#
# Licensed to the Apache Software Foundation (ASF) under one or more
# contributor license agreements. See the NOTICE file distributed with
# this work for additional information regarding copyright ownership.
# The ASF licenses this file to You under the Apache License, Version 2.0
# (the "License"); you may not use this file except in compliance with
# the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Analogs for :class:`pandas.DataFrame` and :class:`pandas.Series`:
:class:`DeferredDataFrame` and :class:`DeferredSeries`.
These classes are effectively wrappers around a `schema-aware`_
:class:`~apache_beam.pvalue.PCollection` that provide a set of operations
compatible with the `pandas`_ API.
Note that we aim for the Beam DataFrame API to be completely compatible with
the pandas API, but there are some features that are currently unimplemented
for various reasons. Pay particular attention to the **'Differences from
pandas'** section for each operation to understand where we diverge.
.. _schema-aware:
https://beam.apache.org/documentation/programming-guide/#what-is-a-schema
.. _pandas:
https://pandas.pydata.org/
"""
import collections
import inspect
import itertools
import math
import re
import warnings
from typing import List
from typing import Optional
import numpy as np
import pandas as pd
from pandas._libs import lib
from pandas.api.types import is_float_dtype
from pandas.api.types import is_int64_dtype
from pandas.api.types import is_list_like
from pandas.core.groupby.generic import DataFrameGroupBy
from apache_beam.dataframe import convert
from apache_beam.dataframe import expressions
from apache_beam.dataframe import frame_base
from apache_beam.dataframe import io
from apache_beam.dataframe import partitionings
from apache_beam.transforms import PTransform
__all__ = [
'DeferredSeries',
'DeferredDataFrame',
]
# Get major, minor version
PD_VERSION = tuple(map(int, pd.__version__.split('.')[0:2]))
def populate_not_implemented(pd_type):
def wrapper(deferred_type):
for attr in dir(pd_type):
# Don't auto-define hidden methods or dunders
if attr.startswith('_'):
continue
if not hasattr(deferred_type, attr):
pd_value = getattr(pd_type, attr)
if isinstance(pd_value, property) or inspect.isclass(pd_value):
# Some of the properties on pandas types (cat, dt, sparse), are
# actually attributes with class values, not properties
setattr(
deferred_type,
attr,
property(
frame_base.not_implemented_method(attr, base_type=pd_type)))
elif callable(pd_value):
setattr(
deferred_type,
attr,
frame_base.not_implemented_method(attr, base_type=pd_type))
return deferred_type
return wrapper
def _fillna_alias(method):
def wrapper(self, *args, **kwargs):
return self.fillna(*args, method=method, **kwargs)
wrapper.__name__ = method
wrapper.__doc__ = (
f'{method} is only supported for axis="columns". '
'axis="index" is order-sensitive.')
return frame_base.with_docs_from(pd.DataFrame)(
frame_base.args_to_kwargs(pd.DataFrame)(
frame_base.populate_defaults(pd.DataFrame)(wrapper)))
# These aggregations are commutative and associative, they can be trivially
# "lifted" (i.e. we can pre-aggregate on partitions, group, then post-aggregate)
LIFTABLE_AGGREGATIONS = ['all', 'any', 'max', 'min', 'prod', 'sum']
# These aggregations can be lifted if post-aggregated with "sum"
LIFTABLE_WITH_SUM_AGGREGATIONS = ['size', 'count']
UNLIFTABLE_AGGREGATIONS = [
'mean',
'median',
'quantile',
'describe',
'sem',
'skew',
'kurt',
'kurtosis',
'std',
'var',
'corr',
'cov',
'nunique',
]
# mad was removed in Pandas 2.0.
if PD_VERSION < (2, 0):
UNLIFTABLE_AGGREGATIONS.append('mad')
ALL_AGGREGATIONS = (
LIFTABLE_AGGREGATIONS + LIFTABLE_WITH_SUM_AGGREGATIONS +
UNLIFTABLE_AGGREGATIONS)
# These aggregations have specialized distributed implementations on
# DeferredSeries, which are re-used in DeferredFrame. Note they are *not* used
# for grouped aggregations, since they generally require tracking multiple
# intermediate series, which is difficult to lift in groupby.
HAND_IMPLEMENTED_GLOBAL_AGGREGATIONS = {
'quantile',
'std',
'var',
'mean',
'nunique',
'corr',
'cov',
'skew',
'kurt',
'kurtosis'
}
UNLIFTABLE_GLOBAL_AGGREGATIONS = (
set(UNLIFTABLE_AGGREGATIONS) - set(HAND_IMPLEMENTED_GLOBAL_AGGREGATIONS))
def _agg_method(base, func):
def wrapper(self, *args, **kwargs):
return self.agg(func, *args, **kwargs)
if func in UNLIFTABLE_GLOBAL_AGGREGATIONS:
wrapper.__doc__ = (
f"``{func}`` cannot currently be parallelized. It will "
"require collecting all data on a single node.")
wrapper.__name__ = func
return frame_base.with_docs_from(base)(wrapper)
# Docstring to use for head and tail (commonly used to peek at datasets)
_PEEK_METHOD_EXPLANATION = (
"because it is `order-sensitive "
"<https://s.apache.org/dataframe-order-sensitive-operations>`_.\n\n"
"If you want to peek at a large dataset consider using interactive Beam's "
":func:`ib.collect "
"<apache_beam.runners.interactive.interactive_beam.collect>` "
"with ``n`` specified, or :meth:`sample`. If you want to find the "
"N largest elements, consider using :meth:`DeferredDataFrame.nlargest`.")
class DeferredDataFrameOrSeries(frame_base.DeferredFrame):
def _render_indexes(self):
if self.index.nlevels == 1:
return 'index=' + (
'<unnamed>' if self.index.name is None else repr(self.index.name))
else:
return 'indexes=[' + ', '.join(
'<unnamed>' if ix is None else repr(ix)
for ix in self.index.names) + ']'
__array__ = frame_base.wont_implement_method(
pd.Series, '__array__', reason="non-deferred-result")
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def drop(self, labels, axis, index, columns, errors, **kwargs):
"""drop is not parallelizable when dropping from the index and
``errors="raise"`` is specified. It requires collecting all data on a single
node in order to detect if one of the index values is missing."""
if labels is not None:
if index is not None or columns is not None:
raise ValueError("Cannot specify both 'labels' and 'index'/'columns'")
if axis in (0, 'index'):
index = labels
columns = None
elif axis in (1, 'columns'):
index = None
columns = labels
else:
raise ValueError(
"axis must be one of (0, 1, 'index', 'columns'), "
"got '%s'" % axis)
if columns is not None:
# Compute the proxy based on just the columns that are dropped.
proxy = self._expr.proxy().drop(columns=columns, errors=errors)
else:
proxy = self._expr.proxy()
if index is not None and errors == 'raise':
# In order to raise an error about missing index values, we'll
# need to collect the entire dataframe.
# TODO: This could be parallelized by putting index values in a
# ConstantExpression and partitioning by index.
requires = partitionings.Singleton(
reason=(
"drop(errors='raise', axis='index') is not currently "
"parallelizable. This requires collecting all data on a single "
f"node in order to detect if one of {index!r} is missing."))
else:
requires = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'drop',
lambda df: df.drop(
axis=axis,
index=index,
columns=columns,
errors=errors,
**kwargs), [self._expr],
proxy=proxy,
requires_partition_by=requires))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def droplevel(self, level, axis):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'droplevel',
lambda df: df.droplevel(level, axis=axis), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()
if axis in (1, 'column') else partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
def swaplevel(self, **kwargs):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'swaplevel',
lambda df: df.swaplevel(**kwargs), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def fillna(self, value, method, axis, limit, **kwargs):
"""When ``axis="index"``, both ``method`` and ``limit`` must be ``None``.
otherwise this operation is order-sensitive."""
# Default value is None, but is overriden with index.
axis = axis or 'index'
if axis in (0, 'index'):
if method is not None:
raise frame_base.WontImplementError(
f"fillna(method={method!r}, axis={axis!r}) is not supported "
"because it is order-sensitive. Only fillna(method=None) is "
f"supported with axis={axis!r}.",
reason="order-sensitive")
if limit is not None:
raise frame_base.WontImplementError(
f"fillna(limit={method!r}, axis={axis!r}) is not supported because "
"it is order-sensitive. Only fillna(limit=None) is supported with "
f"axis={axis!r}.",
reason="order-sensitive")
if isinstance(self, DeferredDataFrame) and isinstance(value,
DeferredSeries):
# If self is a DataFrame and value is a Series we want to broadcast value
# to all partitions of self.
# This is OK, as its index must be the same size as the columns set of
# self, so cannot be too large.
class AsScalar(object):
def __init__(self, value):
self.value = value
with expressions.allow_non_parallel_operations():
value_expr = expressions.ComputedExpression(
'as_scalar',
lambda df: AsScalar(df), [value._expr],
requires_partition_by=partitionings.Singleton())
get_value = lambda x: x.value
requires = partitionings.Arbitrary()
elif isinstance(value, frame_base.DeferredBase):
# For other DeferredBase combinations, use Index partitioning to
# co-locate on the Index
value_expr = value._expr
get_value = lambda x: x
requires = partitionings.Index()
else:
# Default case, pass value through as a constant, no particular
# partitioning requirement
value_expr = expressions.ConstantExpression(value)
get_value = lambda x: x
requires = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
# yapf: disable
expressions.ComputedExpression(
'fillna',
lambda df,
value: df.fillna(
get_value(value),
method=method,
axis=axis,
limit=limit,
**kwargs), [self._expr, value_expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=requires))
if hasattr(pd.DataFrame, 'ffill'):
ffill = _fillna_alias('ffill')
if hasattr(pd.DataFrame, 'bfill'):
bfill = _fillna_alias('bfill')
if hasattr(pd.DataFrame, 'backfill'):
backfill = _fillna_alias('backfill')
if hasattr(pd.DataFrame, 'pad'):
pad = _fillna_alias('pad')
@frame_base.with_docs_from(pd.DataFrame)
def first(self, offset):
per_partition = expressions.ComputedExpression(
'first-per-partition',
lambda df: df.sort_index().first(offset=offset), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'first',
lambda df: df.sort_index().first(offset=offset), [per_partition],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
def last(self, offset):
per_partition = expressions.ComputedExpression(
'last-per-partition',
lambda df: df.sort_index().last(offset=offset), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'last',
lambda df: df.sort_index().last(offset=offset), [per_partition],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def groupby(self, by, level, axis, as_index, group_keys, **kwargs):
"""``as_index`` must be ``True``.
Aggregations grouping by a categorical column with ``observed=False`` set
are not currently parallelizable
(`Issue 21827 <https://github.com/apache/beam/issues/21827>`_).
"""
if not as_index:
raise NotImplementedError('groupby(as_index=False)')
if axis in (1, 'columns'):
return _DeferredGroupByCols(
expressions.ComputedExpression(
'groupbycols',
lambda df: df.groupby(
by, axis=axis, group_keys=group_keys, **kwargs), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()),
group_keys=group_keys)
if level is None and by is None:
raise TypeError("You have to supply one of 'by' and 'level'")
elif level is not None:
if isinstance(level, (list, tuple)):
grouping_indexes = level
else:
grouping_indexes = [level]
grouping_columns = []
index = self._expr.proxy().index
# Translate to level numbers only
grouping_indexes = [
l if isinstance(l, int) else index.names.index(l)
for l in grouping_indexes
]
if index.nlevels == 1:
to_group_with_index = self._expr
to_group = self._expr
else:
levels_to_drop = [
i for i in range(index.nlevels) if i not in grouping_indexes
]
# Reorder so the grouped indexes are first
to_group_with_index = self.reorder_levels(
grouping_indexes + levels_to_drop)
grouping_indexes = list(range(len(grouping_indexes)))
levels_to_drop = list(range(len(grouping_indexes), index.nlevels))
if levels_to_drop:
to_group = to_group_with_index.droplevel(levels_to_drop)._expr
else:
to_group = to_group_with_index._expr
to_group_with_index = to_group_with_index._expr
elif callable(by):
def map_index(df):
df = df.copy()
df.index = df.index.map(by)
return df
to_group = expressions.ComputedExpression(
'map_index',
map_index, [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
orig_nlevels = self._expr.proxy().index.nlevels
def prepend_mapped_index(df):
df = df.copy()
index = df.index.to_frame()
index.insert(0, None, df.index.map(by))
df.index = pd.MultiIndex.from_frame(
index, names=[None] + list(df.index.names))
return df
to_group_with_index = expressions.ComputedExpression(
'map_index_keep_orig',
prepend_mapped_index,
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
# Partitioning by the original indexes is preserved
preserves_partition_by=partitionings.Index(
list(range(1, orig_nlevels + 1))))
grouping_columns = []
# The index we need to group by is the last one
grouping_indexes = [0]
elif isinstance(by, DeferredSeries):
if isinstance(self, DeferredSeries):
def set_index(s, by):
df = pd.DataFrame(s)
df, by = df.align(by, axis=0, join='inner')
return df.set_index(by).iloc[:, 0]
def prepend_index(s, by):
df = pd.DataFrame(s)
df, by = df.align(by, axis=0, join='inner')
return df.set_index([by, df.index]).iloc[:, 0]
else:
def set_index(df, by): # type: ignore
df, by = df.align(by, axis=0, join='inner')
return df.set_index(by)
def prepend_index(df, by): # type: ignore
df, by = df.align(by, axis=0, join='inner')
return df.set_index([by, df.index])
to_group = expressions.ComputedExpression(
'set_index',
set_index, [self._expr, by._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Singleton())
orig_nlevels = self._expr.proxy().index.nlevels
to_group_with_index = expressions.ComputedExpression(
'prependindex',
prepend_index, [self._expr, by._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Index(
list(range(1, orig_nlevels + 1))))
grouping_columns = []
grouping_indexes = [0]
elif isinstance(by, np.ndarray):
raise frame_base.WontImplementError(
"Grouping by a concrete ndarray is order sensitive.",
reason="order-sensitive")
elif isinstance(self, DeferredDataFrame):
if not isinstance(by, list):
by = [by]
# Find the columns that we need to move into the index so we can group by
# them
column_names = self._expr.proxy().columns
grouping_columns = list(set(by).intersection(column_names))
index_names = self._expr.proxy().index.names
for label in by:
if label not in index_names and label not in self._expr.proxy().columns:
raise KeyError(label)
grouping_indexes = list(set(by).intersection(index_names))
if grouping_indexes:
if set(by) == set(index_names):
to_group = self._expr
elif set(by).issubset(index_names):
to_group = self.droplevel(index_names.difference(by))._expr
else:
to_group = self.reset_index(grouping_indexes).set_index(by)._expr
else:
to_group = self.set_index(by)._expr
if grouping_columns:
# TODO(https://github.com/apache/beam/issues/20759):
# It should be possible to do this without creating
# an expression manually, by using DeferredDataFrame.set_index, i.e.:
# to_group_with_index = self.set_index([self.index] +
# grouping_columns)._expr
to_group_with_index = expressions.ComputedExpression(
'move_grouped_columns_to_index',
lambda df: df.set_index([df.index] + grouping_columns, drop=False),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Index(
list(range(self._expr.proxy().index.nlevels))))
else:
to_group_with_index = self._expr
else:
raise NotImplementedError(by)
return DeferredGroupBy(
expressions.ComputedExpression(
'groupbyindex',
lambda df: df.groupby(
level=list(range(df.index.nlevels)),
group_keys=group_keys,
**kwargs), [to_group],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()),
kwargs,
to_group,
to_group_with_index,
grouping_columns=grouping_columns,
grouping_indexes=grouping_indexes,
group_keys=group_keys)
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def loc(self):
return _DeferredLoc(self)
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def iloc(self):
"""Position-based indexing with `iloc` is order-sensitive in almost every
case. Beam DataFrame users should prefer label-based indexing with `loc`.
"""
return _DeferredILoc(self)
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def reset_index(self, level=None, **kwargs):
"""Dropping the entire index (e.g. with ``reset_index(level=None)``) is
not parallelizable. It is also only guaranteed that the newly generated
index values will be unique. The Beam DataFrame API makes no guarantee
that the same index values as the equivalent pandas operation will be
generated, because that implementation is order-sensitive."""
if level is not None and not isinstance(level, (tuple, list)):
level = [level]
if level is None or len(level) == self._expr.proxy().index.nlevels:
# TODO(https://github.com/apache/beam/issues/20859):
# Could do distributed re-index with offsets.
requires_partition_by = partitionings.Singleton(
reason=(
f"reset_index(level={level!r}) drops the entire index and "
"creates a new one, so it cannot currently be parallelized "
"(https://github.com/apache/beam/issues/20859)."))
else:
requires_partition_by = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'reset_index',
lambda df: df.reset_index(level=level, **kwargs), [self._expr],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=requires_partition_by))
abs = frame_base._elementwise_method('abs', base=pd.core.generic.NDFrame)
@frame_base.with_docs_from(pd.core.generic.NDFrame)
@frame_base.args_to_kwargs(pd.core.generic.NDFrame)
@frame_base.populate_defaults(pd.core.generic.NDFrame)
def astype(self, dtype, copy, errors):
"""astype is not parallelizable when ``errors="ignore"`` is specified.
``copy=False`` is not supported because it relies on memory-sharing
semantics.
``dtype="category`` is not supported because the type of the output column
depends on the data. Please use ``pd.CategoricalDtype`` with explicit
categories instead.
"""
requires = partitionings.Arbitrary()
if errors == "ignore":
# We need all data in order to ignore errors and propagate the original
# data.
requires = partitionings.Singleton(
reason=(
f"astype(errors={errors!r}) is currently not parallelizable, "
"because all data must be collected on one node to determine if "
"the original data should be propagated instead."))
if not copy:
raise frame_base.WontImplementError(
f"astype(copy={copy!r}) is not supported because it relies on "
"memory-sharing semantics that are not compatible with the Beam "
"model.")
# An instance of CategoricalDtype is actualy considered equal to the string
# 'category', so we have to explicitly check if dtype is an instance of
# CategoricalDtype, and allow it.
# See https://github.com/apache/beam/issues/23276
if dtype == 'category' and not isinstance(dtype, pd.CategoricalDtype):
raise frame_base.WontImplementError(
"astype(dtype='category') is not supported because the type of the "
"output column depends on the data. Please use pd.CategoricalDtype "
"with explicit categories instead.",
reason="non-deferred-columns")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'astype',
lambda df: df.astype(dtype=dtype, copy=copy, errors=errors),
[self._expr],
requires_partition_by=requires,
preserves_partition_by=partitionings.Arbitrary()))
at_time = frame_base._elementwise_method(
'at_time', base=pd.core.generic.NDFrame)
between_time = frame_base._elementwise_method(
'between_time', base=pd.core.generic.NDFrame)
copy = frame_base._elementwise_method('copy', base=pd.core.generic.NDFrame)
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def replace(self, to_replace, value, limit, method, **kwargs):
"""``method`` is not supported in the Beam DataFrame API because it is
order-sensitive. It cannot be specified.
If ``limit`` is specified this operation is not parallelizable."""
# pylint: disable-next=c-extension-no-member
value_compare = None if PD_VERSION < (1, 4) else lib.no_default
if method is not None and not isinstance(to_replace,
dict) and value is value_compare:
# pandas only relies on method if to_replace is not a dictionary, and
# value is the <no_default> value. This is different than
# if ``None`` is explicitly passed for ``value``. In this case, it will be
# respected
raise frame_base.WontImplementError(
f"replace(method={method!r}) is not supported because it is "
"order sensitive. Only replace(method=None) is supported.",
reason="order-sensitive")
if limit is None:
requires_partition_by = partitionings.Arbitrary()
else:
requires_partition_by = partitionings.Singleton(
reason=(
f"replace(limit={limit!r}) cannot currently be parallelized. It "
"requires collecting all data on a single node."))
