Intro to data structures¶
We’ll start with a quick, non-comprehensive overview of the fundamental data structures in pandas to get you started. The fundamental behavior about data types, indexing, and axis labeling / alignment apply across all of the objects. To get started, import NumPy and load pandas into your namespace:
In [1]: import numpy as np
In [2]: import pandas as pd
Here is a basic tenet to keep in mind: data alignment is intrinsic. The link between labels and data will not be broken unless done so explicitly by you.
We’ll give a brief intro to the data structures, then consider all of the broad categories of functionality and methods in separate sections.
Series¶
Series
is a one-dimensional labeled array capable of holding any data
type (integers, strings, floating point numbers, Python objects, etc.). The axis
labels are collectively referred to as the index. The basic method to create a Series is to call:
>>> s = pd.Series(data, index=index)
Here, data
can be many different things:
- a Python dict
- an ndarray
- a scalar value (like 5)
The passed index is a list of axis labels. Thus, this separates into a few cases depending on what data is:
From ndarray
If data
is an ndarray, index must be the same length as data. If no
index is passed, one will be created having values [0, ..., len(data) - 1]
.
In [3]: s = pd.Series(np.random.randn(5), index=['a', 'b', 'c', 'd', 'e']) In [4]: s Out[4]: a 0.469112 b -0.282863 c -1.509059 d -1.135632 e 1.212112 dtype: float64 In [5]: s.index Out[5]: Index(['a', 'b', 'c', 'd', 'e'], dtype='object') In [6]: pd.Series(np.random.randn(5)) Out[6]: 0 -0.173215 1 0.119209 2 -1.044236 3 -0.861849 4 -2.104569 dtype: float64
Note
pandas supports non-unique index values. If an operation that does not support duplicate index values is attempted, an exception will be raised at that time. The reason for being lazy is nearly all performance-based (there are many instances in computations, like parts of GroupBy, where the index is not used).
From dict
Series can be instantiated from dicts:
In [7]: d = {'b': 1, 'a': 0, 'c': 2}
In [8]: pd.Series(d)
Out[8]:
b 1
a 0
c 2
dtype: int64
Note
When the data is a dict, and an index is not passed, the Series
index
will be ordered by the dict’s insertion order, if you’re using Python
version >= 3.6 and Pandas version >= 0.23.
If you’re using Python < 3.6 or Pandas < 0.23, and an index is not passed,
the Series
index will be the lexically ordered list of dict keys.
In the example above, if you were on a Python version lower than 3.6 or a
Pandas version lower than 0.23, the Series
would be ordered by the lexical
order of the dict keys (i.e. ['a', 'b', 'c']
rather than ['b', 'a', 'c']
).
If an index is passed, the values in data corresponding to the labels in the index will be pulled out.
In [9]: d = {'a': 0., 'b': 1., 'c': 2.} In [10]: pd.Series(d) Out[10]: a 0.0 b 1.0 c 2.0 dtype: float64 In [11]: pd.Series(d, index=['b', 'c', 'd', 'a']) Out[11]: b 1.0 c 2.0 d NaN a 0.0 dtype: float64
Note
NaN (not a number) is the standard missing data marker used in pandas.
From scalar value
If data
is a scalar value, an index must be
provided. The value will be repeated to match the length of index.
In [12]: pd.Series(5., index=['a', 'b', 'c', 'd', 'e'])
Out[12]:
a 5.0
b 5.0
c 5.0
d 5.0
e 5.0
dtype: float64
Series is ndarray-like¶
Series
acts very similarly to a ndarray
, and is a valid argument to most NumPy functions.
However, operations such as slicing will also slice the index.
In [13]: s[0] Out[13]: 0.4691122999071863 In [14]: s[:3] Out[14]: a 0.469112 b -0.282863 c -1.509059 dtype: float64 In [15]: s[s > s.median()] Out[15]: a 0.469112 e 1.212112 dtype: float64 In [16]: s[[4, 3, 1]] Out[16]: e 1.212112 d -1.135632 b -0.282863 dtype: float64 In [17]: np.exp(s) Out[17]: a 1.598575 b 0.753623 c 0.221118 d 0.321219 e 3.360575 dtype: float64
Note
We will address array-based indexing like s[[4, 3, 1]]
in section.
Like a NumPy array, a pandas Series has a dtype
.
In [18]: s.dtype
Out[18]: dtype('float64')
This is often a NumPy dtype. However, pandas and 3rd-party libraries
extend NumPy’s type system in a few places, in which case the dtype would
be a ExtensionDtype
. Some examples within
pandas are Categorical data and Nullable integer data type. See dtypes
for more.
If you need the actual array backing a Series
, use Series.array
.
In [19]: s.array
Out[19]:
<PandasArray>
[ 0.4691122999071863, -0.2828633443286633, -1.5090585031735124,
-1.1356323710171934, 1.2121120250208506]
Length: 5, dtype: float64
Accessing the array can be useful when you need to do some operation without the index (to disable automatic alignment, for example).
Series.array
will always be an ExtensionArray
.
