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The difference between data found in many tutorials and data in the real world is that real-world data is rarely clean and homogeneous. In particular, many interesting datasets will have some amount of data missing. To make matters even more complicated, different data sources may indicate missing data in different ways.
In this section, we will discuss some general considerations for missing data, discuss how Pandas chooses to represent it, and demonstrate some built-in Pandas tools for handling missing data in Python. Here and throughout the book, we'll refer to missing data in general as null, NaN, or NA values.
There are a number of schemes that have been developed to indicate the presence of missing data in a table or DataFrame. Generally, they revolve around one of two strategies: using a mask that globally indicates missing values, or choosing a sentinel value that indicates a missing entry.
In the masking approach, the mask might be an entirely separate Boolean array, or it may involve appropriation of one bit in the data representation to locally indicate the null status of a value.
In the sentinel approach, the sentinel value could be some data-specific convention, such as indicating a missing integer value with -9999 or some rare bit pattern, or it could be a more global convention, such as indicating a missing floating-point value with NaN (Not a Number), a special value which is part of the IEEE floating-point specification.
None of these approaches is without trade-offs: use of a separate mask array requires allocation of an additional Boolean array, which adds overhead in both storage and computation. A sentinel value reduces the range of valid values that can be represented, and may require extra (often non-optimized) logic in CPU and GPU arithmetic. Common special values like NaN are not available for all data types.
As in most cases where no universally optimal choice exists, different languages and systems use different conventions. For example, the R language uses reserved bit patterns within each data type as sentinel values indicating missing data, while the SciDB system uses an extra byte attached to every cell which indicates a NA state.
The way in which Pandas handles missing values is constrained by its reliance on the NumPy package, which does not have a built-in notion of NA values for non-floating-point data types.
Pandas could have followed R's lead in specifying bit patterns for each individual data type to indicate nullness, but this approach turns out to be rather unwieldy. While R contains four basic data types, NumPy supports far more than this: for example, while R has a single integer type, NumPy supports fourteen basic integer types once you account for available precisions, signedness, and endianness of the encoding. Reserving a specific bit pattern in all available NumPy types would lead to an unwieldy amount of overhead in special-casing various operations for various types, likely even requiring a new fork of the NumPy package. Further, for the smaller data types (such as 8-bit integers), sacrificing a bit to use as a mask will significantly reduce the range of values it can represent.
NumPy does have support for masked arrays – that is, arrays that have a separate Boolean mask array attached for marking data as "good" or "bad." Pandas could have derived from this, but the overhead in both storage, computation, and code maintenance makes that an unattractive choice.
With these constraints in mind, Pandas chose to use sentinels for missing data, and further chose to use two already-existing Python null values: the special floating-point NaN
value, and the Python None
object.
This choice has some side effects, as we will see, but in practice ends up being a good compromise in most cases of interest.
None
: Pythonic missing dataThe first sentinel value used by Pandas is None
, a Python singleton object that is often used for missing data in Python code.
Because it is a Python object, None
cannot be used in any arbitrary NumPy/Pandas array, but only in arrays with data type 'object'
(i.e., arrays of Python objects):
In [1]:
import numpy as np
import pandas as pd
In [2]:
vals1 = np.array([1, None, 3, 4])
vals1
Out[2]:
This dtype=object
means that the best common type representation NumPy could infer for the contents of the array is that they are Python objects.
While this kind of object array is useful for some purposes, any operations on the data will be done at the Python level, with much more overhead than the typically fast operations seen for arrays with native types:
In [3]:
for dtype in ['object', 'int']:
print("dtype =", dtype)
%timeit np.arange(1E6, dtype=dtype).sum()
print()
The use of Python objects in an array also means that if you perform aggregations like sum()
or min()
across an array with a None
value, you will generally get an error:
In [4]:
vals1.sum()
This reflects the fact that addition between an integer and None
is undefined.
In [5]:
vals2 = np.array([1, np.nan, 3, 4])
vals2.dtype
Out[5]:
Notice that NumPy chose a native floating-point type for this array: this means that unlike the object array from before, this array supports fast operations pushed into compiled code.
You should be aware that NaN
is a bit like a data virus–it infects any other object it touches.
Regardless of the operation, the result of arithmetic with NaN
will be another NaN
:
In [6]:
1 + np.nan
Out[6]:
In [7]:
0 * np.nan
Out[7]:
Note that this means that aggregates over the values are well defined (i.e., they don't result in an error) but not always useful:
In [8]:
vals2.sum(), vals2.min(), vals2.max()
Out[8]:
NumPy does provide some special aggregations that will ignore these missing values:
In [9]:
np.nansum(vals2), np.nanmin(vals2), np.nanmax(vals2)
Out[9]:
Keep in mind that NaN
is specifically a floating-point value; there is no equivalent NaN value for integers, strings, or other types.
