To import text, a PHP backend spiders a given URL and sanitizes the resulting HTML. Then that HTML is inserted into a
div#container in the interface, something like this:
I have run into some difficulties when the source HTML page is very long. Reading and inserting such a page into the interface's
DOM doesn't seem to cause problems (though it takes a while).
But running a word frequency algorithm over the spidered content is very slow if the page is long. If the page is approaches 100K words, say, it will pretty much bring things to a grinding halt.
So, I see a few options:
- Change the PHP spider so that it will truncate the source document or subdivide it into multiple documents
- Change the word frequency algorithm so that it's less exact, and samples the word distribution rather than recording it completely
- Try out this new-fangled Web Worker thing to see if I can distribute the calculation across multiple background processes.
It would appear to me that (3) is just the word of thing that Web Workers is designed to do. I'm imagining splitting the spidered content into chunks, and then assigning one Web Worker to each chunk. The word frequency profile of each chunk can be returned from the Web Worker, and then summed up and rendered to the chart.
Before I attempt this, I was hoping I could get a sanity check from other folks here who may have worked with Web Workers before. For one thing, I'm wondering if splitting up the contents of
div#container efficiently will be an issue -- I suppose it would involve some sort of traversal through the DOM tree under