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test_binary_ufuncs.py
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test_binary_ufuncs.py
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# Owner(s): ["module: tests"]
import torch
import numpy as np
import itertools
from itertools import chain
from itertools import product
import math
import random
from numbers import Number
import unittest
import warnings
import operator
from functools import partial
import torch.autograd.forward_ad as fwAD
from torch import inf, nan
from torch.testing._internal.common_utils import (
TestCase,
slowTest,
iter_indices,
TEST_WITH_ASAN,
run_tests,
gradcheck,
torch_to_numpy_dtype_dict,
numpy_to_torch_dtype_dict,
TEST_SCIPY,
set_default_dtype,
)
from torch.testing._internal.common_device_type import (
expectedFailureMeta,
instantiate_device_type_tests,
onlyCUDA,
onlyCPU,
dtypes,
dtypesIfCUDA,
dtypesIfCPU,
deviceCountAtLeast,
precisionOverride,
onlyNativeDeviceTypes,
skipIf,
ops,
OpDTypes,
skipMeta,
)
from torch.testing import make_tensor
from torch.testing._internal.common_dtype import (
all_types_and_complex_and,
all_types_and,
integral_types,
complex_types,
integral_types_and,
floating_types_and,
floating_and_complex_types,
get_all_math_dtypes,
get_all_int_dtypes,
)
from torch.testing._internal.common_methods_invocations import (
binary_ufuncs,
binary_ufuncs_and_refs,
generate_elementwise_binary_tensors,
generate_elementwise_binary_small_value_tensors,
generate_elementwise_binary_large_value_tensors,
generate_elementwise_binary_extremal_value_tensors,
generate_elementwise_binary_broadcasting_tensors,
generate_elementwise_binary_with_scalar_samples,
generate_elementwise_binary_with_scalar_and_type_promotion_samples,
)
if TEST_SCIPY:
import scipy.special
import scipy.integrate
# TODO: update to use opinfos consistently
class TestBinaryUfuncs(TestCase):
# Generic tests for elementwise binary (AKA binary universal (u) functions (funcs))
# TODO: below contiguous tensor results are compared with a variety of noncontiguous results.
# It would be interesting to have the lhs and rhs have different discontiguities.
# Helper for comparing torch tensors and NumPy arrays
# TODO: should this or assertEqual also validate that strides are equal?
def assertEqualHelper(
self, actual, expected, msg, *, dtype, exact_dtype=True, **kwargs
):
assert isinstance(actual, torch.Tensor)
# Some NumPy functions return scalars, not arrays
if isinstance(expected, Number):
self.assertEqual(actual.item(), expected, msg=msg, **kwargs)
elif isinstance(expected, np.ndarray):
# Handles exact dtype comparisons between arrays and tensors
if exact_dtype:
# Allows array dtype to be float32 when comparing with bfloat16 tensors
# since NumPy doesn't support the bfloat16 dtype
# Also ops like scipy.special.erf, scipy.special.erfc, etc, promote float16
# to float32
if expected.dtype == np.float32:
assert actual.dtype in (
torch.float16,
torch.bfloat16,
torch.float32,
)
else:
assert expected.dtype == torch_to_numpy_dtype_dict[actual.dtype]
self.assertEqual(
actual,
torch.from_numpy(expected).to(actual.dtype),
msg,
exact_device=False,
**kwargs,
)
else:
self.assertEqual(actual, expected, msg, exact_device=False, **kwargs)
# Tests that the function and its (array-accepting) reference produce the same
# values on given tensors
def _test_reference_numerics(self, dtype, op, gen, equal_nan=True):
def _helper_reference_numerics(
expected, actual, msg, exact_dtype, equal_nan=True
):
if not torch.can_cast(
numpy_to_torch_dtype_dict[expected.dtype.type], dtype
):
exact_dtype = False
if dtype is torch.bfloat16 and expected.dtype == np.float32:
# Ref: https://github.com/pytorch/pytorch/blob/master/torch/testing/_internal/common_utils.py#L1149
self.assertEqualHelper(
actual,
expected,
msg,
dtype=dtype,
exact_dtype=exact_dtype,
rtol=16e-3,
atol=1e-5,
)
else:
self.assertEqualHelper(
actual,
expected,
msg,
dtype=dtype,
equal_nan=equal_nan,
exact_dtype=exact_dtype,
)
for sample in gen:
# Each sample input acquired from the generator is just one lhs tensor
# and one rhs tensor
l = sample.input
r = sample.args[0]
numpy_sample = sample.numpy()
l_numpy = numpy_sample.input
r_numpy = numpy_sample.args[0]
actual = op(l, r)
expected = op.ref(l_numpy, r_numpy)
# Crafts a custom error message for smaller, printable tensors
def _numel(x):
if isinstance(x, torch.Tensor):
return x.numel()
# Assumes x is a scalar
return 1
if _numel(l) <= 100 and _numel(r) <= 100:
msg = (
"Failed to produce expected results! Input lhs tensor was"
" {0}, rhs tensor was {1}, torch result is {2}, and reference result is"
" {3}."
