doc/source/user_guide/indexing.rst
.. _indexing:
{{ header }}
Indexing and selecting data
The axis labeling information in pandas objects serves many purposes:
In this section, we will focus on the final point: namely, how to slice, dice, and generally get and set subsets of pandas objects. The primary focus will be on Series and DataFrame as they have received more development attention in this area.
.. note::
The Python and NumPy indexing operators [] and attribute operator .
provide quick and easy access to pandas data structures across a wide range
of use cases. This makes interactive work intuitive, as there's little new
to learn if you already know how to deal with Python dictionaries and NumPy
arrays. However, since the type of the data to be accessed isn't known in
advance, directly using standard operators has some optimization limits. For
production code, we recommended that you take advantage of the optimized
pandas data access methods exposed in this chapter.
See the :ref:MultiIndex / Advanced Indexing <advanced> for MultiIndex and more advanced indexing documentation.
See the :ref:cookbook<cookbook.selection> for some advanced strategies.
.. _indexing.choice:
Object selection has had a number of user-requested additions in order to support more explicit location based indexing. pandas now supports three types of multi-axis indexing.
.loc is primarily label based, but may also be used with a boolean array. .loc will raise KeyError when the items are not found. Allowed inputs are:
5 or 'a' (Note that 5 is interpreted as a
label of the index. This use is not an integer position along the
index.).['a', 'b', 'c'].'a':'f' (Note that contrary to usual Python
slices, both the start and the stop are included, when present in the
index! See :ref:Slicing with labels <indexing.slicing_with_labels>
and :ref:Endpoints are inclusive <advanced.endpoints_are_inclusive>.)NA values will be treated as False).callable function with one argument (the calling Series or DataFrame) and
that returns valid output for indexing (one of the above).See more at :ref:Selection by Label <indexing.label>.
.iloc is primarily integer position based (from 0 to
length-1 of the axis), but may also be used with a boolean
array. .iloc will raise IndexError if a requested
indexer is out-of-bounds, except slice indexers which allow
out-of-bounds indexing. (this conforms with Python/NumPy slice
semantics). Allowed inputs are:
5.[4, 3, 0].1:7.NA values will be treated as False).callable function with one argument (the calling Series or DataFrame) and
that returns valid output for indexing (one of the above).See more at :ref:Selection by Position <indexing.integer>,
:ref:Advanced Indexing <advanced> and :ref:Advanced Hierarchical <advanced.advanced_hierarchical>.
.loc, .iloc, and also [] indexing can accept a callable as indexer. See more at :ref:Selection By Callable <indexing.callable>.
.. note::
Destructuring tuple keys into row (and column) indexes occurs before callables are applied, so you cannot return a tuple from a callable to index both rows and columns.
Getting values from an object with multi-axes selection uses the following
notation (using .loc as an example, but the following applies to .iloc as
well). Any of the axes accessors may be the null slice :. Axes left out of
the specification are assumed to be :, e.g. p.loc['a'] is equivalent to
p.loc['a', :].
.. ipython:: python
ser = pd.Series(range(5), index=list("abcde")) ser.loc[["a", "c", "e"]]
df = pd.DataFrame(np.arange(25).reshape(5, 5), index=list("abcde"), columns=list("abcde")) df.loc[["a", "c", "e"], ["b", "d"]]
.. _indexing.basics:
As mentioned when introducing the data structures in the :ref:last section <basics>, the primary function of indexing with [] (a.k.a. __getitem__
for those familiar with implementing class behavior in Python) is selecting out
lower-dimensional slices. The following table shows return type values when
indexing pandas objects with []:
.. csv-table:: :header: "Object Type", "Selection", "Return Value Type" :widths: 30, 30, 60
Series, ``series[label]``, scalar value
DataFrame, ``frame[colname]``, ``Series`` corresponding to colname
Here we construct a simple time series data set to use for illustrating the indexing functionality:
.. ipython:: python
dates = pd.date_range('1/1/2000', periods=8) df = pd.DataFrame(np.random.randn(8, 4), index=dates, columns=['A', 'B', 'C', 'D']) df
.. note::
None of the indexing functionality is time series specific unless specifically stated.
Thus, as per above, we have the most basic indexing using []:
.. ipython:: python
s = df['A'] s[dates[5]]
You can pass a list of columns to [] to select columns in that order.
If a column is not contained in the DataFrame, an exception will be
raised. Multiple columns can also be set in this manner:
.. ipython:: python
df df[['B', 'A']] = df[['A', 'B']] df
You may find this useful for applying a transform (in-place) to a subset of the columns.
.. warning::
pandas aligns all AXES when setting Series and DataFrame from .loc.
This will not modify df because the column alignment is before value assignment.
.. ipython:: python
df[['A', 'B']]
df.loc[:, ['B', 'A']] = df[['A', 'B']]
df[['A', 'B']]
The correct way to swap column values is by using raw values:
.. ipython:: python
df.loc[:, ['B', 'A']] = df[['A', 'B']].to_numpy()
df[['A', 'B']]
However, pandas does not align AXES when setting Series and DataFrame from .iloc
because .iloc operates by position.
This will modify df because the column alignment is not done before value assignment.
.. ipython:: python
df[['A', 'B']]
df.iloc[:, [1, 0]] = df[['A', 'B']]
df[['A','B']]
.. _indexing.columns.multiple:
.. _indexing.df_cols:
.. _indexing.attribute_access:
You may access an index on a Series or column on a DataFrame directly
as an attribute:
.. ipython:: python
sa = pd.Series([1, 2, 3], index=list('abc')) dfa = df.copy()
.. ipython:: python
sa.b dfa.A
.. ipython:: python
sa.a = 5 sa dfa.A = list(range(len(dfa.index))) # ok if A already exists dfa dfa['A'] = list(range(len(dfa.index))) # use this form to create a new column dfa
.. warning::
You can use this access only if the index element is a valid Python identifier, e.g. s.1 is not allowed.
See here for an explanation of valid identifiers <https://docs.python.org/3/reference/lexical_analysis.html#identifiers>__.
The attribute will not be available if it conflicts with an existing method name, e.g. s.min is not allowed, but s['min'] is possible.
