From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0891502257623902623==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [norov:find_bit_smallconst_v4 11/13] include/asm-generic/bitops/find.h:164:16: error: implicit declaration of function '__fls'; did you mean Date: Sat, 13 Mar 2021 13:28:18 +0800 Message-ID: <202103131311.cOOKk1kL-lkp@intel.com> List-Id: --===============0891502257623902623== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/norov/linux find_bit_smallconst_v4 head: 747508d50b9b17dcf850b2a9c07156bf52e147df commit: 1c7083bf4aab3b8d9dedc5155a5a82741cc161bc [11/13] lib: add fast path= for find_first_*_bit() and find_last_bit() config: sh-randconfig-m031-20210312 (attached as .config) compiler: sh4-linux-gcc (GCC) 9.3.0 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/norov/linux/commit/1c7083bf4aab3b8d9dedc5155a5= a82741cc161bc git remote add norov https://github.com/norov/linux git fetch --no-tags norov find_bit_smallconst_v4 git checkout 1c7083bf4aab3b8d9dedc5155a5a82741cc161bc # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = ARCH=3Dsh = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): In file included from include/asm-generic/bitops/le.h:5, from arch/sh/include/asm/bitops.h:65, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/find.h: In function 'find_last_bit': >> include/asm-generic/bitops/find.h:164:16: error: implicit declaration of= function '__fls'; did you mean '__ffs'? [-Werror=3Dimplicit-function-decla= ration] 164 | return val ? __fls(val) : size; | ^~~~~ | __ffs In file included from arch/sh/include/asm/bitops.h:68, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/__fls.h: At top level: >> include/asm-generic/bitops/__fls.h:13:38: error: conflicting types for '= __fls' 13 | static __always_inline unsigned long __fls(unsigned long word) | ^~~~~ In file included from include/asm-generic/bitops/le.h:5, from arch/sh/include/asm/bitops.h:65, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/find.h:164:16: note: previous implicit declar= ation of '__fls' was here 164 | return val ? __fls(val) : size; | ^~~~~ cc1: some warnings being treated as errors -- In file included from include/asm-generic/bitops/le.h:5, from arch/sh/include/asm/bitops.h:65, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/find.h: In function 'find_last_bit': >> include/asm-generic/bitops/find.h:164:16: error: implicit declaration of= function '__fls'; did you mean '__ffs'? [-Werror=3Dimplicit-function-decla= ration] 164 | return val ? __fls(val) : size; | ^~~~~ | __ffs In file included from arch/sh/include/asm/bitops.h:68, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/__fls.h: At top level: >> include/asm-generic/bitops/__fls.h:13:38: error: conflicting types for '= __fls' 13 | static __always_inline unsigned long __fls(unsigned long word) | ^~~~~ In file included from include/asm-generic/bitops/le.h:5, from arch/sh/include/asm/bitops.h:65, from include/linux/bitops.h:32, from include/linux/kernel.h:11, from include/asm-generic/bug.h:20, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/page-flags.h:10, from kernel/bounds.c:10: include/asm-generic/bitops/find.h:164:16: note: previous implicit declar= ation of '__fls' was here 164 | return val ? __fls(val) : size; | ^~~~~ cc1: some warnings being treated as errors make[2]: *** [scripts/Makefile.build:116: kernel/bounds.s] Error 1 make[2]: Target '__build' not remade because of errors. make[1]: *** [Makefile:1233: prepare0] Error 2 make[1]: Target 'prepare' not remade because of errors. make: *** [Makefile:215: __sub-make] Error 2 make: Target 'prepare' not remade because of errors. vim +164 include/asm-generic/bitops/find.h 149 = 150 #ifndef find_last_bit 151 /** 152 * find_last_bit - find the last set bit in a memory region 153 * @addr: The address to start the search at 154 * @size: The number of bits to search 155 * 156 * Returns the bit number of the last set bit, or size. 157 */ 158 static inline 159 unsigned long find_last_bit(const unsigned long *addr, unsigned long= size) 160 { 161 if (small_const_nbits(size)) { 162 unsigned long val =3D *addr & BITS_FIRST(size - 1); 163 = > 164 return val ? __fls(val) : size; 165 } 166 = 167 return _find_last_bit(addr, size); 168 } 169 #endif 170 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0891502257623902623== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICDFHTGAAAy5jb25maWcAjDxLd9s2s/v+Cp1002/R1q8oyb3HC5AESVQkQQOgLHvD4zhK4lPH 8pXkfs2/vwPwBYBDSd00mhkMBsBgXhj6119+nZG3/ebHw/7p8eH5+efs2/plvX3Yr7/Mvj49r/93 FvFZwdWMRkz9AcTZ08vbv3/uvs/e/3F+8cfZ79vHi9livX1ZP8/CzcvXp29vMPhp8/LLr7+EvIhZ UodhvaRCMl7Uiq7U9bvd96vfnzWb3789Ps5+S8LwP7NPf1z+cfbOGsJkDYjrnx0oGdhcfzq7PDvr aTNSJD2qB2eRZhHE0cACQB3ZxeXVwCGzEGeWCCmRNZF5nXDFBy4WghUZK+iAYuKmvuViARBY/q+z xGzl82y33r+9DhsSCL6gRQ37IfPSGl0wVdNiWRMBMrGcqevLC+DSzcvzkmUU9lCq2dNu9rLZa8b9 InhIsm4V795h4JpU9kKCisHCJcmURZ+SJa0XVBQ0q5N7ZolnYwLAXOCo7D4nOGZ1PzXCEsqdul+8 Pa+9eJ9Az34Iv7o/PJojOxvRmFSZMudj7VQHTrlUBcnp9bvfXjYv6/+8G9jKO7lkZYjwLLlkqzq/ 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