Atomistic modeling can provide insights into the design of novel catalysts in modern industries of chemistry, materials science, and biology. Classical force fields andab initiocalculations have been widely adopted in molecular simulations. How- ever, these methods suffer from the drawbacks of either low accuracy or high cost. Recently, the development of machine learning interatomic potentials (MLIPs) has become more and more popular as they can tackle the problems in question and can deliver rather accurate results at significantly lower computational cost. In this review, the atomistic modeling of catalytic systems with the aid of MLIPs is discussed, showcasing recently developed MLIP models and selected applications for the modeling of catalytic systems. We also highlight the best practices, and challenges for MLIPs and give an outlook for future works on MLIPs in the field of catalysis.