Similarly, the attribute will not be available if it conflicts with any of the following list: index,
major_axis, minor_axis, items.
In any of these cases, standard indexing will still work, e.g. s['1'], s['min'], and s['index'] will
access the corresponding element or column.
If you are using the IPython environment, you may also use tab-completion to see these accessible attributes.
You can also assign a dict to a row of a DataFrame:
.. ipython:: python
x = pd.DataFrame({'x': [1, 2, 3], 'y': [3, 4, 5]}) x.iloc[1] = {'x': 9, 'y': 99} x
You can use attribute access to modify an existing element of a Series or column of a DataFrame, but be careful;
if you try to use attribute access to create a new column, it creates a new attribute rather than a
new column and will this raise a UserWarning:
.. ipython:: python :okwarning:
df_new = pd.DataFrame({'one': [1., 2., 3.]})
df_new.two = [4, 5, 6]
df_new
The most robust and consistent way of slicing ranges along arbitrary axes is
described in the :ref:Selection by Position <indexing.integer> section
detailing the .iloc method. For now, we explain the semantics of slicing using the [] operator.
.. note::
When the :class:`Series` has float indices, slicing will select by position.
With Series, the syntax works exactly as with an ndarray, returning a slice of the values and the corresponding labels:
.. ipython:: python
s[:5] s[::2] s[::-1]
Note that setting works as well:
.. ipython:: python
s2 = s.copy() s2[:5] = 0 s2
With DataFrame, slicing inside of [] slices the rows. This is provided
largely as a convenience since it is such a common operation.
.. ipython:: python
df[:3] df[::-1]
.. _indexing.label:
.. warning::
.loc is strict when you present slicers that are not compatible (or convertible) with the index type. For example
using integers in a DatetimeIndex. These will raise a TypeError.
.. ipython:: python :okexcept:
dfl = pd.DataFrame(np.random.randn(5, 4),
columns=list('ABCD'),
index=pd.date_range('20130101', periods=5))
dfl
dfl.loc[2:3]
String likes in slicing can be convertible to the type of the index and lead to natural slicing.
.. ipython:: python
dfl.loc['20130102':'20130104']
pandas provides a suite of methods in order to have purely label based indexing. This is a strict inclusion based protocol.
Every label asked for must be in the index, or a KeyError will be raised.
When slicing, both the start bound AND the stop bound are included, if present in the index.
Integers are valid labels, but they refer to the label and not the position.
The .loc attribute is the primary access method. The following are valid inputs:
5 or 'a' (Note that 5 is interpreted as a label of the index. This use is not an integer position along the index.).['a', 'b', 'c'].'a':'f'. Note that contrary to usual Python
slices, both the start and the stop are included, when present in the
index! See :ref:Slicing with labels <indexing.slicing_with_labels>.callable, see :ref:Selection By Callable <indexing.callable>... ipython:: python
s1 = pd.Series(np.random.randn(6), index=list('abcdef')) s1 s1.loc['c':] s1.loc['b']
Note that setting works as well:
.. ipython:: python
s1.loc['c':] = 0 s1
With a DataFrame:
.. ipython:: python
df1 = pd.DataFrame(np.random.randn(6, 4), index=list('abcdef'), columns=list('ABCD')) df1 df1.loc[['a', 'b', 'd'], :]
Accessing via label slices:
.. ipython:: python
df1.loc['d':, 'A':'C']
For getting a cross section using a label (equivalent to df.xs('a')):
.. ipython:: python
df1.loc['a']
For getting values with a boolean array:
.. ipython:: python
df1.loc['a'] > 0 df1.loc[:, df1.loc['a'] > 0]
NA values in a boolean array propagate as False:
.. ipython:: python
mask = pd.array([True, False, True, False, pd.NA, False], dtype="boolean") mask df1[mask]
For getting a value explicitly:
.. ipython:: python
df1.at['a','A']df1.loc['a', 'A']
.. _indexing.slicing_with_labels:
Slicing with labels
When using ``.loc`` with slices, if both the start and the stop labels are
present in the index, then elements *located* between the two (including them)
are returned:
.. ipython:: python
s = pd.Series(list('abcde'), index=[0, 3, 2, 5, 4])
s.loc[3:5]
If the index is sorted, and can be compared against start and stop labels,
then slicing will still work as expected, by selecting labels which *rank*
between the two:
.. ipython:: python
s.sort_index()
s.sort_index().loc[1:6]
However, if at least one of the two is absent *and* the index is not sorted, an
error will be raised (since doing otherwise would be computationally expensive,
as well as potentially ambiguous for mixed type indexes). For instance, in the
above example, ``s.loc[1:6]`` would raise ``KeyError``.
For the rationale behind this behavior, see
:ref:`Endpoints are inclusive <advanced.endpoints_are_inclusive>`.
.. ipython:: python
s = pd.Series(list('abcdef'), index=[0, 3, 2, 5, 4, 2])
s.loc[3:5]
Also, if the index has duplicate labels *and* either the start or the stop label is duplicated,
an error will be raised. For instance, in the above example, ``s.loc[2:5]`` would raise a ``KeyError``.
For more information about duplicate labels, see
:ref:`Duplicate Labels <duplicates>`.
When using a slice with a step, such as ``.loc[start:stop:step]``, note that
*start* and *stop* are interpreted as **labels**, while *step* is applied over
the **positional index** within that label range. This means a stepped slice
will behave differently than using the labels ``range(start, stop, step)`` when
the index is not contiguous integers.
For example, in a ``Series`` with a non-contiguous integer index:
.. ipython:: python
s = pd.Series(range(10), index=[0, 5, 10, 15, 20, 25, 30, 35, 40, 45])
s.loc[10:50:5] # (10), then skip 5 positions → 35 only
s.loc[[10, 15, 20, 25]] # explicit label selection
The first applies *step* across **positional locations** between the start/stop
labels. The second selects each label directly.