).format(l, r, actual, expected)
else:
msg = None
exact_dtype = True
if isinstance(actual, torch.Tensor):
_helper_reference_numerics(
expected, actual, msg, exact_dtype, equal_nan
)
else:
for x, y in zip(expected, actual):
# testing multi-outputs results
_helper_reference_numerics(x, y, msg, exact_dtype, equal_nan)
# The following tests only apply to elementwise binary operators with references
binary_ufuncs_with_references = list(
filter(lambda op: op.ref is not None and op.ref is not None, binary_ufuncs)
)
@ops(binary_ufuncs_with_references)
def test_reference_numerics(self, device, dtype, op):
gen = generate_elementwise_binary_tensors(op, device=device, dtype=dtype)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
# runtime error: 128 is outside the range of representable values of type 'signed char'
@unittest.skipIf(TEST_WITH_ASAN, "Skipped under ASAN")
@ops(binary_ufuncs_with_references)
def test_reference_numerics_small_values(self, device, dtype, op):
if dtype is torch.bool:
self.skipTest("Doesn't support bool!")
gen = generate_elementwise_binary_small_value_tensors(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
# TODO: review if this skip is necessary
@unittest.skipIf(TEST_WITH_ASAN, "Skipped under ASAN")
@ops(
binary_ufuncs_with_references,
allowed_dtypes=(
torch.int16,
torch.int32,
torch.int64,
torch.float16,
torch.bfloat16,
torch.float32,
torch.float64,
torch.complex64,
torch.complex128,
),
)
def test_reference_numerics_large_values(self, device, dtype, op):
gen = generate_elementwise_binary_large_value_tensors(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
# TODO: review if this skip is necessary
@unittest.skipIf(TEST_WITH_ASAN, "Skipped under ASAN")
@ops(
binary_ufuncs_with_references,
allowed_dtypes=(
torch.float16,
torch.bfloat16,
torch.float32,
torch.float64,
torch.complex64,
torch.complex128,
),
)
def test_reference_numerics_extremal_values(self, device, dtype, op):
gen = generate_elementwise_binary_extremal_value_tensors(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
# tests broadcasting and noncontiguous broadcasting behavior
@ops(
binary_ufuncs_with_references,
allowed_dtypes=(
torch.long,
torch.float32,
),
)
def test_broadcasting(self, device, dtype, op):
gen = generate_elementwise_binary_broadcasting_tensors(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
@ops(
binary_ufuncs_with_references,
allowed_dtypes=(torch.long, torch.float32, torch.complex64),
)
def test_scalar_support(self, device, dtype, op):
gen = generate_elementwise_binary_with_scalar_samples(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
gen = generate_elementwise_binary_with_scalar_and_type_promotion_samples(
op, device=device, dtype=dtype
)
self._test_reference_numerics(dtype, op, gen, equal_nan=True)
@ops(binary_ufuncs)
def test_contig_vs_every_other(self, device, dtype, op):
lhs = make_tensor(
(1026,), device=device, dtype=dtype, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
(1026,), device=device, dtype=dtype, **op.rhs_make_tensor_kwargs
)
lhs_non_contig = lhs[::2]
rhs_non_contig = rhs[::2]
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertFalse(lhs_non_contig.is_contiguous())
self.assertFalse(rhs_non_contig.is_contiguous())
expected = op(lhs, rhs)[::2]
actual = op(lhs_non_contig, rhs_non_contig)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_contig_vs_transposed(self, device, dtype, op):
lhs = make_tensor(
(789, 357), device=device, dtype=dtype, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
(789, 357), device=device, dtype=dtype, **op.rhs_make_tensor_kwargs
)
