tinygrad/test/test_tensor.py

574 lines
21 KiB
Python

import numpy as np
import torch
import unittest, copy
import mmap
from tinygrad import Tensor, Device, dtypes
from tinygrad.helpers import temp, CI
from extra.gradcheck import numerical_jacobian, jacobian, gradcheck
from hypothesis import given, settings, strategies as strat
settings.register_profile("my_profile", max_examples=200, deadline=None)
settings.load_profile("my_profile")
x_init = np.random.randn(1,3).astype(np.float32)
U_init = np.random.randn(3,3).astype(np.float32)
V_init = np.random.randn(3,3).astype(np.float32)
W_init = np.random.randn(3,3).astype(np.float32)
m_init = np.random.randn(1,3).astype(np.float32)
class TestTinygrad(unittest.TestCase):
def test_zerodim_initialization(self):
a = Tensor(55)
b = Tensor(3.14)
self.assertEqual(a.shape, ())
self.assertEqual(b.shape, ())
def test_plus_equals(self):
a = Tensor.randn(10,10)
b = Tensor.randn(10,10)
c = a + b
val1 = c.numpy()
a += b
val2 = a.numpy()
np.testing.assert_allclose(val1, val2)
def test_backward_pass(self):
def test_tinygrad():
x = Tensor(x_init, requires_grad=True)
W = Tensor(W_init, requires_grad=True)
m = Tensor(m_init)
out = x.dot(W).relu()
out = out.log_softmax()
out = out.mul(m).add(m).sum()
out.backward()
return out.numpy(), x.grad.numpy(), W.grad.numpy()
def test_pytorch():
x = torch.tensor(x_init, requires_grad=True)
W = torch.tensor(W_init, requires_grad=True)
m = torch.tensor(m_init)
out = x.matmul(W).relu()
out = torch.nn.functional.log_softmax(out, dim=1)
out = out.mul(m).add(m).sum()
out.backward()
return out.detach().numpy(), x.grad, W.grad
for x,y in zip(test_tinygrad(), test_pytorch()):
np.testing.assert_allclose(x, y, atol=1e-5)
@unittest.skipIf(Device.DEFAULT == "WEBGPU", "this test uses more than 8 bufs which breaks webgpu") #TODO: remove after #1461
def test_backward_pass_diamond_model(self):
def test_tinygrad():
u = Tensor(U_init, requires_grad=True)
v = Tensor(V_init, requires_grad=True)
w = Tensor(W_init, requires_grad=True)
x = u.mul(v).relu()
y = u.mul(w).relu()
out = x.add(y).mul(y).relu()
out = out.log_softmax()
out = out.sum()
out.backward()
return out.numpy(), u.grad.numpy(), v.grad.numpy(), w.grad.numpy()
def test_pytorch():
u = torch.tensor(U_init, requires_grad=True)
v = torch.tensor(V_init, requires_grad=True)
w = torch.tensor(W_init, requires_grad=True)
x = u.mul(v).relu()
y = u.mul(w).relu()
out = x.add(y).mul(y).relu()
out = torch.nn.functional.log_softmax(out, dim=1)
out = out.sum()
out.backward()
return out.detach().numpy(), u.grad, v.grad, w.grad
for x,y in zip(test_tinygrad(), test_pytorch()):
np.testing.assert_allclose(x, y, atol=1e-5)
def test_nograd(self):
x = Tensor(x_init, requires_grad=False)
m = Tensor(m_init, requires_grad=False)
W = Tensor(W_init, requires_grad=True)
tmp = x.mul(m)
mm = tmp.matmul(W)
out = mm.relu()
out = out.sum()
out.backward()
assert x.grad is None
assert m.grad is None
assert tmp.grad is None
assert mm.grad is not None
assert W.grad is not None
def test_dropout(self):
with Tensor.train():
n, rate = 1_000_000, 0.1
w = Tensor.ones(n).dropout(rate)
non_zeros = np.count_nonzero(w.numpy())
expected = n * (1 - rate)
np.testing.assert_allclose(non_zeros, expected, rtol=2e-3)
def test_jacobian(self):
