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=-7.2 required=3.0 tests=HEADER_FROM_DIFFERENT_DOMAINS, MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING,SPF_HELO_NONE,SPF_PASS, 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 D52F8C00523 for ; Fri, 3 Jan 2020 22:12:50 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [209.132.180.67]) by mail.kernel.org (Postfix) with ESMTP id 8044121835 for ; Fri, 3 Jan 2020 22:12:50 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1728810AbgACWMt (ORCPT ); Fri, 3 Jan 2020 17:12:49 -0500 Received: from mga06.intel.com ([134.134.136.31]:41893 "EHLO mga06.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1728549AbgACWMt (ORCPT ); Fri, 3 Jan 2020 17:12:49 -0500 X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False Received: from fmsmga003.fm.intel.com ([10.253.24.29]) by orsmga104.jf.intel.com with ESMTP/TLS/DHE-RSA-AES256-GCM-SHA384; 03 Jan 2020 14:12:45 -0800 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.69,392,1571727600"; d="gz'50?scan'50,208,50";a="270687956" Received: from lkp-server01.sh.intel.com (HELO lkp-server01) ([10.239.97.150]) by FMSMGA003.fm.intel.com with ESMTP; 03 Jan 2020 14:12:43 -0800 Received: from kbuild by lkp-server01 with local (Exim 4.89) (envelope-from ) id 1inVBT-0006OX-6x; Sat, 04 Jan 2020 06:12:43 +0800 Date: Sat, 4 Jan 2020 06:12:38 +0800 From: kbuild test robot To: Paul Burton Cc: kbuild-all@lists.01.org, linux-kernel@vger.kernel.org Subject: {standard input}:1932: Error: found '(', expected: ')' Message-ID: <202001040620.qdGeayCF%lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="zeharzs3pwjqg76z" Content-Disposition: inline User-Agent: NeoMutt/20170113 (1.7.2) Sender: linux-kernel-owner@vger.kernel.org Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --zeharzs3pwjqg76z Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Paul, FYI, the error/warning still remains. tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git master head: 7ca4ad5ba886557b67d42242a80f303c3a99ded1 commit: 21e3134b3ec09e722cbcda69788f206adc8db1f4 MIPS: barrier: Clean up rmb() & wmb() definitions date: 3 months ago config: mips-randconfig-a001-20200103 (attached as .config) compiler: mipsel-linux-gcc (GCC) 7.4.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross git checkout 21e3134b3ec09e722cbcda69788f206adc8db1f4 # save the attached .config to linux build tree GCC_VERSION=7.4.0 make.cross ARCH=mips If you fix the issue, kindly add following tag Reported-by: kbuild test robot All errors (new ones prefixed by >>): {standard input}: Assembler messages: >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: non-constant expression in ".if" statement >> {standard input}:1932: Error: junk at end of line, first unrecognized character is `(' -- {standard input}: Assembler messages: {standard input}:1020: Error: found '(', expected: ')' {standard input}:1020: Error: found '(', expected: ')' {standard input}:1020: Error: non-constant expression in ".if" statement {standard input}:1020: Error: junk at end of line, first unrecognized character is `(' {standard input}:1111: Error: found '(', expected: ')' {standard input}:1111: Error: found '(', expected: ')' {standard input}:1111: Error: non-constant expression in ".if" statement {standard input}:1111: Error: junk at end of line, first unrecognized character is `(' {standard input}:1128: Error: found '(', expected: ')' {standard input}:1128: Error: found '(', expected: ')' {standard input}:1128: Error: non-constant expression in ".if" statement {standard input}:1128: Error: junk at end of line, first unrecognized character is `(' {standard input}:1145: Error: found '(', expected: ')' {standard input}:1145: Error: found '(', expected: ')' {standard input}:1145: Error: non-constant expression in ".if" statement {standard input}:1145: Error: junk at end of line, first unrecognized character is `(' {standard input}:1162: Error: found '(', expected: ')' {standard input}:1162: Error: found '(', expected: ')' {standard input}:1162: Error: non-constant expression in ".if" statement {standard input}:1162: Error: junk at end of line, first unrecognized character is `(' {standard input}:1211: Error: found '(', expected: ')' {standard input}:1211: Error: found '(', expected: ')' {standard input}:1211: Error: non-constant expression in ".if" statement {standard input}:1211: Error: junk at end of line, first unrecognized character is `(' {standard input}:1228: Error: found '(', expected: ')' {standard input}:1228: Error: found '(', expected: ')' {standard input}:1228: Error: non-constant expression in ".if" statement {standard input}:1228: Error: junk at end of line, first unrecognized character is `(' {standard input}:1245: Error: found '(', expected: ')' {standard input}:1245: Error: found '(', expected: ')' {standard input}:1245: Error: non-constant expression in ".if" statement {standard input}:1245: Error: junk at end of line, first unrecognized character is `(' {standard input}:1262: Error: found '(', expected: ')' {standard input}:1262: Error: found '(', expected: ')' {standard input}:1262: Error: non-constant expression in ".if" statement {standard input}:1262: Error: junk at end of line, first unrecognized character is `(' {standard input}:1363: Error: found '(', expected: ')' {standard input}:1363: Error: found '(', expected: ')' {standard input}:1363: Error: non-constant expression in ".if" statement {standard input}:1363: Error: junk at end of line, first unrecognized character is `(' {standard input}:1396: Error: found '(', expected: ')' {standard input}:1396: Error: found '(', expected: ')' {standard input}:1396: Error: non-constant expression in ".if" statement {standard input}:1396: Error: junk at end of line, first unrecognized character is `(' >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: non-constant expression in ".if" statement >> {standard input}:1932: Error: junk at end of line, first unrecognized character is `(' {standard input}:1948: Error: found '(', expected: ')' {standard input}:1948: Error: found '(', expected: ')' {standard input}:1948: Error: non-constant expression in ".if" statement {standard input}:1948: Error: junk at end of line, first unrecognized character is `(' {standard input}:2467: Error: found '(', expected: ')' {standard input}:2467: Error: found '(', expected: ')' {standard input}:2467: Error: non-constant expression in ".if" statement {standard input}:2467: Error: junk at end of line, first unrecognized character is `(' {standard input}:2517: Error: found '(', expected: ')' {standard input}:2517: Error: found '(', expected: ')' {standard input}:2517: Error: non-constant expression in ".if" statement {standard input}:2517: Error: junk at end of line, first unrecognized character is `(' {standard input}:3845: Error: found '(', expected: ')' {standard input}:3845: Error: found '(', expected: ')' {standard input}:3845: Error: non-constant expression in ".if" statement {standard input}:3845: Error: junk at end of line, first unrecognized character is `(' {standard input}:3891: Error: found '(', expected: ')' {standard input}:3891: Error: found '(', expected: ')' {standard input}:3891: Error: non-constant expression in ".if" statement {standard input}:3891: Error: junk at end of line, first unrecognized character is `(' -- {standard input}: Assembler messages: {standard input}:915: Error: found '(', expected: ')' {standard input}:915: Error: found '(', expected: ')' {standard input}:915: Error: non-constant expression in ".if" statement {standard input}:915: Error: junk at end of line, first unrecognized character is `(' {standard input}:955: Error: found '(', expected: ')' {standard input}:955: Error: found '(', expected: ')' {standard input}:955: Error: non-constant expression in ".if" statement {standard input}:955: Error: junk at end of line, first unrecognized character is `(' {standard input}:1001: Error: found '(', expected: ')' {standard input}:1001: Error: found '(', expected: ')' {standard input}:1001: Error: non-constant expression in ".if" statement {standard input}:1001: Error: junk at end of line, first unrecognized character is `(' {standard input}:1077: Error: found '(', expected: ')' {standard input}:1077: Error: found '(', expected: ')' {standard input}:1077: Error: non-constant expression in ".if" statement {standard input}:1077: Error: junk at end of line, first unrecognized character is `(' {standard input}:1154: Error: found '(', expected: ')' {standard input}:1154: Error: found '(', expected: ')' {standard input}:1154: Error: non-constant expression in ".if" statement {standard input}:1154: Error: junk at end of line, first unrecognized character is `(' {standard input}:1242: Error: found '(', expected: ')' {standard input}:1242: Error: found '(', expected: ')' {standard input}:1242: Error: non-constant expression in ".if" statement {standard input}:1242: Error: junk at end of line, first unrecognized character is `(' {standard input}:1457: Error: found '(', expected: ')' {standard input}:1457: Error: found '(', expected: ')' {standard input}:1457: Error: non-constant expression in ".if" statement {standard input}:1457: Error: junk at end of line, first unrecognized character is `(' {standard input}:1480: Error: found '(', expected: ')' {standard input}:1480: Error: found '(', expected: ')' {standard input}:1480: Error: non-constant expression in ".if" statement {standard input}:1480: Error: junk at end of line, first unrecognized character is `(' {standard input}:1591: Error: found '(', expected: ')' {standard input}:1591: Error: found '(', expected: ')' {standard input}:1591: Error: non-constant expression in ".if" statement {standard input}:1591: Error: junk at end of line, first unrecognized character is `(' {standard input}:1620: Error: found '(', expected: ')' {standard input}:1620: Error: found '(', expected: ')' {standard input}:1620: Error: non-constant expression in ".if" statement {standard input}:1620: Error: junk at end of line, first unrecognized character is `(' {standard input}:1663: Error: found '(', expected: ')' {standard input}:1663: Error: found '(', expected: ')' {standard input}:1663: Error: non-constant expression in ".if" statement {standard input}:1663: Error: junk at end of line, first unrecognized character is `(' {standard input}:1722: Error: found '(', expected: ')' {standard input}:1722: Error: found '(', expected: ')' {standard input}:1722: Error: non-constant expression in ".if" statement {standard input}:1722: Error: junk at end of line, first unrecognized character is `(' {standard input}:1853: Error: found '(', expected: ')' {standard input}:1853: Error: found '(', expected: ')' {standard input}:1853: Error: non-constant expression in ".if" statement {standard input}:1853: Error: junk at end of line, first unrecognized character is `(' {standard input}:1890: Error: found '(', expected: ')' {standard input}:1890: Error: found '(', expected: ')' {standard input}:1890: Error: non-constant expression in ".if" statement {standard input}:1890: Error: junk at end of line, first unrecognized character is `(' >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: found '(', expected: ')' >> {standard input}:1932: Error: non-constant expression in ".if" statement >> {standard input}:1932: Error: junk at end of line, first unrecognized character is `(' {standard input}:2081: Error: found '(', expected: ')' {standard input}:2081: Error: found '(', expected: ')' {standard input}:2081: Error: non-constant expression in ".if" statement {standard input}:2081: Error: junk at end of line, first unrecognized character is `(' {standard input}:2343: Error: found '(', expected: ')' {standard input}:2343: Error: found '(', expected: ')' {standard input}:2343: Error: non-constant expression in ".if" statement {standard input}:2343: Error: junk at end of line, first unrecognized character is `(' {standard input}:2482: Error: found '(', expected: ')' {standard input}:2482: Error: found '(', expected: ')' {standard input}:2482: Error: non-constant expression in ".if" statement {standard input}:2482: Error: junk at end of line, first unrecognized character is `(' {standard input}:2671: Error: found '(', expected: ')' {standard input}:2671: Error: found '(', expected: ')' {standard input}:2671: Error: non-constant expression in ".if" statement {standard input}:2671: Error: junk at end of line, first unrecognized character is `(' {standard input}:2730: Error: found '(', expected: ')' {standard input}:2730: Error: found '(', expected: ')' {standard input}:2730: Error: non-constant expression in ".if" statement {standard input}:2730: Error: junk at end of line, first unrecognized character is `(' {standard input}:2763: Error: found '(', expected: ')' {standard input}:2763: Error: found '(', expected: ')' {standard input}:2763: Error: non-constant expression in ".if" statement {standard input}:2763: Error: junk at end of line, first unrecognized character is `(' {standard input}:2799: Error: found '(', expected: ')' {standard input}:2799: Error: found '(', expected: ')' {standard input}:2799: Error: non-constant expression in ".if" statement {standard input}:2799: Error: junk at end of line, first unrecognized character is `(' {standard input}:3260: Error: found '(', expected: ')' {standard input}:3260: Error: found '(', expected: ')' {standard input}:3260: Error: non-constant expression in ".if" statement {standard input}:3260: Error: junk at end of line, first unrecognized character is `(' {standard input}:3546: Error: found '(', expected: ')' {standard input}:3546: Error: found '(', expected: ')' {standard input}:3546: Error: non-constant expression in ".if" statement {standard input}:3546: Error: junk at end of line, first unrecognized character is `(' {standard input}:3562: Error: found '(', expected: ')' {standard input}:3562: Error: found '(', expected: ')' {standard input}:3562: Error: non-constant expression in ".if" statement {standard input}:3562: Error: junk at end of line, first unrecognized character is `(' {standard input}:3592: Error: found '(', expected: ')' {standard input}:3592: Error: found '(', expected: ')' {standard input}:3592: Error: non-constant expression in ".if" statement {standard input}:3592: Error: junk at end of line, first unrecognized character is `(' --- 0-DAY kernel test infrastructure Open Source Technology Center https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org Intel Corporation --zeharzs3pwjqg76z Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICHJwD14AAy5jb25maWcAjDxbc9y2zu/9FTvpSzun6fEtTvJ94weKonbZlUSZpPbiF45j b1JP48us123z7w9A3UiKctLptFkAgkgAxI1Qfv7p5xl5OTzeXx/ubq6/fv02+7J72O2vD7vb 2ee7r7v/n6ViVgo9YynXvwNxfvfw8u9/7++enmfvfj/7/ejt/uZkttztH3ZfZ/Tx4fPdlxd4 +u7x4aeff4J/fwbg/RMw2v/fDB/afX37FTm8/XJzM/tlTumvs/fIBkipKDM+N5QargxgLr51 IPhhVkwqLsqL90dnR0c9bU7KeY86clgsiDJEFWYutBgYtYg1kaUpyDZhpi55yTUnOb9iqUeY ckWSnP0IsSiVljXVQqoByuWlWQu5HCBJzfNU84IZttGWtxJSA97KaW7l/nX2vDu8PA3iSKRY stKI0qiicrjDQgwrV4bIucl5wfXF6cmwoKLiwF4zhexBBw18wUjKpAXP7p5nD48HfFv3VC4o yTtZvnnjrdookmsHmLKM1Lk2C6F0SQp28eaXh8eH3a89gVoTZ7Vqq1a8oiMA/p/q3F1jJRTf 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