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Message-Id: <cover.1706792708.git.hongyan.xia2@arm.com>
Date: Thu, 1 Feb 2024 13:11:56 +0000
From: Hongyan Xia <hongyan.xia2@....com>
To: Ingo Molnar <mingo@...hat.com>,
Peter Zijlstra <peterz@...radead.org>,
Vincent Guittot <vincent.guittot@...aro.org>,
Dietmar Eggemann <dietmar.eggemann@....com>
Cc: Qais Yousef <qyousef@...alina.io>,
Morten Rasmussen <morten.rasmussen@....com>,
Lukasz Luba <lukasz.luba@....com>,
Christian Loehle <christian.loehle@....com>,
linux-kernel@...r.kernel.org,
David Dai <davidai@...gle.com>,
Saravana Kannan <saravanak@...gle.com>
Subject: [RFC PATCH v2 0/7] uclamp sum aggregation
Current implementation of uclamp leaves many things to be desired.
There are three noteworthy problems:
1. Max aggregation only takes into account the max uclamp value. All
other uclamp values are not in effect.
2. Uclamp max aggregation gives UCLAMP_MIN and UCLAMP_MAX at the rq
level, and whether that translates to the desired performance of a
specific task is unknown, because it depends on other tasks on rq.
3. Complexity. Uclamp max aggregation now sits at more than 750 lines of
code and there is ongoing work to rework several interfaces to
prepare for further uclamp changes. Uclamp max aggregation itself
also needs future improvements in uclamp filtering and load balancing
The first 2 points can manifest into the following symptoms,
1. High-rate OPP changes ("frequency spike" problem). An always-running
task with a UCLAMP_MAX of 200 will drive the CPU at 200 even though
its utilization is 1024. However, when a util_avg task of 300 but
with default UCLAMP_MAX of 1024 joins the rq, the rq UCLAMP_MAX will
be uncapped, and the UCLAMP_MAX of the first task is no longer in
effect therefore driving the CPU at 1024, the highest OPP. When the
second task sleeps, the OPP will be reduced to 200. This fast and
sudden OPP switch every time the 2nd task wakes up or sleeps is
unnecessary.
2. Using UCLAMP_MIN to boost performance under max aggregation has been
shown to have weaker effectiveness than "sum aggregated" approaches,
including the util_guest proposal [1] and uclamp sum aggregation in
this series. The performance level of UCLAMP_MIN for a task under max
aggregation is unpredictable when there are more than 1 task runnable
on the rq.
This series solves these problems by tracking a
util_avg_uclamp signal in tasks and root cfs_rq. At task level,
p->se.avg.util_avg_uclamp is basically tracking the normal util_avg, but
clamped within its uclamp min and max. At cfs_rq level, util_avg_uclamp
must always be the sum of all util_avg_uclamp of all the entities on
this cfs_rq. As a result, rq->cfs.avg.util_avg_uclamp is the sum
aggregation of all the clamped values, which hints the frequency
this rq should run at and what the utilization is. This proposal has
some similarities to the util_guest series for VM workloads, in that it
brings the desired performance to the task that requested it, not to the
rq, in which the share of the task is unpredictable.
Note: This new signal does not change the existing PELT signal. The new
signal is only an extra hint to the scheduler to improve scheduling
decisions.
TL;DR OF THIS SERIES:
- Our evaluation shows significantly better effectiveness than max
aggregation. UI benchmarks and VM workloads have improved latency and
higher scores at the same or even reduced power consumption.
- For other benchmarks that do not involve uclamp, we have not observed
any noticeable regressions.
- This series is the entirety of sum aggregation. No groundwork or
refactoring in the scheduler is needed. The complexity of several
existing uclamp-related functions is massively reduced and sum
aggregation code is less than half of that in max aggregation (304+,
701-). The complexity gap will be even greater with all the ongoing
patches for max aggregation.
DECOMPOSITION OF SUM AGGREGATION:
- Patch 1 reverts some max aggregation code. Sum aggregation shows no
such problems so mitigation patches are not necessary, and that
patch has other undesirable side effects.