lhs_non_contig = lhs.T
rhs_non_contig = rhs.T
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertFalse(lhs_non_contig.is_contiguous())
self.assertFalse(rhs_non_contig.is_contiguous())
expected = op(lhs, rhs).T
actual = op(lhs_non_contig, rhs_non_contig)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_non_contig(self, device, dtype, op):
shapes = ((5, 7), (1024,))
for shape in shapes:
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
lhs_non_contig = torch.empty(shape + (2,), device=device, dtype=dtype)[
..., 0
]
lhs_non_contig.copy_(lhs)
rhs_non_contig = torch.empty(shape + (2,), device=device, dtype=dtype)[
..., 0
]
rhs_non_contig.copy_(rhs)
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertFalse(lhs_non_contig.is_contiguous())
self.assertFalse(rhs_non_contig.is_contiguous())
expected = op(lhs, rhs)
actual = op(lhs_non_contig, rhs_non_contig)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_non_contig_index(self, device, dtype, op):
shape = (2, 2, 1, 2)
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
lhs_non_contig = lhs[:, 1, ...]
lhs = lhs_non_contig.contiguous()
rhs_non_contig = rhs[:, 1, ...]
rhs = rhs_non_contig.contiguous()
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertFalse(lhs_non_contig.is_contiguous())
self.assertFalse(rhs_non_contig.is_contiguous())
expected = op(lhs, rhs)
actual = op(lhs_non_contig, rhs_non_contig)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_non_contig_expand(self, device, dtype, op):
shapes = [(1, 3), (1, 7), (5, 7)]
for shape in shapes:
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
lhs_non_contig = lhs.clone().expand(3, -1, -1)
rhs_non_contig = rhs.clone().expand(3, -1, -1)
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertFalse(lhs_non_contig.is_contiguous())
self.assertFalse(rhs_non_contig.is_contiguous())
expected = op(lhs, rhs)
actual = op(lhs_non_contig, rhs_non_contig)
for i in range(3):
self.assertEqual(expected, actual[i])
@ops(binary_ufuncs)
def test_contig_size1(self, device, dtype, op):
shape = (5, 100)
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
lhs = lhs[:1, :50]
lhs_alt = torch.empty(lhs.size(), device=device, dtype=dtype)
lhs_alt.copy_(lhs)
rhs = rhs[:1, :50]
rhs_alt = torch.empty(rhs.size(), device=device, dtype=dtype)
rhs_alt.copy_(rhs)
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertTrue(lhs_alt.is_contiguous())
self.assertTrue(rhs_alt.is_contiguous())
expected = op(lhs, rhs)
actual = op(lhs_alt, rhs_alt)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_contig_size1_large_dim(self, device, dtype, op):
shape = (5, 2, 3, 1, 4, 5, 3, 2, 1, 2, 3, 4)
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
lhs = lhs[:1, :, :, :, :, :, :, :, :, :, :, :]
lhs_alt = torch.empty(lhs.size(), device=device, dtype=dtype)
lhs_alt.copy_(lhs)
rhs = rhs[:1, :, :, :, :, :, :, :, :, :, :, :]
rhs_alt = torch.empty(rhs.size(), device=device, dtype=dtype)
rhs_alt.copy_(rhs)
self.assertTrue(lhs.is_contiguous())
self.assertTrue(rhs.is_contiguous())
self.assertTrue(lhs_alt.is_contiguous())
self.assertTrue(rhs_alt.is_contiguous())
expected = op(lhs, rhs)
actual = op(lhs_alt, rhs_alt)
self.assertEqual(expected, actual)
@ops(binary_ufuncs)
def test_batch_vs_slicing(self, device, dtype, op):
shape = (32, 512)
lhs = make_tensor(
shape, dtype=dtype, device=device, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape, dtype=dtype, device=device, **op.rhs_make_tensor_kwargs
)
expected = op(lhs, rhs)
actual = []
for idx in range(32):
actual.append(op(lhs[idx], rhs[idx]))
actual = torch.stack(actual)
self.assertEqual(expected, actual)
