Re: Performance Comparision

Otto Solares (solca@fisicc-ufm.edu)
Tue, 04 May 1999 13:03:08 -0600


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Andrea Arcangeli wrote:

> So could you try to apply this really unsafe patch ;) and then rerun HINT?

I will try it tonight, i have a new graphs, what i have to say here
is that the past benchmark was only using DOUBLE. Now i made a full
battery of benchmarks using all types, here the results:

Well, i use in the linux box pgcc (egcs with pentium opts :) and the freebsd
folks here are using egcs so results using the same compiler will differ a
little. In the integer tests linux loose in LONGLONG by a little, in the other
integer tests linux won nicely specially in INTEGER. In floating point
tests linux loose but now by a little! (i have to note here that this freebsd
folks upgrade their system to a new development release and this release
perform worse than the previous) but there are many differences in floating
point tests in favor for freebsd.

Linux is Stampede Linux with kernel 2.2.7 without any patches and FreeBSD
is 4.0-CURRENT.
In the floating point graph there exist a entry for the previous test and is
labeled *.prev (In the previous test i was using Red Hat Linux 2.2.6 and freebsd
guys 4.0-CURRENT but and older CVS snapshot).

Here the integer tests:

[Image]

And the floating point tests:

[Image]

Note that now DOUBLE.linux is real better than DOUBLE.linux.prev ? Kernel version
???
Well now i am using stampede linux and i think they are using the new glibc 2.1 ?
can be this ?
If you see in the last fall of the graphs linux perform better than freebsd in
swap.

Otto Solares

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Andrea Arcangeli wrote:

So could you try to apply this really unsafe patch ;) and then rerun HINT?
I will try it tonight, i have a new graphs, what i have to say here
is that the past benchmark was only using DOUBLE. Now i made a full
battery of benchmarks using all types, here the results:

Well, i use in the linux box pgcc (egcs with pentium opts :) and the freebsd
folks here are using egcs so results using the same compiler will differ a
little.  In the integer tests linux loose in LONGLONG by a little, in the other
integer tests linux won nicely specially in INTEGER. In floating point
tests linux loose but now by a little! (i have to note here that this freebsd
folks upgrade their system to a new development release and this release
perform worse than the previous) but there are many differences in floating
point tests in favor for freebsd.

Linux is Stampede Linux with kernel 2.2.7 without any patches and FreeBSD
is 4.0-CURRENT.
In the floating point graph there exist a entry for the previous test and is
labeled *.prev (In the previous test i was using Red Hat Linux 2.2.6 and freebsd
guys 4.0-CURRENT but and older CVS snapshot).

Here the integer tests:

And the floating point tests:

Note that now DOUBLE.linux is real better than DOUBLE.linux.prev ? Kernel version ???
Well now i am using stampede linux and i think they are using the new glibc 2.1 ? can be this ?
If you see in the last fall of the graphs linux perform better than freebsd in swap.

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