def testRaiseErrorOnEmptyLearningRate(self):
     learning_rate_text_proto = """
 """
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     with self.assertRaises(ValueError):
         optimizer_builder._create_learning_rate(learning_rate_proto)
 def testBuildConstantLearningRate(self):
     learning_rate_text_proto = """
   constant_learning_rate {
     learning_rate: 0.004
   }
 """
     global_summaries = set([])
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     learning_rate = optimizer_builder._create_learning_rate(
         learning_rate_proto, global_summaries)
     self.assertAlmostEqual(learning_rate, 0.004)
 def testBuildConstantLearningRate(self):
     learning_rate_text_proto = """
   constant_learning_rate {
     learning_rate: 0.004
   }
 """
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     learning_rate = optimizer_builder._create_learning_rate(
         learning_rate_proto)
     with self.test_session():
         learning_rate_out = learning_rate.eval()
     self.assertAlmostEqual(learning_rate_out, 0.004)
 def testBuildCosineDecayLearningRate(self):
     learning_rate_text_proto = """
   cosine_decay_learning_rate {
     learning_rate_base: 0.002
     total_steps: 20000
     warmup_learning_rate: 0.0001
     warmup_steps: 1000
   }
 """
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     learning_rate = optimizer_builder._create_learning_rate(
         learning_rate_proto)
     self.assertTrue(isinstance(learning_rate, tf.Tensor))
 def testBuildExponentialDecayLearningRate(self):
     learning_rate_text_proto = """
   exponential_decay_learning_rate {
     initial_learning_rate: 0.004
     decay_steps: 99999
     decay_factor: 0.85
     staircase: false
   }
 """
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     learning_rate = optimizer_builder._create_learning_rate(
         learning_rate_proto)
     self.assertTrue(isinstance(learning_rate, tf.Tensor))
 def testBuildManualStepLearningRate(self):
     learning_rate_text_proto = """
   manual_step_learning_rate {
     schedule {
       step: 0
       learning_rate: 0.006
     }
     schedule {
       step: 90000
       learning_rate: 0.00006
     }
   }
 """
     learning_rate_proto = optimizer_pb2.LearningRate()
     text_format.Merge(learning_rate_text_proto, learning_rate_proto)
     learning_rate = optimizer_builder._create_learning_rate(
         learning_rate_proto)
     self.assertTrue(isinstance(learning_rate, tf.Tensor))
Пример #7
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 def testBuildManualStepLearningRate(self):
   learning_rate_text_proto = """
     manual_step_learning_rate {
       initial_learning_rate: 0.002
       schedule {
         step: 100
         learning_rate: 0.006
       }
       schedule {
         step: 90000
         learning_rate: 0.00006
       }
       warmup: true
     }
   """
   learning_rate_proto = optimizer_pb2.LearningRate()
   text_format.Merge(learning_rate_text_proto, learning_rate_proto)
   learning_rate = optimizer_builder._create_learning_rate(
       learning_rate_proto)
   self.assertIsInstance(learning_rate, tf.Tensor)