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'replace',
lambda df: df.replace(
to_replace=to_replace,
value=value,
limit=limit,
method=method,
**kwargs), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=requires_partition_by))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def tz_localize(self, ambiguous, **kwargs):
"""``ambiguous`` cannot be set to ``"infer"`` as its semantics are
order-sensitive. Similarly, specifying ``ambiguous`` as an
:class:`~numpy.ndarray` is order-sensitive, but you can achieve similar
functionality by specifying ``ambiguous`` as a Series."""
if isinstance(ambiguous, np.ndarray):
raise frame_base.WontImplementError(
"tz_localize(ambiguous=ndarray) is not supported because it makes "
"this operation sensitive to the order of the data. Please use a "
"DeferredSeries instead.",
reason="order-sensitive")
elif isinstance(ambiguous, frame_base.DeferredFrame):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'tz_localize',
lambda df,
ambiguous: df.tz_localize(ambiguous=ambiguous, **kwargs),
[self._expr, ambiguous._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Singleton()))
elif ambiguous == 'infer':
# infer attempts to infer based on the order of the timestamps
raise frame_base.WontImplementError(
f"tz_localize(ambiguous={ambiguous!r}) is not allowed because it "
"makes this operation sensitive to the order of the data.",
reason="order-sensitive")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'tz_localize',
lambda df: df.tz_localize(ambiguous=ambiguous, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton()))
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def size(self):
sizes = expressions.ComputedExpression(
'get_sizes',
# Wrap scalar results in a Series for easier concatenation later
lambda df: pd.Series(df.size),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'sum_sizes',
lambda sizes: sizes.sum(), [sizes],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
def length(self):
"""Alternative to ``len(df)`` which returns a deferred result that can be
used in arithmetic with :class:`DeferredSeries` or
:class:`DeferredDataFrame` instances."""
lengths = expressions.ComputedExpression(
'get_lengths',
# Wrap scalar results in a Series for easier concatenation later
lambda df: pd.Series(len(df)),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'sum_lengths',
lambda lengths: lengths.sum(), [lengths],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
def __len__(self):
raise frame_base.WontImplementError(
"len(df) is not currently supported because it produces a non-deferred "
"result. Consider using df.length() instead.",
reason="non-deferred-result")
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def empty(self):
empties = expressions.ComputedExpression(
'get_empties',
# Wrap scalar results in a Series for easier concatenation later
lambda df: pd.Series(df.empty),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'check_all_empty',
lambda empties: empties.all(), [empties],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
def bool(self):
# TODO: Documentation about DeferredScalar
# Will throw if any partition has >1 element
bools = expressions.ComputedExpression(
'get_bools',
# Wrap scalar results in a Series for easier concatenation later
lambda df: pd.Series([], dtype=bool)
if df.empty else pd.Series([df.bool()]),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations(True):
# Will throw if overall dataset has != 1 element
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_all_bools',
lambda bools: bools.bool(), [bools],
proxy=bool(),
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
def equals(self, other):
intermediate = expressions.ComputedExpression(
'equals_partitioned',
# Wrap scalar results in a Series for easier concatenation later
lambda df,
other: pd.Series(df.equals(other)),
[self._expr, other._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'aggregate_equals',
lambda df: df.all(), [intermediate],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def sort_values(self, axis, **kwargs):
"""``sort_values`` is not implemented.
It is not implemented for ``axis=index`` because it imposes an ordering on
the dataset, and it likely will not be maintained (see
https://s.apache.org/dataframe-order-sensitive-operations).
It is not implemented for ``axis=columns`` because it makes the order of
the columns depend on the data (see
https://s.apache.org/dataframe-non-deferred-columns)."""
if axis in (0, 'index'):
# axis=index imposes an ordering on the DataFrame rows which we do not
# support
raise frame_base.WontImplementError(
"sort_values(axis=index) is not supported because it imposes an "
"ordering on the dataset which likely will not be preserved.",
reason="order-sensitive")
else:
# axis=columns will reorder the columns based on the data
raise frame_base.WontImplementError(
"sort_values(axis=columns) is not supported because the order of the "
"columns in the result depends on the data.",
reason="non-deferred-columns")
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def sort_index(self, axis, **kwargs):
"""``axis=index`` is not allowed because it imposes an ordering on the
dataset, and we cannot guarantee it will be maintained (see
https://s.apache.org/dataframe-order-sensitive-operations). Only
``axis=columns`` is allowed."""
if axis in (0, 'index'):
# axis=rows imposes an ordering on the DataFrame which we do not support
raise frame_base.WontImplementError(
"sort_index(axis=index) is not supported because it imposes an "
"ordering on the dataset which we cannot guarantee will be "
"preserved.",
reason="order-sensitive")
# axis=columns reorders the columns by name
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'sort_index',
lambda df: df.sort_index(axis=axis, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary(),
))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(
pd.DataFrame, removed_args=["errors"] if PD_VERSION >= (2, 0) else None)
@frame_base.populate_defaults(
pd.DataFrame, removed_args=["errors"] if PD_VERSION >= (2, 0) else None)
@frame_base.maybe_inplace
def where(self, cond, other, errors, **kwargs):
"""where is not parallelizable when ``errors="ignore"`` is specified."""
requires = partitionings.Arbitrary()
deferred_args = {}
actual_args = {}
# TODO(bhulette): This is very similar to the logic in
# frame_base.elementwise_method, can we unify it?
if isinstance(cond, frame_base.DeferredFrame):
deferred_args['cond'] = cond
requires = partitionings.Index()
else:
actual_args['cond'] = cond
if isinstance(other, frame_base.DeferredFrame):
deferred_args['other'] = other
requires = partitionings.Index()
else:
actual_args['other'] = other
# For Pandas 2.0, errors was removed as an argument.
if PD_VERSION < (2, 0):
if "errors" in kwargs and kwargs['errors'] == "ignore":
# We need all data in order to ignore errors and propagate the original
# data.
requires = partitionings.Singleton(
reason=(
f"where(errors={kwargs['errors']!r}) is currently not "
"parallelizable, because all data must be collected on one "
"node to determine if the original data should be propagated "
"instead."))
actual_args['errors'] = kwargs['errors'] if 'errors' in kwargs else None
def where_execution(df, *args):
runtime_values = {
name: value
for (name, value) in zip(deferred_args.keys(), args)
}
return df.where(**runtime_values, **actual_args, **kwargs)
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
"where",
where_execution,
[self._expr] + [df._expr for df in deferred_args.values()],
requires_partition_by=requires,
preserves_partition_by=partitionings.Index(),
))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def mask(self, cond, **kwargs):
"""mask is not parallelizable when ``errors="ignore"`` is specified."""
return self.where(~cond, **kwargs)
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def truncate(self, before, after, axis):
if axis in (None, 0, 'index'):
def truncate(df):
return df.sort_index().truncate(before=before, after=after, axis=axis)
else:
def truncate(df):
return df.truncate(before=before, after=after, axis=axis)
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'truncate',
truncate, [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def unstack(self, **kwargs):
level = kwargs.get('level', -1)
if self._expr.proxy().index.nlevels == 1:
if PD_VERSION < (1, 2):
raise frame_base.WontImplementError(
"unstack() is not supported when using pandas < 1.2.0\n"
"Please upgrade to pandas 1.2.0 or higher to use this operation.")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'unstack',
lambda s: s.unstack(**kwargs), [self._expr],
requires_partition_by=partitionings.Index()))
else:
# Unstacking MultiIndex objects
idx = self._expr.proxy().index
# Converting level (int, str, or combination) to a list of number levels
level_list = level if isinstance(level, list) else [level]
level_number_list = [idx._get_level_number(l) for l in level_list]
# Checking if levels provided are of CategoricalDtype
if not all(isinstance(idx.levels[l].dtype, (pd.CategoricalDtype,
pd.BooleanDtype))
for l in level_number_list):
raise frame_base.WontImplementError(
"unstack() is only supported on DataFrames if unstacked level "
"is a categorical or boolean column",
reason="non-deferred-columns")
else:
tmp = self._expr.proxy().unstack(**kwargs)
if isinstance(tmp.columns, pd.MultiIndex):
levels = []
for i in range(tmp.columns.nlevels):
level = tmp.columns.levels[i]
levels.append(level)
col_idx = pd.MultiIndex.from_product(levels)
else:
if tmp.columns.dtype == 'boolean':
col_idx = pd.Index([False, True], dtype='boolean')
else:
col_idx = pd.CategoricalIndex(tmp.columns.categories)
if isinstance(self._expr.proxy(), pd.Series):
proxy_dtype = self._expr.proxy().dtypes
else:
# Set dtype to object if more than one value
dtypes = [d for d in self._expr.proxy().dtypes]
proxy_dtype = object
if np.int64 in dtypes:
proxy_dtype = np.int64
if np.float64 in dtypes:
proxy_dtype = np.float64
if object in dtypes:
proxy_dtype = object
proxy = pd.DataFrame(
columns=col_idx, dtype=proxy_dtype, index=tmp.index)
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'unstack',
lambda s: pd.concat([proxy, s.unstack(**kwargs)]),
[self._expr],
proxy=proxy,
requires_partition_by=partitionings.Singleton()))
@frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def xs(self, key, axis, level, **kwargs):
"""Note that ``xs(axis='index')`` will raise a ``KeyError`` at execution
time if the key does not exist in the index."""
if axis in ('columns', 1):
# Special case for axis=columns. This is a simple project that raises a
# KeyError at construction time for missing columns.
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'xs',
lambda df: df.xs(key, axis=axis, **kwargs), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
elif axis not in ('index', 0):
# Make sure that user's axis is valid
raise ValueError(
"axis must be one of ('index', 0, 'columns', 1). "
f"got {axis!r}.")
if not isinstance(key, tuple):
key_size = 1
key_series = pd.Series([key], index=[key])
else:
key_size = len(key)
key_series = pd.Series([key], pd.MultiIndex.from_tuples([key]))
key_expr = expressions.ConstantExpression(
key_series, proxy=key_series.iloc[:0])
if level is None:
reindexed = self
else:
if not isinstance(level, list):
level = [level]
# If user specifed levels, reindex so those levels are at the beginning.
# Keep the others and preserve their order.
level = [
l if isinstance(l, int) else list(self.index.names).index(l)
for l in level
]
reindexed = self.reorder_levels(
level + [i for i in range(self.index.nlevels) if i not in level])
def xs_partitioned(frame, key):
if not len(key):
# key is not in this partition, return empty dataframe
result = frame.iloc[:0]
if key_size < frame.index.nlevels:
return result.droplevel(list(range(key_size)))
else:
return result
# key should be in this partition, call xs. Will raise KeyError if not
# present.
return frame.xs(key.item())
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'xs',
xs_partitioned,
[reindexed._expr, key_expr],
requires_partition_by=partitionings.Index(list(range(key_size))),
# Drops index levels, so partitioning is not preserved
preserves_partition_by=partitionings.Singleton()))
@property
def dtype(self):
return self._expr.proxy().dtype
isin = frame_base._elementwise_method('isin', base=pd.DataFrame)
combine_first = frame_base._elementwise_method(
'combine_first', base=pd.DataFrame)
combine = frame_base._proxy_method(
'combine',
base=pd.DataFrame,
requires_partition_by=expressions.partitionings.Singleton(
reason="combine() is not parallelizable because func might operate "
"on the full dataset."),
preserves_partition_by=expressions.partitionings.Singleton())
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def ndim(self):
return self._expr.proxy().ndim
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def index(self):
return _DeferredIndex(self)
@index.setter
def _set_index(self, value):
# TODO: assigning the index is generally order-sensitive, but we could
# support it in some rare cases, e.g. when assigning the index from one
# of a DataFrame's columns
raise NotImplementedError(
"Assigning an index is not yet supported. "
"Consider using set_index() instead.")
reindex = frame_base.wont_implement_method(
pd.DataFrame, 'reindex', reason="order-sensitive")
hist = frame_base.wont_implement_method(
pd.DataFrame, 'hist', reason="plotting-tools")
attrs = property(
frame_base.wont_implement_method(
pd.DataFrame, 'attrs', reason='experimental'))
reorder_levels = frame_base._proxy_method(
'reorder_levels',
base=pd.DataFrame,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
resample = frame_base.wont_implement_method(
pd.DataFrame, 'resample', reason='event-time-semantics')
rolling = frame_base.wont_implement_method(
pd.DataFrame, 'rolling', reason='event-time-semantics')
to_xarray = frame_base.wont_implement_method(
pd.DataFrame, 'to_xarray', reason='non-deferred-result')
to_clipboard = frame_base.wont_implement_method(
pd.DataFrame, 'to_clipboard', reason="non-deferred-result")
swapaxes = frame_base.wont_implement_method(
pd.Series, 'swapaxes', reason="non-deferred-columns")
infer_object = frame_base.wont_implement_method(
pd.Series, 'infer_objects', reason="non-deferred-columns")
ewm = frame_base.wont_implement_method(
pd.Series, 'ewm', reason="event-time-semantics")
expanding = frame_base.wont_implement_method(
pd.Series, 'expanding', reason="event-time-semantics")
sparse = property(
frame_base.not_implemented_method(
'sparse', '20902', base_type=pd.DataFrame))
transform = frame_base._elementwise_method('transform', base=pd.DataFrame)
tz_convert = frame_base._proxy_method(
'tz_convert',
base=pd.DataFrame,
requires_partition_by=partitionings.Arbitrary(),
# Manipulates index, partitioning is not preserved
preserves_partition_by=partitionings.Singleton())
@frame_base.with_docs_from(pd.DataFrame)
def pipe(self, func, *args, **kwargs):
if isinstance(func, tuple):
func, data = func
kwargs[data] = self
return func(*args, **kwargs)
return func(self, *args, **kwargs)
[docs]@populate_not_implemented(pd.Series)
@frame_base.DeferredFrame._register_for(pd.Series)
class DeferredSeries(DeferredDataFrameOrSeries):
def __repr__(self):
return (
f'DeferredSeries(name={self.name!r}, dtype={self.dtype}, '
f'{self._render_indexes()})')
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def name(self):
return self._expr.proxy().name
@name.setter
def name(self, value):
def fn(s):
s = s.copy()
s.name = value
return s
self._expr = expressions.ComputedExpression(
'series_set_name',
fn, [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def hasnans(self):
has_nans = expressions.ComputedExpression(
'hasnans',
lambda s: pd.Series(s.hasnans), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations():
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_hasnans',
lambda s: s.any(), [has_nans],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def dtype(self):
return self._expr.proxy().dtype
dtypes = dtype
def __getitem__(self, key):
if _is_null_slice(key) or key is Ellipsis:
return self
elif (isinstance(key, int) or _is_integer_slice(key)
) and self._expr.proxy().index._should_fallback_to_positional():
raise frame_base.WontImplementError(
"Accessing an item by an integer key is order sensitive for this "
"Series.",
reason="order-sensitive")
elif isinstance(key, slice) or callable(key):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
# yapf: disable
'getitem',
lambda df: df[key],
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
elif isinstance(key, DeferredSeries) and key._expr.proxy().dtype == bool:
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
# yapf: disable
'getitem',
lambda df,
indexer: df[indexer],
[self._expr, key._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
elif pd.core.series.is_iterator(key) or pd.core.common.is_bool_indexer(key):
raise frame_base.WontImplementError(
"Accessing a DeferredSeries with an iterator is sensitive to the "
"order of the data.",
reason="order-sensitive")
else:
# We could consider returning a deferred scalar, but that might
# be more surprising than a clear error.
raise frame_base.WontImplementError(
f"Indexing a series with key of type {type(key)} is not supported "
"because it produces a non-deferred result.",
reason="non-deferred-result")
[docs] @frame_base.with_docs_from(pd.Series)
def keys(self):
return self.index
# Series.T == transpose. Both are a no-op
T = frame_base._elementwise_method('T', base=pd.Series)
transpose = frame_base._elementwise_method('transpose', base=pd.Series)
shape = property(
frame_base.wont_implement_method(
pd.Series, 'shape', reason="non-deferred-result"))
[docs] @frame_base.with_docs_from(pd.Series, removed_method=PD_VERSION >= (2, 0))
@frame_base.args_to_kwargs(pd.Series, removed_method=PD_VERSION >= (2, 0))
@frame_base.populate_defaults(pd.Series, removed_method=PD_VERSION >= (2, 0))
def append(self, to_append, ignore_index, verify_integrity, **kwargs):
"""``ignore_index=True`` is not supported, because it requires generating an
order-sensitive index."""
if PD_VERSION >= (2, 0):
raise frame_base.WontImplementError('append() was removed in Pandas 2.0.')
if not isinstance(to_append, DeferredSeries):
raise frame_base.WontImplementError(
"append() only accepts DeferredSeries instances, received " +
str(type(to_append)))
if ignore_index:
raise frame_base.WontImplementError(
"append(ignore_index=True) is order sensitive because it requires "
"generating a new index based on the order of the data.",
reason="order-sensitive")
if verify_integrity:
# We can verify the index is non-unique within index partitioned data.
requires = partitionings.Index()
else:
requires = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'append',
lambda s,
to_append: s.append(
to_append, verify_integrity=verify_integrity, **kwargs),
[self._expr, to_append._expr],
requires_partition_by=requires,
preserves_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def align(self, other, join, axis, level, method, **kwargs):
"""Aligning per-level is not yet supported. Only the default,
``level=None``, is allowed.
Filling NaN values via ``method`` is not supported, because it is
`order-sensitive
<https://s.apache.org/dataframe-order-sensitive-operations>`_.
Only the default, ``method=None``, is allowed."""
if level is not None:
raise NotImplementedError('per-level align')
if method is not None:
raise frame_base.WontImplementError(
f"align(method={method!r}) is not supported because it is "
"order sensitive. Only align(method=None) is supported.",
reason="order-sensitive")
# We're using pd.concat here as expressions don't yet support
# multiple return values.
aligned = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'align',
lambda x,
y: pd.concat([x, y], axis=1, join='inner'),
[self._expr, other._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
return aligned.iloc[:, 0], aligned.iloc[:, 1]
argsort = frame_base.wont_implement_method(
pd.Series, 'argsort', reason="order-sensitive")
array = property(
frame_base.wont_implement_method(
pd.Series, 'array', reason="non-deferred-result"))
# We can't reliably predict the output type, it depends on whether `key` is:
# - not in the index (default_value)
# - in the index once (constant)
# - in the index multiple times (Series)
get = frame_base.wont_implement_method(
pd.Series, 'get', reason="non-deferred-columns")
ravel = frame_base.wont_implement_method(
pd.Series, 'ravel', reason="non-deferred-result")
slice_shift = frame_base.wont_implement_method(
pd.Series, 'slice_shift', reason="deprecated")
tshift = frame_base.wont_implement_method(
pd.Series, 'tshift', reason="deprecated")
rename = frame_base._proxy_method(
'rename',
base=pd.Series,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
between = frame_base._elementwise_method('between', base=pd.Series)
add_suffix = frame_base._proxy_method(
'add_suffix',
base=pd.DataFrame,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
add_prefix = frame_base._proxy_method(
'add_prefix',
base=pd.DataFrame,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
info = frame_base.wont_implement_method(
pd.Series, 'info', reason="non-deferred-result")
def _idxmaxmin_helper(self, op, **kwargs):
if op == 'idxmax':
func = pd.Series.idxmax
elif op == 'idxmin':
func = pd.Series.idxmin
else:
raise ValueError(
"op must be one of ('idxmax', 'idxmin'). "
f"got {op!r}.")
def compute_idx(s):
index = func(s, **kwargs)
if pd.isna(index):
return s
else:
return s.loc[[index]]
# Avoids empty Series error when evaluating proxy
index_dtype = self._expr.proxy().index.dtype
index = pd.Index([], dtype=index_dtype)
proxy = self._expr.proxy().copy()
proxy.index = index
proxy = pd.concat([
proxy,
pd.Series([1], index=np.asarray(['0']).astype(proxy.index.dtype))
])
idx_func = expressions.ComputedExpression(
'idx_func',
compute_idx, [self._expr],
proxy=proxy,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'idx_combine',
lambda s: func(s, **kwargs), [idx_func],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def idxmin(self, **kwargs):
return self._idxmaxmin_helper('idxmin', **kwargs)
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def idxmax(self, **kwargs):
return self._idxmaxmin_helper('idxmax', **kwargs)
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def explode(self, ignore_index):
# ignoring the index will not preserve it
preserves = (
partitionings.Singleton() if ignore_index else partitionings.Index())
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'explode',
lambda s: s.explode(ignore_index), [self._expr],
preserves_partition_by=preserves,
requires_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
def dot(self, other):
"""``other`` must be a :class:`DeferredDataFrame` or :class:`DeferredSeries`
instance. Computing the dot product with an array-like is not supported
because it is order-sensitive."""
left = self._expr
if isinstance(other, DeferredSeries):
right = expressions.ComputedExpression(
'to_dataframe',
pd.DataFrame, [other._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
right_is_series = True
elif isinstance(other, DeferredDataFrame):
right = other._expr
right_is_series = False
else:
raise frame_base.WontImplementError(
"other must be a DeferredDataFrame or DeferredSeries instance. "
"Passing a concrete list or numpy array is not supported. Those "
"types have no index and must be joined based on the order of the "
"data.",
reason="order-sensitive")
dots = expressions.ComputedExpression(
'dot',
# Transpose so we can sum across rows.
(lambda left, right: pd.DataFrame(left @ right).T),
[left, right],
requires_partition_by=partitionings.Index())
with expressions.allow_non_parallel_operations(True):
sums = expressions.ComputedExpression(
'sum',
lambda dots: dots.sum(), #
[dots],
requires_partition_by=partitionings.Singleton())
if right_is_series:
result = expressions.ComputedExpression(
'extract',
lambda df: df[0], [sums],
requires_partition_by=partitionings.Singleton())
else:
result = sums
return frame_base.DeferredFrame.wrap(result)
__matmul__ = dot
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def nunique(self, **kwargs):
return self.drop_duplicates(keep="any").size
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def quantile(self, q, **kwargs):
"""quantile is not parallelizable. See
`Issue 20933 <https://github.com/apache/beam/issues/20933>`_ tracking
the possible addition of an approximate, parallelizable implementation of
quantile."""
