From 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=unavailable 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 04B32C4741F for ; Wed, 4 Nov 2020 16:02:25 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [23.128.96.18]) by mail.kernel.org (Postfix) with ESMTP id 9683D2076D for ; Wed, 4 Nov 2020 16:02:24 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1730793AbgKDQCX (ORCPT ); Wed, 4 Nov 2020 11:02:23 -0500 Received: from mga04.intel.com ([192.55.52.120]:24040 "EHLO mga04.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1726801AbgKDQCX (ORCPT ); Wed, 4 Nov 2020 11:02:23 -0500 IronPort-SDR: mwbuhqkQ95xWrXW3Xa//oE9GGG8GyXf56gymfVQvuoNi+x7ab4YvxwiB2uIS+VzBVZ/dd+3oB3 xlNVsiDD1kKw== X-IronPort-AV: E=McAfee;i="6000,8403,9795"; a="166647827" X-IronPort-AV: E=Sophos;i="5.77,451,1596524400"; d="gz'50?scan'50,208,50";a="166647827" X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False Received: from fmsmga004.fm.intel.com ([10.253.24.48]) by fmsmga104.fm.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 04 Nov 2020 08:01:50 -0800 IronPort-SDR: A0SPCXBsewMRa0uh0tZlkDsvx18nYOLsgCP8H9V3OpU2V59roEb0idDvLFzVUiWsy81tTKLaae rN+w7T7zDagg== X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.77,451,1596524400"; d="gz'50?scan'50,208,50";a="353877565" Received: from lkp-server02.sh.intel.com (HELO e61783667810) ([10.239.97.151]) by fmsmga004.fm.intel.com with ESMTP; 04 Nov 2020 08:01:47 -0800 Received: from kbuild by e61783667810 with local (Exim 4.92) (envelope-from ) id 1kaLEJ-0000ys-33; Wed, 04 Nov 2020 16:01:47 +0000 Date: Thu, 5 Nov 2020 00:01:39 +0800 From: kernel test robot To: David Gow , OGAWA Hirofumi , Brendan Higgins , shuah@kernel.org Cc: kbuild-all@lists.01.org, kunit-dev@googlegroups.com, linux-kselftest@vger.kernel.org, linux-kernel@vger.kernel.org, David Gow Subject: Re: [PATCH v7] fat: Add KUnit tests for checksums and timestamps Message-ID: <202011042336.XTRoHT3i-lkp@intel.com> References: <20201028064631.3774908-1-davidgow@google.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="BOKacYhQ+x31HxR3" Content-Disposition: inline In-Reply-To: <20201028064631.3774908-1-davidgow@google.com> User-Agent: Mutt/1.10.1 (2018-07-13) Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --BOKacYhQ+x31HxR3 Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi David, I love your patch! Perhaps something to improve: [auto build test WARNING on linus/master] [also build test WARNING on v5.10-rc2 next-20201104] [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/David-Gow/fat-Add-KUnit-tests-for-checksums-and-timestamps/20201029-062211 base: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git 23859ae44402f4d935b9ee548135dd1e65e2cbf4 config: parisc-randconfig-s031-20201104 (attached as .config) compiler: hppa-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.3-76-gf680124b-dirty # https://github.com/0day-ci/linux/commit/2703274109bdea879973719332569f6754dce440 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review David-Gow/fat-Add-KUnit-tests-for-checksums-and-timestamps/20201029-062211 git checkout 2703274109bdea879973719332569f6754dce440 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-9.3.0 make.cross C=1 CF='-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=parisc If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot "sparse warnings: (new ones prefixed by >>)" fs/fat/fat_test.c:38:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:38:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:38:25: sparse: got int fs/fat/fat_test.c:45:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] time @@ got int @@ fs/fat/fat_test.c:45:25: sparse: expected restricted __le16 [usertype] time fs/fat/fat_test.c:45:25: sparse: got int fs/fat/fat_test.c:46:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:46:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:46:25: sparse: got int fs/fat/fat_test.c:54:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:54:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:54:25: sparse: got int fs/fat/fat_test.c:61:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] time @@ got int @@ fs/fat/fat_test.c:61:25: sparse: expected restricted __le16 [usertype] time fs/fat/fat_test.c:61:25: sparse: got int