# Tests that elementwise binary operators participate in type promotion properly
# NOTE: because the cross-product of all possible type promotion tests is huge, this
# just spot checks some handwritten cases.
# NOTE: It may be possible to refactor this test into something simpler
@ops(binary_ufuncs_and_refs, dtypes=OpDTypes.none)
def test_type_promotion(self, device, op):
supported_dtypes = op.supported_dtypes(torch.device(device).type)
make_lhs = partial(
make_tensor, (5,), device=device, **op.lhs_make_tensor_kwargs
)
make_rhs = partial(
make_tensor, (5,), device=device, **op.rhs_make_tensor_kwargs
)
make_rhs_scalar_tensor = partial(
make_tensor, (), device='cpu', **op.rhs_make_tensor_kwargs
)
def _supported(dtypes):
return all((x in supported_dtypes for x in dtypes))
# int x int type promotion
if _supported((torch.int16, torch.int32, torch.int64)):
lhs_i16 = make_lhs(dtype=torch.int16)
lhs_i32 = make_lhs(dtype=torch.int32)
lhs_i64 = make_lhs(dtype=torch.int64)
rhs_i16 = make_rhs(dtype=torch.int16)
rhs_i32 = make_rhs(dtype=torch.int32)
rhs_i64 = make_rhs(dtype=torch.int64)
if op.promotes_int_to_float:
default_dtype = torch.get_default_dtype()
self.assertEqual(op(lhs_i16, rhs_i32).dtype, default_dtype)
self.assertEqual(
op(lhs_i16, rhs_i32),
op(lhs_i16.to(default_dtype), rhs_i32.to(default_dtype)),
)
self.assertEqual(op(lhs_i32, rhs_i64).dtype, default_dtype)
self.assertEqual(
op(lhs_i32, rhs_i64),
op(lhs_i32.to(default_dtype), rhs_i64.to(default_dtype)),
)
elif op.always_returns_bool:
self.assertEqual(op(lhs_i16, rhs_i32).dtype, torch.bool)
self.assertEqual(op(lhs_i32, rhs_i64).dtype, torch.bool)
else: # standard type promotion
self.assertEqual(op(lhs_i16, rhs_i32).dtype, torch.int32)
self.assertEqual(
op(lhs_i16, rhs_i32), op(lhs_i16.to(torch.int32), rhs_i32)
)
self.assertEqual(op(lhs_i32, rhs_i64).dtype, torch.int64)
self.assertEqual(
op(lhs_i32, rhs_i64), op(lhs_i32.to(torch.int64), rhs_i64)
)
if op.supports_out:
if not op.promotes_int_to_float:
# Integers can be safely cast to other integer types
out = torch.empty_like(lhs_i64)
self.assertEqual(op(lhs_i16, rhs_i32, out=out).dtype, torch.int64)
self.assertEqual(op(lhs_i16, rhs_i32), out, exact_dtype=False)
out = torch.empty_like(lhs_i16)
self.assertEqual(op(lhs_i32, rhs_i64, out=out).dtype, torch.int16)
else:
# Float outs cannot be safely cast to integer types
with self.assertRaisesRegex(RuntimeError, "can't be cast"):
op(lhs_i16, rhs_i32, out=torch.empty_like(lhs_i64))
if not op.always_returns_bool:
# Neither integer nor float outs can be cast to bool
with self.assertRaisesRegex(RuntimeError, "can't be cast"):
op(
lhs_i16,
rhs_i32,
out=torch.empty_like(lhs_i64, dtype=torch.bool),
)
# All these output types can be cast to any float or complex type
out = torch.empty_like(lhs_i64, dtype=torch.float16)
self.assertEqual(op(lhs_i16, rhs_i32, out=out).dtype, torch.float16)
out = torch.empty_like(lhs_i64, dtype=torch.bfloat16)
self.assertEqual(op(lhs_i16, rhs_i32, out=out).dtype, torch.bfloat16)
out = torch.empty_like(lhs_i64, dtype=torch.float32)
self.assertEqual(op(lhs_i16, rhs_i32, out=out).dtype, torch.float32)
self.assertEqual(op(lhs_i16, rhs_i32), out, exact_dtype=False)
out = torch.empty_like(lhs_i64, dtype=torch.complex64)
self.assertEqual(op(lhs_i16, rhs_i32, out=out).dtype, torch.complex64)
self.assertEqual(op(lhs_i16, rhs_i32), out, exact_dtype=False)
# float x float type promotion
if _supported((torch.float32, torch.float64)):
lhs_f32 = make_lhs(dtype=torch.float32)