W = np.random.RandomState(42069).random((10, 5)).astype(np.float32)
x = np.random.RandomState(69420).random((1, 10)).astype(np.float32)
torch_x = torch.tensor(x, requires_grad=True)
torch_W = torch.tensor(W, requires_grad=True)
def torch_func(x): return torch.nn.functional.log_softmax(x.matmul(torch_W).relu(), dim=1)
PJ = torch.autograd.functional.jacobian(torch_func, torch_x).squeeze().numpy()
tiny_x = Tensor(x, requires_grad=True)
tiny_W = Tensor(W, requires_grad=True)
def tiny_func(x): return x.dot(tiny_W).relu().log_softmax()
J = jacobian(tiny_func, tiny_x)
NJ = numerical_jacobian(tiny_func, tiny_x)
np.testing.assert_allclose(PJ, J, atol = 1e-5)
np.testing.assert_allclose(PJ, NJ, atol = 1e-3)
def test_gradcheck(self):
W = np.random.RandomState(1337).random((10, 5)).astype(np.float32)
x = np.random.RandomState(7331).random((1, 10)).astype(np.float32)
tiny_x = Tensor(x, requires_grad=True)
tiny_W = Tensor(W, requires_grad=True)
def tiny_func(x): return x.dot(tiny_W).relu().log_softmax()
self.assertTrue(gradcheck(tiny_func, tiny_x, eps = 1e-3))
# coarse approx. since a "big" eps and the non-linearities of the model
self.assertFalse(gradcheck(tiny_func, tiny_x, eps = 1e-5))
def test_random_fns_are_deterministic_with_seed(self):
for random_fn in [Tensor.randn, Tensor.normal, Tensor.uniform, Tensor.scaled_uniform, Tensor.glorot_uniform, Tensor.kaiming_normal]:
with self.subTest(msg=f"Tensor.{random_fn.__name__}"):
Tensor.manual_seed(1337)
a = random_fn(10,10).realize()
Tensor.manual_seed(1337)
b = random_fn(10,10).realize()
np.testing.assert_allclose(a.numpy(), b.numpy())
def test_randn_isnt_inf_on_zero(self):
# simulate failure case of rand handing a zero to randn
original_rand, Tensor.rand = Tensor.rand, Tensor.zeros
try: self.assertNotIn(np.inf, Tensor.randn(16).numpy())
except: raise
finally: Tensor.rand = original_rand
def test_zeros_like_has_same_dtype_and_shape(self):
for datatype in [dtypes.float16, dtypes.float32, dtypes.int8, dtypes.int32, dtypes.int64, dtypes.uint8]:
a = Tensor([1, 2, 3], dtype=datatype)
b = Tensor.zeros_like(a)
assert a.dtype == b.dtype, f"dtype mismatch {a.dtype=} != {b.dtype}"
assert a.shape == b.shape, f"shape mismatch {a.shape} != {b.shape}"
a = Tensor([1, 2, 3])
b = Tensor.zeros_like(a, dtype=dtypes.int8)
assert a.dtype == dtypes.default_int and b.dtype == dtypes.int8, "a.dtype should be int and b.dtype should be char"
assert a.shape == b.shape, f"shape mismatch {a.shape} != {b.shape}"
def test_ones_like_has_same_dtype_and_shape(self):
for datatype in [dtypes.float16, dtypes.float32, dtypes.int8, dtypes.int32, dtypes.int64, dtypes.uint8]:
a = Tensor([1, 2, 3], dtype=datatype)
b = Tensor.ones_like(a)
assert a.dtype == b.dtype, f"dtype mismatch {a.dtype=} != {b.dtype}"
assert a.shape == b.shape, f"shape mismatch {a.shape} != {b.shape}"
a = Tensor([1, 2, 3])
b = Tensor.ones_like(a, dtype=dtypes.int8)
assert a.dtype == dtypes.default_int and b.dtype == dtypes.int8, "a.dtype should be int and b.dtype should be char"
assert a.shape == b.shape, f"shape mismatch {a.shape} != {b.shape}"
def test_ndim(self):
assert Tensor(1).ndim == 0
assert Tensor.randn(1).ndim == 1
assert Tensor.randn(2,2,2).ndim == 3
assert Tensor.randn(1,1,1,1,1,1).ndim == 6
def test_argfix(self):
self.assertEqual(Tensor.zeros().shape, ())
