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test_foreach.py
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test_foreach.py
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# Owner(s): ["module: mta"]
from numbers import Number
import re
import torch
import unittest
from torch.testing import make_tensor
from torch.testing._comparison import default_tolerances
from torch.testing._internal.common_utils import \
TestCase, run_tests, TEST_WITH_ROCM, skipIfTorchDynamo, parametrize
from torch.testing._internal.common_device_type import \
(instantiate_device_type_tests, dtypes, onlyCUDA, ops, OpDTypes)
from torch.testing._internal.common_methods_invocations import (
foreach_unary_op_db, foreach_binary_op_db, foreach_pointwise_op_db,
foreach_reduce_op_db, foreach_lerp_op_db)
from torch.testing._internal.common_dtype import (
all_types_and_complex_and, integral_types, complex_types,
floating_types_and, floating_types, integral_types_and,
)
_BOOL_SUB_ERR_MSG = "Subtraction, the `-` operator"
class RegularFuncWrapper:
def __init__(self, func):
self.func = func
def __call__(self, inputs, values=None, **kwargs):
if values is not None:
assert len(inputs) == 3
if isinstance(values, Number):
values = [values for _ in range(len(inputs[0]))]
return [self.func(*i, value=values[idx], **kwargs) for idx, i in enumerate(zip(*inputs))]
if len(inputs) == 2 and isinstance(inputs[1], Number):
# binary op with tensorlist and scalar.
inputs[1] = [inputs[1] for _ in range(len(inputs[0]))]
return [self.func(*i, **kwargs) for i in zip(*inputs)]
class ForeachFuncWrapper:
def __init__(self, func):
self.func = func
# Some foreach functions don't have in-place implementations.
self._is_inplace = False if func is None else func.__name__.endswith('_')
def __call__(self, inputs, is_cuda, is_fastpath, **kwargs):
actual = None
zero_size = kwargs.pop("zero_size")
if (
is_cuda and
torch.autograd.kineto_available() and
torch.profiler.ProfilerActivity.CUDA in torch.profiler.supported_activities()
):
with torch.profiler.profile() as p:
actual = self.func(*inputs, **kwargs)
keys = tuple([e.key for e in p.key_averages()])
mta_called = any("multi_tensor_apply_kernel" in k for k in keys)
assert mta_called == (is_fastpath and (not zero_size))
else:
actual = self.func(*inputs, **kwargs)
# note(mkozuki): inplace foreach functions are void functions.
return inputs[0] if self._is_inplace else actual
def get_transform_func(num_tensors, dtype, device, is_fastpath):
def transform(t):
if not torch.is_tensor(t):
return t
return make_tensor(
(num_tensors, num_tensors), dtype=dtype, device=device,
requires_grad=True, noncontiguous=not is_fastpath,
)
return transform
def clone(arg):
if isinstance(arg, (list, tuple)):
return [clone(a) for a in arg]
if torch.is_tensor(arg):
return arg.clone().detach().requires_grad_()
else:
