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I have a single table in SQLite that essentially has the following:

id : integer (primary key)
name: text
timestamp: text
data1: integer
data2: integer
...
data6: integer

I need to filter by name and timestamp, so I have the (name, timestamp) index set up.

At 100,000,000 rows, SQLite crawls at querying. Understand the index reduces time complexity from O(n) to O(log n) but it still seems to be too slow. I prefer not to slice the data into multiple tables. Any suggestions?

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How unique is the combination of name and timestamp? –  Mark Johnson Sep 20 '10 at 3:23
1  
Can you show an example query? It's possible your query doesn't make use of your index. –  xscott Sep 20 '10 at 3:30
    
-1: as the arrow says "this question is unclear". With a definition of "slow" and sample query, `twould become "this question is useful" –  msw Sep 20 '10 at 4:12

3 Answers 3

Your timestamp should be numeric. Filtering on a text column will significantly slow your queries because of the way strings are compared.

And if you've not already done so, put indexes on any column that is sorted (ORDER BY) or filtered (WHERE, HAVING,JOIN ON, etc.).

And finally, the order in which you filter your data can have a big difference. Filtering by numeric timestamp and then name will usually be significantly faster than filtering by name and then numeric timestamp. Try changing the order of your expressions. For example, WHERE day = ?, month = ?, year = ? will typically be much faster than WHERE year = ?, month = ?, day = ?.

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SQLite has a built-in DATETIME format that uses integers to actually store the data behind the human-readable text representation... –  Jeff Widman Jan 12 at 3:24
    
But it's not a datatype (storage class), so you're still relying on the underlying datatype when doing any lookups. The original question was basically about performance tuning and in this case, I'd still suggest enforcing a NUMERIC datatype on timestamps. I'd like to know how this problem netted out in the end though. –  Andrew Jan 12 at 8:11

Are you sure your query is using the composite index (try EXPLAIN QUERY PLAN ...)? After a certain number of inserts, it may no longer be unique enough. Try reversing the order of your composite index (timestamp,name instead of name,timestamp). Generally the columns should be ordered by selectivity.

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For giggles, I created a sqlite3 database containing the schema of the OP containing 100'000'000 rows, 6GB unindexed database file using text datestamps.

With indexing, the database file doubled in size. With a pretty pedestrian desktop machine vintage 2008 (2GB RAM, 5k BogoMIPS) the query

select * from big where date = "2010-09-20 04:54:45.586836"; 

returned 10k rows in less than 8 seconds wall-clock time. I hope these numbers are useful for comparison.

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2  
Try using a numeric timestamp instead of a date string and see how fast it is. You should see a monster difference if the table is indexed correctly. SQLite is annoying in that it doesn't have a date or time datatype. –  Andrew Sep 26 '10 at 4:46

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