"""Tests for Momentum.""" import tensorflow.python.platform import numpy as np import tensorflow as tf class MomentumOptimizerTest(tf.test.TestCase): def testBasic(self): with self.test_session(): var0 = tf.Variable([1.0, 2.0]) var1 = tf.Variable([3.0, 4.0]) grads0 = tf.constant([0.1, 0.1]) grads1 = tf.constant([0.01, 0.01]) mom_opt = tf.train.MomentumOptimizer(learning_rate=2.0, momentum=0.9) mom_update = mom_opt.apply_gradients(zip([grads0, grads1], [var0, var1])) tf.initialize_all_variables().run() # Check we have slots self.assertEqual(["momentum"], mom_opt.get_slot_names()) slot0 = mom_opt.get_slot(var0, "momentum") self.assertEquals(slot0.get_shape(), var0.get_shape()) self.assertFalse(slot0 in tf.trainable_variables()) slot1 = mom_opt.get_slot(var1, "momentum") self.assertEquals(slot1.get_shape(), var1.get_shape()) self.assertFalse(slot1 in tf.trainable_variables()) # Fetch params to validate initial values self.assertAllClose([1.0, 2.0], var0.eval()) self.assertAllClose([3.0, 4.0], var1.eval()) # Step 1: the momentum accumulators where 0. So we should see a normal # update: v -= grad * learning_rate mom_update.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([0.1, 0.1]), slot0.eval()) self.assertAllClose(np.array([0.01, 0.01]), slot1.eval()) # Check that the parameters have been updated. self.assertAllClose(np.array([1.0 - (0.1 * 2.0), 2.0 - (0.1 * 2.0)]), var0.eval()) self.assertAllClose(np.array([3.0 - (0.01 * 2.0), 4.0 - (0.01 * 2.0)]), var1.eval()) # Step 2: the momentum accumulators contain the previous update. mom_update.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([(0.9 * 0.1 + 0.1), (0.9 * 0.1 + 0.1)]), slot0.eval()) self.assertAllClose(np.array([(0.9 * 0.01 + 0.01), (0.9 * 0.01 + 0.01)]), slot1.eval()) # Check that the parameters have been updated. self.assertAllClose( np.array([1.0 - (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0), 2.0 - (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0)]), var0.eval()) self.assertAllClose(np.array([2.98 - ((0.9 * 0.01 + 0.01) * 2.0), 3.98 - ((0.9 * 0.01 + 0.01) * 2.0)]), var1.eval()) def testFloat64(self): with self.test_session(): opt = tf.train.MomentumOptimizer(learning_rate=2.0, momentum=0.9) # compute_gradients. values = [1.0, 3.0] good_vars = [tf.Variable([v]) for v in values] bad_loss = tf.constant(2.0, tf.float64, name="bad_loss") self.assertRaisesRegexp( ValueError, r"Invalid type.*float64.*bad_loss.*expected.*float32", opt.compute_gradients, bad_loss, good_vars) bad_vars = [ tf.Variable(np.array([v], np.float64), name="bad_var") for v in values] self.assertRaisesRegexp( ValueError, r"Invalid type.*float64.*bad_var.*expected.*float32", opt.compute_gradients, tf.cast(bad_vars[0] + bad_vars[1], tf.float32), bad_vars) opt.compute_gradients(good_vars[0] + good_vars[1], good_vars) # apply_gradients. bad_grads = [ tf.constant([0.1], dtype=np.float64, name="bad_grad"), tf.constant([0.01])] self.assertRaisesRegexp( ValueError, r"Invalid type.*float64.*bad_grad.*expected.*float32", opt.apply_gradients, zip(bad_grads, good_vars)) good_grads = [tf.constant([0.01]), tf.constant([0.02])] self.assertRaisesRegexp( ValueError, r"Invalid type.*float64.*bad_var.*expected.*float32", opt.apply_gradients, zip(good_grads, bad_vars)) opt.apply_gradients(zip(good_grads, good_vars)) def _dbParamsMom01(self): """Return dist-belief momentum values. Return values been generated from the dist-belief momentum unittest, running with a learning rate of 0.1 and a momemntum of 0.1. These values record how a parameter vector of size 10, initialized with 0.0, gets updated with 10 consecutive momentum steps. It uses random gradients. Returns: db_grad: The gradients to apply db_out: The parameters after the momentum update. """ db_grad = [[]] * 10 db_out = [[]] * 10 # pylint: