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test_fake_tensor.py
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test_fake_tensor.py
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# Owner(s): ["module: meta tensors"]
import contextlib
import copy
import dataclasses
import inspect
import itertools
import pickle
import unittest
import weakref
from unittest.mock import patch
import numpy as np
import torch
import torch._dynamo
import torch._functorch.config
import torch._prims as prims
import torch.testing._internal.optests as optests
import torch.utils._pytree as pytree
from torch import distributed as dist
from torch._C._functorch import _add_batch_dim, get_unwrapped, is_batchedtensor
from torch._dynamo.testing import make_test_cls_with_patches, rand_strided
from torch._guards import tracing, TracingContext
from torch._higher_order_ops.scan import scan
from torch._subclasses.fake_tensor import (
DynamicOutputShapeException,
extract_tensor_metadata,
FakeTensor,
FakeTensorConverter,
FakeTensorMode,
unset_fake_temporarily,
UnsupportedOperatorException,
_CacheKeyState
)
from torch.fx.experimental.proxy_tensor import make_fx
from torch.fx.experimental.symbolic_shapes import (
DimDynamic,
free_symbols,
ShapeEnv,
ShapeEnvSettings,
StatelessSymbolicContext,
statically_known_true,
)
from torch.fx.passes.fake_tensor_prop import FakeTensorProp
from torch.testing import FileCheck
from torch.testing._internal.common_cuda import PLATFORM_SUPPORTS_FLASH_ATTENTION
from torch.testing._internal.common_device_type import (
instantiate_device_type_tests,
OpDTypes,
ops,
)
from torch.testing._internal.common_utils import (
instantiate_parametrized_tests,
parametrize,
run_tests,
skipIfCrossRef,
skipIfRocm,
skipIfTorchDynamo,
TemporaryFileName,
TEST_WITH_TORCHDYNAMO,
TestCase,
)
from torch.testing._internal.inductor_utils import GPU_TYPE
from torch.testing._internal.custom_op_db import custom_op_db
from torch.testing._internal.jit_utils import RUN_CUDA
from torch.utils._mode_utils import no_dispatch
from torch.utils._python_dispatch import TorchDispatchMode
aten = torch.ops.aten
torch._dynamo.config.fake_tensor_cache_enabled = True
torch._dynamo.config.fake_tensor_cache_crosscheck_enabled = True
def expectedFailurePropagateRealTensors(fn):
fn._expected_failure_propagate_real_tensors = True
return fn
class FakeTensorTest(TestCase):
def checkType(self, t, device_str, size):
self.assertTrue(isinstance(t, FakeTensor))
self.assertEqual(t.device.type, device_str)
self.assertEqual(list(t.size()), size)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_cuda_initialized(self):
# doesnt error
with FakeTensorMode():
p = torch.randn(4, 2, requires_grad=True, device="cuda")
x = torch.randn(8, 4, device="cuda")
y = torch.mm(x, p).square().sum()
y.backward()
def test_basic(self):
x = torch.empty(2, 2, device="cpu")
y = torch.empty(4, 2, 2, device="cpu")
with FakeTensorMode() as mode:
x = mode.from_tensor(x)
y = mode.from_tensor(y)
z = x + y
self.assertEqual(z.shape, (4, 2, 2))
self.assertEqual(z.device, torch.device("cpu"))
self.assertTrue(isinstance(z, FakeTensor))
def test_custom_op_fallback(self):
from torch.library import impl, Library
try:
test_lib = Library("my_test_op", "DEF") # noqa: TOR901
test_lib.define("foo(Tensor self) -> Tensor")
@impl(test_lib, "foo", "CPU")
def foo_impl(self):
return self.cos()
x = torch.empty(2, 2, device="cpu")
with self.assertRaisesRegex(
UnsupportedOperatorException, "my_test_op.foo.default"
):
with FakeTensorMode(allow_fallback_kernels=True) as mode:
x = mode.from_tensor(x)
torch.ops.my_test_op.foo(x)
finally:
test_lib._destroy()
def test_parameter_instantiation(self):
with FakeTensorMode():
