From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2879701744149880747==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH RFC] sched/fair: Penalty the cfs task which executes mwait/hlt Date: Fri, 10 Jan 2020 20:34:56 +0800 Message-ID: <202001102013.cLghskDb%lkp@intel.com> In-Reply-To: <1578448201-28218-1-git-send-email-wanpengli@tencent.com> List-Id: --===============2879701744149880747== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Wanpeng, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on tip/sched/core] [also build test WARNING on tip/x86/core tip/auto-latest v5.5-rc5 next-2020= 0109] [if your patch is applied to the wrong git tree, please drop us a note to h= elp improve the system. BTW, we also suggest to use '--base' option to specify = the base tree in git format-patch, please see https://stackoverflow.com/a/37406= 982] url: https://github.com/0day-ci/linux/commits/Wanpeng-Li/sched-fair-Pena= lty-the-cfs-task-which-executes-mwait-hlt/20200109-183245 base: https://git.kernel.org/pub/scm/linux/kernel/git/tip/tip.git 804d402= fb6f6487b825aae8cf42fda6426c62867 config: sparc64-randconfig-a001-20200109 (attached as .config) compiler: sparc64-linux-gcc (GCC) 7.5.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # save the attached .config to linux build tree GCC_VERSION=3D7.5.0 make.cross ARCH=3Dsparc64 = If you fix the issue, kindly add following tag Reported-by: kbuild test robot All warnings (new ones prefixed by >>): In file included from arch/sparc/include/asm/bug.h:6:0, from include/linux/bug.h:5, from include/linux/thread_info.h:12, from arch/sparc/include/asm/current.h:15, from include/linux/sched.h:12, from kernel//sched/sched.h:5, from kernel//sched/fair.c:23: kernel//sched/fair.c: In function 'check_preempt_tick': kernel//sched/fair.c:4157:48: error: 'cpu_is_idle' undeclared (first use= in this function); did you mean 'cpu_in_idle'? if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^ include/linux/compiler.h:58:52: note: in definition of macro '__trace_if= _var' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __t= race_if_value(cond)) ^~~~ >> kernel//sched/fair.c:4157:2: note: in expansion of macro 'if' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~ >> include/linux/percpu-defs.h:508:29: note: in expansion of macro '__pcpu_= size_call_return' #define this_cpu_read(pcp) __pcpu_size_call_return(this_cpu_read_, pcp) ^~~~~~~~~~~~~~~~~~~~~~~ kernel//sched/fair.c:4157:34: note: in expansion of macro 'this_cpu_read' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~~~~~~~~~~~~ kernel//sched/fair.c:4157:48: note: each undeclared identifier is report= ed only once for each function it appears in if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^ include/linux/compiler.h:58:52: note: in definition of macro '__trace_if= _var' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __t= race_if_value(cond)) ^~~~ >> kernel//sched/fair.c:4157:2: note: in expansion of macro 'if' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~ >> include/linux/percpu-defs.h:508:29: note: in expansion of macro '__pcpu_= size_call_return' #define this_cpu_read(pcp) __pcpu_size_call_return(this_cpu_read_, pcp) ^~~~~~~~~~~~~~~~~~~~~~~ kernel//sched/fair.c:4157:34: note: in expansion of macro 'this_cpu_read' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~~~~~~~~~~~~ -- In file included from arch/sparc/include/asm/bug.h:6:0, from include/linux/bug.h:5, from include/linux/thread_info.h:12, from arch/sparc/include/asm/current.h:15, from include/linux/sched.h:12, from kernel/sched/sched.h:5, from kernel/sched/fair.c:23: kernel/sched/fair.c: In function 'check_preempt_tick': kernel/sched/fair.c:4157:48: error: 'cpu_is_idle' undeclared (first use = in this function); did you mean 'cpu_in_idle'? if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^ include/linux/compiler.h:58:52: note: in definition of macro '__trace_if= _var' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __t= race_if_value(cond)) ^~~~ kernel/sched/fair.c:4157:2: note: in expansion of macro 'if' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~ >> include/linux/percpu-defs.h:508:29: note: in expansion of macro '__pcpu_= size_call_return' #define this_cpu_read(pcp) __pcpu_size_call_return(this_cpu_read_, pcp) ^~~~~~~~~~~~~~~~~~~~~~~ kernel/sched/fair.c:4157:34: note: in expansion of macro 'this_cpu_read' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~~~~~~~~~~~~ kernel/sched/fair.c:4157:48: note: each undeclared identifier is reporte= d only once for each function it appears in if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^ include/linux/compiler.h:58:52: note: in definition of macro '__trace_if= _var' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __t= race_if_value(cond)) ^~~~ kernel/sched/fair.c:4157:2: note: in expansion of macro 'if' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~ >> include/linux/percpu-defs.h:508:29: note: in expansion of macro '__pcpu_= size_call_return' #define this_cpu_read(pcp) __pcpu_size_call_return(this_cpu_read_, pcp) ^~~~~~~~~~~~~~~~~~~~~~~ kernel/sched/fair.c:4157:34: note: in expansion of macro 'this_cpu_read' if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && ^~~~~~~~~~~~~ vim +/if +4157 kernel//sched/fair.c 4142 = 4143 /* 4144 * Preempt the current task with a newly woken task if needed: 4145 */ 4146 static void 4147 check_preempt_tick(struct cfs_rq *cfs_rq, struct sched_entity *curr) 4148 { 4149 unsigned long ideal_runtime, delta_exec; 4150 struct sched_entity *se; 4151 s64 delta; 4152 bool resched =3D false; 4153 = 4154 ideal_runtime =3D sched_slice(cfs_rq, curr); 4155 delta_exec =3D curr->sum_exec_runtime - curr->prev_sum_exec_runtime; 4156 = > 4157 if (sched_feat(IDLE_PENALTY) && this_cpu_read(cpu_is_idle) && 4158 (ideal_runtime > delta_exec)) { 4159 curr->vruntime +=3D calc_delta_fair(ideal_runtime - delta_exec, cu= rr); 4160 update_min_vruntime(cfs_rq); 4161 resched =3D true; 4162 } 4163 if (delta_exec > ideal_runtime || resched) { 4164 resched_curr(rq_of(cfs_rq)); 4165 /* 4166 * The current task ran long enough, ensure it doesn't get 4167 * re-elected due to buddy favours. 4168 */ 4169 clear_buddies(cfs_rq, curr); 4170 return; 4171 } 4172 = 4173 /* 4174 * Ensure that a task that missed wakeup preemption by a 4175 * narrow margin doesn't have to wait for a full slice. 4176 * This also mitigates buddy induced latencies under load. 4177 */ 4178 if (delta_exec < sysctl_sched_min_granularity) 4179 return; 4180 = 4181 se =3D __pick_first_entity(cfs_rq); 4182 delta =3D curr->vruntime - se->vruntime; 4183 = 4184 if (delta < 0) 4185 return; 4186 = 4187 if (delta > ideal_runtime) 4188 resched_curr(rq_of(cfs_rq)); 4189 } 4190 = --- 0-DAY 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