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arithmetic.py
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import operator
import warnings
import numpy as np
import pandas as pd
from pandas import DataFrame, Series, Timestamp, date_range, to_timedelta
import pandas._testing as tm
from pandas.core.algorithms import checked_add_with_arr
from .pandas_vb_common import numeric_dtypes
try:
import pandas.core.computation.expressions as expr
except ImportError:
import pandas.computation.expressions as expr
try:
import pandas.tseries.holiday
except ImportError:
pass
class IntFrameWithScalar:
params = [
[np.float64, np.int64],
[2, 3.0, np.int32(4), np.float64(5)],
[
operator.add,
operator.sub,
operator.mul,
operator.truediv,
operator.floordiv,
operator.pow,
operator.mod,
operator.eq,
operator.ne,
operator.gt,
operator.ge,
operator.lt,
operator.le,
],
]
param_names = ["dtype", "scalar", "op"]
def setup(self, dtype, scalar, op):
arr = np.random.randn(20000, 100)
self.df = DataFrame(arr.astype(dtype))
def time_frame_op_with_scalar(self, dtype, scalar, op):
op(self.df, scalar)
class OpWithFillValue:
def setup(self):
# GH#31300
arr = np.arange(10 ** 6)
df = DataFrame({"A": arr})
ser = df["A"]
self.df = df
self.ser = ser
def time_frame_op_with_fill_value_no_nas(self):
self.df.add(self.df, fill_value=4)
def time_series_op_with_fill_value_no_nas(self):
self.ser.add(self.ser, fill_value=4)
class MixedFrameWithSeriesAxis:
params = [
[
"eq",
"ne",
"lt",
"le",
"ge",
"gt",
"add",
"sub",
"truediv",
"floordiv",
"mul",
"pow",
]
]
param_names = ["opname"]
def setup(self, opname):
arr = np.arange(10 ** 6).reshape(1000, -1)
df = DataFrame(arr)
df["C"] = 1.0
self.df = df
self.ser = df[0]
self.row = df.iloc[0]
def time_frame_op_with_series_axis0(self, opname):
getattr(self.df, opname)(self.ser, axis=0)
def time_frame_op_with_series_axis1(self, opname):
getattr(operator, opname)(self.df, self.ser)
class Ops:
params = [[True, False], ["default", 1]]
param_names = ["use_numexpr", "threads"]
def setup(self, use_numexpr, threads):
self.df = DataFrame(np.random.randn(20000, 100))
self.df2 = DataFrame(np.random.randn(20000, 100))
if threads != "default":
expr.set_numexpr_threads(threads)
if not use_numexpr:
expr.set_use_numexpr(False)
def time_frame_add(self, use_numexpr, threads):
self.df + self.df2
def time_frame_mult(self, use_numexpr, threads):
self.df * self.df2
def time_frame_multi_and(self, use_numexpr, threads):
self.df[(self.df > 0) & (self.df2 > 0)]
def time_frame_comparison(self, use_numexpr, threads):
self.df > self.df2
def teardown(self, use_numexpr, threads):
expr.set_use_numexpr(True)
expr.set_numexpr_threads()
class Ops2:
def setup(self):
N = 10 ** 3
self.df = DataFrame(np.random.randn(N, N))
self.df2 = DataFrame(np.random.randn(N, N))
self.df_int = DataFrame(
np.random.randint(
np.iinfo(np.int16).min, np.iinfo(np.int16).max, size=(N, N)
)
)
self.df2_int = DataFrame(
np.random.randint(
np.iinfo(np.int16).min, np.iinfo(np.int16).max, size=(N, N)
)
)
self.s = Series(np.random.randn(N))
# Division
def time_frame_float_div(self):
self.df // self.df2
def time_frame_float_div_by_zero(self):
self.df / 0
def time_frame_float_floor_by_zero(self):
self.df // 0
def time_frame_int_div_by_zero(self):
self.df_int / 0
# Modulo
def time_frame_int_mod(self):
self.df_int % self.df2_int
def time_frame_float_mod(self):
self.df % self.df2
# Dot product
def time_frame_dot(self):
self.df.dot(self.df2)
def time_series_dot(self):
self.s.dot(self.s)
def time_frame_series_dot(self):
self.df.dot(self.s)
class Timeseries:
params = [None, "US/Eastern"]
param_names = ["tz"]
def setup(self, tz):
N = 10 ** 6
halfway = (N // 2) - 1
self.s = Series(date_range("20010101", periods=N, freq="T", tz=tz))
self.ts = self.s[halfway]
self.s2 = Series(date_range("20010101", periods=N, freq="s", tz=tz))
def time_series_timestamp_compare(self, tz):
self.s <= self.ts
def time_timestamp_series_compare(self, tz):
self.ts >= self.s
def time_timestamp_ops_diff(self, tz):
self.s2.diff()
def time_timestamp_ops_diff_with_shift(self, tz):
self.s - self.s.shift()
class IrregularOps:
def setup(self):
N = 10 ** 5
idx = date_range(start="1/1/2000", periods=N, freq="s")
s = Series(np.random.randn(N), index=idx)
self.left = s.sample(frac=1)
self.right = s.sample(frac=1)
def time_add(self):
self.left + self.right
