From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0871383043216264314==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [zen:5.14/prjc 199/226] kernel/sched/alt_core.c:121:1: sparse: sparse: symbol '__pcpu_scope_sched_cpu_topo_end_mask' was not declared. Should it be static? Date: Tue, 28 Sep 2021 16:46:00 +0800 Message-ID: <202109281634.RSNJ4K1z-lkp@intel.com> List-Id: --===============0871383043216264314== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/zen-kernel/zen-kernel 5.14/prjc head: bd5633e4daf64e2d775c0ba61a7f68f1a794ce38 commit: 8e79ff69bdee272975f92e45e8b4ecf0690b636e [199/226] sched/alt: [Sync= ] 2f064a59a11f sched: Change task_struct::state config: i386-randconfig-s002-20210927 (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.4-dirty # https://github.com/zen-kernel/zen-kernel/commit/8e79ff69bdee27297= 5f92e45e8b4ecf0690b636e git remote add zen https://github.com/zen-kernel/zen-kernel git fetch --no-tags zen 5.14/prjc git checkout 8e79ff69bdee272975f92e45e8b4ecf0690b636e # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' O=3D= build_dir ARCH=3Di386 SHELL=3D/bin/bash kernel/sched/ If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> kernel/sched/alt_core.c:121:1: sparse: sparse: symbol '__pcpu_scope_sche= d_cpu_topo_end_mask' was not declared. Should it be static? >> kernel/sched/alt_core.c:133:1: sparse: sparse: symbol '__pcpu_scope_sd_l= lc_id' was not declared. Should it be static? >> kernel/sched/alt_core.c:832:38: sparse: sparse: incorrect type in initia= lizer (different address spaces) @@ expected struct task_struct *curr @= @ got struct task_struct [noderef] __rcu *curr @@ kernel/sched/alt_core.c:832:38: sparse: expected struct task_struct = *curr kernel/sched/alt_core.c:832:38: sparse: got struct task_struct [node= ref] __rcu *curr >> kernel/sched/alt_core.c:868:6: sparse: sparse: symbol 'select_nohz_load_= balancer' was not declared. Should it be static? >> kernel/sched/alt_core.c:1539:45: sparse: sparse: incompatible types in c= omparison expression (different address spaces): >> kernel/sched/alt_core.c:1539:45: sparse: struct task_struct * >> kernel/sched/alt_core.c:1539:45: sparse: struct task_struct [noderef]= __rcu * >> kernel/sched/alt_core.c:2124:36: sparse: sparse: incorrect type in argum= ent 1 (different address spaces) @@ expected struct task_struct const *= p @@ got struct task_struct [noderef] __rcu *curr @@ kernel/sched/alt_core.c:2124:36: sparse: expected struct task_struct= const *p kernel/sched/alt_core.c:2124:36: sparse: got struct task_struct [nod= eref] __rcu *curr >> kernel/sched/alt_core.c:2692:47: sparse: sparse: incorrect type in argum= ent 3 (different address spaces) @@ expected void * @@ got void [no= deref] __user *buffer @@ kernel/sched/alt_core.c:2692:47: sparse: expected void * kernel/sched/alt_core.c:2692:47: sparse: got void [noderef] __user *= buffer kernel/sched/alt_core.c:2680:5: sparse: sparse: symbol 'sysctl_schedstat= s' redeclared with different type (incompatible argument 3 (different addre= ss spaces)): >> kernel/sched/alt_core.c:2680:5: sparse: int extern [addressable] [sig= ned] [toplevel] sysctl_schedstats( ... ) kernel/sched/alt_core.c: note: in included file (through kernel/sched/al= t_sched.h, kernel/sched/sched.h): include/linux/sched/sysctl.h:93:5: sparse: note: previously declared as: >> include/linux/sched/sysctl.h:93:5: sparse: int extern [addressable] [= signed] [toplevel] sysctl_schedstats( ... ) >> kernel/sched/alt_core.c:6276:43: sparse: sparse: incorrect type in initi= alizer (different address spaces) @@ expected struct task_struct *push_= task @@ got struct task_struct [noderef] __rcu *curr @@ kernel/sched/alt_core.c:6276:43: sparse: expected struct task_struct= *push_task kernel/sched/alt_core.c:6276:43: sparse: got struct task_struct [nod= eref] __rcu *curr kernel/sched/alt_core.c:3382:15: sparse: sparse: incompatible types in c= omparison expression (different address spaces): kernel/sched/alt_core.c:3382:15: sparse: struct task_struct * kernel/sched/alt_core.c:3382:15: sparse: struct task_struct [noderef]= __rcu * >> kernel/sched/alt_core.c:4075:14: sparse: sparse: incorrect type in assig= nment (different address spaces) @@ expected struct task_struct *prev @= @ got struct task_struct [noderef] __rcu *curr @@ kernel/sched/alt_core.c:4075:14: sparse: expected struct task_struct= *prev kernel/sched/alt_core.c:4075:14: sparse: got struct task_struct [nod= eref] __rcu *curr kernel/sched/alt_core.c:4677:17: sparse: sparse: incompatible types in c= omparison expression (different address spaces): kernel/sched/alt_core.c:4677:17: sparse: struct task_struct * kernel/sched/alt_core.c:4677:17: sparse: struct task_struct [noderef]= __rcu * kernel/sched/alt_core.c:4814:22: sparse: sparse: incompatible types in c= omparison expression (different address spaces): kernel/sched/alt_core.c:4814:22: sparse: struct task_struct [noderef]= __rcu * kernel/sched/alt_core.c:4814:22: sparse: struct task_struct * >> kernel/sched/alt_core.c:6118:25: sparse: sparse: incorrect type in argum= ent 1 (different address spaces) @@ expected struct task_struct *p @@ = got struct task_struct [noderef] __rcu *curr @@ kernel/sched/alt_core.c:6118:25: sparse: expected struct task_struct= *p kernel/sched/alt_core.c:6118:25: sparse: got struct task_struct [nod= eref] __rcu *curr kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:1497:38: sparse: sparse: incompatible types in c= omparison expression (different address spaces): kernel/sched/alt_core.c:1497:38: sparse: struct task_struct [noderef]= __rcu * >> kernel/sched/alt_core.c:1497:38: sparse: struct task_struct const * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * kernel/sched/alt_core.c:977:37: sparse: sparse: incompatible types in co= mparison expression (different address spaces): kernel/sched/alt_core.c:977:37: sparse: struct task_struct * kernel/sched/alt_core.c:977:37: sparse: struct task_struct [noderef] = __rcu * Please review and possibly fold the followup patch. --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org 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