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test_functionalization.py
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# Owner(s): ["module: codegen"]
import torch
from torch.testing._internal.common_utils import TestCase, run_tests, skipIfTorchDynamo, TEST_WITH_TORCHDYNAMO
from torch.testing._internal.logging_tensor import LoggingTensor, capture_logs
from torch.utils._pytree import tree_map
from torch.fx.experimental.proxy_tensor import make_fx
from torch.fx.passes.reinplace import reinplace
import unittest
def are_aliased(x, y):
if x._base is None and y._base is None:
return False
if x._base is not None and y._base is None:
return x._base is y
if x._base is None and y._base is not None:
return y._base is x
return x._base is y._base
# We can unify testing and use functionalize() here instead
# if/when functorch moves into core.
# This is basically a crappy version of `functionalize()` for single-tensor-arg inputs.
def _functionalize(f, *, reapply_views: bool):
def wrapped(a):
input_functional = torch._to_functional_tensor(a)
torch._enable_functionalization(reapply_views=reapply_views)
try:
out = f(input_functional)
finally:
torch._disable_functionalization()
torch._sync(input_functional)
inpt_new = torch._from_functional_tensor(input_functional)
if inpt_new is not a:
# Existing deficiency in functionalize():
# we don't correctly mutate input metadata (yet?)
if inpt_new.shape == a.shape:
a.copy_(inpt_new)
tree_map(torch._sync, out)
out_unwrapped = tree_map(torch._from_functional_tensor, out)
return out_unwrapped
return wrapped
@unittest.skipIf(TEST_WITH_TORCHDYNAMO, "https://github.com/pytorch/pytorch/issues/81457")
class TestFunctionalization(TestCase):
def get_logs(self, func, inpt, *, reapply_views=False, run_reinplace=False):
inpt_clone = inpt.clone()
traced_f = make_fx(_functionalize(func, reapply_views=reapply_views))(inpt)
if run_reinplace:
traced_f = reinplace(traced_f, inpt_clone)
return traced_f.code
def assert_functionalization(self, func, inpt, *, reapply_views=False, mutated_input_metadata=False):
input_clone = inpt.clone()
input_clone2 = inpt.clone()
input_clone3 = inpt.clone()
# Compare outputs (and mutated inputs), with and without functionalization.
out_ref = func(inpt)
out_functional = _functionalize(func, reapply_views=reapply_views)(input_clone)
# The reinplacing pass is only valid to run with reapply_views=True.
functional_func = make_fx(_functionalize(func, reapply_views=True))(input_clone2)
reinplace_func = reinplace(make_fx(_functionalize(func, reapply_views=True))(input_clone2), input_clone2)
# NOTE: for now, need to pass in fresh inputs here, because make_fx
# will directly mutate the inputs that you trace with.
# Once this is fixed we can clean this up.
out_reinplace = reinplace_func(input_clone3)
# functionalize() deficiency: input metadata mutations aren't propagated properly,
# so we just need to skip checks here for the tests that exercise that.
if not mutated_input_metadata:
self.assertEqual(inpt, input_clone) # input mutations should still occur
self.assertEqual(inpt, input_clone3)
# Handle tests with multi-tensor outputs
if isinstance(out_ref, tuple):
out_refs, out_functionals, out_reinplaces = list(out_ref), list(out_functional), list(out_reinplace)
else:
out_refs, out_functionals, out_reinplaces = [out_ref], [out_functional], [out_reinplace]
for out_ref_, out_functional_, out_reinplace_ in zip(out_refs, out_functionals, out_reinplaces):
self.assertEqual(out_ref_, out_functional_)
self.assertEqual(out_ref_, out_reinplace_)
def test_save_for_backwards_segfault(self):
inp = torch._to_functional_tensor(LoggingTensor(torch.randn(2, 2))).requires_grad_(True)
inp.exp()
def test_multiple_views_of_same_base(self):
def f(x):
y = x.view(-1)
z = x.view(-1)
x.add_(1)
# y should have been updated.
y2 = y + 1
# z should have been updated too.
z2 = z + 1
return z2
self.assert_functionalization(f, torch.ones(4))
def test_simple(self):
def f(x):
# simple test: 1 view op, 1 inplace op
tmp = torch.ones(4, 2)
y = x.view(4, 2)
y.add_(tmp)
z = x * x
return y
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_copy_default = torch.ops.aten.view_copy.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(view_copy_default, ones); view_copy_default = ones = None
view_copy_default_1 = torch.ops.aten.view_copy.default(add_tensor, [4, 2])
mul_tensor = torch.ops.aten.mul.Tensor(view_copy_default_1, view_copy_default_1)
copy__default = torch.ops.aten.copy_.default(a_1, view_copy_default_1); a_1 = view_copy_default_1 = None
return add_tensor
""")
reinplaced_logs = self.get_logs(f, torch.ones(4, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_default = torch.ops.aten.view.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(view_default, ones); view_default = ones = None
view_default_1 = torch.ops.aten.view.default(add_tensor, [4, 2])
mul_tensor = torch.ops.aten.mul.Tensor(view_default_1, view_default_1)
copy__default = torch.ops.aten.copy_.default(a_1, view_default_1); a_1 = view_default_1 = None
return add_tensor
""")
def test_simple_out(self):
def f(x):
tmp = torch.ones(4, 2)
y = x.view(4, 2)
