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


Found it!

import tensorflow as tf

for example in tf.python_io.tf_record_iterator("data/foobar.tfrecord"):

You can also add:

from google.protobuf.json_format import MessageToJson
jsonMessage = MessageToJson(tf.train.Example.FromString(example))
  • 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

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()


  • 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

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()
    m = json.loads(MessageToJson(ex))

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
    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

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)

This will show you the content of the first example.

Then you can also inspect individual Features using their keys:


And for FeatureLists:


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

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

  • 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

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


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))
{'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.


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


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)


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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