'An immediate classic, this will be THE go to book for anyone interested in doing research in discrete probability and its applications in myriad fields. A perfect combination of breadth, covering all the major strands of the subject, and depth to prepare starting researchers with the tools to grasp the questions and techniques in the field.' Shankar Bhamidi, University of North Carolina, Chapel Hill
'The book has a wonderful collection of topics that are very useful for applications. The book has the same clear presentation and engaging style of the author's seminar talks. It will be a great addition to the libraries of researchers young and old.' Rick Durrett, Duke University
'This book is a must-read for anyone interested in discrete probability models. It is rigorous, concise, and well-written, and it covers the necessary tools to study advanced topics such as percolation, random graphs, and Markov random fields and even various applications in machine learning and data science. The author does an excellent job of explaining complex concepts in a clear and concise way, and he provides many helpful examples. I highly recommend this book to anyone who wants to learn more about discrete probability models.' Csaba Szepesvári, University of Alberta
'Modern Discrete Probability is essential reading for any graduate student in probability and fills an important gap in the graduate probability curricula. By focusing on the core underlying techniques, it gives a picture of their broad applicability across the field. At the same time readers will learn about percolation, random walks, random graphs and spin systems that make up the building blocks of so much of probability theory.' Allan Sly, Princeton University