"""
DataFrame
---------
An efficient 2D container for potentially mixed-type time series or other
labeled data series.
Similar to its R counterpart, data.frame, except providing automatic data
alignment and a host of useful data manipulation methods having to do with the
labeling information
"""
from __future__ import division
# pylint: disable=E1101,E1103
# pylint: disable=W0212,W0231,W0703,W0622
import functools
import collections
import itertools
import sys
import types
import warnings
from numpy import nan as NA
import numpy as np
import numpy.ma as ma
from pandas.types.cast import (_maybe_upcast,
_infer_dtype_from_scalar,
_possibly_cast_to_datetime,
_possibly_infer_to_datetimelike,
_possibly_convert_platform,
_possibly_downcast_to_dtype,
_invalidate_string_dtypes,
_coerce_to_dtypes,
_maybe_upcast_putmask)
from pandas.types.common import (is_categorical_dtype,
is_object_dtype,
is_extension_type,
is_datetimetz,
is_datetime64_dtype,
is_bool_dtype,
is_integer_dtype,
is_float_dtype,
is_integer,
is_scalar,
needs_i8_conversion,
_get_dtype_from_object,
_lcd_dtypes,
_ensure_float,
_ensure_float64,
_ensure_int64,
_ensure_platform_int,
is_list_like,
is_iterator,
is_sequence,
is_named_tuple)
from pandas.types.missing import isnull, notnull
from pandas.core.common import (PandasError, _try_sort,
_default_index,
_values_from_object,
_maybe_box_datetimelike,
_dict_compat)
from pandas.core.generic import NDFrame, _shared_docs
from pandas.core.index import Index, MultiIndex, _ensure_index
from pandas.core.indexing import (maybe_droplevels, convert_to_index_sliceable,
check_bool_indexer)
from pandas.core.internals import (BlockManager,
create_block_manager_from_arrays,
create_block_manager_from_blocks)
from pandas.core.series import Series
from pandas.core.categorical import Categorical
import pandas.computation.expressions as expressions
import pandas.core.algorithms as algos
from pandas.computation.eval import eval as _eval
from pandas.compat import (range, map, zip, lrange, lmap, lzip, StringIO, u,
OrderedDict, raise_with_traceback)
from pandas import compat
from pandas.compat.numpy import function as nv
from pandas.util.decorators import (deprecate, Appender, Substitution,
deprecate_kwarg)
from pandas.tseries.period import PeriodIndex
from pandas.tseries.index import DatetimeIndex
from pandas.tseries.tdi import TimedeltaIndex
import pandas.core.base as base
import pandas.core.common as com
import pandas.core.nanops as nanops
import pandas.core.ops as ops
import pandas.formats.format as fmt
from pandas.formats.printing import pprint_thing
import pandas.tools.plotting as gfx
import pandas.lib as lib
import pandas.algos as _algos
from pandas.core.config import get_option
# ---------------------------------------------------------------------
# Docstring templates
_shared_doc_kwargs = dict(
axes='index, columns', klass='DataFrame',
axes_single_arg="{0 or 'index', 1 or 'columns'}",
optional_by="""
by : str or list of str
Name or list of names which refer to the axis items.""")
_numeric_only_doc = """numeric_only : boolean, default None
Include only float, int, boolean data. If None, will attempt to use
everything, then use only numeric data
"""
_merge_doc = """
Merge DataFrame objects by performing a database-style join operation by
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.
Parameters
----------%s
right : DataFrame
how : {'left', 'right', 'outer', 'inner'}, default 'inner'
* left: use only keys from left frame (SQL: left outer join)
* right: use only keys from right frame (SQL: right outer join)
* outer: use union of keys from both frames (SQL: full outer join)
* inner: use intersection of keys from both frames (SQL: inner join)
on : label or list
Field names to join on. Must be found in both DataFrames. If on is
None and not merging on indexes, then it merges on the intersection of
the columns by default.
left_on : label or list, or array-like
Field names to join on in left DataFrame. Can be a vector or list of
vectors of the length of the DataFrame to use a particular vector as
the join key instead of columns
right_on : label or list, or array-like
Field names to join on in right DataFrame or vector/list of vectors per
left_on docs
left_index : boolean, default False
Use the index from the left DataFrame as the join key(s). If it is a
MultiIndex, the number of keys in the other DataFrame (either the index
or a number of columns) must match the number of levels
right_index : boolean, default False
Use the index from the right DataFrame as the join key. Same caveats as
left_index
sort : boolean, default False
Sort the join keys lexicographically in the result DataFrame
suffixes : 2-length sequence (tuple, list, ...)
Suffix to apply to overlapping column names in the left and right
side, respectively
copy : boolean, default True
If False, do not copy data unnecessarily
indicator : boolean or string, default False
If True, adds a column to output DataFrame called "_merge" with
information on the source of each row.
If string, column with information on source of each row will be added to
output DataFrame, and column will be named value of string.
Information column is Categorical-type and takes on a value of "left_only"
for observations whose merge key only appears in 'left' DataFrame,
"right_only" for observations whose merge key only appears in 'right'
DataFrame, and "both" if the observation's merge key is found in both.
.. versionadded:: 0.17.0
Examples
--------
>>> A >>> B
lkey value rkey value
0 foo 1 0 foo 5
1 bar 2 1 bar 6
2 baz 3 2 qux 7
3 foo 4 3 bar 8
>>> A.merge(B, left_on='lkey', right_on='rkey', how='outer')
lkey value_x rkey value_y
0 foo 1 foo 5
1 foo 4 foo 5
2 bar 2 bar 6
3 bar 2 bar 8
4 baz 3 NaN NaN
5 NaN NaN qux 7
Returns
-------
merged : DataFrame
The output type will the be same as 'left', if it is a subclass
of DataFrame.
See also
--------
merge_ordered
merge_asof
"""
# -----------------------------------------------------------------------
# DataFrame class
[docs]class DataFrame(NDFrame):
""" Two-dimensional size-mutable, potentially heterogeneous tabular data
structure with 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
Parameters
----------
data : numpy ndarray (structured or homogeneous), dict, or DataFrame
Dict can contain Series, arrays, constants, or list-like objects
index : Index or array-like
Index to use for resulting frame. Will default to np.arange(n) if
no indexing information part of input data and no index provided
columns : Index or array-like
Column labels to use for resulting frame. Will default to
np.arange(n) if no column labels are provided
dtype : dtype, default None
Data type to force, otherwise infer
copy : boolean, default False
Copy data from inputs. Only affects DataFrame / 2d ndarray input
Examples
--------
>>> d = {'col1': ts1, 'col2': ts2}
>>> df = DataFrame(data=d, index=index)
>>> df2 = DataFrame(np.random.randn(10, 5))
>>> df3 = DataFrame(np.random.randn(10, 5),
... columns=['a', 'b', 'c', 'd', 'e'])
See also
--------
DataFrame.from_records : constructor from tuples, also record arrays
DataFrame.from_dict : from dicts of Series, arrays, or dicts
DataFrame.from_items : from sequence of (key, value) pairs
pandas.read_csv, pandas.read_table, pandas.read_clipboard
"""
@property
def _constructor(self):
return DataFrame
_constructor_sliced = Series
@property
def _constructor_expanddim(self):
from pandas.core.panel import Panel
return Panel
def __init__(self, data=None, index=None, columns=None, dtype=None,
copy=False):
if data is None:
data = {}
if dtype is not None:
dtype = self._validate_dtype(dtype)
if isinstance(data, DataFrame):
data = data._data
if isinstance(data, BlockManager):
mgr = self._init_mgr(data, axes=dict(index=index, columns=columns),
dtype=dtype, copy=copy)
elif isinstance(data, dict):
mgr = self._init_dict(data, index, columns, dtype=dtype)
elif isinstance(data, ma.MaskedArray):
import numpy.ma.mrecords as mrecords
# masked recarray
if isinstance(data, mrecords.MaskedRecords):
mgr = _masked_rec_array_to_mgr(data, index, columns, dtype,
copy)
# a masked array
else:
mask = ma.getmaskarray(data)
if mask.any():
data, fill_value = _maybe_upcast(data, copy=True)
data[mask] = fill_value
else:
data = data.copy()
mgr = self._init_ndarray(data, index, columns, dtype=dtype,
copy=copy)
elif isinstance(data, (np.ndarray, Series, Index)):
if data.dtype.names:
data_columns = list(data.dtype.names)
data = dict((k, data[k]) for k in data_columns)
if columns is None:
columns = data_columns
mgr = self._init_dict(data, index, columns, dtype=dtype)
elif getattr(data, 'name', None):
mgr = self._init_dict({data.name: data}, index, columns,
dtype=dtype)
else:
mgr = self._init_ndarray(data, index, columns, dtype=dtype,
copy=copy)
elif isinstance(data, (list, types.GeneratorType)):
if isinstance(data, types.GeneratorType):
data = list(data)
if len(data) > 0:
if is_list_like(data[0]) and getattr(data[0], 'ndim', 1) == 1:
if is_named_tuple(data[0]) and columns is None:
columns = data[0]._fields
arrays, columns = _to_arrays(data, columns, dtype=dtype)
columns = _ensure_index(columns)
# set the index
if index is None:
if isinstance(data[0], Series):
index = _get_names_from_index(data)
elif isinstance(data[0], Categorical):
index = _default_index(len(data[0]))
else:
index = _default_index(len(data))
mgr = _arrays_to_mgr(arrays, columns, index, columns,
dtype=dtype)
else:
mgr = self._init_ndarray(data, index, columns, dtype=dtype,
copy=copy)
else:
mgr = self._init_dict({}, index, columns, dtype=dtype)
elif isinstance(data, collections.Iterator):
raise TypeError("data argument can't be an iterator")
else:
try:
arr = np.array(data, dtype=dtype, copy=copy)
except (ValueError, TypeError) as e:
exc = TypeError('DataFrame constructor called with '
'incompatible data and dtype: %s' % e)
raise_with_traceback(exc)
if arr.ndim == 0 and index is not None and columns is not None:
if isinstance(data, compat.string_types) and dtype is None:
dtype = np.object_
if dtype is None:
dtype, data = _infer_dtype_from_scalar(data)
values = np.empty((len(index), len(columns)), dtype=dtype)
values.fill(data)
mgr = self._init_ndarray(values, index, columns, dtype=dtype,
copy=False)
else:
raise PandasError('DataFrame constructor not properly called!')
NDFrame.__init__(self, mgr, fastpath=True)
def _init_dict(self, data, index, columns, dtype=None):
"""
Segregate Series based on type and coerce into matrices.
Needs to handle a lot of exceptional cases.
"""
if columns is not None:
columns = _ensure_index(columns)
# GH10856
# raise ValueError if only scalars in dict
if index is None:
extract_index(list(data.values()))
# prefilter if columns passed
data = dict((k, v) for k, v in compat.iteritems(data)
if k in columns)
if index is None:
index = extract_index(list(data.values()))
else:
index = _ensure_index(index)
arrays = []
data_names = []
for k in columns:
if k not in data:
# no obvious "empty" int column
if dtype is not None and issubclass(dtype.type,
np.integer):
continue
if dtype is None:
# 1783
v = np.empty(len(index), dtype=object)
elif np.issubdtype(dtype, np.flexible):
v = np.empty(len(index), dtype=object)
else:
v = np.empty(len(index), dtype=dtype)
v.fill(NA)
else:
v = data[k]
data_names.append(k)
arrays.append(v)
else:
keys = list(data.keys())
if not isinstance(data, OrderedDict):
keys = _try_sort(keys)
columns = data_names = Index(keys)
arrays = [data[k] for k in keys]
return _arrays_to_mgr(arrays, data_names, index, columns, dtype=dtype)
def _init_ndarray(self, values, index, columns, dtype=None, copy=False):
# input must be a ndarray, list, Series, index
if isinstance(values, Series):
if columns is None:
if values.name is not None:
columns = [values.name]
if index is None:
index = values.index
else:
values = values.reindex(index)
# zero len case (GH #2234)
if not len(values) and columns is not None and len(columns):
values = np.empty((0, 1), dtype=object)
# helper to create the axes as indexes
def _get_axes(N, K, index=index, columns=columns):
# return axes or defaults
if index is None:
index = _default_index(N)
else:
index = _ensure_index(index)
if columns is None:
columns = _default_index(K)
else:
columns = _ensure_index(columns)
return index, columns
# we could have a categorical type passed or coerced to 'category'
# recast this to an _arrays_to_mgr
if (is_categorical_dtype(getattr(values, 'dtype', None)) or
is_categorical_dtype(dtype)):
if not hasattr(values, 'dtype'):
values = _prep_ndarray(values, copy=copy)
values = values.ravel()
elif copy:
values = values.copy()
index, columns = _get_axes(len(values), 1)
return _arrays_to_mgr([values], columns, index, columns,
dtype=dtype)
elif is_datetimetz(values):
return self._init_dict({0: values}, index, columns, dtype=dtype)
# by definition an array here
# the dtypes will be coerced to a single dtype
values = _prep_ndarray(values, copy=copy)
if dtype is not None:
if values.dtype != dtype:
try:
values = values.astype(dtype)
except Exception as orig:
e = ValueError("failed to cast to '%s' (Exception was: %s)"
% (dtype, orig))
raise_with_traceback(e)
index, columns = _get_axes(*values.shape)
values = values.T
# if we don't have a dtype specified, then try to convert objects
# on the entire block; this is to convert if we have datetimelike's
# embedded in an object type
if dtype is None and is_object_dtype(values):
values = _possibly_infer_to_datetimelike(values)
return create_block_manager_from_blocks([values], [columns, index])
@property
def axes(self):
"""
Return a list with the row axis labels and column axis labels as the
only members. They are returned in that order.
"""
return [self.index, self.columns]
@property
def shape(self):
"""
Return a tuple representing the dimensionality of the DataFrame.
"""
return len(self.index), len(self.columns)
def _repr_fits_vertical_(self):
"""
Check length against max_rows.
"""
max_rows = get_option("display.max_rows")
return len(self) <= max_rows
def _repr_fits_horizontal_(self, ignore_width=False):
"""
Check if full repr fits in horizontal boundaries imposed by the display
options width and max_columns. In case off non-interactive session, no
boundaries apply.
ignore_width is here so ipnb+HTML output can behave the way
users expect. display.max_columns remains in effect.
GH3541, GH3573
"""
width, height = fmt.get_console_size()
max_columns = get_option("display.max_columns")
nb_columns = len(self.columns)
# exceed max columns
if ((max_columns and nb_columns > max_columns) or
((not ignore_width) and width and nb_columns > (width // 2))):
return False
# used by repr_html under IPython notebook or scripts ignore terminal
# dims
if ignore_width or not com.in_interactive_session():
return True
if (get_option('display.width') is not None or
com.in_ipython_frontend()):
# check at least the column row for excessive width
max_rows = 1
else:
max_rows = get_option("display.max_rows")
# when auto-detecting, so width=None and not in ipython front end
# check whether repr fits horizontal by actualy checking
# the width of the rendered repr
buf = StringIO()
# only care about the stuff we'll actually print out
# and to_string on entire frame may be expensive
d = self
if not (max_rows is None): # unlimited rows
# min of two, where one may be None
d = d.iloc[:min(max_rows, len(d))]
else:
return True
d.to_string(buf=buf)
value = buf.getvalue()
repr_width = max([len(l) for l in value.split('\n')])
return repr_width < width
def _info_repr(self):
"""True if the repr should show the info view."""
info_repr_option = (get_option("display.large_repr") == "info")
return info_repr_option and not (self._repr_fits_horizontal_() and
self._repr_fits_vertical_())
def __unicode__(self):
"""
Return a string representation for a particular DataFrame
Invoked by unicode(df) in py2 only. Yields a Unicode String in both
py2/py3.
"""
buf = StringIO(u(""))
if self._info_repr():
self.info(buf=buf)
return buf.getvalue()
max_rows = get_option("display.max_rows")
max_cols = get_option("display.max_columns")
show_dimensions = get_option("display.show_dimensions")
if get_option("display.expand_frame_repr"):
width, _ = fmt.get_console_size()
else:
width = None
self.to_string(buf=buf, max_rows=max_rows, max_cols=max_cols,
line_width=width, show_dimensions=show_dimensions)
return buf.getvalue()
def _repr_html_(self):
"""
Return a html representation for a particular DataFrame.
Mainly for IPython notebook.
"""
# qtconsole doesn't report its line width, and also
# behaves badly when outputting an HTML table
# that doesn't fit the window, so disable it.
# XXX: In IPython 3.x and above, the Qt console will not attempt to
# display HTML, so this check can be removed when support for
# IPython 2.x is no longer needed.
if com.in_qtconsole():
# 'HTML output is disabled in QtConsole'
return None
if self._info_repr():
buf = StringIO(u(""))
self.info(buf=buf)
# need to escape the <class>, should be the first line.
val = buf.getvalue().replace('<', r'<', 1)
val = val.replace('>', r'>', 1)
return '<pre>' + val + '</pre>'
if get_option("display.notebook_repr_html"):
max_rows = get_option("display.max_rows")
max_cols = get_option("display.max_columns")
show_dimensions = get_option("display.show_dimensions")
return self.to_html(max_rows=max_rows, max_cols=max_cols,
show_dimensions=show_dimensions, notebook=True)
else:
return None
def _repr_latex_(self):
"""
Returns a LaTeX representation for a particular Dataframe.
Mainly for use with nbconvert (jupyter notebook conversion to pdf).
"""
if get_option('display.latex.repr'):
return self.to_latex()
else:
return None
@property
def style(self):
"""
Property returning a Styler object containing methods for
building a styled HTML representation fo the DataFrame.
See Also
--------
pandas.formats.style.Styler
"""
from pandas.formats.style import Styler
return Styler(self)
[docs] def iteritems(self):
"""
Iterator over (column name, Series) pairs.
See also
--------
iterrows : Iterate over DataFrame rows as (index, Series) pairs.
itertuples : Iterate over DataFrame rows as namedtuples of the values.
"""
if self.columns.is_unique and hasattr(self, '_item_cache'):
for k in self.columns:
yield k, self._get_item_cache(k)
else:
for i, k in enumerate(self.columns):
yield k, self._ixs(i, axis=1)
[docs] def iterrows(self):
"""
Iterate over DataFrame rows as (index, Series) pairs.
Notes
-----
1. Because ``iterrows`` returns a Series for each row,
it does **not** preserve dtypes across the rows (dtypes are
preserved across columns for DataFrames). For example,
>>> df = pd.DataFrame([[1, 1.5]], columns=['int', 'float'])
>>> row = next(df.iterrows())[1]
>>> row
int 1.0
float 1.5
Name: 0, dtype: float64
>>> print(row['int'].dtype)
float64
>>> print(df['int'].dtype)
int64
To preserve dtypes while iterating over the rows, it is better
to use :meth:`itertuples` which returns namedtuples of the values
and which is generally faster than ``iterrows``.
2. You should **never modify** something you are iterating over.
This is not guaranteed to work in all cases. Depending on the
data types, the iterator returns a copy and not a view, and writing
to it will have no effect.
Returns
-------
it : generator
A generator that iterates over the rows of the frame.
See also
--------
itertuples : Iterate over DataFrame rows as namedtuples of the values.
iteritems : Iterate over (column name, Series) pairs.
"""
columns = self.columns
for k, v in zip(self.index, self.values):
s = Series(v, index=columns, name=k)
yield k, s
[docs] def itertuples(self, index=True, name="Pandas"):
"""
Iterate over DataFrame rows as namedtuples, with index value as first
element of the tuple.
