52

I've run several training sessions with different graphs in TensorFlow. The summaries I set up show interesting results in the training and validation. Now, I'd like to take the data I've saved in the summary logs and perform some statistical analysis and in general plot and look at the summary data in different ways. Is there any existing way to easily access this data?

More specifically, is there any built in way to read a TFEvent record back into Python?

If there is no simple way to do this, TensorFlow states that all its file formats are protobuf files. From my understanding of protobufs (which is limited), I think I'd be able to extract this data if I have the TFEvent protocol specification. Is there an easy way to get ahold of this? Thank you much.

50

As Fabrizio says, TensorBoard is a great tool for visualizing the contents of your summary logs. However, if you want to perform a custom analysis, you can use tf.train.summary_iterator() function to loop over all of the tf.Event and tf.Summary protocol buffers in the log:

for summary in tf.train.summary_iterator("/path/to/log/file"):
    # Perform custom processing in here.

UPDATE for tf2:

from tensorflow.python.summary.summary_iterator import summary_iterator

You need to import it, that module level is not currently imported by default. On 2.0.0-rc2

4
  • This place has some nice helper functions programtalk.com/python-examples/… – Toke Faurby Oct 17 '17 at 14:13
  • 2
    We don't have tf.train.summary_iterator in TensorFlow 1.8+. Seems change to tf.python.summary.summary_iterator now. – tobe May 25 '18 at 3:15
  • 2
    Can't locate summary iterator in tf2 – ikamen Aug 4 '19 at 9:19
  • 4
    Time has passed and summary_iterator is now to be found under tf.compat.v1.train. Also, the Tensorboard package provides the tensorboard.backend.event_processing module for those of you who do not want to depend on Tensorflow. See this answer for details – Mr Tsjolder Sep 15 '20 at 15:35
35

To read a TFEvent you can get a Python iterator that yields Event protocol buffers.

# This example supposes that the events file contains summaries with a
# summary value tag 'loss'.  These could have been added by calling
# `add_summary()`, passing the output of a scalar summary op created with
# with: `tf.scalar_summary(['loss'], loss_tensor)`.
for e in tf.train.summary_iterator(path_to_events_file):
    for v in e.summary.value:
        if v.tag == 'loss' or v.tag == 'accuracy':
            print(v.simple_value)

more info: summary_iterator

23

You can simply use:

tensorboard --inspect --event_file=myevents.out

or if you want to filter a specific subset of events of the graph:

tensorboard --inspect --event_file=myevents.out --tag=loss

If you want to create something more custom you can dig into the

/tensorflow/python/summary/event_file_inspector.py 

to understand how to parse the event files.

4
  • Which version of TensorFlow does this work with? I'm using 0.8. For me, --logdir is always required and despite passing in these other parameters, it seems that TensorBoard just runs as usual ignoring those parameters. Additionally, the --help doesn't show either of these parameters. Also, just to make sure I'm not missing something, is this suppose to print something to the terminal screen? Or change what is shown on the TensorBoard page? Or something else? Thanks! – golmschenk May 18 '16 at 17:26
  • Following this lead a bit further, I found the EventAccumulator class. Which upon loading the file can give all the details of the summary values. I'll update your answer with more detail. – golmschenk May 18 '16 at 20:00
  • indeed these parameters are available in tensorflow tip. – fabrizioM May 18 '16 at 20:26
  • I see. It seems to have been added only a week ago. Thanks! – golmschenk May 18 '16 at 21:34
9

Following works as of tensorflow version 2.0.0-beta1:

import os

import tensorflow as tf
from tensorflow.python.framework import tensor_util

summary_dir = 'tmp/summaries'
summary_writer = tf.summary.create_file_writer('tmp/summaries')

with summary_writer.as_default():
  tf.summary.scalar('loss', 0.1, step=42)
  tf.summary.scalar('loss', 0.2, step=43)
  tf.summary.scalar('loss', 0.3, step=44)
  tf.summary.scalar('loss', 0.4, step=45)


from tensorflow.core.util import event_pb2
from tensorflow.python.lib.io import tf_record

def my_summary_iterator(path):
    for r in tf_record.tf_record_iterator(path):
        yield event_pb2.Event.FromString(r)

for filename in os.listdir(summary_dir):
    path = os.path.join(summary_dir, filename)
    for event in my_summary_iterator(path):
        for value in event.summary.value:
            t = tensor_util.MakeNdarray(value.tensor)
            print(value.tag, event.step, t, type(t))

the code for my_summary_iterator is copied from tensorflow.python.summary.summary_iterator.py - there was no way to import it at runtime.

8

Here is a complete example for obtaining values from a scalar. You can see the message specification for the Event protobuf message here

import tensorflow as tf


for event in tf.train.summary_iterator('runs/easy_name/events.out.tfevents.1521590363.DESKTOP-43A62TM'):
    for value in event.summary.value:
        print(value.tag)
        if value.HasField('simple_value'):
            print(value.simple_value)
5

You can use the script serialize_tensorboard, which will take in a logdir and write out all the data in json format.

You can also use an EventAccumulator for a convenient Python API (this is the same API that TensorBoard uses).

1
  • 5
    As of Tensorboard version 1.1, the serialize_tensorboard script is no longer available. – shark8me May 11 '17 at 9:49
0

I've been using this. It assumes that you only want to see tags you've logged more than once whose values are floats and returns the results as a pd.DataFrame. Just call metrics_df = parse_events_file(path).

from collections import defaultdict
import pandas as pd
import tensorflow as tf

def is_interesting_tag(tag):
    if 'val' in tag or 'train' in tag:
        return True
    else:
        return False


def parse_events_file(path: str) -> pd.DataFrame:
    metrics = defaultdict(list)
    for e in tf.train.summary_iterator(path):
        for v in e.summary.value:

            if isinstance(v.simple_value, float) and is_interesting_tag(v.tag):
                metrics[v.tag].append(v.simple_value)
            if v.tag == 'loss' or v.tag == 'accuracy':
                print(v.simple_value)
    metrics_df = pd.DataFrame({k: v for k,v in metrics.items() if len(v) > 1})
    return metrics_df
0

Late 2020 versions of TensorFlow and TensorFlow Datasets recommends a different approach. Use tf.data.TFRecordDataset and event_pb2:

from os import path, listdir
from operator import contains
from functools import partial
from itertools import chain
from json import loads

import numpy as np
import tensorflow as tf
from tensorflow.core.util import event_pb2

# From https://github.com/Suor/funcy/blob/0ee7ae8/funcy/funcs.py#L34-L36
def rpartial(func, *args):
    """Partially applies last arguments."""
    return lambda *a: func(*(a + args))


tensorboard_logdir = "/tmp"


# Or you could just glob… for *tfevents*:
list_dir = lambda p: map(partial(path.join, p), listdir(p))

for event in filter(rpartial(contains, "tfevents"),
                    chain.from_iterable(
                        map(list_dir,
                            chain.from_iterable(
                                map(list_dir,
                                    filter(rpartial(contains, "_epochs_"),
                                           list_dir(tensorboard_logdir))))))):
    print(event)
    for raw_record in tf.data.TFRecordDataset(event):
        for value in event_pb2.Event.FromString(raw_record.numpy()).summary.value:
            print("value: {!r} ;".format(value))
            if value.tensor.ByteSize():
                t = tf.make_ndarray(value.tensor)
                if hasattr(event, "step"):
                    print(value.tag, event.step, t, type(t))
                elif type(t).__module__ == np.__name__:
                    print("t: {!r} ;".format(np.vectorize(loads)(t)))
    print()

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