Abstract
The selection of the best employees is a long and complicated process. A person's decision is bad because the employee selection process is based on subjectivity. Therefore, we need a decision support system for the employee selection process. This decision support system allows to determine the value of the calculation of all criteria. The method used is Simple Additive Weighting (SAW). This method is a method for finding the weighted sum. In the case study of determining the best employees at PT Bank Digital BCA, there are four criteria, namely attendance, performance, assignment discipline and approval. Each alternative (employee) will have these criteria. In this case, to determine the best employee, we add the weight of the performance score for each alternative to all the attributes. A larger value will indicate that the alternative is more selected. In this case, the SAW method can determine the best employee based on the highest score. Previously, PT Bank Digital BCA did not use the specified method and criteria, it was also uncertain, after being tested with the established method and determined criteria, the results were very good and appropriate. Thus this system is able to handle the calculation of the best employee assessment at PT Bank Digital BCA so that there will be no difficulty in determining the best employee.
References
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