85

I have a .tfrecord but I don't know how it is structured. How can I inspect the schema to understand what the .tfrecord file contains?

All Stackoverflow answers or documentation seem to assume I know the structure of the file.

reader = tf.TFRecordReader()
file = tf.train.string_input_producer("record.tfrecord")
_, serialized_record = reader.read(file)

...HOW TO INSPECT serialized_record...

8 Answers 8

139

Found it!

import tensorflow as tf

for example in tf.python_io.tf_record_iterator("data/foobar.tfrecord"):
    print(tf.train.Example.FromString(example))

You can also add:

from google.protobuf.json_format import MessageToJson
...
jsonMessage = MessageToJson(tf.train.Example.FromString(example))
4
  • 1
    It seems that this solution doesn't show all the content of the file.
    – PatriceG
    Commented Sep 20, 2018 at 12:20
  • Is that so? I didn’t have that issue Commented Sep 24, 2018 at 14:06
  • If I'm not mistaken, this loops through the entire TFRecord file to give you the contents of one single example. Is there a more efficient way to just read one example? Commented Apr 24, 2019 at 16:33
  • 2
    tf.compat.v1.python_io.tf_record_iterator made this work for me in TF2
    – Brian
    Commented Jul 21, 2022 at 12:57
94

Above solutions didn't work for me so for TF 2.0 use this:

import tensorflow as tf 
raw_dataset = tf.data.TFRecordDataset("path-to-file")

for raw_record in raw_dataset.take(1):
    example = tf.train.Example()
    example.ParseFromString(raw_record.numpy())
    print(example)

https://www.tensorflow.org/tutorials/load_data/tfrecord#reading_a_tfrecord_file_2

3
  • 10
    Answer should be changed to this one Commented Jul 13, 2020 at 2:42
  • 2
    This is the one Commented Jul 19, 2021 at 3:15
  • 1
    I get: UnicodeDecodeError: 'utf-8' codec can't decode byte 0xfc in position 206: invalid start byte
    – PascalIv
    Commented Mar 23, 2022 at 12:28
11

Improvement of the accepted solution :

import tensorflow as tf
import json
from google.protobuf.json_format import MessageToJson

dataset = tf.data.TFRecordDataset("mydata.tfrecord")
for d in dataset:
    ex = tf.train.Example()
    ex.ParseFromString(d.numpy())
    m = json.loads(MessageToJson(ex))
    print(m['features']['feature'].keys())

In my case, I was running on TF2, and a single example was too big to fit on my screen, so I needed to use a dictionary to inspect the keys (the accepted solution return a full string).

2
  • 2
    Is the MessageToJson comes from google protobuf? Commented Mar 18, 2021 at 8:11
  • 1
    from google.protobuf.json_format import MessageToJson is this one
    – dtlam26
    Commented Jul 29, 2022 at 13:14
6

If your .tftrecord contains SequenceExample, the accepted answer won't show you everything. You can use:

import tensorflow as tf

for example in tf.python_io.tf_record_iterator("data/foobar.tfrecord"):
    result = tf.train.SequenceExample.FromString(example)
    break
print(result)

This will show you the content of the first example.

Then you can also inspect individual Features using their keys:

result.context.feature["foo_key"]

And for FeatureLists:

result.feature_lists.feature_list["bar_key"]
3

Use TensorFlow tf.TFRecordReader with the tf.parse_single_example decoder as specified in https://www.tensorflow.org/programmers_guide/reading_data

PS, tfrecord contains 'Example' records defined in https://github.com/tensorflow/tensorflow/blob/master/tensorflow/core/example/example.proto

Once you extract the record into a string, parsing it is something like this

a=tf.train.Example()
result = a.ParseFromString(binary_string_with_example_record)

However, I'm not sure where's the raw support for extracting individual records from a file, you can track it down in TFRecordReader

3
  • TFRecord files must be read sequentially from the start per documentation. I'm sure there is a way to read them randomly but maybe no supported standard. Commented Aug 1, 2019 at 21:35
  • 1
    broken link11111
    – wvxvw
    Commented Dec 19, 2020 at 16:22
  • @wvxvw, what were you expecting from tensorflow Commented Jul 29, 2022 at 10:49
3

If it's an option to install another Python package, tfrecord_lite is very convenient.

Example:

In [1]: import tensorflow as tf
   ...: from tfrecord_lite import decode_example
   ...:
   ...: it = tf.python_io.tf_record_iterator('nsynth-test.tfrecord')
   ...: decode_example(next(it))
   ...:
Out[1]:
{'audio': array([ 3.8138387e-06, -3.8721851e-06,  3.9331076e-06, ...,
        -3.6526076e-06,  3.7041993e-06, -3.7578957e-06], dtype=float32),
 'instrument': array([417], dtype=int64),
 'instrument_family': array([0], dtype=int64),
 'instrument_family_str': [b'bass'],
 'instrument_source': array([2], dtype=int64),
 'instrument_source_str': [b'synthetic'],
 'instrument_str': [b'bass_synthetic_033'],
 'note': array([149013], dtype=int64),
 'note_str': [b'bass_synthetic_033-100-100'],
 'pitch': array([100], dtype=int64),
 'qualities': array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0], dtype=int64),
 'sample_rate': array([16000], dtype=int64),
 'velocity': array([100], dtype=int64)}

You can install it by pip install tfrecord_lite.

0

I'd recommend the following script: tfrecord-view.

It enables a convenient visual inspection of TF records using TF and openCV, although needs a bit of modifications (for labels and such). See further instructions inside the repository

0

The answer from amalik works, in addition you can decode the record with whatever method you have already implemented, for example here i can check the images saved in the tf record converting them to numpy array after reshaping them to tensors:

raw_dataset = tf.data.TFRecordDataset('/content/valid.tfrecords')

for raw_record in raw_dataset.take(1):
    x, y = decode_record_spatial_measureimage(raw_record)

    print(type(x.numpy()))
    draw(x)

where i use this method to decode the 2 images in the tf record

def decode_record_spatial_measureimage(record):
  name_to_features = {'input': tf.io.FixedLenFeature([], tf.string), 'ground': tf.io.FixedLenFeature([], tf.string)}
  new_record = tf.io.parse_single_example(record, name_to_features)

  input_raw = tf.io.decode_raw(new_record['input'], out_type=tf.float32)
  ground_raw = tf.io.decode_raw(new_record['ground'], out_type=tf.float32)
  
  return tf.reshape(input_raw, input_shape), tf.reshape(ground_raw, input_shape)

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