self.assertEqual(Tensor.ones().shape, ())
self.assertEqual(Tensor.zeros([]).shape, ())
self.assertEqual(Tensor.ones([]).shape, ())
self.assertEqual(Tensor.zeros(tuple()).shape, ())
self.assertEqual(Tensor.ones(tuple()).shape, ())
self.assertEqual(Tensor.zeros(1).shape, (1,))
self.assertEqual(Tensor.ones(1).shape, (1,))
self.assertEqual(Tensor.zeros(1,10,20).shape, (1,10,20))
self.assertEqual(Tensor.ones(1,10,20).shape, (1,10,20))
self.assertEqual(Tensor.zeros([1]).shape, (1,))
self.assertEqual(Tensor.ones([1]).shape, (1,))
self.assertEqual(Tensor.zeros([10,20,40]).shape, (10,20,40))
self.assertEqual(Tensor.ones([10,20,40]).shape, (10,20,40))
self.assertEqual(Tensor.rand(1,10,20).shape, (1,10,20))
self.assertEqual(Tensor.rand((10,20,40)).shape, (10,20,40))
self.assertEqual(Tensor.empty(1,10,20).shape, (1,10,20))
self.assertEqual(Tensor.empty((10,20,40)).shape, (10,20,40))
with self.assertRaises(ValueError):
Tensor.zeros((2, 2), 2, 2)
with self.assertRaises(ValueError):
Tensor.zeros((2, 2), (2, 2))
with self.assertRaises(ValueError):
Tensor.randn((128, 128), 0.0, 0.01)
def test_numel(self):
assert Tensor.randn(10, 10).numel() == 100
assert Tensor.randn(1,2,5).numel() == 10
assert Tensor.randn(1,1,1,1,1,1).numel() == 1
assert Tensor([]).numel() == 0
assert Tensor.randn(1,0,2,5).numel() == 0
def test_len(self):
assert len(torch.zeros(7)) == len(Tensor.zeros(7))
assert len(torch.zeros(10,20)) == len(Tensor.zeros(10,20))
assert len(torch.zeros(10,20)) == len(Tensor.zeros(10,20,30))
assert len(torch.zeros(1).flatten()) == len(Tensor.zeros(1).flatten())
def test_size(self):
t1, t2 = torch.zeros(10,20), Tensor.zeros(10,20)
assert t1.size() == t2.size()
assert t1.size(0) == t2.size(0)
assert t1.size(1) == t2.size(1)
assert t1.size(-1) == t2.size(-1)
assert t1.size(-2) == t2.size(-2)
with self.assertRaises(IndexError): t2.size(2)
def test_tolist(self):
assert Tensor([1,2,3]).tolist() == [1,2,3]
assert Tensor([1.5,2,3]).tolist() == [1.5,2,3]
# TODO: match torch here
# NotImplementedError: multi-dimensional sub-views are not implemented
#assert Tensor([[1,2,3], [4,5,6]]).tolist() == [[1,2,3], [4,5,6]]
def test_element_size(self):
for _, dtype in dtypes.fields().items():
assert dtype.itemsize == Tensor.randn(3, dtype=dtype).element_size(), f"Tensor.element_size() not matching Tensor.dtype.itemsize for {dtype}"
def test_deepwalk_ctx_check(self):
layer = Tensor.uniform(1, 1, requires_grad=True)
x = Tensor.randn(1, 1, 1)
x.dot(layer).mean().backward()
x = Tensor.randn(1, 1, 1)
x.dot(layer).mean().backward()
def test_zerosized_tensors(self):
np.testing.assert_equal(Tensor([]).numpy(), np.array([]))
np.testing.assert_equal(Tensor(None).numpy(), np.array([]))
def test_tensor_ndarray_dtype(self):
arr = np.array([1]) # where dtype is implicitly int64
assert Tensor(arr).dtype == dtypes.int64
assert Tensor(arr, dtype=dtypes.float32).dtype == dtypes.float32 # check if ndarray correctly casts to Tensor dtype
assert Tensor(arr, dtype=dtypes.float64).dtype == dtypes.float64 # check that it works for something else
def test_tensor_list_dtype(self):
for arr in ([1], [[[1]]], [[1,1],[1,1]], [[[1,1],[1,1]],[[1,1],[1,1]]]):
assert Tensor(arr).dtype == dtypes.default_int
assert Tensor(arr, dtype=dtypes.float32).dtype == dtypes.float32
