From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2596604573153034318==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: [linux-next:master 4066/13554] kernel/rcu/tasks.h:1022:6: warning: no previous prototype for 'show_rcu_tasks_gp_kthreads' Date: Fri, 29 May 2020 09:51:58 +0800 Message-ID: <202005290957.bP70vtyQ%lkp@intel.com> List-Id: --===============2596604573153034318== 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/next/linux-next.git= master head: ff387fc20c697cdc887b2abf7ef494e853795a2f commit: e21408ceec2de5be418efa39feb1e2c00f824a72 [4066/13554] rcu-tasks: Ad= d RCU tasks to rcutorture writer stall output config: m68k-randconfig-s031-20200528 (attached as .config) compiler: m68k-linux-gcc (GCC) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.1-240-gf0fe1cd9-dirty git checkout e21408ceec2de5be418efa39feb1e2c00f824a72 # save the attached .config to linux build tree make W=3D1 C=3D1 ARCH=3Dm68k CF=3D'-fdiagnostic-prefix -D__CHECK_EN= DIAN__' If you fix the issue, kindly add following tag as appropriate Reported-by: kbuild test robot All warnings (new ones prefixed by >>, old ones prefixed by <<): In file included from kernel/rcu/update.c:587: kernel/rcu/tasks.h:340:6: warning: no previous prototype for 'rcu_tasks_pos= tscan' [-Wmissing-prototypes] 340 | void rcu_tasks_postscan(void) | ^~~~~~~~~~~~~~~~~~ kernel/rcu/tasks.h:650:6: warning: no previous prototype for 'rcu_read_unlo= ck_trace_special' [-Wmissing-prototypes] 650 | void rcu_read_unlock_trace_special(struct task_struct *t) | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~ In file included from include/linux/kernel.h:14, from kernel/rcu/update.c:21: kernel/rcu/tasks.h: In function 'trc_wait_for_one_reader': kernel/rcu/tasks.h:765:42: error: 'rcu_tasks_trace' undeclared (first use i= n this function); did you mean 'rcu_tasks_rude'? 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~~~~~~ include/linux/typecheck.h:11:9: note: in definition of macro 'typecheck' 11 | typeof(x) __dummy2; | ^ kernel/rcu/tasks.h:765:22: note: in expansion of macro 'time_after' 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~ kernel/rcu/tasks.h:765:42: note: each undeclared identifier is reported onl= y once for each function it appears in 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~~~~~~ include/linux/typecheck.h:11:9: note: in definition of macro 'typecheck' 11 | typeof(x) __dummy2; | ^ kernel/rcu/tasks.h:765:22: note: in expansion of macro 'time_after' 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~ kernel/rcu/tasks.h:765:69: error: 'rcu_task_ipi_delay' undeclared (first us= e in this function) 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~= ~~~~~~~~~~~~~ include/linux/typecheck.h:11:9: note: in definition of macro 'typecheck' 11 | typeof(x) __dummy2; | ^ kernel/rcu/tasks.h:765:22: note: in expansion of macro 'time_after' 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~ include/linux/typecheck.h:12:18: warning: comparison of distinct pointer ty= pes lacks a cast 12 | (void)(&__dummy =3D=3D &__dummy2); | ^~ include/linux/jiffies.h:105:3: note: in expansion of macro 'typecheck' 105 | typecheck(unsigned long, b) && | ^~~~~~~~~ kernel/rcu/tasks.h:765:22: note: in expansion of macro 'time_after' 765 | if (task_curr(t) && time_after(jiffies, rcu_tasks_trace.gp_start + r= cu_task_ipi_delay)) { | ^~~~~~~~~~ In file included from kernel/rcu/update.c:587: kernel/rcu/tasks.h: At top level: kernel/rcu/tasks.h:977:6: warning: no previous prototype for 'synchronize_r= cu_tasks_trace' [-Wmissing-prototypes] 977 | void synchronize_rcu_tasks_trace(void) | ^~~~~~~~~~~~~~~~~~~~~~~~~~~ In file included from kernel/rcu/update.c:587: kernel/rcu/tasks.h:990:6: warning: no previous prototype for 'rcu_barrier_t= asks_trace' [-Wmissing-prototypes] 990 | void rcu_barrier_tasks_trace(void) | ^~~~~~~~~~~~~~~~~~~~~~~ >> kernel/rcu/tasks.h:1022:6: warning: no previous prototype for 'show_rcu_= tasks_gp_kthreads' [-Wmissing-prototypes] 1022 | void show_rcu_tasks_gp_kthreads(void) | ^~~~~~~~~~~~~~~~~~~~~~~~~~ vim +/show_rcu_tasks_gp_kthreads +1022 kernel/rcu/tasks.h 1021 = > 1022 void show_rcu_tasks_gp_kthreads(void) 1023 { 1024 show_rcu_tasks_classic_gp_kthread(); 1025 show_rcu_tasks_rude_gp_kthread(); 1026 show_rcu_tasks_trace_gp_kthread(); 1027 } 1028 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============2596604573153034318== Content-Type: application/gzip 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