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DataFrame(
data=None,
index: vendored_pandas_typing.Axes | None = None,
columns: vendored_pandas_typing.Axes | None = None,
dtype: typing.Optional[
bigframes.dtypes.DtypeString | bigframes.dtypes.Dtype
] = None,
copy: typing.Optional[bool] = None,
*,
session: typing.Optional[bigframes.session.Session] = None
)
Two-dimensional, size-mutable, potentially heterogeneous tabular data.
Data structure also contains labeled axes (rows and columns). Arithmetic operations align on both row and column labels. Can be thought of as a dict-like container for Series objects. The primary pandas data structure.
Properties
T
The transpose of the DataFrame.
All columns must be the same dtype (numerics can be coerced to a common supertype).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df
col1 col2
0 1 3
1 2 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df.T
0 1
col1 1 2
col2 3 4
<BLANKLINE>
[2 rows x 2 columns]
Returns | |
---|---|
Type | Description |
DataFrame |
The transposed DataFrame. |
at
Access a single value for a row/column label pair.
Examples:
>>> import bigframes.pandas as bpd
>>> df = bpd.DataFrame([[0, 2, 3], [0, 4, 1], [10, 20, 30]],
... index=[4, 5, 6], columns=['A', 'B', 'C'])
>>> bpd.options.display.progress_bar = None
>>> df
A B C
4 0 2 3
5 0 4 1
6 10 20 30
<BLANKLINE>
[3 rows x 3 columns]
Get value at specified row/column pair
>>> df.at[4, 'B']
np.int64(2)
Get value within a series
>>> df.loc[5].at['B']
np.int64(4)
Returns | |
---|---|
Type | Description |
bigframes.core.indexers.AtDataFrameIndexer |
Indexers object. |
bqclient
BigQuery REST API Client the DataFrame uses for operations.
columns
The column labels of the DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can access the column labels of a DataFrame via columns
property.
>>> df = bpd.DataFrame({'Name': ['Alice', 'Bob', 'Aritra'],
... 'Age': [25, 30, 35],
... 'Location': ['Seattle', 'New York', 'Kona']},
... index=([10, 20, 30]))
>>> df
Name Age Location
10 Alice 25 Seattle
20 Bob 30 New York
30 Aritra 35 Kona
<BLANKLINE>
[3 rows x 3 columns]
>>> df.columns
Index(['Name', 'Age', 'Location'], dtype='object')
You can also set new labels for columns.
>>> df.columns = ["NewName", "NewAge", "NewLocation"]
>>> df
NewName NewAge NewLocation
10 Alice 25 Seattle
20 Bob 30 New York
30 Aritra 35 Kona
<BLANKLINE>
[3 rows x 3 columns]
>>> df.columns
Index(['NewName', 'NewAge', 'NewLocation'], dtype='object')
dtypes
Return the dtypes in the DataFrame.
This returns a Series with the data type of each column. The result's index is the original DataFrame's columns. Columns with mixed types aren't supported yet in BigQuery DataFrames.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'float': [1.0], 'int': [1], 'string': ['foo']})
>>> df.dtypes
float Float64
int Int64
string string[pyarrow]
dtype: object
empty
Indicates whether Series/DataFrame is empty.
True if Series/DataFrame is entirely empty (no items), meaning any of the axes are of length 0.
Returns | |
---|---|
Type | Description |
bool |
If Series/DataFrame is empty, return True, if not return False. |
iat
Access a single value for a row/column pair by integer position.
Examples:
>>> import bigframes.pandas as bpd
>>> df = bpd.DataFrame([[0, 2, 3], [0, 4, 1], [10, 20, 30]],
... columns=['A', 'B', 'C'])
>>> bpd.options.display.progress_bar = None
>>> df
A B C
0 0 2 3
1 0 4 1
2 10 20 30
<BLANKLINE>
[3 rows x 3 columns]
Get value at specified row/column pair
>>> df.iat[1, 2]
np.int64(1)
Get value within a series
>>> df.loc[0].iat[1]
np.int64(2)
Returns | |
---|---|
Type | Description |
bigframes.core.indexers.IatDataFrameIndexer |
Indexers object. |
iloc
Purely integer-location based indexing for selection by position.
Returns | |
---|---|
Type | Description |
bigframes.core.indexers.ILocDataFrameIndexer |
Purely integer-location Indexers. |
index
The index (row labels) of the DataFrame.
The index of a DataFrame is a series of labels that identify each row. The labels can be integers, strings, or any other hashable type. The index is used for label-based access and alignment, and can be accessed or modified using this attribute.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can access the index of a DataFrame via index
property.
>>> df = bpd.DataFrame({'Name': ['Alice', 'Bob', 'Aritra'],
... 'Age': [25, 30, 35],
... 'Location': ['Seattle', 'New York', 'Kona']},
... index=([10, 20, 30]))
>>> df
Name Age Location
10 Alice 25 Seattle
20 Bob 30 New York
30 Aritra 35 Kona
<BLANKLINE>
[3 rows x 3 columns]
>>> df.index # doctest: +ELLIPSIS
Index([10, 20, 30], dtype='Int64')
>>> df.index.values
array([10, 20, 30])
Let's try setting a new index for the dataframe and see that reflect via
index
property.
>>> df1 = df.set_index(["Name", "Location"])
>>> df1
Age
Name Location
Alice Seattle 25
Bob New York 30
Aritra Kona 35
<BLANKLINE>
[3 rows x 1 columns]
>>> df1.index # doctest: +ELLIPSIS
MultiIndex([( 'Alice', 'Seattle'),
( 'Bob', 'New York'),
('Aritra', 'Kona')],
names=['Name', 'Location'])
>>> df1.index.values
array([('Alice', 'Seattle'), ('Bob', 'New York'), ('Aritra', 'Kona')],
dtype=object)
Returns | |
---|---|
Type | Description |
Index |
The index object of the DataFrame. |
loc
Access a group of rows and columns by label(s) or a boolean array.
Returns | |
---|---|
Type | Description |
bigframes.core.indexers.ILocDataFrameIndexer |
Indexers object. |
ndim
Return an int representing the number of axes / array dimensions.
Returns | |
---|---|
Type | Description |
int |
Return 1 if Series. Otherwise return 2 if DataFrame. |
plot
Make plots of Dataframes.
Returns | |
---|---|
Type | Description |
bigframes.operations.plotting.PlotAccessor |
An accessor making plots. |
query_job
BigQuery job metadata for the most recent query.
shape
Return a tuple representing the dimensionality of the DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2, 3],
... 'col2': [4, 5, 6]})
>>> df.shape
(3, 2)
size
Return an int representing the number of elements in this object.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> s = bpd.Series({'a': 1, 'b': 2, 'c': 3})
>>> s.size
3
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.size
4
Returns | |
---|---|
Type | Description |
int |
Return the number of rows if Series. Otherwise return the number of rows times number of columns if DataFrame. |
sql
Compiles this DataFrame's expression tree to SQL.
struct
API documentation for struct
property.
values
Return the values of DataFrame in the form of a NumPy array.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.values
array([[1, 3],
[2, 4]], dtype=object)
Methods
__add__
__add__(other) -> bigframes.dataframe.DataFrame
Get addition of DataFrame and other, column-wise, using arithmatic
operator +
.
Equivalent to DataFrame.add(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'height': [1.5, 2.6],
... 'weight': [500, 800]
... },
... index=['elk', 'moose'])
>>> df
height weight
elk 1.5 500
moose 2.6 800
<BLANKLINE>
[2 rows x 2 columns]
Adding a scalar affects all rows and columns.
>>> df + 1.5
height weight
elk 3.0 501.5
moose 4.1 801.5
<BLANKLINE>
[2 rows x 2 columns]
You can add another DataFrame with index and columns aligned.
>>> delta = bpd.DataFrame({
... 'height': [0.5, 0.9],
... 'weight': [50, 80]
... },
... index=['elk', 'moose'])
>>> df + delta
height weight
elk 2.0 550
moose 3.5 880
<BLANKLINE>
[2 rows x 2 columns]
Adding any mis-aligned index and columns will result in invalid values.
>>> delta = bpd.DataFrame({
... 'depth': [0.5, 0.9, 1.0],
... 'weight': [50, 80, 100]
... },
... index=['elk', 'moose', 'bison'])
>>> df + delta
depth height weight
elk <NA> <NA> 550
moose <NA> <NA> 880
bison <NA> <NA> <NA>
<BLANKLINE>
[3 rows x 3 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be added to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of adding other to DataFrame. |
__and__
__and__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise AND of DataFrame and other, element-wise, using operator &
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise AND with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
__array__
__array__(dtype=None) -> numpy.ndarray
Returns the rows as NumPy array.
Equivalent to DataFrame.to_numpy(dtype)
.
Users should not call this directly. Rather, it is invoked by
numpy.array
and numpy.asarray
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> import numpy as np
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [11, 22, 33]})
>>> np.array(df)
array([[1, 11],
[2, 22],
[3, 33]], dtype=object)
>>> np.asarray(df)
array([[1, 11],
[2, 22],
[3, 33]], dtype=object)
Parameter | |
---|---|
Name | Description |
dtype |
str or numpy.dtype, optional
The dtype to use for the resulting NumPy array. By default, the dtype is inferred from the data. |
Returns | |
---|---|
Type | Description |
numpy.ndarray |
The rows in the DataFrame converted to a numpy.ndarray with the specified dtype. |
__array_ufunc__
__array_ufunc__(
ufunc: numpy.ufunc, method: str, *inputs, **kwargs
) -> bigframes.dataframe.DataFrame
Used to support numpy ufuncs. See: https://numpy.org/doc/stable/reference/ufuncs.html
__eq__
__eq__(other) -> bigframes.dataframe.DataFrame
Check equality of DataFrame and other, element-wise, using logical
operator ==
.
Equivalent to DataFrame.eq(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, 3, 4],
... 'b': [360, 0, 180]
... })
>>> df == 0
a b
0 True False
1 False True
2 False False
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame for equality. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__floordiv__
__floordiv__(other)
Get integer divison of DataFrame by other, using arithmatic operator //
.
Equivalent to DataFrame.floordiv(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can divide by a scalar:
>>> df = bpd.DataFrame({"a": [15, 15, 15], "b": [30, 30, 30]})
>>> df // 2
a b
0 7 15
1 7 15
2 7 15
<BLANKLINE>
[3 rows x 2 columns]
You can also divide by another DataFrame with index and column labels aligned:
>>> divisor = bpd.DataFrame({"a": [2, 3, 4], "b": [5, 6, 7]})
>>> df // divisor
a b
0 7 6
1 5 5
2 3 4
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to divide the DataFrame by. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the integer divison. |
__ge__
__ge__(other) -> bigframes.dataframe.DataFrame
Check whether DataFrame is greater than or equal to other, element-wise,
using logical operator >=
.
Equivalent to DataFrame.ge(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, -1, 1],
... 'b': [1, 0, -1]
... })
>>> df >= 0
a b
0 True True
1 False True
2 True False
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__getitem__
__getitem__(
key: typing.Union[
typing.Hashable,
typing.Sequence[typing.Hashable],
pandas.core.indexes.base.Index,
bigframes.series.Series,
]
)
Gets the specified column(s) from the DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... "name" : ["alpha", "beta", "gamma"],
... "age": [20, 30, 40],
... "location": ["WA", "NY", "CA"]
... })
>>> df
name age location
0 alpha 20 WA
1 beta 30 NY
2 gamma 40 CA
<BLANKLINE>
[3 rows x 3 columns]
You can specify a column label to retrieve the corresponding Series.
>>> df["name"]
0 alpha
1 beta
2 gamma
Name: name, dtype: string
You can specify a list of column labels to retrieve a Dataframe.
>>> df[["name", "age"]]
name age
0 alpha 20
1 beta 30
2 gamma 40
<BLANKLINE>
[3 rows x 2 columns]
You can specify a condition as a series of booleans to retrieve matching rows.
>>> df[df["age"] > 25]
name age location
1 beta 30 NY
2 gamma 40 CA
<BLANKLINE>
[2 rows x 3 columns]
You can specify a pandas Index with desired column labels.
>>> import pandas as pd
>>> df[pd.Index(["age", "location"])]
age location
0 20 WA
1 30 NY
2 40 CA
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
key |
index
Index or list of indices. It can be a column label, a list of column labels, a Series of booleans or a pandas Index of desired column labels |
Returns | |
---|---|
Type | Description |
Series or Value |
Value(s) at the requested index(es). |
__gt__
__gt__(other) -> bigframes.dataframe.DataFrame
Check whether DataFrame is greater than other, element-wise, using logical
operator >
.
Equivalent to DataFrame.gt(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, -1, 1],
... 'b': [1, 0, -1]
... })
>>> df > 0
a b
0 False True
1 False False
2 True False
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__invert__
__invert__() -> bigframes.dataframe.DataFrame
Returns the bitwise inversion of the DataFrame, element-wise using operator ````.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'a':[True, False, True], 'b':[-1, 0, 1]})
>>> `df`
a b
0 False 0
1 True -1
2 False -2
<BLANKLINE>
[3 rows x 2 columns]
Returns | |
---|---|
Type | Description |
DataFrame |
The result of inverting elements in the input. |
__le__
__le__(other) -> bigframes.dataframe.DataFrame
Check whether DataFrame is less than or equal to other, element-wise,
using logical operator <=
.
Equivalent to DataFrame.le(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, -1, 1],
... 'b': [1, 0, -1]
... })
>>> df <= 0
a b
0 True False
1 True True
2 False True
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__len__
__len__()
Returns number of rows in the DataFrame, serves len
operator.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, 1, 2],
... 'b': [3, 4, 5]
... })
>>> len(df)
3
__lt__
__lt__(other) -> bigframes.dataframe.DataFrame
Check whether DataFrame is less than other, element-wise, using logical
operator <
.
Equivalent to DataFrame.lt(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, -1, 1],
... 'b': [1, 0, -1]
... })
>>> df < 0
a b
0 False False
1 True False
2 False True
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__matmul__
__matmul__(other) -> bigframes.dataframe.DataFrame
Compute the matrix multiplication between the DataFrame and other, using
operator @
.
Equivalent to DataFrame.dot(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> left = bpd.DataFrame([[0, 1, -2, -1], [1, 1, 1, 1]])
>>> left
0 1 2 3
0 0 1 -2 -1
1 1 1 1 1
<BLANKLINE>
[2 rows x 4 columns]
>>> right = bpd.DataFrame([[0, 1], [1, 2], [-1, -1], [2, 0]])
>>> right
0 1
0 0 1
1 1 2
2 -1 -1
3 2 0
<BLANKLINE>
[4 rows x 2 columns]
>>> left @ right
0 1
0 1 4
1 2 2
<BLANKLINE>
[2 rows x 2 columns]
The operand can be a Series, in which case the result will also be a Series:
>>> right = bpd.Series([1, 2, -1,0])
>>> left @ right
0 4
1 2
dtype: Int64
Parameter | |
---|---|
Name | Description |
other |
DataFrame or Series
Object to be matrix multiplied with the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame or Series |
The result of the matrix multiplication. |
__mod__
__mod__(other)
Get modulo of DataFrame with other, element-wise, using operator %
.
Equivalent to DataFrame.mod(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can modulo with a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df % 3
a b
0 1 1
1 2 2
2 0 0
<BLANKLINE>
[3 rows x 2 columns]
You can also modulo with another DataFrame with index and column labels aligned:
>>> modulo = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df % modulo
a b
0 1 1
1 0 2
2 1 0
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to modulo the DataFrame by. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the modulo. |
__mul__
__mul__(other)
Get multiplication of DataFrame with other, element-wise, using operator *
.
Equivalent to DataFrame.mul(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can multiply with a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df * 3
a b
0 3 12
1 6 15
2 9 18
<BLANKLINE>
[3 rows x 2 columns]
You can also multiply with another DataFrame with index and column labels aligned:
>>> df1 = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df * df1
a b
0 2 12
1 4 15
2 6 18
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to multiply with the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the multiplication. |
__ne__
__ne__(other) -> bigframes.dataframe.DataFrame
Check inequality of DataFrame and other, element-wise, using logical
operator !=
.
Equivalent to DataFrame.ne(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'a': [0, 3, 4],
... 'b': [360, 0, 180]
... })
>>> df != 0
a b
0 False True
1 True False
2 True True
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be compared to the DataFrame for inequality. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of comparing other to DataFrame. |
__or__
__or__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise OR of DataFrame and other, element-wise, using operator |
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise OR with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
__pow__
__pow__(other)
Get exponentiation of DataFrame with other, element-wise, using operator
**
.
Equivalent to DataFrame.pow(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can exponentiate with a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df ** 2
a b
0 1 16
1 4 25
2 9 36
<BLANKLINE>
[3 rows x 2 columns]
You can also exponentiate with another DataFrame with index and column labels aligned:
>>> exponent = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df ** exponent
a b
0 1 64
1 4 125
2 9 216
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to exponentiate the DataFrame with. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the exponentiation. |
__radd__
__radd__(other) -> bigframes.dataframe.DataFrame
Get addition of DataFrame and other, column-wise, using arithmatic
operator +
.
Equivalent to DataFrame.add(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'height': [1.5, 2.6],
... 'weight': [500, 800]
... },
... index=['elk', 'moose'])
>>> df
height weight
elk 1.5 500
moose 2.6 800
<BLANKLINE>
[2 rows x 2 columns]
Adding a scalar affects all rows and columns.
>>> df + 1.5
height weight
elk 3.0 501.5
moose 4.1 801.5
<BLANKLINE>
[2 rows x 2 columns]
You can add another DataFrame with index and columns aligned.
>>> delta = bpd.DataFrame({
... 'height': [0.5, 0.9],
... 'weight': [50, 80]
... },
... index=['elk', 'moose'])
>>> df + delta
height weight
elk 2.0 550
moose 3.5 880
<BLANKLINE>
[2 rows x 2 columns]
Adding any mis-aligned index and columns will result in invalid values.
>>> delta = bpd.DataFrame({
... 'depth': [0.5, 0.9, 1.0],
... 'weight': [50, 80, 100]
... },
... index=['elk', 'moose', 'bison'])
>>> df + delta
depth height weight
elk <NA> <NA> 550
moose <NA> <NA> 880
bison <NA> <NA> <NA>
<BLANKLINE>
[3 rows x 3 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to be added to the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of adding other to DataFrame. |
__rand__
__rand__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise AND of DataFrame and other, element-wise, using operator &
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise AND with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
__repr__
__repr__() -> str
Converts a DataFrame to a string. Calls to_pandas.
Only represents the first <xref uid="bigframes.options">bigframes.options</xref>.display.max_rows
.
__rfloordiv__
__rfloordiv__(other)
Get integer divison of other by DataFrame.
Equivalent to DataFrame.rfloordiv(other)
.
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to divide by the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the integer divison. |
__rmod__
__rmod__(other)
Get integer divison of other by DataFrame.
Equivalent to DataFrame.rmod(other)
.
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to modulo by the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the modulo. |
__rmul__
__rmul__(other)
Get multiplication of DataFrame with other, element-wise, using operator *
.
Equivalent to DataFrame.rmul(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can multiply with a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df * 3
a b
0 3 12
1 6 15
2 9 18
<BLANKLINE>
[3 rows x 2 columns]
You can also multiply with another DataFrame with index and column labels aligned:
>>> df1 = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df * df1
a b
0 2 12
1 4 15
2 6 18
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to multiply the DataFrame with. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the multiplication. |
__ror__
__ror__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise OR of DataFrame and other, element-wise, using operator |
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise OR with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
__rpow__
__rpow__(other)
Get exponentiation of other with DataFrame, element-wise, using operator
**
.
Equivalent to DataFrame.rpow(other)
.
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to exponentiate with the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the exponentiation. |
__rsub__
__rsub__(other)
Get subtraction of DataFrame from other, element-wise, using operator -
.
