I am using the following: python 3.6.4

Flask = 1.1.1,

Keras = 2.3.0,

TensorFlow = 1.14.0, I have a Flask server that gets pictures from the clients. using Keras model with a TensorFlow back-end I try to get a prediction from a pre-trained model.

I am using the following function to upload the model( as part of a class)

 model_path = self.conf["model_path"] // path in conf to model
 self.model = load_model(model_path)  // uploading the model
 p_log.info("model had been upload successfully ")

and I use the following line for prediction:

cm_prediction = self.model.predict([face, reye, leye, fg])[0]

Until today I didn't have any problem, always got a prediction. now I get the following error:

Traceback (most recent call last):
  File "D:\code_project\path to project", line 75, in predict
    cm_prediction = self.model.predict([face, reye, leye, fg])[0]
  File "D:\code_project\path to project", line 1462, in predict
  File "D:\code_project\predictserver\venv\lib\site-packages\keras\engine\training_arrays.py", line 276, in predict_loop
    callbacks.model.stop_training = False
  File "D:\code_project\predictserver\venv\lib\site-packages\keras\engine\network.py", line 323, in __setattr__
    super(Network, self).__setattr__(name, value)
  File "D:\code_project\predictserver\venv\lib\site-packages\keras\engine\base_layer.py", line 1215, in __setattr__
    if not _DISABLE_TRACKING.value:
AttributeError: '_thread._local' object has no attribute 'value'

I have a simple Flask server running:

if __name__ == '__main__':
    pre = predictor()
    # app.run(debug=True)
    app.run(host='', port=12345)

The model is always being uploaded.

If I am running the program without the Flask server, hence giving manually input, I get a prediction, but as soon as the server is on the error appears and I stop getting a predictions

I tried to look on the web for some similar problem but didnt found any, if someone knows what the problem and how to solve it, I will appreciate sharing it.

  • I'm experiencing the same situation right now. In my case, I've narrowed down the cause to some imports from another part of the package I'm working with. Did you add any new imports before this started happening? Sep 19, 2019 at 21:13
  • The only thing i can think about is from scipy.spatial import distance as dist that i added before
    – helpper
    Sep 20, 2019 at 6:36

19 Answers 19


So after a long night, Keras had released a new version 2.3.0 in Sep 17,19. As part of revision update I did, I updated all libraries, Keras among them. Since I did it the message appeared.

After I downgraded back to Keras 2.2.5 The problem disappeared.

  • After several hours of chasing imports, this solved my issue as well. Thanks! Sep 20, 2019 at 14:31
  • This just saved me, thanks. Has anyone opened a bug report with Keras?
    – Zexelon
    Sep 24, 2019 at 0:18
  • After hours of debugging different imports and failing miserably, I set Keras to 2.2.4 and TF to 1.13.1 and solved all of my errors. Seems like Keras and TF's newer versions don't work well with its older counterparts.
    – Binh Phan
    Apr 19, 2020 at 17:16

If it is still relevant, I fixed this problem just by changing

from keras.models import Sequential

from keras.layers import Dense, Dropout, LSTM


from tensorflow.keras.models import Sequential
from tensorflow.keras.layers import Dense, Dropout, LSTM

So, no need to turn off multithreading.

  • This worked for me when I was working with PyQt5. I changed every import from Keras to tensorflow.keras in mtcnn library and it worked like a charm. Thanks dude ! Sep 13, 2021 at 15:38

I had the same problem when building a docker container today, which had worked perfectly before. Fixed it by downgrading Keras version to 2.2.4.


I had the same problem with Keras 2.3.0.

Another fix for those that don't want to downgrade is to set threaded=False in app.run().

