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I'm using a Keras Functional API to save a model and then re-load from HDFS Server during one-time initialization of code:

import keras
from keras.models import Model
trained_model = # Build model layers from scratch
trained_model.set_weights(weights_pickle_file)
trained_model._make_predict_function()

And then after initializing this once, I use this model to make predictions one at a time, and we make predictions using the function:

predictions = trained_mdoel.predict(data)

When running on our Dev Environment without using the Django web service, this code runs fine, but when using Django, we get the following error:

tensorflow.python.framework.errors_impl.InvalidArgumentError: Tensor specified in either feed_devices or fetch_devices was not found in the Graph

Our Keras and tensorflow versions are listed below:

Keras: 2.3.1

TensorFlow: 2.0.0

Previously, we've looked through a lot of solutions for this problem, but most of them are for the tensorflow.keras library, or are for older versions of TensorFlow, where could access the session variable.

Solutions that didn't help our case:

Any help here would be appreciated.

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