Looking at the pROC package I am a bit confused about response and predictor:

response: a factor, numeric or character vector of responses, typically encoded with 0 (controls) and 1 (cases). The object. Only two classes can be used in a ROC curve. If the vector contains more than two unique values, or if their order could be ambiguous, use levels to specify which values must be used as control and case value.

predictor: a numeric vector, containing the value of each observation. An ordered factor is coerced to a numeric.

For example if I use:

auc(response, predictor)

Is response the truth and predictor what my model produces?

My 'truth' is either 0 or 1 and the predictor vector contains probabilities.