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 self.model._make_predict_function() 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])
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]) File "D:\code_project\path to project", line 1462, in predict callbacks=callbacks) 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='0.0.0.0', 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.