From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============1917827581734771019==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [linux-stable-rc:linux-4.4.y 8875/9999] arch/x86/kvm/pmu_intel.c:93:10: warning: comparison of integers of different signs: 'int' and 'size_t' (aka 'unsigned long') Date: Thu, 10 Dec 2020 11:43:25 +0800 Message-ID: <202012101119.0UvsowFb-lkp@intel.com> List-Id: --===============1917827581734771019== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/stable/linux-stable= -rc.git linux-4.4.y head: 95a3867e897abd7811196123f81a119a75aba863 commit: c3ccf2fdfc89871042659ae1463fd1d9665fdfef [8875/9999] KVM: x86: Prot= ect pmu_intel.c from Spectre-v1/L1TF attacks config: x86_64-randconfig-a016-20201208 (attached as .config) compiler: clang version 12.0.0 (https://github.com/llvm/llvm-project a2f922= 140f5380571fb74179f2bf622b3b925697) reproduce (this is a W=3D1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # install x86_64 cross compiling tool for clang build # apt-get install binutils-x86-64-linux-gnu # https://git.kernel.org/pub/scm/linux/kernel/git/stable/linux-stab= le-rc.git/commit/?id=3Dc3ccf2fdfc89871042659ae1463fd1d9665fdfef git remote add linux-stable-rc https://git.kernel.org/pub/scm/linux= /kernel/git/stable/linux-stable-rc.git git fetch --no-tags linux-stable-rc linux-4.4.y git checkout c3ccf2fdfc89871042659ae1463fd1d9665fdfef # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): arch/x86/include/asm/uaccess.h:772:26: warning: comparison of integers o= f different signs: 'int' and 'unsigned long' [-Wsign-compare] if (likely(sz < 0 || sz >=3D n)) ~~ ^ ~ include/linux/compiler.h:150:73: note: expanded from macro 'likely' # define likely(x) (__builtin_constant_p(x) ? !!(x) : __branch_chec= k__(x, 1)) = ^ include/linux/compiler.h:139:29: note: expanded from macro '__branch_che= ck__' ______r =3D likely_notrace(x); = \ ^ include/linux/compiler.h:126:47: note: expanded from macro 'likely_notra= ce' #define likely_notrace(x) __builtin_expect(!!(x), 1) ^ In file included from arch/x86/kvm/pmu_intel.c:15: In file included from include/linux/kvm_host.h:10: In file included from include/linux/hardirq.h:8: In file included from arch/x86/include/asm/hardirq.h:5: In file included from include/linux/irq.h:418: In file included from arch/x86/include/asm/hw_irq.h:26: In file included from arch/x86/include/asm/sections.h:5: arch/x86/include/asm/uaccess.h:772:26: warning: comparison of integers o= f different signs: 'int' and 'unsigned long' [-Wsign-compare] if (likely(sz < 0 || sz >=3D n)) ~~ ^ ~ include/linux/compiler.h:150:43: note: expanded from macro 'likely' # define likely(x) (__builtin_constant_p(x) ? !!(x) : __branch_chec= k__(x, 1)) ^ In file included from arch/x86/kvm/pmu_intel.c:15: In file included from include/linux/kvm_host.h:10: In file included from include/linux/hardirq.h:8: In file included from arch/x86/include/asm/hardirq.h:5: In file included from include/linux/irq.h:418: In file included from arch/x86/include/asm/hw_irq.h:26: In file included from arch/x86/include/asm/sections.h:5: arch/x86/include/asm/uaccess.h:772:26: warning: comparison of integers o= f different signs: 'int' and 'unsigned long' [-Wsign-compare] if (likely(sz < 0 || sz >=3D n)) ~~ ^ ~ include/linux/compiler.h:150:51: note: expanded from macro 'likely' # define likely(x) (__builtin_constant_p(x) ? !!