assert Tensor(arr, dtype=dtypes.float64).dtype == dtypes.float64
for arr in ([True], [[[False]]], [[True,False],[True,False]], [[[False,True],[False,False]],[[True,True],[False,True]]]):
assert Tensor(arr).dtype == dtypes.bool
assert Tensor(arr, dtype=dtypes.float32).dtype == dtypes.float32
assert Tensor(arr, dtype=dtypes.float64).dtype == dtypes.float64
# empty tensor defaults
for arr in ([], [[[]]], [[],[]]):
t = Tensor(arr)
assert t.dtype == dtypes.default_float
np.testing.assert_allclose(t.numpy(), np.array(arr))
# mixture of bool and int
for arr in ([True, 3], [[True],[3]], [[[True]], [[3]]], [[True, 3], [3, True]]):
t = Tensor(arr)
assert t.dtype == dtypes.default_int
np.testing.assert_allclose(t.numpy(), np.array(arr))
# mixture of bool, int and float
for arr in ([[True,True],[3.,True]], [[0,1],[3.,4]], [[[0],[1]],[[3.],[4]]], [[[True],[1]],[[3.],[4]]]):
t = Tensor(arr)
assert t.dtype == dtypes.default_float
np.testing.assert_allclose(t.numpy(), np.array(arr))
def test_tensor_list_shapes(self):
self.assertEqual(Tensor([[[]]]).shape, (1,1,0))
self.assertEqual(Tensor([[],[]]).shape, (2,0))
self.assertEqual(Tensor([[[[]],[[]]], [[[]],[[]]], [[[]],[[]]]]).shape, (3,2,1,0))
def test_tensor_list_errors(self):
# inhomogeneous shape
with self.assertRaises(ValueError): Tensor([[],[[]]])
with self.assertRaises(ValueError): Tensor([[1],[]])
with self.assertRaises(ValueError): Tensor([[1],[1],1])
with self.assertRaises(ValueError): Tensor([[[1,1,1],[1,1]]])
with self.assertRaises(ValueError): Tensor([[1,1,1],[[1,1,1]]])
def test_tensor_copy(self):
x = copy.deepcopy(Tensor.ones((3,3,3)))
np.testing.assert_allclose(x.numpy(), np.ones((3,3,3)))
def test_copy_from_disk(self):
t = Tensor.randn(30).to(f"disk:{temp('test_copy_from_disk')}")
a = t[10:20]
dev = a.to(Device.DEFAULT)
np.testing.assert_allclose(a.numpy(), dev.numpy())
# Regression test for https://github.com/tinygrad/tinygrad/issues/1751
def test_copy_from_numpy_unaligned(self):
# 2**15 is the minimum for repro
arr = np.random.randn(2**15).astype(dtypes.float.np)
fn = temp('test_copy_from_numpy_unaligned')
with open(fn, 'wb') as f: f.write(b't' + arr.tobytes())
with open(fn, "a+b") as f: memview = memoryview(mmap.mmap(f.fileno(), arr.nbytes + 1))
ua_arr = np.frombuffer(memview[1:], dtype=arr.dtype, count=arr.shape[0])
np.testing.assert_allclose(arr, ua_arr)
assert not ua_arr.flags.aligned
# force device copy - to() is opt'd away - Tensor(dev)/1 is ignored
np.testing.assert_allclose(ua_arr, (Tensor(ua_arr)/Tensor(1)).numpy())
def test_item_to_tensor_to_item(self):
for a in [0, 1, 2, 3, -1, -100, 100, -101.1, 2.345, 100.1, True, False]:
item = Tensor(a).item()
assert type(item) == type(a), a
np.testing.assert_allclose(item, a), a
buffered_item = Tensor([a]).item()
assert type(buffered_item) == type(a), a
np.testing.assert_allclose(buffered_item, a), a
reshaped_item = Tensor([a]).reshape((1, 1, 1, 1, 1)).item()
assert type(reshaped_item) == type(a), a
np.testing.assert_allclose(reshaped_item, a), a
def test_no_bool(self):
with self.assertRaises(TypeError):
if Tensor(["3"]):
print("hi")
with self.assertRaises(TypeError):
_a = Tensor([3]) in [Tensor([3]), Tensor([4]), Tensor([5])]
def test_repr_with_grad(self):
a = Tensor([1])
b = Tensor([1])
c = (a + b).mean().backward()
print(c)
