I have a large csv file which contains over 30million rows. I need to load this file on a daily basis and identify which of the rows have changed. Unfortunately there is no unique key field but it's possible to use four of the fields to make it unique. Once I have identified the changed rows I will then want to export the data. I have tried using a traditional SQL Server solution but the performance is so slow it's not going to work. Therefore I have been looking at Mongodb - this has managed to import the file in about 20 minutes (which is fine). Now I don't have any experience using Monogdb and more importantly knowing best practices. So, my idea is the following:
As a one off - Import data into a collection using the mongoimport.
Copy all of the unique id's generated by mongo and put them in a separate collection.
Import new data into the existing collection using upsert fields which should create a new id for each new and changed row.
Compare the 'copy' to the new collection to list out all the changed rows.
Export changed data.
This to me will work but I am hoping there is a much better way to tackle this problem.