doc/source/user_guide/duplicates.rst
.. _duplicates:
Duplicate Labels
:class:Index objects are not required to be unique; you can have duplicate row
or column labels. This may be a bit confusing at first. If you're familiar with
SQL, you know that row labels are similar to a primary key on a table, and you
would never want duplicates in a SQL table. But one of pandas' roles is to clean
messy, real-world data before it goes to some downstream system. And real-world
data has duplicates, even in fields that are supposed to be unique.
This section describes how duplicate labels change the behavior of certain operations, and how prevent duplicates from arising during operations, or to detect them if they do.
.. ipython:: python
import pandas as pd import numpy as np
Consequences of Duplicate Labels
Some pandas methods (:meth:`Series.reindex` for example) just don't work with
duplicates present. The output can't be determined, and so pandas raises.
.. ipython:: python
:okexcept:
:okwarning:
s1 = pd.Series([0, 1, 2], index=["a", "b", "b"])
s1.reindex(["a", "b", "c"])
Other methods, like indexing, can give very surprising results. Typically
indexing with a scalar will *reduce dimensionality*. Slicing a ``DataFrame``
with a scalar will return a ``Series``. Slicing a ``Series`` with a scalar will
return a scalar. But with duplicates, this isn't the case.
.. ipython:: python
df1 = pd.DataFrame([[0, 1, 2], [3, 4, 5]], columns=["A", "A", "B"])
df1
We have duplicates in the columns. If we slice ``'B'``, we get back a ``Series``
.. ipython:: python
df1["B"] # a series
But slicing ``'A'`` returns a ``DataFrame``
.. ipython:: python
df1["A"] # a DataFrame
This applies to row labels as well
.. ipython:: python
df2 = pd.DataFrame({"A": [0, 1, 2]}, index=["a", "a", "b"])
df2
df2.loc["b", "A"] # a scalar
df2.loc["a", "A"] # a Series
Duplicate Label Detection
~~~~~~~~~~~~~~~~~~~~~~~~~
You can check whether an :class:`Index` (storing the row or column labels) is
unique with :attr:`Index.is_unique`:
.. ipython:: python
df2
df2.index.is_unique
df2.columns.is_unique
.. note::
Checking whether an index is unique is somewhat expensive for large datasets.
pandas does cache this result, so re-checking on the same index is very fast.
:meth:`Index.duplicated` will return a boolean ndarray indicating whether a
label is repeated.
.. ipython:: python
df2.index.duplicated()
Which can be used as a boolean filter to drop duplicate rows.
.. ipython:: python
df2.loc[~df2.index.duplicated(), :]
If you need additional logic to handle duplicate labels, rather than just
dropping the repeats, using :meth:`~DataFrame.groupby` on the index is a common
trick. For example, we'll resolve duplicates by taking the average of all rows
with the same label.
.. ipython:: python
df2.groupby(level=0).mean()
.. _duplicates.disallow:
Disallowing Duplicate Labels
~~~~~~~~~~~~~~~~~~~~~~~~~~~~
As noted above, handling duplicates is an important feature when reading in raw
data. That said, you may want to avoid introducing duplicates as part of a data
processing pipeline (from methods like :meth:`pandas.concat`,
:meth:`~DataFrame.rename`, etc.). Both :class:`Series` and :class:`DataFrame`
*disallow* duplicate labels by calling ``.set_flags(allows_duplicate_labels=False)``.
(the default is to allow them). If there are duplicate labels, an exception
will be raised.
.. ipython:: python
:okexcept:
pd.Series([0, 1, 2], index=["a", "b", "b"]).set_flags(allows_duplicate_labels=False)
This applies to both row and column labels for a :class:`DataFrame`
.. ipython:: python
:okexcept:
pd.DataFrame([[0, 1, 2], [3, 4, 5]], columns=["A", "B", "C"],).set_flags(
allows_duplicate_labels=False
)
This attribute can be checked or set with :attr:`~DataFrame.flags.allows_duplicate_labels`,
which indicates whether that object can have duplicate labels.
.. ipython:: python
df = pd.DataFrame({"A": [0, 1, 2, 3]}, index=["x", "y", "X", "Y"]).set_flags(
allows_duplicate_labels=False
)
df
df.flags.allows_duplicate_labels
:meth:`DataFrame.set_flags` can be used to return a new ``DataFrame`` with attributes
like ``allows_duplicate_labels`` set to some value
.. ipython:: python
df2 = df.set_flags(allows_duplicate_labels=True)
df2.flags.allows_duplicate_labels
The new ``DataFrame`` returned is a view on the same data as the old ``DataFrame``.
Or the property can just be set directly on the same object
.. ipython:: python
df2.flags.allows_duplicate_labels = False
df2.flags.allows_duplicate_labels
When processing raw, messy data you might initially read in the messy data
(which potentially has duplicate labels), deduplicate, and then disallow duplicates
going forward, to ensure that your data pipeline doesn't introduce duplicates.
.. code-block:: python
>>> raw = pd.read_csv("...")
>>> deduplicated = raw.groupby(level=0).first() # remove duplicates
>>> deduplicated.flags.allows_duplicate_labels = False # disallow going forward
Setting ``allows_duplicate_labels=False`` on a ``Series`` or ``DataFrame`` with duplicate
labels or performing an operation that introduces duplicate labels on a ``Series`` or
``DataFrame`` that disallows duplicates will raise an
:class:`errors.DuplicateLabelError`.
.. ipython:: python
:okexcept:
df.rename(str.upper)
This error message contains the labels that are duplicated, and the numeric positions
of all the duplicates (including the "original") in the ``Series`` or ``DataFrame``
Duplicate Label Propagation
^^^^^^^^^^^^^^^^^^^^^^^^^^^
In general, disallowing duplicates is "sticky". It's preserved through
operations.
.. ipython:: python
:okexcept:
s1 = pd.Series(0, index=["a", "b"]).set_flags(allows_duplicate_labels=False)
s1
s1.head().rename({"a": "b"})
.. warning::
This is an experimental feature. Currently, many methods fail to
propagate the ``allows_duplicate_labels`` value. In future versions
it is expected that every method taking or returning one or more
DataFrame or Series objects will propagate ``allows_duplicate_labels``.