In this study, the trinucleotide composition, a 64-dimensional feature vector of the occurrence frequency of 64 trinucleotides in the DNA sequence, was utilized to model SVM for the prediction of CpG methylation degrees in humans. The model was evaluated by jackknife validation and the correlation coefficient (R) and root-mean-square error (RMSE) were 0.8223 and 0.2042, respectively. The proposed method was also used to predict methylation sites, the model was evaluated by jackknife validation and the Matthews correlation coefficient (MCC) and accuracy (ACC) were 0.6263 and 0.8133, respectively. The good results indicated that the proposed method was a useful tool for the investigation of DNA methylation prediction research.