A PyQT GUI application for converting InfoLease report outputs into Excel files. Handles parsing and summarizing. Learns where files are meant to be store and compiles monthly and yearly summaries.
You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
InfoLeaseExtract/venv/Lib/site-packages/pandas/tests/arrays/masked/test_arithmetic.py

181 lines
5.6 KiB

from __future__ import annotations
from typing import Any
import numpy as np
import pytest
import pandas as pd
import pandas._testing as tm
# integer dtypes
arrays = [pd.array([1, 2, 3, None], dtype=dtype) for dtype in tm.ALL_INT_EA_DTYPES]
scalars: list[Any] = [2] * len(arrays)
# floating dtypes
arrays += [pd.array([0.1, 0.2, 0.3, None], dtype=dtype) for dtype in tm.FLOAT_EA_DTYPES]
scalars += [0.2, 0.2]
# boolean
arrays += [pd.array([True, False, True, None], dtype="boolean")]
scalars += [False]
@pytest.fixture(params=zip(arrays, scalars), ids=[a.dtype.name for a in arrays])
def data(request):
return request.param
def check_skip(data, op_name):
if isinstance(data.dtype, pd.BooleanDtype) and "sub" in op_name:
pytest.skip("subtract not implemented for boolean")
# Test equivalence of scalars, numpy arrays with array ops
# -----------------------------------------------------------------------------
def test_array_scalar_like_equivalence(data, all_arithmetic_operators):
data, scalar = data
op = tm.get_op_from_name(all_arithmetic_operators)
check_skip(data, all_arithmetic_operators)
scalar_array = pd.array([scalar] * len(data), dtype=data.dtype)
# TODO also add len-1 array (np.array([scalar], dtype=data.dtype.numpy_dtype))
for scalar in [scalar, data.dtype.type(scalar)]:
result = op(data, scalar)
expected = op(data, scalar_array)
tm.assert_extension_array_equal(result, expected)
def test_array_NA(data, all_arithmetic_operators, request):
data, _ = data
op = tm.get_op_from_name(all_arithmetic_operators)
check_skip(data, all_arithmetic_operators)
scalar = pd.NA
scalar_array = pd.array([pd.NA] * len(data), dtype=data.dtype)
result = op(data, scalar)
expected = op(data, scalar_array)
tm.assert_extension_array_equal(result, expected)
def test_numpy_array_equivalence(data, all_arithmetic_operators):
data, scalar = data
op = tm.get_op_from_name(all_arithmetic_operators)
check_skip(data, all_arithmetic_operators)
numpy_array = np.array([scalar] * len(data), dtype=data.dtype.numpy_dtype)
pd_array = pd.array(numpy_array, dtype=data.dtype)
result = op(data, numpy_array)
expected = op(data, pd_array)
tm.assert_extension_array_equal(result, expected)
# Test equivalence with Series and DataFrame ops
# -----------------------------------------------------------------------------
def test_frame(data, all_arithmetic_operators):
data, scalar = data
op = tm.get_op_from_name(all_arithmetic_operators)
check_skip(data, all_arithmetic_operators)
# DataFrame with scalar
df = pd.DataFrame({"A": data})
result = op(df, scalar)
expected = pd.DataFrame({"A": op(data, scalar)})
tm.assert_frame_equal(result, expected)
def test_series(data, all_arithmetic_operators):
data, scalar = data
op = tm.get_op_from_name(all_arithmetic_operators)
check_skip(data, all_arithmetic_operators)
s = pd.Series(data)
# Series with scalar
result = op(s, scalar)
expected = pd.Series(op(data, scalar))
tm.assert_series_equal(result, expected)
# Series with np.ndarray
other = np.array([scalar] * len(data), dtype=data.dtype.numpy_dtype)
result = op(s, other)
expected = pd.Series(op(data, other))
tm.assert_series_equal(result, expected)
# Series with pd.array
other = pd.array([scalar] * len(data), dtype=data.dtype)
result = op(s, other)
expected = pd.Series(op(data, other))
tm.assert_series_equal(result, expected)
# Series with Series
other = pd.Series([scalar] * len(data), dtype=data.dtype)
result = op(s, other)
expected = pd.Series(op(data, other.array))
tm.assert_series_equal(result, expected)
# Test generic characteristics / errors
# -----------------------------------------------------------------------------
def test_error_invalid_object(data, all_arithmetic_operators):
data, _ = data
op = all_arithmetic_operators
opa = getattr(data, op)
# 2d -> return NotImplemented
result = opa(pd.DataFrame({"A": data}))
assert result is NotImplemented
msg = r"can only perform ops with 1-d structures"
with pytest.raises(NotImplementedError, match=msg):
opa(np.arange(len(data)).reshape(-1, len(data)))
def test_error_len_mismatch(data, all_arithmetic_operators):
# operating with a list-like with non-matching length raises
data, scalar = data
op = tm.get_op_from_name(all_arithmetic_operators)
other = [scalar] * (len(data) - 1)
for other in [other, np.array(other)]:
with pytest.raises(ValueError, match="Lengths must match"):
op(data, other)
s = pd.Series(data)
with pytest.raises(ValueError, match="Lengths must match"):
op(s, other)
@pytest.mark.parametrize("op", ["__neg__", "__abs__", "__invert__"])
def test_unary_op_does_not_propagate_mask(data, op, request):
# https://github.com/pandas-dev/pandas/issues/39943
data, _ = data
ser = pd.Series(data)
if op == "__invert__" and data.dtype.kind == "f":
# we follow numpy in raising
msg = "ufunc 'invert' not supported for the input types"
with pytest.raises(TypeError, match=msg):
getattr(ser, op)()
with pytest.raises(TypeError, match=msg):
getattr(data, op)()
with pytest.raises(TypeError, match=msg):
# Check that this is still the numpy behavior
getattr(data._data, op)()
return
result = getattr(ser, op)()
expected = result.copy(deep=True)
ser[0] = None
tm.assert_series_equal(result, expected)