Neural Network RMSE and Log Loss Error Calculation from Scratch

Neural Network RMSE and Log Loss Error Calculation from Scratch

This videos shows how to calculate the RMSE (regression) and LogLoss (classification) error metrics by hand. These are two commonly used error metrics for Keras.

This videos shows how to calculate the RMSE (regression) and LogLoss (classification) error metrics by hand. These are two commonly used error metrics for Keras.

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