From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============3384026278692717496==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH] fix array index out of bound exception Date: Thu, 12 Aug 2021 01:24:07 +0800 Message-ID: <202108120104.mLULeD2X-lkp@intel.com> In-Reply-To: <20210811131150.20282-1-asha.16@itfac.mrt.ac.lk> List-Id: --===============3384026278692717496== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi SULAIMAN", Thank you for the patch! Perhaps something to improve: [auto build test WARNING on linus/master] [also build test WARNING on v5.14-rc5 next-20210811] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use '--base' as documented in https://git-scm.com/docs/git-format-patch] url: https://github.com/0day-ci/linux/commits/F-A-SULAIMAN/fix-array-ind= ex-out-of-bound-exception/20210811-211453 base: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = 761c6d7ec820f123b931e7b8ef7ec7c8564e450f config: sparc64-randconfig-r026-20210811 (attached as .config) compiler: sparc64-linux-gcc (GCC) 10.3.0 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/0day-ci/linux/commit/3c70bc4978e0cb74c7ba5189c= 093ecccf4564925 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review F-A-SULAIMAN/fix-array-index-out-o= f-bound-exception/20210811-211453 git checkout 3c70bc4978e0cb74c7ba5189c093ecccf4564925 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-10.3.0 make.cross= ARCH=3Dsparc64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): In file included from include/linux/swab.h:5, from include/uapi/linux/byteorder/big_endian.h:13, from include/linux/byteorder/big_endian.h:5, from arch/sparc/include/uapi/asm/byteorder.h:5, from arch/sparc/include/asm/bitops_64.h:16, from arch/sparc/include/asm/bitops.h:5, from include/linux/bitops.h:32, from include/linux/kernel.h:12, from include/linux/list.h:9, from include/linux/wait.h:7, from include/linux/wait_bit.h:8, from include/linux/fs.h:6, from fs/udf/udfdecl.h:10, from fs/udf/super.c:41: fs/udf/super.c: In function 'udf_count_free': >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:118:32: note: in definition of macro '__swab32' 118 | (__builtin_constant_p((__u32)(x)) ? \ | ^ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:19:12: note: in definition of macro '___consta= nt_swab32' 19 | (((__u32)(x) & (__u32)0x000000ffUL) << 24) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of m= acro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:20:12: note: in definition of macro '___consta= nt_swab32' 20 | (((__u32)(x) & (__u32)0x0000ff00UL) << 8) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of m= acro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:21:12: note: in definition of macro '___consta= nt_swab32' 21 | (((__u32)(x) & (__u32)0x00ff0000UL) >> 8) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of m= acro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:22:12: note: in definition of macro '___consta= nt_swab32' 22 | (((__u32)(x) & (__u32)0xff000000UL) >> 24))) | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of m= acro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from poin= ter to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:120:12: note: in definition of macro '__swab32' 120 | __fswab32(x)) | ^ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__= le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum =3D le32_to_cpu( | ^~~~~~~~~~~ vim +34 include/uapi/linux/byteorder/big_endian.h 5921e6f8809b16 David Howells 2012-10-13 14 = 5921e6f8809b16 David Howells 2012-10-13 15 #define __constant_htonl(x) ((= __force __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 16 #define __constant_ntohl(x) ((= __force __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 17 #define __constant_htons(x) ((= __force __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 18 #define __constant_ntohs(x) ((= __force __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 19 #define __constant_cpu_to_le64= (x) ((__force __le64)___constant_swab64((x))) 5921e6f8809b16 David Howells 2012-10-13 20 #define __constant_le64_to_cpu= (x) ___constant_swab64((__force __u64)(__le64)(x)) 5921e6f8809b16 David Howells 2012-10-13 21 #define __constant_cpu_to_le32= (x) ((__force __le32)___constant_swab32((x))) 5921e6f8809b16 David Howells 2012-10-13 22 #define __constant_le32_to_cpu= (x) ___constant_swab32((__force __u32)(__le32)(x)) 5921e6f8809b16 David Howells 2012-10-13 23 #define __constant_cpu_to_le16= (x) ((__force __le16)___constant_swab16((x))) 5921e6f8809b16 David Howells 2012-10-13 24 #define __constant_le16_to_cpu= (x) ___constant_swab16((__force __u16)(__le16)(x)) 5921e6f8809b16 David Howells 2012-10-13 25 #define __constant_cpu_to_be64= (x) ((__force __be64)(__u64)(x)) 5921e6f8809b16 David Howells 2012-10-13 26 #define __constant_be64_to_cpu= (x) ((__force __u64)(__be64)(x)) 5921e6f8809b16 David Howells 2012-10-13 27 #define __constant_cpu_to_be32= (x) ((__force __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 28 #define __constant_be32_to_cpu= (x) ((__force __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 29 #define __constant_cpu_to_be16= (x) ((__force __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 30 #define __constant_be16_to_cpu= (x) ((__force __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 31 #define __cpu_to_le64(x) ((__f= orce __le64)__swab64((x))) 5921e6f8809b16 David Howells 2012-10-13 32 #define __le64_to_cpu(x) __swa= b64((__force __u64)(__le64)(x)) 5921e6f8809b16 David Howells 2012-10-13 33 #define __cpu_to_le32(x) ((__f= orce __le32)__swab32((x))) 5921e6f8809b16 David Howells 2012-10-13 @34 #define __le32_to_cpu(x) __swa= b32((__force __u32)(__le32)(x)) 5921e6f8809b16 David Howells 2012-10-13 35 #define __cpu_to_le16(x) ((__f= orce __le16)__swab16((x))) 5921e6f8809b16 David Howells 2012-10-13 36 #define __le16_to_cpu(x) __swa= b16((__force __u16)(__le16)(x)) 5921e6f8809b16 David Howells 2012-10-13 37 #define __cpu_to_be64(x) ((__f= orce __be64)(__u64)(x)) 5921e6f8809b16 David Howells 2012-10-13 38 #define __be64_to_cpu(x) ((__f= orce __u64)(__be64)(x)) 5921e6f8809b16 David Howells 2012-10-13 39 #define __cpu_to_be32(x) ((__f= orce __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 40 #define __be32_to_cpu(x) ((__f= orce __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 41 #define __cpu_to_be16(x) ((__f= orce __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 42 #define __be16_to_cpu(x) ((__f= orce __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 43 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============3384026278692717496== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICCTuE2EAAy5jb25maWcAnFxdk9s2r77vr9CkN+3Mm8TeryRzZi8oirJY62tJyvbujcbxOu1O d+0c29u3+fcHoL5Iit52zkWbGIAgEgSBByCVn3/6OSCvp/3L+vS0WT8//wh+3+62h/Vp+xh8e3re /k8QFUFeqIBFXH0A4fRp9/r3x+P39WFzcxVcf5hefZi8P2yug/n2sNs+B3S/+/b0+ytoeNrvfvr5 J1rkMZ/VlNYLJiQv8lqxlbp912p4/4z63v++2QS/zCj9NZhOPlx+mLwznuOyBs7tj440G3TdTieT y8mkF05JPut5PZlIrSOvBh1A6sQuLq8nFx09jVA0jKNBFEh+UYMxMYabgG4is3pWqGLQYjB4nvKc jVh5UZeiiHnK6jiviVLCEClyqURFVSHkQOXirl4WYg4UMPTPwUyv3HNw3J5evw+mD0UxZ3kNlpdZ aTydc1WzfFETAZPhGVe3lxfDC7MSR6KYVIYpCkrSbs7v+jUKKw62kCRVBjFiMalSpV/jISeFVDnJ 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mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on aws-us-west-2-korg-lkml-1.web.codeaurora.org X-Spam-Level: X-Spam-Status: No, score=-10.2 required=3.0 tests=BAYES_00, HEADER_FROM_DIFFERENT_DOMAINS,MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING, SPF_HELO_NONE,SPF_PASS,URIBL_BLOCKED,USER_AGENT_SANE_1 autolearn=ham autolearn_force=no version=3.4.0 Received: from mail.kernel.org (mail.kernel.org [198.145.29.99]) by smtp.lore.kernel.org (Postfix) with ESMTP id 4F20CC432BE for ; Wed, 11 Aug 2021 17:24:52 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [23.128.96.18]) by mail.kernel.org (Postfix) with ESMTP id 2173860FC3 for ; Wed, 11 Aug 2021 17:24:52 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S231527AbhHKRZO (ORCPT ); Wed, 11 Aug 2021 13:25:14 -0400 Received: from mga06.intel.com ([134.134.136.31]:27967 "EHLO mga06.