# TODO(https://github.com/apache/beam/issues/20933): Provide an option for
# approximate distributed quantiles
requires = partitionings.Singleton(
reason=(
"Computing quantiles across index cannot currently be "
"parallelized. See https://github.com/apache/beam/issues/20933 "
"tracking the possible addition of an approximate, parallelizable "
"implementation of quantile."))
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'quantile',
lambda df: df.quantile(q=q, **kwargs), [self._expr],
requires_partition_by=requires,
preserves_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
def std(self, *args, **kwargs):
# Compute variance (deferred scalar) with same args, then sqrt it
return self.var(*args, **kwargs).apply(lambda var: math.sqrt(var))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def mean(self, skipna, **kwargs):
if skipna:
size = self.count()
else:
size = self.length()
return self.sum(skipna=skipna, **kwargs) / size
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
@frame_base.populate_defaults(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
def var(self, axis, skipna, level, ddof, **kwargs):
if skipna is None or skipna:
self = self.dropna() # pylint: disable=self-cls-assignment
# See the online, numerically stable formulae at
# https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Parallel_algorithm
# and
# https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Welford's_online_algorithm
def compute_moments(x):
n = len(x)
m = x.std(ddof=0)**2 * n
s = x.sum()
return pd.DataFrame(dict(m=[m], s=[s], n=[n]))
def combine_moments(data):
m = s = n = 0.0
for datum in data.itertuples():
if datum.n == 0:
continue
elif n == 0:
m, s, n = datum.m, datum.s, datum.n
else:
delta = s / n - datum.s / datum.n
m += datum.m + delta**2 * n * datum.n / (n + datum.n)
s += datum.s
n += datum.n
if n <= ddof:
return float('nan')
else:
return m / (n - ddof)
moments = expressions.ComputedExpression(
'compute_moments',
compute_moments, [self._expr],
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_moments',
combine_moments, [moments],
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def corr(self, other, method, min_periods):
"""Only ``method='pearson'`` is currently parallelizable."""
if method == 'pearson': # Note that this is the default.
x, y = self.dropna().align(other.dropna(), 'inner')
return x._corr_aligned(y, min_periods)
else:
reason = (
f"Encountered corr(method={method!r}) which cannot be "
"parallelized. Only corr(method='pearson') is currently "
"parallelizable.")
# The rank-based correlations are not obviously parallelizable, though
# perhaps an approximation could be done with a knowledge of quantiles
# and custom partitioning.
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'corr',
lambda df,
other: df.corr(other, method=method, min_periods=min_periods),
[self._expr, other._expr],
requires_partition_by=partitionings.Singleton(reason=reason)))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
@frame_base.populate_defaults(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
def skew(self, axis, skipna, level, numeric_only, **kwargs):
if skipna is None or skipna:
self = self.dropna() # pylint: disable=self-cls-assignment
# See the online, numerically stable formulae at
# https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Higher-order_statistics
# Note that we are calculating the unbias (sample) version of skew here.
# See https://en.wikipedia.org/wiki/Skewness#Sample_skewness
# for more details.
def compute_moments(x):
n = len(x)
if n == 0:
m2, sum, m3 = 0, 0, 0
else:
m2 = x.std(ddof=0)**2 * n
sum = x.sum()
m3 = (((x - x.mean())**3).sum())
return pd.DataFrame(dict(m2=[m2], sum=[sum], n=[n], m3=[m3]))
def combine_moments(data):
m2 = sum = n = m3 = 0.0
for datum in data.itertuples():
if datum.n == 0:
continue
elif n == 0:
m2, sum, n, m3 = datum.m2, datum.sum, datum.n, datum.m3
else:
n_a, n_b = datum.n, n
sum_a, sum_b = datum.sum, sum
m2_a, m2_b = datum.m2, m2
mean_a, mean_b = sum_a / n_a, sum_b / n_b
delta = mean_b - mean_a
combined_n = n_a + n_b
m3 += datum.m3 + (
(delta**3 * ((n_a * n_b) * (n_a - n_b)) / ((combined_n)**2)) +
((3 * delta) * ((n_a * m2_b) - (n_b * m2_a)) / (combined_n)))
m2 += datum.m2 + delta**2 * n_b * n_a / combined_n
sum += datum.sum
n += datum.n
if n < 3:
return float('nan')
elif m2 == 0:
return float(0)
else:
return combined_n * math.sqrt(combined_n - 1) / (combined_n -
2) * m3 / (
m2**(3 / 2))
moments = expressions.ComputedExpression(
'compute_moments',
compute_moments, [self._expr],
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_moments',
combine_moments, [moments],
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
@frame_base.populate_defaults(
pd.Series, removed_args=["level"] if PD_VERSION >= (2, 0) else None)
def kurtosis(self, axis, skipna, level, numeric_only, **kwargs):
if skipna is None or skipna:
self = self.dropna() # pylint: disable=self-cls-assignment
# See the online, numerically stable formulae at
# https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Higher-order_statistics
# kurtosis here calculated as sample kurtosis
# https://en.wikipedia.org/wiki/Kurtosis#Sample_kurtosis
def compute_moments(x):
n = len(x)
if n == 0:
m2, sum, m3, m4 = 0, 0, 0, 0
else:
m2 = x.std(ddof=0)**2 * n
sum = x.sum()
m3 = (((x - x.mean())**3).sum())
m4 = (((x - x.mean())**4).sum())
return pd.DataFrame(dict(m2=[m2], sum=[sum], n=[n], m3=[m3], m4=[m4]))
def combine_moments(data):
m2 = sum = n = m3 = m4 = 0.0
for datum in data.itertuples():
if datum.n == 0:
continue
elif n == 0:
m2, sum, n, m3, m4 = datum.m2, datum.sum, datum.n, datum.m3, datum.m4
else:
n_a, n_b = datum.n, n
m2_a, m2_b = datum.m2, m2
m3_a, m3_b = datum.m3, m3
sum_a, sum_b = datum.sum, sum
mean_a, mean_b = sum_a / n_a, sum_b / n_b
delta = mean_b - mean_a
combined_n = n_a + n_b
m4 += datum.m4 + ((delta**4) * (n_a * n_b) * (
(n_a**2) - (n_a * n_b) +
(n_b**2)) / combined_n**3) + ((6 * delta**2) * ((n_a**2 * m2_b) +
(n_b**2 * m2_a)) /
(combined_n**2)) + ((4 * delta) *
((n_a * m3_b) -
(n_b * m3_a)) /
(combined_n))
m3 += datum.m3 + (
(delta**3 * ((n_a * n_b) * (n_a - n_b)) / ((combined_n)**2)) +
((3 * delta) * ((n_a * m2_b) - (n_b * m2_a)) / (combined_n)))
m2 += datum.m2 + delta**2 * n_b * n_a / combined_n
sum += datum.sum
n += datum.n
if n < 4:
return float('nan')
elif m2 == 0:
return float(0)
else:
return (((combined_n + 1) * (combined_n) * (combined_n - 1)) /
((combined_n - 2) *
(combined_n - 3))) * (m4 /
(m2)**2) - ((3 * (combined_n - 1)**2) /
((combined_n - 2) *
(combined_n - 3)))
moments = expressions.ComputedExpression(
'compute_moments',
compute_moments, [self._expr],
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_moments',
combine_moments, [moments],
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
def kurt(self, *args, **kwargs):
# Compute Kurtosis as kurt is an alias for kurtosis.
return self.kurtosis(*args, **kwargs)
def _corr_aligned(self, other, min_periods):
std_x = self.std()
std_y = other.std()
cov = self._cov_aligned(other, min_periods)
return cov.apply(
lambda cov, std_x, std_y: cov / (std_x * std_y), args=[std_x, std_y])
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def cov(self, other, min_periods, ddof):
x, y = self.dropna().align(other.dropna(), 'inner')
return x._cov_aligned(y, min_periods, ddof)
def _cov_aligned(self, other, min_periods, ddof=1):
# Use the formulae from
# https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Covariance
def compute_co_moments(x, y):
n = len(x)
if n <= 1:
c = 0
else:
c = x.cov(y) * (n - 1)
sx = x.sum()
sy = y.sum()
return pd.DataFrame(dict(c=[c], sx=[sx], sy=[sy], n=[n]))
def combine_co_moments(data):
c = sx = sy = n = 0.0
for datum in data.itertuples():
if datum.n == 0:
continue
elif n == 0:
c, sx, sy, n = datum.c, datum.sx, datum.sy, datum.n
else:
c += (
datum.c + (sx / n - datum.sx / datum.n) *
(sy / n - datum.sy / datum.n) * n * datum.n / (n + datum.n))
sx += datum.sx
sy += datum.sy
n += datum.n
if n < max(2, ddof, min_periods or 0):
return float('nan')
else:
return c / (n - ddof)
moments = expressions.ComputedExpression(
'compute_co_moments',
compute_co_moments, [self._expr, other._expr],
requires_partition_by=partitionings.Index())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine_co_moments',
combine_co_moments, [moments],
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
@frame_base.maybe_inplace
def dropna(self, **kwargs):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'dropna',
lambda df: df.dropna(**kwargs), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(
pd.Series, removed_args=['inplace'] if PD_VERSION >= (2, 0) else None)
@frame_base.maybe_inplace
def set_axis(self, labels, **kwargs):
# TODO: assigning the index is generally order-sensitive, but we could
# support it in some rare cases, e.g. when assigning the index from one
# of a DataFrame's columns
raise NotImplementedError(
"Assigning an index is not yet supported. "
"Consider using set_index() instead.")
isnull = isna = frame_base._elementwise_method('isna', base=pd.Series)
notnull = notna = frame_base._elementwise_method('notna', base=pd.Series)
items = frame_base.wont_implement_method(
pd.Series, 'items', reason="non-deferred-result")
iteritems = frame_base.wont_implement_method(
pd.Series, 'iteritems', reason="non-deferred-result")
tolist = frame_base.wont_implement_method(
pd.Series, 'tolist', reason="non-deferred-result")
to_numpy = frame_base.wont_implement_method(
pd.Series, 'to_numpy', reason="non-deferred-result")
to_string = frame_base.wont_implement_method(
pd.Series, 'to_string', reason="non-deferred-result")
def _wrap_in_df(self):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'wrap_in_df',
lambda s: pd.DataFrame(s),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary(),
))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
@frame_base.maybe_inplace
def duplicated(self, keep):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
# Re-use the DataFrame based duplcated, extract the series back out
df = self._wrap_in_df()
return df.duplicated(keep=keep)[df.columns[0]]
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
@frame_base.maybe_inplace
def drop_duplicates(self, keep):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
# Re-use the DataFrame based drop_duplicates, extract the series back out
df = self._wrap_in_df()
return df.drop_duplicates(keep=keep)[df.columns[0]]
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
@frame_base.maybe_inplace
def sample(self, **kwargs):
"""Only ``n`` and/or ``weights`` may be specified. ``frac``,
``random_state``, and ``replace=True`` are not yet supported.
See `Issue 21010 <https://github.com/apache/beam/issues/21010>`_.
Note that pandas will raise an error if ``n`` is larger than the length
of the dataset, while the Beam DataFrame API will simply return the full
dataset in that case."""
# Re-use the DataFrame based sample, extract the series back out
df = self._wrap_in_df()
return df.sample(**kwargs)[df.columns[0]]
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def aggregate(self, func, axis, *args, **kwargs):
"""Some aggregation methods cannot be parallelized, and computing
them will require collecting all data on a single machine."""
if kwargs.get('skipna', False):
# Eagerly generate a proxy to make sure skipna is a valid argument
# for this aggregation method
_ = self._expr.proxy().aggregate(func, axis, *args, **kwargs)
kwargs.pop('skipna')
return self.dropna().aggregate(func, axis, *args, **kwargs)
if isinstance(func, list) and len(func) > 1:
# level arg is ignored for multiple aggregations
_ = kwargs.pop('level', None)
# Aggregate with each method separately, then stick them all together.
rows = [self.agg([f], *args, **kwargs) for f in func]
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'join_aggregate',
lambda *rows: pd.concat(rows), [row._expr for row in rows]))
else:
# We're only handling a single column. It could be 'func' or ['func'],
# which produce different results. 'func' produces a scalar, ['func']
# produces a single element Series.
base_func = func[0] if isinstance(func, list) else func
if (_is_numeric(base_func) and
not pd.core.dtypes.common.is_numeric_dtype(self.dtype)):
warnings.warn(
f"Performing a numeric aggregation, {base_func!r}, on "
f"Series {self._expr.proxy().name!r} with non-numeric type "
f"{self.dtype!r}. This can result in runtime errors or surprising "
"results.")
if 'level' in kwargs:
# Defer to groupby.agg for level= mode
return self.groupby(
level=kwargs.pop('level'), axis=axis).agg(func, *args, **kwargs)
singleton_reason = None
if 'min_count' in kwargs:
# Eagerly generate a proxy to make sure min_count is a valid argument
# for this aggregation method
_ = self._expr.proxy().agg(func, axis, *args, **kwargs)
singleton_reason = (
"Aggregation with min_count= requires collecting all data on a "
"single node.")
# We have specialized distributed implementations for these
if base_func in HAND_IMPLEMENTED_GLOBAL_AGGREGATIONS:
result = getattr(self, base_func)(*args, **kwargs)
if isinstance(func, list):
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
f'wrap_aggregate_{base_func}',
lambda x: pd.Series(x, index=[base_func]), [result._expr],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
else:
return result
agg_kwargs = kwargs.copy()
if ((_is_associative(base_func) or _is_liftable_with_sum(base_func)) and
singleton_reason is None):
intermediate = expressions.ComputedExpression(
f'pre_aggregate_{base_func}',
# Coerce to a Series, if the result is scalar we still want a Series
# so we can combine and do the final aggregation next.
lambda s: pd.Series(s.agg(func, *args, **kwargs)),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
allow_nonparallel_final = True
if _is_associative(base_func):
agg_func = func
else:
agg_func = ['sum'] if isinstance(func, list) else 'sum'
else:
intermediate = self._expr
allow_nonparallel_final = None # i.e. don't change the value
agg_func = func
singleton_reason = (
f"Aggregation function {func!r} cannot currently be "
"parallelized. It requires collecting all data for "
"this Series on a single node.")
with expressions.allow_non_parallel_operations(allow_nonparallel_final):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
f'post_aggregate_{base_func}',
lambda s: s.agg(agg_func, *args, **agg_kwargs), [intermediate],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Singleton(
reason=singleton_reason)))
agg = aggregate
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def axes(self):
return [self.index]
clip = frame_base._elementwise_method('clip', base=pd.Series)
all = _agg_method(pd.Series, 'all')
any = _agg_method(pd.Series, 'any')
# TODO(BEAM-12074): Document that Series.count(level=) will drop NaN's
count = _agg_method(pd.Series, 'count')
describe = _agg_method(pd.Series, 'describe')
min = _agg_method(pd.Series, 'min')
max = _agg_method(pd.Series, 'max')
prod = product = _agg_method(pd.Series, 'prod')
sum = _agg_method(pd.Series, 'sum')
median = _agg_method(pd.Series, 'median')
sem = _agg_method(pd.Series, 'sem')
# mad was removed in Pandas 2.0.
if PD_VERSION < (2, 0):
mad = _agg_method(pd.Series, 'mad')
argmax = frame_base.wont_implement_method(
pd.Series, 'argmax', reason='order-sensitive')
argmin = frame_base.wont_implement_method(
pd.Series, 'argmin', reason='order-sensitive')
cummax = frame_base.wont_implement_method(
pd.Series, 'cummax', reason='order-sensitive')
cummin = frame_base.wont_implement_method(
pd.Series, 'cummin', reason='order-sensitive')
cumprod = frame_base.wont_implement_method(
pd.Series, 'cumprod', reason='order-sensitive')
cumsum = frame_base.wont_implement_method(
pd.Series, 'cumsum', reason='order-sensitive')
diff = frame_base.wont_implement_method(
pd.Series, 'diff', reason='order-sensitive')
interpolate = frame_base.wont_implement_method(
pd.Series, 'interpolate', reason='order-sensitive')
searchsorted = frame_base.wont_implement_method(
pd.Series, 'searchsorted', reason='order-sensitive')
shift = frame_base.wont_implement_method(
pd.Series, 'shift', reason='order-sensitive')
pct_change = frame_base.wont_implement_method(
pd.Series, 'pct_change', reason='order-sensitive')
is_monotonic = frame_base.wont_implement_method(
pd.Series, 'is_monotonic', reason='order-sensitive')
is_monotonic_increasing = frame_base.wont_implement_method(
pd.Series, 'is_monotonic_increasing', reason='order-sensitive')
is_monotonic_decreasing = frame_base.wont_implement_method(
pd.Series, 'is_monotonic_decreasing', reason='order-sensitive')
asof = frame_base.wont_implement_method(
pd.Series, 'asof', reason='order-sensitive')
first_valid_index = frame_base.wont_implement_method(
pd.Series, 'first_valid_index', reason='order-sensitive')
last_valid_index = frame_base.wont_implement_method(
pd.Series, 'last_valid_index', reason='order-sensitive')
autocorr = frame_base.wont_implement_method(
pd.Series, 'autocorr', reason='order-sensitive')
iat = property(
frame_base.wont_implement_method(
pd.Series, 'iat', reason='order-sensitive'))
head = frame_base.wont_implement_method(
pd.Series, 'head', explanation=_PEEK_METHOD_EXPLANATION)
tail = frame_base.wont_implement_method(
pd.Series, 'tail', explanation=_PEEK_METHOD_EXPLANATION)
filter = frame_base._elementwise_method('filter', base=pd.Series)
memory_usage = frame_base.wont_implement_method(
pd.Series, 'memory_usage', reason="non-deferred-result")
nbytes = frame_base.wont_implement_method(
pd.Series, 'nbytes', reason="non-deferred-result")
to_list = frame_base.wont_implement_method(
pd.Series, 'to_list', reason="non-deferred-result")
factorize = frame_base.wont_implement_method(
pd.Series, 'factorize', reason="non-deferred-columns")
# In Series __contains__ checks the index
__contains__ = frame_base.wont_implement_method(
pd.Series, '__contains__', reason="non-deferred-result")
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def nlargest(self, keep, **kwargs):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