Similarly, with a string-based index, the behavior is identical:
.. ipython:: python
s = pd.Series(range(10), index=['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h', 'i', 'j'])
s.loc['b':'i':2] # Start at 'b' (position 1), stop at 'i' (position 8), step 2 positions → 'b', 'd', 'f', 'h'
s.loc[['b', 'd', 'f', 'h']] # explicit label selection
In both cases, *start* and *stop* determine the label boundaries (inclusive),
while *step* skips positions within that range, regardless of the index type.
.. _indexing.integer:
Selection by position
---------------------
pandas provides a suite of methods in order to get **purely integer based indexing**. The semantics follow closely Python and NumPy slicing. These are ``0-based`` indexing. When slicing, the start bound is *included*, while the upper bound is *excluded*. Trying to use a non-integer, even a **valid** label will raise an ``IndexError``.
The ``.iloc`` attribute is the primary access method. The following are valid inputs:
* An integer e.g. ``5``.
* A list or array of integers ``[4, 3, 0]``.
* A slice object with ints ``1:7``.
* A boolean array.
* A ``callable``, see :ref:`Selection By Callable <indexing.callable>`.
* A tuple of row (and column) indexes, whose elements are one of the
above types.
.. ipython:: python
s1 = pd.Series(np.random.randn(5), index=list(range(0, 10, 2)))
s1
s1.iloc[:3]
s1.iloc[3]
Note that setting works as well:
.. ipython:: python
s1.iloc[:3] = 0
s1
With a DataFrame:
.. ipython:: python
df1 = pd.DataFrame(np.random.randn(6, 4),
index=list(range(0, 12, 2)),
columns=list(range(0, 8, 2)))
df1
Select via integer slicing:
.. ipython:: python
df1.iloc[:3]
df1.iloc[1:5, 2:4]
Select via integer list:
.. ipython:: python
df1.iloc[[1, 3, 5], [1, 3]]
.. ipython:: python
df1.iloc[1:3, :]
.. ipython:: python
df1.iloc[:, 1:3]
.. ipython:: python
# this is also equivalent to ``df1.iat[1,1]``
df1.iloc[1, 1]
For getting a cross section using an integer position (equiv to ``df.xs(1)``):
.. ipython:: python
df1.iloc[1]
Out of range slice indexes are handled gracefully just as in Python/NumPy.
.. ipython:: python
# these are allowed in Python/NumPy.
x = list('abcdef')
x
x[4:10]
x[8:10]
s = pd.Series(x)
s
s.iloc[4:10]
s.iloc[8:10]
Note that using slices that go out of bounds can result in
an empty axis (e.g. an empty DataFrame being returned).
.. ipython:: python
dfl = pd.DataFrame(np.random.randn(5, 2), columns=list('AB'))
dfl
dfl.iloc[:, 2:3]
dfl.iloc[:, 1:3]
dfl.iloc[4:6]
A single indexer that is out of bounds will raise an ``IndexError``.
A list of indexers where any element is out of bounds will raise an
``IndexError``.
.. ipython:: python
:okexcept:
dfl.iloc[[4, 5, 6]]
.. ipython:: python
:okexcept:
dfl.iloc[:, 4]
.. _indexing.callable:
Selection by callable
---------------------
``.loc``, ``.iloc``, and also ``[]`` indexing can accept a ``callable`` as indexer.
The ``callable`` must be a function with one argument (the calling Series or DataFrame) that returns valid output for indexing.
.. note::
For ``.iloc`` indexing, returning a tuple from the callable is
not supported, since tuple destructuring for row and column indexes
occurs *before* applying callables.
.. ipython:: python
df1 = pd.DataFrame(np.random.randn(6, 4),
index=list('abcdef'),
columns=list('ABCD'))
df1
df1.loc[lambda df: df['A'] > 0, :]
df1.loc[:, lambda df: ['A', 'B']]
df1.iloc[:, lambda df: [0, 1]]
df1[lambda df: df.columns[0]]
You can use callable indexing in ``Series``.
.. ipython:: python
df1['A'].loc[lambda s: s > 0]
Using these methods / indexers, you can chain data selection operations
without using a temporary variable.
.. ipython:: python
bb = pd.read_csv('data/baseball.csv', index_col='id')
(bb.groupby(['year', 'team']).sum(numeric_only=True)
.loc[lambda df: df['r'] > 100])
.. _combining_positional_and_label_based_indexing:
Combining positional and label-based indexing
---------------------------------------------
If you wish to get the 0th and the 2nd elements from the index in the 'A' column, you can do:
.. ipython:: python
dfd = pd.DataFrame({'A': [1, 2, 3],
'B': [4, 5, 6]},
index=list('abc'))
dfd
dfd.loc[dfd.index[[0, 2]], 'A']
This can also be expressed using ``.iloc``, by explicitly getting locations on the indexers, and using
*positional* indexing to select things.
.. ipython:: python
dfd.iloc[[0, 2], dfd.columns.get_loc('A')]
For getting *multiple* indexers, using ``.get_indexer``:
.. ipython:: python
dfd.iloc[[0, 2], dfd.columns.get_indexer(['A', 'B'])]
Reindexing
~~~~~~~~~~
The idiomatic way to achieve selecting potentially not-found elements is via ``.reindex()``. See also the section on :ref:`reindexing <basics.reindexing>`.
.. ipython:: python
s = pd.Series([1, 2, 3])
s.reindex([1, 2, 3])
Alternatively, if you want to select only *valid* keys, the following is idiomatic and efficient; it is guaranteed to preserve the dtype of the selection.
.. ipython:: python
labels = [1, 2, 3]
s.loc[s.index.intersection(labels)]
Having a duplicated index will raise for a ``.reindex()``:
.. ipython:: python
:okexcept:
s = pd.Series(np.arange(4), index=['a', 'a', 'b', 'c'])
labels = ['c', 'd']
s.reindex(labels)
Generally, you can intersect the desired labels with the current
axis, and then reindex.
.. ipython:: python
s.loc[s.index.intersection(labels)].reindex(labels)
However, this would *still* raise if your resulting index is duplicated.
.. ipython:: python
:okexcept:
labels = ['a', 'd']
s.loc[s.index.intersection(labels)].reindex(labels)
.. _indexing.basics.partial_setting:
Selecting random samples
------------------------
A random selection of rows or columns from a Series or DataFrame with the :meth:`~DataFrame.sample` method. The method will sample rows by default, and accepts a specific number of rows/columns to return, or a fraction of rows.
