Markov chains (named after their creator, Andrey Markov) are systems which transition from one state to another based only upon their current state. They are memoryless processes which are semi-random, i.e. where each state change having an associated probability.
Due to their statical nature, Markov chains are suitable for simulating complex real-life processes where probabilities are well known. They are used in a wide variety of fields, with uses too in-depth to list here; an exhaustive list can be found on the associated Wikipedia page.
In programming, they are especially popular for manipulating human languages - Markov text generators are especially popular applications of Markov chains.