Issue
In Python Pandas, what's the best way to check whether a DataFrame has one (or more) NaN values?
I know about the function pd.isnan
, but this returns a DataFrame of booleans for each element. This post right here doesn't exactly answer my question either.
Solution
jwilner's response is spot on. I was exploring to see if there's a faster option, since in my experience, summing flat arrays is (strangely) faster than counting. This code seems faster:
df.isnull().values.any()
import numpy as np
import pandas as pd
import perfplot
def setup(n):
df = pd.DataFrame(np.random.randn(n))
df[df > 0.9] = np.nan
return df
def isnull_any(df):
return df.isnull().any()
def isnull_values_sum(df):
return df.isnull().values.sum() > 0
def isnull_sum(df):
return df.isnull().sum() > 0
def isnull_values_any(df):
return df.isnull().values.any()
perfplot.save(
"out.png",
setup=setup,
kernels=[isnull_any, isnull_values_sum, isnull_sum, isnull_values_any],
n_range=[2 ** k for k in range(25)],
)
df.isnull().sum().sum()
is a bit slower, but of course, has additional information -- the number of NaNs
.
Answered By - S Anand
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