# the out= tensor will get resized, since it has size=0 to start.
z = torch.empty(())
torch.add(y, tmp, out=z)
w = z * z
return w
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_copy_default = torch.ops.aten.view_copy.default(a_1, [4, 2]); a_1 = None
empty = torch.ops.aten.empty.memory_format([], device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add.Tensor(view_copy_default, ones); view_copy_default = ones = None
mul_tensor = torch.ops.aten.mul.Tensor(add_tensor, add_tensor); add_tensor = None
return mul_tensor
""")
reinplaced_logs = self.get_logs(f, torch.ones(4, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_default = torch.ops.aten.view.default(a_1, [4, 2]); a_1 = None
empty = torch.ops.aten.empty.memory_format([], device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add.Tensor(view_default, ones); view_default = ones = None
mul_tensor = torch.ops.aten.mul.Tensor(add_tensor, add_tensor); add_tensor = None
return mul_tensor
""")
def test_multi_out(self):
def f(x):
# aminmax.out returns a tuple of tensors.
# functionalization should properly handle the tuple.
out_min = torch.empty(4)
out_max = torch.empty(4)
torch.aminmax(x, dim=0, out=(out_max, out_min))
return out_max
self.assert_functionalization(f, torch.arange(8, dtype=torch.float32))
logs = self.get_logs(f, torch.arange(8, dtype=torch.float32))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
empty = torch.ops.aten.empty.memory_format([4], device = device(type='cpu'), pin_memory = False)
empty_1 = torch.ops.aten.empty.memory_format([4], device = device(type='cpu'), pin_memory = False)
aminmax_default = torch.ops.aten.aminmax.default(a_1, dim = 0); a_1 = None
getitem = aminmax_default[0]
getitem_1 = aminmax_default[1]; aminmax_default = None
return getitem
""")
reinplaced_logs = self.get_logs(f, torch.arange(8, dtype=torch.float32), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
empty = torch.ops.aten.empty.memory_format([4], device = device(type='cpu'), pin_memory = False)
empty_1 = torch.ops.aten.empty.memory_format([4], device = device(type='cpu'), pin_memory = False)
aminmax_default = torch.ops.aten.aminmax.default(a_1, dim = 0); a_1 = None
getitem = aminmax_default[0]
getitem_1 = aminmax_default[1]; aminmax_default = None
return getitem
""")
def test_tensor_ctr(self):
def f(x):
y = torch.tensor((1, 2, 3))
z = y.view(-1)
z.add_(1)
return y
inpt = torch.arange(3, dtype=torch.float32)
self.assert_functionalization(f, inpt)
logs = self.get_logs(f, inpt)
self.assertExpectedInline(logs, """\
def forward(self, a_1):
_tensor_constant0 = self._tensor_constant0
lift_fresh = torch.ops.aten.lift_fresh_copy.default(_tensor_constant0); _tensor_constant0 = None
view_copy_default = torch.ops.aten.view_copy.default(lift_fresh, [-1]); lift_fresh = None
add_tensor = torch.ops.aten.add.Tensor(view_copy_default, 1); view_copy_default = None
view_copy_default_1 = torch.ops.aten.view_copy.default(add_tensor, [3]); add_tensor = None
return view_copy_default_1
""")
reinplaced_logs = self.get_logs(f, inpt, reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
_tensor_constant0 = self._tensor_constant0
lift_fresh = torch.ops.aten.lift_fresh_copy.default(_tensor_constant0); _tensor_constant0 = None
view_default = torch.ops.aten.view.default(lift_fresh, [-1]); lift_fresh = None
add_tensor = torch.ops.aten.add_.Tensor(view_default, 1)
view_default_1 = torch.ops.aten.view.default(view_default, [3]); view_default = None
return view_default_1
""")
def test_tensor_list_mixed_functional_nonfunctional(self):
nonfunctional_tensor = torch.ones(2, dtype=torch.long)
def f(x):
# simple test: 1 view op, 1 inplace op
functional_tensor = torch.ones(2, dtype=torch.long)
out = x[functional_tensor, nonfunctional_tensor]
return out
out = f(torch.ones(2, 2))
out_functional = _functionalize(f, reapply_views=True)(torch.ones(2, 2))
self.assertEqual(out, out_functional)
def test_inplace_on_non_view(self):
def f(x):
# test for the case where we functionalize an inplace op on the other tensor - not a view.
# This is worth checking because the tensor will have an empty ViewMeta stack, which needs to be special cased.
tmp = torch.ones(4, 2)
y = x.view(4, 2)
x.add_(tmp)
return y
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_copy_default = torch.ops.aten.view_copy.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(a_1, ones); ones = None
copy__default = torch.ops.aten.copy_.default(a_1, add_tensor); a_1 = None
view_copy_default_1 = torch.ops.aten.view_copy.default(add_tensor, [4, 2]); add_tensor = None
return view_copy_default_1
""")
reinplaced_logs = self.get_logs(f, torch.ones(4, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_default = torch.ops.aten.view.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(a_1, ones); ones = None
copy__default = torch.ops.aten.copy_.default(a_1, add_tensor); a_1 = None
view_default_1 = torch.ops.aten.view.default(add_tensor, [4, 2]); add_tensor = None
return view_default_1
""")