.. ipython:: python
s = pd.Series([0, 1, 2, 3, 4, 5])
# When no arguments are passed, returns 1 row.
s.sample()
# One may specify either a number of rows:
s.sample(n=3)
# Or a fraction of the rows:
s.sample(frac=0.5)
By default, ``sample`` will return each row at most once, but one can also sample with replacement
using the ``replace`` option:
.. ipython:: python
s = pd.Series([0, 1, 2, 3, 4, 5])
# Without replacement (default):
s.sample(n=6, replace=False)
# With replacement:
s.sample(n=6, replace=True)
By default, each row has an equal probability of being selected, but if you want rows
to have different probabilities, you can pass the ``sample`` function sampling weights as
``weights``. These weights can be a list, a NumPy array, or a Series, but they must be of the same length as the object you are sampling. Missing values will be treated as a weight of zero, and inf values are not allowed. If weights do not sum to 1, they will be re-normalized by dividing all weights by the sum of the weights. For example:
.. ipython:: python
s = pd.Series([0, 1, 2, 3, 4, 5])
example_weights = [0, 0, 0.2, 0.2, 0.2, 0.4]
s.sample(n=2, weights=example_weights)
# Weights will be re-normalized automatically
example_weights2 = [0.5, 0, 0, 0, 0, 0]
s.sample(n=1, weights=example_weights2)
When applied to a DataFrame, you can use a column of the DataFrame as sampling weights
(provided you are sampling rows and not columns) by simply passing the name of the column
as a string.
.. ipython:: python
df2 = pd.DataFrame({'col1': [9, 8, 7, 6],
'weight_column': [0.5, 0.4, 0.1, 0]})
df2.sample(n=2, weights='weight_column')
``sample`` also allows users to sample columns instead of rows using the ``axis`` argument.
.. ipython:: python
df3 = pd.DataFrame({'col1': [1, 2, 3], 'col2': [2, 3, 4]})
df3.sample(n=1, axis=1)
Finally, one can also set a seed for ``sample``'s random number generator using the ``random_state`` argument, which will accept either an integer (as a seed) or a NumPy RandomState object.
.. ipython:: python
df4 = pd.DataFrame({'col1': [1, 2, 3], 'col2': [2, 3, 4]})
# With a given seed, the sample will always draw the same rows.
df4.sample(n=2, random_state=2)
df4.sample(n=2, random_state=2)
Setting with enlargement
------------------------
The ``.loc/[]`` operations can perform enlargement when setting a non-existent key for that axis.
In the ``Series`` case this is effectively an appending operation.
.. ipython:: python
se = pd.Series([1, 2, 3])
se
se[5] = 5.
se
A ``DataFrame`` can be enlarged on either axis via ``.loc``.
.. ipython:: python
dfi = pd.DataFrame(np.arange(6).reshape(3, 2),
columns=['A', 'B'])
dfi
dfi.loc[:, 'C'] = dfi.loc[:, 'A']
dfi
This is like an ``append`` operation on the ``DataFrame``.
.. ipython:: python
dfi.loc[3] = 5
dfi
.. _indexing.basics.get_value:
Fast scalar value getting and setting
-------------------------------------
Since indexing with ``[]`` must handle a lot of cases (single-label access,
slicing, boolean indexing, etc.), it has a bit of overhead in order to figure
out what you're asking for. If you only want to access a scalar value, the
fastest way is to use the ``at`` and ``iat`` methods, which are implemented on
all of the data structures.
Similarly to ``loc``, ``at`` provides **label** based scalar lookups, while, ``iat`` provides **integer** based lookups analogously to ``iloc``
.. ipython:: python
s.iat[5]
df.at[dates[5], 'A']
df.iat[3, 0]
You can also set using these same indexers.
.. ipython:: python
df.at[dates[5], 'E'] = 7
df.iat[3, 0] = 7
``at`` may enlarge the object in-place as above if the indexer is missing.
.. ipython:: python
df.at[dates[-1] + pd.Timedelta('1 day'), 0] = 7
df
Boolean indexing
----------------
.. _indexing.boolean:
Another common operation is the use of boolean vectors to filter the data.
The operators are: ``|`` for ``or``, ``&`` for ``and``, and ``~`` for ``not``.
These **must** be grouped by using parentheses, since by default Python will
evaluate an expression such as ``df['A'] > 2 & df['B'] < 3`` as
``df['A'] > (2 & df['B']) < 3``, while the desired evaluation order is
``(df['A'] > 2) & (df['B'] < 3)``.
Using a boolean vector to index a Series works exactly as in a NumPy ndarray:
.. ipython:: python
s = pd.Series(range(-3, 4))
s
s[s > 0]
s[(s < -1) | (s > 0.5)]
s[~(s < 0)]
You may select rows from a DataFrame using a boolean vector the same length as
the DataFrame's index (for example, something derived from one of the columns
of the DataFrame):
.. ipython:: python
df[df['A'] > 0]
List comprehensions and the ``map`` method of Series can also be used to produce
more complex criteria:
.. ipython:: python
df2 = pd.DataFrame({'a': ['one', 'one', 'two', 'three', 'two', 'one', 'six'],
'b': ['x', 'y', 'y', 'x', 'y', 'x', 'x'],
'c': np.random.randn(7)})
# only want 'two' or 'three'
criterion = df2['a'].map(lambda x: x.startswith('t'))
df2[criterion]
# equivalent but slower
df2[[x.startswith('t') for x in df2['a']]]
# Multiple criteria
df2[criterion & (df2['b'] == 'x')]
With the choice methods :ref:`Selection by Label <indexing.label>`, :ref:`Selection by Position <indexing.integer>`,
and :ref:`Advanced Indexing <advanced>` you may select along more than one axis using boolean vectors combined with other indexing expressions.
