Bank Loan endorsement is a vital process for banking associations. The framework endorsed or reject the advance applications. Recuperation of credit is a significant contributing boundary in the fiscal summaries of a bank. Foreseeing the chance of re-installment of credit by the customer is extremely challenging. As of late numerous analysts dealt with advance endorsement forecast frameworks. In the System Machine Learning (ML) strategies are exceptionally valuable in anticipating results for enormous measure of information. In this paper two machine learning algorithms, Support Vector Machine (SVM) and Random Forest (RF) are applied to predict the loan approval of customers.