lhs_f64 = make_lhs(dtype=torch.float64)
rhs_f32 = make_rhs(dtype=torch.float32)
rhs_f64 = make_rhs(dtype=torch.float64)
if op.always_returns_bool:
self.assertEqual(op(lhs_f32, rhs_f64).dtype, torch.bool)
else: # normal float type promotion
self.assertEqual(op(lhs_f32, rhs_f64).dtype, torch.float64)
self.assertEqual(
op(lhs_f32, rhs_f64), op(lhs_f32.to(torch.float64), rhs_f64)
)
if op.supports_out:
# All these output types can be cast to any float or complex type
out = torch.empty_like(lhs_f64, dtype=torch.float16)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.float16)
out = torch.empty_like(lhs_f64, dtype=torch.bfloat16)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.bfloat16)
self.assertEqual(op(lhs_f32, rhs_f64), out, exact_dtype=False)
out = torch.empty_like(lhs_f64, dtype=torch.float32)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.float32)
self.assertEqual(op(lhs_f32, rhs_f64), out, exact_dtype=False)
out = torch.empty_like(lhs_f64, dtype=torch.complex64)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.complex64)
self.assertEqual(op(lhs_f32, rhs_f64), out, exact_dtype=False)
if not op.always_returns_bool:
# float outs can't be cast to an integer dtype
with self.assertRaisesRegex(RuntimeError, "can't be cast"):
op(
lhs_f32,
rhs_f64,
out=torch.empty_like(lhs_f64, dtype=torch.int64),
)
else:
# bool outs can be cast to an integer dtype
out = torch.empty_like(lhs_f64, dtype=torch.int64)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.int64)
self.assertEqual(op(lhs_f32, rhs_f64), out, exact_dtype=False)
# complex x complex type promotion
if _supported((torch.complex64, torch.complex128)):
lhs_c64 = make_lhs(dtype=torch.complex64)
lhs_c128 = make_lhs(dtype=torch.complex128)
rhs_c64 = make_rhs(dtype=torch.complex64)
rhs_c128 = make_rhs(dtype=torch.complex128)
if op.always_returns_bool:
self.assertEqual(op(lhs_c64, lhs_c128).dtype, torch.bool)
else: # normal complex type promotion
self.assertEqual(op(lhs_c64, rhs_c128).dtype, torch.complex128)
self.assertEqual(
op(lhs_c64, rhs_c128), op(lhs_c64.to(torch.complex128), rhs_c128)
)
if op.supports_out:
# All these output types can be cast to any or complex type
out = torch.empty_like(lhs_c64, dtype=torch.complex64)
self.assertEqual(op(lhs_c64, rhs_c128, out=out).dtype, torch.complex64)
result = op(lhs_c64, rhs_c128)
self.assertEqual(result, out.to(result.dtype))
if not op.always_returns_bool:
# complex outs can't be cast to float types
with self.assertRaisesRegex(RuntimeError, "can't be cast"):
op(
lhs_c64,
rhs_c128,
out=torch.empty_like(lhs_c64, dtype=torch.float64),
)
# complex outs can't be cast to an integer dtype
with self.assertRaisesRegex(RuntimeError, "can't be cast"):
op(
lhs_c64,
rhs_c128,
out=torch.empty_like(lhs_c64, dtype=torch.int64),
)
else:
# bool outs can be cast to a float type
out = torch.empty_like(lhs_c64, dtype=torch.float64)
self.assertEqual(
op(lhs_c64, rhs_c128, out=out).dtype, torch.float64
)
self.assertEqual(op(lhs_c64, rhs_c128), out, exact_dtype=False)
# bool outs can be cast to an integer dtype
out = torch.empty_like(lhs_f64, dtype=torch.int64)
self.assertEqual(op(lhs_f32, rhs_f64, out=out).dtype, torch.int64)
self.assertEqual(op(lhs_f32, rhs_f64), out, exact_dtype=False)
# int x float type promotion
# Note: float type is the result dtype
if _supported((torch.long, torch.float32)):
lhs_i64 = make_lhs(dtype=torch.int64)
rhs_f32 = make_rhs(dtype=torch.float32)
result = op(lhs_i64, rhs_f32)
