You might be asking for something more specific, but in general:
You build the decision tree with the training set, and you evaluate the performance of that tree using the test set. In other words, on the test data, you call a function usually named something like c*lassify*, passing in the newly-built tree and a data point (within your test set) you wish to classify.
This function returns the leaf (terminal) node from your tree to which that data point belongs--and assuming that the contents of that leaf is homogeneous (populated with data from a single class, not a mixture) then you have in essence assigned a class label to that data point. When you compare that class label assigned by the tree to the data point's actual class label, and repeat for all instances in your test set, you have a metric to evaluate the performance of your tree.
A rule of thumb: shuffle your data, then assign 90% to the training set and the other 10% to a test set.