# Some ops that are mutable are neither inplace nor out= ops.
# They also need special handling.
def test_mutable_op_not_inplace_or_other(self):
def f(x):
return torch._fused_moving_avg_obs_fq_helper(x, x, x, x, x, x, x, 1.0, 0, 1, 0)
logs = self.get_logs(f, torch.ones(1))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
_fused_moving_avg_obs_fq_helper_functional_default = torch.ops.aten._fused_moving_avg_obs_fq_helper_functional.default(a_1, a_1, a_1, a_1, a_1, a_1, a_1, 1.0, 0, 1, 0)
getitem = _fused_moving_avg_obs_fq_helper_functional_default[0]
getitem_1 = _fused_moving_avg_obs_fq_helper_functional_default[1]
getitem_2 = _fused_moving_avg_obs_fq_helper_functional_default[2]
getitem_3 = _fused_moving_avg_obs_fq_helper_functional_default[3]
getitem_4 = _fused_moving_avg_obs_fq_helper_functional_default[4]
getitem_5 = _fused_moving_avg_obs_fq_helper_functional_default[5]; _fused_moving_avg_obs_fq_helper_functional_default = None
copy__default = torch.ops.aten.copy_.default(a_1, getitem_5); a_1 = getitem_5 = None
return (getitem, getitem_1)
""") # noqa: B950
def test_as_strided(self):
def f(x):
y = x.as_strided((2,), (2,), 1)
y.add_(1)
return x
self.assert_functionalization(f, torch.ones(9))
logs = self.get_logs(f, torch.ones(9))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
as_strided_copy_default = torch.ops.aten.as_strided_copy.default(a_1, [2], [2], 1)
add_tensor = torch.ops.aten.add.Tensor(as_strided_copy_default, 1); as_strided_copy_default = None
as_strided_scatter_default = torch.ops.aten.as_strided_scatter.default(a_1, add_tensor, [2], [2], 1); add_tensor = None
copy__default = torch.ops.aten.copy_.default(a_1, as_strided_scatter_default); a_1 = None
return as_strided_scatter_default
""")
def test_tensor_list_composite(self):
def f(x):
# Test an op with TensorList input
y = torch.block_diag(x, x)
return y
self.assert_functionalization(f, torch.ones(2, 2))
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
block_diag_default = torch.ops.aten.block_diag.default([a_1, a_1]); a_1 = None
return block_diag_default
""")
def test_cat(self):
def f(x):
out = torch.empty(0)
torch.cat((x,), out=out)
return out
self.assert_functionalization(f, torch.ones(2, 2))
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
empty = torch.ops.aten.empty.memory_format([0], device = device(type='cpu'), pin_memory = False)
cat_default = torch.ops.aten.cat.default([a_1]); a_1 = None
return cat_default
""")
reinplaced_logs = self.get_logs(f, torch.ones(2, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
empty = torch.ops.aten.empty.memory_format([0], device = device(type='cpu'), pin_memory = False)
cat_default = torch.ops.aten.cat.default([a_1]); a_1 = None
return cat_default
""")
def test_diagonal(self):
def f(x):
# test: view ops that take a subset of the original tensor (select/diagonal)
tmp = torch.ones(2)
y = x.clone().diagonal()
y.add_(tmp)
z = x * x
return z
self.assert_functionalization(f, torch.ones(2, 2))
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2], device = device(type='cpu'), pin_memory = False)
clone_default = torch.ops.aten.clone.default(a_1)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(clone_default); clone_default = None
add_tensor = torch.ops.aten.add.Tensor(diagonal_copy_default, ones); diagonal_copy_default = ones = None
mul_tensor = torch.ops.aten.mul.Tensor(a_1, a_1); a_1 = None
return mul_tensor
""")
reinplaced_logs = self.get_logs(f, torch.ones(2, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2], device = device(type='cpu'), pin_memory = False)
clone_default = torch.ops.aten.clone.default(a_1)
diagonal_default = torch.ops.aten.diagonal.default(clone_default); clone_default = None
add_tensor = torch.ops.aten.add_.Tensor(diagonal_default, ones); diagonal_default = ones = None
mul_tensor = torch.ops.aten.mul.Tensor(a_1, a_1); a_1 = None
return mul_tensor
""")
def test_diagonal_mutated_input(self):
def f(x):
# simple test: there are pending updates afterwards, which the test syncs manually
tmp = torch.ones(2)
y = x.diagonal()
y.add_(tmp)
return x
x = torch.ones(2, 2)
self.assert_functionalization(f, x)
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2], device = device(type='cpu'), pin_memory = False)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(a_1)
add_tensor = torch.ops.aten.add.Tensor(diagonal_copy_default, ones); diagonal_copy_default = ones = None