In [10]:
pd.Series([1, np.nan, 2, None])
Out[10]:
For types that don't have an available sentinel value, Pandas automatically type-casts when NA values are present.
For example, if we set a value in an integer array to np.nan
, it will automatically be upcast to a floating-point type to accommodate the NA:
In [11]:
x = pd.Series(range(2), dtype=int)
x
Out[11]:
In [12]:
x[0] = None
x
Out[12]:
Notice that in addition to casting the integer array to floating point, Pandas automatically converts the None
to a NaN
value.
(Be aware that there is a proposal to add a native integer NA to Pandas in the future; as of this writing, it has not been included).
While this type of magic may feel a bit hackish compared to the more unified approach to NA values in domain-specific languages like R, the Pandas sentinel/casting approach works quite well in practice and in my experience only rarely causes issues.
The following table lists the upcasting conventions in Pandas when NA values are introduced:
Typeclass | Conversion When Storing NAs | NA Sentinel Value |
---|---|---|
floating |
No change | np.nan |
object |
No change | None or np.nan |
integer |
Cast to float64 |
np.nan |
boolean |
Cast to object |
None or np.nan |
Keep in mind that in Pandas, string data is always stored with an object
dtype.
As we have seen, Pandas treats None
and NaN
as essentially interchangeable for indicating missing or null values.
To facilitate this convention, there are several useful methods for detecting, removing, and replacing null values in Pandas data structures.
They are:
isnull()
: Generate a boolean mask indicating missing valuesnotnull()
: Opposite of isnull()
dropna()
: Return a filtered version of the datafillna()
: Return a copy of the data with missing values filled or imputedWe will conclude this section with a brief exploration and demonstration of these routines.
In [13]:
data = pd.Series([1, np.nan, 'hello', None])
In [14]:
data.isnull()
Out[14]:
As mentioned in Data Indexing and Selection, Boolean masks can be used directly as a Series
or DataFrame
index:
In [15]:
data[data.notnull()]
Out[15]:
The isnull()
and notnull()
methods produce similar Boolean results for DataFrame
s.
In [16]:
data.dropna()
Out[16]:
For a DataFrame
, there are more options.
Consider the following DataFrame
:
In [17]:
df = pd.DataFrame([[1, np.nan, 2],
[2, 3, 5],
[np.nan, 4, 6]])
df
Out[17]:
We cannot drop single values from a DataFrame
; we can only drop full rows or full columns.
Depending on the application, you might want one or the other, so dropna()
gives a number of options for a DataFrame
.
By default, dropna()
will drop all rows in which any null value is present:
In [18]:
df.dropna()
Out[18]:
Alternatively, you can drop NA values along a different axis; axis=1
drops all columns containing a null value:
In [19]:
df.dropna(axis='columns')
Out[19]:
But this drops some good data as well; you might rather be interested in dropping rows or columns with all NA values, or a majority of NA values.
This can be specified through the how
or thresh
parameters, which allow fine control of the number of nulls to allow through.
The default is how='any'
, such that any row or column (depending on the axis
keyword) containing a null value will be dropped.
You can also specify how='all'
, which will only drop rows/columns that are all null values:
In [20]:
df[3] = np.nan
df
Out[20]:
In [21]:
df.dropna(axis='columns', how='all')
Out[21]:
For finer-grained control, the thresh
parameter lets you specify a minimum number of non-null values for the row/column to be kept:
In [22]:
df.dropna(axis='rows', thresh=3)
Out[22]:
Here the first and last row have been dropped, because they contain only two non-null values.
Sometimes rather than dropping NA values, you'd rather replace them with a valid value.
This value might be a single number like zero, or it might be some sort of imputation or interpolation from the good values.
You could do this in-place using the isnull()
method as a mask, but because it is such a common operation Pandas provides the fillna()
method, which returns a copy of the array with the null values replaced.
Consider the following Series
:
In [23]:
data = pd.Series([1, np.nan, 2, None, 3], index=list('abcde'))
data
Out[23]:
We can fill NA entries with a single value, such as zero:
In [24]:
data.fillna(0)
Out[24]:
We can specify a forward-fill to propagate the previous value forward:
In [25]:
# forward-fill
data.fillna(method='ffill')
Out[25]:
Or we can specify a back-fill to propagate the next values backward:
In [26]:
# back-fill
data.fillna(method='bfill')
Out[26]:
For DataFrame
s, the options are similar, but we can also specify an axis
along which the fills take place:
In [27]:
df
Out[27]:
In [28]:
df.fillna(method='ffill', axis=1)
Out[28]:
Notice that if a previous value is not available during a forward fill, the NA value remains.