Missing data imputation forms the first critical step of many data,analysis pipelines. The challenge is greatest for mixed data sets, including real, Boolean, and ordinal data, where standard techniques,for imputation fail basic sanity checks: for example, the imputed,values may not follow the same distributions as the data. This paper,proposes a new semiparametric algorithm to impute missing values, with no tuning parameters. The algorithm models mixed data,as a Gaussian copula. This model can fit arbitrary marginals for,continuous variables and can handle ordinal variables with many,levels, including Boolean variables as a special case. We develop an,efficient approximate EM algorithm to estimate copula parameters,from incomplete mixed data. The resulting model reveals the statistical associations among variables. Experimental results on several,synthetic and real datasets show the superiority of our proposed,algorithm to state-of-the-art imputation algorithms for mixed data.