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Hey I am new to Data Science, I created a Sentiment Analysis Model with keras. It takes a lot of time to train the model and test it eventually. Is there a way to save pretrained model and run it with the tests from user input?

My program basically creates sentiment analysis model and after that it creates a user command line interface:

Here is my code after creating the model:

SENTIMENT_THRESHOLDS = (0.4, 0.7) 
"""The function below will be used to give meaning to our trained model with scores. Label will be determined by the comparison
of score and thereshold values above. 
Label is:
    'Neutral' if 0.4<score<0.7 
    'Negative' if score<=0.4 
    'Positive' if score>=0.7      
"""

def decode_sentiment(score, include_neutral=True):
    label = 'Neutral'
    if score <= SENTIMENT_THRESHOLDS[0]:
        label = 'Negative'
    elif score >= SENTIMENT_THRESHOLDS[1]:
        label = "Positive"

    return label
    
"""This function takes text as input and determine if label of the text is Positive, Negative or Neutral"""    
def predict(text):
    # Tokenize text
    x_test = pad_sequences(tokenizer.texts_to_sequences([text]), maxlen=MAX_SEQUENCE_LENGTH)
    # Predict score
    score = model.predict([x_test])[0]
    # Decode sentiment
    label = decode_sentiment(score)

    return {"label": label, "score": float(score)}

scores = model.predict(x_test, verbose=1, batch_size=10000) 

y_pred_1d = [decode_sentiment(score) for score in scores]

#User interface to use the program; It takes a text input from the user and print its label

userInput=""
while(userInput!="q"):
    userInput=input("Enter a sentence: \n Press q to quit program ")
    if(userInput=="q"):
        time.sleep(2)
        print("Exiting program...")
    else:    
        print(predict(userInput))
    

EDIT

code in train file:

model.save('pretrained_model.h5')   # in file train.py

code in test file:

loaded_model = keras.models.load_model('pretrained_model.h5') # in file test.py

And the ERROR is:

---------------------------------------------------------------------------
AttributeError                            Traceback (most recent call last)
<ipython-input-11-961c0ca89c78> in <module>
      4 from tensorflow import keras
      5 
----> 6 loaded_model = keras.models.load_model('pretrained_model.h5') # in file test.py

C:\Anaconda3\lib\site-packages\tensorflow\python\keras\saving\save.py in load_model(filepath, custom_objects, compile)
    182     if (h5py is not None and (
    183         isinstance(filepath, h5py.File) or h5py.is_hdf5(filepath))):
--> 184       return hdf5_format.load_model_from_hdf5(filepath, custom_objects, compile)
    185 
    186     if sys.version_info >= (3, 4) and isinstance(filepath, pathlib.Path):

C:\Anaconda3\lib\site-packages\tensorflow\python\keras\saving\hdf5_format.py in load_model_from_hdf5(filepath, custom_objects, compile)
    174     if model_config is None:
    175       raise ValueError('No model found in config file.')
--> 176     model_config = json.loads(model_config.decode('utf-8'))
    177     model = model_config_lib.model_from_config(model_config,
    178                                                custom_objects=custom_objects)

AttributeError: 'str' object has no attribute 'decode'

1 Answer 1

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Yes, there is. You can use various methods for that but the simplest one is to use save(filename) method in keras like:-

model.save('pretrained_model.h5')   # in file train.py

and to load it you can use the load it you simply use the load(filename) method.

loaded_model = keras.models.load_model('pretrained_model.h5') # in file test.py

Alternatively:-
You can also save your model as json using the following command:-

#from file train.py
with open('pretrained_model.json','w') as f:
    f.write(model.to_json())

and load you model using following command.

# from file test.py
reconstructed_model = keras.models.model_from_json(open('pretrained_model.json','r').read())
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  • I understood, but after loading the model, how can i test and run this pretrained model from an another python file? Commented Jan 20, 2021 at 19:57
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    The loaded_model object will behave the same way as any keras model. loaded_model.predict(x_test). I've edited the answer a bit I hope it's more clear. Commented Jan 20, 2021 at 20:00
  • thank you for your answer. When i try to load the model to the test file it gives an error ": 'str' object has no attribute 'decode'" Commented Jan 20, 2021 at 20:20
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    @KaceySmith can you attach the code for loading and the error statement? Commented Jan 20, 2021 at 20:30
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    @KaceySmith Perhaps try changing the save call to model.save('pretrained_model.h5', save_format='h5') ? Maybe it's saving it in the wrong format. Just a guess. It's strange you're getting an error here.
    – ICW
    Commented Jan 20, 2021 at 20:43

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