From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8464355125027717693==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [zen-kernel-zen-kernel:5.12/futex2 1/16] arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous prototype for '__x64_sys_futex_wait' Date: Wed, 16 Jun 2021 10:01:22 +0800 Message-ID: <202106161014.op0kucBZ-lkp@intel.com> List-Id: --===============8464355125027717693== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/zen-kernel/zen-kernel 5.12/futex2 head: 81255c11c48cc2302883425c87318f9cad37e7e6 commit: 64cdae0a6364c651f13a9ba90f6a8fadd7e1b9f7 [1/16] futex2: Implement w= ait and wake functions config: x86_64-allyesconfig (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce (this is a W=3D1 build): # https://github.com/zen-kernel/zen-kernel/commit/64cdae0a6364c651f= 13a9ba90f6a8fadd7e1b9f7 git remote add zen-kernel-zen-kernel https://github.com/zen-kernel/= zen-kernel git fetch --no-tags zen-kernel-zen-kernel 5.12/futex2 git checkout 64cdae0a6364c651f13a9ba90f6a8fadd7e1b9f7 # save the attached .config to linux build tree make W=3D1 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 >>): | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:147:1: note: in expansion of macro 'COND_SYSCALL' 147 | COND_SYSCALL(futex_time32); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_set_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:148:1: note: in expansion of macro 'COND_SYSCALL' 148 | COND_SYSCALL(set_robust_list); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_set_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:148:1: note: in expansion of macro 'COND_SYSCALL' 148 | COND_SYSCALL(set_robust_list); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_compat_sys_set_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:148:2: note: in expansion of macr= o '__COND_SYSCALL' 148 | __COND_SYSCALL(ia32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:218:2: note: in expansion of macr= o '__IA32_COMPAT_COND_SYSCALL' 218 | __IA32_COMPAT_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:149:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 149 | COND_SYSCALL_COMPAT(set_robust_list); | ^~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x32_compat_sys_set_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:175:2: note: in expansion of macr= o '__COND_SYSCALL' 175 | __COND_SYSCALL(x32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:219:2: note: in expansion of macr= o '__X32_COMPAT_COND_SYSCALL' 219 | __X32_COMPAT_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:149:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 149 | COND_SYSCALL_COMPAT(set_robust_list); | ^~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_get_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:150:1: note: in expansion of macro 'COND_SYSCALL' 150 | COND_SYSCALL(get_robust_list); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_get_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:150:1: note: in expansion of macro 'COND_SYSCALL' 150 | COND_SYSCALL(get_robust_list); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_compat_sys_get_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:148:2: note: in expansion of macr= o '__COND_SYSCALL' 148 | __COND_SYSCALL(ia32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:218:2: note: in expansion of macr= o '__IA32_COMPAT_COND_SYSCALL' 218 | __IA32_COMPAT_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:151:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 151 | COND_SYSCALL_COMPAT(get_robust_list); | ^~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x32_compat_sys_get_robust_list' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:175:2: note: in expansion of macr= o '__COND_SYSCALL' 175 | __COND_SYSCALL(x32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:219:2: note: in expansion of macr= o '__X32_COMPAT_COND_SYSCALL' 219 | __X32_COMPAT_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:151:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 151 | COND_SYSCALL_COMPAT(get_robust_list); | ^~~~~~~~~~~~~~~~~~~ >> arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_futex_wait' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:154:1: note: in expansion of macro 'COND_SYSCALL' 154 | COND_SYSCALL(futex_wait); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_futex_wait' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:154:1: note: in expansion of macro 'COND_SYSCALL' 154 | COND_SYSCALL(futex_wait); | ^~~~~~~~~~~~ >> arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_futex_wake' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:155:1: note: in