We consider a version of the data augmentation algorithm of Tanner and Wong, which is a special case of the Gibbs sampler. Using ideas from Harris recurrence, we derive quantitative, a priori bounds on the number of iterations required to achieve convergence. Our analysis involves relating the Markov chain to an associated dynamical system.