.. ipython:: python
df2.loc[criterion & (df2['b'] == 'x'), 'b':'c']
.. warning::
While ``loc`` supports two kinds of boolean indexing, ``iloc`` only supports indexing with a
boolean array. If the indexer is a boolean ``Series``, an error will be raised. For instance,
in the following example, ``df.iloc[s.values, 1]`` is ok. The boolean indexer is an array.
But ``df.iloc[s, 1]`` would raise ``ValueError``.
.. ipython:: python
df = pd.DataFrame([[1, 2], [3, 4], [5, 6]],
index=list('abc'),
columns=['A', 'B'])
s = (df['A'] > 2)
s
df.loc[s, 'B']
df.iloc[s.values, 1]
.. _indexing.basics.indexing_isin:
Indexing with isin
------------------
Consider the :meth:`~Series.isin` method of ``Series``, which returns a boolean
vector that is true wherever the ``Series`` elements exist in the passed list.
This allows you to select rows where one or more columns have values you want:
.. ipython:: python
s = pd.Series(np.arange(5), index=np.arange(5)[::-1], dtype='int64')
s
s.isin([2, 4, 6])
s[s.isin([2, 4, 6])]
The same method is available for ``Index`` objects and is useful for the cases
when you don't know which of the sought labels are in fact present:
.. ipython:: python
s[s.index.isin([2, 4, 6])]
# compare it to the following
s.reindex([2, 4, 6])
In addition to that, ``MultiIndex`` allows selecting a separate level to use
in the membership check:
.. ipython:: python
s_mi = pd.Series(np.arange(6),
index=pd.MultiIndex.from_product([[0, 1], ['a', 'b', 'c']]))
s_mi
s_mi.iloc[s_mi.index.isin([(1, 'a'), (2, 'b'), (0, 'c')])]
s_mi.iloc[s_mi.index.isin(['a', 'c', 'e'], level=1)]
DataFrame also has an :meth:`~DataFrame.isin` method. When calling ``isin``, pass a set of
values as either an array or dict. If values is an array, ``isin`` returns
a DataFrame of booleans that is the same shape as the original DataFrame, with True
wherever the element is in the sequence of values.
.. ipython:: python
df = pd.DataFrame({'vals': [1, 2, 3, 4], 'ids': ['a', 'b', 'f', 'n'],
'ids2': ['a', 'n', 'c', 'n']})
values = ['a', 'b', 1, 3]
df.isin(values)
Oftentimes you'll want to match certain values with certain columns.
Just make values a ``dict`` where the key is the column, and the value is
a list of items you want to check for.
.. ipython:: python
values = {'ids': ['a', 'b'], 'vals': [1, 3]}
df.isin(values)
To return the DataFrame of booleans where the values are *not* in the original DataFrame,
use the ``~`` operator:
.. ipython:: python
values = {'ids': ['a', 'b'], 'vals': [1, 3]}
~df.isin(values)
Combine DataFrame's ``isin`` with the ``any()`` and ``all()`` methods to
quickly select subsets of your data that meet a given criteria.
To select a row where each column meets its own criterion:
.. ipython:: python
values = {'ids': ['a', 'b'], 'ids2': ['a', 'c'], 'vals': [1, 3]}
row_mask = df.isin(values).all(axis=1)
df[row_mask]
.. _indexing.where_mask:
The :meth:`~pandas.DataFrame.where` Method and Masking
------------------------------------------------------
Selecting values from a Series with a boolean vector generally returns a
subset of the data. To guarantee that selection output has the same shape as
the original data, you can use the ``where`` method in ``Series`` and ``DataFrame``.
To return only the selected rows:
.. ipython:: python
s[s > 0]
To return a Series of the same shape as the original:
.. ipython:: python
s.where(s > 0)
Selecting values from a DataFrame with a boolean criterion now also preserves
input data shape. ``where`` is used under the hood as the implementation.
The code below is equivalent to ``df.where(df < 0)``.
.. ipython:: python
dates = pd.date_range('1/1/2000', periods=8)
df = pd.DataFrame(np.random.randn(8, 4),
index=dates, columns=['A', 'B', 'C', 'D'])
df[df < 0]
In addition, ``where`` takes an optional ``other`` argument for replacement of
values where the condition is False, in the returned copy.
.. ipython:: python
df.where(df < 0, -df)
You may wish to set values based on some boolean criteria.
This can be done intuitively like so:
.. ipython:: python
s2 = s.copy()
s2[s2 < 0] = 0
s2
df2 = df.copy()
df2[df2 < 0] = 0
df2
``where`` returns a modified copy of the data.
.. note::
The signature for :func:`DataFrame.where` differs from :func:`numpy.where`.
Roughly ``df1.where(m, df2)`` is equivalent to ``np.where(m, df1, df2)``.
.. ipython:: python
df.where(df < 0, -df) == np.where(df < 0, df, -df)
**Alignment**
Furthermore, ``where`` aligns the input boolean condition (ndarray or DataFrame),
such that partial selection with setting is possible. This is analogous to
partial setting via ``.loc`` (but on the contents rather than the axis labels).
.. ipython:: python
df2 = df.copy()
df2[df2[1:4] > 0] = 3
df2
Where can also accept ``axis`` and ``level`` parameters to align the input when
performing the ``where``.
.. ipython:: python
df2 = df.copy()
df2.where(df2 > 0, df2['A'], axis='index')
This is equivalent to (but faster than) the following.
.. ipython:: python
df2 = df.copy()
df.apply(lambda x, y: x.where(x > 0, y), y=df['A'])
``where`` can accept a callable as condition and ``other`` arguments. The function must
be with one argument (the calling Series or DataFrame) and that returns valid output
as condition and ``other`` argument.
.. ipython:: python
df3 = pd.DataFrame({'A': [1, 2, 3],
'B': [4, 5, 6],
'C': [7, 8, 9]})
df3.where(lambda x: x > 4, lambda x: x + 10)
Mask
~~~~
:meth:`~pandas.DataFrame.mask` is the inverse boolean operation of ``where``.
.. ipython:: python
s.mask(s >= 0)
df.mask(df >= 0)
.. _indexing.np_where:
Setting with enlargement conditionally using :func:`numpy`
----------------------------------------------------------
An alternative to :meth:`~pandas.DataFrame.where` is to use :func:`numpy.where`.
