93

Trying to create a new column in the netc df but i get the warning

netc["DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM

C:\Anaconda\lib\site-packages\ipykernel\__main__.py:1: SettingWithCopyWarning: 
A value is trying to be set on a copy of a slice from a DataFrame.
Try using .loc[row_indexer,col_indexer] = value instead

whats the proper way to create a field in the newer version of Pandas to avoid getting the warning?

pd.__version__
Out[45]:
u'0.19.2+0.g825876c.dirty'

8 Answers 8

62

Your example is incomplete, as it doesn't show where netc comes from. It is likely that netc itself is the product of slicing, and as such Pandas cannot make guarantees that it isn't a view or a copy.

For example, if you're doing this:

netc = netb[netb["DeltaAMPP"] == 0]
netc["DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM

then Pandas wouldn't know if netc is a view or a copy. If it were a one-liner, it would effectively be like this:

netb[netb["DeltaAMPP"] == 0]["DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM

where you can see the double indexing more clearly.

If you want to make netc separate from netb, one possible remedy might be to force a copy in the first line (the loc is to make sure we're not copying two times), like:

netc = netb.loc[netb["DeltaAMPP"] == 0].copy()

If, on the other hand, you want to have netb modified with the new column, you may do:

netb.loc[netb["DeltaAMPP"] == 0, "DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM
3
  • 7
    Checking upstream to determine how the df was created is one of those frustrating subtleties I run into all the time. The advice in this post has helped me solve this issue more often than any other. Commented Sep 30, 2019 at 12:45
  • 2
    It also helped me tons to understand what is going on. I have been wondering why I see all these warnings while nothing was obvious at first sight; there are these implicit side effects that make the difference. Thanks.
    – vpap
    Commented Jul 6, 2020 at 22:00
  • If I want the last line's behavior, but don't have access to netb in this part of the code (think subfunction of subfunction), is there anything I can do without changing the architecture more drastically ?
    – gdelab
    Commented Nov 9, 2021 at 14:41
52

As it says in the error, try using .loc[row_indexer,col_indexer] to create the new column.

netc.loc[:,"DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM.

Notes

By the Pandas Indexing Docs your code should work.

netc["DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM

gets translated to

netc.__setitem__('DeltaAMPP', netc.LOAD_AM - netc.VPP12_AM)

Which should have predictable behaviour. The SettingWithCopyWarning is only there to warn users of unexpected behaviour during chained assignment (which is not what you're doing). However, as mentioned in the docs,

Sometimes a SettingWithCopy warning will arise at times when there’s no obvious chained indexing going on. These are the bugs that SettingWithCopy is designed to catch! Pandas is probably trying to warn you that you’ve done this:

The docs then go on to give an example of when one might get that error even when it's not expected. So I can't tell why that's happening without more context.

6
  • 22
    I did consistent_cnr.loc[:, 'num_weights'] = consistent_cnr.loc[:, 'name'].apply(apply_get_num_weights_biases).values but kept getting this "warning." Had to suppress it with pd.options.mode.chained_assignment = None right after import. Commented Apr 6, 2019 at 15:21
  • 5
    Now it gives me 2 warnings instead of one. Code: myframe.loc[:,'mynewcol'] = 1
    – Lucas925
    Commented May 14, 2020 at 16:24
  • 17
    If your dataframe was filtered or sliced, you need to reset the index before using this answer: netc.reset_index(drop=True, inplace=True). Otherwise the solution doesn't work, and you get the two warnings described in the other comments.
    – kotchwane
    Commented Nov 12, 2020 at 11:38
  • 1
    I was using a dataframe that was sliced and was getting all sorts of warnings. @kotchwane comment helped me figure it out.
    – Human
    Commented Dec 16, 2020 at 18:47
  • I have been trying to use setitem operator (from operator import setitem) to assign values to a new column of a dataframe via a wrapper lambda function as reduce(lambda k,o,v=value: setitem(k,o,v), path, dict) where path is [table_name, [new_column_name]] and dict is a dictionary containing various datafrmaes, but I get TypeError: 'NoneType' object does not support item assignment. Any ideas how to resolve this? Thank you.
    – Confounded
    Commented Jan 30 at 4:43
18

I had the SettingWithCopyWarning-issue, when assigning data to a DataFrame df, which was constructed by indexing. Both commands

  • df['new_column'] = something
  • df.loc[:, 'new_column'] = something

did not work without the warning. As soon as copying df (DataFrame.copy()) everything was fine.

