This document discusses using machine learning algorithms to predict breast cancer from patient data and imaging results. It first provides background on breast cancer, noting it is the most commonly diagnosed cancer worldwide. The document then reviews prior works applying machine learning to breast cancer prediction, finding support vector machines achieved the highest accuracy. It describes the dataset used, from the University of Wisconsin, containing patient data and tumor characteristics. Finally, it explores the data and discusses implementing classification algorithms like logistic regression, support vector machines, random forests and neural networks to predict cancer type, finding logistic regression achieved the highest accuracy of 98.24%.