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I have a dataframe df which has 'TPrice','THigh','TLow','TOpen','TClose','TPCLOSE' columns, and now I want to set 'TPrice','THigh','TLow','TOpen','TClose' columns values to be same as 'TPCLOSE' column for the rows whose TPrice column value is zero.

Show some rows whose TPrice is 0:

>>> df[df['TPrice']==0][['TPrice','THigh','TLow','TOpen','TClose','TPCLOSE']][0:5]
    TPrice  THigh  TLow  TOpen  TClose  TPCLOSE
13       0      0     0      0       0     4.19
19       0      0     0      0       0     7.74
32       0      0     0      0       0     3.27
43       0      0     0      0       0    12.98
60       0      0     0      0       0     7.48

Then assignment :

>>> df[df['TPrice']==0][['TPrice','THigh','TLow','TOpen','TClose']] = df['TPCLOSE']

But Pandas doesn't really change df , for below code still can find some rows:

>>> df[df['TPrice']==0][['TPrice','THigh','TLow','TOpen','TClose','TPCLOSE']][0:5]
    TPrice  THigh  TLow  TOpen  TClose  TPCLOSE
13       0      0     0      0       0     4.19
19       0      0     0      0       0     7.74
32       0      0     0      0       0     3.27
43       0      0     0      0       0    12.98
60       0      0     0      0       0     7.48

So how to do ?

Update for Jeff solution:

>>> quote_df = get_quote()
>>> quote_df[quote_df['TPrice']==0][['TPrice','THigh','TLow','TOpen','TClose','TPCLOSE','RT','TVol']][0:5]
    TPrice  THigh  TLow  TOpen  TClose  TPCLOSE   RT  TVol
13       0      0     0      0       0     4.19 -100     0
32       0      0     0      0       0     3.27 -100     0
43       0      0     0      0       0    12.98 -100     0
45       0      0     0      0       0    26.74 -100     0
60       0      0     0      0       0     7.48 -100     0
>>> row_selection = quote_df['TPrice']==0
>>> col_selection = ['THigh','TLow','TOpen','TClose']
>>> for col in col_selection:
...     quote_df.loc[row_selection, col] = quote_df['TPCLOSE']
... 
>>> quote_df[quote_df['TPrice']==0][['TPrice','THigh','TLow','TOpen','TClose','TPCLOSE','RT','TVol']][0:5]
    TPrice  THigh  TLow  TOpen  TClose  TPCLOSE   RT  TVol
13       0   4.19  4.19   4.19    4.19     4.19 -100     0
32       0   4.19  4.19   4.19    4.19     3.27 -100     0
43       0   4.19  4.19   4.19    4.19    12.98 -100     0
45       0   4.19  4.19   4.19    4.19    26.74 -100     0
60       0   4.19  4.19   4.19    4.19     7.48 -100     0
>>> 
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1  
you are doing a chained assignment and thus modifyig a copy, see here; try df.loc[rows_selector,columns_selector] = ... –  Jeff Oct 13 '13 at 14:27
    
I try to do : df.loc[df['TPrice']==0,['THigh','TLow','TOpen','TClose']] = df['TPCLOSE'] , but TLow,TOpen,TClose not set the same value as TPCLOSE . –  bigbug Oct 13 '13 at 15:04

2 Answers 2

up vote 3 down vote accepted

This operation is not automatically broadcast, so you need to do something like this

In [17]: df = DataFrame(dict(A = [1,2,0,0,0],B=[0,0,0,10,11],C=[3,4,5,6,7]))

In [18]: df
Out[18]: 
   A   B  C
0  1   0  3
1  2   0  4
2  0   0  5
3  0  10  6
4  0  11  7

Compute which rows you want to mask first (otherwise they might change as you go) if you are modifying A (as you are here)

In [19]: mask = df['A'] == 0

In [20]: for col in ['A','B']:
   ....:     df.loc[mask,col] = df['C']
   ....:     

In [21]: df
Out[21]: 
   A  B  C
0  1  0  3
1  2  0  4
2  5  5  5
3  6  6  6
4  7  7  7

This requires a change to make it more natural (as you are assigning a series on the rhs to a dataframe on the lhs, which right now doesn't broadcast like you would think it should) https://github.com/pydata/pandas/issues/5206

share|improve this answer
    
I follow your method, but the dataframe just copy a single value 4.19 to all cells instead of a series of values , pls refer to the "Update for Jeff solution". (I pickle the dataframe quote_df at yunpan.cn/Qb2kAabL27DtB ). Don't know why. (Pandas 0.11.0) –  bigbug Oct 14 '13 at 3:02
    
you need 0.12, 0.11 broken for things like this –  Jeff Oct 14 '13 at 3:31
    
ok.I will have a upgrade as 0.13 is available. Thanks. Now I have to one by one set as: row_selection = quote_df['TPrice']==0;value_set = quote_df['TPCLOSE'];quote_df.TOpen[row_selection] = value_set;quote_df.THigh[row_selection] = value_set –  bigbug Oct 14 '13 at 3:46
>>> import pandas as pd
>>> test=pd.DataFrame({'A': [0,1,2], 'B': [3,4,5], 'C': [6,7,8]})
>>> test
   A  B  C
0  0  3  6
1  1  4  7
2  2  5  8
>>> test.apply(lambda x: x.where(test.A!=0, test.C), axis=0)
   A  B  C
0  6  6  6
1  1  4  7
2  2  5  8
share|improve this answer

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