diagonal_scatter_default = torch.ops.aten.diagonal_scatter.default(a_1, add_tensor); add_tensor = None
copy__default = torch.ops.aten.copy_.default(a_1, diagonal_scatter_default); a_1 = None
return diagonal_scatter_default
""")
def test_split(self):
def f(x):
# test: view ops that return multiple tensors (split)
tmp = torch.ones(2)
y1, y2 = x.split(2)
y3 = y2.diagonal()
y3.add_(tmp)
z = x * x
return y3
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2], device = device(type='cpu'), pin_memory = False)
split_copy_tensor = torch.ops.aten.split_copy.Tensor(a_1, 2)
getitem = split_copy_tensor[0]
getitem_1 = split_copy_tensor[1]; split_copy_tensor = None
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(getitem_1); getitem_1 = None
add_tensor = torch.ops.aten.add.Tensor(diagonal_copy_default, ones); diagonal_copy_default = ones = None
split_copy_tensor_1 = torch.ops.aten.split_copy.Tensor(a_1, 2)
getitem_2 = split_copy_tensor_1[0]
getitem_3 = split_copy_tensor_1[1]; split_copy_tensor_1 = None
diagonal_scatter_default = torch.ops.aten.diagonal_scatter.default(getitem_3, add_tensor); getitem_3 = None
slice_scatter_default = torch.ops.aten.slice_scatter.default(a_1, diagonal_scatter_default, 0, 2, 4); diagonal_scatter_default = None
mul_tensor = torch.ops.aten.mul.Tensor(slice_scatter_default, slice_scatter_default)
copy__default = torch.ops.aten.copy_.default(a_1, slice_scatter_default); a_1 = slice_scatter_default = None
return add_tensor
""") # noqa: B950
def test_view_inplace(self):
def f(x):
# test: view + inplace op (transpose_)
tmp = torch.ones(4)
x.transpose_(1, 0)
y = x[0]
y.add_(tmp)
return x
self.assert_functionalization(f, torch.ones(4, 2), mutated_input_metadata=True)
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4], device = device(type='cpu'), pin_memory = False)
transpose_copy_int = torch.ops.aten.transpose_copy.int(a_1, 1, 0)
select_copy_int = torch.ops.aten.select_copy.int(transpose_copy_int, 0, 0); transpose_copy_int = None
add_tensor = torch.ops.aten.add.Tensor(select_copy_int, ones); select_copy_int = ones = None
transpose_copy_int_1 = torch.ops.aten.transpose_copy.int(a_1, 1, 0); a_1 = None
select_scatter_default = torch.ops.aten.select_scatter.default(transpose_copy_int_1, add_tensor, 0, 0); transpose_copy_int_1 = add_tensor = None
transpose_copy_int_2 = torch.ops.aten.transpose_copy.int(select_scatter_default, 1, 0); select_scatter_default = None
transpose_copy_int_3 = torch.ops.aten.transpose_copy.int(transpose_copy_int_2, 1, 0); transpose_copy_int_2 = None
return transpose_copy_int_3
""") # noqa: B950
def test_optional_tensor_list(self):
def f(x):
# test: an operator that takes in a List[Optional[Tensor]] argument
# (index_put)
y = x.view(8)
indices = torch.arange(4)
values = torch.arange(4, dtype=y.dtype)
y.index_put_((indices,), values, accumulate=False)
return y
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
view_copy_default = torch.ops.aten.view_copy.default(a_1, [8])
arange = torch.ops.aten.arange.default(4, device = device(type='cpu'), pin_memory = False)
arange_1 = torch.ops.aten.arange.default(4, dtype = torch.float32, device = device(type='cpu'), pin_memory = False)
index_put_default = torch.ops.aten.index_put.default(view_copy_default, [arange], arange_1); view_copy_default = arange = arange_1 = None
view_copy_default_1 = torch.ops.aten.view_copy.default(index_put_default, [4, 2])
copy__default = torch.ops.aten.copy_.default(a_1, view_copy_default_1); a_1 = view_copy_default_1 = None
return index_put_default
""") # noqa: B950
def test_scalars(self):
def f(x):
# test: the pass can handle scalar inputs properly
tmp = torch.ones(4, 2)
y = x.view(4, 2)
y.add_(1)
z = 2 * y
z.div_(1)
return z
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_copy_default = torch.ops.aten.view_copy.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(view_copy_default, 1); view_copy_default = None
mul_tensor = torch.ops.aten.mul.Tensor(add_tensor, 2)
div_tensor = torch.ops.aten.div.Tensor(mul_tensor, 1); mul_tensor = None
view_copy_default_1 = torch.ops.aten.view_copy.default(add_tensor, [4, 2]); add_tensor = None
copy__default = torch.ops.aten.copy_.default(a_1, view_copy_default_1); a_1 = view_copy_default_1 = None
return div_tensor
""")
@skipIfTorchDynamo("Test does not work with TorchDynamo")
def test_metadata_change(self):
def f(x):
