From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0727429547552237312==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [RFC] bpf: lbr: enable reading LBR from tracing bpf programs Date: Wed, 18 Aug 2021 11:06:43 +0800 Message-ID: <202108181052.zsLDCch6-lkp@intel.com> In-Reply-To: <20210818012937.2522409-1-songliubraving@fb.com> List-Id: --===============0727429547552237312== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Song, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on bpf-next/master] [also build test WARNING on next-20210817] [cannot apply to bpf/master tip/perf/core v5.14-rc6] [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/Song-Liu/bpf-lbr-enable-re= ading-LBR-from-tracing-bpf-programs/20210818-093217 base: https://git.kernel.org/pub/scm/linux/kernel/git/bpf/bpf-next.git ma= ster config: hexagon-randconfig-r014-20210816 (attached as .config) compiler: clang version 12.0.0 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 # https://github.com/0day-ci/linux/commit/bdd132049280755216aa3d2f4= 417bb4253b777d1 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Song-Liu/bpf-lbr-enable-reading-LB= R-from-tracing-bpf-programs/20210818-093217 git checkout bdd132049280755216aa3d2f4417bb4253b777d1 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dhexagon = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): net/bpf/test_run.c:169:14: warning: no previous prototype for function '= bpf_fentry_test1' [-Wmissing-prototypes] int noinline bpf_fentry_test1(int a) ^ net/bpf/test_run.c:169:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test1(int a) ^ static = net/bpf/test_run.c:174:14: warning: no previous prototype for function '= bpf_fentry_test2' [-Wmissing-prototypes] int noinline bpf_fentry_test2(int a, u64 b) ^ net/bpf/test_run.c:174:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test2(int a, u64 b) ^ static = net/bpf/test_run.c:179:14: warning: no previous prototype for function '= bpf_fentry_test3' [-Wmissing-prototypes] int noinline bpf_fentry_test3(char a, int b, u64 c) ^ net/bpf/test_run.c:179:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test3(char a, int b, u64 c) ^ static = net/bpf/test_run.c:184:14: warning: no previous prototype for function '= bpf_fentry_test4' [-Wmissing-prototypes] int noinline bpf_fentry_test4(void *a, char b, int c, u64 d) ^ net/bpf/test_run.c:184:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test4(void *a, char b, int c, u64 d) ^ static = net/bpf/test_run.c:189:14: warning: no previous prototype for function '= bpf_fentry_test5' [-Wmissing-prototypes] int noinline bpf_fentry_test5(u64 a, void *b, short c, int d, u64 e) ^ net/bpf/test_run.c:189:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test5(u64 a, void *b, short c, int d, u64 e) ^ static = net/bpf/test_run.c:194:14: warning: no previous prototype for function '= bpf_fentry_test6' [-Wmissing-prototypes] int noinline bpf_fentry_test6(u64 a, void *b, short c, int d, void *e, u= 64 f) ^ net/bpf/test_run.c:194:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test6(u64 a, void *b, short c, int d, void *e, u= 64 f) ^ static = net/bpf/test_run.c:203:14: warning: no previous prototype for function '= bpf_fentry_test7' [-Wmissing-prototypes] int noinline bpf_fentry_test7(struct bpf_fentry_test_t *arg) ^ net/bpf/test_run.c:203:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test7(struct bpf_fentry_test_t *arg) ^ static = net/bpf/test_run.c:208:14: warning: no previous prototype for function '= bpf_fentry_test8' [-Wmissing-prototypes] int noinline bpf_fentry_test8(struct bpf_fentry_test_t *arg) ^ net/bpf/test_run.c:208:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fentry_test8(struct bpf_fentry_test_t *arg) ^ static = net/bpf/test_run.c:213:14: warning: no previous prototype for function '= bpf_modify_return_test' [-Wmissing-prototypes] int noinline bpf_modify_return_test(int a, int *b) ^ net/bpf/test_run.c:213:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_modify_return_test(int a, int *b) ^ static = net/bpf/test_run.c:219:14: warning: no previous prototype for function '= bpf_kfunc_call_test1' [-Wmissing-prototypes] u64 noinline bpf_kfunc_call_test1(struct sock *sk, u32 a, u64 b, u32 c, = u64 d) ^ net/bpf/test_run.c:219:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit u64 noinline bpf_kfunc_call_test1(struct sock *sk, u32 a, u64 b, u32 c, = u64 d) ^ static = net/bpf/test_run.c:224:14: warning: no previous prototype for function '= bpf_kfunc_call_test2' [-Wmissing-prototypes] int noinline bpf_kfunc_call_test2(struct sock *sk, u32 a, u32 b) ^ net/bpf/test_run.c:224:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_kfunc_call_test2(struct sock *sk, u32 a, u32 b) ^ static = net/bpf/test_run.c:229:24: warning: no previous prototype for function '= bpf_kfunc_call_test3' [-Wmissing-prototypes] struct sock * noinline bpf_kfunc_call_test3(struct sock *sk) ^ net/bpf/test_run.c:229:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit struct sock * noinline bpf_kfunc_call_test3(struct sock *sk) ^ static = >> net/bpf/test_run.c:234:14: warning: no previous prototype for function '= bpf_fexit_loop_test1' [-Wmissing-prototypes] int noinline bpf_fexit_loop_test1(int n) ^ net/bpf/test_run.c:234:1: note: declare 'static' if the function is not = intended to be used outside of this translation unit int noinline bpf_fexit_loop_test1(int n) ^ static = 13 warnings generated. vim +/bpf_fexit_loop_test1 +234 net/bpf/test_run.c 228 = > 229 struct sock * noinline bpf_kfunc_call_test3(struct sock *sk) 230 { 231 return sk; 232 } 233 = > 234 int noinline bpf_fexit_loop_test1(int n) 235 { 236 int i, sum =3D 0; 237 = 238 /* the primary goal of this test is to test LBR. Create a lot of 239 * branches in the function, so we can catch it easily. 240 */ 241 for (i =3D 0; i < n; i++) 242 sum +=3D i; 243 return sum; 244 } 245 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --===============0727429547552237312== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICL51HGEAAy5jb25maWcAnDxbb9s4s+/7K4Rd4OD7Hrq1nUsTHPSBoiiLa1JUScpx8iJ4E7cN NnUC29nLvz9D6kZKVLI4C3RrzQxH5MxwbqT6y0+/ROj19Pxje3q83z49/RN92+13h+1p9xB9fXza /W+UiCgXOiIJ1b8CMXvcv/798fvu7+2353108ev8/NfZh8P9RbTaHfa7pwg/778+fnsFDo/P+59+ +QmLPKXLCuNqTaSiIq802ejPP98/bfffoj93hyPQRfPFr7NfZz+31Mue/PPMYUFVhRnKl5//6YDm saOdL2bwX4tDygxgbM17eoCFiVkyfiPALIOkH88cOp8BTC8D7kjxaim0cKboIypR6qLUPV4LwVSl yqIQUleSMBkcS3NGc+KgRK60LLEWUvVQKr9UN0KuAALC/yVaWm0+Rcfd6fWlVwfNqa5Ivq6QhDVR TvXns0XPmReUEVCUcqbJBEasXfrPnarikoJIFGLaASYkRSXT9jUBcCaUzhEnn3/+z/55v/vvzzDR 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