From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0617402615791798491==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: [peterz-queue:x86/static_call 10/17] check.c:459:22: error: 'struct section' has no member named 'rela_hash'; did you mean 'rela_list'? Date: Fri, 03 Apr 2020 23:49:43 +0800 Message-ID: <202004032328.2d0fJfth%lkp@intel.com> List-Id: --===============0617402615791798491== 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/peterz/queue.git x8= 6/static_call head: d3f214fee97b689450df44bde6ccd4a5a8ec1a90 commit: 6498501d1b17d21ca0a903a3b8c7ec57457b7dbc [10/17] x86/static_call: A= dd inline static call implementation for x86-64 config: x86_64-allyesconfig (attached as .config) compiler: gcc-7 (Ubuntu 7.5.0-6ubuntu2) 7.5.0 reproduce: git checkout 6498501d1b17d21ca0a903a3b8c7ec57457b7dbc # save the attached .config to linux build tree make ARCH=3Dx86_64 = If you fix the issue, kindly add following tag Reported-by: kbuild test robot All errors (new ones prefixed by >>): In file included from elf.h:12:0, from check.h:10, from check.c:10: check.c: In function 'create_static_call_sections': >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:58:24: note: in definition of macro 'has= h_add' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ tools/include/linux/kernel.h:39:45: error: bit-field '' width= not an integer constant #define BUILD_BUG_ON_ZERO(e) (sizeof(struct { int:-!!(e); })) ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ tools/include/linux/kernel.h:39:45: error: bit-field '' width= not an integer constant #define BUILD_BUG_ON_ZERO(e) (sizeof(struct { int:-!!(e); })) ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ tools/include/linux/kernel.h:39:45: error: bit-field '' width= not an integer constant #define BUILD_BUG_ON_ZERO(e) (sizeof(struct { int:-!!(e); })) ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ tools/include/linux/kernel.h:39:45: error: bit-field '' width= not an integer constant #define BUILD_BUG_ON_ZERO(e) (sizeof(struct { int:-!!(e); })) ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ >> check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &(a)[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/compiler-gcc.h:24:46: note: in expansion of macro '_= _same_type' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ tools/include/linux/kernel.h:39:45: error: bit-field '' width= not an integer constant #define BUILD_BUG_ON_ZERO(e) (sizeof(struct { int:-!!(e); })) ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/compiler-gcc.h:24:28: note: in expansion of macro 'B= UILD_BUG_ON_ZERO' #define __must_be_array(a) BUILD_BUG_ON_ZERO(__same_type((a), &@[0])) ^~~~~~~~~~~~~~~~~ tools/include/linux/kernel.h:107:59: note: in expansion of macro '__must= _be_array' #define ARRAY_SIZE(arr) (sizeof(arr) / sizeof((arr)[0]) + __must_be_arr= ay(arr)) ^~~~~~~~~~~~~= ~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~~~~~ tools/include/linux/hashtable.h:58:48: note: in expansion of macro 'HASH= _BITS' hlist_add_head(node, &hashtable[hash_min(key, HASH_BITS(hashtable))]) ^~~~~~~~~ check.c:459:3: note: in expansion of macro 'hash_add' hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^~~~~~~~ check.c:459:22: error: 'struct section' has no member named 'rela_hash';= did you mean 'rela_list'? hash_add(rela_sec->rela_hash, &rela->hash, rela->offset); ^ tools/include/linux/hashtable.h:29:35: note: in definition of macro 'has= h_min' (sizeof(val) <=3D 4 ? hash_32(val, bits) : hash_long(val, bits)) ^~~~ tools/include/linux/hashtable.h:25:25: note: in expansion of macro 'ilog= 2' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) ^~~~~ tools/include/linux/hashtable.h:24:26: note: in expansion of macro 'ARRA= Y_SIZE' #define HASH_SIZE(name) (ARRAY_SIZE(name)) ^~~~~~~~~~ tools/include/linux/hashtable.h:25:31: note: in expansion of macro 'HASH= _SIZE' #define HASH_BITS(name) ilog2(HASH_SIZE(name)) --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --===============0617402615791798491== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICLdYh14AAy5jb25maWcAlDzbcty2ku/5iqnkJXmIIym24t0tP4AkOAMPSTAAOJrxC0qRx4lq bcmryznJ3283wEvjMkpOKpWI3Y1bo9HoG+a7b75bseen+y/XT7c3158//7X6/Xh3fLh+On5cfbr9 fPyfVSVXnTQrXgnzCoib27vnP3/68+2lvXy9evPq8tXZant8uDt+XpX3d59uf3+Gtrf3d9989w38 +x0Av3yFbh7+e/X7zc2Pv6y+H357vnt6Xv3y6s2rsx8vn93XxQ/+G1qUsqvF2palFdquy/LdXxMI PuyOKy1k9+6XszdnZzNtw7r1jDojXZSss43otksnANwwbZlu7VoamUWIDtrwBHXFVGdbdii4HTrR 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