@unittest.skipIf(CI and Device.DEFAULT in {"GPU", "CUDA", "METAL"}, "no GPU CI")
class TestMoveTensor(unittest.TestCase):
d0, d1 = f"{Device.DEFAULT}:0", f"{Device.DEFAULT}:1"
@given(strat.sampled_from([d0, d1]), strat.sampled_from([d0, d1]),
strat.sampled_from([dtypes.float16, dtypes.float32]), strat.sampled_from([True, False, None]))
def test_to_preserves(self, src, dest, dtype, requires_grad):
s = Tensor([1, 2, 3], device=src, dtype=dtype, requires_grad=requires_grad)
if requires_grad: s.sum().backward()
t = s.to(dest)
np.testing.assert_equal(s.numpy(), t.numpy())
assert s.dtype == t.dtype
assert s.requires_grad == t.requires_grad
if requires_grad:
np.testing.assert_equal(s.grad.numpy(), t.grad.numpy())
@given(strat.sampled_from([dtypes.float16, dtypes.float32]), strat.sampled_from([True, False, None]))
def test_shard_preserves(self, dtype, requires_grad):
s = Tensor([1, 2, 3], dtype=dtype, requires_grad=requires_grad)
t = s.shard((f"{Device.DEFAULT}:0", f"{Device.DEFAULT}:1"))
np.testing.assert_equal(s.numpy(), t.numpy())
assert s.dtype == t.dtype
assert s.requires_grad == t.requires_grad
@given(strat.sampled_from([d0, d1]))
def test_same_dev(self, dev):
x = Tensor([1,2,3], device=dev)
y = x.to(dev)
assert x is y
def test_to_grad(self):
x = Tensor.eye(3, requires_grad=True, device=self.d0)
y = Tensor([[2.0,0,-2.0]], requires_grad=True, device=self.d0)
z = y.matmul(x).to(self.d1).sum()
z.backward()
np.testing.assert_equal(x.grad.numpy(), [[2,2,2],[0,0,0],[-2,-2,-2]])
class TestZeroShapeTensor(unittest.TestCase):
def test_shape_stride(self):
t = Tensor.empty(3, 2, 0)
assert t.shape == (3, 2, 0)
# numpy has stride 0, 0, 0; torch has stride 2, 1, 1
assert t.lazydata.st.real_strides() == (0, 0, 1)
t = Tensor.empty(3, 0, 2)
assert t.shape == (3, 0, 2)
# numpy has stride 0, 0, 0; torch has stride 2, 2, 1
assert t.lazydata.st.real_strides() == (0, 2, 1)
t = Tensor.empty(0, 0, 0)
assert t.shape == (0, 0, 0)
# numpy has stride 0, 0, 0; torch has stride 1, 1, 1
assert t.lazydata.st.real_strides() == (0, 0, 1)
def test_rand(self):
t = Tensor.rand(3, 2, 0)
assert t.shape == (3, 2, 0)
np.testing.assert_equal(t.numpy(), np.zeros((3, 2, 0)))
t = Tensor.rand(0)
assert t.shape == (0,)
np.testing.assert_equal(t.numpy(), np.zeros((0,)))
t = Tensor.rand(0, 0, 0)
assert t.shape == (0, 0, 0)
np.testing.assert_equal(t.numpy(), np.zeros((0, 0, 0)))
def test_full(self):
t = Tensor.zeros(3, 2, 0)
assert t.shape == (3, 2, 0)
np.testing.assert_equal(t.numpy(), np.zeros((3, 2, 0)))
t = Tensor.full((3, 2, 0), 12)
assert t.shape == (3, 2, 0)
np.testing.assert_equal(t.numpy(), np.full((3, 2, 0), 12))
def test_reshape(self):
t = Tensor.zeros(3, 2, 0)
a = t.reshape(7, 0)
assert a.shape == (7, 0)
np.testing.assert_equal(a.numpy(), np.zeros((7, 0)))
with self.assertRaises(AssertionError):
# cannot reshape from size 0 to size 1
a = t.reshape(())
def test_expand(self):
t = Tensor.full((1, 2, 0), 12).expand((6, 2, 0))
assert t.shape == (6, 2, 0)
np.testing.assert_equal(t.numpy(), np.full((6, 2, 0), 12))
def test_pad(self):
t = Tensor.rand(3, 2, 0).pad((None, None, (1, 1)), 1)
assert t.shape == (3, 2, 2)
np.testing.assert_equal(t.numpy(), np.ones((3, 2, 2)))
t = Tensor.rand(3, 2, 0).pad((None, (1, 1), None), 1)
assert t.shape == (3, 4, 0)