Combined with setting a new column, you can use it to enlarge a DataFrame where the
values are determined conditionally.
Consider you have two choices to choose from in the following DataFrame. And you want to
set a new column color to 'green' when the second column has 'Z'. You can do the
following:
.. ipython:: python
df = pd.DataFrame({'col1': list('ABBC'), 'col2': list('ZZXY')})
df['color'] = np.where(df['col2'] == 'Z', 'green', 'red')
df
If you have multiple conditions, you can use :func:`numpy.select` to achieve that. Say
corresponding to three conditions there are three choice of colors, with a fourth color
as a fallback, you can do the following.
.. ipython:: python
conditions = [
(df['col2'] == 'Z') & (df['col1'] == 'A'),
(df['col2'] == 'Z') & (df['col1'] == 'B'),
(df['col1'] == 'B')
]
choices = ['yellow', 'blue', 'purple']
df['color'] = np.select(conditions, choices, default='black')
df
.. _indexing.query:
The :meth:`~pandas.DataFrame.query` Method
------------------------------------------
:class:`~pandas.DataFrame` objects have a :meth:`~pandas.DataFrame.query`
method that allows selection using an expression.
You can get the value of the frame where column ``b`` has values
between the values of columns ``a`` and ``c``. For example:
.. ipython:: python
n = 10
df = pd.DataFrame(np.random.rand(n, 3), columns=list('abc'))
df
# pure python
df[(df['a'] < df['b']) & (df['b'] < df['c'])]
# query
df.query('(a < b) & (b < c)')
Do the same thing but fall back on a named index if there is no column
with the name ``a``.
.. ipython:: python
df = pd.DataFrame(np.random.randint(n / 2, size=(n, 2)), columns=list('bc'))
df.index.name = 'a'
df
df.query('a < b and b < c')
If instead you don't want to or cannot name your index, you can use the name
``index`` in your query expression:
.. ipython:: python
df = pd.DataFrame(np.random.randint(n, size=(n, 2)), columns=list('bc'))
df
df.query('index < b < c')
.. note::
If the name of your index overlaps with a column name, the column name is
given precedence. For example,
.. ipython:: python
df = pd.DataFrame({'a': np.random.randint(5, size=5)})
df.index.name = 'a'
df.query('a > 2') # uses the column 'a', not the index
You can still use the index in a query expression by using the special
identifier 'index':
.. ipython:: python
df.query('index > 2')
If for some reason you have a column named ``index``, then you can refer to
the index as ``ilevel_0`` as well, but at this point you should consider
renaming your columns to something less ambiguous.
:class:`~pandas.MultiIndex` :meth:`~pandas.DataFrame.query` Syntax
You can also use the levels of a DataFrame with a
:class:~pandas.MultiIndex as if they were columns in the frame:
.. ipython:: python
n = 10 colors = np.random.choice(['red', 'green'], size=n) foods = np.random.choice(['eggs', 'ham'], size=n) colors foods
index = pd.MultiIndex.from_arrays([colors, foods], names=['color', 'food']) df = pd.DataFrame(np.random.randn(n, 2), index=index) df df.query('color == "red"')
If the levels of the MultiIndex are unnamed, you can refer to them using
special names:
.. ipython:: python
df.index.names = [None, None] df df.query('ilevel_0 == "red"')
The convention is ilevel_0, which means "index level 0" for the 0th level
of the index.
:meth:~pandas.DataFrame.query Use Cases
A use case for :meth:`~pandas.DataFrame.query` is when you have a collection of
:class:`~pandas.DataFrame` objects that have a subset of column names (or index
levels/names) in common. You can pass the same query to both frames *without*
having to specify which frame you're interested in querying
.. ipython:: python
df = pd.DataFrame(np.random.rand(n, 3), columns=list('abc'))
df
df2 = pd.DataFrame(np.random.rand(n + 2, 3), columns=df.columns)
df2
expr = '0.0 <= a <= c <= 0.5'
map(lambda frame: frame.query(expr), [df, df2])
:meth:`~pandas.DataFrame.query` Python versus pandas Syntax Comparison
Full numpy-like syntax:
.. ipython:: python
df = pd.DataFrame(np.random.randint(n, size=(n, 3)), columns=list('abc')) df df.query('(a < b) & (b < c)') df[(df['a'] < df['b']) & (df['b'] < df['c'])]
Slightly nicer by removing the parentheses (comparison operators bind tighter
than & and |):
.. ipython:: python
df.query('a < b & b < c')
Use English instead of symbols:
.. ipython:: python
df.query('a < b and b < c')
Pretty close to how you might write it on paper:
.. ipython:: python
df.query('a < b < c')
The in and not in operators
:meth:`~pandas.DataFrame.query` also supports special use of Python's ``in`` and
``not in`` comparison operators, providing a succinct syntax for calling the
``isin`` method of a ``Series`` or ``DataFrame``.
.. ipython:: python
# get all rows where columns "a" and "b" have overlapping values
df = pd.DataFrame({'a': list('aabbccddeeff'), 'b': list('aaaabbbbcccc'),
'c': np.random.randint(5, size=12),
'd': np.random.randint(9, size=12)})
df
df.query('a in b')
# How you'd do it in pure Python
df[df['a'].isin(df['b'])]
df.query('a not in b')
# pure Python
df[~df['a'].isin(df['b'])]
You can combine this with other expressions for very succinct queries:
.. ipython:: python
# rows where cols a and b have overlapping values
# and col c's values are less than col d's
df.query('a in b and c < d')
# pure Python
df[df['b'].isin(df['a']) & (df['c'] < df['d'])]
.. note::
Note that ``in`` and ``not in`` are evaluated in Python, since ``numexpr``
has no equivalent of this operation. However, **only the** ``in``/``not in``
**expression itself** is evaluated in vanilla Python. For example, in the
expression
.. code-block:: python
df.query('a in b + c + d')
``(b + c + d)`` is evaluated by ``numexpr`` and *then* the ``in``
operation is evaluated in plain Python. In general, any operations that can
be evaluated using ``numexpr`` will be.
