# Simple way to visualize a TensorFlow graph in Jupyter?

The official way to visualize a TensorFlow graph is with TensorBoard, but sometimes I just want a quick look at the graph when I'm working in Jupyter.

Is there a quick solution, ideally based on TensorFlow tools, or standard SciPy packages (like matplotlib), but if necessary based on 3rd party libraries?

• The DeepDream recipe works very well, but TensorBoard uses to draw an unintelligible graph with the internal extra-nodes TensorFlow adds run its Operations. In order to improve the legibility I wrote an article with some guidelines to define your model to get a better picture of it. Commented Jan 8, 2017 at 21:07

Here's a recipe I copied from one of Alex Mordvintsev deep dream notebook at some point

``````from IPython.display import clear_output, Image, display, HTML
import numpy as np

def strip_consts(graph_def, max_const_size=32):
"""Strip large constant values from graph_def."""
strip_def = tf.GraphDef()
for n0 in graph_def.node:
n.MergeFrom(n0)
if n.op == 'Const':
tensor = n.attr['value'].tensor
size = len(tensor.tensor_content)
if size > max_const_size:
tensor.tensor_content = "<stripped %d bytes>"%size
return strip_def

def show_graph(graph_def, max_const_size=32):
"""Visualize TensorFlow graph."""
if hasattr(graph_def, 'as_graph_def'):
graph_def = graph_def.as_graph_def()
strip_def = strip_consts(graph_def, max_const_size=max_const_size)
code = """
<script>
document.getElementById("{id}").pbtxt = {data};
}}
</script>
<div style="height:600px">
<tf-graph-basic id="{id}"></tf-graph-basic>
</div>
""".format(data=repr(str(strip_def)), id='graph'+str(np.random.rand()))

iframe = """
<iframe seamless style="width:1200px;height:620px;border:0" srcdoc="{}"></iframe>
""".format(code.replace('"', '&quot;'))
display(HTML(iframe))
``````

Then to visualize current graph

``````show_graph(tf.get_default_graph().as_graph_def())
``````

If your graph is saved as pbtxt, you could do

``````gdef = tf.GraphDef()
show_graph(gdef)
``````

You'll see something like this

• I just found the source you mentioned. Perhaps you could add the URL to your answer? github.com/tensorflow/tensorflow/blob/master/tensorflow/… Commented Jul 5, 2016 at 14:16
• is there a way to add/remove nodes from the main graph, similar to the TensorBoard functionality? Commented Oct 27, 2016 at 7:03
• This implementation doesn't allow add/remove nodes. Some interactions do work, but not that. Commented May 21, 2017 at 10:04
• Is there a way to also do this for the scalar summaries?
– Faur
Commented Jun 9, 2017 at 0:14
• This is great. Thank you! Commented Jun 28, 2017 at 8:45

`TensorFlow 2.0` now supports`TensorBoard`in`Jupyter`via magic commands (e.g `%tensorboard --logdir logs/train`). Here's a link to tutorials and examples.

[EDITS 1, 2]

As @MiniQuark mentioned in a comment, we need to load the extension first(`%load_ext tensorboard.notebook`).

Below are usage examples for using graph mode, `@tf.function` and `tf.keras` (in `tensorflow==2.0.0-alpha0`):

### 1. Example using graph mode in TF2 (via `tf.compat.v1.disable_eager_execution()`)

``````%load_ext tensorboard.notebook
import tensorflow as tf
tf.compat.v1.disable_eager_execution()
from tensorflow.python.ops.array_ops import placeholder
from tensorflow.python.summary.writer.writer import FileWriter

with tf.name_scope('inputs'):
x = placeholder(tf.float32, shape=[None, 2], name='x')
y = placeholder(tf.int32, shape=[None], name='y')

with tf.name_scope('logits'):
layer = tf.keras.layers.Dense(units=2)
logits = layer(x)

with tf.name_scope('loss'):
xentropy = tf.nn.sparse_softmax_cross_entropy_with_logits(labels=y, logits=logits)
loss_op = tf.reduce_mean(xentropy)

with tf.name_scope('optimizer'):
train_op = optimizer.minimize(loss_op)

FileWriter('logs/train', graph=train_op.graph).close()
%tensorboard --logdir logs/train
``````

