21

I'm reading batch of images by getting idea here from tfrecords(converted by this)

My images are cifar images, [32, 32, 3] and as you can see while reading and passing images the shapes are normal (batch_size=100)

the 2 most notable problems stated in the log, as far as I know is

  1. Shape of 12228, which I don't know from where I get this. All my tensors are either in shape [32, 32, 3] or [None, 3072]
  2. Running out of sample

Compute status: Out of range: RandomSuffleQueue '_2_input/shuffle_batch/random_shuffle_queue' is closed and has insufficient elements (requested 100, current size 0)

How can I solve this?

Logs:

1- image shape is  TensorShape([Dimension(3072)])
1.1- images batch shape is  TensorShape([Dimension(100), Dimension(3072)])
2- images shape is  TensorShape([Dimension(100), Dimension(3072)])

W tensorflow/core/kernels/queue_ops.cc:79] Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
W tensorflow/core/common_runtime/executor.cc:1027] 0x7fa72abc89a0 Compute status: Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
     [[Node: input/shuffle_batch/random_shuffle_queue_enqueue = QueueEnqueue[Tcomponents=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/sub, input/Cast_1)]]
W tensorflow/core/kernels/queue_ops.cc:79] Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
W tensorflow/core/common_runtime/executor.cc:1027] 0x7fa72ab9d080 Compute status: Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
     [[Node: input/shuffle_batch/random_shuffle_queue_enqueue = QueueEnqueue[Tcomponents=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/sub, input/Cast_1)]]
W tensorflow/core/kernels/queue_ops.cc:79] Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
W tensorflow/core/common_runtime/executor.cc:1027] 0x7fa7285e55a0 Compute status: Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
     [[Node: input/shuffle_batch/random_shuffle_queue_enqueue = QueueEnqueue[Tcomponents=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/sub, input/Cast_1)]]
W tensorflow/core/kernels/queue_ops.cc:79] Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
W tensorflow/core/common_runtime/executor.cc:1027] 0x7fa72aadb080 Compute status: Invalid argument: Shape mismatch in tuple component 0. Expected [3072], got [12288]
     [[Node: input/shuffle_batch/random_shuffle_queue_enqueue = QueueEnqueue[Tcomponents=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/sub, input/Cast_1)]]
W tensorflow/core/common_runtime/executor.cc:1027] 0x7fa72ad499a0 Compute status: Out of range: RandomSuffleQueue '_2_input/shuffle_batch/random_shuffle_queue' is closed and has insufficient elements (requested 100, current size 0)
     [[Node: input/shuffle_batch = QueueDequeueMany[component_types=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/shuffle_batch/n)]]
Traceback (most recent call last):
  File "/Users/HANEL/Documents/my_cifar_train.py", line 110, in <module>
    tf.app.run()
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/platform/default/_app.py", line 11, in run
    sys.exit(main(sys.argv))
  File "/Users/HANEL/my_cifar_train.py", line 107, in main
    train()
  File "/Users/HANEL/my_cifar_train.py", line 76, in train
    _, loss_value = sess.run([train_op, loss])
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/client/session.py", line 345, in run
    results = self._do_run(target_list, unique_fetch_targets, feed_dict_string)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/client/session.py", line 419, in _do_run
    e.code)
tensorflow.python.framework.errors.OutOfRangeError: RandomSuffleQueue '_2_input/shuffle_batch/random_shuffle_queue' is closed and has insufficient elements (requested 100, current size 0)
     [[Node: input/shuffle_batch = QueueDequeueMany[component_types=[DT_FLOAT, DT_INT32], timeout_ms=-1, _device="/job:localhost/replica:0/task:0/cpu:0"](input/shuffle_batch/random_shuffle_queue, input/shuffle_batch/n)]]
Caused by op u'input/shuffle_batch', defined at:
  File "/Users/HANEL/my_cifar_train.py", line 110, in <module>
    tf.app.run()
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/platform/default/_app.py", line 11, in run
    sys.exit(main(sys.argv))
  File "/Users/HANEL/my_cifar_train.py", line 107, in main
    train()
  File "/Users/HANEL/my_cifar_train.py", line 39, in train
    images, labels = my_input.inputs()
  File "/Users/HANEL/my_input.py", line 157, in inputs
    min_after_dequeue=200)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/training/input.py", line 453, in shuffle_batch
    return queue.dequeue_many(batch_size, name=name)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/ops/data_flow_ops.py", line 245, in dequeue_many
    self._queue_ref, n, self._dtypes, name=name)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/ops/gen_data_flow_ops.py", line 319, in _queue_dequeue_many
    timeout_ms=timeout_ms, name=name)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/ops/op_def_library.py", line 633, in apply_op
    op_def=op_def)
  File "/Users
/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/framework/ops.py", line 1710, in create_op
    original_op=self._default_original_op, op_def=op_def)
  File "/Users/HANEL/tensorflow/lib/python2.7/site-packages/tensorflow/python/framework/ops.py", line 988, in __init__
    self._traceback =