x = torch.rand([4])
y = torch.nn.parameter.Parameter(x)
self.assertTrue(isinstance(y, torch.nn.Parameter))
@unittest.skipIf(not dist.is_available(), "requires distributed")
def test_fsdp_flat_param(self):
from torch.distributed.fsdp._flat_param import FlatParameter
with FakeTensorMode() as m:
data = torch.randn(2, 2)
param = FlatParameter(data, requires_grad=True)
self.assertIsInstance(param, FlatParameter)
self.assertIsInstance(param, torch.nn.Parameter)
self.assertIsInstance(param, FakeTensor)
def test_non_parameter_grad(self):
mode = FakeTensorMode()
t = torch.rand([4], requires_grad=True)
fake_t = mode.from_tensor(t)
self.assertEqual(fake_t.requires_grad, t.requires_grad)
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_index_cuda_with_cpu(self):
with FakeTensorMode():
x = torch.rand([2048], device="cuda")
out = x[torch.zeros([36], dtype=torch.int64)]
self.checkType(out, "cuda", [36])
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_shape_take_not_device(self):
with FakeTensorMode():
x = torch.empty(1, device="cpu")
y = torch.empty(8, 8, device="cuda")
out = x.resize_as_(y)
self.assertEqual(out.shape, (8, 8))
self.assertEqual(out.device.type, "cpu")
self.assertTrue(isinstance(out, FakeTensor))
def test_repr(self):
with FakeTensorMode():
x = torch.empty(2, 2, device="cpu")
self.assertEqual(repr(x), "FakeTensor(..., size=(2, 2))")
x = torch.empty(2, 2, device="meta")
self.assertEqual(repr(x), "FakeTensor(..., device='meta', size=(2, 2))")
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_zero_dim(self):
with FakeTensorMode() as mode:
x = torch.tensor(0.0)
y = torch.rand([4, 4], device="cuda")
out = x + y
self.assertEqual(out.shape, (4, 4))
self.assertEqual(out.device, y.device)
self.assertTrue(isinstance(out, FakeTensor))
def test_nan_to_num(self):
with FakeTensorMode():
for dtype in [torch.float16, torch.float32]:
x = torch.rand([4], dtype=dtype)
y = torch.nan_to_num(x, nan=None)
z = torch.nan_to_num(x, 0.0)
self.assertEqual(dtype, y.dtype)
self.assertEqual(dtype, z.dtype)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_throw(self):
x = torch.tensor(0.0) # TODO: tensor() errors
with FakeTensorMode() as mode:
x_conv = mode.from_tensor(x)
y = torch.rand([4, 4], device="cuda")
z = torch.rand([4, 4], device="cpu")
self.assertRaises(Exception, lambda: torch.lerp(x_conv, y, z))
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_type_as(self):
with FakeTensorMode():
x = torch.rand([16, 1], device="cpu")
y = torch.rand([4, 4], device="cuda")
out = x.type_as(y)
self.assertEqual(out.device.type, "cuda")
self.assertTrue(isinstance(out, FakeTensor))
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_setitem(self):
for device in ["cpu", "cuda"]:
with FakeTensorMode():
x = torch.rand([16, 1], device=device)
x[..., 0] = 0
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_device_inplace_copy(self):
with FakeTensorMode():
x = torch.rand([8, 8], device="cpu")
y = torch.rand([8, 8], device="cuda")
assert x.copy_(y).device.type == "cpu"
assert y.copy_(x).device.type == "cuda"
def test_fake_dispatch_keys(self):
with FakeTensorMode():
x = torch.rand([4])
f = (
FileCheck()
.check("CPU")
.check("ADInplaceOrView")
.check("AutogradCPU")
.check("AutocastCPU")
)
f.run(torch._C._dispatch_key_set(x))
with torch.inference_mode():
x = torch.rand([4])
y = x + x
FileCheck().check("CPU").check("AutocastCPU").run(
torch._C._dispatch_key_set(y)
)
FileCheck().check_not("ADInplaceOrView").check_not("Autograd").run(
torch._C._dispatch_key_set(y)
)
def test_batch_tensor(self):
x = torch.rand((3, 4, 5))
b = _add_batch_dim(x, 0, 0)
mode = FakeTensorMode()
fake_b = mode.from_tensor(b)
prims.utils.compare_tensor_meta(b, fake_b, check_strides=True)
