From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============3865191848725004523==" MIME-Version: 1.0 From: kernel test robot Subject: arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imbalance in 'RCU_in_HARDIRQ' - wrong count at exit Date: Thu, 15 Jul 2021 02:31:17 +0800 Message-ID: <202107150210.CLUDyvyc-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============3865191848725004523== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Boqun Feng CC: Peter Zijlstra tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 40226a3d96ef8ab8980f032681c8bfd46d63874e commit: 9271a40d2a1429113160ccc4c16150921600bcc1 lockdep/selftest: Add wait= context selftests date: 6 months ago :::::: branch date: 23 hours ago :::::: commit date: 6 months ago config: xtensa-randconfig-s031-20210713 (attached as .config) compiler: xtensa-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: v0.6.3-341-g8af24329-dirty # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3D9271a40d2a1429113160ccc4c16150921600bcc1 git remote add linus https://git.kernel.org/pub/scm/linux/kernel/gi= t/torvalds/linux.git git fetch --no-tags linus master git checkout 9271a40d2a1429113160ccc4c16150921600bcc1 # 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__' O=3Dbuild_dir ARCH=3Dxt= ensa SHELL=3D/bin/bash If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) lib/locking-selftest.c:298:1: sparse: sparse: context imbalance in 'AA_s= pin' - wrong count at exit lib/locking-selftest.c:300:1: sparse: sparse: context imbalance in 'AA_w= lock' - wrong count at exit lib/locking-selftest.c:302:1: sparse: sparse: context imbalance in 'AA_r= lock' - wrong count at exit lib/locking-selftest.c:321:13: sparse: sparse: context imbalance in 'rlo= ck_AA1' - wrong count at exit lib/locking-selftest.c:327:13: sparse: sparse: context imbalance in 'rlo= ck_AA1B' - wrong count at exit lib/locking-selftest.c:347:13: sparse: sparse: context imbalance in 'rlo= ck_AA2' - wrong count at exit lib/locking-selftest.c:359:13: sparse: sparse: context imbalance in 'rlo= ck_AA3' - wrong count at exit lib/locking-selftest.c:722:1: sparse: sparse: context imbalance in 'doub= le_unlock_spin' - unexpected unlock lib/locking-selftest.c:724:1: sparse: sparse: context imbalance in 'doub= le_unlock_wlock' - unexpected unlock lib/locking-selftest.c:726:1: sparse: sparse: context imbalance in 'doub= le_unlock_rlock' - unexpected unlock lib/locking-selftest.c:753:1: sparse: sparse: context imbalance in 'init= _held_spin' - wrong count at exit lib/locking-selftest.c:755:1: sparse: sparse: context imbalance in 'init= _held_wlock' - wrong count at exit lib/locking-selftest.c:757:1: sparse: sparse: context imbalance in 'init= _held_rlock' - wrong count at exit lib/locking-selftest.c:2456:13: sparse: sparse: context imbalance in 'rc= u_exit' - unexpected unlock lib/locking-selftest.c:2465:13: sparse: sparse: context imbalance in 'rc= u_bh_exit' - unexpected unlock lib/locking-selftest.c:2474:13: sparse: sparse: context imbalance in 'rc= u_sched_exit' - unexpected unlock lib/locking-selftest.c:2493:13: sparse: sparse: context imbalance in 'ra= w_spinlock_exit' - unexpected unlock lib/locking-selftest.c:2502:13: sparse: sparse: context imbalance in 'sp= inlock_exit' - unexpected unlock lib/locking-selftest.c: note: in included file (through include/linux/th= read_info.h, include/asm-generic/preempt.h, arch/xtensa/include/generated/a= sm/preempt.h, ...): >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RCU_in_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RCU_in_NOTTHREADED_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RCU_in_SOFTIRQ' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_RCU' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_RCU_BH' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_RCU_CALLBACK' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_RCU_SCHED' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_RAW_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2573:1: sparse: sparse: context imbalance in 'RCU= _in_MUTEX' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RAW_SPINLOCK_in_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RAW_SPINLOCK_in_NOTTHREADED_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'RAW_SPINLOCK_in_SOFTIRQ' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_RCU' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_RCU_BH' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_RCU_CALLBACK' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_RCU_SCHED' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_RAW_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2574:1: sparse: sparse: context imbalance in 'RAW= _SPINLOCK_in_MUTEX' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'SPINLOCK_in_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'SPINLOCK_in_NOTTHREADED_HARDIRQ' - wrong count at exit >> arch/xtensa/include/asm/thread_info.h:91:10: sparse: sparse: context imb= alance in 'SPINLOCK_in_SOFTIRQ' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_RCU' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_RCU_BH' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_RCU_CALLBACK' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_RCU_SCHED' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_RAW_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2575:1: sparse: sparse: context imbalance in 'SPI= NLOCK_in_MUTEX' - wrong count at exit lib/locking-selftest.c:2576:1: sparse: sparse: context imbalance in 'MUT= EX_in_RCU' - wrong count at exit lib/locking-selftest.c:2576:1: sparse: sparse: context imbalance in 'MUT= EX_in_RCU_BH' - wrong count at exit lib/locking-selftest.c:2576:1: sparse: sparse: context imbalance in 'MUT= EX_in_RCU_SCHED' - wrong count at exit lib/locking-selftest.c:2576:1: sparse: sparse: context imbalance in 'MUT= EX_in_RAW_SPINLOCK' - wrong count at exit lib/locking-selftest.c:2576:1: sparse: sparse: context imbalance in 'MUT= EX_in_SPINLOCK' - wrong count at exit vim +/RCU_in_HARDIRQ +91 arch/xtensa/include/asm/thread_info.h 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 86 = 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 87 /* how to get the thread information struct from C */ 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 88 static inline struct thread_info *current_thread_info(void) 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 89 { 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 90 struct thread_info *ti; f4431396be5b26 arch/xtensa/include/asm/thread_info.h Max Filippov 2017-12-0= 4 @91 __asm__("extui %0, a1, 0, "__stringify(CURRENT_SHIFT)"\n\t" 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 92 "xor %0, a1, %0" : "=3D&r" (ti) : ); 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 93 return ti; 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 94 } 9a8fd558990215 include/asm-xtensa/thread_info.h Chris Zankel 2005-06-2= 3 95 = :::::: The code at line 91 was first introduced by commit :::::: f4431396be5b26a9960daf502d129b1b5d126f5e xtensa: consolidate kernel = stack size related definitions :::::: TO: Max Filippov :::::: CC: Max Filippov --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============3865191848725004523== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICAcP72AAAy5jb25maWcAnDxdb+O2su/9Fcb2pQXu7tryR2xc5IGWKJu1KHJFynbyIngT7zZo 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