### 2. Same example as above but now using `@tf.function` decorator for forward-backward passes and without disabling eager execution:

``````%load_ext tensorboard.notebook
import tensorflow as tf
import numpy as np

logdir = 'logs/'
writer = tf.summary.create_file_writer(logdir)
tf.summary.trace_on(graph=True, profiler=True)

@tf.function
def forward_and_backward(x, y, w, b, lr=tf.constant(0.01)):

with tf.name_scope('logits'):
logits = tf.matmul(x, w) + b

with tf.name_scope('loss'):
loss_fn = tf.nn.sparse_softmax_cross_entropy_with_logits(
labels=y, logits=logits)
reduced = tf.reduce_sum(loss_fn)

with tf.name_scope('optimizer'):
_ = [x.assign(x - g*lr) for g, x in zip(grads, [w, b])]
return reduced

# inputs
x = tf.convert_to_tensor(np.ones([1, 2]), dtype=tf.float32)
y = tf.convert_to_tensor(np.array([1]))
# params
w = tf.Variable(tf.random.normal([2, 2]), dtype=tf.float32)
b = tf.Variable(tf.zeros([1, 2]), dtype=tf.float32)

loss_val = forward_and_backward(x, y, w, b)

with writer.as_default():
tf.summary.trace_export(
name='NN',
step=0,
profiler_outdir=logdir)

%tensorboard --logdir logs/
``````

### 3. Using `tf.keras` API:

``````%load_ext tensorboard.notebook
import tensorflow as tf
import numpy as np
x_train = [np.ones((1, 2))]
y_train = [np.ones(1)]

model = tf.keras.models.Sequential([tf.keras.layers.Dense(2, input_shape=(2, ))])

model.compile(
optimizer='sgd',
loss='sparse_categorical_crossentropy',
metrics=['accuracy'])

logdir = "logs/"

tensorboard_callback = tf.keras.callbacks.TensorBoard(log_dir=logdir)

model.fit(x_train,
y_train,
batch_size=1,
epochs=1,
callbacks=[tensorboard_callback])

%tensorboard --logdir logs/
``````

These examples will produce something like this below the cell:

• Perhaps add that the extension needs to be loaded first: %load_ext tensorboard.notebook Commented Mar 7, 2019 at 7:43
• @MiniQuark - at this point in time, would you recommend adopting this accepted answer VS the options below (including yours?) Commented Jun 16, 2019 at 13:56
• Yes, I definitely recommend this solution, especially option 3, using tf.keras (and sometimes option 2, using tf.function). I think @Vlad put option 1 (disabling eager mode) first to show code that looks like TF 1.x, then he simplified it using tf.function, then simplified it some more using tf.keras. The point is: tf.keras makes it really trivial. Commented Jun 17, 2019 at 20:54
• tensorflow.org/tensorboard/tensorboard_in_notebooks Commented May 21, 2020 at 12:35

I wrote a Jupyter extension for tensorboard integration. It can:

1. Start tensorboard just by clicking a button in Jupyter
2. Manage multiple tensorboard instances.
3. Seamless integration with Jupyter interface.
• Paste the essential part of the answer here. And use links for references only. Commented Aug 22, 2017 at 9:39

I wrote a simple helper which starts a tensorboard from the jupyter notebook. Just add this function somewhere at the top of your notebook

``````def TB(cleanup=False):
import webbrowser
webbrowser.open('http://127.0.1.1:6006')

!tensorboard --logdir="logs"

if cleanup:
!rm -R logs/
``````

And then run it `TB()` whenever you generated your summaries. Instead of opening a graph in the same jupyter window, it:

• starts a tensorboard
• opens a new tab with tensorboard
• navigate you to this tab