disable=line-too-long db_grad[0] = [0.00096264342, 0.17914793, 0.93945462, 0.41396621, 0.53037018, 0.93197989, 0.78648776, 0.50036013, 0.55345792, 0.96722615] db_out[0] = [-9.6264346e-05, -0.017914793, -0.093945466, -0.041396622, -0.053037018, -0.093197994, -0.078648776, -0.050036013, -0.055345792, -0.096722618] db_grad[1] = [0.17075552, 0.88821375, 0.20873757, 0.25236958, 0.57578111, 0.15312378, 0.5513742, 0.94687688, 0.16012503, 0.22159521] db_out[1] = [-0.017181443, -0.10852765, -0.12421377, -0.070773244, -0.11591884, -0.11783017, -0.14165108, -0.14972731, -0.076892875, -0.1285544] db_grad[2] = [0.35077485, 0.47304362, 0.44412705, 0.44368884, 0.078527533, 0.81223965, 0.31168157, 0.43203235, 0.16792089, 0.24644311] db_out[2] = [-0.053967446, -0.1648933, -0.1716533, -0.1180798, -0.13005978, -0.20151734, -0.17911947, -0.20289968, -0.095839672, -0.15638189] db_grad[3] = [0.9694621, 0.75035888, 0.28171822, 0.83813518, 0.53807181, 0.3728098, 0.81454384, 0.03848977, 0.89759839, 0.93665648] db_out[3] = [-0.15459226, -0.24556576, -0.20456907, -0.20662397, -0.18528105, -0.24716705, -0.2643207, -0.21206589, -0.18749419, -0.2528303] db_grad[4] = [0.38578293, 0.8536852, 0.88722926, 0.66276771, 0.13678469, 0.94036359, 0.69107032, 0.81897682, 0.5433259, 0.67860287] db_out[4] = [-0.20323303, -0.33900154, -0.29658359, -0.28175515, -0.20448165, -0.34576839, -0.34194785, -0.29488021, -0.25099224, -0.33033544] db_grad[5] = [0.27885768, 0.76100707, 0.24625534, 0.81354135, 0.18959245, 0.48038563, 0.84163809, 0.41172323, 0.83259648, 0.44941229] db_out[5] = [-0.23598288, -0.42444581, -0.33041057, -0.3706224, -0.22536094, -0.40366709, -0.43387437, -0.34433398, -0.34060168, -0.38302717] db_grad[6] = [0.27233034, 0.056316052, 0.5039115, 0.24105175, 0.35697976, 0.75913221, 0.73577434, 0.16014607, 0.57500273, 0.071136251] db_out[6] = [-0.26649091, -0.43862185, -0.38418442, -0.40361428, -0.26314685, -0.48537019, -0.51664448, -0.36529395, -0.40706289, -0.39540997] db_grad[7] = [0.58697265, 0.2494842, 0.08106143, 0.39954534, 0.15892942, 0.12683646, 0.74053431, 0.16033, 0.66625422, 0.73515922] db_out[7] = [-0.32823896, -0.46498787, -0.39766794, -0.446868, -0.28281838, -0.50622416, -0.59897494, -0.38342294, -0.48033443, -0.47016418] db_grad[8] = [0.8215279, 0.41994119, 0.95172721, 0.68000203, 0.79439718, 0.43384039, 0.55561525, 0.22567581, 0.93331909, 0.29438227] db_out[8] = [-0.41656655, -0.50961858, -0.49418902, -0.51919359, -0.36422527, -0.55169362, -0.6627695, -0.40780342, -0.58099347, -0.50707781] db_grad[9] = [0.68297005, 0.67758518, 0.1748755, 0.13266537, 0.70697063, 0.055731893, 0.68593478, 0.50580865, 0.12602448, 0.093537711] db_out[9] = [-0.49369633, -0.58184016, -0.52132869, -0.5396927, -0.44306302, -0.56181377, -0.73774242, -0.46082234, -0.60366184, -0.52012295] # pylint: enable=line-too-long return db_grad, db_out def testLikeDistBeliefMom01(self): with self.test_session(): db_grad, db_out = self._dbParamsMom01() num_samples = len(db_grad) var0 = tf.Variable([0.0] * num_samples) grads0 = tf.constant([0.0] * num_samples) mom_opt = tf.train.MomentumOptimizer(learning_rate=0.1, momentum=0.1) mom_update = mom_opt.apply_gradients(zip([grads0], [var0])) tf.initialize_all_variables().run() for i in xrange(num_samples): mom_update.run(feed_dict={grads0: db_grad[i]}) self.assertAllClose(np.array(db_out[i]), var0.eval()) def testSparse(self): with self.test_session(): var0 = tf.Variable(tf.zeros([4, 2])) var1 = tf.Variable( tf.constant(1.0, tf.float32, [4, 2])) grads0 = tf.IndexedSlices(tf.constant([[.1, .1]]), tf.constant([1]), tf.constant([4, 2])) grads1 = tf.IndexedSlices(tf.constant([[.01, .01], [.01, .01]]), tf.constant([2, 3]), tf.constant([4, 2])) mom_opt = tf.train.MomentumOptimizer(learning_rate=2.0, momentum=0.9) mom_update = mom_opt.apply_gradients(zip([grads0, grads1], [var0, var1])) tf.initialize_all_variables().run() # Check we have slots self.assertEqual(["momentum"], mom_opt.get_slot_names()) slot0 = mom_opt.get_slot(var0, "momentum") self.assertEquals(slot0.get_shape(), var0.get_shape()) slot1 = mom_opt.get_slot(var1, "momentum") self.assertEquals(slot1.get_shape(), var1.get_shape()) # Fetch params to validate initial values self.assertAllClose([0, 0], var0.eval()[0]) self.assertAllClose([0, 0], var0.eval()[1]) self.assertAllClose([1, 1], var1.eval()[2]) # Step 1: the momentum accumulators are 0. So we should see a normal # update: v -= grad * learning_rate mom_update.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([0, 0]), slot0.eval()[0]) self.assertAllClose(np.array([.1, .1]), slot0.eval()[1]) self.assertAllClose(np.array([.01, .01]), slot1.eval()[2]) # Check that the parameters have been updated. self.assertAllClose(np.array([0, 0]), var0.eval()[0]) self.assertAllClose(np.array([- (0.1 * 2.0), - (0.1 * 2.0)]), var0.eval()[1]) self.assertAllClose(np.array([1.0 - (0.01 * 2.0), 1.0 - (0.01 * 2.0)]), var1.eval()[2]) # Step 2: the momentum accumulators contain the previous update. mom_update.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([0, 0]), slot0.eval()[0]) self.assertAllClose(np.array([(0.9 * 0.1 + 0.1), (0.9 * 0.1 + 0.1)]), slot0.eval()[1]) self.assertAllClose(np.array([(0.9 * 0.01 + 0.01), (0.9 * 0.01 + 0.01)]), slot1.eval()[2]) # Check that the parameters have been updated. self.assertAllClose(np.array([0, 0]), var0.eval()[0]) self.assertAllClose( np.array([- (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0), - (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0)]), var0.eval()[1]) self.assertAllClose(np.array([0.98 - ((0.9 * 0.01 + 0.01) * 2.0), 0.98 - ((0.9 * 0.01 + 0.01) * 2.0)]), var1.eval()[2]) def testSharing(self): with self.test_session(): var0 = tf.Variable([1.0, 2.0]) var1 = tf.Variable([3.0, 4.0]) grads0 = tf.constant([0.1, 0.1]) grads1 = tf.constant([0.01, 0.01]) mom_opt = tf.train.MomentumOptimizer(learning_rate=2.0, momentum=0.9) mom_update1 = mom_opt.apply_gradients(zip([grads0, grads1], [var0, var1])) mom_update2 = mom_opt.apply_gradients(zip([grads0, grads1], [var0, var1])) tf.initialize_all_variables().run() self.assertEqual(["momentum"], mom_opt.get_slot_names()) slot0 = mom_opt.get_slot(var0, "momentum") self.assertEquals(slot0.get_shape(), var0.get_shape()) slot1 = mom_opt.get_slot(var1, "momentum") self.assertEquals(slot1.get_shape(), var1.get_shape()) # Fetch params to validate initial values self.assertAllClose([1.0, 2.0], var0.eval()) self.assertAllClose([3.0, 4.0], var1.eval()) # Step 1: the momentum accumulators where 0. So we should see a normal # update: v -= grad * learning_rate mom_update1.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([0.1, 0.1]), slot0.eval()) self.assertAllClose(np.array([0.01, 0.01]), slot1.eval()) # Check that the parameters have been updated. self.assertAllClose(np.array([1.0 - (0.1 * 2.0), 2.0 - (0.1 * 2.0)]), var0.eval()) self.assertAllClose(np.array([3.0 - (0.01 * 2.0), 4.0 - (0.01 * 2.0)]), var1.eval()) # Step 2: the second momentum accumulators contain the previous update. mom_update2.run() # Check that the momentum accumulators have been updated. self.assertAllClose(np.array([(0.9 * 0.1 + 0.1), (0.9 * 0.1 + 0.1)]), slot0.eval()) self.assertAllClose(np.array([(0.9 * 0.01 + 0.01), (0.9 * 0.01 + 0.01)]), slot1.eval()) # Check that the parameters have been updated. self.assertAllClose( np.array([1.0 - (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0), 2.0 - (0.1 * 2.0) - ((0.9 * 0.1 + 0.1) * 2.0)]), var0.eval()) self.assertAllClose(np.array([2.98 - ((0.9 * 0.01 + 0.01) * 2.0), 3.98 - ((0.9 * 0.01 + 0.01) * 2.0)]), var1.eval()) if __name__ == "__main__": tf.test.main()