Briefly, an ExtensionArray is a thin wrapper around one or more concrete arrays like a
numpy.ndarray
. Pandas knows how to take an ExtensionArray
and
store it in a Series
or a column of a DataFrame
.
See dtypes for more.
While Series is ndarray-like, if you need an actual ndarray, then use
Series.to_numpy()
.
In [20]: s.to_numpy()
Out[20]: array([ 0.4691, -0.2829, -1.5091, -1.1356, 1.2121])
Even if the Series is backed by a ExtensionArray
,
Series.to_numpy()
will return a NumPy ndarray.
Series is dict-like¶
A Series is like a fixed-size dict in that you can get and set values by index label:
In [21]: s['a'] Out[21]: 0.4691122999071863 In [22]: s['e'] = 12. In [23]: s Out[23]: a 0.469112 b -0.282863 c -1.509059 d -1.135632 e 12.000000 dtype: float64 In [24]: 'e' in s Out[24]: True In [25]: 'f' in s Out[25]: False
If a label is not contained, an exception is raised:
>>> s['f']
KeyError: 'f'
Using the get
method, a missing label will return None or specified default:
In [26]: s.get('f')
In [27]: s.get('f', np.nan)
Out[27]: nan
See also the section on attribute access.
Vectorized operations and label alignment with Series¶
When working with raw NumPy arrays, looping through value-by-value is usually not necessary. The same is true when working with Series in pandas. Series can also be passed into most NumPy methods expecting an ndarray.
In [28]: s + s Out[28]: a 0.938225 b -0.565727 c -3.018117 d -2.271265 e 24.000000 dtype: float64 In [29]: s * 2 Out[29]: a 0.938225 b -0.565727 c -3.018117 d -2.271265 e 24.000000 dtype: float64 In [30]: np.exp(s) Out[30]: a 1.598575 b 0.753623 c 0.221118 d 0.321219 e 162754.791419 dtype: float64
A key difference between Series and ndarray is that operations between Series automatically align the data based on label. Thus, you can write computations without giving consideration to whether the Series involved have the same labels.
In [31]: s[1:] + s[:-1]
Out[31]:
a NaN
b -0.565727
c -3.018117
d -2.271265
e NaN
dtype: float64
The result of an operation between unaligned Series will have the union of
the indexes involved. If a label is not found in one Series or the other, the
result will be marked as missing NaN
. Being able to write code without doing
any explicit data alignment grants immense freedom and flexibility in
interactive data analysis and research. The integrated data alignment features
of the pandas data structures set pandas apart from the majority of related
tools for working with labeled data.
Note
In general, we chose to make the default result of operations between differently indexed objects yield the union of the indexes in order to avoid loss of information. Having an index label, though the data is missing, is typically important information as part of a computation. You of course have the option of dropping labels with missing data via the dropna function.
Name attribute¶
Series can also have a name
attribute:
In [32]: s = pd.Series(np.random.randn(5), name='something') In [33]: s Out[33]: 0 -0.494929 1 1.071804 2 0.721555 3 -0.706771 4 -1.039575 Name: something, dtype: float64 In [34]: s.name Out[34]: 'something'
The Series name
will be assigned automatically in many cases, in particular
when taking 1D slices of DataFrame as you will see below.
New in version 0.18.0.
You can rename a Series with the pandas.Series.rename()
method.
In [35]: s2 = s.rename("different")
In [36]: s2.name
Out[36]: 'different'
Note that s
and s2
refer to different objects.
DataFrame¶
DataFrame is a 2-dimensional labeled data structure with columns of potentially different types. You can think of it like a spreadsheet or SQL table, or a dict of Series objects. It is generally the most commonly used pandas object. Like Series, DataFrame accepts many different kinds of input:
- Dict of 1D ndarrays, lists, dicts, or Series
- 2-D numpy.ndarray
- Structured or record ndarray
- A
Series
- Another
DataFrame
Along with the data, you can optionally pass index (row labels) and columns (column labels) arguments. If you pass an index and / or columns, you are guaranteeing the index and / or columns of the resulting DataFrame. Thus, a dict of Series plus a specific index will discard all data not matching up to the passed index.
If axis labels are not passed, they will be constructed from the input data based on common sense rules.
Note
When the data is a dict, and columns
is not specified, the DataFrame
columns will be ordered by the dict’s insertion order, if you are using
Python version >= 3.6 and Pandas >= 0.23.
If you are using Python < 3.6 or Pandas < 0.23, and columns
is not
specified, the DataFrame
columns will be the lexically ordered list of dict
keys.
From dict of Series or dicts¶
The resulting index will be the union of the indexes of the various Series. If there are any nested dicts, these will first be converted to Series. If no columns are passed, the columns will be the ordered list of dict keys.