Equivalent to DataFrame.rsub(other)
.
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to subtract the DataFrame from. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the subtraction. |
__rtruediv__
__rtruediv__(other)
Get division of other by DataFrame, element-wise, using operator /
.
Equivalent to DataFrame.rtruediv(other)
.
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to divide by the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the division. |
__rxor__
__rxor__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise XOR of DataFrame and other, element-wise, using operator ^
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise XOR with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
__setitem__
__setitem__(key: str, value: SingleItemValue)
Modify or insert a column into the DataFrame.
Examples:>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... "name" : ["alpha", "beta", "gamma"],
... "age": [20, 30, 40],
... "location": ["WA", "NY", "CA"]
... })
>>> df
name age location
0 alpha 20 WA
1 beta 30 NY
2 gamma 40 CA
<BLANKLINE>
[3 rows x 3 columns]
You can add assign a constant to a new column.
>>> df["country"] = "USA"
>>> df
name age location country
0 alpha 20 WA USA
1 beta 30 NY USA
2 gamma 40 CA USA
<BLANKLINE>
[3 rows x 4 columns]
You can assign a Series to a new column.
>>> df["new_age"] = df["age"] + 5
>>> df
name age location country new_age
0 alpha 20 WA USA 25
1 beta 30 NY USA 35
2 gamma 40 CA USA 45
<BLANKLINE>
[3 rows x 5 columns]
You can assign a Series to an existing column.
>>> df["new_age"] = bpd.Series([29, 39, 19], index=[1, 2, 0])
>>> df
name age location country new_age
0 alpha 20 WA USA 19
1 beta 30 NY USA 29
2 gamma 40 CA USA 39
<BLANKLINE>
[3 rows x 5 columns]
Parameters | |
---|---|
Name | Description |
key |
column index
It can be a new column to be inserted, or an existing column to be modified. |
value |
scalar or Series
Value to be assigned to the column |
__sub__
__sub__(other)
Get subtraction of other from DataFrame, element-wise, using operator -
.
Equivalent to DataFrame.sub(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can subtract a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df - 2
a b
0 -1 2
1 0 3
2 1 4
<BLANKLINE>
[3 rows x 2 columns]
You can also subtract another DataFrame with index and column labels aligned:
>>> df1 = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df - df1
a b
0 -1 1
1 0 2
2 1 3
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to subtract from the DataFrame. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the subtraction. |
__truediv__
__truediv__(other)
Get division of DataFrame by other, element-wise, using operator /
.
Equivalent to DataFrame.truediv(other)
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can multiply with a scalar:
>>> df = bpd.DataFrame({"a": [1, 2, 3], "b": [4, 5, 6]})
>>> df / 2
a b
0 0.5 2.0
1 1.0 2.5
2 1.5 3.0
<BLANKLINE>
[3 rows x 2 columns]
You can also multiply with another DataFrame with index and column labels aligned:
>>> denominator = bpd.DataFrame({"a": [2, 2, 2], "b": [3, 3, 3]})
>>> df / denominator
a b
0 0.5 1.333333
1 1.0 1.666667
2 1.5 2.0
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
scalar or DataFrame
Object to divide the DataFrame by. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of the division. |
__xor__
__xor__(
other: bool | int | bigframes.series.Series,
) -> bigframes.dataframe.DataFrame
Get bitwise XOR of DataFrame and other, element-wise, using operator ^
.
Parameter | |
---|---|
Name | Description |
other |
scalar, Series or DataFrame
Object to bitwise XOR with the DataFrame. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
The result of the operation. |
abs
abs() -> bigframes.dataframe.DataFrame
Return a Series/DataFrame with absolute numeric value of each element.
This function only applies to elements that are all numeric.
add
add(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get addition of DataFrame and other, element-wise (binary operator +
).
Equivalent to dataframe + other
. With reverse version, radd
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].add(df['B'])
0 5
1 7
2 9
dtype: Int64
You can also use arithmetic operator +
:
>>> df['A'] + df['B']
0 5
1 7
2 9
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
add_prefix
add_prefix(
prefix: str, axis: int | str | None = None
) -> bigframes.dataframe.DataFrame
Prefix labels with string prefix
.
For Series, the row labels are prefixed. For DataFrame, the column labels are prefixed.
Parameters | |
---|---|
Name | Description |
prefix |
str
The string to add before each label. |
axis |
int or str or None, default None
|
add_suffix
add_suffix(
suffix: str, axis: int | str | None = None
) -> bigframes.dataframe.DataFrame
Suffix labels with string suffix
.
For Series, the row labels are suffixed. For DataFrame, the column labels are suffixed.
agg
agg(
func: typing.Union[str, typing.Sequence[str]]
) -> bigframes.dataframe.DataFrame | bigframes.series.Series
Aggregate using one or more operations over columns.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
Using a single function:
>>> df.agg('sum')
A 6
B 6
dtype: Int64
Using a list of functions:
>>> df.agg(['sum', 'mean'])
A B
sum 6.0 6.0
mean 2.0 2.0
<BLANKLINE>
[2 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
func |
function
Function to use for aggregating the data. Accepted combinations are: string function name, list of function names, e.g. |
Returns | |
---|---|
Type | Description |
DataFrame or bigframes.series.Series |
Aggregated results. |
aggregate
aggregate(
func: typing.Union[str, typing.Sequence[str]]
) -> bigframes.dataframe.DataFrame | bigframes.series.Series
Aggregate using one or more operations over columns.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
Using a single function:
>>> df.agg('sum')
A 6
B 6
dtype: Int64
Using a list of functions:
>>> df.agg(['sum', 'mean'])
A B
sum 6.0 6.0
mean 2.0 2.0
<BLANKLINE>
[2 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
func |
function
Function to use for aggregating the data. Accepted combinations are: string function name, list of function names, e.g. |
Returns | |
---|---|
Type | Description |
DataFrame or bigframes.series.Series |
Aggregated results. |
align
align(
other: typing.Union[bigframes.dataframe.DataFrame, bigframes.series.Series],
join: str = "outer",
axis: typing.Optional[typing.Union[str, int]] = None,
) -> typing.Tuple[
typing.Union[bigframes.dataframe.DataFrame, bigframes.series.Series],
typing.Union[bigframes.dataframe.DataFrame, bigframes.series.Series],
]
Align two objects on their axes with the specified join method.
Join method is specified for each axis Index.
Parameters | |
---|---|
Name | Description |
join |
{'outer', 'inner', 'left', 'right'}, default 'outer'
Type of alignment to be performed. left: use only keys from left frame, preserve key order. right: use only keys from right frame, preserve key order. outer: use union of keys from both frames, sort keys lexicographically. inner: use intersection of keys from both frames, preserve the order of the left keys. |
axis |
allowed axis of the other object, default None
Align on index (0), columns (1), or both (None). |
Returns | |
---|---|
Type | Description |
tuple of (DataFrame, type of other) |
Aligned objects. |
all
all(
axis: typing.Union[str, int] = 0, *, bool_only: bool = False
) -> bigframes.series.Series
Return whether all elements are True, potentially over an axis.
Returns True unless there at least one element within a Series or along a DataFrame axis that is False or equivalent (e.g. zero or empty).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [True, True], "B": [False, False]})
>>> df
A B
0 True False
1 True False
<BLANKLINE>
[2 rows x 2 columns]
Checking if all values in each column are True(the default behavior without an explicit axis parameter):
>>> df.all()
A True
B False
dtype: boolean
Checking across rows to see if all values are True:
>>> df.all(axis=1)
0 False
1 False
dtype: boolean
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
bool_only |
bool. default False
Include only boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series indicating if all elements are True per column. |
any
any(
*, axis: typing.Union[str, int] = 0, bool_only: bool = False
) -> bigframes.series.Series
Return whether any element is True, potentially over an axis.
Returns False unless there is at least one element within a series or along a Dataframe axis that is True or equivalent (e.g. non-zero or non-empty).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [True, True], "B": [False, False]})
>>> df
A B
0 True False
1 True False
<BLANKLINE>
[2 rows x 2 columns]
Checking if each column contains at least one True element(the default behavior without an explicit axis parameter):
>>> df.any()
A True
B False
dtype: boolean
Checking if each row contains at least one True element:
>>> df.any(axis=1)
0 True
1 True
dtype: boolean
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
bool_only |
bool. default False
Include only boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series indicating if any element is True per column. |
apply
apply(func, *, axis=0, args: typing.Tuple = (), **kwargs)
Apply a function along an axis of the DataFrame.
Objects passed to the function are Series objects whose index is
the DataFrame's index (axis=0
) or the DataFrame's columns (axis=1
).
The final return type is inferred from the return type of the applied
function.
>>> import bigframes.pandas as bpd
>>> import pandas as pd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df
col1 col2
0 1 3
1 2 4
<BLANKLINE>
[2 rows x 2 columns]
>>> def square(x):
... return x * x
>>> df.apply(square)
col1 col2
0 1 9
1 4 16
<BLANKLINE>
[2 rows x 2 columns]
You could apply a user defined function to every row of the DataFrame by
creating a remote function out of it, and using it with axis=1
. Within
the function, each row is passed as a pandas.Series
. It is recommended
to select only the necessary columns before calling apply()
. Note: This
feature is currently in preview.
>>> @bpd.remote_function(reuse=False)
... def foo(row: pd.Series) -> int:
... result = 1
... result += row["col1"]
... result += row["col2"]*row["col2"]
... return result
>>> df[["col1", "col2"]].apply(foo, axis=1)
0 11
1 19
dtype: Int64
You could also apply a remote function which accepts multiple parameters
to every row of a DataFrame by using it with axis=1
if the DataFrame
has matching number of columns and data types. Note: This feature is
currently in preview.
>>> df = bpd.DataFrame({
... 'col1': [1, 2],
... 'col2': [3, 4],
... 'col3': [5, 5]
... })
>>> df
col1 col2 col3
0 1 3 5
1 2 4 5
<BLANKLINE>
[2 rows x 3 columns]
>>> @bpd.remote_function(reuse=False)
... def foo(x: int, y: int, z: int) -> float:
... result = 1
... result += x
... result += y/z
... return result
>>> df.apply(foo, axis=1)
0 2.6
1 3.8
dtype: Float64
Parameters | |
---|---|
Name | Description |
args |
tuple
Positional arguments to pass to |
func |
function
Function to apply to each column or row. To apply to each row (i.e. when |
axis |
{index (0), columns (1)}
Axis along which the function is applied. Specify 0 or 'index' to apply function to each column. Specify 1 or 'columns' to apply function to each row. |
Returns | |
---|---|
Type | Description |
pandas.Series or bigframes.DataFrame |
Result of applying func along the given axis of the DataFrame. |
applymap
applymap(
func, na_action: typing.Optional[str] = None
) -> bigframes.dataframe.DataFrame
Apply a function to a Dataframe elementwise.
This method applies a function that accepts and returns a scalar to every element of a DataFrame.
Examples:>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Let's use reuse=False
flag to make sure a new remote_function
is created every time we run the following code, but you can skip it
to potentially reuse a previously deployed remote_function
from
the same user defined function.
>>> @bpd.remote_function(reuse=False)
... def minutes_to_hours(x: int) -> float:
... return x/60
>>> df_minutes = bpd.DataFrame(
... {"system_minutes" : [0, 30, 60, 90, 120],
... "user_minutes" : [0, 15, 75, 90, 6]})
>>> df_minutes
system_minutes user_minutes
0 0 0
1 30 15
2 60 75
3 90 90
4 120 6
<BLANKLINE>
[5 rows x 2 columns]
>>> df_hours = df_minutes.map(minutes_to_hours)
>>> df_hours
system_minutes user_minutes
0 0.0 0.0
1 0.5 0.25
2 1.0 1.25
3 1.5 1.5
4 2.0 0.1
<BLANKLINE>
[5 rows x 2 columns]
If there are NA
/None
values in the data, you can ignore
applying the remote function on such values by specifying
na_action='ignore'
.
>>> df_minutes = bpd.DataFrame(
... {
... "system_minutes" : [0, 30, 60, None, 90, 120, bpd.NA],
... "user_minutes" : [0, 15, 75, 90, 6, None, bpd.NA]
... }, dtype="Int64")
>>> df_hours = df_minutes.map(minutes_to_hours, na_action='ignore')
>>> df_hours
system_minutes user_minutes
0 0.0 0.0
1 0.5 0.25
2 1.0 1.25
3 <NA> 1.5
4 1.5 0.1
5 2.0 <NA>
6 <NA> <NA>
<BLANKLINE>
[7 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
func |
function
Python function wrapped by |
na_action |
Optional[str], default None
|
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Transformed DataFrame. |
assign
assign(**kwargs) -> bigframes.dataframe.DataFrame
Assign new columns to a DataFrame.
Returns a new object with all original columns in addition to new ones. Existing columns that are re-assigned will be overwritten.
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
A new DataFrame with the new columns in addition to all the existing columns. |
astype
astype(
dtype: typing.Union[
typing.Literal[
"boolean",
"Float64",
"Int64",
"int64[pyarrow]",
"string",
"string[pyarrow]",
"timestamp[us, tz=UTC][pyarrow]",
"timestamp[us][pyarrow]",
"date32[day][pyarrow]",
"time64[us][pyarrow]",
"decimal128(38, 9)[pyarrow]",
"decimal256(76, 38)[pyarrow]",
"binary[pyarrow]",
],
pandas.core.arrays.boolean.BooleanDtype,
pandas.core.arrays.floating.Float64Dtype,
pandas.core.arrays.integer.Int64Dtype,
pandas.core.arrays.string_.StringDtype,
pandas.core.dtypes.dtypes.ArrowDtype,
geopandas.array.GeometryDtype,
]
) -> bigframes.dataframe.DataFrame
Cast a pandas object to a specified dtype dtype
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Create a DataFrame:
>>> d = {'col1': [1, 2], 'col2': [3, 4]}
>>> df = bpd.DataFrame(data=d)
>>> df.dtypes
col1 Int64
col2 Int64
dtype: object
Cast all columns to Float64
:
>>> df.astype('Float64').dtypes
col1 Float64
col2 Float64
dtype: object
Create a series of type Int64
:
>>> ser = bpd.Series([2023010000246789, 1624123244123101, 1054834234120101], dtype='Int64')
>>> ser
0 2023010000246789
1 1624123244123101
2 1054834234120101
dtype: Int64
Convert to Float64
type:
>>> ser.astype('Float64')
0 2023010000246789.0
1 1624123244123101.0
2 1054834234120101.0
dtype: Float64
Convert to pd.ArrowDtype(pa.timestamp("us", tz="UTC"))
type:
>>> ser.astype("timestamp[us, tz=UTC][pyarrow]")
0 2034-02-08 11:13:20.246789+00:00
1 2021-06-19 17:20:44.123101+00:00
2 2003-06-05 17:30:34.120101+00:00
dtype: timestamp[us, tz=UTC][pyarrow]
Note that this is equivalent of using to_datetime
with unit='us'
:
>>> bpd.to_datetime(ser, unit='us', utc=True)
0 2034-02-08 11:13:20.246789+00:00
1 2021-06-19 17:20:44.123101+00:00
2 2003-06-05 17:30:34.120101+00:00
dtype: timestamp[us, tz=UTC][pyarrow]
Convert pd.ArrowDtype(pa.timestamp("us", tz="UTC"))
type to Int64
type:
>>> timestamp_ser = ser.astype("timestamp[us, tz=UTC][pyarrow]")
>>> timestamp_ser.astype('Int64')
0 2023010000246789
1 1624123244123101
2 1054834234120101
dtype: Int64
Parameter | |
---|---|
Name | Description |
dtype |
str or pandas.ExtensionDtype
A dtype supported by BigQuery DataFrame include |
bfill
bfill(*, limit: typing.Optional[int] = None) -> bigframes.dataframe.DataFrame
Fill NA/NaN values by using the next valid observation to fill the gap.
Returns | |
---|---|
Type | Description |
Series/DataFrame or None |
Object with missing values filled. |
cache
cache()
Materializes the DataFrame to a temporary table.
Useful if the dataframe will be used multiple times, as this will avoid recomputating the shared intermediate value.
Returns | |
---|---|
Type | Description |
DataFrame |
Self |
combine
combine(
other: bigframes.dataframe.DataFrame,
func: typing.Callable[
[bigframes.series.Series, bigframes.series.Series], bigframes.series.Series
],
fill_value=None,
overwrite: bool = True,
*,
how: str = "outer"
) -> bigframes.dataframe.DataFrame
Perform column-wise combine with another DataFrame.
Combines a DataFrame with other
DataFrame using func
to element-wise combine columns. The row and column indexes of the
resulting DataFrame will be the union of the two.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df1 = bpd.DataFrame({'A': [0, 0], 'B': [4, 4]})
>>> df2 = bpd.DataFrame({'A': [1, 1], 'B': [3, 3]})
>>> take_smaller = lambda s1, s2: s1 if s1.sum() < s2.sum() else s2
>>> df1.combine(df2, take_smaller)
A B
0 0 3
1 0 3
<BLANKLINE>
[2 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
other |
DataFrame
The DataFrame to merge column-wise. |
func |
function
Function that takes two series as inputs and return a Series or a scalar. Used to merge the two dataframes column by columns. |
fill_value |
scalar value, default None
The value to fill NaNs with prior to passing any column to the merge func. |
overwrite |
bool, default True
If True, columns in |
Returns | |
---|---|
Type | Description |
DataFrame |
Combination of the provided DataFrames. |
combine_first
combine_first(other: bigframes.dataframe.DataFrame)
Update null elements with value in the same location in other
.
Combine two DataFrame objects by filling null values in one DataFrame with non-null values from other DataFrame. The row and column indexes of the resulting DataFrame will be the union of the two. The resulting dataframe contains the 'first' dataframe values and overrides the second one values where both first.loc[index, col] and second.loc[index, col] are not missing values, upon calling first.combine_first(second).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df1 = bpd.DataFrame({'A': [None, 0], 'B': [None, 4]})
>>> df2 = bpd.DataFrame({'A': [1, 1], 'B': [3, 3]})
>>> df1.combine_first(df2)
A B
0 1.0 3.0
1 0.0 4.0
<BLANKLINE>
[2 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
other |
DataFrame
Provided DataFrame to use to fill null values. |
Returns | |
---|---|
Type | Description |
DataFrame |
The result of combining the provided DataFrame with the other object. |
copy
copy() -> bigframes.dataframe.DataFrame
Make a copy of this object's indices and data.
A new object will be created with a copy of the calling object's data and indices. Modifications to the data or indices of the copy will not be reflected in the original object.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Modification in the original Series will not affect the copy Series:
>>> s = bpd.Series([1, 2], index=["a", "b"])
>>> s
a 1
b 2
dtype: Int64
>>> s_copy = s.copy()
>>> s_copy
a 1
b 2
dtype: Int64
>>> s.loc['b'] = 22
>>> s
a 1
b 22
dtype: Int64
>>> s_copy
a 1
b 2
dtype: Int64
Modification in the original DataFrame will not affect the copy DataFrame:
>>> df = bpd.DataFrame({'a': [1, 3], 'b': [2, 4]})
>>> df
a b
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df_copy = df.copy()
>>> df_copy
a b
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df.loc[df["b"] == 2, "b"] = 22
>>> df
a b
0 1 22
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df_copy
a b
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
corr
corr(
method="pearson", min_periods=None, numeric_only=False
) -> bigframes.dataframe.DataFrame
Compute pairwise correlation of columns, excluding NA/null values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 2, 3],
... 'B': [400, 500, 600],
... 'C': [0.8, 0.4, 0.9]})
>>> df.corr(numeric_only=True)
A B C
A 1.0 1.0 0.188982
B 1.0 1.0 0.188982
C 0.188982 0.188982 1.0
<BLANKLINE>
[3 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
method |
string, default "pearson"
Correlation method to use - currently only "pearson" is supported. |
min_periods |
int, default None
The minimum number of observations needed to return a result. Non-default values are not yet supported, so a result will be returned for at least two observations. |
numeric_only |
bool, default False
Include only float, int, boolean, decimal data. |
Returns | |
---|---|
Type | Description |
DataFrame |
Correlation matrix. |
count
count(*, numeric_only: bool = False) -> bigframes.series.Series
Count non-NA cells for each column.
