From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============3101525410317847858==" MIME-Version: 1.0 From: kernel test robot Subject: Re: [PATCH v4 1/4] mm: support deterministic memory charging of filesystems Date: Tue, 23 Nov 2021 04:43:58 +0800 Message-ID: <202111230401.IO8MFSQM-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============3101525410317847858== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org In-Reply-To: <20211120045011.3074840-2-almasrymina@google.com> References: <20211120045011.3074840-2-almasrymina@google.com> TO: Mina Almasry TO: Alexander Viro TO: Andrew Morton CC: Linux Memory Management List TO: Johannes Weiner TO: Michal Hocko TO: Vladimir Davydov TO: Hugh Dickins CC: Mina Almasry CC: Jonathan Corbet CC: Shuah Khan Hi Mina, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on hnaz-mm/master] [also build test WARNING on linus/master v5.16-rc2 next-20211118] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use '--base' as documented in https://git-scm.com/docs/git-format-patch] url: https://github.com/0day-ci/linux/commits/Mina-Almasry/Deterministic= -charging-of-shared-memory/20211120-125229 base: https://github.com/hnaz/linux-mm master :::::: branch date: 3 days ago :::::: commit date: 3 days ago config: i386-randconfig-s002-20211122 (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/0day-ci/linux/commit/5ecf5e613f50d859803aae9bc= 6f8295cb199701d git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Mina-Almasry/Deterministic-chargin= g-of-shared-memory/20211120-125229 git checkout 5ecf5e613f50d859803aae9bc6f8295cb199701d # 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 >>) mm/memcontrol.c:2644:17: sparse: sparse: incompatible types in compariso= n expression (different address spaces): >> mm/memcontrol.c:2644:17: sparse: struct mem_cgroup [noderef] __rcu * >> mm/memcontrol.c:2644:17: sparse: struct mem_cgroup * mm/memcontrol.c:2699:17: sparse: sparse: incompatible types in compariso= n expression (different address spaces): mm/memcontrol.c:2699:17: sparse: struct mem_cgroup [noderef] __rcu * mm/memcontrol.c:2699:17: sparse: struct mem_cgroup * mm/memcontrol.c:4192:21: sparse: sparse: incompatible types in compariso= n expression (different address spaces): mm/memcontrol.c:4192:21: sparse: struct mem_cgroup_threshold_ary [nod= eref] __rcu * mm/memcontrol.c:4192:21: sparse: struct mem_cgroup_threshold_ary * mm/memcontrol.c:4194:21: sparse: sparse: incompatible types in compariso= n expression (different address spaces): mm/memcontrol.c:4194:21: sparse: struct mem_cgroup_threshold_ary [nod= eref] __rcu * mm/memcontrol.c:4194:21: sparse: struct mem_cgroup_threshold_ary * mm/memcontrol.c:4350:9: sparse: sparse: incompatible types in comparison= expression (different address spaces): mm/memcontrol.c:4350:9: sparse: struct mem_cgroup_threshold_ary [node= ref] __rcu * mm/memcontrol.c:4350:9: sparse: struct mem_cgroup_threshold_ary * mm/memcontrol.c:4444:9: sparse: sparse: incompatible types in comparison= expression (different address spaces): mm/memcontrol.c:4444:9: sparse: struct mem_cgroup_threshold_ary [node= ref] __rcu * mm/memcontrol.c:4444:9: sparse: struct mem_cgroup_threshold_ary * mm/memcontrol.c:6059:23: sparse: sparse: incompatible types in compariso= n expression (different address spaces): mm/memcontrol.c:6059:23: sparse: struct task_struct [noderef] __rcu * mm/memcontrol.c:6059:23: sparse: struct task_struct * mm/memcontrol.c: note: in included file: include/linux/memcontrol.h:779:9: sparse: sparse: context imbalance in '= folio_lruvec_lock' - wrong count at exit include/linux/memcontrol.h:779:9: sparse: sparse: context imbalance in '= folio_lruvec_lock_irq' - wrong count at exit include/linux/memcontrol.h:779:9: sparse: sparse: context imbalance in '= folio_lruvec_lock_irqsave' - wrong count at exit mm/memcontrol.c:2019:6: sparse: sparse: context