In [37]: d = {'one': pd.Series([1., 2., 3.], index=['a', 'b', 'c']), ....: 'two': pd.Series([1., 2., 3., 4.], index=['a', 'b', 'c', 'd'])} ....: In [38]: df = pd.DataFrame(d) In [39]: df Out[39]: one two a 1.0 1.0 b 2.0 2.0 c 3.0 3.0 d NaN 4.0 In [40]: pd.DataFrame(d, index=['d', 'b', 'a']) Out[40]: one two d NaN 4.0 b 2.0 2.0 a 1.0 1.0 In [41]: pd.DataFrame(d, index=['d', 'b', 'a'], columns=['two', 'three']) Out[41]: two three d 4.0 NaN b 2.0 NaN a 1.0 NaN
The row and column labels can be accessed respectively by accessing the index and columns attributes:
Note
When a particular set of columns is passed along with a dict of data, the passed columns override the keys in the dict.
In [42]: df.index Out[42]: Index(['a', 'b', 'c', 'd'], dtype='object') In [43]: df.columns Out[43]: Index(['one', 'two'], dtype='object')
From dict of ndarrays / lists¶
The ndarrays must all be the same length. If an index is passed, it must
clearly also be the same length as the arrays. If no index is passed, the
result will be range(n)
, where n
is the array length.
In [44]: d = {'one': [1., 2., 3., 4.], ....: 'two': [4., 3., 2., 1.]} ....: In [45]: pd.DataFrame(d) Out[45]: one two 0 1.0 4.0 1 2.0 3.0 2 3.0 2.0 3 4.0 1.0 In [46]: pd.DataFrame(d, index=['a', 'b', 'c', 'd']) Out[46]: one two a 1.0 4.0 b 2.0 3.0 c 3.0 2.0 d 4.0 1.0
From structured or record array¶
This case is handled identically to a dict of arrays.
In [47]: data = np.zeros((2, ), dtype=[('A', 'i4'), ('B', 'f4'), ('C', 'a10')]) In [48]: data[:] = [(1, 2., 'Hello'), (2, 3., "World")] In [49]: pd.DataFrame(data) Out[49]: A B C 0 1 2.0 b'Hello' 1 2 3.0 b'World' In [50]: pd.DataFrame(data, index=['first', 'second']) Out[50]: A B C first 1 2.0 b'Hello' second 2 3.0 b'World' In [51]: pd.DataFrame(data, columns=['C', 'A', 'B']) Out[51]: C A B 0 b'Hello' 1 2.0 1 b'World' 2 3.0
Note
DataFrame is not intended to work exactly like a 2-dimensional NumPy ndarray.
From a list of dicts¶
In [52]: data2 = [{'a': 1, 'b': 2}, {'a': 5, 'b': 10, 'c': 20}] In [53]: pd.DataFrame(data2) Out[53]: a b c 0 1 2 NaN 1 5 10 20.0 In [54]: pd.DataFrame(data2, index=['first', 'second']) Out[54]: a b c first 1 2 NaN second 5 10 20.0 In [55]: pd.DataFrame(data2, columns=['a', 'b']) Out[55]: a b 0 1 2 1 5 10
From a dict of tuples¶
You can automatically create a MultiIndexed frame by passing a tuples dictionary.
In [56]: pd.DataFrame({('a', 'b'): {('A', 'B'): 1, ('A', 'C'): 2},
....: ('a', 'a'): {('A', 'C'): 3, ('A', 'B'): 4},
....: ('a', 'c'): {('A', 'B'): 5, ('A', 'C'): 6},
....: ('b', 'a'): {('A', 'C'): 7, ('A', 'B'): 8},
....: ('b', 'b'): {('A', 'D'): 9, ('A', 'B'): 10}})
....:
Out[56]:
a b
b a c a b
A B 1.0 4.0 5.0 8.0 10.0
C 2.0 3.0 6.0 7.0 NaN
D NaN NaN NaN NaN 9.0
From a Series¶
The result will be a DataFrame with the same index as the input Series, and with one column whose name is the original name of the Series (only if no other column name provided).
Missing data
Much more will be said on this topic in the Missing data
section. To construct a DataFrame with missing data, we use np.nan
to
represent missing values. Alternatively, you may pass a numpy.MaskedArray
as the data argument to the DataFrame constructor, and its masked entries will
be considered missing.
Alternate constructors¶
DataFrame.from_dict
DataFrame.from_dict
takes a dict of dicts or a dict of array-like sequences
and returns a DataFrame. It operates like the DataFrame
constructor except
for the orient
parameter which is 'columns'
by default, but which can be
set to 'index'
in order to use the dict keys as row labels.