# TODO(robertwb): Document 'any' option.
# TODO(robertwb): Consider (conditionally) defaulting to 'any' if no
# explicit keep parameter is requested.
if keep == 'any':
keep = 'first'
elif keep != 'all':
raise frame_base.WontImplementError(
f"nlargest(keep={keep!r}) is not supported because it is "
"order sensitive. Only keep=\"all\" is supported.",
reason="order-sensitive")
kwargs['keep'] = keep
per_partition = expressions.ComputedExpression(
'nlargest-per-partition',
lambda df: df.nlargest(**kwargs), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'nlargest',
lambda df: df.nlargest(**kwargs), [per_partition],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def nsmallest(self, keep, **kwargs):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
if keep == 'any':
keep = 'first'
elif keep != 'all':
raise frame_base.WontImplementError(
f"nsmallest(keep={keep!r}) is not supported because it is "
"order sensitive. Only keep=\"all\" is supported.",
reason="order-sensitive")
kwargs['keep'] = keep
per_partition = expressions.ComputedExpression(
'nsmallest-per-partition',
lambda df: df.nsmallest(**kwargs), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'nsmallest',
lambda df: df.nsmallest(**kwargs), [per_partition],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Singleton()))
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def is_unique(self):
def set_index(s):
s = s[:]
s.index = s
return s
self_index = expressions.ComputedExpression(
'set_index',
set_index, [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
is_unique_distributed = expressions.ComputedExpression(
'is_unique_distributed',
lambda s: pd.Series(s.is_unique), [self_index],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Singleton())
with expressions.allow_non_parallel_operations():
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'combine',
lambda s: s.all(), [is_unique_distributed],
requires_partition_by=partitionings.Singleton(),
preserves_partition_by=partitionings.Singleton()))
plot = frame_base.wont_implement_method(
pd.Series, 'plot', reason="plotting-tools")
pop = frame_base.wont_implement_method(
pd.Series, 'pop', reason="non-deferred-result")
rename_axis = frame_base._elementwise_method('rename_axis', base=pd.Series)
round = frame_base._elementwise_method('round', base=pd.Series)
take = frame_base.wont_implement_method(
pd.Series, 'take', reason='deprecated')
to_dict = frame_base.wont_implement_method(
pd.Series, 'to_dict', reason="non-deferred-result")
to_frame = frame_base._elementwise_method('to_frame', base=pd.Series)
[docs] @frame_base.with_docs_from(pd.Series)
def unique(self, as_series=False):
"""unique is not supported by default because it produces a
non-deferred result: an :class:`~numpy.ndarray`. You can use the
Beam-specific argument ``unique(as_series=True)`` to get the result as
a :class:`DeferredSeries`"""
if not as_series:
raise frame_base.WontImplementError(
"unique() is not supported by default because it produces a "
"non-deferred result: a numpy array. You can use the Beam-specific "
"argument unique(as_series=True) to get the result as a "
"DeferredSeries",
reason="non-deferred-result")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'unique',
lambda df: pd.Series(df.unique()), [self._expr],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Singleton(
reason="unique() cannot currently be parallelized.")))
[docs] @frame_base.with_docs_from(pd.Series)
def update(self, other):
self._expr = expressions.ComputedExpression(
'update',
lambda df,
other: df.update(other) or df, [self._expr, other._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Index())
[docs] @frame_base.with_docs_from(pd.Series)
def value_counts(
self,
sort=False,
normalize=False,
ascending=False,
bins=None,
dropna=True):
"""``sort`` is ``False`` by default, and ``sort=True`` is not supported
because it imposes an ordering on the dataset which likely will not be
preserved.
When ``bin`` is specified this operation is not parallelizable. See
[Issue 20903](https://github.com/apache/beam/issues/20903) tracking the
possible addition of a distributed implementation."""
if sort:
raise frame_base.WontImplementError(
"value_counts(sort=True) is not supported because it imposes an "
"ordering on the dataset which likely will not be preserved.",
reason="order-sensitive")
if bins is not None:
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'value_counts',
lambda s: s.value_counts(
normalize=normalize, bins=bins, dropna=dropna)[self._expr],
requires_partition_by=partitionings.Singleton(
reason=(
"value_counts with bin specified requires collecting "
"the entire dataset to identify the range.")),
preserves_partition_by=partitionings.Singleton(),
))
if dropna:
column = self.dropna()
else:
column = self
result = column.groupby(column, dropna=dropna).size()
# Pandas 2 introduces new naming for the results.
if PD_VERSION >= (2, 0):
result.index.name = getattr(self, "name", None)
result.name = "proportion" if normalize else "count"
else:
# groupby.size() names the index, which we don't need
result.index.name = None
if normalize:
return result / column.length()
else:
return result
values = property(
frame_base.wont_implement_method(
pd.Series, 'values', reason="non-deferred-result"))
view = frame_base.wont_implement_method(
pd.Series,
'view',
explanation=(
"because it relies on memory-sharing semantics that are "
"not compatible with the Beam model."))
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def str(self):
return _DeferredStringMethods(self._expr)
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def cat(self):
return _DeferredCategoricalMethods(self._expr)
@property # type: ignore
@frame_base.with_docs_from(pd.Series)
def dt(self):
return _DeferredDatetimeMethods(self._expr)
[docs] @frame_base.with_docs_from(pd.Series)
def mode(self, *args, **kwargs):
"""mode is not currently parallelizable. An approximate,
parallelizable implementation of mode may be added in the future
(`Issue 20946 <https://github.com/apache/beam/issues/20946>`_)."""
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'mode',
lambda df: df.mode(*args, **kwargs),
[self._expr],
#TODO(https://github.com/apache/beam/issues/20946):
# Can we add an approximate implementation?
requires_partition_by=partitionings.Singleton(
reason=(
"mode cannot currently be parallelized. See "
"https://github.com/apache/beam/issues/20946 tracking the "
"possble addition of an approximate, parallelizable "
"implementation of mode.")),
preserves_partition_by=partitionings.Singleton()))
apply = frame_base._elementwise_method('apply', base=pd.Series)
map = frame_base._elementwise_method('map', base=pd.Series)
# TODO(https://github.com/apache/beam/issues/20764): Implement transform
# using type inference to determine the proxy
#transform = frame_base._elementwise_method('transform', base=pd.Series)
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def repeat(self, repeats, axis):
"""``repeats`` must be an ``int`` or a :class:`DeferredSeries`. Lists are
not supported because they make this operation order-sensitive."""
if isinstance(repeats, int):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'repeat',
lambda series: series.repeat(repeats), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
elif isinstance(repeats, frame_base.DeferredBase):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'repeat',
lambda series,
repeats_series: series.repeat(repeats_series),
[self._expr, repeats._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
elif isinstance(repeats, list):
raise frame_base.WontImplementError(
"repeat(repeats=) repeats must be an int or a DeferredSeries. "
"Lists are not supported because they make this operation sensitive "
"to the order of the data.",
reason="order-sensitive")
else:
raise TypeError(
"repeat(repeats=) value must be an int or a "
f"DeferredSeries (encountered {type(repeats)}).")
if hasattr(pd.Series, 'compare'):
[docs] @frame_base.with_docs_from(pd.Series)
@frame_base.args_to_kwargs(pd.Series)
@frame_base.populate_defaults(pd.Series)
def compare(self, other, align_axis, **kwargs):
if align_axis in ('index', 0):
preserves_partition = partitionings.Singleton()
elif align_axis in ('columns', 1):
preserves_partition = partitionings.Arbitrary()
else:
raise ValueError(
"align_axis must be one of ('index', 0, 'columns', 1). "
f"got {align_axis!r}.")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'compare',
lambda s,
other: s.compare(other, align_axis, **kwargs),
[self._expr, other._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=preserves_partition))
[docs]@populate_not_implemented(pd.DataFrame)
@frame_base.DeferredFrame._register_for(pd.DataFrame)
class DeferredDataFrame(DeferredDataFrameOrSeries):
def __repr__(self):
return (
f'DeferredDataFrame(columns={list(self.columns)}, '
f'{self._render_indexes()})')
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def columns(self):
return self._expr.proxy().columns
@columns.setter
def columns(self, columns):
def set_columns(df):
df = df.copy()
df.columns = columns
return df
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'set_columns',
set_columns, [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
def keys(self):
return self.columns
def __getattr__(self, name):
# Column attribute access.
if name in self._expr.proxy().columns:
return self[name]
else:
return object.__getattribute__(self, name)
def __getitem__(self, key):
# TODO: Replicate pd.DataFrame.__getitem__ logic
if isinstance(key, DeferredSeries) and key._expr.proxy().dtype == bool:
return self.loc[key]
elif isinstance(key, frame_base.DeferredBase):
# Fail early if key is a DeferredBase as it interacts surprisingly with
# key in self._expr.proxy().columns
raise NotImplementedError(
"Indexing with a non-bool deferred frame is not yet supported. "
"Consider using df.loc[...]")
elif isinstance(key, slice):
if _is_null_slice(key):
return self
elif _is_integer_slice(key):
# This depends on the contents of the index.
raise frame_base.WontImplementError(
"Integer slices are not supported as they are ambiguous. Please "
"use iloc or loc with integer slices.")
else:
return self.loc[key]
elif (
(isinstance(key, list) and all(key_column in self._expr.proxy().columns
for key_column in key)) or
key in self._expr.proxy().columns):
return self._elementwise(lambda df: df[key], 'get_column')
else:
raise NotImplementedError(key)
def __contains__(self, key):
# Checks if proxy has the given column
return self._expr.proxy().__contains__(key)
def __setitem__(self, key, value):
if isinstance(
key, str) or (isinstance(key, list) and
all(isinstance(c, str)
for c in key)) or (isinstance(key, DeferredSeries) and
key._expr.proxy().dtype == bool):
# yapf: disable
return self._elementwise(
lambda df, key, value: df.__setitem__(key, value),
'set_column',
(key, value),
inplace=True)
else:
raise NotImplementedError(key)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def align(self, other, join, axis, copy, level, method, **kwargs):
"""Aligning per level is not yet supported. Only the default,
``level=None``, is allowed.
Filling NaN values via ``method`` is not supported, because it is
`order-sensitive
<https://s.apache.org/dataframe-order-sensitive-operations>`_. Only the
default, ``method=None``, is allowed.
``copy=False`` is not supported because its behavior (whether or not it is
an inplace operation) depends on the data."""
if not copy:
raise frame_base.WontImplementError(
"align(copy=False) is not supported because it might be an inplace "
"operation depending on the data. Please prefer the default "
"align(copy=True).")
if method is not None:
raise frame_base.WontImplementError(
f"align(method={method!r}) is not supported because it is "
"order sensitive. Only align(method=None) is supported.",
reason="order-sensitive")
if kwargs:
raise NotImplementedError('align(%s)' % ', '.join(kwargs.keys()))
# In Pandas 2.0, all aggregations lost the level keyword.
if PD_VERSION < (2, 0) and level is not None:
# Could probably get by partitioning on the used levels.
requires_partition_by = partitionings.Singleton(reason=(
f"align(level={level}) is not currently parallelizable. Only "
"align(level=None) can be parallelized."))
elif axis in ('columns', 1):
requires_partition_by = partitionings.Arbitrary()
else:
requires_partition_by = partitionings.Index()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'align',
lambda df, other: df.align(other, join=join, axis=axis),
[self._expr, other._expr],
requires_partition_by=requires_partition_by,
preserves_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.DataFrame, removed_method=PD_VERSION >= (2, 0))
@frame_base.args_to_kwargs(pd.DataFrame, removed_method=PD_VERSION >= (2, 0))
@frame_base.populate_defaults(pd.DataFrame,
removed_method=PD_VERSION >= (2, 0))
def append(self, other, ignore_index, verify_integrity, sort, **kwargs):
"""``ignore_index=True`` is not supported, because it requires generating an
order-sensitive index."""
if PD_VERSION >= (2, 0):
raise frame_base.WontImplementError('append() was removed in Pandas 2.0.')
if not isinstance(other, DeferredDataFrame):
raise frame_base.WontImplementError(
"append() only accepts DeferredDataFrame instances, received " +
str(type(other)))
if ignore_index:
raise frame_base.WontImplementError(
"append(ignore_index=True) is order sensitive because it requires "
"generating a new index based on the order of the data.",
reason="order-sensitive")
if verify_integrity:
# We can verify the index is non-unique within index partitioned data.
requires = partitionings.Index()
else:
requires = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'append',
lambda s, other: s.append(other, sort=sort,
verify_integrity=verify_integrity,
**kwargs),
[self._expr, other._expr],
requires_partition_by=requires,
preserves_partition_by=partitionings.Arbitrary()
)
)
# If column name exists this is a simple project, otherwise it is a constant
# (default_value)
[docs] @frame_base.with_docs_from(pd.DataFrame)
def get(self, key, default_value=None):
if key in self.columns:
return self[key]
else:
return default_value
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def set_index(self, keys, **kwargs):
"""``keys`` must be a ``str`` or ``List[str]``. Passing an Index or Series
is not yet supported (`Issue 20759
<https://github.com/apache/beam/issues/20759>`_)."""
if isinstance(keys, str):
keys = [keys]
if any(isinstance(k, (_DeferredIndex, frame_base.DeferredFrame))
for k in keys):
raise NotImplementedError("set_index with Index or Series instances is "
"not yet supported "
"(https://github.com/apache/beam/issues/20759)"
".")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'set_index',
lambda df: df.set_index(keys, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(
pd.DataFrame,
removed_args=['inplace'] if PD_VERSION >= (2, 0) else None)
@frame_base.maybe_inplace
def set_axis(self, labels, axis, **kwargs):
if axis in ('index', 0):
# TODO: assigning the index is generally order-sensitive, but we could
# support it in some rare cases, e.g. when assigning the index from one
# of a DataFrame's columns
raise NotImplementedError(
"Assigning an index is not yet supported. "
"Consider using set_index() instead.")
else:
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'set_axis',
lambda df: df.set_axis(labels, axis=axis, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def axes(self):
return (self.index, self.columns)
@property # type: ignore
@frame_base.with_docs_from(pd.DataFrame)
def dtypes(self):
return self._expr.proxy().dtypes
[docs] @frame_base.with_docs_from(pd.DataFrame)
def assign(self, **kwargs):
"""``value`` must be a ``callable`` or :class:`DeferredSeries`. Other types
make this operation order-sensitive."""
for name, value in kwargs.items():
if not callable(value) and not isinstance(value, DeferredSeries):
raise frame_base.WontImplementError(
f"Unsupported value for new column '{name}': '{value}'. Only "
"callables and DeferredSeries instances are supported. Other types "
"make this operation sensitive to the order of the data",
reason="order-sensitive")
return self._elementwise(
lambda df, *args, **kwargs: df.assign(*args, **kwargs),
'assign',
other_kwargs=kwargs)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def explode(self, column, ignore_index):
# ignoring the index will not preserve it
preserves = (partitionings.Singleton() if ignore_index
else partitionings.Index())
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'explode',
lambda df: df.explode(column, ignore_index),
[self._expr],
preserves_partition_by=preserves,
requires_partition_by=partitionings.Arbitrary()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def insert(self, value, **kwargs):
"""``value`` cannot be a ``List`` because aligning it with this
DeferredDataFrame is order-sensitive."""
if isinstance(value, list):
raise frame_base.WontImplementError(
"insert(value=list) is not supported because it joins the input "
"list to the deferred DataFrame based on the order of the data.",
reason="order-sensitive")
if isinstance(value, pd.core.generic.NDFrame):
value = frame_base.DeferredFrame.wrap(
expressions.ConstantExpression(value))
if isinstance(value, frame_base.DeferredFrame):
def func_zip(df, value):
df = df.copy()
df.insert(value=value, **kwargs)
return df
inserted = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'insert',
func_zip,
[self._expr, value._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
else:
def func_elementwise(df):
df = df.copy()
df.insert(value=value, **kwargs)
return df
inserted = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'insert',
func_elementwise,
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
self._expr = inserted._expr
[docs] @staticmethod
@frame_base.with_docs_from(pd.DataFrame)
def from_dict(*args, **kwargs):
return frame_base.DeferredFrame.wrap(
expressions.ConstantExpression(pd.DataFrame.from_dict(*args, **kwargs)))
[docs] @staticmethod
@frame_base.with_docs_from(pd.DataFrame)
def from_records(*args, **kwargs):
return frame_base.DeferredFrame.wrap(
expressions.ConstantExpression(pd.DataFrame.from_records(*args,
**kwargs)))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def duplicated(self, keep, subset):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
# TODO(BEAM-12074): Document keep="any"
if keep == 'any':
keep = 'first'
elif keep is not False:
raise frame_base.WontImplementError(
f"duplicated(keep={keep!r}) is not supported because it is "
"sensitive to the order of the data. Only keep=False and "
"keep=\"any\" are supported.",
reason="order-sensitive")
by = subset or list(self.columns)
return self.groupby(by).apply(
lambda df: pd.DataFrame(df.duplicated(keep=keep, subset=subset),
columns=[None]))[None].droplevel(by)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def drop_duplicates(self, keep, subset, ignore_index):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
# TODO(BEAM-12074): Document keep="any"
if keep == 'any':
keep = 'first'
elif keep is not False:
raise frame_base.WontImplementError(
f"drop_duplicates(keep={keep!r}) is not supported because it is "
"sensitive to the order of the data. Only keep=False and "
"keep=\"any\" are supported.",
reason="order-sensitive")
if ignore_index is not False:
raise frame_base.WontImplementError(
"drop_duplicates(ignore_index=False) is not supported because it "
"requires generating a new index that is sensitive to the order of "
"the data.",
reason="order-sensitive")
by = subset or list(self.columns)
return self.groupby(by).apply(
lambda df: df.drop_duplicates(keep=keep, subset=subset)).droplevel(by)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def aggregate(self, func, axis, *args, **kwargs):
# We have specialized implementations for these.
if func in ('quantile',):
return getattr(self, func)(*args, axis=axis, **kwargs)
# In pandas<1.3.0, maps to a property, args are ignored
if func in ('size',) and PD_VERSION < (1, 3):
return getattr(self, func)
# We also have specialized distributed implementations for these. They only
# support axis=0 (implicitly) though. axis=1 should fall through
if func in ('corr', 'cov') and axis in (0, 'index'):
return getattr(self, func)(*args, **kwargs)
if axis is None:
# Aggregate across all elements by first aggregating across columns,
# then across rows.
return self.agg(func, *args, **dict(kwargs, axis=1)).agg(
func, *args, **dict(kwargs, axis=0))
elif axis in (1, 'columns'):
# This is an easy elementwise aggregation.
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'aggregate',
lambda df: df.agg(func, axis=1, *args, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary()))
elif len(self._expr.proxy().columns) == 0:
# For this corner case, just colocate everything.
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'aggregate',
lambda df: df.agg(func, *args, **kwargs),
[self._expr],
requires_partition_by=partitionings.Singleton()))
else:
# In the general case, we will compute the aggregation of each column
# separately, then recombine.
# First, handle any kwargs that cause a projection, by eagerly generating
# the proxy, and only including the columns that are in the output.
PROJECT_KWARGS = ('numeric_only', 'bool_only', 'include', 'exclude')
proxy = self._expr.proxy().agg(func, axis, *args, **kwargs)
if isinstance(proxy, pd.DataFrame):
projected = self[list(proxy.columns)]
elif isinstance(proxy, pd.Series):
projected = self[list(proxy.index)]
else:
projected = self
nonnumeric_columns = [name for (name, dtype) in projected.dtypes.items()
if not
pd.core.dtypes.common.is_numeric_dtype(dtype)]
if _is_numeric(func) and nonnumeric_columns:
if 'numeric_only' in kwargs and kwargs['numeric_only'] is False:
# User has opted in to execution with non-numeric columns, they
# will accept runtime errors
pass
else:
raise frame_base.WontImplementError(
f"Numeric aggregation ({func!r}) on a DataFrame containing "
f"non-numeric columns ({*nonnumeric_columns,!r} is not "
"supported, unless `numeric_only=` is specified.\n"
"Use `numeric_only=True` to only aggregate over numeric "
"columns.\nUse `numeric_only=False` to aggregate over all "
"columns. Note this is not recommended, as it could result in "
"execution time errors.")
for key in PROJECT_KWARGS:
if key in kwargs:
kwargs.pop(key)
if not isinstance(func, dict):
col_names = list(projected._expr.proxy().columns)
func_by_col = {col: func for col in col_names}
else:
func_by_col = func
col_names = list(func.keys())
aggregated_cols = []
has_lists = any(isinstance(f, list) for f in func_by_col.values())
for col in col_names:
funcs = func_by_col[col]
if has_lists and not isinstance(funcs, list):
# If any of the columns do multiple aggregations, they all must use
# "list" style output
funcs = [funcs]
aggregated_cols.append(projected[col].agg(funcs, *args, **kwargs))
# The final shape is different depending on whether any of the columns
# were aggregated by a list of aggregators.
with expressions.allow_non_parallel_operations():
if isinstance(proxy, pd.Series):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'join_aggregate',
lambda *cols: pd.Series(
{col: value for col, value in zip(col_names, cols)}),
[col._expr for col in aggregated_cols],
requires_partition_by=partitionings.Singleton()))
elif isinstance(proxy, pd.DataFrame):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'join_aggregate',
lambda *cols: pd.DataFrame(
{col: value for col, value in zip(col_names, cols)}),
[col._expr for col in aggregated_cols],
requires_partition_by=partitionings.Singleton()))
else:
raise AssertionError("Unexpected proxy type for "
f"DataFrame.aggregate!: proxy={proxy!r}, "
f"type(proxy)={type(proxy)!r}")
agg = aggregate
applymap = frame_base._elementwise_method('applymap', base=pd.DataFrame)
add_prefix = frame_base._elementwise_method('add_prefix', base=pd.DataFrame)
add_suffix = frame_base._elementwise_method('add_suffix', base=pd.DataFrame)
memory_usage = frame_base.wont_implement_method(
pd.DataFrame, 'memory_usage', reason="non-deferred-result")
info = frame_base.wont_implement_method(
pd.DataFrame, 'info', reason="non-deferred-result")
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def clip(self, axis, **kwargs):
"""``lower`` and ``upper`` must be :class:`DeferredSeries` instances, or
constants. Array-like arguments are not supported because they are
order-sensitive."""
if any(isinstance(kwargs.get(arg, None), frame_base.DeferredFrame)
for arg in ('upper', 'lower')) and axis not in (0, 'index'):
raise frame_base.WontImplementError(
"axis must be 'index' when upper and/or lower are a DeferredFrame",
reason='order-sensitive')
return frame_base._elementwise_method('clip', base=pd.DataFrame)(self,
axis=axis,
**kwargs)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def corr(self, method, min_periods):
"""Only ``method="pearson"`` can be parallelized. Other methods require
collecting all data on a single worker (see
https://s.apache.org/dataframe-non-parallel-operations for details).