After you are done with exploration, just click the tab, and stop interrupt the kernel. If you want to cleanup your log directory, after the run, just run `TB(1)`

• @AjaySinghNegi you must make sure that tensorboard is installed and available in the environment your started Jupyter in. If that still does not work, try replacing !tensorboard with the full path of the tensorboard binary. Commented Dec 30, 2018 at 14:16

A Tensorboard / iframes free version of this visualization that admittedly gets cluttered quickly can

``````import pydot
from itertools import chain
def tf_graph_to_dot(in_graph):
dot = pydot.Dot()
dot.set('rankdir', 'LR')
dot.set('concentrate', True)
dot.set_node_defaults(shape='record')
all_ops = in_graph.get_operations()
all_tens_dict = {k: i for i,k in enumerate(set(chain(*[c_op.outputs for c_op in all_ops])))}
for c_node in all_tens_dict.keys():
node = pydot.Node(c_node.name)#, label=label)
for c_op in all_ops:
for c_output in c_op.outputs:
for c_input in c_op.inputs:
return dot
``````

which can then be followed by

``````from IPython.display import SVG
# Define model
tf_graph_to_dot(graph).write_svg('simple_tf.svg')
SVG('simple_tf.svg')
``````

to render the graph as records in a static SVG file

• Nice code, although I wonder why `for c_node in all_tens_dict.keys()` loops over more elements than you have nodes in your final graph. Commented Jul 28, 2018 at 9:06

Code

``````def tb(logdir="logs", port=6006, open_tab=True, sleep=2):
import subprocess
proc = subprocess.Popen(
"tensorboard --logdir={0} --port={1}".format(logdir, port), shell=True)
if open_tab:
import time
time.sleep(sleep)
import webbrowser
webbrowser.open("http://127.0.0.1:{}/".format(port))
return proc
``````

Usage

``````tb()               # Starts a TensorBoard server on the logs directory, on port 6006
# and opens a new tab in your browser to use it.

tb("logs2", 6007)  # Starts a second server on the logs2 directory, on port 6007,
# and opens a new tab to use it.
``````

Starting a server does not block Jupyter (except for 2 seconds to ensure the server has the time to start before opening a tab). All TensorBoard servers will stop when you interrupt the kernel.

If you want more control, you can kill the servers programmatically like this:

``````server1 = tb()
server2 = tb("logs2", 6007)
# and later...
server1.kill()  # stops the first server
server2.kill()  # stops the second server
``````

You can set `open_tab=False` if you don't want new tabs to open. You can also set `sleep` to some other value if 2 seconds is too much or not enough on your system.

If you prefer to pause Jupyter while TensorBoard is running, then you can call any server's `wait()` method. This will block Jupyter until you interrupt the kernel, which will stop this server and all the others.

``````server1.wait()
``````

Prerequisites

This solution assumes you have installed TensorBoard (e.g., using `pip install tensorboard`) and that it is available in the environment you started Jupyter in.

Acknowledgment

This answer was inspired by @SalvadorDali's answer. His solution is nice and simple, but I wanted to be able to start multiple tensorboard instances without blocking Jupyter. Also, I prefer not to delete log directories. Instead, I start tensorboard on the root log directory, and each TensorFlow run logs in a different subdirectory.

• I like this answer. I wish I could vote twice for it. Commented May 7, 2019 at 19:40

Another quick option with TF 2.x is through the `plot_model()` function. It's already built into more recent versions of TF utilities. For example:

``````import tensorflow
from tensorflow.keras.utils import plot_model

plot_model(model, to_file=('output_filename.png'))
``````

This function is nice because you can have it display the layer name, output at a high DPI, configure it to plot horizontally, any other options. Here is the documentation for the function: https://www.tensorflow.org/api_docs/python/tf/keras/utils/plot_model

The plotting is very quick even for large models and works very well even with complex models that have multiple connections in and out.

TensorBoard Visualize Nodes - Architecture Graph

``<img src="https://www.tensorflow.org/images/graph_vis_animation.gif" width=1300 height=680>``