return arg
# note(crcrpar): `zero_size` is `False` unless (dtype, device) == (torch.float32, "cuda")
# as the pair would go through `multi_tensor_apply_kernel` if inputs are not zero size.
class TestForeach(TestCase):
@property
def is_cuda(self):
return self.device_type == 'cuda'
def _get_funcs(self, op):
return (
ForeachFuncWrapper(op.method_variant),
RegularFuncWrapper(op.ref),
ForeachFuncWrapper(op.inplace_variant),
RegularFuncWrapper(op.ref_inplace),
)
def _binary_test(
self,
dtype, op, ref, inputs, is_fastpath, is_inplace,
*,
alpha, scalar_self_arg: bool, zero_size: bool,
):
if zero_size:
op(inputs, self.is_cuda, is_fastpath, zero_size=zero_size)
return
ref_inputs = [[t.clone().detach() for t in inputs[0]], inputs[1]] if is_inplace else inputs
try:
actual = op(inputs, self.is_cuda, is_fastpath, zero_size=zero_size)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
if not scalar_self_arg:
ref(ref_inputs)
else:
[ref.func(ref_inputs[0], t) for t in ref_inputs[1]]
else:
expected = ref(ref_inputs) if not scalar_self_arg else [ref.func(ref_inputs[0], t) for t in ref_inputs[1]]
self.assertEqual(actual, expected)
if alpha is not None and not scalar_self_arg:
kwargs = {'alpha': alpha}
ref_inputs = inputs
try:
op_kwargs = {}
op_kwargs.update(kwargs)
op_kwargs['zero_size'] = zero_size
actual = op(inputs, self.is_cuda, is_fastpath, **op_kwargs)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
ref(ref_inputs, **kwargs)
else:
expected = ref(ref_inputs, **kwargs)
if dtype in (torch.float16, torch.bfloat16) and TEST_WITH_ROCM:
self.assertEqual(expected, actual, atol=1.e-3, rtol=default_tolerances(dtype)[0])
else:
self.assertEqual(expected, actual)
@ops(foreach_binary_op_db)
@parametrize("is_fastpath", (True, False))
def test_binary_op(self, device, dtype, op, is_fastpath):
scalar_self_arg_test_complete = False
for i, sample in enumerate(op.sample_inputs(device, dtype, noncontiguous=not is_fastpath)):
(rhs_arg,) = sample.args
zero_size = sample.kwargs.pop("zero_size")
kwargs = {} or sample.kwargs
alpha = kwargs.pop("alpha", None)
disable_fastpath = kwargs.pop("disable_fastpath") if is_fastpath else False
wrapped_op, ref, inplace_op, inplace_ref = self._get_funcs(op)
self._binary_test(
dtype, wrapped_op, ref, [sample.input, rhs_arg],
is_fastpath and not disable_fastpath, False,
alpha=alpha, zero_size=zero_size, scalar_self_arg=False,
)
self._binary_test(
dtype, inplace_op, inplace_ref, [sample.input, rhs_arg],
is_fastpath and not disable_fastpath, True,
alpha=alpha, zero_size=zero_size, scalar_self_arg=False,
)
if op.supports_autograd and dtype in floating_types() and not zero_size:
transformed_sample = sample.transform(get_transform_func(len(sample.input), dtype, device, is_fastpath))
tensors = transformed_sample.input
(rhs_arg,) = transformed_sample.args
ref_tensors, ref_rhs_arg = clone(tensors), clone(rhs_arg)
try:
sum(
wrapped_op([tensors, rhs_arg], is_cuda=False, is_fastpath=False, zero_size=zero_size)
).mean().backward()
except RuntimeError:
with self.assertRaises(RuntimeError):
sum(ref([ref_tensors, ref_rhs_arg])).mean().backward()
else:
sum(ref([ref_tensors, ref_rhs_arg])).mean().backward()
self.assertEqual([t.grad for t in tensors], [t.grad for t in ref_tensors])
if isinstance(rhs_arg, list) and isinstance(rhs_arg[0], torch.Tensor):
self.assertEqual([t.grad for t in rhs_arg], [t.grad for t in ref_rhs_arg])
if (
op.supports_scalar_self_arg
and isinstance(rhs_arg, Number)
and not scalar_self_arg_test_complete
and not zero_size
):
scalar_self_arg_test_complete = True
self._binary_test(
dtype, wrapped_op, ref, [rhs_arg, sample.input], is_fastpath, False,
alpha=alpha, scalar_self_arg=True, zero_size=False,
)
if op.supports_autograd and dtype == torch.float32 and not zero_size:
transformed_sample = sample.transform(
get_transform_func(len(sample.input), dtype, device, is_fastpath))
tensors = transformed_sample.input
(rhs_arg,) = transformed_sample.args
ref_tensors, ref_rhs_arg = clone(tensors), clone(rhs_arg)
sum(wrapped_op(
[rhs_arg, tensors], is_cuda=False, is_fastpath=False, zero_size=False
)).mean().backward()
sum([ref.func(ref_rhs_arg, t) for t in ref_tensors]).mean().backward()
self.assertEqual([t.grad for t in tensors], [t.grad for t in ref_tensors])
@ops(foreach_pointwise_op_db)
@parametrize("is_fastpath", (True, False))
