From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8761086311896241416==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: vmlinux.o: warning: objtool: exit_to_user_mode()+0x10: call to __tsan_atomic64_fetch_add() leaves .noinstr.text section Date: Sat, 10 Jul 2021 20:48:56 +0800 Message-ID: <202107102049.IFaLP2mF-lkp@intel.com> List-Id: --===============8761086311896241416== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: linux-kernel(a)vger.kernel.org TO: Sven Schnelle CC: Thomas Gleixner tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 50be9417e23af5a8ac860d998e1e3f06b8fd79d7 commit: 310de1a678b2184c078c593dae343cb79c807f8d entry: Add exit_to_user_mo= de() wrapper date: 7 months ago config: x86_64-buildonly-randconfig-r006-20210706 (attached as .config) compiler: clang version 13.0.0 (https://github.com/llvm/llvm-project 873e8b= 96b1226d64e4f95083147d8592ba7bd5d8) 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/torvalds/linux.gi= t/commit/?id=3D310de1a678b2184c078c593dae343cb79c807f8d git remote add linus https://git.kernel.org/pub/scm/linux/kernel/gi= t/torvalds/linux.git git fetch --no-tags linus master git checkout 310de1a678b2184c078c593dae343cb79c807f8d # save the attached .config to linux build tree mkdir build_dir COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross O=3D= build_dir ARCH=3Dx86_64 SHELL=3D/bin/bash If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): vmlinux.o: warning: objtool: do_int80_syscall_32()+0x16: call to __tsan_= atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: do_fast_syscall_32()+0x1b: call to __tsan_a= tomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: __do_fast_syscall_32()+0x18: call to __tsan= _atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: do_SYSENTER_32()+0x12: call to __tsan_atomi= c64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: __rdgsbase_inactive()+0x3c: call to ftrace_= likely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: __wrgsbase_inactive()+0x40: call to ftrace_= likely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: fixup_bad_iret()+0x83: call to ftrace_likel= y_update() leaves .noinstr.text section vmlinux.o: warning: objtool: noist_exc_debug()+0x61: call to ftrace_like= ly_update() leaves .noinstr.text section vmlinux.o: warning: objtool: exc_nmi()+0x54: call to ftrace_likely_updat= e() leaves .noinstr.text section vmlinux.o: warning: objtool: poke_int3_handler()+0x73: call to ftrace_li= kely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: mce_setup()+0xf: call to memset() leaves .n= oinstr.text section vmlinux.o: warning: objtool: mce_rdmsrl()+0x3: call to __this_cpu_preemp= t_check() leaves .noinstr.text section vmlinux.o: warning: objtool: mce_wrmsrl()+0x3: call to __this_cpu_preemp= t_check() leaves .noinstr.text section vmlinux.o: warning: objtool: do_machine_check()+0x39: call to mce_gather= _info() leaves .noinstr.text section vmlinux.o: warning: objtool: unexpected_machine_check()+0xe: call to __t= san_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: exc_machine_check()+0x16: call to __tsan_at= omic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: noist_exc_machine_check()+0x16: call to __t= san_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: mce_check_crashing_cpu()+0xf: call to __tsa= n_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: sysvec_apic_timer_interrupt()+0x17: call to= __tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: spurious_interrupt()+0x1e: call to __tsan_a= tomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: sysvec_spurious_apic_interrupt()+0x17: call= to __tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: sysvec_error_interrupt()+0x17: call to __ts= an_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: __sev_es_ist_exit()+0x49: call to ftrace_li= kely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: __sev_es_nmi_complete()+0x47: call to ftrac= e_likely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: safe_stack_exc_vmm_communication()+0x5a: ca= ll to ftrace_likely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: exc_vmm_communication()+0x78: call to ftrac= e_likely_update() leaves .noinstr.text section vmlinux.o: warning: objtool: lock_is_held_type()+0x8b: call to check_fla= gs() leaves .noinstr.text section vmlinux.o: warning: objtool: printk_nmi_enter()+0x18: call to __tsan_ato= mic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: printk_nmi_exit()+0x18: call to __tsan_atom= ic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: debug_lockdep_rcu_enabled()+0x15: call to _= _tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: enter_from_user_mode()+0x19: call to __tsan= _atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: syscall_enter_from_user_mode()+0x24: call t= o __tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: syscall_enter_from_user_mode_prepare()+0x19= : call to __tsan_atomic64_fetch_add() leaves .noinstr.text section >> vmlinux.o: warning: objtool: exit_to_user_mode()+0x10: call to __tsan_at= omic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: syscall_exit_to_user_mode()+0x13: call to _= _tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_enter_from_user_mode()+0x19: call = to __tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_exit_to_user_mode()+0x13: call to = __tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_enter()+0x12: call to __tsan_atomi= c64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_exit()+0x64: call to ftrace_likely= _update() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_nmi_enter()+0x1b: call to __tsan_a= tomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: irqentry_nmi_exit()+0x47: call to rcu_nmi_e= xit() leaves .noinstr.text section vmlinux.o: warning: objtool: __ktime_get_real_seconds()+0xe: call to __t= san_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: __context_tracking_enter()+0x12: call to __= tsan_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: context_tracking_recursion_enter()+0x1: cal= l to __this_cpu_preempt_check() leaves .noinstr.text section vmlinux.o: warning: objtool: __context_tracking_exit()+0xfa: call to __t= san_atomic64_fetch_add() leaves .noinstr.text section vmlinux.o: warning: objtool: debug_locks_off()+0xa8: call to __tsan_atom= ic64_fetch_add() leaves .noinstr.text section kallsyms failure: relative symbol value 0xffffffff08fe5000 out of range = in relative mode --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============8761086311896241416== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; 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