Обсуждение: GSOC 2018 Project - A New Sorting Routine
Hello, Hackers!
I am working on my project in Google Summer of Code 2018. In this project, I am trying to improve the in-memory sorting routine in PostgreSQL. Now I am very excited to share my progress with you guys.
Originally, PostgreSQL is using the QuickSort implemented by J. L. Bentley and M. D. McIlroy in "Engineering a sort function" with some modifications. This sorting routine is very fast, yet may fall to O(n^2) time complexity in the worst case scenario. We are trying to find faster sorting algorithms with guaranteed O(nlogn) time complexity.
In this patch, I
- Use IntroSort to implement pg_qsort. IntroSort is a hybrid sorting algorithm. It uses Quicksort most of the time, but switch to insertion sort when the array is small and heapsort when the recursion exceeds depth limit.
- Only check if the array is preordered once on the whole array to get better overall performance. Previously the sorting routine checks if the array is preordered on every recursion.
After some performance test, I find the new sorting routine
- Slightly faster on sorting random arrays.
- Much faster on worst case scenario since it has O(nlogn) worst case complexity.
- Has nearly the same performance on mostly sorted arrays.
I use both standalone tests and pgbench to show the result. A more detailed report is in the attachment, along with the patch and some scripts to reproduce the result.
Notice: this patch may fail a test case in ‘make check’ because QuickSort and HeapSort are unstable. The two sorting routines may give different results if multiple entries in the array have the same key value.
Generally speaking, I think the new sorting routine seems to be an improvement in many ways. Please let me know if you have any thoughts or suggestions.
Regards,
Kefan Yang
Вложения
Hi Kefan, On 07/10/2018 11:02 PM, Kefan Yang wrote: > Hello, Hackers! > > I am working on my project in Google Summer of Code 2018 > <https://wiki.postgresql.org/wiki/GSoC_2018#Sorting_algorithms_benchmark_and_implementation_.282018.29>. > In this project, I am trying to improve the in-memory sorting routine in > PostgreSQL. Now I am very excited to share my progress with you guys. > > Originally, PostgreSQL is using the QuickSort implemented by J. L. > Bentley and M. D. McIlroy in "Engineering a sort function" with some > modifications. This sorting routine is very fast, yet may fall to O(n^2) > time complexity in the worst case scenario. We are trying to find faster > sorting algorithms with guaranteed O(nlogn) time complexity. > Time complexity is nice, but it merely estimates the number of comparisons needed by the sort algorithm. It entirely ignores other factors that are quite important - behavior with caches, for example. And quicksort works really well in this regard, I think. The worst-case complexity may be an issue, but we're already dealing with it by using median-of-three (actually, median-of-nine, IIRC) in pg_qsort. Hitting the worst-case accidentally is possible, but it should be quite unlikely. It's still deterministic so an adversary might construct a data set triggering it and use it for a DDoS, but if that was a real issue in practice - I assume we'd already hear about it. But even if it was, I guess the easiest way to deal with it would be to randomize the selection of pivots. In other words, replacing quicksort with an algorithm that is slower on average but has better worst-case behavior is unlikely to be accepted with joy, when the worst case is unlikely / bordering with impossible. > In this patch, I > > 1. Use IntroSort to implement pg_qsort. IntroSort is a hybrid sorting > algorithm. It uses Quicksort most of the time, but switch to > insertion sort when the array is small and heapsort when the > recursion exceeds depth limit. > 2. Only check if the array is preordered once on the whole array to get > better overall performance. Previously the sorting routine checks if > the array is preordered on every recursion. > > After some performance test, I find the new sorting routine > > 1. Slightly faster on sorting random arrays. > 2. Much faster on worst case scenario since it has O(nlogn) worst case > complexity. > 3. Has nearly the same performance on mostly sorted arrays. > > I use both standalone tests and pgbench to show the result. A more > detailed