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S231377AbhHKRZN (ORCPT ); Wed, 11 Aug 2021 13:25:13 -0400 X-IronPort-AV: E=McAfee;i="6200,9189,10073"; a="276214952" X-IronPort-AV: E=Sophos;i="5.84,313,1620716400"; d="gz'50?scan'50,208,50";a="276214952" Received: from fmsmga006.fm.intel.com ([10.253.24.20]) by orsmga104.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 11 Aug 2021 10:24:48 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.84,313,1620716400"; d="gz'50?scan'50,208,50";a="672988891" Received: from lkp-server01.sh.intel.com (HELO d053b881505b) ([10.239.97.150]) by fmsmga006.fm.intel.com with ESMTP; 11 Aug 2021 10:24:46 -0700 Received: from kbuild by d053b881505b with local (Exim 4.92) (envelope-from ) id 1mDry9-000LxZ-LA; Wed, 11 Aug 2021 17:24:45 +0000 Date: Thu, 12 Aug 2021 01:24:07 +0800 From: kernel test robot To: "F.A. SULAIMAN" , jack@suse.com Cc: kbuild-all@lists.01.org, "F.A.Sulaiman" , linux-kernel@vger.kernel.org Subject: Re: [PATCH] fix array index out of bound exception Message-ID: <202108120104.mLULeD2X-lkp@intel.com> References: <20210811131150.20282-1-asha.16@itfac.mrt.ac.lk> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="jI8keyz6grp/JLjh" Content-Disposition: inline In-Reply-To: <20210811131150.20282-1-asha.16@itfac.mrt.ac.lk> User-Agent: Mutt/1.10.1 (2018-07-13) Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --jI8keyz6grp/JLjh Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi SULAIMAN", Thank you for the patch! Perhaps something to improve: [auto build test WARNING on linus/master] [also build test WARNING on v5.14-rc5 next-20210811] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use '--base' as documented in https://git-scm.com/docs/git-format-patch] url: https://github.com/0day-ci/linux/commits/F-A-SULAIMAN/fix-array-index-out-of-bound-exception/20210811-211453 base: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git 761c6d7ec820f123b931e7b8ef7ec7c8564e450f config: sparc64-randconfig-r026-20210811 (attached as .config) compiler: sparc64-linux-gcc (GCC) 10.3.0 reproduce (this is a W=1 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/0day-ci/linux/commit/3c70bc4978e0cb74c7ba5189c093ecccf4564925 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review F-A-SULAIMAN/fix-array-index-out-of-bound-exception/20210811-211453 git checkout 3c70bc4978e0cb74c7ba5189c093ecccf4564925 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-10.3.0 make.cross ARCH=sparc64 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): In file included from include/linux/swab.h:5, from include/uapi/linux/byteorder/big_endian.h:13, from include/linux/byteorder/big_endian.h:5, from arch/sparc/include/uapi/asm/byteorder.h:5, from arch/sparc/include/asm/bitops_64.h:16, from arch/sparc/include/asm/bitops.h:5, from include/linux/bitops.h:32, from include/linux/kernel.h:12, from include/linux/list.h:9, from include/linux/wait.h:7, from include/linux/wait_bit.h:8, from include/linux/fs.h:6, from fs/udf/udfdecl.h:10, from fs/udf/super.c:41: fs/udf/super.c: In function 'udf_count_free': >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:118:32: note: in definition of macro '__swab32' 118 | (__builtin_constant_p((__u32)(x)) ? \ | ^ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:19:12: note: in definition of macro '___constant_swab32' 19 | (((__u32)(x) & (__u32)0x000000ffUL) << 24) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of macro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:20:12: note: in definition of macro '___constant_swab32' 20 | (((__u32)(x) & (__u32)0x0000ff00UL) << 8) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of macro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:21:12: note: in definition of macro '___constant_swab32' 21 | (((__u32)(x) & (__u32)0x00ff0000UL) >> 8) | \ | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of