"""
if method == 'pearson':
proxy = self._expr.proxy().corr()
columns = list(proxy.columns)
args = []
arg_indices = []
for col1, col2 in itertools.combinations(columns, 2):
arg_indices.append((col1, col2))
args.append(self[col1].corr(self[col2], method=method,
min_periods=min_periods))
def fill_matrix(*args):
data = collections.defaultdict(dict)
for col in columns:
data[col][col] = 1.0
for ix, (col1, col2) in enumerate(arg_indices):
data[col1][col2] = data[col2][col1] = args[ix]
return pd.DataFrame(data, columns=columns, index=columns)
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'fill_matrix',
fill_matrix,
[arg._expr for arg in args],
requires_partition_by=partitionings.Singleton(),
proxy=proxy))
else:
reason = (f"Encountered corr(method={method!r}) which cannot be "
"parallelized. Only corr(method='pearson') is currently "
"parallelizable.")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'corr',
lambda df: df.corr(method=method, min_periods=min_periods),
[self._expr],
requires_partition_by=partitionings.Singleton(reason=reason)))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def cov(self, min_periods, ddof):
proxy = self._expr.proxy().corr()
columns = list(proxy.columns)
args = []
arg_indices = []
for col in columns:
arg_indices.append((col, col))
std = self[col].std(ddof)
args.append(std.apply(lambda x: x*x, 'square'))
for ix, col1 in enumerate(columns):
for col2 in columns[ix+1:]:
arg_indices.append((col1, col2))
# Note that this set may be different for each pair.
no_na = self.loc[self[col1].notna() & self[col2].notna()]
args.append(no_na[col1]._cov_aligned(no_na[col2], min_periods, ddof))
def fill_matrix(*args):
data = collections.defaultdict(dict)
for ix, (col1, col2) in enumerate(arg_indices):
data[col1][col2] = data[col2][col1] = args[ix]
return pd.DataFrame(data, columns=columns, index=columns)
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'fill_matrix',
fill_matrix,
[arg._expr for arg in args],
requires_partition_by=partitionings.Singleton(),
proxy=proxy))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def corrwith(self, other, axis, drop, method):
if axis in (1, 'columns'):
return self._elementwise(
lambda df, other: df.corrwith(other, axis=axis, drop=drop,
method=method),
'corrwith',
other_args=(other,))
if not isinstance(other, frame_base.DeferredFrame):
other = frame_base.DeferredFrame.wrap(
expressions.ConstantExpression(other))
if isinstance(other, DeferredSeries):
proxy = self._expr.proxy().corrwith(other._expr.proxy(), axis=axis,
drop=drop, method=method)
self, other = self.align(other, axis=0, join='inner')
col_names = proxy.index
other_cols = [other] * len(col_names)
elif isinstance(other, DeferredDataFrame):
proxy = self._expr.proxy().corrwith(
other._expr.proxy(), axis=axis, method=method, drop=drop)
self, other = self.align(other, axis=0, join='inner')
col_names = list(
set(self.columns)
.intersection(other.columns)
.intersection(proxy.index))
other_cols = [other[col_name] for col_name in col_names]
else:
# Raise the right error.
self._expr.proxy().corrwith(other._expr.proxy(), axis=axis, drop=drop,
method=method)
# Just in case something else becomes valid.
raise NotImplementedError('corrwith(%s)' % type(other._expr.proxy))
# Generate expressions to compute the actual correlations.
corrs = [
self[col_name].corr(other_col, method)
for col_name, other_col in zip(col_names, other_cols)]
# Combine the results
def fill_dataframe(*args):
result = proxy.copy(deep=True)
for col, value in zip(proxy.index, args):
result[col] = value
return result
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'fill_dataframe',
fill_dataframe,
[corr._expr for corr in corrs],
requires_partition_by=partitionings.Singleton(),
proxy=proxy))
cummax = frame_base.wont_implement_method(pd.DataFrame, 'cummax',
reason='order-sensitive')
cummin = frame_base.wont_implement_method(pd.DataFrame, 'cummin',
reason='order-sensitive')
cumprod = frame_base.wont_implement_method(pd.DataFrame, 'cumprod',
reason='order-sensitive')
cumsum = frame_base.wont_implement_method(pd.DataFrame, 'cumsum',
reason='order-sensitive')
# TODO(BEAM-12071): Consider adding an order-insensitive implementation for
# diff that relies on the index
diff = frame_base.wont_implement_method(pd.DataFrame, 'diff',
reason='order-sensitive')
interpolate = frame_base.wont_implement_method(pd.DataFrame, 'interpolate',
reason='order-sensitive')
pct_change = frame_base.wont_implement_method(
pd.DataFrame, 'pct_change', reason='order-sensitive')
asof = frame_base.wont_implement_method(
pd.DataFrame, 'asof', reason='order-sensitive')
first_valid_index = frame_base.wont_implement_method(
pd.DataFrame, 'first_valid_index', reason='order-sensitive')
last_valid_index = frame_base.wont_implement_method(
pd.DataFrame, 'last_valid_index', reason='order-sensitive')
iat = property(frame_base.wont_implement_method(
pd.DataFrame, 'iat', reason='order-sensitive'))
lookup = frame_base.wont_implement_method(
pd.DataFrame, 'lookup', reason='deprecated')
head = frame_base.wont_implement_method(pd.DataFrame, 'head',
explanation=_PEEK_METHOD_EXPLANATION)
tail = frame_base.wont_implement_method(pd.DataFrame, 'tail',
explanation=_PEEK_METHOD_EXPLANATION)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def sample(self, n, frac, replace, weights, random_state, axis):
"""When ``axis='index'``, only ``n`` and/or ``weights`` may be specified.
``frac``, ``random_state``, and ``replace=True`` are not yet supported.
See `Issue 21010 <https://github.com/apache/beam/issues/21010>`_.
Note that pandas will raise an error if ``n`` is larger than the length
of the dataset, while the Beam DataFrame API will simply return the full
dataset in that case.
sample is fully supported for axis='columns'."""
if axis in (1, 'columns'):
# Sampling on axis=columns just means projecting random columns
# Eagerly generate proxy to determine the set of columns at construction
# time
proxy = self._expr.proxy().sample(n=n, frac=frac, replace=replace,
weights=weights,
random_state=random_state, axis=axis)
# Then do the projection
return self[list(proxy.columns)]
# axis='index'
if frac is not None or random_state is not None or replace:
raise NotImplementedError(
f"When axis={axis!r}, only n and/or weights may be specified. "
"frac, random_state, and replace=True are not yet supported "
f"(got frac={frac!r}, random_state={random_state!r}, "
f"replace={replace!r}). See "
"https://github.com/apache/beam/issues/21010.")
if n is None:
n = 1
if isinstance(weights, str):
weights = self[weights]
tmp_weight_column_name = "___Beam_DataFrame_weights___"
if weights is None:
self_with_randomized_weights = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'randomized_weights',
lambda df: df.assign(**{tmp_weight_column_name:
np.random.rand(len(df))}),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
else:
# See "Fast Parallel Weighted Random Sampling" by Efraimidis and Spirakis
# https://www.cti.gr/images_gr/reports/99-06-02.ps
def assign_randomized_weights(df, weights):
non_zero_weights = (weights > 0) | pd.Series(dtype=bool, index=df.index)
df = df.loc[non_zero_weights]
weights = weights.loc[non_zero_weights]
random_weights = np.log(np.random.rand(len(weights))) / weights
return df.assign(**{tmp_weight_column_name: random_weights})
self_with_randomized_weights = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'randomized_weights',
assign_randomized_weights,
[self._expr, weights._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
return self_with_randomized_weights.nlargest(
n=n, columns=tmp_weight_column_name, keep='any').drop(
tmp_weight_column_name, axis=1)
[docs] @frame_base.with_docs_from(pd.DataFrame)
def dot(self, other):
# We want to broadcast the right hand side to all partitions of the left.
# This is OK, as its index must be the same size as the columns set of self,
# so cannot be too large.
class AsScalar(object):
def __init__(self, value):
self.value = value
if isinstance(other, frame_base.DeferredFrame):
proxy = other._expr.proxy()
with expressions.allow_non_parallel_operations():
side = expressions.ComputedExpression(
'as_scalar',
lambda df: AsScalar(df),
[other._expr],
requires_partition_by=partitionings.Singleton())
else:
proxy = pd.DataFrame(columns=range(len(other[0])))
side = expressions.ConstantExpression(AsScalar(other))
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'dot',
lambda left, right: left @ right.value,
[self._expr, side],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary(),
proxy=proxy))
__matmul__ = dot
[docs] @frame_base.with_docs_from(pd.DataFrame)
def mode(self, axis=0, *args, **kwargs):
"""mode with axis="columns" is not implemented because it produces
non-deferred columns.
mode with axis="index" is not currently parallelizable. An approximate,
parallelizable implementation of mode may be added in the future
(`Issue 20946 <https://github.com/apache/beam/issues/20946>`_)."""
if axis == 1 or axis == 'columns':
# Number of columns is max(number mode values for each row), so we can't
# determine how many there will be before looking at the data.
raise frame_base.WontImplementError(
"mode(axis=columns) is not supported because it produces a variable "
"number of columns depending on the data.",
reason="non-deferred-columns")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'mode',
lambda df: df.mode(*args, **kwargs),
[self._expr],
#TODO(https://github.com/apache/beam/issues/20946):
# Can we add an approximate implementation?
requires_partition_by=partitionings.Singleton(reason=(
"mode(axis='index') cannot currently be parallelized. See "
"https://github.com/apache/beam/issues/20946 tracking the "
"possble addition of an approximate, parallelizable "
"implementation of mode."
)),
preserves_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
@frame_base.maybe_inplace
def dropna(self, axis, **kwargs):
"""dropna with axis="columns" specified cannot be parallelized."""
# TODO(robertwb): This is a common pattern. Generalize?
if axis in (1, 'columns'):
requires_partition_by = partitionings.Singleton(reason=(
"dropna(axis=1) cannot currently be parallelized. It requires "
"checking all values in each column for NaN values, to determine "
"if that column should be dropped."
))
else:
requires_partition_by = partitionings.Arbitrary()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'dropna',
lambda df: df.dropna(axis=axis, **kwargs),
[self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=requires_partition_by))
def _eval_or_query(self, name, expr, inplace, **kwargs):
for key in ('local_dict', 'global_dict', 'level', 'target', 'resolvers'):
if key in kwargs:
raise NotImplementedError(f"Setting '{key}' is not yet supported")
# look for '@<py identifier>'
if re.search(r'\@[^\d\W]\w*', expr, re.UNICODE):
raise NotImplementedError("Accessing locals with @ is not yet supported "
"(https://github.com/apache/beam/issues/20626)"
)
result_expr = expressions.ComputedExpression(
name,
lambda df: getattr(df, name)(expr, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
if inplace:
self._expr = result_expr
else:
return frame_base.DeferredFrame.wrap(result_expr)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def eval(self, expr, inplace, **kwargs):
"""Accessing local variables with ``@<varname>`` is not yet supported
(`Issue 20626 <https://github.com/apache/beam/issues/20626>`_).
Arguments ``local_dict``, ``global_dict``, ``level``, ``target``, and
``resolvers`` are not yet supported."""
return self._eval_or_query('eval', expr, inplace, **kwargs)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def query(self, expr, inplace, **kwargs):
"""Accessing local variables with ``@<varname>`` is not yet supported
(`Issue 20626 <https://github.com/apache/beam/issues/20626>`_).
Arguments ``local_dict``, ``global_dict``, ``level``, ``target``, and
``resolvers`` are not yet supported."""
return self._eval_or_query('query', expr, inplace, **kwargs)
isnull = isna = frame_base._elementwise_method('isna', base=pd.DataFrame)
notnull = notna = frame_base._elementwise_method('notna', base=pd.DataFrame)
items = frame_base.wont_implement_method(pd.DataFrame, 'items',
reason="non-deferred-result")
itertuples = frame_base.wont_implement_method(pd.DataFrame, 'itertuples',
reason="non-deferred-result")
iterrows = frame_base.wont_implement_method(pd.DataFrame, 'iterrows',
reason="non-deferred-result")
iteritems = frame_base.wont_implement_method(pd.DataFrame, 'iteritems',
reason="non-deferred-result")
def _cols_as_temporary_index(self, cols, suffix=''):
original_index_names = list(self._expr.proxy().index.names)
new_index_names = [
'__apache_beam_temp_%d_%s' % (ix, suffix)
for (ix, _) in enumerate(original_index_names)]
def reindex(df):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'reindex',
lambda df:
df.rename_axis(index=new_index_names, copy=False)
.reset_index().set_index(cols),
[df._expr],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Arbitrary()))
def revert(df):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'join_restoreindex',
lambda df:
df.reset_index().set_index(new_index_names)
.rename_axis(index=original_index_names, copy=False),
[df._expr],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Arbitrary()))
return reindex, revert
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def join(self, other, on, **kwargs):
if on is not None:
reindex, revert = self._cols_as_temporary_index(on)
return revert(reindex(self).join(other, **kwargs))
if isinstance(other, list):
other_is_list = True
else:
other = [other]
other_is_list = False
placeholder = object()
other_exprs = [
df._expr for df in other if isinstance(df, frame_base.DeferredFrame)]
const_others = [
placeholder if isinstance(df, frame_base.DeferredFrame) else df
for df in other]
def fill_placeholders(values):
values = iter(values)
filled = [
next(values) if df is placeholder else df for df in const_others]
if other_is_list:
return filled
else:
return filled[0]
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'join',
lambda df, *deferred_others: df.join(
fill_placeholders(deferred_others), **kwargs),
[self._expr] + other_exprs,
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Index()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def merge(
self,
right,
on,
left_on,
right_on,
left_index,
right_index,
suffixes,
**kwargs):
"""merge is not parallelizable unless ``left_index`` or ``right_index`` is
``True`, because it requires generating an entirely new unique index.
See notes on :meth:`DeferredDataFrame.reset_index`. It is recommended to
move the join key for one of your columns to the index to avoid this issue.
For an example see the enrich pipeline in
:mod:`apache_beam.examples.dataframe.taxiride`.
``how="cross"`` is not yet supported.
"""
self_proxy = self._expr.proxy()
right_proxy = right._expr.proxy()
# Validate with a pandas call.
_ = self_proxy.merge(
right_proxy,
on=on,
left_on=left_on,
right_on=right_on,
left_index=left_index,
right_index=right_index,
**kwargs)
if kwargs.get('how', None) == 'cross':
raise NotImplementedError(
"cross join is not yet implemented "
"(https://github.com/apache/beam/issues/20318)")
if not any([on, left_on, right_on, left_index, right_index]):
on = [col for col in self_proxy.columns if col in right_proxy.columns]
if not left_on:
left_on = on
if left_on and not isinstance(left_on, list):
left_on = [left_on]
if not right_on:
right_on = on
if right_on and not isinstance(right_on, list):
right_on = [right_on]
if left_index:
indexed_left = self
else:
indexed_left = self.set_index(left_on, drop=False)
if right_index:
indexed_right = right
else:
indexed_right = right.set_index(right_on, drop=False)
if left_on and right_on:
common_cols = set(left_on).intersection(right_on)
if len(common_cols):
# When merging on the same column name from both dfs, we need to make
# sure only one df has the column. Otherwise we end up with
# two duplicate columns, one with lsuffix and one with rsuffix.
# It's safe to drop from either because the data has already been duped
# to the index.
indexed_right = indexed_right.drop(columns=common_cols)
merged = frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'merge',
lambda left, right: left.merge(right,
left_index=True,
right_index=True,
suffixes=suffixes,
**kwargs),
[indexed_left._expr, indexed_right._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Index()))
if left_index or right_index:
return merged
else:
return merged.reset_index(drop=True)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def nlargest(self, keep, **kwargs):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
if keep == 'any':
keep = 'first'
elif keep != 'all':
raise frame_base.WontImplementError(
f"nlargest(keep={keep!r}) is not supported because it is "
"order sensitive. Only keep=\"all\" is supported.",
reason="order-sensitive")
kwargs['keep'] = keep
per_partition = expressions.ComputedExpression(
'nlargest-per-partition',
lambda df: df.nlargest(**kwargs),
[self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'nlargest',
lambda df: df.nlargest(**kwargs),
[per_partition],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def nsmallest(self, keep, **kwargs):
"""Only ``keep=False`` and ``keep="any"`` are supported. Other values of
``keep`` make this an order-sensitive operation. Note ``keep="any"`` is
a Beam-specific option that guarantees only one duplicate will be kept, but
unlike ``"first"`` and ``"last"`` it makes no guarantees about _which_
duplicate element is kept."""
if keep == 'any':
keep = 'first'
elif keep != 'all':
raise frame_base.WontImplementError(
f"nsmallest(keep={keep!r}) is not supported because it is "
"order sensitive. Only keep=\"all\" is supported.",
reason="order-sensitive")
kwargs['keep'] = keep
per_partition = expressions.ComputedExpression(
'nsmallest-per-partition',
lambda df: df.nsmallest(**kwargs),
[self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'nsmallest',
lambda df: df.nsmallest(**kwargs),
[per_partition],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Singleton()))
plot = frame_base.wont_implement_method(pd.DataFrame, 'plot',
reason="plotting-tools")
[docs] @frame_base.with_docs_from(pd.DataFrame)
def pop(self, item):
result = self[item]
self._expr = expressions.ComputedExpression(
'popped',
lambda df: df.drop(columns=[item]),
[self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
return result
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def quantile(self, q, axis, **kwargs):
"""``quantile(axis="index")`` is not parallelizable. See
`Issue 20933 <https://github.com/apache/beam/issues/20933>`_ tracking
the possible addition of an approximate, parallelizable implementation of
quantile.
