It's not entirely clear what your goals are, or what your data looks like. (A list of wordcounts per passage? Something else?)
For starters, then, I would recommend separating the data collection/ preparation from the analysis. In particular, you'll want a package with a pre-defined clustering implementation that makes exploratory analysis feasible, and the straight-out code implementations are often a little too bare bones. Consider using something with integrated visualization and data presentation capabilities to help you better understand the meaning of your clusters: predefined packages like R (statistics software), MATLAB, or Orange (python-based data mining suite) are all good choices.
Orange has a lot of really nice GUI options to control how clusters are selected (distance metric, iterations, etc), and it also provides a few different ways to explore which clusters are most useful. However, at least as of a year ago, my experience is that its implementation of k-means clustering was laughably slow on a midsize (800 MB) data set. Some of that will be due to the fact that python is inherently slower than other languages, but I suspect that there are other issues as well. Whatever you use, you'll need to be sure to look at the input file documentation carefully.