From: SeongJae Park <[email protected]>
On Wed, 16 Dec 2020 10:42:08 +0100 SeongJae Park <[email protected]> wrote:
> From: SeongJae Park <[email protected]>
>
> NOTE: This is only an RFC for future features of DAMON patchset[1], which is
> not merged in the mainline yet. The aim of this RFC is to show how DAMON would
> be evolved once it is merged in. So, if you have some interest in this RFC,
> please consider reviewing the DAMON patchset, either.
>
[...]
TL; DR: I confirmed DAMON's physical address monitoring works effectively by
implementing a proactive reclamation system using DAMON and evaluating it with
24 realistic workloads.
DAMON's overhead control logics, namely 'region-based sampling' and 'adaptive
regions adjustment', are based on an assumption. That is, there would be a
number of memory regions that pages in each region having similar access
frequency. In other words, a sort of spatial locality.
This made some people concerned about the accuracy of physical address space
monitoring. In detail, because any process in the system can make access to
the physical address space, the pattern would be more chaotic and randomic than
virtual address spaces. As a result, the spatial locality assumption is broken
and DAMON will give only poor quality monitoring results.
I'd argue such case will be very rare in real. After all, the assumption-based
logics are only optional[1]. I also confirmed the physical address space
monitoring results are accurate enough for basic profiling, with real
production systems[2] and my test workloads.
In the past, I shown the effectiveness of the DAMON's virtual address space
monitoring with the monitoring-based proactive reclamation[3]. I call the
implementation 'prcl'. To show the effectiveness of the DAMON's physical
address space monitoring and convince some more people, I did same work again,
for the physical address space monitoring. That is, I implemented a physical
address space monitoring-based version of the proactive reclamation ('pprcl')
and evaluated it's performance with 24 realistic workloads. The setup is
almost same to the previously shared one[3].
In detail, 'pprcl' finds memory regions in physical address space that didn't
accessed for >=5 seconds and reclaim those. 'prcl' is similar but finds the
regions from the virtual address space of the target workload, and the
threshold time is tuned for each workload, so that it wouldn't incur too high
runtime overhead.
Reduction of Workload's Residential Sets
-----------------------------------------
Below shows the averaged RSS of each workload on the systems.
rss.avg orig prcl (overhead) pprcl (overhead)
parsec3/blackscholes 588658.400 255710.400 (-56.56) 291570.800 (-50.47)
parsec3/bodytrack 32286.600 6714.200 (-79.20) 29023.200 (-10.11)
parsec3/canneal 841353.400 841823.600 (0.06) 841721.800 (0.04)
parsec3/dedup 1163860.000 561526.200 (-51.75) 922990.000 (-20.70)
parsec3/facesim 311657.800 191045.600 (-38.70) 188238.200 (-39.60)
parsec3/fluidanimate 531832.000 415361.600 (-21.90) 418925.800 (-21.23)
parsec3/freqmine 552641.400 37270.000 (-93.26) 66849.800 (-87.90)
parsec3/raytrace 885486.400 296335.800 (-66.53) 360111.000 (-59.33)
parsec3/streamcluster 110838.200 109961.000 (-0.79) 108288.600 (-2.30)
parsec3/swaptions 5697.600 3575.200 (-37.25) 1982.600 (-65.20)
parsec3/vips 31849.200 27923.400 (-12.33) 29194.000 (-8.34)
parsec3/x264 81749.800 81936.600 (0.23) 80098.600 (-2.02)
splash2x/barnes 1217412.400 681704.000 (-44.00) 825071.200 (-32.23)
splash2x/fft 10055745.800 8948474.600 (-11.01) 9049028.600 (-10.01)