b1 = _add_batch_dim(x, 1, 1)
b2 = _add_batch_dim(b1, 0, 2)
fake_b2 = mode.from_tensor(b2)
prims.utils.compare_tensor_meta(b2, fake_b2, check_strides=True)
self.assertTrue(is_batchedtensor(fake_b2))
fake_b1 = get_unwrapped(fake_b2)
self.assertTrue(is_batchedtensor(fake_b1))
fake_tensor = get_unwrapped(fake_b1)
self.assertIsInstance(fake_tensor, FakeTensor)
def test_constructor(self):
with FakeTensorMode():
x = torch.rand([4, 4], device="cpu")
self.assertTrue(isinstance(x, FakeTensor))
self.assertTrue(x.device.type == "cpu")
def test_mode(self):
with FakeTensorMode():
y = torch.rand([4], device="cpu")
out = y + y
self.assertTrue(isinstance(out, FakeTensor))
def test_full(self):
# Test torch.full returns tensor with correct dtype
with torch._subclasses.CrossRefFakeMode():
y = torch.full((4, 4), 1)
def check_function_with_fake(self, fn):
out = fn()
with torch._subclasses.FakeTensorMode():
out_fake = fn()
for a, b in zip(pytree.tree_leaves(out), pytree.tree_leaves(out_fake)):
if not isinstance(a, torch.Tensor):
self.assertTrue(not isinstance(b, torch.Tensor))
continue
prims.utils.compare_tensor_meta(a, b, check_strides=True)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_non_kwarg_device(self):
with FakeTensorMode():
x = torch.rand([16, 1], device="cpu")
y = x.to(torch.device("cpu"))
self.assertIs(x, y)
z = x.to(torch.device("cuda"))
self.assertEqual(z.device.type, "cuda")
def test_non_overlapping_stride_zero(self):
def foo():
x = torch.empty_strided([1, 3, 427, 640], (0, 1, 1920, 3))
return x.half()
self.check_function_with_fake(foo)
def test_fake_mode_error(self):
x = torch.rand([4, 4])
with self.assertRaisesRegex(Exception, "Please convert all Tensors"):
with FakeTensorMode():
y = x[0]
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
def test_fake_grad_copy(self):
x = torch.rand([4, 4], requires_grad=True)
x.grad = torch.rand([4, 4])
mode = FakeTensorMode()
fake_x = mode.from_tensor(x)
prims.utils.compare_tensor_meta(fake_x, x)
prims.utils.compare_tensor_meta(fake_x.grad, x.grad)
self.assertTrue(isinstance(fake_x.grad, FakeTensor))
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_index_put_error(self):
mode = FakeTensorMode()
for context in [contextlib.nullcontext, lambda: mode]:
with context():
y = torch.randn(2, 2, 3)
x = torch.randn(2, 2, 3).to("cuda")
with self.assertRaises(RuntimeError):
x[[1, 1]] = y
with self.assertRaises(RuntimeError):
torch.ops.aten.index_put(x, torch.tensor([1, 1], device="cuda"), y)
# no error
torch.ops.aten.index_put(
x, torch.tensor([1, 1], device="cuda"), torch.tensor(5.0)
)
torch.ops.aten.index_put_(
x, torch.tensor([1, 1], device="cuda"), torch.tensor(5.0)
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_like_constructor(self):
with FakeTensorMode():
x = torch.rand([4, 4])
y = torch.ones_like(x)
self.assertTrue(isinstance(y, FakeTensor))
self.assertEqual(y.device.type, "cpu")
z = torch.ones_like(x, device="cuda")
self.assertTrue(isinstance(z, FakeTensor))
self.assertEqual(z.device.type, "cuda")
def test_binary_op_type_promotion(self):
with FakeTensorMode():
x = torch.empty([2, 2], dtype=torch.float)
y = torch.empty([2, 2], dtype=torch.int64)
out = x / y
self.assertEqual(out.dtype, torch.float)
self.assertEqual(out.device.type, "cpu")
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
def test_from_numpy(self):
with FakeTensorMode():
x = torch.tensor(np.zeros([4, 4]))
self.checkType(x, "cpu", [4, 4])
def test_randperm(self):
x = torch.randperm(10)
y = torch.randperm(5, device="cpu")
with FakeTensorMode():
x1 = torch.randperm(10)
prims.utils.compare_tensor_meta(x, x1)
y1 = torch.randperm(5, device="cpu")
prims.utils.compare_tensor_meta(y, y1)
def test_print_in_fake_mode(self):
