示例#1
0
def bytenet_internal(inputs, targets, hparams, train):
    """ByteNet, main step used for training."""
    with tf.variable_scope("bytenet"):
        # Flatten inputs and extend length by 50%.
        inputs = tf.expand_dims(common_layers.flatten4d3d(inputs), axis=2)
        extend_length = tf.to_int32(0.5 * tf.to_float(tf.shape(inputs)[1]))
        inputs_shape = inputs.shape.as_list()
        inputs = tf.pad(inputs, [[0, 0], [0, extend_length], [0, 0], [0, 0]])
        inputs_shape[1] = None
        inputs.set_shape(
            inputs_shape)  # Don't lose the other shapes when padding.
        # Pad inputs and targets to be the same length, divisible by 50.
        inputs, targets = common_layers.pad_to_same_length(
            inputs, targets, final_length_divisible_by=50)
        final_encoder = residual_dilated_conv(inputs, hparams.num_block_repeat,
                                              "SAME", "encoder", hparams,
                                              train)

        shifted_targets = common_layers.shift_left(targets)
        kernel = (hparams.kernel_height, hparams.kernel_width)
        decoder_start = common_layers.conv_block(
            tf.concat([final_encoder, shifted_targets], axis=3),
            hparams.hidden_size, [((1, 1), kernel)],
            padding="LEFT")

        return residual_dilated_conv(decoder_start, hparams.num_block_repeat,
                                     "LEFT", "decoder", hparams, train)
示例#2
0
def bytenet_internal(inputs, targets, hparams, train):
  """ByteNet, main step used for training."""
  with tf.variable_scope("bytenet"):
    # Flatten inputs and extend length by 50%.
    inputs = tf.expand_dims(common_layers.flatten4d3d(inputs), axis=2)
    extend_length = tf.to_int32(0.5 * tf.to_float(tf.shape(inputs)[1]))
    inputs_shape = inputs.shape.as_list()
    inputs = tf.pad(inputs, [[0, 0], [0, extend_length], [0, 0], [0, 0]])
    inputs_shape[1] = None
    inputs.set_shape(inputs_shape)  # Don't lose the other shapes when padding.
    # Pad inputs and targets to be the same length, divisible by 50.
    inputs, targets = common_layers.pad_to_same_length(
        inputs, targets, final_length_divisible_by=50)
    final_encoder = residual_dilated_conv(
        inputs, hparams.num_block_repeat, "SAME", "encoder", hparams, train)

    shifted_targets = common_layers.shift_left(targets)
    kernel = (hparams.kernel_height, hparams.kernel_width)
    decoder_start = common_layers.conv_block(
        tf.concat([final_encoder, shifted_targets], axis=3),
        hparams.hidden_size, [((1, 1), kernel)],
        padding="LEFT")

    return residual_dilated_conv(
        decoder_start, hparams.num_block_repeat,
        "LEFT", "decoder", hparams, train)
 def testShiftLeft(self):
     x1 = np.zeros((5, 7, 1, 11))
     x1[:, 0, :] = np.ones_like(x1[:, 0, :])
     expected = np.zeros((5, 7, 1, 11))
     expected[:, 1, :] = np.ones_like(expected[:, 1, :])
     with self.test_session() as session:
         a = common_layers.shift_left(tf.constant(x1, dtype=tf.float32))
         actual = session.run(a)
     self.assertAllEqual(actual, expected)
 def testShiftLeft(self):
   x1 = np.zeros((5, 7, 1, 11))
   x1[:, 0, :] = np.ones_like(x1[:, 0, :])
   expected = np.zeros((5, 7, 1, 11))
   expected[:, 1, :] = np.ones_like(expected[:, 1, :])
   with self.test_session() as session:
     a = common_layers.shift_left(tf.constant(x1, dtype=tf.float32))
     actual = session.run(a)
   self.assertAllEqual(actual, expected)
示例#5
0
def lstm_seq2seq_internal_attention(inputs, targets, hparams, train):
    """LSTM seq2seq model with attention, main step used for training."""
    with tf.variable_scope("lstm_seq2seq_attention"):
        # Flatten inputs.
        inputs = common_layers.flatten4d3d(inputs)
        # LSTM encoder.
        encoder_outputs, final_encoder_state = lstm(
            tf.reverse(inputs, axis=[1]), hparams, train, "encoder")
        # LSTM decoder with attention
        shifted_targets = common_layers.shift_left(targets)
        decoder_outputs, _ = lstm_attention_decoder(
            common_layers.flatten4d3d(shifted_targets), hparams, train,
            "decoder", final_encoder_state, encoder_outputs)
        return tf.expand_dims(decoder_outputs, axis=2)
示例#6
0
def slicenet_middle(inputs_encoded, targets, target_space_emb, mask, hparams,
                    train):
    """Middle part of slicenet, connecting encoder and decoder."""
    norm_fn = get_norm(hparams)

    # Flatten targets and embed target_space_id.
    targets_flat = tf.expand_dims(common_layers.flatten4d3d(targets), axis=2)
    target_space_emb = tf.tile(target_space_emb,
                               [tf.shape(targets_flat)[0], 1, 1, 1])

