I am implementing a simple chatbot using keras and WebSockets. I now have a model that can make a prediction about the user input and send the according answer.

When I do it through command line it works fine, however when I try to send the answer through my WebSocket, the WebSocket doesn't even start anymore.

Here is my working WebSocket code:

def echo(sock):
    while True:
        # get user input from browser
        user_input = sock.receive()
        # print user input on console
        # read answer from console
        response = input()
        # send response to browser

Here is my code to communicate with the keras model on command line:

while True:
    question = input("")
    ints = predict(question)
    answer = response(ints, json_data)

Used methods are those:

def predict(sentence):
    bag_of_words = convert_sentence_in_bag_of_words(sentence)
    # pass bag as list and get index 0
    prediction = model.predict(np.array([bag_of_words]))[0]
    accepted_results = [[tag, probability] for tag, probability in enumerate(prediction) if probability > ERROR_THRESHOLD]

    accepted_results.sort(key=lambda x: x[1], reverse=True)

    output = []
    for accepted_result in accepted_results:
        output.append({'intent': classes[accepted_result[0]], 'probability': str(accepted_result[1])})
    return output

def response(intents, json):
    tag = intents[0]['intent']
    intents_as_list = json['intents']
    for i in intents_as_list:
        if i['tag'] == tag:
            res = random.choice(i['responses'])
    return res

So when I start the WebSocket with the working code I get this output:

 * Running on (Press CTRL+C to quit)
 * Restarting with stat
 * Serving Flask app 'server' (lazy loading)
 * Environment: production
   WARNING: This is a development server. Do not use it in a production deployment.
   Use a production WSGI server instead.
 * Debug mode: on

But as soon as I have anything of my model in the server.py class I get this output:

2022-02-13 11:31:38.887640: I tensorflow/core/common_runtime/pluggable_device/pluggable_device_factory.cc:305] Could not identify NUMA node of platform GPU ID 0, defaulting to 0. Your kernel may not have been built with NUMA support.
2022-02-13 11:31:38.887734: I tensorflow/core/common_runtime/pluggable_device/pluggable_device_factory.cc:271] Created TensorFlow device (/job:localhost/replica:0/task:0/device:GPU:0 with 0 MB memory) -> physical PluggableDevice (device: 0, name: METAL, pci bus id: <undefined>)
Metal device set to: Apple M1

systemMemory: 16.00 GB
maxCacheSize: 5.33 GB

It is enough when I just have an import at the top like this: from chatty import response, predict - even though they are unused.

2 Answers 2


I am devastated, I just wasted 2 days into the dumbest possible issue (and fix)

I still had the

while True:
    question = input("")
    ints = predict(question)
    answer = response(ints, json_data)

in my model file, so the server didn't start. The fix was to delete it and now it works fine.


There is no problem with your websocket route. Could you please share how you are triggering this route? Websocket is a different protocol and I'm suspecting that you are using a HTTP client to test websocket. For example in Postman:

Postman New Screen

HTTP requests are different than websocket requests. So, you should use appropriate client to test websocket.

  • hey @AHOME :) I am not sure if I understand what you mean :/ I just run the server.py file and then I can access a simple html page in - from there I can write messages that get sent to the backend and I can send answers from the command line as well
    – newbie
    Feb 17, 2022 at 11:20

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