report is in the attachment, along with the patch and some > scripts to reproduce the result. > I find those results rather unconvincing. First of all, testing this on t2.micro is *insane* considering that this instance type is subject to throttling (depending on CPU credits). I don't know if this happened to be an issue during your tests, of course. Furthermore, the instance only has 1 virtual core, so there's likely a lot of noise due to other tasks (kernel of whatever needs to run). Secondly, I see the PDF includes results for various data set types (random, reversed, mostly random, ...) but the archive you provided only includes the random + killer cases. And finally, I see the PDF reports "CPU clocks" but I'm not sure what that actually is? Is that elapsed time in milliseconds or something else? So I've done a bit of benchmarking by running the battery of tests I've previously used for sort-related patches, and those results seem much less optimistic. I've done this on two different x86 machines (one with an old i5-2500K CPU, the other one with rather new e5-2620v4). Full results and scripts are available at [1] and [2], a summary of the results is attached here. Each spreadsheet has a couple of "comparison N" sheets, where N is the number of rows on the test. The last set of columns is comparison to unpatched master, where values below 100% mean "faster than master" and above 100% "slower than master". On the (quite old) i5-2500k CPU, there's pretty much no difference between master with and without the patch. On the (much newer) e5-2620v4 system, the results seem somewhat more variable - ~10% regressions on CREATE INDEX cases, ~5% gains on the other cases, for the smallest data set (10k rows). But as the data set grows, the regressions pretty clearly prevail. Not great, I guess :-( I don't want to discourage you from working on sorting, and I'm sure significant improvements in this area are possible (and needed). But my guess is that those optimizations will happen at higher level, not by tweaking the low-level algorithm. regards [1] https://bitbucket.org/tvondra/sort-intro-sort-i5/src/master/ [2] https://bitbucket.org/tvondra/sort-intro-sort/src/master/ -- Tomas Vondra http://www.2ndQuadrant.com PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
Вложения
From: Kefan Yang <starordust@gmail.com>
Date: 2018-07-13 15:02 GMT-07:00
Subject: Re: GSOC 2018 Project - A New Sorting Routine
To: Tomas Vondra <tomas.vondra@2ndquadrant.com>
Hey Tomas,
Thanks for your reply!
First I’d like to make some clarification about my test result. First of all, testing this on t2.micro is *insane* considering that this
instance type is subject to throttling (depending on CPU credits). I
don't know if this happened to be an issue during your tests, of course.
Furthermore, the instance only has 1 virtual core, so there's likely a
lot of noise due to other tasks (kernel of whatever needs to run).
Secondly, I see the PDF includes results for various data set types
(random, reversed, mostly random, ...) but the archive you provided only
includes the random + killer cases.
And finally, I see the PDF reports "CPU clocks" but I'm not sure what
that actually is? Is that elapsed time in milliseconds or something else?
But even if it was, I guess the easiest way to deal with it would be to
randomize the selection of pivots.
Hi Kefan,
On 07/10/2018 11:02 PM, Kefan Yang wrote:
> Hello, Hackers!
>
> I am working on my project in Google Summer of Code 2018
> <https://wiki.postgresql.org/wiki/GSoC_2018#Sorting_algorith ms_benchmark_and_implementatio n_.282018.29>.
> In this project, I am trying to improve the in-memory sorting routine in
> PostgreSQL. Now I am very excited to share my progress with you guys.
>
> Originally, PostgreSQL is using the QuickSort implemented by J. L.
> Bentley and M. D. McIlroy in "Engineering a sort function" with some
> modifications. This sorting routine is very fast, yet may fall to O(n^2)
> time complexity in the worst case scenario. We are trying to find faster
> sorting algorithms with guaranteed O(nlogn) time complexity.
>
Time complexity is nice, but it merely estimates the number of
comparisons needed by the sort algorithm. It entirely ignores other
factors that are quite important - behavior with caches, for example.
And quicksort works really well in this regard, I think.
