Abstract:We exhibit examples of high-dimensional unimodal posterior distributions arising in non-linear regression models with Gaussian process priors for which worst-case (`cold start') initialised MCMC methods typically take an exponential run-time to enter the regions where the bulk of the posterior measure concentrates. The counter-examples hold for general MCMC schemes based on gradient or random walk steps, and the theory is illustrated for Metropolis-Hastings adjusted methods such as pCN and MALA.