Parameters
----------
index : boolean, default True
If True, return the index as the first element of the tuple.
name : string, default "Pandas"
The name of the returned namedtuples or None to return regular
tuples.
Notes
-----
The column names will be renamed to positional names if they are
invalid Python identifiers, repeated, or start with an underscore.
With a large number of columns (>255), regular tuples are returned.
See also
--------
iterrows : Iterate over DataFrame rows as (index, Series) pairs.
iteritems : Iterate over (column name, Series) pairs.
Examples
--------
>>> df = pd.DataFrame({'col1': [1, 2], 'col2': [0.1, 0.2]},
index=['a', 'b'])
>>> df
col1 col2
a 1 0.1
b 2 0.2
>>> for row in df.itertuples():
... print(row)
...
Pandas(Index='a', col1=1, col2=0.10000000000000001)
Pandas(Index='b', col1=2, col2=0.20000000000000001)
"""
arrays = []
fields = []
if index:
arrays.append(self.index)
fields.append("Index")
# use integer indexing because of possible duplicate column names
arrays.extend(self.iloc[:, k] for k in range(len(self.columns)))
# Python 3 supports at most 255 arguments to constructor, and
# things get slow with this many fields in Python 2
if name is not None and len(self.columns) + index < 256:
# `rename` is unsupported in Python 2.6
try:
itertuple = collections.namedtuple(name,
fields + list(self.columns),
rename=True)
return map(itertuple._make, zip(*arrays))
except Exception:
pass
# fallback to regular tuples
return zip(*arrays)
if compat.PY3: # pragma: no cover
items = iteritems
def __len__(self):
"""Returns length of info axis, but here we use the index """
return len(self.index)
[docs] def dot(self, other):
"""
Matrix multiplication with DataFrame or Series objects
Parameters
----------
other : DataFrame or Series
Returns
-------
dot_product : DataFrame or Series
"""
if isinstance(other, (Series, DataFrame)):
common = self.columns.union(other.index)
if (len(common) > len(self.columns) or
len(common) > len(other.index)):
raise ValueError('matrices are not aligned')
left = self.reindex(columns=common, copy=False)
right = other.reindex(index=common, copy=False)
lvals = left.values
rvals = right.values
else:
left = self
lvals = self.values
rvals = np.asarray(other)
if lvals.shape[1] != rvals.shape[0]:
raise ValueError('Dot product shape mismatch, %s vs %s' %
(lvals.shape, rvals.shape))
if isinstance(other, DataFrame):
return self._constructor(np.dot(lvals, rvals), index=left.index,
columns=other.columns)
elif isinstance(other, Series):
return Series(np.dot(lvals, rvals), index=left.index)
elif isinstance(rvals, (np.ndarray, Index)):
result = np.dot(lvals, rvals)
if result.ndim == 2:
return self._constructor(result, index=left.index)
else:
return Series(result, index=left.index)
else: # pragma: no cover
raise TypeError('unsupported type: %s' % type(other))
# ----------------------------------------------------------------------
# IO methods (to / from other formats)
@classmethod
[docs] def from_dict(cls, data, orient='columns', dtype=None):
"""
Construct DataFrame from dict of array-like or dicts
Parameters
----------
data : dict
{field : array-like} or {field : dict}
orient : {'columns', 'index'}, 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'.
dtype : dtype, default None
Data type to force, otherwise infer
Returns
-------
DataFrame
"""
index, columns = None, None
orient = orient.lower()
if orient == 'index':
if len(data) > 0:
# TODO speed up Series case
if isinstance(list(data.values())[0], (Series, dict)):
data = _from_nested_dict(data)
else:
data, index = list(data.values()), list(data.keys())
elif orient != 'columns': # pragma: no cover
raise ValueError('only recognize index or columns for orient')
return cls(data, index=index, columns=columns, dtype=dtype)
[docs] def to_dict(self, orient='dict'):
"""Convert DataFrame to dictionary.
Parameters
----------
orient : str {'dict', 'list', 'series', 'split', '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]}
- records : list like
[{column -> value}, ... , {column -> value}]
- index : dict like {index -> {column -> value}}
.. versionadded:: 0.17.0
Abbreviations are allowed. `s` indicates `series` and `sp`
indicates `split`.
Returns
-------
result : dict like {column -> {index -> value}}
"""
if not self.columns.is_unique:
warnings.warn("DataFrame columns are not unique, some "
"columns will be omitted.", UserWarning)
if orient.lower().startswith('d'):
return dict((k, v.to_dict()) for k, v in compat.iteritems(self))
elif orient.lower().startswith('l'):
return dict((k, v.tolist()) for k, v in compat.iteritems(self))
elif orient.lower().startswith('sp'):
return {'index': self.index.tolist(),
'columns': self.columns.tolist(),
'data': lib.map_infer(self.values.ravel(),
_maybe_box_datetimelike)
.reshape(self.values.shape).tolist()}
elif orient.lower().startswith('s'):
return dict((k, _maybe_box_datetimelike(v))
for k, v in compat.iteritems(self))
elif orient.lower().startswith('r'):
return [dict((k, _maybe_box_datetimelike(v))
for k, v in zip(self.columns, row))
for row in self.values]
elif orient.lower().startswith('i'):
return dict((k, v.to_dict()) for k, v in self.iterrows())
else:
raise ValueError("orient '%s' not understood" % orient)
[docs] def to_gbq(self, destination_table, project_id, chunksize=10000,
verbose=True, reauth=False, if_exists='fail', private_key=None):
"""Write a DataFrame to a Google BigQuery table.
THIS IS AN EXPERIMENTAL LIBRARY
Parameters
----------
dataframe : DataFrame
DataFrame to be written
destination_table : string
Name of table to be written, in the form 'dataset.tablename'
project_id : str
Google BigQuery Account project ID.
chunksize : int (default 10000)
Number of rows to be inserted in each chunk from the dataframe.
verbose : boolean (default True)
Show percentage complete
reauth : boolean (default False)
Force Google BigQuery to reauthenticate the user. This is useful
if multiple accounts are used.
if_exists : {'fail', 'replace', 'append'}, default 'fail'
'fail': If table exists, do nothing.
'replace': If table exists, drop it, recreate it, and insert data.
'append': If table exists, insert data. Create if does not exist.
private_key : str (optional)
Service account private key in JSON format. Can be file path
or string contents. This is useful for remote server
authentication (eg. jupyter iPython notebook on remote host)
.. versionadded:: 0.17.0
"""
from pandas.io import gbq
return gbq.to_gbq(self, destination_table, project_id=project_id,
chunksize=chunksize, verbose=verbose, reauth=reauth,
if_exists=if_exists, private_key=private_key)
@classmethod
[docs] def from_records(cls, data, index=None, exclude=None, columns=None,
coerce_float=False, nrows=None):
"""
Convert structured or record ndarray to DataFrame
Parameters
----------
data : ndarray (structured dtype), list of tuples, dict, or DataFrame
index : string, 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 : boolean, default False
Attempt to convert values to non-string, non-numeric objects (like
decimal.Decimal) to floating point, useful for SQL result sets
Returns
-------
df : DataFrame
"""
# Make a copy of the input columns so we can modify it
if columns is not None:
columns = _ensure_index(columns)
if is_iterator(data):
if nrows == 0:
return cls()
try:
first_row = next(data)
except StopIteration:
return cls(index=index, columns=columns)
dtype = None
if hasattr(first_row, 'dtype') and first_row.dtype.names:
dtype = first_row.dtype
values = [first_row]
if nrows is None:
values += data
else:
values.extend(itertools.islice(data, nrows - 1))
if dtype is not None:
data = np.array(values, dtype=dtype)
else:
data = values
if isinstance(data, dict):
if columns is None:
columns = arr_columns = _ensure_index(sorted(data))
arrays = [data[k] for k in columns]
else:
arrays = []
arr_columns = []
for k, v in compat.iteritems(data):
if k in columns:
arr_columns.append(k)
arrays.append(v)
arrays, arr_columns = _reorder_arrays(arrays, arr_columns,
columns)
elif isinstance(data, (np.ndarray, DataFrame)):
arrays, columns = _to_arrays(data, columns)
if columns is not None:
columns = _ensure_index(columns)
arr_columns = columns
else:
arrays, arr_columns = _to_arrays(data, columns,
coerce_float=coerce_float)
arr_columns = _ensure_index(arr_columns)
if columns is not None:
columns = _ensure_index(columns)
else:
columns = arr_columns
if exclude is None:
exclude = set()
else:
exclude = set(exclude)
result_index = None
if index is not None:
if (isinstance(index, compat.string_types) or
not hasattr(index, "__iter__")):
i = columns.get_loc(index)
exclude.add(index)
if len(arrays) > 0:
result_index = Index(arrays[i], name=index)
else:
result_index = Index([], name=index)
else:
try:
to_remove = [arr_columns.get_loc(field) for field in index]
result_index = MultiIndex.from_arrays(
[arrays[i] for i in to_remove], names=index)
exclude.update(index)
except Exception:
result_index = index
if any(exclude):
arr_exclude = [x for x in exclude if x in arr_columns]
to_remove = [arr_columns.get_loc(col) for col in arr_exclude]
arrays = [v for i, v in enumerate(arrays) if i not in to_remove]
arr_columns = arr_columns.drop(arr_exclude)
columns = columns.drop(exclude)
mgr = _arrays_to_mgr(arrays, arr_columns, result_index, columns)
return cls(mgr)
[docs] def to_records(self, index=True, convert_datetime64=True):
"""
Convert DataFrame to record array. Index will be put in the
'index' field of the record array if requested
Parameters
----------
index : boolean, default True
Include index in resulting record array, stored in 'index' field
convert_datetime64 : boolean, default True
Whether to convert the index to datetime.datetime if it is a
DatetimeIndex
Returns
-------
y : recarray
"""
if index:
if is_datetime64_dtype(self.index) and convert_datetime64:
ix_vals = [self.index.to_pydatetime()]
else:
if isinstance(self.index, MultiIndex):
# array of tuples to numpy cols. copy copy copy
ix_vals = lmap(np.array, zip(*self.index.values))
else:
ix_vals = [self.index.values]
arrays = ix_vals + [self[c].get_values() for c in self.columns]
count = 0
index_names = list(self.index.names)
if isinstance(self.index, MultiIndex):
for i, n in enumerate(index_names):
if n is None:
index_names[i] = 'level_%d' % count
count += 1
elif index_names[0] is None:
index_names = ['index']
names = lmap(str, index_names) + lmap(str, self.columns)
else:
arrays = [self[c].get_values() for c in self.columns]
names = lmap(str, self.columns)
dtype = np.dtype([(x, v.dtype) for x, v in zip(names, arrays)])
return np.rec.fromarrays(arrays, dtype=dtype, names=names)
@classmethod
[docs] def from_items(cls, items, columns=None, orient='columns'):
"""
Convert (key, value) pairs to DataFrame. The keys will be the axis
index (usually the columns, but depends on the specified
orientation). The values should be arrays or Series.
Parameters
----------
items : sequence of (key, value) pairs
Values should be arrays or Series.
columns : sequence of column labels, optional
Must be passed if orient='index'.
orient : {'columns', 'index'}, default 'columns'
The "orientation" of the data. If the keys of the
input correspond to column labels, pass 'columns'
(default). Otherwise if the keys correspond to the index,
pass 'index'.
Returns
-------
frame : DataFrame
"""
keys, values = lzip(*items)
if orient == 'columns':
if columns is not None:
columns = _ensure_index(columns)
idict = dict(items)
if len(idict) < len(items):
if not columns.equals(_ensure_index(keys)):
raise ValueError('With non-unique item names, passed '
'columns must be identical')
arrays = values
else:
arrays = [idict[k] for k in columns if k in idict]
else:
columns = _ensure_index(keys)
arrays = values
return cls._from_arrays(arrays, columns, None)
elif orient == 'index':
if columns is None:
raise TypeError("Must pass columns with orient='index'")
keys = _ensure_index(keys)
arr = np.array(values, dtype=object).T
data = [lib.maybe_convert_objects(v) for v in arr]
return cls._from_arrays(data, columns, keys)
else: # pragma: no cover
raise ValueError("'orient' must be either 'columns' or 'index'")
@classmethod
def _from_arrays(cls, arrays, columns, index, dtype=None):
mgr = _arrays_to_mgr(arrays, columns, index, columns, dtype=dtype)
return cls(mgr)
@classmethod
[docs] def from_csv(cls, path, header=0, sep=',', index_col=0, parse_dates=True,
encoding=None, tupleize_cols=False,
infer_datetime_format=False):
"""
Read CSV file (DISCOURAGED, please use :func:`pandas.read_csv`
instead).
It is preferable to use the more powerful :func:`pandas.read_csv`
for most general purposes, but ``from_csv`` makes for an easy
roundtrip to and from a file (the exact counterpart of
``to_csv``), especially with a DataFrame of time series data.
This method only differs from the preferred :func:`pandas.read_csv`
in some defaults:
- `index_col` is ``0`` instead of ``None`` (take first column as index
by default)
- `parse_dates` is ``True`` instead of ``False`` (try parsing the index
as datetime by default)
So a ``pd.DataFrame.from_csv(path)`` can be replaced by
``pd.read_csv(path, index_col=0, parse_dates=True)``.
Parameters
----------
path : string file path or file handle / StringIO
header : int, default 0
Row to use as header (skip prior rows)
sep : string, default ','
Field delimiter
index_col : int or sequence, default 0
Column to use for index. If a sequence is given, a MultiIndex
is used. Different default from read_table
parse_dates : boolean, default True
Parse dates. Different default from read_table
tupleize_cols : boolean, default False
write multi_index columns as a list of tuples (if True)
or new (expanded format) if False)
infer_datetime_format: boolean, default False
If True and `parse_dates` is True for a column, try to infer the
datetime format based on the first datetime string. If the format
can be inferred, there often will be a large parsing speed-up.
See also
--------
pandas.read_csv
Returns
-------
y : DataFrame
"""
from pandas.io.parsers import read_table
return read_table(path, header=header, sep=sep,
parse_dates=parse_dates, index_col=index_col,
encoding=encoding, tupleize_cols=tupleize_cols,
infer_datetime_format=infer_datetime_format)
[docs] def to_sparse(self, fill_value=None, kind='block'):
"""
Convert to SparseDataFrame
Parameters
----------
fill_value : float, default NaN
kind : {'block', 'integer'}
Returns
-------
y : SparseDataFrame
"""
from pandas.core.sparse import SparseDataFrame
return SparseDataFrame(self._series, index=self.index,
columns=self.columns, default_kind=kind,
default_fill_value=fill_value)
[docs] def to_panel(self):
"""
Transform long (stacked) format (DataFrame) into wide (3D, Panel)
format.
Currently the index of the DataFrame must be a 2-level MultiIndex. This
may be generalized later
Returns
-------
panel : Panel
"""
# only support this kind for now
if (not isinstance(self.index, MultiIndex) or # pragma: no cover
len(self.index.levels) != 2):
raise NotImplementedError('Only 2-level MultiIndex are supported.')
if not self.index.is_unique:
raise ValueError("Can't convert non-uniquely indexed "
"DataFrame to Panel")
self._consolidate_inplace()
# minor axis must be sorted
if self.index.lexsort_depth < 2:
selfsorted = self.sortlevel(0)
else:
selfsorted = self
major_axis, minor_axis = selfsorted.index.levels
major_labels, minor_labels = selfsorted.index.labels
shape = len(major_axis), len(minor_axis)
# preserve names, if any
major_axis = major_axis.copy()
major_axis.name = self.index.names[0]
minor_axis = minor_axis.copy()
minor_axis.name = self.index.names[1]
# create new axes
new_axes = [selfsorted.columns, major_axis, minor_axis]
# create new manager
new_mgr = selfsorted._data.reshape_nd(axes=new_axes,
labels=[major_labels,
minor_labels],
shape=shape,
ref_items=selfsorted.columns)
return self._constructor_expanddim(new_mgr)
to_wide = deprecate('to_wide', to_panel)
[docs] def to_csv(self, path_or_buf=None, sep=",", na_rep='', float_format=None,
columns=None, header=True, index=True, index_label=None,
mode='w', encoding=None, compression=None, quoting=None,
quotechar='"', line_terminator='\n', chunksize=None,
tupleize_cols=False, date_format=None, doublequote=True,
escapechar=None, decimal='.'):
r"""Write DataFrame to a comma-separated values (csv) file
Parameters
----------
path_or_buf : string or file handle, default None
File path or object, if None is provided the result is returned as
a string.
sep : character, default ','
Field delimiter for the output file.
na_rep : string, default ''
Missing data representation
float_format : string, default None
Format string for floating point numbers
columns : sequence, optional
Columns to write
header : boolean or list of string, default True
Write out column names. If a list of string is given it is assumed
to be aliases for the column names
index : boolean, default True
Write row names (index)
index_label : string or sequence, or False, default None
Column label for index column(s) if desired. If None is given, and
`header` and `index` are True, then the index names are used. A
sequence should be given if the DataFrame uses MultiIndex. If
False do not print fields for index names. Use index_label=False
for easier importing in R
mode : str
Python write mode, default 'w'
encoding : string, optional
A string representing the encoding to use in the output file,
defaults to 'ascii' on Python 2 and 'utf-8' on Python 3.
compression : string, optional
a string representing the compression to use in the output file,
allowed values are 'gzip', 'bz2', 'xz',
only used when the first argument is a filename
line_terminator : string, default ``'\n'``
The newline character or character sequence to use in the output
file
quoting : optional constant from csv module
defaults to csv.QUOTE_MINIMAL
quotechar : string (length 1), default '\"'
character used to quote fields
doublequote : boolean, default True
Control quoting of `quotechar` inside a field
escapechar : string (length 1), default None
character used to escape `sep` and `quotechar` when appropriate
chunksize : int or None
rows to write at a time
tupleize_cols : boolean, default False
write multi_index columns as a list of tuples (if True)
or new (expanded format) if False)
date_format : string, default None
Format string for datetime objects
decimal: string, default '.'
Character recognized as decimal separator. E.g. use ',' for
European data
.. versionadded:: 0.16.0
"""
formatter = fmt.CSVFormatter(self, path_or_buf,
line_terminator=line_terminator, sep=sep,
encoding=encoding,
compression=compression, quoting=quoting,
na_rep=na_rep, float_format=float_format,
cols=columns, header=header, index=index,
index_label=index_label, mode=mode,
chunksize=chunksize, quotechar=quotechar,
tupleize_cols=tupleize_cols,
date_format=date_format,
doublequote=doublequote,
escapechar=escapechar, decimal=decimal)
formatter.save()
if path_or_buf is None:
return formatter.path_or_buf.getvalue()
[docs] def to_excel(self, excel_writer, sheet_name='Sheet1', na_rep='',
float_format=None, columns=None, header=True, index=True,
index_label=None, startrow=0, startcol=0, engine=None,
merge_cells=True, encoding=None, inf_rep='inf', verbose=True):
"""
Write DataFrame to a excel sheet
Parameters
----------
excel_writer : string or ExcelWriter object
File path or existing ExcelWriter
sheet_name : string, default 'Sheet1'
Name of sheet which will contain DataFrame
na_rep : string, default ''
Missing data representation
float_format : string, default None
Format string for floating point numbers
columns : sequence, optional
Columns to write
header : boolean or list of string, default True
Write out column names. If a list of string is given it is
assumed to be aliases for the column names
index : boolean, default True
Write row names (index)
index_label : string or sequence, default None
Column label for index column(s) if desired. If None is given, and
`header` and `index` are True, then the index names are used. A
sequence should be given if the DataFrame uses MultiIndex.
startrow :
upper left cell row to dump data frame
startcol :
upper left cell column to dump data frame
engine : string, default None
write engine to use - you can also set this via the options
``io.excel.xlsx.writer``, ``io.excel.xls.writer``, and
``io.excel.xlsm.writer``.
merge_cells : boolean, default True
Write MultiIndex and Hierarchical Rows as merged cells.
encoding: string, default None
encoding of the resulting excel file. Only necessary for xlwt,
other writers support unicode natively.
inf_rep : string, default 'inf'
Representation for infinity (there is no native representation for
infinity in Excel)
Notes
-----
If passing an existing ExcelWriter object, then the sheet will be added
to the existing workbook. This can be used to save different
DataFrames to one workbook:
>>> writer = ExcelWriter('output.xlsx')
>>> df1.to_excel(writer,'Sheet1')
>>> df2.to_excel(writer,'Sheet2')
>>> writer.save()
For compatibility with to_csv, to_excel serializes lists and dicts to
strings before writing.