The worst-case complexity may be an issue, but we're already dealing
with it by using median-of-three (actually, median-of-nine, IIRC) in
pg_qsort. Hitting the worst-case accidentally is possible, but it should
be quite unlikely. It's still deterministic so an adversary might
construct a data set triggering it and use it for a DDoS, but if that
was a real issue in practice - I assume we'd already hear about it. But
even if it was, I guess the easiest way to deal with it would be to
randomize the selection of pivots.
In other words, replacing quicksort with an algorithm that is slower on
average but has better worst-case behavior is unlikely to be accepted
with joy, when the worst case is unlikely / bordering with impossible.
> In this patch, I
>
> 1. Use IntroSort to implement pg_qsort. IntroSort is a hybrid sorting
> algorithm. It uses Quicksort most of the time, but switch to
> insertion sort when the array is small and heapsort when the
> recursion exceeds depth limit.
> 2. Only check if the array is preordered once on the whole array to get
> better overall performance. Previously the sorting routine checks if
> the array is preordered on every recursion.
>
> After some performance test, I find the new sorting routine
>
> 1. Slightly faster on sorting random arrays.
> 2. Much faster on worst case scenario since it has O(nlogn) worst case
> complexity.
> 3. Has nearly the same performance on mostly sorted arrays.
>
> I use both standalone tests and pgbench to show the result. A more
> detailed report is in the attachment, along with the patch and some
> scripts to reproduce the result.
>
I find those results rather unconvincing.
First of all, testing this on t2.micro is *insane* considering that this
instance type is subject to throttling (depending on CPU credits). I
don't know if this happened to be an issue during your tests, of course.
Furthermore, the instance only has 1 virtual core, so there's likely a
lot of noise due to other tasks (kernel of whatever needs to run).
Secondly, I see the PDF includes results for various data set types
(random, reversed, mostly random, ...) but the archive you provided only
includes the random + killer cases.
And finally, I see the PDF reports "CPU clocks" but I'm not sure what
that actually is? Is that elapsed time in milliseconds or something else?
So I've done a bit of benchmarking by running the battery of tests I've
previously used for sort-related patches, and those results seem much
less optimistic. I've done this on two different x86 machines (one with
an old i5-2500K CPU, the other one with rather new e5-2620v4). Full
results and scripts are available at [1] and [2], a summary of the
results is attached here.
Each spreadsheet has a couple of "comparison N" sheets, where N is the
number of rows on the test. The last set of columns is comparison to
unpatched master, where values below 100% mean "faster than master" and
above 100% "slower than master".
On the (quite old) i5-2500k CPU, there's pretty much no difference
between master with and without the patch.
On the (much newer) e5-2620v4 system, the results seem somewhat more
variable - ~10% regressions on CREATE INDEX cases, ~5% gains on the
other cases, for the smallest data set (10k rows). But as the data set
grows, the regressions pretty clearly prevail. Not great, I guess :-(
I don't want to discourage you from working on sorting, and I'm sure
significant improvements in this area are possible (and needed). But my
guess is that those optimizations will happen at higher level, not by
tweaking the low-level algorithm.