expected_dtype = torch.float32 if not op.always_returns_bool else torch.bool
self.assertEqual(result.dtype, expected_dtype)
# float x complex type promotion
# Note: complex type with highest "value type" is the result dtype
if _supported((torch.float64, torch.complex64)):
lhs_f64 = make_lhs(dtype=torch.float64)
rhs_c64 = make_rhs(dtype=torch.complex64)
result = op(lhs_f64, rhs_c64)
expected_dtype = (
torch.complex128 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# int x float scalar type promotion
# Note: default float dtype is the result dtype
if _supported((torch.int64, torch.float32)) and op.supports_rhs_python_scalar:
lhs_i64 = make_lhs(dtype=torch.int64)
rhs_f_scalar = 1.0
result = op(lhs_i64, rhs_f_scalar)
expected_dtype = (
torch.get_default_dtype() if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# repeats with a scalar float tensor, which should set the dtype
rhs_f32_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.float32)
result = op(lhs_i64, rhs_f32_scalar_tensor)
expected_dtype = torch.float32 if not op.always_returns_bool else torch.bool
self.assertEqual(result.dtype, expected_dtype)
# Additional test with double
if _supported((torch.float64,)):
rhs_f64_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.float64)
result = op(lhs_i64, rhs_f64_scalar_tensor)
expected_dtype = (
torch.float64 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# float x complex scalar type promotion
# Note: result dtype is complex with highest "value type" among all tensors
if (
_supported((torch.float32, torch.complex64))
and op.supports_rhs_python_scalar
):
lhs_f32 = make_lhs(dtype=torch.float32)
rhs_c_scalar = complex(1, 1)
result = op(lhs_f32, rhs_c_scalar)
expected_dtype = (
torch.complex64 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# repeats with a scalar complex tensor
rhs_c64_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.complex64)
result = op(lhs_f32, rhs_c64_scalar_tensor)
expected_dtype = (
torch.complex64 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# Additional test with complexdouble
if _supported((torch.complex128,)):
rhs_c128_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.complex128)
result = op(lhs_f32, rhs_c128_scalar_tensor)
# Value type of 1D+ Tensor (lhs_f32) takes priority over scalar tensor (rhs_c128).
expected_dtype = (
torch.complex64 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# float x float scalar tensor
# Note: result dtype is the type of the float tensor
if _supported((torch.float32, torch.float64)) and op.supports_rhs_python_scalar:
lhs_f32 = make_lhs(dtype=torch.float32)
rhs_f64_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.float64)
result = op(lhs_f32, rhs_f64_scalar_tensor)
expected_dtype = torch.float32 if not op.always_returns_bool else torch.bool
self.assertEqual(result.dtype, expected_dtype)
# complex x complex scalar tensor
# Note: result dtype is the type of the complex tensor
if (
_supported((torch.complex64, torch.complex128))
and op.supports_rhs_python_scalar
):
lhs_c64 = make_lhs(dtype=torch.complex64)
rhs_c128_scalar_tensor = make_rhs_scalar_tensor(dtype=torch.complex128)
result = op(lhs_c64, rhs_c128_scalar_tensor)
expected_dtype = (
torch.complex64 if not op.always_returns_bool else torch.bool
)
self.assertEqual(result.dtype, expected_dtype)
# scalar x scalar
# Note: result dtype is default float type
if op.supports_two_python_scalars and _supported((torch.long, torch.float32)):
rhs_f_scalar = 2.
