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 9C0FDC433DF for ; Sat, 11 Jul 2020 03:48:37 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [23.128.96.18]) by mail.kernel.org (Postfix) with ESMTP id 6AAD7206F0 for ; Sat, 11 Jul 2020 03:48:37 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1726709AbgGKDsg (ORCPT ); Fri, 10 Jul 2020 23:48:36 -0400 Received: from mga12.intel.com ([192.55.52.136]:10037 "EHLO mga12.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1726671AbgGKDsg (ORCPT ); Fri, 10 Jul 2020 23:48:36 -0400 IronPort-SDR: Gn5eZt57ayLsyy1FYaOLody5r110h0Ux7yhqVGqbwhQ1Zh87sRfb+WWQdcf6T6fEt+qYwGCLwU cDx9VfClfdaA== X-IronPort-AV: E=McAfee;i="6000,8403,9678"; a="127916279" X-IronPort-AV: E=Sophos;i="5.75,337,1589266800"; d="gz'50?scan'50,208,50";a="127916279" X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False Received: from fmsmga001.fm.intel.com ([10.253.24.23]) by fmsmga106.fm.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 10 Jul 2020 20:14:34 -0700 IronPort-SDR: DnXJ7+DroRnXkO/+0ObpA8mZp2Fmdv5I4Dd54tHEhBEHt4Bk9oku5I0xbopN+ah7z35hnrjDOu l+tBRfcG6U5Q== X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.75,337,1589266800"; d="gz'50?scan'50,208,50";a="389696069" Received: from lkp-server02.sh.intel.com (HELO 0fc60ea15964) ([10.239.97.151]) by fmsmga001.fm.intel.com with ESMTP; 10 Jul 2020 20:14:31 -0700 Received: from kbuild by 0fc60ea15964 with local (Exim 4.92) (envelope-from ) id 1ju5yA-0001BK-Ou; Sat, 11 Jul 2020 03:14:30 +0000 Date: Sat, 11 Jul 2020 11:13:54 +0800 From: kernel test robot To: Tobias Klauser , Alexei Starovoitov , Daniel Borkmann , Wang YanQing Cc: kbuild-all@lists.01.org, bpf@vger.kernel.org, netdev@vger.kernel.org, x86@kernel.org Subject: Re: [PATCH bpf-next 1/2] bpf, x86: Factor common x86 JIT code Message-ID: <202007111131.VDVUrWTd%lkp@intel.com> References: <20200629093336.20963-2-tklauser@distanz.ch> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="zhXaljGHf11kAtnf" Content-Disposition: inline In-Reply-To: <20200629093336.20963-2-tklauser@distanz.ch> User-Agent: Mutt/1.10.1 (2018-07-13) Sender: bpf-owner@vger.kernel.org Precedence: bulk List-ID: X-Mailing-List: bpf@vger.kernel.org --zhXaljGHf11kAtnf Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Tobias, I love your patch! Perhaps something to improve: [auto build test WARNING on bpf-next/master] url: https://github.com/0day-ci/linux/commits/Tobias-Klauser/bpf-x86-Factor-common-x86-JIT-code/20200630-045932 base: https://git.kernel.org/pub/scm/linux/kernel/git/bpf/bpf-next.git master config: x86_64-randconfig-s022-20200710 (attached as .config) compiler: gcc-9 (Debian 9.3.0-14) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-37-gc9676a3b-dirty # save the attached .config to linux build tree make W=1 C=1 CF='-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=x86_64 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (e58948 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (e58948 becomes 8948) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (ec8148 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (ec8148 becomes 8148) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5541 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5641 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5741 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (d289 becomes 89) >> arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (1c5639 becomes 39) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (1c5639 becomes 5639) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (2b76 becomes 76) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (858b becomes 8b) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (fffffddc becomes dc) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (20f883 becomes 83) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (20f883 becomes f883) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (2077 becomes 77) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (1c083 becomes 83) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (1c083 becomes c083) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (8589 becomes 89) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (fffffddc becomes dc) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (d6848b48 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (d6848b48 becomes 8b48) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (190 becomes 90) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c08548 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (c08548 becomes 8548) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (a74 becomes 74) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (30408b48 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (30408b48 becomes 8b48) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (19c08348 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (19c08348 becomes 8348) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (e0ff becomes ff) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (858b becomes 8b) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (fffffddc becomes dc) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (20f883 becomes 83) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (20f883 becomes f883) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (e77 becomes 77) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (1c083 becomes 83) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (1c083 becomes c083) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (8589 becomes 89) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (fffffddc becomes dc) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (8966 becomes 66) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c3c749 becomes 49) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (c3c749 becomes c749) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (d231 becomes 31) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (f3f749 becomes 49) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (f3f749 becomes f749) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (f3f741 becomes 41) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (f3f741 becomes f741) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (d38949 becomes 49) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (d38949 becomes 8949) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c38949 becomes 49) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (c38949 becomes 8949) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (b70f45 becomes 45) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (b70f45 becomes f45) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (b70f becomes f) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (f41 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (b70f45 becomes 45) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (b70f45 becomes f45) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (b70f becomes f) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c641 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c74166 becomes 66) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (c74166 becomes 4166) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c766 becomes 66) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (c741 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (1f0 becomes f0) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5f41 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5e41 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (5d41 becomes 41) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (f87d8348 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (f87d8348 becomes 8348) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (e58948 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (e58948 becomes 8948) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (8c48348 becomes 48) arch/x86/net/bpf_jit.h:15:31: sparse: sparse: cast truncates bits from constant value (8c48348 becomes 8348) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (e2ff becomes ff) arch/x86/net/bpf_jit.h:13:24: sparse: sparse: cast truncates bits from constant value (8f0f becomes f) vim +13 arch/x86/net/bpf_jit.h 9 10 static inline u8 *emit_code(u8 *ptr, u32 bytes, unsigned int len) 11 { 12 if (len == 1) > 13 *ptr = bytes; 14 else if (len == 2) 15 *(u16 *)ptr = bytes; 16 else { 17 *(u32 *)ptr = bytes; 18 barrier(); 19 } 20 return ptr + len; 21 } 22 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --zhXaljGHf11kAtnf Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICM0bCV8AAy5jb25maWcAjDxJc9y20vf8iinnkhzsJ8myyqmvdABJcIgMSSAEOIsuLEUe O6pYUj4tL/a/f90AFwBsKsnBEbsbja3RGxrz4w8/rtjL88Pd9fPtzfXXr99XX473x8fr5+On 1efbr8f/W2VyVUuz4pkw74C4vL1/+fafbx8vuovz1Yd3H9+dvH28OV1tjo/3x6+r9OH+8+2X F2h/+3D/w48/pLLOxbpL027LGy1k3Rm+N5dvvtzcvP1l9VN2/P32+n71y7v3wOb0/Gf31xuv mdDdOk0vvw+g9cTq8peT9ycnA6LMRvjZ+/MT+9/Ip2T1ekSfeOxTVnelqDdTBx6w04YZkQa4 gumO6apbSyNJhKihKfdQstamaVMjGz1BRfNbt5ON12/SijIzouKdYUnJOy0bM2FN0XCWAfNc wj9AorEpLPCPq7Xdr6+rp+Pzy1/TkieN3PC6gxXXlfI6roXpeL3tWANrJiphLt+fAZdxtJUS 0Lvh2qxun1b3D8/IeFxkmbJyWMc3byhwx1p/Zey0Os1K49EXbMu7DW9qXnbrK+ENz8ckgDmj UeVVxWjM/mqphVxCnANiXABvVP78Y7wd22sEOMLX8Pur11tLYvWDEfewjOesLY3dV2+FB3Ah 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