expansion of macro 'COND_SYSCALL' 155 | COND_SYSCALL(futex_wake); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_futex_wake' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:155:1: note: in expansion of macro 'COND_SYSCALL' 155 | COND_SYSCALL(futex_wake); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_kexec_load' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:162:1: note: in expansion of macro 'COND_SYSCALL' 162 | COND_SYSCALL(kexec_load); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_kexec_load' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:162:1: note: in expansion of macro 'COND_SYSCALL' 162 | COND_SYSCALL(kexec_load); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_compat_sys_kexec_load' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:148:2: note: in expansion of macr= o '__COND_SYSCALL' 148 | __COND_SYSCALL(ia32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:218:2: note: in expansion of macr= o '__IA32_COMPAT_COND_SYSCALL' 218 | __IA32_COMPAT_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:163:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 163 | COND_SYSCALL_COMPAT(kexec_load); | ^~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x32_compat_sys_kexec_load' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:175:2: note: in expansion of macr= o '__COND_SYSCALL' 175 | __COND_SYSCALL(x32, compat_sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:219:2: note: in expansion of macr= o '__X32_COMPAT_COND_SYSCALL' 219 | __X32_COMPAT_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:163:1: note: in expansion of macro 'COND_SYSCALL_COMPAT' 163 | COND_SYSCALL_COMPAT(kexec_load); | ^~~~~~~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_init_module' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:256:2: note: in expansion of macr= o '__X64_COND_SYSCALL' 256 | __X64_COND_SYSCALL(name) \ | ^~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:166:1: note: in expansion of macro 'COND_SYSCALL' 166 | COND_SYSCALL(init_module); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__ia32_sys_init_module' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:120:2: note: in expansion of macr= o '__COND_SYSCALL' 120 | __COND_SYSCALL(ia32, sys_##name) | ^~~~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:257:2: note: in expansion of macr= o '__IA32_COND_SYSCALL' 257 | __IA32_COND_SYSCALL(name) | ^~~~~~~~~~~~~~~~~~~ kernel/sys_ni.c:166:1: note: in expansion of macro 'COND_SYSCALL' 166 | COND_SYSCALL(init_module); | ^~~~~~~~~~~~ arch/x86/include/asm/syscall_wrapper.h:83:14: warning: no previous proto= type for '__x64_sys_delete_module' [-Wmissing-prototypes] 83 | __weak long __##abi##_##name(const struct pt_regs *__unused) \ | ^~ arch/x86/include/asm/syscall_wrapper.h:100:2: note: in expansion of macr= o '__COND_SYSCALL' 100 | __COND_SYSCALL(x64, sys_##name) vim +/__x64_sys_futex_wait +83 arch/x86/include/asm/syscall_wrapper.h cc42c045af1ff4 Brian Gerst 2020-03-13 13 = 25c619e59b395a Brian Gerst 2020-03-13 14 /* 25c619e59b395a Brian Gerst 2020-03-13 15 * Instead of the generic = __SYSCALL_DEFINEx() definition, the x86 version takes 25c619e59b395a Brian Gerst 2020-03-13 16 * struct pt_regs *regs as= the only argument of the syscall stub(s) named as: 25c619e59b395a Brian Gerst 2020-03-13 17 * __x64_sys_*() -= 64-bit native syscall 25c619e59b395a Brian Gerst 2020-03-13 18 * __ia32_sys_*() -= 32-bit native syscall or common compat syscall 25c619e59b395a Brian Gerst 2020-03-13 19 * __ia32_compat_sys_*() -= 32-bit compat syscall 25c619e59b395a Brian Gerst 2020-03-13 20 * __x32_compat_sys_*() -= 64-bit X32 compat syscall 25c619e59b395a Brian Gerst 2020-03-13 21 * 25c619e59b395a Brian Gerst 2020-03-13 22 * The registers are decod= ed according to the ABI: 25c619e59b395a Brian Gerst 2020-03-13 23 * 64-bit: RDI, RSI, RDX, = R10, R8, R9 25c619e59b395a Brian Gerst 2020-03-13 24 * 32-bit: EBX, ECX, EDX, = ESI, EDI, EBP 25c619e59b395a Brian Gerst 2020-03-13 25 * 25c619e59b395a Brian Gerst 2020-03-13 26 * The stub then passes th= e decoded arguments to the __se_sys_*() wrapper to 25c619e59b395a Brian Gerst 2020-03-13 27 * perform sign-extension = (omitted for zero-argument syscalls). Finally the 25c619e59b395a Brian Gerst 2020-03-13 28 * arguments are passed to= the __do_sys_*() function which is the actual 25c619e59b395a Brian Gerst 2020-03-13 29 * syscall. These wrapper= s are marked as inline so the compiler can optimize 25c619e59b395a Brian Gerst 2020-03-13 30 * the functions where app= ropriate. 