np.testing.assert_equal(t.numpy(), np.ones((3, 4, 0)))
t = Tensor.rand(3, 2, 0).pad(((1, 1), None, None), 1)
assert t.shape == (5, 2, 0)
np.testing.assert_equal(t.numpy(), np.ones((5, 2, 0)))
def test_shrink_into_zero(self):
t = Tensor.rand(3, 4).realize()
assert t.shrink((None, (2, 2))).realize().shape == (3, 0)
assert t.shrink(((2, 2), None)).realize().shape == (0, 4)
assert t.shrink(((2, 2), (2, 2))).realize().shape == (0, 0)
def test_cat(self):
s = Tensor.rand(3, 2, 2)
t = Tensor.rand(3, 2, 0).cat(s, dim=2)
assert t.shape == (3, 2, 2)
np.testing.assert_equal(t.numpy(), s.numpy())
s = Tensor.rand(3, 4, 0)
t = Tensor.rand(3, 2, 0).cat(s, dim=1)
assert t.shape == (3, 6, 0)
np.testing.assert_equal(t.numpy(), np.zeros((3, 6, 0)))
def test_elementwise(self):
a = Tensor.rand(3, 2, 0)
a_exp = a.exp()
assert a_exp.shape == (3, 2, 0)
np.testing.assert_equal(a_exp.numpy(), np.exp(a.numpy()))
b = Tensor.rand(3, 2, 0)
assert b.shape == (3, 2, 0)
ab = a * b
assert ab.shape == (3, 2, 0)
np.testing.assert_equal(ab.numpy(), a.numpy() * b.numpy())
mask = (Tensor.rand(3, 2, 0) > 0.5)
assert mask.shape == (3, 2, 0)
c = mask.where(a, b)
assert c.shape == (3, 2, 0)
np.testing.assert_equal(c.numpy(), np.where(mask.numpy(), a.numpy(), b.numpy()))
def test_reduce_over_non_zero(self):
a = Tensor.ones(3, 2, 0).sum(axis=1)
assert a.shape == (3, 0)
np.testing.assert_equal(a.numpy(), np.sum(np.zeros((3, 2, 0)), axis=1))
def test_reduce_over_zero(self):
a = Tensor.ones(3, 2, 0).sum(axis=2)
assert a.shape == (3, 2)
np.testing.assert_equal(a.numpy(), np.sum(np.zeros((3, 2, 0)), axis=2))
a = Tensor.ones(3, 2, 0).sum(axis=2, keepdim=True)
assert a.shape == (3, 2, 1)
np.testing.assert_equal(a.numpy(), np.sum(np.zeros((3, 2, 0)), axis=2, keepdims=True))
def test_reduce_default(self):
np.testing.assert_equal(Tensor([]).max().numpy(), -float("inf"))
np.testing.assert_equal(Tensor([]).min().numpy(), float("inf"))
np.testing.assert_equal(Tensor([]).sum().numpy(), 0)
np.testing.assert_equal(Tensor([]).mean().numpy(), float("nan"))
class TestTensorCreationDevice(unittest.TestCase):
# test auxiliary tensors are created on the same device
def test_one_hot(self):
y = Tensor([1, 2, 3]).to("CLANG")
x = y.one_hot(10)
x.realize()
class TestTrainMode(unittest.TestCase):
def test_train_mode(self):
assert not Tensor.training
@Tensor.train()
def f():
assert Tensor.training
f()
assert not Tensor.training
class TestInferenceMode(unittest.TestCase):
def test_inference_mode(self):
x = Tensor(x_init, requires_grad=True)
m = Tensor(m_init, requires_grad=True)
W = Tensor(W_init, requires_grad=True)
with Tensor.inference_mode():
tmp = x.mul(m)
mm = tmp.matmul(W)
out = mm.relu()
out = out.sum()
out.backward()
assert x.grad is None
assert m.grad is None
assert tmp.grad is None
assert mm.grad is None
assert W.grad is None
assert W.requires_grad
def test_no_grad_mode_context_manager(self):
x = Tensor(x_init, requires_grad=True)
m = Tensor(m_init, requires_grad=True)
W = Tensor(W_init, requires_grad=True)
@Tensor.inference_mode()
def f(x, m, W):
tmp = x.mul(m)
mm = tmp.matmul(W)
out = mm.relu()
out = out.sum()
out.backward()
assert x.grad is None
assert m.grad is None
assert tmp.grad is None
assert mm.grad is None
assert W.grad is None
f(x, m, W)
if __name__ == '__main__':
unittest.main()