From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============3504551174050776263==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH v4 09/24] seqlock: Extend seqcount API with associated locks Date: Tue, 21 Jul 2020 17:08:37 +0800 Message-ID: <202007211713.2BCP1wzo%lkp@intel.com> In-Reply-To: <20200720155530.1173732-10-a.darwish@linutronix.de> List-Id: --===============3504551174050776263== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi "Ahmed, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on a9232dc5607dbada801f2fe83ea307cda762969a] url: https://github.com/0day-ci/linux/commits/Ahmed-S-Darwish/seqlock-Ex= tend-seqcount-API-with-associated-locks/20200721-003655 base: a9232dc5607dbada801f2fe83ea307cda762969a config: s390-randconfig-s032-20200719 (attached as .config) compiler: s390-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.2-49-g707c5017-dirty # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=3Ds390 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> kernel/time/timekeeping.c:458:23: sparse: sparse: trying to copy express= ion type 31 kernel/time/timekeeping.c:467:18: sparse: sparse: trying to copy express= ion type 31 include/linux/seqlock.h:340:16: sparse: sparse: unreplaced symbol 's' include/linux/seqlock.h:340:9: sparse: sparse: unreplaced symbol 'return' >> kernel/time/timekeeping.c:458:23: sparse: sparse: unreplaced symbol 's' >> kernel/time/timekeeping.c:458:23: sparse: sparse: unreplaced symbol 'ret= urn' include/linux/seqlock.h:340:16: sparse: sparse: unreplaced symbol 's' include/linux/seqlock.h:340:9: sparse: sparse: unreplaced symbol 'return' kernel/time/timekeeping.c:467:18: sparse: sparse: unreplaced symbol 's' kernel/time/timekeeping.c:467:18: sparse: sparse: unreplaced symbol 'ret= urn' /bin/bash: line 1: 27836 Segmentation fault sparse -D__linux__ -Dli= nux -D__STDC__ -Dunix -D__unix__ -Wbitwise -Wno-return-void -Wno-unknown-at= tribute -fdiagnostic-prefix -D__CHECK_ENDIAN__ -D__s390__ -D__s390x__ --arc= h=3Ds390 -mbig-endian -m64 -Wp,-MMD,kernel/time/.timekeeping.o.d -nostdinc = -isystem /opt/cross/gcc-9.3.0-nolibc/s390-linux/bin/../lib/gcc/s390-linux/9= .3.0/include -Iarch/s390/include -I./arch/s390/include/generated -Iinclude = -I./include -Iarch/s390/include/uapi -I./arch/s390/include/generated/uapi -= Iinclude/uapi -I./include/generated/uapi -include include/linux/kconfig.h -= include include/linux/compiler_types.h -D__KERNEL__ -DKBUILD_EXTRA_WARN1 -W= all -Wundef -Werror=3Dstrict-prototypes -Wno-trigraphs -fno-strict-aliasing= -fno-common -fshort-wchar -fno-PIE -Werror=3Dimplicit-function-declaration= -Werror=3Dimplicit-int -Wno-format-security -std=3Dgnu89 -m64 -fPIE -mback= chain -msoft-float -march=3Dz15 -mtune=3Dz196 -Wa,-Iarch/s390/include -mind= irect-branch=3Dthunk -mfunction-return=3Dthunk -mindirect-branch-table -DCC= _USING_EXPOLINE -pipe -Wno-sign-compare -fno-asynchronous-unwind-tables -DC= ONFIG_AS_CFI_VAL_OFFSET=3D1 -fno-delete-null-pointer-checks -Wno-frame-addr= ess -Wno-format-truncation -Wno-format-overflow -Wno-address-of-packed-memb= er -Os --param=3Dallow-store-data-races=3D0 -fplugin=3D./scripts/gcc-plugin= s/randomize_layout_plugin.so -DRANDSTRUCT_PLUGIN -fno-reorder-blocks -fno-i= pa-cp-clone -fno-partial-inlining -Wframe-larger-than=3D8192 -fno-stack-pro= tector -Wno-unused-but-set-variable -Wimplicit-fallthrough -Wno-unused-cons= t-variable -fomit-frame-pointer -fno-var-tracking-assignments -g -gdwarf-4 = -femit-struct-debug-baseonly -fno-var-tracking -gz=3Dzlib -fno-inline-funct= ions-called-once -Wdeclaration-after-statement -Wvla -Wno-pointer-sign -Wno= -stringop-truncation -Wno-array-bounds -Wno-stringop-overflow -Wno-restrict= -Wno-maybe-uninitialized -fno-strict-overflow -fno-merge-all-constants -fm= erge-constants -fno-stack-check -fconserve-stack -Werror=3Ddate-time -Werro= r=3Dincompatible-pointer-types -Werror=3Ddesignated-init -fmacro-prefix-map= =3D=3D -Wno-packed-not-aligned -Wextra -Wunused -Wno-unused-parameter -Wmis= sing-declarations -Wmissing-format-attribute -Wmissing-prototypes -Wold-sty= le-definition -Wmissing-include-dirs -Wunused-but-set-variable -Wunused-con= st-variable -Wpacked-not-aligned -Wstringop-truncation -Wno-missing-field-i= nitializers -Wno-sign-compare -fsanitize=3Dkernel-address -fasan-shadow-off= set=3D0x30000000000 --param asan-globals=3D1 --param asan-instrumentation-w= ith-call-threshold=3D0 --param asan-stack=3D1 --param asan-instrument-alloc= as=3D1 -I kernel/time -I ./kernel/time -DKBUILD_MODFILE=3D'"kernel/time/tim= ekeeping"' -DKBUILD_BASENAME=3D'"timekeeping"' -DKBUILD_MODNAME=3D'"timekee= ping"' kernel/time/timekeeping.c vim +458 kernel/time/timekeeping.c 4396e058c52e16 Thomas Gleixner 2014-07-16 418 = 4396e058c52e16 Thomas Gleixner 2014-07-16 419 /** 4396e058c52e16 Thomas Gleixner 2014-07-16 420 * ktime_get_mono_fast_ns -= Fast NMI safe access to clock monotonic 4396e058c52e16 Thomas Gleixner 2014-07-16 421 * 4396e058c52e16 Thomas Gleixner 2014-07-16 422 * This timestamp is not gu= aranteed to be monotonic across an update. 4396e058c52e16 Thomas Gleixner 2014-07-16 423 * The timestamp is calcula= ted by: 4396e058c52e16 Thomas Gleixner 2014-07-16 424 * 4396e058c52e16 Thomas Gleixner 2014-07-16 425 * now =3D base_mono + cloc= k_delta * slope 4396e058c52e16 Thomas Gleixner 2014-07-16 426 * 4396e058c52e16 Thomas Gleixner 2014-07-16 427 * So if the update lowers = the slope, readers who are forced to the 4396e058c52e16 Thomas Gleixner 2014-07-16 428 * not yet updated second a= rray are still using the old steeper slope. 4396e058c52e16 Thomas Gleixner 2014-07-16 429 * 4396e058c52e16 Thomas Gleixner 2014-07-16 430 * tmono 4396e058c52e16 Thomas Gleixner 2014-07-16 431 * ^ 4396e058c52e16 Thomas Gleixner 2014-07-16 432 * | o n 4396e058c52e16 Thomas Gleixner 2014-07-16 433 * | o n 4396e058c52e16 Thomas Gleixner 2014-07-16 434 * | u 4396e058c52e16 Thomas Gleixner 2014-07-16 435 * | o 4396e058c52e16 Thomas Gleixner 2014-07-16 436 * |o 4396e058c52e16 Thomas Gleixner 2014-07-16 437 * |12345678---> reader ord= er 4396e058c52e16 Thomas Gleixner 2014-07-16 438 * 4396e058c52e16 Thomas Gleixner 2014-07-16 439 * o =3D old slope 4396e058c52e16 Thomas Gleixner 2014-07-16 440 * u =3D update 4396e058c52e16 Thomas Gleixner 2014-07-16 441 * n =3D new slope 4396e058c52e16 Thomas Gleixner 2014-07-16 442 * 4396e058c52e16 Thomas Gleixner 2014-07-16 443 * So reader 6 will observe= time going backwards versus reader 5. 4396e058c52e16 Thomas Gleixner 2014-07-16 444 * 4396e058c52e16 Thomas Gleixner 2014-07-16 445 * While other CPUs are lik= ely to be able observe that, the only way 4396e058c52e16 Thomas Gleixner 2014-07-16 446 * for a CPU local observat= ion is when an NMI hits in the middle of 4396e058c52e16 Thomas Gleixner 2014-07-16 447 * the update. Timestamps t= aken from that NMI context might be ahead 4396e058c52e16 Thomas Gleixner 2014-07-16 448 * of the following timesta= mps. Callers need to be aware of that and 4396e058c52e16 Thomas Gleixner 2014-07-16 449 * deal with it. 4396e058c52e16 Thomas Gleixner 2014-07-16 450 */ 4498e7467e9e44 Peter Zijlstra 2015-03-19 451 static __always_inline u64 = __ktime_get_fast_ns(struct tk_fast *tkf) 4396e058c52e16 Thomas Gleixner 2014-07-16 452 { 4396e058c52e16 Thomas Gleixner 2014-07-16 453 struct tk_read_base *tkr; 4396e058c52e16 Thomas Gleixner 2014-07-16 454 unsigned int seq; 4396e058c52e16 Thomas Gleixner 2014-07-16 455 u64 now; 4396e058c52e16 Thomas Gleixner 2014-07-16 456 = 4396e058c52e16 Thomas Gleixner 2014-07-16 457 do { 7fc26327b75685 Peter Zijlstra 2015-05-27 @458 seq =3D raw_read_seqcount= _latch(&tkf->seq); 4498e7467e9e44 Peter Zijlstra 2015-03-19 459 tkr =3D tkf->base + (seq = & 0x01); 27727df240c7cc John Stultz 2016-08-23 460 now =3D ktime_to_ns(tkr->= base); 27727df240c7cc John Stultz 2016-08-23 461 = 58bfea9532552d John Stultz 2016-10-04 462 now +=3D timekeeping_delt= a_to_ns(tkr, 58bfea9532552d John Stultz 2016-10-04 463 clocksource_delta( ceea5e3771ed23 John Stultz 2017-06-08 464 tk_clock_read(tkr), 58bfea9532552d John Stultz 2016-10-04 465 tkr->cycle_last, 58bfea9532552d John Stultz 2016-10-04 466 tkr->mask)); 4498e7467e9e44 Peter Zijlstra 2015-03-19 467 } while (read_seqcount_ret= ry(&tkf->seq, seq)); 4396e058c52e16 Thomas Gleixner 2014-07-16 468 = 4396e058c52e16 Thomas Gleixner 2014-07-16 469 return now; 4396e058c52e16 Thomas Gleixner 2014-07-16 470 } 4498e7467e9e44 Peter Zijlstra 2015-03-19 471 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============3504551174050776263== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICPSiFl8AAy5jb25maWcAjDxLd9u20vv+Cp10c++irV9x4/MdLyASlFCRBAOQkuUNj+IoqU4d 20e22+b++m8G4AMAh3S6SE3M4DUYzBv6+aefZ+z15fHb7uVwt7u//z77un/YH3cv+8+zL4f7/f/N 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