Special use of the ``==`` operator with ``list`` objects
Comparing a list of values to a column using ==/!= works similarly
to in/not in.
.. ipython:: python
df.query('b == ["a", "b", "c"]')
df[df['b'].isin(["a", "b", "c"])]
df.query('c == [1, 2]')
df.query('c != [1, 2]')
df.query('[1, 2] in c')
df.query('[1, 2] not in c')
df[df['c'].isin([1, 2])]
Boolean operators
You can negate boolean expressions with the word ``not`` or the ``~`` operator.
.. ipython:: python
df = pd.DataFrame(np.random.rand(n, 3), columns=list('abc'))
df['bools'] = np.random.rand(len(df)) > 0.5
df.query('~bools')
df.query('not bools')
df.query('not bools') == df[~df['bools']]
Of course, expressions can be arbitrarily complex too:
.. ipython:: python
# short query syntax
shorter = df.query('a < b < c and (not bools) or bools > 2')
# equivalent in pure Python
longer = df[(df['a'] < df['b'])
& (df['b'] < df['c'])
& (~df['bools'])
| (df['bools'] > 2)]
shorter
longer
shorter == longer
Performance of :meth:`~pandas.DataFrame.query`
DataFrame.query() using numexpr is slightly faster than Python for
large frames.
.. The eval-perf.png figure below was generated with /doc/scripts/eval_performance.py
.. image:: ../_static/query-perf.png
You will only see the performance benefits of using the numexpr engine
with DataFrame.query() if your frame has more than approximately 100,000
rows.
This plot was created using a DataFrame with 3 columns each containing
floating point values generated using numpy.random.randn().
.. ipython:: python
df = pd.DataFrame(np.random.randn(8, 4), index=dates, columns=['A', 'B', 'C', 'D']) df2 = df.copy()
.. _indexing.duplicate:
If you want to identify and remove duplicate rows in a DataFrame, there are
two methods that will help: duplicated and drop_duplicates. Each
takes as an argument the columns to use to identify duplicated rows.
duplicated returns a boolean vector whose length is the number of rows, and which indicates whether a row is duplicated.drop_duplicates removes duplicate rows.By default, the first observed row of a duplicate set is considered unique, but
each method has a keep parameter to specify targets to be kept.
keep='first' (default): mark / drop duplicates except for the first occurrence.keep='last': mark / drop duplicates except for the last occurrence.keep=False: mark / drop all duplicates... ipython:: python
df2 = pd.DataFrame({'a': ['one', 'one', 'two', 'two', 'two', 'three', 'four'], 'b': ['x', 'y', 'x', 'y', 'x', 'x', 'x'], 'c': np.random.randn(7)}) df2 df2.duplicated('a') df2.duplicated('a', keep='last') df2.duplicated('a', keep=False) df2.drop_duplicates('a') df2.drop_duplicates('a', keep='last') df2.drop_duplicates('a', keep=False)
Also, you can pass a list of columns to identify duplications.
.. ipython:: python
df2.duplicated(['a', 'b']) df2.drop_duplicates(['a', 'b'])
To drop duplicates by index value, use Index.duplicated then perform slicing.
The same set of options are available for the keep parameter.
.. ipython:: python
df3 = pd.DataFrame({'a': np.arange(6), 'b': np.random.randn(6)}, index=['a', 'a', 'b', 'c', 'b', 'a']) df3 df3.index.duplicated() df3[~df3.index.duplicated()] df3[~df3.index.duplicated(keep='last')] df3[~df3.index.duplicated(keep=False)]
.. _indexing.dictionarylike:
~pandas.DataFrame.get methodEach of Series or DataFrame have a get method which can return a
default value.
.. ipython:: python
s = pd.Series([1, 2, 3], index=['a', 'b', 'c']) s.get('a') # equivalent to s['a'] s.get('x', default=-1)
.. _indexing.lookup:
Sometimes you want to extract a set of values given a sequence of row labels
and column labels, this can be achieved by pandas.factorize and NumPy indexing.
For heterogeneous column types, we subset columns to avoid unnecessary NumPy conversions:
.. code-block:: python
def pd_lookup_het(df, row_labels, col_labels): rows = df.index.get_indexer(row_labels) cols = df.columns.get_indexer(col_labels) sub = df.take(np.unique(cols), axis=1) sub = sub.take(np.unique(rows), axis=0) rows = sub.index.get_indexer(row_labels) values = sub.melt()["value"] cols = sub.columns.get_indexer(col_labels) flat_index = rows + cols * len(sub) result = values[flat_index] return result
For homogeneous column types, it is fastest to skip column subsetting and go directly to NumPy:
.. code-block:: python
def pd_lookup_hom(df, row_labels, col_labels): rows = df.index.get_indexer(row_labels) df = df.loc[:, sorted(set(col_labels))] cols = df.columns.get_indexer(col_labels) result = df.to_numpy()[rows, cols] return result
Formerly this could be achieved with the dedicated DataFrame.lookup method
which was deprecated in version 1.2.0 and removed in version 2.0.0.
.. _indexing.class:
The pandas :class:~pandas.Index class and its subclasses can be viewed as
implementing an ordered multiset. Duplicates are allowed.
:class:~pandas.Index also provides the infrastructure necessary for
lookups, data alignment, and reindexing. The easiest way to create an
:class:~pandas.Index directly is to pass a list or other sequence to
:class:~pandas.Index:
.. ipython:: python
index = pd.Index(['e', 'd', 'a', 'b']) index 'd' in index
or using numbers:
.. ipython:: python
index = pd.Index([1, 5, 12]) index 5 in index
If no dtype is given, Index tries to infer the dtype from the data.
It is also possible to give an explicit dtype when instantiating an :class:Index:
.. ipython:: python
index = pd.Index(['e', 'd', 'a', 'b'], dtype="string") index index = pd.Index([1, 5, 12], dtype="int8") index index = pd.Index([1, 5, 12], dtype="float32") index
You can also pass a name to be stored in the index:
.. ipython:: python
index = pd.Index(['e', 'd', 'a', 'b'], name='something') index.name
The name, if set, will be shown in the console display:
.. ipython:: python
index = pd.Index(list(range(5)), name='rows') columns = pd.Index(['A', 'B', 'C'], name='cols') df = pd.DataFrame(np.random.randn(5, 3), index=index, columns=columns) df df['A']
.. _indexing.set_metadata:
Setting metadata
Indexes are "mostly immutable", but it is possible to set and change their
``name`` attribute. You can use the ``rename``, ``set_names`` to set these attributes
directly, and they default to returning a copy.
