tf.contrib.data.sloppy_interleave( map_func, cycle_length, block_length=1 )
Defined in tensorflow/contrib/data/python/ops/interleave_ops.py
.
A non-deterministic version of the Dataset.interleave()
transformation. (deprecated)
THIS FUNCTION IS DEPRECATED. It will be removed in a future version. Instructions for updating: Use tf.contrib.data.parallel_interleave(..., sloppy=True)
.
sloppy_interleave()
maps map_func
across dataset
, and non-deterministically interleaves the results.
The resulting dataset is almost identical to interleave
. The key difference is that if retrieving a value from a given output iterator would cause get_next
to block, that iterator will be skipped, and consumed when next available. If consuming from all iterators would cause the get_next
call to block, the get_next
call blocks until the first value is available.
If the underlying datasets produce elements as fast as they are consumed, the sloppy_interleave
transformation behaves identically to interleave
. However, if an underlying dataset would block the consumer, sloppy_interleave
can violate the round-robin order (that interleave
strictly obeys), producing an element from a different underlying dataset instead.
Example usage:
# Preprocess 4 files concurrently. filenames = tf.data.Dataset.list_files("/path/to/data/train*.tfrecords") dataset = filenames.apply( tf.contrib.data.sloppy_interleave( lambda filename: tf.data.TFRecordDataset(filename), cycle_length=4))
WARNING: The order of elements in the resulting dataset is not deterministic. Use Dataset.interleave()
if you want the elements to have a deterministic order.
map_func
: A function mapping a nested structure of tensors (having shapes and types defined by self.output_shapes
and self.output_types
) to a Dataset
.cycle_length
: The number of input Dataset
s to interleave from in parallel.block_length
: The number of consecutive elements to pull from an input Dataset
before advancing to the next input Dataset
. Note: sloppy_interleave
will skip the remainder of elements in the block_length
in order to avoid blocking.A Dataset
transformation function, which can be passed to tf.data.Dataset.apply
.
© 2018 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/api_docs/python/tf/contrib/data/sloppy_interleave