access2rohit commented on a change in pull request #19059:
URL: https://github.com/apache/incubator-mxnet/pull/19059#discussion_r488450687
##########
File path: tests/nightly/test_np_large_array.py
##########
@@ -335,30 +298,12 @@ def test_bincount():
assert B[-1] == INT_OVERFLOW - 1
B.backward()
assert A.grad.shape == (INT_OVERFLOW, )
- assert A.grad[0] == 0
-
-# broken
-# TODO add backward test after forward is fixed
-@use_np
[email protected](reason='Does not support large tensor; to be fixed')
-def test_bitwise_family():
- def batch_check(x1, x2, funcs):
- for f in funcs:
- y = f(x1, x2)
- one = np.ones((1), dtype='int32')
- assert y.shape == (INT_OVERFLOW, 2)
- assert y[0][0] == f(one, one)
- # test on broadcast input
- A = np.ones((INT_OVERFLOW, 1), dtype='int32')
- B = np.ones((INT_OVERFLOW, 2), dtype='int32')
- batch_check(A, B, [np.bitwise_and, np.bitwise_or, np.bitwise_xor])
- C = np.bitwise_not(A)
- assert C.shape == (INT_OVERFLOW, 1)
- assert C[0] == np.bitwise_not(np.ones((1), dtype='int32'))
+ assert A.grad[0] == 0
@use_np
def test_blackman():
A = np.blackman((INT_OVERFLOW))
+ npx.waitall()
Review comment:
What does this operator do? Why do you have to use waitall() ?
----------------------------------------------------------------
This is an automated message from the Apache Git Service.
To respond to the message, please log on to GitHub and use the
URL above to go to the specific comment.
For queries about this service, please contact Infrastructure at:
[email protected]