The values None
, NaN
, NaT
, and optionally numpy.inf
(depending
on pandas.options.mode.use_inf_as_na
) are considered NA.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, None, 3, 4, 5],
... "B": [1, 2, 3, 4, 5],
... "C": [None, 3.5, None, 4.5, 5.0]})
>>> df
A B C
0 1.0 1 <NA>
1 <NA> 2 3.5
2 3.0 3 <NA>
3 4.0 4 4.5
4 5.0 5 5.0
<BLANKLINE>
[5 rows x 3 columns]
Counting non-NA values for each column:
>>> df.count()
A 4
B 5
C 3
dtype: Int64
Parameter | |
---|---|
Name | Description |
numeric_only |
bool, default False
Include only |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
For each column/row the number of non-NA/null entries. If level is specified returns a DataFrame . |
cov
cov(*, numeric_only: bool = False) -> bigframes.dataframe.DataFrame
Compute pairwise covariance of columns, excluding NA/null values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 2, 3],
... 'B': [400, 500, 600],
... 'C': [0.8, 0.4, 0.9]})
>>> df.cov(numeric_only=True)
A B C
A 1.0 100.0 0.05
B 100.0 10000.0 5.0
C 0.05 5.0 0.07
<BLANKLINE>
[3 rows x 3 columns]
Parameter | |
---|---|
Name | Description |
numeric_only |
bool, default False
Include only float, int, boolean, decimal data. |
Returns | |
---|---|
Type | Description |
DataFrame |
The covariance matrix of the series of the DataFrame. |
cummax
cummax() -> bigframes.dataframe.DataFrame
Return cumulative maximum over columns.
Returns a DataFrame of the same size containing the cumulative maximum.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.cummax()
A B
0 3 1
1 3 2
2 3 3
<BLANKLINE>
[3 rows x 2 columns]
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Return cumulative maximum of DataFrame. |
cummin
cummin() -> bigframes.dataframe.DataFrame
Return cumulative minimum over columns.
Returns a DataFrame of the same size containing the cumulative minimum.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.cummin()
A B
0 3 1
1 1 1
2 1 1
<BLANKLINE>
[3 rows x 2 columns]
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Return cumulative minimum of DataFrame. |
cumprod
cumprod() -> bigframes.dataframe.DataFrame
Return cumulative product over columns.
Returns a DataFrame of the same size containing the cumulative product.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.cumprod()
A B
0 3.0 1.0
1 3.0 2.0
2 6.0 6.0
<BLANKLINE>
[3 rows x 2 columns]
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Return cumulative product of DataFrame. |
cumsum
cumsum()
Return cumulative sum over columns.
Returns a DataFrame of the same size containing the cumulative sum.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.cumsum()
A B
0 3 1
1 4 3
2 6 6
<BLANKLINE>
[3 rows x 2 columns]
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Return cumulative sum of DataFrame. |
describe
describe(
include: typing.Union[None, typing.Literal["all"]] = None
) -> bigframes.dataframe.DataFrame
Generate descriptive statistics.
Descriptive statistics include those that summarize the central
tendency, dispersion and shape of a
dataset's distribution, excluding NaN
values.
Only supports numeric columns.
Examples:>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [0, 2, 8]})
>>> df
A B
0 3 0
1 1 2
2 2 8
<BLANKLINE>
[3 rows x 2 columns]
>>> df.describe()
A B
count 3.0 3.0
mean 2.0 3.333333
std 1.0 4.163332
min 1.0 0.0
25% 1.0 0.0
50% 2.0 2.0
75% 3.0 8.0
max 3.0 8.0
<BLANKLINE>
[8 rows x 2 columns]
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Summary statistics of the Series or Dataframe provided. |
diff
diff(periods: int = 1) -> bigframes.dataframe.DataFrame
First discrete difference of element.
Calculates the difference of a DataFrame element compared with another element in the DataFrame (default is element in previous row).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
Calculating difference with default periods=1:
>>> df.diff()
A B
0 <NA> <NA>
1 -2 1
2 1 1
<BLANKLINE>
[3 rows x 2 columns]
Calculating difference with periods=-1:
>>> df.diff(periods=-1)
A B
0 2 -1
1 -1 -1
2 <NA> <NA>
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
periods |
int, default 1
Periods to shift for calculating difference, accepts negative values. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
First differences of the Series. |
div
div(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get floating division of DataFrame and other, element-wise (binary operator /
).
Equivalent to dataframe / other
. With reverse version, rtruediv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].truediv(df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
You can also use arithmetic operator /
:
>>> df['A'] / (df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
divide
divide(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get floating division of DataFrame and other, element-wise (binary operator /
).
Equivalent to dataframe / other
. With reverse version, rtruediv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].truediv(df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
You can also use arithmetic operator /
:
>>> df['A'] / (df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
dot
dot(other: _DataFrameOrSeries) -> _DataFrameOrSeries
Compute the matrix multiplication between the DataFrame and other.
This method computes the matrix product between the DataFrame and the values of an other Series or DataFrame.
It can also be called using self @ other
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> left = bpd.DataFrame([[0, 1, -2, -1], [1, 1, 1, 1]])
>>> left
0 1 2 3
0 0 1 -2 -1
1 1 1 1 1
<BLANKLINE>
[2 rows x 4 columns]
>>> right = bpd.DataFrame([[0, 1], [1, 2], [-1, -1], [2, 0]])
>>> right
0 1
0 0 1
1 1 2
2 -1 -1
3 2 0
<BLANKLINE>
[4 rows x 2 columns]
>>> left.dot(right)
0 1
0 1 4
1 2 2
<BLANKLINE>
[2 rows x 2 columns]
You can also use the operator @
for the dot product:
>>> left @ right
0 1
0 1 4
1 2 2
<BLANKLINE>
[2 rows x 2 columns]
The right input can be a Series, in which case the result will also be a Series:
>>> right = bpd.Series([1, 2, -1,0])
>>> left @ right
0 4
1 2
dtype: Int64
Any user defined index of the left matrix and columns of the right matrix will reflect in the result.
>>> left = bpd.DataFrame([[1, 2, 3], [2, 5, 7]], index=["alpha", "beta"])
>>> left
0 1 2
alpha 1 2 3
beta 2 5 7
<BLANKLINE>
[2 rows x 3 columns]
>>> right = bpd.DataFrame([[2, 4, 8], [1, 5, 10], [3, 6, 9]], columns=["red", "green", "blue"])
>>> right
red green blue
0 2 4 8
1 1 5 10
2 3 6 9
<BLANKLINE>
[3 rows x 3 columns]
>>> left.dot(right)
red green blue
alpha 13 32 55
beta 30 75 129
<BLANKLINE>
[2 rows x 3 columns]
Parameter | |
---|---|
Name | Description |
other |
Series or DataFrame
The other object to compute the matrix product with. |
Returns | |
---|---|
Type | Description |
Series or DataFrame |
If other is a Series, return the matrix product between self and other as a Series. If other is a DataFrame, return the matrix product of self and other in a DataFrame. |
drop
drop(
labels: typing.Any = None,
*,
axis: typing.Union[int, str] = 0,
index: typing.Any = None,
columns: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = None,
level: typing.Optional[typing.Hashable] = None
) -> bigframes.dataframe.DataFrame
Drop specified labels from columns.
Remove columns by directly specifying column names.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame(np.arange(12).reshape(3, 4),
... columns=['A', 'B', 'C', 'D'])
>>> df
A B C D
0 0 1 2 3
1 4 5 6 7
2 8 9 10 11
<BLANKLINE>
[3 rows x 4 columns]
Drop columns:
>>> df.drop(['B', 'C'], axis=1)
A D
0 0 3
1 4 7
2 8 11
<BLANKLINE>
[3 rows x 2 columns]
>>> df.drop(columns=['B', 'C'])
A D
0 0 3
1 4 7
2 8 11
<BLANKLINE>
[3 rows x 2 columns]
Drop a row by index:
>>> df.drop([0, 1])
A B C D
2 8 9 10 11
<BLANKLINE>
[1 rows x 4 columns]
Drop columns and/or rows of MultiIndex DataFrame:
>>> import pandas as pd
>>> midx = pd.MultiIndex(levels=[['llama', 'cow', 'falcon'],
... ['speed', 'weight', 'length']],
... codes=[[0, 0, 0, 1, 1, 1, 2, 2, 2],
... [0, 1, 2, 0, 1, 2, 0, 1, 2]])
>>> df = bpd.DataFrame(index=midx, columns=['big', 'small'],
... data=[[45, 30], [200, 100], [1.5, 1], [30, 20],
... [250, 150], [1.5, 0.8], [320, 250],
... [1, 0.8], [0.3, 0.2]])
>>> df
big small
llama speed 45.0 30.0
weight 200.0 100.0
length 1.5 1.0
cow speed 30.0 20.0
weight 250.0 150.0
length 1.5 0.8
falcon speed 320.0 250.0
weight 1.0 0.8
length 0.3 0.2
<BLANKLINE>
[9 rows x 2 columns]
Drop a specific index and column combination from the MultiIndex
DataFrame, i.e., drop the index 'cow'
and column 'small'
:
>>> df.drop(index='cow', columns='small')
big
llama speed 45.0
weight 200.0
length 1.5
falcon speed 320.0
weight 1.0
length 0.3
<BLANKLINE>
[6 rows x 1 columns]
>>> df.drop(index='length', level=1)
big small
llama speed 45.0 30.0
weight 200.0 100.0
cow speed 30.0 20.0
weight 250.0 150.0
falcon speed 320.0 250.0
weight 1.0 0.8
<BLANKLINE>
[6 rows x 2 columns]
Exceptions | |
---|---|
Type | Description |
KeyError |
If any of the labels is not found in the selected axis. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame without the removed column labels. |
drop_duplicates
drop_duplicates(
subset: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = None,
*,
keep: str = "first"
) -> bigframes.dataframe.DataFrame
Return DataFrame with duplicate rows removed.
Considering certain columns is optional. Indexes, including time indexes are ignored.
Parameters | |
---|---|
Name | Description |
subset |
column label or sequence of labels, optional
Only consider certain columns for identifying duplicates, by default use all of the columns. |
keep |
{'first', 'last',
Determines which duplicates (if any) to keep. - 'first' : Drop duplicates except for the first occurrence. - 'last' : Drop duplicates except for the last occurrence. - |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame with duplicates removed |
droplevel
droplevel(
level: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
axis: int | str = 0,
)
Return DataFrame with requested index / column level(s) removed.
Parameters | |
---|---|
Name | Description |
level |
int, str, or list-like
If a string is given, must be the name of a level If list-like, elements must be names or positional indexes of levels. |
axis |
{0 or 'index', 1 or 'columns'}, default 0
Axis along which the level(s) is removed: * 0 or 'index': remove level(s) in column. * 1 or 'columns': remove level(s) in row. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame with requested index / column level(s) removed. |
dropna
dropna(
*,
axis: int | str = 0,
how: str = "any",
subset: typing.Union[
None, typing.Hashable, typing.Sequence[typing.Hashable]
] = None,
inplace: bool = False,
ignore_index=False
) -> bigframes.dataframe.DataFrame
Remove missing values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"name": ['Alfred', 'Batman', 'Catwoman'],
... "toy": [np.nan, 'Batmobile', 'Bullwhip'],
... "born": [bpd.NA, "1940-04-25", bpd.NA]})
>>> df
name toy born
0 Alfred <NA> <NA>
1 Batman Batmobile 1940-04-25
2 Catwoman Bullwhip <NA>
<BLANKLINE>
[3 rows x 3 columns]
Drop the rows where at least one element is missing:
>>> df.dropna()
name toy born
1 Batman Batmobile 1940-04-25
<BLANKLINE>
[1 rows x 3 columns]
Drop the columns where at least one element is missing.
>>> df.dropna(axis='columns')
name
0 Alfred
1 Batman
2 Catwoman
<BLANKLINE>
[3 rows x 1 columns]
Drop the rows where all elements are missing:
>>> df.dropna(how='all')
name toy born
0 Alfred <NA> <NA>
1 Batman Batmobile 1940-04-25
2 Catwoman Bullwhip <NA>
<BLANKLINE>
[3 rows x 3 columns]
Define in which columns to look for missing values.
>>> df.dropna(subset=['name', 'toy'])
name toy born
1 Batman Batmobile 1940-04-25
2 Catwoman Bullwhip <NA>
<BLANKLINE>
[2 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Determine if rows or columns which contain missing values are removed. * 0, or 'index' : Drop rows which contain missing values. * 1, or 'columns' : Drop columns which contain missing value. |
how |
{'any', 'all'}, default 'any'
Determine if row or column is removed from DataFrame, when we have at least one NA or all NA. * 'any' : If any NA values are present, drop that row or column. * 'all' : If all values are NA, drop that row or column. |
subset |
column label or sequence of labels, optional
Labels along other axis to consider, e.g. if you are dropping rows these would be a list of columns to include. Only supports axis=0. |
inplace |
bool, default
Not supported. |
ignore_index |
bool, default
If |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame with NA entries dropped from it. |
duplicated
duplicated(subset=None, keep: str = "first") -> bigframes.series.Series
Return boolean Series denoting duplicate rows.
Considering certain columns is optional.
Parameters | |
---|---|
Name | Description |
subset |
column label or sequence of labels, optional
Only consider certain columns for identifying duplicates, by default use all of the columns. |
keep |
{'first', 'last', False}, default 'first'
Determines which duplicates (if any) to mark. - |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Boolean series for each duplicated rows. |
eq
eq(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get equal to of DataFrame and other, element-wise (binary operator eq
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can use method name:
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].eq(360)
circle True
triangle False
rectangle True
Name: degrees, dtype: boolean
You can also use logical operator ==
:
>>> df["degrees"] == 360
circle True
triangle False
rectangle True
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
Result of the comparison. |
equals
equals(
other: typing.Union[bigframes.series.Series, bigframes.dataframe.DataFrame]
) -> bool
Test whether two objects contain the same elements.
This function allows two Series or DataFrames to be compared against each other to see if they have the same shape and elements. NaNs in the same location are considered equal.
The row/column index do not need to have the same type, as long as the values are considered equal. Corresponding columns must be of the same dtype.
Parameter | |
---|---|
Name | Description |
other |
Series or DataFrame
The other Series or DataFrame to be compared with the first. |
Returns | |
---|---|
Type | Description |
bool |
True if all elements are the same in both objects, False otherwise. |
eval
eval(expr: str) -> bigframes.dataframe.DataFrame
Evaluate a string describing operations on DataFrame columns.
Operates on columns only, not specific rows or elements. This allows
eval
to run arbitrary code, which can make you vulnerable to code
injection if you pass user input to this function.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': range(1, 6), 'B': range(10, 0, -2)})
>>> df
A B
0 1 10
1 2 8
2 3 6
3 4 4
4 5 2
<BLANKLINE>
[5 rows x 2 columns]
>>> df.eval('A + B')
0 11
1 10
2 9
3 8
4 7
dtype: Int64
Assignment is allowed though by default the original DataFrame is not modified.
>>> df.eval('C = A + B')
A B C
0 1 10 11
1 2 8 10
2 3 6 9
3 4 4 8
4 5 2 7
<BLANKLINE>
[5 rows x 3 columns]
>>> df
A B
0 1 10
1 2 8
2 3 6
3 4 4
4 5 2
<BLANKLINE>
[5 rows x 2 columns]
Multiple columns can be assigned to using multi-line expressions:
>>> df.eval(
... '''
... C = A + B
... D = A - B
... '''
... )
A B C D
0 1 10 11 -9
1 2 8 10 -6
2 3 6 9 -3
3 4 4 8 0
4 5 2 7 3
<BLANKLINE>
[5 rows x 4 columns]
Parameter | |
---|---|
Name | Description |
expr |
str
The expression string to evaluate. |
expanding
expanding(min_periods: int = 1) -> bigframes.core.window.Window
Provide expanding window calculations.
Parameter | |
---|---|
Name | Description |
min_periods |
int, default 1
Minimum number of observations in window required to have a value; otherwise, result is |
Returns | |
---|---|
Type | Description |
bigframes.core.window.Window |
Expanding subclass. |
explode
explode(
column: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
*,
ignore_index: typing.Optional[bool] = False
) -> bigframes.dataframe.DataFrame
Transform each element of an array to a row, replicating index values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [[0, 1, 2], [], [], [3, 4]],
... 'B': 1,
... 'C': [['a', 'b', 'c'], np.nan, [], ['d', 'e']]})
>>> df.explode('A')
A B C
0 0 1 ['a' 'b' 'c']
0 1 1 ['a' 'b' 'c']
0 2 1 ['a' 'b' 'c']
1 <NA> 1 []
2 <NA> 1 []
3 3 1 ['d' 'e']
3 4 1 ['d' 'e']
<BLANKLINE>
[7 rows x 3 columns]
>>> df.explode(list('AC'))
A B C
0 0 1 a
0 1 1 b
0 2 1 c
1 <NA> 1 <NA>
2 <NA> 1 <NA>
3 3 1 d
3 4 1 e
<BLANKLINE>
[7 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
column |
str, Sequence[str]
Column(s) to explode. For multiple columns, specify a non-empty list with each element be str or tuple, and all specified columns their list-like data on same row of the frame must have matching length. |
ignore_index |
bool, default False
If True, the resulting index will be labeled 0, 1, …, n - 1. |
Returns | |
---|---|
Type | Description |
bigframes.series.DataFrame |
Exploded lists to rows of the subset columns; index will be duplicated for these rows. |
ffill
ffill(*, limit: typing.Optional[int] = None) -> bigframes.dataframe.DataFrame
Fill NA/NaN values by propagating the last valid observation to next valid.
Examples:
>>> import bigframes.pandas as bpd
>>> import numpy as np
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame([[np.nan, 2, np.nan, 0],
... [3, 4, np.nan, 1],
... [np.nan, np.nan, np.nan, np.nan],
... [np.nan, 3, np.nan, 4]],
... columns=list("ABCD")).astype("Float64")
>>> df
A B C D
0 <NA> 2.0 <NA> 0.0
1 3.0 4.0 <NA> 1.0
2 <NA> <NA> <NA> <NA>
3 <NA> 3.0 <NA> 4.0
<BLANKLINE>
[4 rows x 4 columns]
Fill NA/NaN values in DataFrames:
>>> df.ffill()
A B C D
0 <NA> 2.0 <NA> 0.0
1 3.0 4.0 <NA> 1.0
2 3.0 4.0 <NA> 1.0
3 3.0 3.0 <NA> 4.0
<BLANKLINE>
[4 rows x 4 columns]
Fill NA/NaN values in Series:
>>> series = bpd.Series([1, np.nan, 2, 3])
>>> series.ffill()
0 1.0
1 1.0
2 2.0
3 3.0
dtype: Float64
Returns | |
---|---|
Type | Description |
Series/DataFrame or None |
Object with missing values filled. |
fillna
fillna(value=None) -> bigframes.dataframe.DataFrame
Fill NA/NaN values using the specified method.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame([[np.nan, 2, np.nan, 0],
... [3, 4, np.nan, 1],
... [np.nan, np.nan, np.nan, np.nan],
... [np.nan, 3, np.nan, 4]],
... columns=list("ABCD")).astype("Float64")
>>> df
A B C D
0 <NA> 2.0 <NA> 0.0
1 3.0 4.0 <NA> 1.0
2 <NA> <NA> <NA> <NA>
3 <NA> 3.0 <NA> 4.0
<BLANKLINE>
[4 rows x 4 columns]
Replace all NA elements with 0s.