class TimedeltaOps:
def setup(self):
self.td = to_timedelta(np.arange(1000000))
self.ts = Timestamp("2000")
def time_add_td_ts(self):
self.td + self.ts
class CategoricalComparisons:
params = ["__lt__", "__le__", "__eq__", "__ne__", "__ge__", "__gt__"]
param_names = ["op"]
def setup(self, op):
N = 10 ** 5
self.cat = pd.Categorical(list("aabbcd") * N, ordered=True)
def time_categorical_op(self, op):
getattr(self.cat, op)("b")
class IndexArithmetic:
params = ["float", "int"]
param_names = ["dtype"]
def setup(self, dtype):
N = 10 ** 6
indexes = {"int": "makeIntIndex", "float": "makeFloatIndex"}
self.index = getattr(tm, indexes[dtype])(N)
def time_add(self, dtype):
self.index + 2
def time_subtract(self, dtype):
self.index - 2
def time_multiply(self, dtype):
self.index * 2
def time_divide(self, dtype):
self.index / 2
def time_modulo(self, dtype):
self.index % 2
class NumericInferOps:
# from GH 7332
params = numeric_dtypes
param_names = ["dtype"]
def setup(self, dtype):
N = 5 * 10 ** 5
self.df = DataFrame(
{"A": np.arange(N).astype(dtype), "B": np.arange(N).astype(dtype)}
)
def time_add(self, dtype):
self.df["A"] + self.df["B"]
def time_subtract(self, dtype):
self.df["A"] - self.df["B"]
def time_multiply(self, dtype):
self.df["A"] * self.df["B"]
def time_divide(self, dtype):
self.df["A"] / self.df["B"]
def time_modulo(self, dtype):
self.df["A"] % self.df["B"]
class DateInferOps:
# from GH 7332
def setup_cache(self):
N = 5 * 10 ** 5
df = DataFrame({"datetime64": np.arange(N).astype("datetime64[ms]")})
df["timedelta"] = df["datetime64"] - df["datetime64"]
return df
def time_subtract_datetimes(self, df):
df["datetime64"] - df["datetime64"]
def time_timedelta_plus_datetime(self, df):
df["timedelta"] + df["datetime64"]
def time_add_timedeltas(self, df):
df["timedelta"] + df["timedelta"]
class AddOverflowScalar:
params = [1, -1, 0]
param_names = ["scalar"]
def setup(self, scalar):
N = 10 ** 6
self.arr = np.arange(N)
def time_add_overflow_scalar(self, scalar):
checked_add_with_arr(self.arr, scalar)
class AddOverflowArray:
def setup(self):
N = 10 ** 6
self.arr = np.arange(N)
self.arr_rev = np.arange(-N, 0)
self.arr_mixed = np.array([1, -1]).repeat(N / 2)
self.arr_nan_1 = np.random.choice([True, False], size=N)
self.arr_nan_2 = np.random.choice([True, False], size=N)
def time_add_overflow_arr_rev(self):
checked_add_with_arr(self.arr, self.arr_rev)
def time_add_overflow_arr_mask_nan(self):
checked_add_with_arr(self.arr, self.arr_mixed, arr_mask=self.arr_nan_1)
def time_add_overflow_b_mask_nan(self):
checked_add_with_arr(self.arr, self.arr_mixed, b_mask=self.arr_nan_1)
def time_add_overflow_both_arg_nan(self):
checked_add_with_arr(
self.arr, self.arr_mixed, arr_mask=self.arr_nan_1, b_mask=self.arr_nan_2
)
hcal = pd.tseries.holiday.USFederalHolidayCalendar()
# These offsets currently raise a NotImplimentedError with .apply_index()
non_apply = [
pd.offsets.Day(),
pd.offsets.BYearEnd(),
pd.offsets.BYearBegin(),
pd.offsets.BQuarterEnd(),
pd.offsets.BQuarterBegin(),
pd.offsets.BMonthEnd(),
pd.offsets.BMonthBegin(),
pd.offsets.CustomBusinessDay(),
pd.offsets.CustomBusinessDay(calendar=hcal),
pd.offsets.CustomBusinessMonthBegin(calendar=hcal),
pd.offsets.CustomBusinessMonthEnd(calendar=hcal),
pd.offsets.CustomBusinessMonthEnd(calendar=hcal),
]
other_offsets = [
pd.offsets.YearEnd(),
pd.offsets.YearBegin(),
pd.offsets.QuarterEnd(),
pd.offsets.QuarterBegin(),
pd.offsets.MonthEnd(),
pd.offsets.MonthBegin(),
pd.offsets.DateOffset(months=2, days=2),
pd.offsets.BusinessDay(),
pd.offsets.SemiMonthEnd(),
pd.offsets.SemiMonthBegin(),
]
offsets = non_apply + other_offsets
class OffsetArrayArithmetic:
params = offsets
param_names = ["offset"]
def setup(self, offset):
N = 10000
rng = pd.date_range(start="1/1/2000", periods=N, freq="T")
self.rng = rng
self.ser = pd.Series(rng)
def time_add_series_offset(self, offset):
with warnings.catch_warnings(record=True):
self.ser + offset
def time_add_dti_offset(self, offset):
with warnings.catch_warnings(record=True):
self.rng + offset
class ApplyIndex:
params = other_offsets
param_names = ["offset"]
def setup(self, offset):
N = 10000
rng = pd.date_range(start="1/1/2000", periods=N, freq="T")
self.rng = rng
def time_apply_index(self, offset):
offset.apply_index(self.rng)
from .pandas_vb_common import setup # noqa: F401 isort:skip