# ops like ge_() are allowed to change the dtype of the input.
# functionalization should pick up on that.
y = x.clone()
out = y.ge_(0)
return out
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
clone_default = torch.ops.aten.clone.default(a_1); a_1 = None
ge_scalar = torch.ops.aten.ge.Scalar(clone_default, 0); clone_default = None
_to_copy_default = torch.ops.aten._to_copy.default(ge_scalar, dtype = torch.float32, layout = torch.strided); ge_scalar = None
return _to_copy_default
""")
reinplaced_logs = self.get_logs(f, torch.ones(2, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
clone_default = torch.ops.aten.clone.default(a_1); a_1 = None
ge_scalar = torch.ops.aten.ge_.Scalar(clone_default, 0)
_to_copy_default = torch.ops.aten._to_copy.default(clone_default, dtype = torch.float32, layout = torch.strided); clone_default = None
return _to_copy_default
""") # noqa: B950
@skipIfTorchDynamo("Test does not work with TorchDynamo")
def test_metadata_change_out_op(self):
def f(t, y):
out_1 = torch.ones(1)
return torch.add(t, y, out=out_1)
inpt1, inpt2 = torch.tensor([1]), torch.tensor([1])
inpt1_func, inpt2_func = torch._to_functional_tensor(inpt1), torch._to_functional_tensor(inpt2)
out_ref = f(inpt1, inpt2)
torch._enable_functionalization(reapply_views=True)
try:
out_functional = f(inpt1_func, inpt2_func)
finally:
torch._disable_functionalization()
self.assertEqual(out_ref, torch._from_functional_tensor(out_functional))
def test_only_one_view(self):
def f(x):
# This tests that we don't have any unnecessary views in the trace.
# If the input wasn't mutated, we don't need to regenerate it,
# so there should be a total of 1 op in the output trace.
return x.view(4, 2)
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
view_copy_default = torch.ops.aten.view_copy.default(a_1, [4, 2]); a_1 = None
return view_copy_default
""")
def test_everything(self):
def f(x):
# test: everything
tmp = torch.ones(2, 2)
x2 = x + x
y = x2.view(8)
z0 = y.reshape(2, 4)
z1 = z0.transpose(1, 0)
z1.unsqueeze_(0)
z1.squeeze_()
z2, z3 = z1.split(2)
z2.add_(tmp)
z4 = z0[0] + z2.reshape(4)
return z2
self.assert_functionalization(f, torch.ones(4, 2))
logs = self.get_logs(f, torch.ones(4, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2, 2], device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
view_copy_default = torch.ops.aten.view_copy.default(add_tensor, [8])
_reshape_alias_copy_default = torch.ops.aten._reshape_alias_copy.default(view_copy_default, [2, 4], [4, 1]); view_copy_default = None
transpose_copy_int = torch.ops.aten.transpose_copy.int(_reshape_alias_copy_default, 1, 0)
unsqueeze_copy_default = torch.ops.aten.unsqueeze_copy.default(transpose_copy_int, 0); transpose_copy_int = None
squeeze_copy_default = torch.ops.aten.squeeze_copy.default(unsqueeze_copy_default); unsqueeze_copy_default = None
split_copy_tensor = torch.ops.aten.split_copy.Tensor(squeeze_copy_default, 2); squeeze_copy_default = None
getitem = split_copy_tensor[0]
getitem_1 = split_copy_tensor[1]; split_copy_tensor = None
add_tensor_1 = torch.ops.aten.add.Tensor(getitem, ones); getitem = ones = None
select_copy_int = torch.ops.aten.select_copy.int(_reshape_alias_copy_default, 0, 0); _reshape_alias_copy_default = None
clone_default = torch.ops.aten.clone.default(add_tensor_1, memory_format = torch.contiguous_format)
_unsafe_view_default = torch.ops.aten._unsafe_view.default(clone_default, [4]); clone_default = None
view_copy_default_1 = torch.ops.aten.view_copy.default(add_tensor, [8]); add_tensor = None
_reshape_alias_copy_default_1 = torch.ops.aten._reshape_alias_copy.default(view_copy_default_1, [2, 4], [4, 1]); view_copy_default_1 = None
transpose_copy_int_1 = torch.ops.aten.transpose_copy.int(_reshape_alias_copy_default_1, 1, 0); _reshape_alias_copy_default_1 = None
unsqueeze_copy_default_1 = torch.ops.aten.unsqueeze_copy.default(transpose_copy_int_1, 0); transpose_copy_int_1 = None
squeeze_copy_default_1 = torch.ops.aten.squeeze_copy.default(unsqueeze_copy_default_1); unsqueeze_copy_default_1 = None
slice_scatter_default = torch.ops.aten.slice_scatter.default(squeeze_copy_default_1, add_tensor_1, 0, 0, 2); squeeze_copy_default_1 = None
unsqueeze_copy_default_2 = torch.ops.aten.unsqueeze_copy.default(slice_scatter_default, 0); slice_scatter_default = None
squeeze_copy_dim = torch.ops.aten.squeeze_copy.dim(unsqueeze_copy_default_2, 0); unsqueeze_copy_default_2 = None
transpose_copy_int_2 = torch.ops.aten.transpose_copy.int(squeeze_copy_dim, 1, 0); squeeze_copy_dim = None
