pandas.
isnull
Detect missing values for an array-like object.
This function takes a scalar or array-like object and indicates whether values are missing (NaN in numeric arrays, None or NaN in object arrays, NaT in datetimelike).
NaN
None
NaT
Object to check for null or missing values.
For scalar input, returns a scalar boolean. For array input, returns an array of boolean indicating whether each corresponding element is missing.
See also
notna
Boolean inverse of pandas.isna.
Series.isna
Detect missing values in a Series.
DataFrame.isna
Detect missing values in a DataFrame.
Index.isna
Detect missing values in an Index.
Examples
Scalar arguments (including strings) result in a scalar boolean.
>>> pd.isna('dog') False
>>> pd.isna(pd.NA) True
>>> pd.isna(np.nan) True
ndarrays result in an ndarray of booleans.
>>> array = np.array([[1, np.nan, 3], [4, 5, np.nan]]) >>> array array([[ 1., nan, 3.], [ 4., 5., nan]]) >>> pd.isna(array) array([[False, True, False], [False, False, True]])
For indexes, an ndarray of booleans is returned.
>>> index = pd.DatetimeIndex(["2017-07-05", "2017-07-06", None, ... "2017-07-08"]) >>> index DatetimeIndex(['2017-07-05', '2017-07-06', 'NaT', '2017-07-08'], dtype='datetime64[ns]', freq=None) >>> pd.isna(index) array([False, False, True, False])
For Series and DataFrame, the same type is returned, containing booleans.
>>> df = pd.DataFrame([['ant', 'bee', 'cat'], ['dog', None, 'fly']]) >>> df 0 1 2 0 ant bee cat 1 dog None fly >>> pd.isna(df) 0 1 2 0 False False False 1 False True False
>>> pd.isna(df[1]) 0 False 1 True Name: 1, dtype: bool