From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5668439965569904223==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [android-common:android12-5.10 1/1] include/trace/hooks/vmscan.h:28:1: sparse: sparse: incorrect type in assignment (different address spaces) Date: Mon, 20 Sep 2021 00:22:46 +0800 Message-ID: <202109200044.UuMSLGZP-lkp@intel.com> List-Id: --===============5668439965569904223== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://android.googlesource.com/kernel/common android12-5.10 head: 2699fa478d527f6fa26ef6ba6d70b704fd71841e commit: 2699fa478d527f6fa26ef6ba6d70b704fd71841e [1/1] ANDROID: mm: vmscan:= support equal reclaim for anon and file pages config: i386-randconfig-s001-20210918 (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 git remote add android-common https://android.googlesource.com/kern= el/common git fetch --no-tags android-common android12-5.10 git checkout 2699fa478d527f6fa26ef6ba6d70b704fd71841e # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH= =3Di386 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) include/trace/hooks/sched.h:322:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:322:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:322:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:326:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:326:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:326:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:333:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:333:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:333:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:337:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:337:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:337:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:341:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:341:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:341:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:345:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:345:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:345:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:349:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:349:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:349:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/sched.h:369:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/sched.h:369:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/sched.h:369:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/gic_v3.h): include/trace/hooks/gic_v3.h:18:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/gic_v3.h:18:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/gic_v3.h:18:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/cpufreq.h): include/trace/hooks/cpufreq.h:27:1: sparse: sparse: incorrect type in as= signment (different address spaces) @@ expected struct tracepoint_func = *it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/cpufreq.h:27:1: sparse: expected struct tracepoi= nt_func *it_func_ptr include/trace/hooks/cpufreq.h:27:1: sparse: got struct tracepoint_fu= nc [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/mm.h): include/trace/hooks/mm.h:19:1: sparse: sparse: incorrect type in assignm= ent (different address spaces) @@ expected struct tracepoint_func *it_f= unc_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/mm.h:19:1: sparse: expected struct tracepoint_fu= nc *it_func_ptr include/trace/hooks/mm.h:19:1: sparse: got struct tracepoint_func [n= oderef] __rcu *funcs include/trace/hooks/mm.h:22:1: sparse: sparse: incorrect type in assignm= ent (different address spaces) @@ expected struct tracepoint_func *it_f= unc_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/mm.h:22:1: sparse: expected struct tracepoint_fu= nc *it_func_ptr include/trace/hooks/mm.h:22:1: sparse: got struct tracepoint_func [n= oderef] __rcu *funcs include/trace/hooks/mm.h:25:1: sparse: sparse: incorrect type in assignm= ent (different address spaces) @@ expected struct tracepoint_func *it_f= unc_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/mm.h:25:1: sparse: expected struct tracepoint_fu= nc *it_func_ptr include/trace/hooks/mm.h:25:1: sparse: got struct tracepoint_func [n= oderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/preemptirq.h): include/trace/hooks/preemptirq.h:14:1: sparse: sparse: incorrect type in= assignment (different address spaces) @@ expected struct tracepoint_fu= nc *it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/preemptirq.h:14:1: sparse: expected struct trace= point_func *it_func_ptr include/trace/hooks/preemptirq.h:14:1: sparse: got struct tracepoint= _func [noderef] __rcu *funcs include/trace/hooks/preemptirq.h:18:1: sparse: sparse: incorrect type in= assignment (different address spaces) @@ expected struct tracepoint_fu= nc *it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/preemptirq.h:18:1: sparse: expected struct trace= point_func *it_func_ptr include/trace/hooks/preemptirq.h:18:1: sparse: got struct tracepoint= _func [noderef] __rcu *funcs include/trace/hooks/preemptirq.h:22:1: sparse: sparse: incorrect type in= assignment (different address spaces) @@ expected struct tracepoint_fu= nc *it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/preemptirq.h:22:1: sparse: expected struct trace= point_func *it_func_ptr include/trace/hooks/preemptirq.h:22:1: sparse: got struct tracepoint= _func [noderef] __rcu *funcs include/trace/hooks/preemptirq.h:26:1: sparse: sparse: incorrect type in= assignment (different address spaces) @@ expected struct tracepoint_fu= nc *it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/preemptirq.h:26:1: sparse: expected struct trace= point_func *it_func_ptr include/trace/hooks/preemptirq.h:26:1: sparse: got struct tracepoint= _func [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/bug.h): include/trace/hooks/bug.h:14:1: sparse: sparse: incorrect type in assign= ment (different address spaces) @@ expected struct tracepoint_func *it_= func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/bug.h:14:1: sparse: expected struct tracepoint_f= unc *it_func_ptr include/trace/hooks/bug.h:14:1: sparse: got struct tracepoint_func [= noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/fault.h): include/trace/hooks/fault.h:15:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/fault.h:15:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/fault.h:15:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/fault.h:19:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/fault.h:19:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/fault.h:19:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/fault.h:23:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/fault.h:23:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/fault.h:23:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/fault.h:27:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/fault.h:27:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/fault.h:27:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/cgroup.h): include/trace/hooks/cgroup.h:15:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/cgroup.h:15:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/cgroup.h:15:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/cgroup.h:18:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/cgroup.h:18:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/cgroup.h:18:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs include/trace/hooks/cgroup.h:21:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/cgroup.h:21:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/cgroup.h:21:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/traps.h): include/trace/hooks/traps.h:15:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/traps.h:15:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/traps.h:15:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/traps.h:20:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/traps.h:20:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/traps.h:20:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/traps.h:24:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/traps.h:24:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/traps.h:24:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/typec.h): include/trace/hooks/typec.h:32:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/typec.h:32:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/typec.h:32:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs include/trace/hooks/typec.h:43:1: sparse: sparse: incorrect type in assi= gnment (different address spaces) @@ expected struct tracepoint_func *i= t_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/typec.h:43:1: sparse: expected struct tracepoint= _func *it_func_ptr include/trace/hooks/typec.h:43:1: sparse: got struct tracepoint_func= [noderef] __rcu *funcs drivers/android/vendor_hooks.c: note: in included file (through include/= trace/define_trace.h, include/trace/hooks/vmscan.h): >> include/trace/hooks/vmscan.h:28:1: sparse: sparse: incorrect type in ass= ignment (different address spaces) @@ expected struct tracepoint_func *= it_func_ptr @@ got struct tracepoint_func [noderef] __rcu *funcs @@ include/trace/hooks/vmscan.h:28:1: sparse: expected struct tracepoin= t_func *it_func_ptr include/trace/hooks/vmscan.h:28:1: sparse: got struct tracepoint_fun= c [noderef] __rcu *funcs vim +28 include/trace/hooks/vmscan.h 12 = 13 DECLARE_HOOK(android_vh_tune_scan_type, 14 TP_PROTO(char *scan_type), 15 TP_ARGS(scan_type)); 16 DECLARE_HOOK(android_vh_tune_swappiness, 17 TP_PROTO(int *swappiness), 18 TP_ARGS(swappiness)); 19 DECLARE_HOOK(android_vh_shrink_slab_bypass, 20 TP_PROTO(gfp_t gfp_mask, int nid, struct mem_cgroup *memcg, int pri= ority, bool *bypass), 21 TP_ARGS(gfp_mask, nid, memcg, priority, bypass)); 22 DECLARE_HOOK(android_vh_tune_inactive_ratio, 23 TP_PROTO(unsigned long *inactive_ratio, int file), 24 TP_ARGS(inactive_ratio, file)) 25 DECLARE_HOOK(android_vh_do_shrink_slab, 26 TP_PROTO(struct shrinker *shrinker, struct shrink_control *shrinkct= l, int priority), 27 TP_ARGS(shrinker, shrinkctl, priority)); > 28 DECLARE_RESTRICTED_HOOK(android_rvh_set_balance_anon_file_reclaim, --- 0-DAY CI Kernel Test Service, Intel Corporation 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