pandas.Series.replace¶
- Series.replace(to_replace=None, value=None, inplace=False, limit=None, regex=False, method='pad')[source]¶
Replace values given in to_replace with value.
Values of the Series are replaced with other values dynamically.
This differs from updating with
.loc
or.iloc
, which require you to specify a location to update with some value.- Parameters
- to_replacestr, regex, list, dict, Series, int, float, or None
How to find the values that will be replaced.
numeric, str or regex:
- numeric: numeric values equal to to_replace will be
replaced with value
- str: string exactly matching to_replace will be replaced
with value
- regex: regexs matching to_replace will be replaced with
value
list of str, regex, or numeric:
- First, if to_replace and value are both lists, they
must be the same length.
- Second, if
regex=True
then all of the strings in both lists will be interpreted as regexs otherwise they will match directly. This doesn’t matter much for value since there are only a few possible substitution regexes you can use.
- Second, if
str, regex and numeric rules apply as above.
dict:
- Dicts can be used to specify different replacement values
for different existing values. For example,
{'a': 'b', 'y': 'z'}
replaces the value ‘a’ with ‘b’ and ‘y’ with ‘z’. To use a dict in this way the value parameter should be None.
- For a DataFrame a dict can specify that different values
should be replaced in different columns. For example,
{'a': 1, 'b': 'z'}
looks for the value 1 in column ‘a’ and the value ‘z’ in column ‘b’ and replaces these values with whatever is specified in value. The value parameter should not beNone
in this case. You can treat this as a special case of passing two lists except that you are specifying the column to search in.
- For a DataFrame nested dictionaries, e.g.,
{'a': {'b': np.nan}}
, are read as follows: look in column ‘a’ for the value ‘b’ and replace it with NaN. The value parameter should beNone
to use a nested dict in this way. You can nest regular expressions as well. Note that column names (the top-level dictionary keys in a nested dictionary) cannot be regular expressions.
None:
- This means that the regex argument must be a string,
compiled regular expression, or list, dict, ndarray or Series of such elements. If value is also
None
then this must be a nested dictionary or Series.
See the examples section for examples of each of these.
- valuescalar, dict, list, str, regex, default None
Value to replace any values matching to_replace with. For a DataFrame a dict of values can be used to specify which value to use for each column (columns not in the dict will not be filled). Regular expressions, strings and lists or dicts of such objects are also allowed.
- inplacebool, default False
If True, performs operation inplace and returns None.
- limitint, default None
Maximum size gap to forward or backward fill.
- regexbool or same types as to_replace, default False
Whether to interpret to_replace and/or value as regular expressions. If this is
True
then to_replace must be a string. Alternatively, this could be a regular expression or a list, dict, or array of regular expressions in which case to_replace must beNone
.- method{‘pad’, ‘ffill’, ‘bfill’, None}
The method to use when for replacement, when to_replace is a scalar, list or tuple and value is
None
.Changed in version 0.23.0: Added to DataFrame.
- Returns
- Series
Object after replacement.
- Raises
- AssertionError
- If regex is not a
bool
and to_replace is not None
.
- If regex is not a
- TypeError
If to_replace is not a scalar, array-like,
dict
, orNone
- If to_replace is a
dict
and value is not alist
, dict
,ndarray
, orSeries
- If to_replace is a
- If to_replace is
None
and regex is not compilable into a regular expression or is a list, dict, ndarray, or Series.
- If to_replace is
- When replacing multiple
bool
ordatetime64
objects and the arguments to to_replace does not match the type of the value being replaced
- When replacing multiple
- ValueError
- If a
list
or anndarray
is passed to to_replace and value but they are not the same length.
- If a
See also
Series.fillna
Fill NA values.
Series.where
Replace values based on boolean condition.
Series.str.replace
Simple string replacement.
Notes
- Regex substitution is performed under the hood with
re.sub
. The rules for substitution for
re.sub
are the same.