fs/fat/fat_test.c:62:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:62:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:62:25: sparse: got int fs/fat/fat_test.c:70:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:70:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:70:25: sparse: got int fs/fat/fat_test.c:78:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:78:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:78:25: sparse: got int fs/fat/fat_test.c:86:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:86:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:86:25: sparse: got int fs/fat/fat_test.c:93:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] time @@ got int @@ fs/fat/fat_test.c:93:25: sparse: expected restricted __le16 [usertype] time fs/fat/fat_test.c:93:25: sparse: got int fs/fat/fat_test.c:94:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:94:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:94:25: sparse: got int fs/fat/fat_test.c:101:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] time @@ got int @@ fs/fat/fat_test.c:101:25: sparse: expected restricted __le16 [usertype] time fs/fat/fat_test.c:101:25: sparse: got int fs/fat/fat_test.c:102:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:102:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:102:25: sparse: got int fs/fat/fat_test.c:109:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] time @@ got int @@ fs/fat/fat_test.c:109:25: sparse: expected restricted __le16 [usertype] time fs/fat/fat_test.c:109:25: sparse: got int fs/fat/fat_test.c:110:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:110:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:110:25: sparse: got int fs/fat/fat_test.c:118:25: sparse: sparse: incorrect type in initializer (different base types) @@ expected restricted __le16 [usertype] date @@ got int @@ fs/fat/fat_test.c:118:25: sparse: expected restricted __le16 [usertype] date fs/fat/fat_test.c:118:25: sparse: got int >> fs/fat/fat_test.c:164:17: sparse: sparse: incorrect type in initializer (different base types) @@ expected long long left_value @@ got restricted __le16 __left @@ fs/fat/fat_test.c:164:17: sparse: expected long long left_value >> fs/fat/fat_test.c:164:17: sparse: got restricted __le16 __left fs/fat/fat_test.c:164:17: sparse: sparse: incorrect type in initializer (different base types) @@ expected long long right_value @@ got restricted __le16 __right @@ fs/fat/fat_test.c:164:17: sparse: expected long long right_value fs/fat/fat_test.c:164:17: sparse: got restricted __le16 __right fs/fat/fat_test.c:169:17: sparse: sparse: incorrect type in initializer (different base types) @@ expected long long left_value @@ got restricted __le16 __left @@ fs/fat/fat_test.c:169:17: sparse: expected long long left_value fs/fat/fat_test.c:169:17: sparse: got restricted __le16 __left fs/fat/fat_test.c:169:17: sparse: sparse: incorrect type in initializer (different base types) @@ expected long long right_value @@ got restricted __le16 __right @@ fs/fat/fat_test.c:169:17: sparse: expected long long right_value fs/fat/fat_test.c:169:17: sparse: got restricted __le16 __right vim +164 fs/fat/fat_test.c 150 151 static void fat_time_unix2fat_test(struct kunit *test) 152 { 153 static struct msdos_sb_info fake_sb; 154 int i; 155 __le16 date, time; 156 u8 cs; 157 158 for (i = 0; i < ARRAY_SIZE(time_test_cases); ++i) { 159 fake_sb.options.tz_set = 1; 160 fake_sb.options.time_offset = time_test_cases[i].time_offset; 161 162 fat_time_unix2fat(&fake_sb, &time_test_cases[i].ts, 163 &time, &date, &cs); > 164 KUNIT_EXPECT_EQ_MSG(test, 165 time_test_cases[i].time, 166 time, 167 "Time mismatch in case \"%s\"\n", 168 time_test_cases[i].name); 169 KUNIT_EXPECT_EQ_MSG(test, 170 time_test_cases[i].date, 171 date, 172 "Date mismatch in case \"%s\"\n", 173 time_test_cases[i].name); 174 KUNIT_EXPECT_EQ_MSG(test, 175 time_test_cases[i].cs, 176 cs, 177 "Centisecond mismatch in case \"%s\"\n", 178 time_test_cases[i].name); 179 } 180 } 181 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --BOKacYhQ+x31HxR3 Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICOjDol8AAy5jb25maWcAnDxbb9u40u/7K4QucLAH2Gwd59IGH/JAUZTNtSQqJOVLXgTX 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