_reshape_alias_copy_default_2 = torch.ops.aten._reshape_alias_copy.default(transpose_copy_int_2, [8], [1]); transpose_copy_int_2 = None
view_copy_default_2 = torch.ops.aten.view_copy.default(_reshape_alias_copy_default_2, [4, 2]); _reshape_alias_copy_default_2 = None
view_copy_default_3 = torch.ops.aten.view_copy.default(view_copy_default_2, [8]); view_copy_default_2 = None
_reshape_alias_copy_default_3 = torch.ops.aten._reshape_alias_copy.default(view_copy_default_3, [2, 4], [4, 1]); view_copy_default_3 = None
select_copy_int_1 = torch.ops.aten.select_copy.int(_reshape_alias_copy_default_3, 0, 0); _reshape_alias_copy_default_3 = None
add_tensor_2 = torch.ops.aten.add.Tensor(select_copy_int_1, _unsafe_view_default); select_copy_int_1 = _unsafe_view_default = None
return add_tensor_1
""") # noqa: B950
reinplaced_logs = self.get_logs(f, torch.ones(4, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([2, 2], device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
view_default = torch.ops.aten.view.default(add_tensor, [8])
_reshape_alias_default = torch.ops.aten._reshape_alias.default(view_default, [2, 4], [4, 1]); view_default = None
transpose_int = torch.ops.aten.transpose.int(_reshape_alias_default, 1, 0)
unsqueeze_default = torch.ops.aten.unsqueeze.default(transpose_int, 0); transpose_int = None
squeeze_default = torch.ops.aten.squeeze.default(unsqueeze_default); unsqueeze_default = None
split_tensor = torch.ops.aten.split.Tensor(squeeze_default, 2); squeeze_default = None
getitem = split_tensor[0]
getitem_1 = split_tensor[1]; split_tensor = None
add_tensor_1 = torch.ops.aten.add_.Tensor(getitem, ones); ones = None
select_int = torch.ops.aten.select.int(_reshape_alias_default, 0, 0); _reshape_alias_default = None
clone_default = torch.ops.aten.clone.default(getitem, memory_format = torch.contiguous_format)
_unsafe_view_default = torch.ops.aten._unsafe_view.default(clone_default, [4]); clone_default = None
view_default_1 = torch.ops.aten.view.default(add_tensor, [8]); add_tensor = None
_reshape_alias_default_1 = torch.ops.aten._reshape_alias.default(view_default_1, [2, 4], [4, 1]); view_default_1 = None
transpose_int_1 = torch.ops.aten.transpose.int(_reshape_alias_default_1, 1, 0); _reshape_alias_default_1 = None
unsqueeze_default_1 = torch.ops.aten.unsqueeze.default(transpose_int_1, 0); transpose_int_1 = None
squeeze_default_1 = torch.ops.aten.squeeze.default(unsqueeze_default_1); unsqueeze_default_1 = None
unsqueeze_default_2 = torch.ops.aten.unsqueeze.default(squeeze_default_1, 0); squeeze_default_1 = None
squeeze_dim = torch.ops.aten.squeeze.dim(unsqueeze_default_2, 0); unsqueeze_default_2 = None
transpose_int_2 = torch.ops.aten.transpose.int(squeeze_dim, 1, 0); squeeze_dim = None
_reshape_alias_default_2 = torch.ops.aten._reshape_alias.default(transpose_int_2, [8], [1]); transpose_int_2 = None
view_default_2 = torch.ops.aten.view.default(_reshape_alias_default_2, [4, 2]); _reshape_alias_default_2 = None
view_default_3 = torch.ops.aten.view.default(view_default_2, [8]); view_default_2 = None
_reshape_alias_default_3 = torch.ops.aten._reshape_alias.default(view_default_3, [2, 4], [4, 1]); view_default_3 = None
select_int_1 = torch.ops.aten.select.int(_reshape_alias_default_3, 0, 0); _reshape_alias_default_3 = None
add_tensor_2 = torch.ops.aten.add.Tensor(select_int_1, _unsafe_view_default); select_int_1 = _unsafe_view_default = None
return getitem
""")
def test_reapply_views_simple(self):
def f(x):
tmp = torch.ones(4, 2)
y = x.view(4, 2)
y.add_(tmp)
z = x * x
return y
self.assert_functionalization(f, torch.ones(4, 2), reapply_views=True)
logs = self.get_logs(f, torch.ones(4, 2), reapply_views=True)
self.assertExpectedInline(logs, """\
def forward(self, a_1):
ones = torch.ops.aten.ones.default([4, 2], device = device(type='cpu'), pin_memory = False)
view_default = torch.ops.aten.view.default(a_1, [4, 2])
add_tensor = torch.ops.aten.add.Tensor(view_default, ones); view_default = ones = None
view_default_1 = torch.ops.aten.view.default(add_tensor, [4, 2])
mul_tensor = torch.ops.aten.mul.Tensor(view_default_1, view_default_1)
copy__default = torch.ops.aten.copy_.default(a_1, view_default_1); a_1 = view_default_1 = None
return add_tensor
""")
def test_aliases_maintained_after_pass_when_reapplying_views(self):
def f(x):
tmp = torch.ones(4, 2)
y = x.view(4, 2)
z = x.view(4, 2)
y.add_(tmp)
return y, z
input_functional = torch._to_functional_tensor(torch.ones(4, 2))
torch._enable_functionalization(reapply_views=True)
try:
y, z = f(input_functional)
torch._sync(y)
torch._sync(z)
finally:
torch._disable_functionalization()