splash2x/lu_cb 511975.400 338240.000 (-33.93) 343283.200 (-32.95)
splash2x/lu_ncb 511459.000 406830.400 (-20.46) 392444.400 (-23.27)
splash2x/ocean_cp 3384642.800 3413014.800 (0.84) 3377972.000 (-0.20)
splash2x/ocean_ncp 3943689.400 3950712.800 (0.18) 3896549.800 (-1.20)
splash2x/radiosity 1472601.000 96327.400 (-93.46) 245859.800 (-83.30)
splash2x/radix 2419770.000 2467029.400 (1.95) 2416935.600 (-0.12)
splash2x/raytrace 23297.600 5559.200 (-76.14) 12799.000 (-45.06)
splash2x/volrend 44117.400 16930.400 (-61.62) 20800.400 (-52.85)
splash2x/water_nsquared 29403.200 13191.400 (-55.14) 25244.400 (-14.14)
splash2x/water_spatial 663455.600 258882.000 (-60.98) 479496.000 (-27.73)
total 29415600.000 23426082.000 (-20.36) 24424396.000 (-16.97)
average 1225650.000 976087.000 (-37.99) 1017680.000 (-28.76)
On average, 'prcl' saved 37.99% of memory, while 'pprcl' saved 28.76%. The
memory saving of 'pprcl' is smaller than that of 'prcl', though the difference
is not significant. Note that this machine has about 130 GiB memory, which is
much larger than the RSS of the workloads (only about 1.2 GiB on average). I
believe this fact made the accuracy of the physical address monitoring worse
than the virtual address monitoring. Compared to the monitoring scope increase
(about 100x), the accuracy degradation is very small.
System Global Memory Saving
---------------------------
I further measured the amount of free memory of the system to calculate the
system global memory footprint.
memused.avg orig prcl (overhead) pprcl (overhead)
parsec3/blackscholes 1838734.200 1617375.000 (-12.04) 321902.200 (-82.49)
parsec3/bodytrack 1436094.400 1451703.200 (1.09) 256972.600 (-82.11)
parsec3/canneal 1048424.600 1062165.200 (1.31) 885787.600 (-15.51)
parsec3/dedup 2526629.800 2506042.600 (-0.81) 1777099.400 (-29.67)
parsec3/facesim 546595.800 494834.200 (-9.47) 243344.600 (-55.48)
parsec3/fluidanimate 581078.800 484461.200 (-16.63) 409179.000 (-29.58)
parsec3/freqmine 994034.000 760863.000 (-23.46) 320619.200 (-67.75)
parsec3/raytrace 1753114.800 1565592.600 (-10.70) 703991.600 (-59.84)
parsec3/streamcluster 128533.400 142138.200 (10.58) 100322.200 (-21.95)
parsec3/swaptions 22869.200 40935.000 (79.00) -11221.800 (-149.07)
parsec3/vips 2992238.000 2948726.000 (-1.45) 479531.000 (-83.97)
parsec3/x264 3250209.000 3273603.400 (0.72) 691699.400 (-78.72)
splash2x/barnes 1220499.800 955857.200 (-21.68) 978864.800 (-19.80)
splash2x/fft 9674473.000 9803918.800 (1.34) 10242764.800 (5.87)
splash2x/lu_cb 521333.400 365105.200 (-29.97) 323198.200 (-38.01)
splash2x/lu_ncb 521936.200 431906.000 (-17.25) 384663.200 (-26.30)
splash2x/ocean_cp 3295293.800 3311071.800 (0.48) 3281148.000 (-0.43)
splash2x/ocean_ncp 3917407.800 3926460.000 (0.23) 3871557.000 (-1.17)
splash2x/radiosity 1472602.400 431091.600 (-70.73) 496768.400 (-66.27)
splash2x/radix 2394703.600 2340372.000 (-2.27) 2494416.400 (4.16)
splash2x/raytrace 52380.400 61028.200 (16.51) 4832.600 (-90.77)
splash2x/volrend 159425.800 167845.600 (5.28) 36449.600 (-77.14)
splash2x/water_nsquared 50912.200 69023.600 (35.57) 12645.200 (-75.16)
splash2x/water_spatial 681121.200 382255.200 (-43.88) 516789.200 (-24.13)
total 41080500.000 38594500.000 (-6.05) 28823200.000 (-29.84)
average 1711690.000 1608100.000 (-4.51) 1200970.000 (-48.55)
On average, 'pprcl' (48.55 %) saved about 10 times more memory than 'prcl'
(4.51 %). I believe this is because 'pprcl' can reclaim any system memory
while 'prcl' can do that for only the memory mapped to the workload.