"""
from pandas.io.excel import ExcelWriter
need_save = False
if encoding is None:
encoding = 'ascii'
if isinstance(excel_writer, compat.string_types):
excel_writer = ExcelWriter(excel_writer, engine=engine)
need_save = True
formatter = fmt.ExcelFormatter(self, na_rep=na_rep, cols=columns,
header=header,
float_format=float_format, index=index,
index_label=index_label,
merge_cells=merge_cells,
inf_rep=inf_rep)
formatted_cells = formatter.get_formatted_cells()
excel_writer.write_cells(formatted_cells, sheet_name,
startrow=startrow, startcol=startcol)
if need_save:
excel_writer.save()
[docs] def to_stata(self, fname, convert_dates=None, write_index=True,
encoding="latin-1", byteorder=None, time_stamp=None,
data_label=None, variable_labels=None):
"""
A class for writing Stata binary dta files from array-like objects
Parameters
----------
fname : str or buffer
String path of file-like object
convert_dates : dict
Dictionary mapping columns containing datetime types to stata
internal format to use when wirting the dates. Options are 'tc',
'td', 'tm', 'tw', 'th', 'tq', 'ty'. Column can be either an integer
or a name. Datetime columns that do not have a conversion type
specified will be converted to 'tc'. Raises NotImplementedError if
a datetime column has timezone information
write_index : bool
Write the index to Stata dataset.
encoding : str
Default is latin-1. Unicode is not supported
byteorder : str
Can be ">", "<", "little", or "big". default is `sys.byteorder`
time_stamp : datetime
A datetime to use as file creation date. Default is the current
time.
dataset_label : str
A label for the data set. Must be 80 characters or smaller.
variable_labels : dict
Dictionary containing columns as keys and variable labels as
values. Each label must be 80 characters or smaller.
.. versionadded:: 0.19.0
Raises
------
NotImplementedError
* If datetimes contain timezone information
* Column dtype is not representable in Stata
ValueError
* Columns listed in convert_dates are noth either datetime64[ns]
or datetime.datetime
* Column listed in convert_dates is not in DataFrame
* Categorical label contains more than 32,000 characters
.. versionadded:: 0.19.0
Examples
--------
>>> writer = StataWriter('./data_file.dta', data)
>>> writer.write_file()
Or with dates
>>> writer = StataWriter('./date_data_file.dta', data, {2 : 'tw'})
>>> writer.write_file()
"""
from pandas.io.stata import StataWriter
writer = StataWriter(fname, self, convert_dates=convert_dates,
encoding=encoding, byteorder=byteorder,
time_stamp=time_stamp, data_label=data_label,
write_index=write_index,
variable_labels=variable_labels)
writer.write_file()
@Appender(fmt.docstring_to_string, indents=1)
[docs] def to_string(self, buf=None, columns=None, col_space=None, header=True,
index=True, na_rep='NaN', formatters=None, float_format=None,
sparsify=None, index_names=True, justify=None,
line_width=None, max_rows=None, max_cols=None,
show_dimensions=False):
"""
Render a DataFrame to a console-friendly tabular output.
"""
formatter = fmt.DataFrameFormatter(self, buf=buf, columns=columns,
col_space=col_space, na_rep=na_rep,
formatters=formatters,
float_format=float_format,
sparsify=sparsify, justify=justify,
index_names=index_names,
header=header, index=index,
line_width=line_width,
max_rows=max_rows,
max_cols=max_cols,
show_dimensions=show_dimensions)
formatter.to_string()
if buf is None:
result = formatter.buf.getvalue()
return result
@Appender(fmt.docstring_to_string, indents=1)
[docs] def to_html(self, buf=None, columns=None, col_space=None, colSpace=None,
header=True, index=True, na_rep='NaN', formatters=None,
float_format=None, sparsify=None, index_names=True,
justify=None, bold_rows=True, classes=None, escape=True,
max_rows=None, max_cols=None, show_dimensions=False,
notebook=False, decimal='.'):
"""
Render a DataFrame as an HTML table.
`to_html`-specific options:
bold_rows : boolean, 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 : boolean, default True
Convert the characters <, >, and & to HTML-safe sequences.=
max_rows : int, optional
Maximum number of rows to show before truncating. If None, show
all.
max_cols : int, optional
Maximum number of columns to show before truncating. If None, show
all.
decimal : string, default '.'
Character recognized as decimal separator, e.g. ',' in Europe
.. versionadded:: 0.18.0
"""
if colSpace is not None: # pragma: no cover
warnings.warn("colSpace is deprecated, use col_space",
FutureWarning, stacklevel=2)
col_space = colSpace
formatter = fmt.DataFrameFormatter(self, buf=buf, columns=columns,
col_space=col_space, na_rep=na_rep,
formatters=formatters,
float_format=float_format,
sparsify=sparsify, justify=justify,
index_names=index_names,
header=header, index=index,
bold_rows=bold_rows, escape=escape,
max_rows=max_rows,
max_cols=max_cols,
show_dimensions=show_dimensions,
decimal=decimal)
# TODO: a generic formatter wld b in DataFrameFormatter
formatter.to_html(classes=classes, notebook=notebook)
if buf is None:
return formatter.buf.getvalue()
@Appender(fmt.common_docstring + fmt.return_docstring, indents=1)
[docs] def to_latex(self, buf=None, columns=None, col_space=None, colSpace=None,
header=True, index=True, na_rep='NaN', formatters=None,
float_format=None, sparsify=None, index_names=True,
bold_rows=True, column_format=None, longtable=None,
escape=None, encoding=None, decimal='.'):
"""
Render a DataFrame to a tabular environment table. You can splice
this into a LaTeX document. Requires \\usepackage{booktabs}.
`to_latex`-specific options:
bold_rows : boolean, default True
Make the row labels bold in the output
column_format : str, default None
The columns format as specified in `LaTeX table format
<https://en.wikibooks.org/wiki/LaTeX/Tables>`__ e.g 'rcl' for 3
columns
longtable : boolean, default will be read from the pandas config module
default: False
Use a longtable environment instead of tabular. Requires adding
a \\usepackage{longtable} to your LaTeX preamble.
escape : boolean, default will be read from the pandas config module
default: True
When set to False prevents from escaping latex special
characters in column names.
encoding : str, default None
Default encoding is ascii in Python 2 and utf-8 in Python 3
decimal : string, default '.'
Character recognized as decimal separator, e.g. ',' in Europe
.. versionadded:: 0.18.0
"""
if colSpace is not None: # pragma: no cover
warnings.warn("colSpace is deprecated, use col_space",
FutureWarning, stacklevel=2)
col_space = colSpace
# Get defaults from the pandas config
if longtable is None:
longtable = get_option("display.latex.longtable")
if escape is None:
escape = get_option("display.latex.escape")
formatter = fmt.DataFrameFormatter(self, buf=buf, columns=columns,
col_space=col_space, na_rep=na_rep,
header=header, index=index,
formatters=formatters,
float_format=float_format,
bold_rows=bold_rows,
sparsify=sparsify,
index_names=index_names,
escape=escape, decimal=decimal)
formatter.to_latex(column_format=column_format, longtable=longtable,
encoding=encoding)
if buf is None:
return formatter.buf.getvalue()
[docs] def info(self, verbose=None, buf=None, max_cols=None, memory_usage=None,
null_counts=None):
"""
Concise summary of a DataFrame.
Parameters
----------
verbose : {None, True, False}, optional
Whether to print the full summary.
None follows the `display.max_info_columns` setting.
True or False overrides the `display.max_info_columns` setting.
buf : writable buffer, defaults to sys.stdout
max_cols : int, default None
Determines whether full summary or short summary is printed.
None follows the `display.max_info_columns` setting.
memory_usage : boolean/string, default None
Specifies whether total memory usage of the DataFrame
elements (including index) should be displayed. None follows
the `display.memory_usage` setting. True or False overrides
the `display.memory_usage` setting. A value of 'deep' is equivalent
of True, with deep introspection. Memory usage is shown in
human-readable units (base-2 representation).
null_counts : boolean, default None
Whether to show the non-null counts
- If None, then only show if the frame is smaller than
max_info_rows and max_info_columns.
- If True, always show counts.
- If False, never show counts.
"""
from pandas.formats.format import _put_lines
if buf is None: # pragma: no cover
buf = sys.stdout
lines = []
lines.append(str(type(self)))
lines.append(self.index.summary())
if len(self.columns) == 0:
lines.append('Empty %s' % type(self).__name__)
_put_lines(buf, lines)
return
cols = self.columns
# hack
if max_cols is None:
max_cols = get_option('display.max_info_columns',
len(self.columns) + 1)
max_rows = get_option('display.max_info_rows', len(self) + 1)
if null_counts is None:
show_counts = ((len(self.columns) <= max_cols) and
(len(self) < max_rows))
else:
show_counts = null_counts
exceeds_info_cols = len(self.columns) > max_cols
def _verbose_repr():
lines.append('Data columns (total %d columns):' %
len(self.columns))
space = max([len(pprint_thing(k)) for k in self.columns]) + 4
counts = None
tmpl = "%s%s"
if show_counts:
counts = self.count()
if len(cols) != len(counts): # pragma: no cover
raise AssertionError('Columns must equal counts (%d != %d)'
% (len(cols), len(counts)))
tmpl = "%s non-null %s"
dtypes = self.dtypes
for i, col in enumerate(self.columns):
dtype = dtypes.iloc[i]
col = pprint_thing(col)
count = ""
if show_counts:
count = counts.iloc[i]
lines.append(_put_str(col, space) + tmpl % (count, dtype))
def _non_verbose_repr():
lines.append(self.columns.summary(name='Columns'))
def _sizeof_fmt(num, size_qualifier):
# returns size in human readable format
for x in ['bytes', 'KB', 'MB', 'GB', 'TB']:
if num < 1024.0:
return "%3.1f%s %s" % (num, size_qualifier, x)
num /= 1024.0
return "%3.1f%s %s" % (num, size_qualifier, 'PB')
if verbose:
_verbose_repr()
elif verbose is False: # specifically set to False, not nesc None
_non_verbose_repr()
else:
if exceeds_info_cols:
_non_verbose_repr()
else:
_verbose_repr()
counts = self.get_dtype_counts()
dtypes = ['%s(%d)' % k for k in sorted(compat.iteritems(counts))]
lines.append('dtypes: %s' % ', '.join(dtypes))
if memory_usage is None:
memory_usage = get_option('display.memory_usage')
if memory_usage:
# append memory usage of df to display
size_qualifier = ''
if memory_usage == 'deep':
deep = True
else:
# size_qualifier is just a best effort; not guaranteed to catch
# all cases (e.g., it misses categorical data even with object
# categories)
deep = False
if 'object' in counts or is_object_dtype(self.index):
size_qualifier = '+'
mem_usage = self.memory_usage(index=True, deep=deep).sum()
lines.append("memory usage: %s\n" %
_sizeof_fmt(mem_usage, size_qualifier))
_put_lines(buf, lines)
[docs] def memory_usage(self, index=True, deep=False):
"""Memory usage of DataFrame columns.
Parameters
----------
index : bool
Specifies whether to include memory usage of DataFrame's
index in returned Series. If `index=True` (default is False)
the first index of the Series is `Index`.
deep : bool
Introspect the data deeply, interrogate
`object` dtypes for system-level memory consumption
Returns
-------
sizes : Series
A series with column names as index and memory usage of
columns with units of bytes.
Notes
-----
Memory usage does not include memory consumed by elements that
are not components of the array if deep=False
See Also
--------
numpy.ndarray.nbytes
"""
result = Series([c.memory_usage(index=False, deep=deep)
for col, c in self.iteritems()], index=self.columns)
if index:
result = Series(self.index.memory_usage(deep=deep),
index=['Index']).append(result)
return result
[docs] def transpose(self, *args, **kwargs):
"""Transpose index and columns"""
nv.validate_transpose(args, dict())
return super(DataFrame, self).transpose(1, 0, **kwargs)
T = property(transpose)
# ----------------------------------------------------------------------
# Picklability
# legacy pickle formats
def _unpickle_frame_compat(self, state): # pragma: no cover
from pandas.core.common import _unpickle_array
if len(state) == 2: # pragma: no cover
series, idx = state
columns = sorted(series)
else:
series, cols, idx = state
columns = _unpickle_array(cols)
index = _unpickle_array(idx)
self._data = self._init_dict(series, index, columns, None)
def _unpickle_matrix_compat(self, state): # pragma: no cover
from pandas.core.common import _unpickle_array
# old unpickling
(vals, idx, cols), object_state = state
index = _unpickle_array(idx)
dm = DataFrame(vals, index=index, columns=_unpickle_array(cols),
copy=False)
if object_state is not None:
ovals, _, ocols = object_state
objects = DataFrame(ovals, index=index,
columns=_unpickle_array(ocols), copy=False)
dm = dm.join(objects)
self._data = dm._data
# ----------------------------------------------------------------------
# Getting and setting elements
[docs] def get_value(self, index, col, takeable=False):
"""
Quickly retrieve single value at passed column and index
Parameters
----------
index : row label
col : column label
takeable : interpret the index/col as indexers, default False
Returns
-------
value : scalar value
"""
if takeable:
series = self._iget_item_cache(col)
return _maybe_box_datetimelike(series._values[index])
series = self._get_item_cache(col)
engine = self.index._engine
return engine.get_value(series.get_values(), index)
[docs] def set_value(self, index, col, value, takeable=False):
"""
Put single value at passed column and index
Parameters
----------
index : row label
col : column label
value : scalar value
takeable : interpret the index/col as indexers, default False
Returns
-------
frame : DataFrame
If label pair is contained, will be reference to calling DataFrame,
otherwise a new object
"""
try:
if takeable is True:
series = self._iget_item_cache(col)
return series.set_value(index, value, takeable=True)
series = self._get_item_cache(col)
engine = self.index._engine
engine.set_value(series._values, index, value)
return self
except (KeyError, TypeError):
# set using a non-recursive method & reset the cache
self.loc[index, col] = value
self._item_cache.pop(col, None)
return self
[docs] def irow(self, i, copy=False):
"""
DEPRECATED. Use ``.iloc[i]`` instead
"""
warnings.warn("irow(i) is deprecated. Please use .iloc[i]",
FutureWarning, stacklevel=2)
return self._ixs(i, axis=0)
[docs] def icol(self, i):
"""
DEPRECATED. Use ``.iloc[:, i]`` instead
"""
warnings.warn("icol(i) is deprecated. Please use .iloc[:,i]",
FutureWarning, stacklevel=2)
return self._ixs(i, axis=1)
def _ixs(self, i, axis=0):
"""
i : int, slice, or sequence of integers
axis : int
"""
# irow
if axis == 0:
"""
Notes
-----
If slice passed, the resulting data will be a view
"""
if isinstance(i, slice):
return self[i]
else:
label = self.index[i]
if isinstance(label, Index):
# a location index by definition
result = self.take(i, axis=axis)
copy = True
else:
new_values = self._data.fast_xs(i)
if is_scalar(new_values):
return new_values
# if we are a copy, mark as such
copy = (isinstance(new_values, np.ndarray) and
new_values.base is None)
result = self._constructor_sliced(new_values,
index=self.columns,
name=self.index[i],
dtype=new_values.dtype)
result._set_is_copy(self, copy=copy)
return result
# icol
else:
"""
Notes
-----
If slice passed, the resulting data will be a view
"""
label = self.columns[i]
if isinstance(i, slice):
# need to return view
lab_slice = slice(label[0], label[-1])
return self.ix[:, lab_slice]
else:
if isinstance(label, Index):
return self.take(i, axis=1, convert=True)
index_len = len(self.index)
# if the values returned are not the same length
# as the index (iow a not found value), iget returns
# a 0-len ndarray. This is effectively catching
# a numpy error (as numpy should really raise)
values = self._data.iget(i)
if index_len and not len(values):
values = np.array([np.nan] * index_len, dtype=object)
result = self._constructor_sliced.from_array(values,
index=self.index,
name=label,
fastpath=True)
# this is a cached value, mark it so
result._set_as_cached(label, self)
return result
[docs] def iget_value(self, i, j):
"""
DEPRECATED. Use ``.iat[i, j]`` instead
"""
warnings.warn("iget_value(i, j) is deprecated. Please use .iat[i, j]",
FutureWarning, stacklevel=2)
return self.iat[i, j]
def __getitem__(self, key):
key = com._apply_if_callable(key, self)
# shortcut if we are an actual column
is_mi_columns = isinstance(self.columns, MultiIndex)
try:
if key in self.columns and not is_mi_columns:
return self._getitem_column(key)
except:
pass
# see if we can slice the rows
indexer = convert_to_index_sliceable(self, key)
if indexer is not None:
return self._getitem_slice(indexer)
if isinstance(key, (Series, np.ndarray, Index, list)):
# either boolean or fancy integer index
return self._getitem_array(key)
elif isinstance(key, DataFrame):
return self._getitem_frame(key)
elif is_mi_columns:
return self._getitem_multilevel(key)
else:
return self._getitem_column(key)
def _getitem_column(self, key):
""" return the actual column """
# get column
if self.columns.is_unique:
return self._get_item_cache(key)
# duplicate columns & possible reduce dimensionality
result = self._constructor(self._data.get(key))
if result.columns.is_unique:
result = result[key]
return result
def _getitem_slice(self, key):
return self._slice(key, axis=0)
def _getitem_array(self, key):
# also raises Exception if object array with NA values
if com.is_bool_indexer(key):
# warning here just in case -- previously __setitem__ was
# reindexing but __getitem__ was not; it seems more reasonable to
# go with the __setitem__ behavior since that is more consistent
# with all other indexing behavior
if isinstance(key, Series) and not key.index.equals(self.index):
warnings.warn("Boolean Series key will be reindexed to match "
"DataFrame index.", UserWarning, stacklevel=3)
elif len(key) != len(self.index):
raise ValueError('Item wrong length %d instead of %d.' %
(len(key), len(self.index)))
# check_bool_indexer will throw exception if Series key cannot
# be reindexed to match DataFrame rows
key = check_bool_indexer(self.index, key)
indexer = key.nonzero()[0]
return self.take(indexer, axis=0, convert=False)
else:
indexer = self.ix._convert_to_indexer(key, axis=1)
return self.take(indexer, axis=1, convert=True)
def _getitem_multilevel(self, key):
loc = self.columns.get_loc(key)
if isinstance(loc, (slice, Series, np.ndarray, Index)):
new_columns = self.columns[loc]
result_columns = maybe_droplevels(new_columns, key)
if self._is_mixed_type:
result = self.reindex(columns=new_columns)
result.columns = result_columns
else:
new_values = self.values[:, loc]
result = self._constructor(new_values, index=self.index,
columns=result_columns)
result = result.__finalize__(self)
if len(result.columns) == 1:
top = result.columns[0]
if ((type(top) == str and top == '') or
(type(top) == tuple and top[0] == '')):
result = result['']
if isinstance(result, Series):
result = self._constructor_sliced(result,
index=self.index,
name=key)
result._set_is_copy(self)
return result
else:
return self._get_item_cache(key)
def _getitem_frame(self, key):
if key.values.size and not is_bool_dtype(key.values):
raise ValueError('Must pass DataFrame with boolean values only')
return self.where(key)
[docs] def query(self, expr, inplace=False, **kwargs):
"""Query the columns of a frame with a boolean expression.
