I can compare two Pandas series for exact equality using pandas.Series.equals. Is there a corresponding function or parameter that will check if the elements are equal to some ε of precision?

  • 3
    --> np.allclose(s1, s2) Set the threshold parameters, the docs explain it well.
    – cs95
    Oct 3, 2017 at 22:58
  • 1
    @cᴏʟᴅsᴘᴇᴇᴅ, perfect. Make this an answer and I'll accept it. Oct 3, 2017 at 23:44
  • and use np.isclose() to return an element-wise boolean series
    – johnDanger
    May 20, 2020 at 17:16

4 Answers 4


You can use numpy.allclose:

numpy.allclose(a, b, rtol=1e-05, atol=1e-08, equal_nan=False)

Returns True if two arrays are element-wise equal within a tolerance.

The tolerance values are positive, typically very small numbers. The relative difference (rtol * abs(b)) and the absolute difference atol are added together to compare against the absolute difference between a and b.

numpy works well with pandas.Series objects, so if you have two of them - s1 and s2, you can simply do:

np.allclose(s1, s2, atol=...) 

Where atol is your tolerance value.


Numpy works well with pandas Series. However one has to be careful with the order of indices (or columns and indices for pandas DataFrame)

For example

series_1 = pd.Series(data=[0,1], index=['a','b'])
series_2 = pd.Series(data=[1,0], index=['b','a']) 

will return False

A workaround is to use the index of one pandas series

np.allclose(series_1, series_2.loc[series_1.index])

If you want to avoid numpy, there is another way, use assert_series_equal

import pandas as pd
s1 = pd.Series([1.333333, 1.666666])
s2 = pd.Series([1.333, 1.666])

from pandas.testing import assert_series_equal

raises an AssertionError. So use the check_less_precise flag

assert_series_equal(s1,s2, check_less_precise= True)  # No assertion error

This doesn't raise an AssertionError as check_less_precise only compares 3 digits after decimal.

See the docs here

Not good to use asserts but if you want to avoid numpy, this is a way.


Note: I'm posting this mostly because I came to this thread via a Google search of something similar and it seemed too long for a comment. Not necessarily the best solution nor strictly "ε of precision"-based, but an alternative using scaling and rounding if you want to do this for vectors (i.e. rows) rather than scalars for a DataFrame (rather than Series) without looping through explicitly:

import numpy as np
import pandas as pd
from sklearn.preprocessing import MinMaxScaler

Xcomb = pd.concat((X, X2), axis=0, ignore_index=True)
# scale
scaler = MinMaxScaler()
Xscl = scaler.transform(Xcomb)
# round
df_scl = pd.DataFrame(np.round(Xscl, decimals=8), columns=X.columns)
# post-processing
n_uniq = df_scl.drop_duplicates().shape[0]
n_dup = df.shape[0] + df2.shape[0] - n_uniq
print(f"Number of shared rows: {n_dup}")

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