# y and z are aliases inside of the function, and that aliasing relationship should be maintained.
_y = torch._from_functional_tensor(y)
_z = torch._from_functional_tensor(z)
self.assertTrue(are_aliased(_y, _z))
# copy_() gets its own test, because it is special cased in functionalization.
# self.copy_(src) decomposes into src.to(self).expand_as(self).
def test_copy_(self):
def f(x):
tmp = torch.zeros(2, 2)
tmp_slice = tmp.diagonal()
y = tmp_slice.copy_(x)
z = y.add_(x)
return z
# Test 1: copy_() with same dtype and shape
# to() is a composite op that noops when the dtype/shape match, so nothing gets logged.
# self.assert_functionalization(f, torch.ones(2))
logs = self.get_logs(f, torch.ones(2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(zeros); zeros = None
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
return add_tensor
""")
reinplaced_logs = self.get_logs(f, torch.ones(2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_default = torch.ops.aten.diagonal.default(zeros); zeros = None
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
return add_tensor
""")
# Test 2: copy_() with same dtype, different shape
self.assert_functionalization(f, torch.ones(1))
logs = self.get_logs(f, torch.ones(1))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(zeros); zeros = None
expand_copy_default = torch.ops.aten.expand_copy.default(a_1, [2])
add_tensor = torch.ops.aten.add.Tensor(expand_copy_default, a_1); expand_copy_default = a_1 = None
return add_tensor
""")
reinplaced_logs = self.get_logs(f, torch.ones(1), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_default = torch.ops.aten.diagonal.default(zeros); zeros = None
expand_copy_default = torch.ops.aten.expand_copy.default(a_1, [2])
add_tensor = torch.ops.aten.add_.Tensor(expand_copy_default, a_1); a_1 = None
return expand_copy_default
""")
# Test 3: copy_() with different dtype, same shape
self.assert_functionalization(f, torch.ones(2, dtype=torch.long))
logs = self.get_logs(f, torch.ones(2, dtype=torch.long))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(zeros); zeros = None
_to_copy_default = torch.ops.aten._to_copy.default(a_1, dtype = torch.float32, layout = torch.strided, device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add.Tensor(_to_copy_default, a_1); _to_copy_default = a_1 = None
return add_tensor
""") # noqa: B950
reinplaced_logs = self.get_logs(f, torch.ones(2, dtype=torch.long), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_default = torch.ops.aten.diagonal.default(zeros); zeros = None
_to_copy_default = torch.ops.aten._to_copy.default(a_1, dtype = torch.float32, layout = torch.strided, device = device(type='cpu'), pin_memory = False)
add_tensor = torch.ops.aten.add_.Tensor(_to_copy_default, a_1); a_1 = None
return _to_copy_default
""") # noqa: B950
# Test 4: copy_() with different dtype, different shape
self.assert_functionalization(f, torch.ones(1, dtype=torch.long))
logs = self.get_logs(f, torch.ones(1, dtype=torch.long))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(zeros); zeros = None
_to_copy_default = torch.ops.aten._to_copy.default(a_1, dtype = torch.float32, layout = torch.strided, device = device(type='cpu'), pin_memory = False)
expand_copy_default = torch.ops.aten.expand_copy.default(_to_copy_default, [2]); _to_copy_default = None
add_tensor = torch.ops.aten.add.Tensor(expand_copy_default, a_1); expand_copy_default = a_1 = None
return add_tensor
""") # noqa: B950
reinplaced_logs = self.get_logs(f, torch.ones(1, dtype=torch.long), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
zeros = torch.ops.aten.zeros.default([2, 2], device = device(type='cpu'), pin_memory = False)
diagonal_default = torch.ops.aten.diagonal.default(zeros); zeros = None
_to_copy_default = torch.ops.aten._to_copy.default(a_1, dtype = torch.float32, layout = torch.strided, device = device(type='cpu'), pin_memory = False)
expand_copy_default = torch.ops.aten.expand_copy.default(_to_copy_default, [2]); _to_copy_default = None
add_tensor = torch.ops.aten.add_.Tensor(expand_copy_default, a_1); a_1 = None
return expand_copy_default
""") # noqa: B950
def test_expand_symint(self):
# Once some existing SymInt bugs are ironed out, we should update
# this test to plumb FakeSymbolicTensors through it
def f(x):
return x.expand(x.size(0), x.size(1))
self.assert_functionalization(f, torch.ones(2, 2))
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