x = torch.zeros(2)
# does not fail
with FakeTensorMode():
out = str(x)
assert "FakeTensor" not in out
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_upsample_bilinear_small_channels(self):
out = []
mode = FakeTensorMode()
for i, context in enumerate([contextlib.nullcontext, lambda: mode]):
with context():
arg0_1 = torch.empty_strided(
(3, 427, 640), (1, 1920, 3), dtype=torch.float32, device="cuda"
)
unsqueeze = torch.ops.aten.unsqueeze.default(arg0_1, 0)
out.append(
torch.ops.aten.upsample_bilinear2d.default(
unsqueeze, [800, 1199], False
)
)
self.assertTrue(out[1].is_contiguous())
self.checkMetaProps(out[0], out[1])
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_cpu_fallback(self):
with FakeTensorMode(allow_fallback_kernels=False):
filters = torch.randn(8, 4, 3, 3).cuda()
inputs = torch.randn(1, 4, 5, 5).cuda()
out = torch.nn.functional.conv2d(inputs, filters, padding=1)
self.assertEqual(out.device.type, "cuda")
self.assertEqual(list(out.size()), [1, 8, 5, 5])
with FakeTensorMode(allow_fallback_kernels=True):
# intentionally bad inputs
filters = torch.randn(8, 20, 3, 3).cuda()
inputs = torch.randn(1, 7, 10, 5).cuda()
with self.assertRaises(RuntimeError):
torch.nn.functional.conv2d(inputs, filters, padding=1)
with FakeTensorMode(allow_fallback_kernels=True):
filters = torch.randn(8, 4, 3, 3).cuda()
inputs = torch.randn(1, 4, 5, 5).cuda()
out = torch.nn.functional.conv2d(inputs, filters, padding=1)
self.assertEqual(out.device.type, "cuda")
self.assertEqual(list(out.size()), [1, 8, 5, 5])
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_out_multi_device(self):
with FakeTensorMode():
x = torch.rand([4])
y = torch.rand([4], device="cuda")
with self.assertRaisesRegex(Exception, "found.+two.+devices"):
torch.sin(x, out=y)
with self.assertRaisesRegex(Exception, "found.+two.+devices"):
x.add_(y)
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_normalize_device(self):
with FakeTensorMode():
x = torch.empty(1, device="cuda")
y = torch.empty(1, device=f"cuda:{torch.cuda.current_device()}")
out = x + y
self.checkType(out, "cuda", [1])
def test_recursive_invocation(self):
mode = FakeTensorMode()
with mode:
x = torch.tensor(2)
mode.in_kernel_invocation = True
y = x + x
self.assertTrue(mode.in_kernel_invocation)
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@skipIfRocm
@parametrize(
"allow_fallback_kernels",
[False, True],
lambda a: "with_fallback" if a else "without_fallback",
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_cudnn_rnn(self, allow_fallback_kernels):
def fn(
a0,
b0,
b1,
b2,
b3,
b4,
b5,
b6,
b7,
b8,
b9,
b10,
b11,
b12,
b13,
b14,
b15,
a3,
a4,
a5,
):
a1 = [
b0,
b1,
b2,
b3,
b4,
b5,
b6,
b7,
b8,
b9,
b10,
b11,
b12,
b13,
b14,
b15,
]
return torch.ops.aten._cudnn_rnn(
a0,
a1,
4,
a3,
a4,
a5,
2,
2048,
0,
2,
False,
0.0,
False,
True,
[],
None,
)
mode = FakeTensorMode(allow_fallback_kernels=allow_fallback_kernels)
for i, context in enumerate([contextlib.nullcontext, lambda: mode]):
with context():
inps1 = [
torch.randn([92, 8, 2048]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192, 4096]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192, 4096]).cuda(),
torch.randn([8192, 2048]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([8192]).cuda(),
torch.randn([167837696]).cuda(),
torch.randn([4, 8, 2048]).cuda(),
torch.randn([4, 8, 2048]).cuda(),
]
inps2 = inps1
inps2[len(inps2) - 1] = None # argument `cx` can be None
for inps in [inps1, inps2]:
out = fn(*inps)
self.assertIs(out[4], inps[-3])
for ten in out:
if i == 1:
self.assertTrue(isinstance(ten, FakeTensor))
self.assertEqual(ten.device.type, "cuda")
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_cuda_lstm(self):
