7

I am experiencing some problems while using .loc / .iloc as part of a loop. This is a simplified version of my code:


INDEX=['0', '1', '2', '3', '4']
COLUMNS=['A','B','C']
df=pd.DataFrame(index=INDEX, columns=COLUMNS)
i=0

while i<1000:

    for row in INDEX:
        df.loc[row] = function()
    #breakpoint

    i_max = df['A'].idxmax()
    row_MAX=df.loc[i_max]

    if i == 0:
        row_GLOBALMAX=row_MAX
    elif row_MAX > row_GLOBALMAX:
        row_GLOBALMAX=row_MAX

i+=1

basically:

  1. I initialize a dataframe with index and columns

  2. I populate each row of the dataframe with a for loop

  3. I find the index "i_max" finding the maximum value in column 'A'

  4. I save the row of the dataframe where the value is maximum 'row_MAX'

  5. The while loop iterates over steps 2 to 4 and uses a new variable row_GLOBALMAX to save the row with the highest value in row 'A'

The code works as expected during the first execution of the while loop (i=0), however at the second iteration (i=1) when I stop at the indicated breakpoint I observe a problem: both 'row_MAX' and 'row_GLOBALMAX' have already changed with respect to the first iteration and have followed the values in the updated 'df' dataframe, even though I haven't yet assigned them in the second iteration.

basically it seems like the .loc function created a pointer to a particular row of the 'df' dataframe instead of actually assigning a value in that particular moment. Is this the normal behaviour? What should I use instead of .loc?

2 Answers 2

5

I think both loc and iloc (didn't test iloc) will point to a specific index of the dataframe. They do not make copies of the row.

You can use the copy() method on the row to solve your problem.

import pandas as pd
import numpy as np

INDEX=['0', '1', '2', '3', '4']
COLUMNS=['A','B','C']

df=pd.DataFrame(index=INDEX, columns=COLUMNS)

np.random.seed(5)

for idx in INDEX:
    df.loc[idx] = np.random.randint(-100, 100, 3)

print("First state")
a_row = df.loc["3"]
a_row_cp = a_row.copy()

print(df)
print("---\n")
print(a_row)

print("\n==================================\n\n\n")

for idx in INDEX:
    df.loc[idx] = np.random.randint(-100, 100, 3)

print("Second state")
print(df)
print("---\n")
print(a_row)
print("---\n")
print(a_row_cp)
1
  • 1
    Thank you for the suggestion, I have tried the code adding the .copy() method and that worked fine :)
    – Paolo
    Commented Apr 21, 2019 at 8:52
1

According to the official documentation

df.loc[] = value

becomes

df.loc.__setitem__((slice())), value)

so there is no copy of the original data-frame created anywhere. The operation is done on a view of the original data-frame. This is the suggested way of assignment..

df.loc[] is guaranteed to be df itself with modified indexing behavior, so df.loc.__getitem__ / df.loc.__setitem__ operate on df directly.

The problems and uncertainty (view vs copy) start in cases of chained indexing for which you can read more here.

Also, be aware that sometimes the assignment warnings by pandas may be false positive -> i.e. when you are correctly using df.loc[] for assignment but get a warning telling you that you should be using df.loc[]...

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