.. versionadded:: 0.13
Parameters
----------
expr : string
The query string to evaluate. You can refer to variables
in the environment by prefixing them with an '@' character like
``@a + b``.
inplace : bool
Whether the query should modify the data in place or return
a modified copy
.. versionadded:: 0.18.0
kwargs : dict
See the documentation for :func:`pandas.eval` for complete details
on the keyword arguments accepted by :meth:`DataFrame.query`.
Returns
-------
q : DataFrame
Notes
-----
The result of the evaluation of this expression is first passed to
:attr:`DataFrame.loc` and if that fails because of a
multidimensional key (e.g., a DataFrame) then the result will be passed
to :meth:`DataFrame.__getitem__`.
This method uses the top-level :func:`pandas.eval` function to
evaluate the passed query.
The :meth:`~pandas.DataFrame.query` method uses a slightly
modified Python syntax by default. For example, the ``&`` and ``|``
(bitwise) operators have the precedence of their boolean cousins,
:keyword:`and` and :keyword:`or`. This *is* syntactically valid Python,
however the semantics are different.
You can change the semantics of the expression by passing the keyword
argument ``parser='python'``. This enforces the same semantics as
evaluation in Python space. Likewise, you can pass ``engine='python'``
to evaluate an expression using Python itself as a backend. This is not
recommended as it is inefficient compared to using ``numexpr`` as the
engine.
The :attr:`DataFrame.index` and
:attr:`DataFrame.columns` attributes of the
:class:`~pandas.DataFrame` instance are placed in the query namespace
by default, which allows you to treat both the index and columns of the
frame as a column in the frame.
The identifier ``index`` is used for the frame index; you can also
use the name of the index to identify it in a query.
For further details and examples see the ``query`` documentation in
:ref:`indexing <indexing.query>`.
See Also
--------
pandas.eval
DataFrame.eval
Examples
--------
>>> from numpy.random import randn
>>> from pandas import DataFrame
>>> df = DataFrame(randn(10, 2), columns=list('ab'))
>>> df.query('a > b')
>>> df[df.a > df.b] # same result as the previous expression
"""
if not isinstance(expr, compat.string_types):
msg = "expr must be a string to be evaluated, {0} given"
raise ValueError(msg.format(type(expr)))
kwargs['level'] = kwargs.pop('level', 0) + 1
kwargs['target'] = None
res = self.eval(expr, **kwargs)
try:
new_data = self.loc[res]
except ValueError:
# when res is multi-dimensional loc raises, but this is sometimes a
# valid query
new_data = self[res]
if inplace:
self._update_inplace(new_data)
else:
return new_data
[docs] def eval(self, expr, inplace=None, **kwargs):
"""Evaluate an expression in the context of the calling DataFrame
instance.
Parameters
----------
expr : string
The expression string to evaluate.
inplace : bool
If the expression contains an assignment, whether to return a new
DataFrame or mutate the existing.
WARNING: inplace=None currently falls back to to True, but
in a future version, will default to False. Use inplace=True
explicitly rather than relying on the default.
.. versionadded:: 0.18.0
kwargs : dict
See the documentation for :func:`~pandas.eval` for complete details
on the keyword arguments accepted by
:meth:`~pandas.DataFrame.query`.
Returns
-------
ret : ndarray, scalar, or pandas object
See Also
--------
pandas.DataFrame.query
pandas.DataFrame.assign
pandas.eval
Notes
-----
For more details see the API documentation for :func:`~pandas.eval`.
For detailed examples see :ref:`enhancing performance with eval
<enhancingperf.eval>`.
Examples
--------
>>> from numpy.random import randn
>>> from pandas import DataFrame
>>> df = DataFrame(randn(10, 2), columns=list('ab'))
>>> df.eval('a + b')
>>> df.eval('c = a + b')
"""
resolvers = kwargs.pop('resolvers', None)
kwargs['level'] = kwargs.pop('level', 0) + 1
if resolvers is None:
index_resolvers = self._get_index_resolvers()
resolvers = dict(self.iteritems()), index_resolvers
if 'target' not in kwargs:
kwargs['target'] = self
kwargs['resolvers'] = kwargs.get('resolvers', ()) + resolvers
return _eval(expr, inplace=inplace, **kwargs)
[docs] def select_dtypes(self, include=None, exclude=None):
"""Return a subset of a DataFrame including/excluding columns based on
their ``dtype``.
Parameters
----------
include, exclude : list-like
A list of dtypes or strings to be included/excluded. You must pass
in a non-empty sequence for at least one of these.
Raises
------
ValueError
* If both of ``include`` and ``exclude`` are empty
* If ``include`` and ``exclude`` have overlapping elements
* If any kind of string dtype is passed in.
TypeError
* If either of ``include`` or ``exclude`` is not a sequence
Returns
-------
subset : DataFrame
The subset of the frame including the dtypes in ``include`` and
excluding the dtypes in ``exclude``.
Notes
-----
* To select all *numeric* types use the numpy dtype ``numpy.number``
* To select strings you must use the ``object`` dtype, but note that
this will return *all* object dtype columns
* See the `numpy dtype hierarchy
<http://docs.scipy.org/doc/numpy/reference/arrays.scalars.html>`__
* To select Pandas categorical dtypes, use 'category'
Examples
--------
>>> df = pd.DataFrame({'a': np.random.randn(6).astype('f4'),
... 'b': [True, False] * 3,
... 'c': [1.0, 2.0] * 3})
>>> df
a b c
0 0.3962 True 1
1 0.1459 False 2
2 0.2623 True 1
3 0.0764 False 2
4 -0.9703 True 1
5 -1.2094 False 2
>>> df.select_dtypes(include=['float64'])
c
0 1
1 2
2 1
3 2
4 1
5 2
>>> df.select_dtypes(exclude=['floating'])
b
0 True
1 False
2 True
3 False
4 True
5 False
"""
include, exclude = include or (), exclude or ()
if not (is_list_like(include) and is_list_like(exclude)):
raise TypeError('include and exclude must both be non-string'
' sequences')
selection = tuple(map(frozenset, (include, exclude)))
if not any(selection):
raise ValueError('at least one of include or exclude must be '
'nonempty')
# convert the myriad valid dtypes object to a single representation
include, exclude = map(
lambda x: frozenset(map(_get_dtype_from_object, x)), selection)
for dtypes in (include, exclude):
_invalidate_string_dtypes(dtypes)
# can't both include AND exclude!
if not include.isdisjoint(exclude):
raise ValueError('include and exclude overlap on %s' %
(include & exclude))
# empty include/exclude -> defaults to True
# three cases (we've already raised if both are empty)
# case 1: empty include, nonempty exclude
# we have True, True, ... True for include, same for exclude
# in the loop below we get the excluded
# and when we call '&' below we get only the excluded
# case 2: nonempty include, empty exclude
# same as case 1, but with include
# case 3: both nonempty
# the "union" of the logic of case 1 and case 2:
# we get the included and excluded, and return their logical and
include_these = Series(not bool(include), index=self.columns)
exclude_these = Series(not bool(exclude), index=self.columns)
def is_dtype_instance_mapper(column, dtype):
return column, functools.partial(issubclass, dtype.type)
for column, f in itertools.starmap(is_dtype_instance_mapper,
self.dtypes.iteritems()):
if include: # checks for the case of empty include or exclude
include_these[column] = any(map(f, include))
if exclude:
exclude_these[column] = not any(map(f, exclude))
dtype_indexer = include_these & exclude_these
return self.loc[com._get_info_slice(self, dtype_indexer)]
def _box_item_values(self, key, values):
items = self.columns[self.columns.get_loc(key)]
if values.ndim == 2:
return self._constructor(values.T, columns=items, index=self.index)
else:
return self._box_col_values(values, items)
def _box_col_values(self, values, items):
""" provide boxed values for a column """
return self._constructor_sliced.from_array(values, index=self.index,
name=items, fastpath=True)
def __setitem__(self, key, value):
key = com._apply_if_callable(key, self)
# see if we can slice the rows
indexer = convert_to_index_sliceable(self, key)
if indexer is not None:
return self._setitem_slice(indexer, value)
if isinstance(key, (Series, np.ndarray, list, Index)):
self._setitem_array(key, value)
elif isinstance(key, DataFrame):
self._setitem_frame(key, value)
else:
# set column
self._set_item(key, value)
def _setitem_slice(self, key, value):
self._check_setitem_copy()
self.ix._setitem_with_indexer(key, value)
def _setitem_array(self, key, value):
# also raises Exception if object array with NA values
if com.is_bool_indexer(key):
if len(key) != len(self.index):
raise ValueError('Item wrong length %d instead of %d!' %
(len(key), len(self.index)))
key = check_bool_indexer(self.index, key)
indexer = key.nonzero()[0]
self._check_setitem_copy()
self.ix._setitem_with_indexer(indexer, value)
else:
if isinstance(value, DataFrame):
if len(value.columns) != len(key):
raise ValueError('Columns must be same length as key')
for k1, k2 in zip(key, value.columns):
self[k1] = value[k2]
else:
indexer = self.ix._convert_to_indexer(key, axis=1)
self._check_setitem_copy()
self.ix._setitem_with_indexer((slice(None), indexer), value)
def _setitem_frame(self, key, value):
# support boolean setting with DataFrame input, e.g.
# df[df > df2] = 0
if key.values.size and not is_bool_dtype(key.values):
raise TypeError('Must pass DataFrame with boolean values only')
self._check_inplace_setting(value)
self._check_setitem_copy()
self._where(-key, value, inplace=True)
def _ensure_valid_index(self, value):
"""
ensure that if we don't have an index, that we can create one from the
passed value
"""
# GH5632, make sure that we are a Series convertible
if not len(self.index) and is_list_like(value):
try:
value = Series(value)
except:
raise ValueError('Cannot set a frame with no defined index '
'and a value that cannot be converted to a '
'Series')
self._data = self._data.reindex_axis(value.index.copy(), axis=1,
fill_value=np.nan)
def _set_item(self, key, value):
"""
Add series to DataFrame in specified column.
If series is a numpy-array (not a Series/TimeSeries), it must be the
same length as the DataFrames index or an error will be thrown.
Series/TimeSeries will be conformed to the DataFrames index to
ensure homogeneity.
"""
self._ensure_valid_index(value)
value = self._sanitize_column(key, value)
NDFrame._set_item(self, key, value)
# check if we are modifying a copy
# try to set first as we want an invalid
# value exeption to occur first
if len(self):
self._check_setitem_copy()
[docs] def insert(self, loc, column, value, allow_duplicates=False):
"""
Insert column into DataFrame at specified location.
If `allow_duplicates` is False, raises Exception if column
is already contained in the DataFrame.
Parameters
----------
loc : int
Must have 0 <= loc <= len(columns)
column : object
value : int, Series, or array-like
"""
self._ensure_valid_index(value)
value = self._sanitize_column(column, value)
self._data.insert(loc, column, value,
allow_duplicates=allow_duplicates)
[docs] def assign(self, **kwargs):
"""
Assign new columns to a DataFrame, returning a new object
(a copy) with all the original columns in addition to the new ones.
.. versionadded:: 0.16.0
Parameters
----------
kwargs : keyword, value pairs
keywords are the column names. If the values are
callable, they are computed on the DataFrame and
assigned to the new columns. The callable must not
change input DataFrame (though pandas doesn't check it).
If the values are not callable, (e.g. a Series, scalar, or array),
they are simply assigned.
Returns
-------
df : DataFrame
A new DataFrame with the new columns in addition to
all the existing columns.
Notes
-----
Since ``kwargs`` is a dictionary, the order of your
arguments may not be preserved. The make things predicatable,
the columns are inserted in alphabetical order, at the end of
your DataFrame. Assigning multiple columns within the same
``assign`` is possible, but you cannot reference other columns
created within the same ``assign`` call.
Examples
--------
>>> df = DataFrame({'A': range(1, 11), 'B': np.random.randn(10)})
Where the value is a callable, evaluated on `df`:
>>> df.assign(ln_A = lambda x: np.log(x.A))
A B ln_A
0 1 0.426905 0.000000
1 2 -0.780949 0.693147
2 3 -0.418711 1.098612
3 4 -0.269708 1.386294
4 5 -0.274002 1.609438
5 6 -0.500792 1.791759
6 7 1.649697 1.945910
7 8 -1.495604 2.079442
8 9 0.549296 2.197225
9 10 -0.758542 2.302585
Where the value already exists and is inserted:
>>> newcol = np.log(df['A'])
>>> df.assign(ln_A=newcol)
A B ln_A
0 1 0.426905 0.000000
1 2 -0.780949 0.693147
2 3 -0.418711 1.098612
3 4 -0.269708 1.386294
4 5 -0.274002 1.609438
5 6 -0.500792 1.791759
6 7 1.649697 1.945910
7 8 -1.495604 2.079442
8 9 0.549296 2.197225
9 10 -0.758542 2.302585
"""
data = self.copy()
# do all calculations first...
results = {}
for k, v in kwargs.items():
results[k] = com._apply_if_callable(v, data)
# ... and then assign
for k, v in sorted(results.items()):
data[k] = v
return data
def _sanitize_column(self, key, value):
# Need to make sure new columns (which go into the BlockManager as new
# blocks) are always copied
def reindexer(value):
# reindex if necessary
if value.index.equals(self.index) or not len(self.index):
value = value._values.copy()
else:
# GH 4107
try:
value = value.reindex(self.index)._values
except Exception as e:
# duplicate axis
if not value.index.is_unique:
raise e
# other
raise TypeError('incompatible index of inserted column '
'with frame index')
return value
if isinstance(value, Series):
value = reindexer(value)
elif isinstance(value, DataFrame):
# align right-hand-side columns if self.columns
# is multi-index and self[key] is a sub-frame
if isinstance(self.columns, MultiIndex) and key in self.columns:
loc = self.columns.get_loc(key)
if isinstance(loc, (slice, Series, np.ndarray, Index)):
cols = maybe_droplevels(self.columns[loc], key)
if len(cols) and not cols.equals(value.columns):
value = value.reindex_axis(cols, axis=1)
# now align rows
value = reindexer(value).T
elif isinstance(value, Categorical):
value = value.copy()
elif isinstance(value, Index) or is_sequence(value):
from pandas.core.series import _sanitize_index
# turn me into an ndarray
value = _sanitize_index(value, self.index, copy=False)
if not isinstance(value, (np.ndarray, Index)):
if isinstance(value, list) and len(value) > 0:
value = _possibly_convert_platform(value)
else:
value = com._asarray_tuplesafe(value)
elif value.ndim == 2:
value = value.copy().T
else:
value = value.copy()
# possibly infer to datetimelike
if is_object_dtype(value.dtype):
value = _possibly_infer_to_datetimelike(value)
else:
# upcast the scalar
dtype, value = _infer_dtype_from_scalar(value)
value = np.repeat(value, len(self.index)).astype(dtype)
value = _possibly_cast_to_datetime(value, dtype)
# return internal types directly
if is_extension_type(value):
return value
# broadcast across multiple columns if necessary
if key in self.columns and value.ndim == 1:
if (not self.columns.is_unique or
isinstance(self.columns, MultiIndex)):
existing_piece = self[key]
if isinstance(existing_piece, DataFrame):
value = np.tile(value, (len(existing_piece.columns), 1))
return np.atleast_2d(np.asarray(value))
@property
def _series(self):
result = {}
for idx, item in enumerate(self.columns):
result[item] = Series(self._data.iget(idx), index=self.index,
name=item)
return result
[docs] def lookup(self, row_labels, col_labels):
"""Label-based "fancy indexing" function for DataFrame.
Given equal-length arrays of row and column labels, return an
array of the values corresponding to each (row, col) pair.
Parameters
----------
row_labels : sequence
The row labels to use for lookup
col_labels : sequence
The column labels to use for lookup
Notes
-----
Akin to::
result = []
for row, col in zip(row_labels, col_labels):
result.append(df.get_value(row, col))
Examples
--------
values : ndarray
The found values
"""
n = len(row_labels)
if n != len(col_labels):
raise ValueError('Row labels must have same size as column labels')
thresh = 1000
if not self._is_mixed_type or n > thresh:
values = self.values
ridx = self.index.get_indexer(row_labels)
cidx = self.columns.get_indexer(col_labels)
if (ridx == -1).any():
raise KeyError('One or more row labels was not found')
if (cidx == -1).any():
raise KeyError('One or more column labels was not found')
flat_index = ridx * len(self.columns) + cidx
result = values.flat[flat_index]
else:
result = np.empty(n, dtype='O')
for i, (r, c) in enumerate(zip(row_labels, col_labels)):
result[i] = self.get_value(r, c)
if is_object_dtype(result):
result = lib.maybe_convert_objects(result)
return result
# ----------------------------------------------------------------------
# Reindexing and alignment
def _reindex_axes(self, axes, level, limit, tolerance, method, fill_value,
copy):
frame = self
columns = axes['columns']
if columns is not None:
frame = frame._reindex_columns(columns, copy, level, fill_value,
limit, tolerance)
index = axes['index']
if index is not None:
frame = frame._reindex_index(index, method, copy, level,
fill_value, limit, tolerance)
return frame
def _reindex_index(self, new_index, method, copy, level, fill_value=NA,
limit=None, tolerance=None):
new_index, indexer = self.index.reindex(new_index, method, level,
limit=limit,
tolerance=tolerance)
return self._reindex_with_indexers({0: [new_index, indexer]},
copy=copy, fill_value=fill_value,
allow_dups=False)
def _reindex_columns(self, new_columns, copy, level, fill_value=NA,
limit=None, tolerance=None):
new_columns, indexer = self.columns.reindex(new_columns, level=level,
limit=limit,
tolerance=tolerance)
return self._reindex_with_indexers({1: [new_columns, indexer]},
copy=copy, fill_value=fill_value,
allow_dups=False)
def _reindex_multi(self, axes, copy, fill_value):
""" we are guaranteed non-Nones in the axes! """
new_index, row_indexer = self.index.reindex(axes['index'])
new_columns, col_indexer = self.columns.reindex(axes['columns'])
if row_indexer is not None and col_indexer is not None:
indexer = row_indexer, col_indexer
new_values = algos.take_2d_multi(self.values, indexer,
fill_value=fill_value)
return self._constructor(new_values, index=new_index,
columns=new_columns)
else:
return self._reindex_with_indexers({0: [new_index, row_indexer],
1: [new_columns, col_indexer]},
copy=copy,
fill_value=fill_value)
@Appender(_shared_docs['align'] % _shared_doc_kwargs)
[docs] def align(self, other, join='outer', axis=None, level=None, copy=True,
fill_value=None, method=None, limit=None, fill_axis=0,
broadcast_axis=None):
return super(DataFrame, self).align(other, join=join, axis=axis,
level=level, copy=copy,
fill_value=fill_value,
method=method, limit=limit,
fill_axis=fill_axis,
broadcast_axis=broadcast_axis)
@Appender(_shared_docs['reindex'] % _shared_doc_kwargs)
[docs] def reindex(self, index=None, columns=None, **kwargs):
return super(DataFrame, self).reindex(index=index, columns=columns,
**kwargs)
@Appender(_shared_docs['reindex_axis'] % _shared_doc_kwargs)
[docs] def reindex_axis(self, labels, axis=0, method=None, level=None, copy=True,
limit=None, fill_value=np.nan):
return super(DataFrame,
self).reindex_axis(labels=labels, axis=axis,
method=method, level=level, copy=copy,
limit=limit, fill_value=fill_value)
@Appender(_shared_docs['rename'] % _shared_doc_kwargs)
[docs] def rename(self, index=None, columns=None, **kwargs):
return super(DataFrame, self).rename(index=index, columns=columns,
**kwargs)
@Appender(_shared_docs['fillna'] % _shared_doc_kwargs)
[docs] def fillna(self, value=None, method=None, axis=None, inplace=False,
limit=None, downcast=None, **kwargs):
return super(DataFrame,
self).fillna(value=value, method=method, axis=axis,
inplace=inplace, limit=limit,
downcast=downcast, **kwargs)
@Appender(_shared_docs['shift'] % _shared_doc_kwargs)
[docs] def shift(self, periods=1, freq=None, axis=0):
return super(DataFrame, self).shift(periods=periods, freq=freq,
axis=axis)
[docs] def set_index(self, keys, drop=True, append=False, inplace=False,
verify_integrity=False):
"""
Set the DataFrame index (row labels) using one or more existing
columns. By default yields a new object.
