The document provides a review of machine learning interpretability methods. It begins with an introduction to explainable artificial intelligence and a discussion of key concepts like interpretability and explainability. It then presents a taxonomy of interpretability methods that are divided into four main categories: methods for explaining black-box models, creating white-box models, promoting fairness, and analyzing model sensitivity. Specific machine learning interpretability techniques are summarized within each category.