"""Tests for tensorflow.ops.argmax_op.""" import tensorflow.python.platform import numpy as np import tensorflow as tf class ArgMaxTest(tf.test.TestCase): def _testArg(self, method, x, dimension, expected_values, use_gpu=False, expected_err_re=None): with self.test_session(use_gpu=use_gpu): ans = method(x, dimension=dimension) if expected_err_re is None: tf_ans = ans.eval() self.assertAllEqual(tf_ans, expected_values) self.assertShapeEqual(expected_values, ans) else: with self.assertRaisesOpError(expected_err_re): ans.eval() def _testBothArg(self, method, x, dimension, expected_values, expected_err_re=None): self._testArg(method, x, dimension, expected_values, True, expected_err_re) self._testArg(method, x, dimension, expected_values, False, expected_err_re) def _testBasic(self, dtype): x = np.asarray(100*np.random.randn(200), dtype=dtype) # Check that argmin and argmax match numpy along the primary # dimension self._testBothArg(tf.argmax, x, 0, x.argmax()) self._testBothArg(tf.argmin, x, 0, x.argmin()) def _testDim(self, dtype): x = np.asarray(100*np.random.randn(3, 2, 4, 5, 6), dtype=dtype) # Check that argmin and argmax match numpy along all dimensions for dim in range(5): self._testBothArg(tf.argmax, x, dim, x.argmax(dim)) self._testBothArg(tf.argmin, x, dim, x.argmin(dim)) def testFloat(self): self._testBasic(np.float32) self._testDim(np.float32) def testDouble(self): self._testBasic(np.float64) self._testDim(np.float64) def testInt32(self): self._testBasic(np.int32) self._testDim(np.int32) def testInt64(self): self._testBasic(np.int64) self._testDim(np.int64) if __name__ == "__main__": tf.test.main()