When using quantile with ``axis="columns"`` only a single ``q`` value can be
specified."""
if axis in (1, 'columns'):
if isinstance(q, list):
raise frame_base.WontImplementError(
"quantile(axis=columns) with multiple q values is not supported "
"because it transposes the input DataFrame. Note computing "
"an individual quantile across columns (e.g. "
f"df.quantile(q={q[0]!r}, axis={axis!r}) is supported.",
reason="non-deferred-columns")
else:
requires = partitionings.Arbitrary()
else: # axis='index'
# TODO(https://github.com/apache/beam/issues/20933): Provide an option
# for approximate distributed quantiles
requires = partitionings.Singleton(reason=(
"Computing quantiles across index cannot currently be parallelized. "
"See https://github.com/apache/beam/issues/20933 tracking the "
"possible addition of an approximate, parallelizable implementation "
"of quantile."
))
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'quantile',
lambda df: df.quantile(q=q, axis=axis, **kwargs),
[self._expr],
requires_partition_by=requires,
preserves_partition_by=partitionings.Singleton()))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.maybe_inplace
def rename(self, **kwargs):
"""rename is not parallelizable when ``axis="index"`` and
``errors="raise"``. It requires collecting all data on a single
node in order to detect if one of the index values is missing."""
rename_index = (
'index' in kwargs
or kwargs.get('axis', None) in (0, 'index')
or ('columns' not in kwargs and 'axis' not in kwargs))
rename_columns = (
'columns' in kwargs
or kwargs.get('axis', None) in (1, 'columns'))
if rename_index:
# Technically, it's still partitioned by index, but it's no longer
# partitioned by the hash of the index.
preserves_partition_by = partitionings.Singleton()
else:
preserves_partition_by = partitionings.Index()
if kwargs.get('errors', None) == 'raise' and rename_index:
# TODO: We could do this in parallel by creating a ConstantExpression
# with a series created from the mapper dict. Then Index() partitioning
# would co-locate the necessary index values and we could raise
# individually within each partition. Execution time errors are
# discouraged anyway so probably not worth the effort.
requires_partition_by = partitionings.Singleton(reason=(
"rename(errors='raise', axis='index') requires collecting all "
"data on a single node in order to detect missing index values."
))
else:
requires_partition_by = partitionings.Arbitrary()
proxy = None
if rename_index:
# The proxy can't be computed by executing rename, it will error
# renaming the index.
if rename_columns:
# Note if both are being renamed, index and columns must be specified
# (not axis)
proxy = self._expr.proxy().rename(**{k: v for (k, v) in kwargs.items()
if not k == 'index'})
else:
# No change in columns, reuse proxy
proxy = self._expr.proxy()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'rename',
lambda df: df.rename(**kwargs),
[self._expr],
proxy=proxy,
preserves_partition_by=preserves_partition_by,
requires_partition_by=requires_partition_by))
rename_axis = frame_base._elementwise_method('rename_axis', base=pd.DataFrame)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def round(self, decimals, *args, **kwargs):
if isinstance(decimals, frame_base.DeferredFrame):
# Disallow passing a deferred Series in, our current partitioning model
# prevents us from using it correctly.
raise NotImplementedError("Passing a deferred series to round() is not "
"supported, please use a concrete pd.Series "
"instance or a dictionary")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'round',
lambda df: df.round(decimals, *args, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Index()
)
)
select_dtypes = frame_base._elementwise_method('select_dtypes',
base=pd.DataFrame)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def shift(self, axis, freq, **kwargs):
"""shift with ``axis="index" is only supported with ``freq`` specified and
``fill_value`` undefined. Other configurations make this operation
order-sensitive."""
if axis in (1, 'columns'):
preserves = partitionings.Arbitrary()
proxy = None
else:
if freq is None or 'fill_value' in kwargs:
fill_value = kwargs.get('fill_value', 'NOT SET')
raise frame_base.WontImplementError(
f"shift(axis={axis!r}) is only supported with freq defined, and "
f"fill_value undefined (got freq={freq!r},"
f"fill_value={fill_value!r}). Other configurations are sensitive "
"to the order of the data because they require populating shifted "
"rows with `fill_value`.",
reason="order-sensitive")
# proxy generation fails in pandas <1.2
# Seems due to https://github.com/pandas-dev/pandas/issues/14811,
# bug with shift on empty indexes.
# Fortunately the proxy should be identical to the input.
proxy = self._expr.proxy().copy()
# index is modified, so no partitioning is preserved.
preserves = partitionings.Singleton()
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'shift',
lambda df: df.shift(axis=axis, freq=freq, **kwargs),
[self._expr],
proxy=proxy,
preserves_partition_by=preserves,
requires_partition_by=partitionings.Arbitrary()))
shape = property(frame_base.wont_implement_method(
pd.DataFrame, 'shape', reason="non-deferred-result"))
stack = frame_base._proxy_method(
'stack',
base=pd.DataFrame,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton())
all = _agg_method(pd.DataFrame, 'all')
any = _agg_method(pd.DataFrame, 'any')
count = _agg_method(pd.DataFrame, 'count')
describe = _agg_method(pd.DataFrame, 'describe')
max = _agg_method(pd.DataFrame, 'max')
min = _agg_method(pd.DataFrame, 'min')
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def pivot(self, index=None, columns=None, values=None, **kwargs):
"""Because pivot is a non-deferred method, any columns specified in
``columns`` must be CategoricalDType so we can determine the output column
names."""
def verify_all_categorical(all_cols_are_categorical):
if not all_cols_are_categorical:
message = "pivot() of non-categorical type is not supported because " \
"the type of the output column depends on the data. Please use " \
"pd.CategoricalDtype with explicit categories."
raise frame_base.WontImplementError(
message, reason="non-deferred-columns")
# If values not provided, take all remaining columns of dataframe
if not values:
tmp = self._expr.proxy()
if index:
tmp = tmp.drop(index, axis=1)
if columns:
tmp = tmp.drop(columns, axis=1)
values = tmp.columns.values
# Construct column index
if is_list_like(columns) and len(columns) <= 1:
columns = columns[0]
selected_cols = self._expr.proxy()[columns]
if isinstance(selected_cols, pd.Series):
all_cols_are_categorical = isinstance(
selected_cols.dtype, pd.CategoricalDtype
)
verify_all_categorical(all_cols_are_categorical)
if is_list_like(values) and len(values) > 1:
# If more than one value provided, don't create a None level
values_in_col_index = values
names = [None, columns]
col_index = pd.MultiIndex.from_product(
[values_in_col_index,
selected_cols.dtypes.categories.astype('category')],
names=names
)
else:
col_index = pd.CategoricalIndex(
selected_cols.dtype.categories,
name=columns
)
else:
all_cols_are_categorical = all(
isinstance(c, pd.CategoricalDtype) for c in selected_cols.dtypes
)
verify_all_categorical(all_cols_are_categorical)
if is_list_like(values) and len(values) > 1:
# If more than one value provided, don't create a None level
values_in_col_index = values
names = [None, *columns]
categories = [
c.categories.astype('category') for c in selected_cols.dtypes
]
col_index = pd.MultiIndex.from_product(
[values_in_col_index, *categories],
names=names
)
else:
# If one value provided, don't create a None level
names = columns
categories = [
c.categories.astype('category') for c in selected_cols.dtypes
]
col_index = pd.MultiIndex.from_product(
categories,
names=names
)
# Construct row index
if index:
if PD_VERSION < (1, 4) and is_list_like(index) and len(index) > 1:
raise frame_base.WontImplementError(
"pivot() is not supported when pandas<1.4 and index is a MultiIndex")
per_partition = expressions.ComputedExpression(
'pivot-per-partition',
lambda df: df.set_index(keys=index), [self._expr],
preserves_partition_by=partitionings.Singleton(),
requires_partition_by=partitionings.Arbitrary()
)
tmp = per_partition.proxy().pivot(
columns=columns, values=values, **kwargs)
row_index = tmp.index
else:
per_partition = self._expr
row_index = self._expr.proxy().index
if PD_VERSION < (1, 4) and isinstance(row_index, pd.MultiIndex):
raise frame_base.WontImplementError(
"pivot() is not supported when pandas<1.4 and index is a MultiIndex")
selected_values = self._expr.proxy()[values]
if isinstance(selected_values, pd.Series):
value_dtype = selected_values.dtype
else:
# Set dtype to object if more than one value
dtypes = [d for d in selected_values.dtypes]
value_dtype = object
if any((is_int64_dtype(x) for x in dtypes)):
value_dtype = np.int64
if any((is_float_dtype(x) for x in dtypes)):
value_dtype = np.float64
if object in dtypes:
value_dtype = object
# Construct proxy
proxy = pd.DataFrame(
columns=col_index, dtype=value_dtype, index=row_index
)
def pivot_helper(df):
result = pd.concat(
[proxy, df.pivot(columns=columns, values=values, **kwargs)]
)
result.columns = col_index
result = result.astype(value_dtype)
return result
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'pivot',
pivot_helper,
[per_partition],
proxy=proxy,
preserves_partition_by=partitionings.Index(),
requires_partition_by=partitionings.Index()))
prod = product = _agg_method(pd.DataFrame, 'prod')
sum = _agg_method(pd.DataFrame, 'sum')
mean = _agg_method(pd.DataFrame, 'mean')
median = _agg_method(pd.DataFrame, 'median')
nunique = _agg_method(pd.DataFrame, 'nunique')
std = _agg_method(pd.DataFrame, 'std')
var = _agg_method(pd.DataFrame, 'var')
sem = _agg_method(pd.DataFrame, 'sem')
skew = _agg_method(pd.DataFrame, 'skew')
kurt = _agg_method(pd.DataFrame, 'kurt')
kurtosis = _agg_method(pd.DataFrame, 'kurtosis')
# mad was removed in Pandas 2.0.
if PD_VERSION < (2, 0):
mad = _agg_method(pd.DataFrame, 'mad')
take = frame_base.wont_implement_method(pd.DataFrame, 'take',
reason='deprecated')
to_records = frame_base.wont_implement_method(pd.DataFrame, 'to_records',
reason="non-deferred-result")
to_dict = frame_base.wont_implement_method(pd.DataFrame, 'to_dict',
reason="non-deferred-result")
to_numpy = frame_base.wont_implement_method(pd.DataFrame, 'to_numpy',
reason="non-deferred-result")
to_string = frame_base.wont_implement_method(pd.DataFrame, 'to_string',
reason="non-deferred-result")
to_sparse = frame_base.wont_implement_method(pd.DataFrame, 'to_sparse',
reason="non-deferred-result")
transpose = frame_base.wont_implement_method(
pd.DataFrame, 'transpose', reason='non-deferred-columns')
T = property(frame_base.wont_implement_method(
pd.DataFrame, 'T', reason='non-deferred-columns'))
update = frame_base._proxy_method(
'update',
inplace=True,
base=pd.DataFrame,
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary())
values = property(frame_base.wont_implement_method(
pd.DataFrame, 'values', reason="non-deferred-result"))
style = property(frame_base.wont_implement_method(
pd.DataFrame, 'style', reason="non-deferred-result"))
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def melt(self, ignore_index, **kwargs):
"""``ignore_index=True`` is not supported, because it requires generating an
order-sensitive index."""
if ignore_index:
raise frame_base.WontImplementError(
"melt(ignore_index=True) is order sensitive because it requires "
"generating a new index based on the order of the data.",
reason="order-sensitive")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'melt',
lambda df: df.melt(ignore_index=False, **kwargs), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton()))
if hasattr(pd.DataFrame, 'value_counts'):
[docs] @frame_base.with_docs_from(pd.DataFrame)
def value_counts(self, subset=None, sort=False, normalize=False,
ascending=False, dropna=True):
"""``sort`` is ``False`` by default, and ``sort=True`` is not supported
because it imposes an ordering on the dataset which likely will not be
preserved."""
if sort:
raise frame_base.WontImplementError(
"value_counts(sort=True) is not supported because it imposes an "
"ordering on the dataset which likely will not be preserved.",
reason="order-sensitive")
columns = subset or list(self.columns)
if dropna:
# Must include subset here because otherwise we spuriously drop NAs due
# to columns outside our subset.
dropped = self.dropna(subset=subset)
else:
dropped = self
result = dropped.groupby(columns, dropna=dropna).size()
# Pandas 2 introduces new naming for the results.
if PD_VERSION >= (2,0):
result.name = "proportion" if normalize else "count"
if normalize:
return result/dropped.length()
else:
return result
if hasattr(pd.DataFrame, 'compare'):
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def compare(self, other, align_axis, keep_shape, **kwargs):
"""The default values ``align_axis=1 and ``keep_shape=False``
are not supported, because the output columns depend on the data.
To use ``align_axis=1``, please specify ``keep_shape=True``."""
preserve_partition = None
if align_axis in (1, 'columns') and not keep_shape:
raise frame_base.WontImplementError(
f"compare(align_axis={align_axis!r}, keep_shape={keep_shape!r}) "
"is not allowed because the output columns depend on the data, "
"please specify keep_shape=True.",
reason='non-deferred-columns'
)
if align_axis in (1, 'columns'):
preserve_partition = partitionings.Arbitrary()
elif align_axis in (0, 'index'):
preserve_partition = partitionings.Singleton()
else:
raise ValueError(
"align_axis must be one of ('index', 0, 'columns', 1). "
f"got {align_axis!r}.")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'compare',
lambda df, other: df.compare(other, align_axis, keep_shape, **kwargs),
[self._expr, other._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=preserve_partition
)
)
def _idxmaxmin_helper(self, op, **kwargs):
if op == 'idxmax':
func = pd.DataFrame.idxmax
elif op == 'idxmin':
func = pd.DataFrame.idxmin
else:
raise ValueError("op must be one of ('idxmax', 'idxmin'). "
f"got {op!r}.")
axis = kwargs.get('axis', 0)
index_dtype = self._expr.proxy().index.dtype
columns_dtype = self._expr.proxy().columns.dtype
def compute_idx(df):
indexes = func(df, **kwargs).unique()
if pd.isna(indexes).any():
return df
else:
return df.loc[indexes]
if axis in ('index', 0):
requires_partition = partitionings.Singleton()
proxy_index = pd.Index([], dtype=columns_dtype)
proxy = pd.Series([], index=proxy_index, dtype=index_dtype)
partition_proxy = self._expr.proxy().copy()
idx_per_partition = expressions.ComputedExpression(
'idx-per-partition',
compute_idx, [self._expr],
proxy=partition_proxy,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()
)
elif axis in ('columns', 1):
requires_partition = partitionings.Index()
proxy_index = pd.Index([], dtype=index_dtype)
proxy = pd.Series([], index=proxy_index, dtype=columns_dtype)
idx_per_partition = self._expr
else:
raise ValueError("axis must be one of ('index', 0, 'columns', 1). "
f"got {axis!r}.")
with expressions.allow_non_parallel_operations(True):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'idx',
lambda df: func(df, **kwargs), [idx_per_partition],
proxy=proxy,
requires_partition_by=requires_partition,
preserves_partition_by=partitionings.Singleton()
)
)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def idxmin(self, **kwargs):
return self._idxmaxmin_helper('idxmin', **kwargs)
[docs] @frame_base.with_docs_from(pd.DataFrame)
@frame_base.args_to_kwargs(pd.DataFrame)
@frame_base.populate_defaults(pd.DataFrame)
def idxmax(self, **kwargs):
return self._idxmaxmin_helper('idxmax', **kwargs)
for io_func in dir(io):
if io_func.startswith('to_'):
setattr(DeferredDataFrame, io_func, getattr(io, io_func))
setattr(DeferredSeries, io_func, getattr(io, io_func))
for meth in ('filter', ):
setattr(DeferredDataFrame, meth,
frame_base._elementwise_method(meth, base=pd.DataFrame))
@populate_not_implemented(DataFrameGroupBy)
class DeferredGroupBy(frame_base.DeferredFrame):
def __init__(self, expr, kwargs,
ungrouped: expressions.Expression[pd.core.generic.NDFrame],
ungrouped_with_index: expressions.Expression[pd.core.generic.NDFrame], # pylint: disable=line-too-long
grouping_columns,
grouping_indexes,
group_keys,
projection=None):
"""This object represents the result of::
ungrouped.groupby(level=[grouping_indexes + grouping_columns],
**kwargs)[projection]
:param expr: An expression to compute a pandas GroupBy object. Convenient
for unliftable aggregations.
:param ungrouped: An expression to compute the DataFrame pre-grouping, the
(Multi)Index contains only the grouping columns/indexes.
:param ungrouped_with_index: Same as ungrouped, except the index includes
all of the original indexes as well as any grouping columns. This is
important for operations that expose the original index, e.g. .apply(),
but we only use it when necessary to avoid unnessary data transfer and
GBKs.
:param grouping_columns: list of column labels that were in the original
groupby(..) ``by`` parameter. Only relevant for grouped DataFrames.
:param grouping_indexes: list of index names (or index level numbers) to be
grouped.
:param kwargs: Keywords args passed to the original groupby(..) call."""
super().__init__(expr)
self._ungrouped = ungrouped
self._ungrouped_with_index = ungrouped_with_index
self._projection = projection
self._grouping_columns = grouping_columns
self._grouping_indexes = grouping_indexes
self._group_keys = group_keys
self._kwargs = kwargs
if (self._kwargs.get('dropna', True) is False and
self._ungrouped.proxy().index.nlevels > 1):
raise NotImplementedError(
"dropna=False does not work as intended in the Beam DataFrame API "
"when grouping on multiple columns or indexes (See "
"https://github.com/apache/beam/issues/21014).")
def __getattr__(self, name):
return DeferredGroupBy(
expressions.ComputedExpression(
'groupby_project',
lambda gb: getattr(gb, name), [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()),
self._kwargs,
self._ungrouped,
self._ungrouped_with_index,
self._grouping_columns,
self._grouping_indexes,
self._group_keys,
projection=name)
def __getitem__(self, name):
return DeferredGroupBy(
expressions.ComputedExpression(
'groupby_project',
lambda gb: gb[name], [self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()),
self._kwargs,
self._ungrouped,
self._ungrouped_with_index,
self._grouping_columns,
self._grouping_indexes,
self._group_keys,
projection=name)
@frame_base.with_docs_from(DataFrameGroupBy)
def agg(self, fn, *args, **kwargs):
if _is_associative(fn):
return _liftable_agg(fn)(self, *args, **kwargs)
elif _is_liftable_with_sum(fn):
return _liftable_agg(fn, postagg_meth='sum')(self, *args, **kwargs)
elif _is_unliftable(fn):
return _unliftable_agg(fn)(self, *args, **kwargs)
elif callable(fn):
return DeferredDataFrame(
expressions.ComputedExpression(
'agg',
lambda gb: gb.agg(fn, *args, **kwargs), [self._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Singleton()))
else:
raise NotImplementedError(f"GroupBy.agg(func={fn!r})")
@property
def ndim(self):
return self._expr.proxy().ndim
@frame_base.with_docs_from(DataFrameGroupBy)
def apply(self, func, *args, **kwargs):
"""Note that ``func`` will be called once during pipeline construction time
with an empty pandas object, so take care if ``func`` has a side effect.
When called with an empty pandas object, ``func`` is expected to return an
object of the same type as what will be returned when the pipeline is
processing actual data. If the result is a pandas object it should have the
same type and name (for a Series) or column types and names (for
a DataFrame) as the actual results.