    # Calculate similarity loss (but don't run if not needed).
    if len(hparams.problems) > 1 and hparams.sim_loss_mult > 0.00001:
        targets_timed = common_layers.add_timing_signal(targets_flat)
        extra_layers = int(hparams.num_hidden_layers * 1.5)
        with tf.variable_scope(tf.get_variable_scope(), reuse=True):
            targets_encoded = multi_conv_res(targets_timed, "SAME", "encoder",
                                             extra_layers, hparams, train)
        with tf.variable_scope("similarity_loss"):
            similarity_loss = similarity_cost(inputs_encoded, targets_encoded)
            similarity_loss *= hparams.sim_loss_mult
    else:
        similarity_loss = 0.0

    # Use attention from each target to look at input and retrieve.
    targets_shifted = common_layers.shift_left(targets_flat,
                                               pad_value=target_space_emb)
    if hparams.attention_type == "none":
        targets_with_attention = tf.zeros_like(targets_shifted)
    else:
        inputs_padding_bias = (1.0 -
                               mask) * -1e9  # Bias to not attend to padding.
        targets_with_attention = attention(targets_shifted,
                                           inputs_encoded,
                                           norm_fn,
                                           hparams,
                                           train,
                                           bias=inputs_padding_bias)

    # Positional targets: merge attention and raw.
    kernel = (hparams.kernel_height, hparams.kernel_width)
    targets_merged = common_layers.subseparable_conv_block(
        tf.concat([targets_with_attention, targets_shifted], axis=3),
        hparams.hidden_size, [((1, 1), kernel)],
        normalizer_fn=norm_fn,
        padding="LEFT",
        separability=4,
        name="targets_merge")

    return targets_merged, similarity_loss
示例#7
0
def lstm_seq2seq_internal(inputs, targets, hparams, train):
    """The basic LSTM seq2seq model, main step used for training."""
    with tf.variable_scope("lstm_seq2seq"):
        # Flatten inputs.
        inputs = common_layers.flatten4d3d(inputs)
        # LSTM encoder.
        _, final_encoder_state = lstm(tf.reverse(inputs, axis=[1]), hparams,
                                      train, "encoder")
        # LSTM decoder.
        shifted_targets = common_layers.shift_left(targets)
        decoder_outputs, _ = lstm(common_layers.flatten4d3d(shifted_targets),
                                  hparams,
                                  train,
                                  "decoder",
                                  initial_state=final_encoder_state)
        return tf.expand_dims(decoder_outputs, axis=2)
示例#8
0
def lstm_seq2seq_internal(inputs, targets, hparams, train):
  """The basic LSTM seq2seq model, main step used for training."""
  with tf.variable_scope("lstm_seq2seq"):
    # Flatten inputs.
    inputs = common_layers.flatten4d3d(inputs)
    # LSTM encoder.
    _, final_encoder_state = lstm(
        tf.reverse(inputs, axis=[1]), hparams, train, "encoder")
    # LSTM decoder.
    shifted_targets = common_layers.shift_left(targets)
    decoder_outputs, _ = lstm(
        common_layers.flatten4d3d(shifted_targets),
        hparams,
        train,
        "decoder",
        initial_state=final_encoder_state)
    return tf.expand_dims(decoder_outputs, axis=2)
示例#9
0
def slicenet_middle(inputs_encoded, targets, target_space_emb, mask,
                    hparams, train):
  """Middle part of slicenet, connecting encoder and decoder."""
  norm_fn = get_norm(hparams)

  # Flatten targets and embed target_space_id.
  targets_flat = tf.expand_dims(common_layers.flatten4d3d(targets), axis=2)
  target_space_emb = tf.tile(target_space_emb,
                             [tf.shape(targets_flat)[0], 1, 1, 1])

  # Calculate similarity loss (but don't run if not needed).
  if len(hparams.problems) > 1 and hparams.sim_loss_mult > 0.00001:
    targets_timed = common_layers.add_timing_signal(targets_flat)
    extra_layers = int(hparams.num_hidden_layers * 1.5)
    with tf.variable_scope(tf.get_variable_scope(), reuse=True):
      targets_encoded = multi_conv_res(targets_timed, "SAME", "encoder",
                                       extra_layers, hparams, train)
    with tf.variable_scope("similarity_loss"):
      similarity_loss = similarity_cost(inputs_encoded, targets_encoded)
      similarity_loss *= hparams.sim_loss_mult
  else:
    similarity_loss = 0.0

  # Use attention from each target to look at input and retrieve.
  targets_shifted = common_layers.shift_left(
      targets_flat, pad_value=target_space_emb)
  if hparams.attention_type == "none":
    targets_with_attention = tf.zeros_like(targets_shifted)
  else:
    inputs_padding_bias = (1.0 - mask) * -1e9  # Bias to not attend to padding.
    targets_with_attention = attention(
        targets_shifted, inputs_encoded, norm_fn, hparams, train,
        bias=inputs_padding_bias)

  # Positional targets: merge attention and raw.
  kernel = (hparams.kernel_height, hparams.kernel_width)
  targets_merged = common_layers.subseparable_conv_block(
      tf.concat([targets_with_attention, targets_shifted], axis=3),
      hparams.hidden_size, [((1, 1), kernel)],
      normalizer_fn=norm_fn,
      padding="LEFT",
      separability=4,
      name="targets_merge")

  return targets_merged, similarity_loss