I try to compare below two dataframe with "check_index_type" set to False. According to the documentation, if it set to False, it shouldn't "check the Index class, dtype and inferred_type are identical". Did I misunderstood the documentation? how to compare ignoring the index and return True for below test?

I know I can reset the index but prefer not to.


from pandas.util.testing import assert_frame_equal
import pandas as pd
d1 = pd.DataFrame([[1,2], [10, 20]], index=[0,2])
d2 = pd.DataFrame([[1, 2], [10, 20]], index=[0, 1])
assert_frame_equal(d1, d2, check_index_type=False)

AssertionError: DataFrame.index are different
DataFrame.index values are different (50.0 %)
[left]:  Int64Index([0, 2], dtype='int64')
[right]: Int64Index([0, 1], dtype='int64')
  • does the assert yield 'False'?
    – Yuca
    Aug 2 '18 at 14:15
  • Do you get AssertionError ?
    – harvpan
    Aug 2 '18 at 14:16
  • @Lisa check my comment on Wen's answer
    – Yuca
    Aug 2 '18 at 14:25

Index is part of data frame , if the index are different , we should say the dataframes are different , even the value of dfs are same , so , if you want to check the value , using array_equal from numpy

d1 = pd.DataFrame([[1,2], [10, 20]], index=[0,2])
d2 = pd.DataFrame([[1, 2], [10, 20]], index=[0, 1])
Out[759]: True

For more info about assert_frame_equal in git

  • 6
    To answer the assert_frame_equal part, the check_index_type is only ignoring the data type of the index, not the values themselves. So the flag is not equivalent to 'ignore index values'
    – Yuca
    Aug 2 '18 at 14:16
  • 5
    This, however, will ONLY check the values, not e.g. column names. For a use case where only the index shouldn't be checked I think it is better to use assert_frame_equal(df1.reset_index(drop=True), ...)
    – SimonCW
    Feb 20 '19 at 9:30

If you really don't care about the index being equal, you can drop the index as follows:

assert_frame_equal(d1.reset_index(drop=True), d2.reset_index(drop=True))
  • 1
    reset_index(drop=True) is not working.. are you sure? It is truncating the whole data frame.
    – endless
    Jan 28 '20 at 0:02

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