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Summary: Implement ReduceBackSum & ReduceBackMean with gradients for CPU & GPU contexts. The reduction happens among the last dimenstions for example if input is a M x N matrix ReduceBackSum will results a vector of dim M x 1 contains the rowwise sums. Differential Revision: D4689768 fbshipit-source-id: 5b0482d4341867ecf23526dc6c4d544420e7d8f7
69 lines
2.2 KiB
Python
69 lines
2.2 KiB
Python
from __future__ import absolute_import
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from __future__ import division
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from __future__ import print_function
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from __future__ import unicode_literals
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from caffe2.python import core
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from hypothesis import given
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import caffe2.python.hypothesis_test_util as hu
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import hypothesis.strategies as st
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import numpy as np
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class TestReduceFrontSum(hu.HypothesisTestCase):
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def reduce_op_test(self, op_name, op_ref, in_data, num_reduce_dims, device):
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op = core.CreateOperator(
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op_name,
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["inputs"],
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["outputs"],
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num_reduce_dim=num_reduce_dims
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)
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self.assertReferenceChecks(
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device_option=device,
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op=op,
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inputs=[in_data],
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reference=op_ref
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)
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self.assertGradientChecks(
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device, op, [in_data], 0, [0], stepsize=1e-2, threshold=1e-2)
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@given(num_reduce_dim=st.integers(1, 3), **hu.gcs)
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def test_reduce_front_sum(self, num_reduce_dim, gc, dc):
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X = np.random.rand(7, 4, 3, 5).astype(np.float32)
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def ref_sum(X):
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return [np.sum(X, axis=(tuple(range(num_reduce_dim))))]
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self.reduce_op_test("ReduceFrontSum", ref_sum, X, num_reduce_dim, gc)
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@given(num_reduce_dim=st.integers(1, 3), **hu.gcs)
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def test_reduce_front_mean(self, num_reduce_dim, gc, dc):
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X = np.random.rand(6, 7, 8, 2).astype(np.float32)
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def ref_mean(X):
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return [np.mean(X, axis=(tuple(range(num_reduce_dim))))]
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self.reduce_op_test("ReduceFrontMean", ref_mean, X, num_reduce_dim, gc)
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@given(num_reduce_dim=st.integers(1, 3), **hu.gcs)
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def test_reduce_back_sum(self, num_reduce_dim, dc, gc):
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X = np.random.rand(6, 7, 8, 2).astype(np.float32)
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def ref_sum(X):
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return [np.sum(X, axis=(0, 1, 2, 3)[4 - num_reduce_dim:])]
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self.reduce_op_test("ReduceBackSum", ref_sum, X, num_reduce_dim, gc)
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@given(num_reduce_dim=st.integers(1, 3), **hu.gcs)
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def test_reduce_back_mean(self, num_reduce_dim, dc, gc):
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num_reduce_dim = 2
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X = np.random.rand(6, 7, 8, 2).astype(np.float32)
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def ref_sum(X):
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return [np.mean(X, axis=(0, 1, 2, 3)[4 - num_reduce_dim:])]
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self.reduce_op_test("ReduceBackMean", ref_sum, X, num_reduce_dim, gc)
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