Difference between model.evaluate and metrics.accuracy_score

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I am trying to evaluate CNN model using two different approaches:

1.

model.evaluate(test_data)

In this case I get 79% accuracy score: [1.2163524627685547, 0.7924528121948242]

2.

I want to get the actual prediction values and use scikit-learn metrics to get accuracy score:

test_prediction=model.predict(test_data)
test_prediction=np.argmax(test_prediction, axis=1)

y_test = np.concatenate([y_batch for X_batch, y_batch in test_data])

metrics.accuracy_score(test_prediction,y_test)

The accuracy score is 21% in this case.

Why is there difference and which way is more reliable?

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