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[66.183.142.209]) by smtp.gmail.com with ESMTPSA id d2e1a72fcca58-82379b1f45dsm1136278b3a.5.2026.01.27.21.06.37 (version=TLS1_2 cipher=ECDHE-ECDSA-AES128-GCM-SHA256 bits=128/128); Tue, 27 Jan 2026 21:06:37 -0800 (PST) From: "Doug Smythies" To: "'Harshvardhan Jha'" , "'Christian Loehle'" Cc: "'Sasha Levin'" , "'Greg Kroah-Hartman'" , , , "'Rafael J. Wysocki'" , "'Daniel Lezcano'" , "Doug Smythies" References: <39c7d882-6711-4178-bce6-c1e4fc909b84@arm.com> <005401dc64a4$75f1d770$61d58650$@telus.net> <6347bf83-545b-4e85-a5af-1d0c7ea24844@arm.com> <849ee0ff-e15b-4b69-84de-6503e3b3168d@oracle.com> In-Reply-To: <849ee0ff-e15b-4b69-84de-6503e3b3168d@oracle.com> Subject: RE: Performance regressions introduced via Revert "cpuidle: menu: Avoid discarding useful information" on 5.15 LTS Date: Tue, 27 Jan 2026 21:06:40 -0800 Message-ID: <003e01dc9013$e3bc5060$ab34f120$@telus.net> Precedence: bulk X-Mailing-List: stable@vger.kernel.org List-Id: List-Subscribe: List-Unsubscribe: MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="----=_NextPart_000_003F_01DC8FD0.D59A9700" X-Mailer: Microsoft Outlook 16.0 Thread-Index: AQHo/NwLGJZTeO77XmxNlnPhSwOGkAKJCFtJAex1orYBu9KCwgGuBEkcAe/o8FK0/6is4A== Content-Language: en-ca This is a multipart message in MIME format. ------=_NextPart_000_003F_01DC8FD0.D59A9700 Content-Type: text/plain; charset="utf-8" Content-Transfer-Encoding: quoted-printable On 2026.01.27 07:45 Harshvardhan Jha wrote: >On 08/12/25 6:17 PM, Christian Loehle wrote: >> On 12/8/25 11:33, Harshvardhan Jha wrote: >>> On 04/12/25 4:00 AM, Doug Smythies wrote: >>>> On 2025.12.03 08:45 Christian Loehle wrote: >>>>> On 12/3/25 16:18, Harshvardhan Jha wrote: >>>>>> >>>>>> While running performance benchmarks for the 5.15.196 LTS tags , = it was >>>>>> observed that several regressions across different benchmarks is = being >>>>>> introduced when compared to the previous 5.15.193 kernel tag. = Running an >>>>>> automated bisect on both of them narrowed down the culprit commit = to: >>>>>> - 5666bcc3c00f7 Revert "cpuidle: menu: Avoid discarding useful >>>>>> information" for 5.15 >>>>>> >>>>>> Regressions on 5.15.196 include: >>>>>> -9.3% : Phoronix pts/sqlite using 2 processes on OnPrem X6-2 >>>>>> -6.3% : Phoronix system/sqlite on OnPrem X6-2 >>>>>> -18% : rds-stress -M 1 (readonly rdma-mode) metrics with 1 depth = & 1 >>>>>> thread & 1M buffer size on OnPrem X6-2 >>>>>> -4 -> -8% : rds-stress -M 2 (writeonly rdma-mode) metrics with 1 = depth & >>>>>> 1 thread & 1M buffer size on OnPrem X6-2 >>>>>> Up to -30% : Some Netpipe metrics on OnPrem X5-2 >>>>>> >>>>>> The culprit commits' messages mention that these reverts were = done due >>>>>> to performance regressions introduced in Intel Jasper Lake = systems but >>>>>> this revert is causing issues in other systems unfortunately. I = wanted >>>>>> to know the maintainers' opinion on how we should proceed in = order to >>>>>> fix this. If we reapply it'll bring back the previous regressions = on >>>>>> Jasper Lake systems and if we don't revert it then it's stuck = with >>>>>> current regressions. If this problem has been reported before and = a fix >>>>>> is in the works then please let me know I shall follow = developments to >>>>>> that mail thread. >>>>> The discussion regarding this can be found here: >>>>> = https://urldefense.com/v3/__https://lore.kernel.org/lkml/36iykr223vmcfsoy= sexug6s274nq2oimcu55ybn6ww4il3g3cv@cohflgdbpnq7/__;!!ACWV5N9M2RV99hQ!MWXE= z_wRbaLyJxDign2EXci2qNzAPpCyhi8qIORMdReh0g_yIVIt-Oqov23KT23A_rGBRRxJ4bHb_= e6UQA-b9PW7hw$=20 >>>>> we explored an alternative to the full revert here: >>>>> = https://urldefense.com/v3/__https://lore.kernel.org/lkml/4687373.LvFx2qVV= Ih@rafael.j.wysocki/__;!!ACWV5N9M2RV99hQ!MWXEz_wRbaLyJxDign2EXci2qNzAPpCy= hi8qIORMdReh0g_yIVIt-Oqov23KT23A_rGBRRxJ4bHb_e6UQA9PSf_uMQ$=20 >>>>> unfortunately that didn't lead anywhere useful, so Rafael went = with the >>>>> full revert you're seeing now. >>>>> >>>>> Ultimately it seems to me that this "aggressiveness" on deep idle = tradeoffs >>>>> will highly depend on your platform, but also your workload, = Jasper Lake >>>>> in particular seems to favor deep idle states even when they don't = seem >>>>> to be a 'good' choice from a purely cpuidle (governor) = perspective, so >>>>> we're kind of stuck with that. >>>>> >>>>> For teo we've discussed a tunable knob in the past, which comes = naturally with >>>>> the logic, for menu there's nothing obvious that would be = comparable. >>>>> But for teo such a knob didn't generate any further