In [57]: pd.DataFrame.from_dict(dict([('A', [1, 2, 3]), ('B', [4, 5, 6])]))
Out[57]:
A B
0 1 4
1 2 5
2 3 6
If you pass orient='index'
, the keys will be the row labels. In this
case, you can also pass the desired column names:
In [58]: pd.DataFrame.from_dict(dict([('A', [1, 2, 3]), ('B', [4, 5, 6])]),
....: orient='index', columns=['one', 'two', 'three'])
....:
Out[58]:
one two three
A 1 2 3
B 4 5 6
DataFrame.from_records
DataFrame.from_records
takes a list of tuples or an ndarray with structured
dtype. It works analogously to the normal DataFrame
constructor, except that
the resulting DataFrame index may be a specific field of the structured
dtype. For example:
In [59]: data Out[59]: array([(1, 2., b'Hello'), (2, 3., b'World')], dtype=[('A', '<i4'), ('B', '<f4'), ('C', 'S10')]) In [60]: pd.DataFrame.from_records(data, index='C') Out[60]: A B C b'Hello' 1 2.0 b'World' 2 3.0
Column selection, addition, deletion¶
You can treat a DataFrame semantically like a dict of like-indexed Series objects. Getting, setting, and deleting columns works with the same syntax as the analogous dict operations:
In [61]: df['one']
Out[61]:
a 1.0
b 2.0
c 3.0
d NaN
Name: one, dtype: float64
In [62]: df['three'] = df['one'] * df['two']
In [63]: df['flag'] = df['one'] > 2
In [64]: df
Out[64]:
one two three flag
a 1.0 1.0 1.0 False
b 2.0 2.0 4.0 False
c 3.0 3.0 9.0 True
d NaN 4.0 NaN False
Columns can be deleted or popped like with a dict:
In [65]: del df['two']
In [66]: three = df.pop('three')
In [67]: df
Out[67]:
one flag
a 1.0 False
b 2.0 False
c 3.0 True
d NaN False
When inserting a scalar value, it will naturally be propagated to fill the column:
In [68]: df['foo'] = 'bar'
In [69]: df
Out[69]:
one flag foo
a 1.0 False bar
b 2.0 False bar
c 3.0 True bar
d NaN False bar
When inserting a Series that does not have the same index as the DataFrame, it will be conformed to the DataFrame’s index:
In [70]: df['one_trunc'] = df['one'][:2]
In [71]: df
Out[71]:
one flag foo one_trunc
a 1.0 False bar 1.0
b 2.0 False bar 2.0
c 3.0 True bar NaN
d NaN False bar NaN
You can insert raw ndarrays but their length must match the length of the DataFrame’s index.
By default, columns get inserted at the end. The insert
function is
available to insert at a particular location in the columns:
In [72]: df.insert(1, 'bar', df['one'])
In [73]: df
Out[73]:
one bar flag foo one_trunc
a 1.0 1.0 False bar 1.0
b 2.0 2.0 False bar 2.0
c 3.0 3.0 True bar NaN
d NaN NaN False bar NaN
Assigning new columns in method chains¶
Inspired by dplyr’s
mutate
verb, DataFrame has an assign()
method that allows you to easily create new columns that are potentially
derived from existing columns.
In [74]: iris = pd.read_csv('data/iris.data') In [75]: iris.head() Out[75]: SepalLength SepalWidth PetalLength PetalWidth Name 0 5.1 3.5 1.4 0.2 Iris-setosa 1 4.9 3.0 1.4 0.2 Iris-setosa 2 4.7 3.2 1.3 0.2 Iris-setosa 3 4.6 3.1 1.5 0.2 Iris-setosa 4 5.0 3.6 1.4 0.2 Iris-setosa In [76]: (iris.assign(sepal_ratio=iris['SepalWidth'] / iris['SepalLength']) ....: .head()) ....: Out[76]: SepalLength SepalWidth PetalLength PetalWidth Name sepal_ratio 0 5.1 3.5 1.4 0.2 Iris-setosa 0.686275 1 4.9 3.0 1.4 0.2 Iris-setosa 0.612245 2 4.7 3.2 1.3 0.2 Iris-setosa 0.680851 3 4.6 3.1 1.5 0.2 Iris-setosa 0.673913 4 5.0 3.6 1.4 0.2 Iris-setosa 0.720000
In the example above, we inserted a precomputed value. We can also pass in a function of one argument to be evaluated on the DataFrame being assigned to.
In [77]: iris.assign(sepal_ratio=lambda x: (x['SepalWidth'] / x['SepalLength'])).head()
Out[77]:
SepalLength SepalWidth PetalLength PetalWidth Name sepal_ratio
0 5.1 3.5 1.4 0.2 Iris-setosa 0.686275
1 4.9 3.0 1.4 0.2 Iris-setosa 0.612245
2 4.7 3.2 1.3 0.2 Iris-setosa 0.680851
3 4.6 3.1 1.5 0.2 Iris-setosa 0.673913
4 5.0 3.6 1.4 0.2 Iris-setosa 0.720000
assign
always returns a copy of the data, leaving the original
DataFrame untouched.
Passing a callable, as opposed to an actual value to be inserted, is
useful when you don’t have a reference to the DataFrame at hand. This is
common when using assign
in a chain of operations. For example,
we can limit the DataFrame to just those observations with a Sepal Length
greater than 5, calculate the ratio, and plot:
In [78]: (iris.query('SepalLength > 5')
....: .assign(SepalRatio=lambda x: x.SepalWidth / x.SepalLength,
....: PetalRatio=lambda x: x.PetalWidth / x.PetalLength)
....: .plot(kind='scatter', x='SepalRatio', y='PetalRatio'))
....:
Out[78]: <matplotlib.axes._subplots.AxesSubplot at 0x7f453ca05f90>
Since a function is passed in, the function is computed on the DataFrame being assigned to. Importantly, this is the DataFrame that’s been filtered to those rows with sepal length greater than 5. The filtering happens first, and then the ratio calculations. This is an example where we didn’t have a reference to the filtered DataFrame available.
