From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6347411327123642465==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [freescale-fslc:pr/341 14836/18812] drivers/misc/mic/scif/scif_api.c:1101:30: warning: left shift count >= width of type Date: Wed, 19 May 2021 11:06:25 +0800 Message-ID: <202105191122.hJrzCZX5-lkp@intel.com> List-Id: --===============6347411327123642465== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/Freescale/linux-fslc pr/341 head: a9cd93bab1195c192188b78911e8e2bf47cfd6c2 commit: 36c9b7a8085cc507a15927a4e333bc7778f6c9b3 [14836/18812] MLK-24937-2 = misc: mic: add the correct dependencies and fix build errors for COSM/SCIF = modules config: ia64-randconfig-r032-20210519 (attached as .config) compiler: ia64-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/Freescale/linux-fslc/commit/36c9b7a8085cc507a1= 5927a4e333bc7778f6c9b3 git remote add freescale-fslc https://github.com/Freescale/linux-fs= lc git fetch --no-tags freescale-fslc pr/341 git checkout 36c9b7a8085cc507a15927a4e333bc7778f6c9b3 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = ARCH=3Dia64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): drivers/misc/mic/scif/scif_api.c: In function '_scif_recv': drivers/misc/mic/scif/scif_api.c:1000:6: warning: variable 'read_size' s= et but not used [-Wunused-but-set-variable] 1000 | int read_size; | ^~~~~~~~~ In file included from include/linux/list.h:9, from include/linux/preempt.h:11, from include/linux/spinlock.h:51, from include/linux/seqlock.h:36, from include/linux/time.h:6, from include/linux/ktime.h:24, from include/linux/poll.h:7, from include/linux/scif.h:57, from drivers/misc/mic/scif/scif_api.c:9: drivers/misc/mic/scif/scif_api.c: In function 'scif_user_send': >> drivers/misc/mic/scif/scif_api.c:1101:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:858:34: note: in definition of macro '__cmp' 858 | #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1101:18: note: in expansion of macro 'm= in' 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ >> drivers/misc/mic/scif/scif_api.c:1101:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:858:46: note: in definition of macro '__cmp' 858 | #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1101:18: note: in expansion of macro 'm= in' 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ >> drivers/misc/mic/scif/scif_api.c:1101:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:862:25: note: in definition of macro '__cmp_once' 862 | typeof(y) unique_y =3D (y); \ | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1101:18: note: in expansion of macro 'm= in' 1101 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ drivers/misc/mic/scif/scif_api.c: In function 'scif_user_recv': drivers/misc/mic/scif/scif_api.c:1162:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:858:34: note: in definition of macro '__cmp' 858 | #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1162:18: note: in expansion of macro 'm= in' 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ drivers/misc/mic/scif/scif_api.c:1162:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:858:46: note: in definition of macro '__cmp' 858 | #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1162:18: note: in expansion of macro 'm= in' 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ drivers/misc/mic/scif/scif_api.c:1162:30: warning: left shift count >=3D= width of type [-Wshift-count-overflow] 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~ include/linux/kernel.h:862:25: note: in definition of macro '__cmp_once' 862 | typeof(y) unique_y =3D (y); \ | ^ include/linux/kernel.h:875:19: note: in expansion of macro '__careful_cm= p' 875 | #define min(x, y) __careful_cmp(x, y, <) | ^~~~~~~~~~~~~ drivers/misc/mic/scif/scif_api.c:1162:18: note: in expansion of macro 'm= in' 1162 | int chunk_len =3D min(len, (1 << (MAX_ORDER + PAGE_SHIFT - 1))); | ^~~ Kconfig warnings: (for reference only) WARNING: unmet direct dependencies detected for FRAME_POINTER Depends on DEBUG_KERNEL && (M68K || UML || SUPERH) || ARCH_WANT_FRAME_PO= INTERS Selected by - FAULT_INJECTION_STACKTRACE_FILTER && FAULT_INJECTION_DEBUG_FS && STACK= TRACE_SUPPORT && !X86_64 && !MIPS && !PPC && !S390 && !MICROBLAZE && !ARM &= & !ARC && !X86 vim +1101 drivers/misc/mic/scif/scif_api.c fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1083 = fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1084 /** fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1085 * scif_user_send() - Send dat= a to connection queue fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1086 * @epd: The end point returne= d from scif_open() fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1087 * @msg: Address to place data fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1088 * @len: Length to receive fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1089 * @flags: blocking or non blo= cking fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1090 * fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1091 * This function is called fro= m the driver IOCTL entry point fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1092 * only and is a wrapper for _= scif_send(). fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1093 */ fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1094 int scif_user_send(scif_epd_t = epd, void __user *msg, int len, int flags) fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1095 { fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1096 struct scif_endpt *ep =3D (st= ruct scif_endpt *)epd; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1097 int err =3D 0; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1098 int sent_len =3D 0; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1099 char *tmp; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1100 int loop_len; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 @1101 int chunk_len =3D min(len, (1= << (MAX_ORDER + PAGE_SHIFT - 1))); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1102 = fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1103 dev_dbg(scif_info.mdev.this_d= evice, fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1104 "SCIFAPI send (U): ep %p %s\= n", ep, scif_ep_states[ep->state]); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1105 if (!len) fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1106 return 0; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1107 = fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1108 err =3D scif_msg_param_check(= epd, len, flags); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1109 if (err) fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1110 goto send_err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1111 = fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1112 tmp =3D kmalloc(chunk_len, GF= P_KERNEL); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1113 if (!tmp) { fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1114 err =3D -ENOMEM; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1115 goto send_err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1116 } fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1117 /* fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1118 * Grabbing the lock before b= reaking up the transfer in fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1119 * multiple chunks is require= d to ensure that messages do fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1120 * not get fragmented and reo= rdered. fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1121 */ fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1122 mutex_lock(&ep->sendlock); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1123 while (sent_len !=3D len) { fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1124 loop_len =3D len - sent_len; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1125 loop_len =3D min(chunk_len, = loop_len); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1126 if (copy_from_user(tmp, msg,= loop_len)) { fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1127 err =3D -EFAULT; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1128 goto send_free_err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1129 } fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1130 err =3D _scif_send(epd, tmp,= loop_len, flags); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1131 if (err < 0) fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1132 goto send_free_err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1133 sent_len +=3D err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1134 msg +=3D err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1135 if (err !=3D loop_len) fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1136 goto send_free_err; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1137 } fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1138 send_free_err: fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1139 mutex_unlock(&ep->sendlock); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1140 kfree(tmp); fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1141 send_err: fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1142 return err < 0 ? err : sent_l= en; fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1143 } fdd9fd5c38afe7 Sudeep Dutt 2015-04-29 1144 = :::::: The code@line 1101 was first introduced by commit :::::: fdd9fd5c38afe732258a0af4c6be14f3fbd1585c misc: mic: SCIF messaging a= nd node enumeration APIs :::::: TO: Sudeep Dutt :::::: CC: Greg Kroah-Hartman --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============6347411327123642465== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" 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