Note that in pandas, ``apply`` attempts to detect if the index is unmodified
in ``func`` (indicating ``func`` is a transform) and drops the duplicate
index in the output. To determine this, pandas tests the indexes for
equality. However, Beam cannot do this since it is sensitive to the input
data; instead this implementation tests if the indexes are equivalent
with ``is``. See the `pandas 1.4.0 release notes
<https://pandas.pydata.org/docs/dev/whatsnew/v1.4.0.html#groupby-apply-consistent-transform-detection>`_
for a good explanation of the distinction between these approaches. In
practice, this just means that in some cases the Beam result will have
a duplicate index, whereas pandas would have dropped it."""
project = _maybe_project_func(self._projection)
grouping_indexes = self._grouping_indexes
grouping_columns = self._grouping_columns
group_keys = self._group_keys
# Unfortunately pandas does not execute func to determine the right proxy.
# We run user func on a proxy here to detect the return type and generate
# the proxy.
fn_input = project(self._ungrouped_with_index.proxy().reset_index(
grouping_columns, drop=True))
result = func(fn_input)
def index_to_arrays(index):
return [index.get_level_values(level)
for level in range(index.nlevels)]
# By default do_apply will just call pandas apply()
# We override it below if necessary
do_apply = lambda gb: gb.apply(func, *args, **kwargs)
if (isinstance(result, pd.core.generic.NDFrame) and
result.index is fn_input.index):
# Special case where apply fn is a transform
# Note we trust that if the user fn produces a proxy with the identical
# index, it will produce results with identical indexes at execution
# time too
proxy = result
elif isinstance(result, pd.DataFrame):
# apply fn is not a transform, we need to make sure the original index
# values are prepended to the result's index
proxy = result[:0]
# First adjust proxy
proxy.index = pd.MultiIndex.from_arrays(
index_to_arrays(self._ungrouped.proxy().index) +
index_to_arrays(proxy.index),
names=self._ungrouped.proxy().index.names + proxy.index.names)
# Then override do_apply function
new_index_names = self._ungrouped.proxy().index.names
if len(new_index_names) > 1:
def add_key_index(key, df):
# df is a dataframe or Series representing the result of func for
# a single key
# key is a tuple with the MultiIndex values for this key
df.index = pd.MultiIndex.from_arrays(
[[key[i]] * len(df) for i in range(len(new_index_names))] +
index_to_arrays(df.index),
names=new_index_names + df.index.names)
return df
else:
def add_key_index(key, df):
# df is a dataframe or Series representing the result of func for
# a single key
df.index = pd.MultiIndex.from_arrays(
[[key] * len(df)] + index_to_arrays(df.index),
names=new_index_names + df.index.names)
return df
do_apply = lambda gb: pd.concat([
add_key_index(k, func(gb.get_group(k), *args, **kwargs))
for k in gb.groups.keys()])
elif isinstance(result, pd.Series):
if isinstance(fn_input, pd.DataFrame):
# DataFrameGroupBy
# In this case pandas transposes the Series result, s.t. the Series
# index values are the columns, and the grouping keys are the new index
# values.
dtype = pd.Series([result]).dtype
proxy = pd.DataFrame(columns=result.index,
dtype=result.dtype,
index=self._ungrouped.proxy().index)
elif isinstance(fn_input, pd.Series):
# SeriesGroupBy
# In this case the output is still a Series, but with an additional
# index with the grouping keys.
proxy = pd.Series(dtype=result.dtype,
name=result.name,
index=index_to_arrays(self._ungrouped.proxy().index) +
index_to_arrays(result[:0].index))
else:
# The user fn returns some non-pandas type. The expected result is a
# Series where each element is the result of one user fn call.
dtype = pd.Series([result]).dtype
proxy = pd.Series([], dtype=dtype, index=self._ungrouped.proxy().index)
def do_partition_apply(df):
# Remove columns from index, we only needed them there for partitioning
df = df.reset_index(grouping_columns, drop=True)
gb = df.groupby(level=grouping_indexes or None,
by=grouping_columns or None,
group_keys=group_keys)
gb = project(gb)
return do_apply(gb)
return DeferredDataFrame(
expressions.ComputedExpression(
'apply',
do_partition_apply,
[self._ungrouped_with_index],
proxy=proxy,
requires_partition_by=partitionings.Index(grouping_indexes +
grouping_columns),
preserves_partition_by=partitionings.Index(grouping_indexes)))
@frame_base.with_docs_from(DataFrameGroupBy)
def transform(self, fn, *args, **kwargs):
"""Note that ``func`` will be called once during pipeline construction time
with an empty pandas object, so take care if ``func`` has a side effect.
When called with an empty pandas object, ``func`` is expected to return an
object of the same type as what will be returned when the pipeline is
processing actual data. The result should have the same type and name (for
a Series) or column types and names (for a DataFrame) as the actual
results."""
if not callable(fn):
raise NotImplementedError(
"String functions are not yet supported in transform.")
if self._grouping_columns and not self._projection:
grouping_columns = self._grouping_columns
def fn_wrapper(x, *args, **kwargs):
x = x.droplevel(grouping_columns)
return fn(x, *args, **kwargs)
else:
fn_wrapper = fn
project = _maybe_project_func(self._projection)
group_keys = self._group_keys
# pandas cannot execute fn to determine the right proxy.
# We run user fn on a proxy here to detect the return type and generate the
# proxy.
result = fn_wrapper(project(self._ungrouped_with_index.proxy()))
parent_frame = self._ungrouped.args()[0].proxy()
if isinstance(result, pd.core.generic.NDFrame):
proxy = result[:0]
else:
# The user fn returns some non-pandas type. The expected result is a
# Series where each element is the result of one user fn call.
dtype = pd.Series([result]).dtype
proxy = pd.Series([], dtype=dtype, name=project(parent_frame).name)
if not isinstance(self._projection, list):
proxy.name = self._projection
# The final result will have the original indexes
proxy.index = parent_frame.index
levels = self._grouping_indexes + self._grouping_columns
return DeferredDataFrame(
expressions.ComputedExpression(
'transform',
lambda df: project(
df.groupby(level=levels, group_keys=group_keys)
).transform(
fn_wrapper,
*args,
**kwargs).droplevel(self._grouping_columns),
[self._ungrouped_with_index],
proxy=proxy,
requires_partition_by=partitionings.Index(levels),
preserves_partition_by=partitionings.Index(self._grouping_indexes)))
@frame_base.with_docs_from(DataFrameGroupBy)
def pipe(self, func, *args, **kwargs):
if isinstance(func, tuple):
func, data = func
kwargs[data] = self
return func(*args, **kwargs)
return func(self, *args, **kwargs)
@frame_base.with_docs_from(DataFrameGroupBy)
def filter(self, func=None, dropna=True):
if func is None or not callable(func):
raise TypeError("func must be specified and it must be callable")
def apply_fn(df):
if func(df):
return df
elif not dropna:
result = df.copy()
result.iloc[:, :] = np.nan
return result
else:
return df.iloc[:0]
return self.apply(apply_fn).droplevel(self._grouping_columns)
@property # type: ignore
@frame_base.with_docs_from(DataFrameGroupBy)
def dtypes(self):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'dtypes',
lambda gb: gb.dtypes,
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()
)
)
if hasattr(DataFrameGroupBy, 'value_counts'):
@frame_base.with_docs_from(DataFrameGroupBy)
def value_counts(self, **kwargs):
"""
DataFrameGroupBy.value_counts() is the same as DataFrame.value_counts()
"""
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'value_counts',
lambda df: df.value_counts(**kwargs), [self._expr],
preserves_partition_by=partitionings.Arbitrary(),
requires_partition_by=partitionings.Arbitrary())
)
fillna = frame_base.wont_implement_method(
DataFrameGroupBy, 'fillna', explanation=(
"df.fillna() should be used instead. Only method=None is supported "
"because other methods are order-sensitive. df.groupby(..).fillna() "
"without a method is equivalent to df.fillna()."))
ffill = frame_base.wont_implement_method(DataFrameGroupBy, 'ffill',
reason="order-sensitive")
bfill = frame_base.wont_implement_method(DataFrameGroupBy, 'bfill',
reason="order-sensitive")
pad = frame_base.wont_implement_method(DataFrameGroupBy, 'pad',
reason="order-sensitive")
backfill = frame_base.wont_implement_method(DataFrameGroupBy, 'backfill',
reason="order-sensitive")
aggregate = agg
hist = frame_base.wont_implement_method(DataFrameGroupBy, 'hist',
reason="plotting-tools")
plot = frame_base.wont_implement_method(DataFrameGroupBy, 'plot',
reason="plotting-tools")
boxplot = frame_base.wont_implement_method(DataFrameGroupBy, 'boxplot',
reason="plotting-tools")
head = frame_base.wont_implement_method(
DataFrameGroupBy, 'head', explanation=_PEEK_METHOD_EXPLANATION)
tail = frame_base.wont_implement_method(
DataFrameGroupBy, 'tail', explanation=_PEEK_METHOD_EXPLANATION)
first = frame_base.not_implemented_method('first', base_type=DataFrameGroupBy)
last = frame_base.not_implemented_method('last', base_type=DataFrameGroupBy)
nth = property(frame_base.wont_implement_method(
DataFrameGroupBy, 'nth', reason='order-sensitive'))
cumcount = frame_base.wont_implement_method(
DataFrameGroupBy, 'cumcount', reason='order-sensitive')
cummax = frame_base.wont_implement_method(
DataFrameGroupBy, 'cummax', reason='order-sensitive')
cummin = frame_base.wont_implement_method(
DataFrameGroupBy, 'cummin', reason='order-sensitive')
cumsum = frame_base.wont_implement_method(
DataFrameGroupBy, 'cumsum', reason='order-sensitive')
cumprod = frame_base.wont_implement_method(
DataFrameGroupBy, 'cumprod', reason='order-sensitive')
diff = frame_base.wont_implement_method(DataFrameGroupBy, 'diff',
reason='order-sensitive')
shift = frame_base.wont_implement_method(DataFrameGroupBy, 'shift',
reason='order-sensitive')
pct_change = frame_base.wont_implement_method(DataFrameGroupBy, 'pct_change',
reason='order-sensitive')
ohlc = frame_base.wont_implement_method(DataFrameGroupBy, 'ohlc',
reason='order-sensitive')
# TODO(https://github.com/apache/beam/issues/20958): Consider allowing this
# for categorical keys.
__len__ = frame_base.wont_implement_method(
DataFrameGroupBy, '__len__', reason="non-deferred-result")
groups = property(frame_base.wont_implement_method(
DataFrameGroupBy, 'groups', reason="non-deferred-result"))
indices = property(frame_base.wont_implement_method(
DataFrameGroupBy, 'indices', reason="non-deferred-result"))
resample = frame_base.wont_implement_method(
DataFrameGroupBy, 'resample', reason='event-time-semantics')
rolling = frame_base.wont_implement_method(
DataFrameGroupBy, 'rolling', reason='event-time-semantics')
ewm = frame_base.wont_implement_method(
DataFrameGroupBy, 'ewm', reason="event-time-semantics")
expanding = frame_base.wont_implement_method(
DataFrameGroupBy, 'expanding', reason="event-time-semantics")
tshift = frame_base.wont_implement_method(
DataFrameGroupBy, 'tshift', reason="deprecated")
def _maybe_project_func(projection: Optional[List[str]]):
""" Returns identity func if projection is empty or None, else returns
a function that projects the specified columns. """
if projection:
return lambda df: df[projection]
else:
return lambda x: x
def _liftable_agg(meth, postagg_meth=None):
agg_name, _ = frame_base.name_and_func(meth)
if postagg_meth is None:
post_agg_name = agg_name
else:
post_agg_name, _ = frame_base.name_and_func(postagg_meth)
@frame_base.with_docs_from(DataFrameGroupBy, name=agg_name)
def wrapper(self, *args, **kwargs):
assert isinstance(self, DeferredGroupBy)
if 'min_count' in kwargs:
return _unliftable_agg(meth)(self, *args, **kwargs)
to_group = self._ungrouped.proxy().index
is_categorical_grouping = any(to_group.get_level_values(i).is_categorical()
for i in self._grouping_indexes)
groupby_kwargs = self._kwargs
group_keys = self._group_keys
# Don't include un-observed categorical values in the preagg
preagg_groupby_kwargs = groupby_kwargs.copy()
preagg_groupby_kwargs['observed'] = True
project = _maybe_project_func(self._projection)
pre_agg = expressions.ComputedExpression(
'pre_combine_' + agg_name,
lambda df: getattr(
project(
df.groupby(level=list(range(df.index.nlevels)),
group_keys=group_keys,
**preagg_groupby_kwargs)
),
agg_name)(**kwargs),
[self._ungrouped],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
post_agg = expressions.ComputedExpression(
'post_combine_' + post_agg_name,
lambda df: getattr(
df.groupby(level=list(range(df.index.nlevels)),
group_keys=group_keys,
**groupby_kwargs),
post_agg_name)(**kwargs),
[pre_agg],
requires_partition_by=(partitionings.Singleton(reason=(
"Aggregations grouped by a categorical column are not currently "
"parallelizable (https://github.com/apache/beam/issues/21827)."
))
if is_categorical_grouping
else partitionings.Index()),
preserves_partition_by=partitionings.Arbitrary())
return frame_base.DeferredFrame.wrap(post_agg)
return wrapper
def _unliftable_agg(meth):
agg_name, _ = frame_base.name_and_func(meth)
@frame_base.with_docs_from(DataFrameGroupBy, name=agg_name)
def wrapper(self, *args, **kwargs):
assert isinstance(self, DeferredGroupBy)
to_group = self._ungrouped.proxy().index
group_keys = self._group_keys
is_categorical_grouping = any(to_group.get_level_values(i).is_categorical()
for i in self._grouping_indexes)
groupby_kwargs = self._kwargs
project = _maybe_project_func(self._projection)
post_agg = expressions.ComputedExpression(
agg_name,
lambda df: getattr(project(
df.groupby(level=list(range(df.index.nlevels)),
group_keys=group_keys,
**groupby_kwargs),
), agg_name)(**kwargs),
[self._ungrouped],
requires_partition_by=(partitionings.Singleton(reason=(
"Aggregations grouped by a categorical column are not currently "
"parallelizable (https://github.com/apache/beam/issues/21827)."
))
if is_categorical_grouping
else partitionings.Index()),
# Some aggregation methods (e.g. corr/cov) add additional index levels.
# We only preserve the ones that existed _before_ the groupby.
preserves_partition_by=partitionings.Index(
list(range(self._ungrouped.proxy().index.nlevels))))
return frame_base.DeferredFrame.wrap(post_agg)
return wrapper
for meth in LIFTABLE_AGGREGATIONS:
setattr(DeferredGroupBy, meth, _liftable_agg(meth))
for meth in LIFTABLE_WITH_SUM_AGGREGATIONS:
setattr(DeferredGroupBy, meth, _liftable_agg(meth, postagg_meth='sum'))
for meth in UNLIFTABLE_AGGREGATIONS:
if meth in ('kurt', 'kurtosis'):
# pandas doesn't currently allow kurtosis on GroupBy:
# https://github.com/pandas-dev/pandas/issues/40139
continue
setattr(DeferredGroupBy, meth, _unliftable_agg(meth))
def _check_str_or_np_builtin(agg_func, func_list):
return agg_func in func_list or (
getattr(agg_func, '__name__', None) in func_list
and agg_func.__module__ in ('numpy', 'builtins'))
def _is_associative(agg_func):
return _check_str_or_np_builtin(agg_func, LIFTABLE_AGGREGATIONS)
def _is_liftable_with_sum(agg_func):
return _check_str_or_np_builtin(agg_func, LIFTABLE_WITH_SUM_AGGREGATIONS)
def _is_unliftable(agg_func):
return _check_str_or_np_builtin(agg_func, UNLIFTABLE_AGGREGATIONS)
NUMERIC_AGGREGATIONS = ['max', 'min', 'prod', 'sum', 'mean', 'median', 'std',
'var', 'sem', 'skew', 'kurt', 'kurtosis']
# mad was removed in Pandas 2.0.
if PD_VERSION < (2, 0):
NUMERIC_AGGREGATIONS.append('mad')
def _is_numeric(agg_func):
return _check_str_or_np_builtin(agg_func, NUMERIC_AGGREGATIONS)
@populate_not_implemented(DataFrameGroupBy)
class _DeferredGroupByCols(frame_base.DeferredFrame):
# It's not clear that all of these make sense in Pandas either...
agg = aggregate = frame_base._elementwise_method('agg', base=DataFrameGroupBy)
any = frame_base._elementwise_method('any', base=DataFrameGroupBy)
all = frame_base._elementwise_method('all', base=DataFrameGroupBy)
boxplot = frame_base.wont_implement_method(
DataFrameGroupBy, 'boxplot', reason="plotting-tools")
describe = frame_base.not_implemented_method('describe',
base_type=DataFrameGroupBy)
diff = frame_base._elementwise_method('diff', base=DataFrameGroupBy)
fillna = frame_base._elementwise_method('fillna', base=DataFrameGroupBy)
filter = frame_base._elementwise_method('filter', base=DataFrameGroupBy)
first = frame_base._elementwise_method('first', base=DataFrameGroupBy)
get_group = frame_base._elementwise_method('get_group', base=DataFrameGroupBy)
head = frame_base.wont_implement_method(
DataFrameGroupBy, 'head', explanation=_PEEK_METHOD_EXPLANATION)
hist = frame_base.wont_implement_method(
DataFrameGroupBy, 'hist', reason="plotting-tools")
idxmax = frame_base._elementwise_method('idxmax', base=DataFrameGroupBy)
idxmin = frame_base._elementwise_method('idxmin', base=DataFrameGroupBy)
last = frame_base._elementwise_method('last', base=DataFrameGroupBy)
max = frame_base._elementwise_method('max', base=DataFrameGroupBy)
mean = frame_base._elementwise_method('mean', base=DataFrameGroupBy)
median = frame_base._elementwise_method('median', base=DataFrameGroupBy)
min = frame_base._elementwise_method('min', base=DataFrameGroupBy)
nunique = frame_base._elementwise_method('nunique', base=DataFrameGroupBy)
plot = frame_base.wont_implement_method(
DataFrameGroupBy, 'plot', reason="plotting-tools")
prod = frame_base._elementwise_method('prod', base=DataFrameGroupBy)
quantile = frame_base._elementwise_method('quantile', base=DataFrameGroupBy)
shift = frame_base._elementwise_method('shift', base=DataFrameGroupBy)
size = frame_base._elementwise_method('size', base=DataFrameGroupBy)
skew = frame_base._elementwise_method('skew', base=DataFrameGroupBy)
std = frame_base._elementwise_method('std', base=DataFrameGroupBy)
sum = frame_base._elementwise_method('sum', base=DataFrameGroupBy)
tail = frame_base.wont_implement_method(
DataFrameGroupBy, 'tail', explanation=_PEEK_METHOD_EXPLANATION)
take = frame_base.wont_implement_method(
DataFrameGroupBy, 'take', reason='deprecated')
var = frame_base._elementwise_method('var', base=DataFrameGroupBy)
# These already deprecated methods were removed in Pandas 2.0
if PD_VERSION < (2, 0):
mad = frame_base._elementwise_method('mad', base=DataFrameGroupBy)
tshift = frame_base._elementwise_method('tshift', base=DataFrameGroupBy)
@property # type: ignore
@frame_base.with_docs_from(DataFrameGroupBy)
def groups(self):
return self._expr.proxy().groups
@property # type: ignore
@frame_base.with_docs_from(DataFrameGroupBy)
def indices(self):
return self._expr.proxy().indices
@property # type: ignore
@frame_base.with_docs_from(DataFrameGroupBy)
def ndim(self):
return self._expr.proxy().ndim
@property # type: ignore
@frame_base.with_docs_from(DataFrameGroupBy)
def ngroups(self):
return self._expr.proxy().ngroups
@populate_not_implemented(pd.core.indexes.base.Index)
class _DeferredIndex(object):
def __init__(self, frame):
self._frame = frame
@property
def names(self):
return self._frame._expr.proxy().index.names
@names.setter
def names(self, value):
def set_index_names(df):
df = df.copy()
df.index.names = value
return df
self._frame._expr = expressions.ComputedExpression(
'set_index_names',
set_index_names,
[self._frame._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary())
@property
def name(self):
return self._frame._expr.proxy().index.name
@name.setter
def name(self, value):
self.names = [value]
@property
def ndim(self):
return self._frame._expr.proxy().index.ndim
@property
def dtype(self):
return self._frame._expr.proxy().index.dtype
@property
def nlevels(self):
return self._frame._expr.proxy().index.nlevels
def __getattr__(self, name):
raise NotImplementedError('index.%s' % name)
@populate_not_implemented(pd.core.indexing._LocIndexer)
class _DeferredLoc(object):
def __init__(self, frame):
self._frame = frame
def __getitem__(self, key):
if isinstance(key, tuple):
rows, cols = key
return self[rows][cols]
elif isinstance(key, list) and key and isinstance(key[0], bool):