The function signature for assign
is simply **kwargs
. The keys
are the column names for the new fields, and the values are either a value
to be inserted (for example, a Series
or NumPy array), or a function
of one argument to be called on the DataFrame
. A copy of the original
DataFrame is returned, with the new values inserted.
Changed in version 0.23.0.
Starting with Python 3.6 the order of **kwargs
is preserved. This allows
for dependent assignment, where an expression later in **kwargs
can refer
to a column created earlier in the same assign()
.
In [79]: dfa = pd.DataFrame({"A": [1, 2, 3],
....: "B": [4, 5, 6]})
....:
In [80]: dfa.assign(C=lambda x: x['A'] + x['B'],
....: D=lambda x: x['A'] + x['C'])
....:
Out[80]:
A B C D
0 1 4 5 6
1 2 5 7 9
2 3 6 9 12
In the second expression, x['C']
will refer to the newly created column,
that’s equal to dfa['A'] + dfa['B']
.
To write code compatible with all versions of Python, split the assignment in two.
In [81]: dependent = pd.DataFrame({"A": [1, 1, 1]})
In [82]: (dependent.assign(A=lambda x: x['A'] + 1)
....: .assign(B=lambda x: x['A'] + 2))
....:
Out[82]:
A B
0 2 4
1 2 4
2 2 4
Warning
Dependent assignment may subtly change the behavior of your code between Python 3.6 and older versions of Python.
If you wish to write code that supports versions of python before and after 3.6,
you’ll need to take care when passing assign
expressions that
- Update an existing column
- Refer to the newly updated column in the same
assign
For example, we’ll update column “A” and then refer to it when creating “B”.
>>> dependent = pd.DataFrame({"A": [1, 1, 1]})
>>> dependent.assign(A=lambda x: x["A"] + 1, B=lambda x: x["A"] + 2)
For Python 3.5 and earlier the expression creating B
refers to the
“old” value of A
, [1, 1, 1]
. The output is then
A B
0 2 3
1 2 3
2 2 3
For Python 3.6 and later, the expression creating A
refers to the
“new” value of A
, [2, 2, 2]
, which results in
A B
0 2 4
1 2 4
2 2 4
Indexing / selection¶
The basics of indexing are as follows:
Operation | Syntax | Result |
---|---|---|
Select column | df[col] |
Series |
Select row by label | df.loc[label] |
Series |
Select row by integer location | df.iloc[loc] |
Series |
Slice rows | df[5:10] |
DataFrame |
Select rows by boolean vector | df[bool_vec] |
DataFrame |
Row selection, for example, returns a Series whose index is the columns of the DataFrame:
In [83]: df.loc['b'] Out[83]: one 2 bar 2 flag False foo bar one_trunc 2 Name: b, dtype: object In [84]: df.iloc[2] Out[84]: one 3 bar 3 flag True foo bar one_trunc NaN Name: c, dtype: object
For a more exhaustive treatment of sophisticated label-based indexing and slicing, see the section on indexing. We will address the fundamentals of reindexing / conforming to new sets of labels in the section on reindexing.
Data alignment and arithmetic¶
Data alignment between DataFrame objects automatically align on both the columns and the index (row labels). Again, the resulting object will have the union of the column and row labels.
