This document summarizes a systematic literature review of research predicting student performance using machine learning techniques. The review examined studies from 2009 to 2021 that identified students at risk of dropping out. It found that various machine learning methods were used to understand challenges and predict performance. Most studies used data from university databases and online learning platforms. Machine learning was shown to effectively predict student risk levels and dropout rates, helping improve student outcomes.