>>> df.fillna(0)
A B C D
0 0.0 2.0 0.0 0.0
1 3.0 4.0 0.0 1.0
2 0.0 0.0 0.0 0.0
3 0.0 3.0 0.0 4.0
<BLANKLINE>
[4 rows x 4 columns]
You can use fill values from another DataFrame:
>>> df_fill = bpd.DataFrame(np.arange(12).reshape(3, 4),
... columns=['A', 'B', 'C', 'D'])
>>> df_fill
A B C D
0 0 1 2 3
1 4 5 6 7
2 8 9 10 11
<BLANKLINE>
[3 rows x 4 columns]
>>> df.fillna(df_fill)
A B C D
0 0.0 2.0 2.0 0.0
1 3.0 4.0 6.0 1.0
2 8.0 9.0 10.0 11.0
3 <NA> 3.0 <NA> 4.0
<BLANKLINE>
[4 rows x 4 columns]
Parameter | |
---|---|
Name | Description |
value |
scalar, Series
Value to use to fill holes (e.g. 0), alternately a Series of values specifying which value to use for each index (for a Series) or column (for a DataFrame). Values not in the Series will not be filled. This value cannot be a list. |
Returns | |
---|---|
Type | Description |
DataFrame |
Object with missing values filled |
filter
filter(
items: typing.Optional[typing.Iterable] = None,
like: typing.Optional[str] = None,
regex: typing.Optional[str] = None,
axis: int | str | None = None,
) -> bigframes.dataframe.DataFrame
Subset the dataframe rows or columns according to the specified index labels.
Note that this routine does not filter a dataframe on its contents. The filter is applied to the labels of the index.
Parameters | |
---|---|
Name | Description |
items |
list-like
Keep labels from axis which are in items. |
like |
str
Keep labels from axis for which "like in label == True". |
regex |
str (regular expression)
Keep labels from axis for which re.search(regex, label) == True. |
axis |
{0 or 'index', 1 or 'columns', None}, default None
The axis to filter on, expressed either as an index (int) or axis name (str). By default this is the info axis, 'columns' for DataFrame. For |
first_valid_index
first_valid_index()
API documentation for first_valid_index
method.
floordiv
floordiv(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get integer division of DataFrame and other, element-wise (binary operator //
).
Equivalent to dataframe // other
. With reverse version, rfloordiv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].floordiv(df['B'])
0 0
1 0
2 0
dtype: Int64
You can also use arithmetic operator //
:
>>> df['A'] // (df['B'])
0 0
1 0
2 0
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
from_dict
from_dict(
data: dict, orient: str = "columns", dtype=None, columns=None
) -> bigframes.dataframe.DataFrame
Construct DataFrame from dict of array-like or dicts.
Creates DataFrame object from dictionary by columns or by index allowing dtype specification.
Parameters | |
---|---|
Name | Description |
data |
dict
Of the form {field : array-like} or {field : dict}. |
orient |
{'columns', 'index', 'tight'}, default 'columns'
The "orientation" of the data. If the keys of the passed dict should be the columns of the resulting DataFrame, pass 'columns' (default). Otherwise if the keys should be rows, pass 'index'. If 'tight', assume a dict with keys ['index', 'columns', 'data', 'index_names', 'column_names']. |
dtype |
dtype, default None
Data type to force after DataFrame construction, otherwise infer. |
columns |
list, default None
Column labels to use when |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame. |
from_records
from_records(
data,
index=None,
exclude=None,
columns=None,
coerce_float: bool = False,
nrows: typing.Optional[int] = None,
) -> bigframes.dataframe.DataFrame
Convert structured or record ndarray to DataFrame.
Creates a DataFrame object from a structured ndarray, sequence of tuples or dicts, or DataFrame.
Parameters | |
---|---|
Name | Description |
data |
structured ndarray, sequence of tuples or dicts
Structured input data. |
index |
str, list of fields, array-like
Field of array to use as the index, alternately a specific set of input labels to use. |
exclude |
sequence, default None
Columns or fields to exclude. |
columns |
sequence, default None
Column names to use. If the passed data do not have names associated with them, this argument provides names for the columns. Otherwise this argument indicates the order of the columns in the result (any names not found in the data will become all-NA columns). |
coerce_float |
bool, default False
Attempt to convert values of non-string, non-numeric objects (like decimal.Decimal) to floating point, useful for SQL result sets. |
nrows |
int, default None
Number of rows to read if data is an iterator. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame. |
ge
ge(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get 'greater than or equal to' of DataFrame and other, element-wise (binary operator >=
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can use method name:
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].ge(360)
circle True
triangle False
rectangle True
Name: degrees, dtype: boolean
You can also use arithmetic operator >=
:
>>> df["degrees"] >= 360
circle True
triangle False
rectangle True
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of bool. The result of the comparison. |
groupby
groupby(
by: typing.Optional[
typing.Union[
typing.Hashable,
bigframes.series.Series,
typing.Sequence[typing.Union[typing.Hashable, bigframes.series.Series]],
]
] = None,
*,
level: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
as_index: bool = True,
dropna: bool = True
) -> bigframes.core.groupby.DataFrameGroupBy
Group DataFrame by columns.
A groupby operation involves some combination of splitting the object, applying a function, and combining the results. This can be used to group large amounts of data and compute operations on these groups.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'Animal': ['Falcon', 'Falcon',
... 'Parrot', 'Parrot'],
... 'Max Speed': [380., 370., 24., 26.]})
>>> df
Animal Max Speed
0 Falcon 380.0
1 Falcon 370.0
2 Parrot 24.0
3 Parrot 26.0
<BLANKLINE>
[4 rows x 2 columns]
>>> df.groupby(['Animal'])['Max Speed'].mean()
Animal
Falcon 375.0
Parrot 25.0
Name: Max Speed, dtype: Float64
We can also choose to include NA in group keys or not by setting dropna
:
>>> df = bpd.DataFrame([[1, 2, 3],[1, None, 4], [2, 1, 3], [1, 2, 2]],
... columns=["a", "b", "c"])
>>> df.groupby(by=["b"]).sum()
a c
b
1.0 2 3
2.0 2 5
<BLANKLINE>
[2 rows x 2 columns]
>>> df.groupby(by=["b"], dropna=False).sum()
a c
b
1.0 2 3
2.0 2 5
<NA> 1 4
<BLANKLINE>
[3 rows x 2 columns]
We can also choose to return object with group labels or not by setting as_index
:
>>> df.groupby(by=["b"], as_index=False).sum()
b a c
0 1.0 2 3
1 2.0 2 5
<BLANKLINE>
[2 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
by |
str, Sequence[str]
A label or list of labels may be passed to group by the columns in |
level |
int, level name, or sequence of such, default None
If the axis is a MultiIndex (hierarchical), group by a particular level or levels. Do not specify both |
as_index |
bool, default True
Default True. Return object with group labels as the index. Only relevant for DataFrame input. |
dropna |
bool, default True
Default True. If True, and if group keys contain NA values, NA values together with row/column will be dropped. If False, NA values will also be treated as the key in groups. |
Returns | |
---|---|
Type | Description |
bigframes.core.groupby.SeriesGroupBy |
A groupby object that contains information about the groups. |
gt
gt(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get 'greater than' of DataFrame and other, element-wise (binary operator >
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].gt(360)
circle False
triangle False
rectangle False
Name: degrees, dtype: boolean
You can also use arithmetic operator >
:
>>> df["degrees"] > 360
circle False
triangle False
rectangle False
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of bool: The result of the comparison. |
head
head(n: int = 5) -> bigframes.dataframe.DataFrame
Return the first n
rows.
This function returns the first n
rows for the object based
on position. It is useful for quickly testing if your object
has the right type of data in it.
For negative values of n
, this function returns
all rows except the last |n|
rows, equivalent to df[:n]
.
If n is larger than the number of rows, this function returns all rows.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'animal': ['alligator', 'bee', 'falcon', 'lion',
... 'monkey', 'parrot', 'shark', 'whale', 'zebra']})
>>> df
animal
0 alligator
1 bee
2 falcon
3 lion
4 monkey
5 parrot
6 shark
7 whale
8 zebra
<BLANKLINE>
[9 rows x 1 columns]
Viewing the first 5 lines:
>>> df.head()
animal
0 alligator
1 bee
2 falcon
3 lion
4 monkey
<BLANKLINE>
[5 rows x 1 columns]
Viewing the first n
lines (three in this case):
>>> df.head(3)
animal
0 alligator
1 bee
2 falcon
<BLANKLINE>
[3 rows x 1 columns]
For negative values of n
:
>>> df.head(-3)
animal
0 alligator
1 bee
2 falcon
3 lion
4 monkey
5 parrot
<BLANKLINE>
[6 rows x 1 columns]
Parameter | |
---|---|
Name | Description |
n |
int, default 5
Default 5. Number of rows to select. |
Returns | |
---|---|
Type | Description |
same type as caller |
The first n rows of the caller object. |
idxmax
idxmax() -> bigframes.series.Series
Return index of first occurrence of maximum over columns.
NA/null values are excluded.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.idxmax()
A 0
B 2
dtype: Int64
Returns | |
---|---|
Type | Description |
Series |
Indexes of maxima along the columns. |
idxmin
idxmin() -> bigframes.series.Series
Return index of first occurrence of minimum over columns.
NA/null values are excluded.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 3]})
>>> df
A B
0 3 1
1 1 2
2 2 3
<BLANKLINE>
[3 rows x 2 columns]
>>> df.idxmin()
A 1
B 0
dtype: Int64
Returns | |
---|---|
Type | Description |
Series |
Indexes of minima along the columns. |
info
info(
verbose: typing.Optional[bool] = None,
buf=None,
max_cols: typing.Optional[int] = None,
memory_usage: typing.Optional[bool] = None,
show_counts: typing.Optional[bool] = None,
)
Print a concise summary of a DataFrame.
This method prints information about a DataFrame including the index dtypeand columns, non-null values and memory usage.
Parameters | |
---|---|
Name | Description |
verbose |
bool, optional
Whether to print the full summary. By default, the setting in |
buf |
writable buffer, defaults to sys.stdout
Where to send the output. By default, the output is printed to sys.stdout. Pass a writable buffer if you need to further process the output. |
max_cols |
int, optional
When to switch from the verbose to the truncated output. If the DataFrame has more than |
memory_usage |
bool, optional
Specifies whether total memory usage of the DataFrame elements (including the index) should be displayed. By default, this follows the |
show_counts |
bool, optional
Whether to show the non-null counts. By default, this is shown only if the DataFrame is smaller than |
Returns | |
---|---|
Type | Description |
None |
This method prints a summary of a DataFrame and returns None. |
insert
insert(
loc: int,
column: blocks.Label,
value: SingleItemValue,
allow_duplicates: bool = False,
)
Insert column into DataFrame at specified location.
Raises a ValueError if column
is already contained in the DataFrame,
unless allow_duplicates
is set to True.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
Insert a new column named 'col3' between 'col1' and 'col2' with all entries set to 5.
>>> df.insert(1, 'col3', 5)
>>> df
col1 col3 col2
0 1 5 3
1 2 5 4
<BLANKLINE>
[2 rows x 3 columns]
Insert another column named 'col2' at the beginning of the DataFrame with values [5, 6]
>>> df.insert(0, 'col2', [5, 6], allow_duplicates=True)
>>> df
col2 col1 col3 col2
0 5 1 5 3
1 6 2 5 4
<BLANKLINE>
[2 rows x 4 columns]
Parameters | |
---|---|
Name | Description |
loc |
int
Insertion index. Must verify 0 <= loc <= len(columns). |
column |
str, number, or hashable object
Label of the inserted column. |
value |
Scalar, Series, or array-like
Content of the inserted column. |
allow_duplicates |
bool, default False
Allow duplicate column labels to be created. |
interpolate
interpolate(method: str = "linear") -> bigframes.dataframe.DataFrame
Fill NaN values using an interpolation method.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3, None, None, 6],
... 'B': [None, 6, None, 2, None, 3],
... }, index=[0, 0.1, 0.3, 0.7, 0.9, 1.0])
>>> df.interpolate()
A B
0.0 1.0 <NA>
0.1 2.0 6.0
0.3 3.0 4.0
0.7 4.0 2.0
0.9 5.0 2.5
1.0 6.0 3.0
<BLANKLINE>
[6 rows x 2 columns]
>>> df.interpolate(method="values")
A B
0.0 1.0 <NA>
0.1 2.0 6.0
0.3 3.0 4.666667
0.7 4.714286 2.0
0.9 5.571429 2.666667
1.0 6.0 3.0
<BLANKLINE>
[6 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
method |
str, default 'linear'
Interpolation technique to use. Only 'linear' supported. 'linear': Ignore the index and treat the values as equally spaced. This is the only method supported on MultiIndexes. 'index', 'values': use the actual numerical values of the index. 'pad': Fill in NaNs using existing values. 'nearest', 'zero', 'slinear': Emulates |
Returns | |
---|---|
Type | Description |
DataFrame |
Returns the same object type as the caller, interpolated at some or all NaN values |
isin
isin(values) -> bigframes.dataframe.DataFrame
Whether each element in the DataFrame is contained in values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'num_legs': [2, 4], 'num_wings': [2, 0]},
... index=['falcon', 'dog'])
>>> df
num_legs num_wings
falcon 2 2
dog 4 0
<BLANKLINE>
[2 rows x 2 columns]
When values
is a list check whether every value in the DataFrame is
present in the list (which animals have 0 or 2 legs or wings).
>>> df.isin([0, 2])
num_legs num_wings
falcon True True
dog False True
<BLANKLINE>
[2 rows x 2 columns]
When values
is a dict, we can pass it to check for each column separately:
>>> df.isin({'num_wings': [0, 3]})
num_legs num_wings
falcon False False
dog False True
<BLANKLINE>
[2 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
values |
iterable, or dict
The result will only be true at a location if all the labels match. If |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of booleans showing whether each element in the DataFrame is contained in values. |
isna
isna() -> bigframes.dataframe.DataFrame
Detect missing values.
Return a boolean same-sized object indicating if the values are NA.
NA values get mapped to True values. Everything else gets mapped to
False values. Characters such as empty strings ''
or
numpy.inf
are not considered NA values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> import numpy as np
>>> df = bpd.DataFrame(dict(
... age=[5, 6, np.nan],
... born=[bpd.NA, "1940-04-25", "1940-04-25"],
... name=['Alfred', 'Batman', ''],
... toy=[None, 'Batmobile', 'Joker'],
... ))
>>> df
age born name toy
0 5.0 <NA> Alfred <NA>
1 6.0 1940-04-25 Batman Batmobile
2 <NA> 1940-04-25 Joker
<BLANKLINE>
[3 rows x 4 columns]
Show which entries in a DataFrame are NA:
>>> df.isna()
age born name toy
0 False True False True
1 False False False False
2 True False False False
<BLANKLINE>
[3 rows x 4 columns]
>>> df.isnull()
age born name toy
0 False True False True
1 False False False False
2 True False False False
<BLANKLINE>
[3 rows x 4 columns]
Show which entries in a Series are NA:
>>> ser = bpd.Series([5, None, 6, np.nan, bpd.NA])
>>> ser
0 5
1 <NA>
2 6
3 <NA>
4 <NA>
dtype: Int64
>>> ser.isna()
0 False
1 True
2 False
3 True
4 True
dtype: boolean
>>> ser.isnull()
0 False
1 True
2 False
3 True
4 True
dtype: boolean
isnull
isnull() -> bigframes.dataframe.DataFrame
Detect missing values.
Return a boolean same-sized object indicating if the values are NA.
NA values get mapped to True values. Everything else gets mapped to
False values. Characters such as empty strings ''
or
numpy.inf
are not considered NA values.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> import numpy as np
>>> df = bpd.DataFrame(dict(
... age=[5, 6, np.nan],
... born=[bpd.NA, "1940-04-25", "1940-04-25"],
... name=['Alfred', 'Batman', ''],
... toy=[None, 'Batmobile', 'Joker'],
... ))
>>> df
age born name toy
0 5.0 <NA> Alfred <NA>
1 6.0 1940-04-25 Batman Batmobile
2 <NA> 1940-04-25 Joker
<BLANKLINE>
[3 rows x 4 columns]
Show which entries in a DataFrame are NA:
>>> df.isna()
age born name toy
0 False True False True
1 False False False False
2 True False False False
<BLANKLINE>
[3 rows x 4 columns]
>>> df.isnull()
age born name toy
0 False True False True
1 False False False False
2 True False False False
<BLANKLINE>
[3 rows x 4 columns]
Show which entries in a Series are NA:
>>> ser = bpd.Series([5, None, 6, np.nan, bpd.NA])
>>> ser
0 5
1 <NA>
2 6
3 <NA>
4 <NA>
dtype: Int64
>>> ser.isna()
0 False
1 True
2 False
3 True
4 True
dtype: boolean
>>> ser.isnull()
0 False
1 True
2 False
3 True
4 True
dtype: boolean
items
items()
Iterate over (column name, Series) pairs.
Iterates over the DataFrame columns, returning a tuple with the column name and the content as a Series.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'species': ['bear', 'bear', 'marsupial'],
... 'population': [1864, 22000, 80000]},
... index=['panda', 'polar', 'koala'])
>>> df
species population
panda bear 1864
polar bear 22000
koala marsupial 80000
<BLANKLINE>
[3 rows x 2 columns]
>>> for label, content in df.items():
... print(f'--> label: {label}')
... print(f'--> content:\n{content}')
...
--> label: species
--> content:
panda bear
polar bear
koala marsupial
Name: species, dtype: string
--> label: population
--> content:
panda 1864
polar 22000
koala 80000
Name: population, dtype: Int64
Returns | |
---|---|
Type | Description |
Iterator |
Iterator of label, Series for each column. |
iterrows
iterrows() -> typing.Iterable[tuple[typing.Any, pandas.core.series.Series]]
Iterate over DataFrame rows as (index, Series) pairs.
:Yields: a tuple (index, data) where data contains row values as a Series
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> index, row = next(df.iterrows())
>>> index
np.int64(0)
>>> row
A 1
B 4
Name: 0, dtype: object
itertuples
itertuples(
index: bool = True, name: typing.Optional[str] = "Pandas"
) -> typing.Iterable[tuple[typing.Any, ...]]
Iterate over DataFrame rows as namedtuples.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> next(df.itertuples(name="Pair"))
Pair(Index=np.int64(0), A=np.int64(1), B=np.int64(4))
Parameters | |
---|---|
Name | Description |
index |
bool, default True
If True, return the index as the first element of the tuple. |
name |
str or None, default "Pandas"
The name of the returned namedtuples or None to return regular tuples. |
Returns | |
---|---|
Type | Description |
iterator |
An object to iterate over namedtuples for each row in the DataFrame with the first field possibly being the index and following fields being the column values. |
join
join(
other: bigframes.dataframe.DataFrame,
*,
on: typing.Optional[str] = None,
how: str = "left"
) -> bigframes.dataframe.DataFrame
Join columns of another DataFrame.