regards
[1] https://bitbucket.org/tvondra/sort-intro-sort-i5/src/master/
[2] https://bitbucket.org/tvondra/sort-intro-sort/src/master/
--
Tomas Vondra http://www.2ndQuadrant.com
PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
On Fri, Jul 13, 2018 at 3:04 PM, Kefan Yang <starordust@gmail.com> wrote: > 1. Slow on CREATE INDEX cases. > > I am still trying to figure out where the bottleneck is. Is the data pattern > in index creation very different from other cases? Also, pg_qsort has > 10%-20% advantage at creating index even on sorted data (faster CPU, N = > 1000000). This is very strange to me since the two sorting routines execute > exactly the same code when the input data is sorted. Yes. CREATE INDEX uses heap TID as a tie-breaker, so it's impossible for any two index tuples to compare as equal within tuplesort.c, even though they may be equal in other contexts. This is likely to defeat things like the Bentley-McIlroy optimization where equal keys are swapped, which is very effective in the event of many equal keys. (Could also be parallelism, though I suppose you probably accounted for that.) -- Peter Geoghegan
On 07/14/2018 12:04 AM, Kefan Yang wrote: > > ... > > And finally, I see the PDF reports "CPU clocks" but I'm not sure what > that actually is? Is that elapsed time in milliseconds or something > else? > > > Sorry for the confusion, but "CPU clocks" actually means CPU clock > ticks, which are units of time of a constant but system-specific length. > OK, how do you measure this metric? > After reading your test results, I think the main problems of intro sort are > > 1. Slow on CREATE INDEX cases. > > I am still trying to figure out where the bottleneck is. Is the data > pattern in index creation very different from other cases? Also, > pg_qsort has 10%-20% advantage at creating index even on sorted data > (faster CPU, N = 1000000). This is very strange to me since the two > sorting routines execute exactly the same code when the input data is > sorted. > > 2. Slow on faster CPU and large data set. > > The main difference is still on CREATE INDEX. But there are several > SELECT cases(faster CPU, line 179, 206, 377) where pg_qsort can have > more than 60% advantage, which is crazy. All these cases are dealing > with mostly sorted data. > > Personally, I would say intro sort is good as long as it has nearly the > same performance as pg_qsort on average cases because of the better > worst-case complexity. In fact, we can make the two sorting routines as > similar as we want by increasing the threshold that intro sort switches > to heap sort. Therefore, I think by no means could pg_qsort be 10%-20% > faster than a well-optimized intro sort because they execute the same > code most of the time. There must be something special about CREATE > INDEX test cases, and I am trying to figure it out. Also, I am > considering performing the preordered check on every recursion, like > what pg_qsort does, and see how it goes. > I don't know. All I have is the results I shared. I suggest you try reproducing the tests on your system - the scripts are in the git repositories. > Finally, you've mentioned > > But even if it was, I guess the easiest way to deal with it would be to > randomize the selection of pivots. > > > I am wondering if pg_sort with random pivot selecting could be faster > than intro sort. I've just done some simple tests, which shows that > intro sort in faster in all cases. But I guess it depends on how we > would implement the random number generation. > Unlikely. The pivot randomization is merely a way to defeat an adversary attempting to perform DoS by triggering sorts on a killer sequence. Randomization makes it much harder/impossible, because the killer sequence changes over time. It's not a regular performance optimization. regards -- Tomas Vondra http://www.2ndQuadrant.com PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
On Fri, Jul 13, 2018 at 6:03 PM, Tomas Vondra <tomas.vondra@2ndquadrant.com> wrote: > Unlikely. The pivot randomization is merely a way to defeat an adversary > attempting to perform DoS by triggering sorts on a killer sequence. > Randomization makes it much harder/impossible, because the killer > sequence changes over time. It's not a regular performance optimization. +1. The importance of the quadratic worst case for an industrial strength quicksort seems to often be overstated. Robert Sedgewick's Algorithms book has *excellent* analysis of quicksort's worst case, which might be worth a read. -- Peter Geoghegan
On 07/14/2018 12:10 AM, Peter Geoghegan wrote: > On Fri, Jul 13, 2018 at 3:04 PM, Kefan Yang <starordust@gmail.com> wrote: >> 1. Slow on CREATE INDEX cases. >> >> I am still trying to figure out where the bottleneck is. Is the data pattern >> in index creation very different from other cases? Also, pg_qsort has >> 10%-20% advantage at creating index even on sorted data (faster CPU, N = >> 1000000). This is very strange to me since the two sorting routines execute >> exactly the same code when the input data is sorted. > > Yes. CREATE INDEX uses heap TID as a tie-breaker, so it's impossible > for any two index tuples to compare as equal within tuplesort.c, even > though they may be equal in other contexts. This is likely to defeat > things like the Bentley-McIlroy optimization where equal keys are > swapped, which is very effective in the event of many equal keys. > > (Could also be parallelism, though I suppose you probably accounted for that.) > Hmmm. Those scripts are older than max_parallel_maintenance_workers, so were only setting the regular max_parallel_workers_per_gather GUCs. OTOH these tests were done on fairly small data sets, starting from 10k rows and the 10-20% regression is clearly visible for all scales (we don't use parallel CREATE INDEX for tiny tables, right?). And it's not visible on the i5 CPU at all, which would be a bit strange if it's parallelism-related. So I doubt it's this, but I've tweaked the scripts to also set this GUC and restarted the tests on both machines. Let's see what that does. regards -- Tomas Vondra http://www.2ndQuadrant.com PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
15 июля 2018 г., в 1:20, Tomas Vondra <tomas.vondra@2ndquadrant.com> написал(а):
So I doubt it's this, but I've tweaked the scripts to also set this GUC
and restarted the tests on both machines. Let's see what that does.