def test_pointwise_op(self, device, dtype, op, is_fastpath):
for sample in op.sample_inputs(device, dtype, noncontiguous=not is_fastpath):
assert isinstance(sample.args, tuple)
assert len(sample.args) == 2
inputs = [sample.input, *sample.args]
zero_size = sample.kwargs.pop("zero_size")
kwargs = sample.kwargs
disable_fastpath = kwargs.pop("disable_fastpath") if is_fastpath else False
wrapped_op, ref, inplace_op, inplace_ref = self._get_funcs(op)
values = kwargs.pop("values")
self._pointwise_test(
wrapped_op, ref, inputs, is_fastpath and not disable_fastpath, False, values=values, zero_size=zero_size
)
self._pointwise_test(
inplace_op, inplace_ref, inputs, is_fastpath and not disable_fastpath, True,
values=values, zero_size=zero_size)
if op.supports_autograd and dtype in floating_types() and not zero_size:
transformed_sample = sample.transform(get_transform_func(len(sample.input), dtype, device, is_fastpath))
tensors = transformed_sample.input
rhs_arg = transformed_sample.args
ref_tensors, ref_rhs_arg = clone(tensors), clone(rhs_arg)
try:
sum(
wrapped_op([tensors, *rhs_arg], is_cuda=False, is_fastpath=False, zero_size=zero_size)
).mean().backward()
except RuntimeError:
with self.assertRaises(RuntimeError):
sum(ref([ref_tensors, *ref_rhs_arg])).mean().backward()
else:
sum(ref([ref_tensors, *ref_rhs_arg])).mean().backward()
self.assertEqual([t.grad for t in tensors], [t.grad for t in ref_tensors])
for op_list, ref_list in zip(rhs_arg, ref_rhs_arg):
if isinstance(op_list, list) and isinstance(op_list[0], torch.Tensor):
self.assertEqual([t.grad for t in op_list], [t.grad for t in ref_list])
if is_fastpath and isinstance(values, list) and not zero_size:
sample = sample.transform(lambda t: t.clone().detach() if torch.is_tensor(t) else t)
inputs = [sample.input, *sample.args]
tensor_values = torch.tensor(values)
# 1D Tensor of scalars
for is_inplace, op_, ref_ in ((False, wrapped_op, ref), (True, inplace_op, inplace_ref)):
self._pointwise_test(
op_, ref_, inputs, is_fastpath and not disable_fastpath, is_inplace,
values=tensor_values, zero_size=False)
self._pointwise_test(
op_, ref_, inputs, is_fastpath and not disable_fastpath, is_inplace,
values=tensor_values[0],
custom_values_err="Expected packed scalar Tensor to be of dimension 1. Got 0 instead.",
zero_size=False,
)
if self.is_cuda:
self._pointwise_test(
op_, ref_, inputs, is_fastpath and not disable_fastpath, is_inplace,
values=tensor_values.cuda(),
custom_values_err="Expected scalars to be on CPU, got cuda:0 instead.",
zero_size=False,
)
self._pointwise_test(
op_, ref_, inputs, is_fastpath and not disable_fastpath, is_inplace,
values=tensor_values[:2],
custom_values_err=f"Expected length of scalars to match input of length {len(values)} but got 2 instead.",
zero_size=False,
)
self._pointwise_test(
op_, ref_, inputs, is_fastpath and not disable_fastpath, is_inplace,
values=torch.tensor([[0, 1], [2, 3]])[:, 1],
custom_values_err="Expected scalars to be contiguous.",
zero_size=False,
)
if not zero_size:
# Tests of implicit broadcasting
N = len(sample.input)
inputs = [
[make_tensor((N, N), device=device, dtype=dtype, noncontiguous=not is_fastpath) for _ in range(N)],
[
make_tensor((N - i, 1), device=device, dtype=dtype, noncontiguous=not is_fastpath)
for i in range(N)
],
[
make_tensor((1, N - i), device=device, dtype=dtype, noncontiguous=not is_fastpath)
for i in range(N)
],
]
self._pointwise_test(
wrapped_op, ref, inputs, is_fastpath and disable_fastpath, is_inplace=False,
values=values, zero_size=zero_size)
self._pointwise_test(
inplace_op, inplace_ref, inputs, is_fastpath and disable_fastpath,
is_inplace=True, values=values, zero_size=zero_size)
def _pointwise_test(
self,
op, ref, inputs, is_fastpath, is_inplace,
*,
values=None, custom_values_err=None, zero_size,
):
kwargs = {'zero_size': zero_size}
if zero_size:
op(inputs, self.is_cuda, is_fastpath, **kwargs)
return
ref_inputs = [[t.clone().detach() for t in inputs[0]], inputs[1], inputs[2]] if is_inplace else inputs
try:
actual = op(inputs, self.is_cuda, is_fastpath, **kwargs)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
ref(ref_inputs)
else:
expected = ref(ref_inputs)
self.assertEqual(expected, actual)
if values is not None:
try:
actual = op(inputs + [values], self.is_cuda, is_fastpath, **kwargs)
except RuntimeError as e:
