you index a set of rows first, you're now no longer talking about the same DataFrame, so getting the column from the filtered object won't give you a view of the original column.

@Jeff suggests that this makes it "incorrect" whereas my view is that this is the obvious and expected behavior. In the special case when you have a mixed data type column and there is some type promotion/demotion going on that would prevent Pandas from writing a value into the column, then you might have a correctness issue with this. But given that loc is not available until Pandas 0.11, I think it's still fair to point out how to do it with chained assignment, rather than pretending like loc is the only thing that could possibly ever be the correct choice.

If any one can provide more definitive reasons to think it is "incorrect" (as opposed to just not preferring this stylistically), please contribute and I will try to make a more thorough write-up about the various pitfalls.

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3  
chaining assignment is not the correct way to do this. df.loc[df.a==a_val,'b'] = b_val better –  Jeff Oct 1 '13 at 20:58
1  
Thank you for the insightful comment. In general, this is one of my biggest gripes with Pandas. Using alternate functions with assignment syntax might be suboptimal design. At least with [], there's no confusion. That operation is purely for getting and setting. I dislike it that an entirely additional function, loc (or even ix honestly), subsumes that functionality. It hides the fact that it's a function entirely predicated on a side-effect, whereas in most of the rest of Python, __getitem__ and __setitem__ are the standards for absorbing that side-effect impurity. –  Mr. F Oct 1 '13 at 21:05
    
(Totally just my design opinion, btw.) –  Mr. F Oct 1 '13 at 21:05
    
Thanks EMS and Jeff. Can either of you explain what's the problem with "chained assignment"? –  Dun Peal Oct 1 '13 at 21:12
    
There are many reasons why chaining together assignments or accesses is bad. One reason is that it obfuscates the intent of the code. The person reading my first answer must understand that ['b'] obtains the column of df essentially by reference, so that the next thing, [df.a==a_val] (getting some part of that and assigning into it) actually modifies the data that df looks at. It adds that extra layer of inferential distance between the result of the operation and its readability. –  Mr. F Oct 1 '13 at 21:15

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