Parameters
----------
keys : column label or list of column labels / arrays
drop : boolean, default True
Delete columns to be used as the new index
append : boolean, default False
Whether to append columns to existing index
inplace : boolean, default False
Modify the DataFrame in place (do not create a new object)
verify_integrity : boolean, default False
Check the new index for duplicates. Otherwise defer the check until
necessary. Setting to False will improve the performance of this
method
Examples
--------
>>> indexed_df = df.set_index(['A', 'B'])
>>> indexed_df2 = df.set_index(['A', [0, 1, 2, 0, 1, 2]])
>>> indexed_df3 = df.set_index([[0, 1, 2, 0, 1, 2]])
Returns
-------
dataframe : DataFrame
"""
if not isinstance(keys, list):
keys = [keys]
if inplace:
frame = self
else:
frame = self.copy()
arrays = []
names = []
if append:
names = [x for x in self.index.names]
if isinstance(self.index, MultiIndex):
for i in range(self.index.nlevels):
arrays.append(self.index.get_level_values(i))
else:
arrays.append(self.index)
to_remove = []
for col in keys:
if isinstance(col, MultiIndex):
# append all but the last column so we don't have to modify
# the end of this loop
for n in range(col.nlevels - 1):
arrays.append(col.get_level_values(n))
level = col.get_level_values(col.nlevels - 1)
names.extend(col.names)
elif isinstance(col, Series):
level = col._values
names.append(col.name)
elif isinstance(col, Index):
level = col
names.append(col.name)
elif isinstance(col, (list, np.ndarray, Index)):
level = col
names.append(None)
else:
level = frame[col]._values
names.append(col)
if drop:
to_remove.append(col)
arrays.append(level)
index = MultiIndex.from_arrays(arrays, names=names)
if verify_integrity and not index.is_unique:
duplicates = index.get_duplicates()
raise ValueError('Index has duplicate keys: %s' % duplicates)
for c in to_remove:
del frame[c]
# clear up memory usage
index._cleanup()
frame.index = index
if not inplace:
return frame
[docs] def reset_index(self, level=None, drop=False, inplace=False, col_level=0,
col_fill=''):
"""
For DataFrame with multi-level index, return new DataFrame with
labeling information in the columns under the index names, defaulting
to 'level_0', 'level_1', etc. if any are None. For a standard index,
the index name will be used (if set), otherwise a default 'index' or
'level_0' (if 'index' is already taken) will be used.
Parameters
----------
level : int, str, tuple, or list, default None
Only remove the given levels from the index. Removes all levels by
default
drop : boolean, default False
Do not try to insert index into dataframe columns. This resets
the index to the default integer index.
inplace : boolean, default False
Modify the DataFrame in place (do not create a new object)
col_level : int or str, default 0
If the columns have multiple levels, determines which level the
labels are inserted into. By default it is inserted into the first
level.
col_fill : object, default ''
If the columns have multiple levels, determines how the other
levels are named. If None then the index name is repeated.
Returns
-------
resetted : DataFrame
"""
if inplace:
new_obj = self
else:
new_obj = self.copy()
def _maybe_casted_values(index, labels=None):
if isinstance(index, PeriodIndex):
values = index.asobject.values
elif isinstance(index, DatetimeIndex) and index.tz is not None:
values = index
else:
values = index.values
if values.dtype == np.object_:
values = lib.maybe_convert_objects(values)
# if we have the labels, extract the values with a mask
if labels is not None:
mask = labels == -1
values = values.take(labels)
if mask.any():
values, changed = _maybe_upcast_putmask(values, mask,
np.nan)
return values
new_index = _default_index(len(new_obj))
if isinstance(self.index, MultiIndex):
if level is not None:
if not isinstance(level, (tuple, list)):
level = [level]
level = [self.index._get_level_number(lev) for lev in level]
if len(level) < len(self.index.levels):
new_index = self.index.droplevel(level)
if not drop:
names = self.index.names
zipped = lzip(self.index.levels, self.index.labels)
multi_col = isinstance(self.columns, MultiIndex)
for i, (lev, lab) in reversed(list(enumerate(zipped))):
col_name = names[i]
if col_name is None:
col_name = 'level_%d' % i
if multi_col:
if col_fill is None:
col_name = tuple([col_name] * self.columns.nlevels)
else:
name_lst = [col_fill] * self.columns.nlevels
lev_num = self.columns._get_level_number(col_level)
name_lst[lev_num] = col_name
col_name = tuple(name_lst)
# to ndarray and maybe infer different dtype
level_values = _maybe_casted_values(lev, lab)
if level is None or i in level:
new_obj.insert(0, col_name, level_values)
elif not drop:
name = self.index.name
if name is None or name == 'index':
name = 'index' if 'index' not in self else 'level_0'
if isinstance(self.columns, MultiIndex):
if col_fill is None:
name = tuple([name] * self.columns.nlevels)
else:
name_lst = [col_fill] * self.columns.nlevels
lev_num = self.columns._get_level_number(col_level)
name_lst[lev_num] = name
name = tuple(name_lst)
values = _maybe_casted_values(self.index)
new_obj.insert(0, name, values)
new_obj.index = new_index
if not inplace:
return new_obj
# ----------------------------------------------------------------------
# Reindex-based selection methods
[docs] def dropna(self, axis=0, how='any', thresh=None, subset=None,
inplace=False):
"""
Return object with labels on given axis omitted where alternately any
or all of the data are missing
Parameters
----------
axis : {0 or 'index', 1 or 'columns'}, or tuple/list thereof
Pass tuple or list to drop on multiple axes
how : {'any', 'all'}
* any : if any NA values are present, drop that label
* all : if all values are NA, drop that label
thresh : int, default None
int value : require that many non-NA values
subset : array-like
Labels along other axis to consider, e.g. if you are dropping rows
these would be a list of columns to include
inplace : boolean, default False
If True, do operation inplace and return None.
Returns
-------
dropped : DataFrame
"""
if isinstance(axis, (tuple, list)):
result = self
for ax in axis:
result = result.dropna(how=how, thresh=thresh, subset=subset,
axis=ax)
else:
axis = self._get_axis_number(axis)
agg_axis = 1 - axis
agg_obj = self
if subset is not None:
ax = self._get_axis(agg_axis)
indices = ax.get_indexer_for(subset)
check = indices == -1
if check.any():
raise KeyError(list(np.compress(check, subset)))
agg_obj = self.take(indices, axis=agg_axis)
count = agg_obj.count(axis=agg_axis)
if thresh is not None:
mask = count >= thresh
elif how == 'any':
mask = count == len(agg_obj._get_axis(agg_axis))
elif how == 'all':
mask = count > 0
else:
if how is not None:
raise ValueError('invalid how option: %s' % how)
else:
raise TypeError('must specify how or thresh')
result = self.take(mask.nonzero()[0], axis=axis, convert=False)
if inplace:
self._update_inplace(result)
else:
return result
@deprecate_kwarg('take_last', 'keep', mapping={True: 'last',
False: 'first'})
[docs] def drop_duplicates(self, subset=None, keep='first', inplace=False):
"""
Return DataFrame with duplicate rows removed, optionally only
considering certain columns
Parameters
----------
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'
- ``first`` : Drop duplicates except for the first occurrence.
- ``last`` : Drop duplicates except for the last occurrence.
- False : Drop all duplicates.
take_last : deprecated
inplace : boolean, default False
Whether to drop duplicates in place or to return a copy
Returns
-------
deduplicated : DataFrame
"""
duplicated = self.duplicated(subset, keep=keep)
if inplace:
inds, = (-duplicated).nonzero()
new_data = self._data.take(inds)
self._update_inplace(new_data)
else:
return self[-duplicated]
@deprecate_kwarg('take_last', 'keep', mapping={True: 'last',
False: 'first'})
[docs] def duplicated(self, subset=None, keep='first'):
"""
Return boolean Series denoting duplicate rows, optionally only
considering certain columns
Parameters
----------
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'
- ``first`` : Mark duplicates as ``True`` except for the
first occurrence.
- ``last`` : Mark duplicates as ``True`` except for the
last occurrence.
- False : Mark all duplicates as ``True``.
take_last : deprecated
Returns
-------
duplicated : Series
"""
from pandas.core.groupby import get_group_index
from pandas.hashtable import duplicated_int64, _SIZE_HINT_LIMIT
def f(vals):
labels, shape = algos.factorize(vals,
size_hint=min(len(self),
_SIZE_HINT_LIMIT))
return labels.astype('i8', copy=False), len(shape)
if subset is None:
subset = self.columns
elif (not np.iterable(subset) or
isinstance(subset, compat.string_types) or
isinstance(subset, tuple) and subset in self.columns):
subset = subset,
vals = (self[col].values for col in subset)
labels, shape = map(list, zip(*map(f, vals)))
ids = get_group_index(labels, shape, sort=False, xnull=False)
return Series(duplicated_int64(ids, keep), index=self.index)
# ----------------------------------------------------------------------
# Sorting
@Appender(_shared_docs['sort_values'] % _shared_doc_kwargs)
[docs] def sort_values(self, by, axis=0, ascending=True, inplace=False,
kind='quicksort', na_position='last'):
axis = self._get_axis_number(axis)
other_axis = 0 if axis == 1 else 1
if not isinstance(by, list):
by = [by]
if is_sequence(ascending) and len(by) != len(ascending):
raise ValueError('Length of ascending (%d) != length of by (%d)' %
(len(ascending), len(by)))
if len(by) > 1:
from pandas.core.groupby import _lexsort_indexer
def trans(v):
if needs_i8_conversion(v):
return v.view('i8')
return v
keys = []
for x in by:
k = self.xs(x, axis=other_axis).values
if k.ndim == 2:
raise ValueError('Cannot sort by duplicate column %s' %
str(x))
keys.append(trans(k))
indexer = _lexsort_indexer(keys, orders=ascending,
na_position=na_position)
indexer = _ensure_platform_int(indexer)
else:
from pandas.core.groupby import _nargsort
by = by[0]
k = self.xs(by, axis=other_axis).values
if k.ndim == 2:
# try to be helpful
if isinstance(self.columns, MultiIndex):
raise ValueError('Cannot sort by column %s in a '
'multi-index you need to explicity '
'provide all the levels' % str(by))
raise ValueError('Cannot sort by duplicate column %s' %
str(by))
if isinstance(ascending, (tuple, list)):
ascending = ascending[0]
indexer = _nargsort(k, kind=kind, ascending=ascending,
na_position=na_position)
new_data = self._data.take(indexer,
axis=self._get_block_manager_axis(axis),
convert=False, verify=False)
if inplace:
return self._update_inplace(new_data)
else:
return self._constructor(new_data).__finalize__(self)
[docs] def sort(self, columns=None, axis=0, ascending=True, inplace=False,
kind='quicksort', na_position='last', **kwargs):
"""
DEPRECATED: use :meth:`DataFrame.sort_values`
Sort DataFrame either by labels (along either axis) or by the values in
column(s)
Parameters
----------
columns : object
Column name(s) in frame. Accepts a column name or a list
for a nested sort. A tuple will be interpreted as the
levels of a multi-index.
ascending : boolean or list, default True
Sort ascending vs. descending. Specify list for multiple sort
orders
axis : {0 or 'index', 1 or 'columns'}, default 0
Sort index/rows versus columns
inplace : boolean, default False
Sort the DataFrame without creating a new instance
kind : {'quicksort', 'mergesort', 'heapsort'}, optional
This option is only applied when sorting on a single column or
label.
na_position : {'first', 'last'} (optional, default='last')
'first' puts NaNs at the beginning
'last' puts NaNs at the end
Examples
--------
>>> result = df.sort(['A', 'B'], ascending=[1, 0])
Returns
-------
sorted : DataFrame
"""
nv.validate_sort(tuple(), kwargs)
if columns is None:
warnings.warn("sort(....) is deprecated, use sort_index(.....)",
FutureWarning, stacklevel=2)
return self.sort_index(axis=axis, ascending=ascending,
inplace=inplace)
warnings.warn("sort(columns=....) is deprecated, use "
"sort_values(by=.....)", FutureWarning, stacklevel=2)
return self.sort_values(by=columns, axis=axis, ascending=ascending,
inplace=inplace, kind=kind,
na_position=na_position)
@Appender(_shared_docs['sort_index'] % _shared_doc_kwargs)
[docs] def sort_index(self, axis=0, level=None, ascending=True, inplace=False,
kind='quicksort', na_position='last', sort_remaining=True,
by=None):
# 10726
if by is not None:
warnings.warn("by argument to sort_index is deprecated, pls use "
".sort_values(by=...)", FutureWarning, stacklevel=2)
if level is not None:
raise ValueError("unable to simultaneously sort by and level")
return self.sort_values(by, axis=axis, ascending=ascending,
inplace=inplace)
axis = self._get_axis_number(axis)
labels = self._get_axis(axis)
# sort by the index
if level is not None:
new_axis, indexer = labels.sortlevel(level, ascending=ascending,
sort_remaining=sort_remaining)
elif isinstance(labels, MultiIndex):
from pandas.core.groupby import _lexsort_indexer
# make sure that the axis is lexsorted to start
# if not we need to reconstruct to get the correct indexer
if not labels.is_lexsorted():
labels = MultiIndex.from_tuples(labels.values)
indexer = _lexsort_indexer(labels.labels, orders=ascending,
na_position=na_position)
else:
from pandas.core.groupby import _nargsort
# GH11080 - Check monotonic-ness before sort an index
# if monotonic (already sorted), return None or copy() according
# to 'inplace'
if ((ascending and labels.is_monotonic_increasing) or
(not ascending and labels.is_monotonic_decreasing)):
if inplace:
return
else:
return self.copy()
indexer = _nargsort(labels, kind=kind, ascending=ascending,
na_position=na_position)
new_data = self._data.take(indexer,
axis=self._get_block_manager_axis(axis),
convert=False, verify=False)
if inplace:
return self._update_inplace(new_data)
else:
return self._constructor(new_data).__finalize__(self)
[docs] def sortlevel(self, level=0, axis=0, ascending=True, inplace=False,
sort_remaining=True):
"""
Sort multilevel index by chosen axis and primary level. Data will be
lexicographically sorted by the chosen level followed by the other
levels (in order)
Parameters
----------
level : int
axis : {0 or 'index', 1 or 'columns'}, default 0
ascending : boolean, default True
inplace : boolean, default False
Sort the DataFrame without creating a new instance
sort_remaining : boolean, default True
Sort by the other levels too.
Returns
-------
sorted : DataFrame
See Also
--------
DataFrame.sort_index(level=...)
"""
return self.sort_index(level=level, axis=axis, ascending=ascending,
inplace=inplace, sort_remaining=sort_remaining)
def _nsorted(self, columns, n, method, keep):
if not is_list_like(columns):
columns = [columns]
columns = list(columns)
ser = getattr(self[columns[0]], method)(n, keep=keep)
ascending = dict(nlargest=False, nsmallest=True)[method]
return self.loc[ser.index].sort_values(columns, ascending=ascending,
kind='mergesort')
[docs] def nlargest(self, n, columns, keep='first'):
"""Get the rows of a DataFrame sorted by the `n` largest
values of `columns`.
.. versionadded:: 0.17.0
Parameters
----------
n : int
Number of items to retrieve
columns : list or str
Column name or names to order by
keep : {'first', 'last', False}, default 'first'
Where there are duplicate values:
- ``first`` : take the first occurrence.
- ``last`` : take the last occurrence.
Returns
-------
DataFrame
Examples
--------
>>> df = DataFrame({'a': [1, 10, 8, 11, -1],
... 'b': list('abdce'),
... 'c': [1.0, 2.0, np.nan, 3.0, 4.0]})
>>> df.nlargest(3, 'a')
a b c
3 11 c 3
1 10 b 2
2 8 d NaN
"""
return self._nsorted(columns, n, 'nlargest', keep)
[docs] def nsmallest(self, n, columns, keep='first'):
"""Get the rows of a DataFrame sorted by the `n` smallest
values of `columns`.
.. versionadded:: 0.17.0
Parameters
----------
n : int
Number of items to retrieve
columns : list or str
Column name or names to order by
keep : {'first', 'last', False}, default 'first'
Where there are duplicate values:
- ``first`` : take the first occurrence.
- ``last`` : take the last occurrence.
Returns
-------
DataFrame
Examples
--------
>>> df = DataFrame({'a': [1, 10, 8, 11, -1],
... 'b': list('abdce'),
... 'c': [1.0, 2.0, np.nan, 3.0, 4.0]})
>>> df.nsmallest(3, 'a')
a b c
4 -1 e 4
0 1 a 1
2 8 d NaN
"""
return self._nsorted(columns, n, 'nsmallest', keep)
[docs] def swaplevel(self, i=-2, j=-1, axis=0):
"""
Swap levels i and j in a MultiIndex on a particular axis
Parameters
----------
i, j : int, string (can be mixed)
Level of index to be swapped. Can pass level name as string.
Returns
-------
swapped : type of caller (new object)
.. versionchanged:: 0.18.1
The indexes ``i`` and ``j`` are now optional, and default to
the two innermost levels of the index.
"""
result = self.copy()
axis = self._get_axis_number(axis)
if axis == 0:
result.index = result.index.swaplevel(i, j)
else:
result.columns = result.columns.swaplevel(i, j)
return result
[docs] def reorder_levels(self, order, axis=0):
"""
Rearrange index levels using input order.