See :ref:`Advanced Indexing <advanced>` for usage of MultiIndexes.
.. ipython:: python
ind = pd.Index([1, 2, 3])
ind.rename("apple")
ind
ind = ind.set_names(["apple"])
ind.name = "bob"
ind
``set_names``, ``set_levels``, and ``set_codes`` also take an optional
``level`` argument
.. ipython:: python
index = pd.MultiIndex.from_product([range(3), ['one', 'two']], names=['first', 'second'])
index
index.levels[1]
index.set_levels(["a", "b"], level=1)
.. _indexing.set_ops:
Set operations on Index objects
The two main operations are union and intersection.
Difference is provided via the .difference() method.
.. ipython:: python
a = pd.Index(['c', 'b', 'a']) b = pd.Index(['c', 'e', 'd']) a.difference(b)
Also available is the symmetric_difference operation, which returns elements
that appear in either idx1 or idx2, but not in both. This is
equivalent to the Index created by idx1.difference(idx2).union(idx2.difference(idx1)),
with duplicates dropped.
.. ipython:: python
idx1 = pd.Index([1, 2, 3, 4]) idx2 = pd.Index([2, 3, 4, 5]) idx1.symmetric_difference(idx2)
.. note::
The resulting index from a set operation will be sorted in ascending order.
When performing :meth:Index.union between indexes with different dtypes, the indexes
must be cast to a common dtype. Typically, though not always, this is object dtype. The
exception is when performing a union between integer and float data. In this case, the
integer values are converted to float
.. ipython:: python
idx1 = pd.Index([0, 1, 2]) idx2 = pd.Index([0.5, 1.5]) idx1.union(idx2)
.. _indexing.missing:
Missing values
.. important::
Even though ``Index`` can hold missing values (``NaN``), it should be avoided
if you do not want any unexpected results. For example, some operations
exclude missing values implicitly.
``Index.fillna`` fills missing values with specified scalar value.
.. ipython:: python
idx1 = pd.Index([1, np.nan, 3, 4])
idx1
idx1.fillna(2)
idx2 = pd.DatetimeIndex([pd.Timestamp('2011-01-01'),
pd.NaT,
pd.Timestamp('2011-01-03')])
idx2
idx2.fillna(pd.Timestamp('2011-01-02'))
Set / reset index
-----------------
Occasionally you will load or create a data set into a DataFrame and want to
add an index after you've already done so. There are a couple of different
ways.
.. _indexing.set_index:
Set an index
~~~~~~~~~~~~
DataFrame has a :meth:`~DataFrame.set_index` method which takes a column name
(for a regular ``Index``) or a list of column names (for a ``MultiIndex``).
To create a new, re-indexed DataFrame:
.. ipython:: python
data = pd.DataFrame({'a': ['bar', 'bar', 'foo', 'foo'],
'b': ['one', 'two', 'one', 'two'],
'c': ['z', 'y', 'x', 'w'],
'd': [1., 2., 3, 4]})
data
indexed1 = data.set_index('c')
indexed1
indexed2 = data.set_index(['a', 'b'])
indexed2
The ``append`` keyword option allow you to keep the existing index and append
the given columns to a MultiIndex:
.. ipython:: python
frame = data.set_index('c', drop=False)
frame = frame.set_index(['a', 'b'], append=True)
frame
Other options in ``set_index`` allow you not drop the index columns.
.. ipython:: python
data.set_index('c', drop=False)
Reset the index
As a convenience, there is a new function on DataFrame called
:meth:~DataFrame.reset_index which transfers the index values into the
DataFrame's columns and sets a simple integer index.
This is the inverse operation of :meth:~DataFrame.set_index.
.. ipython:: python
data data.reset_index()
The output is more similar to a SQL table or a record array. The names for the
columns derived from the index are the ones stored in the names attribute.
You can use the level keyword to remove only a portion of the index:
.. ipython:: python
frame frame.reset_index(level=1)
reset_index takes an optional parameter drop which if true simply
discards the index, instead of putting index values in the DataFrame's columns.
Adding an ad hoc index
You can assign a custom index to the ``index`` attribute:
.. ipython:: python
df_idx = pd.DataFrame(range(4))
df_idx.index = pd.Index([10, 20, 30, 40], name="a")
df_idx
Why does assignment fail when using chained indexing?
:ref:Copy-on-Write <copy_on_write> is the new default with pandas 3.0.
This means that chained indexing will never work.
See :ref:this section <copy_on_write_chained_assignment>
for more context.
.. _indexing.series_assignment:
When assigning a Series to a DataFrame column, pandas performs automatic alignment based on index labels. This is a fundamental behavior that can be surprising to new users who might expect positional assignment.
Key Points:
* Series values are matched to DataFrame rows by index label
* Position/order in the Series doesn't matter
* Missing index labels result in NaN values
* This behavior is consistent across df[col] = series and df.loc[:, col] = series
Examples:
.. ipython:: python
import pandas as pd
# Create a DataFrame
df = pd.DataFrame({'values': [1, 2, 3]}, index=['x', 'y', 'z'])
# Series with matching indices (different order)
s1 = pd.Series([10, 20, 30], index=['z', 'x', 'y'])
df['aligned'] = s1 # Aligns by index, not position
print(df)
# Series with partial index match
s2 = pd.Series([100, 200], index=['x', 'z'])
df['partial'] = s2 # Missing 'y' gets NaN
print(df)
# Series with non-matching indices
s3 = pd.Series([1000, 2000], index=['a', 'b'])
df['nomatch'] = s3 # All values become NaN
print(df)
#Avoiding Confusion:
#If you want positional assignment instead of index alignment:
# reset the Series index to match DataFrame index
df['s1_values'] = s1.reindex(df.index)