interest (so = far). >>>>> >>>>> That's the status, unless I missed anything? >>>> By reading everything in the links Chrsitian provided, you can see >>>> that we had difficulties repeating test results on other platforms. >>>> >>>> Of the tests listed herein, the only one that was easy to repeat on = my >>>> test server, was the " Phoronix pts/sqlite" one. I got (summary: no = difference): >>>> >>>> Kernel 6.18 Reverted =09 >>>> pts/sqlite-2.3.0 menu rc4 menu rc1 menu rc1 menu rc3=09 >>>> performance performance performance performance=09 >>>> test what ave ave ave ave=09 >>>> 1 T/C 1 2.147 -0.2% 2.143 0.0% 2.16 -0.8% 2.156 -0.6% >>>> 2 T/C 2 3.468 0.1% 3.473 0.0% 3.486 -0.4% 3.478 -0.1% >>>> 3 T/C 4 4.336 0.3% 4.35 0.0% 4.355 -0.1% 4.354 -0.1% >>>> 4 T/C 8 5.438 -0.1% 5.434 0.0% 5.456 -0.4% 5.45 -0.3% >>>> 5 T/C 12 6.314 -0.2% 6.299 0.0% 6.307 -0.1% 6.29 0.1% >>>> >>>> Where: >>>> T/C means: Threads / Copies >>>> performance means: intel_pstate CPU frequency scaling driver and = the performance CPU frequencay scaling governor. >>>> Data points are in Seconds. >>>> Ave means the average test result. The number of runs per test was = increased from the default of 3 to 10. >>>> The reversion was manually applied to kernel 6.18-rc1 for that = test. >>>> The reversion was included in kernel 6.18-rc3. >>>> Kernel 6.18-rc4 had another code change to menu.c >>>> >>>> In case the formatting gets messed up, the table is also attached. >>>> >>>> Processor: Intel(R) Core(TM) i5-10600K CPU @ 4.10GHz, 6 cores 12 = CPUs. >>>> HWP: Enabled. >>> I was able to recover performance on 5.15 and 5.4 LTS based kernels >>> after reapplying the revert on X6-2 systems. >>> >>> Architecture: x86_64 >>> CPU op-mode(s): 32-bit, 64-bit >>> Address sizes: 46 bits physical, 48 bits virtual >>> Byte Order: Little Endian >>> CPU(s): 56 >>> On-line CPU(s) list: 0-55 >>> Vendor ID: GenuineIntel >>> Model name: Intel(R) Xeon(R) CPU E5-2690 v4 @ = 2.60GHz >>> CPU family: 6 >>> Model: 79 >>> Thread(s) per core: 2 >>> Core(s) per socket: 14 >>> Socket(s): 2 >>> Stepping: 1 >>> CPU(s) scaling MHz: 98% >>> CPU max MHz: 2600.0000 >>> CPU min MHz: 1200.0000 >>> BogoMIPS: 5188.26 ... snip ... >> It would be nice to get the idle states here, ideally how the states' = usage changed >> from base to revert. >> The mentioned thread did this and should show how it can be done, but = a dump of >> cat /sys/devices/system/cpu/cpu*/cpuidle/state*/* >> before and after the workload is usually fine to work with: >> = https://urldefense.com/v3/__https://lore.kernel.org/linux-pm/8da42386-282= e-4f97-af93-4715ae206361@arm.com/__;!!ACWV5N9M2RV99hQ!PEhkFcO7emFLMaNxWEo= E2Gtnw3zSkpghP17iuEvZM3W6KUpmkbgKw_tr91FwGfpzm4oA5f7c5sz8PkYvKiEVwI_iLIPp= Mt53$=20 > Apologies for the late reply, I'm attaching a tar ball which has the = cpu > states for the test suites before and after tests. The folders with = the > name of the test contain two folders good-kernel and bad-kernel > containing two files having the before and after states. Please note > that different machines were used for different test suites due to > compatibility reasons. The jbb test was run using containers. It is a considerable amount of work to manually extract and summarize = the data. I have only done it for the phoronix-sqlite data. There seems to be 40 CPUs, 5 idle states, with idle state 3 defaulting = to disabled. I remember seeing a Linux-pm email about why but couldn't find it just = now. Summary (also attached as a PNG file, in case the formatting gets messed = up): The total idle entries (usage) and time seem low to me, which is why = the ???. phoronix-sqlite =09 Good Kernel: Time between samples 4 seconds (estimated and ???) =09 Usage Above Below Above Below=09 state 0 220 0 218 0.00% 99.09%=09 state 1 70212 5213 34602 7.42% 49.28%=09 state 2 30273 5237 1806 17.30% 5.97%=09 state 3 0 0 0 0.00% 0.00%=09 state 4 11824 2120 0 17.93% 0.00%=09 =09 total 112529 12570 36626 43.72% <<< Misses %=09 =09 Bad Kernel: Time between samples 3.8 seconds (estimated and ???) =09 Usage Above Below Above Below=09 state 0 262 0 260 0.00% 99.24%=09 state 1 62751 3985 35588 6.35% 56.71%=09 state 2 24941 7896 1433 31.66% 5.75%=09 state 3 0 0 0 0.00% 0.00%=09 state 4 24489 11543 0 47.14% 0.00%=09 =09 total 112443 23424 37281 53.99% <<< Misses % Observe 2X use of idle state 4 for the "Bad Kernel" I have a template now, and can summarize the other 40 CPU data faster, but I would have to rework the template for the 56 CPU data, and is it a 64 CPU data set at 4 idle states per CPU? ... 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