May not drop or duplicate levels
Parameters
----------
order : list of int or list of str
List representing new level order. Reference level by number
(position) or by key (label).
axis : int
Where to reorder levels.
Returns
-------
type of caller (new object)
"""
axis = self._get_axis_number(axis)
if not isinstance(self._get_axis(axis),
MultiIndex): # pragma: no cover
raise TypeError('Can only reorder levels on a hierarchical axis.')
result = self.copy()
if axis == 0:
result.index = result.index.reorder_levels(order)
else:
result.columns = result.columns.reorder_levels(order)
return result
# ----------------------------------------------------------------------
# Arithmetic / combination related
def _combine_frame(self, other, func, fill_value=None, level=None):
this, other = self.align(other, join='outer', level=level, copy=False)
new_index, new_columns = this.index, this.columns
def _arith_op(left, right):
if fill_value is not None:
left_mask = isnull(left)
right_mask = isnull(right)
left = left.copy()
right = right.copy()
# one but not both
mask = left_mask ^ right_mask
left[left_mask & mask] = fill_value
right[right_mask & mask] = fill_value
return func(left, right)
if this._is_mixed_type or other._is_mixed_type:
# unique
if this.columns.is_unique:
def f(col):
r = _arith_op(this[col].values, other[col].values)
return self._constructor_sliced(r, index=new_index,
dtype=r.dtype)
result = dict([(col, f(col)) for col in this])
# non-unique
else:
def f(i):
r = _arith_op(this.iloc[:, i].values,
other.iloc[:, i].values)
return self._constructor_sliced(r, index=new_index,
dtype=r.dtype)
result = dict([
(i, f(i)) for i, col in enumerate(this.columns)
])
result = self._constructor(result, index=new_index, copy=False)
result.columns = new_columns
return result
else:
result = _arith_op(this.values, other.values)
return self._constructor(result, index=new_index, columns=new_columns,
copy=False)
def _combine_series(self, other, func, fill_value=None, axis=None,
level=None):
if axis is not None:
axis = self._get_axis_name(axis)
if axis == 'index':
return self._combine_match_index(other, func, level=level,
fill_value=fill_value)
else:
return self._combine_match_columns(other, func, level=level,
fill_value=fill_value)
return self._combine_series_infer(other, func, level=level,
fill_value=fill_value)
def _combine_series_infer(self, other, func, level=None, fill_value=None):
if len(other) == 0:
return self * NA
if len(self) == 0:
# Ambiguous case, use _series so works with DataFrame
return self._constructor(data=self._series, index=self.index,
columns=self.columns)
return self._combine_match_columns(other, func, level=level,
fill_value=fill_value)
def _combine_match_index(self, other, func, level=None, fill_value=None):
left, right = self.align(other, join='outer', axis=0, level=level,
copy=False)
if fill_value is not None:
raise NotImplementedError("fill_value %r not supported." %
fill_value)
return self._constructor(func(left.values.T, right.values).T,
index=left.index, columns=self.columns,
copy=False)
def _combine_match_columns(self, other, func, level=None, fill_value=None):
left, right = self.align(other, join='outer', axis=1, level=level,
copy=False)
if fill_value is not None:
raise NotImplementedError("fill_value %r not supported" %
fill_value)
new_data = left._data.eval(func=func, other=right,
axes=[left.columns, self.index])
return self._constructor(new_data)
def _combine_const(self, other, func, raise_on_error=True):
if self.empty:
return self
new_data = self._data.eval(func=func, other=other,
raise_on_error=raise_on_error)
return self._constructor(new_data)
def _compare_frame_evaluate(self, other, func, str_rep):
# unique
if self.columns.is_unique:
def _compare(a, b):
return dict([(col, func(a[col], b[col])) for col in a.columns])
new_data = expressions.evaluate(_compare, str_rep, self, other)
return self._constructor(data=new_data, index=self.index,
columns=self.columns, copy=False)
# non-unique
else:
def _compare(a, b):
return dict([(i, func(a.iloc[:, i], b.iloc[:, i]))
for i, col in enumerate(a.columns)])
new_data = expressions.evaluate(_compare, str_rep, self, other)
result = self._constructor(data=new_data, index=self.index,
copy=False)
result.columns = self.columns
return result
def _compare_frame(self, other, func, str_rep):
if not self._indexed_same(other):
raise ValueError('Can only compare identically-labeled '
'DataFrame objects')
return self._compare_frame_evaluate(other, func, str_rep)
def _flex_compare_frame(self, other, func, str_rep, level):
if not self._indexed_same(other):
self, other = self.align(other, 'outer', level=level, copy=False)
return self._compare_frame_evaluate(other, func, str_rep)
[docs] def combine(self, other, func, fill_value=None, overwrite=True):
"""
Add two DataFrame objects and do not propagate NaN values, so if for a
(column, time) one frame is missing a value, it will default to the
other frame's value (which might be NaN as well)
Parameters
----------
other : DataFrame
func : function
fill_value : scalar value
overwrite : boolean, default True
If True then overwrite values for common keys in the calling frame
Returns
-------
result : DataFrame
"""
other_idxlen = len(other.index) # save for compare
this, other = self.align(other, copy=False)
new_index = this.index
if other.empty and len(new_index) == len(self.index):
return self.copy()
if self.empty and len(other) == other_idxlen:
return other.copy()
# sorts if possible
new_columns = this.columns.union(other.columns)
do_fill = fill_value is not None
result = {}
for col in new_columns:
series = this[col]
otherSeries = other[col]
this_dtype = series.dtype
other_dtype = otherSeries.dtype
this_mask = isnull(series)
other_mask = isnull(otherSeries)
# don't overwrite columns unecessarily
# DO propagate if this column is not in the intersection
if not overwrite and other_mask.all():
result[col] = this[col].copy()
continue
if do_fill:
series = series.copy()
otherSeries = otherSeries.copy()
series[this_mask] = fill_value
otherSeries[other_mask] = fill_value
# if we have different dtypes, possibily promote
new_dtype = this_dtype
if this_dtype != other_dtype:
new_dtype = _lcd_dtypes(this_dtype, other_dtype)
series = series.astype(new_dtype)
otherSeries = otherSeries.astype(new_dtype)
# see if we need to be represented as i8 (datetimelike)
# try to keep us at this dtype
needs_i8_conversion_i = needs_i8_conversion(new_dtype)
if needs_i8_conversion_i:
this_dtype = new_dtype
arr = func(series, otherSeries, True)
else:
arr = func(series, otherSeries)
if do_fill:
arr = _ensure_float(arr)
arr[this_mask & other_mask] = NA
# try to downcast back to the original dtype
if needs_i8_conversion_i:
arr = _possibly_cast_to_datetime(arr, this_dtype)
else:
arr = _possibly_downcast_to_dtype(arr, this_dtype)
result[col] = arr
# convert_objects just in case
return self._constructor(result, index=new_index,
columns=new_columns)._convert(datetime=True,
copy=False)
[docs] def combine_first(self, other):
"""
Combine two DataFrame objects and default to non-null values in frame
calling the method. Result index columns will be the union of the
respective indexes and columns
Parameters
----------
other : DataFrame
Examples
--------
a's values prioritized, use values from b to fill holes:
>>> a.combine_first(b)
Returns
-------
combined : DataFrame
"""
def combiner(x, y, needs_i8_conversion=False):
x_values = x.values if hasattr(x, 'values') else x
y_values = y.values if hasattr(y, 'values') else y
if needs_i8_conversion:
mask = isnull(x)
x_values = x_values.view('i8')
y_values = y_values.view('i8')
else:
mask = isnull(x_values)
return expressions.where(mask, y_values, x_values,
raise_on_error=True)
return self.combine(other, combiner, overwrite=False)
[docs] def update(self, other, join='left', overwrite=True, filter_func=None,
raise_conflict=False):
"""
Modify DataFrame in place using non-NA values from passed
DataFrame. Aligns on indices
Parameters
----------
other : DataFrame, or object coercible into a DataFrame
join : {'left'}, default 'left'
overwrite : boolean, default True
If True then overwrite values for common keys in the calling frame
filter_func : callable(1d-array) -> 1d-array<boolean>, default None
Can choose to replace values other than NA. Return True for values
that should be updated
raise_conflict : boolean
If True, will raise an error if the DataFrame and other both
contain data in the same place.
"""
# TODO: Support other joins
if join != 'left': # pragma: no cover
raise NotImplementedError("Only left join is supported")
if not isinstance(other, DataFrame):
other = DataFrame(other)
other = other.reindex_like(self)
for col in self.columns:
this = self[col].values
that = other[col].values
if filter_func is not None:
mask = ~filter_func(this) | isnull(that)
else:
if raise_conflict:
mask_this = notnull(that)
mask_that = notnull(this)
if any(mask_this & mask_that):
raise ValueError("Data overlaps.")
if overwrite:
mask = isnull(that)
# don't overwrite columns unecessarily
if mask.all():
continue
else:
mask = notnull(this)
self[col] = expressions.where(mask, this, that,
raise_on_error=True)
# ----------------------------------------------------------------------
# Misc methods
[docs] def first_valid_index(self):
"""
Return label for first non-NA/null value
"""
if len(self) == 0:
return None
return self.index[self.count(1) > 0][0]
[docs] def last_valid_index(self):
"""
Return label for last non-NA/null value
"""
if len(self) == 0:
return None
return self.index[self.count(1) > 0][-1]
# ----------------------------------------------------------------------
# Data reshaping
[docs] def pivot(self, index=None, columns=None, values=None):
"""
Reshape data (produce a "pivot" table) based on column values. Uses
unique values from index / columns to form axes and return either
DataFrame or Panel, depending on whether you request a single value
column (DataFrame) or all columns (Panel)
Parameters
----------
index : string or object, optional
Column name to use to make new frame's index. If None, uses
existing index.
columns : string or object
Column name to use to make new frame's columns
values : string or object, optional
Column name to use for populating new frame's values
Notes
-----
For finer-tuned control, see hierarchical indexing documentation along
with the related stack/unstack methods
Examples
--------
>>> df
foo bar baz
0 one A 1.
1 one B 2.
2 one C 3.
3 two A 4.
4 two B 5.
5 two C 6.
>>> df.pivot('foo', 'bar', 'baz')
A B C
one 1 2 3
two 4 5 6
>>> df.pivot('foo', 'bar')['baz']
A B C
one 1 2 3
two 4 5 6
Returns
-------
pivoted : DataFrame
If no values column specified, will have hierarchically indexed
columns
"""
from pandas.core.reshape import pivot
return pivot(self, index=index, columns=columns, values=values)
[docs] def stack(self, level=-1, dropna=True):
"""
Pivot a level of the (possibly hierarchical) column labels, returning a
DataFrame (or Series in the case of an object with a single level of
column labels) having a hierarchical index with a new inner-most level
of row labels.
The level involved will automatically get sorted.
Parameters
----------
level : int, string, or list of these, default last level
Level(s) to stack, can pass level name
dropna : boolean, default True
Whether to drop rows in the resulting Frame/Series with no valid
values
Examples
----------
>>> s
a b
one 1. 2.
two 3. 4.
>>> s.stack()
one a 1
b 2
two a 3
b 4
Returns
-------
stacked : DataFrame or Series
"""
from pandas.core.reshape import stack, stack_multiple
if isinstance(level, (tuple, list)):
return stack_multiple(self, level, dropna=dropna)
else:
return stack(self, level, dropna=dropna)
[docs] def unstack(self, level=-1, fill_value=None):
"""
Pivot a level of the (necessarily hierarchical) index labels, returning
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).
The level involved will automatically get sorted.
Parameters
----------
level : int, string, or list of these, default -1 (last level)
Level(s) of index to unstack, can pass level name
fill_value : replace NaN with this value if the unstack produces
missing values
.. versionadded: 0.18.0
See also
--------
DataFrame.pivot : Pivot a table based on column values.
DataFrame.stack : Pivot a level of the column labels (inverse operation
from `unstack`).
Examples
--------
>>> index = pd.MultiIndex.from_tuples([('one', 'a'), ('one', 'b'),
... ('two', 'a'), ('two', 'b')])
>>> s = pd.Series(np.arange(1.0, 5.0), index=index)
>>> s
one a 1
b 2
two a 3
b 4
dtype: float64
>>> s.unstack(level=-1)
a b
one 1 2
two 3 4
>>> s.unstack(level=0)
one two
a 1 3
b 2 4
>>> df = s.unstack(level=0)
>>> df.unstack()
one a 1.
b 3.
two a 2.
b 4.
Returns
-------
unstacked : DataFrame or Series
"""
from pandas.core.reshape import unstack
return unstack(self, level, fill_value)
# ----------------------------------------------------------------------
# Time series-related
[docs] def diff(self, periods=1, axis=0):
"""
1st discrete difference of object
Parameters
----------
periods : int, default 1
Periods to shift for forming difference
axis : {0 or 'index', 1 or 'columns'}, default 0
Take difference over rows (0) or columns (1).
.. versionadded: 0.16.1
Returns
-------
diffed : DataFrame
"""
bm_axis = self._get_block_manager_axis(axis)
new_data = self._data.diff(n=periods, axis=bm_axis)
return self._constructor(new_data)
# ----------------------------------------------------------------------
# Function application
[docs] def apply(self, func, axis=0, broadcast=False, raw=False, reduce=None,
args=(), **kwds):
"""
Applies function along input axis of DataFrame.
Objects passed to functions are Series objects having index
either the DataFrame's index (axis=0) or the columns (axis=1).
Return type depends on whether passed function aggregates, or the
reduce argument if the DataFrame is empty.
Parameters
----------
func : function
Function to apply to each column/row
axis : {0 or 'index', 1 or 'columns'}, default 0
* 0 or 'index': apply function to each column
* 1 or 'columns': apply function to each row
broadcast : boolean, default False
For aggregation functions, return object of same size with values
propagated
raw : boolean, default False
If False, convert each row or column into a Series. If raw=True the
passed function will receive ndarray objects instead. If you are
just applying a NumPy reduction function this will achieve much
better performance
reduce : boolean or None, default None
Try to apply reduction procedures. If the DataFrame is empty,
apply will use reduce to determine whether the result should be a
Series or a DataFrame. If reduce is None (the default), apply's
return value will be guessed by calling func an empty Series (note:
while guessing, exceptions raised by func will be ignored). If
reduce is True a Series will always be returned, and if False a
DataFrame will always be returned.
args : tuple
Positional arguments to pass to function in addition to the
array/series
Additional keyword arguments will be passed as keywords to the function
Notes
-----
In the current implementation apply calls func twice on the
first column/row to decide whether it can take a fast or slow
code path. This can lead to unexpected behavior if func has
side-effects, as they will take effect twice for the first
column/row.
Examples
--------
>>> df.apply(numpy.sqrt) # returns DataFrame
>>> df.apply(numpy.sum, axis=0) # equiv to df.sum(0)
>>> df.apply(numpy.sum, axis=1) # equiv to df.sum(1)
See also
--------
DataFrame.applymap: For elementwise operations
Returns
-------
applied : Series or DataFrame
"""
axis = self._get_axis_number(axis)
if kwds or args and not isinstance(func, np.ufunc):
def f(x):
return func(x, *args, **kwds)
else:
f = func
if len(self.columns) == 0 and len(self.index) == 0:
return self._apply_empty_result(func, axis, reduce, *args, **kwds)
if isinstance(f, np.ufunc):
results = f(self.values)
return self._constructor(data=results, index=self.index,
columns=self.columns, copy=False)
else:
if not broadcast:
if not all(self.shape):
return self._apply_empty_result(func, axis, reduce, *args,
**kwds)
if raw and not self._is_mixed_type:
return self._apply_raw(f, axis)
else:
if reduce is None:
reduce = True
return self._apply_standard(f, axis, reduce=reduce)
else:
return self._apply_broadcast(f, axis)
def _apply_empty_result(self, func, axis, reduce, *args, **kwds):
if reduce is None:
reduce = False
try:
reduce = not isinstance(func(_EMPTY_SERIES, *args, **kwds),
Series)
except Exception:
pass
if reduce:
return Series(NA, index=self._get_agg_axis(axis))
else:
return self.copy()
def _apply_raw(self, func, axis):
try:
result = lib.reduce(self.values, func, axis=axis)
except Exception:
result = np.apply_along_axis(func, axis, self.values)
# TODO: mixed type case
if result.ndim == 2:
return DataFrame(result, index=self.index, columns=self.columns)
else:
return Series(result, index=self._get_agg_axis(axis))
def _apply_standard(self, func, axis, ignore_failures=False, reduce=True):
# skip if we are mixed datelike and trying reduce across axes
# GH6125
if (reduce and axis == 1 and self._is_mixed_type and
self._is_datelike_mixed_type):
reduce = False
# try to reduce first (by default)
# this only matters if the reduction in values is of different dtype
# e.g. if we want to apply to a SparseFrame, then can't directly reduce
if reduce:
values = self.values
# we cannot reduce using non-numpy dtypes,
# as demonstrated in gh-12244
if not is_extension_type(values):
# Create a dummy Series from an empty array
index = self._get_axis(axis)
empty_arr = np.empty(len(index), dtype=values.dtype)
dummy = Series(empty_arr, index=self._get_axis(axis),
dtype=values.dtype)
try:
labels = self._get_agg_axis(axis)
result = lib.reduce(values, func, axis=axis, dummy=dummy,
labels=labels)
return Series(result, index=labels)
except Exception:
pass
dtype = object if self._is_mixed_type else None
if axis == 0:
series_gen = (self._ixs(i, axis=1)
for i in range(len(self.columns)))
res_index = self.columns
res_columns = self.index
elif axis == 1:
res_index = self.index
res_columns = self.columns
values = self.values
series_gen = (Series.from_array(arr, index=res_columns, name=name,
dtype=dtype)
for i, (arr, name) in enumerate(zip(values,
res_index)))
else: # pragma : no cover
raise AssertionError('Axis must be 0 or 1, got %s' % str(axis))
i = None
keys = []
results = {}
if ignore_failures:
successes = []
for i, v in enumerate(series_gen):
try:
results[i] = func(v)
keys.append(v.name)
successes.append(i)
except Exception:
pass
# so will work with MultiIndex
if len(successes) < len(res_index):
res_index = res_index.take(successes)
else:
try:
for i, v in enumerate(series_gen):
results[i] = func(v)
keys.append(v.name)
except Exception as e:
if hasattr(e, 'args'):
# make sure i is defined
if i is not None:
k = res_index[i]
e.args = e.args + ('occurred at index %s' %
pprint_thing(k), )
raise
if len(results) > 0 and is_sequence(results[0]):
if not isinstance(results[0], Series):
index = res_columns
else:
index = None
result = self._constructor(data=results, index=index)
result.columns = res_index
if axis == 1:
result = result.T
result = result._convert(datetime=True, timedelta=True, copy=False)
else:
result = Series(results)
result.index = res_index
return result
def _apply_broadcast(self, func, axis):
if axis == 0:
target = self
elif axis == 1:
target = self.T
else: # pragma: no cover
raise AssertionError('Axis must be 0 or 1, got %s' % axis)
result_values = np.empty_like(target.values)
columns = target.columns
for i, col in enumerate(columns):
result_values[:, i] = func(target[col])
result = self._constructor(result_values, index=target.index,
columns=target.columns)
if axis == 1:
result = result.T
return result
[docs] def applymap(self, func):
"""
Apply a function to a DataFrame that is intended to operate
elementwise, i.e. like doing map(func, series) for each series in the
DataFrame
Parameters
----------
func : function
Python function, returns a single value from a single value
Examples
--------
>>> df = pd.DataFrame(np.random.randn(3, 3))
>>> df
0 1 2
0 -0.029638 1.081563 1.280300
1 0.647747 0.831136 -1.549481
2 0.513416 -0.884417 0.195343
>>> df = df.applymap(lambda x: '%.2f' % x)
>>> df
0 1 2
0 -0.03 1.08 1.28
1 0.65 0.83 -1.55
2 0.51 -0.88 0.20
Returns
-------
applied : DataFrame
See also
--------
DataFrame.apply : For operations on rows/columns
"""
# if we have a dtype == 'M8[ns]', provide boxed values
def infer(x):
return lib.map_infer(x.asobject, func)
return self.apply(infer)
# ----------------------------------------------------------------------
# Merging / joining methods
[docs] def append(self, other, ignore_index=False, verify_integrity=False):
"""
Append rows of `other` to the end of this frame, returning a new
object. Columns not in this frame are added as new columns.