# Ensure CUDA (non-cuDNN) impl succeeds with fake tensors.
with torch.backends.cudnn.flags(enabled=False):
fake_tensor_mode = FakeTensorMode(allow_fallback_kernels=False)
with fake_tensor_mode:
N = 5
L = 4
H_in = 2
hidden_size = 3
proj_size = 2
num_layers = 2
bidir = False
D = 2 if bidir else 1
H_out = proj_size if proj_size > 0 else hidden_size
lstm = torch.nn.LSTM(
input_size=H_in,
hidden_size=hidden_size,
num_layers=num_layers,
proj_size=proj_size,
batch_first=False,
bias=True,
bidirectional=bidir,
device="cuda",
)
h_0 = torch.randn((num_layers * D, N, H_out), device="cuda")
c_0 = torch.randn((num_layers * D, N, hidden_size), device="cuda")
inp = torch.randn((L, N, H_in), device="cuda")
(output, (h_n, c_n)) = lstm(inp, (h_0, c_0))
output.sum().backward()
self.assertEqual(output.shape, (L, N, D * H_out))
self.assertEqual(h_n.shape, (D * num_layers, N, H_out))
self.assertEqual(c_n.shape, (D * num_layers, N, hidden_size))
def test_data_dependent_operator(self):
with FakeTensorMode(allow_fallback_kernels=False):
x = torch.rand([10, 10])
self.assertRaises(DynamicOutputShapeException, lambda: torch.nonzero(x))
def test_parameter_view(self):
x = torch.nn.Parameter(torch.randn(4))
x_view = x.view(4)
mode = FakeTensorMode()
fake_x_view = mode.from_tensor(x_view)
fake_x = mode.from_tensor(x)
self.assertFalse(isinstance(fake_x_view, torch.nn.Parameter))
self.assertTrue(isinstance(fake_x, torch.nn.Parameter))
def test_tolist(self):
shape_env = ShapeEnv()
with FakeTensorMode(allow_fallback_kernels=False, shape_env=shape_env):
x = torch.rand([10])
x.tolist()
# Propagate real tensors doesn't work with fake-on-fake
@expectedFailurePropagateRealTensors
def test_same_shape_env_preserved(self):
shape_env = ShapeEnv()
mode1 = FakeTensorMode(shape_env=shape_env)
t1 = mode1.from_tensor(
torch.randn(10),
symbolic_context=StatelessSymbolicContext(
dynamic_sizes=[DimDynamic.DYNAMIC], constraint_sizes=[None]
),
)
mode2 = FakeTensorMode(shape_env=shape_env)
t2 = mode2.from_tensor(t1)
# t2.size(0) is still dynamic, even though we didn't pass DYNAMIC here
self.assertIsNot(t2, t1)
self.assertIs(t1.fake_mode, mode1)
self.assertIs(t2.fake_mode, mode2)
self.assertIs(t2.size(0).node.shape_env, t1.size(0).node.shape_env)
self.assertEqual(str(t2.size(0)), str(t1.size(0)))
# TODO: Support NJT. There's also some funny business with dynamic shapes
# which would need to be dealt with as well
@expectedFailurePropagateRealTensors
def test_jagged_fake_to_fake_preserved(self):
from torch.nested._internal.nested_tensor import jagged_from_list
S0, S1, S2 = 3, 4, 5
D = 4
a = torch.randn(S0, D, requires_grad=True, dtype=torch.float64)
b = torch.randn(S1, D, requires_grad=True, dtype=torch.float64)
c = torch.randn(S2, D, requires_grad=True, dtype=torch.float64)
offsets = None
jt, _ = jagged_from_list([a, b, c], offsets)
shape_env = ShapeEnv()
mode1 = FakeTensorMode(shape_env=shape_env)
t1 = mode1.from_tensor(jt)
mode2 = FakeTensorMode(shape_env=shape_env)
t2 = mode2.from_tensor(t1)
