From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============4689264260976297996==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: Re: [RFC v6 3/5] sched/fair: Tune task wake-up logic to pack small background tasks on fewer cores Date: Fri, 24 Jan 2020 11:53:11 +0800 Message-ID: <202001241134.RSpx6QDP%lkp@intel.com> In-Reply-To: <20200121063307.17221-4-parth@linux.ibm.com> List-Id: --===============4689264260976297996== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Parth, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on tip/sched/core] [also build test WARNING on powerpc/next tip/auto-latest linux/master linus= /master v5.5-rc7 next-20200122] [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/Parth-Shah/TurboSched-A-sc= heduler-for-sustaining-Turbo-Frequencies-for-longer-durations/20200124-0414= 28 base: https://git.kernel.org/pub/scm/linux/kernel/git/tip/tip.git afa70d9= 41f663c69c9a64ec1021bbcfa82f0e54a config: sparc64-randconfig-a001-20200124 (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 'is_small_bg_task': kernel/sched/sched.h:2484:45: error: 'struct task_struct' has no member = named 'latency_nice'; did you mean 'latency_record'? #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^ 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:5910:2: note: in expansion of macro 'if' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~ kernel/sched/sched.h:2484:25: note: in expansion of macro 'bgtask_latenc= y' #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^~~~~~~~~~~~~~ kernel/sched/fair.c:5910:6: note: in expansion of macro 'is_bg_task' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~~~~~~~~~ kernel/sched/sched.h:2483:39: error: 'MAX_LATENCY_NICE' undeclared (firs= t use in this function); did you mean 'MAX_CFTYPE_NAME'? #define bgtask_latency(lat) ((lat) =3D=3D MAX_LATENCY_NICE) ^ 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:5910:2: note: in expansion of macro 'if' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~ kernel/sched/sched.h:2484:25: note: in expansion of macro 'bgtask_latenc= y' #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^~~~~~~~~~~~~~ kernel/sched/fair.c:5910:6: note: in expansion of macro 'is_bg_task' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~~~~~~~~~ kernel/sched/sched.h:2483:39: note: each undeclared identifier is report= ed only once for each function it appears in #define bgtask_latency(lat) ((lat) =3D=3D MAX_LATENCY_NICE) ^ 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:5910:2: note: in expansion of macro 'if' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~ kernel/sched/sched.h:2484:25: note: in expansion of macro 'bgtask_latenc= y' #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^~~~~~~~~~~~~~ kernel/sched/fair.c:5910:6: note: in expansion of macro 'is_bg_task' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~~~~~~~~~ kernel/sched/sched.h:2484:45: error: 'struct task_struct' has no member = named 'latency_nice'; did you mean 'latency_record'? #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^ include/linux/compiler.h:58:61: 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:5910:2: note: in expansion of macro 'if' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~ kernel/sched/sched.h:2484:25: note: in expansion of macro 'bgtask_latenc= y' #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^~~~~~~~~~~~~~ kernel/sched/fair.c:5910:6: note: in expansion of macro 'is_bg_task' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~~~~~~~~~ kernel/sched/sched.h:2484:45: error: 'struct task_struct' has no member = named 'latency_nice'; did you mean 'latency_record'? #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^ include/linux/compiler.h:69:3: note: in definition of macro '__trace_if_= value' (cond) ? \ ^~~~ include/linux/compiler.h:56:28: note: in expansion of macro '__trace_if_= var' #define if(cond, ...) if ( __trace_if_var( !!(cond , ## __VA_ARGS__) ) ) ^~~~~~~~~~~~~~ >> kernel/sched/fair.c:5910:2: note: in expansion of macro 'if' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~ kernel/sched/sched.h:2484:25: note: in expansion of macro 'bgtask_latenc= y' #define is_bg_task(p) (bgtask_latency((p)->latency_nice)) ^~~~~~~~~~~~~~ kernel/sched/fair.c:5910:6: note: in expansion of macro 'is_bg_task' if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) ^~~~~~~~~~ vim +/if +5910 kernel/sched/fair.c 5903 = 5904 /* 5905 * Classify small background tasks with higher latency_nice value fo= r task 5906 * packing. 5907 */ 5908 static inline bool is_small_bg_task(struct task_struct *p) 5909 { > 5910 if (is_bg_task(p) && (task_util(p) > (SCHED_CAPACITY_SCALE >> 3))) 5911 return true; 5912 = 5913 return false; 5914 } 5915 = --- 0-DAY kernel test infrastructure Open Source Technology Cen= ter https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org Intel Corpor= ation --===============4689264260976297996== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 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