TPU version of tf.compat.v1.feature_column.embedding_column
.
tf.compat.v1.tpu.experimental.embedding_column( categorical_column, dimension, combiner='mean', initializer=None, max_sequence_length=0, learning_rate_fn=None, embedding_lookup_device=None, tensor_core_shape=None, use_safe_embedding_lookup=True )
Note that the interface for tf.tpu.experimental.embedding_column
is different from that of tf.compat.v1.feature_column.embedding_column
: The following arguments are NOT supported: ckpt_to_load_from
, tensor_name_in_ckpt
, max_norm
and trainable
.
Use this function in place of tf.compat.v1.feature_column.embedding_column
when you want to use the TPU to accelerate your embedding lookups via TPU embeddings.
column = tf.feature_column.categorical_column_with_identity(...) tpu_column = tf.tpu.experimental.embedding_column(column, 10) ... def model_fn(features): dense_feature = tf.keras.layers.DenseFeature(tpu_column) embedded_feature = dense_feature(features) ... estimator = tf.estimator.tpu.TPUEstimator( model_fn=model_fn, ... embedding_config_spec=tf.estimator.tpu.experimental.EmbeddingConfigSpec( column=[tpu_column], ...))
Args | |
---|---|
categorical_column | A categorical column returned from categorical_column_with_identity , weighted_categorical_column , categorical_column_with_vocabulary_file , categorical_column_with_vocabulary_list , sequence_categorical_column_with_identity , sequence_categorical_column_with_vocabulary_file , sequence_categorical_column_with_vocabulary_list |
dimension | An integer specifying dimension of the embedding, must be > 0. |
combiner | A string specifying how to reduce if there are multiple entries in a single row for a non-sequence column. For more information, see tf.feature_column.embedding_column . |
initializer | A variable initializer function to be used in embedding variable initialization. If not specified, defaults to tf.compat.v1.truncated_normal_initializer with mean 0.0 and standard deviation 1/sqrt(dimension) . |
max_sequence_length | An non-negative integer specifying the max sequence length. Any sequence shorter then this will be padded with 0 embeddings and any sequence longer will be truncated. This must be positive for sequence features and 0 for non-sequence features. |
learning_rate_fn | A function that takes global step and returns learning rate for the embedding table. If you intend to use the same learning rate for multiple embedding tables, please ensure that you pass the exact same python function to all calls of embedding_column, otherwise performence may suffer. |
embedding_lookup_device | The device on which to run the embedding lookup. Valid options are "cpu", "tpu_tensor_core", and "tpu_embedding_core". If specifying "tpu_tensor_core", a tensor_core_shape must be supplied. If not specified, the default behavior is embedding lookup on "tpu_embedding_core" for training and "cpu" for inference. Valid options for training : ["tpu_embedding_core", "tpu_tensor_core"] Valid options for serving : ["cpu", "tpu_tensor_core"] For training, tpu_embedding_core is good for large embedding vocab (>1M), otherwise, tpu_tensor_core is often sufficient. For serving, doing embedding lookup on tpu_tensor_core during serving is a way to reduce host cpu usage in cases where that is a bottleneck. |
tensor_core_shape | If supplied, a list of integers which specifies the intended dense shape to run embedding lookup for this feature on TensorCore. The batch dimension can be left None or -1 to indicate a dynamic shape. Only rank 2 shapes currently supported. |
use_safe_embedding_lookup | If true, uses safe_embedding_lookup_sparse instead of embedding_lookup_sparse. safe_embedding_lookup_sparse ensures there are no empty rows and all weights and ids are positive at the expense of extra compute cost. This only applies to rank 2 (NxM) shaped input tensors. Defaults to true, consider turning off if the above checks are not needed. Note that having empty rows will not trigger any error though the output result might be 0 or omitted. |
Returns | |
---|---|
A _TPUEmbeddingColumnV2 . |
Raises | |
---|---|
ValueError | if dimension not > 0. |
ValueError | if initializer is specified but not callable. |
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.4/api_docs/python/tf/compat/v1/tpu/experimental/embedding_column