ai-content-maker/.venv/Lib/site-packages/pandas/_libs/ops.pyx

311 lines
7.6 KiB
Cython
Raw Normal View History

2024-05-03 04:18:51 +03:00
import operator
cimport cython
from cpython.object cimport (
Py_EQ,
Py_GE,
Py_GT,
Py_LE,
Py_LT,
Py_NE,
PyObject_RichCompareBool,
)
from cython cimport Py_ssize_t
import numpy as np
from numpy cimport (
import_array,
ndarray,
uint8_t,
)
import_array()
from pandas._libs.missing cimport checknull
from pandas._libs.util cimport is_nan
@cython.wraparound(False)
@cython.boundscheck(False)
def scalar_compare(object[:] values, object val, object op) -> ndarray:
"""
Compare each element of `values` array with the scalar `val`, with
the comparison operation described by `op`.
Parameters
----------
values : ndarray[object]
val : object
op : {operator.eq, operator.ne,
operator.le, operator.lt,
operator.ge, operator.gt}
Returns
-------
result : ndarray[bool]
"""
cdef:
Py_ssize_t i, n = len(values)
ndarray[uint8_t, cast=True] result
bint isnull_val
int flag
object x
if op is operator.lt:
flag = Py_LT
elif op is operator.le:
flag = Py_LE
elif op is operator.gt:
flag = Py_GT
elif op is operator.ge:
flag = Py_GE
elif op is operator.eq:
flag = Py_EQ
elif op is operator.ne:
flag = Py_NE
else:
raise ValueError('Unrecognized operator')
result = np.empty(n, dtype=bool).view(np.uint8)
isnull_val = checknull(val)
if flag == Py_NE:
for i in range(n):
x = values[i]
if checknull(x):
result[i] = True
elif isnull_val:
result[i] = True
else:
try:
result[i] = PyObject_RichCompareBool(x, val, flag)
except TypeError:
result[i] = True
elif flag == Py_EQ:
for i in range(n):
x = values[i]
if checknull(x):
result[i] = False
elif isnull_val:
result[i] = False
else:
try:
result[i] = PyObject_RichCompareBool(x, val, flag)
except TypeError:
result[i] = False
else:
for i in range(n):
x = values[i]
if checknull(x):
result[i] = False
elif isnull_val:
result[i] = False
else:
result[i] = PyObject_RichCompareBool(x, val, flag)
return result.view(bool)
@cython.wraparound(False)
@cython.boundscheck(False)
def vec_compare(ndarray[object] left, ndarray[object] right, object op) -> ndarray:
"""
Compare the elements of `left` with the elements of `right` pointwise,
with the comparison operation described by `op`.
Parameters
----------
left : ndarray[object]
right : ndarray[object]
op : {operator.eq, operator.ne,
operator.le, operator.lt,
operator.ge, operator.gt}
Returns
-------
result : ndarray[bool]
"""
cdef:
Py_ssize_t i, n = len(left)
ndarray[uint8_t, cast=True] result
int flag
if n != <Py_ssize_t>len(right):
raise ValueError(f'Arrays were different lengths: {n} vs {len(right)}')
if op is operator.lt:
flag = Py_LT
elif op is operator.le:
flag = Py_LE
elif op is operator.gt:
flag = Py_GT
elif op is operator.ge:
flag = Py_GE
elif op is operator.eq:
flag = Py_EQ
elif op is operator.ne:
flag = Py_NE
else:
raise ValueError('Unrecognized operator')
result = np.empty(n, dtype=bool).view(np.uint8)
if flag == Py_NE:
for i in range(n):
x = left[i]
y = right[i]
if checknull(x) or checknull(y):
result[i] = True
else:
result[i] = PyObject_RichCompareBool(x, y, flag)
else:
for i in range(n):
x = left[i]
y = right[i]
if checknull(x) or checknull(y):
result[i] = False
else:
result[i] = PyObject_RichCompareBool(x, y, flag)
return result.view(bool)
@cython.wraparound(False)
@cython.boundscheck(False)
def scalar_binop(object[:] values, object val, object op) -> ndarray:
"""
Apply the given binary operator `op` between each element of the array
`values` and the scalar `val`.
Parameters
----------
values : ndarray[object]
val : object
op : binary operator
Returns
-------
result : ndarray[object]
"""
cdef:
Py_ssize_t i, n = len(values)
object[::1] result
object x
result = np.empty(n, dtype=object)
if val is None or is_nan(val):
result[:] = val
return result.base # `.base` to access underlying np.ndarray
for i in range(n):
x = values[i]
if x is None or is_nan(x):
result[i] = x
else:
result[i] = op(x, val)
return maybe_convert_bool(result.base)[0]
@cython.wraparound(False)
@cython.boundscheck(False)
def vec_binop(object[:] left, object[:] right, object op) -> ndarray:
"""
Apply the given binary operator `op` pointwise to the elements of
arrays `left` and `right`.
Parameters
----------
left : ndarray[object]
right : ndarray[object]
op : binary operator
Returns
-------
result : ndarray[object]
"""
cdef:
Py_ssize_t i, n = len(left)
object[::1] result
if n != <Py_ssize_t>len(right):
raise ValueError(f'Arrays were different lengths: {n} vs {len(right)}')
result = np.empty(n, dtype=object)
for i in range(n):
x = left[i]
y = right[i]
try:
result[i] = op(x, y)
except TypeError:
if x is None or is_nan(x):
result[i] = x
elif y is None or is_nan(y):
result[i] = y
else:
raise
return maybe_convert_bool(result.base)[0] # `.base` to access np.ndarray
def maybe_convert_bool(ndarray[object] arr,
true_values=None,
false_values=None,
convert_to_masked_nullable=False
) -> tuple[np.ndarray, np.ndarray | None]:
cdef:
Py_ssize_t i, n
ndarray[uint8_t] result
ndarray[uint8_t] mask
object val
set true_vals, false_vals
bint has_na = False
n = len(arr)
result = np.empty(n, dtype=np.uint8)
mask = np.zeros(n, dtype=np.uint8)
# the defaults
true_vals = {'True', 'TRUE', 'true'}
false_vals = {'False', 'FALSE', 'false'}
if true_values is not None:
true_vals = true_vals | set(true_values)
if false_values is not None:
false_vals = false_vals | set(false_values)
for i in range(n):
val = arr[i]
if isinstance(val, bool):
if val is True:
result[i] = 1
else:
result[i] = 0
elif val in true_vals:
result[i] = 1
elif val in false_vals:
result[i] = 0
elif is_nan(val):
mask[i] = 1
result[i] = 0 # Value here doesn't matter, will be replaced w/ nan
has_na = True
else:
return (arr, None)
if has_na:
if convert_to_masked_nullable:
return (result.view(np.bool_), mask.view(np.bool_))
else:
arr = result.view(np.bool_).astype(object)
np.putmask(arr, mask, np.nan)
return (arr, None)
else:
return (result.view(np.bool_), None)