In [85]: df = pd.DataFrame(np.random.randn(10, 4), columns=['A', 'B', 'C', 'D'])
In [86]: df2 = pd.DataFrame(np.random.randn(7, 3), columns=['A', 'B', 'C'])
In [87]: df + df2
Out[87]:
A B C D
0 0.045691 -0.014138 1.380871 NaN
1 -0.955398 -1.501007 0.037181 NaN
2 -0.662690 1.534833 -0.859691 NaN
3 -2.452949 1.237274 -0.133712 NaN
4 1.414490 1.951676 -2.320422 NaN
5 -0.494922 -1.649727 -1.084601 NaN
6 -1.047551 -0.748572 -0.805479 NaN
7 NaN NaN NaN NaN
8 NaN NaN NaN NaN
9 NaN NaN NaN NaN
When doing an operation between DataFrame and Series, the default behavior is to align the Series index on the DataFrame columns, thus broadcasting row-wise. For example:
In [88]: df - df.iloc[0]
Out[88]:
A B C D
0 0.000000 0.000000 0.000000 0.000000
1 -1.359261 -0.248717 -0.453372 -1.754659
2 0.253128 0.829678 0.010026 -1.991234
3 -1.311128 0.054325 -1.724913 -1.620544
4 0.573025 1.500742 -0.676070 1.367331
5 -1.741248 0.781993 -1.241620 -2.053136
6 -1.240774 -0.869551 -0.153282 0.000430
7 -0.743894 0.411013 -0.929563 -0.282386
8 -1.194921 1.320690 0.238224 -1.482644
9 2.293786 1.856228 0.773289 -1.446531
In the special case of working with time series data, if the DataFrame index contains dates, the broadcasting will be column-wise:
In [89]: index = pd.date_range('1/1/2000', periods=8) In [90]: df = pd.DataFrame(np.random.randn(8, 3), index=index, columns=list('ABC')) In [91]: df Out[91]: A B C 2000-01-01 -1.226825 0.769804 -1.281247 2000-01-02 -0.727707 -0.121306 -0.097883 2000-01-03 0.695775 0.341734 0.959726 2000-01-04 -1.110336 -0.619976 0.149748 2000-01-05 -0.732339 0.687738 0.176444 2000-01-06 0.403310 -0.154951 0.301624 2000-01-07 -2.179861 -1.369849 -0.954208 2000-01-08 1.462696 -1.743161 -0.826591 In [92]: type(df['A']) Out[92]: pandas.core.series.Series In [93]: df - df['A'] Out[93]: 2000-01-01 00:00:00 2000-01-02 00:00:00 2000-01-03 00:00:00 2000-01-04 00:00:00 2000-01-05 00:00:00 2000-01-06 00:00:00 2000-01-07 00:00:00 2000-01-08 00:00:00 A B C 2000-01-01 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-02 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-03 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-04 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-05 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-06 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-07 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN 2000-01-08 NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN
Warning
df - df['A']
is now deprecated and will be removed in a future release. The preferred way to replicate this behavior is
df.sub(df['A'], axis=0)
For explicit control over the matching and broadcasting behavior, see the section on flexible binary operations.
Operations with scalars are just as you would expect:
In [94]: df * 5 + 2 Out[94]: A B C 2000-01-01 -4.134126 5.849018 -4.406237 2000-01-02 -1.638535 1.393469 1.510587 2000-01-03 5.478873 3.708672 6.798628 2000-01-04 -3.551681 -1.099880 2.748742 2000-01-05 -1.661697 5.438692 2.882222 2000-01-06 4.016548 1.225246 3.508122 2000-01-07 -8.899303 -4.849247 -2.771039 2000-01-08 9.313480 -6.715805 -2.132955 In [95]: 1 / df Out[95]: A B C 2000-01-01 -0.815112 1.299033 -0.780489 2000-01-02 -1.374179 -8.243600 -10.216313 2000-01-03 1.437247 2.926250 1.041965 2000-01-04 -0.900628 -1.612966 6.677871 2000-01-05 -1.365487 1.454041 5.667510 2000-01-06 2.479485 -6.453662 3.315381 2000-01-07 -0.458745 -0.730007 -1.047990 2000-01-08 0.683669 -0.573671 -1.209788 In [96]: df ** 4 Out[96]: A B C 2000-01-01 2.265327 0.351172 2.694833 2000-01-02 0.280431 0.000217 0.000092 2000-01-03 0.234355 0.013638 0.848376 2000-01-04 1.519910 0.147740 0.000503 2000-01-05 0.287640 0.223714 0.000969 2000-01-06 0.026458 0.000576 0.008277 2000-01-07 22.579530 3.521204 0.829033 2000-01-08 4.577374 9.233151 0.466834
Boolean operators work as well:
In [97]: df1 = pd.DataFrame({'a': [1, 0, 1], 'b': [0, 1, 1]}, dtype=bool) In [98]: df2 = pd.DataFrame({'a': [0, 1, 1], 'b': [1, 1, 0]}, dtype=bool) In [99]: df1 & df2 Out[99]: a b 0 False False 1 False True 2 True False In [100]: df1 | df2 Out[100]: a b 0 True True 1 True True 2 True True In [101]: df1 ^ df2 Out[101]: a b 0 True True 1 True False 2 False True In [102]: -df1 Out[102]: a b 0 False True 1 True False 2 False False
Transposing¶
To transpose, access the T
attribute (also the transpose
function),
similar to an ndarray:
# only show the first 5 rows
In [103]: df[:5].T
Out[103]:
2000-01-01 2000-01-02 2000-01-03 2000-01-04 2000-01-05
A -1.226825 -0.727707 0.695775 -1.110336 -0.732339
B 0.769804 -0.121306 0.341734 -0.619976 0.687738
C -1.281247 -0.097883 0.959726 0.149748 0.176444
DataFrame interoperability with NumPy functions¶
Elementwise NumPy ufuncs (log, exp, sqrt, …) and various other NumPy functions can be used with no issues on Series and DataFrame, assuming the data within are numeric:
In [104]: np.exp(df) Out[104]: A B C 2000-01-01 0.293222 2.159342 0.277691 2000-01-02 0.483015 0.885763 0.906755 2000-01-03 2.005262 1.407386 2.610980 2000-01-04 0.329448 0.537957 1.161542 2000-01-05 0.480783 1.989212 1.192968 2000-01-06 1.496770 0.856457 1.352053 2000-01-07 0.113057 0.254145 0.385117 2000-01-08 4.317584 0.174966 0.437538 In [105]: np.asarray(df) Out[105]: array([[-1.2268, 0.7698, -1.2812], [-0.7277, -0.1213, -0.0979], [ 0.6958, 0.3417, 0.9597], [-1.1103, -0.62 , 0.1497], [-0.7323, 0.6877, 0.1764], [ 0.4033, -0.155 , 0.3016], [-2.1799, -1.3698, -0.9542], [ 1.4627, -1.7432, -0.8266]])
DataFrame is not intended to be a drop-in replacement for ndarray as its indexing semantics and data model are quite different in places from an n-dimensional array.