25c619e59b395a Brian Gerst 2020-03-13 31 * 25c619e59b395a Brian Gerst 2020-03-13 32 * Example assembly (sligh= tly re-ordered for better readability): 25c619e59b395a Brian Gerst 2020-03-13 33 * 25c619e59b395a Brian Gerst 2020-03-13 34 * <__x64_sys_recv>: <-- = syscall with 4 parameters 25c619e59b395a Brian Gerst 2020-03-13 35 * callq <__fentry__> 25c619e59b395a Brian Gerst 2020-03-13 36 * 25c619e59b395a Brian Gerst 2020-03-13 37 * mov 0x70(%rdi),%rdi <--= decode regs->di 25c619e59b395a Brian Gerst 2020-03-13 38 * mov 0x68(%rdi),%rsi <--= decode regs->si 25c619e59b395a Brian Gerst 2020-03-13 39 * mov 0x60(%rdi),%rdx <--= decode regs->dx 25c619e59b395a Brian Gerst 2020-03-13 40 * mov 0x38(%rdi),%rcx <--= decode regs->r10 25c619e59b395a Brian Gerst 2020-03-13 41 * 25c619e59b395a Brian Gerst 2020-03-13 42 * xor %r9d,%r9d <-- clear= %r9 25c619e59b395a Brian Gerst 2020-03-13 43 * xor %r8d,%r8d <-- clear= %r8 25c619e59b395a Brian Gerst 2020-03-13 44 * 25c619e59b395a Brian Gerst 2020-03-13 45 * callq __sys_recvfrom <-= - do the actual work in __sys_recvfrom() 25c619e59b395a Brian Gerst 2020-03-13 46 * which takes 6 ar= guments 25c619e59b395a Brian Gerst 2020-03-13 47 * 25c619e59b395a Brian Gerst 2020-03-13 48 * cltq <-- extend retur= n value to 64-bit 25c619e59b395a Brian Gerst 2020-03-13 49 * retq <-- return 25c619e59b395a Brian Gerst 2020-03-13 50 * 25c619e59b395a Brian Gerst 2020-03-13 51 * This approach avoids le= aking random user-provided register content down 25c619e59b395a Brian Gerst 2020-03-13 52 * the call chain. 25c619e59b395a Brian Gerst 2020-03-13 53 */ 25c619e59b395a Brian Gerst 2020-03-13 54 = ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 55 /* Mapping of registers to= parameters for syscalls on x86-64 and x32 */ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 56 #define SC_X86_64_REGS_TO_= ARGS(x, ...) \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 57 __MAP(x,__SC_ARGS \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 58 ,,regs->di,,regs->si,,re= gs->dx \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 59 ,,regs->r10,,regs->r8,,r= egs->r9) \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 60 = ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 61 /* Mapping of registers to= parameters for syscalls on i386 */ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 62 #define SC_IA32_REGS_TO_AR= GS(x, ...) \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 63 __MAP(x,__SC_ARGS \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 64 ,,(unsigned int)reg= s->bx,,(unsigned int)regs->cx \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 65 ,,(unsigned int)reg= s->dx,,(unsigned int)regs->si \ ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 66 ,,(unsigned int)reg= s->di,,(unsigned int)regs->bp) ebeb8c82ffaf94 Dominik Brodowski 2018-04-05 67 = d2b5de495ee983 Brian Gerst 2020-03-13 68 #define __SYS_STUB0(abi, n= ame) \ 0f78ff17112d8b Brian Gerst 2020-03-13 69 long __##abi##_##name(con= st struct pt_regs *regs); \ d2b5de495ee983 Brian Gerst 2020-03-13 70 ALLOW_ERROR_INJECTION(__#= #abi##_##name, ERRNO); \ 0f78ff17112d8b Brian Gerst 2020-03-13 71 long __##abi##_##name(con= st struct pt_regs *regs) \ d2b5de495ee983 Brian Gerst 2020-03-13 72 __alias(__do_##name); d2b5de495ee983 Brian Gerst 2020-03-13 73 = 4399e0cf494f73 Brian Gerst 2020-03-13 74 #define __SYS_STUBx(abi, n= ame, ...) \ 0f78ff17112d8b Brian Gerst 2020-03-13 75 long __##abi##_##name(con= st struct pt_regs *regs); \ 4399e0cf494f73 Brian Gerst 2020-03-13 76 ALLOW_ERROR_INJECTION(__#= #abi##_##name, ERRNO); \ 0f78ff17112d8b Brian Gerst 2020-03-13 77 long __##abi##_##name(con= st struct pt_regs *regs) \ 4399e0cf494f73 Brian Gerst 2020-03-13 78 { \ 4399e0cf494f73 Brian Gerst 2020-03-13 79 return __se_##name(__VA_= ARGS__); \ 4399e0cf494f73 Brian Gerst 2020-03-13 80 } 4399e0cf494f73 Brian Gerst 2020-03-13 81 = 6cc8d2b286d9e7 Brian Gerst 2020-03-13 82 #define __COND_SYSCALL(abi= , name) \ 0f78ff17112d8b Brian Gerst 2020-03-13 @83 __weak long __##abi##_##n= ame(const struct pt_regs *__unused) \ 6cc8d2b286d9e7 Brian Gerst 2020-03-13 84 { \ 6cc8d2b286d9e7 Brian Gerst 2020-03-13 85 return sys_ni_syscall();= \ 6cc8d2b286d9e7 Brian Gerst 2020-03-13 86 } 6cc8d2b286d9e7 Brian Gerst 2020-03-13 87 = :::::: The code at line 83 was first introduced by commit :::::: 0f78ff17112d8b3469b805ff4ea9780cc1e5c93b x86/entry: Drop asmlinkage = from syscalls :::::: TO: Brian Gerst :::::: CC: Thomas Gleixner --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============8464355125027717693== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICBNFyWAAAy5jb25maWcAlDzLdty2kvt8RR9nkyzi22rbGufM0QIkQTbcJMEAYD+04VHktqMz suTR417776cK4KMAomVPFrFYVXgX6o3+9ZdfF+z56f7L1dPN9dXt7ffF5+Pd8eHq6fhx8enm9vjf 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