Runtime Overhead
----------------
I also measured the runtime of each workload, because the proactive reclamation
could make workloads slowed down. Note that we used 'zram' as a swap device[3]
to minimize the degradation.
runtime orig prcl (overhead) pprcl (overhead)
parsec3/blackscholes 138.566 146.351 (5.62) 139.731 (0.84)
parsec3/bodytrack 125.359 141.542 (12.91) 127.269 (1.52)
parsec3/canneal 203.778 216.348 (6.17) 225.055 (10.44)
parsec3/dedup 18.261 20.552 (12.55) 19.662 (7.67)
parsec3/facesim 338.071 367.367 (8.67) 344.212 (1.82)
parsec3/fluidanimate 341.858 341.465 (-0.11) 332.765 (-2.66)
parsec3/freqmine 437.206 449.147 (2.73) 444.311 (1.63)
parsec3/raytrace 185.744 201.641 (8.56) 186.037 (0.16)
parsec3/streamcluster 640.900 680.466 (6.17) 637.582 (-0.52)
parsec3/swaptions 220.612 223.065 (1.11) 221.809 (0.54)
parsec3/vips 87.661 91.613 (4.51) 94.582 (7.89)
parsec3/x264 114.661 125.278 (9.26) 112.389 (-1.98)
splash2x/barnes 128.298 145.497 (13.41) 139.424 (8.67)
splash2x/fft 58.677 64.417 (9.78) 76.932 (31.11)
splash2x/lu_cb 133.660 138.980 (3.98) 133.222 (-0.33)
splash2x/lu_ncb 148.260 151.129 (1.93) 152.448 (2.82)
splash2x/ocean_cp 75.966 76.765 (1.05) 76.880 (1.20)
splash2x/ocean_ncp 153.289 162.596 (6.07) 172.197 (12.33)
splash2x/radiosity 143.191 154.972 (8.23) 148.913 (4.00)
splash2x/radix 51.190 51.030 (-0.31) 61.811 (20.75)
splash2x/raytrace 133.835 147.047 (9.87) 135.699 (1.39)
splash2x/volrend 120.789 129.783 (7.45) 121.455 (0.55)
splash2x/water_nsquared 370.232 424.013 (14.53) 378.424 (2.21)
splash2x/water_spatial 132.444 151.769 (14.59) 146.471 (10.59)
total 4502.510 4802.850 (6.67) 4629.270 (2.82)
average 187.605 200.119 (7.03) 192.886 (5.11)
On average, 'pprcl' outperforms 'prcl' again, though the difference is only
small. 'pprcl' incurs 5.11% slowdown to the workload, while 'prcl' incurs
7.03% slowdown.
Nevertheless, because the reclamation threshold (5 seconds) of 'pprcl' is not
tuned for each workload, it sometimes do too aggressive reclamation and
therefore incur high runtime overhead to some workloads, including splash2x/fft
(31.11%) and splash2x/radix (20.75%). In contrast, the worst-case runtime
overhead of 'prcl' is only 14.59% (splash2x/water_spatial) because it uses
different tuned thresholds that tuned for each workload.
Conclusion
----------
Based on the above results, I argue that DAMON's overhead control mechanism can
be effective enough for the physical address space.
Nonetheless, note that DAMON is a framework for general access monitoring of
any address space, and the overhead control logic is only optional. You can
always disable it if it doesn't make sense for your specific use case.
If this results make you interested, please consider reviewing the DAMON
patchset[2].
[1] https://lore.kernel.org/linux-mm/[email protected]/
[2] https://lore.kernel.org/linux-mm/[email protected]/
[3] https://damonitor.github.io/doc/html/latest/vm/damon/eval.html#proactive-reclamation
Thanks,
SeongJae Park