- Patch 2 and 3 introduce new sum aggregated signals to be a more
effective hint to the scheduler. Patch 3 employs a math trick to make
it significantly simpler to track on-rq and off-rq task utilization
contributions.
- Patch 4, 5 and 6 start using the new signal while significantly
simplifying existing uclamp code, including the total removal of
uclamp buckets and max aggregation.
- Patch 7 and part of 6 remove the overhead of uclamp on task
enqueue and dequeue, because uclamp values and buckets no longer need
to be re-computed every time a uclamp'ed task joins or leaves the rq.
TESTING:
Sum aggregation generally performs better in tests. Two notebooks, max
vs. sum aggregation, are shared at
https://nbviewer.org/github/honxia02/notebooks/blob/618de22a8da96205015fefabee203536683bd4e2/whitebox/max.ipynb
https://nbviewer.org/github/honxia02/notebooks/blob/618de22a8da96205015fefabee203536683bd4e2/whitebox/sum.ipynb
The experiments done in notebooks are on Arm Juno r2 board. CPU0-3 are
little cores with capacity of 383. CPU4-5 are big cores. The rt-app
profiles used for these experiments are included in the notebooks.
Scenario 1: Scheduling 4 always-running tasks with UCLAMP_MAX at 200.
The scheduling decisions are plotted in Out[11]. Both max and sum
aggregation recognizes the UCLAMP_MAX hints and run all the threads
on the little Performance Domain (PD). However, max aggregation in the
test shows some randomness in task placement, and we see the 4 threads
are often not evenly distributed across the 4 little CPUs. This uneven
task placement is also the reason why we revert the patch:
"sched/uclamp: Set max_spare_cap_cpu even if max_spare_cap is 0"
When the spare capacity is 0, the reverted patch tends to gather many
tasks on the same CPU because its EM calculation is bogus and it thinks
this placement is more energy efficient.
Scenario 2: Scheduling 4 tasks with UCLAMP_MIN and UCLAMP_MAX at a value
slightly above the capacity of the little CPU.
Results are in Out[17]. The purpose is to use UCLAMP_MIN to place tasks
on the big core but not to run at the highest OPP. Both max and sum
aggregation accomplish this task successfully, running the two threads
at the big cluster while not driving the frequency at the max.
Scenario 3: Task A is a task with a small utilization pinned to CPU4.
Task B is an always-running task pinned to CPU5, but UCLAMP_MAX capped
at 300. After a while, task A is then pinned to CPU5, joining B.
Results are in Out[23]. The util_avg curve is the original root CFS
util_avg. The root_cfs_util_uclamp is the root CFS utilization after
considering uclamp. Max aggregation sees a frequency spike at 751.7s.
When zoomed in, one can see square-wave-like utilization and CPU
frequency values because of task A periodically going to sleep. When A
wakes up, its default UCLAMP_MAX of 1024 will uncap B and reach the
highest CPU frequency. When A sleeps, B's UCLAMP_MAX will be in effect
and will reduce rq utilization to 300. This happens repeatedly, hence
the square wave. In contrast, sum aggregation sees a normal increase in
utilization when A joins B, at around 430.64s, without any square-wave
behavior. The CPU frequency also stays stable while the two tasks are on
the same rq.
Scenario 4: 4 always-running tasks with UCLAMP_MAX of 120 pinned to the
little PD (CPU0-3). 4 same tasks pinned to the big PD (CPU4-5).
After a while, remove the CPU pinning of the 4 tasks on the big PD.
Results are in Out[29]. Both max and sum aggregation understand that we
can move the 4 tasks from the big PD to the little PD to reduce power
because of the UCLAMP_MAX hints. However, max aggregation shows severely
unbalanced task placement, scheduling 5 tasks on CPU0 while 1 each on
CPU1-3. Sum aggregation schedules 2 tasks on each little CPU, honoring
UCLAMP_MAX while maintaining balanced task placement.
Again, this unbalanced task placement is the reason why we reverted:
"sched/uclamp: Set max_spare_cap_cpu even if max_spare_cap is 0"
Scenario 5: 8 tasks with UCLAMP_MAX of 120.
