Return-Path: Date: Fri, 14 Apr 2017 06:04:02 +0800 From: kbuild test robot To: "Felipe F. Tonello" Cc: kbuild-all@01.org, linux-bluetooth@vger.kernel.org, linux-kernel@vger.kernel.org, Marcel Holtmann , Johan Hedberg , Luiz Augusto von Dentz Subject: Re: [PATCH v5 BlueZ 4/4] Bluetooth: Handle Slave Connection Interval Range AD Message-ID: <201704140542.PIMIUBDA%fengguang.wu@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="jRHKVT23PllUwdXP" In-Reply-To: <20170413122203.4247-5-eu@felipetonello.com> List-ID: --jRHKVT23PllUwdXP Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Felipe, [auto build test WARNING on bluetooth/master] [also build test WARNING on v4.11-rc6 next-20170413] [if your patch is applied to the wrong git tree, please drop us a note to help improve the system] url: https://github.com/0day-ci/linux/commits/Felipe-F-Tonello/Connection-Update-improvements/20170414-030326 base: https://git.kernel.org/pub/scm/linux/kernel/git/bluetooth/bluetooth.git master config: xtensa-allmodconfig (attached as .config) compiler: xtensa-linux-gcc (GCC) 4.9.0 reproduce: wget https://raw.githubusercontent.com/01org/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # save the attached .config to linux build tree make.cross ARCH=xtensa All warnings (new ones prefixed by >>): In file included from include/linux/swab.h:4:0, from include/uapi/linux/byteorder/big_endian.h:12, from include/linux/byteorder/big_endian.h:4, from arch/xtensa/include/uapi/asm/byteorder.h:7, from arch/xtensa/include/asm/bitops.h:23, from include/linux/bitops.h:36, from include/linux/kernel.h:10, from include/linux/list.h:8, from include/linux/module.h:9, from net/bluetooth/mgmt.c:27: net/bluetooth/mgmt.c: In function 'has_eir_slave_conn_int': >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:103:32: note: in definition of macro '__swab16' (__builtin_constant_p((__u16)(x)) ? \ ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:13:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0x00ffU) << 8) | \ ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:14:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0xff00U) >> 8))) ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:105:12: note: in definition of macro '__swab16' __fswab16(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:103:32: note: in definition of macro '__swab16' (__builtin_constant_p((__u16)(x)) ? \ ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:13:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0x00ffU) << 8) | \ ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:14:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0xff00U) >> 8))) ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:105:12: note: in definition of macro '__swab16' __fswab16(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net/bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ -- In file included from include/linux/swab.h:4:0, from include/uapi/linux/byteorder/big_endian.h:12, from include/linux/byteorder/big_endian.h:4, from arch/xtensa/include/uapi/asm/byteorder.h:7, from arch/xtensa/include/asm/bitops.h:23, from include/linux/bitops.h:36, from include/linux/kernel.h:10, from include/linux/list.h:8, from include/linux/module.h:9, from net//bluetooth/mgmt.c:27: net//bluetooth/mgmt.c: In function 'has_eir_slave_conn_int': >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:103:32: note: in definition of macro '__swab16' (__builtin_constant_p((__u16)(x)) ? \ ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:13:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0x00ffU) << 8) | \ ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:14:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0xff00U) >> 8))) ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:105:12: note: in definition of macro '__swab16' __fswab16(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7474:16: note: in expansion of macro 'le16_to_cpu' *min_conn = le16_to_cpu(&data[0]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:103:32: note: in definition of macro '__swab16' (__builtin_constant_p((__u16)(x)) ? \ ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:13:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0x00ffU) << 8) | \ ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:14:12: note: in definition of macro '___constant_swab16' (((__u16)(x) & (__u16)0xff00U) >> 8))) ^ include/uapi/linux/byteorder/big_endian.h:35:26: note: in expansion of macro '__swab16' #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ >> include/uapi/linux/byteorder/big_endian.h:35:50: warning: cast from pointer to integer of different size [-Wpointer-to-int-cast] #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) ^ include/uapi/linux/swab.h:105:12: note: in definition of macro '__swab16' __fswab16(x)) ^ include/linux/byteorder/generic.h:90:21: note: in expansion of macro '__le16_to_cpu' #define le16_to_cpu __le16_to_cpu ^ net//bluetooth/mgmt.c:7475:16: note: in expansion of macro 'le16_to_cpu' *max_conn = le16_to_cpu(&data[2]); ^ vim +35 include/uapi/linux/byteorder/big_endian.h 5921e6f8 David Howells 2012-10-13 19 #define __constant_le64_to_cpu(x) ___constant_swab64((__force __u64)(__le64)(x)) 5921e6f8 David Howells 2012-10-13 20 #define __constant_cpu_to_le32(x) ((__force __le32)___constant_swab32((x))) 5921e6f8 David Howells 2012-10-13 21 #define __constant_le32_to_cpu(x) ___constant_swab32((__force __u32)(__le32)(x)) 5921e6f8 David Howells 2012-10-13 22 #define __constant_cpu_to_le16(x) ((__force __le16)___constant_swab16((x))) 5921e6f8 David Howells 2012-10-13 23 #define __constant_le16_to_cpu(x) ___constant_swab16((__force __u16)(__le16)(x)) 5921e6f8 David Howells 2012-10-13 24 #define __constant_cpu_to_be64(x) ((__force __be64)(__u64)(x)) 5921e6f8 David Howells 2012-10-13 25 #define __constant_be64_to_cpu(x) ((__force __u64)(__be64)(x)) 5921e6f8 David Howells 2012-10-13 26 #define __constant_cpu_to_be32(x) ((__force __be32)(__u32)(x)) 5921e6f8 David Howells 2012-10-13 27 #define __constant_be32_to_cpu(x) ((__force __u32)(__be32)(x)) 5921e6f8 David Howells 2012-10-13 28 #define __constant_cpu_to_be16(x) ((__force __be16)(__u16)(x)) 5921e6f8 David Howells 2012-10-13 29 #define __constant_be16_to_cpu(x) ((__force __u16)(__be16)(x)) 5921e6f8 David Howells 2012-10-13 30 #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) 5921e6f8 David Howells 2012-10-13 31 #define __le64_to_cpu(x) __swab64((__force __u64)(__le64)(x)) 5921e6f8 David Howells 2012-10-13 32 #define __cpu_to_le32(x) ((__force __le32)__swab32((x))) 5921e6f8 David Howells 2012-10-13 33 #define __le32_to_cpu(x) __swab32((__force __u32)(__le32)(x)) 5921e6f8 David Howells 2012-10-13 34 #define __cpu_to_le16(x) ((__force __le16)__swab16((x))) 5921e6f8 David Howells 2012-10-13 @35 #define __le16_to_cpu(x) __swab16((__force __u16)(__le16)(x)) 5921e6f8 David Howells 2012-10-13 36 #define __cpu_to_be64(x) ((__force __be64)(__u64)(x)) 5921e6f8 David Howells 2012-10-13 37 #define __be64_to_cpu(x) ((__force __u64)(__be64)(x)) 5921e6f8 David Howells 2012-10-13 38 #define __cpu_to_be32(x) ((__force __be32)(__u32)(x)) 5921e6f8 David Howells 2012-10-13 39 #define __be32_to_cpu(x) ((__force __u32)(__be32)(x)) 5921e6f8 David Howells 2012-10-13 40 #define __cpu_to_be16(x) ((__force __be16)(__u16)(x)) 5921e6f8 David Howells 2012-10-13 41 #define __be16_to_cpu(x) ((__force __u16)(__be16)(x)) 5921e6f8 David Howells 2012-10-13 42 bc27fb68 Denys Vlasenko 2016-03-17 43 static __always_inline __le64 __cpu_to_le64p(const __u64 *p) :::::: The code at line 35 was first introduced by commit :::::: 5921e6f8809b1616932ca4afd40fe449faa8fd88 UAPI: (Scripted) Disintegrate include/linux/byteorder :::::: TO: David Howells :::::: CC: David Howells --- 0-DAY kernel test infrastructure Open Source Technology Center https://lists.01.org/pipermail/kbuild-all Intel Corporation --jRHKVT23PllUwdXP Content-Type: 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