# It's not obvious that the invocation above makes it dynamic but it
# does!
self.assertTrue(free_symbols(t1.size()))
self.assertIsNot(t2, t1)
self.assertIs(t1.offsets().fake_mode, mode1)
self.assertIs(t2.offsets().fake_mode, mode2)
self.assertIs(t2.size(1).node.shape_env, t1.size(1).node.shape_env)
self.assertEqual(str(t2.size(1)), str(t1.size(1)))
def checkMetaProps(self, t1, t2):
prims.utils.compare_tensor_meta(t1, t2, check_strides=True)
@skipIfCrossRef
def test_deepcopy(self):
with FakeTensorMode() as mode:
pass
mod = torch.nn.BatchNorm2d(10)
with torch._subclasses.fake_tensor.FakeCopyMode(mode):
mod_copied = copy.deepcopy(mod)
def check_copy(mod, mod_copied):
for name, param in itertools.chain(
mod.named_parameters(), mod.named_buffers()
):
param_copied = getattr(mod_copied, name)
self.checkMetaProps(param, param_copied)
self.assertTrue(isinstance(param_copied, FakeTensor))
self.assertEqual(
isinstance(param, torch.nn.Parameter),
isinstance(param_copied, torch.nn.Parameter),
)
self.assertEqual(param.requires_grad, param_copied.requires_grad)
check_copy(mod, mod_copied)
class ModuleNew(torch.nn.Module):
def __init__(self) -> None:
super().__init__()
self.a = torch.rand([10, 2])
self.b = self.a
self.c = self.a[0]
mod = ModuleNew()
with torch._subclasses.fake_tensor.FakeCopyMode(mode):
mod_copied = copy.deepcopy(mod)
self.assertIs(mod_copied.a, mod_copied.b)
self.assertEqual(mod_copied.b.storage()._cdata, mod_copied.a.storage()._cdata)
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_new(self):
with FakeTensorMode():
a = torch.rand([16, 1])
self.checkType(a.new(10, 10), "cpu", [10, 10])
self.checkType(a.new([1, 2, 3, 4]), "cpu", [4])
b = torch.rand([4, 4], device="cuda")
self.checkType(b.new(device="cuda"), "cuda", [0])
self.checkType(a.new(torch.rand([1])), "cpu", [1])
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
def test_scalar_inputs(self):
with FakeTensorMode():
self.checkType(torch.div(3, 2), "cpu", [])
ten = torch.zeros(2, dtype=torch.int32) * 2.0
self.assertEqual(ten.dtype, torch.float)
self.checkType(ten, "cpu", [2])
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
def test_allow_meta(self):
def run_meta():
with FakeTensorMode():
x = torch.rand([4], device="meta")
return x + x
self.checkType(run_meta(), "meta", [4])
with patch.object(torch._functorch.config, "fake_tensor_allow_meta", False):
self.assertRaises(Exception, run_meta)
def test_embedding_bag_meta(self):
def f():
# This behavior was originally unintentional but we see people
# relying on it
embedding = torch.nn.EmbeddingBag(10, 3, mode="sum", device="meta")
input = torch.tensor([1, 2, 4, 5, 4, 3, 2, 9], dtype=torch.long)
offsets = torch.tensor([0, 4], dtype=torch.long)
return embedding(input, offsets)
real_out = f()
with FakeTensorMode():
fake_out = f()
for r, f in zip(real_out, fake_out):
self.assertEqual(r.size(), f.size())
self.assertEqual(r.device, f.device)
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
def test_mixed_real_and_fake_inputs(self):
class _TestPattern(torch.nn.Module):