Series
implements __array_ufunc__
, which allows it to work with NumPy’s
universal functions.
The ufunc is applied to the underlying array in a Series.
In [106]: ser = pd.Series([1, 2, 3, 4])
In [107]: np.exp(ser)
Out[107]:
0 2.718282
1 7.389056
2 20.085537
3 54.598150
dtype: float64
Changed in version 0.25.0: When multiple Series
are passed to a ufunc, they are aligned before
performing the operation.
Like other parts of the library, pandas will automatically align labeled inputs
as part of a ufunc with multiple inputs. For example, using numpy.remainder()
on two Series
with differently ordered labels will align before the operation.
In [108]: ser1 = pd.Series([1, 2, 3], index=['a', 'b', 'c']) In [109]: ser2 = pd.Series([1, 3, 5], index=['b', 'a', 'c']) In [110]: ser1 Out[110]: a 1 b 2 c 3 dtype: int64 In [111]: ser2 Out[111]: b 1 a 3 c 5 dtype: int64 In [112]: np.remainder(ser1, ser2) Out[112]: a 1 b 0 c 3 dtype: int64
As usual, the union of the two indices is taken, and non-overlapping values are filled with missing values.
In [113]: ser3 = pd.Series([2, 4, 6], index=['b', 'c', 'd']) In [114]: ser3 Out[114]: b 2 c 4 d 6 dtype: int64 In [115]: np.remainder(ser1, ser3) Out[115]: a NaN b 0.0 c 3.0 d NaN dtype: float64
When a binary ufunc is applied to a Series
and Index
, the Series
implementation takes precedence and a Series is returned.
In [116]: ser = pd.Series([1, 2, 3])
In [117]: idx = pd.Index([4, 5, 6])
In [118]: np.maximum(ser, idx)
Out[118]:
0 4
1 5
2 6
dtype: int64
NumPy ufuncs are safe to apply to Series
backed by non-ndarray arrays,
for example SparseArray
(see Sparse calculation). If possible,
the ufunc is applied without converting the underlying data to an ndarray.
Console display¶
Very large DataFrames will be truncated to display them in the console.
You can also get a summary using info()
.
(Here I am reading a CSV version of the baseball dataset from the plyr
R package):
In [119]: baseball = pd.read_csv('data/baseball.csv') In [120]: print(baseball) id player year stint team lg g ab r h X2b X3b hr rbi sb cs bb so ibb hbp sh sf gidp 0 88641 womacto01 2006 2 CHN NL 19 50 6 14 1 0 1 2.0 1.0 1.0 4 4.0 0.0 0.0 3.0 0.0 0.0 1 88643 schilcu01 2006 1 BOS AL 31 2 0 1 0 0 0 0.0 0.0 0.0 0 1.0 0.0 0.0 0.0 0.0 0.0 .. ... ... ... ... ... .. .. ... .. ... ... ... .. ... ... ... .. ... ... ... ... ... ... 98 89533 aloumo01 2007 1 NYN NL 87 328 51 112 19 1 13 49.0 3.0 0.0 27 30.0 5.0 2.0 0.0 3.0 13.0 99 89534 alomasa02 2007 1 NYN NL 8 22 1 3 1 0 0 0.0 0.0 0.0 0 3.0 0.0 0.0 0.0 0.0 0.0 [100 rows x 23 columns] In [121]: baseball.info() <class 'pandas.core.frame.DataFrame'> RangeIndex: 100 entries, 0 to 99 Data columns (total 23 columns): id 100 non-null int64 player 100 non-null object year 100 non-null int64 stint 100 non-null int64 team 100 non-null object lg 100 non-null object g 100 non-null int64 ab 100 non-null int64 r 100 non-null int64 h 100 non-null int64 X2b 100 non-null int64 X3b 100 non-null int64 hr 100 non-null int64 rbi 100 non-null float64 sb 100 non-null float64 cs 100 non-null float64 bb 100 non-null int64 so 100 non-null float64 ibb 100 non-null float64 hbp 100 non-null float64 sh 100 non-null float64 sf 100 non-null float64 gidp 100 non-null float64 dtypes: float64(9), int64(11), object(3) memory usage: 18.1+ KB
However, using to_string
will return a string representation of the
DataFrame in tabular form, though it won’t always fit the console width:
In [122]: print(baseball.iloc[-20:, :12].to_string())
id player year stint team lg g ab r h X2b X3b
