In probability theory and statistical mechanics, a Gibbs state is an equilibrium probability distribution which remains invariant under future evolution of the system. For example, a stationary or steady-state distribution of a Markov chain, such as that achieved by running a Markov chain Monte Carlo iteration for a sufficiently long time, is a Gibbs state. In probability theory and statistical mechanics, a Gibbs state is an equilibrium probability distribution which remains invariant under future evolution of the system. For example, a stationary or steady-state distribution of a Markov chain, such as that achieved by running a Markov chain Monte Carlo iteration for a sufficiently long time, is a Gibbs state. Precisely, suppose L {displaystyle L} is a generator of evolutions for an initial state ρ 0 {displaystyle ho _{0}} , so that the state at any later time is given by ρ ( t ) = e L t [ ρ 0 ] {displaystyle ho (t)=e^{Lt}} . Then the condition for ρ ∞ {displaystyle ho _{infty }} to be a Gibbs state is In physics there may be several physically distinct Gibbs states in which a system may be trapped, particularly at lower temperatures. They are named after Josiah Willard Gibbs, for his work in determining equilibrium properties of statistical ensembles. Gibbs himself referred to this type of statistical ensemble as being in 'statistical equilibrium'.