(x) : __branch_chec= k__(x, 1)) ^ In file included from arch/x86/kvm/pmu_intel.c:15: In file included from include/linux/kvm_host.h:15: In file included from include/linux/sched.h:61: In file included from include/linux/cgroup-defs.h:16: include/linux/percpu-refcount.h:177:3: warning: comparison of integers o= f different signs: 'unsigned long' and 'int' [-Wsign-compare] this_cpu_add(*percpu_count, nr); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/percpu-defs.h:526:33: note: expanded from macro 'this_cpu_= add' #define this_cpu_add(pcp, val) __pcpu_size_call(this_cpu_add_, = pcp, val) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~~~~~~~~ include/linux/percpu-defs.h:397:11: note: expanded from macro '__pcpu_si= ze_call' case 8: stem##8(variable, __VA_ARGS__);break; \ ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ :261:1: note: expanded from here this_cpu_add_8 ^ arch/x86/include/asm/percpu.h:478:35: note: expanded from macro 'this_cp= u_add_8' #define this_cpu_add_8(pcp, val) percpu_add_op((pcp), val) ^~~~~~~~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/percpu.h:130:31: note: expanded from macro 'percpu_= add_op' ((val) =3D=3D 1 || (val) =3D=3D -1)) ? = \ ~~~ ^ ~~ In file included from arch/x86/kvm/pmu_intel.c:15: In file included from include/linux/kvm_host.h:15: In file included from include/linux/sched.h:61: In file included from include/linux/cgroup-defs.h:16: include/linux/percpu-refcount.h:276:3: warning: comparison of integers o= f different signs: 'unsigned long' and 'int' [-Wsign-compare] this_cpu_sub(*percpu_count, nr); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/percpu-defs.h:536:33: note: expanded from macro 'this_cpu_= sub' #define this_cpu_sub(pcp, val) this_cpu_add(pcp, -(typeof(pcp))= (val)) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~~~~~ include/linux/percpu-defs.h:526:33: note: expanded from macro 'this_cpu_= add' #define this_cpu_add(pcp, val) __pcpu_size_call(this_cpu_add_, = pcp, val) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~~~~~~~~ include/linux/percpu-defs.h:397:11: note: expanded from macro '__pcpu_si= ze_call' case 8: stem##8(variable, __VA_ARGS__);break; \ ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ :97:1: note: expanded from here this_cpu_add_8 ^ arch/x86/include/asm/percpu.h:478:35: note: expanded from macro 'this_cp= u_add_8' #define this_cpu_add_8(pcp, val) percpu_add_op((pcp), val) ^~~~~~~~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/percpu.h:130:31: note: expanded from macro 'percpu_= add_op' ((val) =3D=3D 1 || (val) =3D=3D -1)) ? = \ ~~~ ^ ~~ In file included from arch/x86/kvm/pmu_intel.c:18: In file included from arch/x86/kvm/x86.h:5: arch/x86/kvm/kvm_cache_regs.h:43:32: warning: implicit conversion from e= numeration type 'enum kvm_reg_ex' to different enumeration type 'enum kvm_r= eg' [-Wenum-conversion] kvm_x86_ops->cache_reg(vcpu, VCPU_EXREG_PDPTR); ~~~~~~~~~~~ ^~~~~~~~~~~~~~~~ In file included from arch/x86/kvm/pmu_intel.c:21: arch/x86/kvm/pmu.h:100:10: warning: comparison of integers of different = signs: 'u32' (aka 'unsigned int') and 'int' [-Wsign-compare] if (msr >=3D base && msr < base + pmu->nr_arch_fixed_counters) { ~~~ ^ ~~~~ arch/x86/kvm/pmu_intel.c:42:16: warning: comparison of integers of diffe= rent signs: 'int' and 'unsigned int' [-Wsign-compare] for (i =3D 0; i < pmu->nr_arch_fixed_counters; i++) { ~ ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/x86/kvm/pmu_intel.c:76:16: warning: comparison of integers of diffe= rent signs: 'int' and 'unsigned long' [-Wsign-compare] for (i =3D 0; i < ARRAY_SIZE(intel_arch_events); i++) ~ ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ >> arch/x86/kvm/pmu_intel.c:93:10: warning: comparison of integers of diffe= rent signs: 'int' and 'size_t' (aka 'unsigned long') [-Wsign-compare] if (idx >=3D size) ~~~ ^ ~~~~ 13 warnings generated. vim +93 arch/x86/kvm/pmu_intel.c 87 = 88 static unsigned intel_find_fixed_event(int idx) 89 { 90 u32 event; 91 size_t size =3D ARRAY_SIZE(fixed_pmc_events); 92 = > 93 if (idx >=3D size) 94 return PERF_COUNT_HW_MAX; 95 = 96 event =3D fixed_pmc_events[array_index_nospec(idx, size)]; 97 return intel_arch_events[event].event_type; 98 } 99 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org 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