From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============1033885252000441194==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH 2/2] sched/uclamp: Protect uclamp fast path code with static key Date: Fri, 19 Jun 2020 08:09:57 +0800 Message-ID: <202006190819.tWlejAzE%lkp@intel.com> In-Reply-To: <20200618195525.7889-3-qais.yousef@arm.com> List-Id: --===============1033885252000441194== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Qais, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on tip/sched/core] [also build test WARNING on tip/auto-latest linux/master linus/master v5.8-= rc1 next-20200618] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use as documented in https://git-scm.com/docs/git-format-patch] url: https://github.com/0day-ci/linux/commits/Qais-Yousef/sched-Optional= ly-skip-uclamp-logic-in-fast-path/20200619-035800 base: https://git.kernel.org/pub/scm/linux/kernel/git/tip/tip.git 87e867b= 4269f29dac8190bca13912d08163a277f config: x86_64-randconfig-s031-20200618 (attached as .config) compiler: gcc-9 (Debian 9.3.0-13) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-rc1-10-gc17b1b06-dirty # save the attached .config to linux build tree make W=3D1 C=3D1 ARCH=3Dx86_64 CF=3D'-fdiagnostic-prefix -D__CHECK_= ENDIAN__' If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) kernel/sched/core.c:514:38: sparse: sparse: incorrect type in initialize= r (different address spaces) @@ expected struct task_struct *curr @@ = got struct task_struct [noderef] *curr @@ kernel/sched/core.c:514:38: sparse: expected struct task_struct *curr kernel/sched/core.c:514:38: sparse: got struct task_struct [noderef]= *curr kernel/sched/core.c:569:9: sparse: sparse: incorrect type in assignment = (different address spaces) @@ expected struct sched_domain *[assigned] = sd @@ got struct sched_domain [noderef] *parent @@ kernel/sched/core.c:569:9: sparse: expected struct sched_domain *[as= signed] sd kernel/sched/core.c:569:9: sparse: got struct sched_domain [noderef]= *parent >> kernel/sched/core.c:816:1: sparse: sparse: symbol 'sched_uclamp_unused' = was not declared. Should it be static? kernel/sched/core.c:1486:33: sparse: sparse: incorrect type in argument = 1 (different address spaces) @@ expected struct task_struct *p @@ g= ot struct task_struct [noderef] *curr @@ kernel/sched/core.c:1486:33: sparse: expected struct task_struct *p kernel/sched/core.c:1486:33: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:1486:68: sparse: sparse: incorrect type in argument = 1 (different address spaces) @@ expected struct task_struct *tsk @@ = got struct task_struct [noderef] *curr @@ kernel/sched/core.c:1486:68: sparse: expected struct task_struct *tsk kernel/sched/core.c:1486:68: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:2230:17: sparse: sparse: incorrect type in assignmen= t (different address spaces) @@ expected struct sched_domain *[assigned= ] sd @@ got struct sched_domain [noderef] *parent @@ kernel/sched/core.c:2230:17: sparse: expected struct sched_domain *[= assigned] sd kernel/sched/core.c:2230:17: sparse: got struct sched_domain [nodere= f] *parent kernel/sched/core.c:2396:36: sparse: sparse: incorrect type in argument = 1 (different address spaces) @@ expected struct task_struct const *p @@= got struct task_struct [noderef] *curr @@ kernel/sched/core.c:2396:36: sparse: expected struct task_struct con= st *p kernel/sched/core.c:2396:36: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:3704:38: sparse: sparse: incorrect type in initializ= er (different address spaces) @@ expected struct task_struct *curr @@ = got struct task_struct [noderef] *curr @@ kernel/sched/core.c:3704:38: sparse: expected struct task_struct *cu= rr kernel/sched/core.c:3704:38: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:3789:14: sparse: sparse: incorrect type in assignmen= t (different address spaces) @@ expected struct task_struct *curr @@ = got struct task_struct [noderef] *curr @@ kernel/sched/core.c:3789:14: sparse: expected struct task_struct *cu= rr kernel/sched/core.c:3789:14: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:4137:14: sparse: sparse: incorrect type in assignmen= t (different address spaces) @@ expected struct task_struct *prev @@ = got struct task_struct [noderef] *curr @@ kernel/sched/core.c:4137:14: sparse: expected struct task_struct *pr= ev kernel/sched/core.c:4137:14: sparse: got struct task_struct [noderef= ] *curr kernel/sched/core.c:4560:17: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/core.c:4560:17: sparse: struct task_struct * kernel/sched/core.c:4560:17: sparse: struct task_struct [noderef] * kernel/sched/core.c:4759:22: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/core.c:4759:22: sparse: struct task_struct [noderef] * kernel/sched/core.c:4759:22: sparse: struct task_struct * kernel/sched/core.c:8068:25: sparse: sparse: incorrect type in argument = 1 (different address spaces) @@ expected struct task_struct *p @@ g= ot struct task_struct [noderef] *curr @@ kernel/sched/core.c:8068:25: sparse: expected struct task_struct *p kernel/sched/core.c:8068:25: sparse: got struct task_struct [noderef= ] *curr kernel/sched/pelt.h:85:13: sparse: sparse: incorrect type in argument 1 = (different address spaces) @@ expected struct task_struct const *p @@ = got struct task_struct [noderef] *curr @@ kernel/sched/pelt.h:85:13: sparse: expected struct task_struct const= *p kernel/sched/pelt.h:85:13: sparse: got struct task_struct [noderef] = *curr kernel/sched/core.c:1469:33: sparse: sparse: dereference of noderef expr= ession kernel/sched/core.c:1470:19: sparse: sparse: dereference of noderef expr= ession kernel/sched/core.c:1473:40: sparse: sparse: dereference of noderef expr= ession kernel/sched/sched.h:1672:25: sparse: sparse: incompatible types in comp= arison expression (different address spaces): kernel/sched/sched.h:1672:25: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1672:25: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1824:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1824:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1824:9: sparse: struct task_struct * kernel/sched/core.c:1442:38: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/core.c:1442:38: sparse: struct task_struct [noderef] * kernel/sched/core.c:1442:38: sparse: struct task_struct const * kernel/sched/sched.h:1672:25: sparse: sparse: incompatible types in comp= arison expression (different address spaces): kernel/sched/sched.h:1672:25: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1672:25: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1672:25: sparse: sparse: incompatible types in comp= arison expression (different address spaces): kernel/sched/sched.h:1672:25: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1672:25: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1824:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1824:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1824:9: sparse: struct task_struct * kernel/sched/sched.h:1672:25: sparse: sparse: incompatible types in comp= arison expression (different address spaces): kernel/sched/sched.h:1672:25: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1672:25: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1824:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1824:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1824:9: sparse: struct task_struct * kernel/sched/sched.h:1672:25: sparse: sparse: incompatible types in comp= arison expression (different address spaces): kernel/sched/sched.h:1672:25: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1672:25: sparse: struct task_struct * kernel/sched/sched.h:1818:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1818:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1818:9: sparse: struct task_struct * kernel/sched/sched.h:1824:9: sparse: sparse: incompatible types in compa= rison expression (different address spaces): kernel/sched/sched.h:1824:9: sparse: struct task_struct [noderef] * kernel/sched/sched.h:1824:9: sparse: struct task_struct * 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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