Join columns with other
DataFrame on index
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Join two DataFrames by specifying how to handle the operation:
>>> df1 = bpd.DataFrame({'col1': ['foo', 'bar'], 'col2': [1, 2]}, index=[10, 11])
>>> df1
col1 col2
10 foo 1
11 bar 2
<BLANKLINE>
[2 rows x 2 columns]
>>> df2 = bpd.DataFrame({'col3': ['foo', 'baz'], 'col4': [3, 4]}, index=[11, 22])
>>> df2
col3 col4
11 foo 3
22 baz 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df1.join(df2)
col1 col2 col3 col4
10 foo 1 <NA> <NA>
11 bar 2 foo 3
<BLANKLINE>
[2 rows x 4 columns]
>>> df1.join(df2, how="left")
col1 col2 col3 col4
10 foo 1 <NA> <NA>
11 bar 2 foo 3
<BLANKLINE>
[2 rows x 4 columns]
>>> df1.join(df2, how="right")
col1 col2 col3 col4
11 bar 2 foo 3
22 <NA> <NA> baz 4
<BLANKLINE>
[2 rows x 4 columns]
>>> df1.join(df2, how="outer")
col1 col2 col3 col4
10 foo 1 <NA> <NA>
11 bar 2 foo 3
22 <NA> <NA> baz 4
<BLANKLINE>
[3 rows x 4 columns]
>>> df1.join(df2, how="inner")
col1 col2 col3 col4
11 bar 2 foo 3
<BLANKLINE>
[1 rows x 4 columns]
Another option to join using the key columns is to use the on parameter:
>>> df1.join(df2, on="col1", how="right")
col1 col2 col3 col4
<NA> 11 <NA> foo 3
<NA> 22 <NA> baz 4
<BLANKLINE>
[2 rows x 4 columns]
Parameter | |
---|---|
Name | Description |
how |
{'left', 'right', 'outer', 'inner'}, default 'left'
How to handle the operation of the two objects. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
A dataframe containing columns from both the caller and other . |
keys
keys() -> pandas.core.indexes.base.Index
Get the 'info axis'.
This is index for Series, columns for DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df.keys()
Index(['A', 'B'], dtype='object')
Returns | |
---|---|
Type | Description |
Index |
Info axis. |
kurt
kurt(*, numeric_only: bool = False)
Return unbiased kurtosis over columns.
Kurtosis obtained using Fisher's definition of kurtosis (kurtosis of normal == 0.0). Normalized by N-1.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3, 4, 5],
... "B": [3, 4, 3, 2, 1],
... "C": [2, 2, 3, 2, 2]})
>>> df
A B C
0 1 3 2
1 2 4 2
2 3 3 3
3 4 2 2
4 5 1 2
<BLANKLINE>
[5 rows x 3 columns]
Calculating the kurtosis value of each column:
>>> df.kurt()
A -1.2
B -0.177515
C 5.0
dtype: Float64
Parameter | |
---|---|
Name | Description |
numeric_only |
bool, default False
Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
Series |
Series. |
kurtosis
kurtosis(*, numeric_only: bool = False)
Return unbiased kurtosis over columns.
Kurtosis obtained using Fisher's definition of kurtosis (kurtosis of normal == 0.0). Normalized by N-1.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3, 4, 5],
... "B": [3, 4, 3, 2, 1],
... "C": [2, 2, 3, 2, 2]})
>>> df
A B C
0 1 3 2
1 2 4 2
2 3 3 3
3 4 2 2
4 5 1 2
<BLANKLINE>
[5 rows x 3 columns]
Calculating the kurtosis value of each column:
>>> df.kurt()
A -1.2
B -0.177515
C 5.0
dtype: Float64
Parameter | |
---|---|
Name | Description |
numeric_only |
bool, default False
Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
Series |
Series. |
le
le(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get 'less than or equal to' of dataframe and other, element-wise (binary operator <=
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can use method name:
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].le(180)
circle False
triangle True
rectangle False
Name: degrees, dtype: boolean
You can also use arithmetic operator <=
:
>>> df["degrees"] <= 180
circle False
triangle True
rectangle False
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of bool. The result of the comparison. |
lt
lt(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get 'less than' of DataFrame and other, element-wise (binary operator <
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can use method name:
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].lt(180)
circle False
triangle False
rectangle False
Name: degrees, dtype: boolean
You can also use arithmetic operator <
:
>>> df["degrees"] < 180
circle False
triangle False
rectangle False
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of bool. The result of the comparison. |
map
map(func, na_action: typing.Optional[str] = None) -> bigframes.dataframe.DataFrame
Apply a function to a Dataframe elementwise.
This method applies a function that accepts and returns a scalar to every element of a DataFrame.
Examples:>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Let's use reuse=False
flag to make sure a new remote_function
is created every time we run the following code, but you can skip it
to potentially reuse a previously deployed remote_function
from
the same user defined function.
>>> @bpd.remote_function(reuse=False)
... def minutes_to_hours(x: int) -> float:
... return x/60
>>> df_minutes = bpd.DataFrame(
... {"system_minutes" : [0, 30, 60, 90, 120],
... "user_minutes" : [0, 15, 75, 90, 6]})
>>> df_minutes
system_minutes user_minutes
0 0 0
1 30 15
2 60 75
3 90 90
4 120 6
<BLANKLINE>
[5 rows x 2 columns]
>>> df_hours = df_minutes.map(minutes_to_hours)
>>> df_hours
system_minutes user_minutes
0 0.0 0.0
1 0.5 0.25
2 1.0 1.25
3 1.5 1.5
4 2.0 0.1
<BLANKLINE>
[5 rows x 2 columns]
If there are NA
/None
values in the data, you can ignore
applying the remote function on such values by specifying
na_action='ignore'
.
>>> df_minutes = bpd.DataFrame(
... {
... "system_minutes" : [0, 30, 60, None, 90, 120, bpd.NA],
... "user_minutes" : [0, 15, 75, 90, 6, None, bpd.NA]
... }, dtype="Int64")
>>> df_hours = df_minutes.map(minutes_to_hours, na_action='ignore')
>>> df_hours
system_minutes user_minutes
0 0.0 0.0
1 0.5 0.25
2 1.0 1.25
3 <NA> 1.5
4 1.5 0.1
5 2.0 <NA>
6 <NA> <NA>
<BLANKLINE>
[7 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
func |
function
Python function wrapped by |
na_action |
Optional[str], default None
|
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
Transformed DataFrame. |
max
max(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the maximum of the values over the requested axis.
If you want the index of the maximum, use idxmax
. This is
the equivalent of the numpy.ndarray
method argmax
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Finding the maximum value in each column (the default behavior without an explicit axis parameter).
>>> df.max()
A 3
B 4
dtype: Int64
Finding the maximum value in each row.
>>> df.max(axis=1)
0 2
1 4
dtype: Int64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series after the maximum of values. |
mean
mean(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the mean of the values over the requested axis.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Calculating the mean of each column (the default behavior without an explicit axis parameter).
>>> df.mean()
A 2.0
B 3.0
dtype: Float64
Calculating the mean of each row.
>>> df.mean(axis=1)
0 1.5
1 3.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the mean of values. |
median
median(
*, numeric_only: bool = False, exact: bool = True
) -> bigframes.series.Series
Return the median of the values over colunms.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Finding the median value of each column.
>>> df.median()
A 2.0
B 3.0
dtype: Float64
Parameters | |
---|---|
Name | Description |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
exact |
bool. default True
Default True. Get the exact median instead of an approximate one. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the median of values. |
melt
melt(
id_vars: typing.Optional[typing.Iterable[typing.Hashable]] = None,
value_vars: typing.Optional[typing.Iterable[typing.Hashable]] = None,
var_name: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = None,
value_name: typing.Hashable = "value",
)
Unpivot a DataFrame from wide to long format, optionally leaving identifiers set.
This function is useful to massage a DataFrame into a format where one
or more columns are identifier variables (id_vars
), while all other
columns, considered measured variables (value_vars
), are "unpivoted" to
the row axis, leaving just two non-identifier columns, 'variable' and
'value'.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, None, 3, 4, 5],
... "B": [1, 2, 3, 4, 5],
... "C": [None, 3.5, None, 4.5, 5.0]})
>>> df
A B C
0 1.0 1 <NA>
1 <NA> 2 3.5
2 3.0 3 <NA>
3 4.0 4 4.5
4 5.0 5 5.0
<BLANKLINE>
[5 rows x 3 columns]
Using melt
without optional arguments:
>>> df.melt()
variable value
0 A 1.0
1 A <NA>
2 A 3.0
3 A 4.0
4 A 5.0
5 B 1.0
6 B 2.0
7 B 3.0
8 B 4.0
9 B 5.0
10 C <NA>
11 C 3.5
12 C <NA>
13 C 4.5
14 C 5.0
<BLANKLINE>
[15 rows x 2 columns]
Using melt
with id_vars
and value_vars
:
>>> df.melt(id_vars='A', value_vars=['B', 'C'])
A variable value
0 1.0 B 1.0
1 <NA> B 2.0
2 3.0 B 3.0
3 4.0 B 4.0
4 5.0 B 5.0
5 1.0 C <NA>
6 <NA> C 3.5
7 3.0 C <NA>
8 4.0 C 4.5
9 5.0 C 5.0
<BLANKLINE>
[10 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
id_vars |
tuple, list, or ndarray, optional
Column(s) to use as identifier variables. |
value_vars |
tuple, list, or ndarray, optional
Column(s) to unpivot. If not specified, uses all columns that are not set as |
var_name |
scalar
Name to use for the 'variable' column. If None it uses |
value_name |
scalar, default 'value'
Name to use for the 'value' column. |
Returns | |
---|---|
Type | Description |
DataFrame |
Unpivoted DataFrame. |
memory_usage
memory_usage(index: bool = True)
Return the memory usage of each column in bytes.
The memory usage can optionally include the contribution of
the index and elements of object
dtype.
This value is displayed in DataFrame.info
by default. This can be
suppressed by setting pandas.options.display.memory_usage
to False.
Parameter | |
---|---|
Name | Description |
index |
bool, default True
Specifies whether to include the memory usage of the DataFrame's index in returned Series. If |
Returns | |
---|---|
Type | Description |
Series |
A Series whose index is the original column names and whose values is the memory usage of each column in bytes. |
merge
merge(
right: bigframes.dataframe.DataFrame,
how: typing.Literal["inner", "left", "outer", "right", "cross"] = "inner",
on: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
*,
left_on: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
right_on: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
sort: bool = False,
suffixes: tuple[str, str] = ("_x", "_y")
) -> bigframes.dataframe.DataFrame
Merge DataFrame objects with a database-style join.
The join is done on columns or indexes. If joining columns on columns, the DataFrame indexes will be ignored. Otherwise if joining indexes on indexes or indexes on a column or columns, the index will be passed on. When performing a cross merge, no column specifications to merge on are allowed.
Examples:>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Merge DataFrames df1 and df2 by specifiying type of merge:
>>> df1 = bpd.DataFrame({'a': ['foo', 'bar'], 'b': [1, 2]})
>>> df1
a b
0 foo 1
1 bar 2
<BLANKLINE>
[2 rows x 2 columns]
>>> df2 = bpd.DataFrame({'a': ['foo', 'baz'], 'c': [3, 4]})
>>> df2
a c
0 foo 3
1 baz 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df1.merge(df2, how="inner", on="a")
a b c
0 foo 1 3
<BLANKLINE>
[1 rows x 3 columns]
>>> df1.merge(df2, how='left', on='a')
a b c
0 foo 1 3
1 bar 2 <NA>
<BLANKLINE>
[2 rows x 3 columns]
Merge df1 and df2 on the lkey and rkey columns. The value columns have the default suffixes, _x and _y, appended.
>>> df1 = bpd.DataFrame({'lkey': ['foo', 'bar', 'baz', 'foo'],
... 'value': [1, 2, 3, 5]})
>>> df1
lkey value
0 foo 1
1 bar 2
2 baz 3
3 foo 5
<BLANKLINE>
[4 rows x 2 columns]
>>> df2 = bpd.DataFrame({'rkey': ['foo', 'bar', 'baz', 'foo'],
... 'value': [5, 6, 7, 8]})
>>> df2
rkey value
0 foo 5
1 bar 6
2 baz 7
3 foo 8
<BLANKLINE>
[4 rows x 2 columns]
>>> df1.merge(df2, left_on='lkey', right_on='rkey')
lkey value_x rkey value_y
0 foo 1 foo 5
1 foo 1 foo 8
2 bar 2 bar 6
3 baz 3 baz 7
4 foo 5 foo 5
5 foo 5 foo 8
<BLANKLINE>
[6 rows x 4 columns]
Parameters | |
---|---|
Name | Description |
on |
label or list of labels
Columns to join on. It must be found in both DataFrames. Either on or left_on + right_on must be passed in. |
left_on |
label or list of labels
Columns to join on in the left DataFrame. Either on or left_on + right_on must be passed in. |
right_on |
label or list of labels
Columns to join on in the right DataFrame. Either on or left_on + right_on must be passed in. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
A DataFrame of the two merged objects. |
min
min(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the minimum of the values over the requested axis.
If you want the index of the minimum, use idxmin
. This is the
equivalent of the numpy.ndarray
method argmin
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Finding the minimum value in each column (the default behavior without an explicit axis parameter).
>>> df.min()
A 1
B 2
dtype: Int64
Finding the minimum value in each row.
>>> df.min(axis=1)
0 1
1 3
dtype: Int64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool, default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the minimum of the values. |
mod
mod(
other: int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get modulo of DataFrame and other, element-wise (binary operator %
).
Equivalent to dataframe % other
. With reverse version, rmod
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].mod(df['B'])
0 1
1 2
2 3
dtype: Int64
You can also use arithmetic operator %
:
>>> df['A'] % (df['B'])
0 1
1 2
2 3
dtype: Int64
Parameter | |
---|---|
Name | Description |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
mul
mul(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get multiplication of DataFrame and other, element-wise (binary operator *
).
Equivalent to dataframe * other
. With reverse version, rmul
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].mul(df['B'])
0 4
1 10
2 18
dtype: Int64
You can also use arithmetic operator *
:
>>> df['A'] * (df['B'])
0 4
1 10
2 18
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
multiply
multiply(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get multiplication of DataFrame and other, element-wise (binary operator *
).
Equivalent to dataframe * other
. With reverse version, rmul
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].mul(df['B'])
0 4
1 10
2 18
dtype: Int64
You can also use arithmetic operator *
:
>>> df['A'] * (df['B'])
0 4
1 10
2 18
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
ne
ne(other: typing.Any, axis: str | int = "columns") -> bigframes.dataframe.DataFrame
Get not equal to of DataFrame and other, element-wise (binary operator ne
).
Among flexible wrappers (eq
, ne
, le
, lt
, ge
, gt
) to comparison
operators.
Equivalent to ==
, !=
, <=
, <
, >=
, >
with support to choose axis
(rows or columns) and level for comparison.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
You can use method name:
>>> df = bpd.DataFrame({'angles': [0, 3, 4],
... 'degrees': [360, 180, 360]},
... index=['circle', 'triangle', 'rectangle'])
>>> df["degrees"].ne(360)
circle False
triangle True
rectangle False
Name: degrees, dtype: boolean
You can also use arithmetic operator !=
:
>>> df["degrees"] != 360
circle False
triangle True
rectangle False
Name: degrees, dtype: boolean
Parameters | |
---|---|
Name | Description |
other |
scalar, sequence, Series, or DataFrame
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}, default 'columns'
Whether to compare by the index (0 or 'index') or columns (1 or 'columns'). |
Returns | |
---|---|
Type | Description |
DataFrame |
Result of the comparison. |
nlargest
nlargest(
n: int,
columns: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
keep: str = "first",
) -> bigframes.dataframe.DataFrame
Return the first n
rows ordered by columns
in descending order.
Return the first n
rows with the largest values in columns
, in
descending order. The columns that are not specified are returned as
well, but not used for ordering.
This method is equivalent to
df.sort_values(columns, ascending=False).head(n)
, but more
performant.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 1, 3, 3, 5, 5],
... "B": [5, 6, 3, 4, 1, 2],
... "C": ['a', 'b', 'a', 'b', 'a', 'b']})
>>> df
A B C
0 1 5 a
1 1 6 b
2 3 3 a
3 3 4 b
4 5 1 a
5 5 2 b
<BLANKLINE>
[6 rows x 3 columns]
Returns rows with the largest value in 'A', including all ties:
>>> df.nlargest(1, 'A', keep = "all")
A B C
4 5 1 a
5 5 2 b
<BLANKLINE>
[2 rows x 3 columns]
Returns the first row with the largest value in 'A', default behavior in case of ties:
>>> df.nlargest(1, 'A')
A B C
4 5 1 a
<BLANKLINE>
[1 rows x 3 columns]
Returns the last row with the largest value in 'A' in case of ties:
>>> df.nlargest(1, 'A', keep = "last")
A B C
5 5 2 b
<BLANKLINE>
[1 rows x 3 columns]
Returns the row with the largest combined values in both 'A' and 'C':
>>> df.nlargest(1, ['A', 'C'])
A B C
5 5 2 b
<BLANKLINE>
[1 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
n |
int
Number of rows to return. |
columns |
label or list of labels
Column label(s) to order by. |
keep |
{'first', 'last', 'all'}, default 'first'
Where there are duplicate values: - |
Returns | |
---|---|
Type | Description |
DataFrame |
The first n rows ordered by the given columns in descending order. |
notna
notna() -> bigframes.dataframe.DataFrame
Detect existing (non-missing) values.
Return a boolean same-sized object indicating if the values are not NA.
Non-missing values get mapped to True. Characters such as empty
strings ''
or numpy.inf
are not considered NA values.
NA values get mapped to False values.
Returns | |
---|---|
Type | Description |
NDFrame |
Mask of bool values for each element that indicates whether an element is not an NA value. |
notnull
notnull() -> bigframes.dataframe.DataFrame
Detect existing (non-missing) values.
Return a boolean same-sized object indicating if the values are not NA.
Non-missing values get mapped to True. Characters such as empty
strings ''
or numpy.inf
are not considered NA values.
NA values get mapped to False values.
Returns | |
---|---|
Type | Description |
NDFrame |
Mask of bool values for each element that indicates whether an element is not an NA value. |
nsmallest
nsmallest(
n: int,
columns: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
keep: str = "first",
) -> bigframes.dataframe.DataFrame
Return the first n
rows ordered by columns
in ascending order.
Return the first n
rows with the smallest values in columns
, in
ascending order. The columns that are not specified are returned as
well, but not used for ordering.
This method is equivalent to
df.sort_values(columns, ascending=True).head(n)
, but more
performant.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 1, 3, 3, 5, 5],
... "B": [5, 6, 3, 4, 1, 2],
... "C": ['a', 'b', 'a', 'b', 'a', 'b']})
>>> df
A B C
0 1 5 a
1 1 6 b
2 3 3 a
3 3 4 b
4 5 1 a
5 5 2 b
<BLANKLINE>
[6 rows x 3 columns]
Returns rows with the smallest value in 'A', including all ties:
>>> df.nsmallest(1, 'A', keep = "all")
A B C
0 1 5 a
1 1 6 b
<BLANKLINE>
[2 rows x 3 columns]
Returns the first row with the smallest value in 'A', default behavior in case of ties:
>>> df.nsmallest(1, 'A')
A B C
0 1 5 a
<BLANKLINE>
[1 rows x 3 columns]
Returns the last row with the smallest value in 'A' in case of ties:
>>> df.nsmallest(1, 'A', keep = "last")
A B C
1 1 6 b
<BLANKLINE>
[1 rows x 3 columns]
Returns rows with the smallest values in 'A' and 'C'
>>> df.nsmallest(1, ['A', 'C'])
A B C
0 1 5 a
<BLANKLINE>
[1 rows x 3 columns]
Parameters | |
---|---|
Name | Description |
n |
int
Number of rows to return. |
columns |
label or list of labels
Column label(s) to order by. |
keep |
{'first', 'last', 'all'}, default 'first'
Where there are duplicate values: - |
Returns | |
---|---|
Type | Description |
DataFrame |
The first n rows ordered by the given columns in ascending order. |
nunique
nunique() -> bigframes.series.Series
Count number of distinct elements in each column.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [3, 1, 2], "B": [1, 2, 2]})
>>> df
A B
0 3 1
1 1 2
2 2 2
<BLANKLINE>
[3 rows x 2 columns]
>>> df.nunique()
A 3
B 2
dtype: Int64
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with number of distinct elements. |
pct_change
pct_change(periods: int = 1) -> bigframes.dataframe.DataFrame
Fractional change between the current and a prior element.