Hey Tomas!
I am trying to reproduce the results on my machine. Could you please share the script to generate .ods files?
Regards,
Kefan
From: Tomas Vondra
Sent: July 18, 2018 2:05 AM
To: Andrey Borodin
Cc: Peter Geoghegan; Kefan Yang; PostgreSQL Hackers
Subject: Re: GSOC 2018 Project - A New Sorting Routine
On 07/18/2018 07:06 AM, Andrey Borodin wrote:
> Hi, Tomas!
>
>> 15 июля 2018 г., в 1:20, Tomas Vondra <tomas.vondra@2ndquadrant.com
>> <mailto:tomas.vondra@2ndquadrant.com>> написал(а):
>>
>> So I doubt it's this, but I've tweaked the scripts to also set this GUC
>> and restarted the tests on both machines. Let's see what that does.
>
> Do you observe any different results?
>
It did change the CREATE INDEX results, depending on the scale. The full
data is available at [1] and [2], attached is a spreadsheet summary from
the Xeon box.
For the largest scale (1M rows) the regressions for CREATE INDEX queries
mostly disappeared. For 10k rows it still affects CREATE INDEX with a
text column, and the 100k case behaves just like before (so significant
regressions for CREATE INDEX).
I don't have time to investigate this further at the moment, but I'm
still of the opinion that there's little to gain by replacing our
current sort algorithm with this.
[1] https://bitbucket.org/tvondra/sort-intro-sort-xeon/src/master/
[2] https://bitbucket.org/tvondra/sort-intro-sort-i5/src/master/
regards
--
Tomas Vondra http://www.2ndQuadrant.com
PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
I don't have any script for that - load the files into a spreadsheet, create pivot tables and you're done. regards On 07/18/2018 11:13 PM, Kefan Yang wrote: > Hey Tomas! > > > > I am trying to reproduce the results on my machine. Could you please > share the script to generate .ods files? > > > > Regards, > > Kefan > > > > *From: *Tomas Vondra <mailto:tomas.vondra@2ndquadrant.com> > *Sent: *July 18, 2018 2:05 AM > *To: *Andrey Borodin <mailto:x4mmm@yandex-team.ru> > *Cc: *Peter Geoghegan <mailto:pg@bowt.ie>; Kefan Yang > <mailto:starordust@gmail.com>; PostgreSQL Hackers > <mailto:pgsql-hackers@lists.postgresql.org> > *Subject: *Re: GSOC 2018 Project - A New Sorting Routine > > > > > > > > On 07/18/2018 07:06 AM, Andrey Borodin wrote: > >> Hi, Tomas! > >> > >>> 15 июля 2018 г., в 1:20, Tomas Vondra <tomas.vondra@2ndquadrant.com > >>> <mailto:tomas.vondra@2ndquadrant.com>> написал(а): > >>> > >>> So I doubt it's this, but I've tweaked the scripts to also set this GUC > >>> and restarted the tests on both machines. Let's see what that does. > >> > >> Do you observe any different results? > >> > > > > It did change the CREATE INDEX results, depending on the scale. The full > > data is available at [1] and [2], attached is a spreadsheet summary from > > the Xeon box. > > > > For the largest scale (1M rows) the regressions for CREATE INDEX queries > > mostly disappeared. For 10k rows it still affects CREATE INDEX with a > > text column, and the 100k case behaves just like before (so significant > > regressions for CREATE INDEX). > > > > I don't have time to investigate