def __init__(self) -> None:
super().__init__()
self.conv = torch.nn.Conv2d(1, 1, 1)
self.bn = torch.nn.BatchNorm2d(1)
def forward(self, input):
running_std = torch.sqrt(self.bn.running_var + self.bn.eps)
scale_factor = self.bn.weight / running_std
weight_shape = [1] * len(self.conv.weight.shape)
weight_shape[0] = -1
bias_shape = [1] * len(self.conv.weight.shape)
bias_shape[1] = -1
scaled_weight = self.conv.weight * scale_factor.reshape(weight_shape)
zero_bias = torch.zeros_like(self.conv.bias, dtype=input.dtype)
conv = self.conv._conv_forward(input, scaled_weight, zero_bias)
conv_orig = conv / scale_factor.reshape(bias_shape)
conv_orig = conv_orig + self.conv.bias.reshape(bias_shape)
conv = self.bn(conv_orig)
return conv
example_inputs = (torch.randn(1, 1, 3, 3),)
mod = _TestPattern()
with FakeTensorMode(allow_non_fake_inputs=True):
out = mod(torch.randn(1, 1, 3, 3))
self.checkType(out, "cpu", (1, 1, 3, 3))
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_aten_copy_multi_device(self):
with FakeTensorMode():
x1 = torch.rand(4, device="cpu")
x2 = torch.rand(4, device="cuda")
copy1 = torch.ops.aten.copy.default(x1, x2)
copy2 = torch.ops.aten.copy.default(x2, x1)
out = torch.empty(4, device="cpu")
torch.ops.aten.copy.out(x1, x2, out=out)
self.checkType(copy1, "cpu", (4,))
self.checkType(copy2, "cuda", (4,))
self.checkType(out, "cpu", (4,))
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_aten_index_multi_device(self):
with FakeTensorMode():
x1 = torch.rand(4, 4, device="cpu")
x2 = torch.rand(4, 4, device="cuda")
i1 = torch.tensor([0, 1], device="cuda")
i2 = torch.tensor([0, 1], device="cpu")
# NB: This one does not work: cuda indices not allowed on cpu
# tensor
# r1 = torch.ops.aten.index(x1, i1)
r2 = torch.ops.aten.index(x2, i2)
y1 = torch.rand(4, device="cpu")
y2 = torch.rand(4, device="cuda")
j1 = torch.tensor([2], device="cuda")
j2 = torch.tensor([2], device="cpu")
r3 = torch.ops.aten.index_put.default(x1, j1, y1)
r4 = torch.ops.aten.index_put.default(x2, j2, y2)
# self.checkType(r1, "cpu", ())
self.checkType(r2, "cuda", ())
self.checkType(r3, "cpu", (4, 4))
self.checkType(r4, "cuda", (4, 4))
@unittest.skipIf(
TEST_WITH_TORCHDYNAMO, "isinstance check for FakeTensor won't work with compile"
)
@unittest.skipIf(not RUN_CUDA, "requires cuda")
def test_aten_slice_scatter_multi_device(self):
with FakeTensorMode():
x1 = torch.rand(4, 4, device="cpu")
y1 = torch.rand(2, 4, device="cuda")
x2 = torch.rand(4, 4, device="cuda")
y2 = torch.rand(2, 4, device="cpu")
out = torch.empty(4, 4, device="cpu")
r1 = torch.ops.aten.slice_scatter.default(x1, y1, start=2)
r2 = torch.ops.aten.slice_scatter.default(x2, y2, start=2)
r3 = torch.ops.aten.slice_scatter.out(x1, y1, out=out, start=2)
self.checkType(r1, "cpu", (4, 4))
self.checkType(r2, "cuda", (4, 4))
self.checkType(r3, "cpu", (4, 4))
self.checkType(out, "cpu", (4, 4))
def test__adaptive_avg_pool2d_backward(self):
with FakeTensorMode():
grad_out = torch.rand(2, 3, 4, 4)
inp = torch.rand(2, 3, 4, 4).to(memory_format=torch.channels_last)