- Regex substitution is performed under the hood with
- Regular expressions will only substitute on strings, meaning you
cannot provide, for example, a regular expression matching floating point numbers and expect the columns in your frame that have a numeric dtype to be matched. However, if those floating point numbers are strings, then you can do this.
- This method has a lot of options. You are encouraged to experiment
and play with this method to gain intuition about how it works.
- When dict is used as the to_replace value, it is like
key(s) in the dict are the to_replace part and value(s) in the dict are the value parameter.
Examples
Scalar `to_replace` and `value`
>>> s = pd.Series([0, 1, 2, 3, 4]) >>> s.replace(0, 5) 0 5 1 1 2 2 3 3 4 4 dtype: int64
>>> df = pd.DataFrame({'A': [0, 1, 2, 3, 4], ... 'B': [5, 6, 7, 8, 9], ... 'C': ['a', 'b', 'c', 'd', 'e']}) >>> df.replace(0, 5) A B C 0 5 5 a 1 1 6 b 2 2 7 c 3 3 8 d 4 4 9 e
List-like `to_replace`
>>> df.replace([0, 1, 2, 3], 4) A B C 0 4 5 a 1 4 6 b 2 4 7 c 3 4 8 d 4 4 9 e
>>> df.replace([0, 1, 2, 3], [4, 3, 2, 1]) A B C 0 4 5 a 1 3 6 b 2 2 7 c 3 1 8 d 4 4 9 e
>>> s.replace([1, 2], method='bfill') 0 0 1 3 2 3 3 3 4 4 dtype: int64
dict-like `to_replace`
>>> df.replace({0: 10, 1: 100}) A B C 0 10 5 a 1 100 6 b 2 2 7 c 3 3 8 d 4 4 9 e
>>> df.replace({'A': 0, 'B': 5}, 100) A B C 0 100 100 a 1 1 6 b 2 2 7 c 3 3 8 d 4 4 9 e
>>> df.replace({'A': {0: 100, 4: 400}}) A B C 0 100 5 a 1 1 6 b 2 2 7 c 3 3 8 d 4 400 9 e
Regular expression `to_replace`
>>> df = pd.DataFrame({'A': ['bat', 'foo', 'bait'], ... 'B': ['abc', 'bar', 'xyz']}) >>> df.replace(to_replace=r'^ba.$', value='new', regex=True) A B 0 new abc 1 foo new 2 bait xyz
>>> df.replace({'A': r'^ba.$'}, {'A': 'new'}, regex=True) A B 0 new abc 1 foo bar 2 bait xyz
>>> df.replace(regex=r'^ba.$', value='new') A B 0 new abc 1 foo new 2 bait xyz
>>> df.replace(regex={r'^ba.$': 'new', 'foo': 'xyz'}) A B 0 new abc 1 xyz new 2 bait xyz
>>> df.replace(regex=[r'^ba.$', 'foo'], value='new') A B 0 new abc 1 new new 2 bait xyz
Compare the behavior of
s.replace({'a': None})
ands.replace('a', None)
to understand the peculiarities of the to_replace parameter:>>> s = pd.Series([10, 'a', 'a', 'b', 'a'])
When one uses a dict as the to_replace value, it is like the value(s) in the dict are equal to the value parameter.
s.replace({'a': None})
is equivalent tos.replace(to_replace={'a': None}, value=None, method=None)
:>>> s.replace({'a': None}) 0 10 1 None 2 None 3 b 4 None dtype: object
When
value=None
and to_replace is a scalar, list or tuple, replace uses the method parameter (default ‘pad’) to do the replacement. So this is why the ‘a’ values are being replaced by 10 in rows 1 and 2 and ‘b’ in row 4 in this case. The commands.replace('a', None)
is actually equivalent tos.replace(to_replace='a', value=None, method='pad')
:>>> s.replace('a', None) 0 10 1 10 2 10 3 b 4 b dtype: object