From the apache Mahout website https://cwiki.apache.org/MAHOUT/latentdirichletallocation.html I am able to see the procedure to fit an LDA model and output the computed topic in the form of P("word""topic number"). However, there is no information on how the trained model can be applied on a test data to predict the topic distribution. Or should we write our own program to use the output of conditional probablities to find the topics over a test data set?

Please have a look at publication by 2009 Wallach et. al. titled 'Evaluation Methods for Topic Models' here. Have a look at section 4, it mentions three methods to calculate P(zw), one based on importance sampling and other two called 'Chibstyle estimator' and 'lefttoright estimator'. Mallet has implementation of lefttoright estimator method. 