# Match with error messages from regular non-foreach reference if no
# custom error message was provided.
if custom_values_err is None:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
ref(ref_inputs, values=values)
else:
self.assertEqual(re.escape(str(e)), re.escape(custom_values_err))
else:
expected = ref(ref_inputs, values=values)
self.assertEqual(expected, actual)
# note(mkozuki): why `try-except` for both fastpath?
# - inputs for fastpath can be integer tensors.
# - this is because opinfo dtypes are configured for out-place implementation
# - for integer inputs, trigonometric functions and exponential function returns float outputs,
# which causes "result type Float can't be case to the desired type" error.
# Thus, `try-except` is used even if `is_fastpath` is `True`.
def _inplace_unary_test(self, inplace, inplace_ref, inputs, is_fastpath, **kwargs):
copied_inputs = [[t.clone().detach() for t in tensors] for tensors in inputs]
try:
inplace(inputs, self.is_cuda, is_fastpath, **kwargs)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
inplace_ref(copied_inputs)
else:
inplace_ref(copied_inputs),
self.assertEqual(copied_inputs, inputs)
@ops(foreach_unary_op_db)
@parametrize("is_fastpath", (True, False))
def test_unary_op(self, device, dtype, op, is_fastpath):
wrapped_op, ref, inplace_op, inplace_ref = self._get_funcs(op)
samples = op.sample_inputs(device, dtype, noncontiguous=not is_fastpath)
disable_fastpath = op.name == "_foreach_abs" and dtype in complex_types()
for sample in samples:
zero_size = sample.kwargs.pop('zero_size')
inputs = [sample.input]
if zero_size:
wrapped_op(inputs, self.is_cuda, is_fastpath and not disable_fastpath, zero_size=zero_size)
inplace_op(inputs, self.is_cuda, is_fastpath and not disable_fastpath, zero_size=zero_size)
return
inputs = [sample.input]
disable_fastpath = (op.name == "_foreach_abs" and dtype in complex_types()) or sample.kwargs.pop(
"disable_fastpath"
)
self.assertEqual(
ref(inputs),
wrapped_op(inputs, self.is_cuda, is_fastpath and not disable_fastpath, zero_size=zero_size),
)
self._inplace_unary_test(
inplace_op, inplace_ref, [sample.input], is_fastpath and not disable_fastpath, zero_size=zero_size
)
if op.supports_autograd and dtype in floating_types() and not zero_size:
num_tensors = len(sample.input)
tensors = [
make_tensor(
(num_tensors, num_tensors),
dtype=dtype,
device=device,
requires_grad=True,
noncontiguous=not is_fastpath,
)
for _ in range(num_tensors)
]
ref_tensors = [t.clone().detach().requires_grad_() for t in tensors]
sum(wrapped_op.func(tensors)).mean().backward()
sum([ref.func(t) for t in ref_tensors]).mean().backward()
self.assertEqual([t.grad for t in tensors], [t.grad for t in ref_tensors])
@ops(foreach_reduce_op_db)
@parametrize("is_fastpath", (True, False))
def test_reduce_op(self, device, dtype, op, is_fastpath):
for sample in op.sample_inputs(device, dtype, noncontiguous=not is_fastpath):
ord = sample.kwargs.pop("ord")
zero_size = sample.kwargs.pop("zero_size")
disable_fastpath = sample.kwargs.pop("disable_fastpath", False)
inputs = (sample.input,)
wrapped_op, ref, _, _ = self._get_funcs(op)
self.assertEqual(
ref(inputs, ord=ord),
wrapped_op(
inputs, self.is_cuda, is_fastpath and not disable_fastpath, ord=ord,