Parameters
----------
other : DataFrame or Series/dict-like object, or list of these
The data to append.
ignore_index : boolean, default False
If True, do not use the index labels.
verify_integrity : boolean, default False
If True, raise ValueError on creating index with duplicates.
Returns
-------
appended : DataFrame
Notes
-----
If a list of dict/series is passed and the keys are all contained in
the DataFrame's index, the order of the columns in the resulting
DataFrame will be unchanged.
See also
--------
pandas.concat : General function to concatenate DataFrame, Series
or Panel objects
Examples
--------
>>> df = pd.DataFrame([[1, 2], [3, 4]], columns=list('AB'))
>>> df
A B
0 1 2
1 3 4
>>> df2 = pd.DataFrame([[5, 6], [7, 8]], columns=list('AB'))
>>> df.append(df2)
A B
0 1 2
1 3 4
0 5 6
1 7 8
With `ignore_index` set to True:
>>> df.append(df2, ignore_index=True)
A B
0 1 2
1 3 4
2 5 6
3 7 8
"""
if isinstance(other, (Series, dict)):
if isinstance(other, dict):
other = Series(other)
if other.name is None and not ignore_index:
raise TypeError('Can only append a Series if ignore_index=True'
' or if the Series has a name')
index = None if other.name is None else [other.name]
combined_columns = self.columns.tolist() + self.columns.union(
other.index).difference(self.columns).tolist()
other = other.reindex(combined_columns, copy=False)
other = DataFrame(other.values.reshape((1, len(other))),
index=index, columns=combined_columns)
other = other._convert(datetime=True, timedelta=True)
if not self.columns.equals(combined_columns):
self = self.reindex(columns=combined_columns)
elif isinstance(other, list) and not isinstance(other[0], DataFrame):
other = DataFrame(other)
if (self.columns.get_indexer(other.columns) >= 0).all():
other = other.ix[:, self.columns]
from pandas.tools.merge import concat
if isinstance(other, (list, tuple)):
to_concat = [self] + other
else:
to_concat = [self, other]
return concat(to_concat, ignore_index=ignore_index,
verify_integrity=verify_integrity)
[docs] def join(self, other, on=None, how='left', lsuffix='', rsuffix='',
sort=False):
"""
Join columns with other DataFrame either on index or on a key
column. Efficiently Join multiple DataFrame objects by index at once by
passing a list.
Parameters
----------
other : DataFrame, Series with name field set, or list of DataFrame
Index should be similar to one of the columns in this one. If a
Series is passed, its name attribute must be set, and that will be
used as the column name in the resulting joined DataFrame
on : column name, tuple/list of column names, or array-like
Column(s) in the caller to join on the index in other,
otherwise joins index-on-index. If multiples
columns given, the passed DataFrame must have a MultiIndex. Can
pass an array as the join key if not already contained in the
calling DataFrame. Like an Excel VLOOKUP operation
how : {'left', 'right', 'outer', 'inner'}, default: 'left'
How to handle the operation of the two objects.
* left: use calling frame's index (or column if on is specified)
* right: use other frame's index
* outer: form union of calling frame's index (or column if on is
specified) with other frame's index
* inner: form intersection of calling frame's index (or column if
on is specified) with other frame's index
lsuffix : string
Suffix to use from left frame's overlapping columns
rsuffix : string
Suffix to use from right frame's overlapping columns
sort : boolean, default False
Order result DataFrame lexicographically by the join key. If False,
preserves the index order of the calling (left) DataFrame
Notes
-----
on, lsuffix, and rsuffix options are not supported when passing a list
of DataFrame objects
Examples
--------
>>> caller = pd.DataFrame({'key': ['K0', 'K1', 'K2', 'K3', 'K4', 'K5'],
... 'A': ['A0', 'A1', 'A2', 'A3', 'A4', 'A5']})
>>> caller
A key
0 A0 K0
1 A1 K1
2 A2 K2
3 A3 K3
4 A4 K4
5 A5 K5
>>> other = pd.DataFrame({'key': ['K0', 'K1', 'K2'],
... 'B': ['B0', 'B1', 'B2']})
>>> other
B key
0 B0 K0
1 B1 K1
2 B2 K2
Join DataFrames using their indexes.
>>> caller.join(other, lsuffix='_caller', rsuffix='_other')
>>> A key_caller B key_other
0 A0 K0 B0 K0
1 A1 K1 B1 K1
2 A2 K2 B2 K2
3 A3 K3 NaN NaN
4 A4 K4 NaN NaN
5 A5 K5 NaN NaN
If we want to join using the key columns, we need to set key to be
the index in both caller and other. The joined DataFrame will have
key as its index.
>>> caller.set_index('key').join(other.set_index('key'))
>>> A B
key
K0 A0 B0
K1 A1 B1
K2 A2 B2
K3 A3 NaN
K4 A4 NaN
K5 A5 NaN
Another option to join using the key columns is to use the on
parameter. DataFrame.join always uses other's index but we can use any
column in the caller. This method preserves the original caller's
index in the result.
>>> caller.join(other.set_index('key'), on='key')
>>> A key B
0 A0 K0 B0
1 A1 K1 B1
2 A2 K2 B2
3 A3 K3 NaN
4 A4 K4 NaN
5 A5 K5 NaN
See also
--------
DataFrame.merge : For column(s)-on-columns(s) operations
Returns
-------
joined : DataFrame
"""
# For SparseDataFrame's benefit
return self._join_compat(other, on=on, how=how, lsuffix=lsuffix,
rsuffix=rsuffix, sort=sort)
def _join_compat(self, other, on=None, how='left', lsuffix='', rsuffix='',
sort=False):
from pandas.tools.merge import merge, concat
if isinstance(other, Series):
if other.name is None:
raise ValueError('Other Series must have a name')
other = DataFrame({other.name: other})
if isinstance(other, DataFrame):
return merge(self, other, left_on=on, how=how,
left_index=on is None, right_index=True,
suffixes=(lsuffix, rsuffix), sort=sort)
else:
if on is not None:
raise ValueError('Joining multiple DataFrames only supported'
' for joining on index')
# join indexes only using concat
if how == 'left':
how = 'outer'
join_axes = [self.index]
else:
join_axes = None
frames = [self] + list(other)
can_concat = all(df.index.is_unique for df in frames)
if can_concat:
return concat(frames, axis=1, join=how, join_axes=join_axes,
verify_integrity=True)
joined = frames[0]
for frame in frames[1:]:
joined = merge(joined, frame, how=how, left_index=True,
right_index=True)
return joined
@Substitution('')
@Appender(_merge_doc, indents=2)
[docs] def merge(self, right, how='inner', on=None, left_on=None, right_on=None,
left_index=False, right_index=False, sort=False,
suffixes=('_x', '_y'), copy=True, indicator=False):
from pandas.tools.merge import merge
return merge(self, right, how=how, on=on, left_on=left_on,
right_on=right_on, left_index=left_index,
right_index=right_index, sort=sort, suffixes=suffixes,
copy=copy, indicator=indicator)
[docs] def round(self, decimals=0, *args, **kwargs):
"""
Round a DataFrame to a variable number of decimal places.
.. versionadded:: 0.17.0
Parameters
----------
decimals : int, dict, Series
Number of decimal places to round each column to. If an int is
given, round each column to the same number of places.
Otherwise dict and Series round to variable numbers of places.
Column names should be in the keys if `decimals` is a
dict-like, or in the index if `decimals` is a Series. Any
columns not included in `decimals` will be left as is. Elements
of `decimals` which are not columns of the input will be
ignored.
Examples
--------
>>> df = pd.DataFrame(np.random.random([3, 3]),
... columns=['A', 'B', 'C'], index=['first', 'second', 'third'])
>>> df
A B C
first 0.028208 0.992815 0.173891
second 0.038683 0.645646 0.577595
third 0.877076 0.149370 0.491027
>>> df.round(2)
A B C
first 0.03 0.99 0.17
second 0.04 0.65 0.58
third 0.88 0.15 0.49
>>> df.round({'A': 1, 'C': 2})
A B C
first 0.0 0.992815 0.17
second 0.0 0.645646 0.58
third 0.9 0.149370 0.49
>>> decimals = pd.Series([1, 0, 2], index=['A', 'B', 'C'])
>>> df.round(decimals)
A B C
first 0.0 1 0.17
second 0.0 1 0.58
third 0.9 0 0.49
Returns
-------
DataFrame object
See Also
--------
numpy.around
Series.round
"""
from pandas.tools.merge import concat
def _dict_round(df, decimals):
for col, vals in df.iteritems():
try:
yield _series_round(vals, decimals[col])
except KeyError:
yield vals
def _series_round(s, decimals):
if is_integer_dtype(s) or is_float_dtype(s):
return s.round(decimals)
return s
nv.validate_round(args, kwargs)
if isinstance(decimals, (dict, Series)):
if isinstance(decimals, Series):
if not decimals.index.is_unique:
raise ValueError("Index of decimals must be unique")
new_cols = [col for col in _dict_round(self, decimals)]
elif is_integer(decimals):
# Dispatch to Series.round
new_cols = [_series_round(v, decimals)
for _, v in self.iteritems()]
else:
raise TypeError("decimals must be an integer, a dict-like or a "
"Series")
if len(new_cols) > 0:
return self._constructor(concat(new_cols, axis=1),
index=self.index,
columns=self.columns)
else:
return self
# ----------------------------------------------------------------------
# Statistical methods, etc.
[docs] def corr(self, method='pearson', min_periods=1):
"""
Compute pairwise correlation of columns, excluding NA/null values
Parameters
----------
method : {'pearson', 'kendall', 'spearman'}
* pearson : standard correlation coefficient
* kendall : Kendall Tau correlation coefficient
* spearman : Spearman rank correlation
min_periods : int, optional
Minimum number of observations required per pair of columns
to have a valid result. Currently only available for pearson
and spearman correlation
Returns
-------
y : DataFrame
"""
numeric_df = self._get_numeric_data()
cols = numeric_df.columns
mat = numeric_df.values
if method == 'pearson':
correl = _algos.nancorr(_ensure_float64(mat), minp=min_periods)
elif method == 'spearman':
correl = _algos.nancorr_spearman(_ensure_float64(mat),
minp=min_periods)
else:
if min_periods is None:
min_periods = 1
mat = _ensure_float64(mat).T
corrf = nanops.get_corr_func(method)
K = len(cols)
correl = np.empty((K, K), dtype=float)
mask = np.isfinite(mat)
for i, ac in enumerate(mat):
for j, bc in enumerate(mat):
if i > j:
continue
valid = mask[i] & mask[j]
if valid.sum() < min_periods:
c = NA
elif i == j:
c = 1.
elif not valid.all():
c = corrf(ac[valid], bc[valid])
else:
c = corrf(ac, bc)
correl[i, j] = c
correl[j, i] = c
return self._constructor(correl, index=cols, columns=cols)
[docs] def cov(self, min_periods=None):
"""
Compute pairwise covariance of columns, excluding NA/null values
Parameters
----------
min_periods : int, optional
Minimum number of observations required per pair of columns
to have a valid result.
Returns
-------
y : DataFrame
Notes
-----
`y` contains the covariance matrix of the DataFrame's time series.
The covariance is normalized by N-1 (unbiased estimator).
"""
numeric_df = self._get_numeric_data()
cols = numeric_df.columns
mat = numeric_df.values
if notnull(mat).all():
if min_periods is not None and min_periods > len(mat):
baseCov = np.empty((mat.shape[1], mat.shape[1]))
baseCov.fill(np.nan)
else:
baseCov = np.cov(mat.T)
baseCov = baseCov.reshape((len(cols), len(cols)))
else:
baseCov = _algos.nancorr(_ensure_float64(mat), cov=True,
minp=min_periods)
return self._constructor(baseCov, index=cols, columns=cols)
[docs] def corrwith(self, other, axis=0, drop=False):
"""
Compute pairwise correlation between rows or columns of two DataFrame
objects.
Parameters
----------
other : DataFrame
axis : {0 or 'index', 1 or 'columns'}, default 0
0 or 'index' to compute column-wise, 1 or 'columns' for row-wise
drop : boolean, default False
Drop missing indices from result, default returns union of all
Returns
-------
correls : Series
"""
axis = self._get_axis_number(axis)
if isinstance(other, Series):
return self.apply(other.corr, axis=axis)
this = self._get_numeric_data()
other = other._get_numeric_data()
left, right = this.align(other, join='inner', copy=False)
# mask missing values
left = left + right * 0
right = right + left * 0
if axis == 1:
left = left.T
right = right.T
# demeaned data
ldem = left - left.mean()
rdem = right - right.mean()
num = (ldem * rdem).sum()
dom = (left.count() - 1) * left.std() * right.std()
correl = num / dom
if not drop:
raxis = 1 if axis == 0 else 0
result_index = this._get_axis(raxis).union(other._get_axis(raxis))
correl = correl.reindex(result_index)
return correl
# ----------------------------------------------------------------------
# ndarray-like stats methods
[docs] def count(self, axis=0, level=None, numeric_only=False):
"""
Return Series with number of non-NA/null observations over requested
axis. Works with non-floating point data as well (detects NaN and None)
Parameters
----------
axis : {0 or 'index', 1 or 'columns'}, default 0
0 or 'index' for row-wise, 1 or 'columns' for column-wise
level : int or level name, default None
If the axis is a MultiIndex (hierarchical), count along a
particular level, collapsing into a DataFrame
numeric_only : boolean, default False
Include only float, int, boolean data
Returns
-------
count : Series (or DataFrame if level specified)
"""
axis = self._get_axis_number(axis)
if level is not None:
return self._count_level(level, axis=axis,
numeric_only=numeric_only)
if numeric_only:
frame = self._get_numeric_data()
else:
frame = self
# GH #423
if len(frame._get_axis(axis)) == 0:
result = Series(0, index=frame._get_agg_axis(axis))
else:
if frame._is_mixed_type:
result = notnull(frame).sum(axis=axis)
else:
counts = notnull(frame.values).sum(axis=axis)
result = Series(counts, index=frame._get_agg_axis(axis))
return result.astype('int64')
def _count_level(self, level, axis=0, numeric_only=False):
if numeric_only:
frame = self._get_numeric_data()
else:
frame = self
count_axis = frame._get_axis(axis)
agg_axis = frame._get_agg_axis(axis)
if not isinstance(count_axis, MultiIndex):
raise TypeError("Can only count levels on hierarchical %s." %
self._get_axis_name(axis))
if frame._is_mixed_type:
# Since we have mixed types, calling notnull(frame.values) might
# upcast everything to object
mask = notnull(frame).values
else:
# But use the speedup when we have homogeneous dtypes
mask = notnull(frame.values)
if axis == 1:
# We're transposing the mask rather than frame to avoid potential
# upcasts to object, which induces a ~20x slowdown
mask = mask.T
if isinstance(level, compat.string_types):
level = count_axis._get_level_number(level)
level_index = count_axis.levels[level]
labels = _ensure_int64(count_axis.labels[level])
counts = lib.count_level_2d(mask, labels, len(level_index), axis=0)
result = DataFrame(counts, index=level_index, columns=agg_axis)
if axis == 1:
# Undo our earlier transpose
return result.T
else:
return result
def _reduce(self, op, name, axis=0, skipna=True, numeric_only=None,
filter_type=None, **kwds):
axis = self._get_axis_number(axis)
def f(x):
return op(x, axis=axis, skipna=skipna, **kwds)
labels = self._get_agg_axis(axis)
# exclude timedelta/datetime unless we are uniform types
if axis == 1 and self._is_mixed_type and self._is_datelike_mixed_type:
numeric_only = True
if numeric_only is None:
try:
values = self.values
result = f(values)
except Exception as e:
# try by-column first
if filter_type is None and axis == 0:
try:
# this can end up with a non-reduction
# but not always. if the types are mixed
# with datelike then need to make sure a series
result = self.apply(f, reduce=False)
if result.ndim == self.ndim:
result = result.iloc[0]
return result
except:
pass
if filter_type is None or filter_type == 'numeric':
data = self._get_numeric_data()
elif filter_type == 'bool':
data = self._get_bool_data()
else: # pragma: no cover
e = NotImplementedError("Handling exception with filter_"
"type %s not implemented." %
filter_type)
raise_with_traceback(e)
result = f(data.values)
labels = data._get_agg_axis(axis)
else:
if numeric_only:
if filter_type is None or filter_type == 'numeric':
data = self._get_numeric_data()
elif filter_type == 'bool':
data = self._get_bool_data()
else: # pragma: no cover
msg = ("Generating numeric_only data with filter_type %s"
"not supported." % filter_type)
raise NotImplementedError(msg)
values = data.values
labels = data._get_agg_axis(axis)
else:
values = self.values
result = f(values)
if hasattr(result, 'dtype') and is_object_dtype(result.dtype):
try:
if filter_type is None or filter_type == 'numeric':
result = result.astype(np.float64)
elif filter_type == 'bool' and notnull(result).all():
result = result.astype(np.bool_)
except (ValueError, TypeError):
# try to coerce to the original dtypes item by item if we can
if axis == 0:
result = _coerce_to_dtypes(result, self.dtypes)
return Series(result, index=labels)
[docs] def idxmin(self, axis=0, skipna=True):
"""
Return index of first occurrence of minimum over requested axis.
NA/null values are excluded.
Parameters
----------
axis : {0 or 'index', 1 or 'columns'}, default 0
0 or 'index' for row-wise, 1 or 'columns' for column-wise
skipna : boolean, default True
Exclude NA/null values. If an entire row/column is NA, the result
will be NA
Returns
-------
idxmin : Series
Notes
-----
This method is the DataFrame version of ``ndarray.argmin``.
See Also
--------
Series.idxmin
"""
axis = self._get_axis_number(axis)
indices = nanops.nanargmin(self.values, axis=axis, skipna=skipna)
index = self._get_axis(axis)
result = [index[i] if i >= 0 else NA for i in indices]
return Series(result, index=self._get_agg_axis(axis))
[docs] def idxmax(self, axis=0, skipna=True):
"""
Return index of first occurrence of maximum over requested axis.
NA/null values are excluded.
Parameters
----------
axis : {0 or 'index', 1 or 'columns'}, default 0
0 or 'index' for row-wise, 1 or 'columns' for column-wise
skipna : boolean, default True
Exclude NA/null values. If an entire row/column is NA, the result
will be first index.
