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I am trying to do data augmentation on 2018 Data Science Bowl previous competition on Kaggle. I am trying this code:

## Data augmentation
# Creating the training Image and Mask generator
image_datagen = image.ImageDataGenerator(shear_range=0.5, rotation_range=50, zoom_range=0.2, width_shift_range=0.2, height_shift_range=0.2, fill_mode='reflect')
mask_datagen = image.ImageDataGenerator(shear_range=0.5, rotation_range=50, zoom_range=0.2, width_shift_range=0.2, height_shift_range=0.2, fill_mode='reflect')

# Keep the same seed for image and mask generators so they fit together
image_datagen.fit(X_train[:int(X_train.shape[0]*0.9)], augment=True, seed=42)
mask_datagen.fit(Y_train[:int(Y_train.shape[0]*0.9)], augment=True, seed=42)

x=image_datagen.flow(X_train[:int(X_train.shape[0]*0.9)],batch_size=BATCH_SIZE,shuffle=True, seed=42)
y=mask_datagen.flow(Y_train[:int(Y_train.shape[0]*0.9)],batch_size=BATCH_SIZE,shuffle=True, seed=seed)



# Creating the validation Image and Mask generator
image_datagen_val = image.ImageDataGenerator()
mask_datagen_val = image.ImageDataGenerator()

image_datagen_val.fit(X_train[int(X_train.shape[0]*0.9):], augment=True, seed=seed)
mask_datagen_val.fit(Y_train[int(Y_train.shape[0]*0.9):], augment=True, seed=seed)

x_val=image_datagen_val.flow(X_train[int(X_train.shape[0]*0.9):],batch_size=BATCH_SIZE,shuffle=True, seed=seed)
y_val=mask_datagen_val.flow(Y_train[int(Y_train.shape[0]*0.9):],batch_size=BATCH_SIZE,shuffle=True, seed=seed)

This is the error message:

---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-126-6b608552652e> in <module>
      5 
      6 # Keep the same seed for image and mask generators so they fit together
----> 7 image_datagen.fit(X_train[:int(X_train.shape[0]*0.9)], augment=True, seed=42)
      8 mask_datagen.fit(Y_train[:int(Y_train.shape[0]*0.9)], augment=True, seed=42)
      9 

~\Anaconda3\lib\site-packages\keras_preprocessing\image\image_data_generator.py in fit(self, x, augment, rounds, seed)
    941 
    942         if seed is not None:
--> 943             np.random.seed(seed)
    944 
    945         x = np.copy(x)

TypeError: 'int' object is not callable

The error as I understood is in the seed parameter in image_datagen.fit. The error message shows some internal problem in the fit code, as far as I'm concerned. I don't understand why.

I have explored other similar questions but I found none of them is suitable for my issue.

These are the solutions that I've read:

Getting TypeError: 'int' object is not callable

Python "int object is not callable"

class method TypeError "Int object not callable"

5
  • 7
    Apparently you assigned something to np.random.seed at some point before this. Don't do that. That's not how you use np.random.seed. Commented Nov 13, 2019 at 17:21
  • 1
    I've had issues before with calculating a slice value to create the slice start:end before. If you use assign the stop point of the slice to a variable before calling do you get the same error?
    – mgrollins
    Commented Nov 13, 2019 at 17:23
  • 2
    @mgrollins , I face the same error still. user2357112 is right. Thank you both
    – Noussa
    Commented Nov 13, 2019 at 17:26
  • 4
    At some point in your code, you did np.random.seed = 10 (10 is just an example, could be any other number). Remove that line, restart your kernel and try again now with np.random.seed(10)
    – rafaelc
    Commented Nov 13, 2019 at 17:26
  • Thanks for the update @Noussa! Good luck!
    – mgrollins
    Commented Nov 13, 2019 at 17:38

2 Answers 2

21

Make sure you not assign np.random.seed to some integer somewhere in your script

Like this:

np.random.seed = 42
1
  • Awesome! You must have done this and figured it out yourself after a long time!
    – youkaichao
    Commented May 21, 2020 at 10:32
4

You have initialized the seed value like this:

np.random.seed = 42

instead try this:

np.random.seed(42)

and run the full code again

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