this further at the moment, but I'm > > still of the opinion that there's little to gain by replacing our > > current sort algorithm with this. > > > > > > [1] https://bitbucket.org/tvondra/sort-intro-sort-xeon/src/master/ > > [2] https://bitbucket.org/tvondra/sort-intro-sort-i5/src/master/ > > > > regards > > > > -- > > Tomas Vondra http://www.2ndQuadrant.com > > PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services > > > -- Tomas Vondra http://www.2ndQuadrant.com PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
On 2018-Jul-18, Tomas Vondra wrote: > I don't have any script for that - load the files into a spreadsheet, > create pivot tables and you're done. What!? You don't use psql's \crosstabview !? ... walks away disappointed ... -- Álvaro Herrera https://www.2ndQuadrant.com/ PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
Hi Tomas!
I did a few tests on my own Linux machine, but the problem is that my resources on AWS(CPU, RAM and even Disk space) are very limited. I considered establishing virtual machine on my own PC but the performance is even worse.
My original patch has two main optimizations: (1) switch to heap sort when depth limit exceeded (2) check whether the array is presorted only once at the beginning. Now I want to test these optimizations separately. On AWS EC2 instance, regressions on CREATE INDEX cases seems to be less significant if we use (1) only, but I can only test up to 100000 records and 512MB memory using your scripts.
So would you mind re-running the tests using the two patches I provided in the attachment? That will be very helpful
Regards,
Kefan
From: Tomas Vondra
Sent: July 18, 2018 2:26 PM
To: Kefan Yang
Cc: Andrey Borodin; Peter Geoghegan; PostgreSQL Hackers
Subject: Re: GSOC 2018 Project - A New Sorting Routine
I don't have any script for that - load the files into a spreadsheet,
create pivot tables and you're done.
regards
On 07/18/2018 11:13 PM, Kefan Yang wrote:
> Hey Tomas!
>
>
>
> I am trying to reproduce the results on my machine. Could you please
> share the script to generate .ods files?
>
>
>
> Regards,
>
> Kefan
>
>
>
> *From: *Tomas Vondra <mailto:tomas.vondra@2ndquadrant.com>
> *Sent: *July 18, 2018 2:05 AM
> *To: *Andrey Borodin <mailto:x4mmm@yandex-team.ru>
> *Cc: *Peter Geoghegan <mailto:pg@bowt.ie>; Kefan Yang
> <mailto:starordust@gmail.com>; PostgreSQL Hackers
> <mailto:pgsql-hackers@lists.postgresql.org>
> *Subject: *Re: GSOC 2018 Project - A New Sorting Routine
>
>
>
>
>
>
>
> On 07/18/2018 07:06 AM, Andrey Borodin wrote:
>
>> Hi, Tomas!
>
>>
>
>>> 15 июля 2018 г., в 1:20, Tomas Vondra <tomas.vondra@2ndquadrant.com
>
>>> <mailto:tomas.vondra@2ndquadrant.com>> написал(а):
>
>>>
>
>>> So I doubt it's this, but I've tweaked the scripts to also set this GUC
>
>>> and restarted the tests on both machines. Let's see what that does.
>
>>
>
>> Do you observe any different results?
>
>>
>
>
>
> It did change the CREATE INDEX results, depending on the scale. The full
>
> data is available at [1] and [2], attached is a spreadsheet summary from
>
> the Xeon box.