Computes the fractional change from the immediately previous row by default. This is useful in comparing the fraction of change in a time series of elements.
Parameter | |
---|---|
Name | Description |
periods |
int, default 1
Periods to shift for forming percent change. |
Returns | |
---|---|
Type | Description |
Series or DataFrame |
The same type as the calling object. |
peek
peek(n: int = 5, *, force: bool = True) -> pandas.core.frame.DataFrame
Preview n arbitrary rows from the dataframe. No guarantees about row selection or ordering.
DataFrame.peek(force=False)
will always be very fast, but will not succeed if data requires
full data scanning. Using force=True
will always succeed, but may be perform queries.
Query results will be cached so that future steps will benefit from these queries.
Parameters | |
---|---|
Name | Description |
n |
int, default 5
The number of rows to select from the dataframe. Which N rows are returned is non-deterministic. |
force |
bool, default True
If the data cannot be peeked efficiently, the dataframe will instead be fully materialized as part of the operation if |
Exceptions | |
---|---|
Type | Description |
ValueError |
If force=False and data cannot be efficiently peeked. |
Returns | |
---|---|
Type | Description |
pandas.DataFrame |
A pandas DataFrame with n rows. |
pivot
pivot(
*,
columns: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
index: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
values: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None
) -> bigframes.dataframe.DataFrame
Return reshaped DataFrame organized by given index / column values.
Reshape data (produce a "pivot" table) based on column values. Uses
unique values from specified index
/ columns
to form axes of the
resulting DataFrame. This function does not support data
aggregation, multiple values will result in a MultiIndex in the
columns.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... "foo": ["one", "one", "one", "two", "two"],
... "bar": ["A", "B", "C", "A", "B"],
... "baz": [1, 2, 3, 4, 5],
... "zoo": ['x', 'y', 'z', 'q', 'w']
... })
>>> df
foo bar baz zoo
0 one A 1 x
1 one B 2 y
2 one C 3 z
3 two A 4 q
4 two B 5 w
<BLANKLINE>
[5 rows x 4 columns]
Using pivot
without optional arguments:
>>> df.pivot(columns='foo')
bar baz zoo
foo one two one two one two
0 A <NA> 1 <NA> x <NA>
1 B <NA> 2 <NA> y <NA>
2 C <NA> 3 <NA> z <NA>
3 <NA> A <NA> 4 <NA> q
4 <NA> B <NA> 5 <NA> w
<BLANKLINE>
[5 rows x 6 columns]
Using pivot
with index
and values
:
>>> df.pivot(columns='foo', index='bar', values='baz')
foo one two
bar
A 1 4
B 2 5
C 3 <NA>
<BLANKLINE>
[3 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
columns |
str or object or a list of str
Column to use to make new frame's columns. |
index |
str or object or a list of str, optional
Column to use to make new frame's index. If not given, uses existing index. |
values |
str, object or a list of the previous, optional
Column(s) to use for populating new frame's values. If not specified, all remaining columns will be used and the result will have hierarchically indexed columns. |
Returns | |
---|---|
Type | Description |
DataFrame |
Returns reshaped DataFrame. |
pivot_table
pivot_table(
values: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
index: typing.Optional[
typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]]
] = None,
columns: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = None,
aggfunc: str = "mean",
) -> bigframes.dataframe.DataFrame
Create a spreadsheet-style pivot table as a DataFrame.
The levels in the pivot table will be stored in MultiIndex objects (hierarchical indexes) on the index and columns of the result DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'Product': ['Product A', 'Product B', 'Product A', 'Product B', 'Product A', 'Product B'],
... 'Region': ['East', 'West', 'East', 'West', 'West', 'East'],
... 'Sales': [100, 200, 150, 100, 200, 150],
... 'Rating': [3, 5, 4, 3, 3, 5]
... })
>>> df
Product Region Sales Rating
0 Product A East 100 3
1 Product B West 200 5
2 Product A East 150 4
3 Product B West 100 3
4 Product A West 200 3
5 Product B East 150 5
<BLANKLINE>
[6 rows x 4 columns]
Using pivot_table
with default aggfunc "mean":
>>> pivot_table = df.pivot_table(
... values=['Sales', 'Rating'],
... index='Product',
... columns='Region'
... )
>>> pivot_table
Rating Sales
Region East West East West
Product
Product A 3.5 3.0 125.0 200.0
Product B 5.0 4.0 150.0 150.0
<BLANKLINE>
[2 rows x 4 columns]
Using pivot_table
with specified aggfunc "max":
>>> pivot_table = df.pivot_table(
... values=['Sales', 'Rating'],
... index='Product',
... columns='Region',
... aggfunc="max"
... )
>>> pivot_table
Rating Sales
Region East West East West
Product
Product A 4 3 150 200
Product B 5 5 150 200
<BLANKLINE>
[2 rows x 4 columns]
Parameters | |
---|---|
Name | Description |
values |
str, object or a list of the previous, optional
Column(s) to use for populating new frame's values. If not specified, all remaining columns will be used and the result will have hierarchically indexed columns. |
index |
str or object or a list of str, optional
Column to use to make new frame's index. If not given, uses existing index. |
columns |
str or object or a list of str
Column to use to make new frame's columns. |
aggfunc |
str, default "mean"
Aggregation function name to compute summary statistics (e.g., 'sum', 'mean'). |
Returns | |
---|---|
Type | Description |
DataFrame |
An Excel style pivot table. |
pow
pow(
other: int | bigframes.series.Series, axis: str | int = "columns"
) -> bigframes.dataframe.DataFrame
Get Exponential power of dataframe and other, element-wise (binary operator **
).
Equivalent to dataframe ** other
, but with support to substitute a fill_value
for missing data in one of the inputs. With reverse version, rpow
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].pow(df['B'])
0 1
1 32
2 729
dtype: Int64
You can also use arithmetic operator **
:
>>> df['A'] ** (df['B'])
0 1
1 32
2 729
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
prod
prod(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the product of the values over the requested axis.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3], "B": [4.5, 5.5, 6.5]})
>>> df
A B
0 1 4.5
1 2 5.5
2 3 6.5
<BLANKLINE>
[3 rows x 2 columns]
Calculating the product of each column(the default behavior without an explicit axis parameter):
>>> df.prod()
A 6.0
B 160.875
dtype: Float64
Calculating the product of each row:
>>> df.prod(axis=1)
0 4.5
1 11.0
2 19.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the product of the values. |
product
product(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the product of the values over the requested axis.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3], "B": [4.5, 5.5, 6.5]})
>>> df
A B
0 1 4.5
1 2 5.5
2 3 6.5
<BLANKLINE>
[3 rows x 2 columns]
Calculating the product of each column(the default behavior without an explicit axis parameter):
>>> df.prod()
A 6.0
B 160.875
dtype: Float64
Calculating the product of each row:
>>> df.prod(axis=1)
0 4.5
1 11.0
2 19.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the product of the values. |
quantile
quantile(
q: typing.Union[float, typing.Sequence[float]] = 0.5, *, numeric_only: bool = False
)
Return values at the given quantile over requested axis.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame(np.array([[1, 1], [2, 10], [3, 100], [4, 100]]),
... columns=['a', 'b'])
>>> df.quantile(.1)
a 1.3
b 3.7
Name: 0.1, dtype: Float64
>>> df.quantile([.1, .5])
a b
0.1 1.3 3.7
0.5 2.5 55.0
<BLANKLINE>
[2 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
q |
float or array-like, default 0.5 (50% quantile)
Value between 0 <= q <= 1, the quantile(s) to compute. |
numeric_only |
bool, default False
Include only |
Returns | |
---|---|
Type | Description |
Series or DataFrame |
If q is an array, a DataFrame will be returned where the index is q , the columns are the columns of self, and the values are the quantiles. If q is a float, a Series will be returned where the index is the columns of self and the values are the quantiles. |
query
query(expr: str) -> bigframes.dataframe.DataFrame
Query the columns of a DataFrame with a boolean expression.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': range(1, 6),
... 'B': range(10, 0, -2),
... 'C C': range(10, 5, -1)})
>>> df
A B C C
0 1 10 10
1 2 8 9
2 3 6 8
3 4 4 7
4 5 2 6
<BLANKLINE>
[5 rows x 3 columns]
>>> df.query('A > B')
A B C C
4 5 2 6
<BLANKLINE>
[1 rows x 3 columns]
The previous expression is equivalent to
>>> df[df.A > df.B]
A B C C
4 5 2 6
<BLANKLINE>
[1 rows x 3 columns]
For columns with spaces in their name, you can use backtick quoting.
>>> df.query('B == `C C`')
A B C C
0 1 10 10
<BLANKLINE>
[1 rows x 3 columns]
The previous expression is equivalent to
>>> df[df.B == df['C C']]
A B C C
0 1 10 10
<BLANKLINE>
[1 rows x 3 columns]
Parameter | |
---|---|
Name | Description |
expr |
str
The query string to evaluate. You can refer to variables in the environment by prefixing them with an '@' character like |
radd
radd(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get addition of DataFrame and other, element-wise (binary operator +
).
Equivalent to other + dataframe
. With reverse version, add
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].radd(df['B'])
0 5
1 7
2 9
dtype: Int64
You can also use arithmetic operator +
:
>>> df['A'] + df['B']
0 5
1 7
2 9
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rank
rank(
axis=0,
method: str = "average",
numeric_only=False,
na_option: str = "keep",
ascending=True,
) -> bigframes.dataframe.DataFrame
Compute numerical data ranks (1 through n) along axis.
By default, equal values are assigned a rank that is the average of the ranks of those values.
Parameters | |
---|---|
Name | Description |
method |
{'average', 'min', 'max', 'first', 'dense'}, default 'average'
How to rank the group of records that have the same value (i.e. ties): |
numeric_only |
bool, default False
For DataFrame objects, rank only numeric columns if set to True. |
na_option |
{'keep', 'top', 'bottom'}, default 'keep'
How to rank NaN values: |
ascending |
bool, default True
Whether or not the elements should be ranked in ascending order. |
Returns | |
---|---|
Type | Description |
same type as caller |
Return a Series or DataFrame with data ranks as values. |
rdiv
rdiv(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get floating division of DataFrame and other, element-wise (binary operator /
).
Equivalent to other / dataframe
. With reverse version, truediv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rtruediv(df['B'])
0 4.0
1 2.5
2 2.0
dtype: Float64
It's equivalent to using arithmetic operator: /
:
>>> df['B'] / (df['A'])
0 4.0
1 2.5
2 2.0
dtype: Float64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
reindex
reindex(
labels=None,
*,
index=None,
columns=None,
axis: typing.Optional[typing.Union[str, int]] = None,
validate: typing.Optional[bool] = None
)
Conform DataFrame to new index with optional filling logic.
Places NA in locations having no value in the previous index. A new object is produced.
Parameters | |
---|---|
Name | Description |
labels |
array-like, optional
New labels / index to conform the axis specified by 'axis' to. |
index |
array-like, optional
New labels for the index. Preferably an Index object to avoid duplicating data. |
columns |
array-like, optional
New labels for the columns. Preferably an Index object to avoid duplicating data. |
axis |
int or str, optional
Axis to target. Can be either the axis name ('index', 'columns') or number (0, 1). |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame with changed index. |
reindex_like
reindex_like(
other: bigframes.dataframe.DataFrame, *, validate: typing.Optional[bool] = None
)
Return an object with matching indices as other object.
Conform the object to the same index on all axes. Optional filling logic, placing Null in locations having no value in the previous index.
Parameter | |
---|---|
Name | Description |
other |
Object of the same data type
Its row and column indices are used to define the new indices of this object. |
Returns | |
---|---|
Type | Description |
Series or DataFrame |
Same type as caller, but with changed indices on each axis. |
rename
rename(
*, columns: typing.Mapping[typing.Hashable, typing.Hashable]
) -> bigframes.dataframe.DataFrame
Rename columns.
Dict values must be unique (1-to-1). Labels not contained in a dict will be left as-is. Extra labels listed don't throw an error.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]})
>>> df
A B
0 1 4
1 2 5
2 3 6
<BLANKLINE>
[3 rows x 2 columns]
Rename columns using a mapping:
>>> df.rename(columns={"A": "col1", "B": "col2"})
col1 col2
0 1 4
1 2 5
2 3 6
<BLANKLINE>
[3 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
columns |
Mapping
Dict-like from old column labels to new column labels. |
Exceptions | |
---|---|
Type | Description |
KeyError |
If any of the labels is not found. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame with the renamed axis labels. |
rename_axis
rename_axis(
mapper: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]], **kwargs
) -> bigframes.dataframe.DataFrame
Set the name of the axis for the index.
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame with the new index name |
reorder_levels
reorder_levels(
order: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
axis: int | str = 0,
)
Rearrange index levels using input order. May not drop or duplicate levels.
Parameters | |
---|---|
Name | Description |
order |
list of int or list of str
List representing new level order. Reference level by number (position) or by key (label). |
axis |
{0 or 'index', 1 or 'columns'}, default 0
Where to reorder levels. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame of rearranged index. |
replace
replace(to_replace: typing.Any, value: typing.Any = None, *, regex: bool = False)
Replace values given in to_replace
with value
.
Values of the Series/DataFrame are replaced with other values dynamically.
This differs from updating with .loc
or .iloc
, which require
you to specify a location to update with some value.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'int_col': [1, 1, 2, 3],
... 'string_col': ["a", "b", "c", "b"],
... })
Using scalar to_replace
and value
:
>>> df.replace("b", "e")
int_col string_col
0 1 a
1 1 e
2 2 c
3 3 e
<BLANKLINE>
[4 rows x 2 columns]
Using dictionary:
>>> df.replace({"a": "e", 2: 5})
int_col string_col
0 1 e
1 1 b
2 5 c
3 3 b
<BLANKLINE>
[4 rows x 2 columns]
Using regex:
>>> df.replace("[ab]", "e", regex=True)
int_col string_col
0 1 e
1 1 e
2 2 c
3 3 e
<BLANKLINE>
[4 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
to_replace |
str, regex, list, int, float or None
How to find the values that will be replaced. numeric: numeric values equal to |
value |
scalar, default None
Value to replace any values matching |
regex |
bool, default False
Whether to interpret |
Returns | |
---|---|
Type | Description |
Series/DataFrame |
Object after replacement. |
reset_index
reset_index(*, drop: bool = False) -> bigframes.dataframe.DataFrame
Reset the index.
Reset the index of the DataFrame, and use the default one instead.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> import numpy as np
>>> df = bpd.DataFrame([('bird', 389.0),
... ('bird', 24.0),
... ('mammal', 80.5),
... ('mammal', np.nan)],
... index=['falcon', 'parrot', 'lion', 'monkey'],
... columns=('class', 'max_speed'))
>>> df
class max_speed
falcon bird 389.0
parrot bird 24.0
lion mammal 80.5
monkey mammal <NA>
<BLANKLINE>
[4 rows x 2 columns]
When we reset the index, the old index is added as a column, and a new sequential index is used:
>>> df.reset_index()
index class max_speed
0 falcon bird 389.0
1 parrot bird 24.0
2 lion mammal 80.5
3 monkey mammal <NA>
<BLANKLINE>
[4 rows x 3 columns]
We can use the drop
parameter to avoid the old index being added as a column:
>>> df.reset_index(drop=True)
class max_speed
0 bird 389.0
1 bird 24.0
2 mammal 80.5
3 mammal <NA>
<BLANKLINE>
[4 rows x 2 columns]
You can also use reset_index
with MultiIndex
.
>>> import pandas as pd
>>> index = pd.MultiIndex.from_tuples([('bird', 'falcon'),
... ('bird', 'parrot'),
... ('mammal', 'lion'),
... ('mammal', 'monkey')],
... names=['class', 'name'])
>>> columns = ['speed', 'max']
>>> df = bpd.DataFrame([(389.0, 'fly'),
... (24.0, 'fly'),
... (80.5, 'run'),
... (np.nan, 'jump')],
... index=index,
... columns=columns)
>>> df
speed max
class name
bird falcon 389.0 fly
parrot 24.0 fly
mammal lion 80.5 run
monkey <NA> jump
<BLANKLINE>
[4 rows x 2 columns]
>>> df.reset_index()
class name speed max
0 bird falcon 389.0 fly
1 bird parrot 24.0 fly
2 mammal lion 80.5 run
3 mammal monkey <NA> jump
<BLANKLINE>
[4 rows x 4 columns]
>>> df.reset_index(drop=True)
speed max
0 389.0 fly
1 24.0 fly
2 80.5 run
3 <NA> jump
<BLANKLINE>
[4 rows x 2 columns]
Parameter | |
---|---|
Name | Description |
drop |
bool, default False
Do not try to insert index into dataframe columns. This resets the index to the default integer index. |
Returns | |
---|---|
Type | Description |
bigframes.dataframe.DataFrame |
DataFrame with the new index. |
rfloordiv
rfloordiv(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get integer division of DataFrame and other, element-wise (binary operator //
).
Equivalent to other // dataframe
. With reverse version, rfloordiv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rfloordiv(df['B'])
0 4
1 2
2 2
dtype: Int64
It's equivalent to using arithmetic operator: //
:
>>> df['B'] // (df['A'])
0 4
1 2
2 2
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rmod
rmod(
other: int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get modulo of DataFrame and other, element-wise (binary operator %
).
Equivalent to other % dataframe
. With reverse version, mod
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rmod(df['B'])
0 0
1 1
2 0
dtype: Int64
It's equivalent to using arithmetic operator: %
:
>>> df['B'] % (df['A'])
0 0
1 1
2 0
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rmul
rmul(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get multiplication of DataFrame and other, element-wise (binary operator *
).
Equivalent to other * dataframe
. With reverse version, mul
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].rmul(df['B'])
0 4
1 10
2 18
dtype: Int64
You can also use arithmetic operator *
:
>>> df['A'] * (df['B'])
0 4
1 10
2 18
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rolling
rolling(window: int, min_periods=None) -> bigframes.core.window.Window
Provide rolling window calculations.
Parameters | |
---|---|
Name | Description |
window |
int, timedelta, str, offset, or BaseIndexer subclass
Size of the moving window. If an integer, the fixed number of observations used for each window. If a timedelta, str, or offset, the time period of each window. Each window will be a variable sized based on the observations included in the time-period. This is only valid for datetime-like indexes. To learn more about the offsets & frequency strings, please see |
min_periods |
int, default None
Minimum number of observations in window required to have a value; otherwise, result is |
Returns | |
---|---|
Type | Description |
bigframes.core.window.Window |
Window subclass if a win_type is passed. Rolling subclass if win_type is not passed. |
rpow
rpow(
other: int | bigframes.series.Series, axis: str | int = "columns"
) -> bigframes.dataframe.DataFrame
Get Exponential power of dataframe and other, element-wise (binary operator rpow
).
Equivalent to other ** dataframe
, but with support to substitute a fill_value
for missing data in one of the inputs. With reverse version, pow
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rpow(df['B'])
0 4
1 25
2 216
dtype: Int64
It's equivalent to using arithmetic operator: **
:
>>> df['B'] ** (df['A'])
0 4
1 25
2 216
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rsub
rsub(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get subtraction of DataFrame and other, element-wise (binary operator -
).
Equivalent to other - dataframe
. With reverse version, sub
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rsub(df['B'])
0 3
1 3
2 3
dtype: Int64
It's equivalent to using arithmetic operator: -
:
>>> df['B'] - (df['A'])
0 3
1 3
2 3
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
rtruediv
rtruediv(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get floating division of DataFrame and other, element-wise (binary operator /
).
Equivalent to other / dataframe
. With reverse version, truediv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
>>> df['A'].rtruediv(df['B'])
0 4.0
1 2.5
2 2.0
dtype: Float64
It's equivalent to using arithmetic operator: /
:
>>> df['B'] / (df['A'])
0 4.0
1 2.5
2 2.0
dtype: Float64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
sample
sample(
n: typing.Optional[int] = None,
frac: typing.Optional[float] = None,
*,
random_state: typing.Optional[int] = None,
sort: typing.Optional[typing.Union[bool, typing.Literal["random"]]] = "random"
) -> bigframes.dataframe.DataFrame
Return a random sample of items from an axis of object.