_extract_stack()
  • Hi @mrry Yes, I will send it to you, but I figured out the 2nd problem, I used the training_iterations to 20 which is less than 100 (batch_size) caused the insufficient elements. The 1st problem I guess is the thread size of my machine, it's 4 thread and 12228 = 4 * 3072 – Hamed MP Dec 2 '15 at 19:38
  • 1
    The most likely issue is that sizes passed to set_shape() don't match the true sizes of the tensors that are being produced by decode_raw - perhaps something has gone wrong earlier in the pipeline. To find out the true shapes, you can do something like: image_shape = tf.shape(image); ...; sess.run(image_shape) to get the true shape. – mrry Dec 2 '15 at 21:00
  • 3
    Looking more at your input code, it looks like you convert the images to np.int32 arrays before writing them to the TFRecord file: images_only = [np.asarray(image[1], **np.int32**) for image in images]. However, you read them in as tf.uint8 values, which means you will have four times as many values, and 4 * 3072 = 12288. – mrry Dec 3 '15 at 7:10
  • 2
    @mrry Thank you very much, it works. – Hamed MP Dec 3 '15 at 7:35
  • 1
    @mrry Make your comment an answer for more points. You are addicted to points aren't you? Remember that there are StackOverflow users who don't read comments. Also I don't recall Google search returning results based on the comments only the answers. – Guy Coder Dec 13 '15 at 14:54
11

I had a similar problem. Digging around the web, it turned out that if you use some num_epochs argument, you have to initialize all the local variables, so your code should end up looking like:

with tf.Session() as sess:
    sess.run(tf.local_variables_initializer())
    sess.run(tf.global_variables_initializer())
    coord = tf.train.Coordinator()
    threads = tf.train.start_queue_runners(coord=coord)

    # do your stuff here

    coord.request_stop()
    coord.join(threads)

If you post some more code, maybe I could take a deeper look into it. In the meantime, HTH.

|improve this answer|||||
  • Thanks! sess.run(tf.local_variables_initializer()) was exactly it! – Temak May 18 '17 at 23:55
  • 2
    Glad it helped. Since it is a quite common issue, could the OP please mark the answer as correct for further readers? Thanks. – petrux May 19 '17 at 19:23
8

You're likely processing the parsed TFRecord example wrong. E.g. trying to reshape a tensor to an incompatible size. You can debug using a tf_record_iterator to confirm the data you're reading is stored the way you think it is:

import tensorflow as tf
import numpy as np

tfrecords_filename = '/path/to/some.tfrecord'
record_iterator = tf.python_io.tf_record_iterator(path=tfrecords_filename)

for string_record in record_iterator:
    # Parse the next example
    example = tf.train.Example()
    example.ParseFromString(string_record)

    # Get the features you stored (change to match your tfrecord writing code)
    height = int(example.features.feature['height']
                                 .int64_list
                                 .value[0])

    width = int(example.features.feature['width']
                                .int64_list
                                .value[0])

    img_string = (example.features.feature['image_raw']
                                  .bytes_list
                                  .value[0])
    # Convert to a numpy array (change dtype to the datatype you stored)
    img_1d = np.fromstring(img_string, dtype=np.float32)
    # Print the image shape; does it match your expectations?
    print(img_1d.shape)
|improve this answer|||||
  • 1
    Phew, that was a rough bug, but your answer solved it. I had a tf.py_func node that returned the wrong type, but TF only shows a misleading error message about insufficient elements. – Lenar Hoyt Jun 15 '17 at 18:46
4

I had the exactly same issue today and later I found it was the input data file I downloaded from "famous data set" (such as https://archive.ics.uci.edu/ml/machine-learning-databases/iris/iris.data) that caused the error: It has some empty lines at the end of the file. Remove the empty lines, the error was gone!

|improve this answer|||||
  • Exactly! You save my day! Thanks! I delete the blank line in the end of the file, problem solved! – callofdutyops Sep 5 '17 at 3:34
3

To summarize the comments, the

Compute status: Out of range: RandomSuffleQueue '_2_input/shuffle_batch/random_shuffle_queue' is closed and has insufficient elements (requested 100, current size 0)

was caused by the queue running out of data. This is often caused by thinking you have enough data for N iterations when really you only have enough for M iterations where M < N.

One suggestion for figuring out how much data you actually have is to count how many times you can read data before an OutOfRangeError exception is thrown by the queue.

|improve this answer|||||
  • 1
    I encountered a similar problem. However, I don't think my data is not enough. I have a dataset of 8000 samples, and I set the num_epoches of filename_queue to 2, so it should be 16000 samples to enqueue. My batch_size is set to 100, so it should iterate 160 times. However, I still have such "out of range" warnings, even if I put the iteration code into a try ... exception block which can catch OutOfRange exception. So any possible reasons? – C. Wang Nov 22 '16 at 19:08
3

This could also be caused by a wrong tf record file name that doesn't exist at all. Make sure you have correct file paths specified before you do other checks.

|improve this answer|||||
0

I had this same problem and none of the previous answers seemed to solve it so I will also chime in.

For me the problem ended up being the features list I was passing to parse_single_example. For whatever reason (since I am using a float_list ?) in my tfrecords file I needed to specify the length of the array in my features list or use tf.VarLenFeature ie:

feature_structure = {'features': tf.FixedLenFeature([FEATURE_SIZE], tf.float32),
           'outputs': tf.FixedLenFeature([OUTPUT_SIZE], tf.float32)}
d_features = tf.parse_single_example(serialized_example, features=feature_structure)

Without this I kept getting the "random_shuffle_queue is closed and has insufficient elements" error which I am guessing is because my parsed example had no data in it.

|improve this answer|||||
  • how did you fix it last – 刘米兰 Jun 20 '18 at 7:08

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