I have been working with Keras and really liked the model.summary() It gives a good overview of the size of the different layers and especially an overview of the number of parameters the model has.

Is there a similar function in Tensorflow? I could find nothing on Stackoverflow or the Tensorflow API documentation.

3 Answers 3


Looks like you can use Slim


import numpy as np

from tensorflow.python.layers import base
import tensorflow as tf
import tensorflow.contrib.slim as slim

x = np.zeros((1,4,4,3))
x_tf = tf.convert_to_tensor(x, np.float32)
z_tf = tf.layers.conv2d(x_tf, filters=32, kernel_size=(3,3))

def model_summary():
    model_vars = tf.trainable_variables()
    slim.model_analyzer.analyze_vars(model_vars, print_info=True)



Variables: name (type shape) [size]
conv2d/kernel:0 (float32_ref 3x3x3x32) [864, bytes: 3456]
conv2d/bias:0 (float32_ref 32) [32, bytes: 128]
Total size of variables: 896
Total bytes of variables: 3584

Also here is an example of custom function to print model summary: https://github.com/NVlabs/stylegan/blob/f3a044621e2ab802d40940c16cc86042ae87e100/dnnlib/tflib/network.py#L507

If you already have .pb tensorflow model you can use: inspect_pb.py to print model info or use tensorflow summarize_graph tool with --print_structure flag, also it's nice that it can detect input and output names.

  • For some reason, this only gives me variable size and information.
    – Blade
    Jul 11, 2019 at 16:18
  • @Blade Which one?
    – mrgloom
    Jul 11, 2019 at 16:38
  • The model_summary() function.
    – Blade
    Jul 11, 2019 at 17:00
  • This also works for TensorFlow Lite models! (It seems that this is only if they were built using TensorFlow however)
    – Akaisteph7
    Aug 7, 2019 at 20:43
  • 2
    Slim isn't available anymore in Tensorflow
    – Zulu
    Feb 1, 2022 at 4:31

I haven't seen anything like model.summary() for the tensorflow... However, I don't think you need it. There is a TensorBoard, where you can easily check the architecture of the NN.


enter image description here https://www.tensorflow.org/get_started/graph_viz

  • 5
    how to know each layer's shape and number of params with tensorboard?
    – xiadeye
    Jun 20, 2018 at 9:26
  • 28
    This does not answer the OP question.
    – BiBi
    Dec 22, 2018 at 23:04
  • @BiBi it is! see the question something like Keras model.summary
    – Vadim
    Sep 16, 2019 at 8:19

You can use keras with the tensorflow backend to get the best features of either keras or tensorflow.

  • 5
    Understand, however, I have existing models in Tensorflow (e.g. programmed by others) which I would like to understand better and therefore, I'm looking for a way to get more output from Tensorflow.
    – Carsten
    Oct 5, 2017 at 6:26
  • The best way to look at tensorflow training is by adding summaries to your code and using tensorboard. Oct 5, 2017 at 14:24
  • 1
    Is there a quick way to convert tensorflow model or graph into keras model and then we can just do model.summary(). Really missed this quick textual way, (understood there's tensor board.) Feb 22, 2019 at 18:22
  • 1
    You can go from keras to tf but not the other way around as tf graph is lower level than keras graph. Feb 25, 2019 at 17:22
  • This should be a comment as it doesn't provide an answer with a solution to the problem ("just don't use X but Y instead" rather qualifies as advice).
    – runDOSrun
    May 6, 2020 at 16:21

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