This test is similar to Scenario 4, shown in Out[35]. Both max and sum
aggregation understand the UCLAMP_MAX hints and schedule all tasks on
the 4 little CPUs. Max aggregation again shows unstable and unbalanced
task placement while sum aggregation schedules 2 tasks on each little
CPU, and the task placement remains stable. The total task residency is
shown in Out[36], showing how unbalanced max aggregation is.
BENCHMARKS:
Geekbench 6, no uclamp (on Rock-5B board)
+-----+-------------+------------+
| | Single-core | Multi-core |
+-----+-------------+------------+
| Max | 801.3 | 2976.8 |
| Sum | 802.8 | 2989.2 |
+-----+-------------+------------+
No regression is seen after switching to sum aggregation.
Jankbench (backporting sum aggregation to Pixel 6 Android 5.18 mainline kernel):
Jank percentage:
+------+-------+-----------+
| | value | perc_diff |
+------+-------+-----------+
| main | 1.1 | 0.00% |
| sum | 0.5 | -53.92% |
+------+-------+-----------+
Average power:
+------------+------+-------+-----------+
| | tag | value | perc_diff |
+------------+------+-------+-----------+
| CPU | max | 166.1 | 0.00% |
| CPU-Big | max | 55.1 | 0.00% |
| CPU-Little | max | 91.7 | 0.00% |
| CPU-Mid | max | 19.2 | 0.00% |
| CPU | sum | 161.3 | -2.85% |
| CPU-Big | sum | 52.9 | -3.97% |
| CPU-Little | sum | 86.7 | -5.39% |
| CPU-Mid | sum | 21.6 | 12.63% |
+------------+------+-------+-----------+
UIBench (backporting sum aggregation to Pixel 6 Android 6.6 mainline kernel):
Jank percentage:
+-------------+-------+-----------+
| tag | value | perc_diff |
+-------------+-------+-----------+
| max_aggr | 0.3 | 0.0 |
| sum_aggr | 0.26 | -12.5 |
+-------------+-------+-----------+
Average input latency:
+-------------+--------+-----------+
| tag | value | perc_diff |
+-------------+--------+-----------+
| max_aggr | 107.39 | 0.0 |
| sum_aggr | 81.135 | -24.5 |
+-------------+--------+-----------+
Average power:
+------------+--------------+--------+-----------+
| channel | tag | value | perc_diff |
+------------+--------------+--------+-----------+
| CPU | max_aggr | 209.85 | 0.0% |
| CPU-Big | max_aggr | 89.8 | 0.0% |
| CPU-Little | max_aggr | 94.45 | 0.0% |
| CPU-Mid | max_aggr | 25.45 | 0.0% |
| GPU | max_aggr | 22.9 | 0.0% |
| Total | max_aggr | 232.75 | 0.0% |
| CPU | sum_aggr | 206.05 | -1.81% |
| CPU-Big | sum_aggr | 84.7 | -5.68% |
| CPU-Little | sum_aggr | 94.9 | 0.48% |
| CPU-Mid | sum_aggr | 26.3 | 3.34% |
| GPU | sum_aggr | 22.45 | -1.97% |
| Total | sum_aggr | 228.5 | -1.83% |
+------------+--------------+--------+-----------+
It should be noted that sum aggregation reduces jank and reduces input
latency while consuming less power.
VM cpufreq hypercall driver [1], on Rock-5B board. Baseline indicates a
setup without the VM cpufreq driver:
Geekbench 6 uncontended. No other host threads running.
+------+-------------+-----------+------------+-----------+
| | Single-core | perc_diff | Multi-core | perc_diff |
+------+-------------+-----------+------------+-----------+
| base | 796.4 | 0 | 2947.0 | 0 |
| max | 795.6 | -0.10 | 2929.6 | -0.59 |
| sum | 794.6 | -0.23 | 2935.6 | -0.39 |
+------+-------------+-----------+------------+-----------+
Geekbench 6 contended. Host CPUs each has a 50% duty-cycle task running.
