From mboxrd@z Thu Jan 1 00:00:00 1970 Received: from mga18.intel.com (mga18.intel.com [134.134.136.126]) (using TLSv1.2 with cipher ECDHE-RSA-AES256-GCM-SHA384 (256/256 bits)) (No client certificate requested) by smtp.subspace.kernel.org (Postfix) with ESMTPS id 1F13D2C89 for ; Tue, 5 Oct 2021 23:18:50 +0000 (UTC) X-IronPort-AV: E=McAfee;i="6200,9189,10128"; a="212813476" X-IronPort-AV: E=Sophos;i="5.85,350,1624345200"; d="gz'50?scan'50,208,50";a="212813476" Received: from orsmga004.jf.intel.com ([10.7.209.38]) by orsmga106.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 05 Oct 2021 16:18:50 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.85,350,1624345200"; d="gz'50?scan'50,208,50";a="589560206" Received: from lkp-server01.sh.intel.com (HELO 72c3bd3cf19c) ([10.239.97.150]) by orsmga004.jf.intel.com with ESMTP; 05 Oct 2021 16:18:46 -0700 Received: from kbuild by 72c3bd3cf19c with local (Exim 4.92) (envelope-from ) id 1mXtht-0006Ga-Rc; Tue, 05 Oct 2021 23:18:45 +0000 Date: Wed, 6 Oct 2021 07:18:30 +0800 From: kernel test robot To: Igor Matheus Andrade Torrente , rodrigosiqueiramelo@gmail.com, melissa.srw@gmail.com Cc: llvm@lists.linux.dev, kbuild-all@lists.01.org, Igor Matheus Andrade Torrente , hamohammed.sa@gmail.com, daniel@ffwll.ch, airlied@linux.ie, contact@emersion.fr, leandro.ribeiro@collabora.com, dri-devel@lists.freedesktop.org, linux-kernel@vger.kernel.org Subject: Re: [PATCH 6/6] drm: vkms: Refactor the plane composer to accept new formats Message-ID: <202110060718.s10ZYLp1-lkp@intel.com> References: <20211005201637.58563-7-igormtorrente@gmail.com> Precedence: bulk X-Mailing-List: llvm@lists.linux.dev List-Id: List-Subscribe: List-Unsubscribe: MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="VbJkn9YxBvnuCH5J" Content-Disposition: inline In-Reply-To: <20211005201637.58563-7-igormtorrente@gmail.com> User-Agent: Mutt/1.10.1 (2018-07-13) --VbJkn9YxBvnuCH5J Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Igor, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on linus/master] [also build test WARNING on v5.15-rc3 next-20210922] [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/Igor-Matheus-Andrade-Torrente/Refactor-the-vkms-to-accept-new-formats/20211006-042037 base: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git 02d5e016800d082058b3d3b7c3ede136cdc6ddcb config: x86_64-randconfig-a003-20211004 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project c0039de2953d15815448b4b3c3bafb45607781e0) 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/9cd34ac9858091dc06086b2024e8f5f111657d48 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Igor-Matheus-Andrade-Torrente/Refactor-the-vkms-to-accept-new-formats/20211006-042037 git checkout 9cd34ac9858091dc06086b2024e8f5f111657d48 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=clang make.cross W=1 ARCH=x86_64 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 drivers/gpu/drm/vkms/vkms_composer.c:12: >> drivers/gpu/drm/vkms/vkms_formats.h:24:7: warning: no previous prototype for function 'packed_pixels_addr' [-Wmissing-prototypes] void *packed_pixels_addr(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:24:1: note: declare 'static' if the function is not intended to be used outside of this translation unit void *packed_pixels_addr(struct vkms_composer *composer, int x, int y) ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:31:5: warning: no previous prototype for function 'ARGB8888_to_ARGB16161616' [-Wmissing-prototypes] u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:31:1: note: declare 'static' if the function is not intended to be used outside of this translation unit u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:49:5: warning: no previous prototype for function 'XRGB8888_to_ARGB16161616' [-Wmissing-prototypes] u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:49:1: note: declare 