zero_size=zero_size,
),
)
if op.supports_autograd and dtype in floating_types() and not zero_size:
transformed_sample = sample.transform(get_transform_func(len(sample.input), dtype, device, is_fastpath))
tensors = transformed_sample.input
ref_tensors = clone(tensors)
sum(wrapped_op((tensors,), False, False, ord=ord, zero_size=zero_size)).backward()
sum(ref((ref_tensors,), ord=ord)).backward()
self.assertEqual([t.grad for t in tensors], [t.grad for t in ref_tensors])
@dtypes(*all_types_and_complex_and(torch.half, torch.bfloat16, torch.bool))
def test_add_scalar_with_empty_list_and_empty_tensor(self, device, dtype):
# TODO: enable empty list case
for tensors in [[torch.randn([0])]]:
res = torch._foreach_add(tensors, 1)
self.assertEqual(res, tensors)
torch._foreach_add_(tensors, 1)
self.assertEqual(res, tensors)
@ops(foreach_binary_op_db, dtypes=OpDTypes.supported)
def test_binary_op_scalar_with_overlapping_tensors(self, device, dtype, op):
foreach_op, ref = op.method_variant, op.ref
tensors = [torch.ones(1, 1, device=device, dtype=dtype).expand(2, 1, 3)]
if ref == torch.sub and dtype == torch.bool:
with self.assertRaisesRegex(RuntimeError, re.escape(_BOOL_SUB_ERR_MSG)):
[ref(t, 1) for t in tensors]
with self.assertRaisesRegex(RuntimeError, re.escape(_BOOL_SUB_ERR_MSG)):
foreach_op(tensors, 1)
return
expected = [ref(t, 1) for t in tensors]
res = foreach_op(tensors, 1)
self.assertEqual(res, expected)
@ops(foreach_binary_op_db, allowed_dtypes=[torch.float])
def test_binary_op_scalar_with_different_tensor_dtypes(self, device, dtype, op):
foreach_op = op.method_variant
tensors = [
torch.tensor([1.1], dtype=torch.float, device=device),
torch.tensor([1], dtype=torch.long, device=device),
]
runtime_error = None
try:
foreach_op(tensors, 1)
except RuntimeError as e:
runtime_error = e
self.assertIsNone(runtime_error)
@skipIfTorchDynamo("Different error msgs, TODO")
@ops(foreach_binary_op_db, dtypes=OpDTypes.supported)
def test_binary_op_list_error_cases(self, device, dtype, op):
foreach_op, foreach_op_, ref, ref_ = op.method_variant, op.inplace_variant, op.ref, op.ref_inplace
tensors1 = []
tensors2 = []
# Empty lists
with self.assertRaisesRegex(RuntimeError, "There were no tensor arguments to this function"):
foreach_op(tensors1, tensors2)
with self.assertRaisesRegex(RuntimeError, "There were no tensor arguments to this function"):
foreach_op_(tensors1, tensors2)
# One empty list
tensors1.append(torch.tensor([1], device=device, dtype=dtype))
with self.assertRaisesRegex(RuntimeError, "Tensor list must have same number of elements as scalar list."):
foreach_op(tensors1, tensors2)
with self.assertRaisesRegex(RuntimeError, "Tensor list must have same number of elements as scalar list."):
foreach_op_(tensors1, tensors2)
# Lists have different amount of tensors
tensors2.append(torch.tensor([1], device=device))
tensors2.append(torch.tensor([1], device=device))
with self.assertRaisesRegex(RuntimeError, "Tensor lists must have the same number of tensors, got 1 and 2"):
foreach_op(tensors1, tensors2)
with self.assertRaisesRegex(RuntimeError, "Tensor lists must have the same number of tensors, got 1 and 2"):
foreach_op_(tensors1, tensors2)