imbalance in 'folio_memc= g_lock' - wrong count at exit mm/memcontrol.c:2071:17: sparse: sparse: context imbalance in '__folio_m= emcg_unlock' - unexpected unlock mm/memcontrol.c:5910:28: sparse: sparse: context imbalance in 'mem_cgrou= p_count_precharge_pte_range' - unexpected unlock mm/memcontrol.c:6104:36: sparse: sparse: context imbalance in 'mem_cgrou= p_move_charge_pte_range' - unexpected unlock vim +2644 mm/memcontrol.c 5ecf5e613f50d8 Mina Almasry 2021-11-19 2630 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2631 void mem_cgroup_put_name_in_s= eq(struct seq_file *m, struct super_block *sb) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2632 { 5ecf5e613f50d8 Mina Almasry 2021-11-19 2633 struct mem_cgroup *memcg; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2634 int ret =3D 0; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2635 char *buf =3D __getname(); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2636 int len =3D PATH_MAX; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2637 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2638 if (!buf) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2639 return; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2640 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2641 buf[0] =3D '\0'; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2642 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2643 rcu_read_lock(); 5ecf5e613f50d8 Mina Almasry 2021-11-19 @2644 memcg =3D rcu_dereference(sb= ->s_memcg_to_charge); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2645 if (memcg && !css_tryget_onl= ine(&memcg->css)) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2646 memcg =3D NULL; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2647 rcu_read_unlock(); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2648 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2649 if (!memcg) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2650 return; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2651 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2652 ret =3D cgroup_path(memcg->c= ss.cgroup, buf + len / 2, len / 2); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2653 if (ret >=3D len / 2) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2654 strcpy(buf, "?"); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2655 else { 5ecf5e613f50d8 Mina Almasry 2021-11-19 2656 char *p =3D mangle_path(buf= , buf + len / 2, " \t\n\\"); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2657 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2658 if (p) 5ecf5e613f50d8 Mina Almasry 2021-11-19 2659 *p =3D '\0'; 5ecf5e613f50d8 Mina Almasry 2021-11-19 2660 else 5ecf5e613f50d8 Mina Almasry 2021-11-19 2661 strcpy(buf, "?"); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2662 } 5ecf5e613f50d8 Mina Almasry 2021-11-19 2663 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2664 css_put(&memcg->css); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2665 if (buf[0] !=3D '\0') 5ecf5e613f50d8 Mina Almasry 2021-11-19 2666 seq_printf(m, ",memcg=3D%s"= , buf); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2667 = 5ecf5e613f50d8 Mina Almasry 2021-11-19 2668 __putname(buf); 5ecf5e613f50d8 Mina Almasry 2021-11-19 2669 } 5ecf5e613f50d8 Mina Almasry 2021-11-19 2670 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============3101525410317847858== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICMrdm2EAAy5jb25maWcAjDxJc9w2s/f8iinnkhycaLEdp17pAJIgBxmCoAFwFl1QsjzOp4ot 5Wl5X/zvXzfABQDBcXJwNN2NxtboDQ3++MOPK/Ly/PD15vnu9ubLl2+rP4/3x8eb5+On1ee7L8f/ WRVi1Qi9ogXTvwBxfXf/8s+vd5fv363e/nL+9pez14+3v73++vV8tTk+3h+/rPKH+893f74Ai7uH +x9+/CEXTckqk+dmS6ViojGa7vXVqz9vb1//vvqpOH68u7lf/f7LJbC6uPjZ/fXKa8aUqfL86tsA qiZWV7+fXZ6djbQ1aaoRNYKJsiyabmIBoIHs4vLt2cUArwskzcpiIgVQmtRDnHmjzUljatZsJg4e 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