expand_copy_default = torch.ops.aten.expand_copy.default(a_1, [2, 2]); a_1 = None
return expand_copy_default
""")
def test_fill_(self):
def f(x):
y = x + x
z = y.diagonal()
z.fill_(0)
return y
self.assert_functionalization(f, torch.ones(2, 2))
logs = self.get_logs(f, torch.ones(2, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
diagonal_copy_default = torch.ops.aten.diagonal_copy.default(add_tensor)
fill_scalar = torch.ops.aten.fill.Scalar(diagonal_copy_default, 0); diagonal_copy_default = None
diagonal_scatter_default = torch.ops.aten.diagonal_scatter.default(add_tensor, fill_scalar); add_tensor = fill_scalar = None
return diagonal_scatter_default
""")
reinplaced_logs = self.get_logs(f, torch.ones(2, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
add_tensor = torch.ops.aten.add.Tensor(a_1, a_1); a_1 = None
diagonal_default = torch.ops.aten.diagonal.default(add_tensor)
fill_scalar = torch.ops.aten.fill_.Scalar(diagonal_default, 0); diagonal_default = None
return add_tensor
""")
def test_resize_smaller(self):
def f(w):
# Resizing to a smaller size doesn't affect storage
x = w + 1
y = x.view(4, 4)
y.resize_(3, 3)
y2 = y.view(-1)
y2.add_(1)
z = y + 1
return z
self.assert_functionalization(f, torch.ones(8, 2))
logs = self.get_logs(f, torch.ones(8, 2))
self.assertExpectedInline(logs, """\
def forward(self, a_1):
add_tensor = torch.ops.aten.add.Tensor(a_1, 1); a_1 = None
view_copy_default = torch.ops.aten.view_copy.default(add_tensor, [4, 4])
resize_default = torch.ops.aten.resize.default(view_copy_default, [3, 3])
as_strided_copy_default = torch.ops.aten.as_strided_copy.default(view_copy_default, [3, 3], [3, 1]); view_copy_default = None
view_copy_default_1 = torch.ops.aten.view_copy.default(as_strided_copy_default, [-1]); as_strided_copy_default = None
add_tensor_1 = torch.ops.aten.add.Tensor(view_copy_default_1, 1); view_copy_default_1 = None
view_copy_default_2 = torch.ops.aten.view_copy.default(add_tensor, [4, 4]); add_tensor = None
as_strided_copy_default_1 = torch.ops.aten.as_strided_copy.default(view_copy_default_2, [3, 3], [3, 1])
view_copy_default_3 = torch.ops.aten.view_copy.default(add_tensor_1, [3, 3]); add_tensor_1 = None
as_strided_scatter_default = torch.ops.aten.as_strided_scatter.default(view_copy_default_2, view_copy_default_3, [3, 3], [3, 1]); view_copy_default_2 = view_copy_default_3 = None
view_copy_default_4 = torch.ops.aten.view_copy.default(as_strided_scatter_default, [8, 2]); as_strided_scatter_default = None
view_copy_default_5 = torch.ops.aten.view_copy.default(view_copy_default_4, [4, 4]); view_copy_default_4 = None
as_strided_copy_default_2 = torch.ops.aten.as_strided_copy.default(view_copy_default_5, [3, 3], [3, 1]); view_copy_default_5 = None
add_tensor_2 = torch.ops.aten.add.Tensor(as_strided_copy_default_2, 1); as_strided_copy_default_2 = None
return add_tensor_2
""") # noqa: B950
reinplaced_logs = self.get_logs(f, torch.ones(8, 2), reapply_views=True, run_reinplace=True)
self.assertExpectedInline(reinplaced_logs, """\
def forward(self, a_1):
add_tensor = torch.ops.aten.add.Tensor(a_1, 1); a_1 = None
view_default = torch.ops.aten.view.default(add_tensor, [4, 4])
resize_default = torch.ops.aten.resize.default(view_default, [3, 3])
as_strided_default = torch.ops.aten.as_strided.default(view_default, [3, 3], [3, 1]); view_default = None
view_default_1 = torch.ops.aten.view.default(as_strided_default, [-1]); as_strided_default = None
add_tensor_1 = torch.ops.aten.add_.Tensor(view_default_1, 1)
view_default_2 = torch.ops.aten.view.default(add_tensor, [4, 4]); add_tensor = None
as_strided_default_1 = torch.ops.aten.as_strided.default(view_default_2, [3, 3], [3, 1])
view_default_3 = torch.ops.aten.view.default(view_default_1, [3, 3]); view_default_1 = None
view_default_4 = torch.ops.aten.view.default(view_default_2, [8, 2]); view_default_2 = None
view_default_5 = torch.ops.aten.view.default(view_default_4, [4, 4]); view_default_4 = None
as_strided_default_2 = torch.ops.aten.as_strided.default(view_default_5, [3, 3], [3, 1]); view_default_5 = None
add_tensor_2 = torch.ops.aten.add_.Tensor(as_strided_default_2, 1)
return as_strided_default_2
""")
def test_resize_larger_valid(self):
def f(x):
y = x + 1
# resizing a tensor to a larger size is only currently allowed
# if the tensor-to-resize is not a view / has no outstanding views.
# See Note [resize_() in functionalization pass]
y.resize_(5, 5)