grad_in = torch.ops.aten._adaptive_avg_pool2d_backward(grad_out, inp)
self.assertTrue(
torch._prims_common.suggest_memory_format(grad_in)
== torch.channels_last
)
def test_export_numpy(self):
class MyNumpyModel(torch.nn.Module):
def forward(self, input):
input = input.numpy()
return input + np.random.randn(*input.shape)
with FakeTensorMode():
ep = torch.export.export(MyNumpyModel(), args=(torch.randn(1000),))
self.assertTrue(isinstance(ep, torch.export.ExportedProgram))
def test_unsqueeze_copy(self):
shape_env = ShapeEnv()
t1 = torch.ones(2, 2, 768)
with FakeTensorMode(shape_env=shape_env) as fake_mode:
t = fake_mode.from_tensor(
t1,
symbolic_context=StatelessSymbolicContext(
dynamic_sizes=[
DimDynamic.DYNAMIC,
DimDynamic.STATIC,
DimDynamic.STATIC,
],
),
)
self.assertEqual(t.shape[0], torch.ops.aten.unsqueeze_copy(t, 1).shape[0])
def test_alias_call(self):
fwAD = torch.autograd.forward_ad
def f(x):
return 4312491 * x
with torch._subclasses.fake_tensor.FakeTensorMode():
with fwAD.dual_level():
x = torch.randn(3, device="cpu")
y = torch.ones_like(x)
dual = fwAD.make_dual(x, y)
r = f(dual)
self.assertIsInstance(r, FakeTensor)
self.assertEqual(r.size(), [3])
@parametrize("reverse", [False, True])
def test_scan(self, reverse):
def add(x, y):
return x + y, x + y
with torch._subclasses.fake_tensor.FakeTensorMode():
x = torch.randn((3, 5, 7), device="cpu")
init = torch.randn((3, 1, 7), device="cpu")
r = scan(add, init, x, dim=1, reverse=reverse)
self.assertIsInstance(r[0], FakeTensor)
self.assertIsInstance(r[1], FakeTensor)
self.assertEqual(r[0].size(), init.size())
self.assertEqual(r[1].size(), x.size())
instantiate_parametrized_tests(FakeTensorTest)
def make_propagate_real_tensors_cls(cls):
cls = make_test_cls_with_patches(
cls,
"PropagateRealTensors",
"_propagate_real_tensors",
(torch._functorch.config, "fake_tensor_propagate_real_tensors", True),
xfail_prop="_expected_failure_propagate_real_tensors",
decorator=skipIfTorchDynamo("propagate_real_tensors affects Dynamo"),
)
cls.__file__ = __file__
cls.__module__ = __name__
globals()[cls.__name__] = cls
make_propagate_real_tensors_cls(FakeTensorTest)
class FakeTensorConstHandling(TestCase):
def assertConst(self, *args):
for arg in args:
self.assertTrue(arg.constant is not None)
def assertNotConst(self, *args):
for arg in args:
self.assertTrue(arg.constant is None)
def test_simple(self):
with FakeTensorMode():
x = torch.tensor(4.0)
self.assertEqual(x.item(), 4.0)
def test_inplace_add(self):
with FakeTensorMode():
x = torch.tensor(4.0)
y = x.add_(1)
self.assertEqual(x.item(), 5.0)
self.assertEqual(y.item(), 5.0)
self.assertConst(x, y)
def test_shared_storages(self):
with FakeTensorMode():
x = torch.tensor([4.0])
y = x[:]
self.assertEqual(x.storage()._cdata, y.storage()._cdata)
self.assertEqual(x.constant.storage()._cdata, y.constant.storage()._cdata)
def test_constant_invalidation(self):
with FakeTensorMode():
x = torch.tensor([1.0])
self.assertConst(x)
y = torch.rand([1])
x.add_(y)
self.assertNotConst(x)