>
>
>
> For the largest scale (1M rows) the regressions for CREATE INDEX queries
>
> mostly disappeared. For 10k rows it still affects CREATE INDEX with a
>
> text column, and the 100k case behaves just like before (so significant
>
> regressions for CREATE INDEX).
>
>
>
> I don't have time to investigate this further at the moment, but I'm
>
> still of the opinion that there's little to gain by replacing our
>
> current sort algorithm with this.
>
>
>
>
>
> [1] https://bitbucket.org/tvondra/sort-intro-sort-xeon/src/master/
>
> [2] https://bitbucket.org/tvondra/sort-intro-sort-i5/src/master/
>
>
>
> regards
>
>
>
> --
>
> Tomas Vondra http://www.2ndQuadrant.com
>
> PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
>
>
>
--
Tomas Vondra http://www.2ndQuadrant.com
PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
Вложения
On 07/24/2018 12:21 AM, Kefan Yang wrote: > Hi Tomas! > > I did a few tests on my own Linux machine, but the problem is that my > resources on AWS(CPU, RAM and even Disk space) are very limited. I > considered establishing virtual machine on my own PC but the performance > is even worse. > > My original patch has two main optimizations: (1) switch to heap sort > when depth limit exceeded (2) check whether the array is presorted only > once at the beginning. Now I want to test these optimizations > separately. On AWS EC2 instance, regressions on CREATE INDEX cases seems > to be less significant if we use (1) only, but I can only test up to > 100000 records and 512MB memory using your scripts. > > So would you mind re-running the tests using the two patches I provided > in the attachment? That will be very helpful > I can do that, but it'll have to wait a couple of days. I'm currently using the boxes for some other tests. regards -- Tomas Vondra http://www.2ndQuadrant.com PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
Hey Tomas!
Sorry to bother but it would be great if we can get the test results this week.
Regards,
Kefan
From: Tomas Vondra
Sent: July 24, 2018 8:16 AM
To: Kefan Yang
Cc: Andrey Borodin; Peter Geoghegan; alvherre@2ndquadrant.com; PostgreSQL Hackers
Subject: Re: GSOC 2018 Project - A New Sorting Routine
On 07/24/2018 12:21 AM, Kefan Yang wrote:
> Hi Tomas!
>
> I did a few tests on my own Linux machine, but the problem is that my
> resources on AWS(CPU, RAM and even Disk space) are very limited. I
> considered establishing virtual machine on my own PC but the performance
> is even worse.
>
> My original patch has two main optimizations: (1) switch to heap sort
> when depth limit exceeded (2) check whether the array is presorted only
> once at the beginning. Now I want to test these optimizations
> separately. On AWS EC2 instance, regressions on CREATE INDEX cases seems
> to be less significant if we use (1) only, but I can only test up to
> 100000 records and 512MB memory using your scripts.
>
> So would you mind re-running the tests using the two patches I provided
> in the attachment? That will be very helpful
>
I can do that, but it'll have to wait a couple of days. I'm currently
using the boxes for some other tests.
regards
--
Tomas Vondra http://www.2ndQuadrant.com
PostgreSQL Development, 24x7 Support, Remote DBA, Training & Services
Thanks for your time!
From: Tomas Vondra
Sent: August 1, 2018 6:30 AM
To: Kefan Yang
Cc: Andrey Borodin; Peter Geoghegan; alvherre@2ndquadrant.com; PostgreSQL Hackers
Subject: Re: GSOC 2018 Project - A New Sorting Routine
On 07/30/2018 11:21 PM, Kefan Yang wrote:
> Hey Tomas!
>
> Sorry to bother but it would be great if we can get the test results
> this week.
>
Attached are results from the i5 machine. I'm unable to rerun the tests
on the xeon box at the moment (which is IMHO the more interesting one).
Complete test data is available at
https://bitbucket.org/tvondra/sort-intro-sort-i5-2/src
regards
--
Tomas Vondra http://www.2ndQuadrant.com
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