Пример #1
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 def __init__(self,
              encoder,
              predictor,
              name='AverageKL',
              prefix='Metrics',
              dtype=tf.float32,
              batch_size=1,
              buffer_size=1000):
     super(AverageKLMetric, self).__init__(name=name,
                                           prefix=prefix,
                                           metric_names=('KL', 'MSE'))
     self._kl_buffer = tf_metrics.TFDeque(buffer_size, dtype)
     self._mse_buffer = tf_metrics.TFDeque(buffer_size, dtype)
     self._dtype = dtype
     self._encoder = encoder
     self._predictor = predictor
Пример #2
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    def test_mean_not_full(self):
        d = tf_metrics.TFDeque(3, tf.int32)
        self.evaluate(tf.compat.v1.global_variables_initializer())

        self.evaluate(d.add(2))
        self.evaluate(d.add(4))
        self.assertEqual(3.0, self.evaluate(d.mean()))
Пример #3
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  def test_extend(self):
    d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.extend([[1, 1], [2, 2], [3, 3], [4, 4]]))
    self.assertAllEqual([[4, 4], [2, 2], [3, 3]], self.evaluate(d.data))
    self.assertAllEqual([3, 3], self.evaluate(d.mean()))
Пример #4
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  def test_extend(self):
    d = tf_metrics.TFDeque(3, tf.float32)
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.extend([1, 2, 3, 4]))
    self.assertEqual(3.0, self.evaluate(d.mean()))
    self.assertEqual(tf.float32, d.mean().dtype)
Пример #5
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  def test_mean_not_full(self):
    d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add([1, 1]))
    self.evaluate(d.add([3, 3]))
    self.assertAllEqual([2, 2], self.evaluate(d.mean()))
    self.assertEqual(tf.int32, d.mean().dtype)
 def __init__(self,
              prefix='Metrics',
              dtype=tf.float32,
              batch_size=1,
              buffer_size=10,
              obs_dim=None,
              start_index=0,
              end_index=None,
              name=None):
     assert obs_dim is not None
     self._start_index = start_index
     self._end_index = end_index
     self._obs_dim = obs_dim
     name = self.NAME if name is None else name
     super(BaseDistanceMetric, self).__init__(name=name, prefix=prefix)
     self._buffer = tf_metrics.TFDeque(buffer_size, dtype)
     self._dist_buffer = tf_metrics.TFDeque(
         1000, dtype)  # Episodes should have length less than 1k
     self.dtype = dtype
Пример #7
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  def test_queue_empty(self):
    d = tf_metrics.TFDeque(3, tf.int32)
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.assertEqual(0, self.evaluate(d.mean()))
    self.assertEqual(tf.int32.min, self.evaluate(d.max()))
    self.assertEqual(tf.int32.max, self.evaluate(d.min()))
    self.assertEqual(tf.int32, d.mean().dtype)
    self.assertEqual(tf.int32, d.min().dtype)
    self.assertEqual(tf.int32, d.max().dtype)
Пример #8
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  def test_mean_roll_over(self):
    d = tf_metrics.TFDeque(3, tf.float32)
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add(1))
    self.evaluate(d.add(2))
    self.evaluate(d.add(3))
    self.evaluate(d.add(4))
    self.assertEqual(3.0, self.evaluate(d.mean()))
    self.assertEqual(tf.float32, d.mean().dtype)
Пример #9
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  def test_mean_roll_over(self):
    d = tf_metrics.TFDeque(3, tf.float32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add([1, 1]))
    self.evaluate(d.add([2, 2]))
    self.evaluate(d.add([3, 3]))
    self.evaluate(d.add([4, 4]))
    self.assertAllEqual([3.0, 3.0], self.evaluate(d.mean()))
    self.assertEqual(tf.float32, d.mean().dtype)
Пример #10
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  def test_rolls_over(self):
    d = tf_metrics.TFDeque(3, tf.int32)
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add(1))
    self.evaluate(d.add(2))
    self.evaluate(d.add(3))
    self.assertAllEqual([1, 2, 3], self.evaluate(d.data))

    self.evaluate(d.add(4))
    self.assertAllEqual([4, 2, 3], self.evaluate(d.data))
Пример #11
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  def test_rolls_over(self):
    d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add([1, 1]))
    self.evaluate(d.add([2, 2]))
    self.evaluate(d.add([3, 3]))
    self.assertAllEqual([[1, 1], [2, 2], [3, 3]], self.evaluate(d.data))

    self.evaluate(d.add([4, 4]))
    self.assertAllEqual([[4, 4], [2, 2], [3, 3]], self.evaluate(d.data))
Пример #12
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  def test_clear(self):
    d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.evaluate(d.add([1, 1]))

    self.evaluate(d.clear())
    self.assertAllEqual((0, 2), self.evaluate(d.data).shape)

    self.evaluate(d.add([2, 2]))
    self.evaluate(d.add([3, 3]))
    self.assertAllEqual([[2, 2], [3, 3]], self.evaluate(d.data))
Пример #13
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 def test_data_is_zero(self):
   d = tf_metrics.TFDeque(3, tf.int32)
   self.evaluate(tf.compat.v1.global_variables_initializer())
   self.assertAllEqual([], self.evaluate(d.data))
Пример #14
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    def test_mean_empty(self):
        d = tf_metrics.TFDeque(3, tf.int32)
        self.evaluate(tf.compat.v1.global_variables_initializer())

        self.assertEqual(0, self.evaluate(d.mean()))
Пример #15
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  def test_mean_empty(self):
    d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
    self.evaluate(tf.compat.v1.global_variables_initializer())

    self.assertAllEqual([0, 0], self.evaluate(d.mean()))
    self.assertEqual(tf.int32, d.mean().dtype)
Пример #16
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 def test_max(self):
   d = tf_metrics.TFDeque(4, tf.float32)
   self.evaluate(tf.compat.v1.global_variables_initializer())
   self.evaluate(d.extend([1, 2, 3, 4]))
   self.assertEqual(4.0, self.evaluate(d.max()))
Пример #17
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 def test_data_is_zero(self):
   d = tf_metrics.TFDeque(3, tf.int32, shape=(2,))
   self.evaluate(tf.compat.v1.global_variables_initializer())
   values = self.evaluate(d.data)
   self.assertAllEqual((0, 2), values.shape)