tf.contrib.learn.read_batch_examples(file_pattern, batch_size, reader, randomize_input=True, num_epochs=None, queue_capacity=10000, num_threads=1, read_batch_size=1, parse_fn=None, name=None)See the guide: Learn (contrib) > Input processing
Adds operations to read, queue, batch Example protos.
Given file pattern (or list of files), will setup a queue for file names, read Example proto using provided reader, use batch queue to create batches of examples of size batch_size.
All queue runners are added to the queue runners collection, and may be started via start_queue_runners.
All ops are added to the default graph.
Use parse_fn if you need to do parsing / processing on single examples.
file_pattern: List of files or pattern of file paths containing Example records. See tf.gfile.Glob for pattern rules.batch_size: An int or scalar Tensor specifying the batch size to use.reader: A function or class that returns an object with read method, (filename tensor) -> (example tensor).randomize_input: Whether the input should be randomized.num_epochs: Integer specifying the number of times to read through the dataset. If None, cycles through the dataset forever. NOTE - If specified, creates a variable that must be initialized, so call tf.global_variables_initializer() as shown in the tests.queue_capacity: Capacity for input queue.num_threads: The number of threads enqueuing examples.read_batch_size: An int or scalar Tensor specifying the number of records to read at onceparse_fn: Parsing function, takes Example Tensor returns parsed representation. If None, no parsing is done.name: Name of resulting op.String Tensor of batched Example proto.
ValueError: for invalid inputs.Defined in tensorflow/contrib/learn/python/learn/learn_io/graph_io.py.
© 2017 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/learn/read_batch_examples