for lhs in (1, 1.):
result = op(lhs, rhs_f_scalar)
expected_dtype = torch.get_default_dtype() if not op.always_returns_bool else torch.bool
self.assertEqual(result.dtype, expected_dtype)
# TODO: move to error input test
@ops(binary_ufuncs, allowed_dtypes=(torch.float32,))
def test_not_broadcastable(self, device, dtype, op):
for shape_lhs, shape_rhs in (
((2,), (3,)),
((3, 1), (2, 1)),
((1, 3, 2), (3,)),
((3, 1, 2), (2, 1, 2)),
):
lhs = make_tensor(
shape_lhs, device=device, dtype=dtype, **op.lhs_make_tensor_kwargs
)
rhs = make_tensor(
shape_rhs, device=device, dtype=dtype, **op.rhs_make_tensor_kwargs
)
try:
broadcasted_shape = op(lhs, rhs).shape
except RuntimeError:
continue
msg = (
f"On {device}, torch.{op.name} broadcasts inputs shapes {shape_lhs} and {shape_rhs} into "
f"{broadcasted_shape}, although they are not broadcastable."
)
raise AssertionError(msg)
def test_add_broadcast_empty(self, device):
# empty + empty
self.assertRaises(
RuntimeError,
lambda: torch.randn(5, 0, device=device) + torch.randn(0, 5, device=device),
)
self.assertEqual(
torch.randn(5, 0, device=device),
torch.randn(0, device=device) + torch.randn(5, 0, device=device),
)
self.assertEqual(
torch.randn(5, 0, 0, device=device),
torch.randn(0, device=device) + torch.randn(5, 0, 1, device=device),
)
# scalar + empty
self.assertEqual(
torch.randn(5, 0, 6, device=device),
torch.randn((), device=device) + torch.randn(5, 0, 6, device=device),
)
# non-empty, empty
self.assertEqual(
torch.randn(0, device=device),
torch.randn(0, device=device) + torch.randn(1, device=device),
)
self.assertEqual(
torch.randn(0, 7, 0, 6, 5, 0, 7, device=device),
torch.randn(0, 7, 0, 6, 5, 0, 1, device=device)
+ torch.randn(1, 1, 5, 1, 7, device=device),
)
self.assertRaises(
RuntimeError,
lambda: torch.randn(7, 0, device=device) + torch.randn(2, 1, device=device),
)
def test_addcmul_scalars_as_floats(self, device):
# zero-dim variables that don't require grad should bind to scalar arguments
x = torch.tensor(2.0)
y = torch.tensor(3.0, device=device)
# 3 + (3 * 3) * 2
self.assertEqual(y.addcmul(y, y, value=x), 21)
x = torch.tensor(2.0, requires_grad=True)
self.assertRaises(Exception, lambda: y.addcmul(y, y, value=x))
# Tests that the binary operators and, or, and xor (as well as their reflected and inplace versions)
# work properly (AKA &, ||, ^ and &=, |=, ^=)
@dtypes(*integral_types_and(torch.bool))
def test_bitwise_ops(self, device, dtype):
# Tensor x Tensor and Tensor x Scalar ops
ops = (
operator.and_,
operator.iand,
operator.or_,
operator.ior,
operator.xor,
operator.ixor,
)
inplace_ops = (operator.iand, operator.ior, operator.ixor)
shapes = ((5,), (15, 15), (500, 500))
for op, shape in itertools.product(ops, shapes):
# Tests tensor x tensor case
a = make_tensor(shape, device=device, dtype=dtype)
b = make_tensor(shape, device=device, dtype=dtype)
a_np = a.cpu().clone().numpy()
b_np = b.cpu().clone().numpy()
self.assertEqual(op(a, b), op(a_np, b_np))
# Tests tensor x scalar case
a = make_tensor(shape, device=device, dtype=dtype)
b_scalar = make_tensor((), device="cpu", dtype=dtype).item()
a_np = a.cpu().clone().numpy()
self.assertEqual(op(a, b_scalar), op(a_np, b_scalar))
