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I have a query that is pulling information from one table. That table is rather large at 1.8 Million rows and growing by week. The query takes quite a while to run and is problematic when pulling multiple times. Is there any process that may speed up a query in a database with this many or more rows. I have another one with around 5 Million rows... The query is rather basic using a prompt to pull the rows relevant to the site number, and a prompt for between dates.

Arrival_ID criteria = [Select Arrival ID]
Week criteria = Between[Select week begin:] And [Select week end:]

Any help or direction pointing would be greatly appreciated.

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Ouch, Access. Big dataset too.. is there any opportunity to use a real database like SQL Server (even SQL Server Express)? I hate this kind of comment but feel compelled to make it on this occassion. – Kieren Johnstone Nov 30 '12 at 19:48
"Is there any process that may speed up a query in a database" Indexing. Even Access supports it. – ExactaBox Nov 30 '12 at 19:50
up vote 5 down vote accepted

Indexes on the columns Arrival_ID and Week might help.

Unless you're selecting a lot of columns from a very wide table, you should get fairly quick performance from Access on 1.8 million rows, as long as your indexes are selective.

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I agree with Kieren Johnstone - can you store the data in SQL and then use access to run the queries?

Do double check the indexes.

When you compact/repair - do it twice - make it a habit. The second time clears up any issues set aside from the first one.

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