# Corresponding tensors with different sizes that aren't compatible with broadcast
# If sizes are different then foreach chooses slow path, thus error messages are expected
# to be the same as torch regular function.
tensors1 = [torch.zeros(10, 10, device=device, dtype=dtype) for _ in range(10)]
tensors2 = [torch.ones(11, 11, device=device, dtype=dtype) for _ in range(10)]
try:
foreach_op(tensors1, tensors2)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
[ref(t1, t2) for t1, t2 in zip(tensors1, tensors2)]
try:
foreach_op_(tensors1, tensors2)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
[ref_(t1, t2) for t1, t2 in zip(tensors1, tensors2)]
# different devices
if self.device_type == "cuda" and torch.cuda.device_count() > 1:
tensor1 = torch.zeros(10, 10, device="cuda:0", dtype=dtype)
tensor2 = torch.ones(10, 10, device="cuda:1", dtype=dtype)
if dtype == torch.bool and foreach_op == torch._foreach_sub:
with self.assertRaisesRegex(RuntimeError, re.escape(_BOOL_SUB_ERR_MSG)):
foreach_op([tensor1], [tensor2])
with self.assertRaisesRegex(RuntimeError, re.escape(_BOOL_SUB_ERR_MSG)):
foreach_op_([tensor1], [tensor2])
return
with self.assertRaisesRegex(RuntimeError, "Expected all tensors to be on the same device"):
foreach_op([tensor1], [tensor2])
if dtype in integral_types_and(torch.bool) and foreach_op == torch._foreach_div:
with self.assertRaisesRegex(RuntimeError, "result type"):
foreach_op_([tensor1], [tensor2])
else:
with self.assertRaisesRegex(RuntimeError, "Expected all tensors to be on the same device"):
foreach_op_([tensor1], [tensor2])
@unittest.skipIf(not torch.cuda.is_available(), "CUDA not found")
@ops(foreach_binary_op_db, dtypes=OpDTypes.supported)
def test_binary_op_list_slow_path(self, device, dtype, op):
foreach_op, native_op, foreach_op_, native_op_ = self._get_funcs(op)
# 0-strides
tensor1 = make_tensor((10, 10), dtype=dtype, device=device)
tensor2 = make_tensor((1,), device=device, dtype=dtype).expand_as(tensor1)
inputs = ([tensor1], [tensor2])
self._binary_test(
dtype, foreach_op, native_op, inputs, is_fastpath=False, is_inplace=False,
zero_size=False, alpha=None, scalar_self_arg=False)
self._binary_test(
dtype, foreach_op_, native_op_, inputs, is_fastpath=False, is_inplace=True,
zero_size=False, alpha=None, scalar_self_arg=False)
# different strides
tensor1 = torch.zeros(10, 10, device=device, dtype=dtype)
tensor2 = torch.ones(10, 10, device=device, dtype=dtype)
inputs = ([tensor1], [tensor2.t()])
self._binary_test(
dtype, foreach_op, native_op, inputs, is_fastpath=False, is_inplace=False,
zero_size=False, alpha=None, scalar_self_arg=False)
self._binary_test(
dtype, foreach_op_, native_op_, inputs, is_fastpath=False, is_inplace=True,
zero_size=False, alpha=None, scalar_self_arg=False)
# non contiguous
tensor1 = make_tensor((5, 2, 1, 3), device=device, dtype=dtype, noncontiguous=True)
tensor2 = make_tensor((5, 2, 1, 3), device=device, dtype=dtype, noncontiguous=True)
self.assertFalse(tensor1.is_contiguous())
self.assertFalse(tensor2.is_contiguous())
inputs = ([tensor1], [tensor2])
self._binary_test(
dtype, foreach_op, native_op, inputs, is_fastpath=False, is_inplace=False,
zero_size=False, alpha=None, scalar_self_arg=False)
self._binary_test(
dtype, foreach_op_, native_op_, inputs, is_fastpath=False, is_inplace=True,
zero_size=False, alpha=None, scalar_self_arg=False)
# sliced tensor
tensor1 = make_tensor((5, 2, 1, 3), device=device, dtype=dtype)
tensor2 = make_tensor((5, 2, 1, 3 * 7), device=device, dtype=dtype)[:, :, :, ::7]
inputs = ([tensor1], [tensor2])
self._binary_test(
dtype, foreach_op, native_op, inputs, is_fastpath=False, is_inplace=False,
zero_size=False, alpha=None, scalar_self_arg=False)
self._binary_test(
dtype, foreach_op_, native_op_, inputs, is_fastpath=False, is_inplace=True,
zero_size=False, alpha=None, scalar_self_arg=False)
@ops(foreach_binary_op_db, dtypes=floating_types_and(torch.half, torch.bfloat16))
def test_binary_op_float_inf_nan(self, device, dtype, op):
inputs = (
[
torch.tensor([float("inf")], device=device, dtype=dtype),
torch.tensor([-float("inf")], device=device, dtype=dtype),
torch.tensor([float("nan")], device=device, dtype=dtype),
torch.tensor([float("nan")], device=device, dtype=dtype),
],
[
torch.tensor([-float("inf")], device=device, dtype=dtype),
torch.tensor([float("inf")], device=device, dtype=dtype),
torch.tensor([float("inf")], device=device, dtype=dtype),
torch.tensor([float("nan")], device=device, dtype=dtype),
],
)
op, ref, inplace_op, inplace_ref = self._get_funcs(op)
self._binary_test(dtype, op, ref, inputs, True, False, zero_size=False, alpha=None, scalar_self_arg=False)
self._binary_test(
dtype, inplace_op, inplace_ref, inputs, True, True, zero_size=False, alpha=None, scalar_self_arg=False
)