# Tests scalar x tensor case
a_scalar = make_tensor((), device="cpu", dtype=dtype).item()
b = make_tensor(shape, device=device, dtype=dtype)
b_np = b.cpu().clone().numpy()
self.assertEqual(op(a_scalar, b), op(a_scalar, b_np))
# Tests scalar x tensor case (for ops which aren't inplace)
if op in inplace_ops:
# Tests tensor x tensor case
a = make_tensor(shape, device=device, dtype=dtype)
b = make_tensor(shape, device=device, dtype=dtype)
a_np = a.cpu().clone().numpy()
b_np = b.cpu().clone().numpy()
op(a, b)
op(a_np, b_np)
self.assertEqual(a, a_np)
# Tests tensor x scalar case
a = make_tensor(shape, device=device, dtype=dtype)
b_scalar = make_tensor((), device="cpu", dtype=dtype).item()
a_np = a.cpu().clone().numpy()
op(a, b_scalar)
op(a_np, b_scalar)
self.assertEqual(a, a_np)
def test_inplace_division(self, device):
t = torch.rand(5, 5, device=device)
id_before = id(t)
t /= 2
id_after = id(t)
self.assertEqual(id_before, id_after)
@dtypes(*all_types_and(torch.half, torch.bfloat16))
def test_div_rounding_modes(self, device, dtype):
if dtype.is_floating_point:
low, high = -10.0, 10.0
else:
info = torch.iinfo(dtype)
low, high = info.min, info.max
a = make_tensor((100,), dtype=dtype, device=device, low=low, high=high)
b = make_tensor((100,), dtype=dtype, device=device, low=low, high=high)
# Avoid division by zero so we can test (a / b) * b == a
if dtype.is_floating_point:
eps = 0.1
b[(-eps < b) & (b < eps)] = eps
else:
b[b == 0] = 1
if not dtype.is_floating_point:
# floor(a / b) * b can be < a, so fixup slightly to avoid underflow
a = torch.where(a < 0, a + b, a)
d_true = torch.divide(a, b, rounding_mode=None)
self.assertTrue(d_true.is_floating_point())
self.assertEqual(d_true * b, a.to(d_true.dtype))
d_floor = torch.divide(a, b, rounding_mode="floor")
if dtype not in (torch.bfloat16, torch.half):
self.assertEqual(d_floor * b + torch.remainder(a, b), a)
else:
self.assertEqual(
d_floor * b + torch.remainder(a.float(), b.float()),
a,
exact_dtype=False,
)
d_trunc = torch.divide(a, b, rounding_mode="trunc")
rounding_unsupported = (
dtype == torch.half
and device != "cuda"
or dtype == torch.bfloat16
and device != "cpu"
)
d_ref = d_true.float() if rounding_unsupported else d_true
self.assertEqual(d_trunc, d_ref.trunc().to(dtype))
@dtypes(torch.bfloat16, torch.half, torch.float32, torch.float64)
def test_div_rounding_nonfinite(self, device, dtype):
# Compare division of special floating point values against NumPy
num = torch.tensor(
[1.0, -1.0, 0, 0.1, -0.1, np.pi, -np.pi, np.inf, -np.inf, np.nan],
dtype=dtype,
)
# Divide by zero is tested separately
denom = num[num != 0]
a, b = num[None, :].clone(), denom[:, None].clone()
# Compare bfloat16 against NumPy float
exact_dtype = dtype != torch.bfloat16
if exact_dtype:
an, bn = a.cpu().numpy(), b.cpu().numpy()
else:
an, bn = a.float().cpu().numpy(), b.float().cpu().numpy()
for mode, np_ref in ((None, np.true_divide), ("floor", np.floor_divide)):
with np.errstate(all="ignore"):
expect = np_ref(an, bn)
kwargs = dict(rounding_mode=mode) if mode is not None else {}
with set_default_dtype(torch.double):
actual = torch.divide(a, b, **kwargs)
self.assertEqual(