We examine using a Support Vector Machine to predict secretory signal peptides. We predict signal peptides for both prokaryotic
and eukaryotic signal organisms. Signalling peptides versus non-signaling peptides as well as cleavage sites were predicted
from a sequence of amino acids. Two types of kernels (each corresponding to different metrics) were used: hamming distance,
a distance based upon the percent accepted mutation (PAM) score trained on the same signal peptide data.