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# write a function that compares the completion and prediction, separating each string by comma into their respective columns, then compare each column and return a dataframe with the results
def compare_completion_and_prediction(completion, prediction, verbose=False):
# if verbose is True, print the completion and prediction strings
if verbose:
print("Completion:", completion, f"type({type(completion)}):")
print("Prediction:", prediction, f"type({type(prediction)}):")
# split completion and prediction strings on comma character
completion = completion.split(',')
prediction = prediction.split(',')
# create a column that counts the number of matchs between completion and prediction
matches = [completion[i] == prediction[i] for i in range(len(completion))]
# create a json dictionary with the completion, prediction, matches, and num_correct fields
json_dict = {
"completion": completion,
"prediction": prediction,
"matches": matches,
"num_correct": sum(matches)
}
# return the json dictionary
return json_dict