# Aligned by numerical key.
raise NotImplementedError(type(key))
elif isinstance(key, list):
# Select rows, but behaves poorly on missing values.
raise NotImplementedError(type(key))
elif isinstance(key, slice):
args = [self._frame._expr]
func = lambda df: df.loc[key]
elif isinstance(key, frame_base.DeferredFrame):
func = lambda df, key: df.loc[key]
if pd.core.dtypes.common.is_bool_dtype(key._expr.proxy()):
# Boolean indexer, just pass it in as-is
args = [self._frame._expr, key._expr]
else:
# Likely a DeferredSeries of labels, overwrite the key's index with it's
# values so we can colocate them with the labels they're selecting
def data_to_index(s):
s = s.copy()
s.index = s
return s
reindexed_expr = expressions.ComputedExpression(
'data_to_index',
data_to_index,
[key._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton(),
)
args = [self._frame._expr, reindexed_expr]
elif callable(key):
def checked_callable_key(df):
computed_index = key(df)
if isinstance(computed_index, tuple):
row_index, _ = computed_index
else:
row_index = computed_index
if isinstance(row_index, list) and row_index and isinstance(
row_index[0], bool):
raise NotImplementedError(type(row_index))
elif not isinstance(row_index, (slice, pd.Series)):
raise NotImplementedError(type(row_index))
return computed_index
args = [self._frame._expr]
func = lambda df: df.loc[checked_callable_key]
else:
raise NotImplementedError(type(key))
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'loc',
func,
args,
requires_partition_by=(
partitionings.JoinIndex()
if len(args) > 1
else partitionings.Arbitrary()),
preserves_partition_by=partitionings.Arbitrary()))
__setitem__ = frame_base.not_implemented_method(
'loc.setitem', base_type=pd.core.indexing._LocIndexer)
@populate_not_implemented(pd.core.indexing._iLocIndexer)
class _DeferredILoc(object):
def __init__(self, frame):
self._frame = frame
def __getitem__(self, index):
if isinstance(index, tuple):
rows, _ = index
if rows != slice(None, None, None):
raise frame_base.WontImplementError(
"Using iloc to select rows is not supported because it's "
"position-based indexing is sensitive to the order of the data.",
reason="order-sensitive")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'iloc',
lambda df: df.iloc[index],
[self._frame._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
else:
raise frame_base.WontImplementError(
"Using iloc to select rows is not supported because it's "
"position-based indexing is sensitive to the order of the data.",
reason="order-sensitive")
def __setitem__(self, index, value):
raise frame_base.WontImplementError(
"Using iloc to mutate a frame is not supported because it's "
"position-based indexing is sensitive to the order of the data.",
reason="order-sensitive")
class _DeferredStringMethods(frame_base.DeferredBase):
@frame_base.with_docs_from(pd.Series.str)
@frame_base.args_to_kwargs(pd.Series.str)
@frame_base.populate_defaults(pd.Series.str)
def cat(self, others, join, **kwargs):
"""If defined, ``others`` must be a :class:`DeferredSeries` or a ``list`` of
``DeferredSeries``."""
if others is None:
# Concatenate series into a single String
requires = partitionings.Singleton(reason=(
"cat(others=None) concatenates all data in a Series into a single "
"string, so it requires collecting all data on a single node."
))
func = lambda df: df.str.cat(join=join, **kwargs)
args = [self._expr]
elif (isinstance(others, frame_base.DeferredBase) or
(isinstance(others, list) and
all(isinstance(other, frame_base.DeferredBase) for other in others))):
if isinstance(others, frame_base.DeferredBase):
others = [others]
requires = partitionings.Index()
def func(*args):
return args[0].str.cat(others=args[1:], join=join, **kwargs)
args = [self._expr] + [other._expr for other in others]
else:
raise frame_base.WontImplementError(
"others must be None, DeferredSeries, or List[DeferredSeries] "
f"(encountered {type(others)}). Other types are not supported "
"because they make this operation sensitive to the order of the "
"data.", reason="order-sensitive")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'cat',
func,
args,
requires_partition_by=requires,
preserves_partition_by=partitionings.Arbitrary()))
@frame_base.with_docs_from(pd.Series.str)
@frame_base.args_to_kwargs(pd.Series.str)
def repeat(self, repeats):
"""``repeats`` must be an ``int`` or a :class:`DeferredSeries`. Lists are
not supported because they make this operation order-sensitive."""
if isinstance(repeats, int):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'repeat',
lambda series: series.str.repeat(repeats),
[self._expr],
# TODO(https://github.com/apache/beam/issues/20573): Defer to
# pandas to compute this proxy. Currently it incorrectly infers
# dtype bool, may require upstream fix.
proxy=self._expr.proxy(),
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
elif isinstance(repeats, frame_base.DeferredBase):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'repeat',
lambda series, repeats_series: series.str.repeat(repeats_series),
[self._expr, repeats._expr],
# TODO(https://github.com/apache/beam/issues/20573): Defer to
# pandas to compute this proxy. Currently it incorrectly infers
# dtype bool, may require upstream fix.
proxy=self._expr.proxy(),
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
elif isinstance(repeats, list):
raise frame_base.WontImplementError(
"str.repeat(repeats=) repeats must be an int or a DeferredSeries. "
"Lists are not supported because they make this operation sensitive "
"to the order of the data.", reason="order-sensitive")
else:
raise TypeError("str.repeat(repeats=) value must be an int or a "
f"DeferredSeries (encountered {type(repeats)}).")
@frame_base.with_docs_from(pd.Series.str)
@frame_base.args_to_kwargs(pd.Series.str)
def get_dummies(self, **kwargs):
"""
Series must be categorical dtype. Please cast to ``CategoricalDtype``
to ensure correct categories.
"""
dtype = self._expr.proxy().dtype
if not isinstance(dtype, pd.CategoricalDtype):
raise frame_base.WontImplementError(
"get_dummies() of non-categorical type is not supported because "
"the type of the output column depends on the data. Please use "
"pd.CategoricalDtype with explicit categories.",
reason="non-deferred-columns")
split_cats = [
cat.split(sep=kwargs.get('sep', '|')) for cat in dtype.categories
]
# Adding the nan category because there could be the case that
# the data includes NaNs, which is not valid to be casted as a Category,
# but nevertheless would be broadcasted as a column in get_dummies()
columns = sorted(set().union(*split_cats))
columns = columns + ['nan'] if 'nan' not in columns else columns
proxy = pd.DataFrame(columns=columns).astype(int)
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'get_dummies',
lambda series: pd.concat(
[proxy, series.str.get_dummies(**kwargs)]
).fillna(value=0, method=None).astype('int64'),
[self._expr],
proxy=proxy,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
def _split_helper(self, rsplit=False, **kwargs):
expand = kwargs.get('expand', False)
if not expand:
# Not creating separate columns
proxy = self._expr.proxy()
if not rsplit:
func = lambda s: pd.concat([proxy, s.str.split(**kwargs)])
else:
func = lambda s: pd.concat([proxy, s.str.rsplit(**kwargs)])
else:
# Creating separate columns, so must be more strict on dtype
dtype = self._expr.proxy().dtype
if not isinstance(dtype, pd.CategoricalDtype):
method_name = 'rsplit' if rsplit else 'split'
raise frame_base.WontImplementError(
f"{method_name}() of non-categorical type is not supported because "
"the type of the output column depends on the data. Please use "
"pd.CategoricalDtype with explicit categories.",
reason="non-deferred-columns")
# Split the categories
split_cats = dtype.categories.str.split(**kwargs)
# Count the number of new columns to create for proxy
max_splits = len(max(split_cats, key=len))
proxy = pd.DataFrame(columns=range(max_splits))
def func(s):
if not rsplit:
result = s.str.split(**kwargs)
else:
result = s.str.rsplit(**kwargs)
result[~result.isna()].replace(np.nan, value=None)
return result
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'split',
func,
[self._expr],
proxy=proxy,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
@frame_base.with_docs_from(pd.Series.str)
@frame_base.args_to_kwargs(pd.Series.str)
@frame_base.populate_defaults(pd.Series.str)
def split(self, **kwargs):
"""
Like other non-deferred methods, dtype must be CategoricalDtype.
One exception is when ``expand`` is ``False``. Because we are not
creating new columns at construction time, dtype can be `str`.
"""
return self._split_helper(rsplit=False, **kwargs)
@frame_base.with_docs_from(pd.Series.str)
@frame_base.args_to_kwargs(pd.Series.str)
@frame_base.populate_defaults(pd.Series.str)
def rsplit(self, **kwargs):
"""
Like other non-deferred methods, dtype must be CategoricalDtype.
One exception is when ``expand`` is ``False``. Because we are not
creating new columns at construction time, dtype can be `str`.
"""
return self._split_helper(rsplit=True, **kwargs)
ELEMENTWISE_STRING_METHODS = [
'capitalize',
'casefold',
'contains',
'count',
'endswith',
'extract',
'findall',
'fullmatch',
'get',
'isalnum',
'isalpha',
'isdecimal',
'isdigit',
'islower',
'isnumeric',
'isspace',
'istitle',
'isupper',
'join',
'len',
'lower',
'lstrip',
'match',
'pad',
'partition',
'removeprefix',
'removesuffix',
'replace',
'rpartition',
'rstrip',
'slice',
'slice_replace',
'startswith',
'strip',
'swapcase',
'title',
'upper',
'wrap',
'zfill',
'__getitem__',
]
NON_ELEMENTWISE_STRING_METHODS = [
'extractall',
]
def make_str_func(method):
def func(df, *args, **kwargs):
try:
df_str = df.str
except AttributeError:
# If there's a non-string value in a Series passed to .str method, pandas
# will generally just replace it with NaN in the result. However if
# there are _only_ non-string values, pandas will raise:
#
# AttributeError: Can only use .str accessor with string values!
#
# This can happen to us at execution time if we split a partition that is
# only non-strings. This branch just replaces all those values with NaN
# in that case.
return df.map(lambda _: np.nan)
else:
return getattr(df_str, method)(*args, **kwargs)
return func
for method in ELEMENTWISE_STRING_METHODS:
if not hasattr(pd.Series.str, method):
# older versions (1.0.x) don't support some of these methods
continue
setattr(_DeferredStringMethods,
method,
frame_base._elementwise_method(make_str_func(method),
name=method,
base=pd.Series.str))
for method in NON_ELEMENTWISE_STRING_METHODS:
if not hasattr(pd.Series.str, method):
# older versions (1.0.x) don't support some of these methods
continue
setattr(_DeferredStringMethods,
method,
frame_base._proxy_method(
make_str_func(method),
name=method,
base=pd.Series.str,
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Singleton()))
def make_cat_func(method):
def func(df, *args, **kwargs):
return getattr(df.cat, method)(*args, **kwargs)
return func
class _DeferredCategoricalMethods(frame_base.DeferredBase):
@property # type: ignore
@frame_base.with_docs_from(pd.core.arrays.categorical.CategoricalAccessor)
def categories(self):
return self._expr.proxy().cat.categories
@property # type: ignore
@frame_base.with_docs_from(pd.core.arrays.categorical.CategoricalAccessor)
def ordered(self):
return self._expr.proxy().cat.ordered
@property # type: ignore
@frame_base.with_docs_from(pd.core.arrays.categorical.CategoricalAccessor)
def codes(self):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'codes',
lambda s: s.cat.codes,
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary(),
)
)
remove_unused_categories = frame_base.wont_implement_method(
pd.core.arrays.categorical.CategoricalAccessor,
'remove_unused_categories', reason="non-deferred-columns")
ELEMENTWISE_CATEGORICAL_METHODS = [
'add_categories',
'as_ordered',
'as_unordered',
'remove_categories',
'rename_categories',
'reorder_categories',
'set_categories',
]
for method in ELEMENTWISE_CATEGORICAL_METHODS:
setattr(_DeferredCategoricalMethods,
method,
frame_base._elementwise_method(
make_cat_func(method), name=method,
base=pd.core.arrays.categorical.CategoricalAccessor))
class _DeferredDatetimeMethods(frame_base.DeferredBase):
@property # type: ignore
@frame_base.with_docs_from(pd.core.indexes.accessors.DatetimeProperties)
def tz(self):
return self._expr.proxy().dt.tz
@property # type: ignore
@frame_base.with_docs_from(pd.core.indexes.accessors.DatetimeProperties)
def freq(self):
return self._expr.proxy().dt.freq
@frame_base.with_docs_from(pd.core.indexes.accessors.DatetimeProperties)
def tz_localize(self, *args, ambiguous='infer', **kwargs):
"""``ambiguous`` cannot be set to ``"infer"`` as its semantics are
order-sensitive. Similarly, specifying ``ambiguous`` as an
:class:`~numpy.ndarray` is order-sensitive, but you can achieve similar
functionality by specifying ``ambiguous`` as a Series."""
if isinstance(ambiguous, np.ndarray):
raise frame_base.WontImplementError(
"tz_localize(ambiguous=ndarray) is not supported because it makes "
"this operation sensitive to the order of the data. Please use a "
"DeferredSeries instead.",
reason="order-sensitive")
elif isinstance(ambiguous, frame_base.DeferredFrame):
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'tz_localize',
lambda s,
ambiguous: s.dt.tz_localize(*args, ambiguous=ambiguous, **kwargs),
[self._expr, ambiguous._expr],
requires_partition_by=partitionings.Index(),
preserves_partition_by=partitionings.Arbitrary()))
elif ambiguous == 'infer':
# infer attempts to infer based on the order of the timestamps
raise frame_base.WontImplementError(
f"tz_localize(ambiguous={ambiguous!r}) is not allowed because it "
"makes this operation sensitive to the order of the data.",
reason="order-sensitive")
return frame_base.DeferredFrame.wrap(
expressions.ComputedExpression(
'tz_localize',
lambda s: s.dt.tz_localize(*args, ambiguous=ambiguous, **kwargs),
[self._expr],
requires_partition_by=partitionings.Arbitrary(),
preserves_partition_by=partitionings.Arbitrary()))
to_period = frame_base.wont_implement_method(
pd.core.indexes.accessors.DatetimeProperties, 'to_period',
reason="event-time-semantics")
to_pydatetime = frame_base.wont_implement_method(
pd.core.indexes.accessors.DatetimeProperties, 'to_pydatetime',
reason="non-deferred-result")
to_pytimedelta = frame_base.wont_implement_method(
pd.core.indexes.accessors.DatetimeProperties, 'to_pytimedelta',
reason="non-deferred-result")
def make_dt_property(method):
def func(df):
return getattr(df.dt, method)
return func
def make_dt_func(method):
def func(df, *args, **kwargs):
return getattr(df.dt, method)(*args, **kwargs)
return func
ELEMENTWISE_DATETIME_METHODS = [
'ceil',
'day_name',
'month_name',
'floor',
'isocalendar',
'round',
'normalize',
'strftime',
'tz_convert',
]
for method in ELEMENTWISE_DATETIME_METHODS:
if not hasattr(pd.core.indexes.accessors.DatetimeProperties, method):
# older versions (1.0.x) don't support some of these methods
continue
setattr(_DeferredDatetimeMethods,
method,
frame_base._elementwise_method(
make_dt_func(method),
name=method,
base=pd.core.indexes.accessors.DatetimeProperties))
ELEMENTWISE_DATETIME_PROPERTIES = [
'date',
'day',
'dayofweek',
'dayofyear',
'days_in_month',
'daysinmonth',
'hour',
'is_leap_year',
'is_month_end',
'is_month_start',
'is_quarter_end',
'is_quarter_start',
'is_year_end',
'is_year_start',
'microsecond',
'minute',
'month',
'nanosecond',
'quarter',
'second',
'time',
'timetz',
'weekday',
'year',
]
# Pandas 2 removed these.
if PD_VERSION < (2, 0):
ELEMENTWISE_DATETIME_PROPERTIES += ['week', 'weekofyear']
for method in ELEMENTWISE_DATETIME_PROPERTIES:
setattr(_DeferredDatetimeMethods,
method,
property(frame_base._elementwise_method(
make_dt_property(method),
name=method,
base=pd.core.indexes.accessors.DatetimeProperties)))
for base in ['add',
'sub',
'mul',
'div',
'truediv',
'floordiv',
'mod',
'divmod',
'pow',
'and',
'or']:
for p in ['%s', 'r%s', '__%s__', '__r%s__']:
# TODO: non-trivial level?
name = p % base
if hasattr(pd.Series, name):
setattr(
DeferredSeries,
name,
frame_base._elementwise_method(name, restrictions={'level': None},
base=pd.Series))
if hasattr(pd.DataFrame, name):
setattr(
DeferredDataFrame,
name,
frame_base._elementwise_method(name, restrictions={'level': None},
base=pd.DataFrame))
inplace_name = '__i%s__' % base
if hasattr(pd.Series, inplace_name):
setattr(
DeferredSeries,
inplace_name,
frame_base._elementwise_method(inplace_name, inplace=True,
base=pd.Series))
if hasattr(pd.DataFrame, inplace_name):
setattr(
DeferredDataFrame,
inplace_name,
frame_base._elementwise_method(inplace_name, inplace=True,
base=pd.DataFrame))
# Allow dataframe | SchemaTransform
def _create_maybe_elementwise_or(base):
elementwise = frame_base._elementwise_method(
'__or__', restrictions={'level': None}, base=base)
def _maybe_elementwise_or(self, right):
if isinstance(right, PTransform):
return convert.to_dataframe(convert.to_pcollection(self) | right)
else:
return elementwise(self, right)
return _maybe_elementwise_or
DeferredSeries.__or__ = _create_maybe_elementwise_or(pd.Series) # type: ignore
DeferredDataFrame.__or__ = _create_maybe_elementwise_or(pd.DataFrame) # type: ignore
for name in ['lt', 'le', 'gt', 'ge', 'eq', 'ne']:
for p in '%s', '__%s__':
# Note that non-underscore name is used for both as the __xxx__ methods are
# order-sensitive.
setattr(DeferredSeries, p % name,
frame_base._elementwise_method(name, base=pd.Series))
setattr(DeferredDataFrame, p % name,
frame_base._elementwise_method(name, base=pd.DataFrame))
for name in ['__neg__', '__pos__', '__invert__']:
setattr(DeferredSeries, name,
frame_base._elementwise_method(name, base=pd.Series))
setattr(DeferredDataFrame, name,
frame_base._elementwise_method(name, base=pd.DataFrame))
DeferredSeries.multiply = DeferredSeries.mul # type: ignore
DeferredDataFrame.multiply = DeferredDataFrame.mul # type: ignore
DeferredSeries.subtract = DeferredSeries.sub # type: ignore
DeferredDataFrame.subtract = DeferredDataFrame.sub # type: ignore
DeferredSeries.divide = DeferredSeries.div # type: ignore
DeferredDataFrame.divide = DeferredDataFrame.div # type: ignore
def _slice_parts(s):
yield s.start
yield s.stop
yield s.step
def _is_null_slice(s):
return isinstance(s, slice) and all(x is None for x in _slice_parts(s))
def _is_integer_slice(s):
return isinstance(s, slice) and all(
x is None or isinstance(x, int)
for x in _slice_parts(s)) and not _is_null_slice(s)