macro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:22:12: note: in definition of macro '___constant_swab32' 22 | (((__u32)(x) & (__u32)0xff000000UL) >> 24))) | ^ include/uapi/linux/byteorder/big_endian.h:34:26: note: in expansion of macro '__swab32' 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^~~~~~~~ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ >> include/uapi/linux/byteorder/big_endian.h:34:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] 34 | #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) | ^ include/uapi/linux/swab.h:120:12: note: in definition of macro '__swab32' 120 | __fswab32(x)) | ^ include/linux/byteorder/generic.h:89:21: note: in expansion of macro '__le32_to_cpu' 89 | #define le32_to_cpu __le32_to_cpu | ^~~~~~~~~~~~~ fs/udf/super.c:2524:12: note: in expansion of macro 'le32_to_cpu' 2524 | accum = le32_to_cpu( | ^~~~~~~~~~~ vim +34 include/uapi/linux/byteorder/big_endian.h 5921e6f8809b16 David Howells 2012-10-13 14 5921e6f8809b16 David Howells 2012-10-13 15 #define __constant_htonl(x) ((__force __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 16 #define __constant_ntohl(x) ((__force __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 17 #define __constant_htons(x) ((__force __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 18 #define __constant_ntohs(x) ((__force __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 19 #define __constant_cpu_to_le64(x) ((__force __le64)___constant_swab64((x))) 5921e6f8809b16 David Howells 2012-10-13 20 #define __constant_le64_to_cpu(x) ___constant_swab64((__force __u64)(__le64)(x)) 5921e6f8809b16 David Howells 2012-10-13 21 #define __constant_cpu_to_le32(x) ((__force __le32)___constant_swab32((x))) 5921e6f8809b16 David Howells 2012-10-13 22 #define __constant_le32_to_cpu(x) ___constant_swab32((__force __u32)(__le32)(x)) 5921e6f8809b16 David Howells 2012-10-13 23 #define __constant_cpu_to_le16(x) ((__force __le16)___constant_swab16((x))) 5921e6f8809b16 David Howells 2012-10-13 24 #define __constant_le16_to_cpu(x) ___constant_swab16((__force __u16)(__le16)(x)) 5921e6f8809b16 David Howells 2012-10-13 25 #define __constant_cpu_to_be64(x) ((__force __be64)(__u64)(x)) 5921e6f8809b16 David Howells 2012-10-13 26 #define __constant_be64_to_cpu(x) ((__force __u64)(__be64)(x)) 5921e6f8809b16 David Howells 2012-10-13 27 #define __constant_cpu_to_be32(x) ((__force __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 28 #define __constant_be32_to_cpu(x) ((__force __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 29 #define __constant_cpu_to_be16(x) ((__force __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 30 #define __constant_be16_to_cpu(x) ((__force __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 31 #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) 5921e6f8809b16 David Howells 2012-10-13 32 #define __le64_to_cpu(x) __swab64((__force __u64)(__le64)(x)) 5921e6f8809b16 David Howells 2012-10-13 33 #define __cpu_to_le32(x) ((__force __le32)__swab32((x))) 5921e6f8809b16 David Howells 2012-10-13 @34 #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) 5921e6f8809b16 David Howells 2012-10-13 35 #define __cpu_to_le16(x) ((__force __le16)__swab16((x))) 5921e6f8809b16 David Howells 2012-10-13 36 #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) 5921e6f8809b16 David Howells 2012-10-13 37 #define __cpu_to_be64(x) ((__force __be64)(__u64)(x)) 5921e6f8809b16 David Howells 2012-10-13 38 #define __be64_to_cpu(x) ((__force __u64)(__be64)(x)) 5921e6f8809b16 David Howells 2012-10-13 39 #define __cpu_to_be32(x) ((__force __be32)(__u32)(x)) 5921e6f8809b16 David Howells 2012-10-13 40 #define __be32_to_cpu(x) ((__force __u32)(__be32)(x)) 5921e6f8809b16 David Howells 2012-10-13 41 #define __cpu_to_be16(x) ((__force __be16)(__u16)(x)) 5921e6f8809b16 David Howells 2012-10-13 42 #define __be16_to_cpu(x) ((__force __u16)(__be16)(x)) 5921e6f8809b16 David Howells 2012-10-13 43 --- 0-DAY CI 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