From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5922374934692841362==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH net-next] devlink: Simplify devlink port API calls Date: Mon, 09 Aug 2021 18:54:53 +0800 Message-ID: <2f9dce2e-0310-e9e4-d1ae-ea006d8dc655@intel.com> In-Reply-To: <202108091605.Aco665JX-lkp@intel.com> List-Id: --===============5922374934692841362== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Leon, I love your patch! Perhaps something to improve: [auto build test WARNING on net-next/master] url: = https://github.com/0day-ci/linux/commits/Leon-Romanovsky/devlink-Simplify-d= evlink-port-API-calls/20210808-194343 base: = https://git.kernel.org/pub/scm/linux/kernel/git/davem/net-next.git = f9be84db09d2e8930319503683305781378a7dbf :::::: branch date: 21 hours ago :::::: commit date: 21 hours ago config: x86_64-randconfig-c001-20210808 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project = 41a6b50c25961addc04438b567ee1f4ef9e40f98) 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 # install x86_64 cross compiling tool for clang build # apt-get install binutils-x86-64-linux-gnu # = https://github.com/0day-ci/linux/commit/30335171ca292d93926e3606fde0a3e76cf= 792a0 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review = Leon-Romanovsky/devlink-Simplify-devlink-port-API-calls/20210808-194343 git checkout 30335171ca292d93926e3606fde0a3e76cf792a0 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross = ARCH=3Dx86_64 clang-analyzer If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot clang-analyzer warnings: (new ones prefixed by >>) fs/fuse/dev.c:1677:14: note: '?' condition is false num_pages =3D min(num_pages, fc->max_pages); ^ include/linux/minmax.h:45:19: note: expanded from macro 'min' #define min(x, y) __careful_cmp(x, y, <) ^ include/linux/minmax.h:38:3: note: expanded from macro '__careful_cmp' __cmp_once(x, y, __UNIQUE_ID(__x), __UNIQUE_ID(__y), = op)) ^ include/linux/minmax.h:33:3: note: expanded from macro '__cmp_once' __cmp(unique_x, unique_y, op); }) ^ include/linux/minmax.h:28:26: note: expanded from macro '__cmp' #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) ^ fs/fuse/dev.c:1681:7: note: Calling 'kzalloc' ra =3D kzalloc(args_size, GFP_KERNEL); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/slab.h:721:9: note: Uninitialized value stored to = field 'num_pages' return kmalloc(size, flags | __GFP_ZERO); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/slab.h:721:2: note: Returning pointer, which = participates in a condition later return kmalloc(size, flags | __GFP_ZERO); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ fs/fuse/dev.c:1681:7: note: Returning from 'kzalloc' ra =3D kzalloc(args_size, GFP_KERNEL); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ fs/fuse/dev.c:1682:6: note: Assuming 'ra' is non-null if (!ra) ^~~ fs/fuse/dev.c:1682:2: note: Taking false branch if (!ra) ^ fs/fuse/dev.c:1698:9: note: Assuming 'num' is not equal to 0 while (num && ap->num_pages < num_pages) { ^~~ fs/fuse/dev.c:1698:9: note: Left side of '&&' is true fs/fuse/dev.c:1698:30: note: The left operand of '<' is a garbage value while (num && ap->num_pages < num_pages) { ~~~~~~~~~~~~~ ^ Suppressed 6 warnings (6 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 11 warnings generated. Suppressed 11 warnings (11 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 9 warnings generated. Suppressed 9 warnings (9 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 11 warnings generated. Suppressed 11 warnings (11 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 9 warnings generated. Suppressed 9 warnings (9 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 11 warnings generated. net/core/net-sysfs.c:1719:2: warning: Value stored to 'txq' is never = read [clang-analyzer-deadcode.DeadStores] txq =3D real_tx; ^ ~~~~~~~ net/core/net-sysfs.c:1719:2: note: Value stored to 'txq' is never read txq =3D real_tx; ^ ~~~~~~~ Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 9 warnings generated. Suppressed 9 warnings (9 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 60 warnings generated. Suppressed 60 warnings (58 in non-user code, 2 with check filters). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 9 warnings generated. Suppressed 9 warnings (9 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 9 warnings generated. Suppressed 9 warnings (9 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 10 warnings generated. Suppressed 10 warnings (10 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. = Use -system-headers to display errors from system headers as well. 70 warnings generated. >> net/core/devlink.c:1283:8: warning: Called function pointer is null (nul= l dereference) [clang-analyzer-core.CallAndMessage] err =3D devlink_port->devlink->ops->port_type_set(devlink_port, ^ net/core/devlink.c:1383:6: note: Assuming the condition is true if (info->attrs[DEVLINK_ATTR_PORT_TYPE]) { ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:1383:2: note: Taking true branch if (info->attrs[DEVLINK_ATTR_PORT_TYPE]) { ^ net/core/devlink.c:1387:9: note: Calling 'devlink_port_type_set' err =3D devlink_port_type_set(devlink_port, port_type); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:1277:6: note: Assuming field 'port_type_set' is null if (devlink_port->devlink->ops->port_type_set) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:1277:2: note: Taking false branch if (devlink_port->devlink->ops->port_type_set) ^ net/core/devlink.c:1280:6: note: Assuming 'port_type' is not equal = to field 'type' if (port_type =3D=3D devlink_port->type) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:1280:2: note: Taking false branch if (port_type =3D=3D devlink_port->type) ^ net/core/devlink.c:1283:8: note: Called function pointer is null = (null dereference) err =3D devlink_port->devlink->ops->port_type_set(devlink_port, ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:4316:15: warning: Use of memory after it is freed = [clang-analyzer-unix.Malloc] if (!strcmp(param_item->param->name, param_name)) ^ net/core/devlink.c:9956:9: note: Calling '__devlink_params_unregister' return __devlink_params_unregister(devlink_port->devlink, ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:9838:14: note: Assuming 'i' is < 'params_count' for (i =3D 0; i < params_count; i++, param++) ^~~~~~~~~~~~~~~~ net/core/devlink.c:9838:2: note: Loop condition is true. Entering = loop body for (i =3D 0; i < params_count; i++, param++) ^ net/core/devlink.c:9839:3: note: Calling 'devlink_param_unregister_one' devlink_param_unregister_one(devlink, 0, param_list, = param, = ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:4805:11: note: 'param_item' is non-null WARN_ON(!param_item); ^ include/asm-generic/bug.h:121:25: note: expanded from macro 'WARN_ON' int __ret_warn_on =3D !!(condition); = \ ^~~~~~~~~ net/core/devlink.c:4805:2: note: Taking false branch WARN_ON(!param_item); ^ include/asm-generic/bug.h:122:2: note: expanded from macro 'WARN_ON' if (unlikely(__ret_warn_on)) = \ ^ net/core/devlink.c:4808:2: note: Memory is released kfree(param_item); ^~~~~~~~~~~~~~~~~ net/core/devlink.c:9839:3: note: Returning; memory was released devlink_param_unregister_one(devlink, 0, param_list, = param, = ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:9838:14: note: Assuming 'i' is < 'params_count' for (i =3D 0; i < params_count; i++, param++) ^~~~~~~~~~~~~~~~ net/core/devlink.c:9838:2: note: Loop condition is true. Entering = loop body for (i =3D 0; i < params_count; i++, param++) ^ net/core/devlink.c:9839:3: note: Calling 'devlink_param_unregister_one' devlink_param_unregister_one(devlink, 0, param_list, = param, = ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:4804:15: note: Calling 'devlink_param_find_by_name' param_item =3D devlink_param_find_by_name(param_list, = param->name); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ net/core/devlink.c:4315:2: note: Left side of '&&' is false list_for_each_entry(param_item, param_list, list) ^ include/linux/list.h:628:13: note: expanded from macro = 'list_for_each_entry' for (pos =3D list_first_entry(head, typeof(*pos), member); = \ ^ include/linux/list.h:522:2: note: expanded from macro 'list_first_entry' list_entry((ptr)->next, type, member) ^ include/linux/list.h:511:2: note: expanded from macro 'list_entry' container_of(ptr, type, member) ^ include/linux/kernel.h:495:61: note: expanded from macro 'container_of' BUILD_BUG_ON_MSG(!__same_type(*(ptr), ((type *)0)->member) = && \ ^ net/core/devlink.c:4315:2: note: Taking false branch list_for_each_entry(param_item, param_list, list) ^ include/linux/list.h:628:13: note: expanded from macro = 'list_for_each_entry' for (pos =3D list_first_entry(head, typeof(*pos), member); = \ ^ include/linux/list.h:522:2: note: expanded from macro 'list_first_entry' list_entry((ptr)->next, type, member) ^ include/linux/list.h:511:2: note: expanded from macro 'list_entry' container_of(ptr, type, member) ^ note: (skipping 2 expansions in backtrace; use = -fmacro-backtrace-limit=3D0 to see all) include/linux/compiler_types.h:328:2: note: expanded from macro = 'compiletime_assert' vim +1283 net/core/devlink.c bfcd3a46617209 Jiri Pirko 2016-02-26 1270 30335171ca292d Leon = Romanovsky 2021-08-08 1271 static int devlink_port_type_set(struct = devlink_port *devlink_port, bfcd3a46617209 Jiri Pirko 2016-02-26 1272 enum = devlink_port_type port_type) bfcd3a46617209 Jiri Pirko 2016-02-26 1273 bfcd3a46617209 Jiri = Pirko 2016-02-26 1274 { bfcd3a46617209 Jiri Pirko 2016-02-26 1275 int err; bfcd3a46617209 Jiri Pirko 2016-02-26 1276 30335171ca292d Leon = Romanovsky 2021-08-08 1277 if (devlink_port->devlink->ops->port_type_set) 30335171ca292d Leon Romanovsky 2021-08-08 1278 return -EOPNOTSUPP; 30335171ca292d Leon Romanovsky 2021-08-08 1279 6edf10173a1feb Elad Raz = 2016-10-23 1280 if (port_type =3D=3D devlink_port->type) 6edf10173a1feb Elad Raz 2016-10-23 1281 return 0; 30335171ca292d Leon Romanovsky 2021-08-08 1282 30335171ca292d Leon = Romanovsky 2021-08-08 @1283 err =3D = devlink_port->devlink->ops->port_type_set(devlink_port, 30335171ca292d Leon Romanovsky 2021-08-08 1284 port_type); bfcd3a46617209 Jiri Pirko 2016-02-26 1285 if (err) bfcd3a46617209 Jiri Pirko 2016-02-26 1286 return err; 30335171ca292d Leon Romanovsky 2021-08-08 1287 bfcd3a46617209 Jiri = Pirko 2016-02-26 1288 devlink_port->desired_type =3D port_type; bfcd3a46617209 Jiri Pirko 2016-02-26 1289 = devlink_port_notify(devlink_port, DEVLINK_CMD_PORT_NEW); bfcd3a46617209 Jiri Pirko 2016-02-26 1290 return 0; bfcd3a46617209 Jiri Pirko 2016-02-26 1291 } bfcd3a46617209 Jiri Pirko 2016-02-26 1292 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============5922374934692841362== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICEbaD2EAAy5jb25maWcAjDzLdty2kvt8RR9nk7tILMmyxpk5WqBJkESaJBiA7Ic2PG2p5Wiu Hp6WlGv//VQBfABgUbEXtruq8K43Cvz5p58X7PXl6WH/cne9v7//vvhyeDwc9y+Hm8Xt3f3hfxax XJSyXvBY1L8BcX73+Prt/bdPF+3F+eLjb6fnv538erw+X6wOx8fD/SJ6ery9+/IKHdw9Pf7080+R LBORtlHUrrnSQpZtzbf15bvr+/3jl8Xfh+Mz0C2wl99OFr98uXv57/fv4e+Hu+Px6fj+/v7vh/br 8el/D9cvi/PT/cXnjyfXZx9/vzjd39xcn5yff/j0+ePFfx0Op7fnh9vfD+cnt79/+te7ftR0HPby xJmK0G2UszK9/D4A8edAe3p+An96HNPYIC2bkRxAPe3Zh48nZz08j6fjAQya53k8Ns8dOn8smFzE 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