80 89474 finlest01 2007 1 COL NL 43 94 9 17 3 0
81 89480 embreal01 2007 1 OAK AL 4 0 0 0 0 0
82 89481 edmonji01 2007 1 SLN NL 117 365 39 92 15 2
83 89482 easleda01 2007 1 NYN NL 76 193 24 54 6 0
84 89489 delgaca01 2007 1 NYN NL 139 538 71 139 30 0
85 89493 cormirh01 2007 1 CIN NL 6 0 0 0 0 0
86 89494 coninje01 2007 2 NYN NL 21 41 2 8 2 0
87 89495 coninje01 2007 1 CIN NL 80 215 23 57 11 1
88 89497 clemero02 2007 1 NYA AL 2 2 0 1 0 0
89 89498 claytro01 2007 2 BOS AL 8 6 1 0 0 0
90 89499 claytro01 2007 1 TOR AL 69 189 23 48 14 0
91 89501 cirilje01 2007 2 ARI NL 28 40 6 8 4 0
92 89502 cirilje01 2007 1 MIN AL 50 153 18 40 9 2
93 89521 bondsba01 2007 1 SFN NL 126 340 75 94 14 0
94 89523 biggicr01 2007 1 HOU NL 141 517 68 130 31 3
95 89525 benitar01 2007 2 FLO NL 34 0 0 0 0 0
96 89526 benitar01 2007 1 SFN NL 19 0 0 0 0 0
97 89530 ausmubr01 2007 1 HOU NL 117 349 38 82 16 3
98 89533 aloumo01 2007 1 NYN NL 87 328 51 112 19 1
99 89534 alomasa02 2007 1 NYN NL 8 22 1 3 1 0
Wide DataFrames will be printed across multiple rows by default:
In [123]: pd.DataFrame(np.random.randn(3, 12))
Out[123]:
0 1 2 3 4 5 6 7 8 9 10 11
0 -0.345352 1.314232 0.690579 0.995761 2.396780 0.014871 3.357427 -0.317441 -1.236269 0.896171 -0.487602 -0.082240
1 -2.182937 0.380396 0.084844 0.432390 1.519970 -0.493662 0.600178 0.274230 0.132885 -0.023688 2.410179 1.450520
2 0.206053 -0.251905 -2.213588 1.063327 1.266143 0.299368 -0.863838 0.408204 -1.048089 -0.025747 -0.988387 0.094055
You can change how much to print on a single row by setting the display.width
option:
In [124]: pd.set_option('display.width', 40) # default is 80
In [125]: pd.DataFrame(np.random.randn(3, 12))
Out[125]:
0 1 2 3 4 5 6 7 8 9 10 11
0 1.262731 1.289997 0.082423 -0.055758 0.536580 -0.489682 0.369374 -0.034571 -2.484478 -0.281461 0.030711 0.109121
1 1.126203 -0.977349 1.474071 -0.064034 -1.282782 0.781836 -1.071357 0.441153 2.353925 0.583787 0.221471 -0.744471
2 0.758527 1.729689 -0.964980 -0.845696 -1.340896 1.846883 -1.328865 1.682706 -1.717693 0.888782 0.228440 0.901805
You can adjust the max width of the individual columns by setting display.max_colwidth
In [126]: datafile = {'filename': ['filename_01', 'filename_02'],
.....: 'path': ["media/user_name/storage/folder_01/filename_01",
.....: "media/user_name/storage/folder_02/filename_02"]}
.....:
In [127]: pd.set_option('display.max_colwidth', 30)
In [128]: pd.DataFrame(datafile)
Out[128]:
filename path
0 filename_01 media/user_name/storage/fo...
1 filename_02 media/user_name/storage/fo...
In [129]: pd.set_option('display.max_colwidth', 100)
In [130]: pd.DataFrame(datafile)
Out[130]:
filename path
0 filename_01 media/user_name/storage/folder_01/filename_01
1 filename_02 media/user_name/storage/folder_02/filename_02
You can also disable this feature via the expand_frame_repr
option.
This will print the table in one block.
DataFrame column attribute access and IPython completion¶
If a DataFrame column label is a valid Python variable name, the column can be accessed like an attribute:
In [131]: df = pd.DataFrame({'foo1': np.random.randn(5), .....: 'foo2': np.random.randn(5)}) .....: In [132]: df Out[132]: foo1 foo2 0 1.171216 -0.858447 1 0.520260 0.306996 2 -1.197071 -0.028665 3 -1.066969 0.384316 4 -0.303421 1.574159 In [133]: df.foo1 Out[133]: 0 1.171216 1 0.520260 2 -1.197071 3 -1.066969 4 -0.303421 Name: foo1, dtype: float64
The columns are also connected to the IPython completion mechanism so they can be tab-completed:
In [5]: df.fo<TAB> # noqa: E225, E999
df.foo1 df.foo2