access2rohit commented on a change in pull request #15943: Added tests to 
verify Large Vector Support for initial set of ops 
URL: https://github.com/apache/incubator-mxnet/pull/15943#discussion_r317299711
 
 

 ##########
 File path: tests/nightly/test_large_vector.py
 ##########
 @@ -33,6 +35,293 @@ def test_slice():
     assert res.shape[0] == MEDIUM_X
 
 
+def test_gluon_embedding():
+    m = gluon.nn.Embedding(1, LARGE_Y)
+    m.initialize()
+    a = nd.zeros((LARGE_Y, 1))
+    b = m(a)
+    assert b.shape == (LARGE_Y, 1, LARGE_Y)
+    assert b.asnumpy().size == LARGE_X*2
+
+
+def test_ndarray_zeros():
+    a = nd.zeros(shape=LARGE_X)
+    assert a[-1] == 0
+    assert a.shape == (LARGE_X,)
+    assert a.size == LARGE_X
+
+
+def test_ndarray_ones():
+    a = nd.ones(shape=LARGE_X)
+    assert a[-1] == 1
+    assert nd.sum(a).asnumpy() == LARGE_X
+
+
+@with_seed()
+def test_ndarray_random_uniform():
+    a = nd.random.uniform(shape=LARGE_X)
+    assert a[-1] != 0
+
+
+@with_seed()
+def test_ndarray_random_randint():
+    a = nd.random.randint(100, 10000, shape=LARGE_X)
+    assert a.shape == (LARGE_X,)
+    # check if randint can generate value greater than 2**32 (large)
+    low_large_value = 2**32
+    high_large_value = 2**34
+    a = nd.random.randint(low_large_value, high_large_value, dtype=np.int64)
+    low = mx.nd.array([low_large_value], dtype='int64')
+    high = mx.nd.array([high_large_value], dtype='int64')
+    assert a.__gt__(low) and a.__lt__(high)
+
+
+def test_ndarray_empty():
+    a = nd.empty(LARGE_X)
+    assert a.shape == (LARGE_X,)
+
+
+def test_elementwise():
+    a = nd.ones(shape=LARGE_X)
+    b = nd.ones(shape=LARGE_X)
+    res = a + b
+    assert np.sum(res[-1].asnumpy() == 2) == a.shape[1]
+    res = a + 1
+    assert np.sum(res[-1].asnumpy() == 2) == a.shape[1]
+    res = nd.sqrt(a + 3)
+    assert np.sum(res[-1].asnumpy() == 2) == a.shape[1]
+
+
+def test_reduce():
+    a = nd.ones(shape=(LARGE_X, SMALL_Y))
+    assert nd.sum(a).asnumpy() == a.shape[0] * a.shape[1]
+
+
+def test_FullyConnected():
+    a = nd.ones(shape=(LARGE_X, SMALL_Y))
+    b = nd.ones(shape=(SMALL_Y, SMALL_Y))
+    res = nd.FullyConnected(a, b, num_hidden=b.shape[1], no_bias=True)
+    assert np.sum(res[-1].asnumpy() == SMALL_Y) == b.shape[1]
+
+
+def test_broadcast():
+    a = nd.ones(shape=(LARGE_X, SMALL_Y*2))
+    b = nd.arange(0, LARGE_X).reshape(LARGE_X, 1)
+    res = nd.broadcast_to(b, shape=(b.shape[0], SMALL_Y*2))
+    assert np.sum(res[-1].asnumpy() == LARGE_X) == res.shape[1]
+    res = mx.nd.broadcast_like(b, a)
+    assert np.sum(res[-1].asnumpy() == LARGE_X) == res.shape[1]
+
+
+def test_clip():
+    a = nd.arange(0, LARGE_X)
+    res = nd.clip(a, a_min=100, a_max=1000)
+    assert np.sum(res[-1].asnumpy() == 1000) == 101
 
 Review comment:
   aah ... copy paste error !

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