# note: Below three tests (postfixed with `_tensors_on_different_devices`)
# checks whether foreach works with lists of tensors on different devices
# but tensors of the same index are on the same device, e.g., ['cuda', 'cpu].
@onlyCUDA
@ops(foreach_unary_op_db)
def test_unary_op_tensors_on_different_devices(self, device, dtype, op):
method, ref, inplace_method, ref_inplace = self._get_funcs(op)
# tensors: ['cuda', 'cpu]
tensors = list(op.sample_inputs(device, dtype, num_input_tensors=[2]))[0].input
tensors[1] = tensors[1].to("cpu")
try:
actual = method((tensors,), False, False, zero_size=False)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), str(e)):
ref((tensors,))
else:
expected = ref((tensors,))
self.assertEqual(expected, actual)
try:
inplace_method((tensors,), False, False, zero_size=False)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), str(e)):
ref_inplace((tensors,))
else:
self.assertEqual(expected, tensors)
@onlyCUDA
@ops(foreach_binary_op_db)
def test_binary_op_tensors_on_different_devices(self, device, dtype, op):
# `tensors1`: ['cuda', 'cpu']
# `tensors2`: ['cuda', 'cpu']
_cuda_tensors = list(op.sample_inputs(device, dtype, num_input_tensors=[2], same_size=True))[0].input
_cpu_tensors = list(op.sample_inputs("cpu", dtype, num_input_tensors=[2], same_size=True))[0].input
tensors1, tensors2 = list(zip(_cuda_tensors, _cpu_tensors))
foreach_op, foreach_op_ = op.method_variant, op.inplace_variant
native_op, native_op_ = op.ref, op.ref_inplace
try:
actual = foreach_op(tensors1, tensors2)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
[native_op(t1, t2) for t1, t2 in zip(tensors1, tensors2)]
else:
expected = [native_op(t1, t2) for t1, t2 in zip(tensors1, tensors2)]
self.assertEqual(expected, actual)
try:
foreach_op_(tensors1, tensors2)
except RuntimeError as e:
with self.assertRaisesRegex(type(e), re.escape(str(e))):
[native_op_(t1, t2) for t1, t2 in zip(tensors1, tensors2)]
else:
self.assertEqual(actual, tensors1)
@onlyCUDA
@ops(foreach_pointwise_op_db, allowed_dtypes=floating_types())
def test_pointwise_op_tensors_on_different_devices(self, device, dtype, op):
# tensors1: ['cuda', 'cpu]
# tensors2: ['cuda', 'cpu]
# tensors3: ['cuda', 'cpu]
# first tensorlist is zero-size when float32
_cuda_tensors = list(
op.sample_inputs(device, dtype, num_input_tensors=[3], same_size=True)
)[int(dtype == torch.float32)].input
_cpu_tensors = list(op.sample_inputs("cpu", dtype, num_input_tensors=[3], same_size=True))[0].input
tensors1, tensors2, tensors3 = list(zip(_cuda_tensors, _cpu_tensors))
foreach_op, foreach_op_, native_op = op.method_variant, op.inplace_variant, op.ref
actual = foreach_op(tensors1, tensors2, tensors3)
expected = [native_op(*_cuda_tensors), native_op(*_cpu_tensors)]
self.assertEqual(expected, actual)
# note(mkozuki): Limiting dtypes to FP32&FP64, we can safely run inplace ops.
foreach_op_(tensors1, tensors2, tensors3)
self.assertEqual(expected, tensors1)
