Math Python = Love

Susan Sarandon
Susan SarandonOriginal
2024-12-07 03:41:11167browse

I recommende you, when creating a solution, think necessarily in context mathematical statement. Becouse of:

  1. It's easily save project boundaries, while you coding thought
  2. There're more opportunity for maneuver in space of programme

Math   Python = Love

Cross-entropy for AI help train a neural network in best practice each era. Often used different Math construction, like stochastic descent method.

Math   Python = Love

Weight coefficient map focus our characterictics neural network in a right way. For avoiding gross errors in the resulting values.

best_w = keras.callbacks.ModelCheckpoint('unet_best.h5', 
                                monitor='val_loss',
                                verbose=0,
                                save_best_only=True,
                                save_weights_only=True,
                                mode='auto',
                                period=1)

last_w = keras.callbacks.ModelCheckpoint('unet_last.h5',
                                monitor='val_loss',
                                verbose=0,
                                save_best_only=False,
                                save_weights_only=True,
                                mode='auto',
                                period=1)

callbacks = [best_w, last_w]

It's better to create already 2 lists: best and last weights of model. This will be useful when calculating the error value.

Finish result looks, like:

Math   Python = Love

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