I'm trying to assign a value to a cell, yet Pandas rounds it to zero. (I'm using Python 3.6)

in: df['column1']['row1'] = 1 / 331616

in: print(df['column1']['row1'])

out: 0

But if I try to assign this value to a standard Python dictionary key, it works fine.

in: {'column1': {'row1': 1/331616}}

out: {'column1': {'row1': 3.0155360416867704e-06}}

I've already done this, but it didn't help:

  • pd.set_option('precision',50)
  • pd.set_option('chop_threshold', .00000000005)

Please, help.

  • 3
    What version of python? If it's python2, you need to cast one of those operands to float: df['column1']['row1'] = 1.0 / 331616 – pault Feb 12 at 15:34
  • I'm using Python 3.6 – Alexey Yunoshev Feb 12 at 15:36
  • @AlexeyYunoshev Did you try changing 1 to 1.0 as what pault recommended? – rayryeng Feb 12 at 15:39
  • 3
    What are the types of each column? Type in df.dtypes into the interpreter and see what you get. I'm betting that it's int or some variant of it. – rayryeng Feb 12 at 15:45
  • 2
    @AlexeyYunoshev You're welcome. The reason why it rounded to 0 was because the native data type of the column was int64 so division results in truncation. You need to convert to floating point before you do so. In Python 3, doing vanilla division automatically provides a floating point result, but not in Pandas if the column type is int. That's why replicating the results in a dictionary had different results than doing it within the dataframe. – rayryeng Feb 12 at 15:56
up vote 0 down vote accepted

Your column's datatype most likely is set to int. You'll need to either convert it to float or mixed types object before assigning the value:

df = pd.DataFrame([1,2,3,4,5,6])

df.dtypes
# 0    int64
# dtype: object

df[0][4] = 7/125

df
#    0
# 0  1
# 1  2
# 2  3
# 3  4
# 4  0
# 5  6

df[0] = df[0].astype('O')

df[0][4] = 7 / 22
df

#           0
# 0         1
# 1         2
# 2         3
# 3         4
# 4  0.318182
# 5         6

df.dtypes

# 0    object
# dtype: object
  • Thank you for the answer. People in the comments above have already helped me to figure it out. Hopefully, your answer will help someone else. Thank you. – Alexey Yunoshev Feb 12 at 15:56
  • Thank you, yes I realized that after the fact, but since it's all typed out I'll just leave it here. May the rest of your code be bugless and clean. Have a good one. – Idlehands Feb 12 at 16:00

pandas appears to be presuming that your datatype is an integer (int).

There are several ways to address this, either by setting the datatype to a float when the DataFrame is constructed OR by changing (or casting) the datatype (also referred to as a dtype) to a float on the fly.

setting the datatype (dtype) during construction:

>>> import pandas as pd

In making this simple DataFrame, we provide a single example value (1) and the columns for the DataFrame are defined as containing floats during creation

>>> df = pd.DataFrame([[1]], columns=['column1'], index=['row1'], dtype=float)
>>> df['column1']['row1'] = 1 / 331616
>>> df
       column1
row1  0.000003

converting the datatype on the fly:

>>> df = pd.DataFrame([[1]], columns=['column1'], index=['row1'], dtype=int)
>>> df['column1'] = df['column1'].astype(float)
>>> df['column1']['row1'] = 1 / 331616
df
       column1
row1  0.000003

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