# note: BFloat16 has the same number of exponent bits as FP32
# so if squared L2 norm overflows in BF16, then it also overflows in FP32.
@onlyCUDA
@ops(foreach_reduce_op_db, allowed_dtypes=(torch.half, torch.bfloat16))
def test_foreach_l2_large_value_input(self, device, dtype, op):
ord, N = 2, 10
max_value = torch.finfo(dtype).max
scaler = torch.tensor([max_value]).sqrt().to(device=device, dtype=dtype)
inputs = ([t * scaler for t in list(op.sample_inputs(device, dtype, [N], low=1))[0].input],)
# make sure that the min. of squared L2 norm value per tensor is greater than the max value of `dtype`.
self.assertTrue(scaler * scaler * N > max_value)
fn, ref_fn, *_ = self._get_funcs(op)
actual = fn(inputs, is_cuda=True, is_fastpath=True, ord=ord, zero_size=False)
expect = ref_fn(inputs, ord=ord)
if dtype == torch.float16:
# making sure the reference L2 norm values are in the range of FP16.
self.assertFalse(any(torch.isinf(e) for e in expect))
else:
self.assertTrue(all(torch.isinf(e) for e in expect))
self.assertEqual(expect, actual, equal_nan=False)
@parametrize("is_fastpath", (True, False))
@ops(foreach_lerp_op_db)
def test_lerp(self, device, dtype, op, is_fastpath):
for sample in op.sample_inputs(device, dtype, noncontiguous=not is_fastpath):
wrapped_op, ref, inplace_op, _ = self._get_funcs(op)
args = [*sample.args]
inputs = [sample.input, args[0]]
zero_size = sample.kwargs.pop("zero_size")
kwargs, ref_kwargs = {"zero_size": zero_size}, {}
if isinstance(args[1], list):
inputs.append(args[1])
else:
kwargs["weight"] = args[1]
ref_kwargs["weight"] = args[1]
if dtype in integral_types() or dtype == torch.bool or (not self.is_cuda and dtype == torch.half):
with self.assertRaises(RuntimeError):
wrapped_op(inputs, self.is_cuda, is_fastpath, **kwargs)
return
actual = wrapped_op(inputs, self.is_cuda, is_fastpath, **kwargs)
expected = ref(inputs, **ref_kwargs)
self.assertEqual(actual, expected)
inplace_inputs = [[t.clone() for t in inputs[0]]] + inputs[1:]
inplace_actual = inplace_op(inplace_inputs, self.is_cuda, is_fastpath, **kwargs)
self.assertEqual(inplace_actual, expected)
if op.supports_autograd and dtype in floating_types() and not zero_size:
transformed_sample = sample.transform(get_transform_func(len(sample.input), dtype, device, is_fastpath))
args = [*transformed_sample.args]
inputs = [transformed_sample.input, args[0]]
kwargs, ref_kwargs = {}, {}
if isinstance(args[1], list):
inputs.append(args[1])
else:
kwargs = ref_kwargs = {"weight": args[1]}
ref_tensors = clone(transformed_sample.input)
sum(
wrapped_op((transformed_sample.input, *inputs[1:]), False, False, **kwargs, zero_size=zero_size)
).mean().backward()
sum(ref((ref_tensors, *inputs[1:]), **ref_kwargs)).mean().backward()
self.assertEqual(
[t.grad for t in transformed_sample.input],
[t.grad for t in ref_tensors],
)
@onlyCUDA
@ops(foreach_reduce_op_db)
def test_foreach_reduce_large_input(self, device, dtype, op):
# test inputs larger than kChunkSize = 65536
ord, N = 2, 65536 * 2
disable_fastpath = True
if ord in (1, 2) and dtype in floating_types_and(torch.half, torch.bfloat16):
disable_fastpath = False
inputs = ([make_tensor((N,), dtype=dtype, device=device, noncontiguous=False)],)
wrapped_op, ref, _, _ = self._get_funcs(op)
self.assertEqual(
ref(inputs, ord=ord),
wrapped_op(inputs, self.is_cuda, not disable_fastpath, ord=ord, zero_size=False),
)
instantiate_device_type_tests(TestForeach, globals())
if __name__ == "__main__":
run_tests()