From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2813924123123993630==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [luto:x86/membarrier 4/8] kernel/kthread.c:1328:2: error: implicit declaration of function 'membarrier_finish_switch_mm' Date: Wed, 16 Jun 2021 19:29:10 +0800 Message-ID: <202106161906.KTsASLGt-lkp@intel.com> List-Id: --===============2813924123123993630== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/luto/linux.git x86/= membarrier head: 07a8b963002cb955b7516e61bad19514a3acaa82 commit: f184d013a255a523116b692db4996c5db2569e86 [4/8] membarrier: Make the= post-switch-mm barrier explicit config: ia64-randconfig-r015-20210615 (attached as .config) compiler: ia64-linux-gcc (GCC) 9.3.0 reproduce (this is a W=3D1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # https://git.kernel.org/pub/scm/linux/kernel/git/luto/linux.git/co= mmit/?id=3Df184d013a255a523116b692db4996c5db2569e86 git remote add luto https://git.kernel.org/pub/scm/linux/kernel/git= /luto/linux.git git fetch --no-tags luto x86/membarrier git checkout f184d013a255a523116b692db4996c5db2569e86 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = ARCH=3Dia64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): kernel/kthread.c: In function 'kthread_use_mm': >> kernel/kthread.c:1328:2: error: implicit declaration of function 'membar= rier_finish_switch_mm' [-Werror=3Dimplicit-function-declaration] 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~ In file included from : >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:308:9: note: in definition of macro '__co= mpiletime_assert' 308 | if (!(condition)) \ | ^~~~~~~~~ include/linux/compiler_types.h:328:2: note: in expansion of macro '_comp= iletime_assert' 328 | _compiletime_assert(condition, msg, __compiletime_assert_, __CO= UNTER__) | ^~~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:2: note: in expansion of macro 'compilet= ime_assert' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:21: note: in expansion of macro '__nativ= e_word' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~ include/asm-generic/rwonce.h:49:2: note: in expansion of macro 'compilet= ime_assert_rwonce_type' 49 | compiletime_assert_rwonce_type(x); \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:308:9: note: in definition of macro '__co= mpiletime_assert' 308 | if (!(condition)) \ | ^~~~~~~~~ include/linux/compiler_types.h:328:2: note: in expansion of macro '_comp= iletime_assert' 328 | _compiletime_assert(condition, msg, __compiletime_assert_, __CO= UNTER__) | ^~~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:2: note: in expansion of macro 'compilet= ime_assert' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:21: note: in expansion of macro '__nativ= e_word' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~ include/asm-generic/rwonce.h:49:2: note: in expansion of macro 'compilet= ime_assert_rwonce_type' 49 | compiletime_assert_rwonce_type(x); \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:308:9: note: in definition of macro '__co= mpiletime_assert' 308 | if (!(condition)) \ | ^~~~~~~~~ include/linux/compiler_types.h:328:2: note: in expansion of macro '_comp= iletime_assert' 328 | _compiletime_assert(condition, msg, __compiletime_assert_, __CO= UNTER__) | ^~~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:2: note: in expansion of macro 'compilet= ime_assert' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:21: note: in expansion of macro '__nativ= e_word' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~ include/asm-generic/rwonce.h:49:2: note: in expansion of macro 'compilet= ime_assert_rwonce_type' 49 | compiletime_assert_rwonce_type(x); \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:308:9: note: in definition of macro '__co= mpiletime_assert' 308 | if (!(condition)) \ | ^~~~~~~~~ include/linux/compiler_types.h:328:2: note: in expansion of macro '_comp= iletime_assert' 328 | _compiletime_assert(condition, msg, __compiletime_assert_, __CO= UNTER__) | ^~~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:2: note: in expansion of macro 'compilet= ime_assert' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:21: note: in expansion of macro '__nativ= e_word' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~ include/asm-generic/rwonce.h:49:2: note: in expansion of macro 'compilet= ime_assert_rwonce_type' 49 | compiletime_assert_rwonce_type(x); \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:308:9: note: in definition of macro '__co= mpiletime_assert' 308 | if (!