+------+-------------+-----------+------------+-----------+
| | Single-core | perc_diff | Multi-core | perc_diff |
+------+-------------+-----------+------------+-----------+
| base | 604.6 | 0 | 2330.2 | 0 |
| max | 599.4 | -0.86 | 2327.2 | -0.13 |
| sum | 645.8 | 6.81 | 2336.6 | 0.27 |
+------+-------------+-----------+------------+-----------+
VM CPUfreq driver using sum aggregation outperforms max aggregation when
the host is contended. When the host has no contention (only the VM
vCPUs are running and each host CPU accommodates one guest vCPU), the
two aggregation methods are roughly the same, and a bit surprisingly,
offers no speed-up versus the baseline. This is probably because of the
overhead of hypercalls, and the fact that Geekbench is CPU intensive and
is not the best workload to show the effectiveness of VM cpufreq driver.
We will try to benchmark on more VM workloads.
LIMITATIONS:
1. RT sum aggregation is not shown in the series.
A proof-of-concept RT sum aggregation implementation is done and going
through testing, with < 50 lines of code, using the same ideas as in
CFS. They will be sent out separately if we can agree on CFS sum
aggregation and once the testing is done.
2. A heavily UCLAMP_MAX-throttled task may prevent the CFS rq from
triggering over-utilization.
For example, two always-running task each having utilization of 512. If
one of the task is severely UCLAMP_MAX restricted, say, with a
UCLAMP_MAX of 1, then the total CFS sum aggregation will be 512 + 1 =
513, which won't trigger over-utilization even though the other task has
no UCLAMP_MAX and wants more performance.
I'm working on a fix for this problem. This at the moment can be solved
by either not giving long-running tasks ridiculously low UCLAMP_MAX
values, or adjusting the priority of UCLAMP_MAX tasks to make sure it
does not get a share of CPU run-time that vastly exceeds its UCLAMP_MAX.
However, my personal view is that maybe UCLAMP_MIN and UCLAMP_MAX just
don't belong together, and the proper way is to have a per-task
bandwidth throttling mechanism and what we want as UCLAMP_MAX maybe
actually belongs to that mechanism.
However, since the Android GROUP_THROTTLE feature [2] has the exact same
problem and has been used in actual products, we don't think this is a
big limitation in practice.
[1]: https://lore.kernel.org/all/20230331014356.1033759-1-davidai@google.com/
[2]: https://android.googlesource.com/kernel/gs/+/refs/heads/android-gs-raviole-5.10-android12-d1/drivers/soc/google/vh/kernel/sched/fair.c#510
---
Changed in v2:
- Rework util_avg_uclamp to be closer to the style of util_est.
- Rewrite patch notes to reflect the new style.
- Add the discussion of the under-utilizated example in limitations,
found by Vincent G.
- Remove task group uclamp to focus on tasks first.
- Fix several bugs in task migration.
- Add benchmark numbers from UIBench and VM cpufreq.
- Update python notebooks to reflect the latest max vs. sum aggregation.
Hongyan Xia (7):
Revert "sched/uclamp: Set max_spare_cap_cpu even if max_spare_cap is
0"
sched/uclamp: Track uclamped util_avg in sched_avg
sched/uclamp: Introduce root_cfs_util_uclamp for rq
sched/fair: Use CFS util_avg_uclamp for utilization and frequency
sched/fair: Massively simplify util_fits_cpu()
sched/uclamp: Remove all uclamp bucket logic
sched/uclamp: Simplify uclamp_eff_value()
include/linux/sched.h | 7 +-
init/Kconfig | 32 ---
kernel/sched/core.c | 324 +++---------------------------
kernel/sched/cpufreq_schedutil.c | 10 +-
kernel/sched/fair.c | 333 +++++++------------------------
kernel/sched/pelt.c | 144 ++++++++++++-
kernel/sched/pelt.h | 6 +-
kernel/sched/rt.c | 4 -
kernel/sched/sched.h | 145 ++++++--------
9 files changed, 304 insertions(+), 701 deletions(-)
--
2.34.1
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