In the code below, compare df0 = df_test[df_test['a']>3] and df1 = df_test[df_test['a']>3].copy(). For df0 both assignments throw the Warning. For df1 both work fine.

>>> df_test
      a     b     c     d  e
0   0.0   1.0   2.0   3.0  0
1   4.0   5.0   6.0   7.0  1
2   8.0   9.0  10.0  11.0  2
3  12.0  13.0  14.0  15.0  3
4  16.0  17.0  18.0  19.0  4
>>> df0 = df_test[df_test['a']>3]
>>> df1 = df_test[df_test['a']>3].copy()
>>> df0['e'] = np.arange(4)
__main__:1: SettingWithCopyWarning: 
A value is trying to be set on a copy of a slice from a DataFrame.
Try using .loc[row_indexer,col_indexer] = value instead

See the caveats in the documentation: https://pandas.pydata.org/pandas-docs/stable/user_guide/indexing.html#returning-a-view-versus-a-copy
>>> df1['e'] = np.arange(4)
>>> df0.loc[2, 'a'] = 77
/opt/anaconda3/lib/python3.7/site-packages/pandas/core/indexing.py:1719: SettingWithCopyWarning: 
A value is trying to be set on a copy of a slice from a DataFrame.
Try using .loc[row_indexer,col_indexer] = value instead

See the caveats in the documentation: https://pandas.pydata.org/pandas-docs/stable/user_guide/indexing.html#returning-a-view-versus-a-copy
  self._setitem_single_column(loc, value, pi)
>>> df1.loc[2, 'a'] = 77
>>> df0
      a     b     c     d  e
1   4.0   5.0   6.0   7.0  0
2  77.0   9.0  10.0  11.0  1
3  12.0  13.0  14.0  15.0  2
4  16.0  17.0  18.0  19.0  3
>>> df1
      a     b     c     d  e
1   4.0   5.0   6.0   7.0  0
2  77.0   9.0  10.0  11.0  1
3  12.0  13.0  14.0  15.0  2
4  16.0  17.0  18.0  19.0  3

By the way: It is recommended to read the docs about this issue (Link in Warning)

2
  • This helped me! Up in the code I made something like df_1 = df_0["A", "B"] and I was later creating columns in df_1 (that is a slice, not a copy, of df_0). Changing the code to df_1 = df_0.copy() solved my issue! Commented Dec 28, 2022 at 4:15
  • how efficient is copy when doing alot of this?
    – mike01010
    Commented May 8 at 4:03
13

You need to reset_index when you will create column especially if you have filtered on specific values... then you don't need to use .loc[row_indexer,col_indexer]

netc.reset_index(drop=True, inplace=True)
netc["DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM

Then it should work :)

2
  • Actually, combining this reset of index with the accepted solution, solved the problem for me. So the second line of your answer should be netc.loc[:,"DeltaAMPP"] = netc.LOAD_AM - netc.VPP12_AM. See my comment above.
    – kotchwane
    Commented Nov 12, 2020 at 11:42
  • Hi Kotchwane, I see what you mean and even netc.loc[:,"DeltaAMPP"] will not remove the warning. Then what you need to do is to copy your dataframe to another one and the warning will disappear: PS : to copy dataframe to another you should use : import copy ==> new_netc = copy.deepcopy(netc) new_netc ["DeltaAMPP"] = new_netc.LOAD_AM - new_netc.VPP12_AM Feel to put your feedback after you test it as I mention :) Commented Nov 18, 2020 at 11:14
4

As pointed out in other answers, there is a good chance that you have done some filtering on the data, else this warning should not have popped up (since your steps are correct).

Assuming you have done some filtering, you could try doing the following steps:

netc_copied = netc.copy()
netc.loc[:, "DeltaAMPP"] = netc_copied["LOAD_AM"] - netc_copied["VPP12_AM"]

Note that I have added a new column in the original DataFrame. You could do this in the copied DataFrame too.

2

A simpler solution is to just use 'assign':

netc = netc.assign(DeltaAMPP=netc_copied['LOAD_AM']-netc_copied['VPP12_AM'])
1
  • According to the docs, assign returns a new data frame, so I suspect it does .copy() in the background.
    – RiskyMaor
    Commented Apr 17, 2022 at 12:13
0

Alternatively you can also use eval:

netc.eval('DeltaAMPP = LOAD_AM - VPP12_AM', inplace = True)

Since inplace=True you don't need to assign it back to netc.

-1

you'll will still get error even after using .loc or .iloc for slicing, all you have to do is reset index after slicing

df.reset_index()

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