You can use random_state
for reproducibility.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'num_legs': [2, 4, 8, 0],
... 'num_wings': [2, 0, 0, 0],
... 'num_specimen_seen': [10, 2, 1, 8]},
... index=['falcon', 'dog', 'spider', 'fish'])
>>> df
num_legs num_wings num_specimen_seen
falcon 2 2 10
dog 4 0 2
spider 8 0 1
fish 0 0 8
<BLANKLINE>
[4 rows x 3 columns]
Fetch one random row from the DataFrame (Note that we use random_state
to ensure reproducibility of the examples):
>>> df.sample(random_state=1)
num_legs num_wings num_specimen_seen
dog 4 0 2
<BLANKLINE>
[1 rows x 3 columns]
A random 50% sample of the DataFrame:
>>> df.sample(frac=0.5, random_state=1)
num_legs num_wings num_specimen_seen
dog 4 0 2
fish 0 0 8
<BLANKLINE>
[2 rows x 3 columns]
Extract 3 random elements from the Series df['num_legs']
:
>>> s = df['num_legs']
>>> s.sample(n=3, random_state=1)
dog 4
fish 0
spider 8
Name: num_legs, dtype: Int64
Parameters | |
---|---|
Name | Description |
n |
Optional[int], default None
Number of items from axis to return. Cannot be used with |
frac |
Optional[float], default None
Fraction of axis items to return. Cannot be used with |
random_state |
Optional[int], default None
Seed for random number generator. |
sort |
Optional[bool|Literal["random"]], default "random"
|
select_dtypes
select_dtypes(include=None, exclude=None) -> bigframes.dataframe.DataFrame
Return a subset of the DataFrame's columns based on the column dtypes.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': ["hello", "world"], 'col3': [True, False]})
>>> df.select_dtypes(include=['Int64'])
col1
0 1
1 2
<BLANKLINE>
[2 rows x 1 columns]
>>> df.select_dtypes(exclude=['Int64'])
col2 col3
0 hello True
1 world False
<BLANKLINE>
[2 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
include |
scalar or list-like
A selection of dtypes or strings to be included. |
exclude |
scalar or list-like
A selection of dtypes or strings to be excluded. |
Returns | |
---|---|
Type | Description |
DataFrame |
The subset of the frame including the dtypes in include and excluding the dtypes in exclude . |
set_index
set_index(
keys: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]],
append: bool = False,
drop: bool = True,
) -> bigframes.dataframe.DataFrame
Set the DataFrame index using existing columns.
Set the DataFrame index (row labels) using one existing column. The index can replace the existing index.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'month': [1, 4, 7, 10],
... 'year': [2012, 2014, 2013, 2014],
... 'sale': [55, 40, 84, 31]})
>>> df
month year sale
0 1 2012 55
1 4 2014 40
2 7 2013 84
3 10 2014 31
<BLANKLINE>
[4 rows x 3 columns]
Set the 'month' column to become the index:
>>> df.set_index('month')
year sale
month
1 2012 55
4 2014 40
7 2013 84
10 2014 31
<BLANKLINE>
[4 rows x 2 columns]
Create a MultiIndex using columns 'year' and 'month':
>>> df.set_index(['year', 'month'])
sale
year month
2012 1 55
2014 4 40
2013 7 84
2014 10 31
<BLANKLINE>
[4 rows x 1 columns]
Returns | |
---|---|
Type | Description |
DataFrame |
Changed row labels. |
shift
shift(periods: int = 1) -> bigframes.dataframe.DataFrame
Shift index by desired number of periods.
Shifts the index without realigning the data.
Returns | |
---|---|
Type | Description |
NDFrame |
Copy of input object, shifted. |
skew
skew(*, numeric_only: bool = False)
Return unbiased skew over columns.
Normalized by N-1.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 2, 3, 4, 5],
... 'B': [5, 4, 3, 2, 1],
... 'C': [2, 2, 3, 2, 2]})
>>> df
A B C
0 1 5 2
1 2 4 2
2 3 3 3
3 4 2 2
4 5 1 2
<BLANKLINE>
[5 rows x 3 columns]
Calculating the skewness of each column.
>>> df.skew()
A 0.0
B 0.0
C 2.236068
dtype: Float64
Parameter | |
---|---|
Name | Description |
numeric_only |
bool, default False
Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
Series |
Series. |
sort_index
sort_index(
ascending: bool = True, na_position: typing.Literal["first", "last"] = "last"
) -> bigframes.dataframe.DataFrame
Sort object by labels (along an axis).
Returns | |
---|---|
Type | Description |
DataFrame |
The original DataFrame sorted by the labels. |
sort_values
sort_values(
by: typing.Union[str, typing.Sequence[str]],
*,
ascending: typing.Union[bool, typing.Sequence[bool]] = True,
kind: str = "quicksort",
na_position: typing.Literal["first", "last"] = "last"
) -> bigframes.dataframe.DataFrame
Sort by the values along row axis.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'col1': ['A', 'A', 'B', bpd.NA, 'D', 'C'],
... 'col2': [2, 1, 9, 8, 7, 4],
... 'col3': [0, 1, 9, 4, 2, 3],
... 'col4': ['a', 'B', 'c', 'D', 'e', 'F']
... })
>>> df
col1 col2 col3 col4
0 A 2 0 a
1 A 1 1 B
2 B 9 9 c
3 <NA> 8 4 D
4 D 7 2 e
5 C 4 3 F
<BLANKLINE>
[6 rows x 4 columns]
Sort by col1:
>>> df.sort_values(by=['col1'])
col1 col2 col3 col4
0 A 2 0 a
1 A 1 1 B
2 B 9 9 c
5 C 4 3 F
4 D 7 2 e
3 <NA> 8 4 D
<BLANKLINE>
[6 rows x 4 columns]
Sort by multiple columns:
>>> df.sort_values(by=['col1', 'col2'])
col1 col2 col3 col4
1 A 1 1 B
0 A 2 0 a
2 B 9 9 c
5 C 4 3 F
4 D 7 2 e
3 <NA> 8 4 D
<BLANKLINE>
[6 rows x 4 columns]
Sort Descending:
>>> df.sort_values(by='col1', ascending=False)
col1 col2 col3 col4
4 D 7 2 e
5 C 4 3 F
2 B 9 9 c
0 A 2 0 a
1 A 1 1 B
3 <NA> 8 4 D
<BLANKLINE>
[6 rows x 4 columns]
Putting NAs first:
>>> df.sort_values(by='col1', ascending=False, na_position='first')
col1 col2 col3 col4
3 <NA> 8 4 D
4 D 7 2 e
5 C 4 3 F
2 B 9 9 c
0 A 2 0 a
1 A 1 1 B
<BLANKLINE>
[6 rows x 4 columns]
Parameters | |
---|---|
Name | Description |
by |
str or Sequence[str]
Name or list of names to sort by. |
ascending |
bool or Sequence[bool], default True
Sort ascending vs. descending. Specify list for multiple sort orders. If this is a list of bools, must match the length of the by. |
kind |
str, default 'quicksort'
Choice of sorting algorithm. Accepts 'quicksort', 'mergesort', 'heapsort', 'stable'. Ignored except when determining whether to sort stably. 'mergesort' or 'stable' will result in stable reorder. |
na_position |
{'first', 'last'}, default
|
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame with sorted values. |
stack
stack(level: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = -1)
Stack the prescribed level(s) from columns to index.
Return a reshaped DataFrame or Series having a multi-level index with one or more new inner-most levels compared to the current DataFrame. The new inner-most levels are created by pivoting the columns of the current dataframe:
- if the columns have a single level, the output is a Series;
- if the columns have multiple levels, the new index level(s) is (are) taken from the prescribed level(s) and the output is a DataFrame.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 3], 'B': [2, 4]}, index=['foo', 'bar'])
>>> df
A B
foo 1 2
bar 3 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df.stack()
foo A 1
B 2
bar A 3
B 4
dtype: Int64
Parameter | |
---|---|
Name | Description |
level |
int, str, or list of these, default -1 (last level)
Level(s) to stack from the column axis onto the index axis. |
Returns | |
---|---|
Type | Description |
DataFrame or Series |
Stacked dataframe or series. |
std
std(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return sample standard deviation over columns.
Normalized by N-1 by default.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 2, 3, 4, 5],
... "B": [3, 4, 3, 2, 1],
... "C": [2, 2, 3, 2, 2]})
>>> df
A B C
0 1 3 2
1 2 4 2
2 3 3 3
3 4 2 2
4 5 1 2
<BLANKLINE>
[5 rows x 3 columns]
Calculating the standard deviation of each column:
>>> df.std()
A 1.581139
B 1.140175
C 0.447214
dtype: Float64
Parameter | |
---|---|
Name | Description |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with sample standard deviation. |
sub
sub(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get subtraction of DataFrame and other, element-wise (binary operator -
).
Equivalent to dataframe - other
. With reverse version, rsub
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].sub(df['B'])
0 -3
1 -3
2 -3
dtype: Int64
You can also use arithmetic operator -
:
>>> df['A'] - (df['B'])
0 -3
1 -3
2 -3
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
subtract
subtract(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get subtraction of DataFrame and other, element-wise (binary operator -
).
Equivalent to dataframe - other
. With reverse version, rsub
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].sub(df['B'])
0 -3
1 -3
2 -3
dtype: Int64
You can also use arithmetic operator -
:
>>> df['A'] - (df['B'])
0 -3
1 -3
2 -3
dtype: Int64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
sum
sum(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return the sum of the values over the requested axis.
This is equivalent to the method numpy.sum
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Calculating the sum of each column (the default behavior without an explicit axis parameter).
>>> df.sum()
A 4
B 6
dtype: Int64
Calculating the sum of each row.
>>> df.sum(axis=1)
0 3
1 7
dtype: Int64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with the sum of values. |
swaplevel
swaplevel(i: int = -2, j: int = -1, axis: int | str = 0)
Swap levels i and j in a MultiIndex
.
Default is to swap the two innermost levels of the index.
Parameters | |
---|---|
Name | Description |
i |
int or str
Levels of the indices to be swapped. Can pass level name as string. |
j |
int or str
Levels of the indices to be swapped. Can pass level name as string. |
axis |
{0 or 'index', 1 or 'columns'}, default 0
The axis to swap levels on. 0 or 'index' for row-wise, 1 or 'columns' for column-wise. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame with levels swapped in MultiIndex. |
tail
tail(n: int = 5) -> bigframes.dataframe.DataFrame
Return the last n
rows.
This function returns last n
rows from the object based on
position. It is useful for quickly verifying data, for example,
after sorting or appending rows.
For negative values of n
, this function returns all rows except
the first |n|
rows, equivalent to df[|n|:]
.
If n is larger than the number of rows, this function returns all rows.
Parameter | |
---|---|
Name | Description |
n |
int, default 5
Number of rows to select. |
to_arrow
to_arrow(*, ordered: bool = True) -> pyarrow.lib.Table
Write DataFrame to an Arrow table / record batch.
Parameter | |
---|---|
Name | Description |
ordered |
bool, default True
Determines whether the resulting Arrow table will be ordered. In some cases, unordered may result in a faster-executing query. |
Returns | |
---|---|
Type | Description |
pyarrow.Table |
A pyarrow Table with all rows and columns of this DataFrame. |
to_csv
to_csv(
path_or_buf=None, sep=",", *, header: bool = True, index: bool = True
) -> typing.Optional[str]
Write object to a comma-separated values (csv) file on Cloud Storage.
Parameters | |
---|---|
Name | Description |
path_or_buf |
str, path object, file-like object, or None, default None
String, path object (implementing os.PathLike[str]), or file-like object implementing a write() function. If None, the result is returned as a string. If a non-binary file object is passed, it should be opened with |
index |
bool, default True
If True, write row names (index). |
Returns | |
---|---|
Type | Description |
None or str |
If path_or_buf is None, returns the resulting json format as a string. Otherwise returns None. |
to_dict
to_dict(orient: typing.Literal['dict', 'list', 'series', 'split', 'tight', 'records', 'index'] = 'dict', into: type[dict] = <class 'dict'>, **kwargs) -> dict | list[dict]
Convert the DataFrame to a dictionary.
The type of the key-value pairs can be customized with the parameters (see below).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.to_dict()
{'col1': {np.int64(0): 1, np.int64(1): 2}, 'col2': {np.int64(0): 3, np.int64(1): 4}}
You can specify the return orientation.
>>> df.to_dict('series')
{'col1': 0 1
1 2
Name: col1, dtype: Int64,
'col2': 0 3
1 4
Name: col2, dtype: Int64}
>>> df.to_dict('split')
{'index': [0, 1], 'columns': ['col1', 'col2'], 'data': [[1, 3], [2, 4]]}
>>> df.to_dict("tight")
{'index': [0, 1],
'columns': ['col1', 'col2'],
'data': [[1, 3], [2, 4]],
'index_names': [None],
'column_names': [None]}
Parameters | |
---|---|
Name | Description |
orient |
str {'dict', 'list', 'series', 'split', 'tight', 'records', 'index'}
Determines the type of the values of the dictionary. 'dict' (default) : dict like {column -> {index -> value}}. 'list' : dict like {column -> [values]}. 'series' : dict like {column -> Series(values)}. split' : dict like {'index' -> [index], 'columns' -> [columns], 'data' -> [values]}. 'tight' : dict like {'index' -> [index], 'columns' -> [columns], 'data' -> [values], 'index_names' -> [index.names], 'column_names' -> [column.names]}. 'records' : list like [{column -> value}, ... , {column -> value}]. 'index' : dict like {index -> {column -> value}}. |
into |
class, default dict
The collections.abc.Mapping subclass used for all Mappings in the return value. Can be the actual class or an empty instance of the mapping type you want. If you want a collections.defaultdict, you must pass it initialized. |
index |
bool, default True
Whether to include the index item (and index_names item if |
Returns | |
---|---|
Type | Description |
dict or list of dict |
Return a collections.abc.Mapping object representing the DataFrame. The resulting transformation depends on the orient parameter. |
to_excel
to_excel(excel_writer, sheet_name: str = "Sheet1", **kwargs) -> None
Write DataFrame to an Excel sheet.
To write a single DataFrame to an Excel .xlsx file it is only necessary to
specify a target file name. To write to multiple sheets it is necessary to
create an ExcelWriter
object with a target file name, and specify a sheet
in the file to write to.
Multiple sheets may be written to by specifying unique sheet_name
.
With all data written to the file it is necessary to save the changes.
Note that creating an ExcelWriter
object with a file name that already
exists will result in the contents of the existing file being erased.
Examples:
>>> import bigframes.pandas as bpd
>>> import tempfile
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.to_excel(tempfile.TemporaryFile())
Parameters | |
---|---|
Name | Description |
excel_writer |
path-like, file-like, or ExcelWriter object
File path or existing ExcelWriter. |
sheet_name |
str, default 'Sheet1'
Name of sheet which will contain DataFrame. |
to_gbq
to_gbq(
destination_table: typing.Optional[str] = None,
*,
if_exists: typing.Optional[typing.Literal["fail", "replace", "append"]] = None,
index: bool = True,
ordering_id: typing.Optional[str] = None,
clustering_columns: typing.Union[
pandas.core.indexes.base.Index, typing.Iterable[typing.Hashable]
] = (),
labels: dict[str, str] = {}
) -> str
Write a DataFrame to a BigQuery table.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
Write a DataFrame to a BigQuery table.
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> # destination_table = PROJECT_ID + "." + DATASET_ID + "." + TABLE_NAME
>>> df.to_gbq("bigframes-dev.birds.test-numbers", if_exists="replace")
'bigframes-dev.birds.test-numbers'
Write a DataFrame to a temporary BigQuery table in the anonymous dataset.
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> destination = df.to_gbq(ordering_id="ordering_id")
>>> # The table created can be read outside of the current session.
>>> bpd.close_session() # Optional, to demonstrate a new session.
>>> bpd.read_gbq(destination, index_col="ordering_id")
col1 col2
ordering_id
0 1 3
1 2 4
<BLANKLINE>
[2 rows x 2 columns]
Write a DataFrame to a BigQuery table with clustering columns:
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4], 'col3': [5, 6]})
>>> clustering_cols = ['col1', 'col3']
>>> df.to_gbq(
... "bigframes-dev.birds.test-clusters",
... if_exists="replace",
... clustering_columns=clustering_cols,
... )
'bigframes-dev.birds.test-clusters'
Parameters | |
---|---|
Name | Description |
destination_table |
Optional[str]
Name of table to be written, in the form |
if_exists |
Optional[str]
Behavior when the destination table exists. When |
index |
bool. default True
whether write row names (index) or not. |
ordering_id |
Optional[str], default None
If set, write the ordering of the DataFrame as a column in the result table with this name. |
clustering_columns |
Union[pd.Index, Iterable[Hashable]], default ()
Specifies the columns for clustering in the BigQuery table. The order of columns in this list is significant for clustering hierarchy. Index columns may be included in clustering if the |
labels |
dict[str, str], default None
Specifies table labels within BigQuery |
Returns | |
---|---|
Type | Description |
str |
The fully-qualified ID for the written table, in the form project.dataset.tablename . |
to_html
to_html(
buf=None,
columns: typing.Optional[typing.Sequence[str]] = None,
col_space=None,
header: bool = True,
index: bool = True,
na_rep: str = "NaN",
formatters=None,
float_format=None,
sparsify: bool | None = None,
index_names: bool = True,
justify: str | None = None,
max_rows: int | None = None,
max_cols: int | None = None,
show_dimensions: bool = False,
decimal: str = ".",
bold_rows: bool = True,
classes: str | list | tuple | None = None,
escape: bool = True,
notebook: bool = False,
border: int | None = None,
table_id: str | None = None,
render_links: bool = False,
encoding: str | None = None,
) -> str
Render a DataFrame as an HTML table.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> print(df.to_html())
<table border="1" class="dataframe">
<thead>
<tr style="text-align: right;">
<th></th>
<th>col1</th>
<th>col2</th>
</tr>
</thead>
<tbody>
<tr>
<th>0</th>
<td>1</td>
<td>3</td>
</tr>
<tr>
<th>1</th>
<td>2</td>
<td>4</td>
</tr>
</tbody>
</table>
Parameters | |
---|---|
Name | Description |
buf |
str, Path or StringIO-like, optional, default None
Buffer to write to. If None, the output is returned as a string. |
columns |
sequence, optional, default None
The subset of columns to write. Writes all columns by default. |
col_space |
str or int, list or dict of int or str, optional
The minimum width of each column in CSS length units. An int is assumed to be px units. |
header |
bool, optional
Whether to print column labels, default True. |
index |
bool, optional, default True
Whether to print index (row) labels. |
na_rep |
str, optional, default 'NaN'
String representation of NAN to use. |
formatters |
list, tuple or dict of one-param. functions, optional
Formatter functions to apply to columns' elements by position or name. The result of each function must be a unicode string. List/tuple must be of length equal to the number of columns. |
float_format |
one-parameter function, optional, default None
Formatter function to apply to columns' elements if they are floats. This function must return a unicode string and will be applied only to the non-NaN elements, with NaN being handled by na_rep. |
sparsify |
bool, optional, default True
Set to False for a DataFrame with a hierarchical index to print every multiindex key at each row. |
index_names |
bool, optional, default True
Prints the names of the indexes. |
justify |
str, default None
How to justify the column labels. If None uses the option from the print configuration (controlled by set_option), 'right' out of the box. Valid values are, 'left', 'right', 'center', 'justify', 'justify-all', 'start', 'end', 'inherit', 'match-parent', 'initial', 'unset'. |
max_rows |
int, optional
Maximum number of rows to display in the console. |
max_cols |
int, optional
Maximum number of columns to display in the console. |
show_dimensions |
bool, default False
Display DataFrame dimensions (number of rows by number of columns). |
decimal |
str, default '.'
