We present a robust membership inference attack (RMIA) that amplifies the distinction between population data and the training data on any target model, by effectively leveraging both reference models and reference data in our likelihood ratio test. Our algorithm exhibits superior test power (true-positive rate) when compared to prior methods, even at extremely low false-positive error rates (as low as 0). Also, under computation constraints, where only a limited number of reference models (as few as 1) are available, our method performs exceptionally well, unlike some prior attacks that approach random guessing in such scenarios. Our method lays the groundwork for cost-effective and practical yet powerful and robust privacy risk analysis of machine learning algorithms.