Re: Performance issues with large amounts of time-series data - Mailing list pgsql-performance

From Tom Lane
Subject Re: Performance issues with large amounts of time-series data
Date
Msg-id 18555.1251312734@sss.pgh.pa.us
Whole thread Raw
In response to Re: Performance issues with large amounts of time-series data  (Hrishikesh (हृषीकेश मेहेंदळे) <hashinclude@gmail.com>)
Responses Re: Performance issues with large amounts of time-series data  (Greg Stark <gsstark@mit.edu>)
List pgsql-performance
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<hashinclude@gmail.com>writes: 
> 2009/8/26 Tom Lane <tgl@sss.pgh.pa.us>
>> Do the data columns have to be bigint, or would int be enough to hold
>> the expected range?

> For the 300-sec tables I probably can drop it to an integer, but for
> 3600 and 86400 tables (1 hr, 1 day) will probably need to be BIGINTs.
> However, given that I'm on a 64-bit platform (sorry if I didn't
> mention it earlier), does it make that much of a difference?

Even more so.

> How does a float ("REAL") compare in terms of SUM()s ?

Casting to float or float8 is certainly a useful alternative if you
don't mind the potential for roundoff error.  On any non-ancient
platform those will be considerably faster than numeric.  BTW,
I think that 8.4 might be noticeably faster than 8.3 for summing
floats, because of the switch to pass-by-value for them.

            regards, tom lane

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