Returns
-------
idxmax : Series
Notes
-----
This method is the DataFrame version of ``ndarray.argmax``.
See Also
--------
Series.idxmax
"""
axis = self._get_axis_number(axis)
indices = nanops.nanargmax(self.values, axis=axis, skipna=skipna)
index = self._get_axis(axis)
result = [index[i] if i >= 0 else NA for i in indices]
return Series(result, index=self._get_agg_axis(axis))
def _get_agg_axis(self, axis_num):
""" let's be explict about this """
if axis_num == 0:
return self.columns
elif axis_num == 1:
return self.index
else:
raise ValueError('Axis must be 0 or 1 (got %r)' % axis_num)
[docs] def mode(self, axis=0, numeric_only=False):
"""
Gets the mode(s) of each element along the axis selected. Empty if
nothing has 2+ occurrences. Adds a row for each mode per label, fills
in gaps with nan.
Note that there could be multiple values returned for the selected
axis (when more than one item share the maximum frequency), which is
the reason why a dataframe is returned. If you want to impute missing
values with the mode in a dataframe ``df``, you can just do this:
``df.fillna(df.mode().iloc[0])``
Parameters
----------
axis : {0 or 'index', 1 or 'columns'}, default 0
* 0 or 'index' : get mode of each column
* 1 or 'columns' : get mode of each row
numeric_only : boolean, default False
if True, only apply to numeric columns
Returns
-------
modes : DataFrame (sorted)
Examples
--------
>>> df = pd.DataFrame({'A': [1, 2, 1, 2, 1, 2, 3]})
>>> df.mode()
A
0 1
1 2
"""
data = self if not numeric_only else self._get_numeric_data()
def f(s):
return s.mode()
return data.apply(f, axis=axis)
[docs] def quantile(self, q=0.5, axis=0, numeric_only=True,
interpolation='linear'):
"""
Return values at the given quantile over requested axis, a la
numpy.percentile.
Parameters
----------
q : float or array-like, default 0.5 (50% quantile)
0 <= q <= 1, the quantile(s) to compute
axis : {0, 1, 'index', 'columns'} (default 0)
0 or 'index' for row-wise, 1 or 'columns' for column-wise
interpolation : {'linear', 'lower', 'higher', 'midpoint', 'nearest'}
.. versionadded:: 0.18.0
This optional parameter specifies the interpolation method to use,
when the desired quantile lies between two data points `i` and `j`:
* linear: `i + (j - i) * fraction`, where `fraction` is the
fractional part of the index surrounded by `i` and `j`.
* lower: `i`.
* higher: `j`.
* nearest: `i` or `j` whichever is nearest.
* midpoint: (`i` + `j`) / 2.
Returns
-------
quantiles : 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.
Examples
--------
>>> df = DataFrame(np.array([[1, 1], [2, 10], [3, 100], [4, 100]]),
columns=['a', 'b'])
>>> df.quantile(.1)
a 1.3
b 3.7
dtype: float64
>>> df.quantile([.1, .5])
a b
0.1 1.3 3.7
0.5 2.5 55.0
"""
self._check_percentile(q)
data = self._get_numeric_data() if numeric_only else self
axis = self._get_axis_number(axis)
is_transposed = axis == 1
if is_transposed:
data = data.T
result = data._data.quantile(qs=q,
axis=1,
interpolation=interpolation,
transposed=is_transposed)
if result.ndim == 2:
result = self._constructor(result)
else:
result = self._constructor_sliced(result, name=q)
if is_transposed:
result = result.T
return result
[docs] def to_timestamp(self, freq=None, how='start', axis=0, copy=True):
"""
Cast to DatetimeIndex of timestamps, at *beginning* of period
Parameters
----------
freq : string, default frequency of PeriodIndex
Desired frequency
how : {'s', 'e', 'start', 'end'}
Convention for converting period to timestamp; start of period
vs. end
axis : {0 or 'index', 1 or 'columns'}, default 0
The axis to convert (the index by default)
copy : boolean, default True
If false then underlying input data is not copied
Returns
-------
df : DataFrame with DatetimeIndex
"""
new_data = self._data
if copy:
new_data = new_data.copy()
axis = self._get_axis_number(axis)
if axis == 0:
new_data.set_axis(1, self.index.to_timestamp(freq=freq, how=how))
elif axis == 1:
new_data.set_axis(0, self.columns.to_timestamp(freq=freq, how=how))
else: # pragma: no cover
raise AssertionError('Axis must be 0 or 1. Got %s' % str(axis))
return self._constructor(new_data)
[docs] def to_period(self, freq=None, axis=0, copy=True):
"""
Convert DataFrame from DatetimeIndex to PeriodIndex with desired
frequency (inferred from index if not passed)
Parameters
----------
freq : string, default
axis : {0 or 'index', 1 or 'columns'}, default 0
The axis to convert (the index by default)
copy : boolean, default True
If False then underlying input data is not copied
Returns
-------
ts : TimeSeries with PeriodIndex
"""
new_data = self._data
if copy:
new_data = new_data.copy()
axis = self._get_axis_number(axis)
if axis == 0:
new_data.set_axis(1, self.index.to_period(freq=freq))
elif axis == 1:
new_data.set_axis(0, self.columns.to_period(freq=freq))
else: # pragma: no cover
raise AssertionError('Axis must be 0 or 1. Got %s' % str(axis))
return self._constructor(new_data)
[docs] def isin(self, values):
"""
Return boolean DataFrame showing whether each element in the
DataFrame is contained in values.
Parameters
----------
values : iterable, Series, DataFrame or dictionary
The result will only be true at a location if all the
labels match. If `values` is a Series, that's the index. If
`values` is a dictionary, the keys must be the column names,
which must match. If `values` is a DataFrame,
then both the index and column labels must match.
Returns
-------
DataFrame of booleans
Examples
--------
When ``values`` is a list:
>>> df = DataFrame({'A': [1, 2, 3], 'B': ['a', 'b', 'f']})
>>> df.isin([1, 3, 12, 'a'])
A B
0 True True
1 False False
2 True False
When ``values`` is a dict:
>>> df = DataFrame({'A': [1, 2, 3], 'B': [1, 4, 7]})
>>> df.isin({'A': [1, 3], 'B': [4, 7, 12]})
A B
0 True False # Note that B didn't match the 1 here.
1 False True
2 True True
When ``values`` is a Series or DataFrame:
>>> df = DataFrame({'A': [1, 2, 3], 'B': ['a', 'b', 'f']})
>>> other = DataFrame({'A': [1, 3, 3, 2], 'B': ['e', 'f', 'f', 'e']})
>>> df.isin(other)
A B
0 True False
1 False False # Column A in `other` has a 3, but not at index 1.
2 True True
"""
if isinstance(values, dict):
from collections import defaultdict
from pandas.tools.merge import concat
values = defaultdict(list, values)
return concat((self.iloc[:, [i]].isin(values[col])
for i, col in enumerate(self.columns)), axis=1)
elif isinstance(values, Series):
if not values.index.is_unique:
raise ValueError("cannot compute isin with "
"a duplicate axis.")
return self.eq(values.reindex_like(self), axis='index')
elif isinstance(values, DataFrame):
if not (values.columns.is_unique and values.index.is_unique):
raise ValueError("cannot compute isin with "
"a duplicate axis.")
return self.eq(values.reindex_like(self))
else:
if not is_list_like(values):
raise TypeError("only list-like or dict-like objects are "
"allowed to be passed to DataFrame.isin(), "
"you passed a "
"{0!r}".format(type(values).__name__))
return DataFrame(lib.ismember(self.values.ravel(),
set(values)).reshape(self.shape), self.index,
self.columns)
# ----------------------------------------------------------------------
# Deprecated stuff
[docs] def combineAdd(self, other):
"""
DEPRECATED. Use ``DataFrame.add(other, fill_value=0.)`` instead.
Add two DataFrame objects and do not propagate
NaN values, so if for a (column, time) one frame is missing a
value, it will default to the other frame's value (which might
be NaN as well)
Parameters
----------
other : DataFrame
Returns
-------
DataFrame
See also
--------
DataFrame.add
"""
warnings.warn("'combineAdd' is deprecated. Use "
"'DataFrame.add(other, fill_value=0.)' instead",
FutureWarning, stacklevel=2)
return self.add(other, fill_value=0.)
[docs] def combineMult(self, other):
"""
DEPRECATED. Use ``DataFrame.mul(other, fill_value=1.)`` instead.
Multiply two DataFrame objects and do not propagate NaN values, so if
for a (column, time) one frame is missing a value, it will default to
the other frame's value (which might be NaN as well)
Parameters
----------
other : DataFrame
Returns
-------
DataFrame
See also
--------
DataFrame.mul
"""
warnings.warn("'combineMult' is deprecated. Use "
"'DataFrame.mul(other, fill_value=1.)' instead",
FutureWarning, stacklevel=2)
return self.mul(other, fill_value=1.)
DataFrame._setup_axes(['index', 'columns'], info_axis=1, stat_axis=0,
axes_are_reversed=True, aliases={'rows': 0})
DataFrame._add_numeric_operations()
DataFrame._add_series_or_dataframe_operations()
_EMPTY_SERIES = Series([])
def _arrays_to_mgr(arrays, arr_names, index, columns, dtype=None):
"""
Segregate Series based on type and coerce into matrices.
Needs to handle a lot of exceptional cases.
"""
# figure out the index, if necessary
if index is None:
index = extract_index(arrays)
else:
index = _ensure_index(index)
# don't force copy because getting jammed in an ndarray anyway
arrays = _homogenize(arrays, index, dtype)
# from BlockManager perspective
axes = [_ensure_index(columns), _ensure_index(index)]
return create_block_manager_from_arrays(arrays, arr_names, axes)
def extract_index(data):
from pandas.core.index import _union_indexes
index = None
if len(data) == 0:
index = Index([])
elif len(data) > 0:
raw_lengths = []
indexes = []
have_raw_arrays = False
have_series = False
have_dicts = False
for v in data:
if isinstance(v, Series):
have_series = True
indexes.append(v.index)
elif isinstance(v, dict):
have_dicts = True
indexes.append(list(v.keys()))
elif is_list_like(v) and getattr(v, 'ndim', 1) == 1:
have_raw_arrays = True
raw_lengths.append(len(v))
if not indexes and not raw_lengths:
raise ValueError('If using all scalar values, you must pass'
' an index')
if have_series or have_dicts:
index = _union_indexes(indexes)
if have_raw_arrays:
lengths = list(set(raw_lengths))
if len(lengths) > 1:
raise ValueError('arrays must all be same length')
if have_dicts:
raise ValueError('Mixing dicts with non-Series may lead to '
'ambiguous ordering.')
if have_series:
if lengths[0] != len(index):
msg = ('array length %d does not match index length %d' %
(lengths[0], len(index)))
raise ValueError(msg)
else:
index = _default_index(lengths[0])
return _ensure_index(index)
def _prep_ndarray(values, copy=True):
if not isinstance(values, (np.ndarray, Series, Index)):
if len(values) == 0:
return np.empty((0, 0), dtype=object)
def convert(v):
return _possibly_convert_platform(v)
# we could have a 1-dim or 2-dim list here
# this is equiv of np.asarray, but does object conversion
# and platform dtype preservation
try:
if is_list_like(values[0]) or hasattr(values[0], 'len'):
values = np.array([convert(v) for v in values])
else:
values = convert(values)
except:
values = convert(values)
else:
# drop subclass info, do not copy data
values = np.asarray(values)
if copy:
values = values.copy()
if values.ndim == 1:
values = values.reshape((values.shape[0], 1))
elif values.ndim != 2:
raise ValueError('Must pass 2-d input')
return values
def _to_arrays(data, columns, coerce_float=False, dtype=None):
"""
Return list of arrays, columns
"""
if isinstance(data, DataFrame):
if columns is not None:
arrays = [data._ixs(i, axis=1).values
for i, col in enumerate(data.columns) if col in columns]
else:
columns = data.columns
arrays = [data._ixs(i, axis=1).values for i in range(len(columns))]
return arrays, columns
if not len(data):
if isinstance(data, np.ndarray):
columns = data.dtype.names
if columns is not None:
return [[]] * len(columns), columns
return [], [] # columns if columns is not None else []
if isinstance(data[0], (list, tuple)):
return _list_to_arrays(data, columns, coerce_float=coerce_float,
dtype=dtype)
elif isinstance(data[0], collections.Mapping):
return _list_of_dict_to_arrays(data, columns,
coerce_float=coerce_float, dtype=dtype)
elif isinstance(data[0], Series):
return _list_of_series_to_arrays(data, columns,
coerce_float=coerce_float,
dtype=dtype)
elif isinstance(data[0], Categorical):
if columns is None:
columns = _default_index(len(data))
return data, columns
elif (isinstance(data, (np.ndarray, Series, Index)) and
data.dtype.names is not None):
columns = list(data.dtype.names)
arrays = [data[k] for k in columns]
return arrays, columns
else:
# last ditch effort
data = lmap(tuple, data)
return _list_to_arrays(data, columns, coerce_float=coerce_float,
dtype=dtype)
def _masked_rec_array_to_mgr(data, index, columns, dtype, copy):
""" extract from a masked rec array and create the manager """
# essentially process a record array then fill it
fill_value = data.fill_value
fdata = ma.getdata(data)
if index is None:
index = _get_names_from_index(fdata)
if index is None:
index = _default_index(len(data))
index = _ensure_index(index)
if columns is not None:
columns = _ensure_index(columns)
arrays, arr_columns = _to_arrays(fdata, columns)
# fill if needed
new_arrays = []
for fv, arr, col in zip(fill_value, arrays, arr_columns):
mask = ma.getmaskarray(data[col])
if mask.any():
arr, fv = _maybe_upcast(arr, fill_value=fv, copy=True)
arr[mask] = fv
new_arrays.append(arr)
# create the manager
arrays, arr_columns = _reorder_arrays(new_arrays, arr_columns, columns)
if columns is None:
columns = arr_columns
mgr = _arrays_to_mgr(arrays, arr_columns, index, columns)
if copy:
mgr = mgr.copy()
return mgr
def _reorder_arrays(arrays, arr_columns, columns):
# reorder according to the columns
if (columns is not None and len(columns) and arr_columns is not None and
len(arr_columns)):
indexer = _ensure_index(arr_columns).get_indexer(columns)
arr_columns = _ensure_index([arr_columns[i] for i in indexer])
arrays = [arrays[i] for i in indexer]
return arrays, arr_columns
def _list_to_arrays(data, columns, coerce_float=False, dtype=None):
if len(data) > 0 and isinstance(data[0], tuple):
content = list(lib.to_object_array_tuples(data).T)
else:
# list of lists
content = list(lib.to_object_array(data).T)
return _convert_object_array(content, columns, dtype=dtype,
coerce_float=coerce_float)
def _list_of_series_to_arrays(data, columns, coerce_float=False, dtype=None):
from pandas.core.index import _get_combined_index
if columns is None:
columns = _get_combined_index([
s.index for s in data if getattr(s, 'index', None) is not None
])
indexer_cache = {}
aligned_values = []
for s in data:
index = getattr(s, 'index', None)
if index is None:
index = _default_index(len(s))
if id(index) in indexer_cache:
indexer = indexer_cache[id(index)]
else:
indexer = indexer_cache[id(index)] = index.get_indexer(columns)
values = _values_from_object(s)
aligned_values.append(algos.take_1d(values, indexer))
values = np.vstack(aligned_values)
if values.dtype == np.object_:
content = list(values.T)
return _convert_object_array(content, columns, dtype=dtype,
coerce_float=coerce_float)
else:
return values.T, columns
def _list_of_dict_to_arrays(data, columns, coerce_float=False, dtype=None):
if columns is None:
gen = (list(x.keys()) for x in data)
sort = not any(isinstance(d, OrderedDict) for d in data)
columns = lib.fast_unique_multiple_list_gen(gen, sort=sort)
# assure that they are of the base dict class and not of derived
# classes
data = [(type(d) is dict) and d or dict(d) for d in data]
content = list(lib.dicts_to_array(data, list(columns)).T)
return _convert_object_array(content, columns, dtype=dtype,
coerce_float=coerce_float)
def _convert_object_array(content, columns, coerce_float=False, dtype=None):
if columns is None:
columns = _default_index(len(content))
else:
if len(columns) != len(content): # pragma: no cover
# caller's responsibility to check for this...
raise AssertionError('%d columns passed, passed data had %s '
'columns' % (len(columns), len(content)))
# provide soft conversion of object dtypes
def convert(arr):
if dtype != object and dtype != np.object:
arr = lib.maybe_convert_objects(arr, try_float=coerce_float)
arr = _possibly_cast_to_datetime(arr, dtype)
return arr
arrays = [convert(arr) for arr in content]
return arrays, columns
def _get_names_from_index(data):
has_some_name = any([getattr(s, 'name', None) is not None for s in data])
if not has_some_name:
return _default_index(len(data))
index = lrange(len(data))
count = 0
for i, s in enumerate(data):
n = getattr(s, 'name', None)
if n is not None:
index[i] = n
else:
index[i] = 'Unnamed %d' % count
count += 1
return index
def _homogenize(data, index, dtype=None):
from pandas.core.series import _sanitize_array
oindex = None
homogenized = []
for v in data:
if isinstance(v, Series):
if dtype is not None:
v = v.astype(dtype)
if v.index is not index:
# Forces alignment. No need to copy data since we
# are putting it into an ndarray later
v = v.reindex(index, copy=False)
else:
if isinstance(v, dict):
if oindex is None:
oindex = index.astype('O')
if isinstance(index, (DatetimeIndex, TimedeltaIndex)):
v = _dict_compat(v)
else:
v = dict(v)
v = lib.fast_multiget(v, oindex.values, default=NA)
v = _sanitize_array(v, index, dtype=dtype, copy=False,
raise_cast_failure=False)
homogenized.append(v)
return homogenized
def _from_nested_dict(data):
# TODO: this should be seriously cythonized
new_data = OrderedDict()
for index, s in compat.iteritems(data):
for col, v in compat.iteritems(s):
new_data[col] = new_data.get(col, OrderedDict())
new_data[col][index] = v
return new_data
def _put_str(s, space):
return ('%s' % s)[:space].ljust(space)
# ----------------------------------------------------------------------
# Add plotting methods to DataFrame
DataFrame.plot = base.AccessorProperty(gfx.FramePlotMethods,
gfx.FramePlotMethods)
DataFrame.hist = gfx.hist_frame
@Appender(_shared_docs['boxplot'] % _shared_doc_kwargs)
def boxplot(self, column=None, by=None, ax=None, fontsize=None, rot=0,
grid=True, figsize=None, layout=None, return_type=None, **kwds):
import pandas.tools.plotting as plots
import matplotlib.pyplot as plt
ax = plots.boxplot(self, column=column, by=by, ax=ax, fontsize=fontsize,
grid=grid, rot=rot, figsize=figsize, layout=layout,
return_type=return_type, **kwds)
plt.draw_if_interactive()
return ax
DataFrame.boxplot = boxplot
ops.add_flex_arithmetic_methods(DataFrame, **ops.frame_flex_funcs)
ops.add_special_arithmetic_methods(DataFrame, **ops.frame_special_funcs)
if __name__ == '__main__':
import nose
nose.runmodule(argv=[__file__, '-vvs', '-x', '--pdb', '--pdb-failure'],
exit=False)