'static' if the function is not intended to be used outside of this translation unit u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:63:5: warning: no previous prototype for function 'get_ARGB16161616' [-Wmissing-prototypes] u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:63:1: note: declare 'static' if the function is not intended to be used outside of this translation unit u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:85:6: warning: no previous prototype for function 'convert_to_ARGB8888' [-Wmissing-prototypes] void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:85:1: note: declare 'static' if the function is not intended to be used outside of this translation unit void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:106:6: warning: no previous prototype for function 'convert_to_XRGB8888' [-Wmissing-prototypes] void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:106:1: note: declare 'static' if the function is not intended to be used outside of this translation unit void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ static >> drivers/gpu/drm/vkms/vkms_formats.h:117:6: warning: no previous prototype for function 'convert_to_ARGB16161616' [-Wmissing-prototypes] void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:117:1: note: declare 'static' if the function is not intended to be used outside of this translation unit void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, int y, ^ static 7 warnings generated. vim +/packed_pixels_addr +24 drivers/gpu/drm/vkms/vkms_formats.h 7 8 #define pixel_offset(composer, x, y) \ 9 ((composer)->offset + ((y) * (composer)->pitch) + ((x) * (composer)->cpp)) 10 11 /* 12 * packed_pixels_addr - Get the pointer to pixel of a given pair of coordinates 13 * 14 * @composer: Buffer metadata 15 * @x: The x(width) coordinate of the 2D buffer 16 * @y: The y(Heigth) coordinate of the 2D buffer 17 * 18 * Takes the information stored in the composer, a pair of coordinates, and 19 * returns the address of the first color channel. 20 * This function assumes the channels are packed together, i.e. a color channel 21 * comes immediately after another. And therefore, this function doesn't work 22 * for YUV with chroma subsampling (e.g. YUV420 and NV21). 23 */ > 24 void *packed_pixels_addr(struct vkms_composer *composer, int x, int y) 25 { 26 int offset = pixel_offset(composer, x, y); 27 28 return (u8 *)composer->map[0].vaddr + offset; 29 } 30 > 31 u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) 32 { 33 u8 *pixel_addr = packed_pixels_addr(composer, x, y); 34 35 /* 36 * Organizes the channels in their respective positions and converts 37 * the 8 bits channel to 16. 38 * The 257 is the "conversion ratio". This number is obtained by the 39 * (2^16 - 1) / (2^8 - 1) division. Which, in this case, tries to get 40 * the best color value in a color space with more possibilities. 41 * And a similar idea applies to others RGB color conversions. 42 */ 43 return ((u64)pixel_addr[3] * 257) << 48 | 44 ((u64)pixel_addr[2] * 257) << 32 | 45 ((u64)pixel_addr[1] * 257) << 16 | 46 ((u64)pixel_addr[0] * 257); 47 } 48 > 49 u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int y) 50 { 51 u8 *pixel_addr = packed_pixels_addr(composer, x, y); 52 53 /* 54 * The same as the ARGB8888 but with the alpha channel as the 55 * maximum value as possible. 56 */ 57 return 0xffffllu << 48 | 58 ((u64)pixel_addr[2] * 257) << 32 | 59 ((u64)pixel_addr[1] * 257) << 16 | 60 ((u64)pixel_addr[0] * 257); 61 } 62 > 63 u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) 64 { 65 __le64 *pixel_addr = packed_pixels_addr(composer, x, y); 66 67 /* 68 * Because the format byte order is in little-endian and this code 69 * needs to run on big-endian machines too, we need modify 70 * the byte order from little-endian to the CPU native byte order. 