  • 3
    I have the same problem what exectly is this app.run()? Dec 23, 2019 at 22:36

If you're having issues and are a little slow like myself, set debug=False as well

  • This did help me when I deployed my app on the GCP. But what is the exact problem here? This solution feels like cheating to me... Edit: My Keras is on version 2.3.1
    – ChKl
    Jan 10, 2020 at 13:26

I had the same problem with my Keras models served via Flask on Google App Engine. Considering suggestions found in this thread and other places online I tried the following, none of which solved the original problem:

  • Downgrading to older versions of Tensorflow and/or Keras caused my models fail to load.
  • Using app.run(threaded=False) had no effect at all.
  • Setting the graph context with tensorflow.compat.v1.get_default_graph or tensorflow.python.keras.backend.get_graph caused some other errors.

Eventually the hint found here brought the solution and my app started returning valid results for all requests without any thread-related issues after I added these two lines to the code:

import keras.backend.tensorflow_backend as tb
tb._SYMBOLIC_SCOPE.value = True

Same problem when loading multiple Keras models via Flask. To solve the problem instead of using:

from keras.models import model_from_json

I used this:

from tensorflow.keras.models import model_from_json

In the future instead of installing keras I will use tensorflow.keras.

I hope it helps.


There is no need to downgrade the package versions. If you are using Keras then in Flask server do app.run(host=<HOST>, port=<PORT>, threaded=False) or in terminal do flask run --without-threads. However, I will suggest to use tensorflow.keras instead of keras, so that you don't have to disable multi-threading.


No need to downgrade your library versions. I had the same issue but I only tweaked the flask parameter.

app.run("", 5005, threaded=False)

this made it finally run my code !

Let me know If you are still struggling.

  • Lifesaver for me. Thanks a lot. Jun 9, 2020 at 7:39
  • Happy to help and love to be the part of this community ! Jun 9, 2020 at 19:40

No need to downgrade Keras or disable multi-threading. Use Keras with TensorFlow as back-end:

from tensorflow.keras.models import load_model

I tried all the above and here's what I found:

  1. downgrading Keras didn't work, even regular non-flask calls failed to load models
  2. tb._SYMBOLIC_SCOPE.value = True didn't work either
  3. finally threaded=False AND debug=False worked.
  • This is an answer, admitted maybe not a very good one. Poster is saying what didn't work, and then in the third point says what did work foe them.
    – ChrisMM
    Feb 17, 2020 at 11:20

please make sure you should make the value of threaded=False Example : for flask :

if name == 'main':
  • 1
    Don't you mean if __name__ == '__main__'? :)
    – Markus
    Apr 26, 2020 at 12:08

I solved this problem by:

  1. Re-installing the latest versions of tensorflow, keras and flask (maybe order matters here...) inside the environment I used to run app.py
  2. Importing keras from tensorflow

Current versions:

  • tensorflow==2.1.0
  • keras==2.3.1
  • tensorflow.keras==2.2.4-tf
  • flask==1.1.1

downgrading Keras didn't work tb._SYMBOLIC_SCOPE.value = True didn't work threaded=False AND debug=False didn't work

from keras.models import model_from_json


from tensorflow.keras.models import model_from_json



This work for me:

you must put it just before the creation of the model.

import keras.backend.tensorflow_backend as tb tb._SYMBOLIC_SCOPE.value = True


If you are using tensorflow 2.2 version, downgrading Keras to 2.2.5 will not help you because tensorflow 2.2 will need a keras version greater than 2.3. In that case, defining the graph variable will do the trick for you.

so in your app.py, add these two lines of code at the top.

global graph
graph = tf.compat.v1.get_default_graph()

None of these solutions worked for me. I switched from Flask to Bottle. Bottle is also a fast, simple and lightweight WSGI micro web-framework for Python.

To Install Bottle

pip insatll bottle

After that, all syntaxes are same as Flask

from bottle import route, run, template

def index():
    return "Hello World"

run(host='localhost', port=8080)

Downgrading of Keras and Tensorflow versions does not work. Even setting Threaded=False in app.py does not solve the provlem on its own. You also need to set debug = False.Following works without any failure.

if __name__ == '__main__':

For Django : Use this command to run the server

python manage.py runserver --nothreading --noreload

it works perfectly fine for me

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.