Character recognized as decimal separator, e.g. ',' in Europe. |
bold_rows |
bool, default True
Make the row labels bold in the output. |
classes |
str or list or tuple, default None
CSS class(es) to apply to the resulting html table. |
escape |
bool, default True
Convert the characters <, >, and & to HTML-safe sequences. |
notebook |
bool, default False
Whether the generated HTML is for IPython Notebook. |
border |
int
A border=border attribute is included in the opening tag. Default pd.options.display.html.border.
|
table_id |
str, optional
A css id is included in the opening tag if specified.
|
render_links |
bool, default False
Convert URLs to HTML links. |
encoding |
str, default "utf-8"
Set character encoding. |
Returns | |
---|---|
Type | Description |
str or None |
If buf is None, returns the result as a string. Otherwise returns None. |
to_json
to_json(
path_or_buf=None,
orient: typing.Optional[
typing.Literal["split", "records", "index", "columns", "values", "table"]
] = None,
*,
lines: bool = False,
index: bool = True
) -> typing.Optional[str]
Convert the object to a JSON string, written to Cloud Storage.
Note NaN's and None will be converted to null and datetime objects will be converted to UNIX timestamps.
Parameters | |
---|---|
Name | Description |
path_or_buf |
str, path object, file-like object, or None, default None
String, path object (implementing os.PathLike[str]), or file-like object implementing a write() function. If None, the result is returned as a string. Can be a destination URI of Cloud Storage files(s) to store the extracted dataframe in format of |
orient |
{
Indication of expected JSON string format. * Series: - default is 'index' - allowed values are: {{'split', 'records', 'index', 'table'}}. * DataFrame: - default is 'columns' - allowed values are: {{'split', 'records', 'index', 'columns', 'values', 'table'}}. * The format of the JSON string: - 'split' : dict like {{'index' -> [index], 'columns' -> [columns], 'data' -> [values]}} - 'records' : list like [{{column -> value}}, ... , {{column -> value}}] - 'index' : dict like {{index -> {{column -> value}}}} - 'columns' : dict like {{column -> {{index -> value}}}} - 'values' : just the values array - 'table' : dict like {{'schema': {{schema}}, 'data': {{data}}}} Describing the data, where data component is like |
index |
bool, default True
If True, write row names (index). |
lines |
bool, default False
If 'orient' is 'records' write out line-delimited json format. Will throw ValueError if incorrect 'orient' since others are not list-like. |
Returns | |
---|---|
Type | Description |
None or str |
If path_or_buf is None, returns the resulting json format as a string. Otherwise returns None. |
to_latex
to_latex(
buf=None,
columns: typing.Optional[typing.Sequence] = None,
header: typing.Union[bool, typing.Sequence[str]] = True,
index: bool = True,
**kwargs
) -> str | None
Render object to a LaTeX tabular, longtable, or nested table.
Requires \usepackage{{booktabs}}
. The output can be copy/pasted
into a main LaTeX document or read from an external file
with \input{{table.tex}}
.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> print(df.to_latex())
\begin{tabular}{lrr}
\toprule
& col1 & col2 \\
\midrule
0 & 1 & 3 \\
1 & 2 & 4 \\
\bottomrule
\end{tabular}
<BLANKLINE>
Parameters | |
---|---|
Name | Description |
buf |
str, Path or StringIO-like, optional, default None
Buffer to write to. If None, the output is returned as a string. |
columns |
list of label, optional
The subset of columns to write. Writes all columns by default. |
header |
bool or list of str, default True
Write out the column names. If a list of strings is given, it is assumed to be aliases for the column names. |
index |
bool, default True
Write row names (index). |
to_markdown
to_markdown(buf=None, mode: str = "wt", index: bool = True, **kwargs) -> str | None
Print DataFrame in Markdown-friendly format.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> print(df.to_markdown())
| | col1 | col2 |
|---:|-------:|-------:|
| 0 | 1 | 3 |
| 1 | 2 | 4 |
Parameters | |
---|---|
Name | Description |
buf |
str, Path or StringIO-like, optional, default None
Buffer to write to. If None, the output is returned as a string. |
mode |
str, optional
Mode in which file is opened. |
index |
bool, optional, default True
Add index (row) labels. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame in Markdown-friendly format. |
to_numpy
to_numpy(dtype=None, copy=False, na_value=None, **kwargs) -> numpy.ndarray
Convert the DataFrame to a NumPy array.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.to_numpy()
array([[1, 3],
[2, 4]], dtype=object)
Parameters | |
---|---|
Name | Description |
dtype |
None
The dtype to pass to |
copy |
bool, default None
Whether to ensure that the returned value is not a view on another array. |
na_value |
Any, default None
The value to use for missing values. The default value depends on dtype and the dtypes of the DataFrame columns. |
Returns | |
---|---|
Type | Description |
numpy.ndarray |
The converted NumPy array. |
to_orc
to_orc(path=None, **kwargs) -> bytes | None
Write a DataFrame to the ORC format.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> import tempfile
>>> df.to_orc(tempfile.TemporaryFile())
Parameter | |
---|---|
Name | Description |
path |
str, file-like object or None, default None
If a string, it will be used as Root Directory path when writing a partitioned dataset. By file-like object, we refer to objects with a write() method, such as a file handle (e.g. via builtin open function). If path is None, a bytes object is returned. |
to_pandas
to_pandas(
max_download_size: typing.Optional[int] = None,
sampling_method: typing.Optional[str] = None,
random_state: typing.Optional[int] = None,
*,
ordered: bool = True
) -> pandas.core.frame.DataFrame
Write DataFrame to pandas DataFrame.
Parameters | |
---|---|
Name | Description |
max_download_size |
int, default None
Download size threshold in MB. If max_download_size is exceeded when downloading data (e.g., to_pandas()), the data will be downsampled if bigframes.options.sampling.enable_downsampling is True, otherwise, an error will be raised. If set to a value other than None, this will supersede the global config. |
sampling_method |
str, default None
Downsampling algorithms to be chosen from, the choices are: "head": This algorithm returns a portion of the data from the beginning. It is fast and requires minimal computations to perform the downsampling; "uniform": This algorithm returns uniform random samples of the data. If set to a value other than None, this will supersede the global config. |
random_state |
int, default None
The seed for the uniform downsampling algorithm. If provided, the uniform method may take longer to execute and require more computation. If set to a value other than None, this will supersede the global config. |
ordered |
bool, default True
Determines whether the resulting pandas dataframe will be ordered. In some cases, unordered may result in a faster-executing query. |
Returns | |
---|---|
Type | Description |
pandas.DataFrame |
A pandas DataFrame with all rows and columns of this DataFrame if the data_sampling_threshold_mb is not exceeded; otherwise, a pandas DataFrame with downsampled rows and all columns of this DataFrame. |
to_pandas_batches
to_pandas_batches(
page_size: typing.Optional[int] = None, max_results: typing.Optional[int] = None
) -> typing.Iterable[pandas.core.frame.DataFrame]
Stream DataFrame results to an iterable of pandas DataFrame.
page_size and max_results determine the size and number of batches, see https://cloud.google.com/python/docs/reference/bigquery/latest/google.cloud.bigquery.job.QueryJob#google_cloud_bigquery_job_QueryJob_result
Parameters | |
---|---|
Name | Description |
page_size |
int, default None
The size of each batch. |
max_results |
int, default None
If given, only download this many rows at maximum. |
Returns | |
---|---|
Type | Description |
Iterable[pandas.DataFrame] |
An iterable of smaller dataframes which combine to form the original dataframe. Results stream from bigquery, see https://cloud.google.com/python/docs/reference/bigquery/latest/google.cloud.bigquery.table.RowIterator#google_cloud_bigquery_table_RowIterator_to_arrow_iterable |
to_parquet
to_parquet(
path=None,
*,
compression: typing.Optional[typing.Literal["snappy", "gzip"]] = "snappy",
index: bool = True
) -> typing.Optional[bytes]
Write a DataFrame to the binary Parquet format.
This function writes the dataframe as a parquet file
<https://parquet.apache.org/>
_ to Cloud Storage.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> gcs_bucket = "gs://bigframes-dev-testing/sample_parquet*.parquet"
>>> df.to_parquet(path=gcs_bucket)
Parameters | |
---|---|
Name | Description |
path |
str, path object, file-like object, or None, default None
String, path object (implementing |
compression |
str, default 'snappy'
Name of the compression to use. Use |
index |
bool, default True
If |
to_pickle
to_pickle(path, **kwargs) -> None
Pickle (serialize) object to file.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> gcs_bucket = "gs://bigframes-dev-testing/sample_pickle_gcs.pkl"
>>> df.to_pickle(path=gcs_bucket)
Parameter | |
---|---|
Name | Description |
path |
str
File path where the pickled object will be stored. |
to_records
to_records(
index: bool = True, column_dtypes=None, index_dtypes=None
) -> numpy.rec.recarray
Convert DataFrame to a NumPy record array.
Index will be included as the first field of the record array if requested.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> df.to_records()
rec.array([(0, 1, 3), (1, 2, 4)],
dtype=[('index', '<i8'), ('col1', '<i8'), ('col2', '<i8')])
Parameters | |
---|---|
Name | Description |
index |
bool, default True
Include index in resulting record array, stored in 'index' field or using the index label, if set. |
column_dtypes |
str, type, dict, default None
If a string or type, the data type to store all columns. If a dictionary, a mapping of column names and indices (zero-indexed) to specific data types. |
index_dtypes |
str, type, dict, default None
If a string or type, the data type to store all index levels. If a dictionary, a mapping of index level names and indices (zero-indexed) to specific data types. This mapping is applied only if |
Returns | |
---|---|
Type | Description |
np.recarray |
NumPy ndarray with the DataFrame labels as fields and each row of the DataFrame as entries. |
to_string
to_string(
buf=None,
columns: typing.Optional[typing.Sequence[str]] = None,
col_space=None,
header: typing.Union[bool, typing.Sequence[str]] = True,
index: bool = True,
na_rep: str = "NaN",
formatters=None,
float_format=None,
sparsify: bool | None = None,
index_names: bool = True,
justify: str | None = None,
max_rows: int | None = None,
max_cols: int | None = None,
show_dimensions: bool = False,
decimal: str = ".",
line_width: int | None = None,
min_rows: int | None = None,
max_colwidth: int | None = None,
encoding: str | None = None,
) -> str | None
Render a DataFrame to a console-friendly tabular output.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'col1': [1, 2], 'col2': [3, 4]})
>>> print(df.to_string())
col1 col2
0 1 3
1 2 4
Parameters | |
---|---|
Name | Description |
buf |
str, Path or StringIO-like, optional, default None
Buffer to write to. If None, the output is returned as a string. |
columns |
sequence, optional, default None
The subset of columns to write. Writes all columns by default. |
col_space |
int, list or dict of int, optional
The minimum width of each column. |
header |
bool or sequence, optional
Write out the column names. If a list of strings is given, it is assumed to be aliases for the column names. |
index |
bool, optional, default True
Whether to print index (row) labels. |
na_rep |
str, optional, default 'NaN'
String representation of NAN to use. |
formatters |
list, tuple or dict of one-param. functions, optional
Formatter functions to apply to columns' elements by position or name. The result of each function must be a unicode string. List/tuple must be of length equal to the number of columns. |
float_format |
one-parameter function, optional, default None
Formatter function to apply to columns' elements if they are floats. The result of this function must be a unicode string. |
sparsify |
bool, optional, default True
Set to False for a DataFrame with a hierarchical index to print every multiindex key at each row. |
index_names |
bool, optional, default True
Prints the names of the indexes. |
justify |
str, default None
How to justify the column labels. If None uses the option from the print configuration (controlled by set_option), 'right' out of the box. Valid values are, 'left', 'right', 'center', 'justify', 'justify-all', 'start', 'end', 'inherit', 'match-parent', 'initial', 'unset'. |
max_rows |
int, optional
Maximum number of rows to display in the console. |
min_rows |
int, optional
The number of rows to display in the console in a truncated repr (when number of rows is above |
max_cols |
int, optional
Maximum number of columns to display in the console. |
show_dimensions |
bool, default False
Display DataFrame dimensions (number of rows by number of columns). |
decimal |
str, default '.'
Character recognized as decimal separator, e.g. ',' in Europe. |
line_width |
int, optional
Width to wrap a line in characters. |
max_colwidth |
int, optional
Max width to truncate each column in characters. By default, no limit. |
encoding |
str, default "utf-8"
Set character encoding. |
Returns | |
---|---|
Type | Description |
str or None |
If buf is None, returns the result as a string. Otherwise returns None. |
transpose
transpose() -> bigframes.dataframe.DataFrame
Transpose index and columns.
Reflect the DataFrame over its main diagonal by writing rows as columns
and vice-versa. The property .T
is an accessor to the method
transpose
.
All columns must be the same dtype (numerics can be coerced to a common supertype).
Examples:
**Square DataFrame with homogeneous dtype**
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> d1 = {'col1': [1, 2], 'col2': [3, 4]}
>>> df1 = bpd.DataFrame(data=d1)
>>> df1
col1 col2
0 1 3
1 2 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df1_transposed = df1.T # or df1.transpose()
>>> df1_transposed
0 1
col1 1 2
col2 3 4
<BLANKLINE>
[2 rows x 2 columns]
When the dtype is homogeneous in the original DataFrame, we get a
transposed DataFrame with the same dtype:
>>> df1.dtypes
col1 Int64
col2 Int64
dtype: object
>>> df1_transposed.dtypes
0 Int64
1 Int64
dtype: object
Returns | |
---|---|
Type | Description |
DataFrame |
The transposed DataFrame. |
truediv
truediv(
other: float | int | bigframes.series.Series | bigframes.dataframe.DataFrame,
axis: str | int = "columns",
) -> bigframes.dataframe.DataFrame
Get floating division of DataFrame and other, element-wise (binary operator /
).
Equivalent to dataframe / other
. With reverse version, rtruediv
.
Among flexible wrappers (add
, sub
, mul
, div
, mod
, pow
) to
arithmetic operators: +
, -
, *
, /
, //
, %
, **
.
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({
... 'A': [1, 2, 3],
... 'B': [4, 5, 6],
... })
You can use method name:
>>> df['A'].truediv(df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
You can also use arithmetic operator /
:
>>> df['A'] / (df['B'])
0 0.25
1 0.4
2 0.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
other |
float, int, or Series
Any single or multiple element data structure, or list-like object. |
axis |
{0 or 'index', 1 or 'columns'}
Whether to compare by the index (0 or 'index') or columns. (1 or 'columns'). For Series input, axis to match Series index on. |
Returns | |
---|---|
Type | Description |
DataFrame |
DataFrame result of the arithmetic operation. |
unstack
unstack(
level: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = -1
)
Pivot a level of the (necessarily hierarchical) index labels.
Returns a DataFrame having a new level of column labels whose inner-most level consists of the pivoted index labels.
If the index is not a MultiIndex, the output will be a Series (the analogue of stack when the columns are not a MultiIndex).
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 3], 'B': [2, 4]}, index=['foo', 'bar'])
>>> df
A B
foo 1 2
bar 3 4
<BLANKLINE>
[2 rows x 2 columns]
>>> df.unstack()
A foo 1
bar 3
B foo 2
bar 4
dtype: Int64
Parameter | |
---|---|
Name | Description |
level |
int, str, or list of these, default -1 (last level)
Level(s) of index to unstack, can pass level name. |
Returns | |
---|---|
Type | Description |
DataFrame or Series |
DataFrame or Series. |
update
update(other, join: str = "left", overwrite=True, filter_func=None)
Modify in place using non-NA values from another DataFrame.
Aligns on indices. There is no return value.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'A': [1, 2, 3],
... 'B': [400, 500, 600]})
>>> new_df = bpd.DataFrame({'B': [4, 5, 6],
... 'C': [7, 8, 9]})
>>> df.update(new_df)
>>> df
A B
0 1 4
1 2 5
2 3 6
<BLANKLINE>
[3 rows x 2 columns]
Parameters | |
---|---|
Name | Description |
other |
DataFrame, or object coercible into a DataFrame
Should have at least one matching index/column label with the original DataFrame. If a Series is passed, its name attribute must be set, and that will be used as the column name to align with the original DataFrame. |
join |
{'left'}, default 'left'
Only left join is implemented, keeping the index and columns of the original object. |
overwrite |
bool, default True
How to handle non-NA values for overlapping keys: True: overwrite original DataFrame's values with values from |
filter_func |
callable(1d-array) -> bool 1d-array, optional
Can choose to replace values other than NA. Return True for values that should be updated. |
Returns | |
---|---|
Type | Description |
None |
This method directly changes calling object. |
value_counts
value_counts(
subset: typing.Union[typing.Hashable, typing.Sequence[typing.Hashable]] = None,
normalize: bool = False,
sort: bool = True,
ascending: bool = False,
dropna: bool = True,
)
Return a Series containing counts of unique rows in the DataFrame.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({'num_legs': [2, 4, 4, 6, 7],
... 'num_wings': [2, 0, 0, 0, bpd.NA]},
... index=['falcon', 'dog', 'cat', 'ant', 'octopus'],
... dtype='Int64')
>>> df
num_legs num_wings
falcon 2 2
dog 4 0
cat 4 0
ant 6 0
octopus 7 <NA>
<BLANKLINE>
[5 rows x 2 columns]
value_counts
sorts the result by counts in a descending order by default:
>>> df.value_counts()
num_legs num_wings
4 0 2
2 2 1
6 0 1
Name: count, dtype: Int64
You can normalize the counts to return relative frequencies by setting normalize=True
:
>>> df.value_counts(normalize=True)
num_legs num_wings
4 0 0.5
2 2 0.25
6 0 0.25
Name: proportion, dtype: Float64
You can get the rows in the ascending order of the counts by setting ascending=True
:
>>> df.value_counts(ascending=True)
num_legs num_wings
2 2 1
6 0 1
4 0 2
Name: count, dtype: Int64
You can include the counts of the rows with NA
values by setting dropna=False
:
>>> df.value_counts(dropna=False)
num_legs num_wings
4 0 2
2 2 1
6 0 1
7 <NA> 1
Name: count, dtype: Int64
Parameters | |
---|---|
Name | Description |
subset |
label or list of labels, optional
Columns to use when counting unique combinations. |
normalize |
bool, default False
Return proportions rather than frequencies. |
sort |
bool, default True
Sort by frequencies. |
ascending |
bool, default False
Sort in ascending order. |
dropna |
bool, default True
Don’t include counts of rows that contain NA values. |
Returns | |
---|---|
Type | Description |
Series |
Series containing counts of unique rows in the DataFrame |
var
var(
axis: typing.Union[str, int] = 0, *, numeric_only: bool = False
) -> bigframes.series.Series
Return unbiased variance over requested axis.
Normalized by N-1 by default.
Examples:
>>> import bigframes.pandas as bpd
>>> bpd.options.display.progress_bar = None
>>> df = bpd.DataFrame({"A": [1, 3], "B": [2, 4]})
>>> df
A B
0 1 2
1 3 4
<BLANKLINE>
[2 rows x 2 columns]
Calculating the variance of each column (the default behavior without an explicit axis parameter).
>>> df.var()
A 2.0
B 2.0
dtype: Float64
Calculating the variance of each row.
>>> df.var(axis=1)
0 0.5
1 0.5
dtype: Float64
Parameters | |
---|---|
Name | Description |
axis |
{index (0), columns (1)}
Axis for the function to be applied on. For Series this parameter is unused and defaults to 0. |
numeric_only |
bool. default False
Default False. Include only float, int, boolean columns. |
Returns | |
---|---|
Type | Description |
bigframes.series.Series |
Series with unbiased variance over requested axis. |