(condition)) \ | ^~~~~~~~~ include/linux/compiler_types.h:328:2: note: in expansion of macro '_comp= iletime_assert' 328 | _compiletime_assert(condition, msg, __compiletime_assert_, __CO= UNTER__) | ^~~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:36:2: note: in expansion of macro 'compilet= ime_assert' 36 | compiletime_assert(__native_word(t) || sizeof(t) =3D=3D sizeof(= long long), \ | ^~~~~~~~~~~~~~~~~~ include/asm-generic/rwonce.h:49:2: note: in expansion of macro 'compilet= ime_assert_rwonce_type' 49 | compiletime_assert_rwonce_type(x); \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/linux/compiler_types.h:279:13: note: in definition of macro '__u= nqual_scalar_typeof' 279 | _Generic((x), \ | ^ include/asm-generic/rwonce.h:50:2: note: in expansion of macro '__READ_O= NCE' 50 | __READ_ONCE(x); \ | ^~~~~~~~~~~ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ In file included from ./arch/ia64/include/generated/asm/rwonce.h:1, from include/linux/compiler.h:248, from include/asm-generic/bug.h:5, from arch/ia64/include/asm/bug.h:17, from include/linux/bug.h:5, from include/linux/mmdebug.h:5, from include/linux/mm.h:9, from kernel/kthread.c:11: >> kernel/kthread.c:1328:45: error: 'struct mm_struct' has no member named = 'membarrier_state' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~ include/asm-generic/rwonce.h:44:72: note: in definition of macro '__READ= _ONCE' 44 | #define __READ_ONCE(x) (*(const volatile __unqual_scalar_typeof(= x) *)&(x)) | = ^ arch/ia64/include/asm/atomic.h:24:25: note: in expansion of macro 'READ_= ONCE' 24 | #define atomic_read(v) READ_ONCE((v)->counter) | ^~~~~~~~~ kernel/kthread.c:1328:30: note: in expansion of macro 'atomic_read' 1328 | membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); | ^~~~~~~~~~~ cc1: some warnings being treated as errors -- kernel/sched/core.c:2850:6: warning: no previous prototype for 'sched_se= t_stop_task' [-Wmissing-prototypes] 2850 | void sched_set_stop_task(int cpu, struct task_struct *stop) | ^~~~~~~~~~~~~~~~~~~ kernel/sched/core.c: In function 'context_switch': >> kernel/sched/core.c:4312:3: error: implicit declaration of function 'mem= barrier_finish_switch_mm'; did you mean 'membarrier_switch_mm'? [-Werror=3D= implicit-function-declaration] 4312 | membarrier_finish_switch_mm(rq->membarrier_state); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~ | membarrier_switch_mm >> kernel/sched/core.c:4312:33: error: 'struct rq' has no member named 'mem= barrier_state' 4312 | membarrier_finish_switch_mm(rq->membarrier_state); | ^~ cc1: some warnings being treated as errors vim +/membarrier_finish_switch_mm +1328 kernel/kthread.c 1304 = 1305 /** 1306 * kthread_use_mm - make the calling kthread operate on an address s= pace 1307 * @mm: address space to operate on 1308 */ 1309 void kthread_use_mm(struct mm_struct *mm) 1310 { 1311 struct mm_struct *active_mm; 1312 struct task_struct *tsk =3D current; 1313 = 1314 WARN_ON_ONCE(!(tsk->flags & PF_KTHREAD)); 1315 WARN_ON_ONCE(tsk->mm); 1316 = 1317 task_lock(tsk); 1318 /* Hold off tlb flush IPIs while switching mm's */ 1319 local_irq_disable(); 1320 active_mm =3D tsk->active_mm; 1321 if (active_mm !=3D mm) { 1322 mmgrab(mm); 1323 tsk->active_mm =3D mm; 1324 } 1325 tsk->mm =3D mm; 1326 membarrier_update_current_mm(mm); 1327 switch_mm_irqs_off(active_mm, mm, tsk); > 1328 membarrier_finish_switch_mm(atomic_read(&mm->membarrier_state)); 1329 local_irq_enable(); 1330 task_unlock(tsk); 1331 #ifdef finish_arch_post_lock_switch 1332 finish_arch_post_lock_switch(); 1333 #endif 1334 = 1335 if (active_mm !=3D mm) 1336 mmdrop(active_mm); 1337 = 1338 to_kthread(tsk)->oldfs =3D force_uaccess_begin(); 1339 } 1340 EXPORT_SYMBOL_GPL(kthread_use_mm); 1341 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============2813924123123993630== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICHjKyWAAAy5jb25maWcAlDxLd9s2s/v+Cp500y7aWrbjJOceL0AQlFDxFQCUJW94FEdJdWpb ubLSNv/+zgB8ACCo5C6+ftbMYPCaN4b5+aefI/L1dHjanvYP28fHb9Hn3fPuuD3tPkaf9o+7/4mS 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