From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8575538120330797076==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH 02/16] md: move the early init autodetect code to drivers/md/ Date: Tue, 16 Jun 2020 02:50:12 +0800 Message-ID: <202006160237.KBTht1Kn%lkp@intel.com> In-Reply-To: <20200615125323.930983-3-hch@lst.de> List-Id: --===============8575538120330797076== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Christoph, I love your patch! Perhaps something to improve: [auto build test WARNING on song-md/md-next] [also build test WARNING on sparc-next/master sparc/master linus/master v5.= 8-rc1 next-20200615] [if your patch is applied to the wrong git tree, please drop us a note to h= elp improve the system. BTW, we also suggest to use '--base' option to specify = the base tree in git format-patch, please see https://stackoverflow.com/a/37406= 982] url: https://github.com/0day-ci/linux/commits/Christoph-Hellwig/init-rem= ove-the-bstat-helper/20200615-215324 base: git://git.kernel.org/pub/scm/linux/kernel/git/song/md.git md-next config: i386-randconfig-s001-20200615 (attached as .config) compiler: gcc-9 (Debian 9.3.0-13) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-rc1-3-g55607964-dirty # save the attached .config to linux build tree make W=3D1 C=3D1 ARCH=3Di386 CF=3D'-fdiagnostic-prefix -D__CHECK_EN= DIAN__' If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> drivers/md/md-autodetect.c:164:38: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char * @@ >> drivers/md/md-autodetect.c:164:38: sparse: expected char const [node= ref] *filename >> drivers/md/md-autodetect.c:164:38: sparse: got char * drivers/md/md-autodetect.c:185:32: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char * @@ drivers/md/md-autodetect.c:185:32: sparse: expected char const [node= ref] *filename drivers/md/md-autodetect.c:185:32: sparse: got char * drivers/md/md-autodetect.c:249:40: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char * @@ drivers/md/md-autodetect.c:249:40: sparse: expected char const [node= ref] *filename drivers/md/md-autodetect.c:249:40: sparse: got char * drivers/md/md-autodetect.c:299:24: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char * @@ drivers/md/md-autodetect.c:299:24: sparse: expected char const [node= ref] *filename drivers/md/md-autodetect.c:299:24: sparse: got char * drivers/md/md-autodetect.c:124:21: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *pathname @@ got char *name @@ drivers/md/md-autodetect.c:124:21: sparse: expected char const [node= ref] *pathname drivers/md/md-autodetect.c:124:21: sparse: got char *name drivers/md/md-autodetect.c:125:27: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char *name @@ drivers/md/md-autodetect.c:125:27: sparse: expected char const [node= ref] *filename drivers/md/md-autodetect.c:125:27: sparse: got char *name drivers/md/md-autodetect.c:124:21: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *pathname @@ got char *name @@ drivers/md/md-autodetect.c:124:21: sparse: expected char const [node= ref] *pathname drivers/md/md-autodetect.c:124:21: sparse: got char *name drivers/md/md-autodetect.c:125:27: sparse: sparse: incorrect type in arg= ument 1 (different address spaces) @@ expected char const [noderef] *filename @@ got char *name @@ drivers/md/md-autodetect.c:125:27: sparse: expected char const [node= ref] *filename drivers/md/md-autodetect.c:125:27: sparse: got char *name vim +164 drivers/md/md-autodetect.c 6fc96eea53684d drivers/md/md-autodetect.c Christoph Hellwig 2020-06-15 12= 7 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 12= 8 static void __init md_setup_drive(void) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 12= 9 { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 0 int minor, i, ent, partitioned; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 1 dev_t dev; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 2 dev_t devices[MD_SB_DISKS+1]; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 3 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 4 for (ent =3D 0; ent < md_setup_ents ; ent++) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 5 int fd; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 6 int err =3D 0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 7 char *devname; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 13= 8 mdu_disk_info_t dinfo; bdaf8529385d51 init/do_mounts_md.c Greg Kroah-Hartman 2005-06-20 13= 9 char name[16]; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 0 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 1 minor =3D md_setup_args[ent].minor; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 2 partitioned =3D md_setup_args[ent].partitioned; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 3 devname =3D md_setup_args[ent].device_names; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 4 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 5 sprintf(name, "/dev/md%s%d", partitioned?"_d":"", minor); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 6 if (partitioned) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 7 dev =3D MKDEV(mdp_major, minor << MdpMinorShift); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 8 else ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 14= 9 dev =3D MKDEV(MD_MAJOR, minor); bdaf8529385d51 init/do_mounts_md.c Greg Kroah-Hartman 2005-06-20 15= 0 create_dev(name, dev); d613c3e2d84188 init/do_mounts_md.c Harvey Harrison 2008-04-28 15= 1 for (i =3D 0; i < MD_SB_DISKS && devname !