Points for optimization:
- Create named types, and use ADO.NET to read into named types, instead of using
DataTable, that will reduce some of the memory footprint.
- Only pull the records you actually need to work with (you don't often need to bring in over a million records, but we don't know your business logic)
Questions to clarify your original post:
- Do you have reasons why this won't scale in the future?
- How are you processing it that you're taking advantage of the
Parallel.ForEach? Provided that underlying system has the capacity for it, you will probably be just fine with the approach you have now. Consider also, that you should probably profile the actual performance instead of just guessing what's going to happen.
DataSet ds = new psqlWork().getDataSet(@"
SELECT * FROM z_sitemap_links
order by timestamp asc /*always order when skipping records so you get the same skips */
LIMIT 100000 /* using these two with variables you could skip so many records /*
OFFSET 100000 /* depending on what you're aiming for */
DataTable dt = ds.Tables;
Parallel.ForEach(dt.AsEnumerable(), dr =>
new Sitemap().runSitemap(dr.ToString(), counter);
And, if you can utilize something like this:
row_number() OVER (ORDER BY col1) AS i then you could skip the counter, as that would be provided for you as you select the rows coming back, but my postgres knowledge doesn't tell me if that will be 1..100000 everytime from the above code, or if it will be what you want, but the guys over at Database Administrators would know for sure. This means your code would become:
Parallel.ForEach(recordList, record =>
new Sitemap().runSitemap(record.FieldYouNeed, record.RowNumberFromDatabase);