71 */ 72 return le64_to_cpu(*pixel_addr); 73 } 74 75 /* 76 * The following functions are used as blend operations. But unlike the 77 * `alpha_blend`, these functions take an ARGB16161616 pixel from the 78 * source, convert it to a specific format, and store it in the destination. 79 * 80 * They are used in the `compose_active_planes` and `write_wb_buffer` to 81 * copy and convert one pixel from/to the output buffer to/from 82 * another buffer (e.g. writeback buffer, primary plane buffer). 83 */ 84 > 85 void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, 86 struct vkms_composer *dst_composer) 87 { 88 u8 *pixel_addr = packed_pixels_addr(dst_composer, x, y); 89 90 /* 91 * This sequence below is important because the format's byte order is 92 * in little-endian. In the case of the ARGB8888 the memory is 93 * organized this way: 94 * 95 * | Addr | = blue channel 96 * | Addr + 1 | = green channel 97 * | Addr + 2 | = Red channel 98 * | Addr + 3 | = Alpha channel 99 */ 100 pixel_addr[0] = DIV_ROUND_UP(argb_src1 & 0xffffllu, 257); 101 pixel_addr[1] = DIV_ROUND_UP((argb_src1 & (0xffffllu << 16)) >> 16, 257); 102 pixel_addr[2] = DIV_ROUND_UP((argb_src1 & (0xffffllu << 32)) >> 32, 257); 103 pixel_addr[3] = DIV_ROUND_UP((argb_src1 & (0xffffllu << 48)) >> 48, 257); 104 } 105 > 106 void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, 107 struct vkms_composer *dst_composer) 108 { 109 u8 *pixel_addr = packed_pixels_addr(dst_composer, x, y); 110 111 pixel_addr[0] = DIV_ROUND_UP(argb_src1 & 0xffffllu, 257); 112 pixel_addr[1] = DIV_ROUND_UP((argb_src1 & (0xffffllu << 16)) >> 16, 257); 113 pixel_addr[2] = DIV_ROUND_UP((argb_src1 & (0xffffllu << 32)) >> 32, 257); 114 pixel_addr[3] = 0xff; 115 } 116 > 117 void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, int y, 118 struct vkms_composer *dst_composer) 119 { 120 __le64 *pixel_addr = packed_pixels_addr(dst_composer, x, y); 121 122 *pixel_addr = cpu_to_le64(argb_src1); 123 } 124 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --VbJkn9YxBvnuCH5J Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICOrRXGEAAy5jb25maWcAnDzLltu2kvt8hY6zyV3EVj+vM3N6AZGgiIgkGIBUPzY8crfs 9KS75VGrE/vvpwrgAwCLSu54YVtVhXe9UeCPP/w4Y2+H3fPm8Hi/eXr6PvuyfdnuN4ftw+zz 49P2v2exnBWymvFYVO+BOHt8efv24dvHy+byfHbx/uTi/fzn/f3ZbLXdv2yfZtHu5fPjlzfo 4HH38sOPP0SySMSyiaJmzZUWsmgqflNdvbt/2rx8mf253b8C3ezk/P38/Xz205fHw399+AB/ Pz/u97v9h6enP5+br/vd/2zvD7P7+fzsl4ft6S8XZw8nFx9PLs7PP346/3R2f/Zp8/nT+cXl /N///niynf/rXTfqchj2au5MRegmylixvPreA/FnT3tyPoc/HY5pbJBl63ygBxhNnMXjEQFm OoiH9plD53cA04tY0WSiWDnTG4CNrlglIg+XwnSYzpulrOQkopF1VdbVgK+kzHSj67KUqmoU 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composer to accept new formats Date: Wed, 06 Oct 2021 07:18:30 +0800 Message-ID: <202110060718.s10ZYLp1-lkp@intel.com> In-Reply-To: <20211005201637.58563-7-igormtorrente@gmail.com> List-Id: --===============0987472321145190974== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Igor, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on linus/master] [also build test WARNING on v5.15-rc3 next-20210922] [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/Igor-Matheus-Andrade-Torre= nte/Refactor-the-vkms-to-accept-new-formats/20211006-042037 base: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = 02d5e016800d082058b3d3b7c3ede136cdc6ddcb config: x86_64-randconfig-a003-20211004 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project c0039d= e2953d15815448b4b3c3bafb45607781e0) 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/9cd34ac9858091dc06086b202= 4e8f5f111657d48 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Igor-Matheus-Andrade-Torrente/Refa= ctor-the-vkms-to-accept-new-formats/20211006-042037 git checkout 9cd34ac9858091dc06086b2024e8f5f111657d48 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross W=3D= 1 ARCH=3Dx86_64 = 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 drivers/gpu/drm/vkms/vkms_composer.c:12: >> drivers/gpu/drm/vkms/vkms_formats.h:24:7: warning: no previous prototype= for function 'packed_pixels_addr' [-Wmissing-prototypes] void *packed_pixels_addr(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:24:1: note: declare 'static' if the = function is not intended to be used outside of this translation unit void *packed_pixels_addr(struct vkms_composer *composer, int x, int y) ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:31:5: warning: no previous prototype= for function 'ARGB8888_to_ARGB16161616' [-Wmissing-prototypes] u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int = y) ^ drivers/gpu/drm/vkms/vkms_formats.h:31:1: note: declare 'static' if the = function is not intended to be used outside of this translation unit u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int = y) ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:49:5: warning: no previous prototype= for function 'XRGB8888_to_ARGB16161616' [-Wmissing-prototypes] u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int = y) ^ drivers/gpu/drm/vkms/vkms_formats.h:49:1: note: declare 'static' if the = function is not intended to be used outside of this translation unit u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, int = y) ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:63:5: warning: no previous prototype= for function 'get_ARGB16161616' [-Wmissing-prototypes] u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ drivers/gpu/drm/vkms/vkms_formats.h:63:1: note: declare 'static' if the = function is not intended to be used outside of this translation unit u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:85:6: warning: no previous prototype= for function 'convert_to_ARGB8888' [-Wmissing-prototypes] void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:85:1: note: declare 'static' if the = function is not intended to be used outside of this translation unit void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:106:6: warning: no previous prototyp= e for function 'convert_to_XRGB8888' [-Wmissing-prototypes] void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:106:1: note: declare 'static' if the= function is not intended to be used outside of this translation unit void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, ^ static = >> drivers/gpu/drm/vkms/vkms_formats.h:117:6: warning: no previous prototyp= e for function 'convert_to_ARGB16161616' [-Wmissing-prototypes] void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, int y, ^ drivers/gpu/drm/vkms/vkms_formats.h:117:1: note: declare 'static' if the= function is not intended to be used outside of this translation unit void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, int y, ^ static = 7 warnings generated. vim +/packed_pixels_addr +24 drivers/gpu/drm/vkms/vkms_formats.h 7 = 8 #define pixel_offset(composer, x, y) \ 9 ((composer)->offset + ((y) * (composer)->pitch) + ((x) * (composer)= ->cpp)) 10 = 11 /* 12 * packed_pixels_addr - Get the pointer to pixel of a given pair of = coordinates 13 * 14 * @composer: Buffer metadata 15 * @x: The x(width) coordinate of the 2D buffer 16 * @y: The y(Heigth) coordinate of the 2D buffer 17 * 18 * Takes the information stored in the composer, a pair of coordinat= es, and 19 * returns the address of the first color channel. 20 * This function assumes the channels are packed together, i.e. a co= lor channel 21 * comes immediately after another. And therefore, this function doe= sn't work 22 * for YUV with chroma subsampling (e.g. YUV420 and NV21). 23 */ > 24 void *packed_pixels_addr(struct vkms_composer *composer, int x, int = y) 25 { 26 int offset =3D pixel_offset(composer, x, y); 27 = 28 return (u8 *)composer->map[0].vaddr + offset; 29 } 30 = > 31 u64 ARGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, = int y) 32 { 33 u8 *pixel_addr =3D packed_pixels_addr(composer, x, y); 34 = 35 /* 36 * Organizes the channels in their respective positions and converts 37 * the 8 bits channel to 16. 