=3D NULL; i++) { 86a04656f6cbe2 init/do_mounts_md.c Christoph Hellwig 2020-06-15 15= 2 struct kstat stat; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 3 char *p; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 4 char comp_name[64]; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 5 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 6 p =3D strchr(devname, ','); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 7 if (p) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 8 *p++ =3D 0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 15= 9 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 0 dev =3D name_to_dev_t(devname); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 1 if (strncmp(devname, "/dev/", 5) =3D=3D 0) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 2 devname +=3D 5; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 3 snprintf(comp_name, 63, "/dev/%s", devname); 86a04656f6cbe2 init/do_mounts_md.c Christoph Hellwig 2020-06-15 @16= 4 if (vfs_stat(comp_name, &stat) =3D=3D 0 && 86a04656f6cbe2 init/do_mounts_md.c Christoph Hellwig 2020-06-15 16= 5 S_ISBLK(stat.mode)) 86a04656f6cbe2 init/do_mounts_md.c Christoph Hellwig 2020-06-15 16= 6 dev =3D new_decode_dev(stat.rdev); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 7 if (!dev) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 8 printk(KERN_WARNING "md: Unknown device name: %s\n", devname); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 16= 9 break; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 0 } ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 1 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 2 devices[i] =3D dev; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 3 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 4 devname =3D p; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 5 } ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 6 devices[i] =3D 0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 7 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 8 if (!i) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 17= 9 continue; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 0 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 1 printk(KERN_INFO "md: Loading md%s%d: %s\n", ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 2 partitioned ? "_d" : "", minor, ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 3 md_setup_args[ent].device_names); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 4 = bae217ea8c7e12 init/do_mounts_md.c Dominik Brodowski 2018-03-11 18= 5 fd =3D ksys_open(name, 0, 0); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 6 if (fd < 0) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 7 printk(KERN_ERR "md: open failed - cannot start " ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 8 "array %s\n", name); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 18= 9 continue; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 0 } cbb60b924b9f3e init/do_mounts_md.c Dominik Brodowski 2018-03-13 19= 1 if (ksys_ioctl(fd, SET_ARRAY_INFO, 0) =3D=3D -EBUSY) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 2 printk(KERN_WARNING ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 3 "md: Ignoring md=3D%d, already autodetected. (Use raid=3Dnoaut= odetect)\n", ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 4 minor); 2ca2a09d6215fd init/do_mounts_md.c Dominik Brodowski 2018-03-11 19= 5 ksys_close(fd); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 6 continue; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 7 } ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 19= 8 = 2604b703b6b3db init/do_mounts_md.c NeilBrown 2006-01-06 19= 9 if (md_setup_args[ent].level !=3D LEVEL_NONE) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 0 /* non-persistent */ ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 1 mdu_array_info_t ainfo; 2604b703b6b3db init/do_mounts_md.c NeilBrown 2006-01-06 20= 2 ainfo.level =3D md_setup_args[ent].level; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 3 ainfo.size =3D 0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 4 ainfo.nr_disks =3D0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 5 ainfo.raid_disks =3D0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 6 while (devices[ainfo.raid_disks]) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 7 ainfo.raid_disks++; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 8 ainfo.md_minor =3Dminor; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 20= 9 ainfo.not_persistent =3D 1; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 0 = ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 1 ainfo.state =3D (1 << MD_SB_CLEAN); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 2 ainfo.layout =3D 0; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 3 ainfo.chunk_size =3D md_setup_args[ent].chunk; cbb60b924b9f3e init/do_mounts_md.c Dominik Brodowski 2018-03-13 21= 4 err =3D ksys_ioctl(fd, SET_ARRAY_INFO, (long)&ainfo); ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 5 for (i =3D 0; !err && i <=3D MD_SB_DISKS; i++) { ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 6 dev =3D devices[i]; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 7 if (!dev) ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 8 break; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 21= 9 dinfo.number =3D i; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 22= 0 dinfo.raid_disk =3D i; ^1da177e4c3f41 init/do_mounts_md.c Linus Torvalds 2005-04-16 22= 1 dinfo.state =3D (1< :::::: CC: 0day robot --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============8575538120330797076== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICJiz514AAy5jb25maWcAjDzbcuM2su/5CtXkJXlI1rdxJueUH0ASlBCRBAcAJcsvLMejybri 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--===============8575538120330797076==--