38 * The 257 is the "conversion ratio". This number is obtained by the 39 * (2^16 - 1) / (2^8 - 1) division. Which, in this case, tries to g= et 40 * the best color value in a color space with more possibilities. 41 * And a similar idea applies to others RGB color conversions. 42 */ 43 return ((u64)pixel_addr[3] * 257) << 48 | 44 ((u64)pixel_addr[2] * 257) << 32 | 45 ((u64)pixel_addr[1] * 257) << 16 | 46 ((u64)pixel_addr[0] * 257); 47 } 48 = > 49 u64 XRGB8888_to_ARGB16161616(struct vkms_composer *composer, int x, = int y) 50 { 51 u8 *pixel_addr =3D packed_pixels_addr(composer, x, y); 52 = 53 /* 54 * The same as the ARGB8888 but with the alpha channel as the 55 * maximum value as possible. 56 */ 57 return 0xffffllu << 48 | 58 ((u64)pixel_addr[2] * 257) << 32 | 59 ((u64)pixel_addr[1] * 257) << 16 | 60 ((u64)pixel_addr[0] * 257); 61 } 62 = > 63 u64 get_ARGB16161616(struct vkms_composer *composer, int x, int y) 64 { 65 __le64 *pixel_addr =3D packed_pixels_addr(composer, x, y); 66 = 67 /* 68 * Because the format byte order is in little-endian and this code 69 * needs to run on big-endian machines too, we need modify 70 * the byte order from little-endian to the CPU native byte order. 71 */ 72 return le64_to_cpu(*pixel_addr); 73 } 74 = 75 /* 76 * The following functions are used as blend operations. But unlike = the 77 * `alpha_blend`, these functions take an ARGB16161616 pixel from the 78 * source, convert it to a specific format, and store it in the dest= ination. 79 * 80 * They are used in the `compose_active_planes` and `write_wb_buffer= ` to 81 * copy and convert one pixel from/to the output buffer to/from 82 * another buffer (e.g. writeback buffer, primary plane buffer). 83 */ 84 = > 85 void convert_to_ARGB8888(u64 argb_src1, u64 argb_src2, int x, int y, 86 struct vkms_composer *dst_composer) 87 { 88 u8 *pixel_addr =3D packed_pixels_addr(dst_composer, x, y); 89 = 90 /* 91 * This sequence below is important because the format's byte order= is 92 * in little-endian. In the case of the ARGB8888 the memory is 93 * organized this way: 94 * 95 * | Addr | =3D blue channel 96 * | Addr + 1 | =3D green channel 97 * | Addr + 2 | =3D Red channel 98 * | Addr + 3 | =3D Alpha channel 99 */ 100 pixel_addr[0] =3D DIV_ROUND_UP(argb_src1 & 0xffffllu, 257); 101 pixel_addr[1] =3D DIV_ROUND_UP((argb_src1 & (0xffffllu << 16)) >> 1= 6, 257); 102 pixel_addr[2] =3D DIV_ROUND_UP((argb_src1 & (0xffffllu << 32)) >> 3= 2, 257); 103 pixel_addr[3] =3D DIV_ROUND_UP((argb_src1 & (0xffffllu << 48)) >> 4= 8, 257); 104 } 105 = > 106 void convert_to_XRGB8888(u64 argb_src1, u64 argb_src2, int x, int y, 107 struct vkms_composer *dst_composer) 108 { 109 u8 *pixel_addr =3D packed_pixels_addr(dst_composer, x, y); 110 = 111 pixel_addr[0] =3D DIV_ROUND_UP(argb_src1 & 0xffffllu, 257); 112 pixel_addr[1] =3D DIV_ROUND_UP((argb_src1 & (0xffffllu << 16)) >> 1= 6, 257); 113 pixel_addr[2] =3D DIV_ROUND_UP((argb_src1 & (0xffffllu << 32)) >> 3= 2, 257); 114 pixel_addr[3] =3D 0xff; 115 } 116 = > 117 void convert_to_ARGB16161616(u64 argb_src1, u64 argb_src2, int x, in= t y, 118 struct vkms_composer *dst_composer) 119 { 120 __le64 *pixel_addr =3D packed_pixels_addr(dst_composer, x, y); 121 = 122 *pixel_addr =3D cpu_to_le64(argb_src1); 123 } 124 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0987472321145190974== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICOrRXGEAAy5jb25maWcAnDzLltu2kvt8hY6zyV3EVj+vM3N6AZGgiIgkGIBUPzY8crfs9KS7 5VGrE/vvpwrgAwCLSu54YVtVhXe9UeCPP/w4Y2+H3fPm8Hi/eXr6PvuyfdnuN4ftw+zz49P2v2ex nBWymvFYVO+BOHt8efv24dvHy+byfHbx/uTi/fzn/f3ZbLXdv2yfZtHu5fPjlzfo4HH38sOPP0Sy SMSyiaJmzZUWsmgqflNdvbt/2rx8mf253b8C3ezk/P38/Xz205fHw399+AB/Pz/u97v9h6enP5+b r/vd/2zvD7P7+fzsl4ft6S8XZw8nFx9PLs7PP346/3R2f/Zp8/nT+cXl/N///niynf/rXTfqchj2 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